We present ReVEAL, a graph-learning-based method for reverse engineering of multiplier architectures to improve algebraic circuit verification techniques. Our framework leverages structural graph features and learning-driven inference to identify architecture patterns at scale, enabling robust handling of large optimized multipliers. We demonstrate applicability across diverse multiplier benchmarks and show improvements in scalability and accuracy compared to traditional rule-based approaches. The method integrates smoothly with existing verification flows and supports downstream algebraic proof strategies.
翻译:本文提出ReVEAL,一种基于图学习的乘法器架构逆向工程方法,旨在改进代数电路验证技术。该框架利用结构图特征与学习驱动的推理,实现大规模架构模式的识别,从而能够稳健处理大型优化乘法器。我们在多种乘法器基准测试中验证了其适用性,并证明相较于传统基于规则的方法,本方法在可扩展性与准确性方面均有提升。该方法能够与现有验证流程无缝集成,并支持下游代数证明策略。