首页> 外文会议>2010 IEEE International Conference on Cluster Computing >Performance Analysis of Multi-level Time Sharing Task Assignment Policies on Cluster-Based Systems
【24h】

Performance Analysis of Multi-level Time Sharing Task Assignment Policies on Cluster-Based Systems

机译:基于集群的系统上多级时间共享任务分配策略的性能分析

获取原文

摘要

There is extensive evidence indicating that moderncomputer workloads exhibit highly variability in their processing requirements. Under such workloads, traditional task assignment policies do not perform well. Size-based policies perform significantly better than traditional policies under highly variable workloads. The main limitation of existing size-based policies though is that these have been targeted for batch computing systems. In this paper, we provide performance analysis of 3novel task assignment policies that are based on multi-level time sharing policy, namely MLMS (Multi-level Multi-server Task Assignment Policy), MLMS-M (Multi-level Multi-server Task Assignment Policy with Task Migration) and MLMS-M* (Multi-tier Multi-level Multi-server Task Assignment policy with Task Migration). These policies attempt to improve the performance first by giving preferential treatment to small tasks and second by reducing the task size variability in host queues. MLMS only reduces the variability of tasks locally, while MLMS-M and MLMS-M* utilise both local and global variance reduction mechanisms. MLMS outperforms existing size-based policies such as TAGS under specific workload conditions. MLMS-M outperforms TAGS under all the scenarios considered. MLMS-M*outperforms TAGS and MLMS-M under specific workload conditions and vice versa.
机译:有广泛的证据表明现代计算机工作负载在其处理要求中表现出高度可变性。在此工作负载下,传统的任务分配策略不会表现良好。基于大小的策略在高度可变工作量下比传统策略更好地表现更好。现有大小基于大小的策略的主要限制是这些已针对批量计算系统。在本文中,我们提供了基于多级时间共享策略的3Novel任务分配策略的性能分析,即MLMS(多级多服务器任务分配策略),MLMS-M(多级多服务器任务分配任务迁移的策略)和MLMS-M *(多层次多级多级多服务器任务分配策略与任务迁移)。这些政策通过将优惠待遇对小型任务提供给小型任务,通过减少主机队列中的任务大小可变性来改进性能。 MLM仅减少本地任务的可变性,而MLMS-M和MLMS-M *利用本地和全局方差减少机制。 MLMS在特定工作负载条件下优于现有的基于大小的策略,例如标签。 MLMS-M在所有方案下表达标签。 MLMS-M *优于特定工作量条件下的标签和MLMS-M,反之亦然。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号