本文将详细介绍Flink-CDC如何全量及增量采集Sqlserver数据源,准备适配Sqlserver数据源的小伙伴们可以参考本文,希望本文能给你带来一定的帮助。

一、Sqlserver的安装及开启事务日志

如果没有Sqlserver环境,但你又想学习这块的内容,那你只能自己动手通过docker安装一个 myself sqlserver来用作学习,当然,如果你有现成环境,那就检查一下Sqlserver是否开启了代理(sqlagent.enabled)服务和CDC功能。

1.1 docker拉取镜像

看Github上写Flink-CDC 目前支持的Sqlserver版本为2012, 2014, 2016, 2017, 2019,但我想全部拉到最新(事实证明,2022-latest 和latest是一样的,因为imagId都是一致的,且在后续测试也是没有问题的),所以我在docker上拉取镜像时,直接采用如下命令:

docker pull mcr.microsoft.com/mssql/server:latest

1.2 运行Sqlserver并设置代理

标准启动模式,没什么好说的,主要设置一下密码(密码要求比较严格,建议直接在网上搜个随机密码生成器来搞一下)。

docker run -e 'ACCEPT_EULA=Y' -e 'SA_PASSWORD=${your_password}' \

-p 1433:1433 --name sqlserver \

-d mcr.microsoft.com/mssql/server:latest

设置代理sqlagent.enabled,代理设置完成后,需要重启Sqlserver,因为我们是docker安装的,直接用docker restart sqlserver就行了。

[root@hdp-01 ~]# docker exec -it --user root sqlserver bash

root@0274812d0c10:/# /opt/mssql/bin/mssql-conf set sqlagent.enabled true

SQL Server needs to be restarted in order to apply this setting. Please run

'systemctl restart mssql-server.service'.

root@0274812d0c10:/# exit

exit

[root@hdp-01 ~]# docker restart sqlserver

sqlserver

1.3 启用CDC功能

按照如下步骤执行命令,如果看到is_cdc_enabled = 1,则说明当前数据库

root@0274812d0c10:/# /opt/mssql-tools/bin/sqlcmd -S localhost -U SA -P "${your_password}"

1> create databases test;

2> go

1> use test;

2> go

Changed database context to 'test'.

1> EXEC sys.sp_cdc_enable_db;

2> go

1> SELECT is_cdc_enabled FROM sys.databases WHERE name = 'test';

2> go

is_cdc_enabled

--------------

1

(1 rows affected)

1> CREATE TABLE t_info (id int,order_date date,purchaser int,quantity int,product_id int,PRIMARY KEY ([id]))

2> go

1>

2>

3> EXEC sys.sp_cdc_enable_table

4> @source_schema = 'dbo',

5> @source_name = 't_info',

6> @role_name = 'cdc_role';

7> go

Update mask evaluation will be disabled in net_changes_function because the CLR configuration option is disabled.

Job 'cdc.zeus_capture' started successfully.

Job 'cdc.zeus_cleanup' started successfully.

1> select * from t_info;

2> go

id order_date purchaser quantity product_id

----------- ---------------- ----------- ----------- -----------

(0 rows affected)

1.4 检查CDC是否正常开启

用客户端连接Sqlserver,查看test库下的INFORMATION_SCHEMA.TABLES中是否出现TABLE_SCHEMA = cdc的表,如果出现,说明已经成功安装Sqlserver并启用了CDC。

1> use test;

2> go

Changed database context to 'test'.

1> select * from INFORMATION_SCHEMA.TABLES;

2> go

TABLE_CATALOG TABLE_SCHEMA TABLE_NAME TABLE_TYPE

test dbo user_info BASE TABLE

test dbo systranschemas BASE TABLE

test cdc change_tables BASE TABLE

test cdc ddl_history BASE TABLE

test cdc lsn_time_mapping BASE TABLE

test cdc captured_columns BASE TABLE

test cdc index_columns BASE TABLE

test dbo orders BASE TABLE

test cdc dbo_orders_CT BASE TABLE

二、具体实现

2.1 Flik-CDC采集SqlServer主程序

添加依赖包:

com.ververica

flink-connector-sqlserver-cdc

3.0.0

编写主函数:

public static void main(String[] args) throws Exception {

StreamExecutionEnvironment env = StreamExecutionEnvironment.getExecutionEnvironment();

// 设置全局并行度

env.setParallelism(1);

// 设置时间语义为ProcessingTime

env.getConfig().setAutoWatermarkInterval(0);

// 每隔60s启动一个检查点

env.enableCheckpointing(60000, CheckpointingMode.EXACTLY_ONCE);

// checkpoint最小间隔

env.getCheckpointConfig().setMinPauseBetweenCheckpoints(1000);

// checkpoint超时时间

env.getCheckpointConfig().setCheckpointTimeout(60000);

// 同一时间只允许一个checkpoint

// env.getCheckpointConfig().setMaxConcurrentCheckpoints(1);

// Flink处理程序被cancel后,会保留Checkpoint数据

// env.getCheckpointConfig().setExternalizedCheckpointCleanup(CheckpointConfig.ExternalizedCheckpointCleanup.RETAIN_ON_CANCELLATION);

SourceFunction sqlServerSource = SqlServerSource.builder()

.hostname("localhost")

.port(1433)

.username("SA")

.password("")

.database("test")

.tableList("dbo.t_info")

.startupOptions(StartupOptions.initial())

.debeziumProperties(getDebeziumProperties())

.deserializer(new CustomerDeserializationSchemaSqlserver())

.build();

DataStreamSource dataStreamSource = env.addSource(sqlServerSource, "_transaction_log_source");

dataStreamSource.print().setParallelism(1);

env.execute("sqlserver-cdc-test");

}

public static Properties getDebeziumProperties() {

Properties properties = new Properties();

properties.put("converters", "sqlserverDebeziumConverter");

properties.put("sqlserverDebeziumConverter.type", "SqlserverDebeziumConverter");

properties.put("sqlserverDebeziumConverter.database.type", "sqlserver");

// 自定义格式,可选

properties.put("sqlserverDebeziumConverter.format.datetime", "yyyy-MM-dd HH:mm:ss");

properties.put("sqlserverDebeziumConverter.format.date", "yyyy-MM-dd");

properties.put("sqlserverDebeziumConverter.format.time", "HH:mm:ss");

return properties;

}

2.2 自定义Sqlserver反序列化格式:

Flink-CDC底层技术为debezium,它捕获到Sqlserver数据变更(CRUD)的数据格式如下:

#初始化

Struct{after=Struct{id=1,order_date=2024-01-30,purchaser=1,quantity=100,product_id=1},source=Struct{version=1.9.7.Final,connector=sqlserver,name=sqlserver_transaction_log_source,ts_ms=1706574924473,snapshot=true,db=zeus,schema=dbo,table=orders,commit_lsn=0000002b:00002280:0003},op=r,ts_ms=1706603724432}

#新增

Struct{after=Struct{id=12,order_date=2024-01-11,purchaser=6,quantity=233,product_id=63},source=Struct{version=1.9.7.Final,connector=sqlserver,name=sqlserver_transaction_log_source,ts_ms=1706603786187,db=zeus,schema=dbo,table=orders,change_lsn=0000002b:00002480:0002,commit_lsn=0000002b:00002480:0003,event_serial_no=1},op=c,ts_ms=1706603788461}

#更新

Struct{before=Struct{id=12,order_date=2024-01-11,purchaser=6,quantity=233,product_id=63},after=Struct{id=12,order_date=2024-01-11,purchaser=8,quantity=233,product_id=63},source=Struct{version=1.9.7.Final,connector=sqlserver,name=sqlserver_transaction_log_source,ts_ms=1706603845603,db=zeus,schema=dbo,table=orders,change_lsn=0000002b:00002500:0002,commit_lsn=0000002b:00002500:0003,event_serial_no=2},op=u,ts_ms=1706603850134}

#删除

Struct{before=Struct{id=11,order_date=2024-01-11,purchaser=6,quantity=233,product_id=63},source=Struct{version=1.9.7.Final,connector=sqlserver,name=sqlserver_transaction_log_source,ts_ms=1706603973023,db=zeus,schema=dbo,table=orders,change_lsn=0000002b:000025e8:0002,commit_lsn=0000002b:000025e8:0005,event_serial_no=1},op=d,ts_ms=1706603973859}

因此,可以根据自己需要自定义反序列化格式,将数据按照标准统一数据输出,下面是我自定义的格式,供大家参考:

import com.alibaba.fastjson2.JSON;

import com.alibaba.fastjson2.JSONObject;

import com.alibaba.fastjson2.JSONWriter;

import com.ververica.cdc.debezium.DebeziumDeserializationSchema;

import io.debezium.data.Envelope;

import org.apache.flink.api.common.typeinfo.BasicTypeInfo;

import org.apache.flink.api.common.typeinfo.TypeInformation;

import org.apache.flink.util.Collector;

import org.apache.kafka.connect.data.Field;

import org.apache.kafka.connect.data.Schema;

import org.apache.kafka.connect.data.Struct;

import org.apache.kafka.connect.source.SourceRecord;

import java.util.HashMap;

import java.util.Map;

public class CustomerDeserializationSchemaSqlserver implements DebeziumDeserializationSchema {

private static final long serialVersionUID = -1L;

@Override

public void deserialize(SourceRecord sourceRecord, Collector collector) {

Map resultMap = new HashMap<>();

String topic = sourceRecord.topic();

String[] split = topic.split("[.]");

String database = split[1];

String table = split[2];

resultMap.put("db", database);

resultMap.put("tableName", table);

//获取操作类型

Envelope.Operation operation = Envelope.operationFor(sourceRecord);

//获取数据本身

Struct struct = (Struct) sourceRecord.value();

Struct after = struct.getStruct("after");

Struct before = struct.getStruct("before");

String op = operation.name();

resultMap.put("op", op);

//新增,更新或者初始化

if (op.equals(Envelope.Operation.CREATE.name()) || op.equals(Envelope.Operation.READ.name()) || op.equals(Envelope.Operation.UPDATE.name())) {

JSONObject afterJson = new JSONObject();

if (after != null) {

Schema schema = after.schema();

for (Field field : schema.fields()) {

afterJson.put(field.name(), after.get(field.name()));

}

resultMap.put("after", afterJson);

}

}

if (op.equals(Envelope.Operation.DELETE.name())) {

JSONObject beforeJson = new JSONObject();

if (before != null) {

Schema schema = before.schema();

for (Field field : schema.fields()) {

beforeJson.put(field.name(), before.get(field.name()));

}

resultMap.put("before", beforeJson);

}

}

collector.collect(JSON.toJSONString(resultMap, JSONWriter.Feature.FieldBased, JSONWriter.Feature.LargeObject));

}

@Override

public TypeInformation getProducedType() {

return BasicTypeInfo.STRING_TYPE_INFO;

}

}

2.3 自定义日期格式转换器

debezium会将日期转为5位数字,日期时间转为13位的数字,因此我们需要根据Sqlserver的日期类型转换成标准的时期或者时间格式。Sqlserver的日期类型主要包含以下几种:

字段类型快照类型(jdbc type)cdc类型(jdbc type)DATEjava.sql.Date(91)java.sql.Date(91)TIMEjava.sql.Timestamp(92)java.sql.Time(92)DATETIMEjava.sql.Timestamp(93)java.sql.Timestamp(93)DATETIME2java.sql.Timestamp(93)java.sql.Timestamp(93)DATETIMEOFFSETmicrosoft.sql.DateTimeOffset(-155)microsoft.sql.DateTimeOffset(-155)SMALLDATETIMEjava.sql.Timestamp(93)java.sql.Timestamp(93)

import io.debezium.spi.converter.CustomConverter;

import io.debezium.spi.converter.RelationalColumn;

import org.apache.kafka.connect.data.SchemaBuilder;

import java.time.ZoneOffset;

import java.time.format.DateTimeFormatter;

import java.util.Properties;

@Sl4j

public class SqlserverDebeziumConverter implements CustomConverter {

private static final String DATE_FORMAT = "yyyy-MM-dd";

private static final String TIME_FORMAT = "HH:mm:ss";

private static final String DATETIME_FORMAT = "yyyy-MM-dd HH:mm:ss";

private DateTimeFormatter dateFormatter;

private DateTimeFormatter timeFormatter;

private DateTimeFormatter datetimeFormatter;

private SchemaBuilder schemaBuilder;

private String databaseType;

private String schemaNamePrefix;

@Override

public void configure(Properties properties) {

// 必填参数:database.type,只支持sqlserver

this.databaseType = properties.getProperty("database.type");

// 如果未设置,或者设置的不是mysql、sqlserver,则抛出异常。

if (this.databaseType == null || !this.databaseType.equals("sqlserver"))) {

throw new IllegalArgumentException("database.type 必须设置为'sqlserver'");

}

// 选填参数:format.date、format.time、format.datetime。获取时间格式化的格式

String dateFormat = properties.getProperty("format.date", DATE_FORMAT);

String timeFormat = properties.getProperty("format.time", TIME_FORMAT);

String datetimeFormat = properties.getProperty("format.datetime", DATETIME_FORMAT);

// 获取自身类的包名+数据库类型为默认schema.name

String className = this.getClass().getName();

// 查看是否设置schema.name.prefix

this.schemaNamePrefix = properties.getProperty("schema.name.prefix", className + "." + this.databaseType);

// 初始化时间格式化器

dateFormatter = DateTimeFormatter.ofPattern(dateFormat);

timeFormatter = DateTimeFormatter.ofPattern(timeFormat);

datetimeFormatter = DateTimeFormatter.ofPattern(datetimeFormat);

}

// sqlserver的转换器

public void registerSqlserverConverter(String columnType, ConverterRegistration converterRegistration) {

String schemaName = this.schemaNamePrefix + "." + columnType.toLowerCase();

schemaBuilder = SchemaBuilder.string().name(schemaName);

switch (columnType) {

case "DATE":

converterRegistration.register(schemaBuilder, value -> {

if (value == null) {

return null;

} else if (value instanceof java.sql.Date) {

return dateFormatter.format(((java.sql.Date) value).toLocalDate());

} else {

return this.failConvert(value, schemaName);

}

});

break;

case "TIME":

converterRegistration.register(schemaBuilder, value -> {

if (value == null) {

return null;

} else if (value instanceof java.sql.Time) {

return timeFormatter.format(((java.sql.Time) value).toLocalTime());

} else if (value instanceof java.sql.Timestamp) {

return timeFormatter.format(((java.sql.Timestamp) value).toLocalDateTime().toLocalTime());

} else {

return this.failConvert(value, schemaName);

}

});

break;

case "DATETIME":

case "DATETIME2":

case "SMALLDATETIME":

case "DATETIMEOFFSET":

converterRegistration.register(schemaBuilder, value -> {

if (value == null) {

return null;

} else if (value instanceof java.sql.Timestamp) {

return datetimeFormatter.format(((java.sql.Timestamp) value).toLocalDateTime());

} else if (value instanceof microsoft.sql.DateTimeOffset) {

microsoft.sql.DateTimeOffset dateTimeOffset = (microsoft.sql.DateTimeOffset) value;

return datetimeFormatter.format(

dateTimeOffset.getOffsetDateTime().withOffsetSameInstant(ZoneOffset.UTC).toLocalDateTime());

} else {

return this.failConvert(value, schemaName);

}

});

break;

default:

schemaBuilder = null;

break;

}

}

@Override

public void converterFor(RelationalColumn relationalColumn, ConverterRegistration converterRegistration) {

// 获取字段类型

String columnType = relationalColumn.typeName().toUpperCase();

// 根据数据库类型调用不同的转换器

if (this.databaseType.equals("sqlserver")) {

this.registerSqlserverConverter(columnType, converterRegistration);

} else {

log.warn("不支持的数据库类型: {}", this.databaseType);

schemaBuilder = null;

}

}

private String getClassName(Object value) {

if (value == null) {

return null;

}

return value.getClass().getName();

}

// 类型转换失败时的日志打印

private String failConvert(Object value, String type) {

String valueClass = this.getClassName(value);

String valueString = valueClass == null ? null : value.toString();

return valueString;

}

}

三、总计

目前Fink-CDC对这种增量采集传统数据库的技术已经封装的很好了,并且官方也给了详细的操作教程,但如果想要深入的学习一项技能,个人觉得还是要从头到尾操作一遍,一方面能够快速的提升自己,另一方面发现问题时,也能从不同的角度来思考解决方案,希望本篇文章能够给大家带来一点帮助。

参考文章

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