# https://pytorch-lightning.readthedocs.io/en/latest/api/pytorch_lightning.callbacks.ModelCheckpoint.html # Save the model periodically by monitoring a quantity. # Look at the above link for more detailed information. model_checkpoint: _target_: lightning.pytorch.callbacks.ModelCheckpoint dirpath: ${paths.output_dir} # directory to save the model file filename: "checkpoints/epoch_{epoch:03d}" # checkpoint filename monitor: ${eval:'"val/loss" if ${data.train_val_test_split}[1] else "train/loss"'} # name of the logged metric which determines when model is improving verbose: False # verbosity mode save_last: True # additionally always save an exact copy of the last checkpoint to a file last.ckpt save_top_k: 1 # save k best models (determined by above metric) mode: "min" # "max" means higher metric value is better, can be also "min" auto_insert_metric_name: False # when True, the checkpoints filenames will contain the metric name save_weights_only: False # if True, then only the model’s weights will be saved every_n_train_steps: null # number of training steps between checkpoints train_time_interval: null # checkpoints are monitored at the specified time interval every_n_epochs: null # number of epochs between checkpoints save_on_train_epoch_end: null # whether to run checkpointing at the end of the training epoch or the end of validation