Cloud Computing Model For Enhanced Resource Usage In Multi-Tenant Application Environment

  IJCTT-book-cover
 
         
 
© 2020 by IJCTT Journal
Volume-68 Issue-9
Year of Publication : 2020
Authors : Michael Okumu Ujunju, Solomon Ogara, Kelvin Omieno
DOI :  10.14445/22312803/IJCTT-V68I9P107

How to Cite?

Michael Okumu Ujunju, Solomon Ogara, Kelvin Omieno, "Cloud Computing Model For Enhanced Resource Usage In Multi-Tenant Application Environment," International Journal of Computer Trends and Technology, vol. 68, no. 9, pp. 45-52, 2020. Crossref, 10.14445/22312803/IJCTT-V68I9P107

Abstract
Cloud computing technology is built on the concept of virtualization to facilitate resource sharing among many cloud tenants. Due to this attractive feature of the cloud, many organizations and institutions are adopting this technology. Cloud users entrust their resources, hardware, and software to cloud service providers to facilitate sharing, which is the main objective of cloud technology. However, fair allocation of these resources is considered a problem as users don`t realize optimal use of these resources, ensuring equitable sharing and allocation of resources. The purpose of this paper is to simulate results, built, and test a model for resources used in cloud computing multi-tenant application environments. Experimental and design science research designs were used. Data was extracted via simulated results and outputs. The complementary data was collected through focus group discussion, thinkaloud- protocol, and questioning protocol, which was used in the model validation process. The developed model is expected to help in improving resource usage control for cloud users to enable cloud service providers to enhance the quality of service delivery to its many customers.

Reference
[1] Liu Z., Wynter L., Xia C. H., and Zhang F., (2006). “Parameter inference of queueing models for it systems using end-to-end measurements,” Performance Evaluation, vol. 63, no. 1, p. 36/60.
[2] Kraft S., S. Pacheco-Sanchez S., Casale G., and Dawson S.,(2009). “Estimating service resource consumption from response time measurements.” ICST Institute for Computer Sciences, Social-Informatics and Telecommunications Engineering.
[3] Harris D., (2008) “Why ‘Grid’ Doesn’t Sell. On-Demand Enterprise blog”, 24 March 2008. http://www.ondemandenterprise. com/blogs/26058979.html. Accessed 20 August 2009
[4] NIST (2013). Cloud computing Standards Roadmap, Special publication 500-29, Version 2, July 2013.
[5] Hashizume et al. (2013). An Analysis of Security issues for cloud computing. Journal of Internet Services and Applications.
[6] Matsui, R. D. (2015). The Art of Data Science: A Guide for Anyone Who Works with Data. Retrieved from http://leanpub.com/artofdatascience.
[7] Bin, F., and Yuan G., (2013) Development of Strategy Software and Algorithm Simulators for Multi-Agent System in Dynamic Environments, Technology, and Communication.
[8] Andersson, A., Hallberg, N., and Timpka, T. (2003). “Model for interpreting work and information management in processoriented healthcare organizations”, International Journal of Medical Informatics, 72, 47–56.
[9] Jabareen, Y. (2009). “Building a Conceptual Framework: Philosophy, Definitions, and Procedure”. International Journal of Qualitative Methods, 48-62.
[10] Anselemo, P. (2014). “Technical Factors and User Personality Characteristics as Indicators of Smart Phone Integration into Self-Directed Learning in University”. Research Thesis, MMUST.

Keywords
Cloud Computing, Resource Usage, Multi- Tenant, Model