Home | About Us | Courses | Units | Student resources | Research |
IT Support | Staff directory | A-Z index |
M O N A T A R |
InfoTech Unit Avatar |
This field records the Chief Examiner for unit approval purposes. It does not publish, and can only be edited by Faculty Office staff
To update the published Chief Examiner, you will need to update the Faculty Information/Contact Person field below.
NB: This view restricted to entries modified on or after 19990401000000
This unit will be a core elective in the Master of Artificial Intelligence to be introduced in 2020.
Combinatorial Optimisation technology is key for providing good solutions to decision making problems that appear in every area of our lives. It is a research strength of the Faculty and has led to successful collaboration with many industries, including Melbourne Water and Woodside. Yet, FIT does not have any units that teach modern optimisation modelling and solving methods at either the UG or PG level. This misalignment contributes to the lack of access our research group has to HDR students with the appropriate background.
17/04/2019 - Admin - updating 100% in-semester justification to include validation on behalf of the CE.
18/04/2019 - Guido Tack - update assessment to include electronic exam (to address authentication of assessment)
29/10/2019: Updating the prerequisites to include new foundation units. Effective semester 1, 2020.
11/11/2019: Adding prerequisite clause for C6007 Master of AI students to enable enrolment. Effective 2020.
12/12/2019: Changing activity type from "lecture" to "workshop" in Workload/ContactHours, to reflect the fact that the unit is taught in flipped classroom style. Effective semester 1, 2020, (Activities in Allocate+ for S1 2020 were already created as "workshop").
18/09/2020 - Admin: Update to include new assessment and teaching approach fields as per Handbook requirements.
25/05/2021 - Changing assessment structure to 3 assignments instead of 4, and changing weight of final exam from 35% to 40%, to address high in-semester workload. Also fixed small typos in unit description and required technology.
On successful completion of this unit, students should be able to:
020307 Decision Support Systems
This unit introduces the fundamentals of modelling for discrete optimisation, focussing on how to rigorously express a discrete optimisation problem in a manner that it can be solved. Topics covered will include decision variables, basic constraints, modelling with sets, modelling with functions, multiple modelling viewpoints, modelling time, common modelling patterns, model translation, and debugging discrete optimisation models. We will examine complex real world problems and see how they can be translated so that they can be solved by modern discrete optimisation technology.
Technological requirements
All code examples, lab tasks and assignments use the MiniZinc constraint modelling language. MiniZinc is available free from https://www.minizinc.org for Windows, Linux and macOS. We recommend that you install MiniZinc on your own laptop, however you can also access it on MoVE at https://move.monash.edu.
On-campus
Active, Problem-based and Peer assisted learning
Examination (2 hours): 40%; In-semester assessment: 60%
Minimum total expected workload equals 12 hours per week comprising:
A minimum of 8 hours per week of personal study for completing lab/tutorial activities, assignments, private study and revision.
FIT9131 or FIT9133 or FIT9136.
Students enrolled in C6007: None.
2020
28 Mar 2019 | Jeanette Niehus | New unit proposal |
28 Mar 2019 | Jeanette Niehus | modified UnitContent/Synopsis |
10 Apr 2019 | Jeanette Niehus | modified Workload/ContactHours |
17 Apr 2019 | Jeanette Niehus | modified ReasonsForIntroduction/RChange; modified Assessment/Summary |
18 Apr 2019 | Guido Tack | modified ReasonsForIntroduction/RChange; modified ReasonsForIntroduction/RChange; modified Assessment/Summary |
18 Apr 2019 | Guido Tack | |
12 Jun 2019 | Jeanette Niehus | FIT5216 Chief Examiner Approval, ( proxy school approval ) |
12 Jun 2019 | Jeanette Niehus | FEC Approval |
12 Jun 2019 | Jeanette Niehus | FacultyBoard Approval - Approved at FEC 2/19, 17/4/2019 |
29 Oct 2019 | Emma Nash | ; modified Chief Examiner; modified ReasonsForIntroduction/RChange; modified Prerequisites/PreReqUnits |
11 Nov 2019 | Emma Nash | modified ReasonsForIntroduction/RChange; modified Prerequisites/PreReqUnits |
11 Nov 2019 | Emma Nash | FIT5216 Chief Examiner Approval, ( proxy school approval ) |
11 Nov 2019 | Emma Nash | FEC Approval |
11 Nov 2019 | Emma Nash | FacultyBoard Approval - Approved at FEC 5/19. |
12 Dec 2019 | Guido Tack | modified Workload/ContactHours; modified ReasonsForIntroduction/RChange |
20 Dec 2019 | Emma Nash | FIT5216 Chief Examiner Approval, ( proxy school approval ) |
20 Dec 2019 | Emma Nash | FEC Approval |
20 Dec 2019 | Emma Nash | FacultyBoard Approval - Approved by ADLT due to error with workload activity type. |
18 Sep 2020 | Joshua Daniel | modified ReasonsForIntroduction/RChange; modified UnitContent/PrescribedReading; modified Teaching/SpecialArrangements; modified Assessment/Summary |
25 May 2021 | Guido Tack | modified Assessment/Summary; modified ReasonsForIntroduction/RChange; modified UnitContent/PrescribedReading; modified UnitContent/Synopsis; modified ReasonsForIntroduction/RChange |
25 May 2021 | Guido Tack | |
02 Jun 2021 | Monica Fairley | FIT5216 Chief Examiner Approval, ( proxy school approval ) |
02 Jun 2021 | Monica Fairley | FEC Approval |
02 Jun 2021 | Monica Fairley | FacultyBoard Approval - Executively approved DDE 1/6/2021 |
This version:
Copyright © 2022 Monash University ABN 12 377 614 012 – Caution – CRICOS Provider Number: 00008C Last updated: 20 January 2020 – Maintained by eSolutions Service desk – Privacy – Accessibility information |