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A Waterfall Model to Achieve Energy Efficient Tasks Mapping for Large Scale GPU Clusters

机译:瀑布模型实现大规模GPU集群的节能任务映射

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High energy consumption has become a critical problem for supercomputer systems. GPU clusters are becoming an increasingly popular architecture for building supercomputers because of its great improvement in performance. In this paper, we first formulate the tasks mapping problem as a minimal energy consumption problem with deadline constraint. Its optimizing object is very different from the traditional mapping problem which often aims at minimizing makespan or minimizing response time. Then a Waterfall Energy Consumption Model, which abstracts the energy consumption of one GPU cluster system into several levels from high to low, is proposed to achieve an energy efficient tasks mapping for large scale GPU clusters. Based on our Waterfall Model, a new task mapping algorithm is developed which tries to apply different energy saving strategies to keep the system remaining at lower energy levels. Our mapping algorithm adopts the Dynamic Voltage Scaling, Dynamic Resource Scaling and β-migration for GPU sub-task to significantly reduce the energy consumption and achieve a better load balance for GPU clusters. A task generator based on the real task traces is developed and the simulation results show that our mapping algorithm based on the Waterfall Model can reduce nearly 50% energy consumption compared with traditional approaches which can only run at a high energy level. Not only the task deadline can be satisfied, but also the task execution time of our mapping algorithm can be reduced.
机译:高能耗已成为超级计算机系统的关键问题。由于其性能巨大改善,GPU集群正在成为建立超级计算机的越来越受欢迎的架构。在本文中,我们首先将任务映射问题作为截止日期约束的最小能耗问题。它的优化对象与传统的映射问题非常不同,通常旨在最大限度地减少MakEspan或最小化响应时间。然后,摘要将一个GPU集群系统的能量消耗摘要将一个GPU集群系统的能量消耗分为高于低电平的几个层次,以实现对大型GPU集群的节能任务映射。基于我们的瀑布模型,开发了一种新的任务映射算法,该算法试图应用不同的节能策略,以使系统保持较低的能量水平。我们的映射算法采用动态电压缩放,动态资源缩放和GPU子任务的β-迁移,从而显着降低了能量消耗,实现了GPU集群的更好的负载平衡。开发了基于真实任务迹线的任务发生器,仿真结果表明,与瀑布模型的映射算法与传统方法相比,可以减少近50%的能量消耗,这些方法只能在高能平下运行。不仅可以满足任务截止日期,还可以减少映射算法的任务执行时间。

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