Тематический план
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- Lecture 1. Background in Linear Algebra. Basic definitions. Types and structures of square matrices. Vector and matrix norms.
- Lecture 2. Range and kernel. Existence of Solution. Orthonormal vectors. Gram-Schmidt process. Thin and full QR-factorization.
- Lecture 3. Eigenvalues and their multiplicities. Canonical forms by similarity transformation: diagonal form, Jordan form, Schur form. Other matrix factorizations: SVD, LU, Cholessky. Positive definite matrices.
- Lecture 4. Properties of normal and Hermittian matrices. Powers of matrices. Perturbation analysis and condition number. Errors and costs.
- Lectures 5-6. Discretization of partial differential equations (PDEs). Finite differences. 1D Poisson’s equation. 2D Poisson’s equation. Overview of Finite element method. Assembly process in FEM.
- Lecture 7. Structures and graphs representations of sparse matrices. Storage schemes for sparse matrices. Algorithms for matrix by vector multiplication.
- Lecture 8. Comparison of direct and iterative methods. Overview of direct solution methods. Direct sparse methods (Gaussian elimination with partial pivoting).