DeepPurpose
Deep modeling toolkit
A toolkit for molecular modeling and prediction tasks using deep learning
A Deep Learning Toolkit for DTI, Drug Property, PPI, DDI, Protein Function Prediction (Bioinformatics)
974 stars
31 watching
272 forks
Language: Jupyter Notebook
last commit: 5 months ago
Linked from 2 awesome lists
bioinformaticscovid19ddideep-learningdrug-discoverydrug-drug-interactiondrug-property-predictiondrug-repurposingdrug-target-interactiondrug-target-interactionsdti-predictionppiprotein-function-predictionprotein-protein-interactionqsarrepurposing-drugsside-effectstoolkitvirtual-screening
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