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 Title: Templates for the Solution of Linear Systems: Building Blocks for Iterative Methods
 Author(s) Richard Barrett, Michael Berry, Tony F. Chan, James Demmel, June Donato, Jack Dongarra, Victor Eijkhout, Roldan Pozo, Charles Romine, Henk van der Vorst
 Publisher: Society for Industrial and Applied Mathematics; 1 edition (January 1, 1987)
 Hardcover: 142 pages
 eBook: HTML, PDF (117 pages, 744 KB), and PostScript
 Language: English
 ISBN10: 0898713285
 ISBN13: 9780898713282
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Book Description
In this book, which focuses on the use of iterative methods for solving large sparse systems of linear equations, templates are introduced to meet the needs of both the traditional user and the highperformance specialist.
Templates, a description of a general algorithm rather than the executable object or source code more commonly found in a conventional software library, offer whatever degree of customization the user may desire.
About the Authors N/A
 Linear and Matrix Algebra
 Operations Research (OR), Linear Programming, Optimization, Approximation, etc.
 Algorithms and Data Structures
 Computational and Algorithmic Mathematics
 Templates for the Solution of Linear Systems: Building Blocks for Iterative Methods
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