改进地理分布式云中的Hadoop服务发放

Qi Zhang, Ling Liu, Kisung Lee, Yang Zhou, Aameek Singh, N. Mandagere, Sandeep Gopisetty, Gabriel Alatorre
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引用次数: 36

摘要

随着越来越多的数据以地理分布的方式生成和收集,再加上大规模数据密集型分析的计算需求增加,我们目睹了对地理分布云数据中心和混合云服务供应的需求不断增长,使组织能够支持额外计算资源的即时需求,并通过利用云资源扩展内部资源以维持峰值服务需求。在这样一个地理上分布式的计算环境中运行应用程序的一个关键挑战是,如何有效地对地理上分布在多个数据中心的数据进行调度和执行分析。在本文中,我们首先比较了多数据中心Hadoop部署和单数据中心Hadoop部署,以确定地理分布式云中固有的性能问题。在地理分布云数据中心的背景下,对问题表征进行了概括,并讨论了一般优化策略。然后,我们描述了一套系统级优化的设计和实现,以提高Hadoop服务在地理分布式云中提供的性能,包括基于预测的作业本地化,可配置的HDFS数据放置和数据预取。实验评估表明,基于预测的定位错误率非常低,小于5%,优化后的Reduce阶段执行时间提高48.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Hadoop Service Provisioning in a Geographically Distributed Cloud
With more data generated and collected in a geographically distributed manner, combined by the increased computational requirements for large scale data-intensive analysis, we have witnessed the growing demand for geographically distributed Cloud datacenters and hybrid Cloud service provisioning, enabling organizations to support instantaneous demand of additional computational resources and to expand inhouse resources to maintain peak service demands by utilizing cloud resources. A key challenge for running applications in such a geographically distributed computing environment is how to efficiently schedule and perform analysis over data that is geographically distributed across multiple datacenters. In this paper, we first compare multi-datacenter Hadoop deployment with single-datacenter Hadoop deployment to identify the performance issues inherent in a geographically distributed cloud. A generalization of the problem characterization in the context of geographically distributed cloud datacenters is also provided with discussions on general optimization strategies. Then we describe the design and implementation of a suite of system-level optimizations for improving performance of Hadoop service provisioning in a geo-distributed cloud, including prediction-based job localization, configurable HDFS data placement, and data prefetching. Our experimental evaluation shows that our prediction based localization has very low error ratio, smaller than 5%, and our optimization can improve the execution time of Reduce phase by 48.6%.
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