Get Started

Get Started

These guides demonstrate how to get started quickly with Hazelcast IMDG and Hazelcast Jet.

Hazelcast IMDG

Learn how to store and retrieve data from a distributed key-value store using Hazelcast IMDG. In this guide you’ll learn how to:

  • Create a cluster of 3 members.
  • Start Hazelcast Management Center
  • Add data to the cluster using a sample client in the language of your choice
  • Add and remove some cluster members to demonstrate data balancing capabilities of Hazelcast

Hazelcast Jet

Learn how to build a distributed data processing pipeline in Java using Hazelcast Jet. In this guide you’ll learn how to:

  • Install Hazelcast Jet and form a cluster on your computer
  • Build a simple pipeline that receives a stream of data, does some calculations and outputs some results
  • Submit the pipeline as a job to the cluster and observe the results
  • Scale the cluster up and down while the job is still running

Designing an Evergreen Cache with Change Data Capture

July 20, 2020
Designing an Evergreen Cache with Change Data Capture

It has been said that there are two things hard in software development, naming things and cache invalidation (while some add off-by-one errors to the mix). I believe that keeping the cache in sync with the source of truth might count as a third one. In this post, I’d like to tackle this issue, describe the ideal situation – 1 cache, 1 datastore, describe the problem of having multiple components that can write to the datastore, list all possible solutions, and describe one elegant solution based on Change Data Capture and Jet.

The ideal design

In a system, to improve performance, one of the first short-term measures is to set up a cache. It’s a tradeoff between getting the data faster at the cost of the data being not that fresh: one loads the data in-memory close to the consumer, and presto, one gets an instant performance boost. In regard to a database, this is akin to the following:

Starting architecture

In this read-through cache design, when the app requires an item, the cache first checks whether it has it. If yes, it returns it. If not, it fetches it from the underlying Relational Database Management System, stores it, and returns it. For a write, it stores it, and also calls the RDBMS to store it.

Note that using a cache-aside design instead of read-through would have the same issue. The only difference would be the fact that the app would be responsible for the fetching/storing logic instead of the cache.

The RDBMS is the sole source of truth – as it should be. Since the cache intercepts write statements to the RDBMS, it’s a mirror of the data.

Handling third-party database updates

This design works as expected until the database receives updates from another source:

Updating the database while bypassing the cache

Now, the RDBMS is still the source of truth, but the cache is not aware of changes made by other components. Hence, it might (will) return data that it has stored, but that is stale compared to what is the source of truth in the RDBMS.

There are multiple ways to cope with this issue.

Cache invalidation

Since the cache only queries the RDBMS if it doesn’t store the requested item, let’s remove items after a specific time. This is a built-in feature in enterprise-grade caches such as Hazelcast IMDG, and it is known as the Time-To-Live. When an item is stored, a TTL can be attached to it. After that time has elapsed, the item is removed from the cache, and it will be fetched from the RDBMS again if needed.

This approach has a couple of downsides:

  1. If an item is not updated in the RDBMS, but is evicted from the cache, then there’s an extra query from the cache to the RDBMS when it’s needed by the app. This is a net loss of resources.
  2. If an item is updated in the RDBMS, but its TTL has not been reached yet, then the cache will return the stale data. This defeats the purpose.

With longer TTL, we avoid unnecessary round trips but return more stale data. With shorter TTL, we waste resources with lesser chances of stale data.

Polling the RDBMS

Because the TTL doesn’t seem to be the right approach, we could devise a dedicated component that watches the RDBMS by regularly sending queries to it and updating the cache accordingly.

Unfortunately, this strategy incurs the same issues as cache invalidation: the more frequent the queries, the more chances to catch changes, but the more resources are wasted. Worse, this also will put extra load on the RDBMS.

RDBMS triggers

A common downside of the above approaches is the way they both poll the database. Polling happens with a specific frequency, while writes don’t follow any regular periodicity. Thus, it’s not possible to make the two match.

Instead of polling, it would make much more sense to be event-driven:

  1. if no writes happen, there’s no need to update the cache
  2. if a write happens, then the relevant cache item should be updated accordingly

In RDBMS, this event-driven approach is implemented via triggers. Triggers are dedicated stored procedures that are launched in response to specific events, such as an INSERT or an UPDATE.

That works pretty well when the acted-upon object is inside the database e.g. “when a record of table A is updated, then add a record to table B”. For our use-case, where the acted-upon object is the cache, which sits outside the database, it’s not as simple. For example, MySQL allows you to make an external system call from a trigger. However, this approach is very implementation-dependent and makes the overall design of the system much more fragile. Also, only some RDBMS implement triggers. Even if they do, there’s no standard implementation.

Change Data Capture

Wikipedia defines Change Data Capture (or CDC) as:

[…] a set of software design patterns used to determine and track the data that has changed so that action can be taken using the changed data.

CDC is an approach to data integration that is based on the identification, capture and delivery of the changes made to enterprise data sources.

In practice, CDC is a tool that allows to transform standard write queries into events. It implements it by “turning the database inside-out” (quote from Martin Kleppmann). This definition is because a database keeps a record of all changes in an implementation-dependent append-only log. Regularly, it uses it to manage its state. Some RDBMS also have other usages e.g. MySQL uses the log for replication across nodes.

For example, here’s a sample for MySQL binlog:

### UPDATE `test`.`t`
### WHERE
###   @1=1 /* INT meta=0 nullable=0 is_null=0 */
###   @2='apple' /* VARSTRING(20) meta=20 nullable=0 is_null=0 */
###   @3=NULL /* VARSTRING(20) meta=0 nullable=1 is_null=1 */
### SET
###   @1=1 /* INT meta=0 nullable=0 is_null=0 */
###   @2='pear' /* VARSTRING(20) meta=20 nullable=0 is_null=0 */
###   @3='2009:01:01' /* DATE meta=0 nullable=1 is_null=0 */
# at 569
#150112 21:40:14 server id 1  end_log_pos 617 CRC32 0xf134ad89
#Table_map: `test`.`t` mapped to number 251
# at 617
#150112 21:40:14 server id 1  end_log_pos 665 CRC32 0x87047106
#Delete_rows: table id 251 flags: STMT_END_F

A CDC component connects to this immutable log to extract change events.

One can view CDC as the opposite of Event Sourcing: the latter captures state by aggregating events, while the former extracts events “from the state”.

Debezium

CDC is quite recent, and hasn’t had time to mature. As such, there’s no universal standard, but specific tools. In this section, we are going to have a look at Debezium. Debezium is an Open Source set of services for CDC provided by Red Hat.

Debezium is an umbrella term covering several components:

  1. Debezium Connectors are specific bridges that read the append-only proprietary log for each supported database. For example, there’s a connector for MySQL, one for MongoDB, one for PostgreSQL, etc.
  2. Each connector is also a Kafka Connect Source Connector: this allows to easily output CDC events to one’s Kafka cluster
  3. Finally, the Debezium Engine is a JAR that allows Debezium to be embedded in one’s applications. Note that even in that case, Debezium produces Kafka Connect-specific content, which then needs to be handled and transformed in one’s application.

While Kafka is a great technology, and probably also quite widespread nowadays, data in Kafka needs to be persisted to disk. The benefit of persistence is that data survive even in the event of the cluster going down. The tradeoff, however, is that the access time of disk-persisted data is one (or 2) orders of magnitude slower than the access time of in-memory data, depending on the underlying disk technology.

Hazelcast Jet

Hazelcast Jet is a distributed stream processing framework built on Hazelcast and combines a cache with fault-tolerant data processing. It has sources and sinks to integrate with several file, messaging and database systems (such as Amazon S3, Kafka, message brokers and relational databases).

Jet also provides a Debezium module where it can process change events directly from the database, and write them to its distributed key-value store. This avoids having to write the intermediate messages to Kafka and then read again to be written to a separate cache.

Putting it all together

It’s (finally!) time to assemble all the previous bits together. Here are the components and their responsibilities:

  1. A MySQL database instance is where the data is stored. It’s accessed in read-only mode by the cache, and in write-only mode by some external component
  2. A Jet instance reads events to MySQL through the Debezium connector, transforms them into cache-compatible key-value pairs, and updates the cache accordingly. Note that while Jet pipelines provide filtering capabilities, it’s also possible to filter items in the CDC connector to optimize load of the data pipeline
  3. The app uses the cache, which is always up-to-date with the database, give or take the time it takes for the above to execute

Final architecture with CDC

Note that this architecture assumes one starts from a legacy state, with an existing app that uses caching, where later on a new component was set up that could update the database.

If one starts from scratch, it’s possible to simplify the above diagram (and associated code) as Jet embeds its own Hazelcast instance. In that case, instead of Jet being a client of a third-party Hazelcast instance, Jet is the one to configure and start the instance. Obviously, it also can then get/put data.

Talk is cheap, show me the code

Sources for this post are available on GitHub.

The repository is made of the following modules:

  • app is a Spring Boot application using Spring Data JDBC to access a MySQL database. It abstracts away Hazelcast by using a Spring Cache layer
  • update is a Spring Shell application. It allows to update the data inside the database, with the cache none the wiser
  • pipeline is the Jet pipeline that listens to CDC events and update the cache when data is updated

The pipeline definition is quite straightforward:

pipeline.readFrom(source)                                       //1
        .withoutTimestamps()
        .map(r -> {
            Person person = r.value().toObject(Person.class);   //2
            return Util.entry(person.id, person);               //3
        })
        .writeTo(Sinks.remoteMap(                               //4
                "entities",                                     //5
                new CustomClientConfig(env.get("CACHE_HOST"))   //6
        ));
  1. Get a stream of Jet ChangeRecord
  2. Convert ChangeRecord to a regular Person POJO
  3. Wrap Person objects into Map.Entrys keyed by ID
  4. Create the sink to write to, a remote map
  5. Name of the remote map
  6. Client configuration so it can connect to the right host, cluster and instance
public class CustomClientConfig extends ClientConfig {

  public CustomClientConfig(String cacheHost) {
    getNetworkConfig()
      .addAddress(cacheHost != null ? cacheHost : "localhost");
  }
}

To try the demo, a local Docker daemon must be running.

  1. To create the necessary Docker images, at the root of the project, run the build:
    mvn compile
  2. At the root of the repo, run the compose file. This will start a MySQL instance, the app, the Jet pipeline job, as well as Hazelcast Management Center to get additional insight into the cluster state
    docker-compose up
  3. Open a browser at http://localhost:8080/
  4. Refresh the browser, and check the logs: there should be not interaction with the database, only with the cache
  5. In the update module, set the database user and password and then execute the Maven Spring Boot plugin:
    export SPRING_DATASOURCE_USERNAME=root
    export SPRING_DATASOURCE_PASSWORD=root
    mvn spring-boot:run

    This will open an interactive shell to execute specific commands. The update command requires two arguments, the primary key of the Person entity to update, and the new value for the firstName column. The following command will update the firstName value of the entity with PK 1 with value "Foo"

    update 1 Foo
  6. Refresh the browser again. The cache has been updated, the application doesn’t access the database, and still the value Foo should be shown for entity with PK 1

Conclusion

Caching is easy if the cache is the only component that writes to the database. As soon as other components update the database, no traditional strategy to keep the data of the database and the cache in-sync is satisfying.

The Hazelcast Jet streaming engine, using Debezium under the hood, is able to leverage Change Data Capture over traditional RDBMS to achieve an evergreen cache in a simple way.

References

About the Author

About the Author

Nicolas Frankel

Nicolas Frankel

Developer Advocate, Hazelcast

Nicolas Fränkel is a Developer Advocate with 15+ years experience consulting for many different customers, in a wide range of contexts (such as telecoms, banking, insurances, large retail and public sector). Usually working on Java/Java EE and Spring technologies, but with focused interests like Rich Internet Applications, Testing, CI/CD and DevOps. Currently working for Hazelcast. Also double as a teacher in universities and higher education schools, a trainer and triples as a book author.

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