deepchem
🎯Skillfrom lifangda/claude-plugins
Simplifies molecular machine learning by providing tools for drug discovery, materials science, and chemical property prediction using deep learning models.
Part of
lifangda/claude-plugins(264 items)
Installation
npx skills add https://github.com/lifangda/claude-plugins --skill deepchemNeed more details? View full documentation on GitHub →
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