2302

🔥 Welcome to MyBunny.TV – The Ultimate Streaming Experience 🔥

Enjoy 30,000+ Premium HD Channels, Premium HD Channels, 24/7 customer support, and experience lightning-fast instant activation.
Reliable, stable, and built for the ultimate streaming experience – no hassles, just entertainment!
MyBunny.TV – Cheaper Than Cable • Up to 30% Off Yearly Plans • All NFL, ESPN, PPV Events Included 🔥

🎉 Join the fastest growing IPTV community today and discover why everyone is switching to MyBunny.TV!

🚀 Get Instant Access

Hawkins J. Mathematics for Artificial Intelligence 2026

Magnet download icon for Hawkins J. Mathematics for Artificial Intelligence 2026 Download this torrent!

Hawkins J. Mathematics for Artificial Intelligence 2026

To start this P2P download, you have to install a BitTorrent client like qBittorrent

Category: Other
Total size: 20.02 MB
Added: 22 hours ago (2026-02-15 00:51:01)

Share ratio: 131 seeders, 4 leechers
Info Hash: 3A6DFF7C65A51E1EC9C061E588EBE5622F9A362E
Last updated: 3 minutes ago (2026-02-15 22:59:40)

Description:

Textbook in PDF format Artificial intelligence (AI) and machine learning (ML) are rapidly growing fields, drawing great interest among students. Many students in a range of fields, including mathematics, computer science, statistics, data science, and more, see AI and ML as the keys to their futures. Mathematics for Artificial Intelligence provides the basic mathematics needed to understand AI and ML. It serves both students of mathematics and those who want to fill any gaps in their mathematics experience. It is written as both a text for a course and as a focused look at mathematics needed for readers hoping to learn more. The author has taught every topic in this book, often in different contexts, and the material and exercises are drawn from lecture notes. The material in the book represents a curated set of topics from the undergraduate math curriculum, some first-year seminar material, and some student project topics. Through carefully chosen examples and discussion in the text, the reader will learn how and where these tools are applied. AI and ML connections are raised along the way. It presumes the reader has at least completed the traditional three-semester calculus course. Linear algebra is presented as needed and should not require a completed course. The book is also well-suited for self-paced learning. Each chapter can be read independently with the help of the index for cross-referencing. Exercises are included. Preface Author Introduction Calculus of one variable Calculus of several variables Matrix Algebra Probability Graphs, shifts, and stochastic matrices Neural networks Index