Abstract
Minimizing the resource wastage reduces the energy cost of operating a data center, but may also lead to a considerably high resource overcommitment affecting the Quality of Service (QoS) of the running applications. The effective tradeoff between resource wastage and overcommitment is a challenging task in virtualized Clouds and depends on the allocation of virtual machines (VMs) to physical resources. We propose in this paper a multi-objective method for dynamic VM placement, which exploits live migration mechanisms to simultaneously optimize the resource wastage, overcommitment ratio and migration energy. Our optimization algorithm uses a novel evolutionary meta-heuristic based on an island population model to approximate the Pareto optimal set of VM placements with good accuracy and diversity. Simulation results using traces collected from a real Google cluster demonstrate that our method outperforms related approaches by reducing the migration energy by up to 57% with a QoS increase below 6%.
Original language | English |
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Article number | 106390 |
Journal | Information and Software Technology |
Volume | 128 |
DOIs | |
State | Published - Dec 2020 |
Externally published | Yes |
Keywords
- Data center simulation
- Energy consumption
- Genetic algorithm
- Live migration
- Multi-objective optimisation
- Pareto optimal set
- Resource overcommitment
- Resource wastage
- VM placement