Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

Apache Kafka: Distributed messaging system
Apache Storm: Real Time Message Processing

How we can use both technologies in a real-time data pipeline for processing event data?

In terms of real time data pipeline both seems to me do the job identical. How can we use both the technologies on a data pipeline?

share|improve this question
up vote 49 down vote accepted

You use Apache Kafka as a distributed and robust queue that can handle high volume data and enables you to pass messages from one end-point to another.

Storm is not a queue. It is a system that has distributed real time processing abilities, meaning you can execute all kind of manipulations on real time data in parallel.

The common flow of these tools (as I know it) goes as follows:

real-time-system --> Kafka --> Storm --> NoSql --> BI(optional)

So you have your real time app handling high volume data, sends it to Kafka queue. Storm pulls the data from kafka and applies some required manipulation. At this point you usually like to get some benefits from this data, so you either send it to some Nosql db for additional BI calculations, or you could simply query this NoSql from any other system.

share|improve this answer
    
Thanks Forhas. This is very helpful. One question can we use Apache Kafka to aggregate Apache log files or do we still need Flume to do that? – Ananth Duari Feb 18 '14 at 1:42
    
I guess you can although I'm not familiar with such a flow. Maybe you can check Splunk for your needs (just a guess..). – forhas Feb 18 '14 at 14:14

Kafka and Storm have a slightly different purpose:

Kafka is a distributed message broker which can handle big amount of messages per second. It uses publish-subscribe paradigm and relies on topics and partitions. Kafka uses Zookeeper to share and save state between brokers. So Kafka is basically responsible for transferring messages from one machine to another.

Storm is a scalable, fault-tolerant, real-time analytic system (think like Hadoop in realtime). It consumes data from sources (Spouts) and passes it to pipeline (Bolts). You can combine them in the topology. So Storm is basically a computation unit (aggregation, machine learning).


But you can use them together: for example your application uses kafka to send data to other servers which uses storm to make some computation on it.

share|improve this answer

This is how it works

Kafka - To provide a realtime stream

Storm - To perform some operations on that stream

You might take a look at the GitHub project https://github.com/abhishekgoel137/kafka-nodejs-d3js.

(D3js is a graph-representation library)

Ideal case:

Realtime application -> Kafka -> Storm -> NoSQL -> d3js

This repository is based on:

Realtime application -> Kafka -> <plain Node.js> -> NoSQL -> d3js
share|improve this answer
    
Abhishek, link mentioned in the above answer is broken. Can you please update the link? – Abhijit Gaikwad Jun 19 '15 at 5:58

As every one explain you that Apache kafka: is continuous messaging queue

Apache Storm: is continuous processing tool

hear in this aspect kafka will get the data form any website like FB,Twitter by using API's and that data is processed by using Apache Storm and you can store the processed data in either in any databases you like enter link description here

Just fallow it you will get some idea

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.