Introduction to R
Master the basics of data analysis by manipulating common data structures such as vectors, matrices, and data frames.
Master the basics of data analysis by manipulating common data structures such as vectors, matrices, and data frames.
Continue your journey to becoming an R ninja by learning about conditional statements, loops, and vector functions.
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.
Learn to produce meaningful and beautiful data visualizations with ggplot2 by understanding the grammar of graphics.
Learn to transform and manipulate your data using dplyr.
Grow your statistical skills and learn how to collect, analyze, and draw accurate conclusions from data.
Learn to combine data across multiple tables to answer more complex questions with dplyr.
In this course, you will learn to read CSV, XLS, and text files in R using tools like readxl and data.table.
Learn to use facets, coordinate systems and statistics in ggplot2 to create meaningful explanatory plots.
Predict housing prices and ad click-through rate by implementing, analyzing, and interpreting regression analysis in R.
Develop the skills you need to go from raw data to awesome insights as quickly and accurately as possible.
In this course you will learn the basics of machine learning for classification.
Learn how to use graphical and numerical techniques to begin uncovering the structure of your data.
Shiny is an R package that makes it easy to build interactive web apps directly in R, allowing your team to explore your data as dashboards or visualizations.
Take your R skills up a notch by learning to write efficient, reusable functions.
Learn to write faster R code, discover benchmarking and profiling, and unlock the secrets of parallel programming.
Use data manipulation and visualization skills to explore the historical voting of the United Nations General Assembly.
Learn how and when to use common hypothesis tests like t-tests, proportion tests, and chi-square tests.
R Markdown is an easy-to-use formatting language for authoring dynamic reports from R code.
Parse data in any format. Whether it's flat files, statistical software, databases, or data right from the web.
Learn essential data structures such as lists and data frames and apply that knowledge directly to financial examples.
In this course you will learn how to predict future events using linear regression, generalized additive models, random forests, and xgboost.
Develop a strong intuition for how hierarchical and k-means clustering work and learn how to apply them to extract insights from your data.
Learn to perform linear and logistic regression with multiple explanatory variables.
Learn the essentials of parsing, manipulating and computing with dates and times in R.
This course provides a comprehensive introduction to working with base graphics in R.
This course provides an intro to clustering and dimensionality reduction in R from a machine learning perspective.
Learn how to describe relationships between two numerical quantities and characterize these relationships graphically.
In this course, you'll learn about the concepts of random variables, distributions, and conditioning.
The xts and zoo packages make the task of managing and manipulating ordered observations fast and mistake free.
Learn how to efficiently collect and download data from any website using R.
In this course you'll learn techniques for performing statistical inference on numerical data.
This course teaches the big ideas in machine learning like how to build and evaluate predictive models.
In this course you'll learn to add multiple variables to linear models and to use logistic regression for classification.
Learn how to make predictions about the future using time series forecasting in R.
Analyze text data in R using the tidy framework.
Learn the core techniques necessary to extract meaningful insights from time series data.
Learn how to draw conclusions about a population from a sample of data via a process known as statistical inference.
Learn how to pull character strings apart, put them back together and use the stringr package.
Learn about how dates work in R, and explore the world of if statements, loops, and functions using financial examples.
In this course you will learn to fit hierarchical models with random effects.
In this course you'll learn how to leverage statistical techniques for working with categorical data.
Master sampling to get more accurate statistics with less data.
Learn to analyze and model customer choice data in R.
Transform almost any dataset into a tidy format to make analysis easier.
Learn to work with data using tools from the tidyverse, and master the important skills of taming and tidying your data.
Learn to read, explore, and manipulate spatial data then use your skills to create informative maps using R.
Learn to effectively convey your data with an overview of common charts, alternative visualization types, and perception-driven style enhancements.
Explore Linear Regression in a tidy framework.
In this course you'll learn how to perform inference using linear models.
Visualize the rise of COVID-19 cases globally with ggplot2.
Use text mining to analyze Jeopardy! data.
Wrangle and visualize musical data to find common chords and compare the styles of different artists.
Apply your importing and data cleaning skills to real-world soccer data.
Discover the top tools Kaggle participants use for data science and machine learning.
Discover how the US bond yields behave using descriptive statistics and advanced modeling.
Use tree-based machine learning methods to identify the characteristics of legendary Pokémon.
Use logistic regression to determine which treatment procedure is more effective for kidney stone removal.
Load, clean, and explore Super Bowl data in the age of soaring ad costs and flashy halftime shows.
Check what passwords fail to conform to the National Institute of Standards and Technology password guidelines.
Analyze health survey data to determine how BMI is associated with physical activity and smoking.
Apply hierarchical and mixed-effect models to analyze Maryland crime rates.
Use your logistic regression skills to protect people from becoming zombies!
Predict the impact of climate change on bird distributions using spatial data and machine learning.
Use cluster analysis to glean insights into cryptocurrency gambling behavior.
Apply unsupervised learning techniques to help plan an education program in Argentina.
Use R to make art and create imaginary flowers inspired by nature.
Use data science to catch criminals, plus find new ways to volunteer personal time for social good.
Explore the salary potential of college majors with a k-means cluster analysis.
Analyze admissions data from UC Berkeley and find out if the university was biased against women.
Analyze the dialog and IMDB ratings of 287 South Park episodes. Warning: contains explicit language.
Experiment with clustering algorithms to help doctors inform treatment for heart disease patients.
Explore acoustic backscatter data to find fish in the U.S. Atlantic Ocean.
Write functions to forecast time series of food prices in Rwanda.
Apply text mining to Donald Trump's tweets to confirm if he writes the (angrier) Android half.
Use regression trees and random forests to find places where New York taxi drivers earn the most.
Reanalyse the data behind one of the most important discoveries of modern medicine: handwashing.
Apply your skills from "Working with Dates and Times in R" to breathalyzer data from Ames, Iowa.
Create and explore interactive maps using Leaflet to determine where to open the next Chipotle.
How can we find a good strategy for reducing traffic-related deaths?
Get ready for Halloween by digging into a FiveThirtyEight dataset with all your favorite candy!
Examine the relationship between heart rate and heart disease using multiple logistic regression.
Examine the network of connections among local health departments in the United States.
Analyze the relative popularity of programming languages over time based on Stack Overflow data.
If you have never done a DataCamp project, this is the place to start!
Explore a dataset from Kaggle containing a century's worth of Nobel Laureates. Who won? Who got snubbed?
Flex your data manipulation muscles on breath alcohol test data from Ames, Iowa, USA.
Analyze athletics data to find new ways to scout and assess jumpers and throwers.
Compare life expectancy across countries and genders with ggplot2.
Analyze data from the hit mobile game, Candy Crush Saga.
Use data management and exploratory data analysis skills to help analyze the UK Dairy Industry.
Apply data importing and cleaning skills to extract insights about the New York City Airbnb market.
Reanalyse the data behind one of the most important discoveries of modern medicine: handwashing.
Analyze the relative popularity of programming languages over time based on Stack Overflow data.
Write functions to forecast time series of food prices in Rwanda.