You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.

161 lines
6.0 KiB

from typing import Any, Optional, Union
from huggingface_hub.hf_api import InferenceProviderMapping
from huggingface_hub.inference._common import RequestParameters, _as_dict, _as_url
from huggingface_hub.inference._providers._common import TaskProviderHelper, filter_none
from huggingface_hub.utils import get_session
_PROVIDER = "replicate"
_BASE_URL = "https://api.replicate.com"
class ReplicateTask(TaskProviderHelper):
def __init__(self, task: str):
super().__init__(provider=_PROVIDER, base_url=_BASE_URL, task=task)
def _prepare_headers(self, headers: dict, api_key: str) -> dict[str, Any]:
headers = super()._prepare_headers(headers, api_key)
headers["Prefer"] = "wait"
return headers
def _prepare_route(self, mapped_model: str, api_key: str) -> str:
if ":" in mapped_model:
return "/v1/predictions"
return f"/v1/models/{mapped_model}/predictions"
def _prepare_payload_as_dict(
self, inputs: Any, parameters: dict, provider_mapping_info: InferenceProviderMapping
) -> Optional[dict]:
mapped_model = provider_mapping_info.provider_id
payload: dict[str, Any] = {"input": {"prompt": inputs, **filter_none(parameters)}}
if ":" in mapped_model:
version = mapped_model.split(":", 1)[1]
payload["version"] = version
return payload
def get_response(self, response: Union[bytes, dict], request_params: Optional[RequestParameters] = None) -> Any:
response_dict = _as_dict(response)
if response_dict.get("output") is None:
raise TimeoutError(
f"Inference request timed out after 60 seconds. No output generated for model {response_dict.get('model')}"
"The model might be in cold state or starting up. Please try again later."
)
output_url = (
response_dict["output"] if isinstance(response_dict["output"], str) else response_dict["output"][0]
)
return get_session().get(output_url).content
class ReplicateTextToImageTask(ReplicateTask):
def __init__(self):
super().__init__("text-to-image")
def _prepare_payload_as_dict(
self, inputs: Any, parameters: dict, provider_mapping_info: InferenceProviderMapping
) -> Optional[dict]:
payload: dict = super()._prepare_payload_as_dict(inputs, parameters, provider_mapping_info) # type: ignore[assignment]
if provider_mapping_info.adapter_weights_path is not None:
payload["input"]["lora_weights"] = f"https://huggingface.co/{provider_mapping_info.hf_model_id}"
return payload
class ReplicateTextToSpeechTask(ReplicateTask):
def __init__(self):
super().__init__("text-to-speech")
def _prepare_payload_as_dict(
self, inputs: Any, parameters: dict, provider_mapping_info: InferenceProviderMapping
) -> Optional[dict]:
payload: dict = super()._prepare_payload_as_dict(inputs, parameters, provider_mapping_info) # type: ignore[assignment]
payload["input"]["text"] = payload["input"].pop("prompt") # rename "prompt" to "text" for TTS
return payload
class ReplicateAutomaticSpeechRecognitionTask(ReplicateTask):
def __init__(self) -> None:
super().__init__("automatic-speech-recognition")
def _prepare_payload_as_dict(
self,
inputs: Any,
parameters: dict,
provider_mapping_info: InferenceProviderMapping,
) -> Optional[dict]:
mapped_model = provider_mapping_info.provider_id
audio_url = _as_url(inputs, default_mime_type="audio/wav")
payload: dict[str, Any] = {
"input": {
**{"audio": audio_url},
**filter_none(parameters),
}
}
if ":" in mapped_model:
payload["version"] = mapped_model.split(":", 1)[1]
return payload
def get_response(self, response: Union[bytes, dict], request_params: Optional[RequestParameters] = None) -> Any:
response_dict = _as_dict(response)
output = response_dict.get("output")
if isinstance(output, str):
return {"text": output}
if isinstance(output, list) and output:
first_item = output[0]
if isinstance(first_item, str):
return {"text": first_item}
if isinstance(first_item, dict):
output = first_item
text: Optional[str] = None
if isinstance(output, dict):
transcription = output.get("transcription")
if isinstance(transcription, str):
text = transcription
translation = output.get("translation")
if isinstance(translation, str):
text = translation
txt_file = output.get("txt_file")
if isinstance(txt_file, str):
text_response = get_session().get(txt_file)
text_response.raise_for_status()
text = text_response.text
if text is not None:
return {"text": text}
raise ValueError("Received malformed response from Replicate automatic-speech-recognition API")
class ReplicateImageToImageTask(ReplicateTask):
def __init__(self):
super().__init__("image-to-image")
def _prepare_payload_as_dict(
self, inputs: Any, parameters: dict, provider_mapping_info: InferenceProviderMapping
) -> Optional[dict]:
image_url = _as_url(inputs, default_mime_type="image/jpeg")
# Different Replicate models expect the image in different keys
payload: dict[str, Any] = {
"input": {
"image": image_url,
"images": [image_url],
"input_image": image_url,
"input_images": [image_url],
**filter_none(parameters),
}
}
mapped_model = provider_mapping_info.provider_id
if ":" in mapped_model:
version = mapped_model.split(":", 1)[1]
payload["version"] = version
return payload