采用集群的云服务推荐系统

T. Zain, M. Aslam, Imran Mujaddid Rabbani, A. Enríquez
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引用次数: 15

摘要

云计算的流行导致了为Web开发的服务数量的增加。从许多常见的可用服务中选择合适的云服务已经变得非常困难,特别是对于非it用户而言,即用户选择最适合其需求的云服务非常麻烦。服务质量(QOS)被认为是选择过程中的主要标准之一。本文的重点是云服务的选择方法,允许用户指定他们的感知质量标准。我们的方法是基于数据挖掘技术聚类,这是一种无监督学习技术。开发的算法根据选择的质量属性将云服务分类为不同数量的组,并进行相应的排序。该研究旨在帮助各种类型的用户在不参与任何金融合同的情况下选择云服务。为了验证我们的最佳服务选择方法,我们使用像Google、Microsoft和Amazon这样的云供应商来测试我们的系统。
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Cloud service recommender system using clustering
The prevalence of cloud computing has resulted in an increased number of services developed for the Web. Selecting an appropriate cloud service from amongst a lot of commonly featured available services has become very difficult particularly for non-IT users i.e. it is cumbersome for users to select a cloud service that is best suited to their requirements. Quality of service (QOS) is considered as one of the main criterion in the selection process. This paper focuses on cloud service selection method allowing users to specify their perception of quality criteria. Our approach is based on the data mining technique clustering which is an unsupervised learning technique. Developed algorithm classifies the cloud services into different number of groups based on selected quality attributes and ranks them accordingly. The research aims to assist every type of users for choosing a cloud service without engaging into any financial contract. In order to validate our approach of best service selection, we test our system with cloud vendors like Google, Microsoft, and Amazon.
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