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I have a pandas dataframe with daily data

Date          Value
2020-01-01    1780.2
2020-01-02    1783.3
2020-01-05    1781.5
...
2020-02-01    1816.0
2020-02-02    1810.4
...

There is not always a value for every day of the month, so some days could be missing, therefore the timedelta is not always 1 day.

What I want to do is simply take a cumulative sum within every month, but then reset the sum to zero at the beginning of the next month, so the result would look like below

Date          Value    Cumulative Value
2020-01-01    1780.2   1780.2
2020-01-02    1783.3   3563.5
2020-01-05    1781.5   5345.0
...
2020-02-01    1816.0   1816.0
2020-02-02    1810.4   3626.4
...

I have found this post which explains how to get a cumulative sum by month. But what I need is to reset the cumulative sum to zero at the beginning of each month. How can I do this?

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2

Solution if multiple years is grouping by month periods by Series.dt.to_period:

df['Cumulative Value'] = df.groupby(df['Date'].dt.to_period('m'))['Value'].cumsum()

Solution if ony one year is possible use Series.dt.month:

df['Cumulative Value'] = df.groupby(df['Date'].dt.month)['Value'].cumsum() 

Also cumulative sum by default reset to 0, so not necessary add code for this.

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1

I assume that Date column is of datetime type. If not, convert it.

As I understand, you want grouping not solely by month (e.g. put together data from all years in January, February and so on (like in 2 other answers)), but the grouping should be by year and month (you want to start form 0 at the beginning of the next month).

To compute your new column this way, run:

df['Cumulative Value'] = df.groupby(pd.Grouper(key='Date', freq='M')).Value.cumsum()

The result, for your data sample is:

        Date   Value  Cumulative Value
0 2020-01-01  1780.2            1780.2
1 2020-01-02  1783.3            3563.5
2 2020-01-05  1781.5            5345.0
3 2020-02-01  1816.0            1816.0
4 2020-02-02  1810.4            3626.4
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0

groupy() an extracted month, transform('cumsum')

 df['Cumulative Value']=df.groupby(pd.to_datetime(df.Date).dt.month).transform('cumsum')



     Date         Value        Cumulative Value
0  2020-01-01  1780.2            1780.2
1  2020-01-02  1783.3            3563.5
2  2020-01-05  1781.5            5345.0
3  2020-02-01  1816.0            1816.0
4  2020-02-02  1810.4            3626.4
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0
import pandas as pd
start='2020-01-01' 
end='2020-12-31'
df = pd.DataFrame({"Date": pd.date_range(start, end)})
df['qty']=1
df = df.groupby('Date').qty.sum()
print(df.head())
df=df.groupby(df.index.month).cumsum().reset_index()
print(df.head(45))

Output:

Date
2020-01-01    1
2020-01-02    1
2020-01-03    1
2020-01-04    1
2020-01-05    1
Name: qty, dtype: int64
         Date  qty
0  2020-01-01    1
1  2020-01-02    2
2  2020-01-03    3
3  2020-01-04    4
4  2020-01-05    5
5  2020-01-06    6
6  2020-01-07    7
7  2020-01-08    8
8  2020-01-09    9
9  2020-01-10   10
10 2020-01-11   11
11 2020-01-12   12
12 2020-01-13   13
13 2020-01-14   14
14 2020-01-15   15
15 2020-01-16   16
16 2020-01-17   17
17 2020-01-18   18
18 2020-01-19   19
19 2020-01-20   20
20 2020-01-21   21
21 2020-01-22   22
22 2020-01-23   23
23 2020-01-24   24
24 2020-01-25   25
25 2020-01-26   26
26 2020-01-27   27
27 2020-01-28   28
28 2020-01-29   29
29 2020-01-30   30
30 2020-01-31   31
31 2020-02-01    1
32 2020-02-02    2
33 2020-02-03    3
34 2020-02-04    4
35 2020-02-05    5
36 2020-02-06    6
37 2020-02-07    7
38 2020-02-08    8
39 2020-02-09    9
40 2020-02-10   10
41 2020-02-11   11
42 2020-02-12   12
43 2020-02-13   13
44 2020-02-14   14
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