AI and Machine Learning

BSc (Single Honours)
CertHE
DipHE

Entry tariff:

112–128 UCAS points (or equivalent)

UCAS Code:

TBC

Start date(s):

September 2026

Develop the digital and AI skills that employers are looking for and learn how to apply them in real-world technology roles.

The BSc (Hons) Artificial Intelligence and Machine Learning is a practical computing degree designed for motivated learners, including those with no prior AI or coding experience. The course takes a step-by-step approach, helping you build confidence and competence in a supportive learning environment. You’ll gain hands-on experience, work on real projects, and create a portfolio that demonstrates your skills to future employers.

Throughout the programme, you’ll explore how AI and machine learning are used as part of wider software and data systems, and how to apply these technologies responsibly in real organisations. You’ll start with a strong foundation in software development and computing, then move on to applied AI, machine learning, and data-driven technologies. Key areas include:

  • Practical AI and machine learning in software systems
  • Data-driven applications and computational intelligence
  • Generative AI and modern industry workflows

Did you know?

You’ll apply programming and computing skills to real projects using industry-standard tools like Python and SQL, while also learning essential areas such as data management, cloud systems, and secure computing. Every project is designed to build tangible evidence of your abilities, helping you create a portfolio that supports your future career.

This degree prepares you for a wide range of entry-level roles in business, industry, and the public sector, including software development, data analysis, and technology support. You’ll also develop professional skills such as teamwork, problem-solving, ethical computing, and digital innovation.

By the time you graduate, you’ll be a confident, job-ready computing professional with practical experience, a portfolio of work, and the skills to integrate AI tools effectively into modern digital systems. With effort and initiative, you’ll be well-positioned to start a career in a technology-driven workplace.

30 credits

This module introduces Computer Science as a professional and academic discipline. You will learn the fundamentals of computer systems and networks and gain practical skills that will be essential for your future in academia and industry.

You will develop and apply your knowledge and skills through a series of practical 'challenges'. Through guided activities, you will be able to recognise and understand the building blocks of the computer-based systems that are prevalent today. Practical skills are complemented by industry case studies through which you will identify and analyse the social, legal, ethical, and environmental impact of computing.

You will have the opportunity to develop your skills and knowledge through activities including:

  • Using the command line interface.
  • Installing an open-source operating system.
  • Creating wired and wireless Local Area Networks (LANs).
  • Troubleshooting connected devices, including camera and sound modules.
  • Identifying and understanding the fundamental components of a computer (e.g., RAM, CPU, storage).
  • Undertaking performance measurement and benchmarking.
  • Developing your awareness of cyber security and the foundations of computer systems, including logic and assembly languages.

You will also investigate industry case studies, through which you will gain a breadth of understanding of the place of computer-based systems in industry and society and how professionals can influence issues such as environmental sustainability, equality and diversity, and the global economy.

Teaching and learning

The module is delivered via various activities that you will undertake in small groups in a carousel format. You will be able to prepare in advance for each activity, which will be supported by step-by-step instructions and background content in the form of videos and presentations. 

Lecturers and lab demonstrators will help you in class.

Assessment

This module will be assessed by a knowledge-based in-class test (40%) and a journal/reflection, either written or audio/visual presentation (60%).

30 credits

Software development and programming form the foundation of all Computer Science studies, from web development to artificial intelligence. This module introduces you to the main concepts of computational thinking and their translation into the fundamentals of programming.

You will learn to create pseudocode and Python programs while exploring how programming languages provide essential resources such as documentation, libraries, integrated development environments (IDEs), and debugging tools.

The emphasis will be on core programming principles rather than language-specific details; however, Python will be the primary language for class examples, laboratory exercises, and coursework submissions. Python has been chosen for its popularity with employers, widespread use, and its syntax being particularly suitable for novice learners. The module is designed to future-proof your skills and provide a solid foundation in programming for the remainder of your studies.

In addition to technical skills, the module supports you in developing key academic and professional competencies for computing, including finding, evaluating, and using technical information, becoming resourceful, and building resilience as an independent problem-solver. You will also be introduced to the use and integration of artificial intelligence and AI-based tools in programming.

Teaching and learning

Lecturer-led sessions that deliver the key knowledge-based learning outcomes through explanations, live coding demonstrations, worked examples, and individual practice activities.

Hands-on laboratory practice in which you will apply the knowledge areas and develop practical programming skills through guided exercises and problem-solving tasks.

You'll also have 30 minutes of online learning to help you prepare for classes and revision. Material includes video tutorials, code walkthroughs, and interactive presentations.

Assessment

This module will be assessed by a computational problem-solving portfolio (60%) and a live programming challenge with code review (40%).

30 credits

This module introduces you to foundational tools and processes required to develop software applications aimed at specific users. You will cover the basics of designing user interfaces, creating web pages, understanding databases, and linking 'frontend' and 'backend' code.

You will have the opportunity to apply your knowledge from software development to real-world problems and consider the needs of users and stakeholders.

There is a strong focus on databases, including database modelling and design. You will also further develop your programming skills and knowledge of industry best practices, including containerisation, version control, debugging, testing, and coding standards.

By the end of this module, you will have built your own fully functional, user-tested web application from scratch, integrating a database and secure backend logic.

Teaching and learning

The module is delivered via a series of practical lab sessions based on weekly tasks and supported by screencasts and online coding resources that develop your skills and knowledge.   

The module employs a project-based approach to build the foundational knowledge and practical skills students need. This structure ensures you not only understand the general importance of the material but also gain hands-on experience applying core concepts.

Assessment

This module will be assessed by coursework (40%) and web application (60%).

30 credits

This module introduces you to the mathematical and algorithmic foundations that power Computer Science. You will explore how mathematical reasoning shapes the way computers solve problems, learning to express real-world challenges in precise, logical, and computable forms.

Through an engaging mix of lectures, seminars, and practical labs, you will build confidence in key areas such as logic, set theory, proof techniques, and discrete mathematical structures. These ideas form the backbone of algorithm design, from creating efficient data structures to developing algorithms for optimization, automation, and data processing.

The module nurtures your computational thinking, analytical precision, and creative problem-solving skills, showing how mathematical concepts translate directly into the ability to design intelligent solutions for complex digital problems.

By the end of this module, you will be able to:

  • Understand the core mathematical concepts that underpin Computer Science.
  • Recognise how discrete structures represent and organise data.
  • Design, analyse, and evaluate algorithms for real-world applications.
  • Apply logical and mathematical reasoning to develop reliable computational solutions.
  • Appreciate the importance of expressing problems mathematically so that they can be solved algorithmically.
  • Develop the confidence to approach computing challenges with creativity, structure, and precision.

Ultimately, this module bridges mathematical theory and algorithmic practice, helping you see how abstract ideas can drive innovation and problem-solving in today's digital world. You will develop an appreciation for and practical skills in the core logic and reasoning that underpins everything from encryption to artificial intelligence.

Teaching and learning

The module employs a problem-centric pedagogical approach, introducing mathematical concepts and methods through practical programming exercises and applied problem-solving.

This approach explicitly connects learning activities to assessment criteria, enabling you to recognise and apply your developing mathematical knowledge in computing contexts.

Assessment

This module will be assessed by an in-class test (50%) and a algorithm design project (50%).

These are the current planned modules on this course and may be subject to change.

30 credits

This module introduces you to Artificial Intelligence (AI), exploring how computers make rational decisions, and Data Analytics, which involves interpreting diverse datasets to draw meaningful conclusions.

The module integrates fundamental AI concepts with practical data analytics techniques, preparing you for advanced study in machine learning and real-world applications in data science.

You will explore the fundamental question of how rational behaviour is defined and how challenging AI problems are defined. This includes understanding agent-based systems (computer programs that respond and change behaviour according to their environment) and stochastic problems (situations where randomness or uncertainty plays a role).

The module examines AI problem spaces (the entire set of possible states or moves a system can make) and methods for efficiently searching these spaces.

You will investigate complex scenarios like two-player games, constraint satisfaction problems (finding a solution while respecting specific limits or conditions), and probabilistic reasoning, including Bayes' theorem, that allow systems to make decisions under uncertainty. Ethical implications of AI decision-making, including fairness, transparency, and accountability, will also be considered throughout the module.

Alongside AI concepts, you will develop practical skills in data analytics. The module will ensure you have good skills in data wrangling (cleaning and transforming raw data), data visualisation, descriptive statistics, and exploratory data analysis (EDA).

You will also gain experience in identifying, sourcing, and collecting appropriate datasets, with consideration for data quality, ethics, and legal responsibilities such as data privacy and bias. You will work with various data sources, applying appropriate analytical tools and statistical tests to solve problems. The module further introduces how AI techniques, such as pattern recognition and basic machine learning approaches, can be applied within data analytics to extract insights from complex datasets.

Teaching and learning

Teaching combines seminars and practical laboratory sessions with problem-based learning activities, encouraging you to apply AI and data analytics methods to authentic challenges.

Seminars will introduce key concepts, algorithms, and theoretical foundations through discussion, worked examples, and group activities. Laboratories will focus on hands-on implementation of AI techniques and data analytics methods using appropriate programming languages and tools, including Python, relevant AI libraries, and data analytics frameworks.

Independent study, guided tasks, and continuous formative feedback support your confidence development. All resources and recordings will be accessible online.

Assessment

This module will be assessed by an AI problem solving and search video recording (50%) and a data analytics project (50%).

Module details to be confirmed.

Module details to be confirmed

Module details to be confirmed.

These are the current planned modules on this course and may be subject to change.

This course offers all students the option of a one-year paid work placement, to boost your employability even further. If you choose this route, you will take the placement following year two of your course, and then return to complete your degree.

Why take a placement?

A placement year is the perfect opportunity to gain valuable work experience, to build on the career skills we will teach you on this degree. The connections you make on the placement will improve your career prospects further, and equip you with the skills you need to secure graduate-level employment.

How we support you

The University's Placement and Work Experience Team are experts at helping you to secure a placement. They will work closely with you from the start, helping you research potential employers, discover placement opportunities, create and pitch your CV, and will coach you to perform well in interviews. We aren't able to guarantee a placement, but our sector-leading advisors will give you the best possible chance of securing one.

Find out more about how we'll support you

We understand that your plans might change once you start your programme. If you decide not to do a placement, you will have the option of completing the three year version of your programme.

Whatever your choice, you will have access to many opportunities for work experience through our Placement and Work Experience Team, and access to face-to-face and 24/7 online careers support.

30 credits

This module introduces you to the fundamental principles, algorithms, and practices of Machine Learning (ML), the field where systems learn from data to make predictions, whilst integrating the art and science of Data Visualisation to interpret and communicate insights effectively.

Through a balanced blend of theory and practice, you will explore the end-to-end ML workflow: from data pre-processing (cleaning and organising data) and model development to evaluation, interpretation, and visual storytelling.

You will gain practical experience with a wide range of ML techniques including regression (predicting continuous values) and classification models (predicting categories), neural networks (systems modelled after the human brain), clustering, unsupervised learning (finding patterns in unlabelled data), reinforcement learning (systems learning through trial and error), and deep learning (advanced neural networks).

Additionally, you will develop expertise in high-dimensional data visualisation and Explainable AI (XAI), enabling you to make complex models interpretable and their outputs accessible to diverse audiences.

Teaching and learning

Teaching combines seminars and practical laboratory sessions with project-based group work, encouraging you to solve real-world problems and collaborate effectively.

Seminars will introduce key concepts, algorithms, and example datasets, whilst laboratories will focus on hands-on model development and collaborative problem-solving in teams. This approach ensures you gain both theoretical understanding and practical implementation skills essential for professional machine learning practice.

Independent study, guided tasks, and formative feedback points ensure that you are supported in applying theory to authentic technical challenges. All resources and recordings will be accessible online, and regular guidance and peer collaboration will help you build confidence and achieve your full potential.

Assessment

This module will be assessed by a machine learning model design and visual evaluation group project (40%) and an integrated machine learning and visual analytics group project (60%).

30 credits

This module is designed to develop the professional skills and mindset needed to succeed in technology-related careers, alongside enhancing your research and academic skills.

Taking key emerging technologies and current professional issues within your chosen pathway as a starting point, you will define and develop your own area for enquiry. You will be supported to systematically find and analyse academic and industry research publications and review existing technical solutions relevant to your area.

You will return to key topics in professional practice, including project lifecycle management, professional frameworks, agile and traditional methodologies, technical communication, ethical and legal considerations with deeper understanding, and apply these to your own project.  You’ll also engage with global perspectives and inclusive practices relevant to your discipline.

Teaching and learning

Your learning will be active and applied. In class, you’ll participate in seminars, lab-based workshops, and project supervision sessions. Outside the classroom, you’ll conduct independent research, collaborate with peers, and use industry-standard tools such as Git, Trello, and JIRA to manage your work.  

Each week includes a four-hour teaching session, structured as:

  • Interactive keynote discussion - introducing key concepts, frameworks, and professional contexts.
  • Guided workshop activities - hands-on practice with tools, methods, and scenarios; individual and collaborative problem-solving.

You will begin to engage with outside stakeholders relevant to your project and apply your knowledge and skills in user research and requirements gathering.

Assessment

This module will be assessed through coursework, where you will prepare a literature review on a chosen topic (50%) and poster project proposal with a Q&A session (50%).

 

 

Module details to be confirmed.

30 credits

The Capstone Project provides you with the essential opportunity to deeply explore a subject of high personal interest, situated within the context of your overall programme of study.

You are expected to apply and synthesise your professional practice and research capabilities throughout this project. By bringing these skills together, you will conduct a substantial investigation that extends and demonstrates your practical and academic knowledge. Upon completion, you will produce a significant technical artifact alongside a detailed report.

Building on the Professional Practice in Technology module, you will be able to critically engage with current literature and established research methodologies. Using the knowledge and feedback gained from this module, you will be equipped to develop your research question or problem statement. This work will lead you to systematically evaluate relevant sources, creating a strong foundation for your investigation.

Implementing knowledge gained from the earlier module will enable you to strengthen your methodological approach and demonstrate advanced research and problem-solving skills in your capstone project. You will be able to design and implement an evidence-based solution that addresses your research question and stated objectives. The project culminates in a critical evaluation and reflection on the impact of your solution in relation to your original research goals.

You will be assigned a named individual supervisor who will provide expert guidance throughout your project. While your supervisor is key, you are strongly encouraged to access the full range of academic and research support systems available across the university to enhance your work.

Collaboration is often a feature of the Capstone Project: you may either work with external stakeholders who provide a real-world project brief, or you may have the chance to work alongside an academic, contributing directly to their ongoing research. This project is not undertaken in isolation; peer support is fundamental, and your Capstone Project is developed within a strong, supportive learning community of both staff and fellow students.

Teaching and learning

The module is delivered via three modes of study:

  • On-campus sessions that help you conform to the necessary timeline and project requirements
  • One-to-one feedback from a named supervisor
  • Independent study

The on-campus sessions provide practical activities which directly contribute to the students’ project deliverables.

Peer support via on-campus session activities and group supervisory meetings is strongly encouraged and rewarded via digital badges in Moodle.

Assessment

This module will be assessed by a feedback-feedforward and Q&A session (30%) and a report and artefact (70%).

These are the current planned modules on this course and may be subject to change.

Careers

AI skills are increasingly expected across a wide range of jobs, and employers are now prioritising practical ability and demonstrable experience over formal degree titles. This programme prepares you for applied and hybrid technology roles where AI and data tools are part of day-to-day work.

Graduates can pursue opportunities in areas such as software development, data analysis, and technology support across industries including finance and insurance, retail and logistics, the public sector, SMEs, and consultancies.

By the end of your degree, you’ll have a portfolio of projects and real-world experience that showcases your ability to apply AI in professional contexts, giving you a strong foundation to launch your career in a technology-driven workplace.

The Student Futures team is here to support you throughout your time at Roehampton and beyond.

They offer services tailored to your needs, helping you take confident steps towards your future.

You’ll have access to a wide range of career workshops and events, where you can engage with employers and develop the skills you need to succeed in the workplace.

These opportunities will help you build your CV, prepare for interviews, and connect with successful Roehampton graduates who are thriving in their careers. You’ll also be able to engage with our partners across London and beyond.

Wherever you want to go in the future, you'll be preparing for the world of work from your very first day.

Find out more

Learning and Assessment

How you’ll learn

You’ll gain practical, hands-on experience with AI, programming, and data-driven software through a mix of short lectures, interactive workshops, and lab-based projects. Our flipped classroom and active learning approach ensures you spend your time applying concepts, solving problems, and experimenting with real tools and technologies.

You’ll start with the fundamentals of computing, programming, and data, then progress to AI, machine learning, and advanced data systems. Throughout, you’ll build teamwork, communication, and project management skills, while tackling challenges in collaborative, real-world scenarios.

Key aspects of learning include:

  • Lab-Based Practice: Apply algorithms, train models, and test solutions in realistic settings.
  • Continuous Feedback: Guidance during labs and workshops helps you refine your skills.
  • Portfolio-Driven Learning: Projects produce tangible work you can show to employers.
  • Industry Insight: Guest lectures and exposure to professional tools keep you ahead of current technology trends.

By the final year, you’ll complete a major project demonstrating your ability to design and implement an AI solution, preparing you for a career in technology or further study.

1 / 1

How you'll be assessed

Assessment focuses on practical, real-world skills rather than exams. You’ll be evaluated through projects, reports, presentations, and prototypes that reflect the kind of work you’ll do in a professional setting.

Assessment emphasises:

  • Authentic, Industry-Relevant Tasks: Deliverables mirror real professional practice.
  • Portfolio Development: Work completed on projects builds evidence of your abilities for future employers.
  • Professional Skills: Teamwork, communication, and project management are integrated into tasks.
  • Engaging Challenges: Gamified exercises and hackathon-style activities foster creativity and problem-solving.

This approach ensures you graduate with the technical ability, confidence, and portfolio to succeed in AI-enabled roles across business, industry, and the public sector.

Cutting-edge facilities in the Sir David Bell building

We offer six dedicated computing labs on campus, each equipped with specialised facilities, including a dedicated cyber security lab.

All the software necessary for your studies is freely available, allowing you to work conveniently from anywhere and at any time using your personal device.

Discover more

Open days

Get a real taste of our campus, community and what it’s like to study at Roehampton

Full-time UK undergraduate students apply through UCAS.

Entry tariff

112–128 UCAS points (or equivalent)

Foundation Year: 64–80 UCAS points (or equivalent)

Looking to work out your UCAS points or find out about our entry requirements? Find out more.

When we consider applications to study with us, we form a complete view of your achievements to date, and future potential, and can offer flexibility in entry requirements. Find out more about our Contextual Offer scheme.

 

International undergraduate students apply through our direct application system.

Entry tariff

112–128 UCAS points (or equivalent)

International Foundation Pathway:
64 UCAS (or equivalent)
IELTS: 5.5

Looking to work out your UCAS points or find out about our entry requirements? Find out more.

When we consider applications to study with us, we form a complete view of your achievements to date, and future potential, and can offer flexibility in entry requirements. Find out more about our Contextual Offer scheme.

International students

Tuition fees

Entry date Undergraduate Year 1
September 2026 £17,628
January 2026 £17,628

Prices shown are for the first year of your degree.

More information about tuition fee costs

Need help or advice before applying?

Computing, Engineering, and the Built Environment

Join a vibrant community where we shape sustainable future through innovation, collaboration, and real-world impact.   

1 / 3