[jira] [Updated] (SPARK-24374) SPIP: Support Barrier Execution Mode in Apache Spark

2018-07-19 Thread Xiangrui Meng (JIRA)


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https://issues.apache.org/jira/browse/SPARK-24374?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel
 ]

Xiangrui Meng updated SPARK-24374:
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Summary: SPIP: Support Barrier Execution Mode in Apache Spark  (was: SPIP: 
Support Barrier Scheduling in Apache Spark)

> SPIP: Support Barrier Execution Mode in Apache Spark
> 
>
> Key: SPARK-24374
> URL: https://issues.apache.org/jira/browse/SPARK-24374
> Project: Spark
>  Issue Type: Epic
>  Components: ML, Spark Core
>Affects Versions: 3.0.0
>Reporter: Xiangrui Meng
>Assignee: Xiangrui Meng
>Priority: Major
>  Labels: Hydrogen, SPIP
> Attachments: SPIP_ Support Barrier Scheduling in Apache Spark.pdf
>
>
> (See details in the linked/attached SPIP doc.)
> {quote}
> The proposal here is to add a new scheduling model to Apache Spark so users 
> can properly embed distributed DL training as a Spark stage to simplify the 
> distributed training workflow. For example, Horovod uses MPI to implement 
> all-reduce to accelerate distributed TensorFlow training. The computation 
> model is different from MapReduce used by Spark. In Spark, a task in a stage 
> doesn’t depend on any other tasks in the same stage, and hence it can be 
> scheduled independently. In MPI, all workers start at the same time and pass 
> messages around. To embed this workload in Spark, we need to introduce a new 
> scheduling model, tentatively named “barrier scheduling”, which launches 
> tasks at the same time and provides users enough information and tooling to 
> embed distributed DL training. Spark can also provide an extra layer of fault 
> tolerance in case some tasks failed in the middle, where Spark would abort 
> all tasks and restart the stage.
> {quote}



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[jira] [Updated] (SPARK-24374) SPIP: Support Barrier Execution Mode in Apache Spark

2018-07-25 Thread Xiao Li (JIRA)


 [ 
https://issues.apache.org/jira/browse/SPARK-24374?page=com.atlassian.jira.plugin.system.issuetabpanels:all-tabpanel
 ]

Xiao Li updated SPARK-24374:

Affects Version/s: (was: 3.0.0)
   2.4.0

> SPIP: Support Barrier Execution Mode in Apache Spark
> 
>
> Key: SPARK-24374
> URL: https://issues.apache.org/jira/browse/SPARK-24374
> Project: Spark
>  Issue Type: Epic
>  Components: ML, Spark Core
>Affects Versions: 2.4.0
>Reporter: Xiangrui Meng
>Assignee: Xiangrui Meng
>Priority: Major
>  Labels: Hydrogen, SPIP
> Attachments: SPIP_ Support Barrier Scheduling in Apache Spark.pdf
>
>
> (See details in the linked/attached SPIP doc.)
> {quote}
> The proposal here is to add a new scheduling model to Apache Spark so users 
> can properly embed distributed DL training as a Spark stage to simplify the 
> distributed training workflow. For example, Horovod uses MPI to implement 
> all-reduce to accelerate distributed TensorFlow training. The computation 
> model is different from MapReduce used by Spark. In Spark, a task in a stage 
> doesn’t depend on any other tasks in the same stage, and hence it can be 
> scheduled independently. In MPI, all workers start at the same time and pass 
> messages around. To embed this workload in Spark, we need to introduce a new 
> scheduling model, tentatively named “barrier scheduling”, which launches 
> tasks at the same time and provides users enough information and tooling to 
> embed distributed DL training. Spark can also provide an extra layer of fault 
> tolerance in case some tasks failed in the middle, where Spark would abort 
> all tasks and restart the stage.
> {quote}



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