Statistics and Data Science
The Statistics and Data Science major is designed for students pursuing a career as a data scientist or statistician. It combines cutting-edge techniques in data science with mathematically rigorous statistics. Statistics courses in the curriculum are project-driven with an emphasis on the analysis of real-world data using statistical methods implemented by powerful statistical software. This program prepares students for a career in business or industry utilizing statistics or data science but is also sufficiently rigorous to prepare a student for graduate work in a related field.
The digital revolution has created vast quantities of data. Extracting knowledge and insight from this avalanche of information is the goal of data science, a rapidly growing field with applications in such areas as marketing, education, and sports, as well as scientific fields such as genomics, neuroscience, and particle physics.
Career Opportunities
Decision-makers have access to more data than ever before, but deriving meaning and actionable insights from that data requires specialized tools and expertise. For that reason, graduates with degrees in Statistics and Data Science are in high demand.
Currently, there is a global data scientist shortage. It is estimated that within the next two years, there will be twice as many data science jobs as there will be people to fill those roles. This means extensive job opportunities for individuals with the necessary education and skills.
Curriculum
UE's program in Statistics and Data Science combines state-of-the-art tools and techniques from the field of data science with a mathematically rigorous tradition of classical applied statistics. Students in the program will…
- Engage through project-driven courses. Data analysis projects offered throughout the curriculum expose students to the entire work cycle of predictive modeling, including problem formulation, acquisition and cleaning of data, model selection and fitting, interpretation, and reporting.
- Master cutting-edge statistical software. Students gain fluency in the statistical software currently in use within business and industry, including R, Python, and BigQuery.
- Receive a first-class liberal arts education. Working with “big data” requires more than quantitative and technological skills—it also requires an ability to frame questions, to bring diverse teams together, to make ethical and informed decisions, and to communicate results to decision-makers. A UE education provides students with broad foundational knowledge in the arts and sciences, as well as the critical thinking and communication skills that employers value.
Details on program requirements and course descriptions can also be found in the catalog.
Additional Information
Sample 4-year Plan Beginning in an Odd Year
With Harlaxton
Fall | Spring | |
---|---|---|
Freshman | MATH 221 – Calculus I STAT 166 – Intro to R for Data Science |
MATH 222 – Calculus II STAT 266 – Introductory Statistics with R |
Sophomore | CS 210 – Fund. of Programming I STAT 267 – Experimental Design MATH 365 – Probability |
MATH 341 – Linear Algebra Math 466 – Statistics CS 215 – Fund. of Programming II |
Junior | STAT 361 – Linear Models | Harlaxton |
Senior | STAT 300 – Data Analysis in Real World STAT 474 – Techniques for Large Data Sets |
STAT 362 – Machine Learning STAT 493 – Statistical Modeling |
Without Harlaxton
Fall | Spring | |
---|---|---|
Freshman | MATH 221 – Calculus I STAT 166 – Intro to R for Data Science |
MATH 222 – Calculus II STAT 266 – Introductory Statistics with R CS 210 – Fund. of Programming I |
Sophomore | STAT 267 – Experimental Design MATH 365 – Probability CS 215 – Fund. of Programming II |
MATH 341 – Linear Algebra MATH 466 – Statistics |
Junior | STAT 361 – Linear Models | STAT 362 – Machine Learning |
Senior | STAT 300 – Data Analysis in Real World STAT 474 – Techniques for Large Data Sets |
STAT 493 – Statistical Modeling |
Sample 4-year Plan Beginning in an Even Year
With Harlaxton
Fall | Spring | |
---|---|---|
Freshman | MATH 221 – Calculus I STAT 166 – Intro to R for Data Science |
MATH 222 – Calculus II STAT 266 – Introductory Statistics with R CS 210 – Fund. of Programming I |
Sophomore | STAT 267 – Experimental Design MATH 365 – Probability CS 215 – Fund. of Programming II |
MATH 341 – Linear Algebra MATH 466 – Statistics |
Junior | STAT 361 – Linear Models STAT 474 – Techniques for Large Data Sets |
Harlaxton |
Senior | STAT 300 – Data Analysis in Real World | STAT 362 – Machine Learning STAT 493 – Statistical Modeling |
Without Harlaxton
Fall | Spring | |
---|---|---|
Freshman | MATH 221 – Calculus I STAT 166 – Intro to R for Data Science |
MATH 222 – Calculus II STAT 266 – Introductory Statistics with R CS 210 – Fund. of Programming I |
Sophomore | STAT 267 – Experimental Design MATH 365 – Probability CS 215 – Fund. of Programming II |
MATH 341 – Linear Algebra MATH 466 – Statistics |
Junior | STAT 361 – Linear Models STAT 474 – Techniques for Large Data Sets |
STAT 300 – Data Analysis in Real World STAT 362 – Machine Learning |
Senior | STAT 300 – Data Analysis in Real World |
STAT 493 – Statistical Modeling |
Note: CS 215* can be replaced by a computer-based course. Harlaxton: STAT 361 can be taking in the fall of the senior year.
STAT Course | Frequency |
---|---|
STAT 166 – Intro to R for Data Science | Annually in Fall |
STAT 266 - Introductory Statistics with R | Annually in Spring |
STAT 267 - Experimental Design | Annually in Fall |
STAT 300 - Data Analysis in Real World | Annually in Fall |
STAT 361 - Linear Models | Annually in Fall |
STAT 362 - Machine Learning | Every Spring |
STAT 474 - Techniques for Large Data Sets | Every even Fall |
STAT 493 - Statistical Modeling | Annually in Spring |
MATH and CS Course | Frequency |
---|---|
MATH 221, 222 - Calculus | Fall, Spring, and Summer |
MATH 365 - Probability | Annually in Fall |
Math 466 - Mathematical Statistics | Annually in Spring |
MATH 341 - Linear Algebra | Annually in Spring |
CS 210, 215 - Introduction to Programming | Every Fall and Spring |
Office Phone
812-488-1234
Office Email
math@mikeshiner.com
Office Location
Room 314, Koch Center for Engineering and Science