This programme services the increasing need for the application of data science methods to the Engineering and Built Environment sectors. To enable professionals to adapt to this rapidly changing context of the 4th Industrial Revolution, they need to understand and embrace the power of analytics and machine learning techniques to interpret, learn from, enrich, predict, and enhance how we design, construct, operate, maintain, and continuously improve our built and natural environments, and the systems, machines and equipment operating in them.
This programme will provide professionals from the Engineering and Construction domains with the skills to maximise the value of their data by analysing & interpreting this information to improve outcomes for industry, society, and individuals.
Engineering Analytics / Digital Construction Analytics
Engineering Analytics / Digital Construction Analytics
About
Core Analytics Module Stack - Stage 1
- Introduction to Analytics for Engineering & Built Environment
- Advanced Data Analytics for Engineering & Built Environment
- Machine Learning for Engineering & Built Environment
Other Core Modules - Stage 3
- Research Methods
- Capstone Experience with Agile Project Management (Minor) or Capstone Experience with Agile Project Management (Major)
Elective Modules - Selection - Stages 1 or 2 depending on availability
- Cloud Computing for Engineering & Built Environment
- Data Analysis using Matlab
- Hetrogeneous Computing Architectures
- Introduction to Programming
- Internet of Things Analytics for Smart Cities and Cognitive Buildings
- Meshless Simulation Methods and Applications
- Software Production
- Statistical Analysis for Engineers
- Virtual & Augmented Reality Applications for Engineering & Built Environment
- Work-Based Learning & Applied Research
An "applied" stream of the programme is also available where students undertake 35 credits of taught modules plus 55 credits of a major Capstone Experience. This stream enables students to focus intensively upon the solution of an industry-based problem or problems while also developing significant research capability, potentially preparing candidates for transfer to level 10 PhD studies.
Requirements
Entry Requirements
Successful completion of Saudi Associate Degree with a 2.75/4 CGPA. Must have 3/4 CGPA for Engineering/Computing/Science programmes
or
Tawjihiyah (General Secondary Education Certificate) plus successful completion of TU Dublin Foundation or another recognised pre-university foundation with relevant subjects and 60% - 65%
Fee Information
Application Fee
EUR 50How to Apply
The steps to make an application to study as an international student at TU Dublin are listed below:
All international applicants can now apply online directly to TU Dublin via the respective course page.
- STEP 1: Select your mode of study Undergraduate, Postgraduate
- STEP 2: Select your desired programme of study.
- STEP 3: Select "Non-EU" Button in How to Apply Section to begin the application.
- STEP 4: Complete your application and pay the €50 application fee. Applications will not be processed without the payment of this fee.
Documents required
- Passport
- Grading Scale
- Degree / Date of Completion (Both Original Language & Translated)
- Transcripts for each year of study (Both Original Language & Translated)
- Proof of English Proficiency / Date of Exam
- Up to Date Resume
- Statement of Purpose
Engineering Analytics / Digital Construction Analytics
Technological University Dublin
Ireland,
Dublin
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