AI security in different industries: A comprehensive review of vulnerabilities and mitigation strategies

Details of industry-specific measures, including adversarial training data sanitization, AI model audit, and privacy-preserving approaches are provided, which demonstrate that security measures that rely on artificial intelligence must be regularly checked and updated.

Wed Oct 30 2024
by Rahul Marri, Lakshmi Narasimha Dabbara and others
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Details of industry-specific measures, including adversarial training data sanitization, AI model audit, and privacy-preserving approaches are provided, which demonstrate that security measures that rely on artificial intelligence must be regularly checked and updated.


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