Gram-Schmidt Process in Linear Algebra - Lecture 27
Offered By: Derek Banas via YouTube
Course Description
Overview
Learn about the Gram-Schmidt Process in this 20-minute video tutorial on linear algebra. Explore how to transform a set of linearly independent vectors into an orthonormal subspace. Understand the connection between orthonormal bases and the Gram-Schmidt Process, building upon previous knowledge of orthogonal vectors. Gain insights into this essential technique used in various fields such as computer graphics, physics, and machine learning. Follow along as Derek Banas explains the process step-by-step, providing a clear understanding of this fundamental concept in linear algebra.
Syllabus
Linear Algebra 27 : Gram-Schmidt Process
Taught by
Derek Banas
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