Smiles2vec
Chemical property predictor
An implementation of a deep learning model for predicting chemical properties from molecular structure data
Proof of the concept implementation of smiles2vec paper
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Language: Jupyter Notebook
last commit: almost 6 years ago
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deep-learningnueral-networkspharmaceuticalsword2vec
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