考虑成本的Hadoop虚拟集群可扩展性分析与改进

Yanzhang He, Xiaohong Jiang, Zhaohui Wu, Kejiang Ye, Zhongzhong Chen
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引用次数: 5

摘要

随着大数据和云计算的快速发展,云中的大数据分析即服务越来越受欢迎。越来越多的个人和组织倾向于租用虚拟集群来存储和分析数据,而不是构建自己的数据中心。然而,在虚拟化环境中,使用更多节点的集群来处理大数据是否比通过在集群中原有虚拟机上增加更多资源来进行扩展更好,目前还不清楚。本文在考虑成本的情况下,研究了hadoop虚拟集群的可扩展性性能问题。本文首先提出了VirtualMR平台的设计与实现,该平台可以为用户提供可扩展的hadoop虚拟集群服务,用于基于MapReduce的大数据分析。然后,我们运行了一系列hadoop基准测试和真实的并行机器学习算法来评估可伸缩性性能,包括scale-up方法和scale-out方法。最后,我们将该平台与资源监控模块集成,并提出了一个系统调谐器。通过对监控数据的分析,动态调整hadoop框架参数和虚拟机配置,提高资源利用率,降低租金成本。实验结果表明,在cpu密集型应用程序中,扩展方法优于扩展方法,而在I/ o密集型应用程序中,扩展方法优于扩展方法。验证了系统调谐器在提高资源利用率和降低租金成本方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalability Analysis and Improvement of Hadoop Virtual Cluster with Cost Consideration
With the rapid development of big data and cloud computing, big data analytics as a service in the cloud is becoming increasingly popular. More and more individuals and organizations tend to rent virtual cluster to store and analyze data rather than building their own data centers. However, in virtualization environment, whether scaling out using a cluster with more nodes to process big data is better than scaling up by adding more resources to the original virtual machines (VMs) in cluster is not clear. In this paper, we study the scalability performance issues of hadoop virtual cluster with cost consideration. We first present the design and implementation of VirtualMR platform which can provide users with scalable hadoop virtual cluster services for the MapReduce based big data analytics. Then we run a series of hadoop benchmarks and real parallel machine learning algorithms to evaluate the scalability performance, including scale-up method and scale-out method. Finally, we integrate our platform with resource monitoring module and propose a system tuner. By analyzing the monitored data, we dynamically adjust the parameters of hadoop framework and virtual machine configuration to improve resource utilization and reduce rent cost. Experimental results show that the scale-up method outperforms the scale-out method for CPU-bound applications, and it is opposite for I/O-bound applications. The results also verify the efficiency of system tuner to increase resource utilization and reduce rent cost.
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