Machine learning for the built environment  

This is an introductory course for machine learning to equip students with the basic knowledge and skills for further study and research of machine learning. It introduces the theory/methods of well-established machine learning and state-of-the-art deep learning techniques for processing geospatial data (e.g., point clouds). The students will also gain hands-on experiences by applying commonly used machine learning techniques to solve practical problems through a series of lab exercises and assignments. After the course, the students will be able to: - explain the impact, limits, and dangers of machine learning; give use cases of machine learning for the built environment; - explain the main concepts in machine learning (e.g., regression, classification, unsupervised learning, supervised learning, overfitting, training, validation, cross-validation, learning curve); - explain the principles of well-established unsupervised and supervised machine learning techniques (e.g., clustering, linear regression, Bayesian classification, logistic regression, SVM, decision tree, random forest, and neural networks); - preprocess data (e.g., labelling, feature design, feature selection, train-test split) for applying machine learning techniques; - select and apply the appropriate machine learning method for a specific geospatial data processing task (e.g., object classification); - evaluate the performance of machine learning models.
Presential
English
Machine learning for the built environment
English

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