(How) Higher derivative by 'dlgradient' or Higher derivative in matlab

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Hi
I am currently coding custom deep learning, but the process stopped at the higher derivative.
I am curious about how to make a higher derivative through dlgradient.
Alternatively, you are welcome to suggest a way to do higher derivatives in matlab.
For example, how to get ddydxx in the following example.
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Code
clc,clear,close all
x=3;
x0=dlarray(x);
[fval,gradval,ggradval] = dlfeval(@Myfunc,x0);
function [fval,gradval,ggradval] = Myfunc(x)
y = 100*(3*x - 7*x.^2).^2;
dydx=dlgradient(y,x,'RetainData',true);
ddydxx=dlgradient(dydx,x);
end
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Error
Error using dlfeval (line 43)
Value to differentiate must be a traced dlarray scalar.
Error in gradtest (line 7)
[fval,gradval,dd] = dlfeval(@Myfunc,x0,y);
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Thanks for reading my question.
  3 Comments
jaehong kim
jaehong kim on 16 Feb 2021
i am sorry...
I just posted to update the question. Sorry for violating the community rules. I'll be careful.
Walter Roberson
Walter Roberson on 18 Feb 2021
To use automatic differentiation, you must call dlgradient inside a function and evaluate the function using dlfeval. Represent the point where you take a derivative as a dlarray object, which manages the data structures and enables tracing of evaluation

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