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Energy consumption prediction based on time-series models for CPU-intensive activities in the cloud

conference contribution
posted on 2015-12-16, 00:00 authored by J Li, Xiao LiuXiao Liu, Z Zhao, J Liu
Due to the increasing energy consumption in cloud data centers, energy saving has become a vital objective in designing the underlying cloud infrastructures. A precise energy consumption model is the foundation of many energy-saving strategies. This paper focuses on exploring the energy consumption of virtual machines running various CPU-intensive activities in the cloud server using two types of models: traditional time-series models, such as ARMA and ES, and time-series segmentation models, such as sliding windows model and bottom-up model. We have built a cloud environment using OpenStack, and conducted extensive experiments to analyze and compare the prediction accuracy of these strategies. The results indicate that the performance of ES model is better than the ARMA model in predicting the energy consumption of known activities. When predicting the energy consumption of unknown activities, sliding windows segmentation model and bottom-up segmentation model can all have satisfactory performance but the former is slightly better than the later.

History

Event

Algorithms and architectures for parallel processing. Conference (15th : 2015 : Zhangjiajie, China)

Volume

9531

Series

Lecture notes in computer science

Pagination

756 - 769

Publisher

Springer

Location

Zhangjiajie, China

Place of publication

Berlin, Germany

Start date

2015-11-18

End date

2015-11-20

ISSN

0302-9743

eISSN

1611-3349

ISBN-13

9783319271408

Language

eng

Publication classification

E Conference publication; E1 Full written paper - refereed

Copyright notice

2015, Springer

Editor/Contributor(s)

G Wang, A Zomaya, G Perez, K Li

Title of proceedings

ICA3PP 2015 : Proceedings of the algorithms and architectures for parallel processing 2015 conference, part 4

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