Durham University
Programme and Module Handbook

Postgraduate Programme and Module Handbook 2026-2027

Module DATA40345: Data Science Research Project

Department: Natural Sciences

DATA40345: Data Science Research Project

Type Tied Level 4 Credits 45 Availability Available in 2026/2027 Module Cap None.
Tied to G5K823
Tied to G5K923
Tied to G5P123
Tied to G5P223
Tied to G5P323
Tied to G5P423
Tied to G5P523
Tied to G5P623
Tied to G5P723

Prerequisites

  • None

Corequisites

  • ANTH Critical Perspectives in Data Science (ANTH40A15)

Excluded Combination of Modules

  • None

Aims

  • To allow students to conduct, via individual initiative, a substantial piece of research into an unfamiliar area of Data Science, or in the subject specialisation area with a focus on Data Science.
  • To allow students to propose, develop and critically evaluate their work.
  • To allow students to evaluate and select the most appropriate research methods and skills relevant for conducting their project.
  • To provide an opportunity for students to demonstrate originality in their application of knowledge they have gained through their degree, along with the ability to identify appropriate gaps in their knowledge and conduct independent learning to address these gaps.
  • To critically analyse background literature within their chosen domain in order to set their work in context.
  • To enhance written and presentations skills in a scholarly fashion.

Content

  • Students are expected to choose a project from a list offered by potential supervisors, or propose a topic of their choice if an appropriate supervisor can be identified.
  • Projects are inevitably and deliberately very varied in the topics they address and in the type of approach required; the common factor is that they are research-led and have a strong data science component.
  • Projects may be practically or theoretically based or both.
  • Projects are open-ended and contain considerably more work than can be achieved in the available time. Students therefore need to evaluate the problem domain and propose the elements of the greater problem they will address.
  • Successful completion requires good organisation, communication and management skills.
  • Management is the responsibility of the student, in regular consultation with the supervisor.
  • Students in agreement with their supervisor, will generate regular meeting reports that will be used for formative development of the project.

Learning Outcomes

Subject-specific Knowledge:
  • On completion of this module, students will:
  • be able to demonstrate a detailed knowledge and understanding of one or more aspects of data science leading to new research results either in the methodological area or the chosen specialisation area.
  • have a deep understanding of the state of the art in their chosen area of specialisation demonstrated through critical analysis of relevant literature identified.
  • have an in-depth knowledge and understanding of their chosen area of specialisation.
  • have appreciable levels of the research skills and methods required in conducting a successful research-based project.
Subject-specific Skills:
  • Students will be able to:
  • propose and carry out comprehensive research appropriate to a project.
  • demonstrate effective project planning, including the ability to evaluate their own project planning skills.
  • assimilate, critically evaluate, and analyse information.
  • identify appropriate related research material along with the skills to critique this work in the context of their own project.
  • formulate effective solutions to a problem, making effective use of time and resources available.
  • create solutions to their problem.
  • manage personal learning.
  • reflect and critique their own work against their own aims and objectives.
  • critically evaluate their own learning, progress and quality of solution objectively.
  • prepare and deliver technical reports at a high level of quality.
  • present properly referenced reports, with citations, references and bibliographies.
  • exercise critical self-evaluation.
  • present and interpret results effectively and relate these to the aims and objectives of their work.
Key Skills:
  • The capacity for independent self-learning.
  • Effective communication of general and specialised Data Science concepts (written, verbal, presentational, ...)
  • Effective use of IT resources.
  • Time and resource management.
  • Advanced problem solving skills.
  • The ability to propose, conduct and critically evaluate a piece of research within the wider context of their subject area.
  • Develop an awareness of ethical and societal impacts in their use of Data Science.
  • Reflect on experiences by learning from successes and challenges to identify growth opportunities.

Modes of Teaching, Learning and Assessment and how these contribute to the learning outcomes of the module

  • Students will arrange regular meetings with their supervisor at intervals relevant to the individual project, giving formative feedback on the suitability of the implementation and report.
  • The research conducted and the implementation developed will be written up in the form of supervisor meeting reports to monitor progress.
  • Student performance is summatively assessed through technical performance during the project, through a formal final written report, of maximum length 10 pages and, one video presentation.
  • The written report may include additional supporting materials such as data sets, programming code and dashboards as appendices.
  • The weekly workshop will support students’ development of key skills in a variety of formats, including project preparation, communication skills sessions, quizzes and discussion forums.

Teaching Methods and Learning Hours

Activity Number Frequency Duration Total/Hours Attendance Monitored
Supervision Sessions Term 3 5
Preparation and Reading 421
Workshops 24 Weekly 1 24
Total 450

Summative Assessment

Component: Project Report Component Weighting: 100%
Element Length / duration Element Weighting Resit Opportunity
Report max 10 A4 pages 40%
Digital Output max 10 minutes 40%
Teacher-Supervisor Review 5 hours of supervision 20%

Formative Assessment:

Feedback on progress is given during regular meetings with supervisors. This includes review of an interim progress report.


â–  Students who do not attend monitored activities shown under Teaching Methods and Learning Hours, or who fail to complete the summative or formative assessment(s) specified above, may be subject to the Academic Progress procedures defined in the University's General Regulation V, and may be required to leave the University.