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Serve MESA models locally

Project description

MESA local

Serve MESA models locally.

  • ⬇️ Downloads weights from S3

  • 📦 Unpacks

  • 🚀 Serves via a local OpenAI-compatible server

Prerequisites

Software

  • Python 3.12

Hardware

  • A GPU with >=24GB VRAM (tested on NVIDIA A30)

Configuration

Create a file called .env in the directory where you intend to run this package. Populate it with the details you have been provided with in the following format:

MODEL_NAME=
WEIGHTS_ID=
WEIGHTS_KEY=

(Alternative) S3 URI

Download weights directly from an S3 bucket:

MODEL_NAME=
WEIGHTS_URI=
WEIGHTS_REGION=  # optional, defaults to eu-west-2

(Optional) Caching

Download weights and cache to S3 for faster subsequent downloads:

MODEL_NAME=
WEIGHTS_ID=
WEIGHTS_KEY=
WEIGHTS_URI=
WEIGHTS_REGION=  # optional, defaults to eu-west-2

With this configuration:

  • First run: Downloads weights and uploads to S3 cache

  • Subsequent runs: Downloads directly from S3 cache (faster)

vLLM configuration

The package provides a set of vLLM configuration files for running a specific model on a specific GPU. In addition to MODEL_NAME, this can be specified by adding GPU to the .env.

Individual vLLM settings can also be overridden by adding them to the .env file:

Setting Alias Type Default
MODEL MODEL_NAME str mesalocal
GPU str None
MAX_MODEL_LEN MODEL_LENGTH int 41152
ENFORCE_EAGER bool False
ENABLE_CHUNKED_PREFILL bool True
ENABLE_PREFIX_CACHING bool True
GPU_MEMORY_UTILIZATION float 0.9
MAX_NUM_SEQS int 256
MAX_NUM_BATCHED_TOKENS int None
ENABLE_LOG_REQUESTS bool False
UVICORN_LOG_LEVEL str warning
HTTP_TIMEOUT_KEEP_ALIVE int 30

Installation

  1. (Recommended) Create a virtual environment and activate it:

    python -m venv .venv
    source .venv/bin/activate
    
  2. Install this package: pip install londonaicentre-mesa-local.

Usage

CLI (primary)

  1. Note command line arguments:

    Argument Description
    -v, --verbose Enable debug output (optional)
  2. Start the server as follows: mesalocal [args].

Library (secondary)

  1. Import and use the logic of this package as a library:
import asyncio
from mesalocal.weights import Weights
from mesalocal.inferrer import VLLM
vllm_config: VLLMConfig = VLLMConfig() # VLLMConfig(model_name="foo", gpu="bar") to use a vLLM config without a .env file
weights: Weights = Weights(vllm_config.model)
if weights.unpack():
    vllm: VLLM = VLLM(weights.get_model_folder(), vllm_config)
    async def run():
        async for output in vllm.generate(prompt):
            print(output.outputs[0].text)
    asyncio.run(run())

Clients

OpenAI (example with Oncollama)

  1. Interact with the server using the OpenAI client in python:

    from openai import OpenAI
    from oncoschema.prompt_builder import PromptBuilder # pip install londonaicentre-oncoschema
    
    client = OpenAI(
        base_url="http://localhost:5000/v1",
        api_key="blank" 
    )
    
    response = client.chat.completions.create(
        model="oncollama3betav01",
        messages=[
            {"role": "system", "content": PromptBuilder().build_main_prompt()},
            {"role": "user", "content": "Diagnosis 01/01/26..."}
        ]
    )
    
    print(response.choices[0].message.content)
    

License

This project uses a proprietary license (see LICENSE).

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