DocumentCode :
9580
Title :
Achieving Exascale Capabilities through Heterogeneous Computing
Author :
Schulte, Michael J. ; Ignatowski, Mike ; Loh, Gabriel H. ; Beckmann, Bradford M. ; Brantley, William C. ; Gurumurthi, Sudhanva ; Jayasena, Nuwan ; Paul, Indrani ; Reinhardt, Steven K. ; Rodgers, Gregory
Volume :
35
Issue :
4
fYear :
2015
fDate :
July-Aug. 2015
Firstpage :
26
Lastpage :
36
Abstract :
This article provides an overview of AMD´s vision for exascale computing, and in particular, how heterogeneity will play a central role in realizing this vision. Exascale computing requires high levels of performance capabilities while staying within stringent power budgets. Using hardware optimized for specific functions is much more energy efficient than implementing those functions with general-purpose cores. However, there is a strong desire for supercomputer customers not to have to pay for custom components designed only for high-end high-performance computing systems. Therefore, high-volume GPU technology becomes a natural choice for energy-efficient data-parallel computing. To fully realize the GPU´s capabilities, the authors envision exascale computing nodes that compose integrated CPUs and GPUs (that is, accelerated processing units), along with the hardware and software support to enable scientists to effectively run their scientific experiments on an exascale system. The authors discuss the hardware and software challenges in building a heterogeneous exascale system and describe ongoing research efforts at AMD to realize their exascale vision.
Keywords :
energy conservation; graphics processing units; parallel machines; parallel programming; AMD; GPU capability; accelerated processing units; energy efficiency; energy-efficient data-parallel computing; exascale capability; exascale computing; hardware optimization; heterogeneous computing; heterogeneous exascale system; high-end high-performance computing system; high-volume GPU technology; performance capability; supercomputer; Bandwidth; Computer programs; Energy efficiency; Graphics processing units; Memory management; Random access memory; Supercomputers; data-parallel computing; energy efficiency; exascale computing; hardware; heterogeneous computing;
fLanguage :
English
Journal_Title :
Micro, IEEE
Publisher :
ieee
ISSN :
0272-1732
Type :
jour
DOI :
10.1109/MM.2015.71
Filename :
7155462
Link To Document :
بازگشت