32

I have a DataFrame with Timestamp column, which i need to convert as Date format.

Is there any Spark SQL functions available for this?

5 Answers 5

70

You can cast the column to date:

Scala:

import org.apache.spark.sql.types.DateType

val newDF = df.withColumn("dateColumn", df("timestampColumn").cast(DateType))

Pyspark:

df = df.withColumn('dateColumn', df['timestampColumn'].cast('date'))
6
  • 5
    This isn't Spark SQL.
    – dslack
    Oct 12, 2017 at 4:36
  • 7
    @dslack This solution uses functions available as part of the Spark SQL package, but it doesn't use the SQL language, instead it uses the robust DataFrame API, with SQL-like functions, instead of using less reliable strings with actual SQL queries. Oct 12, 2017 at 8:45
  • What is less reliable about SQL queries?
    – dslack
    Nov 5, 2017 at 3:31
  • @dslack well, it all depends on the application. In general, if you goal is to produce a reliable and testable stable codebase, query strings are not very recommended, because they are harder to change, it's easier to make simple mistakes and it's less modularizable. Nov 5, 2017 at 8:56
  • Need help. reading Data from the database via jdbc. Oracle table has 15-DEC-2016 as a field with DATE datatype. Dataframe.printSchema() shows Timestamp. but when i print it, it shows all nulls. Jan 26, 2018 at 15:09
21

In SparkSQL:

SELECT
  CAST(the_ts AS DATE) AS the_date
FROM the_table
6

Imagine the following input:

val dataIn = spark.createDataFrame(Seq(
        (1, "some data"),
        (2, "more data")))
    .toDF("id", "stuff")
    .withColumn("ts", current_timestamp())

dataIn.printSchema
root
 |-- id: integer (nullable = false)
 |-- stuff: string (nullable = true)
 |-- ts: timestamp (nullable = false)

You can use the to_date function:

val dataOut = dataIn.withColumn("date", to_date($"ts"))

dataOut.printSchema
root
 |-- id: integer (nullable = false)
 |-- stuff: string (nullable = true)
 |-- ts: timestamp (nullable = false)
 |-- date: date (nullable = false)

dataOut.show(false)
+---+---------+-----------------------+----------+
|id |stuff    |ts                     |date      |
+---+---------+-----------------------+----------+
|1  |some data|2017-11-21 16:37:15.828|2017-11-21|
|2  |more data|2017-11-21 16:37:15.828|2017-11-21|
+---+---------+-----------------------+----------+

I would recommend preferring these methods over casting and plain SQL.

4

For Spark 2.4+,

import spark.implicits._
val newDF = df.withColumn("dateColumn", $"timestampColumn".cast(DateType))    

OR

val newDF = df.withColumn("dateColumn", col("timestampColumn").cast(DateType))
0

Best thing to use..tried and tested -

df_join_result.withColumn('order_date', df_join_result['order_date'].cast('date'))

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