Responsible AI Pattern Catalogue: A Collection of Best Practices for AI Governance and Engineering
Qinghua Lu, Liming Zhu, Xiwei Xu, Jon Whittle, Didar Zowghi, Aurelie, Jacquet

TL;DR
This paper introduces a comprehensive Responsible AI Pattern Catalogue derived from a Multivocal Literature Review, offering practical, system-level patterns for AI governance and engineering to promote responsible AI development.
Contribution
It presents a novel pattern catalogue that operationalizes responsible AI across the entire development lifecycle, beyond just principles or algorithms.
Findings
Classifies patterns into governance, process, and product categories.
Provides actionable guidance for stakeholders.
Enhances system-level responsible AI practices.
Abstract
Responsible AI is widely considered as one of the greatest scientific challenges of our time and is key to increase the adoption of AI. Recently, a number of AI ethics principles frameworks have been published. However, without further guidance on best practices, practitioners are left with nothing much beyond truisms. Also, significant efforts have been placed at algorithm-level rather than system-level, mainly focusing on a subset of mathematics-amenable ethical principles, such as fairness. Nevertheless, ethical issues can arise at any step of the development lifecycle, cutting across many AI and non-AI components of systems beyond AI algorithms and models. To operationalize responsible AI from a system perspective, in this paper, we present a Responsible AI Pattern Catalogue based on the results of a Multivocal Literature Review (MLR). Rather than staying at the principle or…
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Taxonomy
TopicsEthics and Social Impacts of AI · Neuroethics, Human Enhancement, Biomedical Innovations · Law, AI, and Intellectual Property
