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  • Book Overview & Buying Apache Spark 2.x Cookbook
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Apache Spark 2.x Cookbook

Apache Spark 2.x Cookbook

By : Yadav
3.3 (3)
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Apache Spark 2.x Cookbook

Apache Spark 2.x Cookbook

3.3 (3)
By: Yadav

Overview of this book

While Apache Spark 1.x gained a lot of traction and adoption in the early years, Spark 2.x delivers notable improvements in the areas of API, schema awareness, Performance, Structured Streaming, and simplifying building blocks to build better, faster, smarter, and more accessible big data applications. This book uncovers all these features in the form of structured recipes to analyze and mature large and complex sets of data. Starting with installing and configuring Apache Spark with various cluster managers, you will learn to set up development environments. Further on, you will be introduced to working with RDDs, DataFrames and Datasets to operate on schema aware data, and real-time streaming with various sources such as Twitter Stream and Apache Kafka. You will also work through recipes on machine learning, including supervised learning, unsupervised learning & recommendation engines in Spark. Last but not least, the final few chapters delve deeper into the concepts of graph processing using GraphX, securing your implementations, cluster optimization, and troubleshooting.
Table of Contents (13 chapters)
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Collaborative filtering using explicit feedback

Collaborative filtering is the most commonly used technique for recommender systems. It has an interesting property—it learns the features on its own. So, in the case of movie ratings, we do not need to provide actual human feedback on whether the movie is romantic or action.

As we saw, in the preceding section, movies have some latent features, such as genre, in the same way, users have some latent features, such as age, gender, and more. Collaborative filtering does not need them; it figures out latent features on its own.

We are going to use an algorithm called alternating least squares (ALS) in this example. This algorithm explains the association between a movie and a user based on a small number of latent features. It uses three training parameters: rank, number of iterations, and lambda (explained later in the chapter). The best way to figure out the...

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