4.6 Article

MADmap: A MASSIVELY PARALLEL MAXIMUM LIKELIHOOD COSMIC MICROWAVE BACKGROUND MAP-MAKER

期刊

ASTROPHYSICAL JOURNAL SUPPLEMENT SERIES
卷 187, 期 1, 页码 212-227

出版社

IOP PUBLISHING LTD
DOI: 10.1088/0067-0049/187/1/212

关键词

cosmic background radiation; cosmology: observations; methods: data analysis; methods: numerical

资金

  1. NASA
  2. DoE
  3. National Energy Research Scientific Computing Center
  4. Office of Science of the U. S. Department of Energy [DE-AC02-05CH11231]
  5. French National Research Agency (ANR) [ANR-09-COSI-009]
  6. STFC [ST/G001901/1] Funding Source: UKRI
  7. Science and Technology Facilities Council [ST/G001901/1] Funding Source: researchfish

向作者/读者索取更多资源

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 O(10(11)) time samples, O(10(8)) pixels, and O(10(4)) cores, with ongoing work to scale to the next generation of data sets and supercomputers. We describe MADmap's algorithm based around a preconditioned conjugate gradient solver, fast Fourier transforms, and sparse matrix operations. We highlight MADmap's ability to address problems typically encountered in the analysis of realistic CMB data sets and describe its application to simulations of the Planck and EBEX experiments. The massively parallel and distributed implementation is detailed and scaling complexities are given for the resources required. MADmap is capable of analyzing the largest data sets now being collected on computing resources currently available, and we argue that, given Moore's Law, MADmap will be capable of reducing the most massive projected data sets.

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