评估在功率限制下使用遗传算法调度独立任务

A. Kassab, J. Nicod, L. Philippe, V. Rehn-Sonigo
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引用次数: 6

摘要

绿色数据和计算中心,即使用可再生能源的中心,可以有效地解决数据或计算中心过度增长的能源消耗及其相应的碳足迹。然而,为这些中心提供完全由可再生能源提供的能源是一个挑战,因为可再生能源(如太阳能电池板和风力涡轮机)由于其间歇性的能源生产而不能保证持续供应。高性能计算应用的高计算需求要求电源提供高功率水平。另一方面,与在线应用程序不同,HPC应用程序的一个优点是可以容忍某些任务的执行延迟。然而,由于用户希望尽可能早地得到结果,所以在调度这类作业时,最小化完工时间通常是主要目标。然而,在功率约束下调度一组任务的优化问题被证明是NP-完全的。因此,设计和评估启发式是提出有效解决方案的唯一途径。本文提出了一种基于遗传算法的独立任务并行调度算法,其目标是在电力可用性约束下最小化完工时间。大量的仿真结果表明,遗传算法可以计算出较好的调度问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing the Use of Genetic Algorithms to Schedule Independent Tasks Under Power Constraints
Green data and computing centers, centers using renewable energy sources, can be a valid solution to the over growing energy consumption of data or computing centers and their corresponding carbon foot print. Powering these centers with energy solely provided by renewable energy sources is however a challenge because renewable sources (like solar panels and wind turbines) cannot guarantee a continuous feeding due to their intermittent energy production. The high computation demand of HPC applications requires high power levels to be provided from the power supply. On the other hand, one advantage is that unlike online applications, HPC applications can tolerate delaying the execution of some tasks. Since the users however want their results as early as possible, minimum makespan is usually the main objective when scheduling this kind of jobs. The optimization problem of scheduling a set of tasks under power constraints is however proven to be NP- Complete. Designing and assessing heuristics is hence the only way to propose efficient solutions. In this paper, we present genetic algorithms for scheduling sets of independent tasks in parallel, with the objective of minimizing the makespan under power availability constraints. Extensive simulations show that genetic algorithms can compute good schedules for this problem.
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