Course overview
This course is ideal for those looking to take the next step in their academic and professional careers.
Artificial intelligence (AI) and advanced computing are rapidly transforming the global landscape, creating new opportunities for innovation across every industry. Gain the technical expertise and analytical mindset required to design, develop and implement intelligent systems that solve real-world challenges.
Designed with Future Facing Learning in mind, you master the principles of machine learning, big data, business intelligence and agile development. Explore the ethical and social implications of AI while acquiring a robust suite of practical and professional skills.
Gain the ability to:
- apply advanced knowledge of AI foundations and computer science concepts
- design and implement machine learning models to make predictions from complex data
- utilise industry-standard tools for design and deployment of solutions
- analyse and transform datasets to drive informed decisions
- execute agile development methodologies to manage projects effectively
- understand the professional, ethical and legal responsibilities, while providing the technical skills needed for immediate impact in your field.
You also have the opportunity to gain Microsoft, Adobe and Amazon Web Services (AWS) certifications.
* Subject to University approval
Course details
Course structure
Core modules
You gain experience of application development utilising an agile development approach. You also take responsibility for determining project aims, objectives, roles, tasks, deliverables, schedules and documentation.
By learning agile principles and applying a specific agile approach (eg SCRUM) in a live simulation of the methodology, the module will help you to prepare for contemporary practice in industry, developing both knowledge and skills in the application of agile principles.
Artificial Intelligence Ethics and Applications
You gain a deep insight into the business applications of artificial intelligence (AI) and data science (DA). You explore a range of AI and DS applications such as chatbots, virtual assistants, medical diagnosis, biometric recognition, personalisation, fraud detection and autonomous machines, and analyse both the risks and opportunities of applying AI and DS techniques in these areas.
Big Data and Business Intelligence
You develop your ability to design and implement database, big data and analytics applications to meet business needs. A case study is used to follow the system development lifecycle. You develop a plausible application from inception to implementation for a real-world scenario.
You investigate the issues and technologies associated with implementing and supporting large scale databases and the services that are needed to maintain and access a repository of data. Investigations are undertaken in a number of areas including big data, data warehouses, integrating legacy data, data management and approaches that support the modelling and visualisation of data for a range of use views.
You undertake a major, in-depth, individual study in an aspect of your course. Normally computing master’s projects are drawn from commercial, industrial or research-based problem areas. The project involves you in researching and investigating aspects of your area of study and then producing a major deliverable, for example software package or tool, design, web-site and research findings. You also critically evaluate your major deliverable, including obtaining third party evaluation where appropriate.
The major deliverable(s) are presented via a poster display, and also via a product demonstration or a conference-type presentation of the research and findings. The research, project process and evaluation is reported via a paper in the style of a specified academic conference or journal paper. The written report, the major deliverable and your presentation of the product are assessed.
The project management process affords supported opportunities for goal setting, reflection and critical evaluation of achievement.
Machine learning is a subfield of computer science concerned with computational techniques rather than performing explicit programmed instructions. You build a model from a task based on observations in order to make predictions about unseen data. Such techniques are useful when the desired output is known but an algorithm is unknown, or when a system needs to adapt to unforeseen circumstances.
You explore statistics and probability theory as the fundamental task is to make inferences from data samples. The contribution from other areas of computer science is also essential for efficient task representation, learning algorithms, and inferences procedures. You gain exposure to a breadth of tasks and techniques in machine learning.
Assessment is an in course assessment (100%).
Software for Digital Innovation
You gain an introduction to the Python programming language and its application to solving problems in digital innovation. This involves the principles of programming, the syntax and structure of Python, its relevant libraries and modules, and how it is incorporated in existing software tools. You form a solid foundation of producing software solutions to real-world problems.
Modules offered may vary.
How you learn
You learn through lectures from industry guest speakers, labs and tutorials using case studies and examples. Critical reflection is key to successful problem solving and essential to the creative process. Develop reflective practice at an advanced level, then test and assess solutions against criteria through research.
You learn through a mix of face-to-face and online learning.
How you are assessed
You are assessed on your subject-specific knowledge, cognitive skills and transferable skills applicable to the workplace. Assessments include assignments, individual or group essays or reports, tests, case studies, presentations, a research proposal, a literature review and a dissertation. The assessment criteria may include presentation skills and report writing.
Entry requirements
A bachelor’s honours degree (2.2 minimum) or equivalent overseas qualification.
For general information please see our overview of entry requirements
International applicants can find out what qualifications they need by visiting our international country pages.
Employability
Career opportunities
You could progress to a wide range of professional opportunities and job roles, whether you’re beginning your journey or wanting to build on your skills and experience in this area.
Early career roles include software developer, junior data scientist, junior AI engineer and systems analyst.
For those with previous experience, career roles include database engineer, machine learning engineer and data analyst.
Information for international applicants
Qualifications
International applicants - find out what qualifications you need by selecting your country below.
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Useful information
Visit our international pages for useful information for non-UK students and applicants.