Artificial Intelligence

Applied Artificial Intelligence for Health Research

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On completion of this module you will :

  • Be able to implement simple fully connected networks from scratch in Python. and common deep networks in PyTorch
  • Be exposed to a wide range of deep learning applications for healthcare and be comfortable applying the ideas raised in the module to your own research
  • Understand the strengths and limitations of deep learning and how to adapt modern networks to work on challenging real-world medical imaging data
  • Understand how to validate models effectively and troubleshoot problems with their architectures
Contributed by: Artificial Intelligence
Authored by: Kings College London
UKRI
Medical Research Council
Innovation Scholars Programme, Big Data Skills Training
Licence: Creative Commons: Attribution-NonCommercial-ShareAlike 4.0 International More information on licences
First contributed: 11 June 2024
Audience access level: Full user

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