Artificial Intelligence doesn’t have to feel overwhelming.
Behind every intelligent system is a small set of mathematical ideas working quietly in the background. Yet these ideas are often buried under heavy notation and abstract theory. This book was written to change that.
This book explains the mathematics behind modern artificial intelligence in a clear, intuitive, and practical way. Instead of focusing on formal proofs, it helps you understand how and why AI systems learn, make predictions, and take decisions. The emphasis is on insight, not intimidation.
You will learn how mathematical thinking shapes real AI methods such as machine learning, optimization, and neural networks. Each concept is introduced with motivation, explained through intuition, and connected directly to practical applications—so you can see how the pieces fit together.
In this book, you will discover:
How simple mathematical ideas power complex AI systems
Why learning algorithms work, not just how to use them
How to reason about data, uncertainty, and predictions
The intuition behind optimization and intelligent decision-making
How theory connects to real-world AI applications
This book is designed for:
Students who want to truly understand artificial intelligence
Professionals working with AI tools who want deeper insight
Self-learners frustrated by overly technical explanations
Readers without an advanced math background who want confidence
No advanced prerequisites are required beyond basic algebra and curiosity. Whether you are preparing for study, strengthening your professional skills, or seeking a clear mental model of how AI works, this book provides an accessible and lasting mathematical foundation.
Understand the ideas. Build better intelligence.
Die Inhaltsangabe kann sich auf eine andere Ausgabe dieses Titels beziehen.
Anbieter: California Books, Miami, FL, USA
Zustand: New. Print on Demand. Bestandsnummer des Verkäufers I-9798243602853
Anzahl: Mehr als 20 verfügbar