PyDub Audio Automation
Automate repetitive audio tasks with Python using PyDub for batch processing, format conversion, normalization, and content assembly.
When to Use This Skill
- Processing large numbers of audio files consistently
- Converting between audio formats at scale
- Normalizing loudness across a batch of files
- Assembling intros/outros automatically to episodes
- Trimming silence or extracting segments programmatically
- Building audio pipelines for content production
Methodology Foundation
Source: PyDub Library (James Robert) + Python Audio Processing
Core Principle: "Audio operations that take hours manually can run in minutes with code." PyDub provides a high-level interface that abstracts FFmpeg's complexity, making common operations accessible to non-audio engineers.
Why This Matters: Content teams producing regular podcasts, courses, or video content spend significant time on repetitive audio tasks. Automation enables consistent quality at scale while freeing humans for creative work.
What Claude Does vs What You Decide
| Claude Does | You Decide |
|---|---|
| Structures production workflow | Final creative direction |
| Suggests technical approaches | Equipment and tool choices |
| Creates templates and checklists | Quality standards |
| Identifies best practices | Brand/voice decisions |
| Generates script outlines | Final script approval |
What This Skill Does
- Batch processes audio files - Apply same operations to hundreds of files
- Converts formats - MP3, WAV, FLAC, OGG, and more
- Normalizes loudness - Consistent levels across episodes
- Assembles content - Concatenate intros, content, outros
- Extracts segments - Trim, split, and slice audio programmatically
How to Use
Generate Processing Script
Help me write a PyDub script to [describe task].
Input files: [format, location]
Output requirements: [format, specs]
Create Batch Workflow
Create a Python script that processes all audio files in a folder:
- Input: [source folder, file type]
- Operations: [what to do]
- Output: [destination, naming convention]
Debug Audio Script
This PyDub script isn't working as expected:
[paste code]
Expected: [what you want]
Actual: [what's happening]
Instructions
When automating audio with PyDub, follow this methodology:
Step 1: Setup and Prerequisites
## Installation
# Install PyDub
pip install pydub
# FFmpeg is required (PyDub uses it under the hood)
# macOS:
brew install ffmpeg
# Ubuntu/Debian:
sudo apt-get install ffmpeg
# Windows:
# Download from ffmpeg.org, add to PATH
## Basic Imports
from pydub import AudioSegment
from pydub.effects import normalize, compress_dynamic_range
from pydub.silence import detect_silence, split_on_silence
import os
from pathlib import Path
Step 2: Core Operations
## Loading and Saving Audio
# Load audio file (format auto-detected from extension)
audio = AudioSegment.from_file("input.mp3")
audio = AudioSegment.from_file("input.wav", format="wav")
# Save audio file
audio.export("output.mp3", format="mp3", bitrate="192k")
audio.export("output.wav", format="wav")
# Export with metadata
audio.export(
"output.mp3",
format="mp3",
bitrate="192k",
tags={"artist": "Brand Name", "album": "Podcast"}
)
## Basic Properties
print(f"Duration: {len(audio)} ms")
print(f"Channels: {audio.channels}")
print(f"Frame rate: {audio.frame_rate} Hz")
print(f"Sample width: {audio.sample_width} bytes")
print(f"dBFS: {audio.dBFS}") # Volume level
Step 3: Volume and Normalization
## Volume Adjustments
# Increase volume by 6 dB
louder = audio + 6
# Decrease volume by 3 dB
quieter = audio - 3
# Normalize to target level (0 dB = maximum)
normalized = normalize(audio)
# Normalize to specific headroom
def normalize_to_target(audio, target_dBFS=-16):
"""Normalize audio to target loudness."""
change_in_dBFS = target_dBFS - audio.dBFS
return audio.apply_gain(change_in_dBFS)
normalized = normalize_to_target(audio, target_dBFS=-16)
## Batch Normalization
def normalize_folder(input_dir, output_dir, target_dBFS=-16):
"""Normalize all audio files in a folder."""
input_path = Path(input_dir)
output_path = Path(output_dir)
output_path.mkdir(exist_ok=True)
for file in input_path.glob("*.mp3"):
audio = AudioSegment.from_file(file)
normalized = normalize_to_target(audio, target_dBFS)
output_file = output_path / file.name
normalized.export(output_file, format="mp3", bitrate="192k")
print(f"Processed: {file.name}")
# Usage
normalize_folder("raw_episodes/", "processed_episodes/", target_dBFS=-16)
Step 4: Concatenation and Assembly
## Basic Concatenation
intro = AudioSegment.from_file("intro.mp3")
content = AudioSegment.from_file("episode.mp3")
outro = AudioSegment.from_file("outro.mp3")
# Concatenate (+ operator)
full_episode = intro + content + outro
# Add silence between segments
silence = AudioSegment.silent(duration=2000) # 2 seconds
full_episode = intro + silence + content + silence + outro
full_episode.export("final_episode.mp3", format="mp3")
## Podcast Assembly Script
def assemble_episode(
content_file,
intro_file="assets/intro.mp3",
outro_file="assets/outro.mp3",
output_file=None,
intro_fade_ms=500,
outro_fade_ms=500
):
"""
Assemble podcast episode with intro and outro.
Includes crossfade for professional sound.
"""
intro = AudioSegment.from_file(intro_file)
content = AudioSegment.from_file(content_file)
outro = AudioSegment.from_file(outro_file)
# Apply fade out to intro, fade in to content
intro = intro.fade_out(intro_fade_ms)
content = content.fade_in(intro_fade_ms).fade_out(outro_fade_ms)
outro = outro.fade_in(outro_fade_ms)
# Crossfade join
episode = intro.append(content, crossfade=intro_fade_ms)
episode = episode.append(outro, crossfade=outro_fade_ms)
# Generate output filename if not provided
if output_file is None:
output_file = content_file.replace(".mp3", "_final.mp3")
episode.export(output_file, format="mp3", bitrate="192k")
print(f"Assembled: {output_file} ({len(episode)/1000:.1f}s)")
return output_file
# Usage
assemble_episode("episode_042_raw.mp3")
Step 5: Trimming and Splitting
## Time-Based Trimming
# Extract segment (milliseconds)
# audio[start:end]
first_30_seconds = audio[:30000]
last_minute = audio[-60000:]
middle_section = audio[60000:120000]
# Remove first 5 seconds (skip intro)
without_intro = audio[5000:]
## Silence-Based Operations
from pydub.silence import detect_silence, split_on_silence
# Detect silence regions
# Returns list of [start, end] in milliseconds
silence_ranges = detect_silence(
audio,
min_silence_len=1000, # Minimum 1 second silence
silence_thresh=-40 # dB threshold for "silence"
)
# Split on silence (useful for chapter markers)
chunks = split_on_silence(
audio,
min_silence_len=500,
silence_thresh=-40,
keep_silence=250 # Keep 250ms of silence on each side
)
# Export chunks
for i, chunk in enumerate(chunks):
chunk.export(f"segment_{i:03d}.mp3", format="mp3")
## Trim Silence from Start/End
def trim_silence(audio, silence_thresh=-50, chunk_size=10):
"""Remove silence from beginning and end of audio."""
# Find first non-silent moment
start_trim = 0
for i in range(0, len(audio), chunk_size):
if audio[i:i+chunk_size].dBFS > silence_thresh:
start_trim = max(0, i - 100) # Keep 100ms before
break
# Find last non-silent moment
end_trim = len(audio)
for i in range(len(audio), 0, -chunk_size):
if audio[i-chunk_size:i].dBFS > silence_thresh:
e