Book Image

Learning PySpark

By : Tomasz Drabas, Denny Lee
Book Image

Learning PySpark

By: Tomasz Drabas, Denny Lee

Overview of this book

Apache Spark is an open source framework for efficient cluster computing with a strong interface for data parallelism and fault tolerance. This book will show you how to leverage the power of Python and put it to use in the Spark ecosystem. You will start by getting a firm understanding of the Spark 2.0 architecture and how to set up a Python environment for Spark. You will get familiar with the modules available in PySpark. You will learn how to abstract data with RDDs and DataFrames and understand the streaming capabilities of PySpark. Also, you will get a thorough overview of machine learning capabilities of PySpark using ML and MLlib, graph processing using GraphFrames, and polyglot persistence using Blaze. Finally, you will learn how to deploy your applications to the cloud using the spark-submit command. By the end of this book, you will have established a firm understanding of the Spark Python API and how it can be used to build data-intensive applications.
Table of Contents (20 chapters)
Learning PySpark
Credits
Foreword
About the Authors
About the Reviewer
www.PacktPub.com
Customer Feedback
Preface
Index

Summary


It is important to note that Structured Streaming is currently (at the time of writing) not production-ready. It is, however, a paradigm shift in Spark that will hopefully make it easier for data scientists and data engineers to build continuous applications. While not explicitly called out in the previous sections, when working with streaming applications, there are many potential problems that you will need to design for, such as late events, partial outputs, state recovery on failure, distributed reads and writes, and so on. With structured streaming, many of these issues will be abstracted away to make it easier for you to build continuous applications.

We encourage you to try Spark Structured Streaming so you will be able to easily build streaming applications as structured streaming matures. As Reynold Xin noted in his Spark Summit 2016 East presentation The Future of Real-Time in Spark (http://www.slideshare.net/rxin/the-future-of-realtime-in-spark):

"The simplest way to perform...