The search functionality is under construction.

Author Search Result

[Author] Kazutaka MOTOYAMA(1hit)

1-1hit
  • Long-Term Performance Evaluation of Hadoop Jobs in Public and Community Clouds

    Kento AIDA  Omar ABDUL-RAHMAN  Eisaku SAKANE  Kazutaka MOTOYAMA  

     
    PAPER-Computer System

      Pubricized:
    2015/02/25
      Vol:
    E98-D No:6
      Page(s):
    1176-1184

    Cloud computing is a widely used computing platform in business and academic communities. Performance is an important issue when a user runs an application in the cloud. The user may want to estimate the application-execution time beforehand to guarantee the application performance or to choose the most suitable cloud. Moreover, the cloud system architect and the designer need to understand the application performance characteristics, such as the scalability or the utilization of cloud platforms, to improve performance. However, because the application performance in clouds sometime fluctuates, estimation of the application performance is difficult. In this paper, we discuss the performance fluctuation of Hadoop jobs in both a public cloud and a community cloud for one to three months. The experimental results indicate phenomena that we cannot see without long-term experiments and phenomena inherent in Hadoop. The results suggest better ways to estimate Hadoop application performances in clouds. For example, we should be aware of application characteristics (CPU intensive or communication intensive), datacenter characteristics (busy or not), and time frame (time of day and day of the week) to estimate the performance fluctuation due to workload congestion in cloud platforms. Furthermore, we should be aware of performance degradation due to task re-execution in Hadoop applications.