.. _distributed_serving: Distributed Inference and Serving ================================= vLLM supports distributed tensor-parallel inference and serving. Currently, we support `Megatron-LM's tensor parallel algorithm `_. We manage the distributed runtime with either `Ray `_ or python native multiprocessing. Multiprocessing can be used when deploying on a single node, multi-node inferencing currently requires Ray. Multiprocessing will be used by default when not running in a Ray placement group and if there are sufficient GPUs available on the same node for the configured :code:`tensor_parallel_size`, otherwise Ray will be used. This default can be overridden via the :code:`LLM` class :code:`distributed-executor-backend` argument or :code:`--distributed-executor-backend` API server argument. Set it to :code:`mp` for multiprocessing or :code:`ray` for Ray. It's not required for Ray to be installed for the multiprocessing case. To run multi-GPU inference with the :code:`LLM` class, set the :code:`tensor_parallel_size` argument to the number of GPUs you want to use. For example, to run inference on 4 GPUs: .. code-block:: python from vllm import LLM llm = LLM("facebook/opt-13b", tensor_parallel_size=4) output = llm.generate("San Franciso is a") To run multi-GPU serving, pass in the :code:`--tensor-parallel-size` argument when starting the server. For example, to run API server on 4 GPUs: .. code-block:: console $ python -m vllm.entrypoints.api_server \ $ --model facebook/opt-13b \ $ --tensor-parallel-size 4 To scale vLLM beyond a single machine, install and start a `Ray runtime `_ via CLI before running vLLM: .. code-block:: console $ pip install ray $ # On head node $ ray start --head $ # On worker nodes $ ray start --address= After that, you can run inference and serving on multiple machines by launching the vLLM process on the head node by setting :code:`tensor_parallel_size` to the number of GPUs to be the total number of GPUs across all machines.