Topics, Partitions, and APIs oh my! This episode we're getting further into how Apache Kafka works and its use cases. Also, Allen is staying dry, Joe goes for broke, and Michael (eventually) gets on the right page.
Atlanta Dev Con is coming up, on September 7th, 2024 (www.atldevcon.com)
Kafka Topics
They are partitioned - this means they are distributed (or can be) across multiple Kafka brokers into "buckets"
New events written to Kafka are appended to partitions
The distribution of data across brokers is what allows Kafka to scale so well as data can be written to and read from many brokers simultaneously
Events with the same key are written to the same partition as the original event
Kafka guarantees reads of events within a partition are always read in the order that they were written
For fault tolerance and high availability, topics can be replicated…even across regions and data centers
NOTE: If you're using a cloud provider, know that this can be very costly as you pay for inbound and outbound traffic across regions and availability zones
Typical replication configurations for production setups are 3 replicas
Kafka APIS
Admin API - used for managing and inspecting topics, brokers, and other Kafka objects
Producer API - used to write events to Kafka topics
Consumer API - used to read data from Kafka topics
Kafka Streams API - the ability to implement stream processing applications/microservices. Some of the key functionality includes functions for transformations, stateful operations like aggregations, joins, windowing, and more
In the Kafka streams world, these transformations and aggregations are typically written to other topics (in from one topic, out to one or more other topics)
Kafka Connect API - allows for the use of reusable import and export connectors that usually connect external systems. These connectors allow you to gather data from an external system (like a database using CDC) and write that data to Kafka. Then you could have another connector that could push that data to another system OR it could be used for transforming data in your streams application
These connectors are referred to as Sources and Sinks in the connector portfolio (confluent.io)
Source - gets data from an external system and writes it to a Kafka topic
Sink - pushes data to an external system from a Kafka topic
Use Cases
Message queue - usually talking about replacing something like ActiveMQ or RabbitMQ
Message brokers are often used for responsive types of processing, decoupling systems, etc. - Kafka is usually a great alternative that scales, generally has faster throughput, and offers more functionality
Website activity tracking - this was one of the very first use cases for Kafka - the ability to rebuild user actions by recording all the user activities as events
Typically different activity types would be written to different topics - like web page interactions to one topic and searches to another
Metrics - aggregating statistics from distributed applications
Log aggregation - some use Kafka for storage of event logs rather than using something like HDFS or a file server or cloud storage - but why? Because using Kafka for the event storage abstracts away the events from the files
Stream processing - taking events in and further enriching those events and publishing them to new topics
Event sourcing - using Kafka to store state changes from an application that are used to replay the current state of an object or system
Commit log - using Kafka as an external commit log is a way for synchronizing data between distributed systems, or help rebuild the state in a failed system
Did you know that the Kubernetes-focused TUI we've raved about before can be used to look up information about other things as well, like :helm and :events. Events is particularly useful for figuring out mysteries. You can see all the "resources" available to you with "?". You might be surprised at everything you see (pop-eye, x-ray, and monitoring)
WarpStream is an S3 backed, API compliant Kafka Alternative. Thanks MikeRg! (warpstream.com)