University of Sydney Handbooks - 2019 Archive

Download full 2019 archive Page archived at: Tue, 05 Nov 2019 02:36:06 +0000

Complex Systems

Master of Complex Systems

Candidates for the degree of Master of Complex Systems are required to complete 96 credit points from the units of study listed in the tables below as follows:
1. 24 credit points of Foundational Core units of study
2. 24 credit points of Complex Systems core units of study
3. 12 credit points of other core units of study
4. 12 credit points of Project units of study
5. a maximum of 24 credit points of Elective units of study
6. If a reduction in the volume of learning of 24 credit points is given, the candidate will be exempted from the 24 credit points of Foundational Core units of study.
Completion of a specialisation is not a requirement of the course. Candidates have the option of completing at most one specialisation. A specialisation requires the completion of 24 credit points chosen from units of study listed for that specialisation. The specialisations available are:
(a) Biosecurity
(b) Engineering
(c) Transport
(d) Research Methods
To qualify for the Graduate Diploma in Complex Systems, candidates must complete 48 credit points comprising:
1. 24 credit points of Foundational Core units of study
2. At least 12 credit points of Complex Systems core units of study, excluding capstone project units
3. A maximum of 12 credit points of Elective units of study

Foundational Core

COMP9001 Introduction to Programming

Credit points: 6 Session: Semester 1,Semester 2 Classes: lectures, laboratories, seminars Assessment: through semester assessment (50%), final exam (50%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit is an essential starting point for software developers, IT consultants, and computer scientists to build their understanding of principle computer operation. Students will obtain knowledge and skills with procedural programming. Crucial concepts include defining data types, control flow, iteration, functions, recursion, the model of addressable memory. Students will be able to reinterpret a general problem into a computer problem, and use their understanding of the computer model to develop source code. This unit trains students with software development process, including skills of testing and debugging. It is a prerequisite for more advanced programming languages, systems programming, computer security and high performance computing.
ENVI5801 Social Science of Environment

Credit points: 6 Teacher/Coordinator: Dr Robert Fisher Session: Semester 1 Classes: One hour lecture and one hour seminar per week plus directed reading. Assessment: Essays and seminar participation (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit provides both a conceptual and an empirical foundation for the analysis of relationships between society, the environment and natural resources. In our recent past the rapid rate of global environmental change has necessitated a breakdown of traditional disciplinary boundaries in research and social scientists are increasingly called upon to work alongside natural scientists in unraveling the complexities of the human-environmental nexus. Students will examine a number of environmental issues and consider a variety of social science academic perspectives about environmental management.
PMGT5886 System Dynamics Modelling for PM

Credit points: 6 Session: Semester 2 Classes: Lectures, Tutorials Assessment: Through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) evening, Online
Students should achieve an understanding of dynamical systems methods applied to complex adaptive systems (CAS). CAS is a new approach to engineering and management that studies and models how relationships between parts give rise to collective and dynamic system-level behaviours, for example, in communication and transport networks, megaprojects, social and eco-systems. Effectively implemented, the methods can dramatically improve a manager's effectiveness in today's complex and interconnected business world, by helping to predict and evaluate indirect effects of actions and policies. This course provides managers with many practical quantitative tools to enhance individual, team, and organisational learning, change, and performance.
STAT5002 Introduction to Statistics

Credit points: 6 Teacher/Coordinator: A/Prof Shelton Peiris Session: Semester 1,Semester 2 Classes: 2x1-hr lectures; 1x1-hr tutorial/wk Assumed knowledge: HSC Mathematics Assessment: 2 hour examination (60%), assignments (20%), quizzes (20%) Mode of delivery: Normal (lecture/lab/tutorial) evening
The aim of the unit is to introduce students to basic statistical concepts and methods for further studies. Particular attention will be paid to the development of methodologies related to statistical data analysis and Data Mining. A number of useful statistical models will be discussed and computer oriented estimation procedures will be developed. Smoothing and nonparametric concepts for the analysis of large data sets will also be discussed. Students will be exposed to the R computing language to handle all relevant computational aspects in the course.
Textbooks
All of Statistics, Larry Wasserman, Springer (2004)

Complex Systems Core

CSYS5010 Introduction to Complex Systems

Credit points: 6 Session: Semester 1,Semester 2 Classes: Lectures, Laboratories Assessment: Through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
Globalisation, rapid technological advances, the development of integrated and distributed systems, cross-disciplinary technical collaboration, and the emergence of "evolved" (as opposed to designed) systems are some of the reasons why many systems have begun to be described as complex systems in recent times. Complex technological, biological, socio-economic and socio-ecological systems (power grids, communication and transport systems, food webs, megaprojects, and interdependent civil infrastructure) are composed of large numbers of diverse interacting parts and exhibit self-organisation and/or emergent behaviour. This unit will introduce the basic concepts of "complex systems theory", and focus on methods for the quantitative analysis and modelling of collective emergent phenomena, using diverse computational approaches such as agent-based modelling and simulation, cellular automata, bio-inspired algorithms, and game theory. Students will gain theoretical knowledge of complex adaptive systems, coupled with practical skills in computational simulation and forecasting using a range of modern toolkits.
CSYS5020 Interdependent Civil Systems

Credit points: 6 Session: Semester 1 Classes: Lectures, Laboratories Assessment: Through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
Our modern day civil infrastructure includes transport networks, telecommunications, power systems, financial infrastructure and emergency services, all of which are growing more and more interconnected. Moreover, the behaviour of the modern infrastructure is not dependent only upon the behaviour of its parts: complex civil systems (such as modern power grids), communication and transport systems, megaprojects, social and eco-systems, generate rich interactions among the individual components with interdependencies across systems. This interdependent behaviour brings about significant new challenges associated with the design and management of complex systems. Cascading power failures, traffic disruptions, epidemic outbreaks, chronic diseases, financial market crashes, and ecosystem collapses are typical manifestations of these challenges, affecting the stability of modern society and civil infrastructure. This unit will develop an understanding of how interdependent systems perform under stress, how to improve resilience and how best to mitigate the effects of various kinds of component failure or human error, by more accurate analysis of interdependent cascades of failures across system boundaries. The studied topics will include dynamical analysis of complex interdependent networks, local and global measures of network structure and evolution, cascading failures, as well as predictive measures of catastrophic failure in complex adaptive systems, and the tools that enable planning for resilient infrastructure. This unit will equip future professionals with sufficient expertise and technical know-how for the design of efficient prevention and intervention policies, and robust crisis forecasting and management. This unit will equip future professionals with sufficient expertise and technical know-how for the design of efficient prevention and intervention policies, and robust crisis forecasting and management.
CSYS5030 Information Theory and Self-Organisation

Credit points: 6 Session: Semester 2 Classes: Lectures, Laboratories Assumed knowledge: Competency in 1st year mathematics, and basic computer programming skills are assumed. Assessment: Through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
"Self-organisation" is the evolution of a system into an organised form in the absence of explicit external influences or centralised control. It brings many attractive properties to systems such as robustness, adaptability and scalability. Self-organising systems can be found practically everywhere: gene regulatory networks self-organise into complex patterns and attractors, self-healing sensor networks reconfigure their topology in response to damage, animal swarms change shape in response to an approaching predator, robotic modules self-organise into coordinated motion patterns, and ecosystems develop spatial structures in response to diminishing resources. The unit will study pattern formation and the common principles behind similar patterns in nature and socio-technical systems, developing a critical understanding of self-organisation, and complex adaptive systems applied to technological, social, organisational and biological systems. It will cover cross-disciplinary concepts and methods based on information theory, nonlinear dynamics, including elements of chaos theory and statistical physics, such as fractals, percolation, entropy, open dissipative systems, phase transitions and critical phenomena.
CSYS5040 Criticality in Dynamical Systems

Credit points: 6 Session: Semester 2 Classes: lectures, tutorials Assumed knowledge: Mathematics at first-year undergraduate level Assessment: through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
Criticality is one of the most important properties of Complex Systems. Criticality occurs in two related but distinct ways: 1. when a system unexpectedly collapses from one state to another, very different, state and 2. when a system is in a state with wild fluctuations and it is highly sensitive to small changes in behaviours. In the first case we call it a 'Tipping Point' and in the second case a 'Continuous Critical Transition'. There are many practical examples of these types of behaviour: Financial markets are often in a continuous critical transition and they can also quickly collapse, diseases that are transferred through a social network can suddenly explode into a pandemic, and a local power outage in an electricity network can cause entire cities to blackout. We will also look at selforganised criticality, where a system evolves to be near one of these 'dangerous' critical points, this is one of the most exciting emergent phenomena in modern applied sciences, engineering and business and we will cover present several real-world applications in this area. This unit will study a range of important examples in which criticality plays a key role and we will show what the underlying causes are for these uncontrolled collapses and wild dynamics. We will use a combination of software examples (Matlab) and mathematical techniques in order to illustrate when and how such interactions might occur and how to simulate their dynamics. It will cover crossdisciplinary concepts and methods based on nonlinear dynamics, including elements of chaos theory and statistical physics, such as fractals and percolation.

Other Core

COMP5048 Visual Analytics

Credit points: 6 Session: Semester 2 Classes: Lectures, Tutorials Assumed knowledge: It is assumed that students will have basic knowledge of data structures, algorithms and programming skills. Assessment: Through semester assessment (60%) and Final Exam (40%) Mode of delivery: Normal (lecture/lab/tutorial) day
Visual Analytics aims to facilitate the data analytics process through Information Visualisation. Information Visualisation aims to make good pictures of abstract information, such as stock prices, family trees, and software design diagrams. Well designed pictures can convey this information rapidly and effectively. The challenge for Visual Analytics is to design and implement effective Visualisation methods that produce pictorial representation of complex data so that data analysts from various fields (bioinformatics, social network, software visualisation and network) can visually inspect complex data and carry out critical decision making. This unit will provide basic HCI concepts, visualisation techniques and fundamental algorithms to achieve good visualisation of abstract information. Further, it will also provide opportunities for academic research and developing new methods for Visual Analytic methods.
COMP5313 Large Scale Networks

Credit points: 6 Session: Semester 1 Classes: Lectures, Tutorials Assumed knowledge: Algorithmic skills (as expected from any IT graduate). Basic probability knowledge. Assessment: Through semester assessment (60%) and Final Exam (40%) Mode of delivery: Normal (lecture/lab/tutorial) day
The growing connected-ness of modern society translates into simplifying global communication and accelerating spread of news, information and epidemics. The focus of this unit is on the key concepts to address the challenges induced by the recent scale shift of complex networks. In particular, the course will present how scalable solutions exploiting graph theory, sociology and probability tackle the problems of communicating (routing, diffusing, aggregating) in dynamic and social networks.

Complex Systems Capstone

CSYS5050 Complex Systems Capstone Project A

Credit points: 6 Session: Semester 1,Semester 2 Classes: Meeting, Workgroup, Project Work Prerequisites: CSYS5010, 48 credit points Assessment: Through semester assessment (100%) Mode of delivery: Supervision
The capstone project aims to provide students with the opportunity to carry out a defined piece of independent workplace related research and assessment in a way that fosters the development of practical research skills relevant to Complex Systems. Students will work individually or in small groups on an assigned project, focussed on modelling a complex problem or delivering a novel solution. The concepts covered depend on the nature of the project. The project could be directly tied to student's area of specialisation (major), or to their vocational objectives or interests. Students with expertise in a specific industry sector may be invited to partner with relevant team projects. The project outcomes will be presented in a report that is clear, coherent and logically structured. The project will be judged on the extent and quality of the student's original work and particularly how critical, perceptive and constructive they have been in assessing their work and that of others, in integrating cross-disciplinary complex systems concepts. Students will also be required to present the results of their findings to their peers and supervisors either face to face or by production of a video or other recorded presentation. The skills acquired will be invaluable to students progressing their careers in major multi-national research and development companies, government and crisis management agencies, and large health, construction and transport organisations. Students are expected to take the initiative when pursuing their capstone projects.
CSYS5051 Complex Systems Capstone Project B

Credit points: 6 Session: Semester 1,Semester 2 Classes: Meeting, Workgroup, Project Work Prerequisites: CSYS5010 Corequisites: CSYS5050. Capstone A is meant to be done before or in parallel with Capstone B Assessment: Through semester assessment (100%) Mode of delivery: Supervision
The capstone project aims to provide students with the opportunity to carry out a defined piece of independent workplace related research and assessment in a way that fosters the development of practical research skills relevant to Complex Systems. Students will work individually or in small groups on an assigned project, focussed on modelling a complex problem or delivering a novel solution. The concepts covered depend on the nature of the project. The project could be directly tied to student's area of specialisation (major), or to their vocational objectives or interests. Students with expertise in a specific industry sector may be invited to partner with relevant team projects. The project outcomes will be presented in a report that is clear, coherent and logically structured. The project will be judged on the extent and quality of the student's original work and particularly how critical, perceptive and constructive they have been in assessing their work and that of others, in integrating cross-disciplinary complex systems concepts. Students will also be required to present the results of their findings to their peers and supervisors either face to face or by production of a video or other recorded presentation. The skills acquired will be invaluable to students progressing their careers in major multi-national research and development companies, government and crisis management agencies, and large health, construction and transport organisations. Students are expected to take the initiative when pursuing their capstone projects.

Electives

CHNG9202 Applied Mathematics for Chemical Engineers

Credit points: 6 Session: Semester 1 Classes: Lectures, Tutorials Prohibitions: CHNG2802 OR CHNG5702 Assumed knowledge: Enrolment in this unit of study assumes that first year undergraduate core maths, science and engineering UoS (or their equivalent) have been successfully completed. Assessment: Through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
Note: School permission required.
Virtually every aspect of a chemical engineer's professional life will involve some use of mathematical techniques. Not only is the modern chemical engineer expected to be proficient in the use of these techniques, they are also expected to be able to utilise computer-based solutions when analytical solutions are unfeasible. This unit of study aims to expose students to an appropriate suite of techniques and enable them to become proficient in the use of mathematics as a tool for the solution of a diversity of chemical engineering problems.
Specifically, this unit consists of two core modules: MODULE A: Applied Statistics for Chemical Engineers and MODULE B: Applied Numerical Methods for Chemical Engineers. These modules aim at furthering knowledge by extending skills in statistical analysis and Chemical Engineering computations. This unit will also enable the development of a systematic approach to solving mathematically oriented Chemical Engineering problems, which will help with making sound engineering decisions.
In addition, there will be considerable time spent during the semester on advanced topics related to mathematical analysis techniques in engineering and recent associated developments.
CISS6004 Health and Security

Credit points: 6 Session: Semester 2 Classes: 1x1.5hr lecture/week, 1x1.5hr seminar/week Assessment: 1x1000wd Issue brief (35%), 1x3000wd Research essay (50%), 1x500wd Self-evaluation (15%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit assesses the political and security significance of disease-related events and developments. Whether one contemplates historical experiences with smallpox, the contemporary challenges posed by diseases such as HIV/AIDS and SARS, or the risks arising from new scientific developments such as synthetic biology, it is clear that diseases exercise a powerful influence over civilised humankind. The unit concentrates on areas in which human health and security concerns intersect most closely, including: biological weapons; fast-moving disease outbreaks of natural origin; safety and security in microbiology laboratories; and the relationships between infectious disease patterns, public health capacity, state functioning and violent conflict. The overall aim of the unit is to provide students with a stronger understanding of the scientific and political nature of these problems, why and how they might threaten security, and the conceptual and empirical connections between them.
COMP5318 Machine Learning and Data Mining

Credit points: 6 Session: Semester 1,Semester 2 Classes: Lectures, Tutorials Assumed knowledge: INFO2110 OR ISYS2110 OR COMP9120 OR COMP5138 Assessment: Through semester assessment (50%) and Final Exam (50%) Mode of delivery: Normal (lecture/lab/tutorial) day
Machine learning is the process of automatically building mathematical models that explain and generalise datasets. It integrates elements of statistics and algorithm development into the same discipline. Data mining is a discipline within knowledge discovery that seeks to facilitate the exploration and analysis of large quantities for data, by automatic and semiautomatic means. This subject provides a practical and technical introduction to machine learning and data mining.
Topics to be covered include problems of discovering patterns in the data, classification, regression, feature extraction and data visualisation. Also covered are analysis, comparison and usage of various types of machine learning techniques and statistical techniques.
CSYS5060 Complex Systems Research Project A

Credit points: 6 Session: Semester 1,Semester 2 Classes: Meeting, Workgroup, Project Work Prerequisites: CSYS5010 Assessment: Through semester assessment (100%) Mode of delivery: Supervision
The research pathway project aims to provide: (a) analytical and computational skills for modelling systems characterised by many interacting heterogeneous variables, (b) adequate programming skills for simulating complex systems. It is aimed at developing a pathway to a research career. The student will work individually on an assigned open-ended research project, focussed on modelling a complex problem or delivering a novel solution. The concepts covered depend on the nature of the project. The project could be directly tied to student's area of specialisation (major), or to their vocational objectives or interests. Students with expertise in a specific industry sector may be invited to partner with relevant team projects. The project outcomes will be presented in a thesis that is clear, coherent and logically structured. The project will be judged on the extent and quality of the student's original work and particularly how innovative, perceptive and constructive they have been in developing and applying cross-disciplinary complex systems concepts. As the result, the student will develop capability for modelling complex systems, from the identification of the relevant variables and interactions to the analysis and simulations of the predictions, having learnt the conceptual and methodological tools (techniques and algorithms) for the analysis and inference of complex models.
CSYS5061 Complex Systems Research Project B

Credit points: 6 Session: Semester 1,Semester 2 Classes: Meeting, Workgroup, Project Work Prerequisites: CSYS5010 Corequisites: CSYS5060. Research Project A is meant to be done before or in parallel with Research Project B Assessment: Through semester assessment (100%) Mode of delivery: Supervision
The research pathway project aims to provide: (a) analytical and computational skills for modelling systems characterised by many interacting heterogeneous variables, (b) adequate programming skills for simulating complex systems. It is aimed at developing a pathway to a research career. The student will work individually on an assigned open-ended research project, focussed on modelling a complex problem or delivering a novel solution. The concepts covered depend on the nature of the project. The project could be directly tied to student's area of specialisation (major), or to their vocational objectives or interests. Students with expertise in a specific industry sector may be invited to partner with relevant team projects. The project outcomes will be presented in a thesis that is clear, coherent and logically structured. The project will be judged on the extent and quality of the student's original work and particularly how innovative, perceptive and constructive they have been in developing and applying cross-disciplinary complex systems concepts. As the result, the student will develop capability for modelling complex systems, from the identification of the relevant variables and interactions to the analysis and simulations of the predictions, having learnt the conceptual and methodological tools (techniques and algorithms) for the analysis and inference of complex models.
DATA5207 Data Analysis in the Social Sciences

Credit points: 6 Session: Intensive December,Semester 1 Classes: lectures, laboratories Assumed knowledge: COMP5310 Assessment: through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
Note: Department permission required for enrolment
Data science is a new, rapidly expanding field. There is an unprecedented demand from technology companies, financial services, government and not-for-profits for graduates who can effectively analyse data. This subject will help students gain a critical understanding of the strengths and weaknesses of quantitative research, and acquire practical skills using different methods and tools to answer relevant social science questions.
This subject will offer a nuanced combination of real-world applications to data science methodology, bringing an awareness of how to solve actual social problems to the Master of Data Science. We cover topics including elections, criminology, economics and the media. You will clean, process, model and make meaningful visualisations using data from these fields, and test hypotheses to draw inferences about the social world.
Techniques covered range from descriptive statistics and linear and logistic regression, the analysis of data from randomised experiments, model selection for prediction and classification tasks, to the analysis of unstructured text as data, multilevel and geospatial modelling, all using the open source program R. In doing this, not only will we build on the skills you have already mastered through this degree, but explore different ways to use them once you graduate.
ELEC5208 Intelligent Electricity Networks

Credit points: 6 Session: Semester 1 Classes: Lectures, Tutorials, Laboratories, Project Work - own time Assumed knowledge: Fundamentals of Electricity Networks, Control Systems and Telecommunications Assessment: Through semester assessment (50%) and Final Exam (50%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit aims to give students an introduction to the planning and operation of modern electricity grids, also known as "smart" grids. Traditional power networks featured a small number of large base-load plants sending power out over transmission lines to be distributed in radial lower voltage networks to loads. In response to the need to reduce carbon impact, future networks will feature diverse generation scattered all over the network including at distribution levels. Also there will be new loads such as electric vehicles and technologies including energy storage and lower voltage power flow control devices. The operation of these new networks will be possible by much greater use of information and communication technology (ICT) and control over the information networks.
The unit will cover recent relevant developments in energy technologies as well as important components of 'smart grids' such as supervisory control and data acquisition (SCADA), substation automation, remote terminal units (RTU), sensors and intelligent electronic devices (IED). Operation of these electricity grids requires a huge amount of data gathering, communication and information processing. The unit will discuss many emerging technologies for such data, information, knowledge and decision processes including communication protocols and network layouts, networking middleware and coordinated control. Information systems and data gathering will be used to assess key performance and security indicators associated with the operation of such grids including stability, reliability and power quality.
ELEC5509 Mobile Networks

Credit points: 6 Session: Semester 1 Classes: Lectures, Tutorials Assumed knowledge: ELEC3505 AND ELEC3506. Basically, students need to know the concepts of data communications and mobile communications, which could be gained in one the following units of study: ELEC3505 Communications, ELEC3506 Data Communications and the Internet, or similar units. If you are not sure, please contact the instructor. Assessment: Through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit of study serves as an introduction to communications network research. The unit relies on a solid understanding of data communications and mobile networks. It introduces some of the currently most debated research topics in mobile networking and presents an overview of different technical solutions. Students are expected to critically evaluate these solutions in their context and produce an objective analysis of the advantages/disadvantages of the different research proposals. The general areas covered are wireless Internet, mobility management, quality of service in mobile and IP networks, ad hoc networks, and cellular network architectures.
The following topics are covered. Introduction to wireless and mobile Internet. Wireless cellular data networks. Cellular mobile networks. Mobile networks of the future. Quality of service in a mobile environment. Traffic modelling for wireless Internet. Traffic management for wireless Internet. Mobility management in mobile networks. Transport protocols for mobile networks. Internet protocols for mobile networks.
ELEC9103 Simulations and Numerical Solutions in Eng

Credit points: 6 Session: Semester 2 Classes: Lectures, Laboratories, Project Work - own time Prohibitions: ELEC5723 OR ELEC2103 OR COSC1001 OR COSC1901 Assumed knowledge: ELEC9703. Understanding of the fundamental concepts and building blocks of electrical and electronics circuits and aspects of professional project management, teamwork, and ethics. Assessment: Through semester assessment (25%) and Final Exam (75%) Mode of delivery: Normal (lecture/lab/tutorial) day
Objectives: How to apply the software package Matlab to achieve engineering solutions; Critical assessment of various computer numerical techniques; Professional project management, teamwork, ethics.
This unit assumes an understanding of the fundamental concepts and building blocks of electrical and electronics circuits. As well as covering the specific topics described in the following paragraphs, it aims to develop skills in professional project management and teamwork and promote an understanding of ethics.
Basic features of Matlab. The Matlab desktop. Interactive use with the command window. Performing arithmetic, using complex numbers and mathematical functions. Writing script and function m-files. Matrix manipulations. Control flow. Two dimensional graphics. Application of Matlab to simple problems from circuit theory, electronics, signals and systems and control. Investigation of the steady state and transient behaviour of LCR circuits.
Matlab based numerical solutions applicable to numerical optimisation, ordinary differential equations, and data fitting. Introduction to symbolic mathematics in Matlab. Applications, including the derivation of network functions for simple problems in circuit analysis. Introduction to the use of Simulink for system modelling and simulation.
ENVI5809 Environmental Simulation Modelling

Credit points: 6 Teacher/Coordinator: Dr Tristan Salles Session: Semester 2a Classes: Six all day sessions Assumed knowledge: This unit assumes a sound understanding of scientific principles, HSC level Mathematics and understanding of basic statistics. Assessment: Project plus report (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit of study introduces participants to the power of simulation modelling in understanding and predicting behaviour of natural systems. It covers fundamental concepts, logic, and techniques (including sensitivity analysis), and develops skills in application to environmental problems such as catchment management and population dynamics.
ENVI5904 Methods in Applied Ecology

Credit points: 6 Teacher/Coordinator: A/Prof Clare McArthur and A/Prof Will Figueira Session: Semester 2 Classes: One 3-hour lecture/tutorial per week; 1-2 full day field trips. Assessment: Tutorials, oral presentations and written reports (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
Applied ecologists and managers need a good understanding of quantitative methods for assessing environmental impacts and the effectiveness of management and conservation strategies particularly where background variation (error) is inherently high. This unit is for those without a quantitative ecology background. It will introduce you to quantitative methods in the context of three ecological topics that are globally relevant: (1) Impact assessment where the perturbation is unreplicated, (2) Food security in marine ecosystems, and (3) Conservation and restoration in terrestrial ecosystems. The main question we address is how do we test whether any management action has been effective? Describing and understanding uncertainty will be explained in the context of precautionary principles. Issues about measuring biodiversity and the spatial and temporal problems of ecological systems will be introduced.
GEOG5001 Geographic Information Science A

Credit points: 6 Teacher/Coordinator: Dr Kevin Davies Session: Semester 1 Classes: Six lectures plus six workshops. Assumed knowledge: This unit assumes a sound understanding of scientific principles, HSC level mathematics and understanding of basic statistics. Assessment: Quiz and Assignments (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit of study gives an overview of basic spatial data models, and enables students to understand the use of data from a variety of sources within a geographical information system (GIS). The analysis of spatial data, and its manipulation to address questions appropriate to planning or locational applications, will be addressed, as will the development of thematic maps from diverse data layers.
GEOG5004 Environmental Mapping and Monitoring

Credit points: 6 Teacher/Coordinator: Dr Bree Morgan Session: Semester 2 Classes: 3 hours of lectures and two 6 hour practicals per semester. Assumed knowledge: This unit assumes a sound understanding of scientific principles, HSC level mathematics and understanding of basic statistics. Assessment: Assignments (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit introduces methods for mapping environmental signatures in coastal and marine systems, using both biogeochemical analysis and GIS technologies. Students will learn, theoretically and practically, how environmental data is collected using a range of different methodologies (field and computer based), and application of this data to understanding landscape processes and quantifying environmental change. Students will acquire skills in applying environmental mapping techniques to interpreting key Earth surface processes and understanding the substantial impacts that humans can have on these, in terms of both contamination and remediation.
HTIN5003 Health Technology Evaluation

Credit points: 6 Session: Semester 2b Classes: Workshops Assessment: Through semester assessment (100%) Mode of delivery: Block mode
Many issues have been identified that are of potential relevance for planning, implementation and execution of an evaluation study in the health and technology innovations. This unit aims to address issues covering all phases of an evaluation study: Preliminary outline, study design, operationalization of methods, planning, execution and completion of the evaluation study. Students completing this unit will have better insights leading to a higher quality of evaluation studies for health technology solutions.
This unit is an important component towards building stronger evidence and thus to progress towards evidence-based health solutions and technology innovations.
Graduates of this unit of study will have a strong interdisciplinary knowledge base, covering diverse areas such as health, economics, health technologies, health informatics, social science and information systems.
Topics areas covered: 1. Economic Aspects of Health Technology Evaluation; 2. The Development of Health Technologies and Health Informatics Evaluation; 3. The Role of Evaluation in the Use and Diffusion of Health Technology.
HTIN5004 Integrated Approaches to Chronic Disease

Credit points: 6 Session: Semester 1 Classes: Lectures, Tutorials Assessment: Through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit of study aims to introduce the student to the strategy of the Charles Perkins Centre to ease the burden of obesity, diabetes and cardiovascular disease. While other approaches would focus on these diseases as purely medical conditions this unit will challenge the student to focus on an interdisciplinary approach, bringing together medicine, biological science, psychology, economics, law, agriculture and other disciplines to understand how real world solutions for these diseases might be developed. Students will be exposed to the world-renowned researchers based in the Charles Perkins Centre and will gain insight into the research strategy of the Centre. Students will also have the opportunity to develop a new interdisciplinary project node for the Centre in collaboration with one of our research leaders.
INFO5060 Data Analytics and Business Intelligence

Credit points: 6 Session: Summer Main Classes: Lectures, Tutorials, Laboratories, Presentation, Project Work - own time Assumed knowledge: The unit is expected to be taken after introductory courses or related units such as COMP5206 Information Technologies and Systems Assessment: Through semester assessment (65%) and Final Exam (35%) Mode of delivery: Block mode
The frontier for using data to make decisions has shifted dramatically. High performing enterprises are now building their competitive strategies around data-driven insights that in turn generate impressive business results. This course provides an overview of Business Intelligence (BI) concepts, technologies and practices, and then focuses on the application of BI through a team based project simulation that will allow students to have practical experience in building a BI solution based on a real world case study.
ITLS5000 Foundations of Supply Chain Management

Credit points: 6 Session: Semester 1,Semester 2 Classes: 13 x 1.5 hr lectures, 12 x 1.5 hour tutorials Prohibitions: TPTM6155 or TPTM5001 Assessment: Individual report (20%); group report (20%); group presentation (20%); final exam (40%) Mode of delivery: Normal (lecture/lab/tutorial) evening
Logistics and supply chain management functions can account for as much as half of the total costs of running a business. The success of a firm's logistic and supply chain management not only impacts on the profitability of a firm but also has a significant and growing impact on customer experience and satisfaction. Logistics and supply chain management plays a major role in implementing organisational strategy and in many industries has sole responsibility for managing customer service. An understanding of the role of this activity within an organisation and how improving logistics and supply chains can assist business managers to better respond to market opportunities is essential for business students. Students undertaking this unit are given a solid grounding in the language, concepts, techniques and principles that underlie the field of logistics and supply chain management, and how knowledge of these concepts contributes towards a strategically effective and operationally efficient organisation or network of organisations.
ITLS5100 Transport and Infrastructure Foundations

Credit points: 6 Session: Semester 1,Semester 2 Classes: 12 x 3hr lectures, 1 x 2hr field trip Prohibitions: TPTM6241 Assessment: report 1 (20%), report 2 (20%), presentation (20%), final exam (40%) Mode of delivery: Normal (lecture/lab/tutorial) evening
Note: This is the foundation unit for all transport and infrastructure management programs and should be completed in the first period of study.
Transport and infrastructure plays an important role both in terms of personal mobility as well as accessibility of businesses and their transportation needs. This unit provides a comprehensive introduction to the role of transportation and infrastructure within the economy. The key concepts and theories needed for management of transport and infrastructure are introduced along with the analysis and problem solving skills needed for confident decision making. In providing the foundational knowledge for students in transport and infrastructure, the unit also introduces students to the professional communication skills needed. Examples and case studies are drawn from all modes of transport and infrastructure.
ITLS5200 Quantitative Logistics and Transport

Credit points: 6 Session: Semester 1,Semester 2 Classes: 1 x 3hr computer workshop per week Corequisites: ITLS5000 or TPTM5001 or ITLS5100 or TPTM6241 Prohibitions: TPTM6495 Assessment: computer exam (30%); team report (30%); final exam (40%) Mode of delivery: Normal (lecture/lab/tutorial) day, Normal (lecture/lab/tutorial) evening
Supply chain management as well as logistics, transport and infrastructure management relies on the ability to make effective decisions based on the information provided by careful analysis of data. Students undertaking this unit will develop a strong understanding of the basic techniques underpinning quantitative analysis and will develop highly marketable skills in spreadsheet modelling and the communication and presentation of data to support management decision making. This unit emphasises the practical aspects of quantitative analysis with computer based workshops. Students are guided through the basic theories used in decision making but emphasis is placed on how the theories are applied in practice, drawing on real world experience in quantitative analysis. The unit covers demand forecasting, spreadsheet modelling, optimisation of production and transportation using linear programming, simulation and basic statistics and linear regression techniques.
ITLS6002 Supply Chain Planning and Design

Credit points: 6 Session: Semester 1,Semester 2 Classes: 6 x 3.5 hr lectures, 6 x 3.5 hr computer labs. Prerequisites: ITLS5200 or TPTM6495 or STAT5002 Corequisites: ITLS5000 or TPTM5001 or TPTM6155 Prohibitions: TPTM6190 Assessment: 2x computer exams (40%), assignments (40%), final exam (20%) Mode of delivery: Normal (lecture/lab/tutorial) evening
Successful supply chain management relies upon informed decision making. This unit explores a range of important decisions, and equips students with a toolkit of models and analytical methods that can assist in making informed decisions. The first set of decisions concern supply chain design and strategy, and includes network design and facility location. These decisions provide structure to the supply chain, set the boundaries within which planning decisions will be made, and impact on supply chain performance over the long term. In contrast, planning decisions provide value over the medium and short term. Here, this unit will cover aggregate planning, sales and operations planning, and inventory control. Special attention will be placed on how to handle uncertainty and risk within the supply chain.
ITLS6007 Disaster Relief Operations

Credit points: 6 Session: Intensive July Classes: 6 x 3.5 hr lectures, 6 x 3.5 hr workshops. Prohibitions: TPTM6390 Assessment: Individual essay (25%), presentation (25%), final exam (50%) Mode of delivery: Block mode
Large scale, sudden onset disasters strike with little or no warning. In their wake they leave shattered infrastructure, collapsed services and traumatised populations, while the number of dead, injured and homeless often reaches staggering proportions. Humanitarian aid organisations, such as the Red Cross, Doctors without Borders or Oxfam, to name just a few, are usually amongst the first responders, but depend on extremely agile supply chains to support their worldwide operations. Successful disaster relief missions are characterised by the ability of professionals to cope with time pressure, high uncertainty and unusual restrictions. This unit is designed as an introduction to the coordination and management of humanitarian aid and emergency response logistics. Case studies of real events, such as the 2004 Boxing Day tsunami and the 2010 Haiti earthquake provide the framework for analysis and research, while discussion of operational factors, simulations, workshops and group exercises offer students an interactive learning environment.
ITLS6102 Strategic Transport Planning

Credit points: 6 Session: Semester 2 Classes: 6 x 3 hr lectures, 6 x 3 hr computer labs Corequisites: ITLS5200 or TPTM6495 Prohibitions: TPTM6350 Assessment: quiz 1 (20%), quiz 2 (20%), travel demand modelling (30%), case study (30%) Mode of delivery: Block mode
This unit provides a basic understanding of the main principles underlying strategic transport models for forecasting, and the knowledge to critically assess forecasts of transport strategies made by transport planners. Students acquire knowledge of strategic forecasting models used by government and consultants as well as the methods to capture travel behaviour such as mode choice and route choice. Simple mathematical models are discussed in detail, along with numerical examples and applications in the Sydney Metropolitan Area, which are used to illustrate the principles of the methods. This unit equips students to build simple transport models in the computer lab using specialised transport planning software used by governments and consultants.
ITLS6107 Applied GIS and Spatial Data Analytics

Credit points: 6 Session: Semester 2 Classes: 7 x 2 hr lectures, 7 x 4 hr computer labs Prohibitions: TPTM6180 Assessment: individual projects (40%); group project (20%); group presentation (10%); final exam (30%) Mode of delivery: Normal (lecture/lab/tutorial) evening
Note: This unit assumes no prior knowledge of GIS; the unit is hands-on involving the use of software, which students will be trained in using.
The world is increasingly filled with systems, devices and sensors collecting large amounts of data on a continual basis. Most of these data are associated with locations that represent everything from the movement of individuals travelling between activities to the flow of goods or transactions along a supply chain and from the location of companies to those of their current and future customers. Taking this spatial context into account transforms analyses, problem solving and provides a powerful method of visualising the world. This is the essence of Geographic Information Systems (GIS) and this unit. This unit starts by introducing students to the 'building blocks' of GIS systems, including data structures, relational databases, spatial queries and analysis. The focus then moves on to sources of spatial data including Global Positioning System (GPS), operational systems such as smartcard ticketing and transaction data along with web-based sources highlighting both the potential and challenges associated with integrating each data source within a GIS environment. The unit is hands-on involving learning how to use the latest GIS software to analyse several problems of interest using real 'big data' sources and to communicate the results in a powerful and effective way. These include identifying potential demand for new services or infrastructure, creating a delivery and scheduling plan for a delivery firm or examining the behaviour of travellers or consumers over time and locations. This unit is aimed at students interested in the spatial impact of decision-making and on the potential for using large spatial datasets for in-depth multi-faceted analytics.
PHYS5031 Ecological Econ and Sustainable Analysis

Credit points: 6 Teacher/Coordinator: Dr Arunima Malik Session: Semester 1 Classes: 1.5-hour lecture interspersed with hands-on exercises per week, and 1 hour seminar per week. Assessment: Essay, presentation and critical writing task (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit of study introduces contemporary topics from Ecological Economics and Sustainability Analysis, such as metrics for measuring sustainability; planetary boundaries and other natural limits; comparisons between ecological and environmental economics; valuing the environment; intergenerational discounting; global inequality with a focus on the climate change debate; and links between theories of well-being, human behaviour, consumerism and environmental impact. This unit includes guest lecturers from industry and research and an excursion. The lectures for this unit include interactive activities and group-exercises on a range of concepts related to Ecological Economics. The unit sets the scene for the more detailed and specific units PHYS5032, PHYS5033, and PHYS5034.
PHYS5032 Techniques for Sustainability Analysis

Credit points: 6 Teacher/Coordinator: Dr Arne Geschke and Prof Manfred Lenzen Session: Semester 1,Semester 2 Classes: 2.5-hour lecture including tutorial per week Assessment: Two assignments based on weekly homework sheets (80%), quizzes (20%) Mode of delivery: Normal (lecture/lab/tutorial) day
Note: Minimum class size of 5 students.
This unit of study offers a practical introduction to quantitative analysis techniques including multiple regression, uncertainty analysis, integration, structural decomposition, and dynamic systems modelling, with a strong emphasis on demonstrating their usefulness for environmental problem-solving. This unit will show students how mathematics can be brought to life when utilised in powerful applications to deal with environmental and sustainability issues. Throughout the unit of study, example applications will be explained, including climate modelling, ecosystem trophic chain analysis, linking household consumption and environmental impact, identifying socio-demographic drivers of environmental change, and the uncovering the effect of land use patterns on threats to species.
PMGT5875 Project Innovation Management

Credit points: 6 Session: Semester 1 Classes: Lectures, Tutorials, E-Learning Assessment: Through semester assessment (100%) Mode of delivery: Block mode, Online
Innovation is widely-recognised as a major driver of economic growth. Yet innovation projects can be difficult to manage: they typically involve a high level of uncertainty, and many organisations are unsatisfied with the level of innovation they achieve. In this unit of study, we focus on issues in the management of innovation projects at the individual project level, organisational level and across networks of organisations. Since a systematic approach can and does improve our effectiveness in managing innovation, we begin by exploring several different process models of the stages through which innovation projects are managed. We discuss context and challenges which impact such projects, as well as the concepts of creativity and intellectual property management. Using focused case studies, we analyse best practice in the structures and processes that organisations can provide to enable innovation, as well as to support the search, selection, implementation, dissemination, feedback and evaluation stages of their innovative projects. We also examine the impact of networks on innovation (e.g. collaboration networks), national innovation policies and systems, and trends towards open innovation.
PMGT5897 Disaster Project Management

Credit points: 6 Session: Intensive July Classes: Lectures, Tutorials Assessment: Through semester assessment (100%) Mode of delivery: Block mode
This unit identifies the causes of some well-known disasters (natural, man-made and projects) and reveals what can be learned by being able to think critically and analyse the issues. The aim of this unit is to outline traditional and contemporary theories in emergency response planning; to provide an overall scope of comprehensive emergency planning and the major elements that must be addressed in an Emergency Response Plan. Student outcomes from this unit include: Developing and implementing an Emergency Response Plan; Specific recommendations for the health and safety of emergency response personnel and provides concise information on learning objectives and a review of important concepts.
PUBH5010 Epidemiology Methods and Uses

Credit points: 6 Teacher/Coordinator: Dr Erin Mathieu, Professor Tim Driscoll Session: Semester 1 Classes: 1x 1hr lecture and 1x 2hr tutorial per week for 13 weeks - face to face or their equivalent online Prohibitions: BSTA5011 or CEPI5100 Assessment: 1x 6 page assignment (25%), 10 weekly quizzes (5% in total) and 1x 2.5hr supervised open-book exam (70%). For distance students, it may be possible to complete the exam externally with the approval of the course coordinator. Mode of delivery: Normal (lecture/lab/tutorial) day, Normal (lecture/lab/tutorial) evening, Online
This unit provides students with core skills in epidemiology, particularly the ability to critically appraise public health and clinical epidemiological research literature regarding public health and clinical issue. This unit covers: study types; measures of frequency and association; measurement bias; confounding/effect modification; randomized trials; systematic reviews; screening and test evaluation; infectious disease outbreaks; measuring public health impact and use and interpretation of population health data. In addition to formal classes or their on-line equivalent,it is expected that students spend an additional 2-3 hours at least each week preparing for their tutorials.
Textbooks
Webb, PW. Bain, CJ. and Pirozzo, SL. Essential Epidemiology: An Introduction for Students and Health Professionals Second Edition: Cambridge University Press 2017.
PUBH5117 Communicable Disease Control

This unit of study is not available in 2019

Credit points: 6 Teacher/Coordinator: Dr Grant Hill-Cawthorne Session: Semester 2 Classes: 1 x 2hr online lecture and 2hrs online group discussion per week for 12 weeks Assessment: online discussion and other online activities (20%), online quizzes (10%), and 2 x 2000 word written assignments (70%) Mode of delivery: Online
This fully online unit aims to provide students with an understanding of the burden of communicable diseases of public health significance in Australia, as well as the biology, epidemiology and surveillance for and control of those communicable diseases. By the end of this unit, the student will have the theoretical background to take up a position as a member of a Communicable Diseases section of a Commonwealth or State Health Department or Public Health Unit. It is expected that the students undertake an extra hour per week of reading, research and preparation for discussion.
Textbooks
Recommended: Heymann. David L. (2014): Control of communicable diseases manual. American Public Health Association. Other readings provided on the course eLearning site.
QBUS5001 Quantitative Methods for Business

Credit points: 6 Session: Semester 1,Semester 2 Classes: 1x 3hr lecture and 1x 1hr tutorial per week Prohibitions: ECMT5001 or QBUS5002 Assumed knowledge: Basic calculus; basic concepts of probability & statistics Assessment: weekly homework (10%), assignment (20%), mid-semester exam (30%), final exam (40%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit highlights the importance of statistical methods and tools for today's managers and analysts, and demonstrates how to apply these methods to business problems using real-world data. The quantitative skills that students learn in this unit are useful in all areas of business. Through taking this unit students learn how to model and analyse the relationships within business data; how to identify the appropriate statistical technique in different business environments; how to compute statistics by hand and using special purpose software; how to interpret results in the context of the business problem; and how to forecast using business data. The unit is taught through data-driven examples, exercises and business case studies.
QBUS6810 Statistical Learning and Data Mining

Credit points: 6 Session: Semester 1,Semester 2 Classes: 1x 2hr lecture and 1x 1hr tutorial per week Prerequisites: ECMT5001 or QBUS5001 Assessment: group project (30%); online quizzes (20%); final exam (50%) Mode of delivery: Normal (lecture/lab/tutorial) day
It is now common for businesses to have access to very rich information data sets, often generated automatically as a by-product of the main institutional activity of a firm or business unit. Data Mining deals with inferring and validating patterns, structures and relationships in data, as a tool to support decisions in the business environment. This unit offers an insight into the main statistical methodologies for the visualization and the analysis of business and market data. It provides the tools necessary to extract information required for specific tasks such as credit scoring, prediction and classification, market segmentation and product positioning. Emphasis is given to business applications of data mining using modern software tools.
QBUS6840 Predictive Analytics

Credit points: 6 Session: Semester 1,Semester 2 Classes: 1 x 2hr lecture and 1 x 1hr tutorial Prerequisites: QBUS5001 or ECMT5001 Assessment: group assignment (30%), homework (15%), mid-semester exam (20%), final exam (35%) Mode of delivery: Normal (lecture/lab/tutorial) day
To be effective in a competitive business environment, a business analyst needs to be able to use predictive analytics to translate information into decisions and to convert information about past performance into reliable forecasts. An effective analyst also should be able to identify the analytical tools and data structures to anticipate market trends. In this unit, students gain skills required to succeed in today's highly analytical and data-driven economy. The unit introduces the basics of data management, business forecasting, decision trees, logistic regression, and predictive modelling. The unit features corporate case studies and hands-on exercises to demonstrate the concepts presented.
SUST5004 Sustainable Development and Population Health

Credit points: 6 Teacher/Coordinator: Professor Tim Gill Session: Semester 2 Classes: Alternate full-day workshops and online tutorials on Thursdays in August, September and October. Corequisites: SUST5001 Assessment: Essays, group project and short written assignments (100%). Mode of delivery: Normal (lecture/lab/tutorial) day
Note: This unit of study involves essay-writing. Academic writing skills equivalent to HSC Advanced English or significant consultation via the Writing Hub is assumed.
This unit introduces students to the extremely close nexus between human health, demographic change and environmental sustainability issues. This relationship is examined within the context of the three pillars of sustainable development with a focus on achieving equitable outcomes. This unit explores the extent to which environmental changes influence population demographics and health, and the extent to which demographic and secular changes impact on the physical environment. The influence of migration, conflict, food insecurity, droughts, flooding, heat stress, emerging and re-emerging infections and chronic health problems on poverty, ageing and dependency, physical, mental and social health and economic sustainability will be analysed alongside the elements needed to preserve the diversity and functioning of the ecosystem for future human survival. International models and policies for mitigating and/or adapting to the negative consequences of globalisation, urbanisation, overconsumption, and resource depletion will be analysed for their potential benefits and harms to sustainable population growth, optimal health and equitable distribution of essential resources.

Master of Complex Systems Specialisations

Completion of a specialisation is not a requirement of the course. To be eligible for a specialisation, a candidate must complete 24 credit points chosen from that specialisation.

Biosecurity

CISS6004 Health and Security

Credit points: 6 Session: Semester 2 Classes: 1x1.5hr lecture/week, 1x1.5hr seminar/week Assessment: 1x1000wd Issue brief (35%), 1x3000wd Research essay (50%), 1x500wd Self-evaluation (15%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit assesses the political and security significance of disease-related events and developments. Whether one contemplates historical experiences with smallpox, the contemporary challenges posed by diseases such as HIV/AIDS and SARS, or the risks arising from new scientific developments such as synthetic biology, it is clear that diseases exercise a powerful influence over civilised humankind. The unit concentrates on areas in which human health and security concerns intersect most closely, including: biological weapons; fast-moving disease outbreaks of natural origin; safety and security in microbiology laboratories; and the relationships between infectious disease patterns, public health capacity, state functioning and violent conflict. The overall aim of the unit is to provide students with a stronger understanding of the scientific and political nature of these problems, why and how they might threaten security, and the conceptual and empirical connections between them.
DATA5207 Data Analysis in the Social Sciences

Credit points: 6 Session: Intensive December,Semester 1 Classes: lectures, laboratories Assumed knowledge: COMP5310 Assessment: through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
Note: Department permission required for enrolment
Data science is a new, rapidly expanding field. There is an unprecedented demand from technology companies, financial services, government and not-for-profits for graduates who can effectively analyse data. This subject will help students gain a critical understanding of the strengths and weaknesses of quantitative research, and acquire practical skills using different methods and tools to answer relevant social science questions.
This subject will offer a nuanced combination of real-world applications to data science methodology, bringing an awareness of how to solve actual social problems to the Master of Data Science. We cover topics including elections, criminology, economics and the media. You will clean, process, model and make meaningful visualisations using data from these fields, and test hypotheses to draw inferences about the social world.
Techniques covered range from descriptive statistics and linear and logistic regression, the analysis of data from randomised experiments, model selection for prediction and classification tasks, to the analysis of unstructured text as data, multilevel and geospatial modelling, all using the open source program R. In doing this, not only will we build on the skills you have already mastered through this degree, but explore different ways to use them once you graduate.
ENVI5809 Environmental Simulation Modelling

Credit points: 6 Teacher/Coordinator: Dr Tristan Salles Session: Semester 2a Classes: Six all day sessions Assumed knowledge: This unit assumes a sound understanding of scientific principles, HSC level Mathematics and understanding of basic statistics. Assessment: Project plus report (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit of study introduces participants to the power of simulation modelling in understanding and predicting behaviour of natural systems. It covers fundamental concepts, logic, and techniques (including sensitivity analysis), and develops skills in application to environmental problems such as catchment management and population dynamics.
ENVI5904 Methods in Applied Ecology

Credit points: 6 Teacher/Coordinator: A/Prof Clare McArthur and A/Prof Will Figueira Session: Semester 2 Classes: One 3-hour lecture/tutorial per week; 1-2 full day field trips. Assessment: Tutorials, oral presentations and written reports (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
Applied ecologists and managers need a good understanding of quantitative methods for assessing environmental impacts and the effectiveness of management and conservation strategies particularly where background variation (error) is inherently high. This unit is for those without a quantitative ecology background. It will introduce you to quantitative methods in the context of three ecological topics that are globally relevant: (1) Impact assessment where the perturbation is unreplicated, (2) Food security in marine ecosystems, and (3) Conservation and restoration in terrestrial ecosystems. The main question we address is how do we test whether any management action has been effective? Describing and understanding uncertainty will be explained in the context of precautionary principles. Issues about measuring biodiversity and the spatial and temporal problems of ecological systems will be introduced.
GEOG5001 Geographic Information Science A

Credit points: 6 Teacher/Coordinator: Dr Kevin Davies Session: Semester 1 Classes: Six lectures plus six workshops. Assumed knowledge: This unit assumes a sound understanding of scientific principles, HSC level mathematics and understanding of basic statistics. Assessment: Quiz and Assignments (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit of study gives an overview of basic spatial data models, and enables students to understand the use of data from a variety of sources within a geographical information system (GIS). The analysis of spatial data, and its manipulation to address questions appropriate to planning or locational applications, will be addressed, as will the development of thematic maps from diverse data layers.
GEOG5004 Environmental Mapping and Monitoring

Credit points: 6 Teacher/Coordinator: Dr Bree Morgan Session: Semester 2 Classes: 3 hours of lectures and two 6 hour practicals per semester. Assumed knowledge: This unit assumes a sound understanding of scientific principles, HSC level mathematics and understanding of basic statistics. Assessment: Assignments (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit introduces methods for mapping environmental signatures in coastal and marine systems, using both biogeochemical analysis and GIS technologies. Students will learn, theoretically and practically, how environmental data is collected using a range of different methodologies (field and computer based), and application of this data to understanding landscape processes and quantifying environmental change. Students will acquire skills in applying environmental mapping techniques to interpreting key Earth surface processes and understanding the substantial impacts that humans can have on these, in terms of both contamination and remediation.
HTIN5003 Health Technology Evaluation

Credit points: 6 Session: Semester 2b Classes: Workshops Assessment: Through semester assessment (100%) Mode of delivery: Block mode
Many issues have been identified that are of potential relevance for planning, implementation and execution of an evaluation study in the health and technology innovations. This unit aims to address issues covering all phases of an evaluation study: Preliminary outline, study design, operationalization of methods, planning, execution and completion of the evaluation study. Students completing this unit will have better insights leading to a higher quality of evaluation studies for health technology solutions.
This unit is an important component towards building stronger evidence and thus to progress towards evidence-based health solutions and technology innovations.
Graduates of this unit of study will have a strong interdisciplinary knowledge base, covering diverse areas such as health, economics, health technologies, health informatics, social science and information systems.
Topics areas covered: 1. Economic Aspects of Health Technology Evaluation; 2. The Development of Health Technologies and Health Informatics Evaluation; 3. The Role of Evaluation in the Use and Diffusion of Health Technology.
HTIN5004 Integrated Approaches to Chronic Disease

Credit points: 6 Session: Semester 1 Classes: Lectures, Tutorials Assessment: Through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit of study aims to introduce the student to the strategy of the Charles Perkins Centre to ease the burden of obesity, diabetes and cardiovascular disease. While other approaches would focus on these diseases as purely medical conditions this unit will challenge the student to focus on an interdisciplinary approach, bringing together medicine, biological science, psychology, economics, law, agriculture and other disciplines to understand how real world solutions for these diseases might be developed. Students will be exposed to the world-renowned researchers based in the Charles Perkins Centre and will gain insight into the research strategy of the Centre. Students will also have the opportunity to develop a new interdisciplinary project node for the Centre in collaboration with one of our research leaders.
PHYS5031 Ecological Econ and Sustainable Analysis

Credit points: 6 Teacher/Coordinator: Dr Arunima Malik Session: Semester 1 Classes: 1.5-hour lecture interspersed with hands-on exercises per week, and 1 hour seminar per week. Assessment: Essay, presentation and critical writing task (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit of study introduces contemporary topics from Ecological Economics and Sustainability Analysis, such as metrics for measuring sustainability; planetary boundaries and other natural limits; comparisons between ecological and environmental economics; valuing the environment; intergenerational discounting; global inequality with a focus on the climate change debate; and links between theories of well-being, human behaviour, consumerism and environmental impact. This unit includes guest lecturers from industry and research and an excursion. The lectures for this unit include interactive activities and group-exercises on a range of concepts related to Ecological Economics. The unit sets the scene for the more detailed and specific units PHYS5032, PHYS5033, and PHYS5034.
PHYS5032 Techniques for Sustainability Analysis

Credit points: 6 Teacher/Coordinator: Dr Arne Geschke and Prof Manfred Lenzen Session: Semester 1,Semester 2 Classes: 2.5-hour lecture including tutorial per week Assessment: Two assignments based on weekly homework sheets (80%), quizzes (20%) Mode of delivery: Normal (lecture/lab/tutorial) day
Note: Minimum class size of 5 students.
This unit of study offers a practical introduction to quantitative analysis techniques including multiple regression, uncertainty analysis, integration, structural decomposition, and dynamic systems modelling, with a strong emphasis on demonstrating their usefulness for environmental problem-solving. This unit will show students how mathematics can be brought to life when utilised in powerful applications to deal with environmental and sustainability issues. Throughout the unit of study, example applications will be explained, including climate modelling, ecosystem trophic chain analysis, linking household consumption and environmental impact, identifying socio-demographic drivers of environmental change, and the uncovering the effect of land use patterns on threats to species.
PUBH5010 Epidemiology Methods and Uses

Credit points: 6 Teacher/Coordinator: Dr Erin Mathieu, Professor Tim Driscoll Session: Semester 1 Classes: 1x 1hr lecture and 1x 2hr tutorial per week for 13 weeks - face to face or their equivalent online Prohibitions: BSTA5011 or CEPI5100 Assessment: 1x 6 page assignment (25%), 10 weekly quizzes (5% in total) and 1x 2.5hr supervised open-book exam (70%). For distance students, it may be possible to complete the exam externally with the approval of the course coordinator. Mode of delivery: Normal (lecture/lab/tutorial) day, Normal (lecture/lab/tutorial) evening, Online
This unit provides students with core skills in epidemiology, particularly the ability to critically appraise public health and clinical epidemiological research literature regarding public health and clinical issue. This unit covers: study types; measures of frequency and association; measurement bias; confounding/effect modification; randomized trials; systematic reviews; screening and test evaluation; infectious disease outbreaks; measuring public health impact and use and interpretation of population health data. In addition to formal classes or their on-line equivalent,it is expected that students spend an additional 2-3 hours at least each week preparing for their tutorials.
Textbooks
Webb, PW. Bain, CJ. and Pirozzo, SL. Essential Epidemiology: An Introduction for Students and Health Professionals Second Edition: Cambridge University Press 2017.
PUBH5117 Communicable Disease Control

This unit of study is not available in 2019

Credit points: 6 Teacher/Coordinator: Dr Grant Hill-Cawthorne Session: Semester 2 Classes: 1 x 2hr online lecture and 2hrs online group discussion per week for 12 weeks Assessment: online discussion and other online activities (20%), online quizzes (10%), and 2 x 2000 word written assignments (70%) Mode of delivery: Online
This fully online unit aims to provide students with an understanding of the burden of communicable diseases of public health significance in Australia, as well as the biology, epidemiology and surveillance for and control of those communicable diseases. By the end of this unit, the student will have the theoretical background to take up a position as a member of a Communicable Diseases section of a Commonwealth or State Health Department or Public Health Unit. It is expected that the students undertake an extra hour per week of reading, research and preparation for discussion.
Textbooks
Recommended: Heymann. David L. (2014): Control of communicable diseases manual. American Public Health Association. Other readings provided on the course eLearning site.
SUST5004 Sustainable Development and Population Health

Credit points: 6 Teacher/Coordinator: Professor Tim Gill Session: Semester 2 Classes: Alternate full-day workshops and online tutorials on Thursdays in August, September and October. Corequisites: SUST5001 Assessment: Essays, group project and short written assignments (100%). Mode of delivery: Normal (lecture/lab/tutorial) day
Note: This unit of study involves essay-writing. Academic writing skills equivalent to HSC Advanced English or significant consultation via the Writing Hub is assumed.
This unit introduces students to the extremely close nexus between human health, demographic change and environmental sustainability issues. This relationship is examined within the context of the three pillars of sustainable development with a focus on achieving equitable outcomes. This unit explores the extent to which environmental changes influence population demographics and health, and the extent to which demographic and secular changes impact on the physical environment. The influence of migration, conflict, food insecurity, droughts, flooding, heat stress, emerging and re-emerging infections and chronic health problems on poverty, ageing and dependency, physical, mental and social health and economic sustainability will be analysed alongside the elements needed to preserve the diversity and functioning of the ecosystem for future human survival. International models and policies for mitigating and/or adapting to the negative consequences of globalisation, urbanisation, overconsumption, and resource depletion will be analysed for their potential benefits and harms to sustainable population growth, optimal health and equitable distribution of essential resources.

Engineering

CHNG9202 Applied Mathematics for Chemical Engineers

Credit points: 6 Session: Semester 1 Classes: Lectures, Tutorials Prohibitions: CHNG2802 OR CHNG5702 Assumed knowledge: Enrolment in this unit of study assumes that first year undergraduate core maths, science and engineering UoS (or their equivalent) have been successfully completed. Assessment: Through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
Note: School permission required.
Virtually every aspect of a chemical engineer's professional life will involve some use of mathematical techniques. Not only is the modern chemical engineer expected to be proficient in the use of these techniques, they are also expected to be able to utilise computer-based solutions when analytical solutions are unfeasible. This unit of study aims to expose students to an appropriate suite of techniques and enable them to become proficient in the use of mathematics as a tool for the solution of a diversity of chemical engineering problems.
Specifically, this unit consists of two core modules: MODULE A: Applied Statistics for Chemical Engineers and MODULE B: Applied Numerical Methods for Chemical Engineers. These modules aim at furthering knowledge by extending skills in statistical analysis and Chemical Engineering computations. This unit will also enable the development of a systematic approach to solving mathematically oriented Chemical Engineering problems, which will help with making sound engineering decisions.
In addition, there will be considerable time spent during the semester on advanced topics related to mathematical analysis techniques in engineering and recent associated developments.
COMP5318 Machine Learning and Data Mining

Credit points: 6 Session: Semester 1,Semester 2 Classes: Lectures, Tutorials Assumed knowledge: INFO2110 OR ISYS2110 OR COMP9120 OR COMP5138 Assessment: Through semester assessment (50%) and Final Exam (50%) Mode of delivery: Normal (lecture/lab/tutorial) day
Machine learning is the process of automatically building mathematical models that explain and generalise datasets. It integrates elements of statistics and algorithm development into the same discipline. Data mining is a discipline within knowledge discovery that seeks to facilitate the exploration and analysis of large quantities for data, by automatic and semiautomatic means. This subject provides a practical and technical introduction to machine learning and data mining.
Topics to be covered include problems of discovering patterns in the data, classification, regression, feature extraction and data visualisation. Also covered are analysis, comparison and usage of various types of machine learning techniques and statistical techniques.
DATA5207 Data Analysis in the Social Sciences

Credit points: 6 Session: Intensive December,Semester 1 Classes: lectures, laboratories Assumed knowledge: COMP5310 Assessment: through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
Note: Department permission required for enrolment
Data science is a new, rapidly expanding field. There is an unprecedented demand from technology companies, financial services, government and not-for-profits for graduates who can effectively analyse data. This subject will help students gain a critical understanding of the strengths and weaknesses of quantitative research, and acquire practical skills using different methods and tools to answer relevant social science questions.
This subject will offer a nuanced combination of real-world applications to data science methodology, bringing an awareness of how to solve actual social problems to the Master of Data Science. We cover topics including elections, criminology, economics and the media. You will clean, process, model and make meaningful visualisations using data from these fields, and test hypotheses to draw inferences about the social world.
Techniques covered range from descriptive statistics and linear and logistic regression, the analysis of data from randomised experiments, model selection for prediction and classification tasks, to the analysis of unstructured text as data, multilevel and geospatial modelling, all using the open source program R. In doing this, not only will we build on the skills you have already mastered through this degree, but explore different ways to use them once you graduate.
ELEC5208 Intelligent Electricity Networks

Credit points: 6 Session: Semester 1 Classes: Lectures, Tutorials, Laboratories, Project Work - own time Assumed knowledge: Fundamentals of Electricity Networks, Control Systems and Telecommunications Assessment: Through semester assessment (50%) and Final Exam (50%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit aims to give students an introduction to the planning and operation of modern electricity grids, also known as "smart" grids. Traditional power networks featured a small number of large base-load plants sending power out over transmission lines to be distributed in radial lower voltage networks to loads. In response to the need to reduce carbon impact, future networks will feature diverse generation scattered all over the network including at distribution levels. Also there will be new loads such as electric vehicles and technologies including energy storage and lower voltage power flow control devices. The operation of these new networks will be possible by much greater use of information and communication technology (ICT) and control over the information networks.
The unit will cover recent relevant developments in energy technologies as well as important components of 'smart grids' such as supervisory control and data acquisition (SCADA), substation automation, remote terminal units (RTU), sensors and intelligent electronic devices (IED). Operation of these electricity grids requires a huge amount of data gathering, communication and information processing. The unit will discuss many emerging technologies for such data, information, knowledge and decision processes including communication protocols and network layouts, networking middleware and coordinated control. Information systems and data gathering will be used to assess key performance and security indicators associated with the operation of such grids including stability, reliability and power quality.
ELEC5509 Mobile Networks

Credit points: 6 Session: Semester 1 Classes: Lectures, Tutorials Assumed knowledge: ELEC3505 AND ELEC3506. Basically, students need to know the concepts of data communications and mobile communications, which could be gained in one the following units of study: ELEC3505 Communications, ELEC3506 Data Communications and the Internet, or similar units. If you are not sure, please contact the instructor. Assessment: Through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit of study serves as an introduction to communications network research. The unit relies on a solid understanding of data communications and mobile networks. It introduces some of the currently most debated research topics in mobile networking and presents an overview of different technical solutions. Students are expected to critically evaluate these solutions in their context and produce an objective analysis of the advantages/disadvantages of the different research proposals. The general areas covered are wireless Internet, mobility management, quality of service in mobile and IP networks, ad hoc networks, and cellular network architectures.
The following topics are covered. Introduction to wireless and mobile Internet. Wireless cellular data networks. Cellular mobile networks. Mobile networks of the future. Quality of service in a mobile environment. Traffic modelling for wireless Internet. Traffic management for wireless Internet. Mobility management in mobile networks. Transport protocols for mobile networks. Internet protocols for mobile networks.
ELEC9103 Simulations and Numerical Solutions in Eng

Credit points: 6 Session: Semester 2 Classes: Lectures, Laboratories, Project Work - own time Prohibitions: ELEC5723 OR ELEC2103 OR COSC1001 OR COSC1901 Assumed knowledge: ELEC9703. Understanding of the fundamental concepts and building blocks of electrical and electronics circuits and aspects of professional project management, teamwork, and ethics. Assessment: Through semester assessment (25%) and Final Exam (75%) Mode of delivery: Normal (lecture/lab/tutorial) day
Objectives: How to apply the software package Matlab to achieve engineering solutions; Critical assessment of various computer numerical techniques; Professional project management, teamwork, ethics.
This unit assumes an understanding of the fundamental concepts and building blocks of electrical and electronics circuits. As well as covering the specific topics described in the following paragraphs, it aims to develop skills in professional project management and teamwork and promote an understanding of ethics.
Basic features of Matlab. The Matlab desktop. Interactive use with the command window. Performing arithmetic, using complex numbers and mathematical functions. Writing script and function m-files. Matrix manipulations. Control flow. Two dimensional graphics. Application of Matlab to simple problems from circuit theory, electronics, signals and systems and control. Investigation of the steady state and transient behaviour of LCR circuits.
Matlab based numerical solutions applicable to numerical optimisation, ordinary differential equations, and data fitting. Introduction to symbolic mathematics in Matlab. Applications, including the derivation of network functions for simple problems in circuit analysis. Introduction to the use of Simulink for system modelling and simulation.
INFO5060 Data Analytics and Business Intelligence

Credit points: 6 Session: Summer Main Classes: Lectures, Tutorials, Laboratories, Presentation, Project Work - own time Assumed knowledge: The unit is expected to be taken after introductory courses or related units such as COMP5206 Information Technologies and Systems Assessment: Through semester assessment (65%) and Final Exam (35%) Mode of delivery: Block mode
The frontier for using data to make decisions has shifted dramatically. High performing enterprises are now building their competitive strategies around data-driven insights that in turn generate impressive business results. This course provides an overview of Business Intelligence (BI) concepts, technologies and practices, and then focuses on the application of BI through a team based project simulation that will allow students to have practical experience in building a BI solution based on a real world case study.
QBUS5001 Quantitative Methods for Business

Credit points: 6 Session: Semester 1,Semester 2 Classes: 1x 3hr lecture and 1x 1hr tutorial per week Prohibitions: ECMT5001 or QBUS5002 Assumed knowledge: Basic calculus; basic concepts of probability & statistics Assessment: weekly homework (10%), assignment (20%), mid-semester exam (30%), final exam (40%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit highlights the importance of statistical methods and tools for today's managers and analysts, and demonstrates how to apply these methods to business problems using real-world data. The quantitative skills that students learn in this unit are useful in all areas of business. Through taking this unit students learn how to model and analyse the relationships within business data; how to identify the appropriate statistical technique in different business environments; how to compute statistics by hand and using special purpose software; how to interpret results in the context of the business problem; and how to forecast using business data. The unit is taught through data-driven examples, exercises and business case studies.
QBUS6810 Statistical Learning and Data Mining

Credit points: 6 Session: Semester 1,Semester 2 Classes: 1x 2hr lecture and 1x 1hr tutorial per week Prerequisites: ECMT5001 or QBUS5001 Assessment: group project (30%); online quizzes (20%); final exam (50%) Mode of delivery: Normal (lecture/lab/tutorial) day
It is now common for businesses to have access to very rich information data sets, often generated automatically as a by-product of the main institutional activity of a firm or business unit. Data Mining deals with inferring and validating patterns, structures and relationships in data, as a tool to support decisions in the business environment. This unit offers an insight into the main statistical methodologies for the visualization and the analysis of business and market data. It provides the tools necessary to extract information required for specific tasks such as credit scoring, prediction and classification, market segmentation and product positioning. Emphasis is given to business applications of data mining using modern software tools.
QBUS6840 Predictive Analytics

Credit points: 6 Session: Semester 1,Semester 2 Classes: 1 x 2hr lecture and 1 x 1hr tutorial Prerequisites: QBUS5001 or ECMT5001 Assessment: group assignment (30%), homework (15%), mid-semester exam (20%), final exam (35%) Mode of delivery: Normal (lecture/lab/tutorial) day
To be effective in a competitive business environment, a business analyst needs to be able to use predictive analytics to translate information into decisions and to convert information about past performance into reliable forecasts. An effective analyst also should be able to identify the analytical tools and data structures to anticipate market trends. In this unit, students gain skills required to succeed in today's highly analytical and data-driven economy. The unit introduces the basics of data management, business forecasting, decision trees, logistic regression, and predictive modelling. The unit features corporate case studies and hands-on exercises to demonstrate the concepts presented.

Transport

COMP5318 Machine Learning and Data Mining

Credit points: 6 Session: Semester 1,Semester 2 Classes: Lectures, Tutorials Assumed knowledge: INFO2110 OR ISYS2110 OR COMP9120 OR COMP5138 Assessment: Through semester assessment (50%) and Final Exam (50%) Mode of delivery: Normal (lecture/lab/tutorial) day
Machine learning is the process of automatically building mathematical models that explain and generalise datasets. It integrates elements of statistics and algorithm development into the same discipline. Data mining is a discipline within knowledge discovery that seeks to facilitate the exploration and analysis of large quantities for data, by automatic and semiautomatic means. This subject provides a practical and technical introduction to machine learning and data mining.
Topics to be covered include problems of discovering patterns in the data, classification, regression, feature extraction and data visualisation. Also covered are analysis, comparison and usage of various types of machine learning techniques and statistical techniques.
DATA5207 Data Analysis in the Social Sciences

Credit points: 6 Session: Intensive December,Semester 1 Classes: lectures, laboratories Assumed knowledge: COMP5310 Assessment: through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
Note: Department permission required for enrolment
Data science is a new, rapidly expanding field. There is an unprecedented demand from technology companies, financial services, government and not-for-profits for graduates who can effectively analyse data. This subject will help students gain a critical understanding of the strengths and weaknesses of quantitative research, and acquire practical skills using different methods and tools to answer relevant social science questions.
This subject will offer a nuanced combination of real-world applications to data science methodology, bringing an awareness of how to solve actual social problems to the Master of Data Science. We cover topics including elections, criminology, economics and the media. You will clean, process, model and make meaningful visualisations using data from these fields, and test hypotheses to draw inferences about the social world.
Techniques covered range from descriptive statistics and linear and logistic regression, the analysis of data from randomised experiments, model selection for prediction and classification tasks, to the analysis of unstructured text as data, multilevel and geospatial modelling, all using the open source program R. In doing this, not only will we build on the skills you have already mastered through this degree, but explore different ways to use them once you graduate.
ELEC5509 Mobile Networks

Credit points: 6 Session: Semester 1 Classes: Lectures, Tutorials Assumed knowledge: ELEC3505 AND ELEC3506. Basically, students need to know the concepts of data communications and mobile communications, which could be gained in one the following units of study: ELEC3505 Communications, ELEC3506 Data Communications and the Internet, or similar units. If you are not sure, please contact the instructor. Assessment: Through semester assessment (100%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit of study serves as an introduction to communications network research. The unit relies on a solid understanding of data communications and mobile networks. It introduces some of the currently most debated research topics in mobile networking and presents an overview of different technical solutions. Students are expected to critically evaluate these solutions in their context and produce an objective analysis of the advantages/disadvantages of the different research proposals. The general areas covered are wireless Internet, mobility management, quality of service in mobile and IP networks, ad hoc networks, and cellular network architectures.
The following topics are covered. Introduction to wireless and mobile Internet. Wireless cellular data networks. Cellular mobile networks. Mobile networks of the future. Quality of service in a mobile environment. Traffic modelling for wireless Internet. Traffic management for wireless Internet. Mobility management in mobile networks. Transport protocols for mobile networks. Internet protocols for mobile networks.
ELEC5208 Intelligent Electricity Networks

Credit points: 6 Session: Semester 1 Classes: Lectures, Tutorials, Laboratories, Project Work - own time Assumed knowledge: Fundamentals of Electricity Networks, Control Systems and Telecommunications Assessment: Through semester assessment (50%) and Final Exam (50%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit aims to give students an introduction to the planning and operation of modern electricity grids, also known as "smart" grids. Traditional power networks featured a small number of large base-load plants sending power out over transmission lines to be distributed in radial lower voltage networks to loads. In response to the need to reduce carbon impact, future networks will feature diverse generation scattered all over the network including at distribution levels. Also there will be new loads such as electric vehicles and technologies including energy storage and lower voltage power flow control devices. The operation of these new networks will be possible by much greater use of information and communication technology (ICT) and control over the information networks.
The unit will cover recent relevant developments in energy technologies as well as important components of 'smart grids' such as supervisory control and data acquisition (SCADA), substation automation, remote terminal units (RTU), sensors and intelligent electronic devices (IED). Operation of these electricity grids requires a huge amount of data gathering, communication and information processing. The unit will discuss many emerging technologies for such data, information, knowledge and decision processes including communication protocols and network layouts, networking middleware and coordinated control. Information systems and data gathering will be used to assess key performance and security indicators associated with the operation of such grids including stability, reliability and power quality.
INFO5060 Data Analytics and Business Intelligence

Credit points: 6 Session: Summer Main Classes: Lectures, Tutorials, Laboratories, Presentation, Project Work - own time Assumed knowledge: The unit is expected to be taken after introductory courses or related units such as COMP5206 Information Technologies and Systems Assessment: Through semester assessment (65%) and Final Exam (35%) Mode of delivery: Block mode
The frontier for using data to make decisions has shifted dramatically. High performing enterprises are now building their competitive strategies around data-driven insights that in turn generate impressive business results. This course provides an overview of Business Intelligence (BI) concepts, technologies and practices, and then focuses on the application of BI through a team based project simulation that will allow students to have practical experience in building a BI solution based on a real world case study.
ITLS5000 Foundations of Supply Chain Management

Credit points: 6 Session: Semester 1,Semester 2 Classes: 13 x 1.5 hr lectures, 12 x 1.5 hour tutorials Prohibitions: TPTM6155 or TPTM5001 Assessment: Individual report (20%); group report (20%); group presentation (20%); final exam (40%) Mode of delivery: Normal (lecture/lab/tutorial) evening
Logistics and supply chain management functions can account for as much as half of the total costs of running a business. The success of a firm's logistic and supply chain management not only impacts on the profitability of a firm but also has a significant and growing impact on customer experience and satisfaction. Logistics and supply chain management plays a major role in implementing organisational strategy and in many industries has sole responsibility for managing customer service. An understanding of the role of this activity within an organisation and how improving logistics and supply chains can assist business managers to better respond to market opportunities is essential for business students. Students undertaking this unit are given a solid grounding in the language, concepts, techniques and principles that underlie the field of logistics and supply chain management, and how knowledge of these concepts contributes towards a strategically effective and operationally efficient organisation or network of organisations.
ITLS5100 Transport and Infrastructure Foundations

Credit points: 6 Session: Semester 1,Semester 2 Classes: 12 x 3hr lectures, 1 x 2hr field trip Prohibitions: TPTM6241 Assessment: report 1 (20%), report 2 (20%), presentation (20%), final exam (40%) Mode of delivery: Normal (lecture/lab/tutorial) evening
Note: This is the foundation unit for all transport and infrastructure management programs and should be completed in the first period of study.
Transport and infrastructure plays an important role both in terms of personal mobility as well as accessibility of businesses and their transportation needs. This unit provides a comprehensive introduction to the role of transportation and infrastructure within the economy. The key concepts and theories needed for management of transport and infrastructure are introduced along with the analysis and problem solving skills needed for confident decision making. In providing the foundational knowledge for students in transport and infrastructure, the unit also introduces students to the professional communication skills needed. Examples and case studies are drawn from all modes of transport and infrastructure.
ITLS5200 Quantitative Logistics and Transport

Credit points: 6 Session: Semester 1,Semester 2 Classes: 1 x 3hr computer workshop per week Corequisites: ITLS5000 or TPTM5001 or ITLS5100 or TPTM6241 Prohibitions: TPTM6495 Assessment: computer exam (30%); team report (30%); final exam (40%) Mode of delivery: Normal (lecture/lab/tutorial) day, Normal (lecture/lab/tutorial) evening
Supply chain management as well as logistics, transport and infrastructure management relies on the ability to make effective decisions based on the information provided by careful analysis of data. Students undertaking this unit will develop a strong understanding of the basic techniques underpinning quantitative analysis and will develop highly marketable skills in spreadsheet modelling and the communication and presentation of data to support management decision making. This unit emphasises the practical aspects of quantitative analysis with computer based workshops. Students are guided through the basic theories used in decision making but emphasis is placed on how the theories are applied in practice, drawing on real world experience in quantitative analysis. The unit covers demand forecasting, spreadsheet modelling, optimisation of production and transportation using linear programming, simulation and basic statistics and linear regression techniques.
ITLS6002 Supply Chain Planning and Design

Credit points: 6 Session: Semester 1,Semester 2 Classes: 6 x 3.5 hr lectures, 6 x 3.5 hr computer labs. Prerequisites: ITLS5200 or TPTM6495 or STAT5002 Corequisites: ITLS5000 or TPTM5001 or TPTM6155 Prohibitions: TPTM6190 Assessment: 2x computer exams (40%), assignments (40%), final exam (20%) Mode of delivery: Normal (lecture/lab/tutorial) evening
Successful supply chain management relies upon informed decision making. This unit explores a range of important decisions, and equips students with a toolkit of models and analytical methods that can assist in making informed decisions. The first set of decisions concern supply chain design and strategy, and includes network design and facility location. These decisions provide structure to the supply chain, set the boundaries within which planning decisions will be made, and impact on supply chain performance over the long term. In contrast, planning decisions provide value over the medium and short term. Here, this unit will cover aggregate planning, sales and operations planning, and inventory control. Special attention will be placed on how to handle uncertainty and risk within the supply chain.
ITLS6007 Disaster Relief Operations

Credit points: 6 Session: Intensive July Classes: 6 x 3.5 hr lectures, 6 x 3.5 hr workshops. Prohibitions: TPTM6390 Assessment: Individual essay (25%), presentation (25%), final exam (50%) Mode of delivery: Block mode
Large scale, sudden onset disasters strike with little or no warning. In their wake they leave shattered infrastructure, collapsed services and traumatised populations, while the number of dead, injured and homeless often reaches staggering proportions. Humanitarian aid organisations, such as the Red Cross, Doctors without Borders or Oxfam, to name just a few, are usually amongst the first responders, but depend on extremely agile supply chains to support their worldwide operations. Successful disaster relief missions are characterised by the ability of professionals to cope with time pressure, high uncertainty and unusual restrictions. This unit is designed as an introduction to the coordination and management of humanitarian aid and emergency response logistics. Case studies of real events, such as the 2004 Boxing Day tsunami and the 2010 Haiti earthquake provide the framework for analysis and research, while discussion of operational factors, simulations, workshops and group exercises offer students an interactive learning environment.
ITLS6102 Strategic Transport Planning

Credit points: 6 Session: Semester 2 Classes: 6 x 3 hr lectures, 6 x 3 hr computer labs Corequisites: ITLS5200 or TPTM6495 Prohibitions: TPTM6350 Assessment: quiz 1 (20%), quiz 2 (20%), travel demand modelling (30%), case study (30%) Mode of delivery: Block mode
This unit provides a basic understanding of the main principles underlying strategic transport models for forecasting, and the knowledge to critically assess forecasts of transport strategies made by transport planners. Students acquire knowledge of strategic forecasting models used by government and consultants as well as the methods to capture travel behaviour such as mode choice and route choice. Simple mathematical models are discussed in detail, along with numerical examples and applications in the Sydney Metropolitan Area, which are used to illustrate the principles of the methods. This unit equips students to build simple transport models in the computer lab using specialised transport planning software used by governments and consultants.
ITLS6107 Applied GIS and Spatial Data Analytics

Credit points: 6 Session: Semester 2 Classes: 7 x 2 hr lectures, 7 x 4 hr computer labs Prohibitions: TPTM6180 Assessment: individual projects (40%); group project (20%); group presentation (10%); final exam (30%) Mode of delivery: Normal (lecture/lab/tutorial) evening
Note: This unit assumes no prior knowledge of GIS; the unit is hands-on involving the use of software, which students will be trained in using.
The world is increasingly filled with systems, devices and sensors collecting large amounts of data on a continual basis. Most of these data are associated with locations that represent everything from the movement of individuals travelling between activities to the flow of goods or transactions along a supply chain and from the location of companies to those of their current and future customers. Taking this spatial context into account transforms analyses, problem solving and provides a powerful method of visualising the world. This is the essence of Geographic Information Systems (GIS) and this unit. This unit starts by introducing students to the 'building blocks' of GIS systems, including data structures, relational databases, spatial queries and analysis. The focus then moves on to sources of spatial data including Global Positioning System (GPS), operational systems such as smartcard ticketing and transaction data along with web-based sources highlighting both the potential and challenges associated with integrating each data source within a GIS environment. The unit is hands-on involving learning how to use the latest GIS software to analyse several problems of interest using real 'big data' sources and to communicate the results in a powerful and effective way. These include identifying potential demand for new services or infrastructure, creating a delivery and scheduling plan for a delivery firm or examining the behaviour of travellers or consumers over time and locations. This unit is aimed at students interested in the spatial impact of decision-making and on the potential for using large spatial datasets for in-depth multi-faceted analytics.
QBUS5001 Quantitative Methods for Business

Credit points: 6 Session: Semester 1,Semester 2 Classes: 1x 3hr lecture and 1x 1hr tutorial per week Prohibitions: ECMT5001 or QBUS5002 Assumed knowledge: Basic calculus; basic concepts of probability & statistics Assessment: weekly homework (10%), assignment (20%), mid-semester exam (30%), final exam (40%) Mode of delivery: Normal (lecture/lab/tutorial) day
This unit highlights the importance of statistical methods and tools for today's managers and analysts, and demonstrates how to apply these methods to business problems using real-world data. The quantitative skills that students learn in this unit are useful in all areas of business. Through taking this unit students learn how to model and analyse the relationships within business data; how to identify the appropriate statistical technique in different business environments; how to compute statistics by hand and using special purpose software; how to interpret results in the context of the business problem; and how to forecast using business data. The unit is taught through data-driven examples, exercises and business case studies.
QBUS6810 Statistical Learning and Data Mining

Credit points: 6 Session: Semester 1,Semester 2 Classes: 1x 2hr lecture and 1x 1hr tutorial per week Prerequisites: ECMT5001 or QBUS5001 Assessment: group project (30%); online quizzes (20%); final exam (50%) Mode of delivery: Normal (lecture/lab/tutorial) day
It is now common for businesses to have access to very rich information data sets, often generated automatically as a by-product of the main institutional activity of a firm or business unit. Data Mining deals with inferring and validating patterns, structures and relationships in data, as a tool to support decisions in the business environment. This unit offers an insight into the main statistical methodologies for the visualization and the analysis of business and market data. It provides the tools necessary to extract information required for specific tasks such as credit scoring, prediction and classification, market segmentation and product positioning. Emphasis is given to business applications of data mining using modern software tools.
QBUS6840 Predictive Analytics

Credit points: 6 Session: Semester 1,Semester 2 Classes: 1 x 2hr lecture and 1 x 1hr tutorial Prerequisites: QBUS5001 or ECMT5001 Assessment: group assignment (30%), homework (15%), mid-semester exam (20%), final exam (35%) Mode of delivery: Normal (lecture/lab/tutorial) day
To be effective in a competitive business environment, a business analyst needs to be able to use predictive analytics to translate information into decisions and to convert information about past performance into reliable forecasts. An effective analyst also should be able to identify the analytical tools and data structures to anticipate market trends. In this unit, students gain skills required to succeed in today's highly analytical and data-driven economy. The unit introduces the basics of data management, business forecasting, decision trees, logistic regression, and predictive modelling. The unit features corporate case studies and hands-on exercises to demonstrate the concepts presented.

Research Methods

CSYS5060 Complex Systems Research Project A

Credit points: 6 Session: Semester 1,Semester 2 Classes: Meeting, Workgroup, Project Work Prerequisites: CSYS5010 Assessment: Through semester assessment (100%) Mode of delivery: Supervision
The research pathway project aims to provide: (a) analytical and computational skills for modelling systems characterised by many interacting heterogeneous variables, (b) adequate programming skills for simulating complex systems. It is aimed at developing a pathway to a research career. The student will work individually on an assigned open-ended research project, focussed on modelling a complex problem or delivering a novel solution. The concepts covered depend on the nature of the project. The project could be directly tied to student's area of specialisation (major), or to their vocational objectives or interests. Students with expertise in a specific industry sector may be invited to partner with relevant team projects. The project outcomes will be presented in a thesis that is clear, coherent and logically structured. The project will be judged on the extent and quality of the student's original work and particularly how innovative, perceptive and constructive they have been in developing and applying cross-disciplinary complex systems concepts. As the result, the student will develop capability for modelling complex systems, from the identification of the relevant variables and interactions to the analysis and simulations of the predictions, having learnt the conceptual and methodological tools (techniques and algorithms) for the analysis and inference of complex models.
CSYS5061 Complex Systems Research Project B

Credit points: 6 Session: Semester 1,Semester 2 Classes: Meeting, Workgroup, Project Work Prerequisites: CSYS5010 Corequisites: CSYS5060. Research Project A is meant to be done before or in parallel with Research Project B Assessment: Through semester assessment (100%) Mode of delivery: Supervision
The research pathway project aims to provide: (a) analytical and computational skills for modelling systems characterised by many interacting heterogeneous variables, (b) adequate programming skills for simulating complex systems. It is aimed at developing a pathway to a research career. The student will work individually on an assigned open-ended research project, focussed on modelling a complex problem or delivering a novel solution. The concepts covered depend on the nature of the project. The project could be directly tied to student's area of specialisation (major), or to their vocational objectives or interests. Students with expertise in a specific industry sector may be invited to partner with relevant team projects. The project outcomes will be presented in a thesis that is clear, coherent and logically structured. The project will be judged on the extent and quality of the student's original work and particularly how innovative, perceptive and constructive they have been in developing and applying cross-disciplinary complex systems concepts. As the result, the student will develop capability for modelling complex systems, from the identification of the relevant variables and interactions to the analysis and simulations of the predictions, having learnt the conceptual and methodological tools (techniques and algorithms) for the analysis and inference of complex models.
For the Research Methods specialisation select an additional 12 credit points from any other elective from the Master of Complex Systems table

For more information on units of study visit CUSP (https://cusp.sydney.edu.au).