More than at any other time in our history, we are living through a paradigm shift in how we think about data. Advances in computing power, algorithms for data modeling and machine learning, coupled with unparalleled access to vast quantities of data has transformed disciplines across the sciences, social sciences, and humanities. The Minor in Applied Data Science will help students learn fundamental data science methodologies drawn from computing and statistics and provide opportunities to apply these methodologies to datasets, problem domains, and explorations in many disciplines of study in Arts & Science. Understanding the human and ethical contexts and communicating results of data science methodologies will appear in courses throughout the program.
The minor is designed to complement programs in other areas with opportunities for data science applications (see program requirements for pertinent programs). This program is designed to be accessible to students who have never done any computer programming or statistics before, or who haven’t taken high school or university calculus. All skills necessary to succeed in the program are taught in our courses. Most students who are interested in this program should start by choosing one of our three introductory, interdisciplinary data science courses: EEB125H1, GGR274H1, or ENG286H1, which introduce data science skills such as computer programming, statistical reasoning, and data visualization within the context of a particular discipline. Students then proceed to take a suite of key computer science and statistics courses that reinforce and extend these skills, with an emphasis on applications to real-world problems. Finally, in later years students will choose from a wide variety of courses drawn from across the Faculty of Arts & Science. These upper-year courses will provide the opportunity to discuss and analyze the human contexts of data science, and to apply data science methodologies in discipline-specific contexts.
This is a limited enrolment program. Students must have completed 4.0 credits and meet the requirements listed below to enrol.
Variable Minimum Grade
A minimum grade is needed for entry, and this minimum may change each year depending on available spaces and the number of applicants. Eligibility is based on the following criteria:
- Completion of one of EEB125H1/ ENG286H1/ GGR274H1/ ESS245H1/ STA130H1 with a grade of at least 60%, OR
- Completion of one of CSC108H1/ CSC110Y1/ CSC148H1 with a grade of at least 60%, OR
- Completion of one of ECO220Y1/ EEB225H1/ GGR270H1/ IRW220H1/ PSY201H1/ SOC202H1/ STA220H1/ STA238H1/ STA248H1/ STA261H1/ STA288H1 with a grade of at least 60%.
Obtaining this minimum grade does not guarantee admission to the program. If students have completed more than one of the above courses at the time of admission, the minimum grade will be based on the higher course grade.
Note: Students enrolled in this program cannot be simultaneously enrolled in or complete any Computer Science or Statistics programs, including the Computer Science Minor, Statistics Minor, and Data Science Specialist; nor the Focus in Data Analytics within the Economics Major or Specialist; nor the Focus in Data Science in Business within the Rotman Commerce specialist programs.
(4.0 credits)
1. EEB125H1/ ENG286H1/ GGR274H1/ ESS245H1/ STA130H1
2. 0.5 credit from CSC108H1/ CSC110Y1/ CSC148H1
3. 0.5 credit from ECO220Y1/ EEB225H1/ GGR270H1/ IRW220H1/ PSY201H1/ SOC202H1/ STA220H1/ STA238H1/ STA248H1/ STA261H1/ STA288H1
Note: If you completed STA238H1, STA248H1, and/or STA261H1 before being admitted
to the Minor, please note that these courses are exclusions to EEB125H1, ENG286H1,
GGR274H1, and STA130H1. You can complete ESS245H1 to meet requirement 1 or can
instead complete an additional 0.5 credit from the list of courses in requirement 7, for a
total of 1.5 credits for requirement 7.
If you completed CSC148H1 before being admitted to the Minor, please note that this course is an exclusion to EEB125H1, ENG286H1, and GGR274H1. You can complete ESS245H1 or STA130H1 to meet requirement 1 or can instead complete an additional 0.5 credit from the list of courses in requirement 7, for a total of 1.5 credits for requirement 7.
4. CSC271H1 (first offering in 2025-26)
5. STA272H1 (first offering in 2025-26)
6. PHL277H1/ PHL377H1/ HPS246H1/ CSC300H1
7. At least 1.0 credit from the following courses: BCB410H1/ BCB420H1/ CHM326H1/ CHM328H1/ CSB352H1/ CSB435H1/ CSB434H1/ CSB471H1/ CSB472H1/ DHU338H1/ EEB313H1/ EEB319H1/ EEB365H1/ EEB458H1/ EEB460H1/ EEB463H1/ ENV338H1/ ESS452H1/ GGR315H1/ GGR372H1/ GGR373H1/ GGR375H1/ GGR376H1/ GGR377H1/ GGR415H1/ GGR462H1/ GGR472H1/ GGR473H1/ IMM360H1/ IRE379H1/ JGA305H1/ JPM400Y1/ LIN305H1/ LIN405H1/ LIN456H1/ MGY441H1/ POL314H1/ POL352H1/ POL419H1/ PCL367H1/ PCL368H1/ PSL432H1/ PSY305H1/ SOC303H1/ 0.5 or 1.0 credits from a 300-/400-level capstone, topics, or independent study course(s) in which students apply data science methodologies, and with prior approval of the Applied Data Science Minor Program Director
Courses listed in requirement 7 are offered by academic units across the Faculty of Arts & Science. Please review the prerequisites and enrolment controls for the course(s) that you are planning to take to complete this requirement. Course enrolment controls are listed in the University’s Timetable Builder. Course descriptions, prerequisites, corequisites, and exclusions are listed in both in the Timetable Builder and in the Faculty of Arts & Science Academic Calendar.