This transcribes audio and video files using ElevenLabs Scribe v2, handling 90+ languages with speaker diarization and word-level timestamps. You get two models: the standard one for batch jobs and a real-time version with 150ms latency for live transcription. The speaker diarization is genuinely useful for meetings since it labels who said what, and for call recordings it can even tag speakers as agent versus customer. Keyterm prompting helps with product names or jargon the model might mishear. Supports massive files up to 3GB and 10 hours. The real-time streaming API distinguishes between partial transcripts (live feedback) and committed transcripts (final text), with optional voice activity detection to auto-commit on silence.
npx -y skills add elevenlabs/skills --skill speech-to-text --agent claude-codeInstalls into .claude/skills of the current project.
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}")
For call recordings, the batch API can label diarized speakers as agent and customer by setting detect_speaker_roles=true alongside diarize=true. This option is not compatible with use_multi_channel=true.
If your workspace has registered speaker profiles, set use_speaker_library=true with diarize=true to match detected speakers against the speaker library.
curl -X POST "https://api.elevenlabs.io/v1/speech-to-text" \
-H "xi-api-key: $ELEVENLABS_API_KEY" \
-F "file=@call.mp3" \
-F "model_id=scribe_v2" \
-F "diarize=true" \
-F "detect_speaker_roles=true" \
-F "use_speaker_library=true"
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 5.0GB 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,
keyterms=["ElevenLabs", "Scribe"],
no_verbatim=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, CommitStrategy } from "@elevenlabs/react";
function TranscriptionComponent() {
const [transcript, setTranscript] = useState("");
const scribe = useScribe({
modelId: "scribe_v2_realtime",
commitStrategy: CommitStrategy.VAD, // Auto-commit on silence for mic input
keyterms: ["ElevenLabs", "Scribe"],
noVerbatim: true,
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 |
// React: set commitStrategy on the hook (recommended for mic input)
import { useScribe, CommitStrategy } from "@elevenlabs/react";
const scribe = useScribe({
modelId: "scribe_v2_realtime",
commitStrategy: CommitStrategy.VAD,
keyterms: ["ElevenLabs", "Scribe"],
noVerbatim: true,
// Optional VAD tuning:
vadSilenceThresholdSecs: 1.5,
vadThreshold: 0.4,
});
// JavaScript client: pass vad config on connect
const connection = await client.speechToText.realtime.connect({
modelId: "scribe_v2_realtime",
keyterms: ["ElevenLabs", "Scribe"],
noVerbatim: true,
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.
davila7/claude-code-templates
orchestra-research/ai-research-skills
agentspace-so/runcomfy-agent-skills
inferen-sh/skills