MCP Project Setup
A starter project with setup instructions and example MCP servers, including a weather server.
MCP Project Setup
This document outlines the steps to set up the mcp project environment.
1. Create Conda Environment
Create a new conda environment named mcp with Python 3.12:
conda create -n mcp python=3.12 -y
2. Install uv
Install the uv package manager using the following command:
curl -LsSf https://astral.sh/uv/install.sh | sh
3. Install fastmcp
Install the fastmcp package using uv in the mcp environment:
conda run -n mcp uv pip install fastmcp
4. Verify Installation
Confirm the fastmcp installation by running the following command:
conda run -n mcp fastmcp version
5. Running the Hello World Server
mcp_hello.py is a "hello world" type mcp server. You can run the MCP inspector for it using the following command:
conda run -n mcp fastmcp dev mcp_hello.py:mcp
6. Connecting with Proxy Session Token
Copy the provided session token from CLI, click on the provided link, paste in Configuration -> Proxy Session Token, click connect.
7. Inspect hello_world tool
Click on Tools in the top menu bar. "hello_world" should be listed with a parameter "name". Input your name and click "Run Tool". The tool should succeed and return a greeting.
8. Running Resource Tests
mcp_resources.py defines MCP resources. You can run tests for these resources using the --test argument:
uv run mcp_resources.py --test
9. Weather Server
mcp_weather.py exposes a tool to get current weather data from OpenWeatherMap.
Before running: Ensure you have set your OPENWEATHER_API_KEY in the .env file:
OPENWEATHER_API_KEY=YOUR_API_KEY_HERE
To run the weather server manually:
conda run -n mcp fastmcp dev mcp_weather.py:mcp
To run tests for the weather tool:
uv run mcp_weather.py --test
10. Integrating with Gemini CLI
To allow the Gemini CLI to automatically start and connect to your mcp_weather server, you need to configure its settings.json file.
-
Locate
settings.json: Thesettings.jsonfile is typically located at:- Linux/macOS:
~/.gemini/settings.json - Windows:
%APPDATA%\gemini\settings.json
If the file or directory does not exist, create them.
- Linux/macOS:
-
Add
mcpServersentry: Add the following entry to themcpServerssection in yoursettings.jsonfile. Replace/mnt/d/Projects/_sandbox/mcp/with the absolute path to yourmcpproject directory.{ "mcpServers": { "weather_server": { "command": "uv", "args": [ "run", "/mnt/d/Projects/_sandbox/mcp/mcp_weather.py" ], "cwd": "/mnt/d/Projects/_sandbox/mcp", "timeout": 10000 } } }Once configured, when you run
gemini, the CLI will automatically start yourmcp_weather.pyserver and make itsget_current_weathertool available to the Gemini model.
References
- Gemini CLI Configuration: https://github.com/google-gemini/gemini-cli/blob/main/docs/cli/configuration.md - For information on setting up MCP with the Gemini CLI.
- FastMCP: https://github.com/jlowin/fastmcp - The FastMCP library used for building MCP servers.
เซิร์ฟเวอร์ที่เกี่ยวข้อง
Alpha Vantage MCP Server
ผู้สนับสนุนAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
Remote MCP Server (Authless)
An example of a remote MCP server without authentication, deployable on Cloudflare Workers.
Argo CD
Interact with Argo CD applications through natural language.
Berry MCP Server
A universal framework for easily creating and deploying Model Context Protocol servers with any tools.
JSON MCP
MCP server empowers LLMs to interact with JSON files efficiently. With JSON MCP, you can split, merge, etc.
Chromium Helper
Access Chromium and PDFium source code repositories using Google's official CodeSearch APIs, supporting advanced search, Gerrit integration, and issue tracking.
Authless Remote MCP Server on Cloudflare
An example of a remote MCP server deployable on Cloudflare Workers without authentication.
fixgraph-mcp
Search verified engineering fixes by error message or technology. Step-by-step solutions with trust scores, built for developers and AI agents.
MCPHub
A hub server for managing and scaling multiple MCP servers via flexible Streamable HTTP (SSE) endpoints.
Neural memory
A memory for AI, without cloud service or fee, everything local (Most useful for coding)
SDD MCP
Provides Seam-Driven Development tools for AI-assisted software development.