JISE


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Journal of Information Science and Engineering, Vol. 40 No. 5, pp. 957-977


Energy and Scientific Workflows: Smart Scheduling and Execution


MEHUL WARADE1,+, KEVIN LEE1, CHATHURIKA RANAWEERA1
AND JEAN-GUY SCHNEIDER2
1School of Information Technology
Deakin University
Geelong VIC 3220, Australia
E-mail: mehul.warade@research.deakin.edu.au

2Faculty of Information Technology
Monash University
Clayton VIC 3168, Australia


Energy-efficient computation is an increasingly important target in modern-day computing. Scientific computation is conducted using scientific workflows that are executed on highly scalable compute clusters. The execution of these workflows is generally geared towards optimizing run-time performance with the energy footprint of the execution being ignored. Evidently, minimizing both execution time as well as energy consumption does not have to be mutually exclusive. The aim of the research presented in this paper is to highlight the benefits of energy-aware scientific workflow execution. In this paper, a set of requirements for an energy-aware scheduler are outlined and a conceptual architecture for the scheduler is presented. The evaluation of the conceptual architecture was performed by developing a proof of concept scheduler which was able to achieve around 49.97% reduction in the energy consumption of the computation.


Keywords: energy-aware computing, scientific workflows, scheduling, high performance computing, parallel computing

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