[ https://issues.apache.org/jira/browse/SPARK-32046?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel ]
Dustin Smith updated SPARK-32046: --------------------------------- Description: If I call current_timestamp 3 times while caching the dataframe variable in order to freeze that dataframes time, the 3rd dataframe time and beyond (4th, 5th, ...) will be frozen to the 2nd dataframe's time. The 1st dataframe and the 2nd will differ in time but will become static on the 3rd usage and beyond. Additionally, caching only caused 2 dataframes to cache skipping the 3rd. However, `Seq(java.time.LocalDateTime.now.toString).toDF("datetime").cache` doesn't have this problem and all 3 dataframes cache with correct times displaying. {code:java} val df1 = spark.range(1).select(current_timestamp as "datetime").cache df1.count df1.show(false) Thread.sleep(9500) val df2 = spark.range(1).select(current_timestamp as "datetime").cache df2.count df2.show(false) Thread.sleep(9500) val df3 = spark.range(1).select(current_timestamp as "datetime").cache df3.count df3.show(false){code} was: If I call current_timestamp 3 times while caching the dataframe variable in order to freeze that dataframes time, the 3rd dataframe time and beyond (4th, 5th, ...) will be frozen to the 2nd dataframe's time. The 1st dataframe and the 2nd will differ in time but will become static on the 3rd usage and beyond. {code:java} val df1 = spark.range(1).select(current_timestamp as "datetime").cache df1.count df1.show(false) Thread.sleep(9500) val df2 = spark.range(1).select(current_timestamp as "datetime").cache df2.count df2.show(false) Thread.sleep(9500) val df3 = spark.range(1).select(current_timestamp as "datetime").cache df3.count df3.show(false){code} > current_timestamp called in a cache dataframe freezes the time for all future > calls > ----------------------------------------------------------------------------------- > > Key: SPARK-32046 > URL: https://issues.apache.org/jira/browse/SPARK-32046 > Project: Spark > Issue Type: Bug > Components: SQL > Affects Versions: 2.3.0, 2.4.4 > Reporter: Dustin Smith > Priority: Minor > > If I call current_timestamp 3 times while caching the dataframe variable in > order to freeze that dataframes time, the 3rd dataframe time and beyond (4th, > 5th, ...) will be frozen to the 2nd dataframe's time. The 1st dataframe and > the 2nd will differ in time but will become static on the 3rd usage and > beyond. > Additionally, caching only caused 2 dataframes to cache skipping the 3rd. > However, `Seq(java.time.LocalDateTime.now.toString).toDF("datetime").cache` > doesn't have this problem and all 3 dataframes cache with correct times > displaying. > > {code:java} > val df1 = spark.range(1).select(current_timestamp as "datetime").cache > df1.count > df1.show(false) > Thread.sleep(9500) > val df2 = spark.range(1).select(current_timestamp as "datetime").cache > df2.count > df2.show(false) > Thread.sleep(9500) > val df3 = spark.range(1).select(current_timestamp as "datetime").cache > df3.count > df3.show(false){code} -- This message was sent by Atlassian Jira (v8.3.4#803005) --------------------------------------------------------------------- To unsubscribe, e-mail: issues-unsubscr...@spark.apache.org For additional commands, e-mail: issues-h...@spark.apache.org