• DocumentCode
    2888860
  • Title

    Identifying energy-efficient concurrency levels using machine learning

  • Author

    Curtis-Maury, Matthew A. ; Singh, Karan ; McKee, Sally A. ; Blagojevic, Filip ; Nikolopoulos, Dimitrios S. ; De Supinski, Bronis R. ; Schulz, Martin

  • fYear
    2007
  • fDate
    17-20 Sept. 2007
  • Firstpage
    488
  • Lastpage
    495
  • Abstract
    Multicore microprocessors have been largely motivated by the diminishing returns in performance and the increased power consumption of single-threaded ILP microprocessors. With the industry already shifting from multicore to many-core microprocessors, software developers must extract more thread-level parallelism from applications. Unfortunately, low power-efficiency and diminishing returns in performance remain major obstacles with many cores. Poor interaction between software and hardware, and bottlenecks in shared hardware structures often prevent scaling to many cores, even in applications where a high degree of parallelism is potentially available. In some cases, throwing additional cores at a problem may actually harm performance and increase power consumption. Better use of otherwise limitedly beneficial cores by software components such as hypervisors and operating systems can improve system-wide performance and reliability, even in cases where power consumption is not a main concern. In response to these observations, we evaluate an approach to throttle concurrency in parallel programs dynamically. We throttle concurrency to levels with higher predicted efficiency from both performance and energy standpoints, and we do so via machine learning, specifically artificial neural networks (ANNs). One advantage of using ANNs over similar techniques previously explored is that the training phase is greatly simplified, thereby reducing the burden on the end user. Using machine learning in the context of concurrency throttling is novel. We show that ANNs are effective for identifying energy-efficient concurrency levels in multithreaded scientific applications, and we do so using physical experimentation on a state-of-the-art quad-core Xeon platform.
  • Keywords
    concurrency control; learning (artificial intelligence); multi-threading; multiprocessing systems; natural sciences computing; Intel quad-core processor; artificial neural network; energy-efficient concurrency level Identification; machine learning; multicore microprocessor; multithreaded scientific application; parallel program; Application software; Computer industry; Concurrent computing; Energy consumption; Energy efficiency; Hardware; Machine learning; Microprocessors; Multicore processing; Power system reliability;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Cluster Computing, 2007 IEEE International Conference on
  • Conference_Location
    Austin, TX
  • ISSN
    1552-5244
  • Print_ISBN
    978-1-4244-1387-4
  • Electronic_ISBN
    1552-5244
  • Type

    conf

  • DOI
    10.1109/CLUSTR.2007.4629274
  • Filename
    4629274