0

I'm trying to see if the 'DateTime_Added' rows in the df are within the last 2 days of the execution date.

execution_date = context.get("execution_date")

printed execution_date: `2022-02-14T01:00:00+00:00`

printed type execution_date: `<class 'pendulum.datetime.DateTime'>`

last_2_days=execution_date - timedelta(hours=48)
printed last_2_days: 2022-02-12T01:00:00+00:00
printed type last_2_days: <class 'pendulum.datetime.DateTime'>

I've converted the DateTime_Added col to datetime because it was string before:

df['DateTime_Added'] = pd.to_datetime(df['DateTime_Added'])
print df.info()

DateTime_Added   2 non-null      datetime64[ns]
comment                 3080 non-null   object

then when I try to run this I see can't compare offset-naive and offset-aware datetimes:

if row['comment'] is not None and row['comment'] != '' and 
  row['DateTime_Added'] is not None and row['DateTime_Added'] != ''
  and (last_2_days <= row['DateTime Comment Added'] <= execution_date):

1 Answer 1

0

Pendulum datetime enforces timezone by default (which is the 00:00 offset here), and the df['DateTime_Added'] series does not have a timezone. This means the two can't be compared, which is what the error is indicating. Pendulum has the naive() helper method to remove offset from the datetime object. Running last_2_days = pendulum.naive(last_2_days) before doing the comparison should resolve the error.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.