Docs Fetch MCP Server

Created By
wolfyy970a year ago
MCP server for fetching web page content with recursive exploration capability
Overview

what is Docs Fetch MCP?

Docs Fetch MCP is a Model Context Protocol (MCP) server designed for fetching web page content with recursive exploration capabilities, allowing LLMs to autonomously explore web pages and documentation to learn about specific topics.

how to use Docs Fetch MCP?

To use Docs Fetch MCP, you need to set up the server and call the fetch_doc_content tool with the required parameters, including the URL of the web page you want to fetch and an optional depth for link exploration.

key features of Docs Fetch MCP?

  • Clean content extraction from web pages
  • Recursive exploration of linked pages
  • Smart filtering of navigation links
  • Parallel processing for efficient crawling
  • Robust error handling for network issues
  • Dual-strategy approach for fetching content
  • Global timeout handling for reliable operation
  • Returns partial results when some pages fail to load

use cases of Docs Fetch MCP?

  1. Enabling LLMs to learn about specific topics by exploring documentation.
  2. Fetching and analyzing content from multiple related web pages.
  3. Assisting in research by gathering comprehensive information from various sources.

FAQ from Docs Fetch MCP?

  • Can Docs Fetch MCP handle any web page?

Yes! It is designed to fetch content from any web page while filtering out irrelevant elements.

  • How deep can the exploration go?

The exploration depth can be set from 1 to 5, depending on your needs.

  • Is there a limit to the number of pages that can be explored?

The server can explore multiple pages, but the total number depends on the specified depth and the structure of the linked content.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
wolfyy970
Star
0
Language
TypeScript
License
MIT license

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