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Section 1.1
    Functions and their Representations

                    V63.0121.021/041, Calculus I

                          New York University


                         September 8, 2010


Announcements

   First WebAssign-ments are due September 13
   First written assignment is due September 15
   Do the Get-to-Know-You survey for extra credit!
Announcements




          First WebAssign-ments are
          due September 13
          First written assignment is
          due September 15
          Do the Get-to-Know-You
          survey for extra credit!




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   2 / 33
Function
Objectives: Functions and their Representations



          Understand the definition of
          function.
          Work with functions
          represented in different ways
          Work with functions defined
          piecewise over several
          intervals.
          Understand and apply the
          definition of increasing and
          decreasing function.




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   3 / 33
What is a function?




Definition
A function f is a relation which assigns to to every element x in a set D a
single element f (x) in a set E .
       The set D is called the domain of f .
       The set E is called the target of f .
       The set { y | y = f (x) for some x } is called the range of f .




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions    September 8, 2010   4 / 33
Outline


Modeling

Examples of          functions
   Functions         expressed by formulas
   Functions         described numerically
   Functions         described graphically
   Functions         described verbally

Properties of functions
   Monotonicity
   Symmetry




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   5 / 33
The Modeling Process



                 Real-world               model              Mathematical
                 Problems                                       Model




                                                                   solve
                     test




                Real-world              interpret            Mathematical
                Predictions                                  Conclusions




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions        September 8, 2010   6 / 33
Plato’s Cave




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   7 / 33
The Modeling Process



                 Real-world               model              Mathematical
                 Problems                                       Model




                                                                   solve
                     test




                Real-world              interpret            Mathematical
                Predictions                                  Conclusions


                 Shadows                                        Forms

V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions        September 8, 2010   8 / 33
Outline


Modeling

Examples of          functions
   Functions         expressed by formulas
   Functions         described numerically
   Functions         described graphically
   Functions         described verbally

Properties of functions
   Monotonicity
   Symmetry




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   9 / 33
Functions expressed by formulas




Any expression in a single variable x defines a function. In this case, the
domain is understood to be the largest set of x which after substitution,
give a real number.




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   10 / 33
Formula function example

Example
                  x +1
Let f (x) =            . Find the domain and range of f .
                  x −2




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   11 / 33
Formula function example

Example
                  x +1
Let f (x) =            . Find the domain and range of f .
                  x −2

Solution
The denominator is zero when x = 2, so the domain is all real numbers
except 2.




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   11 / 33
Formula function example

Example
                  x +1
Let f (x) =            . Find the domain and range of f .
                  x −2

Solution
The denominator is zero when x = 2, so the domain is all real numbers
except 2. As for the range, we can solve
                                          x +1        2y + 1
                                     y=        =⇒ x =
                                          x −2        y −1
So as long as y = 1, there is an x associated to y .




V63.0121.021/041, Calculus I (NYU)          Section 1.1 Functions   September 8, 2010   11 / 33
Formula function example

Example
                  x +1
Let f (x) =            . Find the domain and range of f .
                  x −2

Solution
The denominator is zero when x = 2, so the domain is all real numbers
except 2. As for the range, we can solve
                                          x +1        2y + 1
                                     y=        =⇒ x =
                                          x −2        y −1
So as long as y = 1, there is an x associated to y . Therefore

                                     domain(f ) = { x | x = 2 }
                                      range(f ) = { y | y = 1 }


V63.0121.021/041, Calculus I (NYU)          Section 1.1 Functions   September 8, 2010   11 / 33
How did you get that?



                                                                            x +1
                                      start                               y=
                                                                            x −2
                      cross-multiply                            y (x − 2) = x + 1
                             distribute                          xy − 2y = x + 1
                     collect x terms                                  xy − x = 2y + 1
                                     factor                     x(y − 1) = 2y + 1
                                                                           2y + 1
                                     divide                            x=
                                                                            y −1




V63.0121.021/041, Calculus I (NYU)            Section 1.1 Functions               September 8, 2010   12 / 33
No-no’s for expressions




        Cannot have zero in the
        denominator of an
        expression
        Cannot have a negative
        number under an even root
        (e.g., square root)
        Cannot have the logarithm
        of a negative number




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   13 / 33
Piecewise-defined functions
Example
Let
                                                  x2          0 ≤ x ≤ 1;
                                     f (x) =
                                                  3−x         1 < x ≤ 2.
Find the domain and range of f and graph the function.




V63.0121.021/041, Calculus I (NYU)             Section 1.1 Functions       September 8, 2010   14 / 33
Piecewise-defined functions
Example
Let
                                                   x2         0 ≤ x ≤ 1;
                                     f (x) =
                                                   3−x        1 < x ≤ 2.
Find the domain and range of f and graph the function.

Solution
The domain is [0, 2]. The range is [0, 2). The graph is piecewise.

                                           2

                                           1


                                               0         1         2

V63.0121.021/041, Calculus I (NYU)             Section 1.1 Functions       September 8, 2010   14 / 33
Functions described numerically




We can just describe a function by a table of values, or a diagram.




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   15 / 33
Example


Is this a function? If so, what is the range?



               x f (x)
               1   4
               2   5
               3   6




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   16 / 33
Example


Is this a function? If so, what is the range?


                                           1                 4
               x f (x)
               1   4                       2                 5
               2   5
               3   6
                                           3                 6




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   16 / 33
Example


Is this a function? If so, what is the range?


                                           1                 4
               x f (x)
               1   4                       2                 5
               2   5
               3   6
                                           3                 6


Yes, the range is {4, 5, 6}.




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   16 / 33
Example


Is this a function? If so, what is the range?



               x f (x)
               1   4
               2   4
               3   6




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   17 / 33
Example


Is this a function? If so, what is the range?


                                           1                 4
               x f (x)
               1   4                       2                 5
               2   4
               3   6
                                           3                 6




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   17 / 33
Example


Is this a function? If so, what is the range?


                                           1                 4
               x f (x)
               1   4                       2                 5
               2   4
               3   6
                                           3                 6


Yes, the range is {4, 6}.




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   17 / 33
Example


How about this one?



               x f (x)
               1   4
               1   5
               3   6




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   18 / 33
Example


How about this one?


                                           1                 4
               x f (x)
               1   4                       2                 5
               1   5
               3   6
                                           3                 6




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   18 / 33
Example


How about this one?


                                           1                 4
               x f (x)
               1   4                       2                 5
               1   5
               3   6
                                           3                 6


No, that one’s not “deterministic.”




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   18 / 33
An ideal function




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   19 / 33
An ideal function




        Domain is the buttons




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   19 / 33
An ideal function




        Domain is the buttons
        Range is the kinds of soda
        that come out




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   19 / 33
An ideal function




        Domain is the buttons
        Range is the kinds of soda
        that come out
        You can press more than one
        button to get some brands




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   19 / 33
An ideal function




        Domain is the buttons
        Range is the kinds of soda
        that come out
        You can press more than one
        button to get some brands
        But each button will only
        give one brand




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   19 / 33
Why numerical functions matter




In science, functions are often defined by data. Or, we observe data and
assume that it’s close to some nice continuous function.




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   20 / 33
Numerical Function Example

Here is the temperature in Boise, Idaho measured in 15-minute intervals
over the period August 22–29, 2008.

                100
                 90
                 80
                 70
                 60
                 50
                 40
                 30
                 20
                 10
                        8/22 8/23 8/24 8/25 8/26 8/27 8/28 8/29


V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   21 / 33
Functions described graphically

Sometimes all we have is the “picture” of a function, by which we mean,
its graph.




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   22 / 33
Functions described graphically

Sometimes all we have is the “picture” of a function, by which we mean,
its graph.




The one on the right is a relation but not a function.

V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   22 / 33
Functions described verbally




Oftentimes our functions come out of nature and have verbal descriptions:
       The temperature T (t) in this room at time t.
       The elevation h(θ) of the point on the equator at longitude θ.
       The utility u(x) I derive by consuming x burritos.




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   23 / 33
Outline


Modeling

Examples of          functions
   Functions         expressed by formulas
   Functions         described numerically
   Functions         described graphically
   Functions         described verbally

Properties of functions
   Monotonicity
   Symmetry




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   24 / 33
Monotonicity

Example
Let P(x) be the probability that my income was at least $x last year.
What might a graph of P(x) look like?




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   25 / 33
Monotonicity

Example
Let P(x) be the probability that my income was at least $x last year.
What might a graph of P(x) look like?


      1




   0.5




          $0                                $52,115                       $100K

V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   25 / 33
Monotonicity




Definition

       A function f is decreasing if f (x1 ) > f (x2 ) whenever x1 < x2 for any
       two points x1 and x2 in the domain of f .
       A function f is increasing if f (x1 ) < f (x2 ) whenever x1 < x2 for any
       two points x1 and x2 in the domain of f .




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   26 / 33
Examples




Example
Going back to the burrito function, would you call it increasing?




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   27 / 33
Examples




Example
Going back to the burrito function, would you call it increasing?

Example
Obviously, the temperature in Boise is neither increasing nor decreasing.




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   27 / 33
Symmetry




Example
Let I (x) be the intensity of light x distance from a point.

Example
Let F (x) be the gravitational force at a point x distance from a black hole.




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   28 / 33
Possible Intensity Graph


                                     y = I (x)




                                                                     x




V63.0121.021/041, Calculus I (NYU)      Section 1.1 Functions   September 8, 2010   29 / 33
Possible Gravity Graph

                                     y = F (x)




                                                                      x




V63.0121.021/041, Calculus I (NYU)       Section 1.1 Functions   September 8, 2010   30 / 33
Definitions




Definition

       A function f is called even if f (−x) = f (x) for all x in the domain of
       f.
       A function f is called odd if f (−x) = −f (x) for all x in the domain
       of f .




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   31 / 33
Examples




       Even: constants, even powers, cosine
       Odd: odd powers, sine, tangent
       Neither: exp, log




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   32 / 33
Summary




       The fundamental unit of investigation in calculus is the function.
       Functions can have many representations




V63.0121.021/041, Calculus I (NYU)   Section 1.1 Functions   September 8, 2010   33 / 33

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Lesson 1: Functions

  • 1. Section 1.1 Functions and their Representations V63.0121.021/041, Calculus I New York University September 8, 2010 Announcements First WebAssign-ments are due September 13 First written assignment is due September 15 Do the Get-to-Know-You survey for extra credit!
  • 2. Announcements First WebAssign-ments are due September 13 First written assignment is due September 15 Do the Get-to-Know-You survey for extra credit! V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 2 / 33
  • 4. Objectives: Functions and their Representations Understand the definition of function. Work with functions represented in different ways Work with functions defined piecewise over several intervals. Understand and apply the definition of increasing and decreasing function. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 3 / 33
  • 5. What is a function? Definition A function f is a relation which assigns to to every element x in a set D a single element f (x) in a set E . The set D is called the domain of f . The set E is called the target of f . The set { y | y = f (x) for some x } is called the range of f . V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 4 / 33
  • 6. Outline Modeling Examples of functions Functions expressed by formulas Functions described numerically Functions described graphically Functions described verbally Properties of functions Monotonicity Symmetry V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 5 / 33
  • 7. The Modeling Process Real-world model Mathematical Problems Model solve test Real-world interpret Mathematical Predictions Conclusions V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 6 / 33
  • 8. Plato’s Cave V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 7 / 33
  • 9. The Modeling Process Real-world model Mathematical Problems Model solve test Real-world interpret Mathematical Predictions Conclusions Shadows Forms V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 8 / 33
  • 10. Outline Modeling Examples of functions Functions expressed by formulas Functions described numerically Functions described graphically Functions described verbally Properties of functions Monotonicity Symmetry V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 9 / 33
  • 11. Functions expressed by formulas Any expression in a single variable x defines a function. In this case, the domain is understood to be the largest set of x which after substitution, give a real number. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 10 / 33
  • 12. Formula function example Example x +1 Let f (x) = . Find the domain and range of f . x −2 V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 11 / 33
  • 13. Formula function example Example x +1 Let f (x) = . Find the domain and range of f . x −2 Solution The denominator is zero when x = 2, so the domain is all real numbers except 2. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 11 / 33
  • 14. Formula function example Example x +1 Let f (x) = . Find the domain and range of f . x −2 Solution The denominator is zero when x = 2, so the domain is all real numbers except 2. As for the range, we can solve x +1 2y + 1 y= =⇒ x = x −2 y −1 So as long as y = 1, there is an x associated to y . V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 11 / 33
  • 15. Formula function example Example x +1 Let f (x) = . Find the domain and range of f . x −2 Solution The denominator is zero when x = 2, so the domain is all real numbers except 2. As for the range, we can solve x +1 2y + 1 y= =⇒ x = x −2 y −1 So as long as y = 1, there is an x associated to y . Therefore domain(f ) = { x | x = 2 } range(f ) = { y | y = 1 } V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 11 / 33
  • 16. How did you get that? x +1 start y= x −2 cross-multiply y (x − 2) = x + 1 distribute xy − 2y = x + 1 collect x terms xy − x = 2y + 1 factor x(y − 1) = 2y + 1 2y + 1 divide x= y −1 V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 12 / 33
  • 17. No-no’s for expressions Cannot have zero in the denominator of an expression Cannot have a negative number under an even root (e.g., square root) Cannot have the logarithm of a negative number V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 13 / 33
  • 18. Piecewise-defined functions Example Let x2 0 ≤ x ≤ 1; f (x) = 3−x 1 < x ≤ 2. Find the domain and range of f and graph the function. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 14 / 33
  • 19. Piecewise-defined functions Example Let x2 0 ≤ x ≤ 1; f (x) = 3−x 1 < x ≤ 2. Find the domain and range of f and graph the function. Solution The domain is [0, 2]. The range is [0, 2). The graph is piecewise. 2 1 0 1 2 V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 14 / 33
  • 20. Functions described numerically We can just describe a function by a table of values, or a diagram. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 15 / 33
  • 21. Example Is this a function? If so, what is the range? x f (x) 1 4 2 5 3 6 V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 16 / 33
  • 22. Example Is this a function? If so, what is the range? 1 4 x f (x) 1 4 2 5 2 5 3 6 3 6 V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 16 / 33
  • 23. Example Is this a function? If so, what is the range? 1 4 x f (x) 1 4 2 5 2 5 3 6 3 6 Yes, the range is {4, 5, 6}. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 16 / 33
  • 24. Example Is this a function? If so, what is the range? x f (x) 1 4 2 4 3 6 V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 17 / 33
  • 25. Example Is this a function? If so, what is the range? 1 4 x f (x) 1 4 2 5 2 4 3 6 3 6 V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 17 / 33
  • 26. Example Is this a function? If so, what is the range? 1 4 x f (x) 1 4 2 5 2 4 3 6 3 6 Yes, the range is {4, 6}. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 17 / 33
  • 27. Example How about this one? x f (x) 1 4 1 5 3 6 V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 18 / 33
  • 28. Example How about this one? 1 4 x f (x) 1 4 2 5 1 5 3 6 3 6 V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 18 / 33
  • 29. Example How about this one? 1 4 x f (x) 1 4 2 5 1 5 3 6 3 6 No, that one’s not “deterministic.” V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 18 / 33
  • 30. An ideal function V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 19 / 33
  • 31. An ideal function Domain is the buttons V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 19 / 33
  • 32. An ideal function Domain is the buttons Range is the kinds of soda that come out V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 19 / 33
  • 33. An ideal function Domain is the buttons Range is the kinds of soda that come out You can press more than one button to get some brands V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 19 / 33
  • 34. An ideal function Domain is the buttons Range is the kinds of soda that come out You can press more than one button to get some brands But each button will only give one brand V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 19 / 33
  • 35. Why numerical functions matter In science, functions are often defined by data. Or, we observe data and assume that it’s close to some nice continuous function. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 20 / 33
  • 36. Numerical Function Example Here is the temperature in Boise, Idaho measured in 15-minute intervals over the period August 22–29, 2008. 100 90 80 70 60 50 40 30 20 10 8/22 8/23 8/24 8/25 8/26 8/27 8/28 8/29 V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 21 / 33
  • 37. Functions described graphically Sometimes all we have is the “picture” of a function, by which we mean, its graph. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 22 / 33
  • 38. Functions described graphically Sometimes all we have is the “picture” of a function, by which we mean, its graph. The one on the right is a relation but not a function. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 22 / 33
  • 39. Functions described verbally Oftentimes our functions come out of nature and have verbal descriptions: The temperature T (t) in this room at time t. The elevation h(θ) of the point on the equator at longitude θ. The utility u(x) I derive by consuming x burritos. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 23 / 33
  • 40. Outline Modeling Examples of functions Functions expressed by formulas Functions described numerically Functions described graphically Functions described verbally Properties of functions Monotonicity Symmetry V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 24 / 33
  • 41. Monotonicity Example Let P(x) be the probability that my income was at least $x last year. What might a graph of P(x) look like? V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 25 / 33
  • 42. Monotonicity Example Let P(x) be the probability that my income was at least $x last year. What might a graph of P(x) look like? 1 0.5 $0 $52,115 $100K V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 25 / 33
  • 43. Monotonicity Definition A function f is decreasing if f (x1 ) > f (x2 ) whenever x1 < x2 for any two points x1 and x2 in the domain of f . A function f is increasing if f (x1 ) < f (x2 ) whenever x1 < x2 for any two points x1 and x2 in the domain of f . V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 26 / 33
  • 44. Examples Example Going back to the burrito function, would you call it increasing? V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 27 / 33
  • 45. Examples Example Going back to the burrito function, would you call it increasing? Example Obviously, the temperature in Boise is neither increasing nor decreasing. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 27 / 33
  • 46. Symmetry Example Let I (x) be the intensity of light x distance from a point. Example Let F (x) be the gravitational force at a point x distance from a black hole. V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 28 / 33
  • 47. Possible Intensity Graph y = I (x) x V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 29 / 33
  • 48. Possible Gravity Graph y = F (x) x V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 30 / 33
  • 49. Definitions Definition A function f is called even if f (−x) = f (x) for all x in the domain of f. A function f is called odd if f (−x) = −f (x) for all x in the domain of f . V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 31 / 33
  • 50. Examples Even: constants, even powers, cosine Odd: odd powers, sine, tangent Neither: exp, log V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 32 / 33
  • 51. Summary The fundamental unit of investigation in calculus is the function. Functions can have many representations V63.0121.021/041, Calculus I (NYU) Section 1.1 Functions September 8, 2010 33 / 33