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Anomaly detection in the context of long-term cloud resource usage planning

Piotr Nawrocki, Wiktor Sus

2022Knowledge and Information Systems16 citationsDOIOpen Access PDF

Abstract

Abstract This paper describes a new approach to automatic long-term cloud resource usage planning with a novel hybrid anomaly detection mechanism. It analyzes existing anomaly detection solutions, possible improvements and the impact on the accuracy of resource usage planning. The proposed anomaly detection solution is an important part of the research, since it allows greater accuracy to be achieved in the long term. The proposed approach dynamically adjusts reservation plans in order to reduce the unnecessary load on resources and prevent the cloud from running out of them. The predictions are based on cloud analysis conducted using machine learning algorithms, which made it possible to reduce costs by about 50%. The solution was evaluated on real-life data from over 1700 virtual machines.

Topics & Concepts

Cloud computingAnomaly detectionComputer scienceReservationTerm (time)Context (archaeology)Resource (disambiguation)Anomaly (physics)Data miningReal-time computingResource planningDistributed computingMachine learningOperating systemEnvironmental resource managementPhysicsCondensed matter physicsBiologyQuantum mechanicsEnvironmental scienceComputer networkPaleontologyAnomaly Detection Techniques and ApplicationsData Stream Mining TechniquesNetwork Security and Intrusion Detection
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