[petsc-dev] PETSc LU, Lapack and Preconditioning Matrices
Dave Nystrom
dnystrom1 at comcast.net
Fri Dec 16 22:26:14 CST 2011
Barry Smith writes:
> Dave,
>
> Band solvers (like in LAPACK) handle all the matrix entries from the band
> to the diagonal as nonzero (even though in your case the vast majority of
> those values are zero). General purpose sparse solvers like PETSc, MUMPS,
> SuperLU etc explicitly handle only the nonzero values and fill induced by
> those nonzero values. By first reordering the matrix sparse direct solvers
> end up having much much less fill than a bandsolver and hence are much
> faster. Band solvers only make sense when the matrix is dense within the
> band and not mostly empty like with PDE problems.
Hi Barry,
Thanks for this detailed and useful explanation. That helps a lot. I'll
cross band solvers off my list of things to investigate. Should I expect
much improvement using MUMPS or SuperLU via PETSc? I'm looking forward to
giving them a try. I'm also looking forward to seeing what I can do with a
separate preconditioner matrix.
Thanks again for your reply.
Cheers,
Dave
> Barry
>
> On Dec 16, 2011, at 6:12 PM, Dave Nystrom wrote:. .
>
> > Matthew Knepley writes:
> >> On Fri, Dec 16, 2011 at 9:37 AM, Dave Nystrom <dnystrom1 at comcast.net> wrote:
> >>
> >>> I'm trying to figure out whether I can do a couple of things with petsc.
> >>>
> >>> 1. It looks like the preconditioning matrix can actually be different from
> >>> the full problem matrix. So I'm wondering if I could provide a different
> >>> preconditioning matrix for my problem and then do an LU solve of the
> >>> preconditioning matrix using the -pc_type lu as my preconditioner.
> >>
> >> Yes, that is what it is for.
> >
> > Thanks. I think I will try that and see what sort of results I get. This
> > sounds like a very encouraging discovery to me.
> >
> >>> 2. When I build petsc, I use the --download-f-blas-lapack=yes option. I'm
> >>> wondering if petsc uses lapack under the hood or has the capability to use
> >>> lapack under the hood when one uses the -pc_type lu option. In particular,
> >>> since my matrices are band matrices from doing a discretization on a 2d
> >>> regular mesh, I'm wondering if the petsc lu solve has the ability to use
> >>> the lapack band solver dgbsv or dgbsvx. Or is it possible to use the
> >>> lapack band solver through one of the external packages that petsc can
> >>> interface with. I'm interested in this capability for smaller problem
> >>> sizes that fit on a single node and that make sense.
> >>
> >> We do not have any banded matrix stuff. Its either dense or sparse right
> >> now.
> >
> > OK. I had always been used to thinking of a banded system as sparse,
> > relatively speaking, when compared to a full system. Based also on Barry's
> > response, I guess I am not well enough educated on the nuances of sparse
> > versus banded. For instance, when I use "-ksp_type preonly -pc_type lu" to
> > solve one of my systems, I had assumed that the LU factorization computed by
> > petsc was really filling in the 2*nx+1 bandwidth even though petsc might not
> > be explicitly using the banded nature of the matrix. So I am not sure at all
> > what is going on under the hood in petsc for this set of solver options. Nor
> > do I really know how to find out without reading the source code which might
> > be fairly daunting.
> >
> >>> 3. I'm also wondering how I might be able to learn more about the petsc
> >>> ilu capability. My impression is that it does ilu(k) and I have tried
> >>> it with k>0 but am wondering if one of the options might allow it to do
> >>> ilut and whether as k gets big whether ilu(k) approximates lu. I
> >>> currently do not understand the petsc ilu well enough to know how much
> >>> extra fill I get as I increase k and where that extra fill might be
> >>> located for the case of a band matrix that one gets from discretization
> >>> on a regular 2d mesh.
> >>
> >> We do not do ilu(dt). Its complicated, and we determined that it was not
> >> worth the effort. You can get that from Hypre is you want. Certainly, for
> >> big enough k, ilu(k) is lu but its a slow way to do it.
> >
> > Thanks. I need to experiment more with ilu(k) on a couple of my linear
> > systems.
> >
> >> Matt
> >>
> >>
> >>> Thanks,
> >>>
> >>> Dave
>
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