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Logo - FAIR Data Spaces

FAIR-DS

Kontakt
FAIR-DS
Projekt Status
abgeschlossen
Startdatum
March 9, 2026

Beschreibung

Das Projekt FAIR Data Spaces erstellte organisatorische, rechtliche und technische Bausteine für einen gemeinsamen, Cloud-basierten Datenraum für Industrie und Forschung unter Beachtung der FAIR-Prinzipien. In dem Projekt wurden die föderierte, sichere Dateninfrastruktur Gaia-X und NFDI zu einem gemeinsamen, cloud-basierten Datenraum für Industrie und Forschung unter Einhaltung der FAIR-Prinzipien verbunden.

Kollaborationspartner

Nationale Forschungsdateninfrastruktur (NFDI) e.V. Mehr erfahren
Justus-Liebig-Universität Gießen Mehr erfahren
Universität Leipzig Mehr erfahren
RWTH Aachen University Mehr erfahren
Logo - Eberhard Karls Universität Tübingen
University of Tübingen
Mehr erfahren
European Molecular Biology Laboratory Mehr erfahren
Heidelberger Akademie der Wissenschaften Mehr erfahren
Logo - Universitätsklinikum Heidelberg
Universitätsklinikum Heidelberg
Mehr erfahren
FIZ Karlsruhe – Leibniz-Institut für Informationsinfrastruktur Mehr erfahren
TIB – Leibniz-Informationszentrum Technik und Naturwissenschaften und Universitätsbibliothek Mehr erfahren

Dieses Projekt wird unterstützt von

Gefördert durch: Bundesministerium für Forschung, Technologie und Raumfahrt

Publikationen

Towards an ELSA Curriculum for Data Scientists

2024 - Open Access -

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.

AI Ethics—A Bird’s Eye View

Abstract

The explosion of data-driven applications using Artificial Intelligence (AI) in recent years has given rise to a variety of ethical issues regarding data collection, annotation, and processing using mostly opaque algorithms, as well as the interpretation and employment of the results of the AI pipeline. The ubiquity of AI applications negatively impacts a variety of sensitive areas, ranging from discrimination against vulnerable populations to privacy invasion and the environmental cost that these algorithms entail, and puts into focus on the ever present domain of AI ethics. In this review article we present a bird’s eye view approach of the AI ethics landscape, starting from a historical point of view, examining the moral issues that were introduced by big datasets and the application of non-symbolic AI algorithms, the normative approaches (principles and guidelines) to these issues and the ensuing criticism, as well as the actualization of these principles within the proposed frameworks. Subsequently, we focus on the concept of responsibility, both as personal responsibility of the AI practitioners and sustainability, meaning the promotion of beneficence for both the society and the domain, and the role of professional certification and education in averting unethical choices. Finally, we conclude with indicating the multidisciplinary nature of AI ethics and suggesting future challenges.