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test_auto_parallel_reshape.py 9.0 kB

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  1. # Copyright 2019 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. import numpy as np
  15. from mindspore import context
  16. import mindspore.nn as nn
  17. from mindspore.ops import operations as P
  18. from mindspore import Tensor
  19. from tests.ut.python.ops.test_math_ops import VirtualLoss
  20. import mindspore as ms
  21. from mindspore.common.api import _executor
  22. from mindspore.ops import composite as C
  23. from mindspore.common.parameter import Parameter
  24. class NetWithLoss(nn.Cell):
  25. def __init__(self, network):
  26. super(NetWithLoss, self).__init__()
  27. self.loss = VirtualLoss()
  28. self.network = network
  29. def construct(self, x):
  30. predict = self.network(x)
  31. return self.loss(predict)
  32. class GradWrap(nn.Cell):
  33. def __init__(self, network):
  34. super(GradWrap, self).__init__()
  35. self.network = network
  36. def construct(self, x):
  37. return C.grad_all(self.network)(x)
  38. # core dump, step_auto_parallel should SetInputs for transpose axis
  39. def test_reshape_matmul():
  40. class Net(nn.Cell):
  41. def __init__(self):
  42. super().__init__()
  43. self.reshape = P.Reshape()
  44. self.matmul = P.MatMul()
  45. self.matmul_weight = Parameter(Tensor(np.ones([28, 64]), dtype=ms.float32), name="weight")
  46. def construct(self, x):
  47. out = self.reshape(x, (64, 28))
  48. out = self.matmul(out, self.matmul_weight)
  49. return out
  50. size = 8
  51. context.set_auto_parallel_context(device_num=size, global_rank=0)
  52. x = Tensor(np.ones([8*size, 28, 1, 1]), dtype=ms.float32)
  53. net = GradWrap(NetWithLoss(Net()))
  54. context.set_auto_parallel_context(parallel_mode="auto_parallel")
  55. net.set_auto_parallel()
  56. _executor.compile(net, x)
  57. def test_reshape_auto_1():
  58. class Net(nn.Cell):
  59. def __init__(self):
  60. super().__init__()
  61. self.relu = P.ReLU()
  62. self.reshape = P.Reshape()
  63. self.matmul = P.MatMul()
  64. self.matmul_weight = Parameter(Tensor(np.ones([28, 64]), dtype=ms.float32), name="weight")
  65. def construct(self, x):
  66. out = self.relu(x)
  67. out = self.reshape(out, (64, 28))
  68. out = self.matmul(out, self.matmul_weight)
  69. return out
  70. size = 8
  71. context.set_auto_parallel_context(device_num=size, global_rank=0)
  72. x = Tensor(np.ones([8*size, 28, 1, 1]), dtype=ms.float32)
  73. net = GradWrap(NetWithLoss(Net()))
  74. context.set_auto_parallel_context(parallel_mode="auto_parallel")
  75. net.set_auto_parallel()
  76. _executor.compile(net, x)
  77. def test_reshape_auto_2():
  78. class Net(nn.Cell):
  79. def __init__(self):
  80. super().__init__()
  81. self.relu = P.ReLU()
  82. self.reshape = P.Reshape()
  83. self.matmul = P.MatMul()
  84. self.add_weight = Parameter(Tensor(np.ones([128, 32]), dtype=ms.float32), name="weight1")
  85. self.matmul_weight = Parameter(Tensor(np.ones([28, 64]), dtype=ms.float32), name="weight")
  86. def construct(self, x):
  87. out = self.relu(x)
  88. out = self.reshape(out, (64, 28))
  89. out = self.matmul(out, self.matmul_weight)
  90. out = self.reshape(out, (128, 32))
  91. out = out + self.add_weight
  92. return out
  93. size = 8
  94. context.set_auto_parallel_context(device_num=size, global_rank=0)
  95. x = Tensor(np.ones([8*size, 28, 1, 1]), dtype=ms.float32)
  96. net = GradWrap(NetWithLoss(Net()))
  97. context.set_auto_parallel_context(parallel_mode="auto_parallel")
  98. net.set_auto_parallel()
  99. _executor.compile(net, x)
  100. def test_reshape_auto_3():
  101. class Net(nn.Cell):
  102. def __init__(self):
  103. super().__init__()
  104. self.relu = P.ReLU()
  105. self.reshape = P.Reshape()
  106. self.matmul = P.MatMul()
  107. self.matmul_weight = Parameter(Tensor(np.ones([28, 64]), dtype=ms.float32), name="weight")
  108. def construct(self, x):
  109. out = self.relu(x)
  110. out = self.matmul(out, self.matmul_weight)
  111. out = self.reshape(out, (8, 8, 8, 8))
  112. return out
  113. size = 8
  114. context.set_auto_parallel_context(device_num=size, global_rank=0)
  115. x = Tensor(np.ones([8*size, 28]), dtype=ms.float32)
  116. net = GradWrap(NetWithLoss(Net()))
  117. context.set_auto_parallel_context(parallel_mode="auto_parallel")
  118. net.set_auto_parallel()
  119. _executor.compile(net, x)
  120. def test_reshape_auto_4():
  121. class Net(nn.Cell):
  122. def __init__(self):
  123. super().__init__()
  124. self.relu = P.ReLU()
  125. self.reshape = P.Reshape()
  126. self.matmul = P.MatMul()
  127. self.matmul_weight = Parameter(Tensor(np.ones([28*64]), dtype=ms.float32), name="weight")
  128. def construct(self, x):
  129. out = self.relu(x)
  130. out = self.reshape(out, (64, 28))
  131. w = self.reshape(self.matmul_weight, (28, 64))
  132. out = self.matmul(out, w)
  133. return out
  134. size = 8
  135. context.set_auto_parallel_context(device_num=size, global_rank=0)
  136. x = Tensor(np.ones([8*size, 28, 1, 1]), dtype=ms.float32)
  137. net = GradWrap(NetWithLoss(Net()))
  138. context.set_auto_parallel_context(parallel_mode="auto_parallel")
  139. net.set_auto_parallel()
  140. _executor.compile(net, x)
  141. def test_reshape_auto_5():
  142. class NetWithLoss(nn.Cell):
  143. def __init__(self, network):
  144. super(NetWithLoss, self).__init__()
  145. self.loss = VirtualLoss()
  146. self.network = network
  147. def construct(self, x, y):
  148. predict = self.network(x, y)
  149. return self.loss(predict)
  150. class GradWrap(nn.Cell):
  151. def __init__(self, network):
  152. super(GradWrap, self).__init__()
  153. self.network = network
  154. def construct(self, x, y):
  155. return C.grad_all(self.network)(x, y)
  156. class Net(nn.Cell):
  157. def __init__(self):
  158. super().__init__()
  159. self.relu = P.ReLU()
  160. self.mul = P.Mul()
  161. self.reshape = P.Reshape()
  162. self.reduce_sum = P.ReduceSum()
  163. self.wide_w = Parameter(Tensor(np.ones([4, 1024*8, 64]), dtype=ms.float32), name="weight")
  164. def construct(self, x, y):
  165. mask = self.reshape(y, (4, 1024*8, 1))
  166. w_id = self.relu(x)
  167. wx = self.mul(w_id, mask)
  168. wide_out = self.reshape(self.reduce_sum(wx, 1), (-1,1))
  169. deep_id = x + self.wide_w
  170. vx = self.mul(deep_id, mask)
  171. deep_in = self.reshape(vx, (-1, 1024*8*64))
  172. out = wide_out + deep_in
  173. return out
  174. size = 8
  175. context.set_auto_parallel_context(device_num=size, global_rank=0)
  176. x = Tensor(np.ones([4, 1024*size, 1]), dtype=ms.float32)
  177. y = Tensor(np.ones([4, 1024*size,]), dtype=ms.float32)
  178. net = GradWrap(NetWithLoss(Net()))
  179. context.set_auto_parallel_context(parallel_mode="auto_parallel")
  180. net.set_auto_parallel()
  181. _executor.compile(net, x, y)
  182. def test_reshape_auto_6():
  183. class NetWithLoss(nn.Cell):
  184. def __init__(self, network):
  185. super(NetWithLoss, self).__init__()
  186. self.loss = VirtualLoss()
  187. self.network = network
  188. def construct(self, x, y):
  189. predict = self.network(x, y)
  190. return self.loss(predict)
  191. class GradWrap(nn.Cell):
  192. def __init__(self, network):
  193. super(GradWrap, self).__init__()
  194. self.network = network
  195. def construct(self, x, y):
  196. return C.grad_all(self.network)(x, y)
  197. class Net(nn.Cell):
  198. def __init__(self):
  199. super().__init__()
  200. self.relu = P.ReLU()
  201. self.mul = P.Mul()
  202. self.reshape = P.Reshape()
  203. self.reduce_mean = P.ReduceMean()
  204. self.wide_w = Parameter(Tensor(np.ones([4, 1024, 1]), dtype=ms.float32), name="weight")
  205. def construct(self, x, y):
  206. out1 = x + self.wide_w
  207. w = self.reshape(self.wide_w, (4,1024))
  208. out1 = self.reduce_mean(out1, 1)
  209. out1 = out1 - w
  210. out2 = self.mul(y, w)
  211. out = out1 + out2
  212. return out
  213. size = 8
  214. context.set_auto_parallel_context(device_num=size, global_rank=0)
  215. x = Tensor(np.ones([4, 1024, 1]), dtype=ms.float32)
  216. y = Tensor(np.ones([4, 1024,]), dtype=ms.float32)
  217. net = GradWrap(NetWithLoss(Net()))
  218. context.set_auto_parallel_context(parallel_mode="auto_parallel")
  219. net.set_auto_parallel()
  220. _executor.compile(net, x, y)