forked from mindspore-Ecosystem/mindspore
!5735 delete seed0 and seed1
Merge pull request !5735 from caozhou/delete_seed
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commit
dd215f4080
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@ -15,6 +15,7 @@
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"""basic"""
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import numpy as np
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import mindspore.common.dtype as mstype
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from mindspore.common.seed import get_seed
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from mindspore.common.tensor import Tensor
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from mindspore.common.initializer import initializer
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from mindspore._checkparam import check_int_positive, check_bool
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@ -60,8 +61,6 @@ class Dropout(Cell):
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Args:
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keep_prob (float): The keep rate, greater than 0 and less equal than 1. E.g. rate=0.9,
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dropping out 10% of input units. Default: 0.5.
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seed0 (int): The first random seed. Default: 0.
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seed1 (int): The second random seed. Default: 0.
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dtype (:class:`mindspore.dtype`): Data type of input. Default: mindspore.float32.
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Raises:
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@ -83,18 +82,19 @@ class Dropout(Cell):
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[1.0, 1.0, 1.0]]]
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"""
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def __init__(self, keep_prob=0.5, seed0=0, seed1=0, dtype=mstype.float32):
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def __init__(self, keep_prob=0.5, dtype=mstype.float32):
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super(Dropout, self).__init__()
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if keep_prob <= 0 or keep_prob > 1:
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raise ValueError("dropout probability should be a number in range (0, 1], but got {}".format(keep_prob))
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validator.check_subclass("dtype", dtype, mstype.number_type, self.cls_name)
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validator.check_value_type('keep_prob', keep_prob, [float], self.cls_name)
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self.keep_prob = keep_prob
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self.seed0 = seed0
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self.seed1 = seed1
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seed0 = get_seed()
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self.seed0 = seed0 if seed0 is not None else 0
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self.seed1 = 0
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self.dtype = dtype
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self.get_shape = P.Shape()
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self.dropout_gen_mask = P.DropoutGenMask(Seed0=seed0, Seed1=seed1)
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self.dropout_gen_mask = P.DropoutGenMask(Seed0=self.seed0, Seed1=self.seed1)
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self.dropout_do_mask = P.DropoutDoMask()
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self.cast = P.Cast()
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self.is_gpu = context.get_context('device_target') in ["GPU"]
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@ -117,8 +117,7 @@ class Dropout(Cell):
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return self.dropout_do_mask(x, output, keep_prob)
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def extend_repr(self):
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str_info = 'keep_prob={}, Seed0={}, Seed1={}, dtype={}' \
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.format(self.keep_prob, self.seed0, self.seed1, self.dtype)
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str_info = 'keep_prob={}, dtype={}'.format(self.keep_prob, self.dtype)
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return str_info
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@ -26,7 +26,7 @@ context.set_context(device_target="Ascend")
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def test_check_dropout_3():
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Tensor(np.ones([20, 16, 50]).astype(np.int32))
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with pytest.raises(ValueError):
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nn.Dropout(3, 0, 1)
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nn.Dropout(3)
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class Net_dropout(nn.Cell):
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@ -23,24 +23,12 @@ from mindspore import dtype as mstype
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context.set_context(device_target="Ascend")
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def test_check_dropout_1():
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def test_check_dropout():
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x = Tensor(np.ones([20, 16, 50]), mstype.float32)
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m = nn.Dropout(0.8)
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m(x)
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def test_check_dropout_2():
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x = Tensor(np.ones([20, 16, 50]), mstype.float32)
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m = nn.Dropout(0.3, seed0=1)
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m(x)
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def test_check_dropout_3():
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x = Tensor(np.ones([20, 16, 50]), mstype.float32)
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m = nn.Dropout(0.3, seed0=1, seed1=1)
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m(x)
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class Net_Dropout(nn.Cell):
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def __init__(self):
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super(Net_Dropout, self).__init__()
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