You cannot select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
 
 
 
 
 
 
Go to file
Daniela di Serafino 21f6c5f78f Modified email address for bug reporting 7 years ago
config mld2p4-2: 8 years ago
docs Doc fixes. 7 years ago
examples Fixed comments in examples. 7 years ago
mlprec Fix silly typo. 7 years ago
tests Modified copyright vs contribution. 7 years ago
Changelog Summary: updated changelog 8 years ago
LICENSE Modified copyright vs contribution. 7 years ago
Make.inc.in mld2p4: 8 years ago
Makefile *** empty log message *** 8 years ago
README Split README. 7 years ago
ReleaseNews Split README. 7 years ago
autogen.sh mld2p4: 17 years ago
configure Modified email address for bug reporting 7 years ago
configure.ac Modified email address for bug reporting 7 years ago
install-sh mld2p4: 17 years ago
missing mld2p4: 17 years ago
mkdir.sh mld2p4: 17 years ago

README

                         MLD2P4  
MultiLevel Domain Decomposition Parallel Preconditioners Package
           based on PSBLAS (Parallel Sparse BLAS version 3.5)
    
Salvatore Filippone    Cranfield University, UK
Pasqua D'Ambra         IAC-CNR, Naples, IT
Daniela di Serafino    Univ. of Campania "L. Vanvitelli", Caserta, IT

---------------------------------------------------------------------

MLD2P4 (MultiLevel Domain Decomposition Parallel Preconditioners
Package based on PSBLAS) provides parallel Algebraic MultiGrid (AMG)
and Domain Decomposition preconditioners, to be used in the
iterative solution of linear systems.

The name of the package comes from its original implementation,
containing multilevel additive and hybrid Schwarz preconditioners,
as well as one-level additive Schwarz preconditioners. The current
version extends the original plan by including multilevel cycles
and smoothers widely used in multigrid methods. A purely algebraic
approach is applied to generate coarse-level corrections, so that
no geometric background is needed concerning the matrix to be
preconditioned.

MLD2P4 has been designed to provide scalable and easy-to-use 
preconditioners in the context of the PSBLAS (Parallel Sparse Basic
Linear Algebra Subprograms) computational framework and is used
in conjuction with the Krylov solvers available from PSBLAS. The
package employs object-oriented design techniques in Fortran 2003,
with interfaces to additional third party libraries such as MUMPS,
UMFPACK, SuperLU, and SuperLU_Dist, which can be exploited in building
multilevel preconditioners. The parallel implementation is based on
a Single Program Multiple Data (SPMD) paradigm; the inter-process
communication is based on MPI and is managed mainly through PSBLAS.


MAIN REFERENCE:

P. D'Ambra, D. di Serafino, S. Filippone,
MLD2P4: a Package of Parallel Algebraic Multilevel Domain Decomposition
Preconditioners in Fortran 95,
ACM Transactions on Mathematical Software, 37 (3), 2010, art. 30,
doi: 10.1145/1824801.1824808.



TO COMPILE

0. Unpack the tar file in a directory of your choice (preferrably
   outside the main PSBLAS directory).
1. run configure --with-psblas=<ABSOLUTE path of the PSBLAS install directory>
   adding the options for SuperLU, SuperLU_Dist, UMFPACK as desired.
   See MLD2P4 User's and Reference Guide (Section 3) for details.
2. Tweak Make.inc if you are not satisfied.
3. make; 
4. Go into the test subdirectory and build the examples of your choice.


NOTES

- The single precision version is  supported only by SuperLU; thus, even
  if you specify at configure to use UMFPACK or SuperLU_Dist, the
  corresponding preconditioner options will be available only from the
  double precision version.

- A program that was using the PSBLAS precoditioners needs no source
  code changes, but should be recompiled. If the new preconditioner
  (or preconditioner options, such as ILU(N) factorization) are
  required, only the type of the preconditioner object and its
  setup/build/free calls should be updated; the rest of the
  application continues to make use of the PSBLAS existing
  interfaces.