zoukankan      html  css  js  c++  java
  • Spark单机版集群

    一、创建用户

    # useradd spark

    # passwd spark

    二、下载软件

    JDK,Scala,SBT,Maven

    版本信息如下:

    JDK jdk-7u79-linux-x64.gz

    Scala scala-2.10.5.tgz

    SBT sbt-0.13.7.zip

    Maven apache-maven-3.2.5-bin.tar.gz

    注意:如果只是安装Spark环境,则只需JDK和Scala即可,SBT和Maven是为了后续的源码编译。

    三、解压上述文件并进行环境变量配置

    # cd /usr/local/

    # tar xvf /root/jdk-7u79-linux-x64.gz

    # tar xvf /root/scala-2.10.5.tgz

    # tar xvf /root/apache-maven-3.2.5-bin.tar.gz

    # unzip /root/sbt-0.13.7.zip

    修改环境变量的配置文件

    # vim /etc/profile

    export JAVA_HOME=/usr/local/jdk1.7.0_79
    export CLASSPATH=.:$JAVA_HOME/lib/dt.jar:$JAVA_HOME/lib/tools.jar
    export SCALA_HOME=/usr/local/scala-2.10.5
    export MAVEN_HOME=/usr/local/apache-maven-3.2.5
    export SBT_HOME=/usr/local/sbt
    export PATH=$PATH:$JAVA_HOME/bin:$SCALA_HOME/bin:$MAVEN_HOME/bin:$SBT_HOME/bin

    使配置文件生效

    # source /etc/profile

    测试环境变量是否生效

    # java –version

    java version "1.7.0_79"
    Java(TM) SE Runtime Environment (build 1.7.0_79-b15)
    Java HotSpot(TM) 64-Bit Server VM (build 24.79-b02, mixed mode)

    # scala –version

    Scala code runner version 2.10.5 -- Copyright 2002-2013, LAMP/EPFL

    # mvn –version

    Apache Maven 3.2.5 (12a6b3acb947671f09b81f49094c53f426d8cea1; 2014-12-15T01:29:23+08:00)
    Maven home: /usr/local/apache-maven-3.2.5
    Java version: 1.7.0_79, vendor: Oracle Corporation
    Java home: /usr/local/jdk1.7.0_79/jre
    Default locale: en_US, platform encoding: UTF-8
    OS name: "linux", version: "3.10.0-229.el7.x86_64", arch: "amd64", family: "unix"

    # sbt --version

    sbt launcher version 0.13.7

    四、主机名绑定

    [root@spark01 ~]# vim /etc/hosts

    192.168.244.147 spark01

    五、配置spark

    切换到spark用户下

    下载hadoop和spark,可使用wget命令下载

    spark-1.4.0 http://d3kbcqa49mib13.cloudfront.net/spark-1.4.0-bin-hadoop2.6.tgz

    Hadoop http://mirror.bit.edu.cn/apache/hadoop/common/hadoop-2.6.0/hadoop-2.6.0.tar.gz

    解压上述文件并进行环境变量配置

    修改spark用户环境变量的配置文件

    [spark@spark01 ~]$ vim .bash_profile

    export SPARK_HOME=$HOME/spark-1.4.0-bin-hadoop2.6
    export HADOOP_HOME=$HOME/hadoop-2.6.0
    export HADOOP_CONF_DIR=$HOME/hadoop-2.6.0/etc/hadoop
    export PATH=$PATH:$SPARK_HOME/bin:$HADOOP_HOME/bin:$HADOOP_HOME/sbin

    使配置文件生效

    [spark@spark01 ~]$ source .bash_profile

    修改spark配置文件

    [spark@spark01 ~]$ cd spark-1.4.0-bin-hadoop2.6/conf/

    [spark@spark01 conf]$ cp spark-env.sh.template spark-env.sh

    [spark@spark01 conf]$ vim spark-env.sh

    在后面添加如下内容:

    export SCALA_HOME=/usr/local/scala-2.10.5
    export SPARK_MASTER_IP=spark01
    export SPARK_WORKER_MEMORY=1500m
    export JAVA_HOME=/usr/local/jdk1.7.0_79

    有条件的童鞋可将SPARK_WORKER_MEMORY适当设大一点,因为我虚拟机内存是2G,所以只给了1500m。

    配置slaves

    [spark@spark01 conf]$ cp slaves slaves.template

    [spark@spark01 conf]$ vim slaves

    将localhost修改为spark01

    启动master

    [spark@spark01 spark-1.4.0-bin-hadoop2.6]$ sbin/start-master.sh

    starting org.apache.spark.deploy.master.Master, logging to /home/spark/spark-1.4.0-bin-hadoop2.6/sbin/../logs/spark-spark-org.apache.spark.deploy.master.Master-1-spark01.out

    查看上述日志的输出内容

    [spark@spark01 spark-1.4.0-bin-hadoop2.6]$ cd logs/

    [spark@spark01 logs]$ cat spark-spark-org.apache.spark.deploy.master.Master-1-spark01.out

     
    Spark Command: /usr/local/jdk1.7.0_79/bin/java -cp /home/spark/spark-1.4.0-bin-hadoop2.6/sbin/../conf/:/home/spark/spark-1.4.0-bin-hadoop2.6/lib/spark-assembly-1.4.0-hadoop2.6.0.jar:/home/spark/spark-1.4.0-bin-hadoop2.6/lib/datanucleus-core-3.2.10.jar:/home/spark/spark-1.4.0-bin-hadoop2.6/lib/datanucleus-api-jdo-3.2.6.jar:/home/spark/spark-1.4.0-bin-hadoop2.6/lib/datanucleus-rdbms-3.2.9.jar:/home/spark/hadoop-2.6.0/etc/hadoop/ -Xms512m -Xmx512m -XX:MaxPermSize=128m org.apache.spark.deploy.master.Master --ip spark01 --port 7077 --webui-port 8080
    ========================================
    16/01/16 15:12:30 INFO master.Master: Registered signal handlers for [TERM, HUP, INT]
    16/01/16 15:12:31 WARN util.NativeCodeLoader: Unable to load native-hadoop library for your platform... using builtin-java classes where applicable
    16/01/16 15:12:32 INFO spark.SecurityManager: Changing view acls to: spark
    16/01/16 15:12:32 INFO spark.SecurityManager: Changing modify acls to: spark
    16/01/16 15:12:32 INFO spark.SecurityManager: SecurityManager: authentication disabled; ui acls disabled; users with view permissions: Set(spark); users with modify permissions: Set(spark)
    16/01/16 15:12:33 INFO slf4j.Slf4jLogger: Slf4jLogger started
    16/01/16 15:12:33 INFO Remoting: Starting remoting
    16/01/16 15:12:33 INFO Remoting: Remoting started; listening on addresses :[akka.tcp://sparkMaster@spark01:7077]
    16/01/16 15:12:33 INFO util.Utils: Successfully started service 'sparkMaster' on port 7077.
    16/01/16 15:12:34 INFO server.Server: jetty-8.y.z-SNAPSHOT
    16/01/16 15:12:34 INFO server.AbstractConnector: Started SelectChannelConnector@spark01:6066
    16/01/16 15:12:34 INFO util.Utils: Successfully started service on port 6066.
    16/01/16 15:12:34 INFO rest.StandaloneRestServer: Started REST server for submitting applications on port 6066
    16/01/16 15:12:34 INFO master.Master: Starting Spark master at spark://spark01:7077
    16/01/16 15:12:34 INFO master.Master: Running Spark version 1.4.0
    16/01/16 15:12:34 INFO server.Server: jetty-8.y.z-SNAPSHOT
    16/01/16 15:12:34 INFO server.AbstractConnector: Started SelectChannelConnector@0.0.0.0:8080
    16/01/16 15:12:34 INFO util.Utils: Successfully started service 'MasterUI' on port 8080.
    16/01/16 15:12:34 INFO ui.MasterWebUI: Started MasterWebUI at http://192.168.244.147:8080
    16/01/16 15:12:34 INFO master.Master: I have been elected leader! New state: ALIVE
     

    从日志中也可看出,master启动正常

    下面来看看master的 web管理界面,默认在8080端口

    启动worker

    [spark@spark01 spark-1.4.0-bin-hadoop2.6]$ sbin/start-slaves.sh spark://spark01:7077

    spark01: Warning: Permanently added 'spark01,192.168.244.147' (ECDSA) to the list of known hosts.
    spark@spark01's password:
    spark01: starting org.apache.spark.deploy.worker.Worker, logging to /home/spark/spark-1.4.0-bin-hadoop2.6/sbin/../logs/spark-spark-org.apache.spark.deploy.worker.Worker-1-spark01.out

    输入spark01上spark用户的密码

    可通过日志的信息来确认workder是否正常启动,因信息太多,在这里就不贴出了。

    [spark@spark01 spark-1.4.0-bin-hadoop2.6]$ cd logs/

    [spark@spark01 logs]$ cat spark-spark-org.apache.spark.deploy.worker.Worker-1-spark01.out

    启动spark shell

    [spark@spark01 spark-1.4.0-bin-hadoop2.6]$ bin/spark-shell --master spark://spark01:7077

     
    16/01/16 15:33:17 WARN util.NativeCodeLoader: Unable to load native-hadoop library for your platform... using builtin-java classes where applicable
    16/01/16 15:33:18 INFO spark.SecurityManager: Changing view acls to: spark
    16/01/16 15:33:18 INFO spark.SecurityManager: Changing modify acls to: spark
    16/01/16 15:33:18 INFO spark.SecurityManager: SecurityManager: authentication disabled; ui acls disabled; users with view permissions: Set(spark); users with modify permissions: Set(spark)
    16/01/16 15:33:18 INFO spark.HttpServer: Starting HTTP Server
    16/01/16 15:33:18 INFO server.Server: jetty-8.y.z-SNAPSHOT
    16/01/16 15:33:18 INFO server.AbstractConnector: Started SocketConnector@0.0.0.0:42300
    16/01/16 15:33:18 INFO util.Utils: Successfully started service 'HTTP class server' on port 42300.
    Welcome to
          ____              __
         / __/__  ___ _____/ /__
        _ / _ / _ `/ __/  '_/
       /___/ .__/\_,_/_/ /_/\_   version 1.4.0
          /_/
    
    Using Scala version 2.10.4 (Java HotSpot(TM) 64-Bit Server VM, Java 1.7.0_79)
    Type in expressions to have them evaluated.
    Type :help for more information.
    16/01/16 15:33:30 INFO spark.SparkContext: Running Spark version 1.4.0
    16/01/16 15:33:30 INFO spark.SecurityManager: Changing view acls to: spark
    16/01/16 15:33:30 INFO spark.SecurityManager: Changing modify acls to: spark
    16/01/16 15:33:30 INFO spark.SecurityManager: SecurityManager: authentication disabled; ui acls disabled; users with view permissions: Set(spark); users with modify permissions: Set(spark)
    16/01/16 15:33:31 INFO slf4j.Slf4jLogger: Slf4jLogger started
    16/01/16 15:33:31 INFO Remoting: Starting remoting
    16/01/16 15:33:31 INFO Remoting: Remoting started; listening on addresses :[akka.tcp://sparkDriver@192.168.244.147:43850]
    16/01/16 15:33:31 INFO util.Utils: Successfully started service 'sparkDriver' on port 43850.
    16/01/16 15:33:31 INFO spark.SparkEnv: Registering MapOutputTracker
    16/01/16 15:33:31 INFO spark.SparkEnv: Registering BlockManagerMaster
    16/01/16 15:33:31 INFO storage.DiskBlockManager: Created local directory at /tmp/spark-7b7bd4bd-ff20-4e3d-a354-61a4ca7c4b2f/blockmgr-0e855210-3609-4204-b5e3-151e0c096c15
    16/01/16 15:33:31 INFO storage.MemoryStore: MemoryStore started with capacity 265.4 MB
    16/01/16 15:33:31 INFO spark.HttpFileServer: HTTP File server directory is /tmp/spark-7b7bd4bd-ff20-4e3d-a354-61a4ca7c4b2f/httpd-56ac16d2-dd82-41cb-99d7-4d11ef36b42e
    16/01/16 15:33:31 INFO spark.HttpServer: Starting HTTP Server
    16/01/16 15:33:31 INFO server.Server: jetty-8.y.z-SNAPSHOT
    16/01/16 15:33:31 INFO server.AbstractConnector: Started SocketConnector@0.0.0.0:47633
    16/01/16 15:33:31 INFO util.Utils: Successfully started service 'HTTP file server' on port 47633.
    16/01/16 15:33:31 INFO spark.SparkEnv: Registering OutputCommitCoordinator
    16/01/16 15:33:31 INFO server.Server: jetty-8.y.z-SNAPSHOT
    16/01/16 15:33:31 INFO server.AbstractConnector: Started SelectChannelConnector@0.0.0.0:4040
    16/01/16 15:33:31 INFO util.Utils: Successfully started service 'SparkUI' on port 4040.
    16/01/16 15:33:31 INFO ui.SparkUI: Started SparkUI at http://192.168.244.147:4040
    16/01/16 15:33:32 INFO client.AppClient$ClientActor: Connecting to master akka.tcp://sparkMaster@spark01:7077/user/Master...
    16/01/16 15:33:33 INFO cluster.SparkDeploySchedulerBackend: Connected to Spark cluster with app ID app-20160116153332-0000
    16/01/16 15:33:33 INFO client.AppClient$ClientActor: Executor added: app-20160116153332-0000/0 on worker-20160116152314-192.168.244.147-58914 (192.168.244.147:58914) with 2 cores
    16/01/16 15:33:33 INFO cluster.SparkDeploySchedulerBackend: Granted executor ID app-20160116153332-0000/0 on hostPort 192.168.244.147:58914 with 2 cores, 512.0 MB RAM
    16/01/16 15:33:33 INFO client.AppClient$ClientActor: Executor updated: app-20160116153332-0000/0 is now LOADING
    16/01/16 15:33:33 INFO client.AppClient$ClientActor: Executor updated: app-20160116153332-0000/0 is now RUNNING
    16/01/16 15:33:34 INFO util.Utils: Successfully started service 'org.apache.spark.network.netty.NettyBlockTransferService' on port 33146.
    16/01/16 15:33:34 INFO netty.NettyBlockTransferService: Server created on 33146
    16/01/16 15:33:34 INFO storage.BlockManagerMaster: Trying to register BlockManager
    16/01/16 15:33:34 INFO storage.BlockManagerMasterEndpoint: Registering block manager 192.168.244.147:33146 with 265.4 MB RAM, BlockManagerId(driver, 192.168.244.147, 33146)
    16/01/16 15:33:34 INFO storage.BlockManagerMaster: Registered BlockManager
    16/01/16 15:33:34 INFO cluster.SparkDeploySchedulerBackend: SchedulerBackend is ready for scheduling beginning after reached minRegisteredResourcesRatio: 0.0
    16/01/16 15:33:34 INFO repl.SparkILoop: Created spark context..
    Spark context available as sc.
    16/01/16 15:33:38 INFO hive.HiveContext: Initializing execution hive, version 0.13.1
    16/01/16 15:33:43 INFO metastore.HiveMetaStore: 0: Opening raw store with implemenation class:org.apache.hadoop.hive.metastore.ObjectStore
    16/01/16 15:33:43 INFO metastore.ObjectStore: ObjectStore, initialize called
    16/01/16 15:33:44 INFO DataNucleus.Persistence: Property datanucleus.cache.level2 unknown - will be ignored
    16/01/16 15:33:44 INFO DataNucleus.Persistence: Property hive.metastore.integral.jdo.pushdown unknown - will be ignored
    16/01/16 15:33:44 INFO cluster.SparkDeploySchedulerBackend: Registered executor: AkkaRpcEndpointRef(Actor[akka.tcp://sparkExecutor@192.168.244.147:46741/user/Executor#-2043358626]) with ID 0
    16/01/16 15:33:44 WARN DataNucleus.Connection: BoneCP specified but not present in CLASSPATH (or one of dependencies)
    16/01/16 15:33:45 INFO storage.BlockManagerMasterEndpoint: Registering block manager 192.168.244.147:33017 with 265.4 MB RAM, BlockManagerId(0, 192.168.244.147, 33017)
    16/01/16 15:33:46 WARN DataNucleus.Connection: BoneCP specified but not present in CLASSPATH (or one of dependencies)
    16/01/16 15:33:48 INFO metastore.ObjectStore: Setting MetaStore object pin classes with hive.metastore.cache.pinobjtypes="Table,StorageDescriptor,SerDeInfo,Partition,Database,Type,FieldSchema,Order"
    16/01/16 15:33:48 INFO metastore.MetaStoreDirectSql: MySQL check failed, assuming we are not on mysql: Lexical error at line 1, column 5.  Encountered: "@" (64), after : "".
    16/01/16 15:33:52 INFO DataNucleus.Datastore: The class "org.apache.hadoop.hive.metastore.model.MFieldSchema" is tagged as "embedded-only" so does not have its own datastore table.
    16/01/16 15:33:52 INFO DataNucleus.Datastore: The class "org.apache.hadoop.hive.metastore.model.MOrder" is tagged as "embedded-only" so does not have its own datastore table.
    16/01/16 15:33:54 INFO DataNucleus.Datastore: The class "org.apache.hadoop.hive.metastore.model.MFieldSchema" is tagged as "embedded-only" so does not have its own datastore table.
    16/01/16 15:33:54 INFO DataNucleus.Datastore: The class "org.apache.hadoop.hive.metastore.model.MOrder" is tagged as "embedded-only" so does not have its own datastore table.
    16/01/16 15:33:54 INFO metastore.ObjectStore: Initialized ObjectStore
    16/01/16 15:33:54 WARN metastore.ObjectStore: Version information not found in metastore. hive.metastore.schema.verification is not enabled so recording the schema version 0.13.1aa
    16/01/16 15:33:55 INFO metastore.HiveMetaStore: Added admin role in metastore
    16/01/16 15:33:55 INFO metastore.HiveMetaStore: Added public role in metastore
    16/01/16 15:33:56 INFO metastore.HiveMetaStore: No user is added in admin role, since config is empty
    16/01/16 15:33:56 INFO session.SessionState: No Tez session required at this point. hive.execution.engine=mr.
    16/01/16 15:33:56 INFO repl.SparkILoop: Created sql context (with Hive support)..
    SQL context available as sqlContext.
    
    scala>
     

    打开spark shell以后,可以写一个简单的程序,say hello to the world

    scala> println("helloworld")
    helloworld

    再来看看spark的web管理界面,可以看出,多了一个Workders和Running Applications的信息

    至此,Spark的伪分布式环境搭建完毕,

    有以下几点需要注意:

    1. 上述中的Maven和SBT是非必须的,只是为了后续的源码编译,所以,如果只是单纯的搭建Spark环境,可不用下载Maven和SBT。

    2. 该Spark的伪分布式环境其实是集群的基础,只需修改极少的地方,然后copy到slave节点上即可,鉴于篇幅有限,后文再表。 

  • 相关阅读:
    tomcat 启动超时
    读书笔记-String
    读书笔记-集合
    读书笔记-算法
    多变量梯度下降
    多变量线性回归
    梯度下降算法在线性回归中的运用
    梯度下降
    线性回归——代价函数
    线性回归
  • 原文地址:https://www.cnblogs.com/liuchuanfeng/p/7156104.html
Copyright © 2011-2022 走看看