An Effective Techniques Using Apriori and Logistic Methods in Cloud Computing

S. Selvam, Vellaichamy Nadar
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Abstract

This paper presents a creativity data prefetching scheme on the loading servers in distributed file systems for cloud computing. The server will get and piggybacked the frequent data from the client system, after analyzing the fetched data is forward to the client machine from the server. To place this technique to work, the data about client nodes is piggybacked onto the real client I/O requests, and then forwarded to the relevant storage server. Next, dual prediction algorithms have been proposed to calculation future block access operations for directing what data should be fetched on storage servers in advance. Finally, the prefetching data can be pressed to the relevant client device from the storage server. Over a series of evaluation experiments with a group of application benchmarks, we have demonstrated that our presented initiative prefetching technique can benefit distributed file systems for cloud environments to achieve better I/O performance. In particular, configuration-limited client machines in the cloud are not answerable for predicting I/O access operations, which can certainly contribute to preferable system performance on them.
云计算中Apriori和Logistic方法的有效应用
提出了一种基于云计算分布式文件系统加载服务器的数据预取方案。服务器将从客户端系统获取和承载频繁的数据,分析后将获取的数据从服务器转发到客户端机器。为了使这种技术发挥作用,有关客户机节点的数据被装载到实际的客户机I/O请求上,然后转发到相关的存储服务器。其次,提出了双预测算法来计算未来的块访问操作,以便提前指导应该在存储服务器上获取哪些数据。最后,将预取数据从存储服务器压入相应的客户端设备。通过对一组应用程序基准的一系列评估实验,我们证明了我们提出的主动预取技术可以使云环境中的分布式文件系统受益,从而实现更好的I/O性能。特别是,云中的配置有限的客户机不负责预测I/O访问操作,这当然有助于提高它们的系统性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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