pytorch_lightning.utilities.exceptions.MisconfigurationException: ReduceLROnPlateau conditioned on metric val_loss which is not available. Available metrics are: ['train_num_atom_loss', 'train_num_atom_loss_step', 'train_num_cp_loss', 'train_num_cp_loss_step', 'train_diameter_loss', 'train_diameter_loss_step', 'train_id_loss', 'train_id_loss_step', 'train_loss', 'train_loss_step', 'z_norm', 'z_norm_step', 'train_num_atom_loss_epoch', 'train_num_cp_loss_epoch', 'train_diameter_loss_epoch', 'train_id_loss_epoch', 'train_loss_epoch', 'z_norm_epoch']. Condition can be set using `monitor` key in lr scheduler dict
It seems that ReduceLROnPlateau relies on a loss metric from the validation set, such as val_loss. But I found # building block embedding space learning does not involve validation or testing. in bb_encoder.py. So what can I do to deal with this bug? Thanks!
Hello, I got an error that when running the
python mofdiff/scripts/train.py --config-name=bb > ./testmilnew1.out. And the output isIt seems that ReduceLROnPlateau relies on a loss metric from the validation set, such as val_loss. But I found
# building block embedding space learning does not involve validation or testing.in bb_encoder.py. So what can I do to deal with this bug? Thanks!