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const path = require("path");
const fs = require("fs");
const { toChunks } = require("../../helpers");
const { v4 } = require("uuid");
const { SUPPORTED_NATIVE_EMBEDDING_MODELS } = require("./constants");
class NativeEmbedder {
static defaultModel = "Xenova/all-MiniLM-L6-v2";
/**
* Supported embedding models for native.
* @type {Record<string, {
* chunkPrefix: string;
* queryPrefix: string;
* apiInfo: {
* id: string;
* name: string;
* description: string;
* lang: string;
* size: string;
* modelCard: string;
* };
* }>}
*/
static supportedModels = SUPPORTED_NATIVE_EMBEDDING_MODELS;
// This is a folder that Mintplex Labs hosts for those who cannot capture the HF model download
// endpoint for various reasons. This endpoint is not guaranteed to be active or maintained
// and may go offline at any time at Mintplex Labs's discretion.
#fallbackHost = "https://cdn.anythingllm.com/support/models/";
constructor() {
this.model = this.getEmbeddingModel();
this.modelInfo = this.getEmbedderInfo();
this.cacheDir = path.resolve(
process.env.STORAGE_DIR
? path.resolve(process.env.STORAGE_DIR, `models`)
: path.resolve(__dirname, `../../../storage/models`)
);
this.modelPath = path.resolve(this.cacheDir, ...this.model.split("/"));
this.modelDownloaded = fs.existsSync(this.modelPath);
// Limit of how many strings we can process in a single pass to stay with resource or network limits
this.maxConcurrentChunks = this.modelInfo.maxConcurrentChunks;
this.embeddingMaxChunkLength = this.modelInfo.embeddingMaxChunkLength;
// Make directory when it does not exist in existing installations
if (!fs.existsSync(this.cacheDir)) fs.mkdirSync(this.cacheDir);
this.log(`Initialized ${this.model}`);
}
log(text, ...args) {
console.log(`\x1b[36m[NativeEmbedder]\x1b[0m ${text}`, ...args);
}
/**
* Get the selected model from the environment variable.
* @returns {string}
*/
static _getEmbeddingModel() {
const envModel =
process.env.EMBEDDING_MODEL_PREF ?? NativeEmbedder.defaultModel;
if (NativeEmbedder.supportedModels?.[envModel]) return envModel;
return NativeEmbedder.defaultModel;
}
get embeddingPrefix() {
return NativeEmbedder.supportedModels[this.model]?.chunkPrefix || "";
}
get queryPrefix() {
return NativeEmbedder.supportedModels[this.model]?.queryPrefix || "";
}
/**
* Get the available models in an API response format
* we can use to populate the frontend dropdown.
* @returns {{id: string, name: string, description: string, lang: string, size: string, modelCard: string}[]}
*/
static availableModels() {
return Object.values(NativeEmbedder.supportedModels).map(
(model) => model.apiInfo
);
}
/**
* Get the embedding model to use.
* We only support a few models and will default to the default model if the environment variable is not set or not supported.
*
* Why only a few? Because we need to mirror them on the CDN so non-US users can download them.
* eg: "Xenova/all-MiniLM-L6-v2"
* eg: "Xenova/nomic-embed-text-v1"
* @returns {string}
*/
getEmbeddingModel() {
const envModel =
process.env.EMBEDDING_MODEL_PREF ?? NativeEmbedder.defaultModel;
if (NativeEmbedder.supportedModels?.[envModel]) return envModel;
return NativeEmbedder.defaultModel;
}
/**
* Get the embedding model info.
*
* Will always fallback to the default model if the model is not supported.
* @returns {Object}
*/
getEmbedderInfo() {
const model = this.getEmbeddingModel();
return NativeEmbedder.supportedModels[model];
}
#tempfilePath() {
const filename = `${v4()}.tmp`;
const tmpPath = process.env.STORAGE_DIR
? path.resolve(process.env.STORAGE_DIR, "tmp")
: path.resolve(__dirname, `../../../storage/tmp`);
if (!fs.existsSync(tmpPath)) fs.mkdirSync(tmpPath, { recursive: true });
return path.resolve(tmpPath, filename);
}
async #writeToTempfile(filePath, data) {
try {
await fs.promises.appendFile(filePath, data, { encoding: "utf8" });
} catch (e) {
console.error(`Error writing to tempfile: ${e}`);
}
}
async #fetchWithHost(hostOverride = null) {
try {
// Convert ESM to CommonJS via import so we can load this library.
const pipeline = (...args) =>
import("@xenova/transformers").then(({ pipeline, env }) => {
if (!this.modelDownloaded) {
// if model is not downloaded, we will log where we are fetching from.
if (hostOverride) {
env.remoteHost = hostOverride;
env.remotePathTemplate = "{model}/"; // Our S3 fallback url does not support revision File structure.
}
this.log(`Downloading ${this.model} from ${env.remoteHost}`);
}
return pipeline(...args);
});
return {
pipeline: await pipeline("feature-extraction", this.model, {
cache_dir: this.cacheDir,
...(!this.modelDownloaded
? {
// Show download progress if we need to download any files
progress_callback: (data) => {
if (!data.hasOwnProperty("progress")) return;
console.log(
`\x1b[36m[NativeEmbedder - Downloading model]\x1b[0m ${
data.file
} ${~~data?.progress}%`
);
},
}
: {}),
}),
retry: false,
error: null,
};
} catch (error) {
return {
pipeline: null,
retry: hostOverride === null ? this.#fallbackHost : false,
error,
};
}
}
// This function will do a single fallback attempt (not recursive on purpose) to try to grab the embedder model on first embed
// since at time, some clients cannot properly download the model from HF servers due to a number of reasons (IP, VPN, etc).
// Given this model is critical and nobody reads the GitHub issues before submitting the bug, we get the same bug
// report 20 times a day: https://github.com/Mintplex-Labs/anything-llm/issues/821
// So to attempt to monkey-patch this we have a single fallback URL to help alleviate duplicate bug reports.
async embedderClient() {
if (!this.modelDownloaded)
this.log(
"The native embedding model has never been run and will be downloaded right now. Subsequent runs will be faster. (~23MB)"
);
let fetchResponse = await this.#fetchWithHost();
if (fetchResponse.pipeline !== null) {
this.modelDownloaded = true;
return fetchResponse.pipeline;
}
this.log(
`Failed to download model from primary URL. Using fallback ${fetchResponse.retry}`
);
if (!!fetchResponse.retry)
fetchResponse = await this.#fetchWithHost(fetchResponse.retry);
if (fetchResponse.pipeline !== null) {
this.modelDownloaded = true;
return fetchResponse.pipeline;
}
throw fetchResponse.error;
}
/**
* Apply the query prefix to the text input if it is required by the model.
* eg: nomic-embed-text-v1 requires a query prefix for embedding/searching.
* @param {string|string[]} textInput - The text to embed.
* @returns {string|string[]} The text with the prefix applied.
*/
#applyQueryPrefix(textInput) {
if (!this.queryPrefix) return textInput;
if (Array.isArray(textInput))
textInput = textInput.map((text) => `${this.queryPrefix}${text}`);
else textInput = `${this.queryPrefix}${textInput}`;
return textInput;
}
/**
* Embed a single text input.
* @param {string|string[]} textInput - The text to embed.
* @returns {Promise<Array<number>>} The embedded text.
*/
async embedTextInput(textInput) {
textInput = this.#applyQueryPrefix(textInput);
const result = await this.embedChunks(
Array.isArray(textInput) ? textInput : [textInput]
);
return result?.[0] || [];
}
// If you are thinking you want to edit this function - you probably don't.
// This process was benchmarked heavily on a t3.small (2GB RAM 1vCPU)
// and without careful memory management for the V8 garbage collector
// this function will likely result in an OOM on any resource-constrained deployment.
// To help manage very large documents we run a concurrent write-log each iteration
// to keep the embedding result out of memory. The `maxConcurrentChunk` is set to 25,
// as 50 seems to overflow no matter what. Given the above, memory use hovers around ~30%
// during a very large document (>100K words) but can spike up to 70% before gc.
// This seems repeatable for all document sizes.
// While this does take a while, it is zero set up and is 100% free and on-instance.
// It still may crash depending on other elements at play - so no promises it works under all conditions.
async embedChunks(textChunks = []) {
const tmpFilePath = this.#tempfilePath();
const chunks = toChunks(textChunks, this.maxConcurrentChunks);
const chunkLen = chunks.length;
for (let [idx, chunk] of chunks.entries()) {
if (idx === 0) await this.#writeToTempfile(tmpFilePath, "[");
let data;
let pipeline = await this.embedderClient();
let output = await pipeline(chunk, {
pooling: "mean",
normalize: true,
});
if (output.length === 0) {
pipeline = null;
output = null;
data = null;
continue;
}
data = JSON.stringify(output.tolist());
await this.#writeToTempfile(tmpFilePath, data);
this.log(`Embedded Chunk Group ${idx + 1} of ${chunkLen}`);
if (chunkLen - 1 !== idx) await this.#writeToTempfile(tmpFilePath, ",");
if (chunkLen - 1 === idx) await this.#writeToTempfile(tmpFilePath, "]");
pipeline = null;
output = null;
data = null;
}
const embeddingResults = JSON.parse(
fs.readFileSync(tmpFilePath, { encoding: "utf-8" })
);
fs.rmSync(tmpFilePath, { force: true });
return embeddingResults.length > 0 ? embeddingResults.flat() : null;
}
}
module.exports = {
NativeEmbedder,
};
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