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Robust Dynamic Resource Allocation via Probabilistic Task Pruning in Heterogeneous Computing Systems

机译:通过异构计算系统中的概率任务修剪进行稳健的动态资源分配

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In heterogeneous distributed computing (HC) systems, diversity can exist in both computational resources and arriving tasks. In an inconsistently heterogeneous computing system, task types have different execution times on heterogeneous machines. A method is required to map arriving tasks to machines based on machine availability and performance, maximizing the number of tasks meeting deadlines (defined as robustness). For tasks with hard deadlines (e.g., those in live video streaming), tasks that miss their deadlines are dropped. The problem investigated in this research is maximizing the robustness of an oversubscribed HC system. A way to maximize this robustness is to prune (i.e., defer or drop) tasks with low probability of meeting their deadlines to increase the probability of other tasks meeting their deadlines. In this paper, we first provide a mathematical model to estimate a task's probability of meeting its deadline in the presence of task dropping. We then investigate methods for engaging probabilistic dropping and we find thresholds for dropping and deferring. Next, we develop a pruning-aware mapping heuristic and extend it to engender fairness across various task types. We show the cost benefit of using probabilistic pruning in an HC system. Simulation results, harnessing a selection of mapping heuristics, show efficacy of the pruning mechanism in improving robustness (on average by around 25%) and cost in an oversubscribed HC system by up to around 40%.
机译:在异构分布式计算(HC)系统中,计算资源和到达任务中都可能存在多样性。在不一致的异构计算系统中,任务类型在异构机器上的执行时间不同。需要一种方法,用于根据计算机的可用性和性能将到达的任务映射到计算机,以最大程度地满足截止日期(定义为鲁棒性)的任务数量。对于期限很长的任务(例如,实时视频流中的任务),错过期限的任务将被丢弃。在这项研究中研究的问题是最大化超额订购的HC系统的鲁棒性。使这种鲁棒性最大化的一种方法是修剪(即推迟或丢弃)任务满足其截止日期的可能性较低的任务,以增加其他任务达到其截止日期的可能性。在本文中,我们首先提供一个数学模型来估计任务在存在任务丢弃的情况下满足其截止日期的概率。然后,我们研究进行概率下降的方法,并找到下降和推迟的阈值。接下来,我们开发一种修剪感知映射启发式方法,并将其扩展为在各种任务类型之间实现公平性。我们展示了在HC系统中使用概率修剪的成本优势。仿真结果,利用选择的映射启发式方法,显示了修剪机制在提高鲁棒性方面的功效(平均提高了约25%),在超额订购的HC系统中,其成本提高了约40%。

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