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What is the best way (best as in the conventional way) of checking whether all elements in a list are unique?

My current approach using a Counter is:

>>> x = [1, 1, 1, 2, 3, 4, 5, 6, 2]
>>> counter = Counter(x)
>>> for values in counter.itervalues():
        if values > 1: 
            # do something

Can I do better?

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1  
Dude: Google is your friend –  the wolf Mar 12 '11 at 7:07
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11 Answers 11

up vote 41 down vote accepted

Not the most efficient, but straight forward and concise:

if len(x) > len(set(x)):
   pass # do something

Probably won't make much of a difference for short lists.

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do you mean == ? –  Ant Mar 11 '11 at 20:48
    
This is what I do as well. Probably not efficient for large lists although. –  tkerwin Mar 11 '11 at 20:49
    
Not necessarily, that will execute the body of the conditional if the list has repeating elements (the "#do something" in the example). –  yan Mar 11 '11 at 20:49
1  
Fair enough, good solution. I am handling barely < 500 elements, so this should do what I want. –  user225312 Mar 11 '11 at 20:54
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Here is a two-liner that will also do early exit:

>>> def allUnique(x):
...     seen = set()
...     return not any(i in seen or seen.add(i) for i in x)
...
>>> allUnique("ABCDEF")
True
>>> allUnique("ABACDEF")
False

If the elements of x aren't hashable, then you'll have to resort to using a list for seen:

>>> def allUnique(x):
...     seen = list()
...     return not any(i in seen or seen.append(i) for i in x)
...
>>> allUnique([list("ABC"), list("DEF")])
True
>>> allUnique([list("ABC"), list("DEF"), list("ABC")])
False
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+1 clean and doesn't iterate through the whole list if not needed. –  Kos Nov 29 '12 at 15:49
    
+1, late to the party but this is a great solution (and deserving of a lot more upvotes). –  Lattyware Dec 26 '12 at 21:06
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An early-exit solution could be

def unique_values(g):
    s = set()
    for x in g:
        if x in s: return False
        s.add(x)
    return True

however for small cases or if early-exiting is not the common case then I would expect len(x) != len(set(x)) being the fastest method.

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+1 this seems the efficient way of doing it. –  tokland Mar 11 '11 at 20:57
    
I accepted the other answer as I was not particularly looking for optimization. –  user225312 Mar 11 '11 at 21:00
1  
You can shorten this by putting the following line after s = set()... return not any(s.add(x) if x not in s else True for x in g) –  Andrew Clark Mar 11 '11 at 21:42
    
Could you explain why you would expect len(x) != len(set(x)) to be faster than this if early-exiting is not common? Aren't both operations O(len(x))? (where x is the original list) –  Chris Redford May 12 '12 at 14:55
    
Oh, I see: your method is not O(len(x)) because you check if x in s inside of the O(len(x)) for loop. –  Chris Redford May 12 '12 at 14:58
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Alternative to a set, you can use a dict.

len({}.fromkeys(x)) == len(x)
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Really great idea! +1 –  Fábio Diniz Mar 11 '11 at 22:18
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How about adding all the entries to a set and checking its length?

len(set(x)) == len(x)
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You can use Yan's syntax (len(x) > len(set(x))), but instead of set(x), define a function:

 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
        result.append(item)
    return result

and do len(x) > len(f5(x)). This will be fast and is also order preserving.

Code there is taken from: http://www.peterbe.com/plog/uniqifiers-benchmark

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Might be good, but I am not looking for optimization. –  user225312 Mar 11 '11 at 20:54
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How about this

def is_unique(lst):
    if not lst:
        return True
    else:
        return Counter(lst).most_common(1)[0][1]==1
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for speed:

import numpy as np
x = [1, 1, 1, 2, 3, 4, 5, 6, 2]
np.unique(x).size == len(x)
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Another approach entirely, using sorted and groupby:

from itertools import groupby
is_unique = lambda seq: all(sum(1 for _ in x[1])==1 for x in groupby(sorted(seq)))

It requires a sort, but exits on the first repeated value.

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A short answer which alters the the ordering of the list would be:

a_list = [1,2,3,1]
a_list.sort()
a_list == list(set(a_list))

This yields False if not all elements in a_list are unique and True otherwise.

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This won't work because set doesn't preserve the order, and so you might have list(set([2,3,1])) != [2,3,1]. –  DSM Dec 27 '12 at 4:47
    
@DSM you are right. I forgot the sort() in the story. will change it. –  jojo Dec 27 '12 at 16:54
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Here is a recursive early-exit function:

def distinct(L):
    if len(L) == 2:
        return L[0] != L[1]
    H = L[0]
    T = L[1:]
    if (H in T):
            return False
    else:
            return distinct(T)    

It's fast enough for me without using weird(slow) conversions while having a functional-style approach.

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H in T does a linear search, and T = L[1:] copies the sliced part of the list, so this will be much slower than the other solutions that have been suggested on big lists. It is O(N^2) I think, while most of the others are O(N) (sets) or O(N log N) (sorting based solutions). –  Blckknght Apr 28 '13 at 17:36
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