This is a theoretical course covering fundamental 
topics of probability and statistics in the context of 
data science with its inherent challenges. This course 
will start with a review of fundamental probability, 
covering topics like random variables, their 
distribution functions, expected values, conditioning 
on certain events and independence. The students 
will be acquainted with certain families of probability 
distributions and then will learn how to estimate 
certain quantities of interest from observations. 
A range of properties of estimators will be studied, 
including sufficiency, unbiasedness and consistency, 
which enable the evaluation of their quality with an 
emphasis in the framework of big datasets. 
The students will also learn how to introduce 
different types of hypotheses, how to construct tests 
for their hypotheses, as well as how to compare 
between tests and how to construct confidence 
intervals for their estimators.
Outcome: Not Provided