Does anybody know about what is better to use thinking about speed and resources? Link to some trusted sources would be much appreciated.

if key not in dictionary.keys():


if not dictionary.get(key):

Firstly, you'd do

if key not in dictionary:

since dicts are iterated over by keys.

Secondly, the two statements are not equivalent - the second condition would be true if the corresponding values is falsy (0, "", [] etc.), not only if the key doesn't exist.

Lastly, the first method is definitely faster and more pythonic. Function/method calls are expensive. If you're unsure, timeit.

  • Ok, 2nd is more pythonic but can't be used in situation when your dict can contain zeros, emptry strings or empty lists, right? – scythargon Feb 17 '16 at 7:18
  • The first is more pythonic (if all you're trying to do is determine whether a dict has a given key). The second part of your comment is correct. Of course, all this depends on what you're actually trying to do - even a try/except block might be the best way to achieve that. – Tim Pietzcker Feb 17 '16 at 7:23
  • Hmm. In which situation try/except might be the best way? – scythargon Feb 17 '16 at 7:28
  • For example if you plan on doing something with the value for the key, and you're 99% sure that there will be such a key. In this case, it's easier to ask forgiveness than permission. – Tim Pietzcker Feb 17 '16 at 8:01

In my experience, using in is faster than using get, although the speed of get can be improved by caching the get method so it doesn't have to be looked up each time. Here are some timeit tests:

''' in vs get speed test

    Comparing the speed of cache retrieval / update using `get` vs using `in`


    Written by PM 2Ring 2015.12.01
    Updated for Python 3 2017.08.08

from __future__ import print_function
from timeit import Timer
from random import randint
import dis

cache = {}

def get_cache(x):
    ''' retrieve / update cache using `get` '''
    res = cache.get(x)
    if res is None:
        res = cache[x] = x
    return res

def get_cache_defarg(x, get=cache.get):
    ''' retrieve / update cache using defarg `get` '''
    res = get(x)
    if res is None:
        res = cache[x] = x
    return res

def in_cache(x):
    ''' retrieve / update cache using `in` '''
    if x in cache:
        return cache[x]
        res = cache[x] = x
        return res

#slow to fast.
funcs = (

def show_bytecode():
    for func in funcs:
        fname = func.__name__
        print('\n%s' % fname)

def time_test(reps, loops):
    ''' Print timing stats for all the functions '''
    for func in funcs:
        fname = func.__name__
        print('\n%s: %s' % (fname, func.__doc__))
        setup = 'from __main__ import data, ' + fname
        cmd = 'for v in data: %s(v)' % (fname,)
        times = []
        t = Timer(cmd, setup)
        for i in range(reps):
            r = 0
            for j in range(loops):
                r += t.timeit(1)

datasize = 1024
maxdata = 32
data = [randint(1, maxdata) for i in range(datasize)]

time_test(3, 500)

typical output on my 2Ghz machine running Python 2.6.6:

get_cache:  retrieve / update cache using `get` 
[0.65624237060546875, 0.68499755859375, 0.76354193687438965]

get_cache_defarg:  retrieve / update cache using defarg `get` 
[0.54204297065734863, 0.55032730102539062, 0.56702113151550293]

in_cache:  retrieve / update cache using `in` 
[0.48754477500915527, 0.49125504493713379, 0.50087881088256836]

TLDR: Use if key not in dictionary. This is idiomatic, robust and fast.

There are four versions of relevance to this question: the 2 posed in the question, and the optimal variant of them:

key not in dictionary.keys()  # inA
key not in dictionary         # inB
not dictionary.get(key)       # getA
sentinel = object()
dictionary.get(key, sentinel) is not sentinel  # getB

Both A variants have shortcomings that mean you should not use them. inA needlessly creates a dict view on the keys - this adds an indirection step. getA looks at the truth of the value - this leads to incorrect results for values such as '' or 0.

As for using inB over getB: both do the same thing, namely looking at whether there is a value for key. However, getB also returns that value or default and has to compare it against the sentinel. Consequently, using get is considerably slower:

> import random
> data = {a: True for a in range(0, 512, 2)}
> sentinel=object()"
$ python3 -m perf timeit -s "$PREPARE" '27 in data'
Mean +- std dev: 33.9 ns +- 0.8 ns
$ python3 -m perf timeit -s "$PREPARE" 'data.get(27, sentinel) is not sentinel'
Mean +- std dev: 105 ns +- 5 ns

Note that pypy3 has practically the same performance for both variants once the JIT has warmed up.


Ok, I've tested it on python 3.4.3 and all three ways give the same result around 0.00001 second.

import random
a = {}
for i in range(0, 1000000):
        a[str(random.random())] = random.random()
import time
t1 = time.time(); 1 in a.keys(); t2 = time.time(); print("Time=%s" % (t2 - t1))
t1 = time.time(); 1 in a; t2 = time.time(); print("Time=%s" % (t2 - t1))
t1 = time.time(); not a.get(1); t2 = time.time(); print("Time=%s" % (t2 - t1))
  • 1
    This is not how you do performance testing. Use the timeit module. – Tim Pietzcker Feb 17 '16 at 8:06
  • Also, all your tests will always return False because there can never be a a[1]. – Tim Pietzcker Feb 17 '16 at 8:07
  • use xrange() for iteration – Valkyrie Feb 18 '16 at 0:43

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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