Towards effective science cloud provisioning for a large-scale high-throughput computing
  • Kim, Seoyoung
  • Kim, Jik-Soo
  • Hwang, Soonwook
  • Kim, Yoonhee
Citations

WEB OF SCIENCE

8
Citations

SCOPUS

14

초록

The science cloud paradigm has been actively developed and investigated, but still requires a suitable model for science cloud system in order to support increasing scientific computation needs with high performance. This paper presents an effective provisioning model of science cloud, particularly for large-scale high throughput computing applications. In this model, we utilize job traces where a statistical method is applied to pick the most influential features to improve application performance. With these features, a system determines where VM is deployed (allocation) and which instance type is proper (provisioning). An adaptive evaluation step which is subsequent to the job execution enables our model to adapt to dynamical computing environments. We show performance achievements by comparing the proposed model with other policies through experiments and expect noticeable improvements on performance as well as reduction of cost from resource consumption through our model.

키워드

Science cloudHigh-throughput computingJob profilingCloud provisioningPCA (Principal components analysis)
제목
Towards effective science cloud provisioning for a large-scale high-throughput computing
저자
Kim, SeoyoungKim, Jik-SooHwang, SoonwookKim, Yoonhee
DOI
10.1007/s10586-014-0371-2
발행일
2014-12
유형
Article
저널명
Cluster Computing
17
4
페이지
1157 ~ 1169