The book presents a practical introduction to tidymodels, a suite of R packages designed for modeling and machine learning. Aimed at data analysts and scientists of all levels, it emphasizes a consistent and flexible approach using the tidyverse dialect of R. Authored by RStudio engineers Max Kuhn and Julia Silge, it illustrates how the tidyverse principles facilitate learning across the ecosystem. Readers will gain insights into the framework's design, making it accessible for a diverse audience engaged in data modeling.
Max Kuhn Knihy





Applied Predictive Modeling
- 600 stránek
- 21 hodin čtení
A comprehensive guide to the principles and practices of building robust predictive models. Tailored for practitioners and data scientists, the book blends theoretical foundations with practical applications across various domains, including healthcare, finance, and marketing. Covering essential topics such as data preprocessing, feature engineering, model evaluation, and advanced machine learning techniques, the book emphasizes real-world problem-solving with clear examples and R code implementations. This resource is indispensable for anyone aiming to master predictive analytics and develop models that drive actionable insights.
Feature Engineering and Selection
A Practical Approach for Predictive Models
- 314 stránek
- 11 hodin čtení
Focusing on the often-overlooked stages of developing predictive models, this book emphasizes techniques for optimizing predictor representations and selecting the best subset of predictors. It aims to enhance model performance by addressing critical aspects beyond just the algorithms, providing a comprehensive guide for practitioners in the field.
All Happy;
- 208 stránek
- 8 hodin čtení