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Synthetic Data for Machine Learning

You're reading from   Synthetic Data for Machine Learning Revolutionize your approach to machine learning with this comprehensive conceptual guide

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Product type Paperback
Published in Oct 2023
Publisher Packt
ISBN-13 9781803245409
Length 208 pages
Edition 1st Edition
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Author (1):
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Abdulrahman Kerim Abdulrahman Kerim
Author Profile Icon Abdulrahman Kerim
Abdulrahman Kerim
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Table of Contents (25) Chapters Close

Preface 1. Part 1:Real Data Issues, Limitations, and Challenges
2. Chapter 1: Machine Learning and the Need for Data FREE CHAPTER 3. Chapter 2: Annotating Real Data 4. Chapter 3: Privacy Issues in Real Data 5. Part 2:An Overview of Synthetic Data for Machine Learning
6. Chapter 4: An Introduction to Synthetic Data 7. Chapter 5: Synthetic Data as a Solution 8. Part 3:Synthetic Data Generation Approaches
9. Chapter 6: Leveraging Simulators and Rendering Engines to Generate Synthetic Data 10. Chapter 7: Exploring Generative Adversarial Networks 11. Chapter 8: Video Games as a Source of Synthetic Data 12. Chapter 9: Exploring Diffusion Models for Synthetic Data 13. Part 4:Case Studies and Best Practices
14. Chapter 10: Case Study 1 – Computer Vision 15. Chapter 11: Case Study 2 – Natural Language Processing 16. Chapter 12: Case Study 3 – Predictive Analytics 17. Chapter 13: Best Practices for Applying Synthetic Data 18. Part 5:Current Challenges and Future Perspectives
19. Chapter 14: Synthetic-to-Real Domain Adaptation 20. Chapter 15: Diversity Issues in Synthetic Data 21. Chapter 16: Photorealism in Computer Vision 22. Chapter 17: Conclusion 23. Index 24. Other Books You May Enjoy

What is a GAN?

In this section, we will introduce GANs and briefly discuss the evolution and progression of this particular data generation method. Then, we will explain the standard architecture of a typical GAN and how they work.

The concept of GANs was introduced in the 2014 paper Generative Adversarial Networks (https://arxiv.org/abs/1406.2661), by Ian J. Goodfellow and his research team. In the same year, conditional GANs were introduced, allowing us to generate more customizable synthetic data. Then, Deep Convolutional GANs (DCGANs) were suggested in 2015, which facilitated the generation of high-resolution images. After that, CycleGANs were proposed in 2017 for unsupervised image-to-image translation tasks. This opened the door for enormous applications such as domain adaptation. StyleGAN was introduced in 2019, bringing GANs to new fields such as art and fashion.

GANs have also been showing impressive progress in the field of video synthesis. In fact, the recent work...

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