1. Core courses
Four from among the following five courses:
SYS5100 SYSTEMS ENGINEERING (3cr.)
SYS5110 FOUNDATIONS OF MODELLING AND SIMULATION (3cr.)
SYS5120 APPLIED PROBABILITY (3cr.)
SYS5130 SYSTEMS OPTIMIZATION AND MANAGEMENT (3cr.)
SYS5140 ECONOMIC SYSTEM DESIGN (3cr.)
and
SYS5160 SYSTEMS INTEGRATION (3cr.)
The Graduate Certificate may be completed by an adequately prepared full-time student in three sessions.
Students enrolled in the graduate certificate who have successfully completed the required 15 credits may apply for admission to one of the master’s programs in systems science instead of accepting the graduate certificate. Applicants for the MSc must present an outline of their research approved by their potential thesis supervisor. If admitted to the master’s, the residency requirements and the certificate courses will be counted towards the requirements of the master’s. Admission is competitive, based on academic and professional experience prior to and concurrent with performance in the certificate courses. Certificate students are invited to consult representatives of the program committee regarding their intention to seek acceptance into one of the master’s programs.
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Related Programs
The Systems Science Program provides qualified students with the opportunity for master's-level study in a broad range of areas that emphasize transdisciplinary work in the context of general systems analysis. The emphasis in Systems Science is on the development of analytical and integration skills for use in the resolution of complex applied problems that require a broad-based perspective.
Many professors in Information Technology and Engineering, Mathematics and Statistics, Administration, Economics, and other disciplines are active in the Systems Science program as instructors, student advisers and thesis directors. Others are interested in ongoing Systems Science activities including the seminar series, and
Core courses (15 credits):
Four among the following five courses:
SYS5100 SYSTEMS ENGINEERING (3cr.)
SYS5110 FOUNDATIONS OF MODELLING AND SIMULATION (3cr.)
SYS5120 APPLIED PROBABILITY (3cr.)
SYS5130 SYSTEMS OPTIMIZATION AND MANAGEMENT (3cr.)
SYS5140 ECONOMIC SYSTEM DESIGN (3cr.)
and
SYS5160 SYSTEMS INTEGRATION (3cr.)
One elective course (3 cr.)
SYS 7990 Master's Thesis Proposal
SYS 7999 Master's Thesis (12 cr.).
The regulations for the thesis and for the selection of elective coursesare given below.
Thesis Proposal (SYS 7990)
Candidates registered for the MSc degree must submit to the program committee, by the middle of their first session of registration in the MSc program, a clearly defined research proposal that has been approved by their thesis director.
A four-year undergraduate degree in Computer Science, Economics, Engineering, Mathematics, Operations Research, Science or a related area with at least a "B" average is required for admission to the Program.
Undergraduate courses in probability, linear algebra, differential equations and computer programming are prerequisites for the core courses of the Program. Details regarding the level and content of prerequisite courses are included in the information package which is sent to all applicants. If a student lacks any of these courses, he will normally be required to complete them as a condition of admission. Entering students who lack the required undergraduate preparation
A four-year undergraduate degree in Computer Science, Economics, Engineering, Mathematics, Operations Research, Science or a related area with at least a "B" average is required for admission to the Program.
Undergraduate courses in probability, linear algebra, differential equations and computer programming are prerequisites for the core courses of the Program. Details regarding the level and content of prerequisite courses are included in the information package which is sent to all applicants. If a student lacks any of these courses, he will normally be required to complete them as a condition of admission. Entering students who lack the required undergraduate preparation
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The Systems Science Program provides qualified students with the opportunity for master's-level study in a broad range of areas that emphasize transdisciplinary work in the context of general systems analysis. The emphasis in Systems Science is on the development of analytical and integration skills for use in the resolution of complex applied problems that require a broad-based perspective.
Many professors in Information Technology and Engineering, Mathematics and Statistics, Administration, Economics, and other disciplines are active in the Systems Science program as instructors, student advisers and thesis directors. Others are interested in ongoing Systems Science activities including the seminar series, and
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