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Slides presented by Dr Paola Galdi (University of Edinburgh) at the AIM RSF Early Career Researcher Lunchtime session on 4 May 2023. The HTML slides were created from a Jupyter notebook; both are provided. The slides provide an introduction to fundamental concepts in machine learning and examples of setting up simple machine learning models using the scikit-learn library in Python. This seminar was organised by the AI for Multiple Long Term Conditions Research Support Facility (link to the same archived website). AIM RSF is funded by the NIHR Artificial Intelligence for Multiple Long-Term Conditions (AIM) programme (NIHR202647).
python, machine learning, ECR Lunchtime, scikit-learn, unsupervised learning, supervised learning
python, machine learning, ECR Lunchtime, scikit-learn, unsupervised learning, supervised learning
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