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- # Copyright (c) 2024 Alibaba Inc (authors: Xiang Lyu, Zhihao Du)
- #
- # Licensed under the Apache License, Version 2.0 (the "License");
- # you may not use this file except in compliance with the License.
- # You may obtain a copy of the License at
- #
- # http://www.apache.org/licenses/LICENSE-2.0
- #
- # Unless required by applicable law or agreed to in writing, software
- # distributed under the License is distributed on an "AS IS" BASIS,
- # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
- # See the License for the specific language governing permissions and
- # limitations under the License.
- import time
- import queue
- import asyncio
- import threading
- from typing import List, Generator, AsyncGenerator
- import torch
- from cosyvoice.utils.file_utils import logging
- from cosyvoice.llm.llm import Qwen2LM
- # 启用vllm V1版本
- import os
- os.environ["VLLM_USE_V1"] = '1'
- from vllm import ModelRegistry
- from vllm import LLMEngine, AsyncLLMEngine, CompletionOutput
- from vllm.engine.arg_utils import EngineArgs, AsyncEngineArgs
- from vllm.sampling_params import SamplingParams
- from cosyvoice.llm.vllm_use_cosyvoice2_model import CosyVoice2Model as CosyVoice2LLM
- ModelRegistry.register_model("CosyVoice2Model", CosyVoice2LLM)
- from vllm.sampling_params import RequestOutputKind
- # SamplingParams
- SAMPLING_PARAMS = {
- "temperature": 1, # 不能低于0.8, 否则会生成非常多的空音频,或者无法正常生成语音Token
- "top_p": 1, # 不能低于0.8, 否则会生成非常多的空音频,或者无法正常生成语音Token
- "top_k": 25,
- # "min_tokens": 80, # 不支持设置最小的tokens数量设置,开启后vllm直接崩溃,无法启动
- # "presence_penalty": 1.0, # 不支持设置
- # "frequency_penalty": 0.0, # 不支持设置
- "max_tokens": 1024,
- "detokenize": False, # 目前 vllm 0.7.3 v1版本中设置无效,待后续版本更新后减少计算
- "ignore_eos": False,
- "output_kind": RequestOutputKind.DELTA # 设置为DELTA,如调整该参数,请同时调整llm_inference的处理代码
- }
- def tensor_to_list(tensor: torch.tensor):
- return tensor.view(-1).cpu().numpy().tolist()
- class VllmQwen2LM(Qwen2LM):
- def __init__(
- self,
- model_dir,
- mix_ratio: List[int] = [5, 15],
- ):
- self.fp16 = False
- self.half = lambda: None
- self.mix_ratio = mix_ratio
- self.llm_engine = None
- self.speech_token_size = 6564 # 6561 + 3
- self.llm_token_size = 151936 # llm vocab_size
- self.sos_eos_token_id = self.speech_token_size + self.llm_token_size + 1
- self.task_token_id = self.sos_eos_token_id + 1
- self.zero_token_id = self.task_token_id + 1
- # vllm 的推理任务需要在一个固定的事件循环中,因此启动一个后台线程运行转用于推理任务
- self.loop = asyncio.new_event_loop()
- self.loop_thread = threading.Thread(target=self._run_event_loop, daemon=True)
- self.loop_thread.start()
- def _run_event_loop(self):
- asyncio.set_event_loop(self.loop)
- self.loop.run_forever()
- async def async_llm_inference(self, out_queue, prompt_token_ids, request_id, stop_token_ids, max_tokens):
- sampling_params = SamplingParams(**SAMPLING_PARAMS)
- sampling_params.stop_token_ids = stop_token_ids or [6561]
- if max_tokens:
- sampling_params.max_tokens = max_tokens
- async for output in self.llm_engine.generate(
- {
- "prompt_token_ids": prompt_token_ids,
- },
- sampling_params=sampling_params,
- request_id=request_id or f"{time.time()}",
- ):
- out_queue.put((output.outputs[0], output.finished))
- def llm_inference(self, prompt_token_ids: List[int], request_id: str=None, stop_token_ids=None, max_tokens=None):
- out_queue = queue.Queue()
- asyncio.run_coroutine_threadsafe(
- self.async_llm_inference(out_queue, prompt_token_ids, request_id, stop_token_ids, max_tokens), self.loop
- )
- # 接收 out_queue 返回的结果
- finished = False
- while not finished:
- (output, finished) = out_queue.get_nowait() if not out_queue.empty() else out_queue.get()
- yield output
- def inference(
- self,
- text: torch.Tensor,
- text_len: torch.Tensor,
- prompt_text: torch.Tensor,
- prompt_text_len: torch.Tensor,
- prompt_speech_token: torch.Tensor,
- prompt_speech_token_len: torch.Tensor,
- embedding: torch.Tensor,
- sampling: int = 25,
- max_token_text_ratio: float = 20,
- min_token_text_ratio: float = 2,
- ) -> Generator[torch.Tensor|int, None, None]:
- prompt_text = tensor_to_list(prompt_text + torch.tensor(6564))
- prompt_speech_token = tensor_to_list(prompt_speech_token)
- text = tensor_to_list(text + torch.tensor(6564))
- prompt_token_ids = [self.sos_eos_token_id] + prompt_text + text + \
- [self.task_token_id] + prompt_speech_token
- max_tokens = len(text) * 20
- for output in self.llm_inference(
- prompt_token_ids,
- stop_token_ids=[6561],
- max_tokens=max_tokens,
- ):
- if output.token_ids[-1] == 6561:
- need_add_tokens = output.token_ids[:-1]
- else:
- need_add_tokens = output.token_ids
- for token in need_add_tokens:
- yield token
- def inference_bistream(
- self,
- text: Generator,
- prompt_text: torch.Tensor,
- prompt_text_len: torch.Tensor,
- prompt_speech_token: torch.Tensor,
- prompt_speech_token_len: torch.Tensor,
- embedding: torch.Tensor,
- sampling: int = 25,
- max_token_text_ratio: float = 20,
- min_token_text_ratio: float = 2,
- ) -> Generator[torch.Tensor, None, None]:
- prompt_text = tensor_to_list(prompt_text + torch.tensor(6564))
- prompt_speech_token = tensor_to_list(prompt_speech_token)
- last_tokens = []
- prompt_token_ids = [self.sos_eos_token_id]
- text_tokens_cache = prompt_text
- for this_text in text:
- this_text = tensor_to_list(this_text + torch.tensor(6564))
- # text need tokens
- assert isinstance(this_text, list), "text need token ids List[int]."
- text_tokens_cache += this_text
- while len(prompt_speech_token) != 0:
- if len(text_tokens_cache) >= self.mix_ratio[0]:
- text_input_token = text_tokens_cache[:self.mix_ratio[0]]
- speech_input_token = prompt_speech_token[:self.mix_ratio[1]]
- prompt_token_ids += text_input_token + speech_input_token
- # reset the last cache
- text_tokens_cache = text_tokens_cache[self.mix_ratio[0]:]
- prompt_speech_token = prompt_speech_token[self.mix_ratio[1]:]
- else:
- break
- if len(prompt_speech_token) == 0:
- if (len(last_tokens) > 0 and last_tokens[-1] == 6563) or len(prompt_token_ids) == 1:
- if len(text_tokens_cache) >= self.mix_ratio[0]:
- text_tokens_temp = text_tokens_cache[:self.mix_ratio[0]]
- prompt_token_ids += text_tokens_temp
- text_tokens_cache = text_tokens_cache[self.mix_ratio[0]:]
- else:
- continue
- for output in self.llm_inference(prompt_token_ids, stop_token_ids=[6563]):
- last_tokens = output.token_ids
- if last_tokens[-1] == 6563:
- need_add_tokens = last_tokens[:-1]
- else:
- need_add_tokens = last_tokens
- for token in need_add_tokens:
- yield token
- prompt_token_ids.extend(need_add_tokens)
- prompt_token_ids += text_tokens_cache + [self.task_token_id]
- for output in self.llm_inference(prompt_token_ids, stop_token_ids=[6561]):
- if output.token_ids[-1] == 6561:
- need_add_tokens = output.token_ids[:-1]
- else:
- need_add_tokens = output.token_ids
- for token in need_add_tokens:
- yield token
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