Github user oza commented on a diff in the pull request:

    https://github.com/apache/spark/pull/3731#discussion_r22055469
  
    --- Diff: docs/job-scheduling.md ---
    @@ -56,6 +56,112 @@ the same RDDs. For example, the 
[Shark](http://shark.cs.berkeley.edu) JDBC serve
     queries. In future releases, in-memory storage systems such as 
[Tachyon](http://tachyon-project.org) will
     provide another approach to share RDDs.
     
    +## Dynamic Resource Allocation
    +
    +Spark 1.2 introduces the ability to dynamically scale the set of cluster 
resources allocated to
    +your application up and down based on the workload. This means that your 
application may give
    +resources back to the cluster if they are no longer used and request them 
again later when there
    +is demand. This feature is particularly useful if multiple applications 
share resources in your
    +Spark cluster. If a subset of the resources allocated to an application 
becomes idle, it can be
    +returned to the cluster's pool of resources and acquired by other 
applications. In Spark, dynamic
    +resource allocation is performed on the granularity of the executor and 
can be enabled through
    +`spark.dynamicAllocation.enabled`.
    +
    +This feature is currently disabled by default and available only on 
[YARN](running-on-yarn.html).
    +A future release will extend this to [standalone 
mode](spark-standalone.html) and
    +[Mesos coarse-grained mode](running-on-mesos.html#mesos-run-modes). Note 
that although Spark on
    +Mesos already has a similar notion of dynamic resource sharing in 
fine-grained mode, enabling
    +dynamic allocation allows your Mesos application to take advantage of 
coarse-grained low-latency
    +scheduling while sharing cluster resources efficiently.
    +
    +Lastly, it is worth noting that Spark's dynamic resource allocation 
mechanism is cooperative.
    +This means if a Spark application enables this feature, other applications 
on the same cluster
    +are also expected to do so. Otherwise, the cluster's resources will end up 
being unfairly
    +distributed to the applications that do not voluntarily give up unused 
resources they have
    +acquired.
    +
    +### Configuration and Setup
    +
    +All configurations used by this feature live under the 
`spark.dynamicAllocation.*` namespace.
    +To enable this feature, your application must set 
`spark.dynamicAllocation.enabled` to `true` and
    +provide lower and upper bounds for the number of executors through
    +`spark.dynamicAllocation.minExecutors` and 
`spark.dynamicAllocation.maxExecutors`. Other relevant
    +configurations are described on the [configurations 
page](configuration.html#dynamic-allocation)
    +and in the subsequent sections in detail.
    +
    +Additionally, your application must use an external shuffle service 
(described below). To enable
    +this, set `spark.shuffle.service.enabled` to `true`. In YARN, this 
external shuffle service is
    +implemented in `org.apache.spark.yarn.network.YarnShuffleService` that 
runs in each `NodeManager`
    --- End diff --
    
    +1 to add how to use external shuffle service since we need to enable 
external shuffle service to use dynamic allocation.


---
If your project is set up for it, you can reply to this email and have your
reply appear on GitHub as well. If your project does not have this feature
enabled and wishes so, or if the feature is enabled but not working, please
contact infrastructure at [email protected] or file a JIRA ticket
with INFRA.
---

---------------------------------------------------------------------
To unsubscribe, e-mail: [email protected]
For additional commands, e-mail: [email protected]

Reply via email to