--- layout: global title: Running 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 subsequent releases. # Preparations 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 [Building Spark](building-spark.html). # Configuration Most of the configs are the same for Spark on YARN as for other deployment modes. See the [configuration page](configuration.html) for more information on those. These are configs that are specific to Spark on YARN. #### Spark Properties
Property Name | Default | Meaning |
---|---|---|
spark.yarn.applicationMaster.waitTries |
10 | Set the number of times the ApplicationMaster waits for the the Spark master and then also the number of tries it waits for the SparkContext to be initialized |
spark.yarn.submit.file.replication |
3 | HDFS replication level for the files uploaded into HDFS for the application. These include things like the Spark jar, the app jar, and any distributed cache files/archives. |
spark.yarn.preserve.staging.files |
false | Set to true to preserve the staged files (Spark jar, app jar, distributed cache files) at the end of the job rather then delete them. |
spark.yarn.scheduler.heartbeat.interval-ms |
5000 | The interval in ms in which the Spark application master heartbeats into the YARN ResourceManager. |
spark.yarn.max.executor.failures |
numExecutors * 2, with minimum of 3 | The maximum number of executor failures before failing the application. |
spark.yarn.historyServer.address |
(none) | 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. |
spark.yarn.dist.archives |
(none) | Comma separated list of archives to be extracted into the working directory of each executor. |
spark.yarn.dist.files |
(none) | Comma-separated list of files to be placed in the working directory of each executor. |
spark.yarn.executor.memoryOverhead |
executorMemory * 0.07, with minimum of 384 | The amount of off heap memory (in megabytes) to be allocated per executor. This is memory that accounts for things like VM overheads, interned strings, other native overheads, etc. This tends to grow with the executor size (typically 6-10%). |
spark.yarn.driver.memoryOverhead |
driverMemory * 0.07, with minimum of 384 | The amount of off heap memory (in megabytes) to be allocated per driver. This is memory that accounts for things like VM overheads, interned strings, other native overheads, etc. This tends to grow with the container size (typically 6-10%). |
spark.yarn.jar |
(none) | The location of the Spark jar file, in case overriding the default location is desired. 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, for example, set this configuration to "hdfs:///some/path". |
spark.yarn.access.namenodes |
(none) | A list of secure HDFS namenodes your Spark application is going to access. For example, `spark.yarn.access.namenodes=hdfs://nn1.com:8032,hdfs://nn2.com:8032`. The Spark application must have acess to the namenodes listed and Kerberos must be properly configured to be able to access them (either in the same realm or in a trusted realm). Spark acquires security tokens for each of the namenodes so that the Spark application can access those remote HDFS clusters. |
spark.yarn.appMasterEnv.[EnvironmentVariableName] |
(none) |
Add the environment variable specified by EnvironmentVariableName to the
Application Master process launched on YARN. The user can specify multiple of
these and to set multiple environment variables. In yarn-cluster mode this controls
the environment of the SPARK driver and in yarn-client mode it only controls
the environment of the executor launcher.
|
spark.yarn.containerLauncherMaxThreads |
25 | The maximum number of threads to use in the application master for launching executor containers. |