CME211 / notes
CME211 Notes | Outline ->
☆253Updated last year
Related projects: ⓘ
- ☆184Updated 3 years ago
- 18.303 - Linear PDEs course☆138Updated 9 months ago
- ☆71Updated 5 years ago
- Code for "Learning data-driven discretizations for partial differential equations"☆159Updated 4 years ago
- Julia code for the book Numerical Linear Algebra☆109Updated last year
- 18.336 - Fast Methods for Partial Differential and Integral Equations☆178Updated 4 months ago
- 18.S096 - Applications of Scientific Machine Learning☆305Updated 2 years ago
- UNIVR PDE course project and just for fun☆115Updated 7 years ago
- Resources for STA 633 class☆163Updated 7 years ago
- An interactive book about the Riemann problem for hyperbolic PDEs, using Jupyter notebooks.☆264Updated last year
- A Discussion on Solving Partial Differential Equations using Neural Networks☆64Updated 5 years ago
- Deep Hidden Physics Models: Deep Learning of Nonlinear Partial Differential Equations☆262Updated 2 years ago
- Harvard Applied Math 205: Code Examples☆77Updated 2 years ago
- Jupyter notebooks and other materials developed for the Columbia course APMA 4300☆276Updated last year
- ☆36Updated last year
- A list of papers relating Computational Physics and Machine Learning☆130Updated 5 years ago
- 18.335 - Introduction to Numerical Methods course☆492Updated 4 months ago
- Course notes for graduate-level class on numerical methods for deep learning☆49Updated 3 years ago
- Introduction to Uncertainty Quantification☆236Updated 2 years ago
- Jupyter notebooks associated with the Algorithms for Optimization textbook☆411Updated 2 years ago
- Lecture material on numerical methods for partial differential equations.☆249Updated 3 years ago
- Jupyter notebook class notes for Numerical Methods for PDEs☆137Updated last year
- Deep Galerkin Method☆16Updated 5 years ago
- Forward-Backward Stochastic Neural Networks: Deep Learning of High-dimensional Partial Differential Equations☆141Updated 4 years ago
- IPython notebooks with supplementary material to accompany the textbook by Trefethen & Bau.☆28Updated 5 years ago
- Links to works on deep learning algorithms for physics problems, TUM-I15 and beyond☆52Updated 3 years ago
- Resources for "The Craft of Finite Difference Computing with Partial Differential Equations" by H. P. Langtangen☆162Updated 4 years ago
- PyDEns is a framework for solving Ordinary and Partial Differential Equations (ODEs & PDEs) using neural networks☆283Updated 7 months ago
- Efficient and Scalable Physics-Informed Deep Learning and Scientific Machine Learning on top of Tensorflow for multi-worker distributed c…☆110Updated 2 years ago
- CME 213 Spring 2021☆62Updated 3 years ago