Towards an ELSA Curriculum for Data Scientists

AI Pub Date : 2024-04-11 DOI:10.3390/ai5020025
M. Christoforaki, O. Beyan
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Abstract

The use of artificial intelligence (AI) applications in a growing number of domains in recent years has put into focus the ethical, legal, and societal aspects (ELSA) of these technologies and the relevant challenges they pose. In this paper, we propose an ELSA curriculum for data scientists aiming to raise awareness about ELSA challenges in their work, provide them with a common language with the relevant domain experts in order to cooperate to find appropriate solutions, and finally, incorporate ELSA in the data science workflow. ELSA should not be seen as an impediment or a superfluous artefact but rather as an integral part of the Data Science Project Lifecycle. The proposed curriculum uses the CRISP-DM (CRoss-Industry Standard Process for Data Mining) model as a backbone to define a vertical partition expressed in modules corresponding to the CRISP-DM phases. The horizontal partition includes knowledge units belonging to three strands that run through the phases, namely ethical and societal, legal and technical rendering knowledge units (KUs). In addition to the detailed description of the aforementioned KUs, we also discuss their implementation, issues such as duration, form, and evaluation of participants, as well as the variance of the knowledge level and needs of the target audience.
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为数据科学家开设 ELSA 课程
近年来,人工智能(AI)应用在越来越多的领域中,使这些技术的伦理、法律和社会方面(ELSA)及其带来的相关挑战成为焦点。在本文中,我们提出了针对数据科学家的 ELSA 课程,旨在提高他们对工作中的 ELSA 挑战的认识,为他们提供与相关领域专家的共同语言,以便合作找到适当的解决方案,并最终将 ELSA 纳入数据科学工作流程。ELSA 不应被视为障碍或多余的人工制品,而应被视为数据科学项目生命周期的一个组成部分。建议的课程以 CRISP-DM(CRoss-数据挖掘行业标准流程)模型为骨干,定义了一个纵向分区,以与 CRISP-DM 各阶段相对应的模块表示。横向分区包括贯穿各阶段的三个知识单元,即伦理和社会、法律和技术渲染知识单元(KUs)。除了对上述知识单元的详细描述外,我们还讨论了其实施、持续时间、形式和参与者评估等问题,以及目标受众的知识水平和需求差异。
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