Matrix multiplication optimization using GPU parallel computation

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Dear all,
I have two questions.
(1) How do I monitor GPU core usage when I am running a simulation? Is there any visual tool to dynamically check GPU core usage?
(2) Mathematically the new and old approaches are same, but why is the new approach is 5-10 times faster?
%%% Code for new approach %%%
M = gpuArray(M) ;
for nt=1:STEPs
if (there is a periodic boundary condition)
M = A1 * M + A2 * f * M
else
% diffusion
M = A1 * M ;
end
end
  6 comentarios
Jan
Jan el 19 de Ag. de 2022
Okay. As far as I understand, you do not want to tell me the speed difference between
M = A1 * M + A2 * f * M;
and
M = (A1 + A2 * f) * M
and you do not want to show the complete code for the "old" implementation. Then I cannot estimate, if storing the data in "B(t_n)" is a cause of the problem.
Nick
Nick el 20 de Ag. de 2022
Hi Jan,
The following table summarizes the computation time comparison over different approach and GPU enabled/disabled.
New one-step app 1 doesn't have any improvement.

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Matt J
Matt J el 18 de Ag. de 2022
Editada: Matt J el 18 de Ag. de 2022
Because in your second formulation, there is no need to build a table of non-zero entries for the sparse matrix B. The table-building step requires sorting operations, which your second version avoids.
Also, if B has many columns, it will consume a lot of memory in proportion to the number of columns (independent of the sparsity). That is avoided as well by the second implementation.
  10 comentarios
Matt J
Matt J el 19 de En. de 2023
Editada: Matt J el 19 de En. de 2023
Do you know how MATLAB manages sparse array elements?
Here is some detail on how sparse matrices are stored,
If so, will any operation on those non-zero elements cause the sorting operations you mentioned above?
If a new sparsity pattern is generated, then it will. Here's maybe another example to show how this can make sparse operations slower than full operations:
N=5000;
A=sprand(N,N,1/5);
B=sprand(N,N,1/5);
tic;
A+B;
toc; %sparse matrix addition
Elapsed time is 0.085529 seconds.
A=full(A); B=full(B);
tic
A+B;
toc %full matrix addition
Elapsed time is 0.049478 seconds.

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Más respuestas (1)

Joss Knight
Joss Knight el 19 de Ag. de 2022
The Windows Task Manager lets you track GPU utilization and memory graphically, and the utility nvidia-smi lets you do it in a terminal window.
Neither the CUDA driver nor the runtime provide access to which core is running what, although you might be able to hand-code something using NVML.
  3 comentarios
Joss Knight
Joss Knight el 20 de Ag. de 2022
Ah, I forgot that you cannot see utilization information for GeForce cards, sorry. Those charts are for graphics and so not relevant for compute (except the memory one).
You'll have to use nvidia-smi.
Nick
Nick el 29 de Ag. de 2022
Hi Joss, thanks for your info!

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