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Hands-on Deep Learning: A Guide to Deep Learning with Projects and Applications

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Hands-on Deep Learning: A Guide to Deep Learning with Projects and Applications

This book discusses deep learning, from its fundamental principles to its practical applications, with hands-on exercises and coding. It focuses on deep learning techniques and shows how to apply them across a wide range of practical scenarios. The book begins with an introduction to the core concepts of deep learning. It delves into topics such as transfer learning, multi-task learning, and end-to-end learning, providing insights into various deep learning models and their real-world applications. Next, it covers neural networks, progressing from single-layer perceptrons to multi-layer perceptrons, and solving the complexities of backpropagation and gradient descent. It explains optimizing model performance through effective techniques, addressing key considerations such as hyperparameters, bias, variance, and data division. It also covers convolutional neural networks (CNNs) through two comprehensive chapters, covering the architecture, components, and significance of kernels implementing well-known CNN models such as AlexNet and LeNet. It concludes with exploring autoencoders and generative models such as Hopfield Networks and Boltzmann Machines, applying these techniques to a diverse set of practical applications. These applications include image classification, object detection, sentiment analysis, COVID-19 detection, and ChatGPT. By the end of this book, you will have gained a thorough understanding of deep learning, from its fundamental principles to its innovative applications, enabling you to apply this knowledge to solve a wide range of real-world problems. What You Will Learn What are deep neural networks? What is transfer learning, multi-task learning, and end-to-end learning? What are hyperparameters, bias, variance, and data division? What are CNN and RNN? Who This Book Is For Machine learning engineers, data scientists, AI practitioners, software developers, and engineers interested in deep learning

Looking for a high-quality, original digital edition of Hands-on Deep Learning: A Guide to Deep Learning with Projects and Applications ? This official electronic version is published by Apress and offers a seamless reading experience, perfect for professionals, students, and enthusiasts in Computer Engineering.
Unlike EPUB files, this is the authentic digital edition with complete formatting, images, and original content as intended by the author .
Enjoy the convenience of digital reading without compromising on quality. Order Hands-on Deep Learning: A Guide to Deep Learning with Projects and Applications today and get instant access to this essential book!

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