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https://issues.apache.org/jira/browse/SPARK-17842?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=15561099#comment-15561099
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Liwei Lin edited comment on SPARK-17842 at 10/10/16 8:41 AM:
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-[~sreelalsl] thanks for the very clear reproducer -- it can be easily
reproduced against 2.0 and master(as of
8a6bbe095b6a9aa33989c0deaa5ed0128d70320f).-
-I'll submit a patch.-
Update:
[~sreelalsl], this seems to be a duplicate to SPARK-17396, whose fix was rolled
out in 2.0.1 just days ago. Can you try 2.0.1 to see if that works for you?
was (Author: lwlin):
[~sreelalsl] thanks for the very clear reproducer -- it can be easily
reproduced against 2.0 and master(as of
8a6bbe095b6a9aa33989c0deaa5ed0128d70320f).
I'll submit a patch.
> Thread and memory leak in WindowDstream (UnionRDD ) when parallelPartition
> computation gets enabled.
> -----------------------------------------------------------------------------------------------------
>
> Key: SPARK-17842
> URL: https://issues.apache.org/jira/browse/SPARK-17842
> Project: Spark
> Issue Type: Bug
> Components: Spark Core, Streaming
> Affects Versions: 2.0.0
> Environment: Yarn cluster, Eclipse Dev Env
> Reporter: Sreelal S L
> Priority: Critical
>
> We noticed a steady increase in ForkJoinTask instances in the driver process
> heap. Found out the root cause to be UnionRDD.
> WindowDstream internally uses UnionRDD which has a parallel partition
> computation logic by using parallel collection with ForkJoinPool task
> support.
> partitionEvalTaskSupport =new ForkJoinTaskSupport(new ForkJoinPool(8))
> The pool is created each time when a UnionRDD is created , but the pool is
> not getting shutdown. This is leaking thread/mem every slide interval of the
> window.
> Easily reproducible with the below code. Just keep a watch on the number of
> threads.
> {code}
> val sparkConf = new
> SparkConf().setMaster("local[*]").setAppName("TestLeak")
> val ssc = new StreamingContext(sparkConf, Seconds(1))
> ssc.checkpoint("checkpoint")
> val rdd = ssc.sparkContext.parallelize(List(1,2,3))
> val constStream = new ConstantInputDStream[Int](ssc,rdd)
> constStream.window(Seconds(20),Seconds(1)).print()
> ssc.start()
> ssc.awaitTermination();
> {code}
> This happens only when the number of rdds to be unioned is above the value
> spark.rdd.parallelListingThreshold (By default 10)
> Currently i'm working around by setting this threshold be a higher value.
>
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