Mitigating Cybersecurity Threats in ML-Based Systems
Mitigating Cybersecurity Threats in ML-Based Systems (CTA-2114)
Machine Learning (ML)-based systems have an intrinsic set of challenges, including cybersecurity, that need to be addressed during their development and specifically monitored during their deployment and use. ML-based systems are not immune to cybersecurity breaches; additionally, they may be subject to adversarial attacks on their models, algorithms, or data.
This document identifies methods for mitigating cybersecurity threats to and privacy concerns in ML-based systems by addressing the unique considerations of ML-related products.
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