Cognitive Cloud Platforms: Enabling Autonomous Resource Optimization through AI-Oriented Architectures
Main Article Content
Abstract
This paper presents an AI-Oriented Cognitive Cloud Framework (AIO-CCF) designed to achieve autonomous resource optimization in large-scale, heterogeneous cloud environments. Unlike conventional rule-based orchestration systems, AIO-CCF integrates reinforcement learning, knowledge-driven reasoning, and meta-learning adaptation within a cognitive feedback loop that enables self-configuration, self-optimization, and self-healing capabilities. The framework continuously perceives environmental states, predicts workload variations, and executes intelligent actions to maintain optimal performance under dynamic conditions. Simulation results conducted on CloudSim and Kubernetes clusters demonstrate significant improvements in latency reduction (≈20%), energy efficiency (≈15%), and SLA compliance (≈50% fewer violations) compared to standard autoscaling mechanisms. The findings validate the feasibility of embedding cognition within cloud control planes to build self-governing, adaptive, and sustainable cloud ecosystems. This research contributes a foundational step toward fully autonomous cloud intelligence capable of reasoning, learning, and evolving across distributed environments.
Downloads
Article Details

This work is licensed under a Creative Commons Attribution-NoDerivatives 4.0 International License.