Email the Author

You can use this page to email Wingk about Distilled Math of AI.

Please include an email address so the author can respond to your query

This message will be sent to Wingk

This site is protected by reCAPTCHA and the Google  Privacy Policy and  Terms of Service apply.

About the Book

"Distilled Math of AI" is a comprehensive guide to the mathematical foundations of artificial intelligence, aimed at providing readers with an in-depth understanding of the core principles and techniques that underpin the field. The book presents an accessible and intuitive approach to complex mathematical concepts, making it an invaluable resource for students, researchers, and practitioners alike.

The book is divided into several chapters, each focusing on a key area of the mathematical foundations of AI:

1. Linear Algebra: This chapter introduces the essential concepts of linear algebra, such as vectors, matrices, and linear transformations, which form the backbone of most AI algorithms.

2. Probability and Statistics: This chapter delves into the fundamental concepts of probability theory and statistics, providing readers with the necessary tools to model uncertainty and make informed decisions in the face of incomplete information.

3. Calculus and Optimization: In this chapter, the book covers the basics of calculus, including differentiation and integration, as well as more advanced optimization techniques, such as gradient descent and convex optimization, which are crucial for training AI models.

4. Graph Theory and Network Analysis: This chapter explores the world of graphs and networks, which are widely used to represent complex relationships and dependencies in AI systems, and provides an introduction to graph algorithms, such as shortest path and clustering algorithms.

5. Information Theory: In this chapter, readers are introduced to the concepts of entropy, mutual information, and other information-theoretic measures, which play a central role in AI algorithms for data compression, feature selection, and decision making.

6. Machine Learning: This chapter provides an overview of the most popular machine learning algorithms, such as linear regression, logistic regression, neural networks, and support vector machines, along with their mathematical foundations and practical applications.

7. Deep Learning: In this chapter, the book delves into the cutting-edge field of deep learning, covering the basics of neural networks, convolutional neural networks, and recurrent neural networks, as well as the latest research and developments in the field.

8. Reinforcement Learning: This chapter introduces the fascinating world of reinforcement learning, a type of AI that learns to make decisions by interacting with its environment, and covers key algorithms such as Q-learning and policy gradient methods.

Throughout the book, the authors provide clear explanations and examples, as well as practical exercises and challenges, to help readers build a solid foundation in the mathematical concepts underlying AI. By the end of "Distilled Math of AI", readers will have gained a deep understanding of the math behind artificial intelligence and be well-equipped to apply these principles in their own work or research.


About the Author

Wingk’s avatar Wingk

Logo white 96 67 2x

Publish Early, Publish Often

  • Path
  • There are many paths, but the one you're on right now on Leanpub is:
  • Distilledmathofai › Email Author › New
    • READERS
    • Newsletters
    • Weekly Sale
    • Monthly Sale
    • Store
    • Home
    • Redeem a Token
    • Search
    • Support
    • Leanpub FAQ
    • Leanpub Author FAQ
    • Search our Help Center
    • How to Contact Us
    • FRONTMATTER PODCAST
    • Featured Episode
    • Episode List
    • MEMBERSHIPS
    • Reader Memberships
    • Department Reader Memberships
    • Author Memberships
    • Your Membership
    • COMPANY
    • About
    • About Leanpub
    • Blog
    • Contact
    • Press
    • Essays
    • AI Services
    • Imagine a world...
    • Manifesto
    • More
    • Partner Program
    • Causes
    • Accessibility
    • AUTHORS
    • Write and Publish on Leanpub
    • Create a Book
    • Create a Bundle
    • Create a Course
    • Create a Track
    • Testimonials
    • Why Leanpub
    • Services
    • TranslateAI
    • TranslateWord
    • TranslateEPUB
    • PublishWord
    • Publish on Amazon
    • CourseAI
    • GlobalAuthor
    • Marketing Packages
    • IndexAI
    • Author Newsletter
    • The Leanpub Author Update
    • Author Support
    • Author Help Center
    • Leanpub Authors Forum
    • The Leanpub Manual
    • Supported Languages
    • The LFM Manual
    • Markua Manual
    • API Docs
    • Organizations
    • Learn More
    • Sign Up
    • LEGAL
    • Terms of Service
    • Copyright Policy
    • Privacy Policy
    • Refund Policy

*   *   *

Leanpub is copyright © 2010-2025 Ruboss Technology Corp.
All rights reserved.

This site is protected by reCAPTCHA
and the Google  Privacy Policy and  Terms of Service apply.

Leanpub requires cookies in order to provide you the best experience. Dismiss