Navigating Network Security Challenges in Cloud Computing: A Study of Organizational Behavior and Risk
DOI:
https://doi.org/10.36676/dira.v12.i3.113Keywords:
Cloud, Bandwidth Management, Load Balancing, Grid Computing, Minimum Bandwidth ConsumptionAbstract
Incoming Information Technology (IT) services appear with cloud computing perspectives that provide users access to IT resources anytime, anywhere. These services should be good enough for the user with some advantages for the cloud service provider. To achieve this goal, you must face many challenges, load balancing is one of these challenges. The most convenient option for some functions does not mean that option is always a good choice to achieve the entire work all the time. Resource overload and bad traffic that can lead to time exhaustion should be avoided, this can be obtained through appropriate load balancing mechanisms. This paper offers a simple solution for choosing the preferred server to distribute functions based on minimum bandwidth consumption.
References
Anthony, R. (2015). Systems programming: designing and developing distributed applications.
Morgan Kaufmann.
Almuttairi, R.M., Wankar, R., Negi, A., & Rao, C.R. (2011). Enhanced data replication broker. In International Workshop on Multi-disciplinary Trends in Artificial Intelligence, Springer, Berlin, Heidelberg, 286-297.
Almuttairi, R.M., Wankar, R., Negi, A., & Rao, C.R. (2010). Intelligent replica selection strategy for data grid. In GCA 2010: proceedings of the international conference on grid computing & applications (Las Vegas NV), 95-101.
Almhanna, M.S. (2017). Minimizing replica idle time. In Annual Conference on New Trends in Information & Communications Technology Applications (NTICT), 128-131.
Almuttairi, R.M., Wankar, R., Negi, A., Chillarige, R.R., & Almahna, M.S. (2010). New replica selection technique for binding replica sites in data grids. In 1st International Conference on Energy, Power and Control (EPC-IQ), 187-194.
Almuttairi, R.M Almuttairi, R.M., Wankar, R., Negi, A., & Rao, C.R. (2010). Replica selection in data grids using preconditioning of decision attributes by k-means clustering (K- RSDG). In Second Vaagdevi International Conference on Information Technology for Real World Problems, 18-23.
Almuttairi, R.M., Wankar, R., Negi, A., & Rao, C.R. (2010). Smart replica selection for data grids using rough set approximations (RSDG). In International Conference on Computational Intelligence and Communication Networks, 466-471.
Abbas, S.A., & Almhanna, M.S. (2021). Distributed Denial of Service Attacks Detection System by Machine Learning Based on Dimensionality Reduction. In Journal of Physics: Conference Series, 1804(1).
Ammar, R.A., Sarhan, A.M., & Ragab, H.A.M. (2011). Achieving the workload balance of the clusters. In IEEE International Symposium on Signal Processing and Information Technology (ISSPIT), 086-092.
Afzal, S., & Kavitha, G. (2019). Load balancing in cloud computing–A hierarchical taxonomical classification. Journal of Cloud Computing, 8(1), 1-24.
Bufardi, A., 2008. On the efficiency of feasible solutions of a multicriteria assignment problem.
The Open Operational Research Journal, 2(1).
Chapin, S.J., Katramatos, D., Karpovich, J., & Grimshaw, A.S. (1999). The legion resource management system. In Workshop on Job Scheduling Strategies for Parallel Processing, Springer, Berlin, Heidelberg, 162-178.
Downloads
Published
How to Cite
License
Copyright (c) 2024 Darpan International Research Analysis
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.