• DocumentCode
    1783207
  • Title

    Power and Performance Characterization and Modeling of GPU-Accelerated Systems

  • Author

    Abe, Y. ; Sasaki, Hiromu ; Kato, Shigeo ; Inoue, Ken ; Edahiro, Masato ; Peres, Martin

  • Author_Institution
    Kyushu Univ., Fukuoka, Japan
  • fYear
    2014
  • fDate
    19-23 May 2014
  • Firstpage
    113
  • Lastpage
    122
  • Abstract
    Graphics processing units (GPUs) provide an order-of-magnitude improvement on peak performance and performance-per-watt as compared to traditional multicore CPUs. However, GPU-accelerated systems currently lack a generalized method of power and performance prediction, which prevents system designers from an ultimate goal of dynamic power and performance optimization. This is due to the fact that their power and performance characteristics are not well captured across architectures, and as a result, existing power and performance modeling approaches are only available for a limited range of particular GPUs. In this paper, we present power and performance characterization and modeling of GPU-accelerated systems across multiple generations of architectures. Characterization and modeling both play a vital role in optimization and prediction of GPU-accelerated systems. We quantify the impact of voltage and frequency scaling on each architecture with a particularly intriguing result that a cutting-edge Kepler-based GPU achieves energy saving of 75% by lowering GPU clocks in the best scenario, while Fermi- and Tesla-based GPUs achieve no greater than 40% and 13%, respectively. Considering these characteristics, we provide statistical power and performance modeling of GPU-accelerated systems simplified enough to be applicable for multiple generations of architectures. One of our findings is that even simplified statistical models are able to predict power and performance of cutting-edge GPUs within errors of 20% to 30% for any set of voltage and frequency pair.
  • Keywords
    graphics processing units; multiprocessing systems; parallel architectures; performance evaluation; power aware computing; Fermi-based GPUs; GPU-accelerated systems; Tesla-based GPUs; cutting-edge Kepler-based GPU; dynamic power optimization; frequency scaling; generalized method; graphics processing units; multicore CPUs; order-of-magnitude improvement; performance characterization; performance modeling approach; performance optimization; performance prediction; power characterization; power modeling approach; power prediction; voltage scaling; Benchmark testing; Educational institutions; Graphics processing units; Multicore processing; Optimization; Predictive models; GPUs; characterization; modeling; performance; power;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Parallel and Distributed Processing Symposium, 2014 IEEE 28th International
  • Conference_Location
    Phoenix, AZ
  • ISSN
    1530-2075
  • Print_ISBN
    978-1-4799-3799-8
  • Type

    conf

  • DOI
    10.1109/IPDPS.2014.23
  • Filename
    6877247