pyspark.sql.functions.make_timestamp_ltz¶
-
pyspark.sql.functions.
make_timestamp_ltz
(years: ColumnOrName, months: ColumnOrName, days: ColumnOrName, hours: ColumnOrName, mins: ColumnOrName, secs: ColumnOrName, timezone: Optional[ColumnOrName] = None) → pyspark.sql.column.Column[source]¶ Create the current timestamp with local time zone from years, months, days, hours, mins, secs and timezone fields. If the configuration spark.sql.ansi.enabled is false, the function returns NULL on invalid inputs. Otherwise, it will throw an error instead.
New in version 3.5.0.
- Parameters
- years
Column
or str the year to represent, from 1 to 9999
- months
Column
or str the month-of-year to represent, from 1 (January) to 12 (December)
- days
Column
or str the day-of-month to represent, from 1 to 31
- hours
Column
or str the hour-of-day to represent, from 0 to 23
- mins
Column
or str the minute-of-hour to represent, from 0 to 59
- secs
Column
or str the second-of-minute and its micro-fraction to represent, from 0 to 60. The value can be either an integer like 13 , or a fraction like 13.123. If the sec argument equals to 60, the seconds field is set to 0 and 1 minute is added to the final timestamp.
- timezone
Column
or str the time zone identifier. For example, CET, UTC and etc.
- years
Examples
>>> import pyspark.sql.functions as sf >>> spark.conf.set("spark.sql.session.timeZone", "America/Los_Angeles") >>> df = spark.createDataFrame([[2014, 12, 28, 6, 30, 45.887, 'CET']], ... ["year", "month", "day", "hour", "min", "sec", "timezone"]) >>> df.select(sf.make_timestamp_ltz( ... df.year, df.month, df.day, df.hour, df.min, df.sec, df.timezone) ... ).show(truncate=False) +--------------------------------------------------------------+ |make_timestamp_ltz(year, month, day, hour, min, sec, timezone)| +--------------------------------------------------------------+ |2014-12-27 21:30:45.887 | +--------------------------------------------------------------+
>>> df.select(sf.make_timestamp_ltz( ... df.year, df.month, df.day, df.hour, df.min, df.sec) ... ).show(truncate=False) +----------------------------------------------------+ |make_timestamp_ltz(year, month, day, hour, min, sec)| +----------------------------------------------------+ |2014-12-28 06:30:45.887 | +----------------------------------------------------+ >>> spark.conf.unset("spark.sql.session.timeZone")