[Model Runner V2] Fix warmup for pipeline parallel (#36280)

Signed-off-by: Nick Hill <nickhill123@gmail.com>
This commit is contained in:
Nick Hill
2026-03-06 16:58:51 -08:00
committed by GitHub
parent 6a18d8789b
commit b354686524
2 changed files with 16 additions and 8 deletions

View File

@@ -1,6 +1,9 @@
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
from collections.abc import Callable
from typing import Any
import numpy as np
import torch
@@ -17,9 +20,14 @@ from vllm.v1.worker.gpu.model_runner import GPUModelRunner
@torch.inference_mode()
def warmup_kernels(model_runner: GPUModelRunner) -> None:
def warmup_kernels(
model_runner: GPUModelRunner,
worker_execute_model: Callable[[SchedulerOutput], Any],
worker_sample_tokens: Callable[[GrammarOutput | None], Any],
) -> None:
"""Run two execute_model + sample_tokens iterations to JIT compile
triton kernels.
triton kernels. We must call the provided worker's execute_model for
pipeline parallel coordination.
The first iteration simulates a prefill with requests of 2 prompt
tokens each. The second iteration simulates a decode step with all
@@ -83,7 +91,7 @@ def warmup_kernels(model_runner: GPUModelRunner) -> None:
# Disable KV connector for warmup run.
model_runner.kv_connector.set_disabled(True)
model_runner.execute_model(prefill_output)
worker_execute_model(prefill_output)
if not model_runner.is_pooling_model:
# Warm up sampler and perform a decode step for non-pooling models.
@@ -101,7 +109,7 @@ def warmup_kernels(model_runner: GPUModelRunner) -> None:
structured_output_request_ids=req_ids, grammar_bitmask=grammar_bitmask
)
model_runner.sample_tokens(grammar_output)
worker_sample_tokens(grammar_output)
# Step 2: Decode all requests with 1 token each.
cached_req_data = CachedRequestData.make_empty()
@@ -120,12 +128,12 @@ def warmup_kernels(model_runner: GPUModelRunner) -> None:
decode_output.total_num_scheduled_tokens = num_reqs
decode_output.num_common_prefix_blocks = [0] * num_kv_cache_groups
model_runner.execute_model(decode_output)
model_runner.sample_tokens(None)
worker_execute_model(decode_output)
worker_sample_tokens(None)
# Clean up - process finish_req_ids.
cleanup_output = SchedulerOutput.make_empty()
cleanup_output.finished_req_ids = set(req_ids)
model_runner.execute_model(cleanup_output)
worker_execute_model(cleanup_output)
model_runner.kv_connector.set_disabled(False)
torch.accelerator.synchronize()

View File

@@ -584,7 +584,7 @@ class Worker(WorkerBase):
if self.use_v2_model_runner:
# V2: Run full execute_model + sample_tokens to JIT compile triton kernels.
warmup_kernels(self.model_runner)
warmup_kernels(self.model_runner, self.execute_model, self.sample_tokens)
elif get_pp_group().is_last_rank:
# V1: Warm up sampler and preallocate memory buffer for logits and other
# sampling related tensors of max possible shape to avoid memory