self_attention.py 14 KB

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  1. # copyright (c) 2020 PaddlePaddle Authors. All Rights Reserve.
  2. #
  3. # Licensed under the Apache License, Version 2.0 (the "License");
  4. # you may not use this file except in compliance with the License.
  5. # You may obtain a copy of the License at
  6. #
  7. # http://www.apache.org/licenses/LICENSE-2.0
  8. #
  9. # Unless required by applicable law or agreed to in writing, software
  10. # distributed under the License is distributed on an "AS IS" BASIS,
  11. # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  12. # See the License for the specific language governing permissions and
  13. # limitations under the License.
  14. from __future__ import absolute_import
  15. from __future__ import division
  16. from __future__ import print_function
  17. import math
  18. import paddle
  19. from paddle import ParamAttr, nn
  20. from paddle import nn, ParamAttr
  21. from paddle.nn import functional as F
  22. import numpy as np
  23. gradient_clip = 10
  24. class WrapEncoderForFeature(nn.Layer):
  25. def __init__(self,
  26. src_vocab_size,
  27. max_length,
  28. n_layer,
  29. n_head,
  30. d_key,
  31. d_value,
  32. d_model,
  33. d_inner_hid,
  34. prepostprocess_dropout,
  35. attention_dropout,
  36. relu_dropout,
  37. preprocess_cmd,
  38. postprocess_cmd,
  39. weight_sharing,
  40. bos_idx=0):
  41. super(WrapEncoderForFeature, self).__init__()
  42. self.prepare_encoder = PrepareEncoder(
  43. src_vocab_size,
  44. d_model,
  45. max_length,
  46. prepostprocess_dropout,
  47. bos_idx=bos_idx,
  48. word_emb_param_name="src_word_emb_table")
  49. self.encoder = Encoder(n_layer, n_head, d_key, d_value, d_model,
  50. d_inner_hid, prepostprocess_dropout,
  51. attention_dropout, relu_dropout, preprocess_cmd,
  52. postprocess_cmd)
  53. def forward(self, enc_inputs):
  54. conv_features, src_pos, src_slf_attn_bias = enc_inputs
  55. enc_input = self.prepare_encoder(conv_features, src_pos)
  56. enc_output = self.encoder(enc_input, src_slf_attn_bias)
  57. return enc_output
  58. class WrapEncoder(nn.Layer):
  59. """
  60. embedder + encoder
  61. """
  62. def __init__(self,
  63. src_vocab_size,
  64. max_length,
  65. n_layer,
  66. n_head,
  67. d_key,
  68. d_value,
  69. d_model,
  70. d_inner_hid,
  71. prepostprocess_dropout,
  72. attention_dropout,
  73. relu_dropout,
  74. preprocess_cmd,
  75. postprocess_cmd,
  76. weight_sharing,
  77. bos_idx=0):
  78. super(WrapEncoder, self).__init__()
  79. self.prepare_decoder = PrepareDecoder(
  80. src_vocab_size,
  81. d_model,
  82. max_length,
  83. prepostprocess_dropout,
  84. bos_idx=bos_idx)
  85. self.encoder = Encoder(n_layer, n_head, d_key, d_value, d_model,
  86. d_inner_hid, prepostprocess_dropout,
  87. attention_dropout, relu_dropout, preprocess_cmd,
  88. postprocess_cmd)
  89. def forward(self, enc_inputs):
  90. src_word, src_pos, src_slf_attn_bias = enc_inputs
  91. enc_input = self.prepare_decoder(src_word, src_pos)
  92. enc_output = self.encoder(enc_input, src_slf_attn_bias)
  93. return enc_output
  94. class Encoder(nn.Layer):
  95. """
  96. encoder
  97. """
  98. def __init__(self,
  99. n_layer,
  100. n_head,
  101. d_key,
  102. d_value,
  103. d_model,
  104. d_inner_hid,
  105. prepostprocess_dropout,
  106. attention_dropout,
  107. relu_dropout,
  108. preprocess_cmd="n",
  109. postprocess_cmd="da"):
  110. super(Encoder, self).__init__()
  111. self.encoder_layers = list()
  112. for i in range(n_layer):
  113. self.encoder_layers.append(
  114. self.add_sublayer(
  115. "layer_%d" % i,
  116. EncoderLayer(n_head, d_key, d_value, d_model, d_inner_hid,
  117. prepostprocess_dropout, attention_dropout,
  118. relu_dropout, preprocess_cmd,
  119. postprocess_cmd)))
  120. self.processer = PrePostProcessLayer(preprocess_cmd, d_model,
  121. prepostprocess_dropout)
  122. def forward(self, enc_input, attn_bias):
  123. for encoder_layer in self.encoder_layers:
  124. enc_output = encoder_layer(enc_input, attn_bias)
  125. enc_input = enc_output
  126. enc_output = self.processer(enc_output)
  127. return enc_output
  128. class EncoderLayer(nn.Layer):
  129. """
  130. EncoderLayer
  131. """
  132. def __init__(self,
  133. n_head,
  134. d_key,
  135. d_value,
  136. d_model,
  137. d_inner_hid,
  138. prepostprocess_dropout,
  139. attention_dropout,
  140. relu_dropout,
  141. preprocess_cmd="n",
  142. postprocess_cmd="da"):
  143. super(EncoderLayer, self).__init__()
  144. self.preprocesser1 = PrePostProcessLayer(preprocess_cmd, d_model,
  145. prepostprocess_dropout)
  146. self.self_attn = MultiHeadAttention(d_key, d_value, d_model, n_head,
  147. attention_dropout)
  148. self.postprocesser1 = PrePostProcessLayer(postprocess_cmd, d_model,
  149. prepostprocess_dropout)
  150. self.preprocesser2 = PrePostProcessLayer(preprocess_cmd, d_model,
  151. prepostprocess_dropout)
  152. self.ffn = FFN(d_inner_hid, d_model, relu_dropout)
  153. self.postprocesser2 = PrePostProcessLayer(postprocess_cmd, d_model,
  154. prepostprocess_dropout)
  155. def forward(self, enc_input, attn_bias):
  156. attn_output = self.self_attn(
  157. self.preprocesser1(enc_input), None, None, attn_bias)
  158. attn_output = self.postprocesser1(attn_output, enc_input)
  159. ffn_output = self.ffn(self.preprocesser2(attn_output))
  160. ffn_output = self.postprocesser2(ffn_output, attn_output)
  161. return ffn_output
  162. class MultiHeadAttention(nn.Layer):
  163. """
  164. Multi-Head Attention
  165. """
  166. def __init__(self, d_key, d_value, d_model, n_head=1, dropout_rate=0.):
  167. super(MultiHeadAttention, self).__init__()
  168. self.n_head = n_head
  169. self.d_key = d_key
  170. self.d_value = d_value
  171. self.d_model = d_model
  172. self.dropout_rate = dropout_rate
  173. self.q_fc = paddle.nn.Linear(
  174. in_features=d_model, out_features=d_key * n_head, bias_attr=False)
  175. self.k_fc = paddle.nn.Linear(
  176. in_features=d_model, out_features=d_key * n_head, bias_attr=False)
  177. self.v_fc = paddle.nn.Linear(
  178. in_features=d_model, out_features=d_value * n_head, bias_attr=False)
  179. self.proj_fc = paddle.nn.Linear(
  180. in_features=d_value * n_head, out_features=d_model, bias_attr=False)
  181. def _prepare_qkv(self, queries, keys, values, cache=None):
  182. if keys is None: # self-attention
  183. keys, values = queries, queries
  184. static_kv = False
  185. else: # cross-attention
  186. static_kv = True
  187. q = self.q_fc(queries)
  188. q = paddle.reshape(x=q, shape=[0, 0, self.n_head, self.d_key])
  189. q = paddle.transpose(x=q, perm=[0, 2, 1, 3])
  190. if cache is not None and static_kv and "static_k" in cache:
  191. # for encoder-decoder attention in inference and has cached
  192. k = cache["static_k"]
  193. v = cache["static_v"]
  194. else:
  195. k = self.k_fc(keys)
  196. v = self.v_fc(values)
  197. k = paddle.reshape(x=k, shape=[0, 0, self.n_head, self.d_key])
  198. k = paddle.transpose(x=k, perm=[0, 2, 1, 3])
  199. v = paddle.reshape(x=v, shape=[0, 0, self.n_head, self.d_value])
  200. v = paddle.transpose(x=v, perm=[0, 2, 1, 3])
  201. if cache is not None:
  202. if static_kv and not "static_k" in cache:
  203. # for encoder-decoder attention in inference and has not cached
  204. cache["static_k"], cache["static_v"] = k, v
  205. elif not static_kv:
  206. # for decoder self-attention in inference
  207. cache_k, cache_v = cache["k"], cache["v"]
  208. k = paddle.concat([cache_k, k], axis=2)
  209. v = paddle.concat([cache_v, v], axis=2)
  210. cache["k"], cache["v"] = k, v
  211. return q, k, v
  212. def forward(self, queries, keys, values, attn_bias, cache=None):
  213. # compute q ,k ,v
  214. keys = queries if keys is None else keys
  215. values = keys if values is None else values
  216. q, k, v = self._prepare_qkv(queries, keys, values, cache)
  217. # scale dot product attention
  218. product = paddle.matmul(x=q, y=k, transpose_y=True)
  219. product = product * self.d_model**-0.5
  220. if attn_bias is not None:
  221. product += attn_bias
  222. weights = F.softmax(product)
  223. if self.dropout_rate:
  224. weights = F.dropout(
  225. weights, p=self.dropout_rate, mode="downscale_in_infer")
  226. out = paddle.matmul(weights, v)
  227. # combine heads
  228. out = paddle.transpose(out, perm=[0, 2, 1, 3])
  229. out = paddle.reshape(x=out, shape=[0, 0, out.shape[2] * out.shape[3]])
  230. # project to output
  231. out = self.proj_fc(out)
  232. return out
  233. class PrePostProcessLayer(nn.Layer):
  234. """
  235. PrePostProcessLayer
  236. """
  237. def __init__(self, process_cmd, d_model, dropout_rate):
  238. super(PrePostProcessLayer, self).__init__()
  239. self.process_cmd = process_cmd
  240. self.functors = []
  241. for cmd in self.process_cmd:
  242. if cmd == "a": # add residual connection
  243. self.functors.append(lambda x, y: x + y if y is not None else x)
  244. elif cmd == "n": # add layer normalization
  245. self.functors.append(
  246. self.add_sublayer(
  247. "layer_norm_%d" % len(self.sublayers()),
  248. paddle.nn.LayerNorm(
  249. normalized_shape=d_model,
  250. weight_attr=paddle.ParamAttr(
  251. initializer=paddle.nn.initializer.Constant(1.)),
  252. bias_attr=paddle.ParamAttr(
  253. initializer=paddle.nn.initializer.Constant(0.)))))
  254. elif cmd == "d": # add dropout
  255. self.functors.append(lambda x: F.dropout(
  256. x, p=dropout_rate, mode="downscale_in_infer")
  257. if dropout_rate else x)
  258. def forward(self, x, residual=None):
  259. for i, cmd in enumerate(self.process_cmd):
  260. if cmd == "a":
  261. x = self.functors[i](x, residual)
  262. else:
  263. x = self.functors[i](x)
  264. return x
  265. class PrepareEncoder(nn.Layer):
  266. def __init__(self,
  267. src_vocab_size,
  268. src_emb_dim,
  269. src_max_len,
  270. dropout_rate=0,
  271. bos_idx=0,
  272. word_emb_param_name=None,
  273. pos_enc_param_name=None):
  274. super(PrepareEncoder, self).__init__()
  275. self.src_emb_dim = src_emb_dim
  276. self.src_max_len = src_max_len
  277. self.emb = paddle.nn.Embedding(
  278. num_embeddings=self.src_max_len, embedding_dim=self.src_emb_dim)
  279. self.dropout_rate = dropout_rate
  280. def forward(self, src_word, src_pos):
  281. src_word_emb = src_word
  282. src_word_emb = paddle.cast(src_word_emb, 'float32')
  283. src_word_emb = paddle.scale(x=src_word_emb, scale=self.src_emb_dim**0.5)
  284. src_pos = paddle.squeeze(src_pos, axis=-1)
  285. src_pos_enc = self.emb(src_pos)
  286. src_pos_enc.stop_gradient = True
  287. enc_input = src_word_emb + src_pos_enc
  288. if self.dropout_rate:
  289. out = F.dropout(
  290. x=enc_input, p=self.dropout_rate, mode="downscale_in_infer")
  291. else:
  292. out = enc_input
  293. return out
  294. class PrepareDecoder(nn.Layer):
  295. def __init__(self,
  296. src_vocab_size,
  297. src_emb_dim,
  298. src_max_len,
  299. dropout_rate=0,
  300. bos_idx=0,
  301. word_emb_param_name=None,
  302. pos_enc_param_name=None):
  303. super(PrepareDecoder, self).__init__()
  304. self.src_emb_dim = src_emb_dim
  305. """
  306. self.emb0 = Embedding(num_embeddings=src_vocab_size,
  307. embedding_dim=src_emb_dim)
  308. """
  309. self.emb0 = paddle.nn.Embedding(
  310. num_embeddings=src_vocab_size,
  311. embedding_dim=self.src_emb_dim,
  312. padding_idx=bos_idx,
  313. weight_attr=paddle.ParamAttr(
  314. name=word_emb_param_name,
  315. initializer=nn.initializer.Normal(0., src_emb_dim**-0.5)))
  316. self.emb1 = paddle.nn.Embedding(
  317. num_embeddings=src_max_len,
  318. embedding_dim=self.src_emb_dim,
  319. weight_attr=paddle.ParamAttr(name=pos_enc_param_name))
  320. self.dropout_rate = dropout_rate
  321. def forward(self, src_word, src_pos):
  322. src_word = paddle.cast(src_word, 'int64')
  323. src_word = paddle.squeeze(src_word, axis=-1)
  324. src_word_emb = self.emb0(src_word)
  325. src_word_emb = paddle.scale(x=src_word_emb, scale=self.src_emb_dim**0.5)
  326. src_pos = paddle.squeeze(src_pos, axis=-1)
  327. src_pos_enc = self.emb1(src_pos)
  328. src_pos_enc.stop_gradient = True
  329. enc_input = src_word_emb + src_pos_enc
  330. if self.dropout_rate:
  331. out = F.dropout(
  332. x=enc_input, p=self.dropout_rate, mode="downscale_in_infer")
  333. else:
  334. out = enc_input
  335. return out
  336. class FFN(nn.Layer):
  337. """
  338. Feed-Forward Network
  339. """
  340. def __init__(self, d_inner_hid, d_model, dropout_rate):
  341. super(FFN, self).__init__()
  342. self.dropout_rate = dropout_rate
  343. self.fc1 = paddle.nn.Linear(
  344. in_features=d_model, out_features=d_inner_hid)
  345. self.fc2 = paddle.nn.Linear(
  346. in_features=d_inner_hid, out_features=d_model)
  347. def forward(self, x):
  348. hidden = self.fc1(x)
  349. hidden = F.relu(hidden)
  350. if self.dropout_rate:
  351. hidden = F.dropout(
  352. hidden, p=self.dropout_rate, mode="downscale_in_infer")
  353. out = self.fc2(hidden)
  354. return out