Publication | Closed Access
An auto-tuning framework for parallel multicore stencil computations
210
Citations
21
References
2010
Year
Unknown Venue
EngineeringGpu BenchmarkingComputer ArchitectureSystem-level DesignEmbedded SystemsHardware SystemsStencil KernelsGpu ComputingHigh-performance ArchitectureStencil ExpressionParallel ComputingCompilersTechnology Co-optimizationMassively-parallel ComputingComputer EngineeringComputer ScienceAuto-tuning FrameworkComputational ScienceGpu ArchitectureHardware AccelerationStencil Auto-tuningParallel ProcessingParallel Performance EvaluationParallel Programming
Although stencil auto-tuning has shown tremendous potential in effectively utilizing architectural resources, it has hitherto been limited to single kernel instantiations; in addition, the large variety of stencil kernels used in practice makes this computation pattern difficult to assemble into a library. This work presents a stencil auto-tuning framework that significantly advances programmer productivity by automatically converting a straightforward sequential Fortran 95 stencil expression into tuned parallel implementations in Fortran, C, or CUDA, thus allowing performance portability across diverse computer architectures, including the AMD Barcelona, Intel Nehalem, Sun Victoria Falls, and the latest NVIDIA GPUs. Results show that our generalized methodology delivers significant performance gains of up to 22× speedup over the reference serial implementation. Overall we demonstrate that such domain-specific auto-tuners hold enormous promise for architectural efficiency, programmer productivity, performance portability, and algorithmic adaptability on existing and emerging multicore systems.
| Year | Citations | |
|---|---|---|
Page 1
Page 1