
Research & Papers
A Step-by-Step Coding Tutorial on NVIDIA PhysicsNeMo: Darcy Flow, FNOs, PINNs, Surrogate Models, and Inference Benchmarking
Asif RazzaqMarkTechPost
AI Summary
A tutorial on implementing NVIDIA PhysicsNeMo for physics-informed machine learning, demonstrating how to build and train models like FNOs and PINNs for solving the 2D Darcy Flow problem on Google Colab with surrogate model development and inference benchmarking.
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