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  • Linux下kafka集群搭建过程记录

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    ------------------------正文开始---------------------------

    环境准备

    1. zookeeper集群环境
      kafka是依赖于zookeeper注册中心的一款分布式消息对列,所以需要有zookeeper单机或者集群环境。

    2. 三台服务器:

    172.16.18.198 k8s-n1
    172.16.18.199 k8s-n2
    172.16.18.200 k8s-n3
    1. 下载kafka安装包

    http://kafka.apache.org/downloads 中下载,目前最新版本的kafka已经到2.2.0,我这里之前下载的是kafka_2.11-2.2.0.tgz.

    安装kafka集群

    1.上传压缩包到三台服务器解压缩到/opt/目录下

    tar -zxvf kafka_2.11-2.2.0.tgz -C /opt/
    ls -s kafka_2.11-2.2.0 kafka
    

    2.修改 server.properties

    ############################# Server Basics #############################
    
    # The id of the broker. This must be set to a unique integer for each broker.
    broker.id=0
    
    ############################# 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 = listener_name://host_name:port
    #   EXAMPLE:
    #     listeners = PLAINTEXT://your.host.name:9092
    listeners=PLAINTEXT://k8s-n1:9092
    
    # 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://k8s-n1:9092
    
    # Maps listener names to security protocols, the default is for them to be the same. See the config documentation for more details
    #listener.security.protocol.map=PLAINTEXT:PLAINTEXT,SSL:SSL,SASL_PLAINTEXT:SASL_PLAINTEXT,SASL_SSL:SASL_SSL
    
    # The number of threads that the server uses for receiving requests from the network and sending responses to the network
    num.network.threads=3
    
    # The number of threads that the server uses for processing requests, which may include 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 separated list of directories under which to store log files
    log.dirs=/var/applog/kafka/
    
    # 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=5
    
    # 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
    
    ############################# Internal Topic Settings  #############################
    # The replication factor for the group metadata internal topics "__consumer_offsets" and "__transaction_state"
    # For anything other than development testing, a value greater than 1 is recommended for to ensure availability such as 3.
    offsets.topic.replication.factor=1
    transaction.state.log.replication.factor=1
    transaction.state.log.min.isr=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 excessive 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 due to age
    log.retention.hours=24
    
    # A size-based retention policy for logs. Segments are pruned from the log unless the remaining
    # segments drop below log.retention.bytes. Functions independently of log.retention.hours.
    #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=k8s-n1:2181,k8s-n2:2181,k8s-n3:2181
    
    # Timeout in ms for connecting to zookeeper
    zookeeper.connection.timeout.ms=6000
    
    
    ############################# Group Coordinator Settings #############################
    
    # The following configuration specifies the time, in milliseconds, that the GroupCoordinator will delay the initial consumer rebalance.
    # The rebalance will be further delayed by the value of group.initial.rebalance.delay.ms as new members join the group, up to a maximum of max.poll.interval.ms.
    # The default value for this is 3 seconds.
    # We override this to 0 here as it makes for a better out-of-the-box experience for development and testing.
    # However, in production environments the default value of 3 seconds is more suitable as this will help to avoid unnecessary, and potentially expensive, rebalances during application startup.
    group.initial.rebalance.delay.ms=0
    
    delete.topic.enable=true

    拷贝两份到k8s-n2,k8s-n3

    [root@k8s-n2 config]# cat server.properties 
    broker.id=1
    listeners=PLAINTEXT://k8s-n2:9092
    advertised.listeners=PLAINTEXT://k8s-n2:9092
    
    [root@k8s-n3 config]# cat server.properties
    broker.id=2
    listeners=PLAINTEXT://k8s-n3:9092
    advertised.listeners=PLAINTEXT://k8s-n3:9092
    1. 添加环境变量 在/etc/profile 中添加
    export ZOOKEEPER_HOME=/opt/kafka_2.11-2.2.0
    export PATH=$PATH:$ZOOKEEPER_HOME/bin

    source /etc/profile 重载生效

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

    Zookeeper+Kafka集群测试

    1.创建topic:

    kafka-topics.sh --create --zookeeper k8s-n1:2181, k8s-n2:2181, k8s-n3:2181 --replication-factor 3 --partitions 3 --topic test

    2.显示topic

    kafka-topics.sh --describe --zookeeper k8s-n1:2181, k8s-n2:2181, k8s-n3:2181 --topic test

    3.列出topic

    kafka-topics.sh --list --zookeeper k8s-n1:2181, k8s-n2:2181, k8s-n3:2181
    test

    创建 producer(生产者);

    kafka-console-producer.sh --broker-list k8s-n1:9092 --topic test
    hello

    创建 consumer(消费者)

    kafka-console-consumer.sh --bootstrap-server k8s-n1:9092 --topic test --from-beginning
    hello

    至此,kafka集群搭建就已经完成了。

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  • 原文地址:https://www.cnblogs.com/gxyandwmm/p/11294540.html
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