Flink结合Kafka实时写入Iceberg实践笔记
前言
上文提到使用Flink SQL写入hadoop catalog 的iceberg table 的简单示例,这次我就flink 消费kafka 流式写入iceberg table做一个验证,现记录如下:
环境:本地测试环境 JDK1.8 、Flink 1.11.2 、Hadoop3.0.0 、Hive2.1.1
一、前置说明
本文记录了使用HDFS的一个路径作为iceberg 的结果表,使用Flink实时消费kafka中的数据并写入iceberg表,并且使用Hive作为客户端实时读取。
因为iceberg强大的读写分离特性,新写入的数据几乎可以实时读取。参考 数据湖技术Iceberg的探索与实践.pdf
二、使用步骤
1.创建Hadoop Catalog的Iceberg 表
代码如下(示例):
System.out.println("---> 1. create iceberg hadoop catalog table .... "); // create hadoop catalog tenv.executeSql("CREATE CATALOG hadoop_catalog WITH (\n" " 'type'='iceberg',\n" " 'catalog-type'='hadoop',\n" " 'warehouse'='hdfs://nameservice1/tmp',\n" " 'property-version'='1'\n" ")"); // change catalog tenv.useCatalog("hadoop_catalog"); tenv.executeSql("CREATE DATABASE if not exists iceberg_hadoop_db"); tenv.useDatabase("iceberg_hadoop_db"); // create iceberg result table tenv.executeSql("drop table hadoop_catalog.iceberg_hadoop_db.iceberg_002"); tenv.executeSql("CREATE TABLE hadoop_catalog.iceberg_hadoop_db.iceberg_002 (\n" " user_id STRING COMMENT 'user_id',\n" " order_amount DOUBLE COMMENT 'order_amount',\n" " log_ts STRING\n" ")");
2.使用Hive Catalog创建Kafka流表
代码如下(示例):
System.out.println("---> 2. create kafka Stream table .... "); String HIVE_CATALOG = "myhive"; String DEFAULT_DATABASE = "tmp"; String HIVE_CONF_DIR = "/xx/resources"; Catalog catalog = new HiveCatalog(HIVE_CATALOG, DEFAULT_DATABASE, HIVE_CONF_DIR); tenv.registerCatalog(HIVE_CATALOG, catalog); tenv.useCatalog("myhive"); // create kafka stream table tenv.executeSql("DROP TABLE IF EXISTS ods_k_2_iceberg"); tenv.executeSql( "CREATE TABLE ods_k_2_iceberg (\n" " user_id STRING,\n" " order_amount DOUBLE,\n" " log_ts TIMESTAMP(3),\n" " WATERMARK FOR log_ts AS log_ts - INTERVAL '5' SECOND\n" ") WITH (\n" " 'connector'='kafka',\n" " 'topic'='t_kafka_03',\n" " 'scan.startup.mode'='latest-offset',\n" " 'properties.bootstrap.servers'='xx:9092',\n" " 'properties.group.id' = 'testGroup_01',\n" " 'format'='json'\n" ")");
3. 使用SQL连接kafka流表和iceberg 目标表
代码如下(示例):
System.out.println("---> 3. insert into iceberg table from kafka stream table .... "); tenv.executeSql( "INSERT INTO hadoop_catalog.iceberg_hadoop_db.iceberg_002 " " SELECT user_id, order_amount, DATE_FORMAT(log_ts, 'yyyy-MM-dd') FROM myhive.tmp.ods_k_2_iceberg");
4. 数据验证
bin/kafka-console-producer.sh --broker-list xx:9092 --topic t_kafka_03{"user_id":"a1111","order_amount":11.0,"log_ts":"2020-06-29 12:12:12"}{"user_id":"a1111","order_amount":11.0,"log_ts":"2020-06-29 12:15:00"}{"user_id":"a1111","order_amount":11.0,"log_ts":"2020-06-29 12:20:00"}{"user_id":"a1111","order_amount":11.0,"log_ts":"2020-06-29 12:30:00"}{"user_id":"a1111","order_amount":13.0,"log_ts":"2020-06-29 12:32:00"}{"user_id":"a1112","order_amount":15.0,"log_ts":"2020-11-26 12:12:12"}hive> add jar /home/zmbigdata/iceberg-hive-runtime-0.10.0.jar;hive> CREATE EXTERNAL TABLE tmp.iceberg_002(user_id STRING,order_amount DOUBLE,log_ts STRING)STORED BY 'org.apache.iceberg.mr.hive.HiveIcebergStorageHandler' LOCATION '/tmp/iceberg_hadoop_db/iceberg_002'; hive> select * from tmp.iceberg_002 limit 5;a111111.02020-06-29a111111.02020-06-29a111111.02020-06-29a111111.02020-06-29a111113.02020-06-29Time taken: 0.108 seconds, Fetched: 5 row(s)
总结
本文仅仅简单介绍了使用Flink Table API 消费kafka并实时写入基于HDFS Hadoop Catalog的iceberg 结果表中,初步验证了该方案的可行性,当然鉴于该示例比较单一未经过线上验证,所以仅供参考。
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