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why do the following lines not work as I expect?

import numpy as np
a = np.array([0,1,2,1,1])
a[a==1][1:] = 3
print a
>>> [0 1 2 1 1]
# I would expect [0 1 2 3 3]

Is this a 'bug' or is there another recommended way to this?

On the other hand, the following works:

a[a==1] = 3
print a
>>> [0 3 2 3 3]

Cheers, Philipp

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up vote 5 down vote accepted

It appears you simply can't do an assignment through a double-slice like that.

This works though:

a[numpy.where(a==1)[0][1:]] = 3
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It's related to how fancy indexing works. There is a thorough explanation here. It is done this way to allow inplace modification with fancy indexing (ie a[x>3] *= 2). A consequence of this is that you can't assign to a double index as you have found. Fancy indexing always returns a copy rather than a view.

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Actually, your solution modifies the first occurrence of 1, which is not what he wants. – Dave Costa Nov 6 '09 at 14:03
Right - took it off before your comment. Ps hi Philip it's Robin! – robince Nov 6 '09 at 14:16
Hey Robin - what chance is that to meet here... Cheers from munich! – Philipp der Rautenberg Nov 6 '09 at 14:49

Because the a[a==1] part isn't actually a slice. It creates a new array. It makes sense when you think about it-- you're only taking the elements that satisfy the boolean condition (like a filter operation).

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I don't think this is quite right. If you do a[a==1] = 3, that actually changes the contents of a. – Dave Costa Nov 6 '09 at 13:47
@Dave - I think this is perimosocodiae is correct, and that your counter-example is due to something more like a hack in the numpy internals to create the appearance of an in-place operation. – tom10 Nov 6 '09 at 16:12
@tom10 - It's not a "hack". It's part of the implementation of the array class. Behavior is documented, for instance, here: scipy.org/…. "Slicing an array returns a view of it", i.e. not a copy. – Dave Costa Nov 6 '09 at 18:30
normal list works that way too -- you can assign to slices (only with iterables) l = range(10); l[5:] = range(5) – u0b34a0f6ae Nov 6 '09 at 18:52
@Dave - Certainly, a slice in numpy is a view, but a[a==1] is not a slice and not a view. – tom10 Nov 6 '09 at 21:01

This does what you want

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But that requires knowing in advance that the first occurrence of 1 is at position 1. – Dave Costa Nov 6 '09 at 14:01

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