3

In the numpy array (data) below, how can I get index positions of the non-integer numbers such as 4.5 and 6.7?

import numpy as np
data = np.array([2.0, 3.0, 4.5, 6.7, 12.0],dtype=float)
print data

Since I am dealing with very large array, faster processing speed is to be considered.

2 Answers 2

5

For speed you should use np.where. Now one solution to find if an element is an integer is to compare it to its rounded value:

np.where(data != data.round())
(array([2, 3]),)

Another solution is to use nonzero:

(data - data.round()).nonzero()
(array([2, 3]),)
1
  • +1. I was trying to work out how to use np.where but I went down the route of using is_integer which got me stuck.
    – Ffisegydd
    Apr 26, 2014 at 8:22
3

You can use a list comprehension combined with the is_integer() method.

float_data = np.array([i for i, v in enumerate(data) if v.is_integer()])

This list comprehension will add the index of each element to the array if the element is an integer and is effectively the same as the following code

float_data = []
for i, v in enumerate(data):
    if v.is_integer():
        float_data.append(i)
3
  • The OP is asking for index positions !
    – hivert
    Apr 26, 2014 at 8:07
  • @hivert thankyou very much for your correction D: I have edited the code appropriately.
    – Ffisegydd
    Apr 26, 2014 at 8:08
  • the index position should be in the way the np.where function gives the result
    – user3235542
    Apr 26, 2014 at 8:20

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.