Take this code:

import itertools as it
import numpy as np
data = ['a','b','c','d']
dw = np.array([1, 3], dtype=np.int64)

On Python 2.7 it prints ['b', 'c',] as expected.

On Python 3.6 it throws an exception:

ValueError: Stop argument for islice() must be None or an integer: 0 <= x <= sys.maxsize.

The same goes for np.int32, and other methods of the itertools package throw similar errors, e.g. when you use permutations you get TypeError: Expected int as r.

I couldn't find much on this apart from this numpy issue and related ones, but that one was closed 3 years ago implying it was solved.

And basic things like indexing with numpy ints data[dw[0]] or boolean comparisons like dw[0] == 1 work just fine.

Am I missing something? Could this be a Python 3 bug?

  • the simplest fix would be to use type casting: int(dw[0]), int(dw[1]) – TheDarkKnight Jun 1 '17 at 10:15
  • Even where it works, py2.7, the use an array instead of a list will slower. – hpaulj Jun 1 '17 at 10:24
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    Exactly the sort of thing that makes me hate Python. – curious_cat Jun 1 '17 at 20:15

a numpy.int64 is apparently not a subclass of int

a, b = dw[0], dw[1]



isinstance(a, int)


Numpy documentation

The documentation mentions this explicitly


The int_ type does not inherit from the int built-in under Python 3, because type int is no longer a fixed-width integer type.


print(list(it.islice(data, int(dw[0]) , int(dw[1]), 1)))

or numpy slicing

  • 1
    So why does itertools.islice require ints while regular list slicing is fine without them (e.g. data[dw[0]])? – Chris_Rands Jun 1 '17 at 9:25
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    @Chris_Rands: Regular list slicing and indexing supports anything that implements the __index__ method. NumPy integer types implement that method. – Mark Dickinson Jun 1 '17 at 10:03
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    @MarkDickinson Thank you; is there a reason for that design? Why not let islice support anything with the __index__ method too? Although perhaps there is no real need for this given how easy it is to cast to int... – Chris_Rands Jun 1 '17 at 10:21
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    @Chris_Rands: I think that's a question for bugs.python.org. – Mark Dickinson Jun 1 '17 at 10:28
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    @MarkDickinson Ok, a bug issue has been raised (not by me) bugs.python.org/issue30537 – Chris_Rands Jun 1 '17 at 14:01

I'm not sure if it's a bug in Python 3 or not, but it looks like the behaviour has changed since 2.7. As the numpy issue you linked described, under py27, either numpy.int32 or numpy.int64 would appear to be a subclass of int (depending on whether you use a 32- or 64-bit build of Python); under py3, the types are no longer related (numpy has fixed-width numeric types, python's int is variable-width).

The implementation of itertools.islice requires its arguments to be objects of type PyLong (which is the Python API name for the Python int type). Specifically, it calls PyLong_AsSize_t, which converts a Python object into a C size_t value. This method seems to require that its argument is actually a Python int object, since it calls PyLong_Check. I think this method is broadly equivalent to Python's isinstance(obj, int), which explains the difference in behaviour between py2 and py3 here.

Normal list indexing uses another more tolerant method to coerce arguments into positive integer values, called PyNumber_AsSsize_t. This checks if its argument is an int, and, if not, falls back to trying to call its argument's __index__ method; as @MarkDickinson points out, numpy's numeric types implement this method, so everything works fine. Perhaps this would be a more intuitive thing for itertools.islice to do.

  • Given that things like indexing or boolean comparisons work just fine shouldn't this considered to be a bug? Apparently many more basic functionalities are implemented in a way that works. – Khris Jun 1 '17 at 9:43
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    @Khris I'm personally inclined to view this as a shortcoming of islice, yes. It would seem more sensible to have islice consume any argument which is in some way "numeric" (including, for example, the base type np.integer). – wildwilhelm Jun 1 '17 at 9:49

This looks like a case for the __index__ magic method (which numpy's integers already implement). I suggest raising an issue on the tracker, requesting this as an enhancement - that islice accept any object that implements __index__.


If you want to keep a islice/slice-like object, use np.s_:

slice = np.s_[dw[0]: dw[1]: 1]

['b', 'c']

since np.s_ is a numpy object, it doesn't mind the numpy integers.

  • Regular slicing was never an issue; list(it.islice(data,np.s_[dw[0]])) still fails – Chris_Rands Jun 1 '17 at 9:23
  • The point is to skip creating an iterable object altogether and use a numpy object with equivalent function. The reason why itertools fails is covered in other answers. – Daniel F Jun 1 '17 at 9:42
  • But simply data[dw[0]:dw[1]] works – Chris_Rands Jun 1 '17 at 9:44
  • Thus the introductory phrase "If you want to keep a slice-like object". i.e. if you're going to be using that slice on a bunch of different lists – Daniel F Jun 1 '17 at 9:46
  • But then why not just use slice() like a = slice(dw[0],dw[1]); data[a]? – Chris_Rands Jun 1 '17 at 9:49

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