Note: This unit version is currently being edited and is subject to change!
ISYS3402: Decision Analytics & Support Systems [Not available in 2019] (2020 - Semester 2)
Unit: | ISYS3402: Decision Analytics & Support Systems [not running in 2019] (6 CP) |
Mode: | Normal-Day |
On Offer: | Yes |
Level: | Senior |
Faculty/School: | School of Computer Science |
Unit Coordinator/s: |
Dr Han, Caren
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Session options: | Semester 2 |
Versions for this Unit: |
Campus: | Camperdown/Darlington |
Pre-Requisites: | (ISYS2110 OR INFO2110) AND (ISYS2120 OR INFO2120). |
Brief Handbook Description: | With the rapid increases in the volume and variety of data available, the problem of providing effective support to facilitate good decision making has become more challenging. This unit of study will provide a comprehensive understanding the diverse types of decision and the decision making processes. It will introduce decision modelling and the design and implementation of application systems to support decision making in organisational contexts. It will include a range of business intelligence and analytics solutions based on online analytical processing (OLAP) models and technologies. The unit will also cover a number of modelling approaches (optimization, predictive, descriptive) and their integration in the context of enabling improved, data-driven decision making. |
Assumed Knowledge: | Database Management AND Systems Analysis and Modelling |
Additional Notes: | Students who wish to take ISYS3402 in 2019 should enrol in INFS3050 as a direct replacement unit. Further questions can be directed to Katie Yang or the UG Director Dr. Caren Han |
Department Permission | Department permission is required for enrollment in this session. |
Lecturer/s: |
Dr Han, Caren
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Timetable: | ISYS3402 Timetable | |||||||||||||||||||||||||
Time Commitment: |
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T&L Activities: | Lectures, project work, lab-based data analyses and related work. |
Learning outcomes are the key abilities and knowledge that will be assessed in this unit. They are listed according to the course goal supported by each. See Assessment Tab for details how each outcome is assessed.
Unassigned OutcomesAbility ot model decisions and to map appropriate data and models to build systems to support tjhe decision,
Experience workign with a range of tools including online analytical processing tools such as COGNOS,
Learn the basics of data warehousing including ETL (extract, transform load),
Understand critical issues related to implementing descision support systems and dashboards.
Assessment Methods: |
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Assessment Description: | Group Project, Project presentation, Quiz, Final examination | ||||||||||||||||||||||||||||||
Grading: |
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Policies & Procedures: | IMPORTANT: School policy relating to Academic Dishonesty and Plagiarism. In assessing a piece of submitted work, the School of Computer Science may reproduce it entirely, may provide a copy to another member of faculty, and/or to an external plagiarism checking service or in-house computer program and may also maintain a copy of the assignment for future checking purposes and/or allow an external service to do so. Other policies See the policies page of the faculty website at http://sydney.edu.au/engineering/student-policies/ for information regarding university policies and local provisions and procedures within the Faculty of Engineering and Information Technologies. |
Prescribed Text/s: |
Note: Students are expected to have a personal copy of all books listed.
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Recommended Reference/s: |
Note: References are provided for guidance purposes only. Students are advised to consult these books in the university library. Purchase is not required.
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Note that the "Weeks" referred to in this Schedule are those of the official university semester calendar https://web.timetable.usyd.edu.au/calendar.jsp
Week | Description |
Week 1 | Lecture/Tutorial: Introduction and inrto to decision making |
Week 2 | Lecture: The Data Component |
Week 3 | Lecture: Modelling component |
Week 4 | Lecture: Intelligence and Decision Support Systems. |
Week 5 | Lecture/Tutorial: The User Interface. |
Week 6 | Lecture/Tutorial: Data Warehousing and OLAP |
Lecture/Tutorial: | |
Assessment Due: Quiz | |
Week 7 | Lecture/Tutorial: Data Warehousing and OALP (continued) |
Week 8 | Lecture/Tutorial: UI and dashboards |
Week 9 | Lecture/Tutorial: Designing a Decision Support System |
Week 10 | Lecture/Tutorial: Implementation Strategy. |
Week 11 | Lecture/Tutorial: Group Decision Support Systems. |
Week 12 | Assessment Due: Group Project |
Assessment Due: Project presentation | |
Week 13 | Lecture: Presentations |
Exam Period | Assessment Due: Final Examination |
Course Relations
The following is a list of courses which have added this Unit to their structure.
Course Goals
This unit contributes to the achievement of the following course goals:
Attribute | Practiced | Assessed |
(6) Communication and Inquiry/ Research (Level 4) | No | 0% |
(7) Project and Team Skills (Level 4) | No | 0% |
(5) Interdisciplinary, Inclusiveness, Influence (Level 2) | No | 0% |
(4) Design (Level 2) | No | 0% |
(3) Problem Solving and Inventiveness (Level 2) | No | 0% |
(2) Engineering/ IT Specialisation (Level 4) | No | 0% |
These goals are selected from Engineering & IT Graduate Outcomes Table 2018 which defines overall goals for courses where this unit is primarily offered. See Engineering & IT Graduate Outcomes Table 2018 for details of the attributes and levels to be developed in the course as a whole. Percentage figures alongside each course goal provide a rough indication of their relative weighting in assessment for this unit. Note that not all goals are necessarily part of assessment. Some may be more about practice activity. See Learning outcomes for details of what is assessed in relation to each goal and Assessment for details of how the outcome is assessed. See Attributes for details of practice provided for each goal.