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I have a dictionary, full of items. I want to peek at a single, arbitrary item:

print "Amongst our dictionary's items are such diverse elements as: %s" % arb(dictionary)

I don't care which item. It doesn't need to be random.

I can think of many ways of implementing this, but they all seem wasteful. I am wondering if any are preferred idioms in Python, or (even better) if I am missing one.

def arb(dictionary):
# Creates an entire list in memory. Could take a while.
    return list(dictionary.values())[0]

def arb(dictionary):
# Creates an entire interator. An improvement.
    for item in dictionary.itervalues():
        return item

def arb(dictionary):
# No iterator, but writes to the dictionary! Twice!
    key, value = dictionary.popitem()
    dictionary[key] = value
    return value

I'm in a position where the performance isn't critical enough that this matters (yet), so I can be accused of premature optimization, but I am trying to improve my Python coding style, so if there is an easily understood variant, it would be good to adopt it.

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7  
What about dictionary.itervalues().next()? That would at least be better than your second arb function. –  srgerg May 15 '12 at 3:07
    
@sgerg I was going to submit that but you go ahead. :D –  jamylak May 15 '12 at 3:08
    
Do they need to be different items across call? All these will return the same item... –  the wolf May 15 '12 at 4:55
1  
Not doing extra work when you know you don't need to isn't premature optimisation. It's efficiency. –  Chris Morgan May 15 '12 at 7:29
1  
if you want to peek an item (in contrast to a value) you should use iteritems not itervalues /nitpick/ –  moooeeeep May 15 '12 at 7:49

4 Answers 4

up vote 20 down vote accepted

Similar to your second solution, but slightly more obvious, in my opinion:

return next(dictionary.itervalues())
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A lot more obvious in my opinion! –  jamylak May 15 '12 at 3:12
4  
It should be noted that this raises StopIteration if the dict is empty. –  yak May 15 '12 at 5:32
5  
But if you wanted to avoid the StopIteration, you could specify a default value, e.g. next(dictionary.itervalues(), None). –  Chris Morgan May 15 '12 at 7:21
1  
I'm not sure I see it as "a lot more obvious", but definite points for fitting in a single expression. –  Oddthinking May 15 '12 at 7:25
1  
@Oddthinking: if you are just wanting a single element from an iterator, next is the way to go. No point in for a in b: return c or having an unconditional break statement in the first iteration of the loop. –  Chris Morgan May 15 '12 at 7:35

Why not use random?

import random

def arb(dictionary):
    return random.choice(dictionary.values())

This makes it very clear that the result is meant to be purely arbitrary and not an implementation side-effect. Until performance becomes an actual issue, always go with clarity over speed.

It's a shame that dict_values don't support indexing, it'd be nice to be able to pass in the value view instead.

Update: since everyone is so obsessed with performance, the above function takes <120ms to return a random value from a dict of 1 million items. Relying on clear code is not the amazing performance hit it's being made out to be.

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2  
Where it has been specified that the selected element doesn't need to be random, this is a waste of time. A docstring (and the name!) is wholly sufficient for such observations. –  Chris Morgan May 15 '12 at 7:23
1  
If the name is 'arbitrary' and the action is to iterate through the keys, that name wouldn't be clear to me, so yes, a docstring is necessary. If you have to write a docstring to explain why your code is doing something other than it appears, maybe the answer is to write clearer code. –  Matthew Trevor May 15 '12 at 15:31
    
+1 I agree with you. –  the wolf May 15 '12 at 16:26

Avoiding the whole values/itervalues/viewvalues mess, this works equally well in Python2 or Python3

dictionary[next(iter(dictionary))]
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I believe the question has been significantly answered but hopefully this comparison will shed some light on the clean code vs time trade off:

from timeit import timeit
from random import choice
A = {x:[y for y in range(100)] for x in range(1000)}
def test_pop():
    k, v= A.popitem()
    A[k] = v

def test_iter(): k = next(A.iterkeys())

def test_list(): k = choice(A.keys())

def test_insert(): A[0] = 0

if __name__ == '__main__':
    print('pop', timeit("test_pop()", setup="from __main__ import test_pop", number=10000))
    print('iter', timeit("test_iter()", setup="from __main__ import test_iter", number=10000))
    print('list', timeit("test_list()", setup="from __main__ import test_list", number=10000))
    print('insert', timeit("test_insert()", setup="from __main__ import test_insert", number=10000))

Here are the results:

('pop', 0.0021750926971435547)
('iter', 0.002003908157348633)
('list', 0.047267913818359375)
('insert', 0.0010859966278076172)

It seems that using iterkeys is only marginal faster then poping an item and re-inserting but 10x's faster then creating the list and choosing a random object from it.

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