# Python - find the item with maximum occurrences

In Python, I have a list

``````L = [1, 2, 45, 55, 5, 4, 4, 4, 4, 4, 4, 5456, 56, 6, 7, 67]
``````

I want to figure out the number which occurred the maximum number of times. I am able to solve it but I need the fastest way to do so. I know there is a nice Pythonic answer to this.

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You say you are able to solve it. It would be educational for others as well if you could provide your own solution as a starting point. –  Amaç Herdağdelen Aug 8 '11 at 19:12

Here is a `defaultdict` solution that will work with Python versions 2.5 and above:

``````from collections import defaultdict

L = [1,2,45,55,5,4,4,4,4,4,4,5456,56,6,7,67]
d = defaultdict(int)
for i in L:
d[i] += 1
result = max(d.iteritems(), key=lambda x: x[1])
print result
# (4, 6)
# The number 4 occurs 6 times
``````
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pretty minor, but `itemgetter(1)` may be better than `lambda x: x[1]` construct in terms of both simplicity and speed. e. see docs.python.org/howto/sorting.html#operator-module-functions –  Darren Yin Aug 9 '11 at 3:11
``````from collections import Counter
most_common,num_most_common = Counter(L).most_common(1)[0] # 4, 6 times
``````

For older Python versions (< 2.7), you can use this receipe to get the `Counter` class.

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See the Counter docs for details. –  SiggyF Aug 8 '11 at 19:21
This solution is really elegant, but currently, the other one worked for me. –  zm1 Aug 8 '11 at 20:10

In your question, you asked for the fastest way to do it. As has been demonstrated repeatedly, particularly with Python, intuition is not a reliable guide: you need to measure.

Here's a simple test of several different implementations:

``````import sys
from collections import Counter, defaultdict
from itertools import groupby
from operator import itemgetter
from timeit import timeit

L = [1,2,45,55,5,4,4,4,4,4,4,5456,56,6,7,67]

def max_occurrences_1a(seq=L):
"dict iteritems"
c = dict()
for item in seq:
c[item] = c.get(item, 0) + 1
return max(c.iteritems(), key=itemgetter(1))

def max_occurrences_1b(seq=L):
"dict items"
c = dict()
for item in seq:
c[item] = c.get(item, 0) + 1
return max(c.items(), key=itemgetter(1))

def max_occurrences_2(seq=L):
"defaultdict iteritems"
c = defaultdict(int)
for item in seq:
c[item] += 1
return max(c.iteritems(), key=itemgetter(1))

def max_occurrences_3a(seq=L):
"sort groupby generator expression"
return max(((k, sum(1 for i in g)) for k, g in groupby(sorted(seq))), key=itemgetter(1))

def max_occurrences_3b(seq=L):
"sort groupby list comprehension"
return max([(k, sum(1 for i in g)) for k, g in groupby(sorted(seq))], key=itemgetter(1))

def max_occurrences_4(seq=L):
"counter"
return Counter(L).most_common(1)[0]

versions = [max_occurrences_1a, max_occurrences_1b, max_occurrences_2, max_occurrences_3a, max_occurrences_3b, max_occurrences_4]

print sys.version, "\n"

for vers in versions:
print vers.__doc__, vers(), timeit(vers, number=20000)
``````

The results on my machine:

``````2.7.2 (v2.7.2:8527427914a2, Jun 11 2011, 15:22:34)
[GCC 4.2.1 (Apple Inc. build 5666) (dot 3)]

dict iteritems (4, 6) 0.202214956284
dict items (4, 6) 0.208412885666
defaultdict iteritems (4, 6) 0.221301078796
sort groupby generator expression (4, 6) 0.383440971375
sort groupby list comprehension (4, 6) 0.402786016464
counter (4, 6) 0.564319133759
``````

So it appears that the `Counter` solution is not the fastest. And, in this case at least, `groupby` is faster. `defaultdict` is good but you pay a little bit for its convenience; it's slightly faster to use a regular `dict` with a `get`.

What happens if the list is much bigger? Adding `L *= 10000` to the test above and reducing the repeat count to 200:

``````dict iteritems (4, 60000) 10.3451900482
dict items (4, 60000) 10.2988479137
defaultdict iteritems (4, 60000) 5.52838587761
sort groupby generator expression (4, 60000) 11.9538850784
sort groupby list comprehension (4, 60000) 12.1327362061
counter (4, 60000) 14.7495789528
``````

Now `defaultdict` is the clear winner. So perhaps the cost of the 'get' method and the loss of the inplace add adds up (an examination of the generated code is left as an exercise).

But with the modified test data, the number of unique item values did not change so presumably `dict` and `defaultdict` have an advantage there over the other implementations. So what happens if we use the bigger list but substantially increase the number of unique items? Replacing the initialization of L with:

``````LL = [1,2,45,55,5,4,4,4,4,4,4,5456,56,6,7,67]
L = []
for i in xrange(1,10001):
L.extend(l * i for l in LL)

dict iteritems (2520, 13) 17.9935798645
dict items (2520, 13) 21.8974409103
defaultdict iteritems (2520, 13) 16.8289561272
sort groupby generator expression (2520, 13) 33.853593111
sort groupby list comprehension (2520, 13) 36.1303369999
counter (2520, 13) 22.626899004
``````

So now `Counter` is clearly faster than the `groupby` solutions but still slower than the `iteritems` versions of `dict` and `defaultdict`.

The point of these examples isn't to produce an optimal solution. The point is that there often isn't one optimal general solution. Plus there are other performance criteria. The memory requirements will differ substantially among the solutions and, as the size of the input goes up, memory requirements may become the overriding factor in algorithm selection.

Bottom line: it all depends and you need to measure.

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Perhaps the most_common() method

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