mcp-jinaai-grounding
⚠️ 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This repository is no longer maintained.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 Grounding API with LLMs. This server provides efficient and comprehensive web content grounding capabilities, optimized for enhancing LLM responses with factual, real-time web content.
Features
- 🌐 Advanced web content grounding through Jina.ai Grounding API
- 🚀 Real-time content verification and fact-checking
- 📚 Comprehensive web content analysis
- 🔄 Clean format optimized for LLMs
- 🎯 Precise content relevance scoring
- 🏗️ 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-grounding": {
"command": "node",
"args": ["-y", "mcp-jinaai-grounding"],
"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-grounding": {
"command": "wsl.exe",
"args": [
"bash",
"-c",
"JINAAI_API_KEY=your-jinaai-api-key npx mcp-jinaai-grounding"
]
}
}
}
Environment Variables
The server requires the following environment variable:
JINAAI_API_KEY: Your Jina.ai API key (required)
API
The server implements MCP tools for grounding LLM responses with web content:
ground_content
Ground LLM responses with real-time web content using Jina.ai Grounding.
Parameters:
query(string, required): The text to ground with web contentno_cache(boolean, optional): Bypass cache for fresh results. Defaults to falseformat(string, optional): Response format (“json” or “text”). Defaults to “text”token_budget(number, optional): Maximum number of tokens for this requestbrowser_locale(string, optional): Browser locale for rendering contentstream(boolean, optional): Enable stream mode for large pages. Defaults to falsegather_links(boolean, optional): Gather all links at the end of response. Defaults to falsegather_images(boolean, optional): Gather all images at the end of response. Defaults to falseimage_caption(boolean, optional): Caption images in the content. Defaults to falseenable_iframe(boolean, optional): Extract content from iframes. Defaults to falseenable_shadow_dom(boolean, optional): Extract content from shadow DOM. Defaults to falseresolve_redirects(boolean, optional): Follow redirect chains to final URL. Defaults to true
Development
Setup
- Clone the repository
- Install dependencies:
pnpm install
- Build the project:
pnpm run build
- Run in development mode:
pnpm run dev
Publishing
- Update version in package.json
- Build the project:
pnpm run build
- Publish to npm:
pnpm run release
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 Grounding API
Jina.ai Grounding
Project Details
- spences10/mcp-jinaai-grounding
- mcp-jinaai-grounding
- MIT License
- Last Updated: 4/14/2025
Recomended MCP Servers
MCP server designed to help you search and analyze your photo library (iCloud)
MCP server provides Feishu related operations to AI encoding agents such as cursor 飞书MCP插件,读取文档、发送消息、合同审批、数据处理.....
Cline Browser-Use MCP
A Model Context Protocol (MCP) server for interacting with fal.ai models and services.
Short and sweet example MCP server / client implementation for Tools, Resources and Prompts.
A multi-tool MCP server implementation for agent tool management.
基于多个图片API的搜索服务和图标生成功能,专门设计用于与 Cursor MCP 服务集成。支持图片搜索、下载和AI生成图标。
Model Context Protocol Servers
A lightweight Model Context Protocol (MCP) server that enables natural language interaction with your Todoist tasks directly from...
A code reasoning MCP server, a fork of sequential-thinking
Model Context Protocol server for ActivityWatch time tracking data
MCP server for Hugging Face dataset viewer





