CosmoBench: A Multiscale, Multiview, Multitask Cosmology Benchmark for Geometric Deep Learning
Ningyuan Huang, Richard Stiskalek, Jun-Young Lee, Adrian E. Bayer, Charles C. Margossian, Christian Kragh Jespersen, Lucia A. Perez, Lawrence K. Saul, Francisco Villaescusa-Navarro

TL;DR
CosmoBench is a comprehensive, large-scale dataset from cosmological simulations designed to advance geometric deep learning applications in understanding the Universe's structure and evolution.
Contribution
The paper introduces CosmoBench, the largest cosmology dataset of its kind, enabling new machine learning tasks and benchmarks in cosmological data analysis.
Findings
Invariant feature-based models can outperform deep learning in some tasks.
Baseline models show potential but also highlight room for improvement.
The dataset facilitates diverse cosmological and machine learning research.
Abstract
Cosmological simulations provide a wealth of data in the form of point clouds and directed trees. A crucial goal is to extract insights from this data that shed light on the nature and composition of the Universe. In this paper we introduce CosmoBench, a benchmark dataset curated from state-of-the-art cosmological simulations whose runs required more than 41 million core-hours and generated over two petabytes of data. CosmoBench is the largest dataset of its kind: it contains 34 thousand point clouds from simulations of dark matter halos and galaxies at three different length scales, as well as 25 thousand directed trees that record the formation history of halos on two different time scales. The data in CosmoBench can be used for multiple tasks -- to predict cosmological parameters from point clouds and merger trees, to predict the velocities of individual halos and galaxies from their…
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TopicsComputational Physics and Python Applications
