Predictive Models for Energy-Efficient Clouds: an Analysis on Real-Life and Synthetic Data
Conference Paper
Publication Date:
2015
abstract:
The success of Cloud Computing and the resulting
expansion of large data centers result in a huge rise of electrical
power consumption by hardware facilities. Consolidation of
virtual machines (VM) is one of the key strategies used to
reduce the energy consumed by Cloud servers. Nevertheless,
the effectiveness of a consolidation strategy strongly depends
on the forecast of the needs of the VM resources. This paper
describes the experimental evaluation of a system for energyaware
allocation of virtual machines, driven by predictive data
mining models. In particular, migrations are driven by the
forecast of the future computational needs (CPU, RAM) of each
virtual machine, in order to efficiently allocate those on the
available servers. Experimental results, performed both on a real
Cloud and synthetic data, show encouraging benefits in terms of
energy saving.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Cloud Computing; Energy Efficiency
List of contributors: