MAPPRAISER: A massively parallel map-making framework for multi-kilo pixel CMB experiments
Hamza El Bouhargani, Aygul Jamal, Dominic Beck, Josquin Errard, Laura, Grigori, Radek Stompor

TL;DR
MAPPRAISER is a high-performance, open-source framework designed to efficiently solve large linear systems in CMB map-making, capable of handling massive datasets from upcoming experiments using massively parallel computing.
Contribution
It introduces a flexible, extensible, and massively parallel framework with novel iterative solvers for large-scale CMB map-making problems.
Findings
Successfully demonstrated on simulated data with up to 16,384 cores.
Achieves efficient and precise solutions for large linear systems.
Open source software available for community use.
Abstract
Forthcoming cosmic microwave background (CMB) polarized anisotropy experiments have the potential to revolutionize our understanding of the Universe and fundamental physics. The sought-after, tale-telling signatures will be however distributed over voluminous data sets which these experiments will collect. These data sets will need to be efficiently processed and unwanted contributions due to astrophysical, environmental, and instrumental effects characterized and efficiently mitigated in order to uncover the signatures. This poses a significant challenge to data analysis methods, techniques, and software tools which will not only have to be able to cope with huge volumes of data but to do so with unprecedented precision driven by the demanding science goals posed for the new experiments. A keystone of efficient CMB data analysis are solvers of very large linear systems of equations.…
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Taxonomy
TopicsCosmology and Gravitation Theories · Galaxies: Formation, Evolution, Phenomena · Radio Astronomy Observations and Technology
