Gparc / README.md
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Upload G-PARC model weights, test data, and configs (4 models)
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metadata
license: mit
tags:
  - physics-ml
  - graph-neural-networks
  - computational-mechanics
  - elastoplastic

G-PARC: Graph Physics-Aware Recurrent Convolutions

Model weights, test data, and configuration files for the G-PARC elastoplastic simulation paper.

Models

Model Description
G-PARCv1 Graph Physics-Aware Recurrent Convolutions — fully learned GNN operators
G-PARCv2 MLS differential operators + numerical Euler integration
MeshGraphKAN Kolmogorov-Arnold Network message passing with Fourier basis
MeshGraphNet Standard encode-process-decode GNN (Pfaff et al., 2021)

Dataset

PLAID 2D Elasto-Plasto-Dynamics benchmark — high-velocity impact on steel plates.

  • Variables: Displacement field (U_x, U_y)
  • Normalization: Global max
  • Meshes: Unstructured quad elements

Usage

from huggingface_hub import hf_hub_download
ckpt = hf_hub_download("jacktbeerman/Gparc", "checkpoints/gparcv2_best.pth")