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test_lstm_op.py 13 kB

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  1. # Copyright 2020 Huawei Technologies Co., Ltd
  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. # ============================================================================
  15. import pytest
  16. import numpy as np
  17. import mindspore.nn as nn
  18. import mindspore.context as context
  19. from mindspore.common.api import ms_function
  20. from mindspore.common.initializer import initializer
  21. from mindspore.ops import composite as C
  22. from mindspore.ops import operations as P
  23. from mindspore.common.tensor import Tensor
  24. from mindspore.common.parameter import ParameterTuple, Parameter
  25. context.set_context(device_target='CPU')
  26. class LstmNet(nn.Cell):
  27. def __init__(self, seq_len, batch_size, input_size, hidden_size, num_layers, has_bias, bidirectional, dropout):
  28. super(LstmNet, self).__init__()
  29. num_directions = 1
  30. if bidirectional:
  31. num_directions = 2
  32. self.lstm = nn.LSTM(input_size, hidden_size, num_layers, has_bias, bidirectional, dropout)
  33. input_np = np.array([[[0.6755, -1.6607, 0.1367], [0.4276, -0.7850, -0.3758]],
  34. [[-0.6424, -0.6095, 0.6639], [0.7918, 0.4147, -0.5089]],
  35. [[-1.5612, 0.0120, -0.7289], [-0.6656, -0.6626, -0.5883]],
  36. [[-0.9667, -0.6296, -0.7310], [0.1026, -0.6821, -0.4387]],
  37. [[-0.4710, 0.6558, -0.3144], [-0.8449, -0.2184, -0.1806]]
  38. ]).astype(np.float32)
  39. self.x = Tensor(input_np)
  40. self.h = Tensor(np.array([0., 0., 0., 0.]).reshape((num_directions, batch_size, hidden_size)).astype(
  41. np.float32))
  42. self.c = Tensor(np.array([0., 0., 0., 0.]).reshape((num_directions, batch_size, hidden_size)).astype(
  43. np.float32))
  44. self.h = tuple((self.h,))
  45. self.c = tuple((self.c,))
  46. wih = np.array([[3.4021e-01, -4.6622e-01, 4.5117e-01],
  47. [-6.4257e-02, -2.4807e-01, 1.3550e-02], # i
  48. [-3.2140e-01, 5.5578e-01, 6.3589e-01],
  49. [1.6547e-01, -7.9030e-02, -2.0045e-01],
  50. [-6.9863e-01, 5.9773e-01, -3.9062e-01],
  51. [-3.0253e-01, -1.9464e-01, 7.0591e-01],
  52. [-4.0835e-01, 3.6751e-01, 4.7989e-01],
  53. [-5.6894e-01, -5.0359e-01, 4.7491e-01]]).astype(np.float32).reshape([1, -1])
  54. whh = np.array([[-0.4820, -0.2350],
  55. [-0.1195, 0.0519],
  56. [0.2162, -0.1178],
  57. [0.6237, 0.0711],
  58. [0.4511, -0.3961],
  59. [-0.5962, 0.0906],
  60. [0.1867, -0.1225],
  61. [0.1831, 0.0850]]).astype(np.float32).reshape([1, -1])
  62. bih = np.zeros((1, 8)).astype(np.float32)
  63. w_np = np.concatenate((wih, whh, bih), axis=1).reshape([-1, 1, 1])
  64. self.w = Parameter(initializer(Tensor(w_np), w_np.shape), name='w')
  65. self.lstm.weight = ParameterTuple((self.w,))
  66. @ms_function
  67. def construct(self):
  68. return self.lstm(self.x, (self.h, self.c))
  69. @pytest.mark.level0
  70. @pytest.mark.platform_x86_cpu
  71. @pytest.mark.env_onecard
  72. def test_lstm():
  73. seq_len = 5
  74. batch_size = 2
  75. input_size = 3
  76. hidden_size = 2
  77. num_layers = 1
  78. has_bias = True
  79. bidirectional = False
  80. dropout = 0.0
  81. num_directions = 1
  82. if bidirectional:
  83. num_directions = 2
  84. net = LstmNet(seq_len, batch_size, input_size, hidden_size, num_layers, has_bias, bidirectional, dropout)
  85. y, (h, c) = net()
  86. print(y)
  87. print(c)
  88. print(h)
  89. expect_y = [[[-0.17992045, 0.07819052],
  90. [-0.10745212, -0.06291768]],
  91. [[-0.28830513, 0.30579978],
  92. [-0.07570618, -0.08868407]],
  93. [[-0.00814095, 0.16889746],
  94. [0.02814853, -0.11208838]],
  95. [[0.08157863, 0.06088024],
  96. [-0.04227093, -0.11514835]],
  97. [[0.18908429, -0.02963362],
  98. [0.09106826, -0.00602506]]]
  99. expect_h = [[[0.18908429, -0.02963362],
  100. [0.09106826, -0.00602506]]]
  101. expect_c = [[[0.3434288, -0.06561527],
  102. [0.16838229, -0.00972614]]]
  103. diff_y = y.asnumpy() - expect_y
  104. error_y = np.ones([seq_len, batch_size, hidden_size]) * 1.0e-4
  105. assert np.all(diff_y < error_y)
  106. assert np.all(-diff_y < error_y)
  107. diff_h = h.asnumpy() - expect_h
  108. error_h = np.ones([num_layers * num_directions, batch_size, hidden_size]) * 1.0e-4
  109. assert np.all(diff_h < error_h)
  110. assert np.all(-diff_h < error_h)
  111. diff_c = c.asnumpy() - expect_c
  112. error_c = np.ones([num_layers * num_directions, batch_size, hidden_size]) * 1.0e-4
  113. assert np.all(diff_c < error_c)
  114. assert np.all(-diff_c < error_c)
  115. class MultiLayerBiLstmNet(nn.Cell):
  116. def __init__(self, seq_len, batch_size, input_size, hidden_size, num_layers, has_bias, bidirectional, dropout):
  117. super(MultiLayerBiLstmNet, self).__init__()
  118. num_directions = 1
  119. if bidirectional:
  120. num_directions = 2
  121. self.lstm = nn.LSTM(input_size=input_size, hidden_size=hidden_size, num_layers=num_layers, has_bias=has_bias,
  122. bidirectional=bidirectional, dropout=dropout)
  123. input_np = np.array([[[-0.1887, -0.4144, -0.0235, 0.7489, 0.7522, 0.5969, 0.3342, 1.2198, 0.6786, -0.9404],
  124. [-0.8643, -1.6835, -2.4965, 2.8093, 0.1741, 0.2707, 0.7387, -0.0939, -1.7990, 0.4765]],
  125. [[-0.5963, -1.2598, -0.7226, 1.1365, -1.7320, -0.7302, 0.1221, -0.2111, -1.6173, -0.0706],
  126. [0.8964, 0.1737, -1.0077, -0.1389, 0.4889, 0.4391, 0.7911, 0.3614, -1.9533, -0.9936]],
  127. [[0.3260, -1.3312, 0.0601, 1.0726, -1.6010, -1.8733, -1.5775, 1.1579, -0.8801, -0.5742],
  128. [-2.2998, -0.6344, -0.5409, -0.9221, -0.6500, 0.1206, 1.5215, 0.7517, 1.3691, 2.0021]],
  129. [[-0.1245, -0.3690, 2.1193, 1.3852, -0.1841, -0.8899, -0.3646, -0.8575, -0.3131, 0.2026],
  130. [1.0218, -1.4331, 0.1744, 0.5442, -0.7808, 0.2527, 0.1566, 1.1484, -0.7766, -0.6747]],
  131. [[-0.6752, 0.9906, -0.4973, 0.3471, -0.1202, -0.4213, 2.0213, 0.0441, 0.9016, 1.0365],
  132. [1.2223, -1.3248, 0.1207, -0.8256, 0.1816, 0.7057, -0.3105, 0.5713, 0.2804,
  133. -1.0685]]]).astype(np.float32)
  134. self.x = Tensor(input_np)
  135. self.h0 = Tensor(np.ones((num_directions, batch_size, hidden_size)).astype(np.float32))
  136. self.c0 = Tensor(np.ones((num_directions, batch_size, hidden_size)).astype(np.float32))
  137. self.h1 = Tensor(np.ones((num_directions, batch_size, hidden_size)).astype(np.float32))
  138. self.c1 = Tensor(np.ones((num_directions, batch_size, hidden_size)).astype(np.float32))
  139. self.h = tuple((self.h0, self.h1))
  140. self.c = tuple((self.c0, self.c1))
  141. @ms_function
  142. def construct(self):
  143. return self.lstm(self.x, (self.h, self.c))
  144. @pytest.mark.level0
  145. @pytest.mark.platform_x86_cpu
  146. @pytest.mark.env_onecard
  147. def test_multi_layer_bilstm():
  148. seq_len = 5
  149. batch_size = 2
  150. input_size = 10
  151. hidden_size = 2
  152. num_layers = 2
  153. has_bias = True
  154. bidirectional = True
  155. dropout = 0.0
  156. net = MultiLayerBiLstmNet(seq_len, batch_size, input_size, hidden_size, num_layers, has_bias, bidirectional,
  157. dropout)
  158. y, (h, c) = net()
  159. print(y)
  160. print(h)
  161. print(c)
  162. class Grad(nn.Cell):
  163. def __init__(self, network):
  164. super(Grad, self).__init__()
  165. self.network = network
  166. self.weights = ParameterTuple(network.trainable_params())
  167. self.grad = C.GradOperation('grad',
  168. get_by_list=True,
  169. sens_param=True)
  170. @ms_function
  171. def construct(self, output_grad):
  172. weights = self.weights
  173. grads = self.grad(self.network, weights)(output_grad)
  174. return grads
  175. class Net(nn.Cell):
  176. def __init__(self, seq_len, batch_size, input_size, hidden_size, num_layers, has_bias, bidirectional, dropout):
  177. super(Net, self).__init__()
  178. num_directions = 1
  179. if bidirectional:
  180. num_directions = 2
  181. input_np = np.array([[[0.6755, -1.6607, 0.1367], [0.4276, -0.7850, -0.3758]],
  182. [[-0.6424, -0.6095, 0.6639], [0.7918, 0.4147, -0.5089]],
  183. [[-1.5612, 0.0120, -0.7289], [-0.6656, -0.6626, -0.5883]],
  184. [[-0.9667, -0.6296, -0.7310], [0.1026, -0.6821, -0.4387]],
  185. [[-0.4710, 0.6558, -0.3144], [-0.8449, -0.2184, -0.1806]]
  186. ]).astype(np.float32)
  187. self.x = Parameter(initializer(Tensor(input_np), [seq_len, batch_size, input_size]), name='x')
  188. self.hlist = []
  189. self.clist = []
  190. self.hlist.append(Parameter(initializer(
  191. Tensor(
  192. np.array([0.1, 0.1, 0.1, 0.1]).reshape((num_directions, batch_size, hidden_size)).astype(
  193. np.float32)),
  194. [num_directions, batch_size, hidden_size]), name='h'))
  195. self.clist.append(Parameter(initializer(
  196. Tensor(
  197. np.array([0.2, 0.2, 0.2, 0.2]).reshape((num_directions, batch_size, hidden_size)).astype(
  198. np.float32)),
  199. [num_directions, batch_size, hidden_size]), name='c'))
  200. self.h = ParameterTuple(tuple(self.hlist))
  201. self.c = ParameterTuple(tuple(self.clist))
  202. wih = np.array([[3.4021e-01, -4.6622e-01, 4.5117e-01],
  203. [-6.4257e-02, -2.4807e-01, 1.3550e-02], # i
  204. [-3.2140e-01, 5.5578e-01, 6.3589e-01],
  205. [1.6547e-01, -7.9030e-02, -2.0045e-01],
  206. [-6.9863e-01, 5.9773e-01, -3.9062e-01],
  207. [-3.0253e-01, -1.9464e-01, 7.0591e-01],
  208. [-4.0835e-01, 3.6751e-01, 4.7989e-01],
  209. [-5.6894e-01, -5.0359e-01, 4.7491e-01]]).astype(np.float32).reshape([1, -1])
  210. whh = np.array([[-0.4820, -0.2350],
  211. [-0.1195, 0.0519],
  212. [0.2162, -0.1178],
  213. [0.6237, 0.0711],
  214. [0.4511, -0.3961],
  215. [-0.5962, 0.0906],
  216. [0.1867, -0.1225],
  217. [0.1831, 0.0850]]).astype(np.float32).reshape([1, -1])
  218. bih = np.zeros((1, 8)).astype(np.float32)
  219. w_np = np.concatenate((wih, whh, bih), axis=1).reshape([-1, 1, 1])
  220. self.w = Parameter(initializer(Tensor(w_np), w_np.shape), name='weight0')
  221. self.lstm = nn.LSTM(input_size=input_size, hidden_size=hidden_size, num_layers=num_layers,
  222. has_bias=has_bias, bidirectional=bidirectional, dropout=dropout)
  223. self.lstm.weight = ParameterTuple(tuple([self.w]))
  224. @ms_function
  225. def construct(self):
  226. return self.lstm(self.x, (self.h, self.c))[0]
  227. @pytest.mark.level0
  228. @pytest.mark.platform_x86_cpu
  229. @pytest.mark.env_onecard
  230. def test_grad():
  231. seq_len = 5
  232. batch_size = 2
  233. input_size = 3
  234. hidden_size = 2
  235. num_layers = 1
  236. has_bias = True
  237. bidirectional = False
  238. dropout = 0.0
  239. net = Grad(Net(seq_len, batch_size, input_size, hidden_size, num_layers, has_bias, bidirectional, dropout))
  240. dy = np.array([[[-3.5471e-01, 7.0540e-01],
  241. [2.7161e-01, 1.0865e+00]],
  242. [[-4.2431e-01, 1.4955e+00],
  243. [-4.0418e-01, -2.3282e-01]],
  244. [[-1.3654e+00, 1.9251e+00],
  245. [-4.6481e-01, 1.3138e+00]],
  246. [[1.2914e+00, -2.3753e-01],
  247. [5.3589e-01, -1.0981e-01]],
  248. [[-1.6032e+00, -1.8818e-01],
  249. [1.0065e-01, 9.2045e-01]]]).astype(np.float32)
  250. dx, dhx, dcx, dw = net(Tensor(dy))
  251. print(dx)
  252. print(dhx)
  253. print(dcx)
  254. print(dw)
  255. test_multi_layer_bilstm()
  256. test_lstm()
  257. test_grad()