There are no reviews yet. Be the first to send feedback to the community and the maintainers!
machine-learning-and-simulation
All the handwritten notes π and source code files π₯οΈ used in my YouTube Videos on Machine Learning & Simulation (https://www.youtube.com/channel/UCh0P7KwJhuQ4vrzc3IRuw4Q)scientific-python-course
Slides + Source Code + Data for an introductory course to NumPy, Matplotlib, SciPy, Scikit-Learn & TensorFlow KerasTsunamis.jl
π π π Parallel Shallow Water Equations Solver by Finite Volume Method and HLLE Riemann Solver in Julia.StableFluids.jl
2D Stable Fluids & 3D Stable Fluids using the Fast Fourier Transformation implemented efficiently in Julia.lid-driven-cavity-python
Solving the Navier-Stokes Equations in Python π simply using NumPy.pdequinox
Neural Emulator Architectures in JAX.expmath
Online visualization tool for basic engineering math concepts using flask and bokeh. Available online at http://expmath.math.nat.tu-bs.de/ (in German)4k-turbulence-wallpapers
A collection of wallpapersapebench
[Neurips 2024] A benchmark suite for autoregressive neural emulation of PDEs. (>46 PDEs in 1D, 2D, 3D; Differentiable Physics; Unrolled Training; Rollout Metrics)pinns-in-jax
Simple implementation of Physics-Informed Neural Networks for the solution of Partial Differential Equations in JAX (using Equinox and Optax)exponax
Efficient Differentiable n-d PDE solvers in JAX.taylor-green-vortex-julia
A simple pseudo-spectral solver for the Direct Numerical Simulation (DNS) of the 3D Taylor-Green Vortex in the Julia programming languagenumerical_programming_cheatsheet
DeepONet-in-JAX
Simple implementation of Deep Operator Networks (DeepONets) in the JAX deep learning framework together with Equinox.UNet-in-JAX
Simple 1d UNet in JAX & Equinox to solve the Poisson equation.FNO-in-JAX
Simple implementation of Fourier Neural Operators (FNOs) in the JAX deep learning framework together with Equinox.autodiff-table
An overview of major automatic differentiation primitive rulespinns-in-julia
Simple implementation of Physics-Informed Neural Networks for the solution of Partial Differential Equations in Juliaconv-autodiff-table-frameworks
A collection of pullback rules, using function calls from various deep learning libraries. This also explains the handling of batch and channel axes.expmath_2
New Version of Expmath, partiall using the old Expmath but inside new streamlit environmentLove Open Source and this site? Check out how you can help us