![]() |
|
Mathematics for AI The Hidden Language of Machines - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: E-Books (https://softwarez.info/Forum-E-Books) +--- Thread: Mathematics for AI The Hidden Language of Machines (/Thread-Mathematics-for-AI-The-Hidden-Language-of-Machines) |
Mathematics for AI The Hidden Language of Machines - ebooks1001 - 06-29-2025 ![]() Free Download Mathematics for AI: The Hidden Language of Machines (AI from Scratch : Step-by-Step Guide to Mastering Artificial Intelligence Book 2) English | 2025 | ASIN: B0DVR4JPSC | 455 pages | Epub | 10.39 MB Why Is Mathematics Essential for AI? Many people dive into AI using pre-built libraries like TensorFlow, PyTorch, and Scikit-Learn, but these tools often act as "black boxes," hiding the mathematical operations that make AI work. Without understanding the underlying math, it's challenging to fine-tune models, optimize algorithms, and innovate new AI solutions. This book demystifies the math behind AI, helping you go beyond the basics and gain a deeper, more intuitive understanding of how AI truly functions. What You Will Learn in This Book Part 1: Foundations of AI Mathematics Linear Algebra - Master vectors, matrices, transformations, eigenvalues, and singular value decomposition (SVD). Probability and Statistics - Learn about probability distributions, Bayes' theorem, and statistical modeling for AI. Calculus for AI - Understand differentiation, gradients, and integrals used in machine learning optimization. Discrete Mathematics and Logic - Explore graph theory, Boolean algebra, and combinatorics in AI. Part 2: Mathematical Tools for Machine Learning Vector Spaces & Transformations - Learn how AI represents multi-dimensional data. Probability Distributions in AI - Explore Gaussian, Bernoulli, and Poisson distributions used in machine learning. Optimization Techniques - Master gradient descent, convex optimization, and regularization techniques. Fourier and Wavelet Transforms - Discover how AI processes signals and extracts key features. Part 3: Advanced Math for Deep Learning Multivariable Calculus & Neural Networks - Understand backpropagation, Jacobians, and Hessians. Linear Algebra in Deep Learning - Explore tensor operations and matrix factorizations. Information Theory & Entropy - Learn how AI measures and processes information. Manifolds & Geometry in AI - Discover how AI navigates high-dimensional data spaces. Part 4: Practical Applications & Future Directions Mathematics Behind AI Models - CNNs, RNNs, and Transformer models explained mathematically. Bayesian Methods in AI - Learn about Bayesian networks and probabilistic AI. Graph Theory & AI - Discover Graph Neural Networks (GNNs) and AI applications in recommendation systems. Quantum Mathematics & AI - Get a glimpse into the future of AI with quantum computing. Who Should Read This Book? AI Enthusiasts & Beginners - If you're new to AI and want a structured, beginner-friendly guide to the mathematics behind it, this book is for you. Machine Learning Engineers & Data Scientists - If you already work with AI but struggle with the math behind models, this book will deepen your theoretical understanding. Software Developers & Engineers - If you develop AI-powered applications but want to understand the mathematical logic behind them, this book will help bridge the gap. Students & Academics - If you're studying AI, machine learning, or data science, this book serves as a comprehensive mathematical reference. Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live Links are Interchangeable - Single Extraction |