barrosyan / pinnfactoryLinks
A lightweight framework for building Physics-Informed Neural Networks (PINNs) with symbolic PDE definitions using SymPy and automatic differentiation in PyTorch. It provides flexible neural architectures, inverse parameter estimation, and automatic loss generation from PDEs, conditions, and data.
☆68Updated 2 months ago
Alternatives and similar repositories for pinnfactory
Users that are interested in pinnfactory are comparing it to the libraries listed below
Sorting:
- A compact, high-performance finite element analysis engine built on JAX.☆61Updated 2 weeks ago
- FoKL-GP implements Karhunen-Loève decomposed Gaussian processes with built-in forward variable selection. Decomposed GPs are key to embed…☆18Updated last month
- TorchFSM: Fourier Spectral Method with PyTorch☆52Updated 2 weeks ago
- Library for using the models trained in PhysicsNeMo in Engineering and CFD workflows☆53Updated 3 weeks ago
- ☆32Updated last year
- A curated list of awesome Scientific Machine Learning (SciML) papers, resources and software☆75Updated last year
- Playing around with Phyiscs-Informed Neural Networks☆97Updated 4 months ago
- Introduction to JAX Workshop @ ETH Zurich, 25 June 2024☆38Updated 7 months ago
- Numerical program to solve PDEs on a spherical surface by a spectral methods using spherical harmonics.☆95Updated 11 months ago
- JAX-DIPS is a differentiable interfacial PDE solver.☆46Updated last year
- Workshop tutorials for Pyomo.DoE☆13Updated 5 months ago
- Example problems in Physics informed neural network in JAX☆82Updated 2 years ago
- An RL-Gym for Challenge Problems in Data-Driven Modeling and Control of Fluid Dynamics.☆87Updated 4 months ago
- PINNs-JAX, Physics-informed Neural Networks (PINNs) implemented in JAX.☆55Updated last year
- Code for the paper "Thermodynamics-informed graph neural networks" published in IEEE Transactions on Artificial Intelligence (TAI).☆105Updated last year
- Solve the advection diffusion equations looped into an optimization problem with JAX/autodiff☆13Updated 6 months ago
- Some Jupyter Notebooks I am creating for the course Applied Elasticity at IIT Kharagpur☆17Updated 5 years ago
- Gaussian process-based interpretable latent space dynamics identification through deep autoencoder☆35Updated last week
- Datasets and code for results presented in the ProbConserv paper☆56Updated last year
- Slides + Source Code + Data for an introductory course to NumPy, Matplotlib, SciPy, Scikit-Learn & TensorFlow Keras☆24Updated 3 years ago
- A set of Python notebooks to introduce the fundamentals of numerical programming using extensive examples from engineering.☆36Updated 4 years ago
- Introductory workshop on using deep neural networks for symbolic regression☆13Updated 7 months ago
- Automatic-Differentiation-Enabled Plasma Transport in JAX☆34Updated this week
- Learning Neural Differential Algebraic Equations via Operator Splitting☆21Updated 4 months ago
- Scientific Machine Learning Tutorials☆40Updated 4 years ago
- Introductory Python notes from the Chemical Engineering Department at the University of Utah☆11Updated 5 years ago
- ☆17Updated 11 months ago
- ☆34Updated last year
- Efficient Differentiable n-d PDE solvers in JAX.☆52Updated last month
- Python interface for libROM, library for reduced order models☆62Updated 3 months ago