Bradley Logo

Schedule of Classes

 

Summer Session I 2023

 

Computer Science
Yun Wang • Bradley Hall 185 • 309-677-3284
CS531Web Development Technologies (3 hours)
Prerequisite: Graduate standing in CS or CIS, or senior standing in CS or CIS, or CS 102 or equivalent.
 01 Arr     Nawaz Ali Online Course
 Synchronous online
CS561Artificial Intelligence (3 hours)
Prerequisite: Graduate standing in CS or CIS. Consent of instructor for all other students with graduate standing.
 01 Arr  ONLONL C Nikolopoulos Online Course
 Asynchronous online
CS562Machine Learning (3 hours)
Prerequisite: Graduate standing in CS or CIS. Consent of instructor for all other students with graduate standing.
 01 Arr  ONLONL C Nikolopoulos Online Course
 Asynchronous online
CS593Agile Software Development (3 hours)
Prerequisite: Graduate standing in CS or CIS, or senior standing in CS or CIS, or CS 390 or equivalent.
 01 Arr  ONLONL Vladimir Uskov Online Course
 Asynchronous online
CS698Directed Individual Studies in Computer Science (1 to 3 hours)
Prerequisite: Consent of instructor.
 01 *R* Arr     Vladimir Uskov  
 "Data Visualization"
 02 *R* Arr     Young Park  
 
ntroduction to PERL/CGI, XHTML, XML, JavaScript and scripting languages. Web page design and layout. Client and server side development of web applications. Database connectivity, Java Database Connectivity (JDBC).
Pattern recognition, search strategies, game playing, knowledge representation; logic programming, uncertainty, vision, natural language processing, robotics, programming in LISP and PROLOG. Advanced topics in artificial intelligence. Cross-listed with CS 461. For cross-listed undergraduate/graduate courses, the graduate-level course will have additional academic requirements beyond those of the undergraduate course.
Machine learning and intelligent systems. Covers the major approaches to ML and IS building, including the logical (logic programming and fuzzy logic, covering ML algorithms), the biological (neural networks and deep learning, genetic algorithms), and the statistical (regression, Bayesian and belief networks, Markov models, decision trees and clustering) approaches. Students use ML to discover the knowledge base and then build complete, integrated, hybrid intelligent systems for solving problems in a variety of applications. Cross listed with CS 462. For cross-listed undergraduate/graduate courses, the graduate-level course will have additional academic requirements beyond those of the undergraduate course.
Agile methodology, agile methods, and agile software engineering, including framework activities, SDLC models, requirements analysis, architectures, services, integrated development environments, testing, and quality issues. Cross listed with CS 493. For cross listed undergraduate/graduate courses, the graduate level course will have additional academic requirements beyond those of the undergraduate course.
Individual study in an area of computer science relevant to the student's professional goals and not covered in a formal course offered by the department. May be repeated twice for a maximum of 6 credit hours.
Picture of Instructor


Choose a different department

Choose a different semester

Search Class Database

Course Delivery Method Definitions