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Hands-On Big Data Analytics with PySpark

You're reading from   Hands-On Big Data Analytics with PySpark Analyze large datasets and discover techniques for testing, immunizing, and parallelizing Spark jobs

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Product type Paperback
Published in Mar 2019
Publisher Packt
ISBN-13 9781838644130
Length 182 pages
Edition 1st Edition
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Authors (3):
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James Cross James Cross
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James Cross
Bartłomiej Potaczek Bartłomiej Potaczek
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Bartłomiej Potaczek
Rudy Lai Rudy Lai
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Rudy Lai
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Table of Contents (15) Chapters Close

Preface 1. Installing Pyspark and Setting up Your Development Environment 2. Getting Your Big Data into the Spark Environment Using RDDs FREE CHAPTER 3. Big Data Cleaning and Wrangling with Spark Notebooks 4. Aggregating and Summarizing Data into Useful Reports 5. Powerful Exploratory Data Analysis with MLlib 6. Putting Structure on Your Big Data with SparkSQL 7. Transformations and Actions 8. Immutable Design 9. Avoiding Shuffle and Reducing Operational Expenses 10. Saving Data in the Correct Format 11. Working with the Spark Key/Value API 12. Testing Apache Spark Jobs 13. Leveraging the Spark GraphX API 14. Other Books You May Enjoy

Using aggregateByKey instead of groupBy()

In this section, we will explore the reason why we use aggregateByKey instead of groupBy.

We will cover the following topics:

  • Why we should avoid the use of groupByKey
  • What aggregateByKey gives us
  • Implementing logic using aggregateByKey

First, we will create our array of user transactions, as shown in the following example:

 val keysWithValuesList =
Array(
UserTransaction("A", 100),
UserTransaction("B", 4),
UserTransaction("A", 100001),
UserTransaction("B", 10),
UserTransaction("C", 10)
)

We will then use parallelize to create an RDD, as we want our data to be key-wise. This is shown in the following example:

 val data = spark.parallelize(keysWithValuesList)
val keyed = data.keyBy(_.userId)

In the preceding code, we invoked keyBy for userId to have the data of payers, key, and user...

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