0

What I hope to do is be able to divide a value in a 1 dimensional numpy array by the following value. For example, I have an array that looks like this.

[ 0 20 23 25 27 28 29 30 30 22 20 19 19 19 19 18 18 19 19 19 19 19 ]

I want to do this:

0/20 #0th value divided by 1st value
20/23 #1st value divided by 2nd value
23/25 #2nd value divided by 3rd value
25/27 #3rd value divided by 4th value
etc...

I can easily do it through a loop, however I was wondering if there is a more efficient way of doing this with numpy operations.

1 Answer 1

5

Get two Slices - One from start to last-1, another from start+1 to last and perform element-wise division -

a[:-1]/a[1:]

To get floating point divisions -

np.true_divide(a[:-1],a[1:])

Or put from __future__ import division and then use a[:-1]/a[1:].

Being views into the input array, these slices are really efficiently accessed for element-wise division operation.

Sample run -

In [56]: a    # Input array
Out[56]: array([96, 81, 48, 53, 18, 92, 79, 43, 13, 69])

In [57]: from __future__ import division

In [58]: a[:-1]/a[1:]
Out[58]: 
array([ 1.18518519,  1.6875    ,  0.90566038,  2.94444444,  0.19565217,
        1.16455696,  1.8372093 ,  3.30769231,  0.1884058 ])

In [59]: a[0]/a[1]
Out[59]: 1.1851851851851851

In [60]: a[1]/a[2]
Out[60]: 1.6875

In [61]: a[2]/a[3]
Out[61]: 0.90566037735849059

Your Answer

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

Not the answer you're looking for? Browse other questions tagged or ask your own question.