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A Dynamic Predictive Approach to Identify an Optimal Cloud Availability Zone with Maximum Satisfaction Level


Affiliations
1 Department of Computer Science and Engineering, University, Coimbatore, Tamil Nadu, India
2 Department of Computer Science and Engineering, Karpagam University, Coimbatore, Tamil Nadu, India
     

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Cloud infrastructure service provider allows the users to place their business application into availability zone across various regions world-wide by enabling enterprises like amazon with sufficient capability. Amazon EC2 is an instance to be placed in a zone to provision their resources to run their own applications. Multiple availability zones are composed and located in single region each one is different from its character specification because of its hardware and software built version. These zones allows achieving higher availability with lower failure rates but may results in different quality of service against user requirements. This situation may not advertised by cloud infrastructure service provider. In this paper, we proposed the prediction model build by repeated k-fold cross validation, which overcomes the prediction error Type-I exist in k-fold cross validation. This proposed technique helps us to predict optimum availability zone with best user satisfaction level for amazons EC2 placement in heterogeneous environment.

Keywords

Availability Zone, Machine Learning Technique, Repeated k-Fold Cross Validation, Prediction Model.
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  • A Dynamic Predictive Approach to Identify an Optimal Cloud Availability Zone with Maximum Satisfaction Level

Abstract Views: 386  |  PDF Views: 3

Authors

R. Santhosh
Department of Computer Science and Engineering, University, Coimbatore, Tamil Nadu, India
A. Ramya
Department of Computer Science and Engineering, Karpagam University, Coimbatore, Tamil Nadu, India

Abstract


Cloud infrastructure service provider allows the users to place their business application into availability zone across various regions world-wide by enabling enterprises like amazon with sufficient capability. Amazon EC2 is an instance to be placed in a zone to provision their resources to run their own applications. Multiple availability zones are composed and located in single region each one is different from its character specification because of its hardware and software built version. These zones allows achieving higher availability with lower failure rates but may results in different quality of service against user requirements. This situation may not advertised by cloud infrastructure service provider. In this paper, we proposed the prediction model build by repeated k-fold cross validation, which overcomes the prediction error Type-I exist in k-fold cross validation. This proposed technique helps us to predict optimum availability zone with best user satisfaction level for amazons EC2 placement in heterogeneous environment.

Keywords


Availability Zone, Machine Learning Technique, Repeated k-Fold Cross Validation, Prediction Model.