Book Image

Practical Real-time Data Processing and Analytics

Book Image

Practical Real-time Data Processing and Analytics

Overview of this book

With the rise of Big Data, there is an increasing need to process large amounts of data continuously, with a shorter turnaround time. Real-time data processing involves continuous input, processing and output of data, with the condition that the time required for processing is as short as possible. This book covers the majority of the existing and evolving open source technology stack for real-time processing and analytics. You will get to know about all the real-time solution aspects, from the source to the presentation to persistence. Through this practical book, you’ll be equipped with a clear understanding of how to solve challenges on your own. We’ll cover topics such as how to set up components, basic executions, integrations, advanced use cases, alerts, and monitoring. You’ll be exposed to the popular tools used in real-time processing today such as Apache Spark, Apache Flink, and Storm. Finally, you will put your knowledge to practical use by implementing all of the techniques in the form of a practical, real-world use case. By the end of this book, you will have a solid understanding of all the aspects of real-time data processing and analytics, and will know how to deploy the solutions in production environments in the best possible manner.
Table of Contents (20 chapters)
Title Page
Credits
About the Authors
About the Reviewers
www.PacktPub.com
Customer Feedback
Preface

Spark pragmatic concepts


You know what appeals the most to us developers? The ability to tap into the framework and the flexibility to extend it as per our needs. In today's world of abstraction and decoupling, this is taken care of using a variety of APIs that come out of the box.

We have talked enough about the latency issue the big data world was struggling with before Spark came and took the performance to the next level. Let's have a closer look to understand this latency problem a little better. The following diagram captures the execution of typical Hadoop processes and its intermediate steps:

Well, as depicted, Hadoop ecosystem leverages HDFS (a disk-based distributed stable storage) extensively to store the intermediate processing results:

  • Job #1: This reads the data for processing from HDFS and writes its results to HDFS
  • Job #2: This reads the interim processing results of job 1 from HDFS, processes, and writes the outcome to HDFS

While HDFS is a fault tolerant and persistent store...