Data Generation
Unlocking the Power of Synthetic, Real, and Simulated Data for Smarter Systems and Scalable Solutions
Échec de l'ajout au panier.
Échec de l'ajout à la liste d'envies.
Échec de la suppression de la liste d’envies.
Échec du suivi du balado
Ne plus suivre le balado a échoué
Obtenez 3 mois à 0,99 $ par mois + 20 $ de crédit Audible
Acheter pour 8,71 $
-
Narrateur(s):
-
Maha Amir
-
Auteur(s):
-
Sam Miley
À propos de cet audio
In the age of artificial intelligence, machine learning, and data-driven innovation, the quality and quantity of data have become critical to success. Yet real-world data is often incomplete, biased, sensitive, or scarce. Data Generation explores how synthetic, real, and simulated data can be strategically created and used to overcome these limitations—fueling smarter systems, scalable solutions, and more ethical outcomes.
This comprehensive guide dives into the methods, tools, and frameworks behind modern data generation, from generating high-quality synthetic datasets for machine learning to building simulation environments that mirror complex real-world systems. You’ll discover how to augment datasets, preserve privacy, test edge cases, and accelerate innovation in industries ranging from autonomous vehicles and healthcare to finance and cybersecurity.
Inside this book, you’ll learn:
- The principles and trade-offs of real, synthetic, and simulated data
- How to generate synthetic data using AI models such as GANs and variational autoencoders
- Techniques for building digital twins and simulation platforms for training and testing
- Strategies for data augmentation, bias reduction, and privacy protection
- Real-world applications and case studies across sectors
- Future directions in data generation for responsible AI and scalable system design
This book equips you with the tools and insights to unlock new possibilities with generated data—without compromising quality, ethics, or performance.
©2025 Sam Miley (P)2025 Sam Miley