ID: 2211.09801

Machine Learned Calabi-Yau Metrics and Curvature

November 17, 2022

View on ArXiv

Similar papers 5

Calabi-Yau metrics and string compactification

March 10, 2015

83% Match
Michael R. Douglas
Differential Geometry

Yau proved an existence theorem for Ricci-flat K\"ahler metrics in the 1970's, but we still have no closed form expressions for them. Nevertheless there are several ways to get approximate expressions, both numerical and analytical. We survey some of this work and explain how it can be used to obtain physical predictions from superstring theory.

Find SimilarView on arXiv

Applying machine learning to the Calabi-Yau orientifolds with string vacua

December 9, 2021

83% Match
Xin Gao, Hao Zou
High Energy Physics - Theory

We use the machine learning technique to search the polytope which can result in an orientifold Calabi-Yau hypersurface and the "naive Type IIB string vacua". We show that neural networks can be trained to give a high accuracy for classifying the orientifold property and vacua based on the newly generated orientifold Calabi-Yau database with $h^{1,1}(X) \leq 6$ arXiv:2111.03078. This indicates the orientifold symmetry may already be encoded in the polytope structure. In the e...

Find SimilarView on arXiv

A physics-informed search for metric solutions to Ricci flow, their embeddings, and visualisation

November 30, 2022

83% Match
Aarjav Jain, Challenger Mishra, Pietro Liò
Neural and Evolutionary Comp...
Mathematical Physics

Neural networks with PDEs embedded in their loss functions (physics-informed neural networks) are employed as a function approximators to find solutions to the Ricci flow (a curvature based evolution) of Riemannian metrics. A general method is developed and applied to the real torus. The validity of the solution is verified by comparing the time evolution of scalar curvature with that found using a standard PDE solver, which decreases to a constant value of 0 on the whole man...

Find SimilarView on arXiv

Energy functionals for Calabi-Yau metrics

August 19, 2009

83% Match
Matthew Headrick, Ali Nassar
Differential Geometry

We identify a set of "energy" functionals on the space of metrics in a given Kaehler class on a Calabi-Yau manifold, which are bounded below and minimized uniquely on the Ricci-flat metric in that class. Using these functionals, we recast the problem of numerically solving the Einstein equation as an optimization problem. We apply this strategy, using the "algebraic" metrics (metrics for which the Kaehler potential is given in terms of a polynomial in the projective coordinat...

Find SimilarView on arXiv

Degeneration of Ricci-flat Calabi-Yau manifolds and its applications

July 28, 2015

83% Match
Yuguang Zhang
Differential Geometry
Algebraic Geometry
Metric Geometry

This is a survey article of the recent progresses on the metric behaviour of Ricci-flat K\"{a}hler-Einstein metrics along degenerations of Calabi-Yau manifolds.

Find SimilarView on arXiv

Calabi-Yau Links and Machine Learning

January 21, 2024

83% Match
Edward Hirst
High Energy Physics - Theory

Calabi-Yau links are specific $S^1$-fibrations over Calabi-Yau manifolds, when the link is 7-dimensional they exhibit both Sasakian and G2 structures. In this invited contribution to the DANGER proceedings, previous work exhaustively computing Calabi-Yau links and selected topological properties is summarised. Machine learning of these properties inspires new conjectures about their computation, as well as the respective Gr\"obner bases.

Find SimilarView on arXiv

Numerical Calabi-Yau metrics

December 11, 2006

83% Match
Michael R. Douglas, Robert L. Karp, ... , Reinbacher Rene
High Energy Physics - Theory

We develop numerical methods for approximating Ricci flat metrics on Calabi-Yau hypersurfaces in projective spaces. Our approach is based on finding balanced metrics, and builds on recent theoretical work by Donaldson. We illustrate our methods in detail for a one parameter family of quintics. We also suggest several ways to extend our results.

Find SimilarView on arXiv

Deep-Learning the Landscape

June 8, 2017

83% Match
Yang-Hui He
Algebraic Geometry
Machine Learning

We propose a paradigm to deep-learn the ever-expanding databases which have emerged in mathematical physics and particle phenomenology, as diverse as the statistics of string vacua or combinatorial and algebraic geometry. As concrete examples, we establish multi-layer neural networks as both classifiers and predictors and train them with a host of available data ranging from Calabi-Yau manifolds and vector bundles, to quiver representations for gauge theories. We find that ev...

Find SimilarView on arXiv

Rigor with Machine Learning from Field Theory to the Poincar\'e Conjecture

February 20, 2024

82% Match
Sergei Gukov, James Halverson, Fabian Ruehle
Machine Learning

Machine learning techniques are increasingly powerful, leading to many breakthroughs in the natural sciences, but they are often stochastic, error-prone, and blackbox. How, then, should they be utilized in fields such as theoretical physics and pure mathematics that place a premium on rigor and understanding? In this Perspective we discuss techniques for obtaining rigor in the natural sciences with machine learning. Non-rigorous methods may lead to rigorous results via conjec...

Find SimilarView on arXiv

Calabi-Yau metrics, CFTs and random matrices

February 11, 2022

82% Match
Anthony Ashmore
Differential Geometry

Calabi-Yau manifolds have played a key role in both mathematics and physics, and are particularly important for deriving realistic models of particle physics from string theory. Unfortunately, very little is known about the explicit metrics on these spaces, leaving us unable, for example, to compute particle masses or couplings in these models. We review recent progress in this direction on using numerical approximations to compute the spectrum of the Laplacian on these space...

Find SimilarView on arXiv