Efficient R Programming: A Practical Guide to Smarter Programming
by: Colin Gillespie – Robin Lovelace
ISBN-10: 1491950781
ISBN-13: 9781491950784
Edition 版本: 1
Released: October 25,2016
Pages: 150
With Early Release ebooks,you get books in their earliest form—the author’s raw and unedited content as he or she writes—so you can take advantage of these technologies long before the official release of these titles. You’ll also receive updates when significant changes are made,new chapters are available,and the final ebook bundle is released.
Become a more productive programmer with Efficient R Programming. Drawing on years of experience teaching R courses,authors Colin Gillespie and Robin Lovelace give practical advice on a range of topics—from optimizing set-up of RStudio to leveraging C++—that make this book a valuable asset for both experienced and novice programmers. It’s suitable for academics,business users,and programmers from a wide range of backgrounds.
Get practical,tried-and-true advice from longtime R instructors
Dive into a wide range of topics,including RStudio set-up and leveraging C++,suitable for all skill levels
Gain insight into RStudio’s functionality to boost code-writing productivity
Learn the necessary skills for team-based R programming work
Save time,and energy,debugging code and searching online forums
Preface
1.Introduction
2.Efficient Setup
3.Efficient Programming
4.Efficient Workflow
5.Efficient Input/Output
6.Efficient Data Carpentry
7.Efficient Optimization
8.Efficient Hardware
9.Efficient Collaboration
10.Eficient Learning A.Package Dependencies B.References Index
Efficient R Programming: A Practical Guide to Smarter Programming
相关推荐
- Practical Business Statistics, 8th Edition
- Computational Optimization, Modeling, and Simulation for Engineering Applications
- Comprehensive Metaheuristics: Algorithms and Applications
- Introduction to Nature-Inspired Optimization
- Natural Language Processing: Concepts,Methodologies,Tools,and Applications
- Machine Learning for Biomedical Applications: With Scikit-Learn and PyTorch