Book Image

Scala and Spark for Big Data Analytics

By : Md. Rezaul Karim, Sridhar Alla
Book Image

Scala and Spark for Big Data Analytics

By: Md. Rezaul Karim, Sridhar Alla

Overview of this book

Scala has been observing wide adoption over the past few years, especially in the field of data science and analytics. Spark, built on Scala, has gained a lot of recognition and is being used widely in productions. Thus, if you want to leverage the power of Scala and Spark to make sense of big data, this book is for you. The first part introduces you to Scala, helping you understand the object-oriented and functional programming concepts needed for Spark application development. It then moves on to Spark to cover the basic abstractions using RDD and DataFrame. This will help you develop scalable and fault-tolerant streaming applications by analyzing structured and unstructured data using SparkSQL, GraphX, and Spark structured streaming. Finally, the book moves on to some advanced topics, such as monitoring, configuration, debugging, testing, and deployment. You will also learn how to develop Spark applications using SparkR and PySpark APIs, interactive data analytics using Zeppelin, and in-memory data processing with Alluxio. By the end of this book, you will have a thorough understanding of Spark, and you will be able to perform full-stack data analytics with a feel that no amount of data is too big.
Table of Contents (19 chapters)

Summary

In this chapter, we discussed the many types of RDDs, such as shuffledRDD, pairRDD, sequenceFileRDD, HadoopRDD, and so on. We also looked at the three main types of aggregations, groupByKey, reduceByKey, and aggregateByKey. We looked into how partitioning works and why it is important to have a proper plan around partitioning to increase the performance. We also looked at shuffling and the concepts of narrow and wide dependencies which are basic tenets of how Spark jobs are broken into stages. Finally, we looked at the important concepts of broadcast variables and accumulators.

The true power of the flexibility of RDDs makes it easy to adapt to most use cases and perform the necessary operations to accomplish the goal.

In the next chapter, we will switch gears to the higher layer of abstraction added to the RDDs as part of the Tungsten initiative known as DataFrames and...