# What is the most pythonic way to apply a function on and return multiple columns?

While using Pandas, I often encounter a case where there is an existing function which takes in multiple arguments and returns multiple values:

def foo(val_a, val_b):
"""
Some example function that takes in and returns multiple values.
Can be a lot more complex.
"""
sm = val_a + val_b
sb = val_a - val_b
mt = val_a * val_b
dv = val_a / val_b
return sm, sb, mt, dv

Suppose I have a dataframe:

import pandas as pd
df = pd.DataFrame([[1, 2], [3, 4], [5, 6], [7, 8]])
df
Out[6]:
0  1
0  1  2
1  3  4
2  5  6
3  7  8

What I want is to apply foo on df with column 0 and 1 as arguments, and put the results into new columns of df, without modifying foo, like this:

df_out
Out[7]:
0  1  su  sb  mt  dv
0  1  2  3   -1  2   0.5
1  3  4  7   -1  12  0.75
2  5  6  11  -1  30  0.833
3  7  8  15  -1  56  0.875

What is the most pythonic way to achieve this?

• If it is just a basic mathematical operation, then for me, the pythonic way is just simply adding the Series. For example, df['sm'] = df[0] + df[1] or df['sb'] = df[0] - df[1], and so forth. Hence, it depends on your needs. If it is very customized, then you may end up with apply at the end. Commented May 22, 2017 at 10:49
• @arnold """Some example function that takes in and returns multiple values. Can be a lot more complex. """ Commented May 29, 2017 at 10:20

You can use apply + DataFrame constructor:

cols = ['sm','sb','mt','dv']
df[cols] = pd.DataFrame(df.apply(lambda x: foo(x[0], x[1]), 1).values.tolist(),columns= cols)
print (df)
0  1  sm  sb  mt        dv
0  1  2   3  -1   2  0.500000
1  3  4   7  -1  12  0.750000
2  5  6  11  -1  30  0.833333
3  7  8  15  -1  56  0.875000

Solution with concat

cols = ['sm','sb','mt','dv']
df[cols] = pd.concat(foo(df[0], df[1]), axis=1, keys=cols)
print (df)
0  1  sm  sb  mt        dv
0  1  2   3  -1   2  0.500000
1  3  4   7  -1  12  0.750000
2  5  6  11  -1  30  0.833333
3  7  8  15  -1  56  0.875000

Also is possible create new DataFrame and then concat original:

cols = ['sm','sb','mt','dv']
df1 = pd.concat(foo(df[0], df[1]), axis=1, keys=cols)
print (df1)
sm  sb  mt        dv
0   3  -1   2  0.500000
1   7  -1  12  0.750000
2  11  -1  30  0.833333
3  15  -1  56  0.875000

df = pd.concat([df, df1], axis=1)
print (df)
0  1  sm  sb  mt        dv
0  1  2   3  -1   2  0.500000
1  3  4   7  -1  12  0.750000
2  5  6  11  -1  30  0.833333
3  7  8  15  -1  56  0.875000
• I accept @jezrael 's answer as it is the most comprehensive one. Commented May 29, 2017 at 10:27
• However, @spies006 's answer is superior in performance by >30%, which I would use if speed is a concern. Commented May 29, 2017 at 10:27
#apply function foo and generate a DF using return values and then merge into existing DF.
merged = pd.merge(df,df.apply(lambda x: pd.Series(foo(x[0],x[1])),axis=1),left_index=True,right_index=True)
#change column names.
merged.columns=[0,1,'sm','sb','mt','dv']

merged
Out[1478]:
0  1    sm   sb    mt        dv
0  1  2   3.0 -1.0   2.0  0.500000
1  3  4   7.0 -1.0  12.0  0.750000
2  5  6  11.0 -1.0  30.0  0.833333
3  7  8  15.0 -1.0  56.0  0.875000
>>> pd.concat([df, df.from_records(foo(df[0], df[1])).T], axis=1)
0  1     0    1     2         3
0  1  2   3.0 -1.0   2.0  0.500000
1  3  4   7.0 -1.0  12.0  0.750000
2  5  6  11.0 -1.0  30.0  0.833333
3  7  8  15.0 -1.0  56.0  0.875000

Speed: 1.13 ms per loop

If you care about speed this is superior to using apply and gives your desired output.

>>> pd.concat([df, df.from_records(np.vectorize(foo)(df[0], df[1])).T], axis=1)

Speed: 728 µs per loop