A Light-Weight and Unsupervised Method for Near Real-time Anomaly Detection Using Operational Data Measurement
DescriptionMonitoring the status of large computing systems is essential to identify unexpected behavior and improve their performance and up-time. However, due to the large-scale and distributed design of such computing systems as well as a large number of monitoring parameters, automated monitoring methods should be applied. Such automatic monitoring methods should also have the ability to adapt themselves to the continuous changes in the computing system. In addition, they should be able to identify behavioral anomalies in useful time, in order to perform appropriate reactions. This work proposes a general light-weight and unsupervised method for near real-time anomaly detection using operational data measurement on large computing systems. The proposed model requires as low as 4 hours of data and 50 epochs for each training process to accurately resemble the behavioral pattern of computing systems.
TimeTuesday, 15 November 20228:30am - 5pm CST