SciML / SciMLTutorialsOutputLinks
Tutorials for doing scientific machine learning (SciML) and high-performance differential equation solving with open source software.
☆22Updated last year
Alternatives and similar repositories for SciMLTutorialsOutput
Users that are interested in SciMLTutorialsOutput are comparing it to the libraries listed below
Sorting:
- Training materials for ModelingToolkit and JuliaSim☆38Updated 2 years ago
- ☆36Updated 2 years ago
- No need to train, he's a smooth operator☆45Updated last month
- Efficient, Accurate, and Streamlined Training of Physics-Informed Neural Networks☆58Updated 5 months ago
- Fast uncertainty quantification for scientific machine learning (SciML) and differential equations☆69Updated last week
- Physics-Enhanced Regression for Initial Value Problems☆20Updated last year
- Automates steady and unsteady adjoints (general solvers and ODEs respectively). Forward and reverse mode algorithmic differentiation arou…☆29Updated last month
- The SciML Scientific Machine Learning Software Organization Website☆61Updated this week
- Optimization framework for nonlinear, gradient-based constrained, sparse optimization problems.☆30Updated last month
- Solving differential equations in parallel on GPUs - JuliaCon 2021 workshop☆95Updated last year
- Start solving PDEs in Julia with Gridap.jl☆136Updated 2 weeks ago
- A library of systems of partial differential equations, as defined with ModelingToolkit.jl in Julia☆28Updated last month
- Implicit Runge-Kutta Gauss-Legendre 16th order (Julia)☆28Updated last week
- High-level model-order reduction to automate the acceleration of large-scale simulations☆40Updated last week
- A Julia package to construct orthogonal polynomials, their quadrature rules, and use it with polynomial chaos expansions.☆123Updated last month
- A Julia package for Deep Backwards Stochastic Differential Equation (Deep BSDE) and Feynman-Kac methods to solve high-dimensional PDEs wi…☆81Updated 3 weeks ago
- Lecture notes for M3M6 Methods of Mathematical Physics☆43Updated 5 years ago
- Easy scientific machine learning (SciML) parameter estimation with pre-built loss functions☆60Updated 2 weeks ago
- Taylor-mode automatic differentiation for higher-order derivatives☆80Updated last month
- SciML-Bench Benchmarks for Scientific Machine Learning (SciML), Physics-Informed Machine Learning (PIML), and Scientific AI Performance☆24Updated this week
- Automatic Differentiation for Solid Mechanics☆56Updated 2 weeks ago
- Lightweight and easy generation of quasi-Monte Carlo sequences with a ton of different methods on one API for easy parameter exploration …☆117Updated this week
- Notebook for my new solver book☆65Updated 2 months ago
- A scientific machine learning (SciML) wrapper for the FEniCS Finite Element library in the Julia programming language☆106Updated last month
- Global documentation for the Julia SciML Scientific Machine Learning Organization☆79Updated this week
- Probabilistic Numerical Differential Equation solvers via Bayesian filtering and smoothing☆129Updated last month
- An interface for accelerated simulation of high-dimensional collisionless and electrostatic plasmas.☆35Updated 3 years ago
- Structure Preserving Machine Learning Models in Julia☆50Updated 3 weeks ago
- Fast matrix multiplication and division for Toeplitz matrices in Julia☆71Updated last month
- A library for building differential equations arising from physical problems for physics-informed and scientific machine learning (SciML)☆51Updated last month