HackerRank Python Solution - Numpy Topic - Array Mathematics

Basic mathematical functions operate elementwise on arrays. They are available both as operator overloads and as functions in the NumPy module.

import numpy

a = numpy.array([1,2,3,4], float)
b = numpy.array([5,6,7,8], float)

print a + b                     #[  6.   8.  10.  12.]
print numpy.add(a, b)           #[  6.   8.  10.  12.]

print a - b                     #[-4. -4. -4. -4.]
print numpy.subtract(a, b)      #[-4. -4. -4. -4.]

print a * b                     #[  5.  12.  21.  32.]
print numpy.multiply(a, b)      #[  5.  12.  21.  32.]

print a / b                     #[ 0.2         0.33333333  0.42857143  0.5       ]
print numpy.divide(a, b)        #[ 0.2         0.33333333  0.42857143  0.5       ]

print a % b                     #[ 1.  2.  3.  4.]
print numpy.mod(a, b)           #[ 1.  2.  3.  4.]

print a**b                      #[  1.00000000e+00   6.40000000e+01   2.18700000e+03   6.55360000e+04]
print numpy.power(a, b)         #[  1.00000000e+00   6.40000000e+01   2.18700000e+03   6.55360000e+04]

HackerRank Python Solution - Numpy Topic - Eye and Identity

Identity:

The identity tool returns an identity array. An identity array is a square matrix with all the main diagonal elements as 1 and the rest as 0. The default type of element is float.

import numpy
print numpy.identity(3) #3 is for  dimension 3 X 3

#Output
[[ 1.  0.  0.]
 [ 0.  1.  0.]
 [ 0.  0.  1.]]

HackerRank Python Solution - Numpy Topic - Zeros and Ones

Zeros:

The zeros tool returns a new array with a given shape and type filled with 0's.

import numpy

print numpy.zeros((1,2))                    #Default type is float
#Output : [[ 0.  0.]] 

print numpy.zeros((1,2), dtype = numpy.int) #Type changes to int
#Output : [[0 0]]

HackerRank Python Solution - Numpy Topic - Concatenate

Concatenate:

Two or more arrays can be concatenated together using the concatenate function with a tuple of the arrays to be joined:

import numpy

array_1 = numpy.array([1,2,3])
array_2 = numpy.array([4,5,6])
array_3 = numpy.array([7,8,9])

print numpy.concatenate((array_1, array_2, array_3))    

#Output
[1 2 3 4 5 6 7 8 9]

HackerRank Python Solution - Numpy Topic - Transpose and Flatten

Question 2 - Transpose and Flatten

Task

You are given an NxM integer array matrix with space-separated elements (N= rows and M= columns).
The question is to print the transpose and flatten the results.

Input Format

The first line contains the space-separated values of N and M.
The next N lines contain the space-separated elements of M columns.

HackerRank Python Solution - Numpy Topic - Arrays

Question1 - Arrays:

Task

You are given a space-separated list of numbers.
Your task is to print a reversed NumPy array with the element type float.

Input Format

A single line of input containing space-separated numbers.

Library List in AS400

Library List: 
Library List in AS400
  • A library list is a list of libraries maintained for each user session with the libraries arranged in decreasing order of priority.
  • Whenever an object is referenced in command without a library, then the system starts checking for the object in all the libraries in the library list.
  • If the object is found in the first library, then the system picks that object from that first library.
  • If the object is not found in any library in the library list then the system will throw an error.

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