Awesome
GROKKING: GENERALIZATION BEYOND OVERFITTING ON SMALL ALGORITHMIC DATASETS
unofficial re-implementation of this paper by Power et al.
code written by Charlie Snell
pull and install:
git clone https://github.com/Sea-Snell/grokking.git
cd grokking/
pip install -r requirements.txt
To roughly re-create Figure 1 in the paper run:
export PYTHONPATH=$(pwd)/grokk_replica/
cd scripts/
python train_grokk.py
Running the above command should give curves like this.
Try different operations or learning / architectural hparams by modifying configurations in the config/
directory. I use Hydra to handle the configs (see their documentation to learn how to change configs in the commandline etc...).
Training uses Weights And Biases by default to generate plots in realtime. If you would not like to use wandb, just set wandb.use_wandb=False
in config/train_grokk.yaml
or as an argument when calling train_grokk.py