Book Image

Building Data Streaming Applications with Apache Kafka

By : Chanchal Singh, Manish Kumar
Book Image

Building Data Streaming Applications with Apache Kafka

By: Chanchal Singh, Manish Kumar

Overview of this book

Apache Kafka is a popular distributed streaming platform that acts as a messaging queue or an enterprise messaging system. It lets you publish and subscribe to a stream of records, and process them in a fault-tolerant way as they occur. This book is a comprehensive guide to designing and architecting enterprise-grade streaming applications using Apache Kafka and other big data tools. It includes best practices for building such applications, and tackles some common challenges such as how to use Kafka efficiently and handle high data volumes with ease. This book first takes you through understanding the type messaging system and then provides a thorough introduction to Apache Kafka and its internal details. The second part of the book takes you through designing streaming application using various frameworks and tools such as Apache Spark, Apache Storm, and more. Once you grasp the basics, we will take you through more advanced concepts in Apache Kafka such as capacity planning and security. By the end of this book, you will have all the information you need to be comfortable with using Apache Kafka, and to design efficient streaming data applications with it.
Table of Contents (14 chapters)

Considerations for using Kafka in ETL pipelines

ETL is a process of Extracting, Transforming, and Loading data into the target system, which is explained next. It is followed by a large number of organizations to build their data pipelines.

  • Extraction: Extraction is the process of ingesting data from the source system and making it available for further processing. Any prebuilt tool can be used to extract data from the source system. For example, to extract server logs or Twitter data, you can use Apache Flume, or to extract data from the database, you can use any JDBC-based application, or you can build your own application. The objective of the application that will be used for extraction is that it should not affect the performance of the source system in any manner.

  • Transformation: Transformation refers to processing extracted data and converting it into some meaningful...