2018
DOI: 10.1007/s10586-018-2718-6
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Robust optimization for energy-efficient virtual machine consolidation in modern datacenters

Abstract: Energy efficient virtual machine (VM) consolidation in modern data centers is typically optimized using methods such as Mixed Integer Programming, which typically require precise input to the model. Unfortunately, many parameters are uncertain or very difficult to predict precisely in the real world. As a consequence, a once calculated solution may be highly infeasible in practice. In this paper, we use methods from robust optimization theory in order to quantify the impact of uncertainty in modern data center… Show more

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Cited by 14 publications
(2 citation statements)
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“…In [48], the authors present an algorithm as an ILP problem for reducing energy consumption along with optimizing SLAv and performance. A similar method is proposed in [49] where MILP algorithm is employed for reducing energy consumption, SLAv and the number of migrations with a more efficient use of CPU resources. As shown in Table 2, significant research is conducted to address these metrics and offer various solutions.…”
Section: B Vm Consolidationmentioning
confidence: 99%
“…In [48], the authors present an algorithm as an ILP problem for reducing energy consumption along with optimizing SLAv and performance. A similar method is proposed in [49] where MILP algorithm is employed for reducing energy consumption, SLAv and the number of migrations with a more efficient use of CPU resources. As shown in Table 2, significant research is conducted to address these metrics and offer various solutions.…”
Section: B Vm Consolidationmentioning
confidence: 99%
“…Abdel‐Basset et al 27 used meta‐heuristic–based whale optimization algorithm for VM placement and compared the results with other meta‐heuristic algorithms. Nasim et al 28 implemented robust optimization techniques in DC for efficient utilization of resources, improved VM migration, and emphasized the trade‐off between energy consumption and SLA violation. Abadi et al 29 proposed a queuing theory‐based adaptive VM consolidation algorithm for VM placement, host overload, and under‐load detection.…”
Section: Related Workmentioning
confidence: 99%