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.
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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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