# Pandas groupby cumulative sum

I would like to add a cumulative sum column to my Pandas dataframe so that:

name day no
Jack Monday 10
Jack Tuesday 20
Jack Tuesday 10
Jack Wednesday 50
Jill Monday 40
Jill Wednesday 110

becomes:

``````Jack | Monday     | 10  | 10
Jack | Tuesday    | 30  | 40
Jack | Wednesday  | 50  | 90
Jill | Monday     | 40  | 40
Jill | Wednesday  | 110 | 150
``````

I tried various combos of `df.groupby` and `df.agg(lambda x: cumsum(x))` to no avail.

• To create both columns using a one-liner, use this answer. Commented Nov 16, 2022 at 22:00

This should do it, need `groupby()` twice:

``````df.groupby(['name', 'day']).sum() \
.groupby(level=0).cumsum().reset_index()
``````

Explanation:

``````print(df)
name        day   no
0  Jack     Monday   10
1  Jack    Tuesday   20
2  Jack    Tuesday   10
3  Jack  Wednesday   50
4  Jill     Monday   40
5  Jill  Wednesday  110

# sum per name/day
print( df.groupby(['name', 'day']).sum() )
no
name day
Jack Monday      10
Tuesday     30
Wednesday   50
Jill Monday      40
Wednesday  110

# cumulative sum per name/day
print( df.groupby(['name', 'day']).sum() \
.groupby(level=0).cumsum() )
no
name day
Jack Monday      10
Tuesday     40
Wednesday   90
Jill Monday      40
Wednesday  150
``````

The dataframe resulting from the first sum is indexed by `'name'` and by `'day'`. You can see it by printing

``````df.groupby(['name', 'day']).sum().index
``````

When computing the cumulative sum, you want to do so by `'name'`, corresponding to the first index (level 0).

Finally, use `reset_index` to have the names repeated.

``````df.groupby(['name', 'day']).sum().groupby(level=0).cumsum().reset_index()

name        day   no
0  Jack     Monday   10
1  Jack    Tuesday   40
2  Jack  Wednesday   90
3  Jill     Monday   40
4  Jill  Wednesday  150
``````
• What a brute method to achieve the result, wished this was simple in pandas Commented Mar 29, 2023 at 21:53

Modification to @Dmitry's answer. This is simpler and works in pandas 0.19.0:

``````print(df)

name        day   no
0  Jack     Monday   10
1  Jack    Tuesday   20
2  Jack    Tuesday   10
3  Jack  Wednesday   50
4  Jill     Monday   40
5  Jill  Wednesday  110

df['no_csum'] = df.groupby(['name'])['no'].cumsum()

print(df)
name        day   no  no_csum
0  Jack     Monday   10       10
1  Jack    Tuesday   20       30
2  Jack    Tuesday   10       40
3  Jack  Wednesday   50       90
4  Jill     Monday   40       40
5  Jill  Wednesday  110      150
``````
• This works but you need to be careful with the order of the 'day' column. For example, if 'day' was in alphabetical order, 'no_csum' probably wouldn't reflect the information you actually need. Commented Jun 26, 2023 at 7:12

This works in pandas 0.16.2

``````In[23]: print df
name          day   no
0      Jack       Monday    10
1      Jack      Tuesday    20
2      Jack      Tuesday    10
3      Jack    Wednesday    50
4      Jill       Monday    40
5      Jill    Wednesday   110
In[24]: df['no_cumulative'] = df.groupby(['name'])['no'].apply(lambda x: x.cumsum())
In[25]: print df
name          day   no  no_cumulative
0      Jack       Monday    10             10
1      Jack      Tuesday    20             30
2      Jack      Tuesday    10             40
3      Jack    Wednesday    50             90
4      Jill       Monday    40             40
5      Jill    Wednesday   110            150
``````
• `df.groupby(['name'])['no'].cumsum()` also works fine. Commented Sep 21, 2023 at 18:56

you should use

``````df['cum_no'] = df.no.cumsum()
``````

http://pandas.pydata.org/pandas-docs/version/0.19.2/generated/pandas.DataFrame.cumsum.html

Another way of doing it

``````import pandas as pd
df = pd.DataFrame({'C1' : ['a','a','a','b','b'],
'C2' : [1,2,3,4,5]})
df['cumsum'] = df.groupby(by=['C1'])['C2'].transform(lambda x: x.cumsum())
df
``````

Instead of `df.groupby(by=['name','day']).sum().groupby(level=[0]).cumsum()` (see above) you could also do a `df.set_index(['name', 'day']).groupby(level=0, as_index=False).cumsum()`

• `df.groupby(by=['name','day']).sum()` is actually just moving both columns to a MultiIndex
• `as_index=False` means you do not need to call reset_index afterwards

data.csv:

``````name,day,no
Jack,Monday,10
Jack,Tuesday,20
Jack,Tuesday,10
Jack,Wednesday,50
Jill,Monday,40
Jill,Wednesday,110
``````

Code:

``````import numpy as np
import pandas as pd

print(df)
df = df.groupby(['name', 'day'])['no'].sum().reset_index()
print(df)
df['cumsum'] = df.groupby(['name'])['no'].apply(lambda x: x.cumsum())
print(df)
``````

Output:

``````   name        day   no
0  Jack     Monday   10
1  Jack    Tuesday   20
2  Jack    Tuesday   10
3  Jack  Wednesday   50
4  Jill     Monday   40
5  Jill  Wednesday  110
name        day   no
0  Jack     Monday   10
1  Jack    Tuesday   30
2  Jack  Wednesday   50
3  Jill     Monday   40
4  Jill  Wednesday  110
name        day   no  cumsum
0  Jack     Monday   10      10
1  Jack    Tuesday   30      40
2  Jack  Wednesday   50      90
3  Jill     Monday   40      40
4  Jill  Wednesday  110     150
``````

as of version 1.0 pandas got a new api for window functions.

specifically, what was achieved earlier with

``````df.groupby(['name'])['no'].apply(lambda x: x.cumsum())
``````

or

``````df.set_index(['name', 'day']).groupby(level=0, as_index=False).cumsum()
``````

now becomes

``````df.groupby(['name'])['no'].expanding().sum()
``````

I find it more intuitive for all window-related functions than groupby+level operations

although learning to use groupby is useful for general purpose.
see docs: https://pandas.pydata.org/docs/user_guide/window.html

If you want to write a one-liner (perhaps you want to pass the methods into a pipeline), you can do so by first setting `as_index` parameter of `groupby` method to False to return a dataframe from the aggregation step and use `assign()` to assign a new column to it (the cumulative sum for each person).

These chained methods return a new dataframe, so you'll need to assign it to a variable (e.g. `agg_df`) to be able to use it later on.

``````agg_df = (
# aggregate df by name and day
df.groupby(['name','day'], as_index=False)['no'].sum()
.assign(
# assign the cumulative sum of each name as a new column
cumulative_sum=lambda x: x.groupby('name')['no'].cumsum()
)
)
``````

• How can we be sure that "cumsum" is executed in the "day" order? Commented Nov 23, 2023 at 15:12
• @JigidiSarnath you’ll have to sort the groupby result by day (before the call to cumsum) if you want the cumsum to be executed in day order. See this post for ways to sort the frame. Commented Nov 23, 2023 at 16:25