Skip to content

Online resource for a practical course in machine learning for materials research at Imperial College London (MATE70026)

License

Notifications You must be signed in to change notification settings

aronwalsh/MLforMaterials

Folders and files

NameName
Last commit message
Last commit date

Latest commit

5149c27 Β· Feb 17, 2025

History

72 Commits
May 29, 2024
Feb 1, 2024
Feb 17, 2025
Oct 11, 2023
Jan 20, 2025
Aug 2, 2023
Oct 11, 2023
Jan 23, 2025
Jan 23, 2025
Jan 27, 2025
Jan 30, 2025
Feb 3, 2025
Feb 6, 2025
Feb 10, 2025
Feb 14, 2025
Feb 17, 2025
Jan 8, 2025
May 29, 2024
Jun 5, 2024
Jan 20, 2025
Feb 17, 2025
Oct 11, 2023
Oct 11, 2023
May 29, 2024

Repository files navigation

Made withJupyter

deploy-book made-with-Markdown CC-BY license

Machine Learning for Materials

Online resource of a practical machine learning course in the Department of Materials at Imperial College London.

You have the option to browse the files or download the complete folder using the green clone or download button on the top right of the screen (zip file).

Course Description

Machine Learning for Materials (MATE70026) provides an introduction to statistical research tools for materials theory and simulation. It is aimed at senior undergraduate or junior postgraduate students.

You will consider how composition-structure-property information in materials science can be represented in a form suitable for machine learning. You will then build, train, and evaluate your own models using public tools and open datasets.

A hybrid teaching style will be followed with a mixture of lectures and assignments. The course assumes a basic working knowledge of the Python 3 programming language.

Lecture Slides

Post a Query

Course Website

You can view the site at https://aronwalsh.github.io/MLforMaterials

To build a local copy, first install Jupyter Book:

pip install -U jupyter-book

then enter the repository and run

jupyter-book build .

Acknowledgements

This module was developed by Aron Walsh with the assistance of Anthony Onwuli and Zhenzhu Li.

About

Online resource for a practical course in machine learning for materials research at Imperial College London (MATE70026)

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published