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arXiv: 2306.07653
Kubernetes is a free, open-source container orchestration system for deploying and managing Docker containers that host microservices. Kubernetes cluster logs help in determining the reason for the failure. However, as systems become more complex, identifying failure reasons manually becomes more difficult and time-consuming. This study aims to identify effective and efficient classification algorithms to automatically determine the failure reason. We compare five classification algorithms, Support Vector Machines, K-Nearest Neighbors, Random Forest, Gradient Boosting Classifier, and Multilayer Perceptron. Our results indicate that Random Forest produces good accuracy while requiring fewer computational resources than other algorithms.
Support vectors machine, FOS: Computer and information sciences, Open-source, Computer Science - Machine Learning, Classification algorithm, Microservice, Containers, Machine Learning (cs.LG), Failure (mechanical), Computer Science - Software Engineering, microservices, Open systems, Test failure, Machine-learning, Kubernetes cluster log, Nearest-neighbour, Support vector machines, Computer Sciences, Random forests, Kubernetes cluster logs, Software Engineering (cs.SE), machine learning, Nearest neighbor search, Datavetenskap (datalogi), Gradient boosting
Support vectors machine, FOS: Computer and information sciences, Open-source, Computer Science - Machine Learning, Classification algorithm, Microservice, Containers, Machine Learning (cs.LG), Failure (mechanical), Computer Science - Software Engineering, microservices, Open systems, Test failure, Machine-learning, Kubernetes cluster log, Nearest-neighbour, Support vector machines, Computer Sciences, Random forests, Kubernetes cluster logs, Software Engineering (cs.SE), machine learning, Nearest neighbor search, Datavetenskap (datalogi), Gradient boosting
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