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虚拟机中四台Ubuntu安装配置Hadoop(下)

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完成 “虚拟机中四台Ubuntu安装配置Hadoop(上)”中的配置后,就可以进行下面的操作了。

 

1. 下载安装 hadoop

下载当前稳定版本,1.0.4版本

放到 NameNode01虚拟机的 /home/hadoop目录下

运行解压命令:

tar -zxvf hadoop-1.0.4.tar.gz

为了便于操作,将解压后的hadoop-1.0.4 重命名成 hadoop104

mv hadoop-1.0.4 hadoop104

 

2. 配置hadoop

进入 hadoop104目录下,进行下面的配置

(1) 编辑/home/hadoop/hadoop104/conf 目录下的hadoop-env.sh 文件,

sudo gedit hadoop-env.sh 

 添加java环境变量

export JAVA_HOME=/opt/jdk1.6.0_37

 (2)编辑/home/hadoop/hadoop104/conf 目录下的slaves文件

 sudo gedit slaves

 该文件用来指定所有的DataNode,一行指定一个主机名。即本文中的DataNode01、NN02、DN02, 所以slaves的内容应该如下:

 

DataNode01
NN02
DN02

 (3)修改/home/hadoop/hadoop104/conf 目录下的masters文件,

打开masters文件,该文件用来指定备份节点Secondarynamenode,生产上环境部署一般不会将namenodeSecondarynamenode同时部署在一台服务器上,内容如下: 

 

NN02

(4)  修改/home/hadoop/hadoop104/conf 目录下的core-site.xml文件,core-site.xmlhadoop核心的配置文件,在该文件中配置hdfs的地址和端口,core-site.xml的添加如下内容:

 

<property>
   <name>fs.default.name</name>
   <value>hdfs://hadoop1:9000</value>
</property>

 

 (5)将/home/hadoop/hadoop104/src/hdfs/hdfs-default.xml文件复制到/home/hadoop/hadoop104/conf目录下,并改名且覆盖原hdfs-site.xml文件 

 

cp /home/hadoop/hadoop104/src/hdfs/hdfs-default.xml  /home/hadoop/hadoop104/conf/hdfs-site.xml

配置文件中的dfs.name.dir目录,默认是在/tmp目录下,linux系统重启时可能会造成临时目录的文件丢失,

所以可以做如下两处修改: 

<property>
  <name>dfs.name.dir</name>
  <value>${hadoop.tmp.dir}/dfs/name</value>
  <description>Determines where on the local filesystem the DFS name node
      should store the name table(fsimage).  If this is a comma-delimited list
      of directories then the name table is replicated in all of the
      directories, for redundancy. </description>
</property>

修改为:

<property>
  <name>dfs.name.dir</name>
  <value>/hadoopdata/dfs/name</value>
  <description>Determines where on the local filesystem the DFS name node
      should store the name table(fsimage).  If this is a comma-delimited list
      of directories then the name table is replicated in all of the
      directories, for redundancy. </description>
</property>

还有: 

<property>
  <name>dfs.data.dir</name>
  <value>${hadoop.tmp.dir}/dfs/data</value>
  <description>Determines where on the local filesystem an DFS data node
  should store its blocks.  If this is a comma-delimited
  list of directories, then data will be stored in all named
  directories, typically on different devices.
  Directories that do not exist are ignored.
  </description>
</property>

 修改为: 

<property>
  <name>dfs.data.dir</name>
  <value>/hadoopdata/dfs/data</value>
  <description>Determines where on the local filesystem an DFS data node
  should store its blocks.  If this is a comma-delimited
  list of directories, then data will be stored in all named
  directories, typically on different devices.
  Directories that do not exist are ignored.
  </description>
</property>

 

注1:因为修改成了/hadoopdata/dfs/name 目录,所以需要先建立一下该目录才可使用,可通过下面的命令,分别在四台虚拟机上创建对应目录

sudo mkdir /hadoopdata            (创建/hadoopdata目录)
sudo chown hadoop /hadoopdata/    (修改/hadoopdata目录的所属人,使得hadoop用户可以修改)
mkdir /hadoopdata/dfs             (创建/hadoopdata/dfs目录)
mkdir /hadoopdata/dfs/name        (创建/hadoopdata/dfs/name目录)

四台虚拟机上都分别进行上面操作.

注2: 另外还有,在配置文件中dfs.replication的值,hadoop默认设置为3(文件块备份份数),因为在本文中使用的也是3个数据节点,所有不用修改了。

(6)修改mapred-site.xml

   mapred-site.xml是mapreduce的配置文件,配置的是jobtracker的地址和端口

<configuration>
  <property>
    <name>mapred.job.tracker</name>
    <value>NameNode1:9001</value>
  </property>
</configuration>

 

(7) 将hadoop部署到其他机器上,保证目录结构一致

 scp -r /home/hadoop/hadoop104 DataNode01:/home/hadoop
 scp -r /home/hadoop/hadoop104 NN02:/home/hadoop
 scp -r /home/hadoop/hadoop104 DN02:/home/hadoop

 等全部传送完毕后,hadoop部署配置算是基本完成

(8)在启动hadoop之前,需要先格式化namenode,先进入hadoop的安装目录,即 /home/hadoop/hadoop104/ 执行下面的命令:

bin/hadoop namenode -format

 看到类似下面的结果表明格式完毕:

输出结果如下:
13/02/21 22:10:00 INFO util.GSet: VM type       = 64-bit
13/02/21 22:10:00 INFO util.GSet: 2% max memory = 19.33375 MB
13/02/21 22:10:00 INFO util.GSet: capacity      = 2^21 = 2097152 entries
13/02/21 22:10:00 INFO util.GSet: recommended=2097152, actual=2097152
13/02/21 22:10:01 INFO namenode.FSNamesystem: fsOwner=hadoop
13/02/21 22:10:01 INFO namenode.FSNamesystem: supergroup=supergroup
13/02/21 22:10:01 INFO namenode.FSNamesystem: isPermissionEnabled=true
13/02/21 22:10:01 INFO namenode.FSNamesystem: dfs.block.invalidate.limit=100
13/02/21 22:10:01 INFO namenode.FSNamesystem: isAccessTokenEnabled=false accessKeyUpdateInterval=0 min(s), accessTokenLifetime=0 min(s)
13/02/21 22:10:01 INFO namenode.NameNode: Caching file names occuring more than 10 times 
13/02/21 22:10:01 INFO common.Storage: Image file of size 112 saved in 0 seconds.
13/02/21 22:10:01 INFO common.Storage: Storage directory /hadoopdata/dfs/name has been successfully formatted.
13/02/21 22:10:01 INFO namenode.NameNode: SHUTDOWN_MSG: 
/************************************************************
SHUTDOWN_MSG: Shutting down NameNode at NameNode01/192.168.0.111
************************************************************/

 

 如果前面配置没有出差错,格式化应该会成功,如果由于各种原因导致格式化失败,就去hadoop104/logs下查看日志文件,如果之前格式化过,如果不能再次格式化,可能需要删除掉 /tmp, /data目录下的文件才可以再次格式化。

 

3.测试

前面准备工作完成后,就可以启动hadoop了,在/home/hadoop/hadoop104/bin目录下有几种启动脚本,简要说明如下:

start-all.sh 启动所有的Hadoop守护。包括namenode, datanode, jobtracker, tasktrack
stop-all.sh 停止所有的Hadoop
start-mapred.sh 启动Map/Reduce守护。包括Jobtracker和Tasktrack
stop-mapred.sh 停止Map/Reduce守护
start-dfs.sh 启动Hadoop DFS守护.Namenode和Datanode
stop-dfs.sh 停止DFS守护

 

下面启动所有守护进程:

hadoop@NameNode01:~/hadoop104$ bin/start-all.sh 

 输出结果如下:

starting namenode, logging to /home/hadoop/hadoop104/libexec/../logs/hadoop-hadoop-namenode-NameNode01.out
NN02: starting datanode, logging to /home/hadoop/hadoop104/libexec/../logs/hadoop-hadoop-datanode-NN02.out
DN02: starting datanode, logging to /home/hadoop/hadoop104/libexec/../logs/hadoop-hadoop-datanode-DN02.out
DataNode01: starting datanode, logging to /home/hadoop/hadoop104/libexec/../logs/hadoop-hadoop-datanode-DataNode01.out
NN02: starting secondarynamenode, logging to /home/hadoop/hadoop104/libexec/../logs/hadoop-hadoop-secondarynamenode-NN02.out
starting jobtracker, logging to /home/hadoop/hadoop104/libexec/../logs/hadoop-hadoop-jobtracker-NameNode01.out
DataNode01: starting tasktracker, logging to /home/hadoop/hadoop104/libexec/../logs/hadoop-hadoop-tasktracker-DataNode01.out
DN02: starting tasktracker, logging to /home/hadoop/hadoop104/libexec/../logs/hadoop-hadoop-tasktracker-DN02.out
NN02: starting tasktracker, logging to /home/hadoop/hadoop104/libexec/../logs/hadoop-hadoop-tasktracker-NN02.out

 

可以从输出上看到各个节点所启动的进程,其中NameNode01自身启动了namenode一个进程,NN02包括datanode,secondarynamenode,tasktracker三个进程;DN02和DataNode01包括datanode和tasktracker两个进程。以上个Ubuntu节点的进程情况也登录到具体的Ubuntu机器,通过输入jps命令查看。

查看集群的状态执行:

bin/hadoop dfsadmin -report

 显示输出如下:

Configured Capacity: 155743215616 (145.05 GB)
Present Capacity: 134797897728 (125.54 GB)
DFS Remaining: 134797811712 (125.54 GB)
DFS Used: 86016 (84 KB)
DFS Used%: 0%
Under replicated blocks: 0
Blocks with corrupt replicas: 0
Missing blocks: 0
-------------------------------------------------
Datanodes available: 3 (3 total, 0 dead)

Name: 192.168.0.112:50010
Decommission Status : Normal
Configured Capacity: 52506136576 (48.9 GB)
DFS Used: 28672 (28 KB)
Non DFS Used: 6880530432 (6.41 GB)
DFS Remaining: 45625577472(42.49 GB)
DFS Used%: 0%
DFS Remaining%: 86.9%
Last contact: Thu Feb 21 23:06:57 CST 2013

Name: 192.168.0.114:50010
Decommission Status : Normal
Configured Capacity: 52506136576 (48.9 GB)
DFS Used: 28672 (28 KB)
Non DFS Used: 6881538048 (6.41 GB)
DFS Remaining: 45624569856(42.49 GB)
DFS Used%: 0%
DFS Remaining%: 86.89%
Last contact: Thu Feb 21 23:06:57 CST 2013

Name: 192.168.0.113:50010
Decommission Status : Normal
Configured Capacity: 50730942464 (47.25 GB)
DFS Used: 28672 (28 KB)
Non DFS Used: 7183249408 (6.69 GB)
DFS Remaining: 43547664384(40.56 GB)
DFS Used%: 0%
DFS Remaining%: 85.84%
Last contact: Thu Feb 21 23:06:57 CST 2013

  还可以查看http://192.168.0.111:50070 或者 http://NameNode01:50070 通过网页查看集群状态。

 

若要停止hadoop,需要执行:

bin/stop-all.sh

 到目前为止,hadoop初步的安装配置及运行说明完毕

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