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A summary of each course to help with your selection.
Course ID
Course
CMPT 330
CMPT 330
Numerical Analysis
Course Credits: 4
This course covers numerical techniques for solving problems in applied mathematics, including error analysis, roots of equations, interpolation, numerical differentiation and integration, ordinary differential equations, matrix methods and selected topics from among: eigenvalues, approximation theory, non-linear systems, boundary-value problems, numerical solution of partial differential equations.
Cross-listed: MATH 330
Prerequisite(s): MATH 223, 250; CMPT 140. (4-0)
NB: Not offered every year. See department chair
CMPT 334
CMPT 334
Principles of Operating Systems
Course Credits: 3
Operating system and control software at a low level, memory management, processor management, storage management, and system architecture are among the topics considered.
Prerequisite(s): CMPT 150 and 231. (3-0)
NB: Not offered every year. See department chair
CMPT 339
CMPT 339
Introduction to Database Management Systems
Course Credits: 3
An introduction to database management systems, overviewing issues related to the design, organization, and management of databases. Topics include logical database design, entity relationship (ER) models, and formal relational query languages such as the Structured Query Language (SQL).
Prerequisite(s): CMPT 166, 231. (3-0)
NB: Not offered every year. See department chair
CMPT 340
CMPT 340
Discrete Structures and Computing
Course Credits: 3
This is a second course in the topics of pure mathematics, particularly those most commonly used in the study of computing science and related applications. It includes proof techniques, models of computation, formal languages, analysis of algorithms, trees and advanced general graph theory with applications, finite state and automata theory, encryption, and an elementary introduction to mathematical structures such as groups, rings, and fields.
Cross-listed: MATH 340
Prerequisite(s): CMPT 150 or MATH 150.
NB: Not offered every year. See department chair
CMPT 345
CMPT 345
Simulation and Modeling
Course Credits: 3
This course is designed to give students the ability to analyze, formulate, and program problems related to discrete simulation methods. The course introduces students to queuing theory and some commonly used continuous and discrete statistical distributions. By the end of the course, students are able to simulate real world computer systems and industrial manufacturing systems.
Prerequisite(s): CMPT 166 and 231.
CMPT 360
CMPT 360
Comparative Programming Languages
Course Credits: 3
The history, development, and design principles for programming notations. The design and internal operations of the major notational categories are examined in detail. Students are expected to become proficient in at least four languages they have not previously learned, typically chosen from historical, modern working, and cutting edge languages and from among such (non-exclusive) categories as Algol-descended, functional, scripting, Web-based, modular, application-specific, visual, and object oriented. They will also learn how to select appropriate programming notations for a given project. Programming will be undertaken in at least three OS environments.
Prerequisite(s): CMPT 140, 166 and 231. (3-0)
NB: Not offered every year. See department chair
CMPT 370
CMPT 370
Computer Graphics
Course Credits: 3
This course introduces the fundamentals of computer graphics and principles of raster image generation. Topics include: graphics primitives, coordinate systems, transformations, rendering techniques, and geometric modelling.
Prerequisite(s): CMPT 150, 166, 231; MATH 250. (3-0)
NB: Not offered every year. See department chair
CMPT 375
CMPT 375
Human-Computer Interaction Design
Course Credits: 3
This course provides a general introduction to interaction design from a human-computer interaction perspective. Students will learn both theoretical and practical concepts of human-computer interaction which will help them discover requirements, design/prototype and evaluate interactive products with usability and user experience (UX) goals. The course covers human capabilities, design principles, prototyping techniques, implementation, and evaluation techniques for interactive products. Students will apply what they learn from lectures to actual challenges of interactive product design, prototyping, implementation, and evaluation.
Prerequisite(s): CMPT 166, 231 (3,0)
CMPT 380
CMPT 380
Artificial Intelligence
Course Credits: 3
Artificial Intelligence: knowledge representation, logic programming, knowledge inference. Application domains within the discipline of Artificial Intelligence include logical and probabilistic reasoning, natural language understanding, vision and expert systems.