• DocumentCode
    1996569
  • Title

    Efficient system design space exploration using machine learning techniques

  • Author

    Ozisikyilmaz, Berkin ; Memik, Gokhan ; Choudhary, Alok

  • Author_Institution
    Dept. of Electr. Eng. & Comput. Sci., Northwestern Univ., Evanston, IL
  • fYear
    2008
  • fDate
    8-13 June 2008
  • Firstpage
    966
  • Lastpage
    969
  • Abstract
    Computer manufacturers spend a huge amount of time, resources, and money in designing new systems and newer configurations, and their ability to reduce costs, charge competitive prices and gain market share depends on how good these systems perform. In this work, we develop predictive models for estimating the performance of systems by using performance numbers from only a small fraction of the overall design space. Specifically, we first develop three models, two based on artificial neural networks and another based on linear regression. Using these models, we analyze the published Standard Performance Evaluation Corporation (SPEC) benchmark results and show that by using the performance numbers of only 2% and 5% of the machines in the design space, we can estimate the performance of all the systems within 9.1% and 4.6% on average, respectively. Then, we show that the performance of future systems can be estimated with less than 2.2% error rate on average by using the data of systems from a previous year. We believe that these tools can accelerate the design space exploration significantly and aid in reducing the corresponding research/development cost and time- to-market.
  • Keywords
    DP industry; design for manufacture; learning (artificial intelligence); manufacturing systems; neural nets; regression analysis; artificial neural networks; computer manufacturing; design space exploration; linear regression; machine learning; standard performance evaluation corporation; Artificial neural networks; Computer aided manufacturing; Costs; Linear regression; Machine learning; Performance analysis; Performance gain; Predictive models; Space exploration; Time sharing computer systems; Design space; machine learning; performance prediction;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Design Automation Conference, 2008. DAC 2008. 45th ACM/IEEE
  • Conference_Location
    Anaheim, CA
  • ISSN
    0738-100X
  • Print_ISBN
    978-1-60558-115-6
  • Type

    conf

  • Filename
    4555959