(Python Example for Beginners)
Write a Pandas program to create
a) Datetime object for Jan 15 2012.
b) Specific date and time of 9:20 pm.
c) Local date and time.
d) A date without time.
e) Current date.
f) Time from a datetime.
g) Current local time.
Python Code :
import datetime from datetime import datetime print("Datetime object for Jan 11 2012:") print(datetime(2012, 1, 11)) print("nSpecific date and time of 9:20 pm") print(datetime(2011, 1, 11, 21, 20)) print("nLocal date and time:") print(datetime.now()) print("nA date without time: ") print(datetime.date(datetime(2012, 5, 22))) print("nCurrent date:") print(datetime.now().date()) print("nTime from a datetime:") print(datetime.time(datetime(2012, 12, 15, 18, 12))) print("nCurrent local time:") print(datetime.now().time())
Datetime object for Jan 11 2012: 2012-01-11 00:00:00 Specific date and time of 9:20 pm 2011-01-11 21:20:00 Local date and time: 2020-08-17 09:56:17.459790 A date without time: 2012-05-22 Current date: 2020-08-17 Time from a datetime: 18:12:00 Current local time: 09:56:17.461250
Python Example for Beginners
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