Enhanced Adaptive Learning Mechanism for Cloud Selection
-
2018-04-25 https://doi.org/10.14419/ijet.v7i2.24.12149 -
Adaptive Learning Mechanism, Incentive, Forgetting, Degenerate, Remembrance, Systematic Literature Review (SLR). -
Abstract
Estimation of cloud services in a distributed computing environment is taking more interests. There is a wealth of developing cloud benefit assets that makes it difficult for the user to select the best administration related to own applications in an evolving multiple cloud environment, particularly for online processing applications. To make clients to choose their interested cloud adequately, we need a model which holds the cloud profits, and hence dynamic cloud benefit determination procedure named Dynamic Cloud Selection (DCS) is adapted. In this procedure of selected services, every cloud benefit business deals with some group of cloud administrations, and executes the DCS method. This paper studies the cloud selection and proposed a way to improve the cloud selection based on related measures. The measures are reliability, response time, throughput, availability, utilization, resilience, scalability, and elasticity. The system is contrived to enhance the cloud benefit choice powerfully and to restore the best administration result to the client. These measures are used to form best selection strategy. User memory requirement is also considered to improve the preferred task. Experimental results proved that using this new strategy, best cloud selection is made efficiently.
Â
Â
-
References
[1] Wang X, Cao J, Xiang Y. “Dynamic Cloud Service Selection using an Adaptive Learning Mechanism in Multi-cloud Computing.â€Journal of Systems and Software, pp.195-210, 2015.
[2] Gupta R. “Above the Clouds: A View of Cloud Computing,†Asian Journal of Research in Social Sciences and Humanitiesâ€, pp.84-110, 2012.
[3] Maamar Z, Mostefaoui SK, Yahyaoui H. Toward, “An Agent-based and Context-oriented Approach for Web Services Compositionâ€, IEEE transactions on knowledge and data engineering, pp.686-97, 2005.
[4] Tong H, Cao J, Zhang S, Li M. “A Distributed Algorithm for Web Service Composition based on Service Agent Modelâ€, IEEE Transactions on Parallel and Distributed Systems,2011.
[5] Gutierrez-Garcia JO, Sim KM, “Agent-based Cloud Service Composition.†Applied intelligence,†pp.436-64, 2013.
[6] Hwang SY, Lim EP, Lee CH, Chen CH,“Dynamic Web Service Selection for Reliable Web Service Compositionâ€, IEEE Transactions on Services Computing, pp.104-16, 2008.
[7] Li Z, O'brien L, Zhang H, Cai R “On a Catalogue of Metrics for Evaluating Commercial Cloud Servicesâ€, InGrid Computing (GRID), CM/IEEE 13th International Conference, pp. 164-173, 2012.
[8] Sharma Y, Javadi B, Si W, Sun D. “Reliability and energy efficiency in cloud computing systems: Survey and taxonomyâ€, Journal of Network and Computer Applications,pp.66-85, 2016.
[9] Li X, Liu Y, Kang R, Xiao L. “Service Reliability Modeling and Evaluation of Active Cloud Data Center based on the IT infrastructureâ€, Microelectronics Reliability, pp.271-282, 2017
[10] Mohammed Alhamad, Tharam Dillon, Chen Wu, Elizabeth Chang, “Real-Time and Stream Applicationsâ€, Response Time for Cloud Computing Providers,2010.
[11] Jayathilaka H, Krintz C, Wolski R, “Response time service level agreements for cloud-hosted webapplicationsâ€, Proceedings of the Sixth ACM Symposium on Cloud Computing, pp. 315-328, 2015.
[12] Suresh PL, Canini M, Schmid S, Feldmann A, “C3: Cutting Tail Latency in Cloud Data Stores via Adaptive Replica Selectionâ€, NSDI, pp. 513-527, 2015.
[13] Persico V, Marchetta P, Botta A, Pescapé A, “Measuring network throughput in the cloud: The case of Amazon EC2â€, Computer Networks. pp. 408-22, 2015.
[14] Gade AH, “A Survey paper on Cloud Computing and its effective utilization with Virtualizationâ€, International Journal of Scientific & Engineering Research, pp. 357-363, 2013.
[15] Johannes A, Nanda P, He X, “Resource Utilization Based Dynamic Pricing Approach on Cloud Computing Applicationâ€, International Conference on Algorithms and Architectures for Parallel Processing, pp. 669-677, 2015.
[16] Lehrig S, Eikerling H, Becker S, “Scalability, Elasticity, and Efficiency in Cloud Computing: A systematic literature review of definitions and metricsâ€, Proceedings of the 11th International ACM SIGSOFT Conference on Quality of Software Architectures, pp. 83-92, 2015.
[17] Jhawar R, Piuri V, “Fault Tolerance and Resilience in cloud computing environments,†Computer and Information Security Handbook , pp. 165-181, 2017.
[18] Beltrán M, “BECloud: A new approach to analyse elasticity enablers of cloud services.†Future Generation Computer Systems, pp.39-49, 2016.
[19] De Vrieze P, Xu L, “An Analysis of Resilience of a cloud based incident notification process,†Working Conference on Virtual Enterprises, pp. 110-121,2015.
[20] Sun L, Dong H, Hussain FK, Hussain OK, Chang E, “Cloud service selection: State-of-the-art and future research directionsâ€, Journal of Network and Computer Applications, pp.134 50, 2014.
[21] Hwang K, Bai X, Shi Y, Li M, Chen WG, Wu Y, “Cloud performance modelling with benchmarkevaluation of elastic scaling strategiesâ€, IEEE Transactions on parallel and distributed systems, pp. 130-43, 2016.
[22] Rahman MS, Ding C, Liu X, Chi CH, “A testbed for collecting QoS data of cloud-based analytic services,†IEEE 9th International Conference on Cloud Computing (CLOUD),pp. 236-243, 2016 .
[23] Maruthi, P.Shanthi, “Efficient Dynamic Cloud Service Selection In Multi Cloud Computing Using Adaptive Learning Mechanism,†International Journal of Pure and Applied Mathematics, 2017 .
[24] Deng J, Huang SC, Han YS, Deng JH, “Fault-tolerant and reliable computation in cloud computingâ€, IEEE GLOBECOM Workshops (GC Wkshps), pp. 1601-1605, 2010.
[25] Gutierrez-Garcia JO, Sim KM, “Agent-based cloud service composition,†Applied intelligence, pp.436-64, 2013.
[26] T.Padmapriya and V.Saminadan, “Utility based Vertical Handoff Decision Model for LTE-A networksâ€, International Journal of Computer Science and Information Security, ISSN 1947-5500, vol.14, no.11, November 2016.
[27] S.V.Manikanthan and D.Sugandhi “ Interference Alignment Techniques For Mimo Multicell Based On Relay Interference Broadcast Channel †International Journal of Emerging Technology in Computer Science & Electronics (IJETCSE) ISSN: 0976-1353 Volume- 7 ,Issue 1 –MARCH 2014.
-
Downloads
-
How to Cite
Maruthi, V., Shanthi, P., & Umamakeswari, A. (2018). Enhanced Adaptive Learning Mechanism for Cloud Selection. International Journal of Engineering & Technology, 7(2.24), 512-517. https://doi.org/10.14419/ijet.v7i2.24.12149Received date: 2018-04-25
Accepted date: 2018-04-25
Published date: 2018-04-25