I've been asked to evaluate RabbitMQ instead of Kafka but found it hard to find a reason that it's doing something better than Kafka. Does anyone know if it is really better in throughput, durability, latency, or ease-of-use?
RabbitMQ is a solid, general purpose message broker that supports several protocols such as AMQP, MQTT, STOMP, etc. It can handle high throughput. A common use case for it is to handle background jobs or to act as a message broker between microservices. Kafka is a message bus optimized for high-ingress data streams and replay.
Kafka can be seen as a durable message broker where applications can process and re-process streamed data on disk. Kafka has a very simple routing approach. RabbitMQ has better options if you need to route your messages in complex ways to your consumers. Use Kafka if you need to support batch consumers that could be offline, or consumers that want messages at low latency.
RabbitMQ will keep all states about consumed/acknowledged/unacknowledged messages while Kafka doesn't, it assumes the consumers keep track of what's been consumed and not. RabbitMQ's queues are fastest when they're empty, while Kafka retain large amounts of data with very little overhead - Kafka is designed for holding and distributing large volumes of messages. (If you plan to have very long queues in RabbitMQ you could have a look at lazy queues.)
Kafka is built from the ground up with horizontal scaling (scale by adding more machines) in mind, while RabbitMQ is mostly designed for vertical scaling (scale by adding more power).
RabbitMQ has a user-friendly interface that lets you monitor and handle your RabbitMQ server from a web browser. Among other things, queues, connections, channels, exchanges, users and user permissions can be handled - created, deleted and listed in the browser and you can monitor message rates and send/receive messages manually. Kafka manager is not yet as developed as RabbitMQ Management's interface. I would say that it's easier/gets faster to get a good understanding about RabbitMQ.
More reading and some comparison data can be found here: https://www.cloudkarafka.com/blog/2016-12-05-apachekafka-vs-rabbitmq.html
Also recommending the industry paper: "Kafka versus RabbitMQ: A comparative study of two industry reference publish/subscribe implementations": http://dl.acm.org/citation.cfm?id=3093908
I do work at a company providing both Apache Kafka and RabbitMQ as a Service.
I hear this question every week... While RabbitMQ (like IBM MQ or JMS or other messaging solutions in general) is used for traditional messaging, Apache Kafka is used as streaming platform (messaging + distributed storage + processing of data). Both are built for different use cases.
You can use Kafka for "traditional messaging", but not use MQ for Kafka-specific scenarios.
The article “Apache Kafka vs. Enterprise Service Bus (ESB)—Friends, Enemies, or Frenemies? (https://www.confluent.io/blog/apache-kafka-vs-enterprise-service-bus-esb-friends-enemies-or-frenemies/)” discusses why Kafka is not competitive but complementary to integration and messaging solutions (including RabbitMQ) and how to integrate both.
Which messaging system to choose or should we change our existing messaging system?
There is no one answer to above question. One possible approach to review when you have to decide which messaging system or should you change existing system is to “Evaluate scope and cost”
One critical difference that you guys forgot is RabbitMQ is push based messaging system whereas Kafka is pull based messaging system. This is important in the scenario where messaging system has to satisfy disparate types of consumers with different processing capabilities. With Pull based system the consumer can consume based on their capability where push systems will push the messages irrespective of the state of consumer thereby putting consumer at high risk.
RabbitMQ is a traditional, general purpose message broker. It enables web servers to respond to requests quickly and deliver messages to multiple services. Publishers are able to publish messages and make them available to queues, so that consumers can retrieve them. The communication can be either asynchronous or synchronous.
On the other hand, Apache Kafka is not just a message broker. It was initially designed and implemented by LinkedIn in order to serve as a message queue. Since 2011, Kafka has been open sourced and quickly evolved into a distributed streaming platform, which is used for the implementation of real-time data pipelines and streaming applications.
It is horizontally scalable, fault-tolerant, wicked fast, and runs in production in thousands of companies.
Modern organisations have various data pipelines that facilitate the communication between systems or services. Things get a bit more complicated when a reasonable number of services needs to communicate with each other at real time.
The architecture becomes complex since various integrations are required in order to enable the inter-communication of these services. More precisely, for an architecture that encompasses m source and n target services, n x m distinct integrations need to be written. Also, every integration comes with a different specification, meaning that one might require a different protocol (HTTP, TCP, JDBC, etc.) or a different data representation (Binary, Apache Avro, JSON, etc.), making things even more challenging. Furthermore, source services might address increased load from connections that could potentially impact latency.
Apache Kafka leads to more simple and manageable architectures, by decoupling data pipelines. Kafka acts as a high-throughput distributed system where source services push streams of data, making them available for target services to pull them at real-time.
Also, a lot of open-source and enterprise-level User Interfaces for managing Kafka Clusters are available now. For more details refer to my articles Overview of UI monitoring tools for Apache Kafka clusters and Why Apache Kafka?
The decision of whether to go for RabbitMQ or Kafka is dependent to the requirements of your project. In general, if you want a simple/traditional pub-sub message broker then go for RabbitMQ. If you want to build an event-driven architecture on top of which your organisation will be acting on events at real-time, then go for Apache Kafka as it provides more functionality for this architectural type (for example Kafka Streams and/or KSQL).
I'll provide an objective answer based on my experience with both, I'll also skip the theory behind them, assuming you already know it and/or other answers has already provided enough.
RabbitMQ: I'd pick this one if my requirements are simple enough to deal with system communication through channels/queues, retention and streaming is not a requirement. For e.g. When the manufacture system built the asset it does notify the agreement system to configure the contracts and so on.
Kafka: Event sourcing requirement mainly, when you may need to deal with streams (sometimes infinite), huge amount of data at once properly balanced, replay offsets in order to ensure a given state and so on. Keep in mind that this architecture brings more complexity as well, since it does include concepts such as topics/partitions/brokers/tombstone messages, etc. as a first class importance.
I know it's a bit late and maybe you already, indirectly, said it, but again, Kafka is not a queue at all, it's a log (as someone said above, poll based).
To make it simple, the most obvious use case when you should prefer RabbitMQ (or any queue techno) over Kafka is the following one :
You have multiple consumers consuming from a queue and whenever there is a new message in the queue and an available consumer, you want this message to be processed. If you look closely at how Kafka works, you'll notice it does not know how to do that, because of partition scaling, you'll have a consumer dedicated to a partition and you'll get into starvation issue. Issue that is easily avoided by using simple queue techno. You can think of using a thread that will dispatch the different messages from same partition, but again, Kafka does not have any selective acknowledgment mechanisms.
The most you could do is doing as those guys and try to transform Kafka as a queue : https://github.com/softwaremill/kmq
The only benefit that I can think of is Transactional feature, rest all can be done by using Kafka
Use RabbitMQ when:
- You don’t have to handle with Bigdata and you prefer a convenient in-built UI for monitoring
- No need of automatically replicable queues
- No multi subscribers for the messages- Since unlike Kafka which is a log, RabbitMQ is a queue and messages are removed once consumed and acknowledgment arrived
- If you have the requirements to use Wildcards and regex for messages
- If defining message priority is important
In Short: RabbitMQ is good for simple use cases, with low traffic of data, with the benefit of priority queue and flexible routing options. For massive data and high throughput use Kafka.
Scaling both is hard in a distributed fault tolerant way but I'd make a case that it's much harder at massive scale with RabbitMQ. It's not trivial to understand Shovel, Federation, Mirrored Msg Queues, ACK, Mem issues, Fault tollerance etc. Not to say you won't also have specific issues with Zookeeper etc on Kafka but there are less moving parts to manage. That said, you get a Polyglot exchange with RMQ which you don't with Kafka. If you want streaming, use Kafka. If you want simple IoT or similar high volume packet delivery, use Kafka. It's about smart consumers. If you want msg flexibility and higher reliability with higher costs and possibly some complexity, use RMQ.