In a pandas Dataframe df I have columns likes this:

    NAME    KEYWORD  AMOUNT  INFO
0   orange  fruit    13      from italy
1   potato  veggie   7       from germany
2   potato  veggie   9       from germany
3   orange  fruit    8       from italy
4   potato  veggie   6       from germany

Doing a groupby KEYWORD operation I want to build the sum of the AMOUNT values per group and keep from the other columns always the first value, so that the result reads:

    NAME    KEYWORD  AMOUNT  INFO
0   orange  fruit    21      from italy
1   potato  veggie   22      from germany

I tried

df.groupby('KEYWORD).sum()

but this "summarises" over all columns, i.e I get

    NAME                KEYWORD  AMOUNT  INFO
0   orangeorange        fruit    21      from italyfrom italy
1   potatopotatopotato  veggie   22      from germanyfrom germanyfrom germany

Then I tried to use different functions for different columns:

df.groupby('KEYWORD).agg({'AMOUNT': sum, 'NAME': first, ....})

with

def first(f_arg, *args):
    return f_arg

But this gives me unfortunately a "ValueError: function does not reduce" error.

So I am a bit at a loss. How can I apply sum only to the AMOUNT column, while keeping the others?

  • pandas has a builtin first function. You can invoke it with agg by passing a string. – coldspeed Feb 13 at 7:19
up vote 2 down vote accepted

Use groupby + agg with a custom aggfunc dict.

f = dict.fromkeys(df.columns.difference(['KEYWORD']), 'first')
f['AMOUNT'] = sum

df = df.groupby('KEYWORD', as_index=False).agg(f)
df

  KEYWORD    NAME  AMOUNT          INFO
0   fruit  orange      21    from italy
1  veggie  potato      22  from germany

dict.fromkeys gives me a nice way of generalising this for N number of columns. If column order matters, add a reindex operation at the end:

df = df.groupby('KEYWORD', as_index=False).agg(f).reindex(columns=df.columns)
df

     NAME KEYWORD  AMOUNT          INFO
0  orange   fruit      21    from italy
1  potato  veggie      22  from germany
  • Thanks heaps, @COLDSPEED. So I was close. :-) Still I don't understand why the aggregate function works when provided as a string 'first', while a proper function reference first does not work. Is my definition of first wrong? I don't understand why: It does transform many arguments into one value of type of the first argument. That's what aggregation does, right? – halloleo Feb 13 at 23:36
  • @halloleo you were certainly close. But I don't think your function was correct. It should accept a series and return the first row as another array/series, if I'm not mistaken. – coldspeed Feb 14 at 2:58
  • @COLDSPEED Thanks for your reply. - Yes, my function does not play correctly with pandas. – halloleo Feb 19 at 2:06

Use drop_duplicates by column KEYWORD and then assign aggregate values:

df=df.drop_duplicates('KEYWORD').assign(AMOUNT=df.groupby('KEYWORD')['AMOUNT'].sum().values)
print (df)
     NAME KEYWORD  AMOUNT          INFO
0  orange   fruit      21    from italy
1  potato  veggie      22  from germany

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