Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

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.

share|improve this question
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
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
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
up vote 21 down vote accepted

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

return next(dictionary.itervalues())
share|improve this answer
A lot more obvious in my opinion! – jamylak May 15 '12 at 3:12
It should be noted that this raises StopIteration if the dict is empty. – yak May 15 '12 at 5:32
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
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
@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

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

share|improve this answer

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.

share|improve this answer
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
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

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.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.