Github user viirya commented on a diff in the pull request:

    https://github.com/apache/spark/pull/16677#discussion_r115987034
  
    --- Diff: 
sql/core/src/main/scala/org/apache/spark/sql/execution/limit.scala ---
    @@ -90,25 +95,102 @@ trait BaseLimitExec extends UnaryExecNode with 
CodegenSupport {
     }
     
     /**
    - * Take the first `limit` elements of each child partition, but do not 
collect or shuffle them.
    + * Take the `limit` elements of the child output.
      */
    -case class LocalLimitExec(limit: Int, child: SparkPlan) extends 
BaseLimitExec {
    +case class GlobalLimitExec(limit: Int, child: SparkPlan) extends 
UnaryExecNode {
     
    -  override def outputOrdering: Seq[SortOrder] = child.outputOrdering
    +  override def output: Seq[Attribute] = child.output
     
       override def outputPartitioning: Partitioning = child.outputPartitioning
    -}
     
    -/**
    - * Take the first `limit` elements of the child's single output partition.
    - */
    -case class GlobalLimitExec(limit: Int, child: SparkPlan) extends 
BaseLimitExec {
    +  override def outputOrdering: Seq[SortOrder] = child.outputOrdering
    +
    +  private val serializer: Serializer = new 
UnsafeRowSerializer(child.output.size)
    +
    +  protected override def doExecute(): RDD[InternalRow] = {
    +    val childRDD = child.execute()
    +    val partitioner = LocalPartitioning(child.outputPartitioning,
    +      childRDD.getNumPartitions)
    +    val shuffleDependency = ShuffleExchange.prepareShuffleDependency(
    +      childRDD, child.output, partitioner, serializer)
    +    val numberOfOutput: Seq[Long] = if 
(shuffleDependency.rdd.getNumPartitions != 0) {
    +      // submitMapStage does not accept RDD with 0 partition.
    +      // So, we will not submit this dependency.
    +      val submittedStageFuture = 
sparkContext.submitMapStage(shuffleDependency)
    +      submittedStageFuture.get().numberOfOutput.toSeq
    +    } else {
    +      Nil
    +    }
     
    -  override def requiredChildDistribution: List[Distribution] = AllTuples 
:: Nil
    +    // Try to keep child plan's original data parallelism or not. It is 
enabled by default.
    +    val respectChildParallelism = sqlContext.conf.enableParallelGlobalLimit
     
    -  override def outputPartitioning: Partitioning = child.outputPartitioning
    +    val shuffled = new ShuffledRowRDD(shuffleDependency)
     
    -  override def outputOrdering: Seq[SortOrder] = child.outputOrdering
    +    val sumOfOutput = numberOfOutput.sum
    +    if (sumOfOutput <= limit) {
    +      shuffled
    +    } else if (!respectChildParallelism) {
    +      // This is mainly for tests.
    +      // We take the rows of each partition until we reach the required 
limit number.
    +      var numTakenRow = 0
    +      val takeAmounts = new mutable.HashMap[Int, Int]()
    +      numberOfOutput.zipWithIndex.foreach { case (num, index) =>
    +        if (numTakenRow + num < limit) {
    +          numTakenRow += num.toInt
    +          takeAmounts += ((index, num.toInt))
    +        } else {
    +          val toTake = limit - numTakenRow
    +          numTakenRow += toTake
    +          takeAmounts += ((index, toTake))
    +        }
    +      }
    +      val broadMap = sparkContext.broadcast(takeAmounts)
    +      shuffled.mapPartitionsWithIndexInternal { case (index, iter) =>
    +        broadMap.value.get(index).map { size =>
    +          iter.take(size)
    +        }.get
    +      }
    +    } else {
    +      // We try to distribute the required limit number of rows across all 
child rdd's partitions.
    --- End diff --
    
    Yes. Thanks. I'll update this after fixing few places and renaming few 
variables.


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