I have an 8 node cluster and I load two dataframes from a jdbc source like this:
positionsDf = spark.read.jdbc( url=connStr, table=positionsSQL, column="PositionDate", lowerBound=41275, upperBound=42736, numPartitions=128*3, properties=props ) positionsDF.cache() varDatesDf = spark.read.jdbc( url=connStr, table=datesSQL, column="PositionDate", lowerBound=41275, upperBound=42736, numPartitions=128 * 3, properties=props ) varDatesDF.cache() res = varDatesDf.join(positionsDf, on='PositionDate').count()
I can some from the storage tab of the application UI that the partitions are evenly distributed across the cluster nodes. However, what I can't tell is how they are distributed across the nodes. Ideally, both dataframes would be distributed in such a way that the joins are always local to the node, or even better local to the executors.
In other words, will the positionsDF dataframe partition that contains records with PositionDate="01 Jan 2016", be located in the same executor memory space as the varDatesDf dataframe partition that contains records with PositionDate="01 Jan 2016"? Will they be on the same node? Or is it just random?
Is there any way to see what partitions are on which node?
Does spark distribute the partitions created using a column key like this in a deterministic way across nodes? Will they always be node/executor local?