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Scala and Spark for Big Data Analytics

You're reading from   Scala and Spark for Big Data Analytics Explore the concepts of functional programming, data streaming, and machine learning

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Product type Paperback
Published in Jul 2017
Publisher Packt
ISBN-13 9781785280849
Length 796 pages
Edition 1st Edition
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Concepts
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Authors (2):
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Sridhar Alla Sridhar Alla
Author Profile Icon Sridhar Alla
Sridhar Alla
Md. Rezaul Karim Md. Rezaul Karim
Author Profile Icon Md. Rezaul Karim
Md. Rezaul Karim
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Toc

Table of Contents (19) Chapters Close

Preface 1. Introduction to Scala 2. Object-Oriented Scala FREE CHAPTER 3. Functional Programming Concepts 4. Collection APIs 5. Tackle Big Data – Spark Comes to the Party 6. Start Working with Spark – REPL and RDDs 7. Special RDD Operations 8. Introduce a Little Structure - Spark SQL 9. Stream Me Up, Scotty - Spark Streaming 10. Everything is Connected - GraphX 11. Learning Machine Learning - Spark MLlib and Spark ML 12. My Name is Bayes, Naive Bayes 13. Time to Put Some Order - Cluster Your Data with Spark MLlib 14. Text Analytics Using Spark ML 15. Spark Tuning 16. Time to Go to ClusterLand - Deploying Spark on a Cluster 17. Testing and Debugging Spark 18. PySpark and SparkR

A comparative analysis between clustering algorithms

Gaussian mixture is used mainly for expectation minimization, which is an example of an optimization algorithm. Bisecting K-means, which is faster than regular K-means, also produces slightly different clustering results. Below we try to compare these three algorithms. We will show a performance comparison in terms of model building time and the computional cost for each algorithm. As shown in the following code, we can compute the cost in terms of WCSS. The following lines of code can be used to compute the WCSS for the K-means and bisecting algorithms:

val WCSSS = model.computeCost(landRDD) // land RDD is the training set 
println("Within-Cluster Sum of Squares = " + WCSSS) // Less is better

For the dataset we used throughout this chapter, we got the following values of WCSS:

Within-Cluster Sum of Squares of Bisecting...
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