Message Filtering
By default, Debezium delivers every data change event that it receives to the Kafka broker. However, in many cases, you might be interested in only a subset of the events emitted by the producer. To enable you to process only the records that are relevant to you, Debezium provides the filter single message transform (SMT).
The filter SMT is under active development. The structure of the emitted message or other details might change as development progresses. |
While it is possible to use Java to create a custom SMT to encode filtering logic, using a custom-coded SMT has its drawbacks. For example:
-
It is necessary to compile the transformation up front and deploy it to Kafka Connect.
-
Every change needs code recompilation and redeployment, leading to inflexible operations.
The filter SMT supports scripting languages that integrate with JSR 223 (Scripting for the Java™ Platform).
Debezium does not come with any implementations of the JSR 223 API. To use an expression language with Debezium, you must download the JSR 223 script engine implementation for the language. For example, for Groovy 3, you can download its JSR 223 implementation from https://groovy-lang.org/. The JSR223 implementation for GraalVM JavaScript is available at https://github.com/graalvm/graaljs. After you obtain the script engine files, you add them to your Debezium connector plug-in directories, along any other JAR files used by the language implementation.
Set up
For security reasons, the filter SMT is not included with the Debezium connector archives.
Instead, it is provided in a separate artifact, debezium-scripting-1.9.8.Final.tar.gz
.
To use the content-based routing SMT with a Debezium connector plug-in, you must explicitly add the SMT artifact to your Kafka Connect environment. IMPORTANT: After the filter SMT is present in a Kafka Connect instance, any user who is allowed to add a connector to the instance can run scripting expressions. To ensure that scripting expressions can be run only by authorized users, be sure to secure the Kafka Connect instance and its configuration interface before you add the filter SMT.
With Zookeeper, Kafka, Kafka Connect, and one or more Debezium connectors installed, the remaining tasks to install the filter SMT are:
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Download the scripting SMT archive
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Extract the contents of the archive into the Debezium plug-in directories of your Kafka Connect environment.
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Obtain a JSR-223 script engine implementation and add its contents to the Debezium plug-in directories of your Kafka Connect environment.
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Restart your Kafka Connect process to pick up the new JAR files.
The Groovy language needs the following libraries on the classpath:
-
groovy
-
groovy-json
(optional) -
groovy-jsr223
The JavaScript language needs the following libraries on the classpath:
-
graalvm.js
-
graalvm.js.scriptengine
Example: Basic configuration
You configure the filter transformation in the Debezium connector’s Kafka Connect configuration. In the configuration, you specify the events that you are interested in by defining filter conditions that are based on business rules. As the filter SMT processes the event stream, it evaluates each event against the configured filter conditions. Only events that meet the criteria of the filter conditions are passed to the broker.
To configure a Debezium connector to filter change event records, configure the Filter
SMT in the Kafka Connect configuration for the Debezium connector.
Configuration of the filter SMT requires you to specify a regular expression that defines the filtering criteria.
For example, you might add the following configuration in your connector configuration.
...
transforms=filter
transforms.filter.type=io.debezium.transforms.Filter
transforms.filter.language=jsr223.groovy
transforms.filter.condition=value.op == 'u' && value.before.id == 2
...
The preceding example specifies the use of the Groovy
expression language.
The regular expression value.op == 'u' && value.before.id == 2
removes all messages, except those that represent update (u
) records with id
values that are equal to 2
.
The preceding example shows a simple SMT configuration that is designed to process only DML events, which contain an op
field.
Other types of messages that a connector might emit (heartbeat messages, tombstone messages, or metadata messages about schema changes and transactions) do not contain this field.
To avoid processing failures, you can define an SMT predicate statement that selectively applies the transformation to specific events only.
Variables for use in filter expressions
Debezium binds certain variables into the evaluation context for the filter SMT. When you create expressions to specify filter conditions, you can use the variables that Debezium binds into the evaluation context. By binding variables, Debezium enables the SMT to look up and interpret their values as it evaluates the conditions in an expression.
The following table lists the variables that Debezium binds into the evaluation context for the filter SMT:
Name | Description | Type |
---|---|---|
|
A key of the message. |
|
|
A value of the message. |
|
|
Schema of the message key. |
|
|
Schema of the message value. |
|
|
Name of the target topic. |
String |
|
A Java map of message headers. The key field is the header name.
The
|
|
An expression can invoke arbitrary methods on its variables.
Expressions should resolve to a Boolean value that determines how the SMT dispositions the message.
When the filter condition in an expression evaluates to true
, the message is retained.
When the filter condition evaluates to false
, the message is removed.
Expressions should not result in any side-effects. That is, they should not modify any variables that they pass.
Options for applying the transformation selectively
In addition to the change event messages that a Debezium connector emits when a database change occurs, the connector also emits other types of messages, including heartbeat messages, and metadata messages about schema changes and transactions. Because the structure of these other messages differs from the structure of the change event messages that the SMT is designed to process, it’s best to configure the connector to selectively apply the SMT, so that it processes only the intended data change messages. You can use one of the following methods to configure the connector to apply the SMT selectively:
-
Use the topic.regex configuration option for the SMT.
Language specifics
The way that you express filtering conditions depends on the scripting language that you use.
For example, as shown in the basic configuration example, when you use Groovy
as the expression language,
the following expression removes all messages, except for update records that have id
values set to 2
:
value.op == 'u' && value.before.id == 2
Other languages use different methods to express the same condition.
The Debezium MongoDB connector emits the You could also take the approach of using a JSON parser within an expression to generate separate output documents for each array item. |
If you use JavaScript as the expression language, you can call the Struct#get()
method to specify the filtering condition, as in the following example:
value.get('op') == 'u' && value.get('before').get('id') == 2
If you use JavaScript with Graal.js to define filtering conditions, you use an approach that is similar to the one that you use with Groovy. For example:
value.op == 'u' && value.before.id == 2
Configuration options
The following table lists the configuration options that you can use with the filter SMT.
Property |
Default |
Description |
An optional regular expression that evaluates the name of the destination topic for an event to determine whether to apply filtering logic.
If the name of the destination topic matches the value in |
||
The language in which the expression is written. Must begin with |
||
The expression to be evaluated for every message. Must evaluate to a Boolean value where a result of |
||
|
Specifies how the transformation handles
|