# MATLAB - Help speed up the code

I need your help to speed up my MATLAB code. Line 17 is the most expensive part. It is because of the two nested loops. I need help with removing the loops and rewrite it into just one matrix multiplication expression. Note that I have taken dKdx as a cell, which is causing problems to replace nested loops with simple matrix multiplication term. Any ideas? Below if a simplified code. May be dKdx doesn't need to be an cell? Idea behind cell was to be able to store lot of matrices of size [2*(nelx+1)(nely+1),2(nelx+1)*(nely+1)].

``````    clc
nelx = 16; nely = 8;
dKdx = cell(2*(nelx+1)*(nely+1),1);
Hess = zeros(nelx*nely,nelx*nely);
U = rand(2*(nelx+1)*(nely+1),1);
dUdx = rand(2*(nelx+1)*(nely+1),nelx*nely);

for elx = 1:nelx
for ely = 1:nely
elm = nely*(elx-1)+ely;
dKdx{elm,1} = rand(2*(nelx+1)*(nely+1),2*(nelx+1)*(nely+1));
end
end

for i = 1:nelx*nely
for j = i:nelx*nely
Hess(i,j) = U'*dKdx{j,1}*dUdx(:,i);
if i ~= j
Hess(j,i) = Hess(i,j);
end
end
end
``````
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Probably better for codereview.stackexchange.com –  NominSim Oct 17 '12 at 21:56
If the Hess loop is what you want to optimize, it would be clearer if you could distill the code to the bare essential, and say that Hess is a nxny by nxny matrix, U is a 2*(nx+1)(ny+1) vector, etc... –  bla Oct 17 '12 at 23:36
ya you are right. I wanted to give some background for my problem. But it seems like all that is unnecessary. I will simplify the code. –  John Smith Oct 18 '12 at 0:37

Here's one way to get it:

``````  B = reshape(U'*cell2mat(dKdx'),[size(U,1) nelx*nely]);
C = B'*dUdx;
Hess=tril(C)+triu(C',1);
``````

In my machine this code runs 6-7 times faster than the for loop one. I wonder if there are other even faster ways...

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thanks but its the upper/lower triangle calculation which is the expensive part \$Hess(i,j) = -2*U'*dKdx{j,1}*dUdx(:,i);\$.. Rest (diagonal addition, and adding lower triangle) is negligible.. –  John Smith Oct 18 '12 at 1:10
This doesn't give the same answer as Johns's code, does it? –  Dan Becker Oct 18 '12 at 16:17
Are you really asking me something you can answer in a few seconds yourself? try and see, you just need to copy paste it. –  bla Oct 18 '12 at 16:23
I did copy and paste it! It turns out that it gives a different result for John's original code (which is what I was still using), but give the same result for the code that is now there. Not sure why. –  Dan Becker Oct 18 '12 at 16:48
Ah, it's because he dropped the -2 in front of the U. –  Dan Becker Oct 18 '12 at 16:55

It may not be surprising that the hessian is the bottleneck. You have to calculate O(n^2) matrix elements, and you are doing O(n^3) work per matrix element, so that's O(n^5), which is worse than inverting the matrix (unless I am misunderstanding your code).

Having said that, it seems like you should be able to replace the `dKdx{j,1}*dUdx(:,i)` matrix/vector multiplication in the inner loop with a single matrix/matrix multiplication `dKdx{j,1}*dUdx` in the outer loop, then just pull out the particular column that you need in the inner loop (you would need to `j` first too). I don't have time to try this myself right now, but perhaps it will help you.

Another thought: are you sure there isn't some structure in your matrices that you can take advantage of to reduce the number of matrix multiplies?

Update

In the process of trying to make my idea work, I came up with the following:

``````Hess2 = zeros(nelx*nely,nelx*nely);
for j=1:nelx*nely
Hess2(j,:) = U'*dKdx{j,1}*dUdx;
end
Hess2 = tril(Hess2)+triu(Hess2',1);
``````

On my machine this is 25 times faster, but Nate's is 80 times faster, so he beats me!

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can you elaborate? its not clear me. –  John Smith Oct 18 '12 at 1:29
thanks for your time! –  John Smith Oct 18 '12 at 19:08