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  • 基本环境安装: Centos7+Java+Hadoop+Spark+HBase+ES+Azkaban

    1.  安装VM14的方法在 人工智能标签中的《跨平台踩的大坑有提到》

    2. CentOS分区设置: 

    /boot:1024M,标准分区格式创建。

    swap:4096M,标准分区格式创建。

    /:剩余所有空间,采用lvm卷组格式创建

    其他按需要设置就好, 配置好后使用 vi /etc/sysconfig/network-scripts/ifcfg-eno16777736 设置网络连接;

    HWADDR=00:0C:29:B3:AE:0E
    TYPE=Ethernet
    BOOTPROTO=static
    DEFROUTE=yes
    PEERDNS=yes
    PEERROUTES=yes
    IPV4_FAILURE_FATAL=no
    IPV6INIT=yes
    IPV6_AUTOCONF=yes
    IPV6_DEFROUTE=yes
    IPV6_PEERDNS=yes
    IPV6_PEERROUTES=yes
    IPV6_FAILURE_FATAL=no
    NAME=eno16777736
    UUID=2cb8e76d-0626-4f8e-87e5-7e0743e4555f
    ONBOOT=yes
    IPADDR=192.168.10.186
    NETMASK=255.255.255.0
    GATEWAY=192.168.10.1
    DNS1=192.168.10.1
    

      

    网关与IP与Windows主机匹配, 不能随便乱配!

    ipconfig /all 按照主机网络配置虚拟机
    虚拟机Ping主机, 如果一直卡住, 则修改防火墙入站规则, 启用文件与打印共享中的PV4 IN 公用;

    service network restart命令重启网卡,生效刚刚修改ip地址,ping www.baidu.com测试网络连通性。

    配置细则参考: http://www.cnblogs.com/wcwen1990/p/7630545.html

    修改主机映射:
    
    vi /etc/hostname
    pc.apache
    
    
    vi /etc/hosts
    192.168.1.186 pc.apache
    192.168.1.187 pc.apache2
    ...
    reboot #即可生效
    

      

    配置免秘钥登入:
    
    很多公司都修改了ssh端口,使用 vi ~/.ssh/config 修改,  注意: config的最大使用权限600, chmod -R 600 config。 其配置为:
    Host *
    Port 你的端口
    
    
    0.安装lrzsz工具:
    yum install -y lrzsz
    
    1.首先以root用户身份,修改:vim /etc/ssh/sshd_config	
    StrictModes no
    RSAAuthentication yes
    PubkeyAuthentication yes
    AuthorizedKeysFile      .ssh/authorized_keys
     
    2.创建用户hadoop:
    useradd hadoop
    passwd hadoop
     
    3. 切换到hadoop用户: 
    su - hadoop
     
    4. 三台机器都生成证书:
    ssh-keygen -t rsa
     
     
    5 每台机器的证书,通过如下命令导入到一个相同的文件。这样,authorized_keys文件中追加了三台机器各自生成的证书:
    cat  id_rsa.pub >>  authorized_keys
     
    6.将包含三台机器证书的文件authorized_keys分发到三台机器的~/.ssh/authorized_keys目录下:
    rz上传,sz下载
     
    7 然后把三台机器 .ssh/ 文件夹权限改为700,authorized_keys文件权限改为644:
    chmod 700 ~/.ssh
    chmod 644 ~/.ssh/authorized_keys
    

      

      

      

    3. 安装jdk

    将jdk解压到software目录后, 添加环境变量;

    vi /etc/profile
    export JAVA_HOME=/opt/software/jdk1.8.0_191
    export PATH=$JAVA_HOME/bin:$PATH

    source /etc/profile

    java安装好后, 可使用jps。

      

    zookeeper安装:
    
    进入目录 
    
    mkdir zkData
    
    cp conf/zoo_sample.cfg conf/zoo.cfg
    
    $vim conf/zoo.cfg
    	    dataDir=/data/software/zookeeper-3.4.5/zkData
    		server.1=pc1.hadoop:2888:3888
    		server.2=pc2.hadoop:2888:3888
    		server.3=pc3.hadoop:2888:3888
    		
    #在三台机器上同样敲入 #pc1 : $vim zkData/myid 1         1 对应 server.1
    

      

    配置好后, 将java, zookeepr, hadoop 全部复制到其他节点,  并修改各节点环境变量。

    配置ZOOKEEPER + HADOOP HA:

    Zookeeper + Hadoop HA:
    
    rm -rf /data/software/zookeeper-3.4.5/zkData/*
    vim /data/software/zookeeper-3.4.5/zkData/myid
    rm -rf /data/dataware/*
    
    zkServer.sh start
    zkServer.sh status
    zkServer.sh stop
    
    
    先清空其他节点的配置: rm -rf /data/software/hadoop-2.7.3/etc/*
    scp -r hadoop/ hadoop@app-003:/data/software/hadoop-2.7.3/etc/
    
    
    第一次初始化:
    先在各节点启动:  hadoop-daemon.sh start journalnode
    在主节点启动:    hdfs namenode -format
    将core-site.xml 中hadoop.tmp.dir的目录, 在主节点复制到第二个namenode节点:scp -r /data/dataware/hadoop/tmp/  hadoop@app-002:/data/dataware/hadoop/
    在主节点启动:    hdfs zkfc -formatZK
    
    
    主节点启动: start-dfs.sh 
    #主节点启动: yarn-daemon.sh start resourcemanager
    主节点启动: start-yarn.sh
    
    hadoop jar share/hadoop/mapreduce/hadoop-mapreduce-examples-2.7.3.jar pi 1 3
    
    
    
    第二次及以后启动hadoop时, 可直接启动dfs不需要再先启动 journalnode, 但是这就遇到一个问题, journalnode启动需要时间,只有其稳定后, namenode才能稳定。
    否则会出现一直连不到app:8485的情况。
    
    解决: ipc.client.connect.max.retrie  20 ;   ipc.client.connect.retry.interval  5000
    
    主节点启动: stop-yarn.sh   stop-dfs.sh
    各节点启动: zkServer.sh stop
    

      

      

    4. 安装hadoop单机版(集群可忽略此处)以及设置防火墙与linxu安全模式

    先将hadoop添加进环境变量,  $HADOOP_HOME/bin

    #关闭防火墙
    service iptables stop
    
    
    #关闭防火墙开机启动
    chkconfig iptable  s off
    
    #关闭linux安全模式
    /etc/sysconfig/selinux
    
    #关闭centos7防火墙
    systemctl stop firewalld.service # 关闭firewall
    systemctl disable firewalld.service # 禁止firewall开机启动
    
    
    报错: 
    The authenticity of host 'XXXX' can't be established错误解决
    vim /etc/ssh/ssh_config
    最后面添加
    StrictHostKeyChecking no
    UserKnownHostsFile /dev/null
    
    无法连接MKS,  在任务管理器中打开所有VM服务进程
    
    bin/hdfs namenode -format
    sbin/start-dfs.sh 
    sbin/start-yarn.sh
    
    pc.apache:50070
    pc.apache:8088
    
    hadoop jar share/hadoop/mapreduce/hadoop-mapreduce-examples-2.7.3.jar pi 1 3
    
    关闭方式:  除了使用 stop命令外, 实在没办法了可以使用:
    killall java
      
    
    相关配置如下:
    
    vim hadoop-env.sh
    
    export JAVA_HOME=${JAVA_HOME}
    export JAVA_HOME=/opt/software/jdk1.8.0_191
    
    
    vim core-site.xml
    
    <configuration>
        <property>
          <name>fs.defaultFS</name>
          <value>hdfs://pc.apache:8020</value>
        </property>
        <property>
          <name>hadoop.tmp.dir</name>
          <value>/opt/software/hadoop-2.7.3/data</value>
        </property>
    </configuration>
    
    
    
    vim hdfs-site.xml
    
    <configuration>
            <property>
              <name>dfs.replication</name>
              <value>1</value>
            </property>
            <property>
              <name>dfs.permissions</name>
              <value>false</value>
            </property>
            <property>
              <name>dfs.namenode.name.dir</name>
              <value>/opt/software/hadoop-2.7.3/data/name</value>
            </property>
            <property>
              <name>dfs.webhdfs.enable</name>
              <value>true</value>
            </property>
    
            <property>
              <name>dfs.permissions.enable</name>
              <value>false</value>
            </property>
    
    
    </configuration>
    
    
    vim mapred-site.xml
    
    <configuration>
    
            <property>
              <name>mapreduce.framework.name</name>
              <value>yarn</value>
            </property>
            <!--指定jobhistory服务的主机及RPC端口号-->
            <property>
              <name>mapreduce.jobhistory.address</name>
              <!--配置实际的主机名和端口-->
              <value>pc.apache:10020</value>
            </property>
            <!--指定jobhistory服务的web访问的主机及RPC端口号-->
            <property>
              <name>mapreduce.jobhistory.webapp.address</name>
              <value>pc.apache:19888</value>
            </property>
    
    </configuration>
    
    
    vim slaves
    
    pc.apache
    
    
    vim yarn-site.xml
    
    <configuration>
            <property>
              <name>yarn.nodemanager.aux-services</name>
              <value>mapreduce_shuffle</value>
            </property>
            <!-- 指定ResorceManager所在服务器的主机名-->
            <property>
              <name>yarn.resourcemanager.hostname</name>
              <value>pc.apache</value>
            </property>
            <!--启用日志聚合功能-->
            <property>
              <name>yarn.log-aggregation-enable</name>
              <value>true</value>
            </property>
            <!--日志保存时间-->
            <property>
              <name>yarn.log-aggregation.retain-seconds</name>
              <value>86400</value>
            </property>
    
    </configuration>
    

      

      

    5. 安装hive

    完全卸载mysql:
    
    yum remove mysql-community mysql-community-server mysql-community-libs mysql-community-common -y
    
    yum -y remove mysql57-community-release-el7-10.noarch
    
    rpm -qa |grep -i mysql
    rpm -ev MySQL-client-5.5.60-1.el7.x86_64  --nodeps
    
    find / -name mysql   全部删除
    
    rpm -qa|grep mysql
    rpm -ev mysql57-community-release-el7-8.noarch
    

      

      

    安装MySQL:
    
    wget http://dev.mysql.com/get/mysql57-community-release-el7-8.noarch.rpm
    
    yum localinstall mysql57-community-release-el7-8.noarch.rpm
    
    yum repolist enabled | grep "mysql.*-community.*"
    
    yum install mysql-community-server
    
    systemctl start mysqld
    systemctl status mysqld
    systemctl enable mysqld
    systemctl daemon-reload
    
    
    首次安装,获取临时密码:
    grep 'temporary password' /var/log/mysqld.log
    mysql -uroot -p    #即可登入
    
    但是,在登入之前最好设置密码规则, 便于修改
    vim /etc/my.cnf
    validate_password = off
    
    
    systemctl restart mysqld   重启服务
    ALTER USER 'root'@'localhost' IDENTIFIED BY '111111';   #修改密码
    
    grant all privileges on *.* to 'root'@'%' identified by '111111';  #给其他用户权限
    flush privileges;
    
    
    在/etc/my.cnf 配置编码
    [mysqld]
    character_set_server=utf8
    init_connect='SET NAMES utf8'
    
     
    

      

    create user 'hive'@'localhost' identified by 'hive';
    create database hive;
    alter database hive character set latin1;
    
    grant all on hive.* to hive@'%'  identified by 'hive';
    grant all on hive.* to hive@'localhost'  identified by 'hive';
    grant all on metastore.* to hive@'localhost'  identified by 'hive';
    grant all on metastore.* to hive@'%'  identified by 'hive';
    
    
    show grants for hive@'localhost'; 
    flush privileges; 
    
    
    
    如果重装HIVE:  删除Hive在MySQL的元数据, 如下。
    
    drop database metastore;
    
    
    select * from metastore.SDS;
    select * from metastore.DBS;
    delete from `metastore`.`TABLE_PARAMS`
    drop table  `metastore`.`TABLE_PARAMS`
    delete from `metastore`.`TBLS`
    drop table `metastore`.`TBLS`
    
    delete from  metastore.SDS
    delete from  metastore.DBS
    drop table  metastore.SDS
    drop table metastore.DBS
    

      

    下载并解压好hive项目
    
    cp hive-default.xml.template hive-site.xml
    cp hive-env.sh.template hive-env.sh
    cp hive-log4j2.properties.template hive-log4j2.properties
    
    
    vim hive-site.xml
    
    <configuration>
    <property>
      <name>hive.cli.print.header</name>
      <value>true</value>
      <description>Whether to print the names of the columns in query output.</description>
    </property>
    
    <property>
      <name>hive.cli.print.current.db</name>
      <value>true</value>
      <description>Whether to include the current database in the Hive prompt.</description>
    </property>
    
    <property>
      <name>javax.jdo.option.ConnectionURL</name>
      <value>jdbc:mysql://pc1.hadoop:3306/metastore?createDatabaseIfNotExist=true</value>
      <description>JDBC connect string for a JDBC metastore</description>
    </property>
    
    <property>
      <name>javax.jdo.option.ConnectionDriverName</name>
      <value>com.mysql.jdbc.Driver</value>
      <description>Driver class name for a JDBC metastore</description>
    </property>
    
    <property>
      <name>javax.jdo.option.ConnectionUserName</name>
      <value>hive</value>
      <description>username to use against metastore database</description>
    </property>
    
    <property>
      <name>javax.jdo.option.ConnectionPassword</name>
      <value>hive</value>
      <description>password to use against metastore database</description>
    </property>
    
    
    <property>
    <name>hive.server2.long.polling.timeout</name>
    <value>5000</value>
    </property>
    
    <property>
    <name>hive.server2.thrift.port</name>
    <value>10001</value>
    
    <!-- 因为Spark-sql服务端口是10000, 避免冲突,这里改成10001-->
    </property>
    
    <property>
    <name>hive.server2.thrift.bind.host</name>
    <value>pc1.hadoop</value>
    </property>
    
    
    
    </configuration>
    
    
    vim hive-env.sh
    
    export JAVA_HOME=/opt/software/jdk1.8.0_191
    export HADOOP_HOME=/opt/software/hadoop-2.7.3/etc/hadoop
    export HIVE_CONF_DIR=/opt/software/hive-2.1.1/conf
    
    
    vim hive-log4j2.properties
    
    hive.log.dir=/                # 配置一下目录地址
    

      

    在Maven仓库下载一个mysql-connector-java-5.1.22-bin.jar , 放入hive目录下的 lib文件夹中

    在Hive目录下, 初始化数据库。
    
    报错:  Host is not allowed to connect to this MySQL server
    use mysql;
    update user set host = '%' where user = 'root';
    FLUSH PRIVILEGES;
    
    schematool -dbType mysql -initSchema

    将HIVE_HOME添加到环境变量, 执行hive后, 报错: Relative path in absolute URI
    在hive-site.xml中 找到所有${system:java.io.tmpdir} 替换成 ./hive/logs/iotemp

    再次运行hive

    启动hive服务
    hive --service metastore &
    hive --service hiveserver2 &

      

    第一次启动spark:
    
    hadoop fs -put /data/software/spark-2.1.1/jars/* /user/spark/libs/
    
    start-master.sh
    start-slaves.sh
    

      

     6. 安装spark

    第一步 下载一个scala:   
    https://www.scala-lang.org/download/2.11.8.html      #将scala添加进环境变量即可;
    
    第二步 解压spark-2.2.0-bin-hadoop2.7.tgz,  并将spark添加环境变量;
    
    vim spark-env.sh
    
    export JAVA_HOME=/opt/software/jdk1.8.0_191
    
    export HADOOP_CONF_DIR=/opt/software/hadoop-2.7.3
    
    export HIVE_CONF_DIR=/opt/software/hive-2.1.1
    
    export SCALA_HOME=/opt/software/scala-2.11.8
    
    export SPARK_WORK_MEMORY=1g
    
    export MASTER=spark://pc.apache:7077
    
    
    由于Spark-SQL需要用到Hive数据源, 因此需要修改Hive中的hive-site.xml
      <property>
        <name>hive.metastore.uris</name>
        <value>thrift://pc.apache:9083</value>
      </property>
    
    修改好后, 将其复制到spark/conf 目录下
    cp hive-site.xml /opt/software/spark-2.2.0-bin-hadoop2.7/conf/
    
    复制依赖的jars:
    cp $HIVE_HOME/lib/hive-hbase-handler-2.1.1.jar $SPARK_HOME/jars/
    
    mkdir $SPARK_HOME/lib
    cp $HIVE_HOME/lib/mysql-connector-java-5.1.34.jar $SPARK_HOME/lib/
    cp $HIVE_HOME/lib/metrics-core-2.2.0.jar $SPARK_HOME/lib
    
    
    cp $HBASE_HOME/lib/guava-12.0.1.jar $SPARK_HOME/lib/
    cp $HBASE_HOME/lib/hbase-common-1.2.5-tests.jar $SPARK_HOME/lib/
    cp $HBASE_HOME/lib/hbase-client-1.2.5.jar $SPARK_HOME/lib/
    cp $HBASE_HOME/lib/hbase-protocol-1.2.5.jar $SPARK_HOME/lib/
    cp $HBASE_HOME/lib/htrace-core-3.1.0-incubating.jar $SPARK_HOME/lib/
    cp $HBASE_HOME/lib/hbase-common-1.2.5.jar $SPARK_HOME/lib/
    cp $HBASE_HOME/lib/hbase-server-1.2.5.jar $SPARK_HOME/lib/
    
    
    将上述环境变量添加进 vim $SPARK_HOME/conf/spark-env.sh
    
    export SPARK_CLASSPATH=$SPARK_CLASSPATH:$SPARK_HOME/lib/guava-12.0.1.jar
    
    export SPARK_CLASSPATH=$SPARK_CLASSPATH:$SPARK_HOME/lib/hbase-client-1.2.5.jar
    
    export SPARK_CLASSPATH=$SPARK_CLASSPATH:$SPARK_HOME/lib/hbase-common-1.2.5.jar
    
    export SPARK_CLASSPATH=$SPARK_CLASSPATH:$SPARK_HOME/lib/hbase-common-1.2.5-tests.jar
    
    export SPARK_CLASSPATH=$SPARK_CLASSPATH:$SPARK_HOME/lib/hbase-protocol-1.2.5.jar
    
    export SPARK_CLASSPATH=$SPARK_CLASSPATH:$SPARK_HOME/lib/hbase-server-1.2.5.jar
    
    export SPARK_CLASSPATH=$SPARK_CLASSPATH:$SPARK_HOME/lib/htrace-core-3.1.0-incubating.jar
    
    export SPARK_CLASSPATH=$SPARK_CLASSPATH:$SPARK_HOME/lib/mysql-connector-java-5.1.34.jar
    
    export SPARK_CLASSPATH=$SPARK_CLASSPATH:$SPARK_HOME/lib/metrics-core-2.2.0.jar
    
    启动hive数据源, 测试spark-sql
    nohup hive --service metastore >/opt/software/metastore.log 2>&1 &
    

      

    启动spark
    
    /opt/software/spark-2.2.0-bin-hadoop2.7/sbin/start-master.sh
    /opt/software/spark-2.2.0-bin-hadoop2.7/sbin/start-slaves.sh
    
    web: http://192.168.1.186:8080/



    启动spark-sql时报错: Unable to instantiate org.apache.hadoop.hive.ql.metadata.SessionHiveMetaStoreClient
    将hive.site.xml文件中的
    <property>
      <name>hive.metastore.schema.verification</name>
      <value>true</value>
    </property>
    改为false即可


    但是spark-sql服务却起不来, 执行$SPARK_HOME/sbin/start-thriftserver.sh 时报错: Could not create ServerSocket on address pc.apache/192.168.1.186:10001
    使用 jps -ml查看java进程详情;

    原因是 HIVE的服务与SPARK-SQL服务只能起一个? 我把HIVE服务注释掉就可以了, 但是这样是不妥的, 可能要把HIVE服务设置成什么其他的端口避免10001? 有待进一步测试!

    最后关于Spark安装的,将介绍Spark on yarn

    spark-shell --master yarn-client
    
    启动后会发现报错: Error initializing SparkContext
    
    vim yarn-site.xml
    
     <property>
            <name>yarn.nodemanager.vmem-check-enabled</name>
            <value>false</value>
            <description>Whether virtual memory limits will be enforced for containers</description>
        </property>
        <property>
            <name>yarn.nodemanager.vmem-pmem-ratio</name>
            <value>4</value>
            <description>Ratio between virtual memory to physical memory when setting memory limits for containers</description>
        </property>
    

     

    再次启动 spark-shell --master yarn-client 即可;

    总结安装流程:

    node1     node2   node3
    nn1       nn2     dn3
    dn1       dn2     nm3
    rm1       rm2     zk3
    nm1       nm2     mysql
    zk1       zk2
    hivestat  hivserv hivemeta
    
    
    主节点启动: start-dfs.sh 
    #主节点启动: yarn-daemon.sh start resourcemanager
    主节点启动: start-yarn.sh
    stop-yarn.sh   stop-dfs.sh
    
    
    hive --service metastore > /home/hadoop/hive.meta  &
    hive --service hiveserver2 > /home/hadoop/hive.log &
    
    
    #hadoop fs -mkdir -p /user/spark/libs/
    #hadoop fs -put /data/software/spark-2.1.1/jars/* /user/spark/libs/
    hadoop fs -mkdir -p /tmp/spark/logs/
    
    
    start-master.sh
    start-slaves.sh
    
    
    zkCli.sh 
    rm -rf /data/software/spark-2.1.1/conf/
    scp -r /data/software/spark-2.1.1/conf/ hadoop@app-002:/data/software/spark-2.1.1/
    
    
    Yarn运行日志:
    /tmp/logs/hadoop/logs
    
    
    
    提交任务做测试:
    
    hadoop jar share/hadoop/mapreduce/hadoop-mapreduce-examples-2.7.3.jar pi 1 3
    
    spark-shell --master yarn --deploy-mode client
    
    spark-submit --class org.apache.spark.examples.SparkPi 
    --master yarn 
    --deploy-mode cluster 
    --driver-memory 1000m 
    --executor-memory 1000m 
    --executor-cores 1 
    /data/software/spark-2.1.1/examples/jars/spark-examples_2.11-2.1.1.jar 
    3
    

      

    一些debug方法:

    debug:
    
    nohup java -jar sent-mail.jar > log.txt &
    
    查看端口是否占用:netstat -ntulp |grep 8020
    查看一个服务有多少端口:ps -ef |grep mysqld
    
    rm -rf /data/software/hadoop-2.7.3/logs/*
    
    单独启动各个组件, 查看bug产生原因。
    hadoop-daemon.sh start namenode
    hadoop-daemon.sh start datanode
    
    jps -ml
    kill -9 
    

      

    7. 安装Zookeeper + HBase

    如果集群中有Zookeeper集群, 使用集群中的比较好, 如果是单机测试, 用HBase自带的Zookeeper就好;

    vim hbase-env.sh
    
    export JAVA_HOME=/opt/software/jdk1.8.0_191
    export HBASE_MANAGES_ZK=true
    export HADOOP_HOME=/opt/software/hadoop-2.7.3
    export HBASE_CLASSPATH=/opt/software/hadoop-2.7.3/etc/hadoop
    export HBASE_PID_DIR=/opt/software/hbase-1.2.5/pids
    
    
    vim hbase-site.xml

    <property>
    <name>hbase.rootdir</name>
    <value>hdfs://pc.apache:8020/hbase</value>
    </property>

    <property>
    <name>hbase.cluster.distributed</name>
    <value>true</value>
    </property>

    <property>
    <name>hbase.zookeeper.quorum</name>
    <value>pc.apache</value>
    </property>
    <property>
    <name>hbase.master</name>
    <value>hdfs://pc.apache:60000</value>
    </property>

    <property>
    <name>hbase.tmp.dir</name>
    <value>/opt/software/hbase-1.2.5/tmp</value>
    </property>

    <property>
    <name>hbase.zookeeper.property.dataDir</name>
    <value>/opt/software/hbase-1.2.5/zooData</value>
    </property>

    vim regionservers
    
    pc.apache
    

      

    /opt/software/hbase-1.2.5/bin/start-hbase.sh

    status

    http://192.168.1.186:16010/

    Hbase window最简单安装版本
    
    下载:hbase-1.2.3。(http://apache.fayea.com/hbase/stable/)
    
    必须: Java_Home,  Hadoop_Home
    
    1. 
    修改 hbase-1.0.2confhbase-env.cmd 文件
    
    set JAVA_HOME=C:Program FilesJavajdk1.8.0_05
    set HBASE_MANAGES_ZK=flase 
    
    2.
    修改 hbase-1.0.2confhbase-env.sh 文件
    
    export HBASE_MANAGES_ZK=false
    
    3.
    修改hbase-1.0.2confhbase-site.xml 文件 路径自己改为自己的实际路径
    
    <configuration>
     <property>
     <name>hbase.rootdir</name>
     <value>file:///E:/software/hbase-1.4.10/root</value>
     </property>
     <property> 
    <name>hbase.tmp.dir</name>
     <value>E:/software/hbase-1.4.10/tmp</value>
     </property>
     <property> 
    <name>hbase.zookeeper.quorum</name>
    <value>127.0.0.1</value>
     </property>
     <property> 
    <name>hbase.zookeeper.property.dataDir</name>
    <value>E:/software/hbase-1.4.10/zoo</value>
     </property>
     <property> 
    <name>hbase.cluster.distributed</name>
    <value>false</value>
     </property> 
    </configuration>
    
    
    
    
    4.进入到bin目录
    点击 start-hbase.cmd
    
    在该目录下执行命令窗口 :
    hbase shell
    
    create 'test','cf'
    scan 'test'
    

      

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  • 原文地址:https://www.cnblogs.com/ruili07/p/10020165.html
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