4

Apologies if this is an easy one but I can't see anything in the numpy documentation. I have a datetime64 and I'd like to find out which day of the week it is.

Unlike python datetime, datetime64 doesn't seem to have a .weekday() function. However it does have a busday_offset() function, which implies it must know behind-the-scenes what day of the week a given date is. Any help greatly appreciated.

1

I think you could do in this way:

import numpy as np
import datetime
t = '2018-09-19'
t = np.datetime64(t)
day = t.astype(datetime.datetime).isoweekday()
print day

Output:

3
  • thanks! - I guess this is as good as it's going to get - seems odd that the functionality doesn't exist within numpy though. – Chrisper Sep 19 '18 at 6:10
5

Please look at the following related SO question:

Get weekday/day-of-week for Datetime column of DataFrame

I understand that your data is a numpy array, it may be useful to convert your data into a dataframe format via pandas. This is shown below.

import pandas as pd
df = pd.DataFrame(numpyArray)

Provided your data is now in a dataframe, then the below code (taken from the above link), should provide you with the weekday you are after.

df['weekday'] = df['Timestamp'].dt.dayofweek

Sample Output

Additionally this reference may also assist you.

https://pandas.pydata.org/pandas-docs/stable/generated/pandas.Series.dt.dayofweek.html

  • 1
    @roganjosh - No worries. I just thought that so I started editing my answer. Thanks for the heads up! – IronKirby Sep 19 '18 at 5:43
  • thanks - this definitely works, but I am using this within a loop that runs (on average) 100 000 times - so I am trying to avoid stepping into pandas-land. – Chrisper Sep 19 '18 at 6:07
  • @Chrisper - No worries. If I knew that, I'd suggest a lambda function you could implement which would enable this to run just as fast even with pandas. – IronKirby Sep 19 '18 at 23:41
3

If you're looking for a genuinely vectorized numpy approach, you could do:

def day_of_week_num(dts):
    return (dts.astype('datetime64[D]').view('int64') - 4) % 7

It's a bit hacky, and just takes advantage of the fact that numpy.datetime64s are relative to the unix epoch, which was a Thursday.

(I don't know if this is an implementational detail that could change without notice, but you can always check with assert np.zeros(1).astype('datetime64[D]') == np.datetime64('1970-01-01', 'D').)

  • 1
    thanks - that actually works very well. For a year's worth of dates, it runs about 10x faster than checking .isoweekday() – Chrisper Jan 23 at 4:31

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