Repository: spark
Updated Branches:
  refs/heads/master 4bf24f789 -> 2b961d880


SPARK-1492. Update Spark YARN docs to use spark-submit

Author: Sandy Ryza <[email protected]>

Closes #601 from sryza/sandy-spark-1492 and squashes the following commits:

5df1634 [Sandy Ryza] Address additional comments from Patrick.
be46d1f [Sandy Ryza] Address feedback from Marcelo and Patrick
867a3ea [Sandy Ryza] SPARK-1492. Update Spark YARN docs to use spark-submit


Project: http://git-wip-us.apache.org/repos/asf/spark/repo
Commit: http://git-wip-us.apache.org/repos/asf/spark/commit/2b961d88
Tree: http://git-wip-us.apache.org/repos/asf/spark/tree/2b961d88
Diff: http://git-wip-us.apache.org/repos/asf/spark/diff/2b961d88

Branch: refs/heads/master
Commit: 2b961d88079d7a3f9da63d5175d7b61f6dec762b
Parents: 4bf24f7
Author: Sandy Ryza <[email protected]>
Authored: Fri May 2 21:42:31 2014 -0700
Committer: Patrick Wendell <[email protected]>
Committed: Fri May 2 21:42:58 2014 -0700

----------------------------------------------------------------------
 docs/cluster-overview.md |  15 +++---
 docs/running-on-yarn.md  | 117 +++++++++++-------------------------------
 2 files changed, 38 insertions(+), 94 deletions(-)
----------------------------------------------------------------------


http://git-wip-us.apache.org/repos/asf/spark/blob/2b961d88/docs/cluster-overview.md
----------------------------------------------------------------------
diff --git a/docs/cluster-overview.md b/docs/cluster-overview.md
index b011679..79b0061 100644
--- a/docs/cluster-overview.md
+++ b/docs/cluster-overview.md
@@ -86,7 +86,7 @@ the `--help` flag. Here are a few examples of common options:
   --master local[8] \
   my-app.jar
 
-# Run on a Spark cluster
+# Run on a Spark standalone cluster
 ./bin/spark-submit \
   --class my.main.ClassName
   --master spark://mycluster:7077 \
@@ -118,21 +118,22 @@ If you are ever unclear where configuration options are 
coming from. fine-graine
 information can be printed by adding the `--verbose` option to 
`./spark-submit`.
 
 ### Advanced Dependency Management
-When using `./bin/spark-submit` jars will be automatically transferred to the 
cluster. For many
-users this is sufficient. However, advanced users can add jars by calling 
`addFile` or `addJar`
-on an existing SparkContext. This can be used to distribute JAR files 
(Java/Scala) or .egg and
-.zip libraries (Python) to executors. Spark uses the following URL scheme to 
allow different
+When using `./bin/spark-submit` the app jar along with any jars included with 
the `--jars` option
+will be automatically transferred to the cluster. `--jars` can also be used to 
distribute .egg and .zip
+libraries for Python to executors. Spark uses the following URL scheme to 
allow different
 strategies for disseminating jars:
 
 - **file:** - Absolute paths and `file:/` URIs are served by the driver's HTTP 
file server, and
-  every executor pulls the file from the driver HTTP server
+  every executor pulls the file from the driver HTTP server.
 - **hdfs:**, **http:**, **https:**, **ftp:** - these pull down files and JARs 
from the URI as expected
 - **local:** - a URI starting with local:/ is expected to exist as a local 
file on each worker node.  This
   means that no network IO will be incurred, and works well for large 
files/JARs that are pushed to each worker,
   or shared via NFS, GlusterFS, etc.
 
 Note that JARs and files are copied to the working directory for each 
SparkContext on the executor nodes.
-Over time this can use up a significant amount of space and will need to be 
cleaned up.
+This can use up a significant amount of space over time and will need to be 
cleaned up. With YARN, cleanup
+is handled automatically, and with Spark standalone, automatic cleanup can be 
configured with the
+`spark.worker.cleanup.appDataTtl` property.
 
 # Monitoring
 

http://git-wip-us.apache.org/repos/asf/spark/blob/2b961d88/docs/running-on-yarn.md
----------------------------------------------------------------------
diff --git a/docs/running-on-yarn.md b/docs/running-on-yarn.md
index 9765062..68183ee 100644
--- a/docs/running-on-yarn.md
+++ b/docs/running-on-yarn.md
@@ -5,27 +5,13 @@ title: Launching Spark on YARN
 
 Support for running on [YARN (Hadoop
 
NextGen)](http://hadoop.apache.org/docs/r2.0.2-alpha/hadoop-yarn/hadoop-yarn-site/YARN.html)
-was added to Spark in version 0.6.0, and improved in 0.7.0 and 0.8.0.
-
-# Building a YARN-Enabled Assembly JAR
-
-We need a consolidated Spark JAR (which bundles all the required dependencies) 
to run Spark jobs on a YARN cluster.
-This can be built by setting the Hadoop version and `SPARK_YARN` environment 
variable, as follows:
-
-    SPARK_HADOOP_VERSION=2.0.5-alpha SPARK_YARN=true sbt/sbt assembly
-
-The assembled JAR will be something like this:
-`./assembly/target/scala-{{site.SCALA_BINARY_VERSION}}/spark-assembly_{{site.SPARK_VERSION}}-hadoop2.0.5.jar`.
-
-The build process now also supports new YARN versions (2.2.x). See below.
+was added to Spark in version 0.6.0, and improved in subsequent releases.
 
 # Preparations
 
-- Building a YARN-enabled assembly (see above).
-- The assembled jar can be installed into HDFS or used locally.
-- Your application code must be packaged into a separate JAR file.
-
-If you want to test out the YARN deployment mode, you can use the current 
Spark examples. A 
`spark-examples_{{site.SCALA_BINARY_VERSION}}-{{site.SPARK_VERSION}}` file can 
be generated by running `sbt/sbt assembly`. NOTE: since the documentation 
you're reading is for Spark version {{site.SPARK_VERSION}}, we are assuming 
here that you have downloaded Spark {{site.SPARK_VERSION}} or checked it out of 
source control. If you are using a different version of Spark, the version 
numbers in the jar generated by the sbt package command will obviously be 
different.
+Running Spark-on-YARN requires a binary distribution of Spark which is built 
with YARN support.
+Binary distributions can be downloaded from the Spark project website. 
+To build Spark yourself, refer to the [building with maven 
guide](building-with-maven.html).
 
 # Configuration
 
@@ -44,86 +30,47 @@ System Properties:
 * `spark.yarn.max.executor.failures`, the maximum number of executor failures 
before failing the application. Default is the number of executors requested 
times 2 with minimum of 3.
 * `spark.yarn.historyServer.address`, the address of the Spark history server 
(i.e. host.com:18080). The address should not contain a scheme (http://). 
Defaults to not being set since the history server is an optional service. This 
address is given to the Yarn ResourceManager when the Spark application 
finishes to link the application from the ResourceManager UI to the Spark 
history server UI. 
 
+By default, Spark on YARN will use a Spark jar installed locally, but the 
Spark jar can also be in a world-readable location on HDFS. This allows YARN to 
cache it on nodes so that it doesn't need to be distributed each time an 
application runs. To point to a jar on HDFS, export SPARK_JAR=hdfs:///some/path.
+
 # Launching Spark on YARN
 
 Ensure that HADOOP_CONF_DIR or YARN_CONF_DIR points to the directory which 
contains the (client side) configuration files for the Hadoop cluster.
-These configs are used to connect to the cluster, write to the dfs, and 
connect to the YARN ResourceManager.
+These configs are used to write to the dfs and connect to the YARN 
ResourceManager.
 
 There are two deploy modes that can be used to launch Spark applications on 
YARN. In yarn-cluster mode, the Spark driver runs inside an application master 
process which is managed by YARN on the cluster, and the client can go away 
after initiating the application. In yarn-client mode, the driver runs in the 
client process, and the application master is only used for requesting 
resources from YARN.
 
 Unlike in Spark standalone and Mesos mode, in which the master's address is 
specified in the "master" parameter, in YARN mode the ResourceManager's address 
is picked up from the Hadoop configuration.  Thus, the master parameter is 
simply "yarn-client" or "yarn-cluster".
 
-The spark-submit script described in the [cluster mode 
overview](cluster-overview.html) provides the most straightforward way to 
submit a compiled Spark application to YARN in either deploy mode. For info on 
the lower-level invocations it uses, read ahead. For running spark-shell 
against YARN, skip down to the yarn-client section. 
-
-## Launching a Spark application with yarn-cluster mode.
-
-The command to launch the Spark application on the cluster is as follows:
-
-    SPARK_JAR=<SPARK_ASSEMBLY_JAR_FILE> ./bin/spark-class 
org.apache.spark.deploy.yarn.Client \
-      --jar <YOUR_APP_JAR_FILE> \
-      --class <APP_MAIN_CLASS> \
-      --arg <APP_MAIN_ARGUMENT> \
-      --num-executors <NUMBER_OF_EXECUTOR_PROCESSES> \
-      --driver-memory <MEMORY_FOR_ApplicationMaster> \
-      --executor-memory <MEMORY_PER_EXECUTOR> \
-      --executor-cores <CORES_PER_EXECUTOR> \
-      --name <application_name> \
-      --queue <queue_name> \
-      --addJars <any_local_files_used_in_SparkContext.addJar> \
-      --files <files_for_distributed_cache> \
-      --archives <archives_for_distributed_cache>
-
-To pass multiple arguments the "arg" option can be specified multiple times. 
For example:
-
-    # Build the Spark assembly JAR and the Spark examples JAR
-    $ SPARK_HADOOP_VERSION=2.0.5-alpha SPARK_YARN=true sbt/sbt assembly
-
-    # Configure logging
-    $ cp conf/log4j.properties.template conf/log4j.properties
-
-    # Submit Spark's ApplicationMaster to YARN's ResourceManager, and instruct 
Spark to run the SparkPi example
-    $ 
SPARK_JAR=./assembly/target/scala-{{site.SCALA_BINARY_VERSION}}/spark-assembly-{{site.SPARK_VERSION}}-hadoop2.0.5-alpha.jar
 \
-        ./bin/spark-class org.apache.spark.deploy.yarn.Client \
-          --jar 
examples/target/scala-{{site.SCALA_BINARY_VERSION}}/spark-examples-assembly-{{site.SPARK_VERSION}}.jar
 \
-          --class org.apache.spark.examples.SparkPi \
-          --arg yarn-cluster \
-          --arg 5 \
-          --num-executors 3 \
-          --driver-memory 4g \
-          --executor-memory 2g \
-          --executor-cores 1
-
-The above starts a YARN client program which starts the default Application 
Master. Then SparkPi will be run as a child thread of Application Master. The 
client will periodically poll the Application Master for status updates and 
display them in the console. The client will exit once your application has 
finished running.  Refer to the "Viewing Logs" section below for how to see 
driver and executor logs.
-
-Because the application is run on a remote machine where the Application 
Master is running, applications that involve local interaction, such as 
spark-shell, will not work.
-
-## Launching a Spark application with yarn-client mode.
-
-With yarn-client mode, the application will be launched locally, just like 
running an application or spark-shell on Local / Mesos / Standalone client 
mode. The launch method is also the same, just make sure to specify the master 
URL as "yarn-client". You also need to export the env value for SPARK_JAR.
+To launch a Spark application in yarn-cluster mode:
 
-Configuration in yarn-client mode:
+    ./bin/spark-submit --class path.to.your.Class --master yarn-cluster 
[options] <app jar> [app options]
+    
+For example:
 
-In order to tune executor cores/number/memory etc., you need to export 
environment variables or add them to the spark configuration file 
(./conf/spark_env.sh). The following are the list of options.
+    $ ./bin/spark-submit --class org.apache.spark.examples.SparkPi \
+        --master yarn-cluster \
+        --num-executors 3 \
+        --driver-memory 4g \
+        --executor-memory 2g \
+        --executor-cores 1
+        
examples/target/scala-{{site.SCALA_BINARY_VERSION}}/spark-examples-assembly-{{site.SPARK_VERSION}}.jar
 \
+        yarn-cluster 5
 
-* `SPARK_EXECUTOR_INSTANCES`, Number of executors to start (Default: 2)
-* `SPARK_EXECUTOR_CORES`, Number of cores per executor (Default: 1).
-* `SPARK_EXECUTOR_MEMORY`, Memory per executor (e.g. 1000M, 2G) (Default: 1G)
-* `SPARK_DRIVER_MEMORY`, Memory for driver (e.g. 1000M, 2G) (Default: 512 Mb)
-* `SPARK_YARN_APP_NAME`, The name of your application (Default: Spark)
-* `SPARK_YARN_QUEUE`, The YARN queue to use for allocation requests (Default: 
'default')
-* `SPARK_YARN_DIST_FILES`, Comma separated list of files to be distributed 
with the job.
-* `SPARK_YARN_DIST_ARCHIVES`, Comma separated list of archives to be 
distributed with the job.
+The above starts a YARN client program which starts the default Application 
Master. Then SparkPi will be run as a child thread of Application Master. The 
client will periodically poll the Application Master for status updates and 
display them in the console. The client will exit once your application has 
finished running.  Refer to the "Viewing Logs" section below for how to see 
driver and executor logs.
 
-For example:
+To launch a Spark application in yarn-client mode, do the same, but replace 
"yarn-cluster" with "yarn-client".  To run spark-shell:
 
-    
SPARK_JAR=./assembly/target/scala-{{site.SCALA_BINARY_VERSION}}/spark-assembly-{{site.SPARK_VERSION}}-hadoop2.0.5-alpha.jar
 \
-    ./bin/run-example org.apache.spark.examples.SparkPi yarn-client
+    $ MASTER=yarn-client ./bin/spark-shell
 
-or
+## Adding additional jars
 
-    
SPARK_JAR=./assembly/target/scala-{{site.SCALA_BINARY_VERSION}}/spark-assembly-{{site.SPARK_VERSION}}-hadoop2.0.5-alpha.jar
 \
-    MASTER=yarn-client ./bin/spark-shell
+In yarn-cluster mode, the driver runs on a different machine than the client, 
so SparkContext.addJar won't work out of the box with files that are local to 
the client. To make files on the client available to SparkContext.addJar, 
include them with the `--jars` option in the launch command. 
 
+    $ ./bin/spark-submit --class my.main.Class \
+        --master yarn-cluster \
+        --jars my-other-jar.jar,my-other-other-jar.jar
+        my-main-jar.jar
+        yarn-cluster 5
 
 # Viewing logs
 
@@ -135,13 +82,9 @@ will print out the contents of all log files from all 
containers from the given
 
 When log aggregation isn't turned on, logs are retained locally on each 
machine under YARN_APP_LOGS_DIR, which is usually configured to /tmp/logs or 
$HADOOP_HOME/logs/userlogs depending on the Hadoop version and installation. 
Viewing logs for a container requires going to the host that contains them and 
looking in this directory.  Subdirectories organize log files by application ID 
and container ID.
 
-# Building Spark for Hadoop/YARN 2.2.x
-
-See [Building Spark with Maven](building-with-maven.html) for instructions on 
how to build Spark using Maven.
-
 # Important notes
 
 - Before Hadoop 2.2, YARN does not support cores in container resource 
requests. Thus, when running against an earlier version, the numbers of cores 
given via command line arguments cannot be passed to YARN.  Whether core 
requests are honored in scheduling decisions depends on which scheduler is in 
use and how it is configured.
 - The local directories used by Spark executors will be the local directories 
configured for YARN (Hadoop YARN config yarn.nodemanager.local-dirs). If the 
user specifies spark.local.dir, it will be ignored.
 - The --files and --archives options support specifying file names with the # 
similar to Hadoop. For example you can specify: --files 
localtest.txt#appSees.txt and this will upload the file you have locally named 
localtest.txt into HDFS but this will be linked to by the name appSees.txt, and 
your application should use the name as appSees.txt to reference it when 
running on YARN.
-- The --addJars option allows the SparkContext.addJar function to work if you 
are using it with local files. It does not need to be used if you are using it 
with HDFS, HTTP, HTTPS, or FTP files.
+- The --jars option allows the SparkContext.addJar function to work if you are 
using it with local files and running in yarn-cluster mode. It does not need to 
be used if you are using it with HDFS, HTTP, HTTPS, or FTP files.

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