Summary of module for applicants:
This module aims to provide students with the core theoretical and practical background required for using machine learning techniques for big data analytics, and developing large-scale intelligent algorithms for big data systems.
Main topics of study:
- Introduction to Data Mining for Big Data
- Big Data Processing
- Big Data Classification
- Big Data Clustering
- Machine Learning applications for Big Data Analytics
- Legal, Social, and Ethical issues within Machine Learning on Big Data
Learning Outcomes for the module
- Digital Proficiency - Code = (DP)
- Industry Connections - Code = (IC)
- Emotional Intelligence Development - Code = (EID)
- Social Intelligence Development - Code = (SID)
- Physical Intelligence Development - Code = (PID)
- Cultural Intelligence Development - Code = (CID)
- Cognitive Intelligence Development – Code = (COI)
- Community Connections - Code = (CC)
- UEL Give-Back - Code = (UGB)
At the end of this module, students will be able to:
Knowledge
- Explain the current and emerging concepts, technologies and principles relevant to Big Data analytics using data mining and machine learning. (DP)
- Illustrate understanding of the current advanced techniques, tools and methods applicable on Big Data analytics using machine learning. (DP)
Thinking skills
- Examine approaches for preparing Big Data from different and heterogeneous data sets for analysis. (COI)
- Critically evaluate appropriate machine learning techniques within a business context, which includes legal, social, and ethical issues. (COI)
Subject-based practical skills
- Design, implement, and test a machine learning-based system working with Big Data. (DP)
- Utilise batch and real-time machine learning analysis on Big Data and their visualisations effectively. (DP)
Skills for life and work (general skills)
- Participate in the peer review process exercise for assessing project outcomes. (DP)
- Work effectively in groups to develop a software project and present it to technical and non-technical audiences. (DP, SID)