Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I was sure that there would be a one liner to convert a list to a dictionary where the items in the list were keys and the dictionary had no values.

The only way I could find to do it was argued against

"Using list comprehensions when the result is ignored is misleading and inefficient. A for loop is better"

x=[myDict.update({item:None}) for item in myList]

>>> myDict
{'a': None, 'c': None, 'b': None, 'd': None}

It works but I thought someone might have some insight as to a better way to do this.

share|improve this question
Keys with no values? Isn't that a set? –  S.Lott Jun 20 '09 at 2:03
Humm, I just figured out that I can pickle a set so maybe I will use a set but now I have to go make sure that I can look up a value in a set as fast as I can a value in a dictionary and I can tell my wife wants me to stop working and come home. –  PyNEwbie Jun 20 '09 at 2:09
@PyNEwbie: Membership testing in sets is basically equivalent to key lookup in dictionaries (both use hashes). More importantly, if you are going to be doing set operations (union, intersection, difference, etc.), then it's easier and faster to do them with sets than with dictionaries. –  John Y Jun 20 '09 at 5:00
@S.Lott when searching an item in a dict gives you O(1) access time while urordered sets(by default) gives you O(n) and ordered sets(that which you have sort, aka additional computational cost) gives you O(logn). –  Umur Kontacı Aug 8 '12 at 14:33

6 Answers 6

up vote 22 down vote accepted

Use dict.fromkeys:

>>> my_list = [1, 2, 3]
>>> dict.fromkeys(my_list)
{1: None, 2: None, 3: None}

Values default to None, but you can specify them as an optional argument:

>>> my_list = [1, 2, 3]
>>> dict.fromkeys(my_list, 0)
{1: 0, 2: 0, 3: 0}

From the docs:

a.fromkeys(seq[, value]) Creates a new dictionary with keys from seq and values set to value.

dict.fromkeys is a class method that returns a new dictionary. value defaults to None. New in version 2.3.

share|improve this answer
+1, beat me. :) –  Paolo Bergantino Jun 20 '09 at 1:49
Thanks this was helpful –  PyNEwbie Jun 20 '09 at 1:58
Thanks - good post - easy to understand –  anbanm Dec 19 '12 at 6:39

You could use a set instead of a dict:

>>> myList=['a','b','c','d']
>>> set(myList)
set(['a', 'c', 'b', 'd'])

This is better if you never need to store values, and are just storing an unordered collection of unique items.

share|improve this answer
Plus set consumes less memory (one less pointer per set item, or 33% savings). Also check out frozenset, a const (immutable) version of set. There are no performance benefits to frozenset, but it makes the program logic cleaner. –  Radim Jul 22 '11 at 13:24
when searching an item in a dict gives you O(1) access time while urordered sets(by default) gives you O(n) and ordered sets(that which you have sort, aka additional computational cost) gives you O(logn). –  Umur Kontacı Aug 8 '12 at 14:33

To answer the original questioner's performance worries (for lookups in dict vs set), somewhat surprisingly, dict lookups can be minutely faster (in Python 2.5.1 on my rather slow laptop) assuming for example that half the lookups fail and half succeed. Here's how one goes about finding out:

$ python -mtimeit -s'k=dict.fromkeys(range(99))' '5 in k and 112 in k'
1000000 loops, best of 3: 0.236 usec per loop
$ python -mtimeit -s'k=set(range(99))' '5 in k and 112 in k'
1000000 loops, best of 3: 0.265 usec per loop

doing each check several times to verify they're repeatable. So, if those 30 nanoseconds or less on a slow laptop are in an absolutely crucial bottleneck, it may be worth going for the obscure dict.fromkeys solution rather than the simple, obvious, readable, and clearly correct set (unusual -- almost invariably in Python the simple and direct solution has performance advantages too).

Of course, one needs to check with one's own Python version, machine, data, and ratio of successful vs failing tests, and confirm with extremely accurate profiling that shaving 30 nanoseconds (or whatever) off this lookup will make an important difference.

Fortunately, in the vast majority of cases, this will prove totally unnecessary... but since programmers will obsess about meaningless micro-optimizations anyway, no matter how many times they're told about their irrelevance, the timeit module is right there in the standard library to make those mostly-meaningless micro-benchmarks easy as pie anyway!-)

share|improve this answer
This is an awesome comment. Every developer obsesses with micro-optimizations must be made to read it over and over again. Reminds me of "(unrolling of far loop, for better performance)[reddit.com/r/programming/comments/8ozon/…; –  Lakshman Prasad Jun 20 '09 at 10:42
Not true on (C)Python2.5: set is faster both to build and to query with in. It also consumes 33% less memory, something that hasn't been mentioned here yet. –  Radim Jul 22 '11 at 13:15

And here's a fairly wrong and inefficient way to do it using map:

>>> d = dict()
>>> map (lambda x: d.__setitem__(x, None), [1,2,3])
[None, None, None]
>>> d
{1: None, 2: None, 3: None}
share|improve this answer

You can use a list comprehension:

my_list = ['a','b','c','d']
my_dict = dict([(ele, None) for ele in my_list])
share|improve this answer
You can also use a generator comprehension (just drop the square brackets!) In Python 3.0, there are even dict comprehensions –  Rick Copeland Jun 21 '09 at 14:37

Maybe you can use itertools:

>>>import itertools
>>>my_list = ['a','b','c','d']
>>>d = {}
>>>for x in itertools.imap(d.setdefault, my_list): pass
>>>print d
{'a': None, 'c': None, 'b': None, 'd': None}

For huge lists, maybe this is very good :P

share|improve this answer
Tip: highlight your code and press ctrl-k to get syntax highlighting and preserve proper indentation. –  bernie Jun 20 '09 at 19:42
thank you very much ;) –  Markon Jun 22 '09 at 12:52

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.