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The MS in Data Science at Âé¶¹ÊÓÆµ is a 30-credit interdisciplinary graduate program designed to equip students with the technical, analytical, and mathematical expertise needed to excel in a data-driven world. The program is offered as a general data science degree or with Business Analytics (36 credit) or Computational Biology (39 credit) concentrations. The general track allows students to tailor electives to their interests across multiple applied areas, while the Business Analytics Concentration adds advanced coursework in business problem-solving, forecasting, optimization and simulation. The Computational Biology Concentration adds advanced coursework in bioinformatics, advanced genomics, machine learning as applied to biology including protein folding, and computational approaches to solving an array of biological questions. The curriculum integrates applied statistics, computer science, and mathematics to provide a rigorous foundation in programming, data modeling, analytical reasoning, and applied analytics. Machine learning methods are embedded throughout the curriculum, giving students hands-on experience with modeling techniques commonly used in modern data science practice.
Durable and Technical Skills
Students develop practical skills in algorithms, data management, data mining, and visualization using industry-standard tools and cloud-based platforms. Courses will emphasize both the mathematical underpinnings of data science and their practical applications across diverse industries, ensuring that graduates can translate complex data into actionable insights.
To support individual and diverse goals, the program offers several electives in multiple applied areas, such as Business Analytics, Technology, Environmental Science, Computational Science, and Criminal Justice, allowing students to tailor electives to their professional interests. For the 30-credit no-concentration degree, these electives serve as suggested areas of application rather than formal concentrations, providing flexibility to explore diverse data contexts.
The program culminates in a capstone case study course or internship, where students integrate their learning by solving real-world problems. Working with authentic datasets, students will design and implement data-driven solutions, practicing the skills of problem framing, analysis, and communication expected of professional data scientists. This interdisciplinary structure reflects the University’s mission to integrate business and technology education while responding directly to employer demand for graduates who can apply data science in real organizational settings.
Program Competencies
Upon graduation, students are expected to have gained an advanced level of applicable knowledge in the following five program competencies:
All students in the MS in Data Science program will complete the following required courses (9 credits), core courses (15 credits), and elective courses (6 credits).
Students will also be required to take the following course as a pre-requisite to MBA 6300 if a comparable undergraduate calculus or statistics course has not been completed:
In addition, students in the Computational Biology concentration will be required to take the following courses prior to enrolling if comparable undergraduate biology courses have not been completed:
Intro to Computer Science
Quantitative Business Analysis
Python Programming
Data Science
Cloud-Based Machine Learning
Data Analytics and Visualization
Data Management
Predictive Analytics
Data Science Capstone
Data Analytics for Accountants
Forecasting for Business Analytics
Optimization for Business Analytics
Simulation for Business Analytics
Advanced Genomics
Biometry
Computational Science
Technology for Modern Policing
Research Methods in Criminal Justice
Geographic Information Systems
Algorithms and Advanced Data Structures
Theory of Artificial Intelligence
Predictive Analytics: Data Mining
Cloud Management
All students in the MS in Data Science with a concentration in Computational Biology program will complete the following required courses (9 credits), core courses (12 credits), and concentration courses (18 credits).
Cell and Molecular Systems
Data Science Internship
This information applies to new students who enter this degree program during the 2026-2027 Academic Year. All enrolled students should log in to MyWilmU Degree Works to view their personalized course and program completion requirements. You may also refer to the academic catalog for the general curriculum for this program from previous academic years.
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