Existing application performance management (APM) solutions lack robust anomaly detection capabilities and root cause analysis techniques, that do not require manual efforts and domain knowledge. In this paper, we develop a density-based unsupervised machine learning model to detect anomalies within an enterprise application, based upon data from multiple APM systems. The research was conducted in collaboration with a European automotive company, using two months of live application data. We show that our model detects abnormal system behavior more reliably than a commonly used outlier detection technique and provides information for detecting root causes
Detecting faults and anomalies in real-time industrial systems is a challenge due to the difficulty ...
In this work, a business solution’s implemented using machine learning algorithms. The solution cons...
In recent years, microservices have gained popularity due to their benefits such as increased mainta...
Existing application performance management (APM) solutions lack robust anomaly detection capabiliti...
Unsupervised anomaly detection algorithms are applied with the purpose of identifying performance re...
Context: With an increasing number of applications running on a microservices-based cloud system (su...
This thesis investigates the possibility of using anomaly detection on performance data of virtual s...
Complex distributed Internet services form the basis not only of e-commerce but increasingly of miss...
This paper presents a new machine-learning technique that performs anomaly detection as software is ...
Distributed systems have become pervasive in current society. From laptops and mobile phones, to ser...
With the explosion of the number of distributed applications, a new dynamic server environment emerg...
The main goal of this research is to contribute to automated performance anomaly detection for large...
The occurrence of anomalies and unexpected, process-related faults is a major problem for manufactur...
The main goal of this thesis is to contribute to the research on automated performance anomaly detec...
Cloud is one of the emerging technologies in the field of computer science and is extremely popular ...
Detecting faults and anomalies in real-time industrial systems is a challenge due to the difficulty ...
In this work, a business solution’s implemented using machine learning algorithms. The solution cons...
In recent years, microservices have gained popularity due to their benefits such as increased mainta...
Existing application performance management (APM) solutions lack robust anomaly detection capabiliti...
Unsupervised anomaly detection algorithms are applied with the purpose of identifying performance re...
Context: With an increasing number of applications running on a microservices-based cloud system (su...
This thesis investigates the possibility of using anomaly detection on performance data of virtual s...
Complex distributed Internet services form the basis not only of e-commerce but increasingly of miss...
This paper presents a new machine-learning technique that performs anomaly detection as software is ...
Distributed systems have become pervasive in current society. From laptops and mobile phones, to ser...
With the explosion of the number of distributed applications, a new dynamic server environment emerg...
The main goal of this research is to contribute to automated performance anomaly detection for large...
The occurrence of anomalies and unexpected, process-related faults is a major problem for manufactur...
The main goal of this thesis is to contribute to the research on automated performance anomaly detec...
Cloud is one of the emerging technologies in the field of computer science and is extremely popular ...
Detecting faults and anomalies in real-time industrial systems is a challenge due to the difficulty ...
In this work, a business solution’s implemented using machine learning algorithms. The solution cons...
In recent years, microservices have gained popularity due to their benefits such as increased mainta...