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Linear Algebra - Lecture 16: Composition of Linear Transformations
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We discuss how to apply linear transformations in sequence -- i.e., how to "compose" linear transformations.
Please leave a comment below if you have any questions, comments, or corrections.
Timestamps:
00:00 - Introduction
02:04 - Main theorem
06:16 - Examples
14:21 - Angle-sum derivation
Please leave a comment below if you have any questions, comments, or corrections.
Timestamps:
00:00 - Introduction
02:04 - Main theorem
06:16 - Examples
14:21 - Angle-sum derivation
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