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Fast Data Processing with Spark 2

You're reading from   Fast Data Processing with Spark 2 Accelerate your data for rapid insight

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Product type Paperback
Published in Oct 2016
Publisher Packt
ISBN-13 9781785889271
Length 274 pages
Edition 3rd Edition
Languages
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Authors (2):
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Krishna Sankar Krishna Sankar
Author Profile Icon Krishna Sankar
Krishna Sankar
Holden Karau Holden Karau
Author Profile Icon Holden Karau
Holden Karau
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Toc

Table of Contents (13) Chapters Close

Preface 1. Installing Spark and Setting Up Your Cluster 2. Using the Spark Shell FREE CHAPTER 3. Building and Running a Spark Application 4. Creating a SparkSession Object 5. Loading and Saving Data in Spark 6. Manipulating Your RDD 7. Spark 2.0 Concepts 8. Spark SQL 9. Foundations of Datasets/DataFrames – The Proverbial Workhorse for DataScientists 10. Spark with Big Data 11. Machine Learning with Spark ML Pipelines 12. GraphX

Spark abstractions


The goal of this book is that you get a good understanding of Spark via hands-on programming. The best way to understand Spark is to work through operations iteratively. As we are still in the initial chapters, some of the things might not be very clear, but they should be clear enough for the current context. As you write code and read further chapters, you will gather more information and insight. With this in mind, let's move to a quick discussion on Spark abstractions. We will revisit the abstractions in more detail in the following chapters.

The main features of Apache Spark are distributed data representation and computation, thus achieving massive scaling of data operations. Spark's primary unit for representation of data is RDD, which allows for easy parallel operations on the data. Until 2.0.0, everyone worked with RDDs. However, they are low-level raw structures, which can be optimized for performance and scalability.

This is where Datasets/DataFrames come into...

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