mirror of
https://github.com/FunAudioLLM/CosyVoice.git
synced 2026-02-04 09:29:25 +08:00
support streaming tts
This commit is contained in:
@@ -395,38 +395,45 @@ def run_sync_streaming_inference(
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# Reconstruct audio using cross-fade (from client_grpc_streaming.py)
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actual_duration = 0
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if audios:
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cross_fade_samples = int(chunk_overlap_duration * save_sample_rate)
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fade_out = np.linspace(1, 0, cross_fade_samples)
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fade_in = np.linspace(0, 1, cross_fade_samples)
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reconstructed_audio = None
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# Only spark_tts model uses cross-fade
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if model_name == "spark_tts":
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cross_fade_samples = int(chunk_overlap_duration * save_sample_rate)
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fade_out = np.linspace(1, 0, cross_fade_samples)
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fade_in = np.linspace(0, 1, cross_fade_samples)
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reconstructed_audio = None
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# Simplified reconstruction based on client_grpc_streaming.py
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if not audios:
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print("Warning: No audio chunks received.")
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reconstructed_audio = np.array([], dtype=np.float32) # Empty array
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elif len(audios) == 1:
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reconstructed_audio = audios[0]
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# Simplified reconstruction based on client_grpc_streaming.py
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if not audios:
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print("Warning: No audio chunks received.")
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reconstructed_audio = np.array([], dtype=np.float32) # Empty array
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elif len(audios) == 1:
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reconstructed_audio = audios[0]
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else:
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reconstructed_audio = audios[0][:-cross_fade_samples] # Start with first chunk minus overlap
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for i in range(1, len(audios)):
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# Cross-fade section
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cross_faded_overlap = (audios[i][:cross_fade_samples] * fade_in +
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audios[i - 1][-cross_fade_samples:] * fade_out)
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# Middle section of the current chunk
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middle_part = audios[i][cross_fade_samples:-cross_fade_samples]
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# Concatenate
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reconstructed_audio = np.concatenate([reconstructed_audio, cross_faded_overlap, middle_part])
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# Add the last part of the final chunk
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reconstructed_audio = np.concatenate([reconstructed_audio, audios[-1][-cross_fade_samples:]])
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if reconstructed_audio is not None and reconstructed_audio.size > 0:
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actual_duration = len(reconstructed_audio) / save_sample_rate
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# Save reconstructed audio
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sf.write(audio_save_path, reconstructed_audio, save_sample_rate, "PCM_16")
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else:
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print("Warning: No audio chunks received or reconstructed.")
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actual_duration = 0 # Set duration to 0 if no audio
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else:
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reconstructed_audio = audios[0][:-cross_fade_samples] # Start with first chunk minus overlap
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for i in range(1, len(audios)):
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# Cross-fade section
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cross_faded_overlap = (audios[i][:cross_fade_samples] * fade_in +
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audios[i - 1][-cross_fade_samples:] * fade_out)
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# Middle section of the current chunk
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middle_part = audios[i][cross_fade_samples:-cross_fade_samples]
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# Concatenate
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reconstructed_audio = np.concatenate([reconstructed_audio, cross_faded_overlap, middle_part])
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# Add the last part of the final chunk
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reconstructed_audio = np.concatenate([reconstructed_audio, audios[-1][-cross_fade_samples:]])
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if reconstructed_audio is not None and reconstructed_audio.size > 0:
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reconstructed_audio = np.concatenate(audios)
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print(f"reconstructed_audio: {reconstructed_audio.shape}")
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actual_duration = len(reconstructed_audio) / save_sample_rate
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# Save reconstructed audio
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os.makedirs(os.path.dirname(audio_save_path), exist_ok=True)
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sf.write(audio_save_path, reconstructed_audio, save_sample_rate, "PCM_16")
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else:
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print("Warning: No audio chunks received or reconstructed.")
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actual_duration = 0 # Set duration to 0 if no audio
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else:
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print("Warning: No audio chunks received.")
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@@ -667,6 +674,7 @@ async def main():
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manifest_item_list = split_data(manifest_item_list, num_tasks)
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os.makedirs(args.log_dir, exist_ok=True)
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tasks = []
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start_time = time.time()
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for i in range(num_tasks):
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@@ -114,6 +114,7 @@ class TritonPythonModel:
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"runtime_top_p": np.array([[0.95]], dtype=np.float32),
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"runtime_top_k": np.array([[50]], dtype=np.int32),
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"temperature": np.array([[0.8]], dtype=np.float32),
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"repetition_penalty": np.array([[1.1]], dtype=np.float32),
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"input_ids": input_ids,
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"input_lengths": np.array([[input_ids.shape[1]]], dtype=np.int32),
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}
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@@ -144,6 +145,7 @@ class TritonPythonModel:
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# Get actual output IDs up to the sequence length
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actual_output_ids = output_ids[0][0][:seq_lens[0][0]]
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print(f"actual_output_ids: {actual_output_ids}")
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yield actual_output_ids
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else:
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@@ -193,7 +195,10 @@ class TritonPythonModel:
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prompt_speech_tokens: torch.Tensor,
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prompt_speech_feat: torch.Tensor,
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prompt_spk_embedding: torch.Tensor,
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target_speech_tokens: torch.Tensor) -> torch.Tensor:
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target_speech_tokens: torch.Tensor,
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request_id: str,
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token_offset: int = None,
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finalize: bool = None) -> torch.Tensor:
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"""Forward pass through the vocoder component.
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Args:
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@@ -210,11 +215,22 @@ class TritonPythonModel:
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prompt_spk_embedding_tensor = pb_utils.Tensor.from_dlpack("prompt_spk_embedding", to_dlpack(prompt_spk_embedding))
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target_speech_tokens_tensor = pb_utils.Tensor.from_dlpack("target_speech_tokens", to_dlpack(target_speech_tokens))
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inputs_tensor = [prompt_speech_tokens_tensor, prompt_speech_feat_tensor, prompt_spk_embedding_tensor, target_speech_tokens_tensor]
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if token_offset is not None:
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assert finalize is not None
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token_offset_tensor = pb_utils.Tensor("token_offset", np.array([[token_offset]], dtype=np.int32))
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finalize_tensor = pb_utils.Tensor("finalize", np.array([[finalize]], dtype=np.bool_))
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inputs_tensor.append(token_offset_tensor)
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inputs_tensor.append(finalize_tensor)
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# Create and execute inference request
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inference_request = pb_utils.InferenceRequest(
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model_name='token2wav',
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requested_output_names=['waveform'],
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inputs=[prompt_speech_tokens_tensor, prompt_speech_feat_tensor, prompt_spk_embedding_tensor, target_speech_tokens_tensor]
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inputs=inputs_tensor,
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request_id=request_id,
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)
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inference_response = inference_request.exec()
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@@ -275,6 +291,7 @@ class TritonPythonModel:
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responses = []
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for request in requests:
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request_id = request.request_id()
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# Extract input tensors
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wav = pb_utils.get_input_tensor_by_name(request, "reference_wav")
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wav_len = pb_utils.get_input_tensor_by_name(request, "reference_wav_len")
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@@ -292,6 +309,11 @@ class TritonPythonModel:
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prompt_speech_feat = speech_feat[:, :2 * token_len].contiguous().half()
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prompt_speech_tokens = prompt_speech_tokens[:, :token_len].contiguous()
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flow_prompt_speech_token_len = prompt_speech_tokens.shape[-1]
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token_hop_len = 25
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flow_pre_lookahead_len = 3
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reference_text = pb_utils.get_input_tensor_by_name(request, "reference_text").as_numpy()
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reference_text = reference_text[0][0].decode('utf-8')
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@@ -308,24 +330,46 @@ class TritonPythonModel:
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# Generate semantic tokens with LLM
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generated_ids_iter = self.forward_llm(input_ids)
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prompt_spk_embedding = self._extract_spk_embedding(wav_tensor)
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print(f"here2")
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if self.decoupled:
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response_sender = request.get_response_sender()
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request_id = request.request_id()
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generated_ids = []
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for generated_id in generated_ids_iter:
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# convert the numpy array into a int32 tensor
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generated_id = generated_id.tolist()
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if len(generated_id) > 0:
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assert len(generated_id) == 1, "Generated ID is not a single integer"
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generated_ids.append(generated_id[0])
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generated_ids = torch.tensor(generated_ids).unsqueeze(0).to(torch.int32).to(self.device)
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prompt_spk_embedding = self._extract_spk_embedding(wav_tensor)
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audio = self.forward_token2wav(prompt_speech_tokens, prompt_speech_feat, prompt_spk_embedding, generated_ids)
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# Prepare response
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audio_tensor = pb_utils.Tensor.from_dlpack("waveform", to_dlpack(audio))
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semantic_token_ids_arr, token_offset = [], 0
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for generated_ids in generated_ids_iter:
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generated_ids = generated_ids.tolist()
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print(f"generated_id: {generated_ids}")
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semantic_token_ids_arr.extend(generated_ids)
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prompt_token_pad = int(np.ceil(flow_prompt_speech_token_len / token_hop_len) * token_hop_len - flow_prompt_speech_token_len)
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this_token_hop_len = token_hop_len + prompt_token_pad if token_offset == 0 else token_hop_len
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print(f"this_token_hop_len: {this_token_hop_len}")
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if len(semantic_token_ids_arr) - token_offset >= this_token_hop_len + flow_pre_lookahead_len:
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this_tts_speech_token = semantic_token_ids_arr[:token_offset + this_token_hop_len + flow_pre_lookahead_len]
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print(f"this_tts_speech_token: {this_tts_speech_token}")
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this_tts_speech_token = torch.tensor(this_tts_speech_token).unsqueeze(dim=0).to(torch.int32).to(self.device)
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print(f"here3")
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sub_tts_speech = self.forward_token2wav(prompt_speech_tokens, prompt_speech_feat, prompt_spk_embedding, this_tts_speech_token, request_id, token_offset, False)
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print(f"here4")
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# Prepare response to send
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audio_tensor = pb_utils.Tensor.from_dlpack("waveform", to_dlpack(sub_tts_speech))
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inference_response = pb_utils.InferenceResponse(output_tensors=[audio_tensor])
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response_sender.send(inference_response)
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self.logger.log_info(f"[{request_id}]")
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token_offset += this_token_hop_len
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print(f"here")
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this_tts_speech_token = torch.tensor(semantic_token_ids_arr).unsqueeze(dim=0).to(torch.int32).to(self.device)
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sub_tts_speech = self.forward_token2wav(prompt_speech_tokens, prompt_speech_feat, prompt_spk_embedding, this_tts_speech_token, request_id, token_offset, True)
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audio_tensor = pb_utils.Tensor.from_dlpack("waveform", to_dlpack(sub_tts_speech))
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inference_response = pb_utils.InferenceResponse(output_tensors=[audio_tensor])
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response_sender.send(inference_response)
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response_sender.send(flags=pb_utils.TRITONSERVER_RESPONSE_COMPLETE_FINAL)
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self.logger.log_info("send tritonserver_response_complete_final to end")
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else:
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@@ -334,8 +378,7 @@ class TritonPythonModel:
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if generated_ids is None or len(generated_ids) == 0:
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raise pb_utils.TritonModelException("Generated IDs is None or empty")
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prompt_spk_embedding = self._extract_spk_embedding(wav_tensor)
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audio = self.forward_token2wav(prompt_speech_tokens, prompt_speech_feat, prompt_spk_embedding, generated_ids)
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audio = self.forward_token2wav(prompt_speech_tokens, prompt_speech_feat, prompt_spk_embedding, generated_ids, request_id)
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# Prepare response
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audio_tensor = pb_utils.Tensor.from_dlpack("waveform", to_dlpack(audio))
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@@ -32,12 +32,16 @@ from typing import List, Dict
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import torch
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from torch.utils.dlpack import to_dlpack
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from torch.nn import functional as F
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import triton_python_backend_utils as pb_utils
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from hyperpyyaml import load_hyperpyyaml
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from cosyvoice.utils.common import fade_in_out
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from cosyvoice.utils.file_utils import convert_onnx_to_trt, export_cosyvoice2_vllm
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from cosyvoice.utils.common import TrtContextWrapper
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from collections import defaultdict
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import numpy as np
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logging.basicConfig(level=logging.INFO, format='%(asctime)s - %(name)s - %(levelname)s - %(message)s')
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logger = logging.getLogger(__name__)
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@@ -81,6 +85,13 @@ class CosyVoice2Model:
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if self.fp16 is True:
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self.flow.half()
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# streaming tts config
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self.token_hop_len = 25
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self.mel_cache_len = 8
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self.source_cache_len = int(self.mel_cache_len * 480)
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self.speech_window = np.hamming(2 * self.source_cache_len)
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self.hift_cache_dict = defaultdict(lambda: None)
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def load_jit(self, flow_encoder_model):
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flow_encoder = torch.jit.load(flow_encoder_model, map_location=self.device)
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self.flow.encoder = flow_encoder
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@@ -112,6 +123,43 @@ class CosyVoice2Model:
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return {'min_shape': min_shape, 'opt_shape': opt_shape, 'max_shape': max_shape, 'input_names': input_names}
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def token2wav(self, token, prompt_token, prompt_feat, embedding, token_offset, uuid, stream=False, finalize=False, speed=1.0):
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with torch.cuda.amp.autocast(self.fp16):
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tts_mel, _ = self.flow.inference(token=token.to(self.device),
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token_len=torch.tensor([token.shape[1]], dtype=torch.int32).to(self.device),
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prompt_token=prompt_token.to(self.device),
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prompt_token_len=torch.tensor([prompt_token.shape[1]], dtype=torch.int32).to(self.device),
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prompt_feat=prompt_feat.to(self.device),
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prompt_feat_len=torch.tensor([prompt_feat.shape[1]], dtype=torch.int32).to(self.device),
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embedding=embedding.to(self.device),
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streaming=stream,
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finalize=finalize)
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tts_mel = tts_mel[:, :, token_offset * self.flow.token_mel_ratio:]
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# append hift cache
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if self.hift_cache_dict[uuid] is not None:
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hift_cache_mel, hift_cache_source = self.hift_cache_dict[uuid]['mel'], self.hift_cache_dict[uuid]['source']
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tts_mel = torch.concat([hift_cache_mel, tts_mel], dim=2)
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else:
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hift_cache_source = torch.zeros(1, 1, 0)
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# keep overlap mel and hift cache
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if finalize is False:
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tts_speech, tts_source = self.hift.inference(speech_feat=tts_mel, cache_source=hift_cache_source)
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if self.hift_cache_dict[uuid] is not None:
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tts_speech = fade_in_out(tts_speech, self.hift_cache_dict[uuid]['speech'], self.speech_window)
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self.hift_cache_dict[uuid] = {'mel': tts_mel[:, :, -self.mel_cache_len:],
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'source': tts_source[:, :, -self.source_cache_len:],
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'speech': tts_speech[:, -self.source_cache_len:]}
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tts_speech = tts_speech[:, :-self.source_cache_len]
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else:
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if speed != 1.0:
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assert self.hift_cache_dict[uuid] is None, 'speed change only support non-stream inference mode'
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tts_mel = F.interpolate(tts_mel, size=int(tts_mel.shape[2] / speed), mode='linear')
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tts_speech, tts_source = self.hift.inference(speech_feat=tts_mel, cache_source=hift_cache_source)
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if self.hift_cache_dict[uuid] is not None:
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tts_speech = fade_in_out(tts_speech, self.hift_cache_dict[uuid]['speech'], self.speech_window)
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return tts_speech
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class TritonPythonModel:
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"""Triton Python model for vocoder.
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@@ -166,25 +214,49 @@ class TritonPythonModel:
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prompt_speech_tokens = prompt_speech_tokens - ORIGINAL_VOCAB_SIZE
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target_speech_tokens = target_speech_tokens - ORIGINAL_VOCAB_SIZE
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tts_mel, _ = self.token2wav_model.model.flow.inference(
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token=target_speech_tokens,
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token_len=torch.tensor([target_speech_tokens.shape[1]], dtype=torch.int32).to(
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self.device
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),
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prompt_token=prompt_speech_tokens,
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prompt_token_len=torch.tensor(
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[prompt_speech_tokens.shape[1]], dtype=torch.int32
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).to(self.device),
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prompt_feat=prompt_speech_feat,
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prompt_feat_len=torch.tensor([prompt_speech_feat.shape[1]], dtype=torch.int32).to(self.device),
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embedding=prompt_spk_embedding,
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streaming=False,
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finalize=True,
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)
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# We set token_offset as an optional input to support streaming/offline tts. It has to be None when offline tts.
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token_offset = pb_utils.get_input_tensor_by_name(request, "token_offset")
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if token_offset is not None:
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token_offset = token_offset.as_numpy().item()
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finalize = pb_utils.get_input_tensor_by_name(request, "finalize").as_numpy().item()
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if not finalize:
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stream = True
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else:
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stream = False
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request_id = request.request_id()
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print(f"token_offset: {token_offset}, finalize: {finalize}, request_id: {request_id}")
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audio_hat = self.token2wav_model.model.token2wav(token=target_speech_tokens,
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prompt_token=prompt_speech_tokens,
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prompt_feat=prompt_speech_feat,
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embedding=prompt_spk_embedding,
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token_offset=token_offset,
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uuid=request_id,
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stream=stream,
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finalize=finalize)
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if finalize:
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print(f"dict keys: {self.token2wav_model.model.hift_cache_dict.keys()}")
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self.token2wav_model.model.hift_cache_dict.pop(request_id)
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audio_hat, _ = self.token2wav_model.model.hift.inference(
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speech_feat=tts_mel, cache_source=torch.zeros(1, 1, 0)
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)
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else:
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tts_mel, _ = self.token2wav_model.model.flow.inference(
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token=target_speech_tokens,
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token_len=torch.tensor([target_speech_tokens.shape[1]], dtype=torch.int32).to(
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self.device
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),
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prompt_token=prompt_speech_tokens,
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prompt_token_len=torch.tensor(
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[prompt_speech_tokens.shape[1]], dtype=torch.int32
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).to(self.device),
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prompt_feat=prompt_speech_feat,
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prompt_feat_len=torch.tensor([prompt_speech_feat.shape[1]], dtype=torch.int32).to(self.device),
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embedding=prompt_spk_embedding,
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streaming=False,
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||||
finalize=True,
|
||||
)
|
||||
|
||||
audio_hat, _ = self.token2wav_model.model.hift.inference(
|
||||
speech_feat=tts_mel, cache_source=torch.zeros(1, 1, 0)
|
||||
)
|
||||
|
||||
generated_wave = audio_hat.squeeze(0).cpu().numpy()
|
||||
|
||||
|
||||
@@ -45,6 +45,20 @@ input [
|
||||
name: "prompt_spk_embedding"
|
||||
data_type: TYPE_FP16
|
||||
dims: [-1]
|
||||
},
|
||||
{
|
||||
name: "token_offset"
|
||||
data_type: TYPE_INT32
|
||||
dims: [ 1 ]
|
||||
reshape: { shape: [ ] }
|
||||
optional: true
|
||||
},
|
||||
{
|
||||
name: "finalize"
|
||||
data_type: TYPE_BOOL
|
||||
dims: [ 1 ]
|
||||
reshape: { shape: [ ] }
|
||||
optional: true
|
||||
}
|
||||
]
|
||||
output [
|
||||
|
||||
Reference in New Issue
Block a user