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CME-CAD: Reinforcement Learning for CAD Code Generation

Published:Dec 29, 2025 09:37
1 min read
ArXiv

Analysis

This paper addresses the challenge of automating CAD model generation, a crucial task in industrial design. It proposes a novel reinforcement learning paradigm, CME-CAD, to overcome limitations of existing methods that often produce non-editable or approximate models. The introduction of a new benchmark, CADExpert, with detailed annotations and expert-generated processes, is a significant contribution, potentially accelerating research in this area. The two-stage training process (MEFT and MERL) suggests a sophisticated approach to leveraging multiple expert models for improved accuracy and editability.
Reference

The paper introduces the Heterogeneous Collaborative Multi-Expert Reinforcement Learning (CME-CAD) paradigm, a novel training paradigm for CAD code generation.