Âé¶¹ÍøÕ¾

Academic Calendar 2025-2026

Search Results

Search Results for "CISC 371"

CISC 371  Numerical Optimization for Artificial Intelligence  Units: 3.00  
Computational methods for artificial intelligence, particularly using numerical optimization. Applications may include: unconstrained data optimization; linear equality constraints; constrained data regression; constrained data classification; evaluating the effectiveness of analysis methods.
Learning Hours: 120 (36 Lecture, 84 Private Study)  
Requirements: Prerequisite Registration in a School of Computing Plan and a minimum grade of C- (obtained in any term) or a 'Pass' (obtained in Winter 2020) in (CISC 271/3.0 and [STAT 263/3.0 or STAT_Options]). Exclusion CISC 351/3.0.  
Offering Faculty: Faculty of Arts and Science  

Course Learning Outcomes:

  1. Formulate given problems as optimization functions.
  2. Synthesize data and solution methods for optimization.
  3. Implement, test, and evaluate optimization methods.
  4. Interpret and explain methods and solutions of given problems.
  5. Evaluate and critique performance of algorithms.