Self-Improving CAD Generation Agents with Finite Element Analysis as Feedback
Guijin Son, Jehyun Park, Seyeon Park, Sunghee Ahn, Youngjae Yu

TL;DR
This paper introduces a feedback-driven approach to CAD generation using finite element analysis, improving the structural validity of generated designs through iterative validation and new supervision signals.
Contribution
It presents a novel task formulation for CAD generation validated by FEA and introduces supervision signals like a blueprint schema and multi-view rendering to enhance design quality.
Findings
FEA validation shows current models rarely produce passing artifacts on first attempt.
Supervision signals improve geometric reconstruction metrics.
Feedback tools increase the structural and visual plausibility of CAD artifacts.
Abstract
Computer-aided design (CAD) is the backbone of modern industrial design, yet learned CAD generators still fall short of real engineering pipelines: they neither iterate like engineers nor evaluate what engineering requires. Prior work has treated CAD generation as two disjoint steps, part synthesis and assembly, where the former is graded by proximity to a gold reference and the latter, when handled at all, is reduced to a separate constraint solving step. In this work, we introduce a more industry-native task formulation that requires a model to produce a fully assembled multi-part STEP file from a free-form engineering brief, which is then validated via finite element analysis (FEA). FEA validation reveals that Codex (GPT-5.5) and Claude Code (Opus-4.7) agents do not produce a single strict-passing artifact in the main first-attempt sweep, with the best configuration meeting only…
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