The Beginner's Guide to Machine Learning : Understand Algorithms, Build Models, and Start Your AI Journey
Overview
Machine learning has become a central technology in modern computing. From recommendation systems and fraud detection to medical diagnosis and intelligent search, organizations increasingly rely on algorithms that can analyze data and discover patterns. As digital systems generate massive volumes of information, understanding how machines learn from data has become an essential skill for students, developers, analysts, and technology professionals. The Beginner's Guide to Machine Learning was written to provide a clear, structured introduction to the principles that power modern artificial intelligence systems, helping readers move from foundational concepts to practical understanding.
This book offers a practical pathway into machine learning for readers who have basic programming knowledge but little prior exposure to data science or artificial intelligence. It explains how learning algorithms work, how predictive models are built, and how machine learning systems are applied in real-world environments. Each concept is introduced step by step, allowing readers to build a strong conceptual foundation before exploring widely used algorithms and tools.
Throughout the book, examples and demonstrations are implemented using Python, the most widely used programming language in modern machine learning. By working with libraries such as NumPy, Pandas, and Scikit-learn, readers gain practical insight into how data is prepared, how models are trained, and how results are evaluated. Exercises included throughout the chapters also help students reinforce understanding and prepare for academic examinations in machine learning and related subjects.
Machine learning continues to shape industries ranging from finance and healthcare to transportation and online services. Learning the foundations of this field now helps readers understand the technologies driving today's data-driven world while preparing for future developments in artificial intelligence and analytics.
What's Inside
- Clear explanations of machine learning fundamentals, including datasets, features, training processes, and model evaluation
- Step-by-step coverage of core algorithms such as linear regression, logistic regression, decision trees, random forests, and support vector machines
- Practical examples demonstrating real applications including house price prediction, fraud detection, image recognition, and recommendation systems
- Guidance on data preparation, feature engineering, and model evaluation using modern machine learning workflows
- Hands-on Python examples using NumPy, Pandas, and Scikit-learn for building and testing models
- Exercises designed to reinforce understanding and help students review key concepts for academic study
Whether you are a student beginning your journey into machine learning, a programmer exploring data-driven technologies, or a professional seeking to understand how modern AI systems operate, this book provides a clear and structured introduction to one of the most important technologies of the digital era.
Begin building your understanding of machine learning and discover how data-driven models power the intelligent systems shaping the modern world.
This item is Non-Returnable
Customers Also Bought
Details
- ISBN-13: 9798252024271
- ISBN-10: 9798252024271
- Publisher: Independently Published
- Publish Date: March 2026
- Dimensions: 10 x 7 x 1.44 inches
- Shipping Weight: 2.7 pounds
- Page Count: 718
Related Categories
