DoH Deception: Evading ML-Based Tunnel Detection with Black-Box Attack Techniques
Offered By: BSidesLV via YouTube
Course Description
Overview
Explore a graduate research presentation that uncovers vulnerabilities in Machine Learning models designed for DNS Over HTTPS (DoH) tunnel detection. Delve into the susceptibility of cutting-edge DoH tunnel detection models to black-box attacks, utilizing real-world input data generated by DoH tunnel tools. Discover specific vulnerable features that model developers should avoid, and learn how these findings can be applied to evade most Machine Learning-Based Network Intrusion Detection Systems. Gain insights into the immediate and practical implications of this research for cybersecurity professionals and ML model developers.
Syllabus
Ground Truth, Wed, Aug 7, 16:00 - Wed, Aug 7, CDT
Taught by
BSidesLV
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