skills/skill-collections/ai-audio-speech/openai-whisper/skills/openai-whisper-api/SKILL.md
Transcribe audio via OpenAI Audio Transcriptions API (Whisper).
npx skillsauth add zjunlp/Skills openai-whisper-apiInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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Transcribe an audio file via OpenAI’s /v1/audio/transcriptions endpoint.
{baseDir}/scripts/transcribe.sh /path/to/audio.m4a
Defaults:
whisper-1<input>.txt{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
Set OPENAI_API_KEY, or configure it in ~/.clawdbot/clawdbot.json:
{
skills: {
"openai-whisper-api": {
apiKey: "OPENAI_KEY_HERE"
}
}
}
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