2.2.2
- Updated installation function 
install_fastai 
2.2.1
- Fixed breaking changes during model training
 
- Updated installation function 
install_fastai 
2.0.9
- PyTorch version is 1.9
 
- lr_find bug is fixed
 
2.0.8
2.0.7
- bs_finder is fixed
 
- better visualization on Colab. Issue with fig size is fixed
 
2.0.6
- new function to load_learner
 
- unet_config is Deprecated
 
- while installing fast.ai Mac OS, first, it downloads PyTorch 1.8,
then 1.7.1. It is fixed, now.
 
nn_module() function allows to rename the model,
e.g. summary(model) 
nn_module() will not move the model to GPU, if
gpu argument is FALSE (by default it is
TRUE) 
- custom loss
functions with 
nn_loss(). Based on Kaggle
notebook 
2.0.5
install_fastai no more supports extensions. They need
to be installed separately by users. 
- PyTorch was upgraded from 1.7.0 to 1.7.1.
 
2.0.4
- stick to fastaudio 0.1.3 (resolve dependencies)
 
- add 
geom_point for interactive visualization within
RStudio 
- add
TPU module into fastai
 
2.0.3
2.0.2
- Hugging Face integration, prediction
 
one_batch() ability to add more arguments 
- no need to call
options(reticulate.useImportHook = FALSE) 
DataBlock automatically places data into
cuda if available 
2.0.1
nn_module for model construction 
fix_fit for disabling the training plot 
- all the 
fit functions now return the training
history 
fastai 2.0.0