hadoop2.4.0 ha 搭建

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问题导读:
1、hadoop ha是通过什么配置实现自动切换的?
2、配置中mapred与mapreduce的区别是什么?
3、hadoop ha两个namenode之间的关系是什么?

-- hadoop 版本:2.4.0
-- 安装包名: 
             hadoop-2.4.0.tar.gz 或者源码版本 hadoop-2.4.0-src.tar.gz(我hadoop、hbase、hive均是用的源码编译安装)

-- 安装参考:
http://www.netfoucs.com/article/book_mmicky/79985.html
http://www.byywee.com/page/M0/S934/934356.html
http://www.itpub.net/thread-1631536-1-1.html
http://demo.netfoucs.com/u014393917/article/details/25913363
http://www.aboutyun.com/thread-8294-1-1.html

-- 找不到本地库
           参考:http://www.ercoppa.org/Linux-Com ... -hadoop-library.htm

-- lzo支持,
参考:http://blog.csdn.net/zhangzhaokun/article/details/17595325
http://slaytanic.blog.51cto.com/2057708/1162287/
http://hi.baidu.com/qingchunranzhi/item/3662ed5ed29d37a1adc85709


-- 安装以下RPM包:
yum -y install openssh*
yum -y install man*
yum -y install compat-libstdc++-33*
yum -y install libaio-0.*
yum -y install libaio-devel*
yum -y install sysstat-9.*
yum -y install glibc-2.*
yum -y install glibc-devel-2.* glibc-headers-2.*
yum -y install ksh-2*
yum -y install libgcc-4.*
yum -y install libstdc++-4.*
yum -y install libstdc++-4.*.i686*
yum -y install libstdc++-devel-4.*
yum -y install gcc-4.*x86_64*
yum -y install gcc-c++-4.*x86_64*
yum -y install elfutils-libelf-0*x86_64* elfutils-libelf-devel-0*x86_64*
yum -y install elfutils-libelf-0*i686* elfutils-libelf-devel-0*i686*
yum -y install libtool-ltdl*i686*
yum -y install ncurses*i686*
yum -y install ncurses*
yum -y install readline*
yum -y install unixODBC*
yum -y install zlib
yum -y install zlib*
yum -y install openssl*
yum -y install patch
yum -y install git
yum -y -y install  lzo-devel zlib-devel gcc autoconf automake libtool
yum -y install lzop
yum -y install lrzsz
yum -y -y install  lzo-devel  zlib-devel  gcc autoconf automake libtool
yum -y install nc
yum -y install glibc
yum -y install java-1.7.0-openjdk
yum -y install gzip
yum -y install zlib
yum -y install gcc
yum -y install gcc-c++
yum -y install make
yum -y install protobuf
yum -y install protoc
yum -y install cmake
yum -y install openssl-devel
yum -y install ncurses-devel
yum -y install unzip
yum -y install telnet
yum -y install telnet-server
yum -y install wget
yum -y install svn
yum -y install ntpdate

-- hive 安装,参考:http://kicklinux.com/hive-deploy/

5台服务器设计图

IP地址主机名NameNodeJournalNodeDataNodeZookeeperHbaseHive192.168.117.194funshion-hadoop194是是否是是否192.168.117.195funshion-hadoop195是是否是是否192.168.117.196funshion-hadoop196否是是是是(Master)是(Mysql)192.168.117.197funshion-hadoop197否是是是是否192.168.117.198funshion-hadoop198否是是是是否

--  配置Linux、安装JDK

--参考:linux(ubuntu)安装Java jdk环境变量设置及小程序测试

-- Step 1. 建立用户hadoop的ssh无密码登陆

--参考:
linux(ubuntu)无密码互通、相互登录高可靠文档
CentOS6.4之图解SSH无验证双向登陆配置

-- Step 2. zookeeper配置(配置奇数台zk集群,我用的5台)
-- 参考:Zookeeper集群环境安装过程详解

-- Step 3. Hadoop集群配置:


-- Step 3.1 vi $HADOOP_HOME/etc/hadoop/slaves

funshion-hadoop196
funshion-hadoop197
funshion-hadoop198

-- Step 3.2 vi $HADOOP_HOME/etc/hadoop/hadoop-env.sh  (添加 JAVA_HOME 环境变量、本地library库)

export JAVA_HOME=/usr/java/latest
export LD_LIBRARY_PATH=/usr/local/hadoop/lzo/lib
export HADOOP_COMMON_LIB_NATIVE_DIR=${HADOOP_PREFIX}/lib/native
export HADOOP_OPTS="-Djava.library.path=$HADOOP_PREFIX/lib/native"

-- 注意:${HADOOP_PREFIX}/lib/native 下的内容如下:
[hadoop@funshion-hadoop194 native]$ pwd
/usr/local/hadoop/lib/native

[hadoop@funshion-hadoop194 native]$ ls -l
total 8640
-rw-r--r--. 1 hadoop hadoop 2850660 Jun  9 14:58 hadoop-common-2.4.0.jar
-rw-r--r--. 1 hadoop hadoop 1509888 Jun  9 14:58 hadoop-common-2.4.0-tests.jar
-rw-r--r--. 1 hadoop hadoop  178637 Jun  9 14:58 hadoop-lzo-0.4.20-SNAPSHOT.jar
-rw-r--r--. 1 hadoop hadoop  145385 Jun  9 14:58 hadoop-nfs-2.4.0.jar
-rw-r--r--. 1 hadoop hadoop  983042 Jun  6 19:36 libhadoop.a
-rw-r--r--. 1 hadoop hadoop 1487284 Jun  6 19:36 libhadooppipes.a
lrwxrwxrwx. 1 hadoop hadoop      18 Jun  6 19:42 libhadoop.so -> libhadoop.so.1.0.0
-rwxr-xr-x. 1 hadoop hadoop  586664 Jun  6 19:36 libhadoop.so.1.0.0
-rw-r--r--. 1 hadoop hadoop  582040 Jun  6 19:36 libhadooputils.a
-rw-r--r--. 1 hadoop hadoop  298178 Jun  6 19:36 libhdfs.a
lrwxrwxrwx. 1 hadoop hadoop      16 Jun  6 19:42 libhdfs.so -> libhdfs.so.0.0.0
-rwxr-xr-x. 1 hadoop hadoop  200026 Jun  6 19:36 libhdfs.so.0.0.0
drwxrwxr-x. 2 hadoop hadoop    4096 Jun  6 20:37 Linux-amd64-64

-- Step 3.3 vi $HADOOP_HOME/etc/hadoop/core-site.xml

-- (注意:fs.default.FS参数在两个namenode节点均一样,即5台机器的core-site.xml文件内容完全一样)

<configuration>
<property>
<name>fs.defaultFS</name>
<value>hdfs://mycluster</value>
</property>
<property>
<name>dfs.ha.fencing.methods</name>
<value>sshfence</value>
</property>
<property>
<name>dfs.ha.fencing.ssh.private-key-files</name>
<value>/home/hadoop/.ssh/id_rsa_nn2</value>
</property>
<property>
<name>ha.zookeeper.quorum</name>
<value>funshion-hadoop194:2181,funshion-hadoop195:2181,funshion-hadoop196:2181,funshion-hadoop197:2181,funshion-hadoop198:2181</value>
</property>


<property>
<name>io.compression.codecs</name>
<value>org.apache.hadoop.io.compress.GzipCodec,org.apache.hadoop.io.compress.DefaultCodec,com.hadoop.compression.lzo.LzoCodec,com.hadoop.compression.lzo.LzopCodec,org.apache.hadoop.io.compress.BZip2Codec</value>
</property>
<property>
<name>io.compression.codec.lzo.class</name>
<value>com.hadoop.compression.lzo.LzoCodec</value>
</property>
<property>
<name>io.file.buffer.size</name>
<value>131072</value>
</property>
<property>
<name>hadoop.tmp.dir</name>
<value>/home/hadoop/tmp</value>
<description>Abase for other temporary directories.</description>
</property>
<property>
<name>hadoop.proxyuser.hadoop.hosts</name>
<value>*</value>
</property>
<property>
<name>hadoop.proxyuser.hadoop.groups</name>
<value>*</value>
</property>
<property>
<name>hadoop.native.lib</name>
<value>true</value>
</property>
<property>
<name>ha.zookeeper.session-timeout.ms</name>
<value>60000</value>
<description>ms</description>
</property>
<property>
<name>ha.failover-controller.cli-check.rpc-timeout.ms</name>
<value>60000</value>
</property>
<property>
<name>ipc.client.connect.timeout</name>
<value>20000</value>
</property>
</configuration>


-- 注意:属性值dfs.ha.fencing.ssh.private-key-files的值id_rsa_nn2 是privatekey(即/home/hadoop/.ssh/目录id_rsa文件的拷贝,且权限为600)
        <property>
                <name>dfs.ha.fencing.ssh.private-key-files</name>
                <value>/home/hadoop/.ssh/id_rsa_nn2</value>
        </property>

-- Step 3.4 vi $HADOOP_HOME/etc/hadoop/hdfs-site.xml


<configuration>
<property>
<name>dfs.nameservices</name>
<value>mycluster</value>
</property>
<property>
<name>dfs.ha.namenodes.mycluster</name>
<value>nn1,nn2</value>
</property>
<property>
<name>dfs.namenode.rpc-address.mycluster.nn1</name>
<value>funshion-hadoop194:8020</value>
</property>
<property>
<name>dfs.namenode.rpc-address.mycluster.nn2</name>
<value>funshion-hadoop195:8020</value>
</property>
<property>
<name>dfs.namenode.servicerpc-address.mycluster.nn1</name>
<value>funshion-hadoop194:53310</value>
</property>
<property>:q
<name>dfs.namenode.servicerpc-address.mycluster.nn2</name>
<value>funshion-hadoop195:53310</value>
</property>
<property>
<name>dfs.namenode.http-address.mycluster.nn1</name>
<value>funshion-hadoop194:50070</value>
</property>
<property>
<name>dfs.namenode.http-address.mycluster.nn2</name>
<value>funshion-hadoop195:50070</value>
</property>
<property>
<name>dfs.namenode.shared.edits.dir</name>
<value>qjournal://funshion-hadoop194:8485;funshion-hadoop195:8485;funshion-hadoop196:8485;funshion-hadoop197:8485;funshion-hadoop198:8485/mycluster</value>
</property>
<property>
<name>dfs.journalnode.edits.dir</name>
<value>/home/hadoop/mydata/journal</value>
</property>
<property>
<name>dfs.client.failover.proxy.provider.mycluster</name>
<value>org.apache.hadoop.hdfs.server.namenode.ha.ConfiguredFailoverProxyProvider</value>
</property>
<property>
<name>dfs.ha.automatic-failover.enabled</name>
<value>true</value>
</property>


<property>
<name>dfs.namenode.name.dir</name>
<value>file:///home/hadoop/mydata/name</value>
</property>
<property>
<name>dfs.datanode.data.dir</name>
<value>file:///home/hadoop/mydata/data</value>
</property>
<property>
<name>dfs.replication</name>
<value>2</value>
</property>
<property>
<name>dfs.image.transfer.bandwidthPerSec</name>
<value>1048576</value>
</property>
</configuration>

-- Step 3.5 vi $HADOOP_HOME/etc/hadoop/mapred-site.xml

<configuration>
<property>
<name>mapreduce.jobhistory.address</name>
<value>funshion-hadoop194:10020</value>
</property>
<property>
<name>mapreduce.jobhistory.webapp.address</name>
<value>funshion-hadoop194:19888</value>
</property>
<property>
<name>mapreduce.map.output.compress</name>
<value>true</value>
</property>
<property>
<name>mapreduce.map.output.compress.codec</name>
<value>com.hadoop.compression.lzo.LzoCodec</value>
</property>
<property>
<name>mapred.child.env</name>
<value>LD_LIBRARY_PATH=/usr/local/hadoop/lib/native</value>
</property>
<property>
<name>mapred.child.java.opts</name>
<value>-Xmx2048m</value>
</property>
<property>
<name>mapred.reduce.child.java.opts</name>
<value>-Xmx2048m</value>
</property>
<property>
<name>mapred.map.child.java.opts</name>
<value>-Xmx2048m</value>
</property>
<property>
<name>mapred.remote.os</name>
<value>Linux</value>
<description>Remote MapReduce framework's OS, can be either Linux or Windows</description>
</property>
</configuration>


-- 注意:1、以mapred.开头的形式去指定属性名,都是一种过时的形式,建议使用mapreduce.
            比如:mapred.compress.map.output 属性应该对应修改成:mapreduce.map.output.compress
            具体可以查阅:http://hadoop.apache.org/docs/r2 ... /mapred-default.xml 文件,
      当然,好像还有少量属性名是没有修改的,比如:mapred.child.java.opts、mapred.child.env

-- 注意:/usr/local/hadoop/lib/native 目录下有如下内容:
[hadoop@funshion-hadoop194 sbin]$ ls -l /usr/local/hadoop/lib/native
total 12732
-rw-r--r-- 1 hadoop hadoop 2850900 Jun 20 19:22 hadoop-common-2.4.0.jar
-rw-r--r-- 1 hadoop hadoop 1509411 Jun 20 19:22 hadoop-common-2.4.0-tests.jar
-rw-r--r-- 1 hadoop hadoop  178559 Jun 20 18:38 hadoop-lzo-0.4.20-SNAPSHOT.jar
-rw-r--r-- 1 hadoop hadoop 1407039 Jun 20 19:25 hadoop-yarn-common-2.4.0.jar
-rw-r--r-- 1 hadoop hadoop  106198 Jun 20 18:37 libgplcompression.a
-rw-r--r-- 1 hadoop hadoop    1124 Jun 20 18:37 libgplcompression.la
-rwxr-xr-x 1 hadoop hadoop   69347 Jun 20 18:37 libgplcompression.so
-rwxr-xr-x 1 hadoop hadoop   69347 Jun 20 18:37 libgplcompression.so.0
-rwxr-xr-x 1 hadoop hadoop   69347 Jun 20 18:37 libgplcompression.so.0.0.0
-rw-r--r-- 1 hadoop hadoop  983042 Jun 20 18:10 libhadoop.a
-rw-r--r-- 1 hadoop hadoop 1487284 Jun 20 18:10 libhadooppipes.a
lrwxrwxrwx 1 hadoop hadoop      18 Jun 20 18:27 libhadoop.so -> libhadoop.so.1.0.0
-rwxr-xr-x 1 hadoop hadoop  586664 Jun 20 18:10 libhadoop.so.1.0.0
-rw-r--r-- 1 hadoop hadoop  582040 Jun 20 18:10 libhadooputils.a
-rw-r--r-- 1 hadoop hadoop  298178 Jun 20 18:10 libhdfs.a
lrwxrwxrwx 1 hadoop hadoop      16 Jun 20 18:27 libhdfs.so -> libhdfs.so.0.0.0
-rwxr-xr-x 1 hadoop hadoop  200026 Jun 20 18:10 libhdfs.so.0.0.0
-rw-r--r-- 1 hadoop hadoop  906318 Jun 20 19:17 liblzo2.a
-rwxr-xr-x 1 hadoop hadoop     929 Jun 20 19:17 liblzo2.la
-rwxr-xr-x 1 hadoop hadoop  562376 Jun 20 19:17 liblzo2.so
-rwxr-xr-x 1 hadoop hadoop  562376 Jun 20 19:17 liblzo2.so.2
-rwxr-xr-x 1 hadoop hadoop  562376 Jun 20 19:17 liblzo2.so.2.0.0

-- Step 3.6 vi $HADOOP_HOME/etc/hadoop/yarn-site.xml


<configuration>
<property>
<name>yarn.resourcemanager.connect.retry-interval.ms</name>
<value>60000</value>
</property>
<property>
<name>yarn.resourcemanager.ha.enabled</name>
<value>true</value>
</property>
<property>
<name>yarn.resourcemanager.cluster-id</name>
<value>rm-cluster</value>
</property>
<property>
<name>yarn.resourcemanager.ha.rm-ids</name>
<value>rm1,rm2</value>
</property>
<property>
<name>yarn.resourcemanager.ha.id</name>
<value>rm1</value>
</property>
<property>
<name>yarn.resourcemanager.hostname.rm1</name>
<value>funshion-hadoop194</value>
</property>
<property>
<name>yarn.resourcemanager.hostname.rm2</name>
<value>funshion-hadoop195</value>
</property>
<property>
<name>yarn.resourcemanager.recovery.enabled</name>
<value>true</value>
</property>
<property>
<name>yarn.resourcemanager.store.class</name>
<value>org.apache.hadoop.yarn.server.resourcemanager.recovery.ZKRMStateStore</value>
</property>
<property>
<name>yarn.resourcemanager.zk-address</name>
<value>funshion-hadoop194:2181,funshion-hadoop195:2181,funshion-hadoop196:2181,funshion-hadoop197:2181,funshion-hadoop198:2181</value>
</property>
<property>
<name>yarn.resourcemanager.address.rm1</name>
<value>${yarn.resourcemanager.hostname.rm1}:23140</value>
</property>
<property>
<name>yarn.resourcemanager.scheduler.address.rm1</name>
<value>${yarn.resourcemanager.hostname.rm1}:23130</value>
</property>
<property>
<name>yarn.resourcemanager.webapp.https.address.rm1</name>
<value>${yarn.resourcemanager.hostname.rm1}:23189</value>
</property>
<property>
<name>yarn.resourcemanager.webapp.address.rm1</name>
<value>${yarn.resourcemanager.hostname.rm1}:23188</value>
</property>
<property>
<name>yarn.resourcemanager.resource-tracker.address.rm1</name>
<value>${yarn.resourcemanager.hostname.rm1}:23125</value>
</property>
<property>
<name>yarn.resourcemanager.admin.address.rm1</name>
<value>${yarn.resourcemanager.hostname.rm1}:23141</value>
</property>


<property>
<name>yarn.resourcemanager.address.rm2</name>
<value>${yarn.resourcemanager.hostname.rm2}:23140</value>
</property>
<property>
<name>yarn.resourcemanager.scheduler.address.rm2</name>
<value>${yarn.resourcemanager.hostname.rm2}:23130</value>
</property>
<property>
<name>yarn.resourcemanager.webapp.https.address.rm2</name>
<value>${yarn.resourcemanager.hostname.rm2}:23189</value>
</property>
<property>
<name>yarn.resourcemanager.webapp.address.rm2</name>
<value>${yarn.resourcemanager.hostname.rm2}:23188</value>
</property>
<property>
<name>yarn.resourcemanager.resource-tracker.address.rm2</name>
<value>${yarn.resourcemanager.hostname.rm2}:23125</value>
</property>
<property>
<name>yarn.resourcemanager.admin.address.rm2</name>
<value>${yarn.resourcemanager.hostname.rm2}:23141</value>
</property>


<property>
<name>yarn.resourcemanager.scheduler.class</name>
<value>org.apache.hadoop.yarn.server.resourcemanager.scheduler.fair.FairScheduler</value>
</property>
<property>
<name>yarn.scheduler.fair.allocation.file</name>
<value>${yarn.home.dir}/etc/hadoop/fairscheduler.xml</value>
</property>
<property>
<name>yarn.nodemanager.local-dirs</name>
<value>/home/hadoop/logs/yarn_local</value>
</property>
<property>
<name>yarn.nodemanager.log-dirs</name>
<value>/home/hadoop/logs/yarn_log</value>
</property>
<property>
<name>yarn.nodemanager.remote-app-log-dir</name>
<value>/home/hadoop/logs/yarn_remotelog</value>
</property>
<property>
<name>yarn.app.mapreduce.am.staging-dir</name>
<value>/home/hadoop/logs/yarn_userstag</value>
</property>
<property>
<name>mapreduce.jobhistory.intermediate-done-dir</name>
<value>/home/hadoop/logs/yarn_intermediatedone</value>
</property>
<property>
<name>mapreduce.jobhistory.done-dir</name>
<value>/var/lib/hadoop/dfs/yarn_done</value>
</property>


<property>
<name>yarn.log-aggregation-enable</name>
<value>true</value>
</property>
<property>
<name>yarn.nodemanager.resource.memory-mb</name>
<value>2048</value>
</property>
<property>
<name>yarn.nodemanager.vmem-pmem-ratio</name>
<value>4.2</value>
</property>
<property>
<name>yarn.nodemanager.resource.cpu-vcores</name>
<value>2</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>
<property>
<description>Classpath for typical applications.</description>
<name>yarn.application.classpath</name>
<value>
$HADOOP_HOME/etc/hadoop,
$HADOOP_HOME/share/hadoop/common/*,
$HADOOP_HOME/share/hadoop/common/lib/*,
$HADOOP_HOME/share/hadoop/hdfs/*,
$HADOOP_HOME/share/hadoop/hdfs/lib/*,
$HADOOP_HOME/share/hadoop/mapreduce/*,
$HADOOP_HOME/share/hadoop/mapreduce/lib/*,
$HADOOP_HOME/share/hadoop/yarn/*,
$HADOOP_HOME/share/hadoop/yarn/lib/*
</value>
</property>
</configuration>


-- 注意:两个namenode,funshion-hadoop194直接用上面的配置,
--       funshion-hadoop195的话,只需修改一个地方:修改yarn.resourcemanager.ha.id 属性值为 rm2 

-- Step 3.7 vi $HADOOP_HOME/etc/hadoop/fairscheduler.xml


<?xml version="1.0"?>
<allocations>
<queue name="news">
<minResources>1024 mb, 1 vcores </minResources>
<maxResources>1536 mb, 1 vcores </maxResources>
<maxRunningApps>5</maxRunningApps>
<minSharePreemptionTimeout>300</minSharePreemptionTimeout>
<weight>1.0</weight>
<aclSubmitApps>root,yarn,search,hdfs</aclSubmitApps>
</queue>
<queue name="crawler">
<minResources>1024 mb, 1 vcores</minResources>
<maxResources>1536 mb, 1 vcores</maxResources>
</queue>
<queue name="map">
<minResources>1024 mb, 1 vcores</minResources>
<maxResources>1536 mb, 1 vcores</maxResources>
</queue>
</allocations>

################################################################################## 

scp -r /usr/local/hadoop/etc/hadoop/* hadoop@funshion-hadoop195:/usr/local/hadoop/etc/hadoop/
scp -r /usr/local/hadoop/etc/hadoop/* hadoop@funshion-hadoop196:/usr/local/hadoop/etc/hadoop/
scp -r /usr/local/hadoop/etc/hadoop/* hadoop@funshion-hadoop197:/usr/local/hadoop/etc/hadoop/
scp -r /usr/local/hadoop/etc/hadoop/* hadoop@funshion-hadoop198:/usr/local/hadoop/etc/hadoop/

-- Step 4. 创建相关目录


mkdir ~/logs
mkdir ~/mydata

-- 备注:mydate目录下的相关子目录会自动生成,不需要创建。
-- 在每台集群机器上创建如上两个目录,并同步 $HADOOP_HOME/etc/hadoop目录下的所有文件到各节点


-- Step 5. 启动Zookeeper、JournalNode、格式化Hadoop集群并启动



-- Step 5.1 启动Zooker (ZK集群是funshion-hadoop194、funshion-hadoop195、funshion-hadoop196、funshion-hadoop197、funshion-hadoop198 五台服务器)


[hadoop@funshion-hadoop194 bin]$ /usr/local/zookeeper/bin/zkServer.sh start
[hadoop@funshion-hadoop195 bin]$ /usr/local/zookeeper/bin/zkServer.sh start
[hadoop@funshion-hadoop196 bin]$ /usr/local/zookeeper/bin/zkServer.sh start
[hadoop@funshion-hadoop197 bin]$ /usr/local/zookeeper/bin/zkServer.sh start
[hadoop@funshion-hadoop198 bin]$ /usr/local/zookeeper/bin/zkServer.sh start

-- 可以如下查看Zookeeper集群各节点的状态:
/usr/local/zookeeper/bin/zkServer.sh status


-- 然后在某一个namenode节点执行如下命令,创建命名空间
[hadoop@funshion-hadoop194 bin]$ cd $HADOOP_HOME
[hadoop@funshion-hadoop194 hadoop]$ ./bin/hdfs zkfc -formatZK

-- 备注:停止zookeeper相关命令类似如下:
/usr/local/zookeeper/bin/zkServer.sh stop
/usr/local/zookeeper/bin/zkServer.sh restart

-- Step 5.2 启动JournalNode进程(在funshion-hadoop194、funshion-hadoop195、funshion-hadoop196、funshion-hadoop197、funshion-hadoop198五台服务器上分别执行):


[hadoop@funshion-hadoop194 bin]$ $HADOOP_HOME/sbin/hadoop-daemon.sh start journalnode
[hadoop@funshion-hadoop195 bin]$ $HADOOP_HOME/sbin/hadoop-daemon.sh start journalnode
[hadoop@funshion-hadoop196 bin]$ $HADOOP_HOME/sbin/hadoop-daemon.sh start journalnode
[hadoop@funshion-hadoop197 bin]$ $HADOOP_HOME/sbin/hadoop-daemon.sh start journalnode
[hadoop@funshion-hadoop198 bin]$ $HADOOP_HOME/sbin/hadoop-daemon.sh start journalnode


-- Step 5.3 格式化Hadoop集群并启动:


-- 在 funshion-hadoop194 上执行:
[hadoop@funshion-hadoop194 bin]$ $HADOOP_HOME/bin/hdfs namenode -format mycluster
[hadoop@funshion-hadoop194 bin]$ $HADOOP_HOME/sbin/hadoop-daemon.sh start namenode

-- 上步执行完后,在 funshion-hadoop195 上执行:
[hadoop@funshion-hadoop195 bin]$ $HADOOP_HOME/bin/hdfs namenode -bootstrapStandby
[hadoop@funshion-hadoop195 bin]$ $HADOOP_HOME/sbin/hadoop-daemon.sh start namenode

-- 上步执行完后,可以继续在某个 namenode 执行 $HADOOP_HOME/sbin/start-all.sh 启动datanode及yarn相关进程。

-- 因为是配置的自动故障转移,所以不能手工切换namenode的active和stadby角色。

-- 可以通过haadmin查看每个Service的角色状态:
[hadoop@funshion-hadoop194 lab]$ $HADOOP_HOME/bin/hdfs haadmin -getServiceState nn1
standby
[hadoop@funshion-hadoop194 lab]$ $HADOOP_HOME/bin/hdfs haadmin -getServiceState nn2
active
[hadoop@funshion-hadoop194 lab]$


-- 通过hdfs-site.xml中的如下配置,我们知道nn1是在 funshion-hadoop194上的namenode服务,nn2是funshion-hadoop195上的namenode服务
<property>
<name>dfs.namenode.rpc-address.mycluster.nn1</name>
<value>funshion-hadoop194:8020</value>
</property>
<property>
<name>dfs.namenode.rpc-address.mycluster.nn2</name>
<value>funshion-hadoop195:8020</value>
</property>

-- 所以,我们可以尝试 kill 掉 nn2(状态为active的namenode进程,然后去查看nn1的角色是否改变:
[hadoop@funshion-hadoop195 bin]$ jps
3199 JournalNode
3001 NameNode
1161 QuorumPeerMain
3364 DFSZKFailoverController
4367 Jps

[hadoop@funshion-hadoop195 bin]$ kill -9 3001
[hadoop@funshion-hadoop195 bin]$ jps
3199 JournalNode
1161 QuorumPeerMain
3364 DFSZKFailoverController
4381 Jps


[hadoop@funshion-hadoop195 bin]$ $HADOOP_HOME/bin/hdfs haadmin -getServiceState nn1
active
[hadoop@funshion-hadoop195 bin]$ $HADOOP_HOME/sbin/hadoop-daemon.sh start namenode
starting namenode, logging to /usr/local/hadoop/logs/hadoop-hadoop-namenode-funshion-hadoop195.out
[hadoop@funshion-hadoop195 bin]$ $HADOOP_HOME/bin/hdfs haadmin -getServiceState nn1
active
[hadoop@funshion-hadoop195 bin]$ $HADOOP_HOME/bin/hdfs haadmin -getServiceState nn2
standby


-- 甚至可以直接reboot状态为active的namenode节点(执行操作系统的重启动作,看另一个standby状态的namenode节点是否能正常转换成acitve状态
-- 甚至可以在有作业运行的时候去执行reboot操作系统(namenode的active节点执行)以测试双节点故障转移是否确实健壮


-- 集群相关网页:
-- http://funshion-hadoop194:50070/dfshealth.html#tab-overview

-- ##################################################################################


-- Step 6. 上传测试数据:


-- Step 6.1 安装wget包、创建相关目录及shell上传数据脚本:
[root@funshion-hadoop194 ~]# yum -y install wget
[hadoop@funshion-hadoop194 ~]$ 
[hadoop@funshion-hadoop194 ~]$ mkdir -p /home/hadoop/datateam/ghh/lab
[hadoop@funshion-hadoop194 ~]$ mkdir -p /home/hadoop/log_catch/down
[hadoop@funshion-hadoop194 ~]$ mkdir -p /home/hadoop/log_catch/put
[hadoop@funshion-hadoop194 ~]$ mkdir -p /home/hadoop/log_catch/zip
[hadoop@funshion-hadoop194 ~]$ vi /home/hadoop/datateam/ghh/lab/log_catch_hour_lzo.sh

#!/bin/bash


function f_show_info()
{
printf "%20s = %s\n" "$1" "$2"
return 0
}


function f_catch_all_day_log()
{
local str_date=""
local year=""
local month=""
local day=""


for(( str_date=${g_start_date};${str_date}<=${g_end_date}; str_date=$(date -d "+1 day ${str_date}" +%Y%m%d ) ))
do
year=$(date -d "${str_date}" +%Y )
month=$(date -d "${str_date}" +%m )
day=$(date -d "${str_date}" +%d )
f_catch_all_log ${year} ${month} ${day}
done
}


function f_catch_all_log()
{
local year="$1"
local month="$2"
local day="$3"
local hour=""
local date_hour=""
local date_dir=""
local hdfs_dir=""
local g_hdfs_dir=""
local hdfs_file=""
local url=""
local i=0
local nRet=0

for(( i=${g_start_hour};i<=${g_end_hour};i++ ));
do
hour=$(printf "%02d" "$i")
date_hour="${year}${month}${day}${hour}"
date_dir="${year}/${month}/${day}"
hdfs_dir="${year}/${month}/${day}/${hour}"
g_hdfs_dir="${g_hdfs_path}/${hdfs_dir}"
hdfs_file="${g_hdfs_path}/${hdfs_dir}/BeiJing_YiZhuang_CTC_${date_hour}.lzo"


url="${g_url}/${date_dir}/BeiJing_YiZhuang_CTC_${date_hour}.gz"
f_show_info "url" "${url}"
f_show_info "hdfs" "${hdfs_file}"
f_catch_log "${url}" "${hdfs_file}" "${g_hdfs_dir}"


hdfs_file="${g_hdfs_path}/${hdfs_dir}/BeiJing_ShangDi_CNC_${date_hour}.lzo"
url="${g_url}/${date_dir}/BeiJing_ShangDi_CNC_${date_hour}.gz"
f_show_info "url" "${url}"
f_show_info "hdfs" "${hdfs_file}"
f_catch_log "${url}" "${hdfs_file}" "${g_hdfs_dir}"
done
return $nRet
}


function f_catch_log()
{
local tmp_name=$( uuidgen | sed 's/-/_/g' )
local local_down_file="${g_local_down_path}/${tmp_name}"
local local_zip_file="${g_local_zip_path}/${tmp_name}"
local local_put_file="${g_local_put_path}/${tmp_name}"
local log_url="$1"
local hdfs_file="$2"
local nRet=0


if [[ 0 == $nRet ]];then
wget -O "${local_down_file}" "${log_url}"
nRet=$?
fi

if [[ 0 == $nRet ]];then
gzip -cd "${local_down_file}" | lzop -o "${local_zip_file}"
nRet=$?
fi


#       if [[ 0 == $nRet ]];then
#               gzip -cd "${local_down_file}" > "${local_zip_file}"
#               nRet=$?
#       fi


if [[ 0 == $nRet ]];then
mv "${local_zip_file}" "${local_put_file}"
hdfs dfs -mkdir -p "${g_hdfs_dir}"
hdfs dfs -put "${local_put_file}" "${hdfs_file}"
nRet=$?
fi


if [[ 0 == $nRet ]];then
hadoop jar /usr/local/hadoop/lib/native/hadoop-lzo-0.4.20-SNAPSHOT.jar com.hadoop.compression.lzo.LzoIndexer "${hdfs_file}"
nRet=$?
fi


rm -rf "${local_down_file}" "${local_put_file}" "${local_zip_file}"


return $nRet
}

# shell begins here

g_local_down_path="/home/hadoop/log_catch/down"
g_local_zip_path="/home/hadoop/log_catch/zip"
g_local_put_path="/home/hadoop/log_catch/put"

g_start_date=""
g_end_date=""
g_start_hour=0
g_end_hour=0
g_hdfs_path=""
g_url=""

nRet=0


if [[ 0 == $nRet ]];then
if [[ $# -ne 6 ]];then
f_show_info "cmd format" "sh ./log_catch.sh 'url' 'hdfs_path' 'start_date' 'end_date' 'start_hour' 'end_hour'"
nRet=1
else
g_url="$1"
g_hdfs_path="$2"
g_start_date="$3"
g_end_date="$4"
g_start_hour="$5"
g_end_hour="$6"
fi
fi


if [[ 0 == $nRet ]];then
f_catch_all_day_log
nRet=$?
fi


exit $nRet

-- Step 6.2 调用脚本上传数据:
[hadoop@funshion-hadoop194 ~]$ nohup sh /home/hadoop/datateam/ghh/lab/log_catch_hour_lzo.sh 'http://192.168.116.61:8081/website/pv/2' 'hdfs://mycluster/dw/logs/web/origin/pv/2' 20140524 20140525 0 23 &

-- nohup sh /home/hadoop/datateam/ghh/lab/log_catch_hour_lzo.sh 'http://192.168.116.61:8081/website/pv/2' 'hdfs://mycluster/dw/logs/web/origin/pv/2' 20140525 20140525 3 23 &

-- 上面这些脚本都是取公司的Oxeye的日志数据。(大家可以忽略此步操作)

-- Step 7. Hive安装(安装到196机器) (使用Hive与HBase整合安装;使用源码编译安装)

-- (其实应该先安装hbase,再安装hive可能顺序合理一点)


-- 参考:https://cwiki.apache.org/conflue ... iorto0.13onHadoop23
http://www.hadoopor.com/thread-5470-1-1.html
http://blog.csdn.net/hguisu/article/details/7282050
http://blog.csdn.net/hguisu/article/details/7282050
http://www.micmiu.com/bigdata/hive/hive-hbase-integration/

-- 源码下载编译操作如下:
mkdir -p /opt/software/hive_src
cd /opt/software/hive_src/
svn checkout http://svn.apache.org/repos/asf/hive/trunk/ hive_trunk
cd /opt/software/hive_src/hive_trunk


-- 下载以后,我们检查 hive_trunk目录下的pom.xml文件,发现hadoop-23.version这个变量已经引用了hadoop 2.4.0版本,所以,我们可以什么也不用修改,直接用ant去编译:
<hadoop-23.version>2.4.0</hadoop-23.version>


-- 或者如果发现版本不正确的话,我们可以这样指定参数执行(也可以修改pom.xml文件中对应正确的hadoop、hbase、zookeeper版本):
-- 最后我选用的版本相关参数如下:
<hadoop-23.version>2.4.0</hadoop-23.version>
<hbase.hadoop1.version>0.98.3-hadoop1</hbase.hadoop1.version>
<hbase.hadoop2.version>0.98.3-hadoop2</hbase.hadoop2.version>
<zookeeper.version>3.4.6</zookeeper.version>


-- 最后,开始编译:
cd /opt/software/hive_src/hive_trunk
mvn clean package -DskipTests -Phadoop-2,dist


[INFO] Hive .............................................. SUCCESS [  6.481 s]
[INFO] Hive Ant Utilities ................................ SUCCESS [  4.427 s]
[INFO] Hive Shims Common ................................. SUCCESS [  2.418 s]
[INFO] Hive Shims 0.20 ................................... SUCCESS [  1.284 s]
[INFO] Hive Shims Secure Common .......................... SUCCESS [  2.466 s]
[INFO] Hive Shims 0.20S .................................. SUCCESS [  0.961 s]
[INFO] Hive Shims 0.23 ................................... SUCCESS [  3.247 s]
[INFO] Hive Shims ........................................ SUCCESS [  0.364 s]
[INFO] Hive Common ....................................... SUCCESS [  5.259 s]
[INFO] Hive Serde ........................................ SUCCESS [  7.428 s]
[INFO] Hive Metastore .................................... SUCCESS [ 27.000 s]
[INFO] Hive Query Language ............................... SUCCESS [ 51.924 s]
[INFO] Hive Service ...................................... SUCCESS [  6.037 s]
[INFO] Hive JDBC ......................................... SUCCESS [ 14.293 s]
[INFO] Hive Beeline ...................................... SUCCESS [  1.406 s]
[INFO] Hive CLI .......................................... SUCCESS [ 10.297 s]
[INFO] Hive Contrib ...................................... SUCCESS [  1.418 s]
[INFO] Hive HBase Handler ................................ SUCCESS [ 33.679 s]
[INFO] Hive HCatalog ..................................... SUCCESS [  0.443 s]
[INFO] Hive HCatalog Core ................................ SUCCESS [  8.040 s]
[INFO] Hive HCatalog Pig Adapter ......................... SUCCESS [  1.795 s]
[INFO] Hive HCatalog Server Extensions ................... SUCCESS [  2.007 s]
[INFO] Hive HCatalog Webhcat Java Client ................. SUCCESS [  1.548 s]
[INFO] Hive HCatalog Webhcat ............................. SUCCESS [ 11.718 s]
[INFO] Hive HCatalog Streaming ........................... SUCCESS [  1.845 s]
[INFO] Hive HWI .......................................... SUCCESS [  1.246 s]
[INFO] Hive ODBC ......................................... SUCCESS [  0.626 s]
[INFO] Hive Shims Aggregator ............................. SUCCESS [  0.192 s]
[INFO] Hive TestUtils .................................... SUCCESS [  0.324 s]
[INFO] Hive Packaging .................................... SUCCESS [01:21 min]
[INFO] ------------------------------------------------------------------------
[INFO] BUILD SUCCESS
[INFO] ------------------------------------------------------------------------
[INFO] Total time: 04:53 min
[INFO] Finished at: 2014-06-22T11:58:05+08:00
[INFO] Final Memory: 147M/1064M
[INFO] ------------------------------------------------------------------------

-- 最后,/opt/software/hive_src/hive_trunk/packaging/target 目录下的 apache-hive-0.14.0-SNAPSHOT-bin.tar.gz 文件,就是我们需要的安装包(这个版本还没有正式发布)

-- Step 7.1 My SQL安装(安装到194机器),并在My SQL中创建名为hive的数据库用以存放hive元数据:


-- 安装如下rpm包
rpm -ivh MySQL-client-5.6.17-1.linux_glibc2.5.x86_64.rpm
rpm -ivh MySQL-devel-5.6.17-1.linux_glibc2.5.x86_64.rpm
rpm -ivh MySQL-embedded-5.6.17-1.linux_glibc2.5.x86_64.rpm
rpm -e --nodeps mysql-libs-5.1.66-2.el6_3.x86_64
rpm -ivh MySQL-server-5.6.17-1.linux_glibc2.5.x86_64.rpm
rpm -ivh MySQL-shared-5.6.17-1.linux_glibc2.5.x86_64.rpm
rpm -ivh MySQL-shared-compat-5.6.17-1.linux_glibc2.5.x86_64.rpm
rpm -ivh MySQL-test-5.6.17-1.linux_glibc2.5.x86_64.rpm


A RANDOM PASSWORD HAS BEEN SET FOR THE MySQL root USER !
You will find that password in '/root/.mysql_secret'.

You must change that password on your first connect,
no other statement but 'SET PASSWORD' will be accepted.
See the manual for the semantics of the 'password expired' flag.

Also, the account for the anonymous user has been removed.

In addition, you can run:

 /usr/bin/mysql_secure_installation

which will also give you the option of removing the test database.
This is strongly recommended for production servers.


See the manual for more instructions.
Please report any problems at http://bugs.mysql.com/
The latest information about MySQL is available on the web at
 http://www.mysql.com
Support MySQL by buying support/licenses at http://shop.mysql.com
New default config file was created as /usr/my.cnf and
will be used by default by the server when you start it.
You may edit this file to change server settings
-- 查看安装生成的root用户随机密码:
[root@funshion-hadoop194 ~]# more /root/.mysql_secret
# The random password set for the root user at Mon Jun  9 18:18:48 2014 (local time): QVkyOjwSlAEiPaeT


-- 登录My SQL数据库并修改root密码,并创建名为hive的数据库与用户:
[root@funshion-hadoop194 ~]# service mysql start
Starting MySQL... SUCCESS! 


-- 设置mysql服务自启动
chkconfig mysql on


[root@funshion-hadoop194 ~]# mysql -uroot -pQVkyOjwSlAEiPaeT
Warning: Using a password on the command line interface can be insecure.
Welcome to the MySQL monitor.  Commands end with ; or \g.
Your MySQL connection id is 1
Server version: 5.6.17

Copyright (c) 2000, 2014, Oracle and/or its affiliates. All rights reserved.

Oracle is a registered trademark of Oracle Corporation and/or its
affiliates. Other names may be trademarks of their respective
owners.

Type 'help;' or '\h' for help. Type '\c' to clear the current input statement.

mysql> SET PASSWORD = PASSWORD('bee56915');
Query OK, 0 rows affected (0.00 sec)


mysql> flush privileges;
Query OK, 0 rows affected (0.00 sec)


mysql> CREATE DATABASE `hive` /*!40100 DEFAULT CHARACTER SET utf8 */;
Query OK, 1 row affected (0.00 sec)


mysql> CREATE USER 'hive'@'funshion-hadoop196' IDENTIFIED BY password('bee56915');
Query OK, 0 rows affected (0.00 sec)


GRANT ALL PRIVILEGES ON hive.* TO 'hive'@'%' Identified by 'bee56915'; 
GRANT ALL PRIVILEGES ON hive.* TO 'hive'@'localhost' Identified by 'bee56915'; 
GRANT ALL PRIVILEGES ON hive.* TO 'hive'@'127.0.0.1' Identified by 'bee56915';  
GRANT ALL PRIVILEGES ON hive.* TO 'hive'@'funshion-hadoop196' Identified by 'bee56915'; 

-- Step 7.2 解决hive安装包到/usr/local下,添加hive相关环境变量:

[root@funshion-hadoop194 ~]# cd /opt/software
[root@funshion-hadoop194 software]# ls -l|grep hive
-rw-r--r--.  1 root root  65662469 May 15 14:04 hive-0.12.0-bin.tar.gz
[root@funshion-hadoop194 software]# tar -xvf ./hive-0.12.0-bin.tar.gz
[root@funshion-hadoop194 software]#  mv hive-0.12.0-bin /usr/local
[root@funshion-hadoop194 software]# cd /usr/local
[root@funshion-hadoop194 local]# chown -R hadoop.hadoop ./hive-0.12.0-bin
[root@funshion-hadoop194 local]# ln -s hive-0.12.0-bin hive

[hadoop@funshion-hadoop194 local]$ vi ~/.bash_profile
export HIVE_HOME=/usr/local/hive
export PATH=$PATH:$HIVE_HOME/bin

[hadoop@funshion-hadoop194 local]$ source ~/.bash_profile

-- Step 7.3 在My SQL数据库的hive数据库中执行创建hive元数据脚本:


[hadoop@funshion-hadoop194 mysql]$ mysql -uroot -pbee56915
Warning: Using a password on the command line interface can be insecure.
Welcome to the MySQL monitor.  Commands end with ; or \g.
Your MySQL connection id is 3
Server version: 5.6.17 MySQL Community Server (GPL)


Copyright (c) 2000, 2014, Oracle and/or its affiliates. All rights reserved.


Oracle is a registered trademark of Oracle Corporation and/or its
affiliates. Other names may be trademarks of their respective
owners.

Type 'help;' or '\h' for help. Type '\c' to clear the current input statement.

mysql> use hive;
Database changed
mysql> source /usr/local/hive/scripts/metastore/upgrade/mysql/hive-schema-0.14.0.mysql.sql

mysql> show tables;
+---------------------------+
| Tables_in_hive            |
+---------------------------+
| BUCKETING_COLS            |
| CDS                       |
| COLUMNS_V2                |
| DATABASE_PARAMS           |
| DBS                       |
| DB_PRIVS                  |
| DELEGATION_TOKENS         |
| GLOBAL_PRIVS              |
| IDXS                      |
| INDEX_PARAMS              |
| MASTER_KEYS               |
| NUCLEUS_TABLES            |
| PARTITIONS                |
| PARTITION_EVENTS          |
| PARTITION_KEYS            |
| PARTITION_KEY_VALS        |
| PARTITION_PARAMS          |
| PART_COL_PRIVS            |
| PART_COL_STATS            |
| PART_PRIVS                |
| ROLES                     |
| ROLE_MAP                  |
| SDS                       |
| SD_PARAMS                 |
| SEQUENCE_TABLE            |
| SERDES                    |
| SERDE_PARAMS              |
| SKEWED_COL_NAMES          |
| SKEWED_COL_VALUE_LOC_MAP  |
| SKEWED_STRING_LIST        |
| SKEWED_STRING_LIST_VALUES |
| SKEWED_VALUES             |
| SORT_COLS                 |
| TABLE_PARAMS              |
| TAB_COL_STATS             |
| TBLS                      |
| TBL_COL_PRIVS             |
| TBL_PRIVS                 |
| TYPES                     |
| TYPE_FIELDS               |
| VERSION                   |
+---------------------------+
41 rows in set (0.00 sec)

mysql> grant all privileges on hive.* to 'hive'@'funshion-hadoop196';
Query OK, 0 rows affected (0.00 sec)

mysql> flush privileges;
Query OK, 0 rows affected (0.00 sec)

mysql> exit
Bye
[hadoop@funshion-hadoop194 mysql]$ 

-- Step 7.4 修改hive相关配置文件:

[hadoop@funshion-hadoop194 mysql]$ cd $HIVE_HOME/conf
[hadoop@funshion-hadoop194 conf]$ ls -l
total 92
-rw-rw-r--. 1 hadoop hadoop 81186 Oct 10  2013 hive-default.xml.template
-rw-rw-r--. 1 hadoop hadoop  2378 Oct 10  2013 hive-env.sh.template
-rw-rw-r--. 1 hadoop hadoop  2465 Oct 10  2013 hive-exec-log4j.properties.template
-rw-rw-r--. 1 hadoop hadoop  2870 Oct 10  2013 hive-log4j.properties.template

[hadoop@funshion-hadoop194 conf]$ mv hive-env.sh.template hive-env.sh
[hadoop@funshion-hadoop194 conf]$ mv hive-default.xml.template hive-site.xml


-- 7.4.1 修改 $HIVE_HOME/bin/hive-config.sh 文件,添加如下环境变量:

[hadoop@funshion-hadoop194 conf]$ vi $HIVE_HOME/bin/hive-config.sh

export JAVA_HOME=/usr/java/latest
export HIVE_HOME=/usr/local/hive
export HADOOP_HOME=/usr/local/hadoop

-- 7.4.2 修改 $HIVE_HOME/conf/hive-site.xml 的第2002行:

4.4.报错—请修改hive-site.xml:(vi编辑下: /auth)

-- 原值:
<value>auth</auth>

-- 修改为:
<value>auth</value>)

-- 7.4.3 修改 $HIVE_HOME/conf/hive-site.xml 的如下property:



-- 7.4.3.1
-- 原值:
<property>
 <name>javax.jdo.option.ConnectionURL</name>
 <value>jdbc:derby:;databaseName=metastore_db;create=true</value>
 <description>JDBC connect string for a JDBC metastore</description>
</property>

-- 修改为:
<property>
 <name>javax.jdo.option.ConnectionURL</name>
 <value>jdbc:mysql://funshion-hadoop194:3306/hive?createDatabaseIfNotExist=true</value>
 <description>JDBC connect string for a JDBC metastore</description>
</property>

-- 7.4.3.2
-- 原值:
<property>
 <name>javax.jdo.option.ConnectionDriverName</name>
 <value>org.apache.derby.jdbc.EmbeddedDriver</value>
 <description>Driver class name for a JDBC metastore</description>
</property>

-- 修改为:
<property>
 <name>javax.jdo.option.ConnectionDriverName</name>
 <value>com.mysql.jdbc.Driver</value>
 <description>Driver class name for a JDBC metastore</description>
</property>

-- 7.4.3.3
-- 原值:
<property>
<name>javax.jdo.option.ConnectionUserName</name>
<value>APP</value>
<description>username to use against metastore database</description>
</property>

-- 修改为:
<property>
<name>javax.jdo.option.ConnectionUserName</name>
<value>hive</value>
<description>username to use against metastore database</description>
</property>

-- 7.4.3.4
-- 原值:
<property>
<name>javax.jdo.option.ConnectionPassword</name>
<value>mine</value>
<description>password to use against metastore database</description>
</property>

-- 修改为
<property>
<name>javax.jdo.option.ConnectionPassword</name>
<value>bee56915</value>
<description>password to use against metastore database</description>
</property>

-- 7.4.3.5
-- 原值:
<property>
<name>hive.metastore.warehouse.dir</name>
<value>/user/hive/warehouse</value>
<description>location of default database for the warehouse</description>
</property>

-- 修改为:
<property>
<name>hive.metastore.warehouse.dir</name>
<value>hdfs://mycluster:8020/user/hive/warehouse</value>
<description>location of default database for the warehouse</description>
</property>

-- 7.4.3.6
-- 原值:
<property>
<name>hive.exec.scratchdir</name>
<value>/tmp/hive-${user.name}</value>
<description>Scratch space for Hive jobs</description>
</property>

-- 修改为:
<property>
<name>hive.exec.scratchdir</name>
<value>hdfs://mycluster:8020/tmp/hive-${user.name}</value>
<description>Scratch space for Hive jobs</description>
</property>

-- 添加:
<property>
<name>hbase.zookeeper.quorum</name>
<value>funshion-hadoop194,funshion-hadoop195,funshion-hadoop196,funshion-hadoop197,funshion-hadoop198</value>
</property>

<property>
<name>hive.aux.jars.path</name>
 <value>
file:///usr/local/hive/lib/hive-ant-0.14.0-SNAPSHOT.jar,
file:///usr/local/hive/lib/protobuf-java-2.5.0.jar,
file:///usr/local/hbase/lib/hbase-server-0.98.3-hadoop2.jar,
file:///usr/local/hbase/lib/hbase-client-0.98.3-hadoop2.jar,
file:///usr/local/hbase/lib/hbase-common-0.98.3-hadoop2.jar,
file:///usr/local/hbase/lib/hbase-common-0.98.3-hadoop2-tests.jar,
file:///usr/local/hbase/lib/hbase-protocol-0.98.3-hadoop2.jar,
file:///usr/local/hbase/lib/htrace-core-2.04.jar,
file:///usr/local/hive/lib/zookeeper-3.4.6.jar,
file:///usr/local/hive/lib/guava-11.0.2.jar</value>
</property>


-- 上面格式是方便查看,真正使用下面的格式:将所有的jar包放到一行:
<property>
<name>hive.aux.jars.path</name>
<value>file:///usr/local/hive/lib/hive-ant-0.14.0-SNAPSHOT.jar,file:///usr/local/hbase/lib/hbase-server-0.98.3-hadoop2.jar,file:///usr/local/hbase/lib/hbase-client-0.98.3-hadoop2.jar,file:///usr/local/hbase/lib/hbase-common-0.98.3-hadoop2.jar,file:///usr/local/hbase/lib/hbase-common-0.98.3-hadoop2-tests.jar,file:///usr/local/hbase/lib/hbase-protocol-0.98.3-hadoop2.jar,file:///usr/local/hbase/lib/htrace-core-2.04.jar,file:///usr/local/hive/lib/zookeeper-3.4.6.jar</value>
</property>


-- 首先需要把hive/lib下的hbase包替换成安装的hbase的,需要如下几下:
hbase-client-0.98.2-hadoop2.jar
hbase-common-0.98.2-hadoop2.jar
hbase-common-0.98.2-hadoop2-tests.jar
hbase-protocol-0.98.2-hadoop2.jar
htrace-core-2.04.jar
hbase-server-0.98.2-hadoop2.jar


将hadoop节点添加到hive-site.xml中
<property>
<name>hbase.zookeeper.quorum</name>
<vale>所有节点</value>
</property>

-- 另外,你必须在创建Hive库表前,在HDFS上创建/tmp和/user/hive/warehouse(也称为hive.metastore.warehouse.dir所指定的目录),并且将它们的权限设置为chmod g+w。完成这个操作的命令如下:
$ $HADOOP_HOME/bin/hadoop fs -mkdir /tmp
$ $HADOOP_HOME/bin/hadoop fs -mkdir /user/hive/warehouse
$ $HADOOP_HOME/bin/hadoop fs -chmod g+w /tmp
$ $HADOOP_HOME/bin/hadoop fs -chmod g+w /user/hive/warehouse

-- Step 7.5 启动并登录hive,并创建hive表


14/06/16 18:58:50 WARN conf.HiveConf: DEPRECATED: hive.metastore.ds.retry.* no longer has any effect.  Use hive.hmshandler.retry.* instead


-- 集群启动:
# bin/hive --service hiveserver -hiveconf hbase.zookeeper.quorum=funshion-hadoop194,funshion-hadoop195,funshion-hadoop196,funshion-hadoop197,funshion-hadoop198 &
# bin/hive -hiveconf hbase.zookeeper.quorum=funshion-hadoop194,funshion-hadoop195,funshion-hadoop196,funshion-hadoop197,funshion-hadoop198 &
# bin/hive -hiveconf hive.root.logger=DEBUG,console hbase.master=funshion-hadoop194:60010


# bin/hive -hiveconf hbase.master=funshion-hadoop194:60010 --auxpath /usr/local/hive/lib/hive-ant-0.13.1.jar,/usr/local/hive/lib/protobuf-java-2.5.0.jar,/usr/local/hive/lib/hbase-client-0.98.3-hadoop2.jar, \
/usr/local/hive/lib/hbase-common-0.98.3-hadoop2.jar,/usr/local/hive/lib/zookeeper-3.4.6.jar,/usr/local/hive/lib/guava-11.0.2.jar


#bin/hive -hiveconf hbase.zookeeper.quorum=node1,node2,node3


-- 客户端登录:
$HIVE_HOME/bin/hive -h127.0.0.1 -p10000
$HIVE_HOME/bin/hive -hfunshion-hadoop194 -p10000
$HIVE_HOME/bin/hive -p10000


[hadoop@funshion-hadoop194 lib]$ hive --service hiveserver & 


[hadoop@funshion-hadoop194 lib]$ hive
14/06/10 16:56:59 INFO Configuration.deprecation: mapred.input.dir.recursive is deprecated. Instead, use mapreduce.input.fileinputformat.input.dir.recursive
14/06/10 16:56:59 INFO Configuration.deprecation: mapred.max.split.size is deprecated. Instead, use mapreduce.input.fileinputformat.split.maxsize
14/06/10 16:56:59 INFO Configuration.deprecation: mapred.min.split.size is deprecated. Instead, use mapreduce.input.fileinputformat.split.minsize
14/06/10 16:56:59 INFO Configuration.deprecation: mapred.min.split.size.per.rack is deprecated. Instead, use mapreduce.input.fileinputformat.split.minsize.per.rack
14/06/10 16:56:59 INFO Configuration.deprecation: mapred.min.split.size.per.node is deprecated. Instead, use mapreduce.input.fileinputformat.split.minsize.per.node
14/06/10 16:56:59 INFO Configuration.deprecation: mapred.reduce.tasks is deprecated. Instead, use mapreduce.job.reduces
14/06/10 16:56:59 INFO Configuration.deprecation: mapred.reduce.tasks.speculative.execution is deprecated. Instead, use mapreduce.reduce.speculative


Logging initialized using configuration in jar:file:/usr/local/hive-0.12.0-bin/lib/hive-common-0.12.0.jar!/hive-log4j.properties
SLF4J: Class path contains multiple SLF4J bindings.
SLF4J: Found binding in [jar:file:/usr/local/hadoop-2.4.0/share/hadoop/common/lib/slf4j-log4j12-1.7.5.jar!/org/slf4j/impl/StaticLoggerBinder.class]
SLF4J: Found binding in [jar:file:/usr/local/hive-0.12.0-bin/lib/slf4j-log4j12-1.6.1.jar!/org/slf4j/impl/StaticLoggerBinder.class]
SLF4J: See http://www.slf4j.org/codes.html#multiple_bindings for an explanation.
SLF4J: Actual binding is of type [org.slf4j.impl.Log4jLoggerFactory]
hive> show databases;
OK
Failed with exception java.io.IOException:java.io.IOException: Cannot create an instance of InputFormat class org.apache.hadoop.mapred.TextInputFormat as specified in mapredWork!


-- 如果报类似如上错误,在 ~/.bash_profile 添加环境变量,如下:

export JAVA_LIBRARY_PATH=$HADOOP_HOME/lib/native/Linux-amd64-64
export HADOOP_CLASSPATH=$HADOOP_CLASSPATH:$HADOOP_HOME/lib/native/hadoop-lzo-0.4.20-SNAPSHOT.jar


-- hive客户端登录:
[hadoop@funshion-hadoop194 bin]$  $HIVE_HOME/bin/hive -h127.0.0.1 -p10000
14/06/10 17:13:17 INFO Configuration.deprecation: mapred.input.dir.recursive is deprecated. Instead, use mapreduce.input.fileinputformat.input.dir.recursive
14/06/10 17:13:17 INFO Configuration.deprecation: mapred.max.split.size is deprecated. Instead, use mapreduce.input.fileinputformat.split.maxsize
14/06/10 17:13:17 INFO Configuration.deprecation: mapred.min.split.size is deprecated. Instead, use mapreduce.input.fileinputformat.split.minsize
14/06/10 17:13:17 INFO Configuration.deprecation: mapred.min.split.size.per.rack is deprecated. Instead, use mapreduce.input.fileinputformat.split.minsize.per.rack
14/06/10 17:13:17 INFO Configuration.deprecation: mapred.min.split.size.per.node is deprecated. Instead, use mapreduce.input.fileinputformat.split.minsize.per.node
14/06/10 17:13:17 INFO Configuration.deprecation: mapred.reduce.tasks is deprecated. Instead, use mapreduce.job.reduces
14/06/10 17:13:17 INFO Configuration.deprecation: mapred.reduce.tasks.speculative.execution is deprecated. Instead, use mapreduce.reduce.speculative


Logging initialized using configuration in jar:file:/usr/local/hive-0.12.0-bin/lib/hive-common-0.12.0.jar!/hive-log4j.properties
SLF4J: Class path contains multiple SLF4J bindings.
SLF4J: Found binding in [jar:file:/usr/local/hadoop-2.4.0/share/hadoop/common/lib/slf4j-log4j12-1.7.5.jar!/org/slf4j/impl/StaticLoggerBinder.class]
SLF4J: Found binding in [jar:file:/usr/local/hive-0.12.0-bin/lib/slf4j-log4j12-1.6.1.jar!/org/slf4j/impl/StaticLoggerBinder.class]
SLF4J: See http://www.slf4j.org/codes.html#multiple_bindings for an explanation.
SLF4J: Actual binding is of type [org.slf4j.impl.Log4jLoggerFactory]
[127.0.0.1:10000] hive> create database web;
OK
[127.0.0.1:10000] hive> CREATE EXTERNAL TABLE pv2(
                      >   protocol string, 
                      >   rprotocol string, 
                      >   time int, 
                      >   ip string, 
                      >   fck string, 
                      >   mac string, 
                      >   userid string, 
                      >   fpc string, 
                      >   version string, 
                      >   sid string, 
                      >   pvid string, 
                      >   config string, 
                      >   url string, 
                      >   referurl string, 
                      >   channelid string, 
                      >   vtime string, 
                      >   ext string, 
                      >   useragent string, 
                      >   step string, 
                      >   sestep string, 
                      >   seidcount string, 
                      >   ta string)
                      > PARTITIONED BY ( 
                      >   year string, 
                      >   month string, 
                      >   day string,
                      >   hour string)
                      > ROW FORMAT DELIMITED 
                      >   FIELDS TERMINATED BY '\t' 
                      > STORED AS INPUTFORMAT 
                      >   'com.hadoop.mapred.DeprecatedLzoTextInputFormat' 
                      > OUTPUTFORMAT 
                      >   'org.apache.hadoop.hive.ql.io.HiveIgnoreKeyTextOutputFormat'
                      > LOCATION
                      >   'hdfs://mycluster/dw/logs/web/origin/pv/2';
OK
[127.0.0.1:10000] hive> desc pv2;
OK
protocol                    string                      None                
rprotocol                   string                      None                
time                        int                         None                
ip                          string                      None                
fck                         string                      None                
mac                         string                      None                
userid                      string                      None                
fpc                         string                      None                
version                     string                      None                
sid                         string                      None                
pvid                        string                      None                
config                      string                      None                
url                         string                      None                
referurl                    string                      None                
channelid                   string                      None                
vtime                       string                      None                
ext                         string                      None                
useragent                   string                      None                
step                        string                      None                
sestep                      string                      None                
seidcount                   string                      None                
ta                          string                      None                
year                        string                      None                
month                       string                      None                
day                         string                      None                
hour                        string                      None                
                  
# Partition Information                  
# col_name                    data_type                   comment             
                  
year                        string                      None                
month                       string                      None                
day                         string                      None                
hour                        string                      None                
[127.0.0.1:10000] hive>  


-- 创建web数据库后,将发现 hdfs://mycluster/user/hive/warehouse 路径下多了一个web.db文件夹:

[hadoop@funshion-hadoop194 bin]$ hdfs dfs -ls hdfs://mycluster/user/hive/warehouse
Found 1 items
drwxr-xr-x   - hadoop supergroup          0 2014-06-10 17:13 hdfs://mycluster/user/hive/warehouse/web.db


-- Step 7.5 给hive表添加分区

ALTER TABLE pv2 ADD PARTITION(year = '2014', month = '05', day = '24', hour='00')
LOCATION 'hdfs://mycluster:8020/dw/logs/web/origin/pv/2/2014/05/24/00';


ALTER TABLE pv2 ADD PARTITION(year = '2014', month = '05', day = '24', hour='01')
LOCATION 'hdfs://mycluster:8020/dw/logs/web/origin/pv/2/2014/05/24/01';


ALTER TABLE pv2 ADD PARTITION(year = '2014', month = '05', day = '24', hour='02')
LOCATION 'hdfs://mycluster:8020/dw/logs/web/origin/pv/2/2014/05/24/02';


select * from pv2 limit 10;
select count(*) from pv2 where year='2014' and month='05' and day='24' and hour='00';


-- ###################################################################################################### --

-------------------------

-- hbase 源码编译安装参考:


-- 同步时钟
yum install ntpdate

crontab -e
30 5 * * * cd /usr/sbin;./ntpdate 192.168.111.17>/dev/null

http://www.micmiu.com/bigdata/hbase/hbase-build-for-hadoop2/
http://blog.chinaunix.net/xmlrpc ... 4212789&uid=9162199
http://hbase.apache.org/book/configuration.html#ftn.d3246e665
http://www.myexception.cn/open-source/1472081.html


-- mvn -f pom.xml.hadoop2 install -DskipTests assembly:single -Prelease


select year(to_date(('2011-12-08 10:03:01')) from userinfo limit 1;
select hour(to_date('2011-12-08_10:03:01')) from userinfo limit 1;
---------------------------------------------------------------------------------
2.Hbase Compile


hbase-0.98.3/pom.xml 文件修改hadoop版本 2.2.0 -> 2.4.0


修改如下两个地方:
tar -xvf 
-- 1.
<hadoop-two.version>2.4.0</hadoop-two.version>

-- 2.
<artifactId>hadoop-common</artifactId>

<version>2.4.0</version>
mvn clean package -DskipTests
但是没有看到有生成包,仔细找资料,获得打包过程。
hbase可以打包出hadoop1,也可以打包hadoop2,我们需要hadoop2,先生成pom.xml.hadoop2 文件,在打包:


bash ./dev-support/generate-hadoopX-poms.sh 0.98.1 0.98.1-hadoop2
MAVEN_OPTS="-Xmx3g" mvn -f pom.xml.hadoop2 clean install -DskipTests -Prelease
MAVEN_OPTS="-Xmx3g" mvn -f pom.xml.hadoop2 install -DskipTests site assembly:single -Prelease

10多分钟,编译目录有100多M大小,得到打包文件
hbase-0.98.1/hbase-assembly/target/hbase-0.98.1-hadoop2-bin.tar.gz

-- 出现如下版本信息,表示设置成功:

Downloading: https://repository.apache.org/co ... /httpcore-4.2.4.pom
Downloaded: https://repository.apache.org/co ... /httpcore-4.2.4.pom (6 KB at 0.7 KB/sec)
Downloading: https://repository.apache.org/co ... ents-core-4.2.4.pom
Downloaded: https://repository.apache.org/co ... ents-core-4.2.4.pom (12 KB at 12.8 KB/sec)
Downloading: https://repository.apache.org/co ... ient-core-2.4.0.pom
Downloaded: https://repository.apache.org/co ... ient-core-2.4.0.pom (4 KB at 1.9 KB/sec)
Downloading: https://repository.apache.org/co ... ce-client-2.4.0.pom
Downloaded: https://repository.apache.org/co ... ce-client-2.4.0.pom (7 KB at 5.5 KB/sec)
Downloading: https://repository.apache.org/co ... rn-common-2.4.0.pom
Downloaded: https://repository.apache.org/co ... rn-common-2.4.0.pom (9 KB at 7.8 KB/sec)
Downloading: https://repository.apache.org/co ... doop-yarn-2.4.0.pom
Downloaded: https://repository.apache.org/co ... doop-yarn-2.4.0.pom (4 KB at 3.4 KB/sec)
Downloading: https://repository.apache.org/co ... -yarn-api-2.4.0.pom
Downloaded: https://repository.apache.org/co ... -yarn-api-2.4.0.pom (5 KB at 5.1 KB/sec)
Downloading: https://repository.apache.org/co ... ient-core-2.4.0.jar
Downloading: https://repository.apache.org/co ... rn-common-2.4.0.jar
Downloading: https://repository.apache.org/co ... -yarn-api-2.4.0.jar
Downloaded: https://repository.apache.org/co ... ient-core-2.4.0.jar (1459 KB at 370.7 KB/sec)
Downloaded: https://repository.apache.org/co ... -yarn-api-2.4.0.jar (1601 KB at 367.9 KB/sec)
Downloaded: https://repository.apache.org/co ... rn-common-2.4.0.jar (1375 KB at 307.4 KB/sec)
[INFO] 

-- vi hbase-site.xml

<configuration>
<property>
<name>hbase.master</name>
<value>funshion-hadoop196:60010</value>
</property>
<property>
<name>hbase.rootdir</name>
<value>hdfs://mycluster:8020/user/hbase</value>
</property>
<property>
<name>hbase.cluster.distributed</name>
<value>true</value>
</property>
<property>
<name>hbase.zookeeper.property.clientPort</name>
<value>2181</value>
</property>
<property>
<name>hbase.zookeeper.quorum</name>
<value>funshion-hadoop194,funshion-hadoop195,funshion-hadoop196,funshion-hadoop197,funshion-hadoop198</value>
</property>
<property>
<name>hbase.tmp.dir</name>
<value>/home/hadoop/tmp/hbase</value>
</property>
</configuration>

-- vi hbase-env.sh

export JAVA_HOME=/usr/java/latest

-- 进funshion-hadoop194(master)
cd $HBASE_HOME/bin
./start-hbase.sh
-- 然后查看HMaster进程是否启动
[hadoop@funshion-hadoop196 bin]$ jps
4574 HMaster
1443 QuorumPeerMain
3420 NameNode
3896 ResourceManager
5134 Jps
3623 JournalNode
4972 Main
3806 DFSZKFailoverController


-- 进其他regionserver节点,查看HRegionServer进程是否启动:
[hadoop@funshion-hadoop195 logs]$ jps
1267 QuorumPeerMain
1964 JournalNode
2345 Jps
1891 NameNode
2089 DFSZKFailoverController


-- 如上所示,没有启动HRegionServer进程,执行以下命令启动HRegionServer进程(其他节点类似)
./hbase-daemon.sh start regionserver


[hadoop@funshion-hadoop195 bin]$ jps
2703 Jps
1267 QuorumPeerMain
2398 HRegionServer
1964 JournalNode
1891 NameNode
2089 DFSZKFailoverController

-- 如果其他节点的HRegionServer进程无法启动,建议将$HADOOP_HOME/etc/hadoop下的hdfs-site.xml和core-site.xml 放到hbase/conf下

---------------------------------------------------------------------------------
-- 登录并测试hbase是否能正常使用:
[hadoop@funshion-hadoop196 logs]$ hbase shell
2014-06-16 11:03:24,416 INFO  [main] Configuration.deprecation: hadoop.native.lib is deprecated. Instead, use io.native.lib.available
2014-06-16 11:03:24,494 INFO  [main] Configuration.deprecation: hadoop.native.lib is deprecated. Instead, use io.native.lib.available
2014-06-16 11:03:24,560 INFO  [main] Configuration.deprecation: hadoop.native.lib is deprecated. Instead, use io.native.lib.available
2014-06-16 11:03:24,636 INFO  [main] Configuration.deprecation: hadoop.native.lib is deprecated. Instead, use io.native.lib.available
2014-06-16 11:03:24,686 INFO  [main] Configuration.deprecation: hadoop.native.lib is deprecated. Instead, use io.native.lib.available
HBase Shell; enter 'help<RETURN>' for list of supported commands.
Type "exit<RETURN>" to leave the HBase Shell
Version 0.98.3-hadoop2, rUnknown, Thu Jun 12 16:40:37 CST 2014


hbase(main):001:0> status
4 servers, 0 dead, 0.5000 average load


hbase(main):002:0> create 'testtable','colfam1'
0 row(s) in 3.4710 seconds


=> Hbase::Table - testtable
hbase(main):003:0> list 'testtable'
TABLE                                                                                                                                                                                   
testtable                                                                                                                                                                               
1 row(s) in 0.1590 seconds

=> ["testtable"]
hbase(main):004:0> put 'testtable','myrow-1','colfam1:q1','value-1'
0 row(s) in 0.4770 seconds


hbase(main):005:0> put 'testtable','myrow-2','colfam1:q2','value-2'
0 row(s) in 0.0440 seconds


hbase(main):006:0> put 'testtable','myrow-2','colfam1:q3','value-3'
0 row(s) in 0.0370 seconds


hbase(main):007:0> scan 'testtable'
ROW                                             COLUMN+CELL                                                                                                                             
myrow-1                                        column=colfam1:q1, timestamp=1402888334639, value=value-1                                                                               
myrow-2                                        column=colfam1:q2, timestamp=1402888343658, value=value-2                                                                               
myrow-2                                        column=colfam1:q3, timestamp=1402888350278, value=value-3                                                                               
2 row(s) in 0.2360 seconds


hbase(main):008:0> get 'testtable','myrow-1'
COLUMN                                          CELL                                                                                                                                    
colfam1:q1                                     timestamp=1402888334639, value=value-1                                                                                                  
1 row(s) in 0.1040 seconds


hbase(main):009:0> delete 'testtable','myrow-2','colfam1:q2'
0 row(s) in 0.1320 seconds


hbase(main):010:0> scan 'testtable'
ROW                                             COLUMN+CELL                                                                                                                             
myrow-1                                        column=colfam1:q1, timestamp=1402888334639, value=value-1                                                                               
myrow-2                                        column=colfam1:q3, timestamp=1402888350278, value=value-3                                                                               
2 row(s) in 0.0650 seconds


hbase(main):012:0> disable 'testtable'
0 row(s) in 1.8050 seconds


hbase(main):013:0> drop 'testtable'
0 row(s) in 0.7200 seconds


hbase(main):014:0> exit
[hadoop@funshion-hadoop194 logs]$

-- 安装后的URL:http://funshion-hadoop196:60010/master-status

-- ###################################################################################################### --

<property>
<name>yarn.resourcemanager.resource-tracker.address</name>
<value>master-hadoop:58031</value>
</property>
<property>
<name>yarn.resourcemanager.address</name>
<value>master-hadoop:58032</value>
</property>
<property>
<name>yarn.resourcemanager.scheduler.address</name>
<value>master-hadoop:58030</value>
</property>
<property>
<name>yarn.resourcemanager.admin.address</name>
<value>master-hadoop:58033</value>
</property>
<property>
<name>yarn.resourcemanager.webapp.address</name>
<value>master-hadoop:58088</value>
</property>
<property>
<description>Classpath for typical applications.</description>
<name>yarn.application.classpath</name>
<value>
$HADOOP_CONF_DIR,
$HADOOP_COMMON_HOME/*,$HADOOP_COMMON_HOME/lib/*,
$HADOOP_HDFS_HOME/*,$HADOOP_HDFS_HOME/lib/*,
$HADOOP_MAPRED_HOME/*,$HADOOP_MAPRED_HOME/lib/*,
$YARN_HOME/*,$YARN_HOME/lib/*
</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>
<property>
<name>yarn.nodemanager.local-dirs</name>
<value>/var/lib/hadoop/dfs/yarn/local</value>
</property>
<property>
<name>yarn.nodemanager.log-dirs</name>
<value>/var/lib/hadoop/dfs/yarn/logs</value>
</property>
<property>
<description>Where to aggregate logs</description>
<name>yarn.nodemanager.remote-app-log-dir</name>
<value>/var/lib/hadoop/dfs/yarn/remotelogs</value>
</property>
<property>
<name>yarn.app.mapreduce.am.staging-dir</name>
<value>/var/lib/hadoop/dfs/yarn/userstag</value>
</property>
<property>
<name>mapreduce.jobhistory.intermediate-done-dir</name>
<value>/var/lib/hadoop/dfs/yarn/intermediatedone</value>
</property>
<property>
<name>mapreduce.jobhistory.done-dir</name>
<value>/var/lib/hadoop/dfs/yarn/done</value>
</property>
<property>
<name>yarn.log-aggregation-enable</name>
<value>true</value>
</property>


---------------------------
<property>
<description>Classpath for typical applications.</description>
<name>yarn.application.classpath</name>
<value>
$HADOOP_CONF_DIR,
$HADOOP_COMMON_HOME/*,$HADOOP_COMMON_HOME/lib/*,
$HADOOP_HDFS_HOME/*,$HADOOP_HDFS_HOME/lib/*,
$HADOOP_MAPRED_HOME/*,$HADOOP_MAPRED_HOME/lib/*,
$YARN_HOME/*,$YARN_HOME/lib/*
</value>
  </property>
这个有没有必要配置

-- hadoop reformat

rm -rf ~/mydata/*
rm -rf ~/mycluster/*
rm -rf /usr/local/zookeeper/var/data/zookeeper*
rm -rf /usr/local/zookeeper/var/data/ver*
rm -rf /usr/local/zookeeper/var/datalog/*
rm -rf /tmp/hadoop*
rm -rf /tmp/hbase*
rm -rf /tmp/hive*
rm -rf /tmp/yarn*
rm -rf ~/tmp/*
rm -rf ~/logs/*
mkdir -p /home/hadoop/logs/yarn_local
mkdir -p /home/hadoop/logs/yarn_log
mkdir -p /home/hadoop/logs/yarn_remotelog
mkdir -p /home/hadoop/logs/yarn_userstag
mkdir -p /home/hadoop/logs/yarn_intermediatedone
mkdir -p /home/hadoop/logs/yarn_done


<property>
<name>yarn.nodemanager.local-dirs</name>
<value>/home/hadoop/logs/yarn_local</value>
</property>
<property>
<name>yarn.nodemanager.log-dirs</name>
<value>/home/hadoop/logs/yarn_log</value>
</property>
<property>
<name>yarn.nodemanager.remote-app-log-dir</name>
<value>/home/hadoop/logs/yarn_remotelog</value>
</property>
<property>
<name>yarn.app.mapreduce.am.staging-dir</name>
<value>/home/hadoop/logs/yarn_userstag</value>
</property>
<property>
<name>mapreduce.jobhistory.intermediate-done-dir</name>
<value>/home/hadoop/logs/yarn_intermediatedone</value>
</property>
<property>
<name>mapreduce.jobhistory.done-dir</name>
<value>/var/lib/hadoop/dfs/yarn_done</value>
</property>

vi /usr/local/zookeeper/var/data/myid

-- hadoop、hbase、hive启动后,最后namenode节点应该有如下相关进程(如果另外一个namenode节点无ResourceManager,可以手动去启动一下):
[hadoop@funshion-hadoop194 bin]$ jps


25583 JournalNode            -- JournalNode进程(每个节点都有)
21911 QuorumPeerMain          -- Zookeeper相关进程(每个节点都有)
25380 NameNode                -- hadoop namenode进程(两个namenode节点均有)
26261 HMaster                 -- Hbase Master进程(只有Hbase Master节点有)
25860 ResourceManager         -- Hadoop 的 ResourceManager进程(两个namenode节点均有)
25769 DFSZKFailoverController -- Hadoop的故障自动转移相关进程(就靠它在故障的时候干活了,两个namenode节点均有)

-- hadoop、hbase、hive启动后,最后datanode节点有如下相关进程:

[hadoop@funshion-hadoop195 ~]$ jps
32090 HRegionServer
31854 JournalNode
31781 NameNode
31978 DFSZKFailoverController
32189 Jps
30808 QuorumPeerMain


-- 安装后相关的URL:


-- HADOOP集群:
http://funshion-hadoop194:23188/cluster

-- Hbase集群:
http://funshion-hadoop196:60010/master-status

# export HADOOP_MAPARED_HOME=${HADOOP_DEV_HOME}
# export HADOOP_COMMON_HOME=${HADOOP_DEV_HOME}
# export HADOOP_HDFS_HOME=${HADOOP_DEV_HOME}
# export YARN_HOME=${HADOOP_DEV_HOME}
# export HADOOP_CONF_DIR=${HADOOP_DEV_HOME}/etc/hadoop
# export HDFS_CONF_DIR=${HADOOP_DEV_HOME}/etc/hadoop
# export YARN_CONF_DIR=${HADOOP_DEV_HOME}/etc/hadoop


export HADOOP_MAPARED_HOME=${HADOOP_DEV_HOME}/share/hadoop/mapreduce
export HADOOP_COMMON_HOME=${HADOOP_DEV_HOME}/share/hadoop/common
export HADOOP_HDFS_HOME=${HADOOP_DEV_HOME}/share/hadoop/hdfs
export YARN_HOME=${HADOOP_DEV_HOME}/share/hadoop/yarn
export HADOOP_YARN_HOME=${HADOOP_DEV_HOME}/share/hadoop/yarn
export HADOOP_CLIENT_CONF_DIR=${HADOOP_DEV_HOME}/etc/hadoop
export HADOOP_CONF_DIR=${HADOOP_DEV_HOME}/etc/hadoop
export HDFS_CONF_DIR=${HADOOP_DEV_HOME}/etc/hadoop
export YARN_CONF_DIR=${HADOOP_DEV_HOME}/etc/hadoop


ncing is necessary
2014-06-20 11:49:37,137 INFO org.apache.hadoop.ha.ActiveStandbyElector: Yielding from election
2014-06-20 11:49:37,168 INFO org.apache.zookeeper.ZooKeeper: Session: 0x146b75b9d960000 closed
2014-06-20 11:49:37,169 WARN org.apache.hadoop.ha.ActiveStandbyElector: Ignoring stale result from old client with sessionId 0x146b75b9d960000
2014-06-20 11:49:37,169 INFO org.apache.zookeeper.ClientCnxn: EventThread shut down
2014-06-20 11:49:39,180 INFO org.apache.hadoop.ipc.Client: Retrying connect to server: funshion-hadoop195/192.168.117.195:53310. Already tried 0 time(s); retry policy is RetryUpToMaximumCountWithFixedSleep(maxRetries=1, sleepTime=1000 MILLISECONDS)
2014-06-20 11:49:39,183 WARN org.apache.hadoop.ha.HealthMonitor: Transport-level exception trying to monitor health of NameNode at funshion-hadoop195/192.168.117.195:53310: Call From funshion-hadoop195/192.168.117.195 to funshion-hadoop195:53310 failed on connection exception: java.net.ConnectException: Connection refused; For more details see:  http://wiki.apache.org/hadoop/ConnectionRefused
2014-06-20 11:49:41,188 INFO org.apache.hadoop.ipc.Client: Retrying connect to server: funshion-hadoop195/192.168.117.195:53310. Already tried 0 time(s); retry policy is RetryUpToMaximumCountWithFixedSleep(maxRetries=1, sleepTime=1000 MILLISECONDS)
2014-06-20 11:49:41,191 WARN org.apache.hadoop.ha.HealthMonitor: Transport-level exception trying to monitor health of NameNode at funshion-hadoop195/192.168.117.195:53310: Call From funshion-hadoop195/192.168.117.195 to funshion-hadoop195:53310 failed on connection exception: java.net.ConnectException: Connection refused; For more details see:  http://wiki.apache.org/hadoop/ConnectionRefused

 #################################################################################################################### --


-- 最后,测试hive与hbase整合是否成功:


1、先在hive中创建hbase表:
[hadoop@funshion-hadoop196 ~]$ hive


Logging initialized using configuration in jar:file:/usr/local/apache-hive-0.14.0-SNAPSHOT-bin/lib/hive-common-0.14.0-SNAPSHOT.jar!/hive-log4j.properties
hive (default)> use web;
OK
Time taken: 0.813 seconds
hive (web)> CREATE TABLE hive_table_1(key int, value string)
          > STORED BY 'org.apache.hadoop.hive.hbase.HBaseStorageHandler'
          > WITH SERDEPROPERTIES ("hbase.columns.mapping" = ":key,id:1") TBLPROPERTIES ("hbase.table.name"="hive_table_1");
OK
Time taken: 4.471 seconds
hive (web)> desc hive_table_1;
OK
key                         int                         from deserializer   
value                       string                      from deserializer   
Time taken: 0.605 seconds, Fetched: 2 row(s)


2、然后在hbase查看表 hive_table_1 是否存在,并插入一行数据:
[hadoop@funshion-hadoop196 ~]$ hbase shell
2014-06-22 13:19:35,775 INFO  [main] Configuration.deprecation: hadoop.native.lib is deprecated. Instead, use io.native.lib.available
2014-06-22 13:19:35,865 INFO  [main] Configuration.deprecation: hadoop.native.lib is deprecated. Instead, use io.native.lib.available
2014-06-22 13:19:35,955 INFO  [main] Configuration.deprecation: hadoop.native.lib is deprecated. Instead, use io.native.lib.available
2014-06-22 13:19:36,028 INFO  [main] Configuration.deprecation: hadoop.native.lib is deprecated. Instead, use io.native.lib.available
2014-06-22 13:19:36,120 INFO  [main] Configuration.deprecation: hadoop.native.lib is deprecated. Instead, use io.native.lib.available
HBase Shell; enter 'help<RETURN>' for list of supported commands.
Type "exit<RETURN>" to leave the HBase Shell
Version 0.98.3-hadoop2, rUnknown, Thu Jun 12 16:40:37 CST 2014


hbase(main):001:0> status
2014-06-22 13:19:42,761 WARN  [main] util.NativeCodeLoader: Unable to load native-hadoop library for your platform... using builtin-java classes where applicable
3 servers, 1 dead, 1.3333 average load

hbase(main):002:0> satus
NameError: undefined local variable or method `satus' for #<Object:0x2dbb822>


hbase(main):003:0> status
4 servers, 0 dead, 1.0000 average load

hbase(main):004:0> list
TABLE                                                                                                                                                                           
hive_table_1                                                                                                                                                                    
testtable                                                                                                                                                                       
2 row(s) in 0.2430 seconds


=> ["hive_table_1", "testtable"]
hbase(main):005:0> put 'hive_table_1', "1", "id:1", "1"
0 row(s) in 0.8620 seconds


3、然后在hive中查询,看是否能访问到表数据:
hive (web)> select * from hive_table_1;
OK
1        1
Time taken: 0.761 seconds, Fetched: 1 row(s)


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