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		UpdatedOctober 30, 2025		
 Get “lda_coeff” by index
Description
Gets the loss derivative attenuation coefficient of layer selected by the index given as input.
 
			Input parameters
![]() Model in : model architecture.
 Model in : model architecture.
![]() index :Β integer,Β layer index.
 index :Β integer,Β layer index.
Output parameters
![]() Model out : model architecture.
 Model out : model architecture.
![]() Β index :Β integer,Β index of layer.
Β index :Β integer,Β index of layer.
![]() Β name :Β string,Β name of layer.
Β name :Β string,Β name of layer.
![]() Β lda_coeff :Β float,Β loss derivative attenuation coefficient value.
Β lda_coeff :Β float,Β loss derivative attenuation coefficient value.
 
			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 lda_coeff by indexβ function
 
			1 – Define Graph
			We define the graph with one input and two Dense layers named Dense1 and Dense2. We set the Dense1 layer with a “lda_coeff” equal to 2 and the Dense2 layer with a “lda_coeff” equal to 5.
2 – Get Function
We use the “Get lda_coeff by index” function to get the value of the parameter of layer at index 2.
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