# SPDX-License-Identifier: Apache-2.0 # SPDX-FileCopyrightText: Copyright contributors to the vLLM project from vllm.entrypoints.openai.protocol import ChatCompletionRequest, ResponsesRequest from vllm.reasoning.basic_parsers import BaseThinkingReasoningParser class Qwen3ReasoningParser(BaseThinkingReasoningParser): """ Reasoning parser for the Qwen3 model. The Qwen3 model uses ... tokens to denote reasoning text within its output. The model provides a strict switch to disable reasoning output via the 'enable_thinking=False' parameter. This parser extracts the reasoning content enclosed by and tokens from the model's output. """ @property def start_token(self) -> str: """The token that starts reasoning content.""" return "" @property def end_token(self) -> str: """The token that ends reasoning content.""" return "" def extract_reasoning( self, model_output: str, request: ChatCompletionRequest | ResponsesRequest ) -> tuple[str | None, str | None]: """ Extract reasoning content from the model output. Qwen3 has stricter requirements - it needs both start and end tokens to be present, unlike other models that work with just the end token. For text abcxyz: - 'abc' goes to reasoning - 'xyz' goes to content Returns: tuple[Optional[str], Optional[str]]: reasoning content and content """ # Check if the model output contains both and tokens. if self.start_token not in model_output or self.end_token not in model_output: return None, model_output # Check if the is present in the model output, remove it # if it is present. model_output_parts = model_output.partition(self.start_token) model_output = ( model_output_parts[2] if model_output_parts[1] else model_output_parts[0] ) # Check if the model output contains the tokens. # If the end token is not found, return the model output as is. if self.end_token not in model_output: return None, model_output # Extract reasoning content from the model output. reasoning, _, content = model_output.partition(self.end_token) final_content = content or None return reasoning, final_content