Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Learn Challenge: Handle Mismatched Data Joins | Joining Data Frames in R
Practice
Projects
Quizzes & Challenges
Quizzes
Challenges
/
Data Manipulation in R (Core)

bookChallenge: Handle Mismatched Data Joins

You have explored the basics of joining data frames in R, including how to combine tables using matching keys. Now, you will practice handling more complex scenarios where data frames have mismatched keysβ€”meaning not every row in one data frame has a corresponding match in the other. This is a common challenge in real-world data integration tasks, and mastering these join types is essential for robust analytics workflows. In this challenge, you will use right_join(), full_join(), and anti_join() to combine data frames and identify unmatched rows.

Task

Swipe to start coding

Practice joining two data frames with mismatched keys and identifying unmatched rows.

  • Use right_join() to combine customers and orders, ensuring all rows from orders are kept, and matching where possible.
  • Use full_join() to combine customers and orders, ensuring all rows from both data frames are included, matching where possible.
  • Use anti_join() to find all customers in customers who do not have a matching row in orders.

Solution

Everything was clear?

How can we improve it?

Thanks for your feedback!

SectionΒ 4. ChapterΒ 4
single

single

Ask AI

expand

Ask AI

ChatGPT

Ask anything or try one of the suggested questions to begin our chat

close

bookChallenge: Handle Mismatched Data Joins

Swipe to show menu

You have explored the basics of joining data frames in R, including how to combine tables using matching keys. Now, you will practice handling more complex scenarios where data frames have mismatched keysβ€”meaning not every row in one data frame has a corresponding match in the other. This is a common challenge in real-world data integration tasks, and mastering these join types is essential for robust analytics workflows. In this challenge, you will use right_join(), full_join(), and anti_join() to combine data frames and identify unmatched rows.

Task

Swipe to start coding

Practice joining two data frames with mismatched keys and identifying unmatched rows.

  • Use right_join() to combine customers and orders, ensuring all rows from orders are kept, and matching where possible.
  • Use full_join() to combine customers and orders, ensuring all rows from both data frames are included, matching where possible.
  • Use anti_join() to find all customers in customers who do not have a matching row in orders.

Solution

Switch to desktopSwitch to desktop for real-world practiceContinue from where you are using one of the options below
Everything was clear?

How can we improve it?

Thanks for your feedback!

SectionΒ 4. ChapterΒ 4
single

single

some-alt