mirror of
https://github.com/Mintplex-Labs/anything-llm.git
synced 2024-11-19 20:50:09 +01:00
182 lines
5.6 KiB
JavaScript
182 lines
5.6 KiB
JavaScript
const fs = require("fs");
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const path = require("path");
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const { v4 } = require("uuid");
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const defaultWhisper = "Xenova/whisper-small"; // Model Card: https://huggingface.co/Xenova/whisper-small
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const fileSize = {
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"Xenova/whisper-small": "250mb",
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"Xenova/whisper-large": "1.56GB",
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};
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class LocalWhisper {
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constructor({ options }) {
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this.model = options?.WhisperModelPref ?? defaultWhisper;
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this.fileSize = fileSize[this.model];
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this.cacheDir = path.resolve(
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process.env.STORAGE_DIR
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? path.resolve(process.env.STORAGE_DIR, `models`)
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: path.resolve(__dirname, `../../../server/storage/models`)
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);
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this.modelPath = path.resolve(this.cacheDir, ...this.model.split("/"));
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// Make directory when it does not exist in existing installations
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if (!fs.existsSync(this.cacheDir))
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fs.mkdirSync(this.cacheDir, { recursive: true });
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this.#log("Initialized.");
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}
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#log(text, ...args) {
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console.log(`\x1b[32m[LocalWhisper]\x1b[0m ${text}`, ...args);
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}
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async #convertToWavAudioData(sourcePath) {
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try {
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let buffer;
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const wavefile = require("wavefile");
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const ffmpeg = require("fluent-ffmpeg");
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const outFolder = path.resolve(__dirname, `../../storage/tmp`);
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if (!fs.existsSync(outFolder))
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fs.mkdirSync(outFolder, { recursive: true });
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const fileExtension = path.extname(sourcePath).toLowerCase();
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if (fileExtension !== ".wav") {
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this.#log(
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`File conversion required! ${fileExtension} file detected - converting to .wav`
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);
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const outputFile = path.resolve(outFolder, `${v4()}.wav`);
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const convert = new Promise((resolve) => {
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ffmpeg(sourcePath)
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.toFormat("wav")
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.on("error", (error) => {
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this.#log(`Conversion Error! ${error.message}`);
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resolve(false);
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})
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.on("progress", (progress) =>
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this.#log(
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`Conversion Processing! ${progress.targetSize}KB converted`
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)
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)
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.on("end", () => {
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this.#log(`Conversion Complete! File converted to .wav!`);
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resolve(true);
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})
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.save(outputFile);
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});
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const success = await convert;
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if (!success)
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throw new Error(
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"[Conversion Failed]: Could not convert file to .wav format!"
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);
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const chunks = [];
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const stream = fs.createReadStream(outputFile);
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for await (let chunk of stream) chunks.push(chunk);
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buffer = Buffer.concat(chunks);
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fs.rmSync(outputFile);
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} else {
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const chunks = [];
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const stream = fs.createReadStream(sourcePath);
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for await (let chunk of stream) chunks.push(chunk);
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buffer = Buffer.concat(chunks);
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}
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const wavFile = new wavefile.WaveFile(buffer);
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wavFile.toBitDepth("32f");
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wavFile.toSampleRate(16000);
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let audioData = wavFile.getSamples();
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if (Array.isArray(audioData)) {
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if (audioData.length > 1) {
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const SCALING_FACTOR = Math.sqrt(2);
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// Merge channels into first channel to save memory
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for (let i = 0; i < audioData[0].length; ++i) {
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audioData[0][i] =
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(SCALING_FACTOR * (audioData[0][i] + audioData[1][i])) / 2;
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}
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}
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audioData = audioData[0];
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}
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return audioData;
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} catch (error) {
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console.error(`convertToWavAudioData`, error);
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return null;
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}
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}
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async client() {
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if (!fs.existsSync(this.modelPath)) {
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this.#log(
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`The native whisper model has never been run and will be downloaded right now. Subsequent runs will be faster. (~${this.fileSize})`
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);
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}
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try {
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// Convert ESM to CommonJS via import so we can load this library.
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const pipeline = (...args) =>
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import("@xenova/transformers").then(({ pipeline }) =>
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pipeline(...args)
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);
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return await pipeline("automatic-speech-recognition", this.model, {
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cache_dir: this.cacheDir,
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...(!fs.existsSync(this.modelPath)
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? {
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// Show download progress if we need to download any files
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progress_callback: (data) => {
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if (!data.hasOwnProperty("progress")) return;
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console.log(
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`\x1b[34m[Embedding - Downloading Model Files]\x1b[0m ${
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data.file
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} ${~~data?.progress}%`
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);
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},
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}
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: {}),
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});
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} catch (error) {
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this.#log("Failed to load the native whisper model:", error);
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throw error;
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}
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}
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async processFile(fullFilePath, filename) {
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try {
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const transcriberPromise = new Promise((resolve) =>
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this.client().then((client) => resolve(client))
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);
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const audioDataPromise = new Promise((resolve) =>
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this.#convertToWavAudioData(fullFilePath).then((audioData) =>
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resolve(audioData)
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)
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);
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const [audioData, transcriber] = await Promise.all([
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audioDataPromise,
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transcriberPromise,
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]);
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if (!audioData) {
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this.#log(`Failed to parse content from ${filename}.`);
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return {
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content: null,
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error: `Failed to parse content from ${filename}.`,
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};
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}
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this.#log(`Transcribing audio data to text...`);
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const { text } = await transcriber(audioData, {
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chunk_length_s: 30,
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stride_length_s: 5,
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});
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return { content: text, error: null };
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} catch (error) {
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return { content: null, error: error.message };
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}
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}
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}
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module.exports = {
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LocalWhisper,
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};
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