GlobalCY I: A JAX Framework for Globally Defined and Symmetry-Aware Neural Kähler Potentials

arXiv:2604.114049.2
Predicted impact top 61% in HEP-TH · last 90 daysOriginality Incremental advance
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For researchers in string theory and computational geometry, this work demonstrates that global invariant structure is a meaningful architectural constraint for learned Kähler-potential modeling, though gains are incremental and limited to specific hard quartic regimes.

GlobalCY introduces a JAX framework for globally defined and symmetry-aware neural Kähler-potential models on Calabi-Yau geometries. The globally defined invariant model outperforms local-input baselines on geometric diagnostics, reducing negative-eigenvalue frequency and projective-invariance drift by clear margins on hard cases (λ=0.75, λ=1.0), with strongest gains at λ=0.75.

We present \emph{GlobalCY}, a JAX-based framework for globally defined and symmetry-aware neural Kähler-potential models on projective hypersurface Calabi--Yau geometries. The central problem is that local-input neural Kähler-potential models can train successfully while still failing the geometry-sensitive diagnostics that matter in hard quartic regimes, especially near singular and near-singular members of the Cefalú family. To study this, we compare three model families -- a local-input baseline, a globally defined invariant model, and a symmetry-aware global model -- on the hard Cefalú cases $λ=0.75$ and $λ=1.0$ using a fixed multi-seed protocol and a geometry-aware diagnostic suite. In this benchmark, the globally defined invariant model is the strongest overall family, outperforming the local baseline on the two clearest geometric comparison metrics, negative-eigenvalue frequency and projective-invariance drift, in both cases. The gains are strongest at $λ=0.75$, while $λ=1.0$ remains more difficult. The current symmetry-aware model improves projective-invariance drift relative to the local baseline, but does not yet surpass the plain global invariant model. These results show that global invariant structure is a meaningful architectural constraint for learned Kähler-potential modeling in hard quartic Calabi--Yau settings.

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