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Sections 3.1–3.2
 Exponential and Logarithmic Functions

                    V63.0121.041, Calculus I

                         New York University


                        October 20, 2010


Announcements

   Midterm is graded and scores are on blackboard. Should get it
   back in recitation.
   There is WebAssign due Monday/Tuesday next week.

                                               .   .   .   .   .   .
Announcements




         Midterm is graded and
         scores are on blackboard.
         Should get it back in
         recitation.
         There is WebAssign due
         Monday/Tuesday next
         week.




                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       2 / 37
Objectives for Sections 3.1 and 3.2




         Know the definition of an
         exponential function
         Know the properties of
         exponential functions
         Understand and apply the
         laws of logarithms,
         including the change of
         base formula.




                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       3 / 37
Outline


Definition of exponential functions

Properties of exponential Functions

The number e and the natural exponential function
  Compound Interest
  The number e
  A limit

Logarithmic Functions



                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       4 / 37
Derivation of exponential functions


Definition
If a is a real number and n is a positive whole number, then

                                      an = a · a · · · · · a
                                                    n factors




                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       5 / 37
Derivation of exponential functions


Definition
If a is a real number and n is a positive whole number, then

                                      an = a · a · · · · · a
                                                    n factors



Examples

      23 = 2 · 2 · 2 = 8
      34 = 3 · 3 · 3 · 3 = 81
      (−1)5 = (−1)(−1)(−1)(−1)(−1) = −1


                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       5 / 37
Anatomy of a power




Definition
A power is an expression of the form ab .
      The number a is called the base.
      The number b is called the exponent.




                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       6 / 37
Fact
If a is a real number, then
      ax+y = ax ay (sums to products)
               ax
      ax−y = y
               a
      (ax )y = axy
      (ab)x = ax bx
whenever all exponents are positive whole numbers.




                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       7 / 37
Fact
If a is a real number, then
      ax+y = ax ay (sums to products)
               ax
      ax−y = y (differences to quotients)
               a
      (ax )y = axy
      (ab)x = ax bx
whenever all exponents are positive whole numbers.




                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       7 / 37
Fact
If a is a real number, then
      ax+y = ax ay (sums to products)
               ax
      ax−y = y (differences to quotients)
               a
      (ax )y = axy (repeated exponentiation to multiplied powers)
      (ab)x = ax bx
whenever all exponents are positive whole numbers.




                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       7 / 37
Fact
If a is a real number, then
      ax+y = ax ay (sums to products)
               ax
      ax−y = y (differences to quotients)
               a
      (ax )y = axy (repeated exponentiation to multiplied powers)
      (ab)x = ax bx (power of product is product of powers)
whenever all exponents are positive whole numbers.




                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       7 / 37
Fact
If a is a real number, then
      ax+y = ax ay (sums to products)
               ax
      ax−y = y (differences to quotients)
               a
      (ax )y = axy (repeated exponentiation to multiplied powers)
      (ab)x = ax bx (power of product is product of powers)
whenever all exponents are positive whole numbers.




                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       7 / 37
Fact
If a is a real number, then
      ax+y = ax ay (sums to products)
               ax
      ax−y = y (differences to quotients)
               a
      (ax )y = axy (repeated exponentiation to multiplied powers)
      (ab)x = ax bx (power of product is product of powers)
whenever all exponents are positive whole numbers.

Proof.
Check for yourself:

             ax+y = a · a · · · · · a = a · a · · · · · a · a · a · · · · · a = ax ay
                           x + y factors           x factors            y factors



                                                                             .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)     Sections 3.1–3.2 Exponential Functions               October 20, 2010       7 / 37
Let's be conventional

      The desire that these properties remain true gives us conventions
      for ax when x is not a positive whole number.




                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       8 / 37
Let's be conventional

      The desire that these properties remain true gives us conventions
      for ax when x is not a positive whole number.
      For example, what should a0 be? We cannot write down zero a’s
      and multiply them together. But we would want this to be true:

                                            !
                              an = an+0 = an · a0




                                                                            .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)    Sections 3.1–3.2 Exponential Functions               October 20, 2010       8 / 37
Let's be conventional

      The desire that these properties remain true gives us conventions
      for ax when x is not a positive whole number.
      For example, what should a0 be? We cannot write down zero a’s
      and multiply them together. But we would want this to be true:

                                           !                                   !   an
                              an = an+0 = an · a0 =⇒ a0 =                             =1
                                                                                   an
      (The equality with the exclamation point is what we want.)




                                                                           .       .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions                   October 20, 2010       8 / 37
Let's be conventional

      The desire that these properties remain true gives us conventions
      for ax when x is not a positive whole number.
      For example, what should a0 be? We cannot write down zero a’s
      and multiply them together. But we would want this to be true:

                                           !                                   !   an
                              an = an+0 = an · a0 =⇒ a0 =                             =1
                                                                                   an
      (The equality with the exclamation point is what we want.)

Definition
If a ̸= 0, we define a0 = 1.



                                                                           .       .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions                   October 20, 2010       8 / 37
Let's be conventional

      The desire that these properties remain true gives us conventions
      for ax when x is not a positive whole number.
      For example, what should a0 be? We cannot write down zero a’s
      and multiply them together. But we would want this to be true:

                                           !                                   !   an
                              an = an+0 = an · a0 =⇒ a0 =                             =1
                                                                                   an
      (The equality with the exclamation point is what we want.)

Definition
If a ̸= 0, we define a0 = 1.

      Notice 00 remains undefined (as a limit form, it’s indeterminate).

                                                                           .       .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions                   October 20, 2010       8 / 37
Conventions for negative exponents
If n ≥ 0, we want

                         an+(−n) = an · a−n
                                  !




                                                                           .   .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       9 / 37
Conventions for negative exponents
If n ≥ 0, we want

                                                                           a0    1
                         an+(−n) = an · a−n =⇒ a−n =
                                  !                                 !
                                                                             n
                                                                               = n
                                                                           a    a




                                                                           .   .     .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions                 October 20, 2010       9 / 37
Conventions for negative exponents
If n ≥ 0, we want

                                                                           a0    1
                         an+(−n) = an · a−n =⇒ a−n =
                                  !                                 !
                                                                             n
                                                                               = n
                                                                           a    a


Definition
                                                               1
If n is a positive integer, we define a−n =                       .
                                                               an




                                                                           .   .     .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions                 October 20, 2010       9 / 37
Conventions for negative exponents
If n ≥ 0, we want

                                                                           a0    1
                         an+(−n) = an · a−n =⇒ a−n =
                                  !                                 !
                                                                             n
                                                                               = n
                                                                           a    a


Definition
                                                               1
If n is a positive integer, we define a−n =                       .
                                                               an

Fact
                                   1
      The convention that a−n =      “works” for negative n as well.
                                  an
                                                am
      If m and n are any integers, then am−n = n .
                                                 a

                                                                           .   .     .        .      .      .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions                 October 20, 2010       9 / 37
Conventions for fractional exponents

If q is a positive integer, we want
                                       !
                              (a1/q )q = a1 = a




                                                                            .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)    Sections 3.1–3.2 Exponential Functions               October 20, 2010   10 / 37
Conventions for fractional exponents

If q is a positive integer, we want
                                       !                                        !   √
                              (a1/q )q = a1 = a =⇒ a1/q =                           q
                                                                                      a




                                                                            .         .   .         .       .    .

 V63.0121.041, Calculus I (NYU)    Sections 3.1–3.2 Exponential Functions                     October 20, 2010   10 / 37
Conventions for fractional exponents

If q is a positive integer, we want
                                       !                                        !   √
                              (a1/q )q = a1 = a =⇒ a1/q =                           q
                                                                                      a



Definition
                                                                √
If q is a positive integer, we define a1/q =                    q
                                                                  a. We must have a ≥ 0 if q
is even.




                                                                            .         .   .         .       .    .

 V63.0121.041, Calculus I (NYU)    Sections 3.1–3.2 Exponential Functions                     October 20, 2010   10 / 37
Conventions for fractional exponents

If q is a positive integer, we want
                                       !                                        !   √
                              (a1/q )q = a1 = a =⇒ a1/q =                           q
                                                                                      a



Definition
                                             √
If q is a positive integer, we define a1/q = q a. We must have a ≥ 0 if q
is even.
             √q
                      ( √ )p
Notice that ap = q a . So we can unambiguously say

                                  ap/q = (ap )1/q = (a1/q )p



                                                                            .         .   .         .       .    .

 V63.0121.041, Calculus I (NYU)    Sections 3.1–3.2 Exponential Functions                     October 20, 2010   10 / 37
Conventions for irrational exponents



      So ax is well-defined if a is positive and x is rational.
      What about irrational powers?




                                                                           .   .   .         .      .     .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   11 / 37
Conventions for irrational exponents



      So ax is well-defined if a is positive and x is rational.
      What about irrational powers?

Definition
Let a > 0. Then
                                         ax =        lim ar
                                                     r→x
                                                 r rational




                                                                           .   .   .         .      .     .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   11 / 37
Conventions for irrational exponents



      So ax is well-defined if a is positive and x is rational.
      What about irrational powers?

Definition
Let a > 0. Then
                                         ax =        lim ar
                                                     r→x
                                                 r rational


In other words, to approximate ax for irrational x, take r close to x but
rational and compute ar .



                                                                           .   .   .         .      .     .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   11 / 37
Approximating a power with an irrational exponent



                           r                               2r
                           3                      23
                                                  √ =8
                                                  10
                         3.1         231/10     = √ 31 ≈ 8.57419
                                                     2
                                                     100
                        3.14      2314/100 =            √2314 ≈ 8.81524
                                                     1000
                       3.141 23141/1000 =                 23141 ≈ 8.82135
The limit (numerically approximated is)

                                         2π ≈ 8.82498




                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   12 / 37
Graphs of various exponential functions
                                                    y
                                                    .




                                                     .                                                    x
                                                                                                          .
                                                                           .   .   .         .       .        .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       13 / 37
Graphs of various exponential functions
                                                    y
                                                    .




                                                                                                          . = 1x
                                                                                                          y

                                                     .                                                    x
                                                                                                          .
                                                                           .   .   .         .       .        .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       13 / 37
Graphs of various exponential functions
                                                    y
                                                    .
                                                                                   . = 2x
                                                                                   y




                                                                                                            . = 1x
                                                                                                            y

                                                     .                                                      x
                                                                                                            .
                                                                           .   .     .         .       .        .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions                 October 20, 2010       13 / 37
Graphs of various exponential functions
                                                    y
                                                    .
                                                                           . = 3x. = 2x
                                                                           y     y




                                                                                                          . = 1x
                                                                                                          y

                                                     .                                                    x
                                                                                                          .
                                                                           .   .   .         .       .        .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       13 / 37
Graphs of various exponential functions
                                                    y
                                                    .
                                                              . = 10x= 3x. = 2x
                                                              y    y
                                                                   .     y




                                                                                                          . = 1x
                                                                                                          y

                                                     .                                                    x
                                                                                                          .
                                                                           .   .   .         .       .        .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       13 / 37
Graphs of various exponential functions
                                                    y
                                                    .
                                                              . = 10x= 3x. = 2x
                                                              y    y
                                                                   .     y                               . = 1.5x
                                                                                                         y




                                                                                                          . = 1x
                                                                                                          y

                                                     .                                                    x
                                                                                                          .
                                                                           .   .   .         .       .        .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       13 / 37
Graphs of various exponential functions
                                                    y
                                                    .
             . = (1/2)x
             y                                                . = 10x= 3x. = 2x
                                                              y    y
                                                                   .     y                               . = 1.5x
                                                                                                         y




                                                                                                          . = 1x
                                                                                                          y

                                                     .                                                    x
                                                                                                          .
                                                                           .   .   .         .       .        .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       13 / 37
Graphs of various exponential functions
                                  x
                                                        y
                                                        .
             . = (1/2)x (1/3)
             y     y
                   . =                                            . = 10x= 3x. = 2x
                                                                  y    y
                                                                       .     y                               . = 1.5x
                                                                                                             y




                                                                                                              . = 1x
                                                                                                              y

                                                         .                                                    x
                                                                                                              .
                                                                               .   .   .         .       .        .

 V63.0121.041, Calculus I (NYU)       Sections 3.1–3.2 Exponential Functions               October 20, 2010       13 / 37
Graphs of various exponential functions
                                                    y
                                                    .
             . = (1/2)x (1/3)
             y     y
                   . =            x
                                                 . = (1/10)x. = 10x= 3x. = 2x
                                                 y          y    y
                                                                 .     y                                     . = 1.5x
                                                                                                             y




                                                                                                              . = 1x
                                                                                                              y

                                                         .                                                    x
                                                                                                              .
                                                                               .   .   .         .       .        .

 V63.0121.041, Calculus I (NYU)       Sections 3.1–3.2 Exponential Functions               October 20, 2010       13 / 37
Graphs of various exponential functions
                                                y
                                                .
             y      yx
            .. = ((1/2)x (1/3)x
            y = 2/. )=
                    3                        . = (1/10)x. = 10x= 3x. = 2x
                                             y          y    y
                                                             .     y                                     . = 1.5x
                                                                                                         y




                                                                                                          . = 1x
                                                                                                          y

                                                     .                                                    x
                                                                                                          .
                                                                           .   .   .         .       .        .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010       13 / 37
Outline


Definition of exponential functions

Properties of exponential Functions

The number e and the natural exponential function
  Compound Interest
  The number e
  A limit

Logarithmic Functions



                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   14 / 37
Properties of exponential Functions
.
Theorem
If a > 0 and a ̸= 1, then f(x) = ax is a continuous function with domain
(−∞, ∞) and range (0, ∞). In particular, ax > 0 for all x. For any real numbers
x and y, and positive numbers a and b we have
        ax+y = ax ay
                 ax
        ax−y = y
                 a
        (ax )y = axy
        (ab)x = ax bx

Proof.

        This is true for positive integer exponents by natural definition
        Our conventional definitions make these true for rational exponents
        Our limit definition make these for irrational exponents, too

.
                                                                              .   .   .         .       .    .

    V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   15 / 37
Properties of exponential Functions
.
Theorem
If a > 0 and a ̸= 1, then f(x) = ax is a continuous function with domain
(−∞, ∞) and range (0, ∞). In particular, ax > 0 for all x. For any real numbers
x and y, and positive numbers a and b we have
        ax+y = ax ay
                 ax
        ax−y = y (negative exponents mean reciprocals)
                 a
        (ax )y = axy
        (ab)x = ax bx

Proof.

        This is true for positive integer exponents by natural definition
        Our conventional definitions make these true for rational exponents
        Our limit definition make these for irrational exponents, too

.
                                                                              .   .   .         .       .    .

    V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   15 / 37
Properties of exponential Functions
.
Theorem
If a > 0 and a ̸= 1, then f(x) = ax is a continuous function with domain
(−∞, ∞) and range (0, ∞). In particular, ax > 0 for all x. For any real numbers
x and y, and positive numbers a and b we have
        ax+y = ax ay
                 ax
        ax−y = y (negative exponents mean reciprocals)
                 a
        (ax )y = axy (fractional exponents mean roots)
        (ab)x = ax bx

Proof.

        This is true for positive integer exponents by natural definition
        Our conventional definitions make these true for rational exponents
        Our limit definition make these for irrational exponents, too

.
                                                                              .   .   .         .       .    .

    V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   15 / 37
Simplifying exponential expressions
Example
Simplify: 82/3




                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   16 / 37
Simplifying exponential expressions
Example
Simplify: 82/3

Solution
                  √
                  3               √
      82/3 =          82 =
                                  3
                                    64 = 4




                                                                               .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)       Sections 3.1–3.2 Exponential Functions               October 20, 2010   16 / 37
Simplifying exponential expressions
Example
Simplify: 82/3

Solution
              √3   √
      82/3 = 82 = 64 = 4
                    3

          ( √ )2
              8 = 22 = 4.
            3
      Or,




                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   16 / 37
Simplifying exponential expressions
Example
Simplify: 82/3

Solution
              √3   √
      82/3 = 82 = 64 = 4
                    3

          ( √ )2
              8 = 22 = 4.
            3
      Or,


Example
               √
                8
Simplify:
              21/2



                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   16 / 37
Simplifying exponential expressions
Example
Simplify: 82/3

Solution
                 √3   √
         82/3 = 82 = 64 = 4
                       3

             ( √ )2
                 8 = 22 = 4.
               3
         Or,


Example
                  √
                   8
Simplify:
                 21/2

Answer
2
                                                                              .   .   .         .       .    .

    V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   16 / 37
Limits of exponential functions



Fact (Limits of exponential                                                          y
                                                                                     .
functions)                                            . = (= 2()1/32/3)x
                                                      y . 1/ =x( )x
                                                         y .
                                                           y                        y    y = x . 3x y
                                                                                    . = (. /10)10x= 2x. =
                                                                                         1 . =
                                                                                             y y

      If a > 1, then lim ax = ∞
                             x→∞
      and lim ax = 0
             x→−∞
      If 0 < a < 1, then
       lim ax = 0 and                                                                                               y
                                                                                                                    . =
      x→∞
        lim a = ∞ x                                                                  .                              x
                                                                                                                    .
      x→−∞




                                                                            .   .        .         .       .    .

 V63.0121.041, Calculus I (NYU)    Sections 3.1–3.2 Exponential Functions                    October 20, 2010   17 / 37
Outline


Definition of exponential functions

Properties of exponential Functions

The number e and the natural exponential function
  Compound Interest
  The number e
  A limit

Logarithmic Functions



                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   18 / 37
Compounded Interest

Question
Suppose you save $100 at 10% annual interest, with interest
compounded once a year. How much do you have
      After one year?
      After two years?
      after t years?




                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   19 / 37
Compounded Interest

Question
Suppose you save $100 at 10% annual interest, with interest
compounded once a year. How much do you have
      After one year?
      After two years?
      after t years?

Answer

      $100 + 10% = $110




                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   19 / 37
Compounded Interest

Question
Suppose you save $100 at 10% annual interest, with interest
compounded once a year. How much do you have
      After one year?
      After two years?
      after t years?

Answer

      $100 + 10% = $110
      $110 + 10% = $110 + $11 = $121



                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   19 / 37
Compounded Interest

Question
Suppose you save $100 at 10% annual interest, with interest
compounded once a year. How much do you have
      After one year?
      After two years?
      after t years?

Answer

      $100 + 10% = $110
      $110 + 10% = $110 + $11 = $121
      $100(1.1)t .

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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   19 / 37
Compounded Interest: quarterly

Question
Suppose you save $100 at 10% annual interest, with interest
compounded four times a year. How much do you have
      After one year?
      After two years?
      after t years?




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   20 / 37
Compounded Interest: quarterly

Question
Suppose you save $100 at 10% annual interest, with interest
compounded four times a year. How much do you have
      After one year?
      After two years?
      after t years?

Answer

      $100(1.025)4 = $110.38,




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   20 / 37
Compounded Interest: quarterly

Question
Suppose you save $100 at 10% annual interest, with interest
compounded four times a year. How much do you have
      After one year?
      After two years?
      after t years?

Answer

      $100(1.025)4 = $110.38, not $100(1.1)4 !




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   20 / 37
Compounded Interest: quarterly

Question
Suppose you save $100 at 10% annual interest, with interest
compounded four times a year. How much do you have
      After one year?
      After two years?
      after t years?

Answer

      $100(1.025)4 = $110.38, not $100(1.1)4 !
      $100(1.025)8 = $121.84



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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   20 / 37
Compounded Interest: quarterly

Question
Suppose you save $100 at 10% annual interest, with interest
compounded four times a year. How much do you have
      After one year?
      After two years?
      after t years?

Answer

      $100(1.025)4 = $110.38, not $100(1.1)4 !
      $100(1.025)8 = $121.84
      $100(1.025)4t .

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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   20 / 37
Compounded Interest: monthly




Question
Suppose you save $100 at 10% annual interest, with interest
compounded twelve times a year. How much do you have after t
years?




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   21 / 37
Compounded Interest: monthly




Question
Suppose you save $100 at 10% annual interest, with interest
compounded twelve times a year. How much do you have after t
years?

Answer
$100(1 + 10%/12)12t




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   21 / 37
Compounded Interest: general



Question
Suppose you save P at interest rate r, with interest compounded n
times a year. How much do you have after t years?




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   22 / 37
Compounded Interest: general



Question
Suppose you save P at interest rate r, with interest compounded n
times a year. How much do you have after t years?

Answer

                                            (    r )nt
                                    B(t) = P 1 +
                                                 n




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   22 / 37
Compounded Interest: continuous


Question
Suppose you save P at interest rate r, with interest compounded every
instant. How much do you have after t years?




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   23 / 37
Compounded Interest: continuous


Question
Suppose you save P at interest rate r, with interest compounded every
instant. How much do you have after t years?

Answer


                                  (                (      )
                                      r )nt             1 rnt
                    B(t) = lim P 1 +        = lim P 1 +
                          n→∞         n      n→∞        n
                             [      (      )n ]rt
                                         1
                         =P     lim 1 +
                               n→∞       n
                                  independent of P, r, or t


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 V63.0121.041, Calculus I (NYU)    Sections 3.1–3.2 Exponential Functions               October 20, 2010   23 / 37
The magic number



Definition
                                           (      )
                                                1 n
                                    e = lim 1 +
                                       n→∞      n




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   24 / 37
The magic number



Definition
                                           (      )
                                                1 n
                                    e = lim 1 +
                                       n→∞      n

So now continuously-compounded interest can be expressed as

                                           B(t) = Pert .




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   24 / 37
Existence of e
See Appendix B




                                                                                   (      )
                                                                                        1 n
                                                                      n              1+
                                                                                        n
                                                                      1            2
                                                                      2            2.25




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions                October 20, 2010   25 / 37
Existence of e
See Appendix B




                                                                                   (      )
                                                                                        1 n
                                                                      n              1+
                                                                                        n
                                                                      1            2
                                                                      2            2.25
                                                                      3            2.37037




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions                October 20, 2010   25 / 37
Existence of e
See Appendix B




                                                                                   (      )
                                                                                        1 n
                                                                      n              1+
                                                                                        n
                                                                      1            2
                                                                      2            2.25
                                                                      3            2.37037
                                                                      10           2.59374




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions                October 20, 2010   25 / 37
Existence of e
See Appendix B




                                                                                   (      )
                                                                                        1 n
                                                                      n              1+
                                                                                        n
                                                                      1            2
                                                                      2            2.25
                                                                      3            2.37037
                                                                      10           2.59374
                                                                      100          2.70481




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions                October 20, 2010   25 / 37
Existence of e
See Appendix B




                                                                           (      )
                                                                                1 n
                                                                      n      1+
                                                                                n
                                                                      1    2
                                                                      2    2.25
                                                                      3    2.37037
                                                                      10   2.59374
                                                                      100  2.70481
                                                                      1000 2.71692




                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   25 / 37
Existence of e
See Appendix B




                                                                           (      )
                                                                                1 n
                                                                      n      1+
                                                                                n
                                                                      1    2
                                                                      2    2.25
                                                                      3    2.37037
                                                                      10   2.59374
                                                                      100  2.70481
                                                                      1000 2.71692
                                                                      106  2.71828




                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   25 / 37
Existence of e
See Appendix B




                                                                           (      )
                                                                                1 n
                                                                      n      1+
       We can experimentally                                                    n
       verify that this number                                        1    2
       exists and is                                                  2    2.25
                                                                      3    2.37037
       e ≈ 2.718281828459045 . . .
                                                                      10   2.59374
                                                                      100  2.70481
                                                                      1000 2.71692
                                                                      106  2.71828




                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   25 / 37
Existence of e
See Appendix B




                                                                           (      )
                                                                                1 n
                                                                      n      1+
       We can experimentally                                                    n
       verify that this number                                        1    2
       exists and is                                                  2    2.25
                                                                      3    2.37037
       e ≈ 2.718281828459045 . . .
                                                                      10   2.59374
       e is irrational                                                100  2.70481
                                                                      1000 2.71692
                                                                      106  2.71828




                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   25 / 37
Existence of e
See Appendix B




                                                                           (      )
                                                                                1 n
                                                                      n      1+
       We can experimentally                                                    n
       verify that this number                                        1    2
       exists and is                                                  2    2.25
                                                                      3    2.37037
       e ≈ 2.718281828459045 . . .
                                                                      10   2.59374
       e is irrational                                                100  2.70481
                                                                      1000 2.71692
       e is transcendental
                                                                      106  2.71828




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   25 / 37
Meet the Mathematician: Leonhard Euler



       Born in Switzerland, lived
       in Prussia (Germany) and
       Russia
       Eyesight trouble all his life,
       blind from 1766 onward
       Hundreds of contributions
       to calculus, number theory,
       graph theory, fluid
       mechanics, optics, and
       astronomy

                                                                   Leonhard Paul Euler
                                                                    Swiss, 1707–1783
                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   26 / 37
A limit
.
Question
                  eh − 1
What is lim              ?
              h→0    h




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    V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   27 / 37
A limit
.
Question
                  eh − 1
What is lim              ?
              h→0    h

Answer

        e = lim → ∞ (1 + 1/n)n = lim (1 + h)1/h . So for a small h, e ≈ (1 + h)1/h .
                n                          h→0
        So                                    [          ]h
                                     eh − 1    (1 + h)1/h − 1
                                            ≈                 =1
                                        h             h




.                                                                             .   .   .         .       .    .

    V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   27 / 37
A limit
.
Question
                   eh − 1
What is lim               ?
               h→0    h

Answer

        e = lim → ∞ (1 + 1/n)n = lim (1 + h)1/h . So for a small h, e ≈ (1 + h)1/h .
                n                          h→0
        So                                    [          ]h
                                     eh − 1    (1 + h)1/h − 1
                                            ≈                 =1
                                        h             h

                                 eh − 1
        It follows that lim             = 1.
                             h→0    h
                                                             2h − 1
        This can be used to characterize e: lim                     = 0.693 · · · < 1 and
                                                         h→0    h
            3h − 1
         lim       = 1.099 · · · > 1
        h→0    h
.                                                                             .   .   .         .       .    .

    V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   27 / 37
Outline


Definition of exponential functions

Properties of exponential Functions

The number e and the natural exponential function
  Compound Interest
  The number e
  A limit

Logarithmic Functions



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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   28 / 37
Logarithms

Definition

      The base a logarithm loga x is the inverse of the function ax

                                     y = loga x ⇐⇒ x = ay

      The natural logarithm ln x is the inverse of ex . So
      y = ln x ⇐⇒ x = ey .




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   29 / 37
Logarithms

Definition

      The base a logarithm loga x is the inverse of the function ax

                                     y = loga x ⇐⇒ x = ay

      The natural logarithm ln x is the inverse of ex . So
      y = ln x ⇐⇒ x = ey .


Facts

 (i) loga (x1 · x2 ) = loga x1 + loga x2




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   29 / 37
Logarithms

Definition

      The base a logarithm loga x is the inverse of the function ax

                                     y = loga x ⇐⇒ x = ay

      The natural logarithm ln x is the inverse of ex . So
      y = ln x ⇐⇒ x = ey .


Facts

 (i) loga (x1 · x2 ) = loga x1 + loga x2
          ( )
            x1
(ii) loga          = loga x1 − loga x2
            x2


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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   29 / 37
Logarithms

Definition

      The base a logarithm loga x is the inverse of the function ax

                                     y = loga x ⇐⇒ x = ay

      The natural logarithm ln x is the inverse of ex . So
      y = ln x ⇐⇒ x = ey .


Facts

  (i) loga (x1 · x2 ) = loga x1 + loga x2
           ( )
              x1
 (ii) loga          = loga x1 − loga x2
              x2
(iii) loga (xr ) = r loga x
                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   29 / 37
Logarithms convert products to sums

      Suppose y1 = loga x1 and y2 = loga x2
      Then x1 = ay1 and x2 = ay2
      So x1 x2 = ay1 ay2 = ay1 +y2
      Therefore
                                  loga (x1 · x2 ) = loga x1 + loga x2




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 V63.0121.041, Calculus I (NYU)     Sections 3.1–3.2 Exponential Functions               October 20, 2010   30 / 37
Example
Write as a single logarithm: 2 ln 4 − ln 3.




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   31 / 37
Example
Write as a single logarithm: 2 ln 4 − ln 3.

Solution
                                                   42
      2 ln 4 − ln 3 = ln 42 − ln 3 = ln
                                                   3
             ln 42
      not          !
              ln 3




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   31 / 37
Example
Write as a single logarithm: 2 ln 4 − ln 3.

Solution
                                                   42
      2 ln 4 − ln 3 = ln 42 − ln 3 = ln
                                                   3
             ln 42
      not          !
              ln 3

Example
                                            3
Write as a single logarithm: ln               + 4 ln 2
                                            4




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   31 / 37
Example
Write as a single logarithm: 2 ln 4 − ln 3.

Solution
                                                   42
      2 ln 4 − ln 3 = ln 42 − ln 3 = ln
                                                   3
             ln 42
      not          !
              ln 3

Example
                                            3
Write as a single logarithm: ln               + 4 ln 2
                                            4

Answer
ln 12
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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   31 / 37
Graphs of logarithmic functions
            y
            .
                                  . = 2x
                                  y

                                                                                           y
                                                                                           . = log2 x



             . . 0, 1)
               (

            ..1, 0) .
            (                                                                                       x
                                                                                                    .




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 V63.0121.041, Calculus I (NYU)     Sections 3.1–3.2 Exponential Functions               October 20, 2010   32 / 37
Graphs of logarithmic functions
            y
            .
                           . = 3x= 2x
                           y . y

                                                                                         y
                                                                                         . = log2 x


                                                                                         y
                                                                                         . = log3 x
             . . 0, 1)
               (

            ..1, 0) .
            (                                                                                     x
                                                                                                  .




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   32 / 37
Graphs of logarithmic functions
            y
            .
                    . = .10x 3x= 2x
                    y y= .   y

                                                                                         y
                                                                                         . = log2 x


                                                                                         y
                                                                                         . = log3 x
             . . 0, 1)
               (
                                                                                        y
                                                                                        . = log10 x
            ..1, 0) .
            (                                                                                     x
                                                                                                  .




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   32 / 37
Graphs of logarithmic functions
            y
            .
                    . = .10=3x= 2x
                         y xy
                    y y. = .ex

                                                                                         y
                                                                                         . = log2 x

                                                                                           y
                                                                                           . = ln x
                                                                                         y
                                                                                         . = log3 x
             . . 0, 1)
               (
                                                                                        y
                                                                                        . = log10 x
            ..1, 0) .
            (                                                                                     x
                                                                                                  .




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   32 / 37
Change of base formula for exponentials

Fact
If a > 0 and a ̸= 1, then
                                                         ln x
                                          loga x =
                                                         ln a




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   33 / 37
Change of base formula for exponentials

Fact
If a > 0 and a ̸= 1, then
                                                         ln x
                                          loga x =
                                                         ln a


Proof.

      If y = loga x, then x = ay
      So ln x = ln(ay ) = y ln a
      Therefore
                                                                ln x
                                          y = loga x =
                                                                ln a


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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   33 / 37
Example of changing base




Example
Find log2 8 by using log10 only.




Surprised?




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   34 / 37
Example of changing base




Example
Find log2 8 by using log10 only.

Solution
         log10 8   0.90309
log2 8 =         ≈         =3
         log10 2   0.30103

Surprised?




                                                                           .   .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   34 / 37
Example of changing base




Example
Find log2 8 by using log10 only.

Solution
         log10 8   0.90309
log2 8 =         ≈         =3
         log10 2   0.30103

Surprised? No, log2 8 = log2 23 = 3 directly.




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 V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   34 / 37
Upshot of changing base



The point of the change of base formula

                              logb x     1
                loga x =             =        · logb x = constant · logb x
                              logb a   logb a

is that all the logarithmic functions are multiples of each other. So just
pick one and call it your favorite.
      Engineers like the common logarithm log = log10
      Computer scientists like the binary logarithm lg = log2
      Mathematicians like natural logarithm ln = loge




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 V63.0121.041, Calculus I (NYU)    Sections 3.1–3.2 Exponential Functions               October 20, 2010   35 / 37
“ .
                                          . lawn”




    .




                                                                             .   .   .         .       .    .
.
Image credit: Selva
   V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   36 / 37
Summary




     Exponentials turn sums into products
     Logarithms turn products into sums
     Slide rule scabbards are wicked cool




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V63.0121.041, Calculus I (NYU)   Sections 3.1–3.2 Exponential Functions               October 20, 2010   37 / 37

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Lesson 13: Exponential and Logarithmic Functions (Section 041 slides)

  • 1. Sections 3.1–3.2 Exponential and Logarithmic Functions V63.0121.041, Calculus I New York University October 20, 2010 Announcements Midterm is graded and scores are on blackboard. Should get it back in recitation. There is WebAssign due Monday/Tuesday next week. . . . . . .
  • 2. Announcements Midterm is graded and scores are on blackboard. Should get it back in recitation. There is WebAssign due Monday/Tuesday next week. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 2 / 37
  • 3. Objectives for Sections 3.1 and 3.2 Know the definition of an exponential function Know the properties of exponential functions Understand and apply the laws of logarithms, including the change of base formula. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 3 / 37
  • 4. Outline Definition of exponential functions Properties of exponential Functions The number e and the natural exponential function Compound Interest The number e A limit Logarithmic Functions . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 4 / 37
  • 5. Derivation of exponential functions Definition If a is a real number and n is a positive whole number, then an = a · a · · · · · a n factors . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 5 / 37
  • 6. Derivation of exponential functions Definition If a is a real number and n is a positive whole number, then an = a · a · · · · · a n factors Examples 23 = 2 · 2 · 2 = 8 34 = 3 · 3 · 3 · 3 = 81 (−1)5 = (−1)(−1)(−1)(−1)(−1) = −1 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 5 / 37
  • 7. Anatomy of a power Definition A power is an expression of the form ab . The number a is called the base. The number b is called the exponent. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 6 / 37
  • 8. Fact If a is a real number, then ax+y = ax ay (sums to products) ax ax−y = y a (ax )y = axy (ab)x = ax bx whenever all exponents are positive whole numbers. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 7 / 37
  • 9. Fact If a is a real number, then ax+y = ax ay (sums to products) ax ax−y = y (differences to quotients) a (ax )y = axy (ab)x = ax bx whenever all exponents are positive whole numbers. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 7 / 37
  • 10. Fact If a is a real number, then ax+y = ax ay (sums to products) ax ax−y = y (differences to quotients) a (ax )y = axy (repeated exponentiation to multiplied powers) (ab)x = ax bx whenever all exponents are positive whole numbers. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 7 / 37
  • 11. Fact If a is a real number, then ax+y = ax ay (sums to products) ax ax−y = y (differences to quotients) a (ax )y = axy (repeated exponentiation to multiplied powers) (ab)x = ax bx (power of product is product of powers) whenever all exponents are positive whole numbers. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 7 / 37
  • 12. Fact If a is a real number, then ax+y = ax ay (sums to products) ax ax−y = y (differences to quotients) a (ax )y = axy (repeated exponentiation to multiplied powers) (ab)x = ax bx (power of product is product of powers) whenever all exponents are positive whole numbers. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 7 / 37
  • 13. Fact If a is a real number, then ax+y = ax ay (sums to products) ax ax−y = y (differences to quotients) a (ax )y = axy (repeated exponentiation to multiplied powers) (ab)x = ax bx (power of product is product of powers) whenever all exponents are positive whole numbers. Proof. Check for yourself: ax+y = a · a · · · · · a = a · a · · · · · a · a · a · · · · · a = ax ay x + y factors x factors y factors . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 7 / 37
  • 14. Let's be conventional The desire that these properties remain true gives us conventions for ax when x is not a positive whole number. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 8 / 37
  • 15. Let's be conventional The desire that these properties remain true gives us conventions for ax when x is not a positive whole number. For example, what should a0 be? We cannot write down zero a’s and multiply them together. But we would want this to be true: ! an = an+0 = an · a0 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 8 / 37
  • 16. Let's be conventional The desire that these properties remain true gives us conventions for ax when x is not a positive whole number. For example, what should a0 be? We cannot write down zero a’s and multiply them together. But we would want this to be true: ! ! an an = an+0 = an · a0 =⇒ a0 = =1 an (The equality with the exclamation point is what we want.) . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 8 / 37
  • 17. Let's be conventional The desire that these properties remain true gives us conventions for ax when x is not a positive whole number. For example, what should a0 be? We cannot write down zero a’s and multiply them together. But we would want this to be true: ! ! an an = an+0 = an · a0 =⇒ a0 = =1 an (The equality with the exclamation point is what we want.) Definition If a ̸= 0, we define a0 = 1. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 8 / 37
  • 18. Let's be conventional The desire that these properties remain true gives us conventions for ax when x is not a positive whole number. For example, what should a0 be? We cannot write down zero a’s and multiply them together. But we would want this to be true: ! ! an an = an+0 = an · a0 =⇒ a0 = =1 an (The equality with the exclamation point is what we want.) Definition If a ̸= 0, we define a0 = 1. Notice 00 remains undefined (as a limit form, it’s indeterminate). . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 8 / 37
  • 19. Conventions for negative exponents If n ≥ 0, we want an+(−n) = an · a−n ! . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 9 / 37
  • 20. Conventions for negative exponents If n ≥ 0, we want a0 1 an+(−n) = an · a−n =⇒ a−n = ! ! n = n a a . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 9 / 37
  • 21. Conventions for negative exponents If n ≥ 0, we want a0 1 an+(−n) = an · a−n =⇒ a−n = ! ! n = n a a Definition 1 If n is a positive integer, we define a−n = . an . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 9 / 37
  • 22. Conventions for negative exponents If n ≥ 0, we want a0 1 an+(−n) = an · a−n =⇒ a−n = ! ! n = n a a Definition 1 If n is a positive integer, we define a−n = . an Fact 1 The convention that a−n = “works” for negative n as well. an am If m and n are any integers, then am−n = n . a . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 9 / 37
  • 23. Conventions for fractional exponents If q is a positive integer, we want ! (a1/q )q = a1 = a . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 10 / 37
  • 24. Conventions for fractional exponents If q is a positive integer, we want ! ! √ (a1/q )q = a1 = a =⇒ a1/q = q a . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 10 / 37
  • 25. Conventions for fractional exponents If q is a positive integer, we want ! ! √ (a1/q )q = a1 = a =⇒ a1/q = q a Definition √ If q is a positive integer, we define a1/q = q a. We must have a ≥ 0 if q is even. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 10 / 37
  • 26. Conventions for fractional exponents If q is a positive integer, we want ! ! √ (a1/q )q = a1 = a =⇒ a1/q = q a Definition √ If q is a positive integer, we define a1/q = q a. We must have a ≥ 0 if q is even. √q ( √ )p Notice that ap = q a . So we can unambiguously say ap/q = (ap )1/q = (a1/q )p . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 10 / 37
  • 27. Conventions for irrational exponents So ax is well-defined if a is positive and x is rational. What about irrational powers? . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 11 / 37
  • 28. Conventions for irrational exponents So ax is well-defined if a is positive and x is rational. What about irrational powers? Definition Let a > 0. Then ax = lim ar r→x r rational . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 11 / 37
  • 29. Conventions for irrational exponents So ax is well-defined if a is positive and x is rational. What about irrational powers? Definition Let a > 0. Then ax = lim ar r→x r rational In other words, to approximate ax for irrational x, take r close to x but rational and compute ar . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 11 / 37
  • 30. Approximating a power with an irrational exponent r 2r 3 23 √ =8 10 3.1 231/10 = √ 31 ≈ 8.57419 2 100 3.14 2314/100 = √2314 ≈ 8.81524 1000 3.141 23141/1000 = 23141 ≈ 8.82135 The limit (numerically approximated is) 2π ≈ 8.82498 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 12 / 37
  • 31. Graphs of various exponential functions y . . x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 13 / 37
  • 32. Graphs of various exponential functions y . . = 1x y . x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 13 / 37
  • 33. Graphs of various exponential functions y . . = 2x y . = 1x y . x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 13 / 37
  • 34. Graphs of various exponential functions y . . = 3x. = 2x y y . = 1x y . x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 13 / 37
  • 35. Graphs of various exponential functions y . . = 10x= 3x. = 2x y y . y . = 1x y . x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 13 / 37
  • 36. Graphs of various exponential functions y . . = 10x= 3x. = 2x y y . y . = 1.5x y . = 1x y . x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 13 / 37
  • 37. Graphs of various exponential functions y . . = (1/2)x y . = 10x= 3x. = 2x y y . y . = 1.5x y . = 1x y . x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 13 / 37
  • 38. Graphs of various exponential functions x y . . = (1/2)x (1/3) y y . = . = 10x= 3x. = 2x y y . y . = 1.5x y . = 1x y . x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 13 / 37
  • 39. Graphs of various exponential functions y . . = (1/2)x (1/3) y y . = x . = (1/10)x. = 10x= 3x. = 2x y y y . y . = 1.5x y . = 1x y . x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 13 / 37
  • 40. Graphs of various exponential functions y . y yx .. = ((1/2)x (1/3)x y = 2/. )= 3 . = (1/10)x. = 10x= 3x. = 2x y y y . y . = 1.5x y . = 1x y . x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 13 / 37
  • 41. Outline Definition of exponential functions Properties of exponential Functions The number e and the natural exponential function Compound Interest The number e A limit Logarithmic Functions . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 14 / 37
  • 42. Properties of exponential Functions . Theorem If a > 0 and a ̸= 1, then f(x) = ax is a continuous function with domain (−∞, ∞) and range (0, ∞). In particular, ax > 0 for all x. For any real numbers x and y, and positive numbers a and b we have ax+y = ax ay ax ax−y = y a (ax )y = axy (ab)x = ax bx Proof. This is true for positive integer exponents by natural definition Our conventional definitions make these true for rational exponents Our limit definition make these for irrational exponents, too . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 15 / 37
  • 43. Properties of exponential Functions . Theorem If a > 0 and a ̸= 1, then f(x) = ax is a continuous function with domain (−∞, ∞) and range (0, ∞). In particular, ax > 0 for all x. For any real numbers x and y, and positive numbers a and b we have ax+y = ax ay ax ax−y = y (negative exponents mean reciprocals) a (ax )y = axy (ab)x = ax bx Proof. This is true for positive integer exponents by natural definition Our conventional definitions make these true for rational exponents Our limit definition make these for irrational exponents, too . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 15 / 37
  • 44. Properties of exponential Functions . Theorem If a > 0 and a ̸= 1, then f(x) = ax is a continuous function with domain (−∞, ∞) and range (0, ∞). In particular, ax > 0 for all x. For any real numbers x and y, and positive numbers a and b we have ax+y = ax ay ax ax−y = y (negative exponents mean reciprocals) a (ax )y = axy (fractional exponents mean roots) (ab)x = ax bx Proof. This is true for positive integer exponents by natural definition Our conventional definitions make these true for rational exponents Our limit definition make these for irrational exponents, too . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 15 / 37
  • 45. Simplifying exponential expressions Example Simplify: 82/3 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 16 / 37
  • 46. Simplifying exponential expressions Example Simplify: 82/3 Solution √ 3 √ 82/3 = 82 = 3 64 = 4 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 16 / 37
  • 47. Simplifying exponential expressions Example Simplify: 82/3 Solution √3 √ 82/3 = 82 = 64 = 4 3 ( √ )2 8 = 22 = 4. 3 Or, . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 16 / 37
  • 48. Simplifying exponential expressions Example Simplify: 82/3 Solution √3 √ 82/3 = 82 = 64 = 4 3 ( √ )2 8 = 22 = 4. 3 Or, Example √ 8 Simplify: 21/2 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 16 / 37
  • 49. Simplifying exponential expressions Example Simplify: 82/3 Solution √3 √ 82/3 = 82 = 64 = 4 3 ( √ )2 8 = 22 = 4. 3 Or, Example √ 8 Simplify: 21/2 Answer 2 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 16 / 37
  • 50. Limits of exponential functions Fact (Limits of exponential y . functions) . = (= 2()1/32/3)x y . 1/ =x( )x y . y y y = x . 3x y . = (. /10)10x= 2x. = 1 . = y y If a > 1, then lim ax = ∞ x→∞ and lim ax = 0 x→−∞ If 0 < a < 1, then lim ax = 0 and y . = x→∞ lim a = ∞ x . x . x→−∞ . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 17 / 37
  • 51. Outline Definition of exponential functions Properties of exponential Functions The number e and the natural exponential function Compound Interest The number e A limit Logarithmic Functions . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 18 / 37
  • 52. Compounded Interest Question Suppose you save $100 at 10% annual interest, with interest compounded once a year. How much do you have After one year? After two years? after t years? . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 19 / 37
  • 53. Compounded Interest Question Suppose you save $100 at 10% annual interest, with interest compounded once a year. How much do you have After one year? After two years? after t years? Answer $100 + 10% = $110 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 19 / 37
  • 54. Compounded Interest Question Suppose you save $100 at 10% annual interest, with interest compounded once a year. How much do you have After one year? After two years? after t years? Answer $100 + 10% = $110 $110 + 10% = $110 + $11 = $121 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 19 / 37
  • 55. Compounded Interest Question Suppose you save $100 at 10% annual interest, with interest compounded once a year. How much do you have After one year? After two years? after t years? Answer $100 + 10% = $110 $110 + 10% = $110 + $11 = $121 $100(1.1)t . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 19 / 37
  • 56. Compounded Interest: quarterly Question Suppose you save $100 at 10% annual interest, with interest compounded four times a year. How much do you have After one year? After two years? after t years? . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 20 / 37
  • 57. Compounded Interest: quarterly Question Suppose you save $100 at 10% annual interest, with interest compounded four times a year. How much do you have After one year? After two years? after t years? Answer $100(1.025)4 = $110.38, . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 20 / 37
  • 58. Compounded Interest: quarterly Question Suppose you save $100 at 10% annual interest, with interest compounded four times a year. How much do you have After one year? After two years? after t years? Answer $100(1.025)4 = $110.38, not $100(1.1)4 ! . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 20 / 37
  • 59. Compounded Interest: quarterly Question Suppose you save $100 at 10% annual interest, with interest compounded four times a year. How much do you have After one year? After two years? after t years? Answer $100(1.025)4 = $110.38, not $100(1.1)4 ! $100(1.025)8 = $121.84 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 20 / 37
  • 60. Compounded Interest: quarterly Question Suppose you save $100 at 10% annual interest, with interest compounded four times a year. How much do you have After one year? After two years? after t years? Answer $100(1.025)4 = $110.38, not $100(1.1)4 ! $100(1.025)8 = $121.84 $100(1.025)4t . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 20 / 37
  • 61. Compounded Interest: monthly Question Suppose you save $100 at 10% annual interest, with interest compounded twelve times a year. How much do you have after t years? . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 21 / 37
  • 62. Compounded Interest: monthly Question Suppose you save $100 at 10% annual interest, with interest compounded twelve times a year. How much do you have after t years? Answer $100(1 + 10%/12)12t . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 21 / 37
  • 63. Compounded Interest: general Question Suppose you save P at interest rate r, with interest compounded n times a year. How much do you have after t years? . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 22 / 37
  • 64. Compounded Interest: general Question Suppose you save P at interest rate r, with interest compounded n times a year. How much do you have after t years? Answer ( r )nt B(t) = P 1 + n . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 22 / 37
  • 65. Compounded Interest: continuous Question Suppose you save P at interest rate r, with interest compounded every instant. How much do you have after t years? . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 23 / 37
  • 66. Compounded Interest: continuous Question Suppose you save P at interest rate r, with interest compounded every instant. How much do you have after t years? Answer ( ( ) r )nt 1 rnt B(t) = lim P 1 + = lim P 1 + n→∞ n n→∞ n [ ( )n ]rt 1 =P lim 1 + n→∞ n independent of P, r, or t . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 23 / 37
  • 67. The magic number Definition ( ) 1 n e = lim 1 + n→∞ n . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 24 / 37
  • 68. The magic number Definition ( ) 1 n e = lim 1 + n→∞ n So now continuously-compounded interest can be expressed as B(t) = Pert . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 24 / 37
  • 69. Existence of e See Appendix B ( ) 1 n n 1+ n 1 2 2 2.25 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 25 / 37
  • 70. Existence of e See Appendix B ( ) 1 n n 1+ n 1 2 2 2.25 3 2.37037 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 25 / 37
  • 71. Existence of e See Appendix B ( ) 1 n n 1+ n 1 2 2 2.25 3 2.37037 10 2.59374 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 25 / 37
  • 72. Existence of e See Appendix B ( ) 1 n n 1+ n 1 2 2 2.25 3 2.37037 10 2.59374 100 2.70481 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 25 / 37
  • 73. Existence of e See Appendix B ( ) 1 n n 1+ n 1 2 2 2.25 3 2.37037 10 2.59374 100 2.70481 1000 2.71692 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 25 / 37
  • 74. Existence of e See Appendix B ( ) 1 n n 1+ n 1 2 2 2.25 3 2.37037 10 2.59374 100 2.70481 1000 2.71692 106 2.71828 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 25 / 37
  • 75. Existence of e See Appendix B ( ) 1 n n 1+ We can experimentally n verify that this number 1 2 exists and is 2 2.25 3 2.37037 e ≈ 2.718281828459045 . . . 10 2.59374 100 2.70481 1000 2.71692 106 2.71828 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 25 / 37
  • 76. Existence of e See Appendix B ( ) 1 n n 1+ We can experimentally n verify that this number 1 2 exists and is 2 2.25 3 2.37037 e ≈ 2.718281828459045 . . . 10 2.59374 e is irrational 100 2.70481 1000 2.71692 106 2.71828 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 25 / 37
  • 77. Existence of e See Appendix B ( ) 1 n n 1+ We can experimentally n verify that this number 1 2 exists and is 2 2.25 3 2.37037 e ≈ 2.718281828459045 . . . 10 2.59374 e is irrational 100 2.70481 1000 2.71692 e is transcendental 106 2.71828 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 25 / 37
  • 78. Meet the Mathematician: Leonhard Euler Born in Switzerland, lived in Prussia (Germany) and Russia Eyesight trouble all his life, blind from 1766 onward Hundreds of contributions to calculus, number theory, graph theory, fluid mechanics, optics, and astronomy Leonhard Paul Euler Swiss, 1707–1783 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 26 / 37
  • 79. A limit . Question eh − 1 What is lim ? h→0 h . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 27 / 37
  • 80. A limit . Question eh − 1 What is lim ? h→0 h Answer e = lim → ∞ (1 + 1/n)n = lim (1 + h)1/h . So for a small h, e ≈ (1 + h)1/h . n h→0 So [ ]h eh − 1 (1 + h)1/h − 1 ≈ =1 h h . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 27 / 37
  • 81. A limit . Question eh − 1 What is lim ? h→0 h Answer e = lim → ∞ (1 + 1/n)n = lim (1 + h)1/h . So for a small h, e ≈ (1 + h)1/h . n h→0 So [ ]h eh − 1 (1 + h)1/h − 1 ≈ =1 h h eh − 1 It follows that lim = 1. h→0 h 2h − 1 This can be used to characterize e: lim = 0.693 · · · < 1 and h→0 h 3h − 1 lim = 1.099 · · · > 1 h→0 h . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 27 / 37
  • 82. Outline Definition of exponential functions Properties of exponential Functions The number e and the natural exponential function Compound Interest The number e A limit Logarithmic Functions . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 28 / 37
  • 83. Logarithms Definition The base a logarithm loga x is the inverse of the function ax y = loga x ⇐⇒ x = ay The natural logarithm ln x is the inverse of ex . So y = ln x ⇐⇒ x = ey . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 29 / 37
  • 84. Logarithms Definition The base a logarithm loga x is the inverse of the function ax y = loga x ⇐⇒ x = ay The natural logarithm ln x is the inverse of ex . So y = ln x ⇐⇒ x = ey . Facts (i) loga (x1 · x2 ) = loga x1 + loga x2 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 29 / 37
  • 85. Logarithms Definition The base a logarithm loga x is the inverse of the function ax y = loga x ⇐⇒ x = ay The natural logarithm ln x is the inverse of ex . So y = ln x ⇐⇒ x = ey . Facts (i) loga (x1 · x2 ) = loga x1 + loga x2 ( ) x1 (ii) loga = loga x1 − loga x2 x2 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 29 / 37
  • 86. Logarithms Definition The base a logarithm loga x is the inverse of the function ax y = loga x ⇐⇒ x = ay The natural logarithm ln x is the inverse of ex . So y = ln x ⇐⇒ x = ey . Facts (i) loga (x1 · x2 ) = loga x1 + loga x2 ( ) x1 (ii) loga = loga x1 − loga x2 x2 (iii) loga (xr ) = r loga x . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 29 / 37
  • 87. Logarithms convert products to sums Suppose y1 = loga x1 and y2 = loga x2 Then x1 = ay1 and x2 = ay2 So x1 x2 = ay1 ay2 = ay1 +y2 Therefore loga (x1 · x2 ) = loga x1 + loga x2 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 30 / 37
  • 88. Example Write as a single logarithm: 2 ln 4 − ln 3. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 31 / 37
  • 89. Example Write as a single logarithm: 2 ln 4 − ln 3. Solution 42 2 ln 4 − ln 3 = ln 42 − ln 3 = ln 3 ln 42 not ! ln 3 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 31 / 37
  • 90. Example Write as a single logarithm: 2 ln 4 − ln 3. Solution 42 2 ln 4 − ln 3 = ln 42 − ln 3 = ln 3 ln 42 not ! ln 3 Example 3 Write as a single logarithm: ln + 4 ln 2 4 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 31 / 37
  • 91. Example Write as a single logarithm: 2 ln 4 − ln 3. Solution 42 2 ln 4 − ln 3 = ln 42 − ln 3 = ln 3 ln 42 not ! ln 3 Example 3 Write as a single logarithm: ln + 4 ln 2 4 Answer ln 12 . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 31 / 37
  • 92. Graphs of logarithmic functions y . . = 2x y y . = log2 x . . 0, 1) ( ..1, 0) . ( x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 32 / 37
  • 93. Graphs of logarithmic functions y . . = 3x= 2x y . y y . = log2 x y . = log3 x . . 0, 1) ( ..1, 0) . ( x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 32 / 37
  • 94. Graphs of logarithmic functions y . . = .10x 3x= 2x y y= . y y . = log2 x y . = log3 x . . 0, 1) ( y . = log10 x ..1, 0) . ( x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 32 / 37
  • 95. Graphs of logarithmic functions y . . = .10=3x= 2x y xy y y. = .ex y . = log2 x y . = ln x y . = log3 x . . 0, 1) ( y . = log10 x ..1, 0) . ( x . . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 32 / 37
  • 96. Change of base formula for exponentials Fact If a > 0 and a ̸= 1, then ln x loga x = ln a . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 33 / 37
  • 97. Change of base formula for exponentials Fact If a > 0 and a ̸= 1, then ln x loga x = ln a Proof. If y = loga x, then x = ay So ln x = ln(ay ) = y ln a Therefore ln x y = loga x = ln a . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 33 / 37
  • 98. Example of changing base Example Find log2 8 by using log10 only. Surprised? . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 34 / 37
  • 99. Example of changing base Example Find log2 8 by using log10 only. Solution log10 8 0.90309 log2 8 = ≈ =3 log10 2 0.30103 Surprised? . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 34 / 37
  • 100. Example of changing base Example Find log2 8 by using log10 only. Solution log10 8 0.90309 log2 8 = ≈ =3 log10 2 0.30103 Surprised? No, log2 8 = log2 23 = 3 directly. . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 34 / 37
  • 101. Upshot of changing base The point of the change of base formula logb x 1 loga x = = · logb x = constant · logb x logb a logb a is that all the logarithmic functions are multiples of each other. So just pick one and call it your favorite. Engineers like the common logarithm log = log10 Computer scientists like the binary logarithm lg = log2 Mathematicians like natural logarithm ln = loge . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 35 / 37
  • 102. “ . . lawn” . . . . . . . . Image credit: Selva V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 36 / 37
  • 103. Summary Exponentials turn sums into products Logarithms turn products into sums Slide rule scabbards are wicked cool . . . . . . V63.0121.041, Calculus I (NYU) Sections 3.1–3.2 Exponential Functions October 20, 2010 37 / 37