Machine Learning Made Simple: A Practical Introduction
Daniel Lee
"Machine Learning Made Simple: A Practical Introduction: Building Intelligent Algorithms from Scratch" is your go-to resource for comprehending and using machine learning without becoming bogged down in overwhelming complexity or technical jargon. This book, which simplifies the principles of machine learning and provides practical possibilities to develop clever algorithms step-by-step, is ideal for novices and inquisitive learners.
The book begins by outlining the fundamental ideas, including supervised and unsupervised learning, and then it progressively guides you through the crucial steps involved in managing data, including cleaning, preprocessing, and visualizing it in order to derive insightful information. You will gain a comprehension of the theory and the ability to apply it on your own by learning how to build fundamental algorithms like linear regression from scratch with an emphasis on practicality.
The book provides real-world examples and a case study where you will construct and assess a basic prediction model to further humanize the concepts. As you advance, you'll also discover how to enhance model performance and switch to specialized tools like Scikit-learn, which will allow you to expand your knowledge and skills.
This book will enable you to understand the principles and begin developing clever solutions, regardless of whether you're a professional, tech enthusiast, or student interested in machine learning. Take the first step toward becoming an expert in machine learning by diving right in!
Duration - 4h 7m.
Author - Daniel Lee.
Narrator - Daniel Lee.
Published Date - Friday, 19 January 2024.
Copyright - © 2024 Cohen Publications LLC ©.
Location:
United States
Description:
"Machine Learning Made Simple: A Practical Introduction: Building Intelligent Algorithms from Scratch" is your go-to resource for comprehending and using machine learning without becoming bogged down in overwhelming complexity or technical jargon. This book, which simplifies the principles of machine learning and provides practical possibilities to develop clever algorithms step-by-step, is ideal for novices and inquisitive learners. The book begins by outlining the fundamental ideas, including supervised and unsupervised learning, and then it progressively guides you through the crucial steps involved in managing data, including cleaning, preprocessing, and visualizing it in order to derive insightful information. You will gain a comprehension of the theory and the ability to apply it on your own by learning how to build fundamental algorithms like linear regression from scratch with an emphasis on practicality. The book provides real-world examples and a case study where you will construct and assess a basic prediction model to further humanize the concepts. As you advance, you'll also discover how to enhance model performance and switch to specialized tools like Scikit-learn, which will allow you to expand your knowledge and skills. This book will enable you to understand the principles and begin developing clever solutions, regardless of whether you're a professional, tech enthusiast, or student interested in machine learning. Take the first step toward becoming an expert in machine learning by diving right in! Duration - 4h 7m. Author - Daniel Lee. Narrator - Daniel Lee. Published Date - Friday, 19 January 2024. Copyright - © 2024 Cohen Publications LLC ©.
Language:
English
Opening Credits
Duration:00:00:11
2 introduction
Duration:00:01:30
3 chapter1
Duration:00:39:01
4 chapter2
Duration:00:44:07
5 chapter 3
Duration:00:40:55
6 chapter4
Duration:00:44:01
7 chapter5
Duration:00:32:41
8 chapter6
Duration:00:43:10
9 conclusion
Duration:00:01:37
Ending Credits
Duration:00:00:11