Parallel sparse multifrontal solver in a limited memory environment
Abstract
We consider the parallel solution of sparse linear systems of equations in a limited memory environment. A preliminary out-of core version of a sparse multifrontal code called MUMPS (MUltifrontal Massively Parallel Solver) has been developed as part of a collaboration between CERFACS, ENSEEIHT and INRIA (ENS-Lyon and Bordeaux).
We first briefly describe the current status of the out-of-core factorization phase. We then assume that the factors have been written on the hard disk during the factorization phase and we discuss the design of an efficient solution phase.Two different approaches are presented to read data from the disk, with a discussion on the advantages and the drawbacks of each one.
Our work differs and extends the work of Rothberg and Schreiber (1999) and of Rotkin and Toledo (2004) because firstly we consider a parallel out-of-core context, and secondly we also study the performance of the solve phase.
This is work on collaboration with E. Agullo, I.S Duff, A. Guermouche, J.-Y. L'Excellent, T. Slavova
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Integrable systems : analytic difference equations, special functions, Hilbert space : On the crossroads. 1`. General Overview
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A Sard Type Theorem and C1-smooth Solutions to Partial Differential Relations
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Burgers type nonlinear stochastic equations involving Levy Generators in one space variable
Abstract
We consider Burgers type nonlinear SPDEs with L
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Diffusions on the volume preserving diffeomorphisms group and hydrodynamics equations
Abstract
We follow Arnold's approach of Euler equation as a geodesic on the group of
diffeomorphisms. We construct a geometrical Brownian motion on this group in the
case of the two dimensional torus, and prove the global existence of a
stochastic perturbation of Euler equation (joint work with F. Flandoli and P.
Malliavin).
Other diffusions allow us to obtain the deterministic Navier-Stokes equation
as a solution of a variational problem (joint work with F. Cipriano).
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Copulas vs Canonical Multivariate Distributions: A multitude of T copulas and some Canonical Systems.
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