Computer Aided Engineering MSc Queen Mary University of London

Computer Aided Engineering (CAE) is one of the strongest growing fields within engineering and underpins design and analysis in all engineering disciplines. Virtual prototyping, based on the numerical analysis of structures, fluids, acoustics and many other disciplines, has become absolutely central to the industrial design and analysis process. The skills and knowledge you will develop in this MSc programme will enhance your career prospects for employment in competitive industrial companies and research institutions.

Contacts Website

Virtual prototyping, based on the numerical analysis of structures, fluids, acoustics and many other disciplines, has become absolutely central to the industrial design and analysis process. The skills and knowledge you will develop in this MSc programme will enhance your career prospects for employment in competitive industrial companies and research institutions. Research projects in CAE are drawn from a wide variety of applications in all of the specialisation areas, reflecting the strong research links that the staff members have industrial companies such as Airbus, Alstom, Rolls Royce, TWI, VW.

Aims

This programme will:

  • Allow you to choose your area of specialisation. You will specialise in an engineering discipline chosen from aeronautical, mechanical, biomedical or sustainable energy engineering and will follow advanced modules in that specialisation.
  • Provide you with a solid background in computational and numerical methods, as well as the relevant aspects of programming in modern programming languages such as C++. You will be introduced to a wide range of aspects of computation in engineering, both in structures and in fluids, including numerical optimisation.
  • Give you numerical analysis skills, which you will apply to engineering problems in your final MSc project.
QMUL offers a range of scholarships and bursaries. Please visit the area Postgraduate - Funding & Support of our website for up-to-date information
Cost of the master: Not declared
Scholarships available
QMUL Careers Office provides careers information, guidance and support for all students and graduates.

  • Book and/or database of graduates
  • Multimedia resources: links/e-books
  • Start-up support and mentoring
  • International opportunities
  • Companies presentations
  • Careerday
  • Support in CV writing
  • Orientation seminars
  • Job hunting tecniques
  • Interview preparation
Request more information from:
Queen Mary University of London

        Computer Aided Engineering MSc

              Puoi anche scrivere un messaggio:

                * required fields
                Privacy
                  • Other editions
                  • London - United Kingdom September 7, 2020
                  Queen Mary University of London: An introduction

                  Queen Mary University of London: An introduction

                  A Day in the Life of Queen Mary

                  A Day in the Life of Queen Mary

                  Social stream

                  Provenance Students Worldwide:
                  Detail of origin:
                  Europe
                  30%
                  10%
                  25%
                  25%
                  10%
                  United Kingdom
                  15%
                  60%
                  5%
                  %
                  20%
                  Gender:
                  45%
                  55%
                  Job Experience:
                  YES60%
                  NO40%
                  Age of participants:
                  • Under 25

                    60%
                  • 26 - 30

                    25%
                  • 31 - 35

                    10%
                  • Over 35

                    5%
                  Total:
                  1370
                  Foreigners:
                  30%
                  Profession Teaching Staff:
                  5%
                  University professors
                  85%
                  Researchers/lecturers/visiting professors
                  10%
                  Other
                  * The data could be related to the School and not to the Master