Agile middleware for scheduling: meeting competing performance requirements of diverse tasks

Feng Yan, S. Hughes, Alma Riska, E. Smirni
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引用次数: 2

Abstract

As the need for scaled-out systems increases, it is paramount to architect them as large distributed systems consisting of off-the-shelf basic computing components known as compute or data nodes. These nodes are expected to handle their work independently, and often utilize off-the-shelf management tools, like those offered by Linux, to differentiate priorities of tasks. While prioritization of background tasks in server nodes takes center stage in scaled-out systems, with many tasks associated with salient features such as eventual consistency, data analytics, and garbage collection, the standard Linux tools such as nice and ionice fail to adapt to the dynamic behavior of high priority tasks in order to achieve the best trade-off between protecting the performance of high priority workload and completing as much low priority work as possible. In this paper, we provide a solution by proposing a priority scheduling middleware that employs different policies to schedule background tasks based on the instantaneous resource requirements of the high priority applications running on the server node. The selection of policies is based on off-line and on-line learning of the high priority workload characteristics and the imposed performance impact due to low priority work. In effect, this middleware uses a {\em hybrid} approach to scheduling rather than a monolithic policy. We prototype and evaluate it via measurements on a test-bed and show that this scheduling middleware is robust as it effectively and autonomically changes the relative priorities between high and low priority tasks, consistently meeting their competing performance targets.
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用于调度的敏捷中间件:满足不同任务的竞争性性能需求
随着向外扩展系统需求的增加,将它们架构为大型分布式系统至关重要,这些系统由现成的基本计算组件(称为计算或数据节点)组成。这些节点被期望独立地处理它们的工作,并且经常使用现成的管理工具(如Linux提供的工具)来区分任务的优先级。虽然服务器节点中后台任务的优先级在向外扩展的系统中占据中心位置,并且许多任务与最终一致性、数据分析和垃圾收集等显著特性相关联,但是标准的Linux工具(如nice和ionice)无法适应高优先级任务的动态行为,以便在保护高优先级工作负载的性能和完成尽可能多的低优先级工作之间实现最佳权衡。在本文中,我们通过提出一个优先级调度中间件提供了一个解决方案,该中间件采用不同的策略来调度后台任务,该策略基于运行在服务器节点上的高优先级应用程序的瞬时资源需求。策略的选择基于对高优先级工作负载特征的离线和在线学习,以及由于低优先级工作而造成的性能影响。实际上,该中间件使用{\em hybrid}方法来调度,而不是单一策略。我们通过测试平台上的测量对其进行了原型化和评估,并表明该调度中间件是健壮的,因为它有效且自主地更改高优先级和低优先级任务之间的相对优先级,始终满足它们相互竞争的性能目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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