Secure Scalable Cloud Architectures with Anomaly Detection Using Kubernetes and AKS
DOI:
https://doi.org/10.64180/Keywords:
Auto-scaling, Cloud-native analytics, Cost-efficient orchestration, Elastic resource management, Fault-tolerant systems, Kubernetes architectures, Scalable data pipelines, Stochastic workload modeling, Summation-based optimization, Containerized cloud systemsAbstract
Designing data architectures for the cloud that are scalable requires elasticity, stable performance, fault tolerance, and cost efficiency. These measurements must be taken in both a dynamic and randomized way. This paper presents a summation-centric, cloud-native framework for scalable data pipelines that have been deployed on Kubernetes and Azure Kubernetes Service (AKS). This strategy attempts to address the issue of global workload aggregation for data ingestion and processing. This enables estimations of arrival rate, service rate, queue length, and resource consumption that are all mathematically estimable. A control system that operates in a closed loop integrates summation workload aggregation, queue length stabilization, predictive control of the system, inverse load distribution, and resiliency with checkpoints in order to maintain the equilibrium of the system and equilibrium of the system in a proactive way.
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This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.


