Files
spark-vllm-docker/Dockerfile.mxfp4
Eugene Rakhmatulin 0ac438b4dd Some optimizations
2026-01-29 22:08:05 -08:00

279 lines
10 KiB
Docker

# syntax=docker/dockerfile:1.6
# Limit build parallelism to reduce OOM situations
ARG BUILD_JOBS=16
# =========================================================
# STAGE 1: Base Image (Installs Dependencies)
# =========================================================
FROM nvcr.io/nvidia/pytorch:25.12-py3 AS base
# Build parallemism
ARG BUILD_JOBS
ENV MAX_JOBS=${BUILD_JOBS}
ENV CMAKE_BUILD_PARALLEL_LEVEL=${BUILD_JOBS}
ENV NINJAFLAGS="-j${BUILD_JOBS}"
ENV MAKEFLAGS="-j${BUILD_JOBS}"
# =============================================================================
# Pinned versions from https://github.com/christopherowen/spark-vllm-mxfp4-docker/blob/main/Dockerfile
# =============================================================================
# ARG VLLM_SHA=045293d82b832229560ac4a13152a095af603b6e
# ARG FLASHINFER_SHA=1660ee8d740b0385f235519f9e2750db944d1838
# ARG CUTLASS_SHA=11af7f02ab52c9130e422eeb4b44042fbd60c083
# ARG VLLM_REPO=https://github.com/christopherowen/vllm.git
# ARG FLASHINFER_REPO=https://github.com/christopherowen/flashinfer.git
# ARG CUTLASS_REPO=https://github.com/christopherowen/cutlass.git
# Set non-interactive frontend to prevent apt prompts
ENV DEBIAN_FRONTEND=noninteractive
# Allow pip to install globally on Ubuntu 24.04 without a venv
ENV PIP_BREAK_SYSTEM_PACKAGES=1
# Set pip cache directory
ENV PIP_CACHE_DIR=/root/.cache/pip
ENV UV_CACHE_DIR=/root/.cache/uv
ENV UV_SYSTEM_PYTHON=1
ENV UV_BREAK_SYSTEM_PACKAGES=1
ENV UV_LINK_MODE=copy
# Set the base directory environment variable
ENV VLLM_BASE_DIR=/workspace/vllm
# 1. Install Build Dependencies & Ccache
# Added ccache to enable incremental compilation caching
RUN apt update && \
apt install -y --no-install-recommends \
curl vim ninja-build git \
ccache \
&& rm -rf /var/lib/apt/lists/* \
&& pip install uv && pip uninstall -y flash-attn
# Configure Ccache for CUDA/C++
ENV PATH=/usr/lib/ccache:$PATH
ENV CCACHE_DIR=/root/.ccache
# Limit ccache size to prevent unbounded growth (e.g. 50G)
ENV CCACHE_MAXSIZE=50G
# Enable compression to save space
ENV CCACHE_COMPRESS=1
# Tell CMake to use ccache for compilation
ENV CMAKE_CXX_COMPILER_LAUNCHER=ccache
ENV CMAKE_CUDA_COMPILER_LAUNCHER=ccache
# Setup Workspace
WORKDIR $VLLM_BASE_DIR
# 2. Set Environment Variables
ENV TORCH_CUDA_ARCH_LIST="12.0;12.1"
ENV TRITON_PTXAS_PATH=/usr/local/cuda/bin/ptxas
# --- CACHE BUSTER ---
# Change this argument to force a re-download of PyTorch/FlashInfer
ARG CACHEBUST_DEPS=1
# Install additional dependencies
RUN --mount=type=cache,id=uv-cache,target=/root/.cache/uv \
uv pip install fastsafetensors
ARG PRE_TRANSFORMERS=0
RUN --mount=type=cache,id=uv-cache,target=/root/.cache/uv \
if [ "$PRE_TRANSFORMERS" = "1" ]; then \
uv pip install -U transformers --pre; \
fi
# =========================================================
# STAGE 2: Builder
# =========================================================
FROM base AS builder
ENV FLASHINFER_CUDA_ARCH_LIST="12.1f"
WORKDIR $VLLM_BASE_DIR
ARG FLASHINFER_REPO=https://github.com/christopherowen/flashinfer.git
ARG CUTLASS_REPO=https://github.com/christopherowen/cutlass.git
ARG FLASHINFER_SHA=f349e52496a72a00d8c4ac02c7a1e38523ff7194
ARG CUTLASS_SHA=11af7f02ab52c9130e422eeb4b44042fbd60c083
RUN --mount=type=cache,id=uv-cache,target=/root/.cache/uv \
uv pip install nvidia-nvshmem-cu13 "apache-tvm-ffi<0.2"
# Clone FlashInfer (cached for faster rebuilds)
RUN --mount=type=cache,id=git-flashinfer,target=/git-cache/flashinfer \
if [ -d /git-cache/flashinfer/.git ]; then \
echo "=== Using cached FlashInfer repo ===" && \
cp -a /git-cache/flashinfer /workspace/flashinfer && \
cd /workspace/flashinfer && \
git fetch origin; \
else \
echo "=== Cloning FlashInfer (first build) ===" && \
git clone ${FLASHINFER_REPO} /workspace/flashinfer && \
cp -a /workspace/flashinfer /git-cache/flashinfer; \
fi && \
cd /workspace/flashinfer && git checkout ${FLASHINFER_SHA}
# Clone spdlog submodule (small, no caching needed)
RUN cd /workspace/flashinfer && \
git submodule update --init 3rdparty/spdlog
# Clone CUTLASS directly (skip submodule, use our fork)
RUN --mount=type=cache,id=git-cutlass,target=/git-cache/cutlass \
cd /workspace/flashinfer && \
rm -rf 3rdparty/cutlass && \
if [ -d /git-cache/cutlass/.git ] && [ -d /git-cache/cutlass/.git/objects ]; then \
echo "=== Using cached CUTLASS repo ===" && \
cp -a /git-cache/cutlass 3rdparty/cutlass && \
cd 3rdparty/cutlass && \
git fetch origin; \
else \
echo "=== Cloning CUTLASS (first build) ===" && \
rm -rf /git-cache/cutlass/* /git-cache/cutlass/.* 2>/dev/null || true && \
git clone ${CUTLASS_REPO} 3rdparty/cutlass && \
cp -a /workspace/flashinfer/3rdparty/cutlass/. /git-cache/cutlass/; \
fi && \
cd /workspace/flashinfer/3rdparty/cutlass && git checkout ${CUTLASS_SHA}
# Build FlashInfer wheels
WORKDIR /workspace/flashinfer
# flashinfer-python
RUN --mount=type=cache,id=uv-cache,target=/root/.cache/uv \
--mount=type=cache,id=ccache,target=/root/.ccache \
sed -i -e 's/license = "Apache-2.0"/license = { text = "Apache-2.0" }/' -e '/license-files/d' pyproject.toml && \
uv build --no-build-isolation --wheel . --out-dir=/workspace/wheels -v
# flashinfer-cubin
RUN --mount=type=cache,id=uv-cache,target=/root/.cache/uv \
--mount=type=cache,id=ccache,target=/root/.ccache \
cd flashinfer-cubin && uv build --no-build-isolation --wheel . --out-dir=/workspace/wheels -v
# flashinfer-jit-cache
RUN --mount=type=cache,id=uv-cache,target=/root/.cache/uv \
--mount=type=cache,id=ccache,target=/root/.ccache \
cd flashinfer-jit-cache && \
uv build --no-build-isolation --wheel . --out-dir=/workspace/wheels -v
# --- VLLM SOURCE CACHE BUSTER ---
# Change THIS argument to force a fresh git clone and rebuild of vLLM
# without re-installing the dependencies above.
ARG CACHEBUST_VLLM=1
ARG VLLM_REPO=https://github.com/christopherowen/vllm.git
# Git reference (branch, tag, or SHA) to checkout
ARG VLLM_SHA=459541683f2d8c21f9c0e2f44954b04f59611cbe
# 4. Smart Git Clone (Fetch changes instead of full re-clone)
# We mount a cache at /repo-cache. This directory persists on your host machine.
RUN --mount=type=cache,id=repo-cache,target=/repo-cache \
# 1. Go into the persistent cache directory
cd /repo-cache && \
# 2. Logic: Clone if missing, otherwise Fetch & Reset
if [ ! -d "vllm-mxfp4" ]; then \
echo "Cache miss: Cloning vLLM from scratch..." && \
git clone --recursive ${VLLM_REPO} vllm-mxfp4; \
else \
echo "Cache hit: Fetching updates..." && \
cd vllm-mxfp4 && \
git fetch --all && \
git checkout ${VLLM_SHA} && \
if [ "${VLLM_SHA}" = "main" ]; then \
git reset --hard origin/main; \
fi && \
git submodule update --init --recursive && \
# Optimize git repo size
git gc --auto; \
fi && \
# 3. Copy the updated code from the cache to the actual container workspace
# We use 'cp -a' to preserve permissions
mkdir $VLLM_BASE_DIR/vllm && \
cp -a -r /repo-cache/vllm-mxfp4/. $VLLM_BASE_DIR/vllm/
WORKDIR $VLLM_BASE_DIR/vllm
ARG PRE_TRANSFORMERS=0
# Prepare build requirements
RUN --mount=type=cache,id=uv-cache,target=/root/.cache/uv \
python3 use_existing_torch.py && \
sed -i "/flashinfer/d" requirements/cuda.txt && \
sed -i '/^fastsafetensors\b/d' requirements/test.txt && \
if [ "$PRE_TRANSFORMERS" = "1" ]; then \
sed -i '/^transformers\b/d' requirements/common.txt; \
sed -i '/^transformers\b/d' requirements/test.txt; \
fi && \
uv pip install -r requirements/build.txt
# Apply Patches
# TEMPORARY PATCH for fastsafetensors loading in cluster setup - tracking https://github.com/foundation-model-stack/fastsafetensors/issues/36
#COPY fastsafetensors.patch .
#RUN patch -p1 < fastsafetensors.patch
# Final Compilation
# We mount the ccache directory here. Ideally, map this to a host volume for persistence
# across totally separate `docker build` invocations.
RUN --mount=type=cache,id=ccache,target=/root/.ccache \
--mount=type=cache,id=uv-cache,target=/root/.cache/uv \
uv build --no-build-isolation --wheel . --out-dir=/workspace/wheels -v
# =========================================================
# STAGE 4: Runner (Transfers only necessary artifacts)
# =========================================================
FROM nvcr.io/nvidia/pytorch:25.12-py3 AS runner
ENV DEBIAN_FRONTEND=noninteractive
ENV PIP_BREAK_SYSTEM_PACKAGES=1
ENV VLLM_BASE_DIR=/workspace/vllm
# Set pip cache directory
ENV PIP_CACHE_DIR=/root/.cache/pip
ENV UV_CACHE_DIR=/root/.cache/uv
ENV UV_SYSTEM_PYTHON=1
ENV UV_BREAK_SYSTEM_PACKAGES=1
ENV UV_LINK_MODE=copy
# Install minimal runtime dependencies (NCCL, Python)
# Note: "devel" tools like cmake/gcc are NOT installed here to save space
RUN apt update && \
apt install -y --no-install-recommends \
curl vim git \
libxcb1 \
&& rm -rf /var/lib/apt/lists/* \
&& pip install uv && pip uninstall -y flash-attn
# Set final working directory
WORKDIR $VLLM_BASE_DIR
# Download Tiktoken files
RUN mkdir -p tiktoken_encodings && \
wget -O tiktoken_encodings/o200k_base.tiktoken "https://openaipublic.blob.core.windows.net/encodings/o200k_base.tiktoken" && \
wget -O tiktoken_encodings/cl100k_base.tiktoken "https://openaipublic.blob.core.windows.net/encodings/cl100k_base.tiktoken"
# Copy artifacts from Builder Stage
# We copy the python packages and executables
# No need to copy source code, as it's already in the site-packages
COPY --from=builder /workspace/wheels /workspace/wheels
RUN --mount=type=cache,id=uv-cache,target=/root/.cache/uv \
uv pip install /workspace/wheels/*.whl && \
rm -rf /workspace/wheels
# Setup Env for Runtime
ENV TORCH_CUDA_ARCH_LIST="12.0;12.1"
ENV FLASHINFER_CUDA_ARCH_LIST="12.1f"
ENV TRITON_PTXAS_PATH=/usr/local/cuda/bin/ptxas
ENV TIKTOKEN_ENCODINGS_BASE=$VLLM_BASE_DIR/tiktoken_encodings
ENV PATH=$VLLM_BASE_DIR:$PATH
# Copy scripts
COPY run-cluster-node.sh $VLLM_BASE_DIR/
RUN chmod +x $VLLM_BASE_DIR/run-cluster-node.sh
# Final extra deps
RUN --mount=type=cache,id=uv-cache,target=/root/.cache/uv \
uv pip install ray[default] fastsafetensors