Building Python Real-Time Applications with Storm

Building Python Real-Time Applications with Storm

Learn to process massive real-time data streams using Storm and Python—no Java required!

About This Book
Learn to use Apache Storm and the Python Petrel library to build distributed applications that process large streams of dataExplore sample applications in real-time and analyze them in the popular NoSQL databases MongoDB and RedisDiscover how to apply software development best practices to improve performance, productivity, and quality in your Storm projects
Who This Book Is For

This book is intended for Python developers who want to benefit from Storm’s real-time data processing capabilities. If you are new to Python, you’ll benefit from the attention to key supporting tools and techniques such as automated testing, virtual environments, and logging. If you’re an experienced Python developer, you’ll appreciate the thorough and detailed examples

What You Will Learn
Install Storm and learn about the prerequisitesGet to know the components of a Storm topology and how to control the flow of data between themIngest Twitter data directly into StormUse Storm with MongoDB and RedisBuild topologies and run them in StormUse an interactive graphical debugger to debug your topology as it’s running in StormTest your topology components outside of StormConfigure your topology using YAML
In Detail

Big data is a trending concept that everyone wants to learn about. With its ability to process all kinds of data in real time, Storm is an important addition to your big data “bag of tricks.”

At the same time, Python is one of the fastest-growing programming languages today. It has become a top choice for both data science and everyday application development. Together, Storm and Python enable you to build and deploy real-time big data applications quickly and easily.

You will begin with some basic command tutorials to set up storm and learn about its configurations in detail. You will then go through the requirement scenarios to create a Storm cluster. Next, you’ll be provided with an overview of Petrel, followed by an example of Twitter topology and persistence using Redis and MongoDB. Finally, you will build a production-quality Storm topology using development best practices.

Style and approach

This book takes an easy-to-follow and a practical approach to help you understand all the concepts related to Storm and Python.

Download Now Read Online

Similar Free eBook

Building Python Real Time Applications With Storm


Building Python Real Time Applications With Storm Download Now Read Online

Author by : Kartik Bhatnagar
Languange Used : en
Release Date : 2015-12-02
Publisher by : Packt Publishing Ltd






Real Time Big Data Analytics


Real Time Big Data Analytics Download Now Read Online

Author by : Sumit Gupta
Languange Used : en
Release Date : 2016-02-26
Publisher by : Packt Publishing Ltd






Storm Applied


Storm Applied Download Now Read Online

Author by : Sean T. Allen
Languange Used : en
Release Date : 2015-01-31
Publisher by : Manning Publications






Building Data Streaming Applications With Apache Kafka


Building Data Streaming Applications With Apache Kafka Download Now Read Online

Author by : Manish Kumar
Languange Used : en
Release Date : 2017-08-18
Publisher by : Packt Publishing Ltd






Storm Real Time Processing Cookbook


Storm Real Time Processing Cookbook Download Now Read Online

Author by : Quinton Anderson
Languange Used : en
Release Date : 2013-01-01
Publisher by : Packt Publishing Ltd






Getting Started With Storm


Getting Started With Storm Download Now Read Online

Author by : Jonathan Leibiusky
Languange Used : en
Release Date : 2012-08-31
Publisher by : "O'Reilly Media, Inc."






Practical Real Time Data Processing And Analytics


Practical Real Time Data Processing And Analytics Download Now Read Online

Author by : Shilpi Saxena
Languange Used : en
Release Date : 2017-09-28
Publisher by : Packt Publishing Ltd






Leave a Reply

Your email address will not be published. Required fields are marked *