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 Title: Notes for Computational Linear Algebra
 Author(s) Jessy Grizzle, et al.
 Publisher: University of Michigan
 Hardcover/Paperback: N/A
 eBook: PDF
 Language: English
 ISBN10: N/A
 ISBN13: N/A
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Book Description
This book presents methods for the computational solution of some important problems of linear algebra: linear systems, linear least squares problems, eigenvalue problems, and linear programming problems.
About the Authors Jessy Grizzle is the Elmer G. Gilbert Distinguished University Professor and Jerry W. and Carol L. Levin Professor of Engineering, University of Michigan.
 Linear Algebra, Matrix Algebra, and Linear Systems
 Algebra, Abstract Algebra, etc.
 Computational and Algorithmic Mathematics
 Mathematical and Computational Software
 Calculus and Mathematical Analysis
 Notes for Computational Linear Algebra (Jessy Grizzle, et al.)
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