In Numpy we are provided with the module called random module that allows us to work with random numbers. The random module provides different methods for data distribution. In this article, we have to create an array of specified shape and fill it random numbers or values such that these values are part of a normal distribution or Gaussian distribution. This distribution is also called the Bell Curve this is because of its characteristics shape.
To generate five random numbers from the normal distribution we will use numpy.random.normal() method of the random module.
Syntax: numpy.random.normal(loc = 0.0, scale = 1.0, size = None)
Parameters:
loc: Mean of distribution
scale: Standard derivation
size: Resultant shape.
If size argument is empty then by default single value is returned.
Example 1:
Python3
# importing module import numpy as np # numpy.random.normal() method r = np.random.normal(size = 5 ) # printing numbers print (r) |
Output :
[ 0.27491897 -0.18001994 -0.01783066 1.07701319 -0.11356911]
Example 2:
Python3
# importing module import numpy as np # numpy.random.normal() method random_array = np.random.normal( 0.0 , 1.0 , 5 ) # printing 1D array with random numbers print ( "1D Array with random values : \n" , random_array) |
Output :
1D Array with random values : [ 0.14559212 1.97263406 1.11170937 -0.88192442 0.8249291 ]