This document outlines the deployment process for a CodeGen application utilizing the GenAIComps microservice pipeline on Intel Gaudi2 server. The steps include Docker images creation, container deployment via Docker Compose, and service execution to integrate microservices such as llm
. We will publish the Docker images to the Docker Hub soon, further simplifying the deployment process for this service.
First of all, you need to build the Docker images locally. This step can be ignored after the Docker images published to the Docker Hub.
git clone https://github.com/opea-project/GenAIComps.git
cd GenAIComps
docker build -t opea/llm-tgi:latest --build-arg https_proxy=$https_proxy --build-arg http_proxy=$http_proxy -f comps/llms/text-generation/tgi/Dockerfile .
To construct the Mega Service, we utilize the GenAIComps microservice pipeline within the codegen.py
Python script. Build the MegaService Docker image via the command below:
git clone https://github.com/opea-project/GenAIExamples
cd GenAIExamples/CodeGen
docker build -t opea/codegen:latest --build-arg https_proxy=$https_proxy --build-arg http_proxy=$http_proxy -f Dockerfile .
Construct the frontend Docker image via the command below:
cd GenAIExamples/CodeGen/ui
docker build -t opea/codegen-ui:latest --build-arg https_proxy=$https_proxy --build-arg http_proxy=$http_proxy -f ./docker/Dockerfile .
Build react frontend Docker image via below command:
Export the value of the public IP address of your Xeon server to the host_ip
environment variable
cd GenAIExamples/CodeGen/ui
docker build --no-cache -t opea/codegen-react-ui:latest --build-arg https_proxy=$https_proxy --build-arg http_proxy=$http_proxy -f ./docker/Dockerfile.react .
Then run the command docker images
, you will have the following 3 Docker images:
opea/llm-tgi:latest
opea/codegen:latest
opea/codegen-ui:latest
opea/codegen-react-ui:latest
The CodeGen megaservice manages a single microservice called LLM within a Directed Acyclic Graph (DAG). In the diagram above, the LLM microservice is a language model microservice that generates code snippets based on the user's input query. The TGI service serves as a text generation interface, providing a RESTful API for the LLM microservice. The CodeGen Gateway acts as the entry point for the CodeGen application, invoking the Megaservice to generate code snippets in response to the user's input query.
The mega flow of the CodeGen application, from user's input query to the application's output response, is as follows:
flowchart LR
subgraph CodeGen
direction LR
A[User] --> |Input query| B[CodeGen Gateway]
B --> |Invoke| Megaservice
subgraph Megaservice["Megaservice"]
direction TB
C((LLM<br>9000)) -. Post .-> D{{TGI Service<br>8028}}
end
Megaservice --> |Output| E[Response]
end
subgraph Legend
direction LR
G([Microservice]) ==> H([Microservice])
I([Microservice]) -.-> J{{Server API}}
end
Since the compose.yaml
will consume some environment variables, you need to setup them in advance as below.
export no_proxy=${your_no_proxy}
export http_proxy=${your_http_proxy}
export https_proxy=${your_http_proxy}
export LLM_MODEL_ID="Qwen/Qwen2.5-Coder-7B-Instruct"
export TGI_LLM_ENDPOINT="http://${host_ip}:8028"
export HUGGINGFACEHUB_API_TOKEN=${your_hf_api_token}
export MEGA_SERVICE_HOST_IP=${host_ip}
export LLM_SERVICE_HOST_IP=${host_ip}
export BACKEND_SERVICE_ENDPOINT="http://${host_ip}:7778/v1/codegen"
Note
Please replace the host_ip
with you external IP address, do not use localhost
.
cd GenAIExamples/CodeGen/docker_compose/intel/hpu/gaudi
docker compose up -d
-
TGI Service
curl http://${host_ip}:8028/generate \ -X POST \ -d '{"inputs":"Implement a high-level API for a TODO list application. The API takes as input an operation request and updates the TODO list in place. If the request is invalid, raise an exception.","parameters":{"max_new_tokens":256, "do_sample": true}}' \ -H 'Content-Type: application/json'
-
LLM Microservices
curl http://${host_ip}:9000/v1/chat/completions\ -X POST \ -d '{"query":"Implement a high-level API for a TODO list application. The API takes as input an operation request and updates the TODO list in place. If the request is invalid, raise an exception.","max_tokens":256,"top_k":10,"top_p":0.95,"typical_p":0.95,"temperature":0.01,"repetition_penalty":1.03,"streaming":true}' \ -H 'Content-Type: application/json'
-
MegaService
curl http://${host_ip}:7778/v1/codegen -H "Content-Type: application/json" -d '{ "messages": "Implement a high-level API for a TODO list application. The API takes as input an operation request and updates the TODO list in place. If the request is invalid, raise an exception." }'
To access the frontend, open the following URL in your browser: http://{host_ip}:5173
. By default, the UI runs on port 5173 internally. If you prefer to use a different host port to access the frontend, you can modify the port mapping in the compose.yaml
file as shown below:
codegen-gaudi-ui-server:
image: opea/codegen-ui:latest
...
ports:
- "80:5173"
To access the React-based frontend, modify the UI service in the compose.yaml
file. Replace codegen-gaudi-ui-server
service with the codegen-gaudi-react-ui-server
service as per the config below:
codegen-gaudi-react-ui-server:
image: ${REGISTRY:-opea}/codegen-react-ui:${TAG:-latest}
container_name: codegen-gaudi-react-ui-server
environment:
- no_proxy=${no_proxy}
- https_proxy=${https_proxy}
- http_proxy=${http_proxy}
- APP_CODE_GEN_URL=${BACKEND_SERVICE_ENDPOINT}
depends_on:
- codegen-gaudi-backend-server
ports:
- "5174:80"
ipc: host
restart: always
In addition to the Svelte UI, users can also install the Copilot VSCode extension from the Plugin Marketplace as the frontend.
Install Neural Copilot
in VSCode as below.
Please adjust the service URL in the extension settings based on the endpoint of the CodeGen backend service.
The Copilot enables users to input their corresponding sensitive information and tokens in the user settings according to their own needs. This customization enhances the accuracy and output content to better meet individual requirements.
To trigger inline completion, you'll need to type # {your keyword} (start with your programming language's comment keyword, like // in C++ and # in python)
. Make sure the Inline Suggest
is enabled from the VS Code Settings.
For example:
To provide programmers with a smooth experience, the Copilot supports multiple ways to trigger inline code suggestions. If you are interested in the details, they are summarized as follows:
- Generate code from single-line comments: The simplest way introduced before.
- Generate code from consecutive single-line comments:
- Generate code from multi-line comments, which will not be triggered until there is at least one
space
outside the multi-line comment):
- Automatically complete multi-line comments:
You can start a conversation with the AI programming assistant by clicking on the robot icon in the plugin bar on the left:
Then you can see the conversation window on the left, where you can chat with the AI assistant:
There are 4 areas worth noting as shown in the screenshot above:
- Enter and submit your question
- Your previous questions
- Answers from AI assistant (Code will be highlighted properly according to the programming language it is written in, also support streaming output)
- Copy or replace code with one click (Note that you need to select the code in the editor first and then click "replace", otherwise the code will be inserted)
You can also select the code in the editor and ask the AI assistant questions about the code directly. For example:
- Select code
- Ask question and get answer