180

I would like to index a list with another list like this

L = ['a', 'b', 'c', 'd', 'e', 'f', 'g', 'h']
Idx = [0, 3, 7]
T = L[ Idx ]

and T should end up being a list containing ['a', 'd', 'h'].

Is there a better way than

T = []
for i in Idx:
    T.append(L[i])

print T
# Gives result ['a', 'd', 'h']
2
  • 5
    It is really bizarre that L[idx] doesn't just work in base Python. Zen of python and all that. In numpy, things like this work just fine.
    – eric
    Oct 31, 2020 at 15:19
  • @eric A numpy array is vastly different from a CPython list object
    – user7811364
    Nov 2, 2021 at 15:16

8 Answers 8

304
T = [L[i] for i in Idx]
5
  • 11
    Is this faster than a for-loop or only shorter? Jun 18, 2009 at 11:44
  • 13
    @daniel: both + recommended Jun 18, 2009 at 11:50
  • 20
    A quick timing test (no pysco or anything, so make of it what you will) showed the list comprehension 2.5x faster than the loop (1000 elements, repeated 10000 times). Jun 18, 2009 at 12:00
  • 3
    (using map and a lambda is even slower - to be expected, since it calls a function for each iteration) Jun 18, 2009 at 12:03
  • +1 If the indexing list is arbitrary, then a list comrpehension is the way. I think though that, when possible, which seems not to be the case here, slices are even faster.
    – Jaime
    Jun 18, 2009 at 12:53
48

If you are using numpy, you can perform extended slicing like that:

>>> import numpy
>>> a=numpy.array(['a', 'b', 'c', 'd', 'e', 'f', 'g', 'h'])
>>> Idx = [0, 3, 7]
>>> a[Idx]
array(['a', 'd', 'h'], 
      dtype='|S1')

...and is probably much faster (if performance is enough of a concern to to bother with the numpy import)

3
  • 5
    My quick timeit test showed that using np.array is actually almost 3 times slower (including the conversion to array). Aug 10, 2016 at 3:57
  • It works better if you need to convert it for array operations anyways. Too time-consuming for regular list operations.
    – frankliuao
    Jan 3, 2019 at 19:25
  • I tried this approach, i.e. replace list with np.array, but np.append did not work correctly (i.e. the same results as for lists) when the elements themselves were jagged arrays. Jan 14 at 16:30
11

A functional approach:

a = [1,"A", 34, -123, "Hello", 12]
b = [0, 2, 5]

from operator import itemgetter

print(list(itemgetter(*b)(a)))
[1, 34, 12]
1
  • This won't work if b happens to contain just one item.
    – blhsing
    Dec 19, 2019 at 23:31
9
T = map(lambda i: L[i], Idx)
1
  • 6
    needed to be converted to list in py3k Jun 18, 2009 at 11:53
9

I wasn't happy with any of these approaches, so I came up with a Flexlist class that allows for flexible indexing, either by integer, slice or index-list:

class Flexlist(list):
    def __getitem__(self, keys):
        if isinstance(keys, (int, slice)): return list.__getitem__(self, keys)
        return [self[k] for k in keys]

Which, for your example, you would use as:

L = Flexlist(['a', 'b', 'c', 'd', 'e', 'f', 'g', 'h'])
Idx = [0, 3, 7]
T = L[ Idx ]

print(T)  # ['a', 'd', 'h']
3
  • which also demonstrates the power and flexibility of Python!
    – crowie
    Jun 27, 2018 at 6:06
  • It's so easy to extend this as well for existing code. Simply call existing_list = Flexlist(existing_list) and we have the required functionality without breaking any code
    – Yesh
    Jan 9, 2020 at 5:53
  • I did self[int(k)] instead, so that I could use np.arrays as indices too. Otherwise, you will get an np.int64 is not iterable error. Jan 14 at 16:58
3

You could also use the __getitem__ method combined with map like the following:

L = ['a', 'b', 'c', 'd', 'e', 'f', 'g', 'h']
Idx = [0, 3, 7]
res = list(map(L.__getitem__, Idx))
print(res)
# ['a', 'd', 'h']
1
L= {'a':'a','d':'d', 'h':'h'}
index= ['a','d','h'] 
for keys in index:
    print(L[keys])

I would use a Dict add desired keys to index

1

My problem: Find indexes of list.

L = makelist() # Returns a list of different objects
La = np.array(L, dtype = object) # add dtype!
for c in chunks:
    L_ = La[c] # Since La is array, this works.

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