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Big Data Analytics with Hadoop 3

You're reading from   Big Data Analytics with Hadoop 3 Build highly effective analytics solutions to gain valuable insight into your big data

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Product type Paperback
Published in May 2018
Publisher Packt
ISBN-13 9781788628846
Length 482 pages
Edition 1st Edition
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Author (1):
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Sridhar Alla Sridhar Alla
Author Profile Icon Sridhar Alla
Sridhar Alla
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Table of Contents (13) Chapters Close

Preface 1. Introduction to Hadoop FREE CHAPTER 2. Overview of Big Data Analytics 3. Big Data Processing with MapReduce 4. Scientific Computing and Big Data Analysis with Python and Hadoop 5. Statistical Big Data Computing with R and Hadoop 6. Batch Analytics with Apache Spark 7. Real-Time Analytics with Apache Spark 8. Batch Analytics with Apache Flink 9. Stream Processing with Apache Flink 10. Visualizing Big Data 11. Introduction to Cloud Computing 12. Using Amazon Web Services

SparkSQL and DataFrames


Before Apache Spark, Apache Hive was the go-to technology whenever anyone wanted to run an SQL-like query on large amount of data. Apache Hive essentially translated an SQL query into MapReduce, like logic automatically making it very easy to perform many kinds of analytics on big data without actually learning to write complex code in Java and Scala. 

With the advent of Apache Spark, there was a paradigm shift in how we could perform analysis at a big data scale. Spark SQL provides an SQL-like layer on top of Apache Spark's distributed computation abilities that is rather simple to use. In fact, Spark SQL can be used as an online analytical processing database. Spark SQL works by parsing the SQL-like statement into an abstract syntax tree (AST), subsequently converting that plan to a logical plan and then optimizing the logical plan into a physical plan that can be executed, as shown in the following diagram:

The final execution uses the underlying DataFrame API, making...

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