A comparison of CUDA and OpenACC: Accelerating the Tsunami Simulation EasyWave
Abstract
This paper presents an GPU accelerated version of the tsunami simulation EasyWave. Using two different GPU generations (Nvidia Tesla and Fermi) different optimization techniques were applied to the application following the principle of locality. Their performance impact was analyzed for both hardware generations. The Fermi GPU not only has more cores, but also possesses a L2 cache shared by all streaming multiprocessors. It is revealed that even the most tuned code on the Tesla does not reach the performance of the unoptimized code on the Fermi GPU. Further, a comparison between CUDA and OpenACC shows that the platform independent approach does not reach the speed of the native CUDA code. A deeper analysis shows that memory access patterns have a critical impact on the compute kernels’ performance, although this seems to be caused by the compiler in use.
- Citation
- BibTeX
Christgau, S., Spazier, J., Schnor, B., Hammitzsch, M., Babeyko, A. & Wächter, J.,
(2014).
A comparison of CUDA and OpenACC: Accelerating the Tsunami Simulation EasyWave.
PARS-Mitteilungen: Vol. 31, Nr. 1.
Berlin:
Gesellschaft für Informatik e.V., Fachgruppe PARS.
@article{mci/Christgau2014,
author = {Christgau, Steffen AND Spazier, Johannes AND Schnor, Bettina AND Hammitzsch, Martin AND Babeyko, Andrey AND Wächter, Joachim},
title = {A comparison of CUDA and OpenACC: Accelerating the Tsunami Simulation EasyWave},
journal = {PARS-Mitteilungen},
volume = {31},
number = {1},
year = {2014},
}
author = {Christgau, Steffen AND Spazier, Johannes AND Schnor, Bettina AND Hammitzsch, Martin AND Babeyko, Andrey AND Wächter, Joachim},
title = {A comparison of CUDA and OpenACC: Accelerating the Tsunami Simulation EasyWave},
journal = {PARS-Mitteilungen},
volume = {31},
number = {1},
year = {2014},
}
Dateien | Groesse | Format | Anzeige | |
---|---|---|---|---|
paper08.pdf | 1.970Mb | View/ |
Haben Sie fehlerhafte Angaben entdeckt? Sagen Sie uns Bescheid: Send Feedback
More Info
ISSN: 0177-0454
xmlui.MetaDataDisplay.field.date: 2014
Language: (en)
Content Type: Text/Journal Article