Download Part-time Programme of Studies

Survey
yes no Was this document useful for you?
   Thank you for your participation!

* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project

Document related concepts
no text concepts found
Transcript
University of Malta
Faculty of Information and Communication Technology
Master of Science in Information and Communication Technology (Artificial Intelligence)
M.Sc. ICT (AI)
(Part-time Day)
In addition to the compulsory study-units, students are required to choose elective study-units to a total
minimum value of 15 ECTS credits from the elective study-units on offer during the year.
Year 1 Semester 1 (October – January)
Compulsory Units (All students must register for these units)
ICS5110
ICT5902
ICS5111
Applied Machine Learning
Research Methods
Mining & Visualizing Large-Scale Data
5 ECTS
5 ECTS
5 ECTS
Elective Units (Students are required to register for up to 2 of these units)
 ICS5112 Advanced Intelligent Interfaces
 CPS3227 Concurrency, HPC and Distributed Systems
CCE5225
Pattern Recognition
5 ECTS
5 ECTS
5 ECTS
Year 1 Semester 2 (February – June)
Elective Units (Students are required to register for up to 3 of these units)
DGA5302
DGA5304
DGA5305
CIS5113
ICS5114
 ICS5115
Digital Imagining, Photography and Illustration
Digital Animation and Graphics
Graphic Narrative and Storytelling
Large Scale Databases
Big Data Processing
Statistics for Data Scientists
5 ECTS
5 ECTS
5 ECTS
5 ECTS
5 ECTS
5 ECTS
Year 2 Semester 1, Semester 2 and Semester 3 (October – September)
Compulsory Unit (All students must register for this unit)
ICS5200
Dissertation (Optionally through an Internship)
60 ECTS
This programme of study is governed by ‘The General Regulations for University Postgraduate Awards,
2008’ and by the Bye-Laws for the award of the Degree of Master of Science in Information and
Communication Technology - M.Sc. ICT - under the auspices of the Faculty of Information and
Communication Technology.
 Recommended for Creative Technologies Stream
 Recommended for Big Data Stream