Description: Lecture, four hours; discussion, two hours; outside study, six hours. Requisites: course 131A or Civil and Environmental Engineering 110 or Mathematics 170A or 170E or Statistics 100A; Computer Science 32 or Program in Computing 10C; Mathematics 33A. Introduction to breadth of data science. Foundations for modeling data sources, principles of operation of common tools for data analysis, and application of tools and models to data gathering and analysis. Topics include statistical foundations, regression, classification, kernel methods, clustering, expectation maximization, principal component analysis, decision theory, reinforcement learning and deep learning. Letter grading.
Instructor: Suhas Diggavi ([email protected])
Office Hours: MW - 5:00 to 6:00 PM at Zoom
Teaching Assistant: ****Mohamad Rida Rammal ([email protected])
Office Hours: TTH - 4:00 to 5:00 PM at Zoom
Units: 4 credits