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openai-whisper-api

steipete
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About

This Claude Skill transcribes audio files to text using OpenAI's Whisper API via a curl-based script. It supports various audio formats, allows optional parameters like language and prompts, and can output plain text or JSON. Use it to quickly integrate speech-to-text functionality into your workflow.

Documentation

OpenAI Whisper API (curl)

Transcribe an audio file via OpenAI’s /v1/audio/transcriptions endpoint.

Quick start

{baseDir}/scripts/transcribe.sh /path/to/audio.m4a

Defaults:

  • Model: whisper-1
  • Output: <input>.txt

Useful flags

{baseDir}/scripts/transcribe.sh /path/to/audio.ogg --model whisper-1 --out /tmp/transcript.txt
{baseDir}/scripts/transcribe.sh /path/to/audio.m4a --language en
{baseDir}/scripts/transcribe.sh /path/to/audio.m4a --prompt "Speaker names: Peter, Daniel"
{baseDir}/scripts/transcribe.sh /path/to/audio.m4a --json --out /tmp/transcript.json

API key

Set OPENAI_API_KEY, or configure it in ~/.clawdis/clawdis.json:

{
  skills: {
    "openai-whisper-api": {
      apiKey: "OPENAI_KEY_HERE"
    }
  }
}

Quick Install

/plugin add https://github.com/steipete/clawdis/tree/main/openai-whisper-api

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

GitHub 仓库

steipete/clawdis
Path: skills/openai-whisper-api
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