Abstract
This paper introduces a global mapping on the use of artificial intelligence in museums. It was conducted in collaboration with students in the master's program Expanded Museum Studies at the University of Applied Arts Vienna. Guided by the central research interest of identifying the motivations, contexts, goals, and challenges surrounding the use of AI in museums, the mapping aims to help assess the relevance and development prospects of AI in the museum field, both from a global perspective and on a comparative basis.
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