MCP Servers

A collection of Model Context Protocol servers, templates, tools and more.

A
Agentic Rag With MCP Server

Agentic RAG with MCP Server

Created 5/15/2025
Updated 2 months ago
Repository documentation and setup instructions

🚀 Agentic RAG with MCP Server Agentic-RAG-MCPServer - AgenticRag


✨ Overview

AgenticRAGMCPServer - Agentic Rag With MCP Server by ashishpatel26

Agentic RAG with MCP Server is a powerful project that brings together an MCP (Model Context Protocol) server and client for building Agentic RAG (Retrieval-Augmented Generation) applications.

This setup empowers your RAG system with advanced tools such as:

  • 🕵️‍♂️ Entity Extraction
  • 🔍 Query Refinement
  • Relevance Checking

The server hosts these intelligent tools, while the client shows how to seamlessly connect and utilize them.


🖥️ Server — server.py

Powered by the FastMCP class from the mcp library, the server exposes these handy tools:

| Tool Name | Description | Icon | | ----------------------- | ----------------------------------------------------------------------------------------- | ---- | | get_time_with_prefix | Returns the current date & time | ⏰ | | extract_entities_tool | Uses OpenAI to extract entities from a query — enhancing document retrieval relevance | 🧠 | | refine_query_tool | Improves the quality of user queries with OpenAI-powered refinement | ✨ | | check_relevance | Filters out irrelevant content by checking chunk relevance with an LLM | ✅ |


🤝 Client — mcp-client.py

The client demonstrates how to connect and interact with the MCP server:

  • Establish a connection with ClientSession from the mcp library
  • List all available server tools
  • Call any tool with custom arguments
  • Process queries leveraging OpenAI or Gemini and MCP tools in tandem

⚙️ Requirements

  • Python 3.9 or higher
  • openai Python package
  • mcp library
  • python-dotenv for environment variable management

🛠️ Installation Guide

# Step 1: Clone the repository
git clone https://github.com/ashishpatel26/Agentic-RAG-with-MCP-Server.git

# Step 2: Navigate into the project directory
cd Agentic-RAG-with-MCP-Serve

# Step 3: Install dependencies
pip install -r requirements.txt

🔐 Configuration

  1. Create a .env file (use .env.sample as a template)
  2. Set your OpenAI model in .env:
OPENAI_MODEL_NAME="your-model-name-here"
GEMINI_API_KEY="your-model-name-here"

🚀 How to Use

  1. Start the MCP server:
python server.py
  1. Run the MCP client:
python mcp-client.py

📜 License

This project is licensed under the MIT License.


Thanks for Reading 🙏

Quick Setup
Installation guide for this server

Install Package (if required)

uvx Agentic-RAG-with-MCP-Server

Cursor configuration (mcp.json)

{ "mcpServers": { "ashishpatel26-agentic-rag-with-mcp-server": { "command": "uvx", "args": [ "Agentic-RAG-with-MCP-Server" ] } } }