wikipedia-mcp
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A Model Context Protocol (MCP) server that retrieves information from Wikipedia to provide context to Large Language Models (LLMs).
Wikipedia MCP Server
A Model Context Protocol (MCP) server that retrieves information from Wikipedia to provide context to Large Language Models (LLMs). This tool helps AI assistants access factual information from Wikipedia to ground their responses in reliable sources.
Overview
The Wikipedia MCP server provides real-time access to Wikipedia information through a standardized Model Context Protocol interface. This allows LLMs to retrieve accurate and up-to-date information directly from Wikipedia to enhance their responses.
Verified By
Features
- Search Wikipedia: Find articles matching specific queries
- Retrieve Article Content: Get full article text with all information
- Article Summaries: Get concise summaries of articles
- Section Extraction: Retrieve specific sections from articles
- Link Discovery: Find links within articles to related topics
- Related Topics: Discover topics related to a specific article
- Multi-language Support: Access Wikipedia in different languages
Installation
From PyPI (Recommended)
The easiest way to install the Wikipedia MCP server is directly from PyPI:
pip install wikipedia-mcp
This will install the latest stable version.
Installing via Smithery
To install wikipedia-mcp for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @Rudra-ravi/wikipedia-mcp --client claude
Using pipx (Recommended)
# Install pipx if you don't have it
sudo apt install pipx
pipx ensurepath
# Install the Wikipedia MCP server
pipx install git+https://github.com/rudra-ravi/wikipedia-mcp.git
Using a virtual environment
# Create a virtual environment
python3 -m venv venv
# Activate the virtual environment
source venv/bin/activate
# Install the package
pip install git+https://github.com/rudra-ravi/wikipedia-mcp.git
From source
# Clone the repository
git clone https://github.com/rudra-ravi/wikipedia-mcp.git
cd wikipedia-mcp
# Create a virtual environment
python3 -m venv wikipedia-mcp-env
source wikipedia-mcp-env/bin/activate
# Install in development mode
pip install -e .
Usage
Running the server
# If installed with pipx
wikipedia-mcp
# If installed in a virtual environment
source venv/bin/activate
wikipedia-mcp
# Specify transport protocol (default: stdio)
wikipedia-mcp --transport stdio # For Claude Desktop
wikipedia-mcp --transport sse # For HTTP streaming
# Specify language (default: en for English)
# wikipedia-mcp --language ja # Example for Japanese
Configuration for Claude Desktop
Add the following to your Claude Desktop configuration file:
{
"mcpServers": {
"wikipedia": {
"command": "wikipedia-mcp"
}
}
}
Location of the configuration file:
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json
- Windows:
%APPDATA%/Claude/claude_desktop_config.json
- Linux:
~/.config/Claude/claude_desktop_config.json
Available MCP Tools
The Wikipedia MCP server provides the following tools for LLMs to interact with Wikipedia:
search_wikipedia
Search Wikipedia for articles matching a query.
Parameters:
query
(string): The search termlimit
(integer, optional): Maximum number of results to return (default: 10)
Returns:
- A list of search results with titles, snippets, and metadata
get_article
Get the full content of a Wikipedia article.
Parameters:
title
(string): The title of the Wikipedia article
Returns:
- Article content including text, summary, sections, links, and categories
get_summary
Get a concise summary of a Wikipedia article.
Parameters:
title
(string): The title of the Wikipedia article
Returns:
- A text summary of the article
get_sections
Get the sections of a Wikipedia article.
Parameters:
title
(string): The title of the Wikipedia article
Returns:
- A structured list of article sections with their content
get_links
Get the links contained within a Wikipedia article.
Parameters:
title
(string): The title of the Wikipedia article
Returns:
- A list of links to other Wikipedia articles
get_related_topics
Get topics related to a Wikipedia article based on links and categories.
Parameters:
title
(string): The title of the Wikipedia articlelimit
(integer, optional): Maximum number of related topics (default: 10)
Returns:
- A list of related topics with relevance information
summarize_article_for_query
Get a summary of a Wikipedia article tailored to a specific query.
Parameters:
title
(string): The title of the Wikipedia articlequery
(string): The query to focus the summary onmax_length
(integer, optional): Maximum length of the summary (default: 250)
Returns:
- A dictionary containing the title, query, and the focused summary
summarize_article_section
Get a summary of a specific section of a Wikipedia article.
Parameters:
title
(string): The title of the Wikipedia articlesection_title
(string): The title of the section to summarizemax_length
(integer, optional): Maximum length of the summary (default: 150)
Returns:
- A dictionary containing the title, section title, and the section summary
extract_key_facts
Extract key facts from a Wikipedia article, optionally focused on a specific topic within the article.
Parameters:
title
(string): The title of the Wikipedia articletopic_within_article
(string, optional): A specific topic within the article to focus fact extractioncount
(integer, optional): Number of key facts to extract (default: 5)
Returns:
- A dictionary containing the title, topic, and a list of extracted facts
Example Prompts
Once the server is running and configured with Claude Desktop, you can use prompts like:
- "Tell me about quantum computing using the Wikipedia information."
- "Summarize the history of artificial intelligence based on Wikipedia."
- "What does Wikipedia say about climate change?"
- "Find Wikipedia articles related to machine learning."
- "Get me the introduction section of the article on neural networks from Wikipedia."
MCP Resources
The server also provides MCP resources (similar to HTTP endpoints but for MCP):
search/{query}
: Search Wikipedia for articles matching the queryarticle/{title}
: Get the full content of a Wikipedia articlesummary/{title}
: Get a summary of a Wikipedia articlesections/{title}
: Get the sections of a Wikipedia articlelinks/{title}
: Get the links in a Wikipedia articlesummary/{title}/query/{query}/length/{max_length}
: Get a query-focused summary of an articlesummary/{title}/section/{section_title}/length/{max_length}
: Get a summary of a specific article sectionfacts/{title}/topic/{topic_within_article}/count/{count}
: Extract key facts from an article
Development
Local Development Setup
# Clone the repository
git clone https://github.com/rudra-ravi/wikipedia-mcp.git
cd wikipedia-mcp
# Create a virtual environment
python3 -m venv venv
source venv/bin/activate
# Install the package in development mode
pip install -e .
# Install development and test dependencies
pip install -r requirements-dev.txt
# Run the server
wikipedia-mcp
Project Structure
wikipedia_mcp/
: Main package__main__.py
: Entry point for the packageserver.py
: MCP server implementationwikipedia_client.py
: Wikipedia API clientapi/
: API implementationcore/
: Core functionalityutils/
: Utility functions
tests/
: Test suitetest_basic.py
: Basic package teststest_cli.py
: Command-line interface teststest_server_tools.py
: Comprehensive server and tool tests
Testing
The project includes a comprehensive test suite to ensure reliability and functionality.
Test Structure
The test suite is organized in the tests/
directory with the following test files:
test_basic.py
: Basic package functionality teststest_cli.py
: Command-line interface and transport teststest_server_tools.py
: Comprehensive tests for all MCP tools and Wikipedia client functionality
Running Tests
Run All Tests
# Install test dependencies
pip install -r requirements-dev.txt
# Run all tests
python -m pytest tests/ -v
# Run tests with coverage
python -m pytest tests/ --cov=wikipedia_mcp --cov-report=html
Run Specific Test Categories
# Run only unit tests (excludes integration tests)
python -m pytest tests/ -v -m "not integration"
# Run only integration tests (requires internet connection)
python -m pytest tests/ -v -m "integration"
# Run specific test file
python -m pytest tests/test_server_tools.py -v
Test Categories
Unit Tests
- WikipediaClient Tests: Mock-based tests for all client methods
- Search functionality
- Article retrieval
- Summary extraction
- Section parsing
- Link extraction
- Related topics discovery
- Server Tests: MCP server creation and tool registration
- CLI Tests: Command-line interface functionality
Integration Tests
- Real API Tests: Tests that make actual calls to Wikipedia API
- End-to-End Tests: Complete workflow testing
Test Configuration
The project uses pytest.ini
for test configuration:
[pytest]
markers =
integration: marks tests as integration tests (may require network access)
slow: marks tests as slow running
testpaths = tests
addopts = -v --tb=short
Continuous Integration
All tests are designed to:
- Run reliably in CI/CD environments
- Handle network failures gracefully
- Provide clear error messages
- Cover edge cases and error conditions
Adding New Tests
When contributing new features:
- Add unit tests for new functionality
- Include both success and failure scenarios
- Mock external dependencies (Wikipedia API)
- Add integration tests for end-to-end validation
- Follow existing test patterns and naming conventions
Troubleshooting
Common Issues
- Connection Error: Ensure the command in claude_desktop_config.json is correct
- Article Not Found: Check the exact spelling of article titles
- Rate Limiting: Wikipedia API has rate limits; consider adding delays between requests
- Large Articles: Some Wikipedia articles are very large and may exceed token limits
Understanding the Model Context Protocol (MCP)
The Model Context Protocol (MCP) is not a traditional HTTP API but a specialized protocol for communication between LLMs and external tools. Key characteristics:
- Uses stdio (standard input/output) or SSE (Server-Sent Events) for communication
- Designed specifically for AI model interaction
- Provides standardized formats for tools, resources, and prompts
- Integrates directly with Claude and other MCP-compatible AI systems
Claude Desktop acts as the MCP client, while this server provides the tools and resources that Claude can use to access Wikipedia information.
Contributing
Contributions are welcome! Please see for guidelines.
License
This project is licensed under the MIT License - see the file for details.
Connect with the Author
- 🌐 Portfolio: ravikumar-dev.me
- 📝 Blog: Medium
- 💼 LinkedIn: in/ravi-kumar-e
- 🐦 Twitter: @Ravikumar_d3v