I have Apache Spark master node. When I try to iterate throught RDDs Spark hangs.

Here is an example of my code:

val conf = new SparkConf()
      .set("spark.executor.memory", "1g")

val sc = new SparkContext(conf)

val records = sc.textFile("file:///Users/barbara/projects/spark/src/main/resources/videos.csv")    



Spark log says:

16/04/05 17:32:23 INFO FileInputFormat: Total input paths to process : 1
16/04/05 17:32:23 INFO SparkContext: Starting job: collect at Application.scala:23
16/04/05 17:32:23 INFO DAGScheduler: Got job 0 (collect at Application.scala:23) with 2 output partitions
16/04/05 17:32:23 INFO DAGScheduler: Final stage: ResultStage 0 (collect at Application.scala:23)
16/04/05 17:32:23 INFO DAGScheduler: Parents of final stage: List()
16/04/05 17:32:23 INFO DAGScheduler: Missing parents: List()
16/04/05 17:32:23 INFO DAGScheduler: Submitting ResultStage 0 (file:///Users/barbara/projects/spark/src/main/resources/videos.csv MapPartitionsRDD[1] at textFile at Application.scala:19), which has no missing parents
16/04/05 17:32:23 INFO MemoryStore: Block broadcast_1 stored as values in memory (estimated size 3.0 KB, free 120.5 KB)
16/04/05 17:32:23 INFO MemoryStore: Block broadcast_1_piece0 stored as bytes in memory (estimated size 1811.0 B, free 122.3 KB)
16/04/05 17:32:23 INFO BlockManagerInfo: Added broadcast_1_piece0 in memory on (size: 1811.0 B, free: 2.4 GB)
16/04/05 17:32:23 INFO SparkContext: Created broadcast 1 from broadcast at DAGScheduler.scala:1006
16/04/05 17:32:23 INFO DAGScheduler: Submitting 2 missing tasks from ResultStage 0 (file:///Users/barbara/projects/spark/src/main/resources/videos.csv MapPartitionsRDD[1] at textFile at Application.scala:19)
16/04/05 17:32:23 INFO TaskSchedulerImpl: Adding task set 0.0 with 2 tasks

I see only a "Start" message. Seems Spark do nothing to read RDDs. Any ideas how to fix it?


The data I want to read:

  • If I use records.foreach(println) Spark hangs anyway. I don't think that data is huge (see my update). – barbara Apr 5 '16 at 14:43
  • It is small, just a few lines. – barbara Apr 5 '16 at 14:45
  • @AlbertoBonsanto, for a 3 line file? It's already set to 1Gb – The Archetypal Paul Apr 5 '16 at 14:51
  • @AlbertoBonsanto, i'm not the OP :) But running it locally is a good idea. – The Archetypal Paul Apr 5 '16 at 14:52
  • 1
    @barbara, no, it's not according to your example: .set("spark.executor.memory", "1g") so if that's not the code you're running, can you please edit your question to the exact code that shows the problem? Also, please do try running it locally – The Archetypal Paul Apr 5 '16 at 16:04

If Spark hands on such a small dataset I would first look for:

  • Am I trying to connect to a cluster that doesn't respond/exists? If I am trying to connect to a running cluster, I would first try to run the same code locally setMaster("local[*]"). If this works, I would know that there is something going on with the "master" I try to connect to.

  • Am I asking for more resources that what the cluster has to offer? For example, if the cluster manages 2G and I ask for a 3GB executor, my application will never get schedule and it will be in the job queue forever.

Specific to the comments above. If you started your cluster by sbin/start-master.sh you will NOT get a running cluster. At the very minimum you need a master and a worker (for standalone). You should use the start-all.sh script. I recommend a bit more homework and follow a tutorial.

  • With setMaster("local[*]") it works fine. – barbara Apr 5 '16 at 22:20
  • This tells me that it hands on connecting with the "remote" cluster. Note that "local" runs everything on a single JVM, so there is not "connecting" going on. If you specify a different master, you need to make sure that the server is fully operational. Can you attach a screenshot of your Spark UI? – marios Apr 5 '16 at 22:44
  • Hmm... now it works fine. I added to SparkConf a path to my fat jar: setJars(Seq("Users/barbara/projects/spark/target/scala-2.10/learning-spark-assembly-0.0.1.jar")) – barbara Apr 6 '16 at 9:27

Use this instead:

val bufferedSource = io.Source.fromFile("/path/filename.csv")

    for (line <- bufferedSource.getLines) {

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