From the "Just When I Thought I Was Gettin' The Hang Of Numpy" file...

>>> import numpy as np
>>> y = np.array((1650, 2300, 2560, 3710)) * 1000000
>>> y
array([ 1650000000, -1994967296, -1734967296,  -584967296])

My old math instructor would agree with the first result, but the others???

FWIW, running Python 3.6.3 on 64-bit Win 10, and also get (as expected)

>>> 2300 * 1000000
  • I'm not sure why you are getting this result, all my outputs agree with your old math instructor.. Can you provide your run environment? – Yilun Zhang Feb 13 at 16:52
  • It's working fine for me. Getting array([1650000000, 2300000000, 2560000000, 3710000000]) – Jutorres Feb 13 at 16:55
up vote 3 down vote accepted

This is due to the fact that integers have a maximum value of 2^31 - 1 = 2147483647.

Your first value is smaller than that, but the other 3 are larger. Hence you get "looparound". Note that:

-1994967296 = -2147483648 + (2300000000 - 2147483647 - 1)

So basically you've gone to the maximum value (2147483647) added 1 to get to the the lowest (-2147483648) and then continued from there.

You can get around this by forcing 64-bit precision

>>> import numpy as np
>>> y = np.array((1650, 2300, 2560, 3710), dtype='int64') * 1000000
>>> y
array([1650000000, 2300000000, 2560000000, 3710000000], dtype=int64)
  • It's not happening for me, is this due to python or numpy version issue? – Yilun Zhang Feb 13 at 16:53
  • On windows with python 2.7, I get np.array((1650, 2300, 2560, 3710)).dtype == 'int32', i guess you get 'int64' on your machine? – Jonas Adler Feb 13 at 16:55
  • It's possible, getting int64 on Linux. – Jutorres Feb 13 at 16:57
  • 1
    @YilunZhang numpy uses C language long as default int type. I think OP's machine has long only 32-bit. – liliscent Feb 13 at 16:57
  • Is the C language "long" changeable from 32-bit to 64-bit? – D Collins Feb 13 at 17:05

Your problem is caused by 32-bit integer overflow. If you want to handle all big integers, use dtype=np.object. Of course there will be some performance penalty:

y = np.array((1650, 2300, 2560, 3710),dtype=np.object) * 10000000000000
  • That approach did indeed produce the intended "magnified" array, but unfortunately, as an 'object' dtype (I suppose) I wasn't able to take the log of the array elements. But taking the logs in vectorized fashion (np.log(y)) worked fine when setting up y as dtype=int64. – D Collins Feb 13 at 17:09
  • It always depends on your need. int64 will also overflow, but object will never. Try: np.array((1650, 2300, 2560, 3710),dtype=np.int64) * 100000000000000000, similar situations to your original question occur because of int64 overflow. – liliscent Feb 13 at 17:17

Your values are looping around because they are bigger than the maximum int.

You can use int64 to get more range (will also use more memory):

y = np.array((1650, 2300, 2560, 3710), dtype=np.int64)

See all the available types here.

Your Answer


By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

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