hadoop 集群一共有4种部署模式,详见《hadoop 生态圈介绍》。 彻底分布式模式将hadoop部署在至少两台机子上,数据块副本的数量一般也设置为2以上,拥有Namenode和Secondary Namenode。html
全部四种模式的部署指南见:java
Hadoop 伪分布式搭建指南node
Hadoop 彻底分布式搭建指南linux
Hadoop HA+Federation(联邦)模式搭建指南apache
Ubuntu 14.04 x64 Server LTS
Hadoop 2.7.2
vagrant 模拟三台主机,内存都为2Gubuntu
IP | 主机名 | 角色描述 |
---|---|---|
192.168.100.201 | h01.vm.com | 主节点 NameNode, job-history-server |
192.168.100.202 | h02.vm.com | 主节点 Secondary-NameNode, (yarn)ResourceManager |
192.168.100.203 | h03.vm.com | - |
另,以上全部节点都同时是 slave从节点,即 datanode。运行Namenode和ResourceManager的节点即为主节点。vim
sudo apt-get update
sudo apt-get install ssh sudo apt-get install rsync
sudo vim /etc/hostname # centos系统可能没有该文件,建立便可 h01.vm.com # 该节点主机名
将该文件内容修改成对应的主机名,例如 h01.vm.comcentos
sudo vim /etc/hosts 192.168.100.201 h01.vm.com h01 192.168.100.202 h02.vm.com h02 192.168.100.203 h03.vm.com h03
!!! Ubuntu系统,须删掉 /etc/hosts 映射 127.0.1.1/127.0.0.1 !!! Check that there isn't an entry for your hostname mapped to 127.0.0.1 or 127.0.1.1 in /etc/hosts (Ubuntu is notorious for this). 127.0.1.1 h01.vm.com # must removebash
否则可能会引发 hadoop、zookeeper 节点间通讯的问题
在内网中搭建 ntp 服务器,可阅读vincent的博文 http://blog.kissdata.com/2014/10/28/ubuntu-ntp.html
# 先在其中一台机子操做,后面会使用 scp 命令或者其余方法同步到其余主机 mkdir -p /home/vagrant/VMBigData/hadoop /home/vagrant/VMBigData/java tar zxf jdk-7u79-linux-x64.tar.gz -C /home/vagrant/VMBigData/java tar zxf hadoop-2.7.2.tar.gz -C /home/vagrant/VMBigData/hadoop
ln -s /home/vagrant/VMBigData/java/jdk1.7.0_79/ /home/vagrant/VMBigData/java/default ln -s /home/vagrant/VMBigData/hadoop/hadoop-2.7.2/ /home/vagrant/VMBigData/hadoop/default
sudo vim /etc/profile export HADOOP_HOME=/home/vagrant/VMBigData/hadoop/default export JAVA_HOME=/home/vagrant/VMBigData/java/default export PATH=$JAVA_HOME/bin:$HADOOP_HOME/bin:$PATH source /etc/profile
hadoop主节点须要能远程登录集群内的全部节点(包括本身),以执行命令。因此须要配置免密码的ssh登录。可选的ssh秘钥对生成方式有rsa和dsa两种,这里选择rsa。
ssh-keygen -t rsa -C "youremail@xx.com" # 注意在接下来的命令行交互中,直接按回车跳过输入密码
ssh-copy-id vagrant@h01.vm.com # vagrant是远程主机用户名 ssh-copy-id vagrant@h02.vm.com # vagrant是远程主机用户名 ssh-copy-id vagrant@h03.vm.com
ssh h01.vm.com ssh h02.vm.com ssh h03.vm.com
!!! 注意使用rsa模式生成密钥对时,不要轻易覆盖原来已有的,肯定无影响时方可覆盖 !!!
在 slaves 文件中配置的主机即为从节点,将自动运行datanode服务
vim /home/vagrant/VMBigData/hadoop/default/etc/hadoop/slaves h01.vm.com h02.vm.com h03.vm.com
mkdir -p /home/vagrant/VMBigData/hadoop/data/hdfs/tmp mkdir -p /home/vagrant/VMBigData/hadoop/data/pid mkdir -p /home/vagrant/VMBigData/hadoop/data/namenode mkdir -p /home/vagrant/VMBigData/hadoop/data/namesecondary mkdir -p /home/vagrant/VMBigData/hadoop/data/datanode1 mkdir -p /home/vagrant/VMBigData/hadoop/data/datanode2 mkdir -p /home/vagrant/VMBigData/hadoop/data/local-dirs mkdir -p /home/vagrant/VMBigData/hadoop/data/log-dirs
在 h01 操做,后面经过 scp 同步到其余主机
vim /home/vagrant/VMBigData/hadoop/default/etc/hadoop/hadoop-env.sh # export JAVA_HOME=${JAVA_HOME} # 注意注释掉原来的这行 export JAVA_HOME=/home/vagrant/VMBigData/java/default export HADOOP_PREFIX=/home/vagrant/VMBigData/hadoop/default # export HADOOP_PID_DIR=${HADOOP_PID_DIR} # 注意注释掉原来的这行 export HADOOP_PID_DIR=/home/vagrant/VMBigData/hadoop/data/hdfs/pid export YARN_PID_DIR=/home/vagrant/VMBigData/hadoop/data/hdfs/pid # export HADOOP_SECURE_DN_PID_DIR=${HADOOP_PID_DIR} # 注意注释掉原来的这行 export HADOOP_SECURE_DN_PID_DIR=${HADOOP_PID_DIR}
vim /home/vagrant/VMBigData/hadoop/default/etc/hadoop/mapred-env.sh export HADOOP_MAPRED_PID_DIR=/home/vagrant/VMBigData/hadoop/data/hdfs/pid
<?xml version="1.0" encoding="utf-8"?> <configuration> <!-- 指定hdfs的nameservice为h01 --> <property> <name>fs.defaultFS</name> <value>hdfs://h01.vm.com:9000</value> </property> <!-- 指定hadoop数据存储目录 --> <property> <name>hadoop.tmp.dir</name> <value>/home/vagrant/VMBigData/hadoop/data/hdfs/tmp</value> </property> </configuration>
<?xml version="1.0" encoding="utf-8"?> <configuration> <property> <name>dfs.replication</name> <!-- 单机版的通常设为1,如果集群,通常设为3 --> <value>2</value> </property> <property> <name>dfs.namenode.name.dir</name> <!-- 建立的namenode文件夹位置,若有多个用逗号隔开。配置多个的话,每个目录下数据都是相同的,达到数据冗余备份的目的 --> <value>file:///home/vagrant/VMBigData/hadoop/data/namenode</value> </property> <property> <name>dfs.datanode.data.dir</name> <!-- 建立的datanode文件夹位置,多个用逗号隔开,实际不存在的目录会被忽略 --> <value>file:///home/vagrant/VMBigData/hadoop/data/datanode1,file:///home/vagrant/VMBigData/hadoop/data/datanode2</value> </property> <!-- 配置Secondary NameNode在另一个节点上,该节点也将做为主节点之一 --> <property> <name>dfs.http.address</name> <value>h01.vm.com:50070</value> <description>Secondary get fsimage and edits via dfs.http.address</description> </property> <property> <name>dfs.secondary.http.address</name> <value>h02.vm.com:50090</value> </property> <property> <name>dfs.namenode.checkpoint.dir</name> <value>file:///home/vagrant/VMBigData/hadoop/data/hdfs/namesecondary</value> </property> </configuration>
<?xml version="1.0" encoding="utf-8"?> <configuration> <property> <name>yarn.resourcemanager.hostname</name> <value>h02.vm.com</value> </property> <property> <name>yarn.log-aggregation-enable</name> <!-- 打开日志聚合功能,这样才能从web界面查看日志 --> <value>true</value> </property> <property> <name>yarn.log-aggregation.retain-seconds</name> <!-- 聚合日志最长保留时间 --> <value>86400</value> </property> <property> <name>yarn.nodemanager.resource.memory-mb</name> <!-- NodeManager总的可用内存,这个要根据实际状况合理配置 --> <value>1024</value> </property> <property> <name>yarn.scheduler.minimum-allocation-mb</name> <!-- MapReduce做业时,每一个task最少可申请内存 --> <value>256</value> </property> <property> <name>yarn.scheduler.maximum-allocation-mb</name> <!-- MapReduce做业时,每一个task最多可申请内存 --> <value>512</value> </property> <property> <name>yarn.nodemanager.vmem-pmem-ratio</name> <!-- 可申请使用的虚拟内存,相对于实际使用内存大小的倍数。实际生产环境中可设置的大一些,如4.2 --> <value>2.1</value> </property> <property> <name>yarn.nodemanager.vmem-check-enabled</name> <value>false</value> </property> <property> <name>yarn.nodemanager.local-dirs</name> <!-- 中间结果存放位置。注意,这个参数一般会配置多个目录,已分摊磁盘IO负载。 --> <value>/home/vagrant/VMBigData/hadoop/data/localdir1,/home/vagrant/VMBigData/hadoop/data/localdir2</value> </property> <property> <name>yarn.nodemanager.log-dirs</name> <!-- 日志存放位置。注意,这个参数一般会配置多个目录,已分摊磁盘IO负载。 --> <value>/home/vagrant/VMBigData/hadoop/data/logdir1,/home/vagrant/VMBigData/hadoop/data/logdir2</value> </property> <property> <name>yarn.nodemanager.aux-services</name> <value>mapreduce_shuffle</value> </property> <property> <name>yarn.nodemanager.aux-services.mapreduce.shuffle.class</name> <value>org.apache.hadoop.mapred.ShuffleHandler</value> </property> </configuration>
<?xml version="1.0" encoding="utf-8"?> <configuration> <property> <name>mapreduce.framework.name</name> <value>yarn</value> </property> <property> <name>yarn.app.mapreduce.am.resource.mb</name> <!-- 默认值为 1536,可根据须要调整,调小一些也是可接受的 --> <value>512</value> </property> <property> <name>mapreduce.map.memory.mb</name> <!-- 每一个map task申请的内存,每一次都会实际申请这么多 --> <value>384</value> </property> <property> <name>mapreduce.map.java.opts</name> <!-- 每一个map task中的child jvm启动时参数,须要比 mapreduce.map.memory.mb 设置的小一些 --> <!-- 注意:map任务里不必定跑java,可能跑非java(如streaming) --> <value>-Xmx256m</value> </property> <property> <name>mapreduce.reduce.memory.mb</name> <value>384</value> </property> <property> <name>mapreduce.reduce.java.opts</name> <value>-Xmx256m</value> </property> <property> <name>mapreduce.tasktracker.map.tasks.maximum</name> <value>2</value> </property> <property> <name>mapreduce.tasktracker.reduce.tasks.maximum</name> <value>2</value> </property> <property> <name>mapred.child.java.opts</name> <!-- 默认值为 -Xmx200m,生产环境能够设大一些 --> <value>-Xmx384m</value> </property> <property> <name>mapreduce.task.io.sort.mb</name> <!-- 任务内部排序缓冲区大小 --> <value>128</value> </property> <property> <name>mapreduce.task.io.sort.factor</name> <!-- map计算彻底后的merge阶段,一次merge时最多可有多少个输入流 --> <value>100</value> </property> <property> <name>mapreduce.reduce.shuffle.parallelcopies</name> <!-- reuduce shuffle阶段并行传输数据的数量 --> <value>50</value> </property> <property> <name>mapreduce.jobhistory.address</name> <value>h01.vm.com:10020</value> </property> <property> <name>mapreduce.jobhistory.webapp.address</name> <value>h01.vm.com:19888</value> </property> </configuration>
scp -r /home/vagrant/VMBigData vagrant@h02.vm.com:/home/vagrant scp -r /home/vagrant/VMBigData vagrant@h03.vm.com:/home/vagrant
!!! 注意:default 软链接须要重建 !!!
hdfs namenode -format
!!! 注意仅在首次启动时执行,由于此命令会删除hadoop集群全部的数据 !!!
启动NameNode守护进程
cd /home/vagrant/VMBigData/hadoop/default sbin/hadoop-daemon.sh --script hdfs start namenode # sbin/hadoop-daemon.sh --script hdfs stop namenode # 中止
启动全部从节点的DataNode守护进程
cd /home/vagrant/VMBigData/hadoop/default sbin/hadoop-daemon.sh --script hdfs start datanode # sbin/hadoop-daemon.sh --script hdfs stop datanode # 中止
启动ResourceManager守护进程
cd /home/vagrant/VMBigData/hadoop/default sbin/yarn-daemon.sh start resourcemanager # sbin/yarn-daemon.sh stop resourcemanager # 中止
启动全部从节点的NodeManager守护进程
cd /home/vagrant/VMBigData/hadoop/default sbin/yarn-daemon.sh start nodemanager # sbin/yarn-daemon.sh stop nodemanager # 中止
启动MapReduce JobHistory Server(可选)
cd /home/vagrant/VMBigData/hadoop/default sbin/mr-jobhistory-daemon.sh start historyserver # sbin/mr-jobhistory-daemon.sh stop historyserver # 中止
cd /home/vagrant/VMBigData/hadoop/default sbin/start-dfs.sh # sbin/stop-dfs.sh # 中止
cd /home/vagrant/VMBigData/hadoop/default sbin/start-yarn.sh # sbin/stop-yarn.sh # 中止
cd /home/vagrant/VMBigData/hadoop/default sbin/mr-jobhistory-daemon.sh start historyserver # sbin/mr-jobhistory-daemon.sh stop historyserver # 中止
NameNode http://192.168.100.201:50070
Secondary NameNode http://192.168.100.202:50090
ResourceManager http://192.168.100.202:8088
MapReduce JobHistory Server http://192.168.100.201:19888
Datanode http://192.168.100.201:50075 http://192.168.100.202:50075 http://192.168.100.203:50075
集群状态 hdfs dfsadmin -report
hadoop进程 jps