
The purpose of this challenge is to provide an extensive and comprehensive overview of the tools, techniques, and purpose of machine learning, which has emerged as a powerful and transformative field in the realm of artificial intelligence. Throughout the course, students will actively engage in a diverse range of innovative teaching activities, designed to cultivate a deep understanding of machine learning approaches, particularly focusing on the distinctions between supervised and unsupervised methodologies. By immersing themselves in hands-on projects and practical exercises, students will gain practical experience in applying these techniques to real-world problems and datasets. Moreover, this module aims to foster critical thinking and awareness among students by exploring the effects and implications of machine learning on sustainability and society. By analyzing case studies and examining ethical considerations, students will gain insight into the social, economic, and environmental impacts of machine learning applications. Additionally, the role of explainable AI (XAI) in the adoption and acceptance of machine learning systems will be thoroughly discussed, allowing students to comprehend the importance of transparency and interpretability in decision-making processes. By the end of this module, students will have a well-rounded understanding of the fundamental principles of machine learning, its potential impact on various domains, and the significance of responsible and ethical practices in this rapidly evolving field.
These are the teamchers you'll work with on the challenge.
Distinguish between supervised and unsupervised Machine Learning methods and when and how to apply them.
Understand the concepts and application of machine learning and artificial intelligence in online learning and large data set applications.
Apply and synthesise the characteristics of different methods of machine learning
Apply the Cross Industry Standard Process for Data Mining - Crisp-dm framework ML lifecycle Overarching process - iterative process
Analyse the potential impact of machine learning in the context of sustainability
Analyse the difference between ML research and real-world analysis needs
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