“…[61,461,464] Thep redominant use of machine learning in computational materials discovery has been to fit surrogate models to existing (often, experimental) data and screen al arge design space. [465][466][467][468][469][470][471] To the extent that performance can be correlated to structure,t hese models can reveal opportunities for the design of new catalysts/ligands for organic synthesis [223,[225][226][227]472] (Figure 11), metallic catalysts, [473,474] Heusler compounds, [475] metal-organic frameworks (MOFs), [476] hybrid organic-inorganic perovskites, [477] superhard materials, [478] thermal materials, [479] organic electronic materials, [480][481][482][483][484] polymers for electronic applications, [485,486] porous crystalline materials for gas storage, [487,488] and reductive additives for battery electrolyte formulations. [42] Computational models have also been used to determine when calculations are likely to fail [489] and to identify associations between materials and specific property keywords through text mining.…”