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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
		UpdatedDecember 28, 2022		
 Get model name
Description
Gets the name of the model.
 
			Input parameters
![]() Model in : model architecture.
 Model in : model architecture.
Output parameters
![]() Model out : model architecture.
 Model out : model architecture.![]() model_name : string, name of model.
 model_name : string, name of model.
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).
Using the βGet Model Nameβ function
 
			1 – Define Graph
We define the graph with one input and two Dense layers named Dense1 and Dense2.
2 – Set Function
We use the function “Set Model Name” to give the template a name.
3 – Get Function
We use the function “Get Model Name” to get the name of modΓ¨le give avec la fonction set.
Table of Contents
