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Challenges in Performance Evaluation and Improvement of Scientific Codes

Challenges in Performance Evaluation and Improvement of Scientific Codes. Boyana Norris Argonne National Laboratory http://www.mcs.anl.gov/~norris Ivana Veljkovic Pennsylvania State University. Outline. Performance evaluation challenges Component-based approach

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Challenges in Performance Evaluation and Improvement of Scientific Codes

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  1. Challenges in Performance Evaluation and Improvement of Scientific Codes Boyana Norris Argonne National Laboratory http://www.mcs.anl.gov/~norris Ivana Veljkovic Pennsylvania State University

  2. Outline • Performance evaluation challenges • Component-based approach • Motivating example: adaptive linear system solution • A component infrastructure for performance monitoring and adaptation of applications • Summary and future work SIAM CSE

  3. Acknowledgments • Ivana Veljkovic, Padma Raghavan (Penn State) • Sanjukta Bhowmick (ANL/Columbia) • Lois Curfman McInnes (ANL) • TAU developers (U. Oregon) • PERC members • Sponsor: DOE and NSF SIAM CSE

  4. Challenges in performance evaluation • Many tools for performance data gathering and analysis • PAPI, TAU, SvPablo, Kojak, … • Various interfaces, levels of automation, and approaches to information presentation • User’s point of view • What do the different tools do? Which is most appropriate for a given application? • (How) can multiple tools be used in concert? • I have tons of performance data, now what? • What automatic tuning tools are available, what exactly do they do? • How hard is it to install/learn/use tool X? • Is instrumented code portable? What’s the overhead of instrumentation? How does code evolution affect the performance analysis process? SIAM CSE

  5. Incomplete list of tools • Source instrumentation: TAU/PDT, KOJAK (MPI/OpenMP), SvPablo, Performance Assertions, … • Binary instrumentation: HPCToolkit, Paradyn, DyninstAPI, … • Performance monitoring: MetaSim Tracer (memory), PAPI, HPCToolkit, Sigma++ (memory), DPOMP (OpenMP), mpiP, gprof, psrun, … • Modeling/analysis/prediction: MetaSim Convolver (memory), DIMEMAS(network), SvPablo (scalability), Paradyn, Sigma++, … • Source/binary optimization: Automated Empirical Optimization of Software (ATLAS), OSKI, ROSE • Runtime adaptation: ActiveHarmony, SALSA SIAM CSE

  6. Incomplete list of tools • Source instrumentation: TAU/PDT, KOJAK (MPI/OpenMP), SvPablo, Performance Assertions, … • Binary instrumentation: HPCToolkit, Paradyn, DyninstAPI, … • Performance monitoring: MetaSim Tracer (memory), PAPI, HPCToolkit, Sigma++ (memory), DPOMP (OpenMP), mpiP, gprof, psrun, … • Modeling/analysis/prediction: MetaSim Convolver (memory), DIMEMAS(network), SvPablo (scalability), Paradyn, Sigma++, … • Source/binary optimization: Automated Empirical Optimization of Software (ATLAS), OSKI, ROSE • Runtime adaptation: ActiveHarmony, SALSA SIAM CSE

  7. Challenges (where is the complexity?) • More effective use  integration • Tool developer’s perspective • Overhead of initially implementing one-to-one interoperabilty • Managing dependencies on other tools • Maintaining interoperabilty as different tools evolve • Individual Scientist Perspective • Learning curve for performance tools  less time to focus on own research (modeling, physics, mathematics) • Potentially significant time investment needed to find out whether/how using someone else’s tool would improve performance  tend to do own hand-coded optimizations (time-consuming, non-reusable) • Lack of tools that automate (at least partially) algorithm discovery, assembly, configuration, and enable runtime adaptivity SIAM CSE

  8. What can be done • How to manage complexity? Provide • Performance tools that are truly interoperable • Uniform easy access to tools • Component implementations of software, esp. supporting numerical codes, such as linear algebra algorithms • New algorithms (e.g., interactive/dynamic techniques, algorithm composition) • Implementation approach: components, both for tools and the application software SIAM CSE

  9. What is being done • No “integrated” environment for performance monitoring, analysis, and optimization • Most past efforts • One-to-one tool interoperability • More recently • OSPAT (initial meeting at SC’04), focus on common data representation and interfaces • Tool-independent performance databases: PerfDMF • Eclipse parallel tools project (LANL) • … SIAM CSE

  10. OSPAT • The following areas were recommended for OSPAT to investigate: • A common instrumentation API for source level, compiler level, library level, binary instrumentation • A common probe interface for routine entry and exit events • A common profile database schema • An API to walk the callstack and examine the heap memory • A common API for thread creation and fork interface • Visualization components for drawing histograms and hierarchical displays typically used by performance tools SIAM CSE

  11. Components • Working definition: a component is a piece of software that can be composed with other components within a framework; composition can be either static (at link time) or dynamic (at run time) • “plug-and-play” model for building applications • For more info: C. Szyperski, Component Software: Beyond Object-Oriented Programming, ACM Press, New York, 1998 • Components enable • Tool interoperability • Automation of performance instrumentation/monitoring • Application adaptivity (automated or user-guided) SIAM CSE

  12. Example: component infrastructure for multimethod linear solvers • Goal: provide a framework for • Performance monitoring of numerical components • Dynamic adaptativity, based on: • Off-line analyses of past performance information • Online analysis of current execution performance information • Motivating application examples: • Driven cavity flow [Coffey et al, 2003], nonlinear PDE solution • FUN3D – incompressible and compressible Euler equations • Prior work in multimethod linear solvers • McInnes et al, ’03, Bhowmick et al,’03 and ’05, Norris at al. ’05. SIAM CSE

  13. Example: driven cavity flow • Linear solver: GMRES(30), vary only fill level of ILU preconditioner • Adaptive heuristic based on: • Previous linear solution convergence rate, nonlinear solution convergence rate, rate of increase of linear solution iterations • 96x96 mesh, Grashof = 105, lid velocity = 100 • Intel P4 Xeon, dual 2.2 GHz, 4GB RAM SIAM CSE

  14. Example: Compressible PETSc-FUN3D • Finite volume discretization, variable order Roe scheme on a tetrahedral, vertex-centered mesh • Initial discretization: first-order scheme; switch to second-order after shock position has settled down • Large sparse linear system solution takes approximately 72% of overall solution time Original FUN3D developer: W.K. Anderson et al., NASA Langley Image: Dinesh Kaushik SIAM CSE

  15. PETSc-FUN3d, cont. • A3: Nonsequence-based adaptive strategy based on polynomial interpolation [Bhowmick et al., ’05] • A3 vs base method time: ~1% slowdown - 32% improvement • Hand-tuned adaptive vs base method time: 7% - 42% improvement SIAM CSE

  16. Component architecture Off-line analysis PerfDMF Runtime DB extract extract insert Metadata extractor Checkpoint TAU query extract checkpoint Monitor adapt request start, stop, trigger Experiment adapt: algorithm, parameters SIAM CSE

  17. Future work • Integration of ongoing efforts in • Performance tools: common interfaces and data represenation (leverage OSPAT, PerfDMF, TAU performance interfaces, and similar efforts) • Numerical components: emerging common interfaces (e.g., TOPS solver interfaces) increase choice of solution method  automated composition and adaptation strategies • Long term • Is a more organized (but not too restrictive) environment for scientific software lifecycle development possible/desirable? SIAM CSE

  18. Typical application development “cycle” Configure, make,… Compilation, Linking Ext. dependencies, Version control Debugging Implementation Testing Performance evaluation Deployment Design Performance tools Production Execution Job management, Results SIAM CSE

  19. Future work • Beyond components • Work flow • Reproducible results – associate all necessary information for reproducing particular application instance • Ontology of tools and tools to guide selection and use SIAM CSE

  20. Summary • No shortage of performance evaluation, analysis, and optimization technology (and new capabilities are continuously added) • Little shared infrastructure, limiting the utility of performance technology in scientific computing • Components, both in performance tools, and numerical software can be used to manage complexity and enable better performance through dynamic adaptation or multimethod solvers • A life-cycle environment may be the best long-term solution • Some relevant sites: • http://www.mcs.anl.gov/~norris • http://perc.nersc.gov (performance tools) • http://cca-forum.org (component specification) SIAM CSE

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