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Deep Learning with PyTorch
book

Deep Learning with PyTorch

by Vishnu Subramanian
February 2018
Intermediate to advanced
262 pages
6h 59m
English
Packt Publishing
Content preview from Deep Learning with PyTorch

Summary

In this chapter, we explored the complete life cycle of a neural network in Pytorch, starting from constituting different types of layers, adding activations, calculating cross-entropy loss, and finally optimizing network performance (that is, minimizing loss), by adjusting the weights of layers using the SGD optimizer.

We have studied how to apply the popular ResNET architecture to binary or multi-class classification problems.

While doing this, we have tried to solve the real-world image classification problem of classifying a cat image as a cat and a dog image as a dog. This knowledge can be applied to classify different categories/classes of entities, such as classifying species of fish, identifying different kinds of dogs, categorizing ...

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Publisher Resources

ISBN: 9781788624336Supplemental Content