Recently we migrated from "EMR on HDFS" --> "EMR on S3" (EMRFS with consistent view enabled) and we realized the Spark 'SaveAsTable' (parquet format) writes to S3 were ~4x slower as compared to HDFS but we found a workaround of using the DirectParquetOutputCommitter - w/ Spark 1.6.
Reason for S3 slowness - We had to pay the so called Parquet tax- where the default output committer writes to a temporary table and renames it later where the rename operation in S3 is very expensive
Also we do understand the risk of using 'DirectParquetOutputCommitter' which is possibility of data corruption w/ speculative tasks enabled.
Now w/ Spark 2.0 this class has been deprecated and we're wondering what options do we have on the table so that we don't get to bear the ~4x slower writes when we upgrade to Spark 2.0. Any Thoughts/suggestions/recommendations would be highly appreciated.
One workaround that we can think of is - Save on HDFS and then copy it to S3 via s3DistCp (any thoughts on how can this be done in sane way as our Hive metadata-store points to S3?)
Also looks like NetFlix has fixed this -, any idea on when they're planning to open source it?