USE OF AI LANGUAGE MODELS IN GENERATING 3D PRINTABLE MODELS

Nicolae-Razvan MITITELU, Roxana HOBJALA, Vasile ERMOLAI, Marius-Ionut RIPANU, Cristian BIȘOG

Abstract


This paper presents aspects regarding the integration of artificial intelligence (IA) with OpenScad to generate STL files used in 3D printing. Conventional CAD modeling and manual writing of parametric scripts often require advanced technical knowledge and are prone to errors. It simplifies this process by interpreting the instructions in natural language and the automatic generation of optimized Openscad scripts. The experimental study focused on the design of a grooved tree-functional bore system, demonstrating the ability to ensure geometric accuracy, functional adaptability and perfect integration in the sectioning software. The results obtained confirm the efficiency, reproducibility and flexibility in the design, positioning as a transforming tool in parametric workflows for 3D printing.

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