International Students Apply Early

We advise all international students who require an I-20 from Stanford to apply as early as possible.

Apply now

Matrix Methods: Singular Value Decomposition

JUNE 22, 2026 — AUGUST 13, 2026
EE263

Details:

Time: No Topic - No Type
Units: 3
Class Number: 11494
Interest Area: Computer Science and Engineering
Population: Undergraduate, Graduate
Interest Area: Computer Science and Engineering
Course Format & Length: In Person, 8 Weeks
Cross Listing: CME263 MATRIX METHODS
Grading Basis: Letter or Credit/No Credit

Description:

Least-squares approximations of over-determined equations, and least-norm solutions of underdetermined equations. Range and nullspace and their connection to left and right inverses. Symmetric matrices and quadratic forms. Positive definite matrices. Newton's method. Vector Gaussian distributions. Eigenvalues and eigenvectors of symmetric matrices. Matrix norm and the singular-value decomposition. Spectral graph embedding. Low rank approximations. Emphasis on applications from a broad range of disciplines including circuits, signal processing, machine learning, and control systems.

Favorites List

Your favorites list is empty. Tap the icon on courses you’re interested in to see them here, and share them with family and friends.