9

EDIT:
If you're coming to this question and your string looks like 1996-Q1, then just use pd.to_datetime(df['Quarter']) to convert it to a proper pandas datetime. This question is about solving all the quarter dates that are not in this standard format.

ORIGINAL QUESTION:
I'm looking for a nice, readable and understandable way (one that you can remember for the next time) to convert Q3 1996 to a pandas datetime, for example 1996-07-01 in this case. Until now I found this, but it's mighty ugly:

df = pd.DataFrame({'Quarter':['Q3 1996', 'Q4 1996', 'Q1 1997']})
​
df['date'] = (
    pd.to_datetime(
        df['Quarter'].str.split(' ').apply(lambda x: ''.join(x[::-1]))
))
​
print(df)
   Quarter       date
0  Q3 1996 1996-07-01
1  Q4 1996 1996-10-01
2  Q1 1997 1997-01-01

I was hoping the following would work, because it's readable, but unfortunately it doesn't:

df['date'] = pd.to_datetime(df['Quarter'], format='%q %Y')

The problem is also that quarter and year are apparently in the wrong order for pandas to do simple processing.

Can anyone help me find a cleaner way of converting Q3 1996 to a pandas datetime?

19

You can (and should) use pd.PeriodIndex as a first step, then convert to timestamp using PeriodIndex.to_timestamp:

qs = df['Quarter'].str.replace(r'(Q\d) (\d+)', r'\2-\1')
qs

0    1996-Q3
1    1996-Q4
2    1997-Q1
Name: Quarter, dtype: object

df['date'] = pd.PeriodIndex(qs, freq='Q').to_timestamp()
df

   Quarter       date
0  Q3 1996 1996-07-01
1  Q4 1996 1996-10-01
2  Q1 1997 1997-01-01

The initial replace step is necessary as PeriodIndex expects your periods in the %Y-%q format.


Another option is to use pd.to_datetime after performing string replacement in the same way as before.

df['date'] = pd.to_datetime(
    df['Quarter'].str.replace(r'(Q\d) (\d+)', r'\2-\1'), errors='coerce')
df

   Quarter       date
0  Q3 1996 1996-07-01
1  Q4 1996 1996-10-01
2  Q1 1997 1997-01-01

If performance is important, you can split and join, but you can do it cleanly:

df['date'] = pd.to_datetime([
    '-'.join(x.split()[::-1]) for x in df['Quarter']])

df

   Quarter       date
0  Q3 1996 1996-07-01
1  Q4 1996 1996-10-01
2  Q1 1997 1997-01-01
8
  • Both answers are great. Why does pd.to_datetime() need to have Year and Quarter switched around for it to work? Dec 22 '18 at 19:15
  • @SandervandenOord I think it happens to do with the underlying datetime parser being used (pytz if I'm not mistaken). But I am not sure. There is no way I'm aware of to specify a format for the PeriodIndex, but it would be nice if you could.
    – cs95
    Dec 22 '18 at 19:16
  • How can I get dates corresponding to the end of the quarter? Like, Q1 2018 turns into 2018-03-31?
    – ifly6
    Feb 7 '19 at 19:02
  • 2
    @ifly6 Had the same question, just put to_timestamp(how='end')
    – User2321
    Nov 7 '19 at 15:51
  • 1
    @cs95 First solution does not seem to be working anymore: df['date'] = pd.PeriodIndex(qs, freq='Q') I'm getting 'Incorrect dtype'. Using pandas 0.25.3 and pytz 2019.2 Do you have an idea why this is not working anymore? Or am I making a mistake? Nov 26 '19 at 12:03
6

Use slicing by last 4 values with first 2 and convert to datetimes:

df['date'] = pd.to_datetime(df['Quarter'].str[-4:] + df['Quarter'].str[:2])

String operations in pandas are slow, so if no missing values is possible use list comprehension:

#python 3.6+ 
df['date'] = pd.to_datetime([f'{x[-4:]}{x[:2]}' for x in df['Quarter']])
#python bellow
#df['date'] = pd.to_datetime(['{}{}'.format(x[-4:], x[:2]) for x in df['Quarter']])
print (df)
   Quarter       date
0  Q3 1996 1996-07-01
1  Q4 1996 1996-10-01
2  Q1 1997 1997-01-01
0
5

Given a quarter format like 2018-Q1, one can use the built in pd.to_datetime function.

As a general answer would have to deal with the plethora of ways one can store a quarter-year observation (e.g. 2018:1, 2018:Q1, 20181, Q1:2018, etc.), coercing the data into the format supra is outside of my answer's scope.

But given a formatted series:

formatted_series = formatted_series_supplier() ...
df['date'] = pd.to_datetime(formatted_series)

And if you're dealing with regulatory data, which almost always reflects the end of the quarter rather than it's start (i.e. instead of 2019-01-01, you want 2019-03-31), you can use offsets like below:

df['date'] = df['date'] + pd.offsets.QuarterEnd(0)

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