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test_bprop_mindir.py 9.0 kB

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  1. # Copyright 2021 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. """Generate the mindir for bprop"""
  16. import numpy as np
  17. import mindspore.nn as nn
  18. from mindspore import Tensor, Parameter
  19. from mindspore.ops import operations as P
  20. import mindspore.ops as ops
  21. from mindspore.ops.operations import _inner_ops as inner
  22. import mindspore.common.dtype as mstype
  23. from mindspore.common.initializer import initializer
  24. class Net(nn.Cell):
  25. def __init__(self, op):
  26. super(Net, self).__init__()
  27. self.op = op
  28. def construct(self, *inputs):
  29. return self.op(*inputs)
  30. class TupleInputNet(nn.Cell):
  31. def __init__(self, op):
  32. super(TupleInputNet, self).__init__()
  33. self.op = op
  34. def construct(self, x):
  35. return self.op((x,))
  36. class GradNet(nn.Cell):
  37. def __init__(self, network):
  38. super(GradNet, self).__init__()
  39. self.grad = ops.GradOperation(get_all=True)
  40. self.network = network
  41. def construct(self, *inputs):
  42. gout = self.grad(self.network)(*inputs)
  43. return gout
  44. def test_relu():
  45. x = Tensor(np.array([[[[-1, 1, 10],
  46. [1, -1, 1],
  47. [10, 1, -1]]]]).astype(np.float32))
  48. relu = Net(P.ReLU())
  49. grad = GradNet(relu)
  50. grad.compile(x)
  51. def test_identity():
  52. x = Tensor(np.array([1, 2, 3, 4]).astype(np.int64))
  53. identity = Net(P.Identity())
  54. grad = GradNet(identity)
  55. grad.compile(x)
  56. def test_range():
  57. x = Tensor(np.array([1, 2, 3, 2]).astype(np.int64))
  58. range_net = Net(inner.Range(1.0, 8.0, 2.0))
  59. grad = GradNet(range_net)
  60. grad.compile(x)
  61. def test_ones_like():
  62. x = Tensor(np.array([[0, 1], [2, 1]]).astype(np.int32))
  63. ones_like = Net(P.OnesLike())
  64. grad = GradNet(ones_like)
  65. grad.compile(x)
  66. def test_zeros_like():
  67. x = Tensor(np.array([[0, 1], [2, 1]]).astype(np.int32))
  68. zeros_like = Net(P.ZerosLike())
  69. grad = GradNet(zeros_like)
  70. grad.compile(x)
  71. def test_argmax():
  72. x = Tensor(np.array([[1, 20, 5], [67, 8, 9], [130, 24, 15]]).astype(np.float32))
  73. argmax = Net(P.Argmax())
  74. grad = GradNet(argmax)
  75. grad.compile(x)
  76. def test_argmin():
  77. x = Tensor(np.array([[1, 20, 5], [67, 8, 9], [130, 24, 15]]).astype(np.float32))
  78. argmin = Net(P.Argmin())
  79. grad = GradNet(argmin)
  80. grad.compile(x)
  81. def test_broadcast():
  82. x = Tensor(np.array([1, 2, 5, 2]).astype(np.float32))
  83. broadcast = TupleInputNet(P.Broadcast(1))
  84. grad = GradNet(broadcast)
  85. grad.compile(x)
  86. def test_is_finite():
  87. x = Tensor(np.ones([2, 4]).astype(np.int32))
  88. is_finite = Net(P.IsFinite())
  89. grad = GradNet(is_finite)
  90. grad.compile(x)
  91. def test_approximate_equal():
  92. x = Tensor(np.array([1, 2, 3]).astype(np.float32))
  93. y = Tensor(np.array([2, 4, 6]).astype(np.float32))
  94. approximate_equal = Net(P.ApproximateEqual(2.))
  95. grad = GradNet(approximate_equal)
  96. grad.compile(x, y)
  97. def test_logical_not():
  98. x = Tensor(np.array([True, False, True]).astype(np.bool))
  99. logical_not = Net(P.LogicalNot())
  100. grad = GradNet(logical_not)
  101. grad.compile(x)
  102. def test_sign():
  103. x = Tensor(np.array([[2.0, 0.0, -1.0]]).astype(np.float32))
  104. sign = Net(P.Sign())
  105. grad = GradNet(sign)
  106. grad.compile(x)
  107. def test_round():
  108. x = Tensor(np.array([0.8, 1.5, 2.3, 2.5, -4.5]).astype(np.float32))
  109. round_net = Net(P.Round())
  110. grad = GradNet(round_net)
  111. grad.compile(x)
  112. def test_lin_space():
  113. start = Tensor(1, mstype.float32)
  114. stop = Tensor(10, mstype.float32)
  115. num = 5
  116. lin_space = Net(P.LinSpace())
  117. grad = GradNet(lin_space)
  118. grad.compile(start, stop, num)
  119. def test_dropout_gen_mask():
  120. x = (2, 4, 2, 2)
  121. keep_prob = Tensor(1.0, mstype.float32)
  122. dropout_gen_mask = Net(P.DropoutGenMask(10, 28))
  123. grad = GradNet(dropout_gen_mask)
  124. grad.compile(x, keep_prob)
  125. def test_onehot():
  126. indices = Tensor(np.array([0, 1, 2]).astype(np.int32))
  127. depth, on_value, off_value = 3, Tensor(1.0, mstype.float32), Tensor(0.0, mstype.float32)
  128. one_hot = Net(P.OneHot())
  129. grad = GradNet(one_hot)
  130. grad.compile(indices, depth, on_value, off_value)
  131. def test_assign():
  132. class AssignNet(nn.Cell):
  133. def __init__(self):
  134. super(AssignNet, self).__init__()
  135. self.assign = P.Assign()
  136. self.variable = Parameter(Tensor([1.0], mstype.float32), name="variable")
  137. def construct(self, x):
  138. return self.assign(self.variable, x)
  139. value = Tensor([2.0], mstype.float32)
  140. assign = AssignNet()
  141. grad = GradNet(assign)
  142. grad.compile(value)
  143. def test_assign_add():
  144. class AssignAddNet(nn.Cell):
  145. def __init__(self):
  146. super(AssignAddNet, self).__init__()
  147. self.assign_add = P.AssignAdd()
  148. self.variable = Parameter(initializer(1, [1], mstype.int64), name="global_step")
  149. def construct(self, x):
  150. return self.assign_add(self.variable, x)
  151. value = Tensor(np.ones([1]).astype(np.int64) * 100)
  152. assign_add = AssignAddNet()
  153. grad = GradNet(assign_add)
  154. grad.compile(value)
  155. def test_assign_sub():
  156. class AssignSubNet(nn.Cell):
  157. def __init__(self):
  158. super(AssignSubNet, self).__init__()
  159. self.assign = P.AssignSub()
  160. self.variable = Parameter(initializer(1, [1], mstype.int32), name="global_step")
  161. def construct(self, x):
  162. return self.assign(self.variable, x)
  163. value = Tensor(np.ones([1]).astype(np.int32) * 100)
  164. assign_sub = AssignSubNet()
  165. grad = GradNet(assign_sub)
  166. grad.compile(value)
  167. def test_iou():
  168. anchor_boxes = Tensor(np.random.randint(1.0, 5.0, [3, 4]).astype(np.float16))
  169. gt_boxes = Tensor(np.random.randint(1.0, 5.0, [3, 4]).astype(np.float16))
  170. iou = Net(P.IOU())
  171. grad = GradNet(iou)
  172. grad.compile(anchor_boxes, gt_boxes)
  173. def test_bn_training_reduce():
  174. x = Tensor(np.ones([128, 3, 32, 3]).astype(np.float32))
  175. bn_training_reduce = Net(P.BNTrainingReduce())
  176. grad = GradNet(bn_training_reduce)
  177. grad.compile(x)
  178. def test_equal():
  179. x = Tensor([2.0], mstype.float32)
  180. y = Tensor([2.0], mstype.float32)
  181. equal = Net(P.Equal())
  182. grad = GradNet(equal)
  183. grad.compile(x, y)
  184. def test_not_equal():
  185. x = Tensor([2.0], mstype.float32)
  186. y = Tensor([2.0], mstype.float32)
  187. not_equal = Net(P.NotEqual())
  188. grad = GradNet(not_equal)
  189. grad.compile(x, y)
  190. def test_greater():
  191. x = Tensor(np.array([1, 2, 3]), mstype.int32)
  192. y = Tensor(np.array([1, 1, 4]), mstype.int32)
  193. greater = Net(P.Greater())
  194. grad = GradNet(greater)
  195. grad.compile(x, y)
  196. def test_greater_equal():
  197. x = Tensor(np.array([1, 2, 3]), mstype.int32)
  198. y = Tensor(np.array([1, 1, 4]), mstype.int32)
  199. greater_equal = Net(P.GreaterEqual())
  200. grad = GradNet(greater_equal)
  201. grad.compile(x, y)
  202. def test_less():
  203. x = Tensor(np.array([1, 2, 3]), mstype.int32)
  204. y = Tensor(np.array([1, 1, 4]), mstype.int32)
  205. less = Net(P.Less())
  206. grad = GradNet(less)
  207. grad.compile(x, y)
  208. def test_less_equal():
  209. x = Tensor(np.array([1, 2, 3]), mstype.int32)
  210. y = Tensor(np.array([1, 1, 4]), mstype.int32)
  211. less_equal = Net(P.LessEqual())
  212. grad = GradNet(less_equal)
  213. grad.compile(x, y)
  214. def test_logical_and():
  215. x = Tensor(np.array([True, False, True]), mstype.bool_)
  216. y = Tensor(np.array([True, True, False]), mstype.bool_)
  217. logical_and = Net(P.LogicalAnd())
  218. grad = GradNet(logical_and)
  219. grad.compile(x, y)
  220. def test_logical_or():
  221. x = Tensor(np.array([True, False, True]), mstype.bool_)
  222. y = Tensor(np.array([True, True, False]), mstype.bool_)
  223. logical_or = Net(P.LogicalOr())
  224. grad = GradNet(logical_or)
  225. grad.compile(x, y)
  226. def test_reduce_all():
  227. x = Tensor(np.array([[True, False], [True, True]]))
  228. reduce_all = Net(P.ReduceAll(keep_dims=True))
  229. grad = GradNet(reduce_all)
  230. grad.compile(x)
  231. def test_reduce_any():
  232. x = Tensor(np.array([[True, False], [True, True]]))
  233. reduce_all = Net(P.ReduceAny(keep_dims=True))
  234. grad = GradNet(reduce_all)
  235. grad.compile(x)
  236. def test_dropout_do_mask():
  237. input_x = Tensor(np.ones([2, 2, 3]), mstype.float32)
  238. keep_prob = Tensor(0.5, mstype.float32)
  239. mask = Tensor(np.ones([2]), mstype.uint8)
  240. dropout_do_mask = Net(P.DropoutDoMask())
  241. grad = GradNet(dropout_do_mask)
  242. grad.compile(input_x, mask, keep_prob)