Math 54 - Linear Algebra & Differential Equations -- [4 units]
Course Format: Three hours of lecture and three hours of discussion per week.
Prerequisites: 1A-1B, 10A-10B or equivalent.
Description: Basic linear algebra; matrix arithmetic and determinants. Vector spaces; inner product spaces. Eigenvalues and eigenvectors; linear transformations, symmetric matrices. Linear ordinary differential equations (ODE); systems of linear ODE. Fourier series. (F,SP)
Textbook: Lay-Lay-McDonald, Linear Algebra and its Applications (5th and 6th editions) and Nagle-Saff-Snider, Fundamentals of Differential Equations and Boundary Value Problems (9th edition).A specially priced UC Berkeley paperback version (2nd edition) is available containing the chapters of both books needed for the course.
Part One: (Lay et al.) | |
Chapter 1: Linear Equations in linear algebra Systems of linear equations, row reduction, vectors in Rn, linear independence, matrices, linear transformations. (Sections 1.1–1.5, 1.7–1.9.) |
5 hours |
Chapter 2-3: Matrix Algebra and Determinants Matrix algebra, the inverse of a matrix, Determinants: properties, computation by row reduction or cofactor expansion, geometric interpretation in terms of volume. (Sections 2.1–2.3, 3.1–3.3.) |
4 hours |
Chapter 4: Vector Spaces Vector spaces and subspaces, including examples of function spaces, nullspace (kernel) and column space (image) of a matrix (linear transformation), bases, coordinate systems, dimension and rank, change of basis. (Sections 4.1–4.7) |
6 hours |
Chapter 5: Eigenvalues and Eigenvectors Eigenvalues and eigenvectors, the characteristic equation, diagonalization, eigenvectors and linear transformations, complex eigenvalues. (Sections 5.1–5.5 and Appendix B.) |
4 hours |
Chapter 6: Orthogonality, Least Squares The Euclidean inner product on Rn, orthogonal sets, orthogonal projection, Gram-Schmidt process, least squares problems, applications to linear models, inner product spaces. (Sections 6.1–6.7.) |
6 hours |
Chapter 7: Symmetric Matrices, Applications Diagonalization of symmetric matrices, quadratic forms, singular value decomposition. (Sections 7.1–7.2, 7.4.) |
3 hours |
Total hours on Linear Algebra | 28 hours |
Part Two: (Nagle et al.) | |
Chapter 4: Linear Second-Order ODE Linear second-order ODE: homogeneous equations, inhomogeneous equations using the method of undetermined coefficients. (Sections 4.2–4.5.) |
3 hours |
Chapter 9: Systems of linear ODE Systems of first order linear ODE: reduction of higher order equations to single order systems, homogeneous constant coefficient equations using eigenvalues (Sections 9.1, 9.4–9.6) |
4 hours |
Chapter 10: Fourier Series Fourier series. (Sections 10.3, 10.4) |
3 hours |
Total hours on Differential Equations | 10 hours |
Total for Parts One and Two | 38 hours |
Midterms & holidays | 4 hours |
The total number of class hours may vary during the Fall and Spring semesters. | 42 hours |
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