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I am working on a big matrix multiplication. I have a big matrix A (at least 5000x5000) and a column vector V (5000x1). In my code, each V is going to multiply each column of A element by element. I did it with a loop

K = zeros(5000, 5000);
for n=1:5000
  K(:, n) = V.*A(:, n);

but it is so slow. So I create a big matrix with each column assigned as V such that

K = MV.*A;

it is fast but it waste too much of memory. When size of the matrix increase, it uses too much of memory. Is that any idea to use less memory but fast?

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Did you pre-allocate K so it had the correct size? –  Marius Jul 15 '13 at 5:10

1 Answer 1

up vote 4 down vote accepted

classic bsxfun

K = bsxfun( @times, A, V );

Alternatively, you might want to look at James Tursa's MTIMESX (found in FEX).

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Thanks a lot for your input. it seems that bsxfun works but I need to test the efficiency later. As for MTIMESX, I read the readme but it seems for matrix multiplication only not element-by-element one. –  user1285419 Jul 15 '13 at 5:54

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