功能在网表表示学习中很重要

Chen Bai, Zhuolun He, Guangliang Zhang, Qiang Xu, Tsung-Yi Ho, Bei Yu, Yu Huang
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引用次数: 14

摘要

从原始门级网络列表中学习可行表示对于在逻辑合成、物理设计或验证中结合机器学习技术至关重要。现有的基于消息传递的图学习方法只关注图拓扑,而忽略了门功能,这往往无法捕获底层语义,从而限制了它们的泛化性。为了解决这一问题,我们提出了一种新的网络表表示学习框架,该框架利用对比方案有效地从网络表中获取通用功能知识。我们还提出了一种定制的图神经网络(GNN)架构,该架构学习一组独立的聚合器以更好地与上述框架合作。对多种复杂现实世界设计的综合实验表明,我们提出的解决方案显著优于最先进的网络列表特征学习流程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Functionality matters in netlist representation learning
Learning feasible representation from raw gate-level netlists is essential for incorporating machine learning techniques in logic synthesis, physical design, or verification. Existing message-passing-based graph learning methodologies focus merely on graph topology while overlooking gate functionality, which often fails to capture underlying semantic, thus limiting their generalizability. To address the concern, we propose a novel netlist representation learning framework that utilizes a contrastive scheme to acquire generic functional knowledge from netlists effectively. We also propose a customized graph neural network (GNN) architecture that learns a set of independent aggregators to better cooperate with the above framework. Comprehensive experiments on multiple complex real-world designs demonstrate that our proposed solution significantly outperforms state-of-the-art netlist feature learning flows.
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