How parallelize the solution of sparse matrices using mldivide

15 vues (au cours des 30 derniers jours)
Emil Partsch
Emil Partsch le 28 Fév 2019
I am trying to parallelize the solution of
x= A\B (mldivide.
My variables are: x = V(I*J*K), A = A(I*J*K x I*J*K) sparse matrix, vec = u (I,J,K) +V/constant +Bswitch (I*J*K x I*J*K)*V
To do this without parallelization, my code currently does this:
V_stacked = reshape(V,I*J*L,1);
vec = u_stacked + V_stacked/Delta + Bswitch*V_stacked;
V_stacked = A\vec;
To parallelize I have tried
u_stacked = reshape(u,I*J,L);
V_stacked = reshape(V,I*J,L);
BswitchTimesVstacked = Bswitch*reshape(V,I*J*L,1);
BswitchTimesVstacked = reshape(BswitchTimesVstacked,I*J,L);
vec = u_stacked + V_stacked/Delta + BswitchTimesVstacked;
tic
parfor l = 1:L
V_stacked(:,l) = A(:,:,l)\vec(:,l);
end
But as A is still I*J*L times I*J*L, it wont work. I am not sure if 1. what I am doing so far is correct and 2. how to reshape B appropriately.
Any help is highly appreciated :-)
  4 commentaires
Matt J
Matt J le 1 Mar 2019
V_stacked(:,l) = A(:,:,l)\vec(:,l);
If A is sparse, how in the above line did you reshape it into a 3D array so as to make it 3D indexable?
Emil Partsch
Emil Partsch le 1 Mar 2019
Modifié(e) : Emil Partsch le 1 Mar 2019
I didn't - I made a mistake in the last sentence which I just edited: it should have said "But as A is still I*J*L times I*J*L, it wont work."
The reason I'm doing it as so is that I am trying to replicate how it's done here starting at line 120: https://github.com/ikarib/HANK/blob/master/mycode/HJBUpdate.m

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Matt J
Matt J le 4 Mar 2019
You can make a 3D stack of sparse matrices A(:,:,l) by converting them to ndSparse type. Then, the parfor construct will work. Alternatively, you can make a block diagonal matrix where all the A(:,:,l) form the diagonal blocks. Then you can solve all systems simultaneously, which would take advantage of Matlab's internal parallelization. I don't know which would be faster.
  5 commentaires
Matt J
Matt J le 4 Mar 2019
Was it faster when you used parfor? I would not expect so.
Emil Partsch
Emil Partsch le 5 Mar 2019
Modifié(e) : Emil Partsch le 5 Mar 2019
It depends on the size of the I, J and K. For the sizes I originally used, it didn't really matter

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Plus de réponses (1)

Matt J
Matt J le 28 Fév 2019
Modifié(e) : Matt J le 28 Fév 2019
I recommend using
V_stacked = pagefun(@mldivide,gpuArray(A),gpuArray(vec));
  1 commentaire
Emil Partsch
Emil Partsch le 1 Mar 2019
Doing that, I get the error that sparse gpuArrays are not supported for mldivide :-)

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