YouTube Music MCP Server

Created By
mondweepa year ago
This is a MCP (Model Context Protocol) server that you can use with Cline through Visual Studio Code and ask songs to be played using Youtube Music
Overview

What is YouTube Music MCP Server?

The YouTube Music MCP Server is a Model Context Protocol (MCP) server that allows AI models to control YouTube Music playback through Google Chrome, enabling users to search for and play songs using AI assistants.

How to use YouTube Music MCP Server?

To use the server, install the necessary dependencies, build the server, and configure it with your AI assistant. You can then search for songs by name or artist and play them directly in Google Chrome.

Key features of YouTube Music MCP Server?

  • Search for songs on YouTube Music
  • Play songs directly in Google Chrome
  • Support for searching by song name and artist name
  • Error handling and logging
  • Cross-platform support, primarily for macOS

Use cases of YouTube Music MCP Server?

  1. Integrating AI assistants with YouTube Music for seamless playback.
  2. Automating music playback based on user queries.
  3. Enhancing user experience by allowing voice commands to control music.

FAQ from YouTube Music MCP Server?

  • Can I use this server on Windows?

Yes! The server supports cross-platform usage, including Windows.

  • Is there a specific browser required?

The server is designed to work with Google Chrome.

  • How do I debug the server?

You can use the MCP Inspector for debugging, which provides tools accessible via a browser.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
mondweep
Star
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Language
-
License
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