Linear Algebra: Orthogonality and Diagonalization
This is the third and final course in the Linear Algebra Specialization that focuses on the theory and computations that arise from working with orthogonal...
About This Course
This is the third and final course in the Linear Algebra Specialization that focuses on the theory and computations that arise from working with orthogonal vectors. This includes the study of orthogonal transformation, orthogonal bases, and orthogonal transformations. The course culminates in the theory of symmetric matrices, linking the algebraic properties with their corresponding geometric equivalences. These matrices arise more often in applications than any other class of matrices. The theory, skills and techniques learned in this course have applications to AI and machine learning. In these popular fields, often the driving engine behind the systems that are interpreting, training, and using external data is exactly the matrix analysis arising from the content in this course. Successful completion of this specialization will prepare students to take advanced courses in data science, AI, and mathematics.
Topics Covered
Frequently Asked Questions
How much does Linear Algebra: Orthogonality and Diagonalization cost?
Visit the Linear Algebra: Orthogonality and Diagonalization course page for current pricing and available discounts.
Who teaches Linear Algebra: Orthogonality and Diagonalization?
Linear Algebra: Orthogonality and Diagonalization is taught by Joseph W. Cutrone, PhD, Johns Hopkins University.
What skill level is Linear Algebra: Orthogonality and Diagonalization for?
This course is designed for advanced learners.
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