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For example:

>>> x = [1, 1, 2, 'a', 'a', 3]
>>> unique(x)
[1, 2, 'a', 3]

Assume list elements are hashable.

Clarification: The result should keep the first duplicate in the list. For example, [1, 2, 3, 2, 3, 1] becomes [1, 2, 3].

share|improve this question
Are we keeping the first of duplicates, or last, or somewhere in the middle? e.g., [1,2,3,2,3,1], does that become [1,2,3], or [2,3,1], or something else? –  Chris Jester-Young Sep 18 '08 at 1:29
How Do I apply the Homework tag to something? When it says assume elements are hashable, your prof is asking you to put the entries in a hashtable, then it's easy to see if youve come across them before as you walk down the list. –  Karl Nov 12 '08 at 0:06

27 Answers 27

def unique(items):
    found = set([])
    keep = []

    for item in items:
        if item not in found:

    return keep

print unique([1, 1, 2, 'a', 'a', 3])
share|improve this answer
set() is better than set([]). –  Constantin Sep 29 '08 at 15:22
In-place algorithms are faster. See james' and mine answers. –  J.F. Sebastian Nov 12 '08 at 0:44
This is an old thread, but if you make the add() and append() methods local function (put add = found.add and app = keep.append before the loop and then use add(item) and app(item), then this is the fastest by far. The reason that the dictionary usage was faster was that it didn't require an attribute look-up for each add and append. Just my two cents. –  Justin Peel Nov 22 '10 at 23:22
If you put it into a list comprehension afterwards, you get another speed improvement. Taking all the changes together, speed nearly doubles. See my comparison further down this page. –  Michael Dec 27 '13 at 7:41


lst = [8, 8, 9, 9, 7, 15, 15, 2, 20, 13, 2, 24, 6, 11, 7, 12, 4, 10, 18, 13, 23, 11, 3, 11, 12, 10, 4, 5, 4, 22, 6, 3, 19, 14, 21, 11, 1, 5, 14, 8, 0, 1, 16, 5, 10, 13, 17, 1, 16, 17, 12, 6, 10, 0, 3, 9, 9, 3, 7, 7, 6, 6, 7, 5, 14, 18, 12, 19, 2, 8, 9, 0, 8, 4, 5]

And using the timeit module:

$ python -m timeit -s 'import uniquetest' 'uniquetest.etchasketch(uniquetest.lst)'

(and so on for the various other functions -- which I named after their posters), I have the following results (on my first generation Intel MacBook Pro):

  • Allen: 14.6 usec per loop [1]
  • Terhorst: 26.6 usec per loop
  • Tarle: 44.7 usec per loop
  • ctcherry: 44.8 usec per loop
  • Etchasketch 1 (the short one): 64.6 usec per loop
  • Schinckel: 65 usec per loop
  • Etchasketch 2: 71.6 usec per loop
  • Little: 89.4 usec per loop
  • Tyler: 179 usec per loop

[1] Note that Allen modifies the list in place – I believe this has skewed the time, in that the timeit module runs the code 100000 times and 99999 of them are with the dupe-less list.

Summary: Straight-forward implementation with sets wins over confusing one-liners :-)

share|improve this answer
james suggested a faster version. See stackoverflow.com/questions/89178/#91430 –  J.F. Sebastian Nov 12 '08 at 0:16
Bump for using OSX. ;-) –  geowar Feb 12 '13 at 0:48

Here is the fastest solution so far (for the following input):

def del_dups(seq):
    seen = {}
    pos = 0
    for item in seq:
        if item not in seen:
            seen[item] = True
            seq[pos] = item
            pos += 1
    del seq[pos:]

lst = [8, 8, 9, 9, 7, 15, 15, 2, 20, 13, 2, 24, 6, 11, 7, 12, 4, 10, 18, 
       13, 23, 11, 3, 11, 12, 10, 4, 5, 4, 22, 6, 3, 19, 14, 21, 11, 1, 
       5, 14, 8, 0, 1, 16, 5, 10, 13, 17, 1, 16, 17, 12, 6, 10, 0, 3, 9, 
       9, 3, 7, 7, 6, 6, 7, 5, 14, 18, 12, 19, 2, 8, 9, 0, 8, 4, 5]
# -> [8, 9, 7, 15, 2, 20, 13, 24, 6, 11, 12, 4, 10, 18, 23, 3, 5, 22, 19, 14, 
#     21, 1, 0, 16, 17]

Dictionary lookup is slightly faster then the set's one in Python 3.

share|improve this answer
Could you explain why the Dictionary lookup is faster than a test for set membership in this case? –  Stephen Emslie Jan 3 '12 at 10:01
@Stephen Emslie: I don't know. It might be a benchmark artifact. Try it yourself. A pure speculation: dictionary is a fundamental data structure for CPython (namespaces, classes are/were implemented via dictionaries) therefore dicts are more tuned/optimized than sets. –  J.F. Sebastian Jan 3 '12 at 11:18
Good timing, but wrong conclusion. The timing shows only that operator access such as d[k] = v is faster than method call access such as d.__setitem__(k, v) even if the latter has been pre-bound using d_setitem = d.__setitem__ and then timing d_setitem(k, v). –  Raymond Hettinger Dec 27 '13 at 8:12

What's going to be fastest depends on what percentage of your list is duplicates. If it's nearly all duplicates, with few unique items, creating a new list will probably be faster. If it's mostly unique items, removing them from the original list (or a copy) will be faster.

Here's one for modifying the list in place:

def unique(items):
  seen = set()
  for i in xrange(len(items)-1, -1, -1):
    it = items[i]
    if it in seen:
      del items[i]

Iterating backwards over the indices ensures that removing items doesn't affect the iteration.

share|improve this answer
This gives different results to the other solutions (the OP didn't specify which is correct), as regards which duplicate to keep. This solution: [1, 2, 1] -> [2, 1] Other solutions: [1, 2, 1] -> [1, 2] –  James Hopkin Sep 18 '08 at 9:24
I added a clarification about this in the question text. –  Jeff Miller Sep 18 '08 at 11:50

This is the fastest in-place method I've found (assuming a large proportion of duplicates):

def unique(l):
    s = set(); n = 0
    for x in l:
        if x not in s: s.add(x); l[n] = x; n += 1
    del l[n:]

This is 10% faster than Allen's implementation, on which it is based (timed with timeit.repeat, JIT compiled by psyco). It keeps the first instance of any duplicate.

repton-infinity: I'd be interested if you could confirm my timings.

share|improve this answer
Dictionaries are slightly faster than sets. See my answer stackoverflow.com/questions/89178/#282589 –  J.F. Sebastian Nov 12 '08 at 0:14

Obligatory generator-based variation:

def unique(seq):
  seen = set()
  for x in seq:
    if x not in seen:
      yield x
share|improve this answer

Benchmark and a clear answer here.

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Taken from http://www.peterbe.com/plog/uniqifiers-benchmark

def f5(seq, idfun=None):  
    # order preserving 
    if idfun is None: 
        def idfun(x): return x 
    seen = {} 
    result = [] 
    for item in seq: 
        marker = idfun(item) 
        # in old Python versions: 
        # if seen.has_key(marker) 
        # but in new ones: 
        if marker in seen: continue 
        seen[marker] = 1 
    return result
share|improve this answer
it is slower than corresponding in-place version (at least for some inputs). See stackoverflow.com/questions/89178/#282589 –  J.F. Sebastian Nov 12 '08 at 0:26


new_list = reduce(lambda x,y: x+[y][:1-int(y in x)], my_list, [])
share|improve this answer

An in-place one-liner for this:

>>> x = [1, 1, 2, 'a', 'a', 3]
>>> [ item for pos,item in enumerate(x) if x.index(item)==pos ]
[1, 2, 'a', 3]
share|improve this answer
HI Mario, How this works, please explain, what I understood is index return only one value, so its unique ? –  sjcipher Dec 8 '13 at 5:40
The list.index(item) method returns the position of the first item found in the list, and comparing this with the actual position of the item (from enumerate) we can therefore tell whether that item is the first occurring or not, keeping only the first occurring. –  Mario Ruggier Jan 29 at 11:08
thank you, this is a very elegant solution. –  sjcipher Jan 29 at 12:58

This may be the simplest way (not the fastest):

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Elegant, but unfortunately about a magnitude slower than the fastest solution, and surprisingly one of the slowest solutions in general. The OrderedDict seems to be a real performance killer. –  Michael Dec 26 '13 at 16:04

You can actually do something really cool in Python to solve this. You can create a list comprehension that would reference itself as it is being built. As follows:

   # remove duplicates...
   def unique(my_list):
       return [x for x in my_list if x not in locals()['_[1]'].__self__]

Edit: I removed the "self", and it works on Mac OS X, Python 2.5.1.

The _[1] is Python's "secret" reference to the new list. The above, of course, is a little messy, but you could adapt it fit your needs as necessary. For example, you can actually write a function that returns a reference to the comprehension; it would look more like:

return [x for x in my_list if x not in this_list()]

share|improve this answer
I have never seen that hack before, kudos! –  Jerub Sep 18 '08 at 1:47
That's pretty sweet. Thanks. –  Terhorst Sep 18 '08 at 1:54
The order is O(n^2), though. –  Terhorst Sep 18 '08 at 1:57
The example as given does not compile for me -- the trailing ".__self__" is not valid [[Linux 2.6 w/ Python 2.5.1]] –  Kevin Little Sep 18 '08 at 2:19
Holy cow, you're turning Python into Perl with the magic underscore business. Just say no. –  Parand Mar 13 '09 at 3:49

Do the duplicates necessarily need to be in the list in the first place? There's no overhead as far as looking the elements up, but there is a little bit more overhead in adding elements (though the overhead should be O(1) ).

>>> x  = []
>>> y = set()
>>> def add_to_x(val):
...     if val not in y:
...             x.append(val)
...             y.add(val)
...     print x
...     print y
>>> add_to_x(1)
>>> add_to_x(1)
>>> add_to_x(1)
share|improve this answer

O(n) if dict is hash, O(nlogn) if dict is tree, and simple, fixed. Thanks to Matthew for the suggestion. Sorry I don't know the underlying types.

def unique(x):    
  output = []
  y = {}
  for item in x:
    y[item] = ""

  for item in x:
    if item in y:

  return output
share|improve this answer
FYI, you can also do that with a set so you don't have to set it equal to an empty string. –  Jason Baker Sep 18 '08 at 2:42

has_key in python is O(1). Insertion and retrieval from a hash is also O(1). Loops through n items twice, so O(n).

def unique(list):
  s = {}
  output = []
  for x in list:
    count = 1
      count = s[x] + 1

    s[x] = count
  for x in list:
    count = s[x]
    if(count > 0):
      s[x] = 0
  return output
share|improve this answer

There are some great, efficient solutions here. However, for anyone not concerned with the absolute most efficient O(n) solution, I'd go with the simple one-liner O(n^2*log(n)) solution:

def unique(xs):
    return sorted(set(xs), key=lambda x: xs.index(x))

or the more efficient two-liner O(n*log(n)) solution:

def unique(xs):
    positions = dict((e,pos) for pos,e in reversed(list(enumerate(xs))))
    return sorted(set(xs), key=lambda x: positions[x])
share|improve this answer
That code is difficult to understand, and you say it's less efficient than the other solutions already presented here. So why would you go with it? –  Jeff Miller Sep 18 '08 at 17:40
I consider this easy to understand; passing a lambda function as the key parameter of sorted is really the canonical way to sort a list in Python. Most of my Python work involves generating reports on lists of statistics, and so to me this seems like the simplest and most Pythonic approach. –  Eli Courtwright Sep 19 '08 at 12:51
While I agree your solution is succinct, the question asked for the fastest algorithm, not the most Pythonic. –  Jeff Miller Oct 1 '08 at 22:30

Remove duplicates and preserve order:

This is a fast 2-liner that leverages built-in functionality of list comprehensions and dicts.

x = [1, 1, 2, 'a', 'a', 3]

tmpUniq = {} # temp variable used below 
results = [tmpUniq.setdefault(i,i) for i in x if i not in tmpUniq]

print results
[1, 2, 'a', 3]

The dict.setdefaults() function returns the value as well as adding it to the temp dict directly in the list comprehension. Using the built-in functions and the hashes of the dict will work to maximize efficiency for the process.

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Here are two recipes from the itertools documentation:

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 ifilterfalse(seen.__contains__, iterable):
            yield element
        for element in iterable:
            k = key(element)
            if k not in seen:
                yield element

def unique_justseen(iterable, key=None):
    "List unique elements, preserving order. Remember only the element just seen."
    # unique_justseen('AAAABBBCCDAABBB') --> A B C D A B
    # unique_justseen('ABBCcAD', str.lower) --> A B C A D
    return imap(next, imap(itemgetter(1), groupby(iterable, key)))
share|improve this answer

I have no experience with python, but an algorithm would be to sort the list, then remove duplicates (by comparing to previous items in the list), and finally find the position in the new list by comparing with the old list.

Longer answer: http://aspn.activestate.com/ASPN/Cookbook/Python/Recipe/52560

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Needs to preverve order –  Flame Sep 18 '08 at 4:19
>>> def unique(list):
...   y = []
...   for x in list:
...     if x not in y:
...       y.append(x)
...   return y
share|improve this answer
This one is also O(n^2) –  Terhorst Sep 18 '08 at 1:58
To explain why: searching for x in a list structure (y) is O(n), while searching for x in a set (or dictionary) is O(1). –  Hamish Downer Sep 27 '08 at 16:17

If you take out the empty list from the call to set() in Terhost's answer, you get a little speed boost.

Change: found = set([])
to: found = set()

However, you don't need the set at all.

def unique(items):
    keep = []

    for item in items:
        if item not in keep:

    return keep

Using timeit I got these results:

with set([]) -- 4.97210427363
with set() -- 4.65712377445
with no set -- 3.44865284975

share|improve this answer
yeah, when you have few data, I bet the set internal mecanisme is slower that iterating over a list. But if you got maaaaaaaaaaany element, I think set are faster. Or what would be the point of this data structures ;-) –  e-satis Sep 23 '08 at 21:21

This is the fastest one, comparing all the stuff from this lengthy discussion and the other answers given here, refering to this benchmark. It's another 25% faster than the fastest function from the discussion, f8. Thanks to David Kirby for the idea.

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

Some time comparison:

$ python uniqifiers_benchmark.py 
* f8_original 3.76
* uniquify 3.0
* terhorst 5.44
* terhorst_localref 4.08
* del_dups 4.76
share|improve this answer
I don't see time comparison with solutions from the top answers here. In my experience, explicit loops are faster than list comprehension in CPython (at least it requires a benchmark to test for each particular case). –  J.F. Sebastian Dec 26 '13 at 17:56
I added the timings above. The main overhead in the presented solutions is the property lookup for add, append and so on, but even if you kick that out, the list comprehension is about 25% faster than terhorst_localreferences. –  Michael Dec 27 '13 at 7:37
could you include the complete benchmark code in your answer? I don't see terhorst (or any other relevant code) in the file you linked. –  J.F. Sebastian Dec 27 '13 at 8:31
pastebin.com/C5SQmT1R –  Michael Dec 27 '13 at 16:52
>>> x=[1,1,2,'a','a',3]
>>> y = [ _x for _x in x if not _x in locals()['_[1]'] ]
>>> y
[1, 2, 'a', 3]

"locals()['_[1]']" is the "secret name" of the list being created.

share|improve this answer
Presence of _[1] local is not guaranteed by language. –  Constantin Sep 29 '08 at 15:20
"<item> in <list>" is O(n), so this is slow. –  Charles Duffy Nov 24 '08 at 10:41

I don't know if this one is fast or not, but at least it is simple.

Simply, convert it first to a set and then again to a list

def unique(container):
  return list(set(container))
share|improve this answer
This does not preserve order. –  Eli Courtwright Sep 18 '08 at 13:17

I haven't done any tests, but one possible algorithm might be to create a second list, and iterate through the first list. If an item is not in the second list, add it to the second list.

x = [1, 1, 2, 'a', 'a', 3]
y = []
for each in x:
    if each not in y:
share|improve this answer
I find your use of the variable name "each" really confusing to read, probably because in many languages it is a keyword. It's much clearer to use item or just i. –  rjmunro Nov 12 '08 at 1:00
'i' to me implies an index - we aren't iterating through indices, we are iterating through objects. I'd prefer item, but I don't see 'each' as bad - just because it is a keyword in another language, why prevent it's use here. Syntax highlighting (as shown above) picks it up fine... –  Matthew Schinckel Nov 26 '08 at 2:30
Other than AppleScript, what languages use the word 'each' as a keyword? –  Matthew Schinckel Nov 26 '08 at 2:33
You should have used a set. This is unlikely to be the fastest. –  Marcin Nov 18 '12 at 16:38
Marcin: "... while preserving order". –  Matthew Schinckel Nov 19 '12 at 1:15

One pass.

a = [1,1,'a','b','c','c']

new_list = []
prev = None

while 1:
        i = a.pop(0)
        if i != prev:
        prev = i
    except IndexError:
share|improve this answer
Requires sorted input, doesn't it? –  Constantin Sep 29 '08 at 15:20


def unique(l):

for item in l:
	if not ids.has_key(item):
return  ids.keys()

print a

print unique(a)


Inserting elements will take theta(n) retrieving if element is exiting or not will take constant time testing all the items will take also theta(n) so we can see that this solution will take theta(n) Bear in Mind that dictionary in python implemented by hash table

share|improve this answer
The questions says "while preserving order". A Python dictionary doesn't preserve order. –  J.F. Sebastian Nov 24 '08 at 11:28

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