Nov 08, 2024  
2025-2026 Graduate Catalog [DRAFT] 
    
2025-2026 Graduate Catalog [DRAFT] [ARCHIVED CATALOG]

Data Science and Analytics, M.S.


Navid Hashemi, Program Director
843.953.0428
hashemin@cofc.edu
https://datascience.cofc.edu/graduate/

Mission Statement

The Mission of the College of Charleston’s Master of Science in Data Science and Analytics degree program is to fill the growing demand for graduates with data-driven, quantitative, analytics, and computing skills - i.e., a data scientist.

Program Description

There are several overlapping but distinct ways to identify and define a data scientist. At the heart of data science is the goal of knowledge discovery from data. This requires a core of specialized skills from the domains of computer science and mathematics complemented with significant exposure to a domain of specialization (e.g., business, science, social sciences, and humanities).

Graduates of this degree program will master the following core skills: Data Modeling, Data Wrangling, Experimental Design, Statistics, Optimization, Machine Learning, and Data Visualization. The core skills are complemented by domain-specific elective coursework. Recommended elective packages are provided which specifically prepare students for the following career goals: Machine Learning Data Scientist, Modeling and Software Engineering Data Scientist, Computational Data Scientist, Scientific Computing, and a Business Analytics Data Scientist. All students in this program will apply their core and domain-specific skills and knowledge to either an industry practicum or research thesis experience.

The specific learning objectives of the program are:

  1. Graduates will demonstrate advanced and applied knowledge of computer programming, data organization, data mining, data visualization, and algorithms.
  2. Graduates will demonstrate an advanced understanding in the core area of mathematics and statistics, including optimization, machine learning, regression, and linear algebra.
  3. Graduates will demonstrate an application of their data science graduate coursework through the completion of a Practicum Experience or Research Thesis.

Admissions Requirements and Application Deadlines 


Data Science and Analytics, M.S. Admission Requirements


Institutional Admissions Requirements


  • A completed application form with a nonrefundable application fee of $60.
  • Official transcripts of all undergraduate and graduate coursework. An earned bachelor’s degree from an accredited college or university is required.
  • International applicants should refer to the International Students area within the “Admissions Information” section of the catalog for information on providing appropriate documentation with the application.

Program Admissions Requirements


  • Prerequisite Requirements. Prospective students must be able to demonstrate competency in the areas of statistics, linear algebra, calculus, and computer programming. These prerequisite areas should be covered by coursework from any regionally accredited college or university (a grade of B or higher is preferred). Relevant work experience may be acceptable in demonstrating competency if mapped to typical learning outcomes for courses normally accepted. With prior approval from the program director, specific certified, online, university-style, MOOC courses (e.g., Coursera, edX, etc.) may be acceptable for demonstrating competency in some prerequisite areas.
  • Statement of Purpose. A 300-500 word statement of purpose is required. Applicants should discuss their reasons for applying to the program, areas of interest, and career objectives.
  • Letters of Recommendation. Two letters of recommendation that should provide specifics on the applicant’s motivation and ability to complete the program are required.
  • Resume
  • The Data Science and Analytics program does not accept non-degree seeking students.

Application Deadlines


  • Fall: January 15, priority*; July 1, final
  • Spring: No Spring Admission
  • Summer: No Summer Admission

*Candidates who submit a completed application by the priority deadline will automatically be considered for Graduate School and/or graduate program funding.

  

 

Transfer Credit Policy

No program specific guidelines. Please refer to the Graduate School’s transfer credit policy .

 

Program Requirements
Program Learning Outcomes