Application of Extreme Value Analysis for Characterizing the Execution Time of Resilience Supporting Mechanisms in Kubernetes

Containerization, and container-based application orchestration and management - primarily using Kubernetes - are rapidly gaining popularity. Resilience in such environments is an increasingly critical aspect, especially in terms of fault recovery, as containerization-based microservices are becoming the de facto standard for soft real-time and cyber-physical workloads in edge computing.

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