CrabNet

Material predictor

A deep learning framework for predicting material properties from composition information.

Predict materials properties using only the composition information!

GitHub

92 stars
8 watching
28 forks
Language: Python
last commit: over 1 year ago
Linked from 1 awesome list

attentionattention-mechanismmachine-learningmaterials-informaticsmaterials-sciencematerials-screeningneural-networkspredict-materials-propertiespytorchscikit-learnself-attentiontransformer

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