Tahini, HassanTan, XinSmith, Sean2020-05-282513-0390http://hdl.handle.net/1885/204695Understanding the origins of catalytic activity (or inactivity) in nanostructures allows for the rational design of cheap and durable catalysts. Here, consistent and comprehensive ab initio screening of endohedrally doped fullerenes as potential catalysts for hydrogen evolution reactions is performed. By examining variations in the electronic structure of the carbon atoms in the presence of the dopant, and by relying on machine learning algorithms, the origin of enhanced activity in fullerenes can be underpinned. The effect is attributed to the formation of free radicals by weakening the CC double bonds. A number of electronic descriptors are discussed which can be fed into machine learning models to efficiently and reliably predict catalytic activities. This allows for a generalization of trends and a predictive ability that could be applied to other fullerene structures.application/pdfen-AU© 2019 WILEY-VCH Verlag GmbH & Co. KGaA, WeinheimUnraveling the Factors Behind the Efficiency of Hydrogen Evolution in Endohedrally Doped C-60 Structures via Ab Initio Calculations and Insights from Machine Learning Models201910.1002/adts.2018002022019-12-19