physicsnemo and physics-driven-ml

physicsnemo
71
Verified
physics-driven-ml
39
Emerging
Maintenance 20/25
Adoption 10/25
Maturity 16/25
Community 25/25
Maintenance 0/25
Adoption 6/25
Maturity 16/25
Community 17/25
Stars: 2,530
Forks: 605
Downloads:
Commits (30d): 28
Language: Python
License: Apache-2.0
Stars: 16
Forks: 11
Downloads:
Commits (30d): 0
Language: Python
License: MIT
No Package No Dependents
Stale 6m No Package No Dependents

About physicsnemo

NVIDIA/physicsnemo

Open-source deep-learning framework for building, training, and fine-tuning deep learning models using state-of-the-art Physics-ML methods

This framework helps scientists and engineers build, train, and fine-tune AI models that combine real-world data with known physics principles. It takes scientific and engineering data (like point clouds or meshes) and physics equations as input to produce predictive AI models for complex systems. Researchers and domain experts in fields like climate science or computational fluid dynamics would use this to create models that offer real-time predictions.

scientific-modeling computational-fluid-dynamics climate-research engineering-simulation materials-science

About physics-driven-ml

nbouziani/physics-driven-ml

Physics-driven machine learning using PyTorch and Firedrake

This project helps researchers and engineers who work with physics-based simulations by generating data and training machine learning models that integrate directly with partial differential equations (PDEs). It takes parameters for physical systems and observed data, then produces trained machine learning models capable of solving inverse problems like inferring material properties. The end-users are computational scientists, physicists, and engineers working on complex simulation and modeling tasks.

computational-physics scientific-machine-learning inverse-problems finite-element-analysis numerical-simulation

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