Introduction to Statistics with Python: The Essential Guide to Data Analysis and Visualization for Aspiring Data Scientists
Format:
Paperback
En stock
0.69 kg
Sí
Nuevo
Amazon
USA
- Buy the Paperback – Get the Complimentary Digital Edition Free Purchase the paperback edition and enjoy a complimentary digital edition on your favorite device—yours to keep for personal use. The print edition adopts the classic Springer font and layout for pleasing reading. The digital edition adopts a beautiful Latex layout for pleasing reading. Master Statistics with Python—From Beginner to Advanced Introduction to Statistics with Python is your comprehensive guide to understanding statistics through hands-on coding and real-world application. Designed for aspiring data scientists, this book takes you from foundational concepts to advanced techniques—all using Python. Written by Professor Chris Kuo—an experienced educator and data science expert—this book brings together years of teaching insight into one cohesive, practical, and easy-to-follow guide. Inspired by countless “aha” moments in the classroom, it demystifies statistics with an approach that's clear, deep, and approachable.The book is divided into three parts:Part I: Foundations of Statistics introduces key ideas like descriptive statistics, probability distributions, and multivariate relationships. Ideal for beginners, this section helps you build strong statistical intuition while learning to use Python.Part II: Core Statistical Methods focuses on practical tools like sampling, confidence intervals, hypothesis testing, t-tests, chi-square tests, and ANOVA. You'll gain the skills to draw valid conclusions from data and design meaningful experiments.Part III: Advanced Statistical Thinking explores A/B testing, nonparametric methods, bootstrapping, Bayesian inference, and Markov Chain Monte Carlo (MCMC). It concludes with linear regression and model evaluation—essential skills for predictive modeling and modern analytics.Each chapter combines theory with practical Python code using NumPy, Pandas, Matplotlib, and Seaborn. Whether you’re a student, analyst, or professional making a pivot into data, this book helps you become statistically fluent and Python-proficient.Why This Book Stands Out This book follows the C.D.E. philosophy:Clearer – Concepts explained in plain language with real-life relevanceDeeper – Goes beyond procedures to build your intuition and critical thinkingEasier – Carefully structured chapters with examples, visuals, and Python code to help you learn efficientlyWho This Book Is ForStudents taking their first statistics or data science courseSelf-taught learners eager to understand how data worksProfessionals looking to upskill in data analysis and decision-makingEducators seeking a statistics textbook that integrates Python effectivelyWhether you're aiming to pursue a data career or just want to become statistically literate in a data-driven world, this book equips you with the tools and confidence to analyze data with clarity and purpose. Python in This Book This book uses Python for its popularity in data science. After completing this statistics course with Python, students will encounter Python again in data science courses, where it has become a cornerstone tool. Installation instructions and GitHub notebooks are included: [https://github.com/dataman-git/introduction\_statistics](https://github.com/dataman-git/introduction_statistics)From the AuthorImagine sitting in an antique classroom with your modern laptop in front of you—a blend of tradition and innovation. That’s the atmosphere I hope to recreate in this book. Chris Kuo, New York City
IMPORT EASILY
By purchasing this product you can deduct VAT with your RUT number