Courses
The two-year full-time MSc program requires the completion of 36 credit hours as outlined below.
Structure
Requirements | Course Details |
---|---|
1 required course 0 credits |
Data Science for Everyone Bootcamp |
5 required courses 15 credits |
Probability and Statistics; Machine Learning; Introduction to Data Science; Introduction to Artificial Intelligence; Ethics and Legal Considerations for Data Science |
5 elective courses 15 credits |
Advanced electives |
2 Master's Thesis 6 credits |
Research project at NYUAD or in collaboration with industry partners |
2 Winter School courses 0 credits |
Two required courses |
4 Data Science and AI Seminar 0 credits |
Four required courses |
Specializations
Since Interdisciplinary Data Science and Artificial Intelligence are vast fields, students will have substantial flexibility in selecting electives that align with their academic and professional interests. In consultation with their faculty mentor and the Graduate Program Head, each student will develop a personalized course plan that leads to an informal focus in a specific area, culminating in a capstone research thesis.
Below are examples of potential focus areas, based on course offerings and faculty expertise:
- Health Informatics: Applications of machine learning and data science in healthcare and biomedical research
- Urban Mobility and Logistics: Data-driven approaches to urban transport, supply chains, and traffic operations
- (Arabic) Natural Language Processing: AI models for language processing, with a focus on Arabic and multilingual contexts
- Human-Machine Interaction: Designing AI-driven systems for enhanced user experience and interaction
- Computational Social Science: AI-driven analysis of human behavior, policy, and social dynamics
- Mathematical Foundations and AI Theory: Core algorithmic foundations, optimization, and theoretical advancements in AI
- Data Science and Economics: AI applications in financial modeling, economic decision-making, and quantitative analysis
Course Descriptions
- Required Courses
- Electives
Sample Course Structure
Term | Year 1 | Credits | Year 2 |
Credits |
---|---|---|---|---|
Summer Term |
Data Science for Everyone Bootcamp (as needed) | 0 | Master’s thesis research and/or internship | 0 |
Fall Semester |
IDSC-GH 5010 Introduction to Data Science | 3 | Elective 2 | 3 |
IDSC-GH 5020 Probability and Statistics | 3 | Elective 3 | 3 | |
IDSC-GH 5030 Ethics and Legal Considerations for Data Science | 3 | IDSC-GH 6010 Master’s Thesis 1 |
3 | |
IDSC-GH 5900 Data Science Seminar | 0 | IDSC-GH 5900 Data Science Seminar | 0 | |
J-Term |
IDSC-GH 5910 Data Science Winter School | 0 | IDSC-GH 5920 Data Science Winter School | 0 |
Spring Semester |
IDSC-GH 5040 Machine Learning |
3 | Elective 4 |
3 |
IDSC-GH 5050 Intro to AI | 3 | Elective 5 | 3 | |
Elective 1 | 3 | IDSC-GH 6020 Master’s Thesis 2 | 3 | |
IDSC-GH 5900 Data Science Seminar | 0 | IDSC-GH 5900 Data Science Seminar | 0 | |
Year 1 Credits | 18 | Year 2 Credits | 18 | |
Total Credits |
36 |