Abstract
In response to the escalating complexity of cyber threats in today’s interconnected digital environments, this study presents a next-generation cyber resilience framework that goes beyond traditional defense-focused cybersecurity measures. While conventional approaches emphasize prevention, they often fall short in providing robust mechanisms for rapid recovery and sustained operational continuity post-incident. This research addresses these gaps by developing a comprehensive, adaptive framework that integrates advanced artificial intelligence (AI)-driven threat detection, automated recovery protocols, continuous monitoring, and self-healing capabilities. Employing a mixed-methods methodology, this study rigorously evaluates the framework through simulations of critical cyber threats, including ransomware, distributed denial-of-service (DDoS) attacks, and zero-day vulnerabilities, to assess its resilience under real-world conditions. Findings demonstrate substantial advancements over existing models, with significant reductions in recovery time, minimized system downtime, and enhanced threat detection accuracy. The proposed framework’s capacity to sustain critical operations amidst attacks underscores its value for high-stakes sectors such as healthcare, finance, and infrastructure. This research contributes to the evolving field of cyber resilience by establishing a new paradigm that not only fortifies defense but also ensures swift and reliable system recovery, reinforcing the need for adaptive, automated solutions in modern cybersecurity strategy.
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More From: International Journal of Science and Technology Innovation
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