ParNCL and ParGAL: Data-parallel tools for postprocessing of large-scale earth science data

Robert Jacob, Jayesh Krishna, Xiabing Xu, Tim Tautges, Iulian Grindeanu, Rob Latham, Kara Peterson, Pavel Bochev, Mary Haley, David Brown, Richard Brownrigg, Dennis Shea, Wei Huang, Don Middleton

    Research output: Contribution to journalConference articlepeer-review

    4 Scopus citations

    Abstract

    Earth science high-performance applications often require extensive analysis of their output in order to complete the scientific goals or produce a visual image or animation. Often this analysis cannot be done in situ because it requires calculating time-series statistics from state sampled over the entire length of the run or analyzing the relationship between similar time series from previous simulations or observations. Many of the tools used for this postprocessing are not themselves highperformance applications, but the new Parallel Gridded Analysis Library (ParGAL) provides high-performance data-parallel versions of several common analysis algorithms for data from a structured or unstructured grid simulation. The library builds on several scalable systems, including the Mesh Oriented DataBase (MOAB), a library for representing mesh data that supports structured, unstructured finite element, and polyhedral grids; the Parallel-NetCDF (PNetCDF) library; and Intrepid, an extensible library for computing operators (such as gradient, curl, and divergence) acting on discretized fields. We have used ParGAL to implement a parallel version of the NCAR Command Language (NCL) a scripting language widely used in the climate community for analysis and visualization. The data-parallel algorithms in ParGAL/ParNCL are both higher performing and more flexible than their serial counterparts.

    Original languageEnglish
    Pages (from-to)1245-1254
    Number of pages10
    JournalProcedia Computer Science
    Volume18
    DOIs
    StatePublished - 2013
    Event13th Annual International Conference on Computational Science, ICCS 2013 - Barcelona, Spain
    Duration: Jun 5 2013Jun 7 2013

    Keywords

    • Data analysis
    • Data parallelism
    • Postprocessing

    Fingerprint

    Dive into the research topics of 'ParNCL and ParGAL: Data-parallel tools for postprocessing of large-scale earth science data'. Together they form a unique fingerprint.

    Cite this