forked from mindspore-Ecosystem/mindspore
rectification of API comments
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@ -21,13 +21,13 @@ The objective of MDP is to integrate deep learning with Bayesian learning. On th
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**Layer 1-2: Probabilistic inference algorithms**
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- SVI([mindspore.nn.probability.dpn](https://gitee.com/mindspore/mindspore/tree/master/mindspore/nn/probability/dpn)): A unified interface for stochastic variational inference.
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- SVI([mindspore.nn.probability.infer.variational](https://gitee.com/mindspore/mindspore/tree/master/mindspore/nn/probability/infer/variational)): A unified interface for stochastic variational inference.
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- MC: Algorithms for approximating integrals via sampling.
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**Layer 2: Deep Probabilistic Programming (DPP) aims to provide composable BNN modules**
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- Layers([mindspore.nn.probability.bnn_layers](https://gitee.com/mindspore/mindspore/tree/master/mindspore/nn/probability/bnn_layers)): BNN layers, which are used to construct BNN.
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- Bnn: A bunch of BNN models that allow to be integrated into DNN;
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- Dpn([mindspore.nn.probability.dpn](https://gitee.com/mindspore/mindspore/tree/master/mindspore/nn/probability/dpn)): A bunch of BNN models that allow to be integrated into DNN;
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- Transform([mindspore.nn.probability.transforms](https://gitee.com/mindspore/mindspore/tree/master/mindspore/nn/probability/transforms)): Interfaces for the transformation between BNN and DNN;
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- Context: context managers for models and layers.
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@ -14,6 +14,7 @@
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# ============================================================================
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"""Convolutional variational layers."""
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from mindspore.ops import operations as P
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from mindspore.common.tensor import Tensor
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from mindspore._checkparam import twice
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from ...layer.conv import _Conv
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from ...cell import Cell
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@ -79,35 +80,45 @@ class _ConvVariational(_Conv):
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self.weight.requires_grad = False
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if isinstance(weight_prior_fn, Cell):
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if weight_prior_fn.__class__.__name__ != 'NormalPrior':
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raise TypeError('The type of `weight_prior_fn` should be `NormalPrior`')
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self.weight_prior = weight_prior_fn
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else:
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if weight_prior_fn.__name__ != 'NormalPrior':
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raise TypeError('The type of `weight_prior_fn` should be `NormalPrior`')
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self.weight_prior = weight_prior_fn()
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for prior_name, prior_dist in self.weight_prior.name_cells().items():
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if prior_name != 'normal':
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raise TypeError("The type of distribution of `weight_prior_fn` should be `normal`")
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if not (isinstance(getattr(prior_dist, '_mean_value'), Tensor) and
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isinstance(getattr(prior_dist, '_sd_value'), Tensor)):
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raise TypeError("The input form of `weight_prior_fn` is incorrect")
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try:
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self.weight_posterior = weight_posterior_fn(shape=self.shape, name='bnn_weight')
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except TypeError:
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raise TypeError('The type of `weight_posterior_fn` should be `NormalPosterior`')
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raise TypeError('The input form of `weight_posterior_fn` is incorrect')
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for posterior_name, _ in self.weight_posterior.name_cells().items():
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if posterior_name != 'normal':
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raise TypeError("The type of distribution of `weight_posterior_fn` should be `normal`")
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if self.has_bias:
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self.bias.requires_grad = False
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if isinstance(bias_prior_fn, Cell):
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if bias_prior_fn.__class__.__name__ != 'NormalPrior':
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raise TypeError('The type of `bias_prior_fn` should be `NormalPrior`')
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self.bias_prior = bias_prior_fn
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else:
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if bias_prior_fn.__name__ != 'NormalPrior':
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raise TypeError('The type of `bias_prior_fn` should be `NormalPrior`')
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self.bias_prior = bias_prior_fn()
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for prior_name, prior_dist in self.bias_prior.name_cells().items():
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if prior_name != 'normal':
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raise TypeError("The type of distribution of `bias_prior_fn` should be `normal`")
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if not (isinstance(getattr(prior_dist, '_mean_value'), Tensor) and
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isinstance(getattr(prior_dist, '_sd_value'), Tensor)):
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raise TypeError("The input form of `bias_prior_fn` is incorrect")
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try:
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self.bias_posterior = bias_posterior_fn(shape=[self.out_channels], name='bnn_bias')
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except TypeError:
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raise TypeError('The type of `bias_posterior_fn` should be `NormalPosterior`')
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for posterior_name, _ in self.bias_posterior.name_cells().items():
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if posterior_name != 'normal':
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raise TypeError("The type of distribution of `bias_posterior_fn` should be `normal`")
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# mindspore operations
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self.bias_add = P.BiasAdd()
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@ -221,16 +232,16 @@ class ConvReparam(_ConvVariational):
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normal distribution). The current version only supports NormalPrior.
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weight_posterior_fn: posterior distribution for sampling weight.
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It should be a function handle which returns a mindspore
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distribution instance. Default: NormalPosterior. The current
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version only supports NormalPosterior.
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distribution instance. Default: lambda name, shape: NormalPosterior(name=name, shape=shape).
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The current version only supports normal distribution.
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bias_prior_fn: prior distribution for bias vector. It should return
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a mindspore distribution. Default: NormalPrior(which creates an
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instance of standard normal distribution). The current version
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only supports NormalPrior.
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only supports normal distribution.
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bias_posterior_fn: posterior distribution for sampling bias vector.
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It should be a function handle which returns a mindspore
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distribution instance. Default: NormalPosterior. The current
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version only supports NormalPosterior.
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distribution instance. Default: lambda name, shape: NormalPosterior(name=name, shape=shape).
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The current version only supports normal distribution.
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Inputs:
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- **input** (Tensor) - Tensor of shape :math:`(N, C_{in}, H_{in}, W_{in})`.
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@ -238,7 +249,6 @@ class ConvReparam(_ConvVariational):
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Outputs:
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Tensor of shape :math:`(N, C_{out}, H_{out}, W_{out})`.
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Examples:
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Examples:
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>>> net = ConvReparam(120, 240, 4, has_bias=False)
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>>> input = Tensor(np.ones([1, 120, 1024, 640]), mindspore.float32)
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@ -14,6 +14,7 @@
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# ============================================================================
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"""dense_variational"""
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from mindspore.ops import operations as P
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from mindspore.common.tensor import Tensor
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from mindspore._checkparam import check_int_positive, check_bool
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from ...cell import Cell
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from ...layer.activation import get_activation
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@ -43,33 +44,43 @@ class _DenseVariational(Cell):
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self.has_bias = check_bool(has_bias)
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if isinstance(weight_prior_fn, Cell):
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if weight_prior_fn.__class__.__name__ != 'NormalPrior':
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raise TypeError('The type of `weight_prior_fn` should be `NormalPrior`')
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self.weight_prior = weight_prior_fn
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else:
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if weight_prior_fn.__name__ != 'NormalPrior':
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raise TypeError('The type of `weight_prior_fn` should be `NormalPrior`')
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self.weight_prior = weight_prior_fn()
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for prior_name, prior_dist in self.weight_prior.name_cells().items():
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if prior_name != 'normal':
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raise TypeError("The type of distribution of `weight_prior_fn` should be `normal`")
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if not (isinstance(getattr(prior_dist, '_mean_value'), Tensor) and
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isinstance(getattr(prior_dist, '_sd_value'), Tensor)):
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raise TypeError("The input form of `weight_prior_fn` is incorrect")
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try:
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self.weight_posterior = weight_posterior_fn(shape=[self.out_channels, self.in_channels], name='bnn_weight')
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except TypeError:
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raise TypeError('The type of `weight_posterior_fn` should be `NormalPosterior`')
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for posterior_name, _ in self.weight_posterior.name_cells().items():
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if posterior_name != 'normal':
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raise TypeError("The type of distribution of `weight_posterior_fn` should be `normal`")
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if self.has_bias:
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if isinstance(bias_prior_fn, Cell):
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if bias_prior_fn.__class__.__name__ != 'NormalPrior':
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raise TypeError('The type of `bias_prior_fn` should be `NormalPrior`')
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self.bias_prior = bias_prior_fn
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else:
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if bias_prior_fn.__name__ != 'NormalPrior':
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raise TypeError('The type of `bias_prior_fn` should be `NormalPrior`')
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self.bias_prior = bias_prior_fn()
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for prior_name, prior_dist in self.bias_prior.name_cells().items():
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if prior_name != 'normal':
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raise TypeError("The type of distribution of `bias_prior_fn` should be `normal`")
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if not (isinstance(getattr(prior_dist, '_mean_value'), Tensor) and
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isinstance(getattr(prior_dist, '_sd_value'), Tensor)):
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raise TypeError("The input form of `bias_prior_fn` is incorrect")
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try:
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self.bias_posterior = bias_posterior_fn(shape=[self.out_channels], name='bnn_bias')
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except TypeError:
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raise TypeError('The type of `bias_posterior_fn` should be `NormalPosterior`')
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for posterior_name, _ in self.bias_posterior.name_cells().items():
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if posterior_name != 'normal':
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raise TypeError("The type of distribution of `bias_posterior_fn` should be `normal`")
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self.activation = activation
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if not self.activation:
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@ -160,16 +171,16 @@ class DenseReparam(_DenseVariational):
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normal distribution). The current version only supports NormalPrior.
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weight_posterior_fn: posterior distribution for sampling weight.
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It should be a function handle which returns a mindspore
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distribution instance. Default: NormalPosterior. The current
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version only supports NormalPosterior.
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distribution instance. Default: lambda name, shape: NormalPosterior(name=name, shape=shape).
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The current version only supports normal distribution.
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bias_prior_fn: prior distribution for bias vector. It should return
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a mindspore distribution. Default: NormalPrior(which creates an
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instance of standard normal distribution). The current version
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only supports NormalPrior.
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bias_posterior_fn: posterior distribution for sampling bias vector.
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It should be a function handle which returns a mindspore
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distribution instance. Default: NormalPosterior. The current
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version only supports NormalPosterior.
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distribution instance. Default: lambda name, shape: NormalPosterior(name=name, shape=shape).
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The current version only supports normal distribution.
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Inputs:
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- **input** (Tensor) - Tensor of shape :math:`(N, in\_channels)`.
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@ -180,7 +191,8 @@ class DenseReparam(_DenseVariational):
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Examples:
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>>> net = DenseReparam(3, 4)
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>>> input = Tensor(np.random.randint(0, 255, [2, 3]), mindspore.float32)
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>>> net(input)
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>>> net(input).shape
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(2, 4)
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"""
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def __init__(
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@ -31,8 +31,8 @@ class NormalPrior(Cell):
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Args:
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dtype (:class:`mindspore.dtype`): The argument is used to define the data type of the output tensor.
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Default: mindspore.float32.
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mean (int, float): Mean of normal distribution.
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std (int, float): Standard deviation of normal distribution.
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mean (int, float): Mean of normal distribution. Default: 0.
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std (int, float): Standard deviation of normal distribution. Default: 0.1.
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Returns:
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Cell, a normal distribution.
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@ -99,7 +99,7 @@ class ConditionalVAE(Cell):
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Randomly sample from latent space to generate sample.
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Args:
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sample_y (Tensor): Define the label of sample, int tensor, the shape is (generate_nums, ).
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sample_y (Tensor): Define the label of sample. Tensor of shape (generate_nums, ) and type mindspore.int32.
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generate_nums (int): The number of samples to generate.
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shape(tuple): The shape of sample, it should be (generate_nums, C, H, W) or (-1, C, H, W).
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@ -68,6 +68,10 @@ class UncertaintyEvaluation:
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>>> save_model=False)
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>>> epistemic_uncertainty = evaluation.eval_epistemic_uncertainty(eval_data)
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>>> aleatoric_uncertainty = evaluation.eval_aleatoric_uncertainty(eval_data)
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>>> epistemic_uncertainty.shape
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(32, 10)
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>>> aleatoric_uncertainty.shape
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(32,)
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"""
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def __init__(self, model, train_dataset, task_type, num_classes=None, epochs=1,
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@ -31,8 +31,8 @@ class TransformToBNN:
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Args:
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trainable_dnn (Cell): A trainable DNN model (backbone) wrapped by TrainOneStepCell.
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dnn_factor ((int, float): The coefficient of backbone's loss, which is computed by loss function.
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bnn_factor (int, float): The coefficient of kl loss, which is kl divergence of Bayesian layer.
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dnn_factor ((int, float): The coefficient of backbone's loss, which is computed by loss function. Default: 1.
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bnn_factor (int, float): The coefficient of kl loss, which is kl divergence of Bayesian layer. Default: 1.
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Examples:
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>>> class Net(nn.Cell):
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Transform the whole DNN model to BNN model, and wrap BNN model by TrainOneStepCell.
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Args:
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get_dense_args (:class:`function`): The arguments gotten from the DNN full connection layer. Default: lambda dp:
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get_dense_args: The arguments gotten from the DNN full connection layer. Default: lambda dp:
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{"in_channels": dp.in_channels, "out_channels": dp.out_channels, "has_bias": dp.has_bias}.
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get_conv_args (:class:`function`): The arguments gotten from the DNN convolutional layer. Default: lambda dp:
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get_conv_args: The arguments gotten from the DNN convolutional layer. Default: lambda dp:
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{"in_channels": dp.in_channels, "out_channels": dp.out_channels, "pad_mode": dp.pad_mode,
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"kernel_size": dp.kernel_size, "stride": dp.stride, "has_bias": dp.has_bias}.
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add_dense_args (dict): The new arguments added to BNN full connection layer. Note that the arguments in
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`add_dense_args` should not duplicate arguments in `get_dense_args`. Default: {}.
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`add_dense_args` should not duplicate arguments in `get_dense_args`. Default: None.
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add_conv_args (dict): The new arguments added to BNN convolutional layer. Note that the arguments in
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`add_conv_args` should not duplicate arguments in `get_conv_args`. Default: {}.
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`add_conv_args` should not duplicate arguments in `get_conv_args`. Default: None.
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Returns:
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Cell, a trainable BNN model wrapped by TrainOneStepCell.
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@ -142,7 +142,7 @@ class TransformToBNN:
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nn.Dense, nn.Conv2d.
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bnn_layer_type (Cell): The type of BNN layer to be transformed to. The optional values are
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DenseReparam, ConvReparam.
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get_args (:class:`function`): The arguments gotten from the DNN layer. Default: None.
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get_args: The arguments gotten from the DNN layer. Default: None.
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add_args (dict): The new arguments added to BNN layer. Note that the arguments in `add_args` should not
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duplicate arguments in `get_args`. Default: None.
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