Skip to content

GenAI components at micro-service level; GenAI service composer to create mega-service

License

Notifications You must be signed in to change notification settings

lvliang-intel/GenAIComps

 
 

Repository files navigation

Generative AI Components (GenAIComps)

Build Enterprise-grade Generative AI Applications with Microservice Architecture

This initiative empowers the development of high-quality Generative AI applications for enterprises via microservices, simplifying the scaling and deployment process for production. It abstracts away infrastructure complexities, facilitating the seamless development and deployment of Enterprise AI services.

GenAIComps

GenAIComps provides a suite of microservices, leveraging a service composer to assemble a mega-service tailored for real-world Enterprise AI applications. All the microservices are containerized, allowing cloud native deployment. Checkout how the microservices are used in GenAIExamples.

Architecture

Installation

  • Install from Pypi
pip install opea-comps
  • Build from Source
git clone https://github.com/opea-project/GenAIComps
cd GenAIComps
pip install -e .

MicroService

Microservices are akin to building blocks, offering the fundamental services for constructing RAG (Retrieval-Augmented Generation) applications.

Each Microservice is designed to perform a specific function or task within the application architecture. By breaking down the system into smaller, self-contained services, Microservices promote modularity, flexibility, and scalability.

This modular approach allows developers to independently develop, deploy, and scale individual components of the application, making it easier to maintain and evolve over time. Additionally, Microservices facilitate fault isolation, as issues in one service are less likely to impact the entire system.

The initially supported Microservices are described in the below table. More Microservices are on the way.

MicroService Framework Model Serving HW Description
Embedding LangChain/LlamaIndex BAAI/bge-base-en-v1.5 TEI-Gaudi Gaudi2 Embedding on Gaudi2
Embedding LangChain/LlamaIndex BAAI/bge-base-en-v1.5 TEI Xeon Embedding on Xeon CPU
Retriever LangChain/LlamaIndex BAAI/bge-base-en-v1.5 TEI Xeon Retriever on Xeon CPU
Reranking LangChain/LlamaIndex BAAI/bge-reranker-base TEI-Gaudi Gaudi2 Reranking on Gaudi2
Reranking LangChain/LlamaIndex BBAAI/bge-reranker-base TEI Xeon Reranking on Xeon CPU
ASR NA openai/whisper-small NA Gaudi2 Audio-Speech-Recognition on Gaudi2
ASR NA openai/whisper-small NA Xeon Audio-Speech-RecognitionS on Xeon CPU
TTS NA microsoft/speecht5_tts NA Gaudi2 Text-To-Speech on Gaudi2
TTS NA microsoft/speecht5_tts NA Xeon Text-To-Speech on Xeon CPU
Dataprep Qdrant sentence-transformers/all-MiniLM-L6-v2 NA Gaudi2 Dataprep on Gaudi2
Dataprep Qdrant sentence-transformers/all-MiniLM-L6-v2 NA Xeon Dataprep on Xeon CPU
Dataprep Redis BAAI/bge-base-en-v1.5 NA Gaudi2 Dataprep on Gaudi2
Dataprep Redis BAAI/bge-base-en-v1.5 NA Xeon Dataprep on Xeon CPU
LLM LangChain/LlamaIndex Intel/neural-chat-7b-v3-3 TGI Gaudi Gaudi2 LLM on Gaudi2
LLM LangChain/LlamaIndex Intel/neural-chat-7b-v3-3 TGI Xeon LLM on Xeon CPU
LLM LangChain/LlamaIndex Intel/neural-chat-7b-v3-3 Ray Serve Gaudi2 LLM on Gaudi2
LLM LangChain/LlamaIndex Intel/neural-chat-7b-v3-3 Ray Serve Xeon LLM on Xeon CPU
LLM LangChain/LlamaIndex Intel/neural-chat-7b-v3-3 vLLM Gaudi2 LLM on Gaudi2
LLM LangChain/LlamaIndex Intel/neural-chat-7b-v3-3 vLLM Xeon LLM on Xeon CPU

A Microservices can be created by using the decorator register_microservice. Taking the embedding microservice as an example:

from langchain_community.embeddings import HuggingFaceHubEmbeddings

from comps import register_microservice, EmbedDoc, ServiceType, TextDoc


@register_microservice(
    name="opea_service@embedding_tgi_gaudi",
    service_type=ServiceType.EMBEDDING,
    endpoint="/v1/embeddings",
    host="0.0.0.0",
    port=6000,
    input_datatype=TextDoc,
    output_datatype=EmbedDoc,
)
def embedding(input: TextDoc) -> EmbedDoc:
    embed_vector = embeddings.embed_query(input.text)
    res = EmbedDoc(text=input.text, embedding=embed_vector)
    return res

MegaService

A Megaservice is a higher-level architectural construct composed of one or more Microservices, providing the capability to assemble end-to-end applications. Unlike individual Microservices, which focus on specific tasks or functions, a Megaservice orchestrates multiple Microservices to deliver a comprehensive solution.

Megaservices encapsulate complex business logic and workflow orchestration, coordinating the interactions between various Microservices to fulfill specific application requirements. This approach enables the creation of modular yet integrated applications, where each Microservice contributes to the overall functionality of the Megaservice.

Here is a simple example of building Megaservice:

from comps import MicroService, ServiceOrchestrator

EMBEDDING_SERVICE_HOST_IP = os.getenv("EMBEDDING_SERVICE_HOST_IP", "0.0.0.0")
EMBEDDING_SERVICE_PORT = os.getenv("EMBEDDING_SERVICE_PORT", 6000)
LLM_SERVICE_HOST_IP = os.getenv("LLM_SERVICE_HOST_IP", "0.0.0.0")
LLM_SERVICE_PORT = os.getenv("LLM_SERVICE_PORT", 9000)


class ExampleService:
    def __init__(self, host="0.0.0.0", port=8000):
        self.host = host
        self.port = port
        self.megaservice = ServiceOrchestrator()

    def add_remote_service(self):
        embedding = MicroService(
            name="embedding",
            host=EMBEDDING_SERVICE_HOST_IP,
            port=EMBEDDING_SERVICE_PORT,
            endpoint="/v1/embeddings",
            use_remote_service=True,
            service_type=ServiceType.EMBEDDING,
        )
        llm = MicroService(
            name="llm",
            host=LLM_SERVICE_HOST_IP,
            port=LLM_SERVICE_PORT,
            endpoint="/v1/chat/completions",
            use_remote_service=True,
            service_type=ServiceType.LLM,
        )
        self.megaservice.add(embedding).add(llm)
        self.megaservice.flow_to(embedding, llm)

Gateway

The Gateway serves as the interface for users to access the Megaservice, providing customized access based on user requirements. It acts as the entry point for incoming requests, routing them to the appropriate Microservices within the Megaservice architecture.

Gateways support API definition, API versioning, rate limiting, and request transformation, allowing for fine-grained control over how users interact with the underlying Microservices. By abstracting the complexity of the underlying infrastructure, Gateways provide a seamless and user-friendly experience for interacting with the Megaservice.

For example, the Gateway for ChatQnA can be built like this:

from comps import ChatQnAGateway

self.gateway = ChatQnAGateway(megaservice=self.megaservice, host="0.0.0.0", port=self.port)

Contributing to OPEA

Welcome to the OPEA open-source community! We are thrilled to have you here and excited about the potential contributions you can bring to the OPEA platform. Whether you are fixing bugs, adding new GenAI components, improving documentation, or sharing your unique use cases, your contributions are invaluable.

Together, we can make OPEA the go-to platform for enterprise AI solutions. Let's work together to push the boundaries of what's possible and create a future where AI is accessible, efficient, and impactful for everyone.

Please check the Contributing guidelines for a detailed guide on how to contribute a GenAI example and all the ways you can contribute!

Thank you for being a part of this journey. We can't wait to see what we can achieve together!

Additional Content

About

GenAI components at micro-service level; GenAI service composer to create mega-service

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 78.4%
  • Shell 17.4%
  • Dockerfile 4.2%