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Given a list, e.g. x = [True]*20, I want to assign False to every other element.

x[::2] = False

raises TypeError: must assign iterable to extended slice

So I naively assumed you could do something like this:

x[::2] = itertools.repeat(False)


x[::2] = itertools.cycle([False])

However, as far as I can tell, this results in an infinite loop. Why is there an infinite loop? Is there an alternative approach that does not involve knowing the number of elements in the slice before assignment?

EDIT: I understand that x[::2] = [False] * len(x)/2 works in this case, or you can come up with an expression for the multiplier on the right side in the more general case. I'm trying to understand what causes itertools to cycle indefinitely and why list assignment behaves differently from numpy array assignment. I think there must be something fundamental about python I'm misunderstanding. I was also thinking originally there might be performance reasons to prefer itertools to list comprehension or creating another n-element list.

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5 Answers 5

up vote 2 down vote accepted

As Mark Tolonen pointed out in a concise comment, the reason why your itertools attempts are cycling indefinitely is because, for the list assignment, python is checking the length of the right hand side.

Now to really dig in...

When you say:

x[::2] = itertools.repeat(False)

The left hand side (x[::2]) is a list, and you are assigning a value to a list where the value is the itertools.repeat(False) iterable, which will iterate forever since it wasn't given a length (as per the docs).

If you dig into the list assignment code in the cPython implementation, you'll find the unfortunately/painfully named function list_ass_slice, which is at the root of a lot of list assignment stuff. In that code you'll see this segment:

v_as_SF = PySequence_Fast(v, "can only assign an iterable");
if(v_as_SF == NULL)
    goto Error;
n = PySequence_Fast_GET_SIZE(v_as_SF);

Here it is trying to get the length (n) of the iterable you are assigning to the list. However, before even getting there it is getting stuck on PySequence_Fast, where it ends up trying to convert your iterable to a list (with PySequence_List), within which it ultimately creates an empty list and tries to simply extend it with your iterable.

To extend the list with the iterable, it uses listextend(), and in there you'll see the root of the problem:

/* Run iterator to exhaustion. */
for (;;) {

and there you go.

Or least I think so... :) It was an interesting question so I thought I'd have some fun and dig through the source to see what was up, and ended up there.

As to the different behaviour with numpy arrays, it will simply be a difference in how the numpy.array assignments are handled.

Note that using itertools.repeat doesn't work in numpy, but it doesn't hang up (I didn't check the implementation to figure out why):

>>> import numpy, itertools
>>> x = numpy.ones(10,dtype='bool')
>>> x[::2] = itertools.repeat(False)
>>> x
array([ True,  True,  True,  True,  True,  True,  True,  True,  True,  True], dtype=bool)
>>> #but the scalar assignment does work as advertised...
>>> x = numpy.ones(10,dtype='bool')
>>> x[::2] = False
>>> x
array([False,  True, False,  True, False,  True, False,  True, False,  True], dtype=bool)
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What you are attempting to do in this code is not what you think (i suspect) for instance:
x[::2] will return a slice containing every odd element of x, since x is of size 20,
the slice will be of size 10, but you are trying to assign a non-iterable of size 1 to it.

to successfully use the code you have you will need to do:

x = [True]*20
x[::2] = [False]*10

wich will assign an iterable of size 10 to a slice of size 10.

Why work in the dark with the number of elements? use


which would be equal to 10, and then use

x[::2] = [False]*len(x[::2])

you could also do something like:

x = [True if (index & 0x1 == 0) else False for index, element in enumerate(x)]

EDIT: Due to OP edit

The documentation on cycle says it Repeats indefinitely. which means it will continuously 'cycle' through the iterator it has been given.

Repeat has a similar implementation, however documentation states that it
Runs indefinitely unless the times argument is specified.
which has not been done in the questions code. Thus both will lead to infinite loops.

About the itertools being faster comment. Yes itertools are generally faster than other implementations because they are optimised to be as fast as the creators could make them.

However if you do not want to recreate a list you can use generator expressions such as the following:

x = (True if (index & 0x1 == 0) else False for index, element in enumerate(x))

which do not store all of their elements in memory but produce them as they are needed, however, generator functions can be used up.

for instance:

x = [True]*20
y = (True if (index & 0x1 == 0) else False for index, element in enumerate(x))
print ([a for a in y])
print ([a for a in y])

will print x then the elements in the generator y, then a null list, because the generator has been used up.

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That is precisely what I want to do. I'm coming from the perspective of a numpy user. If you have x=numpy.ones(10,dtype='bool'), x[::2]=False sets the 0,2,4,6,8'th elements of the array to False. I'd like to know why the equivalent fails for lists, even with itertools. –  keflavich Dec 1 '11 at 4:45
numPy treats things differently to normal python, with good reason usually, but in this case, x[::2] is returning a list of size x/2 with 0,2,4,6,8...th elements in it. To do it the normal python way, use the list comprehension for flexability. –  Serdalis Dec 1 '11 at 4:47

Try this:

l = len(x)
x[::2] = itertools.repeat(False, l/2 if l % 2 == 0 else (l/2)+1)

Your original solution ends up in an infinite loop because that's what repeat is supposed to do, from the documentation:

Make an iterator that returns object over and over again. Runs indefinitely unless the times argument is specified.

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Why is the x[::2] asking for assignment infinitely? There are only (in my original example) 10 elements that need assignment. Why doesn't that set a limit on the itertools calls? –  keflavich Dec 1 '11 at 4:46
No, repeat produces an infinite number of elements before it tries to assign it (therefore, we must limit the number of elements produced). For the assignment to x[::2] to work, you must pass the exact number of elements that you want to assign to the slice, –  Óscar López Dec 1 '11 at 4:50
What about cycle? I've used it before, and in other uses I've seen it generate new elements only when called. –  keflavich Dec 1 '11 at 4:54
The documentation also states that cycle "repeats indefinitely" –  Óscar López Dec 1 '11 at 5:05
@keflavich, In x[::2] = y, y must be the same length as the slice, so Python has to iterate y to see how many items are in it. Since cycle/repeat produce indefinitely, you get an infinite loop. When you use cycle/repeat in something like zip([1,2,3],repeat(1)), zip stops calling repeat once it reaches the end of the first sequence. –  Mark Tolonen Dec 1 '11 at 5:34

The slice x[::2] is exactly len(x)/2 elements long, so you could achieve what you want with:

x[::2] = [False]*(len(x)/2)

The itertools.repeat and itertools.cycle methods are designed to yield values infinitely. However you can specify a limit on repeat(). Like this:

x[::2] = itertools.repeat(False, len(x)/2)
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The right hand side of an extended slice assignment needs to be an iterable of the right size (ten, in this case).

Here is it with a regular list on the righthand side:

>>> x = [True] * 20
>>> x[::2] = [False] * 10
>>> x
[False, True, False, True, False, True, False, True, False, True, False, True, False, True, False, True, False, True, False, True]

And here it is with itertools.repeat on the righthand side.

>>> from itertools import repeat
>>> x = [True] * 20
>>> x[::2] = repeat(False, 10)
>>> x
[False, True, False, True, False, True, False, True, False, True, False, True, False, True, False, True, False, True, False, True]
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