21

As far as I can tell, this is not officially not possible, but is there a "trick" to access arbitrary non-sequential elements of a list by slicing?

For example:

>>> L = range(0,101,10)
>>> L
[0, 10, 20, 30, 40, 50, 60, 70, 80, 90, 100]

Now I want to be able to do

a,b = L[2,5]

so that a == 20 and b == 50

One way besides two statements would be something silly like:

a,b = L[2:6:3][:2]

But that doesn't scale at all to irregular intervals.

Maybe with list comprehension using the indices I want?

[L[x] for x in [2,5]]

I would love to know what is recommended for this common problem.

  • 6
    a,b = L[2],L[5]? – roippi Oct 2 '13 at 1:18
  • @roippi - That does make it look simple, but I wanted to apply this directly to the output of a function that returns a list, without calling the function twice or re-assigning that to a variable and then grabbing. – beroe Oct 2 '13 at 1:28
  • 1
    I'm inclined to say that your list comprehension is the best you can do. Or, if you don't need an actual list, use a generator expression, like in Shashank Gupta's answer (though if you only need it once, you could just put the genexp inline, rather than making a function to return it). – Blckknght Oct 2 '13 at 2:07
9

Something like this?

def select(lst, *indices):
    return (lst[i] for i in indices)

Usage:

>>> def select(lst, *indices):
...     return (lst[i] for i in indices)
...
>>> L = range(0,101,10)
>>> a, b = select(L, 2, 5)
>>> a, b
(20, 50)

The way the function works is by returning a generator object which can be iterated over similarly to any kind of Python sequence.

As @justhalf noted in the comments, your call syntax can be changed by the way you define the function parameters.

def select(lst, indices):
    return (lst[i] for i in indices)

And then you could call the function with:

select(L, [2, 5])

or any list of your choice.

Update: I now recommend using operator.itemgetter instead unless you really need the lazy evaluation feature of generators. See John Y's answer.

  • 1
    Do you think defining the function as select(lst, indices) and calling it as select(L, [2,5]) would be better? – justhalf Oct 2 '13 at 1:47
  • @justhalf Yeah that's possible as well, I'll make a note. – Shashank Oct 2 '13 at 1:50
  • @Shashank quick question. the "*indices" argument it's just "*args" right? but with a different name? – Halcyon Abraham Ramirez Jun 21 '15 at 0:44
  • @HalcyonAbrahamRamirez Yes, exactly. :) This is a very old answer however, and I would recommend using operator.itemgetter instead unless the lazy-evaluation feature of generators is required. – Shashank Jun 21 '15 at 20:35
26

Probably the closest to what you are looking for is itemgetter (or look here for Python 2 docs):

>>> L = list(range(0, 101, 10))  # works in Python 2 or 3
>>> L
[0, 10, 20, 30, 40, 50, 60, 70, 80, 90, 100]
>>> from operator import itemgetter
>>> itemgetter(2, 5)(L)
(20, 50)
  • 2
    @justhalf: Well, itemgetter is very similar to Shashank's answer, except already included in the Python standard library. – John Y Oct 2 '13 at 3:35
  • It is a nice solution toto, but I think the extra up votes are because it came in slightly sooner... I ultimately chose the one that doesn't require an import even though it mainly wrapped the OP in a function definition. – beroe Oct 2 '13 at 14:04
  • 4
    @beroe: It's still getting more new votes even after you accepted the other answer, so the earlier time has nothing to do with it. I believe the reason my answer is getting more votes is that experienced Python programmers will usually prefer to use itemgetter than to define a new function. One import is shorter and simpler than one function definition. – John Y Oct 2 '13 at 14:38
  • Makes sense. I like it as a solution. (I voted for it too ;^) – beroe Oct 2 '13 at 18:42
  • For Python 3, the first line would change to >>> L = list(range(0, 101, 10)) to perform the "identical" operation. – Mike Williamson Jun 27 '18 at 15:50
11

If you can use numpy, you can do just that:

>>> import numpy
>>> the_list = numpy.array(range(0,101,10))
>>> the_indices = [2,5,7]
>>> the_subset = the_list[the_indices]
>>> print the_subset, type(the_subset)
[20 50 70] <type 'numpy.ndarray'>
>>> print list(the_subset)
[20, 50, 70]

numpy.array is very similar to list, just that it supports more operation, such as mathematical operations and also arbitrary index selection like we see here.

  • 3
    This should be the accepted answer I feel. – Pramit Feb 15 '17 at 0:41
  • 2
    I think the reason it is not the accepted answer is because (a) it has more bloat, and (b) it is less generalized. (a): numpy is a huge library, and this answer pulls the whole thing in. (Perhaps from numpy import array?) (b): numpy is specifically for mathematical operations, so is less familiar to folks who focus on, for instance, back-end web development. itemgetter is closer to "bare" Python that reaches a wider audience. – Mike Williamson Jun 27 '18 at 15:49
  • 1
    from numpy import array will still load the whole numpy package, I believe. But you're right, this might be overkill if the list is not used for math operations. – justhalf Jun 27 '18 at 18:08
3

Just for completeness, the method from the original question is pretty simple. You would want to wrap it in a function if L is a function itself, or assign the function result to a variable beforehand, so it doesn't get called repeatedly:

[L[x] for x in [2,5]]

Of course it would also work for a string...

["ABCDEF"[x] for x in [2,0,1]]
['C', 'A', 'B']
1

None of the other answers will work for multidimensional object slicing. IMHO this is the most general solution (uses numpy):

numpy.ix_ allows you to select arbitrary indices in all dimensions of an array simultaneously.

e.g.:

>>> a = np.arange(10).reshape(2, 5) # create an array
>>> a
array([[0, 1, 2, 3, 4],
       [5, 6, 7, 8, 9]])
>>> ixgrid = np.ix_([0, 1], [2, 4]) # create the slice-like grid
>>> ixgrid
(array([[0],
       [1]]), array([[2, 4]]))
>>> a[ixgrid]                       # use the grid to slice a
array([[2, 4],
       [7, 9]])
  • Yes it is too bad python doesn’t have better basic support of array-type data without requiring numpy – beroe Jun 5 '18 at 3:52

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