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99 commits

Author SHA1 Message Date
wenxuanguan e7443d6412 [SPARK-27774][CORE][MLLIB] Avoid hardcoded configs
## What changes were proposed in this pull request?

avoid hardcoded configs in `SparkConf` and `SparkSubmit` and test

## How was this patch tested?

N/A

Closes #24631 from wenxuanguan/minor-fix.

Authored-by: wenxuanguan <choose_home@126.com>
Signed-off-by: HyukjinKwon <gurwls223@apache.org>
2019-05-22 10:45:11 +09:00
Thomas Graves db2e3c4341 [SPARK-27024] Executor interface for cluster managers to support GPU and other resources
## What changes were proposed in this pull request?

Add in GPU and generic resource type allocation to the executors.

Note this is part of a bigger feature for gpu-aware scheduling and is just how the executor find the resources. The general flow :

   - users ask for a certain set of resources, for instance number of gpus - each cluster manager has a specific way to do this.
  -  cluster manager allocates a container or set of resources (standalone mode)
-    When spark launches the executor in that container, the executor either has to be told what resources it has or it has to auto discover them.
  -  Executor has to register with Driver and tell the driver the set of resources it has so the scheduler can use that to schedule tasks that requires a certain amount of each of those resources

In this pr I added configs and arguments to the executor to be able discover resources. The argument to the executor is intended to be used by standalone mode or other cluster managers that don't have isolation so that it can assign specific resources to specific executors in case there are multiple executors on a node. The argument is a file contains JSON Array of ResourceInformation objects.

The discovery script is meant to be used in an isolated environment where the executor only sees the resources it should use.

Note that there will be follow on PRs to add other parts like the scheduler part. See the epic high level jira: https://issues.apache.org/jira/browse/SPARK-24615

## How was this patch tested?

Added unit tests and manually tested.

Please review http://spark.apache.org/contributing.html before opening a pull request.

Closes #24406 from tgravescs/gpu-sched-executor-clean.

Authored-by: Thomas Graves <tgraves@nvidia.com>
Signed-off-by: Thomas Graves <tgraves@apache.org>
2019-05-14 08:41:41 -05:00
Sam Tran bcd3b61c4b [SPARK-27347][MESOS] Fix supervised driver retry logic for outdated tasks
## What changes were proposed in this pull request?

This patch fixes a bug where `--supervised` Spark jobs would retry multiple times whenever an agent would crash, come back, and re-register even when those jobs had already relaunched on a different agent.

That is:
```
- supervised driver is running on agent1
- agent1 crashes
- driver is relaunched on another agent as `<task-id>-retry-1`
- agent1 comes back online and re-registers with scheduler
- spark relaunches the same job as `<task-id>-retry-2`
- now there are two jobs running simultaneously
```

This is because when an agent would come back and re-register it would send a status update `TASK_FAILED` for its old driver-task. Previous logic would indiscriminately remove the `submissionId` from Zookeeper's `launchedDrivers` node and add it to `retryList` node. Then, when a new offer came in, it would relaunch another `-retry-`  task even though one was previously running.

For example logs, scroll to bottom

## How was this patch tested?

- Added a unit test to simulate behavior described above
- Tested manually on a DC/OS cluster by
  ```
  - launching a --supervised spark job
  - dcos node ssh <to the agent with the running spark-driver>
  - systemctl stop dcos-mesos-slave
  - docker kill <driver-container-id>
  - [ wait until spark job is relaunched ]
  - systemctl start dcos-mesos-slave
  - [ observe spark driver is not relaunched as `-retry-2` ]
  ```

Log snippets included below. Notice the `-retry-1` task is running when status update for the old task comes in afterward:
```
19/01/15 19:21:38 TRACE MesosClusterScheduler: Received offers from Mesos:
... [offers] ...
19/01/15 19:21:39 TRACE MesosClusterScheduler: Using offer 5d421001-0630-4214-9ecb-d5838a2ec149-O2532 to launch driver driver-20190115192138-0001 with taskId: value: "driver-20190115192138-0001"
...
19/01/15 19:21:42 INFO MesosClusterScheduler: Received status update: taskId=driver-20190115192138-0001 state=TASK_STARTING message=''
19/01/15 19:21:43 INFO MesosClusterScheduler: Received status update: taskId=driver-20190115192138-0001 state=TASK_RUNNING message=''
...
19/01/15 19:29:12 INFO MesosClusterScheduler: Received status update: taskId=driver-20190115192138-0001 state=TASK_LOST message='health check timed out' reason=REASON_SLAVE_REMOVED
...
19/01/15 19:31:12 TRACE MesosClusterScheduler: Using offer 5d421001-0630-4214-9ecb-d5838a2ec149-O2681 to launch driver driver-20190115192138-0001 with taskId: value: "driver-20190115192138-0001-retry-1"
...
19/01/15 19:31:15 INFO MesosClusterScheduler: Received status update: taskId=driver-20190115192138-0001-retry-1 state=TASK_STARTING message=''
19/01/15 19:31:16 INFO MesosClusterScheduler: Received status update: taskId=driver-20190115192138-0001-retry-1 state=TASK_RUNNING message=''
...
19/01/15 19:33:45 INFO MesosClusterScheduler: Received status update: taskId=driver-20190115192138-0001 state=TASK_FAILED message='Unreachable agent re-reregistered'
...
19/01/15 19:33:45 INFO MesosClusterScheduler: Received status update: taskId=driver-20190115192138-0001 state=TASK_FAILED message='Abnormal executor termination: unknown container' reason=REASON_EXECUTOR_TERMINATED
19/01/15 19:33:45 ERROR MesosClusterScheduler: Unable to find driver with driver-20190115192138-0001 in status update
...
19/01/15 19:33:47 TRACE MesosClusterScheduler: Using offer 5d421001-0630-4214-9ecb-d5838a2ec149-O2729 to launch driver driver-20190115192138-0001 with taskId: value: "driver-20190115192138-0001-retry-2"
...
19/01/15 19:33:50 INFO MesosClusterScheduler: Received status update: taskId=driver-20190115192138-0001-retry-2 state=TASK_STARTING message=''
19/01/15 19:33:51 INFO MesosClusterScheduler: Received status update: taskId=driver-20190115192138-0001-retry-2 state=TASK_RUNNING message=''
```

Closes #24276 from samvantran/SPARK-27347-duplicate-retries.

Authored-by: Sam Tran <stran@mesosphere.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
2019-05-10 10:53:31 -07:00
jiafu.zhang@intel.com fa5dc0a45a [SPARK-26632][CORE] Separate Thread Configurations of Driver and Executor
## What changes were proposed in this pull request?

For the below three thread configuration items applied to both driver and executor,
spark.rpc.io.serverThreads
spark.rpc.io.clientThreads
spark.rpc.netty.dispatcher.numThreads,
we separate them to driver specifics and executor specifics.
spark.driver.rpc.io.serverThreads                     < - > spark.executor.rpc.io.serverThreads
spark.driver.rpc.io.clientThreads                      < - > spark.executor.rpc.io.clientThreads
spark.driver.rpc.netty.dispatcher.numThreads < - > spark.executor.rpc.netty.dispatcher.numThreads

Spark reads these specifics first and fall back to the common configurations.

## How was this patch tested?
We ran the SimpleMap app without shuffle for benchmark purpose to test Spark's scalability in HPC with omini-path NIC which has higher bandwidth than normal ethernet NIC.

Spark's base version is 2.4.0.
Spark ran in the Standalone mode. Driver was in a standalone node.
After the separation, the performance is improved a lot in 256 nodes and 512 nodes. see below test results of SimpleMapTask before and after the enhancement. You can view the tables in the  [JIRA](https://issues.apache.org/jira/browse/SPARK-26632) too.

ds: spark.driver.rpc.io.serverThreads
dc: spark.driver.rpc.io.clientThreads
dd: spark.driver.rpc.netty.dispatcher.numThreads
ed: spark.executor.rpc.netty.dispatcher.numThreads
time: Overall Time (s)
old time: Overall Time without Separation (s)

**Before:**

 nodes | ds | dc | dd | ed | time
-- |-- | -- | -- | -- | --
128 nodes | 8 | 8 | 8 | 8 | 108
256 nodes | 8 | 8 | 8 | 8 | 196
512 nodes | 8 | 8 | 8 | 8 | 377

**After:**

nodes | ds | dc | dd | ed | time | improvement
-- | -- | -- | -- | -- | -- | --
128 nodes | 15 | 15 | 10 | 30 | 107 | 0.9%
256 nodes | 12 | 15 | 10 | 30 | 159 | 18.8%
512 nodes | 12 | 15 | 10 | 30 | 283 | 24.9%

Closes #23560 from zjf2012/thread_conf_separation.

Authored-by: jiafu.zhang@intel.com <jiafu.zhang@intel.com>
Signed-off-by: Marcelo Vanzin <vanzin@cloudera.com>
2019-05-10 10:42:43 -07:00
Sean Owen a6716d3f03 [SPARK-27571][CORE][YARN][EXAMPLES] Avoid scala.language.reflectiveCalls
## What changes were proposed in this pull request?

This PR avoids usage of reflective calls in Scala. It removes the import that suppresses the warnings and rewrites code in small ways to avoid accessing methods that aren't technically accessible.

## How was this patch tested?

Existing tests.

Closes #24463 from srowen/SPARK-27571.

Authored-by: Sean Owen <sean.owen@databricks.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
2019-04-29 11:16:45 -05:00
Yuming Wang d70b6a39e1 [MINOR][BUILD] Add 2 maven properties(hive.classifier and hive.parquet.group)
## What changes were proposed in this pull request?

This pr adds 2 maven properties to help us upgrade the built-in Hive.

| Property Name | Default | In future |
| ------ | ------ | ------ |
| hive.classifier | (none) | core |
| hive.parquet.group | com.twitter | org.apache.parquet |

## How was this patch tested?

existing tests

Closes #23996 from wangyum/add_2_maven_properties.

Authored-by: Yuming Wang <yumwang@ebay.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
2019-03-07 16:46:07 -06:00
mwlon 0ba19543d2 [SPARK-27015][MESOS] properly escape mesos scheduler arguments
## What changes were proposed in this pull request?

Escape arguments for submissions sent to a Mesos dispatcher; analogous change to https://issues.apache.org/jira/browse/SPARK-24380 for confs.

Since this changes behavior than some users are undoubtedly already working around, probably best to only only merge into master.

## How was this patch tested?

Added a new unit test, covering some existing behavior as well.

Closes #23967 from mwlon/SPARK-27015.

Authored-by: mwlon <mloncaric@hmc.edu>
Signed-off-by: Marcelo Vanzin <vanzin@cloudera.com>
2019-03-05 13:05:37 -08:00
mwlon 5fd4d7499c [SPARK-26192][MESOS] Retrieve enableFetcherCache option from submission for driver URIs
## What changes were proposed in this pull request?

Retrieve enableFetcherCache option from submission conf rather than dispatcher conf. This resolves some confusing behavior where Spark drivers currently get this conf from the dispatcher, whereas Spark executors get this conf from the submission. After this change, the conf will only need to be specified once.

## How was this patch tested?

With (updated) existing tests.

Closes #23924 from mwlon/SPARK-26192.

Authored-by: mwlon <mloncaric@hmc.edu>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
2019-03-04 12:10:48 -08:00
SongYadong 86b25c4350 [SPARK-26967][CORE] Put MetricsSystem instance names together for clearer management
## What changes were proposed in this pull request?

`MetricsSystem` instance creations have a scattered distribution in the project code. So do their names. It may cause some inconvenience for browsing and management.
This PR tries to put them together. In this way, we can have a uniform location for adding or removing them, and have a overall view of `MetircsSystem `instances in current project.
It's also helpful for maintaining user documents by avoiding missing something.

## How was this patch tested?

Existing unit tests.

Closes #23869 from SongYadong/metrics_system_inst_manage.

Lead-authored-by: SongYadong <song.yadong1@zte.com.cn>
Co-authored-by: walter2001 <ydsong2007@163.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
2019-03-01 11:49:43 -06:00
Maxim Gekk a829234df3 [SPARK-26817][CORE] Use System.nanoTime to measure time intervals
## What changes were proposed in this pull request?

In the PR, I propose to use `System.nanoTime()` instead of `System.currentTimeMillis()` in measurements of time intervals.

`System.currentTimeMillis()` returns current wallclock time and will follow changes to the system clock. Thus, negative wallclock adjustments can cause timeouts to "hang" for a long time (until wallclock time has caught up to its previous value again). This can happen when ntpd does a "step" after the network has been disconnected for some time. The most canonical example is during system bootup when DHCP takes longer than usual. This can lead to failures that are really hard to understand/reproduce. `System.nanoTime()` is guaranteed to be monotonically increasing irrespective of wallclock changes.

## How was this patch tested?

By existing test suites.

Closes #23727 from MaxGekk/system-nanotime.

Lead-authored-by: Maxim Gekk <max.gekk@gmail.com>
Co-authored-by: Maxim Gekk <maxim.gekk@databricks.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
2019-02-13 13:12:16 -06:00
Jungtaek Lim (HeartSaVioR) af4c59c0fb [SPARK-26843][MESOS] Use ConfigEntry for hardcoded configs for "mesos" resource manager
## What changes were proposed in this pull request?

This patch makes hardcoded configs in "mesos" module to use ConfigEntry, avoiding issues on mistake like SPARK-26082.

Please note that there're some changes on type while migrating to ConfigEntry: specifically "comma-separated list on a string" becomes "sequence of strings". While SparkConf smoothly handles on the change (comma-separated list on a string is still supported so backward compatible), there're some methods in utility class (`mesos` package private) to depend on the type change, so this patch also modifies the method signature for them a bit.

## How was this patch tested?

Existing tests.

Closes #23743 from HeartSaVioR/SPARK-26843.

Authored-by: Jungtaek Lim (HeartSaVioR) <kabhwan@gmail.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
2019-02-10 16:34:33 -08:00
Jungtaek Lim (HeartSaVioR) b8d666940b [SPARK-26082][MESOS][FOLLOWUP] Fix Scala-2.11 build
## What changes were proposed in this pull request?

#23744 added a UT to prevent a future regression. However, it breaks Scala-2.11 build. This fixes that.

## How was this patch tested?

Manual test with Scala-2.11 profile.

Closes #23755 from HeartSaVioR/SPARK-26082-FOLLOW-UP-V2.

Authored-by: Jungtaek Lim (HeartSaVioR) <kabhwan@gmail.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
2019-02-09 13:46:52 -08:00
Jungtaek Lim (HeartSaVioR) b4e1d14513 [SPARK-26082][MESOS][FOLLOWUP] Add UT on fetcher cache option on MesosClusterScheduler
## What changes were proposed in this pull request?

This patch adds UT on testing SPARK-26082 to avoid regression. While #23743 reduces the possibility to make a similar mistake, the needed lines of code for adding tests are not that huge, so I guess it might be worth to add them.

## How was this patch tested?

Newly added UTs. Test "supports setting fetcher cache" fails when #23743 is not applied and succeeds when #23743 is applied.

Closes #23744 from HeartSaVioR/SPARK-26082-add-unit-test.

Authored-by: Jungtaek Lim (HeartSaVioR) <kabhwan@gmail.com>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
2019-02-07 08:51:55 -08:00
mwlon c0811e8b4d [SPARK-26082][MESOS] Fix mesos fetch cache config name
## What changes were proposed in this pull request?

* change MesosClusterScheduler to use correct argument name for Mesos fetch cache (spark.mesos.fetchCache.enable -> spark.mesos.fetcherCache.enable)

## How was this patch tested?

Not sure this requires a test, since it's just a string change.

Closes #23734 from mwlon/SPARK-26082.

Authored-by: mwlon <mloncaric@hmc.edu>
Signed-off-by: Dongjoon Hyun <dhyun@apple.com>
2019-02-07 01:21:31 -08:00
Jungtaek Lim (HeartSaVioR) ae5b2a6a92 [SPARK-26311][CORE] New feature: apply custom log URL pattern for executor log URLs in SHS
## What changes were proposed in this pull request?

This patch proposes adding a new configuration on SHS: custom executor log URL pattern. This will enable end users to replace executor logs to other than RM provide, like external log service, which enables to serve executor logs when NodeManager becomes unavailable in case of YARN.

End users can build their own of custom executor log URLs with pre-defined patterns which would be vary on each resource manager. This patch adds some patterns to YARN resource manager. (For others, there's even no executor log url available so cannot define patterns as well.)

Please refer the doc change as well as added UTs in this patch to see how to set up the feature.

## How was this patch tested?

Added UT, as well as manual test with YARN cluster

Closes #23260 from HeartSaVioR/SPARK-26311.

Authored-by: Jungtaek Lim (HeartSaVioR) <kabhwan@gmail.com>
Signed-off-by: Marcelo Vanzin <vanzin@cloudera.com>
2019-01-30 11:52:30 -08:00
Marcelo Vanzin 2a67dbfbd3 [SPARK-26595][CORE] Allow credential renewal based on kerberos ticket cache.
This change addes a new mode for credential renewal that does not require
a keytab; it uses the local ticket cache instead, so it works while the
user keeps the cache valid.

This can be useful for, e.g., people running long spark-shell sessions where
their kerberos login is kept up-to-date.

The main change to enable this behavior is in HadoopDelegationTokenManager,
with a small change in the HDFS token provider. The other changes are to avoid
creating duplicate tokens when submitting the application to YARN; they allow
the tokens from the scheduler to be sent to the YARN AM, reducing the round trips
to HDFS.

For that, the scheduler initialization code was changed a little bit so that
the tokens are available when the YARN client is initialized. That basically
takes care of a long-standing TODO that was in the code to clean up configuration
propagation to the driver's RPC endpoint (in CoarseGrainedSchedulerBackend).

Tested with an app designed to stress this functionality, with both keytab and
cache-based logins. Some basic kerberos tests on k8s also.

Closes #23525 from vanzin/SPARK-26595.

Authored-by: Marcelo Vanzin <vanzin@cloudera.com>
Signed-off-by: Marcelo Vanzin <vanzin@cloudera.com>
2019-01-28 13:32:34 -08:00
Kazuaki Ishizaki 7bf0794651 [SPARK-26463][CORE] Use ConfigEntry for hardcoded configs for scheduler categories.
## What changes were proposed in this pull request?

The PR makes hardcoded `spark.dynamicAllocation`, `spark.scheduler`, `spark.rpc`, `spark.task`, `spark.speculation`, and `spark.cleaner` configs to use `ConfigEntry`.

## How was this patch tested?

Existing tests

Closes #23416 from kiszk/SPARK-26463.

Authored-by: Kazuaki Ishizaki <ishizaki@jp.ibm.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
2019-01-22 07:44:36 -06:00
Jungtaek Lim (HeartSaVioR) 38f030725c [SPARK-26466][CORE] Use ConfigEntry for hardcoded configs for submit categories.
## What changes were proposed in this pull request?

The PR makes hardcoded configs below to use `ConfigEntry`.

* spark.kryo
* spark.kryoserializer
* spark.serializer
* spark.jars
* spark.files
* spark.submit
* spark.deploy
* spark.worker

This patch doesn't change configs which are not relevant to SparkConf (e.g. system properties).

## How was this patch tested?

Existing tests.

Closes #23532 from HeartSaVioR/SPARK-26466-v2.

Authored-by: Jungtaek Lim (HeartSaVioR) <kabhwan@gmail.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
2019-01-16 20:57:21 -06:00
Devaraj K 1b75f3bcff [SPARK-17928][MESOS] No driver.memoryOverhead setting for mesos cluster mode
## What changes were proposed in this pull request?

Added a new configuration 'spark.mesos.driver.memoryOverhead' for providing the driver memory overhead in mesos cluster mode.

## How was this patch tested?
Verified it manually, Resource Scheduler allocates (drivermemory+ driver memoryOverhead) for driver in mesos cluster mode.

Closes #17726 from devaraj-kavali/SPARK-17928.

Authored-by: Devaraj K <devaraj@apache.org>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
2019-01-15 15:45:20 -06:00
Marcelo Vanzin 2783e4c45f [SPARK-24522][UI] Create filter to apply HTTP security checks consistently.
Currently there is code scattered in a bunch of places to do different
things related to HTTP security, such as access control, setting
security-related headers, and filtering out bad content. This makes it
really easy to miss these things when writing new UI code.

This change creates a new filter that does all of those things, and
makes sure that all servlet handlers that are attached to the UI get
the new filter and any user-defined filters consistently. The extent
of the actual features should be the same as before.

The new filter is added at the end of the filter chain, because authentication
is done by custom filters and thus needs to happen first. This means that
custom filters see unfiltered HTTP requests - which is actually the current
behavior anyway.

As a side-effect of some of the code refactoring, handlers added after
the initial set also get wrapped with a GzipHandler, which didn't happen
before.

Tested with added unit tests and in a history server with SPNEGO auth
configured.

Closes #23302 from vanzin/SPARK-24522.

Authored-by: Marcelo Vanzin <vanzin@cloudera.com>
Signed-off-by: Imran Rashid <irashid@cloudera.com>
2019-01-08 11:25:33 -06:00
Marco Gaido 1a641525e6 [SPARK-26491][CORE][TEST] Use ConfigEntry for hardcoded configs for test categories
## What changes were proposed in this pull request?

The PR makes hardcoded `spark.test` and `spark.testing` configs to use `ConfigEntry` and put them in the config package.

## How was this patch tested?

existing UTs

Closes #23413 from mgaido91/SPARK-26491.

Authored-by: Marco Gaido <marcogaido91@gmail.com>
Signed-off-by: Marcelo Vanzin <vanzin@cloudera.com>
2019-01-07 15:35:33 -08:00
Marcelo Vanzin 669e8a1559 [SPARK-25689][YARN] Make driver, not AM, manage delegation tokens.
This change modifies the behavior of the delegation token code when running
on YARN, so that the driver controls the renewal, in both client and cluster
mode. For that, a few different things were changed:

* The AM code only runs code that needs DTs when DTs are available.

In a way, this restores the AM behavior to what it was pre-SPARK-23361, but
keeping the fix added in that bug. Basically, all the AM code is run in a
"UGI.doAs()" block; but code that needs to talk to HDFS (basically the
distributed cache handling code) was delayed to the point where the driver
is up and running, and thus when valid delegation tokens are available.

* SparkSubmit / ApplicationMaster now handle user login, not the token manager.

The previous AM code was relying on the token manager to keep the user
logged in when keytabs are used. This required some odd APIs in the token
manager and the AM so that the right UGI was exposed and used in the right
places.

After this change, the logged in user is handled separately from the token
manager, so the API was cleaned up, and, as explained above, the whole AM
runs under the logged in user, which also helps with simplifying some more code.

* Distributed cache configs are sent separately to the AM.

Because of the delayed initialization of the cached resources in the AM, it
became easier to write the cache config to a separate properties file instead
of bundling it with the rest of the Spark config. This also avoids having
to modify the SparkConf to hide things from the UI.

* Finally, the AM doesn't manage the token manager anymore.

The above changes allow the token manager to be completely handled by the
driver's scheduler backend code also in YARN mode (whether client or cluster),
making it similar to other RMs. To maintain the fix added in SPARK-23361 also
in client mode, the AM now sends an extra message to the driver on initialization
to fetch delegation tokens; and although it might not really be needed, the
driver also keeps the running AM updated when new tokens are created.

Tested in a kerberized cluster with the same tests used to validate SPARK-23361,
in both client and cluster mode. Also tested with a non-kerberized cluster.

Closes #23338 from vanzin/SPARK-25689.

Authored-by: Marcelo Vanzin <vanzin@cloudera.com>
Signed-off-by: Imran Rashid <irashid@cloudera.com>
2019-01-07 14:40:08 -06:00
Dongjoon Hyun e15a319ccd
[SPARK-26536][BUILD][TEST] Upgrade Mockito to 2.23.4
## What changes were proposed in this pull request?

This PR upgrades Mockito from 1.10.19 to 2.23.4. The following changes are required.

- Replace `org.mockito.Matchers` with `org.mockito.ArgumentMatchers`
- Replace `anyObject` with `any`
- Replace `getArgumentAt` with `getArgument` and add type annotation.
- Use `isNull` matcher in case of `null` is invoked.
```scala
     saslHandler.channelInactive(null);
-    verify(handler).channelInactive(any(TransportClient.class));
+    verify(handler).channelInactive(isNull());
```

- Make and use `doReturn` wrapper to avoid [SI-4775](https://issues.scala-lang.org/browse/SI-4775)
```scala
private def doReturn(value: Any) = org.mockito.Mockito.doReturn(value, Seq.empty: _*)
```

## How was this patch tested?

Pass the Jenkins with the existing tests.

Closes #23452 from dongjoon-hyun/SPARK-26536.

Authored-by: Dongjoon Hyun <dongjoon@apache.org>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2019-01-04 19:23:38 -08:00
Takuya UESHIN 4419e1daca [SPARK-26445][CORE] Use ConfigEntry for hardcoded configs for driver/executor categories.
## What changes were proposed in this pull request?

The PR makes hardcoded spark.driver, spark.executor, and spark.cores.max configs to use `ConfigEntry`.

Note that some config keys are from `SparkLauncher` instead of defining in the config package object because the string is already defined in it and it does not depend on core module.

## How was this patch tested?

Existing tests.

Closes #23415 from ueshin/issues/SPARK-26445/hardcoded_driver_executor_configs.

Authored-by: Takuya UESHIN <ueshin@databricks.com>
Signed-off-by: Hyukjin Kwon <gurwls223@apache.org>
2019-01-04 22:12:35 +08:00
DB Tsai ad853c5678
[SPARK-25956] Make Scala 2.12 as default Scala version in Spark 3.0
## What changes were proposed in this pull request?

This PR makes Spark's default Scala version as 2.12, and Scala 2.11 will be the alternative version. This implies that Scala 2.12 will be used by our CI builds including pull request builds.

We'll update the Jenkins to include a new compile-only jobs for Scala 2.11 to ensure the code can be still compiled with Scala 2.11.

## How was this patch tested?

existing tests

Closes #22967 from dbtsai/scala2.12.

Authored-by: DB Tsai <d_tsai@apple.com>
Signed-off-by: Dongjoon Hyun <dongjoon@apache.org>
2018-11-14 16:22:23 -08:00
Takuya UESHIN 78fa1be29b [SPARK-25926][CORE] Move config entries in core module to internal.config.
## What changes were proposed in this pull request?

Currently definitions of config entries in `core` module are in several files separately. We should move them into `internal/config` to be easy to manage.

## How was this patch tested?

Existing tests.

Closes #22928 from ueshin/issues/SPARK-25926/single_config_file.

Authored-by: Takuya UESHIN <ueshin@databricks.com>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2018-11-06 09:18:17 +08:00
Marcelo Vanzin 68dde3481e [SPARK-23781][CORE] Merge token renewer functionality into HadoopDelegationTokenManager.
This avoids having two classes to deal with tokens; now the above
class is a one-stop shop for dealing with delegation tokens. The
YARN backend extends that class instead of doing composition like
before, resulting in a bit less code there too.

The renewer functionality is basically the same code that used to
be in YARN's AMCredentialRenewer. That is also the reason why the
public API of HadoopDelegationTokenManager is a little bit odd;
the YARN AM has some odd requirements for how this all should be
initialized, and the weirdness is needed currently to support that.

Tested:
- YARN with stress app for DT renewal
- Mesos and K8S with basic kerberos tests (both tgt and keytab)

Closes #22624 from vanzin/SPARK-23781.

Authored-by: Marcelo Vanzin <vanzin@cloudera.com>
Signed-off-by: Imran Rashid <irashid@cloudera.com>
2018-10-31 13:00:10 -05:00
gatorsmile 9bf397c0e4 [SPARK-25592] Setting version to 3.0.0-SNAPSHOT
## What changes were proposed in this pull request?

This patch is to bump the master branch version to 3.0.0-SNAPSHOT.

## How was this patch tested?
N/A

Closes #22606 from gatorsmile/bump3.0.

Authored-by: gatorsmile <gatorsmile@gmail.com>
Signed-off-by: gatorsmile <gatorsmile@gmail.com>
2018-10-02 08:48:24 -07:00
hyukjinkwon a2f502cf53 [SPARK-25565][BUILD] Add scalastyle rule to check add Locale.ROOT to .toLowerCase and .toUpperCase for internal calls
## What changes were proposed in this pull request?

This PR adds a rule to force `.toLowerCase(Locale.ROOT)` or `toUpperCase(Locale.ROOT)`.

It produces an error as below:

```
[error]       Are you sure that you want to use toUpperCase or toLowerCase without the root locale? In most cases, you
[error]       should use toUpperCase(Locale.ROOT) or toLowerCase(Locale.ROOT) instead.
[error]       If you must use toUpperCase or toLowerCase without the root locale, wrap the code block with
[error]       // scalastyle:off caselocale
[error]       .toUpperCase
[error]       .toLowerCase
[error]       // scalastyle:on caselocale
```

This PR excludes the cases above for SQL code path for external calls like table name, column name and etc.

For test suites, or when it's clear there's no locale problem like Turkish locale problem, it uses `Locale.ROOT`.

One minor problem is, `UTF8String` has both methods, `toLowerCase` and `toUpperCase`, and the new rule detects them as well. They are ignored.

## How was this patch tested?

Manually tested, and Jenkins tests.

Closes #22581 from HyukjinKwon/SPARK-25565.

Authored-by: hyukjinkwon <gurwls223@apache.org>
Signed-off-by: hyukjinkwon <gurwls223@apache.org>
2018-09-30 14:31:04 +08:00
Mukul Murthy 9362c5cc27
[SPARK-25449][CORE] Heartbeat shouldn't include accumulators for zero metrics
## What changes were proposed in this pull request?

Heartbeat shouldn't include accumulators for zero metrics.

Heartbeats sent from executors to the driver every 10 seconds contain metrics and are generally on the order of a few KBs. However, for large jobs with lots of tasks, heartbeats can be on the order of tens of MBs, causing tasks to die with heartbeat failures. We can mitigate this by not sending zero metrics to the driver.

## How was this patch tested?

(Please explain how this patch was tested. E.g. unit tests, integration tests, manual tests)
(If this patch involves UI changes, please attach a screenshot; otherwise, remove this)

Please review http://spark.apache.org/contributing.html before opening a pull request.

Closes #22473 from mukulmurthy/25449-heartbeat.

Authored-by: Mukul Murthy <mukul.murthy@gmail.com>
Signed-off-by: Shixiong Zhu <zsxwing@gmail.com>
2018-09-28 16:34:17 -07:00
gatorsmile bb2f069cf2 [SPARK-25436] Bump master branch version to 2.5.0-SNAPSHOT
## What changes were proposed in this pull request?
In the dev list, we can still discuss whether the next version is 2.5.0 or 3.0.0. Let us first bump the master branch version to `2.5.0-SNAPSHOT`.

## How was this patch tested?
N/A

Closes #22426 from gatorsmile/bumpVersionMaster.

Authored-by: gatorsmile <gatorsmile@gmail.com>
Signed-off-by: gatorsmile <gatorsmile@gmail.com>
2018-09-15 16:24:02 -07:00
Sean Owen cfbdd6a1f5 [SPARK-25398] Minor bugs from comparing unrelated types
## What changes were proposed in this pull request?

Correct some comparisons between unrelated types to what they seem to… have been trying to do

## How was this patch tested?

Existing tests.

Closes #22384 from srowen/SPARK-25398.

Authored-by: Sean Owen <sean.owen@databricks.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
2018-09-11 14:46:03 -05:00
liuxian ca861fea21 [SPARK-25300][CORE] Unified the configuration parameter spark.shuffle.service.enabled
## What changes were proposed in this pull request?

The configuration parameter "spark.shuffle.service.enabled"  has defined in `package.scala`,  and it  is also used in many place,  so we can replace it with `SHUFFLE_SERVICE_ENABLED`.
and unified  this configuration parameter "spark.shuffle.service.port"  together.

## How was this patch tested?
N/A

Closes #22306 from 10110346/unifiedserviceenable.

Authored-by: liuxian <liu.xian3@zte.com.cn>
Signed-off-by: Wenchen Fan <wenchen@databricks.com>
2018-09-05 10:43:46 +08:00
Xingbo Jiang bfb74394a5 [SPARK-24819][CORE] Fail fast when no enough slots to launch the barrier stage on job submitted
## What changes were proposed in this pull request?

We shall check whether the barrier stage requires more slots (to be able to launch all tasks in the barrier stage together) than the total number of active slots currently, and fail fast if trying to submit a barrier stage that requires more slots than current total number.

This PR proposes to add a new method `getNumSlots()` to try to get the total number of currently active slots in `SchedulerBackend`, support of this new method has been added to all the first-class scheduler backends except `MesosFineGrainedSchedulerBackend`.

## How was this patch tested?

Added new test cases in `BarrierStageOnSubmittedSuite`.

Closes #22001 from jiangxb1987/SPARK-24819.

Lead-authored-by: Xingbo Jiang <xingbo.jiang@databricks.com>
Co-authored-by: Xiangrui Meng <meng@databricks.com>
Signed-off-by: Xiangrui Meng <meng@databricks.com>
2018-08-15 13:31:28 -07:00
Imran Rashid 1024875843 [SPARK-25088][CORE][MESOS][DOCS] Update Rest Server docs & defaults.
## What changes were proposed in this pull request?

(a) disabled rest submission server by default in standalone mode
(b) fails the standalone master if rest server enabled & authentication secret set
(c) fails the mesos cluster dispatcher if authentication secret set
(d) doc updates
(e) when submitting a standalone app, only try the rest submission first if spark.master.rest.enabled=true

otherwise you'd see a 10 second pause like
18/08/09 08:13:22 INFO RestSubmissionClient: Submitting a request to launch an application in spark://...
18/08/09 08:13:33 WARN RestSubmissionClient: Unable to connect to server spark://...

I also made sure the mesos cluster dispatcher failed with the secret enabled, though I had to do that on slightly different code as I don't have mesos native libs around.

## How was this patch tested?

I ran the tests in the mesos module & in core for org.apache.spark.deploy.*

I ran a test on a cluster with standalone master to make sure I could still start with the right configs, and would fail the right way too.

Closes #22071 from squito/rest_doc_updates.

Authored-by: Imran Rashid <irashid@cloudera.com>
Signed-off-by: Sean Owen <sean.owen@databricks.com>
2018-08-14 13:02:33 -05:00
Kazuhiro Sera 8ec25cd67e Fix typos detected by github.com/client9/misspell
## What changes were proposed in this pull request?

Fixing typos is sometimes very hard. It's not so easy to visually review them. Recently, I discovered a very useful tool for it, [misspell](https://github.com/client9/misspell).

This pull request fixes minor typos detected by [misspell](https://github.com/client9/misspell) except for the false positives. If you would like me to work on other files as well, let me know.

## How was this patch tested?

### before

```
$ misspell . | grep -v '.js'
R/pkg/R/SQLContext.R:354:43: "definiton" is a misspelling of "definition"
R/pkg/R/SQLContext.R:424:43: "definiton" is a misspelling of "definition"
R/pkg/R/SQLContext.R:445:43: "definiton" is a misspelling of "definition"
R/pkg/R/SQLContext.R:495:43: "definiton" is a misspelling of "definition"
NOTICE-binary:454:16: "containd" is a misspelling of "contained"
R/pkg/R/context.R:46:43: "definiton" is a misspelling of "definition"
R/pkg/R/context.R:74:43: "definiton" is a misspelling of "definition"
R/pkg/R/DataFrame.R:591:48: "persistance" is a misspelling of "persistence"
R/pkg/R/streaming.R:166:44: "occured" is a misspelling of "occurred"
R/pkg/inst/worker/worker.R:65:22: "ouput" is a misspelling of "output"
R/pkg/tests/fulltests/test_utils.R:106:25: "environemnt" is a misspelling of "environment"
common/kvstore/src/test/java/org/apache/spark/util/kvstore/InMemoryStoreSuite.java:38:39: "existant" is a misspelling of "existent"
common/kvstore/src/test/java/org/apache/spark/util/kvstore/LevelDBSuite.java:83:39: "existant" is a misspelling of "existent"
common/network-common/src/main/java/org/apache/spark/network/crypto/TransportCipher.java:243:46: "transfered" is a misspelling of "transferred"
common/network-common/src/main/java/org/apache/spark/network/sasl/SaslEncryption.java:234:19: "transfered" is a misspelling of "transferred"
common/network-common/src/main/java/org/apache/spark/network/sasl/SaslEncryption.java:238:63: "transfered" is a misspelling of "transferred"
common/network-common/src/main/java/org/apache/spark/network/sasl/SaslEncryption.java:244:46: "transfered" is a misspelling of "transferred"
common/network-common/src/main/java/org/apache/spark/network/sasl/SaslEncryption.java:276:39: "transfered" is a misspelling of "transferred"
common/network-common/src/main/java/org/apache/spark/network/util/AbstractFileRegion.java:27:20: "transfered" is a misspelling of "transferred"
common/unsafe/src/test/scala/org/apache/spark/unsafe/types/UTF8StringPropertyCheckSuite.scala:195:15: "orgin" is a misspelling of "origin"
core/src/main/scala/org/apache/spark/api/python/PythonRDD.scala:621:39: "gauranteed" is a misspelling of "guaranteed"
core/src/main/scala/org/apache/spark/status/storeTypes.scala:113:29: "ect" is a misspelling of "etc"
core/src/main/scala/org/apache/spark/storage/DiskStore.scala:282:18: "transfered" is a misspelling of "transferred"
core/src/main/scala/org/apache/spark/util/ListenerBus.scala:64:17: "overriden" is a misspelling of "overridden"
core/src/test/scala/org/apache/spark/ShuffleSuite.scala:211:7: "substracted" is a misspelling of "subtracted"
core/src/test/scala/org/apache/spark/scheduler/DAGSchedulerSuite.scala:1922:49: "agriculteur" is a misspelling of "agriculture"
core/src/test/scala/org/apache/spark/scheduler/DAGSchedulerSuite.scala:2468:84: "truely" is a misspelling of "truly"
core/src/test/scala/org/apache/spark/storage/FlatmapIteratorSuite.scala:25:18: "persistance" is a misspelling of "persistence"
core/src/test/scala/org/apache/spark/storage/FlatmapIteratorSuite.scala:26:69: "persistance" is a misspelling of "persistence"
data/streaming/AFINN-111.txt:1219:0: "humerous" is a misspelling of "humorous"
dev/run-pip-tests:55:28: "enviroments" is a misspelling of "environments"
dev/run-pip-tests:91:37: "virutal" is a misspelling of "virtual"
dev/merge_spark_pr.py:377:72: "accross" is a misspelling of "across"
dev/merge_spark_pr.py:378:66: "accross" is a misspelling of "across"
dev/run-pip-tests:126:25: "enviroments" is a misspelling of "environments"
docs/configuration.md:1830:82: "overriden" is a misspelling of "overridden"
docs/structured-streaming-programming-guide.md:525:45: "processs" is a misspelling of "processes"
docs/structured-streaming-programming-guide.md:1165:61: "BETWEN" is a misspelling of "BETWEEN"
docs/sql-programming-guide.md:1891:810: "behaivor" is a misspelling of "behavior"
examples/src/main/python/sql/arrow.py:98:8: "substract" is a misspelling of "subtract"
examples/src/main/python/sql/arrow.py:103:27: "substract" is a misspelling of "subtract"
licenses/LICENSE-heapq.txt:5:63: "Stichting" is a misspelling of "Stitching"
licenses/LICENSE-heapq.txt:6:2: "Mathematisch" is a misspelling of "Mathematics"
licenses/LICENSE-heapq.txt:262:29: "Stichting" is a misspelling of "Stitching"
licenses/LICENSE-heapq.txt:262:39: "Mathematisch" is a misspelling of "Mathematics"
licenses/LICENSE-heapq.txt:269:49: "Stichting" is a misspelling of "Stitching"
licenses/LICENSE-heapq.txt:269:59: "Mathematisch" is a misspelling of "Mathematics"
licenses/LICENSE-heapq.txt:274:2: "STICHTING" is a misspelling of "STITCHING"
licenses/LICENSE-heapq.txt:274:12: "MATHEMATISCH" is a misspelling of "MATHEMATICS"
licenses/LICENSE-heapq.txt:276:29: "STICHTING" is a misspelling of "STITCHING"
licenses/LICENSE-heapq.txt:276:39: "MATHEMATISCH" is a misspelling of "MATHEMATICS"
licenses-binary/LICENSE-heapq.txt:5:63: "Stichting" is a misspelling of "Stitching"
licenses-binary/LICENSE-heapq.txt:6:2: "Mathematisch" is a misspelling of "Mathematics"
licenses-binary/LICENSE-heapq.txt:262:29: "Stichting" is a misspelling of "Stitching"
licenses-binary/LICENSE-heapq.txt:262:39: "Mathematisch" is a misspelling of "Mathematics"
licenses-binary/LICENSE-heapq.txt:269:49: "Stichting" is a misspelling of "Stitching"
licenses-binary/LICENSE-heapq.txt:269:59: "Mathematisch" is a misspelling of "Mathematics"
licenses-binary/LICENSE-heapq.txt:274:2: "STICHTING" is a misspelling of "STITCHING"
licenses-binary/LICENSE-heapq.txt:274:12: "MATHEMATISCH" is a misspelling of "MATHEMATICS"
licenses-binary/LICENSE-heapq.txt:276:29: "STICHTING" is a misspelling of "STITCHING"
licenses-binary/LICENSE-heapq.txt:276:39: "MATHEMATISCH" is a misspelling of "MATHEMATICS"
mllib/src/main/resources/org/apache/spark/ml/feature/stopwords/hungarian.txt:170:0: "teh" is a misspelling of "the"
mllib/src/main/resources/org/apache/spark/ml/feature/stopwords/portuguese.txt:53:0: "eles" is a misspelling of "eels"
mllib/src/main/scala/org/apache/spark/ml/stat/Summarizer.scala:99:20: "Euclidian" is a misspelling of "Euclidean"
mllib/src/main/scala/org/apache/spark/ml/stat/Summarizer.scala:539:11: "Euclidian" is a misspelling of "Euclidean"
mllib/src/main/scala/org/apache/spark/mllib/clustering/LDAOptimizer.scala:77:36: "Teh" is a misspelling of "The"
mllib/src/main/scala/org/apache/spark/mllib/clustering/StreamingKMeans.scala:230:24: "inital" is a misspelling of "initial"
mllib/src/main/scala/org/apache/spark/mllib/stat/MultivariateOnlineSummarizer.scala:276:9: "Euclidian" is a misspelling of "Euclidean"
mllib/src/test/scala/org/apache/spark/ml/clustering/KMeansSuite.scala:237:26: "descripiton" is a misspelling of "descriptions"
python/pyspark/find_spark_home.py:30:13: "enviroment" is a misspelling of "environment"
python/pyspark/context.py:937:12: "supress" is a misspelling of "suppress"
python/pyspark/context.py:938:12: "supress" is a misspelling of "suppress"
python/pyspark/context.py:939:12: "supress" is a misspelling of "suppress"
python/pyspark/context.py:940:12: "supress" is a misspelling of "suppress"
python/pyspark/heapq3.py:6:63: "Stichting" is a misspelling of "Stitching"
python/pyspark/heapq3.py:7:2: "Mathematisch" is a misspelling of "Mathematics"
python/pyspark/heapq3.py:263:29: "Stichting" is a misspelling of "Stitching"
python/pyspark/heapq3.py:263:39: "Mathematisch" is a misspelling of "Mathematics"
python/pyspark/heapq3.py:270:49: "Stichting" is a misspelling of "Stitching"
python/pyspark/heapq3.py:270:59: "Mathematisch" is a misspelling of "Mathematics"
python/pyspark/heapq3.py:275:2: "STICHTING" is a misspelling of "STITCHING"
python/pyspark/heapq3.py:275:12: "MATHEMATISCH" is a misspelling of "MATHEMATICS"
python/pyspark/heapq3.py:277:29: "STICHTING" is a misspelling of "STITCHING"
python/pyspark/heapq3.py:277:39: "MATHEMATISCH" is a misspelling of "MATHEMATICS"
python/pyspark/heapq3.py:713:8: "probabilty" is a misspelling of "probability"
python/pyspark/ml/clustering.py:1038:8: "Currenlty" is a misspelling of "Currently"
python/pyspark/ml/stat.py:339:23: "Euclidian" is a misspelling of "Euclidean"
python/pyspark/ml/regression.py:1378:20: "paramter" is a misspelling of "parameter"
python/pyspark/mllib/stat/_statistics.py:262:8: "probabilty" is a misspelling of "probability"
python/pyspark/rdd.py:1363:32: "paramter" is a misspelling of "parameter"
python/pyspark/streaming/tests.py:825:42: "retuns" is a misspelling of "returns"
python/pyspark/sql/tests.py:768:29: "initalization" is a misspelling of "initialization"
python/pyspark/sql/tests.py:3616:31: "initalize" is a misspelling of "initialize"
resource-managers/mesos/src/main/scala/org/apache/spark/scheduler/cluster/mesos/MesosSchedulerBackendUtil.scala:120:39: "arbitary" is a misspelling of "arbitrary"
resource-managers/mesos/src/test/scala/org/apache/spark/deploy/mesos/MesosClusterDispatcherArgumentsSuite.scala:26:45: "sucessfully" is a misspelling of "successfully"
resource-managers/mesos/src/main/scala/org/apache/spark/scheduler/cluster/mesos/MesosSchedulerUtils.scala:358:27: "constaints" is a misspelling of "constraints"
resource-managers/yarn/src/test/scala/org/apache/spark/deploy/yarn/YarnClusterSuite.scala:111:24: "senstive" is a misspelling of "sensitive"
sql/catalyst/src/main/scala/org/apache/spark/sql/catalyst/catalog/SessionCatalog.scala:1063:5: "overwirte" is a misspelling of "overwrite"
sql/catalyst/src/main/scala/org/apache/spark/sql/catalyst/expressions/datetimeExpressions.scala:1348:17: "compatability" is a misspelling of "compatibility"
sql/catalyst/src/main/scala/org/apache/spark/sql/catalyst/plans/logical/basicLogicalOperators.scala:77:36: "paramter" is a misspelling of "parameter"
sql/catalyst/src/main/scala/org/apache/spark/sql/internal/SQLConf.scala:1374:22: "precendence" is a misspelling of "precedence"
sql/catalyst/src/test/scala/org/apache/spark/sql/catalyst/analysis/AnalysisSuite.scala:238:27: "unnecassary" is a misspelling of "unnecessary"
sql/catalyst/src/test/scala/org/apache/spark/sql/catalyst/expressions/ConditionalExpressionSuite.scala:212:17: "whn" is a misspelling of "when"
sql/core/src/main/scala/org/apache/spark/sql/execution/streaming/StreamingSymmetricHashJoinHelper.scala:147:60: "timestmap" is a misspelling of "timestamp"
sql/core/src/test/scala/org/apache/spark/sql/TPCDSQuerySuite.scala:150:45: "precentage" is a misspelling of "percentage"
sql/core/src/test/scala/org/apache/spark/sql/execution/datasources/csv/CSVInferSchemaSuite.scala:135:29: "infered" is a misspelling of "inferred"
sql/hive/src/test/resources/golden/udf_instr-1-2e76f819563dbaba4beb51e3a130b922:1:52: "occurance" is a misspelling of "occurrence"
sql/hive/src/test/resources/golden/udf_instr-2-32da357fc754badd6e3898dcc8989182:1:52: "occurance" is a misspelling of "occurrence"
sql/hive/src/test/resources/golden/udf_locate-1-6e41693c9c6dceea4d7fab4c02884e4e:1:63: "occurance" is a misspelling of "occurrence"
sql/hive/src/test/resources/golden/udf_locate-2-d9b5934457931447874d6bb7c13de478:1:63: "occurance" is a misspelling of "occurrence"
sql/hive/src/test/resources/golden/udf_translate-2-f7aa38a33ca0df73b7a1e6b6da4b7fe8:9:79: "occurence" is a misspelling of "occurrence"
sql/hive/src/test/resources/golden/udf_translate-2-f7aa38a33ca0df73b7a1e6b6da4b7fe8:13:110: "occurence" is a misspelling of "occurrence"
sql/hive/src/test/resources/ql/src/test/queries/clientpositive/annotate_stats_join.q:46:105: "distint" is a misspelling of "distinct"
sql/hive/src/test/resources/ql/src/test/queries/clientpositive/auto_sortmerge_join_11.q:29:3: "Currenly" is a misspelling of "Currently"
sql/hive/src/test/resources/ql/src/test/queries/clientpositive/avro_partitioned.q:72:15: "existant" is a misspelling of "existent"
sql/hive/src/test/resources/ql/src/test/queries/clientpositive/decimal_udf.q:25:3: "substraction" is a misspelling of "subtraction"
sql/hive/src/test/resources/ql/src/test/queries/clientpositive/groupby2_map_multi_distinct.q:16:51: "funtion" is a misspelling of "function"
sql/hive/src/test/resources/ql/src/test/queries/clientpositive/groupby_sort_8.q:15:30: "issueing" is a misspelling of "issuing"
sql/hive/src/test/scala/org/apache/spark/sql/sources/HadoopFsRelationTest.scala:669:52: "wiht" is a misspelling of "with"
sql/hive-thriftserver/src/main/java/org/apache/hive/service/cli/session/HiveSessionImpl.java:474:9: "Refering" is a misspelling of "Referring"
```

### after

```
$ misspell . | grep -v '.js'
common/network-common/src/main/java/org/apache/spark/network/util/AbstractFileRegion.java:27:20: "transfered" is a misspelling of "transferred"
core/src/main/scala/org/apache/spark/status/storeTypes.scala:113:29: "ect" is a misspelling of "etc"
core/src/test/scala/org/apache/spark/scheduler/DAGSchedulerSuite.scala:1922:49: "agriculteur" is a misspelling of "agriculture"
data/streaming/AFINN-111.txt:1219:0: "humerous" is a misspelling of "humorous"
licenses/LICENSE-heapq.txt:5:63: "Stichting" is a misspelling of "Stitching"
licenses/LICENSE-heapq.txt:6:2: "Mathematisch" is a misspelling of "Mathematics"
licenses/LICENSE-heapq.txt:262:29: "Stichting" is a misspelling of "Stitching"
licenses/LICENSE-heapq.txt:262:39: "Mathematisch" is a misspelling of "Mathematics"
licenses/LICENSE-heapq.txt:269:49: "Stichting" is a misspelling of "Stitching"
licenses/LICENSE-heapq.txt:269:59: "Mathematisch" is a misspelling of "Mathematics"
licenses/LICENSE-heapq.txt:274:2: "STICHTING" is a misspelling of "STITCHING"
licenses/LICENSE-heapq.txt:274:12: "MATHEMATISCH" is a misspelling of "MATHEMATICS"
licenses/LICENSE-heapq.txt:276:29: "STICHTING" is a misspelling of "STITCHING"
licenses/LICENSE-heapq.txt:276:39: "MATHEMATISCH" is a misspelling of "MATHEMATICS"
licenses-binary/LICENSE-heapq.txt:5:63: "Stichting" is a misspelling of "Stitching"
licenses-binary/LICENSE-heapq.txt:6:2: "Mathematisch" is a misspelling of "Mathematics"
licenses-binary/LICENSE-heapq.txt:262:29: "Stichting" is a misspelling of "Stitching"
licenses-binary/LICENSE-heapq.txt:262:39: "Mathematisch" is a misspelling of "Mathematics"
licenses-binary/LICENSE-heapq.txt:269:49: "Stichting" is a misspelling of "Stitching"
licenses-binary/LICENSE-heapq.txt:269:59: "Mathematisch" is a misspelling of "Mathematics"
licenses-binary/LICENSE-heapq.txt:274:2: "STICHTING" is a misspelling of "STITCHING"
licenses-binary/LICENSE-heapq.txt:274:12: "MATHEMATISCH" is a misspelling of "MATHEMATICS"
licenses-binary/LICENSE-heapq.txt:276:29: "STICHTING" is a misspelling of "STITCHING"
licenses-binary/LICENSE-heapq.txt:276:39: "MATHEMATISCH" is a misspelling of "MATHEMATICS"
mllib/src/main/resources/org/apache/spark/ml/feature/stopwords/hungarian.txt:170:0: "teh" is a misspelling of "the"
mllib/src/main/resources/org/apache/spark/ml/feature/stopwords/portuguese.txt:53:0: "eles" is a misspelling of "eels"
mllib/src/main/scala/org/apache/spark/ml/stat/Summarizer.scala:99:20: "Euclidian" is a misspelling of "Euclidean"
mllib/src/main/scala/org/apache/spark/ml/stat/Summarizer.scala:539:11: "Euclidian" is a misspelling of "Euclidean"
mllib/src/main/scala/org/apache/spark/mllib/clustering/LDAOptimizer.scala:77:36: "Teh" is a misspelling of "The"
mllib/src/main/scala/org/apache/spark/mllib/stat/MultivariateOnlineSummarizer.scala:276:9: "Euclidian" is a misspelling of "Euclidean"
python/pyspark/heapq3.py:6:63: "Stichting" is a misspelling of "Stitching"
python/pyspark/heapq3.py:7:2: "Mathematisch" is a misspelling of "Mathematics"
python/pyspark/heapq3.py:263:29: "Stichting" is a misspelling of "Stitching"
python/pyspark/heapq3.py:263:39: "Mathematisch" is a misspelling of "Mathematics"
python/pyspark/heapq3.py:270:49: "Stichting" is a misspelling of "Stitching"
python/pyspark/heapq3.py:270:59: "Mathematisch" is a misspelling of "Mathematics"
python/pyspark/heapq3.py:275:2: "STICHTING" is a misspelling of "STITCHING"
python/pyspark/heapq3.py:275:12: "MATHEMATISCH" is a misspelling of "MATHEMATICS"
python/pyspark/heapq3.py:277:29: "STICHTING" is a misspelling of "STITCHING"
python/pyspark/heapq3.py:277:39: "MATHEMATISCH" is a misspelling of "MATHEMATICS"
python/pyspark/ml/stat.py:339:23: "Euclidian" is a misspelling of "Euclidean"
```

Closes #22070 from seratch/fix-typo.

Authored-by: Kazuhiro Sera <seratch@gmail.com>
Signed-off-by: Sean Owen <srowen@gmail.com>
2018-08-11 21:23:36 -05:00
Xingbo Jiang e3486e1b95 [SPARK-24795][CORE] Implement barrier execution mode
## What changes were proposed in this pull request?

Propose new APIs and modify job/task scheduling to support barrier execution mode, which requires all tasks in a same barrier stage start at the same time, and retry all tasks in case some tasks fail in the middle. The barrier execution mode is useful for some ML/DL workloads.

The proposed API changes include:

- `RDDBarrier` that marks an RDD as barrier (Spark must launch all the tasks together for the current stage).
- `BarrierTaskContext` that support global sync of all tasks in a barrier stage, and provide extra `BarrierTaskInfo`s.

In DAGScheduler, we retry all tasks of a barrier stage in case some tasks fail in the middle, this is achieved by unregistering map outputs for a shuffleId (for ShuffleMapStage) or clear the finished partitions in an active job (for ResultStage).

## How was this patch tested?

Add `RDDBarrierSuite` to ensure we convert RDDs correctly;
Add new test cases in `DAGSchedulerSuite` to ensure we do task scheduling correctly;
Add new test cases in `SparkContextSuite` to ensure the barrier execution mode actually works (both under local mode and local cluster mode).
Add new test cases in `TaskSchedulerImplSuite` to ensure we schedule tasks for barrier taskSet together.

Author: Xingbo Jiang <xingbo.jiang@databricks.com>

Closes #21758 from jiangxb1987/barrier-execution-mode.
2018-07-26 12:09:01 -07:00
xueyu f71e8da5ef [SPARK-24566][CORE] Fix spark.storage.blockManagerSlaveTimeoutMs default config
This PR use spark.network.timeout in place of spark.storage.blockManagerSlaveTimeoutMs when it is not configured, as configuration doc said

manual test

Author: xueyu <278006819@qq.com>

Closes #21575 from xueyumusic/slaveTimeOutConfig.
2018-06-29 10:44:49 -07:00
“attilapiros” b56e9c613f [SPARK-16630][YARN] Blacklist a node if executors won't launch on it
## What changes were proposed in this pull request?

This change extends YARN resource allocation handling with blacklisting functionality.
This handles cases when node is messed up or misconfigured such that a container won't launch on it. Before this change backlisting only focused on task execution but this change introduces YarnAllocatorBlacklistTracker which tracks allocation failures per host (when enabled via "spark.yarn.blacklist.executor.launch.blacklisting.enabled").

## How was this patch tested?

### With unit tests

Including a new suite: YarnAllocatorBlacklistTrackerSuite.

#### Manually

It was tested on a cluster by deleting the Spark jars on one of the node.

#### Behaviour before these changes

Starting Spark as:
```
spark2-shell --master yarn --deploy-mode client --num-executors 4  --conf spark.executor.memory=4g --conf "spark.yarn.max.executor.failures=6"
```

Log is:
```
18/04/12 06:49:36 INFO yarn.ApplicationMaster: Final app status: FAILED, exitCode: 11, (reason: Max number of executor failures (6) reached)
18/04/12 06:49:39 INFO yarn.ApplicationMaster: Unregistering ApplicationMaster with FAILED (diag message: Max number of executor failures (6) reached)
18/04/12 06:49:39 INFO impl.AMRMClientImpl: Waiting for application to be successfully unregistered.
18/04/12 06:49:39 INFO yarn.ApplicationMaster: Deleting staging directory hdfs://apiros-1.gce.test.com:8020/user/systest/.sparkStaging/application_1523459048274_0016
18/04/12 06:49:39 INFO util.ShutdownHookManager: Shutdown hook called
```

#### Behaviour after these changes

Starting Spark as:
```
spark2-shell --master yarn --deploy-mode client --num-executors 4  --conf spark.executor.memory=4g --conf "spark.yarn.max.executor.failures=6" --conf "spark.yarn.blacklist.executor.launch.blacklisting.enabled=true"
```

And the log is:
```
18/04/13 05:37:43 INFO yarn.YarnAllocator: Will request 1 executor container(s), each with 1 core(s) and 4505 MB memory (including 409 MB of overhead)
18/04/13 05:37:43 INFO yarn.YarnAllocator: Submitted 1 unlocalized container requests.
18/04/13 05:37:43 INFO yarn.YarnAllocator: Launching container container_1523459048274_0025_01_000008 on host apiros-4.gce.test.com for executor with ID 6
18/04/13 05:37:43 INFO yarn.YarnAllocator: Received 1 containers from YARN, launching executors on 1 of them.
18/04/13 05:37:43 INFO yarn.YarnAllocator: Completed container container_1523459048274_0025_01_000007 on host: apiros-4.gce.test.com (state: COMPLETE, exit status: 1)
18/04/13 05:37:43 INFO yarn.YarnAllocatorBlacklistTracker: blacklisting host as YARN allocation failed: apiros-4.gce.test.com
18/04/13 05:37:43 INFO yarn.YarnAllocatorBlacklistTracker: adding nodes to YARN application master's blacklist: List(apiros-4.gce.test.com)
18/04/13 05:37:43 WARN yarn.YarnAllocator: Container marked as failed: container_1523459048274_0025_01_000007 on host: apiros-4.gce.test.com. Exit status: 1. Diagnostics: Exception from container-launch.
Container id: container_1523459048274_0025_01_000007
Exit code: 1
Stack trace: ExitCodeException exitCode=1:
        at org.apache.hadoop.util.Shell.runCommand(Shell.java:604)
        at org.apache.hadoop.util.Shell.run(Shell.java:507)
        at org.apache.hadoop.util.Shell$ShellCommandExecutor.execute(Shell.java:789)
        at org.apache.hadoop.yarn.server.nodemanager.DefaultContainerExecutor.launchContainer(DefaultContainerExecutor.java:213)
        at org.apache.hadoop.yarn.server.nodemanager.containermanager.launcher.ContainerLaunch.call(ContainerLaunch.java:302)
        at org.apache.hadoop.yarn.server.nodemanager.containermanager.launcher.ContainerLaunch.call(ContainerLaunch.java:82)
        at java.util.concurrent.FutureTask.run(FutureTask.java:266)
        at java.util.concurrent.ThreadPoolExecutor.runWorker(ThreadPoolExecutor.java:1149)
        at java.util.concurrent.ThreadPoolExecutor$Worker.run(ThreadPoolExecutor.java:624)
        at java.lang.Thread.run(Thread.java:748)
```

Where the most important part is:

```
18/04/13 05:37:43 INFO yarn.YarnAllocatorBlacklistTracker: blacklisting host as YARN allocation failed: apiros-4.gce.test.com
18/04/13 05:37:43 INFO yarn.YarnAllocatorBlacklistTracker: adding nodes to YARN application master's blacklist: List(apiros-4.gce.test.com)
```

And execution was continued (no shutdown called).

### Testing the backlisting of the whole cluster

Starting Spark with YARN blacklisting enabled then removing a the Spark core jar one by one from all the cluster nodes. Then executing a simple spark job which fails checking the yarn log the expected exit status is contained:

```
18/06/15 01:07:10 INFO yarn.ApplicationMaster: Final app status: FAILED, exitCode: 11, (reason: Due to executor failures all available nodes are blacklisted)
18/06/15 01:07:13 INFO util.ShutdownHookManager: Shutdown hook called
```

Author: “attilapiros” <piros.attila.zsolt@gmail.com>

Closes #21068 from attilapiros/SPARK-16630.
2018-06-21 09:17:18 -05:00
Jacek Laskowski 495d8cf09a [SPARK-24490][WEBUI] Use WebUI.addStaticHandler in web UIs
`WebUI` defines `addStaticHandler` that web UIs don't use (and simply introduce duplication). Let's clean them up and remove duplications.

Local build and waiting for Jenkins

Author: Jacek Laskowski <jacek@japila.pl>

Closes #21510 from jaceklaskowski/SPARK-24490-Use-WebUI.addStaticHandler.
2018-06-15 09:59:02 -07:00
Stavros Kontopoulos 22df953f6b [SPARK-24326][MESOS] add support for local:// scheme for the app jar
## What changes were proposed in this pull request?

* Adds support for local:// scheme like in k8s case for image based deployments where the jar is already in the image. Affects cluster mode and the mesos dispatcher.  Covers also file:// scheme. Keeps the default case where jar resolution happens on the host.

## How was this patch tested?

Dispatcher image with the patch, use it to start DC/OS Spark service:
skonto/spark-local-disp:test

Test image with my application jar located at the root folder:
skonto/spark-local:test

Dockerfile for that image.

From mesosphere/spark:2.3.0-2.2.1-2-hadoop-2.6
COPY spark-examples_2.11-2.2.1.jar /
WORKDIR /opt/spark/dist

Tests:

The following work as expected:

* local normal example
```
dcos spark run --submit-args="--conf spark.mesos.appJar.local.resolution.mode=container --conf spark.executor.memory=1g --conf spark.mesos.executor.docker.image=skonto/spark-local:test
 --conf spark.executor.cores=2 --conf spark.cores.max=8
 --class org.apache.spark.examples.SparkPi local:///spark-examples_2.11-2.2.1.jar"
```

* make sure the flag does not affect other uris
```
dcos spark run --submit-args="--conf spark.mesos.appJar.local.resolution.mode=container --conf spark.executor.memory=1g  --conf spark.executor.cores=2 --conf spark.cores.max=8
 --class org.apache.spark.examples.SparkPi https://s3-eu-west-1.amazonaws.com/fdp-stavros-test/spark-examples_2.11-2.1.1.jar"
```

* normal example no local
```
dcos spark run --submit-args="--conf spark.executor.memory=1g  --conf spark.executor.cores=2 --conf spark.cores.max=8
 --class org.apache.spark.examples.SparkPi https://s3-eu-west-1.amazonaws.com/fdp-stavros-test/spark-examples_2.11-2.1.1.jar"

```

The following fails

 * uses local with no setting, default is host.
```
dcos spark run --submit-args="--conf spark.executor.memory=1g --conf spark.mesos.executor.docker.image=skonto/spark-local:test
  --conf spark.executor.cores=2 --conf spark.cores.max=8
  --class org.apache.spark.examples.SparkPi local:///spark-examples_2.11-2.2.1.jar"
```
![image](https://user-images.githubusercontent.com/7945591/40283021-8d349762-5c80-11e8-9d62-2a61a4318fd5.png)

Author: Stavros Kontopoulos <stavros.kontopoulos@lightbend.com>

Closes #21378 from skonto/local-upstream.
2018-05-31 21:25:45 -07:00
Shixiong Zhu 53c06ddabb [SPARK-24332][SS][MESOS] Fix places reading 'spark.network.timeout' as milliseconds
## What changes were proposed in this pull request?

This PR replaces `getTimeAsMs` with `getTimeAsSeconds` to fix the issue that reading "spark.network.timeout" using a wrong time unit when the user doesn't specify a time out.

## How was this patch tested?

Jenkins

Author: Shixiong Zhu <zsxwing@gmail.com>

Closes #21382 from zsxwing/fix-network-timeout-conf.
2018-05-24 13:00:24 -07:00
Marco Gaido 84d31aa5d4 [SPARK-24209][SHS] Automatic retrieve proxyBase from Knox headers
## What changes were proposed in this pull request?

The PR retrieves the proxyBase automatically from the header `X-Forwarded-Context` (if available). This is the header used by Knox to inform the proxied service about the base path.

This provides 0-configuration support for Knox gateway (instead of having to properly set `spark.ui.proxyBase`) and it allows to access directly SHS when it is proxied by Knox. In the previous scenario, indeed, after setting `spark.ui.proxyBase`, direct access to SHS was not working fine (due to bad link generated).

## How was this patch tested?

added UT + manual tests

Author: Marco Gaido <marcogaido91@gmail.com>

Closes #21268 from mgaido91/SPARK-24209.
2018-05-21 18:11:05 -07:00
Bounkong Khamphousone 6782359a04 [SPARK-23941][MESOS] Mesos task failed on specific spark app name
## What changes were proposed in this pull request?
Shell escaped the name passed to spark-submit and change how conf attributes are shell escaped.

## How was this patch tested?
This test has been tested manually with Hive-on-spark with mesos or with the use case described in the issue with the sparkPi application with a custom name which contains illegal shell characters.

With this PR, hive-on-spark on mesos works like a charm with hive 3.0.0-SNAPSHOT.

I state that this contribution is my original work and that I license the work to the project under the project’s open source license

Author: Bounkong Khamphousone <bounkong.khamphousone@ebiznext.com>

Closes #21014 from tiboun/fix/SPARK-23941.
2018-05-01 08:28:21 -07:00
Devaraj K 007ae6878f [SPARK-24003][CORE] Add support to provide spark.executor.extraJavaOptions in terms of App Id and/or Executor Id's
## What changes were proposed in this pull request?

Added support to specify the 'spark.executor.extraJavaOptions' value in terms of the `{{APP_ID}}` and/or `{{EXECUTOR_ID}}`,  `{{APP_ID}}` will be replaced by Application Id and `{{EXECUTOR_ID}}` will be replaced by Executor Id while starting the executor.

## How was this patch tested?

I have verified this by checking the executor process command and gc logs. I verified the same in different deployment modes(Standalone, YARN, Mesos) client and cluster modes.

Author: Devaraj K <devaraj@apache.org>

Closes #21088 from devaraj-kavali/SPARK-24003.
2018-04-30 13:40:03 -07:00
Marcelo Vanzin 3cb82047f2 [SPARK-22941][CORE] Do not exit JVM when submit fails with in-process launcher.
The current in-process launcher implementation just calls the SparkSubmit
object, which, in case of errors, will more often than not exit the JVM.
This is not desirable since this launcher is meant to be used inside other
applications, and that would kill the application.

The change turns SparkSubmit into a class, and abstracts aways some of
the functionality used to print error messages and abort the submission
process. The default implementation uses the logging system for messages,
and throws exceptions for errors. As part of that I also moved some code
that doesn't really belong in SparkSubmit to a better location.

The command line invocation of spark-submit now uses a special implementation
of the SparkSubmit class that overrides those behaviors to do what is expected
from the command line version (print to the terminal, exit the JVM, etc).

A lot of the changes are to replace calls to methods such as "printErrorAndExit"
with the new API.

As part of adding tests for this, I had to fix some small things in the
launcher option parser so that things like "--version" can work when
used in the launcher library.

There is still code that prints directly to the terminal, like all the
Ivy-related code in SparkSubmitUtils, and other areas where some re-factoring
would help, like the CommandLineUtils class, but I chose to leave those
alone to keep this change more focused.

Aside from existing and added unit tests, I ran command line tools with
a bunch of different arguments to make sure messages and errors behave
like before.

Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #20925 from vanzin/SPARK-22941.
2018-04-11 10:13:44 -05:00
Marcelo Vanzin 5fa4384711 [SPARK-23361][YARN] Allow AM to restart after initial tokens expire.
Currently, the Spark AM relies on the initial set of tokens created by
the submission client to be able to talk to HDFS and other services that
require delegation tokens. This means that after those tokens expire, a
new AM will fail to start (e.g. when there is an application failure and
re-attempts are enabled).

This PR makes it so that the first thing the AM does when the user provides
a principal and keytab is to create new delegation tokens for use. This
makes sure that the AM can be started irrespective of how old the original
token set is. It also allows all of the token management to be done by the
AM - there is no need for the submission client to set configuration values
to tell the AM when to renew tokens.

Note that even though in this case the AM will not be using the delegation
tokens created by the submission client, those tokens still need to be provided
to YARN, since they are used to do log aggregation.

To be able to re-use the code in the AMCredentialRenewal for the above
purposes, I refactored that class a bit so that it can fetch tokens into
a pre-defined UGI, insted of always logging in.

Another issue with re-attempts is that, after the fix that allows the AM
to restart correctly, new executors would get confused about when to
update credentials, because the credential updater used the update time
initially set up by the submission code. This could make the executor
fail to update credentials in time, since that value would be very out
of date in the situation described in the bug.

To fix that, I changed the YARN code to use the new RPC-based mechanism
for distributing tokens to executors. This allowed the old credential
updater code to be removed, and a lot of code in the renewer to be
simplified.

I also made two currently hardcoded values (the renewal time ratio, and
the retry wait) configurable; while this probably never needs to be set
by anyone in a production environment, it helps with testing; that's also
why they're not documented.

Tested on real cluster with a specially crafted application to test this
functionality: checked proper access to HDFS, Hive and HBase in cluster
mode with token renewal on and AM restarts. Tested things still work in
client mode too.

Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #20657 from vanzin/SPARK-23361.
2018-03-23 13:59:21 +08:00
Rob Vesse 7f10cf83f3 [SPARK-16501][MESOS] Allow providing Mesos principal & secret via files
This commit modifies the Mesos submission client to allow the principal
and secret to be provided indirectly via files.  The path to these files
can be specified either via Spark configuration or via environment
variable.

Assuming these files are appropriately protected by FS/OS permissions
this means we don't ever leak the actual values in process info like ps

Environment variable specification is useful because it allows you to
interpolate the location of this file when using per-user Mesos
credentials.

For some background as to why we have taken this approach I will briefly describe our set up.  On our systems we provide each authorised user account with their own Mesos credentials to provide certain security and audit guarantees to our customers. These credentials are managed by a central Secret management service. In our `spark-env.sh` we determine the appropriate secret and principal files to use depending on the user who is invoking Spark hence the need to inject these via environment variables as well as by configuration properties. So we set these environment variables appropriately and our Spark read in the contents of those files to authenticate itself with Mesos.

This is functionality we have been using it in production across multiple customer sites for some time. This has been in the field for around 18 months with no reported issues. These changes have been sufficient to meet our customer security and audit requirements.

We have been building and deploying custom builds of Apache Spark with various minor tweaks like this which we are now looking to contribute back into the community in order that we can rely upon stock Apache Spark builds and stop maintaining our own internal fork.

Author: Rob Vesse <rvesse@dotnetrdf.org>

Closes #20167 from rvesse/SPARK-16501.
2018-02-09 11:23:06 -08:00
gatorsmile 651f76153f [SPARK-23028] Bump master branch version to 2.4.0-SNAPSHOT
## What changes were proposed in this pull request?
This patch bumps the master branch version to `2.4.0-SNAPSHOT`.

## How was this patch tested?
N/A

Author: gatorsmile <gatorsmile@gmail.com>

Closes #20222 from gatorsmile/bump24.
2018-01-13 00:37:59 +08:00
Marcelo Vanzin cfcd746689 [SPARK-11035][CORE] Add in-process Spark app launcher.
This change adds a new launcher that allows applications to be run
in a separate thread in the same process as the calling code. To
achieve that, some code from the child process implementation was
moved to abstract classes that implement the common functionality,
and the new launcher inherits from those.

The new launcher was added as a new class, instead of implemented
as a new option to the existing SparkLauncher, to avoid ambigous
APIs. For example, SparkLauncher has ways to set the child app's
environment, modify SPARK_HOME, or control the logging of the
child process, none of which apply to in-process apps.

The in-process launcher has limitations: it needs Spark in the
context class loader of the calling thread, and it's bound by
Spark's current limitation of a single client-mode application
per JVM. It also relies on the recently added SparkApplication
trait to make sure different apps don't mess up each other's
configuration, so config isolation is currently limited to cluster mode.

I also chose to keep the same socket-based communication for in-process
apps, even though it might be possible to avoid it for in-process
mode. That helps both implementations share more code.

Tested with new and existing unit tests, and with a simple app that
uses the launcher; also made sure the app ran fine with older launcher
jar to check binary compatibility.

Author: Marcelo Vanzin <vanzin@cloudera.com>

Closes #19591 from vanzin/SPARK-11035.
2017-12-28 17:00:49 -06:00