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A Virtual Machine Migration Strategy Based on Time Series Workload Prediction Using Cloud Model

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  • Yanbing Liu
  • Bo Gong
  • Congcong Xing
  • Yi Jian

Abstract

Aimed at resolving the issues of the imbalance of resources and workloads at data centers and the overhead together with the high cost of virtual machine (VM) migrations, this paper proposes a new VM migration strategy which is based on the cloud model time series workload prediction algorithm. By setting the upper and lower workload bounds for host machines, forecasting the tendency of their subsequent workloads by creating a workload time series using the cloud model, and stipulating a general VM migration criterion workload-aware migration (WAM), the proposed strategy selects a source host machine, a destination host machine, and a VM on the source host machine carrying out the task of the VM migration. Experimental results and analyses show, through comparison with other peer research works, that the proposed method can effectively avoid VM migrations caused by momentary peak workload values, significantly lower the number of VM migrations, and dynamically reach and maintain a resource and workload balance for virtual machines promoting an improved utilization of resources in the entire data center.

Suggested Citation

  • Yanbing Liu & Bo Gong & Congcong Xing & Yi Jian, 2014. "A Virtual Machine Migration Strategy Based on Time Series Workload Prediction Using Cloud Model," Mathematical Problems in Engineering, Hindawi, vol. 2014, pages 1-11, September.
  • Handle: RePEc:hin:jnlmpe:973069
    DOI: 10.1155/2014/973069
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