Trakt

Created By
wwiensa year ago
Overview

What is Trakt?

Trakt is an MCP server that connects AI language models to the Trakt.tv API, enabling access to real-time entertainment data and personal viewing history.

How to use Trakt?

To use Trakt, set up the server by cloning the repository, installing dependencies, and running the server. Once operational, you can interact with it through AI assistants like Claude to fetch entertainment data.

Key features of Trakt?

  • Access to trending and popular shows and movies.
  • Personal viewing history tracking and management.
  • Real-time data fetching from Trakt's API.
  • Simple authentication process for user-specific data access.

Use cases of Trakt?

  1. Fetching trending shows and movies.
  2. Tracking personal viewing habits and history.
  3. Sharing viewing activity on social media platforms.
  4. Getting personalized recommendations based on viewing history.

FAQ from Trakt?

  • What is the purpose of Trakt?

Trakt serves as a bridge between AI models and entertainment data, allowing for real-time access to viewing habits and recommendations.

  • How do I authenticate?

Authentication is done through a device code flow, where you authorize the app on the Trakt website.

  • Can I track my personal viewing history?

Yes! Trakt allows you to view your watched shows and movies, including last-watched dates and play counts.

Server Config

{
  "mcpServers": {
    "trakt": {
      "command": "python.exe",
      "args": [
        "server.py"
      ],
      "host": "127.0.0.1",
      "port": 5000,
      "timeout": 30000
    }
  }
}
Project Info
Created At
a year ago
Updated At
a year ago
Author Name
wwiens
Star
-
Language
-
License
-

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