Euclid preparation. 3-dimensional galaxy clustering in configuration space. Part I. 2-point correlation function estimation
Euclid Collaboration: S. de la Torre (1), F. Marulli (2, 3, 4), E. Keih\"anen (5), A. Viitanen (5, 6), M. Viel (7, 8, 9, 10, 11), A. Veropalumbo (12, 13, 14), E. Branchini (15, 13, 12), D. Tavagnacco (8), F. Rizzo (8), J. Valiviita (16, 17), V. Lindholm (16, 17)

TL;DR
This paper introduces a software tool for estimating the 3D galaxy 2-point correlation function, crucial for cosmology, designed to handle Euclid's large-scale galaxy survey data efficiently and accurately.
Contribution
It presents a novel, optimized software implementation using advanced algorithms and parallel processing for large-scale galaxy clustering analysis in the Euclid mission.
Findings
Software is robust and reliable for large data sets
Efficient pair counting algorithms improve performance
Forecasts show increasing precision over the survey timeline
Abstract
The 2-point correlation function of the galaxy spatial distribution is a major cosmological observable that enables constraints on the dynamics and geometry of the Universe. The Euclid mission aims at performing an extensive spectroscopic survey of approximately 20--30 million H-emitting galaxies up to about redshift two. This ambitious project seeks to elucidate the nature of dark energy by mapping the 3-dimensional clustering of galaxies over a significant portion of the sky. This paper presents the methodology and software developed for estimating the 3-dimensional 2-point correlation function within the Euclid Science Ground Segment. The software is designed to overcome the significant challenges posed by the large and complex Euclid data set, which involves millions of galaxies. Key challenges include efficient pair counting, managing computational resources, and ensuring…
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