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Generative AI with Python and TensorFlow 2

You're reading from   Generative AI with Python and TensorFlow 2 Create images, text, and music with VAEs, GANs, LSTMs, Transformer models

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Product type Paperback
Published in Apr 2021
Publisher Packt
ISBN-13 9781800200883
Length 488 pages
Edition 1st Edition
Languages
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Authors (2):
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Raghav Bali Raghav Bali
Author Profile Icon Raghav Bali
Raghav Bali
Joseph Babcock Joseph Babcock
Author Profile Icon Joseph Babcock
Joseph Babcock
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Table of Contents (16) Chapters Close

Preface 1. An Introduction to Generative AI: "Drawing" Data from Models 2. Setting Up a TensorFlow Lab FREE CHAPTER 3. Building Blocks of Deep Neural Networks 4. Teaching Networks to Generate Digits 5. Painting Pictures with Neural Networks Using VAEs 6. Image Generation with GANs 7. Style Transfer with GANs 8. Deepfakes with GANs 9. The Rise of Methods for Text Generation 10. NLP 2.0: Using Transformers to Generate Text 11. Composing Music with Generative Models 12. Play Video Games with Generative AI: GAIL 13. Emerging Applications in Generative AI 14. Other Books You May Enjoy
15. Index

Inverse Autoregressive Flow

In our discussion earlier, it was noted that we want to use q(z|x) as a way to approximate the "true" p(z|x) that would allow us to generate an ideal encoding of the data, and thus sample from it to generate new images. So far, we've assumed that q(z|x) has a relatively simple distribution, such as a vector of Gaussian distribution random variables that are independent (a diagonal covariance matrix with 0s on the non-diagonal elements). This sort of distribution has many benefits; because it is simple, we have an easy way to generate new samples by drawing from random normal distributions, and because it is independent, we can separately tune each element of the latent vector z to influence parts of the output image.

However, such a simple distribution may not fit the desired output distribution of data well, increasing the KL divergence between p(z|x) and q(z|x). Is there a way we can keep the desirable properties of q(z|x) but &quot...

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