Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Does anyone know how I can get the index position of duplicate items in a python list? I have tried doing this and it keeps giving me only the index of the 1st occurrence of the of the item in the list.

List = ['A', 'B', 'A', 'C', 'E']

I want it to give me:

index 0: A
index 2: A

Thanks

share|improve this question
7  
Note that the Python Style Guide says you should not use capitalized names for variables, and also avoid using names of builtin classes, like list. –  Lauritz V. Thaulow Mar 24 '11 at 12:55
1  
@lazyr: List is different from list. –  martineau Mar 24 '11 at 13:59
3  
@martineau: I know, but I wanted to make sure he did not fix the issue with capitalization simply by lower-casing his variable. –  Lauritz V. Thaulow Mar 24 '11 at 14:12

8 Answers 8

You want to pass in the optional second parameter to index, the location where you want index to start looking. After you find each match, reset this parameter to the location just after the match that was found.

def list_duplicates_of(seq,item):
    start_at = -1
    locs = []
    while True:
        try:
            loc = seq.index(item,start_at+1)
        except ValueError:
            break
        else:
            locs.append(loc)
            start_at = loc
    return locs

source = "ABABDBAAEDSBQEWBAFLSAFB"
print list_duplicates_of(source, 'B')

Prints:

[1, 3, 5, 11, 15, 22]

You can find all the duplicates at once in a single pass through source, by using a defaultdict to keep a list of all seen locations for any item, and returning those items that were seen more than once.

from collections import defaultdict

def list_duplicates(seq):
    tally = defaultdict(list)
    for i,item in enumerate(seq):
        tally[item].append(i)
    return ((key,locs) for key,locs in tally.items() 
                            if len(locs)>1)

for dup in sorted(list_duplicates(source)):
    print dup

Prints:

('A', [0, 2, 6, 7, 16, 20])
('B', [1, 3, 5, 11, 15, 22])
('D', [4, 9])
('E', [8, 13])
('F', [17, 21])
('S', [10, 19])

If you want to do repeated testing for various keys against the same source, you can use functools.partial to create a new function variable, using a "partially complete" argument list, that is, specifying the seq, but omitting the item to search for:

from functools import partial
dups_in_source = partial(list_duplicates_of, source)

for c in "ABDEFS":
    print c, dups_in_source(c)

Prints:

A [0, 2, 6, 7, 16, 20]
B [1, 3, 5, 11, 15, 22]
D [4, 9]
E [8, 13]
F [17, 21]
S [10, 19]
share|improve this answer
    
Thanks this was very helpful. –  user674864 Mar 27 '11 at 15:35
    
Just wanted to tell you that your solution was the fastest of all suggested here –  Ruslan Bes Apr 25 at 13:20
dups = collections.defaultdict(list)
for i, e in enumerate(L):
  dups[e].append(i)
for k, v in sorted(dups.iteritems()):
  if len(v) >= 2:
    print '%s: %r' % (k, v)

And extrapolate from there.

share|improve this answer
    
Nice use of defaultdict. –  Jakob Bowyer Mar 24 '11 at 15:10
>>> def duplicates(lst, item):
...   return [i for i, x in enumerate(lst) if x == item]
... 
>>> duplicates(List, "A")
[0, 2]

To get all duplicates, you can use the below method, but it is not very efficient. If efficiency is important you should consider Ignacio's solution instead.

>>> dict((x, duplicates(List, x)) for x in set(List) if List.count(x) > 1)
{'A': [0, 2]}

As for solving it using the index method of list instead, that method takes a second optional argument indicating where to start, so you could just repeatedly call it with the previous index plus 1.

>>> List.index("A")
0
>>> List.index("A", 1)
2

EDIT Fixed issue raised in comments.

share|improve this answer
    
This presupposes that you know which of the items are duplicates. –  Tim Pietzcker Mar 24 '11 at 13:04
    
Thanks I liked the duplicates method for what I was trying to accomplish. –  user674864 Mar 27 '11 at 15:40

Using new "Counter" class in collections module, based on lazyr's answer:

>>> import collections
>>> def duplicates(n): #n="123123123"
...     counter=collections.Counter(n) #{'1': 3, '3': 3, '2': 3}
...     dups=[i for i in counter if counter[i]!=1] #['1','3','2']
...     result={}
...     for item in dups:
...             result[item]=[i for i,j in enumerate(n) if j==item] 
...     return result
... 
>>> duplicates("123123123")
{'1': [0, 3, 6], '3': [2, 5, 8], '2': [1, 4, 7]}
share|improve this answer
from collections import Counter, defaultdict

def duplicates(lst):
    cnt= Counter(lst)
    return [key for key in cnt.keys() if cnt[key]> 1]

def duplicates_indices(lst):
    dup, ind= duplicates(lst), defaultdict(list)
    for i, v in enumerate(lst):
        if v in dup: ind[v].append(i)
    return ind

lst= ['a', 'b', 'a', 'c', 'b', 'a', 'e']
print duplicates(lst) # ['a', 'b']
print duplicates_indices(lst) # ..., {'a': [0, 2, 5], 'b': [1, 4]})

A slightly more orthogonal (and thus more useful) implementation would be:

from collections import Counter, defaultdict

def duplicates(lst):
    cnt= Counter(lst)
    return [key for key in cnt.keys() if cnt[key]> 1]

def indices(lst, items= None):
    items, ind= set(lst) if items is None else items, defaultdict(list)
    for i, v in enumerate(lst):
        if v in items: ind[v].append(i)
    return ind

lst= ['a', 'b', 'a', 'c', 'b', 'a', 'e']
print indices(lst, duplicates(lst)) # ..., {'a': [0, 2, 5], 'b': [1, 4]})
share|improve this answer

I made a benchmark of all solutions suggested here and also added another solution to this problem (described in the end of the answer).

Benchmarks

First, the benchmarks. I initialize a list of n random ints within a range [1, n/2] and then call timeit over all algorithms

The solutions of @Paul McGuire and @Ignacio Vazquez-Abrams works about twice as fast as the rest on the list of 100 ints:

Testing algorithm on the list of 100 items using 10000 loops
Algorithm: dupl_eat
Timing: 1.46247477189
####################
Algorithm: dupl_utdemir
Timing: 2.93324529055
####################
Algorithm: dupl_lthaulow
Timing: 3.89198786645
####################
Algorithm: dupl_pmcguire
Timing: 0.583058259784
####################
Algorithm: dupl_ivazques_abrams
Timing: 0.645062989076
####################
Algorithm: dupl_rbespal
Timing: 1.06523873786
####################

If you change the number of items to 1000, the difference becomes much bigger (BTW, I'll be happy if someone could explain why) :

Testing algorithm on the list of 1000 items using 1000 loops
Algorithm: dupl_eat
Timing: 5.46171654555
####################
Algorithm: dupl_utdemir
Timing: 25.5582547323
####################
Algorithm: dupl_lthaulow
Timing: 39.284285326
####################
Algorithm: dupl_pmcguire
Timing: 0.56558489513
####################
Algorithm: dupl_ivazques_abrams
Timing: 0.615980005148
####################
Algorithm: dupl_rbespal
Timing: 1.21610942322
####################

On the bigger lists, the solution of @Paul McGuire continues to be the most efficient and my algorithm begins having problems.

Testing algorithm on the list of 1000000 items using 1 loops
Algorithm: dupl_pmcguire
Timing: 1.5019953958
####################
Algorithm: dupl_ivazques_abrams
Timing: 1.70856155898
####################
Algorithm: dupl_rbespal
Timing: 3.95820421595
####################

The full code of the benchmark is here

Another algorithm

Here is my solution to the same problem:

def dupl_rbespal(c):
    alreadyAdded = False
    dupl_c = dict()
    sorted_ind_c = sorted(range(len(c)), key=lambda x: c[x]) # sort incoming list but save the indexes of sorted items

    for i in xrange(len(c) - 1): # loop over indexes of sorted items
        if c[sorted_ind_c[i]] == c[sorted_ind_c[i+1]]: # if two consecutive indexes point to the same value, add it to the duplicates
            if not alreadyAdded:
                dupl_c[c[sorted_ind_c[i]]] = [sorted_ind_c[i], sorted_ind_c[i+1]]
                alreadyAdded = True
            else:
                dupl_c[c[sorted_ind_c[i]]].append( sorted_ind_c[i+1] )
        else:
            alreadyAdded = False
    return dupl_c

Although it's not the best it allowed me to generate a little bit different structure needed for my problem (i needed something like a linked list of indexes of the same value)

share|improve this answer
    
Note, the benchmark used Paul McGuire's list_duplicates(seq) function, not the list_duplicates_of(seq,item) function. –  nmz787 Sep 18 at 22:00

I think I found a simple solution after a lot of irritation :

if elem in string_list:
    counter = 0
    elem_pos = []
    for i in string_list:
        if i == elem:
            elem_pos.append(counter)
        counter = counter + 1
    print(elem_pos)

This prints a list giving you the indexes of a specific element ("elem")

share|improve this answer

I'll mention the more obvious way of dealing with duplicates in lists. In terms of complexity, dictionaries are the way to go because each lookup is O(1). You can be more clever if you're only interested in duplicates...

my_list = [1,1,2,3,4,5,5]
my_dict = {}
for (ind,elem) in enumerate(my_list):
    if elem in my_dict:
        my_dict[elem].append(ind)
    else:
        my_dict.update({elem:[ind]})

for key,value in my_dict.iteritems():
    if len(value) > 1:
        print "key(%s) has indices (%s)" %(key,value)

which prints the following:

key(1) has indices ([0, 1])
key(5) has indices ([5, 6])
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.