MADmap: A Massively Parallel Maximum-Likelihood Cosmic Microwave Background Map-Maker
C.M. Cantalupo, J.D. Borrill, A.H. Jaffe, T.S. Kisner, R. Stompor

TL;DR
MADmap is a highly scalable, parallel software tool that efficiently produces maximum-likelihood sky maps from large, correlated noise CMB data, crucial for analyzing upcoming high-volume experiments.
Contribution
MADmap introduces a scalable, parallel maximum-likelihood map-making algorithm optimized for large CMB datasets on supercomputers.
Findings
Successfully processed up to 10^11 time samples
Efficiently handled 10^8 pixels on 10^4 cores
Demonstrated scalability for next-generation data sets
Abstract
MADmap is a software application used to produce maximum-likelihood images of the sky from time-ordered data which include correlated noise, such as those gathered by Cosmic Microwave Background (CMB) experiments. It works efficiently on platforms ranging from small workstations to the most massively parallel supercomputers. Map-making is a critical step in the analysis of all CMB data sets, and the maximum-likelihood approach is the most accurate and widely applicable algorithm; however, it is a computationally challenging task. This challenge will only increase with the next generation of ground-based, balloon-borne and satellite CMB polarization experiments. The faintness of the B-mode signal that these experiments seek to measure requires them to gather enormous data sets. MADmap is already being run on up to time samples, pixels and cores, with…
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