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GANs in Action: Deep learning with Generative Adversarial Networks

✍ Scribed by Jakub Langr, Vladimir Bok


Publisher
Manning Publications
Year
2019
Tongue
English
Leaves
276
Edition
1
Category
Library

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✦ Synopsis


GANs in Action teaches you how to build and train your own Generative Adversarial Networks, one of the most important innovations in deep learning. In this book, you'll learn how to start building your own simple adversarial system as you explore the foundation of GAN architecture: the generator and discriminator networks.

About the Technology
Generative Adversarial Networks, GANs, are an incredible AI technology capable of creating images, sound, and videos that are indistinguishable from the "real thing." By pitting two neural networks against each otherβ€”one to generate fakes and one to spot themβ€”GANs rapidly learn to produce photo-realistic faces and other media objects. With the potential to produce stunningly realistic animations or shocking deepfakes, GANs are a huge step forward in deep learning systems.

About the Book
GANs in Action teaches you to build and train your own Generative Adversarial Networks. You'll start by creating simple generator and discriminator networks that are the foundation of GAN architecture. Then, following numerous hands-on examples, you'll train GANs to generate high-resolution images, image-to-image translation, and targeted data generation. Along the way, you'll find pro tips for making your system smart, effective, and fast.

What's inside
β€’ Building your first GAN
β€’ Handling the progressive growing of GANs
β€’ Practical applications of GANs
β€’ Troubleshooting your system

About the Reader
For data professionals with intermediate Python skills, and the basics of deep learning-based image processing.

About the Author
Jakub Langr is a Computer Vision Cofounder at Founders Factory (YEPIC.AI). Vladimir Bok is a Senior Product Manager overseeing machine learning infrastructure and research teams at a New York-based startup.

✦ Table of Contents


PART 1 - INTRODUCTION TO GANS AND GENERATIVE MODELING
1. Introduction to GANs
2. Intro to generative modeling with autoencoders
3. Your first GAN: Generating handwritten digits
4. Deep Convolutional GAN

PART 2 - ADVANCED TOPICS IN GANS
5. Training and common challenges: GANing for success
6. Progressing with GANs
7. Semi-Supervised GAN
8. Conditional GAN
9. CycleGAN

PART 3 - WHERE TO GO FROM HERE
10. Adversarial examples
11. Practical applications of GANs
12. Looking ahead

✦ Subjects


Machine Learning; Deep Learning; Unsupervised Learning; Adversarial Machine Learning; Python; Convolutional Neural Networks; Autoencoders; Generative Adversarial Networks; Keras; TensorFlow; Semi-supervised Learning; CycleGAN; Conditional GANs


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