hadoop+spark环境配置

部分参考来源:https://blog.csdn.net/l1028386804/article/details/80516740

修改IP为静态IP:

因为是虚拟机,我虚拟机IP及参数如下(主机为192.168.242.139,其它两台分别为192.168.242.140和192.168.242.141):

UTE=yes
IPV4_FAILURE_FATAL=no
NAME=eno16777736
UUID=076d5584-360f-4e57-b203-db6ff98e6341
ONBOOT=yes
HWADDR=00:0C:29:DF:37:9F
IPADDR=192.168.242.141
NETMASK=255.255.255.0
GATEWAY0=192.168.242.2
DNS1=8.8.8.8

一、修改hosts文件

vim /etc/hosts

我的是三台云主机:在原文件的基础上加上;

ip1 master worker0 namenode
ip2 worker1 datanode1
ip3 worker2 datanode2

其中的ipN代表一个可用的集群IP,ip1为master的主节点,ip2和iip3为从节点。

配置完后,直接ping worker1ping worker2试试
我的配置如下,在/etc/hosts文件的开头添加:

192.168.242.140 worker1
192.168.242.141 worker2
192.168.242.139 master

注意
这里有一个坑,本人在虚拟机(没有物理机操作,没办法)下面如果不改/etc/hostname主机名,则启动hadoop后,会发现Nodes节点的Node HTTP Address下面地址全部为本机localhost:端口,这样是完全不对的,所以这里还要更改各节点的主机名为上面host配置的名称。

  • 1、 对应上面host文件,在主节点master上执行
vim /etc/hostname

删掉原来的内容,改为master

  • 2、 对应上面host文件,在重节点worker1上执行
vim /etc/hostname

删掉原来的内容,改为worker1

  • 3、 对应上面host文件,在重节点worker2上执行
vim /etc/hostname

删掉原来的内容,改为worker2

二、关闭防火墙

即时生效,重启后失效:

service iptables stop

重启后永久生效:

chkconfig iptables off

三、ssh互信(免密码登录)

注意我这里配置的是root用户,所以以下的家目录是/root
如果你配置的是用户是xxxx,那么家目录应该是/home/xxxxx/

#在主节点执行下面的命令:
ssh-keygen -t rsa -P '' #一路回车直到生成公钥

scp /root/.ssh/id_rsa.pub root@worker1:/root/.ssh/id_rsa.pub.master #从master节点拷贝id_rsa.pub到worker主机上,并且改名为id_rsa.pub.master
scp /root/.ssh/id_rsa.pub root@worker2:/root/.ssh/id_rsa.pub.master #同上,以后使用workerN代表worker1和worker2.

scp /etc/hosts root@workerN:/etc/hosts   #统一hosts文件,让几个主机能通过host名字来识别彼此

#master主机执行如下命令:
cat /root/.ssh/id_rsa.pub >> /root/.ssh/authorized_keys #master主机

#workerN主机执行如下命令(分别在worker1及worker2上执行):
cat /root/.ssh/id_rsa.pub.master >> /root/.ssh/authorized_keys #workerN主机

这样master主机就可以无密码登录到其他主机,这样子在运行master上的启动脚本时和使用scp命令时候,就可以不用输入密码了。

四、安装基础环境(JAVA和SCALA环境)

  • 1.Java1.8环境搭建:
    配置master的java环境
#下载jdk1.8的rpm包
wget --no-check-certificate --no-cookies --header "Cookie: oraclelicense=accept-securebackup-cookie" http://download.oracle.com/otn-pub/java/jdk/8u112-b15/jdk-8u112-linux-x64.rpm 
rpm -ivh jdk-8u112-linux-x64.rpm 

#增加JAVA_HOME
vim /etc/profile

#增加如下行:
#Java home
export JAVA_HOME=/usr/java/jdk1.8.0_112/

#刷新配置:
source /etc/profile #当然reboot也是可以的

配置workerN主机的java环境,在master主机分别将jdk-8u112-linux-x64.rpm文件拷贝到worker1worker2root目录下

#使用scp命令进行拷贝
scp jdk-8u112-linux-x64.rpm root@worker1:/root
scp jdk-8u112-linux-x64.rpm root@worker2:/root
#其他的步骤如master节点配置一样,分别在worker1,worker2的`root`目录下执行rpm安装及配置环境变量
  • 2.Scala2.12.2环境搭建:
    Master节点:
#下载scala安装包:
wget -O "scala-2.12.2.rpm" "https://downloads.lightbend.com/scala/2.12.2/scala-2.12.2.rpm"
#如果无法下载,请自行到https://www.scala-lang.org/download/2.12.2.html进行下载

#安装rpm包:
rpm -ivh scala-2.12.2.rpm

#增加SCALA_HOME
vim /etc/profile

#增加如下内容;
#Scala Home
export SCALA_HOME=/usr/share/scala

#刷新配置
source /etc/profile

WorkerN节点;

#使用scp命令在master进行拷贝
scp scala-2.12.2.rpm root@worker1:/root
scp scala-2.12.2.rpm root@worker2:/root
#其他的步骤如master节点配置一样

五、Hadoop2.7.3完全分布式搭建

MASTER节点:

1.下载二进制包:

wget http://www-eu.apache.org/dist/hadoop/common/hadoop-2.7.3/hadoop-2.7.3.tar.gz

2.解压并移动至相应目录

我的习惯是将软件放置/opt目录下:

tar -xvf hadoop-2.7.3.tar.gz
mv hadoop-2.7.3 /opt

3.修改相应的配置文件:

(1)/etc/profile:

增加如下内容:

#hadoop enviroment 
export HADOOP_HOME=/opt/hadoop-2.7.3/
export PATH="$HADOOP_HOME/bin:$HADOOP_HOME/sbin:$PATH"
export HADOOP_CONF_DIR=$HADOOP_HOME/etc/hadoop
export YARN_CONF_DIR=$HADOOP_HOME/etc/hadoop
  • 刷新配置
source /etc/profile

(2)$HADOOP_HOME/etc/hadoop/hadoop-env.sh

修改JAVA_HOME 如下:
按上面的步骤,就是:vim /opt/hadoop-2.7.3/etc/hadoop/hadoop-env.sh

export JAVA_HOME=/usr/java/jdk1.8.0_112/

(3)$HADOOP_HOME/etc/hadoop/slaves

按上面的步骤,就是:vim /opt/hadoop-2.7.3/etc/hadoop/slaves

worker1
workeri2

(4)$HADOOP_HOME/etc/hadoop/core-site.xml

vim /opt/hadoop-2.7.3/etc/hadoop/core-site.xml

<configuration>
        <property>
                <name>fs.defaultFS</name>
                <value>hdfs://master:8020</value>
        </property>
        <property>
         <name>io.file.buffer.size</name>
         <value>131072</value>
       </property>
        <property>
                <name>hadoop.tmp.dir</name>
                <value>/opt/hadoop-2.7.3/tmp</value>
        </property>
</configuration>

(5)$HADOOP_HOME/etc/hadoop/hdfs-site.xml

vim /opt/hadoop-2.7.3/etc/hadoop/hdfs-site.xml

<configuration>
    <property>
      <name>dfs.namenode.secondary.http-address</name>
      <value>master:50090</value>
    </property>
    <property>
      <name>dfs.replication</name>
      <value>2</value>
    </property>
    <property>
      <name>dfs.namenode.name.dir</name>
      <value>file:/opt/hadoop-2.7.3/hdfs/name</value>
    </property>
    <property>
      <name>dfs.datanode.data.dir</name>
      <value>file:/opt/hadoop-2.7.3/tmp</value>
    </property>
</configuration>

(6)$HADOOP_HOME/etc/hadoop/mapred-site.xml

复制template,生成xml:

cp /opt/hadoop-2.7.3/etc/hadoop/mapred-site.xml.template mapred-site.xml

vim /opt/hadoop-2.7.3/etc/hadoop/mapred-site.xml
内容改为:

<configuration>
 <property>
    <name>mapreduce.framework.name</name>
    <value>yarn</value>
  </property>
  <property>
          <name>mapreduce.jobhistory.address</name>
          <value>master:10020</value>
  </property>
  <property>
          <name>mapreduce.jobhistory.address</name>
          <value>master:19888</value>
  </property>
</configuration>

(7)$HADOOP_HOME/etc/hadoop/yarn-site.xml

vim /opt/hadoop-2.7.3/etc/hadoop/yarn-site.xml
内容改为:

<!-- Site specific YARN configuration properties -->
         <property>
          <name>yarn.nodemanager.aux-services</name>
          <value>mapreduce_shuffle</value>
     </property>
     <property>
           <name>yarn.resourcemanager.address</name>
           <value>master:8032</value>
     </property>
     <property>
          <name>yarn.resourcemanager.scheduler.address</name>
          <value>master:8030</value>
      </property>
     <property>
         <name>yarn.resourcemanager.resource-tracker.address</name>
         <value>master:8031</value>
     </property>
     <property>
         <name>yarn.resourcemanager.admin.address</name>
         <value>master:8033</value>
     </property>
     <property>
         <name>yarn.resourcemanager.webapp.address</name>
         <value>master:8088</value>
     </property>

至此master节点的hadoop搭建完毕
再启动之前我们需要
格式化一下namenode

hadoop namenode -format

4.WorkerN节点:

(1)复制master节点的hadoop文件夹到worker上:

scp -r /opt/hadoop-2.7.3 root@worker1:/opt
scp -r /opt/hadoop-2.7.3 root@worker2:/opt 

(2)修改/etc/profile:

过程如master一样,分别在worker1和worker2上添加:

#hadoop enviroment 
export HADOOP_HOME=/opt/hadoop-2.7.3/
export PATH="$HADOOP_HOME/bin:$HADOOP_HOME/sbin:$PATH"
export HADOOP_CONF_DIR=$HADOOP_HOME/etc/hadoop
export YARN_CONF_DIR=$HADOOP_HOME/etc/hadoop
  • 刷新配置
source /etc/profile

六、Spark2.1.0完全分布式环境搭建:

MASTER节点:

1.下载文件:

wget -O "spark-2.1.0-bin-hadoop2.7.tgz" "http://d3kbcqa49mib13.cloudfront.net/spark-2.1.0-bin-hadoop2.7.tgz"

2.解压并移动至相应的文件夹;

tar -xvf spark-2.1.0-bin-hadoop2.7.tgz
mv spark-2.1.0-bin-hadoop2.7 /opt

3.修改相应的配置文件:

(1)/etc/profile

vim /etc/profile
#Spark enviroment
export SPARK_HOME=/opt/spark-2.1.0-bin-hadoop2.7/
export PATH="$SPARK_HOME/bin:$PATH"
  • 刷新配置
source /etc/profile

(2)$SPARK_HOME/conf/spark-env.sh

cd /opt/spark-2.1.0-bin-hadoop2.7/conf
cp spark-env.sh.template spark-env.sh

配置如下:

vim spark-env.sh
#配置内容如下:
export SCALA_HOME=/usr/share/scala
export JAVA_HOME=/usr/java/jdk1.8.0_112/
export SPARK_MASTER_IP=master
export SPARK_WORKER_MEMORY=1g
export HADOOP_CONF_DIR=/opt/hadoop-2.7.3/etc/hadoop

(3)$SPARK_HOME/conf/slaves

cd /opt/spark-2.1.0-bin-hadoop2.7/conf
cp slaves.template slaves
vim slaves

配置内容如下

master
worker1
worker2

(4)WorkerN节点:

将配置好的spark文件复制到workerN节点

scp -r spark-2.1.0-bin-hadoop2.7 root@worker1:/opt
scp -r spark-2.1.0-bin-hadoop2.7 root@worker2:/opt

修改/etc/profile,增加spark相关的配置,如MASTER节点一样

分别在worker1worker2上修改/etc/profile添加

vim /etc/profile
#Spark enviroment
export SPARK_HOME=/opt/spark-2.1.0-bin-hadoop2.7/
export PATH="$SPARK_HOME/bin:$PATH"
  • 刷新配置
source /etc/profile

七、启动集群的脚本

编辑启动集群脚本start-cluster.sh如下:

#!/bin/bash
echo -e "33[31m ========Start The Cluster======== 33[0m"
echo -e "33[31m Starting Hadoop Now !!! 33[0m"
/opt/hadoop-2.7.3/sbin/start-all.sh
echo -e "33[31m Starting Spark Now !!! 33[0m"
/opt/spark-2.1.0-bin-hadoop2.7/sbin/start-all.sh
echo -e "33[31m The Result Of The Command "jps" :  33[0m"
jps
echo -e "33[31m ========END======== 33[0m"

开始启动:

bash start-cluster.sh

编辑关闭集群脚本stop-cluser.sh如下:

#!/bin/bash
echo -e "33[31m ===== Stoping The Cluster ====== 33[0m"
echo -e "33[31m Stoping Spark Now !!! 33[0m"
/opt/spark-2.1.0-bin-hadoop2.7/sbin/stop-all.sh
echo -e "33[31m Stopting Hadoop Now !!! 33[0m"
/opt/hadoop-2.7.3/sbin/stop-all.sh
echo -e "33[31m The Result Of The Command "jps" :  33[0m"
jps
echo -e "33[31m ======END======== 33[0m"

八、测试一下集群:

这里我都用最简单最常用的Wordcount来测试好了!

1、测试Hadoop

编辑一个wordcount.txt文本:

vim wordcount.txt

输入:

Hello hadoop
hello spark
hello bigdata

然后执行下列命令:

hadoop fs -mkdir -p /Hadoop/Input
hadoop fs -put wordcount.txt /Hadoop/Input
hadoop jar /opt/hadoop-2.7.3/share/hadoop/mapreduce/hadoop-mapreduce-examples-2.7.3.jar wordcount /Hadoop/Input /Hadoop/Output

等待mapreduce执行完毕后,查看结果:

hadoop fs -cat /Hadoop/Output/*

显示:

Hello	1
bigdata	1
hadoop	1
hello	2
spark	1

证明hadoop集群搭建成功!

2.测试spark

为了避免麻烦这里我们使用spark-shell,做一个简单的worcount的测试
用于在测试hadoop的时候我们已经在hdfs上存储了测试的源文件,下面就是直接拿来用就好了!

spark-shell

然后输入如下内容:

val file=sc.textFile("hdfs://master:8020/Hadoop/Input/wordcount.txt")
val rdd = file.flatMap(line => line.split(" ")).map(word => (word,1)).reduceByKey(_+_)
rdd.collect()
rdd.foreach(println)

其实就是一行一行的输入,如下:

scala> val file=sc.textFile("hdfs://master:8020/Hadoop/Input/wordcount.txt")
file: org.apache.spark.rdd.RDD[String] = hdfs://master:8020/Hadoop/Input/wordcount.txt MapPartitionsRDD[11] at textFile at <console>:24

scala> val rdd = file.flatMap(line => line.split(" ")).map(word => (word,1)).reduceByKey(_+_)
rdd: org.apache.spark.rdd.RDD[(String, Int)] = ShuffledRDD[14] at reduceByKey at <console>:26

scala> rdd.collect()
res2: Array[(String, Int)] = Array((Hello,1), (hello,2), (bigdata,1), (spark,1), (hadoop,1))

scala> rdd.foreach(println)
(spark,1)
(hadoop,1)
(Hello,1)
(hello,2)
(bigdata,1)

至此spark也成功了。退出的话,退出命令如下:

:quit

hadoop和spark环境都测试成功后分别在主、从节点上执行jps命令的显示情况

hadoop和spark环境都测试成功后分别在主、从节点上执行jps命令显示如下

  • 1、主节点
10265 SecondaryNameNode
10010 NameNode
13146 Jps
10476 ResourceManager
  • 2、从节点1
7130 NodeManager
8810 Jps
6955 DataNode
  • 3、从节点2
4358 DataNode
5655 Jps
3819 NodeManager

可以发现主节点是没有DataNode节点的

原文地址:https://www.cnblogs.com/zh672903/p/14113514.html