Software applications can feature intrinsic variability in their execution time due to interference from other applications or software contention from other users, which may lead to unexpectedly long running times and anomalous performance. There is thus a need for effective automated performance anomaly detection methods that can be used within production environments to avoid any late detection of unexpected degradations of service level. To address this challenge, we introduce TRACK-Plus a black-box training methodology for performance anomaly detection. The method uses an artificial neural networks-driven methodology and Bayesian Optimization to identify anomalous performance and are validated on Apache Spark Streaming. TRACK-Plus has ...
Measurement and monitoring are crucial for various network tasks such as traffic engineering, anomal...
Anomaly detection has gathered plenty of attention in the previous years. However, there is little e...
International audienceThe need for robust unsupervised anomaly detection techniques in streaming dat...
Software applications can feature intrinsic variability in their execution time due to interference ...
Due to the growth of Big Data processing technologies and cloudcomputing services, it is common to h...
The main goal of this thesis is to contribute to the research on automated performance anomaly detec...
Late detection and manual resolutions of performance anomalies in Cloud Computing and Big Data syste...
The main goal of this research is to contribute to automated performance anomaly detection for large...
Continuous detection of performance anomalies such as service degradations has become critical in cl...
Abstract Effectively detecting run-time performance anomalies is crucial for clouds to identify abno...
Anomaly Detection (AD) is useful for a range of applications including cyber security, health analyt...
These days many companies has marketed the big data streams in numerous applications including indus...
International audienceTraffic anomaly detection is of premier importance for network administrators ...
In recent years, microservices have gained popularity due to their benefits such as increased mainta...
With the advances in the Internet of Things and rapid generation of vast amounts of data, there is ...
Measurement and monitoring are crucial for various network tasks such as traffic engineering, anomal...
Anomaly detection has gathered plenty of attention in the previous years. However, there is little e...
International audienceThe need for robust unsupervised anomaly detection techniques in streaming dat...
Software applications can feature intrinsic variability in their execution time due to interference ...
Due to the growth of Big Data processing technologies and cloudcomputing services, it is common to h...
The main goal of this thesis is to contribute to the research on automated performance anomaly detec...
Late detection and manual resolutions of performance anomalies in Cloud Computing and Big Data syste...
The main goal of this research is to contribute to automated performance anomaly detection for large...
Continuous detection of performance anomalies such as service degradations has become critical in cl...
Abstract Effectively detecting run-time performance anomalies is crucial for clouds to identify abno...
Anomaly Detection (AD) is useful for a range of applications including cyber security, health analyt...
These days many companies has marketed the big data streams in numerous applications including indus...
International audienceTraffic anomaly detection is of premier importance for network administrators ...
In recent years, microservices have gained popularity due to their benefits such as increased mainta...
With the advances in the Internet of Things and rapid generation of vast amounts of data, there is ...
Measurement and monitoring are crucial for various network tasks such as traffic engineering, anomal...
Anomaly detection has gathered plenty of attention in the previous years. However, there is little e...
International audienceThe need for robust unsupervised anomaly detection techniques in streaming dat...