await inference.translation({
model: 't5-base',
inputs: 'My name is Wolfgang and I live in Berlin'
})
await hf.translation({
model: "facebook/nllb-200-distilled-600M",
inputs: "how is the weather like in Gaborone",
parameters : {
src_lang: "eng_Latn",
tgt_lang: "sot_Latn"
}
})
await inference.textToImage({
model: 'stabilityai/stable-diffusion-2',
inputs: 'award winning high resolution photo of a giant tortoise/((ladybird)) hybrid, [trending on artstation]',
parameters: {
negative_prompt: 'blurry',
}
})
This is a collection of JS libraries to interact with the Hugging Face API, with TS types included.
- @huggingface/inference: Use the Inference API to make calls to 100,000+ Machine Learning models, or your own inference endpoints!
- @huggingface/hub: Interact with huggingface.co to create or delete repos and commit / download files
- @huggingface/agents: Interact with HF models through a natural language interface
With more to come, like @huggingface/endpoints
to manage your HF Endpoints!
We use modern features to avoid polyfills and dependencies, so the libraries will only work on modern browsers / Node.js >= 18 / Bun / Deno.
The libraries are still very young, please help us by opening issues!
To install via NPM, you can download the libraries as needed:
npm install @huggingface/inference
npm install @huggingface/hub
npm install @huggingface/agents
Then import the libraries in your code:
import { HfInference } from "@huggingface/inference";
import { HfAgent } from "@huggingface/agents";
import { createRepo, commit, deleteRepo, listFiles } from "@huggingface/hub";
import type { RepoId, Credentials } from "@huggingface/hub";
You can run our packages with vanilla JS, without any bundler, by using a CDN or static hosting. Using ES modules, i.e. <script type="module">
, you can import the libraries in your code:
<script type="module">
import { HfInference } from 'https://cdn.jsdelivr.net/npm/@huggingface/inference@2.6.4/+esm';
import { createRepo, commit, deleteRepo, listFiles } from "https://cdn.jsdelivr.net/npm/@huggingface/hub@0.13.0/+esm";
</script>
// esm.sh
import { HfInference } from "https://esm.sh/@huggingface/inference"
import { HfAgent } from "https://esm.sh/@huggingface/agents";
import { createRepo, commit, deleteRepo, listFiles } from "https://esm.sh/@huggingface/hub"
// or npm:
import { HfInference } from "npm:@huggingface/inference"
import { HfAgent } from "npm:@huggingface/agents";
import { createRepo, commit, deleteRepo, listFiles } from "npm:@huggingface/hub"
Get your HF access token in your account settings.
import { HfInference } from "@huggingface/inference";
const HF_TOKEN = "hf_...";
const inference = new HfInference(HF_TOKEN);
// You can also omit "model" to use the recommended model for the task
await inference.translation({
model: 't5-base',
inputs: 'My name is Wolfgang and I live in Amsterdam'
})
await inference.textToImage({
model: 'stabilityai/stable-diffusion-2',
inputs: 'award winning high resolution photo of a giant tortoise/((ladybird)) hybrid, [trending on artstation]',
parameters: {
negative_prompt: 'blurry',
}
})
await inference.imageToText({
data: await (await fetch('https://picsum.photos/300/300')).blob(),
model: 'nlpconnect/vit-gpt2-image-captioning',
})
// Using your own inference endpoint: https://hf.co/docs/inference-endpoints/
const gpt2 = inference.endpoint('https://xyz.eu-west-1.aws.endpoints.huggingface.cloud/gpt2');
const { generated_text } = await gpt2.textGeneration({inputs: 'The answer to the universe is'});
import {HfAgent, LLMFromHub, defaultTools} from '@huggingface/agents';
const HF_TOKEN = "hf_...";
const agent = new HfAgent(
HF_TOKEN,
LLMFromHub(HF_TOKEN),
[...defaultTools]
);
// you can generate the code, inspect it and then run it
const code = await agent.generateCode("Draw a picture of a cat wearing a top hat. Then caption the picture and read it out loud.");
console.log(code);
const messages = await agent.evaluateCode(code)
console.log(messages); // contains the data
// or you can run the code directly, however you can't check that the code is safe to execute this way, use at your own risk.
const messages = await agent.run("Draw a picture of a cat wearing a top hat. Then caption the picture and read it out loud.")
console.log(messages);
import { createRepo, uploadFile, deleteFiles } from "@huggingface/hub";
const HF_TOKEN = "hf_...";
await createRepo({
repo: "my-user/nlp-model", // or {type: "model", name: "my-user/nlp-test"},
credentials: {accessToken: HF_TOKEN}
});
await uploadFile({
repo: "my-user/nlp-model",
credentials: {accessToken: HF_TOKEN},
// Can work with native File in browsers
file: {
path: "pytorch_model.bin",
content: new Blob(...)
}
});
await deleteFiles({
repo: {type: "space", name: "my-user/my-space"}, // or "spaces/my-user/my-space"
credentials: {accessToken: HF_TOKEN},
paths: ["README.md", ".gitattributes"]
});
There are more features of course, check each library's README!
sudo corepack enable
pnpm install
pnpm -r format:check
pnpm -r lint:check
pnpm -r test
pnpm -r build
This will generate ESM and CJS javascript files in packages/*/dist
, eg packages/inference/dist/index.mjs
.