Book Image

Fast Data Processing Systems with SMACK Stack

By : Raúl Estrada
Book Image

Fast Data Processing Systems with SMACK Stack

By: Raúl Estrada

Overview of this book

SMACK is an open source full stack for big data architecture. It is a combination of Spark, Mesos, Akka, Cassandra, and Kafka. This stack is the newest technique developers have begun to use to tackle critical real-time analytics for big data. This highly practical guide will teach you how to integrate these technologies to create a highly efficient data analysis system for fast data processing. We’ll start off with an introduction to SMACK and show you when to use it. First you’ll get to grips with functional thinking and problem solving using Scala. Next you’ll come to understand the Akka architecture. Then you’ll get to know how to improve the data structure architecture and optimize resources using Apache Spark. Moving forward, you’ll learn how to perform linear scalability in databases with Apache Cassandra. You’ll grasp the high throughput distributed messaging systems using Apache Kafka. We’ll show you how to build a cheap but effective cluster infrastructure with Apache Mesos. Finally, you will deep dive into the different aspect of SMACK using a few case studies. By the end of the book, you will be able to integrate all the components of the SMACK stack and use them together to achieve highly effective and fast data processing.
Table of Contents (15 chapters)
Fast Data Processing Systems with SMACK Stack
Credits
About the Author
About the Reviewers
www.PacktPub.com
Preface

Spark in cluster mode


So far in this chapter we have focused on running Spark in local mode. As we mentioned, horizontal scaling is what makes Spark so sensual and powerful. You don't need software-hardware integration gurus to run clusters with Apache Spark, and you don't need to stop the organization's entire production to escalate and add more machines to your cluster.

The good news is that the same scripts that you build on your laptop on samples of a few kilobytes, can run on business clusters that handle terabytes of information. There's no need to change the code, and no need to invoke another API. All you have to do is to test again and again to be sure your model runs correctly, and then deploy the cluster.

In this section, we'll describe the runtime architecture of a distributed Spark application, and then we'll see the options we have to run a Spark application running on a cluster.

Apache Spark has its own built-in cluster standalone manager but you can run multiple cluster managers...