abdulsalam-bande/swifty
This is a work to improve molecular docking speed. Normally docking a ligand on a target protein is done with some very complex functions and it is often slow. This work uses Neural Networks to model ligands on target proteins to measure whether they are active or not.
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Python
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Feb 13, 2025
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