Graduate Programs
Degree Programs
Master of Data Science
The M.S. in Data Science (MSDS) is a two-year residential program offering multidisciplinary coursework in computer science, information science, informatics, statistics, engineering, and other disciplines. It prepares students to pursue a data science related career or admission to a Ph.D. program. As an MSDS student, you have the option of our distinct tracks: Applied Data Science, Big Data Systems, Computational and Analytical, and Managerial Data Science. Students are required to complete 30 credit hours of graduate-level coursework for this degree.
Applied Data Science Track
The Applied Data Science track offers the training in both the data science methods and their application in different domains. This track is suitable for students with an interdisciplinary background who want to specialize in application areas of data science.
Student following the Applied Data Science track are required to complete 12 credit hours of core coursework that covers 3 credit hours of Statistical Methods, 3 credit hours of Data Mining and Search, 3 credit hours of Data Management and Engineering, and 3 credit hours of Data Visualization and Storytelling. Students will specialize in 6 credit hours of a Data Science domain. The remaining 12 credit hours are 3 credit hours of capstone project and 9 credit hours of electives, selected to best suit individual interests, needs, and overall career goals.
Statistical Methods (3 credit hours)
- STAT-S 520 Introduction to Statistics
- Higher level statistics course may be taken with departmental approval
Data Mining and Search (3 credit hours)
Select one course from the following:
- CSCI-B 551 Elements of Artificial Intelligence
- CSCI-B 555 Machine Learning
- CSCI-B 565 Data Mining
- CSCI-P 556 Applied Machine Learning
- ENGR-E 511 Machine Learning for Signal Processing
- ILS-Z 534 Search
- INFO-I 606 Network Science (may be counted only once)
Data Management and Engineering (3 credit hours)
Select one course from the following:
- CSCI-B 561 Advanced Database Concepts
- ENGR-E 516 Engineering Cloud Computing
- INFO-I 535 Management, Access, and Use of Big and Complex Data
Data Visualization and Storytelling (3 credit hours)
Select one course from the following:
- ENGR-E 583 Information Visualization (may be counted only once)
- ENGR-E 584 Scientific Visualization
- INFO-I 590 Topics in Informatics
- Topic: Data Visualization (may be counted only once)
- STAT-S 670 Exploratory Data Analysis
Select one of the following domains and complete two courses within that specific domain:
Augmented and Virtual Reality
- INFO-I 590 Topic in Informatics
- Topic: Artificial Life in Virtual Reality
- Topic: Building Virtual Worlds
- Topic: Creating Virtual Assets
- Topic: Introduction to Virtual Reality
Data Security and Privacy
- INFO-I 520 Security for Networked Systems
- INFO-I 525 Organizational Informatics and Economics of Security
- INFO-I 533 Systems and Protocol Security and Information Assurance
- INFO-I 538 Introduction to Cryptography
Health and Biomedical Data Science
- INFO-I 507 Introduction to Health Informatics
- INFO-I 519 Introduction to Bioinformatics
- INFO-I 529 Machine Learning in Bioinformatics
Human Robotic Interaction
- CSCI-B 657 Computer Vision
- ENGR-E 523 Internet of Things
- ENGR-E 599 Topics in Intelligent Systems Engineering
- Topic: Autonomous Robotics
- INFO-I 513 Usable Artificial Intelligence
- INFO-I 527 Mobile and Pervasive Design
- INFO-I 540 Human Robot Interaction
- INFO-I 542 Foundations of HCI
Social Data Science
- ENGR-E 583 Information Visualization (may be counted only once)
- ILS-Z 639 Social Media Mining
- INFO-I 513 Usable Artificial Intelligence
- INFO-I 590 Topics in Informatics
- Topic: Data Visualization (may be counted only once)
- INFO-I 606 Network Science (may be counted only once)
Capstone Project (3 credit hours)
Students will be required to work on a project that applies the knowledge and skills learned to solve real-world problems for a company, organization, or individual. This may be fulfilled through a capstone course, an internship, or an independent study project. The aim of this requirement is to demonstrate students' capabilities to prospective employers and inspire innovation.
- DSCI-D 591 Graduate Internship
- DSCI-D 592 Data Science in Practice
- DSCI-D 699 Independent Study in Data Science
- ILS-Z 690 Capstone in Information Architecture
Electives (9 credit hours)
The remaining 9 credit hours are selected from unselected courses above or additional data science-related course offerings within the Luddy School of Informatics, Computing, and Engineering. Students may not earn credit for courses taken to fulfill the core, domain, or capstone requirements.
- No more than three (3) credit hours of DSCI-C 591 may be earned
- No more than three (3) credit hours of DSCI-D 590, Data Science On-Ramp, may be earned
Big Data Systems Track
The Big Data Systems track focuses on the development and engineering of software systems for collecting, managing, and mining massive data. This is most suitable for students with a background in computer science or engineering who prefer hands-on and project-based learning.
Students following the Big Data Systems track are required to complete 21 credit hours of core coursework that covers 3 credit hours of Statistical Methods, 6 credit hours of AI and Machine Learning, 9 credit hours of Big Data, Cloud Computing, and Visualization, and 3 credit hours of Core Engineering. The remaining 9 credit hours are electives selected to best suit individual interests, needs, and overall career goals.
Pre-requisites: Students in this program need to have a solid foundation in STEM course work, specifically the following:
- Proficient level of programming experience in C, Java or Python
- Familiarity with R and MATLAB is useful
- Calculus I and II and basic understanding or probability and elements of discrete math
Statistical Methods (3 credit hours)
Select one course from the following:
- SPEA-V 506 Statistical Analysis for Effective Decision-making
- STAT-S 520 Introduction to Statistics
- Student who have completed equivalent prior coursework in statistics can opt to take an additional elective in lieu of one of the Statistical Methods courses
AI and Machine Learning for Engineering (6 credit hours)
Select two courses from the following:
- CSCI-B 555 Machine Learning
- CSCI-B 565 Data Mining
- CSCI-P 556 Applied Machine Learning
- ENGR-E 511 Machine Learning for Signal Processing
- ENGR-E 533 Deep Learning Systems
- ENGR-E 536 High Performance Graph Analytics
Big Data, Cloud Computing, and Visualization (9 credit hours)
Select three courses from the following:
- CSCI-B 561 Advanced Database Concepts
- ENGR-E 516 Engineering Cloud Computing
- ENGR-E 522 HPC and Cloud Computing for Large Scale Image Applications
- ENGR-E 534 Big Data Applications
- ENGR-E 583 Information Visualization
- ENGR-E 584 Scientific Visualization
- ENGR-E 616 Advance Cloud Computing
- ENGR-E 623 Applied Streaming Data Systems
Core Engineering (3 credit hours)
Select one course from the following:
- ENGR-E 503 Introduction to Intelligent Systems
- ENGR-E 517 High Performance Computing
- ENGR-E 523 Internet of Things
- ENGR-E 535 Image Processing for Medical Applications
- ENGR-E 551 Simulating Nanoscale Systems
Electives (9 credit hours)
The remaining 9 credit hours can be selected from unselected courses above or additional data science-related course offerings within the Luddy School of Informatics, Computing, and Engineering. Students may not earn extra credit for courses taken to fulfill core requirements.
- No more than three (3) credit hours of DSCI-D 591 may be earned
- No more than three (3) credit hours of DSCI-D 590, Data Science On-Ramp, may be earned
Computational and Analytical Track
The Computational and Analytical track focuses on the foundational data science methods. This track is most suitable for students with a background in computer science, statistics, or mathematics who wish to dive deeper into the mechanics of data science methodologies.
Students following the Computational and Analytical track are required to complete 15 credit hours of core coursework that covers 3 credit hours of Data Systems Foundation, 3 credit hours of Algorithmic Foundation, 6 credit hours of Data Analytics Foundation, and 3 credit hours of Big Data Infrastructures. The remaining 15 credit hours are electives selected to best suit individual interests, needs, and overall career goals.
Data Systems Foundation (3 credit hours)
- CSCI-B 561 Advanced Database Concepts
Algorithmic Foundation (3 credit hours)
Select one course from the following:
- CSCI-B 503 Algorithms Design and Analysis
- CSCI-B 505 Applied Algorithms
Data Analytics Foundation (6 credit hours)
- STAT-S 520 Introduction to Statistics
- Higher level statistics course may be taken with departmental approval
Select one additional course from the following:
- CSCI-B 555 Machine Learning
- CSCI-B 565 Data Mining
Big Data Infrastructure (3 credit hours)
Select one course from the following:
- ENGR-E 516 Engineering Cloud Computing
- INFO-I 535 Management, Access and Use of Big and Complex Data
The remaining 15 credit hours are selected from unselected courses above or additional data science-related offerings within the Luddy School of Informatics, Computing, and Engineering. Students may not earn credit for courses taken to fulfill core requirements.
- No more than three (3) credit hours of DSCI-D 591 may be earned
- No more than three (3) credit hours of DSCI-D 590, Data Science On-Ramp, may be earned
Managerial Data Science Track
The managerial data science track combines advanced knowledge in database systems and programming languages with strong interpersonal and project management skills. This track is most suitable for students with prior work experience who wish to develop organizational and project management skills.
Students following the Managerial Data Science track are required to complete 21 credit hours of core coursework that covers 3 credit hours of Statistical Methods, 3 credit hours of Machine Learning, Data Mining, and Text Mining, 3 credit hours of Data Visualization and Storytelling, 6 credit hours of Management in Theory, and 6 credit hours of Management in Practice. The remaining 9 credit hours are 3 credit hours of capstone project, and 6 credit hours of electives, selected to best suit individual interests, needs, and overall career goals.
Statistical Methods (3 credit hours)
Select one course from the following:
- SPEA-V 506 Statistical Analysis for Effective Decision-Making
- STAT-S 520 Introduction to Statistics
- Higher level statistics course may be taken with departmental approval
Machine Learning, Data Mining, and Text Mining (3 credit hours)
Select one course from the following:
- CSCI-B 505 Applied Algorithms
- CSCI-B 551 Elements of Artificial Intelligence
- CSCI-B 555 Machine Learning
- CSCI-B 561 Advanced Database Concepts
- CSCI-B 565 Data Mining
- CSCI-B 657 Computer Vision
- CSCI-P 556 Applied Machine Learning
- ENGR-E 511 Machine Learning for Signal Processing
- ILS-Z 534 Search
- INFO-I 513 Usable Artificial Intelligence
- INFO-I 606 Network Science
Data Visualization and Storytelling (3 credit hours)
Select one course from the following:
- ENGR-E 583 Information Visualization
- ENGR-E 584 Scientific Visualization
- INFO-I 590 Topics in Informatics
- Topic: Data Visualization
Management in Theory (6 credit hours)
Select two courses from the following:
- ILS-Z 513 Organizational Informatics
- ILS-Z 604 Data Ethics
- ILS-Z 645 Social and Organizational Informatics of Big Data
Management in Practice (6 credit hours)
Select two courses from the following:
- ILS-Z 512 Information Systems Design
- ILS-Z 556 Systems Analysis and Design
- ILS-Z 586 Digital Curation
Capstone Project (3 credit hours)
Students will be required to work on a project that applies the knowledge and skills learned to solve real-world problems for a company, organization, or individual. This may be fulfilled through a capstone course, an internship, or an independent study project. The aim of this requirement is to demonstrate students' capabilities to prospective employers and inspire innovation.
- DSCI-D 591 Graduate Internship
- DSCI-D 592 Data Science in Practice
- DSCI-D 699 Independent Study in Data Science
- ILS-Z 690 Capstone in Information Architecture
Electives (6 credit hours)
The remaining 6 credit hours are selected from unselected courses above or additional data science-related course offerings within the Luddy School of Informatics, Computing, and Engineering. Students may not earn credit for courses taken to fulfill the core, domain, or capstone requirements.
- No more than three (3) credit hours of DSCI-C 591 may be earned
- No more than three (3) credit hours of DSCI-D 590, Data Science On-Ramp, may be earned