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Learning Apache Spark 2

You're reading from   Learning Apache Spark 2 A beginner's guide to real-time Big Data processing using the Apache Spark framework

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Product type Paperback
Published in Mar 2017
Publisher Packt
ISBN-13 9781785885136
Length 356 pages
Edition 1st Edition
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Author (1):
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Muhammad Asif Abbasi Muhammad Asif Abbasi
Author Profile Icon Muhammad Asif Abbasi
Muhammad Asif Abbasi
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Table of Contents (12) Chapters Close

Preface 1. Architecture and Installation 2. Transformations and Actions with Spark RDDs FREE CHAPTER 3. ETL with Spark 4. Spark SQL 5. Spark Streaming 6. Machine Learning with Spark 7. GraphX 8. Operating in Clustered Mode 9. Building a Recommendation System 10. Customer Churn Prediction Theres More with Spark

Chapter 6. Machine Learning with Spark

We have spent a considerable amount of time understanding the architecture of Spark, RDDs, DataFrames and Dataset-based APIs, Spark SQL, and Streaming, all of which was primarily related to building the foundations of what we are going to discuss in this chapter, which is machine learning. Our focus has been on getting the data onto the Spark platform either in batch or in streaming fashion, and transforming it into the desired state.

Once you have the data in the platform, what do you do with it? You can either use it for reporting purposes, building dashboards, or letting your data scientists analyze the data to detect patterns, identify reasons for specific events, understand the behavior of customers, group them into segments to aid better decision making, or predict the future.

The power of Spark's MLLib stems from the fact that it lets you operate your algorithms over a distributed dataset, which can sometimes be its weakness too...

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