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transcribe()v4.0.131

Transcribes a media file by utilizing Whisper.cpp.
You should first install Whisper.cpp, for example through installWhisperCpp().

note

This function only works with Whisper.cpp 1.5.5 or later, unless tokenLevelTimestamps is set to false.

transcribe.mjs
tsx
import path from "path";
import { transcribe } from "@remotion/install-whisper-cpp";
 
const { transcription } = await transcribe({
inputPath: "/path/to/audio.wav",
whisperPath: path.join(process.cwd(), "whisper.cpp"),
model: "medium.en",
tokenLevelTimestamps: true,
});
 
for (const token of transcription) {
console.log(token.timestamps.from, token.timestamps.to, token.text);
}
transcribe.mjs
tsx
import path from "path";
import { transcribe } from "@remotion/install-whisper-cpp";
 
const { transcription } = await transcribe({
inputPath: "/path/to/audio.wav",
whisperPath: path.join(process.cwd(), "whisper.cpp"),
model: "medium.en",
tokenLevelTimestamps: true,
});
 
for (const token of transcription) {
console.log(token.timestamps.from, token.timestamps.to, token.text);
}

Options

inputPath

The path to the file you want extract text from.

The file has to be a 16KHz wav file. You can extract a 16KHz wav file from a video or audio file for example by utilizing FFmpeg with the following command:

bash
ffmpeg -i input.mp4 -ar 16000 output.wav -y
bash
ffmpeg -i input.mp4 -ar 16000 output.wav -y

If you don't want to install FFmpeg, you can also use the smaller FFmpeg binary provided by Remotion.

bash
npx remotion ffmpeg -i input.mp4 -ar 16000 output.wav -y
bash
npx remotion ffmpeg -i input.mp4 -ar 16000 output.wav -y

whisperPath

The path to your whisper.cpp folder.
If you haven't installed Whisper.cpp, you can do so for example through installWhisperCpp() and use the same folder.

tokenLevelTimestampsv4.0.131

Passes the --dtw flag to Whisper.cpp to generate more accurate timestamps, which are being returned under the t_dtw field.
Recommended to get actually accurate timings, but only available from Whisper.cpp versions later than 1.0.55.
Set to false if you use an older version of Whisper.cpp.

model?

optional - default: base.en

Specify a specific Whisper model for the transcription.

Possible values: tiny, tiny.en, base, base.en, small, small.en, medium, medium.en, large-v1, large-v2, large-v3.

Make sure the model you want to use exists in your whisper.cpp/models folder. You can ensure a specific model is available locally by utilizing the downloadWhisperModel() API.

modelFolder?

optional - default: whisperPath/models

If you saved Whisper models to a specific folder, pass its path here.

Uses the whisper.cpp/models folder at the location defined through whisperPath as default.

translateToEnglish?

optional - default: false

Set this boolean flag to true if you want to get a translated transcription of the provided file in English. Make sure to not use a *.en model, as they will not be able to translate a foreign language to english.

note

We recommend using at least the medium model to get satisfactory results when translating.

printOutput?v4.0.132

Whether to print the output of the transcription process to the console. Defaults to true.

tokensPerItem?v4.0.141

optional - default: 1

The maximum amount of tokens included in each transcription item.

Set this flag to null, to use whisper.cpp's default token grouping (useful for generating a movie-style transcription).

info

tokensPerItem can only be set when tokenLevelTimestamps is set to false.

language?v4.0.142

optional - default: null

Passes the -l flag to Whisper.cpp to specific spoken language of the audio file.

Possible values: Afrikaans, Albanian, Amharic, Arabic, Armenian, Assamese, Azerbaijani, Bashkir, Basque, Belarusian, Bengali, Bosnian, Breton, Bulgarian, Burmese, Castilian, Catalan, Chinese, Croatian, Czech, Danish, Dutch, English, Estonian, Faroese, Finnish, Flemish, French, Galician, Georgian, German, Greek, Gujarati, Haitian, Haitian Creole, Hausa, Hawaiian, Hebrew, Hindi, Hungarian, Icelandic, Indonesian, Italian, Japanese, Javanese, Kannada, Kazakh, Khmer, Korean, Lao, Latin, Latvian, Letzeburgesch, Lingala, Lithuanian, Luxembourgish, Macedonian, Malagasy, Malay, Malayalam, Maltese, Maori, Marathi, Moldavian, Moldovan, Mongolian, Myanmar, Nepali, Norwegian, Nynorsk, Occitan, Panjabi, Pashto, Persian, Polish, Portuguese, Punjabi, Pushto, Romanian, Russian, Sanskrit, Serbian, Shona, Sindhi, Sinhala, Sinhalese, Slovak, Slovenian, Somali, Spanish, Sundanese, Swahili, Swedish, Tagalog, Tajik, Tamil, Tatar, Telugu, Thai, Tibetan, Turkish, Turkmen, Ukrainian, Urdu, Uzbek, Valencian, Vietnamese, Welsh, Yiddish, Yoruba, Zulu. af, am, ar, as, az, ba, be, bg, bn, bo, br, bs, ca, cs, cy, da, de, el, en, es, et, eu, fa, fi, fo, fr, gl, gu, ha, haw, he, hi, hr, ht, hu, hy, id, is, it, ja, jw, ka, kk, km, kn, ko, la, lb, ln, lo, lt, lv, mg, mi, mk, ml, mn, mr, ms, mt, my, ne, nl, nn, no, oc, pa, pl, ps, pt, ro, ru, sa, sd, si, sk, sl, sn, so, sq, sr, su, sv, sw, ta, te, tg, th, tk, tl, tr, tt, uk, ur, uz, vi, yi, yo, zh or auto.

signal?v4.0.156

A signal from an AbortController to cancel the transcription process.

onProgress?v4.0.156

Listen for progress updates from the transcription process.
The progress is a number between 0 and 1.

tsx
import type { TranscribeOnProgress } from "@remotion/install-whisper-cpp";
 
const onProgress: TranscribeOnProgress = (progress) => {
console.log(`Transcription progress: ${progress * 100}%`);
};
tsx
import type { TranscribeOnProgress } from "@remotion/install-whisper-cpp";
 
const onProgress: TranscribeOnProgress = (progress) => {
console.log(`Transcription progress: ${progress * 100}%`);
};

Return value

TranscriptionJson

An object containing all the metadata and transcriptions resulting from the transcription process.

ts
type Timestamps = {
from: string;
to: string;
};
 
type Offsets = {
from: number;
to: number;
};
 
type WordLevelToken = {
t_dtw: number;
text: string;
timestamps: Timestamps;
offsets: Offsets;
id: number;
p: number;
};
 
type TranscriptionItem = {
timestamps: Timestamps;
offsets: Offsets;
text: string;
};
 
type TranscriptionItemWithTimestamp = TranscriptionItem & {
tokens: WordLevelToken[];
};
 
type Model = {
type: string;
multilingual: boolean;
vocab: number;
audio: {
ctx: number;
state: number;
head: number;
layer: number;
};
text: {
ctx: number;
state: number;
head: number;
layer: number;
};
mels: number;
ftype: number;
};
 
type Params = {
model: string;
language: string;
translate: boolean;
};
 
type Result = {
language: string;
};
 
export type TranscriptionJson<WithTokenLevelTimestamp extends boolean> = {
systeminfo: string;
model: Model;
params: Params;
result: Result;
transcription: true extends WithTokenLevelTimestamp
? TranscriptionItemWithTimestamp[]
: TranscriptionItem[];
};
ts
type Timestamps = {
from: string;
to: string;
};
 
type Offsets = {
from: number;
to: number;
};
 
type WordLevelToken = {
t_dtw: number;
text: string;
timestamps: Timestamps;
offsets: Offsets;
id: number;
p: number;
};
 
type TranscriptionItem = {
timestamps: Timestamps;
offsets: Offsets;
text: string;
};
 
type TranscriptionItemWithTimestamp = TranscriptionItem & {
tokens: WordLevelToken[];
};
 
type Model = {
type: string;
multilingual: boolean;
vocab: number;
audio: {
ctx: number;
state: number;
head: number;
layer: number;
};
text: {
ctx: number;
state: number;
head: number;
layer: number;
};
mels: number;
ftype: number;
};
 
type Params = {
model: string;
language: string;
translate: boolean;
};
 
type Result = {
language: string;
};
 
export type TranscriptionJson<WithTokenLevelTimestamp extends boolean> = {
systeminfo: string;
model: Model;
params: Params;
result: Result;
transcription: true extends WithTokenLevelTimestamp
? TranscriptionItemWithTimestamp[]
: TranscriptionItem[];
};

Prefer relying on the t_dtw value for accurate timestamps over offsets.
Use convertToCaptions() to use our opinionated suggestion for postprocessing the captions.

See also