Adaptive and virtual reconfigurations for effective dynamic job scheduling in cluster systems

Songqing Chen, Li Xiao, Xiaodong Zhang
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引用次数: 17

Abstract

In a cluster system with dynamic load sharing support, a job submission or migration to a workstation is determined by the availability of CPU and memory resources of the workstation at the time. In such a system, a small number of running jobs with unexpectedly large memory allocation requirements may significantly increase the queuing delay times of the rest of jobs with normal memory requirements, slowing down executions of individual jobs and decreasing the system throughput. We call this phenomenon as the job blocking problem because the big jobs block the execution pace of majority jobs in the cluster. We propose a software method incorporating with dynamic load sharing, which adaptively reserves a small set of workstations through virtual cluster reconfiguration to provide special services to the jobs demanding large memory allocations. This policy implies the principle of shortest-remaining-processing-time policy. As soon as the blocking problem is resolved by the reconfiguration, the system will adaptively switch back to the normal load sharing state. We present three contributions in this study. (1) the conditions to cause the job blocking problem; (2) the adaptive software method in a dynamic load sharing system; and (3) trace-driven simulations. We show that our method can effectively improve the cluster computing performance by quickly resolving the job blocking problem. The effectiveness and performance insights are also analytically verified.
集群系统中有效动态作业调度的自适应和虚拟重构
在具有动态负载共享支持的集群系统中,作业提交或迁移到工作站是由工作站当时的CPU和内存资源的可用性决定的。在这样的系统中,少量运行的作业具有出乎意料的大内存分配需求,可能会显著增加其他具有正常内存需求的作业的排队延迟时间,从而减慢单个作业的执行速度并降低系统吞吐量。我们将这种现象称为作业阻塞问题,因为大作业阻塞了集群中大多数作业的执行速度。本文提出了一种结合动态负载共享的软件方法,通过虚拟集群重构自适应地保留少量工作站,为需要大量内存分配的作业提供特殊服务。该策略隐含了剩余处理时间最短策略的原则。一旦重新配置解决了阻塞问题,系统将自适应切换回正常的负载共享状态。在这项研究中,我们提出了三个贡献。(一)造成作业阻塞问题的条件;(2)动态负荷分担系统的自适应软件方法;(3)轨迹驱动仿真。结果表明,该方法能够快速解决作业阻塞问题,有效提高集群计算性能。对有效性和性能的见解也进行了分析验证。
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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