conformer_encoder.py 3.8 KB

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  1. import torch
  2. import torch.nn as nn
  3. from funasr.export.utils.torch_function import MakePadMask
  4. from funasr.export.utils.torch_function import sequence_mask
  5. from funasr.modules.attention import MultiHeadedAttentionSANM
  6. from funasr.export.models.modules.multihead_att import MultiHeadedAttentionSANM as MultiHeadedAttentionSANM_export
  7. from funasr.export.models.modules.encoder_layer import EncoderLayerSANM as EncoderLayerSANM_export
  8. from funasr.export.models.modules.encoder_layer import EncoderLayerConformer as EncoderLayerConformer_export
  9. from funasr.modules.positionwise_feed_forward import PositionwiseFeedForward
  10. from funasr.export.models.modules.feedforward import PositionwiseFeedForward as PositionwiseFeedForward_export
  11. from funasr.export.models.encoder.sanm_encoder import SANMEncoder
  12. from funasr.modules.attention import RelPositionMultiHeadedAttention
  13. # from funasr.export.models.modules.multihead_att import RelPositionMultiHeadedAttention as RelPositionMultiHeadedAttention_export
  14. from funasr.export.models.modules.multihead_att import OnnxRelPosMultiHeadedAttention as RelPositionMultiHeadedAttention_export
  15. class ConformerEncoder(nn.Module):
  16. def __init__(
  17. self,
  18. model,
  19. max_seq_len=512,
  20. feats_dim=560,
  21. model_name='encoder',
  22. onnx: bool = True,
  23. ):
  24. super().__init__()
  25. self.embed = model.embed
  26. self.model = model
  27. self.feats_dim = feats_dim
  28. self._output_size = model._output_size
  29. if onnx:
  30. self.make_pad_mask = MakePadMask(max_seq_len, flip=False)
  31. else:
  32. self.make_pad_mask = sequence_mask(max_seq_len, flip=False)
  33. for i, d in enumerate(self.model.encoders):
  34. if isinstance(d.self_attn, MultiHeadedAttentionSANM):
  35. d.self_attn = MultiHeadedAttentionSANM_export(d.self_attn)
  36. if isinstance(d.self_attn, RelPositionMultiHeadedAttention):
  37. d.self_attn = RelPositionMultiHeadedAttention_export(d.self_attn)
  38. if isinstance(d.feed_forward, PositionwiseFeedForward):
  39. d.feed_forward = PositionwiseFeedForward_export(d.feed_forward)
  40. self.model.encoders[i] = EncoderLayerConformer_export(d)
  41. self.model_name = model_name
  42. self.num_heads = model.encoders[0].self_attn.h
  43. self.hidden_size = model.encoders[0].self_attn.linear_out.out_features
  44. def prepare_mask(self, mask):
  45. if len(mask.shape) == 2:
  46. mask = 1 - mask[:, None, None, :]
  47. elif len(mask.shape) == 3:
  48. mask = 1 - mask[:, None, :]
  49. return mask * -10000.0
  50. def forward(self,
  51. speech: torch.Tensor,
  52. speech_lengths: torch.Tensor,
  53. ):
  54. mask = self.make_pad_mask(speech_lengths)
  55. mask = self.prepare_mask(mask)
  56. if self.embed is None:
  57. xs_pad = speech
  58. else:
  59. xs_pad = self.embed(speech)
  60. encoder_outs = self.model.encoders(xs_pad, mask)
  61. xs_pad, masks = encoder_outs[0], encoder_outs[1]
  62. if isinstance(xs_pad, tuple):
  63. xs_pad = xs_pad[0]
  64. xs_pad = self.model.after_norm(xs_pad)
  65. return xs_pad, speech_lengths
  66. def get_output_size(self):
  67. return self.model.encoders[0].size
  68. def get_dummy_inputs(self):
  69. feats = torch.randn(1, 100, self.feats_dim)
  70. return (feats)
  71. def get_input_names(self):
  72. return ['feats']
  73. def get_output_names(self):
  74. return ['encoder_out', 'encoder_out_lens', 'predictor_weight']
  75. def get_dynamic_axes(self):
  76. return {
  77. 'feats': {
  78. 1: 'feats_length'
  79. },
  80. 'encoder_out': {
  81. 1: 'enc_out_length'
  82. },
  83. 'predictor_weight':{
  84. 1: 'pre_out_length'
  85. }
  86. }