| | Financial Data Analytics (MFDA) | | |
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| School | Ontario Tech University - Graduate Studies | | |
| Location | Oshawa, ON, Canada | | |
| School Type | Graduate School | | |
| School Size | Full-time Undergraduate: 10,550 Full-time Graduate: 902 | | |
| Degree | Master | | |
| Honours | | | |
| Co-op | | | |
| Length | 24 Month(s) | | |
| Entry Grade (%)* | | | |
| Prerequisites | | | |
| Prerequisites Notes | In addition to the general admission requirements for graduate studies, MFDA applicants must meet the following program-specific requirements:
- While applicants may hold any four-year undergraduate degree (or its 3-year equivalent from a recognized institution in countries where it is the accepted practice), preference is given to applicants whose undergraduate degree is in the field of business, economics, finance, information technology, computer science, modelling and computer science, engineering, mathematics, statistics, physics, actuarial science, or other quantitative fields.
- A statistics course is required. Linear algebra and calculus are highly recommended.
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| Description | Aimed at working professionals, this unique graduate program trains students in both finance and related data analytic skills and is suitable for business graduates with or without an advanced mathematics background. Applicants to the MFDA can be from a variety of educational backgrounds, from business, economics and finance, to mathematics, computer science, information technology and other quantitative areas.
There is an immense amount of data created every day, and the financial industry has benefited the most from data analytics. Banking and financial markets use information and analytics in creating a competitive advantage for their organizations. The need for professionals who can combine their finance and market expertise while supporting these emerging technologies is growing. Graduates of the MFDA will be trained in how to analyze financial data with data analytic skills including AI programming and applications. | | |
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