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  • Debezium SQL Server Source Connector+Kafka+Spark+MySQL 实时数据处理

    写在前面

    前段时间在实时获取SQLServer数据库变化时候,整个过程可谓是坎坷。然后就想在这里记录一下。

    本文的技术栈: Debezium SQL Server Source Connector+Kafka+Spark+MySQL

    ps:后面应该会将数据放到Kudu上。

    然后主要记录一下,整个组件使用和组件对接过程中一些注意点和坑。

    开始吧

    在处理实时数据时,需要即时地获得数据库表中数据的变化,然后将数据变化发送到Kafka中。不同的数据库有不同的组件进行处理。

    常见的MySQL数据库,就有比较多的支持 canalmaxwell等,他们都是类似 MySQL binlog 增量订阅&消费组件这种模式 。那么关于微软的SQLServer数据库,好像整个开源社区 支持就没有那么好了。

    1.选择Connector

    Debezium的SQL Server连接器是一种源连接器,可以获取SQL Server数据库中现有数据的快照,然后监视和记录对该数据的所有后续行级更改。每个表的所有事件都记录在单独的Kafka Topic中,应用程序和服务可以轻松使用它们。然后本连接器也是基于MSSQL的change data capture实现。

    2.安装Connector

    我参照官方文档安装是没有问题的。

    2.1 Installing Confluent Hub Client

    Confluent Hub客户端本地安装为Confluent Platform的一部分,位于/ bin目录中。
    Linux
    Download and unzip the Confluent Hub tarball.

    [root@hadoop001 softs]# ll confluent-hub-client-latest.tar 
    -rw-r--r--. 1 root root 6909785 9月  24 10:02 confluent-hub-client-latest.tar
    [root@hadoop001 softs]# tar confluent-hub-client-latest.tar -C ../app/conn/
    [root@hadoop001 softs]# ll ../app/conn/
    总用量 6748
    drwxr-xr-x. 2 root root      27 9月  24 10:43 bin
    -rw-r--r--. 1 root root 6909785 9月  24 10:02 confluent-hub-client-latest.tar
    drwxr-xr-x. 3 root root      34 9月  24 10:05 etc
    drwxr-xr-x. 2 root root       6 9月  24 10:08 kafka-mssql
    drwxr-xr-x. 4 root root      29 9月  24 10:05 share
    [root@hadoop001 softs]#
    

    配置bin目录到系统环境变量中

    export CONN_HOME=/root/app/conn
    export PATH=$CONN_HOME/bin:$PATH
    

    确认是否安装成功

    [root@hadoop001 ~]# source /etc/profile
    [root@hadoop001 ~]# confluent-hub
    usage: confluent-hub <command> [ <args> ]
    
    Commands are:
        help      Display help information
        install   install a component from either Confluent Hub or from a local file
    
    See 'confluent-hub help <command>' for more information on a specific command.
    [root@hadoop001 ~]# 
    

    2.2 Install the SQL Server Connector
    使用命令confluent-hub

    [root@hadoop001 ~]# confluent-hub install debezium/debezium-connector-sqlserver:0.9.4
    The component can be installed in any of the following Confluent Platform installations: 
      1. / (installed rpm/deb package) 
      2. /root/app/conn (where this tool is installed) 
    Choose one of these to continue the installation (1-2): 2
    Do you want to install this into /root/app/conn/share/confluent-hub-components? (yN) n
    
    Specify installation directory: /root/app/conn/share/java/confluent-hub-client
     
    Component's license: 
    Apache 2.0 
    https://github.com/debezium/debezium/blob/master/LICENSE.txt 
    I agree to the software license agreement (yN) y
    
    You are about to install 'debezium-connector-sqlserver' from Debezium Community, as published on Confluent Hub. 
    Do you want to continue? (yN) y
    

    注意:Specify installation directory:这个安装目录最好是你刚才的confluent-hub 目录下的 /share/java/confluent-hub-client 这个目录下。其余的基本操作就好。

    3.配置Connector

    首先需要对Connector进行配置,配置文件位于 $KAFKA_HOME/config/connect-distributed.properties:

    # These are defaults. This file just demonstrates how to override some settings.
    # kafka集群地址,我这里是单节点多Broker模式
    bootstrap.servers=haoop001:9093,hadoop001:9094,hadoop001:9095
    
    # Connector集群的名称,同一集群内的Connector需要保持此group.id一致
    group.id=connect-cluster
    
    # The converters specify the format of data in Kafka and how to translate it into Connect data. Every Connect user will
    # need to configure these based on the format they want their data in when loaded from or stored into Kafka
    # 存储到kafka的数据格式
    key.converter=org.apache.kafka.connect.json.JsonConverter
    value.converter.schemas.enable=false
    
    # The internal converter used for offsets and config data is configurable and must be specified, but most users will
    # 内部转换器的格式,针对offsets、config和status,一般不需要修改
    internal.key.converter=org.apache.kafka.connect.json.JsonConverter
    internal.value.converter=org.apache.kafka.connect.json.JsonConverter
    internal.key.converter.schemas.enable=false
    internal.value.converter.schemas.enable=false
    
    # Topic to use for storing offsets. This topic should have many partitions and be replicated.
    # 用于保存offsets的topic,应该有多个partitions,并且拥有副本(replication),主要根据你的集群实际情况来
    # Kafka Connect会自动创建这个topic,但是你可以根据需要自行创建
    offset.storage.topic=connect-offsets-2
    offset.storage.replication.factor=3
    offset.storage.partitions=1
    
    # 保存connector和task的配置,应该只有1个partition,并且有3个副本
    config.storage.topic=connect-configs-2
    config.storage.replication.factor=3
    
    
    # 用于保存状态,可以拥有多个partition和replication
    # Topic to use for storing statuses. This topic can have multiple partitions and should be replicated.
    status.storage.topic=connect-status-2
    status.storage.replication.factor=3
    status.storage.partitions=1
    
    
    offset.storage.file.filename=/root/data/kafka-logs/offset-storage-file
    
    # Flush much faster than normal, which is useful for testing/debugging
    offset.flush.interval.ms=10000
    
    
    # REST端口号
    rest.port=18083
    
    # 保存connectors的路径
    #plugin.path=/root/app/kafka_2.11-0.10.1.1/connectors
    plugin.path=/root/app/conn/share/java/confluent-hub-client
    

    4.创建kafka Topic

    我这里是单节点多Broker模式的Kafka,那么创建Topic可以如下:

    kafka-topics.sh --zookeeper hadoop001:2181 --create --topic connect-offsets-2 --replication-factor 3 --partitions 1
    
    kafka-topics.sh --zookeeper hadoop001:2181 --create --topic connect-configs-2 --replication-factor 3 --partitions 1
    
    kafka-topics.sh --zookeeper hadoop001:2181 --create --topic connect-status-2 --replication-factor 3 --partitions 1
    

    查看状态 <很重要>

    [root@hadoop001 ~]# kafka-topics.sh --describe --zookeeper hadoop001:2181 --topic connect-offsets-2
    Topic:connect-offsets-2	PartitionCount:1	ReplicationFactor:3	Configs:
    	Topic: connect-offsets-2	Partition: 0	Leader: 3	Replicas: 3,1,2	Isr: 3,1,2
    
    [root@hadoop001 ~]# kafka-topics.sh --describe --zookeeper hadoop001:2181 --topic connect-configs-2
    Topic:connect-configs-2	PartitionCount:1	ReplicationFactor:3	Configs:
    	Topic: connect-configs-2	Partition: 0	Leader: 1	Replicas: 1,2,3	Isr: 1,2,3
    
    [root@hadoop001 ~]# kafka-topics.sh --describe --zookeeper hadoop001:2181 --topic connect-status-2
    Topic:connect-status-2	PartitionCount:1	ReplicationFactor:3	Configs:
    	Topic: connect-status-2	Partition: 0	Leader: 3	Replicas: 3,1,2	Isr: 3,1,2
    [root@hadoop001 ~]#
    

    5.开启SqlServer Change Data Capture(CDC)更改数据捕获

    变更数据捕获用于捕获应用到 SQL Server 表中的插入、更新和删除活动,并以易于使用的关系格式提供这些变更的详细信息。变更数据捕获所使用的更改表中包含镜像所跟踪源表列结构的列,同时还包含了解所发生的变更所需的元数据。变更数据捕获提供有关对表和数据库所做的 DML 更改的信息。通过使用变更数据捕获,您无需使用费用高昂的方法,如用户触发器、时间戳列和联接查询等。

    数据变更历史表会随着业务的持续,变得很大,所以默认情况下,变更数据历史会在本地数据库保留3天(可以通过视图msdb.dbo.cdc_jobs的字段retention来查询,当然也可以更改对应的表来修改保留时间),每天会通过SqlServer后台代理任务,每天晚上2点定时删除。所以推荐定期的将变更数据转移到数据仓库中。

    以下命令基本就够用了

    --查看数据库是否起用CDC
      GO
      SELECT [name], database_id, is_cdc_enabled
      FROM sys.databases      
      GO
    	
    --数据库起用CDC
     USE test1
     GO
     EXEC sys.sp_cdc_enable_db
     GO
     
    --关闭数据库CDC
     USE test1
     go
     exec sys.sp_cdc_disable_db
     go
     
    --查看表是否启用CDC
    USE test1
    GO
    SELECT [name], is_tracked_by_cdc 
    FROM sys.tables
    GO
    --启用表的CDC,前提是数据库启用 
    USE Demo01
    GO
    EXEC sys.sp_cdc_enable_table
    @source_schema = 'dbo',
    @source_name   = 'user',
    @capture_instance='user',
    @role_name     = NULL
    GO
    
    --关闭表上的CDC功能
    USE test1
    GO
    EXEC sys.sp_cdc_disable_table
    @source_schema = 'dbo',
    @source_name   = 'user',
    @capture_instance='user'
    GO
     
    --可能不记得或者不知道开启了什么表的捕获,返回所有表的变更捕获配置信息
    
    EXECUTE sys.sp_cdc_help_change_data_capture;
    GO
    
    --查看对某个实例(即表)的哪些列做了捕获监控:
    
    EXEC sys.sp_cdc_get_captured_columns
    @capture_instance = 'user'
     
     
     --查找配置信息 -retention 变更数据保留的分钟数
    SELECT * FROM test1.dbo.cdc_jobs
    
    --更改数据保留时间为分钟
    EXECUTE sys.sp_cdc_change_job
    @job_type = N'cleanup',
    @retention=1440
    GO
    
    --停止捕获作业
    exec sys.sp_cdc_stop_job N'capture'
    go
    --启动捕获作业
    exec sys.sp_cdc_start_job N'capture'
    go
     
    
    

    6.运行Connector

    怎么运行呢?参照

    [root@hadoop001 bin]# pwd
    /root/app/kafka_2.11-1.1.1/bin
    [root@hadoop001 bin]# ./connect-distributed.sh 
    USAGE: ./connect-distributed.sh [-daemon] connect-distributed.properties
    [root@hadoop001 bin]#
    [root@hadoop001 bin]# ./connect-distributed.sh ../config/connect-distributed.properties
    
    ... 这里就会有大量日志输出
    

    验证:

    [root@hadoop001 ~]# netstat -tanp |grep 18083
    tcp6       0      0 :::18083                :::*                    LISTEN      29436/java          
    [root@hadoop001 ~]#
    

    6.1 获取Worker的信息

    ps:可能你需要安装jq这个软件: yum -y install jq ,当然可以在浏览器上打开

    [root@hadoop001 ~]# curl -s hadoop001:18083 | jq
    {
      "version": "1.1.1",
      "commit": "8e07427ffb493498",
      "kafka_cluster_id": "dmUSlNNLQ9OyJiK-bUc6Tw"
    }
    [root@hadoop001 ~]#
    

    6.2 获取Worker上已经安装的Connector

    [root@hadoop001 ~]# curl -s hadoop001:18083/connector-plugins | jq
    [
      {
        "class": "io.debezium.connector.sqlserver.SqlServerConnector",
        "type": "source",
        "version": "0.9.5.Final"
      },
      {
        "class": "org.apache.kafka.connect.file.FileStreamSinkConnector",
        "type": "sink",
        "version": "1.1.1"
      },
      {
        "class": "org.apache.kafka.connect.file.FileStreamSourceConnector",
        "type": "source",
        "version": "1.1.1"
      }
    ]
    [root@hadoop001 ~]# 
    
    

    可以看见io.debezium.connector.sqlserver.SqlServerConnector 这个是我们自己刚才安装的连接器

    6.3 列出当前运行的connector(task)

    [root@hadoop001 ~]#  curl -s hadoop001:18083/connectors | jq
    []
    [root@hadoop001 ~]# 
    

    6.4 提交Connector用户配置 《重点》

    当提交用户配置时,就会启动一个Connector Task,
    Connector Task执行实际的作业。
    用户配置是一个Json文件,同样通过REST API提交:

    curl -s -X POST -H "Content-Type: application/json" --data '{
     "name": "connector-mssql-online-1",
     "config": {
         "connector.class" : "io.debezium.connector.sqlserver.SqlServerConnector",
         "tasks.max" : "1",
         "database.server.name" : "test1",
         "database.hostname" : "hadoop001",
         "database.port" : "1433",
         "database.user" : "sa",
         "database.password" : "xxx",
         "database.dbname" : "test1",
         "database.history.kafka.bootstrap.servers" : "hadoop001:9093",
         "database.history.kafka.topic": "test1.t201909262.bak"
         }
    }' http://hadoop001:18083/connectors
    

    马上查看connector当前状态,确保状态是RUNNING

    [root@hadoop001 ~]# curl -s hadoop001:18083/connectors/connector-mssql-online-1/status | jq
    {
      "name": "connector-mssql-online-1",
      "connector": {
        "state": "RUNNING",
        "worker_id": "xxx:18083"
      },
      "tasks": [
        {
          "state": "RUNNING",
          "id": 0,
          "worker_id": "xxx:18083"
        }
      ],
      "type": "source"
    }
    [root@hadoop001 ~]# 
    
    

    此时查看Kafka Topic

    [root@hadoop001 ~]#  kafka-topics.sh --list --zookeeper hadoop001:2181
    __consumer_offsets
    connect-configs-2
    connect-offsets-2
    connect-status-2
    #自动生成的Topic, 记录表结构的变化,生成规则:你的connect中自定义的
    test1.t201909262.bak
    
    [root@hadoop001 ~]# 
    
    

    再次列出运行的connector(task)

    [root@hadoop001 ~]#  curl -s hadoop001:18083/connectors | jq
    [
      "connector-mssql-online-1"
    ]
    [root@hadoop001 ~]# 
    

    6.5 查看connector的信息

    [root@hadoop001 ~]# curl -s hadoop001:18083/connectors/connector-mssql-online-1 | jq
    {
      "name": "connector-mssql-online-1",
      "config": {
        "connector.class": "io.debezium.connector.sqlserver.SqlServerConnector",
        "database.user": "sa",
        "database.dbname": "test1",
        "tasks.max": "1",
        "database.hostname": "hadoop001",
        "database.password": "xxx",
        "database.history.kafka.bootstrap.servers": "hadoop001:9093",
        "database.history.kafka.topic": "test1.t201909262.bak",
        "name": "connector-mssql-online-1",
        "database.server.name": "test1",
        "database.port": "1433"
      },
      "tasks": [
        {
          "connector": "connector-mssql-online-1",
          "task": 0
        }
      ],
      "type": "source"
    }
    [root@hadoop001 ~]#
    

    6.6 查看connector下运行的task信息

    [root@hadoop001 ~]# curl -s hadoop001:18083/connectors/connector-mssql-online-1/tasks | jq
    [
      {
        "id": {
          "connector": "connector-mssql-online-1",
          "task": 0
        },
        "config": {
          "connector.class": "io.debezium.connector.sqlserver.SqlServerConnector",
          "database.user": "sa",
          "database.dbname": "test1",
          "task.class": "io.debezium.connector.sqlserver.SqlServerConnectorTask",
          "tasks.max": "1",
          "database.hostname": "hadoop001",
          "database.password": "xxx",
          "database.history.kafka.bootstrap.servers": "hadoop001:9093",
          "database.history.kafka.topic": "test1.t201909262.bak",
          "name": "connector-mssql-online-1",
          "database.server.name": "test1",
          "database.port": "1433"
        }
      }
    ]
    [root@hadoop001 ~]#
    

    task的配置信息继承自connector的配置

    6.7 暂停/重启/删除 Connector

    # curl -s -X PUT hadoop001:18083/connectors/connector-mssql-online-1/pause
    # curl -s -X PUT hadoop001:18083/connectors/connector-mssql-online-1/resume
    # curl -s -X DELETE hadoop001:18083/connectors/connector-mssql-online-1
    

    7.从Kafka中读取变动数据

    # 记录表结构的变化,生成规则:你的connect中自定义的
    kafka-console-consumer.sh --bootstrap-server hadoop001:9093 --topic test1.t201909262.bak --from-beginning
    
    
    # 记录数据的变化,生成规则:test1.dbo.t201909262
    
    kafka-console-consumer.sh --bootstrap-server hadoop001:9093 --topic test1.dbo.t201909262 --from-beginning
    
    

    这里就是:

    kafka-console-consumer.sh --bootstrap-server hadoop001:9093 --topic test1.dbo.t201909262 --from-beginning
    
    kafka-console-consumer.sh --bootstrap-server hadoop001:9093 --topic test1.dbo.t201909262
    

    8. 对表进行 DML语句 操作

    新增数据:
    然后kafka控制台也就会马上打出日志
    在这里插入图片描述
    spark 对接kafka 10s一个批次
    在这里插入图片描述
    然后就会将这个新增的数据插入到MySQL中去
    具体的处理逻辑后面再花时间来记录一下

    修改和删除也是OK的,就不演示了

    有任何问题,欢迎留言一起交流~~

    更多好文:https://blog.csdn.net/liuge36

    参考文章:
    https://docs.confluent.io/current/connect/debezium-connect-sqlserver/index.html#sqlserver-source-connector
    https://docs.microsoft.com/en-us/sql/relational-databases/track-changes/track-data-changes-sql-server?view=sql-server-2017
    https://blog.csdn.net/qq_19518987/article/details/89329464
    http://www.tracefact.net/tech/087.html

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  • 原文地址:https://www.cnblogs.com/liuge36/p/11606797.html
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