Basics of machine learning for material science with python

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An enormous amount of data on materials are being pumped into freely accessible databases. Where there is data, there is machine learning. Therefore, machine learning has increasingly been employed to crunch all that data and extract new knowledge in several branches of material science.

In this tutorial, you are going to experience the power of using machine learning to predict materials properties. The tutorial covers a few basics of python that are key for doing data processing, and you will learn how to use our CrystalFeatures descriptors to generate a dataset of materials and train a machine learning model to predict material properties such as the bandgap.

The tutorial is delivered by Exciton Science Associate Investigator Dr Sherif Abbas of Deakin University.
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You cant believe how much helpful your video helped me. I have dropped from PhD in Material Science in 2017, now coming back to start again, this time in machine learning path and this information really cleared a lot of questions for me Sharif. Appreciate the good job you have done brother, may peace be upon you.

asadullamammadov
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Thank you for great video, can I have the link please?

asalkiazadeh
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Could you share the notebook? Thank you :)

agatapucienik
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the command "pip3 install pymatgen" isn't working in my system. don' know what's wrong with it.

VectorTutors
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Can you guys share the notebook .ipynb Thanks

dilchintala
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Very nice tutorial, so can you share with me the notebook .ipynb

khadimsene
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can i get the link to access that page

rueshwin
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Can you guys share the notebook .ipynb Thanks

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