# numpy.unique with order preserved

``````['b','b','b','a','a','c','c']
``````

numpy.unique gives

``````['a','b','c']
``````

How can I get the original order preserved

``````['b','a','c']
``````

Great answers. Bonus question. Why do none of these methods work with this dataset? http://www.uploadmb.com/dw.php?id=1364341573 Here's the question numpy sort wierd behavior

• Aug 19, 2021 at 7:40

`unique()` is slow, O(Nlog(N)), but you can do this by following code:

``````import numpy as np
a = np.array(['b','a','b','b','d','a','a','c','c'])
_, idx = np.unique(a, return_index=True)
print(a[np.sort(idx)])
``````

output:

``````['b' 'a' 'd' 'c']
``````

`Pandas.unique()` is much faster for big array O(N):

``````import pandas as pd

a = np.random.randint(0, 1000, 10000)
%timeit np.unique(a)
%timeit pd.unique(a)

1000 loops, best of 3: 644 us per loop
10000 loops, best of 3: 144 us per loop
``````
• The `O(N)` complexity is not mentioned anywhere and is thus only an implementation detail. The documentation simply states that it is significantly faster than `numpy.unique`, but this may simply mean that it has smaller constants or the complexity might be between linear and NlogN. Mar 26, 2013 at 17:57
• It's mentioned here: slideshare.net/fullscreen/wesm/…
– HYRY
Mar 26, 2013 at 22:40
• How would you preserve the ordering with `pandas.unique()`? As far as I can tell it does not allow any parameters. Nov 23, 2016 at 17:02
• @F Lekschas, pandas.unique() seems to preserve the ordering as default Apr 12, 2018 at 9:05
• @HYRY - The link is broken, need to remove the "/fullscreen": slideshare.net/wesm/a-look-at-pandas-design-and-development/41 Jan 6, 2023 at 12:35

Use the `return_index` functionality of `np.unique`. That returns the indices at which the elements first occurred in the input. Then `argsort` those indices.

``````>>> u, ind = np.unique(['b','b','b','a','a','c','c'], return_index=True)
>>> u[np.argsort(ind)]
array(['b', 'a', 'c'],
dtype='|S1')
``````
``````a = ['b','b','b','a','a','c','c']
[a[i] for i in sorted(np.unique(a, return_index=True)[1])]
``````
• This is just a slower version of the accepted answer
– Eric
Feb 16, 2017 at 14:30

If you're trying to remove duplication of an already sorted iterable, you can use `itertools.groupby` function:

``````>>> from itertools import groupby
>>> a = ['b','b','b','a','a','c','c']
>>> [x[0] for x in groupby(a)]
['b', 'a', 'c']
``````

This works more like unix 'uniq' command, because it assumes the list is already sorted. When you try it on unsorted list you will get something like this:

``````>>> b = ['b','b','b','a','a','c','c','a','a']
>>> [x[0] for x in groupby(b)]
['b', 'a', 'c', 'a']
``````
• Almost all of the time `numpy` problems get solved way faster using `numpy`, pure python solutions will be slow since `numpy` is specialised. Mar 26, 2013 at 13:09
``````#List we need to remove duplicates from while preserving order

x = ['key1', 'key3', 'key3', 'key2']

thisdict = dict.fromkeys(x) #dictionary keys are unique and order is preserved

print(list(thisdict)) #convert back to list

output: ['key1', 'key3', 'key2']
``````

If you want to delete repeated entries, like the Unix tool `uniq`, this is a solution:

``````def uniq(seq):
"""
Like Unix tool uniq. Removes repeated entries.
:param seq: numpy.array
:return: seq
"""
diffs = np.ones_like(seq)
diffs[1:] = seq[1:] - seq[:-1]
idx = diffs.nonzero()
return seq[idx]
``````
• This only works for numbers. Use `!=` instead of `-`
– Eric
Feb 16, 2017 at 14:31

Use an OrderedDict (faster than a list comprehension)

``````from collections import OrderedDict
a = ['b','a','b','a','a','c','c']
list(OrderedDict.fromkeys(a))
``````