首页> 外文会议>IEEE International Conference on Cloud Computing Technology and Science >Towards Economic Fairness for Big Data Processing in Pay-as-You-Go Cloud Computing
【24h】

Towards Economic Fairness for Big Data Processing in Pay-as-You-Go Cloud Computing

机译:现收现付云计算中实现大数据处理的经济公平

获取原文

摘要

Recent trends indicate that the pay-as-you-go Infrastructure-as-a-Service (IaaS) cloud computing has become a popular platform for big data processing applications, due to its merits of accessibility, elasticity and flexibility. However, the resource demands of processing workloads are often varying over time for individual users, implying that it is hard for a user to keep the high resource utilization for cost efficiency all the time. Resource sharing is a classic and effective approach to improve the resource utilization via consolidating multiple users' workloads. However, we show that, current existing fair policies such as max-min fairness, widely adopted and implemented in many popular big data processing systems including YARN, Spark, Mesos, and Dryad, are not suitable for pay-as-you-go cloud computing. We show that it is because of their memory less allocation feature which can arise a series of problems in the pay-as-you-go cloud environment, namely, cost-inefficient workload submission, untruthfulness and resource-as-you-pay unfairness. This paper presents these problems and outlines our plans to address them for pay-as-you-go cloud computing. We introduce our preliminary work done on the single-resource fairness and our ongoing work for multi-resource fairness, and outline our future work.
机译:最近的趋势表明,即付即用的基础架构即服务(IaaS)云计算由于具有可访问性,弹性和灵活性的优点,已成为大数据处理应用程序的流行平台。但是,对于单个用户而言,处理工作负载的资源需求通常会随时间变化,这意味着用户很难始终保持高资源利用率以保持成本效益。资源共享是通过合并多个用户的工作负载来提高资源利用率的经典有效方法。但是,我们表明,在YARN,Spark,Mesos和Dryad等许多流行的大数据处理系统中广泛采用和实施的当前现有公平政策,例如max-min公平性,不适合随用随付云计算。我们表明,正是由于它们的内存较少分配功能,在按需付费的云环境中可能会产生一系列问题,即成本效率低的工作负载提交,不真实性和按需付费的资源不公平性。本文介绍了这些问题,并概述了我们为按需付费的云计算解决这些问题的计划。我们将介绍我们在单一资源公平性方面所做的初步工作以及为实现多资源公平性而正在进行的工作,并概述了我们未来的工作。

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