Optimal cloud resource provisioning for auto-scaling enterprise applications
Optimal cloud resource provisioning for auto-scaling enterprise applications
No Thumbnail Available
Date
2018-01-01
Authors
Srirama, Satish Narayana
Ostovar, Alireza
Journal Title
Journal ISSN
Volume Title
Publisher
Abstract
Auto-scaling enterprise/workflow systems on cloud needs to deal with both the scaling policy, which determines 'when to scale' and the resource provisioning policy, which determines 'how to scale'. This paper presents a novel resource provisioning policy that can find the most cost optimal setup of variety of instances of cloud that can fulfill incoming workload. All major factors involved in resource amount estimation such as processing power, periodic cost and configuration cost of each instance type, lifetime of each running instance and capacity of clouds are considered in the model. Benchmark experiments were conducted on Amazon cloud and were matched with Amazon AutoScale, using a real load trace and through two main control flow components of enterprise applications, AND and XOR. The experiments showed that the model is plausible for auto-scaling any web/services based enterprise workflow/application on the cloud, along with the effect of individual parameters on the optimal policy.
Description
Keywords
Auto-scaling,
Cloud computing,
Control flows,
Enterprise applications,
Optimisation,
Resource provisioning
Citation
International Journal of Cloud Computing. v.7(2)