I am trying to use date_range. I came across some values valid for freq, like BME and 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?


2 Answers 2


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
How to find offset aliases

You can find the entire list of valid frequencies by


which returns

['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.

Anchored offsets

In addition to the offsets in jezrael's post, you can also specify an anchoring suffix for some frequencies.

Weekly frequencies can have anchors on any day of the week: W-SUN, W-MON, W-TUE, W-WED, W-THU, W-FRI and W-SAT.

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:

  • Q
  • QS
  • BQ
  • BQS
  • A
  • AS
  • BA
  • BAS

and the valid suffixes are JAN, FEB, MAR, APR, MAY, JUN, JUL, AUG, SEP, OCT, NOV and DEC.

For example, to anchor years to end at the beginning of May, you can use A-MAY

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')

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