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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']
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3 Answers

up vote 43 down vote accepted
T = [L[i] for i in Idx]
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1  
Is this faster than a for-loop or only shorter? –  Daniel Andrén Jun 18 '09 at 11:44
3  
@daniel: both + recommended –  SilentGhost Jun 18 '09 at 11:50
4  
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). –  James Hopkin Jun 18 '09 at 12:00
1  
(using map and a lambda is even slower - to be expected, since it calls a function for each iteration) –  James Hopkin Jun 18 '09 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 '09 at 12:53
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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)

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T = map(lambda i: L[i], Idx)
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needed to be converted to list in py3k –  SilentGhost Jun 18 '09 at 11:53
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