🚀 Disrupting legacy CAE: Transitioning O(n^3) classical solvers to O(1) AI surrogates. Achieving 100,000x speedups using NVIDIA CUDA-X and PINNs
-
Updated
Mar 17, 2026 - Jupyter Notebook
🚀 Disrupting legacy CAE: Transitioning O(n^3) classical solvers to O(1) AI surrogates. Achieving 100,000x speedups using NVIDIA CUDA-X and PINNs
Physical AI exploration by a CAE engineer: MeshGraphNet, FNO, PyG experiments. Companion code for the "AI Demystification" series.
Guardian P — Solar PV Anomaly Detection Middleware Real-time physics-constraint engine + AI reasoning layer. Intercepts dirty data before it reaches downstream decision AI. Proven on 136,476 real data points: anomaly rate dropped from 47.5% to 3.6%. Self-learning feedback loop • 15-minute setup • Extremely low deployment friction.
Add a description, image, and links to the physics-ai topic page so that developers can more easily learn about it.
To associate your repository with the physics-ai topic, visit your repo's landing page and select "manage topics."