Book Image

Synthetic Data for Machine Learning

By : Abdulrahman Kerim
Book Image

Synthetic Data for Machine Learning

By: Abdulrahman Kerim

Overview of this book

The machine learning (ML) revolution has made our world unimaginable without its products and services. However, training ML models requires vast datasets, which entails a process plagued by high costs, errors, and privacy concerns associated with collecting and annotating real data. Synthetic data emerges as a promising solution to all these challenges. This book is designed to bridge theory and practice of using synthetic data, offering invaluable support for your ML journey. Synthetic Data for Machine Learning empowers you to tackle real data issues, enhance your ML models' performance, and gain a deep understanding of synthetic data generation. You’ll explore the strengths and weaknesses of various approaches, gaining practical knowledge with hands-on examples of modern methods, including Generative Adversarial Networks (GANs) and diffusion models. Additionally, you’ll uncover the secrets and best practices to harness the full potential of synthetic data. By the end of this book, you’ll have mastered synthetic data and positioned yourself as a market leader, ready for more advanced, cost-effective, and higher-quality data sources, setting you ahead of your peers in the next generation of ML.
Table of Contents (25 chapters)
1
Part 1:Real Data Issues, Limitations, and Challenges
5
Part 2:An Overview of Synthetic Data for Machine Learning
8
Part 3:Synthetic Data Generation Approaches
13
Part 4:Case Studies and Best Practices
18
Part 5:Current Challenges and Future Perspectives

Summary

In this chapter, we provided a brief overview of what is covered in this book. First, we discussed the need for real data and the main problems usually associated with collecting and annotating large-scale real datasets. Then, we saw that synthetic data presents a clever solution that elegantly mitigates most of these problems and issues. Second, we mastered the main approaches to generating diverse and realistic synthetic data. Third, we explored various case studies and learned about the main issues and limitations of synthetic-data-based ML solutions.

Essentially, you have learned how to overcome real data issues and how to improve your ML model’s performance. Moreover, you have mastered the art of meticulously weighing the pros and cons of each synthetic data generation approach. You have also acquired best practices to better leverage synthetic data in practice.

Now, as we approach the end of our learning journey with synthetic data for ML, you are well-equipped...