Master of Science in Data Science (University of London)

Course Information

Course Type
Part-time
Fees (Local Students)
S$39,000
Fees (Foreign Students)
S$39,000
Other Fees
Application Fee: S$96.30
Duration
2 years
Intake Months
Visit course webpage for intake months
Programme Grant
Visit course website for Scholarships & Bursaries
Class Schedule
Information not provided by school.
Assessment Method
Coursework and written examination

Description

Awarded by the University of London, UK and Developed by the Member Institution, Goldsmiths, University of London, UK.

The programme is a study of a combination of long-established fields such as statistics, data mining, machine learning and databases, with modern and strongly related fields such as Big Data management and analytics, sentiment analysis and social web mining.

You will learn the computational techniques needed to efficiently analyse very large data sets under the guidance of experts in that domain. You will analyse trends in social media and make financial predictions based on the data gathered.

The programme includes:

  • A firm grounding in the theory of data mining, statistics and machine learning
  • Hands-on practical real-world applications such as social media, biomedical data and financial data with Hadoop (used by Yahoo!, Facebook, Google, Twitter, LinkedIn, IBM, Amazon, and many others), R and other specialised software
  • The opportunity to work with real-world software such as Apache on platforms such as Jupyter Notebook.

Prerequisite(s)

  • Candidates entering this programme via Entry Route 2, are required to complete an online preparatory course. For details, go to the Admission Criteria section.

*This programme is currently not accepting new applications.

Entry Requirements

Entry Route 1

Applicants must have the following:

  • A bachelor's degree (or an acceptable equivalent) in a *relevant subject which is considered at least comparable to a UK second class honours degree, from an institution acceptable to the University of London.

Entry Route 2

If applicants do not meet the above academic requirements, their applications may be considered based on the following

  • A bachelor's degree (or an acceptable equivalent) in any subject which is considered at least comparable to a UK second class honours degree, from an institution acceptable to the University of London and the successful completion of the **online preparatory course, Foundations of Data Science, prior to registration.
  • There is no entry test requirement for the MOOC course. However, there will be assessment during and at the end of the MOOC course.

*The subjects that would be considered as relevant are: Computing, Data Science, Computer Science, Business Computing, Games Programming, Physics, Engineering, Mathematics and statistics, Finance, Marketing and Finance.

**Students should sign up with Coursera at least 3 months before the intended intake. Do aim to have the results at least one month before the application intake is closed. While completing the MOOC course, student may submit an SIM application.

English Language Requirements

Applicants must provide proof of competence in English acceptable to the University such as a minimum Grade C6 and above in the GCE 'O' Level English Language examination or its equivalent.

Exemptions

Recognition of Prior Learning (RPL) is the recognition of previously acquired learning which can be mapped against particular learning outcomes of modules within a programme. RPL may be awarded if you have previously studied a similar module in the same depth, at degree level, and you achieved good marks in the corresponding examination. A student who is awarded RPL for a specific module is considered to be exempted from the module.

The qualification on which your RPL is based must have been obtained within the five years preceding the application. Candidates must have completed all coursework and assessment for their course.

Visit course website for qualifications eligible for exemption and their corresponding RPL

Career Opportunities

The study could lead to a variety of potential jobs including:

  • Data Scientist
  • Big Data Analyst
  • Hadoop Developer
  • NoSQL Database Developer
  • Programmer
  • Researcher in Data Science and Data Mining

Modules

Structure

  • All class are conducted on SIM campus unless otherwise stated.
  • Duration of each lesson is typically 3 hours. 
  • Programme comprises of the following activities:
    • Blended Lectures
    • Online Resources
    • Workshops
    • Consultations
  • Classes are taught by experienced lecturers from SIM.
  • Average teacher-student ratio: 1:18
  • There must be a minimum of 25 students for the programme to commence. Students will be informed at least one month prior if there is insufficient enrolment.

Assessment & Attendance

  • A recommended rate of 75% attendance is to be maintained.
  • Assessment by the University is made up of coursework and examination (for selected modules).

Modules

The Master of Science in Data Science is a 180-credit programme. A student must complete:

  • Four core modules (60 credits total)
  • Two compulsory modules (30 credits total)
  • Four optional modules (60 credits total)
  • A final project (30 credits total)

Core Modules

(Must pass all assessment elements)

  • Big Data Analysis
  • Data Programming in Python
  • Statistics and Statistical Data Mining
  • Machine Learning

Compulsory Modules*

  • Data Science Research Topics
  • Data Visualisation

Optional Modules*

(Choose any four)

  • Artificial Intelligence
  • Blockchain Programming
  • Financial Data Modelling
  • Financial Markets
  • Mathematics for Data Science
  • Natural Language Processing
  • Neural Networks
  • R for Data Science
  • Social Media and Network Science

Project

  • Final Project 

*Rules for Compensation 

The University will allow compensation for an assessment element within optional and compulsory modules if: 

  • The mark awarded for one of the assessment elements is between 45%-49%; AND 
  • The mark for the other assessment elements is sufficient to produce an overall combined weighted pass mark for the module 

The University will NOT allow compensation for any assessment elements within core modules and the final project.

Locations

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