This document outlines the deployment process for a Document Summarization application utilizing the GenAIComps microservice pipeline on an Intel Xeon server. The steps include Docker image creation, container deployment via Docker Compose, and service execution to integrate microservices such as llm
. We will publish the Docker images to Docker Hub soon, which will simplify the deployment process for this service.
To apply a Intel Xeon server on AWS, start by creating an AWS account if you don't have one already. Then, head to the EC2 Console to begin the process. Within the EC2 service, select the Amazon EC2 M7i or M7i-flex instance type to leverage 4th Generation Intel Xeon Scalable processors. These instances are optimized for high-performance computing and demanding workloads.
For detailed information about these instance types, you can refer to this link. Once you've chosen the appropriate instance type, proceed with configuring your instance settings, including network configurations, security groups, and storage options.
After launching your instance, you can connect to it using SSH (for Linux instances) or Remote Desktop Protocol (RDP) (for Windows instances). From there, you'll have full access to your Xeon server, allowing you to install, configure, and manage your applications as needed.
First of all, you need to build Docker Images locally and install the python package of it.
git clone https://github.com/opea-project/GenAIComps.git
cd GenAIComps
docker build -t opea/llm-docsum-tgi:latest --build-arg https_proxy=$https_proxy --build-arg http_proxy=$http_proxy -f comps/llms/summarization/tgi/langchain/Dockerfile .
Then run the command docker images
, you will have the following four Docker Images:
To construct the Mega Service, we utilize the GenAIComps microservice pipeline within the docsum.py
Python script. Build the MegaService Docker image via below command:
git clone https://github.com/opea-project/GenAIExamples
cd GenAIExamples/DocSum/
docker build -t opea/docsum:latest --build-arg https_proxy=$https_proxy --build-arg http_proxy=$http_proxy -f Dockerfile .
Build the frontend Docker image via below command:
cd GenAIExamples/DocSum/ui
docker build -t opea/docsum-ui:latest --build-arg https_proxy=$https_proxy --build-arg http_proxy=$http_proxy -f docker/Dockerfile .
Then run the command docker images
, you will have the following Docker Images:
opea/llm-docsum-tgi:latest
opea/docsum:latest
opea/docsum-ui:latest
Build the frontend Docker image via below command:
cd GenAIExamples/DocSum/ui
export BACKEND_SERVICE_ENDPOINT="http://${host_ip}:8888/v1/docsum"
docker build -t opea/docsum-react-ui:latest --build-arg BACKEND_SERVICE_ENDPOINT=$BACKEND_SERVICE_ENDPOINT -f ./docker/Dockerfile.react .
docker build -t opea/docsum-react-ui:latest --build-arg BACKEND_SERVICE_ENDPOINT=$BACKEND_SERVICE_ENDPOINT --build-arg https_proxy=$https_proxy --build-arg http_proxy=$http_proxy -f ./docker/Dockerfile.react .
Then run the command docker images
, you will have the following Docker Images:
opea/llm-docsum-tgi:latest
opea/docsum:latest
opea/docsum-ui:latest
opea/docsum-react-ui:latest
We set default model as "Intel/neural-chat-7b-v3-3", change "LLM_MODEL_ID" in following Environment Variables setting if you want to use other models. If use gated models, you also need to provide huggingface token to "HUGGINGFACEHUB_API_TOKEN" environment variable.
Since the compose.yaml
will consume some environment variables, you need to setup them in advance as below.
export no_proxy=${your_no_proxy}
export http_proxy=${your_http_proxy}
export https_proxy=${your_http_proxy}
export LLM_MODEL_ID="Intel/neural-chat-7b-v3-3"
export TGI_LLM_ENDPOINT="http://${host_ip}:8008"
export HUGGINGFACEHUB_API_TOKEN=${your_hf_api_token}
export MEGA_SERVICE_HOST_IP=${host_ip}
export LLM_SERVICE_HOST_IP=${host_ip}
export BACKEND_SERVICE_ENDPOINT="http://${host_ip}:8888/v1/docsum"
Note: Please replace with host_ip
with your external IP address, do not use localhost.
cd GenAIExamples/DocSum/docker_compose/intel/cpu/xeon
docker compose up -d
-
TGI Service
curl http://${host_ip}:8008/generate \ -X POST \ -d '{"inputs":"What is Deep Learning?","parameters":{"max_new_tokens":17, "do_sample": true}}' \ -H 'Content-Type: application/json'
-
LLM Microservice
curl http://${host_ip}:9000/v1/chat/docsum \ -X POST \ -d '{"query":"Text Embeddings Inference (TEI) is a toolkit for deploying and serving open source text embeddings and sequence classification models. TEI enables high-performance extraction for the most popular models, including FlagEmbedding, Ember, GTE and E5."}' \ -H 'Content-Type: application/json'
-
MegaService
curl http://${host_ip}:8888/v1/docsum \ -H "Content-Type: multipart/form-data" \ -F "messages=Text Embeddings Inference (TEI) is a toolkit for deploying and serving open source text embeddings and sequence classification models. TEI enables high-performance extraction for the most popular models, including FlagEmbedding, Ember, GTE and E5." \ -F "max_tokens=32" \ -F "language=en" \ -F "stream=false"
Following the validation of all aforementioned microservices, we are now prepared to construct a mega-service.
Open this URL http://{host_ip}:5173
in your browser to access the svelte based frontend.
Open this URL http://{host_ip}:5174
in your browser to access the React based frontend.
To access the React-based frontend, modify the UI service in the compose.yaml
file. Replace docsum-xeon-ui-server
service with the docsum-xeon-react-ui-server
service as per the config below:
docsum-xeon-react-ui-server:
image: ${REGISTRY:-opea}/docsum-react-ui:${TAG:-latest}
container_name: docsum-xeon-react-ui-server
depends_on:
- docsum-xeon-backend-server
ports:
- "5174:80"
environment:
- no_proxy=${no_proxy}
- https_proxy=${https_proxy}
- http_proxy=${http_proxy}
ipc: host
restart: always