JinaAI Reader
Extracts web content using the Jina.ai Reader API.
mcp-jinaai-reader
⚠️ Notice
This repository is no longer maintained.
The functionality of this tool is now available in mcp-omnisearch, which combines multiple MCP tools in one unified package.
Please use mcp-omnisearch instead.
A Model Context Protocol (MCP) server for integrating Jina.ai's Reader API with LLMs. This server provides efficient and comprehensive web content extraction capabilities, optimized for documentation and web content analysis.
Features
- 📚 Advanced web content extraction through Jina.ai Reader API
- 🚀 Fast and efficient content retrieval
- 📄 Complete text extraction with preserved structure
- 🔄 Clean format optimized for LLMs
- 🌐 Support for various content types including documentation
- 🏗️ Built on the Model Context Protocol
Configuration
This server requires configuration through your MCP client. Here are examples for different environments:
Cline Configuration
Add this to your Cline MCP settings:
{
"mcpServers": {
"jinaai-reader": {
"command": "node",
"args": ["-y", "mcp-jinaai-reader"],
"env": {
"JINAAI_API_KEY": "your-jinaai-api-key"
}
}
}
}
Claude Desktop with WSL Configuration
For WSL environments, add this to your Claude Desktop configuration:
{
"mcpServers": {
"jinaai-reader": {
"command": "wsl.exe",
"args": [
"bash",
"-c",
"JINAAI_API_KEY=your-jinaai-api-key npx mcp-jinaai-reader"
]
}
}
}
Environment Variables
The server requires the following environment variable:
JINAAI_API_KEY: Your Jina.ai API key (required)
API
The server implements a single MCP tool with configurable parameters:
read_url
Convert any URL to LLM-friendly text using Jina.ai Reader.
Parameters:
url(string, required): URL to processno_cache(boolean, optional): Bypass cache for fresh results. Defaults to falseformat(string, optional): Response format ("json" or "stream"). Defaults to "json"timeout(number, optional): Maximum time in seconds to wait for webpage loadtarget_selector(string, optional): CSS selector to focus on specific elementswait_for_selector(string, optional): CSS selector to wait for specific elementsremove_selector(string, optional): CSS selector to exclude specific elementswith_links_summary(boolean, optional): Gather all links at the end of responsewith_images_summary(boolean, optional): Gather all images at the end of responsewith_generated_alt(boolean, optional): Add alt text to images lacking captionswith_iframe(boolean, optional): Include iframe content in response
Development
Setup
- Clone the repository
- Install dependencies:
npm install
- Build the project:
npm run build
- Run in development mode:
npm run dev
Publishing
- Update version in package.json
- Build the project:
npm run build
- Publish to npm:
npm publish
Contributing
Contributions are welcome! Please feel free to submit a Pull Request.
License
MIT License - see the LICENSE file for details.
Acknowledgments
- Built on the Model Context Protocol
- Powered by Jina.ai Reader API
Server Terkait
Bright Data
sponsorDiscover, extract, and interact with the web - one interface powering automated access across the public internet.
infomate-mcp
MCP server that fetches and summarizes tech news from infomate.club/vas3k
YouTube Transcript
A zero-setup server to extract transcripts from YouTube videos on any platform.
Steel Puppeteer
Provides browser automation capabilities using Puppeteer and Steel, configurable for local or cloud instances.
Scrapezy
Turn websites into datasets with Scrapezy
Crypto News MCP Server
Fetches the latest cryptocurrency news and converts article content from HTML to Markdown.
Selenium MCP Server
Control web browsers using the Selenium WebDriver for automation and testing.
MCP RSS Crawler
Fetches and caches RSS feeds using a SQLite database for use with LLMs via the MCP protocol.
YouTube Transcript MCP Server
A high-performance MCP server for fetching YouTube video transcripts, with support for caching, rate limiting, and proxy rotation.
YouTube MCP Server
Extract metadata and captions from YouTube videos and convert them to markdown.
just-every/mcp-screenshot-website-fast
High-quality screenshot capture optimized for Claude Vision API. Automatically tiles full pages into 1072x1072 chunks (1.15 megapixels) with configurable viewports and wait strategies for dynamic content.