Responsible AI has been widely considered as one of the greatest scientific challenges of our time and the key to increase the adoption of AI. A number of AI ethics principles frameworks have been published recently. However, without further best practice guidance, 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 occur at any step of the development lifecycle crosscutting 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 algorithm level, we focus on patterns that AI system stakeholders can undertake in practice to ensure that the developed AI systems are responsible throughout the entire governance and engineering lifecycle. The Responsible AI Pattern Catalogue classifies the patterns into three groups: multi-level governance patterns, trustworthy process patterns, and responsible-AI-by-design product patterns. These patterns provide a systematic and actionable guidance for stakeholders to implement responsible AI.
翻译:负责任的大赦国际被广泛视为我们时代最大的科学挑战之一,也是增加采用大赦国际的关键。最近公布了一些大赦国际的道德原则框架。然而,如果没有进一步的最佳做法指导,执业者除了理据之外,别无别处可言。此外,在算法一级而不是系统一级作出了重大努力,主要侧重于数学可达目的伦理原则(如公平性)的子集。然而,道德问题可能发生在发展生命周期任何阶段的跨周期中,许多大赦国际和大赦国际算法和模型以外的系统的非大赦国际组成部分。为了从系统角度实施负责任的大赦国际,我们在本文件中提出了基于多语言文学审查结果的负责任的大赦国际模式目录。这些模式不是停留在原则或算法一级,而是侧重于AI系统利益攸关方在实践中可以采取的模式,以确保发达的AI系统在整个治理和工程生命周期中负责。负责任的AI模式分类将模式分为三个组:多层次治理模式、可信赖的进程模式和负责任的AI逐项设计产品模式。这些模式为实施AI系统化和可操作的指导模式提供了一种负责任的AI。