首页> 外文会议>IEEE International Conference on Trust, Security and Privacy in Computing and Communications >H-PFSP: Efficient Hybrid Parallel PFSP Protected Scheduling for MapReduce System
【24h】

H-PFSP: Efficient Hybrid Parallel PFSP Protected Scheduling for MapReduce System

机译:H-PFSP:MapReduce系统的有效混合并行PFSP保护调度

获取原文

摘要

MapReduce provides a data-parallel computing framework, and has emerged as a popular processing model due to the simplicity of operations for big data application developers. Data processing applications from many different domains such as search and data mining are usually developed using open-source Hadoop implementation of MapReduce or self-developed MapReduce-like implementations like Dryad [1] and Ciel [2]. In cloud environments, products like Amazon's Elastic Compute Cloud (EC2) [3] provide MapReduce services as third-party multi-tenant service. Even within a company, a number of products may share the MapReduce cluster. Therefore, a fair and efficient scheduler is crucial to improve performance of submitted jobs and guarantee multi-user fairness. However, in practice, it is hard to guarantee both fairness and per-job performance, especially when jobs are scheduled without accurate estimation. We show that processor sharing (PS) type of schedulers like Fair Scheduling degrade the per-job performance in a multi-user environment. We present a new scheduling policy, Hybrid Parallel pessimistic Fair Schedule Protocol (H-PFSP), that can finish every job no later than Fair scheduler does. Unlike Fair scheduler, however, it can improve the per-job performance of MapReduce systems with relatively accurate job progress estimation.
机译:MapReduce提供了一种数据并行计算框架,并且由于大数据应用程序开发人员的操作简单,因此出现为流行的处理模型。来自许多不同域的数据处理应用程序,例如搜索和数据挖掘,通常使用MapRofuce的开源Hadoop实现开发,如Dryad [1]和Ciel [2]。在云环境中,亚马逊弹性计算云(EC2)等产品将MapReduce服务提供为第三方多租户服务。即使在公司内,许多产品也可能共享MapReduce集群。因此,公平和高效的调度程序对于提高提交的工作的绩效并保证多用户公平性至关重要。然而,在实践中,很难保证公平和每职能性能,特别是当没有准确估计的工作安排时。我们显示处理器共享(PS)类型的调度程序,如公平调度,在多用户环境中降低了每项性能。我们展示了一个新的调度策略,混合并行悲观公平计划协议(H-PFSP),可以稍后完成每项工作,而不是公平的调度程序。然而,与公平调度器不同,它可以提高MapReduce系统的每个作业性能,具有相对准确的作业进度估计。

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