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Fast Data Processing with Spark 2

You're reading from   Fast Data Processing with Spark 2 Accelerate your data for rapid insight

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Product type Paperback
Published in Oct 2016
Publisher Packt
ISBN-13 9781785889271
Length 274 pages
Edition 3rd Edition
Languages
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Authors (2):
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Krishna Sankar Krishna Sankar
Author Profile Icon Krishna Sankar
Krishna Sankar
Holden Karau Holden Karau
Author Profile Icon Holden Karau
Holden Karau
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Toc

Table of Contents (13) Chapters Close

Preface 1. Installing Spark and Setting Up Your Cluster 2. Using the Spark Shell FREE CHAPTER 3. Building and Running a Spark Application 4. Creating a SparkSession Object 5. Loading and Saving Data in Spark 6. Manipulating Your RDD 7. Spark 2.0 Concepts 8. Spark SQL 9. Foundations of Datasets/DataFrames – The Proverbial Workhorse for DataScientists 10. Spark with Big Data 11. Machine Learning with Spark ML Pipelines 12. GraphX

Apache Spark - evolution


It is interesting to trace the evolution of Apache Spark from an abstract perspective. Spark started out as a fast engine for big data processing-fast to run the code and write code as well. The original value proposition for Spark was that it offered faster in-memory computation graphs with compatibility with the Hadoop ecosystem, plus interesting and very usable APIs in Scala, Java, and Python. RDDs ruled the world. The focus was on iterative and interactive apps that operated on data multiple times, which was not a good use case for Hadoop.

The evolution didn't stop there. As Matei pointed out in his talk at MIT, users wanted more, and the Spark programming model evolved to include the following functionalities:

  • More complex, multi-pass analytics (for example, ML pipelines and graph)

  • More interactive ad-hoc queries

  • More real-time stream processing

  • More parallel machine learning algorithms beyond the basic RDDs

  • More types of data sources as input and output

  • More integration...

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