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Academic and lab backgrounds

Observations of an Accidental Computational Scientist SIAM/NSF/DOE CSME Workshop 25 March 2003 David Keyes Department of Mathematics & Statistics Old Dominion University & Institute for Scientific Computing Research Lawrence Livermore National Laboratory . Academic and lab backgrounds.

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Academic and lab backgrounds

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  1. Observations of an Accidental Computational ScientistSIAM/NSF/DOE CSME Workshop25 March 2003David KeyesDepartment of Mathematics & Statistics Old Dominion University&Institute for Scientific Computing ResearchLawrence Livermore National Laboratory

  2. Academic and lab backgrounds • 74-78: B.S.E., Aerospace and Mechanical/Engineering Physics • 78-84: M.S. & Ph.D., Applied Mathematics • 84-85: Post-doc, Computer Science • 86-93: Asst./Assoc. Prof., Mechanical Engineering • 93-99: Assoc. Prof., Computer Science • 99-03: Prof., Mathematics & Statistics • 03- : Prof., Applied Physics & Applied Mathematics • 86-02: ICASE, NASA Langley • 99- : ISCR, Lawrence Livermore • 03- : CDIC, Brookhaven

  3. Computational Science & Engineering • A “multidiscipline” on the verge of full bloom • Envisioned by Von Neumann and others in the 1940’s • Undergirded by theory (numerical analysis) for the past fifty years • Empowered by spectacular advances in computer architecture over the last twenty years • Enabled by powerful programming paradigms in the last decade • Adopted in industrial and government applications • Boeing 777’s computational design a renowned milestone • DOE NNSA’s “ASCI” (motivated by CTBT) • DOE SC’s “SciDAC” (motivated by Kyoto, etc.)

  4. Niche for computational science • Has theoretical aspects (modeling) • Has experimental aspects (simulation) • Unifies theory and experiment by providing common immersive environment for interacting with multiple data sets of different sources • Provides “universal” tools, both hardware and software Telescopes are for astronomers, microarray analyzers are for biologists, spectrometers are for chemists, and accelerators are for physicists, but computers are for everyone! • Costs going down, capabilities going up every year

  5. Engineering electromagnetics aerodynamics Physicscosmology radiation transport Ex #2 Ex #3 Ex #1 Energycombustion fusion Ex #4 personal examples Simulation complements experimentation Experiments prohibited or impossible Experiments difficult to instrument Experiments dangerous Experiments expensive Environment global climate wildland firespread Scientific Simulation

  6. “It looks as if all of Colorado is burning” – Bill Owens, Governor “About half of the U.S. is in altered fire regimes” – Ron Myers, Nature Conservancy Example #1: wildland firespread Simulate fires at the wildland-urban interface, leading to strategies for planning preventative burns, fire control, and evacuation Joint work between ODU, CMU, Rice, Sandia, and TRW

  7. Example #1: wildland firespread, cont. • Objective Develop mathematical models for tracking the evolution of wildland fires and the capability to fit the model to fires of different character (fuel density, moisture content, wind, topography, etc.) • Accomplishment to date Implemented firefront propagation with level set method with empirical front advance function; working with firespread experts to “tune” the resulting model • Significance Wildland fires cost many lives and billions of dollars annually; other fire models pursued at national labs are more detailed, but too slow to be used in real time; one of our objectives is to offer practical tools to firechiefs in the field

  8. Example #2: aerodynamics Simulate airflows over wings and streamlined bodies on highly resolved grids leading to superior aerodynamic design 1999 Gordon Bell Prize Joint work between ODU, Argonne, LLNL, and NASA-Langley

  9. Example #2: aerodynamics, cont. • Objective Develop analysis and optimization capability for compressible and incompressible external aerodynamics • Accomplishment to date Developed highly parallel nonlinear implicit solvers (Newton-Krylov-Schwarz) for unstructured grid CFD, implemented in PETSc, demonstrated on a “workhorse” NASA code running on the ASCI machines (up to 6,144 processors) • Significance Windtunnel tests of aerodynamic bodies are expensive and difficult to instrument; computational simulation and optimization (as for the Boeing 777) will greatly reduce the engineering risk of developing new fuel-efficient aircraft, cars, etc.

  10. Example #3: radiation transport Simulate “flux-limited diffusion” transport of radiative energy in inhomogeneous materials Joint work between ODU, ICASE, and LLNL

  11. Example #3: radiation transport, cont. • Objective Enhance accuracy and reliability of analysis methods used in the simulation of radiation transport in real materials • Accomplishment to date Leveraged expertise and software (PETSc) developed for aerodynamics simulations in a related physical application domain, also governed by nonlinear PDEs discretized on unstructured grids, where such methods were less developed • Significance Under current stockpile stewardship policies, DOE must be able to reliably predict the performance of high-energy devices without full-scale physical experiments

  12. Example #4: fusion energy Simulate plasmas in tokomaks, leading to understanding of plasma instability and (ultimately) new energy sources Joint work between ODU, Argonne, LLNL, and PPPL

  13. Example #4: fusion energy, cont. • Objective Improve efficiency and therefore extend predictive capabilities of Princeton’s leading magnetic fusion energy code “M3D” to enable it to operate in regimes where practical sustained controlled fusion occurs • Accomplishment to date Augmented the implicit linear solver (taking up to 90% of execution time) of original code with parallel algebraic multigrid; new solvers are much faster and robust, and should scale better to the finer mesh resolutions required for M3D • Significance An M3D-like code will be used in DOE’s Integrated Simulation and Optimization of Fusion Systems, and ITER collaborations, with the goal of delivering cheap safe fusion energy devices by early-to-mid 21st century

  14. We lead the “TOPS” project U.S. DOE has created the Terascale Optimal PDE Simulations (TOPS) project within the Scientific Discovery through Advanced Computing (SciDAC) initiative; nine partners in this 5-year, $17M project, an “Integrated Software Infrastructure Center”

  15. Optimizer Sens. Analyzer Time integrator Nonlinear solver Eigensolver Linear solver Indicates dependence Toolchain for PDE Solvers in TOPS* project • Design and implementation of “solvers” • Time integrators • Nonlinear solvers • Constrained optimizers • Linear solvers • Eigensolvers • Software integration • Performance optimization (w/ sens. anal.) (w/ sens. anal.) *Terascale Optimal PDE Simulations: www.tops-scidac.org

  16. 17 projects in scientific software and network infrastructure SciDAC apps and infrastructure 4 projects in high energy and nuclearphysics 14 projects in biological and environmental research 10 projects in basic energy sciences 5 projects in fusion energy science

  17. iters 200 unscalable 150 Time to Solution 100 50 procs scalable 0 time 1000 1 10 100 Problem Size (increasing with number of processors) Optimalsolvers • Convergence rate nearly independent of discretization parameters • Multilevel schemes for linear and nonlinear problems • Newton-like schemes for quadratic convergence of nonlinear problems AMG shows perfect iteration scaling, above, in contrast to ASM, but still needs performance work to achieve temporal scaling, below, on CEMM fusion code, M3D, though time is halved (or better) for large runs (all runs: 4K dofs per processor)

  18. Plan Develop Use We have run on most ASCI platforms… 100+ Tflop / 30 TB Livermore 50+ Tflop / 25 TB 30+ Tflop / 10 TB Capability 10+ Tflop / 4 TB White 3+ Tflop / 1.5 TB Blue Livermore Red 1+ Tflop / 0.5 TB ‘97 ‘98 ‘99 ‘00 ‘01 ‘02 ‘03 ‘04 ‘05 ‘06 Time (CY) Sandia Los Alamos NNSA has roadmap to go to 100 Tflop/s by 2006 www.llnl.gov/asci/platforms

  19. …and now the SciDAC platforms • IBM Power3+ SMP • 16 procs per node • 208 nodes • 24 Gflop/s per node • 5 Tflop/s (doubled in February to 10) Berkeley • IBM Power4 Regatta • 32 procs per node • 24 nodes • 166 Gflop/s per node • 4Tflop/s (10 in 2003) Oak Ridge

  20. Computational Science at Old Dominion • Launched in 1993 as “High Performance Computing” • Keyes appointed ‘93; Pothen early ’94 • Major projects: • NSF Grand, National, and Multidisciplinary Challenges (1995-1998) [w/ ANL, Boeing, Boulder, ND, NYU] • DoEd Graduate Assistantships in Areas of National Need (1995-2001) • DOE Accelerated Strategic Computing Initiative “Level 2” (1998-2001) [w/ ICASE] • DOE Scientific Discovery through Advanced Computing (2001-2006) [w/ ANL, Berkeley, Boulder, CMU, LBNL, LLNL, NYU, Tennessee] • NSF Information Technology Research (2001-2006) [w/ CMU, Rice, Sandia, TRW]

  21. Center for Computational Science at ODU established 8/2001; new 80,000 sq ft building (for Math, CS, Aero, VMASC, CCS) opens 1/2004; finally getting local buy-in ODU’s small program has placed five PhDs at DOE labs in the past three years CS&E at ODU today

  22. PETSc CS&E faculty PETSc PETSc CCA Comp Bio TOPS Comp Bio David Hysom, LLNL Florin Dobrian, ODU Gary Kumfert, LLNL Post-doctoral and student alumni Linda Stals, ANU Dinesh Kaushik, ANL Lois McInnes, ANL Satish Balay, ANL D. Karpeev, ANL

  23. <Begin> “pontification phase”Five models that allow CS&E to prosper • Laboratory institutes (hosted at a lab) ICASE, ISCR (more details to come) • National institutes (hosted at a university) IMA, IPAM • Interdisciplinary centers ASCI Alliances, SciDAC ISICs, SCCM, TICAM, CAAM, … • CS&E fellowship programs CSGF, HPCF • Multi-agency funding (cyclical to be sure, but sometimes collaborative) DOD, DOE, NASA, NIH, NSF, …

  24. Serves as lab’s point of contact for computational science interests Influences the external research community to pursue laboratory-related interests Manages LLNL’s ASCI Institute collaborations in computer science and computational mathematics Assists LLNL in technical workforce recruiting and training LLNL’s ISCR fosters collaborations with academe in computational science

  25. ISCR’s philosophy:Science is borne by people • Be “eyes and ears” for LLNL by staying abreast of advances in computer and computational science • Be “hands and feet” for LLNL by carrying those advances into the laboratory • Three principal means for packaging scientific ideas for transfer • papers • software • people • People are the most effective!

  26. Seminars & Visitors 180 visits from 147 visitors 66 ISCR seminars ISCR Summer Program43 grad students 29 undergrads 24 faculty B451 Postdocs & Faculty 9 postdoctoral researchers3 faculty-in-residence Workshops & Tutorials10 tutorial lectures6 technical workshops ISCR brings visitors to LLNL through a variety of programs (FY 2002 data)

  27. ISCR is the largest of LLNL’s six institutes • Founded in 1986 • Under current leadership since June 1999 ISCR has grown with LLNL’s increasing reliance on simulation as a predictive science

  28. ASCI ASAP-1 Centers Caltech Stanford University University of Chicago University of Illinois University of Utah Our academic collaborators are drawn from all over • Other Universities Carnegie Mellon Florida State University MIT Ohio State University Old Dominion University RPI Texas A&M University University of Colorado University of Kentucky University of Minnesota University of N. Carolina University of Tennessee University of Texas University of Washington Virginia Tech and more! • University of California Berkeley Davis Irvine Los Angeles San Diego Santa Barbara Santa Cruz • Major European Centers University of Bonn University of Heidelberg

  29. Internships in Terascale Simulation Technology (ITST) tutorials Students in residence hear from enthusiastic members of lab divisions, besides their own mentor, including five authors* of recent computational science books, on a variety of computational science topics Lecturers: David Brown, Eric Cantu-Paz*, Alej Garcia*, Van Henson*, Chandrika Kamath, David Keyes, Alice Koniges*, Tanya Kostova, Gary Kumfert, John May*, Garry Rodrigue

  30. Students Faculty Lab Employees Faculty visit the ISCR, bringing students Most faculty return to university, with lab priorities Some students become lab employees Some students become faculty, with lab priorities A few faculty become lab employees ISCR pipelines people between the university and the laboratory Universities ISCR Lab programs

  31. ISCR impact on DOE computational science hiring • 178 ISCR summer students in past five years (many repeaters) • 51 have by now emerged from the academic pipeline • 23 of these (~45%) are now working for the DOE • 15 LLNL • 3 each LANL and Sandia • 1 each ANL and BNL • 11 of these (~20%) are in their first academic appointment • In US: Duke, Stanford, U California, U Minnesota, U Montana, U North Carolina, U Pennsylvania, U Utah, U Washington • Abroad: Swiss Federal Institute of Technology (ETH), University of Toronto

  32. ISCR sponsors and conducts meetings on timely topics for lab missions • Bay Area NA Day • Common Component Architecture • Copper Mountain Multigrid Conference • DOE Computational Science Graduate Fellows • Hybrid Particle-Mesh AMR Methods • Mining Scientific Datasets • Large-scale Nonlinear Problems • Overset Grids & Solution Technology • Programming ASCI White • Sensitivity and Uncertainty Quantification

  33. We hosted a “Power Programming” short course to prepare LLNL for ASCI White • Steve White, IBMASCI White overview, POWER3 architecture, tuning for White • Larry Carter, UCSD/NPACIdesigning kernels and data structures for scientific applications, cache and TLB issues • David Culler, UC Berkeleyunderstanding performance thresholds • Clint Whalley, U Tennesseecoding for performance • Bill Gropp, Argonne National LabMPI-1, Parallel I/O, MPI/OpenMP tradeoffs 65 internal attendees over 3 days

  34. We launched the Terascale Simulation Lecture Series to receptive audiences • Fred Brooks, UNC • Ingrid Daubechies, Princeton • David Johnson, AT&T • Peter Lax, NYU • Michael Norman, UCSD • Charlie Peskin, NYU • Gil Strang, MIT • Burton Smith, Cray • Eugene Spafford, Purdue • Andries Van Dam, Brown

  35. <Continue> “pontification phase”Concluding swipes • A curricular challenge for CS&E programs • Signs of the times for CS&E • “Red skies at morning” ( “sailers take warning”) • “Red skies at night” (“sailers delight”) • Opportunities in which CS&E will shine • A word to the sponsors

  36. A curricular challenge • CS&E majors without a CS undergrad need to learn to compute! • Prerequisite or co-requisite to becoming useful interns at a lab • Suggest a “bootcamp” year-long course introducing: • C/C++ and object-oriented program design • Data structures for scientific computing • Message passing (e.g., MPI) and multithreaded (e.g., OpenMP) programming • Scripting (e.g., Python) • Linux clustering • Scientific and performance visualization tools • Profiling and debugging tools • NYU’s sequence G22.1133/G22.1144 is an example for CS

  37. “Red skies at morning” • Difficult to get support for maintaining critical software infrastructure and “benchmarking” activities • Difficult to get support for hardware that is designed with computational science and engineering in mind • Difficult for pre-tenured faculty to find reward structures conducive to interdisciplinary efforts • Unclear how stable is the market for CS&E graduates at the entrance to a 5-year pipeline • Political necessity of creating new programs with each change of administrations saps time and energy of managers and community

  38. “Red skies at night” • DOE’s SciDAC model being recognized and propagated • NSF’s DMS budgets on a multi-year roll • SIAM SIAG-CSE attracting members from outside of traditional SIAM departments • CS&E programs beginning to exhibit “centripetal” potential in traditionally fragmented research universities e.g., SCCM’s “Advice” program • Computing at the large scale is weaning domain scientists from “Numerical Recipes” and MATLAB and creating thirst for core enabling technologies (NA, CS, Viz, …) • Cost effectiveness of computing, especially cluster computing, is putting a premium on graduate students who have CS&E skills

  39. Opportunity: nanoscience modeling • Jul 2002 report to DOE • Proposes $5M/year theory and modeling initiative to accompany the existing $50M/year experimental initiative in nano science • Report lays out research in numerical algorithms and optimization methods on the critical path to progress in nanotechnology

  40. Opportunity: integrated fusion modeling • Dec 2002 report to DOE • Currently DOE supports 52 codes in Fusion Energy Sciences • US contribution to ITER will “major” in simulation • Initiative proposes to use advanced computer science techniques and numerical algorithms to improve the US code base in magnetic fusion energy and allow codes to interoperate

  41. A word to the sponsors • Don’t cut off the current good stuff to start the new stuff • Computational science & engineering workforce enters the pipeline from a variety of conventional inlets (disciplinary first, then interdisciplinary) • Personal debts: • NSF HSSRP in Chemistry (SDSU) • NSF URP in Computer Science (Brandeis) – precursor to today’s REU • NSF Graduate Fellowship in Applied Mathematics • NSF individual PI grants in George Lea’s computational engineering program – really built community (Benninghof, Farhat, Ghattas, C. Mavriplis, Parsons, Powell + many others active in CS&E at labs, agencies, and universities today) at NSF-sponsored PI meetings, long before there was any university support at all

  42. Related URLs • Personal homepage: papers, talks, etc. http://www.math.odu.edu/~keyes • ISCR (including annual report) http://www.llnl.gov/casc/iscr • SciDAC initiative http://www.science.doe.gov/scidac • TOPS software project http://www.math.odu.edu/~keyes/scidac

  43. 64 64 2u=f 64 *On a 16 Mflop/s machine, 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

  44. 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!

  45. AMG Framework error damped by pointwise relaxation Choose coarse grids, transfer operators, etc. to eliminate, based on numerical weights, heuristics The power of optimal algorithms • 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 anisotropic, inhomogeneous problems algebraically smooth error

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