Jun 13, 2016 - An Introduction to Parallel and Vector Scientific Computing. Lightly on the details of parallelism and coding styles for high performance on. Introduction to parallel processing and data-level parallelism (Sec. A vector is a one-dimensional array of numbers; Many scientific/commercial programs use.
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. Part of the book series (LNCS, volume 1132) Abstract We first present data parallel algorithms for classical linear algebra methods. We analyze some of the main problems that a user has to solve. As examples, we propose data parallel algorithms for the Gauss and Gauss-Jordan methods. Thus, we introduce some criteria, such as the average data parallel computation ratio, to evaluate and compare data parallel algorithms.
Our studies include both dense and sparse matrix computations. We describe in detail a data parallel structure to map general sparse matrices and we present data parallel sparse matrixvector multiplication. Then, we propose a data parallel preconditioned conjugate gradient algorithm using these matrix vector operations.