DocumentCode
2719472
Title
Issues in Bottleneck Detection in Multi-Tier Enterprise Applications
Author
Parekh, Jason ; Jung, Gueyoung ; Swint, Galen ; Pu, Calton ; Sahai, AKhil
Author_Institution
Coll. of Comput., Georgia Inst. of Technol., Atlanta, GA
fYear
23006
fDate
19-21 June 23006
Firstpage
302
Lastpage
303
Abstract
In this work, the performance of various machine learning classifiers with regard to bottleneck detection in enterprise, multi-tier applications governed by service level objectives is described. Specifically, in this paper, it demonstrates the effectiveness of three classifiers, a tree-augmented Naive Bayesian network, a J48 decision tree, and LogitBoost, using our bottleneck detection process, which delves into a new area of performance analysis based on the trends of metrics (first order derivative) rather than the metric value itself. Furthermore, the efficiency of each classifier by measuring the convergence speed, or the number of staging trials required in order to provide positive results is illustrated. Finally, the effectiveness of the classifiers used in the bottleneck detection process as each classifier strongly identifies the enterprise system bottleneck
Keywords
belief networks; classification; convergence; decision trees; learning (artificial intelligence); J48 decision tree; LogitBoost; bottleneck detection process; convergence speed measurement; machine learning classifier; multitier enterprise application; tree-augmented Naive Bayesian network; Automatic testing; Automation; Delay; Large-scale systems; Life testing; Machine learning; Monitoring; Performance analysis; Production; Yarn; Bottleneck detection; machine learning; multi-tier enterprise systems; performance analysis;
fLanguage
English
Publisher
ieee
Conference_Titel
Quality of Service, 2006. IWQoS 2006. 14th IEEE International Workshop on
Conference_Location
New Haven, CT
ISSN
1548-615X
Print_ISBN
1-4244-0476-2
Electronic_ISBN
1548-615X
Type
conf
DOI
10.1109/IWQOS.2006.250489
Filename
4015772
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