Course Details
Contact(s):
Read instructions on how to apply
for more information or to be notified when applications are open.
Brief Description
Are you looking to gain much sought after skills in an extremely popular field within AI that allows a computing system to interpret images and infer high-level reasoning.
UL's Master of Engineering (MEng) in Computer Vision and Artificial Intelligence will enable you to rapidly progress your knowledge of state-of-the-art vision systems, artificial intelligence algorithms, and machine learning applications.
Computer Vision allows a computing system to interpret images and infer high-level reasoning. It is used across a vast amount industry from social media to manufacturing.
The programme has a strong focus on real-world industrial application that will equip you with the skills to work effectively in the AI and Computer Vision area.
It is suited to graduates or professionals with strong mathematics and computing backgrounds seeking to specialise in mechatronics, automation, or smart manufacturing.
There is also an option to study a similar programme part-time and online through the Professional Diploma in AI for Computer Vision or the MSc in AI 鈥 with Computer Vision Stream.
During this programme, you will:
- Develop knowledge in state-of-the-art vision systems, artificial intelligence algorithms, and machine learning applications.
- Learn about modern Deep Learning approaches to many machine and computer vision problems.
- Acquire Computer Vision skills that are widely used in a range of industries, including automotive, virtual reality, augmented reality, robotics, medicine, security, aerospace and consumer electronics.
- Deliver a significant digital futures project or piece or research in the area to apply and deepen your learning.
Key information:
- Complete full-time over one year
- Delivered on campus
- Modules taught during autumn and spring semesters
- Option to exit after the Spring Semester with a Postgraduate Diploma
- Submit dissertation or Engineering Project at the end of summer semester
- Option to replace summer semester to develop a digital portfolio with a Digital Futures Innovation steam
You will learn through a blend of:
- Lectures, workshops, and hands-on activities
- Reflective practice and guided research
- Regular feedback from faculty and peers
Year 1
Autumn Semester
- covers mathematical and coding skills essential to developing machine learning applications in Python and introduces more advanced machine learning topics.
- provides a solid theoretical and practical understanding, knowledge and skill in the application of artificial intelligence and expert systems.
- provides a detailed insight into image formation, formats and processing necessary so computers can use machine vision technologies.
- equips students with skills for the development of real-world robust computer vision systems.
- provides a comprehensive understanding of the governance, ethics, and social and business impacts of AI.
Spring Semester
- supports students in finding a suitable research topic, developing a detailed specification, and preparing for the academic writing of their report.
- prepares students to use new technologies for the sharing, composition, reuse, and retrieval of algorithms and data relevant to the production and use of Artificial Intelligence.
- develops insight into deep learning and associated frameworks relevant to edge computing.
- provides students with the means to use cameras to reconstruct the structure and shape of the environment in which the camera is located.
- equips students with a full understanding of how to design and build deep neural networks for their own applications.
Summer Semester
Option 1: Master of Engineering Project 鈥 Computer Vision and AI
- facilitates students to undertake and complete a significant project, involving an advanced design and implementation task related to Computer Vision and Artificial Intelligence.
Option 2: Digital Futures and Innovation Stream
A number of students may choose to follow this stream, developing a professional portfolio as an alternative to the traditional project thesis.
- enables students to address complex organisational and societal problems through mapping, analysis and creative thinking.
- facilitates students to complete a technical prototype based on their portfolio work in the Digital Futures Lab.
Books and journal articles needed for the course will be available online through the UL Glucksman Library.
For more information on each module, you can search the faculty, school and module code on UL鈥檚
- Applicants should hold a bachelor鈥檚 degree ( Level 8) with at least a second-class honour, grade 2 (2:2) in a relevant discipline like engineering, computing, mathematics, science or technology discipline, or another discipline where significant math and computing elements can be demonstrated.
- The university may shortlist and invite you to an interview.
Linear Algebra is a key mathematical requirement for this programme. If you can answer the questions in the Linear Algebra Self-Assessment Worksheet, you will be well equipped for the course.
Admission to the programme is a competitive process, and unfortunately not all applicants that meet the criteria will be offered a place.
Other Entry Considerations:
We encourage you to apply even if you don鈥檛 meet the standard entry requirements, as long as you can show that you have the knowledge, skills, and experience needed for the programme.
At UL, we value all kinds of learning and support different ways to qualify through our Recognition of Prior Learning (RPL) policy.
International students:
- For details on country-specific qualifications visit postgraduate entry requirements for international students.
Checklist of Documents:
- *Academic transcripts and certificates
- UL graduates only need to provide their student ID.
- Copy of your birth certificate or passport
- English translation of your qualifications and transcripts
English Language:
- English Language Competency certificate
- For details on accepted language qualifications visit English Language Requirements
Guidelines on Completing your Application
- To make sure we can review your application quickly, please:
- Upload all documents. Your application can鈥檛 be reviewed until we have all the documents on the checklist.
- Title the documents you are uploading. For example, "Personal Statement", "Undergraduate Transcript", "Postgraduate Transcript", "English Language Certificate" etc.
- *If you are waiting to graduate, submit your application with the documents you have to date, you don鈥檛 need to have finished final exams before applying.
EU - 鈧8,200
Non-EU - 鈧20,400
Annual fees are billed by semester. Once registered, students may be eligible to apply for a monthly payment plan.
Further information on fees and payment of fees is available from the Student Fees Office website. All fee related queries should be directed to the Student Fees Office (Phone: +353 61 213 007 or email student.fees.office@ul.ie).
Funding
Find further information on funding and scholarships.
This course can lead to the following sectors and careers:
- Computer Vision/ Machine Learning Engineer
- Data Scientist
- Product Manager
- Researcher
Computer Vision is widely used in:
- Manufacturing
- Social media
- Automotive
- Virtual reality
- Augmented reality
- Robotics, medicine
- Security
- Aerospace
- Consumer electronics
- Agricultural Technology
Micheal Cassidy, Chief Technical Officer, Irish Manufacturing Research (IMR)
鈥淎t IMR, we actively seek engineers and researchers possessing the expertise nurtured through specialised courses like the MEng Computer Vision and Artificial Intelligence offered at the 九色视频.
In order to continue to support and improve the competitiveness of Irish manufacturing companies, we remain committed to fostering a collaborative relationship with the 九色视频 to nurture and harness the talent emerging from this program. Ultimately the skills and talent arising from this course will support IMRs vision of de-risking, demystifying and delivering impactful research.鈥
Dr. Eamon Hynes, Chief Technical Officer, AMCS Group
鈥淲e have invested heavily in computer vision and AI within our products to drive value for our customers using the latest emerging technologies. At AMCS, we are actively seeking experienced and graduate engineering candidates in AI, computer vision and software engineering, such as graduates from the MEng in Computer Vision and AI at the 九色视频 to enable us to continue to drive technological advances to our customers and their end users.鈥
Still Curious?
The team regularly host and take part in webinars to support future students. If you would like to learn more or ask questions at an online information session, click below.
Graduate and Professional Studies
+353 (0)61 234377
九色视频, Limerick, Ireland