The students will be introduced to the R programming 
language, a programming language that was 
specifically developed for analyzing data, and 
is today widely used in most organizations that 
conduct data analysis. The students will learn how 
to explore datasets in R, using basic visualization 
tools and summary statistics, how to run different 
kinds of regressions and analyses, and how to 
perform statistical inference in practice, for example 
how to test certain hypotheses regarding the data or 
how to compute confidence intervals for quantities 
of interest. The students will also learn how to use R 
in order to conduct simulations, an extremely useful 
tool that can fulfill a wide range of analytical tasks. 
Simulation techniques covered will include Monte 
Carlo, importance sampling and rejection sampling. 
Finally, the students will learn how to estimate the 
precision of computed sample statistics using 
resampling methods. The course uses a hands-on 
approach, with nearly half the work done in the lab.
Outcome: Not Provided