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The development of artificial intelligence (AI) involves the
creation of computer systems that can do activities that would
ordinarily require human intelligence, such as visual perception,
speech recognition, decision making, and language translation.
Through increasingly complex programming approaches, it has been
transforming and advancing the discipline of computer science.
Artificial Intelligence Methods and Applications in Computer
Engineering illuminates how today's computer engineers and
scientists can use AI in real-world applications. It focuses on a
few current and emergent AI applications, allowing a more in-depth
discussion of each topic. Covering topics such as biomedical
research applications, navigation systems, and search engines, this
premier reference source is an excellent resource for computer
scientists, computer engineers, IT managers, students and educators
of higher education, librarians, researchers, and academicians.
This book is meant for readers who want to understand GANs without
the need for a strong mathematical background. Moreover, it covers
the practical applications of GANs, making it an excellent resource
for beginners. A Primer on Generative Adversarial
Networks is suitable for researchers, developers, students,
and anyone who wishes to learn about GANs. It is assumed that the
reader has a basic understanding of machine learning and neural
networks. The book comes with ready-to-run scripts that readers can
use for further research. Python is used as the primary programming
language, so readers should be familiar with its basics.The book
starts by providing an overview of GAN architecture, explaining the
concept of generative models. It then introduces the most
straightforward GAN architecture, which explains how GANs work and
covers the concepts of generator and discriminator. The book then
goes into the more advanced real-world applications of GANs, such
as human face generation, deep fake, CycleGANs, and more. By the
end of the book, readers will have an essential understanding of
GANs and be able to write their own GAN code. They can apply this
knowledge to their projects, regardless of whether they are
beginners or experienced machine learning practitioners.
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