131

Consider a csv file:

string,date,number
a string,2/5/11 9:16am,1.0
a string,3/5/11 10:44pm,2.0
a string,4/22/11 12:07pm,3.0
a string,4/22/11 12:10pm,4.0
a string,4/29/11 11:59am,1.0
a string,5/2/11 1:41pm,2.0
a string,5/2/11 2:02pm,3.0
a string,5/2/11 2:56pm,4.0
a string,5/2/11 3:00pm,5.0
a string,5/2/14 3:02pm,6.0
a string,5/2/14 3:18pm,7.0

I can read this in, and reformat the date column into datetime format:

b=pd.read_csv('b.dat')
b['date']=pd.to_datetime(b['date'],format='%m/%d/%y %I:%M%p')

I have been trying to group the data by month. It seems like there should be an obvious way of accessing the month and grouping by that. But I can't seem to do it. Does anyone know how?

What I am currently trying is re-indexing by the date:

b.index=b['date']

I can access the month like so:

b.index.month

However I can't seem to find a function to lump together by month.

1
  • 3
    If you are struggling with applying any of the answer, please keep in mind that in this question (and therefore in the answers) the Datetime value is assigned to the index of the Dataframe. A quick tip/reminder could be the following: if you have a Datetime column, you can actually access the single Yeay/Month/Day/Hour/Minute value just by doing my_df.my_column.dt.month Nov 30 '20 at 13:03
219

Managed to do it:

b = pd.read_csv('b.dat')
b.index = pd.to_datetime(b['date'],format='%m/%d/%y %I:%M%p')
b.groupby(by=[b.index.month, b.index.year])

Or

b.groupby(pd.Grouper(freq='M'))  # update for v0.21+
5
  • 58
    I think the more pandonic ways are to either use resample (when it provides the functionality you need) or use a TimeGrouper: df.groupby(pd.TimeGrouper(freq='M'))
    – Karl D.
    Jun 6 '14 at 16:57
  • 13
    to get the result DataFrame sum or average, df.groupby(pd.TimeGrouper(freq='M')).sum() or df.groupby(pd.TimeGrouper(freq='M')).mean()
    – Alexandre
    Jan 28 '16 at 21:58
  • 15
    pd.TimeGrouper has been deprecated in favor of pd.Grouper, which is a bit more flexible but still takes freq and level arguments. Dec 18 '18 at 1:18
  • the first method doesn't not appear to work. It gives the error, 'Series object has no attribute 'month'' for a Series created via to_datetime.
    – ely
    Sep 9 '19 at 20:36
  • 1
    @ely The answer implicitly relies on the lines in the original question where b is given an index after being read from CSV. Add b.index = pd.to_datetime(b['date'],format='%m/%d/%y %I:%M%p') after the line b = pd.read_csv('b.dat'). [I've edited the answer just now too.]
    – goodside
    Mar 5 '20 at 18:09
96

(update: 2018)

Note that pd.Timegrouper is depreciated and will be removed. Use instead:

 df.groupby(pd.Grouper(freq='M'))
4
  • 2
    Find the Grouper docs here and the frequency specifications (freq=...) here. Some examples are freq=D for days, freq=B for business days, freq=W for weeks or even freq=Q for quarters.
    – Kim
    Mar 25 '20 at 12:09
  • 7
    I found it useful to use 'key' to avoid having to reindex the df, as follows: df.groupby(pd.Grouper(key='your_date_column', freq='M'))
    – Edward
    Oct 15 '20 at 15:00
  • Does this work if you're grouping by two columns, only one of which is datetime value column?
    – exlo
    Mar 17 '21 at 3:23
  • speeding up the further research for those who want to group by specific column (or more): df.groupby(['col1', pd.Grouper(key='date_col', freq='1M')]).agg({ 'col2': 'sum', 'col3': 'max' })
    – Manaslu
    Apr 27 '21 at 8:09
17

One solution which avoids MultiIndex is to create a new datetime column setting day = 1. Then group by this column.

Normalise day of month

df = pd.DataFrame({'Date': pd.to_datetime(['2017-10-05', '2017-10-20', '2017-10-01', '2017-09-01']),
                   'Values': [5, 10, 15, 20]})

# normalize day to beginning of month, 4 alternative methods below
df['YearMonth'] = df['Date'] + pd.offsets.MonthEnd(-1) + pd.offsets.Day(1)
df['YearMonth'] = df['Date'] - pd.to_timedelta(df['Date'].dt.day-1, unit='D')
df['YearMonth'] = df['Date'].map(lambda dt: dt.replace(day=1))
df['YearMonth'] = df['Date'].dt.normalize().map(pd.tseries.offsets.MonthBegin().rollback)

Then use groupby as normal:

g = df.groupby('YearMonth')

res = g['Values'].sum()

# YearMonth
# 2017-09-01    20
# 2017-10-01    30
# Name: Values, dtype: int64

Comparison with pd.Grouper

The subtle benefit of this solution is, unlike pd.Grouper, the grouper index is normalized to the beginning of each month rather than the end, and therefore you can easily extract groups via get_group:

some_group = g.get_group('2017-10-01')

Calculating the last day of October is slightly more cumbersome. pd.Grouper, as of v0.23, does support a convention parameter, but this is only applicable for a PeriodIndex grouper.

Comparison with string conversion

An alternative to the above idea is to convert to a string, e.g. convert datetime 2017-10-XX to string '2017-10'. However, this is not recommended since you lose all the efficiency benefits of a datetime series (stored internally as numerical data in a contiguous memory block) versus an object series of strings (stored as an array of pointers).

4
  • See this answer for the proper way to utilize offsets when there are already day=1 values : stackoverflow.com/a/45831333/9987623.
    – AlexK
    Nov 22 '20 at 4:08
  • @AlexK, does pd.tseries.offsets have an advantage over pd.tseries.MonthBegin ?
    – jpp
    Nov 22 '20 at 12:07
  • sorry, I don't know enough to tell those apart. I just added the comment because your df['YearMonth'] = df['Date'] - pd.offsets.MonthBegin(1) code above changes any date that is already the first of the month to the first of the previous month.
    – AlexK
    Nov 23 '20 at 1:27
  • @AlexK, Good spot, have updated answer accordingly.
    – jpp
    Nov 25 '20 at 17:59
10

To groupby time-series data you can use the method resample. For example, to groupby by month:

df.resample(rule='M', on='date')['Values'].sum()

The list with offset aliases you can find here.

8

Slightly alternative solution to @jpp's but outputting a YearMonth string:

df['YearMonth'] = pd.to_datetime(df['Date']).apply(lambda x: '{year}-{month}'.format(year=x.year, month=x.month))

res = df.groupby('YearMonth')['Values'].sum()

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