How Log stash is different than Kafka? and if both are same which is better? and How?
I found both are the pipelines where one can push the data for further processing.
Kafka is much more powerful than Logstash. For syncing data from such as PostgreSQL to ElasticSearch, Kafka connectors could do the similar work with Logstash.
One key difference is: Kafka is a cluster, while Logstash is basically single instance. You could run multiple Logstash instances. But these Logstash instances are not aware of each other. For example, if one instance goes down, others will not take over its work. Kafka handles the node down automatically. And if you set up Kafka connectors to work in the distributed mode, other connectors could take over the work of the down connector.
Kafka and Logstash could also work together. For example, run a Logstash instance on every node to collect logs, and send the logs to Kafka. Then you could write the Kafka consumer code to do any handling you want.
Logstash is a tool that can be used to collect, process and forward events and log messages. Collection is accomplished through a number of
input plugins. You can use
Kafka as an input plugin, where it will read events from a Kafka topic. Once an input plugin has collected data it can be processed by any number of filters which modify and annotate the event data. Finally events are routed to
output plugins which can forward the events to a variety of external programs including Elasticsearch.
Kafka is a messaging software that persists messages, has TTL, and the notion of consumers that pull data out of Kafka. Some of it's usages could be:
So simply both of them have their own advantages and disadvantages. But then it depends on your requirements solely.
In addition, I want to add somethings through scenarios:
Scenario 1: Event Spikes
The app you deployed has a bad bug where information is logged excessively, flooding your logging infrastructure. This spike or a burst of data is fairly common in other multi-tenant use cases as well, for example, in the gaming and e-commerce industries. A message broker like Kafka is used in this scenario to protect Logstash and Elasticsearch from this surge.
Scenario 2: Elasticsearch not reachable
When eleasticsearch is not reachable, If you have a number of data sources streaming into Elasticsearch, and you can't afford to stop the original data sources, a message broker like Kafka could be of help here! If you use the Logstash shipper and indexer architecture with Kafka, you can continue to stream your data from edge nodes and hold them temporarily in Kafka. As and when Elasticsearch comes back up, Logstash will continue where it left off, and help you catch up to the backlog of data.
The whole blog is here about use cases of the Logtash and Kafka.