This work is licensed under the Creative Commons Attribution 4.0 International License.
Zhou, H., Li, Q., Choo, K. K. R., et al. (2018). DADTA: A novel adaptive strategy for energy and performance efficient virtual machine consolidation. Journal of Parallel and Distributed Computing, 121, 15-26.Search in Google Scholar
Shiraz, M., Abolfazli, S., Sanaei, Z., & Gani, A. (2013). A study on virtual machine deployment for application outsourcing in mobile cloud computing. The Journal of Supercomputing, 63(3).Search in Google Scholar
Díaz, J. L., Entrialgo, J., García, M., García, J., & García, D. F. (2017). Optimal allocation of virtual machines in multi-cloud environments with reserved and on-demand pricing. Future Generation Computer Systems, 71, 129-144.Search in Google Scholar
Laghrissi, A., & Taleb, T. (2018). A survey on the placement of virtual resources and virtual network functions. IEEE Communications Surveys & Tutorials, 21(2), 1409-1434.Search in Google Scholar
Potdar, A. M., Narayan, D. G., Kengond, S., & Mulla, M. M. (2020). Performance evaluation of docker container and virtual machine. Procedia Computer Science, 171, 1419-1428.Search in Google Scholar
Zhang, F., Liu, G., Fu, X., & Yahyapour, R. (2018). A survey on virtual machine migration: Challenges, techniques, and open issues. IEEE Communications Surveys & Tutorials, 20(2), 1206-1243.Search in Google Scholar
Silva Filho, M. C., Monteiro, C. C., Inácio, P. R., & Freire, M. M. (2018). Approaches for optimizing virtual machine placement and migration in cloud environments: A survey. Journal of Parallel and Distributed Computing, 111, 222-250.Search in Google Scholar
Qi, L., Chen, Y., Yuan, Y., Fu, S., Zhang, X., & Xu, X. (2020). A QoS-aware virtual machine scheduling method for energy conservation in cloud-based cyber-physical systems. World Wide Web, 23, 1275-1297.Search in Google Scholar
Shih, W. C., Yang, C. T., Ranjan, R., & Chiang, C. I. (2021). Implementation and evaluation of a container management platform on Docker: Hadoop deployment as an example. Cluster Computing, 24(4), 3421-3430.Search in Google Scholar
Mavridis, I., & Karatza, H. (2019). Combining containers and virtual machines to enhance isolation and extend functionality on cloud computing. Future Generation Computer Systems, 94, 674-696.Search in Google Scholar
Xu, B., Peng, Z., Xiao, F., Gates, A. M., & Yu, J. P. (2015). Dynamic deployment of virtual machines in cloud computing using multi-objective optimization. Soft Computing.Search in Google Scholar
Xiao, Y., Liu, L., Ma, Z., Wang, Z., & Meng, W. (2021). Defending co-resident attack using reputation- based virtual machine deployment policy in cloud computing. Transactions on Emerging Telecommunications Technologies, 32(9), e4271.Search in Google Scholar
Vasil’eva, Y. O., Kostenko, V. A., & Chupakhin, A. A. (2020). Effect of virtual machine deployment policies on the efficiency data processing centers. Journal of Computer and Systems Sciences International, 59, 400-405.Search in Google Scholar
Ponraj, A. (2019). Optimistic virtual machine placement in cloud data centers using queuing approach. Future Generation Computer Systems, 93, 338-344.Search in Google Scholar
Sotiriadis, S., Bessis, N., & Buyya, R. (2018). Self managed virtual machine scheduling in cloud systems. Information Sciences, 433, 381-400.Search in Google Scholar
Liu, S., Jia, W., & Pan, X. (2018). Fault-tolerant feedback virtual machine deployment based on user-personalized requirements. Frontiers of Computer Science, 12(4).Search in Google Scholar
Cheng, Y., Chen, W., Wang, Z., & Yu, X. (2017). Performance-monitoring-based traffic-aware virtual machine deployment on numa systems. IEEE Systems Journal, 11(2), 1-10.Search in Google Scholar
Naik, B. B., Singh, D., & Samaddar, A. B. (2019). Secure virtual machine allocation against attacks using support value based game policy. International Journal of Communication Systems, (7).Search in Google Scholar