--- title: "NIST: Adversarial Machine Learning – A Taxonomy and Terminology of Attacks and Mitigations" slug: "nist-adversarial-machine-learning-a-taxonomy-and-terminology-of-attacks-and-mitigations" author: "Jeremy Weaver" date: "2025-04-03 13:18:20" category: "Premium" topics: "AML Taxonomy and Terminology, PredAI and GenAI Attack Taxonomies, AML Attack Methods and Mitigations, Trade-Offs and Challenges in Secure AI, Integrating AML with Cybersecurity Best Practices" summary: "The report outlines a taxonomy for adversarial machine learning, defining key terms and categorizing attacks—such as poisoning, evasion, privacy breaches, and prompt injection—for both predictive and generative AI systems. It discusses the trade-offs between security and performance and highlights challenges in balancing accuracy with adversarial robustness, aiming to guide standards and practices in securing AI systems." banner: "" thumbnail: "" --- NIST: Adversarial Machine Learning – A Taxonomy and Terminology of Attacks and Mitigations



Summary of Read Full Report (PDF)

This NIST report explores the landscape of adversarial machine learning (AML), categorizing attacks and corresponding defenses for both traditional (predictive) and modern generative AI systems.

It establishes a taxonomy and terminology to create a common understanding of threats like data poisoning, evasion, privacy breaches, and prompt injection. The document also highlights key challenges and limitations in current AML research and mitigation strategies, emphasizing the trade-offs between security, accuracy, and other desirable AI characteristics. Ultimately, the report aims to inform standards and practices for managing the security risks associated with the rapidly evolving field of artificial intelligence.