Introduction

This program is designed to produce graduates who are knowledgeable and skilled in key concepts in the areas of data science.  The program contents are tailored to enable graduates to translate their knowledge and skills to market needs and demonstrate creativity, innovative problem solving and competitiveness.

Program Objectives

  1. To produce graduates who are knowledgeable in the field of data science, and able to extract meaningful insights to help organizations cope with challenges and issues arising from big data.
  2. To prepare graduates that have a deep understanding of the core concepts, practices and tools in the domain of Data Science and big data analytics.
  3. To produce professional human capital who can translate business and research problems into useful technical solutions, which requires communication, teamwork, leadership skills, responsibility and good ethics.

Program Learning Outcomes

  1. Master the important concepts and theories in the field of data science, that can be utilized in relevant domains such as business and social sciences.
  2. Apply the knowledge in data science in designing and developing data models, systems, and applications.
  3. Solve problems in various disciplines through research, and knowledge of data science and scientific computing.
  4. Be able to work cooperatively with all internal and external stakeholders to solve data-driven problems in real-world.
  5. Be able to communicate the outcomes of data analytics and visualization to a wide range of audience for better decision making

Course Structure

This 45 credit hours program consists of 9 subjects and a dissertation which the candidate must pass for graduation.

CODECOURSECREDIT HRS
CS1001Advanced Algorithms3
CS1002Research Methodology3
CS1003Principles of Data Science3
CS1004Parallel and Distributed Computing3
CS1005Statistics3
DS3001Programming for Data Science3
DS3002Machine Learning for Data Science3
DS3003Datamining/Big Data Management3
DS3004Data Analytics and Visualization3
TOTAL27
CS2001DISSERTATION18
TOTAL PROGRAM CREDIT HOURS45

Course Plan

CODECOURSECREDIT HOUR
SEMESTER I
CS1001Advanced Algorithms3
CS1003Principles of Data Science3
SUB-TOTAL6
SEMESTER II
CS1004Parallel and Distributed Computing3
CS1005Statistics3
DS3001Programming for Data Science3
SUB-TOTAL9
SEMESTER III
CS1002Research Methodology3
DS3002Machine Learning for Data Science3
CS2001DISSERTATION (Topic selection, problem definition, objectives, research questions, hypothesis)3
SUB-TOTAL9
SEMESTER IV
DS3003Data mining/Big Data Management3
DS3004Data Analytics and Visualization3
CS2001DISSERTATION (proposal defence)3
SUB-TOTAL9
SEMESTER V
CS2001DISSERTATION (completion, prepare publication)12
SUB-TOTAL12
GRAND-TOTAL45 Credit Hours

Entry Requirements

  1. Applicants of this program should possess a bachelor’s degree in a related field with a minimum CGPA of 2.5
  2. All Applicants must pass the university English proficiency test or provide evidence for international English certification.

Duration

16 to 20 Months = 4 to 5 Semester,    1 Semester = 4 Months

Program Fees:

  • Tuition Fees: $2,200 ($110 / Month)
  • Registration Fees: $80

Graduation Requirements

Candidates must fulfil the following requirement for graduation to qualify for the degree:

  1. Satisfactorily completed all the courses and the total number of credit hours specified for the program.
  2. Obtained a final CGPA of at least 2.67 on completion of the program.
  3. Paid all fees due to the university.

Grading System

The grading system for all courses is as follows:

MarksGradeGrade Point (GPA)Meaning
90-100A+4.00High Distinction
80-89A4.00Distinction
75-79A-3.67Very Good
70-74B+3.33Good
65-69B3.00Pass
60-64B-2.67
55-59C+2.00Fail
50-54C1.67
Less than 50F0.0