6

Given the following dataframe:

+------------+--------+
|    Date    | Amount |
+------------+--------+
| 01/05/2019 |     15 |
| 27/05/2019 |     20 |
| 27/05/2019 |     15 |
| 25/06/2019 |     10 |
| 29/06/2019 |     25 |
| 01/07/2019 |     50 |
+------------+--------+

I need to get the rolling sum of all previous dates as follows:

+------------+--------+
|    Date    | Amount |
+------------+--------+
| 01/05/2019 | NaN    |
| 27/05/2019 | 15     |
| 27/05/2019 | 15     |
| 15/06/2019 | 35     |
| 29/06/2019 | 10     |
| 01/07/2019 | 35     |
+------------+--------+

Using:

df = pd.DataFrame(
    {
        'Date': {
            0: datetime.datetime(2019, 5, 1),
            1: datetime.datetime(2019, 5, 27),
            2: datetime.datetime(2019, 5, 27),
            3: datetime.datetime(2019, 6, 15),
            4: datetime.datetime(2019, 6, 29),
            5: datetime.datetime(2019, 7, 1),
        },
        'Amount': {0: 15, 1: 20, 2: 15, 3: 10, 4: 25, 5: 50}
    }
)
df.sort_values("Date", inplace=True)
df_roll = df.rolling("28d", on="Date", closed="left").sum()

Gets me:

+------------+--------+
|    Date    | Amount |
+------------+--------+
| 01/05/2019 |    NaN |
| 27/05/2019 |     15 | 
| 27/05/2019 |     35 | <-- Should be 15
| 15/06/2019 |     35 |
| 29/06/2019 |     10 |
| 01/07/2019 |     35 |
+------------+--------+

Which isn't quite correct.

How would I get the sum of all previous dates rather than all previous rows?

0

3 Answers 3

2

You can do

df['new'] = df.Date.map(df.groupby('Date').Amount.sum().rolling("28d", closed="left").sum())
df
        Date  Amount   new
0 2019-05-01      15   NaN
1 2019-05-27      20  15.0
2 2019-05-27      15  15.0
3 2019-06-15      10  35.0
4 2019-06-29      25  10.0
5 2019-07-01      50  35.0
8
  • Thanks for this - how would I incorporate the 28 day rolling period?
    – Jossy
    Dec 20, 2021 at 2:02
  • @Jossy df.groupby('Date').Amount.sum().roling(....) here
    – BENY
    Dec 20, 2021 at 2:21
  • Tried df['new'] = df.Date.map(df.groupby('Date').Amount.sum().rolling("28d", on="Date")) but getting error ValueError: invalid on specified as Date, must be a column (of DataFrame), an Index or None
    – Jossy
    Dec 20, 2021 at 2:49
  • @Jossydf['new'] = df.Date.map(df.groupby('Date').Amount.sum().rolling("28d"))
    – BENY
    Dec 20, 2021 at 3:22
  • Sadly that gives another error :( TypeError: 'Rolling' object is not callable
    – Jossy
    Dec 20, 2021 at 3:25
1

One way is to aggregate your amounts by date first, then compute the rolling sum, and join this sum to the original list of dates to apply the rolling sum to all dates

# Aggregate (sum) by date
df_agged = (df.groupby('Date')['Amount'].agg(['sum'])
            .reset_index()
            .rename(columns={'sum':'Amount'}))
# Compute rolling sum
df_agged_rolling = df_agged.rolling("28d",on="Date",closed='left').sum()

# Join on original dates to apply rolling sum to duplicate dates
df_with_rolling_agg = df.join(df_agged_rolling.set_index('Date'),on='Date',
                              lsuffix='_orig',rsuffix='_rolling_sum')
df_with_rolling_agg

#         Date  Amount_orig  Amount_rolling_sum
# 0 2019-05-01           15                 NaN
# 1 2019-05-27           20                15.0
# 2 2019-05-27           15                15.0
# 3 2019-06-15           10                35.0
# 4 2019-06-29           25                10.0
# 5 2019-07-01           50                35.0
1

You could drop duplicate dates first, then do a rolling sum, then forward fill the resulting NaNs (occasioned by the duplicate removal):

df = df.assign(Amount=df.drop_duplicates(subset=['Date']).rolling("28d", on="Date", closed="left")['Amount'].sum()).ffill()

Output:

>>> df
        Date  Amount
0 2019-05-01     NaN
1 2019-05-27    15.0
2 2019-05-27    15.0
3 2019-06-15    20.0
4 2019-06-29    10.0
5 2019-07-01    35.0

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