Examples¶
Tutorials¶
- classification tutorial
- dataset preparation (raw images -> train/valid/infer splits) 
- augmentations usage example 
- pretrained model finetuning 
- various classification metrics 
- metrics visualizaiton 
- FocalLoss and OneCycle usage examples 
- class imbalance handling 
- model inference 
 
 
- segmentation tutorial
- car segmentation dataset 
- augmentations with albumentations library 
- training in FP16 with NVIDIA Apex 
- using segmentation models from - catalyst/contrib/models/cv/segmentation
- training with multiple criterion (Dice + IoU + BCE) example 
- Lookahead + RAdam optimizer usage example 
- tensorboard logs visualization 
- predictions visualization 
- Test-time augmentations with ttach library 
 
 
Pipelines¶
- classification pipeline
- classification model training and inference 
- different augmentations and stages usage 
- metrics visualization with tensorboard 
 
 
- segmentation pipeline
- binary and semantic segmentation with U-Net 
- model training and inference 
- different augmentations and stages usage 
- metrics visualization with tensorboard 
 
 
RL tutorials & pipelines¶
For Reinforcement Learning examples check out our Catalyst.RL repo.