DocumentCode :
3664284
Title :
A Machine Learning-Based Framework for Building Application Failure Prediction Models
Author :
Alessandro Pellegrini;Pierangelo Di Sanzo;Dimiter R. Avresky
Author_Institution :
DIAG, Sapienza, Univ. of Rome, Rome, Italy
fYear :
2015
fDate :
5/1/2015 12:00:00 AM
Firstpage :
1072
Lastpage :
1081
Abstract :
In this paper, we present the Framework for building Failure Prediction Models (F2PM), a Machine Learning-based Framework to build models for predicting the Remaining Time to Failure (RTTF) of applications in the presence of software anomalies. F2PM uses measurements of a number of system features in order to create a knowledge base, which is then used to build prediction models. F2PM is application-independent, i.e. It solely exploits measurements of system-level features. Thus, it can be used in differentiated contexts, without the need for any manual modification or intervention to the running applications. To generate optimized models, F2PM can perform a feature selection to identify, among all the measured system features, which have a major impact in the prediction of the RTTF. This allows to produce different models, which use different set of input features. Generated models can be compared by the user by using a set of metrics produced by F2PM, which are related to the model prediction accuracy, as well as to the model building time. We also present experimental results of a successful application of F2PM, using the standard TPC-W e-commerce benchmark.
Keywords :
"Predictive models","Measurement","Monitoring","Training","Software","Buildings","Computer crashes"
Publisher :
ieee
Conference_Titel :
Parallel and Distributed Processing Symposium Workshop (IPDPSW), 2015 IEEE International
Type :
conf
DOI :
10.1109/IPDPSW.2015.110
Filename :
7284428
Link To Document :
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