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PySpark Cookbook

PySpark Cookbook

By : Lee, Drabas
1.7 (3)
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PySpark Cookbook

PySpark Cookbook

1.7 (3)
By: Lee, Drabas

Overview of this book

Apache Spark is an open source framework for efficient cluster computing with a strong interface for data parallelism and fault tolerance. The PySpark Cookbook presents effective and time-saving recipes for leveraging the power of Python and putting it to use in the Spark ecosystem. You’ll start by learning the Apache Spark architecture and how to set up a Python environment for Spark. You’ll then get familiar with the modules available in PySpark and start using them effortlessly. In addition to this, you’ll discover how to abstract data with RDDs and DataFrames, and understand the streaming capabilities of PySpark. You’ll then move on to using ML and MLlib in order to solve any problems related to the machine learning capabilities of PySpark and use GraphFrames to solve graph-processing problems. Finally, you will explore how to deploy your applications to the cloud using the spark-submit command. By the end of this book, you will be able to use the Python API for Apache Spark to solve any problems associated with building data-intensive applications.
Table of Contents (9 chapters)
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Machine Learning with the ML Module

In this chapter, we will move on to the currently supported machine learning module of PySpark—the ML module. The ML module, like MLLib, exposes a vast array of machine learning models, almost completely covering the spectrum of the most-used (and usable) models. The ML module, however, operates on Spark DataFrames, making it much more performant as it can leverage the tungsten execution optimizations.

In this chapter, you will learn about the following recipes:

  • Introducing Transformers
  • Introducing Estimators
  • Introducing Pipelines
  • Selecting the most predictable features
  • Predicting forest coverage types
  • Estimating forest elevation
  • Clustering forest cover types
  • Tuning hyperparameters
  • Extracting features from text
  • Discretizing continuous variables
  • Standardizing continuous variables
  • Topic mining

In this chapter, we will use data we downloaded...

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