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Abstract
The evolution of cybersecurity has spurred the emergence of autonomous threat
hunting as a pivotal paradigm in the realm of AI-driven threat intelligence.
This review navigates through the intricate landscape of autonomous threat
hunting, exploring its significance and pivotal role in fortifying cyber
defense mechanisms. Delving into the amalgamation of artificial intelligence
(AI) and traditional threat intelligence methodologies, this paper delineates
the necessity and evolution of autonomous approaches in combating contemporary
cyber threats. Through a comprehensive exploration of foundational AI-driven
threat intelligence, the review accentuates the transformative influence of AI
and machine learning on conventional threat intelligence practices. It
elucidates the conceptual framework underpinning autonomous threat hunting,
spotlighting its components, and the seamless integration of AI algorithms
within threat hunting processes.. Insightful discussions on challenges
encompassing scalability, interpretability, and ethical considerations in
AI-driven models enrich the discourse. Moreover, through illuminating case
studies and evaluations, this paper showcases real-world implementations,
underscoring success stories and lessons learned by organizations adopting
AI-driven threat intelligence. In conclusion, this review consolidates key
insights, emphasizing the substantial implications of autonomous threat hunting
for the future of cybersecurity. It underscores the significance of continual
research and collaborative efforts in harnessing the potential of AI-driven
approaches to fortify cyber defenses against evolving threats.