I am slowly trying to understand the difference between
copys in numpy, as well as mutable vs. immutable types.
If I access part of an array with 'advanced indexing' it is supposed to return a copy. This seems to be true:
In : import numpy as np In : a = np.zeros((3,3)) In : b = np.array(np.identity(3), dtype=bool) In : c = a[b] In : c[:] = 9 In : a Out: array([[ 0., 0., 0.], [ 0., 0., 0.], [ 0., 0., 0.]])
c is just a copy, it does not share data and changing it does not mutate
a. However, this is what confuses me:
In : a[b] = 1 In : a Out: array([[ 1., 0., 0.], [ 0., 1., 0.], [ 0., 0., 1.]])
So, it seems, even if I use advanced indexing, assignment still treats the thing on the left as a view. Clearly the
a in line 2 is the same object/data as the
a in line 6, since mutating
c has no effect on it.
So my question: is the
a in line 8 the same object/data as before (not counting the diagonal of course) or is it a copy? In other words, was
a's data copied to the new
a, or was its data mutated in place?
For example, is it like:
x = [1,2,3] x += 
y = (1,2,3) y += (4,)
I don't know how to check for this because in either case,
True. Please feel free to elaborate or answer a different question if I'm thinking about this in a confusing way.