University of Central Missouri, USA.
World Journal of Advanced Research and Reviews, 2025, 26(02), 1205-1215
Article DOI: 10.30574/wjarr.2025.26.2.1644
Received on 26 March 2025; revised on 06 May 2025; accepted on 09 May 2025
The rapid evolution of containerized applications and Kubernetes orchestration has fundamentally transformed observability requirements, exposing severe limitations in traditional monitoring approaches. This article examines how artificial intelligence transforms observability in cloud-native environments, moving beyond static thresholds to dynamic, predictive systems. The integration of time-series forecasting, transformer-based log analysis, graph neural networks, and self-learning threshold systems creates comprehensive observability architectures that can detect anomalies before they impact services, establish causal relationships across distributed systems, and dramatically reduce alert noise. Implementation methodologies across various industry sectors demonstrate how organizations can gradually adopt AI-driven observability while addressing challenges in data quality, model drift, and organizational readiness. Case studies from technology, retail, financial services, healthcare, and manufacturing sectors illustrate both common success factors and industry-specific adaptations. Future directions point toward explainable AI, federated learning, transfer learning, and deeper integration with related disciplines to create truly self-healing systems
AI-driven observability; Kubernetes monitoring; Machine learning anomaly detection; Self-learning thresholds; Graph-based correlation
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Satya Sai Ram Alla. The Role of AI in next-gen kubernetes observability: Moving beyond traditional monitoring. World Journal of Advanced Research and Reviews, 2025, 26(2), 1205-1215. Article DOI: https://doi.org/10.30574/wjarr.2025.26.2.1644