The Future of Education

Edition 14

Accepted Abstracts

Educational Needs in Computing of Experienced Full-Time Working Professionals

Ashley J. Haigler, Pace University (United States)

Suzanna E. Schmeelk, Pace University (United States)

Tonya L. Fields, Pace University (United States)

Lisa L. Ellrodt, Pace University (United States)

Ion C. Freeman, Pace University (United States)

Abstract

Pace University introduced an industry-based doctoral degree in Computing for senior full-time working professionals during the early 2000s.  The Pace University Doctor of Professional Studies (D.P.S.) in Computing accepts these students, with several years of experience, into a weekend-based on campus doctoral program.  Faculty with exceptional industry and academic based experience lead the D.P.S. program.   This research examines the educational needs of students who have enrolled in the D.P.S. program.  Specifically, the research reports on the responses to a survey sent to them. The survey queries past students on overall educational motivations, time constraints, budget constraints, job constraints, and research interests.  Survey responses indicate that senior full-time working professionals chose the Pace University program based on the hybrid program structure, dissertation research relating to the student’s full-time working experience, location, and costs.  The survey reports on major obstacles for this group (e.g., time, family, job, and funding), career advancement, average hours of full-time work per week, determining how the degree was funded (e.g., employer, loans, or personal), and length of time to complete degree.  The results of the survey can be used to inform the needs of full-time industry experienced working professionals as they return to traditional degree program curriculum designs.

Keywords: Full-Time Working Professionals, Educational Needs, Computing;

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