Two levels autonomic resource management in virtualized IaaS
Future Generation Computer Systems
Autonomic resource provisioning in cloud systems with availability goals
Proceedings of the 2013 ACM Cloud and Autonomic Computing Conference
A cost-aware auto-scaling approach using the workload prediction in service clouds
Information Systems Frontiers
Hi-index | 0.00 |
Enterprise clouds today support an on demand resource allocation model and can provide resources requested by applications in a near online manner using virtual machine resizing or cloning. However, in order to take advantage of an on demand resource model, enterprise applications need to be automatically scaled in a way that makes the most efficient use of resources. In this work, we present the SmartScale automated scaling framework. SmartScale uses a combination of vertical (adding more resources to existing VM instances) and horizontal (adding more VM instances) scaling to ensure that the application is scaled in a manner that optimizes both resource usage and the reconfiguration cost incurred due to scaling. The SmartScale methodology is proactive and ensures that the application converges quickly to the desired scaling level even when the workload intensity changes significantly. We evaluate SmartScale using real production traces on Olio, an emerging cloud benchmark, running on a ???-based cloud testbed. We present both theoretical and experimental evidence that comprehensively establish the effectiveness of SmartScale.