adityapatel1010/Physics-Informed-Graph-Neural-Network
Implemented a Physics-Informed Graph Neural Network (GNN) inspired by Google DeepMind’s research to simulate particle dynamics with high accuracy (96.2%). The model leverages PyTorch, GNNs, and transfer learning to capture complex physical interactions in particle systems using graph-based representations.
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Jul 20, 2024
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