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Master of Business Data Science

About

The Master of Business Data Science programme is designed to develop professionals with the analytical and strategic skills needed to drive business growth in today’s data-driven world. Students gain expertise in key areas such as business analytics, data analytics, machine learning, and data science, enabling them to translate complex data into actionable business insights. Combining theory with practical application, the programme equips graduates to tackle real-world challenges and make data-informed decisions in a rapidly evolving digital economy.

Key facts

Statistics
Qualification Master's Degree
Study mode Full-time
Duration 1 year
Intakes February, June, October
Total estimated cost (local) BND 15,247
Total estimated cost (foreign) BND 10,895

Subjects

  • Business

  • Other Sciences

Duration

1 year

Tuition fees

Description Local students Foreign students
Tuition fee BND 13,391 BND 6,543
Miscellaneous fees BND 1,856 BND 4,352
Total estimated cost of attendance BND 15,247 BND 10,895
Estimated cost per year BND 15,247 BND 10,895

Miscellanous fees explained

Local students

Description Amount
Registration Fee BND 609
Resource Fee BND 38-BND 4,382
Selection Fee BND 0-BND 152

Foreign students

Description Amount
Processing Fee BND 457
Visa Application Fee (EMGS) BND 670
Registration Fee BND 609
Administration Fee BND 913-BND 2,435
Resource Fee BND 730-BND 4,565

Estimated cost as reported by the institution. There may be additional administrative fees. Please contact us for the latest information.

Every effort has been made to ensure that information contained in this website is correct. Changes to any aspects of the programmes may be made from time to time due to unforeseeable circumstances beyond our control and the Institution and EasyUni reserve the right to make amendments to any information contained in this website without prior notice. The Institution and EasyUni accept no liability for any loss or damage arising from any use or misuse of or reliance on any information contained in this website.

Admissions

Intakes

Entry Requirements

Any of these:

  • Bachelor’s Degree in a related field (Bachelor's Degree Level):
    • A Bachelor’s Degree in Computing or related fields, with a minimum CGPA of 2.50.
  • Bachelor’s Degree in a related field (Bachelor's Degree Level):
    • A Bachelor’s Degree in Computing or related fields or equivalent with a minimum CGPA of 2.00, and a minimum of 5 years of working experience in the related field and rigorous internal assessment.
  • Equivalent Bachelor’s Degree (in related field) (Bachelor's Degree Level):
    • Other qualifications equivalent to a Bachelor’s Degree in the field of Computing or related fields recognised by the Government of Malaysia must undergo appropriate prerequisite courses as determined by the University.
  • Bachelor’s Degree (in non-related field) (Bachelor's Degree Level):
    • A minimum CGPA of 2.00 and a minimum of 5 years of working experience in the related field. Subject to rigorous internal assessment and must undergo appropriate prerequisite courses as determined by the University.
  • APEL A

English Proficiency (For International Students):

  • Minimum IELTS score of 6.0 or equivalent.

Curriculum

Semester 1:

  • Coding for Data Science
  • Business Data Techniques & Analytics
  • Research Methods for Business Data Science
  • Data Management

Semester 2:

  • Applied Machine Learning
  • Behavioural Science for Business Domain
  • Data Mining and Statistical Methods
  • Research Project 1

Semester 3:

  • Cloud Infrastructure and Services
  • Data Storytelling and Analytics
  • Natural Language Processing
  • Research Project 2