Supported Transformers & Diffusers Tasks
Inference Endpoints offers out-of-the-box support for Machine Learning tasks from the following libraries:
- Transformers
- Sentence-Transformers
- Diffusers (for the Text To Image task)
Below is a table of Hugging Face managed supported tasks for Inference Endpoint. These tasks don’t require any form of code or “custom container” to deploy an Endpoint. If you want to customize any of the tasks below, or want to write your own custom task, check out the “Create your own inference handler” section for more information.
Most of the tasks below uses the pipeline
object, and more information about what additional parameters can be sent to the endpoint is available here.
Task | Framework | Out of the box Support |
---|---|---|
Text To Image | Diffusers | ✅ |
Text Classification | Transformers | ✅ |
Zero Shot Classification | Transformers | ✅ |
Token Classifiation | Transformers | ✅ |
Question Answering | Transformers | ✅ |
Fill Mask | Transformers | ✅ |
Summarization | Transformers | ✅ |
Translation | Transformers | ✅ |
Text to Text Generation | Transformers | ✅ |
Text Generation | Transformers | ✅ |
Feature Extraction | Transformers | ✅ |
Sentence Embeddings | Sentence Transformers | ✅ |
Sentence Similarity | Sentence Transformers | ✅ |
Ranking | Sentence Transformers | ✅ |
Image Classification | Transformers | ✅ |
Automatic Speech Recognition | Transformers | ✅ |
Audio Classification | Transformers | ✅ |
Object Detection | Transformers | ✅ |
Image Segmentation | Transformers | ✅ |
Table Question Answering | Transformers | ✅ |
Conversational | Transformers | ✅ |
Custom | Custom | ✅ |
Visual Question Answering | Transformers | ❌ |
Zero Shot Image Classification | Transformers | ❌ |
Example Request payloads
See the following request examples for some of the tasks:
Custom Handler
{
"inputs": "This is a sample input",
"moreData": 1,
"customTask": true
}
Text Classification
For additional parameters, see this reference.
Classifying a single text
{
"inputs": "This sound track was beautiful! It paints the scenery in your mind so well I would recomend it
even to people who hate vid. game music!"
}
Classifying a text pair
{
"inputs": {
"text": "This sound track was beautiful!",
"text_pair": "It paints the scenery in your mind so well I would recomend it even to people who hate vid. game music!"
}
}
Zero Shot Classification
For additional parameters, see this reference.
{
"inputs": "Hi, I recently bought a device from your company but it is not working as advertised and I would like to get reimbursed!",
"parameters": {
"candidate_labels": ["refund", "legal", "faq"]
}
}
Token Classifiation
For additional parameters, see this reference.
{
"inputs": "This sound track was beautiful! It paints the scenery in your mind so well I would recomend it
even to people who hate vid. game music!"
}
Question Answering
For additional parameters, see this reference.
{
"inputs": {
"question": "What is used for inference?",
"context": "My Name is Philipp and I live in Nuremberg. This model is used with sagemaker for inference."
}
}
Fill Mask
For additional parameters, see this reference.
{
"inputs": "This sound track was <mask>! It paints the scenery in your mind so well I would recomend it
even to people who hate vid. game music!"
}
Summarization
For additional parameters, see this reference.
{
"inputs": "This sound track was beautiful! It paints the scenery in your mind so well I would recomend it
even to people who hate vid. game music!"
}
Translation
For additional parameters, see this reference.
{
"inputs": "This sound track was beautiful! It paints the scenery in your mind so well I would recomend it
even to people who hate vid. game music!"
}
Text to Text Generation
For additional parameters, see this reference.
{
"inputs": "This sound track was beautiful! It paints the scenery in your mind so well I would recomend it
even to people who hate vid. game music!"
}
Text Generation
For additional parameters, see this reference.
{
"inputs": "This sound track was beautiful! It paints the scenery in your mind so well I would recomend it
even to people who hate vid. game music!"
}
Feature Extraction
For additional parameters, see this reference.
{
"inputs": "This sound track was beautiful! It paints the scenery in your mind so well I would recomend it
even to people who hate vid. game music!"
}
Sentence Embeddings
If using a TEI container, see this reference for additional parameters.
{
"inputs": "This sound track was beautiful! It paints the scenery in your mind so well I would recomend it
even to people who hate vid. game music!"
}
Sentence similarity
{
"inputs": {
"sentences": ["This sound track was beautiful!", "It paints the scenery in your mind so well"],
"source_sentence": "What a wonderful day to listen to music"
}
}
Ranking
{
"inputs": ["This sound track was beautiful!", "It paints the scenery in your mind so well"]
}
Image Classification
Image Classification can receive json
payloads or binary data from a image
directly.
JSON
{
"inputs": "/9j/4AAQSkZJRgABAQEBLAEsAAD/2wBDAAMCAgI"
}
Binary
curl --request POST \
--url https://{ENDPOINT}/ \
--header 'Content-Type: image/jpg' \
--header 'Authorization: Bearer {HF_TOKEN}' \
--data-binary '@test.jpg'
Automatic Speech Recognition
Automatic Speech Recognition can receive json
payloads or binary data from a audio
directly. For additional parameters, see this reference.
JSON
{
"inputs": "/9j/4AAQSkZJRgABAQEBLAEsAAD/2wBDAAMCAgI"
}
Binary
curl --request POST \
--url https://{ENDPOINT}/ \
--header 'Content-Type: audio/x-flac' \
--header 'Authorization: Bearer {HF_TOKEN}' \
--data-binary '@sample.flac'
Audio Classification
Audio Classification can receive json
payloads or binary data from a audio
directly. For additional parameters, see this reference.
JSON
{
"inputs": "/9j/4AAQSkZJRgABAQEBLAEsAAD/2wBDAAMCAgI"
}
Binary
curl --request POST \
--url https://{ENDPOINT}/ \
--header 'Content-Type: audio/x-flac' \
--header 'Authorization: Bearer {HF_TOKEN}' \
--data-binary '@sample.flac'
Object Detection
Object Detection can receive json
payloads or binary data from a image
directly. For additional parameters, see this reference.
JSON
{
"inputs": "/9j/4AAQSkZJRgABAQEBLAEsAAD/2wBDAAMCAgI"
}
Binary
curl --request POST \
--url https://{ENDPOINT}/ \
--header 'Content-Type: image/jpg' \
--header 'Authorization: Bearer {HF_TOKEN}' \
--data-binary '@test.jpg'
Image Segmentation
Image Segmentation can receive json
payloads or binary data from a image
directly. For additional parameters, see this reference.
JSON
{
"inputs": "/9j/4AAQSkZJRgABAQEBLAEsAAD/2wBDAAMCAgI"
}
Binary
curl --request POST \
--url https://{ENDPOINT}/ \
--header 'Content-Type: image/jpg' \
--header 'Authorization: Bearer {HF_TOKEN}' \
--data-binary '@test.jpg'
Table Question Answering
For additional parameters, see this reference.
{
"inputs": {
"query": "How many stars does the transformers repository have?",
"table": {
"Repository": ["Transformers", "Datasets", "Tokenizers"],
"Stars": ["36542", "4512", "3934"],
"Contributors": ["651", "77", "34"],
"Programming language": ["Python", "Python", "Rust, Python and NodeJS"]
}
}
}
Conversational
For additional parameters, see this reference.
{"inputs": [
{
"role": "user",
"content": "Which movie is the best ?"
},
{
"role": "assistant",
"content": "It's Die Hard for sure."
},
{
"role": "user",
"content": "Can you explain why?"
}
]}
Text To Image
{
"inputs": "realistic render portrait realistic render portrait of group of flying blue whales towards the moon, intricate, toy, sci - fi, extremely detailed, digital painting, sculpted in zbrush, artstation, concept art, smooth, sharp focus, illustration, chiaroscuro lighting, golden ratio, incredible art by artgerm and greg rutkowski and alphonse mucha and simon stalenhag",
}
For text-to-image models, note that currently your model repo needs to be a diffusers model with the full weights in it (i.e., not just a LoRA).
Additional parameters
You can add additional parameters, which are supported by the pipelines
api from transformers.
For Example if you have a text-generation
pipeline you can provide generation_kwargs
for repetition_penalty
or max_length
{
"inputs": "Hugging Face, the winner of VentureBeat’s Innovation in Natural Language Process/Understanding Award for 2021, is looking to level the playing field. The team, launched by Clément Delangue and Julien Chaumond in 2016, was recognized for its work in democratizing NLP, the global market value for which is expected to hit $35.1 billion by 2026. This week, Google’s former head of Ethical AI Margaret Mitchell joined the team.",
"parameters": {
"repetition_penalty": 4.0,
"max_length": 128
}
}