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 Title: Statistical Inference for Data Science
 Author(s) Brian Caffo
 Publisher: Leanpub; eBook (Creative Commons Licensed)
 License(s): Creative Commons License (CC)
 Hardcover: N/A
 eBook: HTML and PDF
 Language: English
 ISBN10: N/A
 ISBN13: N/A
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Book Description
The book gives a rigorous treatment of the elementary concepts in statistical inference from a classical frequentist perspective. The ideal reader for this book will be quantitatively literate and has a basic understanding of statistical concepts and R programming.
About the Authors Brian Caffo, PhD is a professor in the Department of Biostatistics at the Johns Hopkins Bloomberg School of Public Health.
 Statistical Inference for Data Science (Brian Caffo)
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