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numpy.less() in Python
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numpy.less_equal() in Python

Last Updated : 08 Mar, 2024
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The numpy.less_equal() function checks whether x1 is <= x2 or not.

Syntax :

numpy.less_equal(x1, x2[, out])

Parameters :

  x1, x2 : [array_like]Input arrays. If x1.shape != x2.shape, they must be                broadcastable to a common shape   out    : [ndarray, boolean]Array of bools, or a single bool if x1 and x2 are scalars.  

Return :

  Boolean array indicating results, whether x1 is lesser than x2 or not.  

Code 1 :




# Python Program illustrating
# numpy.less_equal() method
   
import numpy as geek 
  
a  = geek.less_equal([8., 2.], [5., 3.])
print("less_equal() : \n", a, "\n")
  
b = geek.less_equal([2, 2], [[1, 3],[1, 4]])
print("less_equal() : \n", b, "\n")
  
a = geek.array([4,3])
b = geek.array([6,2])
  
print("Is a less_equal than b : ", a <= b)
 
 

Output :

  less_equal() :    [False  True]     less_equal() :    [[False  True]   [False  True]]     Is a less_equaler than b :  [ True False]  

Code 2 :




# Python Program illustrating
# numpy.less_equal() method
    
import numpy as geek 
   
# Here we will compare Complex values with the 
a = geek.array([100j,7])
b = geek.array([1,2])
   
print("Comparing complex with int : ", a <= b)
  
d  = geek.less_equal(a, b)
print("\n Comparing complex with int  .less_equal() : ", d)
 
 

Output :

  Comparing complex with int :  [ True False]     Comparing complex with int  .less_equal() :  [ True False]  

Code 3 :




# Python Program illustrating
# numpy.less_equal() method
    
import numpy as geek 
  
# Here we will compare Float with int values
a = geek.array([1.1, 1])
b = geek.array([1, 2])
  
print("Comparing float with int : ", a <= b)
  
d  = geek.less_equal(a, b)
print("\n Comparing float with int using  .less_equal() : ", d)
 
 

Output :

  Comparing float with int :  [False  True]     Comparing float with int using  .less_equal() :  [False  True]  

Note :
These codes won’t run on online-ID. Please run them on your systems to explore the working.



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numpy.less() in Python
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  • Python numpy-Logic Functions
  • Python-numpy
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