Linear Combinations of DVFS-Enabled Processor Frequencies to Modify the Energy-Aware Scheduling Algorithms

N. B. Rizvandi, J. Taheri, Albert Y. Zomaya, Young Choon Lee
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引用次数: 102

Abstract

The energy consumption issue in distributed computing systems has become quite critical due to environmental concerns. In response to this, many energy-aware scheduling algorithms have been developed primarily by using the dynamic voltage-frequency scaling (DVFS) capability incorporated in recent commodity processors. The majority of these algorithms involve two passes: schedule generation and slack reclamation. The latter is typically achieved by lowering processor frequency for tasks with slacks. In this paper, we revisit this energy reduction technique from a different perspective and propose a new slack reclamation algorithm which uses a linear combination of the maximum and minimum processor frequencies to decrease energy consumption. This algorithm has been evaluated based on results obtained from experiments with three different sets of task graphs: 1,500 randomly generated task graphs, and 300 task graphs of each of two real-world applications (Gauss-Jordan and LU decomposition). The results show that the amount of energy saved in the proposed algorithm is 13.5%, 25.5% and 0.11% for random, LU decomposition and Gauss-Jordan task graphs, respectively, these percentages for the reference DVFSbased algorithm are 12.4%, 24.6% and 0.1%, respectively.
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支持dvfs的处理器频率线性组合以修改能量感知调度算法
由于环境问题,分布式计算系统中的能源消耗问题已经变得相当关键。针对这一点,许多能量感知调度算法主要是通过使用最新商用处理器中包含的动态电压-频率缩放(DVFS)功能来开发的。这些算法大多包含两个步骤:调度生成和闲置回收。后者通常是通过降低带有空闲的任务的处理器频率来实现的。在本文中,我们从不同的角度重新审视了这种能量减少技术,并提出了一种新的松弛回收算法,该算法使用最大和最小处理器频率的线性组合来降低能量消耗。该算法已经根据使用三组不同任务图的实验结果进行了评估:1,500个随机生成的任务图,以及两个实际应用程序(高斯-乔丹和LU分解)中的每个任务图的300个任务图。结果表明,该算法在随机任务图、LU分解任务图和高斯-乔丹任务图上分别节能13.5%、25.5%和0.11%,而基于dvfs的参考算法分别节能12.4%、24.6%和0.1%。
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