MCP·BC9095
L

Python-PIP-MCP

By lukeage·Visit Source
Python MCP client/server reference implementation
December 20, 2024
2 months ago
10 Clicks
About Python-PIP-MCP

Python MCP client/server reference implementation. Python-PIP-MCP is a Model Context Protocol (MCP) server maintained by lukeage. It connects to MCP-compatible clients such as Claude Desktop, Cursor, Cline, and other agents that speak the protocol. It is categorized under Tool/Python and Tool/Pip.

What is this MCP

This is a minimal implementation of a Model Context Protocol (MCP) client and server in Python using Pip. MCP is a protocol for interacting with AI models like Anthropic's Claude.

How to use this MCP

  • Create a Python virtual environment
  • Install requirements with pip
  • Set up your Anthropic API key in .env
  • Run the client script to interact with the MCP server
  • What this MCP can be used for

    This implementation serves as a reference for debugging and integrating MCP functionality in Python environments, particularly useful for developers working with AI model APIs.

    Repository Info
    Stars:
    9
    Forks:
    4
    Watchers:
    9
    Last Updated: 1 year ago

    AIMCP authority

    DR and traffic signal for the AIMCP public domain.

    FAQ

    Frequently asked questions

    What is the Python-PIP-MCP MCP server?

    Python-PIP-MCP is a Model Context Protocol server from lukeage. It lets MCP-compatible AI clients call its tools over a standard interface, so agents like Claude, Cursor, and Cline can use it without custom integration.

    How do I connect Python-PIP-MCP to my AI client?

    Add Python-PIP-MCP to your client's MCP configuration using the stdio or SSE connection shown in the usage examples on this page, then restart the client to load the server.

    Is Python-PIP-MCP free to use?

    Python-PIP-MCP is listed on AIMCP for free. Any API keys or accounts required by the underlying service are set by its provider.

    Sponsored

    Vernclaw Plugins for OpenClaw

    Ready-to-use connectors for SEO data, social reading & content generation. Pay-as-you-go credits with audit logs.