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Numerical methods of Linear Algebra for Sparse Matrices
В начало
Курсы
Осенний семестр
Магистратура
Num Methods 2025
Module 2. Krylov subspace methods for sparse linea...
Practical assignment 12. Arnoldi process and FOM
Practical assignment 12. Arnoldi process and FOM
Upload your report after presenting it in class. File name: "Surname_PA12".
Practical assignment 12.pdf
9 декабря 2025, 12:55
◄ Practical assignment 11. Classic iterative methods
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Course overview 2025
Course textbook
Working with Matlab in SFedU and getting started
Individual project description
Choose your variant before December 16
Useful materials
Your individual projects (project submission and defense on December 30)
Lecture notes for Module 1
Practical assignment 1. Getting started with Matlab
Practical assignment 2. Matrix fundamentals: types and structures
Practical assignment 3. Vector and matrix norms. Existence of solution, solving linear system in Matlab
Practical assignment 4. Gram-Schmidt and QR-factorization
Practical assignment 5. Eigenvalues and their multiplicities, matrix factorizations, Hermitian and positive definite matrices
Practical assignment 6. Schur, LU- and Cholessky factorizations of Hermitian positive definite matrices. Solving linear systems using LU- and Cholessky factorizations.
Practical assignment 7. Condition number, computational costs, well- and ill-conditioned problems
Practical assignment 8. Permutations, reordering and fill-ins
Practical assignment 9. Sparse storage and sparse formats
Lecture notes for Module 2
Practical assignment 10. Comparison of direct and iterative methods for different sparse systems
Practical assignment 11. Classic iterative methods
Practical assignment 13. Givens rotations and GMRES
Practical assignment 13. Givens rotations and GMRES ►