DocumentCode :
1924932
Title :
Data Partitioning on Heterogeneous Multicore and Multi-GPU Systems Using Functional Performance Models of Data-Parallel Applications
Author :
Zhong, Ziming ; Rychkov, Vladimir ; Lastovetsky, Alexey
Author_Institution :
Heterogeneous Comput. Lab., Univ. Coll. Dublin, Dublin, Ireland
fYear :
2012
fDate :
24-28 Sept. 2012
Firstpage :
191
Lastpage :
199
Abstract :
Transition to hybrid CPU/GPU platforms in high performance computing is challenging in the aspect of efficient utilisation of the heterogeneous hardware and existing optimised software. During recent years, scientific software has been ported to multicore and GPU architectures and now should be reused on hybrid platforms. In this paper, we model the performance of such scientific applications in order to execute them efficiently on hybrid platforms. We consider a hybrid platform as a heterogeneous distributed-memory system and apply the approach of functional performance models, which was originally designed for uniprocessor machines. The functional performance model (FPM) represents the processor speed by a function of problem size and integrates many important features characterising the performance of the architecture and the application. We demonstrate that FPMs facilitate performance evaluation of scientific applications on hybrid platforms. FPM-based data partitioning algorithms have been proved to be accurate for load balancing on heterogeneous networks of uniprocessor computers. We apply FPM-based data partitioning to balance the load between cores and GPUs in the hybrid architecture. In our experiments with parallel matrix multiplication, we couple the existing software optimised for multicores and GPUs and achieve high performance of the whole hybrid system.
Keywords :
distributed memory systems; graphics processing units; matrix multiplication; parallel architectures; performance evaluation; resource allocation; FPM-based data partitioning algorithms; GPU architectures; data-parallel applications; functional performance model; functional performance models; heterogeneous distributed memory system; heterogeneous hardware; heterogeneous multicore; heterogeneous networks; high performance computing; hybrid CPU-GPU platforms; hybrid architecture; load balancing; multiGPU systems; parallel matrix multiplication; performance evaluation; problem size function; processor speed; uniprocessor computers; uniprocessor machines; Computational modeling; Data models; Graphics processing unit; Kernel; Multicore processing; Partitioning algorithms; Performance evaluation; GPU; data partitioning; data-parallel application; multicore; performance model;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Cluster Computing (CLUSTER), 2012 IEEE International Conference on
Conference_Location :
Beijing
Print_ISBN :
978-1-4673-2422-9
Type :
conf
DOI :
10.1109/CLUSTER.2012.34
Filename :
6337780
Link To Document :
بازگشت