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https://issues.apache.org/jira/browse/BEAM-4783?focusedWorklogId=138431&page=com.atlassian.jira.plugin.system.issuetabpanels:worklog-tabpanel#worklog-138431
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ASF GitHub Bot logged work on BEAM-4783:
----------------------------------------
Author: ASF GitHub Bot
Created on: 27/Aug/18 15:17
Start Date: 27/Aug/18 15:17
Worklog Time Spent: 10m
Work Description: kyle-winkelman commented on a change in pull request
#6181: [BEAM-4783] Add bundleSize for splitting BoundedSources.
URL: https://github.com/apache/beam/pull/6181#discussion_r212977881
##########
File path:
runners/spark/src/main/java/org/apache/beam/runners/spark/translation/GroupCombineFunctions.java
##########
@@ -52,13 +50,11 @@
.map(WindowingHelpers.unwindowFunction())
.mapToPair(TranslationUtils.toPairFunction())
.mapToPair(CoderHelpers.toByteFunction(keyCoder, wvCoder));
- // use a default parallelism HashPartitioner.
- Partitioner partitioner = new
HashPartitioner(rdd.rdd().sparkContext().defaultParallelism());
// using mapPartitions allows to preserve the partitioner
// and avoid unnecessary shuffle downstream.
return pairRDD
- .groupByKey(partitioner)
+ .groupByKey()
Review comment:
This will cause the
[Partitioner.defaultPartitioner](https://github.com/apache/spark/blob/master/core/src/main/scala/org/apache/spark/Partitioner.scala#L62)
to be used. When called on a SourceRDD this should be a HashPartitioner with
the number of partitions equal to the number of splits created by the
bundleSize. When called on a SourceDStream this should be a HashPartitioner
with the number of partitions equal to the defaultParallelism.
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Issue Time Tracking
-------------------
Worklog Id: (was: 138431)
Time Spent: 40m (was: 0.5h)
> Spark SourceRDD Not Designed With Dynamic Allocation In Mind
> ------------------------------------------------------------
>
> Key: BEAM-4783
> URL: https://issues.apache.org/jira/browse/BEAM-4783
> Project: Beam
> Issue Type: Improvement
> Components: runner-spark
> Affects Versions: 2.5.0
> Reporter: Kyle Winkelman
> Assignee: Jean-Baptiste Onofré
> Priority: Major
> Labels: newbie
> Time Spent: 40m
> Remaining Estimate: 0h
>
> When the spark-runner is used along with the configuration
> spark.dynamicAllocation.enabled=true the SourceRDD does not detect this. It
> then falls back to the value calculated in this description:
> // when running on YARN/SparkDeploy it's the result of max(totalCores,
> 2).
> // when running on Mesos it's 8.
> // when running local it's the total number of cores (local = 1,
> local[N] = N,
> // local[*] = estimation of the machine's cores).
> // ** the configuration "spark.default.parallelism" takes precedence
> over all of the above **
> So in most cases this default is quite small. This is an issue when using a
> very large input file as it will only get split in half.
> I believe that when Dynamic Allocation is enable the SourceRDD should use the
> DEFAULT_BUNDLE_SIZE and possibly expose a SparkPipelineOptions that allows
> you to change this DEFAULT_BUNDLE_SIZE.
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