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Machine learning framework to identify reflexive polytopes via reverse autodifferentiation. The triangulations of the (n+1)-dimensional reflexive polytopes represent Calabi Yau n-folds as hypersurfaces embedded in an (n+1)-dimensional toric variety.

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Machine Learning 4D Toric Calabi-Yau 3-folds

Machine learning framework to identify reflexive polytopes. The triangulations of the (n+1)-dimensional reflexive polytopes represent Calabi Yau n-folds as hypersurfaces embedded in an (n+1)-dimensional toric variety.

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Machine learning framework to identify reflexive polytopes via reverse autodifferentiation. The triangulations of the (n+1)-dimensional reflexive polytopes represent Calabi Yau n-folds as hypersurfaces embedded in an (n+1)-dimensional toric variety.

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