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openai-whisper

steipete
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About

This skill enables local audio transcription using OpenAI's Whisper CLI without requiring an API key. It provides offline speech-to-text conversion with configurable model sizes for speed/accuracy trade-offs. Developers should use it when they need private, cost-free transcription directly in their terminal workflow.

Quick Install

Claude Code

Recommended
Plugin CommandRecommended
/plugin add https://github.com/steipete/clawdis
Git CloneAlternative
git clone https://github.com/steipete/clawdis.git ~/.claude/skills/openai-whisper

Copy and paste this command in Claude Code to install this skill

Documentation

Whisper (CLI)

Use whisper to transcribe audio locally.

Quick start

  • whisper /path/audio.mp3 --model medium --output_format txt --output_dir .
  • whisper /path/audio.m4a --task translate --output_format srt

Notes

  • Models download to ~/.cache/whisper on first run.
  • --model defaults to turbo on this install.
  • Use smaller models for speed, larger for accuracy.

GitHub Repository

steipete/clawdis
Path: skills/openai-whisper
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