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  • Book Overview & Buying PyTorch Deep Learning Hands-On
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PyTorch Deep Learning Hands-On

PyTorch Deep Learning Hands-On

By : Sherin Thomas , Sudhanshu Passi , Xingyu Liao, Bharath G S
2.9 (10)
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PyTorch Deep Learning Hands-On

PyTorch Deep Learning Hands-On

2.9 (10)
By: Sherin Thomas , Sudhanshu Passi , Xingyu Liao, Bharath G S

Overview of this book

PyTorch Deep Learning Hands-On is a book for engineers who want a fast-paced guide to doing deep learning work with PyTorch. It is not an academic textbook and does not try to teach deep learning principles. The book will help you most if you want to get your hands dirty and put PyTorch to work quickly. PyTorch Deep Learning Hands-On shows how to implement the major deep learning architectures in PyTorch. It covers neural networks, computer vision, CNNs, natural language processing (RNN), GANs, and reinforcement learning. You will also build deep learning workflows with the PyTorch framework, migrate models built in Python to highly efficient TorchScript, and deploy to production using the most sophisticated available tools. Each chapter focuses on a different area of deep learning. Chapters start with a refresher on how the model works, before sharing the code you need to implement it in PyTorch. This book is ideal if you want to rapidly add PyTorch to your deep learning toolset.
Table of Contents (11 chapters)
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10
Index

Summary

In this chapter, we learned about a whole new array of neural networks that have turned the artificial intelligence world upside down. Generative networks were always important to us, but we could not reach human-comparable accuracy with them until recently. Although there are a few successful generative network architectures, we have discussed only the two most popular networks in this chapter.

Generative networks use basic architectures like CNNs or RNNs as the building blocks of the overall network, but use some nice techniques to make sure the network is learning to generate some output. So far, generative networks have been widely used in art, and we could easily predict that generative networks will become the foundation of many sophisticated networks, since the model has to learn data distribution to generate output. Perhaps the most promising use of generative networks won't be generation but learning data distribution through generation and using that information...

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PyTorch Deep Learning Hands-On
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