DOI: 10.1017/pds.2026.10577 ISSN: 2732-527X
From geometry to function: towards context-aware generative AI for engineering design
Elias Berger, Kevin Herrmann, Felix Pusch, Tobias Kriesell, Paul Gembarski, Jan Mehlstäubl, Roland Lachmayer, Kristin Paetzold-ByhainABSTRACT:
Current generative artificial intelligence for Computer-Aided Design (CAD) optimizes for geometric similarity, neglecting engineering criteria like functionality, manufacturability, and sustainability. This paper addresses this gap and proposes a conceptual framework to reorient generative CAD from replicating shapes to achieving function. We introduce two hybrid training strategies: a pre-learning approach using synthetically labeled datasets (evaluated via FEA, CAM, LCA) and a self-learning approach where GenAI uses these knowledge-based tools as a reinforcement feedback loop.