Abstract
The prediction of new compounds via crystal structure prediction may transform how the materials chemistry community discovers new compounds. In the prediction of inorganic crystal structures there are two distinct classes of prediction; Performing crystal structure prediction via heuristic algorithms, using a range of established crystal structure prediction codes, and an emerging community using generative machine learning models to predict crystal structures directly. In this work, we demonstrate the use of a generative machine learning model to produce the starting population of crystal structures for a heuristic algorithm and discuss the benefits, demonstrating the method on eight known compounds with reported crystal structures
and three hypothetical compounds. We show that the integration of machine learning structure generation to heuristic structure prediction results in both faster compute times per structure and leads to lower energies. This work provides to the community a set of eleven compounds with varying chemistry and complexity which can be used as a benchmark for new crystal structure prediction methods as they emerge.
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Link to the release of the code detailed within the paper
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Link to where the version of the code described within the paper can be downloaded, along with example input files and the lowest energy structures obtained within this work.
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