target_delay_transformer.py 4.6 KB

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  1. from typing import Any
  2. from typing import List
  3. from typing import Tuple
  4. import torch
  5. import torch.nn as nn
  6. from funasr.modules.embedding import SinusoidalPositionEncoder
  7. #from funasr.models.encoder.transformer_encoder import TransformerEncoder as Encoder
  8. from funasr.models.encoder.sanm_encoder import SANMEncoder as Encoder
  9. #from funasr.modules.mask import subsequent_n_mask
  10. from funasr.train.abs_model import AbsPunctuation
  11. class TargetDelayTransformer(AbsPunctuation):
  12. """
  13. Author: Speech Lab of DAMO Academy, Alibaba Group
  14. CT-Transformer: Controllable time-delay transformer for real-time punctuation prediction and disfluency detection
  15. https://arxiv.org/pdf/2003.01309.pdf
  16. """
  17. def __init__(
  18. self,
  19. vocab_size: int,
  20. punc_size: int,
  21. pos_enc: str = None,
  22. embed_unit: int = 128,
  23. att_unit: int = 256,
  24. head: int = 2,
  25. unit: int = 1024,
  26. layer: int = 4,
  27. dropout_rate: float = 0.5,
  28. ):
  29. super().__init__()
  30. if pos_enc == "sinusoidal":
  31. # pos_enc_class = PositionalEncoding
  32. pos_enc_class = SinusoidalPositionEncoder
  33. elif pos_enc is None:
  34. def pos_enc_class(*args, **kwargs):
  35. return nn.Sequential() # indentity
  36. else:
  37. raise ValueError(f"unknown pos-enc option: {pos_enc}")
  38. self.embed = nn.Embedding(vocab_size, embed_unit)
  39. self.encoder = Encoder(
  40. input_size=embed_unit,
  41. output_size=att_unit,
  42. attention_heads=head,
  43. linear_units=unit,
  44. num_blocks=layer,
  45. dropout_rate=dropout_rate,
  46. input_layer="pe",
  47. # pos_enc_class=pos_enc_class,
  48. padding_idx=0,
  49. )
  50. self.decoder = nn.Linear(att_unit, punc_size)
  51. # def _target_mask(self, ys_in_pad):
  52. # ys_mask = ys_in_pad != 0
  53. # m = subsequent_n_mask(ys_mask.size(-1), 5, device=ys_mask.device).unsqueeze(0)
  54. # return ys_mask.unsqueeze(-2) & m
  55. def forward(self, input: torch.Tensor, text_lengths: torch.Tensor) -> Tuple[torch.Tensor, None]:
  56. """Compute loss value from buffer sequences.
  57. Args:
  58. input (torch.Tensor): Input ids. (batch, len)
  59. hidden (torch.Tensor): Target ids. (batch, len)
  60. """
  61. x = self.embed(input)
  62. # mask = self._target_mask(input)
  63. h, _, _ = self.encoder(x, text_lengths)
  64. y = self.decoder(h)
  65. return y, None
  66. def with_vad(self):
  67. return False
  68. def score(self, y: torch.Tensor, state: Any, x: torch.Tensor) -> Tuple[torch.Tensor, Any]:
  69. """Score new token.
  70. Args:
  71. y (torch.Tensor): 1D torch.int64 prefix tokens.
  72. state: Scorer state for prefix tokens
  73. x (torch.Tensor): encoder feature that generates ys.
  74. Returns:
  75. tuple[torch.Tensor, Any]: Tuple of
  76. torch.float32 scores for next token (vocab_size)
  77. and next state for ys
  78. """
  79. y = y.unsqueeze(0)
  80. h, _, cache = self.encoder.forward_one_step(self.embed(y), self._target_mask(y), cache=state)
  81. h = self.decoder(h[:, -1])
  82. logp = h.log_softmax(dim=-1).squeeze(0)
  83. return logp, cache
  84. def batch_score(self, ys: torch.Tensor, states: List[Any], xs: torch.Tensor) -> Tuple[torch.Tensor, List[Any]]:
  85. """Score new token batch.
  86. Args:
  87. ys (torch.Tensor): torch.int64 prefix tokens (n_batch, ylen).
  88. states (List[Any]): Scorer states for prefix tokens.
  89. xs (torch.Tensor):
  90. The encoder feature that generates ys (n_batch, xlen, n_feat).
  91. Returns:
  92. tuple[torch.Tensor, List[Any]]: Tuple of
  93. batchfied scores for next token with shape of `(n_batch, vocab_size)`
  94. and next state list for ys.
  95. """
  96. # merge states
  97. n_batch = len(ys)
  98. n_layers = len(self.encoder.encoders)
  99. if states[0] is None:
  100. batch_state = None
  101. else:
  102. # transpose state of [batch, layer] into [layer, batch]
  103. batch_state = [torch.stack([states[b][i] for b in range(n_batch)]) for i in range(n_layers)]
  104. # batch decoding
  105. h, _, states = self.encoder.forward_one_step(self.embed(ys), self._target_mask(ys), cache=batch_state)
  106. h = self.decoder(h[:, -1])
  107. logp = h.log_softmax(dim=-1)
  108. # transpose state of [layer, batch] into [batch, layer]
  109. state_list = [[states[i][b] for i in range(n_layers)] for b in range(n_batch)]
  110. return logp, state_list