ÐÓ°ÉÂÛ̳

 

ST498     
Capstone Project

This information is for the 2022/23 session.

Teacher responsible

Dr Marcos Barreto (course co-ordinator). A project supervisor will be identified during MT.

Availability

This course is compulsory on the MSc in Data Science. This course is not available as an outside option.

Course content

The capstone is a collaborative project, providing students with the opportunity to work in groups studying in depth a topic of specific interest. The topic will normally relate to a specific data source or sources and will require the use of data science skills learnt on the programme. The topic for a capstone project will be similar to that for the kinds of data-based issues faced in practice by private or public sector organisations.

 

The capstone project is conducted in partnership with a company partner and is jointly supervised by the ÐÓ°ÉÂÛ̳ faculty and company partner collaborators. The capstone project partner proposes a data science research project, potentially provides access to data, and engages through participation in joint meetings that are either online or onsite. The capstone project may require students to spend some time on company partner’s premises, for example, to have access to data. 

 

The capstone project requires creative work in formulating research questions and hypotheses, identifying most suited methodology, referring to research literature, and analysing data sources using data science computing technologies.

Teaching

A topic and project supervisor will be identified during MT. Supervisors will provide formal advice from the end of MT until two weeks after the end of ST. Project partners will engage with students in weekly or bi-weekly meetings, agreed at convenience of both sides. The students are expected to be proactive in communicating with and asking for technical support from their partners and ÐÓ°ÉÂÛ̳ supervisor.

 

The students should attend all planned meetings (proposals presentation, kick-off meeting with partners, and all-hands meetings) and deliver a draft report (some date in May) and a final report (some date in August). They should also attend all meetings with the partner and engage with the agreed activities.

Formative coursework

Formative assessment is via informal feedback from supervisors on the project report and contributions to the project as an individual contributor and team member.

Other courses on the MSc programme will also provide a range of formative assessments of relevance to the outcomes of this project.

Indicative reading

* J. Burke, M. Dempsey. Undertaking capstone projects in education: a practical guide to students. Routledge, 2022.

* J. Poulin, S. Kauffman, T. Ingersoll. Social work capstone projects: demonstrating professional competencies through applied research. Springer, 2021.

* J. Chong, Y. Chang. How to lead in data science. Manning, 2021.

* M. Braschler, T. Stadelmann, K. Stockinger. Applied data science. Springer, 2019.

* M. Carey. The social work dissertation: using small-scale qualitative methodology. 2nd edtion, Open University Press, 2013.

* D. Patil. Building data science teams. O'Reilly, 2011.

 

Assessment

Project (100%) in August.

Maximum page limit of 50 single-sided sheets of A4 (minimum font size of 11pt and line spacing 1.5).

Student performance results

(2018/19 - 2020/21 combined)

Classification % of students
Distinction 38.6
Merit 58.6
Pass 2.9
Fail 0

Key facts

Department: Statistics

Total students 2021/22: 26

Average class size 2021/22: Unavailable

Controlled access 2021/22: No

Value: One Unit

Course selection videos

Some departments have produced short videos to introduce their courses. Please refer to the course selection videos index page for further information.

Personal development skills

  • Self-management
  • Problem solving
  • Application of information skills
  • Communication
  • Application of numeracy skills
  • Commercial awareness
  • Specialist skills