# Get business days between start and end date using pandas

I'm using pandas and I'm wondering what's the easiest way to get the business days between a start and end date using pandas?

There are a lot of posts out there regarding doing this in Python (for example), but I would be interested to use directly pandas as I think that pandas can probably handle this quite easy.

Use `BDay()` to get the business days in range.

``````from pandas.tseries.offsets import *

In [185]: s
Out[185]:
2011-01-01   -0.011629
2011-01-02   -0.089666
2011-01-03   -1.314430
2011-01-04   -1.867307
2011-01-05    0.779609
2011-01-06    0.588950
2011-01-07   -2.505803
2011-01-08    0.800262
2011-01-09    0.376406
2011-01-10   -0.469988
Freq: D

In [186]: s.asfreq(BDay())
Out[186]:
2011-01-03   -1.314430
2011-01-04   -1.867307
2011-01-05    0.779609
2011-01-06    0.588950
2011-01-07   -2.505803
2011-01-10   -0.469988
Freq: B
``````

With slicing:

``````In [187]: x=datetime(2011, 1, 5)

In [188]: y=datetime(2011, 1, 9)

In [189]: s.ix[x:y]
Out[189]:
2011-01-05    0.779609
2011-01-06    0.588950
2011-01-07   -2.505803
2011-01-08    0.800262
2011-01-09    0.376406
Freq: D

In [190]: s.ix[x:y].asfreq(BDay())
Out[190]:
2011-01-05    0.779609
2011-01-06    0.588950
2011-01-07   -2.505803
Freq: B
``````

and `count()`

``````In [191]: s.ix[x:y].asfreq(BDay()).count()
Out[191]: 3
``````
• wow.. perfect! Thank you very much! – Thomas Kremmel Oct 23 '12 at 7:25
• would it be possible to use the same technique when my data has a granularity of hours? So I want to pull out all the hours that are on business days. I know how to then pull out just the working hours of the day after that – Luka Vlaskalic Oct 24 '18 at 14:01
• I figured out that you can just use this .asfreq(freq='BH') – Luka Vlaskalic Oct 24 '18 at 14:07
• Please don't teach people to use `import *` syntax! – Marvin Taschenberger Mar 5 at 9:32

You can also use `date_range` for this purpose.

``````In [3]: pd.date_range('2011-01-05', '2011-01-09', freq=BDay())

Out[3]: DatetimeIndex(['2011-01-05', '2011-01-06', '2011-01-07'], dtype='datetime64[ns]', freq='B', tz=None)
``````

EDIT

Or even more simple

``````In [7]: pd.bdate_range('2011-01-05', '2011-01-09')

Out[7]: DatetimeIndex(['2011-01-05', '2011-01-06', '2011-01-07'], dtype='datetime64[ns]', freq='B', tz=None)
``````

Note that both start and end dates are inclusive. Source: http://pandas.pydata.org/pandas-docs/stable/generated/pandas.bdate_range.html

As of v0.14 you can use holiday calendars.

```from pandas.tseries.holiday import USFederalHolidayCalendar

print pd.DatetimeIndex(start='2010-01-01',end='2010-01-15', freq=us_bd)
```

returns:

```DatetimeIndex(['2010-01-04', '2010-01-05', '2010-01-06', '2010-01-07',
'2010-01-08', '2010-01-11', '2010-01-12', '2010-01-13',
'2010-01-14', '2010-01-15'],
dtype='datetime64[ns]', freq='C')
```
• if you want the number of days between the date range, you can get this as `pd.DatetimeIndex(start='2010-01-01',end='2010-01-15',freq=us_bd).shape[0]` – tsando Sep 15 '17 at 15:52

Just be careful when using bdate_range or BDay() - the name might mislead you to think that it is a range of business days, whereas in reality it's just calendar days with weekends stripped out (ie. it doesn't take holidays into account).

On top of this answer and xone, we can write a short function to return the trading days of US exchange:

``````from xone import calendar

kw = dict(start=start, end=end)
return pd.bdate_range(**kw).drop(us_cal.holidays(**kw))

Replace `DatetimeIndex` with `bdate_range` for `pandas` 0.24.0 update: