# Installation vLLM initially supports basic model inferencing and serving on Intel GPU platform. :::{attention} There are no pre-built wheels or images for this device, so you must build vLLM from source. ::: ## Requirements - Supported Hardware: Intel Data Center GPU, Intel ARC GPU - OneAPI requirements: oneAPI 2024.2 ## Set up using Python ### Pre-built wheels Currently, there are no pre-built XPU wheels. ### Build wheel from source - First, install required driver and intel OneAPI 2024.2 or later. - Second, install Python packages for vLLM XPU backend building: ```console source /opt/intel/oneapi/setvars.sh pip install --upgrade pip pip install -v -r requirements/xpu.txt ``` - Finally, build and install vLLM XPU backend: ```console VLLM_TARGET_DEVICE=xpu python setup.py install ``` :::{note} - FP16 is the default data type in the current XPU backend. The BF16 data type is supported on Intel Data Center GPU, not supported on Intel Arc GPU yet. ::: ## Set up using Docker ### Pre-built images Currently, there are no pre-built XPU images. ### Build image from source ```console $ docker build -f Dockerfile.xpu -t vllm-xpu-env --shm-size=4g . $ docker run -it \ --rm \ --network=host \ --device /dev/dri \ -v /dev/dri/by-path:/dev/dri/by-path \ vllm-xpu-env ``` ## Supported features XPU platform supports tensor-parallel inference/serving and also supports pipeline parallel as a beta feature for online serving. We requires Ray as the distributed runtime backend. For example, a reference execution likes following: ```console python -m vllm.entrypoints.openai.api_server \ --model=facebook/opt-13b \ --dtype=bfloat16 \ --device=xpu \ --max_model_len=1024 \ --distributed-executor-backend=ray \ --pipeline-parallel-size=2 \ -tp=8 ``` By default, a ray instance will be launched automatically if no existing one is detected in system, with `num-gpus` equals to `parallel_config.world_size`. We recommend properly starting a ray cluster before execution, referring to the helper script.