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Building Data Streaming Applications with Apache Kafka

You're reading from   Building Data Streaming Applications with Apache Kafka Design, develop and streamline applications using Apache Kafka, Storm, Heron and Spark

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Product type Paperback
Published in Aug 2017
Publisher Packt
ISBN-13 9781787283985
Length 278 pages
Edition 1st Edition
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Authors (2):
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Chanchal Singh Chanchal Singh
Author Profile Icon Chanchal Singh
Chanchal Singh
Manish Kumar Manish Kumar
Author Profile Icon Manish Kumar
Manish Kumar
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Table of Contents (14) Chapters Close

Preface 1. Introduction to Messaging Systems FREE CHAPTER 2. Introducing Kafka the Distributed Messaging Platform 3. Deep Dive into Kafka Producers 4. Deep Dive into Kafka Consumers 5. Building Spark Streaming Applications with Kafka 6. Building Storm Applications with Kafka 7. Using Kafka with Confluent Platform 8. Building ETL Pipelines Using Kafka 9. Building Streaming Applications Using Kafka Streams 10. Kafka Cluster Deployment 11. Using Kafka in Big Data Applications 12. Securing Kafka 13. Streaming Application Design Considerations

Message topics

If you are into software development and services, I am sure you will have heard terms such as database, tables, records, and so on. In a database, we have multiple tables; let's say, Items, Price, Sales, Inventory, Purchase, and many more. Each table contains data of a specific category. There will be two parts in the application: one will be inserting records into these tables and the other will be reading records from these tables. Here, tables are the topics in Kafka, applications that are inserting data into tables are producers, and applications that are reading data are consumers.

In a messaging system, messages need to be stored somewhere. In Kafka, we store messages into topics. Each topic belongs to a category, which means that you may have one topic storing item information and another may store sales information. A producer who wants to send a message...

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