Get last date in each month of a time series pandas
Suppose your data frame looks like this
original dataframe
Then the following Code will give you the last day of each month.
df_monthly = df.reset_index().groupby([df.index.year,df.index.month],as_index=False).last().set_index('index')
transformed_dataframe
This one line code does its job :)
This is an old question, but all existing answers here aren't perfect. This is the solution I came up with (assuming that date is a sorted index), which can be even written in one line, but I split it for readability:
month1 = pd.Series(apple.index.month)
month2 = pd.Series(apple.index.month).shift(-1)
mask = (month1 != month2)
apple[mask.values].head(10)
Few notes here:
- Shifting a datetime series requires another
pd.Series
instance (see here) - Boolean mask indexing requires
.values
(see here)
By the way, when the dates are the business days, it'd be easier to use resampling: apple.resample('BM')
My strategy would be to group by month and then select the "maximum" of each group:
If "dt" is your DatetimeIndex object:
last_dates_of_the_month = []
dt_month_group_dict = dt.groupby(dt.month)
for month in dt_month_group_dict:
last_date = max(dt_month_group_dict[month])
last_dates_of_the_month.append(last_date)
The list "last_date_of_the_month" contains all occuring last dates of each month in your dataset. You can use this list to create a DatetimeIndex in pandas again (or whatever you want to do with it).
Condla's answer came closest to what I needed except that since my time index stretched for more than a year I needed to groupby by both month and year and then select the maximum date. Below is the code I ended up with.
# tempTradeDays is the initial DatetimeIndex
dateRange = []
tempYear = None
dictYears = tempTradeDays.groupby(tempTradeDays.year)
for yr in dictYears.keys():
tempYear = pd.DatetimeIndex(dictYears[yr]).groupby(pd.DatetimeIndex(dictYears[yr]).month)
for m in tempYear.keys():
dateRange.append(max(tempYear[m]))
dateRange = pd.DatetimeIndex(dateRange).order()