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This is the library for descriptors calculation, data preprocessing and AutoML.

Project description

NanoDescriptors is a Python library for automated descriptor generation, data preprocessing, and AutoML for nanomaterial property prediction (QSAR/QSPR). Main features Parses complex formulas (core‑shell @, composites -//, non‑stoichiometric, 19 material types)

Calculates >100 descriptors (electronic, thermodynamic, atomic‑mechanical, additive mixture descriptors)

Automatic data cleaning, encoding, skew correction, scaling

AutoML regression/classification with Optuna + SHAP/PLS/RFE feature selection + stacking ensembles

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