# Checking if all elements in a list are unique

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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– the wolf Mar 12 '11 at 7:07
@thewolf:My friend Google, brought me here! – Amogh Talpallikar Jan 13 '15 at 8:40

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
Fair enough, good solution. I am handling barely < 500 elements, so this should do what I want. – user225312 Mar 11 '11 at 20:54

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). – Gareth Latty Dec 26 '12 at 21:06

An early-exit solution could be

``````def unique_values(g):
s = set()
for x in g:
if x in s: return False
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
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

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

How about adding all the entries to a set and checking its length?

``````len(set(x)) == len(x)
``````
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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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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

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
this f5 function will be slower than using set which is better optimized for speed. This code starts to break when the list gets really large due to the expensive "append" operation. with large lists like `x = range(1000000) + range(1000000)`, running set(x) is faster than f5(x). Order is not a requirement in the question but even running sorted(set(x)) is still faster than f5(x) – OkezieE Aug 16 '14 at 21:50

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

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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hashing is faster than sorting – IceArdor Oct 23 '14 at 3:26

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

``````def is_unique(lst):
if len(lst) > 1:
return is_unique(s[1:]) and (s[0] not in s[1:])
return True
``````
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Using a similar approach in a Pandas dataframe to test if the contents of a column contains unique values:

``````if tempDF['var1'].size == tempDF['var1'].unique().size:
print("Unique")
else:
print("Not unique")
``````

For me, this is instantaneous on an int variable in a dateframe containing over a million rows.

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For begginers:

``````def AllDifferent(s):
for i in range(len(s)):
for i2 in range(len(s)):
if i != i2:
if s[i] == s[i2]:
return False
return True
``````
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