Generative Deep Learning | With Python: Unleashing The Creative Power Of AI (Mastering AI And Python)
Product Score
See total with duties & tax
Select location for accurate pricing, availability, and delivery estimates
Order today for delivery July 9 - 12
Or by July 5 - 10 with expedited shipping
Cancel for any reason at any time until your order shipped. Once your order has shipped, you may return your order. For details, please review our Returns and Cancellations policies. Special order items may not be eligible for cancellation.
Most items can be returned within 15 days of receipt for a refund of the product cost less return shipping. Shipping, duties, and taxes are not refundable. For details, please review our Returns and Cancellations policies.
Now you have access to our eLearning Platform which includes: ✅ Free Repository Code with all code blocks used in this book. ✅ Access to Free Chapters of all our library of programming published books. ✅ Free premium customer support. ✅ Much more... SHAPE A NEW WORLD. JOIN THE AI REVOLUTION Welcome to a journey where artificial intelligence meets creativity, where deep learning algorithms dream, and where you are the architect of these dreams. Introducing Generative Deep Learning with Python: Unleashing the Creative Power of AI - your comprehensive guide to the enchanting world of generative models. This book is a comprehensive guide that explores this revolutionary domain.
It promises to take you on a journey that cuts through the complexity and illuminates the principles that power generative models. It's a ticket to a world where art meets science, creativity aligns with technology, and AI dreams become a reality. This book is more than a guide; it's a thrilling adventure into this realm. Our journey starts with the fundamentals, demystifying concepts like Generative Adversarial Networks (GANs), Variational Autoencoders (VAEs), and Autoregressive models. This is a ticket for everyone, whether you're a seasoned AI practitioner or an enthusiastic beginner. Interest deepened? Get your hands on the three exciting projects that form the bedrock of our book: Face Generation with GANs, Handwritten Digit Generation with VAEs, and Text Generation with Autoregressive Models.
These practical projects give you the opportunity to apply your knowledge and gain insights into the process of building and training generative models. The desire for more? Delve into advanced topics, exploring challenges, solutions, and prospects. From understanding and tackling the notorious problem of Mode Collapse to incorporating domain knowledge into your generative models, the book covers it all. Feeling the call to action? We venture into emerging trends, the impacts on various industries, and touch on ethical, social, and regulatory implications of generative deep learning. These insights are crucial for anyone looking to navigate and shape the landscape of AI. What will I get from this book? Here are the details: ✅ Now Include a Free Repository Code with all code blocks used in this book. ✅ This free resource allows you to copy and paste the book code for easy manipulation. ✅ Free premium customer support. Chapter 1: Introduction to Deep Learning Chapter 2: Understanding Generative Models Chapter 3: Deep Dive into Generative Adversarial Networks (GANs) Chapter 4: Project: Face Generation with GANs Chapter 5: Exploring Variational Autoencoders (VAEs) Chapter 6: Project: Handwritten Digit Generation with VAEs Chapter 7: Understanding Autoregressive Models Chapter 8: Project: Text Generation with Autoregressive Models Chapter 9: Advanced Topics in Generative Deep Learning Chapter 10: Navigating the Future Landscape of Generative Deep Learning Step into the future of AI with Generative Deep Learning with Python: Unleashing the Creative Power of AI. It's an invitation to learn, create, and join the movement that's pushing the boundaries of the possible. Let's embark on this exciting journey to harness the creative power of AI together!
SKID | 0IRK4P87DJA05 |
Manufacturer | Independently published |
Author | Technologies, Cuantum |
Binding | Paperback |
Number of pages | 246 |
Publication date | 20230521 |
EAN | 9798395510143 |