Overview
In "Mathematics of Machine Learning," you will explore the foundational mathematics essential for understanding and advancing in machine learning. The book covers linear algebra, calculus, and probability theory, offering readers clear explanations and practical Python-based implementations.
What this Book will help me do
- Master fundamental linear algebra concepts such as matrices, eigenvalues, and vector spaces.
- Understand and apply principles of calculus, including multivariable functions and optimization.
- Gain confidence in utilizing probability theory concepts like Bayes' theorem and random distributions.
- Learn to implement mathematical concepts in Python to solve machine learning problems.
- Bridge the gap between theoretical mathematics and the practical demands of modern machine learning.
Author(s)
Tivadar Danka is a PhD mathematician with a specialized focus on machine learning applications. Known for his clear and engaging teaching style, Tivadar has a deep understanding of both mathematical rigor and practical ML challenges. His ability to break down complex ideas into comprehensible concepts has helped him reach thousands of learners globally.
Who is it for?
The book is perfect for data scientists, aspiring machine learning engineers, software developers working with ML, and researchers interested in advanced ML methodologies. If you have a basic understanding of algebra and Python programming, alongside some familiarity with machine learning concepts, this book will help you deepen your mathematical insight and elevate your practical applications.