Book Image

Hands-On Big Data Analytics with PySpark

By : Rudy Lai, Bartłomiej Potaczek
Book Image

Hands-On Big Data Analytics with PySpark

By: Rudy Lai, Bartłomiej Potaczek

Overview of this book

Apache Spark is an open source parallel-processing framework that has been around for quite some time now. One of the many uses of Apache Spark is for data analytics applications across clustered computers. In this book, you will not only learn how to use Spark and the Python API to create high-performance analytics with big data, but also discover techniques for testing, immunizing, and parallelizing Spark jobs. You will learn how to source data from all popular data hosting platforms, including HDFS, Hive, JSON, and S3, and deal with large datasets with PySpark to gain practical big data experience. This book will help you work on prototypes on local machines and subsequently go on to handle messy data in production and at scale. This book covers installing and setting up PySpark, RDD operations, big data cleaning and wrangling, and aggregating and summarizing data into useful reports. You will also learn how to implement some practical and proven techniques to improve certain aspects of programming and administration in Apache Spark. By the end of the book, you will be able to build big data analytical solutions using the various PySpark offerings and also optimize them effectively.
Table of Contents (15 chapters)

Working with the Spark Key/Value API

In this chapter, we'll be working with the Spark key/value API. We will start by looking at the available transformations on key/value pairs. We will then learn how to use the aggregateByKey method instead of the groupBy() method. Later, we'll be looking at actions on key/value pairs and looking at the available partitioners on key/value data. At the end of this chapter, we'll be implementing an advanced partitioner that will be able to partition our data by range.

In this chapter, we will be covering the following topics:

  • Available actions on key/value pairs
  • Using aggregateByKey instead of groupBy()
  • Actions on key/value pairs
  • Available partitioners on key/value data
  • Implementing a custom partitioner