The math module in Python is a built-in library that contains a collection of mathematical functions and constants. It is commonly used to perform standard math operations such as rounding, trigonometry, logarithms and more, all with precise and reliable results.
Why do we need Math module ?
- Provides built-in functions for complex math operations like square root, power and trigonometry.
- Offers constants like pi and e, useful in scientific and engineering calculations.
- Improves accuracy and performance over manual calculations or custom functions.
- Helps in performing logarithmic and exponential operations easily.
- Supports real-world applications like physics, statistics, geometry and finance.
Importing math module
To work with mathematical constants and functions in Python, you need to import the math module:
import math
Once imported, you can access a variety of constants. Let’s explore some of them:
Constants in Math Module
The Python math module provides various values of various constants like pi and tau. We can easily write their values with these constants. The constants provided by the math module are:
- Euler's Number
- Pi
- Tau
- Infinity
- Not a Number (NaN)
Let's see constants in math module with examples:
1. Euler's Number
The math.e constant returns the Euler’s number: 2.71828182846.
Syntax:
math.e
Example: This prints the value of the mathematical constant e.
Python
import math
print (math.e)
2. Pi
You all must be familiar with pi. The pi is depicted as either 22/7 or 3.14. math.pi provides a more precise value for the pi.
Syntax:
math.pi
Example 1: This prints the value of the mathematical constant pi.
Python
import math
print (math.pi)
Example 2: This calculates the area of a circle using pi
Python
import math
r = 4
pie = math.pi
print(pie * r * r)
3. tau
Tau is defined as the ratio of the circumference to the radius of a circle. The math.tau constant returns the value tau: 6.283185307179586.
Syntax:
math.tau
Example: This prints the value of the mathematical constant tau.
Python
import math
print (math.tau)
4. Infinity
Infinity basically means something which is never-ending or boundless from both directions i.e. negative and positive. It cannot be depicted by a number. The Python math.inf constant returns of positive infinity. For negative infinity use -math.inf.
Syntax:
math.inf
Example 1: This prints positive and negative infinity.
Python
import math
print (math.inf)
print (-math.inf)
Example 2: This compares infinity with a large number.
Python
import math
print (math.inf > 10e108)
print (-math.inf < -10e108)
5. NaN Values
The Python math.nan constant returns a floating-point nan (Not a Number) value. This value is not a legal number. The nan constant is equivalent to float(“nan”).
Example: This prints the value of math.nan.
Python
import math
print (math.nan)
Numeric Functions in Math Module
In this section, we will deal with the functions that are used with number theory as well as representation theory such as finding the factorial of a number. We will discuss these numerical functions along with examples and use-cases.
1. Finding the ceiling and the floor value
Ceil value means the smallest integral value greater than the number and the floor value means the greatest integral value smaller than the number. This can be easily calculated using the ceil() and floor() method respectively.
Example: This prints the ceiling and floor value of 2.3.
Python
import math
a = 2.3
print ("The ceil of 2.3 is : ", end="")
print (math.ceil(a))
print ("The floor of 2.3 is : ", end="")
print (math.floor(a))
OutputThe ceil of 2.3 is : 3
The floor of 2.3 is : 2
2. Finding the factorial of the number
Using the factorial() function we can find the factorial of a number in a single line of the code. An error message is displayed if number is not integral.
Example: This prints the factorial of 5.
Python
import math
a = 5
print("The factorial of 5 is : ", end="")
print(math.factorial(a))
OutputThe factorial of 5 is : 120
3. Finding the GCD
gcd() function is used to find the greatest common divisor of two numbers passed as the arguments.
Example: This prints the GCD of 15 and 5.
Python
import math
a = 15
b = 5
print ("The gcd of 5 and 15 is : ", end="")
print (math.gcd(b, a))
OutputThe gcd of 5 and 15 is : 5
4. Finding the absolute value
fabs() function returns the absolute value of the number.
Example: This prints the absolute value of -10
Python
import math
a = -10
print ("The absolute value of -10 is : ", end="")
print (math.fabs(a))
OutputThe absolute value of -10 is : 10.0
To know more, refer Mathematical Functions in Python | Set 1 (Numeric Functions)
Logarithmic and Power Functions
Power functions can be expressed as x^n where n is the power of x whereas logarithmic functions are considered as the inverse of exponential functions.
1. Finding the power of exp
exp() method is used to calculate the power of e i.e. e^y
Example: This prints exponential values of an integer, negative integer and a float.
Python
import math
test_int = 4
test_neg_int = -3
test_float = 0.00
print (math.exp(test_int))
print (math.exp(test_neg_int))
print (math.exp(test_float))
Output54.598150033144236
0.049787068367863944
1.0
2. Finding the power of a number
pow() function computes x**y. This function first converts its arguments into float and then computes the power.
Example: This prints 3 raised to the power of 4.
Python
print ("The value of 3**4 is : ",end="")
print (pow(3,4))
OutputThe value of 3**4 is : 81
3. Finding the Logarithm
- log() function returns the logarithmic value of a with base b. If the base is not mentioned, the computed value is of the natural log.
- log2(a) function computes value of log a with base 2. This value is more accurate than the value of the function discussed above.
- log10(a) function computes value of log a with base 10. This value is more accurate than the value of the function discussed above.
Example: This prints different logarithmic values.
Python
import math
print ("The value of log 2 with base 3 is : ", end="")
print (math.log(2,3))
print ("The value of log2 of 16 is : ", end="")
print (math.log2(16))
print ("The value of log10 of 10000 is : ", end="")
print (math.log10(10000))
OutputThe value of log 2 with base 3 is : 0.6309297535714574
The value of log2 of 16 is : 4.0
The value of log10 of 10000 is : 4.0
4. Finding the Square root
sqrt() function returns the square root of the number.
Example: This prints square roots of 0, 4 and 3.5.
Python
import math
print(math.sqrt(0))
print(math.sqrt(4))
print(math.sqrt(3.5))
Output0.0
2.0
1.8708286933869707
To know more, refer Mathematical Functions in Python | Set 2 (Logarithmic and Power Functions)
Trigonometric and Angular Functions
You all must know about Trigonometric and how it may become difficult to find the values of sine and cosine values of any angle. Math module provides built-in functions to find such values and even to change the values between degrees and radians.
1. Finding sine, cosine and tangent
sin(), cos() and tan() functions returns the sine, cosine and tangent of value passed as the argument. The value passed in this function should be in radians.
Example: This prints the trigonometric values of π/6.
Python
import math
a = math.pi/6
print ("The value of sine of pi/6 is : ", end="")
print (math.sin(a))
print ("The value of cosine of pi/6 is : ", end="")
print (math.cos(a))
print ("The value of tangent of pi/6 is : ", end="")
print (math.tan(a))
OutputThe value of sine of pi/6 is : 0.49999999999999994
The value of cosine of pi/6 is : 0.8660254037844387
The value of tangent of pi/6 is : 0.5773502691896257
2. Converting values from degrees to radians and vice versa
- degrees() function is used to convert argument value from radians to degrees.
- radians() function is used to convert argument value from degrees to radians.
Example: This converts π/6 radians to degrees and 30° to radians.
Python
import math
a = math.pi/6
b = 30
print ("The converted value from radians to degrees is : ", end="")
print (math.degrees(a))
print ("The converted value from degrees to radians is : ", end="")
print (math.radians(b))
OutputThe converted value from radians to degrees is : 29.999999999999996
The converted value from degrees to radians is : 0.5235987755982988
To know more, refer Mathematical Functions in Python | Set 3 (Trigonometric and Angular Functions)
Special Functions
Besides all the numeric, logarithmic functions we have discussed yet, the math module provides some more useful functions that does not fall under any category discussed above but may become handy at some point while coding.
1. Finding gamma value
The gamma() function is used to return the gamma value of the argument.
Example: This prints the gamma of 6.
Python
import math
gamma_var = 6
print ("The gamma value of the given argument is : "
+ str(math.gamma(gamma_var)))
OutputThe gamma value of the given argument is : 120.0
2. Check if the value is infinity or NaN
isinf() function is used to check whether the value is infinity or not.
Example: Checking for infinity.
Python
import math
print (math.isinf(math.pi))
print (math.isinf(math.e))
print (math.isinf(float('inf')))
isnan() function returns true if the number is "NaN" else returns false.
Example: Checking for NaN.
Python
import math
print (math.isnan(math.pi))
print (math.isnan(math.e))
print (math.isnan(float('nan')))
To know more, refer Mathematical Functions in Python | Set 4 (Special Functions and Constants)
List of Mathematical function in Math Module
Here is the list of all mathematical functions in math module, you can use them when you need it in program:
Function Name | Description |
---|
ceil(x) | Returns the smallest integral value greater than the number |
copysign(x, y) | Returns the number with the value of ‘x’ but with the sign of ‘y’ |
fabs(x) | Returns the absolute value of the number |
factorial(x) | Returns the factorial of the number |
floor(x) | Returns the greatest integral value smaller than the number |
gcd(x, y) | Compute the greatest common divisor of 2 numbers |
fmod(x, y) | Returns the remainder when x is divided by y |
frexp(x) | Returns the mantissa and exponent of x as the pair (m, e) |
fsum(iterable) | Returns the precise floating-point value of sum of elements in an iterable |
isfinite(x) | Check whether the value is neither infinity not Nan |
isinf(x) | Check whether the value is infinity or not |
isnan(x) | Returns true if the number is “nan” else returns false |
ldexp(x, i) | Returns x * (2**i) |
modf(x) | Returns the fractional and integer parts of x |
trunc(x) | Returns the truncated integer value of x |
exp(x) | Returns the value of e raised to the power x(e**x) |
expm1(x) | Returns the value of e raised to the power a (x-1) |
log(x[, b]) | Returns the logarithmic value of a with base b |
log1p(x) | Returns the natural logarithmic value of 1+x |
log2(x) | Computes value of log a with base 2 |
log10(x) | Computes value of log a with base 10 |
pow(x, y) | Compute value of x raised to the power y (x**y) |
sqrt(x) | Returns the square root of the number |
acos(x) | Returns the arc cosine of value passed as argument |
asin(x) | Returns the arc sine of value passed as argument |
atan(x) | Returns the arc tangent of value passed as argument |
atan2(y, x) | Returns atan(y / x) |
cos(x) | Returns the cosine of value passed as argument |
hypot(x, y) | Returns the hypotenuse of the values passed in arguments |
sin(x) | Returns the sine of value passed as argument |
tan(x) | Returns the tangent of the value passed as argument |
degrees(x) | Convert argument value from radians to degrees |
radians(x) | Convert argument value from degrees to radians |
acosh(x) | Returns the inverse hyperbolic cosine of value passed as argument |
asinh(x) | Returns the inverse hyperbolic sine of value passed as argument |
atanh(x) | Returns the inverse hyperbolic tangent of value passed as argument |
cosh(x) | Returns the hyperbolic cosine of value passed as argument |
sinh(x) | Returns the hyperbolic sine of value passed as argument |
tanh(x) | Returns the hyperbolic tangent of value passed as argument |
erf(x) | Returns the error function at x |
erfc(x) | Returns the complementary error function at x |
gamma(x) | Return the gamma function of the argument |
lgamma(x) | Return the natural log of the absolute value of the gamma function |
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