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使用下面的内容创建一个 docker-compose.yml
文件:
version: '2.1' services: mysql: image: debezium/example-mysql:1.1 ports: - "3306:3306" environment: - MYSQL_ROOT_PASSWORD=123456 - MYSQL_USER=mysqluser - MYSQL_PASSWORD=mysqlpw elasticsearch: image: elastic/elasticsearch:7.6.0 environment: - cluster.name=docker-cluster - bootstrap.memory_lock=true - "ES_JAVA_OPTS=-Xms512m -Xmx512m" - discovery.type=single-node ports: - "9200:9200" - "9300:9300" ulimits: memlock: soft: -1 hard: -1 nofile: soft: 65536 hard: 65536 kibana: image: elastic/kibana:7.6.0 ports: - "5601:5601"
该 Docker Compose 中包含的容器有:
MySQL: 商品表 products
和 订单表 orders
将存储在该数据库中, 这两张表进行关联,得到一张包含更多信息的订单表 enriched_orders
Elasticsearch: 最终的订单表 enriched_orders
将写到 Elasticsearch
Kibana: 用来可视化 ElasticSearch 的数据
在 docker-compose.yml
所在目录下执行下面的命令来启动本教程需要的组件:
docker-compose up -d
该命令将以 detached 模式自动启动 Docker Compose 配置中定义的所有容器。你可以通过 docker ps 来观察上述的容器是否正常启动了,也可以通过访问 http://localhost:5601/ 来查看 Kibana 是否运行正常。
进入 MySQL 容器
docker-compose exec mysql mysql -uroot -p123456
创建数据库和表 products
,orders
,并插入数据
-- MySQL CREATE DATABASE mydb; USE mydb; CREATE TABLE products ( id INTEGER NOT NULL AUTO_INCREMENT PRIMARY KEY, name VARCHAR(255) NOT NULL, description VARCHAR(512) ); ALTER TABLE products AUTO_INCREMENT = 101; INSERT INTO products VALUES (default,"scooter","Small 2-wheel scooter"), (default,"car battery","12V car battery"), (default,"12-pack drill bits","12-pack of drill bits with sizes ranging from #40 to #3"), (default,"hammer","12oz carpenter's hammer"), (default,"hammer","14oz carpenter's hammer"), (default,"hammer","16oz carpenter's hammer"), (default,"rocks","box of assorted rocks"), (default,"jacket","water resistent black wind breaker"), (default,"spare tire","24 inch spare tire"); CREATE TABLE orders ( order_id INTEGER NOT NULL AUTO_INCREMENT PRIMARY KEY, order_date DATETIME NOT NULL, customer_name VARCHAR(255) NOT NULL, price DECIMAL(10, 5) NOT NULL, product_id INTEGER NOT NULL, order_status BOOLEAN NOT NULL -- Whether order has been placed ) AUTO_INCREMENT = 10001; INSERT INTO orders VALUES (default, '2020-07-30 10:08:22', 'Jark', 50.50, 102, false), (default, '2020-07-30 10:11:09', 'Sally', 15.00, 105, false), (default, '2020-07-30 12:00:30', 'Edward', 25.25, 106, false);
启动 Flink 集群和 Flink SQL CLI
使用下面的命令跳转至 Flink 目录下
cd flink-1.13.2
使用下面的命令启动 Flink 集群
./bin/start-cluster.sh
启动成功的话,可以在 http://localhost:8081/ 访问到 Flink Web UI,如下所示:
使用下面的命令启动 Flink SQL CLI
./bin/sql-client.sh
启动成功后,可以看到如下的页面:
首先,开启 checkpoint,每隔3秒做一次 checkpoint
-- Flink SQL Flink SQL> SET execution.checkpointing.interval = 3s;
然后, 对于数据库中的表 products
, orders
, shipments
, 使用 Flink SQL CLI 创建对应的表,用于同步这些底层数据库表的数据
-- Flink SQL Flink SQL> CREATE TABLE products ( id INT, name STRING, description STRING, PRIMARY KEY (id) NOT ENFORCED ) WITH ( 'connector' = 'mysql-cdc', 'hostname' = 'localhost', 'port' = '3306', 'username' = 'root', 'password' = '123456', 'database-name' = 'mydb', 'table-name' = 'products' ); Flink SQL> CREATE TABLE orders ( order_id INT, order_date TIMESTAMP(0), customer_name STRING, price DECIMAL(10, 5), product_id INT, order_status BOOLEAN, PRIMARY KEY (order_id) NOT ENFORCED ) WITH ( 'connector' = 'mysql-cdc', 'hostname' = 'localhost', 'port' = '3306', 'username' = 'root', 'password' = '123456', 'database-name' = 'mydb', 'table-name' = 'orders' );
最后,创建 enriched_orders
表, 用来将关联后的订单数据写入 Elasticsearch 中
-- Flink SQL Flink SQL> CREATE TABLE enriched_orders ( order_id INT, order_date TIMESTAMP(0), customer_name STRING, price DECIMAL(10, 5), product_id INT, order_status BOOLEAN, product_name STRING, product_description STRING, PRIMARY KEY (order_id) NOT ENFORCED ) WITH ( 'connector' = 'elasticsearch-7', 'hosts' = 'http://localhost:9200', 'index' = 'enriched_orders' );
使用 Flink SQL 将订单表 order
与 商品表 products
关联,并将关联后的订单信息写入 Elasticsearch 中
-- Flink SQL Flink SQL> INSERT INTO enriched_orders SELECT o.*, p.name, p.description FROM orders AS o LEFT JOIN products AS p ON o.product_id = p.id;
现在,就可以在 Kibana 中看到包含商品和物流信息的订单数据。
首先访问 http://localhost:5601/app/kibana#/management/kibana/index_pattern 创建 index pattern enriched_orders
.
然后就可以在 http://localhost:5601/app/kibana#/discover 看到写入的数据了.
接下来,修改 MySQL 和 Postgres 数据库中表的数据,Kibana中显示的订单数据也将实时更新:
在 MySQL 的 orders
表中插入一条数据
--MySQL INSERT INTO orders VALUES (default, '2020-07-30 15:22:00', 'Jark', 29.71, 104, false);
在 MySQL 的 orders
表中更新订单的状态
--MySQL UPDATE orders SET order_status = true WHERE order_id = 10004;
在 MYSQL 的 orders
表中删除一条数据
--MySQL DELETE FROM orders WHERE order_id = 10004;
每执行一步就刷新一次 Kibana,可以看到 Kibana 中显示的订单数据将实时更新,如下所示:
本教程结束后,在 docker-compose.yml
文件所在的目录下执行如下命令停止所有容器:
docker-compose down
在 Flink 所在目录 flink-1.13.2
下执行如下命令停止 Flink 集群:
./bin/stop-cluster.sh
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