Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I have a 2-dimensional array that represents a mask of a 3-dimensional array, and can be broadcast as such. e.g.:

>>> mask.shape
(101, 100)
>>> cube.shape
(500, 101, 100)

What is the best way to create a broadcastable object like mask (which is an array) that can be indexed with the same views as cube, returning the same mask? i.e.:

>>> cube[100,:,:]
<some image>
>>> mask[100,:,:]

so mask[n,:,:] would return mask for any n, or better yet any n that could be used to index cube.

Importantly, I want to do this without making mask larger in memory (e.g., by doing bigger_mask = np.ones([500,1,1])*self._mask[None,:,:])

share|improve this question
up vote 2 down vote accepted

Something like this?

>>> from numpy.lib.stride_tricks import as_strided
>>> mask = np.random.randint(2, size=(101, 100)).astype(bool)
>>> mask_view  = as_strided(mask, shape=(500,)+mask.shape,
...                         strides=(0,)+mask.strides)
>>> mask_view.shape
(500, 101, 100)
>>> np.array_equal(mask_view[0], mask_view[499])
>>> np.all(mask_view == 0)
>>> mask[:] = 0
>>> np.all(mask_view == 0)
share|improve this answer
This looks great, but it seems that it is still replicating mask 500 times in memory: >>> mask_view.nbytes 5050000 >>> mask.nbytes 10100. Am I misinterpreting what nbytes returns? – keflavich Aug 24 '14 at 7:39
This is the definition in the C source code of how .size and .nbytes are calculated. It only looks at the shape, but not at the strides, so it does not necessarily represent the actual memory used up. You can check that no extra memory is used by making the first dimension larger that what your RAM would accomodate. – Jaime Aug 24 '14 at 7:57

lib.stride_tricks makes broadcast_arrays available at the np level. It uses as_strided as in Jamie's answer, but does not require knowledge of striding.

mask1,cube1 =np.broadcast_arrays(mask, cube)
# (500, 101, 100)
# (101, 100)

mask1 shares data with mask:

In [13]: mask1.__array_interface__
{'data': (169145016, False),
 'descr': [('', '<f8')],
 'shape': (500, 101, 100),
 'strides': (0, 800, 8),
 'typestr': '<f8',
 'version': 3}
In [14]: mask.__array_interface__
{'data': (169145016, False),
 'descr': [('', '<f8')],
 'shape': (101, 100),
 'strides': None,
 'typestr': '<f8',
 'version': 3}
share|improve this answer
This is good, but it requires me to have the whole cube in memory – keflavich Aug 24 '14 at 7:57
It's a view, not a copy. – hpaulj Aug 24 '14 at 15:05
But the cube object has to exist. I suppose if it's a memmap'd array, it doesn't have to be in memory, but it still has to exist. – keflavich Aug 24 '14 at 18:38

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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