Nov 21, 2024  
2023-2024 Graduate Catalog 
    
2023-2024 Graduate Catalog [ARCHIVED CATALOG]

Data Science (MS)


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Program Educational Goals


Educational Goals 

  1. Demonstrate a mastery of foundational knowledge in data science through the successful completion of a diverse range of coursework encompassing multiple areas of domain and technical expertise.
  2. Develop and apply data science techniques in one or more domain areas of interest via course projects, examinations, and/or a master’s thesis.
  3. Communicate data science techniques and findings to expert and non-expert audiences in written, discussion, visual, and oral presentation formats. 
  4. Demonstrate a deep understanding of ethics in data science and related technical tools through in-depth discussion and study of current ethical issues in the field.
  5. Gain experiential training-via on-campus projects or external internships-in workflow management, technical collaboration, and professional accountability in preparation for the expectations of the workplace.

Requirements for the Degree:


A total of 33 credits is required for the degree. If the student lacks background knowledge for one or more courses, prerequisite courses may need to be taken that do not count toward the degree.

Core Requirements:


18 credits in total from the four foundations listed below as well as the Ethics Course.

Probabilistic and Statistical Foundations:


Choose at least two of the following (6 credits):

Databases and Data Mining Foundations:


Choose at least one of the following (3 credits):

Mathematical and Computational Foundations:


Choose at least one of the following (3 credits):

Note:


*Only one of STAT 674 and CISC 683 may be taken for credit toward the degree.

* Only two of these courses may be applied as required courses toward the degree - ELEG 815, STAT 617, and MATH 637.

* Only one of MATH 612 and STAT 603 may be applied as required courses toward the degree.

Ethics:


A three-credit ethics course on data science is required.

Electives:


Fifteen (15) credits of elective courses may come from a variety of courses on campus with 16 relevant application or quantitative content. A list of example courses is below. The elective list is not meant to be exhaustive. The courses must be at the 600 level or above. A course from the core lists may be chosen as an elective provided that it has not already been used to satisfy the core course requirement. The electives taken by the student must be approved by the advisor and the Assistant Director of the MSDS prior to registration.

Non-thesis option:


33 credits of course work are required. Up to three credits of Special Problem or Research can be applied toward the credit total. These Special Problem or Research credits may come from experience on campus or in industry (e.g., internships). Special Problem or Research credits must be related to the degree and must be approved by the advisor and the executive committee. Valid scholarly output from such credits are presentations (oral or poster), papers, reports or similar that demonstrate related work in the field.

Thesis option:


A minimum of six credits must be taken to do a MS thesis. The University requirements for master’s theses shall apply to the thesis in this degree. The committee for the thesis shall include three members with at least one member not from the department of the advisor.

Last Revised for 2023-2024 Academic Year


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