Abstract
In the realm of Kubernetes cluster management, the importance of metrics cannot be overstated. Metrics serve as a powerful lens, providing a quantitative perspective into a cluster’s performance, behavior, and resource utilization. In the ever-evolving landscape of cloud-native computing, metrics are the key to informed decision-making. They empower administrators to navigate scaling, resource allocation, and the holistic optimization of Kubernetes clusters with a data-driven confidence. This paper stands as a vital contribution, placing metrics at the forefront of the discussion. It underscores their transformative potential by shedding light on how they drive administrators’ decisions, enable the identification of performance bottlenecks, and enhance application responsiveness. Moreover, metrics play a pivotal role in proactive capacity planning, ensuring resources are allocated with precision to meet both current and future workload demands. In essence, this paper’s core contribution lies in providing a comprehensive overview of Kubernetes metrics and highlighting their profound impact on Autoscaling strategies. By revealing the constraints that metrics may impose on the efficient scaling of application resources, it equips administrators with a navigational tool for building dynamic and resilient computing environments within Kubernetes clusters.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Similar content being viewed by others
References
Kubernetes documentation. http://kubernetes.io
CNCF Annual Survey 2022. https://www.cncf.io/reports/cncf-annual-survey-2022/
Rossi F, Valeria C, Francesco Lo P, Matteo N (2020) Geo-distributed efficient deployment of containers with Kubernetes. J Comput Commun 159(1):161–174
Nguyen T-T, Yu-Jin Y, Taehong K, Dae-Heon P, Sehan K (2020) Horizontal pod autoscaling in kubernetes for elastic container orchestration. J Sens 20(16):4621
Kube-state-metrics github documentation. https://github.com/kubernetes/kube-state-metrics
cAdvisor github documentation. https://github.com/google/cadvisor
kubelet documentation. https://kubernetes.io/docs/reference/command-line-tools-reference/kubelet/
Prometheus documentation. https://prometheus.io/
Greneche N, Cerin C (2022) Autoscaling of containerized HPC clusters in the cloud. In: 2022 IEEE/ACM International workshop on interoperability of supercomputing and cloud technologies (SuperCompCloud)
Grafana documentation. https://grafana.com/
Kubernetes Autoscaler documentation. https://github.com/kubernetes/autoscaler
Duan R, Zhang F, Kha SU (2021) A case study on five maturity levels of a kubernetes operator. In: 2021 IEEE cloud summit (cloud summit)
Dittakavi RSS (2023) Achieving the delicate balance: resource optimization and cost efficiency in kubernetes. Eduzone: Int Peer Revi/Refereed Multidiscip J (EIPRMJ) 12(2)
Klaise J, Van Looveren A, Cox C, Vacanti G, Coca A (2020) Monitoring and explainability of models in production. In: Workshop on challenges in deploying and monitoring machine learning systems (ICML 2020)
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2025 The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd.
About this paper
Cite this paper
Joyce, J.E., Sebastian, S. (2025). Maximizing Efficiency: Unveiling the Potential of Kubernetes Metrics. In: M. Thampi, S., Siarry, P., Atiquzzaman, M., Trajkovic, L., Lloret Mauri, J. (eds) Fifth International Conference on Computing and Network Communications. CoCoNet 2023. Lecture Notes in Electrical Engineering, vol 1219. Springer, Singapore. https://doi.org/10.1007/978-981-97-4540-1_3
Download citation
DOI: https://doi.org/10.1007/978-981-97-4540-1_3
Published:
Publisher Name: Springer, Singapore
Print ISBN: 978-981-97-4539-5
Online ISBN: 978-981-97-4540-1
eBook Packages: Computer ScienceComputer Science (R0)