Brave Search
A server for Brave Search, enabling web search capabilities via its API.
Brave Search MCP Server
This project implements a Model Context Protocol (MCP) server for Brave Search, allowing integration with AI assistants like Claude.
Prerequisites
- Python 3.11+
- uv - A fast Python package installer and resolver
Installation
Installing via Smithery
To install Brave Search MCP server for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @thomasvan/mcp-brave-search --client claude
Manual Installation
-
Clone the repository:
git clone https://github.com/thomasvan/mcp-brave-search.git cd mcp-brave-search -
Create a virtual environment and install dependencies using uv:
uv venv source .venv/bin/activate # On Windows, use: .venv\Scripts\activate uv pip install -r requirements.txt -
Set up your Brave Search API key:
export BRAVE_API_KEY=your_api_key_hereOn Windows, use:
set BRAVE_API_KEY=your_api_key_here
Usage
-
Configure your MCP settings file (e.g.,
claude_desktop_config.json) to include the Brave Search MCP server:{ "mcpServers": { "brave-search": { "command": "uv", "args": [ "--directory", "path-to\\mcp-python\\mcp-brave-search\\src", "run", "server.py" ], "env": { "BRAVE_API_KEY": "YOUR_BRAVE_API_KEY_HERE" } } } }Replace
YOUR_BRAVE_API_KEY_HEREwith your actual Brave API key. -
Start the Brave Search MCP server by running your MCP-compatible AI assistant with the updated configuration.
-
The server will now be running and ready to accept requests from MCP clients.
-
You can now use the Brave Search functionality in your MCP-compatible AI assistant (like Claude) by invoking the available tools.
Available Tools
The server provides two main tools:
brave_web_search: Performs a web search using the Brave Search API.brave_local_search: Searches for local businesses and places.
Refer to the tool docstrings in src/server.py for detailed usage information.
Development
To make changes to the project:
- Modify the code in the
srcdirectory as needed. - Update the
requirements.txtfile if you add or remove dependencies:uv pip freeze > requirements.txt - Restart the server to apply changes.
Testing
The project includes both unit tests and integration tests:
Installing Test Dependencies
uv pip install pytest pytest-asyncio pytest-cov
Running Unit Tests
Unit tests can be run without an API key and use mocks to simulate API responses:
# Run all unit tests
python -m pytest tests/unit/
# Run with verbose output
python -m pytest tests/unit/ -v
Running Integration Tests
Integration tests require a valid Brave API key and make real API calls:
# Run integration tests with your API key
BRAVE_API_KEY_INTEGRATION="your_api_key_here" python -m pytest tests/integration/ -v
Test Coverage
To check test coverage:
python -m pytest --cov=src/mcp_brave_search
Troubleshooting
If you encounter any issues:
- Ensure your Brave API key is correctly set.
- Check that all dependencies are installed.
- Verify that you're using a compatible Python version.
- If you make changes to the code, make sure to restart the server.
License
This project is licensed under the MIT License - see the LICENSE file for details.
相關伺服器
Sketchfab
Search, view details, and download 3D models from the Sketchfab platform.
Slack Search
Search for messages and files within a Slack workspace using the Slack API.
Copus
Search human-curated content recommendations from real people who explain why resources are valuable - The Internet Treasure Map
ProPublica MCP Server
Search and analyze nonprofit organizations' Form 990 data using ProPublica's Nonprofit Explorer API.
Wikipedia
Retrieves information from Wikipedia to provide context to Large Language Models (LLMs).
Octolens
Monitor brand mentions across X, Reddit, LinkedIn, and 10 other platforms.
Google Search Console
A Model Context Protocol (MCP) server providing access to Google Search Console.
DigiKey
Search for electronic components and products using the DigiKey Product Search API.
MidOS Research Protocol
MidOS Research Protocol: curated skills & knowledge versioned.
wikipedia
A minimal MCP server for interacting with Wikipedia. It provides simple tools to search for articles and retrieve full content, making it easy for AI agents to access reliable, structured knowledge.