Wikipedia MCP Server

Created By
danbunnella year ago
A simple MCP Server in Python for working with Wikipedia topic content in a GenAI context
Overview

What is Wikipedia MCP Server?

Wikipedia MCP Server is a Model Control Protocol (MCP) server built in Python that provides Wikipedia content for requested topics in a generative AI context.

How to use Wikipedia MCP Server?

To use the server, install the required dependencies, start the server, and send a POST request to the /mcp endpoint with a JSON body containing a topic field.

Key features of Wikipedia MCP Server?

  • Provides Wikipedia content based on user-defined topics.
  • Easy setup and usage via API.
  • Supports integration with tools like Cursor Composer for enhanced user interaction.

Use cases of Wikipedia MCP Server?

  1. Retrieving information about programming languages from Wikipedia.
  2. Integrating Wikipedia content into generative AI applications.
  3. Enhancing educational tools with real-time Wikipedia data.

FAQ from Wikipedia MCP Server?

  • What programming language is used for the server?

The server is built using Python.

  • How do I start the server?

You can start the server by running python src/server.py after installing the dependencies.

  • What is the response format for API requests?

The server returns a JSON response with either success or error status, along with the requested data or error message.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
danbunnell
Star
1
Language
Python
License
-

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