Courses
Computing in Big Data Analytics
Postgraduate Diploma in Science
Course Details
| Course Code | LY_IDATA_G |
|---|---|
| Level | 9 |
| Duration | 1 year |
| Credits | 60 |
| Method of Delivery | Online |
| Campus Locations | Donegal – Letterkenny |
| Mode of Delivery | Full Time, Part Time |
Course Overview
This programme focuses on the processes involved in examining and interpreting large amounts of data of a variety of types to uncover hidden patterns, unknown correlations and other useful information.
From banking and financial services to retail and healthcare, as well as life sciences, the opportunities in big data analytics are expanding all the time, and this course provides you with excellent qualifications to make the most of the ever increasing opportunities.
After all, your skills can provide competitive advantage for businesses including more effective marketing and increased revenue which is why more and more companies have moved into the field, harnessing talents such as yours to exploit the huge volumes of data now available.
The opportunities for successful graduates exist in companies running large database systems, as well as the payment card industry and financial services. Roles typically include becoming a data storage manager, data analyst or data scientist.
Course Details
Year 1
| Semester | Module Details | Credits | Mandatory / Elective |
|---|---|---|---|
| 1 |
Big Data AnalyticsTo provide the student with a significant level of comprehension both of the theoretical concepts underpinning databases for Big Data and also how to critically appraise the appropriateness for industry. Learning Outcomes 1. Defend the selection of an appropriate scripting language for the analysis of data |
10 | Mandatory |
| 1 |
Business IntelligenceThis module will provide the student with an in-depth understanding of the theoretical and applied concepts underpinning business intelligence. It will examine the area of dimensional data modelling and the extract transform and load process whereby the student will gain insight and practical skills in building a data warehouse. Business reporting and data visualisation principles and techniques will be explored as a means for creating meaningful reports and visualisations. At the end of this module, the student should be able to collect, process and query data, create interactive visualisations and demonstrate how they provides insight into managerial decision making. Learning Outcomes 1. Critically discuss business intelligence concepts and its relationship in supporting business decision making. |
10 | Mandatory |
| 1 |
Machine LearningThe student will develop key practical skills and a foundation in Machine Learning techniques including data analysis and artificial intelligence and their application on specific problems in Machine Learning, such as, prediction, classification, recommendation and optimization. Learning Outcomes 1. Critically appraise the performance of a learning system. |
10 | Mandatory |
| 2 |
Big Data ArchitecutureTo provide the student with a significant level of comprehension both of the theoretical concepts underpinning large scale data architecture for Big Data systems. The student will investigate different data management strategies and have knowledge and skills to design a data management framework. The student will build a data pipeline which incorporates data ingestion, integration, cataloguing and storage techniques using current technologies to create a self-service environment for data users. Learning Outcomes 1. Discuss data management strategies and roles. |
10 | Mandatory |
| 2 |
Data ScienceThis module will provide the student with a detailed understanding of the steps needed to prepare, statistically analyse, and evaluate data before it is used to build relevant predictive models. Students will examine the procedures needed to pre-process data before analysis begins. They will gain a comprehensive understanding of the steps needed to identify, implement, and examine statistical analysis methodologies and interpret relevant outputs. And the student will gain an understanding of the processes required to implement a predictive model for analysis and interpretation. Students will implement all techniques using a statistical programming language. Learning Outcomes 1. Explain, analyse, and examine the key components of a statistical programming language to facilitate data science processes. |
10 | Mandatory |
| 2 |
Mathematics for AnalyticsTo provide the student with a significant level of comprehension and aptitude for both the theoretical concepts underpinning Big Data analytics using a mathematical approach and critical appraisal of the outputs from Big Data analytics as they relate to business applications. Learning Outcomes 1. Critically analyse and manipulate large amounts of data. |
10 | Mandatory |
Examination and Assessment
Note: Where assessment on the programme involves examinations, these are held on campus or at another exam venue in the Republic of Ireland. There are typically two exam periods: January and May. Times scheduled for examinations (face to face / online exams ) are in GMT.
Progression
Follow up programmes include the Master of Science in Big Data Analytics.
Download a prospectus
Fees
Total Fees EU: €6,300
This programme is offered free to eligible candidates via NW Depth.
Further information on feesCareers
Graduate careers typically include roles such as Business Intelligence Analyst, Data Analyst, Data Analytics Consultant, Data Engineer, Data Project Manager, Data Scientist, Logistics Specialist, Marketing Analyst, and Operations Analyst.
The main employers are companies in business and computing, finance companies of all types, healthcare providers, logistics, and retail sectors.
Further Information
Application Closing Date
Start Date
Who Should Apply?
This programme is suitable for individuals who have a strong interest in data analysis, programming, and statistical modelling, and who want to develop advanced skills in these areas to pursue a career in data science or related fields.
Contact Information
Department of Computing
Computing