A LightningModule has the following properties which you can access at any time --- #### current_epoch The current epoch --- #### dtype Current dtype --- #### experiment An instance of test-tube Experiment which you can use to log anything for tensorboarX. ```{.python} self.experiment.add_embedding(...) self.experiment.log({'val_loss': 0.9}) self.experiment.add_scalars(...) ``` --- #### global_step Total training batches seen across all epochs --- #### gradient_clip The current gradient clip value --- #### on_gpu True if your model is currently running on GPUs. Useful to set flags around the LightningModule for different CPU vs GPU behavior. --- #### trainer Last resort access to any state the trainer has. Changing certain properties here could affect your training run. ```{.python} self.trainer.optimizers self.trainer.current_epoch ... ```