MCP cover image
See in Github
2025-04-14

Serveur MCP Raindrop

8

Github Watches

0

Github Forks

8

Github Stars

Raindrop.io MCP Server

This project provides a Model Context Protocol (MCP) server for interacting with the Raindrop.io bookmarking service. It allows Language Models (LLMs) and other AI agents to access and manage your Raindrop.io data through the MCP standard.

npm version

Features

  • CRUD Operations: Create, Read, Update, and Delete collections and bookmarks.
  • Advanced Search: Filter bookmarks by various criteria like tags, domain, type, creation date, etc.
  • Tag Management: List, rename, merge, and delete tags.
  • Highlight Access: Retrieve text highlights from bookmarks.
  • Collection Management: Reorder, expand/collapse, merge, and remove empty collections.
  • File Upload: Upload files directly to Raindrop.io.
  • Reminders: Set reminders for specific bookmarks.
  • Import/Export: Initiate and check the status of bookmark imports and exports.
  • Trash Management: Empty the trash.
  • MCP Compliance: Exposes Raindrop.io functionalities as MCP resources and tools.
  • Streaming Support: Provides real-time SSE (Server-Sent Events) endpoints for streaming bookmark updates.
  • Built with TypeScript: Strong typing for better maintainability.
  • Uses Axios: For making requests to the Raindrop.io API.
  • Uses Zod: For robust schema validation of API parameters and responses.
  • Uses MCP SDK: Leverages the official @modelcontextprotocol/sdk.

Prerequisites

  • Node.js (v18 or later recommended) or Bun
  • A Raindrop.io account
  • A Raindrop.io API Access Token (create one in your Raindrop.io settings)

Installation and Usage

Using NPX (Recommended)

You can run the server directly using npx without installing it:

# Set your API token as an environment variable
export RAINDROP_ACCESS_TOKEN=YOUR_RAINDROP_ACCESS_TOKEN

# Run the server
npx @adeze/raindrop-mcp

From Source

  1. Clone the repository:

    git clone https://github.com/adeze/raindrop-mcp.git
    cd raindrop-mcp
    
  2. Install dependencies:

    bun install
    
  3. Configure Environment Variables: Create a .env file in the root directory by copying the example:

    cp .env.example .env
    

    Edit the .env file and add your Raindrop.io API Access Token:

    RAINDROP_ACCESS_TOKEN=YOUR_RAINDROP_ACCESS_TOKEN
    
  4. Build and Run:

    bun run build
    bun start
    

The server uses standard input/output (stdio) for communication by default, listening for requests on stdin and sending responses to stdout.

Usage with MCP Clients

Connect your MCP client (like an LLM agent) to the running server process via stdio. The server exposes the following resource URIs:

  • collections://all - All collections
  • collections://{parentId}/children - Child collections
  • tags://all - All tags
  • tags://collection/{collectionId} - Tags filtered by collection
  • highlights://all - All highlights
  • highlights://raindrop/{raindropId} - Highlights for a specific bookmark
  • highlights://collection/{collectionId} - Highlights filtered by collection
  • bookmarks://collection/{collectionId} - Bookmarks in a collection
  • bookmarks://raindrop/{id} - Specific bookmark by ID
  • user://info - User information
  • user://stats - User statistics

It also provides numerous tools for operational tasks such as collection management, bookmark operations, tag management, highlight operations, and user operations. For a detailed list of all available tools, refer to CLAUDE.md or check src/services/mcp.service.ts for definitions of resources and tools.

MCP Configuration

To use the Raindrop MCP server with your AI assistant or MCP-compatible client, you can add the following configuration to your .mcp.json file:

"raindrop": {
  "command": "npx",
  "args": [
    "@adeze/raindrop-mcp"
  ],
  "env": {
    "RAINDROP_ACCESS_TOKEN": "YOUR_RAINDROP_API_TOKEN"
  }
}

For Claude Code or other MCP-compatible clients, this will register the Raindrop server under the name "raindrop" and make all of its resources and tools available to your AI assistant.

Development

  • Testing: bun test
  • Type checking: bun run type-check
  • Build: bun run build
  • Development: bun run dev
  • Debug: bun run debug or bun run inspector
  • HTTP server: bun run start:http

Contributing

Contributions are welcome! Please open an issue or submit a pull request.

License

This project is licensed under the MIT License - see the LICENSE file for details.

相关推荐

  • Aurity Ltd
  • Create and Publish Business Websites in seconds. AI will gather all the details about your website and generate link to your website.

  • Convincible Ltd
  • You're in a stone cell – can you get out? A classic choose-your-adventure interactive fiction game, based on a meticulously-crafted playbook. With a medieval fantasy setting, infinite choices and outcomes, and dice!

  • John Rafferty
  • Text your favorite pet, after answering 10 questions about their everyday lives!

  • Ian O'Connell
  • Provide players' names or enter Quickstart to start the game!

  • analogchat.com
  • Efficient Spotify assistant for personalized music data.

  • Matthieu Savioux
  • Evaluates language quality of texts, responds with a numerical score between 50-150.

  • seabiscuit.ai
  • Discover A More Robust Business: Craft tailored value proposition statements, develop a comprehensive business model canvas, conduct detailed PESTLE analysis, and gain strategic insights on enhancing business model elements like scalability, cost structure, and market competition strategies. (v1.18)

  • n8n-io
  • Plateforme d'automatisation de workflow à code équitable avec des capacités d'IA natives. Combinez le bâtiment visuel avec du code personnalisé, de l'auto-hôte ou du cloud, 400+ intégrations.

  • WangRongsheng
  • 🧑‍🚀 全世界最好的 LLM 资料总结 (数据处理、模型训练、模型部署、 O1 模型、 MCP 、小语言模型、视觉语言模型) | Résumé des meilleures ressources LLM du monde.

  • av
  • Exécutez sans effort LLM Backends, API, Frontends et Services avec une seule commande.

  • metorial
  • Versions conteneurisées de centaines de serveurs MCP 📡 🧠 🧠

  • langgenius
  • Azure
  • Ce référentiel est pour le développement du serveur MCP Azure, apportant la puissance d'Azure à vos agents.

  • alibaba
  • 1Panel-dev
  • 🔥 1Panel fournit une interface Web intuitive et un serveur MCP pour gérer des sites Web, des fichiers, des conteneurs, des bases de données et des LLM sur un serveur Linux.

  • caio-moliveira
  • Ce projet a été créé pour démontrer comment nous pouvons nous connecter avec différents protocoles de contexte de modèle (MCP).

  • superiorlu
  • 🤖 Recueillir des référentiels, des outils, des sites Web, des articles et des tutoriels pratiques sur l'IA. 实用的 ai 百宝箱 💎

  • rulego
  • ⛓️RULEGO est un cadre de moteur de règle d'orchestration des composants de nouvelle génération légère, intégrée, intégrée et de nouvelle génération pour GO.

  • Byaidu
  • PDF Traduction de papier scientifique avec formats conservés - 基于 AI 完整保留排版的 PDF 文档全文双语翻译 , 支持 Google / Deepl / Olllama / Openai 等服务 , 提供 CLI / GUI / MCP / DOCKER / ZOTERO

    Reviews

    5 (0)