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| import os |
| import torch |
| from hyperpyyaml import load_hyperpyyaml |
| from modelscope import snapshot_download |
| from cosyvoice.cli.frontend import CosyVoiceFrontEnd |
| from cosyvoice.cli.model import CosyVoiceModel |
|
|
| class CosyVoice: |
|
|
| def __init__(self, model_dir): |
| 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.model = CosyVoiceModel(configs['llm'], configs['flow'], configs['hift']) |
| self.model.load('{}/llm.pt'.format(model_dir), |
| '{}/flow.pt'.format(model_dir), |
| '{}/hift.pt'.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): |
| tts_speeches = [] |
| for i in self.frontend.text_normalize(tts_text, split=True): |
| model_input = self.frontend.frontend_sft(i, spk_id) |
| model_output = self.model.inference(**model_input) |
| tts_speeches.append(model_output['tts_speech']) |
| return {'tts_speech': torch.concat(tts_speeches, dim=1)} |
|
|
| def inference_zero_shot(self, tts_text, prompt_text, prompt_speech_16k): |
| prompt_text = self.frontend.text_normalize(prompt_text, split=False) |
| tts_speeches = [] |
| for i in self.frontend.text_normalize(tts_text, split=True): |
| model_input = self.frontend.frontend_zero_shot(i, prompt_text, prompt_speech_16k) |
| model_output = self.model.inference(**model_input) |
| tts_speeches.append(model_output['tts_speech']) |
| return {'tts_speech': torch.concat(tts_speeches, dim=1)} |
|
|
| def inference_cross_lingual(self, tts_text, prompt_speech_16k): |
| if self.frontend.instruct is True: |
| raise ValueError('{} do not support cross_lingual inference'.format(self.model_dir)) |
| tts_speeches = [] |
| for i in self.frontend.text_normalize(tts_text, split=True): |
| model_input = self.frontend.frontend_cross_lingual(i, prompt_speech_16k) |
| model_output = self.model.inference(**model_input) |
| tts_speeches.append(model_output['tts_speech']) |
| return {'tts_speech': torch.concat(tts_speeches, dim=1)} |
|
|
| def inference_instruct(self, tts_text, spk_id, instruct_text): |
| 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) |
| tts_speeches = [] |
| for i in self.frontend.text_normalize(tts_text, split=True): |
| model_input = self.frontend.frontend_instruct(i, spk_id, instruct_text) |
| model_output = self.model.inference(**model_input) |
| tts_speeches.append(model_output['tts_speech']) |
| return {'tts_speech': torch.concat(tts_speeches, dim=1)} |
|
|