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While leveraging cloud computing for large-scale distributed applications allows seamless scaling, many companies struggle following up with the amount of data generated in terms of efficient processing and anomaly detection. With the rapid growth of web attacks, anomaly detection becomes a necessary part of the management of modern large-scale distributed web applications. As the record of user behavior, weblogs certainly become the research object related to anomaly detection. Many anomaly detection methods based on automated log analysis have been proposed. However, not in the context of…mehr

Produktbeschreibung
While leveraging cloud computing for large-scale distributed applications allows seamless scaling, many companies struggle following up with the amount of data generated in terms of efficient processing and anomaly detection. With the rapid growth of web attacks, anomaly detection becomes a necessary part of the management of modern large-scale distributed web applications. As the record of user behavior, weblogs certainly become the research object related to anomaly detection. Many anomaly detection methods based on automated log analysis have been proposed. However, not in the context of big data applications where normal and anomalous behavior models need to be constructed before prediction attempts.To address this problem, Big Data Analytics and Machine Learning algorithms in overcoming the challenges of data processing, pattern detection, and anomaly prediction in large and high-dimensional data representing user and application logs are utilized.
Autorenporträt
Ibrahim Muzaferija is a researcher, experienced software engineer and machine learning specialist, currently working as a data scientist. He creates links between academia and industry, solves cross-industry problems with algorithms, and tells stories from data.