Our multidisciplinary curriculum includes courses in bioinformatics, statistics, machine learning, computation and simulation, quantitative biology, and genomics. The training emphasizes hands-on computer labs and practical skills to prepare students for careers beyond the classroom.
During the first two semesters, students focus on foundation and competency courses. In the second half of the program, students will join one of our top-notch research labs at either WCGS or SKI to work on an independent project in order to develop more specialized expertise and hone their skills in problem solving, critical thinking, and science communication.
Students are also required to take at least two electives among program-approved WCGS and Cornell Tech offerings. At least one elective must cover statistical or machine learning. Possibilities include courses on applied machine learning, natural language processing, computer vision, AI, and statistical learning. Other electives include courses on biostatistics, health informatics, biomedical entrepreneurship, etc.