0

I am using spark-jobserver-0.6.2-spark-1.6.1

(1) export OBSERVER_CONFIG = /custom-spark-jobserver-config.yml

(2)./server_start.sh

Execution of the above start shell file returns without error. However, it created a pid file: spark-jobserver.pid

When I cat spark-jobserver.pid, the pid file shows pid=126633

However when I ran

lsof -i :9999 | grep LISTEN

It shows

java 126634 spark 17u IPv4 189013362 0t0 TCP *:distinct (LISTEN)

I deployed my scala application to job server below, it returned with OK

curl --data-binary @analytics_2.10-1.0.jar myhost:8090/jars/myservice

OK

When I ran the following curl command to test REST service deployed on job server

curl -d "{data.label.index:15, data.label.field:ROOT_CAUSE,input.stri ng:[\"tt: Getting operation. \"]}" 'myhost:8090/jobs? appName=myservice&classPath=com.test.Test&sync=true&timeout=400'

I got the following out of memory returned response

{ "status": "ERROR", "result": { "errorClass": "java.lang.RuntimeException", "cause": "unable to create new native thread", "stack": ["java.lang.Thread.start0(Native Method)", "java.lang.Thread.start(Thread.java:714)", "org.spark-project.jetty.util.thread.QueuedThreadP ool.startThread(QueuedThreadPool.java:441)", "org.spark-project.jetty.util.thread.QueuedThreadPool.doStart(QueuedThreadPool.java:108)", "org.spark-pr oject.jetty.util.component.AbstractLifeCycle.start(AbstractLifeCycle.java:64)", "org.spark-project.jetty.util.component.AggregateLifeCycle.doStart(Ag gregateLifeCycle.java:81)", "org.spark-project.jetty.server.handler.AbstractHandler.doStart(AbstractHandler.java:58)", "org.spark-project.jetty.serve r.handler.HandlerWrapper.doStart(HandlerWrapper.java:96)", "org.spark-project.jetty.server.Server.doStart(Server.java:282)", "org.spark-project.jetty .util.component.AbstractLifeCycle.start(AbstractLifeCycle.java:64)", "org.apache.spark.ui.JettyUtils$.org$apache$spark$ui$JettyUtils$$connect$1(Jetty Utils.scala:252)", "org.apache.spark.ui.JettyUtils$$anonfun$5.apply(JettyUtils.scala:262)", "org.apache.spark.ui.JettyUtils$$anonfun$5.apply(JettyUti ls.scala:262)", "org.apache.spark.util.Utils$$anonfun$startServiceOnPort$1.apply$mcVI$sp(Utils.scala:1988)", "scala.collection.immutable.Range.foreac h$mVc$sp(Range.scala:141)", "org.apache.spark.util.Utils$.startServiceOnPort(Utils.scala:1979)", "org.apache.spark.ui.JettyUtils$.startJettyServer(Je ttyUtils.scala:262)", "org.apache.spark.ui.WebUI.bind(WebUI.scala:137)", "org.apache.spark.SparkContext$$anonfun$13.apply(SparkContext.scala:481)", " org.apache.spark.SparkContext$$anonfun$13.apply(SparkContext.scala:481)", "scala.Option.foreach(Option.scala:236)", "org.apache.spark.SparkContext.(SparkContext.scala:481)", "spark.jobserver.context.DefaultSparkContextFactory$$anon$1.(SparkContextFactory.scala:53)", "spark.jobserver.co ntext.DefaultSparkContextFactory.makeContext(SparkContextFactory.scala:53)", "spark.jobserver.context.DefaultSparkContextFactory.makeContext(SparkCon textFactory.scala:48)", "spark.jobserver.context.SparkContextFactory$class.makeContext(SparkContextFactory.scala:37)", "spark.jobserver.context.Defau ltSparkContextFactory.makeContext(SparkContextFactory.scala:48)", "spark.jobserver.JobManagerActor.createContextFromConfig(JobManagerActor.scala:378) ", "spark.jobserver.JobManagerActor$$anonfun$wrappedReceive$1.applyOrElse(JobManagerActor.scala:122)", "scala.runtime.AbstractPartialFunction$mcVL$sp .apply$mcVL$sp(AbstractPartialFunction.scala:33)", "scala.runtime.AbstractPartialFunction$mcVL$sp.apply(AbstractPartialFunction.scala:33)", "scala.ru ntime.AbstractPartialFunction$mcVL$sp.apply(AbstractPartialFunction.scala:25)", "ooyala.common.akka.ActorStack$$anonfun$receive$1.applyOrElse(ActorSt ack.scala:33)", "scala.runtime.AbstractPartialFunction$mcVL$sp.apply$mcVL$sp(AbstractPartialFunction.scala:33)", "scala.runtime.AbstractPartialFuncti on$mcVL$sp.apply(AbstractPartialFunction.scala:33)", "scala.runtime.AbstractPartialFunction$mcVL$sp.apply(AbstractPartialFunction.scala:25)", "ooyala .common.akka.Slf4jLogging$$anonfun$receive$1$$anonfun$applyOrElse$1.apply$mcV$sp(Slf4jLogging.scala:26)", "ooyala.common.akka.Slf4jLogging$class.ooya la$common$akka$Slf4jLogging$$withAkkaSourceLogging(Slf4jLogging.scala:35)", "ooyala.common.akka.Slf4jLogging$$anonfun$receive$1.applyOrElse(Slf4jLogg ing.scala:25)", "scala.runtime.AbstractPartialFunction$mcVL$sp.apply$mcVL$sp(AbstractPartialFunction.scala:33)", "scala.runtime.AbstractPartialFuncti on$mcVL$sp.apply(AbstractPartialFunction.scala:33)", "scala.runtime.AbstractPartialFunction$mcVL$sp.apply(AbstractPartialFunction.scala:25)", "ooyala .common.akka.ActorMetrics$$anonfun$receive$1.applyOrElse(ActorMetrics.scala:24)", "akka.actor.Actor$class.aroundReceive(Actor.scala:467)", "ooyala.co mmon.akka.InstrumentedActor.aroundReceive(InstrumentedActor.scala:8)", "akka.actor.ActorCell.receiveMessage(ActorCell.scala:516)", "akka.actor.ActorC ell.invoke(ActorCell.scala:487)", "akka.dispatch.Mailbox.processMailbox(Mailbox.scala:238)", "akka.dispatch.Mailbox.run(Mailbox.scala:220)", "akka.di spatch.ForkJoinExecutorConfigurator$AkkaForkJoinTask.exec(AbstractDispatcher.scala:397)", "scala.concurrent.forkjoin.ForkJoinTask.doExec(ForkJoinTask .java:260)", "scala.concurrent.forkjoin.ForkJoinPool$WorkQueue.runTask(ForkJoinPool.java:1339)", "scala.concurrent.forkjoin.ForkJoinPool.runWorker(Fo rkJoinPool.java:1979)", "scala.concurrent.forkjoin.ForkJoinWorkerThread.run(ForkJoinWorkerThread.java:107)"], "causingClass": "java.lang.OutOfMemoryError", "message": "java.lang.OutOfMemoryError: unable to create new native thread"

My question

(1) Why processID is different as shown in pid file ? 126633 vs 126634 ?

(2) Why spark-jobserver.pid is created ? Does this mean spark job server is not started properly ?

(3) How to start job server properly ?

(4) What causes out of memory response ? How to resolve it ? Is this because I did not set Heap Size or memory correctly ? How to resolve it ?

0

1 Answer 1

0
  1. Jobserver binds to 8090 and not to 9999, may be you should look for that process id.

  2. Spark jobserver pid is created for tracking purpose. It does not mean that job server is not started properly.

  3. You are starting spark-jobserver properly.

  4. May be try increasing value of JOBSERVER_MEMORY, default is 1G. Did you check on Spark UI whether application started properly?

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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