No bullshit guide to linear algebra
Ivan Savov
- 出版商: Minireference Co.
- 出版日期: 2020-10-25
- 售價: $1,530
- 貴賓價: 9.5 折 $1,454
- 語言: 英文
- 頁數: 570
- 裝訂: Paperback
- ISBN: 0992001021
- ISBN-13: 9780992001025
-
相關分類:
線性代數 Linear-algebra
海外代購書籍(需單獨結帳)
買這商品的人也買了...
-
Cryptography and Network Security, 4/e (IE) (美國版ISBN:0131873164) (平裝)$1,090$1,068 -
Mastering Regular Expressions, 3/e (Paperback)$1,881$1,782 -
C# 4.0 Pocket Reference, 3/e (Paperback)$750$713 -
$199Fitness for Geeks: Real Science, Great Nutrition, and Good Health (Paperback) -
Semantic Information Processing (Paperback)$1,330$1,264 -
The Essential Knuth (Paperback)$760$722 -
Geeks Bearing Gifts (Paperback)$1,030$979 -
Possiplex (Paperback)$1,500$1,425 -
A New Kind of Science$2,090$1,986 -
The Art of Computer Programming, Volume 4B, Fascicle 5 : Mathematical Preliminaries Redux; Backtracking; Dancing Links (Paperback)$1,500$1,470 -
ChatGPT 指令大全與創新應用:GPT-4 搶先看、串接 API、客服機器人、AI英文家教,一鍵打造 AI智慧產品$680$530 -
AI 繪圖夢工廠 :Midjourney、Stable Diffusion、Leonardo. ai × ChatGPT 超應用 神技$630$498 -
ChatGPT 開發手冊 - 用 OpenAI API ‧ LangChain ‧ Embeddings 設計 Plugin、LINE/Discord bot、股票分析與客服自動化助理$750$593
商品描述
Linear algebra is the foundation of science and engineering. Knowledge of linear algebra is a prerequisite for studying statistics, machine learning, computer graphics, signal processing, chemistry, economics, quantum mechanics, and countless other applications. Indeed, linear algebra offers a powerful toolbox for modelling the real world.
The NO BULLSHIT GUIDE TO LINEAR ALGEBRA shows the connections between the computational techniques of linear algebra, their geometric interpretations, and the theoretical foundations. This university-level textbook contains lessons on linear algebra written in a style that is precise and concise. Each concept is illustrated through definitions, formulas, diagrams, explanations, and examples of real-world applications. Readers build their math superpowers by solving practice problems and learning to use the computer algebra system SymPy to speed up tedious matrix arithmetic tasks.
“The book explains the concepts in a way that gives a strong intuitive understanding.” — Joe Nestor, student
“It’s very well written and a fun read!” — Felix Kwok, professor
“I used this book in multiple big data courses when I needed a deeper understanding of the material.” — Zane Zakraisek, student
The author, Ivan Savov, combines 15 years of tutoring experience with a B.Eng. in electrical engineering, an M.Sc. in physics, and a Ph.D. in computer science from McGill University.
