How can I find the duplicates in a Python list and create another list of the duplicates? The list only contains integers.

25 Answers 25

up vote 339 down vote accepted

To remove duplicates use set(a), to print duplicates - something like

a = [1,2,3,2,1,5,6,5,5,5]

import collections
print [item for item, count in collections.Counter(a).items() if count > 1]

## [1, 2, 5]

Note that Counter is not particularly efficient (timings) and probably an overkill here, set will perform better. This code computes a list of unique elements in the source order:

seen = set()
uniq = []
for x in a:
    if x not in seen:
        uniq.append(x)
        seen.add(x)

or, more concisely:

seen = set()
uniq = [x for x in a if x not in seen and not seen.add(x)]    

I don't recommend the latter style, because it is not obvious what not seen.add(x) is doing (the set add() method always returns None, hence the need for not).

To compute the list of duplicated elements without libraries,

seen = {}
dupes = []

for x in a:
    if x not in seen:
        seen[x] = 1
    else:
        if seen[x] == 1:
            dupes.append(x)
        seen[x] += 1

If list elements are not hashable, you cannot use set/dicts and have to resort to a quadratic time solution (compare each which each), for example:

a = [ [1], [2], [3], [1], [5], [3] ]

no_dupes = [x for n, x in enumerate(a) if x not in a[:n]]
print no_dupes # [[1], [2], [3], [5]]

dupes = [x for n, x in enumerate(a) if x in a[:n]]
print dupes # [[1], [3]]
  • 13
    Great answer but NB: needs 2.7 to work – Rob Aug 22 '12 at 19:03
  • I find this code does not work with a list of lists. The solution suggested by @ritesh does work with a list of lists. I am using python version 2.7.6. – kalu Mar 4 '14 at 18:55
  • 2
    @eric: I guess it's O(n), because it only iterates the list once and set lookups are O(1). – georg Feb 4 '16 at 7:28
  • 2
    @Hugo, to see the list of duplicates, we just need to create a new list called dup and add an else statement. For example: dup = [] else: dup.append(x) – Chris Nielsen Apr 29 '16 at 16:45
  • 1
    @oxeimon: you probably got this, but you print is called with parentheses in python 3 print() – Moberg Oct 28 '16 at 11:20
>>> l = [1,2,3,4,4,5,5,6,1]
>>> set([x for x in l if l.count(x) > 1])
set([1, 4, 5])
  • 6
    +1, very simple and works in 2.6 – JohnJ Jun 20 '13 at 20:08
  • 2
    Is there any reason you use a list comprehension instead of a generator comprehension? – user3892448 Sep 4 '14 at 13:08
  • 32
    Indeed, a simple solution, but complexity is squared because each count() parses the list all over again, so don't use for large lists. – danuker Feb 10 '15 at 15:35
  • 1
    @JohnJ, bubble sort is also simple and works. That doesn't mean we should use it! – John La Rooy Dec 17 '15 at 19:51
  • 1
    @watsonic: Your "simple switch" fails to reduce the time complexity from quadratic to squared in the general case. Replacing l with set(l) only reduces the worst-case time complexity and hence does nothing to address the larger-scale efficiency concerns with this answer. It probably wasn't so simple after all. In short, don't do this. – Cecil Curry Sep 23 '17 at 7:38

You don't need the count, just whether or not the item was seen before. Adapted that answer to this problem:

def list_duplicates(seq):
  seen = set()
  seen_add = seen.add
  # adds all elements it doesn't know yet to seen and all other to seen_twice
  seen_twice = set( x for x in seq if x in seen or seen_add(x) )
  # turn the set into a list (as requested)
  return list( seen_twice )

a = [1,2,3,2,1,5,6,5,5,5]
list_duplicates(a) # yields [1, 2, 5]

Just in case speed matters, here are some timings:

# file: test.py
import collections

def thg435(l):
    return [x for x, y in collections.Counter(l).items() if y > 1]

def moooeeeep(l):
    seen = set()
    seen_add = seen.add
    # adds all elements it doesn't know yet to seen and all other to seen_twice
    seen_twice = set( x for x in l if x in seen or seen_add(x) )
    # turn the set into a list (as requested)
    return list( seen_twice )

def RiteshKumar(l):
    return list(set([x for x in l if l.count(x) > 1]))

def JohnLaRooy(L):
    seen = set()
    seen2 = set()
    seen_add = seen.add
    seen2_add = seen2.add
    for item in L:
        if item in seen:
            seen2_add(item)
        else:
            seen_add(item)
    return list(seen2)

l = [1,2,3,2,1,5,6,5,5,5]*100

Here are the results: (well done @JohnLaRooy!)

$ python -mtimeit -s 'import test' 'test.JohnLaRooy(test.l)'
10000 loops, best of 3: 74.6 usec per loop
$ python -mtimeit -s 'import test' 'test.moooeeeep(test.l)'
10000 loops, best of 3: 91.3 usec per loop
$ python -mtimeit -s 'import test' 'test.thg435(test.l)'
1000 loops, best of 3: 266 usec per loop
$ python -mtimeit -s 'import test' 'test.RiteshKumar(test.l)'
100 loops, best of 3: 8.35 msec per loop

Interestingly, besides the timings itself, also the ranking slightly changes when pypy is used. Most interestingly, the Counter-based approach benefits hugely from pypy's optimizations, whereas the method caching approach I have suggested seems to have almost no effect.

$ pypy -mtimeit -s 'import test' 'test.JohnLaRooy(test.l)'
100000 loops, best of 3: 17.8 usec per loop
$ pypy -mtimeit -s 'import test' 'test.thg435(test.l)'
10000 loops, best of 3: 23 usec per loop
$ pypy -mtimeit -s 'import test' 'test.moooeeeep(test.l)'
10000 loops, best of 3: 39.3 usec per loop

Apparantly this effect is related to the "duplicatedness" of the input data. I have set l = [random.randrange(1000000) for i in xrange(10000)] and got these results:

$ pypy -mtimeit -s 'import test' 'test.moooeeeep(test.l)'
1000 loops, best of 3: 495 usec per loop
$ pypy -mtimeit -s 'import test' 'test.JohnLaRooy(test.l)'
1000 loops, best of 3: 499 usec per loop
$ pypy -mtimeit -s 'import test' 'test.thg435(test.l)'
1000 loops, best of 3: 1.68 msec per loop
  • 5
    Just curious - what's the purpose of seen_add = seen.add here? – Rob Aug 22 '12 at 19:19
  • 2
    @Rob This way you just call the function you've looked up once before. Otherwise you would need to look up (a dictionary query) the member function add every time an insert would be necessary. – moooeeeep Aug 29 '12 at 20:09
  • checked with my own data and Ipython's %timeit your method does look fastest on test BUT: "The slowest run took 4.34 times longer than the fastest. This could mean that an intermediate result is being cached" – Joop May 6 '15 at 7:14
  • 1
    @moooeeeep, I added another version to your script for you to try :) Also try pypy if you have it handy and are going for speed. – John La Rooy Dec 17 '15 at 20:00
  • @JohnLaRooy Nice improvement in performance! Interestingly, when I used pypy to evaluate the results, the Counter-based approach improves significantly. – moooeeeep Dec 18 '15 at 7:28

I came across this question whilst looking in to something related - and wonder why no-one offered a generator based solution? Solving this problem would be:

>>> print list(getDupes_9([1,2,3,2,1,5,6,5,5,5]))
[1, 2, 5]

I was concerned with scalability, so tested several approaches, including naive items that work well on small lists, but scale horribly as lists get larger (note- would have been better to use timeit, but this is illustrative).

I included @moooeeeep for comparison (it is impressively fast: fastest if the input list is completely random) and an itertools approach that is even faster again for mostly sorted lists... Now includes pandas approach from @firelynx -- slow, but not horribly so, and simple. Note - sort/tee/zip approach is consistently fastest on my machine for large mostly ordered lists, moooeeeep is fastest for shuffled lists, but your mileage may vary.

Advantages

  • very quick simple to test for 'any' duplicates using the same code

Assumptions

  • Duplicates should be reported once only
  • Duplicate order does not need to be preserved
  • Duplicate might be anywhere in the list

Fastest solution, 1m entries:

def getDupes(c):
        '''sort/tee/izip'''
        a, b = itertools.tee(sorted(c))
        next(b, None)
        r = None
        for k, g in itertools.izip(a, b):
            if k != g: continue
            if k != r:
                yield k
                r = k

Approaches tested

import itertools
import time
import random

def getDupes_1(c):
    '''naive'''
    for i in xrange(0, len(c)):
        if c[i] in c[:i]:
            yield c[i]

def getDupes_2(c):
    '''set len change'''
    s = set()
    for i in c:
        l = len(s)
        s.add(i)
        if len(s) == l:
            yield i

def getDupes_3(c):
    '''in dict'''
    d = {}
    for i in c:
        if i in d:
            if d[i]:
                yield i
                d[i] = False
        else:
            d[i] = True

def getDupes_4(c):
    '''in set'''
    s,r = set(),set()
    for i in c:
        if i not in s:
            s.add(i)
        elif i not in r:
            r.add(i)
            yield i

def getDupes_5(c):
    '''sort/adjacent'''
    c = sorted(c)
    r = None
    for i in xrange(1, len(c)):
        if c[i] == c[i - 1]:
            if c[i] != r:
                yield c[i]
                r = c[i]

def getDupes_6(c):
    '''sort/groupby'''
    def multiple(x):
        try:
            x.next()
            x.next()
            return True
        except:
            return False
    for k, g in itertools.ifilter(lambda x: multiple(x[1]), itertools.groupby(sorted(c))):
        yield k

def getDupes_7(c):
    '''sort/zip'''
    c = sorted(c)
    r = None
    for k, g in zip(c[:-1],c[1:]):
        if k == g:
            if k != r:
                yield k
                r = k

def getDupes_8(c):
    '''sort/izip'''
    c = sorted(c)
    r = None
    for k, g in itertools.izip(c[:-1],c[1:]):
        if k == g:
            if k != r:
                yield k
                r = k

def getDupes_9(c):
    '''sort/tee/izip'''
    a, b = itertools.tee(sorted(c))
    next(b, None)
    r = None
    for k, g in itertools.izip(a, b):
        if k != g: continue
        if k != r:
            yield k
            r = k

def getDupes_a(l):
    '''moooeeeep'''
    seen = set()
    seen_add = seen.add
    # adds all elements it doesn't know yet to seen and all other to seen_twice
    for x in l:
        if x in seen or seen_add(x):
            yield x

def getDupes_b(x):
    '''iter*/sorted'''
    x = sorted(x)
    def _matches():
        for k,g in itertools.izip(x[:-1],x[1:]):
            if k == g:
                yield k
    for k, n in itertools.groupby(_matches()):
        yield k

def getDupes_c(a):
    '''pandas'''
    import pandas as pd
    vc = pd.Series(a).value_counts()
    i = vc[vc > 1].index
    for _ in i:
        yield _

def hasDupes(fn,c):
    try:
        if fn(c).next(): return True    # Found a dupe
    except StopIteration:
        pass
    return False

def getDupes(fn,c):
    return list(fn(c))

STABLE = True
if STABLE:
    print 'Finding FIRST then ALL duplicates, single dupe of "nth" placed element in 1m element array'
else:
    print 'Finding FIRST then ALL duplicates, single dupe of "n" included in randomised 1m element array'
for location in (50,250000,500000,750000,999999):
    for test in (getDupes_2, getDupes_3, getDupes_4, getDupes_5, getDupes_6,
                 getDupes_8, getDupes_9, getDupes_a, getDupes_b, getDupes_c):
        print 'Test %-15s:%10d - '%(test.__doc__ or test.__name__,location),
        deltas = []
        for FIRST in (True,False):
            for i in xrange(0, 5):
                c = range(0,1000000)
                if STABLE:
                    c[0] = location
                else:
                    c.append(location)
                    random.shuffle(c)
                start = time.time()
                if FIRST:
                    print '.' if location == test(c).next() else '!',
                else:
                    print '.' if [location] == list(test(c)) else '!',
                deltas.append(time.time()-start)
            print ' -- %0.3f  '%(sum(deltas)/len(deltas)),
        print
    print

The results for the 'all dupes' test were consistent, finding "first" duplicate then "all" duplicates in this array:

Finding FIRST then ALL duplicates, single dupe of "nth" placed element in 1m element array
Test set len change :    500000 -  . . . . .  -- 0.264   . . . . .  -- 0.402  
Test in dict        :    500000 -  . . . . .  -- 0.163   . . . . .  -- 0.250  
Test in set         :    500000 -  . . . . .  -- 0.163   . . . . .  -- 0.249  
Test sort/adjacent  :    500000 -  . . . . .  -- 0.159   . . . . .  -- 0.229  
Test sort/groupby   :    500000 -  . . . . .  -- 0.860   . . . . .  -- 1.286  
Test sort/izip      :    500000 -  . . . . .  -- 0.165   . . . . .  -- 0.229  
Test sort/tee/izip  :    500000 -  . . . . .  -- 0.145   . . . . .  -- 0.206  *
Test moooeeeep      :    500000 -  . . . . .  -- 0.149   . . . . .  -- 0.232  
Test iter*/sorted   :    500000 -  . . . . .  -- 0.160   . . . . .  -- 0.221  
Test pandas         :    500000 -  . . . . .  -- 0.493   . . . . .  -- 0.499  

When the lists are shuffled first, the price of the sort becomes apparent - the efficiency drops noticeably and the @moooeeeep approach dominates, with set & dict approaches being similar but lessor performers:

Finding FIRST then ALL duplicates, single dupe of "n" included in randomised 1m element array
Test set len change :    500000 -  . . . . .  -- 0.321   . . . . .  -- 0.473  
Test in dict        :    500000 -  . . . . .  -- 0.285   . . . . .  -- 0.360  
Test in set         :    500000 -  . . . . .  -- 0.309   . . . . .  -- 0.365  
Test sort/adjacent  :    500000 -  . . . . .  -- 0.756   . . . . .  -- 0.823  
Test sort/groupby   :    500000 -  . . . . .  -- 1.459   . . . . .  -- 1.896  
Test sort/izip      :    500000 -  . . . . .  -- 0.786   . . . . .  -- 0.845  
Test sort/tee/izip  :    500000 -  . . . . .  -- 0.743   . . . . .  -- 0.804  
Test moooeeeep      :    500000 -  . . . . .  -- 0.234   . . . . .  -- 0.311  *
Test iter*/sorted   :    500000 -  . . . . .  -- 0.776   . . . . .  -- 0.840  
Test pandas         :    500000 -  . . . . .  -- 0.539   . . . . .  -- 0.540  
  • @moooeeeep - be interested to see your views on the ifilter/izip/tee approach. – F1Rumors Jul 17 '15 at 16:22
  • 1
    this answer is incredibly good.I don't understand that it didn't had more points for the explanations and tests which are very usefull for those that would need it. – dlewin Aug 17 '15 at 7:48
  • 1
    python's sort is O(n) when only one item is out of order. You should random.shuffle(c) to account for that. Additionally I can't replicate your results when running the unaltered script either (totally different ordering), so maybe it is dependent on the CPU too. – John La Rooy Dec 17 '15 at 19:38
  • Thank you @John-La-Rooy, astute observation on the CPU/local machine being impactful - so I should amend the item YYMV. Using the O(n) sort was deliberate: the duplicative element is inserted at different locations specifically to see the impact of the approach if there is a sole duplicate in a good (start of list) or bad (end of list) location with these approaches. I considered a random list - eg random.shuffle - but decided that would only be sensible if I did a lot more runs! I shall have to return and benchmark a multiple run/shuffle equivalent and see what the impact is. – F1Rumors Dec 29 '15 at 19:15
  • Amended to include @firelynx pandas approach & to run on fully shuffled list as well as sorted list. This is because the native timsort used by Python is wicked fast on mostly sorted data (best case) and the shuffled lists are its worst case scenario - that shakes up the results. – F1Rumors Dec 30 '15 at 16:56

You can use iteration_utilities.duplicates:

>>> from iteration_utilities import duplicates

>>> list(duplicates([1,1,2,1,2,3,4,2]))
[1, 1, 2, 2]

or if you only want one of each duplicate this can be combined with iteration_utilities.unique_everseen:

>>> from iteration_utilities import unique_everseen

>>> list(unique_everseen(duplicates([1,1,2,1,2,3,4,2])))
[1, 2]

It can also handle unhashable elements (however at the cost of performance):

>>> list(duplicates([[1], [2], [1], [3], [1]]))
[[1], [1]]

>>> list(unique_everseen(duplicates([[1], [2], [1], [3], [1]])))
[[1]]

That's something that only a few of the other approaches here can handle.

Benchmarks

I did a quick benchmark containing most (but not all) of the approaches mentioned here.

The first benchmark included only a small range of list-lengths because some approaches have O(n**2) behavior.

In the graphs the y-axis represents the time, so a lower value means better. It's also plotted log-log so the wide range of values can be visualized better:

enter image description here

Removing the O(n**2) approaches I did another benchmark up to half a million elements in a list:

enter image description here

As you can see the iteration_utilities.duplicates approach is faster than any of the other approaches and even chaining unique_everseen(duplicates(...)) was faster or equally fast than the other approaches.

One additional interesting thing to note here is that the pandas approaches are very slow for small lists but can easily compete for longer lists.

However as these benchmarks show most of the approaches perform roughly equally, so it doesn't matter much which one is used (except for the 3 that had O(n**2) runtime).

from iteration_utilities import duplicates, unique_everseen
from collections import Counter
import pandas as pd
import itertools

def georg_counter(it):
    return [item for item, count in Counter(it).items() if count > 1]

def georg_set(it):
    seen = set()
    uniq = []
    for x in it:
        if x not in seen:
            uniq.append(x)
            seen.add(x)

def georg_set2(it):
    seen = set()
    return [x for x in it if x not in seen and not seen.add(x)]   

def georg_set3(it):
    seen = {}
    dupes = []

    for x in it:
        if x not in seen:
            seen[x] = 1
        else:
            if seen[x] == 1:
                dupes.append(x)
            seen[x] += 1

def RiteshKumar_count(l):
    return set([x for x in l if l.count(x) > 1])

def moooeeeep(seq):
    seen = set()
    seen_add = seen.add
    # adds all elements it doesn't know yet to seen and all other to seen_twice
    seen_twice = set( x for x in seq if x in seen or seen_add(x) )
    # turn the set into a list (as requested)
    return list( seen_twice )

def F1Rumors_implementation(c):
    a, b = itertools.tee(sorted(c))
    next(b, None)
    r = None
    for k, g in zip(a, b):
        if k != g: continue
        if k != r:
            yield k
            r = k

def F1Rumors(c):
    return list(F1Rumors_implementation(c))

def Edward(a):
    d = {}
    for elem in a:
        if elem in d:
            d[elem] += 1
        else:
            d[elem] = 1
    return [x for x, y in d.items() if y > 1]

def wordsmith(a):
    return pd.Series(a)[pd.Series(a).duplicated()].values

def NikhilPrabhu(li):
    li = li.copy()
    for x in set(li):
        li.remove(x)

    return list(set(li))

def firelynx(a):
    vc = pd.Series(a).value_counts()
    return vc[vc > 1].index.tolist()

def HenryDev(myList):
    newList = set()

    for i in myList:
        if myList.count(i) >= 2:
            newList.add(i)

    return list(newList)

def yota(number_lst):
    seen_set = set()
    duplicate_set = set(x for x in number_lst if x in seen_set or seen_set.add(x))
    return seen_set - duplicate_set

def IgorVishnevskiy(l):
    s=set(l)
    d=[]
    for x in l:
        if x in s:
            s.remove(x)
        else:
            d.append(x)
    return d

def it_duplicates(l):
    return list(duplicates(l))

def it_unique_duplicates(l):
    return list(unique_everseen(duplicates(l)))

Benchmark 1

from simple_benchmark import benchmark
import random

funcs = [
    georg_counter, georg_set, georg_set2, georg_set3, RiteshKumar_count, moooeeeep, 
    F1Rumors, Edward, wordsmith, NikhilPrabhu, firelynx,
    HenryDev, yota, IgorVishnevskiy, it_duplicates, it_unique_duplicates
]

args = {2**i: [random.randint(0, 2**(i-1)) for _ in range(2**i)] for i in range(2, 12)}

b = benchmark(funcs, args, 'list size')

b.plot()

Benchmark 2

funcs = [
    georg_counter, georg_set, georg_set2, georg_set3, moooeeeep, 
    F1Rumors, Edward, wordsmith, firelynx,
    yota, IgorVishnevskiy, it_duplicates, it_unique_duplicates
]

args = {2**i: [random.randint(0, 2**(i-1)) for _ in range(2**i)] for i in range(2, 20)}

b = benchmark(funcs, args, 'list size')
b.plot()

Disclaimer

1 This is from a third-party library I have written: iteration_utilities.

  • I am going to stick my neck out here and suggest writing a bespoke library to do the work in C rather than Python is probably not the spirit of the answer that was being looked for - but that is a legitimate approach! I like the width of the answer and the graphical display of the results -- very nice to see they are converging, makes me wonder if they ever cross as the inputs increase further! Question: what is the result with mostly sorted lists as opposed to completely random lists? – F1Rumors Oct 17 at 11:52

collections.Counter is new in python 2.7:


Python 2.5.4 (r254:67916, May 31 2010, 15:03:39) 
[GCC 4.1.2 20080704 (Red Hat 4.1.2-46)] on linux2
a = [1,2,3,2,1,5,6,5,5,5]
import collections
print [x for x, y in collections.Counter(a).items() if y > 1]
Type "help", "copyright", "credits" or "license" for more information.
  File "", line 1, in 
AttributeError: 'module' object has no attribute 'Counter'
>>> 

In an earlier version you can use a conventional dict instead:

a = [1,2,3,2,1,5,6,5,5,5]
d = {}
for elem in a:
    if elem in d:
        d[elem] += 1
    else:
        d[elem] = 1

print [x for x, y in d.items() if y > 1]

Using pandas:

>>> import pandas as pd
>>> a = [1, 2, 1, 3, 3, 3, 0]
>>> pd.Series(a)[pd.Series(a).duplicated()].values
array([1, 3, 3])

Here's a neat and concise solution -

for x in set(li):
    li.remove(x)

li = list(set(li))
  • The original list is lost, though. This can be fixed by copying the contents to another list - temp = li[:] – Nikhil Prabhu Jul 15 '16 at 17:32
  • 2
    That's quite a nasty exercise on large lists - removing elements from lists are quite expensive! – F1Rumors Aug 23 '17 at 11:25

I would do this with pandas, because I use pandas a lot

import pandas as pd
a = [1,2,3,3,3,4,5,6,6,7]
vc = pd.Series(a).value_counts()
vc[vc > 1].index.tolist()

Gives

[3,6]

Probably isn't very efficient, but it sure is less code than a lot of the other answers, so I thought I would contribute

  • 3
    Note also that pandas contains a built-in duplicates function pda = pd.Series(a) print list(pda[pda.duplicated()]) – Len Blokken Sep 11 '17 at 13:22

A bit late, but maybe helpful for some. For a largish list, I found this worked for me.

l=[1,2,3,5,4,1,3,1]
s=set(l)
d=[]
for x in l:
    if x in s:
        s.remove(x)
    else:
        d.append(x)
d
[1,3,1]

Shows just and all duplicates and preserves order.

  • Doesn't work with a list of lists. – vanguard69 Jul 7 '15 at 11:04

the third example of the accepted answer give an erroneous answer and does not attempt to give duplicates. Here is the correct version :

number_lst = [1, 1, 2, 3, 5, ...]

seen_set = set()
duplicate_set = set(x for x in number_lst if x in seen_set or seen_set.add(x))
unique_set = seen_set - duplicate_set

How about simply loop through each element in the list by checking the number of occurrences, then adding them to a set which will then print the duplicates. Hope this helps someone out there.

myList  = [2 ,4 , 6, 8, 4, 6, 12];
newList = set()

for i in myList:
    if myList.count(i) >= 2:
        newList.add(i)

print(list(newList))
## [4 , 6]

Very simple and quick way of finding dupes with one iteration in Python is:

testList = ['red', 'blue', 'red', 'green', 'blue', 'blue']

testListDict = {}

for item in testList:
  try:
    testListDict[item] += 1
  except:
    testListDict[item] = 1

print testListDict

Output will be as follows:

>>> print testListDict
{'blue': 3, 'green': 1, 'red': 2}

This and more in my blog http://www.howtoprogramwithpython.com

We can use itertools.groupby in order to find all the items that have dups:

from itertools import groupby

myList  = [2, 4, 6, 8, 4, 6, 12]
# when the list is sorted, groupby groups by consecutive elements which are similar
for x, y in groupby(sorted(myList)):
    #  list(y) returns all the occurences of item x
    if len(list(y)) > 1:
        print x  

The output will be:

4
6
list2 = [1, 2, 3, 4, 1, 2, 3]
lset = set()
[(lset.add(item), list2.append(item))
 for item in list2 if item not in lset]
print list(lset)

One line solution:

set([i for i in list if sum([1 for a in list if a == i]) > 1])

There are a lot of answers up here, but I think this is relatively a very readable and easy to understand approach:

def get_duplicates(sorted_list):
    duplicates = []
    last = sorted_list[0]
    for x in sorted_list[1:]:
        if x == last:
            duplicates.append(x)
        last = x
    return set(duplicates)

Notes:

  • If you wish to preserve duplication count, get rid of the cast to 'set' at the bottom to get the full list
  • If you prefer to use generators, replace duplicates.append(x) with yield x and the return statement at the bottom (you can cast to set later)

Here's a fast generator that uses a dict to store each element as a key with a boolean value for checking if the duplicate item has already been yielded.

For lists with all elements that are hashable types:

def gen_dupes(array):
    unique = {}
    for value in array:
        if value in unique and unique[value]:
            unique[value] = False
            yield value
        else:
            unique[value] = True

array = [1, 2, 2, 3, 4, 1, 5, 2, 6, 6]
print(list(gen_dupes(array)))
# => [2, 1, 6]

For lists that might contain lists:

def gen_dupes(array):
    unique = {}
    for value in array:
        is_list = False
        if type(value) is list:
            value = tuple(value)
            is_list = True

        if value in unique and unique[value]:
            unique[value] = False
            if is_list:
                value = list(value)

            yield value
        else:
            unique[value] = True

array = [1, 2, 2, [1, 2], 3, 4, [1, 2], 5, 2, 6, 6]
print(list(gen_dupes(array)))
# => [2, [1, 2], 6]
def removeduplicates(a):
  seen = set()

  for i in a:
    if i not in seen:
      seen.add(i)
  return seen 

print(removeduplicates([1,1,2,2]))
  • You return a set and not a list as requested. A set contains only unique elements, thus the if statement is not really neccessary. You should also explain, what is the advantage from your solution compared to the other. – clemens Sep 24 '17 at 13:39

Some other tests. Of course to do...

set([x for x in l if l.count(x) > 1])

...is too costly. It's about 500 times faster (the more long array gives better results) to use the next final method:

def dups_count_dict(l):
    d = {}

    for item in l:
        if item not in d:
            d[item] = 0

        d[item] += 1

    result_d = {key: val for key, val in d.iteritems() if val > 1}

    return result_d.keys()

Only 2 loops, no very costly l.count() operations.

Here is a code to compare the methods for example. The code is below, here is the output:

dups_count: 13.368s # this is a function which uses l.count()
dups_count_dict: 0.014s # this is a final best function (of the 3 functions)
dups_count_counter: 0.024s # collections.Counter

The testing code:

import numpy as np
from time import time
from collections import Counter

class TimerCounter(object):
    def __init__(self):
        self._time_sum = 0

    def start(self):
        self.time = time()

    def stop(self):
        self._time_sum += time() - self.time

    def get_time_sum(self):
        return self._time_sum


def dups_count(l):
    return set([x for x in l if l.count(x) > 1])


def dups_count_dict(l):
    d = {}

    for item in l:
        if item not in d:
            d[item] = 0

        d[item] += 1

    result_d = {key: val for key, val in d.iteritems() if val > 1}

    return result_d.keys()


def dups_counter(l):
    counter = Counter(l)    

    result_d = {key: val for key, val in counter.iteritems() if val > 1}

    return result_d.keys()



def gen_array():
    np.random.seed(17)
    return list(np.random.randint(0, 5000, 10000))


def assert_equal_results(*results):
    primary_result = results[0]
    other_results = results[1:]

    for other_result in other_results:
        assert set(primary_result) == set(other_result) and len(primary_result) == len(other_result)


if __name__ == '__main__':
    dups_count_time = TimerCounter()
    dups_count_dict_time = TimerCounter()
    dups_count_counter = TimerCounter()

    l = gen_array()

    for i in range(3):
        dups_count_time.start()
        result1 = dups_count(l)
        dups_count_time.stop()

        dups_count_dict_time.start()
        result2 = dups_count_dict(l)
        dups_count_dict_time.stop()

        dups_count_counter.start()
        result3 = dups_counter(l)
        dups_count_counter.stop()

        assert_equal_results(result1, result2, result3)

    print 'dups_count: %.3f' % dups_count_time.get_time_sum()
    print 'dups_count_dict: %.3f' % dups_count_dict_time.get_time_sum()
    print 'dups_count_counter: %.3f' % dups_count_counter.get_time_sum()

Without converting to list and probably the simplest way would be something like below. This may be useful during a interview when they ask not to use sets

a=[1,2,3,3,3]
dup=[]
for each in a:
  if each not in dup:
    dup.append(each)
print(dup)

======= else to get 2 separate lists of unique values and duplicate values

a=[1,2,3,3,3]
uniques=[]
dups=[]

for each in a:
  if each not in uniques:
    uniques.append(each)
  else:
    dups.append(each)
print("Unique values are below:")
print(uniques)
print("Duplicate values are below:")
print(dups)
  • This doesn't result in a list of duplicates of a (or the original list) though, this results in a list of all of the unique elements of a (or the original list). What would someone do after they finished forming the list "dup"? – gameCoder95 Oct 13 at 23:06
  • @gameCoder95, hope the above edit helps – Chetan Vasudevan Oct 16 at 18:14

this is the way I had to do it because I challenged myself not to use other methods:

def dupList(oldlist):
    if type(oldlist)==type((2,2)):
        oldlist=[x for x in oldlist]
    newList=[]
    newList=newList+oldlist
    oldlist=oldlist
    forbidden=[]
    checkPoint=0
    for i in range(len(oldlist)):
        #print 'start i', i
        if i in forbidden:
            continue
        else:
            for j in range(len(oldlist)):
                #print 'start j', j
                if j in forbidden:
                    continue
                else:
                    #print 'after Else'
                    if i!=j: 
                        #print 'i,j', i,j
                        #print oldlist
                        #print newList
                        if oldlist[j]==oldlist[i]:
                            #print 'oldlist[i],oldlist[j]', oldlist[i],oldlist[j]
                            forbidden.append(j)
                            #print 'forbidden', forbidden
                            del newList[j-checkPoint]
                            #print newList
                            checkPoint=checkPoint+1
    return newList

so your sample works as:

>>>a = [1,2,3,3,3,4,5,6,6,7]
>>>dupList(a)
[1, 2, 3, 4, 5, 6, 7]
  • 3
    This is not what the OP wanted. He wanted a list of the duplicates, not a list with the duplicates removed. To make a list with the duplicates removed, I would suggest duplist = list(set(a)). – zondo Feb 5 '16 at 14:56

When using toolz:

from toolz import frequencies, valfilter

a = [1,2,2,3,4,5,4]
>>> list(valfilter(lambda count: count > 1, frequencies(a)).keys())
[2,4] 

I am entering much much late in to this discussion. Even though, I would like to deal with this problem with one liners . Because that's the charm of Python. if we just want to get the duplicates in to a separate list (or any collection),I would suggest to do as below.Say we have a duplicated list which we can call as 'target'

    target=[1,2,3,4,4,4,3,5,6,8,4,3]

Now if we want to get the duplicates,we can use the one liner as below:

    duplicates=dict(set((x,target.count(x)) for x in filter(lambda rec : target.count(rec)>1,target)))

This code will put the duplicated records as key and count as value in to the dictionary 'duplicates'.'duplicate' dictionary will look like as below:

    {3: 3, 4: 4} #it saying 3 is repeated 3 times and 4 is 4 times

If you just want all the records with duplicates alone in a list, its again much shorter code:

    duplicates=filter(lambda rec : target.count(rec)>1,target)

Output will be:

    [3, 4, 4, 4, 3, 4, 3]

This works perfectly in python 2.7.x + versions

Use the sort() function. Duplicates can be identified by looping over it and checking l1[i] == l1[i+1].

protected by Community Feb 17 '16 at 12:10

Thank you for your interest in this question. Because it has attracted low-quality or spam answers that had to be removed, posting an answer now requires 10 reputation on this site (the association bonus does not count).

Would you like to answer one of these unanswered questions instead?

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