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Author SHA1 Message Date
Simon Mo
79d406e918 [Docs] Fix readthedocs for tag build (#6158)
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2024-07-05 12:44:40 -07:00
Simon Mo
abad5746a7 bump version to v0.5.1 (#6157) 2024-07-05 12:04:51 -07:00
JGSweets
e58294ddf2 [Bugfix] Add verbose error if scipy is missing for blocksparse attention (#5695) 2024-07-05 10:41:01 -07:00
jvlunteren
f1e15da6fe [Frontend] Continuous usage stats in OpenAI completion API (#5742) 2024-07-05 10:37:09 -07:00
Christian Rohmann
0097bb1829 [Bugfix] Use templated datasource in grafana.json to allow automatic imports (#6136)
Signed-off-by: Christian Rohmann <christian.rohmann@inovex.de>
2024-07-05 09:49:47 -07:00
Cyrus Leung
ea4b570483 [VLM] Cleanup validation and update docs (#6149) 2024-07-05 05:49:38 +00:00
Roger Wang
a41357e941 [VLM] Improve consistency between feature size calculation and dummy data for profiling (#6146) 2024-07-05 09:29:47 +08:00
Cyrus Leung
ae96ef8fbd [VLM] Calculate maximum number of multi-modal tokens by model (#6121) 2024-07-04 16:37:23 -07:00
Lily Liu
69ec3ca14c [Kernel][Model] logits_soft_cap for Gemma2 with flashinfer (#6051)
Co-authored-by: Simon Mo <simon.mo@hey.com>
2024-07-04 16:35:51 -07:00
Yuan
81d7a50f24 [Hardware][Intel CPU] Adding intel openmp tunings in Docker file (#6008)
Signed-off-by: Yuan Zhou <yuan.zhou@intel.com>
2024-07-04 15:22:12 -07:00
youkaichao
27902d42be [misc][doc] try to add warning for latest html (#5979) 2024-07-04 09:57:09 -07:00
Gregory Shtrasberg
56b325e977 [ROCm][AMD][Model]Adding alibi slopes support in ROCm triton flash attention and naive flash attention (#6043)
Co-authored-by: Hongxia Yang <62075498+hongxiayang@users.noreply.github.com>
2024-07-03 22:19:38 -07:00
Cyrus Leung
3dd507083f [CI/Build] Cleanup VLM tests (#6107) 2024-07-03 18:58:18 -07:00
Murali Andoorveedu
0ed646b7aa [Distributed][Core] Support Py39 and Py38 for PP (#6120)
Signed-off-by: Muralidhar Andoorveedu <muralidhar.andoorveedu@centml.ai>
2024-07-03 17:52:29 -07:00
Travis Johnson
1dab9bc8a9 [Bugfix] set OMP_NUM_THREADS to 1 by default for multiprocessing (#6109)
Signed-off-by: Travis Johnson <tsjohnso@us.ibm.com>
Co-authored-by: Nick Hill <nickhill@us.ibm.com>
2024-07-03 16:56:59 -07:00
youkaichao
3de6e6a30e [core][distributed] support n layers % pp size != 0 (#6115) 2024-07-03 16:40:31 -07:00
youkaichao
966fe72141 [doc][misc] bump up py version in installation doc (#6119) 2024-07-03 15:52:04 -07:00
Robert Shaw
62963d129e [ Misc ] Clean Up CompressedTensorsW8A8 (#6113) 2024-07-03 22:50:08 +00:00
xwjiang2010
d9e98f42e4 [vlm] Remove vision language config. (#6089)
Signed-off-by: Xiaowei Jiang <xwjiang2010@gmail.com>
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-07-03 22:14:16 +00:00
youkaichao
3c6325f0fc [core][distributed] custom allreduce when pp size > 1 (#6117) 2024-07-03 14:41:32 -07:00
Michael Goin
47f0954af0 [Kernel] Expand FP8 support to Ampere GPUs using FP8 Marlin (#5975) 2024-07-03 17:38:00 +00:00
Roger Wang
7cd2ebb025 [Bugfix] Fix compute_logits in Jamba (#6093) 2024-07-03 00:32:35 -07:00
Roger Wang
f1c78138aa [Doc] Fix Mock Import (#6094) 2024-07-03 00:13:56 -07:00
Roger Wang
3a86b54fb0 [VLM][Frontend] Proper Image Prompt Formatting from OpenAI API (#6091)
Co-authored-by: Cyrus Leung <cyrus.tl.leung@gmail.com>
2024-07-02 23:41:23 -07:00
youkaichao
f666207161 [misc][distributed] error on invalid state (#6092) 2024-07-02 23:37:29 -07:00
Nick Hill
d830656a97 [BugFix] Avoid unnecessary Ray import warnings (#6079) 2024-07-03 14:09:40 +08:00
SangBin Cho
d18bab3587 [CI] Fix base url doesn't strip "/" (#6087) 2024-07-02 21:31:25 -07:00
Cyrus Leung
9831aec49f [Core] Dynamic image size support for VLMs (#5276)
Signed-off-by: Xiaowei Jiang <xwjiang2010@gmail.com>
Co-authored-by: Xiaowei Jiang <xwjiang2010@gmail.com>
Co-authored-by: ywang96 <ywang@roblox.com>
Co-authored-by: xwjiang2010 <87673679+xwjiang2010@users.noreply.github.com>
Co-authored-by: Roger Wang <136131678+ywang96@users.noreply.github.com>
2024-07-02 20:34:00 -07:00
youkaichao
482045ee77 [hardware][misc] introduce platform abstraction (#6080) 2024-07-02 20:12:22 -07:00
Mor Zusman
9d6a8daa87 [Model] Jamba support (#4115)
Signed-off-by: Muralidhar Andoorveedu <muralidhar.andoorveedu@centml.ai>
Co-authored-by: Erez Schwartz <erezs@ai21.com>
Co-authored-by: Mor Zusman <morz@ai21.com>
Co-authored-by: tomeras91 <57313761+tomeras91@users.noreply.github.com>
Co-authored-by: Tomer Asida <tomera@ai21.com>
Co-authored-by: Zhuohan Li <zhuohan123@gmail.com>
Co-authored-by: Muralidhar Andoorveedu <muralidhar.andoorveedu@centml.ai>
2024-07-02 23:11:29 +00:00
Qubitium-ModelCloud
ee93f4f92a [CORE] Quantized lm-head Framework (#4442)
Co-authored-by: Robert Shaw <rshaw@neuralmagic.com>
Co-authored-by: ZX <zx@lbx.dev>
2024-07-02 22:25:17 +00:00
Robert Shaw
7c008c51a9 [ Misc ] Refactor MoE to isolate Fp8 From Mixtral (#5970)
Co-authored-by: Robert Shaw <rshaw@neuralmagic>
Co-authored-by: Michael Goin <michael@neuralmagic.com>
2024-07-02 21:54:35 +00:00
Robert Shaw
4d26d806e1 Update conftest.py (#6076) 2024-07-02 20:14:22 +00:00
Murali Andoorveedu
c5832d2ae9 [Core] Pipeline Parallel Support (#4412)
Signed-off-by: Muralidhar Andoorveedu <muralidhar.andoorveedu@centml.ai>
2024-07-02 10:58:08 -07:00
Sirej Dua
15aba081f3 [Speculative Decoding] MLPSpeculator Tensor Parallel support (1/2) (#6050)
Co-authored-by: Sirej Dua <sirej.dua@databricks.com>
Co-authored-by: Sirej Dua <Sirej Dua>
2024-07-02 07:20:29 -07:00
Cyrus Leung
31354e563f [Doc] Reinstate doc dependencies (#6061) 2024-07-02 10:53:16 +00:00
xwjiang2010
98d6682cd1 [VLM] Remove image_input_type from VLM config (#5852)
Signed-off-by: Xiaowei Jiang <xwjiang2010@gmail.com>
Co-authored-by: Cyrus Leung <cyrus.tl.leung@gmail.com>
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-07-02 07:57:09 +00:00
danieljannai21
2c37540aa6 [Frontend] Add template related params to request (#5709) 2024-07-01 23:01:57 -07:00
Alexander Matveev
3476ed0809 [Core] Optimize block_manager_v2 vs block_manager_v1 (to make V2 default) (#5602) 2024-07-01 20:10:37 -07:00
Thomas Parnell
54600709b6 [Model] Changes to MLPSpeculator to support tie_weights and input_scale (#5965)
Signed-off-by: Thomas Parnell <tpa@zurich.ibm.com>
Co-authored-by: Joshua Rosenkranz <jmrosenk@us.ibm.com>
2024-07-01 16:40:02 -07:00
James Whedbee
e373853e12 [Frontend] Relax api url assertion for openai benchmarking (#6046) 2024-07-01 23:39:10 +00:00
Nick Hill
c87ebc3ef9 [BugFix] Ensure worker model loop is always stopped at the right time (#5987) 2024-07-01 16:17:58 -07:00
Antoni Baum
c4059ea54f [Bugfix] Add explicit end_forward calls to flashinfer (#6044) 2024-07-01 23:08:58 +00:00
Roger Wang
8e0817c262 [Bugfix][Doc] Fix Doc Formatting (#6048) 2024-07-01 15:09:11 -07:00
ning.zhang
83bdcb6ac3 add FAQ doc under 'serving' (#5946) 2024-07-01 14:11:36 -07:00
Avshalom Manevich
12a59959ed [Bugfix] adding chunking mechanism to fused_moe to handle large inputs (#6029) 2024-07-01 21:08:29 +00:00
Antoni Baum
dec6fc6f3b [Bugfix] Use RayActorError for older versions of Ray in RayTokenizerGroupPool (#6039) 2024-07-01 20:12:40 +00:00
youkaichao
8893130b63 [doc][misc] further lower visibility of simple api server (#6041)
Co-authored-by: Simon Mo <simon.mo@hey.com>
2024-07-01 10:50:56 -07:00
zhyncs
bb60326836 [Misc] update benchmark backend for scalellm (#6018) 2024-07-01 10:20:33 -07:00
youkaichao
4050d646e5 [doc][misc] remove deprecated api server in doc (#6037) 2024-07-01 12:52:43 -04:00
Robert Shaw
d76084c12f [ CI ] Re-enable Large Model LM Eval (#6031) 2024-07-01 12:40:45 -04:00
sroy745
80ca1e6a3a [Speculative Decoding 2/2 ] Integrate typical acceptance sampler into Spec Decode Worker (#5348) 2024-07-01 00:33:05 -07:00
youkaichao
614aa51203 [misc][cuda] use nvml to avoid accidentally cuda initialization (#6007) 2024-06-30 20:07:34 -07:00
Robert Shaw
af9ad46fca [ Misc ] Refactor w8a8 to use process_weights_after_load (Simplify Weight Loading) (#5940)
Co-authored-by: Robert Shaw <rshaw@neuralmagic>
2024-06-30 23:06:27 +00:00
Dipika Sikka
7836fdcc11 [Misc] Fix get_min_capability (#5971) 2024-06-30 20:15:16 +00:00
Robert Shaw
deacb7ec44 [ CI ] Temporarily Disable Large LM-Eval Tests (#6005)
Co-authored-by: rshaw@neuralmagic.com <rshaw@neuralmagic>
2024-06-30 11:56:56 -07:00
SangBin Cho
f5e73c9f1b [Lora] Use safetensor keys instead of adapter_config.json to find unexpected modules. (#5909)
Co-authored-by: sang <sangcho@anyscale.com>
2024-06-30 17:11:15 +00:00
llmpros
c6c240aa0a [Frontend]: Support base64 embedding (#5935)
Co-authored-by: Cyrus Leung <cyrus.tl.leung@gmail.com>
2024-06-30 23:53:00 +08:00
youkaichao
2be6955a3f [ci][distributed] fix device count call
[ci][distributed] fix some cuda init that makes it necessary to use spawn (#5991)
2024-06-30 08:06:13 +00:00
Cyrus Leung
9d47f64eb6 [CI/Build] [3/3] Reorganize entrypoints tests (#5966) 2024-06-30 12:58:49 +08:00
Cyrus Leung
cff6a1fec1 [CI/Build] Reuse code for checking output consistency (#5988) 2024-06-30 11:44:25 +08:00
Roger Wang
bcc6a09b63 [CI/Build] Temporarily Remove Phi3-Vision from TP Test (#5989) 2024-06-30 09:18:31 +08:00
Matt Wong
9def10664e [Bugfix][CI/Build][Hardware][AMD] Install matching torchvision to fix AMD tests (#5949) 2024-06-29 12:47:58 -07:00
Robert Shaw
75aa1442db [ CI/Build ] LM Eval Harness Based CI Testing (#5838)
Co-authored-by: Robert Shaw <rshaw@neuralmagic>
2024-06-29 13:04:30 -04:00
Cyrus Leung
99397da534 [CI/Build] Add TP test for vision models (#5892) 2024-06-29 15:45:54 +00:00
Robert Shaw
8dbfcd35bf [ CI/Build ] Added E2E Test For Compressed Tensors (#5839)
Co-authored-by: Michael Goin <michael@neuralmagic.com>
Co-authored-by: Robert Shaw <rshaw@neuralmagic>
2024-06-29 21:12:58 +08:00
Cody Yu
f7dac83d95 [Kernel] Raise an exception in MoE kernel if the batch size is larger then 65k (#5939) 2024-06-29 21:04:20 +08:00
Antoni Baum
7c01f70641 [Core] Optimize SequenceStatus.is_finished by switching to IntEnum (#5974) 2024-06-29 12:47:53 +00:00
Cyrus Leung
51e971d39e [Bugfix] Support eos_token_id from config.json (#5954) 2024-06-29 11:19:02 +00:00
Roger Wang
329df38f1a [Misc] Update Phi-3-Vision Example (#5981)
Co-authored-by: Cyrus Leung <cyrus.tl.leung@gmail.com>
2024-06-29 14:34:29 +08:00
Woosuk Kwon
580353da93 [Bugfix] Fix precisions in Gemma 1 (#5913) 2024-06-29 03:10:21 +00:00
Joe Runde
ba4994443a [Kernel] Add punica dimensions for Granite 3b and 8b (#5930)
Signed-off-by: Joe Runde <joe@joerun.de>
2024-06-29 10:48:25 +08:00
William Lin
906a19cdb0 [Misc] Extend vLLM Metrics logging API (#5925)
Co-authored-by: Antoni Baum <antoni.baum@protonmail.com>
2024-06-29 10:36:06 +08:00
mcalman
c4bca740e8 [Bugfix] fix missing last itl in openai completions benchmark (#5926) 2024-06-29 10:34:42 +08:00
Woosuk Kwon
7f83f40dee [Bugfix][TPU] Fix pad slot id (#5977) 2024-06-28 18:55:17 -07:00
Woosuk Kwon
54814fd85b [Bugfix][TPU] Fix TPU sampler output (#5978) 2024-06-28 18:14:16 -07:00
Lily Liu
7041de4384 [Kernel] Flashinfer for prefill & decode, with Cudagraph support for decode (#4628)
Co-authored-by: LiuXiaoxuanPKU <llilyliupku@gmail.com>, bong-furiosa <bongwon.jang@furiosa.ai>
2024-06-28 15:28:49 -07:00
Robert Shaw
6a62cb82cc [Bugfix] Fix Engine Failing After Invalid Request - AsyncEngineDeadError (#5963)
Co-authored-by: Robert Shaw <rshaw@neuralmagic>
2024-06-28 17:46:30 -04:00
Tyler Michael Smith
5d2a1a9cf0 Unmark more files as executable (#5962) 2024-06-28 17:34:56 -04:00
Michael Goin
4bf35ed9ae [Bugfix] Only add Attention.kv_scale if kv cache quantization is enabled (#5936) 2024-06-28 21:12:40 +00:00
wangding zeng
be0b3af9e0 Support Deepseek-V2 (#4650)
Co-authored-by: Philipp Moritz <pcmoritz@gmail.com>
2024-06-28 13:24:57 -07:00
Robert Shaw
2cd402e169 [ Bugfix ] Enabling Loading Models With Fused QKV/MLP on Disk with FP8 (#5921)
Co-authored-by: Robert Shaw <rshaw@neuralmagic>
2024-06-28 18:43:49 +00:00
Robert Shaw
b185230744 [ Misc ] Remove fp8_shard_indexer from Col/Row Parallel Linear (Simplify Weight Loading) (#5928)
Co-authored-by: Robert Shaw <rshaw@neuralmagic>
2024-06-28 13:49:57 -04:00
Tyler Michael Smith
6a2d659d28 [Bugfix] Fix compute datatype for cutlass 3.x epilogues (#5931) 2024-06-28 17:10:34 +00:00
Cody Yu
b2c620230a [Spec Decode] Introduce DraftModelRunner (#5799) 2024-06-28 09:17:51 -07:00
xwjiang2010
b90d8cd832 [Distributed] Make it clear that % should not be in tensor dict keys. (#5927)
Signed-off-by: Xiaowei Jiang <xwjiang2010@gmail.com>
2024-06-28 15:20:22 +00:00
Cyrus Leung
3b752a6555 [CI/Build] [2/3] Reorganize entrypoints tests (#5904) 2024-06-28 07:59:18 -07:00
Thomas Parnell
ec1ad0046c [Bugfix] Better error message for MLPSpeculator when num_speculative_tokens is set too high (#5894)
Signed-off-by: Thomas Parnell <tpa@zurich.ibm.com>
2024-06-28 07:42:17 -07:00
Ilya Lavrenov
57f09a419c [Hardware][Intel] OpenVINO vLLM backend (#5379) 2024-06-28 13:50:16 +00:00
Tyler Michael Smith
5932634409 Unmark fused_moe config json file as executable (#5960) 2024-06-28 06:36:12 -07:00
Cyrus Leung
5cbe8d155c [Core] Registry for processing model inputs (#5214)
Co-authored-by: ywang96 <ywang@roblox.com>
2024-06-28 12:09:56 +00:00
Isotr0py
0d0e3a42ac [Bugfix][Hardware][Intel CPU] Fix unpassed multi_modal_kwargs for CPU runner (#5956) 2024-06-28 12:03:41 +00:00
xwjiang2010
74d55c065b [VLM][BugFix] Make sure that multi_modal_kwargs can broadcast properly with ring buffer. (#5905)
Signed-off-by: Xiaowei Jiang <xwjiang2010@gmail.com>
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-06-28 07:29:13 +00:00
Woosuk Kwon
f136da15e1 [Hardware][TPU] Optimize KV cache swapping (#5878) 2024-06-27 21:12:13 -07:00
Divakar Verma
c3dde367f1 [Kernel][ROCm][AMD] fused_moe Triton configs v2 for mi300X (#5932) 2024-06-27 13:41:08 -07:00
youkaichao
64e8d2a783 [core][misc] remove logical block (#5882) 2024-06-27 13:34:55 -07:00
Woosuk Kwon
79c92c7c8a [Model] Add Gemma 2 (#5908) 2024-06-27 13:33:56 -07:00
Roger Wang
736ed38849 [CI/Build] Fix Args for _get_logits_warper in Sampler Test (#5922) 2024-06-27 11:43:04 -07:00
Nick Hill
365791ff81 [BugFix] Fix min_tokens behaviour for multiple eos tokens (#5849) 2024-06-27 11:31:11 -07:00
Nick Hill
691e29ecf3 [BugFix] Fix MLPSpeculator handling of num_speculative_tokens (#5876) 2024-06-27 10:59:33 -07:00
youkaichao
3fd02bda51 [doc][misc] add note for Kubernetes users (#5916) 2024-06-27 10:07:07 -07:00
Cyrus Leung
98cf2ed678 [Model][Bugfix] Implicit model flags and reenable Phi-3-Vision (#5896) 2024-06-27 09:08:10 -07:00
Cyrus Leung
e9d32d077d [CI/Build] [1/3] Reorganize entrypoints tests (#5526) 2024-06-27 12:43:17 +00:00
Roger Wang
2061f0b8a7 [Bugfix] Fix img_sizes Parsing in Phi3-Vision (#5888) 2024-06-27 08:29:24 +00:00
Cyrus Leung
96354d6a29 [Model] Add base class for LoRA-supported models (#5018) 2024-06-27 16:03:04 +08:00
xwjiang2010
d12af207d2 [VLM][Bugfix] Make sure that multi_modal_kwargs is broadcasted properly (#5880)
Signed-off-by: Xiaowei Jiang <xwjiang2010@gmail.com>
2024-06-27 15:15:24 +08:00
Cyrus Leung
6eabc6cb0e [Doc] Add note about context length in Phi-3-Vision example (#5887) 2024-06-26 23:20:01 -07:00
Nick Hill
2110557dab [BugFix] Fix cuda graph for MLPSpeculator (#5875)
Co-authored-by: Abhinav Goyal <abhinav.goyal@flipkart.com>
2024-06-27 04:12:10 +00:00
Roger Wang
b9e84259e9 [Misc] Add example for LLaVA-NeXT (#5879) 2024-06-26 17:57:16 -07:00
youkaichao
294104c3f9 [doc] update usage of env var to avoid conflict (#5873) 2024-06-26 17:57:12 -04:00
Chip Kerchner
38a1674abb Support CPU inference with VSX PowerPC ISA (#5652) 2024-06-26 21:53:04 +00:00
Woosuk Kwon
f5c8628fdc [Bugfix][TPU] Fix CPU cache allocation (#5869) 2024-06-26 13:42:40 -07:00
Woosuk Kwon
cbc53b6b8d [Hardware][TPU] Support parallel sampling & Swapping (#5855) 2024-06-26 11:07:49 -07:00
sasha0552
c54269d967 [Frontend] Add tokenize/detokenize endpoints (#5054) 2024-06-26 16:54:22 +00:00
Luka Govedič
5bfd1bbc98 [Kernel] Adding bias epilogue support for cutlass_scaled_mm (#5560)
Co-authored-by: Chih-Chieh-Yang <7364402+cyang49@users.noreply.github.com>
Co-authored-by: Lucas Wilkinson <lwilkinson@neuralmagic.com>
2024-06-26 15:16:00 +00:00
Cyrus Leung
6984c02a27 [CI/Build] Refactor image test assets (#5821) 2024-06-26 01:02:34 -07:00
Woosuk Kwon
3439c5a8e3 [Bugfix][TPU] Fix KV cache size calculation (#5860) 2024-06-26 00:58:23 -07:00
Woosuk Kwon
6806998bf9 [Bugfix] Fix embedding to support 2D inputs (#5829) 2024-06-26 00:15:22 -07:00
youkaichao
515080ad2f [bugfix][distributed] fix shm broadcast when the queue size is full (#5801) 2024-06-25 21:56:02 -07:00
Roger Wang
3aa7b6cf66 [Misc][Doc] Add Example of using OpenAI Server with VLM (#5832) 2024-06-25 20:34:25 -07:00
Stephanie Wang
dda4811591 [Core] Refactor Worker and ModelRunner to consolidate control plane communication (#5408)
Signed-off-by: Stephanie Wang <swang@cs.berkeley.edu>
Signed-off-by: Stephanie <swang@anyscale.com>
Co-authored-by: Stephanie <swang@anyscale.com>
2024-06-25 20:30:03 -07:00
aws-patlange
82079729cc [Bugfix] Fix assertion in NeuronExecutor (#5841) 2024-06-25 19:52:10 -07:00
Thomas Parnell
c2a8ac75e0 [CI/Build] Add E2E tests for MLPSpeculator (#5791)
Signed-off-by: Thomas Parnell <tpa@zurich.ibm.com>
2024-06-26 00:04:08 +00:00
Woosuk Kwon
f178e56c68 [Hardware][TPU] Raise errors for unsupported sampling params (#5850) 2024-06-25 16:58:23 -07:00
Matt Wong
dd793d1de5 [Hardware][AMD][CI/Build][Doc] Upgrade to ROCm 6.1, Dockerfile improvements, test fixes (#5422) 2024-06-25 15:56:15 -07:00
Woosuk Kwon
bc34937d68 [Hardware][TPU] Refactor TPU backend (#5831) 2024-06-25 15:25:52 -07:00
Dipika Sikka
dd248f7675 [Misc] Update w4a16 compressed-tensors support to include w8a16 (#5794) 2024-06-25 19:23:35 +00:00
Michael Goin
d9b34baedd [CI/Build] Add unit testing for FlexibleArgumentParser (#5798) 2024-06-25 12:18:03 -07:00
youkaichao
c18ebfdd71 [doc][distributed] add both gloo and nccl tests (#5834) 2024-06-25 15:10:28 -04:00
Antoni Baum
67882dbb44 [Core] Add fault tolerance for RayTokenizerGroupPool (#5748) 2024-06-25 10:15:10 -07:00
Jie Fu (傅杰)
7b99314301 [Misc] Remove useless code in cpu_worker (#5824) 2024-06-25 09:41:36 -07:00
Woo-Yeon Lee
2ce5d6688b [Speculative Decoding] Support draft model on different tensor-parallel size than target model (#5414) 2024-06-25 09:56:06 +00:00
Cyrus Leung
f23871e9ee [Doc] Add notice about breaking changes to VLMs (#5818) 2024-06-25 01:25:03 -07:00
Kevin H. Luu
e9de9dd551 [ci] Remove aws template (#5757)
Signed-off-by: kevin <kevin@anyscale.com>
2024-06-24 21:09:02 -07:00
Chang Su
ba991d5c84 [Bugfix] Fix FlexibleArgumentParser replaces _ with - for actual args (#5795) 2024-06-24 17:01:19 -06:00
Michael Goin
1744cc99ba [Doc] Add Phi-3-medium to list of supported models (#5788) 2024-06-24 10:48:55 -07:00
Michael Goin
e72dc6cb35 [Doc] Add "Suggest edit" button to doc pages (#5789) 2024-06-24 10:26:17 -07:00
youkaichao
c246212952 [doc][faq] add warning to download models for every nodes (#5783) 2024-06-24 15:37:42 +08:00
Isotr0py
edd5fe5fa2 [Bugfix] Add phi3v resize for dynamic shape and fix torchvision requirement (#5772) 2024-06-24 12:11:53 +08:00
Murali Andoorveedu
5d4d90536f [Distributed] Add send and recv helpers (#5719) 2024-06-23 14:42:28 -07:00
Varun Sundar Rabindranath
6c916ac8a8 [BugFix] [Kernel] Add Cutlass2x fallback kernels (#5744)
Co-authored-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
2024-06-23 21:07:11 +00:00
youkaichao
832ea88fcb [core][distributed] improve shared memory broadcast (#5754) 2024-06-22 10:00:43 -07:00
Woosuk Kwon
8c00f9c15d [Docs][TPU] Add installation tip for TPU (#5761) 2024-06-21 23:09:40 -07:00
Woosuk Kwon
0cbc1d2b4f [Bugfix] Fix pin_lora error in TPU executor (#5760) 2024-06-21 22:25:14 -07:00
zifeitong
ff9ddbceee [Misc] Remove #4789 workaround left in vllm/entrypoints/openai/run_batch.py (#5756) 2024-06-22 03:33:12 +00:00
Jie Fu (傅杰)
9c62db07ed [Model] Support Qwen-VL and Qwen-VL-Chat models with text-only inputs (#5710)
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-06-22 02:07:08 +00:00
Kunshang Ji
cf90ae0123 [CI][Hardware][Intel GPU] add Intel GPU(XPU) ci pipeline (#5616) 2024-06-21 17:09:34 -07:00
rohithkrn
f5dda63eb5 [LoRA] Add support for pinning lora adapters in the LRU cache (#5603) 2024-06-21 15:42:46 -07:00
youkaichao
7187507301 [ci][test] fix ca test in main (#5746) 2024-06-21 14:04:26 -07:00
zhyncs
f1e72cc19a [BugFix] exclude version 1.15.0 for modelscope (#5668) 2024-06-21 13:15:48 -06:00
Michael Goin
5b15bde539 [Doc] Documentation on supported hardware for quantization methods (#5745) 2024-06-21 12:44:29 -04:00
Roger Wang
bd620b01fb [Kernel][CPU] Add Quick gelu to CPU (#5717) 2024-06-21 06:39:40 +00:00
youkaichao
d9a252bc8e [Core][Distributed] add shm broadcast (#5399)
Co-authored-by: Cody Yu <hao.yu.cody@gmail.com>
2024-06-21 05:12:35 +00:00
Jee Li
67005a07bc [Bugfix] Add fully sharded layer for QKVParallelLinearWithLora (#5665)
Co-authored-by: Antoni Baum <antoni.baum@protonmail.com>
2024-06-21 04:46:28 +00:00
Chang Su
c35e4a3dd7 [BugFix] Fix test_phi3v.py (#5725) 2024-06-21 04:45:34 +00:00
Jinzhen Lin
1f5674218f [Kernel] Add punica dimension for Qwen2 LoRA (#5441) 2024-06-20 17:55:41 -07:00
Joshua Rosenkranz
b12518d3cf [Model] MLPSpeculator speculative decoding support (#4947)
Signed-off-by: Thomas Parnell <tpa@zurich.ibm.com>

Co-authored-by: Thomas Parnell <tpa@zurich.ibm.com>
Co-authored-by: Nick Hill <nickhill@us.ibm.com>
Co-authored-by: Davis Wertheimer <Davis.Wertheimer@ibm.com>
2024-06-20 20:23:12 -04:00
youkaichao
6c5b7af152 [distributed][misc] use fork by default for mp (#5669) 2024-06-20 17:06:34 -07:00
Michael Goin
8065a7e220 [Frontend] Add FlexibleArgumentParser to support both underscore and dash in names (#5718) 2024-06-20 17:00:13 -06:00
Tyler Michael Smith
3f3b6b2150 [Bugfix] Fix the CUDA version check for FP8 support in the CUTLASS kernels (#5715) 2024-06-20 18:36:10 +00:00
Varun Sundar Rabindranath
a7dcc62086 [Kernel] Update Cutlass int8 kernel configs for SM80 (#5275)
Co-authored-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
2024-06-20 13:33:21 +00:00
Roger Wang
ad137cd111 [Model] Port over CLIPVisionModel for VLMs (#5591) 2024-06-20 11:52:09 +00:00
Varun Sundar Rabindranath
111af1fa2c [Kernel] Update Cutlass int8 kernel configs for SM90 (#5514)
Co-authored-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
2024-06-20 06:37:08 +00:00
Roger Wang
1b2eaac316 [Bugfix][Doc] FIx Duplicate Explicit Target Name Errors (#5703) 2024-06-19 23:10:47 -07:00
Cyrus Leung
3730a1c832 [Misc] Improve conftest (#5681) 2024-06-19 19:09:21 -07:00
Kevin H. Luu
949e49a685 [ci] Limit num gpus if specified for A100 (#5694)
Signed-off-by: kevin <kevin@anyscale.com>
2024-06-19 16:30:03 -07:00
Dipika Sikka
4a30d7e3cc [Misc] Add per channel support for static activation quantization; update w8a8 schemes to share base classes (#5650) 2024-06-19 18:06:44 -04:00
Rafael Vasquez
e83db9e7e3 [Doc] Update docker references (#5614)
Signed-off-by: Rafael Vasquez <rafvasq21@gmail.com>
2024-06-19 15:01:45 -07:00
zifeitong
78687504f7 [Bugfix] AsyncLLMEngine hangs with asyncio.run (#5654) 2024-06-19 13:57:12 -07:00
youkaichao
d571ca0108 [ci][distributed] add tests for custom allreduce (#5689) 2024-06-19 20:16:04 +00:00
Michael Goin
afed90a034 [Frontend][Bugfix] Fix preemption_mode -> preemption-mode for CLI arg in arg_utils.py (#5688) 2024-06-19 14:41:42 -04:00
Kevin H. Luu
3ee5c4bca5 [ci] Add A100 queue into AWS CI template (#5648)
Signed-off-by: kevin <kevin@anyscale.com>
2024-06-19 08:42:13 -06:00
Cyrus Leung
e9c2732b97 [CI/Build] Add tqdm to dependencies (#5680) 2024-06-19 08:37:33 -06:00
DearPlanet
d8714530d1 [Misc]Add param max-model-len in benchmark_latency.py (#5629) 2024-06-19 18:19:08 +08:00
Isotr0py
7d46c8d378 [Bugfix] Fix sampling_params passed incorrectly in Phi3v example (#5684) 2024-06-19 17:58:32 +08:00
Michael Goin
da971ec7a5 [Model] Add FP8 kv cache for Qwen2 (#5656) 2024-06-19 09:38:26 +00:00
youkaichao
3eea74889f [misc][distributed] use 127.0.0.1 for single-node (#5619) 2024-06-19 08:05:00 +00:00
Hongxia Yang
f758aed0e8 [Bugfix][CI/Build][AMD][ROCm]Fixed the cmake build bug which generate garbage on certain devices (#5641) 2024-06-18 23:21:29 -07:00
Thomas Parnell
e5150f2c28 [Bugfix] Added test for sampling repetition penalty bug. (#5659)
Signed-off-by: Thomas Parnell <tpa@zurich.ibm.com>
2024-06-19 06:03:55 +00:00
Shukant Pal
59a1eb59c9 [Bugfix] Fix Phi-3 Long RoPE scaling implementation (#5628) 2024-06-19 01:46:38 +00:00
Tyler Michael Smith
6820724e51 [Bugfix] Fix w8a8 benchmarks for int8 case (#5643) 2024-06-19 00:33:25 +00:00
Tyler Michael Smith
b23ce92032 [Bugfix] Fix CUDA version check for mma warning suppression (#5642) 2024-06-18 23:48:49 +00:00
milo157
2bd231a7b7 [Doc] Added cerebrium as Integration option (#5553) 2024-06-18 15:56:59 -07:00
Thomas Parnell
8a173382c8 [Bugfix] Fix for inconsistent behaviour related to sampling and repetition penalties (#5639)
Signed-off-by: Thomas Parnell <tpa@zurich.ibm.com>
2024-06-18 14:18:37 -07:00
sergey-tinkoff
07feecde1a [Model] LoRA support added for command-r (#5178) 2024-06-18 11:01:21 -07:00
Kevin H. Luu
19091efc44 [ci] Setup Release pipeline and build release wheels with cache (#5610)
Signed-off-by: kevin <kevin@anyscale.com>
2024-06-18 11:00:36 -07:00
Dipika Sikka
95db455e7f [Misc] Add channel-wise quantization support for w8a8 dynamic per token activation quantization (#5542) 2024-06-18 12:45:05 -04:00
Ronen Schaffer
7879f24dcc [Misc] Add OpenTelemetry support (#4687)
This PR adds basic support for OpenTelemetry distributed tracing.
It includes changes to enable tracing functionality and improve monitoring capabilities.

I've also added a markdown with print-screens to guide users how to use this feature. You can find it here
2024-06-19 01:17:03 +09:00
Kevin H. Luu
13db4369d9 [ci] Deprecate original CI template (#5624)
Signed-off-by: kevin <kevin@anyscale.com>
2024-06-18 14:26:20 +00:00
Roger Wang
4ad7b53e59 [CI/Build][Misc] Update Pytest Marker for VLMs (#5623) 2024-06-18 13:10:04 +00:00
Chang Su
f0cc0e68e3 [Misc] Remove import from transformers logging (#5625) 2024-06-18 12:12:19 +00:00
youkaichao
db5ec52ad7 [bugfix][distributed] improve p2p capability test (#5612)
[bugfix][distributed] do not error if two processes do not agree on p2p capability (#5612)
2024-06-18 07:21:05 +00:00
Kuntai Du
114d7270ff [CI] Avoid naming different metrics with the same name in performance benchmark (#5615) 2024-06-17 21:37:18 -07:00
Cyrus Leung
32c86e494a [Misc] Fix typo (#5618) 2024-06-17 20:58:30 -07:00
youkaichao
8eadcf0b90 [misc][typo] fix typo (#5620) 2024-06-17 20:54:57 -07:00
Joe Runde
5002175e80 [Kernel] Add punica dimensions for Granite 13b (#5559)
Signed-off-by: Joe Runde <Joseph.Runde@ibm.com>
2024-06-18 03:54:11 +00:00
Isotr0py
daef218b55 [Model] Initialize Phi-3-vision support (#4986) 2024-06-17 19:34:33 -07:00
sroy745
fa9e385229 [Speculative Decoding 1/2 ] Add typical acceptance sampling as one of the sampling techniques in the verifier (#5131) 2024-06-17 21:29:09 -05:00
zifeitong
26e1188e51 [Fix] Use utf-8 encoding in entrypoints/openai/run_batch.py (#5606) 2024-06-17 23:16:10 +00:00
Bruce Fontaine
a3e8a05d4c [Bugfix] Fix KV head calculation for MPT models when using GQA (#5142) 2024-06-17 15:26:41 -07:00
youkaichao
e441bad674 [Optimization] use a pool to reuse LogicalTokenBlock.token_ids (#5584) 2024-06-17 22:08:05 +00:00
youkaichao
1b44aaf4e3 [bugfix][distributed] fix 16 gpus local rank arrangement (#5604) 2024-06-17 21:35:04 +00:00
Kuntai Du
9e4e6fe207 [CI] the readability of benchmarking and prepare for dashboard (#5571)
[CI] Improve the readability of performance benchmarking results and prepare for upcoming performance dashboard (#5571)
2024-06-17 11:41:08 -07:00
Jie Fu (傅杰)
ab66536dbf [CI/BUILD] Support non-AVX512 vLLM building and testing (#5574) 2024-06-17 14:36:10 -04:00
Kunshang Ji
728c4c8a06 [Hardware][Intel GPU] Add Intel GPU(XPU) inference backend (#3814)
Co-authored-by: Jiang Li <jiang1.li@intel.com>
Co-authored-by: Abhilash Majumder <abhilash.majumder@intel.com>
Co-authored-by: Abhilash Majumder <30946547+abhilash1910@users.noreply.github.com>
2024-06-17 11:01:25 -07:00
zhyncs
1f12122b17 [Misc] use AutoTokenizer for benchmark serving when vLLM not installed (#5588) 2024-06-17 09:40:35 -07:00
Dipika Sikka
890d8d960b [Kernel] compressed-tensors marlin 24 support (#5435) 2024-06-17 12:32:48 -04:00
Charles Riggins
9e74d9d003 Correct alignment in the seq_len diagram. (#5592)
Co-authored-by: Liqian Chen <liqian.chen@deeplang.ai>
2024-06-17 12:05:33 -04:00
Amit Garg
9333fb8eb9 [Model] Rename Phi3 rope scaling type (#5595) 2024-06-17 12:04:14 -04:00
Cody Yu
e2b85cf86a Fix w8a8 benchmark and add Llama-3-8B (#5562) 2024-06-17 06:48:06 +00:00
youkaichao
845a3f26f9 [Doc] add debugging tips for crash and multi-node debugging (#5581) 2024-06-17 10:08:01 +08:00
youkaichao
f07d513320 [build][misc] limit numpy version (#5582) 2024-06-16 16:07:01 -07:00
Michael Goin
4a6769053a [CI][BugFix] Flip is_quant_method_supported condition (#5577) 2024-06-16 14:07:34 +00:00
Antoni Baum
f31c1f90e3 Add basic correctness 2 GPU tests to 4 GPU pipeline (#5518) 2024-06-16 07:48:02 +00:00
zifeitong
3ce2c050dd [Fix] Correct OpenAI batch response format (#5554) 2024-06-15 16:57:54 -07:00
Nick Hill
1c0afa13c5 [BugFix] Don't start a Ray cluster when not using Ray (#5570) 2024-06-15 16:30:51 -07:00
Alexander Matveev
d919ecc771 add gptq_marlin test for bug report https://github.com/vllm-project/vllm/issues/5088 (#5145) 2024-06-15 13:38:16 -04:00
SangBin Cho
e691918e3b [misc] Do not allow to use lora with chunked prefill. (#5538)
Co-authored-by: Cyrus Leung <tlleungac@connect.ust.hk>
2024-06-15 14:59:36 +00:00
Cyrus Leung
81fbb3655f [CI/Build] Test both text and token IDs in batched OpenAI Completions API (#5568) 2024-06-15 07:29:42 -04:00
Cyrus Leung
0e9164b40a [mypy] Enable type checking for test directory (#5017) 2024-06-15 04:45:31 +00:00
leiwen83
1b8a0d71cf [Core][Bugfix]: fix prefix caching for blockv2 (#5364)
Signed-off-by: Lei Wen <wenlei03@qiyi.com>
Co-authored-by: Lei Wen <wenlei03@qiyi.com>
2024-06-14 17:23:56 -07:00
Simon Mo
bd7efe95d0 Add ccache to amd (#5555) 2024-06-14 17:18:22 -07:00
youkaichao
f5bb85b435 [Core][Distributed] improve p2p cache generation (#5528) 2024-06-14 14:47:45 -07:00
Woosuk Kwon
28c145eb57 [Bugfix] Fix typo in Pallas backend (#5558) 2024-06-14 14:40:09 -07:00
Thomas Parnell
e2afb03c92 [Bugfix] Enable loading FP8 checkpoints for gpt_bigcode models (#5460)
Signed-off-by: Thomas Parnell <tpa@zurich.ibm.com>
2024-06-14 20:28:11 +00:00
Sanger Steel
6e2527a7cb [Doc] Update documentation on Tensorizer (#5471) 2024-06-14 11:27:57 -07:00
Simon Mo
cdab68dcdb [Docs] Add ZhenFund as a Sponsor (#5548) 2024-06-14 11:17:21 -07:00
youkaichao
d1c3d7d139 [misc][distributed] fix benign error in is_in_the_same_node (#5512) 2024-06-14 10:59:28 -07:00
Cyrus Leung
77490c6f2f [Core] Remove duplicate processing in async engine (#5525) 2024-06-14 10:04:42 -07:00
youkaichao
48f589e18b [mis] fix flaky test of test_cuda_device_count_stateless (#5546) 2024-06-14 10:02:23 -07:00
Tyler Michael Smith
348616ac4b [Kernel] Suppress mma.sp warning on CUDA 12.5 and later (#5401) 2024-06-14 10:02:00 -07:00
Robert Shaw
15985680e2 [ Misc ] Rs/compressed tensors cleanup (#5432)
Co-authored-by: mgoin <michael@neuralmagic.com>
Co-authored-by: Dipika Sikka <dipikasikka1@gmail.com>
2024-06-14 10:01:46 -07:00
Allen.Dou
d74674bbd9 [Misc] Fix arg names (#5524) 2024-06-14 09:47:44 -07:00
Tyler Michael Smith
703475f6c2 [Kernel] Fix CUTLASS 3.x custom broadcast load epilogue (#5516) 2024-06-14 09:30:15 -07:00
Cyrus Leung
d47af2bc02 [CI/Build] Disable LLaVA-NeXT CPU test (#5529) 2024-06-14 09:27:30 -07:00
Kuntai Du
319ad7f1d3 [CI/Build][Misc] Add CI that benchmarks vllm performance on those PRs with perf-benchmarks label (#5073)
Co-authored-by: simon-mo <simon.mo@hey.com>
2024-06-13 22:36:20 -07:00
Simon Mo
0f0d8bc065 bump version to v0.5.0.post1 (#5522) 2024-06-13 19:42:06 -07:00
Allen.Dou
55d6361b13 [Misc] Fix arg names in quantizer script (#5507) 2024-06-13 19:02:53 -07:00
Jie Fu (傅杰)
cd9c0d65d9 [Hardware][Intel] Support CPU inference with AVX2 ISA (#5452) 2024-06-13 17:22:24 -06:00
Antoni Baum
50eed24d25 Add cuda_device_count_stateless (#5473)
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2024-06-13 16:06:49 -07:00
Tyler Michael Smith
e38042d4af [Kernel] Disable CUTLASS kernels for fp8 (#5505) 2024-06-13 13:38:05 -07:00
Tyler Michael Smith
33e3b37242 [CI/Build] Disable test_fp8.py (#5508) 2024-06-13 13:37:48 -07:00
youkaichao
1696efe6c9 [misc] fix format.sh (#5511) 2024-06-13 12:09:16 -07:00
Antoni Baum
6b0511a57b Revert "[Core] Remove unnecessary copies in flash attn backend" (#5478) 2024-06-13 11:22:50 -07:00
Antoni Baum
a8fda4f661 Seperate dev requirements into lint and test (#5474) 2024-06-13 11:22:41 -07:00
Cody Yu
30299a41fa [MISC] Remove FP8 warning (#5472)
Co-authored-by: Philipp Moritz <pcmoritz@gmail.com>
2024-06-13 11:22:30 -07:00
Tyler Michael Smith
85657b5607 [Kernel] Factor out epilogues from cutlass kernels (#5391)
Co-authored-by: Michael Goin <michael@neuralmagic.com>
Co-authored-by: youkaichao <youkaichao@gmail.com>
Co-authored-by: zifeitong <zifei.tong@parasail.io>
Co-authored-by: Robert Shaw <114415538+robertgshaw2-neuralmagic@users.noreply.github.com>
2024-06-13 11:22:19 -07:00
Cyrus Leung
0ce7b952f8 [Doc] Update LLaVA docs (#5437)
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-06-13 11:22:07 -07:00
Cyrus Leung
39873476f8 [CI/Build] Simplify OpenAI server setup in tests (#5100) 2024-06-13 11:21:53 -07:00
Cyrus Leung
03dccc886e [Misc] Add vLLM version getter to utils (#5098) 2024-06-13 11:21:39 -07:00
Woosuk Kwon
a65634d3ae [Docs] Add 4th meetup slides (#5509) 2024-06-13 10:18:26 -07:00
Li, Jiang
80aa7e91fc [Hardware][Intel] Optimize CPU backend and add more performance tips (#4971)
Co-authored-by: Jianan Gu <jianan.gu@intel.com>
2024-06-13 09:33:14 -07:00
wenyujin333
bd43973522 [Kernel] Tune Qwen2MoE kernel configurations with tp2,4 (#5497)
Tune Qwen2-57B-A14B configs based on #4921

Throughput Performance
command: python benchmarks/benchmark_throughput.py --model=Qwen/Qwen2-57B-A14B-Instruct --input-len 1000 --output-len 50 -tp 2

A100 GPU

benchmark	no config	w/ PR
tp=2	10.53 requests/s, 11058.17 tokens/s	12.47 requests/s, 13088.57 tokens/s
tp=4	17.77 requests/s, 18662.95 tokens/s	20.20 requests/s, 21212.32 tokens/s
2024-06-13 09:01:10 -07:00
Michael Goin
23ec72fa03 [CI/Build][REDO] Add is_quant_method_supported to control quantization test configurations (#5466) 2024-06-13 15:18:08 +00:00
Dipika Sikka
c2637a613b [Kernel] w4a16 support for compressed-tensors (#5385)
Co-authored-by: Robert Shaw <114415538+robertgshaw2-neuralmagic@users.noreply.github.com>
2024-06-13 10:19:56 -04:00
Wang, Yi
88407532e7 [Bugfix]if the content is started with ":"(response of ping), client should i… (#5303)
Signed-off-by: Wang, Yi A <yi.a.wang@intel.com>
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-06-12 20:16:41 -07:00
Kevin H. Luu
916d219d62 [ci] Use sccache to build images (#5419)
Signed-off-by: kevin <kevin@anyscale.com>
2024-06-12 17:58:12 -07:00
youkaichao
ea3890a5f0 [Core][Distributed] code deduplication in tp&pp with coordinator(#5293)
[Core][Distributed] add coordinator to reduce code duplication in tp and pp (#5293)
2024-06-12 17:27:08 -07:00
Isotr0py
2135cacb45 [Bugfix] Fix wrong multi_modal_input format for CPU runner (#5451) 2024-06-12 16:20:18 -07:00
Michael Goin
7d19de2e9c [Frontend] Add "input speed" to tqdm postfix alongside output speed (#5425) 2024-06-12 18:42:12 -04:00
Michael Goin
94a07bbdd8 [Bugfix] Fix typo in scheduler.py (requeset -> request) (#5470) 2024-06-12 21:59:44 +00:00
Cyrus Leung
b8d4dfff9c [Doc] Update debug docs (#5438) 2024-06-12 14:49:31 -07:00
youkaichao
622d45128c [misc] add hint for AttributeError (#5462) 2024-06-12 21:46:35 +00:00
Travis Johnson
51602eefd3 [Frontend] [Core] Support for sharded tensorized models (#4990)
Signed-off-by: Travis Johnson <tsjohnso@us.ibm.com>
Co-authored-by: Sanger Steel <sangersteel@gmail.com>
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-06-12 14:13:52 -07:00
Arthur Kim
5cc50a531f [Bugfix] TYPE_CHECKING for MultiModalData (#5444) 2024-06-12 14:08:52 -07:00
Cody Yu
5985e3427d [Kernel] Vectorized FP8 quantize kernel (#5396)
Inspired by #5146, this PR improves FP8 quantize kernel by vectorizing data transfer to better utilize memory bandwidth. Microbenchmark shows that this improved kernel can achieve 1.0x-1.5x speedup (especially when hidden size is large).

In details, we applied 3 optimizations:

- Use inverted scale so that most divisions are changed to multiplications.
- Unroll the loop by 4 times to improve ILP.
- Use vectorized 4 to transfer data between HBM and SRAM.
2024-06-12 14:07:26 -07:00
Kevin H. Luu
8b82a89997 [ci] Add AMD, Neuron, Intel tests for AWS CI and turn off default soft fail for GPU tests (#5464)
Signed-off-by: kevin <kevin@anyscale.com>
2024-06-12 14:00:18 -07:00
Li, Jiang
c3c2903e72 [Bugfix] Add device assertion to TorchSDPA (#5402) 2024-06-12 12:58:53 -07:00
Woosuk Kwon
1a8bfd92d5 [Hardware] Initial TPU integration (#5292) 2024-06-12 11:53:03 -07:00
SangBin Cho
847cdcca1c [CI] Upgrade codespell version. (#5381) 2024-06-12 10:06:14 -07:00
Simon Mo
e3c12bf6d2 Revert "[CI/Build] Add is_quant_method_supported to control quantization test configurations" (#5463) 2024-06-12 10:03:24 -07:00
Michael Goin
3dd6853bc8 [CI/Build] Add is_quant_method_supported to control quantization test configurations (#5253) 2024-06-12 09:58:02 -07:00
youkaichao
8f89d72090 [Doc] add common case for long waiting time (#5430)
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2024-06-11 11:12:13 -07:00
Nick Hill
99dac099ab [Core][Doc] Default to multiprocessing for single-node distributed case (#5230)
Co-authored-by: Antoni Baum <antoni.baum@protonmail.com>
2024-06-11 11:10:41 -07:00
youkaichao
c4bd03c7c5 [Core][Distributed] add same-node detection (#5369) 2024-06-11 10:53:59 -07:00
sasha0552
dcbf4286af [Frontend] Customizable RoPE theta (#5197) 2024-06-11 10:42:26 -07:00
Ali Panahi
00e6a2dc53 [Bugfix] fix lora_dtype value type in arg_utils.py (#5398) 2024-06-11 10:40:23 -07:00
Junichi Sato
2e02311a1b [Bugfix] Fix MultiprocessingGPUExecutor.check_health when world_size == 1 (#5254) 2024-06-11 10:38:07 -07:00
Cade Daniel
89ec06c33b [Docs] [Spec decode] Fix docs error in code example (#5427) 2024-06-11 10:31:56 -07:00
Kuntai Du
9fde251bf0 [Doc] Add an automatic prefix caching section in vllm documentation (#5324)
Co-authored-by: simon-mo <simon.mo@hey.com>
2024-06-11 10:24:59 -07:00
Cade Daniel
4c2ffb28ff [Speculative decoding] Initial spec decode docs (#5400) 2024-06-11 10:15:40 -07:00
SangBin Cho
246598a6b1 [CI] docfix (#5410)
Co-authored-by: DarkLight1337 <tlleungac@connect.ust.hk>
Co-authored-by: ywang96 <ywang@roblox.com>
2024-06-11 01:28:50 -07:00
Woosuk Kwon
8bab4959be [Misc] Remove VLLM_BUILD_WITH_NEURON env variable (#5389) 2024-06-11 00:37:56 -07:00
Roger Wang
3c4cebf751 [Doc][Typo] Fixing Missing Comma (#5403) 2024-06-11 00:20:28 -07:00
youkaichao
d8f31f2f8b [Doc] add debugging tips (#5409) 2024-06-10 23:21:43 -07:00
Cyrus Leung
640052b069 [Bugfix][Frontend] Cleanup "fix chat logprobs" (#5026) 2024-06-10 22:36:46 -07:00
maor-ps
351d5e7b82 [Bugfix] OpenAI entrypoint limits logprobs while ignoring server defined --max-logprobs (#5312)
Co-authored-by: DarkLight1337 <tlleungac@connect.ust.hk>
2024-06-11 10:30:31 +08:00
Nick Hill
a008629807 [Misc] Various simplifications and typing fixes (#5368) 2024-06-11 10:29:02 +08:00
Kevin H. Luu
76477a93b7 [ci] Fix Buildkite agent path (#5392)
Signed-off-by: kevin <kevin@anyscale.com>
2024-06-10 18:58:07 -07:00
Michael Goin
77c87beb06 [Doc] Add documentation for FP8 W8A8 (#5388) 2024-06-10 18:55:12 -06:00
Simon Mo
114332b88e Bump version to v0.5.0 (#5384) 2024-06-10 15:56:06 -07:00
Woosuk Kwon
cb77ad836f [Docs] Alphabetically sort sponsors (#5386) 2024-06-10 15:17:19 -05:00
Roger Wang
856c990041 [Docs] Add Docs on Limitations of VLM Support (#5383) 2024-06-10 09:53:50 -07:00
Kevin H. Luu
c5602f0baa [ci] Mount buildkite agent on Docker container to upload benchmark results (#5330)
Signed-off-by: kevin <kevin@anyscale.com>
2024-06-10 09:22:34 -07:00
Kevin H. Luu
f7f9c5f97b [ci] Use small_cpu_queue for doc build (#5331)
Signed-off-by: kevin <kevin@anyscale.com>
2024-06-10 09:21:11 -07:00
Cyrus Leung
2c0d933594 [Bugfix] Fix LLaVA-NeXT (#5380) 2024-06-10 15:38:47 +00:00
Itay Etelis
774d1035e4 [Feature][Frontend]: Continued stream_options implementation also in CompletionRequest (#5319) 2024-06-10 14:22:09 +00:00
Cyrus Leung
6b29d6fe70 [Model] Initial support for LLaVA-NeXT (#4199)
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-06-10 12:47:15 +00:00
Cyrus Leung
0bfa1c4f13 [Misc] Improve error message when LoRA parsing fails (#5194) 2024-06-10 19:38:49 +08:00
youkaichao
c81da5f56d [misc][typo] fix typo (#5372) 2024-06-10 09:51:02 +00:00
Roger Wang
68bc81703e [Frontend][Misc] Enforce Pixel Values as Input Type for VLMs in API Server (#5374) 2024-06-10 09:13:39 +00:00
Dipika Sikka
5884c2b454 [Misc] Update to comply with the new compressed-tensors config (#5350)
Co-authored-by: Michael Goin <michael@neuralmagic.com>
2024-06-10 03:49:46 +00:00
Bla_ckB
45f92c00cf [Bugfix] Fix KeyError: 1 When Using LoRA adapters (#5164) 2024-06-09 16:23:14 -07:00
bnellnm
5467ac3196 [Kernel][Misc] Use TORCH_LIBRARY instead of PYBIND11_MODULE for custom ops (#5047) 2024-06-09 16:23:30 -04:00
youkaichao
5d7e3d0176 [mis][ci/test] fix flaky test in test_sharded_state_loader.py (#5361)
[mis][ci/test] fix flaky test in tests/test_sharded_state_loader.py (#5361)
2024-06-09 03:50:14 +00:00
youkaichao
0373e1837e [Core][CUDA Graph] add output buffer for cudagraph (#5074)
[Core][CUDA Graph] add output buffer for cudagraph to reduce memory footprint (#5074)
2024-06-08 19:14:43 -07:00
Michael Goin
c09dade2a2 [Misc][Breaking] Change FP8 checkpoint format from act_scale -> input_scale (#5353) 2024-06-08 13:54:05 -04:00
youkaichao
8ea5e44a43 [CI/Test] improve robustness of test (vllm_runner) (#5357)
[CI/Test] improve robustness of test by replacing del with context manager (vllm_runner) (#5357)
2024-06-08 08:59:20 +00:00
youkaichao
9fb900f90c [CI/Test] improve robustness of test (hf_runner) (#5347)
[CI/Test] improve robustness of test by replacing del with context manager (hf_runner) (#5347)
2024-06-07 22:31:32 -07:00
Hongxia Yang
c96fc06747 [ROCm][AMD] Use pytorch sdpa math backend to do naive attention (#4965) 2024-06-07 19:13:12 -07:00
Benjamin Kitor
b3376e5c76 [Misc] Add args for selecting distributed executor to benchmarks (#5335) 2024-06-08 09:20:16 +08:00
Cheng Li
e69ded7d1c [Bug Fix] Fix the support check for FP8 CUTLASS (#5352)
Bug description:
With torch 2.4.0.dev20240603+cu121,
cutlass_fp8_supported outputs False, and the (capability, version) before the comparison is (90, 11111111112)

This PR fixes the support check for FP8 CUTLASS ( cutlass_fp8_supported) which was introduced in https://github.com/vllm-project/vllm/pull/5183.
2024-06-08 00:42:05 +00:00
Calvinn Ng
767c727a81 fix DbrxFusedNormAttention missing cache_config (#5340)
Co-authored-by: team <calvinn.ng@ahrefs.com>
2024-06-07 14:10:21 -07:00
Jie Fu (傅杰)
6840a71610 [Misc] Remove unused cuda_utils.h in CPU backend (#5345) 2024-06-07 14:09:13 -07:00
Roger Wang
7a9cb294ae [Frontend] Add OpenAI Vision API Support (#5237)
Co-authored-by: DarkLight1337 <tlleungac@connect.ust.hk>
2024-06-07 11:23:32 -07:00
Dipika Sikka
ca3ea51bde [Kernel] Dynamic Per-Token Activation Quantization (#5037)
Co-authored-by: Varun Sundar Rabindranath <varunsundar08@gmail.com>
Co-authored-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
2024-06-07 09:36:26 -07:00
limingshu
dc49fb892c Addition of lacked ignored_seq_groups in _schedule_chunked_prefill (#5296) 2024-06-07 13:35:42 +00:00
Antoni Baum
18a277b52d Remove Ray health check (#4693) 2024-06-07 10:01:56 +00:00
Tyler Michael Smith
8d75fe48ca [Kernel] Switch fp8 layers to use the CUTLASS kernels (#5183)
Switching from torch._scaled_mm to vLLM's cutlass fp8 kernels when supported as we are seeing 5-15% improvement in e2e performance on neuralmagic/Meta-Llama-3-8B-Instruct-FP8

see https://docs.google.com/spreadsheets/d/1GiAnmzyGHgZ6zL_LDSTm35Bdrt4A8AaFEurDlISYYA4/ for some quick e2e benchmarks and #5144 for comparisons across different GEMM sizes.
2024-06-07 08:42:35 +00:00
youkaichao
388596c914 [Misc][Utils] allow get_open_port to be called for multiple times (#5333) 2024-06-06 22:15:11 -07:00
Itay Etelis
baa15a9ec3 [Feature][Frontend]: Add support for stream_options in ChatCompletionRequest (#5135) 2024-06-07 03:29:24 +00:00
Jie Fu (傅杰)
15063741e3 [Misc] Missing error message for custom ops import (#5282) 2024-06-06 20:17:21 -07:00
Antoni Baum
ccdc490dda [Core] Change LoRA embedding sharding to support loading methods (#5038) 2024-06-06 19:07:57 -07:00
Antoni Baum
a31cab7556 [Core] Avoid copying prompt/output tokens if no penalties are used (#5289) 2024-06-06 18:12:00 -07:00
Matthew Goldey
828da0d44e [Frontend] enable passing multiple LoRA adapters at once to generate() (#5300) 2024-06-06 15:48:13 -05:00
Philipp Moritz
abe855d637 [Kernel] Retune Mixtral 8x22b configs for FP8 on H100 (#5294) 2024-06-06 09:29:29 -07:00
liuyhwangyh
4efff036f0 Bugfix: fix broken of download models from modelscope (#5233)
Co-authored-by: mulin.lyh <mulin.lyh@taobao.com>
2024-06-06 09:28:10 -07:00
Cyrus Leung
89c920785f [CI/Build] Update vision tests (#5307) 2024-06-06 05:17:18 -05:00
Breno Faria
7b0a0dfb22 [Frontend][Core] Update Outlines Integration from FSM to Guide (#4109)
Co-authored-by: Simon Mo <simon.mo@hey.com>
Co-authored-by: Breno Faria <breno.faria@intrafind.com>
2024-06-05 16:49:12 -07:00
Simon Mo
3a6ae1d33c [CI] Disable flash_attn backend for spec decode (#5286) 2024-06-05 15:49:27 -07:00
Simon Mo
8f1729b829 [Docs] Add Ray Summit CFP (#5295) 2024-06-05 15:25:18 -07:00
Woosuk Kwon
6a7c7711a2 [Misc] Skip for logits_scale == 1.0 (#5291) 2024-06-05 15:19:02 -07:00
Alex Wu
0f83ddd4d7 [Bugfix][Frontend/Core] Don't log exception when AsyncLLMEngine gracefully shuts down. (#5290) 2024-06-05 15:18:12 -07:00
Michael Goin
065aff6c16 [Bugfix] Make EngineArgs use named arguments for config construction (#5285) 2024-06-05 15:16:56 -07:00
Nick Hill
3d33e372a1 [BugFix] Fix log message about default max model length (#5284) 2024-06-05 14:53:16 -07:00
Nick Hill
faf71bcd4b [Speculative Decoding] Add ProposerWorkerBase abstract class (#5252) 2024-06-05 14:53:05 -07:00
Simon Mo
f270a39537 [Docs] Add Sequoia as sponsors (#5287) 2024-06-05 18:02:56 +00:00
Philipp Moritz
51a08e7d8f [Kernel] Re-tune Mixtral MoE configurations for FP8 on H100 (#5238) 2024-06-05 10:59:14 -07:00
DriverSong
eb8fcd2666 [BugFix] Apply get_cached_tokenizer to the tokenizer setter of LLM (#5207)
Co-authored-by: qiujiawei9 <qiujiawei9@jd.com>
2024-06-05 10:59:02 -07:00
Cody Yu
5563a4dea8 [Model] Correct Mixtral FP8 checkpoint loading (#5231) 2024-06-05 10:58:50 -07:00
Tyler Michael Smith
ccd4f129e8 [Kernel] Add GPU architecture guards to the CUTLASS w8a8 kernels to reduce binary size (#5157)
Co-authored-by: Cody Yu <hao.yu.cody@gmail.com>
2024-06-05 10:44:15 -07:00
Tyler Michael Smith
02cc3b51a7 [misc] benchmark_serving.py -- add ITL results and tweak TPOT results (#5263) 2024-06-05 10:17:51 -07:00
Simon Mo
d5b1eb081e [CI] Add nightly benchmarks (#5260) 2024-06-05 09:42:08 -07:00
tomeras91
f0a500545f [Frontend] OpenAI API server: Add add_special_tokens to ChatCompletionRequest (default False) (#5278) 2024-06-05 09:32:58 -07:00
Woosuk Kwon
c65146e75e [Misc] Fix docstring of get_attn_backend (#5271) 2024-06-05 09:18:59 -07:00
Woosuk Kwon
41ca62cf03 [Misc] Add CustomOp interface for device portability (#5255) 2024-06-05 09:18:19 -07:00
zifeitong
974fc9b845 [Bugfix] Fix prompt_logprobs when SamplingParams.detokenize is set to True (#5226) 2024-06-04 19:37:28 -07:00
youkaichao
fee4dcc33a [Misc] update collect env (#5261) 2024-06-04 17:29:09 -05:00
Michael Goin
650a4cc55e [Misc] Add transformers version to collect_env.py (#5259) 2024-06-04 12:52:28 -07:00
Simon Mo
9ca62d8668 [CI] mark AMD test as softfail to prevent blockage (#5256) 2024-06-04 11:34:53 -07:00
Li, Jiang
45c35f0d58 [CI/Build] Reducing CPU CI execution time (#5241) 2024-06-04 10:26:40 -07:00
Cyrus Leung
9ba093b4f4 [CI/Build] Simplify model loading for HfRunner (#5251) 2024-06-04 10:09:19 -07:00
Woosuk Kwon
27208be66e [Kernel] Add back batch size 1536 and 3072 to MoE tuning (#5242) 2024-06-04 09:58:47 -07:00
Jie Fu (傅杰)
87d5abef75 [Bugfix] Fix a bug caused by pip install setuptools>=49.4.0 for CPU backend (#5249) 2024-06-04 09:57:51 -07:00
Cyrus Leung
ec784b2526 [CI/Build] Add inputs tests (#5215) 2024-06-03 21:01:46 -07:00
zifeitong
a58f24e590 [Bugfix] Fix torch.compile() error when using MultiprocessingGPUExecutor (#5229) 2024-06-03 20:55:50 -07:00
afeldman-nm
f42a006b15 [Bugfix]: During testing, use pytest monkeypatch for safely overriding the env var that indicates the vLLM backend (#5210) 2024-06-03 20:32:57 -07:00
Woosuk Kwon
3a434b07ed [Kernel] Enhance MoE benchmarking & tuning script (#4921) 2024-06-03 20:06:59 -07:00
Zhuohan Li
bd0e7802e0 [Bugfix] Add warmup for prefix caching example (#5235) 2024-06-03 19:36:41 -07:00
Toshiki Kataoka
06b2550cbb [Bugfix] Support prompt_logprobs==0 (#5217) 2024-06-03 17:59:30 -07:00
Breno Faria
f775a07e30 [FRONTEND] OpenAI tools support named functions (#5032) 2024-06-03 18:25:29 -05:00
Kevin H. Luu
4f0d17c05c New CI template on AWS stack (#5110)
Signed-off-by: kevin <kevin@anyscale.com>
2024-06-03 16:16:43 -07:00
Kaiyang Chen
10c38e3e46 [Misc]: Implement CPU/GPU swapping in BlockManagerV2 (#3834) 2024-06-03 13:37:11 -07:00
Yuan
cafb8e06c5 [CI/BUILD] enable intel queue for longer CPU tests (#4113) 2024-06-03 10:39:50 -07:00
Tyler Michael Smith
cbb2f59cc8 [Kernel] Pass a device pointer into the quantize kernel for the scales (#5159) 2024-06-03 09:52:30 -07:00
Antoni Baum
0ab278ca31 [Core] Remove unnecessary copies in flash attn backend (#5138) 2024-06-03 09:39:31 -07:00
Cyrus Leung
7a64d24aad [Core] Support image processor (#4197) 2024-06-02 22:56:41 -07:00
Cyrus Leung
dfbe60dc62 [Misc] Simplify code and fix type annotations in conftest.py (#5118) 2024-06-02 16:05:50 -07:00
Divakar Verma
a66cf40b20 [Kernel][ROCm][AMD] enable fused topk_softmax kernel for moe layer (#4927)
This PR enables the fused topk_softmax kernel used in moe layer for HIP
2024-06-02 14:13:26 -07:00
Avinash Raj
f790ad3c50 [Frontend][OpenAI] Support for returning max_model_len on /v1/models response (#4643) 2024-06-02 08:06:13 +00:00
Simon Mo
ed59a7ed23 Update test_ignore_eos (#4898) 2024-06-02 02:21:53 +00:00
Robert Shaw
044793d8df [BugFix] Prevent LLM.encode for non-generation Models (#5184)
Co-authored-by: mgoin <michael@neuralmagic.com>
2024-06-01 23:35:41 +00:00
Daniil Arapov
c2d6d2f960 [Bugfix]: Fix issues related to prefix caching example (#5177) (#5180) 2024-06-01 15:53:52 -07:00
Zhuohan Li
8279078e21 [Bugfix] Remove deprecated @abstractproperty (#5174) 2024-06-01 22:40:25 +00:00
chenqianfzh
b9c0605a8e [Feature][Kernel] Support bitsandbytes quantization and QLoRA (#4776) 2024-06-01 14:51:10 -06:00
Nadav Shmayovits
37464a0f74 [Bugfix] Fix call to init_logger in openai server (#4765) 2024-06-01 17:18:50 +00:00
Ye Cao
c354072828 [Minor] Fix the path typo in loader.py: save_sharded_states.py -> save_sharded_state.py (#5151)
Signed-off-by: Ye Cao <caoye.cao@alibaba-inc.com>
2024-06-01 17:11:22 +00:00
Varun Sundar Rabindranath
f081c3ce4b [Kernel] Update Cutlass fp8 configs (#5144)
Co-authored-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
Co-authored-by: Robert Shaw <114415538+robertgshaw2-neuralmagic@users.noreply.github.com>
2024-06-01 08:46:07 +00:00
Tyler Michael Smith
260d119e86 [Kernel] Refactor CUTLASS kernels to always take scales that reside on the GPU (#5137) 2024-06-01 06:45:32 +00:00
Daniele
a360ff80bb [CI/Build] CMakeLists: build all extensions' cmake targets at the same time (#5034) 2024-05-31 22:06:45 -06:00
Tyler Michael Smith
1197e02141 [Build] Guard against older CUDA versions when building CUTLASS 3.x kernels (#5168)
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2024-05-31 17:21:38 -07:00
Nick Hill
657579113f [Doc] Add checkmark for GPTBigCodeForCausalLM LoRA support (#5171) 2024-05-31 17:20:19 -07:00
Cody Yu
e9899fb7a4 [Model] Enable FP8 QKV in MoE and refine kernel tuning script (#5039) 2024-05-31 14:29:19 -07:00
functionxu123
a377f0bd5e [Misc]: optimize eager mode host time (#4196)
Co-authored-by: xuhao <xuhao@cambricon.com>
2024-05-31 13:14:50 +08:00
Simon Mo
e9d3aa04f6 Revert "[Kernel] Marlin_24: Ensure the mma.sp instruction is using the ::ordered_metadata modifier (introduced with PTX 8.5)" (#5149) 2024-05-30 22:00:26 -07:00
SnowDist
a22dea54d3 [Model] Support MAP-NEO model (#5081)
Co-authored-by: Zhuohan Li <zhuohan123@gmail.com>
2024-05-30 19:24:41 -07:00
simon-mo
533c217792 Fix cutlass sm_90a vesrion in CMakeList 2024-05-31 02:13:01 +00:00
Alexander Matveev
6d21fa1cad [Kernel] Marlin_24: Ensure the mma.sp instruction is using the ::ordered_metadata modifier (introduced with PTX 8.5) (#5136) 2024-05-30 21:02:11 -05:00
Robert Shaw
b35be5403f [Bugfix] Avoid Warnings in SparseML Activation Quantization (#5120) 2024-05-30 17:04:37 -07:00
Simon Mo
45a1a69b98 [Build] Disable sm_90a in cu11 (#5141) 2024-05-30 14:37:16 -07:00
Simon Mo
87a658c812 Bump version to v0.4.3 (#5046) 2024-05-30 11:13:46 -07:00
Chansung Park
429d89720e add doc about serving option on dstack (#3074)
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-05-30 10:11:07 -07:00
Cyrus Leung
a9bcc7afb2 [Doc] Use intersphinx and update entrypoints docs (#5125) 2024-05-30 09:59:23 -07:00
Hyunsung Lee
d79d9eaaff [Misc] remove duplicate definition of seq_lens_tensor in model_runner.py (#5129) 2024-05-30 06:56:19 -07:00
youkaichao
f758505c73 [CI/Build] increase wheel size limit to 200 MB (#5130) 2024-05-30 06:29:48 -07:00
Robert Shaw
d910816c73 [Bugfix] Automatically Detect SparseML models (#5119) 2024-05-30 12:58:37 +00:00
Breno Faria
87d41c849d [BUGFIX] [FRONTEND] Correct chat logprobs (#5029)
Co-authored-by: Breno Faria <breno.faria@intrafind.com>
2024-05-30 02:52:14 -07:00
omkar kakarparthi
e07aff9e52 [CI/Build] Docker cleanup functionality for amd servers (#5112)
Co-authored-by: Alexey Kondratiev <alexey.kondratiev@amd.com>
Co-authored-by: Alexei-V-Ivanov-AMD <156011006+Alexei-V-Ivanov-AMD@users.noreply.github.com>
Co-authored-by: Alexei V. Ivanov <alexei.ivanov@amd.com>
Co-authored-by: omkarkakarparthi <okakarpa>
2024-05-30 03:27:39 +00:00
Alexander Matveev
5bf185a1c4 [Bugfix] gptq_marlin: Ensure g_idx_sort_indices is not a Parameter (#5108) 2024-05-30 00:30:18 +00:00
youkaichao
4fbcb0f27e [Doc][Build] update after removing vllm-nccl (#5103)
Co-authored-by: Roger Wang <136131678+ywang96@users.noreply.github.com>
2024-05-29 23:51:18 +00:00
Itay Etelis
7c3604fb68 [Bugfix] logprobs is not compatible with the OpenAI spec #4795 (#5031) 2024-05-29 16:13:22 -07:00
Cyrus Leung
b1c255630d [Core] Avoid the need to pass None values to Sequence.inputs (#5099) 2024-05-29 16:05:01 -07:00
Cyrus Leung
eb6c50cdc2 [Bugfix][CI/Build] Fix codespell failing to skip files in git diff (#5097) 2024-05-29 16:02:54 -07:00
Cyrus Leung
eecd864388 [Bugfix][CI/Build] Fix test and improve code for merge_async_iterators (#5096) 2024-05-29 16:02:25 -07:00
Ronen Schaffer
ae495c74ea [Doc]Replace deprecated flag in readme (#4526) 2024-05-29 22:26:33 +00:00
afeldman-nm
4238bc82f2 [Core] Cross-attention KV caching and memory-management (towards eventual encoder/decoder model support) (#4837) 2024-05-29 16:09:13 +00:00
youkaichao
594392d27a [Core][Distributed] improve p2p access check (#4992) 2024-05-29 11:29:07 +00:00
Cyrus Leung
18c1f16d86 [Bugfix] Fix arguments passed to Sequence in stop checker test (#5092) 2024-05-29 07:16:41 +00:00
youkaichao
5bd3c65072 [Core][Optimization] remove vllm-nccl (#5091) 2024-05-29 05:13:52 +00:00
Marut Pandya
616e600e0b [Misc] add gpu_memory_utilization arg (#5079)
Signed-off-by: pandyamarut <pandyamarut@gmail.com>
2024-05-28 17:16:18 -07:00
Junichi Sato
dfba529b40 [Bugfix] Remove the last EOS token unless explicitly specified (#5077) 2024-05-28 17:15:35 -07:00
Cyrus Leung
5ae5ed1e60 [Core] Consolidate prompt arguments to LLM engines (#4328)
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-05-28 13:29:31 -07:00
Simon Mo
290f4ada2b [Docs] Add Dropbox as sponsors (#5089) 2024-05-28 10:29:09 -07:00
Divakar Verma
dd8de11f0a [Kernel][ROCm][AMD] Add fused_moe Triton configs for MI300X (#4951)
This PR adds Triton kernel configs for the MoE kernel for MI300X
2024-05-28 16:03:23 +00:00
Robert Shaw
9ba415588a [BugFix] Fix Embedding Models with TP>1 (#5075) 2024-05-28 08:32:42 -07:00
Michał Moskal
d4f3985907 [Core] Sliding window for block manager v2 (#4545)
Co-authored-by: Ruth Evans <ruthevans@Ruths-MacBook-Pro.local>
2024-05-28 11:07:07 +09:00
Isotr0py
890aa93d27 [Model] Add support for falcon-11B (#5069) 2024-05-27 16:41:43 -07:00
sasha0552
fbdb7b3ee2 [Core] Allow AQLM on Pascal (#5058) 2024-05-27 15:26:14 -07:00
Zhuohan Li
1102bef219 [Bugfix / Core] Prefix Caching Guards (merged with main) (#4846)
Co-authored-by: rsnm2 <rshaw@neuralmagic.com>
Co-authored-by: Robert Shaw <114415538+robertgshaw2-neuralmagic@users.noreply.github.com>
2024-05-27 15:18:17 -07:00
Roger Wang
f17a1a8f96 [Misc] Make Serving Benchmark More User-friendly (#5044) 2024-05-25 17:28:16 +00:00
Lily Liu
d5a1697772 [Dynamic Spec Decoding] Minor fix for disabling speculative decoding (#5000) 2024-05-25 10:00:14 -07:00
youkaichao
325c119961 [Misc] add logging level env var (#5045) 2024-05-24 23:49:49 -07:00
Eric Xihui Lin
8e192ff967 [Kernel][Backend][Model] Blocksparse flash attention kernel and Phi-3-Small model (#4799)
Co-authored-by: beagleski <yunanzhang@microsoft.com>
Co-authored-by: bapatra <bapatra@microsoft.com>
Co-authored-by: Barun Patra <codedecde@users.noreply.github.com>
Co-authored-by: Michael Goin <michael@neuralmagic.com>
2024-05-24 22:00:52 -07:00
leiwen83
e64fde4b01 [Core][Bugfix]: fix prefix caching for blockv2 (#4764)
Co-authored-by: Lei Wen <wenlei03@qiyi.com>
2024-05-24 10:07:09 -07:00
Robert Shaw
919770957f [Bugfix] Fix Mistral v0.3 Weight Loading (#5005)
Co-authored-by: Cody Yu <hao.yu.cody@gmail.com>
2024-05-24 12:28:27 +00:00
youkaichao
6a50f4cafa [Doc] add ccache guide in doc (#5012)
Co-authored-by: Michael Goin <michael@neuralmagic.com>
2024-05-23 23:21:54 +00:00
Elisei Smirnov
e3470f8753 [Core]: Option To Use Prompt Token Ids Inside Logits Processor (#4985)
Co-authored-by: Elisei Smirnov <el.smirnov@innopolis.university>
2024-05-23 22:04:24 +00:00
Dipika Sikka
a1242324c9 [Kernel] Initial Activation Quantization Support (#4525)
Co-authored-by: Varun Sundar Rabindranath <varunsundar08@gmail.com>
Co-authored-by: Varun Sundar Rabindranath <varun@neuralmagic.com>
2024-05-23 21:29:18 +00:00
Murali Andoorveedu
5eda2ea02a [Core][1/N] Support send/recv in PyNCCL Groups (#4988)
Signed-off-by: Muralidhar Andoorveedu <muralidhar.andoorveedu@centml.ai>
2024-05-23 09:54:48 -07:00
Letian Li
2ba80bed27 [Bugfix] Update Dockerfile.cpu to fix NameError: name 'vllm_ops' is not defined (#5009) 2024-05-23 09:08:58 -07:00
Alexander Matveev
6066253296 Marlin 24 prefill performance improvement (about 25% better on average) (#4983) 2024-05-23 02:39:27 -04:00
Cody Yu
ee3eea0a1b [Misc] Take user preference in attention selector (#4960) 2024-05-23 07:55:56 +09:00
Philipp Moritz
a36de682d4 [Minor] Fix small typo in llama.py: QKVParallelLinear -> QuantizationConfig (#4991) 2024-05-22 22:26:56 +00:00
Nick Hill
eb6d3c264d [Core] Eliminate parallel worker per-step task scheduling overhead (#4894) 2024-05-23 06:17:27 +09:00
raywanb
97b030005c [Model] LoRA gptbigcode implementation (#3949) 2024-05-22 13:58:59 -07:00
Cody Yu
a3a73ab069 [Misc] Load FP8 kv-cache scaling factors from checkpoints (#4893)
The 2nd PR for #4532.

This PR supports loading FP8 kv-cache scaling factors from a FP8 checkpoint (with .kv_scale parameter).
2024-05-22 13:28:20 -07:00
Tyler Michael Smith
8674f9880e [Kernel] Fixup for CUTLASS kernels in CUDA graphs (#4954)
Pass the CUDA stream into the CUTLASS GEMMs, to avoid future issues with CUDA graphs
2024-05-22 14:10:43 +00:00
SangBin Cho
c74c913bfb [misc] remove comments that were supposed to be removed (#4977) 2024-05-22 09:02:58 -04:00
Michael Goin
5f6d10c14c [CI/Build] Enforce style for C++ and CUDA code with clang-format (#4722) 2024-05-22 07:18:41 +00:00
sasha0552
9b9a10d6cb [Frontend] Dynamic RoPE scaling (#4638) 2024-05-22 01:32:35 -04:00
Isotr0py
99eff67ba9 [Bugfix][Kernel] Add head size check for attention backend selection (#4944) 2024-05-21 15:33:25 -04:00
Kante Yin
14772eeb8e [Bugfix] Fix flag name for max_seq_len_to_capture (#4935)
Signed-off-by: kerthcet <kerthcet@gmail.com>
2024-05-21 09:30:52 -07:00
Michael Goin
757b62c495 [CI/Build] Codespell ignore build/ directory (#4945) 2024-05-21 09:06:10 -07:00
Simon Mo
e941f88584 [Docs] Add acknowledgment for sponsors (#4925) 2024-05-21 00:17:25 -07:00
Isotr0py
f12c3b5b3d [Model] Add Phi-2 LoRA support (#4886) 2024-05-21 14:24:17 +09:00
HUANG Fei
d130b573a0 [Model] add rope_scaling support for qwen2 (#4930) 2024-05-21 05:22:22 +00:00
Antoni Baum
65ae8c2c8f [Core] Fix scheduler considering "no LoRA" as "LoRA" (#4897) 2024-05-20 17:48:32 -07:00
Kuntai Du
c3af44722c [Doc]Add documentation to benchmarking script when running TGI (#4920) 2024-05-20 20:16:57 +00:00
Aurick Qiao
1937e29848 [Core] Sharded State Loader download from HF (#4889) 2024-05-20 11:46:12 -07:00
Mor Zusman
f0eecee610 [Bugfix] Fix dummy weight for fp8 (#4916)
Allow dummy load format for fp8,
torch.uniform_ doesn't support FP8 at the moment

Co-authored-by: Mor Zusman <morz@ai21.com>
2024-05-20 18:44:25 +00:00
Alexei-V-Ivanov-AMD
943e72ca56 [Build/CI] Enabling AMD Entrypoints Test (#4834)
Co-authored-by: Alexey Kondratiev <alexey.kondratiev@amd.com>
2024-05-20 11:29:28 -07:00
Wenwei Zhang
546a97ef69 [Misc]: allow user to specify port in distributed setting (#4914) 2024-05-20 17:45:06 +00:00
Alexander Matveev
da5a0b539d Remove marlin warning (#4918) 2024-05-20 14:55:34 +00:00
Cyrus Leung
6287537a0c [Model] LLaVA model refactor (#4910) 2024-05-20 08:11:25 +00:00
Woosuk Kwon
b57e6c5949 [Kernel] Add flash-attn back (#4907) 2024-05-19 18:11:30 -07:00
Alexander Matveev
27ce85476e [Kernel] Add marlin_24 unit tests (#4901) 2024-05-19 11:37:34 -04:00
Cyrus Leung
f68470e803 [Bugfix][Model] Add base class for vision-language models (#4809) 2024-05-19 00:13:33 -07:00
SangBin Cho
2e9a2227ec [Lora] Support long context lora (#4787)
Currently we need to call rotary embedding kernel for each LoRA, which makes it hard to serve multiple long context length LoRA. Add batched rotary embedding kernel and pipe it through.

It replaces the rotary embedding layer to the one that is aware of multiple cos-sin-cache per scaling factors.

Follow up of https://github.com/vllm-project/vllm/pull/3095/files
2024-05-18 16:05:23 +09:00
alexeykondrat
c0724fc915 [ROCm][Hardware][AMD] Adding Navi21 to fallback to naive attention if Triton is not used (#4658) 2024-05-18 05:09:11 +00:00
Michael Goin
86b45ae065 [Bugfix] Relax tiktoken to >= 0.6.0 (#4890) 2024-05-17 12:58:52 -06:00
Antoni Baum
c5711ef985 [Doc] Update Ray Data distributed offline inference example (#4871) 2024-05-17 10:52:11 -07:00
eigenLiu
48d5985a08 Sync huggingface modifications of qwen Moe model (#4774) 2024-05-17 09:43:19 -07:00
Jinzhen Lin
33e0823de5 [Bugfix] fix rope error when load models with different dtypes (#4835) 2024-05-17 18:43:34 +09:00
Alexei-V-Ivanov-AMD
26148120b3 [Build/CI] Extending the set of AMD tests with Regression, Basic Correctness, Distributed, Engine, Llava Tests (#4797) 2024-05-16 20:58:25 -07:00
bofeng huang
0150a10630 [Frontend] OpenAI API server: Do not add bos token by default when encoding (#4688) 2024-05-16 18:47:22 -07:00
Kante Yin
8e7fb5d43a Support to serve vLLM on Kubernetes with LWS (#4829)
Signed-off-by: kerthcet <kerthcet@gmail.com>
2024-05-16 16:37:29 -07:00
Woosuk Kwon
9a31a817a8 [Bugfix] Fix FP8 KV cache support (#4869) 2024-05-16 22:42:29 +00:00
Tyler Michael Smith
2060e93659 [Kernel] Add w8a8 CUTLASS kernels (#4749) 2024-05-16 18:32:50 -04:00
Silencio
8435b207af [Kernel] Add punica dimension for Qwen1.5-32B LoRA (#4850)
Co-authored-by: Silencio <silencio@adsl-99-6-187-6.dsl.irvnca.sbcglobal.net>
2024-05-16 11:16:09 -07:00
youkaichao
10fa9eea21 [Misc] remove old comments (#4866) 2024-05-16 11:07:41 -07:00
youkaichao
e08188081b [Core][Distributed] remove graph mode function (#4818) 2024-05-16 10:59:52 -07:00
Hongxia Yang
b5853f9963 [ROCm][AMD][Bugfix] adding a missing triton autotune config (#4845) 2024-05-16 10:46:52 -07:00
Simon Mo
f09edd8a25 Add JSON output support for benchmark_latency and benchmark_throughput (#4848) 2024-05-16 10:02:56 -07:00
Alexander Matveev
6979ade384 Add GPTQ Marlin 2:4 sparse structured support (#4790)
Co-authored-by: Robert Shaw <rshaw@neuralmagic.com>
2024-05-16 12:56:15 -04:00
Pierre Dulac
9216b9cc38 [Bugfix] Bypass authorization API token for preflight requests (#4862) 2024-05-16 09:42:21 -07:00
Alex Wu
5e0391c040 [Frontend] Separate OpenAI Batch Runner usage from API Server (#4851) 2024-05-17 00:42:41 +09:00
Alex Wu
dbc0754ddf [docs] Fix typo in examples filename openi -> openai (#4864) 2024-05-17 00:42:17 +09:00
Jinzhen Lin
99caa49106 [Kernel] add bfloat16 support for gptq marlin kernel (#4788) 2024-05-16 09:55:29 -04:00
alexm-nm
5c342570d7 Add marlin unit tests and marlin benchmark script (#4815) 2024-05-16 09:36:49 -04:00
Cody Yu
973617ae02 [Speculative decoding][Re-take] Enable TP>1 speculative decoding (#4840)
Co-authored-by: Cade Daniel <edacih@gmail.com>
Co-authored-by: Cade Daniel <cade@anyscale.com>
2024-05-16 00:53:51 -07:00
Aurick Qiao
30e754390c [Core] Implement sharded state loader (#4690)
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2024-05-15 22:11:54 -07:00
Alex Wu
52f8107cf2 [Frontend] Support OpenAI batch file format (#4794)
Co-authored-by: Robert Shaw <114415538+robertgshaw2-neuralmagic@users.noreply.github.com>
2024-05-15 19:13:36 -04:00
Cyrus Leung
fc0d9dfc3a [Frontend] Re-enable custom roles in Chat Completions API (#4758) 2024-05-15 14:58:46 -07:00
Zhuohan Li
361c461a12 [Doc] Highlight the fourth meetup in the README (#4842) 2024-05-15 11:38:49 -07:00
zifeitong
a5675d348b [Bugfix] Properly set distributed_executor_backend in ParallelConfig (#4816) 2024-05-15 07:22:09 -07:00
Cyrus Leung
e9cdd2b1e2 [CI/Build] Further decouple HuggingFace implementation from ours during tests (#4166) 2024-05-14 23:38:40 -07:00
SangBin Cho
65bf2ac165 [Core][2/N] Model runner refactoring part 2. Combine prepare prefill / decode to a single API (#4681)
This PR combines prepare_prompt and prepare_decode into a single API. This PR also coelsce the attn metadata for prefill/decode to a single class and allow to slice them when running attn backend.

It also refactors subquery_start_loc which was not refactored in the previous PR
2024-05-15 14:00:10 +09:00
SangBin Cho
8a7cc254a0 Revert "[Kernel] Use flash-attn for decoding (#3648)" (#4820)
Lora 3 & 4 test seems to have illegal memory access failure after this commit;

[2024-05-14 23:51:18,182 E 22 22] logging.cc:101: Unhandled exception: N3c105ErrorE. what(): CUDA error: an illegal memory access was encountered
<br class="Apple-interchange-newline">
Exmaple: https://buildkite.com/vllm/ci/builds/7382#018f793d-1527-4e1c-ab59-c3a34ec55241

This reverts commit 1356df5.

FILL IN THE PR DESCRIPTION HERE

FIX #xxxx (link existing issues this PR will resolve)
2024-05-15 11:52:45 +09:00
Simon Mo
29bc01bf3b Add 4th meetup announcement to readme (#4817) 2024-05-14 18:33:06 -04:00
Nick Hill
676a99982f [Core] Add MultiprocessingGPUExecutor (#4539)
Co-authored-by: SAHIL SUNEJA <suneja@us.ibm.com>
2024-05-14 10:38:59 -07:00
Cyrus Leung
dc72402b57 [Bugfix][Doc] Fix CI failure in docs (#4804)
This PR fixes the CI failure introduced by #4798.

The failure originates from having duplicate target names in reST, and is fixed by changing the ref targets to anonymous ones. For more information, see this discussion.

I have also changed the format of the links to be more distinct from each other.
2024-05-15 01:57:08 +09:00
Kuntai Du
ccb63a8245 [Core][Hash][Automatic Prefix caching] Accelerating the hashing function by avoiding deep copies (#4696) 2024-05-14 21:34:33 +09:00
Zhuohan Li
c579b750a0 [Doc] Add meetups to the doc (#4798) 2024-05-13 18:48:00 -07:00
Cyrus Leung
4bfa7e7f75 [Doc] Add API reference for offline inference (#4710) 2024-05-13 17:47:42 -07:00
Zhuohan Li
ac1fbf7fd2 [Doc] Shorten README by removing supported model list (#4796) 2024-05-13 16:23:54 -07:00
Philipp Moritz
33d3914b1e [Bugfix] Fix dynamic FP8 quantization for Mixtral (#4793) 2024-05-13 19:00:27 -04:00
Stephen Krider
1356df53bd [Kernel] Use flash-attn for decoding (#3648)
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
Co-authored-by: LiuXiaoxuanPKU <lilyliupku@gmail.com>
2024-05-13 15:50:33 -07:00
Cody Yu
ce532ff45c [Speculative decoding] Improve n-gram efficiency (#4724) 2024-05-13 15:00:13 -07:00
Sanger Steel
8bc68e198c [Frontend] [Core] perf: Automatically detect vLLM-tensorized model, update tensorizer to version 2.9.0 (#4208) 2024-05-13 14:57:07 -07:00
Woosuk Kwon
0fca3cdcf2 [Misc] Enhance attention selector (#4751) 2024-05-13 10:47:25 -07:00
SangBin Cho
e7c46b9527 [Scheduler] Warning upon preemption and Swapping (#4647)
Co-authored-by: Robert Shaw <114415538+robertgshaw2-neuralmagic@users.noreply.github.com>
2024-05-13 23:50:44 +09:00
Cyrus Leung
350f9e107f [CI/Build] Move test_utils.py to tests/utils.py (#4425)
Since #4335 was merged, I've noticed that the definition of ServerRunner in the tests is the same as in the test for OpenAI API. I have moved the class to the test utilities to avoid code duplication. (Although it only has been repeated twice so far, I will add another similar test suite in #4200 which would duplicate the code a third time)

Also, I have moved the test utilities file (test_utils.py) to under the test directory (tests/utils.py), since none of its code is actually used in the main package. Note that I have added __init__.py to each test subpackage and updated the ray.init() call in the test utilities file in order to relative import tests/utils.py.
2024-05-13 23:50:09 +09:00
youkaichao
702bee461f [Core][Distributed] refactor custom allreduce to support multiple tp groups (#4754) 2024-05-12 17:47:59 -07:00
Swapnil Parekh
a7be4d0072 [CORE] Improvement in ranks code (#4718) 2024-05-12 17:47:47 -07:00
Robert Shaw
a709e87a4f [CI/Build] Tweak Marlin Nondeterminism Issues (#4713) 2024-05-12 17:46:31 -07:00
Yikang Shen
6eaccb7353 [Model] Add support for IBM Granite Code models (#4636) 2024-05-11 21:27:24 -07:00
Chang Su
e254497b66 [Model][Misc] Add e5-mistral-7b-instruct and Embedding API (#3734) 2024-05-11 11:30:37 -07:00
youkaichao
4e12131089 [Core][Test] fix function name typo in custom allreduce (#4750) 2024-05-10 15:14:40 -07:00
Robert Shaw
fcc2994be6 [CI] Nits for bad initialization of SeqGroup in testing (#4748) 2024-05-10 18:01:01 -04:00
heeju-kim2
2e7796f2cf [Speculative decoding] CUDA graph support (#4295)
Co-authored-by: Cade Daniel <edacih@gmail.com>
2024-05-10 17:36:25 +00:00
Allen.Dou
706588a77d [Bugfix] Fix CLI arguments in OpenAI server docs (#4729) 2024-05-11 00:00:56 +09:00
SangBin Cho
6a0f617210 [Core] Fix circular reference which leaked llm instance in local dev env (#4737)
Storing exception frame is extremely prone to circular refernece because it contains the reference to objects.

When tensorizer is not installed, it leaks llm instance because error frame has references to various modules which cause circular reference problem.

I also found spec decoding has a circular reference issue, and I solved it using weakref.proxy.
2024-05-10 23:54:32 +09:00
Steve Grubb
dac6a3f6ed [Misc] Apply a couple g++ cleanups (#4719) 2024-05-10 13:37:05 +00:00
Kunshang Ji
64b77dfd7e [Core]fix type annotation for swap_blocks (#4726) 2024-05-10 21:52:48 +09:00
Simon Mo
51d4094fda chunked-prefill-doc-syntax (#4603)
Fix the docs: https://docs.vllm.ai/en/latest/models/performance.html

Co-authored-by: sang <rkooo567@gmail.com>
2024-05-10 14:13:23 +09:00
Allen.Dou
e965d46184 [Misc] Keep only one implementation of the create_dummy_prompt function. (#4716) 2024-05-09 21:42:38 -07:00
youkaichao
208b71bcc1 [Core][Distributed] refactor pynccl (#4591)
[Core][Distributed] refactor pynccl to hold multiple communicators (#4591)
2024-05-09 19:48:43 -07:00
Cody Yu
c833101740 [Kernel] Refactor FP8 kv-cache with NVIDIA float8_e4m3 support (#4535) 2024-05-09 18:04:17 -06:00
Philipp Moritz
379da6dcb5 [Kernel] [FP8] Improve FP8 linear layer performance (#4691)
This PR improves the FP8 performance of linear layers, which had been lacking before (#4118 (comment) and #4118 (comment)).

We noticed that CUBLASLt can find a better algorithm if the first dimension of the matrix is greater than 16. So this PR enlarges matrices appropriately during quantization. This improves FP8 performance and removes the performance regression vs. FP16, in many cases exceeding FP16 performance.

Here are benchmarks on llama3 70b (ITL numbers for 1000 input and 50 output tokens at fixed qps and at TP 4), all FP8 measurements are for dynamic quantization:

qps = 1: 24 ms (FP8, this PR), 32 ms (FP8, previous main), 26 ms (FP16)
qps = 2: 26 ms (FP8, this PR), 34ms (FP8, previous main), 28 ms (FP16) 
qps = 4: 33 ms (FP8, this PR), 44 ms (FP8, previous main), 36 ms (FP16)
qps = 6: 46 ms (FP8, this PR), 56 ms (FP8, previous main), 54 ms (FP16)
qps = 8: 85 ms (FP8, this PR), 85 ms (FP8, previous main), 138 ms (FP16)
2024-05-09 16:38:07 -07:00
Hao Zhang
ebce310b74 [Model] Snowflake arctic model implementation (#4652)
Co-authored-by: Dash Desai <1723932+iamontheinet@users.noreply.github.com>
Co-authored-by: Aurick Qiao <qiao@aurick.net>
Co-authored-by: Aurick Qiao <aurick.qiao@snowflake.com>
Co-authored-by: Aurick Qiao <aurickq@users.noreply.github.com>
Co-authored-by: Cody Yu <hao.yu.cody@gmail.com>
2024-05-09 22:37:14 +00:00
Michael Goin
be0c5180ac [Bugfix] Add logs for all model dtype casting (#4717) 2024-05-09 18:36:25 +00:00
Robert Shaw
cea64430f6 [Bugfix] Update grafana.json (#4711) 2024-05-09 10:10:13 -07:00
Cyrus Leung
a3c124570a [Bugfix] Fix CLI arguments in OpenAI server docs (#4709) 2024-05-09 09:53:14 -07:00
kliuae
ff5abcd746 [ROCm] Add support for Punica kernels on AMD GPUs (#3140)
Co-authored-by: miloice <jeffaw99@hotmail.com>
2024-05-09 09:19:50 -07:00
Woosuk Kwon
0ee535b294 [Misc] Set block size at initialization & Fix test_model_runner (#4705) 2024-05-09 09:04:59 -07:00
Woosuk Kwon
190bc838e1 [Misc] Remove unnecessary ModelRunner imports (#4703) 2024-05-09 00:17:17 -07:00
Cyrus Leung
f12b20decc [Frontend] Move async logic outside of constructor (#4674) 2024-05-08 22:48:33 -07:00
Mahmoud Ashraf
16bc0a098f [Frontend] add tok/s speed metric to llm class when using tqdm (#4400)
Co-authored-by: Michael Goin <michael@neuralmagic.com>
2024-05-08 22:02:31 -07:00
alexm-nm
e288df0632 [Bugfix] Fine-tune gptq_marlin configs to be more similar to marlin (#4626) 2024-05-08 17:14:31 -07:00
Cade Daniel
8b9241be3a [Speculative decoding] [Bugfix] Fix overallocation in ngram + spec logprobs (#4672) 2024-05-08 23:24:46 +00:00
Cody Yu
f942efb5a3 [Dynamic Spec Decoding] Auto-disable by the running queue size (#4592)
Co-authored-by: Cade Daniel <edacih@gmail.com>
2024-05-08 21:44:00 +00:00
Woosuk Kwon
89579a201f [Misc] Use vllm-flash-attn instead of flash-attn (#4686) 2024-05-08 13:15:34 -07:00
youkaichao
230c4b38c1 [CI/Test] fix swap test for multi gpu (#4689) 2024-05-08 13:14:02 -07:00
youkaichao
20cfcdec99 [Core][Optimization] change python dict to pytorch tensor for blocks to swap (#4659) 2024-05-08 12:07:05 -07:00
Antoni Baum
ad932a221d [Core] Faster startup for LoRA enabled models (#4634) 2024-05-08 10:33:18 -07:00
Woosuk Kwon
5510cf0e8a [Misc] Add get_name method to attention backends (#4685) 2024-05-08 09:59:31 -07:00
DefTruth
0f9a6e3d22 [Bugfix][Kernel] allow non-power-of-2 for prefix prefill with alibi (#4573) 2024-05-08 09:19:58 -07:00
SangBin Cho
f6a593093a [CI] Make mistral tests pass (#4596) 2024-05-08 08:44:35 -07:00
SangBin Cho
d7740ea4dc [Core] Optimize sampler get_logprobs (#4594) 2024-05-08 08:42:28 -07:00
youkaichao
cc466a3290 [Core][Distributed] support cpu&device in broadcast tensor dict (#4660)
[Core][Distributed] support both cpu and device tensor in broadcast tensor dict (#4660)
2024-05-07 19:34:47 -07:00
leiwen83
8344f7742b [Bug fix][Core] fixup ngram not setup correctly (#4551)
Co-authored-by: Lei Wen <wenlei03@qiyi.com>
Co-authored-by: Cade Daniel <edacih@gmail.com>
Co-authored-by: Cody Yu <hao.yu.cody@gmail.com>
2024-05-07 11:40:18 -07:00
youkaichao
469f85c782 [Core][Optimization] change copy-on-write from dict[int, list] to list (#4648) 2024-05-07 11:06:32 -07:00
Austin Veselka
10760da800 [Bugfix] Fixed error in slice_lora_b for MergedQKVParallelLinearWithLora (#4609) 2024-05-07 10:59:07 -07:00
Alexei-V-Ivanov-AMD
478aed5827 [Build/CI] Fixing 'docker run' to re-enable AMD CI tests. (#4642) 2024-05-07 09:23:17 -07:00
youkaichao
63575bc2e1 [Core][Optimization] change python dict to pytorch tensor (#4607) 2024-05-06 21:30:27 -07:00
Philipp Moritz
a98187cf72 [Kernel] Make static FP8 scaling more robust (#4570)
Previously FP8 static scaling works if the scales are overestimating the maxima of all activation tensors during computation. However this will not always be the case even if the scales were calibrated very carefully. For example, with the activations in my checkpoint

https://huggingface.co/pcmoritz/Mixtral-8x7B-v0.1-fp8-act-scale

(which was calibrated on https://huggingface.co/datasets/HuggingFaceH4/ultrachat_200k), I'm getting the following mostly random performance on MMLU:

|      Groups      |Version|Filter|n-shot|Metric|Value |   |Stderr|
|------------------|-------|------|-----:|------|-----:|---|-----:|
|mmlu              |N/A    |none  |     0|acc   |0.2295|±  |0.0035|
| - humanities     |N/A    |none  |     5|acc   |0.2421|±  |0.0062|
| - other          |N/A    |none  |     5|acc   |0.2398|±  |0.0076|
| - social_sciences|N/A    |none  |     5|acc   |0.2171|±  |0.0074|
| - stem           |N/A    |none  |     5|acc   |0.2125|±  |0.0073|
With the fix in this PR where the scaled activations are clamped between [-std::numeric_limits<c10::Float8_e4m3fn>::max(), std::numeric_limits<c10::Float8_e4m3fn>::max()] to make sure there are no NaNs, the performance is

|      Groups      |Version|Filter|n-shot|Metric|Value |   |Stderr|
|------------------|-------|------|-----:|------|-----:|---|-----:|
|mmlu              |N/A    |none  |     0|acc   |0.7008|±  |0.0036|
| - humanities     |N/A    |none  |     5|acc   |0.6453|±  |0.0065|
| - other          |N/A    |none  |     5|acc   |0.7692|±  |0.0072|
| - social_sciences|N/A    |none  |     5|acc   |0.8083|±  |0.0070|
| - stem           |N/A    |none  |     5|acc   |0.6115|±  |0.0083|
This is not perfect yet but is getting very close to the FP16 / dynamic activation scale performance.
2024-05-06 17:39:28 -07:00
Noam Gat
bd99d22629 Update lm-format-enforcer to 0.10.1 (#4631) 2024-05-06 23:51:59 +00:00
Cade Daniel
19cb4716ee [CI] Add retry for agent lost (#4633) 2024-05-06 23:18:57 +00:00
Simon Mo
e186d37cb1 [CI] use ccache actions properly in release workflow (#4629) 2024-05-06 22:23:36 +00:00
Cyrus Leung
323f27b904 [Bugfix] Fix asyncio.Task not being subscriptable (#4623) 2024-05-06 09:31:05 -07:00
zhaoyang-star
0650e5935b Disable cuda version check in vllm-openai image (#4530) 2024-05-05 16:58:55 -07:00
Simon Mo
c7f2cf2b7f [CI] Reduce wheel size by not shipping debug symbols (#4602)
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2024-05-04 21:28:58 -07:00
Simon Mo
8d8357c8ed bump version to v0.4.2 (#4600) 2024-05-04 17:09:49 -07:00
DearPlanet
4302987069 [Bugfix] Fix inappropriate content of model_name tag in Prometheus metrics (#3937) 2024-05-04 15:39:34 -07:00
Simon Mo
021b1a2ab7 [CI] check size of the wheels (#4319) 2024-05-04 20:44:36 +00:00
Michael Goin
2a052011ca [Kernel] Support MoE Fp8 Checkpoints for Mixtral (Static Weights with Dynamic/Static Activations) (#4527)
Follow on to #4332 to enable FP8 checkpoint loading for Mixtral and supersedes #4436.

This PR enables the following checkpoint loading features for Mixtral:

Supports loading fp8 checkpoints for Mixtral, such as this "nm-testing/Mixtral-8x7B-Instruct-v0.1-FP8" test model
Supports static or dynamic activation quantization with static weight quantization (all per tensor)
Supports different scales for each expert weight
Supports Fp8 in QKV layer
Notes:

The Expert Gate/Router always runs at half / full precision for now.
If there are different weight scales between QKV layer (for separate QKV weights), they are re-quantized using layer.weight_scale.max() so we can have a single gemm for performance.
2024-05-04 11:45:16 -07:00
SangBin Cho
36fb68f947 [Doc] Chunked Prefill Documentation (#4580) 2024-05-04 00:18:00 -07:00
Cody Yu
bc8ad68455 [Misc][Refactor] Introduce ExecuteModelData (#4540) 2024-05-03 17:47:07 -07:00
youkaichao
344bf7cd2d [Misc] add installation time env vars (#4574) 2024-05-03 15:55:56 -07:00
Cade Daniel
ab50275111 [Speculative decoding] Support target-model logprobs (#4378) 2024-05-03 15:52:01 -07:00
Lily Liu
43c413ec57 [Kernel] Use flashinfer for decoding (#4353)
Co-authored-by: LiuXiaoxuanPKU <llilyliupku@gmail.com>
2024-05-03 15:51:27 -07:00
Sebastian Schoennenbeck
f8e7adda21 Fix/async chat serving (#2727) 2024-05-03 11:04:14 -07:00
Michael Goin
7e65477e5e [Bugfix] Allow "None" or "" to be passed to CLI for string args that default to None (#4586) 2024-05-03 10:32:21 -07:00
SangBin Cho
3521ba4f25 [Core][Model runner refactoring 1/N] Refactor attn metadata term (#4518) 2024-05-03 10:20:12 -07:00
youkaichao
2d7bce9cd5 [Doc] add env vars to the doc (#4572) 2024-05-03 05:13:49 +00:00
DefTruth
ce3f1eedf8 [Misc] remove chunk detected debug logs (#4571) 2024-05-03 04:48:08 +00:00
Yang, Bo
808632d3b4 [BugFix] Prevent the task of _force_log from being garbage collected (#4567) 2024-05-03 01:35:18 +00:00
youkaichao
344a5d0c33 [Core][Distributed] enable allreduce for multiple tp groups (#4566) 2024-05-02 17:32:33 -07:00
SangBin Cho
0f8a91401c [Core] Ignore infeasible swap requests. (#4557) 2024-05-02 14:31:20 -07:00
Alexei-V-Ivanov-AMD
9b5c9f9484 [CI/Build] AMD CI pipeline with extended set of tests. (#4267)
Co-authored-by: simon-mo <simon.mo@hey.com>
2024-05-02 12:29:07 -07:00
Michał Moskal
32881f3f31 [kernel] fix sliding window in prefix prefill Triton kernel (#4405)
Co-authored-by: SangBin Cho <rkooo567@gmail.com>
2024-05-02 11:23:37 -07:00
youkaichao
5b8a7c1cb0 [Misc] centralize all usage of environment variables (#4548) 2024-05-02 11:13:25 -07:00
Mark McLoughlin
1ff0c73a79 [BugFix] Include target-device specific requirements.txt in sdist (#4559) 2024-05-02 10:52:51 -07:00
Hu Dong
5ad60b0cbd [Misc] Exclude the tests directory from being packaged (#4552) 2024-05-02 10:50:25 -07:00
SangBin Cho
fb087af52e [mypy][7/N] Cover all directories (#4555) 2024-05-02 10:47:41 -07:00
alexm-nm
7038e8b803 [Kernel] Support running GPTQ 8-bit models in Marlin (#4533) 2024-05-02 12:56:22 -04:00
youkaichao
2a85f93007 [Core][Distributed] enable multiple tp group (#4512)
Co-authored-by: Zhuohan Li <zhuohan123@gmail.com>
2024-05-02 04:28:21 +00:00
SangBin Cho
cf8cac8c70 [mypy][6/N] Fix all the core subdirectory typing (#4450)
Co-authored-by: Cade Daniel <edacih@gmail.com>
2024-05-02 03:01:00 +00:00
Ronen Schaffer
5e401bce17 [CI]Add regression tests to ensure the async engine generates metrics (#4524) 2024-05-01 19:57:12 -07:00
SangBin Cho
0d62fe58db [Bug fix][Core] assert num_new_tokens == 1 fails when SamplingParams.n is not 1 and max_tokens is large & Add tests for preemption (#4451) 2024-05-01 19:24:13 -07:00
Danny Guinther
b8afa8b95a [MISC] Rework logger to enable pythonic custom logging configuration to be provided (#4273) 2024-05-01 17:34:40 -07:00
Woosuk Kwon
826b82a260 [Misc] Fix expert_ids shape in MoE (#4517) 2024-05-01 23:47:59 +00:00
Philipp Moritz
c9d852d601 [Misc] Remove Mixtral device="cuda" declarations (#4543)
Remove the device="cuda" declarations in mixtral as promised in #4343
2024-05-01 16:30:52 -07:00
youkaichao
6ef09b08f8 [Core][Distributed] fix pynccl del error (#4508) 2024-05-01 15:23:06 -07:00
Roy
3a922c1e7e [Bugfix][Core] Fix and refactor logging stats (#4336) 2024-05-01 20:08:14 +00:00
sasha0552
c47ba4aaa9 [Bugfix] Add validation for seed (#4529) 2024-05-01 19:31:22 +00:00
Philipp Moritz
24bb4fe432 [Kernel] Update fused_moe tuning script for FP8 (#4457)
This PR updates the tuning script for the fused_moe kernel to support FP8 and also adds configurations for TP4. Note that for the configuration I removed num_warps and num_stages for small batch sizes since that improved performance and brought the benchmarks on par with the numbers before in that regime to make sure this is a strict improvement over the status quo.

All the numbers below are for mistralai/Mixtral-8x7B-Instruct-v0.1, 1000 input and 50 output tokens.

Before this PR (with static activation scaling):

qps = 1: 9.8 ms ITL, 0.49s e2e latency
qps = 2: 9.7 ms ITL, 0.49s e2e latency 
qps = 4: 10.1 ms ITL, 0.52s e2e latency
qps = 6: 11.9 ms ITL, 0.59s e2e latency
qps = 8: 14.0 ms ITL, 0.70s e2e latency
qps = 10: 15.7 ms ITL, 0.79s e2e latency

After this PR (with static activation scaling):

qps = 1: 9.8 ms ITL, 0.49s e2e latency
qps = 2: 9.7 ms ITL, 0.49s e2e latency
qps = 4: 10.2 ms ITL, 0.53s e2e latency
qps = 6: 11.9 ms ITL, 0.59s e2e latency
qps = 8: 11.9 ms ITL, 0.59s e2e latency
qps = 10: 12.1 ms ITL, 0.61s e2e latency
2024-05-01 11:47:38 -07:00
Nick Hill
a657bfc48a [Core] Add multiproc_worker_utils for multiprocessing-based workers (#4357) 2024-05-01 18:41:59 +00:00
leiwen83
24750f4cad [Core] Enable prefix caching with block manager v2 enabled (#4142)
Co-authored-by: Lei Wen <wenlei03@qiyi.com>
Co-authored-by: Sage Moore <sagemoore@utexas.edu>
2024-05-01 11:20:32 -07:00
leiwen83
b38e42fbca [Speculative decoding] Add ngram prompt lookup decoding (#4237)
Co-authored-by: Lei Wen <wenlei03@qiyi.com>
2024-05-01 11:13:03 -07:00
Travis Johnson
8b798eec75 [CI/Build][Bugfix] VLLM_USE_PRECOMPILED should skip compilation (#4534)
Signed-off-by: Travis Johnson <tsjohnso@us.ibm.com>
2024-05-01 18:01:50 +00:00
sasha0552
69909126a7 [Bugfix] Use random seed if seed is -1 (#4531) 2024-05-01 10:41:17 -07:00
Frαnçois
e491c7e053 [Doc] update(example model): for OpenAI compatible serving (#4503) 2024-05-01 10:14:16 -07:00
Robert Shaw
4dc8026d86 [Bugfix] Fix 307 Redirect for /metrics (#4523) 2024-05-01 09:14:13 -07:00
AnyISalIn
a88bb9b032 [Bugfix] Fix the fp8 kv_cache check error that occurs when failing to obtain the CUDA version. (#4173)
Signed-off-by: AnyISalIn <anyisalin@gmail.com>
2024-05-01 09:11:03 -07:00
SangBin Cho
6f1df80436 [Test] Add ignore_eos test (#4519) 2024-05-01 08:45:42 -04:00
Jee Li
d6f4bd7cdd [Misc]Add customized information for models (#4132) 2024-04-30 21:18:14 -07:00
Robert Caulk
c3845d82dc Allow user to define whitespace pattern for outlines (#4305) 2024-04-30 20:48:39 -07:00
Pastel!
a822eb3413 [Misc] fix typo in block manager (#4453) 2024-04-30 20:41:32 -07:00
harrywu
f458112e8a [Misc][Typo] type annotation fix (#4495) 2024-04-30 20:21:39 -07:00
Nick Hill
2e240c69a9 [Core] Centralize GPU Worker construction (#4419) 2024-05-01 01:06:34 +00:00
fuchen.ljl
ee37328da0 Unable to find Punica extension issue during source code installation (#4494)
Co-authored-by: Simon Mo <simon.mo@hey.com>
2024-05-01 00:42:09 +00:00
fuchen.ljl
6ad58f42c5 fix_tokenizer_snapshot_download_bug (#4493) 2024-04-30 16:38:50 -07:00
Li, Jiang
dd1a50a8bc [Bugfix][Minor] Make ignore_eos effective (#4468) 2024-04-30 16:33:33 -07:00
Alpay Ariyak
715c2d854d [Frontend] [Core] Tensorizer: support dynamic num_readers, update version (#4467) 2024-04-30 16:32:13 -07:00
Florian Greinacher
a494140433 [Frontend] Support complex message content for chat completions endpoint (#3467)
Co-authored-by: Lily Liu <lilyliupku@gmail.com>
Co-authored-by: Cyrus Leung <tlleungac@connect.ust.hk>
2024-04-30 16:28:46 -07:00
Robert Shaw
111815d482 [Kernel] Support Fp8 Checkpoints (Dynamic + Static) (#4332)
Co-authored-by: Philipp Moritz <pcmoritz@gmail.com>
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
Co-authored-by: mgoin <michael@neuralmagic.com>
Co-authored-by: Tyler Michael Smith <tyler@neuralmagic.com>
Co-authored-by: Cody Yu <hao.yu.cody@gmail.com>
2024-04-30 21:46:12 +00:00
Prashant Gupta
b31a1fb63c [Doc] add visualization for multi-stage dockerfile (#4456)
Signed-off-by: Prashant Gupta <prashantgupta@us.ibm.com>
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-04-30 17:41:59 +00:00
leiwen83
4bb53e2dde [BugFix] fix num_lookahead_slots missing in async executor (#4165)
Co-authored-by: Lei Wen <wenlei03@qiyi.com>
2024-04-30 10:12:59 -07:00
Kunshang Ji
26f2fb5113 [Core]Refactor gptq_marlin ops (#4466) 2024-04-30 08:14:47 -04:00
Woosuk Kwon
fa32207842 [Bugfix][Kernel] Fix compute_type for MoE kernel (#4463) 2024-04-29 22:05:40 -07:00
Michael Goin
d627a3d837 [Misc] Upgrade to torch==2.3.0 (#4454) 2024-04-29 20:05:47 -04:00
youkaichao
f4f921b7f1 [Core][Distributed] use cpu group to broadcast metadata in cpu (#4444) 2024-04-29 13:52:22 -07:00
Simon Mo
ac5ccf0156 [CI] hotfix: soft fail neuron test (#4458) 2024-04-29 19:50:01 +00:00
Robert Shaw
73c8d677e5 [Kernel] Marlin Expansion: Support AutoGPTQ Models with Marlin (#3922)
Co-authored-by: alexm <alexm@neuralmagic.com>
Co-authored-by: mgoin <michael@neuralmagic.com>
2024-04-29 09:35:34 -07:00
SangBin Cho
df29793dc7 [mypy][5/N] Support all typing on model executor (#4427) 2024-04-28 19:01:26 -07:00
Simon Mo
03dd7d52bf [CI] clean docker cache for neuron (#4441) 2024-04-28 23:32:07 +00:00
Ronen Schaffer
bf480c5302 Add more Prometheus metrics (#2764)
Co-authored-by: Robert Shaw <114415538+robertgshaw2-neuralmagic@users.noreply.github.com>
Co-authored-by: Robert Shaw <rshaw@neuralmagic.com>
2024-04-28 15:59:33 -07:00
DefTruth
9c7306ac11 [Misc] fix typo in llm_engine init logging (#4428) 2024-04-28 18:58:30 +08:00
Robert Shaw
4ea1f9678d [BugFix] Resolved Issues For LinearMethod --> QuantConfig (#4418) 2024-04-27 18:35:33 +00:00
Nick Hill
ba4be44c32 [BugFix] Fix return type of executor execute_model methods (#4402) 2024-04-27 11:17:45 -07:00
Prashant Gupta
d6e520e170 [Core] Support offline use of local cache for models (#4374)
Signed-off-by: Prashant Gupta <prashantgupta@us.ibm.com>
Co-authored-by: Travis Johnson <tjohnson31415@gmail.com>
2024-04-27 09:59:55 -07:00
Nick Hill
81661da7b2 [BugFix] Fix min_tokens when eos_token_id is None (#4389)
Co-authored-by: DefTruth <31974251+deftruth@users.noreply.github.com>
2024-04-27 09:52:46 -07:00
Ruoyu Qin
dfea173148 [Bugfix] Abort requests when the connection to /v1/completions is interrupted (#4363) 2024-04-27 09:48:37 -07:00
Roy
7134303cbb [Bugfix][Core] Fix get decoding config from ray (#4335) 2024-04-27 11:30:08 +00:00
Caio Mendes
3da24c2df7 [Model] Phi-3 4k sliding window temp. fix (#4380) 2024-04-27 18:08:15 +08:00
Austin Veselka
eefeb16464 [Kernel] Full Tensor Parallelism for LoRA Layers (#3524)
Co-authored-by: Antoni Baum <antoni.baum@protonmail.com>
2024-04-27 00:03:48 -07:00
Hongxia Yang
18d23f642a [ROCm][Hardware][AMD] Enable group query attention for triton FA (#4406) 2024-04-26 23:37:40 -07:00
Roy
87f545ba6f [Misc] Fix logger format typo (#4396) 2024-04-27 13:45:02 +08:00
Cyrus Leung
8947bc3c15 [Frontend][Bugfix] Disallow extra fields in OpenAI API (#4355) 2024-04-27 05:08:24 +00:00
Philipp Moritz
12628d3c78 [Kernel] Optimize FP8 support for MoE kernel / Mixtral via static scales (#4343)
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2024-04-27 04:49:59 +00:00
Nick Hill
258a2c58d0 [Core] Introduce DistributedGPUExecutor abstract class (#4348) 2024-04-27 04:14:26 +00:00
youkaichao
aba47be3fe [Misc] add RFC issue template (#4401)
Co-authored-by: Simon Mo <simon.mo@hey.com>
2024-04-26 15:47:45 -07:00
Cody Yu
a62aaf1df5 [Misc][Refactor] Generalize linear_method to be quant_method (#4373) 2024-04-26 16:41:14 -04:00
SangBin Cho
603ad84815 [Core] Refactoring sampler and support prompt logprob for chunked prefill (#4309) 2024-04-26 13:02:02 +00:00
SangBin Cho
a88081bf76 [CI] Disable non-lazy string operation on logging (#4326)
Co-authored-by: Danny Guinther <dguinther@neuralmagic.com>
2024-04-26 00:16:58 -07:00
Norman Mu
2f30e7c72f [Frontend] Add --log-level option to api server (#4377) 2024-04-26 05:36:01 +00:00
Cyrus Leung
a74dee9b62 [Bugfix] Fix parameter name in get_tokenizer (#4107) 2024-04-25 19:10:48 -07:00
Hongxia Yang
cf29b7eda4 [ROCm][Hardware][AMD][Doc] Documentation update for ROCm (#4376)
Co-authored-by: WoosukKwon <woosuk.kwon@berkeley.edu>
2024-04-25 18:12:25 -07:00
Nick Hill
efffb63f58 [Core] Move function tracing setup to util function (#4352) 2024-04-25 16:45:12 -07:00
Nick Hill
15e7c675b0 [Core] Add shutdown() method to ExecutorBase (#4349) 2024-04-25 16:32:48 -07:00
Roy
b6dcb4d442 [Misc] Fix flash attention backend log (#4368) 2024-04-25 12:43:32 -07:00
SangBin Cho
b5b4a398a7 [Mypy] Typing lora folder (#4337) 2024-04-25 19:13:50 +00:00
Kunshang Ji
f4bc4de1b1 [Core]refactor aqlm quant ops (#4351) 2024-04-25 15:03:56 -04:00
Caio Mendes
bd7a8eef25 [Doc] README Phi-3 name fix. (#4372)
Co-authored-by: Caio Mendes <caiocesart@microsoft.com>
2024-04-25 10:32:00 -07:00
Alexei-V-Ivanov-AMD
7ee82bef1e [CI/Build] Adding functionality to reset the node's GPUs before processing. (#4213) 2024-04-25 09:37:20 -07:00
Isotr0py
fbf152d976 [Bugfix][Model] Refactor OLMo model to support new HF format in transformers 4.40.0 (#4324)
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2024-04-25 09:35:56 -07:00
Nick Hill
479d69fad0 [Core] Move ray_utils.py from engine to executor package (#4347) 2024-04-25 06:52:22 +00:00
Caio Mendes
96e90fdeb3 [Model] Adds Phi-3 support (#4298) 2024-04-25 03:06:57 +00:00
zifeitong
a395a638c2 [Misc] Use public API in benchmark_throughput (#4300) 2024-04-24 21:10:24 +00:00
youkaichao
2768884ac4 [Doc] Add note for docker user (#4340)
Co-authored-by: Simon Mo <simon.mo@hey.com>
2024-04-24 21:09:44 +00:00
alexm-nm
aae08249ac [Bugfix] Fix marlin kernel crash on H100 (#4218)
This PR addresses the Marlin kernel H100 crash that was reported here: neuralmagic#187.
The reason for the crash was the inline PTX assembly that introduced the async_copy with streaming behavior. The solution is to use the more standard PTX for async_copy (without the fractional L2 policy for "evict_first"). There is no performance difference between standard async_copy PTX and the previous one.
2024-04-24 10:35:01 -07:00
Roger Wang
7923dcad12 [Misc] Update ShareGPT Dataset Sampling in Serving Benchmark (#4279) 2024-04-24 09:49:13 -07:00
youkaichao
3cd9b5bb2d [Core][Distributed] use existing torch.cuda.device (#4318)
[Core][Distributed] use existing torch.cuda.device context manager (#4318)
2024-04-24 09:00:20 -07:00
Woosuk Kwon
468d761b32 [Misc] Reduce supported Punica dtypes (#4304)
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2024-04-23 18:54:33 -07:00
youkaichao
e4bf860a54 [CI][Build] change pynvml to nvidia-ml-py (#4302) 2024-04-23 18:33:12 -07:00
youkaichao
91f50a6fe2 [Core][Distributed] use cpu/gloo to initialize pynccl (#4248) 2024-04-23 18:32:19 -07:00
Robert Shaw
79a268c4ab [BUG] fixed fp8 conflict with aqlm (#4307)
Fixes fp8 iterface which broke in AQLM merge.
2024-04-23 18:26:33 -07:00
Philipp Moritz
eace8bf0b9 [Kernel] FP8 support for MoE kernel / Mixtral (#4244)
This PR is the first step towards fixing https://github.com/vllm-project/vllm/pull/3208

It implements dynamic per-tensor scaling (see https://github.com/vllm-project/vllm/pull/4118), so users do not need to compute activation scales on a calibration dataset and they also don't need to convert their model checkpoints. It is enough to specify the `quantization="fp8"` argument. You can try out the PR like this:

```python
from vllm import LLM, SamplingParams

prompts = [
    "Hello, my name is",
    "The president of the United States is",
    "The capital of France is",
    "The future of AI is",
]
sampling_params = SamplingParams(temperature=0.8, top_p=0.95)

llm = LLM(model="mistralai/Mixtral-8x7B-Instruct-v0.1", tensor_parallel_size=2, quantization="fp8")

outputs = llm.generate(prompts, sampling_params)

# Print the outputs.
for output in outputs:
    prompt = output.prompt
    generated_text = output.outputs[0].text
    print(f"Prompt: {prompt!r}, Generated text: {generated_text!r}")
```

**Performance**: For this PR, the focus is on making the code clean (while still trying to get reasonable performance), there is a bunch of optimizations that we will submit as a follow up PR that significantly improve the performance (similar to the numbers in https://github.com/vllm-project/vllm/pull/3954). With this PR, the results are as follows:

<img width="725" alt="Screenshot 2024-04-21 at 1 31 50 PM" src="https://github.com/vllm-project/vllm/assets/113316/d8fe1118-07a0-4d4e-8530-37a77d465a03">


**Accuracy**: The accuracy with this PR on MMLU on `mistralai/Mixtral-8x7B-v0.1` is as follows:

```
|      Groups      |Version|Filter|n-shot|Metric|Value |   |Stderr|
|------------------|-------|------|-----:|------|-----:|---|-----:|
|mmlu              |N/A    |none  |     0|acc   |0.7018|±  |0.0036|
| - humanities     |N/A    |none  |     5|acc   |0.6472|±  |0.0065|
| - other          |N/A    |none  |     5|acc   |0.7673|±  |0.0072|
| - social_sciences|N/A    |none  |     5|acc   |0.8099|±  |0.0070|
| - stem           |N/A    |none  |     5|acc   |0.6131|±  |0.0083|
```
this compares favorably with the fp16 results which are
```
|      Groups      |Version|Filter|n-shot|Metric|Value |   |Stderr|
|------------------|-------|------|-----:|------|-----:|---|-----:|
|mmlu              |N/A    |none  |     0|acc   |0.7020|±  |0.1313|
| - humanities     |N/A    |none  |     5|acc   |0.6425|±  |0.1349|
| - other          |N/A    |none  |     5|acc   |0.7744|±  |0.1038|
| - social_sciences|N/A    |none  |     5|acc   |0.8131|±  |0.0695|
| - stem           |N/A    |none  |     5|acc   |0.6108|±  |0.1383|
```

Happy hacking!
2024-04-24 01:18:23 +00:00
Cyrus Leung
1e8f4252aa [Bugfix][Frontend] Raise exception when file-like chat template fails to be opened (#4292) 2024-04-23 18:19:03 +00:00
James Fleming
2b7949c1c2 AQLM CUDA support (#3287)
Co-authored-by: mgoin <michael@neuralmagic.com>
2024-04-23 13:59:33 -04:00
Simon Mo
62b5166bd4 [CI] Add ccache for wheel builds job (#4281) 2024-04-23 09:51:41 -07:00
youkaichao
d86285a4a4 [Core][Logging] Add last frame information for better debugging (#4278) 2024-04-23 09:45:52 -07:00
DefTruth
d87f39e9a9 [Bugfix] Add init_cached_hf_modules to RayWorkerWrapper (#4286) 2024-04-23 09:28:35 -07:00
Jack Gordley
d3c8180ac4 [Bugfix] Fixing max token error message for openai compatible server (#4016) 2024-04-23 19:06:29 +08:00
Cade Daniel
62b8aebc6f [Speculative decoding 7/9] Speculative decoding end-to-end correctness tests. (#3951) 2024-04-23 08:02:36 +00:00
SangBin Cho
050f285ff6 [Core] Scheduling optimization 2 (#4280) 2024-04-23 08:02:11 +00:00
Nick Hill
8f2ea22bde [Core] Some simplification of WorkerWrapper changes (#4183) 2024-04-23 07:49:08 +00:00
SangBin Cho
0ae11f78ab [Mypy] Part 3 fix typing for nested directories for most of directory (#4161) 2024-04-22 21:32:44 -07:00
Harry Mellor
34128a697e Fix autodoc directives (#4272)
Co-authored-by: Harry Mellor <hmellor@oxts.com>
2024-04-23 01:53:01 +00:00
youkaichao
c1b4e4157c [Core][Distributed] use absolute path for library file (#4271) 2024-04-22 17:21:48 -07:00
Zhanghao Wu
ceaf4ed003 [Doc] Update the SkyPilot doc with serving and Llama-3 (#4276) 2024-04-22 15:34:31 -07:00
SangBin Cho
ad8d696a99 [Core] Scheduler perf fix (#4270) 2024-04-22 21:11:06 +00:00
Harry Mellor
3d925165f2 Add example scripts to documentation (#4225)
Co-authored-by: Harry Mellor <hmellor@oxts.com>
2024-04-22 16:36:54 +00:00
alexm-nm
1543680691 [Bugfix] Ensure download_weights_from_hf(..) inside loader is using the revision parameter (#4217) 2024-04-22 09:10:48 -07:00
Tao He
077f0a2e8a [Frontend] Enable support for CPU backend in AsyncLLMEngine. (#3993)
Signed-off-by: Tao He <sighingnow@gmail.com>
2024-04-22 09:19:51 +00:00
Woosuk Kwon
e73ed0f1c6 [Bugfix] Fix type annotations in CPU model runner (#4256) 2024-04-22 00:54:16 -07:00
Isotr0py
296cdf8ac7 [Misc] Add vision language model support to CPU backend (#3968) 2024-04-22 00:44:16 -07:00
youkaichao
747b1a7147 [Core][Distributed] fix _is_full_nvlink detection (#4233) 2024-04-21 23:04:16 -07:00
Hongxia Yang
95e5b087cf [AMD][Hardware][Misc][Bugfix] xformer cleanup and light navi logic and CI fixes and refactoring (#4129) 2024-04-21 21:57:24 -07:00
GeauxEric
a37d815b83 Make initialization of tokenizer and detokenizer optional (#3748)
Co-authored-by: Yun Ding <yunding@nvidia.com>
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-04-21 22:06:46 +00:00
xiaoji
7f2593b164 [Doc]: Update the doc of adding new models (#4236) 2024-04-21 09:57:08 -07:00
Harry Mellor
fe7d648fe5 Don't show default value for flags in EngineArgs (#4223)
Co-authored-by: Harry Mellor <hmellor@oxts.com>
2024-04-21 09:15:28 -07:00
Noam Gat
cc74b2b232 Updating lm-format-enforcer version and adding links to decoding libraries in docs (#4222) 2024-04-20 08:33:16 +00:00
nunjunj
91528575ec [Frontend] multiple sampling params support (#3570) 2024-04-20 00:11:57 -07:00
Cody Yu
a22cdea371 [Kernel][FP8] Initial support with dynamic per-tensor scaling (#4118)
Provide an initial support to FP8 computation. This PR is inspired by HuggingFace TGI: huggingface/text-generation-inference#1726

This feature can be enabled with --quantization fp8 or -q fp8 when launching an engine.

Algorithm:
We still load a model checkpoint in FP16/BF16. After the weights are loaded, Fp8LinearMethod calculates the per-tensor scaling factor of weights and quantizes the weights accordingly. The scaling factor will then be stored for future use. Meanwhile, the per-tensor scaling factor for activations is calculated in every forward pass.

Initial Results:
Currently tested Mistral-7B on 1xH100. With prompt length ~5 and decoding length 128:

BF16: 1.47s
FP8: 1.66s
I'll try to use larger models and try to find more performance bottleneck. Meanwhile, you're welcome to try this code.
2024-04-20 04:28:57 +00:00
Harry Mellor
682789d402 Fix missing docs and out of sync EngineArgs (#4219)
Co-authored-by: Harry Mellor <hmellor@oxts.com>
2024-04-19 20:51:33 -07:00
Ayush Rautwar
138485a82d [Bugfix] Add fix for JSON whitespace (#4189)
Co-authored-by: Ubuntu <ubuntu@ip-172-31-13-147.ec2.internal>
2024-04-19 20:49:22 -07:00
Chirag Jain
bc9df1571b Pass tokenizer_revision when getting tokenizer in openai serving (#4214) 2024-04-19 17:13:56 -07:00
youkaichao
15b86408a8 [Misc] add nccl in collect env (#4211) 2024-04-19 19:44:51 +00:00
Ronen Schaffer
7be4f5628f [Bugfix][Core] Restore logging of stats in the async engine (#4150) 2024-04-19 08:08:26 -07:00
Uranus
8f20fc04bf [Misc] fix docstrings (#4191)
Co-authored-by: Zhong Wang <wangzhong@infini-ai.com>
2024-04-19 08:18:33 +00:00
Simon Mo
221d93ecbf Bump version of 0.4.1 (#4177) 2024-04-19 01:00:22 -07:00
Jee Li
d17c8477f1 [Bugfix] Fix LoRA loading check (#4138)
Co-authored-by: simon-mo <simon.mo@hey.com>
2024-04-19 00:59:54 -07:00
Simon Mo
a134ef6f5e Support eos_token_id from generation_config.json (#4182) 2024-04-19 04:13:36 +00:00
youkaichao
8a7a3e4436 [Core] add an option to log every function call to for debugging hang/crash in distributed inference (#4079)
Co-authored-by: Simon Mo <simon.mo@hey.com>
2024-04-18 16:15:12 -07:00
Adam Tilghman
8f9c28fd40 [Bugfix] Fix CustomAllreduce nvlink topology detection (#3974)
[Bugfix] Fix CustomAllreduce pcie nvlink topology detection (#3974) (#4159)
2024-04-18 15:32:47 -07:00
Liangfu Chen
cd2f63fb36 [CI/CD] add neuron docker and ci test scripts (#3571) 2024-04-18 15:26:01 -07:00
Nick Hill
87fa80c91f [Misc] Bump transformers to latest version (#4176) 2024-04-18 14:36:39 -07:00
James Whedbee
e1bb2fd52d [Bugfix] Support logprobs when using guided_json and other constrained decoding fields (#4149) 2024-04-18 21:12:55 +00:00
Simon Mo
705578ae14 [Docs] document that Meta Llama 3 is supported (#4175) 2024-04-18 10:55:48 -07:00
Michał Moskal
e8cc7967ff [Bugfix][Kernel] allow non-power-of-two head sizes in prefix prefill (#4128) 2024-04-18 00:51:28 -07:00
Michael Goin
53b018edcb [Bugfix] Get available quantization methods from quantization registry (#4098) 2024-04-18 00:21:55 -07:00
Harry Mellor
66ded03067 Allow model to be served under multiple names (#2894)
Co-authored-by: Alexandre Payot <alexandrep@graphcore.ai>
2024-04-18 00:16:26 -07:00
youkaichao
6dc1fc9cfe [Core] nccl integrity check and test (#4155)
[Core] Add integrity check during initialization; add test for it (#4155)
2024-04-17 22:28:52 -07:00
SangBin Cho
533d2a1f39 [Typing] Mypy typing part 2 (#4043)
Co-authored-by: SangBin Cho <sangcho@sangcho-LT93GQWG9C.local>
2024-04-17 17:28:43 -07:00
Shoichi Uchinami
a53222544c [Kernel] Add punica dimension for Swallow-MS-7B LoRA (#4134) 2024-04-17 10:02:45 -07:00
Elinx
fe3b5bbc23 [Bugfix] fix output parsing error for trtllm backend (#4137)
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-04-17 11:07:23 +00:00
youkaichao
8438e0569e [Core] RayWorkerVllm --> WorkerWrapper to reduce duplication (#4024)
[Core] replace narrow-usage RayWorkerVllm to general WorkerWrapper to reduce code duplication (#4024)
2024-04-17 08:34:33 +00:00
Cade Daniel
11d652bd4f [CI] Move CPU/AMD tests to after wait (#4123) 2024-04-16 22:53:26 -07:00
Cade Daniel
d150e4f89f [Misc] [CI] Fix CI failure caught after merge (#4126) 2024-04-16 17:56:01 -07:00
Cade Daniel
e95cd87959 [Speculative decoding 6/9] Integrate speculative decoding with LLMEngine (#3894) 2024-04-16 13:09:21 -07:00
Antoni Baum
69e1d2fb69 [Core] Refactor model loading code (#4097) 2024-04-16 11:34:39 -07:00
Noam Gat
05434764cd LM Format Enforcer Guided Decoding Support (#3868)
Co-authored-by: Simon Mo <simon.mo@hey.com>
2024-04-16 05:54:57 +00:00
SangBin Cho
4e7ee664e2 [Core] Fix engine-use-ray broken (#4105) 2024-04-16 05:24:53 +00:00
SangBin Cho
37e84a403d [Typing] Fix Sequence type GenericAlias only available after Python 3.9. (#4092) 2024-04-15 14:47:31 -07:00
Ricky Xu
4695397dcf [Bugfix] Fix ray workers profiling with nsight (#4095) 2024-04-15 14:24:45 -07:00
Sanger Steel
d619ae2d19 [Doc] Add better clarity for tensorizer usage (#4090)
Co-authored-by: Roger Wang <136131678+ywang96@users.noreply.github.com>
2024-04-15 13:28:25 -07:00
Nick Hill
eb46fbfda2 [Core] Simplifications to executor classes (#4071) 2024-04-15 13:05:09 -07:00
Li, Jiang
0003e9154b [Misc][Minor] Fix CPU block num log in CPUExecutor. (#4088) 2024-04-15 08:35:55 -07:00
Zhuohan Li
e11e200736 [Bugfix] Fix filelock version requirement (#4075) 2024-04-14 21:50:08 -07:00
Roy
8db1bf32f8 [Misc] Upgrade triton to 2.2.0 (#4061) 2024-04-14 17:43:54 -07:00
Simon Mo
aceb17cf2d [Docs] document that mixtral 8x22b is supported (#4073) 2024-04-14 14:35:55 -07:00
Nick Hill
563c54f760 [BugFix] Fix tensorizer extra in setup.py (#4072) 2024-04-14 14:12:42 -07:00
youkaichao
2cd6b4f362 [Core] avoid too many cuda context by caching p2p test (#4021) 2024-04-13 23:40:21 -07:00
Sanger Steel
711a000255 [Frontend] [Core] feat: Add model loading using tensorizer (#3476) 2024-04-13 17:13:01 -07:00
Jee Li
989ae2538d [Kernel] Add punica dimension for Baichuan-13B (#4053) 2024-04-13 07:55:05 -07:00
zspo
0a430b4ae2 [Bugfix] fix_small_bug_in_neuron_executor (#4051) 2024-04-13 07:54:03 -07:00
zspo
ec8e3c695f [Bugfix] fix_log_time_in_metrics (#4050) 2024-04-13 07:52:36 -07:00
youkaichao
98afde19fc [Core][Distributed] improve logging for init dist (#4042) 2024-04-13 07:12:53 -07:00
Dylan Hawk
5c2e66e487 [Bugfix] More type hint fixes for py 3.8 (#4039) 2024-04-12 21:07:04 -07:00
youkaichao
546e721168 [CI/Test] expand ruff and yapf for all supported python version (#4037) 2024-04-13 01:43:37 +00:00
Jee Li
b8aacac31a [Bugfix] Fix LoRA bug (#4032) 2024-04-12 16:56:37 -07:00
Bellk17
d04973ad54 Fix triton compilation issue (#3984)
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2024-04-12 16:41:26 -07:00
youkaichao
fbb9d9eef4 [Core] fix custom allreduce default value (#4040) 2024-04-12 16:40:39 -07:00
SangBin Cho
09473ee41c [mypy] Add mypy type annotation part 1 (#4006) 2024-04-12 14:35:50 -07:00
Zhuohan Li
d4ec9ffb95 [Misc] Fix typo in scheduler.py (#4022) 2024-04-12 13:56:04 -07:00
youkaichao
96b6a6d790 [Bugfix] fix type hint for py 3.8 (#4036) 2024-04-12 19:35:44 +00:00
SangBin Cho
36729bac13 [Test] Test multiple attn backend for chunked prefill. (#4023) 2024-04-12 09:56:57 -07:00
Cyrus Leung
7fd3949a0b [Frontend][Core] Move merge_async_iterators to utils (#4026) 2024-04-12 05:30:54 +00:00
Jee Li
1096717ae9 [Core] Support LoRA on quantized models (#4012) 2024-04-11 21:02:44 -07:00
Michael Feil
c2b4a1bce9 [Doc] Add typing hints / mypy types cleanup (#3816)
Co-authored-by: Roger Wang <136131678+ywang96@users.noreply.github.com>
2024-04-11 17:17:21 -07:00
Nick Hill
e46a60aa4c [BugFix] Fix handling of stop strings and stop token ids (#3672) 2024-04-11 15:34:12 -07:00
Antoni Baum
1e96c3341a Add extra punica sizes to support bigger vocabs (#4015) 2024-04-11 22:18:57 +00:00
Dylan Hawk
95e7d4a97c Fix echo/logprob OpenAI completion bug (#3441)
Co-authored-by: Dylan Hawk <dylanwawk@gmail.com>
2024-04-11 22:15:50 +00:00
youkaichao
559eb852f8 [Core] init_distributed_environment align with init_process_group(#4014)
[Core][Distributed] make init_distributed_environment compatible with init_process_group (#4014)
2024-04-11 14:00:48 -07:00
Antoni Baum
a10d3056da [Core] Set linear_weights directly on the layer (#3977) 2024-04-11 16:35:51 -04:00
bigPYJ1151
8afca50889 [Hardware][Intel] Isolate CPUModelRunner and ModelRunner for better maintenance (#3824) 2024-04-11 11:56:49 -07:00
fuchen.ljl
08ccee1e83 punica fix-bgmv-kernel-640 (#4007) 2024-04-11 08:59:26 -07:00
Roger Wang
c1dc547129 [Kernel] Fused MoE Config for Mixtral 8x22 (#4002) 2024-04-11 07:50:00 -07:00
youkaichao
f3d0bf7589 [Doc][Installation] delete python setup.py develop (#3989) 2024-04-11 03:33:02 +00:00
Kunshang Ji
e9da5a40c6 [Misc] Add indirection layer for custom ops (#3913) 2024-04-10 20:26:07 -07:00
SangBin Cho
e42df7227d [Test] Add xformer and flash attn tests (#3961)
Co-authored-by: Simon Mo <simon.mo@hey.com>
2024-04-11 03:09:50 +00:00
youkaichao
caada5e50a [Core][Model] torch.compile for layernorm in commandr (#3985)
[Core][Model] Use torch.compile to accelerate layernorm in commandr (#3985)
2024-04-11 01:48:26 +00:00
SangBin Cho
67b4221a61 [Core][5/N] Fully working chunked prefill e2e (#3884) 2024-04-10 17:56:48 -07:00
youkaichao
63e7176f26 [Core][Refactor] move parallel_utils into vllm/distributed (#3950)
[WIP][Core][Refactor] move vllm/model_executor/parallel_utils into vllm/distributed and vllm/device_communicators (#3950)
2024-04-10 15:33:30 -07:00
Travis Johnson
934d3662f7 [Bugfix] handle hf_config with architectures == None (#3982)
Signed-off-by: Travis Johnson <tsjohnso@us.ibm.com>
Co-authored-by: Simon Mo <simon.mo@hey.com>
2024-04-10 22:28:25 +00:00
Frαnçois
92cd2e2f21 [Doc] Fix getting stared to use publicly available model (#3963) 2024-04-10 18:05:52 +00:00
Daniel E Marasco
e4c4072c94 [Bugfix] Remove key sorting for guided_json parameter in OpenAi compatible Server (#3945) 2024-04-10 10:15:51 -07:00
youkaichao
e35397468f [Doc] Add doc to state our model support policy (#3948)
Co-authored-by: Roger Wang <136131678+ywang96@users.noreply.github.com>
2024-04-10 17:03:02 +00:00
James Whedbee
8b317c6dd0 [Model][AMD] ROCm support for 256 head dims for Gemma (#3972) 2024-04-10 08:12:00 -07:00
Woosuk Kwon
bd3c144e0b [Bugfix][ROCm] Add numba to Dockerfile.rocm (#3962) 2024-04-10 07:37:17 -07:00
Travis Johnson
0258b7a94b [Bugfix] handle prompt_logprobs in _apply_min_tokens_penalty (#3876)
Signed-off-by: Travis Johnson <tsjohnso@us.ibm.com>
2024-04-10 01:39:56 -07:00
胡译文
b3104b2a10 [Bugfix] Fix logits processor when prompt_logprobs is not None (#3899) 2024-04-10 00:09:36 -07:00
zhaotyer
c2e00af523 [Bugfix] fix utils.py/merge_dict func TypeError: 'type' object is not subscriptable (#3955)
Co-authored-by: tianyi_zhao <tianyi.zhao@transwarp.io>
2024-04-10 04:49:11 +00:00
Zedong Peng
c013d32c75 [Benchmark] Add cpu options to bench scripts (#3915) 2024-04-09 21:30:03 -07:00
Jee Li
11dd6ebb89 [Misc] Avoid loading incorrect LoRA config (#3777) 2024-04-09 19:47:15 -07:00
Juan Villamizar
6c0b04515f [ROCm][Hardware][AMD] Use Triton Kernel for default FA on ROCm (#3643)
Co-authored-by: jpvillam <jpvillam@amd.com>
Co-authored-by: Gregory Shtrasberg <Gregory.Shtrasberg@amd.com>
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2024-04-09 15:10:47 -07:00
Junichi Sato
e23a43aef8 [Bugfix] Fix KeyError on loading GPT-NeoX (#3925) 2024-04-09 12:11:31 -07:00
Cade Daniel
e7c7067b45 [Misc] [Core] Implement RFC "Augment BaseExecutor interfaces to enable hardware-agnostic speculative decoding" (#3837) 2024-04-09 11:44:15 -07:00
youkaichao
6d592eb430 [Core] separate distributed_init from worker (#3904) 2024-04-09 08:49:02 +00:00
Roy
d036198e23 [BugFix][Model] Fix commandr RoPE max_position_embeddings (#3919) 2024-04-09 06:17:21 +08:00
Matt Wong
59a6abf3c9 [Hotfix][CI/Build][Kernel] CUDA 11.8 does not support layernorm optimizations (#3782) 2024-04-08 14:31:02 -07:00
Kiran R
bc0c0192d1 [Bugfix] Enable Proper attention_bias Usage in Llama Model Configuration (#3767)
Co-authored-by: roy <jasonailu87@gmail.com>
2024-04-08 19:42:35 +00:00
egortolmachev
f46864d68d [Bugfix] Added Command-R GPTQ support (#3849)
Co-authored-by: Egor Tolmachev <t333ga@gmail.com>
2024-04-08 14:59:38 +00:00
ywfang
b4543c8f6b [Model] add minicpm (#3893) 2024-04-08 18:28:36 +08:00
Isotr0py
0ce0539d47 [Bugfix] Fix Llava inference with Tensor Parallelism. (#3883) 2024-04-07 22:54:13 +08:00
youkaichao
2f19283549 [Core] latency optimization (#3890) 2024-04-06 19:14:06 -07:00
youkaichao
95baec828f [Core] enable out-of-tree model register (#3871) 2024-04-06 17:11:41 -07:00
youkaichao
e4be7d70bb [CI/Benchmark] add more iteration and use median for robust latency benchmark (#3889) 2024-04-06 21:32:30 +00:00
Isotr0py
54951ac4bf [Bugfix] Fix incorrect output on OLMo models in Tensor Parallelism (#3869) 2024-04-05 12:02:09 -07:00
SangBin Cho
18de883489 [Chunked Prefill][4/n] Chunked prefill scheduler. (#3853) 2024-04-05 10:17:58 -07:00
Thomas Parnell
1d7c940d74 Add option to completion API to truncate prompt tokens (#3144) 2024-04-05 10:15:42 -07:00
Woosuk Kwon
cfaf49a167 [Misc] Define common requirements (#3841) 2024-04-05 00:39:17 -07:00
Noam Gat
9edec652e2 [Bugfix] Fixing requirements.txt (#3865) 2024-04-04 23:46:01 -07:00
Cade Daniel
e0dd4d3589 [Misc] Fix linter issues in examples/fp8/quantizer/quantize.py (#3864) 2024-04-04 21:57:33 -07:00
Cade Daniel
e5043a3e75 [Misc] Add pytest marker to opt-out of global test cleanup (#3863) 2024-04-04 21:54:16 -07:00
youkaichao
d03d64fd2e [CI/Build] refactor dockerfile & fix pip cache
[CI/Build] fix pip cache with vllm_nccl & refactor dockerfile to build wheels (#3859)
2024-04-04 21:53:16 -07:00
Sean Gallen
78107fa091 [Doc]Add asynchronous engine arguments to documentation. (#3810)
Co-authored-by: Simon Mo <simon.mo@hey.com>
Co-authored-by: Roger Wang <136131678+ywang96@users.noreply.github.com>
2024-04-04 21:52:01 -07:00
youkaichao
c391e4b68e [Core] improve robustness of pynccl (#3860) 2024-04-04 16:52:12 -07:00
Saurabh Dash
9117f892f0 [Model] Cohere CommandR+ (#3829) 2024-04-04 13:31:49 -07:00
Michael Goin
db2a6a41e2 [Hardware][CPU] Update cpu torch to match default of 2.2.1 (#3854) 2024-04-04 19:49:49 +00:00
youkaichao
ca81ff5196 [Core] manage nccl via a pypi package & upgrade to pt 2.2.1 (#3805) 2024-04-04 10:26:19 -07:00
TianYu GUO
b7782002e1 [Benchmark] Refactor sample_requests in benchmark_throughput (#3613)
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-04-04 09:56:22 +00:00
Chang Su
819a309c0f [Bugfix] Fix args in benchmark_serving (#3836)
Co-authored-by: Roger Wang <ywang@roblox.com>
2024-04-04 07:41:05 +00:00
Matthias Gerstgrasser
aabe8f40f2 [Core] [Frontend] Make detokenization optional (#3749)
Co-authored-by: Nick Hill <nickhill@us.ibm.com>
2024-04-03 21:52:18 -07:00
Woosuk Kwon
498eb5cfa3 [Bugfix] Add kv_scale input parameter to CPU backend (#3840) 2024-04-04 04:33:08 +00:00
Michael Feil
537ee25f43 [Core] Enable hf_transfer by default if available (#3817) 2024-04-04 04:02:43 +00:00
Tao He
294f8f6665 [BugFix] Pass tokenizer_config to local_tokenizer_group (#3754)
Signed-off-by: Tao He <sighingnow@gmail.com>
2024-04-03 20:31:46 -07:00
Woosuk Kwon
b95047f2da [Misc] Publish 3rd meetup slides (#3835) 2024-04-03 15:46:10 -07:00
Adrian Abeyta
2ff767b513 Enable scaled FP8 (e4m3fn) KV cache on ROCm (AMD GPU) (#3290)
Co-authored-by: Gregory Shtrasberg <Gregory.Shtrasberg@amd.com>
Co-authored-by: HaiShaw <hixiao@gmail.com>
Co-authored-by: AdrianAbeyta <Adrian.Abeyta@amd.com>
Co-authored-by: Matthew Wong <Matthew.Wong2@amd.com>
Co-authored-by: root <root@gt-pla-u18-08.pla.dcgpu>
Co-authored-by: mawong-amd <156021403+mawong-amd@users.noreply.github.com>
Co-authored-by: ttbachyinsda <ttbachyinsda@outlook.com>
Co-authored-by: guofangze <guofangze@kuaishou.com>
Co-authored-by: Michael Goin <mgoin64@gmail.com>
Co-authored-by: jacobthebanana <50071502+jacobthebanana@users.noreply.github.com>
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2024-04-03 14:15:55 -07:00
SangBin Cho
3dcb3e8b98 [3/N] Refactor scheduler for chunked prefill scheduling (#3550) 2024-04-03 14:13:49 -07:00
Michael Feil
c64cf38673 [Doc] Update contribution guidelines for better onboarding (#3819) 2024-04-03 07:31:43 +00:00
Robert Shaw
76b889bf1d [Doc] Update README.md (#3806) 2024-04-02 23:11:10 -07:00
Nick Hill
c9b506dad4 [BugFix] Use different mechanism to get vllm version in is_cpu() (#3804) 2024-04-02 23:06:25 -07:00
Cade Daniel
5757d90e26 [Speculative decoding] Adding configuration object for speculative decoding (#3706)
Co-authored-by: Lily Liu <lilyliupku@gmail.com>
2024-04-03 00:40:57 +00:00
youkaichao
a3c226e7eb [CI/Build] 0.4.0.post1, fix sm 7.0/7.5 binary (#3803)
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2024-04-02 12:57:04 -07:00
Michael Goin
b321d4881b [Bugfix] Add __init__.py files for vllm/core/block/ and vllm/spec_decode/ (#3798) 2024-04-02 12:35:31 -07:00
leiwen83
ad6eca408b Fix early CUDA init via get_architecture_class_name import (#3770)
Signed-off-by: Lei Wen <wenlei03@qiyi.com>
Co-authored-by: Lei Wen <wenlei03@qiyi.com>
2024-04-02 11:56:26 -07:00
youkaichao
205b94942e [CI/Build] fix TORCH_CUDA_ARCH_LIST in wheel build (#3801) 2024-04-02 11:54:33 -07:00
Roger Wang
3bec41f41a [Doc] Fix vLLMEngine Doc Page (#3791) 2024-04-02 09:49:37 -07:00
A-Mahla
0739b1947f [Frontend][Bugfix] allow using the default middleware with a root path (#3788)
Co-authored-by: A-Mahla <>
2024-04-02 01:20:28 -07:00
bigPYJ1151
77a6572aa5 [HotFix] [CI/Build] Minor fix for CPU backend CI (#3787) 2024-04-01 22:50:53 -07:00
bigPYJ1151
0e3f06fe9c [Hardware][Intel] Add CPU inference backend (#3634)
Co-authored-by: Kunshang Ji <kunshang.ji@intel.com>
Co-authored-by: Yuan Zhou <yuan.zhou@intel.com>
2024-04-01 22:07:30 -07:00
Cade Daniel
eb69d68804 [Misc] [CI/Build] Speed up block manager CPU-only unit tests ~10x by opting-out of GPU cleanup (#3783) 2024-04-02 00:49:51 +00:00
Qubitium
7d4e1b85e7 [Misc] Add support for new autogptq checkpoint_format (#3689)
Co-authored-by: Robert Shaw <rshaw@neuralmagic.com>
2024-04-01 19:32:01 -04:00
Cade Daniel
93deb0b38f [Speculative decoding 4/9] Lookahead scheduling for speculative decoding (#3250) 2024-04-01 22:55:24 +00:00
Roger Wang
ccb58b23e6 [Misc] Fix Benchmark TTFT Calculation for Chat Completions (#3768) 2024-04-01 15:24:30 -07:00
Nick Hill
49782fcb76 [Misc] Some minor simplifications to detokenization logic (#3670)
Some simplifications made for clarity.

Also moves detokenization-related functions from tokenizer.py to detokenizer.py.
2024-04-01 13:22:06 -07:00
Woosuk Kwon
f03cc667a0 [Misc] Minor fixes in requirements.txt (#3769) 2024-04-01 10:15:48 +00:00
Robert Shaw
563c1d7ec5 [CI/Build] Make Marlin Tests Green (#3753) 2024-03-30 19:18:34 -07:00
youkaichao
9c82a1bec3 [Doc] Update installation doc (#3746)
[Doc] Update installation doc for build from source and explain the dependency on torch/cuda version (#3746)
Co-authored-by: Zhuohan Li <zhuohan123@gmail.com>
2024-03-30 16:34:38 -07:00
mawong-amd
b6d103542c [Kernel] Layernorm performance optimization (#3662) 2024-03-30 14:26:38 -07:00
Simon Mo
51c31bc10c CMake build elf without PTX (#3739)
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2024-03-30 01:53:08 +00:00
bnellnm
3ad438c66f Fix build when nvtools is missing (#3698) 2024-03-29 18:52:39 -07:00
youkaichao
203d4f82ac [Core][Bugfix] cache len of tokenizer (#3741) 2024-03-29 18:46:39 -07:00
Nick Hill
991143cfcd [BugFix] Use consistent logger everywhere (#3738) 2024-03-29 23:26:44 +00:00
Simon Mo
8b2d3cbc1b usage lib get version another way (#3735) 2024-03-29 15:57:08 -07:00
Hongxia Yang
9765b5c406 [ROCm][Bugfix] Fixed several bugs related to rccl path and attention selector logic (#3699) 2024-03-29 14:52:36 -07:00
Simon Mo
430530fc18 bump version to v0.4.0 (#3712) 2024-03-29 12:28:33 -07:00
Roger Wang
97356f3c7e [Bugfix] Command-R Max Model Length (#3727) 2024-03-29 12:27:51 -07:00
Roy
f510395bbf [BugFix][Frontend] Fix completion logprobs=0 error (#3731) 2024-03-29 09:38:21 -07:00
Roy
6110c39dc8 [BugFix] Fix tokenizer out of vocab size (#3685) 2024-03-29 08:18:59 -07:00
yhu422
d8658c8cc1 Usage Stats Collection (#2852) 2024-03-28 22:16:12 -07:00
Simon Mo
7bc94a0fdd add ccache to docker build image (#3704) 2024-03-28 22:14:24 -07:00
youkaichao
756b30a5f3 [Core][Test] move local_rank to the last arg with default value(#3711)
[Core][Test] move local_rank to the last arg with default value to keep api compatible (#3711)
2024-03-28 21:19:45 -07:00
Woosuk Kwon
395aa823ea [Misc] Minor type annotation fix (#3716) 2024-03-28 21:12:24 -07:00
SangBin Cho
26422e477b [Test] Make model tests run again and remove --forked from pytest (#3631)
Co-authored-by: Simon Mo <simon.mo@hey.com>
2024-03-28 21:06:40 -07:00
youkaichao
f342153b48 Revert "bump version to v0.4.0" (#3708) 2024-03-28 18:49:42 -07:00
Simon Mo
27a57cad52 bump version to v0.4.0 (#3705) 2024-03-28 18:26:51 -07:00
Yile (Michael) Gu
98a42e7078 [Benchmark] Change mii to use persistent deployment and support tensor parallel (#3628) 2024-03-28 17:33:52 -07:00
youkaichao
0267fef52a [Core] fix del of communicator (#3702) 2024-03-29 00:24:58 +00:00
Simon Mo
4716a32dd4 fix logging msg for block manager (#3701) 2024-03-28 23:29:55 +00:00
Woosuk Kwon
c0935c96d3 [Bugfix] Set enable_prefix_caching=True in prefix caching example (#3703) 2024-03-28 16:26:30 -07:00
Woosuk Kwon
cb40b3ab6b [Kernel] Add MoE Triton kernel configs for A100 40GB (#3700) 2024-03-28 15:26:24 -07:00
Roy
515386ef3c [Core] Support multi-node inference(eager and cuda graph) (#3686) 2024-03-28 15:01:55 -07:00
Simon Mo
a4075cba4d [CI] Add test case to run examples scripts (#3638) 2024-03-28 14:36:10 -07:00
Simon Mo
96aa014d1e fix benchmark format reporting in buildkite (#3693) 2024-03-28 14:35:16 -07:00
Adam Boeglin
1715056fef [Bugfix] Update neuron_executor.py to add optional vision_language_config (#3695) 2024-03-28 10:43:34 -07:00
SangBin Cho
b51c1cc9d2 [2/N] Chunked prefill data update (#3538) 2024-03-28 10:06:01 -07:00
Roger Wang
ce567a2926 [Kernel] DBRX Triton MoE kernel H100 (#3692) 2024-03-28 10:05:34 -07:00
wenyujin333
d6ea427f04 [Model] Add support for Qwen2MoeModel (#3346) 2024-03-28 15:19:59 +00:00
Cade Daniel
14ccd94c89 [Core][Bugfix]Refactor block manager for better testability (#3492) 2024-03-27 23:59:28 -07:00
Woosuk Kwon
8267b06c30 [Kernel] Add Triton MoE kernel configs for DBRX on A100 (#3679) 2024-03-27 22:22:25 -07:00
youkaichao
3492859b68 [CI/Build] update default number of jobs and nvcc threads to avoid overloading the system (#3675) 2024-03-28 00:18:54 -04:00
hxer7963
098e1776ba [Model] Add support for xverse (#3610)
Co-authored-by: willhe <hexin@xverse.cn>
Co-authored-by: root <root@localhost.localdomain>
2024-03-27 18:12:54 -07:00
Roy
10e6322283 [Model] Fix and clean commandr (#3671) 2024-03-28 00:20:00 +00:00
Woosuk Kwon
6d9aa00fc4 [Docs] Add Command-R to supported models (#3669) 2024-03-27 15:20:00 -07:00
zeppombal
1182607e18 Add support for Cohere's Command-R model (#3433)
Co-authored-by: José Maria Pombal <jose.pombal@unbabel.com>
Co-authored-by: youkaichao <youkaichao@gmail.com>
2024-03-27 14:19:32 -07:00
Roger Wang
45b6ef6513 feat(benchmarks): Add Prefix Caching Benchmark to Serving Benchmark (#3277) 2024-03-27 13:39:26 -07:00
AmadeusChan
1956931436 [Misc] add the "download-dir" option to the latency/throughput benchmarks (#3621) 2024-03-27 13:39:05 -07:00
Megha Agarwal
e24336b5a7 [Model] Add support for DBRX (#3660) 2024-03-27 13:01:46 -07:00
youkaichao
d18f4e73f3 [Bugfix] [Hotfix] fix nccl library name (#3661) 2024-03-27 17:23:54 +00:00
Woosuk Kwon
82c540bebf [Bugfix] More faithful implementation of Gemma (#3653) 2024-03-27 09:37:18 -07:00
youkaichao
8f44facddd [Core] remove cupy dependency (#3625) 2024-03-27 00:33:26 -07:00
Woosuk Kwon
e66b629c04 [Misc] Minor fix in KVCache type (#3652) 2024-03-26 23:14:06 -07:00
Jee Li
76879342a3 [Doc]add lora support (#3649) 2024-03-27 02:06:46 +00:00
Jee Li
566b57c5c4 [Kernel] support non-zero cuda devices in punica kernels (#3636) 2024-03-27 00:37:42 +00:00
Nick Hill
0dc72273b8 [BugFix] Fix ipv4 address parsing regression (#3645) 2024-03-26 14:39:44 -07:00
liiliiliil
a979d9771e [Bugfix] Fix ipv6 address parsing bug (#3641) 2024-03-26 11:58:20 -07:00
Jee Li
8af890a865 Enable more models to inference based on LoRA (#3382)
Co-authored-by: Antoni Baum <antoni.baum@protonmail.com>
2024-03-25 18:09:31 -07:00
Nick Hill
dfeb2ecc3a [Misc] Include matched stop string/token in responses (#2976)
Co-authored-by: Sahil Suneja <sahilsuneja@gmail.com>
2024-03-25 17:31:32 -07:00
Antoni Baum
3a243095e5 Optimize _get_ranks in Sampler (#3623) 2024-03-25 16:03:02 -07:00
xwjiang2010
64172a976c [Feature] Add vision language model support. (#3042) 2024-03-25 14:16:30 -07:00
Simon Mo
f408d05c52 hotfix isort on logprobs ranks pr (#3622) 2024-03-25 11:55:46 -07:00
Dylan Hawk
0b4997e05c [Bugfix] API stream returning two stops (#3450)
Co-authored-by: Dylan Hawk <dylanwawk@gmail.com>
2024-03-25 10:14:34 -07:00
Travis Johnson
c13ad1b7bd feat: implement the min_tokens sampling parameter (#3124)
Signed-off-by: Travis Johnson <tsjohnso@us.ibm.com>
Co-authored-by: Nick Hill <nickhill@us.ibm.com>
2024-03-25 10:14:26 -07:00
Swapnil Parekh
819924e749 [Core] Adding token ranks along with logprobs (#3516)
Co-authored-by: Swapnil Parekh <swapnilp@ibm.com>
2024-03-25 10:13:10 -07:00
SangBin Cho
01bfb22b41 [CI] Try introducing isort. (#3495) 2024-03-25 07:59:47 -07:00
TianYu GUO
e67c295b0c [Bugfix] fix automatic prefix args and add log info (#3608) 2024-03-25 05:35:22 -07:00
Woosuk Kwon
925f3332ca [Core] Refactor Attention Take 2 (#3462) 2024-03-25 04:39:33 +00:00
少年
b0dfa91dd7 [Model] Add starcoder2 awq support (#3569) 2024-03-24 21:07:36 -07:00
Woosuk Kwon
56a8652f33 [Bugfix] store lock file in tmp directory (#3578)" (#3599)
Co-authored-by: youkaichao <youkaichao@126.com>
2024-03-24 20:06:50 -07:00
Kunshang Ji
6d93d35308 [BugFix] tensor.get_device() -> tensor.device (#3604) 2024-03-24 19:01:13 -07:00
youkaichao
837e185142 [CI/Build] fix flaky test (#3602) 2024-03-24 17:43:05 -07:00
youkaichao
42bc386129 [CI/Build] respect the common environment variable MAX_JOBS (#3600) 2024-03-24 17:04:00 -07:00
youkaichao
8b268a46a7 [CI] typo fix: is_hip --> is_hip() (#3595) 2024-03-24 16:03:06 -07:00
Nick Hill
41deac4a3d [BugFix] 1D query fix for MoE models (#3597) 2024-03-24 16:00:16 -07:00
Woosuk Kwon
af9e53496f [BugFix] Fix Falcon tied embeddings (#3590)
Co-authored-by: 44670 <44670@users.noreply.github.com>
2024-03-24 06:34:01 -07:00
Roger Wang
f8a12ecc7f [Misc] Bump transformers version (#3592) 2024-03-24 06:32:45 -07:00
Woosuk Kwon
3c5ab9b811 [Misc] Fix BLOOM copyright notice (#3591) 2024-03-23 23:30:56 -07:00
kota-iizuka
743a0b7402 [Bugfix] use SoftLockFile instead of LockFile (#3578) 2024-03-23 11:43:11 -07:00
Antoni Baum
bfdb1ba5c3 [Core] Improve detokenization performance for prefill (#3469)
Co-authored-by: MeloYang <meloyang05@gmail.com>
2024-03-22 13:44:12 -07:00
Thomas Parnell
cf2f084d56 Dynamic scheduler delay to improve ITL performance (#3279)
Co-authored-by: Jan van Lunteren <jvl@zurich.ibm.com>
2024-03-22 12:28:14 -07:00
Hanzhi Zhou
f721096d48 [BugFix] Some fixes for custom allreduce kernels (#2760) 2024-03-21 23:02:58 -07:00
Zhuohan Li
e90fc21f2e [Hardware][Neuron] Refactor neuron support (#3471) 2024-03-22 01:22:17 +00:00
Roy
ea5f14e6ff [Bugfix][Model] Fix Qwen2 (#3554) 2024-03-22 00:18:58 +00:00
Taemin Lee
b7050ca7df [BugFix] gemma loading after quantization or LoRA. (#3553) 2024-03-21 13:16:57 -07:00
Woosuk Kwon
c188ecb080 [Misc] Bump up transformers to v4.39.0 & Remove StarCoder2Config (#3551)
Co-authored-by: Roy <jasonailu87@gmail.com>
Co-authored-by: Roger Meier <r.meier@siemens.com>
2024-03-21 07:58:12 -07:00
Roy
865732342b [Misc][Log] Add log for tokenizer length not equal to vocabulary size (#3500) 2024-03-21 18:07:48 +08:00
Lalit Pradhan
4c07dd28c0 [🚀 Ready to be merged] Added support for Jais models (#3183) 2024-03-21 09:45:24 +00:00
SangBin Cho
3bbff9e5ab Fix 1D query issue from _prune_hidden_states (#3539) 2024-03-21 08:49:06 +00:00
ElizaWszola
6ebd02bdef [PREFIX CACHING FOLLOW UP] OrderedDict-based evictor (#3431)
Co-authored-by: rsnm2 <rshaw@neuralmagic.com>
Co-authored-by: Luka <luka@paperspace>
2024-03-20 23:20:04 -07:00
Zhuohan Li
523e30ea0c [BugFix] Hot fix in setup.py for neuron build (#3537) 2024-03-20 17:59:52 -07:00
Roy
f1c0fc3919 Migrate logits computation and gather to model_runner (#3233) 2024-03-20 23:25:01 +00:00
SangBin Cho
6e435de766 [1/n][Chunked Prefill] Refactor input query shapes (#3236) 2024-03-20 14:46:05 -07:00
Antoni Baum
426ec4ec67 [1/n] Triton sampling kernel (#3186)
Co-authored-by: Roger Wang <136131678+ywang96@users.noreply.github.com>
2024-03-20 14:45:08 -07:00
James Whedbee
80e254834d [Bugfix] Fix ROCm support in CMakeLists.txt (#3534) 2024-03-20 21:05:03 +00:00
bnellnm
ba8ae1d84f Check for _is_cuda() in compute_num_jobs (#3481) 2024-03-20 10:06:56 -07:00
Allen.Dou
84eaa68425 Abort when nvcc command is not found in the PATH (#3527) 2024-03-20 09:28:29 -07:00
Woosuk Kwon
5ee14494e4 [Misc] Remove cache stream and cache events (#3461) 2024-03-20 00:38:53 -07:00
Nick Hill
4ad521d8b5 [Core] Add generic typing to LRUCache (#3511) 2024-03-20 00:36:09 -07:00
ElizaWszola
9474e89ba4 [PREFIX CACHING FOLLOW UP] A bunch of fixes to block allocator performance when automatic prefix caching is disabled (#3357)
Co-authored-by: Zhuohan Li <zhuohan123@gmail.com>
2024-03-20 00:11:11 -07:00
Simon Mo
20478c4d3a Use lru_cache for some environment detection utils (#3508) 2024-03-19 21:34:15 +00:00
Jim Burtoft
63e8b28a99 [Doc] minor fix of spelling in amd-installation.rst (#3506) 2024-03-19 20:32:30 +00:00
Simon Mo
cc63d03fbb Revert "[Core] Cache some utils" (#3507) 2024-03-19 13:22:58 -07:00
Jim Burtoft
2a60c9bd17 [Doc] minor fix to neuron-installation.rst (#3505) 2024-03-19 13:21:35 -07:00
ifsheldon
c614cfee58 Update dockerfile with ModelScope support (#3429) 2024-03-19 10:54:59 -07:00
Nick Hill
7341c77d69 [BugFix] Avoid initializing CUDA too early (#3487) 2024-03-18 23:05:20 -07:00
Simon Mo
ef65dcfa6f [Doc] Add docs about OpenAI compatible server (#3288) 2024-03-18 22:05:34 -07:00
youkaichao
6a9c583e73 [Core] print error before deadlock (#3459) 2024-03-19 04:06:23 +00:00
Antoni Baum
b37cdce2b1 [Core] Cache some utils (#3474) 2024-03-18 17:14:26 -07:00
Zhuohan Li
b30880a762 [Misc] Update README for the Third vLLM Meetup (#3479) 2024-03-18 15:58:38 -07:00
Antoni Baum
49eedea373 [Core] Zero-copy asdict for InputMetadata (#3475) 2024-03-18 22:56:40 +00:00
bnellnm
9fdf3de346 Cmake based build system (#2830) 2024-03-18 15:38:33 -07:00
Zhuohan Li
c0c17d4896 [Misc] Fix PR Template (#3478) 2024-03-18 15:00:31 -07:00
Robert Shaw
097aa0ea22 [CI/Build] Fix Bad Import In Test (#3473) 2024-03-18 20:28:00 +00:00
Cade Daniel
482b0adf1b [Testing] Add test_config.py to CI (#3437) 2024-03-18 12:48:45 -07:00
Simon Mo
8c654c045f CI: Add ROCm Docker Build (#2886) 2024-03-18 19:33:47 +00:00
Woosuk Kwon
9101d832e6 [Bugfix] Make moe_align_block_size AMD-compatible (#3470) 2024-03-18 11:26:24 -07:00
Simon Mo
93348d9458 [CI] Shard tests for LoRA and Kernels to speed up (#3445) 2024-03-17 14:56:30 -07:00
Woosuk Kwon
abfc4f3387 [Misc] Use dataclass for InputMetadata (#3452)
Co-authored-by: youkaichao <youkaichao@126.com>
2024-03-17 10:02:46 +00:00
Simon Mo
6b78837b29 Fix setup.py neuron-ls issue (#2671) 2024-03-16 16:00:25 -07:00
Simon Mo
120157fd2a Support arbitrary json_object in OpenAI and Context Free Grammar (#3211) 2024-03-16 13:35:27 -07:00
Simon Mo
8e67598aa6 [Misc] fix line length for entire codebase (#3444) 2024-03-16 00:36:29 -07:00
simon-mo
ad50bf4b25 fix lint 2024-03-15 22:23:38 -07:00
Dinghow Yang
cf6ff18246 Fix Baichuan chat template (#3340) 2024-03-15 21:02:12 -07:00
Ronen Schaffer
14e3f9a1b2 Replace lstrip() with removeprefix() to fix Ruff linter warning (#2958) 2024-03-15 21:01:30 -07:00
Tao He
3123f15138 Fixes the incorrect argument in the prefix-prefill test cases (#3246) 2024-03-15 20:58:10 -07:00
youkaichao
413366e9a2 [Misc] PR templates (#3413)
Co-authored-by: Zhuohan Li <zhuohan123@gmail.com>
2024-03-15 18:25:51 -07:00
Robert Shaw
10585e035e Removed Extraneous Print Message From OAI Server (#3440) 2024-03-16 00:35:36 +00:00
Antoni Baum
fb96c1e98c Asynchronous tokenization (#2879) 2024-03-15 23:37:01 +00:00
laneeee
8fa7357f2d fix document error for value and v_vec illustration (#3421) 2024-03-15 16:06:09 -07:00
Harry Mellor
a7af4538ca Fix issue templates (#3436) 2024-03-15 21:26:00 +00:00
youkaichao
604f235937 [Misc] add error message in non linux platform (#3438) 2024-03-15 21:21:37 +00:00
Tao He
14b8ae02e7 Fixes the misuse/mixuse of time.time()/time.monotonic() (#3220)
Signed-off-by: Tao He <sighingnow@gmail.com>
Co-authored-by: simon-mo <simon.mo@hey.com>
2024-03-15 18:25:43 +00:00
Dan Clark
03d37f2441 [Fix] Add args for mTLS support (#3430)
Co-authored-by: declark1 <daniel.clark@ibm.com>
2024-03-15 09:56:13 -07:00
Yang Fan
a7c871680e Fix tie_word_embeddings for Qwen2. (#3344) 2024-03-15 09:36:53 -07:00
Junda Chen
429284dc37 Fix dist.broadcast stall without group argument (#3408) 2024-03-14 23:25:05 -07:00
Dinghow Yang
253a98078a Add chat templates for ChatGLM (#3418) 2024-03-14 23:19:22 -07:00
Dinghow Yang
21539e6856 Add chat templates for Falcon (#3420) 2024-03-14 23:19:02 -07:00
youkaichao
b522c4476f [Misc] add HOST_IP env var (#3419)
Co-authored-by: Simon Mo <simon.mo@hey.com>
2024-03-14 21:32:52 -07:00
akhoroshev
78b6c4845a Dynamically configure shared memory size for moe_align_block_size_kernel (#3376) 2024-03-14 18:18:07 -07:00
Enrique Shockwave
b983ba35bd fix marlin config repr (#3414) 2024-03-14 16:26:19 -07:00
陈序
54be8a0be2 Fix assertion failure in Qwen 1.5 with prefix caching enabled (#3373)
Co-authored-by: Cade Daniel <edacih@gmail.com>
2024-03-14 13:56:57 -07:00
youkaichao
dfc77408bd [issue templates] add some issue templates (#3412) 2024-03-14 13:16:00 -07:00
Dan Clark
c17ca8ef18 Add args for mTLS support (#3410)
Co-authored-by: Daniel Clark <daniel.clark@ibm.com>
2024-03-14 13:11:45 -07:00
Thomas Parnell
06ec486794 Install flash_attn in Docker image (#3396) 2024-03-14 10:55:54 -07:00
youkaichao
8fe8386591 [Kernel] change benchmark script so that result can be directly used; tune moe kernel in A100/H100 with tp=2,4,8 (#3389) 2024-03-14 08:11:48 +00:00
Allen.Dou
a37415c31b allow user to chose which vllm's merics to display in grafana (#3393) 2024-03-14 06:35:13 +00:00
Simon Mo
81653d9688 [Hotfix] [Debug] test_openai_server.py::test_guided_regex_completion (#3383) 2024-03-13 17:02:21 -07:00
Zhuohan Li
eeab52a4ff [FIX] Simpler fix for async engine running on ray (#3371) 2024-03-13 14:18:40 -07:00
Antoni Baum
c33afd89f5 Fix lint (#3388) 2024-03-13 13:56:49 -07:00
Terry
7e9bd08f60 Add batched RoPE kernel (#3095) 2024-03-13 13:45:26 -07:00
Or Sharir
ae0ccb4017 Add missing kernel for CodeLlama-34B on A/H100 (no tensor parallelism) when using Multi-LoRA. (#3350) 2024-03-13 12:18:25 -07:00
陈序
739c350c19 [Minor Fix] Use cupy-cuda11x in CUDA 11.8 build (#3256) 2024-03-13 09:43:24 -07:00
Hui Liu
ba8dc958a3 [Minor] Fix bias in if to remove ambiguity (#3259) 2024-03-13 09:16:55 -07:00
Ronan McGovern
e221910e77 add hf_transfer to requirements.txt (#3031) 2024-03-12 23:33:43 -07:00
Bo-Wen Wang
b167109ba1 [Fix] Fix quantization="gptq" when using Marlin (#3319)
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2024-03-12 22:51:42 -07:00
Woosuk Kwon
602358f8a8 Add kernel for GeGLU with approximate GELU (#3337) 2024-03-12 22:06:17 -07:00
Breno Faria
49a3c8662b Fixes #1556 double free (#3347) 2024-03-13 00:30:08 +00:00
Sherlock Xu
b0925b3878 docs: Add BentoML deployment doc (#3336)
Signed-off-by: Sherlock113 <sherlockxu07@gmail.com>
2024-03-12 10:34:30 -07:00
DAIZHENWEI
654865e21d Support Mistral Model Inference with transformers-neuronx (#3153) 2024-03-11 13:19:51 -07:00
kliuae
c9415c19d3 [ROCm] Fix warp and lane calculation in blockReduceSum (#3321) 2024-03-11 13:14:07 -07:00
Zhuohan Li
4c922709b6 Add distributed model executor abstraction (#3191) 2024-03-11 11:03:45 -07:00
Philipp Moritz
657061fdce [docs] Add LoRA support information for models (#3299) 2024-03-11 00:54:51 -07:00
Zhuohan Li
2f8844ba08 Re-enable the 80 char line width limit (#3305) 2024-03-10 19:49:14 -07:00
Nick Hill
4b59f00e91 [Fix] Fix best_of behavior when n=1 (#3298) 2024-03-10 19:17:46 -07:00
Roy
9e8744a545 [BugFix] Fix get tokenizer when using ray (#3301) 2024-03-10 19:17:16 -07:00
Douglas Lehr
e4a28e5316 [ROCM] Fix blockReduceSum to use correct warp counts for ROCm and CUDA (#3262) 2024-03-10 15:27:45 -07:00
Terry
0bba88df03 Enhance lora tests with more layer and rank variations (#3243) 2024-03-09 17:14:16 -08:00
Cade Daniel
8437bae6ef [Speculative decoding 3/9] Worker which speculates, scores, and applies rejection sampling (#3103) 2024-03-08 23:32:46 -08:00
Zhuohan Li
f48c6791b7 [FIX] Fix prefix test error on main (#3286) 2024-03-08 17:16:14 -08:00
Michael Goin
c2c5e0909a Move model filelocks from /tmp/ to ~/.cache/vllm/locks/ dir (#3241) 2024-03-08 13:33:10 -08:00
Woosuk Kwon
1cb0cc2975 [FIX] Make flash_attn optional (#3269) 2024-03-08 10:52:20 -08:00
Roger Wang
99c3cfb83c [Docs] Fix Unmocked Imports (#3275) 2024-03-08 09:58:01 -08:00
TianYu GUO
1ece1ae829 [Minor Fix] Fix comments in benchmark_serving (#3252) 2024-03-07 22:22:59 -08:00
whyiug
c59e120c55 Feature add lora support for Qwen2 (#3177) 2024-03-07 21:58:24 -08:00
Nick Hill
d2339d6840 Connect engine healthcheck to openai server (#3260) 2024-03-07 16:38:12 -08:00
ElizaWszola
b35cc93420 Fix auto prefix bug (#3239) 2024-03-07 16:37:28 -08:00
jacobthebanana
8cbba4622c Possible fix for conflict between Automated Prefix Caching (#2762) and multi-LoRA support (#1804) (#3263) 2024-03-07 23:03:22 +00:00
Michael Goin
385da2dae2 Measure model memory usage (#3120) 2024-03-07 11:42:42 -08:00
Woosuk Kwon
2daf23ab0c Separate attention backends (#3005) 2024-03-07 01:45:50 -08:00
Chen Wang
cbf4c05b15 Update requirements-dev.txt to include package for benchmarking scripts. (#3181)
Co-authored-by: Zhuohan Li <zhuohan123@gmail.com>
2024-03-07 08:39:28 +00:00
TechxGenus
d3c04b6a39 Add GPTQ support for Gemma (#3200) 2024-03-07 08:19:14 +08:00
Chujie Zheng
4cb3b924cd Add tqdm dynamic_ncols=True (#3242) 2024-03-06 22:41:42 +00:00
Cade Daniel
a33ce60c66 [Testing] Fix core tests (#3224) 2024-03-06 01:04:23 -08:00
SangBin Cho
24aecf421a [Tests] Add block manager and scheduler tests (#3108) 2024-03-05 18:23:34 -08:00
Nick Hill
2efce05dc3 [Fix] Avoid pickling entire LLMEngine for Ray workers (#3207)
Co-authored-by: Antoni Baum <antoni.baum@protonmail.com>
2024-03-06 00:17:20 +00:00
Nick Hill
8999ec3c16 Store eos_token_id in Sequence for easy access (#3166) 2024-03-05 15:35:43 -08:00
Hongxia Yang
05af6da8d9 [ROCm] enable cupy in order to enable cudagraph mode for AMD GPUs (#3123)
Co-authored-by: lcskrishna <lollachaitanya@gmail.com>
2024-03-04 18:14:53 -08:00
Chen Wang
9a4548bae7 Fix the openai benchmarking requests to work with latest OpenAI apis (#2992)
Co-authored-by: Roger Wang <136131678+ywang96@users.noreply.github.com>
2024-03-04 15:51:56 -08:00
Antoni Baum
ff578cae54 Add health check, make async Engine more robust (#3015)
Co-authored-by: Zhuohan Li <zhuohan123@gmail.com>
2024-03-04 22:01:40 +00:00
Antoni Baum
22de45235c Push logprob generation to LLMEngine (#3065)
Co-authored-by: Avnish Narayan <avnish@anyscale.com>
2024-03-04 19:54:06 +00:00
ttbachyinsda
76e8a70476 [Minor fix] The domain dns.google may cause a socket.gaierror exception (#3176)
Co-authored-by: guofangze <guofangze@kuaishou.com>
2024-03-04 19:17:12 +00:00
Allen.Dou
9cbc7e5f3b enable --gpu-memory-utilization in benchmark_throughput.py (#3175)
Co-authored-by: zixiao <shunli.dsl@alibaba-inc.com>
2024-03-04 10:37:58 -08:00
Jialun Lyu
27a7b070db Add document for vllm paged attention kernel. (#2978) 2024-03-04 09:23:34 -08:00
TianYu GUO
901cf4c52b [Minor Fix] Remove unused code in benchmark_prefix_caching.py (#3171) 2024-03-03 22:48:27 -08:00
Liangfu Chen
d0fae88114 [DOC] add setup document to support neuron backend (#2777) 2024-03-04 01:03:51 +00:00
Philipp Moritz
17c3103c56 Make it easy to profile workers with nsight (#3162)
Co-authored-by: Roger Wang <136131678+ywang96@users.noreply.github.com>
2024-03-03 16:19:13 -08:00
Zhuohan Li
996d095c54 [FIX] Fix styles in automatic prefix caching & add a automatic prefix caching benchmark (#3158) 2024-03-03 14:37:18 -08:00
Jason Cox
d65fac2738 Add vLLM version info to logs and openai API server (#3161) 2024-03-02 21:00:29 -08:00
Sage Moore
ce4f5a29fb Add Automatic Prefix Caching (#2762)
Co-authored-by: ElizaWszola <eliza@neuralmagic.com>
Co-authored-by: Michael Goin <michael@neuralmagic.com>
2024-03-02 00:50:01 -08:00
cloudhan
baee28c46c Reorder kv dtype check to avoid nvcc not found error on AMD platform (#3104) 2024-03-02 14:34:48 +08:00
Allen.Dou
29e70e3e88 allow user chose log level by --log-level instead of fixed 'info'. (#3109)
Co-authored-by: zixiao <shunli.dsl@alibaba-inc.com>
Co-authored-by: Simon Mo <simon.mo@hey.com>
2024-03-01 23:28:41 +00:00
Woosuk Kwon
82091b864a Bump up to v0.3.3 (#3129)
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2024-03-01 12:58:06 -08:00
Robert Shaw
c0c2335ce0 Integrate Marlin Kernels for Int4 GPTQ inference (#2497)
Co-authored-by: Robert Shaw <114415538+rib-2@users.noreply.github.com>
Co-authored-by: alexm <alexm@neuralmagic.com>
2024-03-01 12:47:51 -08:00
Huarong
90fbf12540 fix relative import path of protocol.py (#3134)
Co-authored-by: huohuarong <huohuarong@zuoshouyisheng.com>
2024-03-01 19:42:06 +00:00
Yuan Tang
49d849b3ab docs: Add tutorial on deploying vLLM model with KServe (#2586)
Signed-off-by: Yuan Tang <terrytangyuan@gmail.com>
2024-03-01 11:04:14 -08:00
Seonghyeon
27ca23dc00 Remove exclude_unset in streaming response (#3143) 2024-03-01 09:59:06 -08:00
Sherry
54d3544784 Fix: Output text is always truncated in some models (#3016) 2024-03-01 07:52:22 +00:00
felixzhu555
703e42ee4b Add guided decoding for OpenAI API server (#2819)
Co-authored-by: br3no <breno@veltefaria.de>
Co-authored-by: simon-mo <simon.mo@hey.com>
2024-02-29 22:13:08 +00:00
Nick Hill
29a8d6a554 [Fix] Don't deep-copy LogitsProcessors when copying SamplingParams (#3099) 2024-02-29 19:20:42 +00:00
Billy Cao
2c08ff23c0 Fix building from source on WSL (#3112) 2024-02-29 11:13:58 -08:00
Seonghyeon
bfdcfa6a05 Support starcoder2 architecture (#3089) 2024-02-29 00:51:48 -08:00
Allen.Dou
9289e577ec add cache_config's info to prometheus metrics. (#3100) 2024-02-29 06:15:18 +00:00
Jae-Won Chung
a6d471c759 Fix: AttributeError in OpenAI-compatible server (#3018) 2024-02-28 22:04:07 -08:00
CHU Tianxiang
01a5d18a53 Add Support for 2/3/8-bit GPTQ Quantization Models (#2330) 2024-02-28 21:52:23 -08:00
Woosuk Kwon
929b4f2973 Add LoRA support for Gemma (#3050) 2024-02-28 13:03:28 -08:00
Liangfu Chen
3b7178cfa4 [Neuron] Support inference with transformers-neuronx (#2569) 2024-02-28 09:34:34 -08:00
Allen.Dou
e46fa5d52e Restrict prometheus_client >= 0.18.0 to prevent errors when importing pkgs (#3070) 2024-02-28 05:38:26 +00:00
Ganesh Jagadeesan
a8683102cc multi-lora documentation fix (#3064) 2024-02-27 21:26:15 -08:00
Tao He
71bcaf99e2 Enable GQA support in the prefix prefill kernels (#3007)
Signed-off-by: Tao He <sighingnow@gmail.com>
2024-02-27 01:14:31 -08:00
Woosuk Kwon
8b430d7dea [Minor] Fix StableLMEpochForCausalLM -> StableLmForCausalLM (#3046) 2024-02-26 20:23:50 -08:00
Dylan Hawk
e0ade06d63 Support logit bias for OpenAI API (#3027) 2024-02-27 11:51:53 +08:00
Woosuk Kwon
4bd18ec0c7 [Minor] Fix type annotation in fused moe (#3045) 2024-02-26 19:44:29 -08:00
Jingru
2410e320b3 fix get_ip error in pure ipv6 environment (#2931) 2024-02-26 19:22:16 -08:00
张大成
48a8f4a7fd Support Orion model (#2539)
Co-authored-by: zhangdacheng <zhangdacheng@ainirobot.com>
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2024-02-26 19:17:06 -08:00
Roy
4dd6416faf Fix stablelm (#3038) 2024-02-26 18:31:10 -08:00
Roy
c1c0d00b88 Don't use cupy when enforce_eager=True (#3037) 2024-02-26 17:33:38 -08:00
Roy
d9f726c4d0 [Minor] Remove unused config files (#3039) 2024-02-26 17:25:22 -08:00
Woosuk Kwon
d6e4a130b0 [Minor] Remove gather_cached_kv kernel (#3043) 2024-02-26 15:00:54 -08:00
Philipp Moritz
cfc15a1031 Optimize Triton MoE Kernel (#2979)
Co-authored-by: Cade Daniel <edacih@gmail.com>
2024-02-26 13:48:56 -08:00
Jared Moore
70f3e8e3a1 Add LogProbs for Chat Completions in OpenAI (#2918) 2024-02-26 10:39:34 +08:00
Harry Mellor
ef978fe411 Port metrics from aioprometheus to prometheus_client (#2730) 2024-02-25 11:54:00 -08:00
Woosuk Kwon
f7c1234990 [Fix] Fissertion on YaRN model len (#2984) 2024-02-23 12:57:48 -08:00
zhaoyang-star
57f044945f Fix nvcc not found in vlm-openai image (#2781) 2024-02-22 14:25:07 -08:00
Ronen Schaffer
4caf7044e0 Include tokens from prompt phase in counter_generation_tokens (#2802) 2024-02-22 14:00:12 -08:00
Woosuk Kwon
6f32cddf1c Remove Flash Attention in test env (#2982) 2024-02-22 09:58:29 -08:00
44670
c530e2cfe3 [FIX] Fix a bug in initializing Yarn RoPE (#2983) 2024-02-22 01:40:05 -08:00
Woosuk Kwon
fd5dcc5c81 Optimize GeGLU layer in Gemma (#2975) 2024-02-21 20:17:52 -08:00
Massimiliano Pronesti
93dc5a2870 chore(vllm): codespell for spell checking (#2820) 2024-02-21 18:56:01 -08:00
Woosuk Kwon
95529e3253 Use Llama RMSNorm custom op for Gemma (#2974) 2024-02-21 18:28:23 -08:00
Roy
344020c926 Migrate MistralForCausalLM to LlamaForCausalLM (#2868) 2024-02-21 18:25:05 -08:00
Mustafa Eyceoz
5574081c49 Added early stopping to completion APIs (#2939) 2024-02-21 18:24:01 -08:00
Ronen Schaffer
d7f396486e Update comment (#2934) 2024-02-21 18:18:37 -08:00
Zhuohan Li
8fbd84bf78 Bump up version to v0.3.2 (#2968)
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This version is for more model support. Add support for Gemma models (#2964) and OLMo models (#2832).
2024-02-21 11:47:25 -08:00
Nick Hill
7d2dcce175 Support per-request seed (#2514) 2024-02-21 11:47:00 -08:00
Woosuk Kwon
dc903e70ac [ROCm] Upgrade transformers to v4.38.0 (#2967) 2024-02-21 09:46:57 -08:00
Zhuohan Li
a9c8212895 [FIX] Add Gemma model to the doc (#2966) 2024-02-21 09:46:15 -08:00
Woosuk Kwon
c20ecb6a51 Upgrade transformers to v4.38.0 (#2965) 2024-02-21 09:38:03 -08:00
Xiang Xu
5253edaacb Add Gemma model (#2964) 2024-02-21 09:34:30 -08:00
Antoni Baum
017d9f1515 Add metrics to RequestOutput (#2876) 2024-02-20 21:55:57 -08:00
Antoni Baum
181b27d881 Make vLLM logging formatting optional (#2877) 2024-02-20 14:38:55 -08:00
Zhuohan Li
63e2a6419d [FIX] Fix beam search test (#2930) 2024-02-20 14:37:39 -08:00
James Whedbee
264017a2bf [ROCm] include gfx908 as supported (#2792) 2024-02-19 17:58:59 -08:00
Ronen Schaffer
e433c115bc Fix vllm:prompt_tokens_total metric calculation (#2869) 2024-02-18 23:55:41 -08:00
Simon Mo
86fd8bb0ac Add warning to prevent changes to benchmark api server (#2858) 2024-02-18 21:36:19 -08:00
Isotr0py
ab3a5a8259 Support OLMo models. (#2832) 2024-02-18 21:05:15 -08:00
Zhuohan Li
a61f0521b8 [Test] Add basic correctness test (#2908) 2024-02-18 16:44:50 -08:00
Zhuohan Li
537c9755a7 [Minor] Small fix to make distributed init logic in worker looks cleaner (#2905) 2024-02-18 14:39:00 -08:00
Mark Mozolewski
786b7f18a5 Add code-revision config argument for Hugging Face Hub (#2892) 2024-02-17 22:36:53 -08:00
jvmncs
8f36444c4f multi-LoRA as extra models in OpenAI server (#2775)
how to serve the loras (mimicking the [multilora inference example](https://github.com/vllm-project/vllm/blob/main/examples/multilora_inference.py)):
```terminal
$ export LORA_PATH=~/.cache/huggingface/hub/models--yard1--llama-2-7b-sql-lora-test/
$ python -m vllm.entrypoints.api_server \
 --model meta-llama/Llama-2-7b-hf \
 --enable-lora \
 --lora-modules sql-lora=$LORA_PATH sql-lora2=$LORA_PATH
```
the above server will list 3 separate values if the user queries `/models`: one for the base served model, and one each for the specified lora modules. in this case sql-lora and sql-lora2 point to the same underlying lora, but this need not be the case. lora config values take the same values they do in EngineArgs

no work has been done here to scope client permissions to specific models
2024-02-17 12:00:48 -08:00
Nick Hill
185b2c29e2 Defensively copy sampling_params (#2881)
If the SamplingParams object passed to LLMEngine.add_request() is mutated after it returns, it could affect the async sampling process for that request.

Suggested by @Yard1 https://github.com/vllm-project/vllm/pull/2514#discussion_r1490106059
2024-02-17 11:18:04 -08:00
Woosuk Kwon
5f08050d8d Bump up to v0.3.1 (#2887)
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2024-02-16 15:05:18 -08:00
shiyi.c_98
64da65b322 Prefix Caching- fix t4 triton error (#2517) 2024-02-16 14:17:55 -08:00
Hongxia Yang
5255d99dc5 [ROCm] Dockerfile fix for flash-attention build (#2885) 2024-02-15 10:22:39 -08:00
Philipp Moritz
4f2ad11135 Fix DeciLM (#2883) 2024-02-14 22:29:57 -08:00
Woosuk Kwon
d7afab6d3a [BugFix] Fix GC bug for LLM class (#2882) 2024-02-14 22:17:44 -08:00
Philipp Moritz
31348dff03 Align LoRA code between Mistral and Mixtral (fixes #2875) (#2880)
* Fix AttributeError: MixtralModel object has no attribute org_vocab_size.

* Make LoRA logic for Mistral and Mixtral the same

---------

Co-authored-by: Pernekhan Utemuratov <pernekhan@deepinfra.com>
2024-02-15 01:00:43 +01:00
Woosuk Kwon
25e86b6a61 Don't use cupy NCCL for AMD backends (#2855) 2024-02-14 12:30:44 -08:00
Roy
4efbac6d35 Migrate AquilaForCausalLM to LlamaForCausalLM (#2867) 2024-02-14 12:30:24 -08:00
Nikola Borisov
87069ccf68 Fix docker python version (#2845) 2024-02-14 10:17:57 -08:00
Woosuk Kwon
7e45107f51 [Fix] Fix memory profiling when GPU is used by multiple processes (#2863) 2024-02-13 19:52:34 -08:00
Philipp Moritz
0c48b37c31 Fix internlm after https://github.com/vllm-project/vllm/pull/2860 (#2861) 2024-02-13 18:01:15 -08:00
Philipp Moritz
7eacffd951 Migrate InternLMForCausalLM to LlamaForCausalLM (#2860)
Co-authored-by: Roy <jasonailu87@gmail.com>
2024-02-13 17:12:05 -08:00
Terry
2a543d6efe Add LoRA support for Mixtral (#2831)
* add mixtral lora support

* formatting

* fix incorrectly ported logic

* polish tests

* minor fixes and refactoring

* minor fixes

* formatting

* rename and remove redundant logic

* refactoring

* refactoring

* minor fix

* minor refactoring

* fix code smell
2024-02-14 00:55:45 +01:00
Philipp Moritz
317b29de0f Remove Yi model definition, please use LlamaForCausalLM instead (#2854)
Co-authored-by: Roy <jasonailu87@gmail.com>
2024-02-13 14:22:22 -08:00
Woosuk Kwon
a463c333dd Use CuPy for CUDA graphs (#2811) 2024-02-13 11:32:06 -08:00
Philipp Moritz
ea356004d4 Revert "Refactor llama family models (#2637)" (#2851)
This reverts commit 5c976a7e1a.
2024-02-13 09:24:59 -08:00
Roy
5c976a7e1a Refactor llama family models (#2637) 2024-02-13 00:09:23 -08:00
Simon Mo
f964493274 [CI] Ensure documentation build is checked in CI (#2842) 2024-02-12 22:53:07 -08:00
Roger Wang
a4211a4dc3 Serving Benchmark Refactoring (#2433) 2024-02-12 22:53:00 -08:00
Rex
563836496a Refactor 2 awq gemm kernels into m16nXk32 (#2723)
Co-authored-by: Chunan Zeng <chunanzeng@Chunans-Air.attlocal.net>
2024-02-12 11:02:17 -08:00
Philipp Moritz
4ca2c358b1 Add documentation section about LoRA (#2834) 2024-02-12 17:24:45 +01:00
Hongxia Yang
0580aab02f [ROCm] support Radeon™ 7900 series (gfx1100) without using flash-attention (#2768) 2024-02-10 23:14:37 -08:00
Woosuk Kwon
3711811b1d Disable custom all reduce by default (#2808) 2024-02-08 09:58:03 -08:00
SangBin Cho
65b89d16ee [Ray] Integration compiled DAG off by default (#2471) 2024-02-08 09:57:25 -08:00
Philipp Moritz
931746bc6d Add documentation on how to do incremental builds (#2796) 2024-02-07 14:42:02 -08:00
Hongxia Yang
c81dddb45c [ROCm] Fix build problem resulted from previous commit related to FP8 kv-cache support (#2790) 2024-02-06 22:36:59 -08:00
Lily Liu
fe6d09ae61 [Minor] More fix of test_cache.py CI test failure (#2750) 2024-02-06 11:38:38 -08:00
liuyhwangyh
ed70c70ea3 modelscope: fix issue when model parameter is not a model id but path of the model. (#2489) 2024-02-06 09:57:15 -08:00
Woosuk Kwon
f0d4e14557 Add fused top-K softmax kernel for MoE (#2769) 2024-02-05 17:38:02 -08:00
Douglas Lehr
2ccee3def6 [ROCm] Fixup arch checks for ROCM (#2627) 2024-02-05 14:59:09 -08:00
Lukas
b92adec8e8 Set local logging level via env variable (#2774) 2024-02-05 14:26:50 -08:00
Hongxia Yang
56f738ae9b [ROCm] Fix some kernels failed unit tests (#2498) 2024-02-05 14:25:36 -08:00
Woosuk Kwon
72d3a30c63 [Minor] Fix benchmark_latency script (#2765) 2024-02-05 12:45:37 -08:00
whyiug
c9b45adeeb Require triton >= 2.1.0 (#2746)
Co-authored-by: yangrui1 <yangrui@lanjingren.com>
2024-02-04 23:07:36 -08:00
Rex
5a6c81b051 Remove eos tokens from output by default (#2611) 2024-02-04 14:32:42 -08:00
dancingpipi
51cd22ce56 set&get llm internal tokenizer instead of the TokenizerGroup (#2741)
Co-authored-by: shujunhua1 <shujunhua1@jd.com>
2024-02-04 14:25:36 -08:00
Massimiliano Pronesti
5ed704ec8c docs: fix langchain (#2736) 2024-02-03 18:17:55 -08:00
Cheng Su
4abf6336ec Add one example to run batch inference distributed on Ray (#2696) 2024-02-02 15:41:42 -08:00
zspo
0e163fce18 Fix default length_penalty to 1.0 (#2667) 2024-02-01 15:59:39 -08:00
Kunshang Ji
96b6f475dd Remove hardcoded device="cuda" to support more devices (#2503)
Co-authored-by: Jiang Li <jiang1.li@intel.com>
Co-authored-by: Kunshang Ji <kunshang.ji@intel.com>
2024-02-01 15:46:39 -08:00
Pernekhan Utemuratov
c410f5d020 Use revision when downloading the quantization config file (#2697)
Co-authored-by: Pernekhan Utemuratov <pernekhan@deepinfra.com>
2024-02-01 15:41:58 -08:00
Simon Mo
bb8c697ee0 Update README for meetup slides (#2718) 2024-02-01 14:56:53 -08:00
Simon Mo
b9e96b17de fix python 3.8 syntax (#2716) 2024-02-01 14:00:58 -08:00
zhaoyang-star
923797fea4 Fix compile error when using rocm (#2648) 2024-02-01 09:35:09 -08:00
Fengzhe Zhou
cd9e60c76c Add Internlm2 (#2666) 2024-02-01 09:27:40 -08:00
Robert Shaw
93b38bea5d Refactor Prometheus and Add Request Level Metrics (#2316) 2024-01-31 14:58:07 -08:00
Philipp Moritz
d0d93b92b1 Add unit test for Mixtral MoE layer (#2677) 2024-01-31 14:34:17 -08:00
Philipp Moritz
89efcf1ce5 [Minor] Fix test_cache.py CI test failure (#2684) 2024-01-31 10:12:11 -08:00
zspo
c664b0e683 fix some bugs (#2689) 2024-01-31 10:09:23 -08:00
Tao He
d69ff0cbbb Fixes assertion failure in prefix caching: the lora index mapping should respect prefix_len (#2688)
Signed-off-by: Tao He <sighingnow@gmail.com>
2024-01-31 18:00:13 +01:00
Zhuohan Li
1af090b57d Bump up version to v0.3.0 (#2656)
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2024-01-31 00:07:07 -08:00
Woosuk Kwon
3dad944485 Add quantized mixtral support (#2673) 2024-01-30 16:34:10 -08:00
Woosuk Kwon
105a40f53a [Minor] Fix false warning when TP=1 (#2674) 2024-01-30 14:39:40 -08:00
Philipp Moritz
bbe9bd9684 [Minor] Fix a small typo (#2672) 2024-01-30 13:40:37 -08:00
Vladimir
4f65af0e25 Add swap_blocks unit tests (#2616) 2024-01-30 09:30:50 -08:00
Wen Sun
d79ced3292 Fix 'Actor methods cannot be called directly' when using --engine-use-ray (#2664)
* fix: engine-useray complain

* fix: typo
2024-01-30 17:17:05 +01:00
Philipp Moritz
ab40644669 Fused MOE for Mixtral (#2542)
Co-authored-by: chen shen <scv119@gmail.com>
2024-01-29 22:43:37 -08:00
wangding zeng
5d60def02c DeepseekMoE support with Fused MoE kernel (#2453)
Co-authored-by: roy <jasonailu87@gmail.com>
2024-01-29 21:19:48 -08:00
Rasmus Larsen
ea8489fce2 ROCm: Allow setting compilation target (#2581) 2024-01-29 10:52:31 -08:00
Hanzhi Zhou
1b20639a43 No repeated IPC open (#2642) 2024-01-29 10:46:29 -08:00
zhaoyang-star
b72af8f1ed Fix error when tp > 1 (#2644)
Co-authored-by: zhaoyang-star <zhao.yang16@zte.com.cn>
2024-01-28 22:47:39 -08:00
zhaoyang-star
9090bf02e7 Support FP8-E5M2 KV Cache (#2279)
Co-authored-by: zhaoyang <zhao.yang16@zte.com.cn>
Co-authored-by: Zhuohan Li <zhuohan123@gmail.com>
2024-01-28 16:43:54 -08:00
Simon Mo
7d648418b8 Update Ray version requirements (#2636) 2024-01-28 14:27:22 -08:00
Murali Andoorveedu
89be30fa7d Small async_llm_engine refactor (#2618) 2024-01-27 23:28:37 -08:00
Woosuk Kwon
f8ecb84c02 Speed up Punica compilation (#2632) 2024-01-27 17:46:56 -08:00
Woosuk Kwon
5f036d2bcc [Minor] Fix warning on Ray dependencies (#2630) 2024-01-27 15:43:40 -08:00
Hanzhi Zhou
380170038e Implement custom all reduce kernels (#2192) 2024-01-27 12:46:35 -08:00
Xiang Xu
220a47627b Use head_dim in config if exists (#2622) 2024-01-27 10:30:49 -08:00
Casper
beb89f68b4 AWQ: Up to 2.66x higher throughput (#2566) 2024-01-26 23:53:17 -08:00
Philipp Moritz
390b495ff3 Don't build punica kernels by default (#2605) 2024-01-26 15:19:19 -08:00
dakotamahan-stability
3a0e1fc070 Support for Stable LM 2 (#2598)
Co-authored-by: Zhuohan Li <zhuohan123@gmail.com>
2024-01-26 12:45:19 -08:00
Hongxia Yang
6b7de1a030 [ROCm] add support to ROCm 6.0 and MI300 (#2274) 2024-01-26 12:41:10 -08:00
Vladimir
5265631d15 use a correct device when creating OptionalCUDAGuard (#2583) 2024-01-25 23:48:17 -08:00
Junyang Lin
2832e7b9f9 fix names and license for Qwen2 (#2589) 2024-01-24 22:37:51 -08:00
Simon Mo
3a7dd7e367 Support Batch Completion in Server (#2529) 2024-01-24 17:11:07 -08:00
LastWhisper
223c19224b Fix the syntax error in the doc of supported_models (#2584) 2024-01-24 11:22:51 -08:00
Federico Galatolo
f1f6cc10c7 Added include_stop_str_in_output and length_penalty parameters to OpenAI API (#2562) 2024-01-24 10:21:56 -08:00
Nikola Borisov
3209b49033 [Bugfix] fix crash if max_tokens=None (#2570) 2024-01-23 22:38:55 -08:00
Simon Mo
1e4277d2d1 lint: format all python file instead of just source code (#2567) 2024-01-23 15:53:06 -08:00
Antoni Baum
9b945daaf1 [Experimental] Add multi-LoRA support (#1804)
Co-authored-by: Chen Shen <scv119@gmail.com>
Co-authored-by: Shreyas Krishnaswamy <shrekris@anyscale.com>
Co-authored-by: Avnish Narayan <avnish@anyscale.com>
2024-01-23 15:26:37 -08:00
Erfan Al-Hossami
9c1352eb57 [Feature] Simple API token authentication and pluggable middlewares (#1106) 2024-01-23 15:13:00 -08:00
Jason Zhu
7a0b011dd5 Add a 1-line docstring to explain why calling context_attention_fwd twice in test_prefix_prefill.py (#2553) 2024-01-22 14:47:25 -08:00
Harry Mellor
63e835cbcc Fix progress bar and allow HTTPS in benchmark_serving.py (#2552) 2024-01-22 14:40:31 -08:00
Junyang Lin
94b5edeb53 Add qwen2 (#2495) 2024-01-22 14:34:21 -08:00
Philipp Moritz
ab7e6006d6 Fix https://github.com/vllm-project/vllm/issues/2540 (#2545) 2024-01-22 19:02:38 +01:00
Cade Daniel
18bfcdd05c [Speculative decoding 2/9] Multi-step worker for draft model (#2424) 2024-01-21 16:31:47 -08:00
Jannis Schönleber
71d63ed72e migrate pydantic from v1 to v2 (#2531) 2024-01-21 16:05:56 -08:00
Nick Hill
d75c40734a [Fix] Keep scheduler.running as deque (#2523) 2024-01-20 22:36:09 -08:00
Junda Chen
5b23c3f26f Add group as an argument in broadcast ops (#2522) 2024-01-20 16:00:26 -08:00
Simon Mo
00efdc84ba Add benchmark serving to CI (#2505) 2024-01-19 20:20:19 -08:00
Roy
91a61da9b1 [Bugfix] fix load local safetensors model (#2512) 2024-01-19 16:26:16 -08:00
Zhuohan Li
ef9b636e2d Simplify broadcast logic for control messages (#2501) 2024-01-19 11:23:30 -08:00
Harry Mellor
2709c0009a Support OpenAI API server in benchmark_serving.py (#2172) 2024-01-18 20:34:08 -08:00
Simon Mo
dd7e8f5f64 refactor complemention api for readability (#2499) 2024-01-18 16:45:14 -08:00
ljss
d2a68364c4 [BugFix] Fix abort_seq_group (#2463) 2024-01-18 15:10:42 -08:00
Nikola Borisov
7e1081139d Don't download both safetensor and bin files. (#2480) 2024-01-18 11:05:53 -08:00
Liangfu Chen
18473cf498 [Neuron] Add an option to build with neuron (#2065) 2024-01-18 10:58:50 -08:00
zspo
4df417d059 fix: fix some args desc (#2487) 2024-01-18 09:41:44 -08:00
Jason Zhu
5d80a9178b Minor fix in prefill cache example (#2494) 2024-01-18 09:40:34 -08:00
YingchaoX
8a25d3a71a fix stablelm.py tensor-parallel-size bug (#2482) 2024-01-18 09:39:46 -08:00
shiyi.c_98
d10f8e1d43 [Experimental] Prefix Caching Support (#1669)
Co-authored-by: DouHappy <2278958187@qq.com>
Co-authored-by: Zhuohan Li <zhuohan123@gmail.com>
2024-01-17 16:32:10 -08:00
FlorianJoncour
14cc317ba4 OpenAI Server refactoring (#2360) 2024-01-16 21:33:14 -08:00
Hyunsung Lee
e1957c6ebd Add StableLM3B model (#2372) 2024-01-16 20:32:40 -08:00
Simon Mo
8cd5a992bf ci: retry on build failure as well (#2457) 2024-01-16 12:51:04 -08:00
Simon Mo
947f0b23cc CI: make sure benchmark script exit on error (#2449) 2024-01-16 09:50:13 -08:00
Chenhui Zhang
f780504d12 fix weigit loading for GQA with TP (#2379) 2024-01-15 15:43:59 -08:00
Simon Mo
bfc072addf Allow buildkite to retry build on agent lost (#2446) 2024-01-15 15:43:15 -08:00
Woosuk Kwon
2a18da257c Announce the second vLLM meetup (#2444) 2024-01-15 14:11:59 -08:00
Simon Mo
6e01e8c1c8 [CI] Add Buildkite (#2355) 2024-01-14 12:37:58 -08:00
Roy
9f659bf07f [Minor] Optimize cuda graph memory usage (#2437) 2024-01-14 18:40:51 +01:00
Woosuk Kwon
35c4bc20d9 [Minor] Fix err msg (#2431) 2024-01-12 14:02:52 -08:00
陈序
218dc2ccda Aligning top_p and top_k Sampling (#1885)
* Align top_p and top_k with huggingface

* remove _get_prompt_and_output_tokens

* rename _apply_top_p_top_k

* compare top_p top_k with hf

* fix test errors
2024-01-12 22:51:03 +01:00
Simon
827cbcd37c Update quickstart.rst (#2369) 2024-01-12 12:56:18 -08:00
Ben
cb7a1c1cbf Suggest using dtype=half when OOM. 2024-01-12 12:33:29 -08:00
Gary Hui
7878958c0d Address Phi modeling update 2 (#2428) 2024-01-12 12:16:49 -08:00
Chirag Jain
ce036244c9 Allow setting fastapi root_path argument (#2341) 2024-01-12 10:59:59 -08:00
陈序
48cf1e413c fix: deque mutated during iteration in abort_seq_group (#2371) 2024-01-12 17:44:18 +01:00
arkohut
97460585d9 Add gradio chatbot for openai webserver (#2307) 2024-01-11 19:45:56 -08:00
Zhuohan Li
f745847ef7 [Minor] Fix the format in quick start guide related to Model Scope (#2425) 2024-01-11 19:44:01 -08:00
Jiaxiang
6549aef245 [DOC] Add additional comments for LLMEngine and AsyncLLMEngine (#1011) 2024-01-11 19:26:49 -08:00
Woosuk Kwon
50376faa7b Rename phi_1_5 -> phi (#2385) 2024-01-11 16:23:43 -08:00
Yunfeng Bai
4b61c6b669 get_ip(): Fix ipv4 ipv6 dualstack (#2408) 2024-01-10 11:39:58 -08:00
Cade Daniel
79d64c4954 [Speculative decoding 1/9] Optimized rejection sampler (#2336) 2024-01-09 15:38:41 -08:00
KKY
74cd5abdd1 Add baichuan chat template jinjia file (#2390) 2024-01-09 09:13:02 -08:00
Woosuk Kwon
28c3f12104 [Minor] Remove unused code in attention (#2384) 2024-01-08 13:13:08 -08:00
Woosuk Kwon
c884819135 Fix eager mode performance (#2377) 2024-01-08 10:11:06 -08:00
Nadav Shmayovits
05921a9a7a Changed scheduler to use deques instead of lists (#2290)
Co-authored-by: Woosuk Kwon <woosuk.kwon@berkeley.edu>
2024-01-07 09:48:07 -08:00
Iskren Ivov Chernev
d0215a58e7 Ensure metrics are logged regardless of requests (#2347) 2024-01-05 05:24:42 -08:00
Alexandre Payot
937e7b7d7c Build docker image with shared objects from "build" step (#2237) 2024-01-04 09:35:18 -08:00
ljss
aee8ef661a Miner fix of type hint (#2340) 2024-01-03 21:27:56 -08:00
Woosuk Kwon
2e0b6e7757 Bump up to v0.2.7 (#2337)
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2024-01-03 17:35:56 -08:00
Woosuk Kwon
941767127c Revert the changes in test_cache (#2335) 2024-01-03 17:32:05 -08:00
Ronen Schaffer
74d8d77626 Remove unused const TIMEOUT_TO_PREVENT_DEADLOCK (#2321) 2024-01-03 15:49:07 -08:00
Zhuohan Li
fd4ea8ef5c Use NCCL instead of ray for control-plane communication to remove serialization overhead (#2221) 2024-01-03 11:30:22 -08:00
Ronen Schaffer
1066cbd152 Remove deprecated parameter: concurrency_count (#2315) 2024-01-03 09:56:21 -08:00
Woosuk Kwon
6ef00b03a2 Enable CUDA graph for GPTQ & SqueezeLLM (#2318) 2024-01-03 09:52:29 -08:00
Roy
9140561059 [Minor] Fix typo and remove unused code (#2305) 2024-01-02 19:23:15 -08:00
Jee Li
77af974b40 [FIX] Support non-zero CUDA devices in custom kernels (#1959) 2024-01-02 19:09:59 -08:00
Jong-hun Shin
4934d49274 Support GPT-NeoX Models without attention biases (#2301) 2023-12-30 11:42:04 -05:00
Zhuohan Li
358c328d69 [BUGFIX] Fix communication test (#2285) 2023-12-27 17:18:11 -05:00
Zhuohan Li
4aaafdd289 [BUGFIX] Fix the path of test prompts (#2273) 2023-12-26 10:37:21 -08:00
Zhuohan Li
66b108d142 [BUGFIX] Fix API server test (#2270) 2023-12-26 10:37:06 -08:00
Zhuohan Li
e0ff920001 [BUGFIX] Do not return ignored sentences twice in async llm engine (#2258) 2023-12-26 13:41:09 +08:00
blueceiling
face83c7ec [Docs] Add "About" Heading to README.md (#2260) 2023-12-25 16:37:07 -08:00
Shivam Thakkar
1db83e31a2 [Docs] Update installation instructions to include CUDA 11.8 xFormers (#2246) 2023-12-22 23:20:02 -08:00
Woosuk Kwon
a1b9cb2a34 [BugFix] Fix recovery logic for sequence group (#2186) 2023-12-20 21:52:37 -08:00
Woosuk Kwon
3a4fd5ca59 Disable Ray usage stats collection (#2206) 2023-12-20 21:52:08 -08:00
Ronen Schaffer
c17daa9f89 [Docs] Fix broken links (#2222) 2023-12-20 12:43:42 -08:00
Antoni Baum
bd29cf3d3a Remove Sampler copy stream (#2209) 2023-12-20 00:04:33 -08:00
Hanzhi Zhou
31bff69151 Make _prepare_sample non-blocking and use pinned memory for input buffers (#2207) 2023-12-19 16:52:46 -08:00
Woosuk Kwon
ba4f826738 [BugFix] Fix weight loading for Mixtral with TP (#2208) 2023-12-19 16:16:11 -08:00
avideci
de60a3fb93 Added DeciLM-7b and DeciLM-7b-instruct (#2062) 2023-12-19 02:29:33 -08:00
Woosuk Kwon
21d5daa4ac Add warning on CUDA graph memory usage (#2182) 2023-12-18 18:16:17 -08:00
Suhong Moon
290e015c6c Update Help Text for --gpu-memory-utilization Argument (#2183) 2023-12-18 11:33:24 -08:00
kliuae
1b7c791d60 [ROCm] Fixes for GPTQ on ROCm (#2180) 2023-12-18 10:41:04 -08:00
JohnSaxon
bbe4466fd9 [Minor] Fix typo (#2166)
Co-authored-by: John-Saxon <zhang.xiangxuan@oushu.com>
2023-12-17 23:28:49 -08:00
Harry Mellor
08133c4d1a Add SSL arguments to API servers (#2109) 2023-12-18 10:56:23 +08:00
Woosuk Kwon
76a7983b23 [BugFix] Fix RoPE kernel on long sequences(#2164) 2023-12-17 17:09:10 -08:00
Woosuk Kwon
8041b7305e [BugFix] Raise error when max_model_len is larger than KV cache (#2163) 2023-12-17 17:08:23 -08:00
Suhong Moon
3ec8c25cd0 [Docs] Update documentation for gpu-memory-utilization option (#2162) 2023-12-17 10:51:57 -08:00
Woosuk Kwon
671af2b1c0 Bump up to v0.2.6 (#2157)
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2023-12-17 10:34:56 -08:00
Woosuk Kwon
6f41f0e377 Disable CUDA graph for SqueezeLLM (#2161) 2023-12-17 10:24:25 -08:00
Woosuk Kwon
2c9b638065 [Minor] Fix a typo in .pt weight support (#2160) 2023-12-17 10:12:44 -08:00
Antoni Baum
a7347d9a6d Make sampler less blocking (#1889) 2023-12-17 23:03:49 +08:00
Woosuk Kwon
f8c688d746 [Minor] Add Phi 2 to supported models (#2159) 2023-12-17 02:54:57 -08:00
Woosuk Kwon
c9fadda543 [Minor] Fix xformers version (#2158) 2023-12-17 02:28:02 -08:00
Woosuk Kwon
30fb0956df [Minor] Add more detailed explanation on quantization argument (#2145) 2023-12-17 01:56:16 -08:00
Woosuk Kwon
3a765bd5e1 Temporarily enforce eager mode for GPTQ models (#2154) 2023-12-17 01:51:12 -08:00
Woosuk Kwon
26c52a5ea6 [Docs] Add CUDA graph support to docs (#2148) 2023-12-17 01:49:20 -08:00
Woosuk Kwon
c3372e87be Remove dependency on CuPy (#2152) 2023-12-17 01:49:07 -08:00
Woosuk Kwon
b0a1d667b0 Pin PyTorch & xformers versions (#2155) 2023-12-17 01:46:54 -08:00
Woosuk Kwon
e1d5402238 Fix all-reduce memory usage (#2151) 2023-12-17 01:44:45 -08:00
Woosuk Kwon
3d1cfbfc74 [Minor] Delete Llama tokenizer warnings (#2146) 2023-12-16 22:05:18 -08:00
Woosuk Kwon
37ca558103 Optimize model execution with CUDA graph (#1926)
Co-authored-by: Chen Shen <scv119@gmail.com>
Co-authored-by: Antoni Baum <antoni.baum@protonmail.com>
2023-12-16 21:12:08 -08:00
Roy
eed74a558f Simplify weight loading logic (#2133) 2023-12-16 12:41:23 -08:00
Woosuk Kwon
2acd76f346 [ROCm] Temporarily remove GPTQ ROCm support (#2138) 2023-12-15 17:13:58 -08:00
Woosuk Kwon
b81a6a6bb3 [Docs] Add supported quantization methods to docs (#2135) 2023-12-15 13:29:22 -08:00
CHU Tianxiang
0fbfc4b81b Add GPTQ support (#916) 2023-12-15 03:04:22 -08:00
Yunfeng Bai
c06170cc8e Add a flag to include stop string in output text (#1976) 2023-12-15 00:45:58 -08:00
Mingcan Xiang
614856da25 Avoid multiple redefinition (#1817) 2023-12-14 09:35:58 -08:00
TJian
05bdf4eaf3 Fix Dockerfile.rocm (#2101)
Co-authored-by: miloice <jeffaw99@hotmail.com>
2023-12-14 00:45:58 -08:00
mezuzza
6774bd50b0 Fix typing in AsyncLLMEngine & add toml to requirements-dev (#2100) 2023-12-14 00:19:41 -08:00
826 changed files with 141335 additions and 11359 deletions

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import os
import zipfile
MAX_SIZE_MB = 200
def print_top_10_largest_files(zip_file):
with zipfile.ZipFile(zip_file, 'r') as z:
file_sizes = [(f, z.getinfo(f).file_size) for f in z.namelist()]
file_sizes.sort(key=lambda x: x[1], reverse=True)
for f, size in file_sizes[:10]:
print(f"{f}: {size/(1024*1024)} MBs uncompressed.")
def check_wheel_size(directory):
for root, _, files in os.walk(directory):
for f in files:
if f.endswith(".whl"):
wheel_path = os.path.join(root, f)
wheel_size = os.path.getsize(wheel_path)
wheel_size_mb = wheel_size / (1024 * 1024)
if wheel_size_mb > MAX_SIZE_MB:
print(
f"Wheel {wheel_path} is too large ({wheel_size_mb} MB) "
f"compare to the allowed size ({MAX_SIZE_MB} MB).")
print_top_10_largest_files(wheel_path)
return 1
else:
print(f"Wheel {wheel_path} is within the allowed size "
f"({wheel_size_mb} MB).")
return 0
if __name__ == "__main__":
import sys
sys.exit(check_wheel_size(sys.argv[1]))

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@@ -0,0 +1,14 @@
#!/bin/bash
set -ex
set -o pipefail
(which wget && which curl) || (apt-get update && apt-get install -y wget curl)
# aws s3 sync s3://air-example-data-2/vllm_opensource_llava/ images/
mkdir -p images
cd images
wget https://air-example-data-2.s3.us-west-2.amazonaws.com/vllm_opensource_llava/stop_sign.jpg
wget https://air-example-data-2.s3.us-west-2.amazonaws.com/vllm_opensource_llava/cherry_blossom.jpg
cd -

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# bash .buildkite/lm-eval-harness/run-lm-eval-gsm-hf-baseline.sh -m meta-llama/Meta-Llama-3-70B-Instruct -b 32 -l 250 -f 5
model_name: "meta-llama/Meta-Llama-3-70B-Instruct"
tasks:
- name: "gsm8k"
metrics:
- name: "exact_match,strict-match"
value: 0.892
- name: "exact_match,flexible-extract"
value: 0.892
limit: 250
num_fewshot: 5

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@@ -0,0 +1,11 @@
# bash .buildkite/lm-eval-harness/run-lm-eval-gsm-hf-baseline.sh -m neuralmagic/Meta-Llama-3-8B-Instruct-FP8 -b 32 -l 250 -f 5 -t 1
model_name: "neuralmagic/Meta-Llama-3-8B-Instruct-FP8"
tasks:
- name: "gsm8k"
metrics:
- name: "exact_match,strict-match"
value: 0.756
- name: "exact_match,flexible-extract"
value: 0.752
limit: 250
num_fewshot: 5

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@@ -0,0 +1,11 @@
# bash .buildkite/lm-eval-harness/run-lm-eval-gsm-hf-baseline.sh -m meta-llama/Meta-Llama-3-8B-Instruct -b 32 -l 250 -f 5 -t 1
model_name: "meta-llama/Meta-Llama-3-8B-Instruct"
tasks:
- name: "gsm8k"
metrics:
- name: "exact_match,strict-match"
value: 0.756
- name: "exact_match,flexible-extract"
value: 0.752
limit: 250
num_fewshot: 5

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@@ -0,0 +1,11 @@
# bash ./run-lm-eval-gsm-vllm-baseline.sh -m neuralmagic/Mixtral-8x22B-Instruct-v0.1-FP8-dynamic -b "auto" -l 250 -f 5 -t 8
model_name: "neuralmagic/Mixtral-8x22B-Instruct-v0.1-FP8-dynamic"
tasks:
- name: "gsm8k"
metrics:
- name: "exact_match,strict-match"
value: 0.86
- name: "exact_match,flexible-extract"
value: 0.86
limit: 250
num_fewshot: 5

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@@ -0,0 +1,11 @@
# bash ./run-lm-eval-gsm-vllm-baseline.sh -m neuralmagic/Mixtral-8x7B-Instruct-v0.1-FP8 -b "auto" -l 250 -f 5 -t 4
model_name: "neuralmagic/Mixtral-8x7B-Instruct-v0.1-FP8"
tasks:
- name: "gsm8k"
metrics:
- name: "exact_match,strict-match"
value: 0.624
- name: "exact_match,flexible-extract"
value: 0.624
limit: 250
num_fewshot: 5

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@@ -0,0 +1,11 @@
# bash .buildkite/lm-eval-harness/run-lm-eval-gsm-hf-baseline.sh -m neuralmagic/Mixtral-8x7B-Instruct-v0.1 -b 32 -l 250 -f 5 -t 4
model_name: "mistralai/Mixtral-8x7B-Instruct-v0.1"
tasks:
- name: "gsm8k"
metrics:
- name: "exact_match,strict-match"
value: 0.616
- name: "exact_match,flexible-extract"
value: 0.632
limit: 250
num_fewshot: 5

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# bash ./run-lm-eval-gsm-vllm-baseline.sh -m Qwen/Qwen2-57B-A14B-Instruct -b "auto" -l 250 -f 5 -t 4
model_name: "Qwen/Qwen2-57B-A14B-Instruct"
tasks:
- name: "gsm8k"
metrics:
- name: "exact_match,strict-match"
value: 0.792
- name: "exact_match,flexible-extract"
value: 0.824
limit: 250
num_fewshot: 5

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@@ -0,0 +1,3 @@
Meta-Llama-3-70B-Instruct.yaml
Mixtral-8x7B-Instruct-v0.1.yaml
Qwen2-57B-A14-Instruct.yaml

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@@ -0,0 +1,2 @@
Meta-Llama-3-8B-Instruct.yaml
Meta-Llama-3-8B-Instruct-FP8.yaml

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@@ -0,0 +1,46 @@
#!/bin/bash
# We can use this script to compute baseline accuracy on GSM for transformers.
#
# Make sure you have lm-eval-harness installed:
# pip install git+https://github.com/EleutherAI/lm-evaluation-harness.git@9516087b81a61d0e220b22cc1b75be76de23bc10
usage() {
echo``
echo "Runs lm eval harness on GSM8k using huggingface transformers."
echo "This pathway is intended to be used to create baselines for "
echo "our automated nm-test-accuracy workflow"
echo
echo "usage: ${0} <options>"
echo
echo " -m - huggingface stub or local directory of the model"
echo " -b - batch size to run the evaluation at"
echo " -l - limit number of samples to run"
echo " -f - number of fewshot samples to use"
echo
}
while getopts "m:b:l:f:" OPT; do
case ${OPT} in
m )
MODEL="$OPTARG"
;;
b )
BATCH_SIZE="$OPTARG"
;;
l )
LIMIT="$OPTARG"
;;
f )
FEWSHOT="$OPTARG"
;;
\? )
usage
exit 1
;;
esac
done
lm_eval --model hf \
--model_args pretrained=$MODEL,parallelize=True \
--tasks gsm8k --num_fewshot $FEWSHOT --limit $LIMIT \
--batch_size $BATCH_SIZE

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@@ -0,0 +1,51 @@
#!/bin/bash
# We can use this script to compute baseline accuracy on GSM for vllm.
# We use this for fp8, which HF does not support.
#
# Make sure you have lm-eval-harness installed:
# pip install lm-eval==0.4.2
usage() {
echo``
echo "Runs lm eval harness on GSM8k using huggingface transformers."
echo "This pathway is intended to be used to create baselines for "
echo "our automated nm-test-accuracy workflow"
echo
echo "usage: ${0} <options>"
echo
echo " -m - huggingface stub or local directory of the model"
echo " -b - batch size to run the evaluation at"
echo " -l - limit number of samples to run"
echo " -f - number of fewshot samples to use"
echo " -t - tensor parallel size to run at"
echo
}
while getopts "m:b:l:f:t:" OPT; do
case ${OPT} in
m )
MODEL="$OPTARG"
;;
b )
BATCH_SIZE="$OPTARG"
;;
l )
LIMIT="$OPTARG"
;;
f )
FEWSHOT="$OPTARG"
;;
t )
TP_SIZE="$OPTARG"
;;
\? )
usage
exit 1
;;
esac
done
lm_eval --model vllm \
--model_args pretrained=$MODEL,tensor_parallel_size=$TP_SIZE \
--tasks gsm8k --num_fewshot $FEWSHOT --limit $LIMIT \
--batch_size $BATCH_SIZE

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@@ -0,0 +1,59 @@
#!/bin/bash
usage() {
echo``
echo "Runs lm eval harness on GSM8k using vllm and compares to "
echo "precomputed baseline (measured by HF transformers.)"
echo
echo "usage: ${0} <options>"
echo
echo " -c - path to the test data config (e.g. configs/small-models.txt)"
echo " -t - tensor parallel size"
echo
}
SUCCESS=0
while getopts "c:t:" OPT; do
case ${OPT} in
c )
CONFIG="$OPTARG"
;;
t )
TP_SIZE="$OPTARG"
;;
\? )
usage
exit 1
;;
esac
done
# Parse list of configs.
IFS=$'\n' read -d '' -r -a MODEL_CONFIGS < $CONFIG
for MODEL_CONFIG in "${MODEL_CONFIGS[@]}"
do
LOCAL_SUCCESS=0
echo "=== RUNNING MODEL: $MODEL_CONFIG WITH TP SIZE: $TP_SIZE==="
export LM_EVAL_TEST_DATA_FILE=$PWD/configs/${MODEL_CONFIG}
export LM_EVAL_TP_SIZE=$TP_SIZE
pytest -s test_lm_eval_correctness.py || LOCAL_SUCCESS=$?
if [[ $LOCAL_SUCCESS == 0 ]]; then
echo "=== PASSED MODEL: ${MODEL_CONFIG} ==="
else
echo "=== FAILED MODEL: ${MODEL_CONFIG} ==="
fi
SUCCESS=$((SUCCESS + LOCAL_SUCCESS))
done
if [ "${SUCCESS}" -eq "0" ]; then
exit 0
else
exit 1
fi

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@@ -0,0 +1,54 @@
"""
LM eval harness on model to compare vs HF baseline computed offline.
Configs are found in configs/$MODEL.yaml
* export LM_EVAL_TEST_DATA_FILE=configs/Meta-Llama-3-70B-Instruct.yaml
* export LM_EVAL_TP_SIZE=4
* pytest -s test_lm_eval_correctness.py
"""
import os
from pathlib import Path
import lm_eval
import numpy
import yaml
RTOL = 0.02
TEST_DATA_FILE = os.environ.get(
"LM_EVAL_TEST_DATA_FILE",
".buildkite/lm-eval-harness/configs/Meta-Llama-3-8B-Instruct.yaml")
TP_SIZE = os.environ.get("LM_EVAL_TP_SIZE", 1)
def launch_lm_eval(eval_config):
model_args = f"pretrained={eval_config['model_name']}," \
f"tensor_parallel_size={TP_SIZE}"
results = lm_eval.simple_evaluate(
model="vllm",
model_args=model_args,
tasks=[task["name"] for task in eval_config["tasks"]],
num_fewshot=eval_config["num_fewshot"],
limit=eval_config["limit"],
batch_size="auto")
return results
def test_lm_eval_correctness():
eval_config = yaml.safe_load(
Path(TEST_DATA_FILE).read_text(encoding="utf-8"))
# Launch eval requests.
results = launch_lm_eval(eval_config)
# Confirm scores match ground truth.
for task in eval_config["tasks"]:
for metric in task["metrics"]:
ground_truth = metric["value"]
measured_value = results["results"][task["name"]][metric["name"]]
print(f'{task["name"]} | {metric["name"]}: '
f'ground_truth={ground_truth} | measured={measured_value}')
assert numpy.isclose(ground_truth, measured_value, rtol=RTOL)

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# vLLM benchmark suite
## Introduction
This directory contains the performance benchmarking CI for vllm.
The goal is to help developers know the impact of their PRs on the performance of vllm.
This benchmark will be *triggered* upon:
- A PR being merged into vllm.
- Every commit for those PRs with `perf-benchmarks` label.
**Benchmarking Coverage**: latency, throughput and fix-qps serving on A100 (the support for more GPUs is comming later), with different models.
**Benchmarking Duration**: about 1hr.
**For benchmarking developers**: please try your best to constraint the duration of benchmarking to less than 1.5 hr so that it won't take forever to run.
## Configuring the workload
The benchmarking workload contains three parts:
- Latency tests in `latency-tests.json`.
- Throughput tests in `throughput-tests.json`.
- Serving tests in `serving-tests.json`.
See [descriptions.md](tests/descriptions.md) for detailed descriptions.
### Latency test
Here is an example of one test inside `latency-tests.json`:
```json
[
{
"test_name": "latency_llama8B_tp1",
"parameters": {
"model": "meta-llama/Meta-Llama-3-8B",
"tensor_parallel_size": 1,
"load_format": "dummy",
"num_iters_warmup": 5,
"num_iters": 15
}
},
]
```
In this example:
- The `test_name` attributes is a unique identifier for the test. In `latency-tests.json`, it must start with `latency_`.
- The `parameters` attribute control the command line arguments to be used for `benchmark_latency.py`. Note that please use underline `_` instead of the dash `-` when specifying the command line arguments, and `run-benchmarks-suite.sh` will convert the underline to dash when feeding the arguments to `benchmark_latency.py`. For example, the corresponding command line arguments for `benchmark_latency.py` will be `--model meta-llama/Meta-Llama-3-8B --tensor-parallel-size 1 --load-format dummy --num-iters-warmup 5 --num-iters 15`
Note that the performance numbers are highly sensitive to the value of the parameters. Please make sure the parameters are set correctly.
WARNING: The benchmarking script will save json results by itself, so please do not configure `--output-json` parameter in the json file.
### Throughput test
The tests are specified in `throughput-tests.json`. The syntax is similar to `latency-tests.json`, except for that the parameters will be fed forward to `benchmark_throughput.py`.
The number of this test is also stable -- a slight change on the value of this number might vary the performance numbers by a lot.
### Serving test
We test the throughput by using `benchmark_serving.py` with request rate = inf to cover the online serving overhead. The corresponding parameters are in `serving-tests.json`, and here is an example:
```
[
{
"test_name": "serving_llama8B_tp1_sharegpt",
"qps_list": [1, 4, 16, "inf"],
"server_parameters": {
"model": "meta-llama/Meta-Llama-3-8B",
"tensor_parallel_size": 1,
"swap_space": 16,
"disable_log_stats": "",
"disable_log_requests": "",
"load_format": "dummy"
},
"client_parameters": {
"model": "meta-llama/Meta-Llama-3-8B",
"backend": "vllm",
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200
}
},
]
```
Inside this example:
- The `test_name` attribute is also a unique identifier for the test. It must start with `serving_`.
- The `server-parameters` includes the command line arguments for vLLM server.
- The `client-parameters` includes the command line arguments for `benchmark_serving.py`.
- The `qps_list` controls the list of qps for test. It will be used to configure the `--request-rate` parameter in `benchmark_serving.py`
The number of this test is less stable compared to the delay and latency benchmarks (due to randomized sharegpt dataset sampling inside `benchmark_serving.py`), but a large change on this number (e.g. 5% change) still vary the output greatly.
WARNING: The benchmarking script will save json results by itself, so please do not configure `--save-results` or other results-saving-related parameters in `serving-tests.json`.
## Visualizing the results
The `convert-results-json-to-markdown.py` helps you put the benchmarking results inside a markdown table, by formatting [descriptions.md](tests/descriptions.md) with real benchmarking results.
You can find the result presented as a table inside the `buildkite/performance-benchmark` job page.
If you do not see the table, please wait till the benchmark finish running.
The json version of the table (together with the json version of the benchmark) will be also attached to the markdown file.
The raw benchmarking results (in the format of json files) are in the `Artifacts` tab of the benchmarking.

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steps:
- label: "Wait for container to be ready"
agents:
queue: A100
plugins:
- kubernetes:
podSpec:
containers:
- image: badouralix/curl-jq
command:
- sh
- .buildkite/nightly-benchmarks/scripts/wait-for-image.sh
- wait
- label: "A100 Benchmark"
agents:
queue: A100
plugins:
- kubernetes:
podSpec:
priorityClassName: perf-benchmark
containers:
- image: public.ecr.aws/q9t5s3a7/vllm-ci-test-repo:$BUILDKITE_COMMIT
command:
- bash .buildkite/nightly-benchmarks/run-benchmarks-suite.sh
resources:
limits:
nvidia.com/gpu: 8
volumeMounts:
- name: devshm
mountPath: /dev/shm
env:
- name: VLLM_USAGE_SOURCE
value: ci-test
- name: HF_TOKEN
valueFrom:
secretKeyRef:
name: hf-token-secret
key: token
nodeSelector:
nvidia.com/gpu.product: NVIDIA-A100-SXM4-80GB
volumes:
- name: devshm
emptyDir:
medium: Memory
# - label: "H100: NVIDIA SMI"
# agents:
# queue: H100
# plugins:
# - docker#v5.11.0:
# image: public.ecr.aws/q9t5s3a7/vllm-ci-test-repo:$BUILDKITE_COMMIT
# command:
# - bash
# - .buildkite/nightly-benchmarks/run-benchmarks-suite.sh
# mount-buildkite-agent: true
# propagate-environment: true
# propagate-uid-gid: false
# ipc: host
# gpus: all
# environment:
# - VLLM_USAGE_SOURCE
# - HF_TOKEN

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@@ -0,0 +1,27 @@
#!/usr/bin/env bash
# NOTE(simon): this script runs inside a buildkite agent with CPU only access.
set -euo pipefail
# Install system packages
apt update
apt install -y curl jq
# Install minijinja for templating
curl -sSfL https://github.com/mitsuhiko/minijinja/releases/latest/download/minijinja-cli-installer.sh | sh
source $HOME/.cargo/env
# If BUILDKITE_PULL_REQUEST != "false", then we check the PR labels using curl and jq
if [ "$BUILDKITE_PULL_REQUEST" != "false" ]; then
PR_LABELS=$(curl -s "https://api.github.com/repos/vllm-project/vllm/pulls/$BUILDKITE_PULL_REQUEST" | jq -r '.labels[].name')
if [[ $PR_LABELS == *"perf-benchmarks"* ]]; then
echo "This PR has the 'perf-benchmarks' label. Proceeding with the nightly benchmarks."
else
echo "This PR does not have the 'perf-benchmarks' label. Skipping the nightly benchmarks."
exit 0
fi
fi
# Upload sample.yaml
buildkite-agent pipeline upload .buildkite/nightly-benchmarks/benchmark-pipeline.yaml

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@@ -0,0 +1,358 @@
#!/bin/bash
# This script should be run inside the CI process
# This script assumes that we are already inside the vllm/ directory
# Benchmarking results will be available inside vllm/benchmarks/results/
# Do not set -e, as the mixtral 8x22B model tends to crash occasionally
# and we still want to see other benchmarking results even when mixtral crashes.
set -o pipefail
check_gpus() {
# check the number of GPUs and GPU type.
declare -g gpu_count=$(nvidia-smi --list-gpus | wc -l)
if [[ $gpu_count -gt 0 ]]; then
echo "GPU found."
else
echo "Need at least 1 GPU to run benchmarking."
exit 1
fi
declare -g gpu_type=$(echo $(nvidia-smi --query-gpu=name --format=csv,noheader) | awk '{print $2}')
echo "GPU type is $gpu_type"
}
check_hf_token() {
# check if HF_TOKEN is available and valid
if [[ -z "$HF_TOKEN" ]]; then
echo "Error: HF_TOKEN is not set."
exit 1
elif [[ ! "$HF_TOKEN" =~ ^hf_ ]]; then
echo "Error: HF_TOKEN does not start with 'hf_'."
exit 1
else
echo "HF_TOKEN is set and valid."
fi
}
json2args() {
# transforms the JSON string to command line args, and '_' is replaced to '-'
# example:
# input: { "model": "meta-llama/Llama-2-7b-chat-hf", "tensor_parallel_size": 1 }
# output: --model meta-llama/Llama-2-7b-chat-hf --tensor-parallel-size 1
local json_string=$1
local args=$(
echo "$json_string" | jq -r '
to_entries |
map("--" + (.key | gsub("_"; "-")) + " " + (.value | tostring)) |
join(" ")
'
)
echo "$args"
}
wait_for_server() {
# wait for vllm server to start
# return 1 if vllm server crashes
timeout 1200 bash -c '
until curl localhost:8000/v1/completions; do
sleep 1
done' && return 0 || return 1
}
kill_gpu_processes() {
# kill all processes on GPU.
pids=$(nvidia-smi --query-compute-apps=pid --format=csv,noheader)
if [ -z "$pids" ]; then
echo "No GPU processes found."
else
for pid in $pids; do
kill -9 "$pid"
echo "Killed process with PID: $pid"
done
echo "All GPU processes have been killed."
fi
# waiting for GPU processes to be fully killed
sleep 10
# remove vllm config file
rm -rf ~/.config/vllm
# Print the GPU memory usage
# so that we know if all GPU processes are killed.
gpu_memory_usage=$(nvidia-smi --query-gpu=memory.used --format=csv,noheader,nounits -i 0)
# The memory usage should be 0 MB.
echo "GPU 0 Memory Usage: $gpu_memory_usage MB"
}
upload_to_buildkite() {
# upload the benchmarking results to buildkite
# if the agent binary is not found, skip uploading the results, exit 0
if [ ! -f /workspace/buildkite-agent ]; then
echo "buildkite-agent binary not found. Skip uploading the results."
return 0
fi
/workspace/buildkite-agent annotate --style "info" --context "benchmark-results" < $RESULTS_FOLDER/benchmark_results.md
/workspace/buildkite-agent artifact upload "$RESULTS_FOLDER/*"
}
run_latency_tests() {
# run latency tests using `benchmark_latency.py`
# $1: a json file specifying latency test cases
local latency_test_file
latency_test_file=$1
# Iterate over latency tests
jq -c '.[]' "$latency_test_file" | while read -r params; do
# get the test name, and append the GPU type back to it.
test_name=$(echo "$params" | jq -r '.test_name')
if [[ ! "$test_name" =~ ^latency_ ]]; then
echo "In latency-test.json, test_name must start with \"latency_\"."
exit 1
fi
# if TEST_SELECTOR is set, only run the test cases that match the selector
if [[ -n "$TEST_SELECTOR" ]] && [[ ! "$test_name" =~ $TEST_SELECTOR ]]; then
echo "Skip test case $test_name."
continue
fi
# get arguments
latency_params=$(echo "$params" | jq -r '.parameters')
latency_args=$(json2args "$latency_params")
# check if there is enough GPU to run the test
tp=$(echo "$latency_params" | jq -r '.tensor_parallel_size')
if [[ $gpu_count -lt $tp ]]; then
echo "Required tensor-parallel-size $tp but only $gpu_count GPU found. Skip testcase $testname."
continue
fi
latency_command="python3 benchmark_latency.py \
--output-json $RESULTS_FOLDER/${test_name}.json \
$latency_args"
echo "Running test case $test_name"
echo "Latency command: $latency_command"
# recoding benchmarking command ang GPU command
jq_output=$(jq -n \
--arg latency "$latency_command" \
--arg gpu "$gpu_type" \
'{
latency_command: $latency,
gpu_type: $gpu
}')
echo "$jq_output" > "$RESULTS_FOLDER/$test_name.commands"
# run the benchmark
eval "$latency_command"
kill_gpu_processes
done
}
run_throughput_tests() {
# run throughput tests using `benchmark_throughput.py`
# $1: a json file specifying throughput test cases
local throughput_test_file
throughput_test_file=$1
# Iterate over throughput tests
jq -c '.[]' "$throughput_test_file" | while read -r params; do
# get the test name, and append the GPU type back to it.
test_name=$(echo "$params" | jq -r '.test_name')
if [[ ! "$test_name" =~ ^throughput_ ]]; then
echo "In throughput-test.json, test_name must start with \"throughput_\"."
exit 1
fi
# if TEST_SELECTOR is set, only run the test cases that match the selector
if [[ -n "$TEST_SELECTOR" ]] && [[ ! "$test_name" =~ $TEST_SELECTOR ]]; then
echo "Skip test case $test_name."
continue
fi
# get arguments
throughput_params=$(echo "$params" | jq -r '.parameters')
throughput_args=$(json2args "$throughput_params")
# check if there is enough GPU to run the test
tp=$(echo $throughput_params | jq -r '.tensor_parallel_size')
if [[ $gpu_count -lt $tp ]]; then
echo "Required tensor-parallel-size $tp but only $gpu_count GPU found. Skip testcase $testname."
continue
fi
throughput_command="python3 benchmark_throughput.py \
--output-json $RESULTS_FOLDER/${test_name}.json \
$throughput_args"
echo "Running test case $test_name"
echo "Throughput command: $throughput_command"
# recoding benchmarking command ang GPU command
jq_output=$(jq -n \
--arg command "$throughput_command" \
--arg gpu "$gpu_type" \
'{
throughput_command: $command,
gpu_type: $gpu
}')
echo "$jq_output" > "$RESULTS_FOLDER/$test_name.commands"
# run the benchmark
eval "$throughput_command"
kill_gpu_processes
done
}
run_serving_tests() {
# run serving tests using `benchmark_serving.py`
# $1: a json file specifying serving test cases
local serving_test_file
serving_test_file=$1
# Iterate over serving tests
jq -c '.[]' "$serving_test_file" | while read -r params; do
# get the test name, and append the GPU type back to it.
test_name=$(echo "$params" | jq -r '.test_name')
if [[ ! "$test_name" =~ ^serving_ ]]; then
echo "In serving-test.json, test_name must start with \"serving_\"."
exit 1
fi
# if TEST_SELECTOR is set, only run the test cases that match the selector
if [[ -n "$TEST_SELECTOR" ]] && [[ ! "$test_name" =~ $TEST_SELECTOR ]]; then
echo "Skip test case $test_name."
continue
fi
# get client and server arguments
server_params=$(echo "$params" | jq -r '.server_parameters')
client_params=$(echo "$params" | jq -r '.client_parameters')
server_args=$(json2args "$server_params")
client_args=$(json2args "$client_params")
qps_list=$(echo "$params" | jq -r '.qps_list')
qps_list=$(echo "$qps_list" | jq -r '.[] | @sh')
echo "Running over qps list $qps_list"
# check if there is enough GPU to run the test
tp=$(echo "$server_params" | jq -r '.tensor_parallel_size')
if [[ $gpu_count -lt $tp ]]; then
echo "Required tensor-parallel-size $tp but only $gpu_count GPU found. Skip testcase $testname."
continue
fi
# check if server model and client model is aligned
server_model=$(echo "$server_params" | jq -r '.model')
client_model=$(echo "$client_params" | jq -r '.model')
if [[ $server_model != "$client_model" ]]; then
echo "Server model and client model must be the same. Skip testcase $testname."
continue
fi
server_command="python3 \
-m vllm.entrypoints.openai.api_server \
$server_args"
# run the server
echo "Running test case $test_name"
echo "Server command: $server_command"
eval "$server_command" &
# wait until the server is alive
wait_for_server
if [ $? -eq 0 ]; then
echo ""
echo "vllm server is up and running."
else
echo ""
echo "vllm failed to start within the timeout period."
fi
# iterate over different QPS
for qps in $qps_list; do
# remove the surrounding single quote from qps
if [[ "$qps" == *"inf"* ]]; then
echo "qps was $qps"
qps="inf"
echo "now qps is $qps"
fi
new_test_name=$test_name"_qps_"$qps
client_command="python3 benchmark_serving.py \
--save-result \
--result-dir $RESULTS_FOLDER \
--result-filename ${new_test_name}.json \
--request-rate $qps \
$client_args"
echo "Running test case $test_name with qps $qps"
echo "Client command: $client_command"
eval "$client_command"
# record the benchmarking commands
jq_output=$(jq -n \
--arg server "$server_command" \
--arg client "$client_command" \
--arg gpu "$gpu_type" \
'{
server_command: $server,
client_command: $client,
gpu_type: $gpu
}')
echo "$jq_output" > "$RESULTS_FOLDER/${new_test_name}.commands"
done
# clean up
kill_gpu_processes
done
}
main() {
check_gpus
check_hf_token
# dependencies
(which wget && which curl) || (apt-get update && apt-get install -y wget curl)
(which jq) || (apt-get update && apt-get -y install jq)
# get the current IP address, required by benchmark_serving.py
export VLLM_HOST_IP=$(hostname -I | awk '{print $1}')
# turn of the reporting of the status of each request, to clean up the terminal output
export VLLM_LOG_LEVEL="WARNING"
# prepare for benchmarking
cd benchmarks || exit 1
wget https://huggingface.co/datasets/anon8231489123/ShareGPT_Vicuna_unfiltered/resolve/main/ShareGPT_V3_unfiltered_cleaned_split.json
declare -g RESULTS_FOLDER=results/
mkdir -p $RESULTS_FOLDER
QUICK_BENCHMARK_ROOT=../.buildkite/nightly-benchmarks/
# benchmarking
run_serving_tests $QUICK_BENCHMARK_ROOT/tests/serving-tests.json
run_latency_tests $QUICK_BENCHMARK_ROOT/tests/latency-tests.json
run_throughput_tests $QUICK_BENCHMARK_ROOT/tests/throughput-tests.json
# postprocess benchmarking results
pip install tabulate pandas
python3 $QUICK_BENCHMARK_ROOT/scripts/convert-results-json-to-markdown.py
upload_to_buildkite
}
main "$@"

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import json
import os
from pathlib import Path
import pandas as pd
from tabulate import tabulate
results_folder = Path("results/")
# latency results and the keys that will be printed into markdown
latency_results = []
latency_column_mapping = {
"test_name": "Test name",
"gpu_type": "GPU",
"avg_latency": "Mean latency (ms)",
# "P10": "P10 (s)",
# "P25": "P25 (s)",
"P50": "Median latency (ms)",
# "P75": "P75 (s)",
# "P90": "P90 (s)",
"P99": "P99 latency (ms)",
}
# throughput tests and the keys that will be printed into markdown
throughput_results = []
throughput_results_column_mapping = {
"test_name": "Test name",
"gpu_type": "GPU",
# "num_requests": "# of req.",
# "total_num_tokens": "Total # of tokens",
# "elapsed_time": "Elapsed time (s)",
"requests_per_second": "Tput (req/s)",
# "tokens_per_second": "Tput (tok/s)",
}
# serving results and the keys that will be printed into markdown
serving_results = []
serving_column_mapping = {
"test_name": "Test name",
"gpu_type": "GPU",
# "completed": "# of req.",
"request_throughput": "Tput (req/s)",
# "input_throughput": "Input Tput (tok/s)",
# "output_throughput": "Output Tput (tok/s)",
"mean_ttft_ms": "Mean TTFT (ms)",
"median_ttft_ms": "Median TTFT (ms)",
"p99_ttft_ms": "P99 TTFT (ms)",
# "mean_tpot_ms": "Mean TPOT (ms)",
# "median_tpot_ms": "Median",
# "p99_tpot_ms": "P99",
"mean_itl_ms": "Mean ITL (ms)",
"median_itl_ms": "Median ITL (ms)",
"p99_itl_ms": "P99 ITL (ms)",
}
def read_markdown(file):
if os.path.exists(file):
with open(file, "r") as f:
return f.read() + "\n"
else:
return f"{file} not found.\n"
def results_to_json(latency, throughput, serving):
return json.dumps({
'latency': latency.to_dict(),
'throughput': throughput.to_dict(),
'serving': serving.to_dict()
})
if __name__ == "__main__":
# collect results
for test_file in results_folder.glob("*.json"):
with open(test_file, "r") as f:
raw_result = json.loads(f.read())
if "serving" in str(test_file):
# this result is generated via `benchmark_serving.py`
# attach the benchmarking command to raw_result
with open(test_file.with_suffix(".commands"), "r") as f:
command = json.loads(f.read())
raw_result.update(command)
# update the test name of this result
raw_result.update({"test_name": test_file.stem})
# add the result to raw_result
serving_results.append(raw_result)
continue
elif "latency" in f.name:
# this result is generated via `benchmark_latency.py`
# attach the benchmarking command to raw_result
with open(test_file.with_suffix(".commands"), "r") as f:
command = json.loads(f.read())
raw_result.update(command)
# update the test name of this result
raw_result.update({"test_name": test_file.stem})
# get different percentiles
for perc in [10, 25, 50, 75, 90, 99]:
# Multiply 1000 to convert the time unit from s to ms
raw_result.update(
{f"P{perc}": 1000 * raw_result["percentiles"][str(perc)]})
raw_result["avg_latency"] = raw_result["avg_latency"] * 1000
# add the result to raw_result
latency_results.append(raw_result)
continue
elif "throughput" in f.name:
# this result is generated via `benchmark_throughput.py`
# attach the benchmarking command to raw_result
with open(test_file.with_suffix(".commands"), "r") as f:
command = json.loads(f.read())
raw_result.update(command)
# update the test name of this result
raw_result.update({"test_name": test_file.stem})
# add the result to raw_result
throughput_results.append(raw_result)
continue
print(f"Skipping {test_file}")
latency_results = pd.DataFrame.from_dict(latency_results)
serving_results = pd.DataFrame.from_dict(serving_results)
throughput_results = pd.DataFrame.from_dict(throughput_results)
raw_results_json = results_to_json(latency_results, throughput_results,
serving_results)
# remapping the key, for visualization purpose
if not latency_results.empty:
latency_results = latency_results[list(
latency_column_mapping.keys())].rename(
columns=latency_column_mapping)
if not serving_results.empty:
serving_results = serving_results[list(
serving_column_mapping.keys())].rename(
columns=serving_column_mapping)
if not throughput_results.empty:
throughput_results = throughput_results[list(
throughput_results_column_mapping.keys())].rename(
columns=throughput_results_column_mapping)
processed_results_json = results_to_json(latency_results,
throughput_results,
serving_results)
# get markdown tables
latency_md_table = tabulate(latency_results,
headers='keys',
tablefmt='pipe',
showindex=False)
serving_md_table = tabulate(serving_results,
headers='keys',
tablefmt='pipe',
showindex=False)
throughput_md_table = tabulate(throughput_results,
headers='keys',
tablefmt='pipe',
showindex=False)
# document the result
with open(results_folder / "benchmark_results.md", "w") as f:
results = read_markdown(
"../.buildkite/nightly-benchmarks/tests/descriptions.md")
results = results.format(
latency_tests_markdown_table=latency_md_table,
throughput_tests_markdown_table=throughput_md_table,
serving_tests_markdown_table=serving_md_table,
benchmarking_results_in_json_string=processed_results_json)
f.write(results)
# document benchmarking results in json
with open(results_folder / "benchmark_results.json", "w") as f:
results = latency_results.to_dict(
orient='records') + throughput_results.to_dict(
orient='records') + serving_results.to_dict(orient='records')
f.write(json.dumps(results))

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#!/bin/sh
TOKEN=$(curl -s -L "https://public.ecr.aws/token?service=public.ecr.aws&scope=repository:q9t5s3a7/vllm-ci-test-repo:pull" | jq -r .token)
URL="https://public.ecr.aws/v2/q9t5s3a7/vllm-ci-test-repo/manifests/$BUILDKITE_COMMIT"
retries=0
while [ $retries -lt 1000 ]; do
if [ $(curl -s -L -H "Authorization: Bearer $TOKEN" -o /dev/null -w "%{http_code}" $URL) -eq 200 ]; then
exit 0
fi
echo "Waiting for image to be available..."
retries=$((retries + 1))
sleep 5
done
exit 1

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## Latency tests
This test suite aims to test vllm's end-to-end latency under a controlled setup.
- Input length: 32 tokens.
- Output length: 128 tokens.
- Batch size: fixed (8).
- Models: llama-3 8B, llama-3 70B, mixtral 8x7B.
- Evaluation metrics: end-to-end latency (mean, median, p99).
### Latency benchmarking results
{latency_tests_markdown_table}
## Throughput tests
This test suite aims to test vllm's throughput.
- Input length: randomly sample 200 prompts from ShareGPT dataset (with fixed random seed).
- Output length: the corresponding output length of these 200 prompts.
- Batch size: dynamically determined by vllm to achieve maximum throughput.
- Models: llama-3 8B, llama-3 70B, mixtral 8x7B.
- Evaluation metrics: throughput.
### Throughput benchmarking results
{throughput_tests_markdown_table}
## Serving tests
This test suite aims to test vllm's real serving metrics.
- Input length: randomly sample 200 prompts from ShareGPT dataset (with fixed random seed).
- Output length: the corresponding output length of these 200 prompts.
- Batch size: dynamically determined by vllm and the arrival pattern of the requests.
- **Average QPS (query per second)**: 1, 4, 16 and inf. QPS = inf means all requests come at once. For other QPS values, the arrival time of each query is determined using a random Poisson process (with fixed random seed).
- Models: llama-3 8B, llama-3 70B, mixtral 8x7B.
- Evaluation metrics: throughput, TTFT (time to the first token, with mean, median and p99), ITL (inter-token latency, with mean, median and p99).
### Serving benchmarking results
{serving_tests_markdown_table}
## json version of the benchmarking tables
This section contains the data of the markdown tables above in JSON format.
You can load the benchmarking tables into pandas dataframes as follows:
```python
import json
import pandas as pd
benchmarking_results_json = """The json string"""
benchmarking_results = json.loads(benchmarking_results_json)
latency_results = pd.DataFrame.from_dict(benchmarking_results["latency"])
throughput_results = pd.DataFrame.from_dict(benchmarking_results["throughput"])
serving_results = pd.DataFrame.from_dict(benchmarking_results["serving"])
```
The json string for all benchmarking tables:
```json
{benchmarking_results_in_json_string}
```
You can also check the raw experiment data in the Artifact tab of the Buildkite page.

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@@ -0,0 +1,32 @@
[
{
"test_name": "latency_llama8B_tp1",
"parameters": {
"model": "meta-llama/Meta-Llama-3-8B",
"tensor_parallel_size": 1,
"load_format": "dummy",
"num_iters_warmup": 5,
"num_iters": 15
}
},
{
"test_name": "latency_llama70B_tp4",
"parameters": {
"model": "meta-llama/Meta-Llama-3-70B-Instruct",
"tensor_parallel_size": 4,
"load_format": "dummy",
"num-iters-warmup": 5,
"num-iters": 15
}
},
{
"test_name": "latency_mixtral8x7B_tp2",
"parameters": {
"model": "mistralai/Mixtral-8x7B-Instruct-v0.1",
"tensor_parallel_size": 2,
"load_format": "dummy",
"num-iters-warmup": 5,
"num-iters": 15
}
}
]

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@@ -0,0 +1,59 @@
[
{
"test_name": "serving_llama8B_tp1_sharegpt",
"qps_list": [1, 4, 16, "inf"],
"server_parameters": {
"model": "meta-llama/Meta-Llama-3-8B",
"tensor_parallel_size": 1,
"swap_space": 16,
"disable_log_stats": "",
"disable_log_requests": "",
"load_format": "dummy"
},
"client_parameters": {
"model": "meta-llama/Meta-Llama-3-8B",
"backend": "vllm",
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200
}
},
{
"test_name": "serving_llama70B_tp4_sharegpt",
"qps_list": [1, 4, 16, "inf"],
"server_parameters": {
"model": "meta-llama/Meta-Llama-3-70B-Instruct",
"tensor_parallel_size": 4,
"swap_space": 16,
"disable_log_stats": "",
"disable_log_requests": "",
"load_format": "dummy"
},
"client_parameters": {
"model": "meta-llama/Meta-Llama-3-70B-Instruct",
"backend": "vllm",
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200
}
},
{
"test_name": "serving_mixtral8x7B_tp2_sharegpt",
"qps_list": [1, 4, 16, "inf"],
"server_parameters": {
"model": "mistralai/Mixtral-8x7B-Instruct-v0.1",
"tensor_parallel_size": 2,
"swap_space": 16,
"disable_log_stats": "",
"disable_log_requests": "",
"load_format": "dummy"
},
"client_parameters": {
"model": "mistralai/Mixtral-8x7B-Instruct-v0.1",
"backend": "vllm",
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200
}
}
]

View File

@@ -0,0 +1,35 @@
[
{
"test_name": "throughput_llama8B_tp1",
"parameters": {
"model": "meta-llama/Meta-Llama-3-8B",
"tensor_parallel_size": 1,
"load_format": "dummy",
"dataset": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200,
"backend": "vllm"
}
},
{
"test_name": "throughput_llama70B_tp4",
"parameters": {
"model": "meta-llama/Meta-Llama-3-70B-Instruct",
"tensor_parallel_size": 4,
"load_format": "dummy",
"dataset": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200,
"backend": "vllm"
}
},
{
"test_name": "throughput_mixtral8x7B_tp2",
"parameters": {
"model": "mistralai/Mixtral-8x7B-Instruct-v0.1",
"tensor_parallel_size": 2,
"load_format": "dummy",
"dataset": "./ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200,
"backend": "vllm"
}
}
]

View File

@@ -0,0 +1,21 @@
steps:
- block: "Build wheels"
- label: "Build wheel - Python {{matrix.python_version}}, CUDA {{matrix.cuda_version}}"
agents:
queue: cpu_queue
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg CUDA_VERSION={{matrix.cuda_version}} --build-arg PYTHON_VERSION={{matrix.python_version}} --tag vllm-ci:build-image --target build --progress plain ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image cp -r dist /artifacts_host"
- "aws s3 cp --recursive artifacts/dist s3://vllm-wheels/$BUILDKITE_COMMIT/"
matrix:
setup:
cuda_version:
- "11.8.0"
- "12.1.0"
python_version:
- "3.8"
- "3.9"
- "3.10"
- "3.11"

View File

@@ -0,0 +1,73 @@
# This script runs test inside the corresponding ROCm docker container.
set -ex
# Print ROCm version
echo "--- ROCm info"
rocminfo
# cleanup older docker images
cleanup_docker() {
# Get Docker's root directory
docker_root=$(docker info -f '{{.DockerRootDir}}')
if [ -z "$docker_root" ]; then
echo "Failed to determine Docker root directory."
exit 1
fi
echo "Docker root directory: $docker_root"
# Check disk usage of the filesystem where Docker's root directory is located
disk_usage=$(df "$docker_root" | tail -1 | awk '{print $5}' | sed 's/%//')
# Define the threshold
threshold=70
if [ "$disk_usage" -gt "$threshold" ]; then
echo "Disk usage is above $threshold%. Cleaning up Docker images and volumes..."
# Remove dangling images (those that are not tagged and not used by any container)
docker image prune -f
# Remove unused volumes
docker volume prune -f
echo "Docker images and volumes cleanup completed."
else
echo "Disk usage is below $threshold%. No cleanup needed."
fi
}
# Call the cleanup docker function
cleanup_docker
echo "--- Resetting GPUs"
echo "reset" > /opt/amdgpu/etc/gpu_state
while true; do
sleep 3
if grep -q clean /opt/amdgpu/etc/gpu_state; then
echo "GPUs state is \"clean\""
break
fi
done
echo "--- Building container"
sha=$(git rev-parse --short HEAD)
image_name=rocm_${sha}
container_name=rocm_${sha}_$(tr -dc A-Za-z0-9 < /dev/urandom | head -c 10; echo)
docker build \
-t ${image_name} \
-f Dockerfile.rocm \
--progress plain \
.
remove_docker_container() {
docker rm -f ${container_name} || docker image rm -f ${image_name} || true
}
trap remove_docker_container EXIT
echo "--- Running container"
docker run \
--device /dev/kfd --device /dev/dri \
--network host \
--rm \
-e HF_TOKEN \
--name ${container_name} \
${image_name} \
/bin/bash -c "${@}"

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@@ -0,0 +1,78 @@
# This script is run by buildkite to run the benchmarks and upload the results to buildkite
set -ex
set -o pipefail
# cd into parent directory of this file
cd "$(dirname "${BASH_SOURCE[0]}")/.."
(which wget && which curl) || (apt-get update && apt-get install -y wget curl)
# run python-based benchmarks and upload the result to buildkite
python3 benchmarks/benchmark_latency.py --output-json latency_results.json 2>&1 | tee benchmark_latency.txt
bench_latency_exit_code=$?
python3 benchmarks/benchmark_throughput.py --input-len 256 --output-len 256 --output-json throughput_results.json 2>&1 | tee benchmark_throughput.txt
bench_throughput_exit_code=$?
# run server-based benchmarks and upload the result to buildkite
python3 -m vllm.entrypoints.openai.api_server --model meta-llama/Llama-2-7b-chat-hf &
server_pid=$!
wget https://huggingface.co/datasets/anon8231489123/ShareGPT_Vicuna_unfiltered/resolve/main/ShareGPT_V3_unfiltered_cleaned_split.json
# wait for server to start, timeout after 600 seconds
timeout 600 bash -c 'until curl localhost:8000/v1/models; do sleep 1; done' || exit 1
python3 benchmarks/benchmark_serving.py \
--backend vllm \
--dataset-name sharegpt \
--dataset-path ./ShareGPT_V3_unfiltered_cleaned_split.json \
--model meta-llama/Llama-2-7b-chat-hf \
--num-prompts 20 \
--endpoint /v1/completions \
--tokenizer meta-llama/Llama-2-7b-chat-hf \
--save-result \
2>&1 | tee benchmark_serving.txt
bench_serving_exit_code=$?
kill $server_pid
# write the results into a markdown file
echo "### Latency Benchmarks" >> benchmark_results.md
sed -n '1p' benchmark_latency.txt >> benchmark_results.md # first line
echo "" >> benchmark_results.md
sed -n '$p' benchmark_latency.txt >> benchmark_results.md # last line
echo "### Throughput Benchmarks" >> benchmark_results.md
sed -n '1p' benchmark_throughput.txt >> benchmark_results.md # first line
echo "" >> benchmark_results.md
sed -n '$p' benchmark_throughput.txt >> benchmark_results.md # last line
echo "### Serving Benchmarks" >> benchmark_results.md
sed -n '1p' benchmark_serving.txt >> benchmark_results.md # first line
echo "" >> benchmark_results.md
echo '```' >> benchmark_results.md
tail -n 24 benchmark_serving.txt >> benchmark_results.md # last 24 lines
echo '```' >> benchmark_results.md
# if the agent binary is not found, skip uploading the results, exit 0
if [ ! -f /usr/bin/buildkite-agent ]; then
exit 0
fi
# upload the results to buildkite
buildkite-agent annotate --style "info" --context "benchmark-results" < benchmark_results.md
# exit with the exit code of the benchmarks
if [ $bench_latency_exit_code -ne 0 ]; then
exit $bench_latency_exit_code
fi
if [ $bench_throughput_exit_code -ne 0 ]; then
exit $bench_throughput_exit_code
fi
if [ $bench_serving_exit_code -ne 0 ]; then
exit $bench_serving_exit_code
fi
rm ShareGPT_V3_unfiltered_cleaned_split.json
buildkite-agent artifact upload "*.json"

View File

@@ -0,0 +1,28 @@
# This script build the CPU docker image and run the offline inference inside the container.
# It serves a sanity check for compilation and basic model usage.
set -ex
# Try building the docker image
docker build -t cpu-test -f Dockerfile.cpu .
docker build --build-arg VLLM_CPU_DISABLE_AVX512="true" -t cpu-test-avx2 -f Dockerfile.cpu .
# Setup cleanup
remove_docker_container() { docker rm -f cpu-test cpu-test-avx2 || true; }
trap remove_docker_container EXIT
remove_docker_container
# Run the image
docker run -itd --entrypoint /bin/bash -v ~/.cache/huggingface:/root/.cache/huggingface --cpuset-cpus=48-95 \
--cpuset-mems=1 --network host -e HF_TOKEN --env VLLM_CPU_KVCACHE_SPACE=4 --name cpu-test cpu-test
docker run -itd --entrypoint /bin/bash -v ~/.cache/huggingface:/root/.cache/huggingface --cpuset-cpus=48-95 \
--cpuset-mems=1 --network host -e HF_TOKEN --env VLLM_CPU_KVCACHE_SPACE=4 --name cpu-test-avx2 cpu-test-avx2
# offline inference
docker exec cpu-test bash -c "python3 examples/offline_inference.py"
docker exec cpu-test-avx2 bash -c "python3 examples/offline_inference.py"
# Run basic model test
docker exec cpu-test bash -c "cd tests;
pip install pytest Pillow protobuf
cd ../
pytest -v -s tests/models -m \"not vlm\" --ignore=tests/models/test_embedding.py --ignore=tests/models/test_registry.py --ignore=tests/models/test_jamba.py" # Mamba on CPU is not supported

View File

@@ -0,0 +1,51 @@
# This script build the Neuron docker image and run the API server inside the container.
# It serves a sanity check for compilation and basic model usage.
set -e
# Try building the docker image
aws ecr get-login-password --region us-west-2 | docker login --username AWS --password-stdin 763104351884.dkr.ecr.us-west-2.amazonaws.com
# prune old image and containers to save disk space, and only once a day
# by using a timestamp file in tmp.
if [ -f /tmp/neuron-docker-build-timestamp ]; then
last_build=$(cat /tmp/neuron-docker-build-timestamp)
current_time=$(date +%s)
if [ $((current_time - last_build)) -gt 86400 ]; then
docker system prune -f
echo $current_time > /tmp/neuron-docker-build-timestamp
fi
else
echo $(date +%s) > /tmp/neuron-docker-build-timestamp
fi
docker build -t neuron -f Dockerfile.neuron .
# Setup cleanup
remove_docker_container() { docker rm -f neuron || true; }
trap remove_docker_container EXIT
remove_docker_container
# Run the image
docker run --device=/dev/neuron0 --device=/dev/neuron1 --network host --name neuron neuron python3 -m vllm.entrypoints.api_server \
--model TinyLlama/TinyLlama-1.1B-Chat-v1.0 --max-num-seqs 8 --max-model-len 128 --block-size 128 --device neuron --tensor-parallel-size 2 &
# Wait for the server to start
wait_for_server_to_start() {
timeout=300
counter=0
while [ "$(curl -s -o /dev/null -w ''%{http_code}'' localhost:8000/health)" != "200" ]; do
sleep 1
counter=$((counter + 1))
if [ $counter -ge $timeout ]; then
echo "Timeout after $timeout seconds"
break
fi
done
}
wait_for_server_to_start
# Test a simple prompt
curl -X POST -H "Content-Type: application/json" \
localhost:8000/generate \
-d '{"prompt": "San Francisco is a"}'

14
.buildkite/run-openvino-test.sh Executable file
View File

@@ -0,0 +1,14 @@
# This script build the OpenVINO docker image and run the offline inference inside the container.
# It serves a sanity check for compilation and basic model usage.
set -ex
# Try building the docker image
docker build -t openvino-test -f Dockerfile.openvino .
# Setup cleanup
remove_docker_container() { docker rm -f openvino-test || true; }
trap remove_docker_container EXIT
remove_docker_container
# Run the image and launch offline inference
docker run --network host --env VLLM_OPENVINO_KVCACHE_SPACE=1 --name openvino-test openvino-test python3 /workspace/vllm/examples/offline_inference.py

View File

@@ -0,0 +1,14 @@
# This script build the CPU docker image and run the offline inference inside the container.
# It serves a sanity check for compilation and basic model usage.
set -ex
# Try building the docker image
docker build -t xpu-test -f Dockerfile.xpu .
# Setup cleanup
remove_docker_container() { docker rm -f xpu-test || true; }
trap remove_docker_container EXIT
remove_docker_container
# Run the image and launch offline inference
docker run --network host --name xpu-test --device /dev/dri -v /dev/dri/by-path:/dev/dri/by-path xpu-test python3 examples/offline_inference.py

View File

@@ -0,0 +1,243 @@
# In this file, you can add more tests to run either by adding a new step or
# adding a new command to an existing step. See different options here for examples.
# This script will be feed into Jinja template in `test-template-aws.j2` at
# https://github.com/vllm-project/buildkite-ci/blob/main/scripts/test-template-aws.j2
# to generate the final pipeline yaml file.
steps:
- label: Regression Test
mirror_hardwares: [amd]
command: pytest -v -s test_regression.py
working_dir: "/vllm-workspace/tests" # optional
- label: AsyncEngine Test
#mirror_hardwares: [amd]
command: pytest -v -s async_engine
- label: Basic Correctness Test
mirror_hardwares: [amd]
commands:
- VLLM_ATTENTION_BACKEND=XFORMERS pytest -v -s basic_correctness/test_basic_correctness.py
- VLLM_ATTENTION_BACKEND=FLASH_ATTN pytest -v -s basic_correctness/test_basic_correctness.py
- VLLM_ATTENTION_BACKEND=XFORMERS pytest -v -s basic_correctness/test_chunked_prefill.py
- VLLM_ATTENTION_BACKEND=FLASH_ATTN pytest -v -s basic_correctness/test_chunked_prefill.py
- VLLM_TEST_ENABLE_ARTIFICIAL_PREEMPT=1 pytest -v -s basic_correctness/test_preemption.py
- label: Core Test
mirror_hardwares: [amd]
commands:
- pytest -v -s core
- pytest -v -s distributed/test_parallel_state.py
- label: Distributed Comm Ops Test
#mirror_hardwares: [amd]
working_dir: "/vllm-workspace/tests"
num_gpus: 2
commands:
- pytest -v -s distributed/test_comm_ops.py
- pytest -v -s distributed/test_shm_broadcast.py
- label: Distributed Tests (2 GPUs)
mirror_hardwares: [amd]
working_dir: "/vllm-workspace/tests"
num_gpus: 2
commands:
- bash ../.buildkite/download-images.sh
- VLLM_TEST_SAME_HOST=1 torchrun --nproc-per-node=4 distributed/test_same_node.py
- TEST_DIST_MODEL=facebook/opt-125m DISTRIBUTED_EXECUTOR_BACKEND=ray pytest -v -s distributed/test_basic_distributed_correctness.py
- TEST_DIST_MODEL=meta-llama/Llama-2-7b-hf DISTRIBUTED_EXECUTOR_BACKEND=ray pytest -v -s distributed/test_basic_distributed_correctness.py
- TEST_DIST_MODEL=facebook/opt-125m DISTRIBUTED_EXECUTOR_BACKEND=ray pytest -v -s distributed/test_chunked_prefill_distributed.py
- TEST_DIST_MODEL=meta-llama/Llama-2-7b-hf DISTRIBUTED_EXECUTOR_BACKEND=ray pytest -v -s distributed/test_chunked_prefill_distributed.py
- TEST_DIST_MODEL=llava-hf/llava-1.5-7b-hf DISTRIBUTED_EXECUTOR_BACKEND=ray pytest -v -s distributed/test_multimodal_broadcast.py
- TEST_DIST_MODEL=microsoft/Phi-3-vision-128k-instruct DISTRIBUTED_EXECUTOR_BACKEND=ray pytest -v -s distributed/test_multimodal_broadcast.py
- TEST_DIST_MODEL=facebook/opt-125m DISTRIBUTED_EXECUTOR_BACKEND=mp pytest -v -s distributed/test_basic_distributed_correctness.py
- TEST_DIST_MODEL=meta-llama/Llama-2-7b-hf DISTRIBUTED_EXECUTOR_BACKEND=mp pytest -v -s distributed/test_basic_distributed_correctness.py
- TEST_DIST_MODEL=facebook/opt-125m DISTRIBUTED_EXECUTOR_BACKEND=mp pytest -v -s distributed/test_chunked_prefill_distributed.py
- TEST_DIST_MODEL=meta-llama/Llama-2-7b-hf DISTRIBUTED_EXECUTOR_BACKEND=mp pytest -v -s distributed/test_chunked_prefill_distributed.py
- TEST_DIST_MODEL=llava-hf/llava-1.5-7b-hf DISTRIBUTED_EXECUTOR_BACKEND=mp pytest -v -s distributed/test_multimodal_broadcast.py
- TEST_DIST_MODEL=microsoft/Phi-3-vision-128k-instruct DISTRIBUTED_EXECUTOR_BACKEND=mp pytest -v -s distributed/test_multimodal_broadcast.py
- pytest -v -s spec_decode/e2e/test_integration_dist_tp2.py
- CUDA_VISIBLE_DEVICES=0,1 pytest -v -s test_sharded_state_loader.py
- CUDA_VISIBLE_DEVICES=0,1 pytest -v -s distributed/test_utils.py
- label: Distributed Tests (4 GPUs)
#mirror_hardwares: [amd]
working_dir: "/vllm-workspace/tests"
num_gpus: 4
commands:
- pytest -v -s distributed/test_pynccl.py
# We want to test that models which use 2 GPUs work with 4 GPUs, which is why we duplicate them here.
# See https://github.com/vllm-project/vllm/pull/5473#issuecomment-2166601837 for context.
- TEST_DIST_MODEL=facebook/opt-125m DISTRIBUTED_EXECUTOR_BACKEND=ray pytest -v -s distributed/test_basic_distributed_correctness.py
- TEST_DIST_MODEL=facebook/opt-125m DISTRIBUTED_EXECUTOR_BACKEND=mp pytest -v -s distributed/test_basic_distributed_correctness.py
- pytest -v -s spec_decode/e2e/test_integration_dist_tp4.py
- label: Pipeline Parallelism Test
working_dir: "/vllm-workspace/tests"
num_gpus: 4
commands:
- TP_SIZE=2 PP_SIZE=2 EAGER_MODE=1 CHUNKED_PREFILL=1 pytest -v -s distributed/test_pipeline_parallel.py
- TP_SIZE=2 PP_SIZE=2 EAGER_MODE=1 CHUNKED_PREFILL=0 pytest -v -s distributed/test_pipeline_parallel.py
- TP_SIZE=1 PP_SIZE=3 EAGER_MODE=1 CHUNKED_PREFILL=0 pytest -v -s distributed/test_pipeline_parallel.py
- PP_SIZE=4 EAGER_MODE=1 CHUNKED_PREFILL=1 pytest -v -s distributed/test_pipeline_parallel.py
- PP_SIZE=4 EAGER_MODE=1 CHUNKED_PREFILL=0 pytest -v -s distributed/test_pipeline_parallel.py
- label: Engine Test
mirror_hardwares: [amd]
command: pytest -v -s engine tokenization test_sequence.py test_config.py test_logger.py
- label: Entrypoints Test
mirror_hardwares: [amd]
commands:
- pytest -v -s entrypoints/llm
- pytest -v -s entrypoints/openai
- label: Examples Test
working_dir: "/vllm-workspace/examples"
mirror_hardwares: [amd]
commands:
# install aws cli for llava_example.py
# install tensorizer for tensorize_vllm_model.py
- pip install awscli tensorizer
- python3 offline_inference.py
- python3 offline_inference_with_prefix.py
- python3 llm_engine_example.py
- python3 llava_example.py
- python3 tensorize_vllm_model.py --model facebook/opt-125m serialize --serialized-directory /tmp/ --suffix v1 && python3 tensorize_vllm_model.py --model facebook/opt-125m deserialize --path-to-tensors /tmp/vllm/facebook/opt-125m/v1/model.tensors
- label: Inputs Test
#mirror_hardwares: [amd]
commands:
- bash ../.buildkite/download-images.sh
- pytest -v -s test_inputs.py
- pytest -v -s multimodal
- label: Kernels Test %N
#mirror_hardwares: [amd]
commands:
- pip install https://github.com/flashinfer-ai/flashinfer/releases/download/v0.0.7/flashinfer-0.0.7+cu121torch2.3-cp310-cp310-linux_x86_64.whl
- pytest -v -s kernels --shard-id=$$BUILDKITE_PARALLEL_JOB --num-shards=$$BUILDKITE_PARALLEL_JOB_COUNT
parallelism: 4
- label: Models Test
#mirror_hardwares: [amd]
commands:
- pip install https://github.com/flashinfer-ai/flashinfer/releases/download/v0.0.7/flashinfer-0.0.7+cu121torch2.3-cp310-cp310-linux_x86_64.whl
- pytest -v -s models -m \"not vlm\"
- label: Vision Language Models Test
mirror_hardwares: [amd]
commands:
- bash ../.buildkite/download-images.sh
- pytest -v -s models -m vlm
- label: Prefix Caching Test
mirror_hardwares: [amd]
commands:
- pytest -v -s prefix_caching
- label: Samplers Test
#mirror_hardwares: [amd]
command: pytest -v -s samplers
- label: LogitsProcessor Test
mirror_hardwares: [amd]
command: pytest -v -s test_logits_processor.py
- label: Utils Test
command: pytest -v -s test_utils.py
- label: Worker Test
mirror_hardwares: [amd]
command: pytest -v -s worker
- label: Speculative decoding tests
#mirror_hardwares: [amd]
commands:
# See https://github.com/vllm-project/vllm/issues/5152
- export VLLM_ATTENTION_BACKEND=XFORMERS
- pytest -v -s spec_decode
- label: LoRA Test %N
#mirror_hardwares: [amd]
command: pytest -v -s lora --shard-id=$$BUILDKITE_PARALLEL_JOB --num-shards=$$BUILDKITE_PARALLEL_JOB_COUNT --ignore=lora/test_long_context.py
parallelism: 4
- label: LoRA Long Context (Distributed)
#mirror_hardwares: [amd]
num_gpus: 4
# This test runs llama 13B, so it is required to run on 4 GPUs.
commands:
# FIXIT: find out which code initialize cuda before running the test
# before the fix, we need to use spawn to test it
- export VLLM_WORKER_MULTIPROC_METHOD=spawn
- pytest -v -s -x lora/test_long_context.py
- label: Tensorizer Test
#mirror_hardwares: [amd]
command: apt-get install curl libsodium23 && pytest -v -s tensorizer_loader
- label: Metrics Test
mirror_hardwares: [amd]
command: pytest -v -s metrics
- label: Quantization Test
#mirror_hardwares: [amd]
command: pytest -v -s quantization
- label: Tracing Test
commands:
- "pip install \
opentelemetry-sdk \
opentelemetry-api \
opentelemetry-exporter-otlp \
opentelemetry-semantic-conventions-ai"
- pytest -v -s tracing
- label: Benchmarks
working_dir: "/vllm-workspace/.buildkite"
mirror_hardwares: [amd]
commands:
- pip install aiohttp
- bash run-benchmarks.sh
- label: LM Eval Small Models
working_dir: "/vllm-workspace/.buildkite/lm-eval-harness"
commands:
- pip install lm-eval
- export VLLM_WORKER_MULTIPROC_METHOD=spawn
- bash ./run-tests.sh -c configs/models-small.txt -t 1
- label: LM Eval Large Models
gpu: a100
num_gpus: 4
working_dir: "/vllm-workspace/.buildkite/lm-eval-harness"
commands:
- pip install lm-eval
- export VLLM_WORKER_MULTIPROC_METHOD=spawn
- bash ./run-tests.sh -c configs/models-large.txt -t 4
- label: Documentation Build
working_dir: "/vllm-workspace/test_docs/docs"
no_gpu: True
commands:
- pip install -r requirements-docs.txt
- SPHINXOPTS=\"-W\" make html
- label: Distributed Tests (A100)
gpu: a100
num_gpus: 4
commands:
# NOTE: don't test llama model here, it seems hf implementation is buggy
# see https://github.com/vllm-project/vllm/pull/5689 for details
- pytest -v -s distributed/test_custom_all_reduce.py
- TEST_DIST_MODEL=facebook/opt-125m DISTRIBUTED_EXECUTOR_BACKEND=ray pytest -v -s distributed/test_basic_distributed_correctness.py
- TEST_DIST_MODEL=facebook/opt-125m DISTRIBUTED_EXECUTOR_BACKEND=mp pytest -v -s distributed/test_basic_distributed_correctness.py
- pip install https://github.com/flashinfer-ai/flashinfer/releases/download/v0.0.7/flashinfer-0.0.7+cu121torch2.3-cp310-cp310-linux_x86_64.whl
- VLLM_ATTENTION_BACKEND=FLASHINFER TEST_DIST_MODEL=facebook/opt-125m DISTRIBUTED_EXECUTOR_BACKEND=ray pytest -v -s distributed/test_basic_distributed_correctness.py
- VLLM_ATTENTION_BACKEND=FLASHINFER TEST_DIST_MODEL=meta-llama/Meta-Llama-3-8B DISTRIBUTED_EXECUTOR_BACKEND=ray pytest -v -s distributed/test_basic_distributed_correctness.py
- pytest -v -s -x lora/test_mixtral.py

26
.clang-format Normal file
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@@ -0,0 +1,26 @@
BasedOnStyle: Google
UseTab: Never
IndentWidth: 2
ColumnLimit: 80
# Force pointers to the type for C++.
DerivePointerAlignment: false
PointerAlignment: Left
# Reordering #include statements can (and currently will) introduce errors
SortIncludes: false
# Style choices
AlignConsecutiveAssignments: false
AlignConsecutiveDeclarations: false
IndentPPDirectives: BeforeHash
IncludeCategories:
- Regex: '^<'
Priority: 4
- Regex: '^"(llvm|llvm-c|clang|clang-c|mlir|mlir-c)/'
Priority: 3
- Regex: '^"(qoda|\.\.)/'
Priority: 2
- Regex: '.*'
Priority: 1

1
.dockerignore Normal file
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@@ -0,0 +1 @@
vllm/*.so

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@@ -0,0 +1,22 @@
name: 📚 Documentation
description: Report an issue related to https://docs.vllm.ai/
title: "[Doc]: "
labels: ["documentation"]
body:
- type: textarea
attributes:
label: 📚 The doc issue
description: >
A clear and concise description of what content in https://docs.vllm.ai/ is an issue.
validations:
required: true
- type: textarea
attributes:
label: Suggest a potential alternative/fix
description: >
Tell us how we could improve the documentation in this regard.
- type: markdown
attributes:
value: >
Thanks for contributing 🎉!

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@@ -0,0 +1,40 @@
name: 🛠️ Installation
description: Report an issue here when you hit errors during installation.
title: "[Installation]: "
labels: ["installation"]
body:
- type: markdown
attributes:
value: >
#### Before submitting an issue, please make sure the issue hasn't been already addressed by searching through [the existing and past issues](https://github.com/vllm-project/vllm/issues?q=is%3Aissue+sort%3Acreated-desc+).
- type: textarea
attributes:
label: Your current environment
description: |
Please run the following and paste the output below.
```sh
wget https://raw.githubusercontent.com/vllm-project/vllm/main/collect_env.py
# For security purposes, please feel free to check the contents of collect_env.py before running it.
python collect_env.py
```
It is suggested to download and execute the latest script, as vllm might frequently update the diagnosis information needed for accurately and quickly responding to issues.
value: |
```text
The output of `python collect_env.py`
```
validations:
required: true
- type: textarea
attributes:
label: How you are installing vllm
description: |
Paste the full command you are trying to execute.
value: |
```sh
pip install -vvv vllm
```
- type: markdown
attributes:
value: >
Thanks for contributing 🎉!

38
.github/ISSUE_TEMPLATE/300-usage.yml vendored Normal file
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@@ -0,0 +1,38 @@
name: 💻 Usage
description: Raise an issue here if you don't know how to use vllm.
title: "[Usage]: "
labels: ["usage"]
body:
- type: markdown
attributes:
value: >
#### Before submitting an issue, please make sure the issue hasn't been already addressed by searching through [the existing and past issues](https://github.com/vllm-project/vllm/issues?q=is%3Aissue+sort%3Acreated-desc+).
- type: textarea
attributes:
label: Your current environment
description: |
Please run the following and paste the output below.
```sh
wget https://raw.githubusercontent.com/vllm-project/vllm/main/collect_env.py
# For security purposes, please feel free to check the contents of collect_env.py before running it.
python collect_env.py
```
It is suggested to download and execute the latest script, as vllm might frequently update the diagnosis information needed for accurately and quickly responding to issues.
value: |
```text
The output of `python collect_env.py`
```
validations:
required: true
- type: textarea
attributes:
label: How would you like to use vllm
description: |
A detailed description of how you want to use vllm.
value: |
I want to run inference of a [specific model](put link here). I don't know how to integrate it with vllm.
- type: markdown
attributes:
value: >
Thanks for contributing 🎉!

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@@ -0,0 +1,86 @@
name: 🐛 Bug report
description: Raise an issue here if you find a bug.
title: "[Bug]: "
labels: ["bug"]
body:
- type: markdown
attributes:
value: >
#### Before submitting an issue, please make sure the issue hasn't been already addressed by searching through [the existing and past issues](https://github.com/vllm-project/vllm/issues?q=is%3Aissue+sort%3Acreated-desc+).
- type: textarea
attributes:
label: Your current environment
description: |
Please run the following and paste the output below.
```sh
wget https://raw.githubusercontent.com/vllm-project/vllm/main/collect_env.py
# For security purposes, please feel free to check the contents of collect_env.py before running it.
python collect_env.py
```
It is suggested to download and execute the latest script, as vllm might frequently update the diagnosis information needed for accurately and quickly responding to issues.
value: |
```text
The output of `python collect_env.py`
```
validations:
required: true
- type: textarea
attributes:
label: 🐛 Describe the bug
description: |
Please provide a clear and concise description of what the bug is.
If relevant, add a minimal example so that we can reproduce the error by running the code. It is very important for the snippet to be as succinct (minimal) as possible, so please take time to trim down any irrelevant code to help us debug efficiently. We are going to copy-paste your code and we expect to get the same result as you did: avoid any external data, and include the relevant imports, etc. For example:
```python
from vllm import LLM, SamplingParams
prompts = [
"Hello, my name is",
"The president of the United States is",
"The capital of France is",
"The future of AI is",
]
sampling_params = SamplingParams(temperature=0.8, top_p=0.95)
llm = LLM(model="facebook/opt-125m")
outputs = llm.generate(prompts, sampling_params)
# Print the outputs.
for output in outputs:
prompt = output.prompt
generated_text = output.outputs[0].text
print(f"Prompt: {prompt!r}, Generated text: {generated_text!r}")
```
If the code is too long (hopefully, it isn't), feel free to put it in a public gist and link it in the issue: https://gist.github.com.
Please also paste or describe the results you observe instead of the expected results. If you observe an error, please paste the error message including the **full** traceback of the exception. It may be relevant to wrap error messages in ```` ```triple quotes blocks``` ````.
Please set the environment variable `export VLLM_LOGGING_LEVEL=DEBUG` to turn on more logging to help debugging potential issues.
If you experienced crashes or hangs, it would be helpful to run vllm with `export VLLM_TRACE_FUNCTION=1` . All the function calls in vllm will be recorded. Inspect these log files, and tell which function crashes or hangs.
placeholder: |
A clear and concise description of what the bug is.
```python
# Sample code to reproduce the problem
```
```
The error message you got, with the full traceback.
```
validations:
required: true
- type: markdown
attributes:
value: >
⚠️ Please separate bugs of `transformers` implementation or usage from bugs of `vllm`. If you think anything is wrong with the models' output:
- Try the counterpart of `transformers` first. If the error appears, please go to [their issues](https://github.com/huggingface/transformers/issues?q=is%3Aissue+is%3Aopen+sort%3Aupdated-desc).
- If the error only appears in vllm, please provide the detailed script of how you run `transformers` and `vllm`, also highlight the difference and what you expect.
Thanks for contributing 🎉!

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@@ -0,0 +1,31 @@
name: 🚀 Feature request
description: Submit a proposal/request for a new vllm feature
title: "[Feature]: "
labels: ["feature request"]
body:
- type: markdown
attributes:
value: >
#### Before submitting an issue, please make sure the issue hasn't been already addressed by searching through [the existing and past issues](https://github.com/vllm-project/vllm/issues?q=is%3Aissue+sort%3Acreated-desc+).
- type: textarea
attributes:
label: 🚀 The feature, motivation and pitch
description: >
A clear and concise description of the feature proposal. Please outline the motivation for the proposal. Is your feature request related to a specific problem? e.g., *"I'm working on X and would like Y to be possible"*. If this is related to another GitHub issue, please link here too.
validations:
required: true
- type: textarea
attributes:
label: Alternatives
description: >
A description of any alternative solutions or features you've considered, if any.
- type: textarea
attributes:
label: Additional context
description: >
Add any other context or screenshots about the feature request.
- type: markdown
attributes:
value: >
Thanks for contributing 🎉!

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@@ -0,0 +1,33 @@
name: 🤗 Support request for a new model from huggingface
description: Submit a proposal/request for a new model from huggingface
title: "[New Model]: "
labels: ["new model"]
body:
- type: markdown
attributes:
value: >
#### Before submitting an issue, please make sure the issue hasn't been already addressed by searching through [the existing and past issues](https://github.com/vllm-project/vllm/issues?q=is%3Aissue+sort%3Acreated-desc+).
#### We also highly recommend you read https://docs.vllm.ai/en/latest/models/adding_model.html first to understand how to add a new model.
- type: textarea
attributes:
label: The model to consider.
description: >
A huggingface url, pointing to the model, e.g. https://huggingface.co/openai-community/gpt2 .
validations:
required: true
- type: textarea
attributes:
label: The closest model vllm already supports.
description: >
Here is the list of models already supported by vllm: https://github.com/vllm-project/vllm/tree/main/vllm/model_executor/models . Which model is the most similar to the model you want to add support for?
- type: textarea
attributes:
label: What's your difficulty of supporting the model you want?
description: >
For example, any new operators or new architecture?
- type: markdown
attributes:
value: >
Thanks for contributing 🎉!

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@@ -0,0 +1,52 @@
name: ⚡ Discussion on the performance of vllm
description: Submit a proposal/discussion about the performance of vllm
title: "[Performance]: "
labels: ["performance"]
body:
- type: markdown
attributes:
value: >
#### Before submitting an issue, please make sure the issue hasn't been already addressed by searching through [the existing and past issues](https://github.com/vllm-project/vllm/issues?q=is%3Aissue+sort%3Acreated-desc+).
- type: textarea
attributes:
label: Proposal to improve performance
description: >
How do you plan to improve vllm's performance?
validations:
required: false
- type: textarea
attributes:
label: Report of performance regression
description: >
Please provide detailed description of performance comparison to confirm the regression. You may want to run the benchmark script at https://github.com/vllm-project/vllm/tree/main/benchmarks .
validations:
required: false
- type: textarea
attributes:
label: Misc discussion on performance
description: >
Anything about the performance.
validations:
required: false
- type: textarea
attributes:
label: Your current environment (if you think it is necessary)
description: |
Please run the following and paste the output below.
```sh
wget https://raw.githubusercontent.com/vllm-project/vllm/main/collect_env.py
# For security purposes, please feel free to check the contents of collect_env.py before running it.
python collect_env.py
```
It is suggested to download and execute the latest script, as vllm might frequently update the diagnosis information needed for accurately and quickly responding to issues.
value: |
```text
The output of `python collect_env.py`
```
validations:
required: false
- type: markdown
attributes:
value: >
Thanks for contributing 🎉!

49
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@@ -0,0 +1,49 @@
name: 💬 Request for comments (RFC).
description: Ask for feedback on major architectural changes or design choices.
title: "[RFC]: "
labels: ["RFC"]
body:
- type: markdown
attributes:
value: >
#### Please take a look at previous [RFCs](https://github.com/vllm-project/vllm/issues?q=label%3ARFC+sort%3Aupdated-desc) for reference.
- type: textarea
attributes:
label: Motivation.
description: >
The motivation of the RFC.
validations:
required: true
- type: textarea
attributes:
label: Proposed Change.
description: >
The proposed change of the RFC.
validations:
required: true
- type: textarea
attributes:
label: Feedback Period.
description: >
The feedback period of the RFC. Usually at least one week.
validations:
required: false
- type: textarea
attributes:
label: CC List.
description: >
The list of people you want to CC.
validations:
required: false
- type: textarea
attributes:
label: Any Other Things.
description: >
Any other things you would like to mention.
validations:
required: false
- type: markdown
attributes:
value: >
Thanks for contributing 🎉!

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@@ -0,0 +1,21 @@
name: 🎲 Misc/random discussions that do not fit into the above categories.
description: Submit a discussion as you like. Note that developers are heavily overloaded and we mainly rely on community users to answer these issues.
title: "[Misc]: "
labels: ["misc"]
body:
- type: markdown
attributes:
value: >
#### Before submitting an issue, please make sure the issue hasn't been already addressed by searching through [the existing and past issues](https://github.com/vllm-project/vllm/issues?q=is%3Aissue+sort%3Acreated-desc+).
- type: textarea
attributes:
label: Anything you want to discuss about vllm.
description: >
Anything you want to discuss about vllm.
validations:
required: true
- type: markdown
attributes:
value: >
Thanks for contributing 🎉!

1
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blank_issues_enabled: false

64
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FILL IN THE PR DESCRIPTION HERE
FIX #xxxx (*link existing issues this PR will resolve*)
**BEFORE SUBMITTING, PLEASE READ THE CHECKLIST BELOW AND FILL IN THE DESCRIPTION ABOVE**
---
<details>
<!-- inside this <details> section, markdown rendering does not work, so we use raw html here. -->
<summary><b> PR Checklist (Click to Expand) </b></summary>
<p>Thank you for your contribution to vLLM! Before submitting the pull request, please ensure the PR meets the following criteria. This helps vLLM maintain the code quality and improve the efficiency of the review process.</p>
<h3>PR Title and Classification</h3>
<p>Only specific types of PRs will be reviewed. The PR title is prefixed appropriately to indicate the type of change. Please use one of the following:</p>
<ul>
<li><code>[Bugfix]</code> for bug fixes.</li>
<li><code>[CI/Build]</code> for build or continuous integration improvements.</li>
<li><code>[Doc]</code> for documentation fixes and improvements.</li>
<li><code>[Model]</code> for adding a new model or improving an existing model. Model name should appear in the title.</li>
<li><code>[Frontend]</code> For changes on the vLLM frontend (e.g., OpenAI API server, <code>LLM</code> class, etc.) </li>
<li><code>[Kernel]</code> for changes affecting CUDA kernels or other compute kernels.</li>
<li><code>[Core]</code> for changes in the core vLLM logic (e.g., <code>LLMEngine</code>, <code>AsyncLLMEngine</code>, <code>Scheduler</code>, etc.)</li>
<li><code>[Hardware][Vendor]</code> for hardware-specific changes. Vendor name should appear in the prefix (e.g., <code>[Hardware][AMD]</code>).</li>
<li><code>[Misc]</code> for PRs that do not fit the above categories. Please use this sparingly.</li>
</ul>
<p><strong>Note:</strong> If the PR spans more than one category, please include all relevant prefixes.</p>
<h3>Code Quality</h3>
<p>The PR need to meet the following code quality standards:</p>
<ul>
<li>We adhere to <a href="https://google.github.io/styleguide/pyguide.html">Google Python style guide</a> and <a href="https://google.github.io/styleguide/cppguide.html">Google C++ style guide</a>.</li>
<li>Pass all linter checks. Please use <a href="https://github.com/vllm-project/vllm/blob/main/format.sh"><code>format.sh</code></a> to format your code.</li>
<li>The code need to be well-documented to ensure future contributors can easily understand the code.</li>
<li>Include sufficient tests to ensure the project to stay correct and robust. This includes both unit tests and integration tests.</li>
<li>Please add documentation to <code>docs/source/</code> if the PR modifies the user-facing behaviors of vLLM. It helps vLLM user understand and utilize the new features or changes.</li>
</ul>
<h3>Notes for Large Changes</h3>
<p>Please keep the changes as concise as possible. For major architectural changes (>500 LOC excluding kernel/data/config/test), we would expect a GitHub issue (RFC) discussing the technical design and justification. Otherwise, we will tag it with <code>rfc-required</code> and might not go through the PR.</p>
<h3>What to Expect for the Reviews</h3>
<p>The goal of the vLLM team is to be a <i>transparent reviewing machine</i>. We would like to make the review process transparent and efficient and make sure no contributor feel confused or frustrated. However, the vLLM team is small, so we need to prioritize some PRs over others. Here is what you can expect from the review process: </p>
<ul>
<li> After the PR is submitted, the PR will be assigned to a reviewer. Every reviewer will pick up the PRs based on their expertise and availability.</li>
<li> After the PR is assigned, the reviewer will provide status update every 2-3 days. If the PR is not reviewed within 7 days, please feel free to ping the reviewer or the vLLM team.</li>
<li> After the review, the reviewer will put an <code> action-required</code> label on the PR if there are changes required. The contributor should address the comments and ping the reviewer to re-review the PR.</li>
<li> Please respond to all comments within a reasonable time frame. If a comment isn't clear or you disagree with a suggestion, feel free to ask for clarification or discuss the suggestion.
</li>
</ul>
<h3>Thank You</h3>
<p> Finally, thank you for taking the time to read these guidelines and for your interest in contributing to vLLM. Your contributions make vLLM a great tool for everyone! </p>
</details>

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@@ -0,0 +1,42 @@
name: clang-format
on:
# Trigger the workflow on push or pull request,
# but only for the main branch
push:
branches:
- main
pull_request:
branches:
- main
jobs:
clang-format:
runs-on: ubuntu-latest
strategy:
matrix:
python-version: ["3.11"]
steps:
- uses: actions/checkout@v2
- name: Set up Python ${{ matrix.python-version }}
uses: actions/setup-python@v2
with:
python-version: ${{ matrix.python-version }}
- name: Install dependencies
run: |
python -m pip install --upgrade pip
pip install clang-format==18.1.5
- name: Running clang-format
run: |
EXCLUDES=(
'csrc/moe/topk_softmax_kernels.cu'
'csrc/punica/bgmv/bgmv_bf16_bf16_bf16.cu'
'csrc/punica/bgmv/bgmv_config.h'
'csrc/punica/bgmv/bgmv_impl.cuh'
'csrc/punica/bgmv/vec_dtypes.cuh'
'csrc/punica/punica_ops.cu'
'csrc/punica/type_convert.h'
)
find csrc/ \( -name '*.h' -o -name '*.cpp' -o -name '*.cu' -o -name '*.cuh' \) -print \
| grep -vFf <(printf "%s\n" "${EXCLUDES[@]}") \
| xargs clang-format --dry-run --Werror

51
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@@ -0,0 +1,51 @@
name: mypy
on:
# Trigger the workflow on push or pull request,
# but only for the main branch
push:
branches:
- main
pull_request:
branches:
- main
jobs:
ruff:
runs-on: ubuntu-latest
strategy:
matrix:
python-version: ["3.8", "3.9", "3.10", "3.11"]
steps:
- uses: actions/checkout@v2
- name: Set up Python ${{ matrix.python-version }}
uses: actions/setup-python@v2
with:
python-version: ${{ matrix.python-version }}
- name: Install dependencies
run: |
python -m pip install --upgrade pip
pip install mypy==1.9.0
pip install types-setuptools
pip install types-PyYAML
pip install types-requests
pip install types-setuptools
- name: Mypy
run: |
mypy vllm/attention --config-file pyproject.toml
mypy vllm/core --config-file pyproject.toml
mypy vllm/distributed --config-file pyproject.toml
mypy vllm/entrypoints --config-file pyproject.toml
mypy vllm/executor --config-file pyproject.toml
mypy vllm/multimodal --config-file pyproject.toml
mypy vllm/usage --config-file pyproject.toml
mypy vllm/*.py --config-file pyproject.toml
mypy vllm/transformers_utils --config-file pyproject.toml
mypy vllm/engine --config-file pyproject.toml
mypy vllm/worker --config-file pyproject.toml
mypy vllm/spec_decode --config-file pyproject.toml
mypy vllm/model_executor --config-file pyproject.toml
mypy vllm/lora --config-file pyproject.toml
mypy vllm/logging --config-file pyproject.toml
mypy tests --config-file pyproject.toml

View File

@@ -49,13 +49,19 @@ jobs:
matrix:
os: ['ubuntu-20.04']
python-version: ['3.8', '3.9', '3.10', '3.11']
pytorch-version: ['2.1.1']
pytorch-version: ['2.3.0'] # Must be the most recent version that meets requirements-cuda.txt.
cuda-version: ['11.8', '12.1']
steps:
- name: Checkout
uses: actions/checkout@v3
- name: Setup ccache
uses: hendrikmuhs/ccache-action@v1.2
with:
create-symlink: true
key: ${{ github.job }}-${{ matrix.python-version }}-${{ matrix.cuda-version }}
- name: Set up Linux Env
if: ${{ runner.os == 'Linux' }}
run: |
@@ -76,6 +82,8 @@ jobs:
- name: Build wheel
shell: bash
env:
CMAKE_BUILD_TYPE: Release # do not compile with debug symbol to reduce wheel size
run: |
bash -x .github/workflows/scripts/build.sh ${{ matrix.python-version }} ${{ matrix.cuda-version }}
wheel_name=$(ls dist/*whl | xargs -n 1 basename)

View File

@@ -15,7 +15,7 @@ jobs:
runs-on: ubuntu-latest
strategy:
matrix:
python-version: ["3.10"]
python-version: ["3.8", "3.9", "3.10", "3.11"]
steps:
- uses: actions/checkout@v2
- name: Set up Python ${{ matrix.python-version }}
@@ -25,7 +25,13 @@ jobs:
- name: Install dependencies
run: |
python -m pip install --upgrade pip
pip install ruff==0.1.5
pip install ruff==0.1.5 codespell==2.3.0 tomli==2.0.1 isort==5.13.2
- name: Analysing the code with ruff
run: |
ruff vllm tests
ruff .
- name: Spelling check with codespell
run: |
codespell --toml pyproject.toml
- name: Run isort
run: |
isort . --check-only

View File

@@ -9,10 +9,13 @@ LD_LIBRARY_PATH=${cuda_home}/lib64:$LD_LIBRARY_PATH
# Install requirements
$python_executable -m pip install wheel packaging
$python_executable -m pip install -r requirements.txt
$python_executable -m pip install -r requirements-cuda.txt
# Limit the number of parallel jobs to avoid OOM
export MAX_JOBS=1
# Make sure punica is built for the release (for LoRA)
export VLLM_INSTALL_PUNICA_KERNELS=1
# Make sure release wheels are built for the following architectures
export TORCH_CUDA_ARCH_LIST="7.0 7.5 8.0 8.6 8.9 9.0+PTX"
# Build
$python_executable setup.py bdist_wheel --dist-dir=dist

View File

@@ -8,7 +8,7 @@ module.exports = async (github, context, core) => {
generate_release_notes: true,
name: process.env.RELEASE_TAG,
owner: context.repo.owner,
prerelease: false,
prerelease: true,
repo: context.repo.repo,
tag_name: process.env.RELEASE_TAG,
});

View File

@@ -14,7 +14,7 @@ jobs:
runs-on: ubuntu-latest
strategy:
matrix:
python-version: ["3.10"]
python-version: ["3.8", "3.9", "3.10", "3.11"]
steps:
- uses: actions/checkout@v2
- name: Set up Python ${{ matrix.python-version }}
@@ -28,4 +28,4 @@ jobs:
pip install toml==0.10.2
- name: Running yapf
run: |
yapf --diff --recursive vllm tests
yapf --diff --recursive .

6
.gitignore vendored
View File

@@ -70,6 +70,8 @@ instance/
# Sphinx documentation
docs/_build/
docs/source/getting_started/examples/*.rst
!**/*.template.rst
# PyBuilder
.pybuilder/
@@ -181,3 +183,7 @@ _build/
# hip files generated by PyTorch
*.hip
*_hip*
hip_compat.h
# Benchmark dataset
*.json

1
.yapfignore Normal file
View File

@@ -0,0 +1 @@
collect_env.py

309
CMakeLists.txt Normal file
View File

@@ -0,0 +1,309 @@
cmake_minimum_required(VERSION 3.21)
project(vllm_extensions LANGUAGES CXX)
# CUDA by default, can be overridden by using -DVLLM_TARGET_DEVICE=... (used by setup.py)
set(VLLM_TARGET_DEVICE "cuda" CACHE STRING "Target device backend for vLLM")
message(STATUS "Build type: ${CMAKE_BUILD_TYPE}")
message(STATUS "Target device: ${VLLM_TARGET_DEVICE}")
include(${CMAKE_CURRENT_LIST_DIR}/cmake/utils.cmake)
#
# Supported python versions. These versions will be searched in order, the
# first match will be selected. These should be kept in sync with setup.py.
#
set(PYTHON_SUPPORTED_VERSIONS "3.8" "3.9" "3.10" "3.11")
# Supported NVIDIA architectures.
set(CUDA_SUPPORTED_ARCHS "7.0;7.5;8.0;8.6;8.9;9.0")
# Supported AMD GPU architectures.
set(HIP_SUPPORTED_ARCHS "gfx906;gfx908;gfx90a;gfx940;gfx941;gfx942;gfx1030;gfx1100")
#
# Supported/expected torch versions for CUDA/ROCm.
#
# Currently, having an incorrect pytorch version results in a warning
# rather than an error.
#
# Note: the CUDA torch version is derived from pyproject.toml and various
# requirements.txt files and should be kept consistent. The ROCm torch
# versions are derived from Dockerfile.rocm
#
set(TORCH_SUPPORTED_VERSION_CUDA "2.3.0")
set(TORCH_SUPPORTED_VERSION_ROCM "2.4.0")
#
# Try to find python package with an executable that exactly matches
# `VLLM_PYTHON_EXECUTABLE` and is one of the supported versions.
#
if (VLLM_PYTHON_EXECUTABLE)
find_python_from_executable(${VLLM_PYTHON_EXECUTABLE} "${PYTHON_SUPPORTED_VERSIONS}")
else()
message(FATAL_ERROR
"Please set VLLM_PYTHON_EXECUTABLE to the path of the desired python version"
" before running cmake configure.")
endif()
#
# Update cmake's `CMAKE_PREFIX_PATH` with torch location.
#
append_cmake_prefix_path("torch" "torch.utils.cmake_prefix_path")
# Ensure the 'nvcc' command is in the PATH
find_program(NVCC_EXECUTABLE nvcc)
if (CUDA_FOUND AND NOT NVCC_EXECUTABLE)
message(FATAL_ERROR "nvcc not found")
endif()
#
# Import torch cmake configuration.
# Torch also imports CUDA (and partially HIP) languages with some customizations,
# so there is no need to do this explicitly with check_language/enable_language,
# etc.
#
find_package(Torch REQUIRED)
#
# Forward the non-CUDA device extensions to external CMake scripts.
#
if (NOT VLLM_TARGET_DEVICE STREQUAL "cuda" AND
NOT VLLM_TARGET_DEVICE STREQUAL "rocm")
if (VLLM_TARGET_DEVICE STREQUAL "cpu")
include(${CMAKE_CURRENT_LIST_DIR}/cmake/cpu_extension.cmake)
else()
message(FATAL_ERROR "Unsupported vLLM target device: ${VLLM_TARGET_DEVICE}")
endif()
return()
endif()
#
# Set up GPU language and check the torch version and warn if it isn't
# what is expected.
#
if (NOT HIP_FOUND AND CUDA_FOUND)
set(VLLM_GPU_LANG "CUDA")
if (NOT Torch_VERSION VERSION_EQUAL ${TORCH_SUPPORTED_VERSION_CUDA})
message(WARNING "Pytorch version ${TORCH_SUPPORTED_VERSION_CUDA} "
"expected for CUDA build, saw ${Torch_VERSION} instead.")
endif()
elseif(HIP_FOUND)
set(VLLM_GPU_LANG "HIP")
# Importing torch recognizes and sets up some HIP/ROCm configuration but does
# not let cmake recognize .hip files. In order to get cmake to understand the
# .hip extension automatically, HIP must be enabled explicitly.
enable_language(HIP)
# ROCm 5.X and 6.X
if (ROCM_VERSION_DEV_MAJOR GREATER_EQUAL 5 AND
NOT Torch_VERSION VERSION_EQUAL ${TORCH_SUPPORTED_VERSION_ROCM})
message(WARNING "Pytorch version ${TORCH_SUPPORTED_VERSION_ROCM} "
"expected for ROCm build, saw ${Torch_VERSION} instead.")
endif()
else()
message(FATAL_ERROR "Can't find CUDA or HIP installation.")
endif()
#
# Override the GPU architectures detected by cmake/torch and filter them by
# the supported versions for the current language.
# The final set of arches is stored in `VLLM_GPU_ARCHES`.
#
override_gpu_arches(VLLM_GPU_ARCHES
${VLLM_GPU_LANG}
"${${VLLM_GPU_LANG}_SUPPORTED_ARCHS}")
#
# Query torch for additional GPU compilation flags for the given
# `VLLM_GPU_LANG`.
# The final set of arches is stored in `VLLM_GPU_FLAGS`.
#
get_torch_gpu_compiler_flags(VLLM_GPU_FLAGS ${VLLM_GPU_LANG})
#
# Set nvcc parallelism.
#
if(NVCC_THREADS AND VLLM_GPU_LANG STREQUAL "CUDA")
list(APPEND VLLM_GPU_FLAGS "--threads=${NVCC_THREADS}")
endif()
#
# Define extension targets
#
#
# _C extension
#
set(VLLM_EXT_SRC
"csrc/cache_kernels.cu"
"csrc/attention/attention_kernels.cu"
"csrc/pos_encoding_kernels.cu"
"csrc/activation_kernels.cu"
"csrc/layernorm_kernels.cu"
"csrc/quantization/squeezellm/quant_cuda_kernel.cu"
"csrc/quantization/gptq/q_gemm.cu"
"csrc/quantization/compressed_tensors/int8_quant_kernels.cu"
"csrc/quantization/fp8/common.cu"
"csrc/cuda_utils_kernels.cu"
"csrc/moe_align_block_size_kernels.cu"
"csrc/torch_bindings.cpp")
if(VLLM_GPU_LANG STREQUAL "CUDA")
include(FetchContent)
SET(CUTLASS_ENABLE_HEADERS_ONLY=ON)
FetchContent_Declare(
cutlass
GIT_REPOSITORY https://github.com/nvidia/cutlass.git
# CUTLASS 3.5.0
GIT_TAG 7d49e6c7e2f8896c47f586706e67e1fb215529dc
)
FetchContent_MakeAvailable(cutlass)
list(APPEND VLLM_EXT_SRC
"csrc/quantization/aqlm/gemm_kernels.cu"
"csrc/quantization/awq/gemm_kernels.cu"
"csrc/quantization/marlin/dense/marlin_cuda_kernel.cu"
"csrc/quantization/marlin/sparse/marlin_24_cuda_kernel.cu"
"csrc/quantization/gptq_marlin/gptq_marlin.cu"
"csrc/quantization/gptq_marlin/gptq_marlin_repack.cu"
"csrc/quantization/fp8/fp8_marlin.cu"
"csrc/custom_all_reduce.cu"
"csrc/quantization/cutlass_w8a8/scaled_mm_entry.cu"
"csrc/quantization/cutlass_w8a8/scaled_mm_c2x.cu"
"csrc/quantization/cutlass_w8a8/scaled_mm_c3x.cu")
#
# The CUTLASS kernels for Hopper require sm90a to be enabled.
# This is done via the below gencode option, BUT that creates kernels for both sm90 and sm90a.
# That adds an extra 17MB to compiled binary, so instead we selectively enable it.
if(${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER 12.0)
set_source_files_properties(
"csrc/quantization/cutlass_w8a8/scaled_mm_c3x.cu"
PROPERTIES
COMPILE_FLAGS
"-gencode arch=compute_90a,code=sm_90a")
endif()
endif()
define_gpu_extension_target(
_C
DESTINATION vllm
LANGUAGE ${VLLM_GPU_LANG}
SOURCES ${VLLM_EXT_SRC}
COMPILE_FLAGS ${VLLM_GPU_FLAGS}
ARCHITECTURES ${VLLM_GPU_ARCHES}
INCLUDE_DIRECTORIES ${CUTLASS_INCLUDE_DIR};${CUTLASS_TOOLS_UTIL_INCLUDE_DIR}
USE_SABI 3
WITH_SOABI)
#
# _moe_C extension
#
set(VLLM_MOE_EXT_SRC
"csrc/moe/torch_bindings.cpp"
"csrc/moe/topk_softmax_kernels.cu")
define_gpu_extension_target(
_moe_C
DESTINATION vllm
LANGUAGE ${VLLM_GPU_LANG}
SOURCES ${VLLM_MOE_EXT_SRC}
COMPILE_FLAGS ${VLLM_GPU_FLAGS}
ARCHITECTURES ${VLLM_GPU_ARCHES}
USE_SABI 3
WITH_SOABI)
#
# _punica_C extension
#
set(VLLM_PUNICA_EXT_SRC
"csrc/punica/bgmv/bgmv_bf16_bf16_bf16.cu"
"csrc/punica/bgmv/bgmv_bf16_fp32_bf16.cu"
"csrc/punica/bgmv/bgmv_fp16_fp16_fp16.cu"
"csrc/punica/bgmv/bgmv_fp16_fp32_fp16.cu"
"csrc/punica/bgmv/bgmv_fp32_bf16_bf16.cu"
"csrc/punica/bgmv/bgmv_fp32_fp16_fp16.cu"
"csrc/punica/punica_ops.cu"
"csrc/punica/torch_bindings.cpp")
#
# Copy GPU compilation flags+update for punica
#
set(VLLM_PUNICA_GPU_FLAGS ${VLLM_GPU_FLAGS})
list(REMOVE_ITEM VLLM_PUNICA_GPU_FLAGS
"-D__CUDA_NO_HALF_OPERATORS__"
"-D__CUDA_NO_HALF_CONVERSIONS__"
"-D__CUDA_NO_BFLOAT16_CONVERSIONS__"
"-D__CUDA_NO_HALF2_OPERATORS__")
#
# Filter out CUDA architectures < 8.0 for punica.
#
if (${VLLM_GPU_LANG} STREQUAL "CUDA")
set(VLLM_PUNICA_GPU_ARCHES)
foreach(ARCH ${VLLM_GPU_ARCHES})
string_to_ver(CODE_VER ${ARCH})
if (CODE_VER GREATER_EQUAL 8.0)
list(APPEND VLLM_PUNICA_GPU_ARCHES ${ARCH})
endif()
endforeach()
message(STATUS "Punica target arches: ${VLLM_PUNICA_GPU_ARCHES}")
elseif(${VLLM_GPU_LANG} STREQUAL "HIP")
set(VLLM_PUNICA_GPU_ARCHES ${VLLM_GPU_ARCHES})
message(STATUS "Punica target arches: ${VLLM_PUNICA_GPU_ARCHES}")
endif()
if (VLLM_PUNICA_GPU_ARCHES)
define_gpu_extension_target(
_punica_C
DESTINATION vllm
LANGUAGE ${VLLM_GPU_LANG}
SOURCES ${VLLM_PUNICA_EXT_SRC}
COMPILE_FLAGS ${VLLM_PUNICA_GPU_FLAGS}
ARCHITECTURES ${VLLM_PUNICA_GPU_ARCHES}
USE_SABI 3
WITH_SOABI)
else()
message(WARNING "Unable to create _punica_C target because none of the "
"requested architectures (${VLLM_GPU_ARCHES}) are supported, i.e. >= 8.0")
endif()
#
# Add the `default` target which detects which extensions should be
# built based on platform/architecture. This is the same logic that
# setup.py uses to select which extensions should be built and should
# be kept in sync.
#
# The `default` target makes direct use of cmake easier since knowledge
# of which extensions are supported has been factored in, e.g.
#
# mkdir build && cd build
# cmake -G Ninja -DVLLM_PYTHON_EXECUTABLE=`which python3` -DCMAKE_LIBRARY_OUTPUT_DIRECTORY=../vllm ..
# cmake --build . --target default
#
add_custom_target(default)
if(VLLM_GPU_LANG STREQUAL "CUDA" OR VLLM_GPU_LANG STREQUAL "HIP")
message(STATUS "Enabling C extension.")
add_dependencies(default _C)
message(STATUS "Enabling moe extension.")
add_dependencies(default _moe_C)
# Enable punica if -DVLLM_INSTALL_PUNICA_KERNELS=ON or
# VLLM_INSTALL_PUNICA_KERNELS is set in the environment and
# there are supported target arches.
if (VLLM_PUNICA_GPU_ARCHES AND
(ENV{VLLM_INSTALL_PUNICA_KERNELS} OR VLLM_INSTALL_PUNICA_KERNELS))
message(STATUS "Enabling punica extension.")
add_dependencies(default _punica_C)
endif()
endif()

View File

@@ -21,7 +21,6 @@ Express your support on Twitter if vLLM aids you, or simply offer your appreciat
### Build from source
```bash
pip install -r requirements.txt
pip install -e . # This may take several minutes.
```
@@ -30,6 +29,8 @@ pip install -e . # This may take several minutes.
```bash
pip install -r requirements-dev.txt
# linting and formatting
bash format.sh
# Static type checking
mypy
# Unit tests
@@ -45,31 +46,9 @@ pytest tests/
If you encounter a bug or have a feature request, please check our issues page first to see if someone else has already reported it.
If not, please file a new issue, providing as much relevant information as possible.
### Coding Style Guide
### Pull Requests & Code Reviews
In general, we adhere to [Google Python style guide](https://google.github.io/styleguide/pyguide.html) and [Google C++ style guide](https://google.github.io/styleguide/cppguide.html).
We include a formatting script [`format.sh`](./format.sh) to format the code.
### Pull Requests
When submitting a pull request:
1. Make sure your code has been rebased on top of the latest commit on the main branch.
2. Ensure code is properly formatted by running [`format.sh`](./format.sh).
3. Include a detailed description of the changes in the pull request.
Explain why you made the changes you did.
If your pull request fixes an open issue, please include a reference to it in the description.
### Code Reviews
All submissions, including submissions by project members, require a code review.
To make the review process as smooth as possible, please:
1. Keep your changes as concise as possible.
If your pull request involves multiple unrelated changes, consider splitting it into separate pull requests.
2. Respond to all comments within a reasonable time frame.
If a comment isn't clear or you disagree with a suggestion, feel free to ask for clarification or discuss the suggestion.
Please check the PR checklist in the [PR template](.github/PULL_REQUEST_TEMPLATE.md) for detailed guide for contribution.
### Thank You

View File

@@ -1,84 +1,203 @@
FROM nvidia/cuda:12.1.0-devel-ubuntu22.04 AS dev
# The vLLM Dockerfile is used to construct vLLM image that can be directly used
# to run the OpenAI compatible server.
# Please update any changes made here to
# docs/source/dev/dockerfile/dockerfile.rst and
# docs/source/assets/dev/dockerfile-stages-dependency.png
ARG CUDA_VERSION=12.4.1
#################### BASE BUILD IMAGE ####################
# prepare basic build environment
FROM nvidia/cuda:${CUDA_VERSION}-devel-ubuntu22.04 AS base
ARG CUDA_VERSION=12.4.1
ARG PYTHON_VERSION=3
ENV DEBIAN_FRONTEND=noninteractive
RUN echo 'tzdata tzdata/Areas select America' | debconf-set-selections \
&& echo 'tzdata tzdata/Zones/America select Los_Angeles' | debconf-set-selections \
&& apt-get update -y \
&& apt-get install -y ccache software-properties-common \
&& add-apt-repository ppa:deadsnakes/ppa \
&& apt-get update -y \
&& apt-get install -y python${PYTHON_VERSION} python${PYTHON_VERSION}-dev python${PYTHON_VERSION}-venv python3-pip \
&& if [ "${PYTHON_VERSION}" != "3" ]; then update-alternatives --install /usr/bin/python3 python3 /usr/bin/python${PYTHON_VERSION} 1; fi \
&& python3 --version \
&& python3 -m pip --version
RUN apt-get update -y \
&& apt-get install -y python3-pip
&& apt-get install -y python3-pip git curl sudo
# Workaround for https://github.com/openai/triton/issues/2507 and
# https://github.com/pytorch/pytorch/issues/107960 -- hopefully
# this won't be needed for future versions of this docker image
# or future versions of triton.
RUN ldconfig /usr/local/cuda-$(echo $CUDA_VERSION | cut -d. -f1,2)/compat/
WORKDIR /workspace
# install build and runtime dependencies
COPY requirements.txt requirements.txt
COPY requirements-common.txt requirements-common.txt
COPY requirements-cuda.txt requirements-cuda.txt
RUN --mount=type=cache,target=/root/.cache/pip \
pip install -r requirements.txt
python3 -m pip install -r requirements-cuda.txt
# install development dependencies
COPY requirements-dev.txt requirements-dev.txt
RUN --mount=type=cache,target=/root/.cache/pip \
pip install -r requirements-dev.txt
COPY requirements-mamba.txt requirements-mamba.txt
RUN python3 -m pip install packaging
RUN python3 -m pip install -r requirements-mamba.txt
# image to build pytorch extensions
FROM dev AS build
# cuda arch list used by torch
# can be useful for both `dev` and `test`
# explicitly set the list to avoid issues with torch 2.2
# see https://github.com/pytorch/pytorch/pull/123243
ARG torch_cuda_arch_list='7.0 7.5 8.0 8.6 8.9 9.0+PTX'
ENV TORCH_CUDA_ARCH_LIST=${torch_cuda_arch_list}
#################### BASE BUILD IMAGE ####################
#################### WHEEL BUILD IMAGE ####################
FROM base AS build
ARG PYTHON_VERSION=3
# install build dependencies
COPY requirements-build.txt requirements-build.txt
RUN --mount=type=cache,target=/root/.cache/pip \
pip install -r requirements-build.txt
# copy input files
RUN --mount=type=cache,target=/root/.cache/pip \
python3 -m pip install -r requirements-build.txt
# install compiler cache to speed up compilation leveraging local or remote caching
RUN apt-get update -y && apt-get install -y ccache
# files and directories related to build wheels
COPY csrc csrc
COPY setup.py setup.py
COPY requirements.txt requirements.txt
COPY cmake cmake
COPY CMakeLists.txt CMakeLists.txt
COPY requirements-common.txt requirements-common.txt
COPY requirements-cuda.txt requirements-cuda.txt
COPY pyproject.toml pyproject.toml
COPY vllm/__init__.py vllm/__init__.py
COPY vllm vllm
ARG torch_cuda_arch_list='7.0 7.5 8.0 8.6 8.9 9.0+PTX'
ENV TORCH_CUDA_ARCH_LIST=${torch_cuda_arch_list}
# max jobs used by Ninja to build extensions
ARG max_jobs=2
ENV MAX_JOBS=${max_jobs}
# number of threads used by nvcc
ARG nvcc_threads=8
ENV NVCC_THREADS=$nvcc_threads
# make sure punica kernels are built (for LoRA)
ENV VLLM_INSTALL_PUNICA_KERNELS=1
RUN python3 setup.py build_ext --inplace
# image to run unit testing suite
FROM dev AS test
# copy pytorch extensions separately to avoid having to rebuild
# when python code changes
COPY --from=build /workspace/vllm/*.so /workspace/vllm/
COPY tests tests
COPY vllm vllm
ENTRYPOINT ["python3", "-m", "pytest", "tests"]
# use CUDA base as CUDA runtime dependencies are already installed via pip
FROM nvidia/cuda:12.1.0-base-ubuntu22.04 AS vllm-base
# libnccl required for ray
RUN apt-get update -y \
&& apt-get install -y python3-pip
WORKDIR /workspace
COPY requirements.txt requirements.txt
ARG USE_SCCACHE
# if USE_SCCACHE is set, use sccache to speed up compilation
RUN --mount=type=cache,target=/root/.cache/pip \
pip install -r requirements.txt
if [ "$USE_SCCACHE" = "1" ]; then \
echo "Installing sccache..." \
&& curl -L -o sccache.tar.gz https://github.com/mozilla/sccache/releases/download/v0.8.1/sccache-v0.8.1-x86_64-unknown-linux-musl.tar.gz \
&& tar -xzf sccache.tar.gz \
&& sudo mv sccache-v0.8.1-x86_64-unknown-linux-musl/sccache /usr/bin/sccache \
&& rm -rf sccache.tar.gz sccache-v0.8.1-x86_64-unknown-linux-musl \
&& export SCCACHE_BUCKET=vllm-build-sccache \
&& export SCCACHE_REGION=us-west-2 \
&& sccache --show-stats \
&& python3 setup.py bdist_wheel --dist-dir=dist \
&& sccache --show-stats; \
fi
FROM vllm-base AS vllm
COPY --from=build /workspace/vllm/*.so /workspace/vllm/
COPY vllm vllm
ENV CCACHE_DIR=/root/.cache/ccache
RUN --mount=type=cache,target=/root/.cache/ccache \
--mount=type=cache,target=/root/.cache/pip \
if [ "$USE_SCCACHE" != "1" ]; then \
python3 setup.py bdist_wheel --dist-dir=dist; \
fi
EXPOSE 8000
ENTRYPOINT ["python3", "-m", "vllm.entrypoints.api_server"]
# check the size of the wheel, we cannot upload wheels larger than 100MB
COPY .buildkite/check-wheel-size.py check-wheel-size.py
RUN python3 check-wheel-size.py dist
#################### EXTENSION Build IMAGE ####################
#################### DEV IMAGE ####################
FROM base as dev
COPY requirements-lint.txt requirements-lint.txt
COPY requirements-test.txt requirements-test.txt
COPY requirements-dev.txt requirements-dev.txt
RUN --mount=type=cache,target=/root/.cache/pip \
python3 -m pip install -r requirements-dev.txt
#################### DEV IMAGE ####################
#################### MAMBA Build IMAGE ####################
FROM dev as mamba-builder
# max jobs used for build
ARG max_jobs=2
ENV MAX_JOBS=${max_jobs}
WORKDIR /usr/src/mamba
COPY requirements-mamba.txt requirements-mamba.txt
# Download the wheel or build it if a pre-compiled release doesn't exist
RUN pip --verbose wheel -r requirements-mamba.txt \
--no-build-isolation --no-deps --no-cache-dir
#################### MAMBA Build IMAGE ####################
#################### vLLM installation IMAGE ####################
# image with vLLM installed
FROM nvidia/cuda:${CUDA_VERSION}-base-ubuntu22.04 AS vllm-base
ARG CUDA_VERSION=12.4.1
WORKDIR /vllm-workspace
RUN apt-get update -y \
&& apt-get install -y python3-pip git vim
# Workaround for https://github.com/openai/triton/issues/2507 and
# https://github.com/pytorch/pytorch/issues/107960 -- hopefully
# this won't be needed for future versions of this docker image
# or future versions of triton.
RUN ldconfig /usr/local/cuda-$(echo $CUDA_VERSION | cut -d. -f1,2)/compat/
# install vllm wheel first, so that torch etc will be installed
RUN --mount=type=bind,from=build,src=/workspace/dist,target=/vllm-workspace/dist \
--mount=type=cache,target=/root/.cache/pip \
python3 -m pip install dist/*.whl --verbose
RUN --mount=type=bind,from=mamba-builder,src=/usr/src/mamba,target=/usr/src/mamba \
--mount=type=cache,target=/root/.cache/pip \
python3 -m pip install /usr/src/mamba/*.whl --no-cache-dir
#################### vLLM installation IMAGE ####################
#################### TEST IMAGE ####################
# image to run unit testing suite
# note that this uses vllm installed by `pip`
FROM vllm-base AS test
ADD . /vllm-workspace/
# install development dependencies (for testing)
RUN --mount=type=cache,target=/root/.cache/pip \
python3 -m pip install -r requirements-dev.txt
# doc requires source code
# we hide them inside `test_docs/` , so that this source code
# will not be imported by other tests
RUN mkdir test_docs
RUN mv docs test_docs/
RUN mv vllm test_docs/
#################### TEST IMAGE ####################
#################### OPENAI API SERVER ####################
# openai api server alternative
FROM vllm-base AS vllm-openai
# install additional dependencies for openai api server
RUN --mount=type=cache,target=/root/.cache/pip \
pip install accelerate
pip install accelerate hf_transfer 'modelscope!=1.15.0'
COPY --from=build /workspace/vllm/*.so /workspace/vllm/
COPY vllm vllm
ENV VLLM_USAGE_SOURCE production-docker-image
ENTRYPOINT ["python3", "-m", "vllm.entrypoints.openai.api_server"]
#################### OPENAI API SERVER ####################

40
Dockerfile.cpu Normal file
View File

@@ -0,0 +1,40 @@
# This vLLM Dockerfile is used to construct image that can build and run vLLM on x86 CPU platform.
FROM ubuntu:22.04 AS cpu-test-1
RUN apt-get update -y \
&& apt-get install -y git wget vim numactl gcc-12 g++-12 python3 python3-pip libtcmalloc-minimal4 \
&& update-alternatives --install /usr/bin/gcc gcc /usr/bin/gcc-12 10 --slave /usr/bin/g++ g++ /usr/bin/g++-12
# https://intel.github.io/intel-extension-for-pytorch/cpu/latest/tutorials/performance_tuning/tuning_guide.html
# intel-openmp provides additional performance improvement vs. openmp
# tcmalloc provides better memory allocation efficiency, e.g, holding memory in caches to speed up access of commonly-used objects.
RUN pip install intel-openmp
ENV LD_PRELOAD="/usr/lib/x86_64-linux-gnu/libtcmalloc_minimal.so.4:/usr/local/lib/libiomp5.so:$LD_PRELOAD"
RUN pip install https://intel-extension-for-pytorch.s3.amazonaws.com/ipex_dev/cpu/intel_extension_for_pytorch-2.3.100%2Bgit0eb3473-cp310-cp310-linux_x86_64.whl
RUN pip install --upgrade pip \
&& pip install wheel packaging ninja "setuptools>=49.4.0" numpy
FROM cpu-test-1 AS build
COPY ./ /workspace/vllm
WORKDIR /workspace/vllm
RUN pip install -v -r requirements-cpu.txt --extra-index-url https://download.pytorch.org/whl/cpu
# Support for building with non-AVX512 vLLM: docker build --build-arg VLLM_CPU_DISABLE_AVX512="true" ...
ARG VLLM_CPU_DISABLE_AVX512
ENV VLLM_CPU_DISABLE_AVX512=${VLLM_CPU_DISABLE_AVX512}
RUN VLLM_TARGET_DEVICE=cpu python3 setup.py install
WORKDIR /workspace/
RUN ln -s /workspace/vllm/tests && ln -s /workspace/vllm/examples && ln -s /workspace/vllm/benchmarks
ENTRYPOINT ["python3", "-m", "vllm.entrypoints.openai.api_server"]

36
Dockerfile.neuron Normal file
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@@ -0,0 +1,36 @@
# default base image
ARG BASE_IMAGE="763104351884.dkr.ecr.us-west-2.amazonaws.com/pytorch-inference-neuronx:2.1.1-neuronx-py310-sdk2.17.0-ubuntu20.04"
FROM $BASE_IMAGE
RUN echo "Base image is $BASE_IMAGE"
# Install some basic utilities
RUN apt-get update && apt-get install python3 python3-pip -y
### Mount Point ###
# When launching the container, mount the code directory to /app
ARG APP_MOUNT=/app
VOLUME [ ${APP_MOUNT} ]
WORKDIR ${APP_MOUNT}
RUN python3 -m pip install --upgrade pip
RUN python3 -m pip install --no-cache-dir fastapi ninja tokenizers pandas
RUN python3 -m pip install sentencepiece transformers==4.36.2 -U
RUN python3 -m pip install transformers-neuronx --extra-index-url=https://pip.repos.neuron.amazonaws.com -U
RUN python3 -m pip install --pre neuronx-cc==2.12.* --extra-index-url=https://pip.repos.neuron.amazonaws.com -U
COPY ./vllm /app/vllm/vllm
COPY ./setup.py /app/vllm/setup.py
COPY ./requirements-common.txt /app/vllm/requirements-common.txt
COPY ./requirements-neuron.txt /app/vllm/requirements-neuron.txt
RUN cd /app/vllm \
&& python3 -m pip install -U -r requirements-neuron.txt
ENV VLLM_TARGET_DEVICE neuron
RUN cd /app/vllm \
&& pip install -e . \
&& cd ..
CMD ["/bin/bash"]

26
Dockerfile.openvino Normal file
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@@ -0,0 +1,26 @@
# The vLLM Dockerfile is used to construct vLLM image that can be directly used
# to run the OpenAI compatible server.
FROM ubuntu:22.04 AS dev
RUN apt-get update -y && \
apt-get install -y python3-pip git
WORKDIR /workspace
# copy requirements
COPY requirements-build.txt /workspace/vllm/
COPY requirements-common.txt /workspace/vllm/
COPY requirements-openvino.txt /workspace/vllm/
COPY vllm/ /workspace/vllm/vllm
COPY setup.py /workspace/vllm/
# install build requirements
RUN PIP_EXTRA_INDEX_URL="https://download.pytorch.org/whl/cpu" python3 -m pip install -r /workspace/vllm/requirements-build.txt
# build vLLM with OpenVINO backend
RUN PIP_PRE=1 PIP_EXTRA_INDEX_URL="https://download.pytorch.org/whl/cpu https://storage.openvinotoolkit.org/simple/wheels/nightly/" VLLM_TARGET_DEVICE="openvino" python3 -m pip install /workspace/vllm/
COPY examples/ /workspace/vllm/examples
COPY benchmarks/ /workspace/vllm/benchmarks
CMD ["/bin/bash"]

22
Dockerfile.ppc64le Normal file
View File

@@ -0,0 +1,22 @@
FROM mambaorg/micromamba
ARG MAMBA_DOCKERFILE_ACTIVATE=1
USER root
RUN apt-get update -y && apt-get install -y git wget vim numactl gcc-12 g++-12 protobuf-compiler libprotobuf-dev && update-alternatives --install /usr/bin/gcc gcc /usr/bin/gcc-12 10 --slave /usr/bin/g++ g++ /usr/bin/g++-12
# Some packages in requirements-cpu are installed here
# IBM provides optimized packages for ppc64le processors in the open-ce project for mamba
# Currently these may not be available for venv or pip directly
RUN micromamba install -y -n base -c https://ftp.osuosl.org/pub/open-ce/1.11.0-p10/ -c defaults python=3.10 pytorch-cpu=2.1.2 torchvision-cpu=0.16.2 && micromamba clean --all --yes
COPY ./ /workspace/vllm
WORKDIR /workspace/vllm
# These packages will be in rocketce eventually
RUN pip install -v -r requirements-cpu.txt --prefer-binary --extra-index-url https://repo.fury.io/mgiessing
RUN VLLM_TARGET_DEVICE=cpu python3 setup.py install
WORKDIR /vllm-workspace
ENTRYPOINT ["/opt/conda/bin/python3", "-m", "vllm.entrypoints.openai.api_server"]

View File

@@ -1,9 +1,35 @@
FROM rocm/pytorch:rocm5.7_ubuntu22.04_py3.10_pytorch_2.0.1
# Default ROCm 6.1 base image
ARG BASE_IMAGE="rocm/pytorch:rocm6.1.2_ubuntu20.04_py3.9_pytorch_staging"
# Tested and supported base rocm/pytorch images
ARG ROCm_5_7_BASE="rocm/pytorch:rocm5.7_ubuntu20.04_py3.9_pytorch_2.0.1" \
ROCm_6_0_BASE="rocm/pytorch:rocm6.0_ubuntu20.04_py3.9_pytorch_2.1.1" \
ROCM_6_1_BASE="rocm/pytorch:rocm6.1.2_ubuntu20.04_py3.9_pytorch_staging"
# Default ROCm ARCHes to build vLLM for.
ARG PYTORCH_ROCM_ARCH="gfx908;gfx90a;gfx942;gfx1100"
# Whether to build CK-based flash-attention
# If 0, will not build flash attention
# This is useful for gfx target where flash-attention is not supported
# (i.e. those that do not appear in `FA_GFX_ARCHS`)
# Triton FA is used by default on ROCm now so this is unnecessary.
ARG BUILD_FA="1"
ARG FA_GFX_ARCHS="gfx90a;gfx942"
ARG FA_BRANCH="ae7928c"
# Whether to build triton on rocm
ARG BUILD_TRITON="1"
ARG TRITON_BRANCH="0ef1848"
### Base image build stage
FROM $BASE_IMAGE AS base
# Import arg(s) defined before this build stage
ARG PYTORCH_ROCM_ARCH
# Install some basic utilities
RUN apt-get update && apt-get install python3 python3-pip -y
# Install some basic utilities
RUN apt-get update && apt-get install -y \
curl \
ca-certificates \
@@ -14,49 +40,165 @@ RUN apt-get update && apt-get install -y \
build-essential \
wget \
unzip \
nvidia-cuda-toolkit \
tmux \
ccache \
&& rm -rf /var/lib/apt/lists/*
### Mount Point ###
# When launching the container, mount the code directory to /app
ARG APP_MOUNT=/app
VOLUME [ ${APP_MOUNT} ]
# When launching the container, mount the code directory to /vllm-workspace
ARG APP_MOUNT=/vllm-workspace
WORKDIR ${APP_MOUNT}
RUN python3 -m pip install --upgrade pip
RUN python3 -m pip install --no-cache-dir fastapi ninja tokenizers pandas
RUN pip install --upgrade pip
# Remove sccache so it doesn't interfere with ccache
# TODO: implement sccache support across components
RUN apt-get purge -y sccache; pip uninstall -y sccache; rm -f "$(which sccache)"
# Install torch == 2.4.0 on ROCm
RUN case "$(ls /opt | grep -Po 'rocm-[0-9]\.[0-9]')" in \
*"rocm-5.7"*) \
pip uninstall -y torch torchaudio torchvision \
&& pip install --no-cache-dir --pre \
torch==2.4.0.dev20240612 torchaudio==2.4.0.dev20240612 \
torchvision==0.19.0.dev20240612 \
--index-url https://download.pytorch.org/whl/nightly/rocm5.7;; \
*"rocm-6.0"*) \
pip uninstall -y torch torchaudio torchvision \
&& pip install --no-cache-dir --pre \
torch==2.4.0.dev20240612 torchaudio==2.4.0.dev20240612 \
torchvision==0.19.0.dev20240612 \
--index-url https://download.pytorch.org/whl/nightly/rocm6.0;; \
*"rocm-6.1"*) \
pip uninstall -y torch torchaudio torchvision \
&& pip install --no-cache-dir --pre \
torch==2.4.0.dev20240612 torchaudio==2.4.0.dev20240612 \
torchvision==0.19.0.dev20240612 \
--index-url https://download.pytorch.org/whl/nightly/rocm6.1;; \
*) ;; esac
ENV LLVM_SYMBOLIZER_PATH=/opt/rocm/llvm/bin/llvm-symbolizer
ENV PATH=$PATH:/opt/rocm/bin:/libtorch/bin:
ENV LD_LIBRARY_PATH=$LD_LIBRARY_PATH:/opt/rocm/lib/:/libtorch/lib:
ENV CPLUS_INCLUDE_PATH=$CPLUS_INCLUDE_PATH:/libtorch/include:/libtorch/include/torch/csrc/api/include/:/opt/rocm/include/:
# Install ROCm flash-attention
RUN mkdir libs \
ENV PYTORCH_ROCM_ARCH=${PYTORCH_ROCM_ARCH}
ENV CCACHE_DIR=/root/.cache/ccache
### AMD-SMI build stage
FROM base AS build_amdsmi
# Build amdsmi wheel always
RUN cd /opt/rocm/share/amd_smi \
&& pip wheel . --wheel-dir=/install
### Flash-Attention wheel build stage
FROM base AS build_fa
ARG BUILD_FA
ARG FA_GFX_ARCHS
ARG FA_BRANCH
# Build ROCm flash-attention wheel if `BUILD_FA = 1`
RUN --mount=type=cache,target=${CCACHE_DIR} \
if [ "$BUILD_FA" = "1" ]; then \
mkdir -p libs \
&& cd libs \
&& git clone https://github.com/ROCmSoftwarePlatform/flash-attention.git \
&& git clone https://github.com/ROCm/flash-attention.git \
&& cd flash-attention \
&& git checkout 3d2b6f5 \
&& git checkout "${FA_BRANCH}" \
&& git submodule update --init \
&& export GPU_ARCHS=$(/opt/rocm/llvm/bin/amdgpu-offload-arch) \
&& patch /opt/conda/envs/py_3.10/lib/python3.10/site-packages/torch/utils/hipify/hipify_python.py hipify_patch.patch \
&& python3 setup.py install \
&& cd ..
&& case "$(ls /opt | grep -Po 'rocm-[0-9]\.[0-9]')" in \
*"rocm-5.7"*) \
export VLLM_TORCH_PATH="$(python3 -c 'import torch; print(torch.__path__[0])')" \
&& patch "${VLLM_TORCH_PATH}"/utils/hipify/hipify_python.py hipify_patch.patch;; \
*) ;; esac \
&& GPU_ARCHS="${FA_GFX_ARCHS}" python3 setup.py bdist_wheel --dist-dir=/install; \
# Create an empty directory otherwise as later build stages expect one
else mkdir -p /install; \
fi
COPY ./ /app/vllm
RUN python3 -m pip install --upgrade pip
RUN pip install xformers==0.0.23 --no-deps
### Triton wheel build stage
FROM base AS build_triton
ARG BUILD_TRITON
ARG TRITON_BRANCH
# Build triton wheel if `BUILD_TRITON = 1`
RUN --mount=type=cache,target=${CCACHE_DIR} \
if [ "$BUILD_TRITON" = "1" ]; then \
mkdir -p libs \
&& cd libs \
&& git clone https://github.com/OpenAI/triton.git \
&& cd triton \
&& git checkout "${TRITON_BRANCH}" \
&& cd python \
&& python3 setup.py bdist_wheel --dist-dir=/install; \
# Create an empty directory otherwise as later build stages expect one
else mkdir -p /install; \
fi
RUN cd /app \
&& cd vllm \
&& pip install -U -r requirements-rocm.txt \
&& bash patch_xformers-0.0.23.rocm.sh \
&& python3 setup.py install \
&& cd ..
RUN python3 -m pip install --upgrade pip
RUN python3 -m pip install --no-cache-dir ray[all]
### Final vLLM build stage
FROM base AS final
# Import the vLLM development directory from the build context
COPY . .
# Error related to odd state for numpy 1.20.3 where there is no METADATA etc, but an extra LICENSES_bundled.txt.
# Manually remove it so that later steps of numpy upgrade can continue
RUN case "$(which python3)" in \
*"/opt/conda/envs/py_3.9"*) \
rm -rf /opt/conda/envs/py_3.9/lib/python3.9/site-packages/numpy-1.20.3.dist-info/;; \
*) ;; esac
# Package upgrades for useful functionality or to avoid dependency issues
RUN --mount=type=cache,target=/root/.cache/pip \
pip install --upgrade numba scipy huggingface-hub[cli]
# Make sure punica kernels are built (for LoRA)
ENV VLLM_INSTALL_PUNICA_KERNELS=1
# Workaround for ray >= 2.10.0
ENV RAY_EXPERIMENTAL_NOSET_ROCR_VISIBLE_DEVICES=1
# Silences the HF Tokenizers warning
ENV TOKENIZERS_PARALLELISM=false
RUN --mount=type=cache,target=${CCACHE_DIR} \
--mount=type=cache,target=/root/.cache/pip \
pip install -U -r requirements-rocm.txt \
&& case "$(ls /opt | grep -Po 'rocm-[0-9]\.[0-9]')" in \
*"rocm-6.0"*) \
patch /opt/rocm/include/hip/amd_detail/amd_hip_bf16.h rocm_patch/rocm_bf16.patch;; \
*"rocm-6.1"*) \
# Bring in upgrades to HIP graph earlier than ROCm 6.2 for vLLM
wget -N https://github.com/ROCm/vllm/raw/fa78403/rocm_patch/libamdhip64.so.6 -P rocm_patch \
&& cp rocm_patch/libamdhip64.so.6 /opt/rocm/lib/libamdhip64.so.6 \
# Prevent interference if torch bundles its own HIP runtime
&& rm -f "$(python3 -c 'import torch; print(torch.__path__[0])')"/lib/libamdhip64.so* || true;; \
*) ;; esac \
&& python3 setup.py clean --all \
&& python3 setup.py develop
# Copy amdsmi wheel into final image
RUN --mount=type=bind,from=build_amdsmi,src=/install,target=/install \
mkdir -p libs \
&& cp /install/*.whl libs \
# Preemptively uninstall to avoid same-version no-installs
&& pip uninstall -y amdsmi;
# Copy triton wheel(s) into final image if they were built
RUN --mount=type=bind,from=build_triton,src=/install,target=/install \
mkdir -p libs \
&& if ls /install/*.whl; then \
cp /install/*.whl libs \
# Preemptively uninstall to avoid same-version no-installs
&& pip uninstall -y triton; fi
# Copy flash-attn wheel(s) into final image if they were built
RUN --mount=type=bind,from=build_fa,src=/install,target=/install \
mkdir -p libs \
&& if ls /install/*.whl; then \
cp /install/*.whl libs \
# Preemptively uninstall to avoid same-version no-installs
&& pip uninstall -y flash-attn; fi
# Install wheels that were built to the final image
RUN --mount=type=cache,target=/root/.cache/pip \
if ls libs/*.whl; then \
pip install libs/*.whl; fi
CMD ["/bin/bash"]

19
Dockerfile.tpu Normal file
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@@ -0,0 +1,19 @@
ARG NIGHTLY_DATE="20240601"
ARG BASE_IMAGE="us-central1-docker.pkg.dev/tpu-pytorch-releases/docker/xla:nightly_3.10_tpuvm_$NIGHTLY_DATE"
FROM $BASE_IMAGE
WORKDIR /workspace
COPY . /workspace/vllm
ENV VLLM_TARGET_DEVICE="tpu"
# Install aiohttp separately to avoid build errors.
RUN pip install aiohttp
# Install the TPU and Pallas dependencies.
RUN pip install torch_xla[tpu] -f https://storage.googleapis.com/libtpu-releases/index.html
RUN pip install torch_xla[pallas] -f https://storage.googleapis.com/jax-releases/jax_nightly_releases.html -f https://storage.googleapis.com/jax-releases/jaxlib_nightly_releases.html
# Build vLLM.
RUN cd /workspace/vllm && python setup.py develop
CMD ["/bin/bash"]

22
Dockerfile.xpu Normal file
View File

@@ -0,0 +1,22 @@
FROM intel/oneapi-basekit:2024.1.0-devel-ubuntu22.04
RUN wget -O- https://apt.repos.intel.com/intel-gpg-keys/GPG-PUB-KEY-INTEL-SW-PRODUCTS.PUB | gpg --dearmor | tee /usr/share/keyrings/intel-oneapi-archive-keyring.gpg > /dev/null && \
echo "deb [signed-by=/usr/share/keyrings/intel-oneapi-archive-keyring.gpg] https://apt.repos.intel.com/oneapi all main " | tee /etc/apt/sources.list.d/oneAPI.list && \
chmod 644 /usr/share/keyrings/intel-oneapi-archive-keyring.gpg && \
rm /etc/apt/sources.list.d/intel-graphics.list && \
wget -O- https://repositories.intel.com/graphics/intel-graphics.key | gpg --dearmor | tee /usr/share/keyrings/intel-graphics.gpg > /dev/null && \
echo "deb [arch=amd64,i386 signed-by=/usr/share/keyrings/intel-graphics.gpg] https://repositories.intel.com/graphics/ubuntu jammy arc" | tee /etc/apt/sources.list.d/intel.gpu.jammy.list && \
chmod 644 /usr/share/keyrings/intel-graphics.gpg
RUN apt-get update -y \
&& apt-get install -y curl libicu70 lsb-release git wget vim numactl python3 python3-pip
COPY ./ /workspace/vllm
WORKDIR /workspace/vllm
RUN pip install -v -r requirements-xpu.txt
RUN VLLM_TARGET_DEVICE=xpu python3 setup.py install
CMD ["/bin/bash"]

View File

@@ -1,4 +1,10 @@
include LICENSE
include requirements.txt
include requirements-common.txt
include requirements-cuda.txt
include requirements-rocm.txt
include requirements-neuron.txt
include requirements-cpu.txt
include CMakeLists.txt
recursive-include cmake *
recursive-include csrc *

View File

@@ -16,8 +16,21 @@ Easy, fast, and cheap LLM serving for everyone
---
**Ray Summit CPF is Open (June 4th to June 20th)!**
There will be a track for vLLM at the Ray Summit (09/30-10/02, SF) this year!
If you have cool projects related to vLLM or LLM inference, we would love to see your proposals.
This will be a great chance for everyone in the community to get together and learn.
Please submit your proposal [here](https://raysummit.anyscale.com/flow/anyscale/raysummit2024/landing/page/eventsite)
---
*Latest News* 🔥
- [2023/12] Added ROCm support to vLLM.
- [2024/06] We hosted [the fourth vLLM meetup](https://lu.ma/agivllm) with Cloudflare and BentoML! Please find the meetup slides [here](https://docs.google.com/presentation/d/1iJ8o7V2bQEi0BFEljLTwc5G1S10_Rhv3beed5oB0NJ4/edit?usp=sharing).
- [2024/04] We hosted [the third vLLM meetup](https://robloxandvllmmeetup2024.splashthat.com/) with Roblox! Please find the meetup slides [here](https://docs.google.com/presentation/d/1A--47JAK4BJ39t954HyTkvtfwn0fkqtsL8NGFuslReM/edit?usp=sharing).
- [2024/01] We hosted [the second vLLM meetup](https://lu.ma/ygxbpzhl) in SF! Please find the meetup slides [here](https://docs.google.com/presentation/d/12mI2sKABnUw5RBWXDYY-HtHth4iMSNcEoQ10jDQbxgA/edit?usp=sharing).
- [2024/01] Added ROCm 6.0 support to vLLM.
- [2023/12] Added ROCm 5.7 support to vLLM.
- [2023/10] We hosted [the first vLLM meetup](https://lu.ma/first-vllm-meetup) in SF! Please find the meetup slides [here](https://docs.google.com/presentation/d/1QL-XPFXiFpDBh86DbEegFXBXFXjix4v032GhShbKf3s/edit?usp=sharing).
- [2023/09] We created our [Discord server](https://discord.gg/jz7wjKhh6g)! Join us to discuss vLLM and LLM serving! We will also post the latest announcements and updates there.
- [2023/09] We released our [PagedAttention paper](https://arxiv.org/abs/2309.06180) on arXiv!
@@ -27,7 +40,7 @@ Easy, fast, and cheap LLM serving for everyone
- [2023/06] We officially released vLLM! FastChat-vLLM integration has powered [LMSYS Vicuna and Chatbot Arena](https://chat.lmsys.org) since mid-April. Check out our [blog post](https://vllm.ai).
---
## About
vLLM is a fast and easy-to-use library for LLM inference and serving.
vLLM is fast with:
@@ -35,6 +48,8 @@ vLLM is fast with:
- State-of-the-art serving throughput
- Efficient management of attention key and value memory with **PagedAttention**
- Continuous batching of incoming requests
- Fast model execution with CUDA/HIP graph
- Quantization: [GPTQ](https://arxiv.org/abs/2210.17323), [AWQ](https://arxiv.org/abs/2306.00978), [SqueezeLLM](https://arxiv.org/abs/2306.07629), FP8 KV Cache
- Optimized CUDA kernels
vLLM is flexible and easy to use with:
@@ -44,28 +59,18 @@ vLLM is flexible and easy to use with:
- Tensor parallelism support for distributed inference
- Streaming outputs
- OpenAI-compatible API server
- Support NVIDIA CUDA and AMD ROCm.
- Support NVIDIA GPUs, AMD GPUs, Intel CPUs and GPUs
- (Experimental) Prefix caching support
- (Experimental) Multi-lora support
vLLM seamlessly supports many Hugging Face models, including the following architectures:
vLLM seamlessly supports most popular open-source models on HuggingFace, including:
- Transformer-like LLMs (e.g., Llama)
- Mixture-of-Expert LLMs (e.g., Mixtral)
- Multi-modal LLMs (e.g., LLaVA)
- Aquila & Aquila2 (`BAAI/AquilaChat2-7B`, `BAAI/AquilaChat2-34B`, `BAAI/Aquila-7B`, `BAAI/AquilaChat-7B`, etc.)
- Baichuan & Baichuan2 (`baichuan-inc/Baichuan2-13B-Chat`, `baichuan-inc/Baichuan-7B`, etc.)
- BLOOM (`bigscience/bloom`, `bigscience/bloomz`, etc.)
- ChatGLM (`THUDM/chatglm2-6b`, `THUDM/chatglm3-6b`, etc.)
- Falcon (`tiiuae/falcon-7b`, `tiiuae/falcon-40b`, `tiiuae/falcon-rw-7b`, etc.)
- GPT-2 (`gpt2`, `gpt2-xl`, etc.)
- GPT BigCode (`bigcode/starcoder`, `bigcode/gpt_bigcode-santacoder`, etc.)
- GPT-J (`EleutherAI/gpt-j-6b`, `nomic-ai/gpt4all-j`, etc.)
- GPT-NeoX (`EleutherAI/gpt-neox-20b`, `databricks/dolly-v2-12b`, `stabilityai/stablelm-tuned-alpha-7b`, etc.)
- InternLM (`internlm/internlm-7b`, `internlm/internlm-chat-7b`, etc.)
- LLaMA & LLaMA-2 (`meta-llama/Llama-2-70b-hf`, `lmsys/vicuna-13b-v1.3`, `young-geng/koala`, `openlm-research/open_llama_13b`, etc.)
- Mistral (`mistralai/Mistral-7B-v0.1`, `mistralai/Mistral-7B-Instruct-v0.1`, etc.)
- Mixtral (`mistralai/Mixtral-8x7B-v0.1`, `mistralai/Mixtral-8x7B-Instruct-v0.1`, etc.)
- MPT (`mosaicml/mpt-7b`, `mosaicml/mpt-30b`, etc.)
- OPT (`facebook/opt-66b`, `facebook/opt-iml-max-30b`, etc.)
- Phi-1.5 (`microsoft/phi-1_5`, etc.)
- Qwen (`Qwen/Qwen-7B`, `Qwen/Qwen-7B-Chat`, etc.)
- Yi (`01-ai/Yi-6B`, `01-ai/Yi-34B`, etc.)
Find the full list of supported models [here](https://docs.vllm.ai/en/latest/models/supported_models.html).
## Getting Started
Install vLLM with pip or [from source](https://vllm.readthedocs.io/en/latest/getting_started/installation.html#build-from-source):
@@ -73,9 +78,7 @@ Install vLLM with pip or [from source](https://vllm.readthedocs.io/en/latest/get
pip install vllm
```
## Getting Started
Visit our [documentation](https://vllm.readthedocs.io/en/latest/) to get started.
Visit our [documentation](https://vllm.readthedocs.io/en/latest/) to learn more.
- [Installation](https://vllm.readthedocs.io/en/latest/getting_started/installation.html)
- [Quickstart](https://vllm.readthedocs.io/en/latest/getting_started/quickstart.html)
- [Supported Models](https://vllm.readthedocs.io/en/latest/models/supported_models.html)
@@ -85,6 +88,34 @@ Visit our [documentation](https://vllm.readthedocs.io/en/latest/) to get started
We welcome and value any contributions and collaborations.
Please check out [CONTRIBUTING.md](./CONTRIBUTING.md) for how to get involved.
## Sponsors
vLLM is a community project. Our compute resources for development and testing are supported by the following organizations. Thank you for your support!
<!-- Note: Please sort them in alphabetical order. -->
<!-- Note: Please keep these consistent with docs/source/community/sponsors.md -->
- a16z
- AMD
- Anyscale
- AWS
- Crusoe Cloud
- Databricks
- DeepInfra
- Dropbox
- Lambda Lab
- NVIDIA
- Replicate
- Roblox
- RunPod
- Sequoia Capital
- Trainy
- UC Berkeley
- UC San Diego
- ZhenFund
We also have an official fundraising venue through [OpenCollective](https://opencollective.com/vllm). We plan to use the fund to support the development, maintenance, and adoption of vLLM.
## Citation
If you use vLLM for your research, please cite our [paper](https://arxiv.org/abs/2309.06180):

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@@ -0,0 +1,426 @@
import json
import os
import sys
import time
import traceback
from dataclasses import dataclass, field
from typing import List, Optional, Union
import aiohttp
import huggingface_hub.constants
from tqdm.asyncio import tqdm
from transformers import (AutoTokenizer, PreTrainedTokenizer,
PreTrainedTokenizerFast)
AIOHTTP_TIMEOUT = aiohttp.ClientTimeout(total=6 * 60 * 60)
@dataclass
class RequestFuncInput:
prompt: str
api_url: str
prompt_len: int
output_len: int
model: str
best_of: int = 1
use_beam_search: bool = False
@dataclass
class RequestFuncOutput:
generated_text: str = ""
success: bool = False
latency: float = 0.0
ttft: float = 0.0 # Time to first token
itl: List[float] = field(
default_factory=list) # List of inter-token latencies
prompt_len: int = 0
error: str = ""
async def async_request_tgi(
request_func_input: RequestFuncInput,
pbar: Optional[tqdm] = None,
) -> RequestFuncOutput:
api_url = request_func_input.api_url
assert api_url.endswith("generate_stream")
async with aiohttp.ClientSession(timeout=AIOHTTP_TIMEOUT) as session:
assert not request_func_input.use_beam_search
params = {
"best_of": request_func_input.best_of,
"max_new_tokens": request_func_input.output_len,
"do_sample": True,
"temperature": 0.01, # TGI does not accept 0.0 temperature.
"top_p": 0.99, # TGI does not accept 1.0 top_p.
}
payload = {
"inputs": request_func_input.prompt,
"parameters": params,
}
output = RequestFuncOutput()
output.prompt_len = request_func_input.prompt_len
ttft = 0.0
st = time.perf_counter()
most_recent_timestamp = st
try:
async with session.post(url=api_url, json=payload) as response:
if response.status == 200:
async for chunk_bytes in response.content:
chunk_bytes = chunk_bytes.strip()
if not chunk_bytes:
continue
chunk_bytes = chunk_bytes.decode("utf-8")
#NOTE: Sometimes TGI returns a ping response without
# any data, we should skip it.
if chunk_bytes.startswith(":"):
continue
chunk = remove_prefix(chunk_bytes, "data:")
data = json.loads(chunk)
timestamp = time.perf_counter()
# First token
if ttft == 0.0:
ttft = time.perf_counter() - st
output.ttft = ttft
# Decoding phase
else:
output.itl.append(timestamp -
most_recent_timestamp)
most_recent_timestamp = timestamp
output.latency = most_recent_timestamp - st
output.success = True
output.generated_text = data["generated_text"]
else:
output.error = response.reason or ""
output.success = False
except Exception:
output.success = False
exc_info = sys.exc_info()
output.error = "".join(traceback.format_exception(*exc_info))
if pbar:
pbar.update(1)
return output
async def async_request_trt_llm(
request_func_input: RequestFuncInput,
pbar: Optional[tqdm] = None,
) -> RequestFuncOutput:
api_url = request_func_input.api_url
assert api_url.endswith("generate_stream")
async with aiohttp.ClientSession(timeout=AIOHTTP_TIMEOUT) as session:
assert not request_func_input.use_beam_search
assert request_func_input.best_of == 1
payload = {
"accumulate_tokens": True,
"text_input": request_func_input.prompt,
"temperature": 0.0,
"top_p": 1.0,
"max_tokens": request_func_input.output_len,
"stream": True,
}
output = RequestFuncOutput()
output.prompt_len = request_func_input.prompt_len
ttft = 0.0
st = time.perf_counter()
most_recent_timestamp = st
try:
async with session.post(url=api_url, json=payload) as response:
if response.status == 200:
async for chunk_bytes in response.content:
chunk_bytes = chunk_bytes.strip()
if not chunk_bytes:
continue
chunk = remove_prefix(chunk_bytes.decode("utf-8"),
"data:")
data = json.loads(chunk)
output.generated_text += data["text_output"]
timestamp = time.perf_counter()
# First token
if ttft == 0.0:
ttft = time.perf_counter() - st
output.ttft = ttft
# Decoding phase
else:
output.itl.append(timestamp -
most_recent_timestamp)
most_recent_timestamp = timestamp
output.latency = most_recent_timestamp - st
output.success = True
else:
output.error = response.reason or ""
output.success = False
except Exception:
output.success = False
exc_info = sys.exc_info()
output.error = "".join(traceback.format_exception(*exc_info))
if pbar:
pbar.update(1)
return output
async def async_request_deepspeed_mii(
request_func_input: RequestFuncInput,
pbar: Optional[tqdm] = None,
) -> RequestFuncOutput:
async with aiohttp.ClientSession(timeout=AIOHTTP_TIMEOUT) as session:
assert request_func_input.best_of == 1
assert not request_func_input.use_beam_search
payload = {
"prompt": request_func_input.prompt,
"max_tokens": request_func_input.output_len,
"temperature": 0.01, # deepspeed-mii does not accept 0.0 temp.
"top_p": 1.0,
}
output = RequestFuncOutput()
output.prompt_len = request_func_input.prompt_len
# NOTE: DeepSpeed-MII doesn't support streaming as of Jan 28 2024,
# will use 0 as placeholder.
# See https://github.com/microsoft/DeepSpeed-MII/pull/311
output.ttft = 0
st = time.perf_counter()
try:
async with session.post(url=request_func_input.api_url,
json=payload) as response:
if response.status == 200:
parsed_resp = await response.json()
output.latency = time.perf_counter() - st
output.generated_text = parsed_resp["text"][0]
output.success = True
else:
output.error = response.reason or ""
output.success = False
except Exception:
output.success = False
exc_info = sys.exc_info()
output.error = "".join(traceback.format_exception(*exc_info))
if pbar:
pbar.update(1)
return output
async def async_request_openai_completions(
request_func_input: RequestFuncInput,
pbar: Optional[tqdm] = None,
) -> RequestFuncOutput:
api_url = request_func_input.api_url
assert api_url.endswith(
"completions"
), "OpenAI Completions API URL must end with 'completions'."
async with aiohttp.ClientSession(timeout=AIOHTTP_TIMEOUT) as session:
assert not request_func_input.use_beam_search
payload = {
"model": request_func_input.model,
"prompt": request_func_input.prompt,
"temperature": 0.0,
"best_of": request_func_input.best_of,
"max_tokens": request_func_input.output_len,
"stream": True,
}
headers = {
"Authorization": f"Bearer {os.environ.get('OPENAI_API_KEY')}"
}
output = RequestFuncOutput()
output.prompt_len = request_func_input.prompt_len
generated_text = ""
ttft = 0.0
st = time.perf_counter()
most_recent_timestamp = st
try:
async with session.post(url=api_url, json=payload,
headers=headers) as response:
if response.status == 200:
async for chunk_bytes in response.content:
chunk_bytes = chunk_bytes.strip()
if not chunk_bytes:
continue
chunk = remove_prefix(chunk_bytes.decode("utf-8"),
"data: ")
if chunk == "[DONE]":
latency = time.perf_counter() - st
else:
data = json.loads(chunk)
# NOTE: Some completion API might have a last
# usage summary response without a token so we
# want to check a token was generated
if data["choices"][0]["text"]:
timestamp = time.perf_counter()
# First token
if ttft == 0.0:
ttft = time.perf_counter() - st
output.ttft = ttft
# Decoding phase
output.itl.append(timestamp -
most_recent_timestamp)
most_recent_timestamp = timestamp
generated_text += data["choices"][0]["text"]
output.generated_text = generated_text
output.success = True
output.latency = latency
else:
output.error = response.reason or ""
output.success = False
except Exception:
output.success = False
exc_info = sys.exc_info()
output.error = "".join(traceback.format_exception(*exc_info))
if pbar:
pbar.update(1)
return output
async def async_request_openai_chat_completions(
request_func_input: RequestFuncInput,
pbar: Optional[tqdm] = None,
) -> RequestFuncOutput:
api_url = request_func_input.api_url
assert api_url.endswith(
"chat/completions"
), "OpenAI Chat Completions API URL must end with 'chat/completions'."
async with aiohttp.ClientSession(timeout=AIOHTTP_TIMEOUT) as session:
assert not request_func_input.use_beam_search
payload = {
"model": request_func_input.model,
"messages": [
{
"role": "user",
"content": request_func_input.prompt,
},
],
"temperature": 0.0,
"max_tokens": request_func_input.output_len,
"stream": True,
}
headers = {
"Content-Type": "application/json",
"Authorization": f"Bearer {os.environ.get('OPENAI_API_KEY')}",
}
output = RequestFuncOutput()
output.prompt_len = request_func_input.prompt_len
generated_text = ""
ttft = 0.0
st = time.perf_counter()
most_recent_timestamp = st
try:
async with session.post(url=api_url, json=payload,
headers=headers) as response:
if response.status == 200:
async for chunk_bytes in response.content:
chunk_bytes = chunk_bytes.strip()
if not chunk_bytes:
continue
chunk = remove_prefix(chunk_bytes.decode("utf-8"),
"data: ")
if chunk == "[DONE]":
latency = time.perf_counter() - st
else:
timestamp = time.perf_counter()
data = json.loads(chunk)
delta = data["choices"][0]["delta"]
if delta.get("content", None):
# First token
if ttft == 0.0:
ttft = time.perf_counter() - st
output.ttft = ttft
# Decoding phase
else:
output.itl.append(timestamp -
most_recent_timestamp)
generated_text += delta["content"]
most_recent_timestamp = timestamp
output.generated_text = generated_text
output.success = True
output.latency = latency
else:
output.error = response.reason or ""
output.success = False
except Exception:
output.success = False
exc_info = sys.exc_info()
output.error = "".join(traceback.format_exception(*exc_info))
if pbar:
pbar.update(1)
return output
# Since vllm must support Python 3.8, we can't use str.removeprefix(prefix)
# introduced in Python 3.9
def remove_prefix(text: str, prefix: str) -> str:
if text.startswith(prefix):
return text[len(prefix):]
return text
def get_model(pretrained_model_name_or_path: str):
if os.getenv('VLLM_USE_MODELSCOPE', 'False').lower() == 'true':
from modelscope import snapshot_download
else:
from huggingface_hub import snapshot_download
model_path = snapshot_download(
model_id=pretrained_model_name_or_path,
local_files_only=huggingface_hub.constants.HF_HUB_OFFLINE,
ignore_file_pattern=[".*.pt", ".*.safetensors", ".*.bin"])
return model_path
def get_tokenizer(
pretrained_model_name_or_path: str, trust_remote_code: bool
) -> Union[PreTrainedTokenizer, PreTrainedTokenizerFast]:
if pretrained_model_name_or_path is not None and not os.path.exists(
pretrained_model_name_or_path):
pretrained_model_name_or_path = get_model(
pretrained_model_name_or_path)
return AutoTokenizer.from_pretrained(pretrained_model_name_or_path,
trust_remote_code=trust_remote_code)
ASYNC_REQUEST_FUNCS = {
"tgi": async_request_tgi,
"vllm": async_request_openai_completions,
"lmdeploy": async_request_openai_completions,
"deepspeed-mii": async_request_deepspeed_mii,
"openai": async_request_openai_completions,
"openai-chat": async_request_openai_chat_completions,
"tensorrt-llm": async_request_trt_llm,
"scalellm": async_request_openai_completions,
}

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@@ -1,14 +1,19 @@
"""Benchmark the latency of processing a single batch of requests."""
import argparse
import json
import time
from pathlib import Path
from typing import Optional
from typing import List, Optional
import numpy as np
import torch
from tqdm import tqdm
from vllm import LLM, SamplingParams
from vllm.engine.arg_utils import EngineArgs
from vllm.inputs import PromptStrictInputs
from vllm.model_executor.layers.quantization import QUANTIZATION_METHODS
from vllm.utils import FlexibleArgumentParser
def main(args: argparse.Namespace):
@@ -18,11 +23,30 @@ def main(args: argparse.Namespace):
# the engine will automatically process the request in multiple batches.
llm = LLM(
model=args.model,
speculative_model=args.speculative_model,
num_speculative_tokens=args.num_speculative_tokens,
speculative_draft_tensor_parallel_size=\
args.speculative_draft_tensor_parallel_size,
tokenizer=args.tokenizer,
quantization=args.quantization,
tensor_parallel_size=args.tensor_parallel_size,
trust_remote_code=args.trust_remote_code,
dtype=args.dtype,
max_model_len=args.max_model_len,
enforce_eager=args.enforce_eager,
kv_cache_dtype=args.kv_cache_dtype,
quantization_param_path=args.quantization_param_path,
device=args.device,
ray_workers_use_nsight=args.ray_workers_use_nsight,
use_v2_block_manager=args.use_v2_block_manager,
enable_chunked_prefill=args.enable_chunked_prefill,
download_dir=args.download_dir,
block_size=args.block_size,
gpu_memory_utilization=args.gpu_memory_utilization,
load_format=args.load_format,
distributed_executor_backend=args.distributed_executor_backend,
otlp_traces_endpoint=args.otlp_traces_endpoint,
enable_prefix_caching=args.enable_prefix_caching,
)
sampling_params = SamplingParams(
@@ -34,7 +58,12 @@ def main(args: argparse.Namespace):
max_tokens=args.output_len,
)
print(sampling_params)
dummy_prompt_token_ids = [[0] * args.input_len] * args.batch_size
dummy_prompt_token_ids = np.random.randint(10000,
size=(args.batch_size,
args.input_len))
dummy_inputs: List[PromptStrictInputs] = [{
"prompt_token_ids": batch
} for batch in dummy_prompt_token_ids.tolist()]
def run_to_completion(profile_dir: Optional[str] = None):
if profile_dir:
@@ -45,13 +74,13 @@ def main(args: argparse.Namespace):
],
on_trace_ready=torch.profiler.tensorboard_trace_handler(
str(profile_dir))) as p:
llm.generate(prompt_token_ids=dummy_prompt_token_ids,
llm.generate(dummy_inputs,
sampling_params=sampling_params,
use_tqdm=False)
print(p.key_averages())
else:
start_time = time.perf_counter()
llm.generate(prompt_token_ids=dummy_prompt_token_ids,
llm.generate(dummy_inputs,
sampling_params=sampling_params,
use_tqdm=False)
end_time = time.perf_counter()
@@ -59,32 +88,56 @@ def main(args: argparse.Namespace):
return latency
print("Warming up...")
run_to_completion(profile_dir=None)
for _ in tqdm(range(args.num_iters_warmup), desc="Warmup iterations"):
run_to_completion(profile_dir=None)
if args.profile:
profile_dir = args.profile_result_dir
if not profile_dir:
profile_dir = Path(".") / "vllm_benchmark_result" / f"latency_result_{time.time()}"
profile_dir = Path(
"."
) / "vllm_benchmark_result" / f"latency_result_{time.time()}"
print(f"Profiling (results will be saved to '{profile_dir}')...")
run_to_completion(profile_dir=args.profile_result_dir)
run_to_completion(profile_dir=profile_dir)
return
# Benchmark.
latencies = []
for _ in tqdm(range(args.num_iters), desc="Profiling iterations"):
latencies.append(run_to_completion(profile_dir=None))
latencies = np.array(latencies)
percentages = [10, 25, 50, 75, 90, 99]
percentiles = np.percentile(latencies, percentages)
print(f'Avg latency: {np.mean(latencies)} seconds')
for percentage, percentile in zip(percentages, percentiles):
print(f'{percentage}% percentile latency: {percentile} seconds')
# Output JSON results if specified
if args.output_json:
results = {
"avg_latency": np.mean(latencies),
"latencies": latencies.tolist(),
"percentiles": dict(zip(percentages, percentiles.tolist())),
}
with open(args.output_json, "w") as f:
json.dump(results, f, indent=4)
if __name__ == '__main__':
parser = argparse.ArgumentParser(
parser = FlexibleArgumentParser(
description='Benchmark the latency of processing a single batch of '
'requests till completion.')
parser.add_argument('--model', type=str, default='facebook/opt-125m')
parser.add_argument('--speculative-model', type=str, default=None)
parser.add_argument('--num-speculative-tokens', type=int, default=None)
parser.add_argument('--speculative-draft-tensor-parallel-size',
'-spec-draft-tp',
type=int,
default=None)
parser.add_argument('--tokenizer', type=str, default=None)
parser.add_argument('--quantization',
'-q',
choices=['awq', 'squeezellm', None],
choices=[*QUANTIZATION_METHODS, None],
default=None)
parser.add_argument('--tensor-parallel-size', '-tp', type=int, default=1)
parser.add_argument('--input-len', type=int, default=32)
@@ -95,13 +148,23 @@ if __name__ == '__main__':
default=1,
help='Number of generated sequences per prompt.')
parser.add_argument('--use-beam-search', action='store_true')
parser.add_argument('--num-iters-warmup',
type=int,
default=10,
help='Number of iterations to run for warmup.')
parser.add_argument('--num-iters',
type=int,
default=3,
default=30,
help='Number of iterations to run.')
parser.add_argument('--trust-remote-code',
action='store_true',
help='trust remote code from huggingface')
parser.add_argument(
'--max-model-len',
type=int,
default=None,
help='Maximum length of a sequence (including prompt and output). '
'If None, will be derived from the model.')
parser.add_argument(
'--dtype',
type=str,
@@ -111,6 +174,27 @@ if __name__ == '__main__':
'The "auto" option will use FP16 precision '
'for FP32 and FP16 models, and BF16 precision '
'for BF16 models.')
parser.add_argument('--enforce-eager',
action='store_true',
help='enforce eager mode and disable CUDA graph')
parser.add_argument(
'--kv-cache-dtype',
type=str,
choices=['auto', 'fp8', 'fp8_e5m2', 'fp8_e4m3'],
default="auto",
help='Data type for kv cache storage. If "auto", will use model '
'data type. CUDA 11.8+ supports fp8 (=fp8_e4m3) and fp8_e5m2. '
'ROCm (AMD GPU) supports fp8 (=fp8_e4m3)')
parser.add_argument(
'--quantization-param-path',
type=str,
default=None,
help='Path to the JSON file containing the KV cache scaling factors. '
'This should generally be supplied, when KV cache dtype is FP8. '
'Otherwise, KV cache scaling factors default to 1.0, which may cause '
'accuracy issues. FP8_E5M2 (without scaling) is only supported on '
'cuda version greater than 11.8. On ROCm (AMD GPU), FP8_E4M3 is '
'instead supported for common inference criteria.')
parser.add_argument(
'--profile',
action='store_true',
@@ -119,9 +203,83 @@ if __name__ == '__main__':
'--profile-result-dir',
type=str,
default=None,
help=(
'path to save the pytorch profiler output. Can be visualized '
'with ui.perfetto.dev or Tensorboard.'
))
help=('path to save the pytorch profiler output. Can be visualized '
'with ui.perfetto.dev or Tensorboard.'))
parser.add_argument(
"--device",
type=str,
default="auto",
choices=["auto", "cuda", "cpu", "openvino", "tpu", "xpu"],
help='device type for vLLM execution, supporting CUDA, OpenVINO and '
'CPU.')
parser.add_argument('--block-size',
type=int,
default=16,
help='block size of key/value cache')
parser.add_argument(
'--enable-chunked-prefill',
action='store_true',
help='If True, the prefill requests can be chunked based on the '
'max_num_batched_tokens')
parser.add_argument("--enable-prefix-caching",
action='store_true',
help="Enable automatic prefix caching")
parser.add_argument('--use-v2-block-manager', action='store_true')
parser.add_argument(
"--ray-workers-use-nsight",
action='store_true',
help="If specified, use nsight to profile ray workers",
)
parser.add_argument('--download-dir',
type=str,
default=None,
help='directory to download and load the weights, '
'default to the default cache dir of huggingface')
parser.add_argument(
'--output-json',
type=str,
default=None,
help='Path to save the latency results in JSON format.')
parser.add_argument('--gpu-memory-utilization',
type=float,
default=0.9,
help='the fraction of GPU memory to be used for '
'the model executor, which can range from 0 to 1.'
'If unspecified, will use the default value of 0.9.')
parser.add_argument(
'--load-format',
type=str,
default=EngineArgs.load_format,
choices=[
'auto', 'pt', 'safetensors', 'npcache', 'dummy', 'tensorizer',
'bitsandbytes'
],
help='The format of the model weights to load.\n\n'
'* "auto" will try to load the weights in the safetensors format '
'and fall back to the pytorch bin format if safetensors format '
'is not available.\n'
'* "pt" will load the weights in the pytorch bin format.\n'
'* "safetensors" will load the weights in the safetensors format.\n'
'* "npcache" will load the weights in pytorch format and store '
'a numpy cache to speed up the loading.\n'
'* "dummy" will initialize the weights with random values, '
'which is mainly for profiling.\n'
'* "tensorizer" will load the weights using tensorizer from '
'CoreWeave. See the Tensorize vLLM Model script in the Examples'
'section for more information.\n'
'* "bitsandbytes" will load the weights using bitsandbytes '
'quantization.\n')
parser.add_argument(
'--distributed-executor-backend',
choices=['ray', 'mp'],
default=None,
help='Backend to use for distributed serving. When more than 1 GPU '
'is used, will be automatically set to "ray" if installed '
'or "mp" (multiprocessing) otherwise.')
parser.add_argument(
'--otlp-traces-endpoint',
type=str,
default=None,
help='Target URL to which OpenTelemetry traces will be sent.')
args = parser.parse_args()
main(args)

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@@ -0,0 +1,62 @@
import time
from vllm import LLM, SamplingParams
from vllm.utils import FlexibleArgumentParser
PROMPT = "You are a helpful assistant in recognizes the content of tables in markdown format. Here is a table as fellows. You need to answer my question about the table.\n# Table\n|Opening|Opening|Sl. No.|Film|Cast|Director|Music Director|Notes|\n|----|----|----|----|----|----|----|----|\n|J A N|9|1|Agni Pushpam|Jayabharathi, Kamalahasan|Jeassy|M. K. Arjunan||\n|J A N|16|2|Priyamvada|Mohan Sharma, Lakshmi, KPAC Lalitha|K. S. Sethumadhavan|V. Dakshinamoorthy||\n|J A N|23|3|Yakshagaanam|Madhu, Sheela|Sheela|M. S. Viswanathan||\n|J A N|30|4|Paalkkadal|Sheela, Sharada|T. K. Prasad|A. T. Ummer||\n|F E B|5|5|Amma|Madhu, Srividya|M. Krishnan Nair|M. K. Arjunan||\n|F E B|13|6|Appooppan|Thikkurissi Sukumaran Nair, Kamal Haasan|P. Bhaskaran|M. S. Baburaj||\n|F E B|20|7|Srishti|Chowalloor Krishnankutty, Ravi Alummoodu|K. T. Muhammad|M. S. Baburaj||\n|F E B|20|8|Vanadevatha|Prem Nazir, Madhubala|Yusufali Kechery|G. Devarajan||\n|F E B|27|9|Samasya|Madhu, Kamalahaasan|K. Thankappan|Shyam||\n|F E B|27|10|Yudhabhoomi|K. P. Ummer, Vidhubala|Crossbelt Mani|R. K. Shekhar||\n|M A R|5|11|Seemantha Puthran|Prem Nazir, Jayabharathi|A. B. Raj|M. K. Arjunan||\n|M A R|12|12|Swapnadanam|Rani Chandra, Dr. Mohandas|K. G. George|Bhaskar Chandavarkar||\n|M A R|19|13|Thulavarsham|Prem Nazir, sreedevi, Sudheer|N. Sankaran Nair|V. Dakshinamoorthy||\n|M A R|20|14|Aruthu|Kaviyoor Ponnamma, Kamalahasan|Ravi|G. Devarajan||\n|M A R|26|15|Swimming Pool|Kamal Haasan, M. G. Soman|J. Sasikumar|M. K. Arjunan||\n\n# Question\nWhat' s the content in the (1,1) cells\n" # noqa: E501
def test_prefix(llm=None, sampling_params=None, prompts=None):
start_time = time.time()
llm.generate(prompts, sampling_params=sampling_params)
end_time = time.time()
print(f"cost time {end_time - start_time}")
def main(args):
llm = LLM(model=args.model,
tokenizer_mode='auto',
trust_remote_code=True,
enforce_eager=True,
use_v2_block_manager=args.use_v2_block_manager,
tensor_parallel_size=args.tensor_parallel_size,
enable_prefix_caching=args.enable_prefix_caching)
num_prompts = 100
prompts = [PROMPT] * num_prompts
sampling_params = SamplingParams(temperature=0, max_tokens=args.output_len)
print("------warm up------")
test_prefix(
llm=llm,
prompts=prompts,
sampling_params=sampling_params,
)
print("------start generating------")
test_prefix(
llm=llm,
prompts=prompts,
sampling_params=sampling_params,
)
if __name__ == "__main__":
parser = FlexibleArgumentParser(
description='Benchmark the performance with or without automatic '
'prefix caching.')
parser.add_argument('--model',
type=str,
default='baichuan-inc/Baichuan2-13B-Chat')
parser.add_argument('--tensor-parallel-size', '-tp', type=int, default=1)
parser.add_argument('--output-len', type=int, default=10)
parser.add_argument('--enable-prefix-caching',
action='store_true',
help='enable prefix caching')
parser.add_argument('--use-v2-block-manager',
action='store_true',
help='Use BlockSpaceMangerV2')
args = parser.parse_args()
main(args)

View File

@@ -1,81 +1,187 @@
"""Benchmark online serving throughput.
On the server side, run one of the following commands:
(vLLM backend)
python -m vllm.entrypoints.api_server \
vLLM OpenAI API server
python -m vllm.entrypoints.openai.api_server \
--model <your_model> --swap-space 16 \
--disable-log-requests
(TGI backend)
./launch_hf_server.sh <your_model>
./launch_tgi_server.sh <your_model> <max_batch_total_tokens>
On the client side, run:
python benchmarks/benchmark_serving.py \
--backend <backend> \
--tokenizer <your_model> --dataset <target_dataset> \
--request-rate <request_rate>
--model <your_model> \
--dataset-name sharegpt \
--dataset-path <path to dataset> \
--request-rate <request_rate> \ # By default <request_rate> is inf
--num-prompts <num_prompts> # By default <num_prompts> is 1000
when using tgi backend, add
--endpoint /generate_stream
to the end of the command above.
"""
import argparse
import asyncio
import json
import os
import random
import time
from typing import AsyncGenerator, List, Tuple
import warnings
from dataclasses import dataclass
from datetime import datetime
from typing import Any, AsyncGenerator, Dict, List, Optional, Tuple
import aiohttp
import numpy as np
from backend_request_func import (ASYNC_REQUEST_FUNCS, RequestFuncInput,
RequestFuncOutput)
from tqdm.asyncio import tqdm
from transformers import PreTrainedTokenizerBase
from vllm.transformers_utils.tokenizer import get_tokenizer
# (prompt len, output len, latency)
REQUEST_LATENCY: List[Tuple[int, int, float]] = []
try:
from vllm.transformers_utils.tokenizer import get_tokenizer
except ImportError:
from backend_request_func import get_tokenizer
try:
from vllm.utils import FlexibleArgumentParser
except ImportError:
from argparse import ArgumentParser as FlexibleArgumentParser
def sample_requests(
@dataclass
class BenchmarkMetrics:
completed: int
total_input: int
total_output: int
request_throughput: float
input_throughput: float
output_throughput: float
mean_ttft_ms: float
median_ttft_ms: float
p99_ttft_ms: float
mean_tpot_ms: float
median_tpot_ms: float
p99_tpot_ms: float
mean_itl_ms: float
median_itl_ms: float
p99_itl_ms: float
def sample_sharegpt_requests(
dataset_path: str,
num_requests: int,
tokenizer: PreTrainedTokenizerBase,
fixed_output_len: Optional[int] = None,
) -> List[Tuple[str, int, int]]:
if fixed_output_len is not None and fixed_output_len < 4:
raise ValueError("output_len too small")
# Load the dataset.
with open(dataset_path) as f:
dataset = json.load(f)
# Filter out the conversations with less than 2 turns.
dataset = [
data for data in dataset
if len(data["conversations"]) >= 2
]
dataset = [data for data in dataset if len(data["conversations"]) >= 2]
# Only keep the first two turns of each conversation.
dataset = [
(data["conversations"][0]["value"], data["conversations"][1]["value"])
for data in dataset
]
dataset = [(data["conversations"][0]["value"],
data["conversations"][1]["value"]) for data in dataset]
# Tokenize the prompts and completions.
prompts = [prompt for prompt, _ in dataset]
prompt_token_ids = tokenizer(prompts).input_ids
completions = [completion for _, completion in dataset]
completion_token_ids = tokenizer(completions).input_ids
tokenized_dataset = []
for i in range(len(dataset)):
output_len = len(completion_token_ids[i])
tokenized_dataset.append((prompts[i], prompt_token_ids[i], output_len))
# Shuffle the dataset.
random.shuffle(dataset)
# Filter out too long sequences.
# Filter out sequences that are too long or too short
filtered_dataset: List[Tuple[str, int, int]] = []
for prompt, prompt_token_ids, output_len in tokenized_dataset:
for i in range(len(dataset)):
if len(filtered_dataset) == num_requests:
break
# Tokenize the prompts and completions.
prompt = dataset[i][0]
prompt_token_ids = tokenizer(prompt).input_ids
completion = dataset[i][1]
completion_token_ids = tokenizer(completion).input_ids
prompt_len = len(prompt_token_ids)
output_len = len(completion_token_ids
) if fixed_output_len is None else fixed_output_len
if prompt_len < 4 or output_len < 4:
# Prune too short sequences.
# This is because TGI causes errors when the input or output length
# is too short.
continue
if prompt_len > 1024 or prompt_len + output_len > 2048:
# Prune too long sequences.
continue
filtered_dataset.append((prompt, prompt_len, output_len))
# Sample the requests.
sampled_requests = random.sample(filtered_dataset, num_requests)
return filtered_dataset
def sample_sonnet_requests(
dataset_path: str,
num_requests: int,
input_len: int,
output_len: int,
prefix_len: int,
tokenizer: PreTrainedTokenizerBase,
) -> List[Tuple[str, str, int, int]]:
assert (
input_len > prefix_len
), "'args.sonnet-input-len' must be greater than 'args.prefix-input-len'."
# Load the dataset.
with open(dataset_path) as f:
poem_lines = f.readlines()
# Tokenize the poem lines.
poem_token_ids = tokenizer(poem_lines).input_ids
average_poem_len = sum(
len(token_ids) for token_ids in poem_token_ids) / len(poem_token_ids)
# Base prefix for all requests.
base_prompt = "Pick as many lines as you can from these poem lines:\n"
base_message = [{
"role": "user",
"content": base_prompt,
}]
base_prompt_formatted = tokenizer.apply_chat_template(
base_message, add_generation_prompt=True, tokenize=False)
base_prompt_offset = len(tokenizer(base_prompt_formatted).input_ids)
assert (
input_len > base_prompt_offset
), f"Please set 'args.sonnet-input-len' higher than {base_prompt_offset}."
num_input_lines = round(
(input_len - base_prompt_offset) / average_poem_len)
# First approximately `prefix_len` number of tokens in the
# prompt are fixed poem lines.
assert (
prefix_len > base_prompt_offset
), f"Please set 'args.sonnet-prefix-len' higher than {base_prompt_offset}."
num_prefix_lines = round(
(prefix_len - base_prompt_offset) / average_poem_len)
prefix_lines = poem_lines[:num_prefix_lines]
# Sample the rest of lines per request.
sampled_requests: List[Tuple[str, int, int]] = []
for _ in range(num_requests):
sampled_lines = "".join(
prefix_lines +
random.sample(poem_lines, num_input_lines - num_prefix_lines))
prompt = f"{base_prompt}{sampled_lines}"
message = [
{
"role": "user",
"content": prompt,
},
]
prompt_formatted = tokenizer.apply_chat_template(
message, add_generation_prompt=True, tokenize=False)
prompt_len = len(tokenizer(prompt_formatted).input_ids)
sampled_requests.append(
(prompt, prompt_formatted, prompt_len, output_len))
return sampled_requests
@@ -96,79 +202,190 @@ async def get_request(
await asyncio.sleep(interval)
async def send_request(
backend: str,
api_url: str,
prompt: str,
prompt_len: int,
output_len: int,
best_of: int,
use_beam_search: bool,
) -> None:
request_start_time = time.perf_counter()
def calculate_metrics(
input_requests: List[Tuple[str, int, int]],
outputs: List[RequestFuncOutput],
dur_s: float,
tokenizer: PreTrainedTokenizerBase,
) -> Tuple[BenchmarkMetrics, List[int]]:
actual_output_lens: List[int] = []
total_input = 0
completed = 0
itls: List[float] = []
tpots: List[float] = []
ttfts: List[float] = []
for i in range(len(outputs)):
if outputs[i].success:
# We use the tokenizer to count the number of output tokens for all
# serving backends instead of looking at len(outputs[i].itl) since
# multiple output tokens may be bundled together
# Note: this may inflate the output token count slightly
output_len = len(
tokenizer(outputs[i].generated_text,
add_special_tokens=False).input_ids)
actual_output_lens.append(output_len)
total_input += input_requests[i][1]
if output_len > 1:
tpots.append(
(outputs[i].latency - outputs[i].ttft) / (output_len - 1))
itls += outputs[i].itl
ttfts.append(outputs[i].ttft)
completed += 1
else:
actual_output_lens.append(0)
headers = {"User-Agent": "Benchmark Client"}
if backend == "vllm":
pload = {
"prompt": prompt,
"n": 1,
"best_of": best_of,
"use_beam_search": use_beam_search,
"temperature": 0.0 if use_beam_search else 1.0,
"top_p": 1.0,
"max_tokens": output_len,
"ignore_eos": True,
"stream": False,
}
elif backend == "tgi":
assert not use_beam_search
params = {
"best_of": best_of,
"max_new_tokens": output_len,
"do_sample": True,
}
pload = {
"inputs": prompt,
"parameters": params,
}
else:
raise ValueError(f"Unknown backend: {backend}")
if completed == 0:
warnings.warn(
"All requests failed. This is likely due to a misconfiguration "
"on the benchmark arguments.",
stacklevel=2)
metrics = BenchmarkMetrics(
completed=completed,
total_input=total_input,
total_output=sum(actual_output_lens),
request_throughput=completed / dur_s,
input_throughput=total_input / dur_s,
output_throughput=sum(actual_output_lens) / dur_s,
mean_ttft_ms=np.mean(ttfts or 0) *
1000, # ttfts is empty if streaming is not supported by backend
median_ttft_ms=np.median(ttfts or 0) * 1000,
p99_ttft_ms=np.percentile(ttfts or 0, 99) * 1000,
mean_tpot_ms=np.mean(tpots or 0) * 1000,
median_tpot_ms=np.median(tpots or 0) * 1000,
p99_tpot_ms=np.percentile(tpots or 0, 99) * 1000,
mean_itl_ms=np.mean(itls or 0) * 1000,
median_itl_ms=np.median(itls or 0) * 1000,
p99_itl_ms=np.percentile(itls or 0, 99) * 1000,
)
timeout = aiohttp.ClientTimeout(total=3 * 3600)
async with aiohttp.ClientSession(timeout=timeout) as session:
while True:
async with session.post(api_url, headers=headers, json=pload) as response:
chunks = []
async for chunk, _ in response.content.iter_chunks():
chunks.append(chunk)
output = b"".join(chunks).decode("utf-8")
output = json.loads(output)
# Re-send the request if it failed.
if "error" not in output:
break
request_end_time = time.perf_counter()
request_latency = request_end_time - request_start_time
REQUEST_LATENCY.append((prompt_len, output_len, request_latency))
return metrics, actual_output_lens
async def benchmark(
backend: str,
api_url: str,
model_id: str,
tokenizer: PreTrainedTokenizerBase,
input_requests: List[Tuple[str, int, int]],
best_of: int,
use_beam_search: bool,
request_rate: float,
) -> None:
disable_tqdm: bool,
):
if backend in ASYNC_REQUEST_FUNCS:
request_func = ASYNC_REQUEST_FUNCS[backend]
else:
raise ValueError(f"Unknown backend: {backend}")
print("Starting initial single prompt test run...")
test_prompt, test_prompt_len, test_output_len = input_requests[0]
test_input = RequestFuncInput(
model=model_id,
prompt=test_prompt,
api_url=api_url,
prompt_len=test_prompt_len,
output_len=test_output_len,
best_of=best_of,
use_beam_search=use_beam_search,
)
test_output = await request_func(request_func_input=test_input)
if not test_output.success:
raise ValueError(
"Initial test run failed - Please make sure benchmark arguments "
f"are correctly specified. Error: {test_output.error}")
else:
print("Initial test run completed. Starting main benchmark run...")
print(f"Traffic request rate: {request_rate}")
pbar = None if disable_tqdm else tqdm(total=len(input_requests))
benchmark_start_time = time.perf_counter()
tasks: List[asyncio.Task] = []
async for request in get_request(input_requests, request_rate):
prompt, prompt_len, output_len = request
task = asyncio.create_task(send_request(backend, api_url, prompt,
prompt_len, output_len,
best_of, use_beam_search))
tasks.append(task)
await asyncio.gather(*tasks)
request_func_input = RequestFuncInput(
model=model_id,
prompt=prompt,
api_url=api_url,
prompt_len=prompt_len,
output_len=output_len,
best_of=best_of,
use_beam_search=use_beam_search,
)
tasks.append(
asyncio.create_task(
request_func(request_func_input=request_func_input,
pbar=pbar)))
outputs: List[RequestFuncOutput] = await asyncio.gather(*tasks)
if pbar is not None:
pbar.close()
benchmark_duration = time.perf_counter() - benchmark_start_time
metrics, actual_output_lens = calculate_metrics(
input_requests=input_requests,
outputs=outputs,
dur_s=benchmark_duration,
tokenizer=tokenizer,
)
print("{s:{c}^{n}}".format(s=' Serving Benchmark Result ', n=50, c='='))
print("{:<40} {:<10}".format("Successful requests:", metrics.completed))
print("{:<40} {:<10.2f}".format("Benchmark duration (s):",
benchmark_duration))
print("{:<40} {:<10}".format("Total input tokens:", metrics.total_input))
print("{:<40} {:<10}".format("Total generated tokens:",
metrics.total_output))
print("{:<40} {:<10.2f}".format("Request throughput (req/s):",
metrics.request_throughput))
print("{:<40} {:<10.2f}".format("Input token throughput (tok/s):",
metrics.input_throughput))
print("{:<40} {:<10.2f}".format("Output token throughput (tok/s):",
metrics.output_throughput))
print("{s:{c}^{n}}".format(s='Time to First Token', n=50, c='-'))
print("{:<40} {:<10.2f}".format("Mean TTFT (ms):", metrics.mean_ttft_ms))
print("{:<40} {:<10.2f}".format("Median TTFT (ms):",
metrics.median_ttft_ms))
print("{:<40} {:<10.2f}".format("P99 TTFT (ms):", metrics.p99_ttft_ms))
print("{s:{c}^{n}}".format(s='Time per Output Token (excl. 1st token)',
n=50,
c='-'))
print("{:<40} {:<10.2f}".format("Mean TPOT (ms):", metrics.mean_tpot_ms))
print("{:<40} {:<10.2f}".format("Median TPOT (ms):",
metrics.median_tpot_ms))
print("{:<40} {:<10.2f}".format("P99 TPOT (ms):", metrics.p99_tpot_ms))
print("{s:{c}^{n}}".format(s='Inter-token Latency', n=50, c='-'))
print("{:<40} {:<10.2f}".format("Mean ITL (ms):", metrics.mean_itl_ms))
print("{:<40} {:<10.2f}".format("Median ITL (ms):", metrics.median_itl_ms))
print("{:<40} {:<10.2f}".format("P99 ITL (ms):", metrics.p99_itl_ms))
print("=" * 50)
result = {
"duration": benchmark_duration,
"completed": metrics.completed,
"total_input_tokens": metrics.total_input,
"total_output_tokens": metrics.total_output,
"request_throughput": metrics.request_throughput,
"input_throughput": metrics.input_throughput,
"output_throughput": metrics.output_throughput,
"mean_ttft_ms": metrics.mean_ttft_ms,
"median_ttft_ms": metrics.median_ttft_ms,
"p99_ttft_ms": metrics.p99_ttft_ms,
"mean_tpot_ms": metrics.mean_tpot_ms,
"median_tpot_ms": metrics.median_tpot_ms,
"p99_tpot_ms": metrics.p99_tpot_ms,
"mean_itl_ms": metrics.mean_itl_ms,
"median_itl_ms": metrics.median_itl_ms,
"p99_itl_ms": metrics.p99_itl_ms,
"input_lens": [output.prompt_len for output in outputs],
"output_lens": actual_output_lens,
"ttfts": [output.ttft for output in outputs],
"itls": [output.itl for output in outputs],
"generated_texts": [output.generated_text for output in outputs],
"errors": [output.error for output in outputs],
}
return result
def main(args: argparse.Namespace):
@@ -176,58 +393,271 @@ def main(args: argparse.Namespace):
random.seed(args.seed)
np.random.seed(args.seed)
api_url = f"http://{args.host}:{args.port}/generate"
tokenizer = get_tokenizer(args.tokenizer, trust_remote_code=args.trust_remote_code)
input_requests = sample_requests(args.dataset, args.num_prompts, tokenizer)
backend = args.backend
model_id = args.model
tokenizer_id = args.tokenizer if args.tokenizer is not None else args.model
benchmark_start_time = time.perf_counter()
asyncio.run(benchmark(args.backend, api_url, input_requests, args.best_of,
args.use_beam_search, args.request_rate))
benchmark_end_time = time.perf_counter()
benchmark_time = benchmark_end_time - benchmark_start_time
print(f"Total time: {benchmark_time:.2f} s")
print(f"Throughput: {args.num_prompts / benchmark_time:.2f} requests/s")
if args.base_url is not None:
api_url = f"{args.base_url}{args.endpoint}"
else:
api_url = f"http://{args.host}:{args.port}{args.endpoint}"
# Compute the latency statistics.
avg_latency = np.mean([latency for _, _, latency in REQUEST_LATENCY])
print(f"Average latency: {avg_latency:.2f} s")
avg_per_token_latency = np.mean([
latency / (prompt_len + output_len)
for prompt_len, output_len, latency in REQUEST_LATENCY
])
print(f"Average latency per token: {avg_per_token_latency:.2f} s")
avg_per_output_token_latency = np.mean([
latency / output_len
for _, output_len, latency in REQUEST_LATENCY
])
print("Average latency per output token: "
f"{avg_per_output_token_latency:.2f} s")
tokenizer = get_tokenizer(tokenizer_id,
trust_remote_code=args.trust_remote_code)
if args.dataset is not None:
warnings.warn(
"The '--dataset' argument will be deprecated in the next "
"release. Please use '--dataset-name' and "
"'--dataset-path' in the future runs.",
stacklevel=2)
input_requests = sample_sharegpt_requests(
dataset_path=args.dataset,
num_requests=args.num_prompts,
tokenizer=tokenizer,
fixed_output_len=args.sharegpt_output_len,
)
elif args.dataset_name == "sharegpt":
input_requests = sample_sharegpt_requests(
dataset_path=args.dataset_path,
num_requests=args.num_prompts,
tokenizer=tokenizer,
fixed_output_len=args.sharegpt_output_len,
)
elif args.dataset_name == "sonnet":
# Do not format the prompt, pass to message directly
if args.backend == "openai-chat":
input_requests = sample_sonnet_requests(
dataset_path=args.dataset_path,
num_requests=args.num_prompts,
input_len=args.sonnet_input_len,
output_len=args.sonnet_output_len,
prefix_len=args.sonnet_prefix_len,
tokenizer=tokenizer,
)
input_requests = [(prompt, prompt_len, output_len)
for prompt, prompt_formatted, prompt_len,
output_len in input_requests]
else:
assert (
tokenizer.chat_template or tokenizer.default_chat_template
), "Tokenizer/model must have chat template for sonnet dataset."
input_requests = sample_sonnet_requests(
dataset_path=args.dataset_path,
num_requests=args.num_prompts,
input_len=args.sonnet_input_len,
output_len=args.sonnet_output_len,
prefix_len=args.sonnet_prefix_len,
tokenizer=tokenizer,
)
input_requests = [(prompt_formatted, prompt_len, output_len)
for prompt, prompt_formatted, prompt_len,
output_len in input_requests]
else:
raise ValueError(f"Unknown dataset: {args.dataset_name}")
benchmark_result = asyncio.run(
benchmark(
backend=backend,
api_url=api_url,
model_id=model_id,
tokenizer=tokenizer,
input_requests=input_requests,
best_of=args.best_of,
use_beam_search=args.use_beam_search,
request_rate=args.request_rate,
disable_tqdm=args.disable_tqdm,
))
# Save config and results to json
if args.save_result:
result_json: Dict[str, Any] = {}
# Setup
current_dt = datetime.now().strftime("%Y%m%d-%H%M%S")
result_json["date"] = current_dt
result_json["backend"] = backend
result_json["model_id"] = model_id
result_json["tokenizer_id"] = tokenizer_id
result_json["best_of"] = args.best_of
result_json["use_beam_search"] = args.use_beam_search
result_json["num_prompts"] = args.num_prompts
# Metadata
if args.metadata:
for item in args.metadata:
if "=" in item:
kvstring = item.split("=")
result_json[kvstring[0].strip()] = kvstring[1].strip()
else:
raise ValueError(
"Invalid metadata format. Please use KEY=VALUE format."
)
# Traffic
result_json["request_rate"] = (
args.request_rate if args.request_rate < float("inf") else "inf")
# Merge with benchmark result
result_json = {**result_json, **benchmark_result}
# Save to file
base_model_id = model_id.split("/")[-1]
file_name = f"{backend}-{args.request_rate}qps-{base_model_id}-{current_dt}.json" #noqa
if args.result_filename:
file_name = args.result_filename
if args.result_dir:
file_name = os.path.join(args.result_dir, file_name)
with open(file_name, "w") as outfile:
json.dump(result_json, outfile)
if __name__ == "__main__":
parser = argparse.ArgumentParser(
parser = FlexibleArgumentParser(
description="Benchmark the online serving throughput.")
parser.add_argument("--backend", type=str, default="vllm",
choices=["vllm", "tgi"])
parser.add_argument(
"--backend",
type=str,
default="vllm",
choices=list(ASYNC_REQUEST_FUNCS.keys()),
)
parser.add_argument(
"--base-url",
type=str,
default=None,
help="Server or API base url if not using http host and port.",
)
parser.add_argument("--host", type=str, default="localhost")
parser.add_argument("--port", type=int, default=8000)
parser.add_argument("--dataset", type=str, required=True,
parser.add_argument(
"--endpoint",
type=str,
default="/v1/completions",
help="API endpoint.",
)
parser.add_argument(
"--dataset",
type=str,
default=None,
help="Path to the ShareGPT dataset, will be deprecated in the "
"next release.",
)
parser.add_argument(
"--dataset-name",
type=str,
default="sharegpt",
choices=["sharegpt", "sonnet"],
help="Name of the dataset to benchmark on.",
)
parser.add_argument("--dataset-path",
type=str,
default=None,
help="Path to the dataset.")
parser.add_argument("--tokenizer", type=str, required=True,
help="Name or path of the tokenizer.")
parser.add_argument("--best-of", type=int, default=1,
help="Generates `best_of` sequences per prompt and "
"returns the best one.")
parser.add_argument(
"--model",
type=str,
required=True,
help="Name of the model.",
)
parser.add_argument(
"--tokenizer",
type=str,
help=
"Name or path of the tokenizer, if not using the default tokenizer.",
)
parser.add_argument(
"--best-of",
type=int,
default=1,
help="Generates `best_of` sequences per prompt and "
"returns the best one.",
)
parser.add_argument("--use-beam-search", action="store_true")
parser.add_argument("--num-prompts", type=int, default=1000,
help="Number of prompts to process.")
parser.add_argument("--request-rate", type=float, default=float("inf"),
help="Number of requests per second. If this is inf, "
"then all the requests are sent at time 0. "
"Otherwise, we use Poisson process to synthesize "
"the request arrival times.")
parser.add_argument(
"--num-prompts",
type=int,
default=1000,
help="Number of prompts to process.",
)
parser.add_argument(
"--sharegpt-output-len",
type=int,
default=None,
help="Output length for each request. Overrides the output length "
"from the ShareGPT dataset.")
parser.add_argument(
"--sonnet-input-len",
type=int,
default=550,
help=
"Number of input tokens per request, used only for sonnet dataset.",
)
parser.add_argument(
"--sonnet-output-len",
type=int,
default=150,
help=
"Number of output tokens per request, used only for sonnet dataset.",
)
parser.add_argument(
"--sonnet-prefix-len",
type=int,
default=200,
help=
"Number of prefix tokens per request, used only for sonnet dataset.",
)
parser.add_argument(
"--request-rate",
type=float,
default=float("inf"),
help="Number of requests per second. If this is inf, "
"then all the requests are sent at time 0. "
"Otherwise, we use Poisson process to synthesize "
"the request arrival times.",
)
parser.add_argument("--seed", type=int, default=0)
parser.add_argument('--trust-remote-code', action='store_true',
help='trust remote code from huggingface')
parser.add_argument(
"--trust-remote-code",
action="store_true",
help="Trust remote code from huggingface",
)
parser.add_argument(
"--disable-tqdm",
action="store_true",
help="Specify to disable tqdm progress bar.",
)
parser.add_argument(
"--save-result",
action="store_true",
help="Specify to save benchmark results to a json file",
)
parser.add_argument(
"--metadata",
metavar="KEY=VALUE",
nargs="*",
help="Key-value pairs (e.g, --metadata version=0.3.3 tp=1) "
"for metadata of this run to be saved in the result JSON file "
"for record keeping purposes.",
)
parser.add_argument(
"--result-dir",
type=str,
default=None,
help="Specify directory to save benchmark json results."
"If not specified, results are saved in the current directory.",
)
parser.add_argument(
"--result-filename",
type=str,
default=None,
help="Specify the filename to save benchmark json results."
"If not specified, results will be saved in "
"{backend}-{args.request_rate}qps-{base_model_id}-{current_dt}.json"
" format.",
)
args = parser.parse_args()
main(args)

View File

@@ -6,9 +6,13 @@ import time
from typing import List, Optional, Tuple
import torch
from tqdm import tqdm
from transformers import (AutoModelForCausalLM, AutoTokenizer,
PreTrainedTokenizerBase)
from tqdm import tqdm
from vllm.engine.arg_utils import EngineArgs
from vllm.model_executor.layers.quantization import QUANTIZATION_METHODS
from vllm.utils import FlexibleArgumentParser
def sample_requests(
@@ -29,22 +33,23 @@ def sample_requests(
dataset = [(data["conversations"][0]["value"],
data["conversations"][1]["value"]) for data in dataset]
# Tokenize the prompts and completions.
prompts = [prompt for prompt, _ in dataset]
prompt_token_ids = tokenizer(prompts).input_ids
completions = [completion for _, completion in dataset]
completion_token_ids = tokenizer(completions).input_ids
tokenized_dataset = []
for i in range(len(dataset)):
output_len = len(completion_token_ids[i])
if fixed_output_len is not None:
output_len = fixed_output_len
tokenized_dataset.append((prompts[i], prompt_token_ids[i], output_len))
# Shuffle the dataset.
random.shuffle(dataset)
# Filter out too long sequences.
# Filter out sequences that are too long or too short
filtered_dataset: List[Tuple[str, int, int]] = []
for prompt, prompt_token_ids, output_len in tokenized_dataset:
for i in range(len(dataset)):
if len(filtered_dataset) == num_requests:
break
# Tokenize the prompts and completions.
prompt = dataset[i][0]
prompt_token_ids = tokenizer(prompt).input_ids
completion = dataset[i][1]
completion_token_ids = tokenizer(completion).input_ids
prompt_len = len(prompt_token_ids)
output_len = len(completion_token_ids
) if fixed_output_len is None else fixed_output_len
if prompt_len < 4 or output_len < 4:
# Prune too short sequences.
continue
@@ -53,9 +58,7 @@ def sample_requests(
continue
filtered_dataset.append((prompt, prompt_len, output_len))
# Sample the requests.
sampled_requests = random.sample(filtered_dataset, num_requests)
return sampled_requests
return filtered_dataset
def run_vllm(
@@ -69,7 +72,18 @@ def run_vllm(
use_beam_search: bool,
trust_remote_code: bool,
dtype: str,
max_model_len: Optional[int] = None,
max_model_len: Optional[int],
enforce_eager: bool,
kv_cache_dtype: str,
quantization_param_path: Optional[str],
device: str,
enable_prefix_caching: bool,
enable_chunked_prefill: bool,
max_num_batched_tokens: int,
distributed_executor_backend: Optional[str],
gpu_memory_utilization: float = 0.9,
download_dir: Optional[str] = None,
load_format: str = EngineArgs.load_format,
) -> float:
from vllm import LLM, SamplingParams
llm = LLM(
@@ -81,28 +95,36 @@ def run_vllm(
trust_remote_code=trust_remote_code,
dtype=dtype,
max_model_len=max_model_len,
gpu_memory_utilization=gpu_memory_utilization,
enforce_eager=enforce_eager,
kv_cache_dtype=kv_cache_dtype,
quantization_param_path=quantization_param_path,
device=device,
enable_prefix_caching=enable_prefix_caching,
download_dir=download_dir,
enable_chunked_prefill=enable_chunked_prefill,
max_num_batched_tokens=max_num_batched_tokens,
distributed_executor_backend=distributed_executor_backend,
load_format=load_format,
)
# Add the requests to the engine.
prompts: List[str] = []
sampling_params: List[SamplingParams] = []
for prompt, _, output_len in requests:
sampling_params = SamplingParams(
n=n,
temperature=0.0 if use_beam_search else 1.0,
top_p=1.0,
use_beam_search=use_beam_search,
ignore_eos=True,
max_tokens=output_len,
)
# FIXME(woosuk): Do not use internal method.
llm._add_request(
prompt=prompt,
prompt_token_ids=None,
sampling_params=sampling_params,
)
prompts.append(prompt)
sampling_params.append(
SamplingParams(
n=n,
temperature=0.0 if use_beam_search else 1.0,
top_p=1.0,
use_beam_search=use_beam_search,
ignore_eos=True,
max_tokens=output_len,
))
start = time.perf_counter()
# FIXME(woosuk): Do not use internal method.
llm._run_engine(use_tqdm=True)
llm.generate(prompts, sampling_params, use_tqdm=True)
end = time.perf_counter()
return end - start
@@ -173,13 +195,15 @@ def run_mii(
tensor_parallel_size: int,
output_len: int,
) -> float:
from mii import pipeline
llm = pipeline(model, tensor_parallel=tensor_parallel_size)
from mii import client, serve
llm = serve(model, tensor_parallel=tensor_parallel_size)
prompts = [prompt for prompt, _, _ in requests]
start = time.perf_counter()
llm(prompts, max_new_tokens=output_len)
llm.generate(prompts, max_new_tokens=output_len)
end = time.perf_counter()
client = client(model)
client.terminate_server()
return end - start
@@ -200,11 +224,15 @@ def main(args: argparse.Namespace):
args.output_len)
if args.backend == "vllm":
elapsed_time = run_vllm(requests, args.model, args.tokenizer,
args.quantization, args.tensor_parallel_size,
args.seed, args.n, args.use_beam_search,
args.trust_remote_code, args.dtype,
args.max_model_len)
elapsed_time = run_vllm(
requests, args.model, args.tokenizer, args.quantization,
args.tensor_parallel_size, args.seed, args.n, args.use_beam_search,
args.trust_remote_code, args.dtype, args.max_model_len,
args.enforce_eager, args.kv_cache_dtype,
args.quantization_param_path, args.device,
args.enable_prefix_caching, args.enable_chunked_prefill,
args.max_num_batched_tokens, args.distributed_executor_backend,
args.gpu_memory_utilization, args.download_dir, args.load_format)
elif args.backend == "hf":
assert args.tensor_parallel_size == 1
elapsed_time = run_hf(requests, args.model, tokenizer, args.n,
@@ -220,9 +248,21 @@ def main(args: argparse.Namespace):
print(f"Throughput: {len(requests) / elapsed_time:.2f} requests/s, "
f"{total_num_tokens / elapsed_time:.2f} tokens/s")
# Output JSON results if specified
if args.output_json:
results = {
"elapsed_time": elapsed_time,
"num_requests": len(requests),
"total_num_tokens": total_num_tokens,
"requests_per_second": len(requests) / elapsed_time,
"tokens_per_second": total_num_tokens / elapsed_time,
}
with open(args.output_json, "w") as f:
json.dump(results, f, indent=4)
if __name__ == "__main__":
parser = argparse.ArgumentParser(description="Benchmark the throughput.")
parser = FlexibleArgumentParser(description="Benchmark the throughput.")
parser.add_argument("--backend",
type=str,
choices=["vllm", "hf", "mii"],
@@ -244,7 +284,7 @@ if __name__ == "__main__":
parser.add_argument("--tokenizer", type=str, default=None)
parser.add_argument('--quantization',
'-q',
choices=['awq', 'squeezellm', None],
choices=[*QUANTIZATION_METHODS, None],
default=None)
parser.add_argument("--tensor-parallel-size", "-tp", type=int, default=1)
parser.add_argument("--n",
@@ -279,6 +319,92 @@ if __name__ == "__main__":
'The "auto" option will use FP16 precision '
'for FP32 and FP16 models, and BF16 precision '
'for BF16 models.')
parser.add_argument('--gpu-memory-utilization',
type=float,
default=0.9,
help='the fraction of GPU memory to be used for '
'the model executor, which can range from 0 to 1.'
'If unspecified, will use the default value of 0.9.')
parser.add_argument("--enforce-eager",
action="store_true",
help="enforce eager execution")
parser.add_argument(
'--kv-cache-dtype',
type=str,
choices=['auto', 'fp8', 'fp8_e5m2', 'fp8_e4m3'],
default="auto",
help='Data type for kv cache storage. If "auto", will use model '
'data type. CUDA 11.8+ supports fp8 (=fp8_e4m3) and fp8_e5m2. '
'ROCm (AMD GPU) supports fp8 (=fp8_e4m3)')
parser.add_argument(
'--quantization-param-path',
type=str,
default=None,
help='Path to the JSON file containing the KV cache scaling factors. '
'This should generally be supplied, when KV cache dtype is FP8. '
'Otherwise, KV cache scaling factors default to 1.0, which may cause '
'accuracy issues. FP8_E5M2 (without scaling) is only supported on '
'cuda version greater than 11.8. On ROCm (AMD GPU), FP8_E4M3 is '
'instead supported for common inference criteria.')
parser.add_argument(
"--device",
type=str,
default="auto",
choices=["auto", "cuda", "cpu", "openvino", "tpu", "xpu"],
help='device type for vLLM execution, supporting CUDA, OpenVINO and '
'CPU.')
parser.add_argument(
"--enable-prefix-caching",
action='store_true',
help="enable automatic prefix caching for vLLM backend.")
parser.add_argument("--enable-chunked-prefill",
action='store_true',
help="enable chunked prefill for vLLM backend.")
parser.add_argument('--max-num-batched-tokens',
type=int,
default=None,
help='maximum number of batched tokens per '
'iteration')
parser.add_argument('--download-dir',
type=str,
default=None,
help='directory to download and load the weights, '
'default to the default cache dir of huggingface')
parser.add_argument(
'--output-json',
type=str,
default=None,
help='Path to save the throughput results in JSON format.')
parser.add_argument(
'--distributed-executor-backend',
choices=['ray', 'mp'],
default=None,
help='Backend to use for distributed serving. When more than 1 GPU '
'is used, will be automatically set to "ray" if installed '
'or "mp" (multiprocessing) otherwise.')
parser.add_argument(
'--load-format',
type=str,
default=EngineArgs.load_format,
choices=[
'auto', 'pt', 'safetensors', 'npcache', 'dummy', 'tensorizer',
'bitsandbytes'
],
help='The format of the model weights to load.\n\n'
'* "auto" will try to load the weights in the safetensors format '
'and fall back to the pytorch bin format if safetensors format '
'is not available.\n'
'* "pt" will load the weights in the pytorch bin format.\n'
'* "safetensors" will load the weights in the safetensors format.\n'
'* "npcache" will load the weights in pytorch format and store '
'a numpy cache to speed up the loading.\n'
'* "dummy" will initialize the weights with random values, '
'which is mainly for profiling.\n'
'* "tensorizer" will load the weights using tensorizer from '
'CoreWeave. See the Tensorize vLLM Model script in the Examples'
'section for more information.\n'
'* "bitsandbytes" will load the weights using bitsandbytes '
'quantization.\n')
args = parser.parse_args()
if args.tokenizer is None:
args.tokenizer = args.model

View File

@@ -0,0 +1,353 @@
import argparse
import copy
import itertools
import pickle as pkl
import time
from typing import Callable, Iterable, List, Tuple
import torch
import torch.utils.benchmark as TBenchmark
from torch.utils.benchmark import Measurement as TMeasurement
from weight_shapes import WEIGHT_SHAPES
from vllm import _custom_ops as ops
from vllm.utils import FlexibleArgumentParser
DEFAULT_MODELS = list(WEIGHT_SHAPES.keys())[1:]
DEFAULT_BATCH_SIZES = [1, 16, 32, 64, 128, 256, 512]
DEFAULT_TP_SIZES = [1]
# helpers
def to_fp8(tensor: torch.tensor) -> torch.tensor:
finfo = torch.finfo(torch.float8_e4m3fn)
return torch.round(tensor.clamp(
min=finfo.min, max=finfo.max)).to(dtype=torch.float8_e4m3fn)
def to_int8(tensor: torch.tensor) -> torch.tensor:
return torch.round(tensor.clamp(min=-128, max=127)).to(dtype=torch.int8)
def make_rand_tensors(dtype: torch.dtype, m: int, n: int,
k: int) -> Tuple[torch.tensor, torch.tensor]:
a = torch.randn((m, k), device='cuda') * 5
b = torch.randn((n, k), device='cuda').t() * 5
if dtype == torch.int8:
return to_int8(a), to_int8(b)
if dtype == torch.float8_e4m3fn:
return to_fp8(a), to_fp8(b)
raise ValueError("unsupported dtype")
# impl
def pytorch_mm_impl(a: torch.tensor, b: torch.tensor, scale_a: torch.tensor,
scale_b: torch.tensor,
out_dtype: torch.dtype) -> torch.tensor:
return torch.mm(a, b)
def pytorch_fp8_impl(a: torch.tensor, b: torch.tensor, scale_a: torch.tensor,
scale_b: torch.tensor,
out_dtype: torch.dtype) -> torch.tensor:
return torch._scaled_mm(a,
b,
scale_a=scale_a,
scale_b=scale_b,
out_dtype=out_dtype)
def pytorch_fp8_impl_fast_accum(a: torch.tensor, b: torch.tensor,
scale_a: torch.tensor, scale_b: torch.tensor,
out_dtype: torch.dtype) -> torch.tensor:
return torch._scaled_mm(a,
b,
scale_a=scale_a,
scale_b=scale_b,
out_dtype=out_dtype,
use_fast_accum=True)
def cutlass_impl(a: torch.tensor, b: torch.tensor, scale_a: torch.tensor,
scale_b: torch.tensor,
out_dtype: torch.dtype) -> torch.tensor:
return ops.cutlass_scaled_mm(a, b, scale_a, scale_b, out_dtype=out_dtype)
# bench
def bench_fn(a: torch.tensor, b: torch.tensor, scale_a: torch.tensor,
scale_b: torch.tensor, out_dtype: torch.dtype, label: str,
sub_label: str, fn: Callable, description: str) -> TMeasurement:
min_run_time = 1
globals = {
"a": a,
"b": b,
"scale_a": scale_a,
"scale_b": scale_b,
"out_dtype": out_dtype,
"fn": fn,
}
return TBenchmark.Timer(
stmt="fn(a, b, scale_a, scale_b, out_dtype)",
globals=globals,
label=label,
sub_label=sub_label,
description=description,
).blocked_autorange(min_run_time=min_run_time)
def bench_int8(dtype: torch.dtype, m: int, k: int, n: int, label: str,
sub_label: str) -> Iterable[TMeasurement]:
assert dtype == torch.int8
a, b = make_rand_tensors(torch.int8, m, n, k)
scale_a = torch.tensor(1.0, device="cuda", dtype=torch.float32)
scale_b = torch.tensor(1.0, device="cuda", dtype=torch.float32)
timers = []
# pytorch impl
timers.append(
bench_fn(a.to(dtype=torch.bfloat16, device="cuda"),
b.to(dtype=torch.bfloat16, device="cuda"), scale_a, scale_b,
torch.bfloat16, label, sub_label, pytorch_mm_impl,
"pytorch_bf16_bf16_bf16_matmul-no-scales"))
# cutlass impl
timers.append(
bench_fn(a, b, scale_a, scale_b, torch.bfloat16, label, sub_label,
cutlass_impl, "cutlass_i8_i8_bf16_scaled_mm"))
return timers
def bench_fp8(dtype: torch.dtype, m: int, k: int, n: int, label: str,
sub_label: str) -> Iterable[TMeasurement]:
assert dtype == torch.float8_e4m3fn
a, b = make_rand_tensors(torch.float8_e4m3fn, m, n, k)
scale_a = torch.tensor(1.0, device="cuda", dtype=torch.float32)
scale_b = torch.tensor(1.0, device="cuda", dtype=torch.float32)
timers = []
# pytorch impl w. bf16
timers.append(
bench_fn(a.to(dtype=torch.bfloat16, device="cuda"),
b.to(dtype=torch.bfloat16, device="cuda"), scale_a, scale_b,
torch.bfloat16, label, sub_label, pytorch_mm_impl,
"pytorch_bf16_bf16_bf16_matmul-no-scales"))
# pytorch impl: bf16 output, without fp8 fast accum
timers.append(
bench_fn(a, b, scale_a, scale_b, torch.bfloat16, label, sub_label,
pytorch_fp8_impl, "pytorch_fp8_fp8_bf16_scaled_mm"))
# pytorch impl: bf16 output, with fp8 fast accum
timers.append(
bench_fn(a, b, scale_a, scale_b, torch.bfloat16, label, sub_label,
pytorch_fp8_impl_fast_accum,
"pytorch_fp8_fp8_bf16_scaled_mm_fast_accum"))
# pytorch impl: fp16 output, without fp8 fast accum
timers.append(
bench_fn(a, b, scale_a, scale_b, torch.float16, label, sub_label,
pytorch_fp8_impl, "pytorch_fp8_fp8_fp16_scaled_mm"))
# pytorch impl: fp16 output, with fp8 fast accum
timers.append(
bench_fn(a, b, scale_a, scale_b, torch.float16, label, sub_label,
pytorch_fp8_impl_fast_accum,
"pytorch_fp8_fp8_fp16_scaled_mm_fast_accum"))
# cutlass impl: bf16 output
timers.append(
bench_fn(a, b, scale_a, scale_b, torch.bfloat16, label, sub_label,
cutlass_impl, "cutlass_fp8_fp8_bf16_scaled_mm"))
# cutlass impl: fp16 output
timers.append(
bench_fn(a, b, scale_a, scale_b, torch.float16, label, sub_label,
cutlass_impl, "cutlass_fp8_fp8_fp16_scaled_mm"))
return timers
def bench(dtype: torch.dtype, m: int, k: int, n: int, label: str,
sub_label: str) -> Iterable[TMeasurement]:
if dtype == torch.int8:
return bench_int8(dtype, m, k, n, label, sub_label)
if dtype == torch.float8_e4m3fn:
return bench_fp8(dtype, m, k, n, label, sub_label)
raise ValueError("unsupported type")
# runner
def print_timers(timers: Iterable[TMeasurement]):
compare = TBenchmark.Compare(timers)
compare.print()
def run(dtype: torch.dtype,
MKNs: Iterable[Tuple[int, int, int]]) -> Iterable[TMeasurement]:
results = []
for m, k, n in MKNs:
timers = bench(dtype, m, k, n, f"scaled-{dtype}-gemm",
f"MKN=({m}x{k}x{n})")
print_timers(timers)
results.extend(timers)
return results
# output makers
def make_output(data: Iterable[TMeasurement],
MKNs: Iterable[Tuple[int, int, int]],
base_description: str,
timestamp=None):
print(f"== All Results {base_description} ====")
print_timers(data)
# pickle all the results
timestamp = int(time.time()) if timestamp is None else timestamp
with open(f"{base_description}-{timestamp}.pkl", "wb") as f:
pkl.dump(data, f)
# argparse runners
def run_square_bench(args):
dim_sizes = list(
range(args.dim_start, args.dim_end + 1, args.dim_increment))
MKNs = list(zip(dim_sizes, dim_sizes, dim_sizes))
data = run(args.dtype, MKNs)
make_output(data, MKNs, f"square_bench-{args.dtype}")
def run_range_bench(args):
dim_sizes = list(range(args.dim_start, args.dim_end, args.dim_increment))
n = len(dim_sizes)
Ms = [args.m_constant] * n if args.m_constant is not None else dim_sizes
Ks = [args.k_constant] * n if args.k_constant is not None else dim_sizes
Ns = [args.n_constant] * n if args.n_constant is not None else dim_sizes
MKNs = list(zip(Ms, Ks, Ns))
data = run(args.dtype, MKNs)
make_output(data, MKNs, f"range_bench-{args.dtype}")
def run_model_bench(args):
print("Benchmarking models:")
for i, model in enumerate(args.models):
print(f"[{i}] {model}")
def model_shapes(model_name: str, tp_size: int) -> List[Tuple[int, int]]:
KNs = []
for KN, tp_split_dim in copy.deepcopy(WEIGHT_SHAPES[model_name]):
KN[tp_split_dim] = KN[tp_split_dim] // tp_size
KNs.append(KN)
return KNs
model_bench_data = []
models_tps = list(itertools.product(args.models, args.tp_sizes))
for model, tp_size in models_tps:
Ms = args.batch_sizes
KNs = model_shapes(model, tp_size)
MKNs = []
for m in Ms:
for k, n in KNs:
MKNs.append((m, k, n))
data = run(args.dtype, MKNs)
model_bench_data.append(data)
# Print all results
for data, model_tp in zip(model_bench_data, models_tps):
model, tp_size = model_tp
print(f"== Results {args.dtype} {model}-TP{tp_size} ====")
print_timers(data)
timestamp = int(time.time())
all_data = []
for d in model_bench_data:
all_data.extend(d)
# pickle all data
with open(f"model_bench-{args.dtype}-{timestamp}.pkl", "wb") as f:
pkl.dump(all_data, f)
if __name__ == '__main__':
def to_torch_dtype(dt):
if dt == "int8":
return torch.int8
if dt == "fp8":
return torch.float8_e4m3fn
raise ValueError("unsupported dtype")
parser = FlexibleArgumentParser(
description="""
Benchmark Cutlass GEMM.
To run square GEMMs:
python3 ./benchmarks/cutlass_benchmarks/w8a8_benchmarks.py --dtype fp8 square_bench --dim-start 128 --dim-end 512 --dim-increment 64
To run constant N and K and sweep M:
python3 ./benchmarks/cutlass_benchmarks/w8a8_benchmarks.py --dtype fp8 range_bench --dim-start 128 --dim-end 512 --dim-increment 64 --n-constant 16384 --k-constant 16384
To run dimensions from a model:
python3 ./benchmarks/cutlass_benchmarks/w8a8_benchmarks.py --dtype fp8 model_bench --models meta-llama/Llama-2-7b-hf --batch-sizes 16 --tp-sizes 1
Output:
- a .pkl file, that is a list of raw torch.benchmark.utils.Measurements for the pytorch and cutlass implementations for the various GEMMs.
""", # noqa: E501
formatter_class=argparse.RawTextHelpFormatter)
parser.add_argument("--dtype",
type=to_torch_dtype,
required=True,
help="Available options are ['int8', 'fp8']")
subparsers = parser.add_subparsers(dest="cmd")
square_parser = subparsers.add_parser("square_bench")
square_parser.add_argument("--dim-start", type=int, required=True)
square_parser.add_argument("--dim-end", type=int, required=True)
square_parser.add_argument("--dim-increment", type=int, required=True)
square_parser.set_defaults(func=run_square_bench)
range_parser = subparsers.add_parser("range_bench")
range_parser.add_argument("--dim-start", type=int, required=True)
range_parser.add_argument("--dim-end", type=int, required=True)
range_parser.add_argument("--dim-increment", type=int, required=True)
range_parser.add_argument("--m-constant", type=int, default=None)
range_parser.add_argument("--n-constant", type=int, default=None)
range_parser.add_argument("--k-constant", type=int, default=None)
range_parser.set_defaults(func=run_range_bench)
model_parser = subparsers.add_parser("model_bench")
model_parser.add_argument("--models",
nargs="+",
type=str,
default=DEFAULT_MODELS,
choices=WEIGHT_SHAPES.keys())
model_parser.add_argument("--tp-sizes",
nargs="+",
type=int,
default=DEFAULT_TP_SIZES)
model_parser.add_argument("--batch-sizes",
nargs="+",
type=int,
default=DEFAULT_BATCH_SIZES)
model_parser.set_defaults(func=run_model_bench)
args = parser.parse_args()
args.func(args)

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# Weight Shapes are in the format
# ([K, N], TP_SPLIT_DIM)
# Example:
# A shape of ([14336, 4096], 0) indicates the following GEMM shape,
# - TP1 : K = 14336, N = 4096
# - TP2 : K = 7168, N = 4096
# A shape of ([4096, 6144], 1) indicates the following GEMM shape,
# - TP1 : K = 4096, N = 6144
# - TP4 : K = 4096, N = 1536
# TP1 shapes
WEIGHT_SHAPES = {
"mistralai/Mistral-7B-v0.1": [
([4096, 6144], 1),
([4096, 4096], 0),
([4096, 28672], 1),
([14336, 4096], 0),
],
"meta-llama/Llama-2-7b-hf": [
([4096, 12288], 1),
([4096, 4096], 0),
([4096, 22016], 1),
([11008, 4096], 0),
],
"meta-llama/Llama-3-8b": [
([4096, 6144], 1),
([4096, 4096], 0),
([4096, 28672], 1),
([14336, 4096], 0),
],
"meta-llama/Llama-2-13b-hf": [
([5120, 15360], 1),
([5120, 5120], 0),
([5120, 27648], 1),
([13824, 5120], 0),
],
"meta-llama/Llama-2-70b-hf": [
([8192, 10240], 1),
([8192, 8192], 0),
([8192, 57344], 1),
([28672, 8192], 0),
],
}

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import os
import sys
from typing import Optional
import torch
import torch.nn.functional as F
from vllm import _custom_ops as ops
from vllm.model_executor.layers.quantization.aqlm import (
dequantize_weight, generic_dequantize_gemm, get_int_dtype,
optimized_dequantize_gemm)
from vllm.utils import FlexibleArgumentParser
os.environ['CUDA_VISIBLE_DEVICES'] = '0'
def torch_mult(
input: torch.Tensor, # [..., in_features]
weights: torch.Tensor,
scales: torch.Tensor, # [num_out_groups, 1, 1, 1]
) -> torch.Tensor:
output = F.linear(input, weights)
return output
def dequant_out_scale(
input: torch.Tensor, # [..., in_features]
codes: torch.IntTensor, # [num_out_groups, num_in_groups, num_codebooks]
codebooks: torch.
Tensor, # [num_codebooks, codebook_size, out_group_size, in_group_size]
scales: torch.Tensor, # [num_out_groups, 1, 1, 1]
output_partition_sizes: torch.IntTensor,
bias: Optional[torch.Tensor],
) -> torch.Tensor:
weights = ops.aqlm_dequant(codes, codebooks, output_partition_sizes)
if bias is None:
output = F.linear(input, weights, bias)
orig_shape = output.shape
flattened_output = output.view(-1, output.size(-1))
f_scales = scales.view(-1, scales.shape[0])
b_scales = f_scales.expand(flattened_output.shape[0], -1)
flattened_output *= b_scales
return flattened_output.view(orig_shape)
else:
b_scales = scales.view(scales.shape[:-3] + (-1, )).expand(
-1, weights.shape[1])
weights *= b_scales
return F.linear(input, weights, bias)
def dequant_weight_scale(
input: torch.Tensor, # [..., in_features]
codes: torch.IntTensor, # [num_out_groups, num_in_groups, num_codebooks]
codebooks: torch.
Tensor, # [num_codebooks, codebook_size, out_group_size, in_group_size]
scales: torch.Tensor, # [num_out_groups, 1, 1, 1]
output_partition_sizes: torch.IntTensor,
bias: Optional[torch.Tensor],
) -> torch.Tensor:
weights = ops.aqlm_dequant(codes, codebooks, output_partition_sizes)
b_scales = scales.view(scales.shape[:-3] + (-1, )).expand(
-1, weights.shape[1])
weights *= b_scales
return F.linear(input, weights, bias)
def dequant_no_scale(
input: torch.Tensor, # [..., in_features]
codes: torch.IntTensor, # [num_out_groups, num_in_groups, num_codebooks]
codebooks: torch.
Tensor, # [num_codebooks, codebook_size, out_group_size, in_group_size]
scales: torch.Tensor, # [num_out_groups, 1, 1, 1]
output_partition_sizes: torch.IntTensor,
bias: Optional[torch.Tensor],
) -> torch.Tensor:
weights = ops.aqlm_dequant(codes, codebooks, output_partition_sizes)
return F.linear(input, weights, bias)
# Compare the optimized 1x16 and 2x8 cuda decompression/dequant kernels against
# the generic pytorch version.
# Just visual comparison.
def dequant_test(k: int, parts: torch.Tensor, nbooks: int, bits: int) -> None:
n = int(parts.sum().item())
device = torch.device('cuda:0')
code_range = (1 << bits) // 2
ingroups = 8
codes = torch.randint(-code_range,
code_range,
size=(n, k // ingroups, nbooks),
dtype=get_int_dtype(bits),
device=device)
codebooks = torch.randn(size=(parts.shape[0] * nbooks, 1 << bits, 1, 8),
dtype=torch.float16,
device=device)
count = 0
for index in range(16):
for i in range(8):
for book in range(nbooks):
codebooks[book, index, 0, i] = count * (10**book)
count += 1
print("codes shape", codes.shape)
for i in range(16):
for book in range(nbooks):
codes[0, i, book] = i
codes[0, -i, book] = i
weights = dequantize_weight(codes, codebooks, None)
weights2 = ops.aqlm_dequant(codes, codebooks, parts)
print("weights shape:", weights.shape)
print("weights2 shape:", weights2.shape)
print("weights are:", weights)
print("weights2 are:", weights2)
print("first 128 weights are", weights[0, 0:128].to(torch.int32))
print("first 128 weights2 are:", weights2[0, 0:128].to(torch.int32))
print("last 128 weights are", weights[0, -128:])
print("last 128 weights2 are:", weights2[0, -128:])
def main():
parser = FlexibleArgumentParser(description="Benchmark aqlm performance.")
# Add arguments
parser.add_argument("--nbooks",
type=int,
default=1,
help="Number of codebooks (default: 1)")
parser.add_argument("--bits",
type=int,
default=16,
help="Number of bits per code element (default: 16)")
parser.add_argument(
"--test",
type=bool,
default=False,
help="Run the decompression/dequant tester rather than benchmarking "
"(default: False)")
# Parse the arguments
args = parser.parse_args()
# Extract values
nbooks = args.nbooks
bits = args.bits
if args.test:
dequant_test(4096, torch.tensor((4096, )), nbooks, bits)
return
# Otherwise, benchmark.
methods = [
ops.aqlm_gemm,
dequant_out_scale,
generic_dequantize_gemm,
optimized_dequantize_gemm,
dequant_weight_scale,
torch_mult,
dequant_no_scale,
]
filename = f"./aqlm_benchmark_{nbooks}x{bits}.csv"
print(f"writing benchmarks to file {filename}")
with open(filename, "w") as f:
sys.stdout = f
print('m | k | n | n parts', end='')
for method in methods:
print(f" | {method.__name__.replace('_', ' ')} (µs)", end='')
print('')
# These are reasonable prefill sizes.
ksandpartions = ((4096, (4096, 4096, 4096)), (4096, (4096, )),
(4096, (11008, 11008)), (11008, (4096, )))
# reasonable ranges for m.
for m in [
1, 2, 4, 8, 10, 12, 14, 16, 24, 32, 48, 52, 56, 64, 96, 112,
128, 256, 512, 1024, 1536, 2048, 3072, 4096
]:
print(f'{m}', file=sys.__stdout__)
for ksp in ksandpartions:
run_grid(m, ksp[0], torch.tensor(ksp[1]), nbooks, bits,
methods)
sys.stdout = sys.__stdout__
def run_grid(m: int, k: int, parts: torch.Tensor, nbooks: int, bits: int,
methods):
# I didn't see visible improvements from increasing these, but feel free :)
num_warmup_trials = 1
num_trials = 1
num_calls = 100
# warmup.
for method in methods:
for _ in range(num_warmup_trials):
run_timing(
num_calls=num_calls,
m=m,
k=k,
parts=parts,
nbooks=nbooks,
bits=bits,
method=method,
)
n = parts.sum().item()
print(f'{m} | {k} | {n} | {parts.tolist()}', end='')
for method in methods:
best_time_us = 1e20
for _ in range(num_trials):
kernel_dur_ms = run_timing(
num_calls=num_calls,
m=m,
k=k,
parts=parts,
nbooks=nbooks,
bits=bits,
method=method,
)
kernel_dur_us = 1000 * kernel_dur_ms
if kernel_dur_us < best_time_us:
best_time_us = kernel_dur_us
print(f' | {kernel_dur_us:.0f}', end='')
print('')
def run_timing(num_calls: int, m: int, k: int, parts: torch.Tensor,
nbooks: int, bits: int, method) -> float:
n = int(parts.sum().item())
device = torch.device('cuda:0')
input = torch.randn((1, m, k), dtype=torch.float16, device=device)
code_range = (1 << bits) // 2
ingroups = 8
codes = torch.randint(-code_range,
code_range,
size=(n, k // ingroups, nbooks),
dtype=get_int_dtype(bits),
device=device)
codebooks = torch.randn(size=(parts.shape[0] * nbooks, 1 << bits, 1, 8),
dtype=torch.float16,
device=device)
scales = torch.randn(size=(n, 1, 1, 1), dtype=torch.float16, device=device)
# for comparison to just a pytorch mult.
weights = torch.randn((n, k), dtype=torch.float16, device=device)
start_event = torch.cuda.Event(enable_timing=True)
end_event = torch.cuda.Event(enable_timing=True)
start_event.record()
if method is torch_mult:
for i in range(num_calls):
torch_mult(input, weights, scales)
else:
for i in range(num_calls):
method(input, codes, codebooks, scales, parts, None)
end_event.record()
end_event.synchronize()
dur_ms = start_event.elapsed_time(end_event) / num_calls
return dur_ms
if __name__ == "__main__":
sys.exit(main())

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from typing import List
import torch
import torch.utils.benchmark as benchmark
from benchmark_shapes import WEIGHT_SHAPES
from vllm import _custom_ops as ops
from vllm.model_executor.layers.quantization.gptq_marlin import (
GPTQ_MARLIN_MAX_PARALLEL, GPTQ_MARLIN_MIN_THREAD_N,
GPTQ_MARLIN_SUPPORTED_GROUP_SIZES, GPTQ_MARLIN_SUPPORTED_NUM_BITS)
from vllm.model_executor.layers.quantization.gptq_marlin_24 import (
GPTQ_MARLIN_24_MAX_PARALLEL, GPTQ_MARLIN_24_MIN_THREAD_N,
GPTQ_MARLIN_24_SUPPORTED_GROUP_SIZES, GPTQ_MARLIN_24_SUPPORTED_NUM_BITS)
from vllm.model_executor.layers.quantization.utils.marlin_utils import (
MarlinWorkspace, marlin_24_quantize, marlin_quantize)
from vllm.model_executor.layers.quantization.utils.quant_utils import (
gptq_pack, quantize_weights, sort_weights)
from vllm.utils import FlexibleArgumentParser
DEFAULT_MODELS = ["meta-llama/Llama-2-7b-hf/TP1"]
DEFAULT_BATCH_SIZES = [1, 16, 32, 64, 128, 256, 512]
ACT_ORDER_OPTS = [False, True]
K_FULL_OPTS = [False, True]
def bench_run(results: List[benchmark.Measurement], model: str,
act_order: bool, is_k_full: bool, num_bits: int, group_size: int,
size_m: int, size_k: int, size_n: int):
label = "Quant Matmul"
sub_label = ("{}, act={} k_full={}, b={}, g={}, "
"MKN=({}x{}x{})".format(model, act_order, is_k_full, num_bits,
group_size, size_m, size_k, size_n))
print(f"Testing: {sub_label}")
a = torch.randn(size_m, size_k).to(torch.half).cuda()
b = torch.rand(size_k, size_n).to(torch.half).cuda()
a_tmp = (torch.zeros(size_m, size_k).to(torch.half).cuda())
# Marlin quant
(
marlin_w_ref,
marlin_q_w,
marlin_s,
marlin_g_idx,
marlin_sort_indices,
marlin_rand_perm,
) = marlin_quantize(b, num_bits, group_size, act_order)
# Marlin_24 quant
(marlin_24_w_ref, marlin_24_q_w_comp, marlin_24_meta,
marlin_24_s) = marlin_24_quantize(b, num_bits, group_size)
# GPTQ quant
(w_ref, q_w, s, g_idx,
rand_perm) = quantize_weights(b, num_bits, group_size, act_order)
q_w_gptq = gptq_pack(q_w, num_bits, size_k, size_n)
# For act_order, sort the "weights" and "g_idx"
# so that group ids are increasing
repack_sort_indices = torch.empty(0, dtype=torch.int, device=b.device)
if act_order:
(q_w, g_idx, repack_sort_indices) = sort_weights(q_w, g_idx)
# Prepare
marlin_workspace = MarlinWorkspace(size_n, GPTQ_MARLIN_MIN_THREAD_N,
GPTQ_MARLIN_MAX_PARALLEL)
marlin_24_workspace = MarlinWorkspace(size_n, GPTQ_MARLIN_24_MIN_THREAD_N,
GPTQ_MARLIN_24_MAX_PARALLEL)
globals = {
# Gen params
"num_bits": num_bits,
"group_size": group_size,
"size_m": size_m,
"size_n": size_n,
"size_k": size_k,
"a": a,
"a_tmp": a_tmp,
# Marlin params
"marlin_w_ref": marlin_w_ref,
"marlin_q_w": marlin_q_w,
"marlin_s": marlin_s,
"marlin_g_idx": marlin_g_idx,
"marlin_sort_indices": marlin_sort_indices,
"marlin_rand_perm": marlin_rand_perm,
"marlin_workspace": marlin_workspace,
"is_k_full": is_k_full,
# Marlin_24 params
"marlin_24_w_ref": marlin_24_w_ref,
"marlin_24_q_w_comp": marlin_24_q_w_comp,
"marlin_24_meta": marlin_24_meta,
"marlin_24_s": marlin_24_s,
"marlin_24_workspace": marlin_24_workspace,
# GPTQ params
"q_w_gptq": q_w_gptq,
"repack_sort_indices": repack_sort_indices,
# Kernels
"gptq_marlin_gemm": ops.gptq_marlin_gemm,
"gptq_marlin_24_gemm": ops.gptq_marlin_24_gemm,
"gptq_marlin_repack": ops.gptq_marlin_repack,
}
min_run_time = 1
# Warmup pytorch
for i in range(5):
torch.matmul(a, marlin_w_ref)
results.append(
benchmark.Timer(
stmt="torch.matmul(a, marlin_w_ref)",
globals=globals,
label=label,
sub_label=sub_label,
description="pytorch_gemm",
).blocked_autorange(min_run_time=min_run_time))
results.append(
benchmark.Timer(
stmt=
"output = gptq_marlin_gemm(a, marlin_q_w, marlin_s, marlin_g_idx, marlin_sort_indices, marlin_workspace.scratch, num_bits, size_m, size_n, size_k, is_k_full)", # noqa: E501
globals=globals,
label=label,
sub_label=sub_label,
description="gptq_marlin_gemm",
).blocked_autorange(min_run_time=min_run_time))
if (num_bits in GPTQ_MARLIN_24_SUPPORTED_NUM_BITS
and group_size in GPTQ_MARLIN_24_SUPPORTED_GROUP_SIZES):
results.append(
benchmark.Timer(
stmt=
"output = gptq_marlin_24_gemm(a, marlin_24_q_w_comp, marlin_24_meta, marlin_24_s, marlin_24_workspace.scratch, num_bits, size_m, size_n, size_k)", # noqa: E501
globals=globals,
label=label,
sub_label=sub_label,
description="gptq_marlin_24_gemm",
).blocked_autorange(min_run_time=min_run_time))
results.append(
benchmark.Timer(
stmt=
"q_res = gptq_marlin_repack(q_w_gptq, repack_sort_indices, size_k, size_n, num_bits)", # noqa: E501
globals=globals,
label=label,
sub_label=sub_label,
description="gptq_marlin_repack",
).blocked_autorange(min_run_time=min_run_time))
def main(args):
print("Benchmarking models:")
for i, model in enumerate(args.models):
print(f"[{i}] {model}")
results: List[benchmark.Measurement] = []
for model in args.models:
for layer in WEIGHT_SHAPES[model]:
size_k = layer[0]
size_n = layer[1]
if len(args.limit_k) > 0 and size_k not in args.limit_k:
continue
if len(args.limit_n) > 0 and size_n not in args.limit_n:
continue
for act_order in ACT_ORDER_OPTS:
if len(args.limit_act_order
) > 0 and act_order not in args.limit_act_order:
continue
for is_k_full in K_FULL_OPTS:
if len(args.limit_k_full
) > 0 and is_k_full not in args.limit_k_full:
continue
for num_bits in GPTQ_MARLIN_SUPPORTED_NUM_BITS:
if len(args.limit_num_bits
) > 0 and num_bits not in args.limit_num_bits:
continue
for group_size in GPTQ_MARLIN_SUPPORTED_GROUP_SIZES:
if len(
args.limit_group_size
) > 0 and group_size not in args.limit_group_size:
continue
# For act_order, the group_size must be less than
# size_k
if act_order and (group_size == size_k
or group_size == -1):
continue
for size_m in args.batch_sizes:
bench_run(results, model, act_order, is_k_full,
num_bits, group_size, size_m, size_k,
size_n)
compare = benchmark.Compare(results)
compare.print()
# For quick benchmarking use:
# python benchmark_marlin.py --batch-sizes 1 16 32 --limit-k 4096 --limit-n 4096 --limit-group-size 128 --limit-num-bits 4 --limit-act-order 0 --limit-k-full 1 # noqa E501
#
if __name__ == "__main__":
parser = FlexibleArgumentParser(
description="Benchmark Marlin across specified models/shapes/batches")
parser.add_argument(
"--models",
nargs="+",
type=str,
default=DEFAULT_MODELS,
choices=WEIGHT_SHAPES.keys(),
)
parser.add_argument("--batch-sizes",
nargs="+",
type=int,
default=DEFAULT_BATCH_SIZES)
parser.add_argument("--limit-k", nargs="+", type=int, default=[])
parser.add_argument("--limit-n", nargs="+", type=int, default=[])
parser.add_argument("--limit-group-size", nargs="+", type=int, default=[])
parser.add_argument("--limit-num-bits", nargs="+", type=int, default=[])
parser.add_argument("--limit-act-order", nargs="+", type=int, default=[])
parser.add_argument("--limit-k-full", nargs="+", type=int, default=[])
args = parser.parse_args()
main(args)

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import argparse
import time
from datetime import datetime
from typing import Any, Dict, List, Tuple, TypedDict
import ray
import torch
import triton
from ray.experimental.tqdm_ray import tqdm
from transformers import AutoConfig
from vllm.model_executor.layers.fused_moe.fused_moe import *
from vllm.utils import FlexibleArgumentParser
class BenchmarkConfig(TypedDict):
BLOCK_SIZE_M: int
BLOCK_SIZE_N: int
BLOCK_SIZE_K: int
GROUP_SIZE_M: int
num_warps: int
num_stages: int
def benchmark_config(
config: BenchmarkConfig,
num_tokens: int,
num_experts: int,
shard_intermediate_size: int,
hidden_size: int,
topk: int,
dtype: torch.dtype,
use_fp8: bool,
num_iters: int = 100,
) -> float:
init_dtype = torch.float16 if use_fp8 else dtype
x = torch.randn(num_tokens, hidden_size, dtype=dtype)
w1 = torch.randn(num_experts,
shard_intermediate_size,
hidden_size,
dtype=init_dtype)
w2 = torch.randn(num_experts,
hidden_size,
shard_intermediate_size // 2,
dtype=init_dtype)
gating_output = torch.randn(num_iters,
num_tokens,
num_experts,
dtype=torch.float32)
w1_scale = None
w2_scale = None
a1_scale = None
a2_scale = None
if use_fp8:
w1_scale = torch.randn(num_experts, dtype=torch.float32)
w2_scale = torch.randn(num_experts, dtype=torch.float32)
a1_scale = torch.randn(1, dtype=torch.float32)
a2_scale = torch.randn(1, dtype=torch.float32)
w1 = w1.to(torch.float8_e4m3fn)
w2 = w2.to(torch.float8_e4m3fn)
input_gating = torch.empty(num_tokens, num_experts, dtype=torch.float32)
def prepare(i: int):
input_gating.copy_(gating_output[i])
def run():
fused_moe(
x,
w1,
w2,
input_gating,
topk,
renormalize=True,
inplace=True,
override_config=config,
use_fp8=use_fp8,
w1_scale=w1_scale,
w2_scale=w2_scale,
a1_scale=a1_scale,
a2_scale=a2_scale,
)
# JIT compilation & warmup
run()
torch.cuda.synchronize()
# Capture 10 invocations with CUDA graph
graph = torch.cuda.CUDAGraph()
with torch.cuda.graph(graph):
for _ in range(10):
run()
torch.cuda.synchronize()
# Warmup
for _ in range(5):
graph.replay()
torch.cuda.synchronize()
start_event = torch.cuda.Event(enable_timing=True)
end_event = torch.cuda.Event(enable_timing=True)
latencies: List[float] = []
for i in range(num_iters):
prepare(i)
torch.cuda.synchronize()
start_event.record()
graph.replay()
end_event.record()
end_event.synchronize()
latencies.append(start_event.elapsed_time(end_event))
avg = sum(latencies) / (num_iters * 10) * 1000 # us
graph.reset()
return avg
def get_configs_compute_bound() -> List[Dict[str, int]]:
# Reduced search space for faster tuning.
# TODO(woosuk): Increase the search space and use a performance model to
# prune the search space.
configs: List[BenchmarkConfig] = []
for num_stages in [2, 3, 4, 5]:
for block_m in [16, 32, 64, 128, 256]:
for block_k in [64, 128, 256]:
for block_n in [32, 64, 128, 256]:
for num_warps in [4, 8]:
for group_size in [1, 16, 32, 64]:
configs.append({
"BLOCK_SIZE_M": block_m,
"BLOCK_SIZE_N": block_n,
"BLOCK_SIZE_K": block_k,
"GROUP_SIZE_M": group_size,
"num_warps": num_warps,
"num_stages": num_stages,
})
return configs
@ray.remote(num_gpus=1)
class BenchmarkWorker:
def __init__(self, seed: int) -> None:
torch.set_default_device("cuda")
torch.cuda.manual_seed_all(seed)
self.seed = seed
def benchmark(
self,
num_tokens: int,
num_experts: int,
shard_intermediate_size: int,
hidden_size: int,
topk: int,
dtype: torch.dtype,
use_fp8: bool,
) -> Tuple[Dict[str, int], float]:
torch.cuda.manual_seed_all(self.seed)
dtype_str = "float8" if use_fp8 else None
# NOTE(woosuk): The current naming convention uses w2.shape[2], which
# is the intermediate size after silu_and_mul.
op_config = get_moe_configs(num_experts, shard_intermediate_size // 2,
dtype_str)
if op_config is None:
config = get_default_config(num_tokens, num_experts,
shard_intermediate_size, hidden_size,
topk, dtype_str)
else:
config = op_config[min(op_config.keys(),
key=lambda x: abs(x - num_tokens))]
kernel_time = benchmark_config(config, num_tokens, num_experts,
shard_intermediate_size, hidden_size,
topk, dtype, use_fp8)
return config, kernel_time
def tune(
self,
num_tokens: int,
num_experts: int,
shard_intermediate_size: int,
hidden_size: int,
topk: int,
dtype: torch.dtype,
use_fp8: bool,
search_space: List[BenchmarkConfig],
) -> BenchmarkConfig:
best_config = None
best_time = float("inf")
for config in tqdm(search_space):
try:
kernel_time = benchmark_config(config,
num_tokens,
num_experts,
shard_intermediate_size,
hidden_size,
topk,
dtype,
use_fp8,
num_iters=10)
except triton.runtime.autotuner.OutOfResources:
# Some configurations may be invalid and fail to compile.
continue
if kernel_time < best_time:
best_time = kernel_time
best_config = config
now = datetime.now()
print(f"{now.ctime()}] Completed tuning for batch_size={num_tokens}")
assert best_config is not None
return best_config
def sort_config(config: BenchmarkConfig) -> BenchmarkConfig:
return {
"BLOCK_SIZE_M": config["BLOCK_SIZE_M"],
"BLOCK_SIZE_N": config["BLOCK_SIZE_N"],
"BLOCK_SIZE_K": config["BLOCK_SIZE_K"],
"GROUP_SIZE_M": config["GROUP_SIZE_M"],
"num_warps": config["num_warps"],
"num_stages": config["num_stages"],
}
def save_configs(
configs: Dict[int, BenchmarkConfig],
num_experts: int,
shard_intermediate_size: int,
hidden_size: int,
topk: int,
dtype: torch.dtype,
use_fp8: bool,
) -> None:
dtype_str = "float8" if use_fp8 else None
# NOTE(woosuk): The current naming convention uses w2.shape[2], which
# is the intermediate size after silu_and_mul.
filename = get_config_file_name(num_experts, shard_intermediate_size // 2,
dtype_str)
print(f"Writing best config to {filename}...")
with open(filename, "w") as f:
json.dump(configs, f, indent=4)
f.write("\n")
def main(args: argparse.Namespace):
print(args)
config = AutoConfig.from_pretrained(args.model)
if config.architectures[0] == "DbrxForCausalLM":
E = config.ffn_config.moe_num_experts
topk = config.ffn_config.moe_top_k
intermediate_size = config.ffn_config.ffn_hidden_size
shard_intermediate_size = 2 * intermediate_size // args.tp_size
else:
# Default: Mixtral.
E = config.num_local_experts
topk = config.num_experts_per_tok
intermediate_size = config.intermediate_size
shard_intermediate_size = 2 * intermediate_size // args.tp_size
hidden_size = config.hidden_size
dtype = config.torch_dtype
use_fp8 = args.dtype == "fp8"
if args.batch_size is None:
batch_sizes = [
1, 2, 4, 8, 16, 24, 32, 48, 64, 96, 128, 256, 512, 1024, 1536,
2048, 3072, 4096
]
else:
batch_sizes = [args.batch_size]
ray.init()
num_gpus = int(ray.available_resources()["GPU"])
workers = [BenchmarkWorker.remote(args.seed) for _ in range(num_gpus)]
def _distribute(method: str, inputs: List[Any]) -> List[Any]:
outputs = []
worker_idx = 0
for input_args in inputs:
worker = workers[worker_idx]
worker_method = getattr(worker, method)
output = worker_method.remote(*input_args)
outputs.append(output)
worker_idx = (worker_idx + 1) % num_gpus
return ray.get(outputs)
if args.tune:
search_space = get_configs_compute_bound()
print(f"Start tuning over {len(search_space)} configurations...")
start = time.time()
configs = _distribute(
"tune", [(batch_size, E, shard_intermediate_size, hidden_size,
topk, dtype, use_fp8, search_space)
for batch_size in batch_sizes])
best_configs = {
M: sort_config(config)
for M, config in zip(batch_sizes, configs)
}
save_configs(best_configs, E, shard_intermediate_size, hidden_size,
topk, dtype, use_fp8)
end = time.time()
print(f"Tuning took {end - start:.2f} seconds")
else:
outputs = _distribute("benchmark",
[(batch_size, E, shard_intermediate_size,
hidden_size, topk, dtype, use_fp8)
for batch_size in batch_sizes])
for batch_size, (config, kernel_time) in zip(batch_sizes, outputs):
print(f"Batch size: {batch_size}, config: {config}")
print(f"Kernel time: {kernel_time:.2f} us")
if __name__ == "__main__":
parser = FlexibleArgumentParser()
parser.add_argument("--model",
type=str,
default="mistralai/Mixtral-8x7B-Instruct-v0.1")
parser.add_argument("--tp-size", "-tp", type=int, default=2)
parser.add_argument("--dtype",
type=str,
choices=["auto", "fp8"],
default="auto")
parser.add_argument("--seed", type=int, default=0)
parser.add_argument("--batch-size", type=int, required=False)
parser.add_argument("--tune", action="store_true")
args = parser.parse_args()
main(args)

View File

@@ -1,10 +1,12 @@
import argparse
import random
import time
from typing import List, Optional
import torch
from vllm._C import ops
from vllm import _custom_ops as ops
from vllm.utils import (STR_DTYPE_TO_TORCH_DTYPE, FlexibleArgumentParser,
create_kv_caches_with_random)
NUM_BLOCKS = 1024
PARTITION_SIZE = 512
@@ -14,7 +16,7 @@ PARTITION_SIZE = 512
def main(
version: str,
num_seqs: int,
context_len: int,
seq_len: int,
num_query_heads: int,
num_kv_heads: int,
head_size: int,
@@ -23,17 +25,20 @@ def main(
dtype: torch.dtype,
seed: int,
do_profile: bool,
device: str = "cuda",
kv_cache_dtype: Optional[str] = None,
) -> None:
random.seed(seed)
torch.random.manual_seed(seed)
torch.cuda.manual_seed(seed)
if torch.cuda.is_available():
torch.cuda.manual_seed(seed)
scale = float(1.0 / (head_size**0.5))
query = torch.empty(num_seqs,
num_query_heads,
head_size,
dtype=dtype,
device="cuda")
device=device)
query.uniform_(-scale, scale)
assert num_query_heads % num_kv_heads == 0
@@ -41,39 +46,41 @@ def main(
if use_alibi:
alibi_slopes = torch.randn(num_query_heads,
dtype=torch.float,
device="cuda")
device=device)
context_lens = [context_len for _ in range(num_seqs)]
max_context_len = max(context_lens)
context_lens = torch.tensor(context_lens, dtype=torch.int, device="cuda")
seq_lens = [seq_len for _ in range(num_seqs)]
max_seq_len = max(seq_lens)
seq_lens = torch.tensor(seq_lens, dtype=torch.int, device=device)
# Create the block tables.
max_num_blocks_per_seq = (max_context_len + block_size - 1) // block_size
block_tables = []
max_num_blocks_per_seq = (max_seq_len + block_size - 1) // block_size
block_tables_lst: List[List[int]] = []
for _ in range(num_seqs):
block_table = [
random.randint(0, NUM_BLOCKS - 1)
for _ in range(max_num_blocks_per_seq)
]
block_tables.append(block_table)
block_tables = torch.tensor(block_tables, dtype=torch.int, device="cuda")
block_tables_lst.append(block_table)
block_tables = torch.tensor(block_tables_lst,
dtype=torch.int,
device=device)
# Create the KV cache.
x = 16 // torch.tensor([], dtype=dtype).element_size()
key_cache_shape = (NUM_BLOCKS, num_kv_heads, head_size // x, block_size, x)
key_cache = torch.empty(size=key_cache_shape, dtype=dtype, device="cuda")
key_cache.uniform_(-scale, scale)
value_cache_shape = (NUM_BLOCKS, num_kv_heads, head_size, block_size)
value_cache = torch.empty(size=value_cache_shape,
dtype=dtype,
device="cuda")
value_cache.uniform_(-scale, scale)
key_caches, value_caches = create_kv_caches_with_random(NUM_BLOCKS,
block_size,
1,
num_kv_heads,
head_size,
kv_cache_dtype,
dtype,
device=device)
key_cache, value_cache = key_caches[0], value_caches[0]
# Prepare for the paged attention kernel.
output = torch.empty_like(query)
if version == "v2":
num_partitions = ((max_context_len + PARTITION_SIZE - 1) //
PARTITION_SIZE)
num_partitions = ((max_seq_len + PARTITION_SIZE - 1) // PARTITION_SIZE)
tmp_output = torch.empty(
size=(num_seqs, num_query_heads, num_partitions, head_size),
dtype=output.dtype,
@@ -86,12 +93,15 @@ def main(
)
max_logits = torch.empty_like(exp_sums)
def run_benchmark(num_iters: int, profile: bool = False) -> float:
def run_cuda_benchmark(num_iters: int, profile: bool = False) -> float:
torch.cuda.synchronize()
if profile:
torch.cuda.cudart().cudaProfilerStart()
start_time = time.perf_counter()
# Using default kv_scale
kv_scale = 1.0
for _ in range(num_iters):
if version == "v1":
ops.paged_attention_v1(
@@ -102,10 +112,12 @@ def main(
num_kv_heads,
scale,
block_tables,
context_lens,
seq_lens,
block_size,
max_context_len,
max_seq_len,
alibi_slopes,
kv_cache_dtype,
kv_scale,
)
elif version == "v2":
ops.paged_attention_v2(
@@ -119,10 +131,12 @@ def main(
num_kv_heads,
scale,
block_tables,
context_lens,
seq_lens,
block_size,
max_context_len,
max_seq_len,
alibi_slopes,
kv_cache_dtype,
kv_scale,
)
else:
raise ValueError(f"Invalid version: {version}")
@@ -135,6 +149,7 @@ def main(
# Warmup.
print("Warming up...")
run_benchmark = run_cuda_benchmark
run_benchmark(num_iters=3, profile=False)
# Benchmark.
@@ -146,19 +161,19 @@ def main(
if __name__ == '__main__':
parser = argparse.ArgumentParser(
parser = FlexibleArgumentParser(
description="Benchmark the paged attention kernel.")
parser.add_argument("--version",
type=str,
choices=["v1", "v2"],
default="v2")
parser.add_argument("--batch-size", type=int, default=8)
parser.add_argument("--context-len", type=int, default=4096)
parser.add_argument("--seq-len", type=int, default=4096)
parser.add_argument("--num-query-heads", type=int, default=64)
parser.add_argument("--num-kv-heads", type=int, default=8)
parser.add_argument("--head-size",
type=int,
choices=[64, 80, 96, 112, 128, 256],
choices=[64, 80, 96, 112, 128, 192, 256],
default=128)
parser.add_argument("--block-size", type=int, choices=[16, 32], default=16)
parser.add_argument("--use-alibi", action="store_true")
@@ -168,26 +183,30 @@ if __name__ == '__main__':
default="half")
parser.add_argument("--seed", type=int, default=0)
parser.add_argument("--profile", action="store_true")
parser.add_argument(
"--kv-cache-dtype",
type=str,
choices=["auto", "fp8", "fp8_e5m2", "fp8_e4m3"],
default="auto",
help="Data type for kv cache storage. If 'auto', will use model "
"data type. CUDA 11.8+ supports fp8 (=fp8_e4m3) and fp8_e5m2. "
"ROCm (AMD GPU) supports fp8 (=fp8_e4m3)")
args = parser.parse_args()
print(args)
if args.num_query_heads % args.num_kv_heads != 0:
raise ValueError("num_query_heads must be divisible by num_kv_heads")
dtype_to_torch_dtype = {
"half": torch.half,
"bfloat16": torch.bfloat16,
"float": torch.float,
}
main(
version=args.version,
num_seqs=args.batch_size,
context_len=args.context_len,
seq_len=args.seq_len,
num_query_heads=args.num_query_heads,
num_kv_heads=args.num_kv_heads,
head_size=args.head_size,
block_size=args.block_size,
use_alibi=args.use_alibi,
dtype=dtype_to_torch_dtype[args.dtype],
dtype=STR_DTYPE_TO_TORCH_DTYPE[args.dtype],
seed=args.seed,
do_profile=args.profile,
kv_cache_dtype=args.kv_cache_dtype,
)

View File

@@ -0,0 +1,122 @@
from itertools import accumulate
from typing import List, Optional
import nvtx
import torch
from vllm.model_executor.layers.rotary_embedding import (RotaryEmbedding,
get_rope)
from vllm.utils import FlexibleArgumentParser
def benchmark_rope_kernels_multi_lora(
is_neox_style: bool,
batch_size: int,
seq_len: int,
num_heads: int,
head_size: int,
rotary_dim: Optional[int],
dtype: torch.dtype,
seed: int,
device: str,
max_position: int = 8192,
base: int = 10000,
) -> None:
torch.random.manual_seed(seed)
if torch.cuda.is_available():
torch.cuda.manual_seed(seed)
torch.set_default_device(device)
if rotary_dim is None:
rotary_dim = head_size
# silulating serving 4 LoRAs
scaling_factors = [1, 2, 4, 8]
# batched RoPE can take multiple scaling factors
batched_rope = get_rope(head_size, rotary_dim, max_position, base,
is_neox_style, {
"type": "linear",
"factor": tuple(scaling_factors)
})
# non-batched RoPE takes only one scaling factor, we create multiple
# instances to simulate the same behavior
non_batched_ropes: List[RotaryEmbedding] = []
for scaling_factor in scaling_factors:
non_batched_ropes.append(
get_rope(head_size, rotary_dim, max_position, base, is_neox_style,
{
"type": "linear",
"factor": (scaling_factor, )
}))
positions = torch.randint(0, max_position, (batch_size, seq_len))
query = torch.randn(batch_size,
seq_len,
num_heads * head_size,
dtype=dtype)
key = torch.randn_like(query)
# create query offsets for batched RoPE, we concat multiple kv cache
# together and each query needs to find the right kv cache of its type
offset_map = torch.tensor(
list(
accumulate([0] + [
max_position * scaling_factor * 2
for scaling_factor in scaling_factors[:-1]
])))
query_types = torch.randint(0,
len(scaling_factors), (batch_size, seq_len),
device=device)
# map query types to offsets
query_offsets = offset_map[query_types]
# the kernel takes flattened offsets
flatten_offsets = query_offsets.flatten()
# batched queries of the same type together for non-batched RoPE
queries = [query[query_types == i] for i in range(len(scaling_factors))]
keys = [key[query_types == i] for i in range(len(scaling_factors))]
packed_qkr = zip(queries, keys, non_batched_ropes)
# synchronize before start timing
torch.cuda.synchronize()
with nvtx.annotate("non-batched", color="yellow"):
for q, k, r in packed_qkr:
r.forward(positions, q, k)
torch.cuda.synchronize()
with nvtx.annotate("batched", color="green"):
batched_rope.forward(positions, query, key, flatten_offsets)
torch.cuda.synchronize()
if __name__ == '__main__':
parser = FlexibleArgumentParser(
description="Benchmark the rotary embedding kernels.")
parser.add_argument("--is-neox-style", type=bool, default=True)
parser.add_argument("--batch-size", type=int, default=16)
parser.add_argument("--seq-len", type=int, default=512)
parser.add_argument("--num-heads", type=int, default=8)
parser.add_argument("--head-size",
type=int,
choices=[64, 80, 96, 112, 128, 192, 256],
default=128)
parser.add_argument("--rotary-dim", type=int, choices=[16, 32], default=32)
parser.add_argument("--dtype",
type=str,
choices=["bfloat16", "float"],
default="float")
parser.add_argument("--seed", type=int, default=0)
parser.add_argument("--device",
type=str,
choices=["cuda:0", "cuda:1"],
default="cuda:0")
args = parser.parse_args()
print(args)
benchmark_rope_kernels_multi_lora(
is_neox_style=args.is_neox_style,
batch_size=args.batch_size,
seq_len=args.seq_len,
num_heads=args.num_heads,
head_size=args.head_size,
rotary_dim=args.rotary_dim,
dtype=getattr(torch, args.dtype),
seed=args.seed,
device=args.device,
)

View File

@@ -0,0 +1,75 @@
WEIGHT_SHAPES = {
"ideal": [[4 * 256 * 32, 256 * 32]],
"mistralai/Mistral-7B-v0.1/TP1": [
[4096, 6144],
[4096, 4096],
[4096, 28672],
[14336, 4096],
],
"mistralai/Mistral-7B-v0.1/TP2": [
[4096, 3072],
[2048, 4096],
[4096, 14336],
[7168, 4096],
],
"mistralai/Mistral-7B-v0.1/TP4": [
[4096, 1536],
[1024, 4096],
[4096, 7168],
[3584, 4096],
],
"meta-llama/Llama-2-7b-hf/TP1": [
[4096, 12288],
[4096, 4096],
[4096, 22016],
[11008, 4096],
],
"meta-llama/Llama-2-7b-hf/TP2": [
[4096, 6144],
[2048, 4096],
[4096, 11008],
[5504, 4096],
],
"meta-llama/Llama-2-7b-hf/TP4": [
[4096, 3072],
[1024, 4096],
[4096, 5504],
[2752, 4096],
],
"meta-llama/Llama-2-13b-hf/TP1": [
[5120, 15360],
[5120, 5120],
[5120, 27648],
[13824, 5120],
],
"meta-llama/Llama-2-13b-hf/TP2": [
[5120, 7680],
[2560, 5120],
[5120, 13824],
[6912, 5120],
],
"meta-llama/Llama-2-13b-hf/TP4": [
[5120, 3840],
[1280, 5120],
[5120, 6912],
[3456, 5120],
],
"meta-llama/Llama-2-70b-hf/TP1": [
[8192, 10240],
[8192, 8192],
[8192, 57344],
[28672, 8192],
],
"meta-llama/Llama-2-70b-hf/TP2": [
[8192, 5120],
[4096, 8192],
[8192, 28672],
[14336, 8192],
],
"meta-llama/Llama-2-70b-hf/TP4": [
[8192, 2560],
[2048, 8192],
[8192, 14336],
[7168, 8192],
],
}

View File

@@ -4,9 +4,9 @@ PORT=8000
MODEL=$1
TOKENS=$2
docker run --gpus all --shm-size 1g -p $PORT:80 \
docker run -e HF_TOKEN=$HF_TOKEN --gpus all --shm-size 1g -p $PORT:80 \
-v $PWD/data:/data \
ghcr.io/huggingface/text-generation-inference:0.8 \
ghcr.io/huggingface/text-generation-inference:1.4.0 \
--model-id $MODEL \
--sharded false \
--max-input-length 1024 \

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import cProfile
import pstats
from vllm import LLM, SamplingParams
from vllm.utils import FlexibleArgumentParser
# A very long prompt, total number of tokens is about 15k.
LONG_PROMPT = ["You are an expert in large language models, aren't you?"
] * 1000
LONG_PROMPT = ' '.join(LONG_PROMPT)
def main(args):
llm = LLM(
model=args.model,
enforce_eager=True,
enable_prefix_caching=True,
tensor_parallel_size=args.tensor_parallel_size,
use_v2_block_manager=args.use_v2_block_manager,
)
sampling_params = SamplingParams(temperature=0, max_tokens=args.output_len)
profiler = cProfile.Profile()
print("------warm up------")
for i in range(3):
output = llm.generate(LONG_PROMPT, sampling_params)
print(output[0].outputs[0].text)
print("------start generating------")
for i in range(3):
profiler.runctx('llm.generate(LONG_PROMPT, sampling_params)',
globals(), locals())
# analyze the runtime of hashing function
stats = pstats.Stats(profiler)
stats.sort_stats('cumulative')
total_time = 0
total_calls = 0
for func in stats.stats:
if 'hash_of_block' in func[2]:
total_time = stats.stats[func][3]
total_calls = stats.stats[func][0]
percentage = (total_time / stats.total_tt) * 100
print(f"Hashing took {total_time:.2f} seconds,"
f"{percentage:.2f}% of the total runtime.")
if __name__ == "__main__":
parser = FlexibleArgumentParser(
description='Benchmark the performance of hashing function in'
'automatic prefix caching.')
parser.add_argument('--model', type=str, default='lmsys/longchat-7b-16k')
parser.add_argument('--tensor-parallel-size', '-tp', type=int, default=1)
parser.add_argument('--output-len', type=int, default=10)
parser.add_argument('--enable-prefix-caching',
action='store_true',
help='enable prefix caching')
parser.add_argument('--use-v2-block-manager',
action='store_true',
help='Use BlockSpaceMangerV2')
args = parser.parse_args()
main(args)

518
benchmarks/sonnet.txt Normal file
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FROM fairest creatures we desire increase,
That thereby beauty's rose might never die,
But as the riper should by time decease,
His tender heir might bear his memory:
But thou, contracted to thine own bright eyes,
Feed'st thy light'st flame with self-substantial fuel,
Making a famine where abundance lies,
Thyself thy foe, to thy sweet self too cruel.
Thou that art now the world's fresh ornament
And only herald to the gaudy spring,
Within thine own bud buriest thy content
And, tender churl, makest waste in niggarding.
Pity the world, or else this glutton be,
To eat the world's due, by the grave and thee.
When forty winters shall beseige thy brow,
And dig deep trenches in thy beauty's field,
Thy youth's proud livery, so gazed on now,
Will be a tatter'd weed, of small worth held:
Then being ask'd where all thy beauty lies,
Where all the treasure of thy lusty days,
To say, within thine own deep-sunken eyes,
Were an all-eating shame and thriftless praise.
How much more praise deserved thy beauty's use,
If thou couldst answer 'This fair child of mine
Shall sum my count and make my old excuse,'
Proving his beauty by succession thine!
This were to be new made when thou art old,
And see thy blood warm when thou feel'st it cold.
Look in thy glass, and tell the face thou viewest
Now is the time that face should form another;
Whose fresh repair if now thou not renewest,
Thou dost beguile the world, unbless some mother.
For where is she so fair whose unear'd womb
Disdains the tillage of thy husbandry?
Or who is he so fond will be the tomb
Of his self-love, to stop posterity?
Thou art thy mother's glass, and she in thee
Calls back the lovely April of her prime:
So thou through windows of thine age shall see
Despite of wrinkles this thy golden time.
But if thou live, remember'd not to be,
Die single, and thine image dies with thee.
Unthrifty loveliness, why dost thou spend
Upon thyself thy beauty's legacy?
Nature's bequest gives nothing but doth lend,
And being frank she lends to those are free.
Then, beauteous niggard, why dost thou abuse
The bounteous largess given thee to give?
Profitless usurer, why dost thou use
So great a sum of sums, yet canst not live?
For having traffic with thyself alone,
Thou of thyself thy sweet self dost deceive.
Then how, when nature calls thee to be gone,
What acceptable audit canst thou leave?
Thy unused beauty must be tomb'd with thee,
Which, used, lives th' executor to be.
Those hours, that with gentle work did frame
The lovely gaze where every eye doth dwell,
Will play the tyrants to the very same
And that unfair which fairly doth excel:
For never-resting time leads summer on
To hideous winter and confounds him there;
Sap cheque'd with frost and lusty leaves quite gone,
Beauty o'ersnow'd and bareness every where:
Then, were not summer's distillation left,
A liquid prisoner pent in walls of glass,
Beauty's effect with beauty were bereft,
Nor it nor no remembrance what it was:
But flowers distill'd though they with winter meet,
Leese but their show; their substance still lives sweet.
Then let not winter's ragged hand deface
In thee thy summer, ere thou be distill'd:
Make sweet some vial; treasure thou some place
With beauty's treasure, ere it be self-kill'd.
That use is not forbidden usury,
Which happies those that pay the willing loan;
That's for thyself to breed another thee,
Or ten times happier, be it ten for one;
Ten times thyself were happier than thou art,
If ten of thine ten times refigured thee:
Then what could death do, if thou shouldst depart,
Leaving thee living in posterity?
Be not self-will'd, for thou art much too fair
To be death's conquest and make worms thine heir.
Lo! in the orient when the gracious light
Lifts up his burning head, each under eye
Doth homage to his new-appearing sight,
Serving with looks his sacred majesty;
And having climb'd the steep-up heavenly hill,
Resembling strong youth in his middle age,
yet mortal looks adore his beauty still,
Attending on his golden pilgrimage;
But when from highmost pitch, with weary car,
Like feeble age, he reeleth from the day,
The eyes, 'fore duteous, now converted are
From his low tract and look another way:
So thou, thyself out-going in thy noon,
Unlook'd on diest, unless thou get a son.
Music to hear, why hear'st thou music sadly?
Sweets with sweets war not, joy delights in joy.
Why lovest thou that which thou receivest not gladly,
Or else receivest with pleasure thine annoy?
If the true concord of well-tuned sounds,
By unions married, do offend thine ear,
They do but sweetly chide thee, who confounds
In singleness the parts that thou shouldst bear.
Mark how one string, sweet husband to another,
Strikes each in each by mutual ordering,
Resembling sire and child and happy mother
Who all in one, one pleasing note do sing:
Whose speechless song, being many, seeming one,
Sings this to thee: 'thou single wilt prove none.'
Is it for fear to wet a widow's eye
That thou consumest thyself in single life?
Ah! if thou issueless shalt hap to die.
The world will wail thee, like a makeless wife;
The world will be thy widow and still weep
That thou no form of thee hast left behind,
When every private widow well may keep
By children's eyes her husband's shape in mind.
Look, what an unthrift in the world doth spend
Shifts but his place, for still the world enjoys it;
But beauty's waste hath in the world an end,
And kept unused, the user so destroys it.
No love toward others in that bosom sits
That on himself such murderous shame commits.
For shame! deny that thou bear'st love to any,
Who for thyself art so unprovident.
Grant, if thou wilt, thou art beloved of many,
But that thou none lovest is most evident;
For thou art so possess'd with murderous hate
That 'gainst thyself thou stick'st not to conspire.
Seeking that beauteous roof to ruinate
Which to repair should be thy chief desire.
O, change thy thought, that I may change my mind!
Shall hate be fairer lodged than gentle love?
Be, as thy presence is, gracious and kind,
Or to thyself at least kind-hearted prove:
Make thee another self, for love of me,
That beauty still may live in thine or thee.
As fast as thou shalt wane, so fast thou growest
In one of thine, from that which thou departest;
And that fresh blood which youngly thou bestowest
Thou mayst call thine when thou from youth convertest.
Herein lives wisdom, beauty and increase:
Without this, folly, age and cold decay:
If all were minded so, the times should cease
And threescore year would make the world away.
Let those whom Nature hath not made for store,
Harsh featureless and rude, barrenly perish:
Look, whom she best endow'd she gave the more;
Which bounteous gift thou shouldst in bounty cherish:
She carved thee for her seal, and meant thereby
Thou shouldst print more, not let that copy die.
When I do count the clock that tells the time,
And see the brave day sunk in hideous night;
When I behold the violet past prime,
And sable curls all silver'd o'er with white;
When lofty trees I see barren of leaves
Which erst from heat did canopy the herd,
And summer's green all girded up in sheaves
Borne on the bier with white and bristly beard,
Then of thy beauty do I question make,
That thou among the wastes of time must go,
Since sweets and beauties do themselves forsake
And die as fast as they see others grow;
And nothing 'gainst Time's scythe can make defence
Save breed, to brave him when he takes thee hence.
O, that you were yourself! but, love, you are
No longer yours than you yourself here live:
Against this coming end you should prepare,
And your sweet semblance to some other give.
So should that beauty which you hold in lease
Find no determination: then you were
Yourself again after yourself's decease,
When your sweet issue your sweet form should bear.
Who lets so fair a house fall to decay,
Which husbandry in honour might uphold
Against the stormy gusts of winter's day
And barren rage of death's eternal cold?
O, none but unthrifts! Dear my love, you know
You had a father: let your son say so.
Not from the stars do I my judgment pluck;
And yet methinks I have astronomy,
But not to tell of good or evil luck,
Of plagues, of dearths, or seasons' quality;
Nor can I fortune to brief minutes tell,
Pointing to each his thunder, rain and wind,
Or say with princes if it shall go well,
By oft predict that I in heaven find:
But from thine eyes my knowledge I derive,
And, constant stars, in them I read such art
As truth and beauty shall together thrive,
If from thyself to store thou wouldst convert;
Or else of thee this I prognosticate:
Thy end is truth's and beauty's doom and date.
When I consider every thing that grows
Holds in perfection but a little moment,
That this huge stage presenteth nought but shows
Whereon the stars in secret influence comment;
When I perceive that men as plants increase,
Cheered and cheque'd even by the self-same sky,
Vaunt in their youthful sap, at height decrease,
And wear their brave state out of memory;
Then the conceit of this inconstant stay
Sets you most rich in youth before my sight,
Where wasteful Time debateth with Decay,
To change your day of youth to sullied night;
And all in war with Time for love of you,
As he takes from you, I engraft you new.
But wherefore do not you a mightier way
Make war upon this bloody tyrant, Time?
And fortify yourself in your decay
With means more blessed than my barren rhyme?
Now stand you on the top of happy hours,
And many maiden gardens yet unset
With virtuous wish would bear your living flowers,
Much liker than your painted counterfeit:
So should the lines of life that life repair,
Which this, Time's pencil, or my pupil pen,
Neither in inward worth nor outward fair,
Can make you live yourself in eyes of men.
To give away yourself keeps yourself still,
And you must live, drawn by your own sweet skill.
Who will believe my verse in time to come,
If it were fill'd with your most high deserts?
Though yet, heaven knows, it is but as a tomb
Which hides your life and shows not half your parts.
If I could write the beauty of your eyes
And in fresh numbers number all your graces,
The age to come would say 'This poet lies:
Such heavenly touches ne'er touch'd earthly faces.'
So should my papers yellow'd with their age
Be scorn'd like old men of less truth than tongue,
And your true rights be term'd a poet's rage
And stretched metre of an antique song:
But were some child of yours alive that time,
You should live twice; in it and in my rhyme.
Shall I compare thee to a summer's day?
Thou art more lovely and more temperate:
Rough winds do shake the darling buds of May,
And summer's lease hath all too short a date:
Sometime too hot the eye of heaven shines,
And often is his gold complexion dimm'd;
And every fair from fair sometime declines,
By chance or nature's changing course untrimm'd;
But thy eternal summer shall not fade
Nor lose possession of that fair thou owest;
Nor shall Death brag thou wander'st in his shade,
When in eternal lines to time thou growest:
So long as men can breathe or eyes can see,
So long lives this and this gives life to thee.
Devouring Time, blunt thou the lion's paws,
And make the earth devour her own sweet brood;
Pluck the keen teeth from the fierce tiger's jaws,
And burn the long-lived phoenix in her blood;
Make glad and sorry seasons as thou fleets,
And do whate'er thou wilt, swift-footed Time,
To the wide world and all her fading sweets;
But I forbid thee one most heinous crime:
O, carve not with thy hours my love's fair brow,
Nor draw no lines there with thine antique pen;
Him in thy course untainted do allow
For beauty's pattern to succeeding men.
Yet, do thy worst, old Time: despite thy wrong,
My love shall in my verse ever live young.
A woman's face with Nature's own hand painted
Hast thou, the master-mistress of my passion;
A woman's gentle heart, but not acquainted
With shifting change, as is false women's fashion;
An eye more bright than theirs, less false in rolling,
Gilding the object whereupon it gazeth;
A man in hue, all 'hues' in his controlling,
Much steals men's eyes and women's souls amazeth.
And for a woman wert thou first created;
Till Nature, as she wrought thee, fell a-doting,
And by addition me of thee defeated,
By adding one thing to my purpose nothing.
But since she prick'd thee out for women's pleasure,
Mine be thy love and thy love's use their treasure.
So is it not with me as with that Muse
Stirr'd by a painted beauty to his verse,
Who heaven itself for ornament doth use
And every fair with his fair doth rehearse
Making a couplement of proud compare,
With sun and moon, with earth and sea's rich gems,
With April's first-born flowers, and all things rare
That heaven's air in this huge rondure hems.
O' let me, true in love, but truly write,
And then believe me, my love is as fair
As any mother's child, though not so bright
As those gold candles fix'd in heaven's air:
Let them say more than like of hearsay well;
I will not praise that purpose not to sell.
My glass shall not persuade me I am old,
So long as youth and thou are of one date;
But when in thee time's furrows I behold,
Then look I death my days should expiate.
For all that beauty that doth cover thee
Is but the seemly raiment of my heart,
Which in thy breast doth live, as thine in me:
How can I then be elder than thou art?
O, therefore, love, be of thyself so wary
As I, not for myself, but for thee will;
Bearing thy heart, which I will keep so chary
As tender nurse her babe from faring ill.
Presume not on thy heart when mine is slain;
Thou gavest me thine, not to give back again.
As an unperfect actor on the stage
Who with his fear is put besides his part,
Or some fierce thing replete with too much rage,
Whose strength's abundance weakens his own heart.
So I, for fear of trust, forget to say
The perfect ceremony of love's rite,
And in mine own love's strength seem to decay,
O'ercharged with burden of mine own love's might.
O, let my books be then the eloquence
And dumb presagers of my speaking breast,
Who plead for love and look for recompense
More than that tongue that more hath more express'd.
O, learn to read what silent love hath writ:
To hear with eyes belongs to love's fine wit.
Mine eye hath play'd the painter and hath stell'd
Thy beauty's form in table of my heart;
My body is the frame wherein 'tis held,
And perspective it is the painter's art.
For through the painter must you see his skill,
To find where your true image pictured lies;
Which in my bosom's shop is hanging still,
That hath his windows glazed with thine eyes.
Now see what good turns eyes for eyes have done:
Mine eyes have drawn thy shape, and thine for me
Are windows to my breast, where-through the sun
Delights to peep, to gaze therein on thee;
Yet eyes this cunning want to grace their art;
They draw but what they see, know not the heart.
Let those who are in favour with their stars
Of public honour and proud titles boast,
Whilst I, whom fortune of such triumph bars,
Unlook'd for joy in that I honour most.
Great princes' favourites their fair leaves spread
But as the marigold at the sun's eye,
And in themselves their pride lies buried,
For at a frown they in their glory die.
The painful warrior famoused for fight,
After a thousand victories once foil'd,
Is from the book of honour razed quite,
And all the rest forgot for which he toil'd:
Then happy I, that love and am beloved
Where I may not remove nor be removed.
Lord of my love, to whom in vassalage
Thy merit hath my duty strongly knit,
To thee I send this written embassage,
To witness duty, not to show my wit:
Duty so great, which wit so poor as mine
May make seem bare, in wanting words to show it,
But that I hope some good conceit of thine
In thy soul's thought, all naked, will bestow it;
Till whatsoever star that guides my moving
Points on me graciously with fair aspect
And puts apparel on my tatter'd loving,
To show me worthy of thy sweet respect:
Then may I dare to boast how I do love thee;
Till then not show my head where thou mayst prove me.
Weary with toil, I haste me to my bed,
The dear repose for limbs with travel tired;
But then begins a journey in my head,
To work my mind, when body's work's expired:
For then my thoughts, from far where I abide,
Intend a zealous pilgrimage to thee,
And keep my drooping eyelids open wide,
Looking on darkness which the blind do see
Save that my soul's imaginary sight
Presents thy shadow to my sightless view,
Which, like a jewel hung in ghastly night,
Makes black night beauteous and her old face new.
Lo! thus, by day my limbs, by night my mind,
For thee and for myself no quiet find.
How can I then return in happy plight,
That am debarr'd the benefit of rest?
When day's oppression is not eased by night,
But day by night, and night by day, oppress'd?
And each, though enemies to either's reign,
Do in consent shake hands to torture me;
The one by toil, the other to complain
How far I toil, still farther off from thee.
I tell the day, to please them thou art bright
And dost him grace when clouds do blot the heaven:
So flatter I the swart-complexion'd night,
When sparkling stars twire not thou gild'st the even.
But day doth daily draw my sorrows longer
And night doth nightly make grief's strength seem stronger.
When, in disgrace with fortune and men's eyes,
I all alone beweep my outcast state
And trouble deal heaven with my bootless cries
And look upon myself and curse my fate,
Wishing me like to one more rich in hope,
Featured like him, like him with friends possess'd,
Desiring this man's art and that man's scope,
With what I most enjoy contented least;
Yet in these thoughts myself almost despising,
Haply I think on thee, and then my state,
Like to the lark at break of day arising
From sullen earth, sings hymns at heaven's gate;
For thy sweet love remember'd such wealth brings
That then I scorn to change my state with kings.
When to the sessions of sweet silent thought
I summon up remembrance of things past,
I sigh the lack of many a thing I sought,
And with old woes new wail my dear time's waste:
Then can I drown an eye, unused to flow,
For precious friends hid in death's dateless night,
And weep afresh love's long since cancell'd woe,
And moan the expense of many a vanish'd sight:
Then can I grieve at grievances foregone,
And heavily from woe to woe tell o'er
The sad account of fore-bemoaned moan,
Which I new pay as if not paid before.
But if the while I think on thee, dear friend,
All losses are restored and sorrows end.
Thy bosom is endeared with all hearts,
Which I by lacking have supposed dead,
And there reigns love and all love's loving parts,
And all those friends which I thought buried.
How many a holy and obsequious tear
Hath dear religious love stol'n from mine eye
As interest of the dead, which now appear
But things removed that hidden in thee lie!
Thou art the grave where buried love doth live,
Hung with the trophies of my lovers gone,
Who all their parts of me to thee did give;
That due of many now is thine alone:
Their images I loved I view in thee,
And thou, all they, hast all the all of me.
If thou survive my well-contented day,
When that churl Death my bones with dust shall cover,
And shalt by fortune once more re-survey
These poor rude lines of thy deceased lover,
Compare them with the bettering of the time,
And though they be outstripp'd by every pen,
Reserve them for my love, not for their rhyme,
Exceeded by the height of happier men.
O, then vouchsafe me but this loving thought:
'Had my friend's Muse grown with this growing age,
A dearer birth than this his love had brought,
To march in ranks of better equipage:
But since he died and poets better prove,
Theirs for their style I'll read, his for his love.'
Full many a glorious morning have I seen
Flatter the mountain-tops with sovereign eye,
Kissing with golden face the meadows green,
Gilding pale streams with heavenly alchemy;
Anon permit the basest clouds to ride
With ugly rack on his celestial face,
And from the forlorn world his visage hide,
Stealing unseen to west with this disgrace:
Even so my sun one early morn did shine
With all triumphant splendor on my brow;
But out, alack! he was but one hour mine;
The region cloud hath mask'd him from me now.
Yet him for this my love no whit disdaineth;
Suns of the world may stain when heaven's sun staineth.
Why didst thou promise such a beauteous day,
And make me travel forth without my cloak,
To let base clouds o'ertake me in my way,
Hiding thy bravery in their rotten smoke?
'Tis not enough that through the cloud thou break,
To dry the rain on my storm-beaten face,
For no man well of such a salve can speak
That heals the wound and cures not the disgrace:
Nor can thy shame give physic to my grief;
Though thou repent, yet I have still the loss:
The offender's sorrow lends but weak relief
To him that bears the strong offence's cross.
Ah! but those tears are pearl which thy love sheds,
And they are rich and ransom all ill deeds.
No more be grieved at that which thou hast done:
Roses have thorns, and silver fountains mud;
Clouds and eclipses stain both moon and sun,
And loathsome canker lives in sweetest bud.
All men make faults, and even I in this,
Authorizing thy trespass with compare,
Myself corrupting, salving thy amiss,
Excusing thy sins more than thy sins are;
For to thy sensual fault I bring in sense--
Thy adverse party is thy advocate--
And 'gainst myself a lawful plea commence:
Such civil war is in my love and hate
That I an accessary needs must be
To that sweet thief which sourly robs from me.
Let me confess that we two must be twain,
Although our undivided loves are one:
So shall those blots that do with me remain
Without thy help by me be borne alone.
In our two loves there is but one respect,
Though in our lives a separable spite,
Which though it alter not love's sole effect,
Yet doth it steal sweet hours from love's delight.
I may not evermore acknowledge thee,
Lest my bewailed guilt should do thee shame,
Nor thou with public kindness honour me,
Unless thou take that honour from thy name:
But do not so; I love thee in such sort
As, thou being mine, mine is thy good report.
As a decrepit father takes delight
To see his active child do deeds of youth,
So I, made lame by fortune's dearest spite,
Take all my comfort of thy worth and truth.
For whether beauty, birth, or wealth, or wit,
Or any of these all, or all, or more,
Entitled in thy parts do crowned sit,
I make my love engrafted to this store:
So then I am not lame, poor, nor despised,
Whilst that this shadow doth such substance give
That I in thy abundance am sufficed
And by a part of all thy glory live.
Look, what is best, that best I wish in thee:
This wish I have; then ten times happy me!

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set(CMAKE_EXPORT_COMPILE_COMMANDS ON)
#
# Define environment variables for special configurations
#
if(DEFINED ENV{VLLM_CPU_AVX512BF16})
set(ENABLE_AVX512BF16 ON)
endif()
include_directories("${CMAKE_SOURCE_DIR}/csrc")
#
# Check the compile flags
#
list(APPEND CXX_COMPILE_FLAGS
"-fopenmp"
"-DVLLM_CPU_EXTENSION")
execute_process(COMMAND cat /proc/cpuinfo
RESULT_VARIABLE CPUINFO_RET
OUTPUT_VARIABLE CPUINFO)
if (NOT CPUINFO_RET EQUAL 0)
message(FATAL_ERROR "Failed to check CPU features via /proc/cpuinfo")
endif()
function (find_isa CPUINFO TARGET OUT)
string(FIND ${CPUINFO} ${TARGET} ISA_FOUND)
if(NOT ISA_FOUND EQUAL -1)
set(${OUT} ON PARENT_SCOPE)
else()
set(${OUT} OFF PARENT_SCOPE)
endif()
endfunction()
function (is_avx512_disabled OUT)
set(DISABLE_AVX512 $ENV{VLLM_CPU_DISABLE_AVX512})
if(DISABLE_AVX512 AND DISABLE_AVX512 STREQUAL "true")
set(${OUT} ON PARENT_SCOPE)
else()
set(${OUT} OFF PARENT_SCOPE)
endif()
endfunction()
is_avx512_disabled(AVX512_DISABLED)
find_isa(${CPUINFO} "avx2" AVX2_FOUND)
find_isa(${CPUINFO} "avx512f" AVX512_FOUND)
find_isa(${CPUINFO} "POWER10" POWER10_FOUND)
find_isa(${CPUINFO} "POWER9" POWER9_FOUND)
if (AVX512_FOUND AND NOT AVX512_DISABLED)
list(APPEND CXX_COMPILE_FLAGS
"-mavx512f"
"-mavx512vl"
"-mavx512bw"
"-mavx512dq")
find_isa(${CPUINFO} "avx512_bf16" AVX512BF16_FOUND)
if (AVX512BF16_FOUND OR ENABLE_AVX512BF16)
if (CMAKE_CXX_COMPILER_ID STREQUAL "GNU" AND
CMAKE_CXX_COMPILER_VERSION VERSION_GREATER_EQUAL 12.3)
list(APPEND CXX_COMPILE_FLAGS "-mavx512bf16")
else()
message(WARNING "Disable AVX512-BF16 ISA support, requires gcc/g++ >= 12.3")
endif()
else()
message(WARNING "Disable AVX512-BF16 ISA support, no avx512_bf16 found in local CPU flags." " If cross-compilation is required, please set env VLLM_CPU_AVX512BF16=1.")
endif()
elseif (AVX2_FOUND)
list(APPEND CXX_COMPILE_FLAGS "-mavx2")
message(WARNING "vLLM CPU backend using AVX2 ISA")
elseif (POWER9_FOUND OR POWER10_FOUND)
message(STATUS "PowerPC detected")
# Check for PowerPC VSX support
list(APPEND CXX_COMPILE_FLAGS
"-mvsx"
"-mcpu=native"
"-mtune=native")
else()
message(FATAL_ERROR "vLLM CPU backend requires AVX512 or AVX2 or Power9+ ISA support.")
endif()
message(STATUS "CPU extension compile flags: ${CXX_COMPILE_FLAGS}")
#
# Define extension targets
#
#
# _C extension
#
set(VLLM_EXT_SRC
"csrc/cpu/activation.cpp"
"csrc/cpu/attention.cpp"
"csrc/cpu/cache.cpp"
"csrc/cpu/layernorm.cpp"
"csrc/cpu/pos_encoding.cpp"
"csrc/cpu/torch_bindings.cpp")
define_gpu_extension_target(
_C
DESTINATION vllm
LANGUAGE CXX
SOURCES ${VLLM_EXT_SRC}
COMPILE_FLAGS ${CXX_COMPILE_FLAGS}
USE_SABI 3
WITH_SOABI
)
add_custom_target(default)
message(STATUS "Enabling C extension.")
add_dependencies(default _C)

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#!/usr/bin/env python3
#
# A command line tool for running pytorch's hipify preprocessor on CUDA
# source files.
#
# See https://github.com/ROCm/hipify_torch
# and <torch install dir>/utils/hipify/hipify_python.py
#
import argparse
import os
import shutil
from torch.utils.hipify.hipify_python import hipify
if __name__ == '__main__':
parser = argparse.ArgumentParser()
# Project directory where all the source + include files live.
parser.add_argument(
"-p",
"--project_dir",
help="The project directory.",
)
# Directory where hipified files are written.
parser.add_argument(
"-o",
"--output_dir",
help="The output directory.",
)
# Source files to convert.
parser.add_argument("sources",
help="Source files to hipify.",
nargs="*",
default=[])
args = parser.parse_args()
# Limit include scope to project_dir only
includes = [os.path.join(args.project_dir, '*')]
# Get absolute path for all source files.
extra_files = [os.path.abspath(s) for s in args.sources]
# Copy sources from project directory to output directory.
# The directory might already exist to hold object files so we ignore that.
shutil.copytree(args.project_dir, args.output_dir, dirs_exist_ok=True)
hipify_result = hipify(project_directory=args.project_dir,
output_directory=args.output_dir,
header_include_dirs=[],
includes=includes,
extra_files=extra_files,
show_detailed=True,
is_pytorch_extension=True,
hipify_extra_files_only=True)
hipified_sources = []
for source in args.sources:
s_abs = os.path.abspath(source)
hipified_s_abs = (hipify_result[s_abs].hipified_path if
(s_abs in hipify_result
and hipify_result[s_abs].hipified_path is not None)
else s_abs)
hipified_sources.append(hipified_s_abs)
assert (len(hipified_sources) == len(args.sources))
# Print hipified source files.
print("\n".join(hipified_sources))

366
cmake/utils.cmake Normal file
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#
# Attempt to find the python package that uses the same python executable as
# `EXECUTABLE` and is one of the `SUPPORTED_VERSIONS`.
#
macro (find_python_from_executable EXECUTABLE SUPPORTED_VERSIONS)
file(REAL_PATH ${EXECUTABLE} EXECUTABLE)
set(Python_EXECUTABLE ${EXECUTABLE})
find_package(Python COMPONENTS Interpreter Development.Module Development.SABIModule)
if (NOT Python_FOUND)
message(FATAL_ERROR "Unable to find python matching: ${EXECUTABLE}.")
endif()
set(_VER "${Python_VERSION_MAJOR}.${Python_VERSION_MINOR}")
set(_SUPPORTED_VERSIONS_LIST ${SUPPORTED_VERSIONS} ${ARGN})
if (NOT _VER IN_LIST _SUPPORTED_VERSIONS_LIST)
message(FATAL_ERROR
"Python version (${_VER}) is not one of the supported versions: "
"${_SUPPORTED_VERSIONS_LIST}.")
endif()
message(STATUS "Found python matching: ${EXECUTABLE}.")
endmacro()
#
# Run `EXPR` in python. The standard output of python is stored in `OUT` and
# has trailing whitespace stripped. If an error is encountered when running
# python, a fatal message `ERR_MSG` is issued.
#
function (run_python OUT EXPR ERR_MSG)
execute_process(
COMMAND
"${Python_EXECUTABLE}" "-c" "${EXPR}"
OUTPUT_VARIABLE PYTHON_OUT
RESULT_VARIABLE PYTHON_ERROR_CODE
ERROR_VARIABLE PYTHON_STDERR
OUTPUT_STRIP_TRAILING_WHITESPACE)
if(NOT PYTHON_ERROR_CODE EQUAL 0)
message(FATAL_ERROR "${ERR_MSG}: ${PYTHON_STDERR}")
endif()
set(${OUT} ${PYTHON_OUT} PARENT_SCOPE)
endfunction()
# Run `EXPR` in python after importing `PKG`. Use the result of this to extend
# `CMAKE_PREFIX_PATH` so the torch cmake configuration can be imported.
macro (append_cmake_prefix_path PKG EXPR)
run_python(_PREFIX_PATH
"import ${PKG}; print(${EXPR})" "Failed to locate ${PKG} path")
list(APPEND CMAKE_PREFIX_PATH ${_PREFIX_PATH})
endmacro()
#
# Add a target named `hipify${NAME}` that runs the hipify preprocessor on a set
# of CUDA source files. The names of the corresponding "hipified" sources are
# stored in `OUT_SRCS`.
#
function (hipify_sources_target OUT_SRCS NAME ORIG_SRCS)
#
# Split into C++ and non-C++ (i.e. CUDA) sources.
#
set(SRCS ${ORIG_SRCS})
set(CXX_SRCS ${ORIG_SRCS})
list(FILTER SRCS EXCLUDE REGEX "\.(cc)|(cpp)$")
list(FILTER CXX_SRCS INCLUDE REGEX "\.(cc)|(cpp)$")
#
# Generate ROCm/HIP source file names from CUDA file names.
# Since HIP files are generated code, they will appear in the build area
# `CMAKE_CURRENT_BINARY_DIR` directory rather than the original csrc dir.
#
set(HIP_SRCS)
foreach (SRC ${SRCS})
string(REGEX REPLACE "\.cu$" "\.hip" SRC ${SRC})
string(REGEX REPLACE "cuda" "hip" SRC ${SRC})
list(APPEND HIP_SRCS "${CMAKE_CURRENT_BINARY_DIR}/${SRC}")
endforeach()
set(CSRC_BUILD_DIR ${CMAKE_CURRENT_BINARY_DIR}/csrc)
add_custom_target(
hipify${NAME}
COMMAND ${CMAKE_SOURCE_DIR}/cmake/hipify.py -p ${CMAKE_SOURCE_DIR}/csrc -o ${CSRC_BUILD_DIR} ${SRCS}
DEPENDS ${CMAKE_SOURCE_DIR}/cmake/hipify.py ${SRCS}
BYPRODUCTS ${HIP_SRCS}
COMMENT "Running hipify on ${NAME} extension source files.")
# Swap out original extension sources with hipified sources.
list(APPEND HIP_SRCS ${CXX_SRCS})
set(${OUT_SRCS} ${HIP_SRCS} PARENT_SCOPE)
endfunction()
#
# Get additional GPU compiler flags from torch.
#
function (get_torch_gpu_compiler_flags OUT_GPU_FLAGS GPU_LANG)
if (${GPU_LANG} STREQUAL "CUDA")
#
# Get common NVCC flags from torch.
#
run_python(GPU_FLAGS
"from torch.utils.cpp_extension import COMMON_NVCC_FLAGS; print(';'.join(COMMON_NVCC_FLAGS))"
"Failed to determine torch nvcc compiler flags")
if (CUDA_VERSION VERSION_GREATER_EQUAL 11.8)
list(APPEND GPU_FLAGS "-DENABLE_FP8")
endif()
if (CUDA_VERSION VERSION_GREATER_EQUAL 12.0)
list(REMOVE_ITEM GPU_FLAGS
"-D__CUDA_NO_HALF_OPERATORS__"
"-D__CUDA_NO_HALF_CONVERSIONS__"
"-D__CUDA_NO_BFLOAT16_CONVERSIONS__"
"-D__CUDA_NO_HALF2_OPERATORS__")
endif()
elseif(${GPU_LANG} STREQUAL "HIP")
#
# Get common HIP/HIPCC flags from torch.
#
run_python(GPU_FLAGS
"import torch.utils.cpp_extension as t; print(';'.join(t.COMMON_HIP_FLAGS + t.COMMON_HIPCC_FLAGS))"
"Failed to determine torch nvcc compiler flags")
list(APPEND GPU_FLAGS
"-DUSE_ROCM"
"-DENABLE_FP8"
"-U__HIP_NO_HALF_CONVERSIONS__"
"-U__HIP_NO_HALF_OPERATORS__"
"-fno-gpu-rdc")
endif()
set(${OUT_GPU_FLAGS} ${GPU_FLAGS} PARENT_SCOPE)
endfunction()
# Macro for converting a `gencode` version number to a cmake version number.
macro(string_to_ver OUT_VER IN_STR)
string(REGEX REPLACE "\([0-9]+\)\([0-9]\)" "\\1.\\2" ${OUT_VER} ${IN_STR})
endmacro()
#
# Override the GPU architectures detected by cmake/torch and filter them by
# `GPU_SUPPORTED_ARCHES`. Sets the final set of architectures in
# `GPU_ARCHES`.
#
# Note: this is defined as a macro since it updates `CMAKE_CUDA_FLAGS`.
#
macro(override_gpu_arches GPU_ARCHES GPU_LANG GPU_SUPPORTED_ARCHES)
set(_GPU_SUPPORTED_ARCHES_LIST ${GPU_SUPPORTED_ARCHES} ${ARGN})
message(STATUS "${GPU_LANG} supported arches: ${_GPU_SUPPORTED_ARCHES_LIST}")
if (${GPU_LANG} STREQUAL "HIP")
#
# `GPU_ARCHES` controls the `--offload-arch` flags.
#
# If PYTORCH_ROCM_ARCH env variable exists, then we take it as a list,
# if not, then we use CMAKE_HIP_ARCHITECTURES which was generated by calling
# "rocm_agent_enumerator" in "enable_language(HIP)"
# (in file Modules/CMakeDetermineHIPCompiler.cmake)
#
if(DEFINED ENV{PYTORCH_ROCM_ARCH})
set(HIP_ARCHITECTURES $ENV{PYTORCH_ROCM_ARCH})
else()
set(HIP_ARCHITECTURES ${CMAKE_HIP_ARCHITECTURES})
endif()
#
# Find the intersection of the supported + detected architectures to
# set the module architecture flags.
#
set(${GPU_ARCHES})
foreach (_ARCH ${HIP_ARCHITECTURES})
if (_ARCH IN_LIST _GPU_SUPPORTED_ARCHES_LIST)
list(APPEND ${GPU_ARCHES} ${_ARCH})
endif()
endforeach()
if(NOT ${GPU_ARCHES})
message(FATAL_ERROR
"None of the detected ROCm architectures: ${HIP_ARCHITECTURES} is"
" supported. Supported ROCm architectures are: ${_GPU_SUPPORTED_ARCHES_LIST}.")
endif()
elseif(${GPU_LANG} STREQUAL "CUDA")
#
# Setup/process CUDA arch flags.
#
# The torch cmake setup hardcodes the detected architecture flags in
# `CMAKE_CUDA_FLAGS`. Since `CMAKE_CUDA_FLAGS` is a "global" variable, it
# can't modified on a per-target basis, e.g. for the `punica` extension.
# So, all the `-gencode` flags need to be extracted and removed from
# `CMAKE_CUDA_FLAGS` for processing so they can be passed by another method.
# Since it's not possible to use `target_compiler_options` for adding target
# specific `-gencode` arguments, the target's `CUDA_ARCHITECTURES` property
# must be used instead. This requires repackaging the architecture flags
# into a format that cmake expects for `CUDA_ARCHITECTURES`.
#
# This is a bit fragile in that it depends on torch using `-gencode` as opposed
# to one of the other nvcc options to specify architectures.
#
# Note: torch uses the `TORCH_CUDA_ARCH_LIST` environment variable to override
# detected architectures.
#
message(DEBUG "initial CMAKE_CUDA_FLAGS: ${CMAKE_CUDA_FLAGS}")
# Extract all `-gencode` flags from `CMAKE_CUDA_FLAGS`
string(REGEX MATCHALL "-gencode arch=[^ ]+" _CUDA_ARCH_FLAGS
${CMAKE_CUDA_FLAGS})
# Remove all `-gencode` flags from `CMAKE_CUDA_FLAGS` since they will be modified
# and passed back via the `CUDA_ARCHITECTURES` property.
string(REGEX REPLACE "-gencode arch=[^ ]+ *" "" CMAKE_CUDA_FLAGS
${CMAKE_CUDA_FLAGS})
# If this error is triggered, it might mean that torch has changed how it sets
# up nvcc architecture code generation flags.
if (NOT _CUDA_ARCH_FLAGS)
message(FATAL_ERROR
"Could not find any architecture related code generation flags in "
"CMAKE_CUDA_FLAGS. (${CMAKE_CUDA_FLAGS})")
endif()
message(DEBUG "final CMAKE_CUDA_FLAGS: ${CMAKE_CUDA_FLAGS}")
message(DEBUG "arch flags: ${_CUDA_ARCH_FLAGS}")
# Initialize the architecture lists to empty.
set(${GPU_ARCHES})
# Process each `gencode` flag.
foreach(_ARCH ${_CUDA_ARCH_FLAGS})
# For each flag, extract the version number and whether it refers to PTX
# or native code.
# Note: if a regex matches then `CMAKE_MATCH_1` holds the binding
# for that match.
string(REGEX MATCH "arch=compute_\([0-9]+a?\)" _COMPUTE ${_ARCH})
if (_COMPUTE)
set(_COMPUTE ${CMAKE_MATCH_1})
endif()
string(REGEX MATCH "code=sm_\([0-9]+a?\)" _SM ${_ARCH})
if (_SM)
set(_SM ${CMAKE_MATCH_1})
endif()
string(REGEX MATCH "code=compute_\([0-9]+a?\)" _CODE ${_ARCH})
if (_CODE)
set(_CODE ${CMAKE_MATCH_1})
endif()
# Make sure the virtual architecture can be matched.
if (NOT _COMPUTE)
message(FATAL_ERROR
"Could not determine virtual architecture from: ${_ARCH}.")
endif()
# One of sm_ or compute_ must exist.
if ((NOT _SM) AND (NOT _CODE))
message(FATAL_ERROR
"Could not determine a codegen architecture from: ${_ARCH}.")
endif()
if (_SM)
# -real suffix let CMake to only generate elf code for the kernels.
# we want this, otherwise the added ptx (default) will increase binary size.
set(_VIRT "-real")
set(_CODE_ARCH ${_SM})
else()
# -virtual suffix let CMake to generate ptx code for the kernels.
set(_VIRT "-virtual")
set(_CODE_ARCH ${_CODE})
endif()
# Check if the current version is in the supported arch list.
string_to_ver(_CODE_VER ${_CODE_ARCH})
if (NOT _CODE_VER IN_LIST _GPU_SUPPORTED_ARCHES_LIST)
message(STATUS "discarding unsupported CUDA arch ${_VER}.")
continue()
endif()
# Add it to the arch list.
list(APPEND ${GPU_ARCHES} "${_CODE_ARCH}${_VIRT}")
endforeach()
endif()
message(STATUS "${GPU_LANG} target arches: ${${GPU_ARCHES}}")
endmacro()
#
# Define a target named `GPU_MOD_NAME` for a single extension. The
# arguments are:
#
# DESTINATION <dest> - Module destination directory.
# LANGUAGE <lang> - The GPU language for this module, e.g CUDA, HIP,
# etc.
# SOURCES <sources> - List of source files relative to CMakeLists.txt
# directory.
#
# Optional arguments:
#
# ARCHITECTURES <arches> - A list of target GPU architectures in cmake
# format.
# Refer `CMAKE_CUDA_ARCHITECTURES` documentation
# and `CMAKE_HIP_ARCHITECTURES` for more info.
# ARCHITECTURES will use cmake's defaults if
# not provided.
# COMPILE_FLAGS <flags> - Extra compiler flags passed to NVCC/hip.
# INCLUDE_DIRECTORIES <dirs> - Extra include directories.
# LIBRARIES <libraries> - Extra link libraries.
# WITH_SOABI - Generate library with python SOABI suffix name.
# USE_SABI <version> - Use python stable api <version>
#
# Note: optimization level/debug info is set via cmake build type.
#
function (define_gpu_extension_target GPU_MOD_NAME)
cmake_parse_arguments(PARSE_ARGV 1
GPU
"WITH_SOABI"
"DESTINATION;LANGUAGE;USE_SABI"
"SOURCES;ARCHITECTURES;COMPILE_FLAGS;INCLUDE_DIRECTORIES;LIBRARIES")
# Add hipify preprocessing step when building with HIP/ROCm.
if (GPU_LANGUAGE STREQUAL "HIP")
hipify_sources_target(GPU_SOURCES ${GPU_MOD_NAME} "${GPU_SOURCES}")
endif()
if (GPU_WITH_SOABI)
set(GPU_WITH_SOABI WITH_SOABI)
else()
set(GPU_WITH_SOABI)
endif()
if (GPU_USE_SABI)
Python_add_library(${GPU_MOD_NAME} MODULE USE_SABI ${GPU_USE_SABI} ${GPU_WITH_SOABI} "${GPU_SOURCES}")
else()
Python_add_library(${GPU_MOD_NAME} MODULE ${GPU_WITH_SOABI} "${GPU_SOURCES}")
endif()
if (GPU_LANGUAGE STREQUAL "HIP")
# Make this target dependent on the hipify preprocessor step.
add_dependencies(${GPU_MOD_NAME} hipify${GPU_MOD_NAME})
endif()
if (GPU_ARCHITECTURES)
set_target_properties(${GPU_MOD_NAME} PROPERTIES
${GPU_LANGUAGE}_ARCHITECTURES "${GPU_ARCHITECTURES}")
endif()
set_property(TARGET ${GPU_MOD_NAME} PROPERTY CXX_STANDARD 17)
target_compile_options(${GPU_MOD_NAME} PRIVATE
$<$<COMPILE_LANGUAGE:${GPU_LANGUAGE}>:${GPU_COMPILE_FLAGS}>)
target_compile_definitions(${GPU_MOD_NAME} PRIVATE
"-DTORCH_EXTENSION_NAME=${GPU_MOD_NAME}")
target_include_directories(${GPU_MOD_NAME} PRIVATE csrc
${GPU_INCLUDE_DIRECTORIES})
target_link_libraries(${GPU_MOD_NAME} PRIVATE torch ${torch_python_LIBRARY}
${GPU_LIBRARIES})
# Don't use `TORCH_LIBRARIES` for CUDA since it pulls in a bunch of
# dependencies that are not necessary and may not be installed.
if (GPU_LANGUAGE STREQUAL "CUDA")
target_link_libraries(${GPU_MOD_NAME} PRIVATE ${CUDA_CUDA_LIB}
${CUDA_LIBRARIES})
else()
target_link_libraries(${GPU_MOD_NAME} PRIVATE ${TORCH_LIBRARIES})
endif()
install(TARGETS ${GPU_MOD_NAME} LIBRARY DESTINATION ${GPU_DESTINATION})
endfunction()

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collect_env.py Normal file
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@@ -0,0 +1,728 @@
# ruff: noqa
# code borrowed from https://github.com/pytorch/pytorch/blob/main/torch/utils/collect_env.py
# Unlike the rest of the PyTorch this file must be python2 compliant.
# This script outputs relevant system environment info
# Run it with `python collect_env.py` or `python -m torch.utils.collect_env`
import datetime
import locale
import os
import re
import subprocess
import sys
from collections import namedtuple
try:
import torch
TORCH_AVAILABLE = True
except (ImportError, NameError, AttributeError, OSError):
TORCH_AVAILABLE = False
# System Environment Information
SystemEnv = namedtuple(
'SystemEnv',
[
'torch_version',
'is_debug_build',
'cuda_compiled_version',
'gcc_version',
'clang_version',
'cmake_version',
'os',
'libc_version',
'python_version',
'python_platform',
'is_cuda_available',
'cuda_runtime_version',
'cuda_module_loading',
'nvidia_driver_version',
'nvidia_gpu_models',
'cudnn_version',
'pip_version', # 'pip' or 'pip3'
'pip_packages',
'conda_packages',
'hip_compiled_version',
'hip_runtime_version',
'miopen_runtime_version',
'caching_allocator_config',
'is_xnnpack_available',
'cpu_info',
'rocm_version', # vllm specific field
'neuron_sdk_version', # vllm specific field
'vllm_version', # vllm specific field
'vllm_build_flags', # vllm specific field
'gpu_topo', # vllm specific field
])
DEFAULT_CONDA_PATTERNS = {
"torch",
"numpy",
"cudatoolkit",
"soumith",
"mkl",
"magma",
"triton",
"optree",
"nccl",
"transformers",
}
DEFAULT_PIP_PATTERNS = {
"torch",
"numpy",
"mypy",
"flake8",
"triton",
"optree",
"onnx",
"nccl",
"transformers",
}
def run(command):
"""Return (return-code, stdout, stderr)."""
shell = True if type(command) is str else False
p = subprocess.Popen(command,
stdout=subprocess.PIPE,
stderr=subprocess.PIPE,
shell=shell)
raw_output, raw_err = p.communicate()
rc = p.returncode
if get_platform() == 'win32':
enc = 'oem'
else:
enc = locale.getpreferredencoding()
output = raw_output.decode(enc)
err = raw_err.decode(enc)
return rc, output.strip(), err.strip()
def run_and_read_all(run_lambda, command):
"""Run command using run_lambda; reads and returns entire output if rc is 0."""
rc, out, _ = run_lambda(command)
if rc != 0:
return None
return out
def run_and_parse_first_match(run_lambda, command, regex):
"""Run command using run_lambda, returns the first regex match if it exists."""
rc, out, _ = run_lambda(command)
if rc != 0:
return None
match = re.search(regex, out)
if match is None:
return None
return match.group(1)
def run_and_return_first_line(run_lambda, command):
"""Run command using run_lambda and returns first line if output is not empty."""
rc, out, _ = run_lambda(command)
if rc != 0:
return None
return out.split('\n')[0]
def get_conda_packages(run_lambda, patterns=None):
if patterns is None:
patterns = DEFAULT_CONDA_PATTERNS
conda = os.environ.get('CONDA_EXE', 'conda')
out = run_and_read_all(run_lambda, "{} list".format(conda))
if out is None:
return out
return "\n".join(line for line in out.splitlines()
if not line.startswith("#") and any(name in line
for name in patterns))
def get_gcc_version(run_lambda):
return run_and_parse_first_match(run_lambda, 'gcc --version', r'gcc (.*)')
def get_clang_version(run_lambda):
return run_and_parse_first_match(run_lambda, 'clang --version',
r'clang version (.*)')
def get_cmake_version(run_lambda):
return run_and_parse_first_match(run_lambda, 'cmake --version',
r'cmake (.*)')
def get_nvidia_driver_version(run_lambda):
if get_platform() == 'darwin':
cmd = 'kextstat | grep -i cuda'
return run_and_parse_first_match(run_lambda, cmd,
r'com[.]nvidia[.]CUDA [(](.*?)[)]')
smi = get_nvidia_smi()
return run_and_parse_first_match(run_lambda, smi,
r'Driver Version: (.*?) ')
def get_gpu_info(run_lambda):
if get_platform() == 'darwin' or (TORCH_AVAILABLE and hasattr(
torch.version, 'hip') and torch.version.hip is not None):
if TORCH_AVAILABLE and torch.cuda.is_available():
if torch.version.hip is not None:
prop = torch.cuda.get_device_properties(0)
if hasattr(prop, "gcnArchName"):
gcnArch = " ({})".format(prop.gcnArchName)
else:
gcnArch = "NoGCNArchNameOnOldPyTorch"
else:
gcnArch = ""
return torch.cuda.get_device_name(None) + gcnArch
return None
smi = get_nvidia_smi()
uuid_regex = re.compile(r' \(UUID: .+?\)')
rc, out, _ = run_lambda(smi + ' -L')
if rc != 0:
return None
# Anonymize GPUs by removing their UUID
return re.sub(uuid_regex, '', out)
def get_running_cuda_version(run_lambda):
return run_and_parse_first_match(run_lambda, 'nvcc --version',
r'release .+ V(.*)')
def get_cudnn_version(run_lambda):
"""Return a list of libcudnn.so; it's hard to tell which one is being used."""
if get_platform() == 'win32':
system_root = os.environ.get('SYSTEMROOT', 'C:\\Windows')
cuda_path = os.environ.get('CUDA_PATH', "%CUDA_PATH%")
where_cmd = os.path.join(system_root, 'System32', 'where')
cudnn_cmd = '{} /R "{}\\bin" cudnn*.dll'.format(where_cmd, cuda_path)
elif get_platform() == 'darwin':
# CUDA libraries and drivers can be found in /usr/local/cuda/. See
# https://docs.nvidia.com/cuda/cuda-installation-guide-mac-os-x/index.html#install
# https://docs.nvidia.com/deeplearning/sdk/cudnn-install/index.html#installmac
# Use CUDNN_LIBRARY when cudnn library is installed elsewhere.
cudnn_cmd = 'ls /usr/local/cuda/lib/libcudnn*'
else:
cudnn_cmd = 'ldconfig -p | grep libcudnn | rev | cut -d" " -f1 | rev'
rc, out, _ = run_lambda(cudnn_cmd)
# find will return 1 if there are permission errors or if not found
if len(out) == 0 or (rc != 1 and rc != 0):
l = os.environ.get('CUDNN_LIBRARY')
if l is not None and os.path.isfile(l):
return os.path.realpath(l)
return None
files_set = set()
for fn in out.split('\n'):
fn = os.path.realpath(fn) # eliminate symbolic links
if os.path.isfile(fn):
files_set.add(fn)
if not files_set:
return None
# Alphabetize the result because the order is non-deterministic otherwise
files = sorted(files_set)
if len(files) == 1:
return files[0]
result = '\n'.join(files)
return 'Probably one of the following:\n{}'.format(result)
def get_nvidia_smi():
# Note: nvidia-smi is currently available only on Windows and Linux
smi = 'nvidia-smi'
if get_platform() == 'win32':
system_root = os.environ.get('SYSTEMROOT', 'C:\\Windows')
program_files_root = os.environ.get('PROGRAMFILES',
'C:\\Program Files')
legacy_path = os.path.join(program_files_root, 'NVIDIA Corporation',
'NVSMI', smi)
new_path = os.path.join(system_root, 'System32', smi)
smis = [new_path, legacy_path]
for candidate_smi in smis:
if os.path.exists(candidate_smi):
smi = '"{}"'.format(candidate_smi)
break
return smi
def get_rocm_version(run_lambda):
"""Returns the ROCm version if available, otherwise 'N/A'."""
return run_and_parse_first_match(run_lambda, 'hipcc --version',
r'HIP version: (\S+)')
def get_neuron_sdk_version(run_lambda):
# Adapted from your install script
try:
result = run_lambda(["neuron-ls"])
return result if result[0] == 0 else 'N/A'
except Exception:
return 'N/A'
def get_vllm_version():
try:
import vllm
return vllm.__version__
except ImportError:
return 'N/A'
def summarize_vllm_build_flags():
# This could be a static method if the flags are constant, or dynamic if you need to check environment variables, etc.
return 'CUDA Archs: {}; ROCm: {}; Neuron: {}'.format(
os.environ.get('TORCH_CUDA_ARCH_LIST', 'Not Set'),
'Enabled' if os.environ.get('ROCM_HOME') else 'Disabled',
'Enabled' if os.environ.get('NEURON_CORES') else 'Disabled',
)
def get_gpu_topo(run_lambda):
if get_platform() == 'linux':
return run_and_read_all(run_lambda, 'nvidia-smi topo -m')
return None
# example outputs of CPU infos
# * linux
# Architecture: x86_64
# CPU op-mode(s): 32-bit, 64-bit
# Address sizes: 46 bits physical, 48 bits virtual
# Byte Order: Little Endian
# CPU(s): 128
# On-line CPU(s) list: 0-127
# Vendor ID: GenuineIntel
# Model name: Intel(R) Xeon(R) Platinum 8375C CPU @ 2.90GHz
# CPU family: 6
# Model: 106
# Thread(s) per core: 2
# Core(s) per socket: 32
# Socket(s): 2
# Stepping: 6
# BogoMIPS: 5799.78
# Flags: fpu vme de pse tsc msr pae mce cx8 apic sep mtrr pge mca cmov pat pse36 clflush mmx fxsr
# sse sse2 ss ht syscall nx pdpe1gb rdtscp lm constant_tsc arch_perfmon rep_good nopl
# xtopology nonstop_tsc cpuid aperfmperf tsc_known_freq pni pclmulqdq monitor ssse3 fma cx16
# pcid sse4_1 sse4_2 x2apic movbe popcnt tsc_deadline_timer aes xsave avx f16c rdrand
# hypervisor lahf_lm abm 3dnowprefetch invpcid_single ssbd ibrs ibpb stibp ibrs_enhanced
# fsgsbase tsc_adjust bmi1 avx2 smep bmi2 erms invpcid avx512f avx512dq rdseed adx smap
# avx512ifma clflushopt clwb avx512cd sha_ni avx512bw avx512vl xsaveopt xsavec xgetbv1
# xsaves wbnoinvd ida arat avx512vbmi pku ospke avx512_vbmi2 gfni vaes vpclmulqdq
# avx512_vnni avx512_bitalg tme avx512_vpopcntdq rdpid md_clear flush_l1d arch_capabilities
# Virtualization features:
# Hypervisor vendor: KVM
# Virtualization type: full
# Caches (sum of all):
# L1d: 3 MiB (64 instances)
# L1i: 2 MiB (64 instances)
# L2: 80 MiB (64 instances)
# L3: 108 MiB (2 instances)
# NUMA:
# NUMA node(s): 2
# NUMA node0 CPU(s): 0-31,64-95
# NUMA node1 CPU(s): 32-63,96-127
# Vulnerabilities:
# Itlb multihit: Not affected
# L1tf: Not affected
# Mds: Not affected
# Meltdown: Not affected
# Mmio stale data: Vulnerable: Clear CPU buffers attempted, no microcode; SMT Host state unknown
# Retbleed: Not affected
# Spec store bypass: Mitigation; Speculative Store Bypass disabled via prctl and seccomp
# Spectre v1: Mitigation; usercopy/swapgs barriers and __user pointer sanitization
# Spectre v2: Mitigation; Enhanced IBRS, IBPB conditional, RSB filling, PBRSB-eIBRS SW sequence
# Srbds: Not affected
# Tsx async abort: Not affected
# * win32
# Architecture=9
# CurrentClockSpeed=2900
# DeviceID=CPU0
# Family=179
# L2CacheSize=40960
# L2CacheSpeed=
# Manufacturer=GenuineIntel
# MaxClockSpeed=2900
# Name=Intel(R) Xeon(R) Platinum 8375C CPU @ 2.90GHz
# ProcessorType=3
# Revision=27142
#
# Architecture=9
# CurrentClockSpeed=2900
# DeviceID=CPU1
# Family=179
# L2CacheSize=40960
# L2CacheSpeed=
# Manufacturer=GenuineIntel
# MaxClockSpeed=2900
# Name=Intel(R) Xeon(R) Platinum 8375C CPU @ 2.90GHz
# ProcessorType=3
# Revision=27142
def get_cpu_info(run_lambda):
rc, out, err = 0, '', ''
if get_platform() == 'linux':
rc, out, err = run_lambda('lscpu')
elif get_platform() == 'win32':
rc, out, err = run_lambda(
'wmic cpu get Name,Manufacturer,Family,Architecture,ProcessorType,DeviceID, \
CurrentClockSpeed,MaxClockSpeed,L2CacheSize,L2CacheSpeed,Revision /VALUE'
)
elif get_platform() == 'darwin':
rc, out, err = run_lambda("sysctl -n machdep.cpu.brand_string")
cpu_info = 'None'
if rc == 0:
cpu_info = out
else:
cpu_info = err
return cpu_info
def get_platform():
if sys.platform.startswith('linux'):
return 'linux'
elif sys.platform.startswith('win32'):
return 'win32'
elif sys.platform.startswith('cygwin'):
return 'cygwin'
elif sys.platform.startswith('darwin'):
return 'darwin'
else:
return sys.platform
def get_mac_version(run_lambda):
return run_and_parse_first_match(run_lambda, 'sw_vers -productVersion',
r'(.*)')
def get_windows_version(run_lambda):
system_root = os.environ.get('SYSTEMROOT', 'C:\\Windows')
wmic_cmd = os.path.join(system_root, 'System32', 'Wbem', 'wmic')
findstr_cmd = os.path.join(system_root, 'System32', 'findstr')
return run_and_read_all(
run_lambda,
'{} os get Caption | {} /v Caption'.format(wmic_cmd, findstr_cmd))
def get_lsb_version(run_lambda):
return run_and_parse_first_match(run_lambda, 'lsb_release -a',
r'Description:\t(.*)')
def check_release_file(run_lambda):
return run_and_parse_first_match(run_lambda, 'cat /etc/*-release',
r'PRETTY_NAME="(.*)"')
def get_os(run_lambda):
from platform import machine
platform = get_platform()
if platform == 'win32' or platform == 'cygwin':
return get_windows_version(run_lambda)
if platform == 'darwin':
version = get_mac_version(run_lambda)
if version is None:
return None
return 'macOS {} ({})'.format(version, machine())
if platform == 'linux':
# Ubuntu/Debian based
desc = get_lsb_version(run_lambda)
if desc is not None:
return '{} ({})'.format(desc, machine())
# Try reading /etc/*-release
desc = check_release_file(run_lambda)
if desc is not None:
return '{} ({})'.format(desc, machine())
return '{} ({})'.format(platform, machine())
# Unknown platform
return platform
def get_python_platform():
import platform
return platform.platform()
def get_libc_version():
import platform
if get_platform() != 'linux':
return 'N/A'
return '-'.join(platform.libc_ver())
def get_pip_packages(run_lambda, patterns=None):
"""Return `pip list` output. Note: will also find conda-installed pytorch and numpy packages."""
if patterns is None:
patterns = DEFAULT_PIP_PATTERNS
# People generally have `pip` as `pip` or `pip3`
# But here it is invoked as `python -mpip`
def run_with_pip(pip):
out = run_and_read_all(run_lambda, pip + ["list", "--format=freeze"])
return "\n".join(line for line in out.splitlines()
if any(name in line for name in patterns))
pip_version = 'pip3' if sys.version[0] == '3' else 'pip'
out = run_with_pip([sys.executable, '-mpip'])
return pip_version, out
def get_cachingallocator_config():
ca_config = os.environ.get('PYTORCH_CUDA_ALLOC_CONF', '')
return ca_config
def get_cuda_module_loading_config():
if TORCH_AVAILABLE and torch.cuda.is_available():
torch.cuda.init()
config = os.environ.get('CUDA_MODULE_LOADING', '')
return config
else:
return "N/A"
def is_xnnpack_available():
if TORCH_AVAILABLE:
import torch.backends.xnnpack
return str(
torch.backends.xnnpack.enabled) # type: ignore[attr-defined]
else:
return "N/A"
def get_env_info():
run_lambda = run
pip_version, pip_list_output = get_pip_packages(run_lambda)
if TORCH_AVAILABLE:
version_str = torch.__version__
debug_mode_str = str(torch.version.debug)
cuda_available_str = str(torch.cuda.is_available())
cuda_version_str = torch.version.cuda
if not hasattr(torch.version,
'hip') or torch.version.hip is None: # cuda version
hip_compiled_version = hip_runtime_version = miopen_runtime_version = 'N/A'
else: # HIP version
def get_version_or_na(cfg, prefix):
_lst = [s.rsplit(None, 1)[-1] for s in cfg if prefix in s]
return _lst[0] if _lst else 'N/A'
cfg = torch._C._show_config().split('\n')
hip_runtime_version = get_version_or_na(cfg, 'HIP Runtime')
miopen_runtime_version = get_version_or_na(cfg, 'MIOpen')
cuda_version_str = 'N/A'
hip_compiled_version = torch.version.hip
else:
version_str = debug_mode_str = cuda_available_str = cuda_version_str = 'N/A'
hip_compiled_version = hip_runtime_version = miopen_runtime_version = 'N/A'
sys_version = sys.version.replace("\n", " ")
conda_packages = get_conda_packages(run_lambda)
rocm_version = get_rocm_version(run_lambda)
neuron_sdk_version = get_neuron_sdk_version(run_lambda)
vllm_version = get_vllm_version()
vllm_build_flags = summarize_vllm_build_flags()
gpu_topo = get_gpu_topo(run_lambda)
return SystemEnv(
torch_version=version_str,
is_debug_build=debug_mode_str,
python_version='{} ({}-bit runtime)'.format(
sys_version,
sys.maxsize.bit_length() + 1),
python_platform=get_python_platform(),
is_cuda_available=cuda_available_str,
cuda_compiled_version=cuda_version_str,
cuda_runtime_version=get_running_cuda_version(run_lambda),
cuda_module_loading=get_cuda_module_loading_config(),
nvidia_gpu_models=get_gpu_info(run_lambda),
nvidia_driver_version=get_nvidia_driver_version(run_lambda),
cudnn_version=get_cudnn_version(run_lambda),
hip_compiled_version=hip_compiled_version,
hip_runtime_version=hip_runtime_version,
miopen_runtime_version=miopen_runtime_version,
pip_version=pip_version,
pip_packages=pip_list_output,
conda_packages=conda_packages,
os=get_os(run_lambda),
libc_version=get_libc_version(),
gcc_version=get_gcc_version(run_lambda),
clang_version=get_clang_version(run_lambda),
cmake_version=get_cmake_version(run_lambda),
caching_allocator_config=get_cachingallocator_config(),
is_xnnpack_available=is_xnnpack_available(),
cpu_info=get_cpu_info(run_lambda),
rocm_version=rocm_version,
neuron_sdk_version=neuron_sdk_version,
vllm_version=vllm_version,
vllm_build_flags=vllm_build_flags,
gpu_topo=gpu_topo,
)
env_info_fmt = """
PyTorch version: {torch_version}
Is debug build: {is_debug_build}
CUDA used to build PyTorch: {cuda_compiled_version}
ROCM used to build PyTorch: {hip_compiled_version}
OS: {os}
GCC version: {gcc_version}
Clang version: {clang_version}
CMake version: {cmake_version}
Libc version: {libc_version}
Python version: {python_version}
Python platform: {python_platform}
Is CUDA available: {is_cuda_available}
CUDA runtime version: {cuda_runtime_version}
CUDA_MODULE_LOADING set to: {cuda_module_loading}
GPU models and configuration: {nvidia_gpu_models}
Nvidia driver version: {nvidia_driver_version}
cuDNN version: {cudnn_version}
HIP runtime version: {hip_runtime_version}
MIOpen runtime version: {miopen_runtime_version}
Is XNNPACK available: {is_xnnpack_available}
CPU:
{cpu_info}
Versions of relevant libraries:
{pip_packages}
{conda_packages}
""".strip()
# both the above code and the following code use `strip()` to
# remove leading/trailing whitespaces, so we need to add a newline
# in between to separate the two sections
env_info_fmt += "\n"
env_info_fmt += """
ROCM Version: {rocm_version}
Neuron SDK Version: {neuron_sdk_version}
vLLM Version: {vllm_version}
vLLM Build Flags:
{vllm_build_flags}
GPU Topology:
{gpu_topo}
""".strip()
def pretty_str(envinfo):
def replace_nones(dct, replacement='Could not collect'):
for key in dct.keys():
if dct[key] is not None:
continue
dct[key] = replacement
return dct
def replace_bools(dct, true='Yes', false='No'):
for key in dct.keys():
if dct[key] is True:
dct[key] = true
elif dct[key] is False:
dct[key] = false
return dct
def prepend(text, tag='[prepend]'):
lines = text.split('\n')
updated_lines = [tag + line for line in lines]
return '\n'.join(updated_lines)
def replace_if_empty(text, replacement='No relevant packages'):
if text is not None and len(text) == 0:
return replacement
return text
def maybe_start_on_next_line(string):
# If `string` is multiline, prepend a \n to it.
if string is not None and len(string.split('\n')) > 1:
return '\n{}\n'.format(string)
return string
mutable_dict = envinfo._asdict()
# If nvidia_gpu_models is multiline, start on the next line
mutable_dict['nvidia_gpu_models'] = \
maybe_start_on_next_line(envinfo.nvidia_gpu_models)
# If the machine doesn't have CUDA, report some fields as 'No CUDA'
dynamic_cuda_fields = [
'cuda_runtime_version',
'nvidia_gpu_models',
'nvidia_driver_version',
]
all_cuda_fields = dynamic_cuda_fields + ['cudnn_version']
all_dynamic_cuda_fields_missing = all(mutable_dict[field] is None
for field in dynamic_cuda_fields)
if TORCH_AVAILABLE and not torch.cuda.is_available(
) and all_dynamic_cuda_fields_missing:
for field in all_cuda_fields:
mutable_dict[field] = 'No CUDA'
if envinfo.cuda_compiled_version is None:
mutable_dict['cuda_compiled_version'] = 'None'
# Replace True with Yes, False with No
mutable_dict = replace_bools(mutable_dict)
# Replace all None objects with 'Could not collect'
mutable_dict = replace_nones(mutable_dict)
# If either of these are '', replace with 'No relevant packages'
mutable_dict['pip_packages'] = replace_if_empty(
mutable_dict['pip_packages'])
mutable_dict['conda_packages'] = replace_if_empty(
mutable_dict['conda_packages'])
# Tag conda and pip packages with a prefix
# If they were previously None, they'll show up as ie '[conda] Could not collect'
if mutable_dict['pip_packages']:
mutable_dict['pip_packages'] = prepend(
mutable_dict['pip_packages'], '[{}] '.format(envinfo.pip_version))
if mutable_dict['conda_packages']:
mutable_dict['conda_packages'] = prepend(
mutable_dict['conda_packages'], '[conda] ')
mutable_dict['cpu_info'] = envinfo.cpu_info
return env_info_fmt.format(**mutable_dict)
def get_pretty_env_info():
return pretty_str(get_env_info())
def main():
print("Collecting environment information...")
output = get_pretty_env_info()
print(output)
if TORCH_AVAILABLE and hasattr(torch, 'utils') and hasattr(
torch.utils, '_crash_handler'):
minidump_dir = torch.utils._crash_handler.DEFAULT_MINIDUMP_DIR
if sys.platform == "linux" and os.path.exists(minidump_dir):
dumps = [
os.path.join(minidump_dir, dump)
for dump in os.listdir(minidump_dir)
]
latest = max(dumps, key=os.path.getctime)
ctime = os.path.getctime(latest)
creation_time = datetime.datetime.fromtimestamp(ctime).strftime(
'%Y-%m-%d %H:%M:%S')
msg = "\n*** Detected a minidump at {} created on {}, ".format(latest, creation_time) + \
"if this is related to your bug please include it when you file a report ***"
print(msg, file=sys.stderr)
if __name__ == '__main__':
main()

View File

@@ -1,61 +1,100 @@
#include <torch/extension.h>
#include <ATen/cuda/CUDAContext.h>
#include <torch/all.h>
#include <c10/cuda/CUDAGuard.h>
#include <cmath>
#include "cuda_compat.h"
#include "dispatch_utils.h"
namespace vllm {
template<typename T>
__device__ __forceinline__ T silu(const T& x) {
// x * sigmoid(x)
return (T) (((float) x) / (1.0f + expf((float) -x)));
}
template<typename scalar_t>
__global__ void silu_and_mul_kernel(
scalar_t* __restrict__ out, // [..., d]
const scalar_t* __restrict__ input, // [..., 2, d]
const int d) {
// Activation and gating kernel template.
template <typename scalar_t, scalar_t (*ACT_FN)(const scalar_t&)>
__global__ void act_and_mul_kernel(
scalar_t* __restrict__ out, // [..., d]
const scalar_t* __restrict__ input, // [..., 2, d]
const int d) {
const int64_t token_idx = blockIdx.x;
for (int64_t idx = threadIdx.x; idx < d; idx += blockDim.x) {
const scalar_t x = VLLM_LDG(&input[token_idx * 2 * d + idx]);
const scalar_t y = VLLM_LDG(&input[token_idx * 2 * d + d + idx]);
out[token_idx * d + idx] = silu(x) * y;
out[token_idx * d + idx] = ACT_FN(x) * y;
}
}
} // namespace vllm
template <typename T>
__device__ __forceinline__ T silu_kernel(const T& x) {
// x * sigmoid(x)
return (T)(((float)x) / (1.0f + expf((float)-x)));
}
void silu_and_mul(
torch::Tensor& out, // [..., d]
torch::Tensor& input) // [..., 2 * d]
template <typename T>
__device__ __forceinline__ T gelu_kernel(const T& x) {
// Equivalent to PyTorch GELU with 'none' approximation.
// Refer to:
// https://github.com/pytorch/pytorch/blob/8ac9b20d4b090c213799e81acf48a55ea8d437d6/aten/src/ATen/native/cuda/ActivationGeluKernel.cu#L36-L38
const float f = (float)x;
constexpr float ALPHA = M_SQRT1_2;
return (T)(f * 0.5f * (1.0f + ::erf(f * ALPHA)));
}
template <typename T>
__device__ __forceinline__ T gelu_tanh_kernel(const T& x) {
// Equivalent to PyTorch GELU with 'tanh' approximation.
// Refer to:
// https://github.com/pytorch/pytorch/blob/8ac9b20d4b090c213799e81acf48a55ea8d437d6/aten/src/ATen/native/cuda/ActivationGeluKernel.cu#L25-L30
const float f = (float)x;
constexpr float BETA = M_SQRT2 * M_2_SQRTPI * 0.5f;
constexpr float KAPPA = 0.044715;
float x_cube = f * f * f;
float inner = BETA * (f + KAPPA * x_cube);
return (T)(0.5f * f * (1.0f + ::tanhf(inner)));
}
} // namespace vllm
// Launch activation and gating kernel.
#define LAUNCH_ACTIVATION_GATE_KERNEL(KERNEL) \
int d = input.size(-1) / 2; \
int64_t num_tokens = input.numel() / input.size(-1); \
dim3 grid(num_tokens); \
dim3 block(std::min(d, 1024)); \
const at::cuda::OptionalCUDAGuard device_guard(device_of(input)); \
const cudaStream_t stream = at::cuda::getCurrentCUDAStream(); \
VLLM_DISPATCH_FLOATING_TYPES( \
input.scalar_type(), "act_and_mul_kernel", [&] { \
vllm::act_and_mul_kernel<scalar_t, KERNEL<scalar_t>> \
<<<grid, block, 0, stream>>>(out.data_ptr<scalar_t>(), \
input.data_ptr<scalar_t>(), d); \
});
void silu_and_mul(torch::Tensor& out, // [..., d]
torch::Tensor& input) // [..., 2 * d]
{
int64_t num_tokens = input.numel() / input.size(-1);
int d = input.size(-1) / 2;
LAUNCH_ACTIVATION_GATE_KERNEL(vllm::silu_kernel);
}
dim3 grid(num_tokens);
dim3 block(std::min(d, 1024));
const cudaStream_t stream = at::cuda::getCurrentCUDAStream();
VLLM_DISPATCH_FLOATING_TYPES(
input.scalar_type(),
"silu_and_mul_kernel",
[&] {
vllm::silu_and_mul_kernel<scalar_t><<<grid, block, 0, stream>>>(
out.data_ptr<scalar_t>(),
input.data_ptr<scalar_t>(),
d);
});
void gelu_and_mul(torch::Tensor& out, // [..., d]
torch::Tensor& input) // [..., 2 * d]
{
LAUNCH_ACTIVATION_GATE_KERNEL(vllm::gelu_kernel);
}
void gelu_tanh_and_mul(torch::Tensor& out, // [..., d]
torch::Tensor& input) // [..., 2 * d]
{
LAUNCH_ACTIVATION_GATE_KERNEL(vllm::gelu_tanh_kernel);
}
namespace vllm {
// Element-wise activation kernel template.
template<typename scalar_t, scalar_t (*ACT_FN)(const scalar_t&)>
template <typename scalar_t, scalar_t (*ACT_FN)(const scalar_t&)>
__global__ void activation_kernel(
scalar_t* __restrict__ out, // [..., d]
const scalar_t* __restrict__ input, // [..., d]
const int d) {
scalar_t* __restrict__ out, // [..., d]
const scalar_t* __restrict__ input, // [..., d]
const int d) {
const int64_t token_idx = blockIdx.x;
for (int64_t idx = threadIdx.x; idx < d; idx += blockDim.x) {
const scalar_t x = VLLM_LDG(&input[token_idx * d + idx]);
@@ -63,53 +102,61 @@ __global__ void activation_kernel(
}
}
} // namespace vllm
} // namespace vllm
// Launch element-wise activation kernel.
#define LAUNCH_ACTIVATION_KERNEL(KERNEL) \
int d = input.size(-1); \
int64_t num_tokens = input.numel() / d; \
dim3 grid(num_tokens); \
dim3 block(std::min(d, 1024)); \
const cudaStream_t stream = at::cuda::getCurrentCUDAStream(); \
VLLM_DISPATCH_FLOATING_TYPES( \
input.scalar_type(), \
"activation_kernel", \
[&] { \
vllm::activation_kernel<scalar_t, KERNEL<scalar_t>><<<grid, block, 0, stream>>>( \
out.data_ptr<scalar_t>(), \
input.data_ptr<scalar_t>(), \
d); \
});
#define LAUNCH_ACTIVATION_KERNEL(KERNEL) \
int d = input.size(-1); \
int64_t num_tokens = input.numel() / d; \
dim3 grid(num_tokens); \
dim3 block(std::min(d, 1024)); \
const at::cuda::OptionalCUDAGuard device_guard(device_of(input)); \
const cudaStream_t stream = at::cuda::getCurrentCUDAStream(); \
VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "activation_kernel", [&] { \
vllm::activation_kernel<scalar_t, KERNEL<scalar_t>> \
<<<grid, block, 0, stream>>>(out.data_ptr<scalar_t>(), \
input.data_ptr<scalar_t>(), d); \
});
namespace vllm {
template<typename T>
template <typename T>
__device__ __forceinline__ T gelu_new_kernel(const T& x) {
const float x3 = (float) (x * x * x);
const T t = (T) tanhf((T) (0.79788456f * (float) (x + (T) (0.044715f * x3))));
return ((T) 0.5) * x * (((T) 1.0) + t);
const float x3 = (float)(x * x * x);
const T t = (T)tanhf((T)(0.79788456f * (float)(x + (T)(0.044715f * x3))));
return ((T)0.5) * x * (((T)1.0) + t);
}
template<typename T>
template <typename T>
__device__ __forceinline__ T gelu_fast_kernel(const T& x) {
const float f = (float) x;
const T t = (T) tanhf(((T) (f * 0.79788456f)) * (((T) 1.0) + (T) (0.044715f * f) * x));
return ((T) 0.5) * x * (((T) 1.0) + t);
const float f = (float)x;
const T t =
(T)tanhf(((T)(f * 0.79788456f)) * (((T)1.0) + (T)(0.044715f * f) * x));
return ((T)0.5) * x * (((T)1.0) + t);
}
} // namespace vllm
template <typename T>
__device__ __forceinline__ T gelu_quick_kernel(const T& x) {
// x * sigmoid(1.702 * x)
return (T)(((float)x) / (1.0f + expf(-1.702f * (float)x)));
}
void gelu_new(
torch::Tensor& out, // [..., d]
torch::Tensor& input) // [..., d]
} // namespace vllm
void gelu_new(torch::Tensor& out, // [..., d]
torch::Tensor& input) // [..., d]
{
LAUNCH_ACTIVATION_KERNEL(vllm::gelu_new_kernel);
}
void gelu_fast(
torch::Tensor& out, // [..., d]
torch::Tensor& input) // [..., d]
void gelu_fast(torch::Tensor& out, // [..., d]
torch::Tensor& input) // [..., d]
{
LAUNCH_ACTIVATION_KERNEL(vllm::gelu_fast_kernel);
}
void gelu_quick(torch::Tensor& out, // [..., d]
torch::Tensor& input) // [..., d]
{
LAUNCH_ACTIVATION_KERNEL(vllm::gelu_quick_kernel);
}

View File

@@ -4,3 +4,4 @@
#include "dtype_float16.cuh"
#include "dtype_float32.cuh"
#include "dtype_bfloat16.cuh"
#include "dtype_fp8.cuh"

View File

@@ -1,5 +1,6 @@
/*
* Adapted from https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention_utils.h
* Adapted from
* https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention_utils.h
* Copyright (c) 2023, The vLLM team.
* Copyright (c) 2020-2023, NVIDIA CORPORATION. All rights reserved.
*
@@ -22,31 +23,31 @@
namespace vllm {
// A vector type to store Q, K, V elements.
template<typename T, int VEC_SIZE>
template <typename T, int VEC_SIZE>
struct Vec {};
// A vector type to store FP32 accumulators.
template<typename T>
template <typename T>
struct FloatVec {};
// Template vector operations.
template<typename Acc, typename A, typename B>
template <typename Acc, typename A, typename B>
inline __device__ Acc mul(A a, B b);
template<typename T>
template <typename T>
inline __device__ float sum(T v);
template<typename T>
template <typename T>
inline __device__ float dot(T a, T b) {
return sum(mul<T, T, T>(a, b));
}
template<typename A, typename T>
template <typename A, typename T>
inline __device__ float dot(T a, T b) {
return sum(mul<A, T, T>(a, b));
}
template<typename T>
template <typename T>
inline __device__ void zero(T& dst) {
constexpr int WORDS = sizeof(T) / 4;
union {
@@ -61,4 +62,4 @@ inline __device__ void zero(T& dst) {
dst = tmp.raw;
}
} // namespace vllm
} // namespace vllm

File diff suppressed because it is too large Load Diff

View File

@@ -1,5 +1,6 @@
/*
* Adapted from https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention/decoder_masked_multihead_attention_template.hpp
* Adapted from
* https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention/decoder_masked_multihead_attention_template.hpp
* Copyright (c) 2023, The vLLM team.
* Copyright (c) 2020-2023, NVIDIA CORPORATION. All rights reserved.
*
@@ -26,7 +27,7 @@
namespace vllm {
// Q*K^T operation.
template<int THREAD_GROUP_SIZE, typename Vec, int N>
template <int THREAD_GROUP_SIZE, typename Vec, int N>
inline __device__ float qk_dot_(const Vec (&q)[N], const Vec (&k)[N]) {
using A_vec = typename FloatVec<Vec>::Type;
// Compute the parallel products for Q*K^T (treat vector lanes separately).
@@ -45,12 +46,12 @@ inline __device__ float qk_dot_(const Vec (&q)[N], const Vec (&k)[N]) {
return qk;
}
template<typename T, int THREAD_GROUP_SIZE>
template <typename T, int THREAD_GROUP_SIZE>
struct Qk_dot {
template<typename Vec, int N>
template <typename Vec, int N>
static inline __device__ float dot(const Vec (&q)[N], const Vec (&k)[N]) {
return qk_dot_<THREAD_GROUP_SIZE>(q, k);
}
};
} // namespace vllm
} // namespace vllm

View File

@@ -1,6 +1,8 @@
/*
* Adapted from https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention/decoder_masked_multihead_attention_template.hpp
* and https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention_utils.h
* Adapted from
* https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention/decoder_masked_multihead_attention_template.hpp
* and
* https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention_utils.h
* Copyright (c) 2023, The vLLM team.
* Copyright (c) 2020-2023, NVIDIA CORPORATION. All rights reserved.
*
@@ -28,8 +30,8 @@
#include <hip/hip_bf16.h>
#include <hip/hip_fp16.h>
typedef __hip_bfloat162 __nv_bfloat162;
typedef __hip_bfloat16 __nv_bfloat16;
typedef __hip_bfloat162 __nv_bfloat162;
typedef __hip_bfloat16 __nv_bfloat16;
#endif
#include <stdint.h>
@@ -50,37 +52,37 @@ struct bf16_8_t {
};
// BF16 vector types for Q, K, V.
template<>
template <>
struct Vec<__nv_bfloat16, 1> {
using Type = __nv_bfloat16;
};
template<>
template <>
struct Vec<__nv_bfloat16, 2> {
using Type = __nv_bfloat162;
};
template<>
template <>
struct Vec<__nv_bfloat16, 4> {
using Type = bf16_4_t;
};
template<>
template <>
struct Vec<__nv_bfloat16, 8> {
using Type = bf16_8_t;
};
// FP32 accumulator vector types corresponding to Vec.
template<>
template <>
struct FloatVec<__nv_bfloat16> {
using Type = float;
};
template<>
template <>
struct FloatVec<__nv_bfloat162> {
using Type = float2;
};
template<>
template <>
struct FloatVec<bf16_4_t> {
using Type = Float4_;
};
template<>
template <>
struct FloatVec<bf16_8_t> {
using Type = Float8_;
};
@@ -108,9 +110,9 @@ inline __device__ __nv_bfloat16 add(__nv_bfloat16 a, __nv_bfloat16 b) {
assert(false);
#else
#ifndef USE_ROCM
return a + b;
return a + b;
#else
return __hadd(a, b);
return __hadd(a, b);
#endif
#endif
}
@@ -161,7 +163,7 @@ inline __device__ Float8_ add(bf16_8_t a, Float8_ fb) {
}
// Vector multiplication.
template<>
template <>
inline __device__ __nv_bfloat16 mul(__nv_bfloat16 a, __nv_bfloat16 b) {
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ < 800
assert(false);
@@ -170,7 +172,7 @@ inline __device__ __nv_bfloat16 mul(__nv_bfloat16 a, __nv_bfloat16 b) {
#endif
}
template<>
template <>
inline __device__ __nv_bfloat162 mul(__nv_bfloat162 a, __nv_bfloat162 b) {
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ < 800
assert(false);
@@ -179,12 +181,12 @@ inline __device__ __nv_bfloat162 mul(__nv_bfloat162 a, __nv_bfloat162 b) {
#endif
}
template<>
template <>
inline __device__ __nv_bfloat162 mul(__nv_bfloat16 a, __nv_bfloat162 b) {
return mul<__nv_bfloat162, __nv_bfloat162, __nv_bfloat162>(bf162bf162(a), b);
}
template<>
template <>
inline __device__ bf16_4_t mul(bf16_4_t a, bf16_4_t b) {
bf16_4_t c;
c.x = mul<__nv_bfloat162, __nv_bfloat162, __nv_bfloat162>(a.x, b.x);
@@ -192,7 +194,7 @@ inline __device__ bf16_4_t mul(bf16_4_t a, bf16_4_t b) {
return c;
}
template<>
template <>
inline __device__ bf16_4_t mul(__nv_bfloat16 a, bf16_4_t b) {
__nv_bfloat162 s = bf162bf162(a);
bf16_4_t c;
@@ -201,7 +203,7 @@ inline __device__ bf16_4_t mul(__nv_bfloat16 a, bf16_4_t b) {
return c;
}
template<>
template <>
inline __device__ bf16_8_t mul(bf16_8_t a, bf16_8_t b) {
bf16_8_t c;
c.x = mul<__nv_bfloat162, __nv_bfloat162, __nv_bfloat162>(a.x, b.x);
@@ -211,7 +213,7 @@ inline __device__ bf16_8_t mul(bf16_8_t a, bf16_8_t b) {
return c;
}
template<>
template <>
inline __device__ bf16_8_t mul(__nv_bfloat16 a, bf16_8_t b) {
__nv_bfloat162 s = bf162bf162(a);
bf16_8_t c;
@@ -222,26 +224,26 @@ inline __device__ bf16_8_t mul(__nv_bfloat16 a, bf16_8_t b) {
return c;
}
template<>
template <>
inline __device__ float mul(__nv_bfloat16 a, __nv_bfloat16 b) {
float fa = __bfloat162float(a);
float fb = __bfloat162float(b);
return fa * fb;
}
template<>
template <>
inline __device__ float2 mul(__nv_bfloat162 a, __nv_bfloat162 b) {
float2 fa = bf1622float2(a);
float2 fb = bf1622float2(b);
return mul<float2, float2, float2>(fa, fb);
}
template<>
template <>
inline __device__ float2 mul(__nv_bfloat16 a, __nv_bfloat162 b) {
return mul<float2, __nv_bfloat162, __nv_bfloat162>(bf162bf162(a), b);
}
template<>
template <>
inline __device__ Float4_ mul(bf16_4_t a, bf16_4_t b) {
Float4_ fc;
fc.x = mul<float2, __nv_bfloat162, __nv_bfloat162>(a.x, b.x);
@@ -249,7 +251,7 @@ inline __device__ Float4_ mul(bf16_4_t a, bf16_4_t b) {
return fc;
}
template<>
template <>
inline __device__ Float4_ mul(__nv_bfloat16 a, bf16_4_t b) {
__nv_bfloat162 s = bf162bf162(a);
Float4_ fc;
@@ -258,7 +260,7 @@ inline __device__ Float4_ mul(__nv_bfloat16 a, bf16_4_t b) {
return fc;
}
template<>
template <>
inline __device__ Float8_ mul(bf16_8_t a, bf16_8_t b) {
Float8_ fc;
fc.x = mul<float2, __nv_bfloat162, __nv_bfloat162>(a.x, b.x);
@@ -268,7 +270,7 @@ inline __device__ Float8_ mul(bf16_8_t a, bf16_8_t b) {
return fc;
}
template<>
template <>
inline __device__ Float8_ mul(__nv_bfloat16 a, bf16_8_t b) {
__nv_bfloat162 s = bf162bf162(a);
Float8_ fc;
@@ -280,7 +282,8 @@ inline __device__ Float8_ mul(__nv_bfloat16 a, bf16_8_t b) {
}
// Vector fused multiply-add.
inline __device__ __nv_bfloat162 fma(__nv_bfloat162 a, __nv_bfloat162 b, __nv_bfloat162 c) {
inline __device__ __nv_bfloat162 fma(__nv_bfloat162 a, __nv_bfloat162 b,
__nv_bfloat162 c) {
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ < 800
assert(false);
#else
@@ -288,7 +291,8 @@ inline __device__ __nv_bfloat162 fma(__nv_bfloat162 a, __nv_bfloat162 b, __nv_bf
#endif
}
inline __device__ __nv_bfloat162 fma(__nv_bfloat16 a, __nv_bfloat162 b, __nv_bfloat162 c) {
inline __device__ __nv_bfloat162 fma(__nv_bfloat16 a, __nv_bfloat162 b,
__nv_bfloat162 c) {
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ < 800
assert(false);
#else
@@ -379,23 +383,23 @@ inline __device__ Float8_ fma(__nv_bfloat16 a, bf16_8_t b, Float8_ fc) {
}
// Vector sum.
template<>
template <>
inline __device__ float sum(__nv_bfloat16 v) {
return __bfloat162float(v);
}
template<>
template <>
inline __device__ float sum(__nv_bfloat162 v) {
float2 vf = bf1622float2(v);
return vf.x + vf.y;
}
template<>
template <>
inline __device__ float sum(bf16_4_t v) {
return sum(v.x) + sum(v.y);
}
template<>
template <>
inline __device__ float sum(bf16_8_t v) {
return sum(v.x) + sum(v.y) + sum(v.z) + sum(v.w);
}
@@ -448,4 +452,4 @@ inline __device__ void zero(__nv_bfloat16& dst) {
#endif
}
} // namespace vllm
} // namespace vllm

View File

@@ -1,6 +1,8 @@
/*
* Adapted from https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention/decoder_masked_multihead_attention_template.hpp
* and https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention_utils.h
* Adapted from
* https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention/decoder_masked_multihead_attention_template.hpp
* and
* https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention_utils.h
* Copyright (c) 2023, The vLLM team.
* Copyright (c) 2020-2023, NVIDIA CORPORATION. All rights reserved.
*
@@ -30,37 +32,37 @@
namespace vllm {
// FP16 vector types for Q, K, V.
template<>
template <>
struct Vec<uint16_t, 1> {
using Type = uint16_t;
};
template<>
template <>
struct Vec<uint16_t, 2> {
using Type = uint32_t;
};
template<>
template <>
struct Vec<uint16_t, 4> {
using Type = uint2;
};
template<>
template <>
struct Vec<uint16_t, 8> {
using Type = uint4;
};
// FP32 accumulator vector types corresponding to Vec.
template<>
template <>
struct FloatVec<uint16_t> {
using Type = float;
};
template<>
template <>
struct FloatVec<uint32_t> {
using Type = float2;
};
template<>
template <>
struct FloatVec<uint2> {
using Type = Float4_;
};
template<>
template <>
struct FloatVec<uint4> {
using Type = Float8_;
};
@@ -73,8 +75,8 @@ inline __device__ uint32_t h0_h0(uint16_t a) {
return b;
#else
union {
uint32_t u32;
uint16_t u16[2];
uint32_t u32;
uint16_t u16[2];
} tmp;
tmp.u16[0] = a;
tmp.u16[1] = a;
@@ -130,10 +132,12 @@ inline __device__ uint32_t float2_to_half2(float2 f) {
} tmp;
#ifndef USE_ROCM
#if defined(__CUDA_ARCH__) && __CUDA_ARCH__ >= 800
asm volatile("cvt.rn.f16x2.f32 %0, %1, %2;\n" : "=r"(tmp.u32) : "f"(f.y), "f"(f.x));
asm volatile("cvt.rn.f16x2.f32 %0, %1, %2;\n"
: "=r"(tmp.u32)
: "f"(f.y), "f"(f.x));
#else
asm volatile("cvt.rn.f16.f32 %0, %1;\n" : "=h"(tmp.u16[0]) : "f"(f.x));
asm volatile("cvt.rn.f16.f32 %0, %1;\n" : "=h"(tmp.u16[1]) : "f"(f.y));
asm volatile("cvt.rn.f16.f32 %0, %1;\n" : "=h"(tmp.u16[0]) : "f"(f.x));
asm volatile("cvt.rn.f16.f32 %0, %1;\n" : "=h"(tmp.u16[1]) : "f"(f.y));
#endif
#else
tmp.u16[0] = float_to_half(f.x);
@@ -201,7 +205,7 @@ inline __device__ Float8_ add(uint4 a, Float8_ fb) {
}
// Vector multiplication.
template<>
template <>
inline __device__ uint16_t mul(uint16_t a, uint16_t b) {
uint16_t c;
#ifndef USE_ROCM
@@ -212,7 +216,7 @@ inline __device__ uint16_t mul(uint16_t a, uint16_t b) {
return c;
}
template<>
template <>
inline __device__ uint32_t mul(uint32_t a, uint32_t b) {
uint32_t c;
#ifndef USE_ROCM
@@ -223,12 +227,12 @@ inline __device__ uint32_t mul(uint32_t a, uint32_t b) {
return c;
}
template<>
template <>
inline __device__ uint32_t mul(uint16_t a, uint32_t b) {
return mul<uint32_t, uint32_t, uint32_t>(h0_h0(a), b);
}
template<>
template <>
inline __device__ uint2 mul(uint2 a, uint2 b) {
uint2 c;
c.x = mul<uint32_t, uint32_t, uint32_t>(a.x, b.x);
@@ -236,7 +240,7 @@ inline __device__ uint2 mul(uint2 a, uint2 b) {
return c;
}
template<>
template <>
inline __device__ uint2 mul(uint16_t a, uint2 b) {
uint32_t s = h0_h0(a);
uint2 c;
@@ -245,7 +249,7 @@ inline __device__ uint2 mul(uint16_t a, uint2 b) {
return c;
}
template<>
template <>
inline __device__ uint4 mul(uint4 a, uint4 b) {
uint4 c;
c.x = mul<uint32_t, uint32_t, uint32_t>(a.x, b.x);
@@ -255,7 +259,7 @@ inline __device__ uint4 mul(uint4 a, uint4 b) {
return c;
}
template<>
template <>
inline __device__ uint4 mul(uint16_t a, uint4 b) {
uint32_t s = h0_h0(a);
uint4 c;
@@ -266,26 +270,26 @@ inline __device__ uint4 mul(uint16_t a, uint4 b) {
return c;
}
template<>
template <>
inline __device__ float mul(uint16_t a, uint16_t b) {
float fa = half_to_float(a);
float fb = half_to_float(b);
return fa * fb;
}
template<>
template <>
inline __device__ float2 mul(uint32_t a, uint32_t b) {
float2 fa = half2_to_float2(a);
float2 fb = half2_to_float2(b);
return mul<float2, float2, float2>(fa, fb);
}
template<>
template <>
inline __device__ float2 mul(uint16_t a, uint32_t b) {
return mul<float2, uint32_t, uint32_t>(h0_h0(a), b);
}
template<>
template <>
inline __device__ Float4_ mul(uint2 a, uint2 b) {
Float4_ fc;
fc.x = mul<float2, uint32_t, uint32_t>(a.x, b.x);
@@ -293,7 +297,7 @@ inline __device__ Float4_ mul(uint2 a, uint2 b) {
return fc;
}
template<>
template <>
inline __device__ Float4_ mul(uint16_t a, uint2 b) {
uint32_t s = h0_h0(a);
Float4_ fc;
@@ -302,7 +306,7 @@ inline __device__ Float4_ mul(uint16_t a, uint2 b) {
return fc;
}
template<>
template <>
inline __device__ Float8_ mul(uint4 a, uint4 b) {
Float8_ fc;
fc.x = mul<float2, uint32_t, uint32_t>(a.x, b.x);
@@ -312,7 +316,7 @@ inline __device__ Float8_ mul(uint4 a, uint4 b) {
return fc;
}
template<>
template <>
inline __device__ Float8_ mul(uint16_t a, uint4 b) {
uint32_t s = h0_h0(a);
Float8_ fc;
@@ -327,9 +331,13 @@ inline __device__ Float8_ mul(uint16_t a, uint4 b) {
inline __device__ uint32_t fma(uint32_t a, uint32_t b, uint32_t c) {
uint32_t d;
#ifndef USE_ROCM
asm volatile("fma.rn.f16x2 %0, %1, %2, %3;\n" : "=r"(d) : "r"(a), "r"(b), "r"(c));
asm volatile("fma.rn.f16x2 %0, %1, %2, %3;\n"
: "=r"(d)
: "r"(a), "r"(b), "r"(c));
#else
asm volatile("v_pk_fma_f16 %0, %1, %2, %3;\n" : "=v"(d) : "v"(a), "v"(b), "v"(c));
asm volatile("v_pk_fma_f16 %0, %1, %2, %3;\n"
: "=v"(d)
: "v"(a), "v"(b), "v"(c));
#endif
return d;
}
@@ -423,24 +431,24 @@ inline __device__ Float8_ fma(uint16_t a, uint4 b, Float8_ fc) {
}
// Vector sum.
template<>
template <>
inline __device__ float sum(uint16_t v) {
return half_to_float(v);
}
template<>
template <>
inline __device__ float sum(uint32_t v) {
float2 tmp = half2_to_float2(v);
return tmp.x + tmp.y;
}
template<>
template <>
inline __device__ float sum(uint2 v) {
uint32_t c = add(v.x, v.y);
return sum(c);
}
template<>
template <>
inline __device__ float sum(uint4 v) {
uint32_t c = add(v.x, v.y);
c = add(c, v.z);
@@ -470,13 +478,9 @@ inline __device__ void from_float(uint4& dst, Float8_ src) {
}
// From float16 to float32.
inline __device__ float to_float(uint16_t u) {
return half_to_float(u);
}
inline __device__ float to_float(uint16_t u) { return half_to_float(u); }
inline __device__ float2 to_float(uint32_t u) {
return half2_to_float2(u);
}
inline __device__ float2 to_float(uint32_t u) { return half2_to_float2(u); }
inline __device__ Float4_ to_float(uint2 u) {
Float4_ tmp;
@@ -495,8 +499,6 @@ inline __device__ Float8_ to_float(uint4 u) {
}
// Zero-out a variable.
inline __device__ void zero(uint16_t& dst) {
dst = uint16_t(0);
}
inline __device__ void zero(uint16_t& dst) { dst = uint16_t(0); }
} // namespace vllm
} // namespace vllm

View File

@@ -1,6 +1,8 @@
/*
* Adapted from https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention/decoder_masked_multihead_attention_template.hpp
* and https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention_utils.h
* Adapted from
* https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention/decoder_masked_multihead_attention_template.hpp
* and
* https://github.com/NVIDIA/FasterTransformer/blob/release/v5.3_tag/src/fastertransformer/kernels/decoder_masked_multihead_attention_utils.h
* Copyright (c) 2023, The vLLM team.
* Copyright (c) 2020-2023, NVIDIA CORPORATION. All rights reserved.
*
@@ -38,37 +40,35 @@ struct Float8_ {
};
// FP32 vector types for Q, K, V.
template<>
template <>
struct Vec<float, 1> {
using Type = float;
};
template<>
template <>
struct Vec<float, 2> {
using Type = float2;
};
template<>
template <>
struct Vec<float, 4> {
using Type = float4;
};
// FP32 accumulator vector types corresponding to Vec.
template<>
template <>
struct FloatVec<float> {
using Type = float;
};
template<>
template <>
struct FloatVec<float2> {
using Type = float2;
};
template<>
template <>
struct FloatVec<float4> {
using Type = float4;
};
// Vector addition.
inline __device__ float add(float a, float b) {
return a + b;
}
inline __device__ float add(float a, float b) { return a + b; }
inline __device__ float2 add(float2 a, float2 b) {
float2 c;
@@ -87,12 +87,12 @@ inline __device__ float4 add(float4 a, float4 b) {
}
// Vector multiplication.
template<>
template <>
inline __device__ float mul<float, float>(float a, float b) {
return a * b;
}
template<>
template <>
inline __device__ float2 mul(float2 a, float2 b) {
float2 c;
c.x = a.x * b.x;
@@ -100,7 +100,7 @@ inline __device__ float2 mul(float2 a, float2 b) {
return c;
}
template<>
template <>
inline __device__ float2 mul(float a, float2 b) {
float2 c;
c.x = a * b.x;
@@ -108,7 +108,7 @@ inline __device__ float2 mul(float a, float2 b) {
return c;
}
template<>
template <>
inline __device__ float4 mul(float4 a, float4 b) {
float4 c;
c.x = a.x * b.x;
@@ -118,7 +118,7 @@ inline __device__ float4 mul(float4 a, float4 b) {
return c;
}
template<>
template <>
inline __device__ float4 mul(float a, float4 b) {
float4 c;
c.x = a * b.x;
@@ -129,9 +129,7 @@ inline __device__ float4 mul(float a, float4 b) {
}
// Vector fused multiply-add.
inline __device__ float fma(float a, float b, float c) {
return a * b + c;
}
inline __device__ float fma(float a, float b, float c) { return a * b + c; }
inline __device__ float2 fma(float2 a, float2 b, float2 c) {
float2 d;
@@ -182,35 +180,33 @@ inline __device__ Float8_ fma(float a, Float8_ b, Float8_ c) {
}
// Vector sum.
template<>
template <>
inline __device__ float sum(float v) {
return v;
}
template<>
template <>
inline __device__ float sum(float2 v) {
return v.x + v.y;
}
template<>
template <>
inline __device__ float sum(float4 v) {
return v.x + v.y + v.z + v.w;
}
template<>
template <>
inline __device__ float sum(Float4_ v) {
return v.x.x + v.x.y + v.y.x + v.y.y;
}
template<>
template <>
inline __device__ float sum(Float8_ v) {
return v.x.x + v.x.y + v.y.x + v.y.y + v.z.x + v.z.y + v.w.x + v.w.y;
}
// Vector dot product.
inline __device__ float dot(float a, float b) {
return a * b;
}
inline __device__ float dot(float a, float b) { return a * b; }
inline __device__ float dot(float2 a, float2 b) {
float2 c = mul<float2, float2, float2>(a, b);
@@ -232,42 +228,24 @@ inline __device__ float dot(Float8_ a, Float8_ b) {
}
// From float to float.
inline __device__ void from_float(float& dst, float src) {
dst = src;
}
inline __device__ void from_float(float& dst, float src) { dst = src; }
inline __device__ void from_float(float2& dst, float2 src) {
dst = src;
}
inline __device__ void from_float(float2& dst, float2 src) { dst = src; }
inline __device__ void from_float(float4& dst, float4 src) {
dst = src;
}
inline __device__ void from_float(float4& dst, float4 src) { dst = src; }
// From float to float.
inline __device__ float to_float(float u) {
return u;
}
inline __device__ float to_float(float u) { return u; }
inline __device__ float2 to_float(float2 u) {
return u;
}
inline __device__ float2 to_float(float2 u) { return u; }
inline __device__ float4 to_float(float4 u) {
return u;
}
inline __device__ float4 to_float(float4 u) { return u; }
inline __device__ Float4_ to_float(Float4_ u) {
return u;
}
inline __device__ Float4_ to_float(Float4_ u) { return u; }
inline __device__ Float8_ to_float(Float8_ u) {
return u;
}
inline __device__ Float8_ to_float(Float8_ u) { return u; }
// Zero-out a variable.
inline __device__ void zero(float& dst) {
dst = 0.f;
}
inline __device__ void zero(float& dst) { dst = 0.f; }
} // namespace vllm
} // namespace vllm

View File

@@ -0,0 +1,41 @@
#pragma once
#include "attention_generic.cuh"
#include <stdint.h>
#ifdef ENABLE_FP8
#ifndef USE_ROCM
#include <cuda_fp8.h>
#endif // USE_ROCM
#endif // ENABLE_FP8
namespace vllm {
enum class Fp8KVCacheDataType {
kAuto = 0,
kFp8E4M3 = 1,
kFp8E5M2 = 2,
};
// fp8 vector types for quantization of kv cache
template <>
struct Vec<uint8_t, 1> {
using Type = uint8_t;
};
template <>
struct Vec<uint8_t, 2> {
using Type = uint16_t;
};
template <>
struct Vec<uint8_t, 4> {
using Type = uint32_t;
};
template <>
struct Vec<uint8_t, 8> {
using Type = uint2;
};
} // namespace vllm

View File

@@ -1,28 +1,32 @@
#include <torch/extension.h>
#pragma once
#include <torch/all.h>
#include <map>
#include <vector>
void swap_blocks(
torch::Tensor& src,
torch::Tensor& dst,
const std::map<int64_t, int64_t>& block_mapping);
void swap_blocks(torch::Tensor& src, torch::Tensor& dst,
const torch::Tensor& block_mapping);
void copy_blocks(
std::vector<torch::Tensor>& key_caches,
std::vector<torch::Tensor>& value_caches,
const std::map<int64_t, std::vector<int64_t>>& block_mapping);
// Note: the key_caches and value_caches vectors are constant but
// not the Tensors they contain. The vectors need to be const refs
// in order to satisfy pytorch's C++ operator registration code.
void copy_blocks(std::vector<torch::Tensor> const& key_caches,
std::vector<torch::Tensor> const& value_caches,
const torch::Tensor& block_mapping);
void reshape_and_cache(
torch::Tensor& key,
torch::Tensor& value,
torch::Tensor& key_cache,
torch::Tensor& value_cache,
torch::Tensor& slot_mapping);
void reshape_and_cache(torch::Tensor& key, torch::Tensor& value,
torch::Tensor& key_cache, torch::Tensor& value_cache,
torch::Tensor& slot_mapping,
const std::string& kv_cache_dtype,
const double kv_scale);
void gather_cached_kv(
torch::Tensor& key,
torch::Tensor& value,
torch::Tensor& key_cache,
torch::Tensor& value_cache,
torch::Tensor& slot_mapping);
void reshape_and_cache_flash(torch::Tensor& key, torch::Tensor& value,
torch::Tensor& key_cache,
torch::Tensor& value_cache,
torch::Tensor& slot_mapping,
const std::string& kv_cache_dtype);
// Just for unittest
void convert_fp8(torch::Tensor& dst_cache, torch::Tensor& src_cache,
const double scale, const std::string& kv_cache_dtype);

View File

@@ -1,25 +1,34 @@
#include <torch/extension.h>
#include <torch/all.h>
#include <ATen/cuda/CUDAContext.h>
#include <c10/cuda/CUDAGuard.h>
#include "cuda_compat.h"
#include "dispatch_utils.h"
#ifdef USE_ROCM
#include "quantization/fp8/amd/quant_utils.cuh"
#else
#include "quantization/fp8/nvidia/quant_utils.cuh"
#endif
#include <algorithm>
#include <cassert>
#include <map>
#include <vector>
void swap_blocks(
torch::Tensor& src,
torch::Tensor& dst,
const std::map<int64_t, int64_t>& block_mapping) {
#ifdef USE_ROCM
#include <hip/hip_bf16.h>
typedef __hip_bfloat16 __nv_bfloat16;
#endif
void swap_blocks(torch::Tensor& src, torch::Tensor& dst,
const torch::Tensor& block_mapping) {
torch::Device src_device = src.device();
torch::Device dst_device = dst.device();
cudaMemcpyKind memcpy_type;
if (src_device.is_cuda() && dst_device.is_cuda()) {
TORCH_CHECK(
src_device.index() == dst_device.index(),
"src and dst must be on the same GPU");
TORCH_CHECK(src_device.index() == dst_device.index(),
"src and dst must be on the same GPU");
memcpy_type = cudaMemcpyDeviceToDevice;
} else if (src_device.is_cuda() && dst_device.is_cpu()) {
memcpy_type = cudaMemcpyDeviceToHost;
@@ -29,40 +38,44 @@ void swap_blocks(
TORCH_CHECK(false, "Invalid device combination");
}
char *src_ptr = static_cast<char*>(src.data_ptr());
char *dst_ptr = static_cast<char*>(dst.data_ptr());
// NOTE(youkaichao): keep in mind that `block_mapping` should be
// a cpu tensor, otherwise every `item` call will require a gpu-cpu
// synchronization.
TORCH_CHECK(block_mapping.device().is_cpu(), "block_mapping must be on CPU");
char* src_ptr = static_cast<char*>(src.data_ptr());
char* dst_ptr = static_cast<char*>(dst.data_ptr());
const int64_t block_size_in_bytes = src.element_size() * src[0].numel();
const at::cuda::OptionalCUDAGuard device_guard(
src_device.is_cuda() ? src_device : dst_device);
const cudaStream_t stream = at::cuda::getCurrentCUDAStream();
// NOTE(woosuk): This can be slow if the number of blocks is large.
for (const auto& pair : block_mapping) {
int64_t src_block_number = pair.first;
int64_t dst_block_number = pair.second;
const int64_t num_blocks = block_mapping.size(0);
for (size_t i = 0; i < num_blocks; i++) {
int64_t src_block_number = block_mapping[i][0].item<int64_t>();
int64_t dst_block_number = block_mapping[i][1].item<int64_t>();
int64_t src_offset = src_block_number * block_size_in_bytes;
int64_t dst_offset = dst_block_number * block_size_in_bytes;
cudaMemcpyAsync(
dst_ptr + dst_offset,
src_ptr + src_offset,
block_size_in_bytes,
memcpy_type,
stream);
cudaMemcpyAsync(dst_ptr + dst_offset, src_ptr + src_offset,
block_size_in_bytes, memcpy_type, stream);
}
}
namespace vllm {
// Grid: (num_layers, num_pairs)
template<typename scalar_t>
__global__ void copy_blocks_kernel(
int64_t* key_cache_ptrs,
int64_t* value_cache_ptrs,
const int64_t* __restrict__ block_mapping,
const int numel_per_block) {
template <typename scalar_t>
__global__ void copy_blocks_kernel(int64_t* key_cache_ptrs,
int64_t* value_cache_ptrs,
const int64_t* __restrict__ block_mapping,
const int numel_per_block) {
const int layer_idx = blockIdx.x;
const int pair_idx = blockIdx.y;
scalar_t* key_cache = reinterpret_cast<scalar_t*>(key_cache_ptrs[layer_idx]);
scalar_t* value_cache = reinterpret_cast<scalar_t*>(value_cache_ptrs[layer_idx]);
scalar_t* value_cache =
reinterpret_cast<scalar_t*>(value_cache_ptrs[layer_idx]);
int64_t src_block_number = block_mapping[2 * pair_idx];
int64_t dst_block_number = block_mapping[2 * pair_idx + 1];
@@ -80,12 +93,14 @@ __global__ void copy_blocks_kernel(
}
}
} // namespace vllm
} // namespace vllm
void copy_blocks(
std::vector<torch::Tensor>& key_caches,
std::vector<torch::Tensor>& value_caches,
const std::map<int64_t, std::vector<int64_t>>& block_mapping) {
// Note: the key_caches and value_caches vectors are constant but
// not the Tensors they contain. The vectors need to be const refs
// in order to satisfy pytorch's C++ operator registration code.
void copy_blocks(std::vector<torch::Tensor> const& key_caches,
std::vector<torch::Tensor> const& value_caches,
const torch::Tensor& block_mapping) {
int num_layers = key_caches.size();
TORCH_CHECK(num_layers == value_caches.size());
if (num_layers == 0) {
@@ -99,60 +114,53 @@ void copy_blocks(
int64_t key_cache_ptrs[num_layers];
int64_t value_cache_ptrs[num_layers];
for (int layer_idx = 0; layer_idx < num_layers; ++layer_idx) {
key_cache_ptrs[layer_idx] = reinterpret_cast<int64_t>(key_caches[layer_idx].data_ptr());
value_cache_ptrs[layer_idx] = reinterpret_cast<int64_t>(value_caches[layer_idx].data_ptr());
key_cache_ptrs[layer_idx] =
reinterpret_cast<int64_t>(key_caches[layer_idx].data_ptr());
value_cache_ptrs[layer_idx] =
reinterpret_cast<int64_t>(value_caches[layer_idx].data_ptr());
}
// Create block mapping array.
std::vector<int64_t> block_mapping_vec;
for (const auto& pair : block_mapping) {
int64_t src_block_number = pair.first;
for (int64_t dst_block_number : pair.second) {
block_mapping_vec.push_back(src_block_number);
block_mapping_vec.push_back(dst_block_number);
}
}
int64_t* block_mapping_array = block_mapping_vec.data();
int num_pairs = block_mapping_vec.size() / 2;
// block_mapping is a 2D tensor with shape (num_pairs, 2).
int num_pairs = block_mapping.size(0);
// Move the data structures to the GPU.
// NOTE: This synchronizes the CPU and GPU.
torch::Tensor key_cache_ptrs_tensor = torch::from_blob(
key_cache_ptrs, {num_layers}, torch::kInt64).to(cache_device);
torch::Tensor value_cache_ptrs_tensor = torch::from_blob(
value_cache_ptrs, {num_layers}, torch::kInt64).to(cache_device);
torch::Tensor block_mapping_tensor = torch::from_blob(
block_mapping_array, {2 * num_pairs}, torch::kInt64).to(cache_device);
torch::Tensor key_cache_ptrs_tensor =
torch::from_blob(key_cache_ptrs, {num_layers}, torch::kInt64)
.to(cache_device);
torch::Tensor value_cache_ptrs_tensor =
torch::from_blob(value_cache_ptrs, {num_layers}, torch::kInt64)
.to(cache_device);
// Launch the kernel.
const int numel_per_block = key_caches[0][0].numel();
dim3 grid(num_layers, num_pairs);
dim3 block(std::min(1024, numel_per_block));
const at::cuda::OptionalCUDAGuard device_guard(cache_device);
const cudaStream_t stream = at::cuda::getCurrentCUDAStream();
VLLM_DISPATCH_FLOATING_TYPES(
key_caches[0].scalar_type(), "copy_blocks_kernel", ([&] {
vllm::copy_blocks_kernel<scalar_t><<<grid, block, 0, stream>>>(
key_cache_ptrs_tensor.data_ptr<int64_t>(),
value_cache_ptrs_tensor.data_ptr<int64_t>(),
block_mapping_tensor.data_ptr<int64_t>(),
numel_per_block);
}));
VLLM_DISPATCH_FLOATING_AND_BYTE_TYPES(
key_caches[0].scalar_type(), "copy_blocks_kernel", ([&] {
vllm::copy_blocks_kernel<scalar_t><<<grid, block, 0, stream>>>(
key_cache_ptrs_tensor.data_ptr<int64_t>(),
value_cache_ptrs_tensor.data_ptr<int64_t>(),
block_mapping.data_ptr<int64_t>(), numel_per_block);
}));
}
namespace vllm {
template<typename scalar_t>
template <typename scalar_t, typename cache_t, Fp8KVCacheDataType kv_dt>
__global__ void reshape_and_cache_kernel(
const scalar_t* __restrict__ key, // [num_tokens, num_heads, head_size]
const scalar_t* __restrict__ value, // [num_tokens, num_heads, head_size]
scalar_t* __restrict__ key_cache, // [num_blocks, num_heads, head_size/x, block_size, x]
scalar_t* __restrict__ value_cache, // [num_blocks, num_heads, head_size, block_size]
const int64_t* __restrict__ slot_mapping, // [num_tokens]
const int key_stride,
const int value_stride,
const int num_heads,
const int head_size,
const int block_size,
const int x) {
const scalar_t* __restrict__ key, // [num_tokens, num_heads, head_size]
const scalar_t* __restrict__ value, // [num_tokens, num_heads, head_size]
cache_t* __restrict__ key_cache, // [num_blocks, num_heads, head_size/x,
// block_size, x]
cache_t* __restrict__ value_cache, // [num_blocks, num_heads, head_size,
// block_size]
const int64_t* __restrict__ slot_mapping, // [num_tokens]
const int key_stride, const int value_stride, const int num_heads,
const int head_size, const int block_size, const int x,
const float kv_scale) {
const int64_t token_idx = blockIdx.x;
const int64_t slot_idx = slot_mapping[token_idx];
if (slot_idx < 0) {
@@ -173,29 +181,84 @@ __global__ void reshape_and_cache_kernel(
const int x_idx = head_offset / x;
const int x_offset = head_offset % x;
const int64_t tgt_key_idx = block_idx * num_heads * (head_size / x) * block_size * x
+ head_idx * (head_size / x) * block_size * x
+ x_idx * block_size * x
+ block_offset * x
+ x_offset;
const int64_t tgt_value_idx = block_idx * num_heads * head_size * block_size
+ head_idx * head_size * block_size
+ head_offset * block_size
+ block_offset;
key_cache[tgt_key_idx] = key[src_key_idx];
value_cache[tgt_value_idx] = value[src_value_idx];
const int64_t tgt_key_idx =
block_idx * num_heads * (head_size / x) * block_size * x +
head_idx * (head_size / x) * block_size * x + x_idx * block_size * x +
block_offset * x + x_offset;
const int64_t tgt_value_idx =
block_idx * num_heads * head_size * block_size +
head_idx * head_size * block_size + head_offset * block_size +
block_offset;
scalar_t tgt_key = key[src_key_idx];
scalar_t tgt_value = value[src_value_idx];
if constexpr (kv_dt == Fp8KVCacheDataType::kAuto) {
key_cache[tgt_key_idx] = tgt_key;
value_cache[tgt_value_idx] = tgt_value;
} else {
key_cache[tgt_key_idx] =
fp8::scaled_convert<cache_t, scalar_t, kv_dt>(tgt_key, kv_scale);
value_cache[tgt_value_idx] =
fp8::scaled_convert<cache_t, scalar_t, kv_dt>(tgt_value, kv_scale);
}
}
}
} // namespace vllm
template <typename scalar_t>
__global__ void reshape_and_cache_flash_kernel(
const scalar_t* __restrict__ key, // [num_tokens, num_heads, head_size]
const scalar_t* __restrict__ value, // [num_tokens, num_heads, head_size]
scalar_t* __restrict__ k_cache, // [num_blocks, block_size, num_heads,
// head_size]
scalar_t* __restrict__ v_cache, // [num_blocks, block_size, num_heads,
// head_size]
const int64_t* __restrict__ slot_mapping, // [num_tokens]
const int block_stride, const int key_stride, const int value_stride,
const int num_heads, const int head_size, const int block_size) {
const int64_t token_idx = blockIdx.x;
const int64_t slot_idx = slot_mapping[token_idx];
// NOTE: slot_idx can be -1 if the token is padded
if (slot_idx < 0) {
return;
}
const int64_t block_idx = slot_idx / block_size;
const int64_t block_offset = slot_idx % block_size;
const int n = num_heads * head_size;
for (int i = threadIdx.x; i < n; i += blockDim.x) {
const int64_t src_key_idx = token_idx * key_stride + i;
const int64_t src_value_idx = token_idx * value_stride + i;
const int head_idx = i / head_size;
const int head_offset = i % head_size;
const int64_t tgt_value_idx = block_idx * block_stride +
block_offset * num_heads * head_size +
head_idx * head_size + head_offset;
k_cache[tgt_value_idx] = key[src_key_idx];
v_cache[tgt_value_idx] = value[src_value_idx];
}
}
} // namespace vllm
// KV_T is the stored data type of kv-cache.
// CACHE_T is the data type of key and value tensors.
// KV_DTYPE is the real data type of kv-cache.
#define CALL_RESHAPE_AND_CACHE(KV_T, CACHE_T, KV_DTYPE) \
vllm::reshape_and_cache_kernel<KV_T, CACHE_T, KV_DTYPE> \
<<<grid, block, 0, stream>>>( \
reinterpret_cast<KV_T*>(key.data_ptr()), \
reinterpret_cast<KV_T*>(value.data_ptr()), \
reinterpret_cast<CACHE_T*>(key_cache.data_ptr()), \
reinterpret_cast<CACHE_T*>(value_cache.data_ptr()), \
slot_mapping.data_ptr<int64_t>(), key_stride, value_stride, \
num_heads, head_size, block_size, x, kv_scale);
void reshape_and_cache(
torch::Tensor& key, // [num_tokens, num_heads, head_size]
torch::Tensor& value, // [num_tokens, num_heads, head_size]
torch::Tensor& key_cache, // [num_blocks, num_heads, head_size/x, block_size, x]
torch::Tensor& value_cache, // [num_blocks, num_heads, head_size, block_size]
torch::Tensor& slot_mapping) // [num_tokens]
{
torch::Tensor& key, // [num_tokens, num_heads, head_size]
torch::Tensor& value, // [num_tokens, num_heads, head_size]
torch::Tensor&
key_cache, // [num_blocks, num_heads, head_size/x, block_size, x]
torch::Tensor&
value_cache, // [num_blocks, num_heads, head_size, block_size]
torch::Tensor& slot_mapping, // [num_tokens]
const std::string& kv_cache_dtype, const double kv_scale) {
int num_tokens = key.size(0);
int num_heads = key.size(1);
int head_size = key.size(2);
@@ -207,182 +270,120 @@ void reshape_and_cache(
dim3 grid(num_tokens);
dim3 block(std::min(num_heads * head_size, 512));
const at::cuda::OptionalCUDAGuard device_guard(device_of(key));
const cudaStream_t stream = at::cuda::getCurrentCUDAStream();
DISPATCH_BY_KV_CACHE_DTYPE(key.dtype(), kv_cache_dtype,
CALL_RESHAPE_AND_CACHE)
}
void reshape_and_cache_flash(
torch::Tensor& key, // [num_tokens, num_heads, head_size]
torch::Tensor& value, // [num_tokens, num_heads, head_size]
torch::Tensor& k_cache, // [num_blocks, block_size, num_heads, head_size]
torch::Tensor& v_cache, // [num_blocks, block_size, num_heads, head_size]
torch::Tensor& slot_mapping, // [num_tokens]
const std::string& kv_cache_dtype) {
// FIXME: only support auto datatype, does not support fp8
if (kv_cache_dtype != "auto") {
TORCH_CHECK(false, "Unsupported data type of kv cache: ", kv_cache_dtype);
}
int num_tokens = key.size(0);
int num_heads = key.size(1);
int head_size = key.size(2);
int block_size = k_cache.size(1);
int key_stride = key.stride(0);
int value_stride = value.stride(0);
int block_stride = k_cache.stride(0);
TORCH_CHECK(k_cache.stride(0) == v_cache.stride(0));
dim3 grid(num_tokens);
dim3 block(std::min(num_heads * head_size, 512));
const at::cuda::OptionalCUDAGuard device_guard(device_of(key));
const cudaStream_t stream = at::cuda::getCurrentCUDAStream();
VLLM_DISPATCH_FLOATING_TYPES(
key.scalar_type(),
"reshape_and_cache_kernel",
[&] {
vllm::reshape_and_cache_kernel<scalar_t><<<grid, block, 0, stream>>>(
key.data_ptr<scalar_t>(),
value.data_ptr<scalar_t>(),
key_cache.data_ptr<scalar_t>(),
value_cache.data_ptr<scalar_t>(),
slot_mapping.data_ptr<int64_t>(),
key_stride,
value_stride,
num_heads,
head_size,
block_size,
x);
});
key.scalar_type(), "reshape_and_cache_flash", [&] {
vllm::reshape_and_cache_flash_kernel<scalar_t>
<<<grid, block, 0, stream>>>(
key.data_ptr<scalar_t>(), value.data_ptr<scalar_t>(),
k_cache.data_ptr<scalar_t>(), v_cache.data_ptr<scalar_t>(),
slot_mapping.data_ptr<int64_t>(), block_stride, key_stride,
value_stride, num_heads, head_size, block_size);
});
}
namespace vllm {
// Grid: (num_blocks, block_size).
template<typename scalar_t>
__global__ void gather_cached_kv_kernel(
scalar_t* __restrict__ key, // [num_tokens, [stride], num_heads, head_size]
scalar_t* __restrict__ value, // [num_tokens, [stride], num_heads, head_size]
const scalar_t* __restrict__ key_cache, // [num_blocks, num_heads, head_size/x, block_size, x]
const scalar_t* __restrict__ value_cache, // [num_blocks, num_heads, head_size, block_size]
const int* __restrict__ slot_mapping, // [num_tokens]
const int key_stride,
const int value_stride,
const int num_heads,
const int head_size,
const int block_size,
const int x) {
const int token_idx = blockIdx.x;
const int slot_idx = slot_mapping[token_idx];
const int block_idx = slot_idx / block_size;
const int block_offset = slot_idx % block_size;
const int num_tokens = num_heads * head_size;
for (int i = threadIdx.x; i < num_tokens; i += blockDim.x) {
const int tgt_key_idx = token_idx * key_stride + i;
const int tgt_value_idx = token_idx * value_stride + i;
const int head_idx = i / head_size;
const int head_offset = i % head_size;
const int x_idx = head_offset / x; // the offset of the [head_size/x] dimension
const int x_offset = head_offset % x;
const int src_key_idx = block_idx * num_heads * (head_size / x) * block_size * x
+ head_idx * (head_size / x) * block_size * x
+ x_idx * block_size * x
+ block_offset * x
+ x_offset;
const int src_value_idx = block_idx * num_heads * head_size * block_size
+ head_idx * head_size * block_size
+ head_offset * block_size
+ block_offset;
key[tgt_key_idx] = VLLM_LDG(&key_cache[src_key_idx]);
value[tgt_value_idx] = VLLM_LDG(&value_cache[src_value_idx]);
}
template <typename Tout, typename Tin, Fp8KVCacheDataType kv_dt>
__global__ void convert_fp8_kernel(const Tin* __restrict__ src_cache,
Tout* __restrict__ dst_cache,
const float kv_scale,
const int64_t block_stride) {
const int64_t block_idx = blockIdx.x;
for (int i = threadIdx.x; i < block_stride; i += blockDim.x) {
int64_t idx = block_idx * block_stride + i;
dst_cache[idx] =
fp8::scaled_convert<Tout, Tin, kv_dt>(src_cache[idx], kv_scale);
}
}
template <typename scalar_t>
__global__ void gather_cached_kv_kernel_optimized(
scalar_t *__restrict__ key, // [num_tokens, [stride], num_heads, head_size]
scalar_t *__restrict__ value, // [num_tokens, [stride], num_heads, head_size]
const scalar_t *__restrict__ key_cache, // [num_blocks, num_heads, head_size/x, block_size, x]
const scalar_t *__restrict__ value_cache, // [num_blocks, num_heads, head_size, block_size]
const int *__restrict__ slot_mapping, // [num_tokens]
const int key_stride,
const int value_stride,
const int num_heads,
const int head_size,
const int block_size,
const int x)
{
const int token_idx = blockIdx.x;
const int slot_idx = slot_mapping[token_idx];
const int block_idx = slot_idx / block_size;
const int block_offset = slot_idx % block_size;
} // namespace vllm
const int dim = num_heads * head_size;
assert(dim % 4 == 0); // this is true for known use cases
const int unroll_factor = 4;
const int unrolled_dim = dim / unroll_factor;
#define CALL_CONVERT_FP8(Tout, Tin, KV_DTYPE) \
vllm::convert_fp8_kernel<Tout, Tin, KV_DTYPE><<<grid, block, 0, stream>>>( \
reinterpret_cast<Tin*>(src_cache.data_ptr()), \
reinterpret_cast<Tout*>(dst_cache.data_ptr()), kv_scale, block_stride);
for (int i = threadIdx.x; i < unrolled_dim; i += blockDim.x)
{
int tgt_key_indices[unroll_factor];
int tgt_value_indices[unroll_factor];
int src_key_indices[unroll_factor];
int src_value_indices[unroll_factor];
scalar_t keys_to_store[unroll_factor];
scalar_t values_to_store[unroll_factor];
// Only for testing.
void convert_fp8(torch::Tensor& dst_cache, torch::Tensor& src_cache,
const double kv_scale, const std::string& kv_cache_dtype) {
torch::Device src_device = src_cache.device();
torch::Device dst_device = dst_cache.device();
TORCH_CHECK(src_device.is_cuda(), "src must be on a GPU")
TORCH_CHECK(dst_device.is_cuda(), "dst must be on a GPU")
TORCH_CHECK(src_device.index() == dst_device.index(),
"src and dst must be on the same GPU");
at::cuda::OptionalCUDAGuard device_guard(src_device);
#pragma unroll
for (int j = 0; j < unroll_factor; ++j)
{
int index = i + j * unrolled_dim;
int64_t num_blocks = src_cache.size(0);
int64_t block_stride = src_cache.stride(0);
const int tgt_key_idx = token_idx * key_stride + index;
const int tgt_value_idx = token_idx * value_stride + index;
const int head_idx = index / head_size;
const int head_offset = index % head_size;
const int x_idx = head_offset / x;
const int x_offset = head_offset % x;
const int src_key_idx = block_idx * num_heads * (head_size / x) * block_size * x
+ head_idx * (head_size / x) * block_size * x
+ x_idx * block_size * x
+ block_offset * x
+ x_offset;
const int src_value_idx = block_idx * num_heads * head_size * block_size
+ head_idx * head_size * block_size
+ head_offset * block_size
+ block_offset;
tgt_key_indices[j] = tgt_key_idx;
tgt_value_indices[j] = tgt_value_idx;
src_key_indices[j] = src_key_idx;
src_value_indices[j] = src_value_idx;
keys_to_store[j] = VLLM_LDG(&key_cache[src_key_idx]);
values_to_store[j] = VLLM_LDG(&value_cache[src_value_idx]);
}
#pragma unroll
for (int j = 0; j < unroll_factor; ++j)
{
key[tgt_key_indices[j]] = keys_to_store[j];
value[tgt_value_indices[j]] = values_to_store[j];
}
}
}
} // namespace vllm
void gather_cached_kv(
torch::Tensor& key, // [out] [num_tokens, num_heads, head_size]
torch::Tensor& value, // [out] [num_tokens, num_heads, head_size]
torch::Tensor& key_cache, // [in] [num_blocks, num_heads, head_size/x, block_size, x]
torch::Tensor& value_cache, // [in] [num_blocks, num_heads, head_size, block_size]
torch::Tensor& slot_mapping) // [in] [num_tokens]
{
int num_tokens = key.size(0);
int num_heads = key.size(1);
int head_size = key.size(2);
int block_size = key_cache.size(3);
int x = key_cache.size(4);
int key_stride = key.stride(0);
int value_stride = value.stride(0);
dim3 grid(num_tokens);
dim3 block(std::min(num_heads * head_size, 512));
dim3 grid(num_blocks);
dim3 block(std::min(block_stride, int64_t(512)));
const cudaStream_t stream = at::cuda::getCurrentCUDAStream();
VLLM_DISPATCH_FLOATING_TYPES(
key.scalar_type(),
"gather_cached_kv_kernel_optimized",
[&] {
vllm::gather_cached_kv_kernel_optimized<scalar_t><<<grid, block, 0, stream>>>(
key.data_ptr<scalar_t>(),
value.data_ptr<scalar_t>(),
key_cache.data_ptr<scalar_t>(),
value_cache.data_ptr<scalar_t>(),
slot_mapping.data_ptr<int>(),
key_stride,
value_stride,
num_heads,
head_size,
block_size,
x);
});
if (kv_cache_dtype == "auto") {
if (src_cache.dtype() == at::ScalarType::Float) {
CALL_CONVERT_FP8(uint8_t, float, vllm::Fp8KVCacheDataType::kAuto);
} else if (src_cache.dtype() == at::ScalarType::Half) {
CALL_CONVERT_FP8(uint8_t, uint16_t, vllm::Fp8KVCacheDataType::kAuto);
} else if (src_cache.dtype() == at::ScalarType::BFloat16) {
CALL_CONVERT_FP8(uint8_t, __nv_bfloat16, vllm::Fp8KVCacheDataType::kAuto);
} else if (dst_cache.dtype() == at::ScalarType::Float) {
CALL_CONVERT_FP8(float, uint8_t, vllm::Fp8KVCacheDataType::kAuto);
} else if (dst_cache.dtype() == at::ScalarType::Half) {
CALL_CONVERT_FP8(uint16_t, uint8_t, vllm::Fp8KVCacheDataType::kAuto);
} else if (dst_cache.dtype() == at::ScalarType::BFloat16) {
CALL_CONVERT_FP8(__nv_bfloat16, uint8_t, vllm::Fp8KVCacheDataType::kAuto);
}
} else if (kv_cache_dtype == "fp8" || kv_cache_dtype == "fp8_e4m3") {
if (src_cache.dtype() == at::ScalarType::Float) {
CALL_CONVERT_FP8(uint8_t, float, vllm::Fp8KVCacheDataType::kFp8E4M3);
} else if (src_cache.dtype() == at::ScalarType::Half) {
CALL_CONVERT_FP8(uint8_t, uint16_t, vllm::Fp8KVCacheDataType::kFp8E4M3);
} else if (src_cache.dtype() == at::ScalarType::BFloat16) {
CALL_CONVERT_FP8(uint8_t, __nv_bfloat16,
vllm::Fp8KVCacheDataType::kFp8E4M3);
} else if (dst_cache.dtype() == at::ScalarType::Float) {
CALL_CONVERT_FP8(float, uint8_t, vllm::Fp8KVCacheDataType::kFp8E4M3);
} else if (dst_cache.dtype() == at::ScalarType::Half) {
CALL_CONVERT_FP8(uint16_t, uint8_t, vllm::Fp8KVCacheDataType::kFp8E4M3);
} else if (dst_cache.dtype() == at::ScalarType::BFloat16) {
CALL_CONVERT_FP8(__nv_bfloat16, uint8_t,
vllm::Fp8KVCacheDataType::kFp8E4M3);
}
} else {
TORCH_CHECK(false, "Unsupported data type: ", kv_cache_dtype);
}
}

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#include "cpu_types.hpp"
namespace {
template <typename scalar_t, vec_op::FP32Vec8 (*func)(const vec_op::FP32Vec8&),
bool is_gated>
void activation_kernel(int num_tokens, int d, scalar_t* __restrict__ input,
scalar_t* __restrict__ output) {
using scalar_vec_t = vec_op::vec_t<scalar_t>;
constexpr int VEC_ELEM_NUM = scalar_vec_t::get_elem_num();
TORCH_CHECK(d % VEC_ELEM_NUM == 0);
#pragma omp parallel for
for (int i = 0; i < num_tokens; ++i) {
for (int j = 0; j < d; j += VEC_ELEM_NUM) {
int start = i * d;
if constexpr (is_gated) {
start *= 2;
}
const scalar_vec_t x(input + start + j);
const vec_op::FP32Vec8 f32_x(x);
vec_op::FP32Vec8 f32_ans = func(f32_x);
if constexpr (is_gated) {
const scalar_vec_t y(input + start + d + j);
const vec_op::FP32Vec8 f32_y(y);
f32_ans = f32_y * f32_ans;
}
const scalar_vec_t result(f32_ans);
result.save(output + i * d + j);
}
}
}
FORCE_INLINE vec_op::FP32Vec8 silu_act(const vec_op::FP32Vec8& x) {
const vec_op::FP32Vec8 zeros(0.0);
const vec_op::FP32Vec8 ones(1.0);
return x / (ones + (zeros - x).exp());
}
FORCE_INLINE vec_op::FP32Vec8 gelu_new_act(const vec_op::FP32Vec8& x) {
const vec_op::FP32Vec8 ones(1.0);
const vec_op::FP32Vec8 w1(0.79788456f);
const vec_op::FP32Vec8 w2(0.044715f);
const vec_op::FP32Vec8 w3(0.5);
const vec_op::FP32Vec8 x3 = x * x * x;
const vec_op::FP32Vec8 t = (w1 * (x + w2 * x3)).tanh();
return w3 * x * (ones + t);
}
FORCE_INLINE vec_op::FP32Vec8 gelu_fast_act(const vec_op::FP32Vec8& x) {
const vec_op::FP32Vec8 ones(1.0);
const vec_op::FP32Vec8 w1(0.79788456f);
const vec_op::FP32Vec8 w2(0.044715f);
const vec_op::FP32Vec8 w3(0.5);
const vec_op::FP32Vec8 t = (x * w1 * (ones + x * w2 * x)).tanh();
return w3 * x * (ones + t);
}
FORCE_INLINE vec_op::FP32Vec8 gelu_quick_act(const vec_op::FP32Vec8& x) {
const vec_op::FP32Vec8 zeros(0.0);
const vec_op::FP32Vec8 ones(1.0);
const vec_op::FP32Vec8 w1(1.702f);
return x / (ones + (zeros - w1 * x).exp());
}
FORCE_INLINE vec_op::FP32Vec8 gelu_act(const vec_op::FP32Vec8& x) {
const vec_op::FP32Vec8 ones(1.0);
const vec_op::FP32Vec8 w1(M_SQRT1_2);
const vec_op::FP32Vec8 w2(0.5);
return x * w2 * (ones + (x * w1).er());
}
FORCE_INLINE vec_op::FP32Vec8 gelu_tanh_act(const vec_op::FP32Vec8& x) {
const vec_op::FP32Vec8 ones(1.0);
const vec_op::FP32Vec8 w1(M_SQRT2 * M_2_SQRTPI * 0.5);
const vec_op::FP32Vec8 w2(0.5);
const vec_op::FP32Vec8 w3(0.044715);
const vec_op::FP32Vec8 x_3 = x * x * x;
const vec_op::FP32Vec8 inner = w1 * (x + x_3 * w3);
return x * w2 * (ones + inner.tanh());
}
}; // namespace
void silu_and_mul(torch::Tensor& out, torch::Tensor& input) {
int num_tokens = input.numel() / input.size(-1);
int d = input.size(-1) / 2;
VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "silu_and_mul_impl", [&] {
CPU_KERNEL_GUARD_IN(silu_and_mul_impl)
activation_kernel<scalar_t, silu_act, true>(
num_tokens, d, input.data_ptr<scalar_t>(), out.data_ptr<scalar_t>());
CPU_KERNEL_GUARD_OUT(silu_and_mul_impl)
});
}
void gelu_and_mul(torch::Tensor& out, // [..., d]
torch::Tensor& input) // [..., 2 * d]
{
int num_tokens = input.numel() / input.size(-1);
int d = input.size(-1) / 2;
VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "gelu_and_mul_impl", [&] {
CPU_KERNEL_GUARD_IN(gelu_and_mul_impl)
activation_kernel<scalar_t, gelu_act, true>(
num_tokens, d, input.data_ptr<scalar_t>(), out.data_ptr<scalar_t>());
CPU_KERNEL_GUARD_OUT(gelu_and_mul_impl)
});
}
void gelu_tanh_and_mul(torch::Tensor& out, // [..., d]
torch::Tensor& input) // [..., 2 * d]
{
int num_tokens = input.numel() / input.size(-1);
int d = input.size(-1) / 2;
VLLM_DISPATCH_FLOATING_TYPES(
input.scalar_type(), "gelu_tanh_and_mul_impl", [&] {
CPU_KERNEL_GUARD_IN(gelu_tanh_and_mul_impl)
activation_kernel<scalar_t, gelu_tanh_act, true>(
num_tokens, d, input.data_ptr<scalar_t>(),
out.data_ptr<scalar_t>());
CPU_KERNEL_GUARD_OUT(gelu_tanh_and_mul_impl)
});
}
void gelu_new(torch::Tensor& out, torch::Tensor& input) {
int num_tokens = input.numel() / input.size(-1);
int d = input.size(-1);
VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "gelu_new_impl", [&] {
CPU_KERNEL_GUARD_IN(gelu_new_impl)
activation_kernel<scalar_t, gelu_new_act, false>(
num_tokens, d, input.data_ptr<scalar_t>(), out.data_ptr<scalar_t>());
CPU_KERNEL_GUARD_OUT(gelu_new_impl)
});
}
void gelu_fast(torch::Tensor& out, torch::Tensor& input) {
int num_tokens = input.numel() / input.size(-1);
int d = input.size(-1);
VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "gelu_fast_impl", [&] {
CPU_KERNEL_GUARD_IN(gelu_fast_impl)
activation_kernel<scalar_t, gelu_fast_act, false>(
num_tokens, d, input.data_ptr<scalar_t>(), out.data_ptr<scalar_t>());
CPU_KERNEL_GUARD_OUT(gelu_fast_impl)
});
}
void gelu_quick(torch::Tensor& out, torch::Tensor& input) {
int num_tokens = input.numel() / input.size(-1);
int d = input.size(-1);
VLLM_DISPATCH_FLOATING_TYPES(input.scalar_type(), "gelu_quick_impl", [&] {
CPU_KERNEL_GUARD_IN(gelu_quick_impl)
activation_kernel<scalar_t, gelu_quick_act, false>(
num_tokens, d, input.data_ptr<scalar_t>(), out.data_ptr<scalar_t>());
CPU_KERNEL_GUARD_OUT(gelu_quick_impl)
});
}

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#include "cpu_types.hpp"
namespace {
template <typename scalar_t>
struct KernelVecType {
using q_load_vec_type = void;
using q_vec_type = void;
using k_load_vec_type = void;
using k_vec_type = void;
using qk_acc_vec_type = void;
using v_load_vec_type = void;
};
template <>
struct KernelVecType<float> {
using q_load_vec_type = vec_op::FP32Vec4;
using q_vec_type = vec_op::FP32Vec16;
using k_load_vec_type = vec_op::FP32Vec16;
using k_vec_type = vec_op::FP32Vec16;
using qk_acc_vec_type = vec_op::FP32Vec16;
using v_load_vec_type = vec_op::FP32Vec16;
};
#ifdef __AVX512BF16__
template <>
struct KernelVecType<c10::BFloat16> {
using q_load_vec_type = vec_op::BF16Vec8;
using q_vec_type = vec_op::BF16Vec32;
using k_load_vec_type = vec_op::BF16Vec32;
using k_vec_type = vec_op::BF16Vec32;
using qk_acc_vec_type = vec_op::FP32Vec16;
using v_load_vec_type = vec_op::BF16Vec16;
};
#else
template <>
struct KernelVecType<c10::BFloat16> {
using q_load_vec_type = vec_op::BF16Vec8;
using q_vec_type = vec_op::FP32Vec16;
using k_load_vec_type = vec_op::BF16Vec16;
using k_vec_type = vec_op::FP32Vec16;
using qk_acc_vec_type = vec_op::FP32Vec16;
using v_load_vec_type = vec_op::BF16Vec16;
};
#endif
template <typename T>
FORCE_INLINE std::pair<T, T> reduceSoftmax(T* data, const int size,
const int capacity) {
T max = data[0];
for (int i = 1; i < size; ++i) {
max = max >= data[i] ? max : data[i];
}
T sum = 0;
for (int i = 0; i < size; ++i) {
data[i] = std::exp(data[i] - max);
sum += data[i];
}
int i = 0;
for (; i < size; ++i) {
data[i] /= sum;
}
for (; i < capacity; ++i) {
data[i] = 0;
}
return {max, sum};
}
template <typename T>
FORCE_INLINE std::pair<T, T> reduceSoftmaxAlibi(T* data, const int size,
const int capacity,
const float alibi_slope,
const int start_index,
const int seq_len) {
data[0] += alibi_slope * (start_index - seq_len + 1);
T max = data[0];
for (int i = 1; i < size; ++i) {
T qk = data[i] + alibi_slope * (start_index + i - seq_len + 1);
data[i] = qk;
max = max >= qk ? max : qk;
}
T sum = 0;
for (int i = 0; i < size; ++i) {
data[i] = std::exp(data[i] - max);
sum += data[i];
}
int i = 0;
for (; i < size; ++i) {
data[i] /= sum;
}
for (; i < capacity; ++i) {
data[i] = 0;
}
return {max, sum};
}
template <typename T>
FORCE_INLINE void reducePartitonSoftmax(const T* max_data, T* sum_data,
const int size) {
T max = max_data[0];
for (int i = 1; i < size; ++i) {
max = max >= max_data[i] ? max : max_data[i];
}
T rescaled_sum = 0;
for (int i = 0; i < size; ++i) {
T rescale_factor = std::exp(max_data[i] - max);
rescaled_sum += rescale_factor * sum_data[i];
sum_data[i] *= rescale_factor;
}
for (int i = 0; i < size; ++i) {
sum_data[i] /= rescaled_sum + 1e-8;
}
}
template <typename scalar_t, int HEAD_SIZE, int BLOCK_SIZE, int x>
struct reduceQKBlockKernel {
using q_load_vec_type = typename KernelVecType<scalar_t>::q_load_vec_type;
using q_vec_type = typename KernelVecType<scalar_t>::q_vec_type;
using k_load_vec_type = typename KernelVecType<scalar_t>::k_load_vec_type;
using k_vec_type = typename KernelVecType<scalar_t>::k_vec_type;
using qk_acc_vec_type = typename KernelVecType<scalar_t>::qk_acc_vec_type;
constexpr static int TOKEN_PER_GROUP = k_load_vec_type::get_elem_num() / x;
constexpr static int MAX_GROUP_NUM = 16 / TOKEN_PER_GROUP;
constexpr static int UNROLL_GROUP_NUM = MAX_GROUP_NUM / 4;
static_assert(MAX_GROUP_NUM == 8 || MAX_GROUP_NUM == 4);
static_assert(k_load_vec_type::get_elem_num() % x == 0);
static_assert(q_load_vec_type::get_elem_num() * sizeof(scalar_t) == 16);
FORCE_INLINE static void call(const scalar_t* __restrict__ q,
const scalar_t* __restrict__ k_block,
float* __restrict__ logits, float scale,
const int token_num) {
const int group_num = (token_num + TOKEN_PER_GROUP - 1) / TOKEN_PER_GROUP;
qk_acc_vec_type group_accums[MAX_GROUP_NUM];
if (token_num == BLOCK_SIZE) {
for (int q_offset = 0; q_offset < HEAD_SIZE;
q_offset += x, k_block += x * BLOCK_SIZE) {
q_load_vec_type q_load_group_vec(q + q_offset);
q_vec_type q_group_vec(q_load_group_vec);
vec_op::unroll_loop<int, MAX_GROUP_NUM>(
[k_block, &q_group_vec, &group_accums](int token_group_idx) {
k_load_vec_type k_load_group_vec(k_block + token_group_idx * x *
TOKEN_PER_GROUP);
k_vec_type k_group_vec(k_load_group_vec);
vec_op::fma(group_accums[token_group_idx], q_group_vec,
k_group_vec);
vec_op::prefetch(k_block + x * BLOCK_SIZE +
token_group_idx * x * TOKEN_PER_GROUP);
});
}
} else {
for (int q_offset = 0; q_offset < HEAD_SIZE;
q_offset += x, k_block += x * BLOCK_SIZE) {
q_load_vec_type q_load_group_vec(q + q_offset);
q_vec_type q_group_vec(q_load_group_vec);
for (int token_group_start = 0; token_group_start < group_num;
token_group_start += UNROLL_GROUP_NUM) {
vec_op::unroll_loop<int, UNROLL_GROUP_NUM>(
[token_group_start, k_block, &q_group_vec,
&group_accums](int token_group_idx) {
token_group_idx += token_group_start;
k_load_vec_type k_load_group_vec(k_block + token_group_idx * x *
TOKEN_PER_GROUP);
k_vec_type k_group_vec(k_load_group_vec);
vec_op::fma(group_accums[token_group_idx], q_group_vec,
k_group_vec);
vec_op::prefetch(k_block + x * BLOCK_SIZE +
token_group_idx * x * TOKEN_PER_GROUP);
});
}
}
}
for (int token_group_idx = 0; token_group_idx < group_num;
++token_group_idx) {
vec_op::unroll_loop<int, TOKEN_PER_GROUP>(
[&group_accums, logits, scale, token_group_idx](int token_idx) {
float dot_v =
group_accums[token_group_idx]
.template reduce_sub_sum<qk_acc_vec_type::get_elem_num() /
TOKEN_PER_GROUP>(token_idx);
logits[token_group_idx * TOKEN_PER_GROUP + token_idx] =
dot_v * scale;
});
}
}
};
template <typename scalar_t, int HEAD_SIZE, int BLOCK_SIZE,
int HEAD_PARTITION_SIZE, typename acc_t>
FORCE_INLINE void reduceValueBlock(const float* prob, const scalar_t* v_block,
acc_t&& acc) {
using v_load_vec_type = typename KernelVecType<scalar_t>::v_load_vec_type;
constexpr int ELEM_NUM = v_load_vec_type::get_elem_num();
static_assert(BLOCK_SIZE == ELEM_NUM);
vec_op::FP32Vec16 prob_vec(prob);
vec_op::unroll_loop<int, HEAD_PARTITION_SIZE>([&](int head_elem_idx) {
v_load_vec_type v_vec(v_block + BLOCK_SIZE * head_elem_idx);
vec_op::FP32Vec16 fp32_v_vec(v_vec);
acc[head_elem_idx] = acc[head_elem_idx] + prob_vec * fp32_v_vec;
});
}
}; // namespace
// Paged attention v1
namespace {
template <typename scalar_t, int HEAD_SIZE, int BLOCK_SIZE>
struct paged_attention_v1_impl {
static void call(
scalar_t* __restrict__ out, // [num_seqs, num_heads, head_size]
const scalar_t* __restrict__ q, // [num_seqs, num_heads, head_size]
const scalar_t* __restrict__ k_cache, // [num_blocks, num_kv_heads,
// head_size/x, block_size, x]
const scalar_t* __restrict__ v_cache, // [num_blocks, num_kv_heads,
// head_size, block_size]
const int num_kv_heads, const float scale,
const int* __restrict__ block_tables, // [num_seqs,
// max_num_blocks_per_seq]
const int* __restrict__ seq_lens, // [num_seqs]
const int max_num_blocks_per_seq,
const float* __restrict__ alibi_slopes, // [num_heads]
const int q_stride, const int kv_block_stride, const int kv_head_stride,
const int num_seqs, const int num_heads) {
constexpr int x = 16 / sizeof(scalar_t);
const int num_queries_per_kv = num_heads / num_kv_heads;
static_assert(BLOCK_SIZE == 16);
int max_seq_len = max_num_blocks_per_seq * BLOCK_SIZE;
int max_seq_len_padded = (max_seq_len + 15) & 0xFFFFFFF0;
TORCH_CHECK((max_seq_len_padded * sizeof(float)) % 64 == 0);
const int parallel_work_item_num = omp_get_max_threads();
size_t logits_bytes =
parallel_work_item_num * max_seq_len_padded * sizeof(float);
float* logits = (float*)std::aligned_alloc(
64, logits_bytes); // Cacheline alignment for each context token.
// [parallel_work_item_num, max_seq_len_padded]
#pragma omp parallel for collapse(2) schedule(dynamic, 1)
for (int seq_idx = 0; seq_idx < num_seqs; ++seq_idx) {
for (int head_idx = 0; head_idx < num_heads; ++head_idx) {
int seq_len = seq_lens[seq_idx];
const int* seq_block_table =
block_tables + max_num_blocks_per_seq * seq_idx;
const int block_num = (seq_len + BLOCK_SIZE - 1) / BLOCK_SIZE;
const int64_t kv_head_idx = head_idx / num_queries_per_kv;
const scalar_t* __restrict__ q_vec_ptr =
q + seq_idx * q_stride + head_idx * HEAD_SIZE;
const int last_block_token_num = seq_len - (block_num - 1) * BLOCK_SIZE;
float* __restrict__ thread_block_logits =
logits + omp_get_thread_num() * max_seq_len_padded;
// Compute logits
for (int block_idx = 0; block_idx < block_num; ++block_idx) {
const int64_t physical_block_idx = seq_block_table[block_idx];
const scalar_t* __restrict__ k_block_cache_ptr =
k_cache + physical_block_idx * kv_block_stride +
kv_head_idx * kv_head_stride;
float* __restrict__ head_block_logits =
thread_block_logits + block_idx * BLOCK_SIZE;
reduceQKBlockKernel<scalar_t, HEAD_SIZE, BLOCK_SIZE, x>::call(
q_vec_ptr, k_block_cache_ptr, head_block_logits, scale,
block_idx == block_num - 1 ? last_block_token_num : BLOCK_SIZE);
}
// Compute softmax
if (alibi_slopes) {
reduceSoftmaxAlibi(thread_block_logits, seq_len,
block_num * BLOCK_SIZE, alibi_slopes[head_idx], 0,
seq_len);
} else {
reduceSoftmax(thread_block_logits, seq_len, block_num * BLOCK_SIZE);
}
// Compute value
constexpr int head_elem_num_per_partition = 16;
constexpr int head_partition_num =
HEAD_SIZE / head_elem_num_per_partition;
for (int head_part_idx = 0; head_part_idx < head_partition_num;
++head_part_idx) {
vec_op::FP32Vec16 accums[head_elem_num_per_partition];
scalar_t* __restrict__ out_ptr =
out + seq_idx * num_heads * HEAD_SIZE + head_idx * HEAD_SIZE +
head_part_idx * head_elem_num_per_partition;
for (int block_idx = 0; block_idx < block_num; ++block_idx) {
const int64_t physical_block_idx = seq_block_table[block_idx];
const float* __restrict__ prob_vec_ptr =
thread_block_logits + block_idx * BLOCK_SIZE;
const scalar_t* __restrict__ v_block_cache_ptr =
v_cache + physical_block_idx * kv_block_stride +
kv_head_idx * kv_head_stride +
BLOCK_SIZE * head_part_idx * head_elem_num_per_partition;
reduceValueBlock<scalar_t, HEAD_SIZE, BLOCK_SIZE,
head_elem_num_per_partition>(
prob_vec_ptr, v_block_cache_ptr, accums);
if (block_idx != block_num - 1) {
const int64_t next_physical_block_idx =
seq_block_table[block_idx + 1];
const scalar_t* __restrict__ next_v_block_cache_ptr =
v_cache + next_physical_block_idx * kv_block_stride +
kv_head_idx * kv_head_stride +
BLOCK_SIZE * head_part_idx * head_elem_num_per_partition;
vec_op::unroll_loop<int, head_elem_num_per_partition>(
[&](int head_elem_idx) {
if (head_elem_idx % 2 == 0) {
vec_op::prefetch(next_v_block_cache_ptr +
BLOCK_SIZE * head_elem_idx);
}
});
}
}
vec_op::unroll_loop<int, head_elem_num_per_partition>(
[&](int head_elem_idx) {
float value = accums[head_elem_idx].reduce_sum();
vec_op::storeFP32(value, out_ptr + head_elem_idx);
});
}
}
}
std::free(logits);
}
};
#define LAUNCH_V1_ATTENTION_KERNEL(T, HEAD_SIZE, BLOCK_SIZE) \
paged_attention_v1_impl<T, HEAD_SIZE, BLOCK_SIZE>::call( \
out_ptr, query_ptr, key_cache_ptr, value_cache_ptr, num_kv_heads, scale, \
block_tables_ptr, seq_lens_ptr, max_num_blocks_per_seq, \
alibi_slopes_ptr, q_stride, kv_block_stride, kv_head_stride, num_seqs, \
num_heads);
template <typename T, int BLOCK_SIZE>
void paged_attention_v1_impl_launcher(
torch::Tensor& out, torch::Tensor& query, torch::Tensor& key_cache,
torch::Tensor& value_cache, int num_kv_heads, float scale,
torch::Tensor& block_tables, torch::Tensor& seq_lens, int max_seq_len,
const c10::optional<torch::Tensor>& alibi_slopes) {
int num_seqs = query.size(0);
int num_heads = query.size(1);
int head_size = query.size(2);
int max_num_blocks_per_seq = block_tables.size(1);
int q_stride = query.stride(0);
int kv_block_stride = key_cache.stride(0);
int kv_head_stride = key_cache.stride(1);
// NOTE: alibi_slopes is optional.
const float* alibi_slopes_ptr =
alibi_slopes
? reinterpret_cast<const float*>(alibi_slopes.value().data_ptr())
: nullptr;
T* out_ptr = reinterpret_cast<T*>(out.data_ptr());
T* query_ptr = reinterpret_cast<T*>(query.data_ptr());
T* key_cache_ptr = reinterpret_cast<T*>(key_cache.data_ptr());
T* value_cache_ptr = reinterpret_cast<T*>(value_cache.data_ptr());
int* block_tables_ptr = block_tables.data_ptr<int>();
int* seq_lens_ptr = seq_lens.data_ptr<int>();
switch (head_size) {
case 64:
LAUNCH_V1_ATTENTION_KERNEL(T, 64, BLOCK_SIZE);
break;
case 80:
LAUNCH_V1_ATTENTION_KERNEL(T, 80, BLOCK_SIZE);
break;
case 96:
LAUNCH_V1_ATTENTION_KERNEL(T, 96, BLOCK_SIZE);
break;
case 112:
LAUNCH_V1_ATTENTION_KERNEL(T, 112, BLOCK_SIZE);
break;
case 128:
LAUNCH_V1_ATTENTION_KERNEL(T, 128, BLOCK_SIZE);
break;
case 192:
LAUNCH_V1_ATTENTION_KERNEL(T, 192, BLOCK_SIZE);
break;
case 256:
LAUNCH_V1_ATTENTION_KERNEL(T, 256, BLOCK_SIZE);
break;
default:
TORCH_CHECK(false, "Unsupported head size: ", head_size);
break;
}
}
#define CALL_V1_KERNEL_LAUNCHER(T, BLOCK_SIZE) \
paged_attention_v1_impl_launcher<T, BLOCK_SIZE>( \
out, query, key_cache, value_cache, num_kv_heads, scale, block_tables, \
seq_lens, max_seq_len, alibi_slopes);
#define CALL_V1_KERNEL_LAUNCHER_BLOCK_SIZE(T) \
switch (block_size) { \
case 16: \
CALL_V1_KERNEL_LAUNCHER(T, 16); \
break; \
default: \
TORCH_CHECK(false, "Unsupported block size: ", block_size); \
break; \
}
} // namespace
void paged_attention_v1(
torch::Tensor& out, torch::Tensor& query, torch::Tensor& key_cache,
torch::Tensor& value_cache, int64_t num_kv_heads, double scale,
torch::Tensor& block_tables, torch::Tensor& seq_lens, int64_t block_size,
int64_t max_seq_len, const c10::optional<torch::Tensor>& alibi_slopes,
const std::string& kv_cache_dtype, double kv_scale, const int64_t tp_rank,
const int64_t blocksparse_local_blocks,
const int64_t blocksparse_vert_stride, const int64_t blocksparse_block_size,
const int64_t blocksparse_head_sliding_step) {
TORCH_CHECK(kv_scale == 1.0f);
TORCH_CHECK(blocksparse_vert_stride <= 1,
"CPU backend does not support blocksparse attention yet.");
VLLM_DISPATCH_FLOATING_TYPES(query.scalar_type(), "paged_attention_v1_impl",
[&] {
CPU_KERNEL_GUARD_IN(paged_attention_v1_impl)
CALL_V1_KERNEL_LAUNCHER_BLOCK_SIZE(scalar_t);
CPU_KERNEL_GUARD_OUT(paged_attention_v1_impl)
});
}
// Paged attention v2
namespace {
template <typename scalar_t, int HEAD_SIZE, int BLOCK_SIZE, int PARTITION_SIZE>
struct paged_attention_v2_impl {
static void call(
scalar_t* __restrict__ out, // [num_seqs, num_heads, head_size]
float* __restrict__ exp_sums, // [num_seqs, num_heads,
// max_num_partitions]
float* __restrict__ max_logits, // [num_seqs, num_heads,
// max_num_partitions]
scalar_t* __restrict__ tmp_out, // [num_seqs, num_heads,
// max_num_partitions, head_size]
const scalar_t* __restrict__ q, // [num_seqs, num_heads, head_size]
const scalar_t* __restrict__ k_cache, // [num_blocks, num_kv_heads,
// head_size/x, block_size, x]
const scalar_t* __restrict__ v_cache, // [num_blocks, num_kv_heads,
// head_size, block_size]
const int num_kv_heads, const float scale,
const int* __restrict__ block_tables, // [num_seqs,
// max_num_blocks_per_seq]
const int* __restrict__ seq_lens, // [num_seqs]
const int max_num_blocks_per_seq,
const float* __restrict__ alibi_slopes, // [num_heads]
const int q_stride, const int kv_block_stride, const int kv_head_stride,
const int num_seqs, const int num_heads, const int max_num_partitions) {
constexpr int x = 16 / sizeof(scalar_t);
const int num_queries_per_kv = num_heads / num_kv_heads;
static_assert(BLOCK_SIZE == 16);
static_assert(PARTITION_SIZE * sizeof(float) % 64 == 0);
static_assert(PARTITION_SIZE % BLOCK_SIZE == 0);
#pragma omp parallel for collapse(3) schedule(static, 1)
for (int seq_idx = 0; seq_idx < num_seqs; ++seq_idx) {
for (int partition_idx = 0; partition_idx < max_num_partitions;
++partition_idx) {
for (int head_idx = 0; head_idx < num_heads; ++head_idx) {
const int seq_len = seq_lens[seq_idx];
const int start_token_idx = partition_idx * PARTITION_SIZE;
if (start_token_idx >= seq_len) continue;
const int partition_num =
(seq_len + PARTITION_SIZE - 1) / PARTITION_SIZE;
const bool no_reduce = (partition_num == 1);
const int token_num =
(std::min(seq_len, start_token_idx + PARTITION_SIZE) -
start_token_idx);
const int block_num = (token_num + BLOCK_SIZE - 1) / BLOCK_SIZE;
const int last_block_token_num =
token_num - (block_num - 1) * BLOCK_SIZE;
const int* seq_block_table = block_tables +
max_num_blocks_per_seq * seq_idx +
start_token_idx / BLOCK_SIZE;
const int64_t kv_head_idx = head_idx / num_queries_per_kv;
const scalar_t* __restrict__ q_vec_ptr =
q + seq_idx * q_stride + head_idx * HEAD_SIZE;
float logits[PARTITION_SIZE] __attribute__((aligned(64))) = {0};
// Compute logits
for (int block_idx = 0; block_idx < block_num; ++block_idx) {
const int64_t physical_block_idx = seq_block_table[block_idx];
const scalar_t* __restrict__ k_block_cache_ptr =
k_cache + physical_block_idx * kv_block_stride +
kv_head_idx * kv_head_stride;
float* __restrict__ head_block_logits =
logits + block_idx * BLOCK_SIZE;
reduceQKBlockKernel<scalar_t, HEAD_SIZE, BLOCK_SIZE, x>::call(
q_vec_ptr, k_block_cache_ptr, head_block_logits, scale,
block_idx == block_num - 1 ? last_block_token_num : BLOCK_SIZE);
}
std::pair<float, float> max_and_sum;
if (alibi_slopes) {
max_and_sum = reduceSoftmaxAlibi(
logits, token_num, block_num * BLOCK_SIZE,
alibi_slopes[head_idx], start_token_idx, seq_len);
} else {
max_and_sum =
reduceSoftmax(logits, token_num, block_num * BLOCK_SIZE);
}
auto&& [max_logit, exp_sum] = max_and_sum;
scalar_t* __restrict__ output_buffer = nullptr;
if (!no_reduce) {
auto idx = seq_idx * num_heads * max_num_partitions +
head_idx * max_num_partitions + partition_idx;
max_logits[idx] = max_logit;
exp_sums[idx] = exp_sum;
output_buffer =
tmp_out + seq_idx * num_heads * max_num_partitions * HEAD_SIZE +
head_idx * max_num_partitions * HEAD_SIZE +
partition_idx * HEAD_SIZE;
} else {
output_buffer =
out + seq_idx * num_heads * HEAD_SIZE + head_idx * HEAD_SIZE;
}
// Compute value
constexpr int head_elem_num_per_partition = 16;
constexpr int head_partition_num =
HEAD_SIZE / head_elem_num_per_partition;
for (int head_part_idx = 0; head_part_idx < head_partition_num;
++head_part_idx) {
vec_op::FP32Vec16 accums[head_elem_num_per_partition];
scalar_t* __restrict__ out_ptr =
output_buffer + head_part_idx * head_elem_num_per_partition;
for (int block_idx = 0; block_idx < block_num; ++block_idx) {
const int64_t physical_block_idx = seq_block_table[block_idx];
const float* __restrict__ prob_vec_ptr =
logits + block_idx * BLOCK_SIZE;
const scalar_t* __restrict__ v_block_cache_ptr =
v_cache + physical_block_idx * kv_block_stride +
kv_head_idx * kv_head_stride +
BLOCK_SIZE * head_part_idx * head_elem_num_per_partition;
reduceValueBlock<scalar_t, HEAD_SIZE, BLOCK_SIZE,
head_elem_num_per_partition>(
prob_vec_ptr, v_block_cache_ptr, accums);
if (block_idx != block_num - 1) {
const int64_t next_physical_block_idx =
seq_block_table[block_idx + 1];
const scalar_t* __restrict__ next_v_block_cache_ptr =
v_cache + next_physical_block_idx * kv_block_stride +
kv_head_idx * kv_head_stride +
BLOCK_SIZE * head_part_idx * head_elem_num_per_partition;
vec_op::unroll_loop<int, head_elem_num_per_partition>(
[&](int head_elem_idx) {
if (head_elem_idx % 2 == 0) {
vec_op::prefetch(next_v_block_cache_ptr +
BLOCK_SIZE * head_elem_idx);
}
});
}
}
vec_op::unroll_loop<int, head_elem_num_per_partition>(
[&](int head_elem_idx) {
float value = accums[head_elem_idx].reduce_sum();
vec_op::storeFP32(value, out_ptr + head_elem_idx);
});
}
}
}
}
// Rescale partition softmax and store the factors to exp_sums
#pragma omp parallel for collapse(2) schedule(static, 1)
for (int seq_idx = 0; seq_idx < num_seqs; ++seq_idx) {
for (int head_idx = 0; head_idx < num_heads; ++head_idx) {
const int seq_len = seq_lens[seq_idx];
const int partition_num =
(seq_len + PARTITION_SIZE - 1) / PARTITION_SIZE;
if (partition_num == 1) continue;
reducePartitonSoftmax(
max_logits + seq_idx * num_heads * max_num_partitions +
head_idx * max_num_partitions,
exp_sums + seq_idx * num_heads * max_num_partitions +
head_idx * max_num_partitions,
partition_num);
}
}
// Reduce values
using v_load_vec_type = typename KernelVecType<scalar_t>::v_load_vec_type;
static_assert(v_load_vec_type::get_elem_num() == BLOCK_SIZE);
constexpr int head_elem_num_per_group =
16; // Note: didn't align with the cacheline size, due to some
// HEAD_SIZE didn't align with 64 bytes
static_assert(HEAD_SIZE % head_elem_num_per_group == 0);
constexpr int head_group_num = HEAD_SIZE / head_elem_num_per_group;
const float* __restrict__ rescale_factors = exp_sums;
#pragma omp parallel for collapse(3) schedule(static, 1)
for (int seq_idx = 0; seq_idx < num_seqs; ++seq_idx) {
for (int head_idx = 0; head_idx < num_heads; ++head_idx) {
for (int group_idx = 0; group_idx < head_group_num; ++group_idx) {
const int seq_len = seq_lens[seq_idx];
const int partition_num =
(seq_len + PARTITION_SIZE - 1) / PARTITION_SIZE;
if (partition_num == 1) continue;
const float* __restrict__ seq_head_rescale_factors =
rescale_factors + seq_idx * num_heads * max_num_partitions +
head_idx * max_num_partitions;
const scalar_t* __restrict__ seq_head_tmp_out =
tmp_out + seq_idx * num_heads * max_num_partitions * HEAD_SIZE +
head_idx * max_num_partitions * HEAD_SIZE +
group_idx * head_elem_num_per_group;
scalar_t* __restrict__ seq_head_output =
out + seq_idx * num_heads * HEAD_SIZE + head_idx * HEAD_SIZE +
group_idx * head_elem_num_per_group;
vec_op::FP32Vec16 acc;
for (int i = 0; i < partition_num; ++i) {
vec_op::FP32Vec16 rescale_factor(seq_head_rescale_factors[i]);
v_load_vec_type value(seq_head_tmp_out + i * HEAD_SIZE);
vec_op::FP32Vec16 fp32_value(value);
acc = acc + fp32_value * rescale_factor;
}
v_load_vec_type cast_acc(acc);
cast_acc.save(seq_head_output);
}
}
}
}
};
#define LAUNCH_V2_ATTENTION_KERNEL(T, HEAD_SIZE, BLOCK_SIZE) \
paged_attention_v2_impl<T, HEAD_SIZE, BLOCK_SIZE, PARTITION_SIZE>::call( \
out_ptr, exp_sums_ptr, max_logits_ptr, tmp_out_ptr, query_ptr, \
key_cache_ptr, value_cache_ptr, num_kv_heads, scale, block_tables_ptr, \
seq_lens_ptr, max_num_blocks_per_seq, alibi_slopes_ptr, q_stride, \
kv_block_stride, kv_head_stride, num_seqs, num_heads, \
max_num_partitions);
template <typename T, int BLOCK_SIZE, int PARTITION_SIZE = 512>
void paged_attention_v2_impl_launcher(
torch::Tensor& out, torch::Tensor& exp_sums, torch::Tensor& max_logits,
torch::Tensor& tmp_out, torch::Tensor& query, torch::Tensor& key_cache,
torch::Tensor& value_cache, int num_kv_heads, float scale,
torch::Tensor& block_tables, torch::Tensor& seq_lens, int block_size,
int max_seq_len, const c10::optional<torch::Tensor>& alibi_slopes) {
int num_seqs = query.size(0);
int num_heads = query.size(1);
int head_size = query.size(2);
int max_num_blocks_per_seq = block_tables.size(1);
int q_stride = query.stride(0);
int kv_block_stride = key_cache.stride(0);
int kv_head_stride = key_cache.stride(1);
int max_num_partitions = exp_sums.size(-1);
// NOTE: alibi_slopes is optional.
const float* alibi_slopes_ptr =
alibi_slopes
? reinterpret_cast<const float*>(alibi_slopes.value().data_ptr())
: nullptr;
T* out_ptr = reinterpret_cast<T*>(out.data_ptr());
float* exp_sums_ptr = reinterpret_cast<float*>(exp_sums.data_ptr());
float* max_logits_ptr = reinterpret_cast<float*>(max_logits.data_ptr());
T* tmp_out_ptr = reinterpret_cast<T*>(tmp_out.data_ptr());
T* query_ptr = reinterpret_cast<T*>(query.data_ptr());
T* key_cache_ptr = reinterpret_cast<T*>(key_cache.data_ptr());
T* value_cache_ptr = reinterpret_cast<T*>(value_cache.data_ptr());
int* block_tables_ptr = block_tables.data_ptr<int>();
int* seq_lens_ptr = seq_lens.data_ptr<int>();
switch (head_size) {
case 64:
LAUNCH_V2_ATTENTION_KERNEL(T, 64, BLOCK_SIZE);
break;
case 80:
LAUNCH_V2_ATTENTION_KERNEL(T, 80, BLOCK_SIZE);
break;
case 96:
LAUNCH_V2_ATTENTION_KERNEL(T, 96, BLOCK_SIZE);
break;
case 112:
LAUNCH_V2_ATTENTION_KERNEL(T, 112, BLOCK_SIZE);
break;
case 128:
LAUNCH_V2_ATTENTION_KERNEL(T, 128, BLOCK_SIZE);
break;
case 192:
LAUNCH_V2_ATTENTION_KERNEL(T, 192, BLOCK_SIZE);
break;
case 256:
LAUNCH_V2_ATTENTION_KERNEL(T, 256, BLOCK_SIZE);
break;
default:
TORCH_CHECK(false, "Unsupported head size: ", head_size);
break;
}
}
#define CALL_V2_KERNEL_LAUNCHER(T, BLOCK_SIZE) \
paged_attention_v2_impl_launcher<T, BLOCK_SIZE>( \
out, exp_sums, max_logits, tmp_out, query, key_cache, value_cache, \
num_kv_heads, scale, block_tables, seq_lens, block_size, max_seq_len, \
alibi_slopes);
#define CALL_V2_KERNEL_LAUNCHER_BLOCK_SIZE(T) \
switch (block_size) { \
case 16: \
CALL_V2_KERNEL_LAUNCHER(T, 16); \
break; \
default: \
TORCH_CHECK(false, "Unsupported block size: ", block_size); \
break; \
}
} // namespace
void paged_attention_v2(
torch::Tensor& out, torch::Tensor& exp_sums, torch::Tensor& max_logits,
torch::Tensor& tmp_out, torch::Tensor& query, torch::Tensor& key_cache,
torch::Tensor& value_cache, int64_t num_kv_heads, double scale,
torch::Tensor& block_tables, torch::Tensor& seq_lens, int64_t block_size,
int64_t max_seq_len, const c10::optional<torch::Tensor>& alibi_slopes,
const std::string& kv_cache_dtype, double kv_scale, const int64_t tp_rank,
const int64_t blocksparse_local_blocks,
const int64_t blocksparse_vert_stride, const int64_t blocksparse_block_size,
const int64_t blocksparse_head_sliding_step) {
TORCH_CHECK(kv_scale == 1.0f);
TORCH_CHECK(blocksparse_vert_stride <= 1,
"CPU backend does not support blocksparse attention yet.");
VLLM_DISPATCH_FLOATING_TYPES(query.scalar_type(), "paged_attention_v2_impl",
[&] {
CPU_KERNEL_GUARD_IN(paged_attention_v2_impl)
CALL_V2_KERNEL_LAUNCHER_BLOCK_SIZE(scalar_t);
CPU_KERNEL_GUARD_OUT(paged_attention_v2_impl)
});
}

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