898

I wonder what is better to do:

d = {'a': 1, 'b': 2}
'a' in d
True

or:

d = {'a': 1, 'b': 2}
d.has_key('a')
True
1267

in is definitely more pythonic.

In fact has_key() was removed in Python 3.x.

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  • 3
    As an addition, in Python 3, to check for the existence in values, instead of the keys, try >>> 1 in d.values() – riza Aug 24 '09 at 18:12
  • 215
    One semi-gotcha to avoid though is to make sure you do: "key in some_dict" rather than "key in some_dict.keys()". Both are equivalent semantically, but performance-wise the latter is much slower (O(n) vs O(1)). I've seen people do the "in dict.keys()" thinking it's more explicit & therefore better. – Adam Parkin Nov 9 '11 at 20:55
  • 2
    @AdamParkin I demonstrated your comment in my answer stackoverflow.com/a/41390975/117471 – Bruno Bronosky Dec 30 '16 at 5:17
  • 7
    @AdamParkin In Python 3, keys() is just a set-like view into a dictionary rather than a copy, so x in d.keys() is O(1). Still, x in d is more Pythonic. – Arthur Tacca Aug 1 '18 at 8:48
  • 2
    @AdamParkin Interesting, I didn't see that. I suppose it's because x in d.keys() must construct and destroy a temporary object, complete with the memory allocation that entails, where x in d.keys() is just doing an arithmetic operation (computing the hash) and doing a lookup. Note that d.keys() is only about 10 times as long as this, which is still not long really. I haven't checked but I'm still pretty sure it's only O(1). – Arthur Tacca Aug 2 '18 at 8:40
253

in wins hands-down, not just in elegance (and not being deprecated;-) but also in performance, e.g.:

$ python -mtimeit -s'd=dict.fromkeys(range(99))' '12 in d'
10000000 loops, best of 3: 0.0983 usec per loop
$ python -mtimeit -s'd=dict.fromkeys(range(99))' 'd.has_key(12)'
1000000 loops, best of 3: 0.21 usec per loop

While the following observation is not always true, you'll notice that usually, in Python, the faster solution is more elegant and Pythonic; that's why -mtimeit is SO helpful -- it's not just about saving a hundred nanoseconds here and there!-)

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  • 4
    Thanks for this, made verifying that "in some_dict" is in fact O(1) much easier (try increasing the 99 to say 1999, and you'll find the runtime is about the same). – Adam Parkin Nov 9 '11 at 21:00
  • 2
    has_key appears to be O(1) too. – dan-gph Jan 6 '15 at 4:11
95

According to python docs:

has_key() is deprecated in favor of key in d.

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  • 1
    has_key() is now removed in Python 3 – Vadim Kotov Nov 14 '19 at 15:21
42

Use dict.has_key() if (and only if) your code is required to be runnable by Python versions earlier than 2.3 (when key in dict was introduced).

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  • 1
    The WebSphere update in 2013 uses Jython 2.1 as its main scripting language. So this is unfortunately still a useful thing to note, five years after you noted it. – ArtOfWarfare Sep 24 '14 at 11:49
23

There is one example where in actually kills your performance.

If you use in on a O(1) container that only implements __getitem__ and has_key() but not __contains__ you will turn an O(1) search into an O(N) search (as in falls back to a linear search via __getitem__).

Fix is obviously trivial:

def __contains__(self, x):
    return self.has_key(x)
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  • 6
    This answer was applicable when it was posted, but 99.95% of readers can safely ignore it. In most cases, if you're working with something this obscure you'll know it. – wizzwizz4 Jul 27 '18 at 13:17
  • 2
    This really is not an issue. has_key() is specific to Python 2 dictionaries. in / __contains__ is the correct API to use; for those containers where a full scan is unavoidable there is no has_key() method anyway, and if there is a O(1) approach then that'll be use-case specific and so up to the developer to pick the right data type for the problem. – Martijn Pieters Jan 5 '19 at 19:25
15

has_key is a dictionary method, but in will work on any collection, and even when __contains__ is missing, in will use any other method to iterate the collection to find out.

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  • 1
    And does also work on iterators "x in xrange(90, 200) <=> 90 <= x < 200" – u0b34a0f6ae Aug 28 '09 at 13:21
  • 1
    …: This looks like a very bad idea: 50 operations instead of 2. – Clément Sep 22 '16 at 22:12
  • 1
    @Clément In Python 3, it's actually quite efficient to do in tests on range objects. I'm not so sure about its efficiency on Python 2 xrange, though. ;) – PM 2Ring Nov 29 '18 at 18:00
  • @Clément not in Python 3; __contains__ can trivially calculate if a value is in the range or not. – Martijn Pieters Jan 5 '19 at 19:21
  • 1
    @AlexandreHuat Your timing includes the overhead of creating a new range instance each time. Using a single, pre-existing instance the "integer in range" test is about 40% faster in my timings. – MisterMiyagi Feb 10 at 15:54
14

Solution to dict.has_key() is deprecated, use 'in' -- sublime text editor 3

Here I have taken an example of dictionary named 'ages' -

ages = {}

# Add a couple of names to the dictionary
ages['Sue'] = 23

ages['Peter'] = 19

ages['Andrew'] = 78

ages['Karren'] = 45

# use of 'in' in if condition instead of function_name.has_key(key-name).
if 'Sue' in ages:

    print "Sue is in the dictionary. She is", ages['Sue'], "years old"

else:

    print "Sue is not in the dictionary"
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  • 6
    Correct, but it was already answered, welcome to Stackoveflow, thanks for the example, always check the answers though! – igorgue Feb 23 '16 at 19:51
  • @igorgue im not sure about the downvotes to her. Her answer might be similar to the ones already answered, but she provides an example. Isnt that worthy enough to be an answer of SO? – Akshat Agarwal May 22 '16 at 13:34
13

Expanding on Alex Martelli's performance tests with Adam Parkin's comments...

$ python3.5 -mtimeit -s'd=dict.fromkeys(range( 99))' 'd.has_key(12)'
Traceback (most recent call last):
  File "/usr/local/Cellar/python3/3.5.2_3/Frameworks/Python.framework/Versions/3.5/lib/python3.5/timeit.py", line 301, in main
    x = t.timeit(number)
  File "/usr/local/Cellar/python3/3.5.2_3/Frameworks/Python.framework/Versions/3.5/lib/python3.5/timeit.py", line 178, in timeit
    timing = self.inner(it, self.timer)
  File "<timeit-src>", line 6, in inner
    d.has_key(12)
AttributeError: 'dict' object has no attribute 'has_key'

$ python2.7 -mtimeit -s'd=dict.fromkeys(range(  99))' 'd.has_key(12)'
10000000 loops, best of 3: 0.0872 usec per loop

$ python2.7 -mtimeit -s'd=dict.fromkeys(range(1999))' 'd.has_key(12)'
10000000 loops, best of 3: 0.0858 usec per loop

$ python3.5 -mtimeit -s'd=dict.fromkeys(range(  99))' '12 in d'
10000000 loops, best of 3: 0.031 usec per loop

$ python3.5 -mtimeit -s'd=dict.fromkeys(range(1999))' '12 in d'
10000000 loops, best of 3: 0.033 usec per loop

$ python3.5 -mtimeit -s'd=dict.fromkeys(range(  99))' '12 in d.keys()'
10000000 loops, best of 3: 0.115 usec per loop

$ python3.5 -mtimeit -s'd=dict.fromkeys(range(1999))' '12 in d.keys()'
10000000 loops, best of 3: 0.117 usec per loop
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  • Wonderful statistics, sometimes implicit might be better than explicit (at least in efficiency)... – varun Mar 30 '18 at 5:06
  • Thank you, @varun. I had forgotten about this answer. I need to do this kind of testing more often. I regularly read long threads where people argue about The Best Way™ to do things. But I rarely remember how easy this was to get proof. – Bruno Bronosky Mar 30 '18 at 14:47
0

If you have something like this

t.has_key(ew)

change it to below for running on Python 3.X and above

key = ew
if key not in t
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  • 6
    No, you inverted the test. t.has_key(ew) returns True if the value ew references is also a key in the dictionary. key not in t returns True if the value is not in the dictionary. Moreover, the key = ew alias is very, very redundant. The correct spelling is if ew in t. Which is what the accepted answer from 8 years prior already told you. – Martijn Pieters Jan 5 '19 at 19:17

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