Anki MCP Server Details

A Model Context Protocol (MCP) server that enables AI assistants to interact with Anki, the spaced repetition flashcard application. The Anki MCP Server allows AI models to access Anki's card data, enabling features like automated flashcard creation, review, and management.

Use Case

The Anki MCP Server enables AI assistants to interact with Anki, allowing for automated flashcard creation, review, and management. This can be useful for applications such as language learning, studying, and memory improvement. For example, an AI assistant can use the Anki MCP Server to create new flashcards based on user input, or to review existing cards and provide feedback.

Available Tools (1)

Examples & Tutorials

Example Use Cases


  • Automated flashcard creation: Use the Anki MCP Server to create new flashcards based on user input, such as text or images.

  • Automated review: Use the Anki MCP Server to review existing cards and provide feedback to the user.

  • Integration with AI models: Integrate the Anki MCP Server with AI models to enable features like automated flashcard creation and review.
  • Code Example

    const { AnkiMCPServer } = require('anki-mcp-server');

    const server = new AnkiMCPServer();

    // Create a new flashcard
    server.createCard({
    front: 'What is the capital of France?',
    back: 'Paris'
    });

    // Review an existing card
    server.reviewCard({
    cardId: 123
    });

    Installation Guide

  • Install Node.js and Anki on your system.

  • Clone the Anki MCP Server repository.

  • Run npm install to install dependencies.

  • Start the server using node src/index.js.
  • Integration Guides

    Frequently Asked Questions

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    Repository Stats
    Important Notes

    The Anki MCP Server is a third-party, unofficial project and is not affiliated with Anki or the Model Context Protocol.

    Prerequisites

    Anki and Node.js must be installed and configured before using the Anki MCP Server.

    Details
    Last Updated1/1/2026
    Websiteankimcp.ai
    SourceGitHub

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