Scaling the ISAM Land Surface Model through Parallelization of Inter-component Data Transfer

Parallel Processing(2014)

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摘要
We present the progression of developments necessary to scale the ISAM landsurface model from single nodes and small clusters with unusually largeper-node memory to much larger systems with more common configurations. These efforts include load balancing, conventional library-based output parallelization to reduce memory load, and parallel-in-time data input. On Hopper, a Cray XE6 machine, the result was strong scaling from 256 cores to 16k coreswith an efficiency of 32.9%. On Edison, a Cray XC30 machine, the code strong scales from 256 cores to 16k cores with an efficiency of 51.4%. These large-scale gains, and the associated performance increases at smaller scale, enable greater scientific productivity for the users of ISAM and open the possibilities of increased resolution in time and space and greater physical fidelity for the simulated processes while remaining computationally feasible.
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关键词
geophysics computing,parallel processing,resource allocation,Cray XC30 machine,Cray XE6 machine,Edison,Hopper,ISAM land surface model,intercomponent data transfer,library-based output parallelization,load balancing,memory load reduction,parallel-in-time data input,scientific productivity
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