Kubernetes-based adaptive cost optimization represents a transformative advancement in cloud resource management. The integration of artificial intelligence with Kubernetes orchestration has revolutionized how organizations handle resource allocation, scaling, and cost management in large-scale deployments. Through AI-driven workload forecasting, enhanced autoscaling mechanisms, and sophisticated cost modeling, organizations have achieved significant improvements in resource utilization while reducing operational costs. The implementation of machine learning algorithms, particularly LSTM networks and reinforcement learning, has enabled proactive resource management and dynamic workload distribution. These advancements have fundamentally changed how enterprises approach cloud cost optimization, moving from reactive, manual interventions to automated, predictive solutions that maintain high service reliability while optimizing resource consumption.
Keywords: Artificial Intelligence, Kubernetes optimization, autoscaling strategies, cloud cost management, resource forecasting