# --- # deploy: true # cmd: ["modal", "serve", "06_gpu_and_ml/llm-serving/vllm_inference.py"] # pytest: false # --- # # Run an OpenAI-Compatible vLLM Server # # LLMs do more than just model language: they chat, they produce JSON and XML, they run code, and more. # This has complicated their interface far beyond "text-in, text-out". # OpenAI's API has emerged as a standard for that interface, # and it is supported by open source LLM serving frameworks like [vLLM](https://docs.vllm.ai/en/latest/). # # In this example, we show how to run a vLLM server in OpenAI-compatible mode on Modal. # You can find a video walkthrough of this example on our YouTube channel [here](https://www.youtube.com/watch?v=QmY_7ePR1hM). # # Note that the vLLM server is a FastAPI app, which can be configured and extended just like any other. # Here, we use it to add simple authentication middleware, following the # [implementation in the vLLM repository](https://github.com/vllm-project/vllm/blob/v0.5.3post1/vllm/entrypoints/openai/api_server.py). # # Our examples repository also includes scripts for running clients and load-testing for OpenAI-compatible APIs # [here](https://github.com/modal-labs/modal-examples/tree/main/06_gpu_and_ml/llm-serving/openai_compatible). # # You can find a video walkthrough of this example and the related scripts on the Modal YouTube channel # [here](https://www.youtube.com/watch?v=QmY_7ePR1hM). # # ## Set up the container image # # Our first order of business is to define the environment our server will run in: # the [container `Image`](https://modal.com/docs/guide/custom-container). # vLLM is can be installed with `pip`. import modal vllm_image = modal.Image.debian_slim(python_version="3.10").pip_install( "vllm==0.5.3post1" ) # ## Download the model weights # # We'll be running a pretrained foundation model -- Meta's LLaMA 3.1 8B # in the Instruct variant that's trained to chat and follow instructions. MODELS_DIR = "/llamas" MODEL_NAME = "meta-llama/Meta-Llama-3.1-8B-Instruct" MODEL_REVISION = "8c22764a7e3675c50d4c7c9a4edb474456022b16" # We need to make the weights of that model available to our Modal Functions. # # So to follow along with this example, you'll need to download those weights # onto a Modal Volume by running another script from the # [examples repository](https://github.com/modal-labs/modal-examples). try: volume = modal.Volume.lookup("llamas", create_if_missing=False) except modal.exception.NotFoundError: raise Exception("Download models first with modal run download_llama.py") # ## Build a vLLM engine and serve it # # vLLM's OpenAI-compatible server is exposed as a [FastAPI](https://fastapi.tiangolo.com/) router. # # FastAPI is a Python web framework that implements the [ASGI standard](https://en.wikipedia.org/wiki/Asynchronous_Server_Gateway_Interface), # much like [Flask](https://en.wikipedia.org/wiki/Flask_(web_framework)) is a Python web framework # that implements the [WSGI standard](https://en.wikipedia.org/wiki/Web_Server_Gateway_Interface). # # Modal offers [first-class support for ASGI (and WSGI) apps](https://modal.com/docs/guide/webhooks). We just need to decorate a function that returns the app # with `@modal.asgi_app()` (or `@modal.wsgi_app()`) and then add it to the Modal app with the `app.function` decorator. # # The function below first imports the FastAPI router from the vLLM library, then adds authentication compatible with OpenAI client libraries. You might also add more routes here. # # Then, the function creates an `AsyncLLMEngine`, the core of the vLLM server. It's responsible for loading the model, running inference, and serving responses. # # After attaching that engine to the FastAPI app via the `api_server` module of the vLLM library, we return the FastAPI app # so it can be served on Modal. app = modal.App("example-vllm-openai-compatible") N_GPU = 1 # tip: for best results, first upgrade to more powerful GPUs, and only then increase GPU count TOKEN = "super-secret-token" # auth token. for production use, replace with a modal.Secret SECONDS = 1 MINUTES = 60 # seconds HOURS = 60 * MINUTES # TODO: Implement secrets https://modal.com/docs/guide/secrets @app.function( image=vllm_image, gpu=modal.gpu.A100(count=N_GPU, size="40GB"), container_idle_timeout=3 * MINUTES, timeout=24 * HOURS, allow_concurrent_inputs=100, volumes={MODELS_DIR: volume}, ) @modal.asgi_app() def serve(): import fastapi import vllm.entrypoints.openai.api_server as api_server from vllm.engine.arg_utils import AsyncEngineArgs from vllm.engine.async_llm_engine import AsyncLLMEngine from vllm.entrypoints.logger import RequestLogger from vllm.entrypoints.openai.serving_chat import OpenAIServingChat from vllm.entrypoints.openai.serving_completion import ( OpenAIServingCompletion, ) from vllm.usage.usage_lib import UsageContext volume.reload() # ensure we have the latest version of the weights # create a fastAPI app that uses vLLM's OpenAI-compatible router web_app = fastapi.FastAPI( title=f"OpenAI-compatible {MODEL_NAME} server", description="Run an OpenAI-compatible LLM server with vLLM on modal.com", version="0.0.1", docs_url="/docs", ) # security: CORS middleware for external requests http_bearer = fastapi.security.HTTPBearer( scheme_name="Bearer Token", description="See code for authentication details.", ) web_app.add_middleware( fastapi.middleware.cors.CORSMiddleware, allow_origins=["*"], allow_credentials=True, allow_methods=["*"], allow_headers=["*"], ) # security: inject dependency on authed routes async def is_authenticated(api_key: str = fastapi.Security(http_bearer)): if api_key.credentials != TOKEN: raise fastapi.HTTPException( status_code=fastapi.status.HTTP_401_UNAUTHORIZED, detail="Invalid authentication credentials", ) return {"username": "authenticated_user"} router = fastapi.APIRouter(dependencies=[fastapi.Depends(is_authenticated)]) # wrap vllm's router in auth router router.include_router(api_server.router) # add authed vllm to our fastAPI app web_app.include_router(router) engine_args = AsyncEngineArgs( model=MODELS_DIR + "/" + MODEL_NAME, tensor_parallel_size=N_GPU, gpu_memory_utilization=0.90, max_model_len=8096, enforce_eager=False, # capture the graph for faster inference, but slower cold starts (30s > 20s) ) engine = AsyncLLMEngine.from_engine_args( engine_args, usage_context=UsageContext.OPENAI_API_SERVER ) model_config = get_model_config(engine) request_logger = RequestLogger(max_log_len=2048) api_server.openai_serving_chat = OpenAIServingChat( engine, model_config=model_config, served_model_names=[MODEL_NAME], chat_template=None, response_role="assistant", lora_modules=[], prompt_adapters=[], request_logger=request_logger, ) api_server.openai_serving_completion = OpenAIServingCompletion( engine, model_config=model_config, served_model_names=[MODEL_NAME], lora_modules=[], prompt_adapters=[], request_logger=request_logger, ) return web_app # ## Deploy the server # # To deploy the API on Modal, just run # ```bash # modal deploy vllm_inference.py # ``` # # This will create a new app on Modal, build the container image for it, and deploy. # # ## Interact with the server # # Once it is deployed, you'll see a URL appear in the command line, # something like `https://your-workspace-name--example-vllm-openai-compatible-serve.modal.run`. # # You can find [interactive Swagger UI docs](https://swagger.io/tools/swagger-ui/) # at the `/docs` route of that URL, i.e. `https://your-workspace-name--example-vllm-openai-compatible-serve.modal.run/docs`. # These docs describe each route and indicate the expected input and output # and translate requests into `curl` commands. They also demonstrate authentication. # # For simple routes like `/health`, which checks whether the server is responding, # you can even send a request directly from the docs. # # To interact with the API programmatically, you can use the Python `openai` library. # # See the `client.py` script in the examples repository # [here](https://github.com/modal-labs/modal-examples/tree/main/06_gpu_and_ml/llm-serving/openai_compatible) # to take it for a spin: # # ```bash # # pip install openai==1.13.3 # python openai_compatible/client.py # ``` # # We also include a basic example of a load-testing setup using # `locust` in the `load_test.py` script [here](https://github.com/modal-labs/modal-examples/tree/main/06_gpu_and_ml/llm-serving/openai_compatibl): # # ```bash # modal run openai_compatible/load_test.py # ``` # # ## Addenda # # The rest of the code in this example is utility code. def get_model_config(engine): import asyncio try: # adapted from vLLM source -- https://github.com/vllm-project/vllm/blob/507ef787d85dec24490069ffceacbd6b161f4f72/vllm/entrypoints/openai/api_server.py#L235C1-L247C1 event_loop = asyncio.get_running_loop() except RuntimeError: event_loop = None if event_loop is not None and event_loop.is_running(): # If the current is instanced by Ray Serve, # there is already a running event loop model_config = event_loop.run_until_complete(engine.get_model_config()) else: # When using single vLLM without engine_use_ray model_config = asyncio.run(engine.get_model_config()) return model_config