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Is there a built-in that removes duplicates from list in Python, whilst preserving order? I know that I can use a set to remove duplicates, but that destroys the original order. I also know that I can roll my own like this:

def uniq(input):
  output = []
  for x in input:
    if x not in output:
      output.append(x)
  return output

(Thanks to unwind for that code sample.)

But I'd like to avail myself of a built-in or a more Pythonic idiom if possible.

Related question: In Python, what is the fastest algorithm for removing duplicates from a list so that all elements are unique while preserving order?

share|improve this question
3  
I think your implementation looks the cleanest.. – Pithikos Sep 30 '14 at 12:39

31 Answers 31

up vote 393 down vote accepted

Here you have some alternatives: http://www.peterbe.com/plog/uniqifiers-benchmark

Fastest one:

def f7(seq):
    seen = set()
    seen_add = seen.add
    return [x for x in seq if not (x in seen or seen_add(x))]

Why assign seen.add to seen_add instead of just calling seen.add? Python is a dynamic language, and resolving seen.add each iteration is more costly than resolving a local variable. seen.add could have changed between iterations, and the runtime isn't smart enough to rule that out. To play it safe, it has to check the object each time.

If you plan on using this function a lot on the same dataset, perhaps you would be better off with an ordered set: http://code.activestate.com/recipes/528878/

O(1) insertion, deletion and member-check per operation.

share|improve this answer
13  
@JesseDhillon seen.add could have changed between iterations, and the runtime isn't smart enough to rule that out. To play safe, it has to check the object each time. -- If you look at the bytecode with dis.dis(f), you can see that it executes LOAD_ATTR for the add member on each iteration. ideone.com/tz1Tll – Markus Jarderot Mar 22 '13 at 17:24
2  
@SergeyOrshanskiy Almost O(1). – Markus Jarderot Dec 18 '13 at 0:52
1  
When I try this on a list of lists I get: TypeError: unhashable type: 'list' – Jens Timmerman Mar 11 '14 at 14:28
4  
Your solution is not the fastest one. In Python 3 (did not test 2) this is faster (300k entries list - 0.045s (yours) vs 0.035s (this one): seen = set(); return [x for x in lines if x not in seen and not seen.add(x)]. I could not find any speed effect of the seen_add line you did. – user136036 Oct 24 '14 at 16:39
1  
@user136036 Please link to your tests. How many times did you run them?seen_add is an improvement but timings can be affected by system resources at the time. Would be interested to see full timings – jamylak May 20 '15 at 6:22

Important Edit 2015

As @abarnert notes, the more_itertools library (pip install more_itertools) contains a unique_everseen function that is built to solve this problem without any unreadable (not seen.add) mutations in list comprehensions. This is also the fastest solution too:

>>> from  more_itertools import unique_everseen
>>> items = [1, 2, 0, 1, 3, 2]
>>> list(unique_everseen(items))
[1, 2, 0, 3]

Just one simple library import and no hacks. This comes from an implementation of the itertools recipe unique_everseen which looks like:

def unique_everseen(iterable, key=None):
    "List unique elements, preserving order. Remember all elements ever seen."
    # unique_everseen('AAAABBBCCDAABBB') --> A B C D
    # unique_everseen('ABBCcAD', str.lower) --> A B C D
    seen = set()
    seen_add = seen.add
    if key is None:
        for element in filterfalse(seen.__contains__, iterable):
            seen_add(element)
            yield element
    else:
        for element in iterable:
            k = key(element)
            if k not in seen:
                seen_add(k)
                yield element

In Python 2.7+ the accepted common idiom (this works but isn't optimized for speed, i would now use unique_everseen) for this uses collections.OrderedDict:

Runtime: O(N)

>>> from collections import OrderedDict
>>> items = [1, 2, 0, 1, 3, 2]
>>> list(OrderedDict.fromkeys(items))
[1, 2, 0, 3]

This looks much nicer than:

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

and doesn't utilize the ugly hack:

not seen.add(x)

which relies on the fact that set.add is an in-place method that always returns None so not None evaluates to True.

Note however that the hack solution is faster in raw speed though it has the same runtime complexity O(N).

share|improve this answer
3  
Converting to some custom kind of dict just to take keys? Just another crutch. – Nakilon Jun 14 '13 at 13:40
1  
@Nakilon I don't really see how it's a crutch. It doesn't expose any mutable state, so its very clean in that sense. Internally, Python sets are implemented with dict() (stackoverflow.com/questions/3949310/…), so basically you're just doing what the interpreter would've done anyway. – Imran Jun 18 '13 at 6:58
11  
+1 This is a good and pythonic way, and is vetted by a python core developer here. – wim Oct 18 '13 at 0:58
1  
@CommuSoft I agree, although practically it's almost always O(n) due to the super highly unlikely worst case – jamylak May 20 '15 at 5:22
sequence = ['1', '2', '3', '3', '6', '4', '5', '6']
unique = []
[unique.append(item) for item in sequence if item not in unique]

unique → ['1', '2', '3', '6', '4', '5']

share|improve this answer
15  
It's worth noting that this runs in n^2 – goncalopp Mar 19 '14 at 17:13
10  
Ick. 2 strikes: Using a list for membership testing (slow, O(N)) and using a list comprehension for the side effects (building another list in the process!) – Martijn Pieters Mar 3 '15 at 14:32
from itertools import groupby
[ key for key,_ in groupby(sortedList)]

The list doesn't even have to be sorted, the sufficient condition is that equal values are grouped together.

Edit: I assumed that "preserving order" implies that the list is actually ordered. If this is not the case, then the solution from MizardX is the right one.

Community edit: This is however the most elegant way to "compress duplicate consecutive elements into a single element".

share|improve this answer
1  
Added clarification. – Rafał Dowgird Jan 26 '09 at 15:59
1  
Maybe the specification of the input list is a little bit unclear. The values don't even need to be grouped together: [2, 1, 3, 1]. So which values to keep and which to delete? – unbeknown Jan 26 '09 at 16:00

I think if you wanna maintain the order,

you can try this:

list1 = ['b','c','d','b','c','a','a']    
list2 = list(set(list1))    
list2.sort(key=list1.index)    
print list2

OR similarly you can do this:

list1 = ['b','c','d','b','c','a','a']  
list2 = sorted(set(list1),key=list1.index)  
print list2 

You can also do this:

list1 = ['b','c','d','b','c','a','a']    
list2 = []    
for i in list1:    
    if not i in list2:  
        list2.append(i)`    
print list2

It can also be written as this:

list1 = ['b','c','d','b','c','a','a']    
list2 = []    
[list2.append(i) for i in list1 if not i in list2]    
print list2 
share|improve this answer
2  
Your first two answers assume that the order of the list can be rebuilt using a sorting function, but this may not be so. – Richard Sep 3 '13 at 19:11
2  
It's also O(n^2), worst case on an already sorted list – cod3monk3y Jan 14 '14 at 16:59

For another very late answer to another very old question:

The itertools recipes have a function that does this, using the seen set technique, but:

  • Handles a standard key function.
  • Uses no unseemly hacks.
  • Optimizes the loop by pre-binding seen.add instead of looking it up N times. (f7 also does this, but some versions don't.)
  • Optimizes the loop by using ifilterfalse, so you only have to loop over the unique elements in Python, instead of all of them. (You still iterate over all of them inside ifilterfalse, of course, but that's in C, and much faster.)

Is it actually faster than f7? It depends on your data, so you'll have to test it and see. If you want a list in the end, f7 uses a listcomp, and there's no way to do that here. (You can directly append instead of yielding, or you can feed the generator into the list function, but neither one can be as fast as the LIST_APPEND inside a listcomp.) At any rate, usually, squeezing out a few microseconds is not going to be as important as having an easily-understandable, reusable, already-written function that doesn't require DSU when you want to decorate.

As with all of the recipes, it's also available in more-iterools.

If you just want the no-key case, you can simplify it as:

def unique(iterable):
    seen = set()
    seen_add = seen.add
    for element in itertools.ifilterfalse(seen.__contains__, iterable):
        seen_add(element)
        yield element
share|improve this answer

For no hashable types (e.g. list of lists), based on MizardX's:

def f7_noHash(seq)
    seen = set()
    return [ x for x in seq if str( x ) not in seen and not seen.add( str( x ) )]
share|improve this answer

inpList = [1, 1, 2, 2, 3, 3, 2, 2, 4, 1, 2, 5, 5] myList = list(set(inpList)) print myList

output: [1, 2, 3, 4, 5]

share|improve this answer
1  
It should be myList = list(set(inpList)) (Stackoverflow doesn't let me edit the code because the edit is too short, i.e. "Edits must be at least 6 characters; is there something else to improve in this post?". Um, yep) – Hamman Samuel Nov 30 '14 at 14:31
3  
there are lot of answers here using set, but it has been mentioned several times that it doesn't preserve the order which was an explicit requirement by OP – eis Jul 24 '15 at 10:17

You can reference a list comprehension as it is being built by the symbol '_[1]'.
For example, the following function unique-ifies a list of elements without changing their order by referencing its list comprehension.

def unique(my_list): 
    return [x for x in my_list if x not in locals()['_[1]']]

Demo:
l1 = [1, 2, 3, 4, 1, 2, 3, 4, 5]
l2 = [x for x in l1 if x not in locals()['_[1]']]
print l2

Output:
[1, 2, 3, 4, 5] 
share|improve this answer
5  
Please note it won't work in Python 2.7+. – d33tah Mar 17 '13 at 11:29
2  
Also note that it would make it an O(n^2) operation, where as creating a set/dict (which has constant look up time) and adding only previously unseen elements will be linear. – Mr. F Sep 4 '13 at 19:45

MizardX's answer gives a good collection of multiple approaches.

This is what I came up with while thinking aloud:

mylist = [x for i,x in enumerate(mylist) if x not in mylist[i+1:]]
share|improve this answer
6  
Since searching in a list is an O(n) operation and you perform it on each item, the resulting complexity of your solution would be O(n^2). This is just unacceptable for such a trivial problem. – Nikita Volkov Sep 5 '12 at 15:06

Borrowing the recursive idea used in definining Haskell's nub function for lists, this would be a recursive approach:

def unique(lst):
    return [] if lst==[] else [lst[0]] + unique(filter(lambda x: x!= lst[0], lst[1:]))

e.g.:

In [118]: unique([1,5,1,1,4,3,4])
Out[118]: [1, 5, 4, 3]

I tried it for growing data sizes and saw sub-linear time-complexity (not definitive, but suggests this should be fine for normal data).

In [122]: %timeit unique(np.random.randint(5, size=(1)))
10000 loops, best of 3: 25.3 us per loop

In [123]: %timeit unique(np.random.randint(5, size=(10)))
10000 loops, best of 3: 42.9 us per loop

In [124]: %timeit unique(np.random.randint(5, size=(100)))
10000 loops, best of 3: 132 us per loop

In [125]: %timeit unique(np.random.randint(5, size=(1000)))
1000 loops, best of 3: 1.05 ms per loop

In [126]: %timeit unique(np.random.randint(5, size=(10000)))
100 loops, best of 3: 11 ms per loop

I also think it's interesting that this could be readily generalized to uniqueness by other operations. Like this:

import operator
def unique(lst, cmp_op=operator.ne):
    return [] if lst==[] else [lst[0]] + unique(filter(lambda x: cmp_op(x, lst[0]), lst[1:]), cmp_op)

For example, you could pass in a function that uses the notion of rounding to the same integer as if it was "equality" for uniqueness purposes, like this:

def test_round(x,y):
    return round(x) != round(y)

then unique(some_list, test_round) would provide the unique elements of the list where uniqueness no longer meant traditional equality (which is implied by using any sort of set-based or dict-key-based approach to this problem) but instead meant to take only the first element that rounds to K for each possible integer K that the elements might round to, e.g.:

In [6]: unique([1.2, 5, 1.9, 1.1, 4.2, 3, 4.8], test_round)
Out[6]: [1.2, 5, 1.9, 4.2, 3]
share|improve this answer
1  
Note that performance will get bad when the number of unique elements is very large relative to the total number of elements, since each successive recursive call's use of filter will barely benefit from the previous call at all. But if the number of unique elements is small relative to the array size, this should perform pretty well. – Mr. F Sep 11 '13 at 14:05

5 x faster reduce variant but more sophisticated

>>> l = [5, 6, 6, 1, 1, 2, 2, 3, 4]
>>> reduce(lambda r, v: v in r[1] and r or (r[0].append(v) or r[1].add(v)) or r, l, ([], set()))[0]
[5, 6, 1, 2, 3, 4]

Explanation:

default = (list(), set())
# use list to keep order
# use set to make lookup faster

def reducer(result, item):
    if item not in result[1]:
        result[0].append(item)
        result[1].add(item)
    return result

>>> reduce(reducer, l, default)[0]
[5, 6, 1, 2, 3, 4]
share|improve this answer

If you need one liner then maybe this would help:

reduce(lambda x, y: x + y if y[0] not in x else x, map(lambda x: [x],lst))

... should work but correct me if i'm wrong

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Pop the duplicate in a list and hold uniques in source list :

>>> list1 = [ 1,1,2,2,3,3 ]
>>> [ list1.pop(i) for i in range(len(list1))[::-1] if list1.count(list1[i]) > 1 ]
[1, 2, 3]

I use [::-1] for read list in reverse order.

share|improve this answer

Because I was looking at a dup and collected some related but different, related, useful information that isn't part of the other answers, here are two other possible solutions.

.get(True) XOR .setdefault(False)

The first is very much like the accepted seen_add soultion but with explicit side effects using dictionary's get(x,<default>) and setdefault(x,<default>):

# Explanation of d.get(x,True) != d.setdefault(x,False)
#
# x in d | d[x]  | A = d.get(x,True) | x in d | B = d.setdefault(x,False) | x in d | d[x]    | A xor B
# False  | None  | True          (1) | False  | False                 (2) | True   | False   | True
# True   | False | False         (3) | True   | False                 (4) | True   | False   | False
#
# Notes
# (1) x is not in the dictionary, so get(x,<default>) returns True but does __not__ add the value to the dictionary
# (2) x is not in the dictionary, so setdefault(x,<default>) adds the {x:False} and returns False
# (3) since x is in the dictionary, the <default> argument is ignored, and the value of the key is returned, which was
#     set to False in (2)
# (4) since the key is already in the dictionary, its value is returned directly and the argument is ignored
#
# A != B is how to do boolean XOR in Python
#
def sort_with_order(s):
    d = dict()
    return [x for x in s if d.get(x,True) != d.setdefault(x,False)]

get(x,<default>) returns <default> if x is not in the dictionary, but does not add the key to the dictionary. set(x,<default>) returns the value if the key is in the dictionary, otherwise sets it to and returns <default>.

Aside: a != b is how to do an XOR in python

OVERRIDING __missing__ (inspired by this answer)

The second technique is overriding the __missing__ method that gets called when the key doesn't exist in a dictionary, which is only called when using d[k] notation:

class Tracker(dict):
    # returns True if missing, otherwise sets the value to False
    # so next time d[key] is called, the value False will be returned
    # and __missing__ will not be called again
    def __missing__(self, key):
        self[key] = False
        return True

t = Tracker()
unique_with_order = [x for x in samples if t[x]]

From the docs:

New in version 2.5: If a subclass of dict defines a method __missing__(), if the key key is not present, the d[key] operation calls that method with the key key as argument. The d[key] operation then returns or raises whatever is returned or raised by the __missing__(key) call if the key is not present. No other operations or methods invoke __missing__(). If __missing__() is not defined, KeyError is raised. __missing__() must be a method; it cannot be an instance variable. For an example, see collections.defaultdict.

share|improve this answer

You could do a sort of ugly list comprehension hack.

[l[i] for i in range(len(l)) if l.index(l[i]) == i]
share|improve this answer

Relatively effective approach with _sorted_ a numpy arrays:

b = np.array([1,3,3, 8, 12, 12,12])    
numpy.hstack([b[0], [x[0] for x in zip(b[1:], b[:-1]) if x[0]!=x[1]]])

Outputs:

array([ 1,  3,  8, 12])
share|improve this answer

A simple recursive solution:

def uniquefy_list(a):
    return uniquefy_list(a[1:]) if a[0] in a[1:] else [a[0]]+uniquefy_list(a[1:]) if len(a)>1 else [a[0]]
share|improve this answer

Here is an O(N2) recursive version for fun:

def uniquify(s):
    if len(s) < 2:
        return s
    return uniquify(s[:-1]) + [s[-1]] * (s[-1] not in s[:-1])
share|improve this answer

This is fast but...

l = list(set(l))

... it doesn't work if your list items aren't hashable.

A more generic approach is:

l = reduce(lambda x, y: x if y in x else x + [y], l, [])

... it should work for all cases.

share|improve this answer
2  
I didn't downvote it, but my guess is it got downvoted because someone stopped reading after the first option, which doesn't preserve the order (as the OP requests). Or they read the second one and downvoted it because Guido hates reduce - or because it's not a very good algorithm (it looks pretty inefficient to me, because of how the test is done and how the result is constructed). (Downvoters should be forced to leave comments.) – Matt Curtis Sep 6 '12 at 5:56

If your situation allows, you might consider removing duplicates as you load:

Say you have a loop that is pulling in data and uses list1.append(item)...

list1 = [0, 2, 4, 9]
for x in range(0, 7):
  list1.append(x)

That gives you some duplicates: [0, 2, 4, 9, 0, 1, 2, 3, 4, 5, 6]

But if you did:

list1 = [0, 2, 4, 9]
for x in range(0, 7)
  if x not in list1:
    list1.append(x)

You get no duplicates and the order is preserved: [0, 2, 4, 9, 1, 3, 5, 6]

share|improve this answer
l = [1,2,3,4,5,1,2,3,4]
s = set(l)
l = list(s)
print l

Output:

[1,2,3,4,5]
share|improve this answer
l = [1,2,2,3,3,...]
n = []
n.extend(ele for ele in l if ele not in set(n))

A generator expression that uses the O(1) look up of a set to determine whether or not to include an element in the new list.

share|improve this answer

If you routinely use pandas, and aesthetics is preferred over performance, then consider the built-in function pandas.Series.drop_duplicates:

    import pandas as pd
    import numpy as np

    uniquifier = lambda alist: pd.Series(alist).drop_duplicates().tolist()

    # from the chosen answer 
    def f7(seq):
        seen = set()
        seen_add = seen.add
        return [ x for x in seq if not (x in seen or seen_add(x))]

    alist = np.random.randint(low=0, high=1000, size=10000).tolist()

    print uniquifier(alist) == f7(alist)  # True

Timing:

    In [104]: %timeit f7(alist)
    1000 loops, best of 3: 1.3 ms per loop
    In [110]: %timeit uniquifier(alist)
    100 loops, best of 3: 4.39 ms per loop
share|improve this answer

I found a very elegant and ultra fast way to do this here: http://www.peterbe.com/plog/uniqifiers-benchmark

def f1(seq):
    # not order preserving
    set = {}
    map(set.__setitem__, seq, [])
    return set.keys()
share|improve this answer

this will preserve order and run in O(n) time. basically the idea is to create a hole wherever there is a duplicate found and sink it down to the bottom. makes use of a read and write pointer. whenever a duplicate is found only the read pointer advances and write pointer stays on the duplicate entry to overwrite it.

def deduplicate(l):
    count = {}
    (read,write) = (0,0)
    while read < len(l):
        if l[read] in count:
            read += 1
            continue
        count[l[read]] = True
        l[write] = l[read]
        read += 1
        write += 1
    return l[0:write]
share|improve this answer

A solution without using imported modules or sets:

text = "ask not what your country can do for you ask what you can do for your country"
sentence = text.split(" ")
noduplicates = [(sentence[i]) for i in range (0,len(sentence)) if sentence[i] not in sentence[:i]]
print(noduplicates)

Gives output:

['ask', 'not', 'what', 'your', 'country', 'can', 'do', 'for', 'you']
share|improve this answer
for i in range(len(theArray)-1,-1,-1): #get the indexes in reverse
    if theArray.count(theArray[i]) > 1:
        theArray.pop(i)
share|improve this answer

Here is my 2 cents on this:

def inique(nums):
    unique = []
    for n in nums:
        if n not in unique:
            unique.append(n)
    return unique

Regards, Yuriy

share|improve this answer
list1 = [1,2,3,4,5,7,8,9,4,1,2,35,1,2,4,2,3]
#convert list into set
set = set(list1)

#convert back to list
list1 = list(set)

print list1

#Ans:
[1,2,3,4,5,7,8,9,4,1,2,35,1,2,]
share|improve this answer

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