VM auto-scaling for workflows in hybrid cloud computing
Citations

WEB OF SCIENCE

0
Citations

SCOPUS

10

초록

Appearance of Science Clouds enables scientists to facilitate large-scale scientific computational experiments over cloud environment. Many task computing (MTC) in computational science needs to certificate stable executions of applications even in rapid changes of vital status of physical resources and supports high performance resources in a long period. Auto-scaling approach on virtual machines (VM) increases efficient cloud resources management for the computational problem solving environment. Diverse auto-scaling methods which provide useful resource management presently are being debated and studied. However, most of the auto-scaling methods are just easily considered in performance metrics or execution deadline in specific workloads but not in various patterns of workflow. We propose an auto-scaling method, guaranteeing the execution of various patterns of workflow within deadline time in hybrid cloud environment. The experimental results show the method works dynamically and acceptably on hybrid cloud resources for various workflow patterns having random workload dependency. © 2014 IEEE.

키워드

auto-scalinghybrid cloud computingworkflowWorkflow dependencyCloud computingauto-scalingComputational experimentComputational problemComputational scienceHybrid Cloud computingResources managementworkflowWorkflow dependencyVirtual machine
제목
VM auto-scaling for workflows in hybrid cloud computing
저자
Ahn, YounsunKim, Yoonhee
DOI
10.1109/ICCAC.2014.34
발행일
2015-01
유형
Conference Paper
저널명
Proceedings - 2014 International Conference on Cloud and Autonomic Computing, ICCAC 2014
페이지
237 ~ 240