Data Science Major
The Faculty of Science, with the Departments of Statistics and Actuarial Science and of Mathematics, the Beedie School of Business, and the School of Computing Science, offers a major in Data Science (DATA) leading to a bachelor of science (BSc). This is a highly structured program providing a multidisciplinary approach to quantitative methods for business and industry in an environment of rapid changes in technology.
The program is managed by the Faculty of Science. A steering committee consisting of representatives from the above mentioned departments and faculty serve as liaison between participating departments and the program director.
Students formally apply to be admitted into the program. Applications can be considered both for students entering Ά‘ΟγΤ°AV, and for students already enrolled. Ά‘ΟγΤ°AV into the program is decided on a competitive basis. Students must maintain a 2.7 cumulative grade point average (CGPA) in DATA program course work to remain in the program and to graduate. It is strongly recommended that students contact the science advisor or program director early about admission and scheduling.
More information can be found on our website: .
Program Requirements
Students complete 120 units, as specified below.
Under program and University regulations, a general degree requires a total of 120 units, 44 of which are in upper division courses. Completion of all lower and upper division courses shown below is required. However, students should be aware of particular department requirements for course entry. Contact those departments for information.
Lower Division Requirements
Students complete a total of 52-54 units.
Business Administration
Students complete all of
Explore the fundamentals of modern business and organizational management. Working with case studies, students will build upon the basics of revenue, profits, contribution and costs, as well as integrate advanced aspects of business models, innovation, competitive advantage, core competence, and strategic analysis. Breadth-Social Sciences.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Fri, 2:30β5:20 p.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Mon, 2:30β5:20 p.m.
|
Burnaby |
Examine and review today's global economy through critical analysis of differing perspectives. Develop and improve critical thinking and communication skills appropriate to the business environment. Prerequisite: BUS 201 and 15 units; OR 45 units and co-requisite: BUS 202; OR approved Business Administration joint major, joint honours, or double degrees students with 45 units. Writing.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Thu, 8:30β11:20 a.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Fri, 9:30 a.m.β12:20 p.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Tue, 11:30 a.m.β2:20 p.m.
|
Burnaby |
An introduction to financial accounting, including accounting terminology, understanding financial statements, analysis of a business entity using financial statements. Includes also time value of money and a critical review of the conventional accounting system. Prerequisite: 12 units. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Tue, 10:30 a.m.β12:20 p.m.
|
Burnaby |
||
D101 |
Jan 3 β Apr 10, 2018: Tue, 12:30β1:20 p.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Tue, 12:30β1:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
|
Burnaby |
|
D105 |
Jan 3 β Apr 10, 2018: Tue, 2:30β3:20 p.m.
|
Burnaby |
|
D106 |
Jan 3 β Apr 10, 2018: Tue, 2:30β3:20 p.m.
|
Burnaby |
|
D107 |
Jan 3 β Apr 10, 2018: Tue, 3:30β4:20 p.m.
|
Burnaby |
|
Jan 3 β Apr 10, 2018: Mon, 10:30 a.m.β12:20 p.m.
|
Surrey |
||
D201 |
Jan 3 β Apr 10, 2018: Mon, 12:30β1:20 p.m.
|
Surrey |
|
D202 |
Jan 3 β Apr 10, 2018: Mon, 12:30β1:20 p.m.
|
Surrey |
|
D203 |
Jan 3 β Apr 10, 2018: Mon, 1:30β2:20 p.m.
|
Surrey |
|
Jan 3 β Apr 10, 2018: Tue, 4:30β6:20 p.m.
|
Burnaby |
||
E101 |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
|
Burnaby |
|
E102 |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
|
Burnaby |
|
E103 |
Jan 3 β Apr 10, 2018: Tue, 2:30β3:20 p.m.
|
Burnaby |
|
E104 |
Jan 3 β Apr 10, 2018: Tue, 2:30β3:20 p.m.
|
Burnaby |
|
E105 |
Jan 3 β Apr 10, 2018: Tue, 3:30β4:20 p.m.
|
Burnaby |
|
E106 |
Jan 3 β Apr 10, 2018: Tue, 3:30β4:20 p.m.
|
Burnaby |
|
E107 |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
|
Burnaby |
Theories, concepts and issues in the field of organizational behavior with an emphasis on individual and team processes. Core topics include employee motivation and performance, stress management, communication, work perceptions and attitudes, decision-making, team dynamics, employee involvement and conflict management. Prerequisite: 12 units.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Mon, 12:30β2:20 p.m.
|
Burnaby |
||
D101 |
Jan 3 β Apr 10, 2018: Mon, 2:30β3:20 p.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Mon, 2:30β3:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Mon, 3:30β4:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Mon, 3:30β4:20 p.m.
|
Burnaby |
|
D105 |
Jan 3 β Apr 10, 2018: Mon, 4:30β5:20 p.m.
|
Burnaby |
|
D106 |
Jan 3 β Apr 10, 2018: Mon, 2:30β3:20 p.m.
|
Burnaby |
|
Jan 3 β Apr 10, 2018: Tue, 2:30β4:20 p.m.
|
Surrey |
||
D201 |
Jan 3 β Apr 10, 2018: Tue, 4:30β5:20 p.m.
|
Surrey |
|
D202 |
Jan 3 β Apr 10, 2018: Tue, 4:30β5:20 p.m.
|
Surrey |
|
D203 |
Jan 3 β Apr 10, 2018: Tue, 5:30β6:20 p.m.
|
Surrey |
|
D204 |
Jan 3 β Apr 10, 2018: Tue, 5:30β6:20 p.m.
|
Surrey |
|
Jan 3 β Apr 10, 2018: Tue, 10:30 a.m.β12:20 p.m.
|
Burnaby |
||
D301 |
Jan 3 β Apr 10, 2018: Tue, 12:30β1:20 p.m.
|
Burnaby |
|
D302 |
Jan 3 β Apr 10, 2018: Tue, 12:30β1:20 p.m.
|
Burnaby |
|
D303 |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
|
Burnaby |
|
D304 |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
|
Burnaby |
|
D305 |
Jan 3 β Apr 10, 2018: Tue, 2:30β3:20 p.m.
|
Burnaby |
|
Jan 3 β Apr 10, 2018: Mon, 4:30β6:20 p.m.
|
Burnaby |
||
E101 |
Jan 3 β Apr 10, 2018: Mon, 6:30β7:20 p.m.
|
Burnaby |
|
E102 |
Jan 3 β Apr 10, 2018: Mon, 6:30β7:20 p.m.
|
Burnaby |
|
E103 |
Jan 3 β Apr 10, 2018: Mon, 7:30β8:20 p.m.
|
Burnaby |
|
E104 |
Jan 3 β Apr 10, 2018: Mon, 7:30β8:20 p.m.
|
Burnaby |
|
E105 |
Jan 3 β Apr 10, 2018: Mon, 8:30β9:20 p.m.
|
Burnaby |
|
E106 |
Jan 3 β Apr 10, 2018: Mon, 7:30β8:20 p.m.
|
Burnaby |
Computing Science
Students complete all of
An elementary introduction to computing science and computer programming, suitable for students with little or no programming background. Students will learn fundamental concepts and terminology of computing science, acquire elementary skills for programming in a high-level language and be exposed to diverse fields within, and applications of computing science. Topics will include: pseudocode, data types and control structures, fundamental algorithms, computability and complexity, computer architecture, and history of computing science. Treatment is informal and programming is presented as a problem-solving tool. Prerequisite: BC Math 12 or equivalent is recommended. Students with credit for CMPT 102, 128, 130 or 166 may not take this course for further credit. Students who have taken CMPT 125, 129, 130 or 135 first may not then take this course for further credit. Quantitative/Breadth-Science.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Angelica Lim |
Jan 3 β Apr 10, 2018: Mon, Fri, 9:30β10:20 a.m.
Jan 3 β Apr 10, 2018: Wed, 9:30β10:20 a.m. |
Burnaby Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Thu, 9:30β10:20 a.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Thu, 10:30β11:20 a.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Thu, 11:30 a.m.β12:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Thu, 12:30β1:20 p.m.
|
Burnaby |
|
D105 |
Jan 3 β Apr 10, 2018: Thu, 1:30β2:20 p.m.
|
Burnaby |
|
D106 |
Jan 3 β Apr 10, 2018: Thu, 2:30β3:20 p.m.
|
Burnaby |
|
D107 |
Jan 3 β Apr 10, 2018: Thu, 3:30β4:20 p.m.
|
Burnaby |
|
D108 |
Jan 3 β Apr 10, 2018: Thu, 3:30β4:20 p.m.
|
Burnaby |
A rigorous introduction to computing science and computer programming, suitable for students who already have some background in computing science and programming. Intended for students who will major in computing science or a related program. Topics include: fundamental algorithms; elements of empirical and theoretical algorithmics; abstract data types and elementary data structures; basic object-oriented programming and software design; computation and computability; specification and program correctness; and history of computing science. Prerequisite: CMPT 120. Corequisite: CMPT 127. Students with credit for CMPT 126, 129, 135 or CMPT 200 or higher may not take for further credit. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Bobby Chan |
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 2:30β3:20 p.m.
|
Burnaby |
Builds on CMPT 120 to give a hands-on introduction to programming in C and C++, the basics of program design, essential algorithms and data structures. Guided labs teach the standard tools and students exploit these ideas to create software that works. To be taken in parallel with CMPT 125. Prerequisite: CMPT 120 or CMPT 128 or CMPT 130. Corequisite: CMPT 125.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Richard Vaughan |
Jan 3 β Apr 10, 2018: Tue, 9:30 a.m.β12:20 p.m.
|
Burnaby |
|
Richard Vaughan |
Jan 3 β Apr 10, 2018: Tue, 12:30β3:20 p.m.
|
Burnaby |
|
Richard Vaughan |
Jan 3 β Apr 10, 2018: Tue, 3:30β6:20 p.m.
|
Burnaby |
Introduction to a variety of practical and important data structures and methods for implementation and for experimental and analytical evaluation. Topics include: stacks, queues and lists; search trees; hash tables and algorithms; efficient sorting; object-oriented programming; time and space efficiency analysis; and experimental evaluation. Prerequisite: (MACM 101 and ((CMPT 125 and 127), CMPT 129 or CMPT 135)) or (ENSC 251 and ENSC 252). Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
David Mitchell |
Jan 3 β Apr 10, 2018: Mon, 1:30β2:20 p.m.
Jan 3 β Apr 10, 2018: Wed, 1:30β2:20 p.m. Jan 3 β Apr 10, 2018: Fri, 1:30β2:20 p.m. |
Burnaby Burnaby Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Mon, 10:30β11:20 a.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Mon, 10:30β11:20 a.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Mon, 11:30 a.m.β12:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Mon, 11:30 a.m.β12:20 p.m.
|
Burnaby |
|
D105 |
Jan 3 β Apr 10, 2018: Fri, 2:30β3:20 p.m.
|
Burnaby |
|
D106 |
Jan 3 β Apr 10, 2018: Fri, 2:30β3:20 p.m.
|
Burnaby |
|
D107 |
Jan 3 β Apr 10, 2018: Fri, 3:30β4:20 p.m.
|
Burnaby |
|
D108 |
Jan 3 β Apr 10, 2018: Fri, 3:30β4:20 p.m.
|
Burnaby |
|
Leonid Chindelevitch |
Jan 3 β Apr 10, 2018: Tue, 5:30β8:20 p.m.
|
Vancouver |
An overview of various techniques used for software development and software project management. Major tasks and phases in modern software development, including requirements, analysis, documentation, design, implementation, testing,and maintenance. Project management issues are also introduced. Students complete a team project using an iterative development process. Prerequisite: One W course, CMPT 225, (MACM 101 or (ENSC 251 and ENSC 252)) and (MATH 151 or MATH 150). MATH 154 or MATH 157 with at least a B+ may be substituted for MATH 151 or MATH 150. Students with credit for CMPT 275 may not take this course for further credit.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Brian Fraser |
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 10:30β11:20 a.m.
|
Surrey |
|
Steve Pearce |
Jan 3 β Apr 10, 2018: Thu, 5:30β8:20 p.m.
|
Burnaby |
Mathematics and Computing Science
Students complete both of
Introduction to counting, induction, automata theory, formal reasoning, modular arithmetic. Prerequisite: BC Math 12 (or equivalent), or any of MATH 100, 150, 151, 154, 157. Quantitative/Breadth-Science.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Binay Bhattacharya |
Jan 3 β Apr 10, 2018: Mon, Fri, 10:30β11:20 a.m.
Jan 3 β Apr 10, 2018: Wed, 10:30β11:20 a.m. |
Burnaby Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Tue, 9:30β10:20 a.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Tue, 9:30β10:20 a.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Tue, 2:30β3:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Tue, 2:30β3:20 p.m.
|
Burnaby |
|
D105 |
Jan 3 β Apr 10, 2018: Tue, 3:30β4:20 p.m.
|
Burnaby |
|
D106 |
Jan 3 β Apr 10, 2018: Tue, 3:30β4:20 p.m.
|
Burnaby |
|
D107 |
Jan 3 β Apr 10, 2018: Tue, 4:30β5:20 p.m.
|
Burnaby |
|
D108 |
Jan 3 β Apr 10, 2018: Tue, 4:30β5:20 p.m.
|
Burnaby |
|
Steve Pearce |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
Jan 3 β Apr 10, 2018: Thu, 12:30β2:20 p.m. |
Burnaby Burnaby |
|
D201 |
Jan 3 β Apr 10, 2018: Wed, 9:30β10:20 a.m.
|
Burnaby |
|
D202 |
Jan 3 β Apr 10, 2018: Wed, 9:30β10:20 a.m.
|
Burnaby |
|
D203 |
Jan 3 β Apr 10, 2018: Wed, 2:30β3:20 p.m.
|
Burnaby |
|
D204 |
Jan 3 β Apr 10, 2018: Wed, 2:30β3:20 p.m.
|
Burnaby |
|
D205 |
Jan 3 β Apr 10, 2018: Wed, 3:30β4:20 p.m.
|
Burnaby |
|
D206 |
Jan 3 β Apr 10, 2018: Wed, 3:30β4:20 p.m.
|
Burnaby |
|
D207 |
Jan 3 β Apr 10, 2018: Wed, 4:30β5:20 p.m.
|
Burnaby |
|
D208 |
Jan 3 β Apr 10, 2018: Wed, 4:30β5:20 p.m.
|
Burnaby |
|
Toby Donaldson |
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 11:30 a.m.β12:20 p.m.
|
Surrey |
|
D301 |
Jan 3 β Apr 10, 2018: Mon, 12:30β1:20 p.m.
|
Surrey |
|
D302 |
Jan 3 β Apr 10, 2018: Mon, 1:30β2:20 p.m.
|
Surrey |
|
D303 |
Jan 3 β Apr 10, 2018: Mon, 2:30β3:20 p.m.
|
Surrey |
|
D304 |
Jan 3 β Apr 10, 2018: Mon, 3:30β4:20 p.m.
|
Surrey |
A continuation of MACM 101. Topics covered include graph theory, trees, inclusion-exclusion, generating functions, recurrence relations, and optimization and matching. Prerequisite: MACM 101 or (ENSC 251 and one of MATH 232 or MATH 240). Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Bojan Mohar |
Jan 3 β Apr 10, 2018: Mon, 12:30β1:20 p.m.
Jan 3 β Apr 10, 2018: Wed, Fri, 12:30β1:20 p.m. |
Burnaby Burnaby |
|
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 8:30β9:20 a.m.
|
Surrey |
||
OPO1 | TBD | ||
OP02 | TBD |
Data Science
Students complete
A seminar primarily for students undertaking a major or an honours program in Data Science. Prerequisite: Major in Data Science or permission of the program director. Students with credit for DATA (or MSSC) 480 cannot receive credit for DATA (or MSSC) 180.
Mathematics
Students complete one of
Designed for students specializing in mathematics, physics, chemistry, computing science and engineering. Topics as for Math 151 with a more extensive review of functions, their properties and their graphs. Recommended for students with no previous knowledge of Calculus. In addition to regularly scheduled lectures, students enrolled in this course are encouraged to come for assistance to the Calculus Workshop (Burnaby), or Math Open Lab (Surrey). Prerequisite: Pre-Calculus 12 (or equivalent) with a grade of at least B+, or MATH 100 with a grade of at least B-, or achieving a satisfactory grade on the Ά‘ΟγΤ°AV Calculus Readiness Test. Students with credit for either MATH 151, 154 or 157 may not take MATH 150 for further credit. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Distance Education | |||
Jan 3 β Apr 10, 2018: Mon, Tue, Wed, Fri, 8:30β9:20 a.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 11:30 a.m.β12:20 p.m.
Jan 3 β Apr 10, 2018: Wed, 1:30β2:20 p.m. |
Surrey Surrey |
||
OP01 | TBD | ||
OP02 | TBD |
Designed for students specializing in mathematics, physics, chemistry, computing science and engineering. Logarithmic and exponential functions, trigonometric functions, inverse functions. Limits, continuity, and derivatives. Techniques of differentiation, including logarithmic and implicit differentiation. The Mean Value Theorem. Applications of differentiation including extrema, curve sketching, Newton's method. Introduction to modeling with differential equations. Polar coordinates, parametric curves. Prerequisite: Pre-Calculus 12 (or equivalent) with a grade of at least A, or MATH 100 with a grade of at least B, or achieving a satisfactory grade on the Ά‘ΟγΤ°AV Calculus Readiness Test. Students with credit for either MATH 150, 154 or 157 may not take MATH 151 for further credit. Quantitative.
Designed for students specializing in the biological and medical sciences. Topics include: limits, growth rate and the derivative; elementary functions, optimization and approximation methods, and their applications; mathematical models of biological processes. Prerequisite: Pre-Calculus 12 (or equivalent) with a grade of at least B, or MATH 100 with a grade of at least C, or achieving a satisfactory grade on the Ά‘ΟγΤ°AV Calculus Readiness Test. Students with credit for either MATH 150, 151 or 157 may not take MATH 154 for further credit. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Ladislav Stacho |
Jan 3 β Apr 10, 2018: Mon, 8:30β9:20 a.m.
Jan 3 β Apr 10, 2018: Wed, Fri, 8:30β9:20 a.m. |
Burnaby Burnaby |
|
OP01 | TBD |
Designed for students specializing in business or the social sciences. Topics include: limits, growth rate and the derivative; logarithmic exponential and trigonometric functions and their application to business, economics, optimization and approximation methods; functions of several variables. Prerequisite: Pre-Calculus 12 (or equivalent) with a grade of at least B, or MATH 100 with a grade of at least C, or achieving a satisfactory grade on the Ά‘ΟγΤ°AV Calculus Readiness Test. Students with credit for either MATH 150, 151 or 154 may not take MATH 157 for further credit. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Luis Goddyn |
Jan 3 β Apr 10, 2018: Mon, Fri, 11:30 a.m.β12:20 p.m.
Jan 3 β Apr 10, 2018: Wed, 11:30 a.m.β12:20 p.m. |
Burnaby Burnaby |
|
Natalia Kouzniak |
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 12:30β1:20 p.m.
|
Surrey |
|
OP01 | TBD | ||
OP02 | TBD |
and both of
Riemann sum, Fundamental Theorem of Calculus, definite, indefinite and improper integrals, approximate integration, integration techniques, applications of integration. First-order separable differential equations and growth models. Sequences and series, series tests, power series, convergence and applications of power series. Prerequisite: MATH 150 or 151; or MATH 154 or 157 with a grade of at least B. Students with credit for MATH 155 or 158 may not take this course for further credit. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Brenda Davison |
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 8:30β9:20 a.m.
|
Burnaby |
|
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 11:30 a.m.β12:20 p.m.
|
Surrey |
||
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 8:30β9:20 a.m.
|
Burnaby |
||
OP01 | TBD | ||
OP02 | TBD |
Introduction to methods of operations research: linear and nonlinear programming, simulation, and heuristic methods. Applications to transportation, assignment, scheduling, and game theory. Exposure to mathematical models of industry and technology. Emphasis on computation for analysis and simulation. Prerequisite: MATH 150 or 151 or 154 or 157. Students with credit for MATH 208 may not take this course for further credit. Writing/Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Tamon Stephen |
Jan 3 β Apr 10, 2018: Mon, 2:30β4:20 p.m.
Jan 3 β Apr 10, 2018: Wed, 2:30β3:20 p.m. |
Surrey Surrey |
and one of
Linear equations, matrices, determinants. Introduction to vector spaces and linear transformations and bases. Complex numbers. Eigenvalues and eigenvectors; diagonalization. Inner products and orthogonality; least squares problems. An emphasis on applications involving matrix and vector calculations. Prerequisite: MATH 150 or 151; or MACM 101; or MATH 154 or 157, both with a grade of at least B. Students with credit for MATH 240 make not take this course for further credit. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Cedric Chauve |
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 11:30 a.m.β12:20 p.m.
|
Burnaby |
|
Randall Pyke |
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 2:30β3:20 p.m.
|
Surrey |
|
OP01 | TBD | ||
OP02 | TBD |
Linear equations, matrices, determinants. Real and abstract vector spaces, subspaces and linear transformations; basis and change of basis. Complex numbers. Eigenvalues and eigenvectors; diagonalization. Inner products and orthogonality; least squares problems. Applications. Subject is presented with an abstract emphasis and includes proofs of the basic theorems. Prerequisite: MATH 150 or 151; or MACM 101; or MATH 154 or 157, both with a grade of at least B. Students with credit for MATH 232 cannot take this course for further credit. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 11:30 a.m.β12:20 p.m.
|
Burnaby |
||
OP01 | TBD |
Statistics
Students complete
Introduction to modern tools and methods for data acquisition, management, and visualization capable of scaling to Big Data. Prerequisite: CMPT 120 and one of STAT 101, STAT 201, STAT 203, or STAT 270, or permission of the instructor. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
David Campbell |
Jan 3 β Apr 10, 2018: Mon, 10:30 a.m.β12:20 p.m.
|
Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Mon, 6:30β7:20 p.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Mon, 4:30β5:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Mon, 5:30β6:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Mon, 3:30β4:20 p.m.
|
Burnaby |
and one of
An introduction to business statistics with a heavy emphasis on applications and the use of EXCEL. Students will be required to use statistical applications to solve business problems. Prerequisite: MATH 150, MATH 151, MATH 154, or MATH 157; 15 units. MATH 150, MATH 151, MATH 154, or MATH 157 may be taken concurrently with BUEC 232. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Tue, Thu, 2:30β4:20 p.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Tue, Thu, 8:30β10:20 a.m.
|
Surrey |
||
Jan 3 β Apr 10, 2018: Tue, Thu, 5:30β7:20 p.m.
|
Burnaby |
||
OP01 |
Jan 3 β Apr 10, 2018: Tue, 4:30β7:20 p.m.
|
Burnaby |
|
OP02 |
Jan 3 β Apr 10, 2018: Wed, 8:30 a.m.β12:20 p.m.
|
Burnaby |
|
OP03 |
Jan 3 β Apr 10, 2018: Thu, 4:30β7:20 p.m.
|
Burnaby |
|
OP04 |
Jan 3 β Apr 10, 2018: Tue, 10:30 a.m.β12:20 p.m.
|
Surrey |
|
OP05 |
Jan 3 β Apr 10, 2018: Thu, 10:30 a.m.β12:20 p.m.
|
Surrey |
|
OP06 |
Jan 3 β Apr 10, 2018: Tue, 7:30β10:20 p.m.
|
Burnaby |
|
OP07 |
Jan 3 β Apr 10, 2018: Wed, 5:30β9:20 p.m.
|
Burnaby |
|
OP08 |
Jan 3 β Apr 10, 2018: Thu, 7:30β10:20 p.m.
|
Burnaby |
The collection, description, analysis and summary of data, including the concepts of frequency distribution, parameter estimation and hypothesis testing. Intended to be particularly accessible to students who are not specializing in Statistics. Students cannot obtain credit for STAT 101 if they already have credit for - or are taking concurrently - STAT 201, 203, 285, or any upper division STAT course. Quantitative.
Section | Day/Time | Location |
---|---|---|
Distance Education |
Research methodology and associated statistical analysis techniques for students with training in the life sciences. Intended to be particularly accessible to students who are not specializing in Statistics. Students cannot obtain credit for STAT 201 if they already have credit for - or are taking concurrently - STAT 101, 203, 285, or any upper division STAT course. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Distance Education | |||
Jack Davis |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
Jan 3 β Apr 10, 2018: Thu, 12:30β2:20 p.m. |
Surrey Surrey |
|
OP09 | TBD |
Descriptive and inferential statistics aimed at students in the social sciences. Scales of measurement. Descriptive statistics. Measures of association. Hypothesis tests and confidence intervals. Students in Sociology and Anthropology are expected to take SA 255 before this course. Intended to be particularly accessible to students who are not specializing in Statistics. Prerequisite: Recommended: a research methods course such as SA 255, CRIM 220, POL 213 or equivalent is recommended prior to taking STAT 203. Students cannot obtain credit for STAT 203 if they already have credit for - or are taking concurrently - STAT 101, 201, 285, or any upper division STAT course. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Distance Education | |||
Caleb Tarzwell |
Jan 3 β Apr 10, 2018: Mon, 12:30β2:20 p.m.
Jan 3 β Apr 10, 2018: Wed, 12:30β1:20 p.m. |
Burnaby Burnaby |
|
OP01 | TBD |
Basic laws of probability, sample distributions. Introduction to statistical inference and applications. Prerequisite: or Corequisite: MATH 152 or 155 or 158. Students wishing an intuitive appreciation of a broad range of statistical strategies may wish to take STAT 100 first. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Distance Education | |||
Boxin Tang |
Jan 3 β Apr 10, 2018: Mon, 9:30β10:20 a.m.
Jan 3 β Apr 10, 2018: Wed, Fri, 9:30β10:20 a.m. |
Burnaby Burnaby |
|
Maryam DehghaniEstarki |
Jan 3 β Apr 10, 2018: Tue, 8:30β10:20 a.m.
Jan 3 β Apr 10, 2018: Thu, 8:30β9:20 a.m. |
Surrey Surrey |
|
OP01 | TBD | ||
OP09 | TBD |
Upper Division Requirements
Students complete a minimum of 43-44 units.
Business Administration
Students complete all of
The environment of marketing; relation of social sciences to marketing; evaluation of marketing theory and research; assessment of demand, consumer behavior analysis; market institutions; method and mechanics of distribution in domestic, foreign and overseas markets; sales organization; advertising; new product development, publicity and promotion; marketing programs. Prerequisite: 60 units. Students with credit for COMM 343 may not take this course for further credit.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Tue, 2:30β4:20 p.m.
|
Burnaby |
||
D101 |
Jan 3 β Apr 10, 2018: Tue, 4:30β5:20 p.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Tue, 4:30β5:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Tue, 4:30β5:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Tue, 5:30β6:20 p.m.
|
Burnaby |
|
D105 |
Jan 3 β Apr 10, 2018: Tue, 5:30β6:20 p.m.
|
Burnaby |
|
D106 |
Jan 3 β Apr 10, 2018: Tue, 5:30β6:20 p.m.
|
Burnaby |
|
D107 |
Jan 3 β Apr 10, 2018: Tue, 6:30β7:20 p.m.
|
Burnaby |
|
D108 |
Jan 3 β Apr 10, 2018: Tue, 6:30β7:20 p.m.
|
Burnaby |
|
D109 |
Jan 3 β Apr 10, 2018: Tue, 6:30β7:20 p.m.
|
Burnaby |
|
D110 |
Jan 3 β Apr 10, 2018: Tue, 6:30β7:20 p.m.
|
Burnaby |
|
D111 |
Jan 3 β Apr 10, 2018: Tue, 4:30β5:20 p.m.
|
Burnaby |
|
D112 |
Jan 3 β Apr 10, 2018: Tue, 5:30β6:20 p.m.
|
Burnaby |
|
Jan 3 β Apr 10, 2018: Tue, 10:30 a.m.β12:20 p.m.
|
Surrey |
||
D201 |
Jan 3 β Apr 10, 2018: Tue, 12:30β1:20 p.m.
|
Surrey |
|
D202 |
Jan 3 β Apr 10, 2018: Tue, 12:30β1:20 p.m.
|
Surrey |
|
D203 |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
|
Surrey |
|
D204 |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
|
Surrey |
|
D205 |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
|
Surrey |
This course is designed to assist students to improve their written and oral communication skills in business settings. The theory and practice of business communication will be presented. Topics include analysis of communication problems, message character, message monitoring, message media. Exercises in individual and group messages and presentations will be conducted. Prerequisite: This course is only open to students admitted prior to Fall 2014 to the Business Administration major, honours, or second degree program and who have 60 units, OR to students admitted Fall 2014 - Summer 2017 to the Business Administration major, honours, or second degree program and who have 60 units and BUS 130 or 201 or 202 or 301, OR to student admitted Fall 2017 - onwards to the Business Administration major, honours, or second degree program and who have 60 units and BUS 130 or 201 or 202 or 301 and BUS 217W, OR to approved Business Administration joint major, joint honours, or double degree students with 60 units, OR to approved Management Systems Science or Actuarial Science majors with 60 units. Students who have taken BUS 360 may not take this course for further credit. Writing.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Mon, 9:30 a.m.β12:20 p.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Tue, 8:30β11:20 a.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Fri, 9:30 a.m.β12:20 p.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Wed, 2:30β5:20 p.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Wed, 2:30β5:20 p.m.
|
Surrey |
||
Jan 3 β Apr 10, 2018: Thu, 11:30 a.m.β2:20 p.m.
|
Surrey |
||
Jan 3 β Apr 10, 2018: Fri, 9:30 a.m.β12:20 p.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Tue, 4:30β7:20 p.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Thu, 4:30β7:20 p.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Wed, 5:30β8:20 p.m.
|
Burnaby |
Examines complex, real-world decision making issues using an evidence-based approach that employs decision making strategies involving statistics, data management, analytics, and decision theory. Through a major decision making project within the community, students will experience first-hand the process of consultation, data acquisition, analysis, and recommendation. Prerequisite: BUS 360W, BUS 437, BUS 445, BUS 462, and BUS 464; BUS 345 or BUS 440; 90 units.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Tue, 11:30 a.m.β2:20 p.m.
|
Burnaby |
Exposes students to the art of using analytic tools from across the spectrum of data mining and modeling to provide powerful competitive advantage in business. Students will learn to recognize when a method should or should not be used, what data is required, and how to use the software tools. Areas covered include database marketing, geospatial marketing and fundamental strategic and tactical decisions such as segmentation, targeting and allocating resources to the marketing mix. Prerequisite: BUS 343, 336, 360W; 60 units.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Tue, 2:30β5:20 p.m.
|
Burnaby |
Computing Science
Students complete all of
This course aims to give the student an understanding of what a modern operating system is, and the services it provides. It also discusses some basic issues in operating systems and provides solutions. Topics include multiprogramming, process management, memory management, and file systems. Prerequisite: CMPT 225 and (MACM 101 or (ENSC 251 and ENSC 252)).
Section | Instructor | Day/Time | Location |
---|---|---|---|
Keval Vora |
Jan 3 β Apr 10, 2018: Tue, 8:30β10:20 a.m.
Jan 3 β Apr 10, 2018: Thu, 8:30β9:20 a.m. |
Burnaby Burnaby |
|
Harinder Khangura |
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 11:30 a.m.β12:20 p.m.
|
Surrey |
|
Julian Rrushi |
Jan 3 β Apr 10, 2018: Tue, Thu, 5:30β6:50 p.m.
|
Burnaby |
Analysis and design of data structures for lists, sets, trees, dictionaries, and priority queues. A selection of topics chosen from sorting, memory management, graphs and graph algorithms. Prerequisite: CMPT 225, MACM 201, MATH 151 (or MATH 150), and MATH 232 or 240.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Valentine Kabanets |
Jan 3 β Apr 10, 2018: Mon, 10:30β11:20 a.m.
Jan 3 β Apr 10, 2018: Wed, Fri, 10:30β11:20 a.m. |
Burnaby Burnaby |
|
Jan 3 β Apr 10, 2018: Mon, 2:30β3:20 p.m.
Jan 3 β Apr 10, 2018: Wed, 2:30β3:20 p.m. Jan 3 β Apr 10, 2018: Fri, 2:30β3:20 p.m. |
Burnaby Burnaby Burnaby |
Logical representations of data records. Data models. Studies of some popular file and database systems. Document retrieval. Other related issues such as database administration, data dictionary and security. Prerequisite: CMPT 225, and (MACM 101 or (ENSC 251 and ENSC 252)).
Section | Instructor | Day/Time | Location |
---|---|---|---|
Martin Ester |
Jan 3 β Apr 10, 2018: Tue, 2:30β4:20 p.m.
Jan 3 β Apr 10, 2018: Thu, 2:30β3:20 p.m. |
Burnaby Burnaby |
|
Evgenia Ternovska |
Jan 3 β Apr 10, 2018: Thu, 5:30β8:20 p.m.
|
Vancouver |
An advanced course on database systems which covers crash recovery, concurrency control, transaction processing, distributed database systems as the core material and a set of selected topics based on the new developments and research interests, such as object-oriented data models and systems, extended relational systems, deductive database systems, and security and integrity. Prerequisite: CMPT 300 and 354.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Ke Wang |
Jan 3 β Apr 10, 2018: Wed, 5:30β8:20 p.m.
|
Vancouver |
Data Science
Students complete
A seminar primarily for students undertaking a major or an honours program in Data Science. Prerequisite: DATA (or MSSC) 180. Students with credit for MSSC 481 may not take this course for further credit.
Mathematics
Students complete one of
Linear programming modelling. The simplex method and its variants. Duality theory. Post-optimality analysis. Applications and software. Additional topics may include: game theory, network simplex algorithm, and convex sets. Prerequisite: MATH 150, 151, 154, or 157 and MATH 240 or 232. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Luis Goddyn |
Jan 3 β Apr 10, 2018: Mon, 2:30β3:20 p.m.
Jan 3 β Apr 10, 2018: Wed, 2:30β3:20 p.m. Jan 3 β Apr 10, 2018: Fri, 2:30β3:20 p.m. |
Burnaby Burnaby Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Tue, 2:30β3:20 p.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Tue, 3:30β4:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Tue, 4:30β5:20 p.m.
|
Burnaby |
Statistics
Students complete one of
An introduction to the use and interpretation of statistical analysis in the context of data typical of economic applications. Students with a minimum grade of A- in BUEC 232 or STAT 270 can take BUEC 333 after 30 units. Students seeking permission to enrol based on their BUEC 232 or STAT 270 grade must contact the Undergraduate Advisor in Economics. Prerequisite: ECON 103 or 200; ECON 105 or 205; BUEC 232 or STAT 270; MATH 157; 60 units. Students with credit for ECON/COMM 236 may not take this course for further credit. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Marie Rekkas |
Jan 3 β Apr 10, 2018: Tue, 8:30β11:20 a.m.
|
Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Tue, 11:30 a.m.β12:20 p.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Tue, 12:30β1:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Tue, 2:30β3:20 p.m.
|
Burnaby |
|
D105 |
Jan 3 β Apr 10, 2018: Tue, 3:30β4:20 p.m.
|
Burnaby |
|
Bertille Antoine |
Jan 3 β Apr 10, 2018: Tue, 1:30β2:20 p.m.
Jan 3 β Apr 10, 2018: Thu, 12:30β2:20 p.m. |
Burnaby Burnaby |
|
D203 |
Jan 3 β Apr 10, 2018: Wed, 1:30β2:20 p.m.
|
Burnaby |
|
D205 |
Jan 3 β Apr 10, 2018: Thu, 10:30β11:20 a.m.
|
Burnaby |
|
D206 |
Jan 3 β Apr 10, 2018: Thu, 11:30 a.m.β12:20 p.m.
|
Burnaby |
|
OP01 | TBD | ||
OP02 | TBD |
The standard techniques of multiple regression analysis, analysis of variance, and analysis of covariance, and their role in experimental research. Prerequisite: Any STAT course (except STAT 100), or BUEC 232, or ARCH 376. Statistics major and honors students may not use this course to satisfy the required number of elective units of upper division statistics. However, they may include the course to satisfy the total number of required units of upper division credit. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Marie Loughin |
Jan 3 β Apr 10, 2018: Tue, 2:30β4:20 p.m.
Jan 3 β Apr 10, 2018: Thu, 2:30β3:20 p.m. |
Burnaby Burnaby |
|
OP01 | TBD |
Intermediate statistical techniques for the health sciences. Review of introductory concepts in statistics and probability including hypothesis testing, estimation and confidence intervals for means and proportions. Contingency tables and the analysis of multiple 2x2 tables. Correlation and regression. Multiple regression and model selection. Logistic regression and odds ratios. Basic concepts in survival analysis. Prerequisite: Any STAT course (except STAT 100), or BUEC 232, or ARCH 376. Statistics major and honors students may not use this course to satisfy the required number of elective units of upper division statistics. However, they may include the course to satisfy the total number of required units of upper division credit. Quantitative.
Theory and application of linear regression. Normal distribution theory. Hypothesis tests and confidence intervals. Model selection. Model diagnostics. Introduction to weighted least squares and generalized linear models. Prerequisite: STAT 285, MATH 251, and one of MATH 232 or MATH 240. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Gamage Perera |
Jan 3 β Apr 10, 2018: Mon, 6:00β7:50 p.m.
Jan 3 β Apr 10, 2018: Wed, 5:30β6:20 p.m. |
Surrey Surrey |
|
E201 |
Jan 3 β Apr 10, 2018: Wed, 8:30β9:20 a.m.
|
Surrey |
|
E202 |
Jan 3 β Apr 10, 2018: Wed, 9:30β10:20 a.m.
|
Surrey |
and all of
Introduces the R statistical package. Data management; reading, editing and storing statistical data; data exploration and representation; summarizing data with tables, graphs and other statistical tools; and data simulation. Prerequisite: STAT 285 or STAT 302 or STAT 305 or BUEC 333 or equivalent. Students with credit for STAT 340 may not take STAT 341 for further credit.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Brad McNeney |
Jan 3 β Apr 10, 2018: Thu, 12:30β2:20 p.m.
|
Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Fri, 12:30β1:20 p.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Fri, 1:30β2:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Wed, 12:30β1:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Wed, 1:30β2:20 p.m.
|
Burnaby |
A practical introduction to useful sampling techniques and intermediate level experimental designs. Statistics major and honors students may not use this course to satisfy the required number of elective units of upper division Statistics. However, they may include the course to satisfy the total number of required units of upper division credit. Prerequisite: STAT 302, 305 or 350 or BUEC 333. Students with credit for STAT 410 or 430 may not take STAT 403 for further credit. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Carl Schwarz |
Jan 3 β Apr 10, 2018: Tue, 2:30β4:20 p.m.
Jan 3 β Apr 10, 2018: Thu, 2:30β3:20 p.m. |
Burnaby Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Wed, 3:30β4:20 p.m.
|
Burnaby |
An introduction to the essential modern supervised and unsupervised statistical learning methods. Topics include review of linear regression, classification, statistical error measurement, flexible regression and classification methods, clustering and dimension reduction. Prerequisite: STAT 302 or STAT 305 or STAT 350 or equivalent. Quantitative.
and one of
Introduction to principal components, cluster analysis, and other commonly used multivariate techniques. Prerequisite: STAT 285 or STAT 302 or STAT 305 or BUEC 333 or equivalent. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Liangliang Wang |
Jan 3 β Apr 10, 2018: Tue, 4:30β6:20 p.m.
Jan 3 β Apr 10, 2018: Thu, 4:30β5:20 p.m. |
Burnaby Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Mon, 1:30β2:20 p.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Mon, 2:30β3:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Mon, 3:30β4:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Wed, 1:30β2:20 p.m.
|
Burnaby |
|
D105 |
Jan 3 β Apr 10, 2018: Wed, 2:30β3:20 p.m.
|
Burnaby |
Introduction to standard methodology for analyzing categorical data including chi-squared tests for two- and multi-way contingency tables, logistic regression, and loglinear (Poisson) regression. Prerequisite: STAT 302 or STAT 305 or STAT 350 or BUEC 333 or equivalent. Students with credit for the former STAT 402 or 602 may not take this course for further credit. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Joan Hu |
Jan 3 β Apr 10, 2018: Tue, 10:30β11:20 a.m.
Jan 3 β Apr 10, 2018: Thu, 9:30β11:20 a.m. |
Burnaby Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Wed, 9:30β10:20 a.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Wed, 3:30β4:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Wed, 4:30β5:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Wed, 5:30β6:20 p.m.
|
Burnaby |
Introduction to linear time series analysis including moving average, autoregressive and ARIMA models, estimation, data analysis, forecasting errors and confidence intervals, conditional and unconditional models, and seasonal models. Prerequisite: STAT 285 or STAT 302 or STAT 305 or BUEC 333 or equivalent. This course may not be taken for further credit by students who have credit for ECON 484. Quantitative.
β DATA 180 and DATA 481 cannot be taken concurrently
Upper Division Recommended Courses
A course in the management of marketing research. The basics of the design, conduct, and analysis of marketing research studies. Prerequisite: BUS 343, 336; 60 units. Students with credit for BUS 442 may not complete this course for further credit.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Mon, 1:30β5:20 p.m.
|
Burnaby |
||
Jan 3 β Apr 10, 2018: Thu, 8:30 a.m.β12:20 p.m.
|
Surrey |
Prepares students to model, analyze and propose improvements to business processes. In the major project, students analyze a process within an organization and use current techniques and tools to propose changes and a supporting information system. Prerequisite: BUS 237; 60 units. Students with credit for BUS 394 may not take this course for further credit.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Thu, 10:30 a.m.β12:20 p.m.
|
Burnaby |
||
D101 |
Jan 3 β Apr 10, 2018: Thu, 12:30β2:20 p.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Thu, 2:30β4:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Thu, 12:30β2:20 p.m.
|
Burnaby |
|
Jan 3 β Apr 10, 2018: Thu, 2:30β4:20 p.m.
|
Surrey |
||
D201 |
Jan 3 β Apr 10, 2018: Thu, 4:30β6:20 p.m.
|
Surrey |
|
D202 |
Jan 3 β Apr 10, 2018: Thu, 6:30β8:20 p.m.
|
Surrey |
Development and use of simulation models as an aid in making complex management decisions. Hands on use of business related tools for computer simulation. Issues related to design and validation of simulation models, the assessment of input data, and the interpretation and use of simulation output. Prerequisite: BUS 336, 360W; 60 units.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Mon, 5:30β9:20 p.m.
|
Burnaby |
This course introduces students to formal models of computations such as Turing machines and RAMs. Notions of tractability and intractability are discusses both with respect to computability and resource requirements. The relationship of these concepts to logic is also covered. Prerequisite: MACM 201.
Provides a unified discussion of the fundamental approaches to the problems in artificial intelligence. The topics considered are: representational typology and search methods; game playing, heuristic programming; pattern recognition and classification; theorem-proving; question-answering systems; natural language understanding; computer vision. Prerequisite: CMPT 225 and (MACM 101 or ENSC 251 and ENSC 252)). Students with credit for CMPT 410 may not take this course for further credit.
Section | Instructor | Day/Time | Location |
---|---|---|---|
James Delgrande |
Jan 3 β Apr 10, 2018: Mon, 11:30 a.m.β12:20 p.m.
Jan 3 β Apr 10, 2018: Wed, 11:30 a.m.β12:20 p.m. Jan 3 β Apr 10, 2018: Fri, 11:30 a.m.β12:20 p.m. |
Burnaby Burnaby Burnaby |
|
Oliver Schulte |
Jan 3 β Apr 10, 2018: Mon, Fri, 2:30β3:20 p.m.
Jan 3 β Apr 10, 2018: Wed, 2:30β3:20 p.m. |
Burnaby Burnaby |
The theory and practice of computer ethics. The basis for ethical decision-making and the methodology for reaching ethical decisions concerning computing matters will be studied. Writing as a means to understand and reason about complex ethical issues will be emphasized. Prerequisite: Three CMPT units, 30 total units, and any lower division W course. Students with credit for CMPT 322 may not take this course for further credit. Writing.
Section | Instructor | Day/Time | Location |
---|---|---|---|
John Edgar |
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 10:30β11:20 a.m.
|
Surrey |
Survey of modern software development methodology. Several software development process models will be examined, as will the general principles behind such models. Provides experience with different programming paradigms and their advantages and disadvantages during software development. Prerequisite: CMPT 213 and (CMPT 276 or 275).
Section | Instructor | Day/Time | Location |
---|---|---|---|
Nick Sumner |
Jan 3 β Apr 10, 2018: Mon, 12:30β2:20 p.m.
Jan 3 β Apr 10, 2018: Wed, 12:30β1:20 p.m. |
Surrey Surrey |
|
D101 |
Jan 3 β Apr 10, 2018: Wed, 1:30β2:20 p.m.
|
Surrey |
|
D102 |
Jan 3 β Apr 10, 2018: Wed, 3:30β4:20 p.m.
|
Surrey |
Covers professional writing in computing science, including format conventions and technical reports. Examines group dynamics, including team leadership, dispute resolution and collaborative writing. Also covers research methods. Prerequisite: CMPT 275 or CMPT 276. Students with credit for CMPT 376 may not take this course for further credit. Writing.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Mon, 1:30β2:20 p.m.
Jan 3 β Apr 10, 2018: Wed, 1:30β2:20 p.m. Jan 3 β Apr 10, 2018: Fri, 1:30β2:20 p.m. |
Burnaby Burnaby Burnaby |
||
Jan 3 β Apr 10, 2018: Mon, Fri, 3:30β4:20 p.m.
Jan 3 β Apr 10, 2018: Wed, 3:30β4:20 p.m. |
Burnaby Burnaby |
Models of computation, methods of algorithm design; complexity of algorithms; algorithms on graphs, NP-completeness, approximation algorithms, selected topics. Prerequisite: CMPT 307.
Intelligent Systems using modern constraint programming and heuristic search methods. A survey of this rapidly advancing technology as applied to scheduling, planning, design and configuration. An introduction to constraint programming, heuristic search, constructive (backtrack) search, iterative improvement (local) search, mixed-initiative systems and combinatorial optimization. Prerequisite: CMPT 225.
Current topics in artificial intelligence depending on faculty and student interest.
This course examines: two-tier/multi-tier client/server architectures; the architecture of a Web-based information system; web servers/browser; programming/scripting tools for clients and servers; database access; transport of programming objects; messaging systems; security; and applications (such as e-commerce and on-line learning). Prerequisite: (CMPT 275 or CMPT 276) and CMPT 354.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Jan 3 β Apr 10, 2018: Thu, 5:30β8:20 p.m.
|
Vancouver |
A presentation of the problems commonly arising in numerical analysis and scientific computing and the basic methods for their solutions. Prerequisite: MATH 152 or 155 or 158, and MATH 232 or 240, and computing experience. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Brenda Davison |
Jan 3 β Apr 10, 2018: Mon, Wed, Fri, 12:30β1:20 p.m.
|
Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Wed, 2:30β3:20 p.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Wed, 3:30β4:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Wed, 4:30β5:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Thu, 9:30β10:20 a.m.
|
Burnaby |
|
D105 |
Jan 3 β Apr 10, 2018: Thu, 10:30β11:20 a.m.
|
Burnaby |
|
D106 |
Jan 3 β Apr 10, 2018: Thu, 11:30 a.m.β12:20 p.m.
|
Burnaby |
|
D107 |
Jan 3 β Apr 10, 2018: Wed, 5:30β6:20 p.m.
|
Burnaby |
First-order differential equations, second- and higher-order linear equations, series solutions, introduction to Laplace transform, systems and numerical methods, applications in the physical, biological and social sciences. Prerequisite: MATH 152; or MATH 155/158 with a grade of at least B, MATH 232 or 240. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Razvan Fetecau |
Jan 3 β Apr 10, 2018: Mon, Wed, 4:30β5:50 p.m.
|
Burnaby |
|
E101 |
Jan 3 β Apr 10, 2018: Tue, 9:30β10:20 a.m.
|
Burnaby |
|
E102 |
Jan 3 β Apr 10, 2018: Tue, 10:30β11:20 a.m.
|
Burnaby |
|
E103 |
Jan 3 β Apr 10, 2018: Tue, 11:30 a.m.β12:20 p.m.
|
Burnaby |
Structures and algorithms, generating elementary combinatorial objects, counting (integer partitions, set partitions, Catalan families), backtracking algorithms, branch and bound, heuristic search algorithms. Prerequisite: MACM 201 (with a grade of at least B-). Recommended: knowledge of a programming language. Quantitative.
Fundamental concepts, trees and distances, matchings and factors, connectivity and paths, network flows, integral flows. Prerequisite: MACM 201 (with a grade of at least B-). Quantitative.
Introduces the SAS statistical package. Data management; reading, editing and storing statistical data; data exploration and representation; summarizing data with tables, graphs and other statistical tools; and data simulation. Prerequisite: STAT 285 or STAT 302 or STAT 305 or BUEC 333. Students with credit for STAT 340 may not take STAT 342 for further credit.
Introduction to principal components, cluster analysis, and other commonly used multivariate techniques. Prerequisite: STAT 285 or STAT 302 or STAT 305 or BUEC 333 or equivalent. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Liangliang Wang |
Jan 3 β Apr 10, 2018: Tue, 4:30β6:20 p.m.
Jan 3 β Apr 10, 2018: Thu, 4:30β5:20 p.m. |
Burnaby Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Mon, 1:30β2:20 p.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Mon, 2:30β3:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Mon, 3:30β4:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Wed, 1:30β2:20 p.m.
|
Burnaby |
|
D105 |
Jan 3 β Apr 10, 2018: Wed, 2:30β3:20 p.m.
|
Burnaby |
Introduction to standard methodology for analyzing categorical data including chi-squared tests for two- and multi-way contingency tables, logistic regression, and loglinear (Poisson) regression. Prerequisite: STAT 302 or STAT 305 or STAT 350 or BUEC 333 or equivalent. Students with credit for the former STAT 402 or 602 may not take this course for further credit. Quantitative.
Section | Instructor | Day/Time | Location |
---|---|---|---|
Joan Hu |
Jan 3 β Apr 10, 2018: Tue, 10:30β11:20 a.m.
Jan 3 β Apr 10, 2018: Thu, 9:30β11:20 a.m. |
Burnaby Burnaby |
|
D101 |
Jan 3 β Apr 10, 2018: Wed, 9:30β10:20 a.m.
|
Burnaby |
|
D102 |
Jan 3 β Apr 10, 2018: Wed, 3:30β4:20 p.m.
|
Burnaby |
|
D103 |
Jan 3 β Apr 10, 2018: Wed, 4:30β5:20 p.m.
|
Burnaby |
|
D104 |
Jan 3 β Apr 10, 2018: Wed, 5:30β6:20 p.m.
|
Burnaby |
Introduction to linear time series analysis including moving average, autoregressive and ARIMA models, estimation, data analysis, forecasting errors and confidence intervals, conditional and unconditional models, and seasonal models. Prerequisite: STAT 285 or STAT 302 or STAT 305 or BUEC 333 or equivalent. This course may not be taken for further credit by students who have credit for ECON 484. Quantitative.
University Degree Requirements
Students must also satisfy University degree requirements for degree completion.
Writing, Quantitative, and Breadth Requirements
Students admitted to Ά‘ΟγΤ°AV beginning in the fall 2006 term must meet writing, quantitative and breadth requirements as part of any degree program they may undertake. See Writing, Quantitative, and Breadth Requirements for university-wide information.
WQB Graduation Requirements
A grade of C- or better is required to earn W, Q or B credit
Requirement |
Units |
Notes | |
W - Writing |
6 |
Must include at least one upper division course, taken at Ά‘ΟγΤ°AV within the student’s major subject | |
Q - Quantitative |
6 |
Q courses may be lower or upper division | |
B - Breadth |
18 |
Designated Breadth | Must be outside the student’s major subject, and may be lower or upper division 6 units Social Sciences: B-Soc 6 units Humanities: B-Hum 6 units Sciences: B-Sci |
6 |
Additional Breadth | 6 units outside the student’s major subject (may or may not be B-designated courses, and will likely help fulfil individual degree program requirements) Students choosing to complete a joint major, joint honours, double major, two extended minors, an extended minor and a minor, or two minors may satisfy the breadth requirements (designated or not designated) with courses completed in either one or both program areas. |
Residency Requirements and Transfer Credit
- At least half of the program's total units must be earned through Ά‘ΟγΤ°AV study.
- At least two thirds of the program's total upper division units must be earned through Ά‘ΟγΤ°AV study.
Elective Courses
In addition to the courses listed above, students should consult an academic advisor to plan the remaining required elective courses.
Double Majors and Minors
Students wishing to complete a second major or a minor in addition to a Data Science (DATA) major must satisfy all DATA requirements. At least 34 upper division units must be allocated exclusively to the DATA major.
This includes DATA 481 and at least nine units from each of the lists under the sub-headings Business Administration, Computing Science, and Statistics. Units used to satisfy DATA upper division requirements beyond these 34 can be applied simultaneously to the other major, minor or honours.