Berkay Kicanaoglu Unsupervised Anomaly Detection in Unstructured Log-data for Root-cause-analysis
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چکیده
BERKAY KICANAOGLU: Unsupervised Anomaly Detection in unstructured log-data for root-cause-analysis Tampere University of Technology Master's Thesis, 64 pages, 0 Appendix pages April 2015 Master's Degree Programme in Information Technology Major: Signal Processing Examiner: Prof. Moncef Gabbouj
منابع مشابه
Zahra Abbaszadeh Supervised Fault Detection Using Unstructured Server-log Data to Support Root Cause Analysis
TAMPERE UNIVERSITY OF TECHNOLOGY Master’s Degree Programme in Information Technology ZAHRA ABBASZADEH: Supervised Fault Detection Using Unstructured Server-Log Data to Support Root Cause Analysis Master of Science Thesis, 48 pages November 2014 Major: Wireless Communication Circuits and Systems Examiner: Prof. Moncef Gabbouj, Prof. Mikko Valkama
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تاریخ انتشار 2015