forked from phoenix-oss/llama-stack-mirror
# What does this PR do? - Configured ruff linter to automatically fix import sorting issues. - Set --exit-non-zero-on-fix to ensure non-zero exit code when fixes are applied. - Enabled the 'I' selection to focus on import-related linting rules. - Ran the linter, and formatted all codebase imports accordingly. - Removed the black dep from the "dev" group since we use ruff Signed-off-by: Sébastien Han <seb@redhat.com> [//]: # (If resolving an issue, uncomment and update the line below) [//]: # (Closes #[issue-number]) ## Test Plan [Describe the tests you ran to verify your changes with result summaries. *Provide clear instructions so the plan can be easily re-executed.*] [//]: # (## Documentation) [//]: # (- [ ] Added a Changelog entry if the change is significant) Signed-off-by: Sébastien Han <seb@redhat.com>
234 lines
8.7 KiB
Python
234 lines
8.7 KiB
Python
# Copyright (c) Meta Platforms, Inc. and affiliates.
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# All rights reserved.
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#
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# This source code is licensed under the terms described in the LICENSE file in
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# the root directory of this source tree.
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import logging
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import os
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import uuid
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from typing import AsyncGenerator, List, Optional
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from llama_models.llama3.api.chat_format import ChatFormat
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from llama_models.llama3.api.tokenizer import Tokenizer
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from llama_models.sku_list import resolve_model
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from vllm.engine.arg_utils import AsyncEngineArgs
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from vllm.engine.async_llm_engine import AsyncLLMEngine
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from vllm.sampling_params import SamplingParams as VLLMSamplingParams
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from llama_stack.apis.common.content_types import InterleavedContent
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from llama_stack.apis.inference import (
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ChatCompletionRequest,
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ChatCompletionResponse,
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ChatCompletionResponseStreamChunk,
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CompletionResponse,
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CompletionResponseStreamChunk,
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EmbeddingsResponse,
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Inference,
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LogProbConfig,
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Message,
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ResponseFormat,
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SamplingParams,
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ToolChoice,
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ToolConfig,
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ToolDefinition,
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ToolPromptFormat,
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)
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from llama_stack.apis.models import Model
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from llama_stack.providers.datatypes import ModelsProtocolPrivate
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from llama_stack.providers.utils.inference.openai_compat import (
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OpenAICompatCompletionChoice,
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OpenAICompatCompletionResponse,
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get_sampling_options,
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process_chat_completion_response,
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process_chat_completion_stream_response,
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)
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from llama_stack.providers.utils.inference.prompt_adapter import (
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chat_completion_request_to_prompt,
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)
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from .config import VLLMConfig
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log = logging.getLogger(__name__)
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def _random_uuid() -> str:
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return str(uuid.uuid4().hex)
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class VLLMInferenceImpl(Inference, ModelsProtocolPrivate):
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"""Inference implementation for vLLM."""
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def __init__(self, config: VLLMConfig):
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self.config = config
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self.engine = None
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self.formatter = ChatFormat(Tokenizer.get_instance())
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async def initialize(self):
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log.info("Initializing vLLM inference provider.")
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# Disable usage stats reporting. This would be a surprising thing for most
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# people to find out was on by default.
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# https://docs.vllm.ai/en/latest/serving/usage_stats.html
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if "VLLM_NO_USAGE_STATS" not in os.environ:
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os.environ["VLLM_NO_USAGE_STATS"] = "1"
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model = resolve_model(self.config.model)
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if model is None:
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raise ValueError(f"Unknown model {self.config.model}")
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if model.huggingface_repo is None:
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raise ValueError(f"Model {self.config.model} needs a huggingface repo")
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# TODO -- there are a ton of options supported here ...
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engine_args = AsyncEngineArgs(
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model=model.huggingface_repo,
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tokenizer=model.huggingface_repo,
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tensor_parallel_size=self.config.tensor_parallel_size,
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enforce_eager=self.config.enforce_eager,
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gpu_memory_utilization=self.config.gpu_memory_utilization,
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guided_decoding_backend="lm-format-enforcer",
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)
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self.engine = AsyncLLMEngine.from_engine_args(engine_args)
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async def shutdown(self):
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"""Shut down the vLLM inference adapter."""
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log.info("Shutting down vLLM inference provider.")
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if self.engine:
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self.engine.shutdown_background_loop()
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# Note that the return type of the superclass method is WRONG
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async def register_model(self, model: Model) -> Model:
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"""
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Callback that is called when the server associates an inference endpoint
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with an inference provider.
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:param model: Object that encapsulates parameters necessary for identifying
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a specific LLM.
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:returns: The input ``Model`` object. It may or may not be permissible
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to change fields before returning this object.
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"""
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log.info(f"Registering model {model.identifier} with vLLM inference provider.")
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# The current version of this provided is hard-coded to serve only
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# the model specified in the YAML config file.
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configured_model = resolve_model(self.config.model)
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registered_model = resolve_model(model.model_id)
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if configured_model.core_model_id != registered_model.core_model_id:
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raise ValueError(
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f"Requested model '{model.identifier}' is different from "
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f"model '{self.config.model}' that this provider "
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f"is configured to serve"
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)
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return model
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def _sampling_params(self, sampling_params: SamplingParams) -> VLLMSamplingParams:
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if sampling_params is None:
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return VLLMSamplingParams(max_tokens=self.config.max_tokens)
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options = get_sampling_options(sampling_params)
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if "repeat_penalty" in options:
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options["repetition_penalty"] = options["repeat_penalty"]
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del options["repeat_penalty"]
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return VLLMSamplingParams(**options)
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async def unregister_model(self, model_id: str) -> None:
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pass
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async def completion(
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self,
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model_id: str,
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content: InterleavedContent,
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sampling_params: Optional[SamplingParams] = SamplingParams(),
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response_format: Optional[ResponseFormat] = None,
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stream: Optional[bool] = False,
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logprobs: Optional[LogProbConfig] = None,
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) -> CompletionResponse | CompletionResponseStreamChunk:
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raise NotImplementedError("Completion not implemented for vLLM")
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async def chat_completion(
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self,
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model_id: str,
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messages: List[Message],
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sampling_params: Optional[SamplingParams] = SamplingParams(),
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tools: Optional[List[ToolDefinition]] = None,
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tool_choice: Optional[ToolChoice] = ToolChoice.auto,
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tool_prompt_format: Optional[ToolPromptFormat] = None,
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response_format: Optional[ResponseFormat] = None,
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stream: Optional[bool] = False,
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logprobs: Optional[LogProbConfig] = None,
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tool_config: Optional[ToolConfig] = None,
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) -> ChatCompletionResponse | ChatCompletionResponseStreamChunk:
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assert self.engine is not None
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request = ChatCompletionRequest(
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model=model_id,
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messages=messages,
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sampling_params=sampling_params,
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tools=tools or [],
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stream=stream,
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logprobs=logprobs,
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tool_config=tool_config,
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)
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log.info("Sampling params: %s", sampling_params)
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request_id = _random_uuid()
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prompt = await chat_completion_request_to_prompt(request, self.config.model, self.formatter)
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vllm_sampling_params = self._sampling_params(request.sampling_params)
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results_generator = self.engine.generate(prompt, vllm_sampling_params, request_id)
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if stream:
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return self._stream_chat_completion(request, results_generator)
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else:
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return await self._nonstream_chat_completion(request, results_generator)
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async def _nonstream_chat_completion(
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self, request: ChatCompletionRequest, results_generator: AsyncGenerator
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) -> ChatCompletionResponse:
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outputs = [o async for o in results_generator]
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final_output = outputs[-1]
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assert final_output is not None
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outputs = final_output.outputs
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finish_reason = outputs[-1].stop_reason
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choice = OpenAICompatCompletionChoice(
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finish_reason=finish_reason,
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text="".join([output.text for output in outputs]),
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)
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response = OpenAICompatCompletionResponse(
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choices=[choice],
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)
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return process_chat_completion_response(response, self.formatter, request)
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async def _stream_chat_completion(
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self, request: ChatCompletionRequest, results_generator: AsyncGenerator
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) -> AsyncGenerator:
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async def _generate_and_convert_to_openai_compat():
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cur = []
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async for chunk in results_generator:
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if not chunk.outputs:
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log.warning("Empty chunk received")
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continue
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output = chunk.outputs[-1]
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new_tokens = output.token_ids[len(cur) :]
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text = self.formatter.tokenizer.decode(new_tokens)
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cur.extend(new_tokens)
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choice = OpenAICompatCompletionChoice(
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finish_reason=output.finish_reason,
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text=text,
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)
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yield OpenAICompatCompletionResponse(
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choices=[choice],
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)
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stream = _generate_and_convert_to_openai_compat()
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async for chunk in process_chat_completion_stream_response(stream, self.formatter, request):
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yield chunk
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async def embeddings(self, model_id: str, contents: List[InterleavedContent]) -> EmbeddingsResponse:
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raise NotImplementedError()
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