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Posted to issues@spark.apache.org by "Nicholas Chammas (Jira)" <ji...@apache.org> on 2020/09/28 14:03:00 UTC

[jira] [Updated] (SPARK-33000) cleanCheckpoints config does not clean all checkpointed RDDs on shutdown

     [ https://issues.apache.org/jira/browse/SPARK-33000?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel ]

Nicholas Chammas updated SPARK-33000:
-------------------------------------
    Description: 
Maybe it's just that the documentation needs to be updated, but I found this surprising:
{code:python}
$ pyspark
...
>>> spark.conf.set('spark.cleaner.referenceTracking.cleanCheckpoints', 'true')
>>> spark.sparkContext.setCheckpointDir('/tmp/spark/checkpoint/')
>>> a = spark.range(10)
>>> a.checkpoint()
DataFrame[id: bigint]                                                           
>>> exit(){code}
The checkpoint data is left behind in {{/tmp/spark/checkpoint/}}. I expected Spark to clean it up on shutdown.

The documentation for {{spark.cleaner.referenceTracking.cleanCheckpoints}} says:
{quote}Controls whether to clean checkpoint files if the reference is out of scope.
{quote}
When Spark shuts down, everything goes out of scope, so I'd expect all checkpointed RDDs to be cleaned up.

For the record, I see the same behavior in both the Scala and Python REPLs.

  was:
Maybe it's just that the documentation needs to be updated, but I found this surprising:
{code:java}
$ pyspark
...
>>> spark.conf.set('spark.cleaner.referenceTracking.cleanCheckpoints', 'true')
>>> spark.sparkContext.setCheckpointDir('/tmp/spark/checkpoint/')
>>> a = spark.range(10)
>>> a.checkpoint()
DataFrame[id: bigint]                                                           
>>> exit(){code}
The checkpoint data is left behind in {{/tmp/spark/checkpoint/}}. I expected Spark to clean it up on shutdown.

The documentation for {{spark.cleaner.referenceTracking.cleanCheckpoints}} says:

> Controls whether to clean checkpoint files if the reference is out of scope.

When Spark shuts down, everything goes out of scope, so I'd expect all checkpointed RDDs to be cleaned up.


> cleanCheckpoints config does not clean all checkpointed RDDs on shutdown
> ------------------------------------------------------------------------
>
>                 Key: SPARK-33000
>                 URL: https://issues.apache.org/jira/browse/SPARK-33000
>             Project: Spark
>          Issue Type: Improvement
>          Components: SQL
>    Affects Versions: 2.4.6
>            Reporter: Nicholas Chammas
>            Priority: Minor
>
> Maybe it's just that the documentation needs to be updated, but I found this surprising:
> {code:python}
> $ pyspark
> ...
> >>> spark.conf.set('spark.cleaner.referenceTracking.cleanCheckpoints', 'true')
> >>> spark.sparkContext.setCheckpointDir('/tmp/spark/checkpoint/')
> >>> a = spark.range(10)
> >>> a.checkpoint()
> DataFrame[id: bigint]                                                           
> >>> exit(){code}
> The checkpoint data is left behind in {{/tmp/spark/checkpoint/}}. I expected Spark to clean it up on shutdown.
> The documentation for {{spark.cleaner.referenceTracking.cleanCheckpoints}} says:
> {quote}Controls whether to clean checkpoint files if the reference is out of scope.
> {quote}
> When Spark shuts down, everything goes out of scope, so I'd expect all checkpointed RDDs to be cleaned up.
> For the record, I see the same behavior in both the Scala and Python REPLs.



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