AIJan 13, 2025

Lessons From Red Teaming 100 Generative AI Products

Microsoft
arXiv:2501.07238v126 citationsh-index: 22
Originality Incremental advance
AI Analysis

This work addresses safety and security gaps in generative AI for practitioners and researchers, though it is incremental as it builds on existing red teaming practices.

The paper tackles the challenge of effectively red teaming generative AI systems by sharing insights from testing over 100 products, resulting in a threat model ontology and eight practical lessons to align efforts with real-world risks.

In recent years, AI red teaming has emerged as a practice for probing the safety and security of generative AI systems. Due to the nascency of the field, there are many open questions about how red teaming operations should be conducted. Based on our experience red teaming over 100 generative AI products at Microsoft, we present our internal threat model ontology and eight main lessons we have learned: 1. Understand what the system can do and where it is applied 2. You don't have to compute gradients to break an AI system 3. AI red teaming is not safety benchmarking 4. Automation can help cover more of the risk landscape 5. The human element of AI red teaming is crucial 6. Responsible AI harms are pervasive but difficult to measure 7. LLMs amplify existing security risks and introduce new ones 8. The work of securing AI systems will never be complete By sharing these insights alongside case studies from our operations, we offer practical recommendations aimed at aligning red teaming efforts with real world risks. We also highlight aspects of AI red teaming that we believe are often misunderstood and discuss open questions for the field to consider.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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