Efficient Vectorization of For Loop

Hi,
I have three matrices and C and am trying to compute a fourth matrix Min the following way:
for p = 1:N
for q = 1:N
M(p,q) = 2 * sum(A(:,q) .* conj(B(:,p)) .* C(:,q));
end
end
All matrices are . I am trying to compute this for N = 750 or so and the computation is extremely slow. I cannot find any obvious way to vectorize the code. Any help would be very much appreciated.
Thanks.

 Risposta accettata

Bruno Luong
Bruno Luong il 15 Apr 2024
Modificato: Bruno Luong il 15 Apr 2024
Not tested but the sign reading tell me
M = 2*B' * (A.*C);

4 Commenti

Voss
Voss il 15 Apr 2024
Modificato: Voss il 15 Apr 2024
Very good +1. But don't forget the factor of 2.
Fixed
I would guess that having 2*B' at the front will force MATLAB to physically compute the conjugate transpose of B first. However, if you segregate the 2* operation as 2 * (B' * (A.*C)), the B' would not need to be physically formed to do the conjugate transpose matrix multiply since this will be handled by flags passed into the BLAS routine. Maybe a bit faster? E.g.,
A = rand(5000); B = rand(5000); C = rand(5000);
timeit(@()2*B' * (A.*C))
ans = 0.5515
timeit(@()2*(B' * (A.*C)))
ans = 0.4901
Thank you!

Accedi per commentare.

Più risposte (0)

Categorie

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by