Volume 3 , Issue 2 , PP: 64-71, 2021 | Cite this article as | XML | Html | PDF | Full Length Article
Puneet Kaushal 1 * , Subash Chander 2 , Vijay Kumar Sinha 3
Doi: https://doi.org/10.54216/IJWAC.030202
Cloud computing provides various types of services to users. The goal of virtual machine placement (VMP) is to map the best physical machine to a virtual machine. With the help of Virtual Machine Placement, we can reduce cost, maximize resource utilization, reduced energy consumption of data centers in cloud environments. The focus of Virtual Machine Placement is to saving of power, quality of service. In this paper, we have reviewed various placements techniques used in cloud computing. At last, we have also studied various challenges for virtual machine placement in cloud computing. The main motive of various types of Virtual Machine Placement algorithms have to reduced energy consumption and minimize cost by maximizing utilization of various resources in the cloud platform. For further study, the researcher should focus on these challenges for the best virtual machine placement in a cloud environment. In this paper, we critically examine the techniques, challenges, and research gaps in virtual placements in cotext with Cloud Computing. Cloud computing, placement of virtual machines becomes major problems. For finding the solution to the problem we can use the various virtual machine placement algorithms. The main motive is to reduce consumption of energy, maximum resource utilization, minimizing cost factors used for virtual to the physical machine mapping in the cloud environment. For selecting the best algorithm various optimization methods are used. With these different optimization methods, we can analyze different algorithms. There is a great scope of improvement in existing systems of virtual placements to make them more energy-efficient, more reliable, and fault-tolerant. Redundancy in cloud downloading can be made more intelligent and minimized for duplicate data while downloading and uploading.
Virtual Machine(VM), Virtual Machine Placement, Data Center, Cloud Computing, Quality of Service, Bin Packing
[1] Rashmi Sindhu, Vikas Siwach and Harkesh Sehrawat, “Comparative Analysis of VM Placement and Migration Algorithms in VM Consolidation”, ISSN (online) (2203-1731), IT in Industry, Vol. (9), No. (1), (2021).
[2] Abdelkhalik Mosa and Rizos Sakellariou, “Dynamic Virtual Machine Placement considering CPU and Memory resource requirements”, IEEE 12th International Conference on Cloud Computing, DOI 10.1109/Cloud.2019.00042, (2019)
[3] Nagadevi. S, Dr. S.V.Kasmir Raja, “A Technical Review on Cloudsim based VM Scheduling Techniques in Cloud Computing Environment”, International Journal of Applied Engineering Research ISSN 0973-4562, Vol (14), Number (5), (2019).
[4] Bhagyalakshmi and Deepti Malhotra, “A Critical Survey of Virtual Machine Migration Techniques in Cloud Computing”, in International Conference on Secure Cyber Computing and Communication IEEE-2018, pp.( 328-332),(2018).
[5] C.Pandi Selvi, Dr.S.Sivakumar, “A Review of Virtual Machine Placement Algorithm in Cloud Datacenters for Server Consolidation”, International Journal of Engineering Research in Computer Science and Engineering, Vol. (5), Issue (3), March (2018).
[6] Y.Chang, C. Gu, and F.Luo, “Energy Efficient Virtual Machine Consolidation in Cloud Datacenters”, no. Eisai, pp. (401-406),(2017).
[7] Vallari Chandrakar, Dr.Punyaban Patel, Manjeet Roy, “Review on Virtual machine Placement Algorithms”,4th International Conference on Science, Technology and Management, ISBN 978-81-932074-8-2 www. conferences world.in, May (2016).
[8] S.Sharma and M.Chawla, “ A three-phase optimization method for pre-copy based VM live migration”, Springer Plus (2016).
[9] T.Jaswal and K.Kaur, “An Enhanced Hybrid Approach for Reducing Downtime, Cost and Power Consumption of Live VM Migration”, Proc. International Conference Commun. Technology Computing –AICTC’216, pp.(1-5),(2016).
[10] F. Xu, F.Liu, L.Liu, H.Jin, and S. Member, “I Aware: Making Live Migration of Virtual Machines Interference- Aware in the Cloud”, in IEEE TRANSACTIONS ON COMPUTERS, vol. 63, no. 12, pp. (3012-3025), (2014).
[11] K.C. Nguyen, V.S.G.Dong, N.H. Son, and H.D. Loc. “An Efficient Virtual Machine Migration Algorithm based on Minimization of Migration in Cloud Computing”, in International Conference on Nature of Computation and Communication, pp.( 62-71),(2016).
[12] T.Swathi, K.Srikanth,S. Raghunath Reddy, “Virtualization in Cloud Computing”, IJCSMC, Vol. (3), Issue., pp.(540-546), 5, May (2014).
[13] Mohammad Masdar, Sayyid Shahab Nabavi, Vafa Ahmadi, “An Overview of Virtual Machine Placement Schemes in Cloud Computing”, Journal of Network and Computer Applications, DOI: http://dx.doi.org/10.1016/j.jnca.2016.01.011. January, (2016).
[14] Bhavesh Gohil, Sanjana Shah, Yash Golechha, Dhiren Patel, “A Comparative Analysis of Virtual Machine Placement Techniques in the Cloud Environment”, International Journal of Computer Application, Vol. (156) No.(14), December (2016).
[15] Kumaraswamy S, “Study of Virtual Machine Placement, its Parameters, Challenges, and State of the Art in Cloud Computing”, International Journal of Advanced Computer Science and Technology, ISSN 2249-3123 Volume 6, Number (1), pp. (1-12), (2016).
[16] Gurinder Kaur, Vinay Bhardwaj, “A Review on VM Placement strategies”, International Journal of Advanced Research in Computer Science and Software Engineering, ISSN: 2277128X, Volume 6, Issue 5, May (2016).
[17] T.Thiruvenkadam, V.Karthikeyani, “A Comparative Study of VM Placement Algorithm in Cloud Computing Environment”, International Journal of Advanced Computational Engineering and Networking, ISSN: (2320-2106), Volume-3, Issue-1, Jan. (2015).
[18] D.Kapil, E.S. Pilli, and R.C.Joshi, “Live Virtual Machine Migration techniques: survey and research challenges”, International Advance Computing Conference, IEEE, pp.( 963-969),(2013).
[19] A. Hussain et al., "A Resource Efficient hybrid Proxy Mobile IPv6 extension for Next Generation IoT Networks," in IEEE Internet of Things Journal, doi: 10.1109/JIOT.2021.3058982.
[20] P. Rani, Kavita, S. Verma and G. N. Nguyen, "Mitigation of Black Hole and Gray Hole Attack Using Swarm Inspired Algorithm with Artificial Neural Network," in IEEE Access, vol. 8, pp. 121755-121764, 2020, doi: 10.1109/ACCESS.2020.3004692.
[21] Monica Sood, et.al.“Optimal Path Planning using Swarm Intelligence based Hybrid Techniques” Journal of computational and theoretical nanoscience (JCTN), ASPBS publisher. Vol. 16 No. 9, 2019, pp. 3717–3727, DOI:10.1166/jctn.2019.8240.
[22] Tanvi Sharma, et al.. (2017) Intelligent Heart Disease Prediction System Using Machine Learning: A Review, International Journal of Recent Research Aspects, ISSN: 2349-7688, Vol. 4, Issue 2, pp. 94- 97.
[23] Loveleen Gaur, et al., Disposition of Youth in Predicting Sustainable Development Goals Using the Neuro-fuzzy and Random Forest Algorithms, Article number: 11:24 (2021)
[24] M. Kumar, P. Mukherjee, K. Verma, S. Verma and D. B. Rawat, "Improved Deep Convolutional Neural Network based Malicious Node Detection and Energy-Efficient Data Transmission in Wireless Sensor Networks," in IEEE Transactions on Network Science and Engineering, doi: 10.1109/TNSE.2021.3098011.
[25] Kaur Manjit; et al. “Flying Ad-Hoc Network (FANET): Challenges and Routing Protocols” Journal of Computational and Theoretical Nanoscience, Volume 17, Number 6, June 2020, pp. 2575-2581(7), https://doi.org/10.1166/jctn.2020.8932
[26] Ghosh, Gopal; et al. ‘Internet of Things based video surveillance systems for security applications’ Journal of Computational and Theoretical Nanoscience, Volume 17, Number 6, June 2020, pp. 2582-2588(7) https://doi.org/10.1166/jctn.2020.8933