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David Keyes, project lead

David Keyes, project lead. http://www.tops-scidac.org. Virtually no technical reporting here; please see our eight posters Tue. and seven 2-pagers on-line. Plan. What TOPS aims to provide Some uses of TOPS solver software TOPS posters: what to find Tues. aft.

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David Keyes, project lead

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  1. David Keyes, project lead http://www.tops-scidac.org

  2. Virtually no technical reporting here; please see our eight posters Tue. and seven 2-pagers on-line Plan • What TOPS aims to provide • Some uses of TOPS solver software • TOPS posters: what to find Tues. aft. • TOPS attendees: who to meet Tues. aft. • Preview of TOPS’ linear solver interface • How to work with TOPS • Get you to lunch on time!

  3. Shameless advertisement • 16th Domain Decomposition meeting • USA hosts for first time since 1997 • January 12-16, 2005 • Courant Institute, NYU • Co-organized by O. Widlund & D. K. • Invited speakers • Participant-initiated minisymposia • Contributed talks • Pre-conference short course on software for prototyping domain decomposition methods

  4. Truth in shameless advertising: New York in January Shameless advertisement • 16th Domain Decomposition meeting • USA hosts for first time since 1997 • January 12-16, 2005 • Courant Institute, NYU • Co-organized by O. Widlund & D. K. • Invited speakers • Participant-initiated minisymposia • Contributed talks • Pre-conference short course on software for prototyping domain decomposition methods March

  5. Who we are… … the PETSc and TAO people … the hypre and Sundials people … the SuperLU and PARPACK people

  6. Plus some university collaborators … … with a history of lab collaborations in high performance computing

  7. Beyond the on-line “Templates” guides www.netlib.org/templates www.netlib.org/etemplates 124 pp. 410 pp. … these are good starts, but not adequate for SciDAC scales!

  8. Themes affirmed in our May’03 review • Central concept: software “toolchain” • solutions  sensitivity, stability, optimization • modules are nested • the greatest coding work is in the distributed data structures and should be leveraged • users deal with mathematical objects throughout; software hides the MPI and ugly details for performance • Ordered goals: usability, robustness, algorithmic efficiency, and performance efficiency • Growth industry: multirate problems are forcing applications codes into implicitness

  9. Optimizer Sens. Analyzer Time integrator Nonlinear solver Eigensolver Linear solver Indicates dependence Scope for TOPS • Design and implementation of “solvers” • Time integrators • Nonlinear solvers • Optimizers • Linear solvers • Eigensolvers • Software integration • Performance optimization (w/ sens. anal.) (w/ sens. anal.)

  10. 64 64 2u=f 64 * *Six-months is reduced to 1 s The power of optimal algorithms • Advances in algorithmic efficiency rival advances in hardware architecture • Consider Poisson’s equation on a cube of size N=n3 • If n=64, this implies an overall reduction in flops of ~16 million

  11. relative speedup year Algorithms and Moore’s Law • This advance took place over a span of about 36 years, or 24 doubling times for Moore’s Law • 22416 million  the same as the factor from algorithms alone!

  12. AMG Framework error easily damped by pointwise relaxation Choose coarse grids, transfer operators, and smoothers to eliminate these “bad” components within a smaller dimensional space, and recur Where to go past O(N) ? • Since O(N) is already optimal, there is nowhere further “upward” to go in efficiency, but one must extend optimality “outward”, to more general problems • Hence, for instance, algebraic multigrid (AMG), obtaining O(N) in indefinite,anisotropic, or inhomogeneous problems algebraically smooth error

  13. TOPS software in SciDAC collabs current planned *supporting NWChem, MPQC **supporting CFRFS

  14. TOPS software in SciDAC collabs current planned *supporting NWChem, MPQC **supporting CFRFS

  15. TOPS citations outside of SciDAC 25 jour., proc., theses (2002-04): Widely distributed software: • Astronomy • Biomechanics • Chemistry • Cognitive Sciences • Combustion • Electrical Engineering • Geosciences • Hydrodynamics • Materials Science • Mechanics • Micromechanics/Nanotechnology • Numerical Analysis • Optics • Porous Media • Shape Optimization • Dspice • EMSolve • FEMLAB® • FIDAP® • GlobalArrays • HP Mathematical Library® • libMesh • Magpar • Mathematica® • NIKE • Prometheus • SCIRun • SLEPc • Snark • Trilinos

  16. Bell prize news • TOPS’ PETSc software has been employed in two Bell Prizes (“special category”) in 1999 & 2003 • 2003 prize: geological parameter estimation problem • Forward PDE: 17 million unknowns • Inverse problem: 70 billion unknowns (over time history) • 2048 procs of HPAlphaServer for 24 hours target reconstruction

  17. x=b\A #include "petscsles.h" #include "petscmg.h" MGSetNumberSmoothUp(pc, n) … SLESSolve(sles,b, x, *its) Poster iconography, 2004 Overview Iterative Solvers Integrators Eigensolvers Optimizers Direct Solvers Implementation Performance Convergence Performance

  18. Who to talk with at this meeting … • Linear solvers (Esmond Ng) • Eigensolvers (Esmond Ng, Osni Marques) • Nonlinear solvers (David Keyes) • ODE/DAEs/sensitivity (David Keyes) • Optimizers (Omar Ghattas, Jorge Moré) • Software integration (David Keyes) • Performance optimization (Victor Eijkhout, Rich Vuduc) Ng, LBNL

  19. Who to talk with at this meeting … • Linear solvers (Esmond Ng) • Eigensolvers (Esmond Ng, Osni Marques) • Nonlinear solvers (David Keyes) • ODE/DAEs/sensitivity (David Keyes) • Optimizers (Omar Ghattas, Jorge Moré) • Software integration (David Keyes) • Performance optimization (Victor Eijkhout, Rich Vuduc) Marques, LBNL

  20. Who to talk with at this meeting … • Linear solvers (Esmond Ng) • Eigensolvers (Esmond Ng, Osni Marques) • Nonlinear solvers (David Keyes) • ODE/DAEs/sensitivity (David Keyes) • Optimizers (Omar Ghattas, Jorge Moré) • Software integration (David Keyes) • Performance optimization (Victor Eijkhout, Rich Vuduc) Keyes, Columbia

  21. Who to talk with at this meeting … • Linear solvers (Esmond Ng) • Eigensolvers (Esmond Ng, Osni Marques) • Nonlinear solvers (David Keyes) • ODE/DAEs/sensitivity (David Keyes) • Optimizers (Omar Ghattas, Jorge Moré) • Software integration (David Keyes) • Performance optimization (Victor Eijkhout, Rich Vuduc) Ghattas, CMU

  22. Who to talk with at this meeting … • Linear solvers (Esmond Ng) • Eigensolvers (Esmond Ng, Osni Marques) • Nonlinear solvers (David Keyes) • ODE/DAEs/sensitivity (David Keyes) • Optimizers (Omar Ghattas, Jorge Moré) • Software integration (David Keyes) • Performance optimization (Victor Eijkhout, Rich Vuduc) Moré, ANL

  23. Who to talk with at this meeting … • Linear solvers (Esmond Ng) • Eigensolvers (Esmond Ng, Osni Marques) • Nonlinear solvers (David Keyes) • ODE/DAEs/sensitivity (David Keyes) • Optimizers (Omar Ghattas, Jorge Moré) • Software integration (David Keyes) • Performance optimization (Victor Eijkhout, Rich Vuduc) Eijkhout, UT

  24. Who to talk with at this meeting … • Linear solvers (Esmond Ng) • Eigensolvers (Esmond Ng, Osni Marques) • Nonlinear solvers (David Keyes) • ODE/DAEs/sensitivity (David Keyes) • Optimizers (Omar Ghattas, Jorge Moré) • Software integration (David Keyes) • Performance optimization (Victor Eijkhout, Rich Vuduc) Vuduc, UC Berkeley

  25. Nonscalable solution! TOPS Solver Interface

  26. Desiderata • Simplicity • as few required concepts as possible • Generality • richness of instances of each concept • Language independence • callable from anything you want, but easy for us to maintain • High performance • no forced provision or recopying of data beyond what best method needs • Extensibility • something we can live with as new algorithms come along and have to be integrated underneath

  27. We support all of these in some of our packages, and will continue to do so. Some progenitors • FEI - finite element interface/C++ • developed at SNL • ESI - equation solver interface/C++ • multi-lab effort • hypre conceptual interfaces/C • developed at LLNL • PETSc/C • developed at ANL

  28. TOPS solver interfaces today • PETSc is an API that calls • Hypre, SuperLU, PVODE (SUNDIALS), many other solvers outside of TOPS’ responsibility to maintain • TAO, Veltisto call PETSc • Other interoperability combinations • e.g., PARPACK calls SuperLU, Hypre calls SuperLU and PETSc, … • For linear solvers, want common interface to PETSc, Hypre, SuperLU, etc. • Purpose is not to avoid subroutine call-through overhead, but to offer full functionality of each

  29. Language independence • Implemented using LLNL’s SIDL (Scientific Interface Definition Language), a winning card of CCTTSS • Will not require additional packages • Does not require learning a new programming language • F77/F90, C/C++, Python

  30. Abstract interface concepts • Solver is a labeled object that contains visible operator and vector(s), and invisible associated storage • A given application code may have dozens of persistent solver objects, each with reusable factorizations, preconditioners, coarse grid hierarchies, etc. • Vector represents field data • Operators and vectors can be accessed with a viewer • Operators and vectors have distributed, blocked layouts

  31. Linear System Interfaces Linear Solvers GMG, ... FAC, ... Hybrid, ... AMGe, ... ILU, ... Data Layout structured composite block-struc unstruc CSR “View” • Allows user to access vector and matrix values in the language of the application, e.g, ‘conceptual interfaces’ of Hypre • Handles any communication of the data transparently

  32. Accessing values in vectors/matrices interface View { // Begin getting or setting values void startAccessible(); // Send values to correct (distributed) locations void endAccessibleStartCommunication(); // Receive values to correct locations void endAccessibleEndCommunication(); // Set all entries to zero void zero(); Sub-interface specific methods

  33. Classical linear algebra view interface View_Vector_Rn extends TOPS.View { <double> getValues(<int> indices); void setValues(<int> indices, <double> values); void addValues(<int> indices, <double> values); <double> accessArrayRead(); <double> accessArrayWrite(); void restoreArray(<double> values); Indices represent locations in Rn

  34. Structured-grid view interface View_Vector_S extends TOPS.View { <double,3> getValues(<int,3> indices); void setValues(<int,3> indices, <double,3> values); void addValues(<int,3> indices, <double,3> values); <double,3> accessArrayRead(); <double,3> accessArrayWrite(); void restoreArray(<double,3> values); Indices represent locations in Rm x Rn xRp

  35. Views/Layouts • Rn - ‘classical linear algebra’ access • S - single structured grid • Fe - finite element interface • Ss - semi-structured grids; block-structured grid with additional arbitrary node-to-node connections • …

  36. For further discussion Open source interface to PETSc and Hypre, to begin with Will not require installing Babel (?) Working code available soon Comments welcome! bk://tops.bkbits.net/tops-solver-interface

  37. Working with TOPS • Hundreds of groups around the world use TOPS software without directly collaborating with TOPS co-PIs • You can, too, but SciDAC does provide limited opportunity for direct collaboration

  38. Benefits of working with TOPS • Apps groups tend to under-employ complicated iterative libraries on their own • underexploitation of available structure • underexploitation of algorithmic options • underexploitation of profiling tools • TOPS thinks of its work as adding options, not making changes • TOPS can often help a lot before adding solver options

  39. May’03 review recommendations • “Down-select to a smaller set of applications and a subset of the algorithms to be implemented in the solver software tools.” • “On a high priority basis, allocate resources in the later years to algorithm and software consultation and deep collaboration with selected applications.”

  40. Requirements for future collaborations • Version control systems are essential to having any lasting impact or “insertion path” for solver improvements • Automated build system for user code required • Portability to Linux desktop/laptop required for development purposes • Access to user’s production machine required for performance tuning purposes

  41. Expectations TOPS has of users • Be willing to experiment with novel algorithmic choices – optimality is rarely achieved (beyond model problems) without interplay between physics and algorithmics! • Adopt flexible, extensible programming styles in which solver algorithms and data structures are not hardwired • Be willing to let us play with the real code you care about, but be willing, if appropriate, to abstract out relevant compact tests

  42. TOPS success metrics TOPS users — • Understand range of algorithmic options and their tradeoffs (e.g., memory vs. time, inner iteration work vs. outer) • Can try all reasonable options easily without recoding or extensive recompilation • Know how their solvers are performing • Spend more time in their physics than in their solvers • Are intelligently driving solver research, and publishing joint papers with TOPS researchers • Can simulate truly new physics, as solver limits are steadily pushed back (finer meshes, complex coupling, etc.)

  43. For more information ... http://www.tops-scidac.org

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