DocumentCode
3719891
Title
PRACTISE: Robust prediction of data center time series
Author
Ji Xue;Feng Yan;Robert Birke;Lydia Y. Chen;Thomas Scherer;Evgenia Smirni
Author_Institution
College of William and Mary Williamsburg, VA, USA
fYear
2015
Firstpage
126
Lastpage
134
Abstract
We analyze workload traces from production data centers and focus on their VM usage patterns of CPU, memory, disk, and network bandwidth. Burstiness is a clear characteristic of many of these time series: there exist peak loads within clear periodic patterns but also within patterns that do not have clear periodicity. We present PRACTISE, a neural network based framework that can efficiently and accurately predict future loads, peak loads, and their timing. Extensive experimentation using traces from IBM data centers illustrates PRACTISE´s superiority when compared to ARIMA and baseline neural network models, with average prediction errors that are significantly smaller. Its robustness is also illustrated with respect to the prediction window that can be short-term (i.e., hours) or long-term (i.e., a week).
Keywords
"Time series analysis","Training","Biological neural networks","Correlation","Predictive models","MATLAB"
Publisher
ieee
Conference_Titel
Network and Service Management (CNSM), 2015 11th International Conference on
Type
conf
DOI
10.1109/CNSM.2015.7367348
Filename
7367348
Link To Document