Speeding up matrix operations
3 visualizaciones (últimos 30 días)
Mostrar comentarios más antiguos
bil
el 23 de Mzo. de 2023
Comentada: bil
el 24 de Mzo. de 2023
Hey all,
I would like advice on speeding up the following operation:
Suppose we have a filled NxN matrix A, a filled NxM matrix B with no constraints on the values of each element in matrices A and B. Now we also have an empty NxM matrix C whose elements are defined as follows:
for i = 1:N
for j = 1:M
C(i,j) = trapz(A(i,:).*B(:,j).')
end
end
Clearly for very large N and M, this becomes a very slow process and it seems possible to vectorize or do away with the loop but I am unsure how.
Thanks.
2 comentarios
Cameron
el 23 de Mzo. de 2023
Did you mean
C(i,j) = trapz(A(i,:),B(:,j))
or
C(i,j) = sum(trapz(A(i,:).*B(:,j)))
or something else? Because when I run a sample bit of code like this
x = ([1:10])';
A = x*(1:10); %10 x 10 array
B = x./(1:10); %10 x 10 array
N = 1:size(A,1);
M = 1:size(B,1);
for i = N
for j = M
C(i,j) = trapz(A(i,:).*B(:,j))
end
end
the value for C will be a 1x10 array which cannot fit into your original C(i,j) index.
Respuesta aceptada
Bruno Luong
el 23 de Mzo. de 2023
Instead of calling trapz, use matrix multiplication, and this probably beats anything out there in term of speed and memory
A = rand(4,10);
B = rand(10,5);
N = size(A,1);
M = size(B,2);
C = zeros(N,M);
for i = 1:N
for j = 1:M
C(i,j) = trapz(A(i,:).*B(:,j).');
end
end
C
AA = A; AA(:,[1 end]) = AA(:,[1 end]) / 2;
E = AA*B
Más respuestas (2)
Ashu
el 23 de Mzo. de 2023
Editada: Ashu
el 23 de Mzo. de 2023
Hi Bil,
I understand that you want to speedup you code. You can try the following approaches for the same.
arraySize = 1000;
x = ([1:arraySize])';
A = x*(1:arraySize);
B = x./(1:arraySize);
N = 1:size(A,1);
M = 1:size(B,1);
C = zeros(arraySize);
D = zeros(arraySize);
E = zeros(arraySize);
% parallelized loop
tic
parfor i = N
for j = M
C(i,j) = trapz(A(i,:).*B(:,j).');
end
end
T1 = toc;
% vectorized
tic
for i = N
D(i,:) = trapz((A(i,:).').*B);
end
T2 = toc;
% simple for loops
tic
for i = N
for j = M
E(i,j) = trapz(A(i,:).*B(:,j).');
end
end
T3 = toc;
Here you can compare the Elapsed Time and see that T1<T2<T3.
To vectorise the operation, you need to understand how 'trapz' works.
If Y is a matrix, then 'trapz(Y)' integrates over each column and returns a row vector of integration values.
That is why while vectorizing the inner for loop, you should transpose A(i,:) and not B.
Now to vectorize the outer for loop you can try to understand the order of operations and move ahead.
To know more about 'trapz', you can refer :
To know more about parallel for loops, you can refer:
Hope it helps!
3 comentarios
Bruno Luong
el 23 de Mzo. de 2023
Editada: Bruno Luong
el 23 de Mzo. de 2023
All loops are removed, but the memory requirement might be an issue.
As I don't know what mean "very large N, M" I can't make adapt the code and make any compromise.
A = rand(4,10);
B = rand(10,5);
N = size(A,1);
M = size(B,2);
C = zeros(N,M);
for i = 1:N
for j = 1:M
C(i,j) = trapz(A(i,:).*B(:,j).');
end
end
C
% is equivalent to
D = reshape(trapz(A.*reshape(B,[1 size(B)]),2),[N M])
0 comentarios
Ver también
Categorías
Más información sobre Numerical Integration and Differentiation en Help Center y File Exchange.
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!