@@ -1,35 +1,43 @@
|
||||
PINA Tutorials
|
||||
======================
|
||||
🚀 Welcome to the PINA Tutorials!
|
||||
==================================
|
||||
|
||||
|
||||
In this folder we collect useful tutorials in order to understand the principles and the potential of **PINA**.
|
||||
In this folder we collect useful tutorials in order to understand the principles and the potential of **PINA**.
|
||||
Whether you're just getting started or looking to deepen your understanding, these resources are here to guide you.
|
||||
|
||||
Getting started with PINA
|
||||
-------------------------
|
||||
|
||||
- `Introduction to PINA for Physics Informed Neural Networks training <tutorial1/tutorial.html>`_
|
||||
- `Introductory Tutorial: A Beginner's Guide to PINA <tutorial17/tutorial.html>`_
|
||||
- `How to build a Problem in PINA <tutorial16/tutorial.html>`_
|
||||
- `Introduction to Solver classes <tutorial18/tutorial.html>`_
|
||||
- `Introduction to Trainer class <tutorial11/tutorial.html>`_
|
||||
- `Data structure for SciML: Tensor, LabelTensor, Data and Graph <tutorial19/tutorial.html>`_
|
||||
- `Building geometries with DomainInterface class <tutorial6/tutorial.html>`_
|
||||
- `Introduction to PINA Equation class <tutorial12/tutorial.html>`_
|
||||
- `PINA and PyTorch Lightning, training tips and visualizations <tutorial11/tutorial.html>`_
|
||||
- `Building custom geometries with PINA Location class <tutorial6/tutorial.html>`_
|
||||
|
||||
|
||||
Physics Informed Neural Networks
|
||||
--------------------------------
|
||||
|
||||
- `Two dimensional Poisson problem using Extra Features Learning <tutorial2/tutorial.html>`_
|
||||
- `Two dimensional Wave problem with hard constraint <tutorial3/tutorial.html>`_
|
||||
- `Resolution of a 2D Poisson inverse problem <tutorial7/tutorial.html>`_
|
||||
- `Periodic Boundary Conditions for Helmotz Equation <tutorial9/tutorial.html>`_
|
||||
- `Multiscale PDE learning with Fourier Feature Network <tutorial13/tutorial.html>`_
|
||||
- `Introductory Tutorial: Physics Informed Neural Networks with PINA <tutorial1/tutorial.html>`_
|
||||
- `Enhancing PINNs with Extra Features to solve the Poisson Problem <tutorial2/tutorial.html>`_
|
||||
- `Applying Hard Constraints in PINNs to solve the Wave Problem <tutorial3/tutorial.html>`_
|
||||
- `Applying Periodic Boundary Conditions in PINNs to solve the Helmotz Problem <tutorial9/tutorial.html>`_
|
||||
- `Inverse Problem Solving with Physics-Informed Neural Network <tutorial7/tutorial.html>`_
|
||||
- `Learning Multiscale PDEs Using Fourier Feature Networks <tutorial13/tutorial.html>`_
|
||||
- `Learning Bifurcating PDE Solutions with Physics-Informed Deep Ensembles <tutorial14/tutorial.html>`_
|
||||
|
||||
Neural Operator Learning
|
||||
------------------------
|
||||
|
||||
- `Two dimensional Darcy flow using the Fourier Neural Operator <tutorial5/tutorial.html>`_
|
||||
- `Time dependent Kuramoto Sivashinsky equation using the Averaging Neural Operator <tutorial10/tutorial.html>`_
|
||||
- `Introductory Tutorial: Neural Operator Learning with PINA <tutorial21/tutorial.html>`_
|
||||
- `Modeling 2D Darcy Flow with the Fourier Neural Operator <tutorial5/tutorial.html>`_
|
||||
- `Solving the Kuramoto-Sivashinsky Equation with Averaging Neural Operator <tutorial10/tutorial.html>`_
|
||||
|
||||
Supervised Learning
|
||||
-------------------
|
||||
|
||||
- `Unstructured convolutional autoencoder via continuous convolution <tutorial4/tutorial.html>`_
|
||||
- `POD-RBF and POD-NN for reduced order modeling <tutorial8/tutorial.html>`_
|
||||
- `Introductory Tutorial: Supervised Learning with PINA <tutorial20/tutorial.html>`_
|
||||
- `Chemical Properties Prediction with Graph Neural Networks <tutorial25/tutorial.html>`_
|
||||
- `Unstructured Convolutional Autoencoders with Continuous Convolution <tutorial4/tutorial.html>`_
|
||||
- `Reduced Order Modeling with POD-RBF and POD-NN Approaches for Fluid Dynamics <tutorial8/tutorial.html>`_
|
||||
|
||||
Reference in New Issue
Block a user