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Skin-Cancer Detection Program

kaggle dataset link: https://www.kaggle.com/fanconic/skin-cancer-malignant-vs-benign

TODO:

  • Look for other medical data sets, hopefully binary

  • Make seperate Interactive Notebook: Ideas

    • show our tops losses, in case doctor shows
    • leaderboard
    • compares to latest papers?
    • visualizes what the model looks like
    • shows the heatmap of what the model focuses on

Model Tuning/Improvement:

  • fp-16 training

  • weight decay parameter increase, 0.01 - 0.01,0.2? Separate Batch norm param? a

  • hotdog, not-hotdog ensemble

  • what is spatial dropout?

  • include all validation data for training

  • try out final batchnorm layer(done, unsure)

  • slice learning rates, pct-start?(done, unsure)

  • iterative resizing (done)

  • mess with data augmentation, warp, lighting, rotate (done)

  • Get dropout in there, not sure if default (done, default 0.5)

Maybe:

  • Check latest papers, architecture, tricks, data-sets? (maybe for a sequel project)