Affiliation:
1. Princeton University
2. Lawrence Berkeley National Laboratory
3. Courant Institute of Mathematical Sciences
4. University of Texas at Austin
Abstract
We describe an efficient implementation of an algorithm for computing selected elements of a general sparse symmetric matrix
A
that can be decomposed as
A
=
LDLT
, where
L
is lower triangular and
D
is diagonal. Our implementation, which is called
SelInv
, is built on top of an efficient supernodal left-looking
LDLT
factorization of
A
. We discuss how computational efficiency can be gained by making use of a relative index array to handle indirect addressing. We report the performance of SelInv on a collection of sparse matrices of various sizes and nonzero structures. We also demonstrate how SelInv can be used in electronic structure calculations.
Funder
Division of Mathematical Sciences
Office of Naval Research
Advanced Scientific Computing Research
U.S. Department of Energy
Publisher
Association for Computing Machinery (ACM)
Subject
Applied Mathematics,Software
Cited by
77 articles.
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