
알림마당
정기세미나
미래를 창조하는 포스텍 화학공학과
▷ 제목 : When AI Learns the Context of Polymer Chemistry: The HAPPY Paradigm
▷ 내용 : The advent of machine learning has revolutionized building structure–property relationships and materials discovery. However, applying these tools to polymers is challenging due to complex interactions, vast combinatorial spaces, and multiscale behavior. We propose HAPPY (Hierarchically Abstracted rePeat unit of PolYmers), a string-based representation that groups substructures with grammatically complete connectors. Combined with RNN or Transformer models, HAPPY achieves accurate property prediction even with limited data and supports inverse design of target-property polymers. We also developed a complementary graph-based model to capture chain architectures and complex connectivity. Integrating hierarchical abstraction, deep sequence modeling, and graph analysis, we present a versatile, data-efficient platform for next-generation polymer informatics.
