Likely system invariants model properties that hold in operating conditions of a computing system. Invariants may be mined offline from training datasets, or inferred during execution. Scientific work has shown that invariants’ mining techniques support several activities, including capacity planning and detection of failures, anomalies and violations of Service Level Agreements. However their practical application by operation engineers is still a challenge. We aim to fill this gap through an empirical analysis of three major techniques for mining invariants in cloud-based utility computing systems: clustering, association rules, and decision list. The experiments use independent datasets from real-world systems: a Google cluster, whose tr...
Complex distributed Internet services form the basis not only of e-commerce but increasingly of miss...
Abstract Effectively detecting run-time performance anomalies is crucial for clouds to identify abno...
The main goal of this research is to contribute to automated performance anomaly detection for large...
Likely system invariants model properties that hold in operating conditions of a computing system. I...
In recent years, microservices have gained popularity due to their benefits such as increased mainta...
Cloud computing systems provide the facilities to make application services resilient against failur...
Invariants represent properties of a system that are expected to hold when everything goes well. Thu...
Cloud computing is a model for on-demand access to shared resources based on the pay-per-use policy....
The increasing popularity of Software as a Service (SaaS) stresses the need of solutions to predict ...
Cloud is one of the emerging technologies in the field of computer science and is extremely popular ...
Mining software engineering data has recently become an important research topic to meet the goal of...
International audienceThe dependability of cloud computing services is a major concern of cloud prov...
Invariants are stable relationships among system metrics expected to hold during normal operating co...
As cloud based platforms become more popular, it\ud becomes an essential task for the cloud administ...
A problem commonly faced in Computer Science research is the lack of real usage data that can be use...
Complex distributed Internet services form the basis not only of e-commerce but increasingly of miss...
Abstract Effectively detecting run-time performance anomalies is crucial for clouds to identify abno...
The main goal of this research is to contribute to automated performance anomaly detection for large...
Likely system invariants model properties that hold in operating conditions of a computing system. I...
In recent years, microservices have gained popularity due to their benefits such as increased mainta...
Cloud computing systems provide the facilities to make application services resilient against failur...
Invariants represent properties of a system that are expected to hold when everything goes well. Thu...
Cloud computing is a model for on-demand access to shared resources based on the pay-per-use policy....
The increasing popularity of Software as a Service (SaaS) stresses the need of solutions to predict ...
Cloud is one of the emerging technologies in the field of computer science and is extremely popular ...
Mining software engineering data has recently become an important research topic to meet the goal of...
International audienceThe dependability of cloud computing services is a major concern of cloud prov...
Invariants are stable relationships among system metrics expected to hold during normal operating co...
As cloud based platforms become more popular, it\ud becomes an essential task for the cloud administ...
A problem commonly faced in Computer Science research is the lack of real usage data that can be use...
Complex distributed Internet services form the basis not only of e-commerce but increasingly of miss...
Abstract Effectively detecting run-time performance anomalies is crucial for clouds to identify abno...
The main goal of this research is to contribute to automated performance anomaly detection for large...