首页> 外文会议>Computing, Communications and Applications Conference >A scheduling mechanism for multiple MapReduce jobs in a workflow application (position paper)
【24h】

A scheduling mechanism for multiple MapReduce jobs in a workflow application (position paper)

机译:工作流程应用中多个MapReduce作业的调度机制(位置纸)

获取原文

摘要

MapReduce is currently an attractive model for data intensive application due to easy interface of programming, high scalability and fault tolerance capability. It is well suited for applications requiring processing large data with distributed processing resources such as web data analysis, bio informatics, and high performance computing area. There are many studies of job scheduling mechanism in shared cluster for MapReduce. However there is a need for scheduling workflow service composed of multiple MapReduce tasks with precedence dependency in multiple processing nodes. The contribution of this paper is proposing a scheduling mechanism for a workflow service containing multiple MapReduce jobs. The workflow application has precedence dependency constraints among multiple tasks, represented as directed acyclic graph (DAG). Also, for less data transfer cost in limited bisection bandwidth, data dependency criterion should be considered for scheduling multiple map-reduce jobs in a workflow. The proposed scheduling mechanism provides 1) scheduling MapReduce tasks regarding precedence constraints and 2) pre-data placement method considering data dependency constraints for saving data transfer cost over network.
机译:MapReduce目前是一种有吸引力的数据密集型应用模型,因为方便的编程,高可扩展性和容错能力。它非常适用于需要处理具有分布式处理资源的大数据的应用,例如Web数据分析,生物信息学和高性能计算区域。 MapReduce共享集群中的作业调度机制有许多研究。然而,需要调度由多个处理节点中具有优先依赖的多MapReduce任务组成的工作流服务。本文的贡献提出了一种用于包含多个MapReduce作业的工作流服务的调度机制。工作流应用程序在多个任务中具有优先级依赖关系,以指示的非循环图(DAG)表示。此外,对于有限的二分布带宽中的数据传输成本较少,应考虑数据依赖性标准,以便在工作流中调度多个映射减少作业。所提出的调度机制提供了关于优先约束的MAPREDUCE任务,以及考虑用于通过网络节省数据传输成本的数据依赖性约束的预数据放置方法。

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