I'm trying to run two or more jobs in parallel. All jobs write append data using same output path, problem is that first job that finishes does cleanup and erases _temporary folder which causes other jobs to throw exception.
With hadoop-client 3 there is a configuration flag to disable auto cleanup of this folder mapreduce.fileoutputcommitter.cleanup.skipped.
I was able to exclude dependencies from spark-core and add new hadoop-client using maven. This run fine for master=local but I'm not convinced it is correct.
My questions are
- Is it possible to use different hadoop-client library with apache spark (e.g. hadoop-client version 3 with apache spark 2.3) and what is the correct approach?
- Is there better way to run multiple jobs in parallel writing under same path?