AI Cards: Towards an Applied Framework for Machine-Readable AI and Risk Documentation Inspired by the EU AI Act
Delaram Golpayegani, Isabelle Hupont, Cecilia Panigutti, Harshvardhan, J. Pandit, Sven Schade, Declan O'Sullivan, Dave Lewis

TL;DR
This paper introduces AI Cards, a comprehensive framework for creating machine-readable and human-readable AI documentation aligned with the EU AI Act, facilitating compliance, transparency, and interoperability in AI risk management.
Contribution
It proposes AI Cards as a novel holistic framework for AI documentation, integrating technical specifications, use context, and risk management in both human- and machine-readable formats.
Findings
AI Cards enable transparent AI use case overview.
Semantic Web technologies support interoperability and automation.
The exemplar AI Card demonstrates practical application.
Abstract
With the upcoming enforcement of the EU AI Act, documentation of high-risk AI systems and their risk management information will become a legal requirement playing a pivotal role in demonstration of compliance. Despite its importance, there is a lack of standards and guidelines to assist with drawing up AI and risk documentation aligned with the AI Act. This paper aims to address this gap by providing an in-depth analysis of the AI Act's provisions regarding technical documentation, wherein we particularly focus on AI risk management. On the basis of this analysis, we propose AI Cards as a novel holistic framework for representing a given intended use of an AI system by encompassing information regarding technical specifications, context of use, and risk management, both in human- and machine-readable formats. While the human-readable representation of AI Cards provides AI stakeholders…
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Taxonomy
TopicsLaw, AI, and Intellectual Property
MethodsFocus
