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import-audio

bitwize-music-studio
Actualizado Yesterday
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Esta habilidad de Claude organiza archivos de audio descargados moviéndolos a la ubicación correcta del álbum con una estructura de ruta apropiada. Maneja archivos WAV o MP3 de fuentes como Suno, utilizando argumentos para la ruta del archivo, el nombre del álbum y un identificador opcional de pista. La habilidad aprovecha herramientas como Bash y un MCP de música para automatizar el proceso de organización de archivos.

Instalación rápida

Claude Code

Recomendado
Principal
npx skills add bitwize-music-studio/claude-ai-music-skills -a claude-code
Comando PluginAlternativo
/plugin add https://github.com/bitwize-music-studio/claude-ai-music-skills
Git CloneAlternativo
git clone https://github.com/bitwize-music-studio/claude-ai-music-skills.git ~/.claude/skills/import-audio

Copia y pega este comando en Claude Code para instalar esta habilidad

Documentación

Your Task

Input: $ARGUMENTS

Import an audio file (WAV, MP3, etc.) to the correct album location based on config.


Import Audio Skill

You move audio files to the correct location in the user's audio directory.

Step 1: Parse Arguments

Expected format: <file-path> <album-name> [track-slug]

The track-slug is optional — only needed for stems zip imports when the track can't be inferred from the filename.

Examples:

  • ~/Downloads/track.wav sample-album
  • ~/Downloads/03-t-day-beach.wav sample-album
  • ~/Downloads/stems.zip sample-album 01-first-taste

If arguments are missing, ask:

Usage: /import-audio <file-path> <album-name> [track-slug]

Examples:
  /import-audio ~/Downloads/track.wav sample-album
  /import-audio ~/Downloads/stems.zip sample-album 01-first-taste

Step 2: Resolve Audio Path via MCP

  1. Call resolve_path("audio", album_slug) — returns the full audio directory path
  2. The resolved path uses the mirrored structure: {audio_root}/artists/{artist}/albums/{genre}/{album}/

Example result: ~/bitwize-music/audio/artists/bitwize/albums/hip-hop/sample-album/

CRITICAL: Always use resolve_path — never construct paths manually.

Step 3: Detect File Type

Check the file extension and whether it's a stems zip:

File TypeAction
.wav, .mp3, .flac, .ogg, .m4aMove to album audio dir (Step 4)
.zip (stems)Extract to per-track stems subfolder (Step 4b)

How to identify a stems zip: The user will say "stems" or the zip contains files like 0 Lead Vocals.wav, 1 Backing Vocals.wav, etc.

Step 4: Create Directory and Move File

mkdir -p {resolved_path}
mv "{source_file}" "{resolved_path}/{filename}"

Step 4b: Import Stems Zip

Stems must go into per-track subfolders to prevent filename collisions (every track has 0 Lead Vocals.wav, etc.):

{resolved_path}/
  01-first-taste.wav
  02-sugar-high.wav
  stems/
    01-first-taste/
      0 Lead Vocals.wav
      1 Backing Vocals.wav
      2 Drums.wav
      ...
    02-sugar-high/
      0 Lead Vocals.wav
      1 Backing Vocals.wav
      ...

Workflow:

  1. Determine the track slug from one of:
    • The zip filename if it matches a track pattern (e.g., 01-first-taste-stems.zip01-first-taste)
    • The user specifying which track (e.g., /import-audio stems.zip sample-album 01-first-taste)
    • If neither: Ask the user which track the stems belong to
  2. Extract into the per-track subfolder:
    mkdir -p {resolved_path}/stems/{track-slug}
    unzip "{source_file}" -d "{resolved_path}/stems/{track-slug}"
    
  3. Update track metadata: Call update_track_field(album_slug, track_slug, "stems", "Yes")

Argument format for stems: <zip-path> <album-name> [track-slug]

Step 5: Confirm

Report:

Moved: {source_file}
   To: {resolved_path}/{filename}

For stems:

Extracted stems: {source_file}
       To: {resolved_path}/stems/{track-slug}/
    Files: {count} stem files extracted
  Updated: {track-slug} stems → Yes

Error Handling

Source file doesn't exist:

Error: File not found: {source_file}

Config file missing:

Error: Config not found at ~/.bitwize-music/config.yaml
Run /configure to set up.

File already exists at destination:

Warning: File already exists at destination.
Overwrite? (The original was not moved)

MP3 Files

Suno allows downloading in both WAV and MP3 formats. Always prefer WAV for mastering quality.

If the user provides an MP3 file:

  1. Accept the MP3 and import it normally (same path logic)
  2. Warn the user:
Note: This is an MP3 file. For best mastering results, download the WAV
version from Suno instead. MP3 compression removes audio data that can't
be recovered during mastering.

If WAV isn't available, this MP3 will work but mastering quality may be limited.
  1. Import the file to the same destination path as WAV files

Supported formats: WAV (preferred), MP3, FLAC, OGG, M4A


Examples

/import-audio ~/Downloads/03-t-day-beach.wav sample-album

Config has:

paths:
  audio_root: ~/bitwize-music/audio
artist:
  name: bitwize

Result:

Moved: ~/Downloads/03-t-day-beach.wav
   To: ~/bitwize-music/audio/artists/bitwize/albums/hip-hop/sample-album/03-t-day-beach.wav

Stems import example

/import-audio ~/Downloads/stems.zip sample-album 01-first-taste

Result:

Extracted stems: ~/Downloads/stems.zip
       To: ~/bitwize-music/audio/artists/bitwize/albums/hip-hop/sample-album/stems/01-first-taste/
    Files: 5 stem files extracted
  Updated: 01-first-taste stems → Yes

Common Mistakes

❌ Don't: Manually read config and construct paths

Wrong:

cat ~/.bitwize-music/config.yaml
mv file.wav ~/music-projects/audio/artists/bitwize/albums/electronic/sample-album/

Right:

# Use MCP to resolve the correct path
resolve_path("audio", album_slug) → returns full path with artist folder

Why it matters: resolve_path reads config, resolves variables, and includes the artist folder automatically. No manual config parsing or path construction needed.

❌ Don't: Mix up content_root and audio_root

Path comparison:

  • Content: {content_root}/artists/{artist}/albums/{genre}/{album}/ (markdown, lyrics)
  • Audio: {audio_root}/artists/{artist}/albums/{genre}/{album}/ (WAV files, stems)
  • Documents: {documents_root}/artists/{artist}/albums/{genre}/{album}/ (PDFs, research)

Use resolve_path with the appropriate path_type ("content", "audio", "documents") to get the right path.

Repositorio GitHub

bitwize-music-studio/claude-ai-music-skills
Ruta: skills/import-audio
0
ai-musicai-music-toolsaudio-masteringclaudeclaude-codeclaude-code-plugin

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