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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.
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
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,
):
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.speech_embedding = torch.nn.Embedding(speech_token_size, llm_input_size)
self.spk_embed_affine_layer = torch.nn.Linear(spk_embed_dim, llm_input_size)
# 4. sampling method
self.sampling = sampling
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,
):
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
return top_ids
@torch.inference_mode()
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, 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)
# 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_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(torch.nn.Module):
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,
):
super().__init__()
self.llm_input_size = llm_input_size
self.llm_output_size = llm_output_size
self.speech_token_size = speech_token_size
# 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. sampling method
self.sampling = sampling
def sampling_ids(
self,
weighted_scores: torch.Tensor,
decoded_tokens: List,
sampling: int,
ignore_eos: bool = True,
):
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
return top_ids
@torch.inference_mode()
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, 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)
# 2. encode embedding
embedding = torch.zeros(1, 0, self.llm_input_size, dtype=text.dtype).to(device)
# 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 = []
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) |