I have code that runs well on a small dataset (few million rows), but fails on a larger dataset (> 1 billion rows). The error it throws is:
Remote RPC client disassociated. Likely due to containers exceeding thresholds, or network issues. Check driver logs for WARN messages.
I have gone over the Executor and Driver logs with a fine tooth comb. There is nothing in there to suggest what is going on differently between the two sized datasets. The code I am using is:
spark_df = spark_df.repartition([KEY COLUMNS])
rdd = spark_df.rdd.mapPartitions(lambda x: process_partition(x))
final_df = spark.createDataFrame(rdd, schema=schema, verifySchema=True)
final_df.write.format("delta").mode([MODE]).save([SAVE_LOCATION])
I have tried so many things:
- Changed the groupby to make the groups smaller
- Increased the resources of the machines in the cluster
- Commented out all but 1 of the "transformations" in the code base.
- Changed or added the following cluster configuration options:
- spark.network.timeout 10000000
- spark.executor.heartbeatInterval 10000000
- Added a timeout to the job: 10000000
Throughout it all, the error hasn't changed and the logs don't seem to contain any useful information helping me to understand what is going on.