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Section 1-4
 Graphs of Functions
Warm-up
        Give the domain and range of each function.

  {                                     }
1. (1, 29) , ( 2, 41) , (3,12 ) , ( 4,81)     2. y = 4




                                                     3
             3. y = x                       4. y =
                                                   2x − 4
Warm-up
        Give the domain and range of each function.

  {                                     }
1. (1, 29) , ( 2, 41) , (3,12 ) , ( 4,81)     2. y = 4

          D = {1, 2, 3, 4}


                                                     3
             3. y = x                       4. y =
                                                   2x − 4
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AA Section 1-4

  • 1. Section 1-4 Graphs of Functions
  • 2. Warm-up Give the domain and range of each function. { } 1. (1, 29) , ( 2, 41) , (3,12 ) , ( 4,81) 2. y = 4 3 3. y = x 4. y = 2x − 4
  • 3. Warm-up Give the domain and range of each function. { } 1. (1, 29) , ( 2, 41) , (3,12 ) , ( 4,81) 2. y = 4 D = {1, 2, 3, 4} 3 3. y = x 4. y = 2x − 4