fastapi_mcp
FastAPI-MCP is a tool that allows you to expose your FastAPI endpoints as Model Context Protocol (MCP) tools with built-in authentication.
FastAPI-MCP
Expose your FastAPI endpoints as Model Context Protocol (MCP) tools, with Auth!
Features
-
Authentication built in, using your existing FastAPI dependencies!
-
FastAPI-native: Not just another OpenAPI -> MCP converter
-
Zero/Minimal configuration required - just point it at your FastAPI app and it works
-
Preserving schemas of your request models and response models
-
Preserve documentation of all your endpoints, just as it is in Swagger
-
Flexible deployment - Mount your MCP server to the same app, or deploy separately
-
ASGI transport - Uses FastAPI's ASGI interface directly for efficient communication
Installation
We recommend using uv, a fast Python package installer:
uv add fastapi-mcp
Alternatively, you can install with pip:
pip install fastapi-mcp
Basic Usage
The simplest way to use FastAPI-MCP is to add an MCP server directly to your FastAPI application:
from fastapi import FastAPI
from fastapi_mcp import FastApiMCP
app = FastAPI()
mcp = FastApiMCP(app)
# Mount the MCP server directly to your FastAPI app
mcp.mount()
That's it! Your auto-generated MCP server is now available at https://app.base.url/mcp
.
Documentation, Examples and Advanced Usage
FastAPI-MCP provides comprehensive documentation. Additionaly, check out the for code samples demonstrating these features in action.
FastAPI-first Approach
FastAPI-MCP is designed as a native extension of FastAPI, not just a converter that generates MCP tools from your API. This approach offers several key advantages:
-
Native dependencies: Secure your MCP endpoints using familiar FastAPI
Depends()
for authentication and authorization -
ASGI transport: Communicates directly with your FastAPI app using its ASGI interface, eliminating the need for HTTP calls from the MCP to your API
-
Unified infrastructure: Your FastAPI app doesn't need to run separately from the MCP server (though separate deployment is also supported)
This design philosophy ensures minimum friction when adding MCP capabilities to your existing FastAPI services.
Development and Contributing
Thank you for considering contributing to FastAPI-MCP! We encourage the community to post Issues and create Pull Requests.
Before you get started, please see our .
Community
Join MCParty Slack community to connect with other MCP enthusiasts, ask questions, and share your experiences with FastAPI-MCP.
Requirements
- Python 3.10+ (Recommended 3.12)
- uv
License
MIT License. Copyright (c) 2024 Tadata Inc.
Related MCP Servers
View all developer_tools servers →Sequential Thinking🏅
by modelcontextprotocol
An MCP server implementation that provides a tool for dynamic and reflective problem-solving through a structured thinking process.
context7
by upstash
Context7 MCP provides up-to-date, version-specific documentation and code examples directly into your prompt, enhancing the capabilities of LLMs by avoiding outdated or hallucinated information.
git-mcp
by idosal
GitMCP is a free, open-source, remote Model Context Protocol (MCP) server that transforms GitHub projects into documentation hubs, enabling AI tools to access up-to-date documentation and code.
Everything MCP Server
by modelcontextprotocol
The Everything MCP Server is a comprehensive test server designed to demonstrate the full capabilities of the Model Context Protocol (MCP). It is not intended for production use but serves as a valuable tool for developers building MCP clients.
exa-mcp-server
by exa-labs
A Model Context Protocol (MCP) server allows AI assistants to use the Exa AI Search API for real-time web searches in a secure manner.
repomix
by yamadashy
Repomix is a tool that packages your entire codebase into a single, AI-friendly file, making it easier to use with AI tools like LLMs.
Sequential Thinking MCP Server
by modelcontextprotocol
An MCP server implementation that provides a tool for dynamic and reflective problem-solving through a structured thinking process.