sanm_encoder.py 52 KB

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  1. from typing import List
  2. from typing import Optional
  3. from typing import Sequence
  4. from typing import Tuple
  5. from typing import Union
  6. import logging
  7. import torch
  8. import torch.nn as nn
  9. from funasr.modules.streaming_utils.chunk_utilis import overlap_chunk
  10. from typeguard import check_argument_types
  11. import numpy as np
  12. from funasr.modules.nets_utils import make_pad_mask
  13. from funasr.modules.attention import MultiHeadedAttention, MultiHeadedAttentionSANM, MultiHeadedAttentionSANMwithMask
  14. from funasr.modules.embedding import SinusoidalPositionEncoder
  15. from funasr.modules.layer_norm import LayerNorm
  16. from funasr.modules.multi_layer_conv import Conv1dLinear
  17. from funasr.modules.multi_layer_conv import MultiLayeredConv1d
  18. from funasr.modules.positionwise_feed_forward import (
  19. PositionwiseFeedForward, # noqa: H301
  20. )
  21. from funasr.modules.repeat import repeat
  22. from funasr.modules.subsampling import Conv2dSubsampling
  23. from funasr.modules.subsampling import Conv2dSubsampling2
  24. from funasr.modules.subsampling import Conv2dSubsampling6
  25. from funasr.modules.subsampling import Conv2dSubsampling8
  26. from funasr.modules.subsampling import TooShortUttError
  27. from funasr.modules.subsampling import check_short_utt
  28. from funasr.models.ctc import CTC
  29. from funasr.models.encoder.abs_encoder import AbsEncoder
  30. from funasr.modules.mask import subsequent_mask, vad_mask
  31. class EncoderLayerSANM(nn.Module):
  32. def __init__(
  33. self,
  34. in_size,
  35. size,
  36. self_attn,
  37. feed_forward,
  38. dropout_rate,
  39. normalize_before=True,
  40. concat_after=False,
  41. stochastic_depth_rate=0.0,
  42. ):
  43. """Construct an EncoderLayer object."""
  44. super(EncoderLayerSANM, self).__init__()
  45. self.self_attn = self_attn
  46. self.feed_forward = feed_forward
  47. self.norm1 = LayerNorm(in_size)
  48. self.norm2 = LayerNorm(size)
  49. self.dropout = nn.Dropout(dropout_rate)
  50. self.in_size = in_size
  51. self.size = size
  52. self.normalize_before = normalize_before
  53. self.concat_after = concat_after
  54. if self.concat_after:
  55. self.concat_linear = nn.Linear(size + size, size)
  56. self.stochastic_depth_rate = stochastic_depth_rate
  57. self.dropout_rate = dropout_rate
  58. def forward(self, x, mask, cache=None, mask_shfit_chunk=None, mask_att_chunk_encoder=None):
  59. """Compute encoded features.
  60. Args:
  61. x_input (torch.Tensor): Input tensor (#batch, time, size).
  62. mask (torch.Tensor): Mask tensor for the input (#batch, time).
  63. cache (torch.Tensor): Cache tensor of the input (#batch, time - 1, size).
  64. Returns:
  65. torch.Tensor: Output tensor (#batch, time, size).
  66. torch.Tensor: Mask tensor (#batch, time).
  67. """
  68. skip_layer = False
  69. # with stochastic depth, residual connection `x + f(x)` becomes
  70. # `x <- x + 1 / (1 - p) * f(x)` at training time.
  71. stoch_layer_coeff = 1.0
  72. if self.training and self.stochastic_depth_rate > 0:
  73. skip_layer = torch.rand(1).item() < self.stochastic_depth_rate
  74. stoch_layer_coeff = 1.0 / (1 - self.stochastic_depth_rate)
  75. if skip_layer:
  76. if cache is not None:
  77. x = torch.cat([cache, x], dim=1)
  78. return x, mask
  79. residual = x
  80. if self.normalize_before:
  81. x = self.norm1(x)
  82. if self.concat_after:
  83. x_concat = torch.cat((x, self.self_attn(x, mask, mask_shfit_chunk=mask_shfit_chunk, mask_att_chunk_encoder=mask_att_chunk_encoder)), dim=-1)
  84. if self.in_size == self.size:
  85. x = residual + stoch_layer_coeff * self.concat_linear(x_concat)
  86. else:
  87. x = stoch_layer_coeff * self.concat_linear(x_concat)
  88. else:
  89. if self.in_size == self.size:
  90. x = residual + stoch_layer_coeff * self.dropout(
  91. self.self_attn(x, mask, mask_shfit_chunk=mask_shfit_chunk, mask_att_chunk_encoder=mask_att_chunk_encoder)
  92. )
  93. else:
  94. x = stoch_layer_coeff * self.dropout(
  95. self.self_attn(x, mask, mask_shfit_chunk=mask_shfit_chunk, mask_att_chunk_encoder=mask_att_chunk_encoder)
  96. )
  97. if not self.normalize_before:
  98. x = self.norm1(x)
  99. residual = x
  100. if self.normalize_before:
  101. x = self.norm2(x)
  102. x = residual + stoch_layer_coeff * self.dropout(self.feed_forward(x))
  103. if not self.normalize_before:
  104. x = self.norm2(x)
  105. return x, mask, cache, mask_shfit_chunk, mask_att_chunk_encoder
  106. class SANMEncoder(AbsEncoder):
  107. """
  108. author: Speech Lab, Alibaba Group, China
  109. San-m: Memory equipped self-attention for end-to-end speech recognition
  110. https://arxiv.org/abs/2006.01713
  111. """
  112. def __init__(
  113. self,
  114. input_size: int,
  115. output_size: int = 256,
  116. attention_heads: int = 4,
  117. linear_units: int = 2048,
  118. num_blocks: int = 6,
  119. dropout_rate: float = 0.1,
  120. positional_dropout_rate: float = 0.1,
  121. attention_dropout_rate: float = 0.0,
  122. input_layer: Optional[str] = "conv2d",
  123. pos_enc_class=SinusoidalPositionEncoder,
  124. normalize_before: bool = True,
  125. concat_after: bool = False,
  126. positionwise_layer_type: str = "linear",
  127. positionwise_conv_kernel_size: int = 1,
  128. padding_idx: int = -1,
  129. interctc_layer_idx: List[int] = [],
  130. interctc_use_conditioning: bool = False,
  131. kernel_size : int = 11,
  132. sanm_shfit : int = 0,
  133. selfattention_layer_type: str = "sanm",
  134. tf2torch_tensor_name_prefix_torch: str = "encoder",
  135. tf2torch_tensor_name_prefix_tf: str = "seq2seq/encoder",
  136. ):
  137. assert check_argument_types()
  138. super().__init__()
  139. self._output_size = output_size
  140. if input_layer == "linear":
  141. self.embed = torch.nn.Sequential(
  142. torch.nn.Linear(input_size, output_size),
  143. torch.nn.LayerNorm(output_size),
  144. torch.nn.Dropout(dropout_rate),
  145. torch.nn.ReLU(),
  146. pos_enc_class(output_size, positional_dropout_rate),
  147. )
  148. elif input_layer == "conv2d":
  149. self.embed = Conv2dSubsampling(input_size, output_size, dropout_rate)
  150. elif input_layer == "conv2d2":
  151. self.embed = Conv2dSubsampling2(input_size, output_size, dropout_rate)
  152. elif input_layer == "conv2d6":
  153. self.embed = Conv2dSubsampling6(input_size, output_size, dropout_rate)
  154. elif input_layer == "conv2d8":
  155. self.embed = Conv2dSubsampling8(input_size, output_size, dropout_rate)
  156. elif input_layer == "embed":
  157. self.embed = torch.nn.Sequential(
  158. torch.nn.Embedding(input_size, output_size, padding_idx=padding_idx),
  159. SinusoidalPositionEncoder(),
  160. )
  161. elif input_layer is None:
  162. if input_size == output_size:
  163. self.embed = None
  164. else:
  165. self.embed = torch.nn.Linear(input_size, output_size)
  166. elif input_layer == "pe":
  167. self.embed = SinusoidalPositionEncoder()
  168. else:
  169. raise ValueError("unknown input_layer: " + input_layer)
  170. self.normalize_before = normalize_before
  171. if positionwise_layer_type == "linear":
  172. positionwise_layer = PositionwiseFeedForward
  173. positionwise_layer_args = (
  174. output_size,
  175. linear_units,
  176. dropout_rate,
  177. )
  178. elif positionwise_layer_type == "conv1d":
  179. positionwise_layer = MultiLayeredConv1d
  180. positionwise_layer_args = (
  181. output_size,
  182. linear_units,
  183. positionwise_conv_kernel_size,
  184. dropout_rate,
  185. )
  186. elif positionwise_layer_type == "conv1d-linear":
  187. positionwise_layer = Conv1dLinear
  188. positionwise_layer_args = (
  189. output_size,
  190. linear_units,
  191. positionwise_conv_kernel_size,
  192. dropout_rate,
  193. )
  194. else:
  195. raise NotImplementedError("Support only linear or conv1d.")
  196. if selfattention_layer_type == "selfattn":
  197. encoder_selfattn_layer = MultiHeadedAttention
  198. encoder_selfattn_layer_args = (
  199. attention_heads,
  200. output_size,
  201. attention_dropout_rate,
  202. )
  203. elif selfattention_layer_type == "sanm":
  204. encoder_selfattn_layer = MultiHeadedAttentionSANM
  205. encoder_selfattn_layer_args0 = (
  206. attention_heads,
  207. input_size,
  208. output_size,
  209. attention_dropout_rate,
  210. kernel_size,
  211. sanm_shfit,
  212. )
  213. encoder_selfattn_layer_args = (
  214. attention_heads,
  215. output_size,
  216. output_size,
  217. attention_dropout_rate,
  218. kernel_size,
  219. sanm_shfit,
  220. )
  221. self.encoders0 = repeat(
  222. 1,
  223. lambda lnum: EncoderLayerSANM(
  224. input_size,
  225. output_size,
  226. encoder_selfattn_layer(*encoder_selfattn_layer_args0),
  227. positionwise_layer(*positionwise_layer_args),
  228. dropout_rate,
  229. normalize_before,
  230. concat_after,
  231. ),
  232. )
  233. self.encoders = repeat(
  234. num_blocks-1,
  235. lambda lnum: EncoderLayerSANM(
  236. output_size,
  237. output_size,
  238. encoder_selfattn_layer(*encoder_selfattn_layer_args),
  239. positionwise_layer(*positionwise_layer_args),
  240. dropout_rate,
  241. normalize_before,
  242. concat_after,
  243. ),
  244. )
  245. if self.normalize_before:
  246. self.after_norm = LayerNorm(output_size)
  247. self.interctc_layer_idx = interctc_layer_idx
  248. if len(interctc_layer_idx) > 0:
  249. assert 0 < min(interctc_layer_idx) and max(interctc_layer_idx) < num_blocks
  250. self.interctc_use_conditioning = interctc_use_conditioning
  251. self.conditioning_layer = None
  252. self.dropout = nn.Dropout(dropout_rate)
  253. self.tf2torch_tensor_name_prefix_torch = tf2torch_tensor_name_prefix_torch
  254. self.tf2torch_tensor_name_prefix_tf = tf2torch_tensor_name_prefix_tf
  255. def output_size(self) -> int:
  256. return self._output_size
  257. def forward(
  258. self,
  259. xs_pad: torch.Tensor,
  260. ilens: torch.Tensor,
  261. prev_states: torch.Tensor = None,
  262. ctc: CTC = None,
  263. ) -> Tuple[torch.Tensor, torch.Tensor, Optional[torch.Tensor]]:
  264. """Embed positions in tensor.
  265. Args:
  266. xs_pad: input tensor (B, L, D)
  267. ilens: input length (B)
  268. prev_states: Not to be used now.
  269. Returns:
  270. position embedded tensor and mask
  271. """
  272. masks = (~make_pad_mask(ilens)[:, None, :]).to(xs_pad.device)
  273. xs_pad = xs_pad * self.output_size()**0.5
  274. if self.embed is None:
  275. xs_pad = xs_pad
  276. elif (
  277. isinstance(self.embed, Conv2dSubsampling)
  278. or isinstance(self.embed, Conv2dSubsampling2)
  279. or isinstance(self.embed, Conv2dSubsampling6)
  280. or isinstance(self.embed, Conv2dSubsampling8)
  281. ):
  282. short_status, limit_size = check_short_utt(self.embed, xs_pad.size(1))
  283. if short_status:
  284. raise TooShortUttError(
  285. f"has {xs_pad.size(1)} frames and is too short for subsampling "
  286. + f"(it needs more than {limit_size} frames), return empty results",
  287. xs_pad.size(1),
  288. limit_size,
  289. )
  290. xs_pad, masks = self.embed(xs_pad, masks)
  291. else:
  292. xs_pad = self.embed(xs_pad)
  293. # xs_pad = self.dropout(xs_pad)
  294. encoder_outs = self.encoders0(xs_pad, masks)
  295. xs_pad, masks = encoder_outs[0], encoder_outs[1]
  296. intermediate_outs = []
  297. if len(self.interctc_layer_idx) == 0:
  298. encoder_outs = self.encoders(xs_pad, masks)
  299. xs_pad, masks = encoder_outs[0], encoder_outs[1]
  300. else:
  301. for layer_idx, encoder_layer in enumerate(self.encoders):
  302. encoder_outs = encoder_layer(xs_pad, masks)
  303. xs_pad, masks = encoder_outs[0], encoder_outs[1]
  304. if layer_idx + 1 in self.interctc_layer_idx:
  305. encoder_out = xs_pad
  306. # intermediate outputs are also normalized
  307. if self.normalize_before:
  308. encoder_out = self.after_norm(encoder_out)
  309. intermediate_outs.append((layer_idx + 1, encoder_out))
  310. if self.interctc_use_conditioning:
  311. ctc_out = ctc.softmax(encoder_out)
  312. xs_pad = xs_pad + self.conditioning_layer(ctc_out)
  313. if self.normalize_before:
  314. xs_pad = self.after_norm(xs_pad)
  315. olens = masks.squeeze(1).sum(1)
  316. if len(intermediate_outs) > 0:
  317. return (xs_pad, intermediate_outs), olens, None
  318. return xs_pad, olens, None
  319. def forward_chunk(self,
  320. xs_pad: torch.Tensor,
  321. ilens: torch.Tensor,
  322. cache: dict = None,
  323. ctc: CTC = None,
  324. ):
  325. xs_pad *= self.output_size() ** 0.5
  326. if self.embed is None:
  327. xs_pad = xs_pad
  328. else:
  329. xs_pad = self.embed.forward_chunk(xs_pad, cache)
  330. encoder_outs = self.encoders0(xs_pad, None, None, None, None)
  331. xs_pad, masks = encoder_outs[0], encoder_outs[1]
  332. intermediate_outs = []
  333. if len(self.interctc_layer_idx) == 0:
  334. encoder_outs = self.encoders(xs_pad, None, None, None, None)
  335. xs_pad, masks = encoder_outs[0], encoder_outs[1]
  336. else:
  337. for layer_idx, encoder_layer in enumerate(self.encoders):
  338. encoder_outs = encoder_layer(xs_pad, None, None, None, None)
  339. xs_pad, masks = encoder_outs[0], encoder_outs[1]
  340. if layer_idx + 1 in self.interctc_layer_idx:
  341. encoder_out = xs_pad
  342. # intermediate outputs are also normalized
  343. if self.normalize_before:
  344. encoder_out = self.after_norm(encoder_out)
  345. intermediate_outs.append((layer_idx + 1, encoder_out))
  346. if self.interctc_use_conditioning:
  347. ctc_out = ctc.softmax(encoder_out)
  348. xs_pad = xs_pad + self.conditioning_layer(ctc_out)
  349. if self.normalize_before:
  350. xs_pad = self.after_norm(xs_pad)
  351. if len(intermediate_outs) > 0:
  352. return (xs_pad, intermediate_outs), None, None
  353. return xs_pad, ilens, None
  354. def gen_tf2torch_map_dict(self):
  355. tensor_name_prefix_torch = self.tf2torch_tensor_name_prefix_torch
  356. tensor_name_prefix_tf = self.tf2torch_tensor_name_prefix_tf
  357. map_dict_local = {
  358. ## encoder
  359. # cicd
  360. "{}.encoders.layeridx.norm1.weight".format(tensor_name_prefix_torch):
  361. {"name": "{}/layer_layeridx/multi_head/LayerNorm/gamma".format(tensor_name_prefix_tf),
  362. "squeeze": None,
  363. "transpose": None,
  364. }, # (256,),(256,)
  365. "{}.encoders.layeridx.norm1.bias".format(tensor_name_prefix_torch):
  366. {"name": "{}/layer_layeridx/multi_head/LayerNorm/beta".format(tensor_name_prefix_tf),
  367. "squeeze": None,
  368. "transpose": None,
  369. }, # (256,),(256,)
  370. "{}.encoders.layeridx.self_attn.linear_q_k_v.weight".format(tensor_name_prefix_torch):
  371. {"name": "{}/layer_layeridx/multi_head/conv1d/kernel".format(tensor_name_prefix_tf),
  372. "squeeze": 0,
  373. "transpose": (1, 0),
  374. }, # (768,256),(1,256,768)
  375. "{}.encoders.layeridx.self_attn.linear_q_k_v.bias".format(tensor_name_prefix_torch):
  376. {"name": "{}/layer_layeridx/multi_head/conv1d/bias".format(tensor_name_prefix_tf),
  377. "squeeze": None,
  378. "transpose": None,
  379. }, # (768,),(768,)
  380. "{}.encoders.layeridx.self_attn.fsmn_block.weight".format(tensor_name_prefix_torch):
  381. {"name": "{}/layer_layeridx/multi_head/depth_conv_w".format(tensor_name_prefix_tf),
  382. "squeeze": 0,
  383. "transpose": (1, 2, 0),
  384. }, # (256,1,31),(1,31,256,1)
  385. "{}.encoders.layeridx.self_attn.linear_out.weight".format(tensor_name_prefix_torch):
  386. {"name": "{}/layer_layeridx/multi_head/conv1d_1/kernel".format(tensor_name_prefix_tf),
  387. "squeeze": 0,
  388. "transpose": (1, 0),
  389. }, # (256,256),(1,256,256)
  390. "{}.encoders.layeridx.self_attn.linear_out.bias".format(tensor_name_prefix_torch):
  391. {"name": "{}/layer_layeridx/multi_head/conv1d_1/bias".format(tensor_name_prefix_tf),
  392. "squeeze": None,
  393. "transpose": None,
  394. }, # (256,),(256,)
  395. # ffn
  396. "{}.encoders.layeridx.norm2.weight".format(tensor_name_prefix_torch):
  397. {"name": "{}/layer_layeridx/ffn/LayerNorm/gamma".format(tensor_name_prefix_tf),
  398. "squeeze": None,
  399. "transpose": None,
  400. }, # (256,),(256,)
  401. "{}.encoders.layeridx.norm2.bias".format(tensor_name_prefix_torch):
  402. {"name": "{}/layer_layeridx/ffn/LayerNorm/beta".format(tensor_name_prefix_tf),
  403. "squeeze": None,
  404. "transpose": None,
  405. }, # (256,),(256,)
  406. "{}.encoders.layeridx.feed_forward.w_1.weight".format(tensor_name_prefix_torch):
  407. {"name": "{}/layer_layeridx/ffn/conv1d/kernel".format(tensor_name_prefix_tf),
  408. "squeeze": 0,
  409. "transpose": (1, 0),
  410. }, # (1024,256),(1,256,1024)
  411. "{}.encoders.layeridx.feed_forward.w_1.bias".format(tensor_name_prefix_torch):
  412. {"name": "{}/layer_layeridx/ffn/conv1d/bias".format(tensor_name_prefix_tf),
  413. "squeeze": None,
  414. "transpose": None,
  415. }, # (1024,),(1024,)
  416. "{}.encoders.layeridx.feed_forward.w_2.weight".format(tensor_name_prefix_torch):
  417. {"name": "{}/layer_layeridx/ffn/conv1d_1/kernel".format(tensor_name_prefix_tf),
  418. "squeeze": 0,
  419. "transpose": (1, 0),
  420. }, # (256,1024),(1,1024,256)
  421. "{}.encoders.layeridx.feed_forward.w_2.bias".format(tensor_name_prefix_torch):
  422. {"name": "{}/layer_layeridx/ffn/conv1d_1/bias".format(tensor_name_prefix_tf),
  423. "squeeze": None,
  424. "transpose": None,
  425. }, # (256,),(256,)
  426. # out norm
  427. "{}.after_norm.weight".format(tensor_name_prefix_torch):
  428. {"name": "{}/LayerNorm/gamma".format(tensor_name_prefix_tf),
  429. "squeeze": None,
  430. "transpose": None,
  431. }, # (256,),(256,)
  432. "{}.after_norm.bias".format(tensor_name_prefix_torch):
  433. {"name": "{}/LayerNorm/beta".format(tensor_name_prefix_tf),
  434. "squeeze": None,
  435. "transpose": None,
  436. }, # (256,),(256,)
  437. }
  438. return map_dict_local
  439. def convert_tf2torch(self,
  440. var_dict_tf,
  441. var_dict_torch,
  442. ):
  443. map_dict = self.gen_tf2torch_map_dict()
  444. var_dict_torch_update = dict()
  445. for name in sorted(var_dict_torch.keys(), reverse=False):
  446. names = name.split('.')
  447. if names[0] == self.tf2torch_tensor_name_prefix_torch:
  448. if names[1] == "encoders0":
  449. layeridx = int(names[2])
  450. name_q = name.replace(".{}.".format(layeridx), ".layeridx.")
  451. name_q = name_q.replace("encoders0", "encoders")
  452. layeridx_bias = 0
  453. layeridx += layeridx_bias
  454. if name_q in map_dict.keys():
  455. name_v = map_dict[name_q]["name"]
  456. name_tf = name_v.replace("layeridx", "{}".format(layeridx))
  457. data_tf = var_dict_tf[name_tf]
  458. if map_dict[name_q]["squeeze"] is not None:
  459. data_tf = np.squeeze(data_tf, axis=map_dict[name_q]["squeeze"])
  460. if map_dict[name_q]["transpose"] is not None:
  461. data_tf = np.transpose(data_tf, map_dict[name_q]["transpose"])
  462. data_tf = torch.from_numpy(data_tf).type(torch.float32).to("cpu")
  463. assert var_dict_torch[name].size() == data_tf.size(), "{}, {}, {} != {}".format(name, name_tf,
  464. var_dict_torch[
  465. name].size(),
  466. data_tf.size())
  467. var_dict_torch_update[name] = data_tf
  468. logging.info(
  469. "torch tensor: {}, {}, loading from tf tensor: {}, {}".format(name, data_tf.size(), name_v,
  470. var_dict_tf[name_tf].shape))
  471. elif names[1] == "encoders":
  472. layeridx = int(names[2])
  473. name_q = name.replace(".{}.".format(layeridx), ".layeridx.")
  474. layeridx_bias = 1
  475. layeridx += layeridx_bias
  476. if name_q in map_dict.keys():
  477. name_v = map_dict[name_q]["name"]
  478. name_tf = name_v.replace("layeridx", "{}".format(layeridx))
  479. data_tf = var_dict_tf[name_tf]
  480. if map_dict[name_q]["squeeze"] is not None:
  481. data_tf = np.squeeze(data_tf, axis=map_dict[name_q]["squeeze"])
  482. if map_dict[name_q]["transpose"] is not None:
  483. data_tf = np.transpose(data_tf, map_dict[name_q]["transpose"])
  484. data_tf = torch.from_numpy(data_tf).type(torch.float32).to("cpu")
  485. assert var_dict_torch[name].size() == data_tf.size(), "{}, {}, {} != {}".format(name, name_tf,
  486. var_dict_torch[
  487. name].size(),
  488. data_tf.size())
  489. var_dict_torch_update[name] = data_tf
  490. logging.info(
  491. "torch tensor: {}, {}, loading from tf tensor: {}, {}".format(name, data_tf.size(), name_v,
  492. var_dict_tf[name_tf].shape))
  493. elif names[1] == "after_norm":
  494. name_tf = map_dict[name]["name"]
  495. data_tf = var_dict_tf[name_tf]
  496. data_tf = torch.from_numpy(data_tf).type(torch.float32).to("cpu")
  497. var_dict_torch_update[name] = data_tf
  498. logging.info(
  499. "torch tensor: {}, {}, loading from tf tensor: {}, {}".format(name, data_tf.size(), name_tf,
  500. var_dict_tf[name_tf].shape))
  501. return var_dict_torch_update
  502. class SANMEncoderChunkOpt(AbsEncoder):
  503. """
  504. author: Speech Lab, Alibaba Group, China
  505. SCAMA: Streaming chunk-aware multihead attention for online end-to-end speech recognition
  506. https://arxiv.org/abs/2006.01713
  507. """
  508. def __init__(
  509. self,
  510. input_size: int,
  511. output_size: int = 256,
  512. attention_heads: int = 4,
  513. linear_units: int = 2048,
  514. num_blocks: int = 6,
  515. dropout_rate: float = 0.1,
  516. positional_dropout_rate: float = 0.1,
  517. attention_dropout_rate: float = 0.0,
  518. input_layer: Optional[str] = "conv2d",
  519. pos_enc_class=SinusoidalPositionEncoder,
  520. normalize_before: bool = True,
  521. concat_after: bool = False,
  522. positionwise_layer_type: str = "linear",
  523. positionwise_conv_kernel_size: int = 1,
  524. padding_idx: int = -1,
  525. interctc_layer_idx: List[int] = [],
  526. interctc_use_conditioning: bool = False,
  527. kernel_size: int = 11,
  528. sanm_shfit: int = 0,
  529. selfattention_layer_type: str = "sanm",
  530. chunk_size: Union[int, Sequence[int]] = (16,),
  531. stride: Union[int, Sequence[int]] = (10,),
  532. pad_left: Union[int, Sequence[int]] = (0,),
  533. encoder_att_look_back_factor: Union[int, Sequence[int]] = (1,),
  534. decoder_att_look_back_factor: Union[int, Sequence[int]] = (1,),
  535. tf2torch_tensor_name_prefix_torch: str = "encoder",
  536. tf2torch_tensor_name_prefix_tf: str = "seq2seq/encoder",
  537. ):
  538. assert check_argument_types()
  539. super().__init__()
  540. self._output_size = output_size
  541. if input_layer == "linear":
  542. self.embed = torch.nn.Sequential(
  543. torch.nn.Linear(input_size, output_size),
  544. torch.nn.LayerNorm(output_size),
  545. torch.nn.Dropout(dropout_rate),
  546. torch.nn.ReLU(),
  547. pos_enc_class(output_size, positional_dropout_rate),
  548. )
  549. elif input_layer == "conv2d":
  550. self.embed = Conv2dSubsampling(input_size, output_size, dropout_rate)
  551. elif input_layer == "conv2d2":
  552. self.embed = Conv2dSubsampling2(input_size, output_size, dropout_rate)
  553. elif input_layer == "conv2d6":
  554. self.embed = Conv2dSubsampling6(input_size, output_size, dropout_rate)
  555. elif input_layer == "conv2d8":
  556. self.embed = Conv2dSubsampling8(input_size, output_size, dropout_rate)
  557. elif input_layer == "embed":
  558. self.embed = torch.nn.Sequential(
  559. torch.nn.Embedding(input_size, output_size, padding_idx=padding_idx),
  560. pos_enc_class(output_size, positional_dropout_rate),
  561. )
  562. elif input_layer is None:
  563. if input_size == output_size:
  564. self.embed = None
  565. else:
  566. self.embed = torch.nn.Linear(input_size, output_size)
  567. elif input_layer == "pe":
  568. self.embed = SinusoidalPositionEncoder()
  569. else:
  570. raise ValueError("unknown input_layer: " + input_layer)
  571. self.normalize_before = normalize_before
  572. if positionwise_layer_type == "linear":
  573. positionwise_layer = PositionwiseFeedForward
  574. positionwise_layer_args = (
  575. output_size,
  576. linear_units,
  577. dropout_rate,
  578. )
  579. elif positionwise_layer_type == "conv1d":
  580. positionwise_layer = MultiLayeredConv1d
  581. positionwise_layer_args = (
  582. output_size,
  583. linear_units,
  584. positionwise_conv_kernel_size,
  585. dropout_rate,
  586. )
  587. elif positionwise_layer_type == "conv1d-linear":
  588. positionwise_layer = Conv1dLinear
  589. positionwise_layer_args = (
  590. output_size,
  591. linear_units,
  592. positionwise_conv_kernel_size,
  593. dropout_rate,
  594. )
  595. else:
  596. raise NotImplementedError("Support only linear or conv1d.")
  597. if selfattention_layer_type == "selfattn":
  598. encoder_selfattn_layer = MultiHeadedAttention
  599. encoder_selfattn_layer_args = (
  600. attention_heads,
  601. output_size,
  602. attention_dropout_rate,
  603. )
  604. elif selfattention_layer_type == "sanm":
  605. encoder_selfattn_layer = MultiHeadedAttentionSANM
  606. encoder_selfattn_layer_args0 = (
  607. attention_heads,
  608. input_size,
  609. output_size,
  610. attention_dropout_rate,
  611. kernel_size,
  612. sanm_shfit,
  613. )
  614. encoder_selfattn_layer_args = (
  615. attention_heads,
  616. output_size,
  617. output_size,
  618. attention_dropout_rate,
  619. kernel_size,
  620. sanm_shfit,
  621. )
  622. self.encoders0 = repeat(
  623. 1,
  624. lambda lnum: EncoderLayerSANM(
  625. input_size,
  626. output_size,
  627. encoder_selfattn_layer(*encoder_selfattn_layer_args0),
  628. positionwise_layer(*positionwise_layer_args),
  629. dropout_rate,
  630. normalize_before,
  631. concat_after,
  632. ),
  633. )
  634. self.encoders = repeat(
  635. num_blocks - 1,
  636. lambda lnum: EncoderLayerSANM(
  637. output_size,
  638. output_size,
  639. encoder_selfattn_layer(*encoder_selfattn_layer_args),
  640. positionwise_layer(*positionwise_layer_args),
  641. dropout_rate,
  642. normalize_before,
  643. concat_after,
  644. ),
  645. )
  646. if self.normalize_before:
  647. self.after_norm = LayerNorm(output_size)
  648. self.interctc_layer_idx = interctc_layer_idx
  649. if len(interctc_layer_idx) > 0:
  650. assert 0 < min(interctc_layer_idx) and max(interctc_layer_idx) < num_blocks
  651. self.interctc_use_conditioning = interctc_use_conditioning
  652. self.conditioning_layer = None
  653. shfit_fsmn = (kernel_size - 1) // 2
  654. self.overlap_chunk_cls = overlap_chunk(
  655. chunk_size=chunk_size,
  656. stride=stride,
  657. pad_left=pad_left,
  658. shfit_fsmn=shfit_fsmn,
  659. encoder_att_look_back_factor=encoder_att_look_back_factor,
  660. decoder_att_look_back_factor=decoder_att_look_back_factor,
  661. )
  662. self.tf2torch_tensor_name_prefix_torch = tf2torch_tensor_name_prefix_torch
  663. self.tf2torch_tensor_name_prefix_tf = tf2torch_tensor_name_prefix_tf
  664. def output_size(self) -> int:
  665. return self._output_size
  666. def forward(
  667. self,
  668. xs_pad: torch.Tensor,
  669. ilens: torch.Tensor,
  670. prev_states: torch.Tensor = None,
  671. ctc: CTC = None,
  672. ind: int = 0,
  673. ) -> Tuple[torch.Tensor, torch.Tensor, Optional[torch.Tensor]]:
  674. """Embed positions in tensor.
  675. Args:
  676. xs_pad: input tensor (B, L, D)
  677. ilens: input length (B)
  678. prev_states: Not to be used now.
  679. Returns:
  680. position embedded tensor and mask
  681. """
  682. masks = (~make_pad_mask(ilens)[:, None, :]).to(xs_pad.device)
  683. xs_pad *= self.output_size() ** 0.5
  684. if self.embed is None:
  685. xs_pad = xs_pad
  686. elif (
  687. isinstance(self.embed, Conv2dSubsampling)
  688. or isinstance(self.embed, Conv2dSubsampling2)
  689. or isinstance(self.embed, Conv2dSubsampling6)
  690. or isinstance(self.embed, Conv2dSubsampling8)
  691. ):
  692. short_status, limit_size = check_short_utt(self.embed, xs_pad.size(1))
  693. if short_status:
  694. raise TooShortUttError(
  695. f"has {xs_pad.size(1)} frames and is too short for subsampling "
  696. + f"(it needs more than {limit_size} frames), return empty results",
  697. xs_pad.size(1),
  698. limit_size,
  699. )
  700. xs_pad, masks = self.embed(xs_pad, masks)
  701. else:
  702. xs_pad = self.embed(xs_pad)
  703. mask_shfit_chunk, mask_att_chunk_encoder = None, None
  704. if self.overlap_chunk_cls is not None:
  705. ilens = masks.squeeze(1).sum(1)
  706. chunk_outs = self.overlap_chunk_cls.gen_chunk_mask(ilens, ind)
  707. xs_pad, ilens = self.overlap_chunk_cls.split_chunk(xs_pad, ilens, chunk_outs=chunk_outs)
  708. masks = (~make_pad_mask(ilens)[:, None, :]).to(xs_pad.device)
  709. mask_shfit_chunk = self.overlap_chunk_cls.get_mask_shfit_chunk(chunk_outs, xs_pad.device, xs_pad.size(0),
  710. dtype=xs_pad.dtype)
  711. mask_att_chunk_encoder = self.overlap_chunk_cls.get_mask_att_chunk_encoder(chunk_outs, xs_pad.device,
  712. xs_pad.size(0),
  713. dtype=xs_pad.dtype)
  714. encoder_outs = self.encoders0(xs_pad, masks, None, mask_shfit_chunk, mask_att_chunk_encoder)
  715. xs_pad, masks = encoder_outs[0], encoder_outs[1]
  716. intermediate_outs = []
  717. if len(self.interctc_layer_idx) == 0:
  718. encoder_outs = self.encoders(xs_pad, masks, None, mask_shfit_chunk, mask_att_chunk_encoder)
  719. xs_pad, masks = encoder_outs[0], encoder_outs[1]
  720. else:
  721. for layer_idx, encoder_layer in enumerate(self.encoders):
  722. encoder_outs = encoder_layer(xs_pad, masks, None, mask_shfit_chunk, mask_att_chunk_encoder)
  723. xs_pad, masks = encoder_outs[0], encoder_outs[1]
  724. if layer_idx + 1 in self.interctc_layer_idx:
  725. encoder_out = xs_pad
  726. # intermediate outputs are also normalized
  727. if self.normalize_before:
  728. encoder_out = self.after_norm(encoder_out)
  729. intermediate_outs.append((layer_idx + 1, encoder_out))
  730. if self.interctc_use_conditioning:
  731. ctc_out = ctc.softmax(encoder_out)
  732. xs_pad = xs_pad + self.conditioning_layer(ctc_out)
  733. if self.normalize_before:
  734. xs_pad = self.after_norm(xs_pad)
  735. olens = masks.squeeze(1).sum(1)
  736. if len(intermediate_outs) > 0:
  737. return (xs_pad, intermediate_outs), olens, None
  738. return xs_pad, olens, None
  739. def gen_tf2torch_map_dict(self):
  740. tensor_name_prefix_torch = self.tf2torch_tensor_name_prefix_torch
  741. tensor_name_prefix_tf = self.tf2torch_tensor_name_prefix_tf
  742. map_dict_local = {
  743. ## encoder
  744. # cicd
  745. "{}.encoders.layeridx.norm1.weight".format(tensor_name_prefix_torch):
  746. {"name": "{}/layer_layeridx/multi_head/LayerNorm/gamma".format(tensor_name_prefix_tf),
  747. "squeeze": None,
  748. "transpose": None,
  749. }, # (256,),(256,)
  750. "{}.encoders.layeridx.norm1.bias".format(tensor_name_prefix_torch):
  751. {"name": "{}/layer_layeridx/multi_head/LayerNorm/beta".format(tensor_name_prefix_tf),
  752. "squeeze": None,
  753. "transpose": None,
  754. }, # (256,),(256,)
  755. "{}.encoders.layeridx.self_attn.linear_q_k_v.weight".format(tensor_name_prefix_torch):
  756. {"name": "{}/layer_layeridx/multi_head/conv1d/kernel".format(tensor_name_prefix_tf),
  757. "squeeze": 0,
  758. "transpose": (1, 0),
  759. }, # (768,256),(1,256,768)
  760. "{}.encoders.layeridx.self_attn.linear_q_k_v.bias".format(tensor_name_prefix_torch):
  761. {"name": "{}/layer_layeridx/multi_head/conv1d/bias".format(tensor_name_prefix_tf),
  762. "squeeze": None,
  763. "transpose": None,
  764. }, # (768,),(768,)
  765. "{}.encoders.layeridx.self_attn.fsmn_block.weight".format(tensor_name_prefix_torch):
  766. {"name": "{}/layer_layeridx/multi_head/depth_conv_w".format(tensor_name_prefix_tf),
  767. "squeeze": 0,
  768. "transpose": (1, 2, 0),
  769. }, # (256,1,31),(1,31,256,1)
  770. "{}.encoders.layeridx.self_attn.linear_out.weight".format(tensor_name_prefix_torch):
  771. {"name": "{}/layer_layeridx/multi_head/conv1d_1/kernel".format(tensor_name_prefix_tf),
  772. "squeeze": 0,
  773. "transpose": (1, 0),
  774. }, # (256,256),(1,256,256)
  775. "{}.encoders.layeridx.self_attn.linear_out.bias".format(tensor_name_prefix_torch):
  776. {"name": "{}/layer_layeridx/multi_head/conv1d_1/bias".format(tensor_name_prefix_tf),
  777. "squeeze": None,
  778. "transpose": None,
  779. }, # (256,),(256,)
  780. # ffn
  781. "{}.encoders.layeridx.norm2.weight".format(tensor_name_prefix_torch):
  782. {"name": "{}/layer_layeridx/ffn/LayerNorm/gamma".format(tensor_name_prefix_tf),
  783. "squeeze": None,
  784. "transpose": None,
  785. }, # (256,),(256,)
  786. "{}.encoders.layeridx.norm2.bias".format(tensor_name_prefix_torch):
  787. {"name": "{}/layer_layeridx/ffn/LayerNorm/beta".format(tensor_name_prefix_tf),
  788. "squeeze": None,
  789. "transpose": None,
  790. }, # (256,),(256,)
  791. "{}.encoders.layeridx.feed_forward.w_1.weight".format(tensor_name_prefix_torch):
  792. {"name": "{}/layer_layeridx/ffn/conv1d/kernel".format(tensor_name_prefix_tf),
  793. "squeeze": 0,
  794. "transpose": (1, 0),
  795. }, # (1024,256),(1,256,1024)
  796. "{}.encoders.layeridx.feed_forward.w_1.bias".format(tensor_name_prefix_torch):
  797. {"name": "{}/layer_layeridx/ffn/conv1d/bias".format(tensor_name_prefix_tf),
  798. "squeeze": None,
  799. "transpose": None,
  800. }, # (1024,),(1024,)
  801. "{}.encoders.layeridx.feed_forward.w_2.weight".format(tensor_name_prefix_torch):
  802. {"name": "{}/layer_layeridx/ffn/conv1d_1/kernel".format(tensor_name_prefix_tf),
  803. "squeeze": 0,
  804. "transpose": (1, 0),
  805. }, # (256,1024),(1,1024,256)
  806. "{}.encoders.layeridx.feed_forward.w_2.bias".format(tensor_name_prefix_torch):
  807. {"name": "{}/layer_layeridx/ffn/conv1d_1/bias".format(tensor_name_prefix_tf),
  808. "squeeze": None,
  809. "transpose": None,
  810. }, # (256,),(256,)
  811. # out norm
  812. "{}.after_norm.weight".format(tensor_name_prefix_torch):
  813. {"name": "{}/LayerNorm/gamma".format(tensor_name_prefix_tf),
  814. "squeeze": None,
  815. "transpose": None,
  816. }, # (256,),(256,)
  817. "{}.after_norm.bias".format(tensor_name_prefix_torch):
  818. {"name": "{}/LayerNorm/beta".format(tensor_name_prefix_tf),
  819. "squeeze": None,
  820. "transpose": None,
  821. }, # (256,),(256,)
  822. }
  823. return map_dict_local
  824. def convert_tf2torch(self,
  825. var_dict_tf,
  826. var_dict_torch,
  827. ):
  828. map_dict = self.gen_tf2torch_map_dict()
  829. var_dict_torch_update = dict()
  830. for name in sorted(var_dict_torch.keys(), reverse=False):
  831. names = name.split('.')
  832. if names[0] == self.tf2torch_tensor_name_prefix_torch:
  833. if names[1] == "encoders0":
  834. layeridx = int(names[2])
  835. name_q = name.replace(".{}.".format(layeridx), ".layeridx.")
  836. name_q = name_q.replace("encoders0", "encoders")
  837. layeridx_bias = 0
  838. layeridx += layeridx_bias
  839. if name_q in map_dict.keys():
  840. name_v = map_dict[name_q]["name"]
  841. name_tf = name_v.replace("layeridx", "{}".format(layeridx))
  842. data_tf = var_dict_tf[name_tf]
  843. if map_dict[name_q]["squeeze"] is not None:
  844. data_tf = np.squeeze(data_tf, axis=map_dict[name_q]["squeeze"])
  845. if map_dict[name_q]["transpose"] is not None:
  846. data_tf = np.transpose(data_tf, map_dict[name_q]["transpose"])
  847. data_tf = torch.from_numpy(data_tf).type(torch.float32).to("cpu")
  848. assert var_dict_torch[name].size() == data_tf.size(), "{}, {}, {} != {}".format(name, name_tf,
  849. var_dict_torch[
  850. name].size(),
  851. data_tf.size())
  852. var_dict_torch_update[name] = data_tf
  853. logging.info(
  854. "torch tensor: {}, {}, loading from tf tensor: {}, {}".format(name, data_tf.size(), name_v,
  855. var_dict_tf[name_tf].shape))
  856. elif names[1] == "encoders":
  857. layeridx = int(names[2])
  858. name_q = name.replace(".{}.".format(layeridx), ".layeridx.")
  859. layeridx_bias = 1
  860. layeridx += layeridx_bias
  861. if name_q in map_dict.keys():
  862. name_v = map_dict[name_q]["name"]
  863. name_tf = name_v.replace("layeridx", "{}".format(layeridx))
  864. data_tf = var_dict_tf[name_tf]
  865. if map_dict[name_q]["squeeze"] is not None:
  866. data_tf = np.squeeze(data_tf, axis=map_dict[name_q]["squeeze"])
  867. if map_dict[name_q]["transpose"] is not None:
  868. data_tf = np.transpose(data_tf, map_dict[name_q]["transpose"])
  869. data_tf = torch.from_numpy(data_tf).type(torch.float32).to("cpu")
  870. assert var_dict_torch[name].size() == data_tf.size(), "{}, {}, {} != {}".format(name, name_tf,
  871. var_dict_torch[
  872. name].size(),
  873. data_tf.size())
  874. var_dict_torch_update[name] = data_tf
  875. logging.info(
  876. "torch tensor: {}, {}, loading from tf tensor: {}, {}".format(name, data_tf.size(), name_v,
  877. var_dict_tf[name_tf].shape))
  878. elif names[1] == "after_norm":
  879. name_tf = map_dict[name]["name"]
  880. data_tf = var_dict_tf[name_tf]
  881. data_tf = torch.from_numpy(data_tf).type(torch.float32).to("cpu")
  882. var_dict_torch_update[name] = data_tf
  883. logging.info(
  884. "torch tensor: {}, {}, loading from tf tensor: {}, {}".format(name, data_tf.size(), name_tf,
  885. var_dict_tf[name_tf].shape))
  886. return var_dict_torch_update
  887. class SANMVadEncoder(AbsEncoder):
  888. """
  889. author: Speech Lab, Alibaba Group, China
  890. """
  891. def __init__(
  892. self,
  893. input_size: int,
  894. output_size: int = 256,
  895. attention_heads: int = 4,
  896. linear_units: int = 2048,
  897. num_blocks: int = 6,
  898. dropout_rate: float = 0.1,
  899. positional_dropout_rate: float = 0.1,
  900. attention_dropout_rate: float = 0.0,
  901. input_layer: Optional[str] = "conv2d",
  902. pos_enc_class=SinusoidalPositionEncoder,
  903. normalize_before: bool = True,
  904. concat_after: bool = False,
  905. positionwise_layer_type: str = "linear",
  906. positionwise_conv_kernel_size: int = 1,
  907. padding_idx: int = -1,
  908. interctc_layer_idx: List[int] = [],
  909. interctc_use_conditioning: bool = False,
  910. kernel_size : int = 11,
  911. sanm_shfit : int = 0,
  912. selfattention_layer_type: str = "sanm",
  913. ):
  914. assert check_argument_types()
  915. super().__init__()
  916. self._output_size = output_size
  917. if input_layer == "linear":
  918. self.embed = torch.nn.Sequential(
  919. torch.nn.Linear(input_size, output_size),
  920. torch.nn.LayerNorm(output_size),
  921. torch.nn.Dropout(dropout_rate),
  922. torch.nn.ReLU(),
  923. pos_enc_class(output_size, positional_dropout_rate),
  924. )
  925. elif input_layer == "conv2d":
  926. self.embed = Conv2dSubsampling(input_size, output_size, dropout_rate)
  927. elif input_layer == "conv2d2":
  928. self.embed = Conv2dSubsampling2(input_size, output_size, dropout_rate)
  929. elif input_layer == "conv2d6":
  930. self.embed = Conv2dSubsampling6(input_size, output_size, dropout_rate)
  931. elif input_layer == "conv2d8":
  932. self.embed = Conv2dSubsampling8(input_size, output_size, dropout_rate)
  933. elif input_layer == "embed":
  934. self.embed = torch.nn.Sequential(
  935. torch.nn.Embedding(input_size, output_size, padding_idx=padding_idx),
  936. SinusoidalPositionEncoder(),
  937. )
  938. elif input_layer is None:
  939. if input_size == output_size:
  940. self.embed = None
  941. else:
  942. self.embed = torch.nn.Linear(input_size, output_size)
  943. elif input_layer == "pe":
  944. self.embed = SinusoidalPositionEncoder()
  945. else:
  946. raise ValueError("unknown input_layer: " + input_layer)
  947. self.normalize_before = normalize_before
  948. if positionwise_layer_type == "linear":
  949. positionwise_layer = PositionwiseFeedForward
  950. positionwise_layer_args = (
  951. output_size,
  952. linear_units,
  953. dropout_rate,
  954. )
  955. elif positionwise_layer_type == "conv1d":
  956. positionwise_layer = MultiLayeredConv1d
  957. positionwise_layer_args = (
  958. output_size,
  959. linear_units,
  960. positionwise_conv_kernel_size,
  961. dropout_rate,
  962. )
  963. elif positionwise_layer_type == "conv1d-linear":
  964. positionwise_layer = Conv1dLinear
  965. positionwise_layer_args = (
  966. output_size,
  967. linear_units,
  968. positionwise_conv_kernel_size,
  969. dropout_rate,
  970. )
  971. else:
  972. raise NotImplementedError("Support only linear or conv1d.")
  973. if selfattention_layer_type == "selfattn":
  974. encoder_selfattn_layer = MultiHeadedAttention
  975. encoder_selfattn_layer_args = (
  976. attention_heads,
  977. output_size,
  978. attention_dropout_rate,
  979. )
  980. elif selfattention_layer_type == "sanm":
  981. self.encoder_selfattn_layer = MultiHeadedAttentionSANMwithMask
  982. encoder_selfattn_layer_args0 = (
  983. attention_heads,
  984. input_size,
  985. output_size,
  986. attention_dropout_rate,
  987. kernel_size,
  988. sanm_shfit,
  989. )
  990. encoder_selfattn_layer_args = (
  991. attention_heads,
  992. output_size,
  993. output_size,
  994. attention_dropout_rate,
  995. kernel_size,
  996. sanm_shfit,
  997. )
  998. self.encoders0 = repeat(
  999. 1,
  1000. lambda lnum: EncoderLayerSANM(
  1001. input_size,
  1002. output_size,
  1003. self.encoder_selfattn_layer(*encoder_selfattn_layer_args0),
  1004. positionwise_layer(*positionwise_layer_args),
  1005. dropout_rate,
  1006. normalize_before,
  1007. concat_after,
  1008. ),
  1009. )
  1010. self.encoders = repeat(
  1011. num_blocks-1,
  1012. lambda lnum: EncoderLayerSANM(
  1013. output_size,
  1014. output_size,
  1015. self.encoder_selfattn_layer(*encoder_selfattn_layer_args),
  1016. positionwise_layer(*positionwise_layer_args),
  1017. dropout_rate,
  1018. normalize_before,
  1019. concat_after,
  1020. ),
  1021. )
  1022. if self.normalize_before:
  1023. self.after_norm = LayerNorm(output_size)
  1024. self.interctc_layer_idx = interctc_layer_idx
  1025. if len(interctc_layer_idx) > 0:
  1026. assert 0 < min(interctc_layer_idx) and max(interctc_layer_idx) < num_blocks
  1027. self.interctc_use_conditioning = interctc_use_conditioning
  1028. self.conditioning_layer = None
  1029. self.dropout = nn.Dropout(dropout_rate)
  1030. def output_size(self) -> int:
  1031. return self._output_size
  1032. def forward(
  1033. self,
  1034. xs_pad: torch.Tensor,
  1035. ilens: torch.Tensor,
  1036. vad_indexes: torch.Tensor,
  1037. prev_states: torch.Tensor = None,
  1038. ctc: CTC = None,
  1039. ) -> Tuple[torch.Tensor, torch.Tensor, Optional[torch.Tensor]]:
  1040. """Embed positions in tensor.
  1041. Args:
  1042. xs_pad: input tensor (B, L, D)
  1043. ilens: input length (B)
  1044. prev_states: Not to be used now.
  1045. Returns:
  1046. position embedded tensor and mask
  1047. """
  1048. masks = (~make_pad_mask(ilens)[:, None, :]).to(xs_pad.device)
  1049. sub_masks = subsequent_mask(masks.size(-1), device=xs_pad.device).unsqueeze(0)
  1050. no_future_masks = masks & sub_masks
  1051. xs_pad *= self.output_size()**0.5
  1052. if self.embed is None:
  1053. xs_pad = xs_pad
  1054. elif (isinstance(self.embed, Conv2dSubsampling) or isinstance(self.embed, Conv2dSubsampling2)
  1055. or isinstance(self.embed, Conv2dSubsampling6) or isinstance(self.embed, Conv2dSubsampling8)):
  1056. short_status, limit_size = check_short_utt(self.embed, xs_pad.size(1))
  1057. if short_status:
  1058. raise TooShortUttError(
  1059. f"has {xs_pad.size(1)} frames and is too short for subsampling " +
  1060. f"(it needs more than {limit_size} frames), return empty results",
  1061. xs_pad.size(1),
  1062. limit_size,
  1063. )
  1064. xs_pad, masks = self.embed(xs_pad, masks)
  1065. else:
  1066. xs_pad = self.embed(xs_pad)
  1067. # xs_pad = self.dropout(xs_pad)
  1068. mask_tup0 = [masks, no_future_masks]
  1069. encoder_outs = self.encoders0(xs_pad, mask_tup0)
  1070. xs_pad, _ = encoder_outs[0], encoder_outs[1]
  1071. intermediate_outs = []
  1072. for layer_idx, encoder_layer in enumerate(self.encoders):
  1073. if layer_idx + 1 == len(self.encoders):
  1074. # This is last layer.
  1075. coner_mask = torch.ones(masks.size(0),
  1076. masks.size(-1),
  1077. masks.size(-1),
  1078. device=xs_pad.device,
  1079. dtype=torch.bool)
  1080. for word_index, length in enumerate(ilens):
  1081. coner_mask[word_index, :, :] = vad_mask(masks.size(-1),
  1082. vad_indexes[word_index],
  1083. device=xs_pad.device)
  1084. layer_mask = masks & coner_mask
  1085. else:
  1086. layer_mask = no_future_masks
  1087. mask_tup1 = [masks, layer_mask]
  1088. encoder_outs = encoder_layer(xs_pad, mask_tup1)
  1089. xs_pad, layer_mask = encoder_outs[0], encoder_outs[1]
  1090. if self.normalize_before:
  1091. xs_pad = self.after_norm(xs_pad)
  1092. olens = masks.squeeze(1).sum(1)
  1093. if len(intermediate_outs) > 0:
  1094. return (xs_pad, intermediate_outs), olens, None
  1095. return xs_pad, olens, None