Book Image

Apache Spark Quick Start Guide

By : Shrey Mehrotra, Akash Grade
Book Image

Apache Spark Quick Start Guide

By: Shrey Mehrotra, Akash Grade

Overview of this book

Apache Spark is a ?exible framework that allows processing of batch and real-time data. Its unified engine has made it quite popular for big data use cases. This book will help you to get started with Apache Spark 2.0 and write big data applications for a variety of use cases. It will also introduce you to Apache Spark – one of the most popular Big Data processing frameworks. Although this book is intended to help you get started with Apache Spark, but it also focuses on explaining the core concepts. This practical guide provides a quick start to the Spark 2.0 architecture and its components. It teaches you how to set up Spark on your local machine. As we move ahead, you will be introduced to resilient distributed datasets (RDDs) and DataFrame APIs, and their corresponding transformations and actions. Then, we move on to the life cycle of a Spark application and learn about the techniques used to debug slow-running applications. You will also go through Spark’s built-in modules for SQL, streaming, machine learning, and graph analysis. Finally, the book will lay out the best practices and optimization techniques that are key for writing efficient Spark applications. By the end of this book, you will have a sound fundamental understanding of the Apache Spark framework and you will be able to write and optimize Spark applications.
Table of Contents (10 chapters)

Caching and checkpointing

Caching and checkpointing are some of the important features of Spark. These operations can improve the performance of your Spark jobs significantly.

Caching

Caching data into memory is one of the main features of Spark. You can cache large datasets in-memory or on-disk depending upon your cluster hardware. You can choose to cache your data in two scenarios:

  • Use the same RDD multiple times
  • Avoid reoccupation of an RDD that involves heavy computation, such as join() and groupByKey()

If you want to run multiple actions of an RDD, then it will be a good idea to cache it into the memory so that recompilation of this RDD can be avoided. For example, the following code first takes out a few elements...