# Problema con funcion pandas.DataFrame.cumsum

Tengo el siguiente dataframe en python:

month = [1,2,3,4,5,6,7,8,9,10,11,12,13,14,15,16,17,18,19,20,1,2,3,4]
active = [1,1,1,1,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,1,1,1,1]
data1 = [1709.1,3869.7,4230.4,4656.9,48566.0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,93738.2,189293.2,194412.6,206585.8]
df = pd.DataFrame({
'month' : month,
'active' : active,
'd1' : data1,
'calculate' : 0,
});

y requiero calcular la columna 'calculate', de la siguiente manera:

month  active        d1  calculate
0       1       1    1709.1     569.70
1       2       1    3869.7    1859.60
2       3       1    4230.4    3269.73
3       4       1    4656.9    4822.03
4       5       0   48566.0       0.00
5       6       0       0.0       0.00
6       7       0       0.0       0.00
7       8       0       0.0       0.00
8       9       0       0.0       0.00
9      10       0       0.0       0.00
10     11       0       0.0       0.00
11     12       0       0.0       0.00
12     13       0       0.0       0.00
13     14       0       0.0       0.00
14     15       0       0.0       0.00
15     16       0       0.0       0.00
16     17       0       0.0       0.00
17     18       0       0.0       0.00
18     19       0       0.0       0.00
19     20       0       0.0       0.00
20      1       1   93738.2   31246.07
21      2       1  189293.2   94343.80
22      3       1  194412.6  159148.00
23      4       1  206585.8  228009.93

lo estoy realizando de la siguiente manera:

df['calculate'] = np.where(
df.month > 1,
np.where(
df.active,
(df.d1/3).cumsum(),
0,
),
(df['d1']/3)
)

month  active        d1      calculate
0       1       1    1709.1     569.700000
1       2       1    3869.7    1859.600000
2       3       1    4230.4    3269.733333
3       4       1    4656.9    4822.033333
4       5       0   48566.0       0.000000
5       6       0       0.0       0.000000
6       7       0       0.0       0.000000
7       8       0       0.0       0.000000
8       9       0       0.0       0.000000
9      10       0       0.0       0.000000
10     11       0       0.0       0.000000
11     12       0       0.0       0.000000
12     13       0       0.0       0.000000
13     14       0       0.0       0.000000
14     15       0       0.0       0.000000
15     16       0       0.0       0.000000
16     17       0       0.0       0.000000
17     18       0       0.0       0.000000
18     19       0       0.0       0.000000
19     20       0       0.0       0.000000
20      1       1   93738.2   31246.066667
21      2       1  189293.2  115354.500000
22      3       1  194412.6  180158.700000
23      4       1  206585.8  249020.633333

no se si soy claro en mi solicitud, agradezco a quien me pueda ayudar.

## 1 respuesta

Si no me equivoco pretendes calcular la suma acumulada por grupos, agrupando primero por month y luego dentro de cada grupo anterior agrupar de nuevo en función de los periodos de actividad (filas contiguas con valor 1 en active).

Una posibilidad es usar groupby para obtener los grupos y luego aplicar pandas.Series.groupby.cumsum. Para detectar cada grupo nos podemos ayudar de shift y cumsum.

import pandas as pd

month = [1,2,3,4,5,6,7,8,9,10,11,12,13,14,15,16,17,18,19,20,1,2,3,4]
active = [1,1,1,1,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,1,1,1,1]
data1 = [1709.1,3869.7,4230.4,4656.9,48566.0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,0,93738.2,189293.2,194412.6,206585.8]
df = pd.DataFrame({
'month' : month,
'active' : active,
'd1' : data1,
'calculate' : 0,
})

month_parts = (df["month"] < df["month"].shift()).cumsum()

aux = df.loc[mask, "d1"] / 3

df['calculate'] = aux.groupby([month_parts, active_parts]).cumsum()
df['calculate'].fillna(0, inplace=True)
>>> df
month  active        d1      calculate
0       1       1    1709.1     569.700000
1       2       1    3869.7    1859.600000
2       3       1    4230.4    3269.733333
3       4       1    4656.9    4822.033333
4       5       0   48566.0       0.000000
5       6       0       0.0       0.000000
6       7       0       0.0       0.000000
7       8       0       0.0       0.000000
8       9       0       0.0       0.000000
9      10       0       0.0       0.000000
10     11       0       0.0       0.000000
11     12       0       0.0       0.000000
12     13       0       0.0       0.000000
13     14       0       0.0       0.000000
14     15       0       0.0       0.000000
15     16       0       0.0       0.000000
16     17       0       0.0       0.000000
17     18       0       0.0       0.000000
18     19       0       0.0       0.000000
19     20       0       0.0       0.000000
20      1       1   93738.2   31246.066667
21      2       1  189293.2   94343.800000
22      3       1  194412.6  159148.000000
23      4       1  206585.8  228009.933333

El ejemplo no es muy bueno si efectivamente deseas esto ya que hay coincidencia entre el periodo de actividad con el inicio de un nuvo rango en month, un ejemplo que muestra mejor el funcionamiento del código:

month = [1,2,3,4,5,6,7,8,9,10,11,12,13,14,15,16,17,18,19,20,1,2,3,4]
active = [1,1,1,1,0,0,1,1,0,0,0,0,0,0,0,0,1,1,1,1,1,1,1,1]
data1 = [1709.1,3869.7,4230.4,4656.9,48566.0,0,4000.0,5231.4,0,0,0,0,0,0,0,0,45215.2,2154.1,451.2,14523.21,93738.2,189293.2,194412.6,206585.8]
df = pd.DataFrame({
'month' : month,
'active' : active,
'd1' : data1,
'calculate' : 0,
})

month_parts = (df["month"] < df["month"].shift()).cumsum()

aux = df.loc[mask, "d1"] / 3

df['calculate'] = aux.groupby([month_parts, active_parts]).cumsum()
df['calculate'].fillna(0, inplace=True)

>>> df
month  active         d1      calculate
0       1       1    1709.10     569.700000  <-----
1       2       1    3869.70    1859.600000
2       3       1    4230.40    3269.733333
3       4       1    4656.90    4822.033333
4       5       0   48566.00       0.000000
5       6       0       0.00       0.000000
6       7       1    4000.00    1333.333333  <-----
7       8       1    5231.40    3077.133333
8       9       0       0.00       0.000000
9      10       0       0.00       0.000000
10     11       0       0.00       0.000000
11     12       0       0.00       0.000000
12     13       0       0.00       0.000000
13     14       0       0.00       0.000000
14     15       0       0.00       0.000000
15     16       0       0.00       0.000000
16     17       1   45215.20   15071.733333  <-----
17     18       1    2154.10   15789.766667
18     19       1     451.20   15940.166667
19     20       1   14523.21   20781.236667
20      1       1   93738.20   31246.066667  <-----
21      2       1  189293.20   94343.800000
22      3       1  194412.60  159148.000000
23      4       1  206585.80  228009.933333