Book Image

Java Deep Learning Cookbook

By : Rahul Raj
Book Image

Java Deep Learning Cookbook

By: Rahul Raj

Overview of this book

Java is one of the most widely used programming languages in the world. With this book, you will see how to perform deep learning using Deeplearning4j (DL4J) – the most popular Java library for training neural networks efficiently. This book starts by showing you how to install and configure Java and DL4J on your system. You will then gain insights into deep learning basics and use your knowledge to create a deep neural network for binary classification from scratch. As you progress, you will discover how to build a convolutional neural network (CNN) in DL4J, and understand how to construct numeric vectors from text. This deep learning book will also guide you through performing anomaly detection on unsupervised data and help you set up neural networks in distributed systems effectively. In addition to this, you will learn how to import models from Keras and change the configuration in a pre-trained DL4J model. Finally, you will explore benchmarking in DL4J and optimize neural networks for optimal results. By the end of this book, you will have a clear understanding of how you can use DL4J to build robust deep learning applications in Java.
Table of Contents (14 chapters)

Evaluating the LSTM network for classified output

Now that we have configured the neural network, the next step is to start the training instance, followed by evaluation. The evaluation phase is very important for the training instance. The neural network will try to optimize the gradients for optimal results. An optimal neural network will have good and stable evaluation metrics. So it is important to evaluate the neural network to direct the training process toward the desired results. We will use the test dataset to evaluate the neural network.

In the previous chapter, we explored a use case for time series binary classification. Now we have six labels against which to predict. We have discussed various ways to enhance the network's efficiency. We follow the same approach in the next recipe to evaluate the neural network for optimal results.

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