I have a csv like this:

```
date,asin,ordered,forecast
2020-05-31,AAAAAA,300,1000
2020-05-31,BBBBBB,500,2000
...
2020-06-28,AAAAAA,980,1500
2020-06-28,BBBBBB,1900,2500
```

I want to find the `date`

+ 28 days and add a new column with the value in ordered. For example, adding 28 days to `2020-05-31`

will give me `2020-06-28`

. For `date = 2020-05-31`

and `asin = AAAAAA`

, there will be a new column `new`

with the number `980`

(from `ordered`

column), which corresponds to the same `asin`

but different date (`2020-06-28`

):

```
date,asin,ordered,forecast,new
2020-05-31,AAAAAA,300,1000,980
2020-05-31,BBBBBB,500,2000,1900
...
2020-06-28,AAAAAA,980,1500, <this value will look for the date 28 days after 2020-06-28 and asin AAAAAA and get that ordered value>
2020-06-28,BBBBBB,1900,2500 <this value will look for the date 28 days after 2020-06-28 and asin BBBBBB and get that ordered value>
```

So far I have gotten the +28 days part by doing `df['date'] + pd.DateOffset(days=28)`

but I don't know how to search for the new date and asin elsewhere in the dataframe and bring in the ordered value to the current row.

`2020-05-31,BBBBBB`

row? Shouldn't be ` NaN` (once you're specified to use only`asin = AAAAAA`

)? – Cainã Max Couto-Silva Dec 3 '20 at 23:31`asin=BBBBBB`

in`date=2020-06-28`

because it needs to match the`asin`

as well as date+28days – kindofhungry Dec 3 '20 at 23:36