Skip to content
Scan a barcode
Scan
Paperback APPLIED MATH FOR DATA SCIENCE What You Actually Need (Without the Fluff): The Essential Math Toolkit for Machine Learning, AI, and Real-World Data Work Book

ISBN: B0H1CRVRR8

ISBN13: 9798196421914

APPLIED MATH FOR DATA SCIENCE What You Actually Need (Without the Fluff): The Essential Math Toolkit for Machine Learning, AI, and Real-World Data Work

Applied Math for Data Science doesn't teach you everything-it teaches you what actually matters.

If you've ever felt overwhelmed by dense math textbooks, endless theory, or courses that never connect to real-world work, this book is your shortcut.

You don't need years of abstract mathematics to succeed in data science, machine learning, or AI. What you need is a clear, practical understanding of the core ideas that show up every day on the job-and that's exactly what this book delivers.

This book is designed to provide a practical, working understanding of the mathematics used in data science, machine learning, and AI. It focuses on the concepts and techniques most commonly applied in real-world work.

It is not intended to be a comprehensive or rigorous treatment of mathematics. Formal proofs, advanced theoretical topics, and exhaustive derivations are intentionally minimized in favor of clarity, intuition, and application.

Readers seeking a deep, formal study of mathematics may wish to supplement this book with traditional academic texts. The goal here is different: to help you understand, use, and reason about the math that actually matters in practice.


What You'll Learn

Inside this book, you'll master the essential math behind modern data work-without getting lost in unnecessary theory:

Linear Algebra - Vectors, matrices, PCA, and SVD explained with real-world intuition
Probability - Conditional probability, distributions, and Bayes theorem that actually stick
Statistics - Hypothesis testing, confidence intervals, and avoiding common mistakes
Calculus - Derivatives and gradients made simple for optimization
Optimization - Gradient descent and modern optimizers like Adam and RMSProp
Machine Learning Math - Linear regression, logistic regression, neural networks, and attention

Why This Book Is Different

Most math books are written for mathematicians.
This one is written for practitioners.

Instead of long proofs and abstract theory, you get:

Clear, plain-English explanations
Step-by-step worked examples
Real-world scenarios from industry
Problem sets with full solutions
Visual intuition behind every concept

You'll learn why the math matters, not just how to compute it.


Who This Book Is For
Aspiring data scientists and ML engineers
Students who want a practical math foundation
Professionals switching into AI or analytics
Anyone tired of "fluffy" explanations and overcomplicated theory

What You'll Gain

By the end of this book, you will:

Understand the math behind machine learning models
Debug models with confidence
Make better decisions using data
Stop feeling intimidated by math

The Bottom Line

You don't need to master everything.
You need to master what matters.

This book shows you exactly what that is.

Recommended

Format: Paperback

Condition: New

$25.00
Ships within 2-3 days
Save to List

Customer Reviews

0 rating
Copyright © 2026 Thriftbooks.com Terms of Use | Privacy Policy | Do Not Sell/Share My Personal Information | Cookie Policy | Cookie Preferences | Accessibility Statement
ThriftBooks ® and the ThriftBooks ® logo are registered trademarks of Thrift Books Global, LLC
GoDaddy Verified and Secured