Performance and Energy-based Cost Prediction of Virtual Machines Live Migration in Clouds

  title={Performance and Energy-based Cost Prediction of Virtual Machines Live Migration in Clouds},
  author={Mohammad Aldossary and Karim Djemame},
Virtual Machines (VMs) live migration is one of the important approaches to improve resource utilisation and support energy efficiency in Clouds. However, VMs live migration leads to performance loss and additional costs due to increased migration time and energy overhead. This paper introduces a Performance and Energybased Cost Prediction Framework to estimate the total cost of VMs live migration by considering the resource usage and power consumption, while maintaining the expected level of… CONTINUE READING

Figures, Tables, Results, and Topics from this paper.

Key Quantitative Results

  • A series of experiments conducted on a Cloud testbed show that this framework is capable of predicting the workload, power consumption and total cost for heterogeneous VMs before and after live migration, with the possibility of recovering the migration cost e.g. 28.48% for the predicted cost recovery of the VM.


Publications citing this paper.

Energy-based Cost Model of Virtual Machines in a Cloud Environment

  • 2018 Fifth International Symposium on Innovation in Information and Communication Technology (ISIICT)
  • 2018


Publications referenced by this paper.

Similar Papers

Loading similar papers…