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- Recall
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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
Read Weights
Description
Read all model weights (trainable and frozen) from the Training Session. The weights are stored in raw format to interpret them, youβll need to convert them into n-dimensional typed arrays
 
			Input parameters
 Β Training inΒ :Β object,Β training session.
Β Training inΒ :Β object,Β training session.
Output parameters
 Β Training outΒ :Β object,Β training session.
Β Training outΒ :Β object,Β training session.
 Β Weights InfoΒ :Β cluster
Β Weights InfoΒ :Β cluster
 weight_names : array, list of names identifying each weight tensor used for training or marked as frozen. These correspond to a subset of the modelβs initializers, specifically those involved in learning or fixed parameters, not all initializers present in the ONNX graph.
 weight_names : array, list of names identifying each weight tensor used for training or marked as frozen. These correspond to a subset of the modelβs initializers, specifically those involved in learning or fixed parameters, not all initializers present in the ONNX graph. raw_data_out : array, raw byte representation of each weight tensor, flattened into 1D. This field stores the actual binary content of the tensor.
 raw_data_out : array, raw byte representation of each weight tensor, flattened into 1D. This field stores the actual binary content of the tensor. data_shapes : array, shape of each tensor, provided as an array of dimensions. This allows reconstructing the original structure of the tensor from the flattened
 data_shapes : array, shape of each tensor, provided as an array of dimensions. This allows reconstructing the original structure of the tensor from the flattened raw_data_out. data_types : array, ONNX data type (enum) of each tensor, such as
 data_types : array, ONNX data type (enum) of each tensor, such as FLOAT, INT32, FLOAT16, etc. Defines how to interpret the raw bytes. data_ranks : array, rank of each tensor (number of dimensions), for example :
 data_ranks : array, rank of each tensor (number of dimensions), for example :
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- Scalar β 0
- Vector β 1
- Matrix β 2
- Higher-order tensors β 3+
 
 
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