# permutations with unique values

itertools.permutations generates where its elements are treated as unique based on their position, not on their value. So basically I want to avoid duplicates like this:

``````>>> list(itertools.permutations([1, 1, 1]))
[(1, 1, 1), (1, 1, 1), (1, 1, 1), (1, 1, 1), (1, 1, 1), (1, 1, 1)]
``````

Filtering afterwards is not possible because the amount of permutations is too large in my case.

Does anybody know of a suitable algorithm for this?

Thank you very much!

EDIT:

What I basically want is the following:

``````x = itertools.product((0, 1, 'x'), repeat=X)
x = sorted(x, key=functools.partial(count_elements, elem='x'))
``````

which is not possible because `sorted` creates a list and the output of itertools.product is too large.

Sorry, I should have described the actual problem.

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What's too large? The TOTAL permutations or the UNIQUE permutations or both? – FogleBird Jun 8 '11 at 20:30
both, see EDIT. – xyz-123 Jun 8 '11 at 20:35
There is an even faster solution than the accepted answer (an implementation of Knuth's Algorithm L) given here – Gerrat Aug 22 '14 at 13:20

``````class unique_element:
def __init__(self,value,occurrences):
self.value = value
self.occurrences = occurrences

def perm_unique(elements):
eset=set(elements)
listunique = [unique_element(i,elements.count(i)) for i in eset]
u=len(elements)
return perm_unique_helper(listunique,[0]*u,u-1)

def perm_unique_helper(listunique,result_list,d):
if d < 0:
yield tuple(result_list)
else:
for i in listunique:
if i.occurrences > 0:
result_list[d]=i.value
i.occurrences-=1
for g in  perm_unique_helper(listunique,result_list,d-1):
yield g
i.occurrences+=1

a = list(perm_unique([1,1,2]))
print(a)
``````

result:

``````[(2, 1, 1), (1, 2, 1), (1, 1, 2)]
``````

EDIT (how this works):

I rewrite upper program to be longer but more readable I have usually hard time to explain how something works, but let me try. In order to understand how this works you have to understand similar, but simpler program that would yield all permutations with repetition.

``````def permutations_with_replecement(elements,n):
return permutations_helper(elements,[0]*n,n-1)#this is generator

def permutations_helper(elements,result_list,d):
if d<0:
yield tuple(result_list)
else:
for i in elements:
result_list[d]=i
all_permutations = permutations_helper(elements,result_list,d-1)#this is generator
for g in all_permutations:
yield g
``````

This program in obviously much simpler. d stands for depth in permutations_helper and has two functions. One function is stopping condition of our recursive algorithm and other is for result list, that is passed around.

Instead of returning each result we yield it. If there were no function/operator `yield` we had to push result in some queue at point of stopping condition. But this way once stopping condition is meet result is propagated trough all stack up to the caller. That is purpouse of
`for g in perm_unique_helper(listunique,result_list,d-1): yield g` so each result is propagated up to caller.

Back to original program: We have list of unique elements. Before we can use each element, we have to check how many of them are still available to push it on result_list. Working of this program is very similar compared to `permutations_with_replecement` difference is that each element can not be repeated more times that is in perm_unique_helper.

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That's it, thank you very much! – xyz-123 Jun 9 '11 at 6:50
I'm trying to understand how this works, but I'm stumped. Could you please provide some kind of commentary? – Nathan Sep 28 '11 at 21:56
@Nathan I edited answer and refined code. Feel free to post extra questions you have. – Luka Rahne Sep 29 '11 at 8:17

You could try using set:

``````>>> list(itertools.permutations(set([1,1,2,2])))
[(1, 2), (2, 1)]
``````

The call to set removed duplicates

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He might need list(set(itertools.permutations([1,1,2,2]))) – Luka Rahne Jun 8 '11 at 20:05
Or `list(itertools.permutations({1,1,2,2}))` in Python 3+ or Python 2.7, due to the existence of set literals. Though if he's not using literal values, he'd just be using `set()` anyway. And @ralu: look at the question again, filtering afterwards would be costly. – JAB Jun 8 '11 at 20:08
set(permutations(somelist)) != permutations(set(somelist)) – Luka Rahne Jun 8 '11 at 20:12
the problem with this is that I need the output to have the length of the input. E.g. `list(itertools.permutations([1, 1, 0, 'x']))` but wihtout the duplicates where the ones are interchanged. – xyz-123 Jun 8 '11 at 20:14
@ahojnnes: If that's a requirement, then you really do need to filter afterwards even if you don't want to. Which means `list(set(itertools.permutations([1,1,2,2])))` is what you'd need to use. – JAB Jun 8 '11 at 20:16

This relies on the implementation detail that any permutation of a sorted iterable are in sorted order unless they are duplicates of prior permutations.

``````from itertools import permutations

def unique_permutations(iterable, r=None):
previous = tuple()
for p in permutations(sorted(iterable), r):
if p > previous:
previous = p
yield p

for p in unique_permutations('cabcab', 2):
print p
``````

gives

``````('a', 'a')
('a', 'b')
('a', 'c')
('b', 'a')
('b', 'b')
('b', 'c')
('c', 'a')
('c', 'b')
('c', 'c')
``````
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works perfectly well but slower than the accepted solution. Thank you! – xyz-123 Jun 9 '11 at 6:49

It sound like you are looking for itertools.combinations() docs.python.org

``````list(itertools.combinations([1, 1, 1],3))
[(1, 1, 1)]
``````
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No, combinations would have the same problem. – JAB Jun 8 '11 at 20:13

Roughly as fast as Luka Rahne's answer, but shorter & simpler, IMHO.

``````def unique_permutations(elements):
if len(elements) == 1:
yield (elements[0],)
else:
unique_elements = set(elements)
for first_element in unique_elements:
remaining_elements = list(elements)
remaining_elements.remove(first_element)
for sub_permutation in unique_permutations(remaining_elements):
yield (first_element,) + sub_permutation

>>> list(unique_permutations((1,2,3,1)))
[(1, 1, 2, 3), (1, 1, 3, 2), (1, 2, 1, 3), ... , (3, 1, 2, 1), (3, 2, 1, 1)]
``````

It works recursively by setting the first element (iterating through all unique elements), and iterating through the permutations for all remaining elements.

Let's go through the `unique_permutations` of (1,2,3,1) to see how it works:

• `unique_elements` are 1,2,3
• Let's iterate through them: `first_element` starts with 1.
• `remaining_elements` are [2,3,1] (ie. 1,2,3,1 minus the first 1)
• We iterate (recursively) through the permutations of the remaining elements: (1, 2, 3), (1, 3, 2), (2, 1, 3), (2, 3, 1), (3, 1, 2), (3, 2, 1)
• For each `sub_permutation`, we insert the `first_element`: (1,1,2,3), (1,1,3,2), ... and yield the result.
• Now we iterate to `first_element` = 2, and do the same as above.
• `remaining_elements` are [1,3,1] (ie. 1,2,3,1 minus the first 2)
• We iterate through the permutations of the remaining elements: (1, 1, 3), (1, 3, 1), (3, 1, 1)
• For each `sub_permutation`, we insert the `first_element`: (2, 1, 1, 3), (2, 1, 3, 1), (2, 3, 1, 1)... and yield the result.
• Finally, we do the same with `first_element` = 3.
-

``````np.unique(itertools.permutations([1, 1, 1]))
``````

The problem is the permutations are now rows of a Numpy array, thus using more memory, but you can cycle through them as before

``````perms = np.unique(itertools.permutations([1, 1, 1]))
for p in perms:
print p
``````
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Came across this the other day while working on a problem of my own. I like Luka Rahne's approach, but I thought that using the Counter class in the collections library seemed like a modest improvement. Here's my code:

``````def unique_permutations(elements):
"Returns a list of lists; each sublist is a unique permutations of elements."
ctr = collections.Counter(elements)

# Base case with one element: just return the element
if len(ctr.keys())==1 and ctr[ctr.keys()[0]] == 1:
return [[ctr.keys()[0]]]

perms = []

# For each counter key, find the unique permutations of the set with
# one member of that key removed, and append the key to the front of
# each of those permutations.
for k in ctr.keys():
ctr_k = ctr.copy()
ctr_k[k] -= 1
if ctr_k[k]==0:
ctr_k.pop(k)
perms_k = [[k] + p for p in unique_permutations(ctr_k)]
perms.extend(perms_k)

return perms
``````

This code returns each permutation as a list. If you feed it a string, it'll give you a list of permutations where each one is a list of characters. If you want the output as a list of strings instead (for example, if you're a terrible person and you want to abuse my code to help you cheat in Scrabble), just do the following:

``````[''.join(perm) for perm in unique_permutations('abunchofletters')]
``````
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