Most machine learning books begin in the middle.
They introduce models, equations, and tools without answering the most important question:
What does it actually mean to learn?
This book exists to answer that question — slowly, clearly, and from first principles.
Instead of rushing into algorithms, Foundations: What Learning Really Means rebuilds machine learning from the ground up. It explains how learning emerges from experience, why rules fail in complex environments, and how machines detect patterns without understanding meaning.
Through clear explanations, thoughtful dialogue, and carefully structured insights, the book explores:
What learning truly is (and what it is not)
Why data is not knowledge
How patterns replace answers
Why error is essential, not failure
How generalization differs from memorization
The role of bias, assumptions, and reward
Why evaluation is a value judgment, not just a metric
How to think in first principles when systems fail
Bonus chapters compress these ideas into powerful mental models, helping readers recognize confusion as progress, complexity as removable, and reward as the driver of behavior.
This book is the foundation of an eight-part series on machine learning. By the time you finish it, algorithms will no longer feel mysterious — they will feel inevitable.
If you want to understand machine learning deeply, responsibly, and without intimidation, this is where to begin.
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Da: California Books, Miami, FL, U.S.A.
Condizione: New. Print on Demand. Codice articolo I-9798245470986
Quantità: Più di 20 disponibili