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		Accelerator
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		Constant
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		Generator
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		Full Train Step
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		Eval Step
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		Train Step
RandomUniformLike
Description
Generate a tensor with random values drawn from a uniform distribution. The shape of the output tensor is copied from the shape of the input tensor, and the parameters of the uniform distribution are specified byΒ lowΒ andΒ high. The data type is specified by the βdtypeβ argument, or copied from the input tensor if not provided. The βdtypeβ argument must be one of the data types specified in the βDataTypeβ enum field in the TensorProto message and be valid as an output type.

Input parameters
 Β specified_outputs_nameΒ :Β array,Β this parameter lets you manually assign custom names to the output tensors of a node.
Β specified_outputs_nameΒ :Β array,Β this parameter lets you manually assign custom names to the output tensors of a node.
 Β input (heterogeneous) β T1 :Β object,Β input tensor to copy shape and optionally type information from.
Β input (heterogeneous) β T1 :Β object,Β input tensor to copy shape and optionally type information from.
 Β Parameters :Β cluster,
Β Parameters :Β cluster,
 dtype :Β enum, the data type for the elements of the output tensor, if not specified, we will use the data type of the input tensor.
 dtype :Β enum, the data type for the elements of the output tensor, if not specified, we will use the data type of the input tensor.
Default value βUNDEFINEDβ.
 high : float, upper boundary of the output values.
 high : float, upper boundary of the output values.
Default value β1β.
 low : float, lower boundary of the output values.
 low : float, lower boundary of the output values.
Default value β0β.
 seed : float, seed to the random generator, if not specified we will auto generate one.
 seed : float, seed to the random generator, if not specified we will auto generate one.
Default value β0β.
 Β training?Β :Β boolean, whether the layer is in training mode (can store data for backward).
Β training?Β :Β boolean, whether the layer is in training mode (can store data for backward).
Default value βTrueβ.
 Β lda coeff :Β float, defines the coefficient by which the loss derivative will be multiplied before being sent to the previous layer (since during the backward run we go backwards).
Β lda coeff :Β float, defines the coefficient by which the loss derivative will be multiplied before being sent to the previous layer (since during the backward run we go backwards).
Default value β1β.
 Β name (optional) :Β string,Β name of the node.
Β name (optional) :Β string,Β name of the node.
 
			Output parameters
 outputΒ (heterogeneous) –Β T2Β : object, output tensor of random values drawn from uniform distribution.
 outputΒ (heterogeneous) –Β T2Β : object, output tensor of random values drawn from uniform distribution.
Type Constraints
tensor(bool),Β tensor(complex128),Β tensor(complex64),Β tensor(double),Β tensor(float),Β tensor(float16),Β tensor(int16),tensor(int32),Β tensor(int64),Β tensor(int8),Β tensor(string),Β tensor(uint16),Β tensor(uint32),Β tensor(uint64),Β tensor(uint8)) : Constrain to any tensor type. If the dtype attribute is not provided this must be a valid output type.
T2 in (tensor(double),Β tensor(float),Β tensor(float16)) : Constrain output types to float tensors.
