Product details
Mathematics of Machine Learning: Master Linear Algebra, Calculus, and Probability for Machine Learning by Tivadar Danka, with a foreword by Santiago Valdarrama, is a practical guide designed to help readers understand the mathematical foundations behind modern artificial intelligence.
Originating from the global machine learning education community, the book breaks down complex mathematical concepts such as vectors, matrices, derivatives, gradients, and probability distributions into clear explanations that are directly connected to machine learning algorithms.
Instead of treating mathematics as abstract theory, the book shows how these principles power real AI systems used in data science, neural networks, and predictive models.
Ideal for students, developers, and AI enthusiasts, this book helps readers build the strong mathematical intuition required to truly understand how machine learning models work.














There are no reviews yet.