Latest Module Specifications
Current Academic Year 2025 - 2026
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Description This course will cover introductory topics and conventional algorithms needed to understand the field of Machine Learning. The course will cover foundation statistical knowledge in order to prepare students to understand and distinguish between main groups of methods used in Machine Learning, supervised and unsupervised, and how and when they are applicable. Key topics will include Regression, Decision Trees, Naive Bayes, Neural Networks, Clustering and Principal Component Analysis. | |||||||||||||||||||||||||||||||||||||||||||||
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Learning Outcomes 1. Apply knowledge about the purpose and key applications of Machine Learning in choosing appropriate Machine Learning methods to given application tasks. 2. Distinguish between descriptive and inferential statistics including different levels of measurement and data types. 3. Distinguish between supervised and unsupervised Machine Learning methods and when and how to apply them. 4. Implement machine learning model for i) Linear Regression to model predict data dependencies ii) Decision Tree learning to predict the values of variables of interest and iii) classification utilizing Naive Bayes algorithms and Support Vector Machines. 5. Apply knowledge of the concepts and application of different types of Artificial Neural Networks in selecting appropriate neural-network based systems to given application contexts. 6. Analyse insights from unstructured data by using unsupervised methods such as Clustering and Principal Component Analysis. 7. Evaluate selected Machine Learning methods using publicly available data sets in Python or similar. 8. Experiment with existing ML libraries, tools and platforms such as Scikit-Learn and HuggingFace. | |||||||||||||||||||||||||||||||||||||||||||||
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All module information is indicative and subject to change. For further information,students are advised to refer to the University's Marks and Standards and Programme Specific Regulations at: http://www.dcu.ie/registry/examinations/index.shtml |
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Indicative Content and Learning Activities
Fundamentals and Applications of Machine Learning Purpose and objectives of Machine Learning, basic terminology and concepts, real-world machine learning applications, supervised vs. unsupervised learning. Probability and Linear Algebra Simple approaches to prediction, Linear algebra review, Probability Distributions (Gaussian), Least Squares, Nearest Neighbours, Decision Theory, Bayesian Methods. Supervised Learning Main methods used in supervised learning including Regression, Decision Trees, Naive Bayes, Support Vector Machines, validation and model evaluation, Basics of Neural Networks, Ensembles, Perceptron. Unsupervised Learning Principal techniques used in unsupervised learning including Clustering, K-means, Principal Component Analysis. | |||||||||||||||||||||||||||||||||||||||||||||
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Indicative Reading List Books:
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Other Resources None | |||||||||||||||||||||||||||||||||||||||||||||