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# coding=utf-8
# Copyright 2023-present, the HuggingFace Inc. team.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
#
# WARNING
# This entire file has been adapted from the sync-client code in `src/huggingface_hub/inference/_client.py`.
# Any change in InferenceClient will be automatically reflected in AsyncInferenceClient.
# To re-generate the code, run `make style` or `python ./utils/generate_async_inference_client.py --update`.
# WARNING
import asyncio
import logging
import time
import warnings
from dataclasses import asdict
from typing import (
TYPE_CHECKING,
Any,
AsyncIterable,
Dict,
List,
Literal,
Optional,
Union,
overload,
)
from requests.structures import CaseInsensitiveDict
from huggingface_hub.constants import ALL_INFERENCE_API_FRAMEWORKS, INFERENCE_ENDPOINT, MAIN_INFERENCE_API_FRAMEWORKS
from huggingface_hub.inference._common import (
TASKS_EXPECTING_IMAGES,
ContentT,
InferenceTimeoutError,
ModelStatus,
_async_stream_text_generation_response,
_b64_encode,
_b64_to_image,
_bytes_to_dict,
_bytes_to_image,
_bytes_to_list,
_fetch_recommended_models,
_import_numpy,
_is_tgi_server,
_open_as_binary,
_set_as_non_tgi,
)
from huggingface_hub.inference._text_generation import (
TextGenerationParameters,
TextGenerationRequest,
TextGenerationResponse,
TextGenerationStreamResponse,
raise_text_generation_error,
)
from huggingface_hub.inference._types import (
ClassificationOutput,
ConversationalOutput,
FillMaskOutput,
ImageSegmentationOutput,
ObjectDetectionOutput,
QuestionAnsweringOutput,
TableQuestionAnsweringOutput,
TokenClassificationOutput,
)
from huggingface_hub.utils import (
build_hf_headers,
)
from .._common import _async_yield_from, _import_aiohttp
if TYPE_CHECKING:
import numpy as np
from PIL import Image
logger = logging.getLogger(__name__)
class AsyncInferenceClient:
"""
Initialize a new Inference Client.
[`InferenceClient`] aims to provide a unified experience to perform inference. The client can be used
seamlessly with either the (free) Inference API or self-hosted Inference Endpoints.
Args:
model (`str`, `optional`):
The model to run inference with. Can be a model id hosted on the Hugging Face Hub, e.g. `bigcode/starcoder`
or a URL to a deployed Inference Endpoint. Defaults to None, in which case a recommended model is
automatically selected for the task.
token (`str`, *optional*):
Hugging Face token. Will default to the locally saved token. Pass `token=False` if you don't want to send
your token to the server.
timeout (`float`, `optional`):
The maximum number of seconds to wait for a response from the server. Loading a new model in Inference
API can take up to several minutes. Defaults to None, meaning it will loop until the server is available.
headers (`Dict[str, str]`, `optional`):
Additional headers to send to the server. By default only the authorization and user-agent headers are sent.
Values in this dictionary will override the default values.
cookies (`Dict[str, str]`, `optional`):
Additional cookies to send to the server.
"""
def __init__(
self,
model: Optional[str] = None,
token: Union[str, bool, None] = None,
timeout: Optional[float] = None,
headers: Optional[Dict[str, str]] = None,
cookies: Optional[Dict[str, str]] = None,
) -> None:
self.model: Optional[str] = model
self.headers = CaseInsensitiveDict(build_hf_headers(token=token)) # contains 'authorization' + 'user-agent'
if headers is not None:
self.headers.update(headers)
self.cookies = cookies
self.timeout = timeout
def __repr__(self):
return f"<InferenceClient(model='{self.model if self.model else ''}', timeout={self.timeout})>"
@overload
async def post( # type: ignore[misc]
self,
*,
json: Optional[Union[str, Dict, List]] = None,
data: Optional[ContentT] = None,
model: Optional[str] = None,
task: Optional[str] = None,
stream: Literal[False] = ...,
) -> bytes:
pass
@overload
async def post(
self,
*,
json: Optional[Union[str, Dict, List]] = None,
data: Optional[ContentT] = None,
model: Optional[str] = None,
task: Optional[str] = None,
stream: Literal[True] = ...,
) -> AsyncIterable[bytes]:
pass
async def post(
self,
*,
json: Optional[Union[str, Dict, List]] = None,
data: Optional[ContentT] = None,
model: Optional[str] = None,
task: Optional[str] = None,
stream: bool = False,
) -> Union[bytes, AsyncIterable[bytes]]:
"""
Make a POST request to the inference server.
Args:
json (`Union[str, Dict, List]`, *optional*):
The JSON data to send in the request body, specific to each task. Defaults to None.
data (`Union[str, Path, bytes, BinaryIO]`, *optional*):
The content to send in the request body, specific to each task.
It can be raw bytes, a pointer to an opened file, a local file path,
or a URL to an online resource (image, audio file,...). If both `json` and `data` are passed,
`data` will take precedence. At least `json` or `data` must be provided. Defaults to None.
model (`str`, *optional*):
The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed
Inference Endpoint. Will override the model defined at the instance level. Defaults to None.
task (`str`, *optional*):
The task to perform on the inference. All available tasks can be found
[here](https://huggingface.co/tasks). Used only to default to a recommended model if `model` is not
provided. At least `model` or `task` must be provided. Defaults to None.
stream (`bool`, *optional*):
Whether to iterate over streaming APIs.
Returns:
bytes: The raw bytes returned by the server.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
"""
aiohttp = _import_aiohttp()
url = self._resolve_url(model, task)
if data is not None and json is not None:
warnings.warn("Ignoring `json` as `data` is passed as binary.")
# Set Accept header if relevant
headers = self.headers.copy()
if task in TASKS_EXPECTING_IMAGES and "Accept" not in headers:
headers["Accept"] = "image/png"
t0 = time.time()
timeout = self.timeout
while True:
with _open_as_binary(data) as data_as_binary:
# Do not use context manager as we don't want to close the connection immediately when returning
# a stream
client = aiohttp.ClientSession(
headers=headers, cookies=self.cookies, timeout=aiohttp.ClientTimeout(self.timeout)
)
try:
response = await client.post(url, json=json, data=data_as_binary)
response_error_payload = None
if response.status != 200:
try:
response_error_payload = await response.json() # get payload before connection closed
except Exception:
pass
response.raise_for_status()
if stream:
return _async_yield_from(client, response)
else:
content = await response.read()
await client.close()
return content
except asyncio.TimeoutError as error:
await client.close()
# Convert any `TimeoutError` to a `InferenceTimeoutError`
raise InferenceTimeoutError(f"Inference call timed out: {url}") from error # type: ignore
except aiohttp.ClientResponseError as error:
error.response_error_payload = response_error_payload
await client.close()
if response.status == 422 and task is not None:
error.message += f". Make sure '{task}' task is supported by the model."
if response.status == 503:
# If Model is unavailable, either raise a TimeoutError...
if timeout is not None and time.time() - t0 > timeout:
raise InferenceTimeoutError(
f"Model not loaded on the server: {url}. Please retry with a higher timeout"
f" (current: {self.timeout}).",
request=error.request,
response=error.response,
) from error
# ...or wait 1s and retry
logger.info(f"Waiting for model to be loaded on the server: {error}")
time.sleep(1)
if timeout is not None:
timeout = max(self.timeout - (time.time() - t0), 1) # type: ignore
continue
raise error
async def audio_classification(
self,
audio: ContentT,
*,
model: Optional[str] = None,
) -> List[ClassificationOutput]:
"""
Perform audio classification on the provided audio content.
Args:
audio (Union[str, Path, bytes, BinaryIO]):
The audio content to classify. It can be raw audio bytes, a local audio file, or a URL pointing to an
audio file.
model (`str`, *optional*):
The model to use for audio classification. Can be a model ID hosted on the Hugging Face Hub
or a URL to a deployed Inference Endpoint. If not provided, the default recommended model for
audio classification will be used.
Returns:
`List[Dict]`: The classification output containing the predicted label and its confidence.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.audio_classification("audio.flac")
[{'score': 0.4976358711719513, 'label': 'hap'}, {'score': 0.3677836060523987, 'label': 'neu'},...]
```
"""
response = await self.post(data=audio, model=model, task="audio-classification")
return _bytes_to_list(response)
async def automatic_speech_recognition(
self,
audio: ContentT,
*,
model: Optional[str] = None,
) -> str:
"""
Perform automatic speech recognition (ASR or audio-to-text) on the given audio content.
Args:
audio (Union[str, Path, bytes, BinaryIO]):
The content to transcribe. It can be raw audio bytes, local audio file, or a URL to an audio file.
model (`str`, *optional*):
The model to use for ASR. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed
Inference Endpoint. If not provided, the default recommended model for ASR will be used.
Returns:
str: The transcribed text.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.automatic_speech_recognition("hello_world.flac")
"hello world"
```
"""
response = await self.post(data=audio, model=model, task="automatic-speech-recognition")
return _bytes_to_dict(response)["text"]
async def conversational(
self,
text: str,
generated_responses: Optional[List[str]] = None,
past_user_inputs: Optional[List[str]] = None,
*,
parameters: Optional[Dict[str, Any]] = None,
model: Optional[str] = None,
) -> ConversationalOutput:
"""
Generate conversational responses based on the given input text (i.e. chat with the API).
Args:
text (`str`):
The last input from the user in the conversation.
generated_responses (`List[str]`, *optional*):
A list of strings corresponding to the earlier replies from the model. Defaults to None.
past_user_inputs (`List[str]`, *optional*):
A list of strings corresponding to the earlier replies from the user. Should be the same length as
`generated_responses`. Defaults to None.
parameters (`Dict[str, Any]`, *optional*):
Additional parameters for the conversational task. Defaults to None. For more details about the available
parameters, please refer to [this page](https://huggingface.co/docs/api-inference/detailed_parameters#conversational-task)
model (`str`, *optional*):
The model to use for the conversational task. Can be a model ID hosted on the Hugging Face Hub or a URL to
a deployed Inference Endpoint. If not provided, the default recommended conversational model will be used.
Defaults to None.
Returns:
`Dict`: The generated conversational output.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> output = await client.conversational("Hi, who are you?")
>>> output
{'generated_text': 'I am the one who knocks.', 'conversation': {'generated_responses': ['I am the one who knocks.'], 'past_user_inputs': ['Hi, who are you?']}, 'warnings': ['Setting `pad_token_id` to `eos_token_id`:50256 async for open-end generation.']}
>>> await client.conversational(
... "Wow, that's scary!",
... generated_responses=output["conversation"]["generated_responses"],
... past_user_inputs=output["conversation"]["past_user_inputs"],
... )
```
"""
payload: Dict[str, Any] = {"inputs": {"text": text}}
if generated_responses is not None:
payload["inputs"]["generated_responses"] = generated_responses
if past_user_inputs is not None:
payload["inputs"]["past_user_inputs"] = past_user_inputs
if parameters is not None:
payload["parameters"] = parameters
response = await self.post(json=payload, model=model, task="conversational")
return _bytes_to_dict(response) # type: ignore
async def visual_question_answering(
self,
image: ContentT,
question: str,
*,
model: Optional[str] = None,
) -> List[str]:
"""
Answering open-ended questions based on an image.
Args:
image (`Union[str, Path, bytes, BinaryIO]`):
The input image for the context. It can be raw bytes, an image file, or a URL to an online image.
question (`str`):
Question to be answered.
model (`str`, *optional*):
The model to use for the visual question answering task. Can be a model ID hosted on the Hugging Face Hub or a URL to
a deployed Inference Endpoint. If not provided, the default recommended visual question answering model will be used.
Defaults to None.
Returns:
`List[Dict]`: a list of dictionaries containing the predicted label and associated probability.
Raises:
`InferenceTimeoutError`:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.visual_question_answering(
... image="https://huggingface.co/datasets/mishig/sample_images/resolve/main/tiger.jpg",
... question="What is the animal doing?"
... )
[{'score': 0.778609573841095, 'answer': 'laying down'},{'score': 0.6957435607910156, 'answer': 'sitting'}, ...]
```
"""
payload: Dict[str, Any] = {"question": question, "image": _b64_encode(image)}
response = await self.post(json=payload, model=model, task="visual-question-answering")
return _bytes_to_list(response)
async def document_question_answering(
self,
image: ContentT,
question: str,
*,
model: Optional[str] = None,
) -> List[QuestionAnsweringOutput]:
"""
Answer questions on document images.
Args:
image (`Union[str, Path, bytes, BinaryIO]`):
The input image for the context. It can be raw bytes, an image file, or a URL to an online image.
question (`str`):
Question to be answered.
model (`str`, *optional*):
The model to use for the document question answering task. Can be a model ID hosted on the Hugging Face Hub or a URL to
a deployed Inference Endpoint. If not provided, the default recommended document question answering model will be used.
Defaults to None.
Returns:
`List[Dict]`: a list of dictionaries containing the predicted label, associated probability, word ids, and page number.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.document_question_answering(image="https://huggingface.co/spaces/impira/docquery/resolve/2359223c1837a7587402bda0f2643382a6eefeab/invoice.png", question="What is the invoice number?")
[{'score': 0.42515629529953003, 'answer': 'us-001', 'start': 16, 'end': 16}]
```
"""
payload: Dict[str, Any] = {"question": question, "image": _b64_encode(image)}
response = await self.post(json=payload, model=model, task="document-question-answering")
return _bytes_to_list(response)
async def feature_extraction(self, text: str, *, model: Optional[str] = None) -> "np.ndarray":
"""
Generate embeddings for a given text.
Args:
text (`str`):
The text to embed.
model (`str`, *optional*):
The model to use for the conversational task. Can be a model ID hosted on the Hugging Face Hub or a URL to
a deployed Inference Endpoint. If not provided, the default recommended conversational model will be used.
Defaults to None.
Returns:
`np.ndarray`: The embedding representing the input text as a float32 numpy array.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.feature_extraction("Hi, who are you?")
array([[ 2.424802 , 2.93384 , 1.1750331 , ..., 1.240499, -0.13776633, -0.7889173 ],
[-0.42943227, -0.6364878 , -1.693462 , ..., 0.41978157, -2.4336355 , 0.6162071 ],
...,
[ 0.28552425, -0.928395 , -1.2077185 , ..., 0.76810825, -2.1069427 , 0.6236161 ]], dtype=float32)
```
"""
response = await self.post(json={"inputs": text}, model=model, task="feature-extraction")
np = _import_numpy()
return np.array(_bytes_to_dict(response), dtype="float32")
async def fill_mask(self, text: str, *, model: Optional[str] = None) -> List[FillMaskOutput]:
"""
Fill in a hole with a missing word (token to be precise).
Args:
text (`str`):
a string to be filled from, must contain the [MASK] token (check model card for exact name of the mask).
model (`str`, *optional*):
The model to use for the fill mask task. Can be a model ID hosted on the Hugging Face Hub or a URL to
a deployed Inference Endpoint. If not provided, the default recommended fill mask model will be used.
Defaults to None.
Returns:
`List[Dict]`: a list of fill mask output dictionaries containing the predicted label, associated
probability, token reference, and completed text.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.fill_mask("The goal of life is <mask>.")
[{'score': 0.06897063553333282,
'token': 11098,
'token_str': ' happiness',
'sequence': 'The goal of life is happiness.'},
{'score': 0.06554922461509705,
'token': 45075,
'token_str': ' immortality',
'sequence': 'The goal of life is immortality.'}]
```
"""
response = await self.post(json={"inputs": text}, model=model, task="fill-mask")
return _bytes_to_list(response)
async def image_classification(
self,
image: ContentT,
*,
model: Optional[str] = None,
) -> List[ClassificationOutput]:
"""
Perform image classification on the given image using the specified model.
Args:
image (`Union[str, Path, bytes, BinaryIO]`):
The image to classify. It can be raw bytes, an image file, or a URL to an online image.
model (`str`, *optional*):
The model to use for image classification. Can be a model ID hosted on the Hugging Face Hub or a URL to a
deployed Inference Endpoint. If not provided, the default recommended model for image classification will be used.
Returns:
`List[Dict]`: a list of dictionaries containing the predicted label and associated probability.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.image_classification("https://upload.wikimedia.org/wikipedia/commons/thumb/4/43/Cute_dog.jpg/320px-Cute_dog.jpg")
[{'score': 0.9779096841812134, 'label': 'Blenheim spaniel'}, ...]
```
"""
response = await self.post(data=image, model=model, task="image-classification")
return _bytes_to_list(response)
async def image_segmentation(
self,
image: ContentT,
*,
model: Optional[str] = None,
) -> List[ImageSegmentationOutput]:
"""
Perform image segmentation on the given image using the specified model.
<Tip warning={true}>
You must have `PIL` installed if you want to work with images (`pip install Pillow`).
</Tip>
Args:
image (`Union[str, Path, bytes, BinaryIO]`):
The image to segment. It can be raw bytes, an image file, or a URL to an online image.
model (`str`, *optional*):
The model to use for image segmentation. Can be a model ID hosted on the Hugging Face Hub or a URL to a
deployed Inference Endpoint. If not provided, the default recommended model for image segmentation will be used.
Returns:
`List[Dict]`: A list of dictionaries containing the segmented masks and associated attributes.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.image_segmentation("cat.jpg"):
[{'score': 0.989008, 'label': 'LABEL_184', 'mask': <PIL.PngImagePlugin.PngImageFile image mode=L size=400x300 at 0x7FDD2B129CC0>}, ...]
```
"""
# Segment
response = await self.post(data=image, model=model, task="image-segmentation")
output = _bytes_to_dict(response)
# Parse masks as PIL Image
if not isinstance(output, list):
raise ValueError(f"Server output must be a list. Got {type(output)}: {str(output)[:200]}...")
for item in output:
item["mask"] = _b64_to_image(item["mask"])
return output
async def image_to_image(
self,
image: ContentT,
prompt: Optional[str] = None,
*,
negative_prompt: Optional[str] = None,
height: Optional[int] = None,
width: Optional[int] = None,
num_inference_steps: Optional[int] = None,
guidance_scale: Optional[float] = None,
model: Optional[str] = None,
**kwargs,
) -> "Image":
"""
Perform image-to-image translation using a specified model.
<Tip warning={true}>
You must have `PIL` installed if you want to work with images (`pip install Pillow`).
</Tip>
Args:
image (`Union[str, Path, bytes, BinaryIO]`):
The input image for translation. It can be raw bytes, an image file, or a URL to an online image.
prompt (`str`, *optional*):
The text prompt to guide the image generation.
negative_prompt (`str`, *optional*):
A negative prompt to guide the translation process.
height (`int`, *optional*):
The height in pixels of the generated image.
width (`int`, *optional*):
The width in pixels of the generated image.
num_inference_steps (`int`, *optional*):
The number of denoising steps. More denoising steps usually lead to a higher quality image at the
expense of slower inference.
guidance_scale (`float`, *optional*):
Higher guidance scale encourages to generate images that are closely linked to the text `prompt`,
usually at the expense of lower image quality.
model (`str`, *optional*):
The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed
Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None.
Returns:
`Image`: The translated image.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> image = await client.image_to_image("cat.jpg", prompt="turn the cat into a tiger")
>>> image.save("tiger.jpg")
```
"""
parameters = {
"prompt": prompt,
"negative_prompt": negative_prompt,
"height": height,
"width": width,
"num_inference_steps": num_inference_steps,
"guidance_scale": guidance_scale,
**kwargs,
}
if all(parameter is None for parameter in parameters.values()):
# Either only an image to send => send as raw bytes
data = image
payload: Optional[Dict[str, Any]] = None
else:
# Or an image + some parameters => use base64 encoding
data = None
payload = {"inputs": _b64_encode(image)}
for key, value in parameters.items():
if value is not None:
payload.setdefault("parameters", {})[key] = value
response = await self.post(json=payload, data=data, model=model, task="image-to-image")
return _bytes_to_image(response)
async def image_to_text(self, image: ContentT, *, model: Optional[str] = None) -> str:
"""
Takes an input image and return text.
Models can have very different outputs depending on your use case (image captioning, optical character recognition
(OCR), Pix2Struct, etc). Please have a look to the model card to learn more about a model's specificities.
Args:
image (`Union[str, Path, bytes, BinaryIO]`):
The input image to caption. It can be raw bytes, an image file, or a URL to an online image..
model (`str`, *optional*):
The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed
Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None.
Returns:
`str`: The generated text.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.image_to_text("cat.jpg")
'a cat standing in a grassy field '
>>> await client.image_to_text("https://upload.wikimedia.org/wikipedia/commons/thumb/4/43/Cute_dog.jpg/320px-Cute_dog.jpg")
'a dog laying on the grass next to a flower pot '
```
"""
response = await self.post(data=image, model=model, task="image-to-text")
return _bytes_to_dict(response)[0]["generated_text"]
async def list_deployed_models(
self, frameworks: Union[None, str, Literal["all"], List[str]] = None
) -> Dict[str, List[str]]:
"""
List models currently deployed on the Inference API service.
This helper checks deployed models framework by framework. By default, it will check the 4 main frameworks that
are supported and account for 95% of the hosted models. However, if you want a complete list of models you can
specify `frameworks="all"` as input. Alternatively, if you know before-hand which framework you are interested
in, you can also restrict to search to this one (e.g. `frameworks="text-generation-inference"`). The more
frameworks are checked, the more time it will take.
<Tip>
This endpoint is mostly useful for discoverability. If you already know which model you want to use and want to
check its availability, you can directly use [`~InferenceClient.get_model_status`].
</Tip>
Args:
frameworks (`Literal["all"]` or `List[str]` or `str`, *optional*):
The frameworks to filter on. By default only a subset of the available frameworks are tested. If set to
"all", all available frameworks will be tested. It is also possible to provide a single framework or a
custom set of frameworks to check.
Returns:
`Dict[str, List[str]]`: A dictionary mapping task names to a sorted list of model IDs.
Example:
```py
# Must be run in an async contextthon
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
# Discover zero-shot-classification models currently deployed
>>> models = await client.list_deployed_models()
>>> models["zero-shot-classification"]
['Narsil/deberta-large-mnli-zero-cls', 'facebook/bart-large-mnli', ...]
# List from only 1 framework
>>> await client.list_deployed_models("text-generation-inference")
{'text-generation': ['bigcode/starcoder', 'meta-llama/Llama-2-70b-chat-hf', ...], ...}
```
"""
# Resolve which frameworks to check
if frameworks is None:
frameworks = MAIN_INFERENCE_API_FRAMEWORKS
elif frameworks == "all":
frameworks = ALL_INFERENCE_API_FRAMEWORKS
elif isinstance(frameworks, str):
frameworks = [frameworks]
frameworks = list(set(frameworks))
# Fetch them iteratively
models_by_task: Dict[str, List[str]] = {}
def _unpack_response(framework: str, items: List[Dict]) -> None:
for model in items:
if framework == "sentence-transformers":
# Model running with the `sentence-transformers` framework can work with both tasks even if not
# branded as such in the API response
models_by_task.setdefault("feature-extraction", []).append(model["model_id"])
models_by_task.setdefault("sentence-similarity", []).append(model["model_id"])
else:
models_by_task.setdefault(model["task"], []).append(model["model_id"])
async def _fetch_framework(framework: str) -> None:
async with _import_aiohttp().ClientSession(headers=self.headers) as client:
response = await client.get(f"{INFERENCE_ENDPOINT}/framework/{framework}")
response.raise_for_status()
_unpack_response(framework, await response.json())
import asyncio
await asyncio.gather(*[_fetch_framework(framework) for framework in frameworks])
# Sort alphabetically for discoverability and return
for task, models in models_by_task.items():
models_by_task[task] = sorted(set(models), key=lambda x: x.lower())
return models_by_task
async def object_detection(
self,
image: ContentT,
*,
model: Optional[str] = None,
) -> List[ObjectDetectionOutput]:
"""
Perform object detection on the given image using the specified model.
<Tip warning={true}>
You must have `PIL` installed if you want to work with images (`pip install Pillow`).
</Tip>
Args:
image (`Union[str, Path, bytes, BinaryIO]`):
The image to detect objects on. It can be raw bytes, an image file, or a URL to an online image.
model (`str`, *optional*):
The model to use for object detection. Can be a model ID hosted on the Hugging Face Hub or a URL to a
deployed Inference Endpoint. If not provided, the default recommended model for object detection (DETR) will be used.
Returns:
`List[ObjectDetectionOutput]`: A list of dictionaries containing the bounding boxes and associated attributes.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
`ValueError`:
If the request output is not a List.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.object_detection("people.jpg"):
[{"score":0.9486683011054993,"label":"person","box":{"xmin":59,"ymin":39,"xmax":420,"ymax":510}}, ... ]
```
"""
# detect objects
response = await self.post(data=image, model=model, task="object-detection")
output = _bytes_to_dict(response)
if not isinstance(output, list):
raise ValueError(f"Server output must be a list. Got {type(output)}: {str(output)[:200]}...")
return output
async def question_answering(
self, question: str, context: str, *, model: Optional[str] = None
) -> QuestionAnsweringOutput:
"""
Retrieve the answer to a question from a given text.
Args:
question (`str`):
Question to be answered.
context (`str`):
The context of the question.
model (`str`):
The model to use for the question answering task. Can be a model ID hosted on the Hugging Face Hub or a URL to
a deployed Inference Endpoint.
Returns:
`Dict`: a dictionary of question answering output containing the score, start index, end index, and answer.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.question_answering(question="What's my name?", context="My name is Clara and I live in Berkeley.")
{'score': 0.9326562285423279, 'start': 11, 'end': 16, 'answer': 'Clara'}
```
"""
payload: Dict[str, Any] = {"question": question, "context": context}
response = await self.post(
json=payload,
model=model,
task="question-answering",
)
return _bytes_to_dict(response) # type: ignore
async def sentence_similarity(
self, sentence: str, other_sentences: List[str], *, model: Optional[str] = None
) -> List[float]:
"""
Compute the semantic similarity between a sentence and a list of other sentences by comparing their embeddings.
Args:
sentence (`str`):
The main sentence to compare to others.
other_sentences (`List[str]`):
The list of sentences to compare to.
model (`str`, *optional*):
The model to use for the conversational task. Can be a model ID hosted on the Hugging Face Hub or a URL to
a deployed Inference Endpoint. If not provided, the default recommended conversational model will be used.
Defaults to None.
Returns:
`List[float]`: The embedding representing the input text.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.sentence_similarity(
... "Machine learning is so easy.",
... other_sentences=[
... "Deep learning is so straightforward.",
... "This is so difficult, like rocket science.",
... "I can't believe how much I struggled with this.",
... ],
... )
[0.7785726189613342, 0.45876261591911316, 0.2906220555305481]
```
"""
response = await self.post(
json={"inputs": {"source_sentence": sentence, "sentences": other_sentences}},
model=model,
task="sentence-similarity",
)
return _bytes_to_list(response)
async def summarization(
self,
text: str,
*,
parameters: Optional[Dict[str, Any]] = None,
model: Optional[str] = None,
) -> str:
"""
Generate a summary of a given text using a specified model.
Args:
text (`str`):
The input text to summarize.
parameters (`Dict[str, Any]`, *optional*):
Additional parameters for summarization. Check out this [page](https://huggingface.co/docs/api-inference/detailed_parameters#summarization-task)
for more details.
model (`str`, *optional*):
The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed
Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None.
Returns:
`str`: The generated summary text.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.summarization("The Eiffel tower...")
'The Eiffel tower is one of the most famous landmarks in the world....'
```
"""
payload: Dict[str, Any] = {"inputs": text}
if parameters is not None:
payload["parameters"] = parameters
response = await self.post(json=payload, model=model, task="summarization")
return _bytes_to_dict(response)[0]["summary_text"]
async def table_question_answering(
self, table: Dict[str, Any], query: str, *, model: Optional[str] = None
) -> TableQuestionAnsweringOutput:
"""
Retrieve the answer to a question from information given in a table.
Args:
table (`str`):
A table of data represented as a dict of lists where entries are headers and the lists are all the
values, all lists must have the same size.
query (`str`):
The query in plain text that you want to ask the table.
model (`str`):
The model to use for the table-question-answering task. Can be a model ID hosted on the Hugging Face
Hub or a URL to a deployed Inference Endpoint.
Returns:
`Dict`: a dictionary of table question answering output containing the answer, coordinates, cells and the aggregator used.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> query = "How many stars does the transformers repository have?"
>>> table = {"Repository": ["Transformers", "Datasets", "Tokenizers"], "Stars": ["36542", "4512", "3934"]}
>>> await client.table_question_answering(table, query, model="google/tapas-base-finetuned-wtq")
{'answer': 'AVERAGE > 36542', 'coordinates': [[0, 1]], 'cells': ['36542'], 'aggregator': 'AVERAGE'}
```
"""
response = await self.post(
json={
"query": query,
"table": table,
},
model=model,
task="table-question-answering",
)
return _bytes_to_dict(response) # type: ignore
async def tabular_classification(self, table: Dict[str, Any], *, model: str) -> List[str]:
"""
Classifying a target category (a group) based on a set of attributes.
Args:
table (`Dict[str, Any]`):
Set of attributes to classify.
model (`str`):
The model to use for the tabular-classification task. Can be a model ID hosted on the Hugging Face Hub or a URL to
a deployed Inference Endpoint.
Returns:
`List`: a list of labels, one per row in the initial table.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> table = {
... "fixed_acidity": ["7.4", "7.8", "10.3"],
... "volatile_acidity": ["0.7", "0.88", "0.32"],
... "citric_acid": ["0", "0", "0.45"],
... "residual_sugar": ["1.9", "2.6", "6.4"],
... "chlorides": ["0.076", "0.098", "0.073"],
... "free_sulfur_dioxide": ["11", "25", "5"],
... "total_sulfur_dioxide": ["34", "67", "13"],
... "density": ["0.9978", "0.9968", "0.9976"],
... "pH": ["3.51", "3.2", "3.23"],
... "sulphates": ["0.56", "0.68", "0.82"],
... "alcohol": ["9.4", "9.8", "12.6"],
... }
>>> await client.tabular_classification(table=table, model="julien-c/wine-quality")
["5", "5", "5"]
```
"""
response = await self.post(json={"table": table}, model=model, task="tabular-classification")
return _bytes_to_list(response)
async def tabular_regression(self, table: Dict[str, Any], *, model: str) -> List[float]:
"""
Predicting a numerical target value given a set of attributes/features in a table.
Args:
table (`Dict[str, Any]`):
Set of attributes stored in a table. The attributes used to predict the target can be both numerical and categorical.
model (`str`):
The model to use for the tabular-regression task. Can be a model ID hosted on the Hugging Face Hub or a URL to
a deployed Inference Endpoint.
Returns:
`List`: a list of predicted numerical target values.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> table = {
... "Height": ["11.52", "12.48", "12.3778"],
... "Length1": ["23.2", "24", "23.9"],
... "Length2": ["25.4", "26.3", "26.5"],
... "Length3": ["30", "31.2", "31.1"],
... "Species": ["Bream", "Bream", "Bream"],
... "Width": ["4.02", "4.3056", "4.6961"],
... }
>>> await client.tabular_regression(table, model="scikit-learn/Fish-Weight")
[110, 120, 130]
```
"""
response = await self.post(json={"table": table}, model=model, task="tabular-regression")
return _bytes_to_list(response)
async def text_classification(self, text: str, *, model: Optional[str] = None) -> List[ClassificationOutput]:
"""
Perform text classification (e.g. sentiment-analysis) on the given text.
Args:
text (`str`):
A string to be classified.
model (`str`, *optional*):
The model to use for the text classification task. Can be a model ID hosted on the Hugging Face Hub or a URL to
a deployed Inference Endpoint. If not provided, the default recommended text classification model will be used.
Defaults to None.
Returns:
`List[Dict]`: a list of dictionaries containing the predicted label and associated probability.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.text_classification("I like you")
[{'label': 'POSITIVE', 'score': 0.9998695850372314}, {'label': 'NEGATIVE', 'score': 0.0001304351753788069}]
```
"""
response = await self.post(json={"inputs": text}, model=model, task="text-classification")
return _bytes_to_list(response)[0]
@overload
async def text_generation( # type: ignore
self,
prompt: str,
*,
details: Literal[False] = ...,
stream: Literal[False] = ...,
model: Optional[str] = None,
do_sample: bool = False,
max_new_tokens: int = 20,
best_of: Optional[int] = None,
repetition_penalty: Optional[float] = None,
return_full_text: bool = False,
seed: Optional[int] = None,
stop_sequences: Optional[List[str]] = None,
temperature: Optional[float] = None,
top_k: Optional[int] = None,
top_p: Optional[float] = None,
truncate: Optional[int] = None,
typical_p: Optional[float] = None,
watermark: bool = False,
) -> str:
...
@overload
async def text_generation( # type: ignore
self,
prompt: str,
*,
details: Literal[True] = ...,
stream: Literal[False] = ...,
model: Optional[str] = None,
do_sample: bool = False,
max_new_tokens: int = 20,
best_of: Optional[int] = None,
repetition_penalty: Optional[float] = None,
return_full_text: bool = False,
seed: Optional[int] = None,
stop_sequences: Optional[List[str]] = None,
temperature: Optional[float] = None,
top_k: Optional[int] = None,
top_p: Optional[float] = None,
truncate: Optional[int] = None,
typical_p: Optional[float] = None,
watermark: bool = False,
) -> TextGenerationResponse:
...
@overload
async def text_generation( # type: ignore
self,
prompt: str,
*,
details: Literal[False] = ...,
stream: Literal[True] = ...,
model: Optional[str] = None,
do_sample: bool = False,
max_new_tokens: int = 20,
best_of: Optional[int] = None,
repetition_penalty: Optional[float] = None,
return_full_text: bool = False,
seed: Optional[int] = None,
stop_sequences: Optional[List[str]] = None,
temperature: Optional[float] = None,
top_k: Optional[int] = None,
top_p: Optional[float] = None,
truncate: Optional[int] = None,
typical_p: Optional[float] = None,
watermark: bool = False,
) -> AsyncIterable[str]:
...
@overload
async def text_generation(
self,
prompt: str,
*,
details: Literal[True] = ...,
stream: Literal[True] = ...,
model: Optional[str] = None,
do_sample: bool = False,
max_new_tokens: int = 20,
best_of: Optional[int] = None,
repetition_penalty: Optional[float] = None,
return_full_text: bool = False,
seed: Optional[int] = None,
stop_sequences: Optional[List[str]] = None,
temperature: Optional[float] = None,
top_k: Optional[int] = None,
top_p: Optional[float] = None,
truncate: Optional[int] = None,
typical_p: Optional[float] = None,
watermark: bool = False,
) -> AsyncIterable[TextGenerationStreamResponse]:
...
async def text_generation(
self,
prompt: str,
*,
details: bool = False,
stream: bool = False,
model: Optional[str] = None,
do_sample: bool = False,
max_new_tokens: int = 20,
best_of: Optional[int] = None,
repetition_penalty: Optional[float] = None,
return_full_text: bool = False,
seed: Optional[int] = None,
stop_sequences: Optional[List[str]] = None,
temperature: Optional[float] = None,
top_k: Optional[int] = None,
top_p: Optional[float] = None,
truncate: Optional[int] = None,
typical_p: Optional[float] = None,
watermark: bool = False,
decoder_input_details: bool = False,
) -> Union[str, TextGenerationResponse, AsyncIterable[str], AsyncIterable[TextGenerationStreamResponse]]:
"""
Given a prompt, generate the following text.
It is recommended to have Pydantic installed in order to get inputs validated. This is preferable as it allow
early failures.
API endpoint is supposed to run with the `text-generation-inference` backend (TGI). This backend is the
go-to solution to run large language models at scale. However, for some smaller models (e.g. "gpt2") the
default `transformers` + `api-inference` solution is still in use. Both approaches have very similar APIs, but
not exactly the same. This method is compatible with both approaches but some parameters are only available for
`text-generation-inference`. If some parameters are ignored, a warning message is triggered but the process
continues correctly.
To learn more about the TGI project, please refer to https://github.com/huggingface/text-generation-inference.
Args:
prompt (`str`):
Input text.
details (`bool`, *optional*):
By default, text_generation returns a string. Pass `details=True` if you want a detailed output (tokens,
probabilities, seed, finish reason, etc.). Only available for models running on with the
`text-generation-inference` backend.
stream (`bool`, *optional*):
By default, text_generation returns the full generated text. Pass `stream=True` if you want a stream of
tokens to be returned. Only available for models running on with the `text-generation-inference`
backend.
model (`str`, *optional*):
The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed
Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None.
do_sample (`bool`):
Activate logits sampling
max_new_tokens (`int`):
Maximum number of generated tokens
best_of (`int`):
Generate best_of sequences and return the one if the highest token logprobs
repetition_penalty (`float`):
The parameter for repetition penalty. 1.0 means no penalty. See [this
paper](https://arxiv.org/pdf/1909.05858.pdf) for more details.
return_full_text (`bool`):
Whether to prepend the prompt to the generated text
seed (`int`):
Random sampling seed
stop_sequences (`List[str]`):
Stop generating tokens if a member of `stop_sequences` is generated
temperature (`float`):
The value used to module the logits distribution.
top_k (`int`):
The number of highest probability vocabulary tokens to keep for top-k-filtering.
top_p (`float`):
If set to < 1, only the smallest set of most probable tokens with probabilities that add up to `top_p` or
higher are kept for generation.
truncate (`int`):
Truncate inputs tokens to the given size
typical_p (`float`):
Typical Decoding mass
See [Typical Decoding for Natural Language Generation](https://arxiv.org/abs/2202.00666) for more information
watermark (`bool`):
Watermarking with [A Watermark for Large Language Models](https://arxiv.org/abs/2301.10226)
decoder_input_details (`bool`):
Return the decoder input token logprobs and ids. You must set `details=True` as well for it to be taken
into account. Defaults to `False`.
Returns:
`Union[str, TextGenerationResponse, Iterable[str], Iterable[TextGenerationStreamResponse]]`:
Generated text returned from the server:
- if `stream=False` and `details=False`, the generated text is returned as a `str` (default)
- if `stream=True` and `details=False`, the generated text is returned token by token as a `Iterable[str]`
- if `stream=False` and `details=True`, the generated text is returned with more details as a [`~huggingface_hub.inference._text_generation.TextGenerationResponse`]
- if `details=True` and `stream=True`, the generated text is returned token by token as a iterable of [`~huggingface_hub.inference._text_generation.TextGenerationStreamResponse`]
Raises:
`ValidationError`:
If input values are not valid. No HTTP call is made to the server.
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
# Case 1: generate text
>>> await client.text_generation("The huggingface_hub library is ", max_new_tokens=12)
'100% open source and built to be easy to use.'
# Case 2: iterate over the generated tokens. Useful async for large generation.
>>> async for token in await client.text_generation("The huggingface_hub library is ", max_new_tokens=12, stream=True):
... print(token)
100
%
open
source
and
built
to
be
easy
to
use
.
# Case 3: get more details about the generation process.
>>> await client.text_generation("The huggingface_hub library is ", max_new_tokens=12, details=True)
TextGenerationResponse(
generated_text='100% open source and built to be easy to use.',
details=Details(
finish_reason=<FinishReason.Length: 'length'>,
generated_tokens=12,
seed=None,
prefill=[
InputToken(id=487, text='The', logprob=None),
InputToken(id=53789, text=' hugging', logprob=-13.171875),
(...)
InputToken(id=204, text=' ', logprob=-7.0390625)
],
tokens=[
Token(id=1425, text='100', logprob=-1.0175781, special=False),
Token(id=16, text='%', logprob=-0.0463562, special=False),
(...)
Token(id=25, text='.', logprob=-0.5703125, special=False)
],
best_of_sequences=None
)
)
# Case 4: iterate over the generated tokens with more details.
# Last object is more complete, containing the full generated text and the finish reason.
>>> async for details in await client.text_generation("The huggingface_hub library is ", max_new_tokens=12, details=True, stream=True):
... print(details)
...
TextGenerationStreamResponse(token=Token(id=1425, text='100', logprob=-1.0175781, special=False), generated_text=None, details=None)
TextGenerationStreamResponse(token=Token(id=16, text='%', logprob=-0.0463562, special=False), generated_text=None, details=None)
TextGenerationStreamResponse(token=Token(id=1314, text=' open', logprob=-1.3359375, special=False), generated_text=None, details=None)
TextGenerationStreamResponse(token=Token(id=3178, text=' source', logprob=-0.28100586, special=False), generated_text=None, details=None)
TextGenerationStreamResponse(token=Token(id=273, text=' and', logprob=-0.5961914, special=False), generated_text=None, details=None)
TextGenerationStreamResponse(token=Token(id=3426, text=' built', logprob=-1.9423828, special=False), generated_text=None, details=None)
TextGenerationStreamResponse(token=Token(id=271, text=' to', logprob=-1.4121094, special=False), generated_text=None, details=None)
TextGenerationStreamResponse(token=Token(id=314, text=' be', logprob=-1.5224609, special=False), generated_text=None, details=None)
TextGenerationStreamResponse(token=Token(id=1833, text=' easy', logprob=-2.1132812, special=False), generated_text=None, details=None)
TextGenerationStreamResponse(token=Token(id=271, text=' to', logprob=-0.08520508, special=False), generated_text=None, details=None)
TextGenerationStreamResponse(token=Token(id=745, text=' use', logprob=-0.39453125, special=False), generated_text=None, details=None)
TextGenerationStreamResponse(token=Token(
id=25,
text='.',
logprob=-0.5703125,
special=False),
generated_text='100% open source and built to be easy to use.',
details=StreamDetails(finish_reason=<FinishReason.Length: 'length'>, generated_tokens=12, seed=None)
)
```
"""
# NOTE: Text-generation integration is taken from the text-generation-inference project. It has more features
# like input/output validation (if Pydantic is installed). See `_text_generation.py` header for more details.
if decoder_input_details and not details:
warnings.warn(
"`decoder_input_details=True` has been passed to the server but `details=False` is set meaning that"
" the output from the server will be truncated."
)
decoder_input_details = False
# Validate parameters
parameters = TextGenerationParameters(
best_of=best_of,
details=details,
do_sample=do_sample,
max_new_tokens=max_new_tokens,
repetition_penalty=repetition_penalty,
return_full_text=return_full_text,
seed=seed,
stop=stop_sequences if stop_sequences is not None else [],
temperature=temperature,
top_k=top_k,
top_p=top_p,
truncate=truncate,
typical_p=typical_p,
watermark=watermark,
decoder_input_details=decoder_input_details,
)
request = TextGenerationRequest(inputs=prompt, stream=stream, parameters=parameters)
payload = asdict(request)
# Remove some parameters if not a TGI server
if not _is_tgi_server(model):
ignored_parameters = []
for key in "watermark", "stop", "details", "decoder_input_details":
if payload["parameters"][key] is not None:
ignored_parameters.append(key)
del payload["parameters"][key]
if len(ignored_parameters) > 0:
warnings.warn(
"API endpoint/model for text-generation is not served via TGI. Ignoring parameters"
f" {ignored_parameters}.",
UserWarning,
)
if details:
warnings.warn(
"API endpoint/model for text-generation is not served via TGI. Parameter `details=True` will"
" be ignored meaning only the generated text will be returned.",
UserWarning,
)
details = False
if stream:
raise ValueError(
"API endpoint/model for text-generation is not served via TGI. Cannot return output as a stream."
" Please pass `stream=False` as input."
)
# Handle errors separately for more precise error messages
try:
bytes_output = await self.post(json=payload, model=model, task="text-generation", stream=stream) # type: ignore
except _import_aiohttp().ClientResponseError as e:
error_message = getattr(e, "response_error_payload", {}).get("error", "")
if e.code == 400 and "The following `model_kwargs` are not used by the model" in error_message:
_set_as_non_tgi(model)
return await self.text_generation( # type: ignore
prompt=prompt,
details=details,
stream=stream,
model=model,
do_sample=do_sample,
max_new_tokens=max_new_tokens,
best_of=best_of,
repetition_penalty=repetition_penalty,
return_full_text=return_full_text,
seed=seed,
stop_sequences=stop_sequences,
temperature=temperature,
top_k=top_k,
top_p=top_p,
truncate=truncate,
typical_p=typical_p,
watermark=watermark,
decoder_input_details=decoder_input_details,
)
raise_text_generation_error(e)
# Parse output
if stream:
return _async_stream_text_generation_response(bytes_output, details) # type: ignore
data = _bytes_to_dict(bytes_output)[0]
return TextGenerationResponse(**data) if details else data["generated_text"]
async def text_to_image(
self,
prompt: str,
*,
negative_prompt: Optional[str] = None,
height: Optional[float] = None,
width: Optional[float] = None,
num_inference_steps: Optional[float] = None,
guidance_scale: Optional[float] = None,
model: Optional[str] = None,
**kwargs,
) -> "Image":
"""
Generate an image based on a given text using a specified model.
<Tip warning={true}>
You must have `PIL` installed if you want to work with images (`pip install Pillow`).
</Tip>
Args:
prompt (`str`):
The prompt to generate an image from.
negative_prompt (`str`, *optional*):
An optional negative prompt for the image generation.
height (`float`, *optional*):
The height in pixels of the image to generate.
width (`float`, *optional*):
The width in pixels of the image to generate.
num_inference_steps (`int`, *optional*):
The number of denoising steps. More denoising steps usually lead to a higher quality image at the
expense of slower inference.
guidance_scale (`float`, *optional*):
Higher guidance scale encourages to generate images that are closely linked to the text `prompt`,
usually at the expense of lower image quality.
model (`str`, *optional*):
The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed
Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None.
Returns:
`Image`: The generated image.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> image = await client.text_to_image("An astronaut riding a horse on the moon.")
>>> image.save("astronaut.png")
>>> image = await client.text_to_image(
... "An astronaut riding a horse on the moon.",
... negative_prompt="low resolution, blurry",
... model="stabilityai/stable-diffusion-2-1",
... )
>>> image.save("better_astronaut.png")
```
"""
payload = {"inputs": prompt}
parameters = {
"negative_prompt": negative_prompt,
"height": height,
"width": width,
"num_inference_steps": num_inference_steps,
"guidance_scale": guidance_scale,
**kwargs,
}
for key, value in parameters.items():
if value is not None:
payload.setdefault("parameters", {})[key] = value # type: ignore
response = await self.post(json=payload, model=model, task="text-to-image")
return _bytes_to_image(response)
async def text_to_speech(self, text: str, *, model: Optional[str] = None) -> bytes:
"""
Synthesize an audio of a voice pronouncing a given text.
Args:
text (`str`):
The text to synthesize.
model (`str`, *optional*):
The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed
Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None.
Returns:
`bytes`: The generated audio.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from pathlib import Path
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> audio = await client.text_to_speech("Hello world")
>>> Path("hello_world.flac").write_bytes(audio)
```
"""
return await self.post(json={"inputs": text}, model=model, task="text-to-speech")
async def token_classification(self, text: str, *, model: Optional[str] = None) -> List[TokenClassificationOutput]:
"""
Perform token classification on the given text.
Usually used for sentence parsing, either grammatical, or Named Entity Recognition (NER) to understand keywords contained within text.
Args:
text (`str`):
A string to be classified.
model (`str`, *optional*):
The model to use for the token classification task. Can be a model ID hosted on the Hugging Face Hub or a URL to
a deployed Inference Endpoint. If not provided, the default recommended token classification model will be used.
Defaults to None.
Returns:
`List[Dict]`: List of token classification outputs containing the entity group, confidence score, word, start and end index.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.token_classification("My name is Sarah Jessica Parker but you can call me Jessica")
[{'entity_group': 'PER',
'score': 0.9971321225166321,
'word': 'Sarah Jessica Parker',
'start': 11,
'end': 31},
{'entity_group': 'PER',
'score': 0.9773476123809814,
'word': 'Jessica',
'start': 52,
'end': 59}]
```
"""
payload: Dict[str, Any] = {"inputs": text}
response = await self.post(
json=payload,
model=model,
task="token-classification",
)
return _bytes_to_list(response)
async def translation(
self, text: str, *, model: Optional[str] = None, src_lang: Optional[str] = None, tgt_lang: Optional[str] = None
) -> str:
"""
Convert text from one language to another.
Check out https://huggingface.co/tasks/translation for more information on how to choose the best model for
your specific use case. Source and target languages usually depend on the model.
However, it is possible to specify source and target languages for certain models. If you are working with one of these models,
you can use `src_lang` and `tgt_lang` arguments to pass the relevant information.
You can find this information in the model card.
Args:
text (`str`):
A string to be translated.
model (`str`, *optional*):
The model to use for the translation task. Can be a model ID hosted on the Hugging Face Hub or a URL to
a deployed Inference Endpoint. If not provided, the default recommended translation model will be used.
Defaults to None.
src_lang (`str`, *optional*):
Source language of the translation task, i.e. input language. Cannot be passed without `tgt_lang`.
tgt_lang (`str`, *optional*):
Target language of the translation task, i.e. output language. Cannot be passed without `src_lang`.
Returns:
`str`: The generated translated text.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
`ValueError`:
If only one of the `src_lang` and `tgt_lang` arguments are provided.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.translation("My name is Wolfgang and I live in Berlin")
'Mein Name ist Wolfgang und ich lebe in Berlin.'
>>> await client.translation("My name is Wolfgang and I live in Berlin", model="Helsinki-NLP/opus-mt-en-fr")
"Je m'appelle Wolfgang et je vis à Berlin."
```
Specifying languages:
```py
>>> client.translation("My name is Sarah Jessica Parker but you can call me Jessica", model="facebook/mbart-large-50-many-to-many-mmt", src_lang="en_XX", tgt_lang="fr_XX")
"Mon nom est Sarah Jessica Parker mais vous pouvez m\'appeler Jessica"
```
"""
# Throw error if only one of `src_lang` and `tgt_lang` was given
if src_lang is not None and tgt_lang is None:
raise ValueError("You cannot specify `src_lang` without specifying `tgt_lang`.")
if src_lang is None and tgt_lang is not None:
raise ValueError("You cannot specify `tgt_lang` without specifying `src_lang`.")
# If both `src_lang` and `tgt_lang` are given, pass them to the request body
payload: Dict = {"inputs": text}
if src_lang and tgt_lang:
payload["parameters"] = {"src_lang": src_lang, "tgt_lang": tgt_lang}
response = await self.post(json=payload, model=model, task="translation")
return _bytes_to_dict(response)[0]["translation_text"]
async def zero_shot_classification(
self, text: str, labels: List[str], *, multi_label: bool = False, model: Optional[str] = None
) -> List[ClassificationOutput]:
"""
Provide as input a text and a set of candidate labels to classify the input text.
Args:
text (`str`):
The input text to classify.
labels (`List[str]`):
List of string possible labels. There must be at least 2 labels.
multi_label (`bool`):
Boolean that is set to True if classes can overlap.
model (`str`, *optional*):
The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed
Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None.
Returns:
`List[Dict]`: List of classification outputs containing the predicted labels and their confidence.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> text = (
... "A new model offers an explanation async for how the Galilean satellites formed around the solar system's"
... "largest world. Konstantin Batygin did not set out to solve one of the solar system's most puzzling"
... " mysteries when he went async for a run up a hill in Nice, France."
... )
>>> labels = ["space & cosmos", "scientific discovery", "microbiology", "robots", "archeology"]
>>> await client.zero_shot_classification(text, labels)
[
{"label": "scientific discovery", "score": 0.7961668968200684},
{"label": "space & cosmos", "score": 0.18570658564567566},
{"label": "microbiology", "score": 0.00730885099619627},
{"label": "archeology", "score": 0.006258360575884581},
{"label": "robots", "score": 0.004559356719255447},
]
>>> await client.zero_shot_classification(text, labels, multi_label=True)
[
{"label": "scientific discovery", "score": 0.9829297661781311},
{"label": "space & cosmos", "score": 0.755190908908844},
{"label": "microbiology", "score": 0.0005462635890580714},
{"label": "archeology", "score": 0.00047131875180639327},
{"label": "robots", "score": 0.00030448526376858354},
]
```
"""
# Raise ValueError if input is less than 2 labels
if len(labels) < 2:
raise ValueError("You must specify at least 2 classes to compare.")
response = await self.post(
json={
"inputs": text,
"parameters": {
"candidate_labels": ",".join(labels),
"multi_label": multi_label,
},
},
model=model,
task="zero-shot-classification",
)
output = _bytes_to_dict(response)
return [{"label": label, "score": score} for label, score in zip(output["labels"], output["scores"])]
async def zero_shot_image_classification(
self, image: ContentT, labels: List[str], *, model: Optional[str] = None
) -> List[ClassificationOutput]:
"""
Provide input image and text labels to predict text labels for the image.
Args:
image (`Union[str, Path, bytes, BinaryIO]`):
The input image to caption. It can be raw bytes, an image file, or a URL to an online image.
labels (`List[str]`):
List of string possible labels. There must be at least 2 labels.
model (`str`, *optional*):
The model to use for inference. Can be a model ID hosted on the Hugging Face Hub or a URL to a deployed
Inference Endpoint. This parameter overrides the model defined at the instance level. Defaults to None.
Returns:
`List[Dict]`: List of classification outputs containing the predicted labels and their confidence.
Raises:
[`InferenceTimeoutError`]:
If the model is unavailable or the request times out.
`aiohttp.ClientResponseError`:
If the request fails with an HTTP error status code other than HTTP 503.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.zero_shot_image_classification(
... "https://upload.wikimedia.org/wikipedia/commons/thumb/4/43/Cute_dog.jpg/320px-Cute_dog.jpg",
... labels=["dog", "cat", "horse"],
... )
[{"label": "dog", "score": 0.956}, ...]
```
"""
# Raise ValueError if input is less than 2 labels
if len(labels) < 2:
raise ValueError("You must specify at least 2 classes to compare.")
response = await self.post(
json={"image": _b64_encode(image), "parameters": {"candidate_labels": ",".join(labels)}},
model=model,
task="zero-shot-image-classification",
)
return _bytes_to_list(response)
def _resolve_url(self, model: Optional[str] = None, task: Optional[str] = None) -> str:
model = model or self.model
# If model is already a URL, ignore `task` and return directly
if model is not None and (model.startswith("http://") or model.startswith("https://")):
return model
# # If no model but task is set => fetch the recommended one for this task
if model is None:
if task is None:
raise ValueError(
"You must specify at least a model (repo_id or URL) or a task, either when instantiating"
" `InferenceClient` or when making a request."
)
model = self.get_recommended_model(task)
logger.info(
f"Using recommended model {model} for task {task}. Note that it is"
f" encouraged to explicitly set `model='{model}'` as the recommended"
" models list might get updated without prior notice."
)
# Compute InferenceAPI url
return (
# Feature-extraction and sentence-similarity are the only cases where we handle models with several tasks.
f"{INFERENCE_ENDPOINT}/pipeline/{task}/{model}"
if task in ("feature-extraction", "sentence-similarity")
# Otherwise, we use the default endpoint
else f"{INFERENCE_ENDPOINT}/models/{model}"
)
@staticmethod
def get_recommended_model(task: str) -> str:
"""
Get the model Hugging Face recommends for the input task.
Args:
task (`str`):
The Hugging Face task to get which model Hugging Face recommends.
All available tasks can be found [here](https://huggingface.co/tasks).
Returns:
`str`: Name of the model recommended for the input task.
Raises:
`ValueError`: If Hugging Face has no recommendation for the input task.
"""
model = _fetch_recommended_models().get(task)
if model is None:
raise ValueError(
f"Task {task} has no recommended model. Please specify a model"
" explicitly. Visit https://huggingface.co/tasks for more info."
)
return model
async def get_model_status(self, model: Optional[str] = None) -> ModelStatus:
"""
Get the status of a model hosted on the Inference API.
<Tip>
This endpoint is mostly useful when you already know which model you want to use and want to check its
availability. If you want to discover already deployed models, you should rather use [`~InferenceClient.list_deployed_models`].
</Tip>
Args:
model (`str`, *optional*):
Identifier of the model for witch the status gonna be checked. If model is not provided,
the model associated with this instance of [`InferenceClient`] will be used. Only InferenceAPI service can be checked so the
identifier cannot be a URL.
Returns:
[`ModelStatus`]: An instance of ModelStatus dataclass, containing information,
about the state of the model: load, state, compute type and framework.
Example:
```py
# Must be run in an async context
>>> from huggingface_hub import AsyncInferenceClient
>>> client = AsyncInferenceClient()
>>> await client.get_model_status("bigcode/starcoder")
ModelStatus(loaded=True, state='Loaded', compute_type='gpu', framework='text-generation-inference')
```
"""
model = model or self.model
if model is None:
raise ValueError("Model id not provided.")
if model.startswith("https://"):
raise NotImplementedError("Model status is only available for Inference API endpoints.")
url = f"{INFERENCE_ENDPOINT}/status/{model}"
async with _import_aiohttp().ClientSession(headers=self.headers) as client:
response = await client.get(url)
response.raise_for_status()
response_data = await response.json()
if "error" in response_data:
raise ValueError(response_data["error"])
return ModelStatus(
loaded=response_data["loaded"],
state=response_data["state"],
compute_type=response_data["compute_type"],
framework=response_data["framework"],
)