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test_ops.py 96 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. """ test ops """
  16. import functools
  17. import numpy as np
  18. import mindspore.nn as nn
  19. import mindspore.ops.composite as C
  20. from mindspore import Tensor
  21. from mindspore import ops, Parameter, context
  22. from mindspore.common import dtype as mstype
  23. from mindspore.ops import functional as F
  24. from mindspore.ops import operations as P
  25. from mindspore.ops.operations import _grad_ops as G
  26. from mindspore.ops.operations import _inner_ops as inner
  27. from mindspore.ops.operations import _quant_ops as Q
  28. from ..ut_filter import non_graph_engine
  29. from ....mindspore_test_framework.mindspore_test import mindspore_test
  30. from ....mindspore_test_framework.pipeline.forward.compile_forward \
  31. import (pipeline_for_compile_forward_ge_graph_for_case_by_case_config,
  32. pipeline_for_compile_forward_ge_graph_for_case_by_case_config_exception)
  33. from ....mindspore_test_framework.pipeline.gradient.compile_gradient \
  34. import pipeline_for_compile_grad_ge_graph_for_case_by_case_config
  35. from ....ops_common import convert
  36. grad_all_with_sens = C.GradOperation(get_all=True, sens_param=True)
  37. class InputBackward(nn.Cell):
  38. def __init__(self, network):
  39. super(InputBackward, self).__init__()
  40. self.network = network
  41. self.network.set_train()
  42. self.grad = grad_all_with_sens
  43. def construct(self, x1, x2, x3, sens):
  44. return self.grad(self.network)(x1, x2, x3, sens)
  45. class NetForTupleInput(nn.Cell):
  46. def __init__(self, op):
  47. super(NetForTupleInput, self).__init__()
  48. self.op = op
  49. def construct(self, x1, x2):
  50. return self.op((x1, x2))
  51. class StridedSlicessdNet(nn.Cell):
  52. def __init__(self):
  53. super(StridedSlicessdNet, self).__init__()
  54. self.rank = P.Rank()
  55. def construct(self, x1):
  56. return P.StridedSlice(1, 1, 0, self.rank(x1), 0)(x1, (0, 0), (0, 0), (1, 1))
  57. class NetForConcat(nn.Cell):
  58. def __init__(self):
  59. super(NetForConcat, self).__init__()
  60. self.concat = P.Concat()
  61. def construct(self, x1):
  62. return self.concat((x1, x1))
  63. class NetForConcat1(nn.Cell):
  64. def __init__(self):
  65. super(NetForConcat1, self).__init__()
  66. self.concat = P.Concat()
  67. def construct(self, x1, x2):
  68. return self.concat((x1, x2))
  69. class NetForConcat2(nn.Cell):
  70. def __init__(self):
  71. super(NetForConcat2, self).__init__()
  72. self.concat = P.Concat(axis=2)
  73. def construct(self, x1, x2):
  74. return self.concat((x1, x2))
  75. class NetForConcat3(nn.Cell):
  76. def __init__(self):
  77. super(NetForConcat3, self).__init__()
  78. self.concat = P.Concat(axis=0)
  79. def construct(self, x1, x2, x3):
  80. return self.concat((x1, x2, x3))
  81. class NetForConcat4(nn.Cell):
  82. def __init__(self):
  83. super(NetForConcat4, self).__init__()
  84. self.concat = P.Concat(axis=-1)
  85. def construct(self, x1, x2, x3):
  86. return self.concat((x1, x2, x3))
  87. class NetForPackInput(nn.Cell):
  88. def __init__(self, op):
  89. super(NetForPackInput, self).__init__()
  90. self.op = op
  91. self.mul = P.Mul()
  92. def construct(self, *args):
  93. t = ()
  94. for element in args:
  95. t = t + (self.mul(element, element),)
  96. return self.op(t)
  97. class NetForUnpackInput(nn.Cell):
  98. def __init__(self, op):
  99. super(NetForUnpackInput, self).__init__()
  100. self.op = op
  101. self.mul = P.Mul()
  102. def construct(self, x1):
  103. return self.op((self.mul(x1, x1)))
  104. class NetForFlatten(nn.Cell):
  105. def __init__(self):
  106. super(NetForFlatten, self).__init__()
  107. self.flatten = P.Flatten()
  108. def construct(self, x, y):
  109. return self.flatten(x) + y
  110. class NetForFlatten0D(nn.Cell):
  111. def __init__(self):
  112. super(NetForFlatten0D, self).__init__()
  113. self.flatten = P.Flatten()
  114. def construct(self, x):
  115. return self.flatten(x)
  116. class NetForFlattenComposed(nn.Cell):
  117. # make flatten op together with other ops for testing flatten grad
  118. def __init__(self):
  119. super(NetForFlattenComposed, self).__init__()
  120. self.flatten = P.Flatten()
  121. def construct(self, x, y):
  122. return self.flatten(x + x) + y
  123. class ArgmaxNet(nn.Cell):
  124. def __init__(self):
  125. super(ArgmaxNet, self).__init__()
  126. self.argmax = P.Argmax(axis=1)
  127. def construct(self, input_):
  128. return self.argmax(input_)
  129. class ArgminNet(nn.Cell):
  130. def __init__(self):
  131. super(ArgminNet, self).__init__()
  132. self.argmin = P.Argmin(axis=1)
  133. def construct(self, input_):
  134. return self.argmin(input_)
  135. class CumSumNet(nn.Cell):
  136. def __init__(self):
  137. super(CumSumNet, self).__init__()
  138. self.cumsum = P.CumSum()
  139. self.axis = 1
  140. def construct(self, input_):
  141. return self.cumsum(input_, self.axis)
  142. class SummaryNet(nn.Cell):
  143. def __init__(self):
  144. super(SummaryNet, self).__init__()
  145. self.s = P.ScalarSummary()
  146. self.add = P.TensorAdd()
  147. def construct(self, x, y):
  148. self.s("x1", x)
  149. return self.add(x, y)
  150. class HistogramSummaryNet(nn.Cell):
  151. def __init__(self):
  152. super(HistogramSummaryNet, self).__init__()
  153. self.summary = P.HistogramSummary()
  154. self.add = P.TensorAdd()
  155. def construct(self, x, y):
  156. out = self.add(x, y)
  157. string_in = "out"
  158. self.summary(string_in, out)
  159. return out
  160. class Moments(nn.Cell):
  161. """Moments net definition"""
  162. def __init__(self, axis=None, keep_dims=None):
  163. super(Moments, self).__init__()
  164. self.moments = nn.Moments(axis=axis, keep_dims=keep_dims)
  165. def construct(self, input_x):
  166. mean, variance = self.moments(input_x)
  167. return mean, variance
  168. class CountNonZero(nn.Cell):
  169. """CountNonZero net definition"""
  170. def __init__(self, axis, keep_dims, dtype):
  171. super(CountNonZero, self).__init__()
  172. self.axis = axis
  173. self.keep_dims = keep_dims
  174. self.dtype = dtype
  175. def construct(self, input_x):
  176. nonzero_num = C.count_nonzero(input_x, self.axis, self.keep_dims, self.dtype)
  177. return nonzero_num
  178. class ScatterUpdate(nn.Cell):
  179. """ScatterUpdate net definition"""
  180. def __init__(self, ref_shape, dtype=np.float32, use_locking=False):
  181. super(ScatterUpdate, self).__init__()
  182. self.scatter_update = P.ScatterUpdate(use_locking)
  183. self.ref = Parameter(Tensor(np.ones(ref_shape, dtype)), name="ref")
  184. def construct(self, indices, updates):
  185. out = self.scatter_update(self.ref, indices, updates)
  186. return out
  187. class ScatterMax(nn.Cell):
  188. """ScatterMax net definition"""
  189. def __init__(self, dtype=np.float32, use_locking=False):
  190. super(ScatterMax, self).__init__()
  191. self.scatter_max = P.ScatterMax(use_locking)
  192. self.ref = Parameter(Tensor(np.array([[1.0, 2.0, 3.0], [4.0, 5.0, 6.0]], dtype)), name="ref")
  193. def construct(self, indices, updates):
  194. out = self.scatter_max(self.ref, indices, updates)
  195. return out
  196. class ScatterMin(nn.Cell):
  197. """ScatterMin net definition"""
  198. def __init__(self, dtype=np.float32, use_locking=False):
  199. super(ScatterMin, self).__init__()
  200. self.scatter_min = P.ScatterMin(use_locking)
  201. self.ref = Parameter(Tensor(np.array([[-1.0, 2.0, 3.0], [-4.0, 1.0, 6.0]], dtype)), name="ref")
  202. def construct(self, indices, updates):
  203. out = self.scatter_min(self.ref, indices, updates)
  204. return out
  205. class ScatterAdd(nn.Cell):
  206. """ScatterAdd net definition"""
  207. def __init__(self, ref_shape, dtype=np.float32, use_locking=False):
  208. super(ScatterAdd, self).__init__()
  209. self.scatter_add = P.ScatterAdd(use_locking)
  210. self.ref = Parameter(Tensor(np.ones(ref_shape, dtype)), name="ref")
  211. def construct(self, indices, updates):
  212. out = self.scatter_add(self.ref, indices, updates)
  213. return out
  214. class ScatterNonAliasingAdd(nn.Cell):
  215. """ScatterNonAliasingAdd net definition"""
  216. def __init__(self, ref_shape, dtype=np.float32):
  217. super(ScatterNonAliasingAdd, self).__init__()
  218. self.scatter_no_aliasing_add = P.ScatterNonAliasingAdd()
  219. self.ref = Parameter(Tensor(np.ones(ref_shape, dtype)), name="ref")
  220. def construct(self, indices, updates):
  221. out = self.scatter_no_aliasing_add(self.ref, indices, updates)
  222. return out
  223. class ScatterNdSub(nn.Cell):
  224. """ScatterNdSub net definition"""
  225. def __init__(self, ref_shape, dtype=np.float32):
  226. super(ScatterNdSub, self).__init__()
  227. self.scatter_nd_sub = P.ScatterNdSub()
  228. self.ref = Parameter(Tensor(np.ones(ref_shape, dtype)), name="ref")
  229. def construct(self, indices, updates):
  230. out = self.scatter_nd_sub(self.ref, indices, updates)
  231. return out
  232. class ScatterNdAdd(nn.Cell):
  233. """ScatterNdAdd net definition"""
  234. def __init__(self, ref_shape, dtype=np.float32):
  235. super(ScatterNdAdd, self).__init__()
  236. self.scatter_nd_add = P.ScatterNdAdd()
  237. self.ref = Parameter(Tensor(np.ones(ref_shape, dtype)), name="ref")
  238. def construct(self, indices, updates):
  239. out = self.scatter_nd_add(self.ref, indices, updates)
  240. return out
  241. class ScatterSub(nn.Cell):
  242. """ScatterSub net definition"""
  243. def __init__(self, ref_shape, dtype=np.float32, use_locking=False):
  244. super(ScatterSub, self).__init__()
  245. self.scatter_sub = P.ScatterSub(use_locking)
  246. self.ref = Parameter(Tensor(np.ones(ref_shape, dtype)), name="ref")
  247. def construct(self, indices, updates):
  248. out = self.scatter_sub(self.ref, indices, updates)
  249. return out
  250. class ScatterMul(nn.Cell):
  251. """ScatterMul net definition"""
  252. def __init__(self, ref_shape, dtype=np.float32, use_locking=False):
  253. super(ScatterMul, self).__init__()
  254. self.scatter_mul = P.ScatterMul(use_locking)
  255. self.ref = Parameter(Tensor(np.ones(ref_shape, dtype)), name="ref")
  256. def construct(self, indices, updates):
  257. out = self.scatter_mul(self.ref, indices, updates)
  258. return out
  259. class ScatterDiv(nn.Cell):
  260. """ScatterDiv net definition"""
  261. def __init__(self, ref_shape, dtype=np.float32, use_locking=False):
  262. super(ScatterDiv, self).__init__()
  263. self.scatter_div = P.ScatterDiv(use_locking)
  264. self.ref = Parameter(Tensor(np.ones(ref_shape, dtype) * 10), name="ref")
  265. def construct(self, indices, updates):
  266. out = self.scatter_div(self.ref, indices, updates)
  267. return out
  268. class ApplyFtrlNet(nn.Cell):
  269. def __init__(self):
  270. super(ApplyFtrlNet, self).__init__()
  271. self.apply_ftrl = P.ApplyFtrl()
  272. self.lr = 0.001
  273. self.l1 = 0.0
  274. self.l2 = 0.0
  275. self.lr_power = -0.5
  276. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  277. self.accum = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="accum")
  278. self.linear = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="linear")
  279. def construct(self, grad):
  280. out = self.apply_ftrl(self.var, self.accum, self.linear, grad, self.lr, self.l1, self.l2, self.lr_power)
  281. return out
  282. class SparseApplyFtrlNet(nn.Cell):
  283. def __init__(self):
  284. super(SparseApplyFtrlNet, self).__init__()
  285. self.sparse_apply_ftrl = P.SparseApplyFtrl(lr=0.001, l1=0.0, l2=0.0, lr_power=-0.5)
  286. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  287. self.accum = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="accum")
  288. self.linear = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="linear")
  289. def construct(self, grad, indices):
  290. out = self.sparse_apply_ftrl(self.var, self.accum, self.linear, grad, indices)
  291. return out
  292. class SparseApplyFtrlV2Net(nn.Cell):
  293. def __init__(self):
  294. super(SparseApplyFtrlV2Net, self).__init__()
  295. self.sparse_apply_ftrl_v2 = P.SparseApplyFtrlV2(lr=0.001, l1=0.0, l2=0.0, l2_shrinkage=0.0, lr_power=-0.5)
  296. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  297. self.accum = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="accum")
  298. self.linear = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="linear")
  299. def construct(self, grad, indices):
  300. out = self.sparse_apply_ftrl_v2(self.var, self.accum, self.linear, grad, indices)
  301. return out
  302. class SparseApplyProximalAdagradNet(nn.Cell):
  303. def __init__(self):
  304. super(SparseApplyProximalAdagradNet, self).__init__()
  305. self.sparse_apply_proximal_adagrad = P.SparseApplyProximalAdagrad()
  306. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  307. self.accum = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="accum")
  308. self.lr = 0.01
  309. self.l1 = 0.0
  310. self.l2 = 0.0
  311. def construct(self, grad, indices):
  312. out = self.sparse_apply_proximal_adagrad(self.var, self.accum, self.lr, self.l1, self.l2, grad, indices)
  313. return out
  314. class ApplyProximalAdagradNet(nn.Cell):
  315. def __init__(self):
  316. super(ApplyProximalAdagradNet, self).__init__()
  317. self.apply_proximal_adagrad = P.ApplyProximalAdagrad()
  318. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  319. self.accum = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="accum")
  320. self.lr = 0.01
  321. self.l1 = 0.0
  322. self.l2 = 0.0
  323. def construct(self, grad):
  324. out = self.apply_proximal_adagrad(self.var, self.accum, self.lr, self.l1, self.l2, grad)
  325. return out
  326. class ApplyAdaMaxNet(nn.Cell):
  327. def __init__(self):
  328. super(ApplyAdaMaxNet, self).__init__()
  329. self.apply_ada_max = P.ApplyAdaMax()
  330. self.beta1_power = 0.9
  331. self.lr = 0.001
  332. self.beta1 = 0.9
  333. self.beta2 = 0.99
  334. self.epsilon = 1e-10
  335. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  336. self.m = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="m")
  337. self.v = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="v")
  338. def construct(self, grad):
  339. out = self.apply_ada_max(self.var, self.m, self.v, self.beta1_power, self.lr,
  340. self.beta1, self.beta2, self.epsilon, grad)
  341. return out
  342. class ApplyAdadeltaNet(nn.Cell):
  343. def __init__(self):
  344. super(ApplyAdadeltaNet, self).__init__()
  345. self.apply_adadelta = P.ApplyAdadelta()
  346. self.lr = 0.001
  347. self.rho = 0.0
  348. self.epsilon = 1e-6
  349. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  350. self.accum = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="accum")
  351. self.accum_update = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="accum_update")
  352. def construct(self, grad):
  353. out = self.apply_adadelta(self.var, self.accum, self.accum_update, self.lr, self.rho, self.epsilon, grad)
  354. return out
  355. class ApplyAdagradNet(nn.Cell):
  356. def __init__(self):
  357. super(ApplyAdagradNet, self).__init__()
  358. self.apply_adagrad = P.ApplyAdagrad()
  359. self.lr = 0.001
  360. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  361. self.accum = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="accum")
  362. def construct(self, grad):
  363. out = self.apply_adagrad(self.var, self.accum, self.lr, grad)
  364. return out
  365. class ApplyAdagradV2Net(nn.Cell):
  366. def __init__(self):
  367. super(ApplyAdagradV2Net, self).__init__()
  368. self.apply_adagrad_v2 = P.ApplyAdagradV2(epsilon=1e-6)
  369. self.lr = 0.001
  370. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  371. self.accum = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="accum")
  372. def construct(self, grad):
  373. out = self.apply_adagrad_v2(self.var, self.accum, self.lr, grad)
  374. return out
  375. class ApplyAddSignNet(nn.Cell):
  376. def __init__(self):
  377. super(ApplyAddSignNet, self).__init__()
  378. self.apply_add_sign = P.ApplyAddSign()
  379. self.lr = 0.001
  380. self.alpha = 1.0
  381. self.sign_decay = 0.99
  382. self.beta = 0.99
  383. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  384. self.m = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="m")
  385. def construct(self, grad):
  386. out = self.apply_add_sign(self.var, self.m, self.lr, self.alpha, self.sign_decay, self.beta, grad)
  387. return out
  388. class ApplyPowerSignNet(nn.Cell):
  389. def __init__(self):
  390. super(ApplyPowerSignNet, self).__init__()
  391. self.apply_power_sign = P.ApplyPowerSign()
  392. self.lr = 0.001
  393. self.logbase = np.e
  394. self.sign_decay = 0.99
  395. self.beta = 0.99
  396. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  397. self.m = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="m")
  398. def construct(self, grad):
  399. out = self.apply_power_sign(self.var, self.m, self.lr, self.logbase, self.sign_decay, self.beta, grad)
  400. return out
  401. class ApplyGradientDescentNet(nn.Cell):
  402. def __init__(self):
  403. super(ApplyGradientDescentNet, self).__init__()
  404. self.apply_gradient_descent = P.ApplyGradientDescent()
  405. self.alpha = 0.001
  406. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  407. def construct(self, delta):
  408. out = self.apply_gradient_descent(self.var, self.alpha, delta)
  409. return out
  410. class ApplyProximalGradientDescentNet(nn.Cell):
  411. def __init__(self):
  412. super(ApplyProximalGradientDescentNet, self).__init__()
  413. self.apply_proximal_gradient_descent = P.ApplyProximalGradientDescent()
  414. self.alpha = 0.001
  415. self.l1 = 0.0
  416. self.l2 = 0.0
  417. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  418. def construct(self, delta):
  419. out = self.apply_proximal_gradient_descent(self.var, self.alpha, self.l1, self.l2, delta)
  420. return out
  421. class SparseApplyAdagradNet(nn.Cell):
  422. def __init__(self):
  423. super(SparseApplyAdagradNet, self).__init__()
  424. self.sparse_apply_adagrad = P.SparseApplyAdagrad(lr=0.01)
  425. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  426. self.accum = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="accum")
  427. def construct(self, grad, indices):
  428. out = self.sparse_apply_adagrad(self.var, self.accum, grad, indices)
  429. return out
  430. class SparseApplyAdagradV2Net(nn.Cell):
  431. def __init__(self):
  432. super(SparseApplyAdagradV2Net, self).__init__()
  433. self.sparse_apply_adagrad_v2 = P.SparseApplyAdagradV2(lr=0.01, epsilon=0.001)
  434. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  435. self.accum = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="accum")
  436. def construct(self, grad, indices):
  437. out = self.sparse_apply_adagrad_v2(self.var, self.accum, grad, indices)
  438. return out
  439. class ApplyRMSNet(nn.Cell):
  440. def __init__(self):
  441. super(ApplyRMSNet, self).__init__()
  442. self.apply_rms = P.ApplyRMSProp()
  443. self.lr = 0.001
  444. self.rho = 0.0
  445. self.momentum = 0.0
  446. self.epsilon = 1e-10
  447. self.var = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="var")
  448. self.ms = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="ms")
  449. self.moment = Parameter(Tensor(np.random.rand(3, 3).astype(np.float32)), name="moment")
  450. def construct(self, grad):
  451. out = self.apply_rms(self.var, self.ms, self.moment, self.lr, grad, self.rho, self.momentum, self.epsilon)
  452. return out
  453. class InplaceAddNet(nn.Cell):
  454. def __init__(self):
  455. super(InplaceAddNet, self).__init__()
  456. self.inplace_add = P.InplaceAdd(indices=(0, 1))
  457. def construct(self, x, v):
  458. out = self.inplace_add(x, v)
  459. return out
  460. class InplaceSubNet(nn.Cell):
  461. def __init__(self):
  462. super(InplaceSubNet, self).__init__()
  463. self.inplace_sub = P.InplaceSub(indices=(0, 1))
  464. def construct(self, x, v):
  465. out = self.inplace_sub(x, v)
  466. return out
  467. class NormalNet(nn.Cell):
  468. def __init__(self, shape=None, seed=0):
  469. super(NormalNet, self).__init__()
  470. self.shape = shape
  471. self.seed = seed
  472. def construct(self, mean, stddev):
  473. out = C.normal(self.shape, mean, stddev, self.seed)
  474. return out
  475. class LaplaceNet(nn.Cell):
  476. def __init__(self, shape=None, seed=0):
  477. super(LaplaceNet, self).__init__()
  478. self.shape = shape
  479. self.seed = seed
  480. def construct(self, mean, lambda_param):
  481. out = C.laplace(self.shape, mean, lambda_param, self.seed)
  482. return out
  483. class GammaNet(nn.Cell):
  484. def __init__(self, shape=None, seed=0):
  485. super(GammaNet, self).__init__()
  486. self.shape = shape
  487. self.seed = seed
  488. def construct(self, alpha, beta):
  489. out = C.gamma(self.shape, alpha, beta, self.seed)
  490. return out
  491. class PoissonNet(nn.Cell):
  492. def __init__(self, shape=None, seed=0):
  493. super(PoissonNet, self).__init__()
  494. self.shape = shape
  495. self.seed = seed
  496. def construct(self, mean):
  497. out = C.poisson(self.shape, mean, self.seed)
  498. return out
  499. class UniformNet(nn.Cell):
  500. def __init__(self, shape=None, seed=0):
  501. super(UniformNet, self).__init__()
  502. self.shape = shape
  503. self.seed = seed
  504. def construct(self, a, b):
  505. out = C.uniform(self.shape, a, b, self.seed)
  506. return out
  507. class CTCGreedyDecoderNet(nn.Cell):
  508. def __init__(self):
  509. super(CTCGreedyDecoderNet, self).__init__()
  510. self.ctc_greedy_decoder = P.CTCGreedyDecoder()
  511. self.assert_op = P.Assert(300)
  512. def construct(self, inputs, sequence_length):
  513. out = self.ctc_greedy_decoder(inputs, sequence_length)
  514. self.assert_op(True, (out[0], out[1], out[2], out[3]))
  515. return out[2]
  516. class StridedSliceNet(nn.Cell):
  517. def __init__(self):
  518. super(StridedSliceNet, self).__init__()
  519. self.begins = (1, 2, 3, 2, 1)
  520. self.ends = (5, 6, 7, 8, 9)
  521. self.strides = (1, 2, 3, 2, 1)
  522. self.strided_slice_0 = P.StridedSlice(begin_mask=3, end_mask=5, ellipsis_mask=4,
  523. shrink_axis_mask=2, new_axis_mask=8)
  524. self.strided_slice_1 = P.StridedSlice(begin_mask=5, end_mask=2, ellipsis_mask=2,
  525. shrink_axis_mask=6, new_axis_mask=10)
  526. self.strided_slice_2 = P.StridedSlice(begin_mask=3, end_mask=3, ellipsis_mask=4,
  527. shrink_axis_mask=5, new_axis_mask=13)
  528. self.strided_slice_3 = P.StridedSlice(begin_mask=0, end_mask=0, ellipsis_mask=4,
  529. shrink_axis_mask=12, new_axis_mask=15)
  530. self.const_0 = Tensor(np.ones([6, 8, 9, 1, 8], np.float32))
  531. self.const_1 = Tensor(np.ones([5, 7, 8, 1, 8], np.float32))
  532. self.const_2 = Tensor(np.ones([1, 3, 7, 8, 9, 1, 8], np.float32))
  533. self.const_3 = Tensor(np.ones([1, 1, 6, 7, 8, 9, 1, 8], np.float32))
  534. def construct(self, x):
  535. out_0 = self.strided_slice_0(x, self.begins, self.ends, self.strides) + self.const_0
  536. out_1 = self.strided_slice_1(x, self.begins, self.ends, self.strides) + self.const_1
  537. out_2 = self.strided_slice_2(x, self.begins, self.ends, self.strides) + self.const_2
  538. out_3 = self.strided_slice_3(x, self.begins, self.ends, self.strides) + self.const_3
  539. return out_0, out_1, out_2, out_3
  540. def test_strided_slice_const():
  541. class StridedSLiceConstNet(nn.Cell):
  542. """StridedSLiceConstNet net definition"""
  543. def __init__(self):
  544. super(StridedSLiceConstNet, self).__init__()
  545. self.begins = (0, 2, -5, 2, 1)
  546. self.ends = (0, 6, 9, 8, 9)
  547. self.strides = (1, 2, 1, 2, 1)
  548. self.strided_slice = P.StridedSlice(begin_mask=2,
  549. end_mask=6,
  550. ellipsis_mask=4,
  551. shrink_axis_mask=6,
  552. new_axis_mask=18)
  553. def construct(self, x):
  554. out = self.strided_slice(x, self.begins, self.ends, self.strides)
  555. return out
  556. net = StridedSLiceConstNet()
  557. context.set_context(mode=context.GRAPH_MODE, save_graphs=True)
  558. x = Tensor(np.ones([6, 7, 8, 9, 10]), mstype.float32)
  559. ret = net(x)
  560. assert ret.shape == (0, 1, 7, 8, 9, 3, 1)
  561. assert (ret.asnumpy() == np.array([], np.float32).reshape([0, 1, 7, 8, 9, 3, 1])).all()
  562. class ParallelConcatNet(nn.Cell):
  563. def __init__(self):
  564. super(ParallelConcatNet, self).__init__()
  565. self.parallel_concat = P.ParallelConcat()
  566. def construct(self, x1, x2):
  567. return self.parallel_concat((x1, x2))
  568. class BasicLSTMCellNet(nn.Cell):
  569. """ BasicLSTMCellNet definition """
  570. def __init__(self):
  571. super(BasicLSTMCellNet, self).__init__()
  572. self.lstm = P.BasicLSTMCell()
  573. def construct(self, x, h, c, w, b):
  574. return self.lstm(x, h, c, w, b)
  575. class EditDistance(nn.Cell):
  576. def __init__(self, hypothesis_shape, truth_shape, normalize=True):
  577. super(EditDistance, self).__init__()
  578. self.edit_distance = P.EditDistance(normalize)
  579. self.hypothesis_shape = hypothesis_shape
  580. self.truth_shape = truth_shape
  581. def construct(self, hypothesis_indices, hypothesis_values, truth_indices, truth_values):
  582. return self.edit_distance(hypothesis_indices, hypothesis_values, self.hypothesis_shape,
  583. truth_indices, truth_values, self.truth_shape)
  584. test_case_math_ops = [
  585. ('BitwiseAnd', {
  586. 'block': P.BitwiseAnd(),
  587. 'desc_inputs': [Tensor(np.array([0, 0, 1, -1, 1, 1, 1]), mstype.int16),
  588. Tensor(np.array([0, 1, 1, -1, -1, 2, 3]), mstype.int16)],
  589. 'skip': ['backward']}),
  590. ('BitwiseAnd_1', {
  591. 'block': P.BitwiseAnd(),
  592. 'desc_inputs': [Tensor(np.array([[1, 2, 3], [-1, -2, -3]]), mstype.int16),
  593. Tensor(np.array([1, 1, 1]), mstype.int16)],
  594. 'skip': ['backward']}),
  595. ('BitwiseOr', {
  596. 'block': P.BitwiseOr(),
  597. 'desc_inputs': [Tensor(np.array([0, 0, 1, -1, 1, 1, 1]), mstype.int16),
  598. Tensor(np.array([0, 1, 1, -1, -1, 2, 3]), mstype.int16)],
  599. 'skip': ['backward']}),
  600. ('BitwiseOr_1', {
  601. 'block': P.BitwiseOr(),
  602. 'desc_inputs': [Tensor(np.array([[1, 2, 3], [-1, -2, -3]]), mstype.int16),
  603. Tensor(np.array([1, 1, 1]), mstype.int16)],
  604. 'skip': ['backward']}),
  605. ('BitwiseXor', {
  606. 'block': P.BitwiseXor(),
  607. 'desc_inputs': [Tensor(np.array([0, 0, 1, -1, 1, 1, 1]), mstype.int16),
  608. Tensor(np.array([0, 1, 1, -1, -1, 2, 3]), mstype.int16)],
  609. 'skip': ['backward']}),
  610. ('BitwiseXor_1', {
  611. 'block': P.BitwiseXor(),
  612. 'desc_inputs': [Tensor(np.array([[1, 2, 3], [-1, -2, -3]]), mstype.int16),
  613. Tensor(np.array([1, 1, 1]), mstype.int16)],
  614. 'skip': ['backward']}),
  615. ('Neg', {
  616. 'block': P.Neg(),
  617. 'desc_inputs': [[1, 3, 4, 4]],
  618. 'desc_bprop': [[1, 3, 4, 4]]}),
  619. ('Sub', {
  620. 'block': P.Sub(),
  621. 'desc_inputs': [[3, 5], [2, 3, 3, 5]],
  622. 'desc_bprop': [[2, 3, 3, 5]]}),
  623. ('TensorAdd', {
  624. 'block': P.TensorAdd(),
  625. 'desc_inputs': [[3, 5], [2, 3, 3, 5]],
  626. 'desc_bprop': [[2, 3, 3, 5]]}),
  627. ('Mul0', {
  628. 'block': P.Mul(),
  629. 'desc_inputs': [[2, 3, 3, 5], [2, 3, 3, 5]],
  630. 'desc_bprop': [[2, 3, 3, 5]]}),
  631. ('Mul1', {
  632. 'block': P.Mul(),
  633. 'desc_inputs': [[2, 3, 1, 1], [2, 3, 3, 5]],
  634. 'desc_bprop': [[2, 3, 3, 5]]}),
  635. ('Mul2', {
  636. 'block': P.Mul(),
  637. 'desc_inputs': [[2, 3, 3, 5], [2, 3, 1, 1]],
  638. 'desc_bprop': [[2, 3, 3, 5]],
  639. 'skip': ['backward']}),
  640. ('Mul3', {
  641. 'block': P.Mul(),
  642. 'desc_inputs': [[3, 5], [2, 3, 3, 5]],
  643. 'desc_bprop': [[2, 3, 3, 5]],
  644. 'skip': ['backward']}),
  645. ('Mul4', {
  646. 'block': P.Mul(),
  647. 'desc_inputs': [[2, 3, 3, 5], [3, 5]],
  648. 'desc_bprop': [[2, 3, 3, 5]],
  649. 'skip': ['backward']}),
  650. ('Add0', {
  651. 'block': P.TensorAdd(),
  652. 'desc_inputs': [[2, 3, 3, 5], [2, 3, 3, 5]],
  653. 'desc_bprop': [[2, 3, 3, 5]]}),
  654. ('Add1', {
  655. 'block': P.TensorAdd(),
  656. 'desc_inputs': [[3, 5], [2, 3, 3, 5]],
  657. 'desc_bprop': [[2, 3, 3, 5]],
  658. 'skip': ['backward']}),
  659. ('Add2', {
  660. 'block': P.TensorAdd(),
  661. 'desc_inputs': [[2, 3, 3, 5], [3, 5]],
  662. 'desc_bprop': [[2, 3, 3, 5]],
  663. 'skip': ['backward']}),
  664. ('Add3', {
  665. 'block': P.TensorAdd(),
  666. 'desc_inputs': [[2, 3, 1, 1], [2, 3, 3, 5]],
  667. 'desc_bprop': [[2, 3, 3, 5]],
  668. 'skip': ['backward']}),
  669. ('Add4', {
  670. 'block': P.TensorAdd(),
  671. 'desc_inputs': [[2, 3, 3, 5], [2, 3, 1, 1]],
  672. 'desc_bprop': [[2, 3, 3, 5]],
  673. 'skip': ['backward']}),
  674. ('Minimum', {
  675. 'block': P.Minimum(),
  676. 'desc_inputs': [[2, 3, 3, 5], [2, 3, 3, 5]],
  677. 'desc_bprop': [[2, 3, 3, 5]]}),
  678. ('Pow_0', {
  679. 'block': P.Pow(),
  680. 'desc_const': [2.0],
  681. 'desc_inputs': [[2, 3, 3, 5]],
  682. 'desc_bprop': [[2, 3, 3, 5]]}),
  683. ('Pow_1', {
  684. 'block': P.Pow(),
  685. 'desc_inputs': [[3, 5], [2, 3, 3, 5]],
  686. 'desc_bprop': [[2, 3, 3, 5]]}),
  687. ('Exp', {
  688. 'block': P.Exp(),
  689. 'desc_inputs': [[2, 3]],
  690. 'desc_bprop': [[2, 3]]}),
  691. ('Expm1', {
  692. 'block': P.Expm1(),
  693. 'desc_inputs': [[2, 3]],
  694. 'desc_bprop': [[2, 3]]}),
  695. ('Erf', {
  696. 'block': P.Erf(),
  697. 'desc_inputs': [Tensor(np.array([-2, -1, 0, 1, 2]).astype(np.float16))],
  698. 'desc_bprop': [Tensor(np.array([-2, -1, 0, 1, 2]).astype(np.float16))]}),
  699. ('Floor', {
  700. 'block': P.Floor(),
  701. 'desc_inputs': [[2, 512, 56, 56]],
  702. 'desc_bprop': [[2, 512, 56, 56]],
  703. 'skip': ['backward']}),
  704. ('Ceil', {
  705. 'block': P.Ceil(),
  706. 'desc_inputs': [[2, 512, 56, 56]],
  707. 'desc_bprop': [[2, 512, 56, 56]],
  708. 'skip': ['backward']}),
  709. ('InplaceAdd', {
  710. 'block': InplaceAddNet(),
  711. 'desc_inputs': [Tensor(np.array([[1, 2], [3, 4], [5, 6]]).astype(np.float32)),
  712. Tensor(np.array([[0.5, 1], [1, 1.5]]).astype(np.float32))],
  713. 'skip': ['backward']}),
  714. ('InplaceSub', {
  715. 'block': InplaceSubNet(),
  716. 'desc_inputs': [Tensor(np.array([[1, 2], [3, 4], [5, 6]]).astype(np.float32)),
  717. Tensor(np.array([[0.5, 1], [1, 1.5]]).astype(np.float32))],
  718. 'skip': ['backward']}),
  719. ('ACos', {
  720. 'block': P.ACos(),
  721. 'desc_inputs': [Tensor(np.array([2., 3.]).astype(np.float32))],
  722. 'desc_bprop': [Tensor(np.array([2., 3.]).astype(np.float32))]}),
  723. ('ACosGrad', {
  724. 'block': G.ACosGrad(),
  725. 'desc_inputs': [[2, 3], [2, 3]],
  726. 'skip': ['backward']}),
  727. ('Acosh', {
  728. 'block': P.Acosh(),
  729. 'desc_inputs': [Tensor(np.array([2., 3.]).astype(np.float32))],
  730. 'desc_bprop': [Tensor(np.array([2., 3.]).astype(np.float32))]}),
  731. ('AcoshGrad', {
  732. 'block': G.AcoshGrad(),
  733. 'desc_inputs': [[2, 3], [2, 3]],
  734. 'skip': ['backward']}),
  735. ('Sin', {
  736. 'block': P.Sin(),
  737. 'desc_inputs': [[2, 3]],
  738. 'desc_bprop': [[2, 3]]}),
  739. ('Asin', {
  740. 'block': P.Asin(),
  741. 'desc_inputs': [[2, 3]],
  742. 'desc_bprop': [[2, 3]]}),
  743. ('Asinh', {
  744. 'block': P.Asinh(),
  745. 'desc_inputs': [[3, 4, 5]],
  746. 'desc_bprop': [[3, 4, 5]]}),
  747. ('Tan', {
  748. 'block': P.Tan(),
  749. 'desc_inputs': [[2, 3]],
  750. 'desc_bprop': [[2, 3]]}),
  751. ('Reciprocal', {
  752. 'block': P.Reciprocal(),
  753. 'desc_inputs': [[2, 3, 3, 5]],
  754. 'desc_bprop': [[2, 3, 3, 5]]}),
  755. ('Minimum_0', {
  756. 'block': P.Minimum(),
  757. 'desc_inputs': [[2, 3, 3, 5], [3, 3, 5]],
  758. 'desc_bprop': [[2, 3, 3, 5]]}),
  759. ('Maximum', {
  760. 'block': P.Maximum(),
  761. 'desc_inputs': [[2, 3, 3, 5], [2, 3, 3, 5]],
  762. 'desc_bprop': [[2, 3, 3, 5]]}),
  763. ('Maximum_0', {
  764. 'block': P.Maximum(),
  765. 'desc_inputs': [[3, 5], [2, 3, 3, 5]],
  766. 'desc_bprop': [[2, 3, 3, 5]]}),
  767. ('MaximumGrad', {
  768. 'block': G.MaximumGrad(),
  769. 'desc_inputs': [[2, 3, 3, 5], [2, 3, 3, 5], [2, 3, 3, 5]],
  770. 'skip': ['backward']}),
  771. ('MinimumGrad', {
  772. 'block': G.MinimumGrad(),
  773. 'desc_inputs': [[2, 3, 3, 5], [2, 3, 3, 5], [2, 3, 3, 5]],
  774. 'skip': ['backward']}),
  775. ('StridedSlice_00', {
  776. 'block': P.StridedSlice(shrink_axis_mask=0),
  777. 'desc_const': [(0, 1, 2, 1),
  778. (2, 3, 3, 4),
  779. (1, 1, 1, 2)],
  780. 'desc_inputs': [[2, 3, 3, 5]],
  781. 'desc_bprop': [[2, 2, 1, 3]],
  782. 'skip': ['backward']}),
  783. ('Slice_1', {
  784. 'block': P.Slice(),
  785. 'desc_const': [(0, 1, 2, 1),
  786. (1, 1, 1, 2)],
  787. 'desc_inputs': [[2, 3, 3, 5]],
  788. 'desc_bprop': [[1, 1, 1, 2]]}),
  789. ('StridedSliceGrad', {
  790. 'block': G.StridedSliceGrad(),
  791. 'desc_const': [(64, 1, 1024),
  792. (0, 1, 0),
  793. (64, 2, 1024),
  794. (1, 1, 1)],
  795. 'desc_inputs': [[64, 128, 1024]],
  796. 'skip': ['backward']}),
  797. ('Normal', {
  798. 'block': NormalNet((3, 2, 4), 0),
  799. 'desc_inputs': [Tensor(0.0, mstype.float32), Tensor(1.0, mstype.float32)],
  800. 'skip': ['backward']}),
  801. ('Laplace', {
  802. 'block': LaplaceNet((3, 2, 4), 0),
  803. 'desc_inputs': [Tensor(1.0, mstype.float32), Tensor(1.0, mstype.float32)],
  804. 'skip': ['backward']}),
  805. ('Gamma', {
  806. 'block': GammaNet((3, 2, 4), 0),
  807. 'desc_inputs': [Tensor(1.0, mstype.float32), Tensor(1.0, mstype.float32)],
  808. 'skip': ['backward']}),
  809. ('Poisson', {
  810. 'block': PoissonNet((3, 2, 4), 0),
  811. 'desc_inputs': [Tensor(2.0, mstype.float32)],
  812. 'skip': ['backward']}),
  813. ('Uniform', {
  814. 'block': UniformNet((3, 2, 4), 0),
  815. 'desc_inputs': [Tensor(0.0, mstype.float32), Tensor(1.0, mstype.float32)],
  816. 'skip': ['backward']}),
  817. ('RandomChoiceWithMask', {
  818. 'block': P.RandomChoiceWithMask(256),
  819. 'desc_inputs': [Tensor(np.random.rand(24000, 4).astype(np.bool_))],
  820. 'desc_bprop': [[256, 4], [256, 4]],
  821. 'skip': ['backward']}),
  822. ('LessEqual', {
  823. 'block': P.LessEqual(),
  824. 'desc_inputs': [Tensor(np.random.rand(4).astype(np.float16)),
  825. Tensor(np.random.rand(4).astype(np.float16))],
  826. 'skip': ['backward']}),
  827. ('Less', {
  828. 'block': P.Less(),
  829. 'desc_inputs': [[2, 1, 4, 5], [2, 1, 4, 5]],
  830. 'desc_bprop': [Tensor(np.zeros((2, 1, 4, 5), np.bool_))],
  831. 'skip': ['backward']}),
  832. ('RealDiv_0', {
  833. 'block': P.RealDiv(),
  834. 'desc_const': [Tensor(2048.0), Tensor(0.0)],
  835. 'desc_inputs': [],
  836. 'skip': ['backward']}),
  837. ('RealDiv', {
  838. 'block': P.RealDiv(),
  839. 'desc_inputs': [[4], Tensor(np.ones(4).astype(np.float32))],
  840. 'desc_bprop': [[4]]}),
  841. ('RealDiv_1', {
  842. 'block': P.RealDiv(),
  843. 'desc_inputs': [[512, 1024], [512, 1024]],
  844. 'desc_bprop': [[512, 1024]]}),
  845. ('FloorDiv', {
  846. 'block': P.FloorDiv(),
  847. 'desc_inputs': [Tensor(np.random.rand(4).astype(np.float16)),
  848. Tensor(np.random.rand(4).astype(np.float16))],
  849. 'skip': ['backward']}),
  850. ('FloorMod', {
  851. 'block': P.FloorMod(),
  852. 'desc_inputs': [[3, 4, 5], [2, 3, 4, 5]],
  853. 'desc_bprop': [[2, 3, 4, 5]]}),
  854. ('TruncateDiv', {
  855. 'block': P.TruncateDiv(),
  856. 'desc_inputs': [[3, 4, 5], [2, 3, 4, 5]],
  857. 'desc_bprop': [[2, 3, 4, 5]]}),
  858. ('TruncateMod', {
  859. 'block': P.TruncateMod(),
  860. 'desc_inputs': [[3, 4, 5], [2, 3, 4, 5]],
  861. 'desc_bprop': [[2, 3, 4, 5]]}),
  862. ('identity', {
  863. 'block': ops.functional.identity,
  864. 'desc_inputs': [[2, 2]],
  865. 'skip': ['backward']}),
  866. ('MatMul_1', {
  867. 'block': P.MatMul(transpose_a=False, transpose_b=False),
  868. 'desc_inputs': [[1024, 160], [160, 1024]],
  869. 'desc_bprop': [[1024, 1024]]}),
  870. ('MatMul_2', {
  871. 'block': P.MatMul(transpose_a=True, transpose_b=True),
  872. 'desc_inputs': [[160, 1024], [1024, 160]],
  873. 'desc_bprop': [[1024, 1024]]}),
  874. ('Sub', {
  875. 'block': P.Sub(),
  876. 'desc_inputs': [[3], [3]],
  877. 'desc_bprop': [[3]]}),
  878. ('TruncatedNormal', {
  879. 'block': P.TruncatedNormal(),
  880. 'desc_const': [(1, 2, 3)],
  881. 'desc_inputs': [],
  882. 'skip': ['backward'],
  883. 'add_fake_input': True}),
  884. ('Select', {
  885. 'block': P.Select(),
  886. 'desc_inputs': [Tensor(np.array([[True, False, False], [False, True, True]])),
  887. [2, 3], [2, 3]],
  888. 'desc_bprop': [[2, 3]]}),
  889. ('Moments', {
  890. 'block': Moments(axis=(), keep_dims=False),
  891. 'desc_inputs': [Tensor(np.random.rand(3, 16, 5, 4).astype(np.float32))],
  892. 'skip': ['backward']}),
  893. ('CountNonZero', {
  894. 'block': CountNonZero(axis=(), keep_dims=False, dtype=mstype.int32),
  895. 'desc_inputs': [Tensor(np.random.rand(3, 16, 5, 4).astype(np.float32))],
  896. 'skip': ['backward']}),
  897. ('FakeQuantWithMinMaxVars', {
  898. 'block': Q.FakeQuantWithMinMaxVars(num_bits=8, narrow_range=False),
  899. 'desc_inputs': [Tensor(np.random.rand(3, 16, 5, 5), mstype.float32),
  900. Tensor(np.array([-6]), mstype.float32),
  901. Tensor(np.array([6]), mstype.float32)],
  902. 'desc_bprop': [Tensor(np.random.rand(3, 16, 5, 5), mstype.float32)]}),
  903. ('FakeQuantWithMinMaxVarsPerChannel', {
  904. 'block': Q.FakeQuantWithMinMaxVarsPerChannel(num_bits=8, narrow_range=False),
  905. 'desc_inputs': [Tensor(np.random.rand(3, 16, 5, 4), mstype.float32),
  906. Tensor(np.array([-6, -1, -2, -3]), mstype.float32),
  907. Tensor(np.array([6, 1, 2, 3]), mstype.float32)],
  908. 'desc_bprop': [Tensor(np.random.rand(3, 16, 5, 4), mstype.float32)]}),
  909. ('Rank', {
  910. 'block': P.Rank(),
  911. 'desc_inputs': [[2, 3]],
  912. 'skip': ['backward']}),
  913. ('InvertPermutation', {
  914. 'block': P.InvertPermutation(),
  915. 'desc_const': [(0, 3, 1, 2)],
  916. 'desc_inputs': [],
  917. 'skip': ['backward']}),
  918. ('Xdivy', {
  919. 'block': P.Xdivy(),
  920. 'desc_inputs': [[4, 5], [2, 3, 4, 5]],
  921. 'desc_bprop': [[2, 3, 4, 5]]}),
  922. ('Xlogy', {
  923. 'block': P.Xlogy(),
  924. 'desc_inputs': [[4, 5], [2, 3, 4, 5]],
  925. 'desc_bprop': [[2, 3, 4, 5]]}),
  926. ('SquaredDifference', {
  927. 'block': P.SquaredDifference(),
  928. 'desc_inputs': [[4, 5], [2, 3, 4, 5]],
  929. 'desc_bprop': [[2, 3, 4, 5]]}),
  930. ('Square', {
  931. 'block': P.Square(),
  932. 'desc_inputs': [[4]],
  933. 'desc_bprop': [[4]]}),
  934. ('Rsqrt', {
  935. 'block': P.Rsqrt(),
  936. 'desc_inputs': [[4]],
  937. 'desc_bprop': [[4]]}),
  938. ('Sqrt', {
  939. 'block': P.Sqrt(),
  940. 'desc_inputs': [[4]],
  941. 'desc_bprop': [[4]]}),
  942. ('RealDiv', {
  943. 'block': P.RealDiv(),
  944. 'desc_inputs': [[4, 5], [2, 3, 4, 5]],
  945. 'desc_bprop': [[2, 3, 4, 5]]}),
  946. ('Div', {
  947. 'block': P.Div(),
  948. 'desc_inputs': [[4, 5], [2, 3, 4, 5]],
  949. 'desc_bprop': [[2, 3, 4, 5]]}),
  950. ('Equal', {
  951. 'block': P.Equal(),
  952. 'desc_inputs': [[3, 4, 5], [4, 5]],
  953. 'desc_bprop': [Tensor(np.zeros((3, 4, 5), np.bool_))]}),
  954. ('NotEqual', {
  955. 'block': P.NotEqual(),
  956. 'desc_inputs': [[4, 1], [2, 3, 4, 5]],
  957. 'desc_bprop': [Tensor(np.ones((2, 3, 4, 5), np.bool_))]}),
  958. ('NotEqual_0', {
  959. 'block': P.NotEqual(),
  960. 'desc_inputs': [Tensor(np.array(1).astype(np.int32)), [2, 3, 4, 5]],
  961. 'desc_bprop': [Tensor(np.ones((2, 3, 4, 5), np.bool_))],
  962. 'skip': ['backward']}),
  963. ('ApproximateEqual', {
  964. 'block': P.ApproximateEqual(),
  965. 'desc_inputs': [[3, 4, 5], [3, 4, 5]],
  966. 'desc_bprop': [Tensor(np.zeros((3, 4, 5), np.bool_))]}),
  967. ('Greater', {
  968. 'block': P.Greater(),
  969. 'desc_inputs': [[2, 3, 4, 1], [4, 5]],
  970. 'desc_bprop': [Tensor(np.ones((2, 3, 4, 5), np.bool_))]}),
  971. ('GreaterEqual', {
  972. 'block': P.GreaterEqual(),
  973. 'desc_inputs': [[2, 3, 4, 1], [4, 5]],
  974. 'desc_bprop': [Tensor(np.ones((2, 3, 4, 5), np.bool_))]}),
  975. ('LogicalNot', {
  976. 'block': P.LogicalNot(),
  977. 'desc_inputs': [Tensor(np.zeros((3, 4, 5), np.bool_))],
  978. 'desc_bprop': [Tensor(np.ones((3, 4, 5), np.bool_))]}),
  979. ('LogicalAnd', {
  980. 'block': P.LogicalAnd(),
  981. 'desc_inputs': [Tensor(np.zeros((2, 3, 4), np.bool_)), Tensor(np.ones((1), np.bool_))],
  982. 'desc_bprop': [Tensor(np.zeros((2, 3, 4), np.bool_))]}),
  983. ('LogicalOr', {
  984. 'block': P.LogicalOr(),
  985. 'desc_inputs': [Tensor(np.zeros((3, 4, 5), np.bool_)), Tensor(np.ones((3, 1, 1), np.bool_))],
  986. 'desc_bprop': [Tensor(np.zeros((3, 4, 5), np.bool_))]}),
  987. ('NpuAllocFloatStatus', {
  988. 'block': P.NPUAllocFloatStatus(),
  989. 'desc_inputs': [],
  990. 'add_fack_input': True,
  991. 'fack_input_type': np.float32,
  992. 'desc_bprop': [Tensor(np.zeros([8]).astype(np.float32))],
  993. 'skip': ['backward']}),
  994. ('NpuGetFloatStatus', {
  995. 'block': P.NPUGetFloatStatus(),
  996. 'desc_inputs': [Tensor(np.zeros([8]).astype(np.float32))],
  997. 'desc_bprop': [Tensor(np.zeros([8]).astype(np.float32))],
  998. 'skip': ['backward']}),
  999. ('NpuClearFloatStatus', {
  1000. 'block': P.NPUClearFloatStatus(),
  1001. 'desc_inputs': [Tensor(np.zeros([8]).astype(np.float32))],
  1002. 'desc_bprop': [Tensor(np.zeros([8]).astype(np.float32))],
  1003. 'skip': ['backward']}),
  1004. ('CheckValid', {
  1005. 'block': P.CheckValid(),
  1006. 'desc_inputs': [[20000, 4], [3]],
  1007. 'desc_bprop': [[20000]],
  1008. 'skip': ['backward']}),
  1009. ('NMSWithMask', {
  1010. 'block': P.NMSWithMask(0.5),
  1011. 'desc_inputs': [[128, 5]],
  1012. 'desc_bprop': [[128, 5], [128], [128]],
  1013. 'skip': ['backward']}),
  1014. ('Abs', {
  1015. 'block': P.Abs(),
  1016. 'desc_inputs': [[4]],
  1017. 'desc_bprop': [[4]]}),
  1018. ('CumSum', {
  1019. 'block': CumSumNet(),
  1020. 'desc_inputs': [Tensor(np.array([[3, 4, 6, 10], [1, 6, 7, 9], [4, 3, 8, 7], [1, 3, 7, 9]]).astype(np.float32))],
  1021. 'desc_bprop': [Tensor(np.array([[3, 4, 6, 10], [1, 6, 7, 9], [4, 3, 8, 7],
  1022. [1, 3, 7, 9]]).astype(np.float32))]}),
  1023. ('ReduceSum_3', {
  1024. 'block': P.ReduceSum(),
  1025. 'desc_const': [0],
  1026. 'desc_inputs': [[3, 2]],
  1027. 'desc_bprop': [[2]]}),
  1028. ('ReduceSum_4', {
  1029. 'block': P.ReduceSum(keep_dims=True),
  1030. 'desc_const': [0],
  1031. 'desc_inputs': [[3, 2]],
  1032. 'desc_bprop': [[1, 2]]}),
  1033. ('ReduceSum_5', {
  1034. 'block': P.ReduceSum(keep_dims=True),
  1035. 'desc_inputs': [[2, 3, 4]],
  1036. 'desc_bprop': [[1, 1, 1]]}),
  1037. ('ReduceSum_6', {
  1038. 'block': P.ReduceSum(),
  1039. 'desc_inputs': [[2, 3, 4]],
  1040. 'desc_bprop': [[1]]}),
  1041. ('Sum_0', {
  1042. 'block': P.ReduceSum(),
  1043. 'desc_const': [(1,)],
  1044. 'desc_inputs': [[3, 2]],
  1045. 'desc_bprop': [[3]]}),
  1046. ('Sum_1', {
  1047. 'block': P.ReduceSum(keep_dims=True),
  1048. 'desc_const': [(1,)],
  1049. 'desc_inputs': [[3, 2]],
  1050. 'desc_bprop': [[3, 1]]}),
  1051. ('Sum_2', {
  1052. 'block': P.ReduceSum(),
  1053. 'desc_const': [(0, 1)],
  1054. 'desc_inputs': [[3, 2]],
  1055. 'desc_bprop': [[1]]}),
  1056. ('Sum_3', {
  1057. 'block': P.ReduceSum(),
  1058. 'desc_const': [0],
  1059. 'desc_inputs': [[3, 2]],
  1060. 'desc_bprop': [[2]]}),
  1061. ('Sum_4', {
  1062. 'block': P.ReduceSum(keep_dims=True),
  1063. 'desc_const': [0],
  1064. 'desc_inputs': [[3, 2]],
  1065. 'desc_bprop': [[1, 2]]}),
  1066. ('Sum_5', {
  1067. 'block': P.ReduceSum(keep_dims=True),
  1068. 'desc_const': [()],
  1069. 'desc_inputs': [[2, 3, 4]],
  1070. 'desc_bprop': [[1, 1, 1]]}),
  1071. ('Sum_6', {
  1072. 'block': P.ReduceSum(),
  1073. 'desc_const': [()],
  1074. 'desc_inputs': [[2, 3, 4]],
  1075. 'desc_bprop': [[1]]}),
  1076. ('Sign', {
  1077. 'block': P.Sign(),
  1078. 'desc_inputs': [[3]],
  1079. 'desc_bprop': [[3]]}),
  1080. ('Round', {
  1081. 'block': P.Round(),
  1082. 'desc_inputs': [[3]],
  1083. 'desc_bprop': [[3]]}),
  1084. ('Atan2', {
  1085. 'block': P.Atan2(),
  1086. 'desc_inputs': [Tensor(np.array([0, 1]).astype(np.float32)),
  1087. Tensor(np.array([1, 1]).astype(np.float32))],
  1088. 'desc_bprop': [[2]]}),
  1089. ('SquareSumAll', {
  1090. 'block': P.SquareSumAll(),
  1091. 'desc_inputs': [Tensor(np.array([0, 1, 4, 5]).astype(np.float32)),
  1092. Tensor(np.array([1, 1, 3, 7]).astype(np.float32))],
  1093. 'desc_bprop': [Tensor(np.array(0.1).astype(np.float32)),
  1094. Tensor(np.array(0.1).astype(np.float32))]}),
  1095. ('Cos', {
  1096. 'block': P.Cos(),
  1097. 'desc_inputs': [[2, 3]],
  1098. 'desc_bprop': [[2, 3]]}),
  1099. ('ReduceAll', {
  1100. 'block': P.ReduceAll(),
  1101. 'desc_const': [1],
  1102. 'desc_inputs': [Tensor(np.array([[True, False], [True, True]]))],
  1103. 'desc_bprop': []}),
  1104. ('ReduceAny', {
  1105. 'block': P.ReduceAny(),
  1106. 'desc_const': [1],
  1107. 'desc_inputs': [Tensor(np.array([[True, False], [True, True]]))],
  1108. 'desc_bprop': []}),
  1109. ('BesselI0e', {
  1110. 'block': P.BesselI0e(),
  1111. 'desc_inputs': [[2, 3]],
  1112. 'desc_bprop': [[2, 3]]}),
  1113. ('BesselI1e', {
  1114. 'block': P.BesselI1e(),
  1115. 'desc_inputs': [[2, 3]],
  1116. 'desc_bprop': [[2, 3]]}),
  1117. ('Atan', {
  1118. 'block': P.Atan(),
  1119. 'desc_inputs': [[2, 3]],
  1120. 'desc_bprop': [[2, 3]]}),
  1121. ('AtanGrad', {
  1122. 'block': G.AtanGrad(),
  1123. 'desc_inputs': [[2, 3], [2, 3]],
  1124. 'skip': ['backward']}),
  1125. ('Atanh', {
  1126. 'block': P.Atanh(),
  1127. 'desc_inputs': [[2, 3]],
  1128. 'desc_bprop': [[2, 3]]}),
  1129. ('Cosh', {
  1130. 'block': P.Cosh(),
  1131. 'desc_inputs': [[3, 4, 5]],
  1132. 'desc_bprop': [[3, 4, 5]]}),
  1133. ('Sinh', {
  1134. 'block': P.Sinh(),
  1135. 'desc_inputs': [[3, 4, 5]],
  1136. 'desc_bprop': [[3, 4, 5]]}),
  1137. ('Inv', {
  1138. 'block': P.Inv(),
  1139. 'desc_inputs': [[21, 9, 12, 5]],
  1140. 'desc_bprop': [[21, 9, 12, 5]]}),
  1141. ('Invert', {
  1142. 'block': P.Invert(),
  1143. 'desc_inputs': [Tensor(np.array([[24, 4, 13, 9], [1, 5, 10, 8]]).astype(np.int16))],
  1144. 'desc_bprop': [],
  1145. 'skip': ['backward']}),
  1146. ('HistogramFixedWidth', {
  1147. 'block': P.HistogramFixedWidth(5),
  1148. 'desc_inputs': [Tensor([-1.0, 0.0, 1.5, 2.0, 5.0, 15], mstype.float16), Tensor([0.0, 5.0], mstype.float16)],
  1149. 'desc_bprop': [],
  1150. 'skip': ['backward']}),
  1151. ('Mod', {
  1152. 'block': P.Mod(),
  1153. 'desc_inputs': [[3, 4, 5], [2, 3, 4, 5]],
  1154. 'desc_bprop': [[2, 3, 4, 5]]}),
  1155. ('IFMR', {
  1156. 'block': P.IFMR(min_percentile=0.2, max_percentile=0.9, search_range=(1.0, 2.0),
  1157. search_step=1.0, with_offset=False),
  1158. 'desc_inputs': [[3, 4, 5], Tensor([0.1], mstype.float32), Tensor([0.9], mstype.float32),
  1159. Tensor(np.random.rand(4).astype(np.int32))],
  1160. 'desc_bprop': [],
  1161. 'skip': ['backward']}),
  1162. ]
  1163. test_case_nn_ops = [
  1164. ('BiasAdd', {
  1165. 'block': P.BiasAdd(),
  1166. 'desc_inputs': [[1, 3, 3, 3], [3]],
  1167. 'desc_bprop': [[1, 3, 3, 3]]}),
  1168. ('BiasAddGrad', {
  1169. 'block': G.BiasAddGrad(),
  1170. 'desc_inputs': [[1, 3, 3, 3]],
  1171. 'skip': ['backward']}),
  1172. ('Gelu', {
  1173. 'block': P.Gelu(),
  1174. 'desc_inputs': [[1, 3, 4, 4]],
  1175. 'desc_bprop': [[1, 3, 4, 4]]}),
  1176. ('GeluGrad', {
  1177. 'block': G.GeluGrad(),
  1178. 'desc_inputs': [[2, 2], [2, 2], [2, 2]],
  1179. 'desc_bprop': [[2, 2]],
  1180. 'skip': ['backward']}),
  1181. ('Tanh', {
  1182. 'block': P.Tanh(),
  1183. 'desc_inputs': [[1, 3, 4, 4]],
  1184. 'desc_bprop': [[1, 3, 4, 4]]}),
  1185. ('TanhGrad', {
  1186. 'block': G.TanhGrad(),
  1187. 'desc_inputs': [[1, 3, 4, 4], [1, 3, 4, 4]],
  1188. 'desc_bprop': [[1, 3, 4, 4]],
  1189. 'skip': ['backward']}),
  1190. ('ReLU', {
  1191. 'block': P.ReLU(),
  1192. 'desc_inputs': [[1, 3, 4, 4]],
  1193. 'desc_bprop': [[1, 3, 4, 4]]}),
  1194. ('ReLU6', {
  1195. 'block': P.ReLU6(),
  1196. 'desc_inputs': [[1, 3, 4, 4]],
  1197. 'desc_bprop': [[1, 3, 4, 4]]}),
  1198. ('ReLUV2', {
  1199. 'block': P.ReLUV2(),
  1200. 'desc_inputs': [[1, 3, 4, 4]],
  1201. 'desc_bprop': [[1, 3, 4, 4], ([1, 1, 4, 4, 2], {'dtype': np.uint8})]}),
  1202. ('ReLUGrad', {
  1203. 'block': G.ReluGrad(),
  1204. 'desc_inputs': [[1, 3, 4, 4], [1, 3, 4, 4]],
  1205. 'skip': ['backward']}),
  1206. ('Softplus', {
  1207. 'block': P.Softplus(),
  1208. 'desc_inputs': [[1, 3, 4, 4]],
  1209. 'desc_bprop': [[1, 3, 4, 4]]}),
  1210. ('SoftplusGrad', {
  1211. 'block': G.SoftplusGrad(),
  1212. 'desc_inputs': [[1, 3, 4, 4], [1, 3, 4, 4]],
  1213. 'skip': ['backward']}),
  1214. ('Elu', {
  1215. 'block': P.Elu(),
  1216. 'desc_inputs': [[2, 3, 4]],
  1217. 'desc_bprop': [[2, 3, 4]]}),
  1218. ('EluGrad', {
  1219. 'block': G.EluGrad(),
  1220. 'desc_inputs': [[2, 3, 4], [2, 3, 4]],
  1221. 'desc_bprop': [[2, 3, 4]],
  1222. 'skip': ['backward']}),
  1223. ('Sigmoid', {
  1224. 'block': P.Sigmoid(),
  1225. 'desc_inputs': [[1, 3, 4, 4]],
  1226. 'desc_bprop': [[1, 3, 4, 4]]}),
  1227. ('MaxPool', {
  1228. 'block': P.MaxPool(ksize=(2, 2), strides=(2, 2), padding="VALID"),
  1229. 'desc_inputs': [[100, 3, 28, 28]],
  1230. 'desc_bprop': [[100, 3, 14, 14]]}),
  1231. ('MaxPoolGrad', {
  1232. 'block': G.MaxPoolGrad(ksize=(2, 2), strides=(2, 2), padding="VALID"),
  1233. 'desc_inputs': [[3, 4, 6, 6], [3, 4, 3, 3], [3, 4, 3, 3]],
  1234. 'desc_bprop': [[3, 4, 6, 6]],
  1235. 'skip': ['backward']}),
  1236. ('AvgPool', {
  1237. 'block': P.AvgPool(ksize=(2, 2), strides=(2, 2), padding="VALID"),
  1238. 'desc_inputs': [[100, 3, 28, 28]],
  1239. 'desc_bprop': [[100, 3, 14, 14]]}),
  1240. ('MaxPoolWithArgmax', {
  1241. 'block': P.MaxPoolWithArgmax(ksize=2, strides=2),
  1242. 'desc_inputs': [[128, 32, 32, 64]],
  1243. 'desc_bprop': [[128, 32, 16, 32], ([128, 32, 4, 33], {'dtype': np.uint16})]}),
  1244. ('SoftmaxCrossEntropyWithLogits', {
  1245. 'block': P.SoftmaxCrossEntropyWithLogits(),
  1246. 'desc_inputs': [[1, 10], [1, 10]],
  1247. 'desc_bprop': [[1], [1, 10]],
  1248. 'skip': ['backward_exec']}),
  1249. ('Flatten', {
  1250. 'block': P.Flatten(),
  1251. 'desc_inputs': [[128, 32, 32, 64]],
  1252. 'desc_bprop': [[128, 65536]]}),
  1253. ('LogSoftmax', {
  1254. 'block': P.LogSoftmax(),
  1255. 'desc_inputs': [[64, 2]],
  1256. 'desc_bprop': [[64, 2]]}),
  1257. ('LogSoftmaxGrad', {
  1258. 'block': G.LogSoftmaxGrad(),
  1259. 'desc_inputs': [[16, 1234], [16, 1234]],
  1260. 'desc_bprop': [[64, 2]],
  1261. 'skip': ['backward']}),
  1262. ('L2Normalize', {
  1263. 'block': P.L2Normalize(),
  1264. 'desc_inputs': [[2, 2]],
  1265. 'desc_bprop': [[2, 2]]}),
  1266. ('L2NormalizeGrad', {
  1267. 'block': G.L2NormalizeGrad(),
  1268. 'desc_inputs': [[2, 2], [2, 2], [2, 2]],
  1269. 'desc_bprop': [[2, 2]],
  1270. 'skip': ['backward']}),
  1271. ('LayerNorm', {
  1272. 'block': P.LayerNorm(),
  1273. 'desc_inputs': [[2, 16], [16], [16]],
  1274. 'desc_bprop': [[2, 16], [2, 1], [2, 1]]}),
  1275. ('LayerNormGrad', {
  1276. 'block': G.LayerNormGrad(),
  1277. 'desc_inputs': [[2, 16], [2, 16], [2, 16], [2, 16], [16]],
  1278. 'desc_bprop': [[2, 16], [16], [16]],
  1279. 'skip': ['backward']}),
  1280. ('FusedBatchNormGrad', {
  1281. 'block': G.FusedBatchNormGrad(),
  1282. 'desc_inputs': [[128, 64, 32, 64], [128, 64, 32, 64], [64], [64], [64]],
  1283. 'desc_bprop': [[128, 64, 32, 64], [64], [64], [64], [64]],
  1284. 'skip': ['backward']}),
  1285. ('BatchNorm', {
  1286. 'block': P.BatchNorm(),
  1287. 'desc_inputs': [[128, 64, 32, 32], [64], [64], [64], [64]],
  1288. 'desc_bprop': [[128, 64, 32, 32], [64], [64], [64], [64]],
  1289. 'skip': []}),
  1290. ('BatchNormGrad', {
  1291. 'block': G.BatchNormGrad(),
  1292. 'desc_inputs': [[128, 64, 32, 32], [128, 64, 32, 32], [64], [64], [64]],
  1293. 'desc_bprop': [[128, 64, 32, 32], [64], [64], [64], [64]],
  1294. 'skip': ['backward']}),
  1295. ('TopK', {
  1296. 'block': P.TopK(),
  1297. 'desc_const': [5],
  1298. 'desc_inputs': [[20, 20, 10]],
  1299. 'desc_bprop': [[20, 20, 5]],
  1300. 'skip': ['backward']}),
  1301. ('GatherV2_0', {
  1302. 'block': P.GatherV2(),
  1303. 'desc_const': [0],
  1304. 'desc_inputs': [[3, 1, 2], Tensor(np.array([0, 1]).astype(np.int32))],
  1305. 'desc_bprop': [[2, 1, 2]]}),
  1306. ('GatherV2_1', {
  1307. 'block': P.GatherV2(),
  1308. 'desc_const': [2],
  1309. 'desc_inputs': [[3, 1, 3], Tensor(np.array([0, 1]).astype(np.int32))],
  1310. 'desc_bprop': [[3, 1, 2]]}),
  1311. ('GatherV2_2', {
  1312. 'block': P.GatherV2(),
  1313. 'desc_const': [0],
  1314. 'desc_inputs': [[3, 1, 3], Tensor(np.array([[0, 1], [0, 1], [0, 1]]).astype(np.int32))],
  1315. 'desc_bprop': [[3, 2, 1, 3]]}),
  1316. ('GatherV2_3', {
  1317. 'block': P.GatherV2(),
  1318. 'desc_const': [2],
  1319. 'desc_inputs': [[3, 1, 3], Tensor(np.array([[0, 1], [0, 1], [0, 1]]).astype(np.int32))],
  1320. 'desc_bprop': [[3, 1, 3, 2]]}),
  1321. ('GatherV2_4', {
  1322. 'block': P.GatherV2(),
  1323. 'desc_const': [1],
  1324. 'desc_inputs': [[32, 5, 1024], Tensor(np.array([3]).astype(np.int32))],
  1325. 'desc_bprop': [[32, 1, 1024]]}),
  1326. ('GatherV2_5', {
  1327. 'block': P.GatherV2(),
  1328. 'desc_const': [-1],
  1329. 'desc_inputs': [[3, 1, 3], Tensor(np.array([0, 1]).astype(np.int32))],
  1330. 'desc_bprop': [[3, 1, 2]]}),
  1331. ('GatherV2_6', {
  1332. 'block': P.GatherV2(),
  1333. 'desc_const': [0],
  1334. 'desc_inputs': [[1152], Tensor(np.array(10).astype(np.int32))],
  1335. 'desc_bprop': [Tensor(np.array(10).astype(np.float32))]}),
  1336. ('SparseGatherV2_0', {
  1337. 'block': P.SparseGatherV2(),
  1338. 'desc_const': [0],
  1339. 'desc_inputs': [[3, 1, 2], Tensor(np.array([0, 1]).astype(np.int32))],
  1340. 'desc_bprop': [[2, 1, 2]]}),
  1341. ('Range', {
  1342. 'block': inner.Range(1.0, 5.0),
  1343. 'desc_inputs': [Tensor(np.ones([10]).astype(np.float32))],
  1344. 'desc_bprop': [[10]]}),
  1345. ('UnsortedSegmentSum', {
  1346. 'block': P.UnsortedSegmentSum(),
  1347. 'desc_const': [1280],
  1348. 'desc_inputs': [[1280, 1024], Tensor(np.ones(1280).astype(np.int32))],
  1349. 'desc_bprop': [[1280, 1024]]}),
  1350. ('UnsortedSegmentSum_1', {
  1351. 'block': P.UnsortedSegmentSum(),
  1352. 'desc_const': [4],
  1353. 'desc_inputs': [[3, 2, 1, 3], Tensor(np.array([[0, 1], [0, 1], [0, 1]]).astype(np.int32))],
  1354. 'desc_bprop': [[4, 1, 3]]}),
  1355. ('UnsortedSegmentMin', {
  1356. 'block': P.UnsortedSegmentMin(),
  1357. 'desc_const': [4],
  1358. 'desc_inputs': [[3, 2, 1, 3], Tensor(np.array([1, 2, 3]).astype(np.int32))],
  1359. 'desc_bprop': [[4, 2, 1, 3]]}),
  1360. ('UnsortedSegmentProd', {
  1361. 'block': P.UnsortedSegmentProd(),
  1362. 'desc_const': [4],
  1363. 'desc_inputs': [[3, 2, 1, 3], Tensor(np.array([0, 1, 0]).astype(np.int32))],
  1364. 'desc_bprop': [[4, 2, 1, 3]]}),
  1365. ('DropoutGenMask', {
  1366. 'block': P.DropoutGenMask(),
  1367. 'desc_const': [(2, 2), Tensor(0.5, mstype.float32)],
  1368. 'desc_inputs': [],
  1369. 'desc_bprop': [Tensor(np.ones(1).astype(np.int8))],
  1370. 'skip': ['backward']}),
  1371. ('DropoutDoMask', {
  1372. 'block': P.DropoutDoMask(),
  1373. 'desc_const': [Tensor(0.5)],
  1374. 'desc_inputs': [[64, 12, 128, 128], Tensor(np.ones(1572864).astype(np.uint8))],
  1375. 'desc_bprop': [[64, 12, 128, 128]]}),
  1376. ('Dropout', {
  1377. 'block': nn.Dropout(0.5),
  1378. 'desc_inputs': [[64, 12, 128, 128]],
  1379. 'desc_bprop': [[64, 12, 128, 128]]}),
  1380. ('ReduceMean0', {
  1381. 'block': P.ReduceMean(),
  1382. 'desc_const': [(2,)],
  1383. 'desc_inputs': [[3, 2, 2]],
  1384. 'desc_bprop': [[3, 2]]}),
  1385. ('ReduceMean1', {
  1386. 'block': P.ReduceMean(),
  1387. 'desc_const': [2],
  1388. 'desc_inputs': [[3, 2, 2]],
  1389. 'desc_bprop': [[3, 2]]}),
  1390. ('All', {
  1391. 'block': P.ReduceAll(),
  1392. 'desc_const': [(1,)],
  1393. 'desc_inputs': [Tensor(np.ones([3, 2]).astype(np.bool_))],
  1394. 'desc_bprop': [[3]],
  1395. 'skip': ['backward']}),
  1396. ('DescConst', {
  1397. 'block': Tensor(np.array([2], np.float32)),
  1398. 'desc_inputs': [],
  1399. 'desc_bprop': [[1]],
  1400. 'skip': ['backward'],
  1401. 'add_fake_input': True}),
  1402. ('Fill', {
  1403. 'block': P.Fill(),
  1404. 'desc_const': [mstype.float32, (2, 3), 1.0],
  1405. 'desc_inputs': [],
  1406. 'desc_bprop': [[2, 3]],
  1407. 'skip': ['backward'],
  1408. 'add_fake_input': True}),
  1409. ('OnesLike', {
  1410. 'block': P.OnesLike(),
  1411. 'desc_inputs': [Tensor(np.array([[0, 1], [2, 1]]).astype(np.int32))],
  1412. 'desc_bprop': [Tensor(np.array([[1, 1], [1, 1]]).astype(np.int32))]
  1413. }),
  1414. ('ZerosLike', {
  1415. 'block': P.ZerosLike(),
  1416. 'desc_inputs': [Tensor(np.array([[0, 1], [2, 1]]).astype(np.int32))],
  1417. 'desc_bprop': [Tensor(np.array([[1, 1], [1, 1]]).astype(np.int32))]
  1418. }),
  1419. ('Softmax', {
  1420. 'block': P.Softmax(),
  1421. 'desc_inputs': [[5, 5]],
  1422. 'desc_bprop': [[5, 5]]}),
  1423. ('Softsign', {
  1424. 'block': P.Softsign(),
  1425. 'desc_inputs': [[5, 5]],
  1426. 'desc_bprop': [[5, 5]]}),
  1427. ('DepthwiseConv2dNative_1', {
  1428. 'block': P.DepthwiseConv2dNative(3, (3, 3), pad_mode="pad", pad=1, stride=2),
  1429. 'desc_inputs': [[10, 32, 32, 32], [1, 32, 3, 3]],
  1430. 'desc_bprop': [[10, 32, 16, 16]]}),
  1431. ('DepthwiseConv2dNative_2', {
  1432. 'block': P.DepthwiseConv2dNative(1, (3, 3), pad_mode="same", pad=0, stride=1),
  1433. 'desc_inputs': [[2592, 2048, 4, 4], [1, 2048, 3, 3]],
  1434. 'desc_bprop': [[2592, 2048, 4, 4]]}),
  1435. ('SigmoidCrossEntropyWithLogits', {
  1436. 'block': P.SigmoidCrossEntropyWithLogits(),
  1437. 'desc_inputs': [[128, 10], [128, 10]],
  1438. 'desc_bprop': [[128, 10]]}),
  1439. ('Pad', {
  1440. 'block': P.Pad(((1, 2), (2, 3))),
  1441. 'desc_inputs': [[7, 7]],
  1442. 'desc_bprop': [[10, 12]]}),
  1443. ('BinaryCrossEntropy', {
  1444. 'block': P.BinaryCrossEntropy(),
  1445. 'desc_inputs': [[1, 2, 3], [1, 2, 3], [1, 2, 3]],
  1446. 'desc_bprop': []}),
  1447. ('SparseApplyAdagrad', {
  1448. 'block': SparseApplyAdagradNet(),
  1449. 'desc_inputs': [[3, 3], Tensor(np.ones((3,), np.int32))],
  1450. 'desc_bprop': [[3, 3], [3, 3]],
  1451. 'skip': ['backward']}),
  1452. ('SparseApplyAdagradV2', {
  1453. 'block': SparseApplyAdagradV2Net(),
  1454. 'desc_inputs': [[3, 3], Tensor(np.ones((3,), np.int32))],
  1455. 'skip': ['backward']}),
  1456. ('SparseApplyFtrl', {
  1457. 'block': SparseApplyFtrlNet(),
  1458. 'desc_inputs': [[3, 3], Tensor(np.ones((3,), np.int32))],
  1459. 'skip': ['backward']}),
  1460. ('SparseApplyFtrlV2', {
  1461. 'block': SparseApplyFtrlV2Net(),
  1462. 'desc_inputs': [[3, 3], Tensor(np.ones((3,), np.int32))],
  1463. 'skip': ['backward']}),
  1464. ('ApplyProximalAdagrad', {
  1465. 'block': ApplyProximalAdagradNet(),
  1466. 'desc_inputs': [[3, 3]],
  1467. 'skip': ['backward']}),
  1468. ('SparseApplyProximalAdagrad', {
  1469. 'block': SparseApplyProximalAdagradNet(),
  1470. 'desc_inputs': [[3, 3], Tensor(np.ones((3,), np.int32))],
  1471. 'skip': ['backward']}),
  1472. ('ApplyAdaMax', {
  1473. 'block': ApplyAdaMaxNet(),
  1474. 'desc_inputs': [[3, 3]],
  1475. 'skip': ['backward']}),
  1476. ('ApplyAdadelta', {
  1477. 'block': ApplyAdadeltaNet(),
  1478. 'desc_inputs': [[3, 3]],
  1479. 'skip': ['backward']}),
  1480. ('ApplyAdagrad', {
  1481. 'block': ApplyAdagradNet(),
  1482. 'desc_inputs': [[3, 3]],
  1483. 'skip': ['backward']}),
  1484. ('ApplyAdagradV2', {
  1485. 'block': ApplyAdagradV2Net(),
  1486. 'desc_inputs': [[3, 3]],
  1487. 'skip': ['backward']}),
  1488. ('ApplyAddSign', {
  1489. 'block': ApplyAddSignNet(),
  1490. 'desc_inputs': [[3, 3]],
  1491. 'skip': ['backward']}),
  1492. ('ApplyPowerSign', {
  1493. 'block': ApplyPowerSignNet(),
  1494. 'desc_inputs': [[3, 3]],
  1495. 'skip': ['backward']}),
  1496. ('ApplyGradientDescent', {
  1497. 'block': ApplyGradientDescentNet(),
  1498. 'desc_inputs': [[3, 3]],
  1499. 'skip': ['backward']}),
  1500. ('ApplyProximalGradientDescent', {
  1501. 'block': ApplyProximalGradientDescentNet(),
  1502. 'desc_inputs': [[3, 3]],
  1503. 'skip': ['backward']}),
  1504. ('Flatten_1', {
  1505. 'block': NetForFlatten(),
  1506. 'desc_inputs': [Tensor(np.ones([2, 3, 4]).astype(np.int32)), Tensor(np.ones([2, 12]).astype(np.int32))],
  1507. 'desc_bprop': [Tensor(np.ones([2, 12]).astype(np.int32))],
  1508. 'skip': ['backward']}),
  1509. ('Flatten_2', {
  1510. 'block': NetForFlatten(),
  1511. 'desc_inputs': [Tensor(np.ones([8]).astype(np.int32)), Tensor(np.ones([8, 3]).astype(np.int32))],
  1512. 'desc_bprop': [Tensor(np.ones([8, 3]).astype(np.int32))],
  1513. 'skip': ['backward']}),
  1514. ('Flatten_3', {
  1515. 'block': NetForFlattenComposed(),
  1516. 'desc_inputs': [Tensor(np.ones([2, 3, 4]).astype(np.int32)), Tensor(np.ones([2, 12]).astype(np.int32))],
  1517. 'desc_bprop': [Tensor(np.ones([2, 12]).astype(np.int32))],
  1518. 'skip': []}),
  1519. ('ArgmaxNet', {
  1520. 'block': ArgmaxNet(),
  1521. 'desc_inputs': [Tensor(np.array([[128, 32, 32, 64], [128, 32, 32, 64]]).astype(np.float16))],
  1522. 'desc_bprop': [Tensor(np.array([[128, 32, 32, 64], [128, 32, 32, 64]]).astype(np.float16))],
  1523. 'skip': ['backward']}),
  1524. ('ArgminNet', {
  1525. 'block': ArgminNet(),
  1526. 'desc_inputs': [Tensor(np.array([[128, 32, 32, 64], [128, 32, 32, 64]]).astype(np.float16))],
  1527. 'desc_bprop': [Tensor(np.array([[128, 32, 32, 64], [128, 32, 32, 64]]).astype(np.float16))],
  1528. 'skip': ['backward']}),
  1529. ('StridedSliceNet', {
  1530. 'block': StridedSliceNet(),
  1531. 'desc_inputs': [[6, 7, 8, 9, 10]],
  1532. 'skip': ['backward']}),
  1533. ('OneHot', {
  1534. 'block': P.OneHot(),
  1535. 'desc_const': [3, Tensor(1.0, mstype.float32), Tensor(0.0, mstype.float32)],
  1536. 'desc_inputs': [Tensor(np.array([64]).astype(np.int32))],
  1537. 'desc_bprop': [[1, 3]]}),
  1538. ('ReduceProd_0', {
  1539. 'block': P.ReduceProd(),
  1540. 'desc_const': [0],
  1541. 'desc_inputs': [[3, 2]],
  1542. 'desc_bprop': [[2]]}),
  1543. ('ReduceProd_1', {
  1544. 'block': P.ReduceProd(keep_dims=True),
  1545. 'desc_const': [0],
  1546. 'desc_inputs': [[3, 2]],
  1547. 'desc_bprop': [[1, 2]]}),
  1548. ('CumProd', {
  1549. 'block': P.CumProd(),
  1550. 'desc_const': [0],
  1551. 'desc_inputs': [[3, 2]],
  1552. 'desc_bprop': [[3, 2]]}),
  1553. ('ApplyFtrl', {
  1554. 'block': ApplyFtrlNet(),
  1555. 'desc_inputs': [[3, 3]],
  1556. 'desc_bprop': [3, 3],
  1557. 'skip': ['backward']}),
  1558. ('ApplyRMSProp', {
  1559. 'block': ApplyRMSNet(),
  1560. 'desc_inputs': [[3, 3]],
  1561. 'desc_bprop': [3, 3],
  1562. 'skip': ['backward']}),
  1563. ('ApplyCenteredRMSProp', {
  1564. 'block': P.ApplyCenteredRMSProp(),
  1565. 'desc_const': [0.9, 0.0, 1e-10, 0.001],
  1566. 'desc_inputs': [Tensor(1., mstype.float32), Tensor(2., mstype.float32), Tensor(1., mstype.float32),
  1567. Tensor(2., mstype.float32), Tensor(1., mstype.float32)],
  1568. 'desc_bprop': [1],
  1569. 'skip': ['backward']}),
  1570. ('CTCLoss', {
  1571. 'block': P.CTCLoss(),
  1572. 'desc_inputs': [Tensor(np.ones([6, 4, 6]).astype(np.float32)),
  1573. Tensor(np.array([[0, 1], [1, 0], [2, 3], [3, 2]]).astype(np.int64)),
  1574. Tensor(np.array([1, 2, 3, 4]).astype(np.int32)),
  1575. Tensor(np.array([6, 6, 6, 6]).astype(np.int32))],
  1576. 'desc_bprop': [[4], [6, 4, 6]]}),
  1577. ('CTCGreedyDecoder', {
  1578. 'block': CTCGreedyDecoderNet(),
  1579. 'desc_inputs': [[2, 2, 3], Tensor(np.array([2, 2]).astype(np.int32))],
  1580. 'skip': ['backward']}),
  1581. ('L2Loss_1', {
  1582. 'block': P.L2Loss(),
  1583. 'desc_inputs': [Tensor(np.array([1, 2, 3, 4]), mstype.float32)],
  1584. 'desc_bprop': []}),
  1585. ('L2Loss_2', {
  1586. 'block': P.L2Loss(),
  1587. 'desc_inputs': [Tensor(np.array([[1, 1], [2, 2], [3, 3], [4, 4]]), mstype.float16)],
  1588. 'desc_bprop': []}),
  1589. ('ResizeBilinear', {
  1590. 'block': P.ResizeBilinear((5, 5)),
  1591. 'desc_inputs': [Tensor([[[[1, 2, 3, 4, 5], [1, 2, 3, 4, 5]]]], mstype.float16)],
  1592. 'desc_bprop': [Tensor([[[[1, 2, 3, 4, 5], [1, 2, 3, 4, 5]]]], mstype.float32)]}),
  1593. ('ResizeBilinearGrad', {
  1594. 'block': G.ResizeBilinearGrad(),
  1595. 'desc_inputs': [Tensor([[[[1, 2, 3, 4, 5]]]], mstype.float32), Tensor([[[[1, 2, 3, 4, 5]]]], mstype.float32)],
  1596. 'desc_bprop': [Tensor([[[[1, 2, 3, 4, 5]]]], mstype.float32)],
  1597. 'skip': ['backward']}),
  1598. ('ROIAlign', {
  1599. 'block': P.ROIAlign(7, 7, 0.03125, 2),
  1600. 'desc_inputs': [[2, 256, 192, 320], [1024, 5]],
  1601. 'desc_bprop': [[1024, 256, 7, 7]]}),
  1602. ('ROIAlignGrad', {
  1603. 'block': G.ROIAlignGrad((1, 1, 1, 1), 2, 2, 0.5, 2),
  1604. 'desc_inputs': [[1, 1, 2, 2], [1, 5]],
  1605. 'desc_bprop': [[1, 1, 2, 2]],
  1606. 'skip': ['backward']}),
  1607. ('LARSUpdate', {
  1608. 'block': P.LARSUpdate(1e-05, 0.001, False),
  1609. 'desc_const': [0.0, 0.001],
  1610. 'desc_inputs': [[3, 3], [3, 3], [3, 3], [3, 3]],
  1611. 'desc_bprop': [3, 3],
  1612. 'skip': ['backward']}),
  1613. ('SGD', {
  1614. 'block': P.SGD(0.0, 0.0, False),
  1615. 'desc_inputs': [[3, 3], [3, 3], Tensor(0.001, mstype.float32), [3, 3], Tensor(0.1, mstype.float32), [3, 3]],
  1616. 'desc_bprop': [3, 3],
  1617. 'skip': ['backward']}),
  1618. ('BinaryCrossEntropy', {
  1619. 'block': P.BinaryCrossEntropy(),
  1620. 'desc_inputs': [Tensor([[0.3, 0.8], [0.4, 0.3]], mstype.float16),
  1621. Tensor([[0.4, 1.2], [-0.4, -0.9]], mstype.float16),
  1622. Tensor([[-1.4, -0.7], [0.9, 0.7]], mstype.float16)],
  1623. 'desc_bprop': []}),
  1624. ('BinaryCrossEntropyGrad', {
  1625. 'block': G.BinaryCrossEntropyGrad(),
  1626. 'desc_inputs': [Tensor([[0.3, 0.8], [0.4, 0.3]], mstype.float16),
  1627. Tensor([[0.4, 1.2], [-0.4, -0.9]], mstype.float16), Tensor(0.85, mstype.float16),
  1628. Tensor([[-1.4, -0.7], [0.9, 0.7]], mstype.float16)],
  1629. 'desc_bprop': [],
  1630. 'skip': ['backward']}),
  1631. ('DataFormatDimMap', {
  1632. 'block': P.DataFormatDimMap(),
  1633. 'desc_inputs': [Tensor([0, 1, 2, 3], mstype.int32)],
  1634. 'desc_bprop': [],
  1635. 'skip': ['backward']}),
  1636. ('MaxPoolGradGrad', {
  1637. 'block': G.MaxPoolGradGrad(),
  1638. 'desc_inputs': [Tensor(np.random.rand(1, 1, 2, 2), mstype.float16),
  1639. Tensor(np.random.rand(1, 1, 2, 2), mstype.float16),
  1640. Tensor(np.random.rand(1, 1, 2, 2), mstype.float16)],
  1641. 'desc_bprop': [],
  1642. 'skip': ['backward']}),
  1643. ('MaxPoolGradGradWithArgmax', {
  1644. 'block': G.MaxPoolGradGradWithArgmax(),
  1645. 'desc_inputs': [Tensor(np.random.rand(1, 1, 2, 2), mstype.float16),
  1646. Tensor(np.random.rand(1, 1, 2, 2), mstype.float16),
  1647. Tensor(np.zeros((1, 1, 2, 2)), mstype.uint16)],
  1648. 'desc_bprop': [],
  1649. 'skip': ['backward']}),
  1650. ]
  1651. test_case_array_ops = [
  1652. ('SpaceToDepth', {
  1653. 'block': P.SpaceToDepth(2),
  1654. 'desc_inputs': [[1, 3, 2, 2]],
  1655. 'desc_bprop': [[1, 12, 1, 1]]}),
  1656. ('DepthToSpace', {
  1657. 'block': P.DepthToSpace(2),
  1658. 'desc_inputs': [[1, 12, 1, 1]],
  1659. 'desc_bprop': [[1, 3, 2, 2]]}),
  1660. ('Split', {
  1661. 'block': P.Split(1, 2),
  1662. 'desc_inputs': [Tensor(np.array([[1, 1, 1, 1], [2, 2, 2, 2]]))],
  1663. 'skip': ['backward']}),
  1664. ('Argmax', {
  1665. 'block': P.Argmax(),
  1666. 'desc_inputs': [[128, 32, 32, 64]],
  1667. 'desc_bprop': [0],
  1668. 'skip': ['backward']}),
  1669. ('Argmin', {
  1670. 'block': P.Argmin(),
  1671. 'desc_inputs': [[128, 32, 32, 64]],
  1672. 'desc_bprop': [1],
  1673. 'skip': ['backward']}),
  1674. ('ArgMaxWithValue', {
  1675. 'block': P.ArgMaxWithValue(),
  1676. 'desc_inputs': [[128, 32, 32, 64]],
  1677. 'desc_bprop': [[1], [1]],
  1678. 'skip': ['backward']}),
  1679. ('ArgMinWithValue', {
  1680. 'block': P.ArgMinWithValue(),
  1681. 'desc_inputs': [[128, 32, 32, 64]],
  1682. 'desc_bprop': [[1], [1]],
  1683. 'skip': ['backward']}),
  1684. ('Transpose_dim3', {
  1685. 'block': P.Transpose(),
  1686. 'desc_const': [(0, 2, 1)],
  1687. 'desc_inputs': [[1, 2, 3]],
  1688. 'desc_bprop': [[1, 3, 2]]}),
  1689. ('Transpose_dim4', {
  1690. 'block': P.Transpose(),
  1691. 'desc_const': [(0, 1, 2, 3)],
  1692. 'desc_inputs': [[1, 2, 3, 4]],
  1693. 'desc_bprop': [[1, 2, 4, 3]]}),
  1694. ('AddN', {
  1695. 'block': NetForTupleInput(P.AddN()),
  1696. 'desc_inputs': [[2, 3, 3, 5], [2, 3, 3, 5]],
  1697. 'desc_bprop': [[2, 3, 3, 5]]}),
  1698. ('AccumulateNV2', {
  1699. 'block': NetForTupleInput(P.AccumulateNV2()),
  1700. 'desc_inputs': [[2, 3, 3, 5], [2, 3, 3, 5]],
  1701. 'desc_bprop': [[2, 3, 3, 5]]}),
  1702. ('Shape', {
  1703. 'block': P.Shape(),
  1704. 'desc_inputs': [[3, 3, 2, 2]],
  1705. 'skip': ['backward']}),
  1706. ('Reshape', {
  1707. 'block': P.Reshape(),
  1708. 'desc_const': [(64,)],
  1709. 'desc_inputs': [[64, 1]],
  1710. 'desc_bprop': [[64]]}),
  1711. ('Cast', {
  1712. 'block': P.Cast(),
  1713. 'desc_const': [mstype.int32],
  1714. 'desc_inputs': [[2, 3, 4, 5]],
  1715. 'desc_bprop': [Tensor(np.ones((2, 3, 4, 5)).astype(np.int32))]}),
  1716. ('ExpandDims', {
  1717. 'block': P.ExpandDims(),
  1718. 'desc_const': [0],
  1719. 'desc_inputs': [[2, 2]],
  1720. 'desc_bprop': [[1, 2, 2]]}),
  1721. ('ExpandDims_1', {
  1722. 'block': P.ExpandDims(),
  1723. 'desc_const': [-1],
  1724. 'desc_inputs': [[2, 2]],
  1725. 'desc_bprop': [[2, 2, 1]]}),
  1726. ('Squeeze', {
  1727. 'block': P.Squeeze(2),
  1728. 'desc_inputs': [[3, 2, 1]],
  1729. 'desc_bprop': [[3, 2]]}),
  1730. ('Squeeze_0', {
  1731. 'block': P.Squeeze(),
  1732. 'desc_inputs': [[3, 1, 2, 1]],
  1733. 'desc_bprop': [[3, 2]]}),
  1734. ('Squeeze_1', {
  1735. 'block': P.Squeeze(),
  1736. 'desc_inputs': [[1, 1, 1, 1]],
  1737. 'desc_bprop': [1.0],
  1738. 'skip': ['backward']}),
  1739. ('Squeeze_2', {
  1740. 'block': P.Squeeze((2, 3)),
  1741. 'desc_inputs': [[3, 2, 1, 1]],
  1742. 'desc_bprop': [[3, 2]]}),
  1743. ('Size', {
  1744. 'block': P.Size(),
  1745. 'desc_inputs': [[2, 3, 5]],
  1746. 'skip': ['backward']}),
  1747. ('Tile_0', {
  1748. 'block': P.Tile(),
  1749. 'desc_const': [(1, 2)],
  1750. 'desc_inputs': [[64, 1]],
  1751. 'desc_bprop': [[64, 2]]}),
  1752. ('Tile_1', {
  1753. 'block': P.Tile(),
  1754. 'desc_const': [(1, 1)],
  1755. 'desc_inputs': [[64, 1]],
  1756. 'desc_bprop': [[64, 1]]}),
  1757. ('Tile_2', {
  1758. 'block': P.Tile(),
  1759. 'desc_const': [(2, 1, 1, 2)],
  1760. 'desc_inputs': [[2, 2, 2]],
  1761. 'desc_bprop': [[2, 2, 2, 4]]}),
  1762. ('ReverseV2', {
  1763. 'block': P.ReverseV2(axis=[1]),
  1764. 'desc_inputs': [(Tensor(np.array([[1, 2, 3, 4], [5, 6, 7, 8]]).astype(np.float32)))],
  1765. 'desc_bprop': [(Tensor(np.array([[1, 2, 3, 4], [5, 6, 7, 8]]).astype(np.float32)))]}),
  1766. ('Rint', {
  1767. 'block': P.Rint(),
  1768. 'desc_inputs': [(Tensor(np.array([-1.6, -0.1, 1.5, 2.0]).astype(np.float32)))],
  1769. 'skip': ['backward']}),
  1770. ('ConcatV2_0', {
  1771. 'block': NetForConcat1(),
  1772. 'desc_inputs': [
  1773. Tensor(np.array([[0, 1], [2, 1]]).astype(np.int32)),
  1774. Tensor(np.array([[0, 1], [2, 1]]).astype(np.int32))],
  1775. 'desc_bprop': [([4, 2], {'dtype': np.int32})]}),
  1776. ('ConcatV2_1', {
  1777. 'block': NetForConcat2(),
  1778. 'desc_inputs': [Tensor(np.array([[[0, 1, 2]], [[2, 1, 2]]]).astype(np.int32)),
  1779. Tensor(np.array([[[0, 1]], [[2, 1]]]).astype(np.int32))],
  1780. 'desc_bprop': [([2, 1, 5], {'dtype': np.int32})]}),
  1781. ('ConcatV2_2', {
  1782. 'block': NetForConcat(),
  1783. 'desc_inputs': [[2, 2]],
  1784. 'desc_bprop': [[4, 2]]}),
  1785. ('ConcatV2_3', {
  1786. 'block': NetForConcat1(),
  1787. 'desc_inputs': [[2, 2], [2, 2]],
  1788. 'desc_bprop': [[4, 2]]}),
  1789. ('ConcatV2_4', {
  1790. 'block': NetForConcat3(),
  1791. 'desc_inputs': [
  1792. Tensor(np.ones((3, 2, 3), np.float32)),
  1793. Tensor(np.ones((5, 2, 3), np.float32)),
  1794. Tensor(np.ones((6, 2, 3), np.float32))],
  1795. 'desc_bprop': [[14, 2, 3]]}),
  1796. ('ConcatV2_5', {
  1797. 'block': NetForConcat4(),
  1798. 'desc_inputs': [Tensor(np.array([1], np.float32)),
  1799. Tensor(np.array([1], np.float32)),
  1800. Tensor(np.array([1], np.float32))],
  1801. 'desc_bprop': [[3, ]]}),
  1802. ('Pack_0', {
  1803. 'block': NetForPackInput(P.Pack()),
  1804. 'desc_inputs': [[2, 2], [2, 2], [2, 2]],
  1805. 'desc_bprop': [[3, 2, 2]],
  1806. }),
  1807. ('Pack_1', {
  1808. 'block': NetForPackInput(P.Pack(axis=-2)),
  1809. 'desc_inputs': [[3, 2, 3], [3, 2, 3], [3, 2, 3]],
  1810. 'desc_bprop': [[3, 2, 3, 3]],
  1811. }),
  1812. ('Pack_2', {
  1813. 'block': NetForPackInput(P.Pack()),
  1814. 'desc_inputs': [[128, 128], [128, 128]],
  1815. 'desc_bprop': [[2, 128, 128]],
  1816. }),
  1817. ('Pack_3', {
  1818. 'block': NetForPackInput(P.Pack()),
  1819. 'desc_inputs': [[2, 2]],
  1820. 'desc_bprop': [[1, 2, 2]]}),
  1821. ('Unpack_0', {
  1822. 'block': NetForUnpackInput(P.Unpack(axis=0)),
  1823. 'desc_inputs': [[2, 4]],
  1824. 'desc_bprop': [[4], [4]],
  1825. }),
  1826. ('Unpack_1', {
  1827. 'block': NetForUnpackInput(P.Unpack(axis=-1)),
  1828. 'desc_inputs': [Tensor(np.array([[1, 1, 1]], np.float32))],
  1829. 'desc_bprop': [[1], [1], [1]],
  1830. }),
  1831. ('Diag_1', {
  1832. 'block': P.Diag(),
  1833. 'desc_inputs': [[4]],
  1834. 'desc_bprop': [[4, 4]],
  1835. }),
  1836. ('Diag_2', {
  1837. 'block': P.Diag(),
  1838. 'desc_inputs': [[4, 4]],
  1839. 'desc_bprop': [[4, 4, 4, 4]],
  1840. }),
  1841. ('DiagPart_1', {
  1842. 'block': P.DiagPart(),
  1843. 'desc_inputs': [[4, 4]],
  1844. 'desc_bprop': [[4]],
  1845. }),
  1846. ('DiagPart_2', {
  1847. 'block': P.DiagPart(),
  1848. 'desc_inputs': [[4, 4, 4, 4]],
  1849. 'desc_bprop': [[4, 4]],
  1850. }),
  1851. ('SpaceToBatch_1', {
  1852. 'block': P.SpaceToBatch(2, [[0, 0], [0, 0]]),
  1853. 'desc_inputs': [[1, 3, 2, 2]],
  1854. 'desc_bprop': [[4, 3, 1, 1]],
  1855. }),
  1856. ('SpaceToBatch_2', {
  1857. 'block': P.SpaceToBatch(2, [[1, 1], [0, 4]]),
  1858. 'desc_inputs': [[1, 3, 2, 2]],
  1859. 'desc_bprop': [[4, 3, 2, 3]],
  1860. }),
  1861. ('BatchToSpace_1', {
  1862. 'block': P.BatchToSpace(2, [[0, 0], [0, 0]]),
  1863. 'desc_inputs': [[4, 3, 1, 1]],
  1864. 'desc_bprop': [[1, 3, 2, 2]],
  1865. }),
  1866. ('BatchToSpace_2', {
  1867. 'block': P.BatchToSpace(2, [[0, 0], [0, 1]]),
  1868. 'desc_inputs': [[4, 3, 1, 1]],
  1869. 'desc_bprop': [[1, 3, 2, 1]],
  1870. }),
  1871. ('UnsortedSegmentMin_1', {
  1872. 'block': P.UnsortedSegmentMin(),
  1873. 'desc_const': [2],
  1874. 'desc_inputs': [Tensor(np.array([[1, 2, 3], [4, 5, 6], [4, 2, 1]]).astype(np.float32)),
  1875. Tensor(np.array([0, 1, 1]).astype(np.int32))],
  1876. 'desc_bprop': [Tensor(np.array([[1, 2, 3], [4, 2, 1]]).astype(np.float32))]}),
  1877. ('BroadcastTo', {
  1878. 'block': P.BroadcastTo((2, 3)),
  1879. 'desc_inputs': [Tensor(np.array([1, 2, 3]).astype(np.float32))],
  1880. 'desc_bprop': [Tensor(np.array([[1, 2, 3], [1, 2, 3]]).astype(np.float32))]}),
  1881. ('InTopK', {
  1882. 'block': P.InTopK(2),
  1883. 'desc_inputs': [Tensor(np.array([[1, 2, 3], [2, 3, 6], [4, 2, 1]]).astype(np.float32)),
  1884. Tensor(np.array([2, 1, 2]).astype(np.int32))],
  1885. 'skip': ['backward'],
  1886. }),
  1887. ('InplaceUpdate', {
  1888. 'block': P.InplaceUpdate((0, 2)),
  1889. 'desc_inputs': [Tensor(np.arange(24).reshape(3, 4, 2).astype(np.float32)),
  1890. Tensor(np.arange(16).reshape(2, 4, 2).astype(np.float32))],
  1891. 'skip': ['backward'],
  1892. }),
  1893. ('ReverseSequence', {
  1894. 'block': P.ReverseSequence(1, 0),
  1895. 'desc_inputs': [Tensor(np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]]).astype(np.float32)),
  1896. Tensor(np.array([1, 2, 3]).astype(np.int32))],
  1897. 'desc_bprop': [[3, 3]]}),
  1898. ('EditDistance', {
  1899. 'block': EditDistance(Tensor(np.array([1, 1, 2]).astype(np.int64)),
  1900. Tensor(np.array([2, 2, 2]).astype(np.int64))),
  1901. 'desc_inputs': [Tensor(np.array([[0, 0, 0], [1, 0, 1], [1, 1, 1]]).astype(np.int64)),
  1902. Tensor(np.array([1, 2, 3]).astype(np.float32)),
  1903. Tensor(np.array([[0, 1, 0], [0, 0, 1], [1, 1, 0], [1, 0, 1]]).astype(np.int64)),
  1904. Tensor(np.array([1, 3, 2, 1]).astype(np.float32))],
  1905. 'skip': ['backward'],
  1906. }),
  1907. ('LinSpace', {
  1908. 'block': inner.LinSpace(),
  1909. 'desc_inputs': [Tensor([5, 5.5], mstype.float32),
  1910. Tensor(1, mstype.float32),
  1911. Tensor(10, mstype.float32),
  1912. Tensor(5, mstype.int32)],
  1913. 'skip': ['backward'],
  1914. }),
  1915. ('MatrixDiag', {
  1916. 'block': inner.MatrixDiag(),
  1917. 'desc_inputs': [Tensor(np.array([1, -1]), mstype.float32),
  1918. Tensor(np.arange(-12, 0).reshape(3, 2, 2), mstype.float32)],
  1919. 'skip': ['backward'],
  1920. }),
  1921. ('MatrixDiagPart', {
  1922. 'block': inner.MatrixDiagPart(),
  1923. 'desc_inputs': [Tensor(np.arange(12).reshape(3, 2, 2), mstype.float32),
  1924. Tensor(np.arange(-12, 0).reshape(3, 2, 2), mstype.float32)],
  1925. 'skip': ['backward'],
  1926. }),
  1927. ('MatrixSetDiag', {
  1928. 'block': inner.MatrixSetDiag(),
  1929. 'desc_inputs': [Tensor(np.arange(12).reshape(3, 2, 2), mstype.float32),
  1930. Tensor(np.arange(6).reshape(3, 2), mstype.float32),
  1931. Tensor(np.arange(-12, 0).reshape(3, 2, 2), mstype.float32)],
  1932. 'skip': ['backward'],
  1933. }),
  1934. ('TransShape', {
  1935. 'block': P.TransShape(),
  1936. 'desc_const': [(1, 12, 24, 24)],
  1937. 'desc_inputs': [[1, 3, 24, 24]],
  1938. 'desc_bprop': [[1, 12, 24, 24]],
  1939. }),
  1940. ('ParallelConcat', {
  1941. 'block': ParallelConcatNet(),
  1942. 'desc_inputs': [Tensor([[1, 2]], mstype.float32),
  1943. Tensor([[5, 6]], mstype.float32)],
  1944. 'skip': ['backward'],
  1945. }),
  1946. ]
  1947. test_case_other_ops = [
  1948. ('ScalarLog', {
  1949. 'block': F.scalar_log,
  1950. 'desc_const': [0.0],
  1951. 'desc_inputs': [],
  1952. 'desc_bprop': [1],
  1953. 'skip': ['backward']}),
  1954. ('BoundingBoxEncode', {
  1955. 'block': P.BoundingBoxEncode(means=(0.0, 0.0, 0.0, 0.0), stds=(1.0, 1.0, 1.0, 1.0)),
  1956. 'desc_inputs': [[256, 4], [256, 4]],
  1957. 'desc_bprop': [[256, 4]],
  1958. 'skip': ['backward']}),
  1959. ('BoundingBoxDecode', {
  1960. 'block': P.BoundingBoxDecode(means=(0.0, 0.0, 0.0, 0.0), stds=(1.0, 1.0, 1.0, 1.0), max_shape=(768, 1280)),
  1961. 'desc_inputs': [[256, 4], [256, 4]],
  1962. 'desc_bprop': [[256, 4]],
  1963. 'skip': ['backward']}),
  1964. ('GatherNd', {
  1965. 'block': P.GatherNd(),
  1966. 'desc_inputs': (Tensor(np.ones((1, 3, 6, 6), np.float32)),
  1967. Tensor(np.ones((2, 4), np.int32))),
  1968. 'desc_bprop': [[2]]}),
  1969. ('ScatterNd', {
  1970. 'block': P.ScatterNd(),
  1971. 'desc_const': [(3, 3)],
  1972. 'desc_inputs': (Tensor(np.ones((2, 2), np.int32)),
  1973. Tensor(np.ones((2,), np.int32))),
  1974. 'desc_bprop': [([3, 3], {'dtype': np.int32})]}),
  1975. ('TensorScatterUpdate', {
  1976. 'block': P.TensorScatterUpdate(),
  1977. 'desc_inputs': (Tensor(np.arange(3 * 4 * 5).reshape((3, 4, 5)), mstype.float32),
  1978. Tensor(np.array([[0, 1], [1, 2]], np.int32)),
  1979. Tensor(np.ones([2, 5], np.float32) * 99)),
  1980. 'desc_bprop': [([3, 4, 5], {'dtype': np.float32})]}),
  1981. ('ScatterMaxUseLocking', {
  1982. 'block': ScatterMax(use_locking=True),
  1983. 'desc_inputs': (Tensor(np.array([1, 0], np.int32)),
  1984. Tensor(np.array([[5.0, 5.0, 5.0], [4.0, 4.0, 4.0]], np.float32))),
  1985. 'skip': ['backward']}),
  1986. ('ScatterMax1d', {
  1987. 'block': ScatterMax(),
  1988. 'desc_inputs': (Tensor(np.array([1, 0], np.int32)),
  1989. Tensor(np.array([[5.0, 5.0, 5.0], [4.0, 4.0, 4.0]], np.float32))),
  1990. 'skip': ['backward']}),
  1991. ('ScatterMaxF32', {
  1992. 'block': ScatterMax(),
  1993. 'desc_inputs': (Tensor(np.array([[0, 0], [1, 1]], np.int32)),
  1994. Tensor(np.ones([2, 2, 3], np.float32) * 99)),
  1995. 'skip': ['backward']}),
  1996. ('ScatterMaxF16', {
  1997. 'block': ScatterMax(np.float16),
  1998. 'desc_inputs': (Tensor(np.array([[0, 0], [1, 1]], np.int32)),
  1999. Tensor(np.ones([2, 2, 3], np.float16) * 99)),
  2000. 'skip': ['backward']}),
  2001. ('ScatterMaxI32', {
  2002. 'block': ScatterMax(np.int32),
  2003. 'desc_inputs': (Tensor(np.array([[0, 0], [1, 1]], np.int32)),
  2004. Tensor(np.ones([2, 2, 3], np.int32) * 99)),
  2005. 'skip': ['backward']}),
  2006. ('ScatterMinUseLocking', {
  2007. 'block': ScatterMin(use_locking=True),
  2008. 'desc_inputs': (Tensor(np.array([1, 0], np.int32)),
  2009. Tensor(np.ones([2, 3], np.float32))),
  2010. 'skip': ['backward']}),
  2011. ('ScatterMin1d', {
  2012. 'block': ScatterMin(),
  2013. 'desc_inputs': (Tensor(np.array([1, 0], np.int32)),
  2014. Tensor(np.ones([2, 3], np.float32))),
  2015. 'skip': ['backward']}),
  2016. ('ScatterMinF32', {
  2017. 'block': ScatterMin(),
  2018. 'desc_inputs': (Tensor(np.array([[0, 0], [1, 1]], np.int32)),
  2019. Tensor(np.ones([2, 2, 3], np.float32))),
  2020. 'skip': ['backward']}),
  2021. ('ScatterMinF16', {
  2022. 'block': ScatterMin(np.float16),
  2023. 'desc_inputs': (Tensor(np.array([[0, 0], [1, 1]], np.int32)),
  2024. Tensor(np.ones([2, 2, 3], np.float16))),
  2025. 'skip': ['backward']}),
  2026. ('ScatterMinI32', {
  2027. 'block': ScatterMin(np.int32),
  2028. 'desc_inputs': (Tensor(np.array([[0, 0], [1, 1]], np.int32)),
  2029. Tensor(np.ones([2, 2, 3], np.int32))),
  2030. 'skip': ['backward']}),
  2031. ('ScatterUpdate', {
  2032. 'block': ScatterUpdate((6,)),
  2033. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2034. Tensor(np.array([2.0, 3.0, 4.0], np.float32))),
  2035. 'skip': ['backward']}),
  2036. ('ScatterAddUseLocking', {
  2037. 'block': ScatterAdd((6,), use_locking=True),
  2038. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2039. Tensor(np.array([2.0, 3.0, 4.0], np.float32))),
  2040. 'skip': ['backward']}),
  2041. ('ScatterNonAliasingAdd_1d', {
  2042. 'block': ScatterNonAliasingAdd((8,)),
  2043. 'desc_inputs': (Tensor(np.array([[2], [3], [4], [5]], np.int32)),
  2044. Tensor(np.array([2.0, 3.0, 4.0, 8.0], np.float32))),
  2045. 'skip': ['backward']}),
  2046. ('ScatterNdAdd', {
  2047. 'block': ScatterNdAdd((8,)),
  2048. 'desc_inputs': (Tensor(np.array([[2], [3], [4], [5]], np.int32)),
  2049. Tensor(np.array([2.0, 3.0, 4.0, 8.0], np.float32))),
  2050. 'skip': ['backward']}),
  2051. ('ScatterNdSub', {
  2052. 'block': ScatterNdAdd((8,)),
  2053. 'desc_inputs': (Tensor(np.array([[2], [3], [4], [5]], np.int32)),
  2054. Tensor(np.array([2.0, 3.0, 4.0, 8.0], np.float32))),
  2055. 'skip': ['backward']}),
  2056. ('ScatterAdd', {
  2057. 'block': ScatterAdd((6,)),
  2058. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2059. Tensor(np.array([2.0, 3.0, 4.0], np.float32))),
  2060. 'skip': ['backward']}),
  2061. ('ScatterAddScalar', {
  2062. 'block': ScatterAdd((6,)),
  2063. 'desc_inputs': (Tensor(np.array([2], np.int32)),
  2064. Tensor(np.array([2.0], np.float32))),
  2065. 'skip': ['backward']}),
  2066. ('ScatterAdd2d', {
  2067. 'block': ScatterAdd((3, 4)),
  2068. 'desc_inputs': (Tensor(np.array([[0, 1], [1, 2]], np.int32)),
  2069. Tensor(np.array([[[1, 1, 1, 1], [2, 2, 2, 2]],
  2070. [[3, 3, 3, 3], [4, 4, 4, 4]]], np.float32))),
  2071. 'skip': ['backward']}),
  2072. ('ScatterAddF16', {
  2073. 'block': ScatterAdd((6,), np.float16),
  2074. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2075. Tensor(np.array([2.0, 3.0, 4.0], np.float16))),
  2076. 'skip': ['backward']}),
  2077. ('ScatterAddI8', {
  2078. 'block': ScatterAdd((6,), np.int8),
  2079. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2080. Tensor(np.array([2, 3, 4], np.int8))),
  2081. 'skip': ['backward']}),
  2082. ('ScatterAddI32', {
  2083. 'block': ScatterAdd((6,), np.int32),
  2084. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2085. Tensor(np.array([2, 3, 4], np.int32))),
  2086. 'skip': ['backward']}),
  2087. ('ScatterAddU8', {
  2088. 'block': ScatterAdd((6,), np.uint8),
  2089. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2090. Tensor(np.array([2, 3, 4], np.uint8))),
  2091. 'skip': ['backward']}),
  2092. ('ScatterMulUseLocking', {
  2093. 'block': ScatterMul((6,), use_locking=True),
  2094. 'desc_inputs': (Tensor(np.array([2], np.int32)),
  2095. Tensor(np.array([2.0], np.float32))),
  2096. 'skip': ['backward']}),
  2097. ('ScatterMulScalar', {
  2098. 'block': ScatterMul((6,)),
  2099. 'desc_inputs': (Tensor(np.array([2], np.int32)),
  2100. Tensor(np.array([2.0], np.float32))),
  2101. 'skip': ['backward']}),
  2102. ('ScatterMul2d', {
  2103. 'block': ScatterMul((3, 4)),
  2104. 'desc_inputs': (Tensor(np.array([[0, 1], [1, 2]], np.int32)),
  2105. Tensor(np.array([[[1, 1, 1, 1], [2, 2, 2, 2]],
  2106. [[3, 3, 3, 3], [4, 4, 4, 4]]], np.float32))),
  2107. 'skip': ['backward']}),
  2108. ('ScatterMulF16', {
  2109. 'block': ScatterMul((6,), np.float16),
  2110. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2111. Tensor(np.array([2.0, 3.0, 4.0], np.float16))),
  2112. 'skip': ['backward']}),
  2113. ('ScatterMulI8', {
  2114. 'block': ScatterMul((6,), np.int8),
  2115. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2116. Tensor(np.array([2, 3, 4], np.int8))),
  2117. 'skip': ['backward']}),
  2118. ('ScatterMulI32', {
  2119. 'block': ScatterMul((6,), np.int32),
  2120. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2121. Tensor(np.array([2, 3, 4], np.int32))),
  2122. 'skip': ['backward']}),
  2123. ('ScatterMulU8', {
  2124. 'block': ScatterMul((6,), np.uint8),
  2125. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2126. Tensor(np.array([2, 3, 4], np.uint8))),
  2127. 'skip': ['backward']}),
  2128. ('ScatterDivUseLocking', {
  2129. 'block': ScatterDiv((6,), use_locking=True),
  2130. 'desc_inputs': (Tensor(np.array([2], np.int32)),
  2131. Tensor(np.array([2.0], np.float32))),
  2132. 'skip': ['backward']}),
  2133. ('ScatterDivScalar', {
  2134. 'block': ScatterDiv((6,)),
  2135. 'desc_inputs': (Tensor(np.array([2], np.int32)),
  2136. Tensor(np.array([2.0], np.float32))),
  2137. 'skip': ['backward']}),
  2138. ('ScatterDiv2d', {
  2139. 'block': ScatterDiv((3, 4)),
  2140. 'desc_inputs': (Tensor(np.array([[0, 1], [1, 2]], np.int32)),
  2141. Tensor(np.array([[[1, 1, 1, 1], [2, 2, 2, 2]],
  2142. [[3, 3, 3, 3], [4, 4, 4, 4]]], np.float32))),
  2143. 'skip': ['backward']}),
  2144. ('ScatterDivF16', {
  2145. 'block': ScatterDiv((6,), np.float16),
  2146. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2147. Tensor(np.array([2.0, 3.0, 4.0], np.float16))),
  2148. 'skip': ['backward']}),
  2149. ('ScatterDivI8', {
  2150. 'block': ScatterDiv((6,), np.int8),
  2151. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2152. Tensor(np.array([2, 3, 4], np.int8))),
  2153. 'skip': ['backward']}),
  2154. ('ScatterDivU8', {
  2155. 'block': ScatterDiv((6,), np.uint8),
  2156. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2157. Tensor(np.array([2, 3, 4], np.uint8))),
  2158. 'skip': ['backward']}),
  2159. ('ScatterSubUseLocking', {
  2160. 'block': ScatterSub((6,), use_locking=True),
  2161. 'desc_inputs': (Tensor(np.array([2], np.int32)),
  2162. Tensor(np.array([2.0], np.float32))),
  2163. 'skip': ['backward']}),
  2164. ('ScatterSubScalar', {
  2165. 'block': ScatterSub((6,)),
  2166. 'desc_inputs': (Tensor(np.array([2], np.int32)),
  2167. Tensor(np.array([2.0], np.float32))),
  2168. 'skip': ['backward']}),
  2169. ('ScatterSub2d', {
  2170. 'block': ScatterSub((3, 4)),
  2171. 'desc_inputs': (Tensor(np.array([[0, 1], [1, 2]], np.int32)),
  2172. Tensor(np.array([[[1, 1, 1, 1], [2, 2, 2, 2]],
  2173. [[3, 3, 3, 3], [4, 4, 4, 4]]], np.float32))),
  2174. 'skip': ['backward']}),
  2175. ('ScatterSubF16', {
  2176. 'block': ScatterSub((6,), np.float16),
  2177. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2178. Tensor(np.array([2.0, 3.0, 4.0], np.float16))),
  2179. 'skip': ['backward']}),
  2180. ('ScatterSubI32', {
  2181. 'block': ScatterSub((6,), np.int32),
  2182. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2183. Tensor(np.array([2, 3, 4], np.int32))),
  2184. 'skip': ['backward']}),
  2185. ('ScatterSubI8', {
  2186. 'block': ScatterSub((6,), np.int8),
  2187. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2188. Tensor(np.array([2, 3, 4], np.int8))),
  2189. 'skip': ['backward']}),
  2190. ('ScatterSubU8', {
  2191. 'block': ScatterSub((6,), np.uint8),
  2192. 'desc_inputs': (Tensor(np.array([2, 0, 5], np.int32)),
  2193. Tensor(np.array([1, 1, 0], np.uint8))),
  2194. 'skip': ['backward']}),
  2195. ('SmoothL1Loss', {
  2196. 'block': P.SmoothL1Loss(),
  2197. 'desc_inputs': [[256, 4], [256, 4]],
  2198. 'desc_bprop': [[256, 4]]}),
  2199. ('IOU', {
  2200. 'block': P.IOU(),
  2201. 'desc_inputs': [Tensor(np.ones((256, 4), np.float16)), Tensor(np.ones((128, 4), np.float16))],
  2202. 'desc_bprop': [convert([128, 256], np.float16)]}),
  2203. ('Summary', {
  2204. 'block': SummaryNet(),
  2205. 'desc_inputs': [Tensor(np.array([1.1]).astype(np.float32)),
  2206. Tensor(np.array([1.2]).astype(np.float32))],
  2207. 'skip': ['backward']}),
  2208. ('HistogramSummary', {
  2209. 'block': HistogramSummaryNet(),
  2210. 'desc_inputs': [Tensor(np.array([1.1]).astype(np.float32)),
  2211. Tensor(np.array([1.2]).astype(np.float32))],
  2212. 'skip': ['backward']}),
  2213. ('PopulationCount', {
  2214. 'block': P.PopulationCount(),
  2215. 'desc_inputs': [Tensor(np.array([1, 2, 3]).astype(np.int16))],
  2216. 'skip': ['backward']}),
  2217. ('BasicLSTMCellNet', {
  2218. 'block': BasicLSTMCellNet(),
  2219. 'desc_inputs': [Tensor(np.random.rand(1, 32).astype(np.float16)),
  2220. Tensor(np.random.rand(1, 64).astype(np.float16)),
  2221. Tensor(np.random.rand(1, 64).astype(np.float16)),
  2222. Tensor(np.random.rand(96, 256).astype(np.float16)),
  2223. Tensor(np.random.rand(256, ).astype(np.float16))],
  2224. 'desc_bprop': [Tensor(np.random.rand(1, 64).astype(np.float16)),
  2225. Tensor(np.random.rand(1, 64).astype(np.float16)),
  2226. Tensor(np.random.rand(1, 64).astype(np.float16)),
  2227. Tensor(np.random.rand(1, 64).astype(np.float16)),
  2228. Tensor(np.random.rand(1, 64).astype(np.float16))]}),
  2229. ]
  2230. test_case_quant_ops = [
  2231. ('Quant_1', {
  2232. 'block': inner.Quant(0.5, 0.0, False, "Round"),
  2233. 'desc_inputs': [Tensor(np.random.rand(1, 2, 4, 4), mstype.float32)],
  2234. 'skip': ['backward']}),
  2235. ('Quant_2', {
  2236. 'block': inner.Quant(80.0, 10.0, True, "Round"),
  2237. 'desc_inputs': [Tensor([100.0, 200.0], mstype.float32)],
  2238. 'skip': ['backward']}),
  2239. ('Quant_3', {
  2240. 'block': inner.Quant(80.0, 0.0, False, "Floor"),
  2241. 'desc_inputs': [Tensor([100.0, 200.0], mstype.float32)],
  2242. 'skip': ['backward']}),
  2243. ('Quant_4', {
  2244. 'block': inner.Quant(80.0, 0.0, False, "Ceil"),
  2245. 'desc_inputs': [Tensor([100.0, 200.0], mstype.float32)],
  2246. 'skip': ['backward']}),
  2247. ('Quant_5', {
  2248. 'block': inner.Quant(80.0, 0.0, False, "Trunc"),
  2249. 'desc_inputs': [Tensor([100.0, 200.0], mstype.float32)],
  2250. 'skip': ['backward']}),
  2251. ('Quant_6', {
  2252. 'block': inner.Quant(-80.0, 10.0, False, "Round"),
  2253. 'desc_inputs': [Tensor([100.0, 200.0], mstype.float32)],
  2254. 'skip': ['backward']}),
  2255. ('Quant_7', {
  2256. 'block': inner.Quant(80.0, -10.0, False, "Round"),
  2257. 'desc_inputs': [Tensor([100.0, 200.0], mstype.float32)],
  2258. 'skip': ['backward']}),
  2259. ('Quant_8', {
  2260. 'block': inner.Quant(80.0, 10.0, False, "Round"),
  2261. 'desc_inputs': [Tensor([100.0, 200.0], mstype.float16)],
  2262. 'skip': ['backward']}),
  2263. ]
  2264. test_case_lists = [test_case_nn_ops, test_case_math_ops, test_case_array_ops, test_case_other_ops, test_case_quant_ops]
  2265. test_case = functools.reduce(lambda x, y: x + y, test_case_lists)
  2266. # use -k to select certain testcast
  2267. # pytest tests/python/ops/test_ops.py::test_backward -k LayerNorm
  2268. test_exec_case = test_case
  2269. test_backward_exec_case = filter(lambda x: 'skip' not in x[1] or 'backward' not in x[1]['skip'], test_case)
  2270. @non_graph_engine
  2271. @mindspore_test(pipeline_for_compile_forward_ge_graph_for_case_by_case_config)
  2272. def test_exec():
  2273. context.set_context(mode=context.GRAPH_MODE)
  2274. return test_exec_case
  2275. @mindspore_test(pipeline_for_compile_grad_ge_graph_for_case_by_case_config)
  2276. def test_backward_exec():
  2277. context.set_context(mode=context.GRAPH_MODE)
  2278. return test_backward_exec_case
  2279. raise_set = [
  2280. ('Cast_Error', {
  2281. 'block': (P.Cast(), {'exception': TypeError}),
  2282. 'desc_const': [mstype.int32],
  2283. 'desc_inputs': ['wrong input'],
  2284. 'desc_bprop': [Tensor(np.ones((2, 3, 3, 5)).astype(np.int32))]}),
  2285. ('Maximum_Error', {
  2286. 'block': (P.Maximum(), {'exception': TypeError}),
  2287. 'desc_const': [(1, 2, 3)],
  2288. 'desc_inputs': [[2, 3, 3, 5]],
  2289. 'desc_bprop': [[2, 3, 3, 5]]}),
  2290. ('Shape_error', {
  2291. 'block': (P.Shape(), {'exception': TypeError}),
  2292. 'desc_inputs': [(64, 1)],
  2293. 'desc_bprop': [[64]]}),
  2294. ('Flatten_Error', {
  2295. 'block': (NetForFlatten0D(), {'exception': ValueError}),
  2296. 'desc_inputs': [Tensor(np.array(0).astype(np.int32))],
  2297. 'desc_bprop': [Tensor(np.array(0).astype(np.int32))]}),
  2298. ('ScatterNdUpdate', {
  2299. 'block': (P.ScatterNdUpdate(), {'exception': TypeError}),
  2300. 'desc_inputs': (Tensor(np.ones((2, 3), np.float32)),
  2301. Tensor(np.ones((2, 2), np.float32)),
  2302. Tensor(np.ones((2,), np.float32))),
  2303. 'desc_bprop': [[2, 3]]}),
  2304. ('PReLU', {
  2305. 'block': (P.PReLU(), {'exception': ValueError}),
  2306. 'desc_inputs': [[2], [1]],
  2307. 'desc_bprop': [[1]]}),
  2308. ('SSIM', {
  2309. 'block': (nn.SSIM(), {'exception': ValueError}),
  2310. 'desc_inputs': [Tensor(np.ones((1, 3, 8, 8)), mstype.float32),
  2311. Tensor(np.ones((1, 3, 8, 8)), mstype.float32)]})
  2312. ]
  2313. @mindspore_test(pipeline_for_compile_forward_ge_graph_for_case_by_case_config_exception)
  2314. def test_check_exception():
  2315. return raise_set