Affiliation:
1. Faculty of Information Technology, Strathmore University, Nairobi, Kenya
2. Faculty of Engineering Science and Technology, Technical University of Kenya, Nairobi, Kenya
Abstract
Cloud computing has gained a lot of interest from both small and big academic and commercial organizations because of its success in delivering service on a pay-as-you-go basis. Moreover, many users (organizations) can share server computing resources, which is made possible by virtualization. However, the amount of energy consumed by cloud data centres is a major concern. One of the major causes of energy wastage is the inefficient utilization of resources. For instance, in IaaS public clouds, users select Virtual Machine (VM) sizes set beforehand by the Cloud Service Providers (CSPs) without the knowledge of the kind of workloads to be executed in the VM. More often, the users overprovision the resources, which go to waste. Additionally, the CSPs do not have control over the types of applications that are executed and thus VM consolidation is performed blindly. There have been efforts to address the problem of energy consumption by efficient resource utilization through VM allocation and migration. However, these techniques lack collection and analysis of active real cloud traces from the IaaS cloud. This paper proposes an architecture for VM consolidation through VM profiling and analysis of VM resource usage and resource usage patterns, and a VM allocation policy. We have implemented our policy on CloudSim Plus cloud simulator and results show that it outperforms Worst Fit, Best Fit and First Fit VM allocation algorithms. Energy consumption is reduced through efficient consolidation that is informed by VM resource consumption.
Reference33 articles.
1. X. Chen, L. Rupprecht, R. Osman, P. Pietzuch, F. Franciosi and W. Knottenbelt, "CloudScope: Diagnosing and Managing Performance Interference in Multi-tenant Clouds," in 2015 IEEE 23rd International Symposium on Modeling, Analysis, and Simulation of Computer and Telecommunication Systems, 2015.
2. Industry Outlook, "Industry Outlook Data Center Energy Efficiency," 2014. [Online]. Available: http://www.datacenterjournal.com/industry-outlook-data-center-energy-efficiency/. [Accessed 10 October 2018].
3. M. D. Kenga, V. Omwenga and P. Ogao, "Energy Consumption in Cloud Computing Environments," in Pan African Conference on Science, Computing and Telecommunications (PACT) 2017, Nairobi, 2017.
4. G. Albert, H. James, A. M. David and P. Parveen, "The cost of a cloud: research problems in data center networks," The ACM Digital Library is published by the Association for Computing Machinery, vol. 39, no. 1, 2009.
5. S. Mohsen, S. Hadi and N. Mahsa, "Power-efficient distributed scheduling of virtual machines using workload-aware consolidation techniques," The Journal of Supercomputing , 2011.