Nehodí sa? Žiadny problém! U nás môžete do 30 dní vrátiť
S darčekovým poukazom nešliapnete vedľa. Obdarovaný si za darčekový poukaz môže vybrať čokoľvek z našej ponuky.
30 dní na vrátenie tovaru
Most machine learning books assume you already know statistics. Most statistics books never get to machine learning. This book is both - taught from first principles, with no gaps in between.
The Basics of Machine Learning and Statistics is a beginner's guide for anyone who wants to truly understand how data, models, and predictions actually work - not just which library function to call. Whether you're a student, a working professional pivoting into AI, or an engineer who's tired of treating ML as a black box, this book takes you from the very first formula to a working neural network.
Across eleven carefully sequenced chapters, you will learn:
Every concept is paired with a worked example. Every formula is followed by a numerical calculation. Every algorithm comes with runnable Python code using scikit-learn, NumPy, pandas, and TensorFlow. The only prerequisite is high-school algebra and the willingness to think carefully.
By the final chapter, you will be able to describe a dataset, fit and evaluate the major model families, distinguish overfitting from underfitting, choose appropriate metrics, prepare messy data for modeling, and build a defensible end-to-end machine learning project - the working skill set of a literate practitioner.
Written by an AI and DevOps engineer with hands-on experience deploying machine learning in production environments, this is the introduction to ML that respects your time, your intelligence, and your need to actually understand what's happening under the hood.
Perfect for: students, self-learners, data analysts, software engineers transitioning to AI, and anyone who has ever asked, "but how does it actually work?"