Hi I have a dataframe like this:

    A             B 
0:  some value    [[L1, L2]]

I want to change it into:

    A             B 
0:  some value    L1
1:  some value    L2

How can I do that?


you can do it this way:

In [84]: df
               A               B
0     some value      [[L1, L2]]
1  another value  [[L3, L4, L5]]

In [85]: (df['B'].apply(lambda x: pd.Series(x[0]))
   ....:         .stack()
   ....:         .reset_index(level=1, drop=True)
   ....:         .to_frame('B')
   ....:         .join(df[['A']], how='left')
   ....: )
    B              A
0  L1     some value
0  L2     some value
1  L3  another value
1  L4  another value
1  L5  another value

UPDATE: a more generic solution

  • lambda x: pd.Series(x[0]) should be changed to lambda x: pd.Series(x) in case of flat list values in column B – soupault Nov 29 '17 at 13:40
  • 1
    @soupault, that's correct, thank you! This code works for the particular question (that was asked). Partially because of that i have posted a link to a more generic solution... – MaxU Nov 29 '17 at 13:59
  • @MaxU how can I do that for two columns if they have the same number of values in the list? – nurma_a Jul 29 '18 at 18:41
  • @nurma_a, check this solution – MaxU Jul 29 '18 at 18:54

Faster solution with chain.from_iterable and numpy.repeat:

from itertools import chain
import numpy as np
import pandas as pd

df = pd.DataFrame({'A':['a','b'],
                   'B':[[['A1', 'A2']],[['A1', 'A2', 'A3']]]})

print (df)
   A               B
0  a      [[A1, A2]]
1  b  [[A1, A2, A3]]

df1 = pd.DataFrame({ "A": np.repeat(df.A.values, 
                                    [len(x) for x in (chain.from_iterable(df.B))]),
                     "B": list(chain.from_iterable(chain.from_iterable(df.B)))})

print (df1)
   A   B
0  a  A1
1  a  A2
2  b  A1
3  b  A2
4  b  A3


A = np.unique(np.random.randint(0, 1000, 1000))
B = [[list(string.ascii_letters[:random.randint(3, 10)])] for _ in range(len(A))]
df = pd.DataFrame({"A":A, "B":B})
print (df)
       A                                 B
0      0        [[a, b, c, d, e, f, g, h]]
1      1                       [[a, b, c]]
2      3     [[a, b, c, d, e, f, g, h, i]]
3      5                 [[a, b, c, d, e]]
4      6     [[a, b, c, d, e, f, g, h, i]]
5      7           [[a, b, c, d, e, f, g]]
6      8              [[a, b, c, d, e, f]]
7     10              [[a, b, c, d, e, f]]
8     11           [[a, b, c, d, e, f, g]]
9     12     [[a, b, c, d, e, f, g, h, i]]
10    13        [[a, b, c, d, e, f, g, h]]

In [67]: %timeit pd.DataFrame({ "A": np.repeat(df.A.values, [len(x) for x in (chain.from_iterable(df.B))]),"B": list(chain.from_iterable(chain.from_iterable(df.B)))})
1000 loops, best of 3: 818 µs per loop

In [68]: %timeit ((df['B'].apply(lambda x: pd.Series(x[0])).stack().reset_index(level=1, drop=True).to_frame('B').join(df[['A']], how='left')))
10 loops, best of 3: 103 ms per loop
  • This solution is 125 times faster as apply solution. – jezrael Oct 10 '16 at 13:22
  • from itertools import chain – pomber Jul 24 '18 at 20:40

Pandas >= 0.25

df1 = pd.DataFrame({'A':['a','b'],
               'B':[[['1', '2']],[['3', '4', '5']]]})

    A   B
0   a   [[1, 2]]
1   b   [[3, 4, 5]]

df1 = df1.explode('B')

    A   B
0   a   1
0   a   2
1   b   3
1   b   4
1   b   5

I don't know how good this approach is but it works when you have a list of items.

  • Perfect! I recalled vaguely that there's a function to perform this in a single step but couldn't quite remember the name and wasn't able to find it again in the documentation. Almost gave in to go with the function chaining solution until I found this :) – kerwei Oct 21 at 7:14

I can't find a elegant way to handle this, but the following codes can work...

import pandas as pd
import numpy as np
df = pd.DataFrame([{"a":1,"b":[[1,2]]},{"a":4, "b":[[3,4,5]]}])
z = []
for k,row in df.iterrows():
    for j in list(np.array(row.b).flat):
        z.append({'a':row.a, 'b':j})
result = pd.DataFrame(z)
  • this was the easiest for me to understand the working.. thank you. – ihightower Apr 1 '17 at 13:35

I think this is the fastest and simplest way:

df = pd.DataFrame({'A':['a','b'],
               'B':[[['A1', 'A2']],[['A1', 'A2', 'A3']]]})

df.set_index('A')['B'].apply(lambda x: pd.Series(x[0]))
  • While this code may answer the question, providing additional context regarding how and/or why it solves the problem would improve the answer's long-term value.Read this – Shanteshwar Inde Mar 12 at 10:05

Here's another option

unpacked = (pd.melt(df.B.apply(pd.Series).reset_index(),id_vars='index')
 .merge(df, left_on = 'index', right_index = True))
unpacked = (unpacked.loc[unpacked.value.notnull(),:]
  1. Apply pd.series to column B --> splits each list entry to a different row
  2. Melt this, so that each entry is a separate row (preserving index)
  3. Merge this back on original dataframe
  4. Tidy up - drop unnecessary columns and rename the values column

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