Using the GPU through the parallel comp. toolbox to optimize matrix inversion

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Hello,
In my code I impliment:
A=B\c;
B is an invertable matrix (14400x14400), c is a vector.
Since B is large this takes very long. I am using a windows 7, 64bit, 4 GB RAM, 2 cores.
Would I be able to shorten the time by using the GPU through the parallel comp. toolbox?
Would I need to write my own version of parallel matrix inversion, or has this problem been faced before and there is a posted solution?
Thank you.

Risposta accettata

Jill Reese
Jill Reese il 2 Ott 2012
As of MATLAB R2010b this functionality has been available on the GPU in the Parallel Computing Toolbox. In order to use it, at least one of your variables B and c must be transferred to the GPU before calling mldivide (\).
In the latest release of MATLAB (R2012b) you can use this code to solve your problem:
B=gpuArray(B); % transfer B to the GPU
c=gpuArray(c); % transfer c to the GPU
A = B \ c; % Solve the linear system on the GPU and store A on the GPU
% This line of your existing code doesn't change at all
% you can continue to perform work on the GPU using A, B, and c or
A=gather(A); % transfer A back to the MATLAB workspace

Più risposte (1)

lior
lior il 3 Ott 2012
Great,
So mldivide knows how to exploit the GPU and run in parallel?
I guess that is true for every function in MATLAB, its being "parallelized" when I use it on "gpuArrey" variables without having to optimize it myself?
How about functions I write myself? if I write a simple "for" loop with basic math operators, then the GPU would not be used even if the variables are "gpuArrey"?
  1 Commento
Matt J
Matt J il 3 Ott 2012
If the operations done in each pass through the loop are element-wise, then you can use arrayfun to parallelize the loop on the GPU.

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