# Efficiently finding duplicates in a list

I have the function below which searches an array for duplicate entries and then returns a list of the duplicates. I'd like to speed this piece of my code up, can anyone suggest a more efficient way?

Code:

``````def findDupe(array):
dupelist = []
for i in range(len(array)):
for j in range(len(array)):
comp1 = array[i]
comp2 = array[j]
if comp1 == comp2 and i!=j:
if comp2 not in dupelist:
dupelist.append(comp2)
return dupelist
``````

The idea here is to do a single sweep in linear time. You can use a counter to do this. The idea is to count each element and then return all those which were counted multiple times.

``````from collections import Counter

def get_duplicates(array):
c = Counter(array)
return [k for k in c if c[k] > 1]
``````

The approach above is linear in complexity, but makes two passes over the input - once, to count (this is abstracted away by the `Counter` constructor) and the other is to return non-unique values in the list comp. You can optimise this a bit using a `yield` statement, and return duplicates as you find them.

``````def get_duplicates(array):
c = Counter()
seen = set()
for i in array:
c[i] += 1
if c[i] > 1 and i not in seen:
yield i
``````

This results in a compulsory `if` check and extra space in the form of a `set`, but you reduce two passes to one.

• @COLDSPEED Thank you for getting back to me so quickly! So if I understand correctly the run time for your final suggestion would be a linear function of the input array. Is that correct? How does that differ from the run time of the original function I provided? Oct 4, 2017 at 0:07
• @user3476463 You have a loop within a loop. This means that your function is quadratic, which is much much slower than linear. Oct 4, 2017 at 0:13
• @COLDSPEED Hi, I tried printing the results of your suggestion with testArray = ['a','b','c','d','e','d'] using print get_duplicates(testArray) and I'm getting the following message <generator object get_duplicates at 0x107609eb0> , if I want to print the results what do I need to do? I'm not very familiar with generators. Oct 4, 2017 at 3:40
• @user3476463 Yes, `yield` returns a generator. Convert to a list using: `x = list(get_duplicates(...))` Oct 4, 2017 at 3:41
• @COLDSPEED Thank you, much quicker than previous version! Oct 4, 2017 at 4:13

What is the type of elements in your lists?

1. Storing elements in a Set, as explained above, gives you average complexity Θ(n) but requires the elements to be hashable (a Set in Python is implemented with hash table, see https://wiki.python.org/moin/TimeComplexity)
2. If you have a comparison function, you can sort the list in worst case Θ(nlog(n)) then compare each element of the list to the next.
3. If you have a comparison function, you can also implement a set with a (balanced) BST and do the same as 1 to achieve complexity Θ(nlog(n)) in average (in worst case).

While `numpy` does not have the `duplicated` method (yet), `pandas` does:

``````import pandas as pd

df = pd.Series(input_list)

duplicated_values = df[df.duplicated()].to_list()
``````

Alternative with no imports required:

``````dups = set()
distinct_ids = set()
for an_id in ids:
if an_id not in distinct_ids: