Workload Prediction Using ARIMA Model and Its Impact on Cloud Applications’ QoS
The University of Melbourne · Cloud Computing Center · +1 more institution
Abstract
As companies shift from desktop applications to cloud-based software as a service (SaaS) applications deployed on public clouds, the competition for end-users by cloud providers offering similar services grows. In order to survive in such a competitive market, cloud-based companies must achieve good quality of service (QoS) for their users, or risk losing their customers to competitors. However, meeting the QoS with a cost-effective amount of resources is challenging because workloads experience variation overtime. This problem can be solved with proactive dynamic provisioning of resources, which can estimate the future need of applications in terms of resources and allocate them in advance, releasing them…
Citation impact
- FWCI
- 63.96
- Percentile
- 100%
- References
- 25
Authors
4Topics & keywords
- Cloud computing
- Autoregressive integrated moving average
- Computer science
- Quality of service
- Workload
- Provisioning
- Software as a service
- Server