Elements of Deep Learning by Benyamin Ghojogh (.ePUB)+
File Size: 69.1 MB
Elements of Deep Learning by Benyamin Ghojogh, Ali Ghodsi
Requirements: .ePUB, .PDF reader, 69.1 MB | True PDF, True EPUB
Overview: This textbook offers a comprehensive introduction to Deep Learning and neural networks, integrating core foundations with the latest advances. It begins with essential Machine Learning concepts and classic neural network architectures before progressing through convolutional models, backpropagation, regularization, generalization theory, PAC learning, and Boltzmann machines. Advanced chapters cover sequence models — including recurrent networks, LSTMs, attention, Transformers, state-space models, and large language models — alongside deep generative approaches such as VAEs, GANs, and diffusion models. Emerging topics include graph neural networks, self-supervised learning, metric learning, reinforcement learning, meta-learning, model compression, and knowledge distillation. Balancing mathematical rigor with hands-on practice, Elements of Deep Learning emphasizes both theoretical depth and real-world application. Different theories are introduced with PyTorch-based code examples, helping readers to translate theory into implementation. Organized into five sections—fundamentals, sequence models, generative models, emerging topics, and practice—the text provides a unified roadmap for mastering modern Deep Learning.
Genre: Non-Fiction > Tech & Devices

Free Download links: