mcp-searxng

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This MCP server allows AI agents to access and search multiple external search engines through SearXNG, ensuring privacy and broad coverage. It supports self-hosting, offers SSE-based communication, and integrates with Markdownify for webpage content extraction. Designed for AI and developer use, it enhances external data retrieval with privacy control.
Added on:
Created by:
Mar 30 2025
mcp-searxng

mcp-searxng

0 Reviews
1
0
mcp-searxng
This MCP server allows AI agents to access and search multiple external search engines through SearXNG, ensuring privacy and broad coverage. It supports self-hosting, offers SSE-based communication, and integrates with Markdownify for webpage content extraction. Designed for AI and developer use, it enhances external data retrieval with privacy control.
Added on:
Created by:
Mar 30 2025
ErhWen Kuo
Featured

What is mcp-searxng?

The mcp-searxng is an MCP server designed for AI agents to conduct external web searches effectively. It integrates with SearXNG, an open-source meta-search engine, to perform multi-engine, privacy-preserving searches. The server uses SSE for real-time communication, allowing remote or cloud-based deployment. Users can run the server via Python uv or Docker, configure connections, and verify results using MCP inspector. Its core advantage is combining results from multiple search engines, like Google and DuckDuckGo, while maintaining privacy. The server also supports webpage content extraction through Markdownify, making retrieved data more accessible for further processing. Its flexibility and focus on privacy make it suitable for AI research, development, and enterprise applications involved in external web data mining and analysis.

Who will use mcp-searxng?

  • AI developers
  • Research institutions
  • Data scientists
  • Developers building AI agents
  • Organizations requiring privacy-focused web search integrations

How to use the mcp-searxng?

  • Step1: Install Docker or uv via instructions
  • Step2: Clone the repository from GitHub
  • Step3: Run Docker Compose to start SearXNG service
  • Step4: Configure the MCP server with the SearXNG URL
  • Step5: Start the MCP server using uv or Docker
  • Step6: Use MCP inspector at localhost:5173 to connect and test tools like web_search and web_url_read

mcp-searxng's Core Features & Benefits

The Core Features
  • SSE-based MCP server
  • Integration with SearXNG meta-search engine
  • Web content extraction with Markdownify
  • Configurable via command line or Docker
  • Supports remote connection and real-time communication
The Benefits
  • Allows comprehensive external web searches via multiple engines
  • Ensures user privacy and data control
  • Flexible deployment options
  • Enhanced web content accessibility
  • Decouples AI and server for cloud-native use

mcp-searxng's Main Use Cases & Applications

  • AI agents conducting multi-engine web searches
  • Research projects needing privacy-preserving data retrieval
  • enterprises aggregating search results for analysis
  • Web content extraction for NLP tasks
  • Self-hosted search engine solutions

FAQs of mcp-searxng

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