.. testsetup:: * import os from pytorch_lightning.trainer.trainer import Trainer from pytorch_lightning.core.lightning import LightningModule Saving and loading weights ========================== Lightning can automate saving and loading checkpoints. Checkpoint saving ----------------- A Lightning checkpoint has everything needed to restore a training session including: - 16-bit scaling factor (apex) - Current epoch - Global step - Model state_dict - State of all optimizers - State of all learningRate schedulers - State of all callbacks - The hyperparameters used for that model if passed in as hparams (Argparse.Namespace) Automatic saving ^^^^^^^^^^^^^^^^ Checkpointing is enabled by default to the current working directory. To change the checkpoint path pass in: .. testcode:: trainer = Trainer(default_save_path='/your/path/to/save/checkpoints') To modify the behavior of checkpointing pass in your own callback. .. testcode:: from pytorch_lightning.callbacks import ModelCheckpoint # DEFAULTS used by the Trainer checkpoint_callback = ModelCheckpoint( filepath=os.getcwd(), save_top_k=True, verbose=True, monitor='val_loss', mode='min', prefix='' ) trainer = Trainer(checkpoint_callback=checkpoint_callback) Or disable it by passing .. testcode:: trainer = Trainer(checkpoint_callback=False) The Lightning checkpoint also saves the hparams (hyperparams) passed into the LightningModule init. .. note:: hparams is a `Namespace `_. .. testcode:: from argparse import Namespace # usually these come from command line args args = Namespace(learning_rate=0.001) # define you module to have hparams as the first arg # this means your checkpoint will have everything that went into making # this model (in this case, learning rate) class MyLightningModule(LightningModule): def __init__(self, hparams, *args, **kwargs): self.hparams = hparams Manual saving ^^^^^^^^^^^^^ You can manually save checkpoints and restore your model from the checkpointed state. .. code-block:: python model = MyLightningModule(hparams) trainer.fit(model) trainer.save_checkpoint("example.ckpt") new_model = MyModel.load_from_checkpoint(checkpoint_path="example.ckpt") Checkpoint Loading ------------------ To load a model along with its weights, biases and hyperparameters use following method. .. code-block:: python model = MyLightingModule.load_from_checkpoint(PATH) model.eval() y_hat = model(x) The above only works if you used `hparams` in your model definition .. testcode:: class LitModel(LightningModule): def __init__(self, hparams): self.hparams = hparams self.l1 = nn.Linear(hparams.in_dim, hparams.out_dim) But if you don't and instead pass individual parameters .. testcode:: class LitModel(LightningModule): def __init__(self, in_dim, out_dim): self.l1 = nn.Linear(in_dim, out_dim) you can restore the model like this .. code-block:: python model = LitModel.load_from_checkpoint(PATH, in_dim=128, out_dim=10) Restoring Training State ------------------------ If you don't just want to load weights, but instead restore the full training, do the following: .. code-block:: python model = LitModel() trainer = Trainer(resume_from_checkpoint='some/path/to/my_checkpoint.ckpt') # automatically restores model, epoch, step, LR schedulers, apex, etc... trainer.fit(model)