Schedule
Asynchronous
Delivery method
Online
0 credit hours
Credits awarded upon completion
Self-Paced
Progress at your own speed
50 hours
Estimated learning time
Linear Algebra 2 (NCLab) Spaces, Eigenvalues, and Orthogonality. This is an online, self-paced, learn-by-doing course that builds on foundational concepts to explore deeper structures and techniques used across data science, engineering, and advanced mathematics. Learners work with determinants, linear spaces, bases, and coordinate systems, gaining fluency with the column space, null space, and matrix rank. The course introduces eigenvalues and eigenvectors, which play a critical role in machine learning, stability analysis, and computer vision. Additional focus is placed on normed and inner product spaces, orthogonality, and best approximation methods through orthogonal projections. Learners leave with a deeper understanding of how linear algebra supports optimization, modeling, and high-performance computing.
Schedule
Asynchronous
Delivery method
Online
Earn necessary number of credit hours for completing this content
Linear Algebra 2 Completion Certificate
Upon completion, you'll have the skills and knowledge on the following topics: Determinants, linear space, basis, coordinates, null space, column space, rank, eigenvalues and eigenvectors, normed spaces, inner product spaces, orthogonality, orthogonal projection, best approximation.
Similar Course