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Section 4.1
       Maximum and Minimum Values

                   V63.0121.002.2010Su, Calculus I

                           New York University


                            June 8, 2010


Announcements

   Exams not graded yet
   Assignment 4 is on the website
   Quiz 3 on Thursday covering 3.3, 3.4, 3.5, 3.7
Announcements




           Exams not graded yet
           Assignment 4 is on the
           website
           Quiz 3 on Thursday covering
           3.3, 3.4, 3.5, 3.7




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   2 / 32
Objectives



           Understand and be able to
           explain the statement of the
           Extreme Value Theorem.
           Understand and be able to
           explain the statement of
           Fermat’s Theorem.
           Use the Closed Interval
           Method to find the extreme
           values of a function defined
           on a closed interval.




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   3 / 32
Outline


 Introduction

 The Extreme Value Theorem

 Fermat’s Theorem (not the last one)
    Tangent: Fermat’s Last Theorem

 The Closed Interval Method

 Examples




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   4 / 32
Optimize
Why go to the extremes?



          Rationally speaking, it is
          advantageous to find the
          extreme values of a function
          (maximize profit, minimize
          costs, etc.)




                                                                        Pierre-Louis Maupertuis
V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1   Maximum and Minimum Values (1698–1759) 8, 2010
                                                                                          June         5 / 32
Design




Image credit: Jason Tromm
V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   6 / 32
Why go to the extremes?



          Rationally speaking, it is
          advantageous to find the
          extreme values of a function
          (maximize profit, minimize
          costs, etc.)
          Many laws of science are
          derived from minimizing
          principles.




                                                                        Pierre-Louis Maupertuis
V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1   Maximum and Minimum Values (1698–1759) 8, 2010
                                                                                          June         7 / 32
Optics




Image credit: jacreative
V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   8 / 32
Why go to the extremes?



          Rationally speaking, it is
          advantageous to find the
          extreme values of a function
          (maximize profit, minimize
          costs, etc.)
          Many laws of science are
          derived from minimizing
          principles.
          Maupertuis’ principle:
          “Action is minimized
          through the wisdom of
          God.”
                                                                        Pierre-Louis Maupertuis
V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1   Maximum and Minimum Values (1698–1759) 8, 2010
                                                                                          June         9 / 32
Outline


 Introduction

 The Extreme Value Theorem

 Fermat’s Theorem (not the last one)
    Tangent: Fermat’s Last Theorem

 The Closed Interval Method

 Examples




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   10 / 32
Extreme points and values


Definition
Let f have domain D.




Image credit: Patrick Q
V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   11 / 32
Extreme points and values


Definition
Let f have domain D.
      The function f has an absolute maximum
      (or global maximum) (respectively,
      absolute minimum) at c if f (c) ≥ f (x)
      (respectively, f (c) ≤ f (x)) for all x in D




Image credit: Patrick Q
V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   11 / 32
Extreme points and values


Definition
Let f have domain D.
      The function f has an absolute maximum
      (or global maximum) (respectively,
      absolute minimum) at c if f (c) ≥ f (x)
      (respectively, f (c) ≤ f (x)) for all x in D
      The number f (c) is called the maximum
      value (respectively, minimum value) of f
      on D.




Image credit: Patrick Q
V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   11 / 32
Extreme points and values


Definition
Let f have domain D.
      The function f has an absolute maximum
      (or global maximum) (respectively,
      absolute minimum) at c if f (c) ≥ f (x)
      (respectively, f (c) ≤ f (x)) for all x in D
      The number f (c) is called the maximum
      value (respectively, minimum value) of f
      on D.
      An extremum is either a maximum or a
      minimum. An extreme value is either a
      maximum value or minimum value.


Image credit: Patrick Q
V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   11 / 32
The Extreme Value Theorem
 Theorem (The Extreme Value Theorem)
 Let f be a function which is continuous on the closed interval [a, b]. Then
 f attains an absolute maximum value f (c) and an absolute minimum
 value f (d) at numbers c and d in [a, b].




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   12 / 32
The Extreme Value Theorem
 Theorem (The Extreme Value Theorem)
 Let f be a function which is continuous on the closed interval [a, b]. Then
 f attains an absolute maximum value f (c) and an absolute minimum
 value f (d) at numbers c and d in [a, b].




                                        a                                        b
V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values       June 8, 2010   12 / 32
The Extreme Value Theorem
 Theorem (The Extreme Value Theorem)
 Let f be a function which is continuous on the closed interval [a, b]. Then
 f attains an absolute maximum value f (c) and an absolute minimum
 value f (d) at numbers c and d in [a, b].




    maximum f (c)
        value



     minimum f (d)
         value
                                        a                        d                   c
                                                                                 b
                                                              minimum                maximum
V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values         June 8, 2010   12 / 32
No proof of EVT forthcoming




         This theorem is very hard to prove without using technical facts
         about continuous functions and closed intervals.
         But we can show the importance of each of the hypotheses.




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   13 / 32
Bad Example #1



 Example

  Consider the function

                     x     0≤x <1
      f (x) =
                     x − 2 1 ≤ x ≤ 2.




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   14 / 32
Bad Example #1



 Example

  Consider the function

                     x     0≤x <1
      f (x) =                                                                    |
                     x − 2 1 ≤ x ≤ 2.                                            1




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values       June 8, 2010   14 / 32
Bad Example #1



 Example

  Consider the function

                     x     0≤x <1
      f (x) =                                                                    |
                     x − 2 1 ≤ x ≤ 2.                                            1

 Then although values of f (x) get arbitrarily close to 1 and never bigger
 than 1, 1 is not the maximum value of f on [0, 1] because it is never
 achieved.




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values       June 8, 2010   14 / 32
Bad Example #1



 Example

  Consider the function

                     x     0≤x <1
      f (x) =                                                                    |
                     x − 2 1 ≤ x ≤ 2.                                            1

 Then although values of f (x) get arbitrarily close to 1 and never bigger
 than 1, 1 is not the maximum value of f on [0, 1] because it is never
 achieved. This does not violate EVT because f is not continuous.




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values       June 8, 2010   14 / 32
Bad Example #2

 Example
 Consider the function f (x) = x restricted to the interval [0, 1).




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   15 / 32
Bad Example #2

 Example
 Consider the function f (x) = x restricted to the interval [0, 1).




                                                                   |
                                                                   1




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   15 / 32
Bad Example #2

 Example
 Consider the function f (x) = x restricted to the interval [0, 1).




                                                                   |
                                                                   1


 There is still no maximum value (values get arbitrarily close to 1 but do not
 achieve it).

V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   15 / 32
Bad Example #2

 Example
 Consider the function f (x) = x restricted to the interval [0, 1).




                                                                   |
                                                                   1


 There is still no maximum value (values get arbitrarily close to 1 but do not
 achieve it). This does not violate EVT because the domain is not closed.

V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   15 / 32
Final Bad Example


 Example
                                                1
 Consider the function f (x) =                    is continuous on the closed interval [1, ∞).
                                                x




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   16 / 32
Final Bad Example


 Example
                                                1
 Consider the function f (x) =                    is continuous on the closed interval [1, ∞).
                                                x




                      1




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   16 / 32
Final Bad Example


 Example
                                                1
 Consider the function f (x) =                    is continuous on the closed interval [1, ∞).
                                                x




                      1

 There is no minimum value (values get arbitrarily close to 0 but do not
 achieve it).



V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   16 / 32
Final Bad Example


 Example
                                                1
 Consider the function f (x) =                    is continuous on the closed interval [1, ∞).
                                                x




                      1

 There is no minimum value (values get arbitrarily close to 0 but do not
 achieve it). This does not violate EVT because the domain is not bounded.



V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   16 / 32
Outline


 Introduction

 The Extreme Value Theorem

 Fermat’s Theorem (not the last one)
    Tangent: Fermat’s Last Theorem

 The Closed Interval Method

 Examples




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   17 / 32
Local extrema

 Definition

        A function f has a local maximum or relative maximum at c if f (c) ≥ f (x)
        when x is near c. This means that f (c) ≥ f (x) for all x in some open interval
        containing c.
        Similarly, f has a local minimum at c if f (c) ≤ f (x) when x is near c.




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   18 / 32
Local extrema

 Definition

        A function f has a local maximum or relative maximum at c if f (c) ≥ f (x)
        when x is near c. This means that f (c) ≥ f (x) for all x in some open interval
        containing c.
        Similarly, f has a local minimum at c if f (c) ≤ f (x) when x is near c.




                                          |                                          |
                                         a local                local            b
                                          maximum             minimum


V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values           June 8, 2010   18 / 32
Local extrema

        So a local extremum must be inside the domain of f (not on the end).
        A global extremum that is inside the domain is a local extremum.




                                          |                                      |
                                         a local  local and global b global
                                          maximum        min         max


V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values       June 8, 2010   18 / 32
Fermat’s Theorem

 Theorem (Fermat’s Theorem)
 Suppose f has a local extremum at c and f is differentiable at c. Then
 f (c) = 0.




                                        |                                            |
                                        a local                 local            b
                                         maximum              minimum



V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values           June 8, 2010   19 / 32
Fermat’s Theorem

 Theorem (Fermat’s Theorem)
 Suppose f has a local extremum at c and f is differentiable at c. Then
 f (c) = 0.




                                        |                                            |
                                        a local                 local            b
                                         maximum              minimum



V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values           June 8, 2010   19 / 32
Sketch of proof of Fermat’s Theorem

 Suppose that f has a local maximum at c.




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   20 / 32
Sketch of proof of Fermat’s Theorem

 Suppose that f has a local maximum at c.
         If x is slightly greater than c, f (x) ≤ f (c). This means

                            f (x) − f (c)
                                          ≤0
                                x −c




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   20 / 32
Sketch of proof of Fermat’s Theorem

 Suppose that f has a local maximum at c.
         If x is slightly greater than c, f (x) ≤ f (c). This means

                            f (x) − f (c)             f (x) − f (c)
                                          ≤ 0 =⇒ lim+               ≤0
                                x −c             x→c      x −c




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   20 / 32
Sketch of proof of Fermat’s Theorem

 Suppose that f has a local maximum at c.
         If x is slightly greater than c, f (x) ≤ f (c). This means

                            f (x) − f (c)             f (x) − f (c)
                                          ≤ 0 =⇒ lim+               ≤0
                                x −c             x→c      x −c


         The same will be true on the other end: if x is slightly less than c,
         f (x) ≤ f (c). This means

                            f (x) − f (c)
                                          ≥0
                                x −c




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   20 / 32
Sketch of proof of Fermat’s Theorem

 Suppose that f has a local maximum at c.
         If x is slightly greater than c, f (x) ≤ f (c). This means

                            f (x) − f (c)             f (x) − f (c)
                                          ≤ 0 =⇒ lim+               ≤0
                                x −c             x→c      x −c


         The same will be true on the other end: if x is slightly less than c,
         f (x) ≤ f (c). This means

                            f (x) − f (c)                              f (x) − f (c)
                                          ≥ 0 =⇒                lim                  ≥0
                                x −c                           x→c −       x −c




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values       June 8, 2010   20 / 32
Sketch of proof of Fermat’s Theorem

 Suppose that f has a local maximum at c.
         If x is slightly greater than c, f (x) ≤ f (c). This means

                            f (x) − f (c)             f (x) − f (c)
                                          ≤ 0 =⇒ lim+               ≤0
                                x −c             x→c      x −c


         The same will be true on the other end: if x is slightly less than c,
         f (x) ≤ f (c). This means

                            f (x) − f (c)                              f (x) − f (c)
                                          ≥ 0 =⇒                lim                  ≥0
                                x −c                           x→c −       x −c

                                                    f (x) − f (c)
         Since the limit f (c) = lim                              exists, it must be 0.
                                             x→c        x −c

V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values       June 8, 2010   20 / 32
Meet the Mathematician: Pierre de Fermat




          1601–1665
          Lawyer and number theorist
          Proved many theorems,
          didn’t quite prove his last
          one




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   21 / 32
Tangent: Fermat’s Last Theorem


          Plenty of solutions to
          x 2 + y 2 = z 2 among positive
          whole numbers (e.g., x = 3,
          y = 4, z = 5)




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   22 / 32
Tangent: Fermat’s Last Theorem


          Plenty of solutions to
          x 2 + y 2 = z 2 among positive
          whole numbers (e.g., x = 3,
          y = 4, z = 5)
          No solutions to
          x 3 + y 3 = z 3 among positive
          whole numbers




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   22 / 32
Tangent: Fermat’s Last Theorem


          Plenty of solutions to
          x 2 + y 2 = z 2 among positive
          whole numbers (e.g., x = 3,
          y = 4, z = 5)
          No solutions to
          x 3 + y 3 = z 3 among positive
          whole numbers
          Fermat claimed no solutions
          to x n + y n = z n but didn’t
          write down his proof




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   22 / 32
Tangent: Fermat’s Last Theorem


          Plenty of solutions to
          x 2 + y 2 = z 2 among positive
          whole numbers (e.g., x = 3,
          y = 4, z = 5)
          No solutions to
          x 3 + y 3 = z 3 among positive
          whole numbers
          Fermat claimed no solutions
          to x n + y n = z n but didn’t
          write down his proof
          Not solved until 1998!
          (Taylor–Wiles)


V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   22 / 32
Outline


 Introduction

 The Extreme Value Theorem

 Fermat’s Theorem (not the last one)
    Tangent: Fermat’s Last Theorem

 The Closed Interval Method

 Examples




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   23 / 32
Flowchart for placing extrema
Thanks to Fermat

 Suppose f is a continuous function on the closed, bounded interval [a, b],
 and c is a global maximum point.

                                                       c is a
                   start
                                                     local max



                                                        Is f
               Is c an                                                           f is not
                                    no               diff’ble at            no
              endpoint?                                                          diff at c
                                                         c?

                    yes                                   yes
               c = a or
                                                     f (c) = 0
                c = b

V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values    June 8, 2010   24 / 32
The Closed Interval Method



 This means to find the maximum value of f on [a, b], we need to:
         Evaluate f at the endpoints a and b
         Evaluate f at the critical points or critical numbers x where either
         f (x) = 0 or f is not differentiable at x.
         The points with the largest function value are the global maximum
         points
         The points with the smallest or most negative function value are the
         global minimum points.




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   25 / 32
Outline


 Introduction

 The Extreme Value Theorem

 Fermat’s Theorem (not the last one)
    Tangent: Fermat’s Last Theorem

 The Closed Interval Method

 Examples




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   26 / 32
Extreme values of a linear function


 Example
 Find the extreme values of f (x) = 2x − 5 on [−1, 2].




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   27 / 32
Extreme values of a linear function


 Example
 Find the extreme values of f (x) = 2x − 5 on [−1, 2].

 Solution
 Since f (x) = 2, which is never zero, we have no critical points and we
 need only investigate the endpoints:
         f (−1) = 2(−1) − 5 = −7
         f (2) = 2(2) − 5 = −1




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   27 / 32
Extreme values of a linear function


 Example
 Find the extreme values of f (x) = 2x − 5 on [−1, 2].

 Solution
 Since f (x) = 2, which is never zero, we have no critical points and we
 need only investigate the endpoints:
         f (−1) = 2(−1) − 5 = −7
         f (2) = 2(2) − 5 = −1
 So
         The absolute minimum (point) is at −1; the minimum value is −7.
         The absolute maximum (point) is at 2; the maximum value is −1.



V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   27 / 32
Extreme values of a quadratic function


 Example
 Find the extreme values of f (x) = x 2 − 1 on [−1, 2].




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   28 / 32
Extreme values of a quadratic function


 Example
 Find the extreme values of f (x) = x 2 − 1 on [−1, 2].

 Solution
 We have f (x) = 2x, which is zero when x = 0.




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   28 / 32
Extreme values of a quadratic function


 Example
 Find the extreme values of f (x) = x 2 − 1 on [−1, 2].

 Solution
 We have f (x) = 2x, which is zero when x = 0. So our points to check
 are:
         f (−1) =
         f (0) =
         f (2) =




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   28 / 32
Extreme values of a quadratic function


 Example
 Find the extreme values of f (x) = x 2 − 1 on [−1, 2].

 Solution
 We have f (x) = 2x, which is zero when x = 0. So our points to check
 are:
         f (−1) = 0
         f (0) =
         f (2) =




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   28 / 32
Extreme values of a quadratic function


 Example
 Find the extreme values of f (x) = x 2 − 1 on [−1, 2].

 Solution
 We have f (x) = 2x, which is zero when x = 0. So our points to check
 are:
         f (−1) = 0
         f (0) = − 1
         f (2) =




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   28 / 32
Extreme values of a quadratic function


 Example
 Find the extreme values of f (x) = x 2 − 1 on [−1, 2].

 Solution
 We have f (x) = 2x, which is zero when x = 0. So our points to check
 are:
         f (−1) = 0
         f (0) = − 1
         f (2) = 3




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   28 / 32
Extreme values of a quadratic function


 Example
 Find the extreme values of f (x) = x 2 − 1 on [−1, 2].

 Solution
 We have f (x) = 2x, which is zero when x = 0. So our points to check
 are:
         f (−1) = 0
         f (0) = − 1 (absolute min)
         f (2) = 3




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   28 / 32
Extreme values of a quadratic function


 Example
 Find the extreme values of f (x) = x 2 − 1 on [−1, 2].

 Solution
 We have f (x) = 2x, which is zero when x = 0. So our points to check
 are:
         f (−1) = 0
         f (0) = − 1 (absolute min)
         f (2) = 3 (absolute max)




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   28 / 32
Extreme values of a cubic function


 Example
 Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2].




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   29 / 32
Extreme values of a cubic function


 Example
 Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2].

 Solution
 Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and
 x = 1.




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   29 / 32
Extreme values of a cubic function


 Example
 Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2].

 Solution
 Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and
 x = 1. The values to check are
         f (−1) =
         f (0) =
         f (1) =
         f (2) =




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   29 / 32
Extreme values of a cubic function


 Example
 Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2].

 Solution
 Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and
 x = 1. The values to check are
         f (−1) = − 4
         f (0) =
         f (1) =
         f (2) =




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   29 / 32
Extreme values of a cubic function


 Example
 Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2].

 Solution
 Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and
 x = 1. The values to check are
         f (−1) = − 4
         f (0) = 1
         f (1) =
         f (2) =




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   29 / 32
Extreme values of a cubic function


 Example
 Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2].

 Solution
 Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and
 x = 1. The values to check are
         f (−1) = − 4
         f (0) = 1
         f (1) = 0
         f (2) =




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   29 / 32
Extreme values of a cubic function


 Example
 Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2].

 Solution
 Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and
 x = 1. The values to check are
         f (−1) = − 4
         f (0) = 1
         f (1) = 0
         f (2) = 5




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   29 / 32
Extreme values of a cubic function


 Example
 Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2].

 Solution
 Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and
 x = 1. The values to check are
         f (−1) = − 4 (global min)
         f (0) = 1
         f (1) = 0
         f (2) = 5




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   29 / 32
Extreme values of a cubic function


 Example
 Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2].

 Solution
 Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and
 x = 1. The values to check are
         f (−1) = − 4 (global min)
         f (0) = 1
         f (1) = 0
         f (2) = 5 (global max)




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   29 / 32
Extreme values of a cubic function


 Example
 Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2].

 Solution
 Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and
 x = 1. The values to check are
         f (−1) = − 4 (global min)
         f (0) = 1 (local max)
         f (1) = 0
         f (2) = 5 (global max)




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   29 / 32
Extreme values of a cubic function


 Example
 Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2].

 Solution
 Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and
 x = 1. The values to check are
         f (−1) = − 4 (global min)
         f (0) = 1 (local max)
         f (1) = 0 (local min)
         f (2) = 5 (global max)




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   29 / 32
Extreme values of an algebraic function
 Example
 Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2].




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   30 / 32
Extreme values of an algebraic function
 Example
 Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2].

 Solution
 Write f (x) = x 5/3 + 2x 2/3 , then

                                5       4        1
                         f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4)
                                3       3        3
 Thus f (−4/5) = 0 and f is not differentiable at 0.




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   30 / 32
Extreme values of an algebraic function
 Example
 Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2].

 Solution
 Write f (x) = x 5/3 + 2x 2/3 , then

                                5       4        1
                         f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4)
                                3       3        3
 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check
 are:
         f (−1) =
         f (−4/5) =
         f (0) =
         f (2) =

V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   30 / 32
Extreme values of an algebraic function
 Example
 Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2].

 Solution
 Write f (x) = x 5/3 + 2x 2/3 , then

                                5       4        1
                         f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4)
                                3       3        3
 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check
 are:
         f (−1) = 1
         f (−4/5) =
         f (0) =
         f (2) =

V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   30 / 32
Extreme values of an algebraic function
 Example
 Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2].

 Solution
 Write f (x) = x 5/3 + 2x 2/3 , then

                                5       4        1
                         f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4)
                                3       3        3
 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check
 are:
         f (−1) = 1
         f (−4/5) = 1.0341
         f (0) =
         f (2) =

V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   30 / 32
Extreme values of an algebraic function
 Example
 Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2].

 Solution
 Write f (x) = x 5/3 + 2x 2/3 , then

                                5       4        1
                         f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4)
                                3       3        3
 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check
 are:
         f (−1) = 1
         f (−4/5) = 1.0341
         f (0) = 0
         f (2) =

V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   30 / 32
Extreme values of an algebraic function
 Example
 Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2].

 Solution
 Write f (x) = x 5/3 + 2x 2/3 , then

                                5       4        1
                         f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4)
                                3       3        3
 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check
 are:
         f (−1) = 1
         f (−4/5) = 1.0341
         f (0) = 0
         f (2) = 6.3496

V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   30 / 32
Extreme values of an algebraic function
 Example
 Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2].

 Solution
 Write f (x) = x 5/3 + 2x 2/3 , then

                                5       4        1
                         f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4)
                                3       3        3
 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check
 are:
         f (−1) = 1
         f (−4/5) = 1.0341
         f (0) = 0 (absolute min)
         f (2) = 6.3496

V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   30 / 32
Extreme values of an algebraic function
 Example
 Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2].

 Solution
 Write f (x) = x 5/3 + 2x 2/3 , then

                                5       4        1
                         f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4)
                                3       3        3
 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check
 are:
         f (−1) = 1
         f (−4/5) = 1.0341
         f (0) = 0 (absolute min)
         f (2) = 6.3496 (absolute max)

V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   30 / 32
Extreme values of an algebraic function
 Example
 Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2].

 Solution
 Write f (x) = x 5/3 + 2x 2/3 , then

                                5       4        1
                         f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4)
                                3       3        3
 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check
 are:
         f (−1) = 1
         f (−4/5) = 1.0341 (relative max)
         f (0) = 0 (absolute min)
         f (2) = 6.3496 (absolute max)

V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   30 / 32
Extreme values of an algebraic function


 Example
 Find the extreme values of f (x) =                        4 − x 2 on [−2, 1].




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   31 / 32
Extreme values of an algebraic function


 Example
 Find the extreme values of f (x) =                        4 − x 2 on [−2, 1].

 Solution
                        x
 We have f (x) = − √          , which is zero when x = 0. (f is not
                      4 − x2
 differentiable at ±2 as well.)




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   31 / 32
Extreme values of an algebraic function


 Example
 Find the extreme values of f (x) =                        4 − x 2 on [−2, 1].

 Solution
                        x
 We have f (x) = − √          , which is zero when x = 0. (f is not
                      4 − x2
 differentiable at ±2 as well.) So our points to check are:
         f (−2) =
         f (0) =
         f (1) =




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   31 / 32
Extreme values of an algebraic function


 Example
 Find the extreme values of f (x) =                        4 − x 2 on [−2, 1].

 Solution
                        x
 We have f (x) = − √          , which is zero when x = 0. (f is not
                      4 − x2
 differentiable at ±2 as well.) So our points to check are:
         f (−2) = 0
         f (0) =
         f (1) =




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   31 / 32
Extreme values of an algebraic function


 Example
 Find the extreme values of f (x) =                        4 − x 2 on [−2, 1].

 Solution
                        x
 We have f (x) = − √          , which is zero when x = 0. (f is not
                      4 − x2
 differentiable at ±2 as well.) So our points to check are:
         f (−2) = 0
         f (0) = 2
         f (1) =




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   31 / 32
Extreme values of an algebraic function


 Example
 Find the extreme values of f (x) =                        4 − x 2 on [−2, 1].

 Solution
                        x
 We have f (x) = − √          , which is zero when x = 0. (f is not
                      4 − x2
 differentiable at ±2 as well.) So our points to check are:
         f (−2) = 0
         f (0) = 2
                 √
         f (1) = 3




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   31 / 32
Extreme values of an algebraic function


 Example
 Find the extreme values of f (x) =                        4 − x 2 on [−2, 1].

 Solution
                        x
 We have f (x) = − √          , which is zero when x = 0. (f is not
                      4 − x2
 differentiable at ±2 as well.) So our points to check are:
         f (−2) = 0 (absolute min)
         f (0) = 2
                 √
         f (1) = 3




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   31 / 32
Extreme values of an algebraic function


 Example
 Find the extreme values of f (x) =                        4 − x 2 on [−2, 1].

 Solution
                        x
 We have f (x) = − √          , which is zero when x = 0. (f is not
                      4 − x2
 differentiable at ±2 as well.) So our points to check are:
         f (−2) = 0 (absolute min)
         f (0) = 2 (absolute max)
                 √
         f (1) = 3




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   31 / 32
Summary




         The Extreme Value Theorem: a continuous function on a closed
         interval must achieve its max and min
         Fermat’s Theorem: local extrema are critical points
         The Closed Interval Method: an algorithm for finding global extrema
         Show your work unless you want to end up like Fermat!




V63.0121.002.2010Su, Calculus I (NYU)   Section 4.1 Maximum and Minimum Values   June 8, 2010   32 / 32

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Lesson18 -maximum_and_minimum_values_slides

  • 1. Section 4.1 Maximum and Minimum Values V63.0121.002.2010Su, Calculus I New York University June 8, 2010 Announcements Exams not graded yet Assignment 4 is on the website Quiz 3 on Thursday covering 3.3, 3.4, 3.5, 3.7
  • 2. Announcements Exams not graded yet Assignment 4 is on the website Quiz 3 on Thursday covering 3.3, 3.4, 3.5, 3.7 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 2 / 32
  • 3. Objectives Understand and be able to explain the statement of the Extreme Value Theorem. Understand and be able to explain the statement of Fermat’s Theorem. Use the Closed Interval Method to find the extreme values of a function defined on a closed interval. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 3 / 32
  • 4. Outline Introduction The Extreme Value Theorem Fermat’s Theorem (not the last one) Tangent: Fermat’s Last Theorem The Closed Interval Method Examples V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 4 / 32
  • 6. Why go to the extremes? Rationally speaking, it is advantageous to find the extreme values of a function (maximize profit, minimize costs, etc.) Pierre-Louis Maupertuis V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values (1698–1759) 8, 2010 June 5 / 32
  • 7. Design Image credit: Jason Tromm V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 6 / 32
  • 8. Why go to the extremes? Rationally speaking, it is advantageous to find the extreme values of a function (maximize profit, minimize costs, etc.) Many laws of science are derived from minimizing principles. Pierre-Louis Maupertuis V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values (1698–1759) 8, 2010 June 7 / 32
  • 9. Optics Image credit: jacreative V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 8 / 32
  • 10. Why go to the extremes? Rationally speaking, it is advantageous to find the extreme values of a function (maximize profit, minimize costs, etc.) Many laws of science are derived from minimizing principles. Maupertuis’ principle: “Action is minimized through the wisdom of God.” Pierre-Louis Maupertuis V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values (1698–1759) 8, 2010 June 9 / 32
  • 11. Outline Introduction The Extreme Value Theorem Fermat’s Theorem (not the last one) Tangent: Fermat’s Last Theorem The Closed Interval Method Examples V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 10 / 32
  • 12. Extreme points and values Definition Let f have domain D. Image credit: Patrick Q V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 11 / 32
  • 13. Extreme points and values Definition Let f have domain D. The function f has an absolute maximum (or global maximum) (respectively, absolute minimum) at c if f (c) ≥ f (x) (respectively, f (c) ≤ f (x)) for all x in D Image credit: Patrick Q V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 11 / 32
  • 14. Extreme points and values Definition Let f have domain D. The function f has an absolute maximum (or global maximum) (respectively, absolute minimum) at c if f (c) ≥ f (x) (respectively, f (c) ≤ f (x)) for all x in D The number f (c) is called the maximum value (respectively, minimum value) of f on D. Image credit: Patrick Q V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 11 / 32
  • 15. Extreme points and values Definition Let f have domain D. The function f has an absolute maximum (or global maximum) (respectively, absolute minimum) at c if f (c) ≥ f (x) (respectively, f (c) ≤ f (x)) for all x in D The number f (c) is called the maximum value (respectively, minimum value) of f on D. An extremum is either a maximum or a minimum. An extreme value is either a maximum value or minimum value. Image credit: Patrick Q V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 11 / 32
  • 16. The Extreme Value Theorem Theorem (The Extreme Value Theorem) Let f be a function which is continuous on the closed interval [a, b]. Then f attains an absolute maximum value f (c) and an absolute minimum value f (d) at numbers c and d in [a, b]. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 12 / 32
  • 17. The Extreme Value Theorem Theorem (The Extreme Value Theorem) Let f be a function which is continuous on the closed interval [a, b]. Then f attains an absolute maximum value f (c) and an absolute minimum value f (d) at numbers c and d in [a, b]. a b V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 12 / 32
  • 18. The Extreme Value Theorem Theorem (The Extreme Value Theorem) Let f be a function which is continuous on the closed interval [a, b]. Then f attains an absolute maximum value f (c) and an absolute minimum value f (d) at numbers c and d in [a, b]. maximum f (c) value minimum f (d) value a d c b minimum maximum V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 12 / 32
  • 19. No proof of EVT forthcoming This theorem is very hard to prove without using technical facts about continuous functions and closed intervals. But we can show the importance of each of the hypotheses. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 13 / 32
  • 20. Bad Example #1 Example Consider the function x 0≤x <1 f (x) = x − 2 1 ≤ x ≤ 2. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 14 / 32
  • 21. Bad Example #1 Example Consider the function x 0≤x <1 f (x) = | x − 2 1 ≤ x ≤ 2. 1 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 14 / 32
  • 22. Bad Example #1 Example Consider the function x 0≤x <1 f (x) = | x − 2 1 ≤ x ≤ 2. 1 Then although values of f (x) get arbitrarily close to 1 and never bigger than 1, 1 is not the maximum value of f on [0, 1] because it is never achieved. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 14 / 32
  • 23. Bad Example #1 Example Consider the function x 0≤x <1 f (x) = | x − 2 1 ≤ x ≤ 2. 1 Then although values of f (x) get arbitrarily close to 1 and never bigger than 1, 1 is not the maximum value of f on [0, 1] because it is never achieved. This does not violate EVT because f is not continuous. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 14 / 32
  • 24. Bad Example #2 Example Consider the function f (x) = x restricted to the interval [0, 1). V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 15 / 32
  • 25. Bad Example #2 Example Consider the function f (x) = x restricted to the interval [0, 1). | 1 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 15 / 32
  • 26. Bad Example #2 Example Consider the function f (x) = x restricted to the interval [0, 1). | 1 There is still no maximum value (values get arbitrarily close to 1 but do not achieve it). V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 15 / 32
  • 27. Bad Example #2 Example Consider the function f (x) = x restricted to the interval [0, 1). | 1 There is still no maximum value (values get arbitrarily close to 1 but do not achieve it). This does not violate EVT because the domain is not closed. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 15 / 32
  • 28. Final Bad Example Example 1 Consider the function f (x) = is continuous on the closed interval [1, ∞). x V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 16 / 32
  • 29. Final Bad Example Example 1 Consider the function f (x) = is continuous on the closed interval [1, ∞). x 1 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 16 / 32
  • 30. Final Bad Example Example 1 Consider the function f (x) = is continuous on the closed interval [1, ∞). x 1 There is no minimum value (values get arbitrarily close to 0 but do not achieve it). V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 16 / 32
  • 31. Final Bad Example Example 1 Consider the function f (x) = is continuous on the closed interval [1, ∞). x 1 There is no minimum value (values get arbitrarily close to 0 but do not achieve it). This does not violate EVT because the domain is not bounded. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 16 / 32
  • 32. Outline Introduction The Extreme Value Theorem Fermat’s Theorem (not the last one) Tangent: Fermat’s Last Theorem The Closed Interval Method Examples V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 17 / 32
  • 33. Local extrema Definition A function f has a local maximum or relative maximum at c if f (c) ≥ f (x) when x is near c. This means that f (c) ≥ f (x) for all x in some open interval containing c. Similarly, f has a local minimum at c if f (c) ≤ f (x) when x is near c. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 18 / 32
  • 34. Local extrema Definition A function f has a local maximum or relative maximum at c if f (c) ≥ f (x) when x is near c. This means that f (c) ≥ f (x) for all x in some open interval containing c. Similarly, f has a local minimum at c if f (c) ≤ f (x) when x is near c. | | a local local b maximum minimum V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 18 / 32
  • 35. Local extrema So a local extremum must be inside the domain of f (not on the end). A global extremum that is inside the domain is a local extremum. | | a local local and global b global maximum min max V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 18 / 32
  • 36. Fermat’s Theorem Theorem (Fermat’s Theorem) Suppose f has a local extremum at c and f is differentiable at c. Then f (c) = 0. | | a local local b maximum minimum V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 19 / 32
  • 37. Fermat’s Theorem Theorem (Fermat’s Theorem) Suppose f has a local extremum at c and f is differentiable at c. Then f (c) = 0. | | a local local b maximum minimum V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 19 / 32
  • 38. Sketch of proof of Fermat’s Theorem Suppose that f has a local maximum at c. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 20 / 32
  • 39. Sketch of proof of Fermat’s Theorem Suppose that f has a local maximum at c. If x is slightly greater than c, f (x) ≤ f (c). This means f (x) − f (c) ≤0 x −c V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 20 / 32
  • 40. Sketch of proof of Fermat’s Theorem Suppose that f has a local maximum at c. If x is slightly greater than c, f (x) ≤ f (c). This means f (x) − f (c) f (x) − f (c) ≤ 0 =⇒ lim+ ≤0 x −c x→c x −c V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 20 / 32
  • 41. Sketch of proof of Fermat’s Theorem Suppose that f has a local maximum at c. If x is slightly greater than c, f (x) ≤ f (c). This means f (x) − f (c) f (x) − f (c) ≤ 0 =⇒ lim+ ≤0 x −c x→c x −c The same will be true on the other end: if x is slightly less than c, f (x) ≤ f (c). This means f (x) − f (c) ≥0 x −c V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 20 / 32
  • 42. Sketch of proof of Fermat’s Theorem Suppose that f has a local maximum at c. If x is slightly greater than c, f (x) ≤ f (c). This means f (x) − f (c) f (x) − f (c) ≤ 0 =⇒ lim+ ≤0 x −c x→c x −c The same will be true on the other end: if x is slightly less than c, f (x) ≤ f (c). This means f (x) − f (c) f (x) − f (c) ≥ 0 =⇒ lim ≥0 x −c x→c − x −c V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 20 / 32
  • 43. Sketch of proof of Fermat’s Theorem Suppose that f has a local maximum at c. If x is slightly greater than c, f (x) ≤ f (c). This means f (x) − f (c) f (x) − f (c) ≤ 0 =⇒ lim+ ≤0 x −c x→c x −c The same will be true on the other end: if x is slightly less than c, f (x) ≤ f (c). This means f (x) − f (c) f (x) − f (c) ≥ 0 =⇒ lim ≥0 x −c x→c − x −c f (x) − f (c) Since the limit f (c) = lim exists, it must be 0. x→c x −c V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 20 / 32
  • 44. Meet the Mathematician: Pierre de Fermat 1601–1665 Lawyer and number theorist Proved many theorems, didn’t quite prove his last one V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 21 / 32
  • 45. Tangent: Fermat’s Last Theorem Plenty of solutions to x 2 + y 2 = z 2 among positive whole numbers (e.g., x = 3, y = 4, z = 5) V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 22 / 32
  • 46. Tangent: Fermat’s Last Theorem Plenty of solutions to x 2 + y 2 = z 2 among positive whole numbers (e.g., x = 3, y = 4, z = 5) No solutions to x 3 + y 3 = z 3 among positive whole numbers V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 22 / 32
  • 47. Tangent: Fermat’s Last Theorem Plenty of solutions to x 2 + y 2 = z 2 among positive whole numbers (e.g., x = 3, y = 4, z = 5) No solutions to x 3 + y 3 = z 3 among positive whole numbers Fermat claimed no solutions to x n + y n = z n but didn’t write down his proof V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 22 / 32
  • 48. Tangent: Fermat’s Last Theorem Plenty of solutions to x 2 + y 2 = z 2 among positive whole numbers (e.g., x = 3, y = 4, z = 5) No solutions to x 3 + y 3 = z 3 among positive whole numbers Fermat claimed no solutions to x n + y n = z n but didn’t write down his proof Not solved until 1998! (Taylor–Wiles) V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 22 / 32
  • 49. Outline Introduction The Extreme Value Theorem Fermat’s Theorem (not the last one) Tangent: Fermat’s Last Theorem The Closed Interval Method Examples V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 23 / 32
  • 50. Flowchart for placing extrema Thanks to Fermat Suppose f is a continuous function on the closed, bounded interval [a, b], and c is a global maximum point. c is a start local max Is f Is c an f is not no diff’ble at no endpoint? diff at c c? yes yes c = a or f (c) = 0 c = b V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 24 / 32
  • 51. The Closed Interval Method This means to find the maximum value of f on [a, b], we need to: Evaluate f at the endpoints a and b Evaluate f at the critical points or critical numbers x where either f (x) = 0 or f is not differentiable at x. The points with the largest function value are the global maximum points The points with the smallest or most negative function value are the global minimum points. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 25 / 32
  • 52. Outline Introduction The Extreme Value Theorem Fermat’s Theorem (not the last one) Tangent: Fermat’s Last Theorem The Closed Interval Method Examples V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 26 / 32
  • 53. Extreme values of a linear function Example Find the extreme values of f (x) = 2x − 5 on [−1, 2]. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 27 / 32
  • 54. Extreme values of a linear function Example Find the extreme values of f (x) = 2x − 5 on [−1, 2]. Solution Since f (x) = 2, which is never zero, we have no critical points and we need only investigate the endpoints: f (−1) = 2(−1) − 5 = −7 f (2) = 2(2) − 5 = −1 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 27 / 32
  • 55. Extreme values of a linear function Example Find the extreme values of f (x) = 2x − 5 on [−1, 2]. Solution Since f (x) = 2, which is never zero, we have no critical points and we need only investigate the endpoints: f (−1) = 2(−1) − 5 = −7 f (2) = 2(2) − 5 = −1 So The absolute minimum (point) is at −1; the minimum value is −7. The absolute maximum (point) is at 2; the maximum value is −1. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 27 / 32
  • 56. Extreme values of a quadratic function Example Find the extreme values of f (x) = x 2 − 1 on [−1, 2]. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 28 / 32
  • 57. Extreme values of a quadratic function Example Find the extreme values of f (x) = x 2 − 1 on [−1, 2]. Solution We have f (x) = 2x, which is zero when x = 0. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 28 / 32
  • 58. Extreme values of a quadratic function Example Find the extreme values of f (x) = x 2 − 1 on [−1, 2]. Solution We have f (x) = 2x, which is zero when x = 0. So our points to check are: f (−1) = f (0) = f (2) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 28 / 32
  • 59. Extreme values of a quadratic function Example Find the extreme values of f (x) = x 2 − 1 on [−1, 2]. Solution We have f (x) = 2x, which is zero when x = 0. So our points to check are: f (−1) = 0 f (0) = f (2) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 28 / 32
  • 60. Extreme values of a quadratic function Example Find the extreme values of f (x) = x 2 − 1 on [−1, 2]. Solution We have f (x) = 2x, which is zero when x = 0. So our points to check are: f (−1) = 0 f (0) = − 1 f (2) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 28 / 32
  • 61. Extreme values of a quadratic function Example Find the extreme values of f (x) = x 2 − 1 on [−1, 2]. Solution We have f (x) = 2x, which is zero when x = 0. So our points to check are: f (−1) = 0 f (0) = − 1 f (2) = 3 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 28 / 32
  • 62. Extreme values of a quadratic function Example Find the extreme values of f (x) = x 2 − 1 on [−1, 2]. Solution We have f (x) = 2x, which is zero when x = 0. So our points to check are: f (−1) = 0 f (0) = − 1 (absolute min) f (2) = 3 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 28 / 32
  • 63. Extreme values of a quadratic function Example Find the extreme values of f (x) = x 2 − 1 on [−1, 2]. Solution We have f (x) = 2x, which is zero when x = 0. So our points to check are: f (−1) = 0 f (0) = − 1 (absolute min) f (2) = 3 (absolute max) V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 28 / 32
  • 64. Extreme values of a cubic function Example Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2]. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 29 / 32
  • 65. Extreme values of a cubic function Example Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2]. Solution Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and x = 1. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 29 / 32
  • 66. Extreme values of a cubic function Example Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2]. Solution Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and x = 1. The values to check are f (−1) = f (0) = f (1) = f (2) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 29 / 32
  • 67. Extreme values of a cubic function Example Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2]. Solution Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and x = 1. The values to check are f (−1) = − 4 f (0) = f (1) = f (2) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 29 / 32
  • 68. Extreme values of a cubic function Example Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2]. Solution Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and x = 1. The values to check are f (−1) = − 4 f (0) = 1 f (1) = f (2) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 29 / 32
  • 69. Extreme values of a cubic function Example Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2]. Solution Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and x = 1. The values to check are f (−1) = − 4 f (0) = 1 f (1) = 0 f (2) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 29 / 32
  • 70. Extreme values of a cubic function Example Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2]. Solution Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and x = 1. The values to check are f (−1) = − 4 f (0) = 1 f (1) = 0 f (2) = 5 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 29 / 32
  • 71. Extreme values of a cubic function Example Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2]. Solution Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and x = 1. The values to check are f (−1) = − 4 (global min) f (0) = 1 f (1) = 0 f (2) = 5 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 29 / 32
  • 72. Extreme values of a cubic function Example Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2]. Solution Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and x = 1. The values to check are f (−1) = − 4 (global min) f (0) = 1 f (1) = 0 f (2) = 5 (global max) V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 29 / 32
  • 73. Extreme values of a cubic function Example Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2]. Solution Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and x = 1. The values to check are f (−1) = − 4 (global min) f (0) = 1 (local max) f (1) = 0 f (2) = 5 (global max) V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 29 / 32
  • 74. Extreme values of a cubic function Example Find the extreme values of f (x) = 2x 3 − 3x 2 + 1 on [−1, 2]. Solution Since f (x) = 6x 2 − 6x = 6x(x − 1), we have critical points at x = 0 and x = 1. The values to check are f (−1) = − 4 (global min) f (0) = 1 (local max) f (1) = 0 (local min) f (2) = 5 (global max) V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 29 / 32
  • 75. Extreme values of an algebraic function Example Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2]. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 30 / 32
  • 76. Extreme values of an algebraic function Example Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2]. Solution Write f (x) = x 5/3 + 2x 2/3 , then 5 4 1 f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4) 3 3 3 Thus f (−4/5) = 0 and f is not differentiable at 0. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 30 / 32
  • 77. Extreme values of an algebraic function Example Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2]. Solution Write f (x) = x 5/3 + 2x 2/3 , then 5 4 1 f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4) 3 3 3 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check are: f (−1) = f (−4/5) = f (0) = f (2) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 30 / 32
  • 78. Extreme values of an algebraic function Example Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2]. Solution Write f (x) = x 5/3 + 2x 2/3 , then 5 4 1 f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4) 3 3 3 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check are: f (−1) = 1 f (−4/5) = f (0) = f (2) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 30 / 32
  • 79. Extreme values of an algebraic function Example Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2]. Solution Write f (x) = x 5/3 + 2x 2/3 , then 5 4 1 f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4) 3 3 3 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check are: f (−1) = 1 f (−4/5) = 1.0341 f (0) = f (2) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 30 / 32
  • 80. Extreme values of an algebraic function Example Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2]. Solution Write f (x) = x 5/3 + 2x 2/3 , then 5 4 1 f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4) 3 3 3 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check are: f (−1) = 1 f (−4/5) = 1.0341 f (0) = 0 f (2) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 30 / 32
  • 81. Extreme values of an algebraic function Example Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2]. Solution Write f (x) = x 5/3 + 2x 2/3 , then 5 4 1 f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4) 3 3 3 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check are: f (−1) = 1 f (−4/5) = 1.0341 f (0) = 0 f (2) = 6.3496 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 30 / 32
  • 82. Extreme values of an algebraic function Example Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2]. Solution Write f (x) = x 5/3 + 2x 2/3 , then 5 4 1 f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4) 3 3 3 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check are: f (−1) = 1 f (−4/5) = 1.0341 f (0) = 0 (absolute min) f (2) = 6.3496 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 30 / 32
  • 83. Extreme values of an algebraic function Example Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2]. Solution Write f (x) = x 5/3 + 2x 2/3 , then 5 4 1 f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4) 3 3 3 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check are: f (−1) = 1 f (−4/5) = 1.0341 f (0) = 0 (absolute min) f (2) = 6.3496 (absolute max) V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 30 / 32
  • 84. Extreme values of an algebraic function Example Find the extreme values of f (x) = x 2/3 (x + 2) on [−1, 2]. Solution Write f (x) = x 5/3 + 2x 2/3 , then 5 4 1 f (x) = x 2/3 + x −1/3 = x −1/3 (5x + 4) 3 3 3 Thus f (−4/5) = 0 and f is not differentiable at 0. So our points to check are: f (−1) = 1 f (−4/5) = 1.0341 (relative max) f (0) = 0 (absolute min) f (2) = 6.3496 (absolute max) V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 30 / 32
  • 85. Extreme values of an algebraic function Example Find the extreme values of f (x) = 4 − x 2 on [−2, 1]. V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 31 / 32
  • 86. Extreme values of an algebraic function Example Find the extreme values of f (x) = 4 − x 2 on [−2, 1]. Solution x We have f (x) = − √ , which is zero when x = 0. (f is not 4 − x2 differentiable at ±2 as well.) V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 31 / 32
  • 87. Extreme values of an algebraic function Example Find the extreme values of f (x) = 4 − x 2 on [−2, 1]. Solution x We have f (x) = − √ , which is zero when x = 0. (f is not 4 − x2 differentiable at ±2 as well.) So our points to check are: f (−2) = f (0) = f (1) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 31 / 32
  • 88. Extreme values of an algebraic function Example Find the extreme values of f (x) = 4 − x 2 on [−2, 1]. Solution x We have f (x) = − √ , which is zero when x = 0. (f is not 4 − x2 differentiable at ±2 as well.) So our points to check are: f (−2) = 0 f (0) = f (1) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 31 / 32
  • 89. Extreme values of an algebraic function Example Find the extreme values of f (x) = 4 − x 2 on [−2, 1]. Solution x We have f (x) = − √ , which is zero when x = 0. (f is not 4 − x2 differentiable at ±2 as well.) So our points to check are: f (−2) = 0 f (0) = 2 f (1) = V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 31 / 32
  • 90. Extreme values of an algebraic function Example Find the extreme values of f (x) = 4 − x 2 on [−2, 1]. Solution x We have f (x) = − √ , which is zero when x = 0. (f is not 4 − x2 differentiable at ±2 as well.) So our points to check are: f (−2) = 0 f (0) = 2 √ f (1) = 3 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 31 / 32
  • 91. Extreme values of an algebraic function Example Find the extreme values of f (x) = 4 − x 2 on [−2, 1]. Solution x We have f (x) = − √ , which is zero when x = 0. (f is not 4 − x2 differentiable at ±2 as well.) So our points to check are: f (−2) = 0 (absolute min) f (0) = 2 √ f (1) = 3 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 31 / 32
  • 92. Extreme values of an algebraic function Example Find the extreme values of f (x) = 4 − x 2 on [−2, 1]. Solution x We have f (x) = − √ , which is zero when x = 0. (f is not 4 − x2 differentiable at ±2 as well.) So our points to check are: f (−2) = 0 (absolute min) f (0) = 2 (absolute max) √ f (1) = 3 V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 31 / 32
  • 93. Summary The Extreme Value Theorem: a continuous function on a closed interval must achieve its max and min Fermat’s Theorem: local extrema are critical points The Closed Interval Method: an algorithm for finding global extrema Show your work unless you want to end up like Fermat! V63.0121.002.2010Su, Calculus I (NYU) Section 4.1 Maximum and Minimum Values June 8, 2010 32 / 32