Optimized data analysis in cloud using BigData analytics techniques

Mr. S. Ramamoorthy, Dr. S. Rajalakshmi
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引用次数: 18

Abstract

Because of the huge reduce in the overall investment and greatest flexibility provided by the cloud, all the companies are nowadays migrating their applications towards cloud environment. Cloud provides the larger volume of space for the storage and different set of services for all kind of applications to the cloud users without any delay and not required any major changes at the client level. When the large amount of user data and application results stored on the cloud environment, will automatically make the data analysis and prediction process became very difficult on the different clusters of cloud. Whenever the used required to analysis the stored data as well as frequently used services by other cloud customers for the same set of query on the cloud environment hard to process. The existing data mining techniques are insufficient to analyse those huge data volumes and identify the frequent services accessed by the cloud users. In this proposed scheme trying to provide an optimized data and service analysis based on Map-Reduce algorithm along with BigData analytics techniques. Cloud services provider can Maintain the log for the frequent services from the past history analysis on multiple clusters to predict the frequent service. Through this analysis cloud service provider can able to recommend the frequent services used by the other cloud customers for the same query. This scheme automatically increase the number of customers on the cloud environment and effectively analyse the data which is stored on the cloud storage.
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使用大数据分析技术优化云中的数据分析
由于总体投资的大幅减少和云提供的最大灵活性,现在所有的公司都在将他们的应用程序迁移到云环境。云为云用户提供了更大的存储空间和各种应用程序的不同服务集,没有任何延迟,也不需要在客户端级别进行任何重大更改。当大量的用户数据和应用结果存储在云环境中时,会自动使得数据分析和预测过程在不同集群的云上变得非常困难。每当使用需要分析存储的数据以及其他云客户经常使用的服务时,对同一组查询在云环境上难以处理。现有的数据挖掘技术不足以分析这些庞大的数据量并识别云用户频繁访问的服务。本方案尝试提供基于Map-Reduce算法和BigData分析技术的优化数据和服务分析。云服务提供商可以通过对多个集群的历史分析,维护频繁服务的日志,以预测频繁服务。通过这种分析,云服务提供商能够推荐其他云客户针对同一查询使用的常用服务。该方案自动增加云环境中的客户数量,并有效地分析存储在云存储中的数据。
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