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| # Copyright (c) 2024 Alibaba Inc (authors: Xiang Lyu, Zhihao Du) | |
| # 2025 Alibaba Inc (authors: Xiang Lyu, Yabin Li, Qihua) | |
| # | |
| # 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 queue | |
| import random | |
| import time | |
| import threading | |
| from typing import Dict, Optional, Callable, List, Generator | |
| import torch | |
| from torch import nn | |
| import torch.nn.functional as F | |
| from transformers import Qwen2ForCausalLM | |
| from torch.nn.utils.rnn import pad_sequence, unpad_sequence | |
| from cosyvoice.utils.common import IGNORE_ID | |
| from cosyvoice.transformer.label_smoothing_loss import LabelSmoothingLoss | |
| from cosyvoice.utils.common import th_accuracy | |
| from cosyvoice.utils.file_utils import logging | |
| from cosyvoice.utils.mask import make_pad_mask | |
| from cosyvoice.transformer.attention import MultiHeadedAttention | |
| from cosyvoice.transformer.encoder_layer import ConformerEncoderLayer | |
| from cosyvoice.transformer.arch_util import AttentionBlock | |
| class LearnableSpeakerEncoder(nn.Module): | |
| """ | |
| Speaker encoder using the same architecture as Tortoise-TTS ConditioningEncoder. | |
| """ | |
| def __init__( | |
| self, | |
| mel_dim: int = 80, | |
| model_dim: int = 512, | |
| output_dim: int = 192, | |
| num_blocks: int = 6, | |
| num_heads: int = 8, | |
| dropout: float = 0.0, | |
| mean_pooling: bool = False, # Tortoise uses first position by default | |
| ): | |
| super().__init__() | |
| # Same as Tortoise ConditioningEncoder | |
| self.init = nn.Conv1d(mel_dim, model_dim, kernel_size=1) | |
| # AttentionBlock from Tortoise | |
| attn = [] | |
| for _ in range(num_blocks): | |
| attn.append(AttentionBlock(model_dim, num_heads)) | |
| self.attn = nn.Sequential(*attn) | |
| self.dim = model_dim | |
| self.mean_pooling = mean_pooling | |
| # Output projection to match CosyVoice embedding dimension | |
| self.output_proj = nn.Linear(model_dim, output_dim) | |
| def forward(self, x, mask=None): | |
| """ | |
| Args: | |
| x: mel-spectrogram [B, 80, T] | |
| mask: padding mask [B, 1, T] (not used in Tortoise version) | |
| Returns: | |
| speaker embedding [B, output_dim] | |
| """ | |
| # Initial conv | |
| h = self.init(x) # [B, model_dim, T] | |
| # Apply attention blocks | |
| h = self.attn(h) # [B, model_dim, T] | |
| # Pooling - Tortoise uses first position | |
| if self.mean_pooling: | |
| if mask is not None: | |
| # Masked mean pooling | |
| h_masked = h * mask | |
| h_sum = h_masked.sum(dim=2) | |
| mask_sum = mask.sum(dim=2).clamp(min=1) | |
| h_pooled = h_sum / mask_sum | |
| else: | |
| h_pooled = h.mean(dim=2) | |
| else: | |
| # Use first position like Tortoise | |
| h_pooled = h[:, :, 0] | |
| # Project to output dimension | |
| output = self.output_proj(h_pooled) # [B, output_dim] | |
| return F.normalize(output, p=2, dim=1) | |
| class TransformerLM(torch.nn.Module): | |
| def __init__( | |
| self, | |
| text_encoder_input_size: int, | |
| llm_input_size: int, | |
| llm_output_size: int, | |
| text_token_size: int, | |
| speech_token_size: int, | |
| text_encoder: torch.nn.Module, | |
| llm: torch.nn.Module, | |
| sampling: Callable, | |
| length_normalized_loss: bool = True, | |
| lsm_weight: float = 0.0, | |
| spk_embed_dim: int = 192, | |
| use_speaker_encoder: bool = False, | |
| max_conditioning_inputs: int = 3, | |
| ): | |
| super().__init__() | |
| self.llm_input_size = llm_input_size | |
| self.speech_token_size = speech_token_size | |
| # 1. build text token inputs related modules | |
| self.text_embedding = torch.nn.Embedding(text_token_size, text_encoder_input_size) | |
| self.text_encoder = text_encoder | |
| self.text_encoder_affine_layer = nn.Linear( | |
| self.text_encoder.output_size(), | |
| llm_input_size | |
| ) | |
| # 2. build speech token language model related modules | |
| self.sos_eos = 0 | |
| self.task_id = 1 | |
| self.llm_embedding = torch.nn.Embedding(2, llm_input_size) | |
| self.llm = llm | |
| self.llm_decoder = nn.Linear(llm_output_size, speech_token_size + 1) | |
| self.criterion_ce = LabelSmoothingLoss( | |
| size=speech_token_size + 1, | |
| padding_idx=IGNORE_ID, | |
| smoothing=lsm_weight, | |
| normalize_length=length_normalized_loss, | |
| ) | |
| # 3. [Optional] build speech token related modules | |
| self.use_speaker_encoder = use_speaker_encoder | |
| self.max_conditioning_inputs = max_conditioning_inputs | |
| if use_speaker_encoder: | |
| self.speaker_encoder = LearnableSpeakerEncoder( | |
| mel_dim=80, | |
| model_dim=512, | |
| output_dim=spk_embed_dim, | |
| num_blocks=6, | |
| num_heads=8, | |
| ) | |
| self.spk_embed_affine_layer = nn.Linear(spk_embed_dim, llm_input_size) | |
| else: | |
| # Fallback to embedding-based approach | |
| self.spk_embed_affine_layer = nn.Linear(spk_embed_dim, llm_input_size) | |
| self.speech_embedding = torch.nn.Embedding(speech_token_size, llm_input_size) | |
| # 4. sampling method | |
| self.sampling = sampling | |
| def get_speaker_conditioning(self, batch, device): | |
| """Extract speaker conditioning from reference audio or embeddings.""" | |
| reference_mels = batch['reference_mels'].to(device) | |
| # Handle multiple references | |
| B, N, C, T = reference_mels.shape | |
| conds = [] | |
| for i in range(N): | |
| ref_mel = reference_mels[:, i, :, :] | |
| if 'reference_mel_masks' in batch: | |
| mask = batch['reference_mel_masks'][:, i, :].unsqueeze(1).to(device) | |
| else: | |
| mask = None | |
| print('ref_mel shape: ', ref_mel.shape, 'mask: ', mask.shape) | |
| cond = self.speaker_encoder(ref_mel, mask) # [B, spk_embed_dim] | |
| conds.append(cond) | |
| # Average multiple references (like Tortoise) | |
| speaker_embed = torch.stack(conds, dim=1).mean(dim=1) # [B, spk_embed_dim] | |
| speaker_embed = F.normalize(speaker_embed, dim=1) | |
| speaker_embed = self.spk_embed_affine_layer(speaker_embed) | |
| speaker_embed = speaker_embed.unsqueeze(1) # [B, 1, llm_input_size] | |
| return speaker_embed | |
| def encode( | |
| self, | |
| text: torch.Tensor, | |
| text_lengths: torch.Tensor, | |
| ): | |
| encoder_out, encoder_mask = self.text_encoder(text, text_lengths, decoding_chunk_size=1, num_decoding_left_chunks=-1) | |
| encoder_out_lens = encoder_mask.squeeze(1).sum(1) | |
| encoder_out = self.text_encoder_affine_layer(encoder_out) | |
| return encoder_out, encoder_out_lens | |
| def pad_unpad_sequence(self, sos_eos_emb, embedding, text_token, text_token_len, task_id_emb, speech_token, speech_token_len): | |
| text_token = unpad_sequence(text_token, text_token_len.cpu(), batch_first=True) | |
| speech_token = unpad_sequence(speech_token, speech_token_len.cpu(), batch_first=True) | |
| lm_input = [torch.concat([sos_eos_emb.squeeze(dim=0), embedding[i], text_token[i], task_id_emb.squeeze(dim=0), speech_token[i]], dim=0) | |
| for i in range(len(text_token))] | |
| lm_input_len = torch.tensor([i.size(0) for i in lm_input], dtype=torch.int32) | |
| lm_input = pad_sequence(lm_input, batch_first=True, padding_value=IGNORE_ID) | |
| return lm_input, lm_input_len | |
| def forward( | |
| self, | |
| batch: dict, | |
| device: torch.device, | |
| ) -> Dict[str, Optional[torch.Tensor]]: | |
| """ | |
| Args: | |
| text: (B, L, D) | |
| text_lengths: (B,) | |
| audio: (B, T, N) or (B, T) | |
| audio_lengths: (B,) | |
| """ | |
| text_token = batch['text_token'].to(device) | |
| text_token_len = batch['text_token_len'].to(device) | |
| speech_token = batch['speech_token'].to(device) | |
| speech_token_len = batch['speech_token_len'].to(device) | |
| embedding = batch['embedding'].to(device) | |
| # 1. prepare llm_target | |
| lm_target = [torch.tensor([IGNORE_ID] * (2 + text_token_len[i]) + speech_token[i, :speech_token_len[i]].tolist() + | |
| [self.speech_token_size]) for i in range(text_token.size(0))] | |
| lm_target = pad_sequence(lm_target, batch_first=True, padding_value=IGNORE_ID).to(device) | |
| # 1. encode text_token | |
| text_token = self.text_embedding(text_token) | |
| text_token, text_token_len = self.encode(text_token, text_token_len) | |
| # 2. embedding projection | |
| embedding = F.normalize(embedding, dim=1) | |
| embedding = self.spk_embed_affine_layer(embedding) | |
| embedding = embedding.unsqueeze(1) | |
| # 3. eos and task_id | |
| sos_eos_emb = self.llm_embedding.weight[self.sos_eos].reshape(1, 1, -1) | |
| task_id_emb = self.llm_embedding.weight[self.task_id].reshape(1, 1, -1) | |
| # 4. encode speech_token | |
| speech_token = self.speech_embedding(speech_token) | |
| # 5. unpad and pad | |
| lm_input, lm_input_len = self.pad_unpad_sequence(sos_eos_emb, embedding, text_token, text_token_len, | |
| task_id_emb, speech_token, speech_token_len) | |
| # 6. run lm forward | |
| lm_output, lm_output_mask = self.llm(lm_input, lm_input_len.to(device)) | |
| logits = self.llm_decoder(lm_output) | |
| loss = self.criterion_ce(logits, lm_target) | |
| acc = th_accuracy(logits.view(-1, self.speech_token_size + 1), lm_target, ignore_label=IGNORE_ID) | |
| return {'loss': loss, 'acc': acc} | |
| def sampling_ids( | |
| self, | |
| weighted_scores: torch.Tensor, | |
| decoded_tokens: List, | |
| sampling: int, | |
| ignore_eos: bool = True, | |
| ): | |
| num_trials, max_trials = 0, 100 | |
| while True: | |
| top_ids = self.sampling(weighted_scores, decoded_tokens, sampling) | |
| if (not ignore_eos) or (self.speech_token_size not in top_ids): | |
| break | |
| num_trials += 1 | |
| if num_trials > max_trials: | |
| raise RuntimeError('sampling reaches max_trials {} and still get eos when ignore_eos is True, check your input!'.format(max_trials)) | |
| return top_ids | |
| 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, | |
| uuid: str = '', | |
| ) -> Generator[torch.Tensor, None, None]: | |
| device = text.device | |
| text = torch.concat([prompt_text, text], dim=1) | |
| text_len += prompt_text_len | |
| text = self.text_embedding(text) | |
| # 1. encode text | |
| text, text_len = self.encode(text, text_len) | |
| # 2. encode embedding | |
| if embedding.shape[0] != 0: | |
| embedding = F.normalize(embedding, dim=1) | |
| embedding = self.spk_embed_affine_layer(embedding) | |
| embedding = embedding.unsqueeze(dim=1) | |
| else: | |
| embedding = torch.zeros(1, 0, self.llm_input_size, dtype=text.dtype).to(device).to(text.dtype) | |
| # 3. concat llm_input | |
| sos_eos_emb = self.llm_embedding.weight[self.sos_eos].reshape(1, 1, -1) | |
| task_id_emb = self.llm_embedding.weight[self.task_id].reshape(1, 1, -1) | |
| if prompt_speech_token_len != 0: | |
| prompt_speech_token_emb = self.speech_embedding(prompt_speech_token) | |
| else: | |
| prompt_speech_token_emb = torch.zeros(1, 0, self.llm_input_size, dtype=text.dtype).to(device) | |
| lm_input = torch.concat([sos_eos_emb, embedding, text, task_id_emb, prompt_speech_token_emb], dim=1) | |
| # 4. cal min/max_length | |
| min_len = int((text_len - prompt_text_len) * min_token_text_ratio) | |
| max_len = int((text_len - prompt_text_len) * max_token_text_ratio) | |
| # 5. step by step decode | |
| out_tokens = [] | |
| offset = 0 | |
| att_cache, cnn_cache = torch.zeros((0, 0, 0, 0), device=lm_input.device), torch.zeros((0, 0, 0, 0), device=lm_input.device) | |
| for i in range(max_len): | |
| y_pred, att_cache, cnn_cache = self.llm.forward_chunk(lm_input, offset=offset, required_cache_size=-1, | |
| att_cache=att_cache, cnn_cache=cnn_cache, | |
| att_mask=torch.tril(torch.ones((1, lm_input.shape[1], lm_input.shape[1]), | |
| device=lm_input.device)).to(torch.bool)) | |
| logp = self.llm_decoder(y_pred[:, -1]).log_softmax(dim=-1) | |
| # force continue decode first token | |
| if i == 0: | |
| logp[:, self.speech_token_size] = -float('inf') | |
| top_ids = self.sampling_ids(logp.squeeze(dim=0), out_tokens, sampling, ignore_eos=True if i < min_len else False).item() | |
| if top_ids == self.speech_token_size: | |
| break | |
| # in stream mode, yield token one by one | |
| yield top_ids | |
| out_tokens.append(top_ids) | |
| offset += lm_input.size(1) | |
| lm_input = self.speech_embedding.weight[top_ids].reshape(1, 1, -1) | |
| class Qwen2Encoder(torch.nn.Module): | |
| def __init__(self, pretrain_path): | |
| super().__init__() | |
| self.model = Qwen2ForCausalLM.from_pretrained(pretrain_path) | |
| def forward(self, xs: torch.Tensor, xs_lens: torch.Tensor): | |
| T = xs.size(1) | |
| masks = ~make_pad_mask(xs_lens, T) | |
| outs = self.model( | |
| inputs_embeds=xs, | |
| attention_mask=masks, | |
| output_hidden_states=True, | |
| return_dict=True, | |
| ) | |
| return outs.hidden_states[-1], masks.unsqueeze(1) | |
| def forward_one_step(self, xs, masks, cache=None): | |
| input_masks = masks[:, -1, :] | |
| outs = self.model( | |
| inputs_embeds=xs, | |
| attention_mask=input_masks, | |
| output_hidden_states=True, | |
| return_dict=True, | |
| use_cache=True, | |
| past_key_values=cache, | |
| ) | |
| xs = outs.hidden_states[-1] | |
| new_cache = outs.past_key_values | |
| return xs, new_cache | |
| class Qwen2LM(TransformerLM): | |
| def __init__( | |
| self, | |
| llm_input_size: int, | |
| llm_output_size: int, | |
| speech_token_size: int, | |
| llm: torch.nn.Module, | |
| sampling: Callable, | |
| length_normalized_loss: bool = True, | |
| lsm_weight: float = 0.0, | |
| mix_ratio: List[int] = [5, 15], | |
| use_speaker_encoder: bool = False, # Add this | |
| spk_embed_dim: int = 192, # Add this | |
| max_conditioning_inputs: int = 2, # Add this | |
| ): | |
| torch.nn.Module.__init__(self) | |
| self.llm_input_size = llm_input_size | |
| self.llm_output_size = llm_output_size | |
| self.speech_token_size = speech_token_size | |
| # Initialize speaker encoder settings | |
| self.use_speaker_encoder = use_speaker_encoder | |
| self.spk_embed_dim = spk_embed_dim | |
| self.max_conditioning_inputs = max_conditioning_inputs | |
| # 2. build speech token language model related modules | |
| self.sos_eos = 0 | |
| self.task_id = 1 | |
| self.fill_token = 2 | |
| self.llm_embedding = torch.nn.Embedding(2, llm_input_size) | |
| self.llm = llm | |
| self.llm_decoder = nn.Linear(llm_output_size, speech_token_size + 3) | |
| self.criterion_ce = LabelSmoothingLoss( | |
| size=speech_token_size + 3, | |
| padding_idx=IGNORE_ID, | |
| smoothing=lsm_weight, | |
| normalize_length=length_normalized_loss, | |
| ) | |
| # 3. [Optional] build speech token related modules | |
| self.speech_embedding = torch.nn.Embedding(speech_token_size + 3, llm_input_size) | |
| # 4. Speaker encoder or embedding projection | |
| if use_speaker_encoder: | |
| self.speaker_encoder = LearnableSpeakerEncoder( | |
| mel_dim=80, | |
| model_dim=512, | |
| output_dim=spk_embed_dim, | |
| num_blocks=6, | |
| num_heads=8, | |
| ) | |
| self.spk_embed_affine_layer = nn.Linear(spk_embed_dim, llm_input_size) | |
| # 4. sampling method | |
| self.sampling = sampling | |
| self.mix_ratio = mix_ratio | |
| # 5. vllm related | |
| self.stop_token_ids = [speech_token_size + i for i in range(3)] | |
| self.vllm_output_queue = {} | |
| def prepare_lm_input_target_with_spk(self, text_token, text_token_emb, text_token_len, speech_token, speech_token_emb, speech_token_len, speaker_embed): | |
| lm_target, lm_input = [], [] | |
| text_token = unpad_sequence(text_token, text_token_len.cpu(), batch_first=True) | |
| speech_token = unpad_sequence(speech_token, speech_token_len.cpu(), batch_first=True) | |
| text_token_emb = unpad_sequence(text_token_emb, text_token_len.cpu(), batch_first=True) | |
| speech_token_emb = unpad_sequence(speech_token_emb, speech_token_len.cpu(), batch_first=True) | |
| for i in range(len(text_token)): | |
| # bistream sequence | |
| spk_emb = speaker_embed[i] # [1, llm_input_size] | |
| if random.random() < 0.5 and speech_token_len[i] / text_token_len[i] > self.mix_ratio[1] / self.mix_ratio[0]: | |
| this_lm_target, this_lm_input = [], [] | |
| this_lm_target.append(IGNORE_ID) | |
| this_lm_target.append(IGNORE_ID) # For speaker embedding | |
| this_lm_input.append(self.llm_embedding.weight[self.sos_eos].reshape(1, -1)) | |
| this_lm_input.append(spk_emb) # Add speaker embedding | |
| for j in range(((text_token_len[i] + 1) / self.mix_ratio[0]).ceil().int().item()): | |
| this_text_token = text_token[i][j * self.mix_ratio[0]: (j + 1) * self.mix_ratio[0]].tolist() | |
| this_speech_token = speech_token[i][j * self.mix_ratio[1]: (j + 1) * self.mix_ratio[1]].tolist() | |
| if len(this_text_token) == self.mix_ratio[0]: | |
| assert len(this_speech_token) == self.mix_ratio[1] | |
| this_lm_target += [IGNORE_ID] * (self.mix_ratio[0] - 1) | |
| this_lm_target += this_speech_token | |
| this_lm_target.append(self.speech_token_size + 2) | |
| this_lm_input.append(text_token_emb[i][j * self.mix_ratio[0]: (j + 1) * self.mix_ratio[0]]) | |
| this_lm_input.append(speech_token_emb[i][j * self.mix_ratio[1]: (j + 1) * self.mix_ratio[1]]) | |
| else: | |
| this_lm_target += [-1] * len(this_text_token) | |
| this_lm_target += speech_token[i][j * self.mix_ratio[1]:].tolist() | |
| this_lm_target.append(self.speech_token_size) | |
| this_lm_input.append(text_token_emb[i][j * self.mix_ratio[0]:]) | |
| this_lm_input.append(self.llm_embedding.weight[self.task_id].reshape(1, -1)) | |
| this_lm_input.append(speech_token_emb[i][j * self.mix_ratio[1]:]) | |
| this_lm_target, this_lm_input = torch.tensor(this_lm_target), torch.concat(this_lm_input, dim=0) | |
| # unistream sequence | |
| else: | |
| # this_lm_target = torch.tensor([IGNORE_ID] * (1 + text_token_len[i]) + speech_token[i].tolist() + [self.speech_token_size]) | |
| this_lm_target = torch.tensor([IGNORE_ID, IGNORE_ID] + [IGNORE_ID] * text_token_len[i] + speech_token[i].tolist() + [self.speech_token_size]) | |
| this_lm_input = torch.concat([ | |
| self.llm_embedding.weight[self.sos_eos].reshape(1, -1), | |
| spk_emb, | |
| text_token_emb[i], | |
| self.llm_embedding.weight[self.task_id].reshape(1, -1), | |
| speech_token_emb[i] | |
| ], dim=0) | |
| lm_target.append(this_lm_target) | |
| lm_input.append(this_lm_input) | |
| lm_input_len = torch.tensor([i.size(0) for i in lm_input], dtype=torch.int32) | |
| lm_input = pad_sequence(lm_input, batch_first=True, padding_value=IGNORE_ID) | |
| lm_target = pad_sequence(lm_target, batch_first=True, padding_value=IGNORE_ID) | |
| return lm_target, lm_input, lm_input_len | |
| def prepare_lm_input_target(self, text_token, text_token_emb, text_token_len, speech_token, speech_token_emb, speech_token_len): | |
| lm_target, lm_input = [], [] | |
| text_token = unpad_sequence(text_token, text_token_len.cpu(), batch_first=True) | |
| speech_token = unpad_sequence(speech_token, speech_token_len.cpu(), batch_first=True) | |
| text_token_emb = unpad_sequence(text_token_emb, text_token_len.cpu(), batch_first=True) | |
| speech_token_emb = unpad_sequence(speech_token_emb, speech_token_len.cpu(), batch_first=True) | |
| for i in range(len(text_token)): | |
| # bistream sequence | |
| if random.random() < 0.5 and speech_token_len[i] / text_token_len[i] > self.mix_ratio[1] / self.mix_ratio[0]: | |
| this_lm_target, this_lm_input = [], [] | |
| this_lm_target.append(IGNORE_ID) | |
| this_lm_input.append(self.llm_embedding.weight[self.sos_eos].reshape(1, -1)) | |
| for j in range(((text_token_len[i] + 1) / self.mix_ratio[0]).ceil().int().item()): | |
| this_text_token = text_token[i][j * self.mix_ratio[0]: (j + 1) * self.mix_ratio[0]].tolist() | |
| this_speech_token = speech_token[i][j * self.mix_ratio[1]: (j + 1) * self.mix_ratio[1]].tolist() | |
| if len(this_text_token) == self.mix_ratio[0]: | |
| assert len(this_speech_token) == self.mix_ratio[1] | |
| this_lm_target += [IGNORE_ID] * (self.mix_ratio[0] - 1) | |
| this_lm_target += this_speech_token | |
| this_lm_target.append(self.speech_token_size + 2) | |
| this_lm_input.append(text_token_emb[i][j * self.mix_ratio[0]: (j + 1) * self.mix_ratio[0]]) | |
| this_lm_input.append(speech_token_emb[i][j * self.mix_ratio[1]: (j + 1) * self.mix_ratio[1]]) | |
| else: | |
| this_lm_target += [-1] * len(this_text_token) | |
| this_lm_target += speech_token[i][j * self.mix_ratio[1]:].tolist() | |
| this_lm_target.append(self.speech_token_size) | |
| this_lm_input.append(text_token_emb[i][j * self.mix_ratio[0]:]) | |
| this_lm_input.append(self.llm_embedding.weight[self.task_id].reshape(1, -1)) | |
| this_lm_input.append(speech_token_emb[i][j * self.mix_ratio[1]:]) | |
| this_lm_target, this_lm_input = torch.tensor(this_lm_target), torch.concat(this_lm_input, dim=0) | |
| # unistream sequence | |
| else: | |
| this_lm_target = torch.tensor([IGNORE_ID] * (1 + text_token_len[i]) + speech_token[i].tolist() + [self.speech_token_size]) | |
| this_lm_input = torch.concat([self.llm_embedding.weight[self.sos_eos].reshape(1, -1), text_token_emb[i], | |
| self.llm_embedding.weight[self.task_id].reshape(1, -1), speech_token_emb[i]], dim=0) | |
| lm_target.append(this_lm_target) | |
| lm_input.append(this_lm_input) | |
| lm_input_len = torch.tensor([i.size(0) for i in lm_input], dtype=torch.int32) | |
| lm_input = pad_sequence(lm_input, batch_first=True, padding_value=IGNORE_ID) | |
| lm_target = pad_sequence(lm_target, batch_first=True, padding_value=IGNORE_ID) | |
| return lm_target, lm_input, lm_input_len | |
| def forward( | |
| self, | |
| batch: dict, | |
| device: torch.device, | |
| ) -> Dict[str, Optional[torch.Tensor]]: | |
| """ | |
| Args: | |
| text: (B, L, D) | |
| text_lengths: (B,) | |
| audio: (B, T, N) or (B, T) | |
| audio_lengths: (B,) | |
| """ | |
| text_token = batch['text_token'].to(device) | |
| text_token_len = batch['text_token_len'].to(device) | |
| speech_token = batch['speech_token'].to(device) | |
| speech_token_len = batch['speech_token_len'].to(device) | |
| if self.use_speaker_encoder: | |
| embedding = self.get_speaker_conditioning(batch, device) # [B, 1, llm_input_size] | |
| # 1. encode text_token | |
| text_token_emb = self.llm.model.model.embed_tokens(text_token) | |
| # 2. encode speech_token | |
| speech_token_emb = self.speech_embedding(speech_token) | |
| # 3. prepare llm_input/target | |
| if self.use_speaker_encoder: | |
| lm_target, lm_input, lm_input_len = self.prepare_lm_input_target_with_spk(text_token, text_token_emb, text_token_len, speech_token, speech_token_emb, speech_token_len, embedding) | |
| else: | |
| lm_target, lm_input, lm_input_len = self.prepare_lm_input_target(text_token, text_token_emb, text_token_len, speech_token, speech_token_emb, speech_token_len) | |
| lm_target = lm_target.to(device) | |
| # 4. run lm forward | |
| lm_output, lm_output_mask = self.llm(lm_input, lm_input_len.to(device)) | |
| logits = self.llm_decoder(lm_output) | |
| loss = self.criterion_ce(logits, lm_target.to(device)) | |
| acc = th_accuracy(logits.view(-1, self.speech_token_size + 3), lm_target, ignore_label=IGNORE_ID) | |
| return {'loss': loss, 'acc': acc} | |
| def forward_dpo( | |
| self, | |
| batch: dict, | |
| device: torch.device, | |
| ) -> Dict[str, Optional[torch.Tensor]]: | |
| text_token = batch['text_token'].to(device) | |
| text_token_len = batch['text_token_len'].to(device) | |
| speech_token = batch['speech_token'].to(device) | |
| speech_token_len = batch['speech_token_len'].to(device) | |
| reject_speech_token = batch['reject_speech_token'].to(device) | |
| reject_speech_token_len = batch['reject_speech_token_len'].to(device) | |
| # 1. encode text_token | |
| text_token_emb = self.llm.model.model.embed_tokens(text_token) | |
| # 2. encode speech_token | |
| speech_token = unpad_sequence(speech_token, speech_token_len.cpu(), batch_first=True) | |
| reject_speech_token = unpad_sequence(reject_speech_token, reject_speech_token_len.cpu(), batch_first=True) | |
| speech_token_combined = speech_token + reject_speech_token | |
| speech_token_combined = pad_sequence(speech_token_combined, batch_first=True, padding_value=0) | |
| speech_token_combined_len = torch.concat([speech_token_len, reject_speech_token_len], dim=0) | |
| speech_token_combined_emb = self.speech_embedding(speech_token_combined) | |
| # 3. prepare llm_input/target | |
| lm_target, lm_input, lm_input_len = self.prepare_lm_input_target(text_token.repeat(2, 1), text_token_emb.repeat(2, 1, 1), text_token_len.repeat(2), speech_token_combined, speech_token_combined_emb, speech_token_combined_len) | |
| lm_target = lm_target.to(device) | |
| # 4. run lm forward | |
| lm_output, lm_output_mask = self.llm(lm_input, lm_input_len.to(device)) | |
| logits = self.llm_decoder(lm_output) | |
| chosen_logits = logits[:text_token.shape[0]] | |
| rejected_logits = logits[text_token.shape[0]:] | |
| chosen_lm_target = lm_target[:text_token.shape[0]] | |
| rejected_lm_target = lm_target[text_token.shape[0]:] | |
| loss = self.criterion_ce(chosen_logits, chosen_lm_target.to(device)) | |
| acc = th_accuracy(chosen_logits.view(-1, self.speech_token_size + 3), chosen_lm_target, ignore_label=IGNORE_ID) | |
| # 5. calculate dpo logits | |
| chosen_lm_mask = chosen_lm_target == IGNORE_ID | |
| rejected_lm_mask = rejected_lm_target == IGNORE_ID | |
| chosen_logps = torch.gather(chosen_logits.log_softmax(dim=-1), dim=2, index=chosen_lm_target.masked_fill(chosen_lm_mask, 0).unsqueeze(dim=-1)).squeeze(dim=-1) | |
| rejected_logps = torch.gather(rejected_logits.log_softmax(dim=-1), dim=2, index=rejected_lm_target.masked_fill(rejected_lm_mask, 0).unsqueeze(dim=-1)).squeeze(dim=-1) | |
| chosen_logps = (chosen_logps * chosen_lm_mask).mean(dim=-1) | |
| rejected_logps = (rejected_logps * chosen_lm_mask).mean(dim=-1) | |
| return {'loss': loss, 'acc': acc, 'chosen_logps': chosen_logps, 'rejected_logps': rejected_logps} | |
| def inference_spk( | |
| 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 = None, | |
| reference_mels: torch.Tensor = None, | |
| reference_mel_lengths: torch.Tensor = None, | |
| reference_mel_masks: torch.Tensor = None, | |
| sampling: int = 25, | |
| max_token_text_ratio: float = 20, | |
| min_token_text_ratio: float = 2, | |
| uuid: str = '', | |
| ) -> Generator[torch.Tensor, None, None]: | |
| device = text.device | |
| text = torch.concat([prompt_text, text], dim=1) | |
| text_len += prompt_text_len | |
| text = self.llm.model.model.embed_tokens(text) | |
| # Get speaker conditioning | |
| if self.use_speaker_encoder and reference_mels is not None: | |
| # Use speaker encoder | |
| batch = { | |
| 'reference_mels': reference_mels, | |
| 'reference_mel_lengths': reference_mel_lengths, | |
| 'reference_mel_masks': reference_mel_masks | |
| } | |
| speaker_embed = self.get_speaker_conditioning(batch, device) # [1, 1, llm_input_size] | |
| elif embedding is not None and embedding.shape[0] != 0: | |
| # Use provided embeddings | |
| embedding = F.normalize(embedding, dim=1) | |
| speaker_embed = self.spk_embed_affine_layer(embedding) | |
| speaker_embed = speaker_embed.unsqueeze(1) | |
| else: | |
| # No speaker conditioning | |
| speaker_embed = torch.zeros(1, 1, self.llm_input_size).to(device) | |
| # 3. concat llm_input with speaker embedding | |
| sos_eos_emb = self.llm_embedding.weight[self.sos_eos].reshape(1, 1, -1) | |
| task_id_emb = self.llm_embedding.weight[self.task_id].reshape(1, 1, -1) | |
| if prompt_speech_token_len != 0: | |
| prompt_speech_token_emb = self.speech_embedding(prompt_speech_token) | |
| else: | |
| prompt_speech_token_emb = torch.zeros(1, 0, self.llm_input_size, dtype=text.dtype).to(device) | |
| # Include speaker embedding in the sequence | |
| lm_input = torch.concat([sos_eos_emb, speaker_embed, text, task_id_emb, prompt_speech_token_emb], dim=1) | |
| # 4. cal min/max_length | |
| min_len = int((text_len - prompt_text_len) * min_token_text_ratio) | |
| max_len = int((text_len - prompt_text_len) * max_token_text_ratio) | |
| # 5. step by step decode | |
| for token in self.inference_wrapper(lm_input, sampling, min_len, max_len, uuid): | |
| yield token | |
| 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, | |
| uuid: str = '', | |
| ) -> Generator[torch.Tensor, None, None]: | |
| device = text.device | |
| text = torch.concat([prompt_text, text], dim=1) | |
| text_len += prompt_text_len | |
| text = self.llm.model.model.embed_tokens(text) | |
| # 3. concat llm_input | |
| sos_eos_emb = self.llm_embedding.weight[self.sos_eos].reshape(1, 1, -1) | |
| task_id_emb = self.llm_embedding.weight[self.task_id].reshape(1, 1, -1) | |
| if prompt_speech_token_len != 0: | |
| prompt_speech_token_emb = self.speech_embedding(prompt_speech_token) | |
| else: | |
| prompt_speech_token_emb = torch.zeros(1, 0, self.llm_input_size, dtype=text.dtype).to(device) | |
| lm_input = torch.concat([sos_eos_emb, text, task_id_emb, prompt_speech_token_emb], dim=1) | |
| # 4. cal min/max_length | |
| min_len = int((text_len - prompt_text_len) * min_token_text_ratio) | |
| max_len = int((text_len - prompt_text_len) * max_token_text_ratio) | |
| # 5. step by step decode | |
| for token in self.inference_wrapper(lm_input, sampling, min_len, max_len, uuid): | |
| yield token | |
| def inference_wrapper(self, lm_input, sampling, min_len, max_len, uuid): | |
| if hasattr(self, 'vllm'): | |
| from vllm import SamplingParams, RequestOutput | |
| sampling_params = SamplingParams(top_k=sampling, | |
| stop_token_ids=self.stop_token_ids, | |
| min_tokens=min_len, | |
| max_tokens=max_len) | |
| with self.lock: | |
| self.vllm.add_request(uuid, {"prompt_embeds": lm_input.squeeze(0).to(torch.bfloat16).to(lm_input.device)}, sampling_params) | |
| self.vllm_output_queue[uuid] = queue.Queue() | |
| out_tokens = [] | |
| while True: | |
| with self.lock: | |
| if self.vllm_output_queue[uuid].empty() is True: | |
| request_outputs: List[RequestOutput] = self.vllm.step() | |
| for request_output in request_outputs: | |
| top_ids = list(request_output.outputs[0].token_ids)[-1] | |
| self.vllm_output_queue[request_output.request_id].put(top_ids) | |
| if self.vllm_output_queue[uuid].empty() is False: | |
| top_ids = self.vllm_output_queue[uuid].get() | |
| if top_ids in self.stop_token_ids: | |
| break | |
| # in stream mode, yield token one by one | |
| yield top_ids | |
| out_tokens.append(top_ids) | |
| if len(out_tokens) == max_len: | |
| break | |
| time.sleep(0.001) | |
| with self.lock: | |
| self.vllm_output_queue.pop(uuid) | |
| else: | |
| out_tokens = [] | |
| cache = None | |
| for i in range(max_len): | |
| y_pred, cache = self.llm.forward_one_step(lm_input, | |
| masks=torch.tril(torch.ones((1, lm_input.shape[1], lm_input.shape[1]), device=lm_input.device)).to(torch.bool), | |
| cache=cache) | |
| logp = self.llm_decoder(y_pred[:, -1]).log_softmax(dim=-1) | |
| top_ids = self.sampling_ids(logp.squeeze(dim=0), out_tokens, sampling, ignore_eos=True if i < min_len else False).item() | |
| if top_ids == self.speech_token_size: | |
| break | |
| if top_ids > self.speech_token_size: | |
| continue | |
| # in stream mode, yield token one by one | |
| yield top_ids | |
| out_tokens.append(top_ids) | |
| lm_input = self.speech_embedding.weight[top_ids].reshape(1, 1, -1) | |
| 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]: | |
| device = prompt_text.device | |
| # 1. prepare input | |
| sos_eos_emb = self.llm_embedding.weight[self.sos_eos].reshape(1, 1, -1) | |
| task_id_emb = self.llm_embedding.weight[self.task_id].reshape(1, 1, -1) | |
| if prompt_speech_token_len != 0: | |
| prompt_speech_token_emb = self.speech_embedding(prompt_speech_token) | |
| else: | |
| prompt_speech_token_emb = torch.zeros(1, 0, self.llm_input_size, dtype=prompt_text.dtype).to(device) | |
| lm_input = torch.concat([sos_eos_emb], dim=1) | |
| # 2. iterate text | |
| out_tokens = [] | |
| cache = None | |
| # NOTE init prompt_text as text_cache as it is basically impossible prompt_speech_token/prompt_text < 15/5 | |
| text_cache = self.llm.model.model.embed_tokens(prompt_text) | |
| next_fill_index = -1 | |
| for this_text in text: | |
| text_cache = torch.concat([text_cache, self.llm.model.model.embed_tokens(this_text)], dim=1) | |
| # prompt_speech_token_emb not empty, try append to lm_input | |
| while prompt_speech_token_emb.size(1) != 0: | |
| if text_cache.size(1) >= self.mix_ratio[0]: | |
| lm_input_text, lm_input_speech = text_cache[:, :self.mix_ratio[0]], prompt_speech_token_emb[:, :self.mix_ratio[1]] | |
| logging.info('append {} text token {} speech token'.format(lm_input_text.size(1), lm_input_speech.size(1))) | |
| lm_input = torch.concat([lm_input, lm_input_text, lm_input_speech], dim=1) | |
| text_cache, prompt_speech_token_emb = text_cache[:, self.mix_ratio[0]:], prompt_speech_token_emb[:, self.mix_ratio[1]:] | |
| else: | |
| logging.info('not enough text token to decode, wait for more') | |
| break | |
| # no prompt_speech_token_emb remain, can decode some speech token | |
| if prompt_speech_token_emb.size(1) == 0: | |
| if (len(out_tokens) != 0 and out_tokens[-1] == self.speech_token_size + 2) or (len(out_tokens) == 0 and lm_input.size(1) == 1): | |
| logging.info('get fill token, need to append more text token') | |
| if text_cache.size(1) >= self.mix_ratio[0]: | |
| lm_input_text = text_cache[:, :self.mix_ratio[0]] | |
| logging.info('append {} text token'.format(lm_input_text.size(1))) | |
| if len(out_tokens) != 0 and out_tokens[-1] == self.speech_token_size + 2: | |
| lm_input = lm_input_text | |
| else: | |
| lm_input = torch.concat([lm_input, lm_input_text], dim=1) | |
| text_cache = text_cache[:, self.mix_ratio[0]:] | |
| else: | |
| logging.info('not enough text token to decode, wait for more') | |
| continue | |
| while True: | |
| seq_len = lm_input.shape[1] if cache is None else lm_input.shape[1] + cache[0][0].size(2) | |
| y_pred, cache = self.llm.forward_one_step(lm_input, | |
| masks=torch.tril(torch.ones((1, seq_len, seq_len), device=lm_input.device)).to(torch.bool), | |
| cache=cache) | |
| logp = self.llm_decoder(y_pred[:, -1]).log_softmax(dim=-1) | |
| if next_fill_index != -1 and len(out_tokens) == next_fill_index: | |
| top_ids = self.speech_token_size + 2 | |
| next_fill_index += (self.mix_ratio[1] + 1) | |
| else: | |
| top_ids = self.sampling_ids(logp.squeeze(dim=0), out_tokens, sampling, ignore_eos=True).item() | |
| if top_ids == self.speech_token_size + 2: | |
| next_fill_index = len(out_tokens) + self.mix_ratio[1] + 1 | |
| logging.info('fill_token index {} next fill_token index {}'.format(len(out_tokens), next_fill_index)) | |
| out_tokens.append(top_ids) | |
| if top_ids >= self.speech_token_size: | |
| if top_ids == self.speech_token_size + 2: | |
| break | |
| else: | |
| raise ValueError('should not get token {}'.format(top_ids)) | |
| yield top_ids | |
| lm_input = self.speech_embedding.weight[top_ids].reshape(1, 1, -1) | |
| # 3. final decode | |
| lm_input = torch.concat([lm_input, text_cache, task_id_emb], dim=1) | |
| logging.info('no more text token, decode until met eos') | |
| while True: | |
| seq_len = lm_input.shape[1] if cache is None else lm_input.shape[1] + cache[0][0].size(2) | |
| y_pred, cache = self.llm.forward_one_step(lm_input, | |
| masks=torch.tril(torch.ones((1, seq_len, seq_len), device=lm_input.device)).to(torch.bool), | |
| cache=cache) | |
| logp = self.llm_decoder(y_pred[:, -1]).log_softmax(dim=-1) | |
| top_ids = self.sampling_ids(logp.squeeze(dim=0), out_tokens, sampling, ignore_eos=False).item() | |
| out_tokens.append(top_ids) | |
| if top_ids >= self.speech_token_size: | |
| if top_ids == self.speech_token_size: | |
| break | |
| else: | |
| raise ValueError('should not get token {}'.format(top_ids)) | |
| # in stream mode, yield token one by one | |
| yield top_ids | |
| lm_input = self.speech_embedding.weight[top_ids].reshape(1, 1, -1) | |