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		Accelerator
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		Constant
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		Generator
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		Train Step
Float Initializer
Description
Creates a graph initializer of type float32. The tensor values are defined directly in the parameters and stored as a fixed variable inside the graph.

Input parameters
 Β Parameters : cluster
Β Parameters : cluster
 flattened_float_data : array, stores the explicit list of numeric values for the initializer, in a flattened one-dimensional format.
 flattened_float_data : array, stores the explicit list of numeric values for the initializer, in a flattened one-dimensional format. shape :Β array, defines the true shape of the initializer tensor.
 shape :Β array, defines the true shape of the initializer tensor. Training : cluster, these parameters only have an effect in a training graph.
 Training : cluster, these parameters only have an effect in a training graph.
 type : enum, defines how the initializer behaves when the graph is used in training mode. It determines whether the tensor is treated as a constant, as trainable weights, or as frozen weights.Β During inference, it makes no difference whether the type is
 type : enum, defines how the initializer behaves when the graph is used in training mode. It determines whether the tensor is treated as a constant, as trainable weights, or as frozen weights.Β During inference, it makes no difference whether the type is Constant, Train Weights, or Frozen Weights. Regularizer :Β cluster,Β regularizer function applied to the weights matrix.
 Regularizer :Β cluster,Β regularizer function applied to the weights matrix.
 Β name (optional) :Β string, name of the node.
Β name (optional) :Β string, name of the node.
 
			Output parameters
 Β Graph out : object, ONNX model architecture.
Β Graph out : object, ONNX model architecture.
Example
All these exemples are snippets PNG, you can drop these Snippet onto the block diagram and get the depicted code added to your VI (Do not forget to install Deep Learning library to run it).
