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I want to make real-time data pipeline in Apache Kafka. I have database which is located at remote location and that database continuously updating. Can anybody which Kafka connect API i should use to pull the data from database and ingest into Kafka broker in real time? later on i would use kafka stream and KSQL to run ad-hoc queries to perform the metrics.

Any help would be highly appreciated!

Giorgos Myrianthous
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DP0808
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  • Sorry, but "database" is far too vague. Can you clarify? Which Kafka Connects have you found and tried? What errors do you get when trying to run them? – OneCricketeer Aug 28 '18 at 01:01
  • If your data base is a relational database of hdfs you can make use of confluents bundled connectors. https://docs.confluent.io/current/connect/connectors.html If you have some other database you need to develop your own kafka connect plugin: https://docs.confluent.io/current/connect/devguide.html – Akhil Bojedla Aug 28 '18 at 04:59
  • I have MYSQL database which is at remote location i have ip, host id etc. I don't understand which connector i should use to pull the data from mysql to kafka and database is continuously updating. I am trying to make real time data pipeline. – DP0808 Aug 28 '18 at 15:53

2 Answers2

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If you want to create a real-time data pipeline you need to use a Change Data Capture (CDC) tool which is able to stream changes from MySQL. I would suggest Debezium which is an open source distributed platform for change data capture.

Capturing Inserts

When a new record is added to a table, a JSON similar to the one below will be produced:

{  
   "payload":{  
      "before":null,
      "after":{  
         "id":1005,
         "first_name":"Giorgos",
         "last_name":"Myrianthous",
         "email":"giorgos@abc.com"
      },
      "source":{  
         "name":"dbserver1",
         "server_id":223344,
         "ts_sec":1500369632,
         "gtid":null,
         "file":"mysql-bin.000003",
         "pos":364,
         "row":0,
         "snapshot":null,
         "thread":13,
         "db":"inventory",
         "table":"customers"
      },
      "op":"c",
      "ts_ms":1500369632095
   }
}

before object is null and after object contains the newly inserted values. Note that the op attribute is c, indicating that this was a CREATE event.

Capturing Updates

Assuming that email attribute has been updated, a JSON similar to the one below will be produced:

{ 
    "payload":{  
      "before":{  
         "id":1005,
         "first_name":"Giorgos",
         "last_name":"Myrianthous",
         "email":"giorgos@abc.com"
      },
      "after":{  
         "id":1005,
         "first_name":"Giorgos",
         "last_name":"Myrianthous",
         "email":"newEmail@abc.com"
      },
      "source":{  
         "name":"dbserver1",
         "server_id":223344,
         "ts_sec":1500369929,
         "gtid":null,
         "file":"mysql-bin.000003",
         "pos":673,
         "row":0,
         "snapshot":null,
         "thread":13,
         "db":"inventory",
         "table":"customers"
      },
      "op":"u",
      "ts_ms":1500369929464
   }
}

Notice op which is now u, indicating that this was an UPDATE event. before object shows the row state before the update and after object captures the current state of the updated row.

Capturing deletes

Now assume that the row has been deleted;

{ 
    "payload":{  
      "before":{  
         "id":1005,
         "first_name":"Giorgos",
         "last_name":"Myrianthous",
         "email":"newEmail@abc.com"
      },
      "after":null,
      "source":{  
         "name":"dbserver1",
         "server_id":223344,
         "ts_sec":1500370394,
         "gtid":null,
         "file":"mysql-bin.000003",
         "pos":1025,
         "row":0,
         "snapshot":null,
         "thread":13,
         "db":"inventory",
         "table":"customers"
      },
      "op":"d",
      "ts_ms":1500370394589
   }
}

op new is equal to d, indicating a DELETE event. after attribute will be null and before object contains the row before it gets deleted.

You can also have a look at the extensive tutorial provided in their website.

EDIT: Example configuration for a MySQL database

{
  "name": "inventory-connector",  (1)
  "config": {
    "connector.class": "io.debezium.connector.mysql.MySqlConnector", (2)
    "database.hostname": "192.168.99.100", (3)
    "database.port": "3306", (4)
    "database.user": "debezium", (5)
    "database.password": "dbz", (6)
    "database.server.id": "184054", (7)
    "database.server.name": "fullfillment", (8)
    "database.whitelist": "inventory", (9)
    "database.history.kafka.bootstrap.servers": "kafka:9092", (10)
    "database.history.kafka.topic": "dbhistory.fullfillment" (11)
    "include.schema.changes": "true" (12)
  }
}

1 The name of our connector when we register it with a Kafka Connect service.
2 The name of this MySQL connector class.
3 The address of the MySQL server.
4 The port number of the MySQL server.
5 The name of the MySQL user that has the required privileges.
6 The password for the MySQL user that has the required privileges.
7 The connector’s identifier that must be unique within the MySQL cluster and similar to MySQL’s server-id configuration property.
8 The logical name of the MySQL server/cluster, which forms a namespace and is used in all the names of the Kafka topics to which the connector writes, the Kafka Connect schema names, and the namespaces of the corresponding Avro schema when the Avro Connector is used.
9 A list of all databases hosted by this server that this connector will monitor. This is optional, and there are other properties for listing the databases and tables to include or exclude from monitoring.
10 The list of Kafka brokers that this connector will use to write and recover DDL statements to the database history topic.
11 The name of the database history topic where the connector will write and recover DDL statements. This topic is for internal use only and should not be used by consumers.
12 The flag specifying that the connector should generate on the schema change topic named fullfillment events with the DDL changes that can be used by consumers.

Giorgos Myrianthous
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If you're reading from a MySQL database use Confluent's JDBC Source connector. https://github.com/confluentinc/kafka-connect-jdbc/ You'll also need to download the MYSQL driver and put it with the kafka jars: https://dev.mysql.com/downloads/connector/j/5.1.html

  • can you share the sample code so that i can get the more clarity. I am still wondering where do i need to configure remote db credential like host name, IP, username, password etc. – DP0808 Aug 30 '18 at 20:13