Adaptive AI Architectures: Integrating Machine Learning and Self-Healing Capabilities

Authors

  • Harshal Shah1, Jay Patel2 1Company: ebay Inc. Position: Staff Software Engineer, Address: 2065 Hamilton Ave., San Jose, CA 95125 E-mail: hs26593@gmail.com 2Company: Intercontinental Hotels Group (IHG) Position: Lead Engineer Address: 3 Ravinia Dr NE, Atl Author

Keywords:

Adaptive AI, Machine Learning, Self-Healing Systems, Reinforcement Learning, Predictive Maintenance, Anomaly Detection

Abstract

Abstract: The integration of machine learning with self-healing capabilities represents a significant advancement in the development of adaptive AI architectures. These systems are designed to identify, diagnose, and rectify operational anomalies autonomously, ensuring robustness and reliability in complex and dynamic environments. The fusion of adaptive machine learning models and self-healing mechanisms allows AI systems to detect issues, such as software bugs or security breaches, in real-time and initiate corrective measures without human intervention. This study explores various approaches for integrating these capabilities, including reinforcement learning algorithms for dynamic decision-making, and the use of predictive maintenance models that leverage deep learning to anticipate failures before they occur. Through a comprehensive analysis of different architectures, including hybrid models that combine rule-based reasoning with neural networks, this research highlights the advantages and limitations of current adaptive AI systems. Empirical results demonstrate that self-healing systems can reduce system downtime by up to 40% and improve the overall efficiency of AI applications, especially in sectors like cloud computing, cybersecurity, and IoT. The findings suggest that adopting these architectures can lead to more resilient AI solutions that are capable of continuous improvement and evolution. Additionally, the study discusses challenges such as the computational overhead associated with real-time anomaly detection and the need for large datasets to train effective machine learning models. The research concludes with recommendations for future development in adaptive AI, emphasizing the importance of designing systems that balance responsiveness with computational efficiency.

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Published

2023-09-19