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I'm using python to analyse some large files and I'm running into memory issues, so I've been using sys.getsizeof() to try and keep track of the usage, but it's behaviour with numpy arrays is bizarre. Here's an example involving a map of albedos that I'm having to open:

>>> import numpy as np
>>> import struct
>>> from sys import getsizeof
>>> f = open('Albedo_map.assoc', 'rb')
>>> getsizeof(f)
144
>>> albedo = struct.unpack('%df' % (7200*3600), f.read(7200*3600*4))
>>> getsizeof(albedo)
207360056
>>> albedo = np.array(albedo).reshape(3600,7200)
>>> getsizeof(albedo)
80

Well the data's still there, but the size of the object, a 3600x7200 pixel map, has gone from ~200 Mb to 80 bytes. I'd like to hope that my memory issues are over and just convert everything to numpy arrays, but I feel that this behaviour, if true, would in some way violate some law of information theory or thermodynamics, or something, so I'm inclined to believe that getsizeof() doesn't work with numpy arrays. Any ideas?

  • 8
    From the docs on sys.getsizeof: "Return the size of an object in bytes. The object can be any type of object. All built-in objects will return correct results, but this does not have to hold true for third-party extensions as it is implementation specific. Only the memory consumption directly attributed to the object is accounted for, not the memory consumption of objects it refers to." – Joel Cornett Aug 2 '12 at 19:24
  • 1
    This makes getsizeof an unreliable indicator of memory consumption, especially for 3rd party extensions. – Joel Cornett Aug 2 '12 at 19:25
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    Basically, the issue here is that resize is returning a view, not a new array. You're getting the size of the view, not the actual data. – mgilson Aug 2 '12 at 19:26
195

You can use array.nbytes for numpy arrays, for example:

>>> import numpy as np
>>> from sys import getsizeof
>>> a = [0] * 1024
>>> b = np.array(a)
>>> getsizeof(a)
8264
>>> b.nbytes
8192
  • Its sys.getsizeof(a), after doing import sys. – eddys Feb 1 '18 at 10:52
4

The field nbytes will give you the size in bytes of all the elements of the array in a numpy.array:

size_in_bytes = my_numpy_array.nbytes

Notice that this does not measures "non-element attributes of the array object" so the actual size in bytes can be a few bytes larger than this.

  • This answer still creates an array, so I think you mean "without the need to convert from a list to an array". Although it is true that GWW's answer first creates a list and then converts it to an array, that's beside the point, since the OP already has an array... The point is how to get the size of a numpy array, so it's not critical how you got the array in the first place. One could similarly criticize this answer by saying that it reshapes an existing array. – Moot Jun 17 '18 at 14:11
  • Hello @Moot, thanks for the comment. The question is about how to get the size in bytes of an array. While is true that my snippet first creates an array, it is only for the purpose of having a complete example that can be executed. I will edit my answer to stress this. – El Marce Jun 18 '18 at 15:07

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