High Performance Computing with Data Science University of Edinburgh Physics & Astronomy

Our graduates are employed across a range of commercial areas, for example software development, petroleum engineering, finance and HPC support. Others have gone on to PhD research in fields that use HPC technologies, including astrophysics, biology, chemistry, geosciences, informatics and materials science. This programme is also available for part-time studying.

Contacts Website

  • MSc
  • English
  • Full time

Our graduates are employed across a range of commercial areas, for example software development, petroleum engineering, finance and HPC support. Others have gone on to PhD research in fields that use HPC technologies, including astrophysics, biology, chemistry, geosciences, informatics and materials science.

This programme is also available for part-time studying.

To study at postgraduate level, you must normally hold a degree in an appropriate subject, with an excellent or very good classification (equivalent to first or upper second class honours in the UK).

We may also accept equivalent qualifications or work experience.

Specific entry requirements vary between degree programmes and you should confirm you have the necessary qualifications before applying.

You will find the minimum academic entry requirements and more details on your chosen programme in our website.

Admission Requirements:
  • Bachelor
  • Equivalent qualification
For information on fees for all of our programmes, please visit the Scholarships and Student Funding Services area of our website.
Cost of the master: Not declared
Scholarships available
Request more information from:
University of Edinburgh
Physics & Astronomy

        High Performance Computing with Data Science

              Puoi anche scrivere un messaggio:

                * required fields
                Privacy
                  • Other editions
                  • City of Edinburgh - United Kingdom
                  Edinburgh life: student life in the city

                  Edinburgh life: student life in the city

                  Social stream

                  Provenance Students Worldwide:
                  Gender:
                  45%
                  55%
                  Age of participants:
                  • Under 25

                    50%
                  • 26 - 30

                    25%
                  • 31 - 35

                    10%
                  • Over 35

                    15%
                  Foreigners:
                  35%
                  Profession Teaching Staff:
                  5%
                  University professors
                  25%
                  Researchers/lecturers/visiting professors
                  70%
                  Other
                  * The data could be related to the School and not to the Master

                  University of Edinburgh

                  (440)
                  Name of Master
                  Mathematical Physics City of Edinburgh
                  Theoretical Physics City of Edinburgh
                  High Performance Computing with Data Science City of Edinburgh
                  High Performance Computing City of Edinburgh
                  High Performance Computing City of Edinburgh