I have a spark cluster with 8 machines, 256 cores, 180Gb ram per machine. I have started 32 executors, with 32 cores and 40Gb ram each.
I am trying to optimize a complex application and I notice that a lot of the stages have 200 tasks. This seems sub-optimal in my case. I have tried setting the parameter spark.default.parallelism to 1024 but it appears to have no effect.
I run spark 2.0.1, in stand alone mode, my driver is hosted on a workstation running inside a pycharm debug session. I have set spark.default.parallelism in:
- spark-defaults.conf on workstation
- spark-defaults.conf on the cluster spark/conf directory
- in the call to build the SparkSession on my driver
This is that call
spark = SparkSession \
.builder \
.master("spark://stcpgrnlp06p.options-it.com:7087") \
.appName(__SPARK_APP_NAME__) \
.config("spark.default.parallelism",numOfCores) \
.getOrCreate()
I have restarted the executors since making these changes.
If I understood this correctly, having only 200 task in a stage means that my cluster is not being fully utilized?
When I watch the machines using htop I can see that I'm not getting full CPU usage. Maybe on one machine at one time, but not on all of them.
Do I need to call .rdd.repartition(1024) on my dataframes? Seems like a burden to do that everywhere.