Wraps a FastAPI application as an MCP server, exposing REST endpoints as MCP tools for user management, task management, and statistics retrieval.
Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@FastAPI MCP Servercreate a new user named Alex with email alex@example.com and age 28"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
FastAPI + MCP Server Integration with Gemini CLI
This project demonstrates how to build a FastAPI application, wrap it as an MCP (Model Context Protocol) Server, and integrate it with Gemini CLI for direct tool calling.
Project Structure
├── sample_app.py # FastAPI application with user and task management
├── mcp_server.py # MCP server that wraps the FastAPI app
├── requirements.txt # Python dependencies
├── setup.sh # Setup script
├── demo.sh # Interactive demonstration script
├── test_integration.py # Integration test script
├── venv/ # Python virtual environment
└── README.md # This fileFeatures
FastAPI Application (sample_app.py)
User Management: Create, read users with name, email, and age
Task Management: Create, read, update, delete tasks
Statistics: Get overview of users and tasks
Health Check: Basic health monitoring endpoint
MCP Server (mcp_server.py)
Tool Integration: Exposes all FastAPI endpoints as MCP tools
Error Handling: Proper HTTP error handling and logging
Type Safety: Full type annotations and schema validation
Available MCP Tools
get_app_info- Get basic app informationget_health- Check app health statusget_users- List all userscreate_user- Create a new userget_user- Get user by IDget_tasks- List all taskscreate_task- Create a new taskget_task- Get task by IDupdate_task- Update an existing taskdelete_task- Delete a taskget_stats- Get user and task statistics
Quick Start
Option 1: Automated Demo
./demo.shThis interactive script will guide you through the entire setup and testing process.
Option 2: Manual Setup
1. Run Setup Script
./setup.sh2. Start the FastAPI Application
source venv/bin/activate
python sample_app.pyThe FastAPI app will be available at http://localhost:8000
3. Start the MCP Server (in another terminal)
source venv/bin/activate
python mcp_server.py4. Install Gemini CLI
npm install -g @google/gemini-cli@latest5. Add MCP Server to Gemini CLI
gemini mcp add fastapi-sample stdio python $(pwd)/mcp_server.py6. Test the Integration
# List available tools
gemini mcp list
# Call a tool
gemini call fastapi-sample get_app_info
# Create a user
gemini call fastapi-sample create_user --name "John Doe" --email "john@example.com" --age 30
# Get all users
gemini call fastapi-sample get_users
# Create a task
gemini call fastapi-sample create_task --title "Learn MCP" --description "Study Model Context Protocol" --user_id 1
# Get statistics
gemini call fastapi-sample get_statsManual Setup
If you prefer to set up manually:
1. Install Python Dependencies
pip3 install -r requirements.txt2. Start Services
FastAPI app:
python3 sample_app.pyMCP server:
python3 mcp_server.py
3. Install and Configure Gemini CLI
npm install -g @google/gemini-cli@latest
gemini mcp add fastapi-sample stdio python3 /path/to/mcp_server.pyAPI Endpoints
The FastAPI application provides the following REST endpoints:
GET /- App informationGET /health- Health checkGET /users- List usersPOST /users- Create userGET /users/{user_id}- Get user by IDGET /tasks- List tasksPOST /tasks- Create taskGET /tasks/{task_id}- Get task by IDPUT /tasks/{task_id}- Update taskDELETE /tasks/{task_id}- Delete taskGET /stats- Get statistics
MCP Tool Examples
Create and Manage Users
# Create a user
gemini call fastapi-sample create_user --name "Alice Smith" --email "alice@example.com" --age 25
# Get user by ID
gemini call fastapi-sample get_user --user_id 1
# List all users
gemini call fastapi-sample get_usersCreate and Manage Tasks
# Create a task
gemini call fastapi-sample create_task --title "Complete project" --description "Finish the MCP integration" --user_id 1
# Update a task
gemini call fastapi-sample update_task --task_id 1 --title "Complete project" --description "Finish the MCP integration" --user_id 1 --completed true
# Delete a task
gemini call fastapi-sample delete_task --task_id 1Get Statistics
gemini call fastapi-sample get_statsTroubleshooting
Common Issues
Port already in use: Make sure port 8000 is available for the FastAPI app
MCP server connection failed: Ensure the FastAPI app is running before starting the MCP server
Gemini CLI not found: Make sure Node.js and npm are installed, then install Gemini CLI globally
Debug Mode
To run the FastAPI app in debug mode:
uvicorn sample_app:app --reload --host 0.0.0.0 --port 8000Check MCP Server Status
gemini mcp listDevelopment
Adding New Endpoints
Add the endpoint to
sample_app.pyAdd the corresponding tool to
mcp_server.pyin thehandle_list_tools()functionAdd the tool handler in the
handle_call_tool()function
Testing
You can test the FastAPI endpoints directly using curl:
# Test app info
curl http://localhost:8000/
# Create a user
curl -X POST http://localhost:8000/users \
-H "Content-Type: application/json" \
-d '{"name": "Test User", "email": "test@example.com", "age": 30}'
# Get users
curl http://localhost:8000/usersLicense
This project is for educational purposes and demonstrates MCP integration patterns.
This server cannot be installed
Resources
Unclaimed servers have limited discoverability.
Looking for Admin?
If you are the server author, to access and configure the admin panel.