Generative AI Math: Applications and Practical Insights" delves into the intersection of mathematics and generative artificial intelligence, offering a comprehensive exploration of advanced AI concepts. Beginning with foundational topics such as probability theory, statistics, linear algebra, and calculus, the book provides readers with a robust understanding of the mathematical principles underpinning generative AI. Moving beyond theory, the book explores various applications of generative AI across diverse domains. It covers image generation and transformation techniques like style transfer and super-resolution, text generation and summarization using models like GPT-3 and transformers, and music and art generation through neural networks and deep learning algorithms. Furthermore, the book delves into cutting-edge topics such as reinforcement learning, Bayesian methods, and ethical considerations in AI, providing readers with insights into the latest advancements and future directions of generative AI technology. Practical examples, case studies, and hands-on exercises with complete solutions are included to facilitate learning and application. "Generative AI Math: Applications and Practical Insights" serves as an invaluable resource for students, researchers, and practitioners looking to deepen their understanding of generative AI through a mathematical lens. By bridging the gap between theory and practice, the book equips readers with the tools and knowledge necessary to explore and innovate in the rapidly evolving field of artificial intelligence.