


How Can I Efficiently Determine if 24 Hours Have Passed Between Two Python `datetime` Objects?
Dec 06, 2024 pm 05:20 PMCalculating Time Difference to Determine if 24 Hours Have Passed
The task involves determining whether 24 hours have passed between two dates or times stored in a datetime object. Here's a solution in Python:
Using Naive Datetime Objects
If the datetime object represents a naive time (without timezone information):
from datetime import datetime, timedelta if (datetime.utcnow() - last_updated) > timedelta(hours=24): # More than 24 hours passed since last_updated
Using Local Time Objects
If last_updated represents local time:
import time DAY = 86400 now = time.time() then = time.mktime(last_updated.timetuple()) if (now - then) > DAY: # More than 24 hours passed since last_updated
Using tzlocal Module (Recommended)
from datetime import datetime, timedelta from tzlocal import get_localzone tz = get_localzone() then = tz.normalize(tz.localize(last_updated)) now = datetime.now(tz) if (now - then) > timedelta(hours=24): # More than 24 hours passed since last_updated
This method handles cases where timezones may have changed or Daylight Saving Time (DST) offsets have been adjusted.
Notes:
- If last_updated is an aware datetime object (with timezone information), subtract the UTC offset before comparing.
- Working with UTC time minimizes timezone issues and is generally recommended.
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