The growth of systems complexity increases the need of automated techniques dedicated to different log analysis tasks such as Log-based Anomaly Detection (LAD). The latter has been widely addressed in the literature, mostly by means of different deep learning techniques. Nevertheless, the focus on deep learning techniques results in less attention being paid to traditional Machine Learning (ML) techniques, which may perform well in many cases, depending on the context and the used datasets. Further, the evaluation of different ML techniques is mostly based on the assessment of their detection accuracy. However, this is is not enough to decide whether or not a specific ML technique is suitable to address the LAD problem. Other aspec...
A computer system generates logs to record all relevant operational data about the system and all op...
This thesis deals with anomaly detection of log data. Big software systems produce a great amount of...
With recent rapid technological advances, the automatic analysis of software logs has received parti...
Software systems log massive amounts of data, recording important runtime information. Such logs ar...
Background: A problematic area in today’s large scale distributed systems is the exponential amount ...
The rapid growth of deep learning (DL) has spurred interest in enhancing log-based anomaly detection...
By using machine learning to monitor and find deviations in log data makes it easier for developers ...
Modern enterprise IT systems generate large amounts of log data to record system state, potential er...
Anomaly detection identifies unusual patterns or items in a dataset. The anomalies identified for sy...
Logs generated by the applications, devices, and servers contain information that can be used to det...
Internet of Things (IoT) systems produce large amounts of raw data in the form of log files. This ra...
Dataset for the ICSE'22 paper: Log-based Anomaly Detection with Deep Learning: How Far Are We? If y...
Logs record both the normal and abnormal system operating status at any time, which are crucial data...
Anomaly detection is a huge fi\u80eld of research focused on the task of \u80finding weird or outlyi...
Context: Log files are produced in most larger computer systems today which contain highly valuable ...
A computer system generates logs to record all relevant operational data about the system and all op...
This thesis deals with anomaly detection of log data. Big software systems produce a great amount of...
With recent rapid technological advances, the automatic analysis of software logs has received parti...
Software systems log massive amounts of data, recording important runtime information. Such logs ar...
Background: A problematic area in today’s large scale distributed systems is the exponential amount ...
The rapid growth of deep learning (DL) has spurred interest in enhancing log-based anomaly detection...
By using machine learning to monitor and find deviations in log data makes it easier for developers ...
Modern enterprise IT systems generate large amounts of log data to record system state, potential er...
Anomaly detection identifies unusual patterns or items in a dataset. The anomalies identified for sy...
Logs generated by the applications, devices, and servers contain information that can be used to det...
Internet of Things (IoT) systems produce large amounts of raw data in the form of log files. This ra...
Dataset for the ICSE'22 paper: Log-based Anomaly Detection with Deep Learning: How Far Are We? If y...
Logs record both the normal and abnormal system operating status at any time, which are crucial data...
Anomaly detection is a huge fi\u80eld of research focused on the task of \u80finding weird or outlyi...
Context: Log files are produced in most larger computer systems today which contain highly valuable ...
A computer system generates logs to record all relevant operational data about the system and all op...
This thesis deals with anomaly detection of log data. Big software systems produce a great amount of...
With recent rapid technological advances, the automatic analysis of software logs has received parti...