How to convert string to datetime
Conversion between time and string is very common in Python, but how is it implemented specifically and how to convert string to datetime?
Case: time & datetime & string mutual conversion
#!/usr/bin/env python # -*- coding:utf-8 -*- import datetime import time # 日期时间字符串 st = "2017-11-23 16:10:10" # 当前日期时间 dt = datetime.datetime.now() # 当前时间戳 sp = time.time() # 1.把datetime转成字符串 def datetime_toString(dt): print("1.把datetime转成字符串: ", dt.strftime("%Y-%m-%d %H:%M:%S")) # 2.把字符串转成datetime def string_toDatetime(st): print("2.把字符串转成datetime: ", datetime.datetime.strptime(st, "%Y-%m-%d %H:%M:%S")) # 3.把字符串转成时间戳形式 def string_toTimestamp(st): print("3.把字符串转成时间戳形式:", time.mktime(time.strptime(st, "%Y-%m-%d %H:%M:%S"))) # 4.把时间戳转成字符串形式 def timestamp_toString(sp): print("4.把时间戳转成字符串形式: ", time.strftime("%Y-%m-%d %H:%M:%S", time.localtime(sp))) # 5.把datetime类型转外时间戳形式 def datetime_toTimestamp(dt): print("5.把datetime类型转外时间戳形式:", time.mktime(dt.timetuple())) # 1.把datetime转成字符串 datetime_toString(dt) # 2.把字符串转成datetime string_toDatetime(st) # 3.把字符串转成时间戳形式 string_toTimestamp(st) # 4.把时间戳转成字符串形式 timestamp_toString(sp) # 5.把datetime类型转外时间戳形式 datetime_toTimestamp(dt)
Experimental results:
1 .Convert datetime to string: 2017-11-23 17:05:18
2. Convert string to datetime: 2017-11-23 16:10:10
3. Convert string to Timestamp format: 1511424610.0
4. Convert timestamp to string format: 2017-11-23 17:05:18
5. Convert datetime type to external timestamp format: 1511427918.0
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