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New course: Joining Data with dplyr

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datacamp.com

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team@datacamp.com

Sent On

Thu, Dec 1, 2016 06:01 PM

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Learn how to combine data sets with dplyr, plus how to use mutating joins, filtering joins, and set

Learn how to combine data sets with dplyr, plus how to use mutating joins, filtering joins, and set operations. This course expands on what you've learned in Data Manpipulation in R with dplyr. Afterwards, you will be well on your way to manipulation mastery! . DataCamp New Course . Joining Data in R with dplyr Taught by Garrett Grolemund, Data Scientist at RStudio [Joining Data with dplyr] This course will teach you how to combine data sets with dplyr's two table verbs. You'll learn the best ways to combine data sets and how to use mutating joins, filtering joins, and set operations. [Play now] What You'll Learn Chapter One: Mutating Joins Mutating joins add new variables to one dataset from another dataset, matching observations across rows in the process. Chapter Two: Filtering Joins and Set Operations Filtering joins and set operations combine information from datasets without adding new variables. Chapter Three: Assembling Data This chapter will show you how to build datasets from basic elements: vectors, lists, and individual datasets that do not require a join. Chapter Four: Advanced Joining This chapter will show you how to spot common join problems, how to join multiple tables, and how to recreate dplyr's joins with SQL and base R. Chapter Five: Case Study Cement what you've learned with a real world application! [Start Course] DataCamp Inc. 2067 Massachusetts avenue Cambridge MA 02141 [Unsubscribe]

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