Kniha MACHINE LEARNING FUNDAMENTALS Adam Corinne

MACHINE LEARNING FUNDAMENTALS

Autor: Adam Corinne
Jazyk: Angličtina
Väzba: Brožovaná
Dostupnosť: Skladom u dodávateľa
Odosielame za 9-15 dní
14.51
MACHINE LEARNING FUNDAMENTALSA Practical Guide to Building Reliable, Efficient, and Explainable AI S...

Informácie o knihe

Autor
Jazyk
Angličtina
Väzba
Kniha - Brožovaná
Vydalo
2026
Stránok
94
EAN
9798183549782
Enbook ID
52994931
Hmotnosť
139
Rozmery
152 x 229 x 5

Kompletný popis

MACHINE LEARNING FUNDAMENTALS
A Practical Guide to Building Reliable, Efficient, and Explainable AI Systems by Adam Corinne

Machine learning is transforming the world at an extraordinary pace. From healthcare and finance to retail, agriculture, cybersecurity, and intelligent automation, machine learning is driving innovations that are reshaping how people live, work, and make decisions. Yet for many learners, professionals, and business leaders, understanding how these systems truly work can feel overwhelming.

Machine Learning Fundamentals is a comprehensive and practical guide designed to help readers build a strong understanding of modern machine learning from the ground up. Written in a clear, engaging, and accessible style, this book takes complex concepts and transforms them into practical knowledge that can be applied in real-world situations. Whether you are a student exploring artificial intelligence for the first time, a professional seeking to expand your technical expertise, an entrepreneur interested in AI-driven innovation, or a decision-maker responsible for technology strategy, this book provides the knowledge and confidence needed to navigate the rapidly evolving world of machine learning.
Rather than focusing solely on theory, this book emphasizes practical understanding. Readers will learn how machine learning systems are built, trained, evaluated, deployed, monitored, secured, and improved. Along the way, they will discover how data quality influences outcomes, how predictive models are developed, how hidden patterns are uncovered through clustering, how feature engineering improves performance, and how explainable AI helps create transparency and trust.
The book also addresses some of the most important challenges facing modern AI systems, including bias, fairness, reliability, security, model drift, and responsible deployment. Through practical examples, industry insights, and real-world applications, readers gain a balanced perspective that highlights both the opportunities and responsibilities that come with machine learning.

Whether your goal is to launch a career in artificial intelligence, improve business decision-making, strengthen your technical foundation, or understand the technology shaping the future, Machine Learning Fundamentals serves as an invaluable resource that will remain relevant for years to come.

WHAT THIS BOOK CONTAINS

  • Foundations and core principles of machine learning
  • Data collection, cleaning, validation, and preparation Exploratory data analysis techniques
  • Supervised, unsupervised, and reinforcement learning
  • Building predictive machine learning models
  • Classification algorithms and practical applications
  • Regression models for business forecasting
  • Clustering techniques for discovering hidden patterns
  • Feature engineering for improved model performance
  • Preventing overfitting, underfitting, and data leakage
  • Model evaluation and performance measurement
  • Building reliable and robust AI systems
  • Improving efficiency without sacrificing accuracy
  • Explainable Artificial Intelligence
  • Bias detection, fairness, and ethical AI practices
  • Model deployment strategies and production environments
  • Monitoring, maintenance, and drift detection
  • Security challenges in machine learning applications
  • Managing machine learning projects successfully
  • Real-world case studies from healthcare, finance, agriculture, and other industries
  • Practical guidance for developing trustworthy and scalable AI solutions
  • This description is tailored to the manuscript's scope and chapter coverage.
I ENCOURAGE YOU TO GET A COPY OF THIS BOOK FOR YOURSELF AND LOVED ONES