• 系统结构实践第四次作业


    1.使用Docker-compose实现Tomcat+Nginx负载均衡

    负载均衡原理

    nginx反向代理原理:

      反向代理(Reverse Proxy)方式是指以代理服务器来接受客户端的连接请求,然后将请求转发给网络上的web服务器(可能是apache,nginx,tomcat,iis等)并将web服务器上得到的结果返回给请求连接的客户端,此时代理服务器对外就表现为一个服务器。

    nginx代理tomcat集群,代理2个以上tomcat

    文件创建如下:

    各文件内容如下:
    default.conf:

    upstream tomcats {
        server 145_tomcat1:8080; # 主机名:端口号
        server 145_tomcat2:8080; # tomcat默认端口号8080
        server 145_tomcat3:8080; # 默认使用轮询策略
    }
    
    server {
        listen 80;
        server_name localhost;
    
        location / {
            proxy_pass http://tomcats; # 请求转向tomcats
        }
    }
    

    docker-compose.yml:

    version: "3"
    services:
        nginx:
            image: nginx
            container_name: 145_nginx
            ports:
                - "80:80"
            volumes:
                - ./nginx/default.conf:/etc/nginx/conf.d/default.conf # 挂载配置文件
            depends_on:
                - tomcat01
                - tomcat02
                - tomcat03
    
        tomcat01:
            image: tomcat
            container_name: 145_tomcat1
            volumes:
                - ./tomcat1:/usr/local/tomcat/webapps/ROOT # 挂载web目录
    
        tomcat02:
            image: tomcat
            container_name: 145_tomcat2
            volumes:
                - ./tomcat2:/usr/local/tomcat/webapps/ROOT
    
        tomcat03:
            image: tomcat
            container_name: 145_tomcat3
            volumes:
                - ./tomcat3:/usr/local/tomcat/webapps/ROOT
    
    

    运行docker-compose

    docker-compose up -d
    

    查看容器

    查看web端

    了解nginx的负载均衡策略,并至少实现nginx的2种负载均衡策略

    负载均衡策略1:轮询策略

    import requests
    
    url="http://127.0.0.1"
    
    for i in range(0,10):
    	reponse=requests.get(url)
    	print(reponse.text)
    

    负载均衡策略2:权重策略

    修改Default.conf如下

    test2.py:

    import requests
    
    url="http://127.0.0.1"
    count={}
    for i in range(0,2000):
        response=requests.get(url)
        if response.text in count:
            count[response.text]+=1;
        else:
            count[response.text]=1
    for a in count:
        print(a, count[a])
    

    2.使用Docker-compose部署javaweb运行环境

    直接使用老师给的项目

    负载均衡

    修改dcoker-compose.yml

    version: '2'
    services:
      tomcat01:
        image: tomcat
        hostname: 145_javaweb
        container_name: tomcat4
        ports:
         - "5050:8080"
        volumes:
         - "$PWD/webapps:/usr/local/tomcat/webapps"
        networks:
          webnet:
            ipv4_address: 15.22.0.15
      tomcat02:
        image: tomcat
        container_name: tomcat5
        ports:
         - "5051:8080"
        volumes:
         - "$PWD/webapps:/usr/local/tomcat/webapps"
        networks:
          webnet:
            ipv4_address: 15.22.0.16
      mymysql:
        build: .
        image: mymysql:test
        container_name: mymysql
        ports:
          - "3306:3306"
        command: [
                '--character-set-server=utf8mb4',
                '--collation-server=utf8mb4_unicode_ci'
        ]
        environment:
          MYSQL_ROOT_PASSWORD: "123456"
        networks:
          webnet:
            ipv4_address: 15.22.0.6
      nginx:
         image: nginx
         ports:
             - "8080:8080"
         volumes:
             - ./default.conf:/etc/nginx/conf.d/default.conf # 挂载配置文件
    networks:
     webnet:
       driver: bridge
       ipam:
         config:
           - subnet: 15.22.0.0/24
             gateway: 15.22.0.2
    

    修改default.conf

    upstream tomcats {
        server tomcat4:8080 weight=1; 
        server tomcat5:8080 weight=2; 
        
    }
    
    server {
        listen 8080;
        server_name localhost;
    
        location / {
            proxy_pass http://tomcats; # 请求转向tomcats
            
        }
    }
    

    重新启动容器即可

    3.使用Docker搭建大数据集群环境

    先拉取镜像

    搭建hadoop环境

    创建build文件 运行容器

    sudo docker run -it -v /home/ivan145/build:/root/build --name ubuntu ubuntu
    

    进入容器换源

    cat<<EOF>/etc/apt/sources.list
    deb http://mirrors.aliyun.com/ubuntu/ bionic main restricted universe multiverse
    deb-src http://mirrors.aliyun.com/ubuntu/ bionic main restricted universe multiverse
    deb http://mirrors.aliyun.com/ubuntu/ bionic-security main restricted universe multiverse
    deb-src http://mirrors.aliyun.com/ubuntu/ bionic-security main restricted universe multiverse
    deb http://mirrors.aliyun.com/ubuntu/ bionic-updates main restricted universe multiverse
    deb-src http://mirrors.aliyun.com/ubuntu/ bionic-updates main restricted universe multiverse
    deb http://mirrors.aliyun.com/ubuntu/ bionic-backports main restricted universe multiverse
    deb-src http://mirrors.aliyun.com/ubuntu/ bionic-backports main restricted universe multiverse
    deb http://mirrors.aliyun.com/ubuntu/ bionic-proposed main restricted universe multiverse
    deb-src http://mirrors.aliyun.com/ubuntu/ bionic-proposed main restricted universe multiverse
    EOF
    

    安装软件以及配置ssh

    apt-get update
    apt-get install vim       
    apt-get install ssh       
    /etc/init.d/ssh start  
    
    cd ~/.ssh
    ssh-keygen -t rsa # 一直按回车即可
    cat id_rsa.pub >> authorized_keys 
    

    JDK的安装

    apt install openjdk-8-jdk
    vim ~/.bashrc       # 在文件末尾添加以下两行,配置Java环境变量:
    export JAVA_HOME=/usr/lib/jvm/java-8-openjdk-amd64/
    export PATH=$PATH:$JAVA_HOME/bin
    source ~/.bashrc 
    java -version #查看是否安装成功
    

    安装hadoop

    docker cp ./build/hadoop-3.1.3.tar.gz 容器ID:/root/build
    cd /root/build
    tar -zxvf hadoop-3.1.3.tar.gz -C /usr/local
    vim ~/.bashrc  
    export HADOOP_HOME=/usr/local/hadoop-3.1.3
    export CLASSPATH=.:$JAVA_HOME/lib:$JRE_HOME/lib
    export PATH=$PATH:$HADOOP_HOME/sbin:$HADOOP_HOME/bin:$JAVA_HOME/bin
    source ~/.bashrc # 使.bashrc生效
    hadoop version
    

    配置hadoop集群

    修改hadoop-env.sh

    export JAVA_HOME=/usr/lib/jvm/java-8-openjdk-amd64
    
    #core-site.xml
    <configuration>
              <property> 
                      <name>hadoop.tmp.dir</name>
                      <value>file:/usr/local/hadoop-3.1.3/tmp</value>
                      <description>Abase for other temporary directories.</description>
              </property>
              <property>
                      <name>fs.defaultFS</name>
                      <value>hdfs://master:9000</value>
              </property>
    </configuration>
    #hdfs-site.xml
    <configuration>
            <property>
                    <name>dfs.replication</name>
                    <value>1</value>
            </property>
            <property>
                    <name>dfs.namenode.name.dir</name>
    		        <value>file:/usr/local/hadoop-3.1.3/tmp/dfs/name</value>
    	</property>
    	<property>
                    <name>dfs.datanode.data.dir</name>
                    <value>file:/usr/local/hadoop-3.1.3/tmp/dfs/data</value>
    	</property>
    	<property>
                    <name>dfs.permissions.enabled</name>
                    <value>false</value>
            </property>
    </configuration>
    #mapred-site.xml
    <configuration>
        <property>
            <name>mapreduce.framework.name</name>
            <value>yarn</value>
        </property>
        <property>
            <name>yarn.app.mapreduce.am.env</name>
            <value>HADOOP_MAPRED_HOME=/usr/local/hadoop-3.1.3</value>
        </property>
        <property>
            <name>mapreduce.map.env</name>
            <value>HADOOP_MAPRED_HOME=/usr/local/hadoop-3.1.3</value>
        </property>
        <property>
            <name>mapreduce.reduce.env</name>
            <value>HADOOP_MAPRED_HOME=/usr/local/hadoop-3.1.3</value>
        </property>
    </configuration>
    #yarn-site.xml
    <?xml version="1.0" ?>
    <configuration>
    <!-- Site specific YARN configuration properties -->
            <property>
                   <name>yarn.nodemanager.aux-services</name>
                   <value>mapreduce_shuffle</value>
            </property>
            <property>
                   <name>yarn.resourcemanager.hostname</name>
                   <value>Master</value>
            </property>
            <property>
                   <name>yarn.nodemanager.vmem-pmem-ratio</name>
                   <value>2.5</value>
            </property>
    </configuration>
    

    对于start-dfs.sh和stop-dfs.sh文件,添加下列参数:

    HDFS_DATANODE_USER=root
    HADOOP_SECURE_DN_USER=hdfs
    HDFS_NAMENODE_USER=root
    HDFS_SECONDARYNAMENODE_USER=root
    

    对于start-yarn.sh和stop-yarn.sh,添加下列参数:

    YARN_RESOURCEMANAGER_USER=root
    HADOOP_SECURE_DN_USER=yarn
    YARN_NODEMANAGER_USER=root
    

    运行Hadoop集群

    在三个终端上开启三个容器运行ubuntu/hadoop镜像,分别表示Hadoop集群中的master,slave01和slave02;

    # 第一个终端
    docker run -it -h master --name master ubuntu/hadoop
    # 第二个终端
    docker run -it -h slave01 --name slave01 ubuntu/hadoop
    # 第三个终端
    docker run -it -h slave02 --name slave02 ubuntu/hadoop
    

    修改/etc/hosts

    vim /etc/hosts
    #修改为
    172.17.0.2      master
    172.17.0.3      slave01
    172.17.0.4      slave02
    

    测试ssh

    ssh slave01
    ssh slave02
    

    修改workers

    vim /usr/local/hadoop-3.1.3/etc/hadoop/workers
    # 将localhost替换成两个slave的主机名
    slave01
    slave02
    

    启动集群

    cd /usr/local/hadoop-3.2.1
    bin/hdfs namenode -format # 格式化文件系统
    sbin/start-dfs.sh # 开启NameNode和DataNode服务
    bin/hdfs dfs -mkdir /user # 建立HDFS文件夹,也可以放到下面示例程序中进行
    bin/hdfs dfs -mkdir /user/root
    bin/hdfs dfs -mkdir input
    bin/hdfs dfs -put etc/hadoop/*.xml input # 将xml复制到input下,作为示例程序输入
    sbin/start-yarn.sh # 开启ResourceManager和NodeManager服务
    jps # 查看服务状态
    

    运行Hadoop示例程序

    bin/hadoop jar share/hadoop/mapreduce/hadoop-mapreduce-examples-3.1.3.jar grep input output 'dfs[a-z.]+' # 运行示例
    bin/hdfs dfs -get output output # 获取输出结果
    cat output/* # 查看输出结果
    sbin/stop-all.sh # 停止所有服务
    

    用时:

    大致花了两个下午,从搭建环境开始,问题比较多的地方就是第二个实验,按着教程一步步走却还是出错了,一直在调试,最后也没太搞懂这个给东西。第三个实验相当于是把大数据的实验拿过来了,就感觉比较轻松,不过途中有错的地方花了很多时间,看了很多同学的博客,有很多出错的地方都能很好的解决了

  • 相关阅读:
    viewpoint vw适配 兼容方案
    函数参数默认值
    vue v-bind 的prop属性
    vue 全局错误处理 errorHandler
    Python模块学习
    频谱共享---小记
    LTE的信道
    PLMN(公共陆地移动网络)
    单元测试框架GoogleTest
    OpenRAN是什么
  • 原文地址:https://www.cnblogs.com/mlz031702145/p/12909713.html
Copyright © 2020-2023  润新知