Title :
A Comparitive Study of Predictive Models for Cloud Infrastructure Management
Author :
Balaji, M. ; Rao, G. Subrahmanya Vrk ; Kumar, C. Aswani
Author_Institution :
Global Technol. Office, Cognizant Technol. Solutions, Chennai, India
Abstract :
Cloud service providers, monitor average resource (for e.g. CPU) consumption and based on predefined limits (for e.g. CPU-Idle-time > 500 milliseconds), provision or de-provision resources. Traditionally this is a reactive approach and doesn´t fully address the wide range of enterprise use cases. Implementation of predictive approach to resource management has been rarely reported even though they could perform potentially better than their counterpart. Identification of a suitable model for predicting the performance of the system under a load is an ideal precursor in managing resources on a cloud environment. The current study compares the performance of two such predictive models namely Holt-Winter and ARIMA using a public web server data set Request rate was used as the metric to monitor resource consumption. The experiment results show that Holt-Winter model performs better than a few selected ARIMA models, which could be subsequently used for managing resources on cloud if the data request rates follow a similar pattern.
Keywords :
cloud computing; resource allocation; ARIMA model; Holt-Winter model; autoregressive integrated moving average model; cloud infrastructure management; cloud service providers; deprovision resources; predictive approach; predictive models; provision resource; public Web server data set; request rate; resource consumption; resource management; Cloud computing; Data models; Measurement uncertainty; Predictive models; Servers; ARIMA; Cloud computing; Holt-Winter; Predictive modeling; Resource management;
Conference_Titel :
Cluster, Cloud and Grid Computing (CCGrid), 2014 14th IEEE/ACM International Symposium on
Conference_Location :
Chicago, IL
DOI :
10.1109/CCGrid.2014.32