<aside> 📌 by Dr. Nir Regev

</aside>

<aside> 📌 Donate to make this book a reality: Fuel The Learning

</aside>

About Me

Chapters

Syllabus

**Who and why?**

**Donate if you can**

Red Gradient Profile Photo Instagram Post.png

About me

Howdy, my name is Nir Regev and I hold a Ph.D. in Electrical Engineering. When I am writing this book I have been working in the industry for more than two and a half decades and am a professor in California State Polytechnic University, Pomona (Cal Poly Pomona), teaching courses in the Electrical and Computer Engineering department. I am also a Founder and owner of alephzero.ai, a high-tech company.

As an AI expert and educator, I've witnessed the transformative power of technology education. My journey in AI has been incredibly rewarding, and I want to share that experience with passionate students who might not have access to such resources. My father gave me my first programming book when I was 10 years old, and set me on this path of creating technology. This project is my way of “paying forward” and inspiring the next generation of innovators. The philosophy of "learning by doing" is central to my teaching as a professor at Cal Poly Pomona, and this book embodies that approach, providing students with practical, hands-on exercises to solidify their understanding.

You can read more about my background in my website: https://www.drnirregev.com/

Chapters:

Chapter 1: Introduction to AI and Python

Chapter 2: Python Libraries and Data Manipulation

Chapter 3: Machine Learning Fundamentals

Chapter 4: Supervised Learning: Classification and Regression

Chapter 5: Unsupervised Learning: Clustering and Dimensionality Reduction

Chapter 6: Neural Networks and Deep Learning

Supplementary material

Syllabus

  1. Chapter 1: Introduction to AI and Python
  2. Chapter 2: Python Libraries and Data Manipulation
  3. Chapter 3: Machine Learning Fundamentals
  4. Chapter 4: Supervised Learning: Classification and Regression
  5. Chapter 5: Unsupervised Learning: Clustering and Dimensionality Reduction
  6. Chapter 6: Neural Networks and Deep Learning