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


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.

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