Book Image

Generative AI with Python and TensorFlow 2

By : Joseph Babcock, Raghav Bali
4 (1)
Book Image

Generative AI with Python and TensorFlow 2

4 (1)
By: Joseph Babcock, Raghav Bali

Overview of this book

Machines are excelling at creative human skills such as painting, writing, and composing music. Could you be more creative than generative AI? In this book, you’ll explore the evolution of generative models, from restricted Boltzmann machines and deep belief networks to VAEs and GANs. You’ll learn how to implement models yourself in TensorFlow and get to grips with the latest research on deep neural networks. There’s been an explosion in potential use cases for generative models. You’ll look at Open AI’s news generator, deepfakes, and training deep learning agents to navigate a simulated environment. Recreate the code that’s under the hood and uncover surprising links between text, image, and music generation.
Table of Contents (16 chapters)
14
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15
Index

Improved GANs

Vanilla GAN proved the potential of adversarial networks. The ease of setting up the models and the quality of the output sparked much interest in this field. This led to a lot of research in improving the GAN paradigm. In this section, we will cover a few of the major improvements in developing GANs.

Deep Convolutional GAN

Published in 2016, this work by Radford et al. introduced several key contributions to improve GAN outputs apart from focusing on convolutional layers, which are discussed in the original GAN paper. The 2016 paper emphasized using deeper architectures instead. Figure 6.10 shows the generator architecture for a Deep Convolutional GAN (DCGAN) (as proposed by the authors). The generator takes the noise vector as input and then passes it through a repeating setup of up-sampling layers, convolutional layers, and batch normalization layers to stabilize the training.

Figure 6.10: DCGAN generator architecture7

Until the introduction of...