Www.soran.edu.iq Linear Algebra Diyako Ghaderyan 1 Contents:  Linear Equations in Linear Algebra  Matrix Algebra  Determinants  Vector Spaces  Eigenvalues.

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Presentation transcript:

Linear Algebra Diyako Ghaderyan 1 Contents:  Linear Equations in Linear Algebra  Matrix Algebra  Determinants  Vector Spaces  Eigenvalues and Eigenvectors

Contents:  Systems of Linear Equations  Row Reduction and Echelon Forms  Vector Equations  The Matrix Equation Ax = b  Solution Sets of Linear Systems  Linear Independence  Introduction to Linear Transformations  The Matrix of a Linear Transformation 2

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