- Probability And Statistics
- Correlation And Dependence
- Data Analysis
- Linear Regression
- Statistical Inference
- Statistical Hypothesis Testing
- Data Visualization
- R Programming
- Rstudio
- Regression Analysis
- Exploratory Data Analysis
- General Statistics
March 1, 2018
Approximately 4 months at 10 hours a week to completeSean Angiolillo's account is verified. Coursera certifies their successful completion of Duke University Data Analysis with R Specialization.
Course Certificates Completed
Bayesian Statistics
Inferential Statistics
Linear Regression and Modeling
Statistics with R Capstone
Introduction to Probability and Data with R
Analyze and visualize data
Perform hypothesis tests, interpret statistical results (e.g., p-values), and report the results of your analysis to clients
Fit, examine, and utilize regression models to examine relationships between multiple variables
Install and use R and RStudio
Earned after completing each course in the Specialization
Duke University
Taught by: Mine Çetinkaya-Rundel, David Banks, Colin Rundel & Merlise A Clyde
Completed by: Sean Angiolillo by November 11, 2017
5 weeks of study, 5-7 hours/week
Duke University
Taught by: Mine Çetinkaya-Rundel
Completed by: Sean Angiolillo by October 20, 2017
5 weeks of study, 5-7 hours/week
Duke University
Taught by: Mine Çetinkaya-Rundel
Completed by: Sean Angiolillo by October 15, 2017
4 weeks of study, 5-7 hours/week
Duke University
Taught by: Merlise A Clyde, Colin Rundel , David Banks & Mine Çetinkaya-Rundel
Completed by: Sean Angiolillo by March 1, 2018
5-10 hours/week
Duke University
Taught by: Mine Çetinkaya-Rundel
Completed by: Sean Angiolillo by October 15, 2017
5 weeks of study, 5-7 hours/week