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    Scalable Hierarchical Algorithms for stochastic PDEs and Uncertainty Quantification

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    11_Litvinenko.pdf
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    Description:
    Scalable algoruthms, Hierarchical matrices, for uncertainty quantification andfor approximating large covariance matrices
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    Type
    Poster
    Authors
    Litvinenko, Alexander cc
    Chavez Chavez, Gustavo Ivan cc
    Keyes, David E. cc
    Ltaief, Hatem cc
    Yokota, Rio cc
    KAUST Department
    SRI Uncertainty Quantification Center
    Extreme Computing Research Center
    Date
    2015-01-05
    Permanent link to this record
    http://hdl.handle.net/10754/623624
    
    Metadata
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    Abstract
    H-matrices and Fast Multipole (FMM) are powerful methods to approximate linear operators coming from partial differential and integral equations as well as speed up computational cost from quadratic or cubic to log-linear (O(n log n)), where n number of degrees of freedom in the discretization. The storage is reduced to the log-linear as well. This hierarchical structure is a good starting point for parallel algorithms. Parallelization on shared and distributed memory systems was pioneered by R. Kriemann, 2005. Since 2005, the area of parallel architectures and software is developing very fast. Progress in GPUs and Many-Core Systems (e.g. XeonPhi with 64 cores) motivated us to extend work started in [1,2,7,8].
    Sponsors
    SRI UQ KAUST
    Conference/Event name
    Advances in Uncertainty Quantification Methods, Algorithms and Applications (UQAW 2015)
    Additional Links
    https://sri-uq.kaust.edu.sa/Pages/UQAnnualWorkshop2015.aspx
    Collections
    Posters; Extreme Computing Research Center

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