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Schedule of Classes

 

Fall Semester 2020

 

Computer Science
Yun Wang • Bradley Hall 185 • 309-677-3284
CS100Introduction to Programming Concepts and LanguagesGenEd: FS   Core: QR(3 hours)
Prerequisite: MTH 109 or higher
Course Surcharge: $20 per credit hour
 01 Arr  ONLONL Samuel Hawkins Online Course
CS101Introduction to ProgrammingGenEd: FS   Core: QR(4 hours)
Prerequisite: MTH 109 or higher
Course Surcharge: $20 per credit hour
 01 MW4:30 PM -6:15 PM ONLONL Owen Schaffer Online Course
 02 MW1:00 PM -2:45 PM ONLONL Owen Schaffer Online Course
 03 MW4:30 PM -6:15 PM ONLONL Yun Wang Online Course
 04 MW10:00 AM -11:45 AM BR160 Adam Byerly  
 05 TT2:30 PM -4:15 PM BR160 Adam Byerly  
 06 *R* TT10:00 AM -11:45 AM BR150 Adam Byerly  
CS102Data Structures (3 hours)
Prerequisite: A grade of C or better in CS 101.
Course Surcharge: $20 per credit hour
 01 TT10:30 AM -11:45 AM BR160 Yun Wang Hybrid Course
 02 TT1:30 PM -2:45 PM BR150 Yun Wang Hybrid Course
 03 *R* Arr  ONLONL Adam Byerly Online Course
CS140Advanced Programming Concepts and Languages (3 hours)
Prerequisite: CS 102
Course Surcharge: $20 per credit hour
 01 Arr  ONLONL Jonathan Scott Williams Online Course
 02 Arr  ONLONL Jonathan Scott Williams Online Course
 03 Arr  ONLONL Jonathan Scott Williams Online Course
 04 Arr  ONLONL Samuel Hawkins Online Course
CS210Advanced Data Structures and Algorithms (3 hours)
Prerequisite: grade of C or better in both CS 102 and CS 140 or equivalents; MTH 120 or equivalent.
Course Surcharge: $20 per credit hour
 01 TT9:00 AM -10:15 AM BR160 Young Park  
 02 TT3:00 PM -4:15 PM BR156 Young Park  
CS215Computability, Formal Languages, and Heuristics (3 hours)
Prerequisite: CS 210 or CIS 210 or equivalents; MTH 122 or equivalent.
 01 TT9:00 AM -10:15 AM ONLONL C Nikolopoulos Online Course
 02 TT10:30 AM -11:45 AM ONLONL C Nikolopoulos Online Course
CS220Computer Architecture (3 hours)
Prerequisite: CS 140 or equivalent.
 01 TT12:00 PM -1:15 PM ONLONL Tachun Lin Online Course
 02 Arr  ONLONL Tachun Lin Online Course
CS321Operating Systems (3 hours)
Prerequisite: CS 220.
 01 MW3:00 PM -4:15 PM ONLONL Jiang B Liu Online Course
 02 MW1:00 PM -2:15 PM ONLONL Jiang B Liu Online Course
CS360Fundamentals of Data Science (3 hours)
Prerequisite: CS 101 and CS 102 or equivalent.
 01 TT12:00 PM -1:15 PM ONLONL David Brennan Online Course
CS463Knowledge Discovery and Data Mining (3 hours)
Prerequisite: CS 210 or CS 360 or equivalent, and one of the following courses in statistics: MTH 111 or MTH 325 or equivalent.
 01 MW9:00 AM -10:15 AM ONLONL C Nikolopoulos Online Course
CS472Distributed Databases and Big Data (3 hours)
Prerequisite: CS 370, CS 210 or CS 360 or equivalent.
 01 TT3:00 PM -4:15 PM ONLONL David Brennan Online Course
CS480Social and Professional Issues in Computing (2 hours)
Prerequisite: CS 210 or CIS 210 or equivalent; or consent of instructor.
 01 TT3:00 PM -3:50 PM ONLONL Jonathan Scott WilliamsCore: WIOnline Course
CS481Professional Practicum in Computer Science (0 to 3 hours)
Prerequisite: CS or CIS junior or senior student in good standing; consent of department chair.
 01 *R* Arr     Steven Dolins  
CS490Capstone Project I (3 hours)
Prerequisite: CS 370, CS 390 or equivalents
 01 Arr  ONLONL Young ParkCore: EL,WIOnline Course
 02 *R* Arr  ONLONL David BrennanCore: EL,WIOnline Course
 03 Arr  ONLONL Samuel HawkinsCore: EL,WIOnline Course
 04 Arr  ONLONL Young ParkCore: EL,WIOnline Course
 05 MWF9:00 AM -9:50 AM BR150 David BrennanCore: EL,WIHybrid Course
 06 Arr  ONLONL Samuel HawkinsCore: EL,WIOnline Course
CS498Directed Individual Studies in Computer Science (1 to 3 hours)
Prerequisite: Consent of instructor.
 01 *R* Arr     C Nikolopoulos  
 03 *R* Arr     Adam Byerly  
 "Forecasting with AI"
 04 *R* Arr     Staff  
 05 *R* Arr     Tachun Lin  
 06 Arr     Vladimir Uskov  
 "DATA ANALYTICS"
CS502Advanced Programming (3 hours)
Prerequisite: Graduate standing. Consent of graduate program coordinator; at least two semesters of programming experience.
 01 TT9:00 AM -10:15 AM ONLONL Jiang B Liu Online Course
CS514Algorithms (3 hours)
Prerequisite: Graduate standing in CS or CIS, or senior standing in CS or CIS, or CS 210 or CIS 210 or equivalent and one semester of statistics.
 01 Arr  ONLONL Young Park Online Course
CS532Advanced Java Computing (3 hours)
Prerequisite: Graduate standing in CS or CIS, or senior standing in CS or CIS, or CS 531 or equivalent.
 01 TT1:30 PM -2:45 PM ONLONL Jiang B Liu Online Course
CS563Knowledge Discovery and Data Mining (3 hours)
Prerequisite: Graduate standing in CS or CIS. Consent of instructor for all other students with graduate standing.
 01 MW9:00 AM -10:15 AM ONLONL C Nikolopoulos Online Course
CS571Database Management Systems (3 hours)
Prerequisite: Graduate standing in CS or CIS, or senior standing in CS or CIS, or CS 210 or CIS 210 or equivalent.
 01 TT4:30 PM -5:45 PM BR100 Steven Dolins Hybrid Course
CS572Distributed Databases and Big Data (3 hours)
Prerequisite: Graduate standing in CS or CIS, and CS 571. Consent of instructor for all other students with graduate standing.
 01 TT3:00 PM -4:15 PM ONLONL David Brennan Online Course
CS590Fundamentals of Software Engineering (3 hours)
Prerequisite: Graduate standing in CS or CIS, or senior standing in CS or CIS, or CS 390 or equivalent.
 01 W4:30 PM -7:15 PM BR160 Vladimir Uskov Hybrid Course
CS591Software Project Management (3 hours)
Prerequisite: Graduate standing in CS or CIS, or senior standing in CS or CIS, or CS 390 or equivalent, or consent of instructor.
 01 *R* Th4:30 PM -7:15 PM BR160 Vladimir Uskov Hybrid Course
CS681Professional Practicum in Computer Science (0 hours)
Prerequisite: Graduate CS or CIS student in good standing; consent of department chair and graduate program director.
 01 *R* Arr     Steven Dolins  
CS697Advanced Topics in Computer Science (3 hours)
Prerequisite: Consent of instructor.
 01 Arr     Vladimir Uskov Hybrid Course
CS698Directed Individual Studies in Computer Science (1 to 3 hours)
Prerequisite: Consent of instructor.
 01 *R* Arr     David Brennan  
 "ML with RAPIDS in GPU"
 02 Arr     Vladimir Uskov  
 03 *R* Arr     C Nikolopoulos  
 06 *R* Arr     Young Park  
 07 *R* Arr     Jiang B Liu  
 08 *R* Arr     Tachun Lin  
 09 *R* Arr     Jonathan Scott Williams  
 "SW IP & Licensing"
CS699Thesis in Computer Science (0 to 6 hours)
Prerequisite: Consent of department chair
 01 *R* Arr     C Nikolopoulos  
 
An introduction to programming concepts and languages for non-Computer Science (CS) majors. Topics include the structure and design of algorithms, variables, constants, data types, arithmetic operations, selection and repetition structures, functions, input/output, arrays, structures, files, libraries. Students will design, write, test and run computer programs using a modern programming language as the development tool.
Introduces the fundamental concepts of programming from an object-oriented perspective. Topics include simple data types, control structures (if-else loops, switch statements), introduction to array and string data structures, algorithms, debugging and testing techniques, and social implications of computing. The course emphasizes good software engineering principles and practices, breaking the programming process into analysis, design, implementation, and testing, with primary focus on implementation and development of fundamental programming skills.
Introduction to concepts of object-oriented programming with review of control structures and data types and array processing. Introduction to the object-oriented programming paradigm, focusing on the definition and use of classes along with the fundamentals of object-oriented design. Overview of programming principles, simple analysis of algorithms, searching and sorting techniques, and an introduction to software engineering issues.
Advanced programming concepts and languages appropriate to computer science and computer information systems. Topics include dynamic memory management, garbage collection, advanced object-oriented concepts, generic programming, exception handling, recursion, overloading.
Advanced topics in object-oriented programming with an emphasis on advanced data structures, algorithms, and software development.
Theory of computation and formal languages, grammars, computability, complexity, algorithms, heuristics, and foundations of intelligent systems.
Basics of logic circuit design, modern processor architecture, and assembly language. Overview of principle issues of internal system architecture, including memory, buses, and peripherals.
Fundamentals of operating systems concepts, design, and implementation. Topics include operating system components and structures, process and thread model, mutual exclusion and synchronization, scheduling algorithms, memory management, I/O controls, file systems, and security.
Introduction to the knowledge acquisition and discovery process. Cleaning and analyzing data, building machine learning models, model validation and testing, and visualization. A number of machine learning algorithms are introduced such as regression, naive Bayes, decision trees, association rules, and clustering. Feature selection and transformation. Introduction to Distributed Databases and Big Data. Programming languages, such as R and Python are covered at an accelerated pace, as the course assumes as prerequisites two semesters of programming. Emphasis is on the use of such languages for data analysis and modeling.
Brings together the latest research in statistics, databases, machine learning, and artificial intelligence that are part of the rapidly growing field of knowledge discovery and data mining. Topics covered include fundamental issues, classification and clustering, machine learning algorithms, trend and deviation analysis, dependency modeling, integrated discovery systems, next generation database systems, data warehousing, and OLAP and application case studies. Cross-listed with CS 563.
Designing and building enterprise-wide data warehouses. Cover topics related to large distributed databases, including designing distributed databases, replicating data, and concurrency. NoSQL, object-oriented, and multimedia databases and their query languages. Cross-listed with CS 572.
Introduction to the social and professional issues and practices that arise in the context of computing.
Special projects under staff supervision on professional practicum in computer science, with near-term economic benefit. Repeatable to a maximum of 3 credit hours.
Applies the concepts and skills learned by undergraduate computer science majors at Bradley University. Students are required to work on a team on a significant software project.
Individual study or research/development project under supervision of a CS&IS faculty member. May be repeated under a different topic once. Repeatable to a maximum of six semester hours.
Introduces the fundamental concepts of programming from an object-oriented perspective with emphasis on advanced programming skills and good software development principles in a closed laboratory setting. Covers topics including object-oriented paradigm, design and programming, fundamental data structures and computing algorithms, and software development principles. If needed, course should be taken during first regular semester at Bradley. Credit for this course does not count towards graduation requirements in any graduate program within the Department of Computer Science and Information Systems.
Design and analysis of algorithms. Dynamic structures maintenance and hashing. Searching, sorting, and traversal. Time and space requirements; simplification; computational complexity; proof theory and testing; NP-hard and NP-complete problems.
Developing Web-based systems using J2EE Java technologies. Topics include Java Security, Java GUI development using IDE, Java Servlets and JavaServer Pages, Java Enterprise JavaBeans, XML and Java Web Services, and Java Transaction Service and Java Message Service.
Brings together the latest research in statistics, databases, machine learning, and artificial intelligence that are part of the rapidly growing field of knowledge discovery and data mining. Topics covered include fundamental issues, classification and clustering, machine learning algorithms, trend and deviation analysis, dependency modeling, integrated discovery systems, next generation database systems, data warehousing, and OLAP and application case studies. Cross-listed with CS 463. For cross-listed undergraduate/graduate courses, the graduate-level course will have additional academic requirements beyond those of the undergraduate course.
Relational database design, including entity relationship modeling and normalization. Structured query language (SQL) for creating and querying databases. Other topics include the theory of relational databases, including relational algebra, various loading and reporting utilities, and the implementation of database management systems, e.g., how query optimization works.
Designing and building enterprise-wide data warehouses. Cover topics related to large distributed databases, including designing distributed databases, replicating data, and concurrency. NoSQL, object-oriented, and multimedia databases and their query languages. Cross-listed with CS 472. For cross-listed undergraduate/graduate courses, the graduate-level course will have additional academic requirements beyond those of the undergraduate course.
Software engineering: software product; prescriptive process models; system engineering; analysis modeling; design engineering; architectural design; user interface design; testing strategies and techniques; software systems' implementation; software systems' maintenance.
Methods of PMBOK-based management of software systems design and development projects, including systems view, main project management process groups and knowledge areas, management plans, project metrics and estimates, tools for project management, project reports and documentation. Cross listed with CIS 491 and CIS 591 courses. For cross listed undergraduate/graduate courses, the graduate level course will have additional academic requirements beyond those of the undergraduate course.
Special projects under Smith Career Center supervision on student's professional practicum in corporate/business environment in computer science, with near-term economic benefit. Satisfactory/Unsatisfactory. Minimum of 5-10 hours per week required.
Special projects under staff supervision on advanced problems in numerical or non-numerical branches of computer science. May be taken more than once under different topics for a maximum of 6 semester hours.
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.
Computer science research and thesis preparation. Required of candidates choosing the thesis option. Total of 6 semester hrs. to be taken in one or two semesters.
This course meets a General Education requirement.
C1 - English Composition
C2 - English Composition
SP - Speech
MA - Mathematics
WC - Western Civilization
NW - Non-Western Civilization
FA - Fine Arts
HL - Human Values - Literary
HP - Human Values - Philosophical
CD - Cultural Diversity
SF - Social Forces
FS - Fundamental Concepts in Science
TS - Science & Technology in the Contemporary World
This course meets a Core Curriculum requirement.
OC - Communication - Oral Communication
W1 - Communication - Writing 1
W2 - Communication - Writing 2
FA - Fine Arts
GS - Global Perspective - Global Systems
WC - Global Perspective - World Cultures
HU - Humanities
NS - Knowledge and Reasoning in the Natural Sciences
SB - Knowledge and Reasoning in the Social and Behavioral Sciences
MI - Multidisciplinary Integration
QR - Quantitative Reasoning
This section meets a Core Curriculum requirement.
EL - Experiential Learning
IL - Integrative Learning
WI - Writing Intensive
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