상세 보기
- Ahn, Younsun;
- Kim, Yoonhee
WEB OF SCIENCE
0SCOPUS
7초록
Cloud computing technology enables applications to employ scalable resources dynamically. Scientists can promote large-scale scientific computational experiments over cloud environment. It is essential for many-task-computing (MTC) to certificate stable executions of applications even rapid changes of vital status of physical resources and furnish high performance resources in a long period. Auto-scaling with virtualization provides efficient and integrated cloud resource utilization. Auto-scaling issues have been actively studied as effective resource management in order to utilize large-scale data center in a good shape but most of the auto-scaling methods just easily support performance metrics such as CPU utilization and data transfer latency but seldom consider execution deadline or characteristics of an application. We propose an auto-scaling method that finishes all tasks by user specified deadline. We accomplish our goal by dynamically allocating VMs to maximize resource utilization while meeting a deadline and considering task dependency and data transfer time in workflow application. We have evaluated our auto-scaling method with protein annotation workflow application which tasks are specified as a workflow in hybrid cloud environment. The results of a simulation show the method performs automatically resource allocation actually needed satisfying deadline constraints. Copyright © 2014 ACM.
키워드
- 제목
- Auto-scaling of virtual resources for scientific workflows on hybrid clouds
- 저자
- Ahn, Younsun; Kim, Yoonhee
- 발행일
- 2014-06
- 유형
- Conference Paper
- 저널명
- ScienceCloud 2014 - Proceedings of the 2014 ACM International Workshop on Scientific Cloud Computing, Co-located with HPDC 2014
- 페이지
- 47 ~ 512