7

I am working on a dataset which represents a stream of events (like fired as tracking events from a website). All the events have a timestamp. One use case we often have is trying to find the 1st non null value for a given field. So for example something like gets us most the way there:

val eventsDf = spark.read.json(jsonEventsPath) 

case class ProjectedFields(visitId: String, userId: Int, timestamp: Long ... )

val projectedEventsDs = eventsDf.select(
    eventsDf("message.visit.id").alias("visitId"),
    eventsDf("message.property.user_id").alias("userId"),
    eventsDf("message.property.timestamp"),

    ...

).as[ProjectedFields]

projectedEventsDs.groupBy($"visitId").agg(first($"userId", true))

The problem with the above code is that the order of the data being fed into that first aggregation function is not guaranteed. I would like it to be sorted by timestamp to ensure that it is the 1st non null userId by timestamp rather than any random non null userId.

Is there a way to define the sorting within a grouping?

Using Spark 2.10


BTW, the way suggested for Spark 2.10 in SPARK DataFrame: select the first row of each group is to do ordering before the grouping -- that doesn't work. For example the following code:

case class OrderedKeyValue(key: String, value: String, ordering: Int)
val ds = Seq(
  OrderedKeyValue("a", null, 1), 
  OrderedKeyValue("a", null, 2), 
  OrderedKeyValue("a", "x", 3), 
  OrderedKeyValue("a", "y", 4), 
  OrderedKeyValue("a", null, 5)
).toDS()

ds.orderBy("ordering").groupBy("key").agg(first("value", true)).collect()

Will sometimes return Array([a,y]) and sometimes Array([a,x])

6

Use my beloved windows (...and experience how much simpler your life becomes !)

import org.apache.spark.sql.expressions.Window
val byKeyOrderByOrdering = Window
  .partitionBy("key")
  .orderBy("ordering")
  .rangeBetween(Window.unboundedPreceding, Window.unboundedFollowing)

import org.apache.spark.sql.functions.first
val firsts = ds.withColumn("first",
  first("value", ignoreNulls = true) over byKeyOrderByOrdering)

scala> firsts.show
+---+-----+--------+-----+
|key|value|ordering|first|
+---+-----+--------+-----+
|  a| null|       1|    x|
|  a| null|       2|    x|
|  a|    x|       3|    x|
|  a|    y|       4|    x|
|  a| null|       5|    x|
+---+-----+--------+-----+

NOTE: Somehow, Spark 2.2.0-SNAPSHOT (built today) could not give me the correct answer with no rangeBetween which I thought should've been the default unbounded range.

| improve this answer | |
  • hmm -- so considering that the final result i want is something like ["a", "x"], does that essentially mean that SPARK will plan two reduce steps? – hiroprotagonist Mar 26 '17 at 22:41
  • "Reduce steps"? What do you think they they were? – Jacek Laskowski Mar 27 '17 at 6:57
  • yea i guess i am confused what would happen hood w/ the introduction of the window function. because its associative, the first function could reduce down the data in the nodes before sending to the driver for the final aggregation ( i hope!). a secondary sort over the whole key space though -- could it still do that? – hiroprotagonist Mar 27 '17 at 19:09
  • @Soumyajit Please ask a separate question with more details to explain your requirements. Thanks. – Jacek Laskowski Aug 27 at 21:15

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.