Publication | Open Access
Taming parallel I/O complexity with auto-tuning
111
Citations
29
References
2013
Year
Unknown Venue
EngineeringParallel I/o ComplexityComputer ArchitectureComputational ComplexityHardware SecurityHigh-performance ArchitectureParallel Complexity TheorySystems EngineeringPerformance TuningParallel ComputingPerformance PredictionComputer EngineeringComputer ScienceAuto-tuning SystemHdf5 ApplicationsAuto-tuningParallel Performance EvaluationParallel ProgrammingPerformance PortabilityI/o Performance
We present an auto-tuning system for optimizing I/O performance of HDF5 applications and demonstrate its value across platforms, applications, and at scale. The system uses a genetic algorithm to search a large space of tunable parameters and to identify effective settings at all layers of the parallel I/O stack. The parameter settings are applied transparently by the auto-tuning system via dynamically intercepted HDF5 calls.
| Year | Citations | |
|---|---|---|
Page 1
Page 1