Author : Durga Prasada Rao Sanagana
Page No: 91-97
Abstract : The landscape of cybersecurity is constantly evolving, with adversaries becoming increasingly sophisticated and persistent. This manuscript explores the utilization of artificial intelligence (AI) to address these evolving threats, focusing on the journey from threat detection to autonomous response. By examining AI-driven detection methodologies, advanced threat analytics, and the implementation of autonomous response systems, this paper provides insights into how organizations can leverage AI to strengthen their cybersecurity posture against modern threats.
Keyword Ransomware, Anomaly Detection, Advanced Persistent Threats (APTs), Automated Threat Response and Artificial Intelligence.
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