An Efficient Locality-Aware Task Assignment Algorithm for Minimizing Shared Cache Contention

Song Liu, Xiao Xie, Yuanzhen Cui, Weiguo Wu
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Abstract

Task scheduling can improve the performance of parallel execution through optimizing the utilization of on-chip computing resources, and thus it has been widely studied. Most of the previous work uses data access locality to predict cache behaviors for task scheduling, but usually suffering accuracy and computational time complexity issues. This paper proposes an efficient task assignment algorithm to minimize the contention for shared caches on multi-core processors among parallel independent process level tasks. The proposed algorithm leverages the property of footprint to approximately estimate the locality parameter of parallel tasks, choosing the best grouping of tasks with minimum locality value in a quick way for task assignment. The calculation time is therefore significantly reduced and the algorithm complexity is O(nlog2n). Meanwhile, the algorithm accuracy is very high. On an Intel 8 cores dual-processor system, the experimental results show that the task assignment algorithm achieves over 99% of the actual optimal performance on average and outperforms the default Linux task scheduling method by an average of over 5% for two sets of different parallel tasks.
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最小化共享缓存争用的高效位置感知任务分配算法
任务调度可以通过优化片上计算资源的利用来提高并行执行的性能,因此得到了广泛的研究。以前的大多数工作使用数据访问局部性来预测任务调度的缓存行为,但通常存在准确性和计算时间复杂性问题。本文提出了一种有效的任务分配算法,以减少并行独立进程级任务对多核处理器上共享缓存的争用。该算法利用占用空间的特性对并行任务的局部性参数进行近似估计,快速选择局部性值最小的最佳任务组进行任务分配。因此大大减少了计算时间,算法复杂度为0 (nlog2n)。同时,算法的精度也很高。在Intel 8核双处理器系统上,实验结果表明,对于两组不同的并行任务,任务分配算法平均达到实际最优性能的99%以上,比Linux默认的任务调度方法平均高出5%以上。
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