Publication | Open Access
Combining in-situ and in-transit processing to enable extreme-scale scientific analysis
136
Citations
36
References
2012
Year
Cluster ComputingEngineeringComputer ArchitectureSimulationHigh Performance ComputingEarth ScienceE-scienceExtreme-scale Scientific AnalysisGeophysicsData ScienceScientific Data ManagementCalibrationData-intensive PlatformManagementData DelugeDescriptive StatisticsData IntegrationComputational GeophysicsInstrumentationParallel ComputingData ManagementHigh-performance Data AnalyticsMassively-parallel ComputingComputer EngineeringComputer ScienceData-intensive ComputingCloud ComputingParallel ProgrammingI/o ConstraintsBig Data
With the onset of extreme-scale computing, I/O constraints make it increasingly difficult for scientists to save a sufficient amount of raw simulation data to persistent storage. One potential solution is to change the data analysis pipeline from a post-process centric to a concurrent approach based on either in-situ or in-transit processing. In this context computations are considered in-situ if they utilize the primary compute resources, while in-transit processing refers to offloading computations to a set of secondary resources using asynchronous data transfers. In this paper we explore the design and implementation of three common analysis techniques typically performed on large-scale scientific simulations: topological analysis, descriptive statistics, and visualization. We summarize algorithmic developments, describe a resource scheduling system to coordinate the execution of various analysis workflows, and discuss our implementation using the DataSpaces and ADIOS frameworks that support efficient data movement between in-situ and in-transit computations. We demonstrate the efficiency of our lightweight, flexible framework by deploying it on the Jaguar XK6 to analyze data generated by S3D, a massively parallel turbulent combustion code. Our framework allows scientists dealing with the data deluge at extreme scale to perform analyses at increased temporal resolutions, mitigate I/O costs, and significantly improve the time to insight.
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