Alternatives for parallel Krylov subspace basis computation
Data(s) |
01/01/1997
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Resumo |
Numerical methods related to Krylov subspaces are widely used in large sparse numerical linear algebra. Vectors in these subspaces are manipulated via their representation onto orthonormal bases. Nowadays, on serial computers, the method of Arnoldi is considered as a reliable technique for constructing such bases. However, although easily parallelizable, this technique is not as scalable as expected for communications. In this work we examine alternative methods aimed at overcoming this drawback. Since they retrieve upon completion the same information as Arnoldi's algorithm does, they enable us to design a wide family of stable and scalable Krylov approximation methods for various parallel environments. We present timing results obtained from their implementation on two distributed-memory multiprocessor supercomputers: the Intel Paragon and the IBM Scalable POWERparallel SP2. (C) 1997 by John Wiley & Sons, Ltd. |
Identificador | |
Idioma(s) |
eng |
Palavras-Chave | #Mathematics, Applied #Mathematics #Krylov Subspace #Sparse Matrix #Parallel Qr Factorization #Leja Points #Intel Paragon #Ibm Sp2 #Qr Factorization #Dense Matrix #Algorithms #Implementation #Multiprocessor #Householder #Processors |
Tipo |
Journal Article |