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Assistant/Associate Professor of Business Statistics and Data Analytics

Employer
Lynn University
Location
Florida, United States
Salary
Salary Not specified
Posted Date
Apr 14, 2022

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Position Type
Faculty Positions, Business & Management, Other Business & Management
Employment Level
Non-Tenured Track
Employment Type
Full Time
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As a Lynn employee, you will help us build a better world with our students. We look to our faculty to bring their diverse experiences and perspectives to their work, and welcome and encourage faculty candidates from a variety of backgrounds to consider joining our team. Lynn is currently accepting applications for the position of Assistant or Associate Professor of Business Statistics and Data Analytics.

The College of Business and Management at Lynn University requires faculty to teach courses in its undergraduate and graduate programs at our campus in Boca Raton, Florida and in our online programs. Candidates must be able to teach this schedule both in person and on campus to be considered.

Essential Duties and Responsibilities

  • Teach courses in accordance with college guidelines
  • Participate in the college's assessment program of student performance
  • Timely response to student questions and concerns
  • Timely submission of university reports and requirements, such as attendance, grades, and student progress reports
  • Participation in the life of the College and University through continuing professional development; contributions to University and College meetings; advancing curricula and co-curricula; engaging in scholarship contributions and providing service contributions to the College, University, profession, and broader community

Required Knowledge, Skills, and Abilities

  • Candidates must be proficient in using technology for instructional delivery, such as learning management systems (e.g., Canvas), or otherwise have a high comfort level with learning and utilizing new technology, and be self-sufficient for problem-solving minor technical issues.
  • Candidates must have an appreciation of different learning styles to incorporate into their instructional delivery.
  • Candidates must have excellent written, verbal, and interpersonal skills.
  • Candidates must have excellent numerical and analytical skills.
  • Candidates must be team players and be willing to engage in leadership activities that advance the interests of the College.

Minimum Qualifications

  • Candidates must have, before starting appointment in August 2022, a doctorate with at least 18 graduate credit hours in business statistics, data analytics, business modeling, or a related quantitative business decision science.
  • All qualifying graduate degrees must have been completed in a regionally accredited university.
  • Proof of being current in the field of instruction, whether through continuous education, scholarship contributions, and/or practical, high-level field experience.
  • Candidates must be available to work the required schedule in person on our Boca Raton campus. Online-only candidates will not be considered.

Desired Qualifications

  • Candidates who additionally have 18 graduate hours of education in another business-related field, such as economics or accounting, are desired.
  • Previous experience teaching business statistics, data analytics, business modeling, or a related quantitative business decision science at a college or university level is desired.
  • Candidates with administrative leadership interests are desired.

To Apply        

Completed applications will be reviewed upon receipt for match to potential needs. Only completed applications will be reviewed, which must include a short cover letter, resume or CV with detailed academic credentials, copies of all college transcripts, and three letters of reference.

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