Harnessing Artificial Intelligence for Autonomous Threat Mitigation in Large-Scale Infrastructure Security Systems
Keywords:
Artificial Intelligence, Autonomous Systems, Threat Mitigation, Infrastructure Security, Machine Learning, Predictive Analytics, CybersecurityAbstract
Large-scale infrastructure systems are integral to modern society, making their protection against cyber and physical threats paramount. Artificial Intelligence (AI) has emerged as a transformative technology for autonomous threat mitigation, offering advanced capabilities in detection, prevention, and response. This research explores the integration of AI in securing critical infrastructure, emphasizing machine learning, predictive analytics, and real-time decision-making. A review of recent literature highlights AI's efficacy in improving the resilience and robustness of infrastructure security systems. This study also discusses current challenges, including algorithmic bias and resource constraints, and proposes recommendations for implementing AI-driven solutions effectively.
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