I am trying to use
date_range. I came across some values valid for
BMS and I would like to be able to quickly look up the proper strings to get what I want.
What values are valid in Pandas 'Freq' tags?
You can find it called Offset Aliases:
A number of string aliases are given to useful common time series frequencies. We will refer to these aliases as offset aliases.
Alias Description B business day frequency C custom business day frequency D calendar day frequency W weekly frequency M month end frequency SM semi-month end frequency (15th and end of month) BM business month end frequency CBM custom business month end frequency MS month start frequency SMS semi-month start frequency (1st and 15th) BMS business month start frequency CBMS custom business month start frequency Q quarter end frequency BQ business quarter end frequency QS quarter start frequency BQS business quarter start frequency A, Y year end frequency BA, BY business year end frequency AS, YS year start frequency BAS, BYS business year start frequency BH business hour frequency H hourly frequency T, min minutely frequency S secondly frequency L, ms milliseconds U, us microseconds N nanoseconds
You can find the entire list of valid frequencies by
['BusinessDay', 'MonthBegin', 'Hour', 'Minute', 'Second', ...]
It turns out each of these is a class and all of them have a
_prefix attribute which is the alias. So, e.g., the alias of
Minute can be found by
pd.offsets.Minute._prefix # 'T' # some other aliases pd.offsets.MonthEnd._prefix # 'M' pd.offsets.MonthBegin._prefix # 'MS'
In fact, if we look at the source code, the alias dict is constructed by accessing
_prefix of each offset class.
Weekly frequencies can have anchors on any day of the week:
For example, to anchor weeks to end on Mondays, you can use
W-MON (note that it is case-insensitive).
pd.date_range('2022-01-01', '2022-02-01', freq='w-mon') # DatetimeIndex(['2022-01-03', '2022-01-10', '2022-01-17', '2022-01-24', '2022-01-31'], # dtype='datetime64[ns]', freq='W-MON')
Also quarterly and annual frequencies can have anchors on any month of the year; i.e. the following frequencies can have month as a suffix so that each frequency can be anchored to end on that month:
and the valid suffixes are
For example, to anchor years to end at the beginning of May, you can use
pd.date_range('2020-01-01', '2023-02-01', freq='AS-May') # DatetimeIndex(['2020-05-01', '2021-05-01', '2022-05-01'], dtype='datetime64[ns]', freq='AS-MAY')