Publication | Open Access
Online data analysis and reduction: An important Co-design motif for extreme-scale computers
14
Citations
53
References
2021
Year
Cluster ComputingEngineeringHpc Systems DesignComputer ArchitectureSoftware EngineeringSupercomputer Computation SpeedsHigh Performance ComputingSupercomputer ArchitectureData ScienceExtreme-scale ComputersParallel ComputingData ManagementHigh-performance Data AnalyticsMassively-parallel ComputingCo-design ProcessComputer EngineeringImportant Co-design MotifComputer ScienceComputational InfrastructureData-intensive ComputingProgram AnalysisOnline Data AnalysisParallel Performance EvaluationParallel ProgrammingData-level ParallelismSystem SoftwareMassive Data ProcessingBig Data
A growing disparity between supercomputer computation speeds and I/O rates means that it is rapidly becoming infeasible to analyze supercomputer application output only after that output has been written to a file system. Instead, data-generating applications must run concurrently with data reduction and/or analysis operations, with which they exchange information via high-speed methods such as interprocess communications. The resulting parallel computing motif, online data analysis and reduction (ODAR), has important implications for both application and HPC systems design. Here we introduce the ODAR motif and its co-design concerns, describe a co-design process for identifying and addressing those concerns, present tools that assist in the co-design process, and present case studies to illustrate the use of the process and tools in practical settings.
| Year | Citations | |
|---|---|---|
Page 1
Page 1