The main features for this release are:
- Support for Inference endpoints! credits to @vvmnnnkv
- Custom requests via
requestandstreamingRequest - Possibility to import the methods directly without the need to instantiate an
HfInferenceclass: great for tree-shaking - New NLP task:
featureExtraction(the existingfeatureExtractiontask was renamed tosentenceSimilarity, oops!), credits @radames
The other changes for recent versions are detailed at the end (including textGenerationStream for streaming text generation, ...)
Support for Inference Endpoints
Inference endpoints are the next step for using Inference API for a specific model in production.
The different tiers for inference are:
- Inference API (no token): restrictive rate limits
- Inference API - free account: usable rate limits
- Inference API - PRO account: better rate limits
- Inference Endpoints: Unlimited API calls, possibility to deploy on the cloud provider / VPC / infra of your choice, scaling
Here's how you can call an inference endpoint:
const inference = new HfInference("hf_...");
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'});You can even use the free inference API backend with this syntax:
const endpoint = inference.endpoint("https://api-inference.huggingface.co/models/google/flan-t5-xxl");
const { generated_text } = await endpoint.textGeneration({
inputs: "one plus two equals",
});It's easy to switch between Inference API & Inference Endpoints. So easy, that you can even do this:
await inference.textGeneration({
model: 'https://xyz.eu-west-1.aws.endpoints.huggingface.cloud/gpt2',
inputs: 'The answer to the universe is'
});Custom requests
@huggingface/inference supports tasks from https://huggingface.co/tasks, and is typed accordingly. But what if your model has additional inputs, or even custom inputs or outputs?
You can now use .request and .streamingRequest!
const output = await inference.request({
inputs: "blablabla",
parameters: {
custom_parameter_1: ...,
...
}
});For streaming responses, use streamingRequest rather than request.
All existing tasks can use request or streamingRequest instead π€―
const {generated_text} = await inference.textGeneration({model: "gpt2", inputs: "The answer to the universe is"});
// small output change for .textGeneration to .request: the raw response is actually an array
const [{generated_text}] = await inference.request({model: "gpt2", inputs: "The answer to the universe is"});
for await (const output of inference.textGenerationStream({
model: "google/flan-t5-xxl",
inputs: "Repeat 'one two three four'"
})) {}
// is equivalent to
for await (const output of inference.streamingRequest({
model: "google/flan-t5-xxl",
inputs: "Repeat 'one two three four'"
})) {}Of course, request and streamingRequest can also be used with Inference Endpoints! Actually, if you make your own custom models and inputs / outputs for your business use case, it'll probably be what you use.
Individual imports & tree-shakability
You don't like the current API, you don't like classes, and want the strict minimum in your bundle? No need to say more, I know which frontend framework (or should I say library ;)) you use.
Don't worry, you can import individual functions - this release of @hugginface/inference is all about choice and flexibility:
import { textGeneration } from "@huggingface/inference";
await textGeneration({
accessToken: "hf_...", // new param
model: "gpt2", // or your own inference endpoint
inputs: "The best, most efficient and purest frontend framework is: "
});Breaking changes
questionAnswerandtableQuestionAnswerhave been renamed toquestionAnsweringandtableQuestionAnswering- The existing
featureExtractionhas been renamed tosentenceSimilarityand a newfeatureExtractionwas created π
Other changes from recent releases:
textGenerationStreamto generate streaming content by returning anAsyncIterable. Yay forfor await! Credits to @vvmnnnkv. DemoimageToTextto caption images among other things. Credits to @vvmnnnkv. Demo- Validation of outputs: Use
requestorstreamingRequestto skip this validation. Credits to @mishig25