Need for UAI-Anatomy of the Paradigm of Usable Artificial Intelligence for Domain-Specific AI Applicability

Hajo Wiemer, Dorothea Schneider, Valentin Lang, Felix Conrad, Mauritz Mälzer, E. Boos, Kim Feldhoff, L. Drowatzky, Steffen Ihlenfeldt
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Abstract

Data-driven methods based on artificial intelligence (AI) are powerful yet flexible tools for gathering knowledge and automating complex tasks in many areas of science and practice. Despite the rapid development of the field, the existing potential of AI methods to solve recent industrial, corporate and social challenges has not yet been fully exploited. Research shows the insufficient practicality of AI in domain-specific contexts as one of the main application hurdles. Focusing on industrial demands, this publication introduces a new paradigm in terms of applicability of AI methods, called Usable AI (UAI). Aspects of easily accessible, domain-specific AI methods are derived, which address essential user-oriented AI services within the UAI paradigm: usability, suitability, integrability and interoperability. The relevance of UAI is clarified by describing challenges, hurdles and peculiarities of AI applications in the production area, whereby the following user roles have been abstracted: developers of cyber–physical production systems (CPPS), developers of processes and operators of processes. The analysis shows that target artifacts, motivation, knowledge horizon and challenges differ for the user roles. Therefore, UAI shall enable domain- and user-role-specific adaptation of affordances accompanied by adaptive support of vertical and horizontal integration across the domains and user roles.
对AI的需求——对特定领域AI适用性的可用人工智能范式的剖析
基于人工智能(AI)的数据驱动方法是在许多科学和实践领域收集知识和自动化复杂任务的强大而灵活的工具。尽管该领域发展迅速,但人工智能方法在解决近期工业、企业和社会挑战方面的现有潜力尚未得到充分利用。研究表明,人工智能在特定领域的实用性不足是其应用的主要障碍之一。本出版物以工业需求为重点,在人工智能方法的适用性方面引入了一种新的范式,称为可用人工智能(UAI)。推导出易于访问的、特定于领域的人工智能方法的各个方面,这些方法在UAI范式中解决了基本的面向用户的人工智能服务:可用性、适用性、可集成性和互操作性。通过描述人工智能在生产领域应用的挑战、障碍和特点,阐明了UAI的相关性,从而抽象出以下用户角色:网络物理生产系统(CPPS)的开发人员、流程的开发人员和流程的操作员。分析表明,用户角色的目标工件、动机、知识视野和挑战是不同的。因此,UAI应该支持特定于领域和用户角色的功能适配,同时支持跨领域和用户角色的纵向和横向集成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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