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arXiv1d ago
4.3

Lightweight Geometric Adaptation for Training Physics-Informed Neural Networks

Kang An, Chenhao Si, Shiqian Ma, Ming Yan

View original ↗

Analysis

Viral velocity
low
Implementation gapYES
Novelty5/10
Categorypaper
Topics
trainingphysics-informedoptimization

Opportunity Brief

Create an easy-to-use plug-in for popular PINN libraries like DeepXDE that adds curvature-aware secant optimization to standard first-order solvers.

Suggested repo: curvature-pinns

"Make your PINNs converge faster with secant-based optimization."

Estimated effort: 30h