Title :
A parallel two-level preconditioner for Cosmic Microwave Background map-making
Author :
Grigori, Laura ; Stompor, R. ; Szydlarski, M.
Author_Institution :
INRIA, Saclay-ile de France, Orsay, France
Abstract :
Generalized least square problems with nondiagonal weights arise frequently in an estimation of two dimensional images from data of cosmological as well as astro- or geo- physical observations. As the observational data sets keep growing at Moore´s rate, with their volumes exceeding tens and hundreds billions of samples, the need for fast and efficiently parallelizable iterative solvers is generally recognized. In this work we propose a new iterative algorithm for solving generalized least square systems with weights given by a blockdiagonal matrix with Toeplitz blocks. Such cases are physically well motivated and correspond to measurement noise being piece-wise stationary - a common occurrence in many actual observations. Our iterative algorithm is based on the conjugate gradient method and includes a parallel two-level preconditioner (2lvl-PCG) constructed from a limited number of sparse vectors estimated from the coefficients of the initial linear system. Our prototypical application is the map-making problem in the Cosmic Microwave Background data analysis. We show experimentally that our parallel implementation of 2lvl-PCG outperforms by a factor of up to 6 the standard one-level PCG in terms of both the convergence rate and the time to solution on up to 12, 228 cores of NERSC´s Cray XE6 (Hopper) system displaying nearly perfect strong and weak scaling behavior in this regime.
Keywords :
Toeplitz matrices; astronomy computing; conjugate gradient methods; cosmology; iterative methods; least squares approximations; noise measurement; parallel processing; 2lvl-PCG; Moore rate; Toeplitz block; astrohysical observation; blockdiagonal matrix; conjugate gradient method; cosmic microwave background data analysis; cosmic microwave background map-making; cosmological observation; dimensional image; generalized least square problem; generalized least square system; geophysical observation; iterative algorithm; linear system; measurement noise; nondiagonal weights; parallel two-level preconditioner; parallelizable iterative solver; piecewise stationary; scaling behavior; sparse vector; Covariance matrix; Equations; Matrix decomposition; Noise; Program processors; Sparse matrices; Vectors;
Conference_Titel :
High Performance Computing, Networking, Storage and Analysis (SC), 2012 International Conference for
Conference_Location :
Salt Lake City, UT
Print_ISBN :
978-1-4673-0805-2