212

I have a Pandas DataFrame with one column:

df = pd.DataFrame({"teams": [["SF", "NYG"] for _ in range(7)]})

       teams
0  [SF, NYG]
1  [SF, NYG]
2  [SF, NYG]
3  [SF, NYG]
4  [SF, NYG]
5  [SF, NYG]
6  [SF, NYG]

How can split this column of lists into two columns?

Desired result:

  team1 team2
0    SF   NYG
1    SF   NYG
2    SF   NYG
3    SF   NYG
4    SF   NYG
5    SF   NYG
6    SF   NYG
0
333

You can use the DataFrame constructor with lists created by to_list:

import pandas as pd

d1 = {'teams': [['SF', 'NYG'],['SF', 'NYG'],['SF', 'NYG'],
                ['SF', 'NYG'],['SF', 'NYG'],['SF', 'NYG'],['SF', 'NYG']]}
df2 = pd.DataFrame(d1)
print (df2)
       teams
0  [SF, NYG]
1  [SF, NYG]
2  [SF, NYG]
3  [SF, NYG]
4  [SF, NYG]
5  [SF, NYG]
6  [SF, NYG]

df2[['team1','team2']] = pd.DataFrame(df2.teams.tolist(), index= df2.index)
print (df2)
       teams team1 team2
0  [SF, NYG]    SF   NYG
1  [SF, NYG]    SF   NYG
2  [SF, NYG]    SF   NYG
3  [SF, NYG]    SF   NYG
4  [SF, NYG]    SF   NYG
5  [SF, NYG]    SF   NYG
6  [SF, NYG]    SF   NYG

And for a new DataFrame:

df3 = pd.DataFrame(df2['teams'].to_list(), columns=['team1','team2'])
print (df3)
  team1 team2
0    SF   NYG
1    SF   NYG
2    SF   NYG
3    SF   NYG
4    SF   NYG
5    SF   NYG
6    SF   NYG

A solution with apply(pd.Series) is very slow:

#7k rows
df2 = pd.concat([df2]*1000).reset_index(drop=True)

In [121]: %timeit df2['teams'].apply(pd.Series)
1.79 s ± 52.5 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)

In [122]: %timeit pd.DataFrame(df2['teams'].to_list(), columns=['team1','team2'])
1.63 ms ± 54.3 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
17
  • 4
    Minor caveat, if you are using it on existing dataframe, make sure to reset index, otherwise it will not assign correctly. Nov 6 '17 at 15:16
  • 2
    @user1700890 - yes, or specify index in DataFrame constructor df2[['team1','team2']] = pd.DataFrame(df2.teams.values.tolist(), index= df2.index)
    – jezrael
    Nov 6 '17 at 15:18
  • 1
    @Catbuilts - yes, if exist vectorize solution the best avoid it.
    – jezrael
    Nov 20 '18 at 11:08
  • 1
    @Catbuilts - yes, obviously. Vectorized means generally no loops, so no apply, no for, no list comprehensions. But it depends what need exactly. Maybe also help this
    – jezrael
    Nov 20 '18 at 11:21
  • 2
    @Catbuilts Indeed apply() might be slower but is the go-to method when input string and values are not equal across rows of the original Series!
    – CheTesta
    Feb 11 '19 at 9:31
77

Much simpler solution:

pd.DataFrame(df2["teams"].to_list(), columns=['team1', 'team2'])

Yields,

  team1 team2
-------------
0    SF   NYG
1    SF   NYG
2    SF   NYG
3    SF   NYG
4    SF   NYG
5    SF   NYG
6    SF   NYG
7    SF   NYG

If you wanted to split a column of delimited strings rather than lists, you could similarly do:

pd.DataFrame(df["teams"].str.split('<delim>', expand=True).values,
             columns=['team1', 'team2'])
2
  • 17
    what if each list has uneven number of elements?
    – ikel
    Nov 3 '19 at 17:00
  • 5
    If you wanted to split a column of delimited strings rather than lists, you could similarly do: df["teams"].str.split('<delim>', expand=True) already returns a DataFrame, so it would probably be simpler to just rename the columns.
    – AMC
    May 1 '20 at 11:11
47

This solution preserves the index of the df2 DataFrame, unlike any solution that uses tolist():

df3 = df2.teams.apply(pd.Series)
df3.columns = ['team1', 'team2']

Here's the result:

  team1 team2
0    SF   NYG
1    SF   NYG
2    SF   NYG
3    SF   NYG
4    SF   NYG
5    SF   NYG
6    SF   NYG
5
  • 7
    Also one of the slowest apply you can do in pandas. You should avoid this method and use the accepted answer. In the timings of the top answer, this method is approx 1400 x slower @rajan
    – Erfan
    Oct 17 '19 at 11:43
  • 5
    @Erfan Yes, but sometimes the user doesn't care whether an operation takes 1s or 1ms, and instead they care most about writing the simplest, most readable code! I acknowledge that readability/simplicity is subjective, but my point is simply that speed is not a priority for all users at all times. Oct 17 '19 at 13:17
  • 2
    Furthermore, I found out that the apply method works more reliably for expanding large arrays (1000+ items) on large data sets. The tolist() method killed my process when the data set exceeded 500k rows.
    – moritz
    Jan 22 '20 at 15:58
  • 6
    This is a great solution because it works well with lists of different sizes. Feb 16 '20 at 19:47
  • 1
    @KevinMarkham they care most about writing the simplest, most readable code Is pd.DataFrame(df["teams"].to_list(), columns=["team_1", "team_2"]) really so much more complicated?
    – AMC
    May 1 '20 at 11:17
18

There seems to be a syntactically simpler way, and therefore easier to remember, as opposed to the proposed solutions. I'm assuming that the column is called 'meta' in a dataframe df:

df2 = pd.DataFrame(df['meta'].str.split().values.tolist())
3
  • 1
    I got an error but I resolved it by removing the str.split(). This was much simpler and has the advantage if you don't know the number of items in your list.
    – otteheng
    Jan 11 '18 at 16:29
  • There seems to be a syntactically simpler way, and therefore easier to remember, as opposed to the proposed solutions. Really? Because this is practically identical to the top answer which was posted years earlier. The only difference is the part which isn't related to this specific question.
    – AMC
    May 1 '20 at 11:18
  • in many cases, you can replace .values.tolist() with simply .to_numpy(), which Pandas also recommends. While you're at it, you can slap a .astype(int) or whatever if you need
    – crypdick
    Oct 8 '20 at 20:45
8

List comprehension

A simple implementation with list comprehension (my favorite)

df = pd.DataFrame([pd.Series(x) for x in df.teams])
df.columns = ['team_{}'.format(x+1) for x in df.columns]

Timing on output:

CPU times: user 0 ns, sys: 0 ns, total: 0 ns
Wall time: 2.71 ms

Output:

team_1    team_2
0    SF    NYG
1    SF    NYG
2    SF    NYG
3    SF    NYG
4    SF    NYG
5    SF    NYG
6    SF    NYG
2
  • This kind of handles lists of different lengths - which is an improvement over many other answers, but results in items not being in their own columns.
    – Isaac
    May 26 '20 at 10:47
  • This solution is not based on pandas
    – raphaelauv
    Sep 10 '20 at 11:01
7

The previous solutions didn't work for me since I have nan observations in my dataframe. In my case df2[['team1','team2']] = pd.DataFrame(df2.teams.values.tolist(), index= df2.index) yields:

object of type 'float' has no len()

I solve this using a list comprehension. Here is the replicable example:

import pandas as pd
import numpy as np
d1 = {'teams': [['SF', 'NYG'],['SF', 'NYG'],['SF', 'NYG'],
            ['SF', 'NYG'],['SF', 'NYG'],['SF', 'NYG'],['SF', 'NYG']]}
df2 = pd.DataFrame(d1)
df2.loc[2,'teams'] = np.nan
df2.loc[4,'teams'] = np.nan
df2

Output:

        teams
0   [SF, NYG]
1   [SF, NYG]
2   NaN
3   [SF, NYG]
4   NaN
5   [SF, NYG]
6   [SF, NYG]

df2['team1']=np.nan
df2['team2']=np.nan

Solving with a list comprehension,

for i in [0,1]:
    df2['team{}'.format(str(i+1))]=[k[i] if isinstance(k,list) else k for k in df2['teams']]

df2

yields:

    teams   team1   team2
0   [SF, NYG]   SF  NYG
1   [SF, NYG]   SF  NYG
2   NaN        NaN  NaN
3   [SF, NYG]   SF  NYG
4   NaN        NaN  NaN
5   [SF, NYG]   SF  NYG
6   [SF, NYG]   SF  NYG
4

Based on the previous answers, here is another solution which returns the same result as df2.teams.apply(pd.Series) with a much faster run time:

pd.DataFrame([{x: y for x, y in enumerate(item)} for item in df2['teams'].values.tolist()], index=df2.index)

Timings:

In [1]:
import pandas as pd
d1 = {'teams': [['SF', 'NYG'],['SF', 'NYG'],['SF', 'NYG'],
                ['SF', 'NYG'],['SF', 'NYG'],['SF', 'NYG'],['SF', 'NYG']]}
df2 = pd.DataFrame(d1)
df2 = pd.concat([df2]*1000).reset_index(drop=True)

In [2]: %timeit df2['teams'].apply(pd.Series)

8.27 s ± 2.73 s per loop (mean ± std. dev. of 7 runs, 1 loop each)

In [3]: %timeit pd.DataFrame([{x: y for x, y in enumerate(item)} for item in df2['teams'].values.tolist()], index=df2.index)

35.4 ms ± 5.22 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
3

Here's another solution using df.transform and df.set_index:

>>> from operator import itemgetter
>>> df['teams'].transform({'item1': itemgetter(0), 'item2': itemgetter(1)})

  team1 team2
0    SF   NYG
1    SF   NYG
2    SF   NYG
3    SF   NYG
4    SF   NYG
5    SF   NYG
6    SF   NYG

Which of course can be generalized as:

>>> indices = range(len(df['teams'][0]))

>>> df['teams'].transform({f'team{i+1}': itemgetter(i) for i in indices})

  team1 team2
0    SF   NYG
1    SF   NYG
2    SF   NYG
3    SF   NYG
4    SF   NYG
5    SF   NYG
6    SF   NYG

This approach has the added benefit of extracting the desired indices:

>>> df
                 teams
0  [SF, NYG, XYZ, ABC]
1  [SF, NYG, XYZ, ABC]
2  [SF, NYG, XYZ, ABC]
3  [SF, NYG, XYZ, ABC]
4  [SF, NYG, XYZ, ABC]
5  [SF, NYG, XYZ, ABC]
6  [SF, NYG, XYZ, ABC]

>>> indices = [0, 2]
>>> df['teams'].transform({f'team{i+1}': itemgetter(i) for i in indices})

  team1 team3
0    SF   XYZ
1    SF   XYZ
2    SF   XYZ
3    SF   XYZ
4    SF   XYZ
5    SF   XYZ
6    SF   XYZ
0

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