The main goal of this thesis is to contribute to the research on automated performance anomaly detection and interference prediction by implementing Artificial Intelligence (AI) solutions for complex distributed systems, especially for Big Data platforms within cloud computing environments. The late detection and manual resolutions of performance anomalies and system interference in Big Data systems may lead to performance violations and financial penalties. Motivated by this issue, we propose AI-based methodologies for anomaly detection and interference prediction tailored to Big Data and containerized batch platforms to better analyze system performance and effectively utilize computing resources within cloud environments. Therefore, new ...
Modern cloud-native applications use microservice architecture patterns, where fine granular softwar...
Apache Spark is being increasingly used to execute big data applications on cluster computing platfo...
Nowadays, big data systems (e.g., Hadoop and Spark) are being widely adopted by many domains for off...
The main goal of this research is to contribute to automated performance anomaly detection for large...
Due to the growth of Big Data processing technologies and cloudcomputing services, it is common to h...
Software applications can feature intrinsic variability in their execution time due to interference ...
Late detection and manual resolutions of performance anomalies in Cloud Computing and Big Data syste...
Software applications can feature intrinsic variability in their execution time due to interference ...
Abstract Effectively detecting run-time performance anomalies is crucial for clouds to identify abno...
In recent years, microservices have gained popularity due to their benefits such as increased mainta...
Fundamental properties of cloud computing such as resource sharing and on-demand self-servicing is d...
High-performance Computing (HPC) systems play pivotal roles in societal and scientific advancements,...
Context: With an increasing number of applications running on a microservices-based cloud system (su...
Existing application performance management (APM) solutions lack robust anomaly detection capabiliti...
Cloud is one of the emerging technologies in the field of computer science and is extremely popular ...
Modern cloud-native applications use microservice architecture patterns, where fine granular softwar...
Apache Spark is being increasingly used to execute big data applications on cluster computing platfo...
Nowadays, big data systems (e.g., Hadoop and Spark) are being widely adopted by many domains for off...
The main goal of this research is to contribute to automated performance anomaly detection for large...
Due to the growth of Big Data processing technologies and cloudcomputing services, it is common to h...
Software applications can feature intrinsic variability in their execution time due to interference ...
Late detection and manual resolutions of performance anomalies in Cloud Computing and Big Data syste...
Software applications can feature intrinsic variability in their execution time due to interference ...
Abstract Effectively detecting run-time performance anomalies is crucial for clouds to identify abno...
In recent years, microservices have gained popularity due to their benefits such as increased mainta...
Fundamental properties of cloud computing such as resource sharing and on-demand self-servicing is d...
High-performance Computing (HPC) systems play pivotal roles in societal and scientific advancements,...
Context: With an increasing number of applications running on a microservices-based cloud system (su...
Existing application performance management (APM) solutions lack robust anomaly detection capabiliti...
Cloud is one of the emerging technologies in the field of computer science and is extremely popular ...
Modern cloud-native applications use microservice architecture patterns, where fine granular softwar...
Apache Spark is being increasingly used to execute big data applications on cluster computing platfo...
Nowadays, big data systems (e.g., Hadoop and Spark) are being widely adopted by many domains for off...