Parallel applications often rely on work stealing schedulers in combination with fine-grained tasking to achieve high performance and scalability. However, reducing the total energy consumption in the context of work stealing runtimes is still challenging, particularly when using asymmetric architectures with different types of CPU cores. A common approach for energy savings involves dynamic voltage and frequency scaling (DVFS) wherein throttling is carried out based on factors like task parallelism, stealing relations and task criticality. This paper makes the following observations: (i) leveraging DVFS on a per-task basis is impractical when using fine-grained tasking and in environments with cluster/chip-level DVFS; (ii) task moldability, wherein a single task can execute on multiple threads/cores via work-sharing, can help to reduce energy consumption; and (iii) mismatch between tasks and assigned resources (i.e.~core type and number of cores) can detrimentally impact energy consumption. In this paper, we propose ERASE (EneRgy Aware SchedulEr), an intra-application task scheduler on top of work stealing runtimes that aims to reduce the total energy consumption of parallel applications. It achieves energy savings by guiding scheduling decisions based on per-task energy consumption predictions of different resource configurations. In addition, ERASE is capable of adapting to both given static frequency settings and externally controlled DVFS. Overall, ERASE achieves up to 31% energy savings and improves performance by 44% on average, compared to the state-of-the-art DVFS-based schedulers.
翻译:平行应用往往依赖偷窃调度器的工作,加上细微的任务,实现高性能和可缩放性。然而,减少工作偷窃运行时间背景下的总能源消耗仍然具有挑战性,特别是在使用不同类型CPU核心的不对称结构时。一个共同的节能方法涉及动态电压和频率缩放(DVFS),根据任务平行、盗窃关系和任务关键性等因素来进行抽动。本文提出以下意见:(一) 利用DVFS进行每月任务化的杠杆化,以达到高性能和可缩放时间级DVFS的精密任务化任务和环境中的能源消耗总量;(二) 任务可塑性,其中一项单项任务可以通过工作共享方式执行多条线/核心,有助于减少能源消耗量;(三) 任务和分配资源(即核心类型和核心数量)之间的不匹配可能会对能源消耗产生有害影响。在本文件中,我们建议采用州级战略安全信息系统(EneRgyal Connational Schuler),在集群/芯片级DVFS-real Constal Construal lading sal lading sal sal lading sal lading sal sal sliver sal sal sal sal liviewal sal sal sal liverts, lading sal sal sal sal sal sal sal sal sal sal sal sal sal ladings sal sal sal sal liviewmental sal sal sal ladingmentalts, ladingmental sal sal) ladings sal