I have a Data-frame df which is as follows:

| date      | Revenue |
|-----------|---------|
| 6/2/2017  | 100     |
| 5/23/2017 | 200     |
| 5/20/2017 | 300     |
| 6/22/2017 | 400     |
| 6/21/2017 | 500     |

I need to group the above data by month to get output as:

| date | SUM(Revenue) |
|------|--------------|
| May  | 500          |
| June | 1000         |

I tried this code but it did not work:

df.groupby(month('date')).agg({'Revenue': 'sum'})

I want to only use Pandas or Numpy and no additional libraries

  • 1
    df.groupby(pd.Grouper(key='Date',freq='M')).agg({'Revenue':'sum'}), this assumes the data type of the date column is datetime – aws_apprentice Jul 4 '17 at 14:25
up vote 10 down vote accepted

try this:

In [6]: df['date'] = pd.to_datetime(df['date'])

In [7]: df
Out[7]: 
        date  Revenue
0 2017-06-02      100
1 2017-05-23      200
2 2017-05-20      300
3 2017-06-22      400
4 2017-06-21      500



In [59]: df.groupby(df['date'].dt.strftime('%B'))['Revenue'].sum().sort_values()
Out[59]: 
date
May      500
June    1000
  • up vote because it's the only answer which formats the date column properly – aws_apprentice Jul 4 '17 at 14:42
  • FYI this gives u a string column for the date which is not as performant nor useful (as real resamplimg / time grouping) – Jeff Jul 4 '17 at 15:30
  • @shivsn: can this be sorted by date- ascending wise (May-500 and then June -1000) ? – Symphony Jul 4 '17 at 19:02
  • @Symphony check the updated answer. – shivsn Jul 5 '17 at 5:47
  • what do u mean by df. how to import df?? – Ragulan28 Sep 5 at 4:42

Try a groupby using a pandas Grouper:

df = pd.DataFrame({'date':['6/2/2017','5/23/2017','5/20/2017','6/22/2017','6/21/2017'],'Revenue':[100,200,300,400,500]})
df.date = pd.to_datetime(df.date)
dg = df.groupby(pd.Grouper(key='date', freq='1M')).sum() # groupby each 1 month
dg.index = dg.index.strftime('%B')

     Revenue
 May    500
June    1000
  • Thanks, it works! – Symphony Jul 4 '17 at 14:39
  • Great - glad to hear it! – qbzenker Jul 4 '17 at 14:40

For DataFrame with many rows, using strftime takes up more time. If the date column already has dtype of datetime64[ns] (can use pd.to_datetime() to convert, or specify parse_dates during csv import, etc.), one can directly access datetime property for groupby labels (Method 3). The speedup is substantial.

import numpy as np
import pandas as pd

T = pd.date_range(pd.Timestamp(0), pd.Timestamp.now()).to_frame(index=False)
T = pd.concat([T for i in range(1,10)])
T['revenue'] = pd.Series(np.random.randint(1000, size=T.shape[0]))
T.columns.values[0] = 'date'

print(T.shape) #(159336, 2)
print(T.dtypes) #date: datetime64[ns], revenue: int32

Method 1: strftime

%timeit -n 10 -r 7 T.groupby(T['date'].dt.strftime('%B'))['revenue'].sum()

1.47 s ± 10.1 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

Method 2: Grouper

%timeit -n 10 -r 7 T.groupby(pd.Grouper(key='date', freq='1M')).sum()
#NOTE Manually map months as integer {01..12} to strings

56.9 ms ± 2.88 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

Method 3: datetime properties

%timeit -n 10 -r 7 T.groupby(T['date'].dt.month)['revenue'].sum()
#NOTE Manually map months as integer {01..12} to strings

34 ms ± 3.34 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

  • Note that if you have data from more than 1 year, methods 1 and 3 aggregate over them whereas method 2 does not. Also, the result from method 1 is sorted alphabetically. – HenriV Sep 12 at 14:08

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