NVIDIA PhysicsNeMo
Open-source framework for building physics-ML models at scale (renamed from Modulus, 2025)
README
NVIDIA PhysicsNeMo π NVIDIA PhysicsNeMo is undergoing an update to v2.0 - all the features, with easier installation and integration to external packages. See the migration guide for more details! NVIDIA PhysicsNeMo | Documentation | Install Guide | Getting Started | Contributing Guidelines | Dev blog What is PhysicsNeMo? NVIDIA PhysicsNeMo is an open-source deep-learning framework for building, training, fine-tuning, and inferring Physics AI models using state-of-the-art SciML methods forβ¦
- Repository
- github.com/nvidia/physicsnemo
Source attribution
- GitHub β github.com/nvidia/physicsnemo
- Awesome AI for Science β github.com/nvidia/physicsnemo
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