Facebook Instagram Twitter RSS Feed PodBean Back to top on side

Investigation of Parallel Data Processing Using Hybrid High Performance CPU

In: Computing and Informatics, vol. 39, no. 3
Paweł Czarnul
Detaily:
Rok, strany: 2020, 510 - 536
Jazyk: eng
Kľúčové slová:
GPGPU, overlapping computations and communication, MPS, Unified Memory, performance, power consumption
O článku:
The paper investigates parallel data processing in a hybrid CPU+GPU(s) system using multiple CUDA streams for overlapping communication and computations. This is crucial for efficient processing of data, in particular incoming data stream processing that would naturally be forwarded using multiple CUDA streams to GPUs. Performance is evaluated for various compute time to host-device communication time ratios, numbers of CUDA streams, for various numbers of threads managing computations on GPUs. Tests also reveal benefits of using CUDA MPS for overlapping communication and computations when using multiple processes. Furthermore, using standard memory allocation on a GPU and Unified Memory versions are compared, the latter including programmer added prefetching. Performance of a hybrid CPU+GPU version as well as scaling across multiple GPUs are demonstrated showing good speed-ups of the approach. Finally, the performance per power consumption of selected configurations are presented for various numbers of streams and various relative performances of GPUs and CPUs.
Ako citovať:
ISO 690:
Czarnul, P. 2020. Investigation of Parallel Data Processing Using Hybrid High Performance CPU. In Computing and Informatics, vol. 39, no.3, pp. 510-536. 1335-9150. DOI: https://doi.org/10.31577/cai_2020_3_510

APA:
Czarnul, P. (2020). Investigation of Parallel Data Processing Using Hybrid High Performance CPU. Computing and Informatics, 39(3), 510-536. 1335-9150. DOI: https://doi.org/10.31577/cai_2020_3_510
O vydaní:
Vydavateľ: Ústav informatiky SAV
Publikované: 16. 12. 2020