(Book 7 of AI from Scratch: Step-by-Step Guide to Mastering Artificial Intelligence) Unlock the Power of Neural Networks and Master Deep Learning Neural networks are transforming the world, powering innovations in artificial intelligence, machine learning, and deep learning. From self-driving cars to natural language processing, these intelligent models are shaping the future. But how do they work? And how can you build and train them? Neural Networks Demystified: A Deep Learning Guide is your step-by-step resource for understanding and implementing neural networks, whether you're a beginner or an experienced AI practitioner. As the seventh book in the AI from Scratch: Step-by-Step Guide to Mastering Artificial Intelligence series, this guide takes a structured and practical approach to teaching deep learning concepts, breaking down complex topics into easy-to-understand explanations with real-world applications. What You'll Learn in This Book: 1. Foundations of Neural NetworksThe history and evolution of neural networksMathematical foundations: linear algebra, calculus, and probabilityUnderstanding perceptrons, multilayer networks, and backpropagation2. Building Neural Networks from ScratchActivation functions (ReLU, Sigmoid, Softmax) and loss functionsOptimization techniques (Gradient Descent, Adam, RMSprop)Implementing a neural network using Python and NumPyRegularization methods (Dropout, Batch Normalization, Weight Decay)3. Advanced Deep Learning ArchitecturesConvolutional Neural Networks (CNNs): Image recognition and feature extractionRecurrent Neural Networks (RNNs) & LSTMs: Time-series and NLP modelsTransformers & Attention Mechanisms: Powering NLP advancements like GPT and BERTAutoencoders & Generative Models: Data compression, anomaly detection, and GANs4. Real-World Applications & DeploymentHyperparameter tuning and model selectionDeploying AI models using TensorFlow, PyTorch, and cloud platformsEthical AI, interpretability, and avoiding bias in neural networksFuture trends: self-supervised learning, edge AI, and quantum computingWho Should Read This Book?Beginners & Enthusiasts - No prior AI experience required; this book starts from the basics.Software Engineers & Data Scientists - Learn to build, optimize, and deploy neural networks.AI Researchers & Professionals - Deep dive into advanced architectures and real-world applications.Why This Book?Beginner-Friendly Yet Comprehensive - Covers both fundamentals and advanced topics step by step.Hands-On Learning - Includes practical coding examples and real-world projects.Clear Explanations - Complex concepts are broken down into simple, actionable insights.Industry Best Practices - Learn AI deployment, scalability, and ethical considerations.Whether you're looking to start your AI journey, advance your career, or explore deep learning for real-world projects, Neural Networks Demystified provides the knowledge and skills you need to master neural networks.
- | Author: Gilbert Gutiérrez
- | Publisher: Independently Published
- | Publication Date: Feb 07, 2025
- | Number of Pages: 00300 pages
- | Binding: Paperback or Softback
- | ISBN-10: NA
- | ISBN-13: 9798309795062