University of Technology Sydney

36123 Research Paper

Warning: The information on this page is indicative. The subject outline for a particular session, location and mode of offering is the authoritative source of all information about the subject for that offering. Required texts, recommended texts and references in particular are likely to change. Students will be provided with a subject outline once they enrol in the subject.

Subject handbook information prior to 2024 is available in the Archives.

UTS: Transdisciplinary Innovation
Credit points: 8 cp

Subject level:

Postgraduate

Result type: Grade, no marks

There are course requisites for this subject. See access conditions.

Description

This subject gives students an opportunity to conduct a self-guided research investigation relevant to data science to develop an understanding of research process and prepare a research paper having potential to be published in peer-reviewed conferences or journals. Students must have an academic supervisor, an agreed research topic and approval of the subject coordinator before submitting e-request for enrolment.

Subject learning objectives (SLOs)

Upon successful completion of this subject students should be able to:

SLO1. Review the literature and critically evaluating the state-of-the-art of selected Data Science research topics.
SLO2. Conduct independent research into a given topic in Data Science
SLO3. Prepare a research report summarizing the aims, background, methods, results and conclusions of independent research into a given topic in Data Science

Course intended learning outcomes (CILOs)

This subject contributes specifically to the development of the following course intended learning outcomes:

  • Identify and represent the human and technical elements and processes within complex systems and organise them within frameworks of relationships (1.1)
  • Explore, analyse, manipulate, interpret and visualise data using data science techniques, software and technologies to make sense of data rich environments (2.2)
  • Collaborate to develop and refine multimodal communication skills needed to successfully work in data science teams (4.1)
  • Engage in active, reflective practice that supports flexible navigation of assumptions, alternatives and uncertainty in professional data science contexts (5.1)

Contribution to the development of graduate attributes

The subject addresses the following graduate attributes (GA):

GA 1 Sociotechnical systems thinking

GA 2 Creative, analytical and rigorous sense making

GA 3 Create value in problem solving and inquiry

GA 4 Persuasive and robust communication

GA 5 Ethical citizenship and leadership

Teaching and learning strategies

Authentic problem based learning: This subject offers a range of authentic data
science problems to solve that will help develop students’ analysis skills. They work on
real world data analysis problems for broad areas of interest using unstructured data
and contemporary techniques.

Transdisciplinary approaches: Starting from an elemental perspective on data and
data science, students will approach learning from their specific professional and
potential future contexts. As the subject progresses conceptual and philosophical
approaches to the association between data and innovation, provocative questions will
stimulate analytical engagement across a range of perspectives. Case studies and
insights from industry experts will provide 'lived experiences' to accelerate and
consolidate student learning.

Content (topics)

1. General research and literature research methods
2. Readings of chosen topics

Assessment

Assessment task 1: Research Task

Objective(s):

This assessment task contributes to the development of course intended learning outcome(s):

1.1, 2.2, 4.1 and 5.1

Type: Report
Groupwork: Individual
Weight: 100%

Minimum requirements

Students must achieve at least 50% of the subject’s total marks.