Github user rxin commented on a diff in the pull request:
https://github.com/apache/spark/pull/1498#discussion_r15567051
--- Diff: core/src/main/scala/org/apache/spark/scheduler/DAGScheduler.scala
---
@@ -691,47 +689,81 @@ class DAGScheduler(
}
}
-
/** Called when stage's parents are available and we can now do its
task. */
private def submitMissingTasks(stage: Stage, jobId: Int) {
logDebug("submitMissingTasks(" + stage + ")")
// Get our pending tasks and remember them in our pendingTasks entry
stage.pendingTasks.clear()
var tasks = ArrayBuffer[Task[_]]()
+
+ val properties = if (jobIdToActiveJob.contains(jobId)) {
+ jobIdToActiveJob(stage.jobId).properties
+ } else {
+ // this stage will be assigned to "default" pool
+ null
+ }
+
+ runningStages += stage
+ // SparkListenerStageSubmitted should be posted before testing whether
tasks are
+ // serializable. If tasks are not serializable, a
SparkListenerStageCompleted event
+ // will be posted, which should always come after a corresponding
SparkListenerStageSubmitted
+ // event.
+ listenerBus.post(SparkListenerStageSubmitted(stage.info, properties))
+
+ // TODO: Maybe we can keep the taskBinary in Stage to avoid
serializing it multiple times.
+ // Broadcasted binary for the task, used to dispatch tasks to
executors. Note that we broadcast
+ // the serialized copy of the RDD and for each task we will
deserialize it, which means each
+ // task gets a different copy of the RDD. This provides stronger
isolation between tasks that
+ // might modify state of objects referenced in their closures. This is
necessary in Hadoop
+ // where the JobConf/Configuration object is not thread-safe.
+ var taskBinary: Broadcast[Array[Byte]] = null
+ try {
+ // For ShuffleMapTask, serialize and broadcast (rdd, shuffleDep).
+ // For ResultTask, serialize and broadcast (rdd, func).
+ val taskBinaryBytes: Array[Byte] =
+ if (stage.isShuffleMap) {
+ Utils.serializeTaskClosure((stage.rdd, stage.shuffleDep.get) :
AnyRef)
+ } else {
+ Utils.serializeTaskClosure((stage.rdd,
stage.resultOfJob.get.func) : AnyRef)
+ }
+ taskBinary = sc.broadcast(taskBinaryBytes)
+ } catch {
+ // In the case of a failure during serialization, abort the stage.
+ case e: NotSerializableException =>
+ abortStage(stage, "Task not serializable: " + e.toString)
+ runningStages -= stage
+ return
+ case NonFatal(e) =>
+ abortStage(stage, s"Task serialization failed:
$e\n${e.getStackTraceString}")
+ runningStages -= stage
+ return
+ }
+
if (stage.isShuffleMap) {
for (p <- 0 until stage.numPartitions if stage.outputLocs(p) == Nil)
{
val locs = getPreferredLocs(stage.rdd, p)
- tasks += new ShuffleMapTask(stage.id, stage.rdd,
stage.shuffleDep.get, p, locs)
+ val part = stage.rdd.partitions(p)
+ tasks += new ShuffleMapTask(stage.id, taskBinary, part, locs)
}
} else {
// This is a final stage; figure out its job's missing partitions
val job = stage.resultOfJob.get
for (id <- 0 until job.numPartitions if !job.finished(id)) {
- val partition = job.partitions(id)
- val locs = getPreferredLocs(stage.rdd, partition)
- tasks += new ResultTask(stage.id, stage.rdd, job.func, partition,
locs, id)
+ val p: Int = job.partitions(id)
+ val part = stage.rdd.partitions(p)
+ val locs = getPreferredLocs(stage.rdd, p)
+ tasks += new ResultTask(stage.id, taskBinary, part, locs, id)
}
}
- val properties = if (jobIdToActiveJob.contains(jobId)) {
- jobIdToActiveJob(stage.jobId).properties
- } else {
- // this stage will be assigned to "default" pool
- null
- }
-
if (tasks.size > 0) {
- runningStages += stage
- // SparkListenerStageSubmitted should be posted before testing
whether tasks are
- // serializable. If tasks are not serializable, a
SparkListenerStageCompleted event
- // will be posted, which should always come after a corresponding
SparkListenerStageSubmitted
- // event.
- listenerBus.post(SparkListenerStageSubmitted(stage.info, properties))
-
// Preemptively serialize a task to make sure it can be serialized.
We are catching this
// exception here because it would be fairly hard to catch the
non-serializable exception
// down the road, where we have several different implementations
for local scheduler and
// cluster schedulers.
+ //
+ // We've already serialized RDDs and closures in taskBinary, but
here we check for all other
+ // objects such as Partition.
try {
SparkEnv.get.closureSerializer.newInstance().serialize(tasks.head)
--- End diff --
actually remove the compression part
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