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speech-to-text
// Transcribe audio to text using ElevenLabs Scribe v2. Use when converting audio/video to text, generating subtitles, transcribing meetings, or processing spoken content.
// Transcribe audio to text using ElevenLabs Scribe v2. Use when converting audio/video to text, generating subtitles, transcribing meetings, or processing spoken content.
Build voice AI agents with ElevenLabs. Use when creating voice assistants, customer service bots, interactive voice characters, or any real-time voice conversation experience.
Generate music using ElevenLabs Music API. Use when creating instrumental tracks, songs with lyrics, background music, jingles, or any AI-generated music composition. Supports prompt-based generation, composition plans for granular control, and detailed output with metadata.
Generate sound effects from text descriptions using ElevenLabs. Use when creating sound effects, generating audio textures, producing ambient sounds, cinematic impacts, UI sounds, or any audio that isn't speech. Supports looping, duration control, and prompt influence tuning.
Convert text to speech using ElevenLabs voice AI. Use when generating audio from text, creating voiceovers, building voice apps, or synthesizing speech in 70+ languages.
| name | speech-to-text |
| description | Transcribe audio to text using ElevenLabs Scribe v2. Use when converting audio/video to text, generating subtitles, transcribing meetings, or processing spoken content. |
| license | MIT |
| compatibility | Requires internet access and an ElevenLabs API key (ELEVENLABS_API_KEY). |
| metadata | {"openclaw":{"requires":{"env":["ELEVENLABS_API_KEY"]},"primaryEnv":"ELEVENLABS_API_KEY"}} |
Transcribe audio to text with Scribe v2 - supports 90+ languages, speaker diarization, and word-level timestamps.
Setup: See Installation Guide. For JavaScript, use
@elevenlabs/*packages only.
from elevenlabs import ElevenLabs
client = ElevenLabs()
with open("audio.mp3", "rb") as audio_file:
result = client.speech_to_text.convert(file=audio_file, model_id="scribe_v2")
print(result.text)
import { ElevenLabsClient } from '@elevenlabs/elevenlabs-js';
import { createReadStream } from 'fs';
const client = new ElevenLabsClient();
const result = await client.speechToText.convert({
file: createReadStream('audio.mp3'),
modelId: 'scribe_v2'
});
console.log(result.text);
curl -X POST "https://api.elevenlabs.io/v1/speech-to-text" \
-H "xi-api-key: $ELEVENLABS_API_KEY" -F "file=@audio.mp3" -F "model_id=scribe_v2"
| Model ID | Description | Best For |
|---|---|---|
scribe_v2 | State-of-the-art accuracy, 90+ languages | Batch transcription, subtitles, long-form audio |
scribe_v2_realtime | Low latency (~150ms) | Live transcription, voice agents |
Word-level timestamps include type classification and speaker identification:
result = client.speech_to_text.convert(
file=audio_file, model_id="scribe_v2", timestamps_granularity="word"
)
for word in result.words:
print(f"{word.text}: {word.start}s - {word.end}s (type: {word.type})")
Identify WHO said WHAT - the model labels each word with a speaker ID, useful for meetings, interviews, or any multi-speaker audio:
result = client.speech_to_text.convert(
file=audio_file,
model_id="scribe_v2",
diarize=True
)
for word in result.words:
print(f"[{word.speaker_id}] {word.text}")
Help the model recognize specific words it might otherwise mishear - product names, technical jargon, or unusual spellings (up to 100 terms):
result = client.speech_to_text.convert(
file=audio_file,
model_id="scribe_v2",
keyterms=["ElevenLabs", "Scribe", "API"]
)
Automatic detection with optional language hint:
result = client.speech_to_text.convert(
file=audio_file,
model_id="scribe_v2",
language_code="eng" # ISO 639-1 or ISO 639-3 code
)
print(f"Detected: {result.language_code} ({result.language_probability:.0%})")
Audio: MP3, WAV, M4A, FLAC, OGG, WebM, AAC, AIFF, Opus Video: MP4, AVI, MKV, MOV, WMV, FLV, WebM, MPEG, 3GPP
Limits: Up to 3GB file size, 10 hours duration
{
"text": "The full transcription text",
"language_code": "eng",
"language_probability": 0.98,
"words": [
{ "text": "The", "start": 0.0, "end": 0.15, "type": "word", "speaker_id": "speaker_0" },
{ "text": " ", "start": 0.15, "end": 0.16, "type": "spacing", "speaker_id": "speaker_0" }
]
}
Word types:
word - An actual spoken wordspacing - Whitespace between words (useful for precise timing)audio_event - Non-speech sounds the model detected (laughter, applause, music, etc.)try:
result = client.speech_to_text.convert(file=audio_file, model_id="scribe_v2")
except Exception as e:
print(f"Transcription failed: {e}")
Common errors:
Monitor usage via request-id response header:
response = client.speech_to_text.convert.with_raw_response(file=audio_file, model_id="scribe_v2")
result = response.parse()
print(f"Request ID: {response.headers.get('request-id')}")
For live transcription with ultra-low latency (~150ms), use the real-time API. The real-time API produces two types of transcripts:
A "commit" tells the model to finalize the current segment. You can commit manually (e.g., when the user pauses) or use Voice Activity Detection (VAD) to auto-commit on silence.
import asyncio
from elevenlabs import ElevenLabs
client = ElevenLabs()
async def transcribe_realtime():
async with client.speech_to_text.realtime.connect(
model_id="scribe_v2_realtime",
include_timestamps=True,
) as connection:
await connection.stream_url("https://example.com/audio.mp3")
async for event in connection:
if event.type == "partial_transcript":
print(f"Partial: {event.text}")
elif event.type == "committed_transcript":
print(f"Final: {event.text}")
asyncio.run(transcribe_realtime())
import { useScribe } from "@elevenlabs/react";
function TranscriptionComponent() {
const [transcript, setTranscript] = useState("");
const scribe = useScribe({
modelId: "scribe_v2_realtime",
onPartialTranscript: (data) => console.log("Partial:", data.text),
onCommittedTranscript: (data) => setTranscript((prev) => prev + data.text),
});
const start = async () => {
// Get token from your backend (never expose API key to client)
const { token } = await fetch("/scribe-token").then((r) => r.json());
await scribe.connect({
token,
microphone: { echoCancellation: true, noiseSuppression: true },
});
};
return <button onClick={start}>Start Recording</button>;
}
| Strategy | Description |
|---|---|
| Manual | You call commit() when ready - use for file processing or when you control the audio segments |
| VAD | Voice Activity Detection auto-commits when silence is detected - use for live microphone input |
// VAD configuration
const connection = await client.speechToText.realtime.connect({
modelId: 'scribe_v2_realtime',
vad: {
silenceThresholdSecs: 1.5,
threshold: 0.4
}
});
| Event | Description |
|---|---|
partial_transcript | Live interim results |
committed_transcript | Final results after commit |
committed_transcript_with_timestamps | Final with word timing |
error | Error occurred |
See real-time references for complete documentation.