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Machine Learned Calabi--Yau Metrics and Curvature

17 November 2022
Per Berglund
G. Butbaia
Tristan Hubsch
Vishnu Jejjala
D. M. Peña
Challenger Mishra
Justin Tan
ArXiv (abs)PDFHTML
Abstract

Finding Ricci-flat (Calabi--Yau) metrics is a long standing problem in geometry with deep implications for string theory and phenomenology. A new attack on this problem uses neural networks to engineer approximations to the Calabi--Yau metric within a given K\"ahler class. In this paper we investigate numerical Ricci-flat metrics over smooth and singular K3 surfaces and Calabi--Yau threefolds. Using these Ricci-flat metric approximations for the Cefal\'u and Dwork family of quartic twofolds and the Dwork family of quintic threefolds, we study characteristic forms on these geometries. Using persistent homology, we show that high curvature regions of the manifolds form clusters near the singular points, but also elsewhere. For our neural network approximations, we observe a Bogomolov--Yau type inequality 3c2≥c123c_2 \geq c_1^23c2​≥c12​ and observe an identity when our geometries have isolated A1A_1A1​ type singularities. We sketch a proof that χ(X ∖ Sing X)+2 ∣Sing X∣=24\chi(X~\smallsetminus~\mathrm{Sing}\,{X}) + 2~|\mathrm{Sing}\,{X}| = 24χ(X ∖ SingX)+2 ∣SingX∣=24 also holds for our numerical approximations.

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