Given:
>>> d = {'a': 1, 'b': 2}
Which of the following is the best way to check if 'a'
is in d
?
>>> 'a' in d
True
>>> d.has_key('a')
True
in
is definitely more pythonic.
In fact has_key()
was removed in Python 3.x.
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.
Aug 1, 2018 at 8:48
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).
Aug 2, 2018 at 8:40
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!-)
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).
key in dict.keys()
.
Dec 7, 2023 at 12:33
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)
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.
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"
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
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.
in
tests on range
objects. I'm not so sure about its efficiency on Python 2 xrange
, though. ;)
__contains__
can trivially calculate if a value is in the range or not.
range
instance each time. Using a single, pre-existing instance the "integer in range" test is about 40% faster in my timings.
Feb 10, 2020 at 15:54
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
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.