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Pc 8.2 notes_matrices
1.
8.2 Matrices Objective: Perform
basic operations with matrices Standard: Linear Algebra 4.0 and 5.0
2.
What's a Matrix?
3.
Matrix Addition Ex. 1)
4.
Ex. 2)
5.
Scalar Multiplication
6.
Ex. 3)
7.
Ex. 4)
8.
Matrix Multiplication The
sum of the products of rows and columns
9.
Note: The columns
in the first matrix must match the rows in the second matrix. Example:
10.
Ex. 5)
11.
Order Matters!!
12.
The Identity Matrix Basically,
1s on the diagonal
13.
Assignment: #11 p. 597 #3,
6-8, 15, 23, 28-30, 41, 43
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