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I am trying to run some code (which is not mine), where is used 'stack' from numpy library.

Looking into documentation, stack really exists in numpy: https://docs.scipy.org/doc/numpy-1.10.1/reference/generated/numpy.stack.html

but when I run the code, I got:

AttributeError: 'module' object has no attribute 'stack'

any idea how to fix this. code extract:

s_t = np.stack((x_t, x_t, x_t, x_t), axis = 2)

do I need some old libraries?

Thanks.

EDIT: for some reason, python uses older version of numpy library. pip2 freeze prints "numpy==1.10.4". I've also reinstalled numpy and I've got "Successfully installed numpy-1.10.4", but printing np.version.version in code gives me 1.8.2.

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  • How do you import numpy?
    – ljk321
    Feb 20, 2016 at 1:26
  • It is only present since numpy 1.10 ... you are probably using an older version Feb 20, 2016 at 1:27
  • as usual: import numpy as np Feb 20, 2016 at 1:28
  • You missed the fine print New in version 1.10.0. you probably have an older version of numpy import numpy as np then np.version.version will give you the info
    – user1121588
    Feb 20, 2016 at 1:28
  • from pip freeze: numpy==1.10.4 Feb 20, 2016 at 1:29

2 Answers 2

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The function numpy.stack is new; it appeared in numpy == 1.10.0. If you can't get that version running on your system, the code can be found at (near the end)

https://github.com/numpy/numpy/blob/f4cc58c80df5202a743bddd514a3485d5e4ec5a4/numpy/core/shape_base.py

I need to examine it a bit more, but the working part of the function is:

sl = (slice(None),) * axis + (_nx.newaxis,)
expanded_arrays = [arr[sl] for arr in arrays]
return _nx.concatenate(expanded_arrays, axis=axis)

So it adds a np.newaxis to each array, and then concatenate on that. So like, vstack, hstack and dstack it adjusts the dimensions of the inputs, and then uses np.concatenate. Nothing particularly new or magical.

So if x is (2,3) shape, x[:,np.newaxis] is (2,1,3), x[:,:,np.newaxis] is (2,3,1) etc.

If x_t is 2d, then

np.stack((x_t, x_t, x_t, x_t), axis = 2)

is probably the equivalent of

np.dstack((x_t, x_t, x_t, x_t))

creating a new array that has size 4 on axis 2.

Or:

tmp = x_t[:,:,None]
np.concatenate((tmp,tmp,tmp,tmp), axis=2)
3

It is likely have 2 numpy libraries, one in your System libraries, and the other in your python's site packages which is maintained by pip. You have a few options to fix this.

  • You should reorder the libraries in sys.path so your pip installed numpy library comes in front the native numpy library. Check this out to fix your path permanently.

  • Also look into virtualenv or Anaconda, which will allow you to work with specific versions of a package when you have multiple versions on your system.

  • Here's another suggestion about how to ensure pip installs the library on your user path (System Library).

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