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SC Conference - Activity Details
Sparse Matrix Factorization on Massively Parallel Computers
Authors:
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Anshul Gupta
(IBM T.J. Watson Research Center)
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Seid Koric
(National Center for Supercomputing Applications)
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Thomas George
(Texas A&M University)
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Papers Session
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Sparse Matrix Computation
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Tuesday, 02:30PM - 03:00PM
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Room PB252
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Abstract:
Direct methods for solving sparse systems of
linear equations have a high asymptotic computational
and memory requirements relative to iterative methods.
However, systems arising in some applications, such as
structural analysis, can often be too ill-conditioned for iterative solvers
to be effective. We cite real applications where this is indeed the
case, and using matrices
extracted from these applications to conduct experiments on
three different massively parallel architectures,
show that a well designed sparse factorization
algorithm can attain very high levels of performance and
scalability. We present strong scalability results for test data from
real applications on up to 8,192 cores, along with both analytical and
experimental weak scalability results for a model problem on up to 16,384
cores---an unprecedented number for sparse factorization.
For the model problem, we also compare
experimental results with multiple analytical scaling metrics
and distinguish between some commonly used weak scaling methods.
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