35

I have seen a lot of posts about how you can do it with a date string but I am trying something for a dataframe column and haven't got any luck so far. My current method is : Get the weekday from 'myday' and then offset to get monday.

df['myday'] is column of dates. 
mydays = pd.DatetimeIndex(df['myday']).weekday
df['week_start'] = pd.DatetimeIndex(df['myday']) - pd.DateOffset(days=mydays)

But I get TypeError: unsupported type for timedelta days component: numpy.ndarray

How can I get week start date from a df column?

5 Answers 5

47

Another alternative:

df['week_start'] = df['myday'].dt.to_period('W').apply(lambda r: r.start_time)

This will set 'week_start' to be the first Monday before the time in 'myday'.

You can choose different week starts via anchored offsets e.g. ’W-THU’ to start the week on Thursday instead. (Thanks @Henry Ecker for that suggestion)

3
  • 4
    Thanks for this. df['myday'].dt.to_period('W').dt.start_time is probably faster than using apply (not sure when is this introduced, might not work for older pandas version)
    – Ryan Tam
    Apr 20, 2021 at 14:41
  • 2
    It is possible to set an arbitrary day to start the week with anchored offsets. Sunday start would be 'W-SUN' or Thursday Start 'W-THU'. Aug 7 at 3:31
  • @HenryEcker Thanks!! This should be added into this answer to cover more broader aspect
    – Itachi
    Oct 19 at 6:19
39

While both @knightofni's and @Paul's solutions work I tend to try to stay away from using apply in Pandas because it is usually quite slow compared to array-based methods. In order to avoid this, after casting to a datetime column (via pd.to_datetime) we can modify the weekday based method and simply cast the day of the week to be a numpy timedelta64[D] by either casting it directly:

df['week_start'] = df['myday'] - df['myday'].dt.weekday.astype('timedelta64[D]')

or by using to_timedelta as @ribitskiyb suggested:

df['week_start'] = df['myday'] - pd.to_timedelta(df['myday'].dt.weekday, unit='D'). 

Using test data with 60,000 datetimes I got the following times using the suggested answers using the newly released Pandas 1.0.1.

%timeit df.apply(lambda x: x['myday'] - datetime.timedelta(days=x['myday'].weekday()), axis=1)
>>> 1.33 s ± 28.9 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)

%timeit df['myday'].dt.to_period('W').apply(lambda r: r.start_time)
>>> 5.59 ms ± 138 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

%timeit df['myday'] - df['myday'].dt.weekday.astype('timedelta64[D]')
>>> 3.44 ms ± 106 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

%timeit df['myday'] - pd.to_timedelta(df['myday'].dt.weekday, unit='D')
>>> 3.47 ms ± 170 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

These results show that Pandas 1.0.1 has dramatically improved the speed of the to_period apply based method (vs Pandas <= 0.25) but show that converting directly to a timedelta (by either casting the type directly .astype('timedelta64[D]') or using pd.to_timedelta is still superior. Based on these results I would suggest using pd.to_timedelta going forward.

3
  • How does this work? df['myday'].dt.weekday.astype('timedelta64[D]') in my dataset returns a series of all zeroes. Why or how would subtracted 0 from df['myday'] work? This seems like the best solution. Aug 12, 2017 at 4:15
  • Clarifying the above post, the way I understand what is going on is that basically it is saying take the date and then subtract the dayofweek from it. But what I don't understand is why .astype('timedelta64[D]') results in all zeros. Aug 12, 2017 at 18:15
  • @DonQuixote Probably your 'myday' frequency is less than '1D'. This won't work then. You have to modify it to subtract hours, minutes, etc.
    – grabantot
    Apr 7, 2018 at 7:58
11

(Just adding to n8yoder's answer)

Using .astype('timedelta64[D]') seems not so readable to me -- found an alternative using just the functionality of pandas:

df['myday'] - pd.to_timedelta(arg=df['myday'].dt.weekday, unit='D')
1
  • I liked the lambda expression from @Paul, but this answer is much, much faster and equally "pithy". Thank you for the solution. Jul 17, 2019 at 15:29
10

it fails because pd.DateOffset expects a single integer as a parameter (and you are feeding it an array). You can only use DateOffset to change a date column by the same offset.

try this :

import datetime as dt
# Change 'myday' to contains dates as datetime objects
df['myday'] = pd.to_datetime(df['myday'])  
# 'daysoffset' will container the weekday, as integers
df['daysoffset'] = df['myday'].apply(lambda x: x.weekday())
# We apply, row by row (axis=1) a timedelta operation
df['week_start'] = df.apply(lambda x: x['myday'] - dt.TimeDelta(days=x['daysoffset']), axis=1)

I haven't actually tested this code, (there was no sample data), but that should work for what you have described.

However, you might want to look at pandas.Resample, which might provide a better solution - depending on exactly what you are looking for.

3
  • Thankyou for the explanation. This solution does exactly what I wanted!
    – dev28
    Jan 19, 2015 at 12:37
  • 1
    Should the TimeDelta not refer to df['daysoffset']?
    – Carsten
    Aug 5, 2019 at 7:34
  • using lambda will result in something slow
    – Nicolas
    Apr 12, 2021 at 8:39
2
from datetime import datetime, timedelta

# Convert column to pandas datetime equivalent
df['myday'] = pd.to_datetime(df['myday']) 

# Create function to calculate Start Week date
week_start_date = lambda date: date - timedelta(days=date.weekday())

# Apply above function on DataFrame column
df['week_start_date'] = df['myday'].apply(week_start_date)

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