flink cdc sql 读mysql的binlog日志,实时同步到mysql开发模板
使用flink cdc前提条件:读取目标库的用户必须开启binlog权限
flink cdc 踩坑记录:4.0.0 org.example ysservice-flink pom 1.0-SNAPSHOT ysservice-flink-batch ysservice-flink-streaming ysservice-flink-warehouse ysservice-flink-datapush UTF-8 8 8 UTF-8 1.13.2 2.11 2.11 2.4.0-cdh6.3.1 3.0.0-cdh6.3.1 5.1.47 1.2.3 4.12 1.2.73 4.5.13 1.2.3 1.7.30 aliyun http://maven.aliyun.com/nexus/content/groups/public cloudera https://repository.cloudera.com/artifactory/cloudera-repos/ org.apache.flink flink-java ${flink.version} com.ververica flink-connector-mysql-cdc 2.0.0 org.apache.flink flink-connector-jdbc_2.11 ${flink.version} org.apache.flink flink-clients_2.11 ${flink.version} org.apache.flink flink-runtime-web_${scala.binary.version} ${flink.version} org.apache.flink flink-streaming-scala_${scala.binary.version} ${flink.version} org.apache.flink flink-connector-kafka_${scala.binary.version} ${flink.version} org.apache.hadoop hadoop-common ${hadoop.version} provided org.apache.hadoop hadoop-hdfs ${hadoop.version} provided org.apache.flink flink-queryable-state-client-java ${flink.version} org.apache.flink flink-statebackend-rocksdb_2.11 ${flink.version} provided org.apache.flink flink-state-processor-api_2.11 ${flink.version} provided org.apache.flink flink-parquet_2.11 ${flink.version} org.apache.flink flink-scala_${scala.binary.version} ${flink.version} ${scope.level} org.apache.flink flink-connector-redis_2.11 1.1.5 mysql mysql-connector-java ${mysql.version} org.apache.flink flink-table-planner-blink_${scala.binary.version} ${flink.version} provided org.apache.flink flink-csv ${flink.version} provided org.apache.flink flink-shaded-hadoop-3-uber 3.1.1.7.2.9.0-173-9.0 provided org.postgresql postgresql 42.2.5 com.google.code.gson gson 2.8.6 org.apache.maven.plugins maven-shade-plugin 2.4.3 package shade org.apache.flink:force-shading com.google.code.findbugs:jsr305 org.slf4j:* log4j:* org.apache.logging.log4j:* ch.qos.logback:* *:* meta-INF public class TestDemo { public static void main(String[] args) throws Exception { //创建执行环境 StreamExecutionEnvironment env = StreamExecutionEnvironment.getExecutionEnvironment(); //创建tableEnv StreamTableEnvironment tableEnv = StreamTableEnvironment.create(env); //开启Checkpoint env.enableCheckpointing(60*1000);//开启chechPoint,每60秒记录一次中间状态 env.getCheckpointConfig().setCheckpointTimeout(60*1000);//记录状态的超时时间为60秒 env.getCheckpointConfig().setTolerableCheckpointFailureNumber(10);//chechPoint最多失败次数,因为Flink CDC Connector 在初始的全量快照同步阶段,会屏蔽掉快照的执行 env.getCheckpointConfig().setCheckpointingMode(CheckpointingMode.EXACTLY_ONCE);//保存状态的类型的精准一次 env.setRestartStrategy(RestartStrategies.failureRateRestart(5, seconds(60), seconds(2)));//60秒内报错5次,终止程序,每次重启间隔2秒 env.getCheckpointConfig().enableExternalizedCheckpoints(CheckpointConfig.ExternalizedCheckpointCleanup.RETAIN_ON_CANCELLATION);//停止任务时,保留Checkpoint //创建flink cdc的输入表, datatime 的字段类型要改成 timestamp,否则会有时区问题 tableEnv.executeSql("CREATE TABLE Data_Input (" + " ID bigint," + //字段类型 " PROJECT_ID bigint," + //字段类型 " PROJECT_CODE STRING," + //字段类型 " PROJECT_NAME STRING," + //字段类型 " AMOUNT decimal(20,2)," + //字段类型 " ACTUAL_TYPE STRING," + //字段类型 " TYPE_NAME STRING," + //字段类型 " CREATED_AT timestamp," + //字段类型 " CREATED_MAN STRING," + //字段类型 " UPDATeD_AT timestamp," + //字段类型 " UPDATED_MAN STRING," + //字段类型 " PRIMARY KEY (`ID`) NOT ENFORCED " + //mysql表的主键,这个必须设置,否则不能无锁分布式读取和切块 ") WITH (" + " 'connector' = 'mysql-cdc'," + //connector类型:mysql-cdc " 'hostname' = '"+ SystemConstants.dataInput_hostname_test +"'," + //MySQL的hostname,此处用的配置文件获取 " 'port' = '3306'," + " 'username' = '"+ SystemConstants.dataInput_username_test +"'," + //MySQL的username,此处用的配置文件获取 " 'password' = '"+ SystemConstants.dataInput_password_test +"'," + //MySQL的password,此处用的配置文件获取 " 'database-name' = 'test'," + //要读取的库名 " 'table-name' = 'OUT_NORM_RULE_LIBRARY'," + //要读取的表名 //" 'scan.startup.mode' = 'latest-offset'," + " 'scan.incremental.snapshot.enabled' = 'true'" + //增量式快照启动,启用后可以无锁分布式读表,默认启用 ")"); //创建输出表 tableEnv.executeSql("CREATE TABLE Data_Output (" + " ID bigint," + " PROJECT_ID bigint," + " PROJECT_CODE STRING," + " PROJECT_NAME STRING," + " AMOUNT decimal(20,2)," + " ACTUAL_TYPE STRING," + " TYPE_NAME STRING," + " CREATED_AT timestamp," + " CREATED_MAN STRING," + " UPDATED_AT timestamp," + " UPDATED_MAN STRING," + " PRIMARY KEY (`ID`) NOT ENFORCED " + ") WITH (" + " 'connector' = 'jdbc'," + //输出表使用jdbc connector输出到mysql " 'url' = '"+ SystemConstants.dataOutput_url_datapush_out +"'," + " 'username' = '"+ SystemConstants.dataOutput_username_datapush_out +"'," + " 'password' = '"+ SystemConstants.dataOutput_password_datapush_out +"'," + " 'table-name' = 'OUT_NORM_RULE_LIBRARY2'" + ")"); //执行sql,执行sql时,flink会自动判断过来的数据是插入还是删除(updata会变成两条数据,先删除再插入),并且会自动判断主键是否已经存在,存在就upsert tableEnv.executeSql("INSERT INTO Data_Output (SELECT * FROM Data_Input)"); } }
以下总结都是基于flink 1.13.2 对应的 flink cdc 2.0的
- flink cdc 分两种api代码,一种是datastream api,一种是sql api,两种api有较大的差异,在这总结一下两种api的优劣势:
datastream api优势:可以读多库多表,代码灵活
劣势:只能单并行度读表,且mysql的datatime类型和timestamp的数据读出来有时区问题,而且程序启动时,需要reload锁表权限去做全量快照,会短暂的锁表,而且不能做Checkpoint
sql api 优势:可以多并行度的读表,且不需要锁表,定义数据类型时将datatime定义为timestamp类型,也能避免时区的问题,还能做Checkpoint
劣势:只能读取单表
2.datastream api作业在扫描 MySQL 全量数据时,checkpoint 超时,出现作业 failover
原因:Flink CDC 在 scan 全表数据,而在 scan 全表过程中是没有 offset 可以记录的(意味着没法做 checkpoint),但是 Flink 框架任何时候都会按照固定间隔时间做 checkpoint,所以此处 mysql-cdc source 做了比较取巧的方式,即在 scan 全表的过程中,会让执行中的 checkpoint 一直等待甚至超时。超时的 checkpoint 会被仍未认为是 failed checkpoint,默认配置下,这会触发 Flink 的 failover 机制,而默认的 failover 机制是不重启。所以会造成上面的现象
解决办法:配置 failed checkpoint 容忍次数,以及失败重启策略
3.datastream api执行时报锁权限问题
原因: 由于使用的 mysql 用户未授权 RELOAD 权限,导致无法获取全局读锁(FLUSH TABLES WITH READ LOCK), CDC source 就会退化成表级读锁,而使用表级读锁需要等到全表 scan 完,才能释放锁,所以会发现持锁时间过长的现象,影响其他业务写入数据。
解决方法:给使用的 MySQL 用户授予 RELOAD 权限即可
4.sql api 正常提交任务后,只读全量数据,不读增量数据
原因:sql api在分布式全量读表完成后需要做一次全量的checkpoint,因为checkpoint未开启,导致无法进行下一步读取增量数据
解决方法:开启checkpoint还有输入表和输出表的binlog权限
5.mysql的datatime和timestamp数据类型时区问题
在使用datastream api读出来的datatime类型数据,会将年月日的数据类型读成时间戳的类型,那是因为binlog在存储datatime数据类型时,就是用时间戳的形式存储的,且该时间搓有时区问题,和现实时间差8小时,timestamp类型的数据读出来虽然不是时间戳类型的,但是依然会有8小时的时区差异,所以在使用datastream api时需要手动进行时区转换(datastream api目前没有找到其他解决方案)
但使用sql api时,读取datatime类型的数据时,只需要将该字段类型定义为timestamp去读取,就能解决时区和时间戳的问题,timestamp类型的数据正常读取即可,但是在使用sql api写入mysql时,需要在输出库中配置一下时区为+8:00,避免写入时造成时区问题,否则时间会相差12-13小时
6.运行flink任务时,flink输出的日志为空
原因:log4j jar包冲突
解决方法:将项目的log4j依赖全部排除掉,因为flink有自带的log4j jar包,我们再上传log4j jar包很容易造成jar包冲突
7.idea本地依赖中的 flink-table-planner-blink依赖 和 flink集群上的 table api jar包冲突
在idea本地执行时需要将该jar包依赖放开,在打包到集群上运行时又需要将该依赖provided
org.apache.flink flink-table-planner-blink_${scala.binary.version} ${flink.version} provided



