Github user andrewor14 commented on a diff in the pull request:

    https://github.com/apache/spark/pull/7770#discussion_r36049008
  
    --- Diff: core/src/main/scala/org/apache/spark/ui/ToolTips.scala ---
    @@ -62,6 +62,13 @@ private[spark] object ToolTips {
         """Time that the executor spent paused for Java garbage collection 
while the task was
            running."""
     
    +  val PEAK_EXECUTION_MEMORY =
    +    """Execution memory refers to the memory used by internal data 
structures created during
    +       shuffles, aggregations and joins when Tungsten is enabled. The 
value of this accumulator
    +       should be approximately the sum of the peak sizes across all such 
data structures created
    +       in this task. For SQL jobs, this only tracks all unsafe operators, 
broadcast joins, and
    +       external sort."""
    --- End diff --
    
    There is not a great name for "aggregation + shuffle + join". Elsewhere in 
Spark we actually incorrectly use "spark.shuffle.memoryFraction" for 
non-shuffle operations, simply because there is not a more general category. 
I'm not a die-hard fan of "execution memory" either, but it's the best I can 
come up with.


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