1. 15 Sep, 2021 1 commit
    • Vasilis Vryniotis's avatar
      Adding Mixup and Cutmix (#4379) · c8e3b2a5
      Vasilis Vryniotis authored
      * Add RandomMixupCutmix.
      
      * Add test with real data.
      
      * Use dataloader and collate in the test.
      
      * Making RandomMixupCutmix JIT scriptable.
      
      * Move out label_smoothing and try roll instead of flip
      
      * Adding mixup/cutmix in references script.
      
      * Handle one-hot encoded target in accuracy.
      
      * Add support of devices on tests.
      
      * Separate Mixup from Cutmix.
      
      * Add check for floats.
      
      * Adding device on expect value.
      
      * Remove hardcoded weights.
      
      * One-hot only when necessary.
      
      * Fix linter.
      
      * Moving mixup and cutmix to references.
      
      * Final code clean up.
      c8e3b2a5
  2. 14 Sep, 2021 1 commit
  3. 09 Sep, 2021 1 commit
  4. 10 Feb, 2021 1 commit
  5. 31 Mar, 2020 1 commit
  6. 14 Jun, 2019 1 commit
    • LXYTSOS's avatar
      utils.py in references can't work with pytorch-cpu (#1023) · 250bac89
      LXYTSOS authored
      * can't work with pytorch-cpu fixed
      
      utils.py can't work with pytorch-cpu because of this line of code `memory=torch.cuda.max_memory_allocated()`
      
      * can't work with pytorch-cpu fixed
      
      utils.py can't work with pytorch-cpu because of this line of code 'memory=torch.cuda.max_memory_allocated()'
      250bac89
  7. 08 May, 2019 1 commit
  8. 02 Apr, 2019 2 commits
  9. 28 Mar, 2019 1 commit
    • Francisco Massa's avatar
      Initial version of classification reference scripts (#819) · 27ff89f6
      Francisco Massa authored
      * Initial version of classification reference training script
      
      * Updates
      
      * Minor updates
      
      * Expose a few more options
      
      * Load optimizer and lr_scheduler when resuming
      
      Also log the learning rate
      
      * Evaluation-only and minor improvements
      
      Identified a bug in the reporting of the results. They need to be reduced between all processes
      
      * Address Soumith's comment
      
      * Fix some approximations on the evaluation metric
      
      * Flake8
      27ff89f6