• zookeeper与kafka安装部署及java环境搭建(发布订阅模式)


    1. ZooKeeper安装部署

    本文在一台机器上模拟3zk server的集群安装

    1.1. 创建目录、解压

    cd /usr/

    #创建项目目录

    mkdir zookeeper

    cd zookeeper

    mkdir tmp

    mkdir zookeeper-1

    mkdir zookeeper-2

    mkdir zookeeper-3

    cd tmp

    mkdir zk1

    mkdir zk2

    mkdir zk3

    cd zk1

    mkdir data

    mkdir log

    cd zk2

    mkdir data

    mkdir log

    cd zk3

    mkdir data

    mkdir log

    #将压缩包分别解压一份到 zookeeper-1, zookeeper-2, zookeeper-3目录下

    tar -zxvf zookeeper-3.4.10.tgz

    1.2. 创建每个目录下conf/zoo.cfg配置文件 

    /usr/zookeeper/zookeeper-1/zookeeper-3.4.10/conf/zoo.cfg 内容如下:

    tickTime=2000

    initLimit=10

    syncLimit=5

    dataDir=/home/hadoop/tmp/zk1/data

    dataLogDir=/home/hadoop/tmp/zk1/log

    clientPort=2181

    server.1=192.168.68.128:2287:3387

    server.2=192.168.68.128:2288:3388

    server.3=192.168.68.128:2289:3389

    /usr/zookeeper/zookeeper-1/zookeeper-3.4.10/conf/zoo.cfg 内容如下:

    tickTime=2000

    initLimit=10

    syncLimit=5

    dataDir=/home/hadoop/tmp/zk2/data

    dataLogDir=/home/hadoop/tmp/zk2/log

    clientPort=2182

    server.1=192.168.68.128:2287:3387

    server.2=192.168.68.128:2288:3388

    server.3=192.168.68.128:2289:3389

    /usr/zookeeper/zookeeper-1/zookeeper-3.4.10/conf/zoo.cfg 内容如下:

    tickTime=2000

    initLimit=10

    syncLimit=5

    dataDir=/home/hadoop/tmp/zk3/data

    dataLogDir=/home/hadoop/tmp/zk3/log

    clientPort=2183

    server.1=192.168.68.128:2287:3387

    server.2=192.168.68.128:2288:3388

    server.3=192.168.68.128:2289:3389

    注:红色部分192.168.68.128为服务器的ip

    为是在一台机器上模拟集群,所以端口不能重复,这里用2181~21832287~2289,以及3387~3389相互错开。

    另外每个zkinstance,都需要设置独立的数据存储目录、日志存储目录,所以dataDirdataLogDir这二个节点对应的目录,需要手动先创建好。即1.1所述的

    /usr/zookeeper/tmp/zk1/data

    /usr/zookeeper/tmp/zk1/log

    /usr/zookeeper/tmp/zk2/data

    /usr/zookeeper/tmp/zk2/log

    /usr/zookeeper/tmp/zk3/data

    /usr/zookeeper/tmp/zk3/log

    1.3. 创建每个目录下data/myid文件

    另外还有一个非常关键的设置,在每个zk server配置文件的dataDir所对应的目录下,必须创建一个名为myid的文件,其中的内容必须与zoo.cfgserver.x中的x相同,即:

    /usr/zookeeper/tmp/zk1/data/myid 中的内容为1,对应server.1中的1

    /usr/zookeeper/tmp/zk1/data/myid 中的内容为2,对应server.2中的2

    /usr/zookeeper/tmp/zk1/data/myid 中的内容为3,对应server.3中的3

    生产环境中,分布式集群部署的步骤与上面基本相同,只不过因为各zk server分布在不同的机器,上述配置文件中的localhost换成各服务器的真实Ip即可。分布在不同的机器后,不存在端口冲突问题,可以让每个服务器的zk均采用相同的端口,这样管理起来比较方便。

    1.4. 启动验证 

    /usr/zookeeper/zookeeper-1/bin/zkServer.sh start &

    /usr/zookeeper/zookeeper-3/bin/zkServer.sh start &

    /usr/zookeeper/zookeeper-3/bin/zkServer.sh start &

    注:&符号表示后台启动,启动后可以退出命令行窗口。

    启用成功后,输入 jps 看下进程

    2644 QuorumPeerMain

    2677 QuorumPeerMain

    2724 QuorumPeerMain

    应该至少能看到以上几个进程。

    查看zk状态命令:

    bin/zkServer.sh status

    分别查看zk状态,可以看到:

    ZooKeeper JMX enabled by default

    Using config: /usr/zookeeper/zookeeper-1/zookeeper-3.4.10/bin/../conf/zoo.cfg

    Mode: follower

    ZooKeeper JMX enabled by default

    Using config: /usr/zookeeper/zookeeper-2/zookeeper-3.4.10/bin/../conf/zoo.cfg

    Mode: leader

    ZooKeeper JMX enabled by default

    Using config: /usr/zookeeper/zookeeper-3/zookeeper-3.4.10/bin/../conf/zoo.cfg

    Mode: follower

    至此,zookeeper集群已经部署完成了。

    2. Kafka安装部署

    2.1. 创建目录、解压

    cd /usr/

    #创建项目目录

    mkdir kafka

    cd kafka

    mkdir tmp

    cd tmp

    #创建kafka消息目录,主要存放kafka消息

    mkdir  kafka-logs-1

    mkdir  kafka-logs-2

    mkdir  kafka-logs-3

    #将压缩包放到usr/kafka内,解压

    tar -zxvf kafka_2.10-0.10.1.0.tgz

    2.2. 修改配置文件

    进入到config目录

    cd /usr/kafka/kafka_2.10-0.10.1.0/config

    主要关注:server.properties 这个文件即可。将其拷贝三份到同级目录:

    config/server-1.properties

    config/server-3.properties

    config/server-2.properties

    以下为默认配置:

    # distributed under the License is distributed on an "AS IS" BASIS,

    # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.

    # See the License for the specific language governing permissions and

    # limitations under the License.

    # see kafka.server.KafkaConfig for additional details and defaults

    ############################# Server Basics #############################

    # The id of the broker. This must be set to a unique integer for each broker.

    broker.id=0

    # Switch to enable topic deletion or not, default value is false

    #delete.topic.enable=true

    ############################# Socket Server Settings #############################

    # The address the socket server listens on. It will get the value returned from

    # java.net.InetAddress.getCanonicalHostName() if not configured.

    #   FORMAT:

    #     listeners = security_protocol://host_name:port

    #   EXAMPLE:

    #     listeners = PLAINTEXT://your.host.name:9092

    #listeners=PLAINTEXT://:9092

    # Hostname and port the broker will advertise to producers and consumers. If not set,

    # it uses the value for "listeners" if configured.  Otherwise, it will use the value

    # returned from java.net.InetAddress.getCanonicalHostName().

    #advertised.listeners=PLAINTEXT://your.host.name:9092

    # The number of threads handling network requests

    num.network.threads=3

    # The number of threads doing disk I/O

    num.io.threads=8

    # The send buffer (SO_SNDBUF) used by the socket server

    socket.send.buffer.bytes=102400

    # The receive buffer (SO_RCVBUF) used by the socket server

    socket.receive.buffer.bytes=102400

    # The maximum size of a request that the socket server will accept (protection against OOM)

    socket.request.max.bytes=104857600

    ############################# Log Basics #############################

    # A comma seperated list of directories under which to store log files

    log.dirs=/tmp/kafka-logs

    # The default number of log partitions per topic. More partitions allow greater

    # parallelism for consumption, but this will also result in more files across

    # the brokers.

    num.partitions=1

    # The number of threads per data directory to be used for log recovery at startup and flushing at shutdown.

    # This value is recommended to be increased for installations with data dirs located in RAID array.

    num.recovery.threads.per.data.dir=1

    ############################# Log Flush Policy #############################

    # Messages are immediately written to the filesystem but by default we only fsync() to sync

    # the OS cache lazily. The following configurations control the flush of data to disk.

    # There are a few important trade-offs here:

    #    1. Durability: Unflushed data may be lost if you are not using replication.

    #    2. Latency: Very large flush intervals may lead to latency spikes when the flush does occur as there will be a lot of data to flush.

    #    3. Throughput: The flush is generally the most expensive operation, and a small flush interval may lead to exceessive seeks.

    # The settings below allow one to configure the flush policy to flush data after a period of time or

    # every N messages (or both). This can be done globally and overridden on a per-topic basis.

    # The number of messages to accept before forcing a flush of data to disk

    #log.flush.interval.messages=10000

    # The maximum amount of time a message can sit in a log before we force a flush

    #log.flush.interval.ms=1000

    ############################# Log Retention Policy #############################

    # The following configurations control the disposal of log segments. The policy can

    # be set to delete segments after a period of time, or after a given size has accumulated.

    # A segment will be deleted whenever *either* of these criteria are met. Deletion always happens

    # from the end of the log.

    # The minimum age of a log file to be eligible for deletion

    log.retention.hours=168

    # A size-based retention policy for logs. Segments are pruned from the log as long as the remaining

    # segments don't drop below log.retention.bytes.

    #log.retention.bytes=1073741824

    # The maximum size of a log segment file. When this size is reached a new log segment will be created.

    log.segment.bytes=1073741824

    # The interval at which log segments are checked to see if they can be deleted according

    # to the retention policies

    log.retention.check.interval.ms=300000

    ############################# Zookeeper #############################

    # Zookeeper connection string (see zookeeper docs for details).

    # This is a comma separated host:port pairs, each corresponding to a zk

    # server. e.g. "127.0.0.1:3000,127.0.0.1:3001,127.0.0.1:3002".

    # You can also append an optional chroot string to the urls to specify the

    # root directory for all kafka znodes.

    zookeeper.connect=localhost:2181

    # Timeout in ms for connecting to zookeeper

    zookeeper.connection.timeout.ms=6000

    需要修改的只有四处:

    broker.id=0

    #listeners=PLAINTEXT://:9092

    log.dirs=/tmp/kafka-logs

    zookeeper.connect=localhost:2181

    分别修改三个配置文件,修改上面四处为:

    config/server-1.properties

    broker.id=1

    listeners=PLAINTEXT://192.168.68.128:9092

    log.dirs=/usr/kafka/tmp/kafka-logs-1

    zookeeper.connect=192.168.68.128:2181,192.168.68.128:2182,192.168.68.128:2183

    config/server-2.properties

    broker.id=2

    listeners=PLAINTEXT://192.168.68.128:9092

    log.dirs=/usr/kafka/tmp/kafka-logs-2

    zookeeper.connect=192.168.68.128:2181,192.168.68.128:2182,192.168.68.128:2183

    config/server-3.properties

    broker.id=3

    listeners=PLAINTEXT://192.168.68.128:9092

    log.dirs=/usr/kafka/tmp/kafka-logs-3

    zookeeper.connect=192.168.68.128:2181,192.168.68.128:2182,192.168.68.128:2183

    注:红色部分为服务器的ip

    2.3. 启动验证

    进入kafka目录,后台启动kafka集群:

    bin/kafka-server-start.sh ./config/server-1.properties &

    bin/kafka-server-start.sh ./config/server-2.properties &

    bin/kafka-server-start.sh ./config/server-3.properties &

    执行命令jps验证是否启动:

    2820 QuorumPeerMain

    9366 Kafka

    9655 Kafka

    9924 Kafka

    2877 QuorumPeerMain

    2923 QuorumPeerMain

    10189 Jps

    至此,kafka集群已经部署完成了。

    3. Kafkajava开发环境搭建

    3.1. 导入jar

    解压kafka压缩包,进入kafka_2.10-0.10.1.0libs,拷贝一下jar包到java工程的lib目录下:

     

    3.2. Producer

    package com.pers.producer;

    import java.util.Properties;

    import java.util.concurrent.TimeUnit;

    import kafka.javaapi.producer.Producer;

    import kafka.producer.KeyedMessage;

    import kafka.producer.ProducerConfig;

    import kafka.serializer.StringEncoder;

    /**

    * @author liangyadong

    * @date 2017年5月26日 下午3:04:07

    * @version 1.0

    */

    public class KafkaProducer {

    private String topic;

    public KafkaProducer(String topic){

    super();

    this.topic = topic;

    }

    public void run(){

    Producer producer = createProducer();

    int i = 0;

    while(true){

    producer.send(new KeyedMessage<Integer, String>(topic, "message:" + i++));

    try{

    TimeUnit.SECONDS.sleep(1);

    } catch(InterruptedException e) {

    e.printStackTrace();

    }

    }

    }

    private Producer createProducer(){

    Properties properties = new Properties();

    properties.put("zookeeper.connect", "192.168.68.128:2181,192.168.68.128:2182,192.168.68.128:2183");// 声明zookeeper

    properties.put("serializer.class", StringEncoder.class.getName());

    properties.put("metadata.broker.list", "192.168.68.128:9092,192.168.68.128:9093,192.168.68.128:9094");// 声明kafka

    return new Producer<Integer,String>(new ProducerConfig(properties));

    }

    public static void main(String[] args) {

    new KafkaProducer("test111").run();// 创建主题,发送消息

    }

    }

    3.3. Consumer

    package com.pers.consumer;

    import java.util.HashMap;

    import java.util.List;

    import java.util.Map;

    import java.util.Properties;

    import kafka.consumer.Consumer;

    import kafka.consumer.ConsumerConfig;

    import kafka.consumer.ConsumerIterator;

    import kafka.consumer.KafkaStream;

    import kafka.javaapi.consumer.ConsumerConnector;

    /**

    * @author liangyadong

    * @date 2017年5月26日 下午4:01:37

    * @version 1.0

    */

    public class KafkaConsumer extends Thread{

    private String topic;

    public KafkaConsumer(String topic){

    super();

    this.topic = topic;

    }

    public void run() {    

            ConsumerConnector consumer = createConsumer();    

            Map<String, Integer> topicCountMap = new HashMap<String, Integer>();    

            topicCountMap.put(topic, 1); // 一次从主题中获取一个数据    

             Map<String, List<KafkaStream<byte[], byte[]>>>  messageStreams = consumer.createMessageStreams(topicCountMap);    

             KafkaStream<byte[], byte[]> stream = messageStreams.get(topic).get(0);// 获取每次接收到的这个数据    

             ConsumerIterator<byte[], byte[]> iterator =  stream.iterator();    

             while(iterator.hasNext()){    

                 String message = new String(iterator.next().message());    

                 System.out.println("接收到: " + message);    

             }    

        }   

    private ConsumerConnector createConsumer(){

    Properties properties = new Properties();

    properties.put("zookeeper.connect", "192.168.68.128:2181,192.168.68.128:2182,192.168.68.128:2183");// 声明zookeeper

    properties.put("group.id", "group5");// 必须要使用别的组名称, 如果生产者和消费者都在同一组,则不能访问同一组内的topic数据    

            return Consumer.createJavaConsumerConnector(new ConsumerConfig(properties));

    }

    public static void main(String[] args) {    

            new KafkaConsumer("test111").run();// 使用kafka集群中创建好的主题 test     

                

    }

    }

    3.4. 启动验证

    1、启动生产者

    运行KafkaProducer.java中的main方法。

    2、启动消费者

    运行KafkaConsumer.java中的main方法。

    控制台输出内容如下:

    接收到: message:1

    接收到: message:2

    接收到: message:3

    接收到: message:4

    接收到: message:5

    接收到: message:6

    ...

    至此,搭建完成。

    4. 常用命令

    4.1. Zookeeper

    4.1.1. 启动服务

    bin/kafka-server-start.sh ./config/server-1.properties &

    4.1.2. 关闭服务

    zkServer.sh stop

    4.2. Kafka

    4.2.1. 启动服务(先启动zookeeper

    bin/kafka-server-start.sh ./config/server-1.properties &

    4.2.2. 关闭服务(先关闭zookeeper,再关闭kafka

    kafka-server-stop.sh

    4.2.3. 查看当前主题列表

    ./kafka-topics.sh --zookeeper 192.168.68.128:2181 --list

    4.2.4. 创建主题(注意partitions分区数目)

    kafka-topics.sh --zookeeper 192.168.68.128:2181 --create --topic XXX --partitions 2 --replication-factor 1

    4.2.5. 删除主题

    kafka-topics.sh --zookeeper 192.168.68.128:2181 --delete --topic XXX

    4.2.6. 创建生产者

    kakfa-console-producer.sh --broker-list 192.168.68.128:9092 --topic XXX

    4.2.7. 创建消费者

    kafka-console-consumer.sh --zookeeper 192.168.68.128:2181 --topic XXX  [--from-beginning 添加改选项则重置offset从头开始接收,若不配置,从启动时开始接收]

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  • 原文地址:https://www.cnblogs.com/yadongliang/p/6913451.html
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