How can I run spark in headless mode? Currently, I am executing spark on a HDP 2.6.4 (i.e. 2.2 is installed by default) on the cluster. I have downloaded a spark 2.4.1 Scala 2.11 release in headless mode (i.e. no hadoop jars are built in) from https://spark.apache.org/downloads.html. The exact name is: pre-built with scala 2.11 and user provided hadoop

Now when trying to run I follow: https://spark.apache.org/docs/latest/hadoop-provided.html

export SPARK_DIST_CLASSPATH=$(hadoop classpath)
export HADOOP_CONF_DIR=/etc/hadoop/conf
export SPARK_HOME=/home/<<my_user>>/development/software/spark_no_provided_hadoop
./bin/spark-shell --master yarn --deploy-mode client --queue <<my_yarn_queue>>

Unfortunately, it fails to start:

19/05/01 07:12:23 WARN yarn.Client: Neither spark.yarn.jars nor spark.yarn.archive is set, falling back to uploading libraries under SPARK_HOME.
19/05/01 07:12:38 ERROR cluster.YarnClientSchedulerBackend: The YARN application has already ended! It might have been killed or the Application Master may have failed to start. Check the YARN application logs for more details.
19/05/01 07:12:38 ERROR spark.SparkContext: Error initializing SparkContext.
org.apache.spark.SparkException: Application application_1555489055691_64276 failed 2 times due to AM Container for appattempt_1555489055691_64276_000002 exited with  exitCode: 1

When looking at the logs for details I see:
Log Type: prelaunch.err

launch_container.sh: line 30: $PWD:$PWD/__spark_conf__:$PWD/__spark_libs__/*:/etc/hadoop/conf:/usr/hdp/*:/usr/hdp/*:/usr/hdp/current/hadoop-hdfs-client/*:/usr/hdp/current/hadoop-hdfs-client/lib/*:/usr/hdp/current/hadoop-yarn-client/*:/usr/hdp/current/hadoop-yarn-client/lib/*:$PWD/mr-framework/hadoop/share/hadoop/mapreduce/*:$PWD/mr-framework/hadoop/share/hadoop/mapreduce/lib/*:$PWD/mr-framework/hadoop/share/hadoop/common/*:$PWD/mr-framework/hadoop/share/hadoop/common/lib/*:$PWD/mr-framework/hadoop/share/hadoop/yarn/*:$PWD/mr-framework/hadoop/share/hadoop/yarn/lib/*:$PWD/mr-framework/hadoop/share/hadoop/hdfs/*:$PWD/mr-framework/hadoop/share/hadoop/hdfs/lib/*:$PWD/mr-framework/hadoop/share/hadoop/tools/lib/*:/usr/hdp/${hdp.version}/hadoop/lib/hadoop-lzo-0.6.0.${hdp.version}.jar:/etc/hadoop/conf/secure:/usr/hdp/*:/usr/hdp/*:/usr/hdp/*:/usr/hdp/*:/usr/hdp/*:/usr/hdp/*:/usr/hdp/*:/usr/hdp/*:/usr/hdp/*:/usr/hdp/*:/usr/hdp/$PWD/__spark_conf__/__hadoop_conf__: bad substitution


/usr/hdp/${hdp.version}/hadoop/lib/hadoop-lzo-0.6.0.${hdp.version}.jar: bad substitution

is the cause (and similar to https://community.hortonworks.com/questions/23699/bad-substitution-error-running-spark-on-yarn.html), but this is completely inside Ambari's management domain. How can I work around it to run a more recent version of spark (2.4.x) on the existing 2.6.x HDP plattform?


Assuming I passed a wrong configuration directory for HADOOP_CONF_DIR, it is unset. But then:

When running with master 'yarn' either HADOOP_CONF_DIR or YARN_CONF_DIR must be set in the environment.

so it must be passed. Could it be, that I am passing the wrong value? According to Exception: java.lang.Exception: When running with master 'yarn' either HADOOP_CONF_DIR or YARN_CONF_DIR must be set in the environment. in spark could be correct. For me, no HADOOP_HOME is set by default.

Even when setting to: export HADOOP_CONF_DIR=/usr/hdp/current/spark2-client/conf, the same bad substitution error remains.

NOTE: some interesting steps:

1 Answer 1


Indeed, https://community.hortonworks.com/questions/23699/bad-substitution-error-running-spark-on-yarn.html is the solution:

cd /usr/hdp                                                                                                                                  
2.6.xxx  current  share

So for me:

./bin/spark-shell --master yarn --deploy-mode client --queue <<my_queue>>--conf spark.driver.extraJavaOptions='-Dhdp.version=2.6.xxx' --conf spark.yarn.am.extraJavaOptions='-Dhdp.version=2.6.xxx'


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge that you have read and understand our privacy policy and code of conduct.

Not the answer you're looking for? Browse other questions tagged or ask your own question.