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2016/17 Taught Postgraduate Programme Catalogue

MSc Data Science and Analytics

Programme code:MSC-DS&AUCAS code:
Duration:12 Months Method of Attendance: Full Time
Programme manager:Dr Arief Gusnanto Contact address:a.gusnanto@leeds.ac.uk

Total credits: 180

Entry requirements:

BSc (or equivalent) in a subject containing a substantial numerate component, usually at level 2.1 or above (or equivalent).

School/Unit responsible for the parenting of students and programme:

School of Mathematics

Examination board through which the programme will be considered:

School of Mathematics

Programme specification:

The programme will equip students with the necessary knowledge and skills in data science. Students on this programme will be taught by experts from different academic units: the School of Mathematics (SoM), the School of Computing (SoC), the Yorkshire Centre for Health Informatics Faculty of Medicine and Health (YCHI), the School of Geography (SoG), and the School of Business (LUBS). In addition to that, three new modules in total are proposed in the SoM for students who are not from a mathematics/statistics background, while modules in the SoC will be suitable for students on this programme who are not from a computer science background. The programme will therefore expose students to different perspectives on data science, including the mathematical and computational underpinnings of the subject and practical understanding of application in a specific context. In particular, we anticipate many projects for the dissertation will span at least two units with joint supervision. As well as emphasizing the application nature of the programme, the dissertation will feature strongly data elucidation, analysis, and interpretation of real-world problems.


Year1 - View timetable

[Learning Outcomes, Transferable (Key) Skills, Assessment]

Candidates must enrol on exactly 180 or 185 credits overall, with at least 135 credits at level 5M. Candidates

Compulsory modules:

Candidates will be required to study the following compulsory modules:

COMP5122MData Science15 creditsSemester 1 (Sep to Jan)
MATH5747MLearning Skills through Case Studies15 creditsSemester 2 (Jan to Jun)
MATH5872MDissertation in Data Science and Analytics60 credits1 Jun to 30 Sep (16mth)

Optional modules:

Remaining credits need to be chosen from the following lists, with at least 30 credits from each of lists A and B. Options may be selected from list C. The final choice requires approval from the Programme Manager.

List A

COMP3611Machine Learning10 creditsSemester 1 (Sep to Jan)
COMP3736Information Visualization10 creditsSemester 1 (Sep to Jan)
COMP3900Distributed Systems10 creditsSemester 1 (Sep to Jan)
COMP5111MBig Data Systems15 creditsSemester 2 (Jan to Jun)
COMP5112MData Management15 creditsSemester 1 (Sep to Jan)
COMP5400MBio-Inspired Computing15 creditsSemester 2 (Jan to Jun)
COMP5450MKnowledge Representation and Reasoning15 creditsSemester 1 (Sep to Jan)
COMP5700MSystems Programming15 creditsNot running in 201617
COMP5710MAlgorithms15 creditsSemester 1 (Sep to Jan)
COMP5711MPractical Programming15 creditsSemester 1 (Sep to Jan)
COMP5840MData Mining and Text Analytics15 creditsNot running in 201617
COMP5850MCloud Computing15 creditsSemester 2 (Jan to Jun)
COMP5860MSemantic Technologies and Applications15 creditsSemester 2 (Jan to Jun)
COMP5870MImage Analysis15 creditsSemester 2 (Jan to Jun)
COMP5920MScheduling15 creditsSemester 2 (Jan to Jun)
COMP5930MScientific Computation15 creditsSemester 1 (Sep to Jan)
COMP5940MGraph Theory: Structure and Algorithms15 creditsSemester 2 (Jan to Jun)

List B

MATH3714Linear Regression and Robustness15 creditsSemester 1 (Sep to Jan)
MATH3723Statistical Theory15 creditsSemester 2 (Jan to Jun)
MATH3733Stochastic Financial Modelling15 creditsSemester 1 (Sep to Jan)
MATH3772Multivariate Analysis10 creditsSemester 1 (Sep to Jan)
MATH3802Time Series10 creditsSemester 2 (Jan to Jun)
MATH3820Bayesian Statistics10 creditsSemester 1 (Sep to Jan)
MATH3823Generalised Linear Models10 creditsSemester 2 (Jan to Jun)
MATH3880Introduction to Statistics and DNA10 creditsSemester 2 (Jan to Jun)
MATH5741MStatistical Theory and Methods15 creditsSemester 1 (Sep to Jan)
MATH5743MStatistical Learning15 creditsSemester 2 (Jan to Jun)
MATH5745MMultivariate Methods15 creditsSemester 2 (Jan to Jun)
MATH5772MMultivariate and Cluster Analysis15 creditsSemester 1 (Sep to Jan)
MATH5802MTime Series and Spectral Analysis15 creditsSemester 2 (Jan to Jun)
MATH5820MBayesian Statistics and Causality15 creditsSemester 1 (Sep to Jan)
MATH5824MGeneralised Linear and Additive Models15 creditsSemester 2 (Jan to Jun)
MATH5835MStatistical Computing15 creditsSemester 1 (Sep to Jan)
MATH5880MStatistics and DNA15 creditsSemester 2 (Jan to Jun)

List C

GEOG5240MApplied Population and Demographic Analysis15 creditsSemester 2 (Jan to Jun)
GEOG5740MIntroducing GIS15 creditsSemester 1 (Sep to Jan)
GEOG5937MApplied GIS and Retail Modelling15 creditsSemester 2 (Jan to Jun)
LUBS5221MEffective Decision Making15 creditsSemester 1 (Sep to Jan)
LUBS5253MAdvanced Management Decision Making15 creditsSemester 2 (Jan to Jun)
LUBS5308MBusiness Analytics and Decision Science15 creditsSemester 1 (Sep to Jan)
LUBS5309MForecasting and Advanced Business Analytics15 creditsSemester 2 (Jan to Jun)
YCHI5010MInformatics in Health Care15 creditsSemester 1 (Sep to Jan)
YCHI5030MProcess Modelling, Benefits and Change15 creditsSemester 1 (Sep to Jan)
YCHI5070MMobile Health15 creditsSemester 2 (Jan to Jun)

Last updated: 12/10/2016

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