Fast, easy-to-use AI sentence embeddings, optimized for serverless functions.
EnergeticAI Embeddings
EnergeticAI Embeddings is a library for computing sentence embeddings, which are vector representations of sentences that capture their meaning.
Sentence embeddings can be used for semantic search, recommendations, clustering, and more.
It leverages the Universal Sentence Encoder model from Google Research, which is trained on a variety of data sources and outputs 512-dimensional embeddings.
Install
Install this package, along with @energetic-ai/core
and model weights (e.g. @energetic-ai/model-embeddings-en
):
npm install @energetic-ai/core @energetic-ai/embeddings @energetic-ai/model-embeddings-en
Usage
You can easily call this method to compute embeddings for a list of sentences, and compare distances:
import { initModel, distance } from "@energetic-ai/embeddings";
import { modelSource } from "@energetic-ai/model-embeddings-en";
(async () => {
const model = await initModel(modelSource);
const embeddings = await model.embed(["hello", "world"]);
console.log(distance(embeddings[0], embeddings[1])));
})();
Examples
See the examples directory for examples.
Development
This repository uses Lerna to manage packages, and Vitest to run tests.
Run tests with this method:
npm run test
License
Apache 2.0, except for dependencies.
Acknowledgements
This project is derived from TensorFlow.js and the Universal Sentence Encoder model library, which are also Apache 2.0 licensed.