Molecular quantum chemical data sets and databases for machine learning potentials
Arif Ullah,
Yuxinxin Chen,
Pavlo O Dral
Abstract:The field of computational chemistry is increasingly leveraging machine learning (ML) potentials to predict molecular properties with high accuracy and efficiency, providing a viable alternative to traditional quantum mechanical (QM) methods, which are often computationally intensive. Central to the success of ML models is the quality and comprehensiveness of the data sets on which they are trained. Quantum chemistry data sets and databases, comprising extensive information on molecular structures, energies, f… Show more
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