Towards Enabling FAIR Dataspaces Using Large Language Models
Benedikt T. Arnold
Johannes Theissen-Lipp
D. Collarana
Christoph Lange
Sandra Geisler
Edward Curry
Stefan Decker

Abstract
Dataspaces have recently gained adoption across various sectors, including traditionally less digitized domains such as culture. Leveraging Semantic Web technologies helps to make dataspaces FAIR, but their complexity poses a significant challenge to the adoption of dataspaces and increases their cost. The advent of Large Language Models (LLMs) raises the question of how these models can support the adoption of FAIR dataspaces. In this work, we demonstrate the potential of LLMs in dataspaces with a concrete example. We also derive a research agenda for exploring this emerging field.
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