GATMesh: Clock Mesh Timing Analysis using Graph Neural Networks
GATMesh: Clock Mesh Timing Analysis using Graph Neural Networks
Clock meshes are essential in high-performance VLSI systems for minimizing skew and handling PVT variations, but analyzing them is difficult due to reconvergent paths, multi-source driving, and input mesh buffer skew. SPICE simulations are accurate but slow; yet simplified models miss key effects like slew and input skew. We propose GATMesh, a Graph Neural Network (GNN)-based framework that models the clock mesh as a graph with augmented structural and physical features. Trained on SPICE data, GATMesh achieves high accuracy with average delay error of 5.27ps on unseen benchmarks, while achieving speed-ups of 47146x over multi-threaded SPICE simulation.
Muhammad Hadir Khan、Matthew Guthaus
电子电路微电子学、集成电路
Muhammad Hadir Khan,Matthew Guthaus.GATMesh: Clock Mesh Timing Analysis using Graph Neural Networks[EB/OL].(2025-07-08)[2025-07-25].https://arxiv.org/abs/2507.05681.点此复制
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