1st Edition

Mastering data.table in R Programming Techniques for Data Science

By David Shilane Copyright 2027
238 Pages 3 Color Illustrations
by Chapman & Hall

238 Pages 3 Color Illustrations
by Chapman & Hall

Mastering data.table in R provides a comprehensive discussion of R programming with the data.table package. Widely regarded for its breadth of applications and computational efficiency, data.table provides an excellent set of tools for data science investigations. This textbook introduces the core programming syntax of data.table, discusses advanced data.table techniques, and reinforces... Read more

1. Introduction

2. Basic Calculations

3. Advanced data.table Operations

4. Data Structures and Aggregations

5. File Reading and Writing

6. Case Study – Telehealth Utilization

7. Case Study: Classification of Electrical Appliances from Energy Usage Data

8. Conclusion

Biography

David Shilane is a Lecturer of Applied Analytics at Columbia University.  He teaches courses in applied machine learning, research methods, and data science consulting.  David conducts research in healthcare outcomes and utilization, social determinants of health, applied machine learning, data science education, and statistical software.  He has developed a range of R software packages that utilize or extend data.table, and he has taught a range of data.table workshops.  As a practitioner, David has served as a statistical consultant in academic research, healthcare organizations, technological start-ups, and product research firms.  Often serving as the first data scientist for organizations and advising chief level officers, he has played a role in building data systems and developing data science initiatives from the ground up.  David received degrees from Stanford University and the University of California Berkeley.