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Version: Legacy

Queuing & Message Broker

Why Kafka?​

Kafka is a fast, scalable, durable, and fault-tolerant publish-subscribe messaging system. It is used in use cases where JMS, RabbitMQ and AMQP may not even be considered due to volume and responsiveness.

Kafka has higher throughput, reliability and replication characteristics which make it applicable for jobs like tracking service calls or IoT sensors data where a traditional MOM might not be considered.

Kafka can work with Flume/Flafka, Spark Streaming, Storm, HBase, Flink and Spark for real-time ingesting, analysis and processing of streaming data.

It is a data stream used to feed Hadoop BigData lakes. Kafka brokers support massive message streams for low-latency follow-up analysis in Hadoop or Spark. Also, Kafka Streaming (a subproject) can be used for real-time analytics.

For more detail, visit Apache Kafka official web site.

When to Use it?​

Let’s consider a scenario:

Suppose an e-commerce company has multiple servers for different workloads, and all these servers want to communicate with the database server, so we have multiple data pipelines connecting all of them to the db server as shown below :

As you can see in the above image that data pipelines are getting complex with the increase in the number of system thus makes the whole system flow very complicated.

This is the problem due to which messaging system such as Kafka comes into the picture.

So, lets see how Kafka provides a solution to such problems.

What Kafka does is, it decouples the data pipelines between the systems and thus makes the communication between systems simpler and manageable.

Thanks to Nitin Rawat

How Genesis use Kafka actively?​

As data pipeline between Microservice communication​

TODO: will be elaborated with examples.

Asynchronous jobs like logging or emailing​

TODO: will be elaborated with examples.