48

I would like to use df.groupby() in combination with apply() to apply a function to each row per group.

I normally use the following code, which usually works (note, that this is without groupby()):

df.apply(myFunction, args=(arg1,))

With the groupby() I tried the following:

df.groupby('columnName').apply(myFunction, args=(arg1,))

However, I get the following error:

TypeError: myFunction() got an unexpected keyword argument 'args'

Hence, my question is: How can I use groupby() and apply() with a function that needs arguments?

5
  • 4
    This would work with df.groupby('columnName').apply(myFunction, ('arg1'))
    – Zero
    Sep 11, 2017 at 13:30
  • @Zero this is great answer as it is very similar to OP's attempted solution and doesn't require a lambda. I suggest you post it as an answer. Oct 16, 2017 at 9:19
  • @Zero, I have the very same quetsion as the OP, but this doesn't work for me - I still get the very same error as the OP. Also, may I ask why your comment should work and why the OP's approach (which is the same as mine) doesn't? I haven't found it documented anywhere Oct 16, 2017 at 12:22
  • try .apply(myFunction, args = ('arg1',) note the ,after arg1.
    – beta
    Oct 17, 2017 at 10:22
  • actually, i just tried it by myself and it doesnt work either...
    – beta
    Oct 17, 2017 at 10:29

3 Answers 3

50

pandas.core.groupby.GroupBy.apply does NOT have named parameter args, but pandas.DataFrame.apply does have it.

So try this:

df.groupby('columnName').apply(lambda x: myFunction(x, arg1))

or as suggested by @Zero:

df.groupby('columnName').apply(myFunction, ('arg1'))

Demo:

In [82]: df = pd.DataFrame(np.random.randint(5,size=(5,3)), columns=list('abc'))

In [83]: df
Out[83]:
   a  b  c
0  0  3  1
1  0  3  4
2  3  0  4
3  4  2  3
4  3  4  1

In [84]: def f(ser, n):
    ...:     return ser.max() * n
    ...:

In [85]: df.apply(f, args=(10,))
Out[85]:
a    40
b    40
c    40
dtype: int64

when using GroupBy.apply you can pass either a named arguments:

In [86]: df.groupby('a').apply(f, n=10)
Out[86]:
    a   b   c
a
0   0  30  40
3  30  40  40
4  40  20  30

a tuple of arguments:

In [87]: df.groupby('a').apply(f, (10))
Out[87]:
    a   b   c
a
0   0  30  40
3  30  40  40
4  40  20  30
6
  • 1
    Are you sure there's no way to pass an args parameter here in a tuple? I've seen that used on .apply elsewhere and it obviates the need for a lambda expression. Sep 28, 2017 at 17:04
  • 1
    @BradSolomon see Zero's answer in the question comments Oct 16, 2017 at 9:24
  • Why does this work, while what the OP did doesn't? I'm not following, and I couldn't find it documented anywhere. Oct 16, 2017 at 12:25
  • 1
    @Pythonistaanonymous, now you have even two answers answering your question :-D Oct 16, 2017 at 13:10
  • 2
    @MehdiAbbassi, try this: df.groupby('columnName').apply(lambda x: myFunction(x, x.shift(-1)) ;) Oct 14, 2020 at 14:28
7

Some confusion here over why using an args parameter throws an error might stem from the fact that pandas.DataFrame.apply does have an args parameter (a tuple), while pandas.core.groupby.GroupBy.apply does not.

So, when you call .apply on a DataFrame itself, you can use this argument; when you call .apply on a groupby object, you cannot.

In @MaxU's answer, the expression lambda x: myFunction(x, arg1) is passed to func (the first parameter); there is no need to specify additional *args/**kwargs because arg1 is specified in lambda.

An example:

import numpy as np
import pandas as pd

# Called on DataFrame - `args` is a 1-tuple
# `0` / `1` are just the axis arguments to np.sum
df.apply(np.sum, axis=0)  # equiv to df.sum(0)
df.apply(np.sum, axis=1)  # equiv to df.sum(1)


# Called on groupby object of the DataFrame - will throw TypeError
print(df.groupby('col1').apply(np.sum, args=(0,)))
# TypeError: sum() got an unexpected keyword argument 'args'
0
6

For me

df2 = df.groupby('columnName').apply(lambda x: my_function(x, arg1, arg2,))

worked

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