Toward Third-Party Assurance of AI Systems: Design Requirements, Prototype, and Early Testing
Rachel M. Kim, Blaine Kuehnert, Alice Lai, Kenneth Holstein, Hoda Heidari, Rayid Ghani

TL;DR
This paper presents a comprehensive third-party AI assurance framework designed to evaluate AI systems systematically, ensuring credibility, accountability, and usability across various organizational contexts through a prototype and early validation.
Contribution
It introduces a novel, end-to-end AI assurance framework with specific tools and processes, addressing gaps in existing evaluation resources and emphasizing third-party credibility.
Findings
Framework is sound and comprehensive
Usable across different organizational contexts
Effective at identifying bespoke issues
Abstract
As Artificial Intelligence (AI) systems proliferate, the need for systematic, transparent, and actionable processes for evaluating them is growing. While many resources exist to support AI evaluation, they have several limitations. Few address both the process of designing, developing, and deploying an AI system and the outcomes it produces. Furthermore, few are end-to-end and operational, give actionable guidance, or present evidence of usability or effectiveness in practice. In this paper, we introduce a third-party AI assurance framework that addresses these gaps. We focus on third-party assurance to prevent conflict of interest and ensure credibility and accountability of the process. We begin by distinguishing assurance from audits in several key dimensions. Then, following design principles, we reflect on the shortcomings of existing resources to identify a set of design…
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Taxonomy
TopicsEthics and Social Impacts of AI · Safety Systems Engineering in Autonomy · Adversarial Robustness in Machine Learning
