14,906 research outputs found
A Massively Parallel Algorithm for the Approximate Calculation of Inverse p-th Roots of Large Sparse Matrices
We present the submatrix method, a highly parallelizable method for the
approximate calculation of inverse p-th roots of large sparse symmetric
matrices which are required in different scientific applications. We follow the
idea of Approximate Computing, allowing imprecision in the final result in
order to be able to utilize the sparsity of the input matrix and to allow
massively parallel execution. For an n x n matrix, the proposed algorithm
allows to distribute the calculations over n nodes with only little
communication overhead. The approximate result matrix exhibits the same
sparsity pattern as the input matrix, allowing for efficient reuse of allocated
data structures.
We evaluate the algorithm with respect to the error that it introduces into
calculated results, as well as its performance and scalability. We demonstrate
that the error is relatively limited for well-conditioned matrices and that
results are still valuable for error-resilient applications like
preconditioning even for ill-conditioned matrices. We discuss the execution
time and scaling of the algorithm on a theoretical level and present a
distributed implementation of the algorithm using MPI and OpenMP. We
demonstrate the scalability of this implementation by running it on a
high-performance compute cluster comprised of 1024 CPU cores, showing a speedup
of 665x compared to single-threaded execution
Recent Advances in Graph Partitioning
We survey recent trends in practical algorithms for balanced graph
partitioning together with applications and future research directions
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