000 04690nam a2200217 4500
005 20250718224331.0
008 250718b |||||||| |||| 00| 0 eng d
020 _a9781119861867
082 _a006.31
_bMAR
100 _aMartinez-Ramon, Manel
_924662
245 _aDeep learning:
_ba practical introduction
260 _bJohn Wiley & Sons Ltd
_aHoboken
_c2024
300 _axxiii, 392 p.
365 _aUSD
_b110.00
500 _aTable of contents: About the Authors xv Foreword xvii Preface xix Acknowledgment xxi About the Companion Website xxiii 1 The Multilayer Perceptron 1 1.1 Introduction 1 1.2 The Concept of Neuron 2 1.3 Structure of a Neural Network 14 1.4 Activations 21 1.5 Training a Multilayer Perceptron 22 1.6 Conclusion 37 2 Training Practicalities 41 2.1 Introduction 41 2.2 Generalization and Overfitting 42 2.3 Regularization Techniques 45 2.4 Normalization Techniques 50 2.5 Optimizers 52 2.6 Conclusion 58 3 Deep Learning Tools 61 3.1 Python: An Overview 61 3.2 NumPy 72 3.3 Matplotlib 83 3.4 Scipy 97 3.5 Scikit-Learn 107 3.6 Pandas 116 3.7 Seaborn 125 3.8 Python Libraries for NLP 131 3.9 TensorFlow 138 3.10 Keras 141 3.11 Pytorch 144 3.12 Conclusion 149 4 Convolutional Neural Networks 153 4.1 Introduction 153 4.2 Elements of a Convolutional Neural Network 153 4.3 Training a CNN 160 4.4 Extensions of the CNN 166 4.5 Conclusion 184 5 Recurrent Neural Networks 187 5.1 Introduction 187 5.2 RNN Architecture 188 5.3 Training an RNN 191 5.4 Long-Term Dependencies: Vanishing and Exploding Gradients 199 5.5 Deep RNN 201 5.6 Bidirectional RNN 203 5.7 Long Short-Term Memory Networks 204 5.8 Gated Recurrent Units 218 5.9 Conclusion 221 6 Attention Networks and Transformers 225 6.1 Introduction 225 6.2 Attention Mechanisms 227 6.3 Transformers 242 6.4 BERT 249 6.5 GPT-2 256 6.6.1 Comparison between ViTs and CNNs 264 6.7 Conclusion 269 7 Deep Unsupervised Learning I 273 7.1 Introduction 273 7.2 Restricted Boltzmann Machines 274 7.3 Deep Belief Networks 278 7.4 Autoencoders 279 7.5 Undercomplete Autoencoder 284 7.6 Sparse Autoencoder 285 7.7 Denoising Autoencoders 287 7.8 Convolutional Autoencoder 288 7.9 Variational Autoencoders 291 7.10 Conclusion 297 8 Deep Unsupervised Learning II 301 8.1 Introduction 301 8.2 Elements of GAN 303 8.3 Training a GAN 305 8.4 Wasserstein GAN 309 8.5 DCGAN 312 8.6 cGAN 316 8.7 CycleGAN 318 8.8 StyleGAN 323 8.9 StackGAN 328 8.10 Diffusion Models 333 8.11 Conclusion 338 9 Deep Bayesian Networks 341 9.1 Introduction 341 9.2 Bayesian Models 342 9.3 Bayesian Inference Methods for Deep Learning 344 9.4 Conclusion 352 Problems 353 List of Acronyms 355 Notation 359 Bibliography 365 Index 387 [https://www.wiley.com/en-us/Deep+Learning%3A+A+Practical+Introduction-p-9781119861867#tableofcontents-section]
520 _aAn engaging and accessible introduction to deep learning perfect for students and professionals In Deep Learning: A Practical Introduction, a team of distinguished researchers delivers a book complete with coverage of the theoretical and practical elements of deep learning. The book includes extensive examples, end-of-chapter exercises, homework, exam material, and a GitHub repository containing code and data for all provided examples. Combining contemporary deep learning theory with state-of-the-art tools, the chapters are structured to maximize accessibility for both beginning and intermediate students. The authors have included coverage of TensorFlow, Keras, and Pytorch. Readers will also find: Thorough introductions to deep learning and deep learning tools Comprehensive explorations of convolutional neural networks, including discussions of their elements, operation, training, and architectures Practical discussions of recurrent neural networks and non-supervised approaches to deep learning Fulsome treatments of generative adversarial networks as well as deep Bayesian neural networks Perfect for undergraduate and graduate students studying computer vision, computer science, artificial intelligence, and neural networks, Deep Learning: A Practical Introduction will also benefit practitioners and researchers in the fields of deep learning and machine learning in general. (https://www.wiley.com/en-us/Deep+Learning%3A+A+Practical+Introduction-p-9781119861867)
650 _aDeep Learning
_915633
700 _aAjith, Meenu
_924663
700 _aRajendra Kurup, Aswathy
_924664
942 _cBK
_2ddc
999 _c10075
_d10075