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Say I have a list of items:

x = [1, 2, 3, 4, 5]

I need to perform some functions for each of these items. In a certain case, I need to return the index of an item.

Which is the best and most efficient way?

for item in list:


for i in range(len(list)):
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please search the forum beofre posting. This has been answered a million times –  sulabh Jun 7 '12 at 10:13
possible duplicate of Iterate a list with indexes in python –  jamylak Jun 7 '12 at 10:21
@sulabh: I fail to find the exact duplicate of this question. Please link the same. The question here i'm asking is a comparison between two different ways of iterating a list, and a suggestion of which is better. –  mankand007 Jun 7 '12 at 10:32
@mankand007 Ah I see. Well see the answer given here. You can basically tell by just looking at them. Which one looks more readable to you? Obviously the first one! In python you will usually never need to iterate over array by indices. –  jamylak Jun 7 '12 at 10:34
if this is not an exact duplicate then can people take back their downvotes please? i'm a poor person, you see... –  mankand007 Jun 7 '12 at 10:44

4 Answers 4

up vote 7 down vote accepted
for item in list:

its obviously the one with fewer function calls.

If you want to get the index of items as you go use enumerate like this

for pos, item in enumerate(collection):
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def loop_1(data):
    for i in range(len(data)):

def looper_2(data):
    for val in data:

Checking with dis gives us the following bytecode for loop_1:

 12       0 SETUP_LOOP              40 (to 43)
          3 LOAD_GLOBAL              0 (range)
          6 LOAD_GLOBAL              1 (len)
          9 LOAD_FAST                0 (data)
         12 CALL_FUNCTION            1
         15 CALL_FUNCTION            1
         18 GET_ITER            
    >>   19 FOR_ITER                20 (to 42)
         22 STORE_FAST               1 (i)

13       25 LOAD_GLOBAL              2 (print)
         28 LOAD_FAST                0 (data)
         31 LOAD_FAST                1 (i)
         34 BINARY_SUBSCR       
         35 CALL_FUNCTION            1
         38 POP_TOP             
         39 JUMP_ABSOLUTE           19
    >>   42 POP_BLOCK           
    >>   43 LOAD_CONST               0 (None)
         46 RETURN_VALUE        

The bytecode for loop_2 looks like this:

17        0 SETUP_LOOP              24 (to 27)
          3 LOAD_FAST                0 (data)
          6 GET_ITER            
    >>    7 FOR_ITER                16 (to 26)
         10 STORE_FAST               1 (val)

18       13 LOAD_GLOBAL              0 (print)
         16 LOAD_FAST                1 (val)
         19 CALL_FUNCTION            1
         22 POP_TOP             
         23 JUMP_ABSOLUTE            7
    >>   26 POP_BLOCK           
    >>   27 LOAD_CONST               0 (None)
         30 RETURN_VALUE

The second version is obviously better.

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Obviously for i in range(len(list)): will be slower - it's equivalent to this:

list2 = range(len(list))

for i in list2:

If that were faster, then this would be even faster, right?

list2 = range(len(list))
list3 = range(len(list2))
list4 = range(len(list3))

for i in list4:
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Another possible solution would be to use numpy which would be very efficient, for large lists perhaps even more efficient than a list comprehension or a for loop.

import numpy as np

a = np.arange(5.0)   # a --> array([0., 1., 2., 3., 4.])

# numpy operates on arrays element by element 
b =3.*a              # b --> array([0., 3., 6., 9., 12.])

This is a pretty simple operation but you can get more complex using an array as simply an argument in a formula. For large arrays this can be much faster than a list comprehension and it makes the code cleaner and easier to read (no need to create a function to map in a list comprehension). You can also use indexing and slicing to tailor what you want to do:

If you want to have access to the actual index positions use ndenumerate

# b is as above
for i, x in np.ndenumerate(b):
    print i, x

The output of this for loop is:

(0,) 0.0 
(1,) 3.0 
(2,) 6.0 
(3,) 9.0 
(4,) 12.0 

NOTE: the index returned as a tuple by numpy to handle additional dimensions. Here we only have a single dimension so you'd have to unpack the tuple to get the index of the element.

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Can you add any details about this? –  Hotloo Xiranood Jun 7 '12 at 20:50

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