How dllarray works in Matlab

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SYED
SYED am 7 Sep. 2024
Beantwortet: Sahas am 9 Sep. 2024
If I have a data with dimension = 1024x1. When I predict the result using a trained network net which takes input 1(C)x1(B)x2048(T) and after that when I check the mse from two different method why do they generate two different answers?
A = dlarray(data,'TCB')
B = predict(net,A);
loss = mse(A,B)
loss = 28.6
loss = mse(squeeze(extractdata(B)),squeeze(extractdata(A)));
loss = 0.026
I need to work on dlarray for autodifferntiation. Please someone guide me
  4 Kommentare
SYED
SYED am 7 Sep. 2024
I uploaded the required file
Matt J
Matt J am 7 Sep. 2024
Bearbeitet: Matt J am 7 Sep. 2024
I can't load the net variable I'm afraid. And the file does not contain a 1024x1 variable. Please attach a file just with the A and B variables mentioned in your original post.

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Sahas
Sahas am 9 Sep. 2024
Hi @SYED,
In the first method mentioned, MATLAB’s “mse” function takes two formatted “dlarray” objects as input and computes the MSE. But in the second method, the “mse” function takes two standard datatypes, which are the underlying datatypes of the “dlarrray” objects and computes the MSE.
The MathWorks documentation for “mse” function states that the first input argument, “prediction”, must be a formatted or unformatted “dlarray” object. When “extractdata” function is used in method 2, the output datatype is the underlying datatype of the input “dlarray” object which results in an incorrect MSE.
Refer to the following MathWorks documentation for more information on input arguments of the “mse” function: https://www.mathworks.com/help/deeplearning/ref/dlarray.mse.html
I suggest using the first method to calculate MSE. Refer to the following code snippet for reference:
clc
A = dlarray(data, 'TCB')
B = predict(net,A)
loss = mse(A,B) %Correct usage
% A2 = squeeze(extractdata(A))
% B2 = squeeze(extractdata(B))
Atemp = extractdata(A)
Btemp = extractdata(B)
losstemp = mse(Btemp, Atemp) %Incorrect usage
% losstemp = mse(B, Atemp) %Correct usage
A2 = squeeze(A)
B2 = squeeze(B)
loss2 = mse(A2, B2) %Alternate correct use
For more information on the usage of “extractdata” function and data formats of “dlarray” objects, refer to the following MathWorks documentation links:
Hope this is beneficial!

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