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Litellm merge pr (#7161)
* build: merge branch * test: fix openai naming * fix(main.py): fix openai renaming * style: ignore function length for config factory * fix(sagemaker/): fix routing logic * fix: fix imports * fix: fix override
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750
litellm/llms/huggingface/chat/handler.py
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750
litellm/llms/huggingface/chat/handler.py
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## Uses the huggingface text generation inference API
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import copy
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import enum
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import json
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import os
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import time
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import types
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from enum import Enum
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from typing import (
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Any,
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Callable,
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Dict,
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List,
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Literal,
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Optional,
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Tuple,
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Union,
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cast,
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get_args,
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)
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import httpx
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import requests
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import litellm
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from litellm.litellm_core_utils.litellm_logging import Logging as LiteLLMLoggingObj
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from litellm.llms.custom_httpx.http_handler import (
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AsyncHTTPHandler,
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HTTPHandler,
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_get_httpx_client,
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get_async_httpx_client,
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)
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from litellm.llms.huggingface.chat.transformation import (
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HuggingfaceChatConfig as HuggingfaceConfig,
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)
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from litellm.secret_managers.main import get_secret_str
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from litellm.types.completion import ChatCompletionMessageToolCallParam
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from litellm.types.llms.openai import AllMessageValues
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from litellm.types.utils import Logprobs as TextCompletionLogprobs
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from litellm.utils import Choices, CustomStreamWrapper, Message, ModelResponse, Usage
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from ...base import BaseLLM
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from ...prompt_templates.factory import custom_prompt, prompt_factory
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from ..common_utils import HuggingfaceError, hf_task_list, hf_tasks
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hf_chat_config = HuggingfaceConfig()
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hf_tasks_embeddings = Literal[ # pipeline tags + hf tei endpoints - https://huggingface.github.io/text-embeddings-inference/#/
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"sentence-similarity", "feature-extraction", "rerank", "embed", "similarity"
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]
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def get_hf_task_embedding_for_model(
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model: str, task_type: Optional[str], api_base: str
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) -> Optional[str]:
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if task_type is not None:
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if task_type in get_args(hf_tasks_embeddings):
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return task_type
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else:
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raise Exception(
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"Invalid task_type={}. Expected one of={}".format(
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task_type, hf_tasks_embeddings
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)
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)
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http_client = HTTPHandler(concurrent_limit=1)
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model_info = http_client.get(url=api_base)
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model_info_dict = model_info.json()
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pipeline_tag: Optional[str] = model_info_dict.get("pipeline_tag", None)
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return pipeline_tag
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async def async_get_hf_task_embedding_for_model(
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model: str, task_type: Optional[str], api_base: str
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) -> Optional[str]:
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if task_type is not None:
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if task_type in get_args(hf_tasks_embeddings):
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return task_type
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else:
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raise Exception(
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"Invalid task_type={}. Expected one of={}".format(
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task_type, hf_tasks_embeddings
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)
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)
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http_client = get_async_httpx_client(
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llm_provider=litellm.LlmProviders.HUGGINGFACE,
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)
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model_info = await http_client.get(url=api_base)
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model_info_dict = model_info.json()
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pipeline_tag: Optional[str] = model_info_dict.get("pipeline_tag", None)
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return pipeline_tag
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async def make_call(
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client: Optional[AsyncHTTPHandler],
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api_base: str,
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headers: dict,
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data: str,
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model: str,
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messages: list,
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logging_obj,
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timeout: Optional[Union[float, httpx.Timeout]],
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json_mode: bool,
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) -> Tuple[Any, httpx.Headers]:
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if client is None:
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client = litellm.module_level_aclient
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try:
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response = await client.post(
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api_base, headers=headers, data=data, stream=True, timeout=timeout
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)
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except httpx.HTTPStatusError as e:
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error_headers = getattr(e, "headers", None)
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error_response = getattr(e, "response", None)
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if error_headers is None and error_response:
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error_headers = getattr(error_response, "headers", None)
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raise HuggingfaceError(
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status_code=e.response.status_code,
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message=str(await e.response.aread()),
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headers=cast(dict, error_headers) if error_headers else None,
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)
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except Exception as e:
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for exception in litellm.LITELLM_EXCEPTION_TYPES:
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if isinstance(e, exception):
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raise e
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raise HuggingfaceError(status_code=500, message=str(e))
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# LOGGING
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logging_obj.post_call(
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input=messages,
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api_key="",
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original_response=response, # Pass the completion stream for logging
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additional_args={"complete_input_dict": data},
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)
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return response.aiter_lines(), response.headers
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class Huggingface(BaseLLM):
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_client_session: Optional[httpx.Client] = None
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_aclient_session: Optional[httpx.AsyncClient] = None
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def __init__(self) -> None:
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super().__init__()
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def completion( # noqa: PLR0915
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self,
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model: str,
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messages: list,
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api_base: Optional[str],
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model_response: ModelResponse,
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print_verbose: Callable,
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timeout: float,
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encoding,
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api_key,
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logging_obj,
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optional_params: dict,
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litellm_params: dict,
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custom_prompt_dict={},
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acompletion: bool = False,
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logger_fn=None,
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client: Optional[Union[HTTPHandler, AsyncHTTPHandler]] = None,
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headers: dict = {},
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):
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super().completion()
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exception_mapping_worked = False
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try:
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task, model = hf_chat_config.get_hf_task_for_model(model)
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litellm_params["task"] = task
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headers = hf_chat_config.validate_environment(
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api_key=api_key,
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headers=headers,
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model=model,
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messages=messages,
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optional_params=optional_params,
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)
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completion_url = hf_chat_config.get_api_base(api_base=api_base, model=model)
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data = hf_chat_config.transform_request(
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model=model,
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messages=messages,
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optional_params=optional_params,
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litellm_params=litellm_params,
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headers=headers,
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)
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## LOGGING
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logging_obj.pre_call(
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input=data,
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api_key=api_key,
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additional_args={
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"complete_input_dict": data,
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"headers": headers,
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"api_base": completion_url,
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"acompletion": acompletion,
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},
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)
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## COMPLETION CALL
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if acompletion is True:
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### ASYNC STREAMING
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if optional_params.get("stream", False):
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return self.async_streaming(logging_obj=logging_obj, api_base=completion_url, data=data, headers=headers, model_response=model_response, model=model, timeout=timeout, messages=messages) # type: ignore
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else:
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### ASYNC COMPLETION
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return self.acompletion(api_base=completion_url, data=data, headers=headers, model_response=model_response, task=task, encoding=encoding, model=model, optional_params=optional_params, timeout=timeout, litellm_params=litellm_params) # type: ignore
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if client is None or not isinstance(client, HTTPHandler):
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client = HTTPHandler()
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### SYNC STREAMING
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if "stream" in optional_params and optional_params["stream"] is True:
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response = client.post(
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url=completion_url,
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headers=headers,
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data=json.dumps(data),
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stream=optional_params["stream"],
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)
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return response.iter_lines()
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### SYNC COMPLETION
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else:
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response = client.post(
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url=completion_url,
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headers=headers,
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data=json.dumps(data),
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)
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return hf_chat_config.transform_response(
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model=model,
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raw_response=response,
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model_response=model_response,
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logging_obj=logging_obj,
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api_key=api_key,
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request_data=data,
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messages=messages,
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optional_params=optional_params,
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encoding=encoding,
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json_mode=None,
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litellm_params=litellm_params,
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)
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except httpx.HTTPStatusError as e:
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raise HuggingfaceError(
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status_code=e.response.status_code,
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message=e.response.text,
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headers=e.response.headers,
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)
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except HuggingfaceError as e:
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exception_mapping_worked = True
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raise e
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except Exception as e:
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if exception_mapping_worked:
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raise e
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else:
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import traceback
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raise HuggingfaceError(status_code=500, message=traceback.format_exc())
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async def acompletion(
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self,
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api_base: str,
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data: dict,
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headers: dict,
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model_response: ModelResponse,
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encoding: Any,
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model: str,
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optional_params: dict,
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litellm_params: dict,
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timeout: float,
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logging_obj: LiteLLMLoggingObj,
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api_key: str,
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messages: List[AllMessageValues],
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):
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response: Optional[httpx.Response] = None
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try:
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http_client = get_async_httpx_client(
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llm_provider=litellm.LlmProviders.HUGGINGFACE
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)
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### ASYNC COMPLETION
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http_response = await http_client.post(
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url=api_base, headers=headers, data=json.dumps(data), timeout=timeout
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)
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response = http_response
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return hf_chat_config.transform_response(
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model=model,
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raw_response=http_response,
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model_response=model_response,
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logging_obj=logging_obj,
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api_key=api_key,
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request_data=data,
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messages=messages,
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optional_params=optional_params,
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encoding=encoding,
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json_mode=None,
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litellm_params=litellm_params,
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)
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except Exception as e:
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if isinstance(e, httpx.TimeoutException):
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raise HuggingfaceError(status_code=500, message="Request Timeout Error")
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elif isinstance(e, HuggingfaceError):
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raise e
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elif response is not None and hasattr(response, "text"):
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raise HuggingfaceError(
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status_code=500,
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message=f"{str(e)}\n\nOriginal Response: {response.text}",
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headers=response.headers,
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)
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else:
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raise HuggingfaceError(status_code=500, message=f"{str(e)}")
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async def async_streaming(
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self,
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logging_obj,
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api_base: str,
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data: dict,
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headers: dict,
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model_response: ModelResponse,
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messages: List[AllMessageValues],
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model: str,
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timeout: float,
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client: Optional[AsyncHTTPHandler] = None,
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):
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completion_stream, _ = await make_call(
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client=client,
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api_base=api_base,
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headers=headers,
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data=json.dumps(data),
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model=model,
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messages=messages,
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logging_obj=logging_obj,
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timeout=timeout,
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json_mode=False,
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)
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streamwrapper = CustomStreamWrapper(
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completion_stream=completion_stream,
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model=model,
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custom_llm_provider="huggingface",
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logging_obj=logging_obj,
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)
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return streamwrapper
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def _transform_input_on_pipeline_tag(
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self, input: List, pipeline_tag: Optional[str]
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) -> dict:
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if pipeline_tag is None:
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return {"inputs": input}
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if pipeline_tag == "sentence-similarity" or pipeline_tag == "similarity":
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if len(input) < 2:
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raise HuggingfaceError(
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status_code=400,
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message="sentence-similarity requires 2+ sentences",
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)
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return {"inputs": {"source_sentence": input[0], "sentences": input[1:]}}
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elif pipeline_tag == "rerank":
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if len(input) < 2:
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raise HuggingfaceError(
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status_code=400,
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message="reranker requires 2+ sentences",
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)
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return {"inputs": {"query": input[0], "texts": input[1:]}}
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return {"inputs": input} # default to feature-extraction pipeline tag
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async def _async_transform_input(
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self,
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model: str,
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task_type: Optional[str],
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embed_url: str,
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input: List,
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optional_params: dict,
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) -> dict:
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hf_task = await async_get_hf_task_embedding_for_model(
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model=model, task_type=task_type, api_base=embed_url
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)
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data = self._transform_input_on_pipeline_tag(input=input, pipeline_tag=hf_task)
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if len(optional_params.keys()) > 0:
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data["options"] = optional_params
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return data
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def _process_optional_params(self, data: dict, optional_params: dict) -> dict:
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special_options_keys = HuggingfaceConfig().get_special_options_params()
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special_parameters_keys = [
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"min_length",
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"max_length",
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"top_k",
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"top_p",
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"temperature",
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"repetition_penalty",
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"max_time",
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]
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for k, v in optional_params.items():
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if k in special_options_keys:
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data.setdefault("options", {})
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data["options"][k] = v
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elif k in special_parameters_keys:
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data.setdefault("parameters", {})
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data["parameters"][k] = v
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else:
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data[k] = v
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return data
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def _transform_input(
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self,
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input: List,
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model: str,
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call_type: Literal["sync", "async"],
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optional_params: dict,
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embed_url: str,
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) -> dict:
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data: Dict = {}
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## TRANSFORMATION ##
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if "sentence-transformers" in model:
|
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if len(input) == 0:
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raise HuggingfaceError(
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status_code=400,
|
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message="sentence transformers requires 2+ sentences",
|
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)
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data = {"inputs": {"source_sentence": input[0], "sentences": input[1:]}}
|
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else:
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data = {"inputs": input}
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|
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task_type = optional_params.pop("input_type", None)
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|
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if call_type == "sync":
|
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hf_task = get_hf_task_embedding_for_model(
|
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model=model, task_type=task_type, api_base=embed_url
|
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)
|
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elif call_type == "async":
|
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return self._async_transform_input(
|
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model=model, task_type=task_type, embed_url=embed_url, input=input
|
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) # type: ignore
|
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|
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data = self._transform_input_on_pipeline_tag(
|
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input=input, pipeline_tag=hf_task
|
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)
|
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|
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if len(optional_params.keys()) > 0:
|
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data = self._process_optional_params(
|
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data=data, optional_params=optional_params
|
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)
|
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|
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return data
|
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|
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def _process_embedding_response(
|
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self,
|
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embeddings: dict,
|
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model_response: litellm.EmbeddingResponse,
|
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model: str,
|
||||
input: List,
|
||||
encoding: Any,
|
||||
) -> litellm.EmbeddingResponse:
|
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output_data = []
|
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if "similarities" in embeddings:
|
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for idx, embedding in embeddings["similarities"]:
|
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output_data.append(
|
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{
|
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"object": "embedding",
|
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"index": idx,
|
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"embedding": embedding, # flatten list returned from hf
|
||||
}
|
||||
)
|
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else:
|
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for idx, embedding in enumerate(embeddings):
|
||||
if isinstance(embedding, float):
|
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output_data.append(
|
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{
|
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"object": "embedding",
|
||||
"index": idx,
|
||||
"embedding": embedding, # flatten list returned from hf
|
||||
}
|
||||
)
|
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elif isinstance(embedding, list) and isinstance(embedding[0], float):
|
||||
output_data.append(
|
||||
{
|
||||
"object": "embedding",
|
||||
"index": idx,
|
||||
"embedding": embedding, # flatten list returned from hf
|
||||
}
|
||||
)
|
||||
else:
|
||||
output_data.append(
|
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{
|
||||
"object": "embedding",
|
||||
"index": idx,
|
||||
"embedding": embedding[0][
|
||||
0
|
||||
], # flatten list returned from hf
|
||||
}
|
||||
)
|
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model_response.object = "list"
|
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model_response.data = output_data
|
||||
model_response.model = model
|
||||
input_tokens = 0
|
||||
for text in input:
|
||||
input_tokens += len(encoding.encode(text))
|
||||
|
||||
setattr(
|
||||
model_response,
|
||||
"usage",
|
||||
litellm.Usage(
|
||||
prompt_tokens=input_tokens,
|
||||
completion_tokens=input_tokens,
|
||||
total_tokens=input_tokens,
|
||||
prompt_tokens_details=None,
|
||||
completion_tokens_details=None,
|
||||
),
|
||||
)
|
||||
return model_response
|
||||
|
||||
async def aembedding(
|
||||
self,
|
||||
model: str,
|
||||
input: list,
|
||||
model_response: litellm.utils.EmbeddingResponse,
|
||||
timeout: Union[float, httpx.Timeout],
|
||||
logging_obj: LiteLLMLoggingObj,
|
||||
optional_params: dict,
|
||||
api_base: str,
|
||||
api_key: Optional[str],
|
||||
headers: dict,
|
||||
encoding: Callable,
|
||||
client: Optional[AsyncHTTPHandler] = None,
|
||||
):
|
||||
## TRANSFORMATION ##
|
||||
data = self._transform_input(
|
||||
input=input,
|
||||
model=model,
|
||||
call_type="sync",
|
||||
optional_params=optional_params,
|
||||
embed_url=api_base,
|
||||
)
|
||||
|
||||
## LOGGING
|
||||
logging_obj.pre_call(
|
||||
input=input,
|
||||
api_key=api_key,
|
||||
additional_args={
|
||||
"complete_input_dict": data,
|
||||
"headers": headers,
|
||||
"api_base": api_base,
|
||||
},
|
||||
)
|
||||
## COMPLETION CALL
|
||||
if client is None:
|
||||
client = get_async_httpx_client(
|
||||
llm_provider=litellm.LlmProviders.HUGGINGFACE,
|
||||
)
|
||||
|
||||
response = await client.post(api_base, headers=headers, data=json.dumps(data))
|
||||
|
||||
## LOGGING
|
||||
logging_obj.post_call(
|
||||
input=input,
|
||||
api_key=api_key,
|
||||
additional_args={"complete_input_dict": data},
|
||||
original_response=response,
|
||||
)
|
||||
|
||||
embeddings = response.json()
|
||||
|
||||
if "error" in embeddings:
|
||||
raise HuggingfaceError(status_code=500, message=embeddings["error"])
|
||||
|
||||
## PROCESS RESPONSE ##
|
||||
return self._process_embedding_response(
|
||||
embeddings=embeddings,
|
||||
model_response=model_response,
|
||||
model=model,
|
||||
input=input,
|
||||
encoding=encoding,
|
||||
)
|
||||
|
||||
def embedding(
|
||||
self,
|
||||
model: str,
|
||||
input: list,
|
||||
model_response: litellm.EmbeddingResponse,
|
||||
optional_params: dict,
|
||||
logging_obj: LiteLLMLoggingObj,
|
||||
encoding: Callable,
|
||||
api_key: Optional[str] = None,
|
||||
api_base: Optional[str] = None,
|
||||
timeout: Union[float, httpx.Timeout] = httpx.Timeout(None),
|
||||
aembedding: Optional[bool] = None,
|
||||
client: Optional[Union[HTTPHandler, AsyncHTTPHandler]] = None,
|
||||
headers={},
|
||||
) -> litellm.EmbeddingResponse:
|
||||
super().embedding()
|
||||
headers = hf_chat_config.validate_environment(
|
||||
api_key=api_key,
|
||||
headers=headers,
|
||||
model=model,
|
||||
optional_params=optional_params,
|
||||
messages=[],
|
||||
)
|
||||
# print_verbose(f"{model}, {task}")
|
||||
embed_url = ""
|
||||
if "https" in model:
|
||||
embed_url = model
|
||||
elif api_base:
|
||||
embed_url = api_base
|
||||
elif "HF_API_BASE" in os.environ:
|
||||
embed_url = os.getenv("HF_API_BASE", "")
|
||||
elif "HUGGINGFACE_API_BASE" in os.environ:
|
||||
embed_url = os.getenv("HUGGINGFACE_API_BASE", "")
|
||||
else:
|
||||
embed_url = f"https://api-inference.huggingface.co/models/{model}"
|
||||
|
||||
## ROUTING ##
|
||||
if aembedding is True:
|
||||
return self.aembedding(
|
||||
input=input,
|
||||
model_response=model_response,
|
||||
timeout=timeout,
|
||||
logging_obj=logging_obj,
|
||||
headers=headers,
|
||||
api_base=embed_url, # type: ignore
|
||||
api_key=api_key,
|
||||
client=client if isinstance(client, AsyncHTTPHandler) else None,
|
||||
model=model,
|
||||
optional_params=optional_params,
|
||||
encoding=encoding,
|
||||
)
|
||||
|
||||
## TRANSFORMATION ##
|
||||
|
||||
data = self._transform_input(
|
||||
input=input,
|
||||
model=model,
|
||||
call_type="sync",
|
||||
optional_params=optional_params,
|
||||
embed_url=embed_url,
|
||||
)
|
||||
|
||||
## LOGGING
|
||||
logging_obj.pre_call(
|
||||
input=input,
|
||||
api_key=api_key,
|
||||
additional_args={
|
||||
"complete_input_dict": data,
|
||||
"headers": headers,
|
||||
"api_base": embed_url,
|
||||
},
|
||||
)
|
||||
## COMPLETION CALL
|
||||
if client is None or not isinstance(client, HTTPHandler):
|
||||
client = HTTPHandler(concurrent_limit=1)
|
||||
response = client.post(embed_url, headers=headers, data=json.dumps(data))
|
||||
|
||||
## LOGGING
|
||||
logging_obj.post_call(
|
||||
input=input,
|
||||
api_key=api_key,
|
||||
additional_args={"complete_input_dict": data},
|
||||
original_response=response,
|
||||
)
|
||||
|
||||
embeddings = response.json()
|
||||
|
||||
if "error" in embeddings:
|
||||
raise HuggingfaceError(status_code=500, message=embeddings["error"])
|
||||
|
||||
## PROCESS RESPONSE ##
|
||||
return self._process_embedding_response(
|
||||
embeddings=embeddings,
|
||||
model_response=model_response,
|
||||
model=model,
|
||||
input=input,
|
||||
encoding=encoding,
|
||||
)
|
||||
|
||||
def _transform_logprobs(
|
||||
self, hf_response: Optional[List]
|
||||
) -> Optional[TextCompletionLogprobs]:
|
||||
"""
|
||||
Transform Hugging Face logprobs to OpenAI.Completion() format
|
||||
"""
|
||||
if hf_response is None:
|
||||
return None
|
||||
|
||||
# Initialize an empty list for the transformed logprobs
|
||||
_logprob: TextCompletionLogprobs = TextCompletionLogprobs(
|
||||
text_offset=[],
|
||||
token_logprobs=[],
|
||||
tokens=[],
|
||||
top_logprobs=[],
|
||||
)
|
||||
|
||||
# For each Hugging Face response, transform the logprobs
|
||||
for response in hf_response:
|
||||
# Extract the relevant information from the response
|
||||
response_details = response["details"]
|
||||
top_tokens = response_details.get("top_tokens", {})
|
||||
|
||||
for i, token in enumerate(response_details["prefill"]):
|
||||
# Extract the text of the token
|
||||
token_text = token["text"]
|
||||
|
||||
# Extract the logprob of the token
|
||||
token_logprob = token["logprob"]
|
||||
|
||||
# Add the token information to the 'token_info' list
|
||||
_logprob.tokens.append(token_text)
|
||||
_logprob.token_logprobs.append(token_logprob)
|
||||
|
||||
# stub this to work with llm eval harness
|
||||
top_alt_tokens = {"": -1.0, "": -2.0, "": -3.0} # noqa: F601
|
||||
_logprob.top_logprobs.append(top_alt_tokens)
|
||||
|
||||
# For each element in the 'tokens' list, extract the relevant information
|
||||
for i, token in enumerate(response_details["tokens"]):
|
||||
# Extract the text of the token
|
||||
token_text = token["text"]
|
||||
|
||||
# Extract the logprob of the token
|
||||
token_logprob = token["logprob"]
|
||||
|
||||
top_alt_tokens = {}
|
||||
temp_top_logprobs = []
|
||||
if top_tokens != {}:
|
||||
temp_top_logprobs = top_tokens[i]
|
||||
|
||||
# top_alt_tokens should look like this: { "alternative_1": -1, "alternative_2": -2, "alternative_3": -3 }
|
||||
for elem in temp_top_logprobs:
|
||||
text = elem["text"]
|
||||
logprob = elem["logprob"]
|
||||
top_alt_tokens[text] = logprob
|
||||
|
||||
# Add the token information to the 'token_info' list
|
||||
_logprob.tokens.append(token_text)
|
||||
_logprob.token_logprobs.append(token_logprob)
|
||||
_logprob.top_logprobs.append(top_alt_tokens)
|
||||
|
||||
# Add the text offset of the token
|
||||
# This is computed as the sum of the lengths of all previous tokens
|
||||
_logprob.text_offset.append(
|
||||
sum(len(t["text"]) for t in response_details["tokens"][:i])
|
||||
)
|
||||
|
||||
return _logprob
|
Loading…
Add table
Add a link
Reference in a new issue