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16 Commits

Author SHA1 Message Date
Shengqi Chen
d7de043d55 [CI] fix version comparsion and exclusion patterns in upload-release-wheels.sh (#32971)
Signed-off-by: Shengqi Chen <harry-chen@outlook.com>
(cherry picked from commit 136c499f6e)
2026-01-23 14:22:49 -08:00
Nicolò Lucchesi
4dc11b06d3 [Bugfix] Fix Whisper/encoder-decoder GPU memory leak (#32789)
Signed-off-by: NickLucche <nlucches@redhat.com>
(cherry picked from commit ea6102b85d)
2026-01-23 02:53:12 -08:00
Isotr0py
2bd95d803a [Misc] Bump opencv-python dependecy version to 4.13 (#32668)
Signed-off-by: Isotr0py <mozf@mail2.sysu.edu.cn>
(cherry picked from commit 444e2e7e1f)
2026-01-23 02:52:47 -08:00
Isotr0py
f46d576c54 [Misc] Replace urllib's urlparse with urllib3's parse_url (#32746)
Signed-off-by: Isotr0py <mozf@mail2.sysu.edu.cn>
(cherry picked from commit 8ebf271bb6)
2026-01-23 02:51:53 -08:00
Shengqi Chen
d68209402d [build] fix cu130 related release pipeline steps and publish as nightly image (#32522)
Signed-off-by: Shengqi Chen <harry-chen@outlook.com>
(cherry picked from commit 965765aef9)
2026-01-17 18:38:46 -08:00
Shengqi Chen
b17039bccc [CI] Implement uploading to PyPI and GitHub in the release pipeline, enable release image building for CUDA 13.0 (#31032)
(cherry picked from commit 8e61425ee6)
2026-01-16 21:04:48 -08:00
Cyrus Leung
48b67ba75f [Frontend] Standardize use of create_error_response (#32319)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2026-01-16 11:35:10 +00:00
TJian
09f4264a55 [Bugfix] Fix ROCm dockerfiles (#32447)
Signed-off-by: tjtanaa <tunjian.tan@embeddedllm.com>
2026-01-16 10:50:00 +08:00
Matthew Bonanni
7f42dc20bb [CI] Fix LM Eval Large Models (H100) (#32423)
Signed-off-by: Matthew Bonanni <mbonanni@redhat.com>
(cherry picked from commit bcf2333cd6)
2026-01-15 18:00:21 -08:00
TJian
c2a37a3cf8 Cherry pick [ROCm] [CI] [Release] Rocm wheel pipeline with sccache #32264
Signed-off-by: Kevin H. Luu <khluu000@gmail.com>
2026-01-15 17:59:58 -08:00
Michael Goin
0e31fc7996 [UX] Use kv_offloading_backend=native by default (#32421)
Signed-off-by: mgoin <mgoin64@gmail.com>
(cherry picked from commit 1be5a73571)
2026-01-15 17:55:20 -08:00
Pleaplusone
6ac0fcf416 [ROCm][Bugfix] Disable hip sampler to fix deepseek's accuracy issue on ROCm (#32413)
Signed-off-by: ganyi <ygan@amd.com>
(cherry picked from commit 77c16df31d)
2026-01-15 17:55:06 -08:00
Douglas Lehr
b62249725c [ROCM] Add ROCm image build to release pipeline (#31995)
Signed-off-by: Doug Lehr <douglehr@amd.com>
Co-authored-by: Doug Lehr <douglehr@amd.com>
(cherry picked from commit c5891b5430)
2026-01-15 17:54:47 -08:00
vllmellm
1b57275207 [Bugfix][ROCm][performance] Resolve the performance regression issue of the Qwen3-Next-80B-A3B-Thinking under rocm_atten (#32336)
Signed-off-by: vllmellm <vllm.ellm@embeddedllm.com>
(cherry picked from commit e27078ea80)
2026-01-15 17:54:01 -08:00
Martin Hickey
2c24bc6996 [BugFix] [KVConnector] Fix KV events for LMCache connector (#32169)
Signed-off-by: Martin Hickey <martin.hickey@ie.ibm.com>
Co-authored-by: gemini-code-assist[bot] <176961590+gemini-code-assist[bot]@users.noreply.github.com>
2026-01-13 10:56:23 -08:00
Cyrus Leung
0aa8c40552 [Bugfix] Replace PoolingParams.normalize with use_activation (#32243)
Signed-off-by: DarkLight1337 <tlleungac@connect.ust.hk>
2026-01-13 10:56:23 -08:00
2021 changed files with 64416 additions and 195284 deletions

View File

@@ -1,8 +1,7 @@
name: vllm_ci
job_dirs:
- ".buildkite/image_build"
- ".buildkite/test_areas"
- ".buildkite/hardware_tests"
- ".buildkite/image_build"
run_all_patterns:
- "docker/Dockerfile"
- "CMakeLists.txt"

View File

@@ -1,30 +0,0 @@
group: Hardware - AMD Build
steps:
- label: "AMD: :docker: build image"
key: image-build-amd
depends_on: []
device: amd_cpu
no_plugin: true
commands:
- >
docker build
--build-arg max_jobs=16
--build-arg REMOTE_VLLM=1
--build-arg ARG_PYTORCH_ROCM_ARCH='gfx942;gfx950'
--build-arg VLLM_BRANCH=$BUILDKITE_COMMIT
--tag "rocm/vllm-ci:${BUILDKITE_COMMIT}"
-f docker/Dockerfile.rocm
--target test
--no-cache
--progress plain .
- docker push "rocm/vllm-ci:${BUILDKITE_COMMIT}"
env:
DOCKER_BUILDKIT: "1"
retry:
automatic:
- exit_status: -1 # Agent was lost
limit: 1
- exit_status: -10 # Agent was lost
limit: 1
- exit_status: 1 # Machine occasionally fail
limit: 1

View File

@@ -1,10 +0,0 @@
group: Hardware
depends_on: ~
steps:
- label: "Ascend NPU Test"
soft_fail: true
timeout_in_minutes: 20
no_plugin: true
device: ascend_npu
commands:
- bash .buildkite/scripts/hardware_ci/run-npu-test.sh

View File

@@ -1,100 +0,0 @@
group: CPU
depends_on: []
steps:
- label: CPU-Kernel Tests
depends_on: []
soft_fail: true
device: intel_cpu
no_plugin: true
source_file_dependencies:
- csrc/cpu/
- cmake/cpu_extension.cmake
- CMakeLists.txt
- vllm/_custom_ops.py
- tests/kernels/attention/test_cpu_attn.py
- tests/kernels/moe/test_cpu_fused_moe.py
- tests/kernels/test_onednn.py
commands:
- |
bash .buildkite/scripts/hardware_ci/run-cpu-test.sh 20m "
pytest -x -v -s tests/kernels/attention/test_cpu_attn.py
pytest -x -v -s tests/kernels/moe/test_cpu_fused_moe.py
pytest -x -v -s tests/kernels/test_onednn.py"
- label: CPU-Language Generation and Pooling Model Tests
depends_on: []
soft_fail: true
device: intel_cpu
no_plugin: true
source_file_dependencies:
- csrc/cpu/
- vllm/
- tests/models/language/generation/
- tests/models/language/pooling/
commands:
- |
bash .buildkite/scripts/hardware_ci/run-cpu-test.sh 30m "
pytest -x -v -s tests/models/language/generation -m cpu_model
pytest -x -v -s tests/models/language/pooling -m cpu_model"
- label: CPU-Quantization Model Tests
depends_on: []
soft_fail: true
device: intel_cpu
no_plugin: true
source_file_dependencies:
- csrc/cpu/
- vllm/model_executor/layers/quantization/cpu_wna16.py
- vllm/model_executor/layers/quantization/gptq_marlin.py
- vllm/model_executor/layers/quantization/compressed_tensors/schemes/compressed_tensors_w8a8_int8.py
- vllm/model_executor/layers/quantization/kernels/scaled_mm/cpu.py
- vllm/model_executor/layers/quantization/kernels/mixed_precision/cpu.py
- tests/quantization/test_compressed_tensors.py
- tests/quantization/test_cpu_wna16.py
commands:
- |
bash .buildkite/scripts/hardware_ci/run-cpu-test.sh 20m "
pytest -x -v -s tests/quantization/test_compressed_tensors.py::test_compressed_tensors_w8a8_logprobs
pytest -x -v -s tests/quantization/test_cpu_wna16.py"
- label: CPU-Distributed Tests
depends_on: []
soft_fail: true
device: intel_cpu
no_plugin: true
source_file_dependencies:
- csrc/cpu/shm.cpp
- vllm/v1/worker/cpu_worker.py
- vllm/v1/worker/gpu_worker.py
- vllm/v1/worker/cpu_model_runner.py
- vllm/v1/worker/gpu_model_runner.py
- vllm/platforms/cpu.py
- vllm/distributed/parallel_state.py
- vllm/distributed/device_communicators/cpu_communicator.py
commands:
- |
bash .buildkite/scripts/hardware_ci/run-cpu-test.sh 10m "
bash .buildkite/scripts/hardware_ci/run-cpu-distributed-smoke-test.sh"
- label: CPU-Multi-Modal Model Tests %N
depends_on: []
soft_fail: true
device: intel_cpu
no_plugin: true
source_file_dependencies:
# - vllm/
- vllm/model_executor/layers/rotary_embedding
- tests/models/multimodal/generation/
commands:
- |
bash .buildkite/scripts/hardware_ci/run-cpu-test.sh 45m "
pytest -x -v -s tests/models/multimodal/generation --ignore=tests/models/multimodal/generation/test_pixtral.py -m cpu_model --num-shards=$$BUILDKITE_PARALLEL_JOB_COUNT --shard-id=$$BUILDKITE_PARALLEL_JOB"
parallelism: 2
- label: "Arm CPU Test"
depends_on: []
soft_fail: true
device: arm_cpu
no_plugin: true
commands:
- bash .buildkite/scripts/hardware_ci/run-cpu-test-arm.sh

View File

@@ -1,10 +0,0 @@
group: Hardware
steps:
- label: "GH200 Test"
soft_fail: true
device: gh200
no_plugin: true
optional: true
commands:
- nvidia-smi
- bash .buildkite/scripts/hardware_ci/run-gh200-test.sh

View File

@@ -1,17 +0,0 @@
group: Hardware
depends_on: ~
steps:
- label: "Intel HPU Test"
soft_fail: true
device: intel_hpu
no_plugin: true
commands:
- bash .buildkite/scripts/hardware_ci/run-hpu-test.sh
- label: "Intel GPU Test"
depends_on: []
soft_fail: true
device: intel_gpu
no_plugin: true
commands:
- bash .buildkite/scripts/hardware_ci/run-xpu-test.sh

View File

@@ -1,255 +1,56 @@
#!/bin/bash
set -euo pipefail
set -e
# replace invalid characters in Docker image tags and truncate to 128 chars
clean_docker_tag() {
local input="$1"
echo "$input" | sed 's/[^a-zA-Z0-9._-]/_/g' | cut -c1-128
}
print_usage_and_exit() {
echo "Usage: $0 <registry> <repo> <commit> <branch> <image_tag> [<image_tag_latest>]"
exit 1
}
print_instance_info() {
echo ""
echo "=== Debug: Instance Information ==="
# Get IMDSv2 token
if TOKEN=$(curl -s -X PUT "http://169.254.169.254/latest/api/token" \
-H "X-aws-ec2-metadata-token-ttl-seconds: 21600" 2>/dev/null); then
AMI_ID=$(curl -s -H "X-aws-ec2-metadata-token: $TOKEN" \
http://169.254.169.254/latest/meta-data/ami-id 2>/dev/null || echo "unknown")
INSTANCE_TYPE=$(curl -s -H "X-aws-ec2-metadata-token: $TOKEN" \
http://169.254.169.254/latest/meta-data/instance-type 2>/dev/null || echo "unknown")
INSTANCE_ID=$(curl -s -H "X-aws-ec2-metadata-token: $TOKEN" \
http://169.254.169.254/latest/meta-data/instance-id 2>/dev/null || echo "unknown")
AZ=$(curl -s -H "X-aws-ec2-metadata-token: $TOKEN" \
http://169.254.169.254/latest/meta-data/placement/availability-zone 2>/dev/null || echo "unknown")
echo "AMI ID: ${AMI_ID}"
echo "Instance Type: ${INSTANCE_TYPE}"
echo "Instance ID: ${INSTANCE_ID}"
echo "AZ: ${AZ}"
else
echo "Not running on EC2 or IMDS not available"
fi
# Check for warm cache AMI (marker file baked into custom AMI)
if [[ -f /etc/vllm-ami-info ]]; then
echo "Cache: warm (custom vLLM AMI)"
cat /etc/vllm-ami-info
else
echo "Cache: cold (standard AMI)"
fi
echo "==================================="
echo ""
}
setup_buildx_builder() {
echo "--- :buildkite: Setting up buildx builder"
if [[ -S "${BUILDKIT_SOCKET}" ]]; then
# Custom AMI with standalone buildkitd - use remote driver for warm cache
echo "✅ Found local buildkitd socket at ${BUILDKIT_SOCKET}"
echo "Using remote driver to connect to buildkitd (warm cache available)"
if docker buildx inspect baked-vllm-builder >/dev/null 2>&1; then
echo "Using existing baked-vllm-builder"
docker buildx use baked-vllm-builder
else
echo "Creating baked-vllm-builder with remote driver"
docker buildx create \
--name baked-vllm-builder \
--driver remote \
--use \
"unix://${BUILDKIT_SOCKET}"
fi
docker buildx inspect --bootstrap
elif docker buildx inspect "${BUILDER_NAME}" >/dev/null 2>&1; then
# Existing builder available
echo "Using existing builder: ${BUILDER_NAME}"
docker buildx use "${BUILDER_NAME}"
docker buildx inspect --bootstrap
else
# No local buildkitd, no existing builder - create new docker-container builder
echo "No local buildkitd found, using docker-container driver"
docker buildx create --name "${BUILDER_NAME}" --driver docker-container --use
docker buildx inspect --bootstrap
fi
# builder info
echo "Active builder:"
docker buildx ls | grep -E '^\*|^NAME' || docker buildx ls
}
check_and_skip_if_image_exists() {
if [[ -n "${IMAGE_TAG:-}" ]]; then
echo "--- :mag: Checking if image exists"
if docker manifest inspect "${IMAGE_TAG}" >/dev/null 2>&1; then
echo "Image already exists: ${IMAGE_TAG}"
echo "Skipping build"
exit 0
fi
echo "Image not found, proceeding with build"
fi
}
ecr_login() {
aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin "$REGISTRY"
aws ecr get-login-password --region us-east-1 | docker login --username AWS --password-stdin 936637512419.dkr.ecr.us-east-1.amazonaws.com
}
prepare_cache_tags() {
# resolve and set: CACHE_TO, CACHE_FROM, CACHE_FROM_BASE_BRANCH, CACHE_FROM_MAIN
TEST_CACHE_ECR="936637512419.dkr.ecr.us-east-1.amazonaws.com/vllm-ci-test-cache"
MAIN_CACHE_ECR="936637512419.dkr.ecr.us-east-1.amazonaws.com/vllm-ci-postmerge-cache"
if [[ "$BUILDKITE_PULL_REQUEST" == "false" ]]; then
if [[ "$BUILDKITE_BRANCH" == "main" ]]; then
cache="${MAIN_CACHE_ECR}:latest"
else
clean_branch=$(clean_docker_tag "$BUILDKITE_BRANCH")
cache="${TEST_CACHE_ECR}:${clean_branch}"
fi
CACHE_TO="$cache"
CACHE_FROM="$cache"
CACHE_FROM_BASE_BRANCH="$cache"
else
CACHE_TO="${TEST_CACHE_ECR}:pr-${BUILDKITE_PULL_REQUEST}"
CACHE_FROM="${TEST_CACHE_ECR}:pr-${BUILDKITE_PULL_REQUEST}"
if [[ "$BUILDKITE_PULL_REQUEST_BASE_BRANCH" == "main" ]]; then
CACHE_FROM_BASE_BRANCH="${MAIN_CACHE_ECR}:latest"
else
clean_base=$(clean_docker_tag "$BUILDKITE_PULL_REQUEST_BASE_BRANCH")
CACHE_FROM_BASE_BRANCH="${TEST_CACHE_ECR}:${clean_base}"
fi
fi
CACHE_FROM_MAIN="${MAIN_CACHE_ECR}:latest"
export CACHE_TO CACHE_FROM CACHE_FROM_BASE_BRANCH CACHE_FROM_MAIN
}
resolve_parent_commit() {
if [[ -z "${PARENT_COMMIT:-}" ]]; then
PARENT_COMMIT=$(git rev-parse HEAD~1 2>/dev/null || echo "")
if [[ -n "${PARENT_COMMIT}" ]]; then
echo "Computed parent commit for cache fallback: ${PARENT_COMMIT}"
export PARENT_COMMIT
else
echo "Could not determine parent commit (may be first commit in repo)"
fi
else
echo "Using provided PARENT_COMMIT: ${PARENT_COMMIT}"
fi
}
print_bake_config() {
echo "--- :page_facing_up: Resolved bake configuration"
# Write to a temp directory to avoid polluting the repo root (which is the
# Docker build context). Files left in the repo root get COPY'd into the
# image and can cause duplicate artifact uploads from downstream steps.
local bake_tmp
bake_tmp="$(mktemp -d)"
BAKE_CONFIG_FILE="${bake_tmp}/bake-config-build-${BUILDKITE_BUILD_NUMBER:-local}.json"
docker buildx bake -f "${VLLM_BAKE_FILE_PATH}" -f "${CI_HCL_PATH}" --print "${TARGET}" | tee "${BAKE_CONFIG_FILE}" || true
echo "Saved bake config to ${BAKE_CONFIG_FILE}"
echo "--- :arrow_down: Uploading bake config to Buildkite"
(cd "$(dirname "${BAKE_CONFIG_FILE}")" && buildkite-agent artifact upload "$(basename "${BAKE_CONFIG_FILE}")")
}
#################################
# Main Script #
#################################
print_instance_info
if [[ $# -lt 5 ]]; then
print_usage_and_exit
if [[ $# -lt 8 ]]; then
echo "Usage: $0 <registry> <repo> <commit> <branch> <vllm_use_precompiled> <vllm_merge_base_commit> <cache_from> <cache_to>"
exit 1
fi
# input args
REGISTRY=$1
REPO=$2
BUILDKITE_COMMIT=$3
BRANCH=$4
IMAGE_TAG=$5
IMAGE_TAG_LATEST=${6:-} # only used for main branch, optional
VLLM_USE_PRECOMPILED=$5
VLLM_MERGE_BASE_COMMIT=$6
CACHE_FROM=$7
CACHE_TO=$8
# build config
TARGET="test-ci"
VLLM_BAKE_FILE_PATH="${VLLM_BAKE_FILE_PATH:-docker/docker-bake.hcl}"
BUILDER_NAME="${BUILDER_NAME:-vllm-builder}"
CI_HCL_URL="${CI_HCL_URL:-https://raw.githubusercontent.com/vllm-project/ci-infra/main/docker/ci.hcl}"
CI_HCL_PATH="/tmp/ci.hcl"
BUILDKIT_SOCKET="/run/buildkit/buildkitd.sock"
# authenticate with AWS ECR
aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin $REGISTRY
aws ecr get-login-password --region us-east-1 | docker login --username AWS --password-stdin 936637512419.dkr.ecr.us-east-1.amazonaws.com
prepare_cache_tags
ecr_login
# docker buildx
docker buildx create --name vllm-builder --driver docker-container --use
docker buildx inspect --bootstrap
docker buildx ls
# Environment info (for docs and human readers)
# VLLM_CI_BRANCH - ci-infra branch to use (default: main)
# VLLM_BAKE_FILE_PATH - Path to vLLM's bake file (default: docker/docker-bake.hcl)
# BUILDER_NAME - Name for buildx builder (default: vllm-builder)
#
# Build configuration (exported as environment variables for bake):
export BUILDKITE_COMMIT
export PARENT_COMMIT
export IMAGE_TAG
export IMAGE_TAG_LATEST
export CACHE_FROM
export CACHE_FROM_BASE_BRANCH
export CACHE_FROM_MAIN
export CACHE_TO
# print args
echo "--- :mag: Arguments"
echo "REGISTRY: ${REGISTRY}"
echo "REPO: ${REPO}"
echo "BUILDKITE_COMMIT: ${BUILDKITE_COMMIT}"
echo "BRANCH: ${BRANCH}"
echo "IMAGE_TAG: ${IMAGE_TAG}"
echo "IMAGE_TAG_LATEST: ${IMAGE_TAG_LATEST}"
# print build configuration
echo "--- :mag: Build configuration"
echo "TARGET: ${TARGET}"
echo "vLLM bake file: ${VLLM_BAKE_FILE_PATH}"
echo "BUILDER_NAME: ${BUILDER_NAME}"
echo "CI_HCL_URL: ${CI_HCL_URL}"
echo "BUILDKIT_SOCKET: ${BUILDKIT_SOCKET}"
echo "--- :mag: Cache tags"
echo "CACHE_TO: ${CACHE_TO}"
echo "CACHE_FROM: ${CACHE_FROM}"
echo "CACHE_FROM_BASE_BRANCH: ${CACHE_FROM_BASE_BRANCH}"
echo "CACHE_FROM_MAIN: ${CACHE_FROM_MAIN}"
check_and_skip_if_image_exists
echo "--- :docker: Setting up Docker buildx bake"
echo "Target: ${TARGET}"
echo "vLLM bake file: ${VLLM_BAKE_FILE_PATH}"
echo "CI HCL path: ${CI_HCL_PATH}"
if [[ ! -f "${VLLM_BAKE_FILE_PATH}" ]]; then
echo "Error: vLLM bake file not found at ${VLLM_BAKE_FILE_PATH}"
echo "Make sure you're running from the vLLM repository root"
exit 1
# skip build if image already exists
if [[ -z $(docker manifest inspect $REGISTRY/$REPO:$BUILDKITE_COMMIT) ]]; then
echo "Image not found, proceeding with build..."
else
echo "Image found"
exit 0
fi
echo "--- :arrow_down: Downloading ci.hcl"
curl -sSfL -o "${CI_HCL_PATH}" "${CI_HCL_URL}"
echo "Downloaded to ${CI_HCL_PATH}"
if [[ ! -f "${CI_HCL_PATH}" ]]; then
echo "Error: ci.hcl not found at ${CI_HCL_PATH}"
exit 1
if [[ "${VLLM_USE_PRECOMPILED:-0}" == "1" ]]; then
merge_base_commit_build_args="--build-arg VLLM_MERGE_BASE_COMMIT=${VLLM_MERGE_BASE_COMMIT}"
else
merge_base_commit_build_args=""
fi
setup_buildx_builder
resolve_parent_commit
export PARENT_COMMIT
print_bake_config
echo "--- :docker: Building ${TARGET}"
docker --debug buildx bake -f "${VLLM_BAKE_FILE_PATH}" -f "${CI_HCL_PATH}" --progress plain "${TARGET}"
echo "--- :white_check_mark: Build complete"
# build
docker buildx build --file docker/Dockerfile \
--build-arg max_jobs=16 \
--build-arg buildkite_commit=$BUILDKITE_COMMIT \
--build-arg USE_SCCACHE=1 \
--build-arg TORCH_CUDA_ARCH_LIST="8.0 8.9 9.0 10.0" \
--build-arg FI_TORCH_CUDA_ARCH_LIST="8.0 8.9 9.0a 10.0a" \
--build-arg VLLM_USE_PRECOMPILED="${VLLM_USE_PRECOMPILED:-0}" \
${merge_base_commit_build_args} \
--cache-from type=registry,ref=${CACHE_FROM},mode=max \
--cache-to type=registry,ref=${CACHE_TO},mode=max \
--tag ${REGISTRY}/${REPO}:${BUILDKITE_COMMIT} \
$( [[ "${BRANCH}" == "main" ]] && echo "--tag ${REGISTRY}/${REPO}:latest" ) \
--push \
--target test \
--progress plain .

View File

@@ -3,9 +3,8 @@ steps:
- label: ":docker: Build image"
key: image-build
depends_on: []
timeout_in_minutes: 600
commands:
- if [[ "$BUILDKITE_BRANCH" == "main" ]]; then .buildkite/image_build/image_build.sh $REGISTRY $REPO $BUILDKITE_COMMIT $BRANCH $IMAGE_TAG $IMAGE_TAG_LATEST; else .buildkite/image_build/image_build.sh $REGISTRY $REPO $BUILDKITE_COMMIT $BRANCH $IMAGE_TAG; fi
- .buildkite/image_build/image_build.sh $REGISTRY $REPO $BUILDKITE_COMMIT $BRANCH $VLLM_USE_PRECOMPILED $VLLM_MERGE_BASE_COMMIT $CACHE_FROM $CACHE_TO
retry:
automatic:
- exit_status: -1 # Agent was lost
@@ -41,7 +40,7 @@ steps:
limit: 2
- exit_status: -10 # Agent was lost
limit: 2
- label: ":docker: Build CPU arm64 image"
key: cpu-arm64-image-build
depends_on: []

View File

@@ -11,10 +11,10 @@ REPO=$2
BUILDKITE_COMMIT=$3
# authenticate with AWS ECR
aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin "$REGISTRY"
aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin $REGISTRY
# skip build if image already exists
if [[ -z $(docker manifest inspect "$REGISTRY"/"$REPO":"$BUILDKITE_COMMIT"-cpu) ]]; then
if [[ -z $(docker manifest inspect $REGISTRY/$REPO:$BUILDKITE_COMMIT-cpu) ]]; then
echo "Image not found, proceeding with build..."
else
echo "Image found"
@@ -24,13 +24,13 @@ fi
# build
docker build --file docker/Dockerfile.cpu \
--build-arg max_jobs=16 \
--build-arg buildkite_commit="$BUILDKITE_COMMIT" \
--build-arg buildkite_commit=$BUILDKITE_COMMIT \
--build-arg VLLM_CPU_AVX512BF16=true \
--build-arg VLLM_CPU_AVX512VNNI=true \
--build-arg VLLM_CPU_AMXBF16=true \
--tag "$REGISTRY"/"$REPO":"$BUILDKITE_COMMIT"-cpu \
--tag $REGISTRY/$REPO:$BUILDKITE_COMMIT-cpu \
--target vllm-test \
--progress plain .
# push
docker push "$REGISTRY"/"$REPO":"$BUILDKITE_COMMIT"-cpu
docker push $REGISTRY/$REPO:$BUILDKITE_COMMIT-cpu

View File

@@ -11,10 +11,10 @@ REPO=$2
BUILDKITE_COMMIT=$3
# authenticate with AWS ECR
aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin "$REGISTRY"
aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin $REGISTRY
# skip build if image already exists
if [[ -z $(docker manifest inspect "$REGISTRY"/"$REPO":"$BUILDKITE_COMMIT"-arm64-cpu) ]]; then
if [[ -z $(docker manifest inspect $REGISTRY/$REPO:$BUILDKITE_COMMIT-cpu) ]]; then
echo "Image not found, proceeding with build..."
else
echo "Image found"
@@ -24,10 +24,10 @@ fi
# build
docker build --file docker/Dockerfile.cpu \
--build-arg max_jobs=16 \
--build-arg buildkite_commit="$BUILDKITE_COMMIT" \
--tag "$REGISTRY"/"$REPO":"$BUILDKITE_COMMIT"-arm64-cpu \
--build-arg buildkite_commit=$BUILDKITE_COMMIT \
--tag $REGISTRY/$REPO:$BUILDKITE_COMMIT-cpu \
--target vllm-test \
--progress plain .
# push
docker push "$REGISTRY"/"$REPO":"$BUILDKITE_COMMIT"-arm64-cpu
docker push $REGISTRY/$REPO:$BUILDKITE_COMMIT-cpu

View File

@@ -11,10 +11,10 @@ REPO=$2
BUILDKITE_COMMIT=$3
# authenticate with AWS ECR
aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin "$REGISTRY"
aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin $REGISTRY
# skip build if image already exists
if [[ -z $(docker manifest inspect "$REGISTRY"/"$REPO":"$BUILDKITE_COMMIT"-hpu) ]]; then
if [[ -z $(docker manifest inspect $REGISTRY/$REPO:$BUILDKITE_COMMIT-hpu) ]]; then
echo "Image not found, proceeding with build..."
else
echo "Image found"
@@ -25,10 +25,10 @@ fi
docker build \
--file tests/pytorch_ci_hud_benchmark/Dockerfile.hpu \
--build-arg max_jobs=16 \
--build-arg buildkite_commit="$BUILDKITE_COMMIT" \
--tag "$REGISTRY"/"$REPO":"$BUILDKITE_COMMIT"-hpu \
--build-arg buildkite_commit=$BUILDKITE_COMMIT \
--tag $REGISTRY/$REPO:$BUILDKITE_COMMIT-hpu \
--progress plain \
https://github.com/vllm-project/vllm-gaudi.git
# push
docker push "$REGISTRY"/"$REPO":"$BUILDKITE_COMMIT"-hpu
docker push $REGISTRY/$REPO:$BUILDKITE_COMMIT-hpu

View File

@@ -1,15 +0,0 @@
model_name: "nvidia/NVIDIA-Nemotron-3-Nano-30B-A3B-BF16"
tasks:
- name: "gsm8k"
metrics:
- name: "exact_match,strict-match"
value: 0.695
- name: "exact_match,flexible-extract"
value: 0.447
limit: 1319
num_fewshot: 5
max_model_len: 262144
enforce_eager: false
apply_chat_template: true
fewshot_as_multiturn: true
trust_remote_code: true

View File

@@ -1,19 +0,0 @@
model_name: "nvidia/NVIDIA-Nemotron-3-Nano-30B-A3B-FP8"
tasks:
- name: "gsm8k"
metrics:
- name: "exact_match,strict-match"
value: 0.7142
- name: "exact_match,flexible-extract"
value: 0.4579
env_vars:
VLLM_USE_FLASHINFER_MOE_FP8: "1"
VLLM_FLASHINFER_MOE_BACKEND: "throughput"
limit: 1319
num_fewshot: 5
max_model_len: 262144
kv_cache_dtype: fp8
enforce_eager: false
apply_chat_template: true
fewshot_as_multiturn: true
trust_remote_code: true

View File

@@ -1,2 +1 @@
Qwen3-235B-A22B-Instruct-2507-FP8.yaml
NVIDIA-Nemotron-3-Nano-30B-A3B-FP8.yaml

View File

@@ -3,4 +3,3 @@ Meta-Llama-3-70B-Instruct.yaml
Mixtral-8x7B-Instruct-v0.1.yaml
Qwen2-57B-A14-Instruct.yaml
DeepSeek-V2-Lite-Chat.yaml
NVIDIA-Nemotron-3-Nano-30B-A3B-BF16.yaml

View File

@@ -1,5 +0,0 @@
Qwen2.5-1.5B-Instruct.yaml
Meta-Llama-3.2-1B-Instruct-INT8-compressed-tensors.yaml
Meta-Llama-3-8B-Instruct-nonuniform-compressed-tensors.yaml
Qwen2.5-VL-3B-Instruct-FP8-dynamic.yaml
Qwen1.5-MoE-W4A16-compressed-tensors.yaml

View File

@@ -2,7 +2,7 @@
# We can use this script to compute baseline accuracy on chartqa for vllm.
#
# Make sure you have lm-eval-harness installed:
# pip install "lm-eval[api]>=0.4.11"
# pip install "lm-eval[api]>=0.4.9.2"
usage() {
echo``
@@ -41,4 +41,4 @@ lm_eval --model vllm-vlm \
--tasks chartqa \
--batch_size auto \
--apply_chat_template \
--limit "$LIMIT"
--limit $LIMIT

View File

@@ -2,7 +2,7 @@
# We can use this script to compute baseline accuracy on GSM for transformers.
#
# Make sure you have lm-eval-harness installed:
# pip install "lm-eval[api]>=0.4.11"
# pip install "lm-eval[api]>=0.4.9.2"
usage() {
echo``

View File

@@ -3,7 +3,7 @@
# We use this for fp8, which HF does not support.
#
# Make sure you have lm-eval-harness installed:
# pip install "lm-eval[api]>=0.4.11"
# pip install "lm-eval[api]>=0.4.9.2"
usage() {
echo``

View File

@@ -3,7 +3,7 @@
# We use this for fp8, which HF does not support.
#
# Make sure you have lm-eval-harness installed:
# pip install "lm-eval[api]>=0.4.11"
# pip install "lm-eval[api]>=0.4.9.2"
usage() {
echo``
@@ -20,11 +20,14 @@ usage() {
echo
}
while getopts "m:l:f:t:" OPT; do
while getopts "m:b:l:f:t:" OPT; do
case ${OPT} in
m )
MODEL="$OPTARG"
;;
b )
BATCH_SIZE="$OPTARG"
;;
l )
LIMIT="$OPTARG"
;;

View File

@@ -9,10 +9,8 @@ import json
import os
from dataclasses import dataclass
from importlib import util
from pathlib import Path
import pandas as pd
import regex as re
pd.options.display.float_format = "{:.2f}".format
plotly_found = util.find_spec("plotly.express") is not None
@@ -277,131 +275,6 @@ def _apply_two_decimals(
return styler.format({c: "{:.2f}" for c in num_cols}, na_rep="")
# -----------------------------
# Export helpers (Excel + CSV)
# -----------------------------
def _sanitize_sheet_name(name: str) -> str:
"""
Excel sheet constraints:
- max 31 chars
- cannot contain: : \ / ? * [ ]
- cannot be empty
"""
name = "sheet" if name is None else str(name)
name = re.sub(r"[:\\/?*\[\]]", "_", name)
name = name.strip().strip("'")
name = re.sub(r"\s+", " ", name)
if not name:
name = "sheet"
return name[:31]
def _group_to_sheet_base(group_cols: list[str], gkey_tuple) -> str:
d = dict(zip(group_cols, gkey_tuple))
model = d.get("Model", "model")
model_short = str(model).split("/")[-1]
ilen = d.get("Input Len", "")
olen = d.get("Output Len", "")
lens = f"_{ilen}x{olen}" if ilen != "" and olen != "" else ""
return _sanitize_sheet_name(f"{model_short}{lens}")
def _write_tables_to_excel_sheet(
writer: pd.ExcelWriter, sheet: str, blocks: list[tuple[str, pd.DataFrame]]
):
startrow = 0
for title, df in blocks:
pd.DataFrame([[title]]).to_excel(
writer, sheet_name=sheet, index=False, header=False, startrow=startrow
)
startrow += 1
df.to_excel(writer, sheet_name=sheet, index=False, startrow=startrow)
startrow += len(df) + 3
def _safe_filename(s: str) -> str:
s = re.sub(r"[^\w\-.]+", "_", str(s).strip())
return s[:180] if len(s) > 180 else s
# -----------------------------
# vLLM environment export helper
# -----------------------------
def _parse_vllm_env_txt(env_path: Path) -> pd.DataFrame:
"""Parse vllm_env.txt into a flat table (Section, Key, Value).
Supports:
- section headers as standalone lines (no ':' or '=')
- key-value lines like 'OS: Ubuntu ...'
- env var lines like 'HF_HOME=/data/hf'
"""
lines = env_path.read_text(encoding="utf-8", errors="replace").splitlines()
section = "General"
rows: list[dict] = []
def set_section(s: str):
nonlocal section
s = (s or "").strip()
if s:
section = s
for raw in lines:
stripped = raw.strip()
if not stripped:
continue
# divider lines like =====
if set(stripped) <= {"="}:
continue
# section header heuristic: short standalone line
if ":" not in stripped and "=" not in stripped and len(stripped) <= 64:
if stripped.lower().startswith("collecting environment information"):
continue
set_section(stripped)
continue
# env var style: KEY=VALUE (and not a URL with :)
if "=" in stripped and ":" not in stripped:
k, v = stripped.split("=", 1)
k = k.strip()
v = v.strip()
if k:
rows.append({"Section": section, "Key": k, "Value": v})
continue
# key: value
if ":" in stripped:
k, v = stripped.split(":", 1)
k = k.strip()
v = v.strip()
if k:
rows.append({"Section": section, "Key": k, "Value": v})
continue
return pd.DataFrame(rows, columns=["Section", "Key", "Value"])
def _load_env_df_for_inputs(args, files: list[str]) -> pd.DataFrame | None:
"""Load vllm_env.txt next to the *original* input JSON file.
Note: when only one -f is provided, the script may split JSON into ./splits/...,
but vllm_env.txt typically lives next to the original benchmark_results.json.
"""
base_dir: Path | None = None
if getattr(args, "file", None):
base_dir = Path(args.file[0]).resolve().parent
elif files:
base_dir = Path(files[0]).resolve().parent
if base_dir is None:
return None
env_path = base_dir / "vllm_env.txt"
if not env_path.exists():
return None
df = _parse_vllm_env_txt(env_path)
return df
# -----------------------------
# Valid max concurrency summary helpers
# -----------------------------
@@ -555,6 +428,7 @@ def build_valid_max_concurrency_summary_html(
summary_df = pd.DataFrame(rows)
# --- Coerce numeric columns so Styler doesn't miss them due to object dtype ---
for c in summary_df.columns:
if c == "Configuration":
continue
@@ -562,10 +436,12 @@ def build_valid_max_concurrency_summary_html(
both_col = f"Max {conc_col} (Both)"
# --- Strict 2-decimal formatting for ALL non-Configuration columns ---
formatters = {}
for c in summary_df.columns:
if c == "Configuration":
continue
# default argument binds per-column formatter correctly
formatters[c] = lambda v: "" if pd.isna(v) else f"{float(v):.2f}"
styler = summary_df.style.format(formatters)
@@ -584,95 +460,6 @@ def build_valid_max_concurrency_summary_html(
return title + styler.to_html(table_attributes='border="1" class="dataframe"')
def build_valid_max_concurrency_summary_df(
tput_group_df: pd.DataFrame | None,
ttft_group_df: pd.DataFrame | None,
tpot_group_df: pd.DataFrame | None,
conc_col: str,
args,
) -> pd.DataFrame | None:
if ttft_group_df is None and tpot_group_df is None:
return None
ttft_cols = (
_config_value_columns(ttft_group_df, conc_col)
if ttft_group_df is not None
else []
)
tpot_cols = (
_config_value_columns(tpot_group_df, conc_col)
if tpot_group_df is not None
else []
)
tput_cols = (
_config_value_columns(tput_group_df, conc_col)
if tput_group_df is not None
else []
)
if ttft_group_df is not None and tpot_group_df is not None:
cfg_cols = [c for c in ttft_cols if c in tpot_cols]
if tput_group_df is not None:
cfg_cols = [c for c in cfg_cols if c in tput_cols] or cfg_cols
else:
cfg_cols = ttft_cols or tpot_cols
if not cfg_cols:
cfg_cols = sorted(set(ttft_cols) | set(tpot_cols) | set(tput_cols), key=str)
rows = []
for cfg in cfg_cols:
ttft_max = (
_max_concurrency_ok(ttft_group_df, conc_col, cfg, args.ttft_max_ms)
if ttft_group_df is not None
else pd.NA
)
tpot_max = (
_max_concurrency_ok(tpot_group_df, conc_col, cfg, args.tpot_max_ms)
if tpot_group_df is not None
else pd.NA
)
both = (
pd.NA
if (pd.isna(ttft_max) or pd.isna(tpot_max))
else min(ttft_max, tpot_max)
)
tput_at_both = (
_value_at_concurrency(tput_group_df, conc_col, cfg, both)
if tput_group_df is not None
else pd.NA
)
ttft_at_both = (
_value_at_concurrency(ttft_group_df, conc_col, cfg, both)
if ttft_group_df is not None
else pd.NA
)
tpot_at_both = (
_value_at_concurrency(tpot_group_df, conc_col, cfg, both)
if tpot_group_df is not None
else pd.NA
)
rows.append(
{
"Configuration": cfg,
f"Max {conc_col} (TTFT ≤ {args.ttft_max_ms:g} ms)": ttft_max,
f"Max {conc_col} (TPOT ≤ {args.tpot_max_ms:g} ms)": tpot_max,
f"Max {conc_col} (Both)": both,
"Output Tput @ Both (tok/s)": tput_at_both,
"TTFT @ Both (ms)": ttft_at_both,
"TPOT @ Both (ms)": tpot_at_both,
}
)
df = pd.DataFrame(rows)
for c in df.columns:
if c != "Configuration":
df[c] = pd.to_numeric(df[c], errors="coerce")
return df
# -----------------------------
# Plot helper
# -----------------------------
@@ -750,21 +537,6 @@ def build_parser() -> argparse.ArgumentParser:
default=100.0,
help="Reference limit for TPOT plots (ms)",
)
# ---- NEW: export options ----
parser.add_argument(
"--excel-out",
type=str,
default="perf_comparison.xlsx",
help="Write one sheet per (Model, Dataset, Input Len, Output Len).",
)
parser.add_argument(
"--csv-out-dir",
type=str,
default="",
help="If set, write per-group per-metric CSVs into this directory.",
)
return parser
@@ -885,6 +657,7 @@ def maybe_write_plot(
markers=True,
)
# Ensure plot hover + y tick labels are also 2 decimals.
fig.update_traces(hovertemplate="%{y:.2f}<extra></extra>")
fig.update_yaxes(tickformat=".2f")
@@ -957,151 +730,87 @@ def write_report_group_first(
for metric_label, (df, _) in metric_cache.items()
}
csv_dir = Path(args.csv_out_dir) if args.csv_out_dir else None
if csv_dir:
csv_dir.mkdir(parents=True, exist_ok=True)
with open("perf_comparison.html", "w", encoding="utf-8") as main_fh:
main_fh.write('<meta charset="utf-8">\n')
for gkey in group_keys:
gkey_tuple = normalize_group_key(gkey)
suffix = build_group_suffix(group_cols_canonical, gkey_tuple)
sub_path = group_filename(gkey_tuple)
group_header = (
'<div style="font-size: 1.4em; font-weight: 700; '
'margin: 18px 0 10px 0;">'
f"{_html.escape(suffix)}"
"</div>\n"
)
excel_path = args.excel_out or "perf_comparison.xlsx"
with pd.ExcelWriter(excel_path, engine="openpyxl") as xw:
# ---- Environment sheet (first) ----
env_sheet = _sanitize_sheet_name("Environment")
env_df = _load_env_df_for_inputs(args, files)
if env_df is None or env_df.empty:
pd.DataFrame(
[
{
"Section": "Environment",
"Key": "vllm_env.txt",
"Value": "NOT FOUND (or empty)",
}
]
).to_excel(xw, sheet_name=env_sheet, index=False)
else:
env_df.to_excel(xw, sheet_name=env_sheet, index=False)
with open("perf_comparison.html", "w", encoding="utf-8") as main_fh:
main_fh.write('<meta charset="utf-8">\n')
for gkey in group_keys:
gkey_tuple = normalize_group_key(gkey)
suffix = build_group_suffix(group_cols_canonical, gkey_tuple)
sub_path = group_filename(gkey_tuple)
group_header = (
'<div style="font-size: 1.4em; font-weight: 700; '
'margin: 18px 0 10px 0;">'
f"{_html.escape(suffix)}"
"</div>\n"
main_fh.write(group_header)
with open(sub_path, "w", encoding="utf-8") as sub_fh:
sub_fh.write('<meta charset="utf-8">\n')
sub_fh.write(group_header)
tput_group_df = None
ttft_group_df = None
tpot_group_df = None
conc_col = args.xaxis
for metric_label in plan.data_cols:
gb = metric_groupbys[metric_label]
df_sorted, raw_data_cols = metric_cache[metric_label]
try:
group_df = gb.get_group(gkey)
except KeyError:
missing = (
'<div style="font-size: 1.1em; font-weight: 600; '
'margin: 10px 0;">'
f"{_html.escape(metric_label)} — missing for this group"
"</div>\n"
)
main_fh.write(missing)
sub_fh.write(missing)
continue
if conc_col not in group_df.columns:
conc_col = _find_concurrency_col(group_df)
mn = metric_label.lower().strip()
if "tok/s" in mn:
tput_group_df = group_df
elif "ttft" in mn:
ttft_group_df = group_df
elif mn in ("p99", "median") or "tpot" in mn:
tpot_group_df = group_df
display_group = group_df.drop(
columns=group_cols_canonical, errors="ignore"
)
html = render_metric_table_html(
display_group, metric_label, suffix, args
)
main_fh.write(html)
sub_fh.write(html)
maybe_write_plot(
main_fh,
sub_fh,
group_df=group_df,
raw_data_cols=raw_data_cols,
metric_label=metric_label,
y_axis_col=y_axis_col,
args=args,
)
summary_html = build_valid_max_concurrency_summary_html(
tput_group_df=tput_group_df,
ttft_group_df=ttft_group_df,
tpot_group_df=tpot_group_df,
conc_col=conc_col,
args=args,
)
main_fh.write(group_header)
sheet = _group_to_sheet_base(group_cols_canonical, gkey_tuple)
sheet_base = sheet
dedup_i = 1
while sheet in xw.sheets:
dedup_i += 1
sheet = _sanitize_sheet_name(f"{sheet_base}_{dedup_i}")
excel_blocks: list[tuple[str, pd.DataFrame]] = []
with open(sub_path, "w", encoding="utf-8") as sub_fh:
sub_fh.write('<meta charset="utf-8">\n')
sub_fh.write(group_header)
tput_group_df = None
ttft_group_df = None
tpot_group_df = None
conc_col = args.xaxis
for metric_label in plan.data_cols:
gb = metric_groupbys[metric_label]
df_sorted, raw_data_cols = metric_cache[metric_label]
try:
group_df = gb.get_group(gkey)
except KeyError:
missing = (
'<div style="font-size: 1.1em; font-weight: 600; '
'margin: 10px 0;">'
f"{_html.escape(metric_label)} — missing for this group"
"</div>\n"
)
main_fh.write(missing)
sub_fh.write(missing)
continue
if conc_col not in group_df.columns:
conc_col = _find_concurrency_col(group_df)
mn = metric_label.lower().strip()
if "tok/s" in mn:
tput_group_df = group_df
elif "ttft" in mn:
ttft_group_df = group_df
elif mn in ("p99", "median") or "tpot" in mn:
tpot_group_df = group_df
display_group = group_df.drop(
columns=group_cols_canonical, errors="ignore"
)
html = render_metric_table_html(
display_group, metric_label, suffix, args
)
main_fh.write(html)
sub_fh.write(html)
maybe_write_plot(
main_fh,
sub_fh,
group_df=group_df,
raw_data_cols=raw_data_cols,
metric_label=metric_label,
y_axis_col=y_axis_col,
args=args,
)
excel_blocks.append(
(metric_label, display_group.reset_index(drop=True))
)
if csv_dir:
fn = _safe_filename(
f"{sheet}__{metric_label}".replace(" ", "_").replace(
"/", "_"
)
)
display_group.to_csv(csv_dir / f"{fn}.csv", index=False)
summary_html = build_valid_max_concurrency_summary_html(
tput_group_df=tput_group_df,
ttft_group_df=ttft_group_df,
tpot_group_df=tpot_group_df,
conc_col=conc_col,
args=args,
)
if summary_html:
main_fh.write(summary_html)
sub_fh.write(summary_html)
summary_df = build_valid_max_concurrency_summary_df(
tput_group_df=tput_group_df,
ttft_group_df=ttft_group_df,
tpot_group_df=tpot_group_df,
conc_col=conc_col,
args=args,
)
if summary_df is not None:
excel_blocks.append(
("Valid Max Concurrency Summary", summary_df)
)
if csv_dir:
fn = _safe_filename(
f"{sheet}__Valid_Max_Concurrency_Summary"
)
summary_df.to_csv(csv_dir / f"{fn}.csv", index=False)
_write_tables_to_excel_sheet(xw, sheet, excel_blocks)
print(f"Wrote Excel: {excel_path}")
if csv_dir:
print(f"Wrote CSVs under: {csv_dir}")
if summary_html:
main_fh.write(summary_html)
sub_fh.write(summary_html)
def main():

View File

@@ -393,7 +393,7 @@ if __name__ == "__main__":
with open(results_folder / md_file, "w") as f:
results = read_markdown(
"../.buildkite/performance-benchmarks/"
"performance-benchmarks-descriptions.md"
+ "performance-benchmarks-descriptions.md"
)
results = results.format(
latency_tests_markdown_table=latency_md_table,

View File

@@ -1,4 +1,6 @@
#!/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/
@@ -7,19 +9,14 @@
set -x
set -o pipefail
# Environment-driven debug controls (like ON_CPU=1)
DRY_RUN="${DRY_RUN:-0}"
MODEL_FILTER="${MODEL_FILTER:-}"
DTYPE_FILTER="${DTYPE_FILTER:-}"
check_gpus() {
if command -v nvidia-smi; then
# check the number of GPUs and GPU type.
declare -g gpu_count=$(nvidia-smi --list-gpus | grep -c . || true)
declare -g gpu_count=$(nvidia-smi --list-gpus | wc -l)
elif command -v amd-smi; then
declare -g gpu_count=$(amd-smi list | grep -c 'GPU' || true)
declare -g gpu_count=$(amd-smi list | grep 'GPU' | wc -l)
elif command -v hl-smi; then
declare -g gpu_count=$(hl-smi --list | grep -ci "Module ID" || true)
declare -g gpu_count=$(hl-smi --list | grep -i "Module ID" | wc -l)
fi
if [[ $gpu_count -gt 0 ]]; then
@@ -28,9 +25,9 @@ check_gpus() {
echo "Need at least 1 GPU to run benchmarking."
exit 1
fi
declare -g arch_suffix=''
if command -v nvidia-smi; then
declare -g gpu_type=$(nvidia-smi --query-gpu=name --format=csv,noheader | awk '{print $2}')
elif command -v amd-smi; then
@@ -47,7 +44,7 @@ check_cpus() {
declare -g numa_count=$(lscpu | grep "NUMA node(s):" | awk '{print $3}')
if [[ $numa_count -gt 0 ]]; then
echo "NUMA found."
echo "$numa_count"
echo $numa_count
else
echo "Need at least 1 NUMA to run benchmarking."
exit 1
@@ -115,12 +112,13 @@ json2envs() {
}
wait_for_server() {
# wait for vllm server to start
# return 1 if vllm server crashes
local timeout_val="1200"
timeout "$timeout_val" bash -c '
until curl -sf http://localhost:8000/v1/models >/dev/null; do
until curl -X POST localhost:8000/v1/completions; do
sleep 1
done
'
done' && return 0 || return 1
}
kill_processes_launched_by_current_bash() {
@@ -183,20 +181,19 @@ upload_to_buildkite() {
$BUILDKITE_AGENT_COMMAND artifact upload "$RESULTS_FOLDER/*"
}
run_benchmark_tests() {
# run benchmark tests using `vllm bench <test_type>` command
# $1: test type (latency or throughput)
# $2: a json file specifying test cases
run_latency_tests() {
# run latency tests using `vllm bench latency` command
# $1: a json file specifying latency test cases
local test_type=$1
local test_file=$2
local latency_test_file
latency_test_file=$1
# Iterate over tests
jq -c '.[]' "$test_file" | while read -r params; do
# 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" =~ ^${test_type}_ ]]; then
echo "In ${test_type}-test.json, test_name must start with \"${test_type}_\"."
if [[ ! "$test_name" =~ ^latency_ ]]; then
echo "In latency-test.json, test_name must start with \"latency_\"."
exit 1
fi
@@ -207,15 +204,15 @@ run_benchmark_tests() {
fi
# get arguments
bench_params=$(echo "$params" | jq -r '.parameters')
bench_args=$(json2args "$bench_params")
bench_environment_variables=$(echo "$params" | jq -r '.environment_variables')
bench_envs=$(json2envs "$bench_environment_variables")
latency_params=$(echo "$params" | jq -r '.parameters')
latency_args=$(json2args "$latency_params")
latency_environment_variables=$(echo "$params" | jq -r '.environment_variables')
latency_envs=$(json2envs "$latency_environment_variables")
# check if there is enough GPU to run the test
tp=$(echo "$bench_params" | jq -r '.tensor_parallel_size')
tp=$(echo "$latency_params" | jq -r '.tensor_parallel_size')
if [[ "$ON_CPU" == "1" ]]; then
pp=$(echo "$bench_params" | jq -r '.pipeline_parallel_size // 1')
pp=$(echo "$latency_params" | jq -r '.pipeline_parallel_size // 1')
world_size=$(($tp*$pp))
if [[ $numa_count -lt $world_size && -z "${REMOTE_HOST}" ]]; then
echo "Required world-size $world_size but only $numa_count NUMA nodes found. Skip testcase $test_name."
@@ -228,42 +225,118 @@ run_benchmark_tests() {
fi
fi
bench_command=" $bench_envs vllm bench $test_type \
latency_command=" $latency_envs vllm bench latency \
--output-json $RESULTS_FOLDER/${test_name}.json \
$bench_args"
$latency_args"
echo "Running test case $test_name"
echo "${test_type^} command: $bench_command"
echo "Latency command: $latency_command"
# recording benchmarking command and GPU command
# recoding benchmarking command ang GPU command
jq_output=$(jq -n \
--arg command "$bench_command" \
--arg latency "$latency_command" \
--arg gpu "$gpu_type" \
--arg test_type "$test_type" \
'{
($test_type + "_command"): $command,
latency_command: $latency,
gpu_type: $gpu
}')
echo "$jq_output" >"$RESULTS_FOLDER/$test_name.commands"
# run the benchmark
eval "$bench_command"
eval "$latency_command"
kill_gpu_processes
done
}
run_latency_tests() { run_benchmark_tests "latency" "$1"; }
run_startup_tests() { run_benchmark_tests "startup" "$1"; }
run_throughput_tests() { run_benchmark_tests "throughput" "$1"; }
run_throughput_tests() {
# run throughput tests using `vllm bench throughput`
# $1: a json file specifying throughput test cases
merge_serving_tests_stream() {
# Emit merged serving test objects, optionally filtered by MODEL_FILTER/DTYPE_FILTER in DRY_RUN mode.
# This helper does NOT modify JSON; it only filters the stream in dry-run mode.
local serving_test_file="$1"
# shellcheck disable=SC2016
local merged='
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 "$throughput_params")
throughput_environment_variables=$(echo "$params" | jq -r '.environment_variables')
throughput_envs=$(json2envs "$throughput_environment_variables")
# check if there is enough GPU to run the test
tp=$(echo "$throughput_params" | jq -r '.tensor_parallel_size')
if [[ "$ON_CPU" == "1" ]]; then
pp=$(echo "$throughput_params" | jq -r '.pipeline_parallel_size // 1')
world_size=$(($tp*$pp))
if [[ $numa_count -lt $world_size && -z "${REMOTE_HOST}" ]]; then
echo "Required world-size $world_size but only $numa_count NUMA nodes found. Skip testcase $test_name."
continue
fi
else
if [[ $gpu_count -lt $tp ]]; then
echo "Required tensor-parallel-size $tp but only $gpu_count GPU found. Skip testcase $test_name."
continue
fi
fi
throughput_command=" $throughput_envs vllm bench throughput \
--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 `vllm bench serve` command
# $1: a json file specifying serving test cases
#
# Supported JSON formats:
# 1) Plain format: top-level array
# [ { "test_name": "...", "server_parameters": {...}, ... }, ... ]
#
# 2) Default parameters field + plain format tests
# {
# "defaults": { ... },
# "tests": [ { "test_name": "...", "server_parameters": {...}, ... }, ... ]
# }
local serving_test_file
serving_test_file=$1
# Iterate over serving tests
jq -c '
if type == "array" then
# Plain format: test cases array
.[]
@@ -285,50 +358,7 @@ merge_serving_tests_stream() {
else
error("Unsupported serving test file format: must be array or object with .tests")
end
'
jq -c "$merged" "$serving_test_file" | \
if [[ "${DRY_RUN:-0}" == "1" && ( "${MODEL_FILTER}${DTYPE_FILTER}" != "" ) ]]; then
jq -c --arg model "$MODEL_FILTER" --arg dtype "$DTYPE_FILTER" '
select((($model|length)==0)
or ((.server_parameters.model // "") == $model)
or ((.client_parameters.model // "") == $model))
| select((($dtype|length)==0) or ((.server_parameters.dtype // "") == $dtype))
'
else
cat
fi
}
run_serving_tests() {
# run serving tests using `vllm bench serve` command
# $1: a json file specifying serving test cases
#
# Supported JSON formats:
# 1) Plain format: top-level array
# [ { "test_name": "...", "server_parameters": {...}, ... }, ... ]
#
# 2) Default parameters field + plain format tests
# {
# "defaults": { ... },
# "tests": [ { "test_name": "...", "server_parameters": {...}, ... }, ... ]
# }
local serving_test_file
serving_test_file=$1
# In dry-run mode, if filters are provided but no tests match, fail fast.
if [[ "${DRY_RUN:-0}" == "1" && ( "${MODEL_FILTER}${DTYPE_FILTER}" != "" ) ]]; then
local count
count=$(merge_serving_tests_stream "$serving_test_file" | wc -l | tr -d ' ')
if [[ "$count" -eq 0 ]]; then
echo "No matching serving tests found in $serving_test_file for model='$MODEL_FILTER' dtype='$DTYPE_FILTER'." >&2
return 0
fi
fi
# Iterate over serving tests (merged + optional filtered stream)
merge_serving_tests_stream "$serving_test_file" | while read -r params; do
' "$serving_test_file" | while read -r params; do
# get the test name, and append the GPU type back to it.
test_name=$(echo "$params" | jq -r '.test_name')
if [[ ! "$test_name" =~ ^serving_ ]]; then
@@ -397,7 +427,7 @@ run_serving_tests() {
echo "Server command: $server_command"
# support remote vllm server
client_remote_args=""
if [[ -z "${REMOTE_HOST}" && "${DRY_RUN:-0}" != "1" ]]; then
if [[ -z "${REMOTE_HOST}" ]]; then
bash -c "$server_command" &
server_pid=$!
# wait until the server is alive
@@ -408,9 +438,6 @@ run_serving_tests() {
echo ""
echo "vLLM failed to start within the timeout period."
fi
elif [[ "${DRY_RUN:-0}" == "1" ]]; then
# dry-run: don't start server
echo "Dry Run."
else
server_command="Using Remote Server $REMOTE_HOST $REMOTE_PORT"
if [[ ${REMOTE_PORT} ]]; then
@@ -420,39 +447,34 @@ run_serving_tests() {
fi
fi
# save the compilation mode and optimization level on the serving results
# whenever they are set
compilation_config_mode=$(echo "$server_params" | jq -r '."compilation_config.mode" // empty')
optimization_level=$(echo "$server_params" | jq -r '.optimization_level // empty')
# 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
# iterate over different max_concurrency
for max_concurrency in $max_concurrency_list; do
new_test_name="${test_name}_qps_${qps}_concurrency_${max_concurrency}"
new_test_name=$test_name"_qps_"$qps"_concurrency_"$max_concurrency
echo " new test name $new_test_name"
# pass the tensor parallel size, the compilation mode, and the optimization
# level to the client so that they can be used on the benchmark dashboard
# pass the tensor parallel size to the client so that it can be displayed
# on the benchmark dashboard
client_command="vllm bench serve \
--save-result \
--result-dir $RESULTS_FOLDER \
--result-filename ${new_test_name}.json \
--request-rate $qps \
--max-concurrency $max_concurrency \
--metadata tensor_parallel_size=$tp compilation_config.mode=$compilation_config_mode optimization_level=$optimization_level \
--metadata "tensor_parallel_size=$tp" \
$client_args $client_remote_args "
echo "Running test case $test_name with qps $qps"
echo "Client command: $client_command"
if [[ "${DRY_RUN:-0}" != "1" ]]; then
bash -c "$client_command"
fi
bash -c "$client_command"
# record the benchmarking commands
jq_output=$(jq -n \
@@ -470,15 +492,12 @@ run_serving_tests() {
done
# clean up
if [[ "${DRY_RUN:-0}" != "1" ]]; then
kill -9 "$server_pid"
kill_gpu_processes
fi
kill -9 $server_pid
kill_gpu_processes
done
}
main() {
local ARCH
ARCH=''
if [[ "$ON_CPU" == "1" ]]; then
@@ -488,13 +507,7 @@ main() {
check_gpus
ARCH="$arch_suffix"
fi
# DRY_RUN does not execute vLLM; do not require HF_TOKEN.
if [[ "${DRY_RUN:-0}" != "1" ]]; then
check_hf_token
else
echo "DRY_RUN=1 -> skip HF_TOKEN validation"
fi
check_hf_token
# dependencies
(which wget && which curl) || (apt-get update && apt-get install -y wget curl)
@@ -515,18 +528,12 @@ main() {
# dump vllm info via vllm collect-env
env_output=$(vllm collect-env)
echo "$env_output" >"$RESULTS_FOLDER/vllm_env.txt"
# benchmarking
run_serving_tests $QUICK_BENCHMARK_ROOT/tests/"${SERVING_JSON:-serving-tests$ARCH.json}" || exit $?
if [[ "${DRY_RUN:-0}" == "1" ]]; then
echo "DRY_RUN=1 -> skip latency/startup/throughput suites"
exit 0
fi
run_serving_tests $QUICK_BENCHMARK_ROOT/tests/"${SERVING_JSON:-serving-tests$ARCH.json}"
run_latency_tests $QUICK_BENCHMARK_ROOT/tests/"${LATENCY_JSON:-latency-tests$ARCH.json}"
run_startup_tests $QUICK_BENCHMARK_ROOT/tests/"${STARTUP_JSON:-startup-tests$ARCH.json}"
run_throughput_tests $QUICK_BENCHMARK_ROOT/tests/"${THROUGHPUT_JSON:-throughput-tests$ARCH.json}"
# postprocess benchmarking results

View File

@@ -1,41 +0,0 @@
{
"defaults": {
"qps_list": [
"inf"
],
"max_concurrency_list": [
32,
64,
128
],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"dtype": "bfloat16",
"model": "jinaai/jina-embeddings-v3",
"trust_remote_code": ""
},
"client_parameters": {
"model": "jinaai/jina-embeddings-v3",
"backend": "openai-embeddings",
"endpoint": "/v1/embeddings",
"dataset_name": "sharegpt",
"dataset_path": "ShareGPT_V3_unfiltered_cleaned_split.json",
"num_prompts": 200
}
},
"tests": [
{
"test_name": "serving_jina_embed_v3_tp1_sharegpt",
"server_parameters": {
"tensor_parallel_size": 1
},
"client_parameters": {}
}
]
}

View File

@@ -1,283 +0,0 @@
{
"defaults": {
"qps_list": [
"inf"
],
"max_concurrency_list": [12, 16, 24, 32, 64, 128, 200],
"server_environment_variables": {
"VLLM_RPC_TIMEOUT": 100000,
"VLLM_ALLOW_LONG_MAX_MODEL_LEN": 1,
"VLLM_ENGINE_ITERATION_TIMEOUT_S": 120,
"VLLM_CPU_SGL_KERNEL": 1,
"VLLM_CPU_KVCACHE_SPACE": 40
},
"server_parameters": {
"model": "meta-llama/Llama-3.1-8B-Instruct",
"tensor_parallel_size": 1,
"dtype": "bfloat16",
"distributed_executor_backend": "mp",
"block_size": 128,
"trust_remote_code": "",
"disable_log_stats": "",
"max_num_batched_tokens": 2048,
"max_num_seqs": 256
},
"client_parameters": {
"model": "meta-llama/Llama-3.1-8B-Instruct",
"backend": "vllm",
"ignore-eos": "",
"num_prompts": 200
}
},
"tests": [
{
"test_name": "serving_llama8B_tp1_sharegpt",
"server_parameters": {
"tensor_parallel_size": 1
},
"client_parameters": {
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json"
}
},
{
"test_name": "serving_llama8B_tp2_sharegpt",
"server_parameters": {
"tensor_parallel_size": 2
},
"client_parameters": {
"dataset_name": "sharegpt",
"dataset_path": "./ShareGPT_V3_unfiltered_cleaned_split.json"
}
},
{
"test_name": "serving_llama8B_tp1_random_128_128",
"server_parameters": {
"tensor_parallel_size": 1
},
"client_parameters": {
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_llama8B_tp2_random_128_128",
"server_parameters": {
"tensor_parallel_size": 2
},
"client_parameters": {
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_llama8B_tp4_random_128_128",
"server_parameters": {
"tensor_parallel_size": 4
},
"client_parameters": {
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_llama8B_tp1_random_128_2048",
"server_parameters": {
"tensor_parallel_size": 1
},
"client_parameters": {
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 2048
}
},
{
"test_name": "serving_llama8B_tp2_random_128_2048",
"server_parameters": {
"tensor_parallel_size": 2
},
"client_parameters": {
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 2048
}
},
{
"test_name": "serving_llama8B_tp4_random_128_2048",
"server_parameters": {
"tensor_parallel_size": 4
},
"client_parameters": {
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 2048
}
},
{
"test_name": "serving_llama8B_tp1_random_2048_128",
"server_parameters": {
"tensor_parallel_size": 1
},
"client_parameters": {
"dataset_name": "random",
"random-input-len": 2048,
"random-output-len": 128
}
},
{
"test_name": "serving_llama8B_tp2_random_2048_128",
"server_parameters": {
"tensor_parallel_size": 2
},
"client_parameters": {
"dataset_name": "random",
"random-input-len": 2048,
"random-output-len": 128
}
},
{
"test_name": "serving_llama8B_tp4_random_2048_128",
"server_parameters": {
"tensor_parallel_size": 4
},
"client_parameters": {
"dataset_name": "random",
"random-input-len": 2048,
"random-output-len": 128
}
},
{
"test_name": "serving_llama8B_int4_tp1_random_128_128",
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_llama8B_int4_tp2_random_128_128",
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"tensor_parallel_size": 2
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_llama8B_int4_tp4_random_128_128",
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"tensor_parallel_size": 4
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_llama3B_tp1_random_128_128",
"server_parameters": {
"model": "meta-llama/Llama-3.2-3B-Instruct",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "meta-llama/Llama-3.2-3B-Instruct",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_granite2B_tp1_random_128_128",
"server_parameters": {
"model": "ibm-granite/granite-3.2-2b-instruct",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "ibm-granite/granite-3.2-2b-instruct",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_qwen1.7B_tp1_random_128_128",
"server_parameters": {
"model": "Qwen/Qwen3-1.7B",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "Qwen/Qwen3-1.7B",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_qwen4B_tp1_random_128_128",
"server_parameters": {
"model": "Qwen/Qwen3-4B",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "Qwen/Qwen3-4B",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_qwen8B_tp1_random_128_128",
"server_parameters": {
"model": "Qwen/Qwen3-8B",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "Qwen/Qwen3-8B",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_glm9B_tp1_random_128_128",
"server_parameters": {
"model": "zai-org/glm-4-9b-hf",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "zai-org/glm-4-9b-hf",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_gemma7B_tp1_random_128_128",
"server_parameters": {
"model": "google/gemma-7b",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "google/gemma-7b",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
}
]
}

View File

@@ -148,6 +148,136 @@
"random-input-len": 2048,
"random-output-len": 128
}
},
{
"test_name": "serving_llama8B_int4_tp1_random_128_128",
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_llama8B_int4_tp2_random_128_128",
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"tensor_parallel_size": 2
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_llama8B_int4_tp4_random_128_128",
"server_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"tensor_parallel_size": 4
},
"client_parameters": {
"model": "hugging-quants/Meta-Llama-3.1-8B-Instruct-AWQ-INT4",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_llama3B_tp1_random_128_128",
"server_parameters": {
"model": "meta-llama/Llama-3.2-3B-Instruct",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "meta-llama/Llama-3.2-3B-Instruct",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_granite2B_tp1_random_128_128",
"server_parameters": {
"model": "ibm-granite/granite-3.2-2b-instruct",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "ibm-granite/granite-3.2-2b-instruct",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_qwen1.7B_tp1_random_128_128",
"server_parameters": {
"model": "Qwen/Qwen3-1.7B",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "Qwen/Qwen3-1.7B",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_qwen4B_tp1_random_128_128",
"server_parameters": {
"model": "Qwen/Qwen3-4B",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "Qwen/Qwen3-4B",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_qwen8B_tp1_random_128_128",
"server_parameters": {
"model": "Qwen/Qwen3-8B",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "Qwen/Qwen3-8B",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_glm9B_tp1_random_128_128",
"server_parameters": {
"model": "zai-org/glm-4-9b-hf",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "zai-org/glm-4-9b-hf",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
},
{
"test_name": "serving_gemma7B_tp1_random_128_128",
"server_parameters": {
"model": "google/gemma-7b",
"tensor_parallel_size": 1
},
"client_parameters": {
"model": "google/gemma-7b",
"dataset_name": "random",
"random-input-len": 128,
"random-output-len": 128
}
}
]
}

View File

@@ -1,270 +1,286 @@
steps:
# aarch64 + CUDA builds
- label: "Build wheel - aarch64 - CUDA 12.9"
depends_on: ~
id: build-wheel-arm64-cuda-12-9
agents:
queue: arm64_cpu_queue_postmerge
commands:
# #NOTE: torch_cuda_arch_list is derived from upstream PyTorch build files here:
# https://github.com/pytorch/pytorch/blob/main/.ci/aarch64_linux/aarch64_ci_build.sh#L7
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.9.1 --build-arg torch_cuda_arch_list='8.7 8.9 9.0 10.0+PTX 12.0' --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-nightly-wheels.sh"
env:
DOCKER_BUILDKIT: "1"
- label: "Build wheel - aarch64 - CUDA 13.0"
depends_on: ~
id: build-wheel-arm64-cuda-13-0
agents:
queue: arm64_cpu_queue_postmerge
commands:
# #NOTE: torch_cuda_arch_list is derived from upstream PyTorch build files here:
# https://github.com/pytorch/pytorch/blob/main/.ci/aarch64_linux/aarch64_ci_build.sh#L7
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=13.0.1 --build-arg torch_cuda_arch_list='8.7 8.9 9.0 10.0+PTX 12.0' --build-arg BUILD_BASE_IMAGE=nvidia/cuda:13.0.1-devel-ubuntu22.04 --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-nightly-wheels.sh manylinux_2_35"
env:
DOCKER_BUILDKIT: "1"
# aarch64 build
- label: "Build wheel - aarch64 - CPU"
depends_on: ~
id: build-wheel-arm64-cpu
agents:
queue: arm64_cpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg GIT_REPO_CHECK=1 --build-arg VLLM_BUILD_ACL=ON --tag vllm-ci:build-image --target vllm-build --progress plain -f docker/Dockerfile.cpu ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-nightly-wheels.sh manylinux_2_35"
env:
DOCKER_BUILDKIT: "1"
# x86 + CUDA builds
- label: "Build wheel - x86_64 - CUDA 12.9"
depends_on: ~
id: build-wheel-x86-cuda-12-9
agents:
queue: cpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.9.1 --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-nightly-wheels.sh manylinux_2_31"
env:
DOCKER_BUILDKIT: "1"
- label: "Build wheel - x86_64 - CUDA 13.0"
depends_on: ~
id: build-wheel-x86-cuda-13-0
agents:
queue: cpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=13.0.1 --build-arg BUILD_BASE_IMAGE=nvidia/cuda:13.0.1-devel-ubuntu22.04 --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-nightly-wheels.sh manylinux_2_35"
env:
DOCKER_BUILDKIT: "1"
# x86 CPU wheel build
- label: "Build wheel - x86_64 - CPU"
depends_on: ~
id: build-wheel-x86-cpu
agents:
queue: cpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg GIT_REPO_CHECK=1 --build-arg VLLM_CPU_AVX512BF16=true --build-arg VLLM_CPU_AVX512VNNI=true --build-arg VLLM_CPU_AMXBF16=true --tag vllm-ci:build-image --target vllm-build --progress plain -f docker/Dockerfile.cpu ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-nightly-wheels.sh manylinux_2_35"
env:
DOCKER_BUILDKIT: "1"
# Build release images (CUDA 12.9)
- label: "Build release image - x86_64 - CUDA 12.9"
depends_on: ~
id: build-release-image-x86
agents:
queue: cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.9.1 --build-arg FLASHINFER_AOT_COMPILE=true --build-arg INSTALL_KV_CONNECTORS=true --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m) --target vllm-openai --progress plain -f docker/Dockerfile ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)"
# re-tag to default image tag and push, just in case arm64 build fails
- "docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m) public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT"
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT"
- label: "Build release image - aarch64 - CUDA 12.9"
depends_on: ~
id: build-release-image-arm64
agents:
queue: arm64_cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.9.1 --build-arg FLASHINFER_AOT_COMPILE=true --build-arg torch_cuda_arch_list='8.7 8.9 9.0 10.0+PTX 12.0' --build-arg INSTALL_KV_CONNECTORS=true --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m) --target vllm-openai --progress plain -f docker/Dockerfile ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)"
- label: "Create multi-arch manifest - CUDA 12.9"
depends_on:
- build-release-image-x86
- build-release-image-arm64
id: create-multi-arch-manifest
agents:
queue: small_cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "docker manifest create public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-x86_64 public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-aarch64 --amend"
- "docker manifest push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT"
- label: "Annotate release workflow - CUDA 12.9"
depends_on:
- create-multi-arch-manifest
id: annotate-release-workflow
agents:
queue: small_cpu_queue_postmerge
commands:
- "bash .buildkite/scripts/annotate-release.sh"
- block: "Build CUDA 13.0 release images"
key: block-release-image-build-cuda-13-0
depends_on: ~
- label: "Build release image - x86_64 - CUDA 13.0"
depends_on: block-release-image-build-cuda-13-0
id: build-release-image-x86-cuda-13-0
agents:
queue: cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=13.0.1 --build-arg INSTALL_KV_CONNECTORS=true --build-arg BUILD_BASE_IMAGE=nvidia/cuda:13.0.1-devel-ubuntu22.04 --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)-cu130 --target vllm-openai --progress plain -f docker/Dockerfile ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)-cu130"
# re-tag to default image tag and push, just in case arm64 build fails
- "docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)-cu130 public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-cu130"
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-cu130"
- label: "Build release image - aarch64 - CUDA 13.0"
depends_on: block-release-image-build-cuda-13-0
id: build-release-image-arm64-cuda-13-0
agents:
queue: arm64_cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
# compute capability 12.0 for RTX-50 series / RTX PRO 6000 Blackwell, 12.1 for DGX Spark
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=13.0.1 --build-arg torch_cuda_arch_list='8.7 8.9 9.0 10.0+PTX 12.0 12.1' --build-arg INSTALL_KV_CONNECTORS=true --build-arg BUILD_BASE_IMAGE=nvidia/cuda:13.0.1-devel-ubuntu22.04 --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)-cu130 --target vllm-openai --progress plain -f docker/Dockerfile ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)-cu130"
- label: "Create multi-arch manifest - CUDA 13.0"
depends_on:
- build-release-image-x86-cuda-13-0
- build-release-image-arm64-cuda-13-0
id: create-multi-arch-manifest-cuda-13-0
agents:
queue: small_cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "docker manifest create public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-cu130 public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-x86_64-cu130 public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-aarch64-cu130 --amend"
- "docker manifest push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-cu130"
- input: "Provide Release version here"
id: input-release-version
fields:
- text: "What is the release version?"
key: release-version
- group: "Build Python wheels"
key: "build-wheels"
steps:
- label: "Build wheel - aarch64 - CUDA 12.9"
depends_on: ~
id: build-wheel-arm64-cuda-12-9
agents:
queue: arm64_cpu_queue_postmerge
commands:
# #NOTE: torch_cuda_arch_list is derived from upstream PyTorch build files here:
# https://github.com/pytorch/pytorch/blob/main/.ci/aarch64_linux/aarch64_ci_build.sh#L7
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.9.1 --build-arg torch_cuda_arch_list='8.7 8.9 9.0 10.0+PTX 12.0' --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-nightly-wheels.sh"
env:
DOCKER_BUILDKIT: "1"
- block: "Confirm update release wheels to PyPI (experimental, use with caution)?"
key: block-upload-release-wheels
depends_on:
- input-release-version
- build-wheel-x86-cuda-12-9
- build-wheel-x86-cuda-13-0
- build-wheel-x86-cpu
- build-wheel-arm64-cuda-12-9
- build-wheel-arm64-cuda-13-0
- build-wheel-arm64-cpu
- label: "Build wheel - aarch64 - CUDA 13.0"
depends_on: ~
id: build-wheel-arm64-cuda-13-0
agents:
queue: arm64_cpu_queue_postmerge
commands:
# #NOTE: torch_cuda_arch_list is derived from upstream PyTorch build files here:
# https://github.com/pytorch/pytorch/blob/main/.ci/aarch64_linux/aarch64_ci_build.sh#L7
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=13.0.1 --build-arg torch_cuda_arch_list='8.7 8.9 9.0 10.0+PTX 12.0' --build-arg BUILD_BASE_IMAGE=nvidia/cuda:13.0.1-devel-ubuntu22.04 --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-nightly-wheels.sh manylinux_2_35"
env:
DOCKER_BUILDKIT: "1"
- label: "Upload release wheels to PyPI and GitHub"
depends_on:
- block-upload-release-wheels
id: upload-release-wheels
agents:
queue: small_cpu_queue_postmerge
commands:
- "bash .buildkite/scripts/upload-release-wheels.sh"
- label: "Build wheel - aarch64 - CPU"
depends_on: ~
id: build-wheel-arm64-cpu
agents:
queue: arm64_cpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg GIT_REPO_CHECK=1 --build-arg VLLM_BUILD_ACL=ON --tag vllm-ci:build-image --target vllm-build --progress plain -f docker/Dockerfile.cpu ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-nightly-wheels.sh manylinux_2_35"
env:
DOCKER_BUILDKIT: "1"
- block: "Build CPU release image"
key: block-cpu-release-image-build
depends_on: ~
- label: "Build wheel - x86_64 - CUDA 12.9"
depends_on: ~
id: build-wheel-x86-cuda-12-9
agents:
queue: cpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.9.1 --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-nightly-wheels.sh manylinux_2_31"
env:
DOCKER_BUILDKIT: "1"
- label: "Build and publish CPU release image"
depends_on: block-cpu-release-image-build
agents:
queue: cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg GIT_REPO_CHECK=1 --build-arg VLLM_CPU_AVX512BF16=true --build-arg VLLM_CPU_AVX512VNNI=true --build-arg VLLM_CPU_AMXBF16=true --tag public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:$(buildkite-agent meta-data get release-version) --tag public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:latest --progress plain --target vllm-openai -f docker/Dockerfile.cpu ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:latest"
- "docker push public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:$(buildkite-agent meta-data get release-version)"
env:
DOCKER_BUILDKIT: "1"
- label: "Build wheel - x86_64 - CUDA 13.0"
depends_on: ~
id: build-wheel-x86-cuda-13-0
agents:
queue: cpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=13.0.1 --build-arg BUILD_BASE_IMAGE=nvidia/cuda:13.0.1-devel-ubuntu22.04 --tag vllm-ci:build-image --target build --progress plain -f docker/Dockerfile ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-nightly-wheels.sh manylinux_2_35"
env:
DOCKER_BUILDKIT: "1"
- block: "Build arm64 CPU release image"
key: block-arm64-cpu-release-image-build
depends_on: ~
- label: "Build wheel - x86_64 - CPU"
depends_on: ~
id: build-wheel-x86-cpu
agents:
queue: cpu_queue_postmerge
commands:
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg GIT_REPO_CHECK=1 --build-arg VLLM_CPU_AVX512BF16=true --build-arg VLLM_CPU_AVX512VNNI=true --build-arg VLLM_CPU_AMXBF16=true --tag vllm-ci:build-image --target vllm-build --progress plain -f docker/Dockerfile.cpu ."
- "mkdir artifacts"
- "docker run --rm -v $(pwd)/artifacts:/artifacts_host vllm-ci:build-image bash -c 'cp -r dist /artifacts_host && chmod -R a+rw /artifacts_host'"
- "bash .buildkite/scripts/upload-nightly-wheels.sh manylinux_2_35"
env:
DOCKER_BUILDKIT: "1"
- label: "Build and publish arm64 CPU release image"
depends_on: block-arm64-cpu-release-image-build
agents:
queue: arm64_cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg GIT_REPO_CHECK=1 --tag public.ecr.aws/q9t5s3a7/vllm-arm64-cpu-release-repo:$(buildkite-agent meta-data get release-version) --tag public.ecr.aws/q9t5s3a7/vllm-arm64-cpu-release-repo:latest --progress plain --target vllm-openai -f docker/Dockerfile.cpu ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-arm64-cpu-release-repo:latest"
- "docker push public.ecr.aws/q9t5s3a7/vllm-arm64-cpu-release-repo:$(buildkite-agent meta-data get release-version)"
env:
DOCKER_BUILDKIT: "1"
- group: "Build release Docker images"
key: "build-release-images"
steps:
- label: "Build release image - x86_64 - CUDA 12.9"
depends_on: ~
id: build-release-image-x86
agents:
queue: cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.9.1 --build-arg FLASHINFER_AOT_COMPILE=true --build-arg INSTALL_KV_CONNECTORS=true --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m) --target vllm-openai --progress plain -f docker/Dockerfile ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)"
# re-tag to default image tag and push, just in case arm64 build fails
- "docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m) public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT"
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT"
- block: "Build ROCm release image"
key: block-rocm-release-image-build
depends_on: ~
- label: "Build release image - aarch64 - CUDA 12.9"
depends_on: ~
id: build-release-image-arm64
agents:
queue: arm64_cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=12.9.1 --build-arg FLASHINFER_AOT_COMPILE=true --build-arg torch_cuda_arch_list='8.7 8.9 9.0 10.0+PTX 12.0' --build-arg INSTALL_KV_CONNECTORS=true --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m) --target vllm-openai --progress plain -f docker/Dockerfile ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)"
- label: "Build release image (ROCm)"
depends_on: block-rocm-release-image-build
id: build-release-image-rocm
agents:
queue: cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
# Build base image first
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --tag rocm/vllm-dev:base-$BUILDKITE_COMMIT --target final --progress plain -f docker/Dockerfile.rocm_base ."
# Build vLLM ROCm image using the base
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg BASE_IMAGE=rocm/vllm-dev:base-$BUILDKITE_COMMIT --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-rocm --target vllm-openai --progress plain -f docker/Dockerfile.rocm ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-rocm"
- label: "Build and publish nightly multi-arch image to DockerHub"
depends_on:
- create-multi-arch-manifest
if: build.env("NIGHTLY") == "1"
agents:
queue: small_cpu_queue_postmerge
commands:
- "bash .buildkite/scripts/push-nightly-builds.sh"
# Clean up old nightly builds (keep only last 14)
- "bash .buildkite/scripts/cleanup-nightly-builds.sh"
plugins:
- docker-login#v3.0.0:
username: vllmbot
password-env: DOCKERHUB_TOKEN
env:
DOCKER_BUILDKIT: "1"
DOCKERHUB_USERNAME: "vllmbot"
- label: "Build release image - x86_64 - CUDA 13.0"
depends_on: ~
id: build-release-image-x86-cuda-13-0
agents:
queue: cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=13.0.1 --build-arg INSTALL_KV_CONNECTORS=true --build-arg BUILD_BASE_IMAGE=nvidia/cuda:13.0.1-devel-ubuntu22.04 --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)-cu130 --target vllm-openai --progress plain -f docker/Dockerfile ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)-cu130"
# re-tag to default image tag and push, just in case arm64 build fails
- "docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)-cu130 public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-cu130"
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-cu130"
- label: "Build and publish nightly multi-arch image to DockerHub - CUDA 13.0"
depends_on:
- create-multi-arch-manifest-cuda-13-0
if: build.env("NIGHTLY") == "1"
agents:
queue: small_cpu_queue_postmerge
commands:
- "bash .buildkite/scripts/push-nightly-builds.sh cu130"
# Clean up old nightly builds (keep only last 14)
- "bash .buildkite/scripts/cleanup-nightly-builds.sh cu130-nightly-"
plugins:
- docker-login#v3.0.0:
username: vllmbot
password-env: DOCKERHUB_TOKEN
env:
DOCKER_BUILDKIT: "1"
DOCKERHUB_USERNAME: "vllmbot"
- label: "Build release image - aarch64 - CUDA 13.0"
depends_on: ~
id: build-release-image-arm64-cuda-13-0
agents:
queue: arm64_cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
# compute capability 12.0 for RTX-50 series / RTX PRO 6000 Blackwell, 12.1 for DGX Spark
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg USE_SCCACHE=1 --build-arg GIT_REPO_CHECK=1 --build-arg CUDA_VERSION=13.0.1 --build-arg torch_cuda_arch_list='8.7 8.9 9.0 10.0+PTX 12.0 12.1' --build-arg INSTALL_KV_CONNECTORS=true --build-arg BUILD_BASE_IMAGE=nvidia/cuda:13.0.1-devel-ubuntu22.04 --tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)-cu130 --target vllm-openai --progress plain -f docker/Dockerfile ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-$(uname -m)-cu130"
- block: "Build release image for x86_64 CPU"
key: block-cpu-release-image-build
depends_on: ~
- label: "Build release image - x86_64 - CPU"
depends_on:
- block-cpu-release-image-build
- input-release-version
agents:
queue: cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg GIT_REPO_CHECK=1 --build-arg VLLM_CPU_AVX512BF16=true --build-arg VLLM_CPU_AVX512VNNI=true --build-arg VLLM_CPU_AMXBF16=true --tag public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:$(buildkite-agent meta-data get release-version) --tag public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:latest --progress plain --target vllm-openai -f docker/Dockerfile.cpu ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:latest"
- "docker push public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:$(buildkite-agent meta-data get release-version)"
env:
DOCKER_BUILDKIT: "1"
- block: "Build release image for arm64 CPU"
key: block-arm64-cpu-release-image-build
depends_on: ~
- label: "Build release image - arm64 - CPU"
depends_on:
- block-arm64-cpu-release-image-build
- input-release-version
agents:
queue: arm64_cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "DOCKER_BUILDKIT=1 docker build --build-arg max_jobs=16 --build-arg GIT_REPO_CHECK=1 --tag public.ecr.aws/q9t5s3a7/vllm-arm64-cpu-release-repo:$(buildkite-agent meta-data get release-version) --tag public.ecr.aws/q9t5s3a7/vllm-arm64-cpu-release-repo:latest --progress plain --target vllm-openai -f docker/Dockerfile.cpu ."
- "docker push public.ecr.aws/q9t5s3a7/vllm-arm64-cpu-release-repo:latest"
- "docker push public.ecr.aws/q9t5s3a7/vllm-arm64-cpu-release-repo:$(buildkite-agent meta-data get release-version)"
env:
DOCKER_BUILDKIT: "1"
- group: "Publish release images"
key: "publish-release-images"
steps:
- label: "Create multi-arch manifest - CUDA 12.9"
depends_on:
- build-release-image-x86
- build-release-image-arm64
id: create-multi-arch-manifest
agents:
queue: small_cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "docker manifest create public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-x86_64 public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-aarch64 --amend"
- "docker manifest push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT"
- label: "Annotate release workflow - CUDA 12.9"
depends_on:
- create-multi-arch-manifest
id: annotate-release-workflow
agents:
queue: small_cpu_queue_postmerge
commands:
- "bash .buildkite/scripts/annotate-release.sh"
- label: "Create multi-arch manifest - CUDA 13.0"
depends_on:
- build-release-image-x86-cuda-13-0
- build-release-image-arm64-cuda-13-0
id: create-multi-arch-manifest-cuda-13-0
agents:
queue: small_cpu_queue_postmerge
commands:
- "aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7"
- "docker manifest create public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-cu130 public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-x86_64-cu130 public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-aarch64-cu130 --amend"
- "docker manifest push public.ecr.aws/q9t5s3a7/vllm-release-repo:$BUILDKITE_COMMIT-cu130"
- label: "Publish nightly multi-arch image to DockerHub"
depends_on:
- create-multi-arch-manifest
if: build.env("NIGHTLY") == "1"
agents:
queue: small_cpu_queue_postmerge
commands:
- "bash .buildkite/scripts/push-nightly-builds.sh"
# Clean up old nightly builds (keep only last 14)
- "bash .buildkite/scripts/cleanup-nightly-builds.sh"
plugins:
- docker-login#v3.0.0:
username: vllmbot
password-env: DOCKERHUB_TOKEN
env:
DOCKER_BUILDKIT: "1"
DOCKERHUB_USERNAME: "vllmbot"
- label: "Publish nightly multi-arch image to DockerHub - CUDA 13.0"
depends_on:
- create-multi-arch-manifest-cuda-13-0
if: build.env("NIGHTLY") == "1"
agents:
queue: small_cpu_queue_postmerge
commands:
- "bash .buildkite/scripts/push-nightly-builds.sh cu130"
# Clean up old nightly builds (keep only last 14)
- "bash .buildkite/scripts/cleanup-nightly-builds.sh cu130-nightly-"
plugins:
- docker-login#v3.0.0:
username: vllmbot
password-env: DOCKERHUB_TOKEN
env:
DOCKER_BUILDKIT: "1"
DOCKERHUB_USERNAME: "vllmbot"
- group: "Publish wheels"
key: "publish-wheels"
steps:
- block: "Confirm update release wheels to PyPI (experimental, use with caution)?"
key: block-upload-release-wheels
depends_on:
- input-release-version
- build-wheels
- label: "Upload release wheels to PyPI"
depends_on:
- block-upload-release-wheels
id: upload-release-wheels
agents:
queue: small_cpu_queue_postmerge
commands:
- "bash .buildkite/scripts/upload-release-wheels-pypi.sh"
# =============================================================================
# ROCm Release Pipeline (x86_64 only)
@@ -459,7 +475,7 @@ steps:
S3_BUCKET: "vllm-wheels"
# ROCm Job 2: Build vLLM ROCm Wheel
- label: ":python: Build vLLM ROCm Wheel - x86_64"
- label: ":python: Build vLLM ROCm Wheel"
id: build-rocm-vllm-wheel
depends_on:
- step: build-rocm-base-wheels
@@ -621,93 +637,9 @@ steps:
depends_on:
- step: upload-rocm-wheels
allow_failure: true
- step: input-release-version
allow_failure: true
agents:
queue: cpu_queue_postmerge
commands:
- "bash .buildkite/scripts/annotate-rocm-release.sh"
env:
S3_BUCKET: "vllm-wheels"
# ROCm Job 5: Generate Root Index for ROCm Wheels (for release only)
# This is the job to create https://wheels.vllm.ai/rocm/ index allowing
# users to install with `uv pip install vllm --extra-index-url https://wheels.vllm.ai/rocm/`
- block: "Generate Root Index for ROCm Wheels for Release"
key: block-generate-root-index-rocm-wheels
depends_on: upload-rocm-wheels
- label: ":package: Generate Root Index for ROCm Wheels for Release"
depends_on: block-generate-root-index-rocm-wheels
id: generate-root-index-rocm-wheels
agents:
queue: cpu_queue_postmerge
commands:
- "bash tools/vllm-rocm/generate-rocm-wheels-root-index.sh"
env:
S3_BUCKET: "vllm-wheels"
VARIANT: "rocm700"
# ROCm Job 5: Build ROCm Release Docker Image
- label: ":docker: Build release image - x86_64 - ROCm"
id: build-rocm-release-image
depends_on:
- step: build-rocm-base-wheels
allow_failure: false
agents:
queue: cpu_queue_postmerge
timeout_in_minutes: 60
commands:
- |
set -euo pipefail
# Login to ECR
aws ecr-public get-login-password --region us-east-1 | \
docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7
# Download Docker image from S3 (set by build-rocm-base-wheels)
DOCKER_IMAGE_S3_PATH="$$(buildkite-agent meta-data get rocm-docker-image-s3-path 2>/dev/null || echo '')"
if [ -z "$${DOCKER_IMAGE_S3_PATH}" ]; then
echo "ERROR: rocm-docker-image-s3-path metadata not found"
exit 1
fi
echo "Downloading base image from $${DOCKER_IMAGE_S3_PATH}"
mkdir -p artifacts/rocm-docker-image
aws s3 cp "$${DOCKER_IMAGE_S3_PATH}" artifacts/rocm-docker-image/rocm-base-image.tar.gz
# Load base Docker image
echo "Loading base Docker image..."
LOAD_OUTPUT=$$(gunzip -c artifacts/rocm-docker-image/rocm-base-image.tar.gz | docker load)
BASE_IMAGE_TAG=$$(echo "$${LOAD_OUTPUT}" | grep "Loaded image:" | sed 's/Loaded image: //')
echo "Loaded base image: $${BASE_IMAGE_TAG}"
# Tag and push the base image to ECR
docker tag "$${BASE_IMAGE_TAG}" public.ecr.aws/q9t5s3a7/vllm-release-repo:$${BUILDKITE_COMMIT}-rocm-base
docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$${BUILDKITE_COMMIT}-rocm-base
echo "Pushed base image: public.ecr.aws/q9t5s3a7/vllm-release-repo:$${BUILDKITE_COMMIT}-rocm-base"
# Get GPU architectures from meta-data
PYTORCH_ROCM_ARCH="$$(buildkite-agent meta-data get rocm-pytorch-rocm-arch 2>/dev/null || echo '')"
PYTORCH_ROCM_ARCH="$${PYTORCH_ROCM_ARCH:-gfx90a;gfx942;gfx950;gfx1100;gfx1101;gfx1200;gfx1201;gfx1150;gfx1151}"
# Build vLLM ROCm release image using cached base
DOCKER_BUILDKIT=1 docker build \
--build-arg max_jobs=16 \
--build-arg BASE_IMAGE="$${BASE_IMAGE_TAG}" \
--build-arg ARG_PYTORCH_ROCM_ARCH="$${PYTORCH_ROCM_ARCH}" \
--build-arg USE_SCCACHE=1 \
--build-arg SCCACHE_BUCKET_NAME=vllm-build-sccache \
--build-arg SCCACHE_REGION_NAME=us-west-2 \
--build-arg SCCACHE_S3_NO_CREDENTIALS=0 \
--tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$${BUILDKITE_COMMIT}-rocm \
--target vllm-openai \
--progress plain \
-f docker/Dockerfile.rocm .
# Push to ECR
docker push public.ecr.aws/q9t5s3a7/vllm-release-repo:$${BUILDKITE_COMMIT}-rocm
echo "Pushed: public.ecr.aws/q9t5s3a7/vllm-release-repo:$${BUILDKITE_COMMIT}-rocm"
env:
DOCKER_BUILDKIT: "1"
S3_BUCKET: "vllm-wheels"

View File

@@ -11,36 +11,28 @@ fi
buildkite-agent annotate --style 'info' --context 'release-workflow' << EOF
To download the wheel (by commit):
\`\`\`
aws s3 cp s3://vllm-wheels/${BUILDKITE_COMMIT}/vllm-${RELEASE_VERSION}-cp38-abi3-manylinux_2_31_x86_64.whl .
aws s3 cp s3://vllm-wheels/${BUILDKITE_COMMIT}/vllm-${RELEASE_VERSION}-cp38-abi3-manylinux_2_31_aarch64.whl .
aws s3 cp s3://vllm-wheels/${BUILDKITE_COMMIT}/vllm-${RELEASE_VERSION}-cp38-abi3-manylinux1_x86_64.whl .
aws s3 cp s3://vllm-wheels/${BUILDKITE_COMMIT}/vllm-${RELEASE_VERSION}-cp38-abi3-manylinux2014_aarch64.whl .
(Optional) For CUDA 13.0:
aws s3 cp s3://vllm-wheels/${BUILDKITE_COMMIT}/vllm-${RELEASE_VERSION}+cu130-cp38-abi3-manylinux_2_35_x86_64.whl .
aws s3 cp s3://vllm-wheels/${BUILDKITE_COMMIT}/vllm-${RELEASE_VERSION}+cu130-cp38-abi3-manylinux_2_35_aarch64.whl .
(Optional) For CPU:
aws s3 cp s3://vllm-wheels/${BUILDKITE_COMMIT}/vllm-${RELEASE_VERSION}+cpu-cp38-abi3-manylinux_2_35_x86_64.whl .
aws s3 cp s3://vllm-wheels/${BUILDKITE_COMMIT}/vllm-${RELEASE_VERSION}+cpu-cp38-abi3-manylinux_2_35_aarch64.whl .
aws s3 cp s3://vllm-wheels/${BUILDKITE_COMMIT}/vllm-${RELEASE_VERSION}+cu129-cp38-abi3-manylinux1_x86_64.whl .
aws s3 cp s3://vllm-wheels/${BUILDKITE_COMMIT}/vllm-${RELEASE_VERSION}+cu129-cp38-abi3-manylinux1_x86_64.whl .
\`\`\`
To download the wheel (by version):
\`\`\`
aws s3 cp s3://vllm-wheels/${RELEASE_VERSION}/vllm-${RELEASE_VERSION}-cp38-abi3-manylinux1_x86_64.whl .
aws s3 cp s3://vllm-wheels/${RELEASE_VERSION}/vllm-${RELEASE_VERSION}-cp38-abi3-manylinux2014_aarch64.whl .
aws s3 cp s3://vllm-wheels/${RELEASE_VERSION}+cu129/vllm-${RELEASE_VERSION}+cu129-cp38-abi3-manylinux1_x86_64.whl .
aws s3 cp s3://vllm-wheels/${RELEASE_VERSION}+cu130/vllm-${RELEASE_VERSION}+cu130-cp38-abi3-manylinux1_x86_64.whl .
\`\`\`
To download and upload the image:
\`\`\`
# Download images:
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-x86_64
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-aarch64
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-x86_64-cu130
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-aarch64-cu130
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-rocm-base
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-rocm
docker pull public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:v${RELEASE_VERSION}
docker pull public.ecr.aws/q9t5s3a7/vllm-arm64-cpu-release-repo:v${RELEASE_VERSION}
# Tag and push images:
## CUDA
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-x86_64 vllm/vllm-openai:x86_64
docker tag vllm/vllm-openai:x86_64 vllm/vllm-openai:latest-x86_64
@@ -48,70 +40,22 @@ docker tag vllm/vllm-openai:x86_64 vllm/vllm-openai:v${RELEASE_VERSION}-x86_64
docker push vllm/vllm-openai:latest-x86_64
docker push vllm/vllm-openai:v${RELEASE_VERSION}-x86_64
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-x86_64-cu130 vllm/vllm-openai:x86_64-cu130
docker tag vllm/vllm-openai:x86_64-cu130 vllm/vllm-openai:latest-x86_64-cu130
docker tag vllm/vllm-openai:x86_64-cu130 vllm/vllm-openai:v${RELEASE_VERSION}-x86_64-cu130
docker push vllm/vllm-openai:latest-x86_64-cu130
docker push vllm/vllm-openai:v${RELEASE_VERSION}-x86_64-cu130
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-aarch64 vllm/vllm-openai:aarch64
docker tag vllm/vllm-openai:aarch64 vllm/vllm-openai:latest-aarch64
docker tag vllm/vllm-openai:aarch64 vllm/vllm-openai:v${RELEASE_VERSION}-aarch64
docker push vllm/vllm-openai:latest-aarch64
docker push vllm/vllm-openai:v${RELEASE_VERSION}-aarch64
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-aarch64-cu130 vllm/vllm-openai:aarch64-cu130
docker tag vllm/vllm-openai:aarch64-cu130 vllm/vllm-openai:latest-aarch64-cu130
docker tag vllm/vllm-openai:aarch64-cu130 vllm/vllm-openai:v${RELEASE_VERSION}-aarch64-cu130
docker push vllm/vllm-openai:latest-aarch64-cu130
docker push vllm/vllm-openai:v${RELEASE_VERSION}-aarch64-cu130
## ROCm
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-rocm vllm/vllm-openai-rocm:${BUILDKITE_COMMIT}
docker tag vllm/vllm-openai-rocm:${BUILDKITE_COMMIT} vllm/vllm-openai-rocm:latest
docker tag vllm/vllm-openai-rocm:${BUILDKITE_COMMIT} vllm/vllm-openai-rocm:v${RELEASE_VERSION}
docker push vllm/vllm-openai-rocm:latest
docker push vllm/vllm-openai-rocm:v${RELEASE_VERSION}
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-rocm-base vllm/vllm-openai-rocm:${BUILDKITE_COMMIT}-base
docker tag vllm/vllm-openai-rocm:${BUILDKITE_COMMIT}-base vllm/vllm-openai-rocm:latest-base
docker tag vllm/vllm-openai-rocm:${BUILDKITE_COMMIT}-base vllm/vllm-openai-rocm:v${RELEASE_VERSION}-base
docker push vllm/vllm-openai-rocm:latest-base
docker push vllm/vllm-openai-rocm:v${RELEASE_VERSION}-base
## CPU
docker tag public.ecr.aws/q9t5s3a7/vllm-cpu-release-repo:v${RELEASE_VERSION} vllm/vllm-openai-cpu:x86_64
docker tag vllm/vllm-openai-cpu:x86_64 vllm/vllm-openai-cpu:latest-x86_64
docker tag vllm/vllm-openai-cpu:x86_64 vllm/vllm-openai-cpu:v${RELEASE_VERSION}-x86_64
docker push vllm/vllm-openai-cpu:latest-x86_64
docker push vllm/vllm-openai-cpu:v${RELEASE_VERSION}-x86_64
docker tag public.ecr.aws/q9t5s3a7/vllm-arm64-cpu-release-repo:v${RELEASE_VERSION} vllm/vllm-openai-cpu:arm64
docker tag vllm/vllm-openai-cpu:arm64 vllm/vllm-openai-cpu:latest-arm64
docker tag vllm/vllm-openai-cpu:arm64 vllm/vllm-openai-cpu:v${RELEASE_VERSION}-arm64
docker push vllm/vllm-openai-cpu:latest-arm64
docker push vllm/vllm-openai-cpu:v${RELEASE_VERSION}-arm64
# Create multi-arch manifest:
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-rocm vllm/vllm-openai:rocm
docker tag vllm/vllm-openai:rocm vllm/vllm-openai:latest-rocm
docker tag vllm/vllm-openai:rocm vllm/vllm-openai:v${RELEASE_VERSION}-rocm
docker push vllm/vllm-openai:latest-rocm
docker push vllm/vllm-openai:v${RELEASE_VERSION}-rocm
docker manifest rm vllm/vllm-openai:latest
docker manifest create vllm/vllm-openai:latest vllm/vllm-openai:latest-x86_64 vllm/vllm-openai:latest-aarch64
docker manifest create vllm/vllm-openai:v${RELEASE_VERSION} vllm/vllm-openai:v${RELEASE_VERSION}-x86_64 vllm/vllm-openai:v${RELEASE_VERSION}-aarch64
docker manifest push vllm/vllm-openai:latest
docker manifest push vllm/vllm-openai:v${RELEASE_VERSION}
docker manifest rm vllm/vllm-openai:latest-cu130
docker manifest create vllm/vllm-openai:latest-cu130 vllm/vllm-openai:latest-x86_64-cu130 vllm/vllm-openai:latest-aarch64-cu130
docker manifest create vllm/vllm-openai:v${RELEASE_VERSION}-cu130 vllm/vllm-openai:v${RELEASE_VERSION}-x86_64-cu130 vllm/vllm-openai:v${RELEASE_VERSION}-aarch64-cu130
docker manifest push vllm/vllm-openai:latest-cu130
docker manifest push vllm/vllm-openai:v${RELEASE_VERSION}-cu130
docker manifest rm vllm/vllm-openai-cpu:latest || true
docker manifest create vllm/vllm-openai-cpu:latest vllm/vllm-openai-cpu:latest-x86_64 vllm/vllm-openai-cpu:latest-arm64
docker manifest create vllm/vllm-openai-cpu:v${RELEASE_VERSION} vllm/vllm-openai-cpu:v${RELEASE_VERSION}-x86_64 vllm/vllm-openai-cpu:v${RELEASE_VERSION}-arm64
docker manifest push vllm/vllm-openai-cpu:latest
docker manifest push vllm/vllm-openai-cpu:v${RELEASE_VERSION}
\`\`\`
EOF
EOF

View File

@@ -3,32 +3,25 @@
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
#
# Generate Buildkite annotation for ROCm wheel release
set -ex
# Get build configuration from meta-data
# Extract ROCm version dynamically from Dockerfile.rocm_base
# BASE_IMAGE format: rocm/dev-ubuntu-22.04:7.0-complete -> extracts "7.0"
# BASE_IMAGE format: rocm/dev-ubuntu-22.04:7.1-complete -> extracts "7.1"
ROCM_VERSION=$(grep -E '^ARG BASE_IMAGE=' docker/Dockerfile.rocm_base | sed -E 's/.*:([0-9]+\.[0-9]+).*/\1/' || echo "unknown")
PYTHON_VERSION=$(buildkite-agent meta-data get rocm-python-version 2>/dev/null || echo "3.12")
PYTORCH_ROCM_ARCH=$(buildkite-agent meta-data get rocm-pytorch-rocm-arch 2>/dev/null || echo "gfx90a;gfx942;gfx950;gfx1100;gfx1101;gfx1200;gfx1201;gfx1150;gfx1151")
# TODO: Enable the nightly build for ROCm
# Get release version, default to 1.0.0.dev for nightly/per-commit builds
RELEASE_VERSION=$(buildkite-agent meta-data get release-version 2>/dev/null || echo "")
if [ -z "${RELEASE_VERSION}" ]; then
RELEASE_VERSION="1.0.0.dev"
fi
# S3 URLs
S3_BUCKET="${S3_BUCKET:-vllm-wheels}"
S3_REGION="${AWS_DEFAULT_REGION:-us-west-2}"
S3_URL="http://${S3_BUCKET}.s3-website-${S3_REGION}.amazonaws.com"
S3_URL="https://${S3_BUCKET}.s3.${S3_REGION}.amazonaws.com"
ROCM_PATH="rocm/${BUILDKITE_COMMIT}"
# Format ROCm version for path (e.g., "7.1" -> "rocm710")
ROCM_VERSION_PATH="rocm$(echo "${ROCM_VERSION}" | tr -d '.')"
ROCM_PATH="rocm/${BUILDKITE_COMMIT}/${ROCM_VERSION_PATH}"
buildkite-agent annotate --style 'success' --context 'rocm-release-workflow' << EOF
## ROCm Wheel and Docker Image Releases
## :rocm: ROCm Wheel Release
### Build Configuration
| Setting | Value |
|---------|-------|
@@ -41,72 +34,41 @@ buildkite-agent annotate --style 'success' --context 'rocm-release-workflow' <<
### :package: Installation
**Install from this build (by commit):**
\`\`\`bash
pip install vllm --extra-index-url ${S3_URL}/${ROCM_PATH}/ --trusted-host ${S3_BUCKET}.s3-website-${S3_REGION}.amazonaws.com
uv pip install vllm --extra-index-url ${S3_URL}/${ROCM_PATH}/{rocm_variant}/
# Example for ROCm ${ROCM_VERSION}:
pip install vllm --extra-index-url ${S3_URL}/rocm/${BUILDKITE_COMMIT}/${ROCM_VERSION_PATH}/ --trusted-host ${S3_BUCKET}.s3-website-${S3_REGION}.amazonaws.com
# Example:
uv pip install vllm --extra-index-url ${S3_URL}/${ROCM_PATH}/rocm700/
\`\`\`
**Install from nightly (if published):**
\`\`\`bash
pip install vllm --extra-index-url ${S3_URL}/rocm/nightly/ --trusted-host ${S3_BUCKET}.s3-website-${S3_REGION}.amazonaws.com
uv pip install vllm --extra-index-url ${S3_URL}/rocm/nightly/
\`\`\`
### :floppy_disk: Download Wheels Directly
\`\`\`bash
# List all ROCm wheels
aws s3 ls s3://${S3_BUCKET}/rocm/${BUILDKITE_COMMIT}/${ROCM_VERSION_PATH}/
aws s3 ls s3://${S3_BUCKET}/${ROCM_PATH}/
# Download specific wheels
aws s3 cp s3://${S3_BUCKET}/rocm/${BUILDKITE_COMMIT}/${ROCM_VERSION_PATH}/vllm-*.whl .
aws s3 cp s3://${S3_BUCKET}/rocm/${BUILDKITE_COMMIT}/${ROCM_VERSION_PATH}/torch-*.whl .
aws s3 cp s3://${S3_BUCKET}/rocm/${BUILDKITE_COMMIT}/${ROCM_VERSION_PATH}/triton-*.whl .
aws s3 cp s3://${S3_BUCKET}/rocm/${BUILDKITE_COMMIT}/${ROCM_VERSION_PATH}/triton-kernels-*.whl .
aws s3 cp s3://${S3_BUCKET}/rocm/${BUILDKITE_COMMIT}/${ROCM_VERSION_PATH}/torchvision-*.whl .
aws s3 cp s3://${S3_BUCKET}/rocm/${BUILDKITE_COMMIT}/${ROCM_VERSION_PATH}/torchaudio-*.whl .
aws s3 cp s3://${S3_BUCKET}/rocm/${BUILDKITE_COMMIT}/${ROCM_VERSION_PATH}/amdsmi-*.whl .
aws s3 cp s3://${S3_BUCKET}/rocm/${BUILDKITE_COMMIT}/${ROCM_VERSION_PATH}/aiter-*.whl .
aws s3 cp s3://${S3_BUCKET}/rocm/${BUILDKITE_COMMIT}/${ROCM_VERSION_PATH}/flash-attn-*.whl .
aws s3 cp s3://${S3_BUCKET}/${ROCM_PATH}/vllm-*.whl .
aws s3 cp s3://${S3_BUCKET}/${ROCM_PATH}/torch-*.whl .
aws s3 cp s3://${S3_BUCKET}/${ROCM_PATH}/triton_rocm-*.whl .
aws s3 cp s3://${S3_BUCKET}/${ROCM_PATH}/torchvision-*.whl .
aws s3 cp s3://${S3_BUCKET}/${ROCM_PATH}/amdsmi-*.whl .
\`\`\`
### :gear: Included Packages
- **vllm**: vLLM with ROCm support
- **torch**: PyTorch built for ROCm ${ROCM_VERSION}
- **triton**: Triton
- **triton-kernels**: Triton kernels
- **triton_rocm**: Triton built for ROCm
- **torchvision**: TorchVision for ROCm PyTorch
- **torchaudio**: Torchaudio for ROCm PyTorch
- **amdsmi**: AMD SMI Python bindings
- **aiter**: Aiter for ROCm
- **flash-attn**: Flash Attention for ROCm
### :warning: Notes
- These wheels are built for **ROCm ${ROCM_VERSION}** and will NOT work with CUDA GPUs
- Supported GPU architectures: ${PYTORCH_ROCM_ARCH}
- Platform: Linux x86_64 only
### :package: Docker Image Release
To download and upload the image:
\`\`\`
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-rocm-base
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-rocm
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-rocm-base vllm/vllm-openai-rocm:${BUILDKITE_COMMIT}-base
docker tag vllm/vllm-openai-rocm:${BUILDKITE_COMMIT}-base vllm/vllm-openai-rocm:latest-base
docker tag vllm/vllm-openai-rocm:${BUILDKITE_COMMIT}-base vllm/vllm-openai-rocm:v${RELEASE_VERSION}-base
docker push vllm/vllm-openai-rocm:latest-base
docker push vllm/vllm-openai-rocm:v${RELEASE_VERSION}-base
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:${BUILDKITE_COMMIT}-rocm vllm/vllm-openai-rocm:${BUILDKITE_COMMIT}
docker tag vllm/vllm-openai-rocm:${BUILDKITE_COMMIT} vllm/vllm-openai-rocm:latest
docker tag vllm/vllm-openai-rocm:${BUILDKITE_COMMIT} vllm/vllm-openai-rocm:v${RELEASE_VERSION}
docker push vllm/vllm-openai-rocm:latest
docker push vllm/vllm-openai-rocm:v${RELEASE_VERSION}
\`\`\`
EOF

View File

@@ -83,7 +83,7 @@ case "${1:-}" in
exit 1
fi
WHEEL_COUNT=$(find artifacts/rocm-base-wheels -maxdepth 1 -name '*.whl' 2>/dev/null | wc -l)
WHEEL_COUNT=$(ls artifacts/rocm-base-wheels/*.whl 2>/dev/null | wc -l)
if [[ "$WHEEL_COUNT" -eq 0 ]]; then
echo "ERROR: No wheels found in artifacts/rocm-base-wheels/" >&2
exit 1
@@ -110,9 +110,9 @@ case "${1:-}" in
echo ""
echo "Downloaded wheels:"
find artifacts/rocm-base-wheels -maxdepth 1 -name '*.whl' -exec ls -lh {} \;
ls -lh artifacts/rocm-base-wheels/
WHEEL_COUNT=$(find artifacts/rocm-base-wheels -maxdepth 1 -name '*.whl' 2>/dev/null | wc -l)
WHEEL_COUNT=$(ls artifacts/rocm-base-wheels/*.whl 2>/dev/null | wc -l)
echo ""
echo "Total: $WHEEL_COUNT wheels"
echo "========================================"

View File

@@ -1,242 +0,0 @@
#!/bin/bash
#
# cherry-pick-from-milestone.sh
# Find commits from a GitHub milestone that are missing from the current branch
# and output them in chronological order for cherry-picking.
#
# Usage: ./cherry-pick-from-milestone.sh <milestone> [--dry-run] [--execute]
#
set -euo pipefail
# Colors for output
RED='\033[0;31m'
GREEN='\033[0;32m'
YELLOW='\033[1;33m'
BLUE='\033[0;34m'
NC='\033[0m' # No Color
usage() {
cat <<EOF
Usage: $(basename "$0") <milestone> [options]
Find commits from a GitHub milestone that need to be cherry-picked into the current branch.
Arguments:
milestone The GitHub milestone name (e.g., v0.14.0)
Options:
--dry-run Show the cherry-pick commands without executing (default)
--execute Actually execute the cherry-picks
--main-branch Specify the main branch name (default: main)
--help Show this help message
Examples:
$(basename "$0") v0.14.0
$(basename "$0") v0.14.0 --dry-run
$(basename "$0") v0.14.0 --execute
$(basename "$0") v0.14.0 --main-branch master
EOF
exit 1
}
log_info() {
echo -e "${BLUE}[INFO]${NC} $1"
}
log_success() {
echo -e "${GREEN}[OK]${NC} $1"
}
log_warn() {
echo -e "${YELLOW}[WARN]${NC} $1"
}
log_error() {
echo -e "${RED}[ERROR]${NC} $1" >&2
}
# Default values
MILESTONE=""
DRY_RUN=true
MAIN_BRANCH="main"
# Parse arguments
while [[ $# -gt 0 ]]; do
case $1 in
--dry-run)
DRY_RUN=true
shift
;;
--execute)
DRY_RUN=false
shift
;;
--main-branch)
MAIN_BRANCH="$2"
shift 2
;;
--help|-h)
usage
;;
-*)
log_error "Unknown option: $1"
usage
;;
*)
if [[ -z "$MILESTONE" ]]; then
MILESTONE="$1"
else
log_error "Unexpected argument: $1"
usage
fi
shift
;;
esac
done
# Validate milestone argument
if [[ -z "$MILESTONE" ]]; then
log_error "Milestone is required"
usage
fi
# Check if we're in a git repository
if ! git rev-parse --is-inside-work-tree &>/dev/null; then
log_error "Not in a git repository"
exit 1
fi
# Check if gh CLI is available
if ! command -v gh &>/dev/null; then
log_error "GitHub CLI (gh) is not installed"
exit 1
fi
# Check if authenticated with gh
if ! gh auth status &>/dev/null; then
log_error "Not authenticated with GitHub CLI. Run 'gh auth login' first."
exit 1
fi
CURRENT_BRANCH=$(git branch --show-current)
log_info "Current branch: ${CURRENT_BRANCH}"
log_info "Main branch: ${MAIN_BRANCH}"
log_info "Milestone: ${MILESTONE}"
echo ""
# Fetch latest from remote
log_info "Fetching latest from remote..."
git fetch origin "$MAIN_BRANCH" --quiet
# Get merged PRs from the milestone, sorted by merge date
log_info "Fetching merged PRs from milestone '${MILESTONE}'..."
# Store PR data in a temp file
PR_DATA=$(mktemp)
trap 'rm -f "$PR_DATA"' EXIT
if ! gh pr list --state merged --search "milestone:${MILESTONE}" \
--limit 1000 \
--json number,title,mergeCommit,mergedAt \
--jq 'sort_by(.mergedAt) | .[] | "\(.mergeCommit.oid)\t\(.number)\t\(.title)"' > "$PR_DATA" 2>/dev/null; then
log_error "Failed to fetch PRs from milestone '${MILESTONE}'"
log_error "This could be due to:"
log_error " - Milestone does not exist"
log_error " - Network/authentication issues"
log_error " - Invalid milestone name format"
exit 1
fi
if [[ ! -s "$PR_DATA" ]]; then
log_warn "No merged PRs found for milestone '${MILESTONE}'"
exit 0
fi
TOTAL_PRS=$(wc -l < "$PR_DATA")
log_info "Found ${TOTAL_PRS} merged PR(s) in milestone"
echo ""
# Find commits that are missing from current branch
MISSING_COMMITS=()
MISSING_INFO=()
while IFS=$'\t' read -r sha pr_number title; do
# Skip if SHA is empty or null
if [[ -z "$sha" || "$sha" == "null" ]]; then
log_warn "PR #${pr_number} has no merge commit SHA, skipping"
continue
fi
# Check if this commit is already in the current branch
if git merge-base --is-ancestor "$sha" HEAD 2>/dev/null; then
log_success "PR #${pr_number} already in branch: ${title:0:60}"
else
log_warn "PR #${pr_number} MISSING: ${title:0:60}"
MISSING_COMMITS+=("$sha")
MISSING_INFO+=("$sha PR #${pr_number}: ${title}")
fi
done < "$PR_DATA"
echo ""
if [[ ${#MISSING_COMMITS[@]} -eq 0 ]]; then
log_success "All PRs from milestone '${MILESTONE}' are already in the current branch!"
exit 0
fi
log_info "Found ${#MISSING_COMMITS[@]} missing commit(s) to cherry-pick"
echo ""
# Output the cherry-pick commands
echo "=========================================="
echo "Cherry-pick commands (in chronological order):"
echo "=========================================="
echo ""
for info in "${MISSING_INFO[@]}"; do
echo "# $info"
done
echo ""
echo "# Run these commands to cherry-pick all missing commits:"
echo "git cherry-pick ${MISSING_COMMITS[*]}"
echo ""
# Or one by one
echo "# Or cherry-pick one at a time:"
for sha in "${MISSING_COMMITS[@]}"; do
echo "git cherry-pick $sha"
done
echo ""
# Execute if requested
if [[ "$DRY_RUN" == false ]]; then
echo "=========================================="
log_info "Executing cherry-picks..."
echo "=========================================="
for i in "${!MISSING_COMMITS[@]}"; do
sha="${MISSING_COMMITS[$i]}"
info="${MISSING_INFO[$i]}"
echo ""
log_info "Cherry-picking: $info"
if git cherry-pick "$sha"; then
log_success "Successfully cherry-picked $sha"
else
log_error "Failed to cherry-pick $sha"
log_error "Resolve conflicts and run 'git cherry-pick --continue', or 'git cherry-pick --abort' to cancel"
exit 1
fi
done
echo ""
log_success "All cherry-picks completed successfully!"
else
echo "=========================================="
echo -e "${YELLOW}Dry run mode - no changes made${NC}"
echo "Run with --execute to perform the cherry-picks"
echo "=========================================="
fi

View File

@@ -112,7 +112,7 @@ def parse_from_filename(file: str) -> WheelFileInfo:
def generate_project_list(subdir_names: list[str], comment: str = "") -> str:
"""
Generate project list HTML content linking to each project & variant subdirectory.
Generate project list HTML content linking to each project & variant sub-directory.
"""
href_tags = []
for name in sorted(subdir_names):
@@ -168,23 +168,23 @@ def generate_index_and_metadata(
comment (str | None): Optional comment to include in the generated HTML files.
First, parse all wheel files to extract metadata.
We need to collect all wheel files for each variant, and generate an index for it (in a subdirectory).
We need to collect all wheel files for each variant, and generate an index for it (in a sub-directory).
The index for the default variant (if any) is generated in the root index directory.
If `default_variant` is provided, all wheels must have variant suffixes, and the default variant index
is purely a copy of the corresponding variant index, with only the links adjusted.
Otherwise, all wheels without variant suffixes are treated as the default variant.
If `alias_to_default` is provided, an additional alias subdirectory is created, it has the same content
If `alias_to_default` is provided, an additional alias sub-directory is created, it has the same content
as the default variant index, but the links are adjusted accordingly.
Index directory structure:
index_base_dir/ (hosted at wheels.vllm.ai/{nightly,$commit,$version}/)
index.html # project list, linking to "vllm/" and other packages, and all variant subdirectories
index.html # project list, linking to "vllm/" and other packages, and all variant sub-directories
vllm/
index.html # package index, pointing to actual files in wheel_base_dir (relative path)
metadata.json # machine-readable metadata for all wheels in this package
cpu/ # cpu variant subdirectory
cpu/ # cpu variant sub-directory
index.html
vllm/
index.html
@@ -194,7 +194,7 @@ def generate_index_and_metadata(
vllm/
index.html
metadata.json
cu130/ # cu130 variant subdirectory
cu130/ # cu130 variant sub-directory
index.html
vllm/
index.html

View File

@@ -1,37 +1,25 @@
#!/bin/bash
# This script runs tests inside the corresponding ROCm docker container.
# It handles both single-node and multi-node test configurations.
#
# Multi-node detection: Instead of matching on fragile group names, we detect
# multi-node jobs structurally by looking for the bracket command syntax
# "[node0_cmds] && [node1_cmds]" or via the NUM_NODES environment variable.
# This script runs test inside the corresponding ROCm docker container.
set -o pipefail
# Export Python path
export PYTHONPATH=".."
###############################################################################
# Helper Functions
###############################################################################
# Print ROCm version
echo "--- Confirming Clean Initial State"
while true; do
sleep 3
if grep -q clean /opt/amdgpu/etc/gpu_state; then
echo "GPUs state is \"clean\""
break
fi
done
wait_for_clean_gpus() {
local timeout=${1:-300}
local start=$SECONDS
echo "--- Waiting for clean GPU state (timeout: ${timeout}s)"
while true; do
if grep -q clean /opt/amdgpu/etc/gpu_state; then
echo "GPUs state is \"clean\""
return
fi
if (( SECONDS - start >= timeout )); then
echo "Error: GPUs did not reach clean state within ${timeout}s" >&2
exit 1
fi
sleep 3
done
}
echo "--- ROCm info"
rocminfo
# cleanup older docker images
cleanup_docker() {
# Get Docker's root directory
docker_root=$(docker info -f '{{.DockerRootDir}}')
@@ -40,12 +28,15 @@ cleanup_docker() {
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 $threshold%. Cleaning up Docker images and volumes..."
# Remove dangling images (those that are not tagged and not used by any container)
docker image prune -f
# Remove unused volumes / force the system prune for old images as well.
docker volume prune -f && docker system prune --force --filter "until=72h" --all
echo "Docker images and volumes cleanup completed."
else
@@ -53,259 +44,201 @@ cleanup_docker() {
fi
}
cleanup_network() {
local max_nodes=${NUM_NODES:-2}
for node in $(seq 0 $((max_nodes - 1))); do
if docker ps -a -q -f name="node${node}" | grep -q .; then
docker stop "node${node}" || true
fi
done
if docker network ls | grep -q docker-net; then
docker network rm docker-net || true
fi
}
is_multi_node() {
local cmds="$1"
# Primary signal: NUM_NODES environment variable set by the pipeline
if [[ "${NUM_NODES:-1}" -gt 1 ]]; then
return 0
fi
# Fallback: detect the bracket syntax structurally
# Pattern: [...] && [...] (per-node command arrays)
if [[ "$cmds" =~ \[.*\].*\&\&.*\[.*\] ]]; then
return 0
fi
return 1
}
###############################################################################
# Pytest marker re-quoting
#
# When commands are passed through Buildkite -> shell -> $* -> bash -c,
# quotes around pytest -m marker expressions get stripped:
# pytest -v -s -m 'not cpu_test' v1/core
# becomes:
# pytest -v -s -m not cpu_test v1/core
#
# pytest then interprets "cpu_test" as a file path, not part of the marker.
# This function detects unquoted multi-word marker expressions and re-quotes
# them so they survive the final bash -c expansion.
###############################################################################
re_quote_pytest_markers() {
local cmds="$1"
# Pattern: -m not <identifier> -> -m 'not <identifier>'
# Handles the common cases: 'not cpu_test', 'not slow_test', etc.
cmds=$(echo "$cmds" | sed -E "s/-m not ([a-zA-Z_][a-zA-Z0-9_]*)/-m 'not \1'/g")
echo "$cmds"
}
###############################################################################
# ROCm-specific pytest command rewrites
#
# These apply ignore flags and environment overrides for tests that are not
# yet supported or behave differently on ROCm hardware. Kept as a single
# function so new exclusions are easy to add in one place.
###############################################################################
apply_rocm_test_overrides() {
local cmds="$1"
# --- Model registry filter ---
if [[ $cmds == *"pytest -v -s models/test_registry.py"* ]]; then
cmds=${cmds//"pytest -v -s models/test_registry.py"/"pytest -v -s models/test_registry.py -k 'not BambaForCausalLM and not GritLM and not Mamba2ForCausalLM and not Zamba2ForCausalLM'"}
fi
# --- LoRA: disable custom paged attention ---
if [[ $cmds == *"pytest -v -s lora"* ]]; then
cmds=${cmds//"pytest -v -s lora"/"VLLM_ROCM_CUSTOM_PAGED_ATTN=0 pytest -v -s lora"}
fi
# --- Kernel ignores ---
if [[ $cmds == *" kernels/core"* ]]; then
cmds="${cmds} \
--ignore=kernels/core/test_fused_quant_layernorm.py \
--ignore=kernels/core/test_permute_cols.py"
fi
if [[ $cmds == *" kernels/attention"* ]]; then
cmds="${cmds} \
--ignore=kernels/attention/test_attention_selector.py \
--ignore=kernels/attention/test_encoder_decoder_attn.py \
--ignore=kernels/attention/test_flash_attn.py \
--ignore=kernels/attention/test_flashinfer.py \
--ignore=kernels/attention/test_prefix_prefill.py \
--ignore=kernels/attention/test_cascade_flash_attn.py \
--ignore=kernels/attention/test_mha_attn.py \
--ignore=kernels/attention/test_lightning_attn.py \
--ignore=kernels/attention/test_attention.py"
fi
if [[ $cmds == *" kernels/quantization"* ]]; then
cmds="${cmds} \
--ignore=kernels/quantization/test_int8_quant.py \
--ignore=kernels/quantization/test_machete_mm.py \
--ignore=kernels/quantization/test_block_fp8.py \
--ignore=kernels/quantization/test_block_int8.py \
--ignore=kernels/quantization/test_marlin_gemm.py \
--ignore=kernels/quantization/test_cutlass_scaled_mm.py \
--ignore=kernels/quantization/test_int8_kernel.py"
fi
if [[ $cmds == *" kernels/mamba"* ]]; then
cmds="${cmds} \
--ignore=kernels/mamba/test_mamba_mixer2.py \
--ignore=kernels/mamba/test_causal_conv1d.py \
--ignore=kernels/mamba/test_mamba_ssm_ssd.py"
fi
if [[ $cmds == *" kernels/moe"* ]]; then
cmds="${cmds} \
--ignore=kernels/moe/test_moe.py \
--ignore=kernels/moe/test_cutlass_moe.py \
--ignore=kernels/moe/test_triton_moe_ptpc_fp8.py"
fi
# --- Entrypoint ignores ---
if [[ $cmds == *" entrypoints/openai "* ]]; then
cmds=${cmds//" entrypoints/openai "/" entrypoints/openai \
--ignore=entrypoints/openai/test_audio.py \
--ignore=entrypoints/openai/test_shutdown.py \
--ignore=entrypoints/openai/test_completion.py \
--ignore=entrypoints/openai/test_models.py \
--ignore=entrypoints/openai/test_lora_adapters.py \
--ignore=entrypoints/openai/test_return_tokens_as_ids.py \
--ignore=entrypoints/openai/test_root_path.py \
--ignore=entrypoints/openai/test_tokenization.py \
--ignore=entrypoints/openai/test_prompt_validation.py "}
fi
if [[ $cmds == *" entrypoints/llm "* ]]; then
cmds=${cmds//" entrypoints/llm "/" entrypoints/llm \
--ignore=entrypoints/llm/test_chat.py \
--ignore=entrypoints/llm/test_accuracy.py \
--ignore=entrypoints/llm/test_init.py \
--ignore=entrypoints/llm/test_prompt_validation.py "}
fi
# Clean up escaped newlines from --ignore appends
cmds=$(echo "$cmds" | sed 's/ \\ / /g')
echo "$cmds"
}
###############################################################################
# Main
###############################################################################
# --- GPU initialization ---
echo "--- Confirming Clean Initial State"
wait_for_clean_gpus
echo "--- ROCm info"
rocminfo
# --- Docker housekeeping ---
# Call the cleanup docker function
cleanup_docker
echo "--- Resetting GPUs"
echo "reset" > /opt/amdgpu/etc/gpu_state
wait_for_clean_gpus
# --- Pull test image ---
echo "reset" > /opt/amdgpu/etc/gpu_state
while true; do
sleep 3
if grep -q clean /opt/amdgpu/etc/gpu_state; then
echo "GPUs state is \"clean\""
break
fi
done
echo "--- Pulling container"
image_name="rocm/vllm-ci:${BUILDKITE_COMMIT}"
container_name="rocm_${BUILDKITE_COMMIT}_$(tr -dc A-Za-z0-9 < /dev/urandom | head -c 10; echo)"
docker pull "${image_name}"
remove_docker_container() {
docker rm -f "${container_name}" || docker image rm -f "${image_name}" || true
docker rm -f "${container_name}" || docker image rm -f "${image_name}" || true
}
trap remove_docker_container EXIT
# --- Prepare commands ---
echo "--- Running container"
HF_CACHE="$(realpath ~)/huggingface"
mkdir -p "${HF_CACHE}"
HF_MOUNT="/root/.cache/huggingface"
commands="$*"
echo "Raw commands: $commands"
commands=$@
echo "Commands:$commands"
# Fix quoting before ROCm overrides (so overrides see correct structure)
commands=$(re_quote_pytest_markers "$commands")
commands=$(apply_rocm_test_overrides "$commands")
echo "Final commands: $commands"
commands=${commands//"pytest -v -s basic_correctness/test_basic_correctness.py"/"pytest -v -s basic_correctness/test_basic_correctness.py"}
if [[ $commands == *"pytest -v -s models/test_registry.py"* ]]; then
commands=${commands//"pytest -v -s models/test_registry.py"/"pytest -v -s models/test_registry.py -k 'not BambaForCausalLM and not GritLM and not Mamba2ForCausalLM and not Zamba2ForCausalLM'"}
fi
commands=${commands//"pytest -v -s compile/test_basic_correctness.py"/"pytest -v -s compile/test_basic_correctness.py"}
if [[ $commands == *"pytest -v -s lora"* ]]; then
commands=${commands//"pytest -v -s lora"/"VLLM_ROCM_CUSTOM_PAGED_ATTN=0 pytest -v -s lora"}
fi
#ignore certain kernels tests
if [[ $commands == *" kernels/core"* ]]; then
commands="${commands} \
--ignore=kernels/core/test_fused_quant_layernorm.py \
--ignore=kernels/core/test_permute_cols.py"
fi
if [[ $commands == *" kernels/attention"* ]]; then
commands="${commands} \
--ignore=kernels/attention/test_attention_selector.py \
--ignore=kernels/attention/test_encoder_decoder_attn.py \
--ignore=kernels/attention/test_flash_attn.py \
--ignore=kernels/attention/test_flashinfer.py \
--ignore=kernels/attention/test_prefix_prefill.py \
--ignore=kernels/attention/test_cascade_flash_attn.py \
--ignore=kernels/attention/test_mha_attn.py \
--ignore=kernels/attention/test_lightning_attn.py \
--ignore=kernels/attention/test_attention.py"
fi
if [[ $commands == *" kernels/quantization"* ]]; then
commands="${commands} \
--ignore=kernels/quantization/test_int8_quant.py \
--ignore=kernels/quantization/test_machete_mm.py \
--ignore=kernels/quantization/test_block_fp8.py \
--ignore=kernels/quantization/test_block_int8.py \
--ignore=kernels/quantization/test_marlin_gemm.py \
--ignore=kernels/quantization/test_cutlass_scaled_mm.py \
--ignore=kernels/quantization/test_int8_kernel.py"
fi
if [[ $commands == *" kernels/mamba"* ]]; then
commands="${commands} \
--ignore=kernels/mamba/test_mamba_mixer2.py \
--ignore=kernels/mamba/test_causal_conv1d.py \
--ignore=kernels/mamba/test_mamba_ssm_ssd.py"
fi
if [[ $commands == *" kernels/moe"* ]]; then
commands="${commands} \
--ignore=kernels/moe/test_moe.py \
--ignore=kernels/moe/test_cutlass_moe.py \
--ignore=kernels/moe/test_triton_moe_ptpc_fp8.py"
fi
#ignore certain Entrypoints/openai tests
if [[ $commands == *" entrypoints/openai "* ]]; then
commands=${commands//" entrypoints/openai "/" entrypoints/openai \
--ignore=entrypoints/openai/test_audio.py \
--ignore=entrypoints/openai/test_shutdown.py \
--ignore=entrypoints/openai/test_completion.py \
--ignore=entrypoints/openai/test_models.py \
--ignore=entrypoints/openai/test_lora_adapters.py \
--ignore=entrypoints/openai/test_return_tokens_as_ids.py \
--ignore=entrypoints/openai/test_root_path.py \
--ignore=entrypoints/openai/test_tokenization.py \
--ignore=entrypoints/openai/test_prompt_validation.py "}
fi
#ignore certain Entrypoints/llm tests
if [[ $commands == *" entrypoints/llm "* ]]; then
commands=${commands//" entrypoints/llm "/" entrypoints/llm \
--ignore=entrypoints/llm/test_chat.py \
--ignore=entrypoints/llm/test_accuracy.py \
--ignore=entrypoints/llm/test_init.py \
--ignore=entrypoints/llm/test_prompt_validation.py "}
fi
# --ignore=entrypoints/openai/test_encoder_decoder.py \
# --ignore=entrypoints/openai/test_embedding.py \
# --ignore=entrypoints/openai/test_oot_registration.py
# --ignore=entrypoints/openai/test_accuracy.py \
# --ignore=entrypoints/openai/test_models.py <= Fails on MI250 but passes on MI300 as of 2025-03-13
PARALLEL_JOB_COUNT=8
MYPYTHONPATH=".."
# Verify GPU access
# Test that we're launching on the machine that has
# proper access to GPUs
render_gid=$(getent group render | cut -d: -f3)
if [[ -z "$render_gid" ]]; then
echo "Error: 'render' group not found. This is required for GPU access." >&2
exit 1
fi
# --- Route: multi-node vs single-node ---
if is_multi_node "$commands"; then
echo "--- Multi-node job detected"
export DCKR_VER=$(docker --version | sed 's/Docker version \(.*\), build .*/\1/')
# Parse the bracket syntax: prefix ; [node0_cmds] && [node1_cmds]
# BASH_REMATCH[1] = prefix (everything before first bracket)
# BASH_REMATCH[2] = comma-separated node0 commands
# BASH_REMATCH[3] = comma-separated node1 commands
if [[ "$commands" =~ ^(.*)\[(.*)"] && ["(.*)\]$ ]]; then
prefix=$(echo "${BASH_REMATCH[1]}" | sed 's/;//g')
echo "PREFIX: ${prefix}"
export composite_command="(command rocm-smi || true)"
saved_IFS=$IFS
IFS=','
read -ra node0 <<< "${BASH_REMATCH[2]}"
read -ra node1 <<< "${BASH_REMATCH[3]}"
IFS=$saved_IFS
if [[ ${#node0[@]} -ne ${#node1[@]} ]]; then
echo "Warning: node0 has ${#node0[@]} commands, node1 has ${#node1[@]}. They will be paired by index."
# check if the command contains shard flag, we will run all shards in parallel because the host have 8 GPUs.
if [[ $commands == *"--shard-id="* ]]; then
# assign job count as the number of shards used
commands=$(echo "$commands" | sed -E "s/--num-shards[[:blank:]]*=[[:blank:]]*[0-9]*/--num-shards=${PARALLEL_JOB_COUNT} /g" | sed 's/ \\ / /g')
for GPU in $(seq 0 $(($PARALLEL_JOB_COUNT-1))); do
# assign shard-id for each shard
commands_gpu=$(echo "$commands" | sed -E "s/--shard-id[[:blank:]]*=[[:blank:]]*[0-9]*/--shard-id=${GPU} /g" | sed 's/ \\ / /g')
echo "Shard ${GPU} commands:$commands_gpu"
echo "Render devices: $BUILDKITE_AGENT_META_DATA_RENDER_DEVICES"
docker run \
--device /dev/kfd $BUILDKITE_AGENT_META_DATA_RENDER_DEVICES \
--network=host \
--shm-size=16gb \
--group-add "$render_gid" \
--rm \
-e HIP_VISIBLE_DEVICES="${GPU}" \
-e HF_TOKEN \
-e AWS_ACCESS_KEY_ID \
-e AWS_SECRET_ACCESS_KEY \
-v "${HF_CACHE}:${HF_MOUNT}" \
-e "HF_HOME=${HF_MOUNT}" \
-e "PYTHONPATH=${MYPYTHONPATH}" \
--name "${container_name}_${GPU}" \
"${image_name}" \
/bin/bash -c "${commands_gpu}" \
|& while read -r line; do echo ">>Shard $GPU: $line"; done &
PIDS+=($!)
done
#wait for all processes to finish and collect exit codes
for pid in "${PIDS[@]}"; do
wait "${pid}"
STATUS+=($?)
done
at_least_one_shard_with_tests=0
for st in "${STATUS[@]}"; do
if [[ ${st} -ne 0 ]] && [[ ${st} -ne 5 ]]; then
echo "One of the processes failed with $st"
exit "${st}"
elif [[ ${st} -eq 5 ]]; then
echo "Shard exited with status 5 (no tests collected) - treating as success"
else # This means st is 0
at_least_one_shard_with_tests=1
fi
for i in "${!node0[@]}"; do
command_node_0=$(echo "${node0[i]}" | sed 's/\"//g')
command_node_1=$(echo "${node1[i]}" | sed 's/\"//g')
step_cmd="./.buildkite/scripts/run-multi-node-test.sh /vllm-workspace/tests 2 2 ${image_name} '${command_node_0}' '${command_node_1}'"
echo "COMMANDS: ${step_cmd}"
composite_command="${composite_command} && ${step_cmd}"
done
/bin/bash -c "${composite_command}"
cleanup_network
else
echo "Multi-node job detected but failed to parse bracket command syntax."
echo "Expected format: prefix ; [node0_cmd1, node0_cmd2] && [node1_cmd1, node1_cmd2]"
echo "Got: $commands"
cleanup_network
exit 111
done
if [[ ${#STATUS[@]} -gt 0 && ${at_least_one_shard_with_tests} -eq 0 ]]; then
echo "All shards reported no tests collected. Failing the build."
exit 1
fi
else
echo "--- Single-node job"
echo "Render devices: $BUILDKITE_AGENT_META_DATA_RENDER_DEVICES"
docker run \
--device /dev/kfd $BUILDKITE_AGENT_META_DATA_RENDER_DEVICES \
--network=host \
--shm-size=16gb \
--group-add "$render_gid" \
--rm \
-e HF_TOKEN \
-e AWS_ACCESS_KEY_ID \
-e AWS_SECRET_ACCESS_KEY \
-v "${HF_CACHE}:${HF_MOUNT}" \
-e "HF_HOME=${HF_MOUNT}" \
-e "PYTHONPATH=${MYPYTHONPATH}" \
--name "${container_name}" \
"${image_name}" \
/bin/bash -c "${commands}"
--device /dev/kfd $BUILDKITE_AGENT_META_DATA_RENDER_DEVICES \
--network=host \
--shm-size=16gb \
--group-add "$render_gid" \
--rm \
-e HF_TOKEN \
-e AWS_ACCESS_KEY_ID \
-e AWS_SECRET_ACCESS_KEY \
-v "${HF_CACHE}:${HF_MOUNT}" \
-e "HF_HOME=${HF_MOUNT}" \
-e "PYTHONPATH=${MYPYTHONPATH}" \
--name "${container_name}" \
"${image_name}" \
/bin/bash -c "${commands}"
fi

View File

@@ -1,26 +0,0 @@
#!/bin/bash
set -euox pipefail
echo "--- PP+TP"
vllm serve meta-llama/Llama-3.2-3B-Instruct -tp=2 -pp=2 &
server_pid=$!
timeout 600 bash -c "until curl localhost:8000/v1/models; do sleep 1; done" || exit 1
vllm bench serve \
--backend vllm \
--dataset-name random \
--model meta-llama/Llama-3.2-3B-Instruct \
--num-prompts 20 \
--endpoint /v1/completions
kill -s SIGTERM $server_pid &
echo "--- DP+TP"
vllm serve meta-llama/Llama-3.2-3B-Instruct -tp=2 -dp=2 &
server_pid=$!
timeout 600 bash -c "until curl localhost:8000/v1/models; do sleep 1; done" || exit 1
vllm bench serve \
--backend vllm \
--dataset-name random \
--model meta-llama/Llama-3.2-3B-Instruct \
--num-prompts 20 \
--endpoint /v1/completions
kill -s SIGTERM $server_pid &

View File

@@ -27,7 +27,7 @@ function cpu_tests() {
podman exec -it "$container_id" bash -c "
export TORCH_COMPILE_DISABLE=1
set -xve
python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m" >> "$HOME"/test_basic.log
python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m" >> $HOME/test_basic.log
# Run basic model test
podman exec -it "$container_id" bash -c "
@@ -43,7 +43,7 @@ function cpu_tests() {
pytest -v -s tests/models/language/generation/test_common.py::test_models[False-False-5-32-google/gemma-1.1-2b-it]
pytest -v -s tests/models/language/pooling/test_classification.py::test_models[float-jason9693/Qwen2.5-1.5B-apeach]
# TODO: Below test case tests/models/language/pooling/test_embedding.py::test_models[True-ssmits/Qwen2-7B-Instruct-embed-base] fails on ppc64le. Disabling it for time being.
# pytest -v -s tests/models/language/pooling/test_embedding.py -m cpu_model" >> "$HOME"/test_rest.log
# pytest -v -s tests/models/language/pooling/test_embedding.py -m cpu_model" >> $HOME/test_rest.log
}
# All of CPU tests are expected to be finished less than 40 mins.

View File

@@ -2,19 +2,119 @@
# 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 -euox pipefail
set -ex
# allow to bind to different cores
CORE_RANGE=${CORE_RANGE:-48-95}
# used for TP/PP E2E test
OMP_CORE_RANGE=${OMP_CORE_RANGE:-48-95}
NUMA_NODE=${NUMA_NODE:-1}
IMAGE_NAME="cpu-test-$NUMA_NODE"
TIMEOUT_VAL=$1
TEST_COMMAND=$2
# building the docker image
echo "--- :docker: Building Docker image"
docker build --progress plain --tag "$IMAGE_NAME" --target vllm-test -f docker/Dockerfile.cpu .
export CMAKE_BUILD_PARALLEL_LEVEL=32
# Setup cleanup
remove_docker_container() {
set -e;
docker rm -f cpu-test-"$NUMA_NODE" cpu-test-"$NUMA_NODE"-avx2 || true;
}
trap remove_docker_container EXIT
remove_docker_container
# Try building the docker image
numactl -C "$CORE_RANGE" -N "$NUMA_NODE" docker build --progress plain --tag cpu-test-"$NUMA_NODE" --target vllm-test -f docker/Dockerfile.cpu .
numactl -C "$CORE_RANGE" -N "$NUMA_NODE" docker build --progress plain --build-arg VLLM_CPU_DISABLE_AVX512="true" --tag cpu-test-"$NUMA_NODE"-avx2 --target vllm-test -f docker/Dockerfile.cpu .
# Run the image, setting --shm-size=4g for tensor parallel.
docker run --rm --cpuset-cpus="$CORE_RANGE" --cpuset-mems="$NUMA_NODE" -v ~/.cache/huggingface:/root/.cache/huggingface --privileged=true -e HF_TOKEN -e VLLM_CPU_KVCACHE_SPACE=16 -e VLLM_CPU_CI_ENV=1 -e VLLM_CPU_SIM_MULTI_NUMA=1 --shm-size=4g "$IMAGE_NAME" \
timeout "$TIMEOUT_VAL" bash -c "set -euox pipefail; echo \"--- Print packages\"; pip list; echo \"--- Running tests\"; ${TEST_COMMAND}"
docker run -itd --cpuset-cpus="$CORE_RANGE" --cpuset-mems="$NUMA_NODE" --entrypoint /bin/bash -v ~/.cache/huggingface:/root/.cache/huggingface --privileged=true -e HF_TOKEN --env VLLM_CPU_KVCACHE_SPACE=16 --env VLLM_CPU_CI_ENV=1 -e E2E_OMP_THREADS="$OMP_CORE_RANGE" --shm-size=4g --name cpu-test-"$NUMA_NODE" cpu-test-"$NUMA_NODE"
docker run -itd --cpuset-cpus="$CORE_RANGE" --cpuset-mems="$NUMA_NODE" --entrypoint /bin/bash -v ~/.cache/huggingface:/root/.cache/huggingface --privileged=true -e HF_TOKEN --env VLLM_CPU_KVCACHE_SPACE=16 --env VLLM_CPU_CI_ENV=1 -e E2E_OMP_THREADS="$OMP_CORE_RANGE" --shm-size=4g --name cpu-test-"$NUMA_NODE"-avx2 cpu-test-"$NUMA_NODE"-avx2
function cpu_tests() {
set -e
export NUMA_NODE=$2
# list packages
docker exec cpu-test-"$NUMA_NODE"-avx2 bash -c "
set -e
pip list"
docker exec cpu-test-"$NUMA_NODE" bash -c "
set -e
pip list"
# offline inference
docker exec cpu-test-"$NUMA_NODE"-avx2 bash -c "
set -e
python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m"
# Run kernel tests
docker exec cpu-test-"$NUMA_NODE" bash -c "
set -e
pytest -x -v -s tests/kernels/attention/test_cpu_attn.py
pytest -x -v -s tests/kernels/moe/test_cpu_fused_moe.py
pytest -x -v -s tests/kernels/test_onednn.py"
# Run basic model test
docker exec cpu-test-"$NUMA_NODE" bash -c "
set -e
# Note: disable until supports V1
# pytest -x -v -s tests/kernels/attention/test_cache.py -m cpu_model
# pytest -x -v -s tests/kernels/attention/test_mla_decode_cpu.py -m cpu_model
pytest -x -v -s tests/models/language/generation -m cpu_model
VLLM_CPU_SGL_KERNEL=1 pytest -x -v -s tests/models/language/generation -m cpu_model
pytest -x -v -s tests/models/language/pooling -m cpu_model
pytest -x -v -s tests/models/multimodal/generation \
--ignore=tests/models/multimodal/generation/test_pixtral.py \
-m cpu_model"
# Run compressed-tensor test
docker exec cpu-test-"$NUMA_NODE" bash -c "
set -e
pytest -x -s -v \
tests/quantization/test_compressed_tensors.py::test_compressed_tensors_w8a8_logprobs"
# Run AWQ/GPTQ test
docker exec cpu-test-"$NUMA_NODE" bash -c "
set -e
pytest -x -s -v \
tests/quantization/test_cpu_wna16.py"
# Run multi-lora tests
docker exec cpu-test-"$NUMA_NODE" bash -c "
set -e
pytest -x -s -v \
tests/lora/test_qwenvl.py"
# online serving: tp+pp
docker exec cpu-test-"$NUMA_NODE" bash -c '
set -e
VLLM_CPU_OMP_THREADS_BIND=$E2E_OMP_THREADS VLLM_CPU_SGL_KERNEL=1 vllm serve meta-llama/Llama-3.2-3B-Instruct -tp=2 -pp=2 &
server_pid=$!
timeout 600 bash -c "until curl localhost:8000/v1/models; do sleep 1; done" || exit 1
vllm bench serve \
--backend vllm \
--dataset-name random \
--model meta-llama/Llama-3.2-3B-Instruct \
--num-prompts 20 \
--endpoint /v1/completions
kill -s SIGTERM $server_pid &'
# online serving: tp+dp
docker exec cpu-test-"$NUMA_NODE" bash -c '
set -e
VLLM_CPU_OMP_THREADS_BIND=$E2E_OMP_THREADS VLLM_CPU_SGL_KERNEL=1 vllm serve meta-llama/Llama-3.2-3B-Instruct -tp=2 -dp=2 &
server_pid=$!
timeout 600 bash -c "until curl localhost:8000/v1/models; do sleep 1; done" || exit 1
vllm bench serve \
--backend vllm \
--dataset-name random \
--model meta-llama/Llama-3.2-3B-Instruct \
--num-prompts 20 \
--endpoint /v1/completions
kill -s SIGTERM $server_pid &'
}
# All of CPU tests are expected to be finished less than 40 mins.
export -f cpu_tests
timeout 2.5h bash -c "cpu_tests $CORE_RANGE $NUMA_NODE"

View File

@@ -5,9 +5,7 @@
set -exuo pipefail
# Try building the docker image
image_name="hpu/upstream-vllm-ci:${BUILDKITE_COMMIT}"
container_name="hpu-upstream-vllm-ci-${BUILDKITE_COMMIT}-container"
cat <<EOF | docker build -t "${image_name}" -f - .
cat <<EOF | docker build -t hpu-plugin-v1-test-env -f - .
FROM gaudi-base-image:latest
COPY ./ /workspace/vllm
@@ -17,8 +15,7 @@ WORKDIR /workspace/vllm
ENV no_proxy=localhost,127.0.0.1
ENV PT_HPU_ENABLE_LAZY_COLLECTIVES=true
RUN bash -c 'pip install -r <(sed "/^torch/d" requirements/build.txt)'
RUN VLLM_TARGET_DEVICE=empty pip install --no-build-isolation -e .
RUN VLLM_TARGET_DEVICE=empty pip install .
RUN pip install git+https://github.com/vllm-project/vllm-gaudi.git
# install development dependencies (for testing)
@@ -39,20 +36,15 @@ EOF
# functions, while other platforms only need one remove_docker_container
# function.
EXITCODE=1
remove_docker_containers() { docker rm -f "${container_name}" || true; }
remove_docker_containers() { docker rm -f hpu-plugin-v1-test || true; }
trap 'remove_docker_containers; exit $EXITCODE;' EXIT
remove_docker_containers
echo "Running HPU plugin v1 test"
docker run --rm --runtime=habana --name="${container_name}" --network=host \
docker run --rm --runtime=habana --name=hpu-plugin-v1-test --network=host \
-e HABANA_VISIBLE_DEVICES=all \
-e VLLM_SKIP_WARMUP=true \
-e PT_HPU_ENABLE_LAZY_COLLECTIVES=true \
-e PT_HPU_LAZY_MODE=1 \
"${image_name}" \
/bin/bash -c '
cd vllm; timeout 120s python -u examples/offline_inference/basic/generate.py --model facebook/opt-125m
'
hpu-plugin-v1-test-env \
/bin/bash "/workspace/vllm-gaudi/tests/upstream_tests/ci_tests.sh"
EXITCODE=$?
if [ $EXITCODE -eq 0 ]; then

View File

@@ -41,7 +41,6 @@ get_config() {
echo "Error: file '${TEST_RUN_CONFIG_FILE}' does not exist in the warehouse" >&2
exit 1
fi
# shellcheck source=/dev/null
source "${TEST_RUN_CONFIG_FILE}"
echo "Base docker image name that get from configuration: ${BASE_IMAGE_NAME}"
return 0
@@ -49,8 +48,9 @@ get_config() {
# get test running configuration.
fetch_vllm_test_cfg
get_config
# Check if the function call was successful. If not, exit the script.
if ! get_config; then
if [ $? -ne 0 ]; then
exit 1
fi
@@ -62,14 +62,14 @@ agent_idx=$(echo "${BUILDKITE_AGENT_NAME}" | awk -F'-' '{print $(NF-1)}')
echo "agent_idx: ${agent_idx}"
builder_name="cachebuilder${agent_idx}"
builder_cache_dir="/mnt/docker-cache${agent_idx}"
mkdir -p "${builder_cache_dir}"
mkdir -p ${builder_cache_dir}
# Try building the docker image
cat <<EOF | DOCKER_BUILDKIT=1 docker build \
--add-host cache-service-vllm.nginx-pypi-cache.svc.cluster.local:"${PYPI_CACHE_HOST}" \
--builder "${builder_name}" --cache-from type=local,src="${builder_cache_dir}" \
--cache-to type=local,dest="${builder_cache_dir}",mode=max \
--progress=plain --load -t "${image_name}" -f - .
--add-host cache-service-vllm.nginx-pypi-cache.svc.cluster.local:${PYPI_CACHE_HOST} \
--builder ${builder_name} --cache-from type=local,src=${builder_cache_dir} \
--cache-to type=local,dest=${builder_cache_dir},mode=max \
--progress=plain --load -t ${image_name} -f - .
FROM ${BASE_IMAGE_NAME}
# Define environments
@@ -116,7 +116,7 @@ RUN --mount=type=cache,target=/root/.cache/pip \
export PIP_EXTRA_INDEX_URL=https://mirrors.huaweicloud.com/ascend/repos/pypi && \
source /usr/local/Ascend/ascend-toolkit/set_env.sh && \
source /usr/local/Ascend/nnal/atb/set_env.sh && \
export LD_LIBRARY_PATH=\$LD_LIBRARY_PATH:/usr/local/Ascend/ascend-toolkit/latest/$(uname -i)-linux/devlib && \
export LD_LIBRARY_PATH=\$LD_LIBRARY_PATH:/usr/local/Ascend/ascend-toolkit/latest/`uname -i`-linux/devlib && \
python3 -m pip install -v -e /workspace/vllm-ascend/ --extra-index https://download.pytorch.org/whl/cpu/
ENV VLLM_WORKER_MULTIPROC_METHOD=spawn
@@ -139,7 +139,7 @@ trap remove_docker_container EXIT
# Generate corresponding --device args based on BUILDKITE_AGENT_NAME
# Ascend NPU BUILDKITE_AGENT_NAME format is {hostname}-{agent_idx}-{npu_card_num}cards, and agent_idx starts from 1.
# e.g. atlas-a2-001-1-2cards means this is the 1-th agent on atlas-a2-001 host, and it has 2 NPU cards.
# returns one argument per line: --device, /dev/davinciX, ...
# returns --device /dev/davinci0 --device /dev/davinci1
parse_and_gen_devices() {
local input="$1"
local index cards_num
@@ -151,24 +151,29 @@ parse_and_gen_devices() {
return 1
fi
local devices=""
local i=0
while (( i < cards_num )); do
local dev_idx=$(((index - 1)*cards_num + i ))
printf '%s\n' "--device"
printf '%s\n' "/dev/davinci${dev_idx}"
devices="$devices --device /dev/davinci${dev_idx}"
((i++))
done
# trim leading space
devices="${devices#"${devices%%[![:space:]]*}"}"
# Output devices: assigned to the caller variable
printf '%s' "$devices"
}
mapfile -t device_args < <(parse_and_gen_devices "${BUILDKITE_AGENT_NAME}") || exit 1
devices=$(parse_and_gen_devices "${BUILDKITE_AGENT_NAME}") || exit 1
# Run the image and execute the Out-Of-Tree (OOT) platform interface test case on Ascend NPU hardware.
# This test checks whether the OOT platform interface is functioning properly in conjunction with
# the hardware plugin vllm-ascend.
model_cache_dir=/mnt/modelscope${agent_idx}
mkdir -p "${model_cache_dir}"
mkdir -p ${model_cache_dir}
docker run \
"${device_args[@]}" \
${devices} \
--device /dev/davinci_manager \
--device /dev/devmm_svm \
--device /dev/hisi_hdc \
@@ -177,7 +182,7 @@ docker run \
-v /usr/local/Ascend/driver/lib64/:/usr/local/Ascend/driver/lib64/ \
-v /usr/local/Ascend/driver/version.info:/usr/local/Ascend/driver/version.info \
-v /etc/ascend_install.info:/etc/ascend_install.info \
-v "${model_cache_dir}":/root/.cache/modelscope \
-v ${model_cache_dir}:/root/.cache/modelscope \
--entrypoint="" \
--name "${container_name}" \
"${image_name}" \

View File

@@ -61,7 +61,7 @@ echo "Results will be stored in: $RESULTS_DIR"
echo "--- Installing Python dependencies ---"
python3 -m pip install --progress-bar off git+https://github.com/thuml/depyf.git \
&& python3 -m pip install --progress-bar off pytest pytest-asyncio tpu-info \
&& python3 -m pip install --progress-bar off "lm-eval[api]>=0.4.11" \
&& python3 -m pip install --progress-bar off "lm-eval[api]>=0.4.9.2" \
&& python3 -m pip install --progress-bar off hf-transfer tblib==3.1.0
echo "--- Python dependencies installed ---"

View File

@@ -61,7 +61,7 @@ echo "Results will be stored in: $RESULTS_DIR"
echo "--- Installing Python dependencies ---"
python3 -m pip install --progress-bar off git+https://github.com/thuml/depyf.git \
&& python3 -m pip install --progress-bar off pytest pytest-asyncio tpu-info \
&& python3 -m pip install --progress-bar off "lm-eval[api]>=0.4.11" \
&& python3 -m pip install --progress-bar off "lm-eval[api]>=0.4.9.2" \
&& python3 -m pip install --progress-bar off hf-transfer tblib==3.1.0
echo "--- Python dependencies installed ---"

View File

@@ -8,7 +8,7 @@ image_name="xpu/vllm-ci:${BUILDKITE_COMMIT}"
container_name="xpu_${BUILDKITE_COMMIT}_$(tr -dc A-Za-z0-9 < /dev/urandom | head -c 10; echo)"
# Try building the docker image
docker build -t "${image_name}" -f docker/Dockerfile.xpu .
docker build -t ${image_name} -f docker/Dockerfile.xpu .
# Setup cleanup
remove_docker_container() {
@@ -38,18 +38,15 @@ docker run \
python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 -O3 -cc.cudagraph_mode=NONE
python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 --enforce-eager -tp 2 --distributed-executor-backend ray
python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 --enforce-eager -tp 2 --distributed-executor-backend mp
python3 examples/offline_inference/basic/generate.py --model Intel/Qwen2.5-0.5B-W4A16-G128-AutoRound-LLMC-TEST-ONLY --enforce-eager
python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 --enforce-eager --attention-backend=TRITON_ATTN
python3 examples/offline_inference/basic/generate.py --model facebook/opt-125m --block-size 64 --enforce-eager --quantization fp8
python3 examples/offline_inference/basic/generate.py --model superjob/Qwen3-4B-Instruct-2507-GPTQ-Int4 --block-size 64 --enforce-eager
python3 examples/offline_inference/basic/generate.py --model ibm-research/PowerMoE-3b --block-size 64 --enforce-eager -tp 2
python3 examples/offline_inference/basic/generate.py --model ibm-research/PowerMoE-3b --block-size 64 --enforce-eager -tp 2 --enable-expert-parallel
cd tests
pytest -v -s v1/core --ignore=v1/core/test_reset_prefix_cache_e2e.py
pytest -v -s v1/core
pytest -v -s v1/engine
pytest -v -s v1/sample --ignore=v1/sample/test_logprobs.py --ignore=v1/sample/test_logprobs_e2e.py
pytest -v -s v1/worker --ignore=v1/worker/test_gpu_model_runner.py
pytest -v -s v1/structured_output
pytest -v -s v1/spec_decode --ignore=v1/spec_decode/test_max_len.py --ignore=v1/spec_decode/test_tree_attention.py --ignore=v1/spec_decode/test_speculators_eagle3.py --ignore=v1/spec_decode/test_acceptance_length.py
pytest -v -s v1/spec_decode --ignore=v1/spec_decode/test_max_len.py --ignore=v1/spec_decode/test_tree_attention.py --ignore=v1/spec_decode/test_speculators_eagle3.py
pytest -v -s v1/kv_connector/unit --ignore=v1/kv_connector/unit/test_multi_connector.py --ignore=v1/kv_connector/unit/test_nixl_connector.py --ignore=v1/kv_connector/unit/test_example_connector.py --ignore=v1/kv_connector/unit/test_lmcache_integration.py
pytest -v -s v1/test_serial_utils.py
'

View File

@@ -21,16 +21,16 @@ echo "Pushing original tag $ORIG_TAG_NAME$ORIG_TAG_SUFFIX to new nightly tag nam
# pull original arch-dependent images from AWS ECR Public
aws ecr-public get-login-password --region us-east-1 | docker login --username AWS --password-stdin public.ecr.aws/q9t5s3a7
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:"$ORIG_TAG_NAME"-x86_64"$ORIG_TAG_SUFFIX"
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:"$ORIG_TAG_NAME"-aarch64"$ORIG_TAG_SUFFIX"
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:$ORIG_TAG_NAME-x86_64$ORIG_TAG_SUFFIX
docker pull public.ecr.aws/q9t5s3a7/vllm-release-repo:$ORIG_TAG_NAME-aarch64$ORIG_TAG_SUFFIX
# tag arch-dependent images
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:"$ORIG_TAG_NAME"-x86_64"$ORIG_TAG_SUFFIX" vllm/vllm-openai:"$TAG_NAME"-x86_64
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:"$ORIG_TAG_NAME"-aarch64"$ORIG_TAG_SUFFIX" vllm/vllm-openai:"$TAG_NAME"-aarch64
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$ORIG_TAG_NAME-x86_64$ORIG_TAG_SUFFIX vllm/vllm-openai:$TAG_NAME-x86_64
docker tag public.ecr.aws/q9t5s3a7/vllm-release-repo:$ORIG_TAG_NAME-aarch64$ORIG_TAG_SUFFIX vllm/vllm-openai:$TAG_NAME-aarch64
# push arch-dependent images to DockerHub
docker push vllm/vllm-openai:"$TAG_NAME"-x86_64
docker push vllm/vllm-openai:"$TAG_NAME"-aarch64
docker push vllm/vllm-openai:$TAG_NAME-x86_64
docker push vllm/vllm-openai:$TAG_NAME-aarch64
# push arch-independent manifest to DockerHub
docker manifest create vllm/vllm-openai:"$TAG_NAME" vllm/vllm-openai:"$TAG_NAME"-x86_64 vllm/vllm-openai:"$TAG_NAME"-aarch64 --amend
docker manifest create vllm/vllm-openai:"$TAG_NAME"-"$BUILDKITE_COMMIT" vllm/vllm-openai:"$TAG_NAME"-x86_64 vllm/vllm-openai:"$TAG_NAME"-aarch64 --amend
docker manifest push vllm/vllm-openai:"$TAG_NAME"
docker manifest push vllm/vllm-openai:"$TAG_NAME"-"$BUILDKITE_COMMIT"
docker manifest create vllm/vllm-openai:$TAG_NAME vllm/vllm-openai:$TAG_NAME-x86_64 vllm/vllm-openai:$TAG_NAME-aarch64 --amend
docker manifest create vllm/vllm-openai:$TAG_NAME-$BUILDKITE_COMMIT vllm/vllm-openai:$TAG_NAME-x86_64 vllm/vllm-openai:$TAG_NAME-aarch64 --amend
docker manifest push vllm/vllm-openai:$TAG_NAME
docker manifest push vllm/vllm-openai:$TAG_NAME-$BUILDKITE_COMMIT

View File

@@ -0,0 +1,64 @@
#!/bin/bash
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
# Setup script for Prime-RL integration tests
# This script prepares the environment for running Prime-RL tests with nightly vLLM
set -euo pipefail
SCRIPT_DIR="$(cd "$(dirname "${BASH_SOURCE[0]}")" && pwd)"
REPO_ROOT="$(cd "${SCRIPT_DIR}/../.." && pwd)"
PRIME_RL_REPO="https://github.com/PrimeIntellect-ai/prime-rl.git"
PRIME_RL_DIR="${REPO_ROOT}/prime-rl"
if command -v rocm-smi &> /dev/null || command -v rocminfo &> /dev/null; then
echo "AMD GPU detected. Prime-RL currently only supports NVIDIA. Skipping..."
exit 0
fi
echo "Setting up Prime-RL integration test environment..."
# Clean up any existing Prime-RL directory
if [ -d "${PRIME_RL_DIR}" ]; then
echo "Removing existing Prime-RL directory..."
rm -rf "${PRIME_RL_DIR}"
fi
# Install UV if not available
if ! command -v uv &> /dev/null; then
echo "Installing UV package manager..."
curl -LsSf https://astral.sh/uv/install.sh | sh
source $HOME/.local/bin/env
fi
# Clone Prime-RL repository at specific branch for reproducible tests
PRIME_RL_BRANCH="integ-vllm-main"
echo "Cloning Prime-RL repository at branch: ${PRIME_RL_BRANCH}..."
git clone --branch "${PRIME_RL_BRANCH}" --single-branch "${PRIME_RL_REPO}" "${PRIME_RL_DIR}"
cd "${PRIME_RL_DIR}"
echo "Setting up UV project environment..."
export UV_PROJECT_ENVIRONMENT=/usr/local
ln -s /usr/bin/python3 /usr/local/bin/python
# Remove vllm pin from pyproject.toml
echo "Removing vllm pin from pyproject.toml..."
sed -i '/vllm==/d' pyproject.toml
# Sync Prime-RL dependencies
echo "Installing Prime-RL dependencies..."
uv sync --inexact && uv sync --inexact --all-extras
# Verify installation
echo "Verifying installations..."
uv run python -c "import vllm; print(f'vLLM version: {vllm.__version__}')"
uv run python -c "import prime_rl; print('Prime-RL imported successfully')"
echo "Prime-RL integration test environment setup complete!"
echo "Running Prime-RL integration tests..."
export WANDB_MODE=offline # this makes this test not require a WANDB_API_KEY
uv run pytest -vs tests/integration/test_rl.py -m gpu
echo "Prime-RL integration tests completed!"

View File

@@ -43,6 +43,7 @@ trap cleanup EXIT
for BACK in "${BACKENDS[@]}"; do
VLLM_DEEP_GEMM_WARMUP=skip \
VLLM_ALL2ALL_BACKEND=$BACK \
vllm serve "$MODEL" \
--enforce-eager \
--tensor-parallel-size 2 \
@@ -51,14 +52,13 @@ for BACK in "${BACKENDS[@]}"; do
--enable-eplb \
--trust-remote-code \
--max-model-len 2048 \
--all2all-backend "$BACK" \
--port "$PORT" &
--port $PORT &
SERVER_PID=$!
wait_for_server "$PORT"
wait_for_server $PORT
TAG=$(echo "$MODEL" | tr '/: \\n' '_____')
OUT="${OUT_DIR}/${TAG}_${BACK}.json"
python3 tests/evals/gsm8k/gsm8k_eval.py --host http://127.0.0.1 --port "$PORT" --num-questions "${NUM_Q}" --save-results "${OUT}"
python3 tests/evals/gsm8k/gsm8k_eval.py --host http://127.0.0.1 --port $PORT --num-questions ${NUM_Q} --save-results ${OUT}
python3 - <<PY
import json; acc=json.load(open('${OUT}'))['accuracy']
print(f"${MODEL} ${BACK}: accuracy {acc:.3f}")

View File

@@ -1,57 +0,0 @@
#!/usr/bin/env bash
set -euxo pipefail
# Nightly e2e test for prefetch offloading with a MoE model.
# Runs DeepSeek-V2-Lite with prefetch offloading of MoE expert weights
# and validates GSM8K accuracy matches baseline (no offloading).
#
# args: [THRESHOLD] [NUM_QUESTIONS] [START_PORT]
THRESHOLD=${1:-0.25}
NUM_Q=${2:-1319}
PORT=${3:-8030}
OUT_DIR=${OUT_DIR:-/tmp/vllm-scheduled}
mkdir -p "${OUT_DIR}"
wait_for_server() {
local port=$1
timeout 600 bash -c '
until curl -sf "http://127.0.0.1:'"$port"'/health" > /dev/null; do
sleep 1
done'
}
MODEL="deepseek-ai/DeepSeek-V2-Lite"
cleanup() {
if [[ -n "${SERVER_PID:-}" ]] && kill -0 "${SERVER_PID}" 2>/dev/null; then
kill "${SERVER_PID}" 2>/dev/null || true
for _ in {1..20}; do
kill -0 "${SERVER_PID}" 2>/dev/null || break
sleep 0.5
done
kill -9 "${SERVER_PID}" 2>/dev/null || true
fi
}
trap cleanup EXIT
vllm serve "$MODEL" \
--max-model-len 2048 \
--offload-group-size 8 \
--offload-num-in-group 2 \
--offload-prefetch-step 1 \
--offload-params w13_weight w2_weight \
--port "$PORT" &
SERVER_PID=$!
wait_for_server "$PORT"
TAG=$(echo "$MODEL" | tr '/: \\n' '_____')
OUT="${OUT_DIR}/${TAG}_prefetch_offload.json"
python3 tests/evals/gsm8k/gsm8k_eval.py --host http://127.0.0.1 --port "$PORT" --num-questions "${NUM_Q}" --save-results "${OUT}"
python3 - <<PY
import json; acc=json.load(open('${OUT}'))['accuracy']
print(f"${MODEL} prefetch_offload: accuracy {acc:.3f}")
assert acc >= ${THRESHOLD}, f"${MODEL} prefetch_offload accuracy {acc}"
PY
cleanup
SERVER_PID=

View File

@@ -47,20 +47,20 @@ for BACK in "${BACKENDS[@]}"; do
vllm serve "$MODEL" \
--enforce-eager \
--enable-eplb \
--all2all-backend "$BACK" \
--all2all-backend $BACK \
--eplb-config '{"window_size":10, "step_interval":100, "num_redundant_experts":0, "log_balancedness":true}' \
--tensor-parallel-size "${TENSOR_PARALLEL_SIZE}" \
--data-parallel-size "${DATA_PARALLEL_SIZE}" \
--tensor-parallel-size ${TENSOR_PARALLEL_SIZE} \
--data-parallel-size ${DATA_PARALLEL_SIZE} \
--enable-expert-parallel \
--trust-remote-code \
--max-model-len 2048 \
--port "$PORT" &
--port $PORT &
SERVER_PID=$!
wait_for_server "$PORT"
wait_for_server $PORT
TAG=$(echo "$MODEL" | tr '/: \\n' '_____')
OUT="${OUT_DIR}/${TAG}_${BACK}.json"
python3 tests/evals/gsm8k/gsm8k_eval.py --host http://127.0.0.1 --port "$PORT" --num-questions "${NUM_Q}" --save-results "${OUT}"
python3 tests/evals/gsm8k/gsm8k_eval.py --host http://127.0.0.1 --port $PORT --num-questions ${NUM_Q} --save-results ${OUT}
python3 - <<PY
import json; acc=json.load(open('${OUT}'))['accuracy']
print(f"${MODEL} ${BACK}: accuracy {acc:.3f}")

View File

@@ -18,18 +18,15 @@ wait_for_server() {
MODEL="Qwen/Qwen3-Next-80B-A3B-Instruct"
# Set BACKENDS and platform-specific args based on platform
# Set BACKENDS based on platform
if command -v rocm-smi &> /dev/null || [[ -d /opt/rocm ]] || [[ -n "${ROCM_PATH:-}" ]]; then
# ROCm platform
BACKENDS=("allgather_reducescatter")
# Disable MOE padding for ROCm since it is causing eplb to fail
export VLLM_ROCM_MOE_PADDING=0
PLATFORM_ARGS=("--no-async-scheduling")
echo "Disabled async scheduling for ROCm platform due to issues with spec decode."
else
# Non-ROCm platform (CUDA/other)
BACKENDS=("deepep_high_throughput" "deepep_low_latency")
PLATFORM_ARGS=()
fi
cleanup() {
@@ -51,20 +48,19 @@ for BACK in "${BACKENDS[@]}"; do
--tensor-parallel-size 4 \
--enable-expert-parallel \
--enable-eplb \
--all2all-backend "$BACK" \
--all2all-backend $BACK \
--eplb-config '{"window_size":200,"step_interval":600,"use_async":true}' \
--speculative-config '{"method":"qwen3_next_mtp","num_speculative_tokens":1}' \
--trust-remote-code \
--max-model-len 2048 \
--gpu-memory-utilization 0.9 \
"${PLATFORM_ARGS[@]}" \
--port "$PORT" &
--port $PORT &
SERVER_PID=$!
wait_for_server "$PORT"
wait_for_server $PORT
TAG=$(echo "$MODEL" | tr '/: \\n' '_____')
OUT="${OUT_DIR}/${TAG}_${BACK}.json"
python3 tests/evals/gsm8k/gsm8k_eval.py --host http://127.0.0.1 --port "$PORT" --num-questions "${NUM_Q}" --save-results "${OUT}"
python3 tests/evals/gsm8k/gsm8k_eval.py --host http://127.0.0.1 --port $PORT --num-questions ${NUM_Q} --save-results ${OUT}
python3 - <<PY
import json; acc=json.load(open('${OUT}'))['accuracy']
print(f"${MODEL} ${BACK}: accuracy {acc:.3f}")

View File

@@ -9,11 +9,10 @@ ENV_FILE=$1
# For testing on local vm, use `set -a` to export all variables
source /etc/environment
# shellcheck source=/dev/null
source "$ENV_FILE"
source $ENV_FILE
remove_docker_container() {
docker rm -f "$CONTAINER_NAME" || true;
docker rm -f $CONTAINER_NAME || true;
}
trap remove_docker_container EXIT
@@ -42,13 +41,13 @@ echo
echo "starting docker...$CONTAINER_NAME"
echo
docker run \
-v "$DOWNLOAD_DIR":"$DOWNLOAD_DIR" \
--env-file "$ENV_FILE" \
-v $DOWNLOAD_DIR:$DOWNLOAD_DIR \
--env-file $ENV_FILE \
-e HF_TOKEN="$HF_TOKEN" \
-e TARGET_COMMIT="$BUILDKITE_COMMIT" \
-e MODEL="$MODEL" \
-e TARGET_COMMIT=$BUILDKITE_COMMIT \
-e MODEL=$MODEL \
-e WORKSPACE=/workspace \
--name "$CONTAINER_NAME" \
--name $CONTAINER_NAME \
-d \
--privileged \
--network host \

View File

@@ -42,21 +42,21 @@ echo "lanching vllm..."
echo "logging to $VLLM_LOG"
echo
vllm serve "$MODEL" \
vllm serve $MODEL \
--seed 42 \
--max-num-seqs "$MAX_NUM_SEQS" \
--max-num-batched-tokens "$MAX_NUM_BATCHED_TOKENS" \
--tensor-parallel-size "$TENSOR_PARALLEL_SIZE" \
--max-num-seqs $MAX_NUM_SEQS \
--max-num-batched-tokens $MAX_NUM_BATCHED_TOKENS \
--tensor-parallel-size $TENSOR_PARALLEL_SIZE \
--no-enable-prefix-caching \
--download_dir "$DOWNLOAD_DIR" \
--max-model-len "$MAX_MODEL_LEN" > "$VLLM_LOG" 2>&1 &
--download_dir $DOWNLOAD_DIR \
--max-model-len $MAX_MODEL_LEN > "$VLLM_LOG" 2>&1 &
echo "wait for 20 minutes.."
echo
# sleep 1200
# wait for 10 minutes...
for _ in {1..120}; do
for i in {1..120}; do
# TODO: detect other type of errors.
if grep -Fq "raise RuntimeError" "$VLLM_LOG"; then
echo "Detected RuntimeError, exiting."
@@ -78,11 +78,11 @@ echo "logging to $BM_LOG"
echo
vllm bench serve \
--backend vllm \
--model "$MODEL" \
--model $MODEL \
--dataset-name sonnet \
--dataset-path benchmarks/sonnet_4x.txt \
--sonnet-input-len "$INPUT_LEN" \
--sonnet-output-len "$OUTPUT_LEN" \
--sonnet-input-len $INPUT_LEN \
--sonnet-output-len $OUTPUT_LEN \
--ignore-eos > "$BM_LOG"
echo "completed..."

View File

@@ -1,227 +0,0 @@
#!/bin/bash
#
# trigger-ci-build.sh
# Trigger a Buildkite CI build using the bk CLI for the current commit and branch
# with RUN_ALL=1 and NIGHTLY=1 environment variables.
#
# Usage: ./trigger-ci-build.sh [options]
#
# Requires: bk CLI (https://buildkite.com/docs/platform/cli)
#
# SAFETY: Dry-run by default. Use --execute to actually trigger a build.
#
set -euo pipefail
# Colors for output
RED='\033[0;31m'
GREEN='\033[0;32m'
YELLOW='\033[1;33m'
BLUE='\033[0;34m'
NC='\033[0m' # No Color
# Default configuration
PIPELINE="ci"
DRY_RUN=true
usage() {
cat <<EOF
Usage: $(basename "$0") [options]
Trigger a Buildkite CI build using the bk CLI for the current commit and branch.
Sets RUN_ALL=1 and NIGHTLY=1 environment variables.
SAFETY: Dry-run by default. Use --execute to actually trigger a build.
Options:
--execute Actually trigger the build (default: dry-run)
--pipeline Buildkite pipeline slug (default: ${PIPELINE})
--commit Override commit SHA (default: current HEAD)
--branch Override branch name (default: current branch)
--message Custom build message (default: auto-generated)
--help Show this help message
Prerequisites:
- bk CLI installed: brew tap buildkite/buildkite && brew install buildkite/buildkite/bk
- bk configured: bk configure
Examples:
$(basename "$0") # Dry-run, show what would happen
$(basename "$0") --execute # Actually trigger the build
$(basename "$0") --pipeline ci-shadow # Dry-run with different pipeline
EOF
exit 1
}
log_info() {
echo -e "${BLUE}[INFO]${NC} $1"
}
log_success() {
echo -e "${GREEN}[OK]${NC} $1"
}
log_warn() {
echo -e "${YELLOW}[WARN]${NC} $1"
}
log_error() {
echo -e "${RED}[ERROR]${NC} $1" >&2
}
# Parse arguments
COMMIT=""
BRANCH=""
MESSAGE=""
while [[ $# -gt 0 ]]; do
case $1 in
--execute)
DRY_RUN=false
shift
;;
--pipeline)
PIPELINE="$2"
shift 2
;;
--commit)
COMMIT="$2"
shift 2
;;
--branch)
BRANCH="$2"
shift 2
;;
--message)
MESSAGE="$2"
shift 2
;;
--help|-h)
usage
;;
-*)
log_error "Unknown option: $1"
usage
;;
*)
log_error "Unexpected argument: $1"
usage
;;
esac
done
# Check if bk CLI is installed
if ! command -v bk &>/dev/null; then
log_error "Buildkite CLI (bk) is not installed"
echo ""
echo "Install with:"
echo " brew tap buildkite/buildkite && brew install buildkite/buildkite/bk"
echo ""
echo "Then configure:"
echo " bk configure"
exit 1
fi
# Check if we're in a git repository
if ! git rev-parse --is-inside-work-tree &>/dev/null; then
log_error "Not in a git repository"
exit 1
fi
# Get current commit and branch if not overridden
if [[ -z "$COMMIT" ]]; then
COMMIT=$(git rev-parse HEAD)
fi
if [[ -z "$BRANCH" ]]; then
BRANCH=$(git branch --show-current)
if [[ -z "$BRANCH" ]]; then
# Detached HEAD state - try to get branch from ref
BRANCH=$(git rev-parse --abbrev-ref HEAD)
fi
fi
# Generate default message if not provided
if [[ -z "$MESSAGE" ]]; then
COMMIT_MSG=$(git log -1 --pretty=format:"%s" "$COMMIT" 2>/dev/null || echo "Manual build")
MESSAGE="[Manual] ${COMMIT_MSG}"
fi
# Safety check: Verify the commit exists on the remote
log_info "Verifying commit exists on remote..."
git fetch origin --quiet 2>/dev/null || true
# Check if commit is reachable from any remote branch
REMOTE_BRANCHES=$(git branch -r --contains "$COMMIT" 2>/dev/null || true)
if [[ -z "$REMOTE_BRANCHES" ]]; then
log_error "Commit ${COMMIT} does not exist on any remote branch!"
echo ""
echo "The CI system will fail to checkout this commit."
echo "Please push your changes first:"
echo ""
echo " git push origin ${BRANCH}"
echo ""
exit 1
fi
log_success "Commit found on remote branches:"
echo "$REMOTE_BRANCHES" | head -5 | sed 's/^/ /'
if [[ $(echo "$REMOTE_BRANCHES" | wc -l) -gt 5 ]]; then
echo " ... and more"
fi
echo ""
log_info "Pipeline: ${PIPELINE}"
log_info "Branch: ${BRANCH}"
log_info "Commit: ${COMMIT}"
log_info "Message: ${MESSAGE}"
log_info "Environment: RUN_ALL=1, NIGHTLY=1"
echo ""
# Build the command
CMD=(bk build create
-y
-w
-i
--pipeline "${PIPELINE}"
--commit "${COMMIT}"
--branch "${BRANCH}"
--message "${MESSAGE}"
--env "RUN_ALL=1"
--env "NIGHTLY=1"
)
if [[ "$DRY_RUN" == true ]]; then
echo "=========================================="
log_warn "DRY-RUN MODE - No build will be triggered"
echo "=========================================="
echo ""
echo "Command that would be executed:"
echo ""
# Escape single quotes in values for safe shell display
escape_for_shell() {
printf '%s' "$1" | sed "s/'/'\\\\''/g"
}
echo " bk build create \\"
echo " -y \\"
echo " -w \\"
echo " -i \\"
echo " --pipeline '$(escape_for_shell "${PIPELINE}")' \\"
echo " --commit '$(escape_for_shell "${COMMIT}")' \\"
echo " --branch '$(escape_for_shell "${BRANCH}")' \\"
echo " --message '$(escape_for_shell "${MESSAGE}")' \\"
echo " --env 'RUN_ALL=1' \\"
echo " --env 'NIGHTLY=1'"
echo ""
echo "=========================================="
echo -e "${YELLOW}To actually trigger this build, run:${NC}"
echo ""
echo " $0 --execute"
echo "=========================================="
exit 0
fi
log_info "Triggering build..."
# Execute the command - bk will print the URL and open browser
"${CMD[@]}"

View File

@@ -76,15 +76,16 @@ mkdir -p "$INDICES_OUTPUT_DIR"
# this indices have relative paths that could work as long as it is next to the wheel directory in s3
# i.e., the wheels are always in s3://vllm-wheels/<commit>/
# and indices can be placed in /<commit>/, or /nightly/, or /<version>/
alias_args=()
if [[ -n "$DEFAULT_VARIANT_ALIAS" ]]; then
alias_args=(--alias-to-default "$DEFAULT_VARIANT_ALIAS")
if [[ ! -z "$DEFAULT_VARIANT_ALIAS" ]]; then
alias_arg="--alias-to-default $DEFAULT_VARIANT_ALIAS"
else
alias_arg=""
fi
# HACK: we do not need regex module here, but it is required by pre-commit hook
# To avoid any external dependency, we simply replace it back to the stdlib re module
sed -i 's/import regex as re/import re/g' .buildkite/scripts/generate-nightly-index.py
$PYTHON .buildkite/scripts/generate-nightly-index.py --version "$SUBPATH" --current-objects "$obj_json" --output-dir "$INDICES_OUTPUT_DIR" --comment "commit $BUILDKITE_COMMIT" "${alias_args[@]}"
$PYTHON .buildkite/scripts/generate-nightly-index.py --version "$SUBPATH" --current-objects "$obj_json" --output-dir "$INDICES_OUTPUT_DIR" --comment "commit $BUILDKITE_COMMIT" $alias_arg
# copy indices to /<commit>/ unconditionally
echo "Uploading indices to $S3_COMMIT_PREFIX"
@@ -99,9 +100,9 @@ fi
# re-generate and copy to /<pure_version>/ only if it does not have "dev" in the version
if [[ "$version" != *"dev"* ]]; then
echo "Re-generating indices for /$pure_version/"
rm -rf "${INDICES_OUTPUT_DIR:?}/*"
rm -rf "$INDICES_OUTPUT_DIR/*"
mkdir -p "$INDICES_OUTPUT_DIR"
# wheel-dir is overridden to be the commit directory, so that the indices point to the correct wheel path
$PYTHON .buildkite/scripts/generate-nightly-index.py --version "$pure_version" --wheel-dir "$SUBPATH" --current-objects "$obj_json" --output-dir "$INDICES_OUTPUT_DIR" --comment "version $pure_version" "${alias_args[@]}"
$PYTHON .buildkite/scripts/generate-nightly-index.py --version "$pure_version" --wheel-dir "$SUBPATH" --current-objects "$obj_json" --output-dir "$INDICES_OUTPUT_DIR" --comment "version $pure_version" $alias_arg
aws s3 cp --recursive "$INDICES_OUTPUT_DIR/" "s3://$BUCKET/$pure_version/"
fi

View File

@@ -7,19 +7,17 @@ SUBPATH=$BUILDKITE_COMMIT
S3_COMMIT_PREFIX="s3://$BUCKET/$SUBPATH/"
RELEASE_VERSION=$(buildkite-agent meta-data get release-version)
GIT_VERSION=$(git describe --exact-match --tags "$BUILDKITE_COMMIT" 2>/dev/null)
echo "Release version from Buildkite: $RELEASE_VERSION"
if [[ -z "$GIT_VERSION" ]]; then
GIT_VERSION=$(git describe --exact-match --tags $BUILDKITE_COMMIT 2>/dev/null)
if [ -z "$GIT_VERSION" ]; then
echo "[FATAL] Not on a git tag, cannot create release."
exit 1
else
echo "Git version for commit $BUILDKITE_COMMIT: $GIT_VERSION"
fi
# sanity check for version mismatch
if [[ "$RELEASE_VERSION" != "$GIT_VERSION" ]]; then
if [[ "$FORCE_RELEASE_IGNORE_VERSION_MISMATCH" == "true" ]]; then
if [ "$RELEASE_VERSION" != "$GIT_VERSION" ]; then
if [ "$FORCE_RELEASE_IGNORE_VERSION_MISMATCH" == "true" ]; then
echo "[WARNING] Force release and ignore version mismatch"
else
echo "[FATAL] Release version from Buildkite does not match Git version."
@@ -29,7 +27,7 @@ fi
PURE_VERSION=${RELEASE_VERSION#v} # remove leading 'v'
# check pypi token
if [[ -z "$PYPI_TOKEN" ]]; then
if [ -z "$PYPI_TOKEN" ]; then
echo "[FATAL] PYPI_TOKEN is not set."
exit 1
else
@@ -37,8 +35,41 @@ else
export TWINE_PASSWORD="$PYPI_TOKEN"
fi
# check github token
if [ -z "$GITHUB_TOKEN" ]; then
echo "[FATAL] GITHUB_TOKEN is not set."
exit 1
else
export GH_TOKEN="$GITHUB_TOKEN"
fi
set -x # avoid printing secrets above
# download gh CLI from github
# Get latest gh CLI version from GitHub API
GH_VERSION=$(curl -s https://api.github.com/repos/cli/cli/releases/latest | grep '"tag_name":' | sed -E 's/.*"([^"]+)".*/\1/' | sed 's/^v//')
if [ -z "$GH_VERSION" ]; then
echo "[FATAL] Failed to get latest gh CLI version from GitHub"
exit 1
fi
echo "Downloading gh CLI version: $GH_VERSION"
GH_TARBALL="gh_${GH_VERSION}_linux_amd64.tar.gz"
GH_URL="https://github.com/cli/cli/releases/download/v${GH_VERSION}/${GH_TARBALL}"
GH_INSTALL_DIR="/tmp/gh-install"
mkdir -p "$GH_INSTALL_DIR"
pushd "$GH_INSTALL_DIR"
curl -L -o "$GH_TARBALL" "$GH_URL"
tar -xzf "$GH_TARBALL"
GH_BIN=$(realpath $(find . -name "gh" -type f -executable | head -n 1))
if [ -z "$GH_BIN" ]; then
echo "[FATAL] Failed to find gh CLI executable"
exit 1
fi
echo "gh CLI downloaded successfully, version: $($GH_BIN --version)"
echo "Last 5 releases on GitHub:" # as a sanity check of gh and GH_TOKEN
command "$GH_BIN" release list --limit 5
popd
# install twine from pypi
python3 -m venv /tmp/vllm-release-env
source /tmp/vllm-release-env/bin/activate
@@ -55,16 +86,19 @@ mkdir -p $DIST_DIR
aws s3 cp --recursive --exclude "*" --include "vllm-${PURE_VERSION}*.whl" --exclude "*dev*" --exclude "*rc[0-9]*" "$S3_COMMIT_PREFIX" $DIST_DIR
echo "Wheels copied to local directory"
# generate source tarball
git archive --format=tar.gz --output="$DIST_DIR/vllm-${PURE_VERSION}.tar.gz" "$BUILDKITE_COMMIT"
git archive --format=tar.gz --output="$DIST_DIR/vllm-${PURE_VERSION}.tar.gz" $BUILDKITE_COMMIT
ls -la $DIST_DIR
# upload wheels to PyPI (only default variant, i.e. files without '+' in the name)
PYPI_WHEEL_FILES=$(find $DIST_DIR -name "vllm-${PURE_VERSION}*.whl" -not -name "*+*")
if [[ -z "$PYPI_WHEEL_FILES" ]]; then
if [ -z "$PYPI_WHEEL_FILES" ]; then
echo "No default variant wheels found, quitting..."
exit 1
fi
python3 -m twine check "$PYPI_WHEEL_FILES"
python3 -m twine upload --non-interactive --verbose "$PYPI_WHEEL_FILES"
python3 -m twine check $PYPI_WHEEL_FILES
python3 -m twine --non-interactive --verbose upload $PYPI_WHEEL_FILES
echo "Wheels uploaded to PyPI"
# create release on GitHub with the release version and all wheels
command "$GH_BIN" release create $GIT_VERSION -d --latest --notes-from-tag --verify-tag $DIST_DIR/*.whl

View File

@@ -55,7 +55,7 @@ mkdir -p all-rocm-wheels
cp artifacts/rocm-base-wheels/*.whl all-rocm-wheels/ 2>/dev/null || true
cp artifacts/rocm-vllm-wheel/*.whl all-rocm-wheels/ 2>/dev/null || true
WHEEL_COUNT=$(find all-rocm-wheels -maxdepth 1 -name '*.whl' 2>/dev/null | wc -l)
WHEEL_COUNT=$(ls all-rocm-wheels/*.whl 2>/dev/null | wc -l)
echo "Total wheels to upload: $WHEEL_COUNT"
if [ "$WHEEL_COUNT" -eq 0 ]; then
@@ -115,7 +115,7 @@ if [[ "$BUILDKITE_BRANCH" == "main" && "$BUILDKITE_PULL_REQUEST" == "false" ]] |
fi
# Extract version from vLLM wheel and update version-specific index
VLLM_WHEEL=$(find all-rocm-wheels -maxdepth 1 -name 'vllm*.whl' 2>/dev/null | head -1)
VLLM_WHEEL=$(ls all-rocm-wheels/vllm*.whl 2>/dev/null | head -1)
if [ -n "$VLLM_WHEEL" ]; then
VERSION=$(unzip -p "$VLLM_WHEEL" '**/METADATA' | grep '^Version: ' | cut -d' ' -f2)
echo "Version in wheel: $VERSION"

File diff suppressed because it is too large Load Diff

File diff suppressed because it is too large Load Diff

View File

@@ -4,10 +4,8 @@ depends_on:
steps:
- label: V1 attention (H100)
timeout_in_minutes: 30
device: h100
gpu: h100
source_file_dependencies:
- vllm/config/attention.py
- vllm/model_executor/layers/attention
- vllm/v1/attention
- tests/v1/attention
commands:
@@ -15,11 +13,9 @@ steps:
- label: V1 attention (B200)
timeout_in_minutes: 30
device: b200
gpu: b200
source_file_dependencies:
- vllm/config/attention.py
- vllm/model_executor/layers/attention
- vllm/v1/attention
- tests/v1/attention
commands:
- pytest -v -s v1/attention
- VLLM_DISABLE_FLASHINFER_PREFILL=1 pytest -v -s v1/attention # TODO: FI prefill is bugged and causes incorrectness, fix this

View File

@@ -14,8 +14,3 @@ steps:
- pytest -v -s basic_correctness/test_cumem.py
- pytest -v -s basic_correctness/test_basic_correctness.py
- pytest -v -s basic_correctness/test_cpu_offload.py
mirror:
amd:
device: mi325_1
depends_on:
- image-build-amd

View File

@@ -17,15 +17,3 @@ steps:
- tests/benchmarks/
commands:
- pytest -v -s benchmarks/
- label: Attention Benchmarks Smoke Test (B200)
device: b200
num_gpus: 2
optional: true
working_dir: "/vllm-workspace/"
timeout_in_minutes: 10
source_file_dependencies:
- benchmarks/attention_benchmarks/
- vllm/v1/attention/
commands:
- python3 benchmarks/attention_benchmarks/benchmark.py --backends flash flashinfer --batch-specs "8q1s1k" --repeats 1 --warmup-iters 1

View File

@@ -2,200 +2,56 @@ group: Compile
depends_on:
- image-build
steps:
- label: Sequence Parallel Correctness Tests (2 GPUs)
timeout_in_minutes: 50
- label: Fusion and Compile Tests (B200)
timeout_in_minutes: 40
working_dir: "/vllm-workspace/"
num_devices: 2
source_file_dependencies:
- vllm/model_executor/layers/
- vllm/compilation/
- vllm/v1/worker/
- vllm/v1/cudagraph_dispatcher.py
- tests/compile/correctness_e2e/test_sequence_parallel.py
commands:
- export VLLM_TEST_CLEAN_GPU_MEMORY=1
- pytest -v -s tests/compile/correctness_e2e/test_sequence_parallel.py
- label: Sequence Parallel Correctness Tests (2xH100)
timeout_in_minutes: 50
working_dir: "/vllm-workspace/"
device: h100
optional: true
num_devices: 2
commands:
- export VLLM_TEST_CLEAN_GPU_MEMORY=1
- pytest -v -s tests/compile/correctness_e2e/test_sequence_parallel.py
- label: AsyncTP Correctness Tests (2xH100)
timeout_in_minutes: 50
working_dir: "/vllm-workspace/"
device: h100
optional: true
num_devices: 2
commands:
- export VLLM_TEST_CLEAN_GPU_MEMORY=1
- pytest -v -s tests/compile/correctness_e2e/test_async_tp.py
- label: Distributed Compile Unit Tests (2xH100)
timeout_in_minutes: 20
working_dir: "/vllm-workspace/"
device: h100
num_devices: 2
source_file_dependencies:
- vllm/compilation/
- vllm/model_executor/layers
- tests/compile/passes/distributed/
commands:
- export VLLM_TEST_CLEAN_GPU_MEMORY=1
- pytest -s -v tests/compile/passes/distributed
- label: Fusion and Compile Unit Tests (B200)
timeout_in_minutes: 20
working_dir: "/vllm-workspace/"
device: b200
gpu: b200
source_file_dependencies:
- csrc/quantization/fp4/
- vllm/model_executor/layers/quantization/
- vllm/model_executor/layers/quantization/utils/flashinfer_utils.py
- vllm/v1/attention/backends/flashinfer.py
- vllm/v1/worker/
- vllm/v1/cudagraph_dispatcher.py
- vllm/compilation/
# can affect pattern matching
- vllm/model_executor/layers/layernorm.py
- vllm/model_executor/layers/activation.py
- vllm/model_executor/layers/attention/attention.py
- vllm/v1/attention/backends/flashinfer.py
- vllm/compilation/ # TODO(luka) limit to vllm/compilation/passes
- tests/compile/passes/test_fusion_attn.py
- tests/compile/passes/test_silu_mul_quant_fusion.py
- tests/compile/passes/distributed/test_fusion_all_reduce.py
- vllm/model_executor/layers/quantization/input_quant_fp8.py
- tests/compile/test_fusion_attn.py
- tests/compile/test_silu_mul_quant_fusion.py
- tests/compile/distributed/test_fusion_all_reduce.py
- tests/compile/distributed/test_fusions_e2e.py
- tests/compile/fullgraph/test_full_graph.py
commands:
# b200 runners are limited, so we limit the tests to the minimum set only supported on Blackwell
- nvidia-smi
- pytest -v -s tests/compile/passes/test_fusion_attn.py -k FLASHINFER
- pytest -v -s tests/compile/passes/test_silu_mul_quant_fusion.py
# this runner has 2 GPUs available even though num_devices=2 is not set
- pytest -v -s tests/compile/passes/distributed/test_fusion_all_reduce.py
- pytest -v -s tests/compile/test_fusion_attn.py
- pytest -v -s tests/compile/test_silu_mul_quant_fusion.py
# this runner has 2 GPUs available even though num_gpus=2 is not set
- pytest -v -s tests/compile/distributed/test_fusion_all_reduce.py
# Limit to Inductor partition, no custom ops, and allreduce & attn fusion to reduce running time
# Wrap with quotes to escape yaml
- "pytest -v -s tests/compile/distributed/test_fusions_e2e.py::test_tp2_attn_quant_allreduce_rmsnorm -k 'True and not +quant_fp8 and not +rms_norm'"
# test_fp8_kv_scale_compile requires FlashAttention (not supported on default L4/L40)
# TODO(luka) move to H100 once pass tests run on H100
- pytest -v -s tests/compile/fullgraph/test_full_graph.py::test_fp8_kv_scale_compile
- label: Fusion E2E Quick (H100)
timeout_in_minutes: 15
- label: Fusion E2E (2 GPUs)(B200)
timeout_in_minutes: 40
working_dir: "/vllm-workspace/"
device: h100
num_devices: 1
source_file_dependencies:
- csrc/quantization/
- vllm/model_executor/
- vllm/v1/attention/
- vllm/compilation/
- tests/compile/fusions_e2e/
commands:
- nvidia-smi
# Run all models and attn backends but only Inductor partition and native custom ops
- pytest -v -s tests/compile/fusions_e2e/test_tp1_quant.py -k "inductor_partition and not +rms_norm and not +quant_fp8"
# Qwen requires +quant_fp8 as -quant_fp8 rms+quant fusion is not supported
- pytest -v -s tests/compile/fusions_e2e/test_tp1_quant.py -k "inductor_partition and not +rms_norm and +quant_fp8 and qwen3"
- label: Fusion E2E Config Sweep (H100)
timeout_in_minutes: 30
working_dir: "/vllm-workspace/"
device: h100
num_devices: 1
source_file_dependencies:
- csrc/quantization/
- vllm/compilation/
# can affect pattern matching
- vllm/model_executor/layers/layernorm.py
- vllm/model_executor/layers/activation.py
- vllm/model_executor/layers/attention/attention.py
- vllm/model_executor/layers/quantization/input_quant_fp8.py
- tests/compile/fusions_e2e/
commands:
- nvidia-smi
# Run just llama3 (fp8) for all config combinations
- pytest -v -s tests/compile/fusions_e2e/test_tp1_quant.py -k "llama-3"
- label: Fusion E2E Config Sweep (B200)
timeout_in_minutes: 30
working_dir: "/vllm-workspace/"
device: b200
num_devices: 1
gpu: b200
optional: true
commands:
- nvidia-smi
# Run all models but only FLASHINFER, Inductor partition and native custom ops
# Qwen requires +quant_fp8 as -quant_fp8 rms+quant fusion is not supported
# Run just llama3 (fp8 & fp4) for all config combinations (only inductor partition)
- pytest -v -s tests/compile/fusions_e2e/test_tp1_quant.py -k "inductor_partition and (FLASHINFER and not +rms_norm and (not +quant_fp8 or +quant_fp8 and qwen3) or llama-3)"
- label: Fusion E2E TP2 Quick (H100)
timeout_in_minutes: 20
working_dir: "/vllm-workspace/"
device: h100
num_devices: 2
num_gpus: 2
source_file_dependencies:
- csrc/quantization/
- vllm/model_executor/
- vllm/v1/attention/
- vllm/compilation/
- tests/compile/fusions_e2e/
- csrc/quantization/fp4/
- vllm/model_executor/layers/quantization/utils/flashinfer_utils.py
- vllm/v1/attention/backends/flashinfer.py
- vllm/compilation/
# can affect pattern matching
- vllm/model_executor/layers/layernorm.py
- vllm/model_executor/layers/activation.py
- vllm/model_executor/layers/quantization/input_quant_fp8.py
- tests/compile/distributed/test_fusions_e2e.py
commands:
- nvidia-smi
# Run all models and attn backends but only Inductor partition and native custom ops
- pytest -v -s tests/compile/fusions_e2e/test_tp2_ar_rms.py -k "inductor_partition and not +rms_norm and not +quant_fp8"
- pytest -v -s tests/compile/fusions_e2e/test_tp2_async_tp.py -k "inductor_partition and not +rms_norm and not +quant_fp8"
# Run all e2e fusion tests
- pytest -v -s tests/compile/distributed/test_fusions_e2e.py
- label: Fusion E2E TP2 AR-RMS Config Sweep (H100)
timeout_in_minutes: 40
working_dir: "/vllm-workspace/"
device: h100
num_devices: 2
source_file_dependencies:
- csrc/quantization/
- vllm/compilation/
# can affect pattern matching
- vllm/model_executor/layers/layernorm.py
- vllm/model_executor/layers/activation.py
- vllm/model_executor/layers/attention/attention.py
- vllm/model_executor/layers/quantization/input_quant_fp8.py
- tests/compile/fusions_e2e/
commands:
- nvidia-smi
# Run just llama3 (fp8 & bf16) for all config combinations
- pytest -v -s tests/compile/fusions_e2e/test_tp2_ar_rms.py -k "llama-3"
- label: Fusion E2E TP2 AsyncTP Config Sweep (H100)
timeout_in_minutes: 40
working_dir: "/vllm-workspace/"
device: h100
num_devices: 2
source_file_dependencies:
- csrc/quantization/
- vllm/compilation/
# can affect pattern matching
- vllm/model_executor/layers/layernorm.py
- vllm/model_executor/layers/activation.py
- vllm/model_executor/layers/attention/attention.py
- vllm/model_executor/layers/quantization/input_quant_fp8.py
- tests/compile/fusions_e2e/
commands:
- nvidia-smi
# Run just llama3 (fp8 & bf16) for all config combinations
- pytest -v -s tests/compile/fusions_e2e/test_tp2_async_tp.py -k "llama-3"
- label: Fusion E2E TP2 (B200)
timeout_in_minutes: 20
working_dir: "/vllm-workspace/"
device: b200
num_devices: 2
source_file_dependencies:
- csrc/quantization/
- vllm/model_executor/
- vllm/v1/attention/
- vllm/compilation/
- tests/compile/fusions_e2e/
commands:
- nvidia-smi
# Run all models but only FLASHINFER, Inductor partition and native custom ops
# include qwen with +quant_fp8 as -quant_fp8 rms+quant fusion is not supported
# for ar-rms-quant-fp4, also sweep llama3
- pytest -v -s tests/compile/fusions_e2e/test_tp2_ar_rms.py -k "(FLASHINFER and inductor_partition and not +rms_norm and (not +quant_fp8 or +quant_fp8 and qwen3)) or Llama-3.1-8B-Instruct-FP4"
- pytest -v -s tests/compile/fusions_e2e/test_tp2_async_tp.py -k "FLASHINFER and inductor_partition and not +rms_norm and (not +quant_fp8 or +quant_fp8 and qwen3)"

View File

@@ -9,7 +9,6 @@ steps:
- tests/cuda
commands:
- pytest -v -s cuda/test_cuda_context.py
- pytest -v -s cuda/test_platform_no_cuda_init.py
- label: Cudagraph
timeout_in_minutes: 20

View File

@@ -5,7 +5,7 @@ steps:
- label: Distributed Comm Ops
timeout_in_minutes: 20
working_dir: "/vllm-workspace/tests"
num_devices: 2
num_gpus: 2
source_file_dependencies:
- vllm/distributed
- tests/distributed
@@ -16,9 +16,9 @@ steps:
- pytest -v -s distributed/test_shm_storage.py
- label: Distributed (2 GPUs)
timeout_in_minutes: 60
timeout_in_minutes: 90
working_dir: "/vllm-workspace/tests"
num_devices: 2
num_gpus: 2
source_file_dependencies:
- vllm/compilation/
- vllm/distributed/
@@ -47,13 +47,14 @@ steps:
- pytest -v -s ./compile/test_wrapper.py
- VLLM_TEST_SAME_HOST=1 torchrun --nproc-per-node=4 distributed/test_same_node.py | grep 'Same node test passed'
- VLLM_TEST_SAME_HOST=1 VLLM_TEST_WITH_DEFAULT_DEVICE_SET=1 torchrun --nproc-per-node=4 distributed/test_same_node.py | grep 'Same node test passed'
- pytest -v -s distributed/test_sequence_parallel.py
- CUDA_VISIBLE_DEVICES=0,1 pytest -v -s v1/shutdown
- pytest -v -s v1/worker/test_worker_memory_snapshot.py
- label: Distributed Tests (4 GPUs)
timeout_in_minutes: 50
working_dir: "/vllm-workspace/tests"
num_devices: 4
num_gpus: 4
source_file_dependencies:
- vllm/distributed/
- tests/distributed/test_utils
@@ -62,7 +63,6 @@ steps:
- tests/compile/fullgraph/test_basic_correctness.py
- examples/offline_inference/rlhf.py
- examples/offline_inference/rlhf_colocate.py
- examples/offline_inference/new_weight_syncing/
- tests/examples/offline_inference/data_parallel.py
- tests/v1/distributed
- tests/v1/engine/test_engine_core_client.py
@@ -97,18 +97,14 @@ steps:
- pytest -v -s distributed/test_symm_mem_allreduce.py
# TODO: create a dedicated test section for multi-GPU example tests
# when we have multiple distributed example tests
# OLD rlhf examples
- cd ../examples/offline_inference
- VLLM_ALLOW_INSECURE_SERIALIZATION=1 python3 rlhf.py
- VLLM_ALLOW_INSECURE_SERIALIZATION=1 RAY_DEDUP_LOGS=0 python3 rlhf_colocate.py
# NEW rlhf examples
- cd new_weight_syncing
- VLLM_ALLOW_INSECURE_SERIALIZATION=1 python3 rlhf.py
- label: Distributed Tests (8 GPUs)(H100)
timeout_in_minutes: 10
device: h100
num_devices: 8
gpu: h100
num_gpus: 8
working_dir: "/vllm-workspace/tests"
source_file_dependencies:
- examples/offline_inference/torchrun_dp_example.py
@@ -124,9 +120,9 @@ steps:
- torchrun --nproc-per-node=8 ../examples/offline_inference/torchrun_dp_example.py --tp-size=2 --pp-size=1 --dp-size=4 --enable-ep
- label: Distributed Tests (4 GPUs)(A100)
device: a100
gpu: a100
optional: true
num_devices: 4
num_gpus: 4
source_file_dependencies:
- vllm/
commands:
@@ -137,23 +133,26 @@ steps:
- TARGET_TEST_SUITE=A100 pytest basic_correctness/ -v -s -m 'distributed(num_gpus=2)'
- pytest -v -s -x lora/test_mixtral.py
- label: Distributed Tests (2 GPUs)(H100)
timeout_in_minutes: 15
device: h100
- label: Distributed Tests (2 GPUs)(H200)
gpu: h200
optional: true
working_dir: "/vllm-workspace/"
num_devices: 2
num_gpus: 2
commands:
- VLLM_TEST_CLEAN_GPU_MEMORY=1 pytest -v -s tests/compile/distributed/test_async_tp.py
- pytest -v -s tests/compile/distributed/test_sequence_parallelism.py
- pytest -v -s tests/compile/distributed/test_fusion_all_reduce.py
- VLLM_TEST_CLEAN_GPU_MEMORY=1 pytest -v -s tests/compile/distributed/test_fusions_e2e.py -k 'not Llama-4'
- VLLM_TEST_CLEAN_GPU_MEMORY=1 pytest -v -s tests/distributed/test_sequence_parallel.py
- pytest -v -s tests/distributed/test_context_parallel.py
- VLLM_ALLOW_INSECURE_SERIALIZATION=1 python3 examples/offline_inference/new_weight_syncing/rlhf_async_new_apis.py
- VLLM_USE_DEEP_GEMM=1 VLLM_LOGGING_LEVEL=DEBUG python3 examples/offline_inference/data_parallel.py --model=Qwen/Qwen1.5-MoE-A2.7B -tp=1 -dp=2 --max-model-len=2048 --all2all-backend=deepep_high_throughput
- CUDA_VISIBLE_DEVICES=1,2 VLLM_USE_DEEP_GEMM=1 VLLM_LOGGING_LEVEL=DEBUG python3 examples/offline_inference/data_parallel.py --model=Qwen/Qwen1.5-MoE-A2.7B -tp=1 -dp=2 --max-model-len=2048 --all2all-backend=deepep_high_throughput
- pytest -v -s tests/v1/distributed/test_dbo.py
- label: Distributed Tests (2 GPUs)(B200)
device: b200
gpu: b200
optional: true
working_dir: "/vllm-workspace/"
num_devices: 2
num_gpus: 2
commands:
- pytest -v -s tests/distributed/test_context_parallel.py
- pytest -v -s tests/distributed/test_nccl_symm_mem_allreduce.py
@@ -162,10 +161,8 @@ steps:
- label: 2 Node Test (4 GPUs)
timeout_in_minutes: 30
working_dir: "/vllm-workspace/tests"
num_devices: 2
num_gpus: 2
num_nodes: 2
no_plugin: true
optional: true # TODO: revert once infra issue solved
source_file_dependencies:
- vllm/distributed/
- vllm/engine/
@@ -174,12 +171,12 @@ steps:
- tests/distributed/
- tests/examples/offline_inference/data_parallel.py
commands:
- ./.buildkite/scripts/run-multi-node-test.sh /vllm-workspace/tests 2 2 $IMAGE_TAG "VLLM_TEST_SAME_HOST=0 torchrun --nnodes 2 --nproc-per-node=2 --rdzv_backend=c10d --rdzv_endpoint=192.168.10.10 distributed/test_same_node.py | grep 'Same node test passed' && NUM_NODES=2 torchrun --nnodes 2 --nproc-per-node=2 --rdzv_backend=c10d --rdzv_endpoint=192.168.10.10 distributed/test_node_count.py | grep 'Node count test passed' && python3 ../examples/offline_inference/data_parallel.py -dp=2 -tp=1 --dp-num-nodes=2 --dp-node-rank=0 --dp-master-addr=192.168.10.10 --dp-master-port=12345 --enforce-eager --trust-remote-code && VLLM_MULTI_NODE=1 pytest -v -s distributed/test_multi_node_assignment.py && VLLM_MULTI_NODE=1 pytest -v -s distributed/test_pipeline_parallel.py" "VLLM_TEST_SAME_HOST=0 torchrun --nnodes 2 --nproc-per-node=2 --rdzv_backend=c10d --rdzv_endpoint=192.168.10.10 distributed/test_same_node.py | grep 'Same node test passed' && NUM_NODES=2 torchrun --nnodes 2 --nproc-per-node=2 --rdzv_backend=c10d --rdzv_endpoint=192.168.10.10 distributed/test_node_count.py | grep 'Node count test passed' && python3 ../examples/offline_inference/data_parallel.py -dp=2 -tp=1 --dp-num-nodes=2 --dp-node-rank=1 --dp-master-addr=192.168.10.10 --dp-master-port=12345 --enforce-eager --trust-remote-code"
- ./.buildkite/scripts/run-multi-node-test.sh /vllm-workspace/tests 2 2 public.ecr.aws/q9t5s3a7/vllm-ci-postmerge-repo:0bec63fa317e1fbd62e19b0fc31c43c81bf89077 "VLLM_TEST_SAME_HOST=0 torchrun --nnodes 2 --nproc-per-node=2 --rdzv_backend=c10d --rdzv_endpoint=192.168.10.10 distributed/test_same_node.py | grep 'Same node test passed' && NUM_NODES=2 torchrun --nnodes 2 --nproc-per-node=2 --rdzv_backend=c10d --rdzv_endpoint=192.168.10.10 distributed/test_node_count.py | grep 'Node count test passed' && python3 ../examples/offline_inference/data_parallel.py -dp=2 -tp=1 --dp-num-nodes=2 --dp-node-rank=0 --dp-master-addr=192.168.10.10 --dp-master-port=12345 --enforce-eager --trust-remote-code && VLLM_MULTI_NODE=1 pytest -v -s distributed/test_multi_node_assignment.py && VLLM_MULTI_NODE=1 pytest -v -s distributed/test_pipeline_parallel.py" "VLLM_TEST_SAME_HOST=0 torchrun --nnodes 2 --nproc-per-node=2 --rdzv_backend=c10d --rdzv_endpoint=192.168.10.10 distributed/test_same_node.py | grep 'Same node test passed' && NUM_NODES=2 torchrun --nnodes 2 --nproc-per-node=2 --rdzv_backend=c10d --rdzv_endpoint=192.168.10.10 distributed/test_node_count.py | grep 'Node count test passed' && python3 ../examples/offline_inference/data_parallel.py -dp=2 -tp=1 --dp-num-nodes=2 --dp-node-rank=1 --dp-master-addr=192.168.10.10 --dp-master-port=12345 --enforce-eager --trust-remote-code"
- label: Distributed NixlConnector PD accuracy (4 GPUs)
timeout_in_minutes: 30
working_dir: "/vllm-workspace/tests"
num_devices: 4
num_gpus: 4
source_file_dependencies:
- vllm/distributed/kv_transfer/kv_connector/v1/nixl_connector.py
- tests/v1/kv_connector/nixl_integration/
@@ -187,32 +184,10 @@ steps:
- uv pip install --system -r /vllm-workspace/requirements/kv_connectors.txt
- bash v1/kv_connector/nixl_integration/config_sweep_accuracy_test.sh
- label: DP EP Distributed NixlConnector PD accuracy tests (4 GPUs)
timeout_in_minutes: 30
working_dir: "/vllm-workspace/tests"
num_devices: 4
source_file_dependencies:
- vllm/distributed/kv_transfer/kv_connector/v1/nixl_connector.py
- tests/v1/kv_connector/nixl_integration/
commands:
- uv pip install --system -r /vllm-workspace/requirements/kv_connectors.txt
- DP_EP=1 bash v1/kv_connector/nixl_integration/config_sweep_accuracy_test.sh
- label: CrossLayer KV layout Distributed NixlConnector PD accuracy tests (4 GPUs)
timeout_in_minutes: 30
working_dir: "/vllm-workspace/tests"
num_devices: 4
source_file_dependencies:
- vllm/distributed/kv_transfer/kv_connector/v1/nixl_connector.py
- tests/v1/kv_connector/nixl_integration/
commands:
- uv pip install --system -r /vllm-workspace/requirements/kv_connectors.txt
- CROSS_LAYERS_BLOCKS=True bash v1/kv_connector/nixl_integration/config_sweep_accuracy_test.sh
- label: Pipeline + Context Parallelism (4 GPUs)
- label: Pipeline + Context Parallelism (4 GPUs))
timeout_in_minutes: 60
working_dir: "/vllm-workspace/tests"
num_devices: 4
num_gpus: 4
source_file_dependencies:
- vllm/distributed/
- vllm/engine/
@@ -221,4 +196,4 @@ steps:
- tests/distributed/
commands:
- pytest -v -s distributed/test_pp_cudagraph.py
- pytest -v -s distributed/test_pipeline_parallel.py
- pytest -v -s distributed/test_pipeline_parallel.py

View File

@@ -4,36 +4,39 @@ depends_on:
steps:
- label: DeepSeek V2-Lite Accuracy
timeout_in_minutes: 60
device: h100
gpu: h100
optional: true
num_devices: 4
num_gpus: 4
working_dir: "/vllm-workspace"
commands:
- bash .buildkite/scripts/scheduled_integration_test/deepseek_v2_lite_ep_eplb.sh 0.25 200 8010
- label: Qwen3-30B-A3B-FP8-block Accuracy
timeout_in_minutes: 60
device: h100
gpu: h100
optional: true
num_devices: 4
num_gpus: 4
working_dir: "/vllm-workspace"
commands:
- bash .buildkite/scripts/scheduled_integration_test/qwen30b_a3b_fp8_block_ep_eplb.sh 0.8 200 8020
- label: Qwen3-30B-A3B-FP8-block Accuracy (B200)
timeout_in_minutes: 60
device: b200
gpu: b200
optional: true
num_devices: 2
num_gpus: 2
working_dir: "/vllm-workspace"
commands:
- bash .buildkite/scripts/scheduled_integration_test/qwen30b_a3b_fp8_block_ep_eplb.sh 0.8 200 8020 2 1
- label: DeepSeek V2-Lite Prefetch Offload Accuracy (H100)
timeout_in_minutes: 60
device: h100
- label: Prime-RL Integration (2 GPUs)
timeout_in_minutes: 30
optional: true
num_devices: 1
soft_fail: true
num_gpus: 2
working_dir: "/vllm-workspace"
source_file_dependencies:
- vllm/
- .buildkite/scripts/run-prime-rl-test.sh
commands:
- bash .buildkite/scripts/scheduled_integration_test/deepseek_v2_lite_prefetch_offload.sh 0.25 200 8030
- bash .buildkite/scripts/run-prime-rl-test.sh

View File

@@ -23,16 +23,4 @@ steps:
# TODO: accuracy does not match, whether setting
# VLLM_USE_FLASHINFER_SAMPLER or not on H100.
- pytest -v -s v1/e2e
# Run this test standalone for now;
# need to untangle use (implicit) use of spawn/fork across the tests.
- pytest -v -s v1/engine/test_preprocess_error_handling.py
# Run the rest of v1/engine tests
- pytest -v -s v1/engine --ignore v1/engine/test_preprocess_error_handling.py
mirror:
amd:
device: mi325_1
depends_on:
- image-build-amd
commands:
- pytest -v -s v1/e2e
- pytest -v -s v1/engine
- pytest -v -s v1/engine

View File

@@ -24,11 +24,6 @@ steps:
- pytest -v -s entrypoints/llm --ignore=entrypoints/llm/test_generate.py --ignore=entrypoints/llm/test_collective_rpc.py
- pytest -v -s entrypoints/llm/test_generate.py # it needs a clean process
- pytest -v -s entrypoints/offline_mode # Needs to avoid interference with other tests
mirror:
amd:
device: mi325_1
depends_on:
- image-build-amd
- label: Entrypoints Integration (API Server 1)
timeout_in_minutes: 130
@@ -47,13 +42,15 @@ steps:
working_dir: "/vllm-workspace/tests"
source_file_dependencies:
- vllm/
- tests/entrypoints/rpc
- tests/entrypoints/instrumentator
- tests/tool_use
- tests/entrypoints/sleep
- tests/entrypoints/instrumentator
- tests/entrypoints/rpc
commands:
- export VLLM_WORKER_MULTIPROC_METHOD=spawn
- pytest -v -s entrypoints/instrumentator
- PYTHONPATH=/vllm-workspace pytest -v -s entrypoints/rpc
- pytest -v -s entrypoints/instrumentator
- pytest -v -s entrypoints/sleep
- pytest -v -s tool_use
- label: Entrypoints Integration (Pooling)
@@ -65,11 +62,6 @@ steps:
commands:
- export VLLM_WORKER_MULTIPROC_METHOD=spawn
- pytest -v -s entrypoints/pooling
mirror:
amd:
device: mi325_1
depends_on:
- image-build-amd
- label: Entrypoints Integration (Responses API)
timeout_in_minutes: 50

View File

@@ -14,7 +14,7 @@ steps:
- label: EPLB Execution
timeout_in_minutes: 20
working_dir: "/vllm-workspace/tests"
num_devices: 4
num_gpus: 4
source_file_dependencies:
- vllm/distributed/eplb
- tests/distributed/test_eplb_execute.py

View File

@@ -15,9 +15,8 @@ steps:
timeout_in_minutes: 35
source_file_dependencies:
- csrc/attention/
- vllm/attention
- vllm/v1/attention
# TODO: remove this dependency (https://github.com/vllm-project/vllm/issues/32267)
- vllm/model_executor/layers/attention
- tests/kernels/attention
commands:
- pytest -v -s kernels/attention --shard-id=$$BUILDKITE_PARALLEL_JOB --num-shards=$$BUILDKITE_PARALLEL_JOB_COUNT
@@ -58,8 +57,8 @@ steps:
- label: Kernels DeepGEMM Test (H100)
timeout_in_minutes: 45
device: h100
num_devices: 1
gpu: h100
num_gpus: 1
source_file_dependencies:
- tools/install_deepgemm.sh
- vllm/utils/deep_gemm.py
@@ -78,7 +77,7 @@ steps:
- label: Kernels (B200)
timeout_in_minutes: 30
working_dir: "/vllm-workspace/"
device: b200
gpu: b200
# optional: true
source_file_dependencies:
- csrc/quantization/fp4/
@@ -86,7 +85,7 @@ steps:
- csrc/quantization/cutlass_w8a8/moe/
- vllm/model_executor/layers/fused_moe/cutlass_moe.py
- vllm/model_executor/layers/fused_moe/flashinfer_cutlass_moe.py
- vllm/model_executor/layers/fused_moe/flashinfer_a2a_prepare_finalize.py
- vllm/model_executor/layers/fused_moe/flashinfer_cutlass_prepare_finalize.py
- vllm/model_executor/layers/quantization/utils/flashinfer_utils.py
- vllm/v1/attention/backends/flashinfer.py
- vllm/v1/attention/backends/mla/cutlass_mla.py
@@ -115,45 +114,4 @@ steps:
- pytest -v -s tests/kernels/moe/test_nvfp4_moe.py
- pytest -v -s tests/kernels/moe/test_ocp_mx_moe.py
- pytest -v -s tests/kernels/moe/test_flashinfer.py
- pytest -v -s tests/kernels/moe/test_flashinfer_moe.py
- pytest -v -s tests/kernels/moe/test_cutedsl_moe.py
# e2e
- pytest -v -s tests/models/quantization/test_nvfp4.py
- label: Kernels Helion Test
timeout_in_minutes: 30
device: h100
source_file_dependencies:
- vllm/utils/import_utils.py
- tests/kernels/helion/
commands:
- pip install helion
- pytest -v -s kernels/helion/
- label: Kernels FP8 MoE Test (1 H100)
timeout_in_minutes: 90
device: h100
num_devices: 1
optional: true
commands:
- pytest -v -s kernels/moe/test_cutlass_moe.py
- pytest -v -s kernels/moe/test_flashinfer.py
- pytest -v -s kernels/moe/test_gpt_oss_triton_kernels.py
- pytest -v -s kernels/moe/test_modular_oai_triton_moe.py
- pytest -v -s kernels/moe/test_moe.py
# - pytest -v -s kernels/moe/test_block_fp8.py - failing on main
- pytest -v -s kernels/moe/test_block_int8.py
- pytest -v -s kernels/moe/test_triton_moe_no_act_mul.py
- pytest -v -s kernels/moe/test_triton_moe_ptpc_fp8.py
- label: Kernels FP8 MoE Test (2 H100s)
timeout_in_minutes: 90
device: h100
num_devices: 2
optional: true
commands:
- pytest -v -s kernels/moe/test_deepep_deepgemm_moe.py
- pytest -v -s kernels/moe/test_deepep_moe.py
- pytest -v -s kernels/moe/test_pplx_cutlass_moe.py
# - pytest -v -s kernels/moe/test_pplx_moe.py - failing on main
- pytest -v -s tests/kernels/moe/test_cutedsl_moe.py

View File

@@ -12,9 +12,9 @@ steps:
- pytest -s -v evals/gsm8k/test_gsm8k_correctness.py --config-list-file=configs/models-small.txt
- label: LM Eval Large Models (4 GPUs)(A100)
device: a100
gpu: a100
optional: true
num_devices: 4
num_gpus: 4
working_dir: "/vllm-workspace/.buildkite/lm-eval-harness"
source_file_dependencies:
- csrc/
@@ -24,9 +24,9 @@ steps:
- pytest -s -v test_lm_eval_correctness.py --config-list-file=configs/models-large.txt --tp-size=4
- label: LM Eval Large Models (4 GPUs)(H100)
device: h100
gpu: h100
optional: true
num_devices: 4
num_gpus: 4
working_dir: "/vllm-workspace/.buildkite/lm-eval-harness"
source_file_dependencies:
- csrc/
@@ -37,65 +37,10 @@ steps:
- label: LM Eval Small Models (B200)
timeout_in_minutes: 120
device: b200
gpu: b200
optional: true
source_file_dependencies:
- csrc/
- vllm/model_executor/layers/quantization
commands:
- pytest -s -v evals/gsm8k/test_gsm8k_correctness.py --config-list-file=configs/models-blackwell.txt
- label: LM Eval Large Models (H200)
timeout_in_minutes: 60
device: h200
optional: true
num_devices: 8
commands:
- pytest -s -v evals/gsm8k/test_gsm8k_correctness.py --config-list-file=configs/models-h200.txt
- label: MoE Refactor Integration Test (H100 - TEMPORARY)
device: h100
optional: true
num_devices: 2
commands:
- pytest -s -v evals/gsm8k/test_gsm8k_correctness.py --config-list-file=evals/gsm8k/configs/moe-refactor/config-h100.txt
- label: MoE Refactor Integration Test (B200 - TEMPORARY)
device: b200
optional: true
num_devices: 2
commands:
- pytest -s -v evals/gsm8k/test_gsm8k_correctness.py --config-list-file=evals/gsm8k/configs/moe-refactor/config-b200.txt
- label: MoE Refactor Integration Test (B200 DP - TEMPORARY)
device: b200
optional: true
num_devices: 2
commands:
- pytest -s -v evals/gsm8k/test_gsm8k_correctness.py --config-list-file=evals/gsm8k/configs/moe-refactor-dp-ep/config-b200.txt
- label: GPQA Eval (GPT-OSS) (H100)
timeout_in_minutes: 120
device: h100
optional: true
num_devices: 2
source_file_dependencies:
- csrc/
- vllm/model_executor/layers/quantization
- tests/evals/gpt_oss/
commands:
- uv pip install --system 'gpt-oss[eval]==0.0.5'
- pytest -s -v evals/gpt_oss/test_gpqa_correctness.py --config-list-file=configs/models-h100.txt
- label: GPQA Eval (GPT-OSS) (B200)
timeout_in_minutes: 120
device: b200
optional: true
num_devices: 2
source_file_dependencies:
- csrc/
- vllm/model_executor/layers/quantization
- tests/evals/gpt_oss/
commands:
- uv pip install --system 'gpt-oss[eval]==0.0.5'
- pytest -s -v evals/gpt_oss/test_gpqa_correctness.py --config-list-file=configs/models-b200.txt

View File

@@ -14,7 +14,7 @@ steps:
- label: LoRA TP (Distributed)
timeout_in_minutes: 30
num_devices: 4
num_gpus: 4
source_file_dependencies:
- vllm/lora
- tests/lora

View File

@@ -16,8 +16,7 @@ steps:
- pytest -v -s v1/sample
- pytest -v -s v1/logits_processors
- pytest -v -s v1/worker
# TODO: create another `optional` test group for slow tests
- pytest -v -s -m 'not slow_test' v1/spec_decode
- pytest -v -s v1/spec_decode
- pytest -v -s -m 'not cpu_test' v1/kv_connector/unit
- pytest -v -s -m 'not cpu_test' v1/metrics
- pytest -v -s v1/test_oracle.py
@@ -26,19 +25,13 @@ steps:
# Integration test for streaming correctness (requires special branch).
- pip install -U git+https://github.com/robertgshaw2-redhat/lm-evaluation-harness.git@streaming-api
- pytest -v -s entrypoints/openai/correctness/test_lmeval.py::test_lm_eval_accuracy_v1_engine
mirror:
amd:
device: mi325_1
depends_on:
- image-build-amd
- label: V1 Others (CPU)
depends_on:
- image-build-cpu
depends_on: ~
source_file_dependencies:
- vllm/
- tests/v1
device: cpu
no_gpu: true
commands:
# split the test to avoid interference
- pytest -v -s -m 'cpu_test' v1/core
@@ -78,7 +71,7 @@ steps:
- python3 offline_inference/vision_language_multi_image.py --seed 0
- python3 offline_inference/encoder_decoder_multimodal.py --model-type whisper --seed 0
# for pooling models
- python3 pooling/embed/vision_embedding_offline.py --seed 0
- python3 pooling/pooling/vision_language_pooling.py --seed 0
# for features demo
- python3 offline_inference/prefix_caching.py
- python3 offline_inference/llm_engine_example.py
@@ -89,7 +82,7 @@ steps:
- label: Metrics, Tracing (2 GPUs)
timeout_in_minutes: 20
num_devices: 2
num_gpus: 2
source_file_dependencies:
- vllm/
- tests/v1/tracing
@@ -114,48 +107,53 @@ steps:
timeout_in_minutes: 50
source_file_dependencies:
- vllm/
- tests/detokenizer
- tests/multimodal
- tests/utils_
commands:
- pytest -v -s detokenizer
- pytest -v -s -m 'not cpu_test' multimodal
- pytest -v -s utils_
- label: Async Engine, Inputs, Utils, Worker, Config (CPU)
depends_on:
- image-build-cpu
depends_on: ~
timeout_in_minutes: 30
source_file_dependencies:
- vllm/
- tests/test_inputs.py
- tests/test_outputs.py
- tests/test_pooling_params.py
- tests/test_ray_env.py
- tests/multimodal
- tests/renderers
- tests/standalone_tests/lazy_imports.py
- tests/tokenizers_
- tests/tool_parsers
- tests/transformers_utils
- tests/config
device: cpu
no_gpu: true
commands:
- python3 standalone_tests/lazy_imports.py
- pytest -v -s test_inputs.py
- pytest -v -s test_outputs.py
- pytest -v -s test_pooling_params.py
- pytest -v -s test_ray_env.py
- pytest -v -s -m 'cpu_test' multimodal
- pytest -v -s renderers
- pytest -v -s tokenizers_
- pytest -v -s tool_parsers
- pytest -v -s transformers_utils
- pytest -v -s config
- label: GPT-OSS Eval (B200)
timeout_in_minutes: 60
working_dir: "/vllm-workspace/"
gpu: b200
optional: true
source_file_dependencies:
- tests/evals/gpt_oss
- vllm/model_executor/models/gpt_oss.py
- vllm/model_executor/layers/quantization/mxfp4.py
- vllm/v1/attention/backends/flashinfer.py
commands:
- uv pip install --system 'gpt-oss[eval]==0.0.5'
- pytest -s -v tests/evals/gpt_oss/test_gpqa_correctness.py --model openai/gpt-oss-20b --metric 0.58
- label: Batch Invariance (H100)
timeout_in_minutes: 25
device: h100
gpu: h100
source_file_dependencies:
- vllm/v1/attention
- vllm/model_executor/layers
@@ -164,18 +162,4 @@ steps:
- export VLLM_WORKER_MULTIPROC_METHOD=spawn
- pip install pytest-timeout pytest-forked
- pytest -v -s v1/determinism/test_batch_invariance.py
- pytest -v -s v1/determinism/test_rms_norm_batch_invariant.py
- label: Acceptance Length Test (Large Models) # optional
timeout_in_minutes: 25
gpu: h100
optional: true
num_gpus: 1
working_dir: "/vllm-workspace/tests"
source_file_dependencies:
- vllm/v1/spec_decode/
- vllm/model_executor/models/mlp_speculator.py
- tests/v1/spec_decode/test_acceptance_length.py
commands:
- export VLLM_ALLOW_INSECURE_SERIALIZATION=1
- pytest -v -s v1/spec_decode/test_acceptance_length.py -m slow_test
- pytest -v -s v1/determinism/test_rms_norm_batch_invariant.py

View File

@@ -4,6 +4,7 @@ depends_on:
steps:
- label: Basic Models Tests (Initialization)
timeout_in_minutes: 45
mirror_hardwares: [amdexperimental]
torch_nightly: true
source_file_dependencies:
- vllm/
@@ -15,6 +16,7 @@ steps:
- label: Basic Models Tests (Extra Initialization) %N
timeout_in_minutes: 45
mirror_hardwares: [amdexperimental]
torch_nightly: true
source_file_dependencies:
- vllm/model_executor/models/
@@ -31,27 +33,18 @@ steps:
timeout_in_minutes: 45
source_file_dependencies:
- vllm/
- tests/models/test_terratorch.py
- tests/models/test_transformers.py
- tests/models/test_registry.py
commands:
- pytest -v -s models/test_terratorch.py models/test_transformers.py models/test_registry.py
mirror:
amd:
device: mi325_1
depends_on:
- image-build-amd
- pytest -v -s models/test_transformers.py models/test_registry.py
- label: Basic Models Test (Other CPU) # 5min
depends_on:
- image-build-cpu
timeout_in_minutes: 10
source_file_dependencies:
- vllm/
- tests/models/test_utils.py
- tests/models/test_vision.py
device: cpu
no_gpu: true
commands:
- pytest -v -s models/test_utils.py models/test_vision.py

View File

@@ -5,7 +5,7 @@ steps:
- label: Distributed Model Tests (2 GPUs)
timeout_in_minutes: 50
working_dir: "/vllm-workspace/tests"
num_devices: 2
num_gpus: 2
source_file_dependencies:
- vllm/model_executor/model_loader/sharded_state_loader.py
- vllm/model_executor/models/

View File

@@ -4,6 +4,7 @@ depends_on:
steps:
- label: Language Models Tests (Standard)
timeout_in_minutes: 25
mirror_hardwares: [amdexperimental]
torch_nightly: true
source_file_dependencies:
- vllm/
@@ -15,6 +16,7 @@ steps:
- label: Language Models Tests (Extra Standard) %N
timeout_in_minutes: 45
mirror_hardwares: [amdexperimental]
torch_nightly: true
source_file_dependencies:
- vllm/model_executor/models/
@@ -30,6 +32,7 @@ steps:
- label: Language Models Tests (Hybrid) %N
timeout_in_minutes: 75
mirror_hardwares: [amdexperimental]
torch_nightly: true
source_file_dependencies:
- vllm/
@@ -37,7 +40,7 @@ steps:
commands:
# Install fast path packages for testing against transformers
# Note: also needed to run plamo2 model in vLLM
- uv pip install --system --no-build-isolation 'git+https://github.com/state-spaces/mamba@v2.3.0'
- uv pip install --system --no-build-isolation 'git+https://github.com/state-spaces/mamba@v2.2.5'
- uv pip install --system --no-build-isolation 'git+https://github.com/Dao-AILab/causal-conv1d@v1.5.2'
# Shard hybrid language model tests
- pytest -v -s models/language/generation -m hybrid_model --num-shards=$$BUILDKITE_PARALLEL_JOB_COUNT --shard-id=$$BUILDKITE_PARALLEL_JOB
@@ -45,6 +48,7 @@ steps:
- label: Language Models Test (Extended Generation) # 80min
timeout_in_minutes: 110
mirror_hardwares: [amdexperimental]
optional: true
source_file_dependencies:
- vllm/
@@ -52,21 +56,13 @@ steps:
commands:
# Install fast path packages for testing against transformers
# Note: also needed to run plamo2 model in vLLM
- uv pip install --system --no-build-isolation 'git+https://github.com/state-spaces/mamba@v2.3.0'
- uv pip install --system --no-build-isolation 'git+https://github.com/state-spaces/mamba@v2.2.5'
- uv pip install --system --no-build-isolation 'git+https://github.com/Dao-AILab/causal-conv1d@v1.5.2'
- pytest -v -s models/language/generation -m '(not core_model) and (not hybrid_model)'
mirror:
amd:
device: mi325_1
depends_on:
- image-build-amd
commands:
- uv pip install --system --no-build-isolation 'git+https://github.com/AndreasKaratzas/mamba@fix-rocm-7.0-warp-size-constexpr'
- uv pip install --system --no-build-isolation 'git+https://github.com/Dao-AILab/causal-conv1d@v1.5.2'
- pytest -v -s models/language/generation -m '(not core_model) and (not hybrid_model)'
- label: Language Models Test (PPL)
timeout_in_minutes: 110
mirror_hardwares: [amdexperimental]
optional: true
source_file_dependencies:
- vllm/
@@ -76,20 +72,17 @@ steps:
- label: Language Models Test (Extended Pooling) # 36min
timeout_in_minutes: 50
mirror_hardwares: [amdexperimental]
optional: true
source_file_dependencies:
- vllm/
- tests/models/language/pooling
commands:
- pytest -v -s models/language/pooling -m 'not core_model'
mirror:
amd:
device: mi325_1
depends_on:
- image-build-amd
- label: Language Models Test (MTEB)
timeout_in_minutes: 110
mirror_hardwares: [amdexperimental]
optional: true
source_file_dependencies:
- vllm/

View File

@@ -14,13 +14,11 @@ steps:
- cd .. && VLLM_WORKER_MULTIPROC_METHOD=spawn pytest -v -s tests/models/multimodal/generation/test_whisper.py -m core_model # Otherwise, mp_method="spawn" doesn't work
- label: Multi-Modal Processor Test (CPU)
depends_on:
- image-build-cpu
timeout_in_minutes: 60
source_file_dependencies:
- vllm/
- tests/models/multimodal
device: cpu
no_gpu: true
commands:
- pip install git+https://github.com/TIGER-AI-Lab/Mantis.git
- pytest -v -s models/multimodal/processing --ignore models/multimodal/processing/test_tensor_schema.py

View File

@@ -5,7 +5,7 @@ steps:
- label: Plugin Tests (2 GPUs)
timeout_in_minutes: 60
working_dir: "/vllm-workspace/tests"
num_devices: 2
num_gpus: 2
source_file_dependencies:
- vllm/plugins/
- tests/plugins/

View File

@@ -3,7 +3,7 @@ depends_on:
- image-build
steps:
- label: PyTorch Compilation Unit Tests
timeout_in_minutes: 10
timeout_in_minutes: 30
source_file_dependencies:
- vllm/
- tests/compile
@@ -17,16 +17,8 @@ steps:
# (using -0 for proper path handling)
- "find compile/ -maxdepth 1 -name 'test_*.py' -print0 | xargs -0 -n1 -I{} pytest -s -v '{}'"
- label: PyTorch Compilation Passes Unit Tests
timeout_in_minutes: 20
source_file_dependencies:
- vllm/
- tests/compile/passes
commands:
- pytest -s -v compile/passes --ignore compile/passes/distributed
- label: PyTorch Fullgraph Smoke Test
timeout_in_minutes: 35
timeout_in_minutes: 30
source_file_dependencies:
- vllm/
- tests/compile
@@ -38,13 +30,16 @@ steps:
- "find compile/fullgraph/ -name 'test_*.py' -not -name 'test_full_graph.py' -exec pytest -s -v {} \\;"
- label: PyTorch Fullgraph
timeout_in_minutes: 30
timeout_in_minutes: 40
source_file_dependencies:
- vllm/
- tests/compile
commands:
# fp8 kv scales not supported on sm89, tested on Blackwell instead
- pytest -v -s compile/fullgraph/test_full_graph.py -k 'not test_fp8_kv_scale_compile'
# Limit to no custom ops to reduce running time
# Wrap with quotes to escape yaml and avoid starting -k string with a -
- "pytest -v -s compile/distributed/test_fusions_e2e.py -k 'TRITON and not +quant_fp8 and not Llama-4'"
- label: Pytorch Nightly Dependency Override Check # 2min
# if this test fails, it means the nightly torch version is not compatible with some

View File

@@ -16,14 +16,14 @@ steps:
# https://github.com/pytorch/ao/issues/2919, we'll have to skip new torchao tests for now
# we can only upgrade after this is resolved
# TODO(jerryzh168): resolve the above comment
- uv pip install --system torchao==0.14.1 --index-url https://download.pytorch.org/whl/cu129
- uv pip install --system torchao==0.13.0 --index-url https://download.pytorch.org/whl/cu129
- uv pip install --system conch-triton-kernels
- VLLM_TEST_FORCE_LOAD_FORMAT=auto pytest -v -s quantization/ --ignore quantization/test_blackwell_moe.py
- label: Quantized MoE Test (B200)
timeout_in_minutes: 60
working_dir: "/vllm-workspace/"
device: b200
gpu: b200
source_file_dependencies:
- tests/quantization/test_blackwell_moe.py
- vllm/model_executor/models/deepseek_v2.py

View File

@@ -12,10 +12,3 @@ steps:
commands:
- pytest -v -s samplers
- VLLM_USE_FLASHINFER_SAMPLER=1 pytest -v -s samplers
mirror:
amd:
device: mi325_1
depends_on:
- image-build-amd
commands:
- pytest -v -s samplers

View File

@@ -5,7 +5,7 @@ steps:
- label: Weight Loading Multiple GPU # 33min
timeout_in_minutes: 45
working_dir: "/vllm-workspace/tests"
num_devices: 2
num_gpus: 2
optional: true
source_file_dependencies:
- vllm/
@@ -15,8 +15,8 @@ steps:
- label: Weight Loading Multiple GPU - Large Models # optional
working_dir: "/vllm-workspace/tests"
num_devices: 2
device: a100
num_gpus: 2
gpu: a100
optional: true
source_file_dependencies:
- vllm/

58
.github/CODEOWNERS vendored
View File

@@ -2,60 +2,40 @@
# for more info about CODEOWNERS file
# This lists cover the "core" components of vLLM that require careful review
/vllm/compilation @zou3519 @youkaichao @ProExpertProg
/vllm/distributed/kv_transfer @NickLucche @ApostaC @orozery
/vllm/lora @jeejeelee
/vllm/model_executor/layers/attention @LucasWilkinson @MatthewBonanni
/vllm/attention @LucasWilkinson
/vllm/executor/executor_base.py @zhuohan123 @youkaichao @alexm-redhat @njhill @22quinn
/vllm/model_executor/layers/fused_moe @mgoin @pavanimajety
/vllm/model_executor/layers/quantization @mgoin @robertgshaw2-redhat @tlrmchlsmth @yewentao256 @pavanimajety
/vllm/model_executor/layers/mamba @tdoublep
/vllm/model_executor/model_loader @22quinn
/vllm/model_executor/layers/batch_invariant.py @yewentao256
/vllm/multimodal @DarkLight1337 @ywang96 @NickLucche @tjtanaa
/vllm/vllm_flash_attn @LucasWilkinson @MatthewBonanni
/vllm/vllm_flash_attn @LucasWilkinson
/vllm/lora @jeejeelee
/vllm/reasoning @aarnphm @chaunceyjiang
/vllm/entrypoints @aarnphm @chaunceyjiang
/vllm/tool_parsers @aarnphm @chaunceyjiang
/vllm/compilation @zou3519 @youkaichao @ProExpertProg
/vllm/distributed/kv_transfer @NickLucche @ApostaC
CMakeLists.txt @tlrmchlsmth @LucasWilkinson
# Any change to the VllmConfig changes can have a large user-facing impact,
# so spam a lot of people
/vllm/config @WoosukKwon @youkaichao @robertgshaw2-redhat @mgoin @tlrmchlsmth @houseroad @hmellor @yewentao256 @ProExpertProg
/vllm/config/cache.py @heheda12345
# Entrypoints
/vllm/entrypoints/anthropic @mgoin @DarkLight1337
/vllm/entrypoints/cli @hmellor @mgoin @DarkLight1337 @russellb
/vllm/entrypoints/mcp @heheda12345
/vllm/entrypoints/openai @aarnphm @chaunceyjiang @DarkLight1337 @russellb
/vllm/entrypoints/openai/realtime @njhill
/vllm/entrypoints/openai/speech_to_text @NickLucche
/vllm/entrypoints/pooling @noooop
/vllm/entrypoints/sagemaker @DarkLight1337
/vllm/entrypoints/serve @njhill
/vllm/entrypoints/*.py @njhill
/vllm/entrypoints/chat_utils.py @DarkLight1337
/vllm/entrypoints/llm.py @DarkLight1337
# Input/Output Processing
/vllm/sampling_params.py @njhill @NickLucche
/vllm/pooling_params.py @noooop @DarkLight1337
/vllm/tokenizers @DarkLight1337 @njhill
/vllm/renderers @DarkLight1337 @njhill
/vllm/reasoning @aarnphm @chaunceyjiang
/vllm/tool_parsers @aarnphm @chaunceyjiang
/vllm/config/cache.py @WoosukKwon @youkaichao @robertgshaw2-redhat @mgoin @tlrmchlsmth @houseroad @hmellor @yewentao256 @ProExpertProg @heheda12345
# vLLM V1
/vllm/v1/attention @LucasWilkinson @MatthewBonanni
/vllm/v1/attention @LucasWilkinson
/vllm/v1/attention/backend.py @WoosukKwon @zhuohan123 @youkaichao @alexm-redhat @njhill
/vllm/v1/attention/backends/mla @pavanimajety
/vllm/v1/attention/backends/flashinfer.py @mgoin @pavanimajety
/vllm/v1/attention/backends/triton_attn.py @tdoublep
/vllm/v1/core @WoosukKwon @robertgshaw2-redhat @njhill @ywang96 @alexm-redhat @heheda12345 @ApostaC @orozery
/vllm/v1/core @WoosukKwon @robertgshaw2-redhat @njhill @ywang96 @alexm-redhat @heheda12345 @ApostaC
/vllm/v1/sample @22quinn @houseroad @njhill
/vllm/v1/spec_decode @benchislett @luccafong @MatthewBonanni
/vllm/v1/spec_decode @benchislett @luccafong
/vllm/v1/structured_output @mgoin @russellb @aarnphm @benchislett
/vllm/v1/kv_cache_interface.py @heheda12345
/vllm/v1/kv_offload @ApostaC @orozery
/vllm/v1/worker/gpu/kv_connector.py @orozery
/vllm/v1/worker/kv_connector_model_runner_mixin.py @orozery @NickLucche
/vllm/v1/offloading @ApostaC
# Model runner V2
/vllm/v1/worker/gpu @WoosukKwon
@@ -74,13 +54,13 @@ CMakeLists.txt @tlrmchlsmth @LucasWilkinson
/tests/test_inputs.py @DarkLight1337 @ywang96
/tests/v1/entrypoints/llm/test_struct_output_generate.py @mgoin @russellb @aarnphm
/tests/v1/structured_output @mgoin @russellb @aarnphm
/tests/v1/core @WoosukKwon @robertgshaw2-redhat @njhill @ywang96 @alexm-redhat @heheda12345 @ApostaC @orozery
/tests/v1/core @WoosukKwon @robertgshaw2-redhat @njhill @ywang96 @alexm-redhat @heheda12345 @ApostaC
/tests/weight_loading @mgoin @youkaichao @yewentao256
/tests/lora @jeejeelee
/tests/models/language/generation/test_hybrid.py @tdoublep
/tests/v1/kv_connector/nixl_integration @NickLucche
/tests/v1/kv_connector @ApostaC @orozery
/tests/v1/kv_offload @ApostaC @orozery
/tests/v1/kv_connector @ApostaC
/tests/v1/offloading @ApostaC
/tests/v1/determinism @yewentao256
# Transformers modeling backend
@@ -133,8 +113,8 @@ mkdocs.yaml @hmellor
/vllm/model_executor/models/mixtral*.py @patrickvonplaten
/vllm/model_executor/models/voxtral*.py @patrickvonplaten
/vllm/model_executor/models/pixtral*.py @patrickvonplaten
/vllm/tokenizers/mistral.py @patrickvonplaten
/vllm/transformers_utils/configs/mistral.py @patrickvonplaten
/vllm/transformers_utils/tokenizers/mistral.py @patrickvonplaten
# Kernels
/vllm/v1/attention/ops/chunked_prefill_paged_decode.py @tdoublep
@@ -170,7 +150,9 @@ mkdocs.yaml @hmellor
/examples/pooling @noooop
/tests/models/*/pooling* @noooop
/tests/entrypoints/pooling @noooop
/vllm/entrypoints/pooling @noooop
/vllm/config/pooler.py @noooop
/vllm/pooling_params.py @noooop
/vllm/model_executor/layers/pooler @noooop
# Security guide and policies

12
.github/mergify.yml vendored
View File

@@ -414,18 +414,6 @@ pull_request_rules:
remove:
- needs-rebase
- name: label-bug
description: Automatically apply bug label
conditions:
- label != stale
- or:
- title~=(?i)\bbug\b
- title~=(?i)\bbugfix\b
actions:
label:
add:
- bug
- name: label-kv-connector
description: Automatically apply kv-connector label
conditions:

View File

@@ -19,7 +19,6 @@ jobs:
uses: actions/setup-python@83679a892e2d95755f2dac6acb0bfd1e9ac5d548 # v6.1.0
with:
python-version: '3.12'
cache: 'pip'
- name: Install Python dependencies
run: |

View File

@@ -29,9 +29,8 @@ jobs:
- name: Install dependencies and build vLLM
run: |
uv pip install -r requirements/cpu-build.txt --index-strategy unsafe-best-match
uv pip install -r requirements/cpu.txt --index-strategy unsafe-best-match
uv pip install -e . --no-build-isolation
uv pip install -e .
env:
CMAKE_BUILD_PARALLEL_LEVEL: 4

9
.gitignore vendored
View File

@@ -7,9 +7,6 @@ vllm/vllm_flash_attn/*
# OpenAI triton kernels copied from source
vllm/third_party/triton_kernels/*
# FlashMLA interface copied from source
vllm/third_party/flashmla/flash_mla_interface.py
# triton jit
.triton
@@ -194,9 +191,6 @@ CLAUDE.md
AGENTS.md
.codex/
# Cursor
.cursor/
# DS Store
.DS_Store
@@ -238,6 +232,3 @@ ep_kernels_workspace/
vllm/grpc/vllm_engine_pb2.py
vllm/grpc/vllm_engine_pb2_grpc.py
vllm/grpc/vllm_engine_pb2.pyi
# Ignore generated cpu headers
csrc/cpu/cpu_attn_dispatch_generated.h

View File

@@ -121,9 +121,24 @@ repos:
name: Update Dockerfile dependency graph
entry: tools/pre_commit/update-dockerfile-graph.sh
language: script
- id: check-forbidden-imports
name: Check for forbidden imports
entry: python tools/pre_commit/check_forbidden_imports.py
- id: enforce-import-regex-instead-of-re
name: Enforce import regex as re
entry: python tools/pre_commit/enforce_regex_import.py
language: python
types: [python]
pass_filenames: false
additional_dependencies: [regex]
# forbid directly import triton
- id: forbid-direct-triton-import
name: "Forbid direct 'import triton'"
entry: python tools/pre_commit/check_triton_import.py
language: python
types: [python]
pass_filenames: false
additional_dependencies: [regex]
- id: check-pickle-imports
name: Prevent new pickle/cloudpickle imports
entry: python tools/pre_commit/check_pickle_imports.py
language: python
types: [python]
additional_dependencies: [regex]
@@ -132,22 +147,6 @@ repos:
entry: python tools/pre_commit/validate_config.py
language: python
additional_dependencies: [regex]
- id: validate-docker-versions
name: Validate docker/versions.json matches Dockerfile
entry: python tools/generate_versions_json.py --check
language: python
files: ^docker/(Dockerfile|versions\.json)$
pass_filenames: false
additional_dependencies: [dockerfile-parse]
- id: attention-backend-docs
name: Check attention backend documentation is up to date
entry: python tools/pre_commit/generate_attention_backend_docs.py --check
language: python
- id: check-boolean-context-manager
name: Check for boolean ops in with-statements
entry: python tools/pre_commit/check_boolean_context_manager.py
language: python
types: [python]
# Keep `suggestion` last
- id: suggestion
name: Suggestion

View File

@@ -9,14 +9,13 @@ build:
python: "3.12"
jobs:
post_checkout:
- git fetch origin main --unshallow --no-tags --filter=blob:none || true
pre_create_environment:
- pip install uv
create_environment:
- uv venv $READTHEDOCS_VIRTUALENV_PATH
install:
- uv pip install --python $READTHEDOCS_VIRTUALENV_PATH/bin/python --no-cache-dir -r requirements/docs.txt
- git fetch --unshallow || true
mkdocs:
configuration: mkdocs.yaml
fail_on_warning: true
# Optionally declare the Python requirements required to build your docs
python:
install:
- requirements: requirements/docs.txt

View File

@@ -56,8 +56,8 @@ endif()
# requirements.txt files and should be kept consistent. The ROCm torch
# versions are derived from docker/Dockerfile.rocm
#
set(TORCH_SUPPORTED_VERSION_CUDA "2.10.0")
set(TORCH_SUPPORTED_VERSION_ROCM "2.10.0")
set(TORCH_SUPPORTED_VERSION_CUDA "2.9.1")
set(TORCH_SUPPORTED_VERSION_ROCM "2.9.1")
#
# Try to find python package with an executable that exactly matches
@@ -293,7 +293,6 @@ set(VLLM_EXT_SRC
"csrc/fused_qknorm_rope_kernel.cu"
"csrc/layernorm_quant_kernels.cu"
"csrc/sampler.cu"
"csrc/topk.cu"
"csrc/cuda_view.cu"
"csrc/quantization/gptq/q_gemm.cu"
"csrc/quantization/w8a8/int8/scaled_quant.cu"
@@ -378,7 +377,7 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
# preselected input type pairs and schedules.
# Generate sources:
set(MARLIN_GEN_SCRIPT
${CMAKE_CURRENT_SOURCE_DIR}/csrc/quantization/marlin/generate_kernels.py)
${CMAKE_CURRENT_SOURCE_DIR}/csrc/quantization/gptq_marlin/generate_kernels.py)
file(MD5 ${MARLIN_GEN_SCRIPT} MARLIN_GEN_SCRIPT_HASH)
list(JOIN CUDA_ARCHS "," CUDA_ARCHS_STR)
set(MARLIN_GEN_SCRIPT_HASH_AND_ARCH "${MARLIN_GEN_SCRIPT_HASH}(ARCH:${CUDA_ARCHS_STR})")
@@ -413,7 +412,7 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
endif()
if (MARLIN_ARCHS)
file(GLOB MARLIN_TEMPLATE_KERNEL_SRC "csrc/quantization/marlin/sm80_kernel_*_float16.cu")
file(GLOB MARLIN_TEMPLATE_KERNEL_SRC "csrc/quantization/gptq_marlin/sm80_kernel_*_float16.cu")
set_gencode_flags_for_srcs(
SRCS "${MARLIN_TEMPLATE_KERNEL_SRC}"
CUDA_ARCHS "${MARLIN_ARCHS}")
@@ -423,7 +422,7 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
endif()
list(APPEND VLLM_EXT_SRC ${MARLIN_TEMPLATE_KERNEL_SRC})
file(GLOB MARLIN_TEMPLATE_BF16_KERNEL_SRC "csrc/quantization/marlin/sm80_kernel_*_bfloat16.cu")
file(GLOB MARLIN_TEMPLATE_BF16_KERNEL_SRC "csrc/quantization/gptq_marlin/sm80_kernel_*_bfloat16.cu")
set_gencode_flags_for_srcs(
SRCS "${MARLIN_TEMPLATE_BF16_KERNEL_SRC}"
CUDA_ARCHS "${MARLIN_BF16_ARCHS}")
@@ -434,8 +433,8 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
list(APPEND VLLM_EXT_SRC ${MARLIN_TEMPLATE_BF16_KERNEL_SRC})
endif()
if (MARLIN_SM75_ARCHS)
file(GLOB MARLIN_TEMPLATE_SM75_KERNEL_SRC "csrc/quantization/marlin/sm75_kernel_*.cu")
if (MARLIN_SM75_ARCHS)
file(GLOB MARLIN_TEMPLATE_SM75_KERNEL_SRC "csrc/quantization/gptq_marlin/sm75_kernel_*.cu")
set_gencode_flags_for_srcs(
SRCS "${MARLIN_TEMPLATE_SM75_KERNEL_SRC}"
CUDA_ARCHS "${MARLIN_SM75_ARCHS}")
@@ -446,8 +445,8 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
list(APPEND VLLM_EXT_SRC ${MARLIN_TEMPLATE_SM75_KERNEL_SRC})
endif()
if (MARLIN_FP8_ARCHS)
file(GLOB MARLIN_TEMPLATE_FP8_KERNEL_SRC "csrc/quantization/marlin/sm89_kernel_*.cu")
if (MARLIN_FP8_ARCHS)
file(GLOB MARLIN_TEMPLATE_FP8_KERNEL_SRC "csrc/quantization/gptq_marlin/sm89_kernel_*.cu")
set_gencode_flags_for_srcs(
SRCS "${MARLIN_TEMPLATE_FP8_KERNEL_SRC}"
CUDA_ARCHS "${MARLIN_FP8_ARCHS}")
@@ -459,10 +458,11 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
endif()
set(MARLIN_SRCS
"csrc/quantization/marlin/marlin.cu"
"csrc/quantization/marlin/marlin_int4_fp8_preprocess.cu"
"csrc/quantization/marlin/gptq_marlin_repack.cu"
"csrc/quantization/marlin/awq_marlin_repack.cu")
"csrc/quantization/marlin/sparse/marlin_24_cuda_kernel.cu"
"csrc/quantization/gptq_marlin/gptq_marlin.cu"
"csrc/quantization/gptq_marlin/marlin_int4_fp8_preprocess.cu"
"csrc/quantization/gptq_marlin/gptq_marlin_repack.cu"
"csrc/quantization/gptq_marlin/awq_marlin_repack.cu")
set_gencode_flags_for_srcs(
SRCS "${MARLIN_SRCS}"
CUDA_ARCHS "${MARLIN_OTHER_ARCHS}")
@@ -771,24 +771,6 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
endif()
endif()
# DeepSeek V3 fused A GEMM kernel (requires SM 9.0+, Hopper and later)
if(${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER_EQUAL 13.0)
cuda_archs_loose_intersection(DSV3_FUSED_A_GEMM_ARCHS "9.0a;10.0f;11.0f" "${CUDA_ARCHS}")
else()
cuda_archs_loose_intersection(DSV3_FUSED_A_GEMM_ARCHS "9.0a;10.0a;10.1a;10.3a" "${CUDA_ARCHS}")
endif()
if(${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER_EQUAL 12.0 AND DSV3_FUSED_A_GEMM_ARCHS)
set(DSV3_FUSED_A_GEMM_SRC "csrc/dsv3_fused_a_gemm.cu")
set_gencode_flags_for_srcs(
SRCS "${DSV3_FUSED_A_GEMM_SRC}"
CUDA_ARCHS "${DSV3_FUSED_A_GEMM_ARCHS}")
list(APPEND VLLM_EXT_SRC ${DSV3_FUSED_A_GEMM_SRC})
message(STATUS "Building dsv3_fused_a_gemm for archs: ${DSV3_FUSED_A_GEMM_ARCHS}")
else()
message(STATUS "Not building dsv3_fused_a_gemm as no compatible archs found "
"in CUDA target architectures.")
endif()
# moe_data.cu is used by all CUTLASS MoE kernels.
if(${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER_EQUAL 13.0)
cuda_archs_loose_intersection(CUTLASS_MOE_DATA_ARCHS "9.0a;10.0f;11.0f;12.0f" "${CUDA_ARCHS}")
@@ -1061,7 +1043,7 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
list(APPEND VLLM_MOE_EXT_SRC ${MARLIN_MOE_SRC})
endif()
if (MARLIN_MOE_SM75_ARCHS)
if (MARLIN_MOE_SM75_ARCHS)
file(GLOB MARLIN_MOE_SM75_SRC "csrc/moe/marlin_moe_wna16/sm75_kernel_*.cu")
set_gencode_flags_for_srcs(
SRCS "${MARLIN_MOE_SM75_SRC}"
@@ -1100,27 +1082,6 @@ if(VLLM_GPU_LANG STREQUAL "CUDA")
message(STATUS "Not building Marlin MOE kernels as no compatible archs found"
" in CUDA target architectures")
endif()
# DeepSeek V3 router GEMM kernel - requires SM90+
if(${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER_EQUAL 13.0)
cuda_archs_loose_intersection(DSV3_ROUTER_GEMM_ARCHS "9.0a;10.0f;11.0f" "${CUDA_ARCHS}")
else()
cuda_archs_loose_intersection(DSV3_ROUTER_GEMM_ARCHS "9.0a;10.0a;10.1a;10.3a" "${CUDA_ARCHS}")
endif()
if(${CMAKE_CUDA_COMPILER_VERSION} VERSION_GREATER_EQUAL 12.0 AND DSV3_ROUTER_GEMM_ARCHS)
set(DSV3_ROUTER_GEMM_SRC
"csrc/moe/dsv3_router_gemm_entry.cu"
"csrc/moe/dsv3_router_gemm_float_out.cu"
"csrc/moe/dsv3_router_gemm_bf16_out.cu")
set_gencode_flags_for_srcs(
SRCS "${DSV3_ROUTER_GEMM_SRC}"
CUDA_ARCHS "${DSV3_ROUTER_GEMM_ARCHS}")
list(APPEND VLLM_MOE_EXT_SRC "${DSV3_ROUTER_GEMM_SRC}")
message(STATUS "Building DSV3 router GEMM kernel for archs: ${DSV3_ROUTER_GEMM_ARCHS}")
else()
message(STATUS "Not building DSV3 router GEMM kernel as no compatible archs found"
" (requires SM90+ and CUDA >= 12.0)")
endif()
endif()
message(STATUS "Enabling moe extension.")

View File

@@ -11,7 +11,7 @@ This directory used to contain vLLM's benchmark scripts and utilities for perfor
## Usage
For detailed usage instructions, examples, and dataset information, see the [Benchmark CLI documentation](https://docs.vllm.ai/en/latest/benchmarking/cli/#benchmark-cli).
For detailed usage instructions, examples, and dataset information, see the [Benchmark CLI documentation](https://docs.vllm.ai/en/latest/contributing/benchmarks.html#benchmark-cli).
For full CLI reference see:

View File

@@ -1,266 +0,0 @@
# vLLM Attention Benchmarking Suite
Fast, flexible benchmarking for vLLM attention and MLA backends with an extended batch specification grammar.
## Quick Start
```bash
cd benchmarks/attention_benchmarks
# Run a pre-configured benchmark
python benchmark.py --config configs/mla_decode.yaml
python benchmark.py --config configs/mla_mixed_batch.yaml
python benchmark.py --config configs/speculative_decode.yaml
python benchmark.py --config configs/standard_attention.yaml
python benchmark.py --config configs/reorder_threshold.yaml
# Or run custom benchmarks
python benchmark.py \
--backends flash flashinfer \
--batch-specs "q2k" "8q1s1k" "2q2k_32q1s1k" \
--output-csv results.csv
```
## Simplified Batch Specification Grammar
Express workloads concisely using query length and sequence length:
```python
"q2k" # 2048-token prefill (q_len=2048, seq_len=2048)
"q1s1k" # Decode: 1 token with 1K sequence
"8q1s1k" # 8 decode requests
"q4s1k" # 4-token extend (e.g., spec decode)
"2q2k_32q1s1k" # Mixed: 2 prefills + 32 decodes
"16q4s1k" # 16 spec decode (4 tokens each)
```
### Grammar Rule
```text
Format: (<count>?) q<q_len>(k?) (s<seq_len>(k?))?
- count: Number of identical requests (optional, default=1)
- q_len: Query length (number of new tokens)
- seq_len: Total sequence length (optional, defaults to q_len for prefill)
- 'k': Multiplies value by 1024
Mixed batches: Use _ to combine (e.g., "2q2k_32q1s1k")
```
**Note**: Decode, prefill, and spec decode are just different query lengths - no special syntax needed!
## Pre-configured Benchmarks
The suite includes several pre-configured YAML benchmark configurations:
### MLA Decode Benchmark
Tests pure decode performance across MLA backends with varying batch sizes and sequence lengths.
```bash
python benchmark.py --config configs/mla_decode.yaml
```
### MLA Mixed Batch Benchmark
Tests chunked prefill performance with mixed prefill + decode batches.
```bash
python benchmark.py --config configs/mla_mixed_batch.yaml
```
### Speculative Decoding Benchmark
Tests speculative decode scenarios (K-token verification) and reorder_batch_threshold optimization.
```bash
python benchmark.py --config configs/speculative_decode.yaml
```
### Standard Attention Benchmark
Tests standard attention backends (Flash/Triton/FlashInfer) with pure prefill, decode, and mixed batches.
```bash
python benchmark.py --config configs/standard_attention.yaml
```
### Reorder Threshold Study
**Question:** At what query length does the prefill pipeline become faster than the decode pipeline?
Tests query lengths from 1-1024 across 9 batch sizes to find the crossover point. Uses `decode_vs_prefill` mode to compare both pipelines for each query length.
```bash
python benchmark.py --config configs/reorder_threshold.yaml
```
---
## Universal Benchmark
The `benchmark.py` script handles **all** backends - both standard attention and MLA.
### Standard Attention (Flash/Triton/FlashInfer)
```bash
python benchmark.py \
--backends flash triton flashinfer \
--batch-specs "q2k" "8q1s1k" "2q2k_32q1s1k" \
--num-layers 10 \
--repeats 5 \
--output-csv results.csv
```
### MLA Backends
```bash
# Compare all MLA backends
python benchmark.py \
--backends cutlass_mla flashinfer_mla flashattn_mla flashmla \
--batch-specs "64q1s1k" "64q1s4k" \
--output-csv mla_results.csv
```
### Parameter Sweeps
Use `--sweep-param` and `--sweep-values` to run parameter sweeps from the CLI:
#### CUTLASS MLA num-splits Optimization
**Question:** What is the optimal `num_kv_splits` for CUTLASS MLA?
```bash
python benchmark.py \
--backend cutlass_mla \
--batch-specs "64q1s1k" "64q1s4k" "64q1s16k" \
--sweep-param num_kv_splits \
--sweep-values 1 2 4 8 16 \
--output-json optimal_splits.json
```
#### Reorder Batch Threshold Optimization
**Question:** What's the optimal `reorder_batch_threshold` for speculative decoding?
```bash
python benchmark.py \
--backend flashmla \
--batch-specs "q4s1k" "q8s2k" \
--sweep-param reorder_batch_threshold \
--sweep-values 1 4 16 64 256 512 \
--output-csv threshold_sweep.csv
```
### All Command-Line Options
```text
--config CONFIG # Path to YAML config file (overrides other args)
--backends BACKEND [BACKEND ...] # flash, triton, flashinfer, cutlass_mla,
# flashinfer_mla, flashattn_mla, flashmla
--backend BACKEND # Single backend (alternative to --backends)
--batch-specs SPEC [SPEC ...] # Batch specifications using extended grammar
# Model configuration
--num-layers N # Number of layers
--head-dim N # Head dimension
--num-q-heads N # Query heads
--num-kv-heads N # KV heads
--block-size N # Block size
# Benchmark settings
--device DEVICE # Device (default: cuda:0)
--repeats N # Repetitions
--warmup-iters N # Warmup iterations
--profile-memory # Profile memory usage
# Parameter sweeps
--sweep-param PARAM # Parameter name to sweep (e.g., num_kv_splits,
# reorder_batch_threshold)
--sweep-values N [N ...] # Values to sweep for the parameter
# Output
--output-csv FILE # Save to CSV
--output-json FILE # Save to JSON
```
## Hardware Requirements
| Backend | Hardware |
|---------|----------|
| Flash/Triton/FlashInfer | Any CUDA GPU |
| CUTLASS MLA | Blackwell (SM100+) |
| FlashAttn MLA | Hopper (SM90+) |
| FlashMLA | Hopper (SM90+) |
| FlashInfer-MLA | Any CUDA GPU |
## Using MLA Runner Directly
All MLA backends are available through `mla_runner.run_mla_benchmark()`:
```python
from mla_runner import run_mla_benchmark
from common import BenchmarkConfig
config = BenchmarkConfig(
backend="cutlass_mla",
batch_spec="64q1s4k",
num_layers=10,
head_dim=576,
num_q_heads=128,
num_kv_heads=1,
block_size=128,
device="cuda:0",
repeats=5,
warmup_iters=3,
)
# CUTLASS MLA with specific num_kv_splits
result = run_mla_benchmark("cutlass_mla", config, num_kv_splits=4)
print(f"Time: {result.mean_time:.6f}s")
# FlashInfer-MLA
result = run_mla_benchmark("flashinfer_mla", config)
# FlashAttn MLA (Hopper SM90+)
result = run_mla_benchmark("flashattn_mla", config, reorder_batch_threshold=64)
# FlashMLA (Hopper SM90+)
result = run_mla_benchmark("flashmla", config, reorder_batch_threshold=64)
```
## Python API
```python
from batch_spec import parse_batch_spec, format_batch_spec, get_batch_stats
from common import BenchmarkConfig, BenchmarkResult, ResultsFormatter
# Parse batch specs
requests = parse_batch_spec("2q2k_q4s1k_32q1s1k")
print(format_batch_spec(requests))
# "2 prefill (2x2k), 1 extend (1xq4kv1k), 32 decode (32x1k)"
# Get batch statistics
stats = get_batch_stats(requests)
print(f"Total tokens: {stats['total_tokens']}")
print(f"Num decode: {stats['num_decode']}, Num prefill: {stats['num_prefill']}")
# Format results
formatter = ResultsFormatter()
formatter.save_csv(results, "output.csv")
formatter.save_json(results, "output.json")
```
## Tips
**1. Warmup matters** - Use `--warmup-iters 10` for stable results
**2. Multiple repeats** - Use `--repeats 20` for low variance
**3. Save results** - Always use `--output-csv` or `--output-json`
**4. Test incrementally** - Start with `--num-layers 1 --repeats 1`
**5. Extended grammar** - Leverage spec decode, chunked prefill patterns
**6. Parameter sweeps** - Use `--sweep-param` and `--sweep-values` to find optimal values

View File

@@ -1,44 +0,0 @@
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
"""vLLM Attention Benchmarking Suite."""
from .batch_spec import (
BatchRequest,
format_batch_spec,
get_batch_stats,
parse_batch_spec,
reorder_for_flashinfer,
split_by_type,
)
from .common import (
BenchmarkConfig,
BenchmarkResult,
MockLayer,
MockModelConfig,
ResultsFormatter,
get_attention_scale,
is_mla_backend,
setup_mla_dims,
)
__all__ = [
# Batch specification
"BatchRequest",
"parse_batch_spec",
"format_batch_spec",
"reorder_for_flashinfer",
"split_by_type",
"get_batch_stats",
# Benchmarking infrastructure
"BenchmarkConfig",
"BenchmarkResult",
"ResultsFormatter",
# Mock objects
"MockLayer",
"MockModelConfig",
# Utilities
"setup_mla_dims",
"get_attention_scale",
"is_mla_backend",
]

View File

@@ -1,268 +0,0 @@
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
"""
Simplified batch specification grammar for attention benchmarks.
Grammar (underscore-separated segments):
Format: (<count>?) q<q_len>(k?) (s<seq_len>(k?))?
- count: Number of identical requests (optional, default=1)
- q_len: Query length (number of new tokens)
- seq_len: Total sequence length (optional, defaults to q_len for prefill)
- 'k' suffix: Multiplies value by 1024
Common patterns:
- Prefill: q_len == seq_len (e.g., "q2k" → 2048 new tokens, 2048 seq)
- Decode: q_len == 1 (e.g., "q1s1k" → 1 token, 1024 seq length)
- Extend: q_len < seq_len (e.g., "q4s1k" → 4 tokens, 1024 seq length)
Examples:
q2k -> [(2048, 2048)] # Prefill: 2048 tokens
q1s1k -> [(1, 1024)] # Decode: 1 token, 1K sequence
8q1s1k -> [(1, 1024)] * 8 # 8 decode requests
q4s1k -> [(4, 1024)] # 4-token extend (spec decode)
2q1k_32q1s1k -> [(1024, 1024)] * 2 + [(1, 1024)] * 32 # Mixed batch
16q4s1k -> [(4, 1024)] * 16 # 16 spec decode requests
"""
from collections import Counter
from dataclasses import dataclass
import regex as re
@dataclass
class BatchRequest:
"""Represents a single request in a batch."""
q_len: int # Query length (number of new tokens)
kv_len: int # Total KV cache length
@property
def is_decode(self) -> bool:
"""True if this is a decode request (q_len == 1)."""
return self.q_len == 1
@property
def is_prefill(self) -> bool:
"""True if this is a pure prefill (q_len == kv_len)."""
return self.q_len == self.kv_len
@property
def is_extend(self) -> bool:
"""True if this is context extension (q_len > 1, kv_len > q_len)."""
return self.q_len > 1 and self.kv_len > self.q_len
@property
def context_len(self) -> int:
"""Context length (KV cache - query)."""
return self.kv_len - self.q_len
def as_tuple(self) -> tuple[int, int]:
"""Return as (q_len, kv_len) tuple for compatibility."""
return (self.q_len, self.kv_len)
def _parse_size(size_str: str, k_suffix: str) -> int:
"""Parse size string with optional 'k' suffix."""
size = int(size_str)
return size * 1024 if k_suffix == "k" else size
def parse_batch_spec(spec: str) -> list[BatchRequest]:
"""
Parse batch specification string into list of BatchRequest objects.
Grammar: (<count>?) q<q_len>(k?) (s<seq_len>(k?))?
Args:
spec: Batch specification string (see module docstring for grammar)
Returns:
List of BatchRequest objects
Raises:
ValueError: If spec format is invalid
"""
requests = []
for seg in spec.split("_"):
# Unified pattern: (<count>?) q<q_len>(k?) (s<seq_len>(k?))?
m = re.match(r"^(?:(\d+))?q(\d+)(k?)(?:s(\d+)(k?))?$", seg)
if m:
cnt = int(m.group(1)) if m.group(1) else 1
q_len = _parse_size(m.group(2), m.group(3))
kv_len = _parse_size(m.group(4), m.group(5)) if m.group(4) else q_len
requests.extend([BatchRequest(q_len=q_len, kv_len=kv_len)] * cnt)
continue
raise ValueError(f"Invalid batch spec segment: '{seg}'")
return requests
def format_batch_spec(requests: list[BatchRequest]) -> str:
"""
Format list of BatchRequest into human-readable string.
Groups requests by type and provides counts and sizes.
Args:
requests: List of BatchRequest objects
Returns:
Formatted string describing the batch
"""
kinds = {
"prefill": [],
"extend": [],
"decode": [],
}
for req in requests:
tup = (req.q_len, req.kv_len)
if req.is_prefill:
kinds["prefill"].append(tup)
elif req.is_extend:
kinds["extend"].append(tup)
elif req.is_decode:
kinds["decode"].append(tup)
parts = []
for kind in ["prefill", "extend", "decode"]:
lst = kinds[kind]
if not lst:
continue
cnt_total = len(lst)
ctr = Counter(lst)
inner = []
for (q, kv), cnt in ctr.items():
if kind == "prefill":
size = f"{q // 1024}k" if q % 1024 == 0 else str(q)
inner.append(f"{cnt}x{size}")
elif kind == "decode":
size = f"{kv // 1024}k" if kv % 1024 == 0 else str(kv)
inner.append(f"{cnt}x{size}")
else: # extend
qstr = f"{q // 1024}k" if q % 1024 == 0 else str(q)
kstr = f"{kv // 1024}k" if kv % 1024 == 0 else str(kv)
inner.append(f"{cnt}xq{qstr}kv{kstr}")
parts.append(f"{cnt_total} {kind} ({', '.join(inner)})")
return ", ".join(parts)
def reorder_for_flashinfer(requests: list[BatchRequest]) -> list[BatchRequest]:
"""
Reorder requests for FlashInfer: decode first, then prefill.
FlashInfer expects decode requests before prefill requests for
optimal performance.
Args:
requests: Original list of BatchRequest
Returns:
Reordered list with decode requests first
"""
decodes = [r for r in requests if r.is_decode]
non_decodes = [r for r in requests if not r.is_decode]
return decodes + non_decodes
def split_by_type(
requests: list[BatchRequest],
) -> dict[str, list[BatchRequest]]:
"""
Split requests by type for analysis.
Args:
requests: List of BatchRequest
Returns:
Dict with keys: 'decode', 'prefill', 'extend'
"""
result = {
"decode": [],
"prefill": [],
"extend": [],
}
for req in requests:
if req.is_decode:
result["decode"].append(req)
elif req.is_prefill:
result["prefill"].append(req)
elif req.is_extend:
result["extend"].append(req)
return result
def get_batch_stats(requests: list[BatchRequest]) -> dict:
"""
Compute statistics about a batch.
Args:
requests: List of BatchRequest
Returns:
Dict with batch statistics
"""
by_type = split_by_type(requests)
return {
"total_requests": len(requests),
"num_decode": len(by_type["decode"]),
"num_prefill": len(by_type["prefill"]),
"num_extend": len(by_type["extend"]),
"total_tokens": sum(r.q_len for r in requests),
"total_kv_cache": sum(r.kv_len for r in requests),
"max_q_len": max((r.q_len for r in requests), default=0),
"max_kv_len": max((r.kv_len for r in requests), default=0),
"avg_q_len": sum(r.q_len for r in requests) / len(requests) if requests else 0,
"avg_kv_len": (
sum(r.kv_len for r in requests) / len(requests) if requests else 0
),
}
def get_batch_type(batch_spec: str, spec_decode_threshold: int = 8) -> str:
"""
Classify a batch spec into a type string.
Args:
batch_spec: Batch specification string (e.g., "q2k", "8q1s1k", "2q2k_8q1s1k")
spec_decode_threshold: Max q_len to be considered spec-decode vs extend
Returns:
Type string: "prefill", "decode", "spec-decode", "extend", or "mixed (types...)"
"""
requests = parse_batch_spec(batch_spec)
# Classify each request
types_present = set()
for req in requests:
if req.is_decode:
types_present.add("decode")
elif req.is_prefill:
types_present.add("prefill")
elif req.is_extend:
# Distinguish spec-decode (small q_len) from extend (chunked prefill)
if req.q_len <= spec_decode_threshold:
types_present.add("spec-decode")
else:
types_present.add("extend")
if len(types_present) == 1:
return types_present.pop()
elif len(types_present) > 1:
# Sort for consistent output
sorted_types = sorted(types_present)
return f"mixed ({'+'.join(sorted_types)})"
else:
return "unknown"

View File

@@ -1,895 +0,0 @@
#!/usr/bin/env python3
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
"""
Universal vLLM Attention Benchmark
Benchmark any attention backend with the extended grammar.
Supports standard attention (Flash/Triton/FlashInfer) and MLA backends.
Examples:
# Standard attention
python benchmark.py --backends flash flashinfer --batch-specs "q2k" "8q1s1k"
# MLA backends
python benchmark.py --backends cutlass_mla flashinfer_mla --batch-specs "64q1s1k"
# Parameter sweep (CLI)
python benchmark.py --backend cutlass_mla \
--batch-specs "64q1s1k" \
--sweep-param num_kv_splits \
--sweep-values 1 4 8 16
# Parameter sweep (YAML config - recommended)
python benchmark.py --config configs/cutlass_numsplits.yaml
"""
import argparse
import sys
from dataclasses import replace
from pathlib import Path
import yaml
from rich.console import Console
from tqdm import tqdm
sys.path.insert(0, str(Path(__file__).parent.parent.parent))
from batch_spec import parse_batch_spec
from common import (
BenchmarkConfig,
BenchmarkResult,
ModelParameterSweep,
ParameterSweep,
ResultsFormatter,
batch_spec_sort_key,
is_mla_backend,
)
def run_standard_attention_benchmark(config: BenchmarkConfig) -> BenchmarkResult:
"""Run standard attention benchmark (Flash/Triton/FlashInfer)."""
from runner import run_attention_benchmark
return run_attention_benchmark(config)
def run_mla_benchmark(config: BenchmarkConfig, **kwargs) -> BenchmarkResult:
"""Run MLA benchmark with appropriate backend."""
from mla_runner import run_mla_benchmark as run_mla
return run_mla(config.backend, config, **kwargs)
def run_benchmark(config: BenchmarkConfig, **kwargs) -> BenchmarkResult:
"""
Run a single benchmark with proper backend selection.
Args:
config: BenchmarkConfig with backend, batch_spec, and model params
**kwargs: Additional arguments passed to MLA benchmarks
Returns:
BenchmarkResult (may have error field set on failure)
"""
try:
if is_mla_backend(config.backend):
return run_mla_benchmark(config, **kwargs)
else:
return run_standard_attention_benchmark(config)
except Exception as e:
return BenchmarkResult(
config=config,
mean_time=float("inf"),
std_time=0,
min_time=float("inf"),
max_time=float("inf"),
error=str(e),
)
def run_model_parameter_sweep(
backends: list[str],
batch_specs: list[str],
base_config_args: dict,
sweep: ModelParameterSweep,
console: Console,
) -> list[BenchmarkResult]:
"""
Run model parameter sweep for given backends and batch specs.
Args:
backends: List of backend names
batch_specs: List of batch specifications
base_config_args: Base configuration arguments (num_layers, head_dim, etc.)
sweep: ModelParameterSweep configuration
console: Rich console for output
Returns:
List of BenchmarkResult objects
"""
all_results = []
console.print(
f"[yellow]Model sweep mode: testing {sweep.param_name} = {sweep.values}[/]"
)
total = len(backends) * len(batch_specs) * len(sweep.values)
with tqdm(total=total, desc="Benchmarking") as pbar:
for backend in backends:
for spec in batch_specs:
for value in sweep.values:
# Create config with modified model parameter
config_args = base_config_args.copy()
config_args[sweep.param_name] = value
# Create config with original backend for running
clean_config = BenchmarkConfig(
backend=backend, batch_spec=spec, **config_args
)
# Run benchmark
result = run_benchmark(clean_config)
# Replace backend with labeled version for display
backend_label = sweep.get_label(backend, value)
labeled_config = replace(result.config, backend=backend_label)
result = replace(result, config=labeled_config)
all_results.append(result)
if not result.success:
console.print(
f"[red]Error {backend} {spec} {sweep.param_name}="
f"{value}: {result.error}[/]"
)
pbar.update(1)
# Display sweep results - create separate table for each parameter value
console.print("\n[bold green]Model Parameter Sweep Results:[/]")
formatter = ResultsFormatter(console)
# Group results by parameter value and extract backend mapping
by_param_value = {}
backend_mapping = {} # Maps labeled backend -> original backend
for r in all_results:
# Extract original backend and param value from labeled backend
# The label format is: {backend}_{param_name}_{value}
# We need to reverse engineer this
labeled_backend = r.config.backend
# Try each backend to find which one this result belongs to
for backend in backends:
for value in sweep.values:
expected_label = sweep.get_label(backend, value)
if labeled_backend == expected_label:
backend_mapping[labeled_backend] = backend
param_value = str(value)
if param_value not in by_param_value:
by_param_value[param_value] = []
by_param_value[param_value].append(r)
break
# Create a table for each parameter value
sorted_param_values = sorted(
by_param_value.keys(), key=lambda x: int(x) if x.isdigit() else x
)
for param_value in sorted_param_values:
console.print(f"\n[bold cyan]{sweep.param_name} = {param_value}[/]")
param_results = by_param_value[param_value]
# Create modified results with original backend names
modified_results = []
for r in param_results:
# Get the original backend name from our mapping
original_backend = backend_mapping[r.config.backend]
modified_config = replace(r.config, backend=original_backend)
modified_result = replace(r, config=modified_config)
modified_results.append(modified_result)
# Print table with original backend names
formatter.print_table(modified_results, backends, compare_to_fastest=True)
# Show optimal backend for each (param_value, batch_spec) combination
console.print(
f"\n[bold cyan]Optimal backend for each ({sweep.param_name}, batch_spec):[/]"
)
# Group by (param_value, batch_spec)
by_param_and_spec = {}
for r in all_results:
if r.success:
# Find which (backend, value) this result corresponds to
labeled_backend = r.config.backend
for backend in backends:
for value in sweep.values:
expected_label = sweep.get_label(backend, value)
if labeled_backend == expected_label:
param_value = str(value)
spec = r.config.batch_spec
key = (param_value, spec)
if key not in by_param_and_spec:
by_param_and_spec[key] = []
by_param_and_spec[key].append(r)
break
# Sort by param value then spec (batch_size, q_len, kv_len)
sorted_keys = sorted(
by_param_and_spec.keys(),
key=lambda x: (
int(x[0]) if x[0].isdigit() else x[0],
batch_spec_sort_key(x[1]),
),
)
current_param_value = None
for param_value, spec in sorted_keys:
# Print header when param value changes
if param_value != current_param_value:
console.print(f"\n [bold]{sweep.param_name}={param_value}:[/]")
current_param_value = param_value
results = by_param_and_spec[(param_value, spec)]
best = min(results, key=lambda r: r.mean_time)
# Extract original backend name using the mapping
backend_name = backend_mapping[best.config.backend]
# Show all backends' times for comparison
times_str = " | ".join(
[
f"{backend_mapping[r.config.backend]}: {r.mean_time:.6f}s"
for r in sorted(results, key=lambda r: r.mean_time)
]
)
console.print(
f" {spec:12s} -> [bold green]{backend_name:15s}[/] ({times_str})"
)
return all_results
def run_parameter_sweep(
backends: list[str],
batch_specs: list[str],
base_config_args: dict,
sweep: ParameterSweep,
console: Console,
) -> list[BenchmarkResult]:
"""
Run parameter sweep for given backends and batch specs.
Args:
backends: List of backend names
batch_specs: List of batch specifications
base_config_args: Base configuration arguments (num_layers, head_dim, etc.)
sweep: ParameterSweep configuration
console: Rich console for output
Returns:
List of BenchmarkResult objects
"""
all_results = []
# Build list of values to sweep (including auto if requested)
sweep_values = list(sweep.values)
if sweep.include_auto:
sweep_values.append("auto")
console.print(f"[yellow]Sweep mode: testing {sweep.param_name} = {sweep_values}[/]")
total = len(backends) * len(batch_specs) * len(sweep_values)
with tqdm(total=total, desc="Benchmarking") as pbar:
for backend in backends:
for spec in batch_specs:
for value in sweep_values:
# Create config with original backend for running
config = BenchmarkConfig(
backend=backend, batch_spec=spec, **base_config_args
)
# Prepare kwargs for benchmark runner
kwargs = {}
if value != "auto":
kwargs[sweep.param_name] = value
# Run benchmark
result = run_benchmark(config, **kwargs)
# Replace backend with labeled version for display
backend_label = sweep.get_label(backend, value)
labeled_config = replace(result.config, backend=backend_label)
result = replace(result, config=labeled_config)
all_results.append(result)
if not result.success:
console.print(
f"[red]Error {backend} {spec} {sweep.param_name}="
f"{value}: {result.error}[/]"
)
pbar.update(1)
# Display sweep results
console.print("\n[bold green]Sweep Results:[/]")
backend_labels = [sweep.get_label(b, v) for b in backends for v in sweep_values]
formatter = ResultsFormatter(console)
formatter.print_table(all_results, backend_labels)
# Show optimal values
console.print(f"\n[bold cyan]Optimal {sweep.param_name} per batch spec:[/]")
by_spec = {}
for r in all_results:
if r.success:
spec = r.config.batch_spec
if spec not in by_spec:
by_spec[spec] = []
by_spec[spec].append(r)
for spec in sorted(by_spec.keys(), key=batch_spec_sort_key):
results = by_spec[spec]
best = min(results, key=lambda r: r.mean_time)
console.print(
f" {spec}: [bold green]{best.config.backend}[/] ({best.mean_time:.6f}s)"
)
return all_results
def load_config_from_yaml(config_path: str) -> dict:
"""Load configuration from YAML file."""
with open(config_path) as f:
return yaml.safe_load(f)
def generate_batch_specs_from_ranges(ranges: list[dict]) -> list[str]:
"""
Generate batch specs from range specifications.
Args:
ranges: List of range specifications, each containing:
- template: Batch spec template (e.g., "q{q_len}kv1k")
- q_len: Dict with start, stop, step, end_inclusive (optional)
- Other parameters can also be ranges
Returns:
List of generated batch spec strings
Example:
ranges = [
{
"template": "q{q_len}kv1k",
"q_len": {
"start": 1,
"stop": 16,
"step": 1,
"end_inclusive": true # Optional, defaults to true
}
}
]
Returns: ["q1kv1k", "q2kv1k", ..., "q16kv1k"]
"""
all_specs = []
for range_spec in ranges:
template = range_spec.get("template")
if not template:
raise ValueError("Range specification must include 'template'")
# Extract all range parameters from the spec
range_params = {}
for key, value in range_spec.items():
if key == "template":
continue
if isinstance(value, dict) and "start" in value:
# This is a range specification
start = value["start"]
stop = value["stop"]
step = value.get("step", 1)
# Check if end should be inclusive (default: True)
end_inclusive = value.get("end_inclusive", True)
# Adjust stop based on end_inclusive
if end_inclusive:
range_params[key] = list(range(start, stop + 1, step))
else:
range_params[key] = list(range(start, stop, step))
else:
# This is a fixed value
range_params[key] = [value]
# Generate all combinations (Cartesian product)
if range_params:
import itertools
param_names = list(range_params.keys())
param_values = [range_params[name] for name in param_names]
for values in itertools.product(*param_values):
params = dict(zip(param_names, values))
spec = template.format(**params)
all_specs.append(spec)
else:
# No parameters, just use template as-is
all_specs.append(template)
return all_specs
def main():
parser = argparse.ArgumentParser(
description="Universal vLLM attention benchmark",
formatter_class=argparse.RawDescriptionHelpFormatter,
epilog=__doc__,
)
# Config file
parser.add_argument(
"--config",
help="Path to YAML config file (overrides other args)",
)
# Backend selection
parser.add_argument(
"--backends",
nargs="+",
help="Backends to benchmark (flash, triton, flashinfer, cutlass_mla, "
"flashinfer_mla, flashattn_mla, flashmla)",
)
parser.add_argument(
"--backend",
help="Single backend (alternative to --backends)",
)
# Batch specifications
parser.add_argument(
"--batch-specs",
nargs="+",
default=["q2k", "8q1s1k"],
help="Batch specifications using extended grammar",
)
# Model config
parser.add_argument("--num-layers", type=int, default=10, help="Number of layers")
parser.add_argument("--head-dim", type=int, default=128, help="Head dimension")
parser.add_argument("--num-q-heads", type=int, default=32, help="Query heads")
parser.add_argument("--num-kv-heads", type=int, default=8, help="KV heads")
parser.add_argument("--block-size", type=int, default=16, help="Block size")
# Benchmark settings
parser.add_argument("--device", default="cuda:0", help="Device")
parser.add_argument("--repeats", type=int, default=1, help="Repetitions")
parser.add_argument("--warmup-iters", type=int, default=3, help="Warmup iterations")
parser.add_argument("--profile-memory", action="store_true", help="Profile memory")
# Parameter sweep (use YAML config for advanced sweeps)
parser.add_argument(
"--sweep-param",
help="Parameter name to sweep (e.g., num_kv_splits, reorder_batch_threshold)",
)
parser.add_argument(
"--sweep-values",
type=int,
nargs="+",
help="Values to sweep for the parameter",
)
# Output
parser.add_argument("--output-csv", help="Save to CSV")
parser.add_argument("--output-json", help="Save to JSON")
args = parser.parse_args()
console = Console()
console.print("[bold cyan]vLLM Attention Benchmark[/]")
# Load config from YAML if provided
if args.config:
console.print(f"[yellow]Loading config from: {args.config}[/]")
yaml_config = load_config_from_yaml(args.config)
# Show description if available
if "description" in yaml_config:
console.print(f"[dim]{yaml_config['description']}[/]")
# Override args with YAML values, but CLI args take precedence
# Check if CLI provided backends (they would be non-None and not default)
cli_backends_provided = args.backends is not None or args.backend is not None
# Backend(s) - only use YAML if CLI didn't specify
if not cli_backends_provided:
if "backend" in yaml_config:
args.backend = yaml_config["backend"]
args.backends = None
elif "backends" in yaml_config:
args.backends = yaml_config["backends"]
args.backend = None
# Check for special modes
if "mode" in yaml_config:
args.mode = yaml_config["mode"]
else:
args.mode = None
# Batch specs and sizes
# Support both explicit batch_specs and generated batch_spec_ranges
if "batch_spec_ranges" in yaml_config:
# Generate batch specs from ranges
generated_specs = generate_batch_specs_from_ranges(
yaml_config["batch_spec_ranges"]
)
# Combine with any explicit batch_specs
if "batch_specs" in yaml_config:
args.batch_specs = yaml_config["batch_specs"] + generated_specs
else:
args.batch_specs = generated_specs
console.print(
f"[dim]Generated {len(generated_specs)} batch specs from ranges[/]"
)
elif "batch_specs" in yaml_config:
args.batch_specs = yaml_config["batch_specs"]
if "batch_sizes" in yaml_config:
args.batch_sizes = yaml_config["batch_sizes"]
else:
args.batch_sizes = None
# Model config
if "model" in yaml_config:
model = yaml_config["model"]
args.num_layers = model.get("num_layers", args.num_layers)
args.head_dim = model.get("head_dim", args.head_dim)
args.num_q_heads = model.get("num_q_heads", args.num_q_heads)
args.num_kv_heads = model.get("num_kv_heads", args.num_kv_heads)
args.block_size = model.get("block_size", args.block_size)
# Benchmark settings (top-level keys)
if "device" in yaml_config:
args.device = yaml_config["device"]
if "repeats" in yaml_config:
args.repeats = yaml_config["repeats"]
if "warmup_iters" in yaml_config:
args.warmup_iters = yaml_config["warmup_iters"]
if "profile_memory" in yaml_config:
args.profile_memory = yaml_config["profile_memory"]
# Parameter sweep configuration
if "parameter_sweep" in yaml_config:
sweep_config = yaml_config["parameter_sweep"]
args.parameter_sweep = ParameterSweep(
param_name=sweep_config["param_name"],
values=sweep_config["values"],
include_auto=sweep_config.get("include_auto", False),
label_format=sweep_config.get(
"label_format", "{backend}_{param_name}_{value}"
),
)
else:
args.parameter_sweep = None
# Model parameter sweep configuration
if "model_parameter_sweep" in yaml_config:
sweep_config = yaml_config["model_parameter_sweep"]
args.model_parameter_sweep = ModelParameterSweep(
param_name=sweep_config["param_name"],
values=sweep_config["values"],
label_format=sweep_config.get(
"label_format", "{backend}_{param_name}_{value}"
),
)
else:
args.model_parameter_sweep = None
# Output
if "output" in yaml_config:
output = yaml_config["output"]
if "csv" in output and not args.output_csv:
args.output_csv = output["csv"]
if "json" in output and not args.output_json:
args.output_json = output["json"]
console.print()
# Handle CLI-based parameter sweep (if not from YAML)
if (
(not hasattr(args, "parameter_sweep") or args.parameter_sweep is None)
and args.sweep_param
and args.sweep_values
):
args.parameter_sweep = ParameterSweep(
param_name=args.sweep_param,
values=args.sweep_values,
include_auto=False,
label_format="{backend}_{param_name}_{value}",
)
# Determine backends
backends = args.backends or ([args.backend] if args.backend else ["flash"])
console.print(f"Backends: {', '.join(backends)}")
console.print(f"Batch specs: {', '.join(args.batch_specs)}")
console.print()
# Run benchmarks
all_results = []
# Handle special mode: decode_vs_prefill comparison
if hasattr(args, "mode") and args.mode == "decode_vs_prefill":
console.print("[yellow]Mode: Decode vs Prefill pipeline comparison[/]")
console.print(
"[dim]For each query length, testing both decode and prefill pipelines[/]"
)
console.print("[dim]Using batched execution for optimal performance[/]")
# Extract batch sizes from config
batch_sizes = getattr(args, "batch_sizes", [1])
backend = backends[0] # Use first backend (should only be one)
# Calculate total benchmarks
total = len(batch_sizes)
with tqdm(total=total, desc="Benchmarking") as pbar:
for batch_size in batch_sizes:
# Prepare all configs for this batch size
configs_with_thresholds = []
for spec in args.batch_specs:
# Parse the batch spec to get query length
requests = parse_batch_spec(spec)
if not requests:
console.print(
f"[red]Error: Could not parse batch spec '{spec}'[/]"
)
continue
# Get query length from first request
query_length = requests[0].q_len
# Create batch spec for this batch size
# For batch_size > 1, we need to prepend the count
batch_spec = f"{batch_size}{spec}" if batch_size > 1 else spec
# Create base config (without backend name)
base_config = BenchmarkConfig(
backend=backend, # Will be overridden later
batch_spec=batch_spec,
num_layers=args.num_layers,
head_dim=args.head_dim,
num_q_heads=args.num_q_heads,
num_kv_heads=args.num_kv_heads,
block_size=args.block_size,
device=args.device,
repeats=args.repeats,
warmup_iters=args.warmup_iters,
profile_memory=args.profile_memory,
)
# Add decode pipeline config
decode_threshold = query_length
config_decode = replace(
base_config,
backend=f"{backend}_decode_qlen{query_length}_bs{batch_size}",
)
configs_with_thresholds.append((config_decode, decode_threshold))
# Add prefill pipeline config if query_length > 1
if query_length > 1:
prefill_threshold = query_length - 1
config_prefill = replace(
base_config,
backend=f"{backend}_prefill_qlen{query_length}"
f"_bs{batch_size}",
)
configs_with_thresholds.append(
(config_prefill, prefill_threshold)
)
# Run all benchmarks for this batch size in one go (batched mode)
try:
from mla_runner import run_mla_benchmark as run_mla
# Use batched API: pass list of (config, threshold) tuples
timing_results = run_mla(backend, configs_with_thresholds)
# Create BenchmarkResult objects from timing results
for (config, _), timing in zip(
configs_with_thresholds, timing_results
):
result = BenchmarkResult(
config=config,
mean_time=timing["mean"],
std_time=timing["std"],
min_time=timing["min"],
max_time=timing["max"],
throughput_tokens_per_sec=timing.get("throughput", None),
)
all_results.append(result)
except Exception as e:
import traceback
console.print(
f"[red]Error running batched benchmarks for "
f"batch_size={batch_size}: {e}[/]"
)
console.print("[red]Traceback:[/]")
traceback.print_exc()
# Add error results for all configs
for config, _ in configs_with_thresholds:
result = BenchmarkResult(
config=config,
mean_time=float("inf"),
std_time=0,
min_time=float("inf"),
max_time=float("inf"),
error=str(e),
)
all_results.append(result)
pbar.update(1)
# Display decode vs prefill results
console.print("\n[bold green]Decode vs Prefill Results:[/]")
# Group by batch size
by_batch_size = {}
for r in all_results:
if r.success:
# Extract batch size from backend name
parts = r.config.backend.split("_")
bs_part = [p for p in parts if p.startswith("bs")]
if bs_part:
bs = int(bs_part[0][2:])
if bs not in by_batch_size:
by_batch_size[bs] = []
by_batch_size[bs].append(r)
# For each batch size, analyze crossover point
for bs in sorted(by_batch_size.keys()):
console.print(f"\n[bold cyan]Batch size: {bs}[/]")
results = by_batch_size[bs]
# Group by query length
by_qlen = {}
for r in results:
parts = r.config.backend.split("_")
qlen_part = [p for p in parts if p.startswith("qlen")]
if qlen_part:
qlen = int(qlen_part[0][4:])
if qlen not in by_qlen:
by_qlen[qlen] = {}
pipeline = "decode" if "decode" in r.config.backend else "prefill"
by_qlen[qlen][pipeline] = r
# Find crossover point
last_decode_faster = None
for qlen in sorted(by_qlen.keys()):
pipelines = by_qlen[qlen]
if "decode" in pipelines and "prefill" in pipelines:
decode_time = pipelines["decode"].mean_time
prefill_time = pipelines["prefill"].mean_time
faster = "decode" if decode_time < prefill_time else "prefill"
speedup = (
prefill_time / decode_time
if decode_time < prefill_time
else decode_time / prefill_time
)
console.print(
f" qlen={qlen:3d}: decode={decode_time:.6f}s, "
f"prefill={prefill_time:.6f}s -> "
f"[bold]{faster}[/] ({speedup:.2f}x)"
)
if faster == "decode":
last_decode_faster = qlen
if last_decode_faster is not None:
optimal_threshold = last_decode_faster
console.print(
f"\n [bold green]Optimal threshold for batch_size={bs}: "
f"{optimal_threshold}[/]"
)
console.print(
f" [dim](Use decode pipeline for query_length <= "
f"{optimal_threshold})[/]"
)
else:
console.print(
f"\n [yellow]Prefill always faster for batch_size={bs}[/]"
)
# Handle model parameter sweep mode
elif hasattr(args, "model_parameter_sweep") and args.model_parameter_sweep:
# Model parameter sweep
base_config_args = {
"num_layers": args.num_layers,
"head_dim": args.head_dim,
"num_q_heads": args.num_q_heads,
"num_kv_heads": args.num_kv_heads,
"block_size": args.block_size,
"device": args.device,
"repeats": args.repeats,
"warmup_iters": args.warmup_iters,
"profile_memory": args.profile_memory,
}
all_results = run_model_parameter_sweep(
backends,
args.batch_specs,
base_config_args,
args.model_parameter_sweep,
console,
)
# Handle parameter sweep mode (unified)
elif hasattr(args, "parameter_sweep") and args.parameter_sweep:
# Unified parameter sweep
base_config_args = {
"num_layers": args.num_layers,
"head_dim": args.head_dim,
"num_q_heads": args.num_q_heads,
"num_kv_heads": args.num_kv_heads,
"block_size": args.block_size,
"device": args.device,
"repeats": args.repeats,
"warmup_iters": args.warmup_iters,
"profile_memory": args.profile_memory,
}
all_results = run_parameter_sweep(
backends, args.batch_specs, base_config_args, args.parameter_sweep, console
)
else:
# Normal mode: compare backends
total = len(backends) * len(args.batch_specs)
with tqdm(total=total, desc="Benchmarking") as pbar:
for spec in args.batch_specs:
for backend in backends:
config = BenchmarkConfig(
backend=backend,
batch_spec=spec,
num_layers=args.num_layers,
head_dim=args.head_dim,
num_q_heads=args.num_q_heads,
num_kv_heads=args.num_kv_heads,
block_size=args.block_size,
device=args.device,
repeats=args.repeats,
warmup_iters=args.warmup_iters,
profile_memory=args.profile_memory,
)
result = run_benchmark(config)
all_results.append(result)
if not result.success:
console.print(f"[red]Error {backend} {spec}: {result.error}[/]")
pbar.update(1)
# Display results
console.print("\n[bold green]Results:[/]")
formatter = ResultsFormatter(console)
formatter.print_table(all_results, backends)
# Save results
if all_results:
formatter = ResultsFormatter(console)
if args.output_csv:
formatter.save_csv(all_results, args.output_csv)
if args.output_json:
formatter.save_json(all_results, args.output_json)
if __name__ == "__main__":
main()

View File

@@ -1,568 +0,0 @@
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
"""Common utilities for attention benchmarking."""
import csv
import json
import math
from dataclasses import asdict, dataclass
from pathlib import Path
from typing import Any
import numpy as np
import torch
from batch_spec import get_batch_type, parse_batch_spec
from rich.console import Console
from rich.table import Table
def batch_spec_sort_key(spec: str) -> tuple[int, int, int]:
"""
Extract sorting key from batch spec: (batch_size, max_q_len, max_kv_len).
This ensures results are sorted by batch size first, then query length,
then sequence length, rather than alphabetically.
"""
try:
requests = parse_batch_spec(spec)
batch_size = len(requests)
max_q_len = max(r.q_len for r in requests) if requests else 0
max_kv_len = max(r.kv_len for r in requests) if requests else 0
return (batch_size, max_q_len, max_kv_len)
except Exception:
# Fallback for unparseable specs
return (0, 0, 0)
# Mock classes for vLLM attention infrastructure
class MockHfConfig:
"""Mock HuggingFace config that satisfies vLLM's requirements."""
def __init__(self, mla_dims: dict, index_topk: int | None = None):
self.num_attention_heads = mla_dims["num_q_heads"]
self.num_key_value_heads = mla_dims["num_kv_heads"]
self.hidden_size = mla_dims["head_dim"] * mla_dims["num_q_heads"]
self.model_type = "deepseek_v2"
self.is_encoder_decoder = False
self.kv_lora_rank = mla_dims["kv_lora_rank"]
self.qk_nope_head_dim = mla_dims["qk_nope_head_dim"]
self.qk_rope_head_dim = mla_dims["qk_rope_head_dim"]
self.v_head_dim = mla_dims["v_head_dim"]
self.qk_head_dim = mla_dims["qk_nope_head_dim"] + mla_dims["qk_rope_head_dim"]
if index_topk is not None:
self.index_topk = index_topk
def get_text_config(self):
return self
# Import AttentionLayerBase at module level to avoid circular dependencies
try:
from vllm.model_executor.layers.attention_layer_base import AttentionLayerBase
_HAS_ATTENTION_LAYER_BASE = True
except ImportError:
_HAS_ATTENTION_LAYER_BASE = False
AttentionLayerBase = object # Fallback
class MockKVBProj:
"""Mock KV projection layer for MLA prefill mode.
Mimics ColumnParallelLinear behavior for kv_b_proj in MLA backends.
Projects kv_c_normed to [qk_nope_head_dim + v_head_dim] per head.
"""
def __init__(self, num_heads: int, qk_nope_head_dim: int, v_head_dim: int):
self.num_heads = num_heads
self.qk_nope_head_dim = qk_nope_head_dim
self.v_head_dim = v_head_dim
self.out_dim = qk_nope_head_dim + v_head_dim
def __call__(self, x: torch.Tensor) -> tuple[torch.Tensor]:
"""
Project kv_c_normed to output space.
Args:
x: Input tensor [num_tokens, kv_lora_rank]
Returns:
Tuple containing output tensor
[num_tokens, num_heads, qk_nope_head_dim + v_head_dim]
"""
num_tokens = x.shape[0]
result = torch.randn(
num_tokens,
self.num_heads,
self.out_dim,
device=x.device,
dtype=x.dtype,
)
return (result,) # Return as tuple to match ColumnParallelLinear API
class MockIndexer:
"""Mock Indexer for sparse MLA backends.
Provides topk_indices_buffer that sparse MLA backends use to determine
which KV cache slots to attend to for each token.
"""
def __init__(
self,
max_num_tokens: int,
topk_tokens: int,
device: torch.device,
):
self.topk_tokens = topk_tokens
self.topk_indices_buffer = torch.zeros(
(max_num_tokens, topk_tokens),
dtype=torch.int32,
device=device,
)
def fill_random_indices(self, num_tokens: int, max_kv_len: int):
"""Fill topk_indices_buffer with random valid indices for benchmarking."""
indices = torch.randint(
0,
max_kv_len,
(num_tokens, self.topk_tokens),
dtype=torch.int32,
device=self.topk_indices_buffer.device,
)
self.topk_indices_buffer[:num_tokens] = indices
class MockLayer(AttentionLayerBase):
"""Mock attention layer with scale parameters and impl.
Inherits from AttentionLayerBase so it passes isinstance checks
in get_layers_from_vllm_config when FlashInfer prefill is enabled.
"""
def __init__(self, device: torch.device, impl=None, kv_cache_spec=None):
# Don't call super().__init__() as AttentionLayerBase doesn't have __init__
self._k_scale = torch.tensor(1.0, device=device)
self._v_scale = torch.tensor(1.0, device=device)
self._q_scale = torch.tensor(1.0, device=device)
# Scalar floats for kernels that need them
self._k_scale_float = float(self._k_scale.item())
self._v_scale_float = float(self._v_scale.item())
self._q_scale_float = float(self._q_scale.item())
# AttentionImpl for metadata builders to query
self.impl = impl
# KV cache spec for get_kv_cache_spec
self._kv_cache_spec = kv_cache_spec
def get_attn_backend(self):
"""Get the attention backend class (required by AttentionLayerBase)."""
# Return None as this is just a mock layer for benchmarking
return None
def get_kv_cache_spec(self):
"""Get the KV cache spec (required by AttentionLayerBase)."""
return self._kv_cache_spec
class MockModelConfig:
"""Mock model configuration."""
def __init__(
self,
num_q_heads: int,
num_kv_heads: int,
head_dim: int,
dtype: torch.dtype = torch.float16,
max_model_len: int = 32768,
):
self._n_q = num_q_heads
self._n_kv = num_kv_heads
self._d = head_dim
self.dtype = dtype
self.max_model_len = max_model_len
def get_num_attention_heads(self, _=None) -> int:
return self._n_q
def get_num_kv_heads(self, _=None) -> int:
return self._n_kv
def get_head_size(self) -> int:
return self._d
def get_num_layers(self) -> int:
"""Mock method for layer count queries."""
return 1
def get_sliding_window_for_layer(self, _layer_idx: int):
"""Mock method for sliding window queries."""
return None
def get_logits_soft_cap_for_layer(self, _layer_idx: int):
"""Mock method for logits soft cap queries."""
return None
def get_sm_scale_for_layer(self, _layer_idx: int) -> float:
"""Mock method for SM scale queries."""
return 1.0 / (self.get_head_size() ** 0.5)
class MockParallelConfig:
"""Mock parallel configuration."""
pass
class MockCompilationConfig:
"""Mock compilation configuration."""
def __init__(self):
self.full_cuda_graph = False
self.static_forward_context = {}
class MockVLLMConfig:
"""Mock VLLM configuration."""
def __init__(self):
self.compilation_config = MockCompilationConfig()
class MockRunner:
"""Mock GPU runner for metadata builders."""
def __init__(
self,
seq_lens: np.ndarray,
query_start_locs: np.ndarray,
device: torch.device,
num_q_heads: int,
num_kv_heads: int,
head_dim: int,
dtype: torch.dtype,
):
self.model_config = MockModelConfig(num_q_heads, num_kv_heads, head_dim, dtype)
self.parallel_config = MockParallelConfig()
self.vllm_config = MockVLLMConfig()
self.seq_lens_np = seq_lens
self.query_start_loc_np = query_start_locs
self.device = device
self.attention_chunk_size = None
self.num_query_heads = num_q_heads
self.num_kv_heads = num_kv_heads
self.dtype = dtype
@dataclass
class ParameterSweep:
"""Configuration for sweeping a backend parameter."""
param_name: str # Name of the backend parameter to sweep
values: list[Any] # List of values to test
include_auto: bool = False # Also test with param unset (auto mode)
label_format: str = "{backend}_{param_name}_{value}" # Result label template
def get_label(self, backend: str, value: Any) -> str:
"""Generate a label for a specific parameter value."""
return self.label_format.format(
backend=backend, param_name=self.param_name, value=value
)
@dataclass
class ModelParameterSweep:
"""Configuration for sweeping a model configuration parameter."""
param_name: str # Name of the model config parameter to sweep (e.g., "num_q_heads")
values: list[Any] # List of values to test
label_format: str = "{backend}_{param_name}_{value}" # Result label template
def get_label(self, backend: str, value: Any) -> str:
"""Generate a label for a specific parameter value."""
return self.label_format.format(
backend=backend, param_name=self.param_name, value=value
)
@dataclass
class BenchmarkConfig:
"""Configuration for a single benchmark run."""
backend: str
batch_spec: str
num_layers: int
head_dim: int
num_q_heads: int
num_kv_heads: int
block_size: int
device: str
dtype: torch.dtype = torch.float16
repeats: int = 1
warmup_iters: int = 3
profile_memory: bool = False
use_cuda_graphs: bool = False
# MLA-specific
kv_lora_rank: int | None = None
qk_nope_head_dim: int | None = None
qk_rope_head_dim: int | None = None
v_head_dim: int | None = None
# Backend-specific tuning
num_kv_splits: int | None = None # CUTLASS MLA
reorder_batch_threshold: int | None = None # FlashAttn MLA, FlashMLA
@dataclass
class BenchmarkResult:
"""Results from a single benchmark run."""
config: BenchmarkConfig
mean_time: float # seconds
std_time: float # seconds
min_time: float # seconds
max_time: float # seconds
throughput_tokens_per_sec: float | None = None
memory_allocated_mb: float | None = None
memory_reserved_mb: float | None = None
error: str | None = None
@property
def success(self) -> bool:
"""Whether benchmark completed successfully."""
return self.error is None
def to_dict(self) -> dict[str, Any]:
"""Convert to dictionary for serialization."""
return {
"config": asdict(self.config),
"mean_time": self.mean_time,
"std_time": self.std_time,
"min_time": self.min_time,
"max_time": self.max_time,
"throughput_tokens_per_sec": self.throughput_tokens_per_sec,
"memory_allocated_mb": self.memory_allocated_mb,
"memory_reserved_mb": self.memory_reserved_mb,
"error": self.error,
}
class ResultsFormatter:
"""Format and display benchmark results."""
def __init__(self, console: Console | None = None):
self.console = console or Console()
def print_table(
self,
results: list[BenchmarkResult],
backends: list[str],
compare_to_fastest: bool = True,
):
"""
Print results as a rich table.
Args:
results: List of BenchmarkResult
backends: List of backend names being compared
compare_to_fastest: Show percentage comparison to fastest
"""
# Group by batch spec, preserving first-occurrence order
by_spec = {}
specs_order = []
for r in results:
spec = r.config.batch_spec
if spec not in by_spec:
by_spec[spec] = {}
specs_order.append(spec)
by_spec[spec][r.config.backend] = r
# Sort specs by (batch_size, q_len, kv_len) instead of alphabetically
specs_order = sorted(by_spec.keys(), key=batch_spec_sort_key)
# Create shortened backend names for display
def shorten_backend_name(name: str) -> str:
"""Shorten long backend names for table display."""
# Remove common prefixes
name = name.replace("flashattn_mla", "famla")
name = name.replace("flashinfer_mla", "fimla")
name = name.replace("flashmla", "fmla")
name = name.replace("cutlass_mla", "cmla")
name = name.replace("numsplits", "ns")
return name
table = Table(title="Attention Benchmark Results")
table.add_column("Batch\nSpec", no_wrap=True)
table.add_column("Type", no_wrap=True)
table.add_column("Batch\nSize", justify="right", no_wrap=True)
multi = len(backends) > 1
for backend in backends:
short_name = shorten_backend_name(backend)
# Time column
col_time = f"{short_name}\nTime (s)"
table.add_column(col_time, justify="right", no_wrap=False)
if multi and compare_to_fastest:
# Relative performance column
col_rel = f"{short_name}\nvs Best"
table.add_column(col_rel, justify="right", no_wrap=False)
# Add rows
for spec in specs_order:
spec_results = by_spec[spec]
times = {b: r.mean_time for b, r in spec_results.items() if r.success}
best_time = min(times.values()) if times else 0.0
batch_type = get_batch_type(spec)
batch_size = len(parse_batch_spec(spec))
row = [spec, batch_type, str(batch_size)]
for backend in backends:
if backend in spec_results:
r = spec_results[backend]
if r.success:
row.append(f"{r.mean_time:.6f}")
if multi and compare_to_fastest:
pct = (
(r.mean_time / best_time * 100) if best_time > 0 else 0
)
pct_str = f"{pct:.1f}%"
if r.mean_time == best_time:
pct_str = f"[bold green]{pct_str}[/]"
row.append(pct_str)
else:
row.append("[red]ERROR[/]")
if multi and compare_to_fastest:
row.append("-")
else:
row.append("-")
if multi and compare_to_fastest:
row.append("-")
table.add_row(*row)
self.console.print(table)
def save_csv(self, results: list[BenchmarkResult], path: str):
"""Save results to CSV file."""
if not results:
return
path_obj = Path(path)
path_obj.parent.mkdir(parents=True, exist_ok=True)
with open(path, "w", newline="") as f:
writer = csv.DictWriter(
f,
fieldnames=[
"backend",
"batch_spec",
"num_layers",
"mean_time",
"std_time",
"throughput",
"memory_mb",
],
)
writer.writeheader()
for r in results:
writer.writerow(
{
"backend": r.config.backend,
"batch_spec": r.config.batch_spec,
"num_layers": r.config.num_layers,
"mean_time": r.mean_time,
"std_time": r.std_time,
"throughput": r.throughput_tokens_per_sec or 0,
"memory_mb": r.memory_allocated_mb or 0,
}
)
self.console.print(f"[green]Saved CSV results to {path}[/]")
def save_json(self, results: list[BenchmarkResult], path: str):
"""Save results to JSON file."""
path_obj = Path(path)
path_obj.parent.mkdir(parents=True, exist_ok=True)
data = [r.to_dict() for r in results]
with open(path, "w") as f:
json.dump(data, f, indent=2, default=str)
self.console.print(f"[green]Saved JSON results to {path}[/]")
def setup_mla_dims(model_name: str = "deepseek-v3") -> dict:
"""
Get MLA dimensions for known models.
Args:
model_name: Model identifier
Returns:
Dict with MLA dimension configuration
"""
configs = {
"deepseek-v2": {
"kv_lora_rank": 512,
"qk_nope_head_dim": 128,
"qk_rope_head_dim": 64,
"v_head_dim": 128,
"num_q_heads": 128,
"num_kv_heads": 1,
"head_dim": 576,
},
"deepseek-v3": {
"kv_lora_rank": 512,
"qk_nope_head_dim": 128,
"qk_rope_head_dim": 64,
"v_head_dim": 128,
"num_q_heads": 128,
"num_kv_heads": 1,
"head_dim": 576,
},
"deepseek-v2-lite": {
"kv_lora_rank": 512,
"qk_nope_head_dim": 128,
"qk_rope_head_dim": 64,
"v_head_dim": 128,
"num_q_heads": 16,
"num_kv_heads": 1,
"head_dim": 576,
},
}
if model_name not in configs:
raise ValueError(
f"Unknown model '{model_name}'. Known models: {list(configs.keys())}"
)
return configs[model_name]
def get_attention_scale(head_dim: int) -> float:
"""Compute attention scale factor (1/sqrt(d))."""
return 1.0 / math.sqrt(head_dim)
def is_mla_backend(backend: str) -> bool:
"""
Check if backend is an MLA backend using the AttentionBackendEnum.
Args:
backend: Backend name matching AttentionBackendEnum exactly
(e.g., "FLASHMLA_SPARSE")
Returns:
True if the backend is an MLA backend, False otherwise
"""
from vllm.v1.attention.backends.registry import AttentionBackendEnum
try:
backend_enum = AttentionBackendEnum[backend]
backend_class = backend_enum.get_class()
return backend_class.is_mla()
except (KeyError, ValueError, ImportError, AttributeError):
return False

View File

@@ -1,70 +0,0 @@
# MLA decode-only benchmark configuration
model:
name: "deepseek-v3"
num_layers: 60
num_q_heads: 128 # Base value, can be swept for TP simulation
num_kv_heads: 1 # MLA uses single latent KV
head_dim: 576
kv_lora_rank: 512
qk_nope_head_dim: 128
qk_rope_head_dim: 64
v_head_dim: 128
block_size: 128 # CUTLASS MLA and FlashAttn MLA use 128
# Model parameter sweep: simulate tensor parallelism by varying num_q_heads
# TP=1: 128 heads, TP=2: 64 heads, TP=4: 32 heads, TP=8: 16 heads
model_parameter_sweep:
param_name: "num_q_heads"
values: [128, 64, 32, 16]
label_format: "{backend}_{value}h"
batch_specs:
# Small batches, varying sequence lengths
- "16q1s512" # 16 requests, 512 KV cache
- "16q1s1k" # 16 requests, 1k KV cache
- "16q1s2k" # 16 requests, 2k KV cache
- "16q1s4k" # 16 requests, 4k KV cache
# Medium batches
- "32q1s1k" # 32 requests, 1k KV cache
- "32q1s2k" # 32 requests, 2k KV cache
- "32q1s4k" # 32 requests, 4k KV cache
- "32q1s8k" # 32 requests, 8k KV cache
# Large batches
- "64q1s1k" # 64 requests, 1k KV cache
- "64q1s2k" # 64 requests, 2k KV cache
- "64q1s4k" # 64 requests, 4k KV cache
- "64q1s8k" # 64 requests, 8k KV cache
# Very large batches
- "128q1s1k" # 128 requests, 1k KV cache
- "128q1s2k" # 128 requests, 2k KV cache
- "128q1s4k" # 128 requests, 4k KV cache
- "128q1s8k" # 128 requests, 8k KV cache
# Long context
- "32q1s16k" # 32 requests, 16k KV cache
- "32q1s32k" # 32 requests, 32k KV cache
backends:
- CUTLASS_MLA
- FLASHINFER_MLA
- FLASH_ATTN_MLA # Hopper only
- FLASHMLA # Hopper only
device: "cuda:0"
repeats: 100
warmup_iters: 10
profile_memory: true
# Backend-specific tuning
CUTLASS_MLA:
num_kv_splits: auto # or specific value like 4, 8, 16
FLASH_ATTN_MLA:
reorder_batch_threshold: 512
FLASHMLA:
reorder_batch_threshold: 1

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@@ -1,60 +0,0 @@
# MLA mixed batch benchmark (prefill + decode)
# Tests chunked prefill performance
model:
name: "deepseek-v3"
num_layers: 60
num_q_heads: 128
num_kv_heads: 1
head_dim: 576
kv_lora_rank: 512
qk_nope_head_dim: 128
qk_rope_head_dim: 64
v_head_dim: 128
block_size: 128
batch_specs:
# Small prefill + decode
- "1q1k_8q1s1k" # 1 prefill + 8 decode
- "2q2k_16q1s1k" # 2 prefill + 16 decode
- "4q1k_32q1s2k" # 4 prefill + 32 decode
# Medium prefill + decode
- "2q4k_32q1s2k" # 2 medium prefill + 32 decode
- "4q4k_64q1s2k" # 4 medium prefill + 64 decode
- "8q2k_64q1s4k" # 8 prefill + 64 decode
# Large prefill + decode (chunked prefill stress test)
- "2q8k_32q1s1k" # 2 large prefill + 32 decode
- "1q16k_16q1s2k" # 1 very large prefill + 16 decode
- "2q16k_32q1s4k" # 2 very large prefill + 32 decode
# Context extension + decode
- "2q1kkv2k_16q1s1k" # 2 extend + 16 decode
- "4q2kkv4k_32q1s2k" # 4 extend + 32 decode
- "2q1kkv8k_32q1s2k" # 2 large extend + 32 decode
# Explicitly chunked prefill
- "q8k" # 8k prefill with chunking hint
- "q16k" # 16k prefill with chunking hint
- "2q8k_32q1s2k" # 2 chunked prefill + 32 decode
# High decode ratio (realistic serving)
- "1q2k_63q1s1k" # 1 prefill + 63 decode
- "2q2k_62q1s2k" # 2 prefill + 62 decode
- "4q4k_60q1s4k" # 4 prefill + 60 decode
backends:
- CUTLASS_MLA
- FLASHINFER_MLA
- FLASH_ATTN_MLA # Hopper only
- FLASHMLA # Hopper only
device: "cuda:0"
repeats: 5
warmup_iters: 3
profile_memory: true
# Analyze chunked prefill workspace size impact
chunked_prefill:
test_workspace_sizes: [4096, 8192, 16384, 32768, 65536]

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@@ -1,62 +0,0 @@
# MLA prefill-only benchmark configuration for sparse backends
model:
name: "deepseek-v3"
num_layers: 60
num_q_heads: 128
num_kv_heads: 1
head_dim: 576
kv_lora_rank: 512
qk_nope_head_dim: 128
qk_rope_head_dim: 64
v_head_dim: 128
block_size: 128
# Model parameter sweep: simulate tensor parallelism by varying num_q_heads
# TP=1: 128 heads, TP=2: 64 heads, TP=4: 32 heads, TP=8: 16 heads
model_parameter_sweep:
param_name: "num_q_heads"
values: [128, 64, 32, 16]
label_format: "{backend}_{value}h"
batch_specs:
# Pure prefill
- "1q512"
- "1q1k"
- "1q2k"
- "1q4k"
- "1q8k"
# Batched pure prefill
- "2q512"
- "2q1k"
- "2q2k"
- "2q4k"
- "2q8k"
- "4q512"
- "4q1k"
- "4q2k"
- "4q4k"
- "4q8k"
- "8q512"
- "8q1k"
- "8q2k"
- "8q4k"
- "8q8k"
# Extend
- "1q512s4k"
- "1q512s8k"
- "1q1ks8k"
- "1q2ks8k"
- "1q2ks16k"
- "1q4ks16k"
backends:
- FLASHMLA_SPARSE
- FLASHINFER_MLA_SPARSE
device: "cuda:0"
repeats: 10
warmup_iters: 3
profile_memory: true

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@@ -1,87 +0,0 @@
# Study 4: What is optimal reorder_batch_threshold for MLA backends supporting query length > 1?
# Question: At what query length does prefill pipeline become faster than decode pipeline?
# Methodology: For each query length, compare decode vs prefill performance to find crossover point
# Applies to: FlashAttn MLA, FlashMLA
description: "Decode vs Prefill pipeline crossover analysis"
# Test FlashAttn MLA
backend: FLASH_ATTN_MLA
# Mode: decode_vs_prefill comparison (special sweep mode)
# For each batch spec, we'll test both decode and prefill pipelines
mode: "decode_vs_prefill"
# Query lengths to test (from old benchmark_mla_threshold.py methodology)
# Each query length will be tested with BOTH decode and prefill pipelines:
# - decode: threshold >= query_length (forces decode pipeline)
# - prefill: threshold < query_length (forces prefill pipeline)
#
# We use q<N>s1k format which creates q_len=N, seq_len=1024 requests
# This tests different query lengths with fixed sequence length context
#
# Using batch_spec_ranges for automatic generation:
batch_spec_ranges:
- template: "q{q_len}s1k"
q_len:
start: 1
stop: 16
step: 1
end_inclusive: false
- template: "q{q_len}s1k"
q_len:
start: 16
stop: 64
step: 2
end_inclusive: false
- template: "q{q_len}s1k"
q_len:
start: 64
stop: 1024
step: 4
end_inclusive: true
# Batch sizes to test (from old script)
batch_sizes:
- 1
- 2
- 4
- 8
- 16
- 32
- 64
- 128
- 256
# Model configuration (DeepSeek V2/V3 defaults)
model:
num_layers: 10
head_dim: 576
num_q_heads: 128
num_kv_heads: 1
block_size: 128
# Benchmark settings
device: "cuda:0"
repeats: 15 # More repeats for spec decode variance
warmup_iters: 5
profile_memory: false
# Output
output:
csv: "reorder_threshold_results.csv"
json: "reorder_threshold_results.json"
# Expected outcome (reproduces old benchmark_mla_threshold.py study):
# - For each batch size, find the crossover point where prefill becomes faster than decode
# - Show decode vs prefill performance across all query lengths
# - Determine optimal reorder_batch_threshold based on last query length where decode is faster
# - Understand how crossover point varies with batch size
# - Provide data-driven guidance for default threshold value
#
# Methodology (from old script):
# - Each query length tested with BOTH pipelines:
# * decode: threshold >= query_length (forces decode pipeline)
# * prefill: threshold < query_length (forces prefill pipeline)
# - Compare which is faster to find crossover point
#

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@@ -1,61 +0,0 @@
# Speculative decoding benchmark configuration
# Tests reorder_batch_threshold optimization
model:
name: "deepseek-v3"
num_layers: 60
num_q_heads: 128
num_kv_heads: 1
head_dim: 576
kv_lora_rank: 512
qk_nope_head_dim: 128
qk_rope_head_dim: 64
v_head_dim: 128
batch_specs:
# Pure speculative decode (K-token verification)
- "q2s1k" # 2-token spec, 1k KV
- "q4s1k" # 4-token spec, 1k KV
- "q8s1k" # 8-token spec, 1k KV
- "q16s1k" # 16-token spec, 1k KV
# Speculative with different context lengths
- "q4s2k" # 4-token spec, 2k KV
- "q4s4k" # 4-token spec, 4k KV
- "q8s2k" # 8-token spec, 2k KV
- "q8s4k" # 8-token spec, 4k KV
# Mixed: speculative + regular decode
- "32q4s1k" # 32 spec requests
- "16q4s1k_16q1s1k" # 16 spec + 16 regular
- "8q8s2k_24q1s2k" # 8 spec (8-tok) + 24 regular
# Mixed: speculative + prefill + decode
- "2q1k_16q4s1k_16q1s1k" # 2 prefill + 16 spec + 16 decode
- "4q2k_32q4s2k_32q1s2k" # 4 prefill + 32 spec + 32 decode
# Large batches with speculation
- "64q4s1k" # 64 spec requests
- "32q8s2k" # 32 spec (8-token)
- "16q16s4k" # 16 spec (16-token)
# Backends that support query length > 1
backends:
- FLASH_ATTN_MLA # reorder_batch_threshold = 512
- FLASHMLA # reorder_batch_threshold = 1 (tunable)
# FlashInfer-MLA also supports uniform spec-as-decode but with different mechanism
# - FLASHINFER_MLA
# Benchmark settings
device: "cuda:0"
repeats: 10 # More repeats for statistical significance
warmup_iters: 5
profile_memory: false
# Test these threshold values for optimization
parameter_sweep:
param_name: "reorder_batch_threshold"
values: [1, 2, 4, 8, 16, 32, 64, 128, 256, 512]
include_auto: false
label_format: "{backend}_threshold_{value}"

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@@ -1,48 +0,0 @@
# Standard attention backend benchmark configuration
model:
num_layers: 32
num_q_heads: 32
num_kv_heads: 8 # GQA with 4:1 ratio
head_dim: 128
block_size: 16
batch_specs:
# Pure prefill
- "q512" # Small prefill (512 tokens)
- "q2k" # Medium prefill (2048 tokens)
- "q4k" # Large prefill (4096 tokens)
- "q8k" # Very large prefill (8192 tokens)
# Pure decode
- "8q1s1k" # 8 requests, 1k KV cache each
- "16q1s2k" # 16 requests, 2k KV cache each
- "32q1s1k" # 32 requests, 1k KV cache each
- "64q1s4k" # 64 requests, 4k KV cache each
# Mixed prefill/decode
- "2q2k_8q1s1k" # 2 prefill + 8 decode
- "4q1k_16q1s2k" # 4 prefill + 16 decode
- "2q4k_32q1s1k" # 2 large prefill + 32 decode
# Speculative decode (q <= 8)
- "16q2s1k" # 16 requests, 2 spec tokens, 1k KV cache
- "16q4s1k" # 16 requests, 4 spec tokens, 1k KV cache
- "16q8s1k" # 16 requests, 8 spec tokens, 1k KV cache
- "32q4s2k" # 32 requests, 4 spec tokens, 2k KV cache
- "8q8s4k" # 8 requests, 8 spec tokens, 4k KV cache
# Context extension (chunked prefill)
- "q1ks2k" # 1k query, 2k sequence
- "2q1ks4k" # 2 requests: 1k query, 4k sequence
# Available backends: FLASH_ATTN, TRITON_ATTN, FLASHINFER
backends:
- FLASH_ATTN
- TRITON_ATTN
- FLASHINFER
device: "cuda:0"
repeats: 5
warmup_iters: 3
profile_memory: false

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@@ -1,891 +0,0 @@
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
"""
MLA benchmark runner - shared utilities for MLA benchmarks.
This module provides helpers for running MLA backends without
needing full VllmConfig integration.
"""
import numpy as np
import torch
from batch_spec import parse_batch_spec
from common import (
BenchmarkResult,
MockHfConfig,
MockIndexer,
MockKVBProj,
MockLayer,
setup_mla_dims,
)
from vllm.config import (
CacheConfig,
CompilationConfig,
ModelConfig,
ParallelConfig,
SchedulerConfig,
VllmConfig,
set_current_vllm_config,
)
# ============================================================================
# VllmConfig Creation
# ============================================================================
def _add_mock_methods_to_model_config(model_config: ModelConfig) -> None:
"""
Add mock methods for layer-specific queries to ModelConfig.
These methods are needed by metadata builders but aren't normally
present on ModelConfig when used in benchmark contexts.
"""
import types
model_config.get_num_layers = types.MethodType(lambda self: 1, model_config)
model_config.get_sliding_window_for_layer = types.MethodType(
lambda self, _i: None, model_config
)
model_config.get_logits_soft_cap_for_layer = types.MethodType(
lambda self, _i: None, model_config
)
model_config.get_sm_scale_for_layer = types.MethodType(
lambda self, _i: 1.0 / model_config.get_head_size() ** 0.5, model_config
)
def create_minimal_vllm_config(
model_name: str = "deepseek-v3",
block_size: int = 128,
max_num_seqs: int = 256,
mla_dims: dict | None = None,
index_topk: int | None = None,
) -> VllmConfig:
"""
Create minimal VllmConfig for MLA benchmarks.
Args:
model_name: Model name (deepseek-v2, deepseek-v3, etc.) - used if mla_dims not
provided
block_size: KV cache block size
max_num_seqs: Maximum number of sequences
mla_dims: Optional custom MLA dimensions dict. If not provided, uses
setup_mla_dims(model_name)
index_topk: Optional topk value for sparse MLA backends. If provided,
the config will include index_topk for sparse attention.
Returns:
VllmConfig for benchmarking
"""
# Get MLA dimensions - use provided or load from model name
if mla_dims is None:
mla_dims = setup_mla_dims(model_name)
# Create mock HF config first (avoids downloading from HuggingFace)
mock_hf_config = MockHfConfig(mla_dims, index_topk=index_topk)
# Create a temporary minimal config.json to avoid HF downloads
# This ensures consistent ModelConfig construction without network access
import json
import os
import shutil
import tempfile
minimal_config = {
"architectures": ["DeepseekV2ForCausalLM"],
"model_type": "deepseek_v2",
"num_attention_heads": mla_dims["num_q_heads"],
"num_key_value_heads": mla_dims["num_kv_heads"],
"hidden_size": mla_dims["head_dim"] * mla_dims["num_q_heads"],
"torch_dtype": "bfloat16",
"max_position_embeddings": 163840, # DeepSeek V3 default
"rope_theta": 10000.0,
"vocab_size": 128256,
}
# Create temporary directory with config.json
temp_dir = tempfile.mkdtemp(prefix="vllm_bench_")
config_path = os.path.join(temp_dir, "config.json")
with open(config_path, "w") as f:
json.dump(minimal_config, f)
try:
# Create model config using local path - no HF downloads
model_config = ModelConfig(
model=temp_dir, # Use local temp directory
tokenizer=None,
tokenizer_mode="auto",
trust_remote_code=True,
dtype="bfloat16",
seed=0,
max_model_len=32768,
quantization=None,
enforce_eager=False,
max_logprobs=20,
disable_sliding_window=False,
skip_tokenizer_init=True,
served_model_name=None,
limit_mm_per_prompt=None,
config_format="auto",
)
finally:
# Clean up temporary directory
shutil.rmtree(temp_dir, ignore_errors=True)
# Override with our mock config
model_config.hf_config = mock_hf_config
model_config.hf_text_config = mock_hf_config
# Add mock methods for layer-specific queries
_add_mock_methods_to_model_config(model_config)
# Create sub-configs
cache_config = CacheConfig(
block_size=block_size,
gpu_memory_utilization=0.9,
swap_space=0,
cache_dtype="auto",
enable_prefix_caching=False,
)
scheduler_config = SchedulerConfig(
max_num_seqs=max_num_seqs,
max_num_batched_tokens=8192,
max_model_len=32768,
is_encoder_decoder=False,
enable_chunked_prefill=True,
)
parallel_config = ParallelConfig(
tensor_parallel_size=1,
)
compilation_config = CompilationConfig()
return VllmConfig(
model_config=model_config,
cache_config=cache_config,
parallel_config=parallel_config,
scheduler_config=scheduler_config,
compilation_config=compilation_config,
)
# ============================================================================
# Backend Configuration
# ============================================================================
# Backend-specific properties that can't be inferred from the backend class
# Keys are AttentionBackendEnum names (uppercase)
_BACKEND_PROPERTIES = {
"FLASHMLA": {
"query_format": "concat", # Single concatenated tensor (vs tuple)
},
"FLASHMLA_SPARSE": {
"query_format": "concat", # Single concatenated tensor (vs tuple)
},
}
def _get_backend_config(backend: str) -> dict:
"""
Get backend configuration from AttentionBackendEnum.
Uses the registry to get the backend class and extract configuration
from its methods (get_impl_cls, get_builder_cls, is_sparse, etc.).
Args:
backend: Backend name matching AttentionBackendEnum exactly
(e.g., "FLASHMLA_SPARSE")
Returns:
Dict with backend configuration
"""
from vllm.v1.attention.backends.registry import AttentionBackendEnum
try:
backend_enum = AttentionBackendEnum[backend]
backend_class = backend_enum.get_class()
except (KeyError, ValueError) as e:
valid_backends = [e.name for e in AttentionBackendEnum if e.name != "CUSTOM"]
raise ValueError(
f"Unknown backend: {backend}. "
f"Valid MLA backends: {[b for b in valid_backends if 'MLA' in b]}"
) from e
# Get block size from backend class
block_sizes = backend_class.get_supported_kernel_block_sizes()
# Use first supported block size (backends typically support one for MLA)
block_size = block_sizes[0] if block_sizes else None
if hasattr(block_size, "value"):
# Handle MultipleOf enum
block_size = None
# Check if sparse via class method if available
is_sparse = getattr(backend_class, "is_sparse", lambda: False)()
# Get properties that can't be inferred
props = _BACKEND_PROPERTIES.get(backend, {})
return {
"backend_class": backend_class,
"impl_class": backend_class.get_impl_cls(),
"builder_class": backend_class.get_builder_cls(),
"query_format": props.get("query_format", "tuple"),
"block_size": block_size,
"is_sparse": is_sparse,
}
# ============================================================================
# Metadata Building Helpers
# ============================================================================
def _build_attention_metadata(
requests: list,
block_size: int,
device: torch.device,
builder_instance,
) -> tuple:
"""
Build attention metadata from batch requests.
Args:
requests: List of BatchRequest objects
block_size: KV cache block size
device: Target device
builder_instance: Metadata builder instance
Returns:
Tuple of (metadata, kv_cache_num_blocks)
"""
q_lens = [r.q_len for r in requests]
kv_lens = [r.kv_len for r in requests]
total_q = sum(q_lens)
max_kv = max(kv_lens)
# Build query start locations
q_start_cpu = torch.tensor(
[0] + [sum(q_lens[: i + 1]) for i in range(len(q_lens))],
dtype=torch.int32,
)
q_start_gpu = q_start_cpu.to(device)
# Build sequence lengths
seq_lens_cpu = torch.tensor(kv_lens, dtype=torch.int32)
seq_lens_gpu = seq_lens_cpu.to(device)
# Build num_computed_tokens (context length for each request)
context_lens = [kv_len - q_len for q_len, kv_len in zip(q_lens, kv_lens)]
num_computed_tokens_cpu = torch.tensor(context_lens, dtype=torch.int32)
# Build block table
num_blocks_per_req = [(kv + block_size - 1) // block_size for kv in kv_lens]
max_num_blocks = max(num_blocks_per_req)
block_table_cpu = np.zeros((len(requests), max_num_blocks), dtype=np.int32)
current_block = 0
for i, num_blocks in enumerate(num_blocks_per_req):
for j in range(num_blocks):
block_table_cpu[i, j] = current_block
current_block += 1
block_table_gpu = torch.from_numpy(block_table_cpu).to(device)
# Build slot mapping
slot_mapping_list = []
for i, (q_len, kv_len, num_blocks) in enumerate(
zip(q_lens, kv_lens, num_blocks_per_req)
):
context_len = kv_len - q_len
for j in range(q_len):
token_kv_idx = context_len + j
block_idx = token_kv_idx // block_size
offset_in_block = token_kv_idx % block_size
global_block_id = block_table_cpu[i, block_idx]
slot_id = global_block_id * block_size + offset_in_block
slot_mapping_list.append(slot_id)
slot_mapping = torch.tensor(slot_mapping_list, dtype=torch.int64, device=device)
# Create CommonAttentionMetadata
from vllm.v1.attention.backends.utils import CommonAttentionMetadata
common_attn_metadata = CommonAttentionMetadata(
num_reqs=len(requests),
max_query_len=max(q_lens),
max_seq_len=max_kv,
num_actual_tokens=total_q,
query_start_loc=q_start_gpu,
query_start_loc_cpu=q_start_cpu,
seq_lens=seq_lens_gpu,
_seq_lens_cpu=seq_lens_cpu,
_num_computed_tokens_cpu=num_computed_tokens_cpu,
slot_mapping=slot_mapping,
block_table_tensor=block_table_gpu,
dcp_local_seq_lens=None,
)
# Use the production build() method
metadata = builder_instance.build(
common_prefix_len=0,
common_attn_metadata=common_attn_metadata,
fast_build=False,
)
return metadata, current_block
def _create_input_tensors(
total_q: int,
mla_dims: dict,
query_format: str,
device: torch.device,
dtype: torch.dtype,
):
"""
Create input tensors for both decode and prefill modes.
MLA requires different tensor formats for decode vs prefill:
- Decode: Uses kv_lora_rank (512) dimension
- Prefill: Uses qk_nope_head_dim (128) to stay under FlashAttention's 256 limit
Args:
total_q: Total number of query tokens
mla_dims: MLA dimension configuration
query_format: Either "tuple" or "concat"
device: Target device
dtype: Tensor dtype
Returns:
Tuple of (decode_inputs, prefill_inputs)
- decode_inputs: Query tensor(s) for decode mode
- prefill_inputs: Dict with 'q', 'k_c_normed', 'k_pe', 'k_scale' for prefill
"""
if query_format == "tuple":
# Decode mode format: (q_nope, q_pe) where q_nope has kv_lora_rank dim
q_nope_decode = torch.randn(
total_q,
mla_dims["num_q_heads"],
mla_dims["kv_lora_rank"],
device=device,
dtype=dtype,
)
q_pe = torch.randn(
total_q,
mla_dims["num_q_heads"],
mla_dims["qk_rope_head_dim"],
device=device,
dtype=dtype,
)
decode_inputs = (q_nope_decode, q_pe)
# For prefill, we need q with qk_nope_head_dim instead of kv_lora_rank
q_nope_prefill = torch.randn(
total_q,
mla_dims["num_q_heads"],
mla_dims["qk_nope_head_dim"],
device=device,
dtype=dtype,
)
prefill_q = torch.cat([q_nope_prefill, q_pe], dim=-1)
else: # concat
decode_inputs = torch.randn(
total_q,
mla_dims["num_q_heads"],
mla_dims["kv_lora_rank"] + mla_dims["qk_rope_head_dim"],
device=device,
dtype=dtype,
)
# For prefill with concat format
prefill_q = torch.randn(
total_q,
mla_dims["num_q_heads"],
mla_dims["qk_nope_head_dim"] + mla_dims["qk_rope_head_dim"],
device=device,
dtype=dtype,
)
# Create additional inputs needed for prefill forward
k_c_normed = torch.randn(
total_q,
mla_dims["kv_lora_rank"],
device=device,
dtype=dtype,
)
k_pe = torch.randn(
total_q,
1, # Single head for MLA
mla_dims["qk_rope_head_dim"],
device=device,
dtype=dtype,
)
k_scale = torch.ones(1, device=device, dtype=torch.float32)
output = torch.zeros(
total_q,
mla_dims["num_q_heads"] * mla_dims["v_head_dim"],
device=device,
dtype=dtype,
)
prefill_inputs = {
"q": prefill_q,
"k_c_normed": k_c_normed,
"k_pe": k_pe,
"k_scale": k_scale,
"output": output,
}
return decode_inputs, prefill_inputs
# ============================================================================
# Backend Initialization
# ============================================================================
def _create_backend_impl(
backend_cfg: dict,
mla_dims: dict,
vllm_config: VllmConfig,
device: torch.device,
max_num_tokens: int = 8192,
index_topk: int | None = None,
):
"""
Create backend implementation instance.
Args:
backend_cfg: Backend configuration dict from _get_backend_config()
mla_dims: MLA dimension configuration
vllm_config: VllmConfig instance
device: Target device
max_num_tokens: Maximum number of tokens for sparse indexer buffer
index_topk: Topk value for sparse MLA backends
Returns:
Tuple of (impl, layer, builder_instance, indexer)
"""
# Get classes from backend config (already resolved by _get_backend_config)
impl_class = backend_cfg["impl_class"]
builder_class = backend_cfg["builder_class"]
# Calculate scale
scale = 1.0 / np.sqrt(mla_dims["qk_nope_head_dim"] + mla_dims["qk_rope_head_dim"])
# Create mock kv_b_proj layer for prefill mode
mock_kv_b_proj = MockKVBProj(
num_heads=mla_dims["num_q_heads"],
qk_nope_head_dim=mla_dims["qk_nope_head_dim"],
v_head_dim=mla_dims["v_head_dim"],
)
# Create indexer for sparse backends
indexer = None
if backend_cfg.get("is_sparse", False):
if index_topk is None:
index_topk = 2048 # Default topk for sparse MLA
indexer = MockIndexer(
max_num_tokens=max_num_tokens,
topk_tokens=index_topk,
device=device,
)
# Build impl kwargs
impl_kwargs = {
"num_heads": mla_dims["num_q_heads"],
"head_size": mla_dims["head_dim"],
"scale": scale,
"num_kv_heads": mla_dims["num_kv_heads"],
"alibi_slopes": None,
"sliding_window": None,
"kv_cache_dtype": "auto",
"logits_soft_cap": None,
"attn_type": "decoder",
"kv_sharing_target_layer_name": None,
"q_lora_rank": None,
"kv_lora_rank": mla_dims["kv_lora_rank"],
"qk_nope_head_dim": mla_dims["qk_nope_head_dim"],
"qk_rope_head_dim": mla_dims["qk_rope_head_dim"],
"qk_head_dim": mla_dims["qk_nope_head_dim"] + mla_dims["qk_rope_head_dim"],
"v_head_dim": mla_dims["v_head_dim"],
"kv_b_proj": mock_kv_b_proj,
}
# Add indexer for sparse backends
if indexer is not None:
impl_kwargs["indexer"] = indexer
# Create impl
impl = impl_class(**impl_kwargs)
# Initialize DCP attributes
if not hasattr(impl, "dcp_world_size") or impl.dcp_world_size in (None, -1):
impl.dcp_world_size = 1
impl.dcp_rank = 0
# Create KV cache spec for MockLayer
from vllm.v1.kv_cache_interface import FullAttentionSpec
kv_cache_spec = FullAttentionSpec(
block_size=backend_cfg["block_size"] or vllm_config.cache_config.block_size,
num_kv_heads=1, # MLA uses 1 KV head
head_size=576, # MLA head dim
dtype=torch.bfloat16,
)
# Create mock layer
layer = MockLayer(device, impl=impl, kv_cache_spec=kv_cache_spec)
# Create builder instance if needed
builder_instance = None
if builder_class:
# Populate static_forward_context so builder can find the layer
# MockLayer inherits from AttentionLayerBase, so isinstance checks pass
vllm_config.compilation_config.static_forward_context = {"placeholder": layer}
builder_instance = builder_class(
kv_cache_spec=kv_cache_spec,
layer_names=["placeholder"],
vllm_config=vllm_config,
device=device,
)
return impl, layer, builder_instance, indexer
# ============================================================================
# Config Helpers
# ============================================================================
def _extract_mla_dims_from_config(config) -> dict | None:
"""
Extract MLA dimensions from BenchmarkConfig if all required fields are present.
Args:
config: BenchmarkConfig instance
Returns:
Dict with MLA dimensions if all fields are provided, None otherwise
"""
# Check if all MLA-specific fields are provided
if all(
[
config.kv_lora_rank is not None,
config.qk_nope_head_dim is not None,
config.qk_rope_head_dim is not None,
config.v_head_dim is not None,
]
):
return {
"kv_lora_rank": config.kv_lora_rank,
"qk_nope_head_dim": config.qk_nope_head_dim,
"qk_rope_head_dim": config.qk_rope_head_dim,
"v_head_dim": config.v_head_dim,
"num_q_heads": config.num_q_heads,
"num_kv_heads": config.num_kv_heads,
"head_dim": config.head_dim,
}
# Fallback: if MLA fields not fully specified, try to construct from basic fields
elif config.head_dim == 576:
# This looks like a DeepSeek MLA config, use standard dimensions with custom
# head count
return {
"kv_lora_rank": 512,
"qk_nope_head_dim": 128,
"qk_rope_head_dim": 64,
"v_head_dim": 128,
"num_q_heads": config.num_q_heads,
"num_kv_heads": config.num_kv_heads,
"head_dim": config.head_dim,
}
return None
# ============================================================================
# Benchmark Execution
# ============================================================================
def _run_single_benchmark(
config,
impl,
layer,
builder_instance,
backend_cfg: dict,
mla_dims: dict,
device: torch.device,
indexer=None,
) -> BenchmarkResult:
"""
Run a single benchmark iteration.
Args:
config: BenchmarkConfig instance
impl: Backend implementation instance
layer: MockLayer instance
builder_instance: Metadata builder instance
backend_cfg: Backend configuration dict
mla_dims: MLA dimension configuration
device: Target device
indexer: Optional MockIndexer for sparse backends
Returns:
BenchmarkResult with timing statistics
"""
# Parse batch spec
requests = parse_batch_spec(config.batch_spec)
q_lens = [r.q_len for r in requests]
kv_lens = [r.kv_len for r in requests]
total_q = sum(q_lens)
max_kv_len = max(kv_lens)
# Determine block size
block_size = backend_cfg["block_size"] or config.block_size
# Build metadata
metadata, num_blocks = _build_attention_metadata(
requests, block_size, device, builder_instance
)
# Create KV cache
kv_cache = torch.zeros(
num_blocks,
block_size,
mla_dims["kv_lora_rank"] + mla_dims["qk_rope_head_dim"],
device=device,
dtype=torch.bfloat16,
)
# Create input tensors for both decode and prefill modes
decode_inputs, prefill_inputs = _create_input_tensors(
total_q,
mla_dims,
backend_cfg["query_format"],
device,
torch.bfloat16,
)
# Fill indexer with random indices for sparse backends
is_sparse = backend_cfg.get("is_sparse", False)
if is_sparse and indexer is not None:
indexer.fill_random_indices(total_q, max_kv_len)
# Determine which forward method to use
if is_sparse:
# Sparse backends use forward_mqa
forward_fn = lambda: impl.forward_mqa(decode_inputs, kv_cache, metadata, layer)
elif metadata.decode is not None:
forward_fn = lambda: impl._forward_decode(
decode_inputs, kv_cache, metadata, layer
)
elif metadata.prefill is not None:
forward_fn = lambda: impl._forward_prefill(
prefill_inputs["q"],
prefill_inputs["k_c_normed"],
prefill_inputs["k_pe"],
kv_cache,
metadata,
prefill_inputs["k_scale"],
prefill_inputs["output"],
)
else:
raise RuntimeError("Metadata has neither decode nor prefill metadata")
# Warmup
for _ in range(config.warmup_iters):
forward_fn()
torch.cuda.synchronize()
# Benchmark
times = []
for _ in range(config.repeats):
start = torch.cuda.Event(enable_timing=True)
end = torch.cuda.Event(enable_timing=True)
start.record()
for _ in range(config.num_layers):
forward_fn()
end.record()
torch.cuda.synchronize()
elapsed_ms = start.elapsed_time(end)
times.append(elapsed_ms / 1000.0 / config.num_layers)
mean_time = float(np.mean(times))
return BenchmarkResult(
config=config,
mean_time=mean_time,
std_time=float(np.std(times)),
min_time=float(np.min(times)),
max_time=float(np.max(times)),
throughput_tokens_per_sec=total_q / mean_time if mean_time > 0 else 0,
)
def _run_mla_benchmark_batched(
backend: str,
configs_with_params: list[tuple], # [(config, threshold, num_splits), ...]
index_topk: int = 2048,
) -> list[BenchmarkResult]:
"""
Unified batched MLA benchmark runner for all backends.
Works for: flashattn_mla, flashmla, flashinfer_mla, cutlass_mla,
flashinfer_mla_sparse, flashmla_sparse
This function reuses backend initialization across multiple benchmarks
to avoid setup/teardown overhead.
Args:
backend: Backend name
configs_with_params: List of (config, threshold, num_splits) tuples
- threshold: reorder_batch_threshold (FlashAttn/FlashMLA only)
- num_splits: num_kv_splits (CUTLASS only)
index_topk: Topk value for sparse MLA backends (default 2048)
Returns:
List of BenchmarkResult objects
"""
if not configs_with_params:
return []
backend_cfg = _get_backend_config(backend)
device = torch.device(configs_with_params[0][0].device)
torch.cuda.set_device(device)
# Determine block size
config_block_size = configs_with_params[0][0].block_size
block_size = backend_cfg["block_size"] or config_block_size
# Extract MLA dimensions from the first config
first_config = configs_with_params[0][0]
mla_dims = _extract_mla_dims_from_config(first_config)
# If config didn't provide MLA dims, fall back to default model
if mla_dims is None:
mla_dims = setup_mla_dims("deepseek-v3")
# Determine if this is a sparse backend
is_sparse = backend_cfg.get("is_sparse", False)
# Create and set vLLM config for MLA (reused across all benchmarks)
vllm_config = create_minimal_vllm_config(
model_name="deepseek-v3", # Used only for model path
block_size=block_size,
mla_dims=mla_dims, # Use custom dims from config or default
index_topk=index_topk if is_sparse else None,
)
results = []
with set_current_vllm_config(vllm_config):
# Create backend impl, layer, builder, and indexer (reused across benchmarks)
impl, layer, builder_instance, indexer = _create_backend_impl(
backend_cfg,
mla_dims,
vllm_config,
device,
index_topk=index_topk if is_sparse else None,
)
# Run each benchmark with the shared impl
for config, threshold, num_splits in configs_with_params:
# Set threshold for this benchmark (FlashAttn/FlashMLA only)
original_threshold = None
if threshold is not None and builder_instance:
original_threshold = builder_instance.reorder_batch_threshold
builder_instance.reorder_batch_threshold = threshold
# Set num_splits for CUTLASS
original_num_splits = None
if num_splits is not None and hasattr(impl, "_num_kv_splits"):
original_num_splits = impl._num_kv_splits
impl._num_kv_splits = num_splits
try:
result = _run_single_benchmark(
config,
impl,
layer,
builder_instance,
backend_cfg,
mla_dims,
device,
indexer=indexer,
)
results.append(result)
finally:
# Restore original threshold
if original_threshold is not None:
builder_instance.reorder_batch_threshold = original_threshold
# Restore original num_splits
if original_num_splits is not None:
impl._num_kv_splits = original_num_splits
return results
# ============================================================================
# Public API
# ============================================================================
def run_mla_benchmark(
backend: str,
config,
reorder_batch_threshold: int | None = None,
num_kv_splits: int | None = None,
index_topk: int = 2048,
) -> BenchmarkResult | list[BenchmarkResult]:
"""
Unified MLA benchmark runner for all backends.
Works for: flashattn_mla, flashmla, flashinfer_mla, cutlass_mla,
flashinfer_mla_sparse, flashmla_sparse
Always uses batched execution internally for optimal performance.
Args:
backend: Backend name (flashattn_mla, flashmla, flashinfer_mla, cutlass_mla,
flashinfer_mla_sparse, flashmla_sparse)
config: BenchmarkConfig or list of (BenchmarkConfig, param) tuples
reorder_batch_threshold: Threshold override for FlashAttn/FlashMLA
(single config mode only)
num_kv_splits: Number of KV splits for CUTLASS (single config mode only)
index_topk: Topk value for sparse MLA backends (default 2048)
Returns:
BenchmarkResult (single mode) or list of BenchmarkResult (batched mode)
"""
# Normalize to batched mode: (config, threshold, num_splits)
if isinstance(config, list):
# Already in batched format
if len(config) > 0 and isinstance(config[0], tuple):
# Format: [(cfg, param), ...] where param is threshold or num_splits
if backend in ("flashattn_mla", "flashmla", "flashmla_sparse"):
configs_with_params = [(cfg, param, None) for cfg, param in config]
else: # cutlass_mla, flashinfer_mla, or sparse backends
configs_with_params = [(cfg, None, param) for cfg, param in config]
else:
# Format: [cfg, ...] - just configs
configs_with_params = [(cfg, None, None) for cfg in config]
return_single = False
else:
# Single config: convert to batched format
configs_with_params = [(config, reorder_batch_threshold, num_kv_splits)]
return_single = True
# Use unified batched execution
results = _run_mla_benchmark_batched(backend, configs_with_params, index_topk)
# Return single result or list based on input
return results[0] if return_single else results

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