Fast Data Processing with Spark 2, 3rd Edition
- Length: 224 pages
- Edition: 3rd Revised edition
- Language: English
- Publisher: Packt Publishing
- Publication Date: 2017-03-06
- ISBN-10: 1785889273
- ISBN-13: 9781785889271
- Sales Rank: #543692 (See Top 100 Books)
Learn how to use Spark to process Big Data at speed and scale for sharper analytics. Put the principles into practice for a faster, slicker Big Data projects
About This Book
- A quick way to get started with Spark – and reap the rewards
- From analytics to engineering your Big Data architecture, we’ve got it covered
- Bring your Scala and Java knowledge – and put it to work on new and exciting problems
Who This Book Is For
This book is for developers with little to no knowledge of Spark, but with a background in Scala/Java programming. It’s recommended that you have experience in dealing and working with big data and a strong interest in data science.
What You Will Learn
- Install and set up Spark in your cluster
- Prototype distributed applications with Spark’s interactive shell
- Perform data wrangling using the new DataFrame APIs
- Get to know the different ways to interact with Spark’s distributed representation of data (RDDs)
- Query Spark with a SQL-like query syntax
- See how Spark works with Big Data
- Implement machine learning systems with highly scalable algorithms
- Use R, the popular statistical language, to work with Spark
- Apply interesting graph algorithms and graph processing with GraphX
In Detail
When people want a way to process Big Data at speed, Spark is invariably the solution. With its ease of development (in comparison to the relative complexity of Hadoop), it’s unsurprising that it’s becoming popular with data analysts and engineers everywhere.
Beginning with the fundamentals, we’ll show you how to get set up with Spark with minimum fuss. You’ll then get to grips with some simple APIs before investigating machine learning and graph processing – throughout we’ll make sure you know exactly how to apply your knowledge.
You will also learn how to use the Spark shell, how to load data before finding out how to build and run your own Spark applications. Discover how to manipulate your RDD and get stuck into a range of DataFrame APIs. As if that’s not enough, you’ll also learn some useful Machine Learning algorithms with the help of Spark MLib and integrating Spark with R. We’ll also make sure you’re confident and prepared for graph processing, as you learn more about the GraphX API.
Table of Contents
Chapter 1: Installing Spark and Setting Up Your Cluster
Chapter 2: Using the Spark Shell
Chapter 3: Building and Running a Spark Application
Chapter 4: Creating a SparkSession Object
Chapter 5: Loading and Saving Data in Spark
Chapter 6: Manipulating Your RDD
Chapter 7: Spark 2.0 Concepts
Chapter 8: Spark SQL
Chapter 9: Foundations of Datasets/DataFrames – The Proverbial Workhorse for DataScientists
Chapter 10: Spark with Big Data
Chapter 11: Machine Learning with Spark ML Pipelines
Chapter 12: GraphX