Chemical Data
Chemical data analysis is rapidly evolving, driven by the need to extract meaningful insights from increasingly large and complex datasets encompassing molecular structures, properties, and textual descriptions. Current research focuses on developing advanced machine learning models, including transformers, graph neural networks, and variational autoencoders, to predict molecular properties, generate novel molecules, and extract information from scientific literature. These advancements are significantly impacting drug discovery, materials science, and environmental chemistry by enabling faster, more efficient, and more accurate analysis of chemical information, ultimately accelerating scientific breakthroughs and technological innovation.
Papers
Assessing Non-Nested Configurations of Multifidelity Machine Learning for Quantum-Chemical Properties
Vivin Vinod, Peter Zaspel
ScholarChemQA: Unveiling the Power of Language Models in Chemical Research Question Answering
Xiuying Chen, Tairan Wang, Taicheng Guo, Kehan Guo, Juexiao Zhou, Haoyang Li, Mingchen Zhuge, Jürgen Schmidhuber, Xin Gao, Xiangliang Zhang