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Java Deep Learning Cookbook
book

Java Deep Learning Cookbook

by Rahul Raj
November 2019
Intermediate to advanced
304 pages
8h 40m
English
Packt Publishing
Content preview from Java Deep Learning Cookbook

How it works...

In step 2, we pass both the dataset iterator and epoch count to start the training session. We use a very large time series dataset, hence a large epoch value will result in more training time. Also, a large epoch may not always guarantee good results, and may end up overfitting. So, we need to run the training experiment multiple times to arrive at an optimal value for epochs and other important hyperparameters. An optimal value would be the bound where you observe the maximum performance for the neural network.

Effectively, we are optimizing our training process using memory-gated cells in layers. As we discussed earlier, in the Constructing input layers for the network recipe, LSTMs are good for holding long-term dependencies ...

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Publisher Resources

ISBN: 9781788995207Supplemental Content