Calculus for machine learning and artificial intelligence: From derivatives to backpropagation
Format:
Hardcover
En stock
0.94 kg
Sí
Nuevo
Amazon
USA
- Mathematics has always been the language of science, providing the framework through which humanity understands the natural world. Among the branches of mathematics, calculus has held a special place as a tool for describing continuous change, modeling dynamic systems, and solving complex problems in physics, engineering, economics, and beyond. In the modern era, calculus has gained renewed importance due to the rapid rise of Artificial Intelligence (AI) and Machine Learning (ML). The algorithms that power modern AI systems—ranging from simple linear regression models to deep neural networks—are built upon the fundamental principles of calculus. This book, Calculus for Machine Learning and AI, is designed to provide readers with a clear, rigorous, and application-oriented understanding of calculus as it applies to machine learning. Unlike traditional calculus books that focus solely on mathematical theory, this book emphasizes why and how calculus is the backbone of AI systems, making it a bridge between pure mathematics and applied machine learning practice. Our goal is to demystify calculus for computer scientists, data scientists, engineers, and students who want to understand not just how to compute derivatives or integrals, but also why these operations are essential for optimization, learning, and intelligent decision-making. Why Calculus Matters in AI and Machine Learning To appreciate the value of this book, one must first understand why calculus is indispensable in AI:Derivatives and Gradients as Learning Tools At the heart of machine learning lies optimization. Models learn by minimizing errors, and this requires gradients—mathematical tools derived from calculus. Whether adjusting the weights of a neural network or fine-tuning parameters in a regression model, derivatives guide learning by showing the direction of steepest descent.Backpropagation and Neural Networks Neural networks are among the most powerful AI architectures, and their training is made possible through backpropagation—a process entirely dependent on calculus. Without derivatives, there is no mechanism to update weights systematically, making learning impossible.Optimization and Loss Functions The concepts of minima, maxima, and saddle points are deeply rooted in calculus. Gradient Descent, Stochastic Gradient Descent, and their numerous variants are all grounded in differential calculus and partial derivatives.Probability and Continuous Distributions In AI, many probabilistic models require integration to compute likelihoods, marginal probabilities, and expectations. Calculus enables us to handle these continuous distributions, which are central to Bayesian models and probabilistic AI.Dynamic Models and Reinforcement Learning Reinforcement learning often involves continuous state and action spaces where calculus helps model transitions, expected rewards, and optimal policies. Calculus is also essential for solving Bellman equations and Hamilton-Jacobi equations in advanced AI.Understanding Transformations Many machine learning techniques, such as Principal Component Analysis (PCA) and dimensionality reduction, rely on continuous transformations of data. Calculus helps in understanding these transformations and their impact on learning systems.In short, calculus is not just an academic requirement—it is the engine that makes AI possible. How This Book is Beneficial for Study 1. Bridging Theory and Practice One of the greatest challenges for learners is connecting abstract mathematical concepts with practical AI applications. This book narrows that gap. Instead of treating calculus as an isolated subject, it demonstrates how every concept directly powers real-world AI tasks.
IMPORT EASILY
By purchasing this product you can deduct VAT with your RUT number