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https://issues.apache.org/jira/browse/SPARK-22486?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=16816771#comment-16816771
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Jackson Westeen commented on SPARK-22486:
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I have a use case for this, [~c...@koeninger.org] if you'd still consider
adding support for commitSync.
I'm trying to achieve "effectively once" semantics with Spark Streaming for
batch writes to S3. Only way to do this is to partitionBy(startOffsets) in some
way, such that re-writes on failure/retry are idempotent; they overwrite the
past batch if failure occurred before commitAsync was successful.
Here's my example:
{code:java}
stream.foreachRDD((rdd: ConsumerRecord[String, Array[Byte]]) => {
val offsetRanges = rdd.asInstanceOf[HasOffsetRanges].offsetRanges
// make dataset, with this batch's offsets included
spark
.createDataset(inputRdd)
.map(record => from_json(new String(record.value))) // just for example
.write
.mode(SaveMode.Overwrite)
.option("partitionOverwriteMode", "dynamic")
.withColumn("dateKey", from_unixtime($"from_json.timestamp"), "MMDD"))
.withColumn("startOffsets",
lit(offsetRanges.sortBy(_.partition).map(_.fromOffset).mkString("_")) )
.partitionBy("dateKey", "startOffsets")
.parquet("s3://mybucket/kafka-parquet")
stream.asInstanceOf[CanCommitOffsets].commitAsync...
})
{code}
This almost works. The only issue is, I can still end up with
duplicate/overlapping data if:
# an initial write to S3 succeeds (batch A)
# commitAsync takes a long time, eventually fails, *but the job carries on to
successfully write another batch in the meantime (batch B)*
# job fails for any reason, we start back at the last committed offsets,
however now with more data in Kafka to process than before... (batch A' which
includes A, B, ...)
# we successfully overwrite the initial batch by startOffsets with (batch A')
and progress as normal. No data is lost, however (batch B) is leftover in S3
and contains partially duplicate data.
It would be very nice to have an atomic operation for write and commitOffsets,
or be able to simulate one with commitSync in Spark Streaming :)
> Support synchronous offset commits for Kafka
>
>
> Key: SPARK-22486
> URL: https://issues.apache.org/jira/browse/SPARK-22486
> Project: Spark
> Issue Type: Improvement
> Components: DStreams
>Affects Versions: 2.2.0
>Reporter: Jeremy Beard
>Priority: Major
>
> CanCommitOffsets provides asynchronous offset commits (via
> Consumer#commitAsync), and it would be useful if it also provided synchronous
> offset commits (via Consumer#commitSync) for when the desired behavior is to
> block until it is complete.
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