Workload-driven VM consolidation in cloud data centers
2015 IEEE International Parallel and Distributed Processing Symposium, 2015•ieeexplore.ieee.org
Virtual machines hosted in virtualized data centers are important providers of computational
resources in the era of cloud computing. Efficient scheduling of data centers' virtual
machines can reduce the number of physical servers needed to host the virtual machines
and, in turn, reduce the energy and other capital costs for maintaining the virtualized data
centre. In this paper, we propose an innovative approach to achieve efficient pro-active VM
scheduling. Our approach uses a multi-capacity bin packing technique that efficiently places …
resources in the era of cloud computing. Efficient scheduling of data centers' virtual
machines can reduce the number of physical servers needed to host the virtual machines
and, in turn, reduce the energy and other capital costs for maintaining the virtualized data
centre. In this paper, we propose an innovative approach to achieve efficient pro-active VM
scheduling. Our approach uses a multi-capacity bin packing technique that efficiently places …
Virtual machines hosted in virtualized data centers are important providers of computational resources in the era of cloud computing. Efficient scheduling of data centers' virtual machines can reduce the number of physical servers needed to host the virtual machines and, in turn, reduce the energy and other capital costs for maintaining the virtualized data centre. In this paper, we propose an innovative approach to achieve efficient pro-active VM scheduling. Our approach uses a multi-capacity bin packing technique that efficiently places VMs onto physical servers. We use time-series analysis techniques to extract not only low frequency information about future VM workloads but also high frequency information for VM workload correlations. We show that the proposed algorithms mathematically guarantee the VM scheduling meets the Service Level Objectives (SLO) and, moreover, guarantee statistically that the desired success probability of the SLO is met. Evaluation of our technique on production (real) workloads shows that our approach reduces by up to 15% the number of physical machines. We also see improvements of up to 18% for production workloads in machine utilization.
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