AI MCP System
An MCP-compatible RAG backend using LangGraph and FastAPI, enabling chaining of AI model logic with document context search.
README
AI MCP System
An intelligent, Model Context Protocol (MCP) compatible Retrieval-Augmented Generation (RAG) backend utilizing LangGraph and FastAPI.
This system allows seamless chaining of AI model logic (powered by Groq APIs) and document context search abilities via HuggingFace embedding configurations and a FAISS local vector database.
š Features
- ReAct Agent Flow Setup: Custom autonomous routing utilizing LangGraph state machines.
- Dynamic RAG Pipeline: Secure and optimized ingestion, chunking, and semantic vector searching.
- Persisted Thread Memory: SQLite integrated transactions storing continuous session context tracking.
- Fully Modular Architecture: Easily scalable with new LangGraph agents and standalone MCP wrappers.
- Container Ready: Ships with explicit configurations targeting lightweight reproducible Python Docker builds.
š Prerequisites
Before running the backend, make sure you have installed:
- Python 3.11+
- Create a Groq API Key: https://console.groq.com/keys
š ļø Installation
1. Clone the repository
git clone https://github.com/venkatanaveen2078909-rgb/MCP-server.git
cd MCP-server
2. Activate a local Virtual Environment (Recommended)
# On Windows
python -m venv venv
venv\Scripts\activate
3. Install Dependencies
pip install -r requirements.txt
4. Create Environment Variables
Create a .env file inside the root directory:
GROQ_API_KEY=your_groq_api_key_here
5. Start the Application
uvicorn main:app --reload
The server will now be live at: š http://127.0.0.1:8000
ā³ Note: On first startup, it may take ~60 seconds to download HuggingFace embedding models (~80MB).
š API Usage (Swagger UI)
Access the interactive API docs: š http://127.0.0.1:8000/docs
Available Endpoints
GET /ā Server health checkPOST /api/chat/chatā Send input to ReAct agent (Groq + RAG context)POST /api/rag/queryā Query FAISS vector database
š³ Docker
Build and run the backend using Docker:
docker build -t ai-mcp-system .
docker run -p 8000:8000 ai-mcp-system
š Notes
- Ensure
.envis correctly configured before running. - First-time setup requires internet for model downloads.
- Easily extendable with additional LangGraph agents and MCP integrations.
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