CYAIJul 7, 2024

A Blueprint for Auditing Generative AI

arXiv:2407.05338v14 citationsh-index: 2
Originality Incremental advance
AI Analysis

This addresses the governance challenges for policymakers and technology providers in auditing generative AI, though it is incremental as it builds on existing auditing concepts.

The authors tackled the lack of effective auditing procedures for generative AI systems by proposing a novel three-layered blueprint involving governance, model, and application audits, showing it can feasibly identify and manage ethical and social risks.

The widespread use of generative AI systems is coupled with significant ethical and social challenges. As a result, policymakers, academic researchers, and social advocacy groups have all called for such systems to be audited. However, existing auditing procedures fail to address the governance challenges posed by generative AI systems, which display emergent capabilities and are adaptable to a wide range of downstream tasks. In this chapter, we address that gap by outlining a novel blueprint for how to audit such systems. Specifically, we propose a three-layered approach, whereby governance audits (of technology providers that design and disseminate generative AI systems), model audits (of generative AI systems after pre-training but prior to their release), and application audits (of applications based on top of generative AI systems) complement and inform each other. We show how audits on these three levels, when conducted in a structured and coordinated manner, can be a feasible and effective mechanism for identifying and managing some of the ethical and social risks posed by generative AI systems. That said, it is important to remain realistic about what auditing can reasonably be expected to achieve. For this reason, the chapter also discusses the limitations not only of our three-layered approach but also of the prospect of auditing generative AI systems at all. Ultimately, this chapter seeks to expand the methodological toolkit available to technology providers and policymakers who wish to analyse and evaluate generative AI systems from technical, ethical, and legal perspectives.

Foundations

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

Your Notes