Canal Format
Changelog-Data-Capture Format Format: Serialization Schema Format: Deserialization Schema
Canal is a CDC (Changelog Data Capture) tool that can stream changes in real-time from MySQL into other systems. Canal provides a unified format schema for changelog and supports to serialize messages using JSON and protobuf (protobuf is the default format for Canal).
SeaTunnel supports to interpret Canal JSON messages as INSERT/UPDATE/DELETE messages into seatunnel system. This is useful in many cases to leverage this feature, such as
    synchronizing incremental data from databases to other systems
    auditing logs
    real-time materialized views on databases
    temporal join changing history of a database table and so on.
SeaTunnel also supports to encode the INSERT/UPDATE/DELETE messages in SeaTunnel as Canal JSON messages, and emit to storage like Kafka. However, currently SeaTunnel can’t combine UPDATE_BEFORE and UPDATE_AFTER into a single UPDATE message. Therefore, SeaTunnel encodes UPDATE_BEFORE and UPDATE_AFTER as DELETE and INSERT Canal messages.
Format Options
| option | default | required | Description | 
|---|---|---|---|
| format | (none) | yes | Specify what format to use, here should be 'canal_json'. | 
| canal_json.ignore-parse-errors | false | no | Skip fields and rows with parse errors instead of failing. Fields are set to null in case of errors. | 
| canal_json.database.include | (none) | no | An optional regular expression to only read the specific databases changelog rows by regular matching the "database" meta field in the Canal record. The pattern string is compatible with Java's Pattern. | 
| canal_json.table.include | (none) | no | An optional regular expression to only read the specific tables changelog rows by regular matching the "table" meta field in the Canal record. The pattern string is compatible with Java's Pattern. | 
How to use Canal format
Kafka uses example
Canal provides a unified format for changelog, here is a simple example for an update operation captured from a MySQL products table:
{
  "data": [
    {
      "id": "111",
      "name": "scooter",
      "description": "Big 2-wheel scooter",
      "weight": "5.18"
    }
  ],
  "database": "inventory",
  "es": 1589373560000,
  "id": 9,
  "isDdl": false,
  "mysqlType": {
    "id": "INTEGER",
    "name": "VARCHAR(255)",
    "description": "VARCHAR(512)",
    "weight": "FLOAT"
  },
  "old": [
    {
      "weight": "5.15"
    }
  ],
  "pkNames": [
    "id"
  ],
  "sql": "",
  "sqlType": {
    "id": 4,
    "name": 12,
    "description": 12,
    "weight": 7
  },
  "table": "products",
  "ts": 1589373560798,
  "type": "UPDATE"
}
Note: please refer to Canal documentation about the meaning of each fields.
The MySQL products table has 4 columns (id, name, description and weight). The above JSON message is an update change event on the products table where the weight value of the row with id = 111 is changed from 5.18 to 5.15. Assuming the messages have been synchronized to Kafka topic products_binlog, then we can use the following SeaTunnel to consume this topic and interpret the change events.
env {
    execution.parallelism = 1
    job.mode = "BATCH"
}
source {
  Kafka {
    bootstrap.servers = "kafkaCluster:9092"
    topic = "products_binlog"
    result_table_name = "kafka_name"
    start_mode = earliest
    schema = {
      fields {
           id = "int"
           name = "string"
           description = "string"
           weight = "string"
      }
    },
    format = canal_json
  }
}
transform {
}
sink {
  Kafka {
    bootstrap.servers = "localhost:9092"
    topic = "consume-binlog"
    format = canal_json
  }
}