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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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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 SQL how-to in a nutshell


Prior to Spark 2.0.0, the heart of Spark SQL was SchemaRDD, which, as you can guess, associates a schema with an RDD. Of course, internally it does a lot of magic by leveraging the ability to scale and distribute processing and providing flexible storage.

In many ways, data access via Spark SQL is deceptively simple; we mean the process of creating one or more appropriate RDDs by paying attention to the layout, data types, and so on, and then accessing them via SchemaRDDs. We get to use all the interesting features of Spark to create the RDDs: structured data from Hive or Parquet, unstructured data from any source, and the ability to apply RDD operations at scale. Then, you need to overlay the respective schemas to the RDDs by creating SchemaRDDs. Voilà! You now have the ability to run SQL over RDDs. You can see the SchemaRDDs being created in the log entries.

Spark SQL with Spark 2.0

The preceding section was true until Spark 2.0 (actually Datasets have been...

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