+1 720-986-5272
reachus@vibrantpublishers.com
-
SHOP
-
Self Learning Management Books
-
Test Prep Books
-
Legend In Marketing
-
Legend In Consumer Behavior
-
Legend In Strategic Marketing
RESOURCESBLOGSSPOTLIGHTS -
- Log in
Machine Learning Essentials You Always Wanted to Know: A Hands-On Beginner's Guide to Mastering AI, Supervised, Unsupervised, and Deep Learning Algorithms
Estimated delivery between February 09 and February 11.
We use cookies and similar technologies to provide the best experience on our website.
Machine Learning Essentials You Always Wanted to Know: A Hands-On Beginner's Guide to Mastering AI, Supervised, Unsupervised, and Deep Learning Algorithms
(15)
In stock - Ready to be shipped
Request Sample Book/Online Resource
Share
- Covers key algorithms and techniques
- Ideal for students and professionals
- Hands-on implementation included
Master the fundamentals of ML and take the first step towards a career in AI!
In today’s rapidly evolving world, machine learning (ML) is no longer just for researchers or data scientists. From personalized recommendations on streaming platforms to fraud detection in banking, ML powers many aspects of our daily lives. As industries increasingly adopt AI-driven solutions, learning machine learning has become a valuable skill. Yet, many find the subject overwhelming, often intimidated by its mathematical complexity. That’s where Machine Learning Essentials You Always Wanted to Know (Machine Learning Essentials) comes in. This beginner-friendly guide offers a structured, step-by-step approach to understanding machine learning concepts without unnecessary jargon. Whether you are a student, a professional looking to transition into AI, or simply curious about how machines learn, this book provides a clear and practical roadmap to mastering ML.
Authored by Dhairya Parikh, an experienced data engineer who returned to academia to refine his expertise, this book bridges the gap between theory and real-world application. It simplifies the core concepts of ML, breaking them down into digestible explanations paired with hands-on coding exercises to help you apply what you learn.
What You’ll Learn:
- The fundamentals of machine learning and how it powers modern technology
- The three key types of ML—Supervised, Unsupervised, and Reinforcement Learning
- How to combine algorithms, data, and models to develop AI-driven solutions
- Practical coding techniques to build and implement machine learning models
Part of Vibrant Publishers’ Self-Learning Management Series, this book serves as a valuable guide for building machine learning skills, enhancing your expertise, and advancing your career in AI and data science.
Pages: 270 pages
Paperback (ISBN): 9781636513775
eBook (ISBN): 9781636513782
Hardback (Color): 9781636513799
Trim Size: 5.5” x 8.5”
Category: Business & Economics, Computers
Author: Dhairya Parikh, Vibrant Publishers
1. Machine Learning: A Gentle Introduction
1.1 What is Machine Learning?
1.2 Machine Learning: A Historical Overview
1.3 Where is Machine Learning used in Daily Life?
1.4 Overview of a Typical ML System
1.5 Conclusion
Glossary
Quiz
2. Mastering the Fundamentals of Machine Learning
2.1 Types of Data in Machine Learning
2.2 Math and Machine Learning
2.3 Introducing Python and Other Essential Tools
2.4 Conclusion
Glossary
Quiz
3. Supervised Learning: Starting with the Basics
3.1 A Refresher on Supervised Learning
3.2 Linear Regression: The Starting Point
3.3 Logistic Regression: The Fundamental Classifier
3.4 Evaluation Metrics in Supervised Learning
3.5 Conclusion
Glossary
Quiz
4. Going Beyond the Basics: Exploring Non-Linear Models
4.1 Decision Trees: Unraveling the Tree Structure
4.2 K-Nearest Neighbors: Finding Friends in Data
4.3 Support Vector Machines: The Magic of Margins
4.4 Conclusion
Glossary
Quiz
5. Ensemble Techniques: Improving Prediction Power
5.1 Bagging: Harnessing the Power of Multiple Models
5.2 Boosting: Learning from Mistakes
5.3 Advanced Ensemble Models: Introduction to Random Forests and LightGBM
5.4 Conclusion
Glossary
Quiz
6. Unsupervised Learning: Finding Patterns in Data
6.1 Clustering Basics: K-Means and Other Clustering Techniques
6.2 Dimensionality Reduction Techniques: PCA and t-SNE
6.3 Association Rules: Market Basket Analysis
6.4 Conclusion
Glossary
Quiz
7. A Gentle Introduction to Neural Networks and Deep Learning
7.1 Neural Networks - Building Blocks of Deep Learning
7.2 Convolutional Neural Networks: A Smarter Approach for Image Data
7.3 Recurrent Neural Networks: Sequences and Predictions
7.4 Conclusion
Glossary
Quiz
8. Machine Learning in Real-World Scenarios
8.1 Exploring Machine Learning Use Cases across Domains
8.2 How to Develop a Machine Learning Application
8.3 Ethics in Machine Learning
8.4 The Future of Machine Learning
Dhairya Parikh is a seasoned data engineer, a graduate of the University of Waterloo, and a technical writer with expertise in AI, data science, and practical ML applications.
Vibrant Publishers is focused on presenting the best texts for learning about technology and business as well as books for test preparation. Categories include programming, operating systems and other texts focused on IT. In addition, a series of books helps professionals in their own disciplines learn the business skills needed in their professional growth.
Vibrant Publishers has a standardized test preparation series covering the GMAT, GRE and SAT, providing ample study and practice material in a simple and well organized format, helping students get closer to their dream universities.
The Self-Learning Management Series is designed to help students, new managers, career switchers, and entrepreneurs learn essential management lessons and covers every aspect of business, from HR to Finance to Marketing to Operations across any and every industry. Each book includes basic fundamentals, important concepts, and standard and well-known principles as well as practical ways of application of the subject matter.
Machine Learning Essentials You Always Wanted to Know is a solid introduction to AI and ML, especially for beginners who already have a bit of "coding or technical background." What I liked most is how it keeps the curiosity alive throughout. It doesn’t go too deep into every topic, but it gives a good, broad overview, which I think is perfect for someone just starting out. The visualizations are really helpful and make the concepts easier to grasp. The overall tone stays engaging and encourages you to explore more. It's very beginner-friendly and keeps you wanting to learn more!
-- Akshat Baheti
Data Scientist, TD Bank
Machine Learning Essentials You Always Wanted to Know offers a clear, friendly, and practical introduction to machine learning. The book is structured like a guided learning journey—from understanding what machine learning is, to seeing how it’s applied in real life, to writing hands-on Python code. It’s beginner-friendly, yet technical enough to build a strong foundation. The historical timeline, real-world examples (like Netflix recommendations and Google Maps), and helpful visuals make the concepts relatable and easy to remember.
-- Julia Appelskog
Productive Planet, Book Trade Professional
Machine Learning Essentials offers a clear, structured path into a field that can often feel intimidating. The layout is accessible and well-organised, with a step-by-step approach that eases readers into the fundamentals of machine learning. Even a quick glance reveals that it prioritises understanding over jargon and blends theory with practical examples - a combination I always appreciate in educational materials.
It seems like a valuable starting point for those curious about how ML works in real life--from everyday tech like recommendation engines to more advanced applications. I particularly liked the real-world analogies that help make complex ideas more digestible.
Based on the thoughtful structure and practical tone, I believe this book will be a helpful guide for anyone looking to get a solid grasp on machine learning---without being overwhelmed.
-- Eszter Boczan
Reviewer from UK
Parikh’s expertise as a data engineer and a technical writer shines through in his ability to make machine learning approachable. Machine Learning Essentials You Always Wanted to Know is a practical companion for anyone eager to understand and implement ML in meaningful ways. Whether you’re looking to enhance your career in AI or simply gain a deeper appreciation for the technology, this book will help you.
This book distills intricate ML principles into digestible explanations. Parikh avoids unnecessary jargon, opting instead for a structured, step-by-step approach that makes learning intuitive.
Unlike many theoretical ML books, Machine Learning Essentials bridges the gap between theory and real-world application. Parikh incorporates hands-on coding exercises, allowing readers to implement key algorithms and reinforce their understanding through practice.
The book covers essential ML topics, including supervised, unsupervised, and reinforcement learning, as well as key mathematical principles that underpin these techniques.
Parikh’s expertise as a data engineer and technical writer shines through in his ability to make machine learning approachable. Machine Learning Essentials You Always Wanted to Know is a practical companion for anyone eager to understand and implement ML in meaningful ways.
-- J. Kromrie
Goodreads Reviewer
Machine Learning Essentials You Always Wanted to Know is a concise, beginner-friendly guide that demystifies machine learning for students and professionals alike. The book stands out for its clear explanations and practical approach, covering foundational algorithms and concepts without overwhelming readers with math or jargon. It introduces core topics-such as supervised and unsupervised learning, key algorithms, and evaluation metrics-using real-world examples and hands-on coding exercises in Python, making it easy for newcomers to follow along.
Dhairya Parikh’s industry experience and academic background are evident in the book’s structure and clarity. The content is well-organized, starting from the basics and progressing to more advanced models, always emphasizing practical application. The inclusion of glossaries and quizzes at the end of each chapter supports self-paced learning.
As an IT executive, I appreciate how this book bridges theory and practice, making it an ideal resource for those looking to build foundational ML skills or transition into AI roles. While advanced practitioners may be looking for more depth, this book is an excellent starting point for anyone wanting a structured, understandable introduction to machine learning.
-- Mark Johns
Amazon.com Reviewer
Recently viewed products
I’m currently taking two machine learning courses that feel pretty challenging, but this book has been a real lifesaver. The explanations are clear, beginner-friendly, and actually help me connect the dots where the courses leave me stuck. It makes the complex topics feel less overwhelming and much more approachable. Definitely a useful resource for anyone starting out.
The perfect starting point for anyone looking to break into the world of AI and machine learningwithout getting overwhelmed by complex math or technical jargon. Whether you're a student, a professional pivoting into tech, or just curious about how machines learn, this book makes the topic approachable and engaging. Author Dhairya Parikh does an excellent job of breaking down core ML conceptslike supervised, unsupervised, and reinforcement learningand explaining how these ideas power the real-world technology we use every day. What makes this book stand out is its hands-on approach: youre not just reading theory, youre actively coding and applying what you learn.
As someone new to ML, I found this book extremely helpful. It starts from the ground up, covers algorithms like regression and classification well, and includes real-world examples. Ideal for self-learning.
This book is an excellent primer for anyone trying to understand the basics of machine learning. It avoids overwhelming jargon and focuses on explaining core concepts clearly. Great for beginners and non-tech folks.
The book is easy to read and well-organized. It gives a broad overview of ML techniques without diving too deep into math. Wouldve loved more hands-on exercises though. A great starting point nonetheless.
Blog posts
Blogs On Programming
The Magic of Dynamic Programming: Stop Doing the Same Work Twice
Blogs On Programming
The Revolutionary Impact of AI on the Business World: Why You Need to Embrace It Now
Blogs On Programming
Cybersecurity Essentials: Skills Every Professional Must Know
Blogs On Programming
Descriptive, Predictive, or Prescriptive? Choosing the Right Analytics for Your Business
Blogs On Programming
What Is Business Analytics? Definition, Benefits, Trends, and Career Skills
Blogs On Programming
Cybersecurity: Key Concepts, Threats, and Protection Strategies
Blogs On Programming
Why Your Python Code Is Slow And How To Optimize It
Blogs On Programming
Machine Learning 101: The Big 3 Paradigms You Need To Know
Contact Information
Got questions? Call us on
+1-720-986-5272
Need help with your order?
reachus@vibrantpublishers.com
Available 24/7 via whatsapp chat
+1-315-413-6418
*Test names are the registered trademarks of their respective owners, who are not affiliated with Vibrant Publishers.
© 2026,
Vibrant Publishers LLC.
