I've just finally managed to set up my stack to use RStudio to connect to a standalone spark cluster (with file storage in CassandraDB) via sparklyR.

The only issue I still haven't been able to resolve is how to get my sparklyR connection to utilise all the available worker nodes on cluster (there are 6 in total). Every time I connect, the Executor Summary page shows only 2 workers are being utilised by the sparklyR connection (with 1 executor on each node).

I've tried playing around with the config.yml file for the spark_connect call, including setting spark.executor.instances: 6 and spark.num.executors: 6, but that doesn't make a difference. Is there another setting I can use to get sparklyR to use all the nodes? Can I somehow pass a list of all the worker IP addresses to spark_connect so that it connects to them all?

My setup is as follows: RStudio: 1.0.136, sparklyR: 0.5.3-9000, Spark version (on cluster & locally): 2.0.0.

  • Could you share your config.yml file? – Jaime Caffarel Feb 8 '17 at 11:16
  • sure, here are the key settings (sorry, not sure how to format this within a comment): sparklyr.sanitize.column.names: TRUE sparklyr.cores.local: 3 sparklyr.shell.driver-memory: "8G" spark.executor.memory: "8G" spark.executor.cores: 5 spark.cores.max: 12 spark.memory.fraction: 0.75 spark.memory.storageFraction: 0.5 spark.serializer: org.apache.spark.serializer.KryoSerializer – renegademonkey Feb 9 '17 at 11:41
  • I've also tried adding spark.executor.instances: 6, spark.num.executors: 6, but it makes no difference. – renegademonkey Feb 9 '17 at 11:47
  • Could you try adding the following two properties? spark.dynamicAllocation.enabled: true and spark.shuffle.service.enabled: true – Jaime Caffarel Feb 9 '17 at 11:52
  • if i add that, I have no cores and no nodes allocated to my sparklyr job :-( – renegademonkey Feb 9 '17 at 11:56

Finally solved it! It was so simple and obvious I cannot believe I missed it.

The config (spark-defaults.conf) file had the settings:

spark.executor.cores: 5
spark.cores.max: 12

Which of course means it could not start more than 2 (5-core) executors, since the max number of cores the entire app was allowed was 12.

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