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.   V63.0121.001: Calculus I
    .                                                    Sec on 4.2: The Shapes of .
                                                                                   Curves   April 11, 2011


                                                                        Notes
                      Sec on 4.2
          Deriva ves and the Shapes of Curves
                            V63.0121.001: Calculus I
                          Professor Ma hew Leingang
                                   New York University


                                 April 11, 2011


    .
                                                                        .




                                                                        Notes
        Announcements

            Quiz 4 on Sec ons 3.3,
            3.4, 3.5, and 3.7 this
            week (April 14/15)
            Quiz 5 on Sec ons
            4.1–4.4 April 28/29
            Final Exam Thursday May
            12, 2:00–3:50pm



    .
                                                                        .




                                                                        Notes
        Objectives
          Use the deriva ve of a func on
          to determine the intervals along
          which the func on is increasing
          or decreasing (The
          Increasing/Decreasing Test)
          Use the First Deriva ve Test to
          classify cri cal points of a
          func on as local maxima, local
          minima, or neither.

    .
                                                                        .

                                                                                                      . 1
.
.   V63.0121.001: Calculus I
    .                                                                  Sec on 4.2: The Shapes of .
                                                                                                 Curves   April 11, 2011


                                                                                      Notes
        Outline
         Recall: The Mean Value Theorem
         Monotonicity
           The Increasing/Decreasing Test
           Finding intervals of monotonicity
           The First Deriva ve Test
         Concavity
            Defini ons
            Tes ng for Concavity
            The Second Deriva ve Test

    .
                                                                                      .




                                                                                      Notes
        Recall: The Mean Value Theorem
         Theorem (The Mean Value Theorem)
                                                                   c
         Let f be con nuous on [a, b]
         and differen able on (a, b).
         Then there exists a point c in
         (a, b) such that
                                                                         b
               f(b) − f(a)                               .
                           = f′ (c).                          a
                  b−a

         Another way to put this is that there exists a point c such that
                                f(b) = f(a) + f′ (c)(b − a)
    .
                                                                                      .




        Why the MVT is the MITC                                                       Notes
        Most Important Theorem In Calculus!
         Theorem
         Let f′ = 0 on an interval (a, b). Then f is constant on (a, b).

         Proof.
         Pick any points x and y in (a, b) with x < y. Then f is con nuous on
         [x, y] and differen able on (x, y). By MVT there exists a point z in
         (x, y) such that
                               f(y) = f(x) + f′ (z)(y − x)
         So f(y) = f(x). Since this is true for all x and y in (a, b), then f is
         constant.
    .
                                                                                      .

                                                                                                                    . 2
.
.   V63.0121.001: Calculus I
    .                                                               Sec on 4.2: The Shapes of .
                                                                                              Curves   April 11, 2011


                                                                                      Notes
        Outline
         Recall: The Mean Value Theorem
         Monotonicity
           The Increasing/Decreasing Test
           Finding intervals of monotonicity
           The First Deriva ve Test
         Concavity
            Defini ons
            Tes ng for Concavity
            The Second Deriva ve Test

    .
                                                                                      .




                                                                                      Notes
        Increasing Functions
         Defini on
         A func on f is increasing on the interval I if

                                        f(x) < f(y)

         whenever x and y are two points in I with x < y.

              An increasing func on “preserves order.”
              I could be bounded or infinite, open, closed, or
              half-open/half-closed.
              Write your own defini on (muta s mutandis) of decreasing,
              nonincreasing, nondecreasing
    .
                                                                                      .




                                                                                      Notes
        The Increasing/Decreasing Test
         Theorem (The Increasing/Decreasing Test)
         If f′ > 0 on an interval, then f is increasing on that interval. If f′ < 0
         on an interval, then f is decreasing on that interval.

         Proof.
         It works the same as the last theorem. Assume f′ (x) > 0 on an
         interval I. Pick two points x and y in I with x < y. We must show
         f(x) < f(y). By MVT there exists a point c in (x, y) such that

                              f(y) − f(x) = f′ (c)(y − x) > 0.

         So f(y) > f(x).
    .
                                                                                      .

                                                                                                                 . 3
.
.   V63.0121.001: Calculus I
    .                                                               Sec on 4.2: The Shapes of .
                                                                                              Curves   April 11, 2011


                                                                                   Notes
        Finding intervals of monotonicity I
         Example
         Find the intervals of monotonicity of f(x) = 2x − 5.

         Solu on
         f′ (x) = 2 is always posi ve, so f is increasing on (−∞, ∞).

         Example
         Describe the monotonicity of f(x) = arctan(x).

         Solu on
                            1
         Since f′ (x) =          is always posi ve, f(x) is always increasing.
    .                     1 + x2

                                                                                   .




                                                                                   Notes
        Finding intervals of monotonicity II
         Example
         Find the intervals of monotonicity of f(x) = x2 − 1.

         Solu on
              f′ (x) = 2x, which is posi ve when x > 0 and nega ve when x is.
              We can draw a number line:

                                      −       0      +         f′
                                              .
                                      ↘       0      ↗         f

    .
                                                                                   .




                                                                                   Notes
        Finding intervals of monotonicity II
         Example
         Find the intervals of monotonicity of f(x) = x2 − 1.

         Solu on

                                      −       0      +         f′
                                              .
                                      ↘       0      ↗         f

              So f is decreasing on (−∞, 0) and increasing on (0, ∞).
              In fact we can say f is decreasing on (−∞, 0] and increasing on
              [0, ∞)
    .
                                                                                   .

                                                                                                                 . 4
.
.   V63.0121.001: Calculus I
    .                                                               Sec on 4.2: The Shapes of .
                                                                                              Curves   April 11, 2011


                                                                                        Notes
        Finding intervals of monotonicity III
         Example
         Find the intervals of monotonicity of f(x) = x2/3 (x + 2).

         Solu on




    .
                                                                                        .




                                                                                        Notes
        The First Derivative Test
         Theorem (The First Deriva ve Test)
         Let f be con nuous on [a, b] and c a cri cal point of f in (a, b).
               If f′ changes from posi ve to nega ve at c, then c is a local
               maximum.
               If f′ changes from nega ve to posi ve at c, then c is a local
               minimum.
               If f′ (x) has the same sign on either side of c, then c is not a local
               extremum.


    .
                                                                                        .




                                                                                        Notes
        Outline
         Recall: The Mean Value Theorem
         Monotonicity
           The Increasing/Decreasing Test
           Finding intervals of monotonicity
           The First Deriva ve Test
         Concavity
            Defini ons
            Tes ng for Concavity
            The Second Deriva ve Test

    .
                                                                                        .

                                                                                                                 . 5
.
.   V63.0121.001: Calculus I
    .                                                            Sec on 4.2: The Shapes of .
                                                                                           Curves   April 11, 2011


                                                                                  Notes
        Concavity
          Defini on
          The graph of f is called concave upwards on an interval if it lies
          above all its tangents on that interval. The graph of f is called
          concave downwards on an interval if it lies below all its tangents on
          that interval.




                     .                                       .
                  concave up                        concave down
    .     We some mes say a concave up graph “holds water” and a concave
          down graph “spills water”.
                                                                                  .




                                                                                  Notes
        Synonyms for concavity

          Remark
              “concave up” = “concave upwards” = “convex”
              “concave down” = “concave downwards” = “concave”




    .
                                                                                  .




                                                                                  Notes
        Inflection points mean change in concavity
          Defini on
          A point P on a curve y = f(x) is called an inflec on point if f is
          con nuous at P and the curve changes from concave upward to
          concave downward at P (or vice versa).

                                        concave
                                           up
                                 inflec on point
                                           .
                                   concave
                                   down

    .
                                                                                  .

                                                                                                              . 6
.
.   V63.0121.001: Calculus I
    .                                                               Sec on 4.2: The Shapes of .
                                                                                              Curves   April 11, 2011


                                                                                        Notes
        Testing for Concavity

         Theorem (Concavity Test)

              If f′′ (x) > 0 for all x in an interval, then the graph of f is concave
              upward on that interval.
              If f′′ (x) < 0 for all x in an interval, then the graph of f is concave
              downward on that interval.




    .
                                                                                        .




                                                                                        Notes
        Testing for Concavity
         Proof.
         Suppose f′′ (x) > 0 on the interval I (which could be infinite). This
         means f′ is increasing on I. Let a and x be in I. The tangent line
         through (a, f(a)) is the graph of

                                L(x) = f(a) + f′ (a)(x − a)

         By MVT, there exists a c between a and x with

                                f(x) = f(a) + f′ (c)(x − a)

         Since f′ is increasing, f(x) > L(x).
    .
                                                                                        .




                                                                                        Notes
        Finding Intervals of Concavity I
         Example
         Find the intervals of concavity for the graph of f(x) = x3 + x2 .

         Solu on
              We have f′ (x) = 3x2 + 2x, so f′′ (x) = 6x + 2.
              This is nega ve when x < −1/3, posi ve when x > −1/3, and 0
              when x = −1/3
              So f is concave down on the open interval (−∞, −1/3), concave
              up on the open interval (−1/3, ∞), and has an inflec on point
              at the point (−1/3, 2/27)
    .
                                                                                        .

                                                                                                                 . 7
.
.   V63.0121.001: Calculus I
    .                                                               Sec on 4.2: The Shapes of .
                                                                                              Curves   April 11, 2011


                                                                                      Notes
        Finding Intervals of Concavity II
         Example
         Find the intervals of concavity of the graph of f(x) = x2/3 (x + 2).

         Solu on

         We have
                10 −1/3 4 −4/3
         f′′ (x) = x     − x
                 9         9
                2 −4/3
               = x     (5x − 2)
                9

    .
                                                                                      .




                                                                                      Notes
        The Second Derivative Test
         Theorem (The Second Deriva ve Test)
         Let f, f′ , and f′′ be con nuous on [a, b]. Let c be be a point in (a, b)
         with f′ (c) = 0.
               If f′′ (c) < 0, then c is a local maximum of f.
               If f′′ (c) > 0, then c is a local minimum of f.

         Remarks
              If f′′ (c) = 0, the second deriva ve test is inconclusive
              We look for zeroes of f′ and plug them into f′′ to determine if
              their f values are local extreme values.
    .
                                                                                      .




                                                                                      Notes
        Proof of the Second Derivative Test
         Proof.
         Suppose f′ (c) = 0 and f′′ (c) > 0.
               Since f′′ is con nuous,
               f′′ (x) > 0 for all x                +     +    +       f′′ = (f′ )′
               sufficiently close to c.                      .
                                                    ↗     c    ↗       f′
               Since f′′ = (f′ )′ , we know
                                                          0            f′
               f′ is increasing near c.
                                                          c            f


    .
                                                                                      .

                                                                                                                 . 8
.
.   V63.0121.001: Calculus I
    .                                                          Sec on 4.2: The Shapes of .
                                                                                         Curves   April 11, 2011


                                                                                Notes
        Proof of the Second Derivative Test
         Proof.
         Suppose f′ (c) = 0 and f′′ (c) > 0.

              Since f′ (c) = 0 and f′ is
              increasing, f′ (x) < 0 for x       +    +    +     f′′ = (f′ )′
                                                       .
              close to c and less than c,             c
                                                 ↗         ↗     f′
              and f′ (x) > 0 for x close
                                                 −    0    +     f′
              to c and more than c.
                                                      c          f


    .
                                                                                .




                                                                                Notes
        Proof of the Second Derivative Test
         Proof.
         Suppose f′ (c) = 0 and f′′ (c) > 0.

              This means f′ changes
              sign from nega ve to               + +       +     f′′ = (f′ )′
                                                     .
              posi ve at c, which                ↗ c       ↗     f′
              means (by the First
                                                 − 0       +     f′
              Deriva ve Test) that f has
              a local minimum at c.                 c
                                                 ↘ min     ↗     f


    .
                                                                                .




                                                                                Notes
        Using the Second Derivative Test I
         Example
         Find the local extrema of f(x) = x3 + x2 .

         Solu on
              f′ (x) = 3x2 + 2x = x(3x + 2) is 0 when x = 0 or x = −2/3.
              Remember f′′ (x) = 6x + 2
              Since f′′ (−2/3) = −2 < 0, −2/3 is a local maximum.
              Since f′′ (0) = 2 > 0, 0 is a local minimum.

    .
                                                                                .

                                                                                                            . 9
.
.   V63.0121.001: Calculus I
    .                                                             Sec on 4.2: The Shapes of .
                                                                                            Curves   April 11, 2011


                                                                                   Notes
        Using the Second Derivative Test II
         Example
         Find the local extrema of f(x) = x2/3 (x + 2)

         Solu on




    .
                                                                                   .




        Using the Second Derivative Test II                                        Notes
        Graph
         Graph of f(x) = x2/3 (x + 2):
                                            y



                                            .                        x




    .
                                                                                   .




                                                                                   Notes
        When the second derivative is zero
         Remark
              At inflec on points c, if f′ is differen able at c, then f′′ (c) = 0
              If f′′ (c) = 0, must f have an inflec on point at c?
         Consider these examples:

                        f(x) = x4        g(x) = −x4      h(x) = x3

         All of them have cri cal points at zero with a second deriva ve of
         zero. But the first has a local min at 0, the second has a local max at
         0, and the third has an inflec on point at 0. This is why we say 2DT
         has nothing to say when f′′ (c) = 0.
    .
                                                                                   .

                                                                                                               . 10
.
.   V63.0121.001: Calculus I
    .                                                           Sec on 4.2: The Shapes of .
                                                                                          Curves   April 11, 2011


                                                                               Notes
        When first and second derivative are zero
             func on                 deriva ves           graph    type
                                 ′       3   ′
                            f (x) = 4x , f (0) = 0
             f(x) = x4                                      .      min
                           f (x) = 12x2 , f′′ (0) = 0
                            ′′

                                                            .
                          g′ (x) = − 4x3 , g′ (0) = 0
            g(x) = −x4                                             max
                         g′′ (x) = − 12x2 , g′′ (0) = 0
                           h′ (x) = 3x2 , h′ (0) = 0
            h(x) = x3                                       .      infl.
                           h′′ (x) = 6x, h′′ (0) = 0

    .
                                                                               .




                                                                               Notes
        Summary

            Concepts: Mean Value Theorem, monotonicity, concavity
            Facts: deriva ves can detect monotonicity and concavity
            Techniques for drawing curves: the Increasing/Decreasing Test
            and the Concavity Test
            Techniques for finding extrema: the First Deriva ve Test and
            the Second Deriva ve Test



    .
                                                                               .




                                                                               Notes




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                                                                                                             . 11
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Lesson 20: Derivatives and the Shapes of Curves (handout)

  • 1. . V63.0121.001: Calculus I . Sec on 4.2: The Shapes of . Curves April 11, 2011 Notes Sec on 4.2 Deriva ves and the Shapes of Curves V63.0121.001: Calculus I Professor Ma hew Leingang New York University April 11, 2011 . . Notes Announcements Quiz 4 on Sec ons 3.3, 3.4, 3.5, and 3.7 this week (April 14/15) Quiz 5 on Sec ons 4.1–4.4 April 28/29 Final Exam Thursday May 12, 2:00–3:50pm . . Notes Objectives Use the deriva ve of a func on to determine the intervals along which the func on is increasing or decreasing (The Increasing/Decreasing Test) Use the First Deriva ve Test to classify cri cal points of a func on as local maxima, local minima, or neither. . . . 1 .
  • 2. . V63.0121.001: Calculus I . Sec on 4.2: The Shapes of . Curves April 11, 2011 Notes Outline Recall: The Mean Value Theorem Monotonicity The Increasing/Decreasing Test Finding intervals of monotonicity The First Deriva ve Test Concavity Defini ons Tes ng for Concavity The Second Deriva ve Test . . Notes Recall: The Mean Value Theorem Theorem (The Mean Value Theorem) c Let f be con nuous on [a, b] and differen able on (a, b). Then there exists a point c in (a, b) such that b f(b) − f(a) . = f′ (c). a b−a Another way to put this is that there exists a point c such that f(b) = f(a) + f′ (c)(b − a) . . Why the MVT is the MITC Notes Most Important Theorem In Calculus! Theorem Let f′ = 0 on an interval (a, b). Then f is constant on (a, b). Proof. Pick any points x and y in (a, b) with x < y. Then f is con nuous on [x, y] and differen able on (x, y). By MVT there exists a point z in (x, y) such that f(y) = f(x) + f′ (z)(y − x) So f(y) = f(x). Since this is true for all x and y in (a, b), then f is constant. . . . 2 .
  • 3. . V63.0121.001: Calculus I . Sec on 4.2: The Shapes of . Curves April 11, 2011 Notes Outline Recall: The Mean Value Theorem Monotonicity The Increasing/Decreasing Test Finding intervals of monotonicity The First Deriva ve Test Concavity Defini ons Tes ng for Concavity The Second Deriva ve Test . . Notes Increasing Functions Defini on A func on f is increasing on the interval I if f(x) < f(y) whenever x and y are two points in I with x < y. An increasing func on “preserves order.” I could be bounded or infinite, open, closed, or half-open/half-closed. Write your own defini on (muta s mutandis) of decreasing, nonincreasing, nondecreasing . . Notes The Increasing/Decreasing Test Theorem (The Increasing/Decreasing Test) If f′ > 0 on an interval, then f is increasing on that interval. If f′ < 0 on an interval, then f is decreasing on that interval. Proof. It works the same as the last theorem. Assume f′ (x) > 0 on an interval I. Pick two points x and y in I with x < y. We must show f(x) < f(y). By MVT there exists a point c in (x, y) such that f(y) − f(x) = f′ (c)(y − x) > 0. So f(y) > f(x). . . . 3 .
  • 4. . V63.0121.001: Calculus I . Sec on 4.2: The Shapes of . Curves April 11, 2011 Notes Finding intervals of monotonicity I Example Find the intervals of monotonicity of f(x) = 2x − 5. Solu on f′ (x) = 2 is always posi ve, so f is increasing on (−∞, ∞). Example Describe the monotonicity of f(x) = arctan(x). Solu on 1 Since f′ (x) = is always posi ve, f(x) is always increasing. . 1 + x2 . Notes Finding intervals of monotonicity II Example Find the intervals of monotonicity of f(x) = x2 − 1. Solu on f′ (x) = 2x, which is posi ve when x > 0 and nega ve when x is. We can draw a number line: − 0 + f′ . ↘ 0 ↗ f . . Notes Finding intervals of monotonicity II Example Find the intervals of monotonicity of f(x) = x2 − 1. Solu on − 0 + f′ . ↘ 0 ↗ f So f is decreasing on (−∞, 0) and increasing on (0, ∞). In fact we can say f is decreasing on (−∞, 0] and increasing on [0, ∞) . . . 4 .
  • 5. . V63.0121.001: Calculus I . Sec on 4.2: The Shapes of . Curves April 11, 2011 Notes Finding intervals of monotonicity III Example Find the intervals of monotonicity of f(x) = x2/3 (x + 2). Solu on . . Notes The First Derivative Test Theorem (The First Deriva ve Test) Let f be con nuous on [a, b] and c a cri cal point of f in (a, b). If f′ changes from posi ve to nega ve at c, then c is a local maximum. If f′ changes from nega ve to posi ve at c, then c is a local minimum. If f′ (x) has the same sign on either side of c, then c is not a local extremum. . . Notes Outline Recall: The Mean Value Theorem Monotonicity The Increasing/Decreasing Test Finding intervals of monotonicity The First Deriva ve Test Concavity Defini ons Tes ng for Concavity The Second Deriva ve Test . . . 5 .
  • 6. . V63.0121.001: Calculus I . Sec on 4.2: The Shapes of . Curves April 11, 2011 Notes Concavity Defini on The graph of f is called concave upwards on an interval if it lies above all its tangents on that interval. The graph of f is called concave downwards on an interval if it lies below all its tangents on that interval. . . concave up concave down . We some mes say a concave up graph “holds water” and a concave down graph “spills water”. . Notes Synonyms for concavity Remark “concave up” = “concave upwards” = “convex” “concave down” = “concave downwards” = “concave” . . Notes Inflection points mean change in concavity Defini on A point P on a curve y = f(x) is called an inflec on point if f is con nuous at P and the curve changes from concave upward to concave downward at P (or vice versa). concave up inflec on point . concave down . . . 6 .
  • 7. . V63.0121.001: Calculus I . Sec on 4.2: The Shapes of . Curves April 11, 2011 Notes Testing for Concavity Theorem (Concavity Test) If f′′ (x) > 0 for all x in an interval, then the graph of f is concave upward on that interval. If f′′ (x) < 0 for all x in an interval, then the graph of f is concave downward on that interval. . . Notes Testing for Concavity Proof. Suppose f′′ (x) > 0 on the interval I (which could be infinite). This means f′ is increasing on I. Let a and x be in I. The tangent line through (a, f(a)) is the graph of L(x) = f(a) + f′ (a)(x − a) By MVT, there exists a c between a and x with f(x) = f(a) + f′ (c)(x − a) Since f′ is increasing, f(x) > L(x). . . Notes Finding Intervals of Concavity I Example Find the intervals of concavity for the graph of f(x) = x3 + x2 . Solu on We have f′ (x) = 3x2 + 2x, so f′′ (x) = 6x + 2. This is nega ve when x < −1/3, posi ve when x > −1/3, and 0 when x = −1/3 So f is concave down on the open interval (−∞, −1/3), concave up on the open interval (−1/3, ∞), and has an inflec on point at the point (−1/3, 2/27) . . . 7 .
  • 8. . V63.0121.001: Calculus I . Sec on 4.2: The Shapes of . Curves April 11, 2011 Notes Finding Intervals of Concavity II Example Find the intervals of concavity of the graph of f(x) = x2/3 (x + 2). Solu on We have 10 −1/3 4 −4/3 f′′ (x) = x − x 9 9 2 −4/3 = x (5x − 2) 9 . . Notes The Second Derivative Test Theorem (The Second Deriva ve Test) Let f, f′ , and f′′ be con nuous on [a, b]. Let c be be a point in (a, b) with f′ (c) = 0. If f′′ (c) < 0, then c is a local maximum of f. If f′′ (c) > 0, then c is a local minimum of f. Remarks If f′′ (c) = 0, the second deriva ve test is inconclusive We look for zeroes of f′ and plug them into f′′ to determine if their f values are local extreme values. . . Notes Proof of the Second Derivative Test Proof. Suppose f′ (c) = 0 and f′′ (c) > 0. Since f′′ is con nuous, f′′ (x) > 0 for all x + + + f′′ = (f′ )′ sufficiently close to c. . ↗ c ↗ f′ Since f′′ = (f′ )′ , we know 0 f′ f′ is increasing near c. c f . . . 8 .
  • 9. . V63.0121.001: Calculus I . Sec on 4.2: The Shapes of . Curves April 11, 2011 Notes Proof of the Second Derivative Test Proof. Suppose f′ (c) = 0 and f′′ (c) > 0. Since f′ (c) = 0 and f′ is increasing, f′ (x) < 0 for x + + + f′′ = (f′ )′ . close to c and less than c, c ↗ ↗ f′ and f′ (x) > 0 for x close − 0 + f′ to c and more than c. c f . . Notes Proof of the Second Derivative Test Proof. Suppose f′ (c) = 0 and f′′ (c) > 0. This means f′ changes sign from nega ve to + + + f′′ = (f′ )′ . posi ve at c, which ↗ c ↗ f′ means (by the First − 0 + f′ Deriva ve Test) that f has a local minimum at c. c ↘ min ↗ f . . Notes Using the Second Derivative Test I Example Find the local extrema of f(x) = x3 + x2 . Solu on f′ (x) = 3x2 + 2x = x(3x + 2) is 0 when x = 0 or x = −2/3. Remember f′′ (x) = 6x + 2 Since f′′ (−2/3) = −2 < 0, −2/3 is a local maximum. Since f′′ (0) = 2 > 0, 0 is a local minimum. . . . 9 .
  • 10. . V63.0121.001: Calculus I . Sec on 4.2: The Shapes of . Curves April 11, 2011 Notes Using the Second Derivative Test II Example Find the local extrema of f(x) = x2/3 (x + 2) Solu on . . Using the Second Derivative Test II Notes Graph Graph of f(x) = x2/3 (x + 2): y . x . . Notes When the second derivative is zero Remark At inflec on points c, if f′ is differen able at c, then f′′ (c) = 0 If f′′ (c) = 0, must f have an inflec on point at c? Consider these examples: f(x) = x4 g(x) = −x4 h(x) = x3 All of them have cri cal points at zero with a second deriva ve of zero. But the first has a local min at 0, the second has a local max at 0, and the third has an inflec on point at 0. This is why we say 2DT has nothing to say when f′′ (c) = 0. . . . 10 .
  • 11. . V63.0121.001: Calculus I . Sec on 4.2: The Shapes of . Curves April 11, 2011 Notes When first and second derivative are zero func on deriva ves graph type ′ 3 ′ f (x) = 4x , f (0) = 0 f(x) = x4 . min f (x) = 12x2 , f′′ (0) = 0 ′′ . g′ (x) = − 4x3 , g′ (0) = 0 g(x) = −x4 max g′′ (x) = − 12x2 , g′′ (0) = 0 h′ (x) = 3x2 , h′ (0) = 0 h(x) = x3 . infl. h′′ (x) = 6x, h′′ (0) = 0 . . Notes Summary Concepts: Mean Value Theorem, monotonicity, concavity Facts: deriva ves can detect monotonicity and concavity Techniques for drawing curves: the Increasing/Decreasing Test and the Concavity Test Techniques for finding extrema: the First Deriva ve Test and the Second Deriva ve Test . . Notes . . . 11 .