Model-Based Resource Utilization and Performance Risk Prediction using Machine Learning Techniques

The growing complexity of modern software systems makes the performance prediction a challenging activity. Many drawbacks incurred by using the traditional performance prediction techniques such as time consuming and inability to surround all software system when large scaled. To contribute to solvi...

Full description

Saved in:
Bibliographic Details
Published inJOIV : international journal on informatics visualization Online Vol. 1; no. 3; pp. 101 - 109
Main Authors A.M Salih, Haitham, Ammar, Hany H
Format Journal Article
LanguageEnglish
Published Politeknik Negeri Padang 08.07.2017
Subjects
Online AccessGet full text

Cover

Loading…
More Information
Summary:The growing complexity of modern software systems makes the performance prediction a challenging activity. Many drawbacks incurred by using the traditional performance prediction techniques such as time consuming and inability to surround all software system when large scaled. To contribute to solving these problems, we adopt a model-based approach for resource utilization and performance risk prediction. Firstly, we model the software system into annotated UML diagrams. Secondly, performance model is derived from UML diagrams in order to be evaluated. Thirdly, we generate performance and resource utilization training dataset by changing workload. Finally, when new instances are applied we can predict resource utilization and performance risk by using machine learning techniques. The approach will be used to enhance work of human experts and improve efficiency of software system performance prediction. In this paper, we illustrate the approach on a case study. A performance training dataset has been generated, and three machine learning techniques are applied to predict resource utilization and performance risk level. Our approach shows prediction accuracy within 68.9 % to 93.1 %.
ISSN:2549-9610
2549-9904
DOI:10.30630/joiv.1.3.35