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Serving LLM with OpenAI Compatible Server

This article primarily discusses the deployment of a single LLM model across multiple GPUs on a single node, providing a service that is compatible with the OpenAI interface, as well as the usage of the service API. For the sake of convenience, we refer to this service as api_server. Regarding parallel services with multiple models, please refer to the guide about Request Distribution Server.

In the following sections, we will first introduce two methods for starting the service, choosing the appropriate one based on your application scenario.

Next, we focus on the definition of the service's RESTful API, explore the various ways to interact with the interface, and demonstrate how to try the service through the Swagger UI or LMDeploy CLI tools.

Finally, we showcase how to integrate the service into a WebUI, providing you with a reference to easily set up a demonstration demo.

Launch Service

Take the internlm2_5-7b-chat model hosted on huggingface hub as an example, you can choose one the following methods to start the service.

Option 1: Launching with lmdeploy CLI

lmdeploy serve api_server internlm/internlm2_5-7b-chat --server-port 23333

The arguments of api_server can be viewed through the command lmdeploy serve api_server -h, for instance, --tp to set tensor parallelism, --session-len to specify the max length of the context window, --cache-max-entry-count to adjust the GPU mem ratio for k/v cache etc.

Option 2: Deploying with docker

With LMDeploy official docker image, you can run OpenAI compatible server as follows:

docker run --runtime nvidia --gpus all \
    -v ~/.cache/huggingface:/root/.cache/huggingface \
    --env "HUGGING_FACE_HUB_TOKEN=<secret>" \
    -p 23333:23333 \
    --ipc=host \
    openmmlab/lmdeploy:latest \
    lmdeploy serve api_server internlm/internlm2_5-7b-chat

The parameters of api_server are the same with that mentioned in "option 1" section

Option 3: Deploying to Kubernetes cluster

Connect to a running Kubernetes cluster and deploy the internlm2_5-7b-chat model service with kubectl command-line tool (replace <your token> with your huggingface hub token):

sed 's/{{HUGGING_FACE_HUB_TOKEN}}/<your token>/' k8s/deployment.yaml | kubectl create -f - \
    && kubectl create -f k8s/service.yaml

In the example above the model data is placed on the local disk of the node (hostPath). Consider replacing it with high-availability shared storage if multiple replicas are desired, and the storage can be mounted into container using PersistentVolume.

RESTful API

LMDeploy's RESTful API is compatible with the following three OpenAI interfaces:

  • /v1/chat/completions
  • /v1/models
  • /v1/completions

Additionally, LMDeploy also defines /v1/chat/interactive to support interactive inference. The feature of interactive inference is that there's no need to pass the user conversation history as required by v1/chat/completions, since the conversation history will be cached on the server side. This method boasts excellent performance during multi-turn long context inference.

You can overview and try out the offered RESTful APIs by the website http://0.0.0.0:23333 as shown in the below image after launching the service successfully.

swagger_ui

Or, you can use the LMDeploy's built-in CLI tool to verify the service correctness right from the console.

# restful_api_url is what printed in api_server.py, e.g. http://localhost:23333
lmdeploy serve api_client ${api_server_url}

If you need to integrate the service into your own projects or products, we recommend the following approach:

Integrate with OpenAI

Here is an example of interaction with the endpoint v1/chat/completions service via the openai package. Before running it, please install the openai package by pip install openai

from openai import OpenAI
client = OpenAI(
    api_key='YOUR_API_KEY',
    base_url="http://0.0.0.0:23333/v1"
)
model_name = client.models.list().data[0].id
response = client.chat.completions.create(
  model=model_name,
  messages=[
    {"role": "system", "content": "You are a helpful assistant."},
    {"role": "user", "content": " provide three suggestions about time management"},
  ],
    temperature=0.8,
    top_p=0.8
)
print(response)

If you want to use async functions, may try the following example:

import asyncio
from openai import AsyncOpenAI

async def main():
    client = AsyncOpenAI(api_key='YOUR_API_KEY',
                         base_url='http://0.0.0.0:23333/v1')
    model_cards = await client.models.list()._get_page()
    response = await client.chat.completions.create(
        model=model_cards.data[0].id,
        messages=[
            {
                'role': 'system',
                'content': 'You are a helpful assistant.'
            },
            {
                'role': 'user',
                'content': ' provide three suggestions about time management'
            },
        ],
        temperature=0.8,
        top_p=0.8)
    print(response)

asyncio.run(main())

You can invoke other OpenAI interfaces using similar methods. For more detailed information, please refer to the OpenAI API guide

Integrate with lmdeploy APIClient

Below are some examples demonstrating how to visit the service through APIClient

If you want to use the /v1/chat/completions endpoint, you can try the following code:

from lmdeploy.serve.openai.api_client import APIClient
api_client = APIClient('http://{server_ip}:{server_port}')
model_name = api_client.available_models[0]
messages = [{"role": "user", "content": "Say this is a test!"}]
for item in api_client.chat_completions_v1(model=model_name, messages=messages):
    print(item)

For the /v1/completions endpoint, you can try:

from lmdeploy.serve.openai.api_client import APIClient
api_client = APIClient('http://{server_ip}:{server_port}')
model_name = api_client.available_models[0]
for item in api_client.completions_v1(model=model_name, prompt='hi'):
    print(item)

As for /v1/chat/interactive,we disable the feature by default. Please open it by setting interactive_mode = True. If you don't, it falls back to openai compatible interfaces.

Keep in mind that session_id indicates an identical sequence and all requests belonging to the same sequence must share the same session_id. For instance, in a sequence with 10 rounds of chatting requests, the session_id in each request should be the same.

from lmdeploy.serve.openai.api_client import APIClient
api_client = APIClient(f'http://{server_ip}:{server_port}')
messages = [
    "hi, what's your name?",
    "who developed you?",
    "Tell me more about your developers",
    "Summarize the information we've talked so far"
]
for message in messages:
    for item in api_client.chat_interactive_v1(prompt=message,
                                               session_id=1,
                                               interactive_mode=True,
                                               stream=False):
        print(item)

Tools

May refer to api_server_tools.

Integrate with Java/Golang/Rust

May use openapi-generator-cli to convert http://{server_ip}:{server_port}/openapi.json to java/rust/golang client. Here is an example:

$ docker run -it --rm -v ${PWD}:/local openapitools/openapi-generator-cli generate -i /local/openapi.json -g rust -o /local/rust

$ ls rust/*
rust/Cargo.toml  rust/git_push.sh  rust/README.md

rust/docs:
ChatCompletionRequest.md  EmbeddingsRequest.md  HttpValidationError.md  LocationInner.md  Prompt.md
DefaultApi.md             GenerateRequest.md    Input.md                Messages.md       ValidationError.md

rust/src:
apis  lib.rs  models

Integrate with cURL

cURL is a tool for observing the output of the RESTful APIs.

  • list served models v1/models
curl http://{server_ip}:{server_port}/v1/models
  • chat v1/chat/completions
curl http://{server_ip}:{server_port}/v1/chat/completions \
  -H "Content-Type: application/json" \
  -d '{
    "model": "internlm-chat-7b",
    "messages": [{"role": "user", "content": "Hello! How are you?"}]
  }'
  • text completions v1/completions
curl http://{server_ip}:{server_port}/v1/completions \
  -H 'Content-Type: application/json' \
  -d '{
  "model": "llama",
  "prompt": "two steps to build a house:"
}'
  • interactive chat v1/chat/interactive
curl http://{server_ip}:{server_port}/v1/chat/interactive \
  -H "Content-Type: application/json" \
  -d '{
    "prompt": "Hello! How are you?",
    "session_id": 1,
    "interactive_mode": true
  }'

Integrate with WebUI

LMDeploy utilizes gradio or OpenAOE to integrate a web ui for api_server

Option 1: gradio

# api_server_url is what printed in api_server.py, e.g. http://localhost:23333
# server_ip and server_port here are for gradio ui
# example: lmdeploy serve gradio http://localhost:23333 --server-name localhost --server-port 6006
lmdeploy serve gradio api_server_url --server-name ${gradio_ui_ip} --server-port ${gradio_ui_port}

Option 2: OpenAOE

pip install -U openaoe
openaoe -f /path/to/your/config-template.yaml

Please refer to the guidance for more deploy information.

FAQ

  1. When user got "finish_reason":"length", it means the session is too long to be continued. The session length can be modified by passing --session_len to api_server.

  2. When OOM appeared at the server side, please reduce the cache_max_entry_count of backend_config when lanching the service.

  3. When the request with the same session_id to /v1/chat/interactive got a empty return value and a negative tokens, please consider setting interactive_mode=false to restart the session.

  4. The /v1/chat/interactive api disables engaging in multiple rounds of conversation by default. The input argument prompt consists of either single strings or entire chat histories.

  5. Regarding the stop words, we only support characters that encode into a single index. Furthermore, there may be multiple indexes that decode into results containing the stop word. In such cases, if the number of these indexes is too large, we will only use the index encoded by the tokenizer. If you want use a stop symbol that encodes into multiple indexes, you may consider performing string matching on the streaming client side. Once a successful match is found, you can then break out of the streaming loop.

  6. To customize a chat template, please refer to chat_template.md.