25

I'm having this data frame:

Name   Date    Quantity
Apple  07/11/17  20
orange 07/14/17  20
Apple  07/14/17  70
Orange 07/25/17  40
Apple  07/20/17  30

I want to aggregate this by Name and Date to get sum of quantities Details:

Date: Group, the result should be at the beginning of the week (or just on Monday)

Quantity: Sum, if two or more record have same Name and Date(if falls on same interval)

The desired output is given below:

Name   Date    Quantity
Apple  07/10/17  90
orange 07/10/17  20
Apple  07/17/17  30
orange 07/24/17  40

Thanks in advance

47

First convert column date to_datetime and substract one week.

Then use groupby with Grouper by W-MON and aggregate sum:

df['Date'] = pd.to_datetime(df['Date']) - pd.to_timedelta(7, unit='d')
df = df.groupby(['Name', pd.Grouper(key='Date', freq='W-MON')])['Quantity']
       .sum()
       .reset_index()
       .sort_values('Date')
print (df)
     Name       Date  Quantity
0   Apple 2017-07-10        90
3  orange 2017-07-10        20
1   Apple 2017-07-17        30
2  Orange 2017-07-24        40
  • Now it is correct, need substract one week only. Check edited answer. – jezrael Jul 25 '17 at 11:08
9

Let's use groupby, resample with W-Mon, and sum:

df.groupby('Name').resample('W-Mon', on='Date').sum().reset_index().sort_values(by='Date')

Output:

     Name       Date  Quantity
0   Apple 2017-07-17        90
3  orange 2017-07-17        20
1   Apple 2017-07-24        30
2  Orange 2017-07-31        40
  • 1
    Thanks for the reply!.But when I use your code it is showing, TypeError: Only valid with DatetimeIndex, TimedeltaIndex or PeriodIndex, but got an instance of 'Index' Do you know why? Thanks – Ram Jul 25 '17 at 9:36
  • Yes, you need to convert your data column to dtype datetime. Use df['Date'] = pd.to_datetime(df['Date']). – Scott Boston Jul 25 '17 at 13:04
4

First convert column date to_datetime. This will group by week starting with Mondays. It will output the week number (but you can change that looking up in

http://strftime.org/

df.groupby(['name', df['date'].dt.strftime('%W')])['quantity'].sum()

Output:

name    date
apple   28      90
        29      30
orange  28      20
        30      40

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