ID: 2111.01436

Learning Size and Shape of Calabi-Yau Spaces

November 2, 2021

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Magdalena Larfors, Andre Lukas, Fabian Ruehle, Robin Schneider
High Energy Physics - Theory
Computer Science
Machine Learning

We present a new machine learning library for computing metrics of string compactification spaces. We benchmark the performance on Monte-Carlo sampled integrals against previous numerical approximations and find that our neural networks are more sample- and computation-efficient. We are the first to provide the possibility to compute these metrics for arbitrary, user-specified shape and size parameters of the compact space and observe a linear relation between optimization of the partial differential equation we are training against and vanishing Ricci curvature.

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