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You're reading from  Java Deep Learning Cookbook

Product typeBook
Published inNov 2019
Reading LevelIntermediate
PublisherPackt
ISBN-139781788995207
Edition1st Edition
Languages
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Author (1)
Rahul Raj
Rahul Raj
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Rahul Raj

Rahul Raj has more than 7 years of IT industry experience in software development, business analysis, client communication, and consulting on medium-/large-scale projects in multiple domains. Currently, he works as a lead software engineer in a top software development firm. He has extensive experience in development activities comprising requirement analysis, design, coding, implementation, code review, testing, user training, and enhancements. He has written a number of articles about neural networks in Java and they are featured by DL4J/ official Java community channels. He is also a certified machine learning professional, certified by Vskills, the largest government certification body in India.
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Extracting and preparing MNIST data

Unlike supervised image classification use cases, we will perform an anomaly detection task on the MNIST dataset. On top of that, we are using an unsupervised model, which means that we will not be using any type of label to perform the training process. To start the ETL process, we will extract this unsupervised MNIST data and prepare it so that it is usable for neural network training.

How to do it...

  1. Create iterators for the MNIST data using MnistDataSetIterator:
DataSetIterator iter = new MnistDataSetIterator(miniBatchSize,numOfExamples,binarize);

  1. Use SplitTestAndTrain to split the base iterator into train/test iterators:
DataSet ds = iter.next();
SplitTestAndTrain split = ds...
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Java Deep Learning Cookbook
Published in: Nov 2019Publisher: PacktISBN-13: 9781788995207

Author (1)

author image
Rahul Raj

Rahul Raj has more than 7 years of IT industry experience in software development, business analysis, client communication, and consulting on medium-/large-scale projects in multiple domains. Currently, he works as a lead software engineer in a top software development firm. He has extensive experience in development activities comprising requirement analysis, design, coding, implementation, code review, testing, user training, and enhancements. He has written a number of articles about neural networks in Java and they are featured by DL4J/ official Java community channels. He is also a certified machine learning professional, certified by Vskills, the largest government certification body in India.
Read more about Rahul Raj