Abstract
The transition to Industry 4.0 is promoting personalized production, challenging traditional design methods reliant on manual expertise and lengthy iterations. Although generative AI shows promise for automation, its industrial use is limited by difficulties in capturing and applying complex rule-based design specifications. To address this, we present “AutoFrit”, a comprehensive parametric automobile frit dataset containing design pairs from major manufacturers. Our evaluation shows that models trained on AutoFrit drastically reduce design iteration time from months to minutes while ensuring adherence to industrial standards, effectively addressing the scalability challenges in modern manufacturing.
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