Performance Assessment of Virtual Machine Consolidation and Placement in Software Defined Network using CloudSim
Keywords:
Storage Area Networks, VM Consolidation, Cloud Sim, Performance, Virtual MachineAbstract
Concerns regarding storage availability and accessibility are crucial for enterprise computing. Customary direct-connected plate organizations inside individual servers can be a basic and modest choice for the vast majority endeavor applications. The system speeds up IT virtualization by pointing out possibilities for server consolidation and ways to simplify IT management within the physical IT infrastructure. In addition, key application interdependencies will be identified, and implementation support for virtualization migration will be provided in its reservation, resulting in energy waste and increased costs. Conversely, request-based VM positioning unites VMs based on the genuine responsibilities request, which might prompt better usage. Then, a variety of algorithms are introduced to continuously adjust this parameter at runtime so that a provider can use as few PMs as possible while keeping the number of SLAVs boundary both at the cloud server farm level and at the VM level utilizing receptive and responsive approaches. CloudSim's empirical evaluation demonstrates that the proposed parameter-based VM placement method provides greater adaptability.
Downloads
References
Jing Xu and Jose Fortes. A multi-objective approach to virtual machine ´ management in datacenters. Proceedings of the 8th ACM international conference on Autonomic computing - ICAC ’21, page 225, 2021.
Andreas Wolke, Boldbaatar Tsend-Ayush, Carl Pfeiffer, and Martin Bichler. More than bin packing: Dynamic resource allocation strategies in cloud data centers. Information Systems, 52:83–95, 2021
Hui Wang and Huaglory Tianfield. Energy-aware dynamic virtual machine consolidation for cloud datacenters. IEEE Access, 6:15259– 15273, 2018
Manikandan, S., Chinnadurai, M. (2022), "Virtualized Load Balancer for Hybrid Cloud Using Genetic Algorithm", Intelligent Automation & Soft Computing, 32(3), 1459–1466
Q. Zheng, J. Li, B. Dong, R. Li, N. Shah, and F. Tian. Multi-objective optimization algorithm based on bbo for virtual machine consolidation problem. In IEEE 21st International Conference on Parallel and Distributed Systems (ICPADS), pages 414–421, 2021
S Manikandan, K Raju, R Lavanya, R.G Gokila, "Web Enabled Data Warehouse Answer With Application", Applied Science Reports, Progressive Science Publications, E-ISSN: 2310-9440 / P-ISSN: 2311-0139, DOI: 10.15192/PSCP.ASR.2018.21.3.8487, Volume 21, Issue 3, pp. 84-87, 2018
Xin Ye, Yanli Yin, and Lan Lan. Energy-efficient many-objective virtual machine placement optimization in a cloud computing environment. IEEE Access, 5:16006–16020, 2017.
Hui Xiao, Zhigang Hu, and Keqin Li. Multi-objective vm consolidation based on thresholds and ant colony system in cloud computing. IEEE Access, 7:53441–53453, 2021
Manikandan, S. ., Mohanaprakash, T. ., Vivekanandhan, V. ., & Shenbagam, M. . (2023). Review of Feedback Analysis of Business Process Outsourcing. Migration Letters, 20(S13), 348–352
Manikandan.S, Manikanda Kumaran.K, Palanimurugan.S, Anandraj. P, V.M.Suresh and Raju.K, "Clustering Approach for Downloading NEWS from Web", MM-Journal of Management and Manufacturing & Services, International Society of Green, Sustainable Engineering and Management, Planning Commission Government of India,ISSN:2350-1480,Vol.02,Issue:22,pp-43-46,November-2015
S.Manikandan, A. Karunamurthy, R.Radha and K.C.Rajheshwari, "Live VM Migration in Hybrid federated Cloud using Load Balancer",1st IEEE International Conference on Multidisciplinary Research in Technology and Management – MRTM 23, organized by New Horizon College of Engineering, Bengaluru , r2023
Juiz, C., Bermejo, B. On the scalability of the speedup considering the overhead of consolidating virtual machines in servers for data centers. J Supercomput (2024). https://doi.org/10.1007/s11227-024-05943-y
Khodaverdian, Z., Sadr, H., Edalatpanah, S.A. et al. An energy aware resource allocation based on combination of CNN and GRU for virtual machine selection. Multimed Tools Appl 83, 25769–25796 (2024). https://doi.org/10.1007/s11042-023-16488-2
Downloads
Published
How to Cite
Issue
Section
License
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
All papers should be submitted electronically. All submitted manuscripts must be original work that is not under submission at another journal or under consideration for publication in another form, such as a monograph or chapter of a book. Authors of submitted papers are obligated not to submit their paper for publication elsewhere until an editorial decision is rendered on their submission. Further, authors of accepted papers are prohibited from publishing the results in other publications that appear before the paper is published in the Journal unless they receive approval for doing so from the Editor-In-Chief.
IJISAE open access articles are licensed under a Creative Commons Attribution-ShareAlike 4.0 International License. This license lets the audience to give appropriate credit, provide a link to the license, and indicate if changes were made and if they remix, transform, or build upon the material, they must distribute contributions under the same license as the original.