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AI in Cybersecurity [Cybersecurity - 02]

AI in Cybersecurity [Cybersecurity - 02]

Master AI Theory, Cybersecurity Integration & Future Trends - No Coding Required for 2025 Success

20h 0m
0
(0 reviews)
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This course contains the use of artificial intelligence. This comprehensive course explores the theoretical foundations and advanced applications of artificial intelligence in cybersecurity, providing learners with deep conceptual understanding of how AI technologies revolutionize modern security practices. Through 50 structured lectures across 10 sections, students will master the theoretical frameworks that underpin AI-driven security solutions.

The course begins with foundational theories linking AI and cybersecurity, covering core security principles, AI paradigms, and the convergence of these fields. Students will explore mathematical foundations essential for AI algorithms, including linear algebra, probability theory, and statistical methods applied to threat analysis.

Primary topics include supervised and unsupervised learning theories for threat classification and anomaly detection, reinforcement learning in adversarial environments, and natural language processing for security intelligence. The curriculum delves into machine learning models such as decision trees, support vector machines, Bayesian methods, and clustering algorithms specifically contextualized for cybersecurity applications.

Advanced sections cover deep learning frameworks including neural networks, CNNs, RNNs, and autoencoders for network anomaly detection. Students will examine cutting-edge topics like generative adversarial networks, transfer learning, attention mechanisms, and quantum computing's impact on security.

The course also addresses socio-technical systems theory, human factors in security, trust models, organizational security frameworks, and risk management theories. Ethical, legal, and privacy considerations are thoroughly explored alongside adversarial machine learning and future challenges.

Through theoretical case studies covering enterprise systems, critical infrastructure protection, financial fraud detection, and advanced persistent threats, students gain practical context for applying theoretical knowledge. The course culminates with comprehensive integration of all concepts and research methodologies.

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Nirmala Lall

Nirmala Lall

Course InstructorUdemy Expert
0+
Students
20h 0m
Total Hours
New
Rating
English (US)
Language
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