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Learning Spark SQL

You're reading from   Learning Spark SQL Architect streaming analytics and machine learning solutions

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Product type Paperback
Published in Sep 2017
Publisher Packt
ISBN-13 9781785888359
Length 452 pages
Edition 1st Edition
Languages
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Author (1):
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Aurobindo Sarkar Aurobindo Sarkar
Author Profile Icon Aurobindo Sarkar
Aurobindo Sarkar
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Table of Contents (13) Chapters Close

Preface 1. Getting Started with Spark SQL FREE CHAPTER 2. Using Spark SQL for Processing Structured and Semistructured Data 3. Using Spark SQL for Data Exploration 4. Using Spark SQL for Data Munging 5. Using Spark SQL in Streaming Applications 6. Using Spark SQL in Machine Learning Applications 7. Using Spark SQL in Graph Applications 8. Using Spark SQL with SparkR 9. Developing Applications with Spark SQL 10. Using Spark SQL in Deep Learning Applications 11. Tuning Spark SQL Components for Performance 12. Spark SQL in Large-Scale Application Architectures

Understanding Supervised learning


The most common form of machine learning is learning; for example, if we are building a system to classify a specific set of images, we first collect a large Dataset of images from the same categories. During training, the machine is shown an image, and it produces an output in the form of a vector of scores, one for each category. As a result of the training, we expect the desired category to have the highest score out of all the categories. 

A particular type of deep network--the convolutional neural network (ConvNet/CNN)--is much easier to train and generalizes much better fully-connected networks. In supervised learning scenarios, deep convolutional networks have significantly improved the results of processing images, video, speech, and audio data. Similarly, recurrent nets have shone the light on sequential data, such as text and speech. We will explore these types of neural networks in the subsequent sections.

Understanding convolutional neural networks...

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