How `gpuArray` save sparse matrix when running Preconditioned conjugated gradient?
1 Ansicht (letzte 30 Tage)
Ältere Kommentare anzeigen
wei zhang
am 24 Jan. 2021
Kommentiert: wei zhang
am 25 Jan. 2021
Hi, I am using cuda in Matlab to accelerate the Preconditioned conjugated gradient evaluation of "Ax = b". I'm glad to find the pcg without any preconditioner on GPU run faster (x6~7) than ichol preconditioned pcg on CPU. I would like to know how gpuArray allocate the sparse matrix on GPU, in CSR, ELL or any other format. I heard that the different storage format influences the evaluation speed. So I would like to compare these formats on my matrix to optimal my code. I found no option of these formats' setting in the function of gpuArray. I uncertainly speculate gpuArray may allocate the sparse matrix dynamically. Could you give some suggestion or document link of this problem?
Thank you.
0 Kommentare
Akzeptierte Antwort
Joss Knight
am 24 Jan. 2021
gpuArray currently stores sparse matrices internally in CSR format. This matches the NVIDIA cusparse routines that are used for basic algebra.
I don't know quite what you mean by dynamic allocation. All MATLAB variables are allocated dynamically in some sense, because they are not defined before the application is run. However, MATLAB uses a variety of pooling techniques to ensure actual dynamic allocations (such as calls to cudaMalloc) happen as infrequently as possible. If you are noticing some performance delays when data is copied to the device then sometimes the conversion between CSC (the CPU storage format) and CSR is responsible.
Weitere Antworten (0)
Siehe auch
Kategorien
Mehr zu GPU Computing finden Sie in Help Center und File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!