AIDD-study Paper Convolutional neural network based on SMILES representation of compounds for detecting chemical motif FP2VEC: a new molecular featurizer for learning molecular properties Predicting Chemical Properties using Self-Attention Multi-task Learning based on SMILES Representation The Effect of Resampling on Data-imbalanced Conditions for Prediction towards Nuclear Receptor Profiling Using Deep Learning Molecular Generative Model Based on an Adversarially Regularized Autoencoder MolGPT: Molecular Generation Using a Transformer-Decoder Model cMolGPT: A Conditional Generative Pre-Trained Transformer for Target-Specific De Novo Molecular Generation CMGN: a conditional molecular generation net to design target-specific molecules with desired properties LAIDD lecture 화학정보학개론 신약개발에 필요한 머신러닝 이해 Attention for Deep Learning