So, I've been trying to get off of the ground running Spark-scala. I've written a simple test program, which just extends the SparkPi example a bit :

def main(args: Array[String]): Unit = {
test()
}

 def calcPi(spark: SparkContext, args: Array[String], numSlices: Long): Array[Double] = {
val start = System.nanoTime()
val slices = if (args.length > 0) args(0).toInt else 2
val n = math.min(numSlices * slices, Int.MaxValue).toInt // avoid overflow
val count = spark.parallelize(1 until n, slices).map { i =>
    val x = random * 2 - 1
    val y = random * 2 - 1
    if (x*x + y*y < 1) 1 else 0
  }.reduce(_ + _)
val piVal = 4.0 * count / n
println("Pi is roughly " + piVal)
spark.stop()
val end = System.nanoTime()
return Array(piVal, end - start, (piVal - Math.PI)/Math.PI)
}


def test(): Unit ={
val conf = new SparkConf().setAppName("Pi Test")
conf.setSparkHome("/usr/local/spark")
conf.setMaster("spark://<URL_OF_SPARK_CLUSTER>:7077")
conf.set("spark.executor.memory", "512m")
conf.set("spark.cores.max", "1")
conf.set("spark.blockManager.port", "33291")
conf.set("spark.executor.port", "33292")
conf.set("spark.broadcast.port", "33293")
conf.set("spark.fileserver.port", "33294")
conf.set("spark.driver.port", "33296")
conf.set("spark.replClassServer.port", "33297")
val sc = new SparkContext(conf)

val pi = calcPi(sc, Array(), 1000)
for(item <- pi) {
  println(item)
}
}

I then made sure that ports 33291-33300 are open on my machine.

when I run the program, it succssfully hits the spark cluster, and seems to assign cores:

enter image description here

But when the program gets the point where it's actually running the hadoop job, the application logs say:

15/12/07 11:50:21 INFO DAGScheduler: Submitting ResultStage 0 (MapPartitionsRDD[1] at map at BotDetector.scala:49), which has no missing parents
15/12/07 11:50:21 INFO MemoryStore: ensureFreeSpace(1840) called with curMem=0, maxMem=2061647216
15/12/07 11:50:21 INFO MemoryStore: Block broadcast_0 stored as values in memory (estimated size 1840.0 B, free 1966.1 MB)
15/12/07 11:50:21 INFO MemoryStore: ensureFreeSpace(1194) called with curMem=1840, maxMem=2061647216
15/12/07 11:50:21 INFO MemoryStore: Block broadcast_0_piece0 stored as bytes in memory (estimated size 1194.0 B, free 1966.1 MB)
15/12/07 11:50:21 INFO BlockManagerInfo: Added broadcast_0_piece0 in memory on 192.168.5.106:33291 (size: 1194.0 B, free: 1966.1 MB)
15/12/07 11:50:21 INFO SparkContext: Created broadcast 0 from broadcast at DAGScheduler.scala:874
15/12/07 11:50:21 INFO DAGScheduler: Submitting 2 missing tasks from ResultStage 0 (MapPartitionsRDD[1] at map at BotDetector.scala:49)
15/12/07 11:50:21 INFO TaskSchedulerImpl: Adding task set 0.0 with 2 tasks
15/12/07 11:50:36 WARN TaskSchedulerImpl: Initial job has not accepted any resources; check your cluster UI to ensure that workers are registered and have sufficient resources
15/12/07 11:50:51 WARN TaskSchedulerImpl: Initial job has not accepted any resources; check your cluster UI to ensure that workers are registered and have sufficient resources
15/12/07 11:51:06 WARN TaskSchedulerImpl: Initial job has not accepted any resources; check your cluster UI to ensure that workers are registered and have sufficient resources
15/12/07 11:51:21 WARN TaskSchedulerImpl: Initial job has not accepted any resources; check your cluster UI to ensure that workers are registered and have sufficient resources
15/12/07 11:51:36 WARN TaskSchedulerImpl: Initial job has not accepted any resources; check your cluster UI to ensure that workers are registered and have sufficient resources
15/12/07 11:51:51 WARN TaskSchedulerImpl: Initial job has not accepted any resources; check your cluster UI to ensure that workers are registered and have sufficient resources
15/12/07 11:52:06 WARN TaskSchedulerImpl: Initial job has not accepted any resources; check your cluster UI to ensure that workers are registered and have sufficient resources
15/12/07 11:52:21 WARN TaskSchedulerImpl: Initial job has not accepted any resources; check your cluster UI to ensure that workers are registered and have sufficient resources
15/12/07 11:52:22 INFO AppClient$ClientActor: Executor updated: app-20151207175020-0003/0 is now EXITED (Command exited with code 1)
15/12/07 11:52:22 INFO SparkDeploySchedulerBackend: Executor app-20151207175020-0003/0 removed: Command exited with code 1
15/12/07 11:52:22 ERROR SparkDeploySchedulerBackend: Asked to remove non-existent executor 0
15/12/07 11:52:22 INFO AppClient$ClientActor: Executor added: app-20151207175020-0003/1 on worker-20151207173821-10.240.0.7-33295 (10.240.0.7:33295) with 5 cores
15/12/07 11:52:22 INFO SparkDeploySchedulerBackend: Granted executor ID app-20151207175020-0003/1 on hostPort 10.240.0.7:33295 with 5 cores, 512.0 MB RAM
15/12/07 11:52:22 INFO AppClient$ClientActor: Executor updated: app-20151207175020-0003/1 is now LOADING
15/12/07 11:52:23 INFO AppClient$ClientActor: Executor updated: app-20151207175020-0003/1 is now RUNNING
15/12/07 11:52:36 WARN TaskSchedulerImpl: Initial job has not accepted any resources; check your cluster UI to ensure that workers are registered and have sufficient resources

and when I go onto the remote server and look at the worker logs, they say:

SLF4J: Class path contains multiple SLF4J bindings.
SLF4J: Found binding in [jar:file:/usr/local/hadoop/share/hadoop/common/lib/slf4j-log4j12-1.7.10.jar!/org/slf4j/impl/StaticLoggerBinder.class]
SLF4J: Found binding in [jar:file:/home/hduser/apache-tez-0.7.0-src/tez-dist/target/tez-0.7.0/lib/slf4j-log4j12-1.7.5.jar!/org/slf4j/impl/StaticLoggerBinder.class]
SLF4J: See http://www.slf4j.org/codes.html#multiple_bindings for an explanation.
SLF4J: Actual binding is of type [org.slf4j.impl.Log4jLoggerFactory]
15/12/07 17:50:21 INFO executor.CoarseGrainedExecutorBackend: Registered signal handlers for [TERM, HUP, INT]
15/12/07 17:50:21 WARN util.NativeCodeLoader: Unable to load native-hadoop library for your platform... using builtin-java classes where applicable
15/12/07 17:50:21 INFO spark.SecurityManager: Changing view acls to: hduser,jschirmer
15/12/07 17:50:21 INFO spark.SecurityManager: Changing modify acls to: hduser,jschirmer
15/12/07 17:50:21 INFO spark.SecurityManager: SecurityManager: authentication disabled; ui acls disabled; users with view permissions: Set(hduser, jschirmer); users with modify permissions: Set(hduser, jschirmer)
15/12/07 17:50:22 INFO slf4j.Slf4jLogger: Slf4jLogger started
15/12/07 17:50:22 INFO Remoting: Starting remoting
15/12/07 17:50:22 INFO Remoting: Remoting started; listening on addresses :[akka.tcp://driverPropsFetcher@10.240.0.7:33292]
15/12/07 17:50:22 INFO util.Utils: Successfully started service 'driverPropsFetcher' on port 33292.
Exception in thread "main" java.lang.reflect.UndeclaredThrowableException
        at org.apache.hadoop.security.UserGroupInformation.doAs(UserGroupInformation.java:1672)
        at org.apache.spark.deploy.SparkHadoopUtil.runAsSparkUser(SparkHadoopUtil.scala:65)
        at org.apache.spark.executor.CoarseGrainedExecutorBackend$.run(CoarseGrainedExecutorBackend.scala:146)
        at org.apache.spark.executor.CoarseGrainedExecutorBackend$.main(CoarseGrainedExecutorBackend.scala:245)
        at org.apache.spark.executor.CoarseGrainedExecutorBackend.main(CoarseGrainedExecutorBackend.scala)
Caused by: java.util.concurrent.TimeoutException: Futures timed out after [120 seconds]
        at scala.concurrent.impl.Promise$DefaultPromise.ready(Promise.scala:219)
        at scala.concurrent.impl.Promise$DefaultPromise.result(Promise.scala:223)
        at scala.concurrent.Await$$anonfun$result$1.apply(package.scala:107)
        at scala.concurrent.BlockContext$DefaultBlockContext$.blockOn(BlockContext.scala:53)
        at scala.concurrent.Await$.result(package.scala:107)
        at org.apache.spark.rpc.RpcEnv.setupEndpointRefByURI(RpcEnv.scala:97)
        at org.apache.spark.executor.CoarseGrainedExecutorBackend$$anonfun$run$1.apply$mcV$sp(CoarseGrainedExecutorBackend.scala:159)
        at org.apache.spark.deploy.SparkHadoopUtil$$anon$1.run(SparkHadoopUtil.scala:66)
        at org.apache.spark.deploy.SparkHadoopUtil$$anon$1.run(SparkHadoopUtil.scala:65)
        at java.security.AccessController.doPrivileged(Native Method)
        at javax.security.auth.Subject.doAs(Subject.java:422)
        at org.apache.hadoop.security.UserGroupInformation.doAs(UserGroupInformation.java:1657)
        ... 4 more
15/12/07 17:52:22 INFO util.Utils: Shutdown hook called

I've tried setting the driver and executor ports to explicitly open ports, with the same result. It's unclear what the problem is. Does anyone have any advice?

Also, note that if I compile this exact same code to a fat jar, and copy it to the remote server, and run it through spark-submit, then it runs successfully. I do have a yarn configuration defined on my server, and I'm open to running spark-yarn, but my understanding is that this cannot be done from a remote server, since you specify master as yarn-cluster, and there's no place to put the host in the config.

  • One thing that I've noticed: the local logs are using non-public IPs, and there seems to be no way to force use of public IPs. – Jerry Schirmer Dec 4 '15 at 18:44
  • Do you have the hdfs_site.xml in spark class path? – RanP Dec 8 '15 at 13:39
  • @RanP: I copied it to my $SPARK_HOME/conf directory with the same result – Jerry Schirmer Dec 8 '15 at 17:13
  • Are your spark servers installed on the same machines as the hadoop? – RanP Dec 9 '15 at 13:34
  • Did you check if it isn't a firewall issue as in stackoverflow.com/questions/27039954/… – RanP Dec 9 '15 at 14:11

It seems you have firewall problem. First check you enabled all required port in your cluster or not then after there is some random ports in spark so you need fix those ports for your cluster then only you can use spark remotely.

  • OK... I've opened up ports 33290-33296 and added the following to my configuration: conf.set("spark.blockManager.port", "33291") conf.set("spark.executor.port", "33292") conf.set("spark.broadcast.port", "33293") conf.set("spark.fileserver.port", "33294") conf.set("spark.driver.port", "33295") error still persists. – Jerry Schirmer Dec 7 '15 at 17:24
  • According to UI worker port is not in your given IP range (33291-33300), Set this SPARK_WORKER_PORT property in your spark-env.sh file and then restart your cluster – Kaushal Dec 9 '15 at 6:30
  • No effect. The logging says that the worker is trying to attach on a port on that range, irrespectively. – Jerry Schirmer Dec 11 '15 at 16:06

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