# Copyright (c) 2024 Alibaba Inc (authors: Xiang Lyu) # # 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 os import time from tqdm import tqdm from hyperpyyaml import load_hyperpyyaml from modelscope import snapshot_download import torch from cosyvoice.cli.frontend import CosyVoiceFrontEnd from cosyvoice.cli.model import CosyVoiceModel, CosyVoice2Model from cosyvoice.utils.file_utils import logging class CosyVoice: def __init__(self, model_dir, load_jit=True, load_onnx=False, fp16=True): instruct = True if '-Instruct' in model_dir else False self.model_dir = model_dir if not os.path.exists(model_dir): model_dir = snapshot_download(model_dir) with open('{}/cosyvoice.yaml'.format(model_dir), 'r') as f: configs = load_hyperpyyaml(f) self.frontend = CosyVoiceFrontEnd(configs['get_tokenizer'], configs['feat_extractor'], '{}/campplus.onnx'.format(model_dir), '{}/speech_tokenizer_v1.onnx'.format(model_dir), '{}/spk2info.pt'.format(model_dir), instruct, configs['allowed_special']) self.sample_rate = configs['sample_rate'] if torch.cuda.is_available() is False and (fp16 is True or load_jit is True): load_jit = False fp16 = False logging.warning('cpu do not support fp16 and jit, force set to False') self.model = CosyVoiceModel(configs['llm'], configs['flow'], configs['hift'], fp16) self.model.load('{}/llm.pt'.format(model_dir), '{}/flow.pt'.format(model_dir), '{}/hift.pt'.format(model_dir)) if load_jit: self.model.load_jit('{}/llm.text_encoder.fp16.zip'.format(model_dir), '{}/llm.llm.fp16.zip'.format(model_dir), '{}/flow.encoder.fp32.zip'.format(model_dir)) if load_onnx: self.model.load_onnx('{}/flow.decoder.estimator.fp32.onnx'.format(model_dir)) del configs def list_avaliable_spks(self): spks = list(self.frontend.spk2info.keys()) return spks def inference_sft(self, tts_text, spk_id, stream=False, speed=1.0): for i in tqdm(self.frontend.text_normalize(tts_text, split=True)): model_input = self.frontend.frontend_sft(i, spk_id) start_time = time.time() logging.info('synthesis text {}'.format(i)) for model_output in self.model.tts(**model_input, stream=stream, speed=speed): speech_len = model_output['tts_speech'].shape[1] / self.sample_rate logging.info('yield speech len {}, rtf {}'.format(speech_len, (time.time() - start_time) / speech_len)) yield model_output start_time = time.time() def inference_zero_shot(self, tts_text, prompt_text, prompt_speech_16k, stream=False, speed=1.0): prompt_text = self.frontend.text_normalize(prompt_text, split=False) for i in tqdm(self.frontend.text_normalize(tts_text, split=True)): if len(i) < 0.5 * len(prompt_text): logging.warning('synthesis text {} too short than prompt text {}, this may lead to bad performance'.format(i, prompt_text)) model_input = self.frontend.frontend_zero_shot(i, prompt_text, prompt_speech_16k, self.sample_rate) start_time = time.time() logging.info('synthesis text {}'.format(i)) for model_output in self.model.tts(**model_input, stream=stream, speed=speed): speech_len = model_output['tts_speech'].shape[1] / self.sample_rate logging.info('yield speech len {}, rtf {}, abs mean {}, std {}'.format(speech_len, (time.time() - start_time) / speech_len, model_output['tts_speech'].abs().mean(), model_output['tts_speech'].std())) yield model_output start_time = time.time() def inference_cross_lingual(self, tts_text, prompt_speech_16k, stream=False, speed=1.0): if self.frontend.instruct is True: raise ValueError('{} do not support cross_lingual inference'.format(self.model_dir)) for i in tqdm(self.frontend.text_normalize(tts_text, split=True)): model_input = self.frontend.frontend_cross_lingual(i, prompt_speech_16k, self.sample_rate) start_time = time.time() logging.info('synthesis text {}'.format(i)) for model_output in self.model.tts(**model_input, stream=stream, speed=speed): speech_len = model_output['tts_speech'].shape[1] / self.sample_rate logging.info('yield speech len {}, rtf {}'.format(speech_len, (time.time() - start_time) / speech_len)) yield model_output start_time = time.time() def inference_instruct(self, tts_text, spk_id, instruct_text, stream=False, speed=1.0): if self.frontend.instruct is False: raise ValueError('{} do not support instruct inference'.format(self.model_dir)) instruct_text = self.frontend.text_normalize(instruct_text, split=False) for i in tqdm(self.frontend.text_normalize(tts_text, split=True)): model_input = self.frontend.frontend_instruct(i, spk_id, instruct_text) start_time = time.time() logging.info('synthesis text {}'.format(i)) for model_output in self.model.tts(**model_input, stream=stream, speed=speed): speech_len = model_output['tts_speech'].shape[1] / self.sample_rate logging.info('yield speech len {}, rtf {}'.format(speech_len, (time.time() - start_time) / speech_len)) yield model_output start_time = time.time() def inference_instruct2(self, tts_text, instruct_text, prompt_speech_16k, stream=False, speed=1.0): for i in tqdm(self.frontend.text_normalize(tts_text, split=True)): model_input = self.frontend.frontend_instruct2(i, instruct_text, prompt_speech_16k, self.sample_rate) start_time = time.time() logging.info('synthesis text {}'.format(i)) for model_output in self.model.tts(**model_input, stream=stream, speed=speed): speech_len = model_output['tts_speech'].shape[1] / self.sample_rate logging.info('yield speech len {}, rtf {}, abs mean {}, std {}'.format(speech_len, (time.time() - start_time) / speech_len, model_output['tts_speech'].abs().mean(), model_output['tts_speech'].std())) yield model_output start_time = time.time() def inference_vc(self, source_speech_16k, prompt_speech_16k, stream=False, speed=1.0): model_input = self.frontend.frontend_vc(source_speech_16k, prompt_speech_16k, self.sample_rate) start_time = time.time() for model_output in self.model.vc(**model_input, stream=stream, speed=speed): speech_len = model_output['tts_speech'].shape[1] / self.sample_rate logging.info('yield speech len {}, rtf {}'.format(speech_len, (time.time() - start_time) / speech_len)) yield model_output start_time = time.time() class CosyVoice2(CosyVoice): def __init__(self, model_dir, load_jit=False, load_onnx=False, load_trt=False): instruct = True if '-Instruct' in model_dir else False self.model_dir = model_dir if not os.path.exists(model_dir): model_dir = snapshot_download(model_dir) with open('{}/cosyvoice.yaml'.format(model_dir), 'r') as f: configs = load_hyperpyyaml(f, overrides={'qwen_pretrain_path': os.path.join(model_dir, 'CosyVoice-BlankEN')}) self.frontend = CosyVoiceFrontEnd(configs['get_tokenizer'], configs['feat_extractor'], '{}/campplus.onnx'.format(model_dir), '{}/speech_tokenizer_v2.onnx'.format(model_dir), '{}/spk2info.pt'.format(model_dir), instruct, configs['allowed_special']) self.sample_rate = configs['sample_rate'] if torch.cuda.is_available() is False and load_jit is True: load_jit = False logging.warning('cpu do not support jit, force set to False') self.model = CosyVoice2Model(configs['llm'], configs['flow'], configs['hift']) self.model.load('{}/llm.pt'.format(model_dir), '{}/flow.pt'.format(model_dir), '{}/hift.pt'.format(model_dir)) if load_jit: self.model.load_jit('{}/flow.encoder.fp32.zip'.format(model_dir)) if load_trt is True and load_onnx is True: load_onnx = False logging.warning('can not set both load_trt and load_onnx to True, force set load_onnx to False') if load_onnx: self.model.load_onnx('{}/flow.decoder.estimator.fp32.onnx'.format(model_dir)) if load_trt: self.model.load_trt('{}/flow.decoder.estimator.fp16.A10.plan'.format(model_dir)) del configs