Please Enter ISBN, Title or Author’s Name
Compare Textbook Prices with Amazon
Compare Textbook Prices with Chegg
Compare Textbook Prices with AbeBooks
Compare Textbook Prices with Vitalsource
Compare Textbook Prices with Valorebooks
and more...

Practical Data Science with R, Second Edition | 2nd Edition

Compare Textbook Prices for Practical Data Science with R, Second Edition 2nd Edition ISBN 9781617295874 by Zumel, Nina,Mount, John
Authors: Zumel, Nina,Mount, John
ISBN:1617295876
ISBN-13: 9781617295874
List Price: $46.99 (up to 65% savings)
Prices shown are the lowest from
the top textbook retailers.

View all Prices by Retailer

Details about Practical Data Science with R, Second Edition:

Summary Practical Data Science with R, Second Edition takes a practice-oriented approach to explaining basic principles in the ever expanding field of data science. You’ll jump right to real-world use cases as you apply the R programming language and statistical analysis techniques to carefully explained examples based in marketing, business intelligence, and decision support. About the technology Evidence-based decisions are crucial to success. Applying the right data analysis techniques to your carefully curated business data helps you make accurate predictions, identify trends, and spot trouble in advance. The R data analysis platform provides the tools you need to tackle day-to-day data analysis and machine learning tasks efficiently and effectively. About the book Practical Data Science with R, Second Edition is a task-based tutorial that leads readers through dozens of useful, data analysis practices using the R language. By concentrating on the most important tasks you’ll face on the job, this friendly guide is comfortable both for business analysts and data scientists. Because data is only useful if it can be understood, you’ll also find fantastic tips for organizing and presenting data in tables, as well as snappy visualizations. What's inside Statistical analysis for business pros Effective data presentation The most useful R tools Interpreting complicated predictive models About the reader You’ll need to be comfortable with basic statistics and have an introductory knowledge of R or another high-level programming language. About the author Nina Zumel and John Mount founded a San Francisco–based data science consulting firm. Both hold PhDs from Carnegie Mellon University and blog on statistics, probability, and computer science.

Need Software Design & Engineering tutors? Start your search below:
Need Software Design & Engineering course notes? Start your search below: