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 Title StepByStep Programming With Base SAS® Software
 Author(s) SAS Institute
 Publisher: SAS Institute (February 11, 2019)
 Paperback 788 pages
 eBook PDF (788 pages, 5.1 MB)
 Language: English
 ISBN10: 1580257917
 ISBN13: 9781580257916
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This book provides conceptual information about SAS software along with stepbystep examples that illustrate the concepts. It answers every question that a new or intermediate SAS® user might have. Every page has learning opportunities. Examples are thorough, readable, and clear for SAS® programmers.
About the Authors SAS Institute provides a complete selection of hardcopy books and electronic products that help customers use SAS software to its fullest potential. Covering a wide spectrum of topics, all books and products are developed and reviewed by technical experts.
 Statistics, Mathematical Statistics, and SAS Programming
 Probability and Stochastic Process
 Mathematical and Computational Software, MATLAB, etc.
 Financial Mathematics, Mathematical Economics, and Financial Engineering
 Algebra, Abstract Algebra, and Linear Algebra
 StepByStep Programming With Base SAS® Software (SAS Institute)
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