Predicting Resource Utilization for Cloud Workloads Using Machine Learning Techniques | IEEE Conference Publication | IEEE Xplore

Predicting Resource Utilization for Cloud Workloads Using Machine Learning Techniques


Abstract:

Provisioning of resources in a cloud environment is a challenging issue. Under provisioning and over provisioning, both are detrimental for the overall performance of the...Show More

Abstract:

Provisioning of resources in a cloud environment is a challenging issue. Under provisioning and over provisioning, both are detrimental for the overall performance of the system. There is a growing trend among researchers to use proactive provisioning approaches which anticipate the resource requirements in advance and prepare the system well to handle such real time demands. Although Proactive provisioning approaches are complex as compared to Reactive provisioning techniques, they provide an overall improved response time as the provisioning decisions are taken before the actual need of resources arise. The efficiency of such proactive provisioning techniques is dependent on the use of a predictive model that foresees the resource requirements. In this paper we have evaluated the performance of five popular Machine Learning Algorithms in predicting the CPU utilization of various server logs taken from the Parallel Workload Archive. The metrics used for evaluation are MAE- Mean Absolute Error and RMSE- Root Mean Squared Error.
Date of Conference: 20-21 April 2018
Date Added to IEEE Xplore: 27 September 2018
ISBN Information:
Conference Location: Coimbatore, India

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