MCP DuckDuckResearch

Created By
bkataru-workshopa year ago
mcp server with duckducksearch, web2md, and web2photo
Overview

what is MCP DuckDuckResearch?

MCP DuckDuckResearch is an MCP (Model Context Protocol) server that integrates DuckDuckGo search capabilities with web page content extraction and screenshot functionality, allowing users to programmatically access and manipulate web content.

how to use MCP DuckDuckResearch?

To use MCP DuckDuckResearch, clone the repository, install the dependencies, and configure the MCP server in your application settings. You can then utilize various tools to search the web, extract content, and take screenshots.

key features of MCP DuckDuckResearch?

  • 🔍 DuckDuckGo Search: Perform web searches using DuckDuckGo.
  • 📄 Content Extraction: Extract web page content as Markdown.
  • 📸 Screenshot Capture: Capture optimized screenshots of web pages.
  • Robust Error Handling: Built-in error handling for bot detection and content validation.
  • 🔒 Safe Search Options: Configurable safe search levels for content filtering.

use cases of MCP DuckDuckResearch?

  1. Automating web searches and content extraction for research.
  2. Generating Markdown documentation from web pages.
  3. Taking screenshots for visual documentation or reporting.

FAQ from MCP DuckDuckResearch?

  • Can MCP DuckDuckResearch handle all types of web pages?

Yes! It can extract content from most web pages, but some sites may have restrictions.

  • Is MCP DuckDuckResearch free to use?

Yes! The project is open-source and free to use.

  • What are the prerequisites for running MCP DuckDuckResearch?

You need Node.js (v18 or higher) and npm installed on your system.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
bkataru-workshop
Star
0
Language
TypeScript
License
-

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