Skip to content

leriomaggio/deep-learning-health-life-sciences

Repository files navigation

Deep Learning for Health and Life Sciences with pytorch-logo

This workshop has been presented at the Data Week Online 2020 organised by the Jean Golding Insitute

JGI Logo UoB Logo

The introductory deck of slides to this tutorial is available on my SpeakerDeck profile:

Deep Learning for the Health and Life Sciences with PyTorch.

The full abstract of the workshop is available here: Abstract

Content at a glance

  • Introduction to ML and DL for the Health and Life Science

    • Short introduction to PyTorch
  • Reproducibility and Replicability

    • Replication Case study on Heart Failure
  • BioImages

    • Diabetic Retinopathy from fundus images
    • Histopathological Images and Transfer Learning
  • Few Notes on Model Interpretability

Technical Requirements

This tutorial runs on *Python 3* (Py3.4+ should be fine), and requires the following main packages:

  • numpy
  • scipy
  • matplotlib
  • scikit-learn
  • torch (of course 😄)
  • torchvision

The complete list of requirements is available in requirements.txt

Detailed (step-by-step) instructions to setup the Python virtual environment on your local machine are also available here.

If you don't want to bother setting up everything on your local computer (_and also have a pretty good internet connection) you might also consider the following two alternatives:

MyBinder

Binder

Google Colab

Open In Colab

License Summary

The material provided in this repository adopts two different licence files, for Lecture notes and Source Code, respectively.

The Lecture notes (and corresponding source notebooks) are licensed under Creative Commons License
Creative Commons Attribution-ShareAlike 4.0 International License.

The samples and reference code within this repository is made available under the GNU GPL v3.

See the LICENSE file.

References

Author: Valerio Maggio, Senior Research Associate @ Dynamic Genetics Lab

Dynamic Genetics Logo
Contacts
Twitter @leriomaggio
LinkedIn ValerioMaggio
Mail [email protected]