Academic Handbook Course Descriptors and Programme Specifications
NCHNAP790 Artificial Intelligence Capstone Project Course Descriptor
Course Title | Artificial Intelligence Capstone Project | Faculty | EDGE Innovation Unit (London) |
Course code | NCHNAP790 | Course Leader | Professor Scott Wildman (interim) |
Credit points | 30 | Teaching Period | This course will typically be delivered over a 12-week period |
FHEQ level | 7 | Date approved | March 2021 |
Compulsory/ Optional |
Compulsory | ||
Prerequisites | None |
Course Summary
This course is an artificial intelligence (AI) capstone project, conceived and executed by the learner in an external organisation. The project will demonstrate a professional level of technical and analytical skill, aligned to achieving organisational goals and enabling effective institutional change. The learner will use the scientific method to formulate the AI research/business question, design the experiment(s) and test hypotheses. The project may be:
- An idea or opportunity to use AI or new developments in the AI/machine learning field in the business.
- A specific business problem to be addressed using AI.
- A recurring issue in AI.
The project will culminate with a written dissertation and a viva voce exam.
Course Aims
- Give learners the opportunity to carry out an independent research project in artificial intelligence aligned to a business problem.
- Train learners to write up their findings and ideas accurately, clearly, coherently and to a high-professional standard.
- Train learners to present their own arguments logically and competently, to engage specialist and non-specialist stakeholders.
Learning Outcomes
On successful completion of the course, learners will be able to:
Knowledge and Understanding
K1d | Demonstrate an awareness of the opportunities of AI and data science to create business value and growth. |
K2d | Comprehensively understand how to apply appropriate scientific and technological methods for machine learning. |
Subject Specific Skills
S1d | Critically evaluate the effectiveness and performance of the proposed AI and data science solution(s). |
S2d | Apply systematic methodology and project management principles in the delivery of innovative, stable and robust solutions. |
S3d | Correctly select and apply AI project and development management. |
Transferable and Professional Skills
T2di | Use communication and influencing skills across workplace teams. |
T2dii | Consistently display an excellent level of technical proficiency in written English and command of scholarly terminology, so as to be able to deal with complex issues in a sophisticated and systematic way. |
T3d | Demonstrate professional practice in a commercial environment. |
Teaching and Learning
The contact hours on this course are formed predominantly of supervisory meetings, typically 6 x 1 hour.
Learners are expected to carry out independent research into the topic.
Readings should include a mix of books, journal articles, policy papers and other relevant documents, depending on the topic and the approach taken in the dissertation.
Course information and supplementary materials are available on the University’s Virtual Learning Environment (VLE).
Learners are required to attend and participate in all the formal and timetabled sessions for this course. Learners are also expected to manage their directed learning and independent study in support of the course.
The course learning and teaching hours will be structured as follows:
- Off-the-job learning (12 days x 7 hours) = 84 hours (e.g. 1 day per week for 12 weeks)
- On-the-job learning (24 days x 7 hours) = 168 hours (e.g. 2 days per week for 12 weeks)
- Private study = 48 hours (e.g. 4 hours per week for 12 weeks)
- Total 300 hours
Assessment
Formative
Learners will be formatively assessed during the course by means of set assignments. These will not count towards the final degree but will provide learners with developmental feedback.
Summative
AE | Assessment Type | Weighting | Online submission | Duration | Length |
1 | Dissertation | 70% | Yes | Requiring on average 30 – 50 hours to complete | 5,000 words +/- 10%
Excluding references and data tables |
2 | Viva Voce exam (based on project) |
30% | N/A | 20 minutes | N/A |
Feedback
Learners will receive formal feedback in a variety of ways: written (via email or VLE correspondence) and indirectly through online discussion groups. Regular tri-partite reviews between the learner (apprentice), their apprenticeship advisor (provider) and workplace line manager (employer) formally monitor and evaluate the learner’s progress.
Indicative Reading
Note: Comprehensive and current reading lists for courses are produced annually in the Course Syllabus or other documentation provided to learners; the indicative reading list provided below is used as part of the approval/modification process only.
Books
Preece, R., 1994. Starting Research: An Introduction to Academic Research and Dissertation Writing. London, New York: Pinter Publishers
Stephan F. M., and Smith, I., 2019. A Practical Guide to Dissertation and Thesis Writing. Newcastle upon Tyne, England: Cambridge Scholars Publishing
Dubber, M., Pasquale, F., and Das, S., 2020. The Oxford Handbook of Ethics of AI. New York, New Jersey: Oxford University Press
Journals
Learners are encouraged to read material from relevant journals on postgraduate dissertations and artificial intelligence as directed by their Course Leader.
Electronic Resources
Learners are encouraged to consult relevant websites on postgraduate dissertations and artificial intelligence.
Indicative Topics
Learners will study the following topics:
- Artificial intelligence solutions
- Business context
- Scientific method
Title: NCHNAP790 AI Capstone Project Course Descriptor
Approved by: Academic Board Location: Academic Handbook/Programme specifications and Handbooks/ Postgraduate Apprenticeship Programmes/MSc Artificial Intelligence and Data Science Programme Specification/Course Descriptors |
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Version number | Date approved | Date published | Owner | Proposed next review date | Modification (As per AQF4) & category number |
3.0 | October 2022 | January 2023 | Scott Wildman | March 2026 | Category 1: Corrections/clarifications to documents which do not change approved content or learning outcomes
Category 3: Changes to Learning Outcomes |
2.1 | May 2022 | May 2022 | Scott Wildman | March 2026 | Category 1: Corrections/clarifications to documents which do not change approved content. |
2.0 | January 2022 | April 2022 | Scott Wildman | March 2026 | Category 3: Changes to Learning Outcomes |
1.0 | March 2021 | March 2021 | Scott Wildman | March 2026 |