# Find the item with maximum occurrences in a list [duplicate]

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 identify the item that occurred the highest 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.

I am surprised no-one has mentioned the simplest solution,`max()` with the key `list.count`:

``````max(lst,key=lst.count)
``````

Example:

``````>>> lst = [1, 2, 45, 55, 5, 4, 4, 4, 4, 4, 4, 5456, 56, 6, 7, 67]
>>> max(lst,key=lst.count)
4
``````

This works in Python 3 or 2, but note that it only returns the most frequent item and not also the frequency. Also, in the case of a draw (i.e. joint most frequent item) only a single item is returned.

Although the time complexity of using `max()` is worse than using `Counter.most_common(1)` as PM 2Ring comments, the approach benefits from a rapid `C` implementation and I find this approach is fastest for short lists but slower for larger ones (Python 3.6 timings shown in IPython 5.3):

``````In [1]: from collections import Counter
...:
...: def f1(lst):
...:     return max(lst, key = lst.count)
...:
...: def f2(lst):
...:     return Counter(lst).most_common(1)
...:
...: lst0 = [1,2,3,4,3]
...: lst1 = lst0[:] * 100
...:

In [2]: %timeit -n 10 f1(lst0)
10 loops, best of 3: 3.32 us per loop

In [3]: %timeit -n 10 f2(lst0)
10 loops, best of 3: 26 us per loop

In [4]: %timeit -n 10 f1(lst1)
10 loops, best of 3: 4.04 ms per loop

In [5]: %timeit -n 10 f2(lst1)
10 loops, best of 3: 75.6 us per loop
``````
• I would like an explanation how max works together with `key=` Commented Nov 29, 2017 at 12:32
• That's a little inefficient, since `.count` has to scan the entire list for each item, making it O(n²). Commented May 22, 2018 at 8:54
• `Counter` is convenient, but it's not known for speed. And when `n` is relatively small O(n²) can be good enough when you're using a function / method that runs at C speed. But when `n` is large enough, things can get ugly, as I discuss here. Commented May 22, 2018 at 9:58
• This is a great answer, exactly what I needed and bonus points for the timings! I was trying to quickly find the outlier class in an output from tensorflow.contrib.factorization.KMeansClustering(). The output for the list(kmeans.predict_cluster_index(input_fn)) is an array with no help functions to access the cluster with the highest occurrences. Commented Sep 4, 2018 at 19:33
• @Chris_Rands: great answer ! I found several approaches to this problem on this website. Approach 2 is almost identical to yours, but they first apply the `set()` operator to the list. I am wondering why this would work: I mean, I am removing all the duplicates from the list and THEN I am using `key=list.count`.. it doesn't make sense to me. Do you understand this?
– Luk
Commented Sep 11, 2020 at 17:32
``````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 recipe to create the `Counter` class.

• See the Counter docs for details. Commented Aug 8, 2011 at 19:21
• This will raise an `IndexError` if your list is empty.
– user3064538
Commented Nov 3, 2020 at 20:23

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.

• Interestingly, rerunning this today on Python 3.6, it turns out that the counter seems to outperform the other approaches for long lists. Commented Oct 23, 2019 at 7:48
• @moooeeeep: That's because they added a C accelerator for counting iterables in 3.2 (and further optimized it a bit in 3.5 to avoid double-hashing, which is harmless for many built-in types like small `int`s and `str`, but costly for other types); before that it was pure Python. `Counter` was always the simplest, and with the accelerator it's the fastest. Commented Oct 17, 2022 at 17:09
• @NedDeily: If you get a chance, you might want to rerun these timings on modern Python; for all but the smallest inputs (where the speed rarely matters) `Counter` will outperform all of these (and it works on iterators without eagerly realizing the entire input in memory, which `sorted` requires; peak memory ends up proportional to number of unique items, not total). For the small input, #4 loses slightly to #1/2 (beating the rest), but inlining `most_common` as `return max(Counter(L).items(), key=itemgetter(1))[0]` ties it up; for the larger input, it beats the competition by a factor of 2+. Commented Oct 17, 2022 at 17:48

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
``````

Note if `L = [1, 2, 45, 55, 5, 4, 4, 4, 4, 4, 4, 5456, 7, 7, 7, 7, 7, 56, 6, 7, 67]` then there are six 4s and six 7s. However, the result will be `(4, 6)` i.e. six 4s.

If you're using Python 3.8 or above, you can use either `statistics.mode()` to return the first mode encountered or `statistics.multimode()` to return all the modes.

``````>>> import statistics
>>> data = [1, 2, 2, 3, 3, 4]
>>> statistics.mode(data)
2
>>> statistics.multimode(data)
[2, 3]
``````

If the list is empty, `statistics.mode()` throws a `statistics.StatisticsError` and `statistics.multimode()` returns an empty list.

Note before Python 3.8, `statistics.mode()` (introduced in 3.4) would additionally throw a `statistics.StatisticsError` if there is not exactly one most common value.

A simple way without any libraries or sets

``````def mcount(l):
n = []                  #To store count of each elements
for x in l:
count = 0
for i in range(len(l)):
if x == l[i]:
count+=1
n.append(count)
a = max(n)              #largest in counts list
for i in range(len(n)):
if n[i] == a:
return(l[i],a)  #element,frequency
return                  #if something goes wrong
``````

Perhaps the most_common() method

I obtained the best results with `groupby` from `itertools` module with this function using Python 3.5.2:

``````from itertools import groupby

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

def occurrence():
occurrence, num_times = 0, 0
for key, values in groupby(a, lambda x : x):
val = len(list(values))
if val >= occurrence:
occurrence, num_times =  key, val
return occurrence, num_times

occurrence, num_times = occurrence()
print("%d occurred %d times which is the highest number of times" % (occurrence, num_times))
``````

Output:

``````4 occurred 6 times which is the highest number of times
``````

Test with `timeit` from `timeit` module.

I used this script for my test with `number= 20000`:

``````from itertools import groupby

def occurrence():
a = [1, 2, 45, 55, 5, 4, 4, 4, 4, 4, 4, 5456, 56, 6, 7, 67]
occurrence, num_times = 0, 0
for key, values in groupby(a, lambda x : x):
val = len(list(values))
if val >= occurrence:
occurrence, num_times =  key, val
return occurrence, num_times

if __name__ == '__main__':
from timeit import timeit
print(timeit("occurrence()", setup = "from __main__ import occurrence",  number = 20000))
``````

Output (The best one):

``````0.1893607140000313
``````

I want to throw in another solution that looks nice and is fast for short lists.

``````def mc(seq=L):
"max/count"
max_element = max(seq, key=seq.count)
return (max_element, seq.count(max_element))
``````

You can benchmark this with the code provided by Ned Deily which will give you these results for the smallest test case:

``````3.5.2 (default, Nov  7 2016, 11:31:36)
[GCC 6.2.1 20160830]

dict iteritems (4, 6) 0.2069783889998289
dict items (4, 6) 0.20462976200065896
defaultdict iteritems (4, 6) 0.2095775119996688
sort groupby generator expression (4, 6) 0.4473949929997616
sort groupby list comprehension (4, 6) 0.4367636879997008
counter (4, 6) 0.3618192010007988
max/count (4, 6) 0.20328268999946886
``````

But beware, it is inefficient and thus gets really slow for large lists!

Simple and best code:

``````def max_occ(lst,x):
count=0
for i in lst:
if (i==x):
count=count+1
return count

lst=[1, 2, 45, 55, 5, 4, 4, 4, 4, 4, 4, 5456, 56, 6, 7, 67]
x=max(lst,key=lst.count)
print(x,"occurs ",max_occ(lst,x),"times")
``````

Output: 4 occurs 6 times

My (simply) code (three months studying Python):

``````def more_frequent_item(lst):
new_lst = []
times = 0
for item in lst:
count_num = lst.count(item)
new_lst.append(count_num)
times = max(new_lst)
key = max(lst, key=lst.count)
print("In the list: ")
print(lst)
print("The most frequent item is " + str(key) + ". Appears " + str(times) + " times in this list.")

more_frequent_item([1, 2, 45, 55, 5, 4, 4, 4, 4, 4, 4, 5456, 56, 6, 7, 67])
``````

The output will be:

``````In the list:
[1, 2, 45, 55, 5, 4, 4, 4, 4, 4, 4, 5456, 56, 6, 7, 67]
The most frequent item is 4. Appears 6 times in this list.
``````

if you are using numpy in your solution for faster computation use this:

``````import numpy as np
x = np.array([2,5,77,77,77,77,77,77,77,9,0,3,3,3,3,3])
y = np.bincount(x,minlength = max(x))
y = np.argmax(y)
print(y)  #outputs 77
``````

Following is the solution which I came up with if there are multiple characters in the string all having the highest frequency.

``````mystr = input("enter string: ")
#define dictionary to store characters and their frequencies
mydict = {}
#get the unique characters
unique_chars = sorted(set(mystr),key = mystr.index)
#store the characters and their respective frequencies in the dictionary
for c in unique_chars:
ctr = 0
for d in mystr:
if d != " " and d == c:
ctr = ctr + 1
mydict[c] = ctr
print(mydict)
#store the maximum frequency
max_freq = max(mydict.values())
print("the highest frequency of occurence: ",max_freq)
#print all characters with highest frequency
print("the characters are:")
for k,v in mydict.items():
if v == max_freq:
print(k)
``````

Input: "hello people"

Output:

``````{'o': 2, 'p': 2, 'h': 1, ' ': 0, 'e': 3, 'l': 3}
``````

the highest frequency of occurence: 3

the characters are:

``````e

l
``````

may something like this:

```testList = [1, 2, 3, 4, 2, 2, 1, 4, 4] print(max(set(testList), key = testList.count))```

• a Set data structure will remove duplicates rendering your count irrelevant. Commented Jan 11, 2020 at 7:40