I have a pandas dataframe as below:

enter image description here

How can I combine all the lists (in the 'val' column) into a unique list (set), e.g. [val1, val2, val33, val9, val6, val7]?

I can solve this with the following code. I wonder if there is an easier way to get all unique values from a column without iterating the dataframe rows?

for index, row in df.iterrows():
    contri = ast.literal_eval(row['val'])
def_contributors = list(set(def_contributors))

Another solution with exporting Series to nested lists and then apply set to flatten list:

df = pd.DataFrame({'id':['a','b', 'c'], 'val':[['val1','val2'],

print (df)
  id                  val
0  a         [val1, val2]
1  b  [val33, val9, val6]
2  c   [val2, val6, val7]

print (type(df.val.ix[0]))
<class 'list'>

print (df.val.tolist())
[['val1', 'val2'], ['val33', 'val9', 'val6'], ['val2', 'val6', 'val7']]

print (list(set([a for b in df.val.tolist() for a in b])))
['val7', 'val1', 'val6', 'val33', 'val2', 'val9']


df = pd.concat([df]*1000).reset_index(drop=True)

In [307]: %timeit (df['val'].apply(pd.Series).stack().unique()).tolist()
1 loop, best of 3: 410 ms per loop

In [355]: %timeit (pd.Series(sum(df.val.tolist(),[])).unique().tolist())
10 loops, best of 3: 31.9 ms per loop

In [308]: %timeit np.unique(np.hstack(df.val)).tolist()
100 loops, best of 3: 10.7 ms per loop

In [309]: %timeit (list(set([a for b in df.val.tolist() for a in b])))
1000 loops, best of 3: 558 µs per loop

If types is not list but string use str.strip and str.split:

df = pd.DataFrame({'id':['a','b', 'c'], 'val':["[val1,val2]",

print (df)
  id                val
0  a        [val1,val2]
1  b  [val33,val9,val6]
2  c   [val2,val6,val7]

print (type(df.val.ix[0]))
<class 'str'>

print (df.val.str.strip('[]').str.split(','))
0           [val1, val2]
1    [val33, val9, val6]
2     [val2, val6, val7]
Name: val, dtype: object

print (list(set([a for b in df.val.str.strip('[]').str.split(',') for a in b])))
['val7', 'val1', 'val6', 'val33', 'val2', 'val9']
  • i have added this when importing the csv file, so that the val column will be recognized as list object type : converters={"val": literal_eval} – kitchenprinzessin Aug 12 '16 at 3:15

Convert that column into a DataFrame with .apply(pd.Series). If you stack the columns, you can call the unique method on the returned Series.

0      [v1, v2]
1      [v3, v2]
2  [v4, v3, v2]

Out[124]: array(['v1', 'v2', 'v3', 'v4'], dtype=object)

You can use str.concat followed by some string manipulations to obtain the desired list.

In [60]: import re
    ...: from collections import OrderedDict

In [62]: s = df['val'].str.cat()

In [63]: L = re.sub('[[]|[]]',' ', s).strip().replace("  ",',').split(',')

In [64]: list(OrderedDict.fromkeys(L))
Out[64]: ['val1', 'val2', 'val33', 'val9', 'val6', 'val7']

One way would be to extract those elements into an array using np.hstack and then using np.unique to give us an array of such unique elements, like so -


If you want a list as output, append with .tolist() -

  • Very interesting, I think your solution will be faster as list comprehension with set, but not. – jezrael Aug 11 '16 at 13:11
  • @jezrael Yeah that hstack isn't helping much I guess. Ah nevermind I did at my end and is even slower! – Divakar Aug 11 '16 at 13:12
  • It is more slowier In [310]: %timeit np.unique(np.concatenate(df.val)) 10 loops, best of 3: 39.6 ms per loop – jezrael Aug 11 '16 at 13:14
  • @jezrael Yeah, even slower with np.concatenate. Guess not much NumPy can do here :) – Divakar Aug 11 '16 at 13:15

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