3

I want to group column A then sum last 3 rows of column B.

df = pd.DataFrame()
df['A'] = [1, 1, 1, 1, 2, 2, 2, 2]
df['B'] = [1, 2, 3, 4, 1, 2, 3, 4]

I tried.

df['sum_B_previous_3'] = df.groupby('A').B.shift(1).rolling(3, min_periods=0).sum()
df

    A   B   sum_B_previous_3
0   1   1   0.0
1   1   2   1.0
2   1   3   3.0
3   1   4   6.0
4   2   1   5.0
5   2   2   4.0
6   2   3   3.0
7   2   4   6.0

But I want.

    A   B   sum_B_previous_3
0   1   1   0.0
1   1   2   1.0
2   1   3   3.0
3   1   4   6.0
4   2   1   0.0
5   2   2   1.0
6   2   3   3.0
7   2   4   6.0

Why row 4 and 5 get wrong results? How to correct this?

1

You can call lambda function per groups with GroupBy.apply:

f = lambda x: x.shift(1).rolling(3, min_periods=0).sum()
df['sum_B_previous_3'] = df.groupby('A').B.apply(f)
print (df)

   A  B  sum_B_previous_3
0  1  1               0.0
1  1  2               1.0
2  1  3               3.0
3  1  4               6.0
4  2  1               0.0
5  2  2               1.0
6  2  3               3.0
7  2  4               6.0

Another solution is call groupby again:

df['sum_B_previous_3'] = (df.groupby('A').B
                            .shift(1)
                            .groupby(df['A'])
                            .rolling(3, min_periods=0)
                            .sum()
                            .reset_index(level=0, drop=True))
print (df)

   A  B  sum_B_previous_3
0  1  1               0.0
1  1  2               1.0
2  1  3               2.0
3  1  4               3.0
4  2  1               0.0
5  2  2               1.0
6  2  3               2.0
7  2  4               3.0
  • Thank for the answer! But I have a question. Why my answer get the result from the last group? – ResidentSleeper Jan 30 at 9:03
  • 1
    @yolox - because df.groupby('A').B.shift(1) return new Series and .rolling(3, min_periods=0).sum() working with it, same like df['sum_B_previous_3'] = df.groupby('A').B.shift(1) df['sum_B_previous_3'] = df['sum_B_previous_3'].rolling(3, min_periods=0).sum() – jezrael Jan 30 at 9:04
1

The problem is that the only group operation you are applying is .shift. The result of df.groupby('A').B.shift(1) is a DataFrame which is then subject to normal rolling (not grouped).

Here is a solution that doesn't use apply, albeit a slower one:

B_shift = df.groupby('A').B.shift()
df['sum_B_previous_3'] = B_shift.groupby(df.A).rolling(3, min_periods=0).sum().values

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