How to apply a function to each column of a 3D array?

4 vues (au cours des 30 derniers jours)
Massimo
Massimo le 15 Jan 2018
Commenté : Joss Knight le 7 Fév 2018
I have a function that works on a vector (call it "test_f") and gives as output a vector. I want to apply it to each column of a 3D array ( example A= randn(10,10,10)), without using a loop. Is it possible?
  1 commentaire
Massimo
Massimo le 15 Jan 2018
This is how it works with a for loop. I would like to do it without for loop, in order to implement later in a GPU.
A=randn(10,10,10);
for k=1:10
for l=1:10
B(:,k,l)=test_f(A(:,k,l));
end
end

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Réponses (1)

Joss Knight
Joss Knight le 18 Jan 2018
There isn't anything supported for gpuArray that can take any generic user function in this way. If test_f contains operations supported by pagefun then you could break it down into multiple calls to that. Or convert your array to a cell array ( mat2cell(A, 10, ones(10,1), ones(10,1) ) and process it using cellfun.
  4 commentaires
Massimo
Massimo le 1 Fév 2018
So there is no advantage to implement in this case the vectorization in the GPU for a function that works on vectors. In fact using a for loop the calculation is much faster than using mat2cell in the CPU and faster than using mat2cell in the GPU. As an example:
tic
C=randn(100,100,100);
M_OUT=ones(3,100,100);
for x=1:100
for y=1:100
M_OUT(:,x,y)=test_mat(C(:,x,y));
end
end
toc %Elapsed time is 0.059773 second
and
tic
A=randn(100,100,100);
B= mat2cell(A, 100, ones(100,1), ones(100,1)) ;
C=cellfun(@test_mat,B,'UniformOutput',false);
D=[C{:}];
Z=reshape(D, [3,100,100]);
toc % Elapsed time is 0.321378 seconds.
and
tic
A=randn(100,100,100,'gpuArray');
B= mat2cell(A, 100, ones(100,1), ones(100,1)) ;
C=cellfun(@test_mat,B,'UniformOutput',false);
D=[C{:}];
Z=reshape(D, [3,100,100]);
toc %Elapsed time is 1.884156 seconds.
Joss Knight
Joss Knight le 7 Fév 2018
Your expectations for the capabilities of a GPU are misguided in this case. There's almost nothing a GPU can do on 100 values faster than the CPU. You need to give it more data. One way is to vectorize your code, which means working out how to formulate the equations so that all the data is processed at once. I can't help you do that as long as I've no idea what test_mat is doing.

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