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Big Data Analytics

You're reading from   Big Data Analytics Real time analytics using Apache Spark and Hadoop

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Product type Paperback
Published in Sep 2016
Publisher Packt
ISBN-13 9781785884696
Length 326 pages
Edition 1st Edition
Tools
Concepts
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Author (1):
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Venkat Ankam Venkat Ankam
Author Profile Icon Venkat Ankam
Venkat Ankam
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Table of Contents (12) Chapters Close

Preface 1. Big Data Analytics at a 10,000-Foot View 2. Getting Started with Apache Hadoop and Apache Spark FREE CHAPTER 3. Deep Dive into Apache Spark 4. Big Data Analytics with Spark SQL, DataFrames, and Datasets 5. Real-Time Analytics with Spark Streaming and Structured Streaming 6. Notebooks and Dataflows with Spark and Hadoop 7. Machine Learning with Spark and Hadoop 8. Building Recommendation Systems with Spark and Mahout 9. Graph Analytics with GraphX 10. Interactive Analytics with SparkR Index

Building machine learning pipelines


Spark ML is an API built on top of the DataFrames API of Spark SQL to construct machine learning pipelines. Spark ML is inspired by the scikit-learn project, which makes it easier to combine multiple algorithms into a single pipeline. The following are the concepts used in ML pipelines:

  • DataFrame: A DataFrame is used to create rows and columns of data just like an RDBMS table. A DataFrame can contain text, feature vectors, true labels, and predictions in columns.

  • Transformer: A Transformer is an algorithm to transform a DataFrame into another DataFrame. The ML model is an example of a Transformer that transforms a DataFrame with features into a DataFrame with predictions.

  • Estimator: This is an algorithm to produce a Transformer by fitting on a DataFrame. Generating a model is an example of an Estimator.

  • Pipeline: As the name indicates, a pipeline creates a workflow by chaining multiple Transformers and Estimators together.

  • Parameter: This is an API to...

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