Programme Specification

MSc AI for Business Transformation

Artificial intelligence is revolutionising the way businesses operate, creating new opportunities and challenges.

This programme is designed to equip you with the expertise to navigate this evolving landscape with confidence and precision. You will explore advanced digital concepts, learning how to harness the digital economy to shape future business strategies.

The course delves into practical approaches for implementing AI across industries, ensuring you can drive innovation effectively. By focusing on user-centred system design and modern requirements engineering, you will learn to create intuitive digital experiences that meet precise business needs. Leadership development is also a key component, preparing you to lead transformative initiatives in your organisation.

Mode(s) of Study Qualification Level Framework Credits Hours HECoS Code
Full-time Blended Learning
Part-time Blended Learning
Postgraduate FHEQ - L7 CATS 180, ECTS 90 1800 business information technology (100362)

Award Information

Final Award MSc AI for Business Transformation
Type of Qualification Master's Degree
Awarding Body London School of Innovation (subject to New DAPs)
Teaching Institute London School of Innovation
Exit Award(s) PgDip (120 credits), PgCert (60 credits)

Programme Details

Language Of Programme Applicable FHEQ Descriptor Applicable Subject Benchmark Statement
English FHEQ Level 7 descriptor QAA Computing Subject Benchmark Statement

Entry Criteria

Requirement Type Details
Academic Qualifications An undergraduate degree or equivalent in any of the following:
Software engineering/computer science
Any Computing/IT
STEM (science, technology, engineering or math)
Management/Business studies
Required Work Experience at least 4 years' commercial experience in a technical or managerial position involving intellectually challenging day-to-day tasks.
English Language IELTS Level [Min. 7 ]

Programme Aims

Skill Development As the synergy between AI and business grows stronger, the need for professionals skilled in both domains becomes essential. This course focuses on building a robust skill set that bridges technical knowledge and strategic business acumen. You will develop proficiency in digital economics and learn to craft and implement AI strategies that drive innovation. Enhancing your ability to design user-optimised digital systems, the programme ensures you can create solutions that resonate with users. Leadership training will empower you to guide teams through change, while mastering business case development and requirements engineering will refine your ability to deliver precise, purpose-driven solutions.
Real World Application Organisations are increasingly adopting AI to solve complex problems and gain a competitive edge. This programme offers practical insights into applying AI strategies in real-world business contexts. Through hands-on projects and case studies, you will tackle actual industry challenges, designing user-centred systems that enhance customer experiences. You will learn to develop compelling business cases that effectively communicate the value of your solutions to stakeholders. By engaging with real scenarios, you will be prepared to translate theoretical knowledge into actionable strategies that deliver tangible results across various sectors.
Career Prospects The fusion of AI and business strategy is creating diverse career opportunities for those equipped with the right expertise. Graduates of this programme can pursue roles such as AI strategy consultants, digital transformation leaders, user experience designers, and innovation managers. With a strong foundation in implementing AI within business frameworks, you will be well-positioned to lead initiatives that drive organisational success. Employers across every sector are seeking professionals who can bridge the gap between technology and business, making the skills acquired in this course highly valuable in the current job market.
Personal Growth Developing professionally also means growing personally to meet the demands of a dynamic digital world. This programme encourages you to enhance not just your technical and strategic skills, but also your critical thinking and creativity. You will cultivate a leadership mindset, learning to inspire and manage teams effectively. The course fosters resilience and adaptability, empowering you to navigate and lead through change. By embracing innovation and challenging conventional thinking, you will emerge with a renewed sense of purpose and the confidence to make a meaningful impact in your field.

Learning Outcomes

FHEQ Level 7 (Threshold Academic Standard)
Qualification Descriptor Programme outcome(s)
Domain knowledge
Systematic understanding of knowledge in their field
Exhibit a systematic understanding of AI Business Transformation, including how digital and AI technologies can reshape business models, operations, and customer engagement within various industry sectors, and key concepts, such as value propositions, strategic communication, big data, and business intelligence.
Problems and new ideas in the field
Critical awareness of current problems or new ideas in their field
Demonstrate a critical awareness of contemporary developments in the field of AI Business Transformation, including machine learning, neural networks, generative AI, cyber security, and process redesign, and issues related to their application in different contexts, such as the professional, legal, and ethical.
Techniques
Comprehensive understanding of applicable techniques in their field
Have a clear and comprehensive understanding of the appropriate techniques that can be applied to identify problems and provide solutions in AI Business Transformation, including digital strategy creation, qualitative and quantitative research, big data, project management, domain transformation, and the application of industry-standard AI tools.
Originality
Show some originality in applying knowledge
Synthesise knowledge and new insights in AI Business Transformation in a novel way that shows a comprehension of how knowledge in the field is advanced, including by designing and executing practical research projects that propose new AI and machine learning solutions for business needs, identify appropriate process redesign that can drive value, and solve commercial, technical and other problems through creative AI and other strategies that maximise competitive advantages and lead to change.
Knowledge discernment
Practical understanding of how to create and interpret knowledge in their field using established techniques of research and enquiry
Evaluate the benefits and limitations of different practical methods in the field of AI Business Transformation in the creation and interpretation of new insights, such as generative AI, large language models, strategy setting, scaling, market research, and cultural and business model transformation, and what should be done with regards to these for the discernment of knowledge.
Research critique
Conceptual understanding so they can criticise and evaluate the current research papers in their field, and the current methodologies and techniques.
Critique current problems and new insights within AI Business Transformation, including in current literature, such as large language models, knowledge management, Environmental, Social, and Governance (ESG), data security, and the methodologies and paradigms used, to propose new theories and possible solutions, such as on big data management and systemic risk.
BCS Level 7 (Subject Benchmark Statement)
Qualification Descriptor Programme outcome(s)
Intellectual skills
Analyse, apply and critically evaluate concepts, principles and practices.
Examine, use, and appraise knowledge within the field of AI Business Transformation, including machine learning, digital integration, legacy systems, process redesign, and change management, to challenge existing understanding and practice.
Problem-solving
Well-developed skills in critical thinking, research design, judgement and problem-solving, leading to the ability to create effective computational artefacts, given complex or open constraints, with a high degree of autonomy.
Demonstrate a high degree of independence and perceptiveness in evaluating and identifying problems related to AI Business Transformation, including ethics, budgetary limitations, digital upskilling, goal alignment, and quality assurance, to design suitable frameworks that balance and makes use of diverse and appropriate AI and other related methods to generate suitable digital artefacts.
Practical computing skills
Apply computing techniques, as appropriate to the area of study, within complex or unpredictable scenarios, in a systematic manner, making appropriate decisions given incomplete or missing data.
Select computing techniques that are relevant and effective in overcoming both existing and foreseeable challenges in AI Business Transformation, including large language models, cloud computing, AI, big data, IoT, and mobile integration, and addressing challenges, such as competitive advantage, cost and time.
Autonomy and self-direction
Demonstrate some self-direction in learning and attainment, tackling and solving problems, and approaching and implementing tasks and activities proactively and effectively.
Plan what needs to be done in AI Business Transformation, including independently learning new AI, computing and digital frameworks, and efficiently managing change across concurrent AI software and digital platforms, in order to problem solve with a high level of autonomy, foreseeing and proposing effective AI solutions that are likely to arise in various contexts, such as the professional, legal, and ethical, so that objectives can be delivered.

Professional practice
Identify appropriate practices in complex and unpredictable professional environments in the work that they undertake, and perform work within a professional, legal and ethical framework – including data management and use, security, equality, diversity and inclusion (EDI) and sustainability.
Demonstrate a commitment to keep up-to-date with the latest issues and best practice with the fields of AI Business Transformation, such as big data, neural networks, quantum and edge computing, cyber security, generative AI, Web3, AI ethics and regulation, data storage, and best practices in a range of professional, regulatory, and legal contexts, so that reflection can be used to effectively identify and apply solutions to problems that may prevent objectives from being delivered.

Professional communication
Communicate their work to specialist and non-specialist audiences.
Communicate complex applied AI Business Transformation concepts effectively to diverse audiences, including those from outside the field, such as adeptly explaining how AI technology can be used to redesign business processes, and achieve increasing efficiency and competitive advantage, using clear language tailored to the contextual understanding of listeners.
CMI Level 7 (Subject Benchmark Statement)
Qualification Descriptor Programme outcome(s)
Knowledge and understanding
Systematic and deep understanding of relevant knowledge about organisations
Critically evaluate the principles and practices underpinning AI-driven business transformation, developing deep insights into how organisations adapt to shifting economic, social, and technological landscapes. Formulate comprehensive perspectives on organisational challenges, synthesising advanced knowledge to ensure solutions balance long-term innovation, resource optimisation, and strategic agility, while addressing evolving digital, ethical, and societal priorities.
Skills
Excellent command of subject-specific techniques and skills, relevant to the appropriate field of business and management
Exhibit advanced technical and managerial skills by applying innovative approaches in AI and digital transformation to address evolving business contexts. Proficiently design and implement adaptable systems, manage dynamic projects, and foster creative strategies that optimise organisational resilience and user engagement. Combine computational expertise and strategic leadership to deliver forward-thinking solutions that respond to modern organisational and societal needs.
Critical perspective
Critical awareness of current issues in business and management, informed by leading edge research and practice in the field, and a proactive and independent approach to learning
Critically appraise current issues and emerging trends in AI and business transformation, leveraging cutting-edge research and innovative practices. Develop independent strategies that embrace adaptability and creativity to address complex, interconnected challenges. Generate forward-looking insights that account for diverse perspectives, evolving business structures, and the necessity for sustainable, user-centred innovation in uncertain and dynamic environments.
Original application
Apply relevant knowledge to a range of complex situations, with originality and creativity

Apply advanced knowledge creatively to address complex, real-world scenarios in business transformation. Innovate and design tailored solutions, demonstrating originality in tackling multifaceted challenges. Generate adaptable strategies that integrate technological precision and organisational insight, ensuring these align with shifting market dynamics, evolving expectations, and a future-oriented approach to creating enduring organisational and societal value.
Practical application
Practical understanding of how established techniques of research and enquiry are used to create and interpret knowledge in business and management, or in a specialist field within it
Implement established research techniques to evaluate and interpret data, creating actionable insights that respond to complex and dynamic challenges. Design and deliver innovative projects that reflect evolving business needs, integrating AI and strategic approaches to create meaningful impact. Demonstrate a sophisticated understanding of sustainable practices, user-centric solutions, and practical resilience in professional contexts, ensuring measurable, long-term success.
Ethical values
Commitment to championing, managing and leading with a strong sense of global social responsibility, ethical values and behaving with integrity in complex business and management environments
Lead with integrity by embedding ethical considerations into AI strategies, fostering transparency, fairness, and a deep commitment to balancing innovation with societal well-being. Critically engage with ethical dilemmas and ensure solutions are adaptable to shifting regulatory, environmental, and societal landscapes. Champion inclusive, long-term practices that reflect resilience, accountability, and the evolving priorities of a connected global economy.
Global values
Ability to take an international perspective, including understanding the impact of globalisation on businesses, societies and the environment
Integrate an international perspective by addressing the challenges of interconnected economies, diverse cultures, and evolving societal expectations. Formulate strategies that respond to dynamic market forces, global sustainability needs, and shifting user expectations. Demonstrate creativity and adaptability in navigating complex cross-border environments, ensuring innovative and resilient solutions align with the requirements of a globalised and interdependent world.

Programme Structure

To qualify for the Master's Degree (MSc) you must achieve 180 CATS credits from the following.

Core

Title Code Credits Level Teaching System Duration
Advanced Digital Acumen (DA71) DA71 15 FHEQ - L7 Foundational 15 4 Months Spec
AI in Business: Strategies and Implementation (MA71) MA71 15 FHEQ - L7 Professional 15 4 Months Spec
Digital Delivery Management (DM71) DM71 30 FHEQ - L7 Professional 30 4 Months Spec
Interaction Design for User-Centred Systems (VS71) VS71 15 FHEQ - L7 Technical 15 4 Months Spec
Master's Final Project (FP10) FP10 60 FHEQ - L7 Postgraduate Final Project 60 4 Months Spec
Advanced Leadership for Innovation (AL71) AL71 15 FHEQ - L7 Professional 15 4 Months Spec

Optional

Title Code Credits Level Teaching System Duration
Data Programming (R and Python) (DP71) DP71 15 FHEQ - L7 Technical 15 4 Months Spec
Digital Entrepreneurship (DE71) DE71 30 FHEQ - L7 Professional 30 4 Months Spec
Modern Requirements Engineering (RE71) RE71 15 FHEQ - L7 Professional 15 4 Months Spec

Programme Modules Outcomes Map

The following mapping demonstrates how the programme outcomes are all addressed by the module outcomes.
In compliance with the School's regultations, every programme outcome is covered by at least one core module outcome.

FHEQ Level 7 (Threshold Academic Standard)

Descriptor
Core
DA71
Advanced Digital Acumen
Core
MA71
AI in Business: Strategies and Implementation
Core
DM71
Digital Delivery Management
Core
VS71
Interaction Design for User-Centred Systems
Core
FP10
Master's Final Project
Core
AL71
Advanced Leadership for Innovation
Optional
DP71
Data Programming (R and Python)
Optional
DE71
Digital Entrepreneurship
Optional
RE71
Modern Requirements Engineering
Domain knowledge
Exhibit a systematic understanding of AI Business Transformation, including how digital and AI technologies can reshape business models, operations, and customer engagement within various industry sectors, and key concepts, such as value propositions, strategic communication, big data, and business intelligence.
LO1, LO2 LO1 LO1 LO1 LO1 LO1 LO1, LO2 LO1
Problems and new ideas in the field
Demonstrate a critical awareness of contemporary developments in the field of AI Business Transformation, including machine learning, neural networks, generative AI, cyber security, and process redesign, and issues related to their application in different contexts, such as the professional, legal, and ethical.
LO3, LO1, LO2 LO2, LO1 LO2, LO3, LO1 LO2, LO3, LO1 LO1 LO2, LO1, LO3 LO2, LO3, LO1 LO3, LO1, LO2, LO4 LO2, LO1, LO3
Techniques
Have a clear and comprehensive understanding of the appropriate techniques that can be applied to identify problems and provide solutions in AI Business Transformation, including digital strategy creation, qualitative and quantitative research, big data, project management, domain transformation, and the application of industry-standard AI tools.
LO4 LO3, LO4 LO5, LO4 LO4 LO2, LO3 LO5, LO4 LO4, LO5 LO6, LO5 LO4, LO5
Originality
Synthesise knowledge and new insights in AI Business Transformation in a novel way that shows a comprehension of how knowledge in the field is advanced, including by designing and executing practical research projects that propose new AI and machine learning solutions for business needs, identify appropriate process redesign that can drive value, and solve commercial, technical and other problems through creative AI and other strategies that maximise competitive advantages and lead to change.
LO3, LO4 LO2, LO3, LO4 LO2, LO3, LO5, LO4 LO4, LO2, LO3 LO1, LO2, LO3 LO5, LO2, LO4, LO3 LO2, LO3, LO4, LO5 LO3, LO6, LO4, LO5 LO2, LO3, LO4, LO5
Knowledge discernment
Evaluate the benefits and limitations of different practical methods in the field of AI Business Transformation in the creation and interpretation of new insights, such as generative AI, large language models, strategy setting, scaling, market research, and cultural and business model transformation, and what should be done with regards to these for the discernment of knowledge.
LO3 LO2 LO2, LO3 LO2, LO3 LO1 LO2, LO3 LO2, LO3 LO3, LO4 LO2, LO3
Research critique
Critique current problems and new insights within AI Business Transformation, including in current literature, such as large language models, knowledge management, Environmental, Social, and Governance (ESG), data security, and the methodologies and paradigms used, to propose new theories and possible solutions, such as on big data management and systemic risk.
LO3, LO1, LO2 LO2, LO1 LO2, LO3, LO1 LO2, LO3, LO1 LO1 LO2, LO1, LO3 LO2, LO3, LO1 LO3, LO1, LO2, LO4 LO2, LO1, LO3

BCS Level 7 (Subject Benchmark Statement)

Descriptor
Core
DA71
Advanced Digital Acumen
Core
MA71
AI in Business: Strategies and Implementation
Core
DM71
Digital Delivery Management
Core
VS71
Interaction Design for User-Centred Systems
Core
FP10
Master's Final Project
Core
AL71
Advanced Leadership for Innovation
Optional
DP71
Data Programming (R and Python)
Optional
DE71
Digital Entrepreneurship
Optional
RE71
Modern Requirements Engineering
Intellectual skills
Examine, use, and appraise knowledge within the field of AI Business Transformation, including machine learning, digital integration, legacy systems, process redesign, and change management, to challenge existing understanding and practice.
LO3 LO2 LO2, LO3 LO2, LO3 LO1 LO2, LO3 LO2, LO3 LO3, LO4 LO2, LO3
Problem-solving
Demonstrate a high degree of independence and perceptiveness in evaluating and identifying problems related to AI Business Transformation, including ethics, budgetary limitations, digital upskilling, goal alignment, and quality assurance, to design suitable frameworks that balance and makes use of diverse and appropriate AI and other related methods to generate suitable digital artefacts.
LO3, LO4 LO2, LO3, LO4 LO2, LO3, LO5, LO4 LO4, LO2, LO3 LO1, LO2, LO3 LO5, LO2, LO4, LO3 LO2, LO3, LO4, LO5 LO3, LO6, LO4, LO5 LO2, LO3, LO4, LO5
Practical computing skills
Select computing techniques that are relevant and effective in overcoming both existing and foreseeable challenges in AI Business Transformation, including large language models, cloud computing, AI, big data, IoT, and mobile integration, and addressing challenges, such as competitive advantage, cost and time.
LO4 LO3, LO4 LO5, LO4 LO4 LO2, LO3 LO5, LO4 LO4, LO5 LO6, LO5 LO4, LO5
Autonomy and self-direction
Plan what needs to be done in AI Business Transformation, including independently learning new AI, computing and digital frameworks, and efficiently managing change across concurrent AI software and digital platforms, in order to problem solve with a high level of autonomy, foreseeing and proposing effective AI solutions that are likely to arise in various contexts, such as the professional, legal, and ethical, so that objectives can be delivered.

LO5, LO6, LO4 LO3, LO4, LO5 LO6, LO5, LO4, LO7 LO4, LO5 LO4, LO2, LO3, LO5 LO5, LO6, LO7, LO4 LO6, LO4, LO5 LO6, LO7, LO5 LO6, LO4, LO5
Professional practice
Demonstrate a commitment to keep up-to-date with the latest issues and best practice with the fields of AI Business Transformation, such as big data, neural networks, quantum and edge computing, cyber security, generative AI, Web3, AI ethics and regulation, data storage, and best practices in a range of professional, regulatory, and legal contexts, so that reflection can be used to effectively identify and apply solutions to problems that may prevent objectives from being delivered.

LO5, LO6 LO5 LO6, LO7 LO5 LO4, LO5 LO6, LO7 LO6 LO7 LO6
Professional communication
Communicate complex applied AI Business Transformation concepts effectively to diverse audiences, including those from outside the field, such as adeptly explaining how AI technology can be used to redesign business processes, and achieve increasing efficiency and competitive advantage, using clear language tailored to the contextual understanding of listeners.
LO5, LO6 LO5 LO6, LO7 LO5 LO4, LO5 LO6, LO7 LO6 LO7 LO6

CMI Level 7 (Subject Benchmark Statement)

Descriptor
Core
DA71
Advanced Digital Acumen
Core
MA71
AI in Business: Strategies and Implementation
Core
DM71
Digital Delivery Management
Core
VS71
Interaction Design for User-Centred Systems
Core
FP10
Master's Final Project
Core
AL71
Advanced Leadership for Innovation
Optional
DP71
Data Programming (R and Python)
Optional
DE71
Digital Entrepreneurship
Optional
RE71
Modern Requirements Engineering
Knowledge and understanding
Critically evaluate the principles and practices underpinning AI-driven business transformation, developing deep insights into how organisations adapt to shifting economic, social, and technological landscapes. Formulate comprehensive perspectives on organisational challenges, synthesising advanced knowledge to ensure solutions balance long-term innovation, resource optimisation, and strategic agility, while addressing evolving digital, ethical, and societal priorities.
Skills
Exhibit advanced technical and managerial skills by applying innovative approaches in AI and digital transformation to address evolving business contexts. Proficiently design and implement adaptable systems, manage dynamic projects, and foster creative strategies that optimise organisational resilience and user engagement. Combine computational expertise and strategic leadership to deliver forward-thinking solutions that respond to modern organisational and societal needs.
Critical perspective
Critically appraise current issues and emerging trends in AI and business transformation, leveraging cutting-edge research and innovative practices. Develop independent strategies that embrace adaptability and creativity to address complex, interconnected challenges. Generate forward-looking insights that account for diverse perspectives, evolving business structures, and the necessity for sustainable, user-centred innovation in uncertain and dynamic environments.
Original application
Apply advanced knowledge creatively to address complex, real-world scenarios in business transformation. Innovate and design tailored solutions, demonstrating originality in tackling multifaceted challenges. Generate adaptable strategies that integrate technological precision and organisational insight, ensuring these align with shifting market dynamics, evolving expectations, and a future-oriented approach to creating enduring organisational and societal value.
Practical application
Implement established research techniques to evaluate and interpret data, creating actionable insights that respond to complex and dynamic challenges. Design and deliver innovative projects that reflect evolving business needs, integrating AI and strategic approaches to create meaningful impact. Demonstrate a sophisticated understanding of sustainable practices, user-centric solutions, and practical resilience in professional contexts, ensuring measurable, long-term success.
Ethical values
Lead with integrity by embedding ethical considerations into AI strategies, fostering transparency, fairness, and a deep commitment to balancing innovation with societal well-being. Critically engage with ethical dilemmas and ensure solutions are adaptable to shifting regulatory, environmental, and societal landscapes. Champion inclusive, long-term practices that reflect resilience, accountability, and the evolving priorities of a connected global economy.
Global values
Integrate an international perspective by addressing the challenges of interconnected economies, diverse cultures, and evolving societal expectations. Formulate strategies that respond to dynamic market forces, global sustainability needs, and shifting user expectations. Demonstrate creativity and adaptability in navigating complex cross-border environments, ensuring innovative and resilient solutions align with the requirements of a globalised and interdependent world.

Mode(s) of Study

Students can choose either of the following. Entry points can be at the beginning of any semester in the School's academic calendar (February, June or October) where an entry cohort is provisioned. For each semester of each year, the School's website will set out whether an entry cohort for this programme is scheduled.

Please view the programme page on our website for the latest information.

Title Duration Location Asynchronous learning Synchronous learning
1 Full-time Blended Learning
Ideal for students who can fully commit to weekly classes (in-person or remotely) and willing to immerse in full-time education.
12 months
Students can begin in any of our standard semesters, on the first of February, June or October, and complete the programme in 3 consecutive semesters, studying 60 credits per semester.
On-campus or online. All modules delivered at LSI will allow remote attendance in order to promote flexibility, access, and participation. Our advanced, AI-enhanced online learning platform elevates student engagement. It features the Interactive Knowledge Graph (IKG) for efficient, engaging knowledge attainment, alongside AI-guided activities like quizzes, discussions, Q&A, and immediate feedback on practical tasks, supplementing synchronous classes. Rather than conventional lectures, our academic staff and subject-matter experts focus on interactive methods in live classes, facilitating problem-solving, role-play, case studies, discussions, and teamwork. Students attend these weekly sessions to engage in structured social learning. Our hybrid approach blends the convenience of digital resources with the motivation of human interaction.
2 Part-time Blended Learning
Ideal for students busy with work/life commitments, but who can commit to weekly classes (in-person or remotely).
24 months
Students can begin in any of our standard semesters, on the first of February, June or October, and complete the programme within 2 years. Per semester, they typically study 30 credits. Each taken module should begin and end within the same semester, except the final project, which can be stretched across two.
On-campus or online. All modules delivered at LSI will allow remote attendance in order to promote flexibility, access, and participation. Our advanced, AI-enhanced online learning platform elevates student engagement. It features the Interactive Knowledge Graph (IKG) for efficient, engaging knowledge attainment, alongside AI-guided activities like quizzes, discussions, Q&A, and immediate feedback on practical tasks, supplementing synchronous classes. Rather than conventional lectures, our academic staff and subject-matter experts focus on interactive methods in live classes, facilitating problem-solving, role-play, case studies, discussions, and teamwork. Students attend these weekly sessions to engage in structured social learning. Our hybrid approach blends the convenience of digital resources with the motivation of human interaction.

Credit Structure

The following are examples only. For more information, please read the school's registration regulations .

Full-time Blended Learning Example 1 (total of 180 credits)
Taught modulesFinal project
Year 1 Semester 160
Year 1 Semester 260
Year 1 Semester 360
Total12060
Full-time Blended Learning Example 2 (total of 180 credits)
Taught modulesFinal project
Year 1 Semester 160
Year 1 Semester 23030
Year 1 Semester 33030
Total12060
Part-time Blended Learning Example (total of 180 credits)
Taught modulesFinal project
Year 1 Semester 130
Year 1 Semester 230
Year 1 Semester 330
Year 2 Semester 130
Year 2 Semester 230
Year 2 Semester 330
Total12060

Teaching Systems

Name Workload Assessment Modules
Foundational 15

Standard LSI teaching system for 15-credit modules for foundational subjects focusing mostly on understanding key concepts, with minimal hands-on technical skills or professional practice.

57h πŸ•‘ Independent reading, exploration and practice
1.5h πŸ•‘ Introductory lecture
9h πŸ•‘ AI formative assessment
18h πŸ•‘ Concept learning (knowledge graph)
18h πŸ•‘ Individual or group assignments
24h πŸ•‘ Summative assessment
13.5h πŸ•‘ Workshop/Lab Sessions
9h πŸ•‘ Case Study Review
Total: 150 hours
50% K T I P Individual Essay Coursework
50% I K P Invigilated Exam
DA71
Professional 15

Standard LSI teaching system for 15-credit modules for professional subjects focusing on understanding key concepts and processes, and developing management or analytical skills.

18h πŸ•‘ Concept learning (knowledge graph)
9h πŸ•‘ AI formative assessment
61.5h πŸ•‘ Independent reading, exploration and practice
9h πŸ•‘ Case Study Review
13.5h πŸ•‘ Workshop/Lab Sessions
24h πŸ•‘ Summative assessment
1.5h πŸ•‘ Introductory lecture
13.5h πŸ•‘ AI Roleplay
Total: 150 hours
50% I T K P Simulation and Role Playing Assessment
50% I K P Invigilated Exam
MA71, AL71, RE71
Professional 30

Standard LSI teaching system for 30-credit modules for foundational subjects focusing mostly on understanding key concepts, with minimal hands-on technical skills or professional practice.

146h πŸ•‘ Independent reading, exploration and practice
1.5h πŸ•‘ Introductory lecture
13.5h πŸ•‘ Workshop/Lab Sessions
18h πŸ•‘ Case Study Review
40h πŸ•‘ Summative assessment
36h πŸ•‘ Concept learning (knowledge graph)
18h πŸ•‘ AI formative assessment
27h πŸ•‘ Individual or group assignments
Total: 300 hours
50% K T I P Individual Essay Coursework
50% I K P Invigilated Exam
DM71, DE71
Technical 15

Standard LSI teaching system for 15-credit modules for subjects requiring hands-on technical skills.

18h πŸ•‘ Concept learning (knowledge graph)
9h πŸ•‘ AI formative assessment
1.5h πŸ•‘ Introductory lecture
13.5h πŸ•‘ Workshop/Lab Sessions
18h πŸ•‘ Individual or group assignments
30h πŸ•‘ Summative assessment
51h πŸ•‘ Independent reading, exploration and practice
9h πŸ•‘ Case Study Review
Total: 150 hours
40% I K P Invigilated Exam
60% I T P K Technical Analysis and Solution Assessment
VS71, DP71
Postgraduate Final Project 60

A practical project module, suitable for the final project of a specialist master's programme, with one-to-one supervisory meetings every 2 weeks for 45 minutes per session on average. This involves learning the concepts in the glossary of research methods and best-practices.

276h πŸ•‘ Independent reading, exploration and practice
4.5h πŸ•‘ One-to-one project supervision meeting
1.5h πŸ•‘ Introductory lecture
18h πŸ•‘ Concept learning (knowledge graph)
300h πŸ•‘ Individual Research
Total: 600 hours
50% I K P Research Module Assessment: Final Report
15% K I P Research Module Assessment: Presentation
35% T I K P Research Module Assessment: Artefact
FP10

Teaching and Learning Methods

Each module will specify its teaching system, including weighted teaching and learning activities, which will be drawn from the following pool as appropriate.

Name Description
1 Introductory lecture

This is the first weekly session, dedicated to providing a comprehensive introduction to the module. The module leader will present an overview of the subject, elucidating its importance within various digital engineering professions and its interrelation with other modules. Students will need no preparation ahead of attending this session.

The module leader will provide a structured breakdown of the content to be covered in the subsequent 9 sessions. Students will also receive an outline of the essential reference materials, alongside suggestions for supplementary reading. The format and criteria for the summative assessment will be delineated, followed by a dedicated period for questions and answers.

A recording of the session will be available to facilitate async engagement for any other student who missed the class, also offering an opportunity to review the content again.

2 Concept learning (knowledge graph)

Our institution's approach to teaching is primarily based on flipped learning. Ahead of each weekly session (Workshop/Lab), students will be required to study the essential concepts that are used in the coming session so they are familiar with the theories and ideas related to that session. The study material will be in the form of written content, illustrations, pre-recorded lectures and tutorials, and other forms of content provided through the AGS.

This content is self-navigated by the students, accommodating different learning styles and schedules, allowing students to watch or listen to them at their own pace and review them as needed.

3 AI formative assessment

Once each concept of the theory is studied, students will be prompted to engage in formative assessment with instant AI feedback. They include multiple-choice questions, socratic questions and answers, written questions, role-play and other AI-assisted practice scenarios.

The purpose of this automated formative assessment is to provide students with immediate feedback on their understanding of module material and highlight any areas that need support or further study. They are also used to track student progress, boost motivation and promote accountability.

4 Case Study Review

In this learning activity, students explore recent real-world case studies relevant to their course topic. The case studies will have been selected and curated by the module leader to represent up-to-date examples. They guide students through key details, contextual factors, and outcomes. This approach enhances students' understanding of current industry trends, challenges, and solutions, preparing them for real-world scenarios they may encounter in their future careers.

The learning experienced will be augmented by AI (virtual private tutor) allowing the students to critically engage with the content and discuss the case studies.

5 AI Roleplay

AI Roleplay is an innovative educational approach that leverages artificial intelligence to create immersive, interactive learning experiences for university students. In this activity, students are presented with a professional challenge or scenario relevant to their course. They then engage in a simulated interaction with one or more AI-powered characters, each programmed to embody specific roles, personalities, and expertise.

These AI characters respond dynamically to the student's inputs, creating a realistic and adaptive roleplay environment. Students can practice their communication skills, decision-making, problem-solving, and other professional competencies in a safe, low-stakes setting. After the session, the AI system provides detailed feedback on the student's performance, highlighting strengths and areas for improvement. This personalised guidance helps students refine their skills and gain confidence in handling real-world professional situations.

6 Workshop/Lab Sessions

Those studying in the blended learning mode will attend these 9 weekly classes (in person or remotely) during weeks 2 to 10. These sessions will complement the theory already studied during the preceding week (in our flipped-learning model), with discussions, analysis, practice or experience . They will be interactive and participatory, rather than one-way lectures. There will also be an opportunity for Q&A in every session. Depending on the nature of the content, challenges and learning activities will be pre-designed to apply flipped learning. They may include hands-on project work, group discussions or debates, roleplay, simulation, case studies, presentations, and other learning activities and opportunities. These workshops present an opportunity to apply critical thinking and problem-solving skills. They also encourage collaboration and foster a sense of community among students.

7 Live lecture

Live lectures are used to facilitate discussions and provide students with an opportunity to ask questions and engage with module material in real-time. Instructors often use live lectures to clarify complex ideas, provide examples, and encourage critical thinking. Live lectures can also be recorded and made available for students to review later, allowing them to revisit important concepts or catch up on missed material.

8 Individual or group assignments

Each Workshop/Lab session will be followed by an assignment. Assignments are used to reinforce learning and encourage independent thinking and problem-solving. They help the students identify the gaps in their understanding of the subject and provide them with an opportunity to apply what they have learned in a practical setting.

Assignments can be individual or group-based (teams of 2 to 4). They can take many forms, including essays, presentations, or projects. When they are group-based, teams will be randomly picked by AGS, in order to promote broader teamwork practice. Assignment files will be uploaded to AGS by the students ahead of the next weekly session. Feedback will be provided on each submitted assignment.

9 Seminars

These are typically student-led presentations showcasing their research on specific module topics. After a period of independent exploration, students craft a structured presentation to share their findings with peers and instructors. Following the delivery, an interactive Q&A segment tests their understanding and adaptability to spontaneous queries. Feedback from the module leader and peers evaluates the research's depth, presentation efficacy, and Q&A responses.

Their purpose is to deepen subject knowledge but also hone presentation and critical thinking skills, preparing students for future academic and professional engagements.

10 Independent reading, exploration and practice

This activity challenges students to engage with the reference material and independently explore and analyse academic literature related to the course topic. Students are expected to select relevant sources, practice critical reading skills, and where applicable technical skills, and synthesise information from multiple references. This is an opportunity to enhance research abilities, critical thinking, and self-directed learning skills while broadening and deepening subject knowledge.

11 Individual Research

Part of the credit hours on a module are also made up of self-guided individual research. These hours enable students to look at what components they are going to study on a module and ascertain for themselves what they will believe will additionally benefit their leaning. This may be prior to attending a lecture or workshop, following their use of a concept learning (knowledge graph) where they identify that additional reading may deepen their understanding of a concept, or after a seminar has taken place. Students will also use self-guided individual research to prepare for summative assessments. In the main, as this is self-guided, students will decide for themselves what additional research they will do. This will require them to identify what concepts or knowledge, skills, and competencies they want to deepen, what resources will assist them, such as books, videos, or online sources, how they will use these, and what the outcomes should be. Students may decide to work with their peers in undertaking this individual research – and they can ask their tutors for guidance and help. Students may also have to use some of their self-guided individual research to prepare for lectures, workshops, or assignments, or for work their tutors have set them.

12 Summative assessment

Summative assessments are used to evaluate student learning at the end of a module. These assessments can take many forms, including exams, papers, or presentations. Instructors can use summative assessments to measure whether students have achieved the learning outcomes for the module and provide them with a sense of their overall progress. Summative assessments can also be used to evaluate the effectiveness of the teaching methods used in the module.

13 One-to-one project supervision meeting

During these meetings, the student presents their recent progress, including any research findings, data analysis, or draft sections of their work. The supervisor provides feedback, addressing both strengths and areas needing improvement. These sessions often involve discussing challenges faced by the student, strategising solutions, and setting goals or deadlines for the next phase of work. The supervisor may also offer insights on relevant literature, methodologies, or academic writing techniques.

Assessment Formats

Each module will specify its weighted summative assessment formats which will be drawn, as appropriate, from the following pool.

Name Outcomes Modules
1 Individual Essay Coursework
This individual coursework requires students to produce an essay based on a specific topic in the module. Its purpose is to evaluate the student's ability to independently interpret a technical question and research, analyse, and articulate their understanding and opinions. It assesses the learning outcomes, in particular, through interpretation, research, critical thinking and writing skills, and also through the ability to form and express coherent arguments. Students are set an essay title based on a discrete technical area in the module and have to research and write an answer that evaluates the question from competing perspectives, drawing upon appropriate sources. Students must be aware of the learning outcomes of the module in writing their essay as their marks will be based on the extent to which they demonstrate they have met the outcomes. Please see the marking calculation below for further information. Students will have a workshop in the module on essay writing, in particular, how to analyse, research and structure their essay, and what markers are looking for. The module leader will also provide further support whilst students work on their essay. Students will be shown examples of successful and unsuccessful essays. They will have the opportunity to present their thoughts in class and receive peer and tutor feedback too. Throughout the programme, students will regularly receive formative assessment tasks and feedback opportunities to gain actionable feedback (from self, peers and staff) on their own work to indicate how to improve future work and learn how to give constructive feedback to other people.
K T I P DA71, DM71, DE71
2 Invigilated Exam
This is a time-limited and closed-book exam with a mix of multiple-choice and analytical written questions that students undertake during the summative assessment period as scheduled under the School’s remote invigilation conditions to ensure quality and academic integrity. The exam enables the students to demonstrate their successful attainment of the module learning outcomes, primarily related to knowledge and understanding, and secondarily related to Professional/Transferable Skills. The analytical written questions will consist of problem questions representing issues and dilemmas students are likely to encounter in professional life and students have to synthesise and apply what they have learnt on the module in order to produce sound and reasonedΒ judgements with respect to the problem. To enable the students to practice and prepare, various formative assessment activies, including quizzes and a AI-augmented assignments and mock exams are built into the module. Additionally, throughout the course, students will regularly receive feedback on their knowledge and assignments from AI as well as peers and staff to indicate how to improve future work and how to give constructive feedback to others.
I K P DA71, MA71, DM71, VS71, DP71, AL71, DE71, RE71
3 Simulation and Role Playing Assessment
This assessment requires students to engage in AI-assisted simulations or role-playing scenarios that mirror real-world professional situations. It evaluates their practical knowledge, decision-making, and adaptability. Students are given a detailed brief outlining a dynamic, evolving problem involving various issues like business, legal, professional, and ethical considerations. They must interpret the situation, consult relevant sources, and present a solution based on their knowledge from the module. At the start of the module, students attend a workshop on effective participation in simulations aligned with the learning outcomes. Throughout the term, they practice through formative simulations, receiving feedback from AI, peers, staff, and their module leader.
I T K P MA71, AL71, RE71
4 Technical Analysis and Solution Assessment
This assessment requires students to develop a solution to a complex problem within a simulated domain, followed by a detailed analysis and reflection on their design and its theoretical underpinnings. The aim is to assess students' abilities to design practical solutions, critically analyse their work, and articulate their understanding of the technical and theoretical aspects of the module.
I T P K VS71, DP71
5 Research Module Assessment: Final Report
Students will be required to submit a final report. The purpose of the final report is to assess how students conducted independent research, applied critical thinking, and demonstrated a systematic understanding of their subject of study within computer science in producing their artefact. The final report also allows students to showcase their originality in applying knowledge and techniques in producing the artefact, as well as their proficiency in utilizing established research methods and tools. It provides an opportunity for students to communicate their research findings, interpretations, and conclusions effectively, both to specialist and non-specialist audiences. Students will have a workshop in the module on how to prepare, structure, and submit a final report, and your module leader will be able to provide you with further support whilst you work on it. You will be shown examples of successful and unsuccessful final reports. You will also have the opportunity to present your work during your programme modules and receive peer and tutor feedback. Throughout the programme, students will regularly receive formative assessment tasks and feedback opportunities to gain actionable feedback (from self, peers and staff) on their own work to indicate how to improve future work and learn how to give constructive feedback to other people.
I K P FP10
6 Research Module Assessment: Presentation
Students must deliver a presentation on their artefact. The purpose of the presentation is to assess their ability to communicate their research findings, methodologies, and implications effectively to a diverse audience in a concise, professional, and engaging manner. The presentation stems from the research problem statement set out in the Final Project proposal, which require students to come up with a practical solution in the form of an artefact that uses the implementation lifecycle. It is envisaged that the Final Project will require students to apply the tools and architectures they have learnt in their programme modules to diagnose problems, undertake requirements analyses, and produce an artefact. This presentation will require them to expand on how they strategized and overcame practical, professional, ethical and other issues and constraints they may have come across. Students will have a workshop in the research module on how to make an effective presentation, and their module leader will be able to provide them with further support whilst they work on their project. They will have the opportunity to present their work in their programme modules and receive peer and tutor feedback. Throughout such programme modules, students will also regularly receive formative assessment tasks and feedback opportunities to gain actionable feedback (from self, peers and staff) on their own work to indicate how to improve future work and learn how to give constructive feedback to other people.
K I P FP10
7 Research Module Assessment: Artefact
For the research project, students must submit an artefact that meets the problem statement that they articulate in their final report. You will have a workshop on the module on how to ideate and design practical solutions for problems using an implementation lifecycle and how to succeed with your project. Throughout the programme, in particular, their programme modules, students will regularly receive formative assessment tasks and feedback opportunities to gain actionable feedback (from self, peers and staff) on their own work to indicate how to improve future work and learn how to give constructive feedback to other people.
T I K P FP10

Marking Criteria

The following grid sets out the School’s marking criteria for FHEQ - L7.

Outcome Expectation Distinction (70 - 100%) Merit (60 - 69%) Pass (50 - 59%) Fail (0 - 49%)
Knowledge and Understanding Systematic and critical understanding of relevant knowledge, concepts, new insights, and developments in the discipline, including within current literature, and also incorporating interrelationships with other relevant disciplines. Outstanding systematic and critical understanding of relevant knowledge, concepts, new insights, and developments in the discipline, including within current literature, and also incorporating interrelationships with other relevant disciplines. Very good systematic and critical understanding of relevant knowledge, concepts, new insights, and developments in the discipline, including within current literature, and also incorporating interrelationships with other relevant disciplines. Satisfactory systematic and critical understanding of relevant knowledge, concepts, new insights, and developments in the discipline, including within current literature, and also incorporating interrelationships with other relevant disciplines. Little to no systematic and critical understanding of relevant knowledge, concepts, new insights, and developments in the discipline, including within current literature, and also incorporating interrelationships with other relevant disciplines.
Intellectual Skills Ability to analyse, apply, and critically evaluate knowledge, techniques, and practices, in unpredictably complex contexts and to existing discourses and methodologies with intellectual skill and some originality. Exceptional analysis, application, and critical evaluation of knowledge, techniques, and practices in unpredictably complex contexts and to existing discourses and methodologies, with a high-level of intellectual skill and some originality. Sound analysis, application, and critical evaluation of knowledge, techniques, and practices in unpredictably complex contexts and to existing discourses and methodologies, with very good intellectual skill and some originality. Acceptable analysis, application, and critical evaluation of knowledge, techniques, and practices in unpredictably complex contexts and to existing discourses and methodologies, with satisfactory intellectual skill and limited originality. Little to no analysis, application, and critical evaluation of knowledge, techniques, and practices in unpredictably complex contexts and to existing discourses and methodologies, with a very narrow level of intellectual skill and no originality.
Technical/Practical Skills Comprehensive and critical understanding and organisation of specialist techniques and advanced methodologies in the discipline, including those related to critical thinking, specialist projects, research design, problem-solving, and techniques, and a practical understanding of how they should be selected and used to interpret incomplete knowledge and create effective artefacts. Outstanding critical understanding and organisation of specialist techniques and advanced methodologies in the discipline, including high-level critical thinking, specialist projects, research design, problem-solving, and techniques, and a thorough practical understanding of how they should be selected and used to interpret incomplete knowledge and create effective artefacts. Very good critical understanding and organisation of specialist techniques and advanced methodologies in the discipline, including sound critical thinking, specialist projects, research design, problem-solving, and techniques, and a very good practical understanding of how they should be selected and used to interpret incomplete knowledge and create effective artefacts. Acceptable critical understanding and organisation of specialist techniques and advanced methodologies in the discipline, including satisfactory critical thinking, specialist projects, research design, problem-solving, and techniques, and acceptable understanding of how they should be selected and used to interpret imcomplete knowledge and create effective artefacts. Limited or no critical understanding and organisation of specialist techniques and advanced methodologies in the discipline, including little or no critical thinking, , specialist projects, research design, problem-solving, and techniques, and a limited to no practical understanding of how they should be selected and used to interpret incomplete knowledge and create effective artefacts.
Professional/Transferable Skills Ability to show awareness, autonomy and self-direction in development and learning, tackling and solving complex problems, approaching and implementing tasks in diverse and unpredictable contexts, including professional, legal and ethical, critically evaluating own and others capabilities, and with an ability to communicate work to specialist and non-specialist audiences. Exceptional ability to show awareness, autonomy and self-direction in development and learning, taking a thorough proactive approach to tackling and solving complex problems, approaching and implementing tasks in diverse and unpredictable contexts at a very high level, including professional, legal and ethical, exceptional critical evaluation of own and others work, and with a thorough ability to communicate work to specialist and non-specialist audiences Very good ability to show awareness, autonomy and self-direction in development and learning, taking an effective and proactive approach in tackling and solving complex problems, approaching and implementing tasks in diverse and unpredictable contexts at a very good level, including professional, legal and ethical, very good critical evaluation of own and others work, and with a very good ability to communicate work to specialist and non-specialist audiences. Satisfactory ability to show awareness, autonomy and self-direction in development and learning, taking a good approach in tackling and solving complex problems, approaching and implementing tasks in diverse and unpredictable contexts at an acceptable level, including professional, legal and ethical, satisfactory critical evaluation of own and others work, and with a good ability to communicate work to specialist and non-specialist audiences. Little to no ability to show awareness, autonomy and self-direction in development and learning, taking a limited or no proactive approach in tackling and solving complex problems, approaching and implementing tasks in diverse and unpredictable contexts at a very limited level, including professional, legal and ethical, little to no critical evaluation of own and others work, and with little to no ability to communicate work to specialist and non-specialist audiences.

Programme Contacts

Role Description Name Email
Programme Director Oversees the overall direction and integrity of the programme. Somayeh Aghnia somayeh@geeks.ltd.uk

Approval

Core > Programme spec > Msc