Deakin University
Browse

An epidemic model based temporal violation prediction strategy for large batch of parallel business cloud workflows

conference contribution
posted on 2015-01-01, 00:00 authored by H Luo, J Liu, Xiao LiuXiao Liu, F Wang
Temporal violations often take place during the running of large batch of parallel business cloud workflow, which have a serious impact on the on-time completion of massive concurrent user requests. Existing studies have shown that local temporal violations (namely the delays of workflow activities) occurring during cloud workflow execution are the fundamental causes for failed on-time completion. Therefore, accurate prediction of temporal violations is a very important yet challenging task for business cloud workflows. In this paper, based on an epidemic model, a novel temporal violation prediction strategy is proposed to estimate the number of local temporal violations and the number of violations that must be handled so as to achieve a certain on-time completion rate before the execution of workflows. The prediction result can be served as an important reference for temporal violation prevention and handling strategies such as static resource reservation and dynamic provision. Specifically, we first analyze the queuing process of the parallel workflow activities, then we predict the number of potential temporal violations based on a novel temporal violation transmission model inspired by an epidemic model. Comprehensive experimental results demonstrate that our strategy can achieve very high prediction accuracy under different situations.

History

Pagination

182-189

Location

Sydney, NSW

Start date

2015-12-11

End date

2015-12-13

ISBN-13

9781509002146

Language

eng

Publication classification

E Conference publication, E1 Full written paper - refereed

Copyright notice

2015, IEEE

Editor/Contributor(s)

Chen J, Yang L

Title of proceedings

DSDIS 2015: Proceedings of the IEEE Data Science and Data Intensive Systems 2015 International Conference

Event

IEEE Data Science and Data Intensive Systems. International Conference (2015 : Sydney, NSW)

Publisher

IEEE

Place of publication

Piscataway, N.J.