serving_embedding.py 8.92 KB
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import asyncio
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import base64
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import time
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from typing import AsyncGenerator, Final, List, Literal, Optional, Union, cast
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import numpy as np
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from fastapi import Request
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from typing_extensions import assert_never
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from vllm.config import ModelConfig
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from vllm.engine.protocol import EngineClient
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from vllm.entrypoints.chat_utils import ChatTemplateContentFormatOption
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from vllm.entrypoints.logger import RequestLogger
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from vllm.entrypoints.openai.protocol import (EmbeddingChatRequest,
                                              EmbeddingRequest,
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                                              EmbeddingResponse,
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                                              EmbeddingResponseData,
                                              ErrorResponse, UsageInfo)
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from vllm.entrypoints.openai.serving_engine import BaseModelPath, OpenAIServing
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from vllm.logger import init_logger
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from vllm.outputs import (EmbeddingOutput, EmbeddingRequestOutput,
                          PoolingRequestOutput)
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from vllm.utils import merge_async_iterators
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logger = init_logger(__name__)


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def _get_embedding(
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    output: EmbeddingOutput,
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    encoding_format: Literal["float", "base64"],
) -> Union[List[float], str]:
    if encoding_format == "float":
        return output.embedding
    elif encoding_format == "base64":
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        # Force to use float32 for base64 encoding
        # to match the OpenAI python client behavior
        embedding_bytes = np.array(output.embedding, dtype="float32").tobytes()
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        return base64.b64encode(embedding_bytes).decode("utf-8")

    assert_never(encoding_format)


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class OpenAIServingEmbedding(OpenAIServing):

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    def __init__(
        self,
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        engine_client: EngineClient,
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        model_config: ModelConfig,
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        base_model_paths: List[BaseModelPath],
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        *,
        request_logger: Optional[RequestLogger],
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        chat_template: Optional[str],
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        chat_template_content_format: ChatTemplateContentFormatOption,
    ) -> None:
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        super().__init__(engine_client=engine_client,
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                         model_config=model_config,
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                         base_model_paths=base_model_paths,
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                         lora_modules=None,
                         prompt_adapters=None,
                         request_logger=request_logger)
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        self.chat_template = chat_template
        self.chat_template_content_format: Final = chat_template_content_format
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    async def create_embedding(
        self,
        request: EmbeddingRequest,
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        raw_request: Optional[Request] = None,
    ) -> Union[EmbeddingResponse, ErrorResponse]:
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        """
        Embedding API similar to OpenAI's API.
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        See https://platform.openai.com/docs/api-reference/embeddings/create
        for the API specification. This API mimics the OpenAI Embedding API.
        """
        error_check_ret = await self._check_model(request)
        if error_check_ret is not None:
            return error_check_ret

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        encoding_format = request.encoding_format
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        if request.dimensions is not None:
            return self.create_error_response(
                "dimensions is currently not supported")

        model_name = request.model
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        request_id = f"embd-{self._base_request_id(raw_request)}"
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        created_time = int(time.time())
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        truncate_prompt_tokens = None

        if request.truncate_prompt_tokens is not None:
            if request.truncate_prompt_tokens <= self.max_model_len:
                truncate_prompt_tokens = request.truncate_prompt_tokens
            else:
                return self.create_error_response(
                    "truncate_prompt_tokens value is "
                    "greater than max_model_len."
                    " Please, select a smaller truncation size.")

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        try:
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            (
                lora_request,
                prompt_adapter_request,
            ) = self._maybe_get_adapters(request)

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            tokenizer = await self.engine_client.get_tokenizer(lora_request)
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            if prompt_adapter_request is not None:
                raise NotImplementedError("Prompt adapter is not supported "
                                          "for embedding models")

            if isinstance(request, EmbeddingChatRequest):
                (
                    _,
                    request_prompts,
                    engine_prompts,
                ) = await self._preprocess_chat(
                    request,
                    tokenizer,
                    request.messages,
                    chat_template=request.chat_template or self.chat_template,
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                    chat_template_content_format=self.
                    chat_template_content_format,
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                    # In embedding requests, we are not generating tokens,
                    # so there is no need to append extra tokens to the input
                    add_generation_prompt=False,
                    continue_final_message=False,
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                    truncate_prompt_tokens=truncate_prompt_tokens,
                    add_special_tokens=request.add_special_tokens,
                )
            else:
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                (request_prompts,
                 engine_prompts) = await self._preprocess_completion(
                     request,
                     tokenizer,
                     request.input,
                     truncate_prompt_tokens=truncate_prompt_tokens,
                     add_special_tokens=request.add_special_tokens,
                 )
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        except ValueError as e:
            logger.exception("Error in preprocessing prompt inputs")
            return self.create_error_response(str(e))
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        # Schedule the request and get the result generator.
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        generators: List[AsyncGenerator[PoolingRequestOutput, None]] = []
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        try:
            pooling_params = request.to_pooling_params()
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            for i, engine_prompt in enumerate(engine_prompts):
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                request_id_item = f"{request_id}-{i}"

                self._log_inputs(request_id_item,
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                                 request_prompts[i],
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                                 params=pooling_params,
                                 lora_request=lora_request,
                                 prompt_adapter_request=prompt_adapter_request)

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                trace_headers = (None if raw_request is None else await
                                 self._get_trace_headers(raw_request.headers))
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                generator = self.engine_client.encode(
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                    engine_prompt,
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                    pooling_params,
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                    request_id_item,
                    lora_request=lora_request,
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                    trace_headers=trace_headers,
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                    priority=request.priority,
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                )

                generators.append(generator)
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        except ValueError as e:
            # TODO: Use a vllm-specific Validation Error
            return self.create_error_response(str(e))

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        result_generator = merge_async_iterators(*generators)
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        num_prompts = len(engine_prompts)

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        # Non-streaming response
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        final_res_batch: List[Optional[PoolingRequestOutput]]
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        final_res_batch = [None] * num_prompts
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        try:
            async for i, res in result_generator:
                final_res_batch[i] = res
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            assert all(final_res is not None for final_res in final_res_batch)
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            final_res_batch_checked = cast(List[PoolingRequestOutput],
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                                           final_res_batch)

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            response = self.request_output_to_embedding_response(
                final_res_batch_checked,
                request_id,
                created_time,
                model_name,
                encoding_format,
            )
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        except asyncio.CancelledError:
            return self.create_error_response("Client disconnected")
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        except ValueError as e:
            # TODO: Use a vllm-specific Validation Error
            return self.create_error_response(str(e))
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        return response
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    def request_output_to_embedding_response(
        self,
        final_res_batch: List[PoolingRequestOutput],
        request_id: str,
        created_time: int,
        model_name: str,
        encoding_format: Literal["float", "base64"],
    ) -> EmbeddingResponse:
        items: List[EmbeddingResponseData] = []
        num_prompt_tokens = 0

        for idx, final_res in enumerate(final_res_batch):
            embedding_res = EmbeddingRequestOutput.from_base(final_res)

            item = EmbeddingResponseData(
                index=idx,
                embedding=_get_embedding(embedding_res.outputs,
                                         encoding_format),
            )
            prompt_token_ids = final_res.prompt_token_ids

            items.append(item)
            num_prompt_tokens += len(prompt_token_ids)

        usage = UsageInfo(
            prompt_tokens=num_prompt_tokens,
            total_tokens=num_prompt_tokens,
        )

        return EmbeddingResponse(
            id=request_id,
            created=created_time,
            model=model_name,
            data=items,
            usage=usage,
        )