- Video Processor
- Instructions
- This skill provides comprehensive video processing utilities including YouTube video download, audio extraction, format conversion, and audio transcription using yt-dlp, FFmpeg, and OpenAI's Whisper model.
- Prerequisites
- Required tools
- (must be installed in your environment):
- yt-dlp
- Video downloader for YouTube and thousands of other sites
Install via pip
pip install -U yt-dlp
Verify installation
- yt-dlp
- --version
- FFmpeg
- Multimedia framework for video/audio processing
macOS
brew install ffmpeg
Ubuntu/Debian
apt-get install ffmpeg
Verify installation
- ffmpeg
- -version
- OpenAI Whisper
- Speech-to-text transcription model
Install via pip
pip install -U openai-whisper
Verify installation
whisper --help Python packages (included in script via PEP 723): click (CLI framework) ffmpeg-python (Python wrapper for FFmpeg) yt-dlp (video downloader) Workflow Use the scripts/video_processor.py script for all video processing tasks. The script provides a simple CLI with the following commands: 0. Download Video from YouTube or Other Platforms (NEW!) Download videos from YouTube and thousands of other supported websites:
Download video
uv run .claude/skills/video-processor/scripts/video_processor.py download "https://youtube.com/watch?v=..." output.mp4
Download audio only (as MP3)
uv run .claude/skills/video-processor/scripts/video_processor.py download "https://youtube.com/watch?v=..." --audio-only
Show video info without downloading
uv run .claude/skills/video-processor/scripts/video_processor.py download "https://youtube.com/watch?v=..." --info
Download with subtitles
- uv run .claude/skills/video-processor/scripts/video_processor.py download
- "https://youtube.com/watch?v=..."
- output.mp4
- --subtitle
- Options:
- --audio-only
-
- Download audio only (extracts to MP3)
- --subtitle
-
- Download and embed subtitles (supports en, zh-Hans, zh-Hant)
- --info
-
- Show video information without downloading
- --format
-
- Specify video format preference (default: best quality)
- 1.
- Extract Audio from Video
- Extract the audio track from a video file:
- uv run .claude/skills/video-processor/scripts/video_processor.py extract-audio input.mp4 output.wav
- Options:
- --format
-
- Output audio format (default: wav). Supports: wav, mp3, aac, flac
- Output is suitable for transcription or standalone audio use
- 2.
- Convert Video to MP4
- Convert any video file to MP4 format:
- uv run .claude/skills/video-processor/scripts/video_processor.py to-mp4 input.avi output.mp4
- Options:
- --codec
-
- Video codec (default: libx264). Common options: libx264, libx265, h264
- --preset
-
- Encoding speed/quality preset (default: medium). Options: ultrafast, fast, medium, slow, veryslow
- 3.
- Convert Video to WebM
- Convert any video file to WebM format (web-optimized):
- uv run .claude/skills/video-processor/scripts/video_processor.py to-webm input.mp4 output.webm
- Options:
- --codec
- Video codec (default: libvpx-vp9). Options: libvpx, libvpx-vp9 WebM is optimized for web playback and streaming 4. Transcribe Audio with Whisper Transcribe audio or video files to text using OpenAI's Whisper model:
Transcribe video file (audio will be extracted automatically)
uv run .claude/skills/video-processor/scripts/video_processor.py transcribe input.mp4 transcript.txt
Transcribe audio file directly
- uv run .claude/skills/video-processor/scripts/video_processor.py transcribe audio.wav transcript.txt
- Options:
- --model
-
- Whisper model size (default: base). Options:
- tiny
-
- Fastest, lowest accuracy (~1GB RAM)
- base
-
- Fast, good accuracy (~1GB RAM)
- [DEFAULT]
- small
-
- Balanced (~2GB RAM)
- medium
-
- High accuracy (~5GB RAM)
- large
-
- Best accuracy, slowest (~10GB RAM)
- --language
-
- Language code (default: auto-detect). Examples: en, es, fr, de, zh
- --format
- Output format (default: txt). Options: txt, srt, vtt, json Transcription workflow: If input is video, FFmpeg extracts audio to temporary WAV file Whisper processes the audio file Transcription is saved in requested format Temporary files are cleaned up automatically 5. Combined Workflow Example Process a video end-to-end:
1. Extract audio for analysis
uv run .claude/skills/video-processor/scripts/video_processor.py extract-audio lecture.mp4 lecture.wav
2. Transcribe to SRT subtitles
uv run .claude/skills/video-processor/scripts/video_processor.py transcribe lecture.mp4 lecture.srt --format srt --model small
3. Convert to web format
- uv run .claude/skills/video-processor/scripts/video_processor.py to-webm lecture.mp4 lecture.webm
- Key Technical Details
- FFmpeg and Whisper Integration:
- FFmpeg doesn't transcribe audio itself - it prepares audio for external transcription
- The workflow is: Extract audio (FFmpeg) → Transcribe (Whisper) → Optional: Re-integrate with video
- FFmpeg can pipe audio directly to Whisper for real-time processing (advanced use case)
- Audio Format for Transcription:
- Whisper works best with WAV or MP3 formats
- Sample rate: 16kHz is optimal (script handles conversion automatically)
- The script extracts audio with optimal settings for Whisper
- Output Formats:
- txt
-
- Plain text transcript
- srt
-
- SubRip subtitle format (includes timestamps)
- vtt
-
- WebVTT subtitle format (web standard)
- json
- Detailed JSON with word-level timestamps Error Handling The script includes comprehensive error handling: Validates input files exist Checks FFmpeg and Whisper are installed Provides clear error messages for missing dependencies Handles temporary file cleanup on errors Performance Tips Use tiny or base models for quick drafts Use small or medium for production transcriptions Use large only when maximum accuracy is required For long videos, consider extracting audio first, then transcribe in segments WebM conversion with VP9 takes longer but produces smaller files Examples Example 1: Quick Video to MP4 Conversion User request: I have an AVI file from my old camera. Can you convert it to MP4? You would: Use the to-mp4 command with default settings: uv run .claude/skills/video-processor/scripts/video_processor.py to-mp4 old_video.avi output.mp4 Confirm the conversion completed successfully Inform the user about the output file location Example 2: Extract Audio and Transcribe User request: I recorded a lecture video and need a transcript. Can you extract the audio and transcribe it? You would: First extract the audio: uv run .claude/skills/video-processor/scripts/video_processor.py extract-audio lecture.mp4 lecture.wav Then transcribe using the base model (good balance of speed/accuracy): uv run .claude/skills/video-processor/scripts/video_processor.py transcribe lecture.mp4 transcript.txt --model base Share the transcript.txt file with the user Example 3: Create Web-Optimized Video with Subtitles User request: I need to put this video on my website with subtitles. Can you help? You would: Convert to WebM for web optimization: uv run .claude/skills/video-processor/scripts/video_processor.py to-webm presentation.mp4 presentation.webm Generate SRT subtitle file: uv run .claude/skills/video-processor/scripts/video_processor.py transcribe presentation.mp4 subtitles.srt --format srt --model small Inform user they now have: presentation.webm (web-optimized video) subtitles.srt (subtitle file for embedding) Example 4: High-Quality Transcription with Language Specification User request: I have a Spanish interview video that needs an accurate transcript for publication. You would: Use a larger model with language specified for best accuracy: uv run .claude/skills/video-processor/scripts/video_processor.py transcribe interview.mp4 transcript.txt --model medium --language es Optionally create SRT for review: uv run .claude/skills/video-processor/scripts/video_processor.py transcribe interview.mp4 transcript.srt --format srt --model medium --language es Review the transcript with the user and make any necessary corrections Example 5: Batch Processing Multiple Videos User request: I have a folder of training videos that all need to be converted to WebM and transcribed. You would: List all video files in the directory: ls training_videos/*.mp4 For each video file, run the conversion and transcription:
For each video: video1.mp4, video2.mp4, etc.
uv run .claude/skills/video-processor/scripts/video_processor.py to-webm training_videos/video1.mp4 output/video1.webm uv run .claude/skills/video-processor/scripts/video_processor.py transcribe training_videos/video1.mp4 output/video1.txt --model base
Repeat for each file
- Confirm all conversions and transcriptions completed
- Provide summary of output files
- Summary
- The video-processor skill provides a unified interface for common video processing tasks:
- Audio extraction
-
- Extract audio tracks in various formats
- Format conversion
-
- Convert to MP4 (universal) or WebM (web-optimized)
- Transcription
-
- Speech-to-text with multiple output formats
- Flexible
- CLI arguments for model selection, language, and output formats All operations are handled through a single, well-documented script with sensible defaults and comprehensive error handling.