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Table Of Contents
Synthetic Data for Machine Learning
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In this chapter, we will introduce Generative Adversarial Networks (GANs) and discuss the evolution of this data generation method. You will learn about the typical architecture of a GAN. After this, we will explain its training process and discuss the main challenges. Then, we will highlight various applications of GANs, including generating images and text-to-image translation. Additionally, we will study a practical coding example demonstrating how to use GANs to generate photorealistic images. Finally, we will also discuss variations of GANs, such as conditional GANs, CycleGANs, CTGANs, WGANs, WGAN-GPs, and f-GANs.
In this chapter, we’re going to cover the following main topics: