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 Applied Modelling and Quantitative Methods: Data Science and Analytics (MSc Course)
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SchoolTrent University - Graduate Studies
LocationPeterborough, ON, Canada
School TypeGraduate School
School SizeFull-time Undergraduate: 1,235
DegreeMaster
Honours
Co-op
Length12 Month(s)
Entry Grade (%)*
Prerequisites
Prerequisites Notes

Eligibility Requirements

  • Honours bachelor degree (a four-year undergraduate bachelor's degree) in a traditional discipline
  • Minimum B+ (77%) or equivalent in the last two years of full-time study, or last ten full academic credits
  • A university course in differential and integral calculus, and one in probability and statistics or equivalent
  • Some familiarity with linear algebra, and capabilities in programming at an elementary level in at least one computational language
  • A course in either differential equations or advanced statistics is required, depending on whether the student's area of research will be mathematics or statistics based
Cost

Cost shown is for the 2024-2025 academic year.
Scholarships
DescriptionThis new 12-month, course-based M.Sc. program covers a wide array of data science topics, aiming to equip graduates with the tools and techniques needed to handle and analyze complex data sets across various scientific and social science fields. Students will complete a research practicum during their final term of study ensuring they gain practical experience essential for their academic and professional development.
Next Steps

*We make every attempt to provide accurate information on prerequisites, programs, and tuition. However, this information is subject to change without notice and we highly recommend that you contact the school to confirm important information before applying.