首页> 外文会议>2011 9th IEEE/ACS International Conference on Computer Systems and Applications >Stochastically robust static resource allocation for energy minimization with a makespan constraint in a heterogeneous computing environment
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Stochastically robust static resource allocation for energy minimization with a makespan constraint in a heterogeneous computing environment

机译:随机健壮的静态资源分配,用于在异构计算环境中使用makepan约束进行能量最小化

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In a heterogeneous environment, uncertainty in system parameters may cause performance features to degrade considerably. It then becomes necessary to design a system that is robust. Robustness can be defined as the degree to which a system can function in the presence of inputs different from those assumed. In this research, we focus on the design of robust static resource allocation heuristics suitable for a heterogeneous compute cluster that minimize the energy required to complete a given workload. In this study, we mathematically model and simulate a heterogeneous computing system that is assumed part of a larger warehouse scale computing environment. Task execution times/energy consumption may vary significantly across different data sets in our heterogeneous cluster; therefore, the execution time of each task on each node is modeled as a random variable. A resource allocation is considered robust if the probability that all tasks complete by a system deadline is at least 90%. To minimize the energy consumption of a specific resource allocation, dynamic voltage frequency scaling (DVFS) is employed. However, other factors, such as system overhead (spent on fans, disks, memory, etc.) must also be mathematically modeled when considering minimization of energy consumption. In this research, we propose three different heuristics that employ DVFS to minimize energy consumed by a set of tasks in our heterogeneous computing system. Finally, a lower bound on energy consumption is provided to gauge the performance of our heuristics.
机译:在异构环境中,系统参数的不确定性可能导致性能特征大大降低。因此,有必要设计一个坚固的系统。健壮性可以定义为在存在与假定输入不同的输入的情况下系统可以运行的程度。在本研究中,我们专注于设计健壮的静态资源分配试探法,该试探法适用于异构计算集群,该算法可最大程度地减少完成给定工作负载所需的能量。在这项研究中,我们在数学上建模和仿真了异构计算系统,该系统被假定为较大的仓库规模计算环境的一部分。异构集群中不同数据集之间的任务执行时间/能源消耗可能会有很大差异。因此,将每个任务在每个节点上的执行时间建模为随机变量。如果所有任务在系统截止日期之前完成的概率至少为90%,则认为资源分配是可靠的。为了最小化特定资源分配的能耗,采用了动态电压频率缩放(DVFS)。但是,在考虑最小化能耗时,还必须数学建模其他因素,例如系统开销(在风扇,磁盘,内存等上花费的)。在这项研究中,我们提出了三种不同的启发式方法,它们采用DVFS来最大限度地减少异构计算系统中一组任务所消耗的能量。最后,提供了能耗的下限来衡量我们的启发式方法的性能。

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