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I am slowly trying to understand the difference between views and 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 [1]: import numpy as np
In [2]: a = np.zeros((3,3))
In [3]: b = np.array(np.identity(3), dtype=bool)

In [4]: c = a[b]

In [5]: c[:] = 9

In [6]: a
array([[ 0.,  0.,  0.],
       [ 0.,  0.,  0.],
       [ 0.,  0.,  0.]])

Since c is just a copy, it does not share data and changing it does not mutate a. However, this is what confuses me:

In [7]: a[b] = 1

In [8]: a
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 += [4]

or like:

y = (1,2,3)
y += (4,)

I don't know how to check for this because in either case, a.flags.owndata is True. Please feel free to elaborate or answer a different question if I'm thinking about this in a confusing way.

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up vote 5 down vote accepted

When you do c = a[b], a.__get_item__ is called with b as its only argument, and whatever gets returned is assigned to c.

When you doa[b] = c, a.__setitem__ is called with b and c as arguments and whatever gets returned is silently discarded.

So despite having the same a[b] syntax, both expressions are doing different things. You could subclass ndarray, overload this two functions, and have them behave differently. As is by default in numpy, the former returns a copy (if b is an array) but the latter modifies a in place.

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I think it whould be worth to point out explicitly in numpy documentation the fact that even advanced indexing when used as lvalue will modify the original array. – vehsakul Apr 18 '14 at 21:13

Yes, it is the same object. Here's how you check:

>>> a
array([[ 0.,  0.,  0.],
       [ 0.,  0.,  0.],
       [ 0.,  0.,  0.]])
>>> a2 = a
>>> a[b] = 1
>>> a2 is a
>>> a2
array([[ 1.,  0.,  0.],
       [ 0.,  1.,  0.],
       [ 0.,  0.,  1.]])

Assigning to some expression in Python is not the same as just reading the value of that expression. When you do c = a[b], with a[b] on the right of the equals sign, it returns a new object. When you do a[b] = 1, with a[b] on the left of the equals sign, it modifies the original object.

In fact, an expression like a[b] = 1 cannot change what name a is bound to. The code that handles obj[index] = value only gets to know the object obj, not what name was used to refer to that object, so it can't change what that name refers to.

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