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Hayashi et al., 2022 - Google Patents

Synthesis‐condition recommender system discovers novel inorganic oxides

Hayashi et al., 2022

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Document ID
9164001841969267007
Author
Hayashi H
Kouzai K
Morimitsu Y
Tanaka I
Publication year
Publication venue
Journal of the American Ceramic Society

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Snippet

Accurately predicting successful synthesis conditions to prepare new pseudo‐binary oxides remains a challenge despite extensive research. This study presents a synthesis‐condition recommender system to efficiently explore a wide chemistry space composed of 10 206 …
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