Supporting AI/ML Security Workers through an Adversarial Techniques, Tools, and Common Knowledge (AI/ML ATT CK) Framework

11/09/2022
by   Mohamad Fazelnia, et al.
0

This paper focuses on supporting AI/ML Security Workers – professionals involved in the development and deployment of secure AI-enabled software systems. It presents AI/ML Adversarial Techniques, Tools, and Common Knowledge (AI/ML ATT CK) framework to enable AI/ML Security Workers intuitively to explore offensive and defensive tactics.

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