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Courses - Fall 2025
MSAI
Master of Science in Artificial Intelligence
Open Seats as of
08/22/2025 at 10:30 PM
MSAI601
Probability and Statistics
Credits: 3
Grad Meth: Reg
Prerequisite: Undergraduate courses in calculus and basic linear algebra.
Cross-listed with: DATA601, BIOI601, MSML601.
Credit only granted for: BIOI601, DATA601, MSAI601 or MSML601.
Provides a solid understanding of the fundamental concepts of probability theory and statistics. The course covers the basic probabilistic concepts such as probability space, random variables and vectors, expectation, covariance, correlation, probability distribution functions, etc. Important classes of discrete and continuous random variables, their inter-relation, and relevance to applications are discussed. Conditional probabilities, the Bayes formula, and properties of jointly distributed random variables are covered. Limit theorems, which investigate the behavior of a sum of a large number of random variables, are discussed. The main concepts random processes are then introduced. The latter part of the course concerns the basic problems of mathematical statistics, in particular, point and interval estimation and hypothesis testing.
MSAI602
Principles of Data Science
Credits: 3
Grad Meth: Reg, Aud
Restriction: Must be in one of the following programs: (Data Science Post-Baccalaureate Certificate, Master of Professional Studies in Data Science and Analytics, or Master of Professional Studies in Machine Learning).
Cross-listed with: DATA602, BIOI602, MSML602.
Credit only granted for: BIOI602, DATA602, MSAI602, MSML602 or CMSC641.
Formerly: CMSC641.
An introduction to the data science pipeline, i.e., the end-to-end process of going from unstructured, messy data to knowledge and actionable insights. Provides a broad overview of what data science means and systems and tools commonly used for data science, and illustrates the principles of data science through several case studies.
MSAI603
Principles of Machine Learning
Credits: 3
Grad Meth: Reg, Aud
Restriction: Must be in one of the following programs: (Data Science Post-Baccalaureate Certificate, Master of Professional Studies in Data Science and Analytics, or Master of Professional Studies in Machine Learning).
Cross-listed with: DATA603, BIOI603, MSML603, MSQC603.
Credit only granted for: BIOI603, DATA603, MSAI603, MSML603, MSQC603 or CMSC643.
Formerly: CMSC643.
A broad introduction to machine learning and statistical pattern recognition. Topics include: Supervised learning: Bayes decision theory, discriminant functions, maximum likelihood estimation, nearest neighbor rule, linear discriminant analysis, support vector machines, neural networks, deep learning networks. Unsupervised learning: clustering, dimensionality reduction, PCA, auto-encoders. The course will also discuss recent applications of machine learning, such as computer vision, data mining, autonomous navigation, and speech recognition.
MSAI631
Credits: 3
Grad Meth: Reg
This course is an interdisciplinary exploration of the social impacts and ethical implications of AI. It examines the histories, social values and power dynamics shaping AI technologies, as well as how AI is reshaping culture, politics, and society. Students will develop a sociotechnical understanding of AI related to policy, education, labor, economic systems, and culture. Using approaches from the humanities and social sciences, students will develop frameworks to address ongoing challenges including digital inequality, bias, and surveillance. Students will also learn how AI has and can be used to foster positive social change.