01Seamless integration with 30+ MoleculeNet benchmark datasets
0281 GitHub stars
03Rigorous data splitting techniques including Scaffold and Butina splitters
04Molecular featurization using fingerprints, graph representations, and 3D descriptors
05Transfer learning workflows with pretrained models like ChemBERTa and GROVER
06Built-in support for Graph Neural Networks (GCN, GAT, MPNN, and AttentiveFP)