Remove non-business days rows from pandas dataframe
Pandas BDay
just ends up using .dayofweek<5
like the chosen answer, but can be extended to account for bank holidays, etc.
import pandas as pd
from pandas.tseries.offsets import BDay
isBusinessDay = BDay().onOffset
csv_path = 'C:\\Python27\\Lib\\site-packages\\bokeh\\sampledata\\daylight_warsaw_2013.csv'
dates_df = pd.read_csv(csv_path)
match_series = pd.to_datetime(dates_df['Date']).map(isBusinessDay)
dates_df[match_series]
I am building a backtester for stock/FX trading and I also have these issue with days that are nan because that they are holidays or other non trading days.. you can download a financial calendar for the days that there is no trading and then you need to think about timezone and weekends.. etc..
But the best solution is not to use date/time as the index for the candles or price. So do not connect your price data to a date/time but just to a counter of candles or prices .. you can use a second index for this.. so for calculations of MA or other technical lines dont use date/time .. if you look at Metatrader 4/5 it also doesnt use date/time but the index of the data is the candle number !!
I think that you need to let go of the date-time for the price if you work with stock or FX data , of cause you can put them in a column of the data-frame but dont use it as the index This way you can avoid many problems
One simple solution is to slice out the days not in Monday to Friday:
In [11]: s[s.index.dayofweek < 5]
Out[11]:
2016-05-02 00:00:00 4.780
2016-05-02 00:01:00 4.777
2016-05-02 00:02:00 4.780
2016-05-02 00:03:00 4.780
2016-05-02 00:04:00 4.780
Name: closeAsk, dtype: float64
Note: this doesn't take into account bank holidays etc.