Courses
Advanced Manufacturing
Master of Engineering
Course Details
Course Code | LY_MAMAN_M |
---|---|
Level | 9 |
Duration | 1 year |
Credits | 90 |
Method of Delivery | Blended |
Campus Locations | Donegal – Letterkenny |
Mode of Delivery | Full Time, Part Time |

Course Overview
It is the aim of this programme to produce graduates who will be able to demonstrate mastery of the knowledge, skills and tools required for the development of advanced Industry 4.0-compliant manufacturing systems. They should be able to apply creativity in the design of systems, components and processes involved in product design for automation, cyber-physical systems, and IoT control of industry processes. Graduates would expect to find employment in several types of organisations: within large companies in a structured role and in small development companies in a more flexible role. The main aim of the programme is to give students training and qualifications for careers in advanced and modern manufacturing industries.
Course Details
Year 1
Semester | Module Details | Credits | Mandatory / Elective |
---|---|---|---|
1 |
Industrial Internet of Things (IIoT) & Cyber Physical Systems (CPS)This module provides an in-depth exploration of the Industrial Internet of Things (IIoT) and Cyber Physical Systems (sensors, control boards) to enable intelligent industrial systems. Students will work with real-world industrial sensors, IIoT gateways, and edge computing devices to collect, process, and analyse manufacturing data for predictive maintenance, quality control, and process optimisation using data analytics & machine learning. Learning Outcomes 1. Evaluate the role and impact of IIoT and CPS in modern manufacturing environments. |
10 | Mandatory |
1 |
Data Science & Machine LearningThis module provides a comprehensive introduction to machine learning (ML) with a strong emphasis on deep neural networks, tailored specifically for advanced manufacturing applications. Using PyTorch as the primary framework, students will learn to develop, train, and deploy ML models for real-world industrial challenges such as predictive maintenance, quality control, and process optimisation. The module covers: Core ML techniques (supervised/unsupervised learning) for manufacturing data. Deep learning fundamentals, including CNNs for visual inspection and RNNs for time-series forecasting. Cutting-edge architectures like Transformers (for sequence/vision tasks) and Generative AI (VAEs, GANs) for synthetic data generation. Deployment strategies (ONNX, edge AI) and ethical considerations (bias, explainability). Hands-on labs and a project will enable students to apply PyTorch-based solutions to manufacturing datasets (e.g., defect detection, tool wear prediction). By the end, students will be equipped to integrate ML into Industry 4.0 systems. Learning Outcomes 1. Analyse manufacturing datasets and select appropriate machine learning and deep learning techniques. |
10 | Mandatory |
1 |
Virtual Manufacturing & Digital TwinsThis module introduces students to virtual manufacturing and the creation of digital twins to simulate, optimise and enhance manufacturing processes. By leveraging advanced digital tools and techniques, students will gain hands-on experience in developing process designs, simulating process behaviour and optimising process workflow. Also, students will learn how to apply Lean principles to evaluate process performance, identify inefficiencies and propose process solutions for continuous improvement. Learning Outcomes 1. Use CAD tools to model realistic products for integration with the digital simulations. |
10 | Mandatory |
2 |
Digital Inspection & Quality AssuranceThis module provides an in-depth understanding of quality control and digital inspection techniques in modern manufacturing. It concentrates on 3D scanning, reverse engineering, geometric dimensions and tolerances (GD&T) and machine vision to ensure product accuracy and quality compliance. Students will develop hands-on expertise in digital inspection methods using advanced scanning technologies, coordinate measurement machines (CMMs) and automated vision systems for defect detection and quality assurance. Students will adopt statistical process control (SPC) tools such as control charts and process behaviour analysis to effectively monitor and control manufacturing processes. Learning Outcomes 1. Utilise 3D scanning technology (7-axis Hexagon scan arm) for reverse engineering, precise digital inspection & quality assessment. |
10 | Mandatory |
2 |
Manufacturing AutomationThis module equips students with advanced knowledge and hands-on experience in programming and integrating industrial robotic systems within modern manufacturing environments. It covers advanced PLC programming, electro-pneumatics, and Human Machine Interface integration, enabling the development of fully automated systems. A strong emphasis is placed on sensor integration and machine vision systems to enhance automation and system intelligence. Learning Outcomes 1. Program and optimise robotic cells for common manufacturing tasks. |
10 | Mandatory |
2 |
Sustainable Manufacturing SystemsThis module explores sustainability in advanced manufacturing, integrating environmental, social, and economic considerations into manufacturing processes. It explores the principles, strategies, and tools to develop more sustainable products and systems. The module will equip students with the knowledge and skills required to implement sustainability concepts within manufacturing environments, focusing on practical applications of circular economy principles to reduce waste, extend product lifecycles, and optimise resource efficiency. Learning Outcomes 1. Redesign manufacturing processes using circular economy principles, considering material efficiency, product lifecycle extension, and waste minimisation. |
10 | Mandatory |
3 |
DissertationThis module provides the student with the opportunity to apply the theoretical knowledge and skills gained in the course to a substantial project related to the application of advanced manufacturing techniques and practices. The student will preferably practice the application of academic theories and concepts in association with a workplace environment so that the tangible benefit of how the experience has informed their knowledge can be evaluated. Ultimately, learners will critically evaluate the academic theories or concepts applied to an identified area of interest, thus embedding competency as a reflective practitioner, and quantifying the transferable skill set gained from this MEng. Learning Outcomes 1. Identify a research topic, specify appropriate research objectives, and formulate a research plan |
30 | Mandatory |
Recommended Study Hours per week
Depending on whether the course is studied in Full-Time (FT) or Part-Time (PT) mode, a student will complete between 1-3 modules per semester.
Examination and Assessment
– Individual Assignments
– Group Assignments
– Online class/lab tests
– Presentations/demonstrations
On-Campus Attendance Requirement
Progression
Download a prospectus
Entry Requirements
Minimum Entry Requirements
Candidates must hold a cognate level 8 Bachelor (Hons) degree with a minimum grade classification of H2.2 or equivalent. Candidates who do not meet the H2.2 performance standard in a Level 8 award will be required to pass a qualifying assignment at a H2.2 performance standard as established by the Programme Board for the programme in question and as approved by the Registrar.
English Language Requirements
English Language Requirements will be as determined by ATU and as published in the Access, Transfer and Progression code. The current requirements are as follows:
- Non-EU applicants who are not English speakers must have a minimum score of 6.0 (with a minimum of 6.0 in each component) in the International English Language Testing System (IELTS) or equivalent. All results must have been achieved within 2 years of application to ATU.
- EU applicants who are not English speakers are recommended to have a minimum score of 6.0 (with a minimum of 6.0 in each component) in the International English Language Testing System (IELTS) or equivalent.
Recognition of Prior Learning
In accordance with its policies ATU is committed to the principles of transparency, equity and fairness in recognition of prior learning (RPL) and to the principle of valuing all learning regardless of the mode or place of its acquisition. Recognition of Prior Learning may be used to:
i. gain access or advanced entry to a programme at Stage 2 or higher, subject to available places. (Stage 1 entry to undergraduate major awards is through CAO).
ii. gain credits and exemptions from programme modules after admission.
Applications
Applications for this programme are made directly to the University.
Selection
Direct applicants will be offered places in decreasing order of performance until all available places are exhausted following the initial application deadline. Thereafter, if additional places remain unfilled, offers will be made to eligible applicants until all places are filled.
Careers
Graduates of the MEng in Advanced Manufacturing will be able to pursue a wide range of roles across the advanced manufacturing, engineering, and technology sectors. Typical career paths include positions such as manufacturing engineer, process engineer, automation engineer, R&D engineer, and production manager, with strong potential for progression into senior engineering, technical leadership, and engineering management roles.
This qualification also provides an excellent foundation for roles in smart manufacturing, robotics integration, quality and process improvement, industrial data analytics, and digital transformation initiatives within high-tech manufacturing environments. Graduates will be equipped with the critical and practical skills needed to thrive in advanced and Industry 4.0-aligned sectors such as medical devices, automotive, aerospace, semiconductors, and pharmaceuticals, both in Ireland and internationally.
Further Information
Application Closing Date
Start Date
Who Should Apply?
This programme is suitable for recent engineering graduates who wish to extend their education and enhance their employability by gaining advanced knowledge in smart manufacturing, automation, and data-driven decision-making. It is also ideal for early to mid-career professionals (including production technicians, quality assistants, and maintenance staff) who are looking to transition into engineering, supervisory, or management roles. The programme supports those seeking to future-proof their careers and take advantage of emerging opportunities in advanced and digital manufacturing environments.
Contact Information
Admissions Office
Electronic & Mechanical Engineering