Track
Tidyverse Fundamentals in R
Included withPremium or Teams
Create Your Free Account
or
By continuing, you accept our Terms of Use, our Privacy Policy and that your data is stored in the USA.Training 2 or more people?
Try DataCamp for BusinessLoved by learners at thousands of companies
Track Description
Tidyverse Fundamentals in R
Master the Tidyverse for Efficient Data Analysis in R
Explore the tidyverse, a powerful collection of R packages that revolutionizes how you manipulate, visualize, and model data. In this comprehensive Track, you'll learn to leverage the full potential of the tidyverse through hands-on exercises and real-world datasets. Discover how to streamline your data analysis workflow and produce meaningful insights with less code and greater clarity.From Data Wrangling to Visualization and Modeling
Progress through the data science pipeline as you:- Import and tidy data using readr and tidyr, ensuring a consistent structure for analysis
- Transform and manipulate data with dplyr, harnessing the power of the pipe operator (%>%)
- Create stunning visualizations with ggplot2, communicating insights effectively
- Model relationships in your data using broom and purrr, extending the tidyverse to statistical analysis
Apply Your Skills to Real-World Data Challenges
Throughout the Track, you'll work with diverse datasets from various domains, giving you practical experience in solving authentic data problems. From analyzing programming language popularity on Stack Overflow to exploring job market trends, you'll develop a portfolio of projects showcasing your tidyverse skills.Designed for Beginners and Experienced R Users Alike
Whether you're new to R or looking to enhance your data analysis toolkit, this Track is perfect for you. The courses are carefully crafted to guide you from the basics of the tidyverse to advanced techniques, with clear explanations and progressive exercises. If you have prior experience with base R, you'll appreciate how the tidyverse simplifies and enhances your existing workflows.Why the Tidyverse?
The tidyverse has become the go-to framework for data analysis in R, thanks to its intuitive design and consistent syntax across packages. By mastering the tidyverse, you'll write more efficient, readable, and maintainable code. You'll also join a thriving community of data scientists and analysts who have adopted the tidyverse as their tool of choice.Become a Confident and Proficient Data Analyst
By completing this Track, you'll have the skills and confidence to tackle complex data challenges in R. You'll be able to:- Efficiently preprocess and clean data for analysis
- Perform exploratory data analysis to uncover patterns and trends
- Create informative visualizations to communicate insights
- Build and interpret statistical models to make data-driven decisions
Prerequisites
There are no prerequisites for this trackCourse
Get started on the path to exploring and visualizing your own data with the tidyverse, a powerful and popular collection of data science tools within R.
Course
Transform almost any dataset into a tidy format to make analysis easier.
Project
Analyze the popularity of programming languages over time based on Stack Overflow data.
Course
Discover different types in data modeling, including for prediction, and learn how to conduct linear regression and model assessment measures in the Tidyverse.
Course
Leverage the power of tidyverse tools to create publication-quality graphics and custom-styled reports that communicate your results.
Course
Get ready to categorize! In this course, you will work with non-numerical data, such as job titles or survey responses, using the Tidyverse landscape.
Complete
Earn Statement of Accomplishment
Add this credential to your LinkedIn profile, resume, or CVShare it on social media and in your performance review
Included withPremium or Teams
Enroll nowFAQs
Join over 16 million learners and start Tidyverse Fundamentals in R today!
Create Your Free Account
or
By continuing, you accept our Terms of Use, our Privacy Policy and that your data is stored in the USA.