c-music
关于
This skill enables Claude to control Spotify playback via the `spogo` CLI, allowing developers to play/pause, skip tracks, and manage volume. It can search for and play tracks, albums, or playlists, and handle queue operations. Use it to integrate direct music control and library browsing into your development workflow with Claude.
快速安装
Claude Code
推荐npx skills add daxaur/openpaw -a claude-code/plugin add https://github.com/daxaur/openpawgit clone https://github.com/daxaur/openpaw.git ~/.claude/skills/c-music在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
What This Skill Does
Enables Claude to control Spotify playback and search music via the spogo CLI tool.
Available CLI Tool: spogo
Common Commands
# Play/pause toggle
spogo play
spogo pause
# Skip to next or previous track
spogo next
spogo prev
# Search and play a track
spogo search track "Bohemian Rhapsody" --play
# Search an album and play it
spogo search album "Dark Side of the Moon" --play
# Search playlists
spogo search playlist "chill vibes"
# Play a specific playlist by name or URI
spogo playlist play "My Playlist"
# Add current track to queue
spogo queue add "spotify:track:TRACK_ID"
# Show current playback status
spogo status
# Set volume (0-100)
spogo volume 60
# List your saved playlists
spogo playlist list
Usage Guidelines
- Use
spogo statusfirst to check what is currently playing - When searching, confirm the result with the user before playing if ambiguous
- Volume is a 0–100 integer scale
Notes
- Requires
spogoconfigured with Spotify OAuth credentials - Playback requires an active Spotify Premium account
- Spotify must be open on at least one device for commands to work
GitHub 仓库
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