I am trying to write code to convert date-time columns date and last_updated_date which are actually unix times cast as doubles into "mm-dd-yyyy" format for display. How do I do this ?

import org.joda.time._
import scala.tools._
import org.joda.time.format.DateTimeFormat._
import java.text.SimpleDateFormat
import org.apache.spark.sql.functions.{unix_timestamp, to_date}
root
 |-- date: double (nullable = false)
 |-- last_updated_date: double (nullable = false)
 |-- Percent_Used: double (nullable = false)

+------------+---------------------+------------+
|        date|    last_updated_date|Percent_Used|
+------------+---------------------+------------+
| 1.453923E12|        1.47080394E12| 1.948327124|
|1.4539233E12|        1.47080394E12| 2.019636442|
|1.4539236E12|        1.47080394E12| 1.995299371|
+------------+---------------------+------------+

Cast to timestamp:

df.select(col("date").cast("timestamp"));
  • Hmm i think there is some issue with this since date is "long" and that is causing the dates to go out of whack when doing this directly – Adurthi Ashwin Swarup Aug 29 '16 at 22:37

Convert it to a timestamp using from_unixtime:

df.select(from_unixtime("date").as("date"))

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