Operations Research Curriculum | NC State OR
Curriculum | MOR and MSOR Degrees
Last Updated: 07/10/2024 | All information is accurate and still up-to-date
This guide helps you, the operations research student, plan your three semesters for your MOR or MSOR degree. Therefore, use this template flexibly to fit your schedule. Additionally, regularly talk with your advisor about your progress. Furthermore, check the course directory for prerequisites before registering for classes.
This guide helps you understand your courses and what they involve. Moreover, each course has a + Show More link that includes:
- The course description
- Its credit hours
Master of Operations Research Curriculum (MOR)
OR PRO TIP: Use this template flexibly to fit your schedule. Additionally, regularly talk with your advisor about your progress. Furthermore, check the course directory for prerequisites before registering for classes.
Semester 1
- You will discuss operations research problems in seminars. Additionally, you will analyze cases and write reports. If you are a graduate student with a minor or major in operations research, you must attend throughout your residence.
- Hours: 1
- Operations Research (OR) involves developing and applying advanced analytical methods to aid complex decisions. Throughout this course, you will learn to apply various analytical methods to diverse applications. These methods include linear and mixed-integer programming, nonlinear and combinatorial optimization, network models, and machine learning. The focus will be on translating real-world problems into models and applying computational procedures and data to aid decision-making. Applications include improving production and service systems, healthcare delivery, and transportation systems. OR also helps make better decisions in sports, marketing, and project management. Prerequisites for this course include undergraduate courses in single-variable calculus and an introductory course in probability.
- Hours: 3
Area * | Core Courses |
---|---|
Deterministic Optimization | OR 501 Introduction to Operations Research |
OR 504 Introduction to Mathematical Modeling | |
OR 505 Linear Programming | |
OR 506 Algorithmic Methods in Nonlinear Programming | |
OR 531 Dynamic Systems and Multivariable Control I | |
OR 706 Nonlinear Programming | |
OR 708 Integer Programming | |
OR 709 Dynamic Programming | |
OR 766 Network Flows | |
Stochastic Optimization/Probability Models | MA 546 Probability and Stochastic Processes I |
MA 547 Probability and Stochastic Processes II | |
OR 560 Stochastic Models in Industrial Engineering | |
OR 562 Simulation Modeling | |
OR 760 Applied Stochastic Models in Industrial Engineering | |
OR 709 Dynamic Programming | |
OR 761 Queues and Stochastic Service Systems | |
OR 762 Computer Simulation Techniques | |
OR 772 Stochastic Simulation Design and Analysis | |
Data Analytics, Stats and Computer Science | CSC 505 Design and Analysis of Algorithms |
ISE 537 Statistical Models for Systems Analytics in Industrial Engineering | |
OR/CE 537 Computer Methods and Applications | |
ST 516 Experimental Statistics For Engineers II or ST 512 Experimental Statistics For Biological Sciences II |
|
Supply Chain and Logistics | ISE 723 Production Planning, Scheduling and Inventory Control |
ISE 754 Logistics Engineering | |
Business/Operations Management | BUS 790 Special Topics In Business Management |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Area * | Electives |
---|---|
Data Analytics, Stats and Computer Science | ST 555 Statistical Programming I |
ST 556 Statistical Programming II | |
ST 558 Data Science for Statisticians | |
ST 563 Introduction to Statistical Learning | |
BAE 555 R Coding for Data Management and Analysis | |
ECE 542/CSC 542 Neural Networks | |
ISE 519 Database Applications in Industrial and Systems Engineering | |
ISE 535 Python Programming for Industrial and Systems Engineers |
|
ISE 748 Quality Engineering | |
Supply Chain and Logistics | ISE 513 Humanitarian Logistics |
ISE 511 Supply Chain Economics and Decision Making | |
ISE 533 Service Systems Engineering | |
ISE 552 Design and Control of Production and Service Systems | |
ISE 553 Modeling and Analysis of Supply Chains | |
MBA 544 Operations Analysis (Warsing’s course) | |
MBA 548 Analytical Supply Chain Management (Heese’s course) | |
Business/Operations Management | ISE 510 Applied Engineering Economy |
ISE 511 Supply Chain Economics and Decision Making | |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Total Hours: 10
Semester 2
Area * | Core Courses |
---|---|
Deterministic Optimization | OR 501 Introduction to Operations Research |
OR 504 Introduction to Mathematical Modeling | |
OR 505 Linear Programming | |
OR 506 Algorithmic Methods in Nonlinear Programming | |
OR 531 Dynamic Systems and Multivariable Control I | |
OR 706 Nonlinear Programming | |
OR 708 Integer Programming | |
OR 709 Dynamic Programming | |
OR 766 Network Flows | |
Stochastic Optimization/Probability Models | MA 546 Probability and Stochastic Processes I |
MA 547 Probability and Stochastic Processes II | |
OR 560 Stochastic Models in Industrial Engineering | |
OR 562 Simulation Modeling | |
OR 760 Applied Stochastic Models in Industrial Engineering | |
OR 709 Dynamic Programming | |
OR 761 Queues and Stochastic Service Systems | |
OR 762 Computer Simulation Techniques | |
OR 772 Stochastic Simulation Design and Analysis | |
Data Analytics, Stats and Computer Science | CSC 505 Design and Analysis of Algorithms |
ISE 537 Statistical Models for Systems Analytics in Industrial Engineering | |
OR/CE 537 Computer Methods and Applications | |
ST 516 Experimental Statistics For Engineers II or ST 512 Experimental Statistics For Biological Sciences II |
|
Supply Chain and Logistics | ISE 723 Production Planning, Scheduling and Inventory Control |
ISE 754 Logistics Engineering | |
Business/Operations Management | BUS 790 Special Topics In Business Management |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Area * | Core Courses |
---|---|
Deterministic Optimization | OR 501 Introduction to Operations Research |
OR 504 Introduction to Mathematical Modeling | |
OR 505 Linear Programming | |
OR 506 Algorithmic Methods in Nonlinear Programming | |
OR 531 Dynamic Systems and Multivariable Control I | |
OR 706 Nonlinear Programming | |
OR 708 Integer Programming | |
OR 709 Dynamic Programming | |
OR 766 Network Flows | |
Stochastic Optimization/Probability Models | MA 546 Probability and Stochastic Processes I |
MA 547 Probability and Stochastic Processes II | |
OR 560 Stochastic Models in Industrial Engineering | |
OR 562 Simulation Modeling | |
OR 760 Applied Stochastic Models in Industrial Engineering | |
OR 709 Dynamic Programming | |
OR 761 Queues and Stochastic Service Systems | |
OR 762 Computer Simulation Techniques | |
OR 772 Stochastic Simulation Design and Analysis | |
Data Analytics, Stats and Computer Science | CSC 505 Design and Analysis of Algorithms |
ISE 537 Statistical Models for Systems Analytics in Industrial Engineering | |
OR/CE 537 Computer Methods and Applications | |
ST 516 Experimental Statistics For Engineers II or ST 512 Experimental Statistics For Biological Sciences II |
|
Supply Chain and Logistics | ISE 723 Production Planning, Scheduling and Inventory Control |
ISE 754 Logistics Engineering | |
Business/Operations Management | BUS 790 Special Topics In Business Management |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Area * | Electives |
---|---|
Data Analytics, Stats and Computer Science | ST 555 Statistical Programming I |
ST 556 Statistical Programming II | |
ST 558 Data Science for Statisticians | |
ST 563 Introduction to Statistical Learning | |
BAE 555 R Coding for Data Management and Analysis | |
ECE 542/CSC 542 Neural Networks | |
ISE 519 Database Applications in Industrial and Systems Engineering | |
ISE 535 Python Programming for Industrial and Systems Engineers |
|
ISE 748 Quality Engineering | |
Supply Chain and Logistics | ISE 513 Humanitarian Logistics |
ISE 511 Supply Chain Economics and Decision Making | |
ISE 533 Service Systems Engineering | |
ISE 552 Design and Control of Production and Service Systems | |
ISE 553 Modeling and Analysis of Supply Chains | |
MBA 544 Operations Analysis (Warsing’s course) | |
MBA 548 Analytical Supply Chain Management (Heese’s course) | |
Business/Operations Management | ISE 510 Applied Engineering Economy |
ISE 511 Supply Chain Economics and Decision Making | |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Area * | Electives |
---|---|
Data Analytics, Stats and Computer Science | ST 555 Statistical Programming I |
ST 556 Statistical Programming II | |
ST 558 Data Science for Statisticians | |
ST 563 Introduction to Statistical Learning | |
BAE 555 R Coding for Data Management and Analysis | |
ECE 542/CSC 542 Neural Networks | |
ISE 519 Database Applications in Industrial and Systems Engineering | |
ISE 535 Python Programming for Industrial and Systems Engineers |
|
ISE 748 Quality Engineering | |
Supply Chain and Logistics | ISE 513 Humanitarian Logistics |
ISE 511 Supply Chain Economics and Decision Making | |
ISE 533 Service Systems Engineering | |
ISE 552 Design and Control of Production and Service Systems | |
ISE 553 Modeling and Analysis of Supply Chains | |
MBA 544 Operations Analysis (Warsing’s course) | |
MBA 548 Analytical Supply Chain Management (Heese’s course) | |
Business/Operations Management | ISE 510 Applied Engineering Economy |
ISE 511 Supply Chain Economics and Decision Making | |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Total Hours: 12
Semester 3
Area * | Core Courses |
---|---|
Deterministic Optimization | OR 501 Introduction to Operations Research |
OR 504 Introduction to Mathematical Modeling | |
OR 505 Linear Programming | |
OR 506 Algorithmic Methods in Nonlinear Programming | |
OR 531 Dynamic Systems and Multivariable Control I | |
OR 706 Nonlinear Programming | |
OR 708 Integer Programming | |
OR 709 Dynamic Programming | |
OR 766 Network Flows | |
Stochastic Optimization/Probability Models | MA 546 Probability and Stochastic Processes I |
MA 547 Probability and Stochastic Processes II | |
OR 560 Stochastic Models in Industrial Engineering | |
OR 562 Simulation Modeling | |
OR 760 Applied Stochastic Models in Industrial Engineering | |
OR 709 Dynamic Programming | |
OR 761 Queues and Stochastic Service Systems | |
OR 762 Computer Simulation Techniques | |
OR 772 Stochastic Simulation Design and Analysis | |
Data Analytics, Stats and Computer Science | CSC 505 Design and Analysis of Algorithms |
ISE 537 Statistical Models for Systems Analytics in Industrial Engineering | |
OR/CE 537 Computer Methods and Applications | |
ST 516 Experimental Statistics For Engineers II or ST 512 Experimental Statistics For Biological Sciences II |
|
Supply Chain and Logistics | ISE 723 Production Planning, Scheduling and Inventory Control |
ISE 754 Logistics Engineering | |
Business/Operations Management | BUS 790 Special Topics In Business Management |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Area * | Electives |
---|---|
Data Analytics, Stats and Computer Science | ST 555 Statistical Programming I |
ST 556 Statistical Programming II | |
ST 558 Data Science for Statisticians | |
ST 563 Introduction to Statistical Learning | |
BAE 555 R Coding for Data Management and Analysis | |
ECE 542/CSC 542 Neural Networks | |
ISE 519 Database Applications in Industrial and Systems Engineering | |
ISE 535 Python Programming for Industrial and Systems Engineers |
|
ISE 748 Quality Engineering | |
Supply Chain and Logistics | ISE 513 Humanitarian Logistics |
ISE 511 Supply Chain Economics and Decision Making | |
ISE 533 Service Systems Engineering | |
ISE 552 Design and Control of Production and Service Systems | |
ISE 553 Modeling and Analysis of Supply Chains | |
MBA 544 Operations Analysis (Warsing’s course) | |
MBA 548 Analytical Supply Chain Management (Heese’s course) | |
Business/Operations Management | ISE 510 Applied Engineering Economy |
ISE 511 Supply Chain Economics and Decision Making | |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Area * | Electives |
---|---|
Data Analytics, Stats and Computer Science | ST 555 Statistical Programming I |
ST 556 Statistical Programming II | |
ST 558 Data Science for Statisticians | |
ST 563 Introduction to Statistical Learning | |
BAE 555 R Coding for Data Management and Analysis | |
ECE 542/CSC 542 Neural Networks | |
ISE 519 Database Applications in Industrial and Systems Engineering | |
ISE 535 Python Programming for Industrial and Systems Engineers |
|
ISE 748 Quality Engineering | |
Supply Chain and Logistics | ISE 513 Humanitarian Logistics |
ISE 511 Supply Chain Economics and Decision Making | |
ISE 533 Service Systems Engineering | |
ISE 552 Design and Control of Production and Service Systems | |
ISE 553 Modeling and Analysis of Supply Chains | |
MBA 544 Operations Analysis (Warsing’s course) | |
MBA 548 Analytical Supply Chain Management (Heese’s course) | |
Business/Operations Management | ISE 510 Applied Engineering Economy |
ISE 511 Supply Chain Economics and Decision Making | |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Total Hours: 9
Minimum Credit Hours Required for Graduation: 31
Master of Science in Operations Research Curriculum (MSOR)
OR PRO TIP: This guide is a template and doesn’t have to be followed exactly. The MOR and MSOR are highly flexible, so you can move courses around to fit your schedule. Talk with your advisor regularly about your progress.
Semester 1
- You will discuss operations research problems in seminars. Additionally, you will analyze cases and write reports. If you are a graduate student with a minor or major in operations research, you must attend throughout your entire residence.
- Hours: 1
- Operations Research (OR) involves developing and applying advanced analytical methods to aid complex decisions. Throughout this course, you will learn to apply various analytical methods to diverse applications. These methods include linear and mixed-integer programming, nonlinear and combinatorial optimization, network models, and machine learning. The focus will be on translating real-world problems into models and applying computational procedures and data to aid decision-making. Applications include improving production and service systems, healthcare delivery, and transportation systems. OR also helps make better decisions in sports, marketing, and project management. Prerequisites for this course include undergraduate courses in single-variable calculus and an introductory course in probability.
- Hours: 3
Area * | Core Courses |
---|---|
Deterministic Optimization | OR 501 Introduction to Operations Research |
OR 504 Introduction to Mathematical Modeling | |
OR 505 Linear Programming | |
OR 506 Algorithmic Methods in Nonlinear Programming | |
OR 531 Dynamic Systems and Multivariable Control I | |
OR 706 Nonlinear Programming | |
OR 708 Integer Programming | |
OR 709 Dynamic Programming | |
OR 766 Network Flows | |
Stochastic Optimization/Probability Models | MA 546 Probability and Stochastic Processes I |
MA 547 Probability and Stochastic Processes II | |
OR 560 Stochastic Models in Industrial Engineering | |
OR 562 Simulation Modeling | |
OR 760 Applied Stochastic Models in Industrial Engineering | |
OR 709 Dynamic Programming | |
OR 761 Queues and Stochastic Service Systems | |
OR 762 Computer Simulation Techniques | |
OR 772 Stochastic Simulation Design and Analysis | |
Data Analytics, Stats and Computer Science | CSC 505 Design and Analysis of Algorithms |
ISE 537 Statistical Models for Systems Analytics in Industrial Engineering | |
OR/CE 537 Computer Methods and Applications | |
ST 516 Experimental Statistics For Engineers II or ST 512 Experimental Statistics For Biological Sciences II |
|
Supply Chain and Logistics | ISE 723 Production Planning, Scheduling and Inventory Control |
ISE 754 Logistics Engineering | |
Business/Operations Management | BUS 790 Special Topics In Business Management |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Area * | Electives |
---|---|
Data Analytics, Stats and Computer Science | ST 555 Statistical Programming I |
ST 556 Statistical Programming II | |
ST 558 Data Science for Statisticians | |
ST 563 Introduction to Statistical Learning | |
BAE 555 R Coding for Data Management and Analysis | |
ECE 542/CSC 542 Neural Networks | |
ISE 519 Database Applications in Industrial and Systems Engineering | |
ISE 535 Python Programming for Industrial and Systems Engineers |
|
ISE 748 Quality Engineering | |
Supply Chain and Logistics | ISE 513 Humanitarian Logistics |
ISE 511 Supply Chain Economics and Decision Making | |
ISE 533 Service Systems Engineering | |
ISE 552 Design and Control of Production and Service Systems | |
ISE 553 Modeling and Analysis of Supply Chains | |
MBA 544 Operations Analysis (Warsing’s course) | |
MBA 548 Analytical Supply Chain Management (Heese’s course) | |
Business/Operations Management | ISE 510 Applied Engineering Economy |
ISE 511 Supply Chain Economics and Decision Making | |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Total Hours: 10
Semester 2
Area * | Core Courses |
---|---|
Deterministic Optimization | OR 501 Introduction to Operations Research |
OR 504 Introduction to Mathematical Modeling | |
OR 505 Linear Programming | |
OR 506 Algorithmic Methods in Nonlinear Programming | |
OR 531 Dynamic Systems and Multivariable Control I | |
OR 706 Nonlinear Programming | |
OR 708 Integer Programming | |
OR 709 Dynamic Programming | |
OR 766 Network Flows | |
Stochastic Optimization/Probability Models | MA 546 Probability and Stochastic Processes I |
MA 547 Probability and Stochastic Processes II | |
OR 560 Stochastic Models in Industrial Engineering | |
OR 562 Simulation Modeling | |
OR 760 Applied Stochastic Models in Industrial Engineering | |
OR 709 Dynamic Programming | |
OR 761 Queues and Stochastic Service Systems | |
OR 762 Computer Simulation Techniques | |
OR 772 Stochastic Simulation Design and Analysis | |
Data Analytics, Stats and Computer Science | CSC 505 Design and Analysis of Algorithms |
ISE 537 Statistical Models for Systems Analytics in Industrial Engineering | |
OR/CE 537 Computer Methods and Applications | |
ST 516 Experimental Statistics For Engineers II or ST 512 Experimental Statistics For Biological Sciences II |
|
Supply Chain and Logistics | ISE 723 Production Planning, Scheduling and Inventory Control |
ISE 754 Logistics Engineering | |
Business/Operations Management | BUS 790 Special Topics In Business Management |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Area * | Core Courses |
---|---|
Deterministic Optimization | OR 501 Introduction to Operations Research |
OR 504 Introduction to Mathematical Modeling | |
OR 505 Linear Programming | |
OR 506 Algorithmic Methods in Nonlinear Programming | |
OR 531 Dynamic Systems and Multivariable Control I | |
OR 706 Nonlinear Programming | |
OR 708 Integer Programming | |
OR 709 Dynamic Programming | |
OR 766 Network Flows | |
Stochastic Optimization/Probability Models | MA 546 Probability and Stochastic Processes I |
MA 547 Probability and Stochastic Processes II | |
OR 560 Stochastic Models in Industrial Engineering | |
OR 562 Simulation Modeling | |
OR 760 Applied Stochastic Models in Industrial Engineering | |
OR 709 Dynamic Programming | |
OR 761 Queues and Stochastic Service Systems | |
OR 762 Computer Simulation Techniques | |
OR 772 Stochastic Simulation Design and Analysis | |
Data Analytics, Stats and Computer Science | CSC 505 Design and Analysis of Algorithms |
ISE 537 Statistical Models for Systems Analytics in Industrial Engineering | |
OR/CE 537 Computer Methods and Applications | |
ST 516 Experimental Statistics For Engineers II or ST 512 Experimental Statistics For Biological Sciences II |
|
Supply Chain and Logistics | ISE 723 Production Planning, Scheduling and Inventory Control |
ISE 754 Logistics Engineering | |
Business/Operations Management | BUS 790 Special Topics In Business Management |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
Area * | Electives |
---|---|
Data Analytics, Stats and Computer Science | ST 555 Statistical Programming I |
ST 556 Statistical Programming II | |
ST 558 Data Science for Statisticians | |
ST 563 Introduction to Statistical Learning | |
BAE 555 R Coding for Data Management and Analysis | |
ECE 542/CSC 542 Neural Networks | |
ISE 519 Database Applications in Industrial and Systems Engineering | |
ISE 535 Python Programming for Industrial and Systems Engineers |
|
ISE 748 Quality Engineering | |
Supply Chain and Logistics | ISE 513 Humanitarian Logistics |
ISE 511 Supply Chain Economics and Decision Making | |
ISE 533 Service Systems Engineering | |
ISE 552 Design and Control of Production and Service Systems | |
ISE 553 Modeling and Analysis of Supply Chains | |
MBA 544 Operations Analysis (Warsing’s course) | |
MBA 548 Analytical Supply Chain Management (Heese’s course) | |
Business/Operations Management | ISE 510 Applied Engineering Economy |
ISE 511 Supply Chain Economics and Decision Making | |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
- First, you must complete a master’s thesis, typically involving 3 to 6 credits of OR 695 Master’s Thesis Research. Ideally, your thesis should include publishable research.
- Next, form a Graduate Advisory Committee with at least three faculty members and file a committee-approved Plan of Graduate Work with the Graduate School. Ensure your Chair (or co-chair) and one other member are from the OR Faculty. Additionally, include one member as the Graduate School Representative and one representing your minor field of study.
- Finally, pass your final oral examination conducted by your Advisory Committee. This exam will include, but is not limited to, a “defense of thesis.”
- Once you pass the MSOR final oral examination, ensure each committee member approves your thesis. Submit the thesis to the thesis editor of the Graduate School, adhering to the Guide for Preparation of Theses and Dissertations available from the Graduate School. For detailed information about ETDs, refer to the Electronic Theses and Dissertations page.
OR PRO TIP: Be aware of Graduate School submission deadlines for graduation.
- Hours: 3
Total Hours: 12
Semester 3
OR 505 Linear Programming
- The course covers a wide range of topics. These include an introduction to applications in economics and engineering. It explores methods such as the simplex and interior-point methods. Additionally, it delves into parametric programming and post-optimality analysis. The course also covers duality in matrix games and linear systems solvability theory. Furthermore, it discusses linear systems duality theory and polyhedral sets and cones. This includes their convexity and separation properties, as well as dual representations. Lastly, the course touches upon equilibrium prices, Lagrange multipliers, subgradients, and sensitivity analysis.
OR 506 Algorithmic Methods in Nonlinear Programming
- The course covers a wide range of topics, beginning with an introduction to methods for obtaining approximate solutions to unconstrained and constrained minimization problems of moderate size. Emphasis is placed on the geometrical interpretation and practical application of methods such as coordinate descent, steepest descent, Newton and quasi-Newton methods, conjugate gradient search, gradient projection, and penalty function methods for constrained problems. Specialized problems and algorithms are addressed based on available time.
- Hours: 3
Area * | Electives |
---|---|
Data Analytics, Stats and Computer Science | ST 555 Statistical Programming I |
ST 556 Statistical Programming II | |
ST 558 Data Science for Statisticians | |
ST 563 Introduction to Statistical Learning | |
BAE 555 R Coding for Data Management and Analysis | |
ECE 542/CSC 542 Neural Networks | |
ISE 519 Database Applications in Industrial and Systems Engineering | |
ISE 535 Python Programming for Industrial and Systems Engineers |
|
ISE 748 Quality Engineering | |
Supply Chain and Logistics | ISE 513 Humanitarian Logistics |
ISE 511 Supply Chain Economics and Decision Making | |
ISE 533 Service Systems Engineering | |
ISE 552 Design and Control of Production and Service Systems | |
ISE 553 Modeling and Analysis of Supply Chains | |
MBA 544 Operations Analysis (Warsing’s course) | |
MBA 548 Analytical Supply Chain Management (Heese’s course) | |
Business/Operations Management | ISE 510 Applied Engineering Economy |
ISE 511 Supply Chain Economics and Decision Making | |
*Courses may appear in multiple areas. Be sure to check special topics (e.g. OR 591, OR 791, ISE 589, ISE 789) which vary semester by semester. |
- First, you must complete a master’s thesis, typically involving 3 to 6 credits of OR 695 Master’s Thesis Research. Ideally, your thesis should include publishable research.
- Next, form a Graduate Advisory Committee with at least three faculty members and file a committee-approved Plan of Graduate Work with the Graduate School. Ensure your Chair (or co-chair) and one other member are from the OR Faculty. Additionally, include one member as the Graduate School Representative and one representing your minor field of study.
- Finally, pass your final oral examination conducted by your Advisory Committee. This exam will include, but is not limited to, a “defense of thesis.”
- Once you pass the MSOR final oral examination, ensure each committee member approves your thesis. Submit the thesis to the thesis editor of the Graduate School, adhering to the Guide for Preparation of Theses and Dissertations available from the Graduate School. For detailed information about ETDs, refer to the Electronic Theses and Dissertations page.
OR PRO TIP: Be aware of Graduate School submission deadlines for graduation.
- Hours: 3
Total Hours: 9
Minimum Credit Hours Required for Graduation: 31