#!/bin/bash SCALA_VERSION=2.9.3 # Figure out where the Scala framework is installed FWDIR="$(cd `dirname $0`; pwd)" # Export this as SPARK_HOME export SPARK_HOME="$FWDIR" # Load environment variables from conf/spark-env.sh, if it exists if [ -e $FWDIR/conf/spark-env.sh ] ; then . $FWDIR/conf/spark-env.sh fi if [ -z "$1" ]; then echo "Usage: run []" >&2 exit 1 fi # If this is a standalone cluster daemon, reset SPARK_JAVA_OPTS and SPARK_MEM to reasonable # values for that; it doesn't need a lot if [ "$1" = "spark.deploy.master.Master" -o "$1" = "spark.deploy.worker.Worker" ]; then SPARK_MEM=${SPARK_DAEMON_MEMORY:-512m} SPARK_DAEMON_JAVA_OPTS="$SPARK_DAEMON_JAVA_OPTS -Dspark.akka.logLifecycleEvents=true" # Do not overwrite SPARK_JAVA_OPTS environment variable in this script OUR_JAVA_OPTS="$SPARK_DAEMON_JAVA_OPTS" # Empty by default else OUR_JAVA_OPTS="$SPARK_JAVA_OPTS" fi # Add java opts for master, worker, executor. The opts maybe null case "$1" in 'spark.deploy.master.Master') OUR_JAVA_OPTS="$OUR_JAVA_OPTS $SPARK_MASTER_OPTS" ;; 'spark.deploy.worker.Worker') OUR_JAVA_OPTS="$OUR_JAVA_OPTS $SPARK_WORKER_OPTS" ;; 'spark.executor.StandaloneExecutorBackend') OUR_JAVA_OPTS="$OUR_JAVA_OPTS $SPARK_EXECUTOR_OPTS" ;; 'spark.executor.MesosExecutorBackend') OUR_JAVA_OPTS="$OUR_JAVA_OPTS $SPARK_EXECUTOR_OPTS" ;; 'spark.repl.Main') OUR_JAVA_OPTS="$OUR_JAVA_OPTS $SPARK_REPL_OPTS" ;; esac if [ "$SPARK_LAUNCH_WITH_SCALA" == "1" ]; then if [ "$SCALA_HOME" ]; then RUNNER="${SCALA_HOME}/bin/scala" else if [ `command -v scala` ]; then RUNNER="scala" else echo "SCALA_HOME is not set and scala is not in PATH" >&2 exit 1 fi fi else if [ `command -v java` ]; then RUNNER="java" else if [ -z "$JAVA_HOME" ]; then echo "JAVA_HOME is not set" >&2 exit 1 fi RUNNER="${JAVA_HOME}/bin/java" fi if [ -z "$SCALA_LIBRARY_PATH" ]; then if [ -z "$SCALA_HOME" ]; then echo "SCALA_HOME is not set" >&2 exit 1 fi SCALA_LIBRARY_PATH="$SCALA_HOME/lib" fi fi # Figure out how much memory to use per executor and set it as an environment # variable so that our process sees it and can report it to Mesos if [ -z "$SPARK_MEM" ] ; then SPARK_MEM="512m" fi export SPARK_MEM # Set JAVA_OPTS to be able to load native libraries and to set heap size JAVA_OPTS="$OUR_JAVA_OPTS" JAVA_OPTS="$JAVA_OPTS -Djava.library.path=$SPARK_LIBRARY_PATH" JAVA_OPTS="$JAVA_OPTS -Xms$SPARK_MEM -Xmx$SPARK_MEM" # Load extra JAVA_OPTS from conf/java-opts, if it exists if [ -e $FWDIR/conf/java-opts ] ; then JAVA_OPTS="$JAVA_OPTS `cat $FWDIR/conf/java-opts`" fi export JAVA_OPTS # Attention: when changing the way the JAVA_OPTS are assembled, the change must be reflected in ExecutorRunner.scala! CORE_DIR="$FWDIR/core" REPL_DIR="$FWDIR/repl" REPL_BIN_DIR="$FWDIR/repl-bin" EXAMPLES_DIR="$FWDIR/examples" BAGEL_DIR="$FWDIR/bagel" STREAMING_DIR="$FWDIR/streaming" PYSPARK_DIR="$FWDIR/python" # Exit if the user hasn't compiled Spark if [ ! -e "$CORE_DIR/target" ]; then echo "Failed to find Spark classes in $CORE_DIR/target" >&2 echo "You need to compile Spark before running this program" >&2 exit 1 fi if [[ "$@" = *repl* && ! -e "$REPL_DIR/target" ]]; then echo "Failed to find Spark classes in $REPL_DIR/target" >&2 echo "You need to compile Spark repl module before running this program" >&2 exit 1 fi # Build up classpath CLASSPATH="$SPARK_CLASSPATH" CLASSPATH="$CLASSPATH:$FWDIR/conf" CLASSPATH="$CLASSPATH:$CORE_DIR/target/scala-$SCALA_VERSION/classes" if [ -n "$SPARK_TESTING" ] ; then CLASSPATH="$CLASSPATH:$CORE_DIR/target/scala-$SCALA_VERSION/test-classes" CLASSPATH="$CLASSPATH:$STREAMING_DIR/target/scala-$SCALA_VERSION/test-classes" fi CLASSPATH="$CLASSPATH:$CORE_DIR/src/main/resources" CLASSPATH="$CLASSPATH:$REPL_DIR/target/scala-$SCALA_VERSION/classes" CLASSPATH="$CLASSPATH:$EXAMPLES_DIR/target/scala-$SCALA_VERSION/classes" CLASSPATH="$CLASSPATH:$STREAMING_DIR/target/scala-$SCALA_VERSION/classes" CLASSPATH="$CLASSPATH:$STREAMING_DIR/lib/org/apache/kafka/kafka/0.7.2-spark/*" # <-- our in-project Kafka Jar if [ -e "$FWDIR/lib_managed" ]; then CLASSPATH="$CLASSPATH:$FWDIR/lib_managed/jars/*" CLASSPATH="$CLASSPATH:$FWDIR/lib_managed/bundles/*" fi CLASSPATH="$CLASSPATH:$REPL_DIR/lib/*" # Add the shaded JAR for Maven builds if [ -e $REPL_BIN_DIR/target ]; then for jar in `find "$REPL_BIN_DIR/target" -name 'spark-repl-*-shaded-hadoop*.jar'`; do CLASSPATH="$CLASSPATH:$jar" done # The shaded JAR doesn't contain examples, so include those separately EXAMPLES_JAR=`ls "$EXAMPLES_DIR/target/spark-examples"*[0-9T].jar` CLASSPATH+=":$EXAMPLES_JAR" fi CLASSPATH="$CLASSPATH:$BAGEL_DIR/target/scala-$SCALA_VERSION/classes" for jar in `find $PYSPARK_DIR/lib -name '*jar'`; do CLASSPATH="$CLASSPATH:$jar" done # Figure out the JAR file that our examples were packaged into. This includes a bit of a hack # to avoid the -sources and -doc packages that are built by publish-local. if [ -e "$EXAMPLES_DIR/target/scala-$SCALA_VERSION/spark-examples"*[0-9T].jar ]; then # Use the JAR from the SBT build export SPARK_EXAMPLES_JAR=`ls "$EXAMPLES_DIR/target/scala-$SCALA_VERSION/spark-examples"*[0-9T].jar` fi if [ -e "$EXAMPLES_DIR/target/spark-examples"*[0-9T].jar ]; then # Use the JAR from the Maven build export SPARK_EXAMPLES_JAR=`ls "$EXAMPLES_DIR/target/spark-examples"*[0-9T].jar` fi # Add hadoop conf dir - else FileSystem.*, etc fail ! # Note, this assumes that there is either a HADOOP_CONF_DIR or YARN_CONF_DIR which hosts # the configurtion files. if [ "x" != "x$HADOOP_CONF_DIR" ]; then CLASSPATH="$CLASSPATH:$HADOOP_CONF_DIR" fi if [ "x" != "x$YARN_CONF_DIR" ]; then CLASSPATH="$CLASSPATH:$YARN_CONF_DIR" fi # Figure out whether to run our class with java or with the scala launcher. # In most cases, we'd prefer to execute our process with java because scala # creates a shell script as the parent of its Java process, which makes it # hard to kill the child with stuff like Process.destroy(). However, for # the Spark shell, the wrapper is necessary to properly reset the terminal # when we exit, so we allow it to set a variable to launch with scala. if [ "$SPARK_LAUNCH_WITH_SCALA" == "1" ]; then EXTRA_ARGS="" # Java options will be passed to scala as JAVA_OPTS else CLASSPATH="$CLASSPATH:$SCALA_LIBRARY_PATH/scala-library.jar" CLASSPATH="$CLASSPATH:$SCALA_LIBRARY_PATH/scala-compiler.jar" CLASSPATH="$CLASSPATH:$SCALA_LIBRARY_PATH/jline.jar" # The JVM doesn't read JAVA_OPTS by default so we need to pass it in EXTRA_ARGS="$JAVA_OPTS" fi export CLASSPATH # Needed for spark-shell exec "$RUNNER" -cp "$CLASSPATH" $EXTRA_ARGS "$@"