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Tutorials for doing scientific machine learning (SciML) and high-performance differential equation solving with open source software.

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SciMLTutorials.jl: Tutorials for Scientific Machine Learning and Differential Equations

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SciMLTutorials.jl holds PDFs, webpages, and interactive Jupyter notebooks showing how to utilize the software in the SciML Scientific Machine Learning ecosystem. This set of tutorials was made to complement the documentation and the devdocs by providing practical examples of the concepts. For more details, please consult the docs.

Interactive Notebooks

To run the tutorials interactively via Jupyter notebooks, install the package and open the tutorials like:

using Pkg
pkg"add https://github.com/SciML/SciMLTutorials.jl"
using SciMLTutorials
SciMLTutorials.open_notebooks()

Video Tutorial

Video Tutorial

Table of Contents

Contributing

First of all, make sure that your current directory is SciMLTutorials. All of the files are generated from the Weave.jl files in the tutorials folder. To run the generation process, do for example:

using Pkg, SciMLTutorials
cd(joinpath(dirname(pathof(SciMLTutorials)), ".."))
Pkg.pkg"activate ."
Pkg.pkg"instantiate"
SciMLTutorials.weave_file("introduction","01-ode_introduction.jmd")

To generate all of the notebooks, do:

SciMLTutorials.weave_all()

If you add new tutorials which require new packages, simply updating your local environment will change the project and manifest files. When this occurs, the updated environment files should be included in the PR.

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Tutorials for doing scientific machine learning (SciML) and high-performance differential equation solving with open source software.

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