Claude-skill-registry audio-analyzer
Comprehensive audio analysis with waveform visualization, spectrogram, BPM detection, key detection, frequency analysis, and loudness metrics.
install
source · Clone the upstream repo
git clone https://github.com/majiayu000/claude-skill-registry
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/majiayu000/claude-skill-registry "$T" && mkdir -p ~/.claude/skills && cp -r "$T/skills/data/audio-analyzer" ~/.claude/skills/majiayu000-claude-skill-registry-audio-analyzer && rm -rf "$T"
manifest:
skills/data/audio-analyzer/SKILL.mdsource content
Audio Analyzer
A comprehensive toolkit for analyzing audio files. Extract detailed information about audio including tempo, musical key, frequency content, loudness metrics, and generate professional visualizations.
Quick Start
from scripts.audio_analyzer import AudioAnalyzer # Analyze an audio file analyzer = AudioAnalyzer("song.mp3") analyzer.analyze() # Get all analysis results results = analyzer.get_results() print(f"BPM: {results['tempo']['bpm']}") print(f"Key: {results['key']['key']} {results['key']['mode']}") # Generate visualizations analyzer.plot_waveform("waveform.png") analyzer.plot_spectrogram("spectrogram.png") # Full report analyzer.save_report("analysis_report.json")
Features
- Tempo/BPM Detection: Accurate beat tracking with confidence score
- Key Detection: Musical key and mode (major/minor) identification
- Frequency Analysis: Spectrum, dominant frequencies, frequency bands
- Loudness Metrics: RMS, peak, LUFS, dynamic range
- Waveform Visualization: Multi-channel waveform plots
- Spectrogram: Time-frequency visualization with customization
- Chromagram: Pitch class visualization for harmonic analysis
- Beat Grid: Visual beat markers overlaid on waveform
- Export Formats: JSON report, PNG/SVG visualizations
API Reference
Initialization
# From file analyzer = AudioAnalyzer("audio.mp3") # With custom sample rate analyzer = AudioAnalyzer("audio.wav", sr=44100)
Analysis Methods
# Run full analysis analyzer.analyze() # Individual analyses analyzer.analyze_tempo() # BPM and beat positions analyzer.analyze_key() # Musical key detection analyzer.analyze_loudness() # RMS, peak, LUFS analyzer.analyze_frequency() # Spectrum analysis analyzer.analyze_dynamics() # Dynamic range
Results Access
# Get all results as dict results = analyzer.get_results() # Individual results tempo = analyzer.get_tempo() # {'bpm': 120, 'confidence': 0.85, 'beats': [...]} key = analyzer.get_key() # {'key': 'C', 'mode': 'major', 'confidence': 0.72} loudness = analyzer.get_loudness() # {'rms_db': -14.2, 'peak_db': -0.5, 'lufs': -14.0} freq = analyzer.get_frequency() # {'dominant_freq': 440, 'spectrum': [...]}
Visualization Methods
# Waveform analyzer.plot_waveform( output="waveform.png", figsize=(12, 4), color="#1f77b4", show_rms=True ) # Spectrogram analyzer.plot_spectrogram( output="spectrogram.png", figsize=(12, 6), cmap="magma", # viridis, plasma, inferno, magma freq_scale="log", # linear, log, mel max_freq=8000 # Hz ) # Chromagram (pitch classes) analyzer.plot_chromagram( output="chromagram.png", figsize=(12, 4) ) # Onset strength / beat grid analyzer.plot_beats( output="beats.png", figsize=(12, 4), show_strength=True ) # Combined dashboard analyzer.plot_dashboard( output="dashboard.png", figsize=(14, 10) )
Export
# JSON report with all analysis analyzer.save_report("report.json") # Summary text summary = analyzer.get_summary() print(summary)
Analysis Details
Tempo Detection
Uses beat tracking algorithm to detect:
- BPM: Beats per minute (tempo)
- Beat positions: Timestamps of detected beats
- Confidence: Reliability score (0-1)
tempo = analyzer.get_tempo() # { # 'bpm': 128.0, # 'confidence': 0.89, # 'beats': [0.0, 0.469, 0.938, 1.406, ...], # seconds # 'beat_count': 256 # }
Key Detection
Analyzes harmonic content to identify:
- Key: Root note (C, C#, D, etc.)
- Mode: Major or minor
- Confidence: Detection confidence
- Key profile: Correlation with each key
key = analyzer.get_key() # { # 'key': 'A', # 'mode': 'minor', # 'confidence': 0.76, # 'profile': {'C': 0.12, 'C#': 0.08, ...} # }
Loudness Metrics
Comprehensive loudness analysis:
- RMS dB: Root mean square level
- Peak dB: Maximum sample level
- LUFS: Integrated loudness (broadcast standard)
- Dynamic Range: Difference between loud and quiet sections
loudness = analyzer.get_loudness() # { # 'rms_db': -14.2, # 'peak_db': -0.3, # 'lufs': -14.0, # 'dynamic_range_db': 12.5, # 'crest_factor': 8.2 # }
Frequency Analysis
Spectrum analysis including:
- Dominant frequency: Strongest frequency component
- Frequency bands: Energy in bass, mid, treble
- Spectral centroid: "Brightness" of audio
- Spectral rolloff: Frequency below which 85% of energy exists
freq = analyzer.get_frequency() # { # 'dominant_freq': 440.0, # 'spectral_centroid': 2150.3, # 'spectral_rolloff': 4200.5, # 'bands': { # 'sub_bass': -28.5, # 20-60 Hz # 'bass': -18.2, # 60-250 Hz # 'low_mid': -12.1, # 250-500 Hz # 'mid': -10.8, # 500-2000 Hz # 'high_mid': -14.3, # 2000-4000 Hz # 'high': -22.1 # 4000-20000 Hz # } # }
CLI Usage
# Full analysis with all visualizations python audio_analyzer.py --input song.mp3 --output-dir ./analysis/ # Just tempo and key python audio_analyzer.py --input song.mp3 --analyze tempo key --output report.json # Generate specific visualization python audio_analyzer.py --input song.mp3 --plot spectrogram --output spec.png # Dashboard view python audio_analyzer.py --input song.mp3 --dashboard --output dashboard.png # Batch analyze directory python audio_analyzer.py --input-dir ./songs/ --output-dir ./reports/
CLI Arguments
| Argument | Description | Default |
|---|---|---|
| Input audio file | Required |
| Directory of audio files | - |
| Output file path | - |
| Output directory | |
| Analysis types: tempo, key, loudness, frequency, all | |
| Plot type: waveform, spectrogram, chromagram, beats, dashboard | - |
| Output format: json, txt | |
| Sample rate for analysis | |
Examples
Song Analysis
analyzer = AudioAnalyzer("track.mp3") analyzer.analyze() print(f"Tempo: {analyzer.get_tempo()['bpm']:.1f} BPM") print(f"Key: {analyzer.get_key()['key']} {analyzer.get_key()['mode']}") print(f"Loudness: {analyzer.get_loudness()['lufs']:.1f} LUFS") analyzer.plot_dashboard("track_analysis.png")
Podcast Quality Check
analyzer = AudioAnalyzer("podcast.mp3") analyzer.analyze_loudness() loudness = analyzer.get_loudness() if loudness['lufs'] > -16: print("Warning: Audio may be too loud for podcast standards") elif loudness['lufs'] < -20: print("Warning: Audio may be too quiet") else: print("Loudness is within podcast standards (-16 to -20 LUFS)")
Batch Analysis
import os from scripts.audio_analyzer import AudioAnalyzer results = [] for filename in os.listdir("./songs"): if filename.endswith(('.mp3', '.wav', '.flac')): analyzer = AudioAnalyzer(f"./songs/{filename}") analyzer.analyze() results.append({ 'file': filename, 'bpm': analyzer.get_tempo()['bpm'], 'key': f"{analyzer.get_key()['key']} {analyzer.get_key()['mode']}", 'lufs': analyzer.get_loudness()['lufs'] }) # Sort by BPM for DJ set results.sort(key=lambda x: x['bpm'])
Supported Formats
Input formats (via librosa/soundfile):
- MP3
- WAV
- FLAC
- OGG
- M4A/AAC
- AIFF
Output formats:
- JSON (analysis report)
- PNG (visualizations)
- SVG (visualizations)
- TXT (summary)
Dependencies
librosa>=0.10.0 soundfile>=0.12.0 matplotlib>=3.7.0 numpy>=1.24.0 scipy>=1.10.0
Limitations
- Key detection works best with melodic content (less accurate for drums/percussion)
- BPM detection may struggle with free-tempo or complex time signatures
- Very short clips (<5 seconds) may have reduced accuracy
- LUFS calculation is simplified (not full ITU-R BS.1770-4)