I am joining a small table to a huge table in Spark using SparkSQL. I am having the problem that my local disks are being filled by the shuffle writes about halfway through the join.
Is there a Spark setting that I can use to spill shuffle data not to local disk but to our hdfs storage (large Isilon cluster)?
Is there some other way to make a join where the output is larger than my combined local disk storage?
I have made sure that both input tables are partitioned and that the output table is partitioned.
I do not care about performance of the query, I just want it to finish without crashing.
I am running Spark 1.5.1. I am also open to attempting using hive, but my experience tells me that this crashes even faster.
For more details on my cluster you can also see this question.