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Machine Learning and Statistical Modeling - The Art and Science of Machine Learning and Statistical Modeling - cover
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Machine Learning and Statistical Modeling - The Art and Science of Machine Learning and Statistical Modeling

Sam Green

Narrador Ray Collins

Editorial: Sam Green

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Sinopsis

Unlock the power of data with Machine Learning and Statistical Modeling, a comprehensive guide to understanding and applying the principles that drive today's data-driven world. Whether you're a beginner eager to learn the basics or a seasoned professional looking to deepen your expertise, this book provides the tools and techniques you need to harness the full potential of machine learning and statistical modeling. 
Through clear explanations, practical examples, and hands-on exercises, this book explores essential topics such as supervised and unsupervised learning, predictive analytics, hypothesis testing, regression analysis, and advanced algorithms. Dive into the foundations of statistical reasoning while discovering how modern machine learning techniques like neural networks, ensemble methods, and natural language processing transform data into actionable insights. 
You'll also gain valuable insights into real-world applications, from business forecasting and healthcare analytics to financial modeling and cutting-edge AI research. The book balances theory with practical implementation, offering code snippets and case studies that empower you to tackle complex problems confidently. 
Whether you're analyzing trends, making predictions, or building intelligent systems, Machine Learning and Statistical Modeling is your guide to turning data into knowledge and innovation. 
 
Duración: alrededor de 3 horas (02:49:59)
Fecha de publicación: 28/11/2024; Unabridged; Copyright Year: — Copyright Statment: —