Spotify Playlist Curator MCP Server

Spotify Playlist Curator MCP Server

By lechiffre1 GitHub

MCP server that can analyze your Spotify playlists and use Claude to recommend songs based on the mood, vibe, BPM, and other musical attributes.

spotify playlist-curator
Overview

What is Spotify Playlist Curator MCP Server?

Spotify Playlist Curator MCP Server is a tool that analyzes your Spotify playlists and uses Claude AI to recommend songs based on mood, vibe, BPM, and other musical attributes.

How to use Spotify Playlist Curator MCP Server?

To use the server, clone the repository, install dependencies, set up your Spotify Developer credentials, and start the server. Authenticate with your Spotify account to access your playlists and use the available MCP methods.

Key features of Spotify Playlist Curator MCP Server?

  • Connect to your Spotify account and access your playlists
  • Analyze audio features of tracks in your playlists
  • Generate summaries of playlist mood, energy, and tempo
  • Get song recommendations from Claude AI
  • Search for tracks and create new playlists

Use cases of Spotify Playlist Curator MCP Server?

  1. Curating playlists based on specific moods or vibes.
  2. Discovering new music that fits your existing playlists.
  3. Enhancing your listening experience with AI-generated recommendations.

FAQ from Spotify Playlist Curator MCP Server?

  • Can I use this server without a Spotify account?

No, you need a Spotify account to authenticate and access your playlists.

  • Is there a limit to the number of playlists I can analyze?

No, you can analyze as many playlists as you have in your Spotify account.

  • What programming language is this server built with?

The server is built with JavaScript and requires Node.js.

Content

Spotify Playlist Curator MCP Server

An MCP server that helps curate Spotify playlists by analyzing your existing tracks and using Claude AI to recommend songs based on mood, vibe, BPM, and other musical attributes.

Features

  • Connect to your Spotify account and access your playlists
  • Analyze the audio features of tracks in your playlists
  • Generate a summary of playlist mood, energy, tempo, and other characteristics
  • Get song recommendations from Claude AI based on the playlist analysis
  • Search for tracks on Spotify
  • Add recommended tracks to your playlists
  • Create new playlists

Setup

Prerequisites

  • Node.js (v14 or higher)
  • A Spotify Developer account and registered application
  • Claude access via MCP (Machine Conversation Protocol)

Installation

  1. Clone this repository:

    git clone https://github.com/lechiffre1/Spotify-Playlist-Curator-MCP-Server.git
    cd Spotify-Playlist-Curator-MCP-Server
    
  2. Install dependencies:

    npm install
    
  3. Create a .env file based on the provided .env.example:

    cp .env.example .env
    
  4. Set up your Spotify Developer credentials:

    • Go to Spotify Developer Dashboard
    • Create a new application
    • Add http://localhost:3000/callback as a Redirect URI
    • Copy your Client ID and Client Secret to the .env file
  5. Start the server:

    npm start
    

Usage

Authentication

When you start the server, you'll need to authenticate with Spotify first:

  1. Visit http://localhost:3000/login in your browser
  2. Log in with your Spotify account and authorize the application
  3. After successful authentication, you can close the browser window and return to your MCP client

MCP Methods

The following MCP methods are available:

getPlaylists

Returns a list of your Spotify playlists.

const response = await client.getPlaylists();

getPlaylistDetails

Gets detailed information about a specific playlist, including track analysis.

const response = await client.getPlaylistDetails({
  playlistId: "your_playlist_id"
});

getClaudeRecommendations

Gets song recommendations from Claude AI based on playlist analysis.

const response = await client.getClaudeRecommendations({
  playlistId: "your_playlist_id",
  count: 10 // Optional, defaults to 10
});

addRecommendationsToPlaylist

Adds recommended tracks to a playlist.

const response = await client.addRecommendationsToPlaylist({
  playlistId: "your_playlist_id",
  trackUris: ["spotify:track:id1", "spotify:track:id2", ...]
});

searchTracks

Searches for tracks on Spotify.

const response = await client.searchTracks({
  query: "search query",
  limit: 10 // Optional, defaults to 10
});

createPlaylist

Creates a new Spotify playlist.

const response = await client.createPlaylist({
  name: "My New Playlist",
  description: "Created by Spotify Playlist Curator", // Optional
  isPublic: false // Optional, defaults to false
});

Example Client Usage

import { createClient } from '@anthropic-ai/mcp-client';

async function main() {
  // Create MCP client
  const client = createClient({
    serverUrl: 'http://localhost:3000',
    anthropicApiKey: 'your_anthropic_api_key' // Required for Claude integration
  });

  // 1. Get user playlists
  const playlists = await client.getPlaylists();
  console.log('Your playlists:', playlists);

  // 2. Select a playlist and get its details
  const playlistId = playlists.playlists[0].id;
  const playlistDetails = await client.getPlaylistDetails({ playlistId });
  console.log('Playlist summary:', playlistDetails.summary);

  // 3. Get recommendations from Claude
  const recommendations = await client.getClaudeRecommendations({ playlistId });
  console.log('Claude recommendations:', recommendations.claudeRecommendations);

  // 4. Add recommendations to the playlist
  const trackUris = recommendations.claudeRecommendations
    .filter(track => track.matched)
    .map(track => track.uri);
  
  if (trackUris.length > 0) {
    const result = await client.addRecommendationsToPlaylist({ playlistId, trackUris });
    console.log('Added recommendations:', result);
  }
}

main().catch(console.error);

License

MIT

No tools information available.

Mirror of

spotify mcp-server
View Details
spotify-mcp
spotify-mcp by spotify-mcp

This MCP allows an LLM to play and use Spotify.

spotify llm-integration spotify mcp
View Details