In the following example:
>>> import numpy as np >>> a = np.arange(10) >>> b = a[:,np.newaxis] >>> c = b.ravel() >>> np.may_share_memory(a,c) False
numpy.ravel returning a copy of my array? Shouldn't it just be returning
I just discovered that
np.squeeze doesn't return a copy.
>>> b = a[:,np.newaxis] >>> c = b.squeeze() >>> np.may_share_memory(a,c) True
Why is there a difference between
ravel in this case?
As pointed out by mgilson,
newaxis marks the array as discontiguous, which is why
ravel is returning a copy.
So, the new question is why is
newaxis marking the array as discontiguous.
The story gets even weirder though:
>>> a = np.arange(10) >>> b = np.expand_dims(a,axis=1) >>> b.flags C_CONTIGUOUS : True F_CONTIGUOUS : False OWNDATA : False WRITEABLE : True ALIGNED : True UPDATEIFCOPY : False >>> c = b.ravel() >>> np.may_share_memory(a,c) True
According to the documentation for
expand_dims, it should be equivalent to