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CosmoFlow: Scale-Aware Representation Learning for Cosmology with Flow Matching

16 July 2025
Sidharth Kannan
Tian Qiu
Carolina Cuesta-Lazaro
Haewon Jeong
    DRL
ArXiv (abs)PDFHTML
Main:5 Pages
7 Figures
Bibliography:4 Pages
Appendix:2 Pages
Abstract

Generative machine learning models have been demonstrated to be able to learn low dimensional representations of data that preserve information required for downstream tasks. In this work, we demonstrate that flow matching based generative models can learn compact, semantically rich latent representations of field level cold dark matter (CDM) simulation data without supervision. Our model, CosmoFlow, learns representations 32x smaller than the raw field data, usable for field level reconstruction, synthetic data generation, and parameter inference. Our model also learns interpretable representations, in which different latent channels correspond to features at different cosmological scales.

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