Master of Science in Data Science

Data Science is a coherent framework of principles for processing and analyzing data towards decision-making. The Master of Science in Data Science (MSDS) provides the theoretical knowledge and practical skills required for dealing with the contemporary collection, exploration, analysis, and modeling of data along with the related challenges pertaining to inference and prediction. Emphasis is put on the mathematical foundations underpinning state-of-the-art methodologies: probability theory, statistical modeling, numerical methods, optimization, and Markov decision processes for statistical learning.

The core courses cover generally applicable theory and methods in a self-sufficient framework, while elective courses can tailor particular paths towards industry and business applications, or towards an academic career. The choice of electives can lead to a concentration, which is optional. Four concentrations are offered: Fundamentals of Data Science, Data Acquisition and Management, Data Security, and Business Applications.

Data Science Requirements

Core Courses

15 credits totaled over the following 5 core courses.

MA 541Statistical Methods

3

CS 583Deep Learning

3

MA 630Advanced Optimization Methods

3

MA 661Dynamic Programming and Reinforcement Learning

3

CPE 695Applied Machine Learning

3

MA 612 Mathematical Statistics or MA 701 Statistical Inference can be taken instead of MA 541 given sufficient preparation.

Electives

15 credits to be chosen among the elective classes listed below.

Students may choose MA 900 Master of Science Thesis for 6 credits as one of their electives to work on a specific project with an advisor. The approval of the program coordinator is required for enrollment in MA 900.

Also, students may choose one (and only one) of the following as one of their electives:

CS 570Introduction to Programming, Data Structures, and Algorithms

3

EE 551Engineering Programming: Python

3

The elective courses listed below are grouped in 4 concentrations. Choosing a concentration is not a requirement. Students that do choose a concentration must then select at least 9 credits out of the 15 electives from the corresponding list.

Elective Courses for Concentration in Fundamentals of Data Science

At least 9 credits out of the 15 credits in elective classes must be chosen among the following courses.

MA 544Numerical Linear Algebra for Big Data

3

MA 641Time Series Analysis I

3

MA 613Spatial and Spatio-Temporal Statistical Modeling

3

MA 617Tensor Methods for Data Analysis

3

MA 620Pricing and Hedging

3

MA 623Stochastic Processes

3

MA 662Stochastic Programming

3

MA 720Advanced Statistics

3

CPE 646Pattern Recognition and Classification

3

CS 584Natural Language Processing

3

CS 601Algorithmic Complexity

3

Elective Courses for Concentration in Data Acquisition and Management

At least 9 credits out of the 15 credits in elective classes must be chosen among the following courses.

CS 526Enterprise and Cloud Computing

3

CS 549Distributed Systems and Cloud Computing

3

CS 561Database Management Systems I

3

CS 562Database Management Systems II

3

CS 609Data Management and Exploration on the Web

3

EE 627Data Acquisition, Modeling and Analysis: Big Data Analytics

3

EE 628Data Acquisition, Modeling and Analysis: Deep Learning

3

Elective Courses for Concentration in Data Security

At least 9 credits out of the 15 credits in elective classes must be chosen among the following courses.

CS 573Fundamentals of CyberSecurity

3

CS 503Discrete Mathematics for Cryptography

3

Or

MA 503Discrete Mathematics for Cryptography

3

CS 579Foundations of Cryptography

3

Or

CPE 579Foundations of Cryptography

3

CS 578Privacy in a Networked World

3

CS 594Enterprise and Cloud Computing

3

CS 696Database Security

3

CS 595Information Security and the Law

3

CPE 691Information Systems Security

3

CS 503, MA 503, CS 579, CPE 579, and CS 578: These three courses must be taken in the sequence CS 503 - CS 579 - CS 578.

Elective Courses for Concentration in Business Applications

At least 9 credits out of the 15 credits in elective classes must be chosen among the following courses.

CS 526Enterprise and Cloud Computing

3

BIA 660Web Mining

3

BIA 662Cognitive Computing

3

BIA 672Marketing Analytics

3

BIA 674Supply Chain Analytics

3

BIA 676Data Streams Analytics: Internet of Things

3

BIA 678Big Data Technologies

3

FE 5552D Data Visualization Programming for Financial Applications

3

MIS 636Data Integration for Business Intelligence and Analytics

3